Feast: feature store for Machine Learning
Features are key to driving impact with AI at all scales, allowing organizations to dramatically accelerate innovation and time to market. In this talk, speaker Willem Pienaar explains how GO-JEK, Indonesia’s first billion-dollar startup, unlocked insights in AI by building a feature store called Feast, and some of the lessons they learned along the way. Features are at the heart of what makes these machine learning systems effective. However, many challenges still exist in the feature lifecycle. Developing features from big data is often an engineering heavy task, with challenges in both the scaling of data processes and the serving of features in production systems. Teams also face challenges in enabling discovery, reducing duplication, improving understanding, and providing standardization of features throughout organizations. Willem explains the need for features at organizations like GO-JEK and discusses the challenges faced in creating, managing, and serving them in production. He describes how in partnership with Google, GO-JEK designed and built a feature store called Feast to address these challenges and explore their motivations, the lessons they learned along the way, and the impact the feature store had on GO-JEK. He also talks about the open source plans for Feast and the roadmap going forward. Details about the talk can be found here: https://hasgeek.com/anthillinside/201...

Why Mozilla is focussing on better data

Rethinking Feature Stores

Michelangelo: Uber's machine learning platform - Achal Shah

ML System Design: Feature Store

What is Feature Store in Machine Learning | #Mlopstutorial #featurestore #machinelearning

AWS re:Invent 2020: Building end-to-end ML workflows with Kubeflow Pipelines

Accelerating the ML Lifecycle with an Enterprise-Grade Feature Store

Machine Learning in Ads Ranking | Oleg Tishutin | ML Software Engineer at Meta

Getting Started with SageMaker Feature Store | AWS Machine Learning Tutorial for Beginners

Inside Anthropic, the $965 Billion AI Juggernaut | The Circuit

Feast as Feature Store in Machine Learning | Feast Live Demo | MLOps | Ashutosh Tripathi

Announcing Databricks Machine Learning, Feature Store, and AutoML | Keynote Data + AI Summit NA 2021

Data Governance & Infrastructure Readiness for Agentic AI | Star Webinar

The Feature Store - Jim Dowling

MLflow: An Open Platform to Simplify the Machine Learning Lifecycle

Workshop Sessions: Productionize with Kubeflow Orchestration with Feast in GCP

Building Real-Time ML Features with Feast, Spark, Redis, and Kafka

Introducing MLflow for End-to-End Machine Learning on Databricks

Feature Engineering for AI: Transforming Raw Data into Predictions

