Главная
Study mode:
on
1
Intro
2
Meet Amit
3
Amits background
4
Scale automation
5
Working with models safely
6
Problem definition
7
User studies
8
Application
9
Privacy Fairness
10
Neural Networks
11
Taxonomy
12
Advice
Description:
Explore interpretable machine learning in this 37-minute Data Brew episode featuring Ameet Talwalkar. Dive into the concept of model interpretability, its relationship with data privacy and fairness, and cutting-edge research in the field. Learn about scale automation, safe model handling, problem definition, user studies, and practical applications. Discover insights on privacy, fairness, neural networks, and taxonomy in machine learning. Gain valuable advice from Ameet's expertise and experience in interpretable machine learning.

Interpretable Machine Learning - Data Brew Season 2 Episode 7

Databricks
Add to list
0:00 / 0:00