Monitor performance issues & errors in your code

Lifecycle of a machine learning project

Episode #359, published Sun, Apr 3, 2022, recorded Tue, Mar 22, 2022

Are you working on or considering a machine learning project? On this episode, we'll meet three people from the MLOps community: Demetrios Brinkmann, Kate Kuznecova, and Vishnu Rachakonda. They are here to tell us about the lifecycle of a machine learning project. We'll talk about getting started with prototypes and choosing frameworks, the development process, and finally moving into deployment and production.

Watch this episode on YouTube
Play on YouTube
Watch the live stream version

Links from the show

Demetrios Brinkmann: @DPBrinkm
Kate Kuznecova: linkedin.com
Vishnu Rachakonda: linkedin.com

MLOps Community: mlops.community
Feature stores: mlops.community
Great Expectations: github.com
source control: DVC: dvc.org
StreamLit: streamlit.io
MLOps Jobs: mlops.pallet.com
Made With ML Apps: madewithml.com
Banana.dev: banana.dev
FastAPI: fastapi.tiangolo.com
MLOps without too much Ops: towardsdatascience.com
NBDev: nbdev.fast.ai
The "Works on My Machine" Certification Program: codinghorror.com
Watch this episode on YouTube: youtube.com
Episode transcripts: talkpython.fm

--- Stay in touch with us ---
Subscribe to us on YouTube: youtube.com
Follow Talk Python on Mastodon: talkpython
Follow Michael on Mastodon: mkennedy

Want to go deeper? Check out our courses

Episode sponsored by
Ads served ethically
Talk Python's Mastodon Michael Kennedy's Mastodon