tooling

The latest news, opinions and technical guides from ZenML.
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
October 20, 2023
6 Mins Read

ZenNews: Generate summarized news on a schedule

ZenNews is a tool powered by ZenML that can automate the summarization of news sources and save you time and effort while providing you with the information you need.
Read post
October 19, 2023
18 Mins Read

ZenML sets up Great Expectations for continuous data validation in your ML pipelines

ZenML combines forces with Great Expectations to add data validation to the list of continuous processes automated with MLOps. Discover why data validation is an important part of MLOps and try the new integration with a hands-on tutorial.
Read post
October 19, 2023
24 Mins Read

Transforming Vanilla PyTorch Code into Production Ready ML Pipeline - Without Selling Your Soul

Transform quickstart PyTorch code as a ZenML pipeline and add experiment tracking and secrets manager component.
Read post
October 19, 2023
5 Mins Read

Tracking experiments in your MLOps pipelines with ZenML and Neptune

ZenML 0.23.0 comes with a brand-new experiment tracker flavor - Neptune.ai! We dive deeper in this blog post.
Read post
October 19, 2023
2 Mins Read

Podcast: Open-Source MLOps with Matt Squire

This week I spoke with Matt Squire, the CTO and co-founder of Fuzzy Labs, where they help partner organizations think through how best to productionise their machine learning workflows.
Read post
October 19, 2023
10 Mins Read

Productionalizing LangChain and LlamaIndex with a ZenML MLOps Pipeline to Help Community Slack Support

We decided to explore how the emerging technologies around Large Language Models (LLMs) could seamlessly fit into ZenML's MLOps workflows and standards. We created and deployed a Slack bot to provide community support.
Read post

Podcast: Trustworthy ML with Kush Varshney

This week I spoke with Kush Varshney, author of 'Trustworthy Machine Learning', a fantastic guide and overview of all of the different ways machine learning can go wrong and an optimistic take on how to think about addressing those issues.
Read post

Podcast: The Modern Data Stack with Tristan Zajonc

Tristan and Alex discuss where machine learning and AI are headed in terms of the tooling landscape. Tristan outlined a vision of a higher abstraction level, something he's working on making a reality as CEO at Continual.
Read post

Podcast: Practical Production ML with Emmanuel Ameisen

This week I spoke with Emmanuel Ameisen, a data scientist and ML engineer currently based at Stripe. Emmanuel also wrote an excellent O'Reilly book called 'Building Machine Learning Powered Applications', a book I find myself often returning to for inspiration and that I was pleased to get the chance to reread in preparation for our discussion.
Read post
Oops, there are no matching results for your search.