
Super Data Science: ML & AI Podcast with Jon Krohn 283: Getting The Most Out of Data With Gradient Boosting
Jul 31, 2019
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23
Introduction
00:00 • 4min
How to Find New York
03:47 • 2min
The Story of How God Written Changed the World
05:34 • 2min
Confident Data Skills
07:29 • 2min
How to Be a Scikit Learn Contributor
09:41 • 3min
The Future of Machine Learning
12:16 • 2min
How to Maintain a Package of Gradient Boosting Algorithms on Volum
14:04 • 4min
How to Use Gradient Boosting to Improve Your Prediction Accuracy
18:24 • 4min
Gradient Boosting and Random Forest
22:28 • 2min
The Different Implementations of Gradient Boosting
24:53 • 3min
The Differences Between Light GBM and Light GBM
28:12 • 2min
The Power of Gradient Boosting in Machine Learning
30:31 • 2min
How to Improve Your Machine Learning Algorithm
32:59 • 5min
The Priority of Artificial Intelligence in Business
38:05 • 2min
How to Measure the Impact of Your Machine Learning Algorithm
40:03 • 3min
How to Translate a Trade Off Into a Metric
43:12 • 2min
How Much Time Did You Spend on Machine Learning?
45:32 • 2min
How to Prepare for the Real World
47:47 • 5min
How to Get a Data Science Degree at Columbia University
52:18 • 2min
How to Start a Data Science Course at Columbia University
54:13 • 2min
The Importance of Automatic Machine Learning
56:07 • 2min
Introduction to Machine Learning With Python
57:44 • 2min
The Power of Simple Algorithms
59:48 • 2min
