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anndvision

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投稿

When Does Data Help Automated Agent Engineering?

andrewjesson.com
1 ポイント·投稿者 anndvision·20 日前·0 コメント

The engineering practices Claude Code and Codex use to improve AI agents

andrewjesson.com
2 ポイント·投稿者 anndvision·27 日前·0 コメント

'Distealed' LLMs: smarter, 5-30x cheaper inference

tensorzero.com
3 ポイント·投稿者 anndvision·10 か月前·0 コメント

コメント

anndvision
·12 か月前·議論
thanks
anndvision
·12 か月前·議論
We recently ran similar experiments and saw that fine-tuning small models on automatically curated high-quality outputs from a large model can beat large-model performance while reducing inference costs by up to 30x and inference time by up to 4x.

We benchmarked closed-source (OpenAI, Google) and open-source (Qwen) models on multi-turn maze navigation (BabyAI), agentic RAG (Multi-Hop), and agentic tool use (τ-bench).

We're still running a few experiments and plan to update the post with additional results in a few days.

Looking forward to trying out importance weighting soon!

Curated Behavior Cloning: Small LLMs Can Beat Large Ones at 5-30x Lower Cost: https://www.tensorzero.com/blog/curated-behavior-cloning-sma...