Learning from Machine Learning

Nils Reimers: Sentence Transformers, Search, Future of NLP | Learning from Machine Learning #3

8 snips
Feb 24, 2023
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1
Introduction
00:00 • 2min
2
Is Machine Learning Really Powerful?
02:26 • 2min
3
NLP - How Will Neural Networks Affect Machine Learning?
04:15 • 2min
4
Sentence Transformers
06:22 • 2min
5
Encoding Text Encodings
08:08 • 2min
6
What Are the Biggest Jumps in Text Embedding?
09:44 • 2min
7
NLP - What's the Capital of the United States?
12:00 • 3min
8
The Challenges of Text Text Embeddings
14:57 • 2min
9
Open Source Machine Learning - What's Your Experience?
16:57 • 2min
10
Using Prompt Engineering to Classify Articles
18:56 • 6min
11
NLP Benchmarks
24:26 • 4min
12
How to Train Models That Are Better on Blue Benchmark?
27:57 • 2min
13
Train Sentence Encoder
30:02 • 3min
14
Machine Learning - What's an Important Question Unanswered?
32:58 • 3min
15
How Machine Learning Will Change the Future?
35:58 • 3min
16
What's the Right Business Model for AI?
38:42 • 2min
17
Machine Learning and Data-Centered AI
40:50 • 3min
18
Enrook's Data Centric Approach to Data Science
44:20 • 2min
19
Google Search Doesn't Work That Well, Right?
45:56 • 3min
20
Machine Learning - One Piece of Advice That Sticked With Me
48:41 • 2min
21
Don't Trust Everything That You'll Eat in Papers
50:40 • 2min
22
Is There a Foundation in Machine Learning?
52:23 • 2min
23
Are You Using Better Optimizers Than Adam?
54:43 • 3min
24
What Has a Career in Machine Learning Led You About Life?
57:14 • 2min
25
Learning From Machine Learning Podcast
59:28 • 2min