

D. Sculley — Technical Debt, Trade-offs, and Kaggle
10 snips Dec 1, 2022
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19
Introduction
00:00 • 2min
Machine Learning and Technical Debt
01:51 • 5min
You Can Imagine a Lot, Machine Learning Engineers
07:13 • 4min
Do You Feel Like These Problems Are Getting Worse?
11:19 • 4min
Why Do We Use IID Test Trains From the Same Distribution?
15:38 • 4min
Is There a Principled Process for Getting a New Model Into Production?
19:13 • 4min
Is the Distribution of the Third Pixel in Every Image a Problem?
23:03 • 3min
Kaggle
25:34 • 3min
Machine Learning Is a New Frontier in Science and Technology
28:53 • 5min
Is Kaggle Really a Machine Learning Community?
33:35 • 3min
Kaggle Data Sets Are a Fantastic Resource
36:24 • 2min
Kaggle - The Rainforest of Machine Learning?
38:49 • 4min
How Do You Measure Ecosystems?
42:22 • 2min
Kaggle - Is There a Future for Machine Learning?
44:25 • 2min
Kaggle - Is There a Downside to the Competition Framing?
46:51 • 2min
Is Kaggle Still Relevant?
48:55 • 5min
Is AutoML a Good Tool for Machine Learning?
53:49 • 2min
What's the Most Interesting Aspect of Machine Learning Right Now?
56:07 • 2min
Machine Learning - How Do You Get a Model Into Production?
57:52 • 3min