Prompt Master — Zero-Waste AI Prompt Generator Skill
Claude Code skill that generates optimized prompts for 30+ AI tools. Auto-detects target tool, applies 5 safe techniques, catches 35 credit-killing patterns. 4.8K+ stars, MIT license.
Installation agent prête
Cet actif peut être installé après choix du runtime, vérification du plan et exécution de la commande adaptée.
npx -y tokrepo@latest install 0994566a-33aa-11f1-9bc6-00163e2b0d79 --target codexÀ exécuter après confirmation du plan en dry-run.
What it is
Prompt Master is a Claude Code skill that generates optimized prompts for over 30 AI tools. It auto-detects the target tool from your description, applies 5 proven optimization techniques, and catches 35 common patterns that waste AI credits.
The skill targets developers and teams who use multiple AI tools and want consistent, high-quality prompts without manually learning each tool's prompt engineering best practices.
How it saves time or tokens
Poorly written prompts cause models to produce vague, incomplete, or incorrect responses, leading to expensive retry cycles. Prompt Master front-loads the optimization, producing prompts that get the right output on the first attempt.
The credit-killing pattern detector identifies common mistakes: overly broad instructions, missing context, ambiguous specifications, and unnecessary verbosity. Fixing these before submission saves significant token costs.
How to use
- Install the Prompt Master skill in your Claude Code project.
- Describe what you want the AI to do:
Generate a prompt for: summarize a long technical document
into a 3-paragraph executive summary
for non-technical stakeholders
- Prompt Master generates an optimized prompt:
You are a technical writer creating executive summaries.
Input: [Technical document text]
Task: Write a 3-paragraph executive summary.
Paragraph 1: Key findings and conclusions (2-3 sentences)
Paragraph 2: Business impact and recommendations (2-3 sentences)
Paragraph 3: Next steps and timeline (2-3 sentences)
Constraints:
- Use plain language, no jargon
- Audience: C-suite executives without technical background
- Each paragraph: 50-75 words
- Review, adjust, and use the generated prompt with your target AI tool.
Example
# Using Prompt Master programmatically
result = prompt_master.generate(
task='Code review for Python backend',
target_tool='claude-code',
constraints=['Focus on security', 'Check for SQL injection', 'Max 500 words']
)
print(result.optimized_prompt)
print(f'Estimated token savings: {result.savings_percent}%')
Related on TokRepo
- Prompt Library — Curated collection of effective prompts
- AI Tools for Coding — AI coding tools and prompt optimization
Common pitfalls
- Generating prompts without specifying the target tool. Each AI tool has different strengths and prompt formats. Prompt Master optimizes differently for Claude vs GPT vs Gemini.
- Not iterating on generated prompts. Prompt Master provides a strong starting point but may not capture domain-specific requirements. Refine the output based on actual results.
- Over-constraining the prompt. Too many constraints can make the AI output rigid and unnatural. Balance structure with flexibility.
- Failing to review community discussions and changelogs before upgrading. Breaking changes in major versions can disrupt existing workflows. Pin versions in production and test upgrades in staging first.
Questions fréquentes
Prompt Master generates optimized prompts for over 30 AI tools including Claude, GPT-4, Gemini, Midjourney, Stable Diffusion, DALL-E, and various coding assistants. It adjusts prompt structure and language based on the target tool's strengths.
Prompt Master applies structured output specification, role definition, constraint framing, example provision, and chain-of-thought elicitation. Each technique is calibrated per target tool based on known effectiveness.
Prompt Master identifies 35 patterns including vague instructions, missing output format, redundant context, over-broad scope, missing constraints, ambiguous pronouns, and unnecessary verbosity. Each pattern has a specific fix.
Yes. Paste an existing prompt and Prompt Master analyzes it for optimization opportunities. It identifies waste patterns, suggests improvements, and generates a revised version with estimated token savings.
Yes. Prompt Master generates prompts for image generation tools like Midjourney, DALL-E, and Stable Diffusion. It adjusts for the visual prompt syntax each tool expects, including style keywords, negative prompts, and aspect ratio specifications.
Sources citées (3)
- Prompt Master GitHub— Prompt Master generates optimized prompts for 30+ AI tools
- Anthropic Documentation— Prompt engineering best practices for Claude
- OpenAI Prompt Engineering Guide— Prompt optimization techniques for LLMs
En lien sur TokRepo
Source et remerciements
Created by nidhinjs. Licensed under MIT.
prompt-master — ⭐ 4,800+
Thanks to nidhinjs for building a practical solution to the prompt quality problem that wastes millions in AI credits daily.
Fil de discussion
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