

Natural Language Processing and How ML Models Understand Text
9 snips Jul 29, 2022
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Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22
Introduction
00:00 • 2min
The Real Python Community
01:54 • 2min
Is There a Future for Data Science?
03:27 • 5min
Is There a Need to Overwhelm People?
08:37 • 4min
Getting Started With Natural Language Processing
12:36 • 2min
How to Capturing Meaning in a Text
14:16 • 2min
Using Binary Vectorization to Train Machine Learning Models
15:54 • 3min
How to Solve the Cat and Cat Problems in a Second
18:40 • 2min
Is There a Way to Convert Text?
20:29 • 3min
Detecting Engrams in Python
23:04 • 3min
The Most Common Stop Words in a Language
26:24 • 2min
In Bag of Words Approaches - Tf Idea Factorization
27:59 • 3min
How to Do a Text Classification Project in Python?
31:01 • 3min
Learning Text Classification With Python and Caras
33:53 • 3min
Word in Beddings
36:56 • 3min
How to Train a Word to Beck Model?
40:06 • 3min
Linear Regression
43:24 • 2min
Is There a Distinguishing Return on Training a Tool?
45:37 • 2min
Is the Over Fitting Issue Related?
47:11 • 3min
What's the Meaning of the Word Corpussoo?
49:44 • 4min
The Current Generation of Models
53:53 • 2min
What Have You Been Up To?
55:51 • 3min