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Explore our complete library of resources including blogs, benchmarks, research papers, and more.

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Blog

Why coding agents need better data, evals, and environments

Announcing a $3M commitment to launch Open Benchmarks Grants
May 11, 2026
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Blog

Closing the Evaluation Gap in Agentic AI

Announcing a $3M commitment to launch Open Benchmarks Grants

February 11, 2026
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Blog

Evaluating coding agent capabilities with Terminal-Bench: Snorkel’s role in building the next generation benchmark

Announcing a $3M commitment to launch Open Benchmarks Grants
September 30, 2025
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Blog

Building FinQA: An Open RL Environment for Financial Reasoning Agents

Announcing a $3M commitment to launch Open Benchmarks Grants
March 30, 2026
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Blog

The science of rubric design

Announcing a $3M commitment to launch Open Benchmarks Grants
September 11, 2025
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Blog

Benchtalks #3: We taught AI everything except how to learn

Featuring Parth Asawa (Continual Learning Bench)

June 25, 2026
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Data-centric Foundation Model Development: Bridging the gap between foundation models and enterprise AI
Blog
Data-centric Foundation Model Development: Bridging the gap between foundation models and enterprise AI

Introducing new capabilities for Data-centric Foundation Model Development in Snorkel Flow Powerful new large language or foundation models (FMs) like GPT-3, Stable Diffusion, BERT, and more have taken the AI space by storm, going viral—even beyond technical practitioners—thanks to incredible capabilities around text generation, image synthesis, and more. However, enterprises face fundamental barriers to using these foundation models on real,…

Nov 17, 2022
Learn more about Data-centric Foundation Model Development: Bridging the gap between foundation models and enterprise AI
Better not bigger: How to get GPT-3 quality at 0.1% the cost
Blog
Better not bigger: How to get GPT-3 quality at 0.1% the cost

We created Data-centric Foundation Model Development to bridge the gaps between foundation models and enterprise AI. New Snorkel Flow capabilities (Foundation Model Fine-tuning, Warm Start, and Prompt Builder) give data science and machine learning teams the tools they need to effectively put foundation models (FMs) to use for performance-critical enterprise use cases. The need is clear: despite undeniable excitement about…

Learn more about Better not bigger: How to get GPT-3 quality at 0.1% the cost
What can Data-Centric AI learn from data & ML engineering?
Blog
What can Data-Centric AI learn from data & ML engineering?

Databricks’ Chief Technologist: Data-Centric AI can learn from Data Engineering and ML Engineering in five ways: continuous updates, versioning, code-centric deployment, data privatization and actionable monitoring.

Nov 05, 2022
Learn more about What can Data-Centric AI learn from data & ML engineering?
Building an NLP application to analyze ESG factors in Earnings Calls using Snorkel Flow
Blog
Building an NLP application to analyze ESG factors in Earnings Calls using Snorkel Flow

Create a data-centric AI application using Snorkel Flow to save your analysts time of manual labeling and information extraction related to environmental, social, and governance (ESG) factors from earnings call transcripts. Rapidly and accurately extract all existing and new factors from the transcripts to make the right investment decision.

Nov 03, 2022
Learn more about Building an NLP application to analyze ESG factors in Earnings Calls using Snorkel Flow
Webinar
Real-time Machine Learning: Architecture and Challenges
Oct 17, 2022
Snorkel Team
Learn more about Real-time Machine Learning: Architecture and Challenges
Building Trustworthy AI applications with data-centric AI
Blog
Building Trustworthy AI applications with data-centric AI

AI is generally accepted as necessary for organizations across private and public sectors to build (or maintain) a competitive advantage. However, a major challenge to adopting AI successfully is our ability to build reliable, predictable, and equitable solutions. A critical flaw with traditional approaches to developing AI is the reliance on hand-labeled training datasets and/or “pre-trained” black-box models that are effectively ungovernable and unauditable. In this article, we explore the motivations and challenges for Trustworthy AI that we’ve encountered and discuss how core tenants of Data-Centric AI, including programmatic labeling, help ameliorate them.

Oct 04, 2022
Learn more about Building Trustworthy AI applications with data-centric AI
Top-10 US bank uses AI/ML to triage loan documents based on risk exposure
Blog
Top-10 US bank uses AI/ML to triage loan documents based on risk exposure

To meet the requirements of unexpected regulatory changes brought on by the pandemic, a top-10 US bank needed to urgently adapt its underperforming model-centric artificial intelligence and machine learning development approach to a data-centric one. The team used Snorkel Flow to automatically classify thousands of loan documents and extract critical clauses in just 24 hours, saving loan managers thousands of hours of manual document review.

Sep 30, 2022
Learn more about Top-10 US bank uses AI/ML to triage loan documents based on risk exposure
How Schlumberger uses Snorkel Flow to enhance proactive well management
Blog
How Schlumberger uses Snorkel Flow to enhance proactive well management

Schlumberger is the world’s leading provider of technology and services for the energy industry, operating in over 120 countries. The company provides well maintenance and analytics services to the world’s biggest oil companies, and it believes that large-scale data analysis and artificial intelligence/machine learning will help them remain a leader in the market. One way they’ve been able to achieve this is by building their own AI application using Snorkel Flow to automatically extract geological entities and critical field data across a variety of document structures and report types they receive from their customers.

Sep 30, 2022
Learn more about How Schlumberger uses Snorkel Flow to enhance proactive well management
Webinar
Introduction to programmatic labeling

Join us for a live demonstration of Snorkel Flow, the data-centric AI development platform used by Fortune 500 enterprises and government agencies to accelerate their AI development by 10-100x. Snorkel Flow can be used to classify and extract information from unstructured text like documents and social media, semi-structured text such as PDFs, and webpages, and structured text or numeric data.

Sep 26, 2022
Snorkel Team
Learn more about Introduction to programmatic labeling
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