RESOURCES

Blog

Ideas, updates, and practical guidance from the Snorkel team.

Image for Closing the Evaluation Gap in Agentic AI

Closing the Evaluation Gap in Agentic AI

Announcing a $3M commitment to launch Open Benchmarks Grants

February 11, 2026
All articles
Sort: Newest
Named entity extraction and recognition with Snorkel Flow
Named entity extraction and recognition with Snorkel Flow

If you were ever amazed at how Google accurately finds the answer to your question just by a few keywords, you’ve witnessed the power of named entity recognition (NER). By quickly and accurately identifying different entities in a sea of unstructured articles, like names of people, places, and organizations, the search engine can figure out each article’s main topics and…

Jun 07, 2022
Learn more about Named entity extraction and recognition with Snorkel Flow
A data-centric perspective on trustworthy and interpretable AI
A data-centric perspective on trustworthy and interpretable AI

The future of data-centric AI talk series In this talk, Assistant Professor of Biomedical Data Science at Stanford University, James Zou, discusses the work he and his team have been doing from a data-centric perspective to trustworthy and interpretable AI. If you would like to watch James’ presentation, we have included it below, or you can find the entire event…

Jun 06, 2022
Learn more about A data-centric perspective on trustworthy and interpretable AI
Government keynote presentation by FBI CTO Gregory Ihrie
Government keynote presentation by FBI CTO Gregory Ihrie

Gregory Ihrie is the Chief Technology Officer for the FBI, responsible for technology, innovation, and strategy. He also leads the FBI’s efforts in advancing the bureau’s management, policy, and governance of AI systems. Ihrie chairs the FBI’s Scientific Working Group on Artificial Intelligence, as well as the Department of Justice’s AI Committee of Interest. He is one of three officers…

Jun 04, 2022
Learn more about Government keynote presentation by FBI CTO Gregory Ihrie
MLOps: Towards DevOps for data-centric AI with Ce Zhang
MLOps: Towards DevOps for data-centric AI with Ce Zhang

The future of data-centric AI talk series  Don’t miss the opportunity to gain an in-depth understanding of data-centric AI and learn best practices from real-world implementations. Connect with fellow data scientists, machine learning engineers, and AI leaders from academia and industry with over 30 virtual sessions. Save your seat at The Future of Data-Centric AI. Happening on August 3-4, 2022….

Jun 02, 2022
Learn more about MLOps: Towards DevOps for data-centric AI with Ce Zhang
What to expect at The Future of Data-Centric AI 2022
What to expect at The Future of Data-Centric AI 2022

30+ sessions by 40+ speakers in 2 action-packed days Last year we organized The Future of Data-Centric AI conference to explore the shift from model-centric to data-centric AI. Speakers included researchers and industry experts such as Andrew Ng (Landing AI), Anima Anandkumar (NVIDIA), Chris Re (Stanford AI Lab), Michael DAndrea (Genentech), Skip McCormick (BNY Mellon), Imen Grida Ben Yahia (Orange)…

Jun 01, 2022
Learn more about What to expect at The Future of Data-Centric AI 2022
Auto LF generation: Lots of little models, big benefits
Auto LF generation: Lots of little models, big benefits

Constructing labeling functions (LFs) is at the heart of using weak supervision. We often think of these labeling functions as programmatic expressions of domain expertise or heuristics. Indeed, much of the advantage of weak supervision is that we can save time—writing labeling functions and applying them to data at scale is much more efficient compared to hand-labeling huge numbers of…

May 31, 2022
Learn more about Auto LF generation: Lots of little models, big benefits
Building a COVID fact-checking system with external knowledge
Building a COVID fact-checking system with external knowledge

Powerful resources to leverage as labeling functions In this post, we’ll use the COVID-FACT dataset to demonstrate how to use existing resources as labeling functions (LFs), to build a fact-checking system. The COVID-FACT dataset contains 4086 claims about the COVID-19 pandemic; it contains claims, evidence for the claims, and contradictory claims refuted by the evidence. The evidence retrieval is formulated…

May 26, 2022
Learn more about Building a COVID fact-checking system with external knowledge
Snorkel AI FAQ
Snorkel AI FAQ

Browse through these FAQ to find answers to commonly raised questions about Snorkel AI, Snorkel Flow, and data-centric AI development. Have more questions? Contact us. Programmatic labeling Use cases 1. What is a labeling function? A Labeling Function (LF) is an arbitrary function that takes in a data point and outputs a proposed label or abstains. The logic used to…

May 25, 2022
Learn more about Snorkel AI FAQ
Panel discussion: Academic and industry perspectives on ethical AI
Panel discussion: Academic and industry perspectives on ethical AI

This post showcases a panel discussion on the academic and industry perspectives of ethical AI, which was moderated by Director of Federal Strategy and Growth, Alexis Zumwalt, Fouts Family Early Career Professor and Lead of Ethical AI (NSF AI Institute AI4OPT), Georgia Institute of Technology, Swati Gupta, Chief Data Officer, Department of the Navy, Thomas Sasalsa, Senior Manager of Responsible…

May 24, 2022
Learn more about Panel discussion: Academic and industry perspectives on ethical AI
1 29 30 31 38
Image

Join our newsletter

For expert advice, the latest research, and exclusive events.
By submitting this form, I acknowledge I will receive email updates from Snorkel AI, and I agree to the Terms of Use and acknowledge that my information will be used in accordance with the Privacy Policy.