Главная
Study mode:
on
1
Video Start
2
Content intro
3
Motivation to this video
4
Stage 1: Data Preparation
5
Data Preparation - Feature Engineering
6
Data Preparation - Feature Store
7
Data Preparation - Data Artifacts
8
Stage 2: Model Training and Tuning
9
Stage 3: Model Deployment and Monitoring
10
Model Deployment and Monitoring - Online Feature Store
11
Model Deployment and Monitoring - MLI
12
Recap
13
Credits
Description:
Gain a comprehensive understanding of the machine learning life cycle in this 38-minute technical overview video. Explore the four essential stages: data preparation, model training and tuning, model deployment and monitoring, and inference or model serving. Delve into detailed explanations of feature engineering, feature stores, data artifacts, and online feature stores. Learn about the importance of MLI (Machine Learning Interpretability) in model deployment and monitoring. Discover how these stages apply to both small business problems and large-scale machine learning projects. Enhance your skills as an AI engineer with practical insights and best practices for implementing each stage of the ML life cycle.

Technical Overview of Machine Learning Life Cycle

Prodramp
Add to list