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Sonnet 5 review: I ran 64 generations to find out if it's worth it

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Sonnet 5 review: I ran 64 generations to find out if it's worth it

How I AI

Jun 30
How I AI

How I AI

Jun 30
OverviewShownote
Unprocessed episode, you can be the first!
I’ve been testing every major frontier model release since the start of the year, and when Anthropic dropped Sonnet 5, I wanted more than a vibe check. I got tired of one-off tests I couldn’t repeat or compare over time, so I built something better: the How I AI Bench, a repeatable eval harness I constructed live using Claude Code while recording this episode. I ran Sonnet 5 blind against four other frontier models (Sonnet 4.6, Opus 4.8, GPT-5.5, and Gemini 3 Pro) across PRD quality, prototype generation, agentic task completion, and agent personality. The results were not what I expected.
What you’ll learn:
  1. What Anthropic claims Sonnet 5 improves over Sonnet 4.6, and where the benchmark data actually backs that up
  2. How I built the How I AI Bench in under 45 minutes using Claude Code, starting from my own stored session history
  3. Why I combined human vibe scoring (70%) with LLM as judge scoring (30%) instead of trusting either alone
  4. How to set up a local HTML scoring page so you can rate AI outputs on gut feel and export those scores as JSON
  5. Which model I recommend for PRDs, which for complex prototypes, and which for chatting with an agent daily

Brought to you by:
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In this episode, we cover:
(00:00) Sonnet 5 is out
(01:55) What Anthropic claims
(04:02) Why I’m done with one-off vibe checks
(05:05) Building the How I AI Bench live with Claude Code
(07:42) The scoring system
(10:43) Agent voice eval
(11:57) Quick recap
(13:58) Results: The How I AI index leaderboard
(21:21) What I’m improving for the next run
(22:16) Generating a Claire-weighted index
(23:53) Model-by-task recommendations

Tools referenced:
• Gemini 3 Pro (Google DeepMind): https://deepmind.google/models/gemini/pro/

Other references:
• SWE-bench Pro (agentic coding benchmark referenced): https://www.swebench.com/

Where to find Claire Vo:

Production and marketing by https://penname.co/. For inquiries about sponsoring the podcast, email jordan@penname.co.