Getting started with MLOps is not easy. In one of the previous posts, we shared the MLOps roadmap for 2024. In this post, we share resources that we recommend for MLOps and LLMOps.
Happy learning!
Designing Machine Learning Systems by Chip Huyen
Machine Learning Design Patterns by Sara Robinson, Valliappa Lakshmanan, Michael Munn
Introducing MLOps by Mark Treveil & the Dataiku team
Effective Data Science Infrastructure by Ville Tuulos
Engineering MLOps by Emmanuel Raj
Machine Learning Engineering with Python — Second Edition by Andy McMahon
Machine Learning Engineering in Action by Benjamin Wilson
Reliable Machine Learning: Applying SRE Principles to ML in Production by Cathy Chen, MA, CPCC, Niall Murphy, Kranti K. Parisa, D. Sculley, Todd Underwood
Decoding ML 𝖻𝗒 Paul Iusztin, Alexandru Razvant, Alex Vesa
The machine learning engineer by Alejandro Saucedo
ByteByteGo newsletter 𝖻𝗒 Alex Xu, Sahn Lam, Hua Li
Building ML Products 3.0 𝖻𝗒 👩🏻💻 Mikiko Bazeley 👘
Blog of Chip Huyen
Blog of Eugene Yan
MLOps community podcast by Demetrios Brinkmann
ML Platform Podcast by neptune.a
Let’s talk MLOps by Becky Gorringe 🦖
MLOps Weekly podcast 𝖻𝗒 Simba Khadder
Let’s talk AI by Thomas Bustos
MLOps Zoomcamp by DataTalksClub
Made with ML by Goku Mohandas
Taking Python to Production: A Professional Onboarding Guide by Eric Riddoch
Real World ML by Pau Labarta Bajo
The Full Stack 7-Steps MLOps Framework by Paul Iusztin
Hands-on LLMs by Pau Labarta Bajo, Alexandru Răzvanț, and Paul Iusztin
LLM BootCamp by Sergey Karayev, Charles Frye, and Josh Tobin
MLOps community Slack channel
Discord channel of Chip Huyen
DataTalksClub Slack channel
Awesome LLMOps by Ce Gao
Awesome MLOps by Dr. Larysa Visengeriyeva
LLM roadmaps by Maxime Labonne