Главная
Study mode:
on
1
Introduction
2
About me
3
Agenda
4
Machine Learning Pipeline
5
Machine Learning as a Human
6
Record Experiments
7
Tracking Experiments
8
Reproducibility
9
Large File Storage
10
Issues with File Storage
11
Common Problems
12
Reproducible
13
Machine Learning vs Software Engineering
14
Machine Learning vs Feature Engineering
15
Write Robust Reproducible Code
16
Make Code Modular
17
Automated Testing
18
Python Tests
19
Virtual Environment
20
Documentation
21
Whats next
22
Experiment Management
23
incumbents
24
if I go
25
best practices
Description:
Explore experiment management for machine learning in this one-hour conference talk. Learn about the challenges data scientists face when designing and running experiments, including issues with reproducibility, documentation, and code dependencies. Discover best practices for documenting experiments to improve reproducibility, and learn about tools and startups addressing these challenges. Gain insights into the typical processes followed by ML practitioners and data scientists, using Python and scikit-learn as examples. Understand the importance of robust, reproducible code, modular design, automated testing, and proper documentation in machine learning workflows. Presented by Dr. Rutu Mulkar, founder of Hunchera and former contributor to IBM's Watson system, this talk offers valuable insights for improving experiment management in machine learning projects.

Experiment Management for Machine Learning

Data Science Dojo
Add to list
0:00 / 0:00