Главная
Study mode:
on
1
Introduction
2
Overview
3
Data Challenges
4
Feature Store
5
Feature Store Demo
6
RealTime Features
7
Challenges
8
Code
9
Problem
10
Whats Next
11
Create Online Spec
12
Publish Table
13
Postman
14
Summary
Description:
Discover how to overcome the challenges of productionalizing machine learning models with Databricks Feature Store in this 33-minute video. Learn about the first feature store built on the data lakehouse, which simplifies production ML by drawing data sources from a central lakehouse and making feature tables accessible for both machine learning and analytics use cases. Explore how Feature Store integrates seamlessly with Apache Spark™ and MLflow, enabling automatic lineage tracking and feature value lookup at inference time. Watch a demonstration of these capabilities in action and understand how to apply them to your ML projects. Gain insights into real-time features, online specifications, table publishing, and using Postman for testing. By the end of this video, you'll have a comprehensive understanding of how Databricks Feature Store can streamline your ML production process and help overcome common data-related obstacles.

Enable Production ML with Databricks Feature Store

Databricks
Add to list