chore: e2e is done with new pipeline

This commit is contained in:
2025-11-28 18:52:05 +01:00
parent c8a69f0e3b
commit d0d18927cf
3 changed files with 91 additions and 10 deletions

View File

@@ -4,9 +4,27 @@ from pydantic import BaseModel
from typing import Literal, Optional from typing import Literal, Optional
import uvicorn, os, sys import uvicorn, os, sys
from supabase import create_client, Client 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 # 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 (
StateSpace,
PredictPricesStep
)
from procesing import PipelineContext
sys.path.append(os.path.dirname(os.path.abspath(__file__))+ "/../../lib/")
from lib.model_registry import ModelRegistry
# Config # Config
app = FastAPI(title="PHANTOM Pricing Provider") app = FastAPI(title="PHANTOM Pricing Provider")
@@ -34,23 +52,80 @@ def get_price(mode: Literal['hotel', 'airline'], productId: str, sessionId: Opti
metadata = product['metadata'] metadata = product['metadata']
base_price = metadata.get('base_price', 100.0) base_price = metadata.get('base_price', 100.0)
class Provider(SupabaseProvider, BackendAPIProvider):
def __init__(self, backend_url: str):
SupabaseProvider.__init__(self)
BackendAPIProvider.__init__(self, backend_url=backend_url)
context = PipelineContext(
provider=Provider(backend_url=os.getenv("BACKEND_API_URL")),
store_mode=mode
)
pricing_model = registry.get_pricing_model('latest')
elasticity_df = registry.get_elasticity('latest') elasticity_df = registry.get_elasticity('latest')
if not elasticity_df: if pricing_model is None or elasticity_df is None:
return PriceResponse(productId=productId, price=base_price, base_price=base_price, markup=1.0) # fallback to base price if no model available
return PriceResponse(
productId=productId,
price=base_price,
base_price=base_price,
markup=1.0,
elasticity=None
)
pricing_model = registry.get_pricing_model('latest') or ElasticityBasedPricingFunction().fit(elasticity_df) # build full state space for all products in catalog
product_elasticity = elasticity_df[elasticity_df['productId'] == productId]['elasticity'].iloc[0] if (elasticity_row := elasticity_df[elasticity_df['productId'] == productId]).any().any() else None products = context.products
if products.empty:
raise HTTPException(500, "No products available in catalog")
state = StateSpace(np.array([0.0]), np.array([base_price]), pd.DataFrame()) # merge elasticity with product base prices
optimal_price = pricing_model.transform(state, np.array([productId]))[0] products_with_meta = products.copy()
products_with_meta['base_price'] = products_with_meta['metadata'].apply(
lambda m: m.get('base_price', 100.0) if isinstance(m, dict) else 100.0
)
merged = products_with_meta[['id', 'base_price']].rename(
columns={'id': 'productId'}
).merge(
elasticity_df[['productId', 'elasticity']],
on='productId',
how='left'
).fillna({'elasticity': 0.0})
# use fitted pricer's mean_demand if available, else default to 10.0
demand_values = (pricing_model.mean_demand
if hasattr(pricing_model, 'mean_demand') and pricing_model.mean_demand is not None
else np.ones(len(merged)) * 10.0)
state = StateSpace(
demand=demand_values,
prices=merged['base_price'].values,
session_features=pd.DataFrame()
)
oracle = PredictPricesStep(context=context)
prices_df = oracle.transform((pricing_model, state))
# extract price for requested product
product_price_row = prices_df[prices_df['productId'] == productId]
if product_price_row.empty:
raise HTTPException(404, f"No pricing available for product {productId}")
optimal_price = float(product_price_row['predicted_price'].iloc[0])
# extract elasticity if available
product_elasticity_row = elasticity_df[elasticity_df['productId'] == productId]
product_elasticity = (float(product_elasticity_row['elasticity'].iloc[0])
if not product_elasticity_row.empty else None)
return PriceResponse( return PriceResponse(
productId=productId, productId=productId,
price=float(optimal_price), price=optimal_price,
base_price=base_price, base_price=base_price,
markup=optimal_price/base_price, markup=optimal_price/base_price,
elasticity=float(product_elasticity) if product_elasticity is not None else None elasticity=product_elasticity
) )
@app.get("/models") @app.get("/models")

View File

@@ -26,8 +26,12 @@ class ElasticityBasedPricer(PricingFunction):
raise ValueError("historical_data must contain 'elasticity' column") raise ValueError("historical_data must contain 'elasticity' column")
self.elasticity = historical_data['elasticity'].values self.elasticity = historical_data['elasticity'].values
self.base_prices = historical_data.get('base_price', np.ones(len(historical_data)) * 100).values self.base_prices = (historical_data['base_price'].values
self.mean_demand = historical_data.get('mean_demand', np.ones(len(historical_data)) * 10).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 return self
def predict(self, state_space) -> np.ndarray: def predict(self, state_space) -> np.ndarray:

View File

@@ -4,6 +4,7 @@ import requests
from typing import List from typing import List
from supabase import create_client, Client from supabase import create_client, Client
from procesing.providers.base import DataProvider from procesing.providers.base import DataProvider
from dotenv import load_dotenv
class SupabaseProvider(DataProvider): class SupabaseProvider(DataProvider):
"""Concrete Supabase + backend API implementation""" """Concrete Supabase + backend API implementation"""
@@ -11,6 +12,7 @@ class SupabaseProvider(DataProvider):
def __init__(self, def __init__(self,
supabase_url: str = None, supabase_url: str = None,
supabase_key: str = None,): supabase_key: str = None,):
load_dotenv()
self.supabase_url = supabase_url or os.getenv("NEXT_PUBLIC_SUPABASE_URL") 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_key = supabase_key or os.getenv("NEXT_PUBLIC_SUPABASE_ANON_KEY")
self.supabase: Client = create_client(self.supabase_url, self.supabase_key) self.supabase: Client = create_client(self.supabase_url, self.supabase_key)