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Snorkel AI

Building AI-Native Systems for Federal Infrastructure: A Conversation with Rezaur Rahman Code World Models and AutoHarness for LLM Agents Benchtalks #1: Alex Shaw (Terminal-Bench, Harbor) – Building the Benchmark Factory Building FinQA: An Open RL Environment for Financial Reasoning Agents How Tool Discipline Let a 4B Model Outsmart a 235B Giant on Financial Tasks Coding agents don’t need to be perfect, they need to recover Closing the Evaluation Gap in Agentic AI SlopCodeBench: Measuring Code Erosion as Agents Iterate Introducing the Snorkel Agentic Coding Benchmark 2026: The year of environments Part V: Future Direction and Emerging Trends in Rubric-Based AI Evaluation The self-critique paradox: Why AI verification fails where it’s needed most Chat With the Terminal-Bench Team | Snorkel AI Intelligence per watt: A new metric for AI’s future Terminal-Bench 2.0: Raising the bar for AI agent evaluation Snorkeling in RL environments Introducing SnorkelSpatial: A Benchmark for LLM Spatial Reasoning Scaling Trust: Rubrics in Snorkel's Quality Process Evaluating Multi-Agent Systems in Enterprise Tool Use Evaluating Coding Agents with Terminal-Bench 2.0 Parsing isn’t neutral: why evaluation choices matter The science of rubric design The right tool for the job: An A-Z of rubrics Data quality and rubrics: how to build trust in your models Building the benchmark: inside our agentic insurance underwriting dataset Evaluating AI agents for insurance underwriting LLM observability: key practices, tools, and challenges Anthropic Claude + AWS: revolutionizing pharma data analytics with Snorkel AI Data-centric development of an enterprise AI agent with Snorkel Building the data development platform for specialized AI LLM-as-a-judge for enterprises: evaluate model alignment at scale Why GenAI evaluation requires SME-in-the-loop for validation and trust Research spotlight: is long chain-of-thought structure all that matters when it comes to LLM reasoning distillation? Why enterprise GenAI evaluation requires fine-grained metrics to be insightful What is specialized GenAI evaluation, and why is it so critical to enterprise AI? LLM alignment techniques: 4 post-training approaches Research spotlight: Is intent analysis the key to unlocking more accurate LLM question answering? Why enterprises should embrace LLM distillation Retrieval-augmented generation (RAG) failure modes and how to fix them What is large language model (LLM) alignment? Databricks + Snorkel Flow: integrated, streamlined AI development How LLM evaluation drives better models in Snorkel Flow Unlock proprietary data with Snorkel Flow and Amazon SageMaker LLM evaluation in enterprise applications: a new era in ML Snorkel AI joins the AWS ISV Accelerate Program and launches Snorkel Flow Availability in AWS Marketplace AI data development: a guide for data science projects SnorkelCon 2024: Inaugural Snorkel AI user conference gathers leaders from 30+ Fortune 500 companies Snorkel Flow 2024.R3: Supercharge your AI development with enhanced data-centric workflows Explore the new GenAI Evaluation Suite: Snorkel 2024.R3 New NLP features in Snorkel Flow 2024.R3 Enterprise data compliance and security review: Snorkel Flow 2024.R3 How a global financial services company built a specialized AI copilot accurate enough for production Task Me Anything: innovating multimodal model benchmarks Alfred: Data labeling with foundation models and weak supervision RAG: LLM performance boost with retrieval-augmented generation Call center AI for customer experience management: a case study New GenAI features, data annotation: Snorkel Flow 2024.R2 How data slices transform enterprise LLM evaluation Meta’s Llama 3.1 405B is the new Mr. Miyagi, now what? Meta’s new Llama 3.1 models are here! Are you ready for it? Data-centric AI with Snorkel and MinIO Weak supervision for non-categorical applications + superalignment Snorkel AI signs strategic collaboration agreement with AWS to help enterprises cross the demo-to-production chasm AI alignment made simple: innovative solutions for businesses How does the Snorkel Flow label model work? 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New benchmark results demonstrate value of Snorkel AI approach to LLM alignment
Cate Lochead, CMO · 2024-01-25 · via Snorkel AI

We have some cool news to share! Snorkel AI ranked 2nd, behind only GPT-4 Turbo, in our recent submission to AlpacaEval 2.0 LLM leaderboard. This benchmark measures the ability of well-known LLMs such as Gemini, Claude 2, Llama 2, Mixtral, etc. to follow general user instructions. This result was achieved with only an open-source 7B parameter model, thanks to Snorkel AI’s state-of-the-art methods for LLM customization.

Try out the new 7B model that put Snorkel AI in second place on AlpacaEval 2.0! Download, sandbox, or API calls.

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Snorkel AI has long championed the idea that AI teams can get better results faster by replacing highly manual data annotation with programmatic approaches that more efficiently capture and apply subject matter expertise. Snorkel Flow is our data development platform that helps companies like Wayfair and BNY Mellon to fine-tune and align generative models with these programmatic approaches, and today’s result demonstrates the value of a key component of that technology.

Alignment methods such as reinforcement learning from human feedback (RLHF) and direct process optimization (DPO) are typically used as the last step in LLM development to customize a model to match user preferences. That preference data has historically been collected in the form of manual annotations, which are then used to train a reward model for RLHF. DPO has recently emerged as a more stable and performant alternative that utilizes pairs of annotated responses directly. With programmatic alignment, we use a hybrid approach aimed at getting the best of both worlds. First, users rapidly supervise a custom reward model with programmatic labels generated in Snorkel Flow. Second, that reward model is used in conjunction with the LLM being aligned to create high volumes of high quality pairs for use with DPO. The result is a model that is aligned to your preferences, on your data, without a slow and expensive manual labeling process.

AlpacaEval is a general-purpose benchmark, so an off-the-shelf, general-purpose reward model (we used PairRM) sufficed to achieve this strong result without any additional task-specific programmatic data development. The model was fine-tuned and trained using Microsoft Azure A100 GPUs. Ongoing work includes building on this result with publicly shareable demonstrations of the full programmatic alignment pipeline in more business-specific use cases that are not well-represented by general-purpose benchmarks such as AlpacaEval.

To learn more about this research, join us at our LLM Summit, where researcher Hoang Tran will walk through programmatic alignment in more detail. Follow us on social media for future updates from our research team on state-of-the-art methods for LLM customization!

More Snorkel AI events coming!

Snorkel has more live online events coming. Look at our events page to sign up for research webinars, product overviews, and case studies.

If you're looking for more content immediately, check out our YouTube channel, where we keep recordings of our past webinars and online conferences.