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optimizing-llm-prompts

优化并构建针对大语言模型的提示,以确保清晰度、可靠性和最佳性能。在编写系统提示、复杂指令或调试代理行为时使用。

person作者: jakexiaohubgithub

Optimizing LLM Prompts

Instructions

Follow these steps to create robust and effective prompts for LLMs (specifically Claude).

  1. Define the Goal: Clearly identify the desired output and behavior. Be specific about format, tone, and constraints.
  2. Structure with XML: Use XML tags to delineate sections.
    • <system>: High-level role and identity.
    • <context>: Static background information.
    • <rules>: Specific constraints and instructions.
    • <examples>: Few-shot demonstrations.
  3. Draft Instructions:
    • Use imperative voice ("Do this", not "You should").
    • Quantify everything (e.g., "3 sentences" not "concise").
    • Use positive framing (what to do, not just what not to do).
  4. Add Examples: Provide 1-3 examples of input -> output mapping to "show" the model what you want.
  5. Iterate: Test with edge cases. If the model fails, add a specific rule or example to address that failure mode.

Best Practices Summary

  • XML Structure: Essential for Claude to distinguish between instructions and data.
  • Chain of Thought: Ask the model to "think step-by-step" before answering complex queries.
  • Progressive Disclosure: Don't dump all context; allow the model to request more if needed.
  • Input Sanitation: Wrap user input in distinct tags (e.g., <user_query>) to prevent prompt injection.

Checklist

  • [ ] Structure: Are sections clearly separated (XML/Headers)?
  • [ ] Clarity: Are instructions imperative and quantified?
  • [ ] Safety: Is there a catch-all override for conflicting user requests?
  • [ ] Examples: Are there few-shot examples for complex behaviors?
  • [ ] Context: Is static context separated from dynamic user queries?
  • [ ] Output: Is the output format explicitly defined (JSON, Markdown, etc.)?

Detailed Guidance

For a deep dive on critical rules, forbidden practices, and optimization patterns, see REFERENCE.md.