Building Real-Time ML Features with Feast, Spark, Redis, and Kafka
Offered By: MLOps World: Machine Learning in Production via YouTube
Course Description
Overview
Explore the core concepts of Feast, the open-source feature store, in this comprehensive workshop. Learn how Feast integrates with underlying data infrastructure including Spark, Redis, and Kafka to provide an interface between models and data. Gain insights from Danny Chiao, Engineering Lead at Tecton, and Achal Shah, Software Engineer at Tecton, as they share their expertise in building next-generation feature stores and machine learning platforms. Discover how to leverage these technologies to build real-time ML features and enhance your machine learning workflows in production environments.
Syllabus
Building Real-Time ML Features with Feast, Spark, Redis, and Kafka
Taught by
MLOps World: Machine Learning in Production
Related Courses
Scaling Data and ML with Apache Spark and Feast - Feature Engineering for ProductionDatabricks via YouTube An AI Engineer Technical Guide to Feature Store with FEAST
Prodramp via YouTube Integrating High Performance Feature Stores with KServe Model Serving
Linux Foundation via YouTube The Challenges of Deploying Real-time AI for Finance and How Open Source Can Help
Linux Foundation via YouTube Integrating Feast Online Feature Store with KFServing
Linux Foundation via YouTube