Generates comprehensive code tutorials on LlmTornado API formatted for Medium publication with examples, explanations, and best practices.
Installation
Details
Usage
After installing, this skill will be available to your AI coding assistant.
Verify installation:
skills listSkill Instructions
name: llmtornado-tutorial-generator description: Generates comprehensive code tutorials on LlmTornado API formatted for Medium publication with examples, explanations, and best practices.
Tutorial Generation Workflow
Copy this checklist and track your progress:
LlmTornado Tutorial Generation Progress:
- [ ] Step 1: Identify tutorial topic and scope
- [ ] Step 2: Structure tutorial outline
- [ ] Step 3: Generate code examples
- [ ] Step 4: Add explanations and best practices
- [ ] Step 5: Format for Medium publication
- [ ] Step 6: Save to local file
Step 1: Identify tutorial topic and scope
Determine the specific aspect of LlmTornado API to cover:
- Basic setup and authentication
- Specific API endpoints (chat completions, embeddings, etc.)
- Advanced features (streaming, function calling, etc.)
- Integration patterns
- Error handling and best practices
- Performance optimization
Ask the user if a specific topic isn't provided:
- What LlmTornado API feature should be covered?
- What's the target audience level (beginner, intermediate, advanced)?
- Are there specific use cases to demonstrate?
Step 2: Structure tutorial outline
Create a comprehensive outline following Medium best practices:
Standard Structure:
- Title - Catchy and SEO-friendly
- Introduction - Hook and overview (2-3 paragraphs)
- Prerequisites - Required knowledge and tools
- Setup Section - Installation and configuration
- Core Concepts - Theory and explanation
- Hands-on Examples - Step-by-step code demonstrations
- Best Practices - Tips and recommendations
- Common Pitfalls - What to avoid
- Conclusion - Summary and next steps
- Resources - Links and references
Step 3: Generate code examples
Create working, production-ready code examples:
Code Example Guidelines:
- Use proper code formatting with language tags
- Include comments explaining each section
- Show both synchronous and async patterns where applicable
- Demonstrate error handling
- Use realistic use cases
- Keep examples concise but complete
- Include expected output or responses
Example Code Block Format for Medium:
# Description of what this code does
import llmtornado
# Initialize the client
client = llmtornado.Client(api_key="your_api_key")
# Your implementation here
Step 4: Add explanations and best practices
For each code example, provide:
- What it does - Clear explanation of functionality
- Why it matters - Use cases and benefits
- How it works - Step-by-step breakdown
- Pro tips - Expert recommendations
- Security considerations - API key management, etc.
Best Practices to Include:
- API key security and environment variables
- Rate limiting and retry logic
- Error handling strategies
- Logging and monitoring
- Cost optimization
- Testing approaches
Step 5: Format for Medium publication
Apply Medium-specific formatting:
Formatting Rules:
- Headings: Use # for title, ## for main sections, ### for subsections
- Code Blocks: Use triple backticks with language identifier
- Inline Code: Use single backticks for
variable_namesandfunction_calls() - Emphasis: Use italics for emphasis, bold for important points
- Lists: Use - or * for bullet points, 1. 2. 3. for numbered lists
- Quotes: Use > for important callouts or tips
- Links: Use text format
- Images: Use
if applicable
Medium Style Guidelines:
- Keep paragraphs short (2-4 sentences)
- Use subheadings every 3-4 paragraphs
- Add callout boxes for important notes
- Include a compelling opening hook
- End with actionable next steps
- Aim for 1500-2500 words for optimal engagement
Step 6: Save to local file
Save the generated tutorial to a local markdown file:
File Naming Convention:
llmtornado-tutorial-[topic]-[date].md
Example: llmtornado-tutorial-chat-completions-2024-01-15.md
File Structure:
/projects/llmtornado-tutorials/
├── llmtornado-tutorial-[topic].md
└── examples/
└── [topic]-example.py
Save both:
- The complete Medium-formatted tutorial (markdown)
- Standalone code examples (Python files)
Additional Considerations
LlmTornado API Features to Cover:
- Chat Completions: Text generation, conversations
- Streaming: Real-time response streaming
- Function Calling: Tool integration
- Embeddings: Vector representations
- Model Selection: Choosing the right model
- Parameters: Temperature, max_tokens, top_p, etc.
- Context Management: Handling conversation history
- Rate Limits: Managing API quotas
Tutorial Enhancement Options:
- Add diagrams or flowcharts (describe them for Medium's image feature)
- Include performance benchmarks
- Compare different approaches
- Show before/after code improvements
- Add troubleshooting section
- Include testing examples
SEO Optimization:
- Use keywords naturally in title and headings
- Include meta description (first paragraph)
- Add relevant tags
- Use descriptive subheadings
Example Usage
When a user requests a tutorial, follow this pattern:
User: "Create a tutorial on LlmTornado chat completions"
Response Process:
- Confirm topic and scope
- Generate full tutorial with:
- Engaging introduction
- Setup instructions
- Multiple code examples
- Best practices
- Troubleshooting tips
- Save to
/projects/llmtornado-tutorials/llmtornado-tutorial-chat-completions-[date].md - Provide file location and preview
Quality Checklist
Before finalizing, ensure:
- All code examples are syntactically correct
- Explanations are clear and beginner-friendly
- Medium formatting is properly applied
- Security best practices are mentioned
- Error handling is demonstrated
- Tutorial has a clear flow from simple to advanced
- Conclusion provides next steps
- File is saved to local filesystem
- Both .md and .py files are created
More by lofcz
View allExtracts text and tables from PDF files, fills forms, and merges documents. Use when working with PDF files or when the user mentions PDFs, forms, or document extraction.
Generates Anthropic Skills with complete workflow including GitHub PR creation and local download verification.
Generates complete Anthropic SKILL packages with proper structure, documentation, and automated download verification.
Compiles comprehensive company product context from PDF documents, web research, and industry knowledge
