/install ai-prompt-optimization
AI Prompt Optimization
Core Capabilities
When users seek prompt optimization assistance, provide the following services:
- Diagnosis & Optimization - Analyze existing prompt issues and provide specific improvement plans
- Template Generation - Generate structured prompt templates for different scenarios
- Few-Shot Generation - Create example-driven few-shot prompts
- Chain-of-Thought Guidance - Design CoT (Chain of Thought) prompts
Usage
1. Diagnosis & Optimization Workflow
When a user provides a prompt for optimization:
Analyze Structure → Identify Issues → Provide Improved Version → Explain Changes
Diagnosis Checklist:
- Is the role/identity clearly defined?
- Is the task objective specific and clear?
- Are output format/style constrained?
- Is the necessary context/background information provided?
- Are boundary conditions and exceptions specified?
- Are there clear success criteria?
2. Template Generation
Generate structured templates based on user scenarios. Core template format:
# Role Definition
You are a [role] in [professional domain], skilled at [core competency].
# Task Description
Please help me [specific task], with the goal of [expected outcome].
# Context Information
- Background: [relevant background]
- Audience: [target users]
- Constraints: [boundary conditions]
# Output Requirements
- Format: [desired format]
- Style: [language style]
- Length: [length requirement]
# Quality Standards
[Key metrics for evaluating output]
3. Few-Shot Example Generation
Generate few-shot examples for complex tasks:
- Select Representative Samples - 3-5 examples covering different variants
- Format Examples - Input → Output structure
- Add Explanations - Explain the rationale for selecting each example
4. Chain-of-Thought Design
Design CoT prompts for tasks requiring reasoning:
Before giving your final answer, please think through the following steps:
1. [Understand the Problem] - ...
2. [Decompose the Problem] - ...
3. [Step-by-Step Reasoning] - ...
4. [Verify the Conclusion] - ...
Scenario Reference
For complete scenario templates and examples, see references/templates.md:
- Writing assistance prompts
- Code generation prompts
- Image generation prompts
- Data analysis prompts
- Q&A and consultation prompts
Optimization Principles
- Specific > Vague - Clearly specify what is wanted and what is not
- Structured > Scattered - Use clear segmentation and markers
- Constrained > Free - Appropriate constraints improve output quality
- Iterative > One-Shot - Encourage users to continuously optimize based on output
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install ai-prompt-optimization - After installation, invoke the skill by name or use
/ai-prompt-optimization - Provide required inputs per the skill's parameter spec and get structured output
What is AI Prompt Optimization?
Use when users need to optimize prompts for AI conversations, generate structured templates, create few-shot examples, design chain-of-thought guidance, or d... It is an AI Agent Skill for Claude Code / OpenClaw, with 85 downloads so far.
How do I install AI Prompt Optimization?
Run "/install ai-prompt-optimization" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is AI Prompt Optimization free?
Yes, AI Prompt Optimization is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does AI Prompt Optimization support?
AI Prompt Optimization is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created AI Prompt Optimization?
It is built and maintained by OpenLark (@openlark); the current version is v1.0.0.