Symptom-based Alerting for Machine Learning - What I Learned from Monitoring More than 30 Machine Learning Use Cases

Tuesday, 10 October, 2023 - 11:0011:40

Lina Weichbrodt, ML Freelance and Consulting

Abstract: 

Traditional software monitoring best practices are not enough to detect problems with machine learning stacks. How can you detect issues and be alerted in real-time? This talk will give you a practical guide on how to do machine learning monitoring: which metrics should you implement and in which order of priority? Can you use your team's existing monitoring and dashboard tools, or do you need an MLOps platform?

Lina Weichbrodt[node:field-speakers-institution]

Lina has 10+ years of industry experience in developing scalable machine-learning models and bringing them into production. She currently works as a pragmatic machine-learning freelancer and consultant. She has helped clients in e-commerce, fintech, mobility, and travel to get value out of their AI projects. She previously worked at Zalando developing real-time, deep-learning personalization models for more than 32M users.

BibTeX
@conference {292131,
author = {Lina Weichbrodt},
title = {Symptom-based Alerting for Machine Learning - What I Learned from Monitoring More than 30 Machine Learning Use Cases},
year = {2023},
address = {Dublin},
publisher = {USENIX Association},
month = oct
}

Presentation Video