Evals, error analysis, and better prompts: A systematic approach to improving your AI products | Hamel Husain (ML engineer)  episode artwork

EPISODE · Oct 13, 2025 · 54 MIN

Evals, error analysis, and better prompts: A systematic approach to improving your AI products | Hamel Husain (ML engineer)

from How I AI · host Claire Vo

Hamel Husain, an AI consultant and educator, shares his systematic approach to improving AI product quality through error analysis, evaluation frameworks, and prompt engineering. In this episode, he demonstrates how product teams can move beyond “vibe checking” their AI systems to implement data-driven quality improvement processes that identify and fix the most common errors. Using real examples from client work with Nurture Boss (an AI assistant for property managers), Hamel walks through practical techniques that product managers can implement immediately to dramatically improve their AI products.What you’ll learn:1. A step-by-step error analysis framework that helps identify and categorize the most common AI failures in your product2. How to create custom annotation systems that make reviewing AI conversations faster and more insightful3. Why binary evaluations (pass/fail) are more useful than arbitrary quality scores for measuring AI performance4. Techniques for validating your LLM judges to ensure they align with human quality expectations5. A practical approach to prioritizing fixes based on frequency counting rather than intuition6. Why looking at real user conversations (not just ideal test cases) is critical for understanding AI product failures7. How to build a comprehensive quality system that spans from manual review to automated evaluation—Brought to you by:GoFundMe Giving Funds—One account. Zero hassle: https://gofundme.com/howiaiPersona—Trusted identity verification for any use case: https://withpersona.com/lp/howiai—Where to find Hamel Husain:Website: https://hamel.dev/Twitter: https://twitter.com/HamelHusainCourse: https://maven.com/parlance-labs/evalsGitHub: https://github.com/hamelsmu—Where to find Claire Vo:ChatPRD: https://www.chatprd.ai/Website: https://clairevo.com/LinkedIn: https://www.linkedin.com/in/clairevo/X: https://x.com/clairevo—In this episode, we cover:(00:00) Introduction to Hamel Husain(03:05) The fundamentals: why data analysis is critical for AI products(06:58) Understanding traces and examining real user interactions(13:35) Error analysis: a systematic approach to finding AI failures(17:40) Creating custom annotation systems for faster review(22:23) The impact of this process(25:15) Different types of evaluations(29:30) LLM-as-a-Judge(33:58) Improving prompts and system instructions(38:15) Analyzing agent workflows(40:38) Hamel’s personal AI tools and workflows(48:02) Lighting round and final thoughts—Tools referenced:• Claude: https://claude.ai/• Braintrust: https://www.braintrust.dev/docs/start• Phoenix: https://phoenix.arize.com/• AI Studio: https://aistudio.google.com/• ChatGPT: https://chat.openai.com/• Gemini: https://gemini.google.com/—Other references:• Who Validates the Validators? Aligning LLM-Assisted Evaluation of LLM Outputs with Human Preferences: https://dl.acm.org/doi/10.1145/3654777.3676450• Nurture Boss: https://nurtureboss.io• Rechat: https://rechat.com/• Your AI Product Needs Evals: https://hamel.dev/blog/posts/evals/• A Field Guide to Rapidly Improving AI Products: https://hamel.dev/blog/posts/field-guide/• Creating a LLM-as-a-Judge That Drives Business Results: https://hamel.dev/blog/posts/llm-judge/• Lenny’s List on Maven: https://maven.com/lenny—Production and marketing by https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].

Hamel Husain, an AI consultant and educator, shares his systematic approach to improving AI product quality through error analysis, evaluation frameworks, and prompt engineering. In this episode, he demonstrates how product teams can move beyond “vibe checking” their AI systems to implement data-driven quality improvement processes that identify and fix the most common errors. Using real examples from client work with Nurture Boss (an AI assistant for property managers), Hamel walks through practical techniques that product managers can implement immediately to dramatically improve their AI products.What you’ll learn:1. A step-by-step error analysis framework that helps identify and categorize the most common AI failures in your product2. How to create custom annotation systems that make reviewing AI conversations faster and more insightful3. Why binary evaluations (pass/fail) are more useful than arbitrary quality scores for measuring AI performance4. Techniques for validating your LLM judges to ensure they align with human quality expectations5. A practical approach to prioritizing fixes based on frequency counting rather than intuition6. Why looking at real user conversations (not just ideal test cases) is critical for understanding AI product failures7. How to build a comprehensive quality system that spans from manual review to automated evaluation—Brought to you by:GoFundMe Giving Funds—One account. Zero hassle: https://gofundme.com/howiaiPersona—Trusted identity verification for any use case: https://withpersona.com/lp/howiai—Where to find Hamel Husain:Website: https://hamel.dev/Twitter: https://twitter.com/HamelHusainCourse: https://maven.com/parlance-labs/evalsGitHub: https://github.com/hamelsmu—Where to find Claire Vo:ChatPRD: https://www.chatprd.ai/Website: https://clairevo.com/LinkedIn: https://www.linkedin.com/in/clairevo/X: https://x.com/clairevo—In this episode, we cover:(00:00) Introduction to Hamel Husain(03:05) The fundamentals: why data analysis is critical for AI products(06:58) Understanding traces and examining real user interactions(13:35) Error analysis: a systematic approach to finding AI failures(17:40) Creating custom annotation systems for faster review(22:23) The impact of this process(25:15) Different types of evaluations(29:30) LLM-as-a-Judge(33:58) Improving prompts and system instructions(38:15) Analyzing agent workflows(40:38) Hamel’s personal AI tools and workflows(48:02) Lighting round and final thoughts—Tools referenced:• Claude: https://claude.ai/• Braintrust: https://www.braintrust.dev/docs/start• Phoenix: https://phoenix.arize.com/• AI Studio: https://aistudio.google.com/• ChatGPT: https://chat.openai.com/• Gemini: https://gemini.google.com/—Other references:• Who Validates the Validators? Aligning LLM-Assisted Evaluation of LLM Outputs with Human Preferences: https://dl.acm.org/doi/10.1145/3654777.3676450• Nurture Boss: https://nurtureboss.io• Rechat: https://rechat.com/• Your AI Product Needs Evals: https://hamel.dev/blog/posts/evals/• A Field Guide to Rapidly Improving AI Products: https://hamel.dev/blog/posts/field-guide/• Creating a LLM-as-a-Judge That Drives Business Results: https://hamel.dev/blog/posts/llm-judge/• Lenny’s List on Maven: https://maven.com/lenny—Production and marketing by https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].

NOW PLAYING

Evals, error analysis, and better prompts: A systematic approach to improving your AI products | Hamel Husain (ML engineer)

0:00 54:48

No transcript for this episode yet

We transcribe on demand. Request one and we'll notify you when it's ready — usually under 10 minutes.

Chewing the Fat with WorkForge WorkForge Bite-Sized Conversations for Building a Stronger Workforce Welcome to Chewing the Fat, a podcast delving deep into the world of food manufacturing. Dive into real conversations around critical topics like staffing, retention, onboarding, and career development in this essential industry. Subscribe now to gain insights from your peers, subject matter experts and more on the biggest issues facing food manufacturers today: -Hiring and retaining employees -Addressing the challenges of the Silver Tsunami -Improving time to productivity of new employees -Engaging employees from hire to retire And more... Tune in to Chewing the Fat, a WorkForge podcast, and join the conversation on how to build and sustain a resilient, high-performing workforce in food manufacturing. Solving for Change MOBIA Technology Innovations Solving for Change welcomes business and technology leaders to share stories of bold business transformation within complex organizations. In an era when technology and markets are changing around businesses, the key to staying competitive is to evolve in response to those changes.  MOBIA’s Mike Reeves and Marc LeBlanc investigate business transformation, deconstructing the challenges, ambitions, and market disruptions that drive companies to embark on transformation journeys, and exploring their unique approaches to achieving meaningful outcomes.  What sparks leaders to pursue business transformation? How do they overcome the challenges along the way? What are the keys to creating enduring change?  Through in-depth conversations with business and technology leaders, Mike and Marc answer these questions and explore how businesses evolve by pulling four key transformation levers: people, process, technology, and culture. The Lee Olsen Show Lee Olsen CJF I want to help you improve all areas of your life by 3 types of podcasts!👉Blood, Sweat & Blessings-Interviews of normal people that have achieved BIG things!👉Series!!! For Love of the Horse- Brad Jackman DVM & Lee Olsen CJF, how to help your horse!👉Business Tips- Proven Life Changing Business Strategies with Lee Olsen The Field Priest Methodius Chwastek The Field is a place of cultivation and of battle. In the Church, we learn to cultivate a life pleasing to God. This life is shaped in the spiritual battle. This series examines, chapter by chapter, the Christian classic The Field, by Saint Ignatius Brianchaninov. Please join me as I explain this great work in terms the modern Orthodox Christian can understand. 

Frequently Asked Questions

How long is this episode of How I AI?

This episode is 54 minutes long.

When was this How I AI episode published?

This episode was published on October 13, 2025.

What is this episode about?

Hamel Husain, an AI consultant and educator, shares his systematic approach to improving AI product quality through error analysis, evaluation frameworks, and prompt engineering. In this episode, he demonstrates how product teams can move beyond...

Can I download this How I AI episode?

Yes, you can download this episode by clicking the download button on the episode player, or subscribe to the podcast in your preferred podcast app for automatic downloads.
URL copied to clipboard!