back

Evals 101

Building better AI through evaluation design

In the rapidly evolving landscape of artificial intelligence, one critical yet often overlooked component stands between mediocre systems and truly remarkable ones: evaluation. A recent video featuring Doug Guthrie from Braintrust offers valuable insights into this crucial process, illuminating how thoughtful evaluation design can dramatically improve AI systems and ensure they meet real-world needs.

The Power of Effective AI Evaluation

Doug Guthrie presents a compelling case for seeing evaluations not as mere afterthoughts but as fundamental to the AI development process. The video unpacks evaluation design in AI systems, emphasizing several critical points that teams should consider:

  • Evaluation design shapes system outcomes – How we measure AI performance directly influences what the system optimizes for, making evaluation design a powerful lever for steering system development toward desired goals.

  • Alignment with real-world use cases is critical – Effective evaluations must reflect actual user needs and contexts rather than abstract or idealized scenarios that don't translate to practical application.

  • Continuous refinement of evaluation metrics – The best evaluations evolve alongside the AI system itself, with metrics and measurements becoming more sophisticated as capabilities advance.

  • Balance between quantitative and qualitative assessment – While measurable metrics provide clarity, qualitative human judgment remains essential for capturing nuanced aspects of AI performance that resist quantification.

The Hidden Leverage Point in AI Development

Perhaps the most insightful takeaway from Guthrie's presentation is the recognition that evaluation design represents a high-leverage intervention point in AI development. By changing how we measure success, we can fundamentally redirect what systems optimize for without necessarily changing the underlying technical architecture.

This matters tremendously in today's AI landscape because many organizations are discovering that their initial evaluation frameworks don't adequately capture what truly matters to users. As language models and other AI systems become more capable, generic metrics like accuracy or BLEU scores become increasingly insufficient. The industry is moving toward more sophisticated, context-specific evaluation paradigms that better reflect real-world utility.

Beyond the Benchmarks: What's Missing

While Guthrie offers valuable perspectives on evaluation design, several important considerations deserve additional attention. First is the challenge of evaluating AI systems for potential harms or unintended consequences. Many organizations focus primarily on capability metrics while underinvesting

Recent Videos

May 6, 2026

Hermes Agent Master Class

https://www.youtube.com/watch?v=R3YOGfTBcQg Welcome to the Hermes Agent Master Class — an 11-episode series taking you from zero to fully leveraging every feature of Nous Research's open-source agent. In this first episode, we install Hermes from scratch on a brand new machine with no prior skills or memory, walk through full configuration with OpenRouter, tour the most important CLI and slash commands, and run our first real task: a competitor research report on a custom children's book AI business idea. Every future episode will build on this fresh install so you can see the compounding value of the agent in real time....

Apr 29, 2026

Andrej Karpathy – Outsource your thinking, but you can’t outsource your understanding

https://www.youtube.com/watch?v=96jN2OCOfLs Here's what Andrej Karpathy just figured out that everyone else is still dancing around: we're not in an era of "better models." We're in a different era of computing altogether. And the difference between understanding that and not understanding it is the difference between being a vibe coder and being an agentic engineer. Last October, Karpathy had a realization. AI didn't stop being ChatGPT-adjacent. It fundamentally shifted. Agentic coherent workflows started to actually work. And he's spent the last three months living in side projects, VB coding, exploring what's actually possible. What he found is a framework that explains...

Mar 30, 2026

Andrej Karpathy on the Decade of Agents, the Limits of RL, and Why Education Is His Next Mission

A summary of key takeaways from Andrej Karpathy's conversation with Dwarkesh Patel In a wide-ranging conversation with Dwarkesh Patel, Andrej Karpathy — former head of AI at Tesla, founding member of OpenAI, and creator of some of the most popular AI educational content on the internet — shared his views on where AI is headed, what's still broken, and why he's now pouring his energy into education. Here are the key takeaways. "It's the Decade of Agents, Not the Year of Agents" Karpathy's now-famous quote is a direct pushback on industry hype. Early agents like Claude Code and Codex are...