prompt-engineering
Prompt Engineering
Prompt engineering techniques derived from Anthropic's official documentation for Claude models.
Core Principles
Be Explicit and Direct
Claude responds best to clear, specific instructions. Treat Claude like a brilliant new employee who needs explicit guidance about your norms, styles, and preferences.
The Golden Rule: Show your prompt to a colleague with minimal context. If they're confused, Claude will be too.
Provide Context:
- What the task results will be used for
- What audience the output is meant for
- Where this task fits in your workflow
- What successful completion looks like
Be Specific: If you want only code output, say so. Use numbered steps for sequential tasks.
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