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Explore our complete library of resources including blogs, benchmarks, research papers and more.
Image for Evaluating Coding Agent Capabilities with Terminal-Bench: Snorkel’s Role in Building the Next Generation Benchmark
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
Image for Closing the Evaluation Gap in Agentic AI
Blog

Closing the Evaluation Gap in Agentic AI

Announcing a $3M commitment to launch Open Benchmarks Grants

February 11, 2026
Image for Benchtalks #1: Alex Shaw (Terminal-Bench, Harbor) – Building the Benchmark Factory
Blog

Benchtalks #1: Alex Shaw (Terminal-Bench, Harbor) – Building the Benchmark Factory

Announcing a $3M commitment to launch Open Benchmarks Grants
March 31, 2026
Image for Building FinQA: An Open RL Environment for Financial Reasoning Agents
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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Learning from Less: Measuring the Effectiveness of RLVR in Low Data and Compute Regimes
Fine-tuning Large Language Models (LLMs) typically relies on large quantities of high-quality annotated data, or questions with well-defined ground truth answers in the case of Reinforcement Learning with Verifiable Rewards (RLVR). While previous work has explored the benefits to model reasoning capabilities by scaling both data and compute used for RLVR, these results lack applicability in many real-world settings where annotated data and accessible compute may be scarce. In this work, we present a comprehensive empirical study of open-source Small Language Model (SLM) performance after RLVR in low data regimes. Across three novel datasets covering number counting problems, graph reasoning,...
Research Paper
Accepted to MLSys 2026
NEW
Learning from Less: Measuring the Effectiveness of RLVR in Low Data and Compute Regimes

Fine-tuning Large Language Models (LLMs) typically relies on large quantities of high-quality annotated data, or questions with well-defined ground truth answers in the case of Reinforcement Learning with Verifiable Rewards (RLVR). While previous work has explored the benefits to model reasoning capabilities by scaling both data and compute used for RLVR, these results lack applicability in many real-world settings where…

Jul 02, 2026

Justin Bauer, Thomas Walshe, Derek Pham, Harit Vishwakarma, Armin Parchami, Frederic Sala, Paroma Varma

Learn more about Learning from Less: Measuring the Effectiveness of RLVR in Low Data and Compute Regimes
Agents’ Last Exam: AI Benchmarking for Real Work
Blog
NEW
Agents’ Last Exam: AI Benchmarking for Real Work

At our latest Snorkel AI Reading Group, Yiyou Sun and David (Xinyang) Han (UC Berkeley, Center for Responsible and Decentralized Intelligence) presented Agents’ Last Exam (ALE) — a benchmark designed to evaluate AI agents on long-horizon, economically valuable, real-world tasks with verifiable outcomes. ALE is a collaboration between Berkeley RDI, Snorkel AI, and 300+ expert contributors across 55 professional subfields. ALE asks a deceptively simple question: can…

Jun 29, 2026
Learn more about Agents’ Last Exam: AI Benchmarking for Real Work
From hours to seconds on CLO contract review with 94% end user acceptance
Case study
From hours to seconds on CLO contract review with 94% end user acceptance

A top 10 US bank manages CLO portfolios totaling billions in assets, each governed by contracts up to 500 pages.

Jun 24, 2026
Snorkel Team
Learn more about From hours to seconds on CLO contract review with 94% end user acceptance
Conversational, decision-grade
responses in 15 seconds
Case study
Conversational, decision-grade
responses in 15 seconds

A global media intelligence firm analyzes hundreds of millions of sources daily – from public news, social, and broadcast to proprietary analyst-curated databases – to help large enterprise clients manage communications, reputation, and strategic decision-making. Their competitive advantage is the layer on top of publicly available data: in-house human editorial teams, proprietary scoring and analytics frameworks, and years of analyst judgment refined into decision-grade intelligence. When a crisis signal is building or a competitor’s narrative is gaining traction, speed and accuracy matter enormously. Historically, getting an answer meant waiting for a human analyst to manually aggregate across those sources: a process measured in hours, not seconds.

Jun 24, 2026
Snorkel Team
Learn more about Conversational, decision-grade
responses in 15 seconds
Agentic AI Evaluation: Closing the Gap with Better Benchmarks and Data
Blog
Agentic AI Evaluation: Closing the Gap with Better Benchmarks and Data

Alex Ratner, co-founder and CEO of Snorkel AI, spoke at @Scale: Systems & Reliability about one of the most underappreciated problems in AI deployment: our ability to measure agents has been outpaced — arguably for the first time in the history of the field — by our ability to build them. The talk digs into what it actually takes to…

Jun 22, 2026
Learn more about Agentic AI Evaluation: Closing the Gap with Better Benchmarks and Data
Benchtalks #3: We taught AI everything except how to learn
Blog
Benchtalks #3: We taught AI everything except how to learn

For our third Benchtalks, the series dedicated to the researchers building the measurement toolkits that frontier labs hill-climb on, Snorkel AI co-founder Vincent Sunn Chen sat down with Parth Asawa, a PhD student at UC Berkeley advised by Matei Zaharia and Joey Gonzalez. Parth leads research on continual learning and is the creator of Continual Learning Bench, developed in collaboration…

Jun 20, 2026
Learn more about Benchtalks #3: We taught AI everything except how to learn
Continual learning and evaluating how AI agents learn across sequences of tasks
Blog
Continual learning and evaluating how AI agents learn across sequences of tasks

Most agent benchmarks evaluate each task as an independent episode. The agent receives a task, produces an answer, gets scored, and moves on. The next task starts as if the previous one never happened. That setup misses a core requirement for deployed agents. A coding agent, research assistant, data analyst, or workplace assistant should improve as it works across repeated…

Jun 18, 2026
Learn more about Continual learning and evaluating how AI agents learn across sequences of tasks
Cua-Bench: benchmarking computer-use agents on professional software
Blog
Cua-Bench: benchmarking computer-use agents on professional software

TL;DR We built a benchmark of 25 expert-authored KiCad schematic-editing tasks and ran a frontier computer-use agent against them. The headline numbers: 1. Why build a computer-use benchmark for electrical engineering? Most computer-use benchmarks today live in the same handful of apps: web browsers, file managers, generic productivity suites. Those evaluations are useful, but they share a structural weakness —…

Learn more about Cua-Bench: benchmarking computer-use agents on professional software
The Art and Science of Building Benchmarks That Shape the Field
Blog
The Art and Science of Building Benchmarks That Shape the Field

Vincent Sunn Chen spoke at AI Engineer London about what it actually takes to build benchmarks that move the field forward, not just measure it. The throughline is an asymmetry that keeps showing up across deployments and the 150+ proposals reviewed for the Open Benchmarks Grants: agent capabilities are climbing fast, but the ability to measure those agents in realistic,…

Jun 08, 2026
Learn more about The Art and Science of Building Benchmarks That Shape the Field
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