KS
Killer-Skills

prompt-optimizer — how to use prompt-optimizer how to use prompt-optimizer, what is prompt-optimizer, prompt-optimizer alternative, prompt-optimizer vs other AI skills, prompt-optimizer install, prompt-optimizer setup guide, ultrathink principles in AI, prompt engineering best practices, AI prompt optimization techniques

v1.0.0
GitHub

About this Skill

Ideal for Advanced Language Agents like Claude Code and AutoGPT needing ultrathink-driven prompt optimization for improved performance. prompt-optimizer is a skill that uses ultrathink principles to optimize and refine prompts, making them inevitable and effective for AI agents and applications.

Features

Applies ultrathink principles to prompt engineering
Performs deep analysis of prompts for optimization
Iterates relentlessly to refine prompts
Transforms functional prompts into exceptional ones
Questions assumptions and obsesses over details for optimal results
Creates prompts that feel like the only right way to ask

# Core Topics

nopkhun nopkhun
[0]
[0]
Updated: 3/3/2026

Quality Score

Top 5%
50
Excellent
Based on code quality & docs
Installation
SYS Universal Install (Auto-Detect)
Cursor IDE Windsurf IDE VS Code IDE
> npx killer-skills add nopkhun/KO-STOCK-SYSTEM/prompt-optimizer

Agent Capability Analysis

The prompt-optimizer MCP Server by nopkhun is an open-source Categories.community integration for Claude and other AI agents, enabling seamless task automation and capability expansion. Optimized for how to use prompt-optimizer, what is prompt-optimizer, prompt-optimizer alternative.

Ideal Agent Persona

Ideal for Advanced Language Agents like Claude Code and AutoGPT needing ultrathink-driven prompt optimization for improved performance.

Core Value

Empowers agents to transform functional prompts into exceptional ones through deep analysis, strategic optimization, and iterative refinement, leveraging ultrathink principles and applying them to prompt engineering for enhanced results, utilizing techniques such as questioning assumptions and obsessing over details.

Capabilities Granted for prompt-optimizer MCP Server

Refining prompts for more accurate language model responses
Optimizing prompt engineering for better task-specific outcomes
Iteratively improving prompts through relentless refinement and analysis

! Prerequisites & Limits

  • Requires advanced understanding of prompt engineering principles
  • May demand significant computational resources for iterative refinement
Project
SKILL.md
8.0 KB
.cursorrules
1.2 KB
package.json
240 B
Ready
UTF-8

# Tags

[No tags]
SKILL.md
Readonly

AI Best Prompt Optimizer and Composer

Transform prompts from functional to exceptional through deep analysis, strategic optimization, and iterative refinement. This skill applies "ultrathink" principles to prompt engineering—questioning assumptions, obsessing over details, and iterating relentlessly to create prompts that don't just work, but excel.

Philosophy: Think Different About Prompts

Most prompts merely work. Great prompts are inevitable—they feel like the only right way to ask. Achieve this by:

  • Question every assumption: Why this structure? What if we started from zero?
  • Obsess over details: Every word choice matters. Every instruction must be precise yet clear.
  • Plan before writing: Understand the goal deeply before crafting a single sentence.
  • Iterate relentlessly: The first version is never the final version.
  • Simplify ruthlessly: Remove complexity without losing power.

Core Optimization Framework

1. Deep Understanding Phase

Before optimization, understand the prompt's true purpose:

Questions to explore:

  • What is the desired output format and quality?
  • Who is the audience? What's their expertise level?
  • What context is essential vs. nice-to-have?
  • What are the failure modes to prevent?
  • Are there implicit assumptions that should be explicit?

Analyze current prompt for:

  • Clarity of instructions
  • Completeness of context
  • Ambiguity or vagueness
  • Missing constraints or guidelines
  • Structural organization
  • Token efficiency

2. Strategic Optimization by Prompt Type

For System Prompts (AI Agents/Chatbots)

  • Define clear role and persona
  • Establish behavioral boundaries and guardrails
  • Specify output format and tone
  • Include response patterns and examples
  • Add error handling and edge cases
  • Balance flexibility with consistency

For Task-Specific Prompts

  • Break down complex tasks into clear steps
  • Provide concrete examples (input/output pairs)
  • Specify success criteria explicitly
  • Include context about what NOT to do
  • Add verification checkpoints
  • Use structured formatting for clarity

For Creative Prompts

  • Set the creative direction and constraints
  • Inspire without over-constraining
  • Provide style references or examples
  • Balance guidance with creative freedom
  • Include quality markers or criteria
  • Encourage iteration and exploration

For Technical Prompts

  • Maximize precision and specificity
  • Include technical context and constraints
  • Specify format requirements strictly
  • Add validation criteria
  • Consider edge cases explicitly
  • Provide technical examples

For Agentic Prompts (AI Coding Tools)

  • Define clear task boundaries and scope
  • Specify file handling and code style expectations
  • Include verification and testing requirements
  • Add rollback and error recovery patterns
  • Balance autonomy with user control
  • Include progress reporting requirements

3. Structural Excellence

Apply these structural principles:

Progressive disclosure:

  • Start with overview/context
  • Move to specific instructions
  • End with examples or constraints
  • Use clear section headers

Layered specificity:

  • General principles first
  • Specific requirements second
  • Edge cases and exceptions last

Token efficiency:

  • Every sentence must justify its existence
  • Prefer concise clarity over verbose explanation
  • Remove redundancy ruthlessly
  • Use formatting (bullets, headers) for scannability

4. Quality Markers

Excellent prompts exhibit:

  • Clarity: No ambiguity in what's expected
  • Completeness: All necessary context provided
  • Conciseness: No unnecessary verbosity
  • Specificity: Concrete rather than abstract
  • Structure: Logically organized and scannable
  • Examples: Show, don't just tell
  • Constraints: Clear boundaries and guardrails
  • Testability: Output quality can be verified

Optimization Process

Step 1: Analyze

Deeply understand the current prompt:

  • Identify the core objective
  • Note strengths and weaknesses
  • Spot missing elements
  • Find opportunities for improvement

Step 2: Plan

Design the optimization strategy:

  • Determine which type of optimization needed (quick polish vs. deep transformation)
  • Identify key improvements to make
  • Plan the new structure
  • Consider alternative approaches

Step 3: Optimize

Transform the prompt:

  • Rewrite unclear instructions
  • Add missing context
  • Reorganize for clarity
  • Insert concrete examples
  • Refine word choices
  • Apply structural principles

Step 4: Validate

Ensure quality:

  • Does it meet all quality markers?
  • Will it produce the desired output?
  • Are there edge cases to handle?
  • Is it token-efficient?
  • Can it be simplified further?

Step 5: Present

Show the transformation:

  • Present optimized prompt
  • Explain key changes made
  • Describe expected output improvements
  • Highlight structural enhancements
  • Note any assumptions or decisions

Output Format

When presenting optimized prompts, provide:

1. Optimized Prompt

The complete, ready-to-use optimized prompt with clear formatting.

2. Key Improvements

Concise list of major enhancements:

  • What changed and why
  • Expected impact on outputs
  • Any trade-offs made

3. Expected Output Changes

Describe how the output will improve:

  • Quality enhancements
  • Consistency improvements
  • Better handling of edge cases
  • More aligned with goals

4. Implementation Notes (if applicable)

  • Suggested variations for different contexts
  • Tips for further customization
  • Potential iterative refinements

Adaptive Optimization Levels

Quick Polish

For prompts that are mostly good but need refinement:

  • Fix clarity issues
  • Add missing constraints
  • Improve structure
  • Refine word choices
  • ~10-30% transformation

Balanced Enhancement

For prompts that work but could be significantly better:

  • Restructure for clarity
  • Add examples and context
  • Enhance specificity
  • Apply quality markers
  • ~30-60% transformation

Deep Transformation

For prompts that need fundamental redesign:

  • Question core approach
  • Redesign from principles
  • Add comprehensive framework
  • Include extensive examples
  • ~60-100% transformation

Automatically adapt the optimization level based on prompt quality and user goals.

Iterative Refinement

When users want to iterate on an optimized prompt:

  1. Gather feedback: What works? What doesn't?
  2. Identify specific issues: Pinpoint exact problems
  3. Propose targeted fixes: Address specific concerns
  4. Test and refine: Iterate until excellent
  5. Document learnings: Note patterns for future prompts

Ultrathink Principles Applied to Prompting

From the "ultrathink" philosophy:

Think Different:

  • Challenge conventional prompt structures
  • Explore unconventional approaches
  • Question what's "always done this way"

Obsess Over Details:

  • Every word choice matters
  • Punctuation affects interpretation
  • Structure influences parsing
  • Examples shape understanding

Plan Like Da Vinci:

  • Understand the goal completely
  • Sketch the architecture mentally
  • Design before writing
  • Make every element intentional

Craft, Don't Code:

  • Elegance in simplicity
  • Natural flow of instructions
  • Beautiful structure
  • Intuitive organization

Iterate Relentlessly:

  • First version is just the beginning
  • Test against edge cases
  • Refine based on results
  • Never settle for "good enough"

Simplify Ruthlessly:

  • Remove all unnecessary complexity
  • Clear > clever
  • Concise > comprehensive
  • Essential > exhaustive

Final Principles

Excellence in prompt engineering isn't about length—it's about precision, clarity, and thoughtful design. Apply ultrathink principles consistently:

  1. Question assumptions - Why does it have to work this way?
  2. Obsess over details - Every word matters
  3. Plan thoroughly - Design before writing
  4. Craft beautifully - Elegant, intuitive structure
  5. Iterate relentlessly - First version is never final
  6. Simplify ruthlessly - Remove all excess

The best prompts feel inevitable—like there's no other way they could have been written.

Related Skills

Looking for an alternative to prompt-optimizer or building a Categories.community AI Agent? Explore these related open-source MCP Servers.

View All

widget-generator

Logo of f
f

widget-generator is an open-source AI agent skill for creating widget plugins that are injected into prompt feeds on prompts.chat. It supports two rendering modes: standard prompt widgets using default PromptCard styling and custom render widgets built as full React components.

149.6k
0
Design

chat-sdk

Logo of lobehub
lobehub

chat-sdk is a unified TypeScript SDK for building chat bots across multiple platforms, providing a single interface for deploying bot logic.

73.0k
0
Communication

zustand

Logo of lobehub
lobehub

The ultimate space for work and life — to find, build, and collaborate with agent teammates that grow with you. We are taking agent harness to the next level — enabling multi-agent collaboration, effortless agent team design, and introducing agents as the unit of work interaction.

72.8k
0
Communication

data-fetching

Logo of lobehub
lobehub

The ultimate space for work and life — to find, build, and collaborate with agent teammates that grow with you. We are taking agent harness to the next level — enabling multi-agent collaboration, effortless agent team design, and introducing agents as the unit of work interaction.

72.8k
0
Communication