Serving Data for Production AI
Feast is an open source feature store that delivers structured data to AI and LLM applications at high scale during training and inference
[ADOPTERS AND CONTRIBUTORS]
[USE CASES]
SOLVE REAL PROBLEMS
Real-Time Recommendations
Serve personalized product and content recommendations with real-time user interaction features
Fraud Detection
Detect fraudulent transactions using historical patterns and real-time behavioral features
Risk Scoring
Calculate risk scores for financial services using consistent features across training and inference
Customer Segmentation
Create dynamic customer segments using consistent feature definitions across teams
[INTEGRATIONS]
CONNECT WITH YOUR STACK
OFFLINE STORES
ONLINE STORES
[GET STARTED]
START SERVING IN SECONDS
from feast import FeatureStore
# Initialize the feature store
store = FeatureStore(repo_path="feature_repo")
# Get features for training
training_df = store.get_historical_features(
entity_df=training_entities,
features=[
"customer_stats:daily_transactions",
"customer_stats:lifetime_value",
"product_features:price"
]
).to_df()
# Get online features for inference
features = store.get_online_features(
features=[
"customer_stats:daily_transactions",
"customer_stats:lifetime_value",
"product_features:price"
],
entity_rows=[{"customer_id": "C123", "product_id": "P456"}]
).to_dict()
# Retrieve your documents using vector similarity search for RAG
features = store.retrieve_online_documents(
features=[
"corpus:document_id",
"corpus:chunk_id",
"corpus:chunk_text",
"corpus:chunk_embedding",
],
query="What is the biggest city in the USA?"
).to_dict() [BLOG POSTS]
THE LATEST FROM FEAST
How to Use Feast for SLM/LLM Post-Training with Ray
Keep conversation features in Feast, retrieve them for training, then stream into your trainer with Ray.
Data Quality Monitoring in Feast 0.64
Feast 0.64 adds native data quality monitoring with baseline metrics, batch and serving-log analysis, REST APIs, CLI workflows, and a built-in monitoring UI.
Extending Feast Observability: Offline Store Metrics and SOX Audit Logging
Feast now captures RED metrics for offline store retrievals and emits structured SOX audit logs for both online and offline feature access — closing the observability gap between serving and training paths.
[GET STARTED]
START BUILDING TODAY
Join our Slack
Become part of our developer community & get support from the Feast developers
Join Community