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349 lines
11 KiB
Python
349 lines
11 KiB
Python
from airflow import DAG
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from airflow.operators.python import PythonOperator
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from airflow.utils.dates import days_ago
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from datetime import timedelta
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import pandas as pd
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import logging
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import sys
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import pickle
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import io
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# add parent dir to path so procesing package can be imported
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sys.path.insert(0, '/opt/airflow')
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from procesing.context import PipelineContext
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from procesing.providers import SupabaseProvider, BackendAPIProvider
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from procesing.steps import (
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FetchInteractionsStep,
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FetchPriceLogsStep,
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CreatePriceBucketsStep,
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AugmentEventNamesStep,
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ChunkByTimeWindowStep,
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ComputeDemandForChunksStep,
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AggregatePriceLogsStep,
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ComputeElasticityStep,
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# BuildStateSpaceStep,
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FitPricingFunctionStep,
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PredictPricesStep,
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)
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default_args = {
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'owner': 'phantom-research',
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'depends_on_past': False,
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'email_on_failure': False,
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'email_on_retry': False,
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'retries': 2,
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'retry_delay': timedelta(minutes=5),
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}
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def get_provider():
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"""Factory to create composite provider"""
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class CompositeProvider(SupabaseProvider, BackendAPIProvider): # TODO: Fix this into one global provider singelton instead of multiple inheritance declarations acoss the codebase
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def __init__(self):
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SupabaseProvider.__init__(self)
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BackendAPIProvider.__init__(self)
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return CompositeProvider()
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def get_context(**kwargs):
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"""Build pipeline context from Airflow config"""
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dag_conf = kwargs.get('dag_run').conf if kwargs.get('dag_run') else {}
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return PipelineContext(
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provider=get_provider(),
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store_mode=dag_conf.get('store_mode', 'hotel'),
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window_size=dag_conf.get('window_size', '30s'),
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n_price_buckets=dag_conf.get('n_price_buckets', 5),
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elasticity_method=dag_conf.get('elasticity_method', 'point'),
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min_observations=dag_conf.get('min_observations', 2),
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)
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# atomic task functions (each wraps one sklearn step)
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def fetch_interactions(**kwargs):
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"""Task: Fetch interaction data from Kafka"""
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context = get_context(**kwargs)
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step = FetchInteractionsStep(context)
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df = step.transform(None)
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kwargs['ti'].xcom_push(key='interactions_raw', value=pickle.dumps(df))
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logging.info(f"Fetched {len(df)} interaction records")
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return len(df)
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def fetch_price_logs(**kwargs):
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"""Task: Fetch price logs from Kafka"""
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context = get_context(**kwargs)
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step = FetchPriceLogsStep(context)
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df = step.transform(None)
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kwargs['ti'].xcom_push(key='price_logs_raw', value=pickle.dumps(df))
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logging.info(f"Fetched {len(df)} price records")
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return len(df)
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def create_price_buckets(**kwargs):
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"""Task: Create price buckets for interactions"""
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ti = kwargs['ti']
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df = pickle.loads(ti.xcom_pull(key='interactions_raw'))
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context = get_context(**kwargs)
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step = CreatePriceBucketsStep(context)
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df = step.transform(df)
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ti.xcom_push(key='interactions_bucketed', value=pickle.dumps(df))
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logging.info(f"Created price buckets for {len(df)} interactions")
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return len(df)
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def augment_event_names(**kwargs):
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"""Task: Augment event names with product and price schema"""
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ti = kwargs['ti']
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df = pickle.loads(ti.xcom_pull(key='interactions_bucketed'))
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context = get_context(**kwargs)
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step = AugmentEventNamesStep(context)
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df = step.transform(df)
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ti.xcom_push(key='interactions_final', value=pickle.dumps(df))
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logging.info(f"Augmented event names for {len(df)} interactions")
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return len(df)
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def chunk_interactions(**kwargs):
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"""Task: Chunk interactions into time windows"""
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ti = kwargs['ti']
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df = pickle.loads(ti.xcom_pull(key='interactions_final'))
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context = get_context(**kwargs)
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step = ChunkByTimeWindowStep(context)
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chunks = step.transform(df)
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ti.xcom_push(key='interaction_chunks', value=pickle.dumps(chunks))
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logging.info(f"Generated {len(chunks)} interaction chunks")
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return len(chunks)
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def compute_demand(**kwargs):
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"""Task: Compute demand vectors for all chunks"""
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ti = kwargs['ti']
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chunks = pickle.loads(ti.xcom_pull(key='interaction_chunks'))
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context = get_context(**kwargs)
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step = ComputeDemandForChunksStep(context)
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demand_chunks = step.transform(chunks)
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ti.xcom_push(key='demand_chunks', value=pickle.dumps(demand_chunks))
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logging.info(f"Computed demand for {len(demand_chunks)} chunks")
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return len(demand_chunks)
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def aggregate_price_logs(**kwargs):
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"""Task: Aggregate price logs into time windows """
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ti = kwargs['ti']
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df = pickle.loads(ti.xcom_pull(key='price_logs_raw'))
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context = get_context(**kwargs)
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step = AggregatePriceLogsStep(context)
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price_chunks = step.transform(df)
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ti.xcom_push(key='price_chunks', value=pickle.dumps(price_chunks))
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logging.info(f"Aggregated {len(price_chunks)} price chunks")
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return len(price_chunks)
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def compute_elasticity(**kwargs):
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"""Task: Compute price elasticity from demand and price chunks"""
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ti = kwargs['ti']
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demand_chunks = pickle.loads(ti.xcom_pull(key='demand_chunks'))
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price_chunks = pickle.loads(ti.xcom_pull(key='price_chunks'))
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context = get_context(**kwargs)
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step = ComputeElasticityStep(context)
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elasticity_df = step.transform((demand_chunks, price_chunks))
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ti.xcom_push(key='elasticity_results', value=pickle.dumps(elasticity_df))
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logging.info(f"Computed elasticity for {len(elasticity_df)} products")
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return {
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'n_products': len(elasticity_df),
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'mean_elasticity': float(elasticity_df['elasticity'].mean()),
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'median_elasticity': float(elasticity_df['elasticity'].median())
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}
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def build_state_space(**kwargs):
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"""Task: Build state space from elasticity"""
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ti = kwargs['ti']
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elasticity_df = pickle.loads(ti.xcom_pull(key='elasticity_results'))
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context = get_context(**kwargs)
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step = BuildStateSpaceStep(context)
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state_space = step.transform(elasticity_df)
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ti.xcom_push(key='state_space', value=pickle.dumps(state_space))
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logging.info("Built state space for pricing")
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return True
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def fit_pricing_function(**kwargs):
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"""Task: Fit pricing function using elasticity"""
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ti = kwargs['ti']
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elasticity_df = pickle.loads(ti.xcom_pull(key='elasticity_results'))
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context = get_context(**kwargs)
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step = FitPricingFunctionStep(context)
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pricer = step.transform(elasticity_df)
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ti.xcom_push(key='pricer', value=pickle.dumps(pricer))
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logging.info("Fitted pricing function")
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return True
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def predict_prices(**kwargs):
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"""Task: Predict optimal prices"""
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ti = kwargs['ti']
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pricer = pickle.loads(ti.xcom_pull(key='pricer'))
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state_space = pickle.loads(ti.xcom_pull(key='state_space'))
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context = get_context(**kwargs)
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step = PredictPricesStep(context)
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prices_df = step.transform((pricer, state_space))
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ti.xcom_push(key='predicted_prices', value=pickle.dumps(prices_df))
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logging.info(f"Predicted prices for {len(prices_df)} products")
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return len(prices_df)
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def publish_results(**kwargs):
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"""Task: Publish elasticity, pricing model, and predicted prices to registry"""
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ti = kwargs['ti']
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elasticity_df = pickle.loads(ti.xcom_pull(key='elasticity_results'))
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prices_df = pickle.loads(ti.xcom_pull(key='predicted_prices'))
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sys.path.insert(0, '/opt/airflow')
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from lib.model_registry import ModelRegistry
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registry = ModelRegistry()
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dag_conf = kwargs.get('dag_run').conf if kwargs.get('dag_run') else {}
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metadata = {
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'timestamp': pd.Timestamp.now().isoformat(),
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'window_size': dag_conf.get('window_size', '30s'),
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'store_mode': dag_conf.get('store_mode', 'hotel'),
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'dag_run_id': kwargs['dag_run'].run_id if kwargs.get('dag_run') else 'manual'
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}
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registry.publish_elasticity(elasticity_df, model_name='latest', metadata=metadata)
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pricer = pickle.loads(ti.xcom_pull(key='pricer'))
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registry.publish_pricing_model(
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pricer,
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model_name='latest',
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metadata={**metadata, 'model_type': type(pricer).__name__}
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)
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registry.publish_prices(prices_df, model_name='latest', metadata=metadata)
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logging.info(f"Published elasticity + pricing + prices for {len(elasticity_df)} products")
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return {
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'n_products': len(elasticity_df),
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'n_prices': len(prices_df),
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'registry_status': 'success',
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'elasticity_mean': float(elasticity_df['elasticity'].mean())
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}
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# DAG definition
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with DAG(
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'elasticity_pricing_pipeline',
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default_args=default_args,
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description='E2E refactored pipeline: atomic steps with proper separation',
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schedule_interval='*/15 * * * *',
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start_date=days_ago(1),
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catchup=False,
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max_active_runs=1,
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tags=['pricing', 'elasticity', 'research', 'refactored'],
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) as dag:
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# parallel data fetching
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t_fetch_interactions = PythonOperator(
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task_id='fetch_interactions',
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python_callable=fetch_interactions,
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provide_context=True,
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)
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t_fetch_price_logs = PythonOperator(
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task_id='fetch_price_logs',
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python_callable=fetch_price_logs,
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provide_context=True,
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)
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# interaction processing branch
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t_create_buckets = PythonOperator(
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task_id='create_price_buckets',
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python_callable=create_price_buckets,
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provide_context=True,
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)
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t_augment_events = PythonOperator(
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task_id='augment_event_names',
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python_callable=augment_event_names,
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provide_context=True,
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)
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t_chunk_interactions = PythonOperator(
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task_id='chunk_interactions',
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python_callable=chunk_interactions,
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provide_context=True,
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)
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t_compute_demand = PythonOperator(
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task_id='compute_demand',
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python_callable=compute_demand,
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provide_context=True,
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)
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# price processing branch (VECTORIZED)
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t_aggregate_prices = PythonOperator(
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task_id='aggregate_price_logs',
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python_callable=aggregate_price_logs,
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provide_context=True,
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)
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# convergence: compute elasticity
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t_compute_elasticity = PythonOperator(
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task_id='compute_elasticity',
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python_callable=compute_elasticity,
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provide_context=True,
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)
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# pricing tasks
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t_build_state = PythonOperator(
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task_id='build_state_space',
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python_callable=build_state_space,
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provide_context=True,
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)
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t_fit_pricer = PythonOperator(
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task_id='fit_pricing_function',
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python_callable=fit_pricing_function,
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provide_context=True,
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)
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t_predict_prices = PythonOperator(
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task_id='predict_prices',
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python_callable=predict_prices,
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provide_context=True,
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)
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# publish to registry
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t_publish = PythonOperator(
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task_id='publish_results',
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python_callable=publish_results,
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provide_context=True,
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)
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# dependency graph (clear atomic flow)
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# parallel fetches
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[t_fetch_interactions, t_fetch_price_logs]
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# interaction branch: fetch -> bucket -> augment -> chunk -> demand
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t_fetch_interactions >> t_create_buckets >> t_augment_events >> t_chunk_interactions >> t_compute_demand
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# price branch: fetch -> aggregate (vectorized)
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t_fetch_price_logs >> t_aggregate_prices
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# convergence: both branches -> elasticity
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[t_compute_demand, t_aggregate_prices] >> t_compute_elasticity
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# pricing: elasticity -> state + fit -> predict -> publish
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t_compute_elasticity >> [t_build_state, t_fit_pricer] >> t_predict_prices >> t_publish
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