tessl install github:giuseppe-trisciuoglio/developer-kit --skill prompt-engineeringgithub.com/giuseppe-trisciuoglio/developer-kit
This skill should be used when creating, optimizing, or implementing advanced prompt patterns including few-shot learning, chain-of-thought reasoning, prompt optimization workflows, template systems, and system prompt design. It provides comprehensive frameworks for building production-ready prompts with measurable performance improvements.
Review Score
56%
Validation Score
12/16
Implementation Score
35%
Activation Score
67%
This skill provides comprehensive frameworks for creating, optimizing, and implementing advanced prompt patterns that significantly improve LLM performance across various tasks and models.
Use this skill when:
Select examples using semantic similarity and diversity sampling to maximize learning within context window constraints.
references/few-shot-patterns.md for comprehensive selection frameworksExample 1 (Basic case):
Input: {representative_input}
Output: {expected_output}
Example 2 (Edge case):
Input: {challenging_input}
Output: {robust_output}
Example 3 (Error case):
Input: {problematic_input}
Output: {corrected_output}
Now handle: {target_input}Elicit step-by-step reasoning for complex problem-solving through structured thinking patterns.
references/cot-patterns.md for detailed reasoning frameworksLet's approach this step-by-step:
Step 1: {break_down_the_problem}
Analysis: {detailed_reasoning}
Step 2: {identify_key_components}
Analysis: {component_analysis}
Step 3: {synthesize_solution}
Analysis: {solution_justification}
Final Answer: {conclusion_with_confidence}Implement iterative refinement processes with measurable performance metrics and systematic A/B testing.
references/optimization-frameworks.md for comprehensive optimization strategiesBuild modular, reusable prompt components with variable interpolation and conditional sections.
references/template-systems.md for modular template frameworks{user_input}, {context})# System Context
You are a {role} with {expertise_level} expertise in {domain}.
# Task Context
{if background_information}
Background: {background_information}
{endif}
# Instructions
{task_instructions}
# Examples
{example_count}
# Output Format
{output_specification}
# Input
{user_query}Design comprehensive system prompts that establish consistent model behavior, output formats, and safety constraints.
references/system-prompt-design.md for detailed design guidelinesYou are an expert {role} specializing in {domain} with {experience_level} of experience.
## Core Capabilities
- List specific capabilities and expertise areas
- Define scope of knowledge and limitations
## Behavioral Guidelines
- Specify interaction style and communication approach
- Define error handling and uncertainty protocols
- Establish quality standards and verification requirements
## Output Requirements
- Specify format expectations and structural requirements
- Define content inclusion and exclusion criteria
- Establish consistency and validation requirements
## Safety and Ethics
- Include content policy adherence
- Specify bias mitigation requirements
- Define harm prevention protocolsAnalyze Requirements
Select Pattern Strategy
Draft Initial Prompt
Validate and Test
Performance Analysis
Optimization Strategy
Implementation and Testing
Modular Architecture Design
Production Integration
This skill integrates seamlessly with:
references/few-shot-patterns.md: Comprehensive few-shot learning frameworksreferences/cot-patterns.md: Chain-of-thought reasoning patterns and examplesreferences/optimization-frameworks.md: Systematic prompt optimization methodologiesreferences/template-systems.md: Modular template design and implementationreferences/system-prompt-design.md: System prompt architecture and best practicesClassify customer feedback into categories using semantic similarity for example selection and diversity sampling for edge case coverage.Implement step-by-step reasoning for financial analysis with verification steps and confidence scoring.Create modular templates with role-based components and conditional sections for different inquiry types.Design comprehensive system prompt with behavioral guidelines, output requirements, and safety constraints.This skill provides the foundational patterns and methodologies for building production-ready prompt systems that consistently deliver high performance across diverse use cases and model types.