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

Speakers: Danny Chiao, Engineering Lead, Tecton Danny Chiao is an engineering lead at Tecton/Feast working on building a next-generation feature store. Previously, Danny was a technical lead at Google working on end-to-end machine learning problems within Google Workspace, helping build privacy-aware ML platforms / data pipelines and working with research and product teams to deliver large-scale ML-powered enterprise functionality. Danny holds a Bachelor’s degree in Computer Science from MIT. Achal Shah, Software Engineer, Tecton Achal Shah works at Tecton and is a tech lead for Feast, the open-source feature store. Before Tecton, Achal worked at Uber on their Machine Learning platform, Michelangelo, along with Tecton's co-founders. Achal has always had a passion for infrastructure design and the open-source community. In his free time, Achal loves to play hide and seek with his 1-year old daughter or read science fiction if she's asleep. Abstract: This workshop will focus on the core concepts underlying Feast, the open-source feature store. We’ll explain how Feast integrates with underlying data infrastructure including Spark, Redis, and Kafka, to provide an interface between models and data.

🚀 Real-Time Feature Store Demo | Deploy an End-to-End MLOps Pipeline with Feast + Redis + Streamlit
▶︎

🚀 Real-Time Feature Store Demo | Deploy an End-to-End MLOps Pipeline with Feast + Redis + Streamlit

Integrating multiple MLOps tools together on Google Cloud Platform
▶︎

Integrating multiple MLOps tools together on Google Cloud Platform

What is SonarQube | Introduction SonarQube | SonarQube Tutorial | SonarQube Basics | Intellipaat
▶︎

What is SonarQube | Introduction SonarQube | SonarQube Tutorial | SonarQube Basics | Intellipaat

Designing Data-intensive Applications with Martin Kleppmann
▶︎

Designing Data-intensive Applications with Martin Kleppmann

Building an AI Dark Factory:  A Codebase That Writes Its Own Code, Live
▶︎

Building an AI Dark Factory: A Codebase That Writes Its Own Code, Live

Feast: feature store for Machine Learning
▶︎

Feast: feature store for Machine Learning

Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan
▶︎

Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

Building a Feature Store around Dataframes and Apache Spark
▶︎

Building a Feature Store around Dataframes and Apache Spark

Build a Complete Medical Chatbot with LLMs, LangChain, Pinecone, Flask & AWS 🔥
▶︎

Build a Complete Medical Chatbot with LLMs, LangChain, Pinecone, Flask & AWS 🔥

HOMILÍA DE HOY | DIOS AYÚDAME A CONFIAR AUNQUE NO ENTIENDA NADA | PADRE FREDDY BUSTAMANTE
▶︎

HOMILÍA DE HOY | DIOS AYÚDAME A CONFIAR AUNQUE NO ENTIENDA NADA | PADRE FREDDY BUSTAMANTE

Data Modeling for Power BI [Full Course] 📊
▶︎

Data Modeling for Power BI [Full Course] 📊

Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker
▶︎

Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker

Building a Real-Time Feature Store at iFood
▶︎

Building a Real-Time Feature Store at iFood

Building a Real-Time ML Pipeline with a Feature Store - MLOps Live #16
▶︎

Building a Real-Time ML Pipeline with a Feature Store - MLOps Live #16

Enable Production ML with Databricks Feature Store
▶︎

Enable Production ML with Databricks Feature Store

RL for Agents Workshop - Deep Dive on Training Agents with RL and Open Source
▶︎

RL for Agents Workshop - Deep Dive on Training Agents with RL and Open Source

Modern Architecture 101 for New Engineers & Forgetful Experts - Jerry Nixon - NDC Copenhagen 2025
▶︎

Modern Architecture 101 for New Engineers & Forgetful Experts - Jerry Nixon - NDC Copenhagen 2025

RAG Crash Course for Beginners
▶︎

RAG Crash Course for Beginners

Amazon SageMaker Feature Store Deep Dive Demo
▶︎

Amazon SageMaker Feature Store Deep Dive Demo

Complete GitHub Actions Course - From BEGINNER to PRO
▶︎

Complete GitHub Actions Course - From BEGINNER to PRO