The MLOps Podcast

🎨 Stable Diffusion and generative models with David Marx

Jan 19, 2023
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Episode notes
1
Introduction
00:00 • 3min
2
How Do You Get Into Machine Learning?
02:47 • 4min
3
Exactly. Good Developers Shouldn't Be Lazy, Right?
06:19 • 4min
4
Coursera - Should I Go to Grad School?
09:55 • 2min
5
Getting Into a Data Science Consulting Firm After Grad School
12:17 • 3min
6
I'm the Machine Learning That Is Going to Automate You Away
15:15 • 3min
7
Data Scientist - Data Scientist Role in an Organization
18:28 • 2min
8
Is There a Constant in the Way That You Describe Your Path?
20:20 • 3min
9
Are You a Researcher?
23:26 • 4min
10
Is Good Enough the Best Way to Go?
27:27 • 2min
11
Is There a Cure of Specialization in Machine Learning?
29:46 • 3min
12
I Was a Data Scientist, I Should Just Buy My Own GPU
32:36 • 4min
13
The Clip Plus VQgan Technique
36:12 • 3min
14
Open Source Machine Learning - What Do You Need to Be Able to Contribute?
39:11 • 5min
15
Deep Learning
43:48 • 2min
16
The Stable Diffusion API
46:16 • 5min
17
Using Classifier Free Guidance
51:07 • 3min
18
How Do You Develop the Skills That You Need to Be a Data Scientist?
53:44 • 6min
19
I'm Just Learning for the Sake of Learning
59:32 • 3min
20
Is Stable Diffusion Still Python?
01:02:41 • 3min
21
Do You Have Any Counterintuitive Challenges With GPU Inference?
01:05:40 • 4min
22
Is Open Source a Good Way to Learn?
01:10:03 • 2min
23
IKEA Lego Sets - Is That a Tree House or an Ewoks?
01:12:19 • 2min