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1
Intro
2
Agenda
3
Who am I
4
Machine Learning vs AI
5
Machine Learning Primer
6
Deep Learning vs ML
7
What is ML for
8
Why ML is bad
9
Ticket categorizing
10
Single ticket queue
11
Single ticket algorithm
12
Whats wrong with this
13
Automatic Root Cause Analysis
14
Outages
15
Statistical Correlation
16
Low Uncertainty
17
Deep Learning
18
Confirmation Bias
19
Plausible Use
20
Prework
21
ontology epistemology metaphysics
22
QA
Description:
Explore a thought-provoking conference talk that challenges common misconceptions about Machine Learning (ML) in production engineering. Delve into why many proposed ML applications for Site Reliability Engineering (SRE) are structurally unsuitable for their intended purposes. Examine key problem domains where SREs aim to apply ML and understand why these applications often lack the necessary characteristics for feasibility. Learn to evaluate potential ML applications critically and discover approaches for determining their practicality. Gain insights into the limitations of ML in solving most desired problems while recognizing its potential for addressing specific issues. Through this 39-minute presentation by Todd Underwood from Google at SREcon19 Europe/Middle East/Africa, acquire a realistic perspective on ML's capabilities and limitations in the field of production engineering.

All of Our ML Ideas Are Bad - and We Should Feel Bad

USENIX
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