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1
Introduction
2
Welcome
3
Overview
4
Motivations
5
Practical Use Case
6
Production Use Case
7
Deployment
8
Microservice
9
Machine Learning Monitoring Anatomy
10
Performance Monitoring Principles
11
Performance Monitoring Patterns
12
Performance Monitoring Metrics
13
Metric Servers
14
Outlier and Drift
15
Albedo Detect
16
Outlier Detect
17
Drift Detect
18
Outlier Detector
19
Explainability
20
AlibiExplain
21
AlibiDetect
22
Architectural Patterns
23
Summary
24
Outro
Description:
Dive into a 38-minute conference talk exploring best practices, principles, patterns, and techniques for production monitoring of machine learning models. Learn how to apply standard microservice monitoring techniques to deployed ML models and explore advanced paradigms like concept drift, outlier detection, and explainability. Follow a hands-on example of training an image classification model, deploying it as a microservice in Kubernetes, and implementing advanced monitoring components. Discover architectural patterns that abstract complex monitoring techniques into scalable infrastructural components, enabling monitoring across numerous heterogeneous ML models. Gain insights into AI Explainers, Outlier Detectors, Concept Drift detectors, and Adversarial Detectors, as well as standardized interfaces for large-scale monitoring implementation.

Production Machine Learning Monitoring- Principles, Patterns and Techniques

Open Data Science
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