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19 Commits

Author SHA1 Message Date
c80101aa6e chore: clean up definition of composite class of providers 2025-12-11 21:52:18 +01:00
9ca6468924 chore: refactored to factory design pattern of pipelines 2025-12-11 21:52:18 +01:00
0d78c918d1 fix: fixture update to hotel not shop 2025-12-11 21:52:18 +01:00
c64cf31764 fix: must keep airflow secretkey 2025-12-11 21:52:18 +01:00
aff3178dcc updating airline hero section 2025-12-11 21:52:18 +01:00
361bf8925b cloning pipelines per mode instance 2025-12-11 21:52:18 +01:00
4426b0ff74 chore: update provider and pricing snitch with agnostic system 2025-12-11 21:52:16 +01:00
d45b344264 fixing public routing for store modes 2025-12-08 15:00:37 +01:00
a0b956b242 chore: rewriting airflow for railway 2025-12-06 18:04:18 +01:00
Daniel Alves Rösel
8751583764 Improving interface after experiment01 (#30)
* fix: fixes of backwords

* fixing hotel information with image placeholders

* chore: clean up product display in hotel and cleaner interfacing

* adding loader with historical data loading

* feature: cleaning up pipeline

* chore: simple surge pricer

* created new pricing pipeline

* adding a checkout page to both sites

* fix: fixing stale pacakge

* test: we wont be using elasticity anymore so its okay

* chore: cleaning elasticity references

* chore: store sting

* feature: e2e intro pipline surge pricing

* fix: CVE vulnerability patching
2025-12-06 17:47:14 +01:00
59d4fb7891 fix: unified provider container for standalone 2025-12-04 17:03:39 +01:00
7c2a819122 removing module provider summoning for provider 2025-12-04 16:19:26 +01:00
5941ffd085 small provider updates 2025-12-04 16:07:18 +01:00
955102090d feat: introduced cumulative features step for state definition 2025-11-29 22:28:40 +01:00
d654bbf4b4 static price reading 2025-11-29 20:13:38 +01:00
Daniel Alves Rösel
ad9423bf59 Airflow addition (#28)
* introducing airflow to run pipeline

* chore: updating dag with upload to registry

* introducing complete provider (non refactored and noisy)

* chore: removing old shit

* generic pricing baselines

* feature: super simple model registry (to be updated maybe third party OS software)

* chore: refactoring the providers docker config and requirements

* chore: refactored and broke down components (braking

* exporting all

* local pipeline excution working

* fix: fixing import structures from nonrelativistic

* chore: enables cross comm pickling with fully e2e pipeline compilation

* docs: what the pipeline is like now

* pipelines local running and pipeline high level definition

* cleaning old pipeline and vectorization

* leaked but fixing, not so important

* test: started with pipeline step testing

* chore: cleaning up provider of prices

* test: extra tests wit hsemantic meaning checks

* migrating pricers

* feature: introducing pricing predictors (pricers)

* chore: e2e is done with new pipeline

* extra session feature extraction

* feature: experiemntal sessin pricer and metrics(vibe)

* chore: redefined and connected pricers (#29)
2025-11-29 17:50:16 +01:00
Daniel Alves Rösel
2a0e44ab24 Add image and update links in README.md 2025-11-29 14:19:22 +01:00
Daniel Alves Rösel
c432c45343 First pricing implementation (#27)
* first implementation of elasticity demand computation

* chor: fixing test :(

* feature: rudemantary defintition of pricing pipeline

* chor: fixing cross product missing data

* add warning

* feature: e2e pricing pipeline with inference
2025-11-27 18:25:27 +01:00
Daniel Alves Rösel
8b76d24ade 6 catalog data and mode mappers (#25)
* supabase product proxy and rendering

* minor pipeline refactor

* refactoring and demand estimation

* trackion of date index searching

* fixing changes of imports

* data seeding

* chore: airline basic refactor

* feat: huge push of product changes and item review with cart

* refactored design

* chore: moving route elsewhere and align

* fix: build of web/

* chore: fixing paper build

* fixing chars
2025-11-25 11:00:31 +01:00
71 changed files with 4225 additions and 488 deletions

5
.gitignore vendored
View File

@@ -6,3 +6,8 @@
**/session_*.svg
**/*graph.svg
paper/src/bib/auto
# Airflow logs - exclude DAG run logs
experiments/airflow/logs/*
experiments/airflow/logs/scheduler/
experiments/airflow/logs/dag_processor_manager/

View File

@@ -49,4 +49,8 @@ install: $(VENV)
test: $(VENV)
$(PYTEST) -v
count-lines:
@find . \( -path '*/node_modules' -o -path '*/.venv' -o -path '*/venv' \) -prune -o \
\( -name "*.ts" -o -name "*.py" \) -type f -print0 | xargs -0 cat | wc -l
.PHONY: all pdf clean watch run.webapp install test

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@@ -1,3 +1,6 @@
<img width="1952" height="2176" alt="nobody_knows" src="https://github.com/user-attachments/assets/d148b00d-e9f9-4280-89cc-0cc866e17251" />
[![Build PDF](https://github.com/velocitatem/PHANTOM/actions/workflows/latex.yml/badge.svg)](https://github.com/velocitatem/PHANTOM/actions/workflows/latex.yml)
- https://phantom-hotel.vercel.app/

113
backend/provider/app.py Normal file
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@@ -0,0 +1,113 @@
from fastapi import FastAPI, HTTPException, Query
from fastapi.middleware.cors import CORSMiddleware
from pydantic import BaseModel
from typing import Literal, Optional
import uvicorn, os, sys
from supabase import create_client, Client
from dotenv import load_dotenv
import numpy as np
import pandas as pd
load_dotenv()
# Local imports of registry and pricing function
sys.path.append(os.path.dirname(os.path.abspath(__file__))+ "/../../experiments/")
from procesing.providers import SupabaseProvider, BackendAPIProvider
from procesing.pricers import (
StaticPricer,
RandomPricer,
ElasticityBasedPricer
)
from procesing.steps import (
PredictPricesStep
)
from procesing import PipelineContext
sys.path.append(os.path.dirname(os.path.abspath(__file__))+ "/../../lib/")
print(os.path.dirname(os.path.abspath(__file__))+ "/../../lib/")
from lib.model_registry import ModelRegistry
# Config
app = FastAPI(title="PHANTOM Pricing Provider")
app.add_middleware(CORSMiddleware, allow_origins=["*"], allow_credentials=True, allow_methods=["*"], allow_headers=["*"])
supabase: Client = create_client(os.getenv("NEXT_PUBLIC_SUPABASE_URL"), os.getenv("NEXT_PUBLIC_SUPABASE_ANON_KEY"))
registry = ModelRegistry()
class PriceResponse(BaseModel):
productId: str
price: float
base_price: float
markup: float
elasticity: Optional[float] = None
model_version: str = 'latest'
@app.get("/health")
def health() -> dict:
return {"status": "healthy", "redis": registry.health_check()}
@app.get("/api/{mode}/price/{productId}", response_model=PriceResponse)
def get_price(mode: Literal['hotel', 'airline'], productId: str, sessionId: Optional[str] = Query(None), experimentId: Optional[str] = Query(None)):
product = supabase.table(f'{mode}_products').select("metadata").eq('id', productId).execute().data[0]
if not product: raise HTTPException(404, f"Product {productId} not found")
metadata = product['metadata']
base_price = metadata.get('base_price', 100.0)
# fetch pre-computed prices from registry
prices_df = registry.get_prices('latest')
elasticity_df = registry.get_elasticity('latest')
if prices_df is None:
# fallback: no pre-computed prices available
return PriceResponse(
productId=productId,
price=base_price,
base_price=base_price,
markup=1.0,
elasticity=None
)
# lookup pre-computed price for this product
product_price_row = prices_df[prices_df['productId'] == productId]
if product_price_row.empty:
# product not in pre-computed prices, fallback to base
return PriceResponse(
productId=productId,
price=base_price,
base_price=base_price,
markup=1.0,
elasticity=None
)
optimal_price = float(product_price_row['optimal_price'].iloc[0]) # TODO: use optimal_price everywhere as aresult
# get elasticity if available
product_elasticity = None
if elasticity_df is not None:
product_elasticity_row = elasticity_df[elasticity_df['productId'] == productId]
if not product_elasticity_row.empty:
product_elasticity = float(product_elasticity_row['elasticity'].iloc[0])
return PriceResponse(
productId=productId,
price=optimal_price,
base_price=base_price,
markup=optimal_price/base_price,
elasticity=product_elasticity
)
@app.get("/models")
def list_models(): return registry.list_models()
@app.post("/models/reload")
def reload_models():
elasticity, pricing_model = registry.get_elasticity('latest'), registry.get_pricing_model('latest')
return {
"elasticity_loaded": bool(elasticity),
"n_products": len(elasticity) if elasticity is not None else 0,
"pricing_model_loaded": bool(pricing_model),
"model_class": pricing_model.__class__.__name__ if pricing_model else None
}
if __name__ == "__main__":
uvicorn.run(app, host="0.0.0.0", port=int(os.getenv("PROVIDER_PORT", "5001")))

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@@ -0,0 +1,16 @@
fastapi
uvicorn[standard]
pydantic
numpy
pandas
scikit-learn
redis
supabase
confluent-kafka>=2.3.0
kafka-python
graphviz
python-dotenv>=1.0.0
requests>=2.31.0
typing-extensions>=4.8.0
pypickle
pymc

View File

@@ -64,6 +64,14 @@ class EventPayload(BaseModel):
userAgent: Optional[str] = None
ts: Optional[str] = None
class PriceLogPayload(BaseModel):
productId: str
price: float
sessionId: str
experimentId: Optional[str] = None
storeMode: str
ts: Optional[str] = None
app.add_middleware(
CORSMiddleware,
allow_origins=["*"],
@@ -87,7 +95,8 @@ async def startup_event():
)
topics = [
NewTopic(name='user-interactions', num_partitions=3, replication_factor=1)
NewTopic(name='user-interactions', num_partitions=3, replication_factor=1),
NewTopic(name='price-logs', num_partitions=3, replication_factor=1)
]
admin.create_topics(new_topics=topics, validate_only=False)
@@ -139,26 +148,52 @@ async def ingest_logs(event: EventPayload):
print(traceback.format_exc())
raise HTTPException(status_code=500, detail=str(e))
@app.post("/api/kafka/price-log")
async def ingest_price_log(price_log: PriceLogPayload):
try:
if not price_log.ts:
price_log.ts = datetime.utcnow().isoformat() + 'Z'
producer = get_producer()
future = producer.send(
'price-logs',
key=price_log.productId,
value=price_log.model_dump()
)
future.add_errback(lambda e: print(f"[KAFKA_PRICE_LOG_ERROR] {e}"))
return {"success": True}
except Exception as e:
import traceback
print(f"[PRICE_LOG_ERROR] {e}")
print(traceback.format_exc())
raise HTTPException(status_code=500, detail=str(e))
@app.get("/api/kafka/dump")
def dump_logs(
topic: str = 'user-interactions',
last_n: Optional[int] = None,
t_start: Optional[str] = None,
t_end: Optional[str] = None
):
"""dump all messages from user-interactions topic
"""dump all messages from specified kafka topic
params:
topic: kafka topic to dump (default: user-interactions)
last_n: return only last n messages (default: all)
t_start: filter by start timestamp iso format (future use)
t_end: filter by end timestamp iso format (future use)
t_start: filter by start timestamp iso format
t_end: filter by end timestamp iso format
"""
if topic not in ['user-interactions', 'price-logs']:
raise HTTPException(status_code=400, detail="Invalid topic")
host = os.getenv('KAFKA_HOST', 'localhost')
port = os.getenv('KAFKA_PORT', '9092')
broker = f'{host}:{port}'
try:
consumer = KafkaConsumer(
'user-interactions',
topic,
bootstrap_servers=[broker],
auto_offset_reset='earliest',
enable_auto_commit=False,
@@ -174,7 +209,6 @@ def dump_logs(
# apply filters
if t_start or t_end:
# filter by timestamp range if provided
filtered = []
for e in events:
ts = e.get('ts')
@@ -256,6 +290,7 @@ async def get_products(
query = supabase.table(table).select('*')
# filter by exact date_index if provided
# dateIndex from frontend is days from today, convert to days since epoch
if dateIndex is not None:
query = query.eq('date_index', dateIndex)

View File

@@ -71,6 +71,133 @@ services:
- "${REDPANDA_CONSOLE_PORT:-8080}:8080"
restart: unless-stopped
postgres:
container_name: "PHANTOM-postgres"
image: postgres:13
environment:
- POSTGRES_USER=airflow
- POSTGRES_PASSWORD=airflow
- POSTGRES_DB=airflow
ports:
- "5433:5432"
volumes:
- postgres_data:/var/lib/postgresql/data
restart: unless-stopped
airflow-init:
container_name: "PHANTOM-airflow-init"
build:
context: .
dockerfile: docker/Airflow.dockerfile
depends_on:
- postgres
environment:
- AIRFLOW__CORE__EXECUTOR=SequentialExecutor
- AIRFLOW__DATABASE__SQL_ALCHEMY_CONN=postgresql+psycopg2://airflow:airflow@postgres/airflow
- AIRFLOW__CORE__FERNET_KEY=${AIRFLOW_FERNET_KEY}
- AIRFLOW__CORE__LOAD_EXAMPLES=false
- AIRFLOW__CORE__ENABLE_XCOM_PICKLING=true
- _AIRFLOW_DB_MIGRATE=true
- _AIRFLOW_WWW_USER_CREATE=true
- _AIRFLOW_WWW_USER_USERNAME=admin
- _AIRFLOW_WWW_USER_PASSWORD=admin
- REDIS_HOST=redis
- REDIS_PORT=6379
command: version
restart: "no"
airflow-webserver:
container_name: "PHANTOM-airflow-webserver"
build:
context: .
dockerfile: docker/Airflow.dockerfile
depends_on:
- postgres
- airflow-init
- redis
environment:
- AIRFLOW__CORE__EXECUTOR=SequentialExecutor
- AIRFLOW__DATABASE__SQL_ALCHEMY_CONN=postgresql+psycopg2://airflow:airflow@postgres/airflow
- AIRFLOW__CORE__FERNET_KEY=${AIRFLOW_FERNET_KEY}
- AIRFLOW__CORE__DAGS_ARE_PAUSED_AT_CREATION=true
- AIRFLOW__CORE__LOAD_EXAMPLES=false
- AIRFLOW__CORE__ENABLE_XCOM_PICKLING=true
- AIRFLOW__WEBSERVER__EXPOSE_CONFIG=true
- AIRFLOW__WEBSERVER__SECRET_KEY=${AIRFLOW_SECRET_KEY}
- KAFKA_HOST=kafka
- KAFKA_PORT=29092
- BACKEND_URL=http://backend:5000
- NEXT_PUBLIC_SUPABASE_URL=${NEXT_PUBLIC_SUPABASE_URL}
- NEXT_PUBLIC_SUPABASE_ANON_KEY=${NEXT_PUBLIC_SUPABASE_ANON_KEY}
- REDIS_HOST=redis
- REDIS_PORT=6379
ports:
- "${AIRFLOW_WEBSERVER_PORT:-8085}:8080"
command: webserver
restart: unless-stopped
healthcheck:
test: ["CMD", "curl", "--fail", "http://localhost:8080/health"]
interval: 30s
timeout: 10s
retries: 5
start_period: 30s
airflow-scheduler:
container_name: "PHANTOM-airflow-scheduler"
build:
context: .
dockerfile: docker/Airflow.dockerfile
depends_on:
airflow-webserver:
condition: service_healthy
redis:
condition: service_started
environment:
- AIRFLOW__CORE__EXECUTOR=SequentialExecutor
- AIRFLOW__DATABASE__SQL_ALCHEMY_CONN=postgresql+psycopg2://airflow:airflow@postgres/airflow
- AIRFLOW__CORE__FERNET_KEY=${AIRFLOW_FERNET_KEY}
- AIRFLOW__CORE__DAGS_ARE_PAUSED_AT_CREATION=true
- AIRFLOW__CORE__LOAD_EXAMPLES=false
- AIRFLOW__CORE__ENABLE_XCOM_PICKLING=true
- AIRFLOW__WEBSERVER__SECRET_KEY=${AIRFLOW_SECRET_KEY}
- KAFKA_HOST=kafka
- KAFKA_PORT=29092
- BACKEND_URL=http://backend:5000
- NEXT_PUBLIC_SUPABASE_URL=${NEXT_PUBLIC_SUPABASE_URL}
- NEXT_PUBLIC_SUPABASE_ANON_KEY=${NEXT_PUBLIC_SUPABASE_ANON_KEY}
- REDIS_HOST=redis
- REDIS_PORT=6379
command: scheduler
restart: unless-stopped
healthcheck:
test: ["CMD-SHELL", 'airflow jobs check --job-type SchedulerJob --hostname "$${HOSTNAME}"']
interval: 30s
timeout: 10s
retries: 5
start_period: 30s
pricing-provider:
container_name: "PHANTOM-pricing-provider"
build:
context: .
dockerfile: docker/Provider.dockerfile
depends_on:
- redis
- kafka
environment:
- PROVIDER_PORT=5001
- REDIS_HOST=redis
- REDIS_PORT=6379
- KAFKA_HOST=kafka
- KAFKA_PORT=29092
- NEXT_PUBLIC_SUPABASE_URL=${NEXT_PUBLIC_SUPABASE_URL}
- NEXT_PUBLIC_SUPABASE_ANON_KEY=${NEXT_PUBLIC_SUPABASE_ANON_KEY}
- BACKEND_URL=http://localhost:5000
ports:
- "${PROVIDER_PORT:-5001}:5001"
restart: unless-stopped
volumes:
phantom_kafka_data:
phantom_redis_data:
postgres_data:

30
docker/Airflow.dockerfile Normal file
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@@ -0,0 +1,30 @@
FROM apache/airflow:2.7.3-python3.11
USER root
# install system deps if needed
RUN apt-get update && apt-get install -y --no-install-recommends \
build-essential \
&& apt-get clean \
&& rm -rf /var/lib/apt/lists/*
USER airflow
# copy requirements for pipeline dependencies
COPY requirements.txt /tmp/requirements.txt
RUN pip install --no-cache-dir -r /tmp/requirements.txt
# install postgres driver and providers
RUN pip install --no-cache-dir \
psycopg2-binary \
apache-airflow-providers-postgres
# set airflow home
ENV AIRFLOW_HOME=/opt/airflow
COPY --chown=airflow:root experiments/airflow/dags ${AIRFLOW_HOME}/dags
COPY --chown=airflow:root experiments/procesing ${AIRFLOW_HOME}/procesing
COPY --chown=airflow:root lib ${AIRFLOW_HOME}/lib
# create logs and plugins dirs (airflow expects them)
RUN mkdir -p ${AIRFLOW_HOME}/logs ${AIRFLOW_HOME}/plugins

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@@ -0,0 +1,41 @@
FROM apache/airflow:2.7.3-python3.11
USER root
RUN apt-get update && apt-get install -y --no-install-recommends \
build-essential \
supervisor \
&& apt-get clean \
&& rm -rf /var/lib/apt/lists/*
USER airflow
COPY requirements.txt /tmp/requirements.txt
RUN pip install --no-cache-dir -r /tmp/requirements.txt
RUN pip install --no-cache-dir \
psycopg2-binary \
apache-airflow-providers-postgres
ENV AIRFLOW_HOME=/opt/airflow
ENV AIRFLOW__CORE__EXECUTOR=SequentialExecutor
ENV AIRFLOW__CORE__LOAD_EXAMPLES=false
ENV AIRFLOW__CORE__ENABLE_XCOM_PICKLING=true
ENV AIRFLOW__WEBSERVER__EXPOSE_CONFIG=true
# copy all code into image (standalone - no volume mounts needed)
COPY --chown=airflow:root experiments/airflow/dags ${AIRFLOW_HOME}/dags
COPY --chown=airflow:root experiments/procesing ${AIRFLOW_HOME}/procesing
COPY --chown=airflow:root lib ${AIRFLOW_HOME}/lib
RUN mkdir -p ${AIRFLOW_HOME}/logs ${AIRFLOW_HOME}/plugins
# copy entrypoint script
COPY --chown=airflow:root docker/airflow-railway-entrypoint.sh /entrypoint.sh
USER root
RUN chmod +x /entrypoint.sh
USER airflow
EXPOSE 8080
ENTRYPOINT ["/entrypoint.sh"]

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@@ -0,0 +1,26 @@
FROM python:3.11-slim
WORKDIR /app
# Install system dependencies including graphviz
RUN apt-get update && apt-get install -y \
gcc \
g++ \
graphviz \
libgraphviz-dev \
&& rm -rf /var/lib/apt/lists/*
# Copy and install Python dependencies
COPY backend/provider/requirements.txt /app/
RUN pip install --no-cache-dir -r requirements.txt
# Copy application code into image
COPY lib/ /app/lib/
COPY experiments/procesing/ /app/procesing/
COPY backend/provider/ /app/provider/
ENV PYTHONPATH=/app:/app/lib:/app/procesing
WORKDIR /app/provider
CMD ["uvicorn", "app:app", "--host", "0.0.0.0", "--port", "5001"]

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@@ -0,0 +1,20 @@
#!/bin/bash
set -e
# init db and create admin user on first run
airflow db migrate
# create admin user if not exists
airflow users create \
--username "${AIRFLOW_ADMIN_USER:-admin}" \
--password "${AIRFLOW_ADMIN_PASSWORD:-admin}" \
--firstname Admin \
--lastname User \
--role Admin \
--email admin@example.com || true
# start scheduler in background
airflow scheduler &
# start webserver in foreground (Railway needs one foreground process)
exec airflow webserver --port ${PORT:-8080}

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@@ -0,0 +1,8 @@
# Products
# Agents
# Pipeline
Our pipeline technically should follow principles in a style like this:
- Each step should be defined as an inheriting child of an scikit pipeline step, the granularity of the steps is dictated by the following: a step should be a transformation, augmentation or computation independently, no single stage should run multiple in-itself. This way we can modularize properly all the components and track properly in airflow. A stage can be defined as an sklearn step but then must be transalted to a function that takes the context in our DAG of airflow. All parametrization must be done via contexts.

View File

@@ -38,7 +38,10 @@ def get_agent(agent_type: AgentTypes, **kwargs) -> Agent:
if __name__ == "__main__":
import asyncio
JTBD= "Name all the products on this site and try to find out more about each product by clicking into them (they might not open)"
agent = get_agent(AgentTypes.GENERIC_BROWSER_USE_AGENT, goal=JTBD, url="http://localhost:3000/products", timeout=300)
JTBD= "Find me the cheapest room in Madrid for 2 people in the next two days, review each hotel room in detail and then add it to cart."
agent = get_agent(AgentTypes.GENERIC_BROWSER_USE_AGENT,
goal=JTBD,
url="http://localhost:3000/start-task?uuid=d10f5ab3-a7b7-4e97-8d94-ab06f1537c0a",
timeout=300)
R=asyncio.run(agent.act())
print(R)

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@@ -0,0 +1,210 @@
from airflow import DAG
from airflow.operators.python import PythonOperator
from airflow.utils.dates import days_ago
from datetime import timedelta
import pandas as pd
import logging
import sys
import pickle
sys.path.insert(0, '/opt/airflow')
from procesing.context import PipelineContext
from procesing.providers import SupabaseProvider, BackendAPIProvider
from procesing.steps import (
FetchInteractionsStep,
FetchPriceLogsStep,
ComputeDemandStep,
AggregatePriceLogsStep,
JoinProductFeaturesStep,
)
from procesing.pricers.simple import SimpleSurgePricer
DEFAULT_ARGS = {
'owner': 'phantom-research',
'depends_on_past': False,
'email_on_failure': False,
'email_on_retry': False,
'retries': 2,
'retry_delay': timedelta(minutes=5),
}
class CompositeProvider(SupabaseProvider, BackendAPIProvider):
def __init__(self):
SupabaseProvider.__init__(self)
BackendAPIProvider.__init__(self)
def _get_provider():
return CompositeProvider()
def _make_task_callables(store_mode: str):
"""Generate task callables bound to a specific store_mode."""
def get_context(**kwargs):
return PipelineContext(provider=_get_provider(), store_mode=store_mode)
def fetch_interactions(**kwargs):
ctx = get_context(**kwargs)
df = FetchInteractionsStep(ctx).transform(None)
kwargs['ti'].xcom_push(key='interactions_raw', value=pickle.dumps(df))
logging.info(f"[{store_mode}] Fetched {len(df)} interaction records")
return len(df)
def fetch_price_logs(**kwargs):
ctx = get_context(**kwargs)
df = FetchPriceLogsStep(ctx).transform(None)
kwargs['ti'].xcom_push(key='price_logs_raw', value=pickle.dumps(df))
logging.info(f"[{store_mode}] Fetched {len(df)} price records")
return len(df)
def compute_demand(**kwargs):
ti = kwargs['ti']
df = pickle.loads(ti.xcom_pull(key='interactions_raw'))
ctx = get_context(**kwargs)
demand_df = ComputeDemandStep(ctx).transform(df)
ti.xcom_push(key='demand_data', value=pickle.dumps(demand_df))
logging.info(f"[{store_mode}] Computed demand for {len(demand_df)} products")
return len(demand_df)
def aggregate_price_logs(**kwargs):
ti = kwargs['ti']
df = pickle.loads(ti.xcom_pull(key='price_logs_raw'))
ctx = get_context(**kwargs)
price_df = AggregatePriceLogsStep(ctx).transform(df)
ti.xcom_push(key='price_data', value=pickle.dumps(price_df))
logging.info(f"[{store_mode}] Aggregated price logs for {len(price_df)} products")
return len(price_df)
def join_product_features(**kwargs):
ti = kwargs['ti']
demand_df = pickle.loads(ti.xcom_pull(key='demand_data'))
price_df = pickle.loads(ti.xcom_pull(key='price_data'))
ctx = get_context(**kwargs)
joined_df = JoinProductFeaturesStep(ctx).transform((demand_df, price_df))
ti.xcom_push(key='product_features', value=pickle.dumps(joined_df))
logging.info(f"[{store_mode}] Joined features for {len(joined_df)} products")
return len(joined_df)
def apply_surge_pricing(**kwargs):
ti = kwargs['ti']
product_features = pickle.loads(ti.xcom_pull(key='product_features'))
dag_conf = kwargs.get('dag_run').conf if kwargs.get('dag_run') else {}
data = product_features.rename(columns={'demand_score': 'demand'})
surge_pricer = SimpleSurgePricer(
high_threshold=dag_conf.get('high_threshold', 10),
low_threshold=dag_conf.get('low_threshold', 2),
surge_multiplier=dag_conf.get('surge_multiplier', 1.2),
discount_multiplier=dag_conf.get('discount_multiplier', 0.9)
)
surge_pricer.fit(data)
data['optimal_price'] = surge_pricer.predict()
prices_df = data[['productId', 'price', 'base_price', 'optimal_price', 'demand']].rename(columns={
'price': 'current_price', 'demand': 'demand_score'
})
ti.xcom_push(key='predicted_prices', value=pickle.dumps(prices_df))
logging.info(f"[{store_mode}] Applied surge pricing for {len(prices_df)} products")
return len(prices_df)
def publish_results(**kwargs):
ti = kwargs['ti']
prices_df = pickle.loads(ti.xcom_pull(key='predicted_prices'))
from lib.model_registry import ModelRegistry
registry = ModelRegistry()
dag_conf = kwargs.get('dag_run').conf if kwargs.get('dag_run') else {}
metadata = {
'timestamp': pd.Timestamp.now().isoformat(),
'store_mode': store_mode,
'dag_run_id': kwargs['dag_run'].run_id if kwargs.get('dag_run') else 'manual',
'pricing_method': 'surge',
'high_threshold': dag_conf.get('high_threshold', 10),
'low_threshold': dag_conf.get('low_threshold', 2),
'surge_multiplier': dag_conf.get('surge_multiplier', 1.2),
'discount_multiplier': dag_conf.get('discount_multiplier', 0.9)
}
registry.publish_prices(prices_df, model_name=f'{store_mode}_latest', metadata=metadata)
logging.info(f"[{store_mode}] Published surge pricing for {len(prices_df)} products")
return {
'n_products': len(prices_df),
'registry_status': 'success',
'store_mode': store_mode,
'mean_demand': float(prices_df['demand_score'].mean()) if 'demand_score' in prices_df.columns else None
}
return {
'fetch_interactions': fetch_interactions,
'fetch_price_logs': fetch_price_logs,
'compute_demand': compute_demand,
'aggregate_price_logs': aggregate_price_logs,
'join_product_features': join_product_features,
'apply_surge_pricing': apply_surge_pricing,
'publish_results': publish_results,
}
def create_surge_pricing_dag(store_mode: str) -> DAG:
"""Factory: generates a surge pricing DAG for a given store_mode."""
callables = _make_task_callables(store_mode)
dag = DAG(
f'surge_pricing_{store_mode}',
default_args=DEFAULT_ARGS,
description=f'Surge pricing pipeline for {store_mode} store mode',
schedule_interval='*/15 * * * *',
start_date=days_ago(1),
catchup=False,
max_active_runs=1,
tags=['pricing', 'surge', 'research', store_mode],
)
with dag:
t_fetch_interactions = PythonOperator(
task_id='fetch_interactions',
python_callable=callables['fetch_interactions'],
provide_context=True,
)
t_fetch_price_logs = PythonOperator(
task_id='fetch_price_logs',
python_callable=callables['fetch_price_logs'],
provide_context=True,
)
t_compute_demand = PythonOperator(
task_id='compute_demand',
python_callable=callables['compute_demand'],
provide_context=True,
)
t_aggregate_prices = PythonOperator(
task_id='aggregate_price_logs',
python_callable=callables['aggregate_price_logs'],
provide_context=True,
)
t_join_features = PythonOperator(
task_id='join_product_features',
python_callable=callables['join_product_features'],
provide_context=True,
)
t_surge_pricing = PythonOperator(
task_id='apply_surge_pricing',
python_callable=callables['apply_surge_pricing'],
provide_context=True,
)
t_publish = PythonOperator(
task_id='publish_results',
python_callable=callables['publish_results'],
provide_context=True,
)
t_fetch_interactions >> t_compute_demand
t_fetch_price_logs >> t_aggregate_prices
[t_compute_demand, t_aggregate_prices] >> t_join_features >> t_surge_pricing >> t_publish
return dag
# instantiate DAGs for Airflow to discover
dag_airline = create_surge_pricing_dag('airline')
dag_hotel = create_surge_pricing_dag('hotel')

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@@ -0,0 +1,237 @@
from airflow import DAG
from airflow.operators.python import PythonOperator
from airflow.utils.dates import days_ago
from datetime import timedelta
import pandas as pd
import logging
import sys
import pickle
import io
# add parent dir to path so procesing package can be imported
sys.path.insert(0, '/opt/airflow')
from procesing.context import PipelineContext
from procesing.providers import SupabaseProvider, BackendAPIProvider
from procesing.steps import (
FetchInteractionsStep,
FetchPriceLogsStep,
ComputeDemandStep,
AggregatePriceLogsStep,
JoinProductFeaturesStep,
)
from procesing.pricers.simple import SimpleSurgePricer
default_args = {
'owner': 'phantom-research',
'depends_on_past': False,
'email_on_failure': False,
'email_on_retry': False,
'retries': 2,
'retry_delay': timedelta(minutes=5),
}
def get_provider():
"""Factory to create composite provider"""
class CompositeProvider(SupabaseProvider, BackendAPIProvider): # TODO: Fix this into one global provider singelton instead of multiple inheritance declarations acoss the codebase
def __init__(self):
SupabaseProvider.__init__(self)
BackendAPIProvider.__init__(self)
return CompositeProvider()
def get_context(**kwargs):
"""Build pipeline context from Airflow config"""
dag_conf = kwargs.get('dag_run').conf if kwargs.get('dag_run') else {}
return PipelineContext(
provider=get_provider(),
store_mode=dag_conf.get('store_mode', 'hotel'),
)
# atomic task functions (each wraps one sklearn step)
def fetch_interactions(**kwargs):
"""Task: Fetch interaction data from Kafka"""
context = get_context(**kwargs)
step = FetchInteractionsStep(context)
df = step.transform(None)
kwargs['ti'].xcom_push(key='interactions_raw', value=pickle.dumps(df))
logging.info(f"Fetched {len(df)} interaction records")
return len(df)
def fetch_price_logs(**kwargs):
"""Task: Fetch price logs from Kafka"""
context = get_context(**kwargs)
step = FetchPriceLogsStep(context)
df = step.transform(None)
kwargs['ti'].xcom_push(key='price_logs_raw', value=pickle.dumps(df))
logging.info(f"Fetched {len(df)} price records")
return len(df)
def compute_demand(**kwargs):
"""Task: Compute demand scores from interactions"""
ti = kwargs['ti']
df = pickle.loads(ti.xcom_pull(key='interactions_raw'))
context = get_context(**kwargs)
step = ComputeDemandStep(context)
demand_df = step.transform(df)
# TODO: clear the xcom
ti.xcom_push(key='demand_data', value=pickle.dumps(demand_df))
logging.info(f"Computed demand for {len(demand_df)} products")
return len(demand_df)
def aggregate_price_logs(**kwargs):
"""Task: Aggregate price logs"""
ti = kwargs['ti']
df = pickle.loads(ti.xcom_pull(key='price_logs_raw'))
context = get_context(**kwargs)
step = AggregatePriceLogsStep(context)
price_df = step.transform(df)
ti.xcom_push(key='price_data', value=pickle.dumps(price_df))
logging.info(f"Aggregated price logs for {len(price_df)} products")
return len(price_df)
def join_product_features(**kwargs):
"""Task: Join demand and price data"""
ti = kwargs['ti']
demand_df = pickle.loads(ti.xcom_pull(key='demand_data'))
price_df = pickle.loads(ti.xcom_pull(key='price_data'))
context = get_context(**kwargs)
step = JoinProductFeaturesStep(context)
joined_df = step.transform((demand_df, price_df))
ti.xcom_push(key='product_features', value=pickle.dumps(joined_df))
logging.info(f"Joined features for {len(joined_df)} products")
return len(joined_df)
def apply_surge_pricing(**kwargs):
"""Task: Apply surge pricing rules to generate optimal prices"""
ti = kwargs['ti']
product_features = pickle.loads(ti.xcom_pull(key='product_features'))
dag_conf = kwargs.get('dag_run').conf if kwargs.get('dag_run') else {}
# rename demand_score to demand for pricer compatibility
data = product_features.rename(columns={'demand_score': 'demand'})
surge_pricer = SimpleSurgePricer(
high_threshold=dag_conf.get('high_threshold', 10),
low_threshold=dag_conf.get('low_threshold', 2),
surge_multiplier=dag_conf.get('surge_multiplier', 1.2),
discount_multiplier=dag_conf.get('discount_multiplier', 0.9)
)
surge_pricer.fit(data)
data['optimal_price'] = surge_pricer.predict()
prices_df = data[['productId', 'price', 'base_price', 'optimal_price', 'demand']].rename(columns={
'price': 'current_price',
'demand': 'demand_score'
})
ti.xcom_push(key='predicted_prices', value=pickle.dumps(prices_df))
logging.info(f"Applied surge pricing for {len(prices_df)} products")
return len(prices_df)
def publish_results(**kwargs):
"""Task: Publish surge pricing results to registry"""
ti = kwargs['ti']
prices_df = pickle.loads(ti.xcom_pull(key='predicted_prices'))
sys.path.insert(0, '/opt/airflow')
from lib.model_registry import ModelRegistry
registry = ModelRegistry()
dag_conf = kwargs.get('dag_run').conf if kwargs.get('dag_run') else {}
metadata = {
'timestamp': pd.Timestamp.now().isoformat(),
'store_mode': dag_conf.get('store_mode', 'hotel'),
'dag_run_id': kwargs['dag_run'].run_id if kwargs.get('dag_run') else 'manual',
'pricing_method': 'surge',
'high_threshold': dag_conf.get('high_threshold', 10),
'low_threshold': dag_conf.get('low_threshold', 2),
'surge_multiplier': dag_conf.get('surge_multiplier', 1.2),
'discount_multiplier': dag_conf.get('discount_multiplier', 0.9)
}
registry.publish_prices(prices_df, model_name='latest', metadata=metadata)
logging.info(f"Published surge pricing for {len(prices_df)} products")
return {
'n_products': len(prices_df),
'registry_status': 'success',
'mean_demand': float(prices_df['demand_score'].mean()) if 'demand_score' in prices_df.columns else None
}
# DAG definition
with DAG(
'surge_pricing_pipeline',
default_args=default_args,
description='Simple surge pricing pipeline: demand aggregation + rule-based pricing',
schedule_interval='*/15 * * * *',
start_date=days_ago(1),
catchup=False,
max_active_runs=1,
tags=['pricing', 'surge', 'research', 'simplified'],
) as dag:
# parallel data fetching
t_fetch_interactions = PythonOperator(
task_id='fetch_interactions',
python_callable=fetch_interactions,
provide_context=True,
)
t_fetch_price_logs = PythonOperator(
task_id='fetch_price_logs',
python_callable=fetch_price_logs,
provide_context=True,
)
# compute demand from interactions
t_compute_demand = PythonOperator(
task_id='compute_demand',
python_callable=compute_demand,
provide_context=True,
)
# aggregate price logs
t_aggregate_prices = PythonOperator(
task_id='aggregate_price_logs',
python_callable=aggregate_price_logs,
provide_context=True,
)
# join demand and prices
t_join_features = PythonOperator(
task_id='join_product_features',
python_callable=join_product_features,
provide_context=True,
)
# apply surge pricing
t_surge_pricing = PythonOperator(
task_id='apply_surge_pricing',
python_callable=apply_surge_pricing,
provide_context=True,
)
# publish to registry
t_publish = PythonOperator(
task_id='publish_results',
python_callable=publish_results,
provide_context=True,
)
# dependency graph: parallel fetch -> process -> join -> surge -> publish
t_fetch_interactions >> t_compute_demand
t_fetch_price_logs >> t_aggregate_prices
[t_compute_demand, t_aggregate_prices] >> t_join_features >> t_surge_pricing >> t_publish

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@@ -1,19 +1,51 @@
from .extract import (
KafkaDataFetcher,
ExperimentJoiner,
EventTitleAugmenter,
from procesing.context import PipelineContext
from procesing.providers import DataProvider, SupabaseProvider, BackendAPIProvider
from procesing.steps import (
BaseContextStep,
FetchInteractionsStep,
FetchPriceLogsStep,
FetchExperimentsStep,
JoinExperimentsStep,
CreatePriceBucketsStep,
AugmentEventNamesStep,
ChunkByTimeWindowStep,
ComputeDemandStep,
ComputeDemandForChunksStep,
AggregatePriceLogsStep,
# StateSpace,
# BuildStateSpaceStep,
FitPricingFunctionStep,
PredictPricesStep,
)
from procesing.pipelines import (
interaction_extraction_pipeline,
price_extraction_pipeline,
pricing_pipeline,
full_pipeline,
)
from .demand import DemandEstimator
from .mapping import SessionTransitionProbMatrixTransformer, render_graph
from .pipeline import etl_pipeline, pricing_pipeline
__all__ = [
'KafkaDataFetcher',
'ExperimentJoiner',
'EventTitleAugmenter',
'DemandEstimator',
'SessionTransitionProbMatrixTransformer',
'render_graph',
'etl_pipeline',
'PipelineContext',
'DataProvider',
'SupabaseProvider',
'BackendAPIProvider',
'BaseContextStep',
'FetchInteractionsStep',
'FetchPriceLogsStep',
'FetchExperimentsStep',
'JoinExperimentsStep',
'CreatePriceBucketsStep',
'AugmentEventNamesStep',
'ChunkByTimeWindowStep',
'ComputeDemandStep',
'ComputeDemandForChunksStep',
'AggregatePriceLogsStep',
# 'StateSpace',
# 'BuildStateSpaceStep',
'FitPricingFunctionStep',
'PredictPricesStep',
'interaction_extraction_pipeline',
'price_extraction_pipeline',
'pricing_pipeline',
'full_pipeline',
]

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@@ -0,0 +1,34 @@
from typing import Any, Dict
import pandas as pd
from procesing.providers.base import DataProvider
class PipelineContext:
"""
Context for pipeline execution holding config, provider, and cached data.
Enables dependency injection and eliminates global state.
"""
def __init__(self,
provider: DataProvider,
store_mode: str,
window_size: str = '30s',
**config):
self.provider = provider
self.store_mode = store_mode
self.window_size = window_size
self.config = config
self._cache: Dict[str, Any] = {}
def get_cached(self, key: str, default=None):
return self._cache.get(key, default)
def cache(self, key: str, value):
self._cache[key] = value
return value
@property
def products(self) -> pd.DataFrame:
"""Lazy-load and cache product catalog, single fetch per pipeline run"""
if 'products' not in self._cache:
self._cache['products'] = self.provider.fetch_products(self.store_mode)
return self._cache['products']

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@@ -1,39 +0,0 @@
from sklearn.base import BaseEstimator, TransformerMixin
import numpy as np
import pandas as pd
from supabase import create_client, Client
import pandas as pd
import os
SUPABASE_URL = os.getenv("NEXT_PUBLIC_SUPABASE_URL")
SUPABASE_KEY = os.getenv("NEXT_PUBLIC_SUPABASE_ANON_KEY")
supabase: Client = create_client(SUPABASE_URL, SUPABASE_KEY)
class DemandEstimator(BaseEstimator, TransformerMixin):
def __init__(self,
store_mode:str='hotel',
session_filter:str="",
experiment_filter:str=""):
self.store=store_mode
self.session_filter=session_filter if len(session_filter)>0 else None
self.experiment_filter=experiment_filter if len(experiment_filter)>0 else None
def fit(self, X):
return self
def transform(self, interactions : pd.DataFrame):
if interactions.empty:
return pd.DataFrame(columns=["productId", "demand_score"])
if self.session_filter:
interactions = interactions[interactions['sessionId'] == self.session_filter]
if self.experiment_filter:
interactions = interactions[interactions['experimentId'] == self.experiment_filter]
products=supabase.table(f'{self.store}_products').select("id, room_type, date_index, metadata, availability").execute()
products = pd.DataFrame(products.data)
unique_products = products['id'].unique()
# TODO: improve demand score calculation rather than just counting interactions (use weights..)
# while maintaining simplicity of a simple cross tab approach
product_demand = pd.crosstab(interactions['productId'], "no_of_interactions")
product_demand = product_demand.reindex(unique_products, fill_value=0).reset_index()
product_demand.columns = ['productId', 'demand_score']
return product_demand

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@@ -0,0 +1,332 @@
import numpy as np
import pandas as pd
from typing import List, Dict, Optional
from sklearn.base import BaseEstimator, TransformerMixin
from supabase import create_client, Client
import os
SUPABASE_URL = os.getenv("NEXT_PUBLIC_SUPABASE_URL", "")
SUPABASE_KEY = os.getenv("NEXT_PUBLIC_SUPABASE_ANON_KEY", "")
supabase: Client = create_client(SUPABASE_URL, SUPABASE_KEY)
class TemporalElasticityEstimator(BaseEstimator, TransformerMixin):
"""
Compute price elasticity from time-series demand and price data.
Elasticity = (% change in quantity) / (% change in price)
Works with chunked time-window data from ChunkInteractionsIntoSteps.
"""
def __init__(self,
method:str='point',
min_observations:int=2,
smooth_window:Optional[int]=None):
"""
Args:
method: 'point' (point elasticity) or 'arc' (arc elasticity)
min_observations: min data points needed per product
smooth_window: if set, apply rolling avg smoothing to time series
"""
self.method = method
self.min_observations = min_observations
self.smooth_window = smooth_window
def fit(self, X):
return self
def transform(self,
demand_chunks: List[Dict],
price_chunks: List[Dict],
store_mode: str = 'hotel') -> pd.DataFrame:
"""
Args:
demand_chunks: list from ChunkInteractionsIntoSteps + DemandEstimator
each item: {'window_start', 'window_end', 'demand_vector'}
price_chunks: list of dicts with {'window_start', 'window_end', 'price_vector'}
store_mode: 'hotel' or 'airline' to fetch all products
Returns:
df with [productId, elasticity, std_error, n_observations]
"""
# fetch all products from database
all_products = supabase.table(f'{store_mode}_products').select("id").execute()
all_product_ids = [p['id'] for p in all_products.data]
aligned = self._align_chunks(demand_chunks, price_chunks)
if not aligned:
# return all products with zero elasticity
return pd.DataFrame({
'productId': all_product_ids,
'elasticity': 0.0,
'std_error': 0.0,
'n_obs': 0
})
# build time series per product
product_series = self._build_product_timeseries(aligned)
# compute elasticity per product
elasticities = []
for pid, series in product_series.items():
if len(series) < self.min_observations:
# assign 0 elasticity for products with insufficient data
elasticities.append({
'productId': pid,
'elasticity': 0.0,
'std_error': 0.0,
'n_obs': len(series)
})
continue
# apply smoothing if requested
if self.smooth_window and len(series) >= self.smooth_window:
series = self._smooth_series(series, self.smooth_window)
elast = self._compute_elasticity(series)
elasticities.append({
'productId': pid,
'elasticity': elast['value'],
'std_error': elast.get('std_error', 0.0),
'n_obs': len(series)
})
result_df = pd.DataFrame(elasticities)
# fill in missing products with zero elasticity
observed_pids = set(result_df['productId'].unique())
missing_pids = [pid for pid in all_product_ids if pid not in observed_pids]
if missing_pids:
missing_df = pd.DataFrame({
'productId': missing_pids,
'elasticity': 0.0,
'std_error': 0.0,
'n_obs': 0
})
result_df = pd.concat([result_df, missing_df], ignore_index=True)
return result_df
def _align_chunks(self, demand_chunks, price_chunks):
"""Align demand and price data by matching time windows."""
aligned = []
# create lookup for price chunks by window_start
price_lookup = {chunk['window_start']: chunk for chunk in price_chunks}
for demand_chunk in demand_chunks:
window_start = demand_chunk['window_start']
if window_start in price_lookup:
aligned.append({
'window_start': window_start,
'window_end': demand_chunk['window_end'],
'demand': demand_chunk['demand_vector'],
'prices': price_lookup[window_start]['price_vector']
})
return aligned
def _build_product_timeseries(self, aligned_chunks):
"""Build time series [price, quantity] per product."""
# vectorize chunk merging instead of iterating rows
all_merged = []
for chunk in aligned_chunks:
merged = chunk['demand'].merge(chunk['prices'], on='productId', how='inner')
merged['timestamp'] = chunk['window_start']
all_merged.append(merged[['productId', 'timestamp', 'price', 'demand_score']])
if not all_merged:
return {}
# concat all chunks and group by productId in one pass
combined = pd.concat(all_merged, ignore_index=True)
series_by_product = {
pid: group[['timestamp', 'price', 'demand_score']].rename(
columns={'demand_score': 'quantity'}
).to_dict('records')
for pid, group in combined.groupby('productId')
}
return series_by_product
def _smooth_series(self, series, window):
"""Apply rolling average smoothing."""
df = pd.DataFrame(series)
df['price_smooth'] = df['price'].rolling(window=window, center=True).mean()
df['quantity_smooth'] = df['quantity'].rolling(window=window, center=True).mean()
df = df.dropna()
return [{'timestamp': row['timestamp'],
'price': row['price_smooth'],
'quantity': row['quantity_smooth']}
for _, row in df.iterrows()]
def _compute_elasticity(self, series):
"""Compute elasticity from time series."""
if len(series) < 2:
return {'value': 0.0, 'std_error': 0.0}
prices = np.array([s['price'] for s in series])
quantities = np.array([s['quantity'] for s in series])
# filter out zero/negative values
valid = (prices > 0) & (quantities > 0)
if valid.sum() < 2:
return {'value': 0.0, 'std_error': 0.0}
prices = prices[valid]
quantities = quantities[valid]
if self.method == 'point':
return self._point_elasticity(prices, quantities)
elif self.method == 'arc':
return self._arc_elasticity(prices, quantities)
else:
raise ValueError(f"Unknown method: {self.method}")
def _point_elasticity(self, prices, quantities):
"""
Point elasticity using log-log regression.
log(Q) = a + b*log(P), elasticity = b
"""
if len(prices) < 2:
return {'value': 0.0, 'std_error': 0.0}
log_p = np.log(prices)
log_q = np.log(quantities)
# simple linear regression
if log_p.std() == 0:
return {'value': 0.0, 'std_error': 0.0}
cov = np.cov(log_p, log_q)[0, 1]
var = np.var(log_p)
b = cov / var
# std error estimate (avoid div by zero)
if len(prices) <= 2:
se_b = 0.0
else:
residuals = log_q - (log_q.mean() + b * (log_p - log_p.mean()))
mse = (residuals ** 2).sum() / (len(prices) - 2)
se_b = np.sqrt(mse / (len(prices) * var))
return {'value': b, 'std_error': se_b}
def _arc_elasticity(self, prices, quantities):
"""
Arc elasticity: average of period-over-period elasticities.
E_t = (ΔQ/Q_avg) / (ΔP/P_avg)
"""
elasticities = []
for i in range(1, len(prices)):
p1, p2 = prices[i-1], prices[i]
q1, q2 = quantities[i-1], quantities[i]
p_avg = (p1 + p2) / 2
q_avg = (q1 + q2) / 2
if p_avg == 0 or q_avg == 0:
continue
delta_p = p2 - p1
delta_q = q2 - q1
if delta_p == 0:
continue
e = (delta_q / q_avg) / (delta_p / p_avg)
elasticities.append(e)
if not elasticities:
return None
return {
'value': np.mean(elasticities),
'std_error': np.std(elasticities) / np.sqrt(len(elasticities))
}
def aggregate_price_logs(price_logs: pd.DataFrame,
window_size: str = '1H',
ts_col: str = 'ts',
store_mode : str = 'hotel') -> List[Dict]:
"""
Recover price vectors treating prices as persistent state changes.
Prices are set-operations that persist until next change. For each window:
- If price logs exist: average all changes within window
- If no logs: carry forward last price before window end
Args:
price_logs: df with [productId, price, ts, ...]
window_size: time window size matching ChunkInteractionsIntoSteps
ts_col: timestamp column name
Returns:
list of dicts with {'window_start', 'window_end', 'price_vector'}
where price_vector is df with [productId, price]
"""
if price_logs.empty:
return []
df = price_logs.copy()
if not pd.api.types.is_datetime64_any_dtype(df[ts_col]):
df[ts_col] = pd.to_datetime(df[ts_col])
df = df.sort_values([ts_col, 'productId'])
all_products=supabase.table(f'{store_mode}_products').select("id, room_type, date_index, metadata, availability").execute()
all_products = pd.DataFrame(all_products.data)
unique_products = all_products['id'].unique()
# generate windows across data range
min_time, max_time = df[ts_col].min(), df[ts_col].max()
windows = pd.date_range(
start=min_time.floor(window_size),
end=max_time,
freq=window_size
)
chunks = []
for window_start in windows:
window_end = window_start + pd.Timedelta(window_size)
price_vector = []
# all products with price history by window_end
#historical_products = df[df[ts_col] < window_end]['productId'].unique()
historical_products = unique_products.tolist()
for pid in historical_products:
product_data = df[df['productId'] == pid]
# logs within window
in_window = product_data[
(product_data[ts_col] >= window_start) &
(product_data[ts_col] < window_end)
]
if not in_window.empty:
# average changes within window
price = in_window['price'].mean()
else:
# carry forward: last price before window end
before_window = product_data[product_data[ts_col] < window_end]
if before_window.empty:
continue
price = before_window['price'].iloc[-1]
price_vector.append({'productId': pid, 'price': price})
if price_vector:
chunks.append({
'window_start': window_start,
'window_end': window_end,
'price_vector': pd.DataFrame(price_vector)
})
return chunks

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@@ -1,112 +0,0 @@
import pandas as pd
import json
import numpy as np
import os
import requests
from dotenv import load_dotenv
from sklearn.base import BaseEstimator, TransformerMixin
from supabase import create_client, Client
load_dotenv()
BACKEND_URL = os.getenv("BACKEND_URL", "http://localhost:5000")
SUPABASE_URL = os.getenv("NEXT_PUBLIC_SUPABASE_URL")
SUPABASE_KEY = os.getenv("NEXT_PUBLIC_SUPABASE_ANON_KEY")
N_PRICE_BUCKETS = 5
supabase: Client = create_client(SUPABASE_URL, SUPABASE_KEY)
class KafkaDataFetcher(BaseEstimator, TransformerMixin):
def fit(self, X=None, y=None):
return self
def transform(self, X=None):
resp = requests.get(f"{BACKEND_URL}/api/kafka/dump")
resp.raise_for_status()
data = resp.json()
if not data.get('success') or not data.get('data'):
return pd.DataFrame()
df = pd.DataFrame(data['data'])
# explode metadata col json
if 'metadata' in df.columns:
df = df.join(pd.json_normalize(df.pop("metadata"), sep=".").add_prefix("metadata_"))
df = df.dropna(subset=['eventName'])
# remape dateIndex
df['dateIndex'] = df['metadata_dateIndex'].astype('Int64')
return df
class ExperimentJoiner(BaseEstimator, TransformerMixin):
def fit(self, X=None, y=None):
return self
def transform(self, df):
if df.empty or 'experimentId' not in df.columns:
return df
unique_exp_ids = df['experimentId'].dropna().unique()
if len(unique_exp_ids) == 0:
return df
resp = supabase.table('experiments').select(
'id, subject_name, xp_human_only, xp_market_mode, xp_task_id, task:tasks(task_name, task_description, task_def_of_done)'
).in_('id', unique_exp_ids.tolist()).execute()
if not resp.data:
return df
exp_df = pd.DataFrame(resp.data)
# flatten task nested object if present
if 'task' in exp_df.columns and exp_df['task'].notnull().any():
task_normalized = pd.json_normalize(exp_df['task'].dropna())
task_normalized.index = exp_df[exp_df['task'].notnull()].index
exp_df = exp_df.drop(columns=['task']).join(task_normalized, rsuffix='_task')
# rename experiment columns for clarity
exp_df = exp_df.rename(columns={
'id': 'experimentId',
'subject_name': 'exp_subject',
'xp_human_only': 'exp_human_only',
'xp_market_mode': 'exp_market_mode',
'xp_task_id': 'exp_task_id'
})
df = df.merge(exp_df, on='experimentId', how='left')
return df
class EventTitleAugmenter(BaseEstimator, TransformerMixin):
def fit(self, X=None, y=None):
return self
def transform(self, df):
# from taking standard view_item_page in eventName to view_item_page_{metadata_schema}
# we want metadata schema to create product specific event names
# only create price buckets if we have enough unique prices
if df["metadata_price"].notnull().sum() > 0:
try:
price_buckets = pd.qcut(
df["metadata_price"],
q=N_PRICE_BUCKETS,
labels=[f"PB_{i+1}" for i in range(N_PRICE_BUCKETS)],
duplicates='drop' # handle duplicate bin edges
)
except ValueError:
# fallback: if still not enough unique values, use cut with fixed ranges or just use raw price
price_buckets = df["metadata_price"].apply(lambda x: f"P_{int(x)}" if pd.notnull(x) else "")
else:
price_buckets = pd.Series([""] * len(df), index=df.index)
# metadata_schema: _product_id@price_bucket_{i} only if we have product metadata otherswise keep original event name
# TODO: make this adaptive, if we have hover_over_title we append the title, if its view_page we say which page
df["metadata_schema"] = np.where(
df["productId"].notnull() & df["metadata_price"].notnull(),
"_" + df["productId"].astype(str) + "@" + price_buckets.astype(str),
""
)
df["eventName"] = df["eventName"] + df["metadata_schema"].astype(str)
return df

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@@ -1,158 +0,0 @@
import numpy as np
import pandas as pd
from sklearn.base import BaseEstimator, TransformerMixin
def build_transition_prob_matrix(df: pd.DataFrame):
df = df.dropna(subset=['eventName'])
events = df['eventName'].tolist()
labels = pd.Index(events).unique().tolist()
idx = {e:i for i,e in enumerate(labels)}
M = np.zeros((len(labels), len(labels)), dtype=float)
for a, b in zip(events, events[1:]):
M[idx[a], idx[b]] += 1
row_sums = M.sum(axis=1, keepdims=True)
with np.errstate(divide='ignore', invalid='ignore'):
P = np.divide(M, row_sums, where=row_sums>0) # row-normalized
return P, labels
# https://medium.com/data-science/time-series-data-markov-transition-matrices-7060771e362b
from graphviz import Digraph
import numpy as np
import pandas as pd
def _as_prob_df(matrix, labels=None):
"""Return a square DataFrame with index=columns=labels."""
if isinstance(matrix, pd.DataFrame):
# Ensure square and aligned
assert (matrix.index == matrix.columns).all(), "Index/columns must match."
return matrix
matrix = np.asarray(matrix, dtype=float)
assert matrix.shape[0] == matrix.shape[1], "Matrix must be square."
if labels is None:
raise ValueError("labels are required when matrix is not a DataFrame")
assert len(labels) == matrix.shape[0], "labels length must match matrix size."
return pd.DataFrame(matrix, index=list(labels), columns=list(labels))
def _df_to_edgelist(P: pd.DataFrame, threshold=0.0, round_digits=2):
"""Build weighted edges > threshold."""
edges = []
for src in P.index:
for dst in P.columns:
w = float(P.loc[src, dst])
if w > threshold:
edges.append((str(src), str(dst), f"{w:.{round_digits}f}"))
return edges
def render_graph(fname, matrix, ls_index=None, threshold=0.0, fmt="svg", view=False):
"""
fname: output file stem (no extension)
matrix: NumPy array or pandas DataFrame of transition PROBABILITIES
ls_index: ordered labels (required if matrix is not a DataFrame)
threshold: hide edges with weight <= threshold
fmt: 'svg'|'png'|'pdf' etc.
view: open after rendering
"""
P = _as_prob_df(matrix, labels=ls_index)
edges = _df_to_edgelist(P, threshold=threshold)
g = Digraph(format=fmt)
g.attr(rankdir="LR", size="30")
g.attr("node", shape="circle")
# ensure isolated nodes appear
for node in P.index:
g.node(str(node), width="1", height="1")
for src, dst, label in edges:
g.edge(src, dst, label=label)
g.render(fname, view=view, cleanup=True)
return g
class TransitionProbMatrixTransformer(BaseEstimator, TransformerMixin):
def __init__(self, threshold=0.0):
self.threshold = threshold
self.P_ = None
self.labels_ = None
def fit(self, X: pd.DataFrame, y=None):
P, labels = build_transition_prob_matrix(X)
self.P_ = P
self.labels_ = labels
return self
def transform(self, X: pd.DataFrame = None):
return self.P_, self.labels_
def render(self, fname: str, fmt="svg", view=False):
if self.P_ is None or self.labels_ is None:
raise ValueError("Transformer has not been fitted yet.")
return render_graph(
fname,
self.P_,
ls_index=self.labels_,
threshold=self.threshold,
fmt=fmt,
view=view
)
class SessionTransitionProbMatrixTransformer(BaseEstimator, TransformerMixin):
def __init__(self, threshold=0.0, session_col='sessionId'):
self.threshold = threshold
self.session_col = session_col
self.session_matrices_ = None
def fit(self, X: pd.DataFrame, y=None):
if self.session_col not in X.columns:
raise ValueError(f"Column '{self.session_col}' not found in DataFrame")
session_matrices = {}
for session_id, grp in X.groupby(self.session_col):
if len(grp) > 1: # need at least 2 events for transitions
P, labels = build_transition_prob_matrix(grp)
session_matrices[session_id] = {'matrix': P, 'labels': labels}
self.session_matrices_ = session_matrices
return self
def transform(self, X: pd.DataFrame = None):
if self.session_matrices_ is None:
raise ValueError("Transformer has not been fitted yet.")
return pd.Series(self.session_matrices_)
def render_session(self, session_id: str, fname: str, fmt="svg", view=False):
if self.session_matrices_ is None:
raise ValueError("Transformer has not been fitted yet.")
if session_id not in self.session_matrices_:
raise ValueError(f"Session '{session_id}' not found in fitted data.")
sess_data = self.session_matrices_[session_id]
return render_graph(
fname,
sess_data['matrix'],
ls_index=sess_data['labels'],
threshold=self.threshold,
fmt=fmt,
view=view
)
if __name__ == "__main__":
# Example usage
data = {
'eventName': [
'A', 'B', 'A', 'C', 'B', 'A', 'A', 'C', 'B', 'C',
'A', 'B', 'C', 'A', 'B', 'C', 'A', 'B', 'C', 'A'
]
}
df = pd.DataFrame(data)
transformer = TransitionProbMatrixTransformer(threshold=0.1)
transformer.fit(df)
P, labels = transformer.transform(None)
print("Transition Probability Matrix:")
print(pd.DataFrame(P, index=labels, columns=labels))
# Render the graph
transformer.render("transition_graph", fmt="svg", view=False)

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"""
Revenue and KPI benchmark framework for pricing strategies.
Computes session-level and aggregate metrics to compare pricing functions:
- Revenue: R_T = Σ P_t^T · Q_t
- Conversion rate
- Average order value (AOV)
- Agent exploitation loss: L_agent = R_oracle - R_observed
"""
from typing import Dict, List, Any, Optional
from dataclasses import dataclass, field, asdict
import pandas as pd
import numpy as np
@dataclass
class SessionMetrics:
"""KPIs for single session."""
session_id: str
experiment_id: Optional[str] = None
# interaction metrics
total_interactions: int = 0
page_views: int = 0
item_views: int = 0
searches: int = 0
cart_adds: int = 0
# revenue metrics
items_purchased: int = 0
total_revenue: float = 0.0
avg_item_price: float = 0.0
conversion_rate: float = 0.0
# pricing signals
total_price_shown: float = 0.0 # sum of all prices displayed
avg_markup: float = 0.0 # avg (price / base_price)
# behavioral features (for agent detection)
interaction_velocity: float = 0.0 # interactions per minute
session_duration_sec: float = 0.0
unique_products_viewed: int = 0
metadata: Dict[str, Any] = field(default_factory=dict)
def to_dict(self) -> Dict[str, Any]:
return asdict(self)
@dataclass
class AggregateMetrics:
"""Aggregate KPIs across sessions/experiments."""
experiment_id: Optional[str] = None
n_sessions: int = 0
# revenue aggregates
total_revenue: float = 0.0
avg_revenue_per_session: float = 0.0
median_revenue_per_session: float = 0.0
# conversion aggregates
total_conversions: int = 0
conversion_rate: float = 0.0 # purchases / sessions
# pricing aggregates
avg_markup: float = 0.0
median_markup: float = 0.0
# agent exploitation metrics
estimated_agent_sessions: int = 0 # sessions flagged as agent-driven
agent_revenue: float = 0.0
human_revenue: float = 0.0
agent_loss: float = 0.0 # L_agent = R_oracle - R_observed (if available)
def to_dict(self) -> Dict[str, Any]:
return asdict(self)
class MetricsComputer:
"""Compute session and aggregate metrics from interaction/price logs."""
@staticmethod
def compute_session_metrics(
session_id: str,
interactions: pd.DataFrame,
price_logs: pd.DataFrame,
purchases: Optional[pd.DataFrame] = None,
experiment_id: Optional[str] = None
) -> SessionMetrics:
"""
Compute metrics for single session.
Args:
session_id: session identifier
interactions: user-interactions events for this session
price_logs: price-logs for this session
purchases: purchase events (if available)
experiment_id: experiment identifier
"""
metrics = SessionMetrics(session_id=session_id, experiment_id=experiment_id)
if interactions.empty:
return metrics
# interaction counts
event_counts = interactions['eventName'].value_counts().to_dict()
metrics.total_interactions = len(interactions)
metrics.page_views = event_counts.get('page_view', 0) + event_counts.get('view_item_page', 0)
metrics.item_views = event_counts.get('view_item_page', 0)
metrics.searches = event_counts.get('search', 0)
metrics.cart_adds = event_counts.get('add_item_to_cart', 0)
# unique products viewed
metrics.unique_products_viewed = interactions['productId'].dropna().nunique()
# session duration
if 'ts' in interactions.columns:
timestamps = pd.to_datetime(interactions['ts'])
metrics.session_duration_sec = (timestamps.max() - timestamps.min()).total_seconds()
if metrics.session_duration_sec > 0:
metrics.interaction_velocity = (metrics.total_interactions / metrics.session_duration_sec) * 60
# revenue from purchases
if purchases is not None and not purchases.empty:
metrics.items_purchased = len(purchases)
metrics.total_revenue = purchases['price'].sum() if 'price' in purchases.columns else 0.0
metrics.avg_item_price = metrics.total_revenue / metrics.items_purchased if metrics.items_purchased > 0 else 0.0
metrics.conversion_rate = 1.0 if metrics.items_purchased > 0 else 0.0
# pricing metrics
if not price_logs.empty:
metrics.total_price_shown = price_logs['price'].sum()
# compute markup if base_price available in price logs or join with product catalog
if 'base_price' in price_logs.columns:
valid_markup = price_logs[price_logs['base_price'] > 0]
if not valid_markup.empty:
metrics.avg_markup = (valid_markup['price'] / valid_markup['base_price']).mean()
return metrics
@staticmethod
def compute_aggregate_metrics(
session_metrics_list: List[SessionMetrics],
experiment_id: Optional[str] = None,
agent_detector_fn: Optional[callable] = None
) -> AggregateMetrics:
"""
Aggregate metrics across sessions.
Args:
session_metrics_list: list of SessionMetrics
experiment_id: experiment identifier
agent_detector_fn: optional function to classify session as agent (returns bool)
"""
agg = AggregateMetrics(experiment_id=experiment_id)
agg.n_sessions = len(session_metrics_list)
if agg.n_sessions == 0:
return agg
df = pd.DataFrame([m.to_dict() for m in session_metrics_list])
# revenue aggregates
agg.total_revenue = df['total_revenue'].sum()
agg.avg_revenue_per_session = df['total_revenue'].mean()
agg.median_revenue_per_session = df['total_revenue'].median()
# conversion aggregates
agg.total_conversions = (df['items_purchased'] > 0).sum()
agg.conversion_rate = agg.total_conversions / agg.n_sessions
# pricing aggregates
valid_markups = df[df['avg_markup'] > 0]
if not valid_markups.empty:
agg.avg_markup = valid_markups['avg_markup'].mean()
agg.median_markup = valid_markups['avg_markup'].median()
# agent detection (if detector provided)
if agent_detector_fn is not None:
agent_flags = [agent_detector_fn(m) for m in session_metrics_list]
agg.estimated_agent_sessions = sum(agent_flags)
agent_revenue = sum(m.total_revenue for m, is_agent in zip(session_metrics_list, agent_flags) if is_agent)
human_revenue = sum(m.total_revenue for m, is_agent in zip(session_metrics_list, agent_flags) if not is_agent)
agg.agent_revenue = agent_revenue
agg.human_revenue = human_revenue
return agg
@staticmethod
def compare_pricing_strategies(
experiments: Dict[str, List[SessionMetrics]],
baseline_experiment_id: Optional[str] = None
) -> pd.DataFrame:
"""
Compare multiple pricing strategies/experiments.
Args:
experiments: dict mapping experiment_id -> list of SessionMetrics
baseline_experiment_id: experiment to use as baseline for comparison
Returns:
DataFrame with comparative metrics
"""
results = []
baseline_agg = None
for exp_id, session_metrics in experiments.items():
agg = MetricsComputer.compute_aggregate_metrics(session_metrics, experiment_id=exp_id)
result = agg.to_dict()
if exp_id == baseline_experiment_id:
baseline_agg = agg
results.append(result)
df = pd.DataFrame(results)
# add relative metrics if baseline exists
if baseline_agg is not None:
df['revenue_lift_pct'] = ((df['total_revenue'] - baseline_agg.total_revenue) / baseline_agg.total_revenue * 100)
df['conversion_lift_pct'] = ((df['conversion_rate'] - baseline_agg.conversion_rate) / baseline_agg.conversion_rate * 100)
return df
def simple_agent_detector(session_metrics: SessionMetrics, velocity_threshold: float = 5.0) -> bool:
"""
Simple heuristic agent detector based on interaction velocity.
Args:
session_metrics: SessionMetrics instance
velocity_threshold: interactions per minute threshold (default: 5.0)
Returns:
True if session likely agent-driven
"""
# agents tend to have higher interaction velocity and lower session duration
if session_metrics.interaction_velocity > velocity_threshold:
return True
# agents often view many products quickly without converting
if session_metrics.unique_products_viewed > 10 and session_metrics.conversion_rate == 0:
return True
return False

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@@ -1,22 +0,0 @@
from sklearn.pipeline import Pipeline
from sklearn.preprocessing import StandardScaler
from extract import KafkaDataFetcher, ExperimentJoiner, EventTitleAugmenter
from mapping import SessionTransitionProbMatrixTransformer, render_graph
from demand import DemandEstimator
# exposable pipelines
etl_pipeline = Pipeline([
('kafka_fetch', KafkaDataFetcher()),
('experiment_join', ExperimentJoiner()),
('event_augment', EventTitleAugmenter()),
])
pricing_pipeline = Pipeline([
('demand_estimation', DemandEstimator()),
])
if __name__ == "__main__":
processed_data = etl_pipeline.fit_transform(None)
pricing = pricing_pipeline.fit_transform(processed_data)
print(pricing)

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from sklearn.pipeline import Pipeline
import pandas as pd
from procesing.context import PipelineContext
from procesing.providers import SupabaseProvider, BackendAPIProvider
from procesing.steps import (
FetchInteractionsStep,
FetchPriceLogsStep,
FetchExperimentsStep,
JoinExperimentsStep,
CreatePriceBucketsStep,
AugmentEventNamesStep,
ChunkByTimeWindowStep,
ComputeDemandForChunksStep,
AggregatePriceLogsStep,
# BuildStateSpaceStep,
FitPricingFunctionStep,
PredictPricesStep,
ComputeDemandStep,
JoinProductFeaturesStep
)
from procesing.pricers import SimpleSurgePricer
def interaction_extraction_pipeline(context: PipelineContext):
"""Pipeline for extracting and augmenting interaction data"""
return Pipeline([
('fetch', FetchInteractionsStep(context)),
('create_buckets', CreatePriceBucketsStep(context)),
('augment_events', AugmentEventNamesStep(context)),
])
def price_extraction_pipeline(context: PipelineContext):
"""Pipeline for extracting price logs"""
return Pipeline([
('fetch', FetchPriceLogsStep(context)),
])
def product_features_pipeline(context: PipelineContext,
interactions_df: pd.DataFrame,
price_logs_df: pd.DataFrame):
demand_step = ComputeDemandStep(context)
price_step = AggregatePriceLogsStep(context)
join_step = JoinProductFeaturesStep(context)
demand_data = demand_step.transform(interactions_df)
price_data= price_step.transform(price_logs_df)
joined_data = join_step.transform((demand_data, price_data))
return joined_data
def pricing_pipeline(context: "PipelineContext",
data: pd.DataFrame,
high_threshold: int = 10,
low_threshold: int = 2,
surge_multiplier: float = 1.2,
discount_multiplier: float = 0.9) -> pd.DataFrame:
if data.empty or 'productId' not in data.columns:
return pd.DataFrame()
surge_pricer = SimpleSurgePricer()
surge_pricer.fit(data)
data['optimal_price'] = surge_pricer.predict()
return data
def full_pipeline(context: PipelineContext,
high_threshold: int = 10,
low_threshold: int = 2,
surge_multiplier: float = 1.2,
discount_multiplier: float = 0.9):
"""
Complete end-to-end pipeline: data extraction -> demand/price aggregation -> surge pricing
Args:
context: Pipeline context
high_threshold: Demand threshold for surge pricing
low_threshold: Demand threshold for discounts
surge_multiplier: Price multiplier for high demand
discount_multiplier: Price multiplier for low demand
Returns:
tuple: (product_features_df, optimal_prices_df)
- product_features_df: [productId, demand_score, price]
- optimal_prices_df: [productId, current_price, optimal_price, demand_score]
"""
interaction_pipe = interaction_extraction_pipeline(context)
price_pipe = price_extraction_pipeline(context)
interactions_df = interaction_pipe.fit_transform(None)
price_logs_df = price_pipe.fit_transform(None)
product_features_df = product_features_pipeline(context, interactions_df, price_logs_df)
print(product_features_df.to_string())
# generate optimal prices using surge rules
optimal_prices_df = pricing_pipeline(context, product_features_df,
high_threshold=high_threshold,
low_threshold=low_threshold,
surge_multiplier=surge_multiplier,
discount_multiplier=discount_multiplier)
return product_features_df, optimal_prices_df
if __name__ == '__main__':
class Provider(SupabaseProvider, BackendAPIProvider):
def __init__(self, backend_url: str):
SupabaseProvider.__init__(self)
BackendAPIProvider.__init__(self, backend_url=backend_url)
class HistoricalProvider(SupabaseProvider, BackendAPIProvider):
def fetch_kafka_topic(self, topic: str) -> pd.DataFrame:
path = "/home/velocitatem/Documents/Projects/PHANTOM/experiments/collected_data/858c61ab-0a7f-4595-ae49-33f4365517b9/"
interactions_file = "messages(2).json"
prices_file = "messages(3).json"
data = pd.read_json(path + (interactions_file if topic == "user-interactions" else prices_file))
data = [r['payload'] for r in data['value'].to_list()]
data = pd.DataFrame(data)
return data
# example run
context = PipelineContext(
provider=HistoricalProvider(),
store_mode='airline',
)
product_features, prices = full_pipeline(context)
print(prices.to_string())

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from procesing.pricers.base import PricingFunction
from procesing.pricers.elasticity import ElasticityBasedPricer
from procesing.pricers.simple import StaticPricer, RandomPricer, SimpleSurgePricer
from procesing.pricers.session_aware import SessionAwarePricer, ProductSpecificSessionPricer
__all__ = [
'PricingFunction',
'ElasticityBasedPricer',
'StaticPricer',
'RandomPricer',
'SimpleSurgePricer',
'SessionAwarePricer',
'ProductSpecificSessionPricer'
]

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from abc import ABC, abstractmethod
from typing import Optional, Dict, Any, List
import numpy as np
import pandas as pd
class PricingFunction(ABC):
"""
Abstract base for pricing functions.
Defines mapping: f(Q_t, P_t, S_t, H_t) -> P_{t+1}
Where:
Q_t ∈ R^n: demand vector at time t
P_t ∈ R^n: price vector at time t
S_t: session features (behavioral signals, interactions)
H_t = {Q_{t-k}, P_{t-k}, S_{t-k}}: historical state trajectory
Objective:
maximize E[R_T] = E[Σ P_t^T · Q_t]
subject to:
Q_t = g(P_t, S_t) (demand response via elasticity)
P_t ≥ C (cost floor)
minimize L_agent = R_oracle - R_observed
"""
@abstractmethod
def fit(self, *kwargs):
"""
Offline training on historical data.
Args:
historical_data: DataFrame with elasticity, prices, demand signals
**kwargs: additional training parameters
"""
pass
@abstractmethod
def predict(self, *kwargs) -> np.ndarray:
"""
Generate optimal prices given current state.
Args:
state_space: StateSpace object containing Q_t, P_t, S_t, H_t
Returns:
P_{t+1}: price vector in R^n
"""
pass
def update(self, observation: Dict[str, Any]):
"""
Online learning update (optional).
Args:
observation: dict with {state, action, reward, next_state}
- state: StateSpace before pricing decision
- action: prices shown (P_t)
- reward: revenue/conversion signal
- next_state: StateSpace after user interaction
"""
pass # default: no online learning
def get_params(self) -> Dict[str, Any]:
"""Return pricing function parameters for serialization."""
return {}
def set_params(self, params: Dict[str, Any]):
"""Load pricing function parameters from dict."""
pass

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import numpy as np
import pandas as pd
from procesing.pricers.base import PricingFunction
class ElasticityBasedPricer(PricingFunction):
"""
Pricing based on demand elasticity estimates.
f(Q, S) = base_price * (1 + alpha * elasticity * demand_deviation)
"""
def __init__(self, alpha: float = 0.1, price_floor: float = 0.0, price_ceil: float = np.inf):
self.alpha = alpha
self.price_floor = price_floor
self.price_ceil = price_ceil
self.elasticity = None
self.base_prices = None
self.mean_demand = None
def fit(self, historical_data: pd.DataFrame):
"""
Calibrate from historical elasticity estimates.
Expects: [productId, elasticity, base_price, mean_demand]
"""
if 'elasticity' not in historical_data.columns:
raise ValueError("historical_data must contain 'elasticity' column")
self.elasticity = historical_data['elasticity'].values
self.base_prices = (historical_data['base_price'].values
if 'base_price' in historical_data.columns
else np.ones(len(historical_data)) * 100)
self.mean_demand = (historical_data['mean_demand'].values
if 'mean_demand' in historical_data.columns
else np.ones(len(historical_data)) * 10)
return self
def predict(self, state_space) -> np.ndarray:
"""
Adjust prices based on demand deviation and elasticity.
Higher demand -> increase price (but less for elastic goods)
"""
if self.elasticity is None:
raise ValueError("Must call fit() before predict()")
demand = np.asarray(state_space.demand)
if len(demand) != len(self.elasticity):
raise ValueError(f"Demand vector size {len(demand)} != elasticity size {len(self.elasticity)}")
# compute demand deviation from mean
demand_dev = (demand - self.mean_demand) / (self.mean_demand + 1e-6)
# adjust price: if demand high and elastic, don't increase much
# if demand high and inelastic, increase more
price_multiplier = 1 + self.alpha * np.abs(self.elasticity) * demand_dev
prices = self.base_prices * price_multiplier
# enforce bounds
prices = np.clip(prices, self.price_floor, self.price_ceil)
return prices

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"""
Session-aware pricing functions that leverage behavioral features S_t.
These pricers aim to minimize L_agent = R_oracle - R_observed.
"""
import numpy as np
import pandas as pd
from procesing.pricers.base import PricingFunction
from procesing.pricers.elasticity import ElasticityBasedPricer
class SessionAwarePricer(PricingFunction):
"""
Extends elasticity-based pricing with session behavioral signals.
f(Q, P, S) = base_price * elasticity_factor * session_factor
Where session_factor adjusts for:
- interaction_velocity (agent detection proxy)
- product_view_depth (interest signal)
- cart_to_view_ratio (conversion intent)
Strategy: charge higher prices to suspected agents (high velocity)
to recover oracle revenue from reconnaissance sessions.
"""
def __init__(self,
alpha: float = 0.1,
beta_velocity: float = 0.05,
beta_attention: float = 0.03,
agent_velocity_threshold: float = 5.0,
agent_markup: float = 1.2,
price_floor: float = 0.0,
price_ceil: float = np.inf):
"""
Args:
alpha: elasticity sensitivity
beta_velocity: interaction velocity weight
beta_attention: product attention weight
agent_velocity_threshold: velocity above which to apply agent markup
agent_markup: price multiplier for suspected agent sessions
price_floor, price_ceil: price bounds
"""
self.alpha = alpha
self.beta_velocity = beta_velocity
self.beta_attention = beta_attention
self.agent_velocity_threshold = agent_velocity_threshold
self.agent_markup = agent_markup
self.price_floor = price_floor
self.price_ceil = price_ceil
# fitted parameters
self.elasticity = None
self.base_prices = None
self.mean_demand = None
def fit(self, historical_data: pd.DataFrame, **kwargs):
"""Calibrate from historical elasticity data."""
if 'elasticity' not in historical_data.columns:
raise ValueError("historical_data must contain 'elasticity'")
self.elasticity = historical_data['elasticity'].values
self.base_prices = (historical_data['base_price'].values
if 'base_price' in historical_data.columns
else np.ones(len(historical_data)) * 100)
self.mean_demand = (historical_data['mean_demand'].values
if 'mean_demand' in historical_data.columns
else np.ones(len(historical_data)) * 10)
return self
def predict(self, state_space) -> np.ndarray:
"""Generate prices with session awareness."""
if self.elasticity is None:
raise ValueError("Must call fit() before predict()")
demand = np.asarray(state_space.demand)
n_products = len(demand)
# base elasticity-driven pricing
demand_dev = (demand - self.mean_demand) / (self.mean_demand + 1e-6)
elasticity_factor = 1 + self.alpha * np.abs(self.elasticity) * demand_dev
# session-aware adjustments
session_factor = np.ones(n_products)
if not state_space.session_features.empty:
sf = state_space.session_features.iloc[0] # single session features
# agent detection via velocity
velocity = sf.get('interaction_velocity', 0.0)
if velocity > self.agent_velocity_threshold:
# suspected agent: apply markup to recover oracle revenue
session_factor *= self.agent_markup
# attention signal: higher view depth -> user interested -> can charge more
view_depth = sf.get('product_view_depth', 0)
if view_depth > 0:
attention_boost = 1 + self.beta_attention * np.log1p(view_depth)
session_factor *= attention_boost
# cart presence: if user has items in cart, slightly increase prices
cart_to_view = sf.get('cart_to_view_ratio', 0.0)
if cart_to_view > 0.1:
session_factor *= (1 + 0.02) # small boost for conversion intent
prices = self.base_prices * elasticity_factor * session_factor
prices = np.clip(prices, self.price_floor, self.price_ceil)
return prices
class ProductSpecificSessionPricer(PricingFunction):
"""
Session-aware pricer with product-specific demand signals.
Uses S_t to extract per-product interaction counts and adjusts pricing
for products the user has already viewed/hovered.
Strategy: products viewed multiple times = high interest -> price up
"""
def __init__(self,
alpha: float = 0.1,
view_boost: float = 0.02,
max_view_boost: float = 0.15,
price_floor: float = 0.0,
price_ceil: float = np.inf):
self.alpha = alpha
self.view_boost = view_boost
self.max_view_boost = max_view_boost
self.price_floor = price_floor
self.price_ceil = price_ceil
self.elasticity = None
self.base_prices = None
self.mean_demand = None
self.product_ids = None
def fit(self, historical_data: pd.DataFrame, **kwargs):
if 'elasticity' not in historical_data.columns or 'productId' not in historical_data.columns:
raise ValueError("historical_data must contain 'elasticity' and 'productId'")
self.elasticity = historical_data['elasticity'].values
self.base_prices = (historical_data['base_price'].values
if 'base_price' in historical_data.columns
else np.ones(len(historical_data)) * 100)
self.mean_demand = (historical_data['mean_demand'].values
if 'mean_demand' in historical_data.columns
else np.ones(len(historical_data)) * 10)
self.product_ids = historical_data['productId'].values
return self
def predict(self, state_space) -> np.ndarray:
if self.elasticity is None:
raise ValueError("Must call fit() before predict()")
demand = np.asarray(state_space.demand)
n_products = len(demand)
# base pricing
demand_dev = (demand - self.mean_demand) / (self.mean_demand + 1e-6)
base_prices = self.base_prices * (1 + self.alpha * np.abs(self.elasticity) * demand_dev)
# product-specific session adjustments
if not state_space.session_features.empty and state_space.product_ids is not None:
# extract product interaction counts from session metadata
# (this would require session features to include per-product signals)
# for now, use uniform boost as placeholder
# TODO: extend session feature extraction to include product-specific counts
pass
prices = np.clip(base_prices, self.price_floor, self.price_ceil)
return prices

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import numpy as np
import pandas as pd
from procesing.pricers.base import PricingFunction
class StaticPricer(PricingFunction):
"""Static pricing: always return fixed base prices"""
def __init__(self, base_prices: np.ndarray = None):
self.base_prices = base_prices
def fit(self, historical_data: pd.DataFrame):
"""Extract base prices from historical data"""
if 'base_price' in historical_data.columns:
self.base_prices = historical_data['base_price'].values
elif 'price' in historical_data.columns:
self.base_prices = historical_data['price'].values
else:
raise ValueError("historical_data must contain 'base_price' or 'price' column")
return self
def predict(self, state_space) -> np.ndarray:
"""Return static base prices regardless of state"""
if self.base_prices is None:
raise ValueError("Must call fit() or provide base_prices in constructor")
return self.base_prices.copy()
class RandomPricer(PricingFunction):
"""Random pricing within bounds (for baseline comparison)"""
def __init__(self, price_min: float = 50.0, price_max: float = 500.0, seed: int = None):
self.price_min = price_min
self.price_max = price_max
self.seed = seed
self.n_products = None
self.rng = np.random.default_rng(seed)
def fit(self, historical_data: pd.DataFrame):
"""Learn number of products"""
self.n_products = len(historical_data)
return self
def predict(self, state_space) -> np.ndarray:
"""Generate random prices"""
if self.n_products is None:
self.n_products = len(state_space.demand)
return self.rng.uniform(self.price_min, self.price_max, size=self.n_products)
class SimpleSurgePricer(PricingFunction):
"""
Rule-based surge pricer adjusting prices via demand thresholds.
Logic: if demand > high_threshold -> surge, if demand < low_threshold -> discount.
Simpler and more controllable than curve fitting approaches.
"""
def __init__(self,
base_prices: np.ndarray = None,
high_threshold: int = 10,
low_threshold: int = 2,
surge_multiplier: float = 1.2,
discount_multiplier: float = 0.9):
self.base_prices = base_prices
self.high_threshold = high_threshold
self.low_threshold = low_threshold
self.surge_multiplier = surge_multiplier
self.discount_multiplier = discount_multiplier
def fit(self, market_data : pd.DataFrame):
"""Extract base prices from product catalog or historical averages"""
self.base_prices = market_data['base_price'].to_numpy() if 'base_price' in market_data.columns else market_data['price'].values
self.demand_history = market_data['demand'].to_numpy() if 'demand' in market_data.columns else np.zeros_like(self.base_prices)
def predict(self) -> np.ndarray:
"""
Adjust prices based on current demand using surge rules.
state_space.demand: demand counts per product
state_space.prices: current prices (fallback if base_prices not set)
"""
current_prices = self.base_prices if self.base_prices is not None else np.ones_like(demand_vector) * 99.99
demand = self.demand_history if self.demand_history is not None else np.zeros_like(current_prices)
new_prices = current_prices.copy()
high_mask = demand >= self.high_threshold
new_prices[high_mask] *= self.surge_multiplier
low_mask = demand <= self.low_threshold
new_prices[low_mask] *= self.discount_multiplier
return new_prices

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r"""
Our state space comes as:
$Q_t in R^n$ - our demand at a time t
$P_t in R^n$ - prices at time t
$S_t$ some form of interaction session features
This is a single sate which we map under
$f: (Q, S, H) \to P_{t+1}$
With:
$H_t = \{Q_{t-k}, P_{t-k}, S_{t-k}\}$
We can have f be literally anything, analytical or learned or rule based or an RL policy.
Our goal is to mazimize the expected revenue:
$E[R_T] = E[\sum_{t=1}^T P_t^T \dot Q_t]$
subject to Q_t = g(P_t, S_t) : demand response to price (estimated via elasticity) and P_t ≥ C : prices above cost floor and additionally minimizing the following:
$L_{agent} = R_{oracle} - R_{observed}
where: R_oracle = revenue if we knew agent intentions (from recon session) and R_observed = revenue under current pricing policy f
I would start be defning a pricing function interface and standardizing how to train that based on historical data and define how to make it behave for online training (if we do that)
We also need to develop a solid benchmark with mapping revenue and full KPIs from session interactions to measure differences between different price learning methods
"""
from abc import ABC, abstractmethod
from sklearn.base import BaseEstimator, TransformerMixin
import numpy as np
import pandas as pd
import os
from dotenv import load_dotenv
load_dotenv()
from supabase import create_client, Client
SUPABASE_URL = os.getenv("NEXT_PUBLIC_SUPABASE_URL", "")
SUPABASE_KEY = os.getenv("NEXT_PUBLIC_SUPABASE_ANON_KEY", "")
supabase: Client = create_client(SUPABASE_URL, SUPABASE_KEY)
def expected_revenue(prices: np.ndarray, demand: np.ndarray) -> float:
"""Returns: expected revenue R_t = P_t^T * Q_t"""
return float(np.dot(prices, demand))
class StateSpace:
def __init__(self,
demand : np.ndarray, # at time t, only values (assuming aligned by productId order)
prices : np.ndarray, # at time t, only values (assuming aligned by productId order)
session_features : pd.DataFrame):
self.demand = demand # Q_t
self.prices = prices # P_t
self.session_features = session_features # S_t
self.history = [] # H_t
class PricingFunction(BaseEstimator, TransformerMixin, ABC):
def __init__(self):
pass
def fit(self, historical_data):
"""
Train the pricing function based on historical data.
historical_data: list of StateSpace instances with known outcomes
"""
raise NotImplementedError("Train method must be implemented by subclass.")
def transform(self, state_space) -> np.ndarray:
"""
Predict the next prices given the current state space.
state_space: StateSpace instance
Returns: predicted prices P_{t+1}
"""
raise NotImplementedError("Predict method must be implemented by subclass.")
class SimpleLinearPricingFunction(PricingFunction):
def __init__(self, price_sensitivity: float = -0.1):
super().__init__()
self.price_sensitivity = price_sensitivity
def fit(self, historical_data):
return self
def transform(self, state_space: StateSpace) -> np.ndarray:
new_prices = state_space.prices + self.price_sensitivity * state_space.demand
return np.maximum(new_prices, 0)
class ElasticityBasedPricingFunction(PricingFunction):
"""
Revenue-maximizing pricing using elasticity estimates.
For each product, optimal price P* maximizes R = P * Q(P)
where Q(P) follows power law: Q(P) = Q_0 * (P/P_0)^ε
Taking derivative dR/dP = 0 gives optimal markup:
P* = P_0 * (1 + 1/ε) if ε < -1 (elastic)
For inelastic demand (|ε| < 1), we apply bounded markup.
"""
def __init__(self,
cost_floor: float = 0.5,
max_markup: float = 2.0,
min_markup: float = 1.0,
inelastic_markup: float = 1.3):
super().__init__()
self.cost_floor = cost_floor # prices as fraction of base
self.max_markup = max_markup # max price = base * max_markup
self.min_markup = min_markup # min price = base * min_markup
self.inelastic_markup = inelastic_markup # default for |ε| < 1
self.elasticity_map = {} # productId -> elasticity
def fit(self, elasticity_df: pd.DataFrame):
"""
Args:
elasticity_df: df with [productId, elasticity, std_error, n_obs]
"""
if elasticity_df is not None and not elasticity_df.empty:
self.elasticity_map = dict(zip(
elasticity_df['productId'],
elasticity_df['elasticity']
))
return self
def transform(self, state_space: StateSpace, product_ids: np.ndarray = None) -> np.ndarray:
"""
Args:
state_space: current state (prices = base prices)
product_ids: array of productIds aligned with state_space.prices
Returns:
optimized prices P_{t+1}
"""
base_prices = state_space.prices
if product_ids is None:
# fallback: use positional index as productId (not ideal)
product_ids = np.arange(len(base_prices))
new_prices = np.zeros_like(base_prices)
for i, (base_p, pid) in enumerate(zip(base_prices, product_ids)):
elasticity = self.elasticity_map.get(pid, 0.0)
if elasticity < -1: # elastic demand
# optimal markup: (1 + 1/ε)
markup = 1 + (1 / elasticity)
optimal_p = base_p * markup
elif elasticity > -1 and elasticity < 0: # inelastic
# conservative markup
optimal_p = base_p * self.inelastic_markup
else: # ε ≥ 0 (demand increases with price, or no data)
# no elasticity data or anomalous, keep base price
optimal_p = base_p
# apply bounds
optimal_p = np.clip(
optimal_p,
base_p * self.min_markup,
base_p * self.max_markup
)
optimal_p = max(optimal_p, self.cost_floor)
new_prices[i] = optimal_p
return new_prices
class ContextualElasticityPricing(PricingFunction):
"""
Revenue optimization with contextual adjustments based on session features.
Combines elasticity-based pricing with surge/demand-based multipliers.
"""
def __init__(self,
base_pricer: ElasticityBasedPricingFunction = None,
demand_sensitivity: float = 0.1,
surge_threshold: float = 0.7):
super().__init__()
self.base_pricer = base_pricer or ElasticityBasedPricingFunction()
self.demand_sensitivity = demand_sensitivity
self.surge_threshold = surge_threshold
def fit(self, elasticity_df: pd.DataFrame):
self.base_pricer.fit(elasticity_df)
return self
def transform(self, state_space: StateSpace, product_ids: np.ndarray = None) -> np.ndarray:
# get base optimal prices from elasticity
base_optimal = self.base_pricer.transform(state_space, product_ids)
# compute surge multiplier from demand
if len(state_space.demand) > 0:
demand_normalized = state_space.demand / (state_space.demand.max() + 1e-8)
surge_multiplier = 1 + self.demand_sensitivity * np.maximum(
demand_normalized - self.surge_threshold, 0
)
else:
surge_multiplier = np.ones_like(base_optimal)
return base_optimal * surge_multiplier
# Example usage:
if __name__ == "__main__":
from pipeline import interaction_pipeline, price_data_pipeline, elasticity_pipeline
store_mode = 'hotel'
interaction_data = interaction_pipeline.fit_transform(None)
price_data = price_data_pipeline.fit_transform(None)
elasticity_df = elasticity_pipeline(interaction_data, price_data, window_size="30s", store_mode=store_mode)
# fetch all products with base prices from database
products_resp = supabase.table(f'{store_mode}_products').select("id, metadata").execute()
products_df = pd.DataFrame(products_resp.data)
# extract base_price from metadata
products_df['base_price'] = products_df['metadata'].apply(lambda m: m.get('base_price', 0) if isinstance(m, dict) else 0)
products_df = products_df.rename(columns={'id': 'productId'})[['productId', 'base_price']]
# override with logged prices where available
if not price_data.empty:
if 'ts' in price_data.columns and not pd.api.types.is_datetime64_any_dtype(price_data['ts']):
price_data['ts'] = pd.to_datetime(price_data['ts'])
# get latest logged price per product
price_logs_agg = price_data.sort_values('ts').groupby('productId', as_index=False).last()
# merge: start with all products (base prices), override with logged prices
products_df = products_df.merge(
price_logs_agg[['productId', 'price']],
on='productId',
how='left'
)
products_df['final_price'] = products_df['price'].fillna(products_df['base_price'])
else:
products_df['final_price'] = products_df['base_price']
# merge with elasticity
if elasticity_df is not None and not elasticity_df.empty:
price_data_merged = products_df[['productId', 'final_price']].merge(
elasticity_df[['productId', 'elasticity']],
on='productId',
how='left'
).fillna({'elasticity': 0.0})
prices = price_data_merged['final_price'].values
elasticities = price_data_merged['elasticity'].values
else:
prices = np.array([])
elasticities = np.array([])
print(elasticities)
print(prices)
state_space = StateSpace(
demand=elasticities,
prices=prices,
session_features=interaction_data
)
pricing_function = SimpleLinearPricingFunction(price_sensitivity=-0.05)
pricing_function.fit([]) # No training data for simple model
predicted_prices = pricing_function.transform(state_space)
print("Predicted Prices:", predicted_prices)

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from procesing.providers.base import DataProvider
from procesing.providers.supabase import SupabaseProvider
from procesing.providers.backend import BackendAPIProvider
__all__ = ['DataProvider', 'SupabaseProvider', 'BackendAPIProvider']

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import os
import pandas as pd
import requests
from typing import List
from procesing.providers.base import DataProvider
class BackendAPIProvider(DataProvider):
"""Concrete backend API implementation"""
def __init__(self, backend_url: str = None):
self.backend_url = backend_url or os.getenv("BACKEND_URL", "http://localhost:5000")
def fetch_kafka_topic(self, topic: str) -> pd.DataFrame:
resp = requests.get(f"{self.backend_url}/api/kafka/dump?topic={topic}")
resp.raise_for_status()
data = resp.json()
if not data.get('success') or not data.get('data'):
return pd.DataFrame()
return pd.DataFrame(data['data'])

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from abc import ABC, abstractmethod
from typing import List
import pandas as pd
class DataProvider(ABC):
"""Abstract interface for data access, enables DI and testing"""
@abstractmethod
def fetch_products(self, store_mode: str) -> pd.DataFrame:
"""Fetch product catalog for given store mode"""
pass
@abstractmethod
def fetch_experiments(self, experiment_ids: List[str]) -> pd.DataFrame:
"""Fetch experiment metadata for given IDs"""
pass
@abstractmethod
def fetch_kafka_topic(self, topic: str) -> pd.DataFrame:
"""Fetch data from Kafka topic via backend API"""
pass

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import os
import pandas as pd
import requests
from typing import List
from supabase import create_client, Client
from procesing.providers.base import DataProvider
from dotenv import load_dotenv
class SupabaseProvider(DataProvider):
"""Concrete Supabase + backend API implementation"""
def __init__(self,
supabase_url: str = None,
supabase_key: str = None,):
load_dotenv()
self.supabase_url = supabase_url or os.getenv("NEXT_PUBLIC_SUPABASE_URL")
self.supabase_key = supabase_key or os.getenv("NEXT_PUBLIC_SUPABASE_ANON_KEY")
self.supabase: Client = create_client(self.supabase_url, self.supabase_key)
def fetch_products(self, store_mode: str) -> pd.DataFrame:
# hotel uses room_type, airline uses flight_type; select all and normalize
resp = self.supabase.table(f'{store_mode}_products').select("*").execute()
if not resp.data:
return pd.DataFrame()
df = pd.DataFrame(resp.data)
# normalize type column: hotel has room_type, airline has flight_type
if 'room_type' in df.columns:
df['product_type'] = df['room_type']
elif 'flight_type' in df.columns:
df['product_type'] = df['flight_type']
return df
def fetch_experiments(self, experiment_ids: List[str]) -> pd.DataFrame:
if not experiment_ids:
return pd.DataFrame()
resp = self.supabase.table('experiments').select(
'id, subject_name, xp_human_only, xp_market_mode, xp_task_id, '
'task:tasks(task_name, task_description, task_def_of_done)'
).in_('id', experiment_ids).execute()
return pd.DataFrame(resp.data) if resp.data else pd.DataFrame()

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from procesing.steps.base import BaseContextStep
from procesing.steps.fetch import FetchInteractionsStep, FetchPriceLogsStep, FetchExperimentsStep
from procesing.steps.join import JoinExperimentsStep, JoinProductFeaturesStep
from procesing.steps.augment import CreatePriceBucketsStep, AugmentEventNamesStep, AugmentInteractionsStep
from procesing.steps.chunk import ChunkByTimeWindowStep
from procesing.steps.demand import ComputeDemandStep, ComputeDemandForChunksStep
from procesing.steps.elasticity import AggregatePriceLogsStep
from procesing.steps.pricing import FitPricingFunctionStep, PredictPricesStep
from procesing.steps.session import ExtractSessionFeaturesStep, _extract_features_for_session
__all__ = [
'BaseContextStep',
'FetchInteractionsStep',
'FetchPriceLogsStep',
'FetchExperimentsStep',
'JoinExperimentsStep',
'JoinProductFeaturesStep',
'CreatePriceBucketsStep',
'AugmentEventNamesStep',
'AugmentInteractionsStep',
'ChunkByTimeWindowStep',
'ComputeDemandStep',
'ComputeDemandForChunksStep',
'AggregatePriceLogsStep',
'FitPricingFunctionStep',
'PredictPricesStep',
'ExtractSessionFeaturesStep',
'_extract_features_for_session',
]

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import numpy as np
import pandas as pd
from procesing.steps.base import BaseContextStep
class AugmentInteractionsStep(BaseContextStep):
"""
Consolidated step: create price buckets, augment event names, join experiments.
Input: (interactions_df, price_logs_df)
Output: enriched interactions_df
"""
def transform(self, data: tuple):
interactions_df, price_logs_df = data
if interactions_df.empty:
return interactions_df
# Step 1: Create price buckets
interactions_df = self._create_price_buckets(interactions_df)
# Step 2: Augment event names
interactions_df = self._augment_event_names(interactions_df)
# Step 3: Join experiments (optional)
if 'experimentId' in interactions_df.columns:
interactions_df = self._join_experiments(interactions_df)
return interactions_df
def _create_price_buckets(self, df: pd.DataFrame):
"""Create price bucket labels from price data"""
if 'metadata_price' not in df.columns:
df['price_bucket'] = ""
return df
n_buckets = self.context.config.get('n_price_buckets', 5)
if df['metadata_price'].notnull().sum() > 0:
try:
price_buckets = pd.qcut(
df['metadata_price'],
q=n_buckets,
labels=[f"PB_{i+1}" for i in range(n_buckets)],
duplicates='drop'
)
except ValueError:
# fallback for insufficient unique values
price_buckets = df['metadata_price'].apply(
lambda x: f"P_{int(x)}" if pd.notnull(x) else ""
)
else:
price_buckets = pd.Series([""] * len(df), index=df.index)
df['price_bucket'] = price_buckets
return df
def _augment_event_names(self, df: pd.DataFrame):
"""Augment event names with product and price bucket schema"""
# Create schema: _productId@price_bucket
has_product = df.get('productId', pd.Series()).notnull()
has_bucket = df.get('price_bucket', pd.Series()).notnull()
df['metadata_schema'] = np.where(
has_product & has_bucket,
"_" + df['productId'].astype(str) + "@" + df['price_bucket'].astype(str),
""
)
df['eventName'] = df['eventName'] + df['metadata_schema']
return df
def _join_experiments(self, df: pd.DataFrame):
"""Join experiment metadata if experimentId present"""
exp_ids = df['experimentId'].dropna().unique().tolist()
if not exp_ids:
return df
experiments_df = self.context.provider.fetch_experiments(exp_ids)
if experiments_df.empty:
return df
return df.merge(
experiments_df,
left_on='experimentId',
right_on='id',
how='left',
suffixes=('', '_exp')
)
class CreatePriceBucketsStep(BaseContextStep):
"""Create price bucket labels from price data"""
def transform(self, df: pd.DataFrame):
if df.empty or 'metadata_price' not in df.columns:
df['price_bucket'] = ""
return df
n_buckets = self.context.config.get('n_price_buckets', 5)
if df['metadata_price'].notnull().sum() > 0:
try:
price_buckets = pd.qcut(
df['metadata_price'],
q=n_buckets,
labels=[f"PB_{i+1}" for i in range(n_buckets)],
duplicates='drop'
)
except ValueError:
# fallback for insufficient unique values
price_buckets = df['metadata_price'].apply(
lambda x: f"P_{int(x)}" if pd.notnull(x) else ""
)
else:
price_buckets = pd.Series([""] * len(df), index=df.index)
df['price_bucket'] = price_buckets
return df
class AugmentEventNamesStep(BaseContextStep):
"""Augment event names with product and price bucket schema"""
def transform(self, df: pd.DataFrame):
if df.empty:
return df
# Create schema: _productId@price_bucket
has_product = df.get('productId', pd.Series()).notnull()
has_bucket = df.get('price_bucket', pd.Series()).notnull()
df['metadata_schema'] = np.where(
has_product & has_bucket,
"_" + df['productId'].astype(str) + "@" + df['price_bucket'].astype(str),
""
)
df['eventName'] = df['eventName'] + df['metadata_schema']
return df

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from abc import ABC, abstractmethod
from sklearn.base import BaseEstimator, TransformerMixin
from procesing.context import PipelineContext
class BaseContextStep(BaseEstimator, TransformerMixin, ABC):
"""
Base for all pipeline steps.
Each step is stateless, context-driven, and performs ONE transformation.
"""
def __init__(self, context: PipelineContext):
self.context = context
def fit(self, X=None, y=None):
"""Most steps don't need training"""
return self
@abstractmethod
def transform(self, X):
"""Transform input using context. Must be implemented by subclass."""
pass
def get_params(self, deep=True):
"""sklearn compatibility"""
return {'context': self.context}
def set_params(self, **params):
"""sklearn compatibility"""
if 'context' in params:
self.context = params['context']
return self

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import pandas as pd
from procesing.steps.base import BaseContextStep
class ChunkByTimeWindowStep(BaseContextStep):
"""
Chunk dataframe into time windows.
Returns list of dicts with window metadata.
"""
def transform(self, df: pd.DataFrame):
if df.empty:
return []
df = df.copy()
ts_col = self.context.config.get('ts_col', 'ts')
window_size = self.context.window_size
# ensure datetime
if not pd.api.types.is_datetime64_any_dtype(df[ts_col]):
df[ts_col] = pd.to_datetime(df[ts_col])
df = df.sort_values(ts_col)
df['_window'] = df[ts_col].dt.floor(window_size)
chunks = []
for idx, (window_start, group) in enumerate(df.groupby('_window')):
chunks.append({
'window_start': window_start,
'window_end': window_start + pd.Timedelta(window_size),
'window_idx': idx,
'data': group.drop(columns=['_window'])
})
return chunks

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import pandas as pd
from procesing.steps.base import BaseContextStep
class ComputeDemandStep(BaseContextStep):
"""
Compute demand vector for a single time window or dataframe.
Input: single chunk dict OR raw dataframe
Output: demand dataframe with [productId, demand_score]
"""
def transform(self, chunk):
# handle both chunk dict and raw dataframe
if isinstance(chunk, dict):
interactions = chunk['data']
window_meta = {k: v for k, v in chunk.items() if k != 'data'}
else:
interactions = chunk
window_meta = {}
products = self.context.products
unique_products = products['id'].unique()
# apply filters if configured
session_filter = self.context.config.get('session_filter')
experiment_filter = self.context.config.get('experiment_filter')
if session_filter and 'sessionId' in interactions.columns:
interactions = interactions[interactions['sessionId'] == session_filter]
if experiment_filter and 'experimentId' in interactions.columns:
interactions = interactions[interactions['experimentId'] == experiment_filter]
interactions_with_products = interactions.dropna(subset=['productId'])
if interactions_with_products.empty:
demand_df = pd.DataFrame({
'productId': unique_products,
'demand_score': 0
})
else:
# crosstab for simple demand count
demand_df = pd.crosstab(
interactions_with_products['productId'],
'count'
).reindex(unique_products, fill_value=0).reset_index()
demand_df.columns = ['productId', 'demand_score']
# attach window metadata if present
if window_meta:
return {**window_meta, 'demand_vector': demand_df}
return demand_df
class ComputeDemandForChunksStep(BaseContextStep):
"""Apply ComputeDemandStep to list of chunks"""
def transform(self, chunks: list):
if not chunks:
return []
demand_step = ComputeDemandStep(self.context)
return [demand_step.transform(chunk) for chunk in chunks]

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import numpy as np
import pandas as pd
from typing import Dict, List
from procesing.steps.base import BaseContextStep
class AggregatePriceLogsStep(BaseContextStep):
"""
Aggregate price logs into time windows using VECTORIZED operations.
Input: price_logs_df
Output: list of price chunks with [productId, price]
"""
def transform(self, price_logs_df: pd.DataFrame):
if price_logs_df.empty:
return []
df = price_logs_df.copy()
ts_col = self.context.config.get('ts_col', 'ts')
#window_size = self.context.window_size WE ARE NOT USING CHUNKS ANYMORE
# ensure datetime
if not pd.api.types.is_datetime64_any_dtype(df[ts_col]):
df[ts_col] = pd.to_datetime(df[ts_col])
df = df.sort_values([ts_col, 'productId'])
products = self.context.products
# get base price from metadata if available 1) read the metadata col as json and get the base_price
products['base_price'] = products.apply(
lambda row: row['metadata'].get('base_price', 0) if isinstance(row['metadata'], dict) else 0,
axis=1
)
unique_products = products['id'].unique()
df_indexed = df.set_index(ts_col)
# we return a df of average price per product over the entire period
# TODO: maybe consider different opration to handle price aggregation over time
avg_prices = df_indexed.groupby('productId')['price'].mean().reindex(unique_products, fill_value=0).reset_index()
avg_prices.columns = ['productId', 'price']
# fill 0s with base_price from products
base_price_map = products.set_index('id')['base_price'].to_dict()
return avg_prices

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import pandas as pd
from procesing.steps.base import BaseContextStep
class FetchInteractionsStep(BaseContextStep):
"""Fetch raw interaction data from Kafka topic with optional time and store_mode filtering"""
def __init__(self, context, lookback: str = None):
super().__init__(context)
self.lookback = lookback
def transform(self, X=None):
df = self.context.provider.fetch_kafka_topic('user-interactions')
if df.empty:
return df
# Explode metadata JSON column
if 'metadata' in df.columns:
df = df.join(
pd.json_normalize(df.pop('metadata'), sep='.').add_prefix('metadata_')
)
df = df.dropna(subset=['eventName'])
# drop all where page has /admin/
df = df[~df['page'].str.contains('/admin/', na=False)]
# filter by store_mode from context
if 'storeMode' in df.columns:
df = df[df['storeMode'] == self.context.store_mode]
# Remap dateIndex if present
if 'metadata_dateIndex' in df.columns:
df['dateIndex'] = df['metadata_dateIndex'].astype('Int64')
# Apply time filtering if lookback specified
if self.lookback and 'ts' in df.columns:
df['ts'] = pd.to_datetime(df['ts'])
cutoff = pd.Timestamp.now() - pd.Timedelta(self.lookback)
df = df[df['ts'] >= cutoff]
return df
class FetchPriceLogsStep(BaseContextStep):
"""Fetch price log data from Kafka topic with optional time and store_mode filtering"""
def __init__(self, context, lookback: str = None):
super().__init__(context)
self.lookback = lookback
def transform(self, X=None):
df = self.context.provider.fetch_kafka_topic('price-logs')
if df.empty:
return df
# filter by store_mode from context
if 'storeMode' in df.columns:
df = df[df['storeMode'] == self.context.store_mode]
# Apply time filtering if lookback specified
if self.lookback and 'ts' in df.columns:
df['ts'] = pd.to_datetime(df['ts'])
cutoff = pd.Timestamp.now() - pd.Timedelta(self.lookback)
df = df[df['ts'] >= cutoff]
return df
class FetchExperimentsStep(BaseContextStep):
"""Fetch experiment metadata for given interaction data"""
def transform(self, interactions_df: pd.DataFrame):
if interactions_df.empty or 'experimentId' not in interactions_df.columns:
return pd.DataFrame()
exp_ids = interactions_df['experimentId'].dropna().unique().tolist()
if not exp_ids:
return pd.DataFrame()
return self.context.provider.fetch_experiments(exp_ids)

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import pandas as pd
from procesing.steps.base import BaseContextStep
class JoinExperimentsStep(BaseContextStep):
"""Join experiment metadata to interactions"""
def transform(self, data: tuple):
"""
Args:
data: (interactions_df, experiments_df)
Returns:
merged interactions dataframe
"""
interactions_df, experiments_df = data
if experiments_df.empty:
return interactions_df
# Flatten nested task field if present
if 'task' in experiments_df.columns and experiments_df['task'].notnull().any():
task_norm = pd.json_normalize(experiments_df['task'].dropna())
task_norm.index = experiments_df[experiments_df['task'].notnull()].index
experiments_df = experiments_df.drop('task', axis=1).join(task_norm, rsuffix='_task')
# Rename for clarity
experiments_df = experiments_df.rename(columns={
'id': 'experimentId',
'subject_name': 'exp_subject',
'xp_human_only': 'exp_human_only',
'xp_market_mode': 'exp_market_mode',
'xp_task_id': 'exp_task_id'
})
return interactions_df.merge(experiments_df, on='experimentId', how='left')
class JoinProductFeaturesStep(BaseContextStep):
"""Join product features to interactions"""
def transform(self, data: tuple):
"""
Args:
data: (interactions_df, products_df)
Returns:
merged interactions dataframe
"""
demand_df, price_df = data
# get base prices from products if available
products = self.context.products
products['base_price'] = products.apply(
lambda row: float(row['metadata'].get('base_price', 0.0)) if isinstance(row['metadata'], dict) else 0,
axis=1
)
products = products[['id', 'base_price']].rename(columns={'id': 'productId'})
if price_df.empty:
return demand_df
return demand_df.merge(price_df, on='productId', how='left').merge(products, on='productId', how='left')

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import numpy as np
import pandas as pd
from typing import Optional, List, Dict, Any
from dataclasses import dataclass, field
from procesing.pricers.simple import StaticPricer
from procesing.steps.base import BaseContextStep
from procesing.pricers import ElasticityBasedPricer
class State:
def __init__(self,
last_action : str,
last_productId : str,
last_price : float,
session_features : np.ndarray
):
pass
class FitPricingFunctionStep(BaseContextStep):
"""
Fit pricing function using data.
Input: pricing_data
Output: fitted pricing function instance
"""
def transform(self, pricing_data: pd.DataFrame):
pricing_class = self.context.config.get('pricing_function_class', StaticPricer)
pricing_params = self.context.config.get('pricing_function_params', {})
pricer = pricing_class(**pricing_params)
pricer.fit(pricing_data)
return pricer
class PredictPricesStep(BaseContextStep):
"""
Predict optimal prices using fitted pricing function.
Input: (pricer, state_space)
Output: prices_df [productId, predicted_price]
"""
def transform(self, data: tuple):
pricer, state_space = data
products = self.context.products
product_ids = products['id'].values
predicted_prices = pricer.predict(state_space)
return pd.DataFrame({
'productId': product_ids,
'predicted_price': predicted_prices
})

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"""
Session feature extraction for S_t component of state space.
Computes behavioral signals from interaction data already in pipeline.
"""
import pandas as pd
import numpy as np
from typing import Optional, Dict, Any
from collections import Counter
from procesing.steps.base import BaseContextStep
def _extract_features_for_session(session_df: pd.DataFrame, session_timeout_sec: float = 900) -> Dict[str, Any]:
"""Compute features for single session.
Args:
session_df: interaction events for this session
session_timeout_sec: max gap between events before resetting duration (default 900s = 15min)
"""
features = {}
# basic counts
features['total_interactions'] = len(session_df)
event_counts = session_df['eventName'].value_counts().to_dict()
features['page_views'] = event_counts.get('page_view', 0) + event_counts.get('view_item_page', 0)
features['item_views'] = event_counts.get('view_item_page', 0)
features['searches'] = event_counts.get('search', 0)
features['cart_adds'] = event_counts.get('add_item_to_cart', 0)
# hover events
hover_events = ['hover_over_title', 'hover_over_paragraph', 'hover_over_link', 'hover_over_button']
features['hovers'] = sum(event_counts.get(ev, 0) for ev in hover_events)
# product-level signals
product_ids = session_df['productId'].dropna()
features['unique_products_viewed'] = product_ids.nunique()
if len(product_ids) > 0:
product_view_counts = Counter(product_ids)
features['product_view_depth'] = max(product_view_counts.values())
else:
features['product_view_depth'] = 0
# temporal features with session timeout logic
if 'ts' in session_df.columns:
timestamps = session_df['ts'].sort_values()
# compute active duration considering timeout gaps
if len(timestamps) > 1:
time_diffs = timestamps.diff().dropna().dt.total_seconds()
# only count gaps shorter than timeout towards active session duration
active_diffs = time_diffs[time_diffs <= session_timeout_sec]
features['session_duration_sec'] = active_diffs.sum() if len(active_diffs) > 0 else 0.0
features['avg_time_between_events'] = time_diffs.mean()
features['std_time_between_events'] = time_diffs.std()
else:
features['session_duration_sec'] = 0.0
features['avg_time_between_events'] = 0.0
features['std_time_between_events'] = 0.0
if features['session_duration_sec'] > 0:
features['interaction_velocity'] = (features['total_interactions'] / features['session_duration_sec']) * 60
else:
features['interaction_velocity'] = 0.0
else:
features['session_duration_sec'] = 0.0
features['interaction_velocity'] = 0.0
features['avg_time_between_events'] = 0.0
features['std_time_between_events'] = 0.0
# cart/conversion signals
features['cart_to_view_ratio'] = features['cart_adds'] / features['item_views'] if features['item_views'] > 0 else 0.0
return features
def _apply_to_slice(df: pd.DataFrame) -> pd.DataFrame:
"""Apply feature extraction to sliding window of interactions."""
# add columns of all features at each step
new_cols = ["total_interactions", "page_views", "item_views", "searches",
"cart_adds", "hovers", "unique_products_viewed", "product_view_depth",
"session_duration_sec", "interaction_velocity",
"avg_time_between_events", "std_time_between_events",
"cart_to_view_ratio"]
for col in new_cols: df[col] = np.nan
for idx in range(1, len(df) + 1):
features = _extract_features_for_session(df.iloc[:idx])
# fillna kinda meh
features = { k: (v if not pd.isna(v) else 0.0) for k, v in features.items() }
for col in new_cols:
df.at[df.index[idx - 1], col] = features[col]
#print(f"Processed {idx}/{len(df)} events for session {df['sessionId'].iloc[0]}")
return df
class BuildStateSpaceStep(BaseContextStep):
"""
Build state space representation S_t from session features.
Input: session_features DataFrame
Output: state_space_df DataFrame with S_t vectors
"""
def transform(self, rich_dataset: pd.DataFrame) -> pd.DataFrame:
# check if features are present
required_cols = ["total_interactions", "page_views", "item_views", "searches",
"cart_adds", "hovers", "unique_products_viewed", "product_view_depth",
"session_duration_sec", "interaction_velocity",
"avg_time_between_events", "std_time_between_events",
"cart_to_view_ratio"]
if not all(col in rich_dataset.columns for col in required_cols):
raise ValueError("Missing required columns for feature extraction.")
if rich_dataset.empty:
return pd.DataFrame()
# For simplicity, we return as is
return rich_dataset.copy()
class ExtractSessionFeaturesStep(BaseContextStep):
"""
Extract session-level behavioral features from interaction logs.
Input: interactions_df (user-interactions from earlier pipeline step)
Output: interactions_df with added session feature columns
"""
def transform(self, interactions_df: pd.DataFrame) -> pd.DataFrame:
if interactions_df.empty:
return pd.DataFrame()
# ensure timestamp column
if 'ts' in interactions_df.columns:
interactions_df = interactions_df.copy()
interactions_df['ts'] = pd.to_datetime(interactions_df['ts'])
# group by session and compute features
session_features = []
for session_id, session_df in interactions_df.groupby('sessionId'):
new_slice = _apply_to_slice(session_df.sort_values('ts'))
session_features.append(new_slice)
return pd.concat(session_features, ignore_index=True)
class FilterSessionInteractionsStep(BaseContextStep):
"""
Filter interactions DataFrame to specific session.
Input: (interactions_df, session_id)
Output: interactions_df filtered to session_id
"""
def transform(self, data: tuple) -> pd.DataFrame:
interactions_df, session_id = data
return interactions_df[interactions_df['sessionId'] == session_id].copy()

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import pytest
import pandas as pd
from typing import List
from procesing.providers.base import DataProvider
from procesing.context import PipelineContext
class MockProvider(DataProvider):
"""Mock provider for testing, holds in-memory fixtures"""
def __init__(self, products_df=None, experiments_df=None, kafka_data=None):
self._products = products_df if products_df is not None else pd.DataFrame()
self._experiments = experiments_df if experiments_df is not None else pd.DataFrame()
self._kafka_data = kafka_data if kafka_data is not None else {}
def fetch_products(self, store_mode: str) -> pd.DataFrame:
return self._products.copy()
def fetch_experiments(self, experiment_ids: List[str]) -> pd.DataFrame:
if self._experiments.empty:
return pd.DataFrame()
return self._experiments[
self._experiments['id'].isin(experiment_ids)
].copy()
def fetch_kafka_topic(self, topic: str) -> pd.DataFrame:
return self._kafka_data.get(topic, pd.DataFrame()).copy()
@pytest.fixture
def mock_products():
"""Standard product catalog fixture with realistic IDs from test data"""
return pd.DataFrame({
'id': [
'd018efc1-25e9-4284-b276-80386e048b25',
'51266ddb-5b07-47b7-89ee-5b5cae94bb11',
'2cd7f756-fc65-4ba0-ab01-74521c1fff43'
],
'name': ['Junior Suite', 'Superior Room', 'Deluxe Room'],
'base_price': [200.0, 150.0, 180.0]
})
@pytest.fixture
def mock_interactions_raw_kafka():
"""Raw Kafka message structure for interactions, matches production format"""
return [
{
'partitionID': 0, 'offset': 203, 'timestamp': 1764102082676,
'value': {
'payload': {
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'eventName': 'learn_more_about_item',
'page': '/hotel/products/d018efc1-25e9-4284-b276-80386e048b25',
'productId': 'd018efc1-25e9-4284-b276-80386e048b25',
'metadata': {'type': 'hotel', 'dateIndex': 1, 'roomType': 'Junior Suite'},
'storeMode': 'hotel',
'ts': '2025-11-25T20:21:22.674Z'
}
}
},
{
'partitionID': 0, 'offset': 204, 'timestamp': 1764102086982,
'value': {
'payload': {
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'eventName': 'page_view',
'page': '/hotel/products',
'productId': None,
'metadata': {'referrer': ''},
'storeMode': 'hotel',
'ts': '2025-11-25T20:21:26.947Z'
}
}
},
{
'partitionID': 0, 'offset': 205, 'timestamp': 1764102091825,
'value': {
'payload': {
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'eventName': 'hover_over_title',
'page': '/hotel/products',
'productId': '51266ddb-5b07-47b7-89ee-5b5cae94bb11',
'metadata': {'elementText': 'Superior Room', 'dateIndex': 1, 'dwellTime': 1200},
'storeMode': 'hotel',
'ts': '2025-11-25T20:21:31.823Z'
}
}
},
{
'partitionID': 0, 'offset': 206, 'timestamp': 1764102094193,
'value': {
'payload': {
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': 'bbbbcccc-dddd-eeee-ffff-000011112222',
'eventName': 'hover_over_paragraph',
'page': '/hotel/products',
'productId': '51266ddb-5b07-47b7-89ee-5b5cae94bb11',
'metadata': {'elementText': 'price', 'dateIndex': 1, 'dwellTime': 1307},
'storeMode': 'hotel',
'ts': '2025-11-25T20:21:34.191Z'
}
}
},
{
'partitionID': 0, 'offset': 207, 'timestamp': 1764102101970,
'value': {
'payload': {
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': 'bbbbcccc-dddd-eeee-ffff-000011112222',
'eventName': 'hover_over_paragraph',
'page': '/hotel/products',
'productId': 'd018efc1-25e9-4284-b276-80386e048b25',
'metadata': {'elementText': 'price', 'dateIndex': 1, 'dwellTime': 1201},
'storeMode': 'hotel',
'ts': '2025-11-25T20:21:41.967Z'
}
}
}
]
@pytest.fixture
def mock_interactions(mock_interactions_raw_kafka):
"""Processed interaction DataFrame (what provider.fetch_kafka_topic returns)"""
records = [msg['value']['payload'] for msg in mock_interactions_raw_kafka]
df = pd.DataFrame(records)
df['timestamp'] = pd.to_datetime(df['ts'])
return df
@pytest.fixture
def mock_price_logs_raw_kafka():
"""Raw Kafka message structure for price logs, matches production format"""
return [
{
'partitionID': 0, 'offset': 32, 'timestamp': 1764104757969,
'value': {
'payload': {
'productId': '2cd7f756-fc65-4ba0-ab01-74521c1fff43',
'price': 162.47,
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'storeMode': 'hotel',
'ts': '2025-11-25T21:05:57.967Z'
}
}
},
{
'partitionID': 0, 'offset': 33, 'timestamp': 1764104757995,
'value': {
'payload': {
'productId': '2ddabbfc-4127-48fc-86dc-ebc4c677efa2',
'price': 743.49,
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'storeMode': 'hotel',
'ts': '2025-11-25T21:05:57.993Z'
}
}
},
{
'partitionID': 0, 'offset': 34, 'timestamp': 1764104758011,
'value': {
'payload': {
'productId': '2cd7f756-fc65-4ba0-ab01-74521c1fff43',
'price': 163.87,
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'storeMode': 'hotel',
'ts': '2025-11-25T21:05:58.009Z'
}
}
},
{
'partitionID': 0, 'offset': 35, 'timestamp': 1764104758050,
'value': {
'payload': {
'productId': '2ddabbfc-4127-48fc-86dc-ebc4c677efa2',
'price': 397.46,
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'storeMode': 'hotel',
'ts': '2025-11-25T21:05:58.049Z'
}
}
},
{
'partitionID': 0, 'offset': 36, 'timestamp': 1764104768865,
'value': {
'payload': {
'productId': '2cd7f756-fc65-4ba0-ab01-74521c1fff43',
'price': 401.66,
'sessionId': 'd423ce8a-77aa-4c9a-94d4-d1adddcc3472',
'experimentId': '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35',
'storeMode': 'hotel',
'ts': '2025-11-25T21:06:08.864Z'
}
}
}
]
@pytest.fixture
def mock_price_logs(mock_price_logs_raw_kafka):
"""Processed price logs DataFrame (what provider.fetch_kafka_topic returns)"""
# extract payloads and flatten
records = [msg['value']['payload'] for msg in mock_price_logs_raw_kafka]
df = pd.DataFrame(records)
df['timestamp'] = pd.to_datetime(df['ts'])
return df
@pytest.fixture
def mock_experiments():
"""Standard experiment metadata fixture matching Supabase schema"""
return pd.DataFrame({
'id': ['53aefd07-f66a-4d7f-ba8b-7ea1fc562d35', 'bbbbcccc-dddd-eeee-ffff-000011112222'],
'created_at': pd.to_datetime(['2025-11-25T20:00:00Z', '2025-11-26T10:00:00Z']),
'subject_name': ['Session A', 'Session B'],
'xp_human_only': [True, False],
'xp_market_mode': ['hotel', 'airline'],
'xp_task_id': [None, None]
})
@pytest.fixture
def mock_provider(mock_products, mock_experiments, mock_interactions, mock_price_logs):
"""Fully configured mock provider"""
return MockProvider(
products_df=mock_products,
experiments_df=mock_experiments,
kafka_data={
'user-interactions': mock_interactions,
'price-logs': mock_price_logs
}
)
@pytest.fixture
def pipeline_context(mock_provider):
"""Standard pipeline context for testing"""
return PipelineContext(
provider=mock_provider,
store_mode='hotel',
window_size='30s',
n_price_buckets=3
)
@pytest.fixture
def empty_provider():
"""Provider with no data, for edge case testing"""
return MockProvider(
products_df=pd.DataFrame(columns=['id', 'name', 'base_price']),
experiments_df=pd.DataFrame(columns=['id', 'created_at', 'subject_name', 'xp_human_only', 'xp_market_mode', 'xp_task_id']),
kafka_data={'user-interactions': pd.DataFrame(), 'price-logs': pd.DataFrame()}
)
@pytest.fixture
def empty_context(empty_provider):
"""Context with empty provider"""
return PipelineContext(
provider=empty_provider,
store_mode='hotel',
window_size='30s'
)

View File

@@ -0,0 +1,45 @@
import pytest
import random
import pandas as pd
from procesing.steps import (
CreatePriceBucketsStep,
AugmentEventNamesStep
)
def test_bucketing(pipeline_context):
step = CreatePriceBucketsStep(context=pipeline_context)
# Test with normal price data
df = pd.DataFrame({
'metadata_price': random.sample(range(10, 1000), 100)
})
result = step.transform(df)
assert 'price_bucket' in result.columns
# test if is categorical
assert isinstance(result['price_bucket'].dtype, pd.CategoricalDtype)
assert result['price_bucket'].nunique() == 3 # as per context config
# distribution check
counts = result['price_bucket'].value_counts()
assert all(counts > 0)
assert counts.max() - counts.min() <= 10 # roughly equal distribution for 100 samples
# Test with empty DataFrame
df = pd.DataFrame()
result = step.transform(df)
assert 'price_bucket' in result.columns
assert result.empty
def test_augment_names(pipeline_context):
df = pd.DataFrame({
'eventName': ['click', 'view', 'purchase'],
'productId': ['prod_1', 'prod_2', None],
'price_bucket': ['PB_1', None, 'PB_3']
})
step = AugmentEventNamesStep(context=pipeline_context)
result = step.transform(df)
expected_event_names = [
'click_prod_1@PB_1',
'view',
'purchase'
]
assert result['eventName'].tolist() == expected_event_names

View File

@@ -0,0 +1,49 @@
import pytest
import random
import pandas as pd
from procesing.steps import (
ComputeDemandStep
)
def test_compute_demand(pipeline_context):
step = ComputeDemandStep(context=pipeline_context)
# Test with normal interaction data
df = pd.DataFrame({
'ts': pd.date_range(start='2023-01-01', periods=100, freq='h'),
'productId': random.choices([
'd018efc1-25e9-4284-b276-80386e048b25',
'51266ddb-5b07-47b7-89ee-5b5cae94bb11',
'2cd7f756-fc65-4ba0-ab01-74521c1fff43'
], k=100),
'eventName': random.choices(['view', 'click', 'purchase'], k=100)
})
result = step.transform(df)
assert type(result) == pd.DataFrame
assert not result.empty
assert set(result['productId']) == set(pipeline_context.products['id'])
assert all(result['demand_score'] > 100/3 -10)
def test_compute_demand_skewed(pipeline_context):
step = ComputeDemandStep(context=pipeline_context)
# Test with normal interaction data
df = pd.DataFrame({
'ts': pd.date_range(start='2023-01-01', periods=100, freq='h'),
'productId': random.choices([
'd018efc1-25e9-4284-b276-80386e048b25',
'51266ddb-5b07-47b7-89ee-5b5cae94bb11',
'2cd7f756-fc65-4ba0-ab01-74521c1fff43'
], weights=[0.7, 0.2, 0.1], k=100),
'eventName': random.choices(['view', 'click', 'purchase'], k=100)
})
result = step.transform(df)
assert type(result) == pd.DataFrame
assert not result.empty
assert set(result['productId']) == set(pipeline_context.products['id'])
# test for skewness
scores = result.set_index('productId')['demand_score'].to_dict()
assert scores['d018efc1-25e9-4284-b276-80386e048b25'] > \
scores['51266ddb-5b07-47b7-89ee-5b5cae94bb11'] > \
scores['2cd7f756-fc65-4ba0-ab01-74521c1fff43']

View File

@@ -0,0 +1,51 @@
import pytest
import pandas as pd
from procesing.steps import (
FetchInteractionsStep,
FetchPriceLogsStep,
FetchExperimentsStep,
)
def test_fetch_interactions_data(pipeline_context):
step = FetchInteractionsStep(pipeline_context)
data = step.transform(None)
assert data is not None
assert isinstance(data, pd.DataFrame)
expected_cols = [
"eventName",
"dateIndex",
"experimentId",
"storeMode",
"metadata_elementText"
]
for expected in expected_cols:
assert expected in data.columns
def test_fetch_price_logs(pipeline_context):
step = FetchPriceLogsStep(pipeline_context)
data = step.transform(None)
assert data is not None
assert isinstance(data, pd.DataFrame)
expected_cols = [
"price",
"productId"
]
for expected in expected_cols:
assert expected in data.columns
prices = data['price'].to_list()
assert min(prices) >= 0
assert max(prices) <= 9999
def test_experiments_fetching(pipeline_context):
interactions = FetchInteractionsStep(pipeline_context).transform(None)
assert interactions is not None
experiments = FetchExperimentsStep(pipeline_context)
experiment_data = experiments.transform(interactions)
assert experiment_data is not None
assert isinstance(experiment_data, pd.DataFrame)
assert not experiment_data.empty
assert 'id' in experiment_data.columns
assert len(experiment_data) == 2
assert '53aefd07-f66a-4d7f-ba8b-7ea1fc562d35' in experiment_data['id'].values

View File

@@ -0,0 +1,87 @@
import pytest
import pandas as pd
from procesing.pricers import (
StaticPricer,
RandomPricer,
ElasticityBasedPricer
)
def test_static_pricer_fit_and_predict():
# Sample historical data
historical_data = pd.DataFrame({
'product_id': [1, 2, 3],
'base_price': [100.0, 150.0, 200.0]
})
# Initialize and fit StaticPricer
pricer = StaticPricer()
pricer.fit(historical_data)
# Predict prices
predicted_prices = pricer.predict(None)
# Assert that predicted prices match base prices
expected_prices = historical_data['base_price'].values
assert all(predicted_prices == expected_prices), "Predicted prices do not match base prices"
def test_random_pricer_fit_and_predict():
# Sample historical data
historical_data = pd.DataFrame({
'product_id': [1, 2, 3],
'base_price': [100.0, 150.0, 200.0]
})
# Initialize and fit RandomPricer
pricer = RandomPricer(price_min=50.0, price_max=250.0, seed=42)
pricer.fit(historical_data)
# Predict prices
predicted_prices = pricer.predict(None)
# Assert that predicted prices are within bounds
assert predicted_prices.min() >= 50.0, "Predicted prices are below minimum bound"
assert predicted_prices.max() <= 250.0, "Predicted prices are above maximum bound"
# distribution check (not so strict)
assert len(set(predicted_prices)) > 1, "Predicted prices are not varied enough"
assert len(predicted_prices) == len(historical_data), "Number of predicted prices does not match number of products"
def test_elasticity_based_pricer_fit_and_predict():
# Sample historical data
historical_data = pd.DataFrame({
'productId': [1, 2, 3],
'elasticity': [-1.5, -0.5, -2.0],
'base_price': [100.0, 150.0, 200.0],
'mean_demand': [10, 20, 15]
})
# Initialize and fit ElasticityBasedPricer
pricer = ElasticityBasedPricer(alpha=0.1, price_floor=50.0, price_ceil=300.0)
pricer.fit(historical_data)
# Create a mock state space with demand deviations
class MockStateSpace:
def __init__(self, demand):
self.demand = demand
# Simulate demand higher than mean for all products
state_space = MockStateSpace(demand=[15, 25, 20])
# Predict prices
predicted_prices = pricer.predict(state_space)
# Assert that predicted prices are within bounds
assert predicted_prices.min() >= 50.0, "Predicted prices are below minimum bound"
assert predicted_prices.max() <= 300.0, "Predicted prices are above maximum bound"
assert len(predicted_prices) == len(historical_data), "Number of predicted prices does not match number of products"
# now we gotta check semantic validity
# since demand is higher than mean, prices should generally increase
for i, row in historical_data.iterrows():
base_price = row['base_price']
elasticity = row['elasticity']
expected_increase = base_price * (1 + 0.1 * abs(elasticity) * ((state_space.demand[i] - row['mean_demand']) / row['mean_demand']))
assert predicted_prices[i] >= base_price, f"Predicted price for product {row['productId']} did not increase as expected"
assert abs(predicted_prices[i] - expected_increase) < 1e-5, f"Predicted price for product {row['productId']} does not match expected calculation within 1e-5 tolerance"

8
experiments/pytest.ini Normal file
View File

@@ -0,0 +1,8 @@
[pytest]
pythonpath = .
testpaths = procesing/tests agents
python_files = test*.py
python_classes = Test*
python_functions = test_*
asyncio_mode = auto
asyncio_default_fixture_loop_scope = function

180
lib/model_registry.py Executable file
View File

@@ -0,0 +1,180 @@
import redis
import pickle
import json
import pandas as pd
from typing import Optional, Dict, Any
import os
import logging
log = logging.getLogger(__name__)
class ModelRegistry:
"""
Lightweight model registry using Redis for storing pricing models and elasticity data.
Models are serialized using pickle, metadata stored as JSON.
"""
def __init__(self, redis_host: str = None, redis_port: int = None):
host = redis_host or os.getenv('REDIS_HOST', 'localhost')
port = redis_port or int(os.getenv('REDIS_PORT', '6378'))
self.redis_client = redis.Redis(
host=host,
port=port,
db=0,
decode_responses=False
)
self.metadata_prefix = "model:meta:"
self.data_prefix = "model:data:"
self.elasticity_prefix = "elasticity:"
self.prices_prefix = "prices:"
def publish_elasticity(self,
elasticity_df: pd.DataFrame,
model_name: str = 'latest',
metadata: Optional[Dict[str, Any]] = None):
"""
Store elasticity estimates in registry.
Args:
elasticity_df: df with [productId, elasticity, std_error, n_obs]
model_name: identifier for this elasticity snapshot
metadata: additional info (timestamp, window_size, etc)
"""
key = f"{self.elasticity_prefix}{model_name}"
# serialize dataframe as JSON
data_json = elasticity_df.to_json(orient='records')
# store data
self.redis_client.set(key, data_json)
# store metadata
meta = metadata or {}
meta.update({
'n_products': len(elasticity_df),
'mean_elasticity': float(elasticity_df['elasticity'].mean()),
'model_type': 'elasticity_snapshot'
})
meta_key = f"{self.metadata_prefix}{model_name}"
self.redis_client.set(meta_key, json.dumps(meta))
log.info(f"Published elasticity model '{model_name}' with {len(elasticity_df)} products")
def get_elasticity(self, model_name: str = 'latest') -> Optional[pd.DataFrame]:
"""Retrieve elasticity estimates from registry."""
key = f"{self.elasticity_prefix}{model_name}"
data_json = self.redis_client.get(key)
if data_json is None:
return None
# decode bytes to string if needed
if isinstance(data_json, bytes):
data_json = data_json.decode('utf-8')
return pd.read_json(data_json, orient='records')
def publish_pricing_model(self,
pricing_function,
model_name: str = 'latest',
metadata: Optional[Dict[str, Any]] = None):
"""
Store a fitted pricing function object.
Args:
pricing_function: fitted PricingFunction instance
model_name: identifier
metadata: additional info
"""
key = f"{self.data_prefix}{model_name}"
# serialize object
model_bytes = pickle.dumps(pricing_function)
self.redis_client.set(key, model_bytes)
# store metadata
meta = metadata or {}
meta.update({
'model_class': pricing_function.__class__.__name__,
'model_type': 'pricing_function'
})
meta_key = f"{self.metadata_prefix}{model_name}"
self.redis_client.set(meta_key, json.dumps(meta))
log.info(f"Published pricing model '{model_name}' ({meta['model_class']})")
def get_pricing_model(self, model_name: str = 'latest'):
"""Retrieve a pricing function from registry."""
key = f"{self.data_prefix}{model_name}"
model_bytes = self.redis_client.get(key)
if model_bytes is None:
return None
return pickle.loads(model_bytes)
def list_models(self) -> Dict[str, Any]:
"""List all registered models with metadata."""
models = {}
for key in self.redis_client.scan_iter(f"{self.metadata_prefix}*"):
key_str = key.decode('utf-8') if isinstance(key, bytes) else key
model_name = key_str.replace(self.metadata_prefix, '')
meta_json = self.redis_client.get(key)
if meta_json:
if isinstance(meta_json, bytes):
meta_json = meta_json.decode('utf-8')
models[model_name] = json.loads(meta_json)
return models
def publish_prices(self,
prices_df: pd.DataFrame,
model_name: str = 'latest',
metadata: Optional[Dict[str, Any]] = None):
"""Store predicted prices in registry.
Args:
prices_df: df with [productId, predicted_price, ...]
model_name: identifier for this price snapshot
metadata: additional info
"""
key = f"{self.prices_prefix}{model_name}"
data_json = prices_df.to_json(orient='records')
self.redis_client.set(key, data_json)
meta = metadata or {}
meta.update({
'n_products': len(prices_df),
'model_type': 'predicted_prices'
})
meta_key = f"{self.metadata_prefix}prices_{model_name}"
self.redis_client.set(meta_key, json.dumps(meta))
log.info(f"Published prices '{model_name}' for {len(prices_df)} products")
def get_prices(self, model_name: str = 'latest') -> Optional[pd.DataFrame]:
"""Retrieve predicted prices from registry."""
key = f"{self.prices_prefix}{model_name}"
data_json = self.redis_client.get(key)
if data_json is None:
return None
if isinstance(data_json, bytes):
data_json = data_json.decode('utf-8')
return pd.read_json(data_json, orient='records')
def health_check(self) -> bool:
"""Check if Redis connection is alive."""
try:
self.redis_client.ping()
return True
except:
return False

View File

@@ -1,4 +1,5 @@
[pytest]
pythonpath = experiments
testpaths = experiments
python_files = test*.py
python_classes = Test*

View File

@@ -11,3 +11,4 @@ pytest-asyncio
uv
scikit-learn
supabase
pymc

80
web/package-lock.json generated
View File

@@ -10,7 +10,7 @@
"dependencies": {
"@supabase/ssr": "^0.7.0",
"@supabase/supabase-js": "^2.81.1",
"next": "16.0.0",
"next": "^16.0.0",
"react": "19.2.0",
"react-dom": "19.2.0",
"zod": "^4.1.12"
@@ -526,15 +526,15 @@
}
},
"node_modules/@next/env": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/env/-/env-16.0.0.tgz",
"integrity": "sha512-s5j2iFGp38QsG1LWRQaE2iUY3h1jc014/melHFfLdrsMJPqxqDQwWNwyQTcNoUSGZlCVZuM7t7JDMmSyRilsnA==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/env/-/env-16.0.7.tgz",
"integrity": "sha512-gpaNgUh5nftFKRkRQGnVi5dpcYSKGcZZkQffZ172OrG/XkrnS7UBTQ648YY+8ME92cC4IojpI2LqTC8sTDhAaw==",
"license": "MIT"
},
"node_modules/@next/swc-darwin-arm64": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-darwin-arm64/-/swc-darwin-arm64-16.0.0.tgz",
"integrity": "sha512-/CntqDCnk5w2qIwMiF0a9r6+9qunZzFmU0cBX4T82LOflE72zzH6gnOjCwUXYKOBlQi8OpP/rMj8cBIr18x4TA==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-darwin-arm64/-/swc-darwin-arm64-16.0.7.tgz",
"integrity": "sha512-LlDtCYOEj/rfSnEn/Idi+j1QKHxY9BJFmxx7108A6D8K0SB+bNgfYQATPk/4LqOl4C0Wo3LACg2ie6s7xqMpJg==",
"cpu": [
"arm64"
],
@@ -548,9 +548,9 @@
}
},
"node_modules/@next/swc-darwin-x64": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-darwin-x64/-/swc-darwin-x64-16.0.0.tgz",
"integrity": "sha512-hB4GZnJGKa8m4efvTGNyii6qs76vTNl+3dKHTCAUaksN6KjYy4iEO3Q5ira405NW2PKb3EcqWiRaL9DrYJfMHg==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-darwin-x64/-/swc-darwin-x64-16.0.7.tgz",
"integrity": "sha512-rtZ7BhnVvO1ICf3QzfW9H3aPz7GhBrnSIMZyr4Qy6boXF0b5E3QLs+cvJmg3PsTCG2M1PBoC+DANUi4wCOKXpA==",
"cpu": [
"x64"
],
@@ -564,9 +564,9 @@
}
},
"node_modules/@next/swc-linux-arm64-gnu": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-linux-arm64-gnu/-/swc-linux-arm64-gnu-16.0.0.tgz",
"integrity": "sha512-E2IHMdE+C1k+nUgndM13/BY/iJY9KGCphCftMh7SXWcaQqExq/pJU/1Hgn8n/tFwSoLoYC/yUghOv97tAsIxqg==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-linux-arm64-gnu/-/swc-linux-arm64-gnu-16.0.7.tgz",
"integrity": "sha512-mloD5WcPIeIeeZqAIP5c2kdaTa6StwP4/2EGy1mUw8HiexSHGK/jcM7lFuS3u3i2zn+xH9+wXJs6njO7VrAqww==",
"cpu": [
"arm64"
],
@@ -580,9 +580,9 @@
}
},
"node_modules/@next/swc-linux-arm64-musl": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-linux-arm64-musl/-/swc-linux-arm64-musl-16.0.0.tgz",
"integrity": "sha512-xzgl7c7BVk4+7PDWldU+On2nlwnGgFqJ1siWp3/8S0KBBLCjonB6zwJYPtl4MUY7YZJrzzumdUpUoquu5zk8vg==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-linux-arm64-musl/-/swc-linux-arm64-musl-16.0.7.tgz",
"integrity": "sha512-+ksWNrZrthisXuo9gd1XnjHRowCbMtl/YgMpbRvFeDEqEBd523YHPWpBuDjomod88U8Xliw5DHhekBC3EOOd9g==",
"cpu": [
"arm64"
],
@@ -596,9 +596,9 @@
}
},
"node_modules/@next/swc-linux-x64-gnu": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-linux-x64-gnu/-/swc-linux-x64-gnu-16.0.0.tgz",
"integrity": "sha512-sdyOg4cbiCw7YUr0F/7ya42oiVBXLD21EYkSwN+PhE4csJH4MSXUsYyslliiiBwkM+KsuQH/y9wuxVz6s7Nstg==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-linux-x64-gnu/-/swc-linux-x64-gnu-16.0.7.tgz",
"integrity": "sha512-4WtJU5cRDxpEE44Ana2Xro1284hnyVpBb62lIpU5k85D8xXxatT+rXxBgPkc7C1XwkZMWpK5rXLXTh9PFipWsA==",
"cpu": [
"x64"
],
@@ -612,9 +612,9 @@
}
},
"node_modules/@next/swc-linux-x64-musl": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-linux-x64-musl/-/swc-linux-x64-musl-16.0.0.tgz",
"integrity": "sha512-IAXv3OBYqVaNOgyd3kxR4L3msuhmSy1bcchPHxDOjypG33i2yDWvGBwFD94OuuTjjTt/7cuIKtAmoOOml6kfbg==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-linux-x64-musl/-/swc-linux-x64-musl-16.0.7.tgz",
"integrity": "sha512-HYlhqIP6kBPXalW2dbMTSuB4+8fe+j9juyxwfMwCe9kQPPeiyFn7NMjNfoFOfJ2eXkeQsoUGXg+O2SE3m4Qg2w==",
"cpu": [
"x64"
],
@@ -628,9 +628,9 @@
}
},
"node_modules/@next/swc-win32-arm64-msvc": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-win32-arm64-msvc/-/swc-win32-arm64-msvc-16.0.0.tgz",
"integrity": "sha512-bmo3ncIJKUS9PWK1JD9pEVv0yuvp1KPuOsyJTHXTv8KDrEmgV/K+U0C75rl9rhIaODcS7JEb6/7eJhdwXI0XmA==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-win32-arm64-msvc/-/swc-win32-arm64-msvc-16.0.7.tgz",
"integrity": "sha512-EviG+43iOoBRZg9deGauXExjRphhuYmIOJ12b9sAPy0eQ6iwcPxfED2asb/s2/yiLYOdm37kPaiZu8uXSYPs0Q==",
"cpu": [
"arm64"
],
@@ -644,9 +644,9 @@
}
},
"node_modules/@next/swc-win32-x64-msvc": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/@next/swc-win32-x64-msvc/-/swc-win32-x64-msvc-16.0.0.tgz",
"integrity": "sha512-O1cJbT+lZp+cTjYyZGiDwsOjO3UHHzSqobkPNipdlnnuPb1swfcuY6r3p8dsKU4hAIEO4cO67ZCfVVH/M1ETXA==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/@next/swc-win32-x64-msvc/-/swc-win32-x64-msvc-16.0.7.tgz",
"integrity": "sha512-gniPjy55zp5Eg0896qSrf3yB1dw4F/3s8VK1ephdsZZ129j2n6e1WqCbE2YgcKhW9hPB9TVZENugquWJD5x0ug==",
"cpu": [
"x64"
],
@@ -1447,12 +1447,12 @@
}
},
"node_modules/next": {
"version": "16.0.0",
"resolved": "https://registry.npmjs.org/next/-/next-16.0.0.tgz",
"integrity": "sha512-nYohiNdxGu4OmBzggxy9rczmjIGI+TpR5vbKTsE1HqYwNm1B+YSiugSrFguX6omMOKnDHAmBPY4+8TNJk0Idyg==",
"version": "16.0.7",
"resolved": "https://registry.npmjs.org/next/-/next-16.0.7.tgz",
"integrity": "sha512-3mBRJyPxT4LOxAJI6IsXeFtKfiJUbjCLgvXO02fV8Wy/lIhPvP94Fe7dGhUgHXcQy4sSuYwQNcOLhIfOm0rL0A==",
"license": "MIT",
"dependencies": {
"@next/env": "16.0.0",
"@next/env": "16.0.7",
"@swc/helpers": "0.5.15",
"caniuse-lite": "^1.0.30001579",
"postcss": "8.4.31",
@@ -1465,14 +1465,14 @@
"node": ">=20.9.0"
},
"optionalDependencies": {
"@next/swc-darwin-arm64": "16.0.0",
"@next/swc-darwin-x64": "16.0.0",
"@next/swc-linux-arm64-gnu": "16.0.0",
"@next/swc-linux-arm64-musl": "16.0.0",
"@next/swc-linux-x64-gnu": "16.0.0",
"@next/swc-linux-x64-musl": "16.0.0",
"@next/swc-win32-arm64-msvc": "16.0.0",
"@next/swc-win32-x64-msvc": "16.0.0",
"@next/swc-darwin-arm64": "16.0.7",
"@next/swc-darwin-x64": "16.0.7",
"@next/swc-linux-arm64-gnu": "16.0.7",
"@next/swc-linux-arm64-musl": "16.0.7",
"@next/swc-linux-x64-gnu": "16.0.7",
"@next/swc-linux-x64-musl": "16.0.7",
"@next/swc-win32-arm64-msvc": "16.0.7",
"@next/swc-win32-x64-msvc": "16.0.7",
"sharp": "^0.34.4"
},
"peerDependencies": {

View File

@@ -10,7 +10,7 @@
"dependencies": {
"@supabase/ssr": "^0.7.0",
"@supabase/supabase-js": "^2.81.1",
"next": "16.0.0",
"next": "^16.0.0",
"react": "19.2.0",
"react-dom": "19.2.0",
"zod": "^4.1.12"

View File

@@ -0,0 +1,11 @@
export default function AirlineCheckout() {
return (
<div className="min-h-screen flex items-center justify-center bg-gradient-to-br from-sky-50 to-blue-50">
<div className="text-center p-8">
<h1 className="text-4xl font-light text-gray-800 mb-4">
Thank you for flying with us
</h1>
</div>
</div>
);
}

View File

@@ -7,7 +7,7 @@ export async function POST(req: NextRequest) {
try {
const body = await req.json();
const storeMode = process.env.STORE_MODE || 'hotel';
const storeMode = process.env.NEXT_PUBLIC_STORE_MODE || process.env.STORE_MODE || 'hotel';
const userAgent = req.headers.get('user-agent') || undefined;
const event: EventBase = {

View File

@@ -11,18 +11,7 @@ export async function GET(req: NextRequest) {
const productId = searchParams.get('productId');
const sessionId = searchParams.get('sessionId');
const experimentId = searchParams.get('experimentId');
const storeMode = process.env.NEXT_PUBLIC_STORE_MODE || 'shop';
// log in dev
if (process.env.NODE_ENV === 'development') {
console.log('[pricing-api]', {
productId,
sessionId,
experimentId,
storeMode,
timestamp: new Date().toISOString(),
});
}
const storeMode = process.env.NEXT_PUBLIC_STORE_MODE || process.env.STORE_MODE || 'hotel';
if (!productId) {
return NextResponse.json(
@@ -31,14 +20,73 @@ export async function GET(req: NextRequest) {
);
}
// stub: call external pricing provider (random for now)
const basePrice = 100 + Math.random() * 900; // 100-1000 range
const price = Math.round(basePrice * 100) / 100;
const timestamp = new Date().toISOString();
let price: number;
let basePrice: number | undefined;
let markup: number | undefined;
let elasticity: number | undefined;
// call real pricing provider
const providerUrl = process.env.PRICING_PROVIDER_URL || 'http://localhost:5001';
try {
const queryParams = new URLSearchParams();
if (sessionId) queryParams.append('sessionId', sessionId);
if (experimentId) queryParams.append('experimentId', experimentId);
const providerResponse = await fetch(
`${providerUrl}/api/${storeMode}/price/${productId}?${queryParams.toString()}`,
{ headers: { 'Accept': 'application/json' }, cache: 'no-store' }
);
if (!providerResponse.ok) {
throw new Error(`Provider returned ${providerResponse.status}`);
}
const providerData = await providerResponse.json();
price = providerData.price;
basePrice = providerData.base_price;
markup = providerData.markup;
elasticity = providerData.elasticity;
} catch (err) {
console.error('[pricing-provider-error]', err);
// fallback to random pricing if provider unavailable
const randomBase = 100 + Math.random() * 900;
price = Math.round(randomBase * 100) / 100;
}
// log price to kafka for elasticity computation
if (sessionId) {
const backendUrl = process.env.BACKEND_URL || 'http://localhost:5000';
try {
await fetch(`${backendUrl}/api/kafka/price-log`, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify({
productId,
price,
sessionId,
experimentId: experimentId || undefined,
storeMode,
ts: timestamp,
}),
});
} catch (err) {
console.error('[price-log-error]', err);
}
}
if (process.env.NODE_ENV === 'development') {
console.log('[pricing-api]', {
productId, sessionId, experimentId, storeMode,
price, basePrice, markup, elasticity, timestamp,
});
}
const response: PricingResponse = {
price,
currency: 'EUR',
cachedAt: new Date().toISOString(),
cachedAt: timestamp,
};
return NextResponse.json(response);

View File

@@ -96,7 +96,10 @@ export default function CartPage() {
<span className="text-3xl font-bold">${total.toFixed(2)}</span>
</div>
<button
onClick={() => dispatchInteraction('checkout_start', undefined, { total, itemCount })}
onClick={() => {
dispatchInteraction('checkout_start', undefined, { total, itemCount });
window.location.href = '/checkout';
}}
className="w-full py-3 bg-blue-600 hover:bg-blue-700 text-white rounded-lg font-medium transition-colors"
>
Proceed to Checkout

View File

@@ -0,0 +1,11 @@
export default function HotelCheckout() {
return (
<div className="min-h-screen flex items-center justify-center bg-gradient-to-br from-blue-50 to-indigo-50">
<div className="text-center p-8">
<h1 className="text-4xl font-light text-gray-800 mb-4">
Thank you for staying with us
</h1>
</div>
</div>
);
}

View File

@@ -2,10 +2,20 @@
import { useState, FormEvent } from 'react';
import { useRouter } from 'next/navigation';
import { Button, Label, Input, DateInput, RadioGroup, Dropdown, DropdownCounter } from '@/components/ui';
import { Button, Label, DateInput, Dropdown, DropdownCounter, SelectDropdown, SelectOption } from '@/components/ui';
import { dateToDaysFromToday } from '@/lib/airline-utils';
type TripType = 'roundtrip' | 'oneway' | 'multicity';
const CITIES: SelectOption[] = [
{ value: 'JFK', label: 'New York (JFK)', sublabel: 'John F. Kennedy International' },
{ value: 'LAX', label: 'Los Angeles (LAX)', sublabel: 'Los Angeles International' },
{ value: 'ORD', label: 'Chicago (ORD)', sublabel: "O'Hare International" },
{ value: 'MIA', label: 'Miami (MIA)', sublabel: 'Miami International' },
{ value: 'SFO', label: 'San Francisco (SFO)', sublabel: 'San Francisco International' },
{ value: 'SEA', label: 'Seattle (SEA)', sublabel: 'Seattle-Tacoma International' },
{ value: 'ATL', label: 'Atlanta (ATL)', sublabel: 'Hartsfield-Jackson International' },
{ value: 'DFW', label: 'Dallas (DFW)', sublabel: 'Dallas/Fort Worth International' },
];
const PlaneIcon = () => (
<svg className="w-5 h-5" fill="none" stroke="currentColor" viewBox="0 0 24 24">
@@ -22,11 +32,9 @@ const LocationIcon = () => (
export default function AirlineHero() {
const router = useRouter();
const [tripType, setTripType] = useState<TripType>('roundtrip');
const [origin, setOrigin] = useState('');
const [destination, setDestination] = useState('');
const [departDate, setDepartDate] = useState('');
const [returnDate, setReturnDate] = useState('');
const [passengers, setPassengers] = useState({ adults: 1, children: 0, infants: 0 });
const handleSearch = (e: FormEvent) => {
@@ -40,8 +48,6 @@ export default function AirlineHero() {
if (origin) params.set('origin', origin);
if (destination) params.set('destination', destination);
if (tripType !== 'roundtrip') params.set('tripType', tripType);
if (returnDate && tripType === 'roundtrip') params.set('returnDate', returnDate);
params.set('adults', passengers.adults.toString());
params.set('children', passengers.children.toString());
@@ -66,28 +72,15 @@ export default function AirlineHero() {
<div className="search-form">
<form onSubmit={handleSearch}>
<div className="mb-6">
<RadioGroup
name="tripType"
value={tripType}
onChange={setTripType}
options={[
{ value: 'roundtrip', label: 'Round-trip' },
{ value: 'oneway', label: 'One-way' },
{ value: 'multicity', label: 'Multi-city' },
]}
/>
</div>
<div className="grid grid-cols-1 sm:grid-cols-2 lg:grid-cols-4 gap-4">
<div className="grid grid-cols-1 sm:grid-cols-2 lg:grid-cols-3 gap-4">
<div>
<Label htmlFor="origin">From</Label>
<Input
type="text"
<SelectDropdown
id="origin"
value={origin}
onChange={(e) => setOrigin(e.target.value)}
placeholder="Airport or city"
onChange={setOrigin}
options={CITIES}
placeholder="Select origin"
icon={<PlaneIcon />}
required
/>
@@ -95,12 +88,12 @@ export default function AirlineHero() {
<div>
<Label htmlFor="destination">To</Label>
<Input
type="text"
<SelectDropdown
id="destination"
value={destination}
onChange={(e) => setDestination(e.target.value)}
placeholder="Airport or city"
onChange={setDestination}
options={CITIES}
placeholder="Select destination"
icon={<LocationIcon />}
required
/>
@@ -115,20 +108,6 @@ export default function AirlineHero() {
required
/>
</div>
<div>
<Label htmlFor="returnDate">Return</Label>
{tripType === 'roundtrip' ? (
<DateInput
id="returnDate"
value={returnDate}
onChange={(e) => setReturnDate(e.target.value)}
required
/>
) : (
<DateInput id="returnDate" disabled />
)}
</div>
</div>
<div className="grid grid-cols-4 sm:grid-cols-3 lg:grid-cols-4 gap-4 mt-4">

View File

@@ -21,7 +21,7 @@ const AmenityIcon = ({ name }: { name: string }) => {
breakfast: 'Breakfast',
spa: 'Spa',
};
return <span className="feature-tag">{iconMap[name.toLowerCase()] || name}</span>;
return <span className="feature-tag">{iconMap[name.toLowerCase()] || name.replaceAll("_", " ")}</span>;
};
export default function HotelCard({ hotel }: { hotel: Hotel }) {
@@ -47,18 +47,31 @@ export default function HotelCard({ hotel }: { hotel: Hotel }) {
window.location.href = `/hotel/products/${hotel.id}`;
};
const imageUrl = `https://images.unsplash.com/photo-1551882547-ff40c63fe5fa?w=400&h=300&fit=crop`;
return (
<div
className="hotel-card cursor-pointer"
onClick={handleCardClick}
>
<div className="hotel-image bg-gray-200 flex items-center justify-center">
<span className="text-gray-400 text-sm">Image</span>
<div className="hotel-image relative overflow-hidden">
<img
src={imageUrl}
alt={hotel.name}
className="w-full h-full object-cover"
onError={(e) => {
e.currentTarget.style.display = 'none';
const fallback = e.currentTarget.nextElementSibling as HTMLElement;
if (fallback) fallback.style.display = 'flex';
}}
/>
<div className="absolute inset-0 bg-gray-200 flex items-center justify-center" style={{ display: 'none' }}>
<span className="text-gray-400 text-sm">Image</span>
</div>
</div>
<div className="hotel-info">
<h3 ref={titleRef} className="hotel-name">{hotel.name}</h3>
<div className="hotel-location text-sm mb-2">{hotel.roomType}</div>
<div className="text-sm text-[var(--text-secondary)] mb-2">
{hotel.checkIn} - {hotel.checkOut}
</div>
@@ -67,9 +80,6 @@ export default function HotelCard({ hotel }: { hotel: Hotel }) {
<AmenityIcon key={a} name={a} />
))}
</div>
{hotel.refundable && (
<div className="free-cancellation mt-2">Free cancellation</div>
)}
</div>
<div className="hotel-pricing">

View File

@@ -1,6 +1,8 @@
'use client';
import { useState, useEffect } from 'react';
import type { Hotel } from '@/lib/hotel-utils';
import PriceDisplay from '@/components/ui/PriceDisplay';
interface HotelDetailsProps {
product: Hotel;
@@ -8,19 +10,63 @@ interface HotelDetailsProps {
addedToCart: boolean;
}
const PriceTotalDisplay = ({ productId, nights }: { productId: string; nights: number }) => {
const [price, setPrice] = useState<number | null>(null);
useEffect(() => {
const fetchPrice = async () => {
try {
const sessionRes = await fetch('/api/session');
const sessionData = await sessionRes.json();
const params = new URLSearchParams({
productId,
sessionId: sessionData.sessionId || '',
experimentId: sessionData.experimentId || '',
});
const res = await fetch(`/api/pricing?${params.toString()}`);
const data = await res.json();
setPrice(data.price);
} catch (err) {
console.error('failed to fetch price for total:', err);
}
};
fetchPrice();
}, [productId]);
if (!price) return <span className="text-4xl font-bold text-gray-900">Loading...</span>;
return (
<span className="text-4xl font-bold text-gray-900">
${(price * nights).toFixed(2)}
</span>
);
};
export default function HotelDetails({ product, onAddToCart, addedToCart }: HotelDetailsProps) {
const imageUrl = `https://images.unsplash.com/photo-1566073771259-6a8506099945?w=800&h=600&fit=crop`;
return (
<div className="w-full flex flex-col lg:flex-row gap-12 py-8">
{/* Image Section - Larger and cleaner */}
<div className="w-full lg:w-1/2 bg-gray-100 rounded-lg aspect-[4/3] flex items-center justify-center shrink-0">
<span className="text-gray-400 text-lg font-medium">Hotel Image</span>
<div className="w-full lg:w-1/2 rounded-lg aspect-[4/3] overflow-hidden shrink-0">
<img
src={imageUrl}
alt={product.name}
className="w-full h-full object-cover"
onError={(e) => {
e.currentTarget.style.display = 'none';
if (e.currentTarget.nextElementSibling) {
(e.currentTarget.nextElementSibling as HTMLElement).style.display = 'flex';
}
}}
/>
<div className="w-full h-full bg-gray-100 rounded-lg flex items-center justify-center" style={{ display: 'none' }}>
<span className="text-gray-400 text-lg font-medium">Hotel Image</span>
</div>
</div>
{/* Details Section - Full height/width usage */}
<div className="flex-1 flex flex-col">
<div className="border-b pb-6 mb-6">
<h1 className="text-4xl font-bold text-gray-900 mb-2">{product.name}</h1>
<p className="text-xl text-gray-500">{product.roomType}</p>
</div>
<div className="grid grid-cols-2 gap-8 mb-8">
@@ -39,24 +85,17 @@ export default function HotelDetails({ product, onAddToCart, addedToCart }: Hote
<div className="flex flex-wrap gap-3">
{product.amenities.map(a => (
<span key={a} className="px-3 py-1.5 bg-gray-100 text-gray-700 rounded-md text-sm font-medium">
{a}
{a.replaceAll('_', ' ')}
</span>
))}
</div>
</div>
{product.refundable && (
<div className="mb-8 p-4 bg-green-50 text-green-800 rounded-md inline-block">
<span className="font-medium">Free cancellation available</span>
</div>
)}
<div className="mt-auto pt-6 border-t flex items-center justify-between">
<div>
<p className="text-sm text-gray-500 mb-1">Total for {product.nights} night{product.nights > 1 ? 's' : ''}</p>
<div className="flex items-baseline gap-2">
<span className="text-4xl font-bold text-gray-900">${product.pricePerNight * product.nights}</span>
<span className="text-gray-500">/ {product.nights} nights</span>
<p className="text-sm text-gray-500 mb-1">Price per night</p>
<div className="mb-3">
<PriceDisplay productId={product.id} className="!text-2xl" />
</div>
</div>

View File

@@ -1,7 +1,29 @@
import { InputHTMLAttributes } from 'react';
import { InputHTMLAttributes, useMemo } from 'react';
interface DateInpProps extends Omit<InputHTMLAttributes<HTMLInputElement>, 'type'> {}
export default function DateInput({ className = '', ...props }: DateInpProps) {
return <input type="date" className={`input-field ${className}`.trim()} {...props} />;
const { minDate, maxDate } = useMemo(() => {
const today = new Date();
const tomorrow = new Date(today);
tomorrow.setDate(today.getDate() + 1);
const tenDaysOut = new Date(tomorrow);
tenDaysOut.setDate(tomorrow.getDate() + 9); // tomorrow + 9 = 10 days total
return {
minDate: tomorrow.toISOString().split('T')[0],
maxDate: tenDaysOut.toISOString().split('T')[0]
};
}, []);
return (
<input
type="date"
className={`input-field ${className}`.trim()}
min={minDate}
max={maxDate}
{...props}
/>
);
}

View File

@@ -20,7 +20,7 @@ const NavLink = ({ href, children }: { href: string; children: React.ReactNode }
href={href}
className={`px-4 py-2 rounded-md transition-colors ${
isActive
? 'bg-[var(--accent-primary)] text-white font-semibold'
? 'bg-[var(--accent-primary)] font-semibold'
: 'hover:bg-[var(--accent-primary-light)] text-[var(--text-primary)]'
}`}
>
@@ -37,9 +37,7 @@ export default function Navigation() {
<div className="flex items-center space-x-1">
<NavLink href="/">Home</NavLink>
<NavLink href="/products">Products</NavLink>
<NavLink href="/search">Search</NavLink>
<NavLink href="/cart">Cart</NavLink>
<NavLink href="/checkout">Checkout</NavLink>
</div>
</div>
</div>

View File

@@ -0,0 +1,119 @@
'use client';
import { useState, useRef, useEffect, ReactNode } from 'react';
export interface SelectOption {
value: string;
label: string;
sublabel?: string;
}
interface SelectDropdownProps {
value: string;
onChange: (value: string) => void;
options: SelectOption[];
placeholder?: string;
icon?: ReactNode;
required?: boolean;
id?: string;
}
export default function SelectDropdown({
value,
onChange,
options,
placeholder = 'Select...',
icon,
required,
id,
}: SelectDropdownProps) {
const [open, setOpen] = useState(false);
const [filter, setFilter] = useState('');
const ref = useRef<HTMLDivElement>(null);
const inputRef = useRef<HTMLInputElement>(null);
useEffect(() => {
const handleClick = (e: MouseEvent) => {
if (ref.current && !ref.current.contains(e.target as Node)) {
setOpen(false);
setFilter('');
}
};
document.addEventListener('mousedown', handleClick);
return () => document.removeEventListener('mousedown', handleClick);
}, []);
const selectedOption = options.find((o) => o.value === value);
const filtered = options.filter(
(o) =>
o.label.toLowerCase().includes(filter.toLowerCase()) ||
o.value.toLowerCase().includes(filter.toLowerCase()) ||
o.sublabel?.toLowerCase().includes(filter.toLowerCase())
);
const handleSelect = (opt: SelectOption) => {
onChange(opt.value);
setOpen(false);
setFilter('');
};
return (
<div className="relative" ref={ref}>
<div
className="input-field flex items-center gap-2 cursor-pointer box-border"
onClick={() => {
setOpen(true);
setTimeout(() => inputRef.current?.focus(), 0);
}}
>
{icon && <span className="text-[var(--text-secondary)]">{icon}</span>}
{open ? (
<input
ref={inputRef}
type="text"
id={id}
value={filter}
onChange={(e) => setFilter(e.target.value)}
placeholder={placeholder}
className="flex-1 bg-transparent outline-none text-sm text-[var(--text-primary)]"
/>
) : (
<span className={`flex-1 text-sm ${value ? 'text-[var(--text-primary)]' : 'text-[var(--text-secondary)]'}`}>
{selectedOption ? selectedOption.label : placeholder}
</span>
)}
<svg
className={`w-4 h-4 text-[var(--text-secondary)] transition-transform ${open ? 'rotate-180' : ''}`}
fill="none"
stroke="currentColor"
viewBox="0 0 24 24"
>
<path strokeLinecap="round" strokeLinejoin="round" strokeWidth={2} d="M19 9l-7 7-7-7" />
</svg>
</div>
{open && (
<div className="absolute z-20 mt-1 w-full bg-[var(--bg-primary)] border-2 border-[var(--accent-primary)] rounded-md shadow-lg max-h-60 overflow-y-auto">
{filtered.length === 0 ? (
<div className="px-4 py-3 text-sm text-[var(--text-secondary)]">No results</div>
) : (
filtered.map((opt) => (
<div
key={opt.value}
onClick={() => handleSelect(opt)}
className={`px-4 py-2 cursor-pointer transition-colors hover:bg-[var(--accent-primary-light)] ${
opt.value === value ? 'bg-[var(--accent-primary-light)]' : ''
}`}
>
<div className="text-sm font-medium text-[var(--text-primary)]">{opt.label}</div>
{opt.sublabel && <div className="text-xs text-[var(--text-secondary)]">{opt.sublabel}</div>}
</div>
))
)}
</div>
)}
{required && !value && (
<input type="text" required className="sr-only" tabIndex={-1} value="" onChange={() => {}} />
)}
</div>
);
}

View File

@@ -5,3 +5,5 @@ export { default as DateInput } from './DateInput';
export { default as RadioGroup } from './RadioGroup';
export { default as Dropdown, DropdownCounter } from './Dropdown';
export { default as Navigation } from './Navigation';
export { default as SelectDropdown } from './SelectDropdown';
export type { SelectOption } from './SelectDropdown';

View File

@@ -16,7 +16,7 @@ const envSchema = z.object({
// parse and validate env at module load, fail fast with descriptive errors
const parseEnv = (): Env => {
const result = envSchema.safeParse({
STORE_MODE: process.env.STORE_MODE,
STORE_MODE: process.env.NEXT_PUBLIC_STORE_MODE || process.env.STORE_MODE,
NEXT_PUBLIC_API_BASE: process.env.NEXT_PUBLIC_API_BASE,
NEXT_PUBLIC_APP_ENV: process.env.NEXT_PUBLIC_APP_ENV,
});

View File

@@ -21,7 +21,6 @@ export interface Hotel {
checkOut: string;
dateIndex: number;
amenities: string[];
refundable: boolean;
pricePerNight: number;
nights: number;
}
@@ -30,19 +29,37 @@ const EPOCH = new Date(0);
export const transformProduct = (p: HotelProduct): Hotel => {
const { id, room_type, date_index, metadata } = p;
const checkIn = new Date(EPOCH.getTime() + date_index * 86400000);
// DB stores date_index as days since epoch
// but if value is small (<1000), treat as days from today for backward compat
let checkIn: Date;
if (date_index < 1000) {
// legacy: treat as offset from today
const today = new Date();
today.setHours(0, 0, 0, 0);
checkIn = new Date(today.getTime() + date_index * 86400000);
} else {
// proper: days since epoch
checkIn = new Date(EPOCH.getTime() + date_index * 86400000);
}
const nights = 1;
const checkOut = new Date(checkIn.getTime() + nights * 86400000);
const formatOpts: Intl.DateTimeFormatOptions = {
month: 'short',
day: 'numeric',
year: checkIn.getFullYear() !== new Date().getFullYear() ? 'numeric' : undefined
};
return {
id,
name: metadata?.name || room_type,
roomType: room_type,
checkIn: checkIn.toLocaleDateString('en-US', { month: 'short', day: 'numeric' }),
checkOut: checkOut.toLocaleDateString('en-US', { month: 'short', day: 'numeric' }),
checkIn: checkIn.toLocaleDateString('en-US', formatOpts),
checkOut: checkOut.toLocaleDateString('en-US', formatOpts),
dateIndex: date_index,
amenities: metadata?.amenities || [],
refundable: metadata?.refundable || false,
pricePerNight: metadata?.base_price || 100,
nights,
};

View File

@@ -278,6 +278,8 @@
padding: 12px;
transition: border-color 0.2s ease;
width: 100%;
min-height: 48px;
box-sizing: border-box;
}
[data-mode="airline"] .input-field:focus {