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LLM Husbandry Exposes the Gap Between Prompt Tuning and Real Engineering

Developers who rely on retry loops, prompt edits, and LLM-as-judge are practicing animal husbandry, not engineering. The distinction matters for how we build production AI systems.

1 min read
Sourcer/llmdevs

A distinction is emerging in how AI practitioners approach large language models: some are doing LLM husbandry, while others are attempting actual engineering. The difference is not semantic. A developer doing husbandry implements retry loops, chases desired outputs with prompt edits, deploys LLM-as...

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Primary publication (lab/vendor blog) — our analysis + implication
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r/llmdevs
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By the gotcontext.ai team (editorial standards)
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LLM Husbandry Exposes the Gap Between Prompt Tuning and Real Engineering — gotcontext.ai