Claude-skill-registry anthropic-expert
Expert on Anthropic Claude API, models, prompt engineering, function calling, vision, and best practices. Triggers on anthropic, claude, api, prompt, function calling, vision, messages api, embeddings
git clone https://github.com/majiayu000/claude-skill-registry
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/anthropic-pur3v4d3r-pur3-pkb-codebase" ~/.claude/skills/majiayu000-claude-skill-registry-anthropic-expert-e92dde && rm -rf "$T"
skills/data/anthropic-pur3v4d3r-pur3-pkb-codebase/SKILL.mdAnthropic API Expert
Purpose
Provide expert guidance on Anthropic's Claude API, including prompt engineering, function calling, vision capabilities, and best practices based on official Anthropic documentation.
When to Use
Auto-invoke when users mention:
- Anthropic - company, API, platform
- Claude - models (Opus, Sonnet, Haiku), capabilities
- API - Messages API, streaming, embeddings
- Features - function calling, vision, extended context, prompt caching
- Integration - SDKs (Python, TypeScript), REST API
Knowledge Base
Full access to official Anthropic documentation (when available):
- Location:
docs/ - Files: 199 markdown files
- Format:
files.md
Note: Documentation must be pulled separately:
pipx install docpull docpull https://docs.anthropic.com -o .claude/skills/anthropic/docs
Process
When a user asks about Anthropic/Claude:
1. Identify Topic
Common topics: - Getting started / API keys - Model selection (Opus, Sonnet, Haiku) - Messages API / streaming - Prompt engineering techniques - Function/tool calling - Vision and image analysis - Extended context (200K tokens) - Prompt caching - Rate limits and pricing - Error handling
2. Search Documentation
Use Grep to find relevant docs:
# Search for specific topics Grep "function calling|tool" docs/ --output-mode files_with_matches -i Grep "vision|image" docs/ --output-mode content -C 3
Check the INDEX.md for navigation:
Read docs/INDEX.md
3. Read Relevant Files
Read the most relevant documentation files:
Read docs/path/to/relevant-doc.md
4. Provide Answer
Structure your response:
- Direct answer - solve the user's problem first
- Code examples - show API calls with proper formatting
- Best practices - mention Claude-specific patterns
- Model selection - recommend appropriate model (Opus/Sonnet/Haiku)
- References - cite specific docs for deeper reading
- Cost optimization - mention prompt caching, model choice
Example Workflows
Example 1: Function Calling
User: "How do I implement function calling with Claude?" 1. Search: Grep "function calling|tool" docs/ 2. Read: Function calling documentation 3. Answer: - Explain tool use format - Show request/response example - Discuss tool choice vs any - Best practices for tool definitions
Example 2: Vision Capabilities
User: "Can Claude analyze images?" 1. Search: Grep "vision|image" docs/ -i 2. Read: Vision API documentation 3. Answer: - Supported image formats - Image encoding (base64, URLs) - Show example API call - Limitations and best practices
Example 3: Prompt Engineering
User: "How do I write better prompts for Claude?" 1. Search: Grep "prompt|engineering" docs/ 2. Read: Prompt engineering guide 3. Answer: - Clear instructions principle - Examples and context - XML tags for structure - Chain of thought prompting
Key Concepts to Reference
Models:
- Claude 3.5 Opus - most capable
- Claude 3.5 Sonnet - balanced (recommended for most use cases)
- Claude 3.5 Haiku - fast and economical
API Features:
- Messages API (primary interface)
- Streaming responses
- Function/tool calling
- Vision (image analysis)
- Extended context (200K tokens)
- Prompt caching (reduce costs)
Best Practices:
- System prompts vs user messages
- XML tags for structure
- Few-shot examples
- Clear, specific instructions
- Appropriate model selection
SDKs:
- Python SDK (
)anthropic - TypeScript SDK (
)@anthropic-ai/sdk - REST API (curl/HTTP)
Response Style
- Clear - API developers want precise answers
- Code-first - show working examples
- Model-aware - recommend appropriate Claude model
- Cost-conscious - mention caching, model choice
- Cite sources - reference specific doc sections
Follow-up Suggestions
After answering, suggest:
- Related API features
- Cost optimization strategies
- Error handling patterns
- Testing approaches
- Safety and moderation considerations