Data Engineering Podcast

Bringing Automation To Data Labeling For Machine Learning With Watchful

Aug 14, 2022
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Episode notes
1
Introduction
00:00 • 2min
2
Data Engineering and Machine Learning - What's the Fuzzy Boundary?
02:04 • 2min
3
Using Machine Learning to Build a Watchful Product?
03:50 • 4min
4
Is the Data Engineer Responsible for Data Labelling for Machine Learning?
08:02 • 5min
5
Unsupervised Machine Learning
13:27 • 3min
6
Is There Any Ground Truth in Machine Learning?
16:25 • 3min
7
How to Manage the Labelling of Machine Learning Models?
19:22 • 4min
8
Is That Where We Really Shine?
22:56 • 4min
9
Programmatic Labelling - The Biggest Win for Your Models
27:10 • 2min
10
Data Science, Data Engineering and Soft Engineering - What's the Difference?
29:16 • 3min
11
Data Engineer Versus Data Scientist
32:11 • 4min
12
Data Engineers and Data Scientists - How Do We Reason About Our Data?
35:44 • 3min
13
The Watchful Platform - What's the Difference Between Rust and EnclosureScript?
38:49 • 5min
14
Watchful - A Very Simple Workflow for Query Languages
43:34 • 4min
15
Queer Language - What You Mean by "Querry Language"?
47:08 • 5min
16
Using Machine Learning to Identify Data Types
51:57 • 3min
17
The Challenge of Collaboration in the Data Labelling Space
55:12 • 6min
18
Data Engineering Podcast: Slash Big Eye to Day
01:00:57 • 5min
19
Using Machine Learning Models in a Fast Way?
01:06:07 • 3min
20
What Have You Learned as a CIO?
01:08:56 • 3min
21
Watchful Is the Wrong Choice in Machine Learning
01:12:09 • 4min
22
The Biggest Gap in Machine Learning
01:16:26 • 4min