dspy
๐ฏSkillfrom zechenzhangagi/ai-research-skills
Provides AI research engineering guidance for DSPy, a framework for programming language model pipelines with automatic prompt optimization, part of the Orchestra Research AI Research Skills library covering prompt engineering techniques.
Same repository
zechenzhangagi/ai-research-skills(97 items)
Installation
npx vibeindex add zechenzhangagi/ai-research-skills --skill dspynpx skills add zechenzhangagi/ai-research-skills --skill dspy~/.claude/skills/dspy/SKILL.mdSKILL.md
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