Capability
20 artifacts provide this capability.
Want a personalized recommendation?
Find the best match →via “community-contributed-prompt-extraction-and-validation”
LEAKED SYSTEM PROMPTS FOR CHATGPT, CLAUDE, GEMINI, GROK, PERPLEXITY, CURSOR, LOVABLE, REPLIT, AND MORE! - AI SYSTEMS TRANSPARENCY FOR ALL! 👐
Unique: Establishes a structured contribution process with metadata requirements (extraction date, model version, contextual logs) that enables reproducibility and version tracking. Unlike ad-hoc prompt leak collections, CL4R1T4S enforces documentation standards to maintain research-grade data quality.
vs others: Provides a standardized submission framework with metadata validation, whereas most prompt leak communities rely on unstructured sharing without version tracking or extraction method documentation.
via “prompt sharing and community contribution system”
🚀💪Maximize your efficiency and productivity. The ultimate hub to manage, customize, and share prompts. (English/中文/Español/العربية). 让生产力加倍的 AI 快捷指令。更高效地管理提示词,在分享社区中发现适用于不同场景的灵感。
Unique: Uses GitHub as the primary backend for community contributions, leveraging pull requests as the contribution mechanism and the repository as the source of truth. This eliminates the need for a custom backend while maintaining version control, review workflows, and contributor attribution natively through GitHub.
vs others: More transparent and decentralized than centralized prompt marketplaces because all contributions are public, auditable, and version-controlled in GitHub, enabling community-driven curation rather than platform gatekeeping.
via “community-contribution-workflow-with-attribution”
🚀 An awesome list of curated Nano Banana pro prompts and examples. Your go-to resource for mastering prompt engineering and exploring the creative potential of the Nano banana pro(Nano banana 2) AI image model.
Unique: Treats attribution as a first-class requirement in the contribution workflow, not an afterthought — every prompt must include source credit, and the contribution template explicitly asks for creator name and platform source. This is enforced through documentation guidelines and peer review, creating a culture of intellectual honesty that's rare in prompt repositories.
vs others: More transparent and community-friendly than proprietary prompt marketplaces (which may not credit original creators or may claim ownership of community submissions), but slower and more friction-heavy than centralized platforms with dedicated editorial teams that can rapidly curate and publish new content.
via “community-contributed-prompt-aggregation”
Curated list of chatgpt prompts from the top-rated GPTs in the GPTs Store. Prompt Engineering, prompt attack & prompt protect. Advanced Prompt Engineering papers.
Unique: Implements a GitHub-based collaborative model where community prompts are version-controlled, attributed to contributors, and discoverable alongside official GPT Store prompts, treating prompt engineering as a collaborative software development practice rather than a static knowledge base.
vs others: Enables community iteration and attribution in ways that centralized prompt marketplaces (PromptBase, OpenAI's own prompt sharing) do not, by leveraging git history and pull request workflows for transparency and collaborative improvement.
via “community contribution framework and submission guidelines”
Awesome curated collection of images and prompts generated by GPT-4o and gpt-image-1. Explore AI generated visuals created with ChatGPT and Sora, showcasing OpenAI’s advanced image generation capabilities.
Unique: Establishes structured contribution processes with documented guidelines and quality standards, enabling scalable community growth while maintaining collection coherence and quality
vs others: More formalized than ad-hoc community collections; provides clear submission methods, quality criteria, and review processes enabling sustainable community-driven curation
via “contribution-workflow-and-validation-guidelines”
A collection of GPT system prompts and various prompt injection/leaking knowledge.
Unique: Integrates contribution guidelines with automated TOC generation, allowing contributors to submit new prompts via pull requests without manually updating indices. The SECURITY.md file provides specific guidance for responsibly disclosing prompt injection and jailbreak techniques, treating security vulnerabilities as educational opportunities rather than suppressing them.
vs others: More community-friendly than closed prompt collections because it enables open contributions, but less structured than platforms with automated quality checks, duplicate detection, or contributor reputation systems.
via “prompt discovery and sharing”
Discover, share, import, and use the best prompts for ChatGPT & save your chat history locally.
Unique: Utilizes a community-driven model for prompt sharing, allowing users to both contribute and access a diverse range of prompts, unlike static libraries.
vs others: More dynamic and community-focused than static prompt libraries, enabling real-time updates and contributions.
via “community-driven prompt feedback”
Guide and resources for prompt engineering.
Unique: The guide's focus on community-driven feedback sets it apart from other resources that do not facilitate user interaction or collaboration.
vs others: More interactive and community-focused than traditional prompt engineering resources that lack engagement features.
via “community-prompt-contribution”
A collection of free prompts for Stable Diffusion.
Unique: Implements a crowdsourced prompt library model where the community directly expands the collection, rather than relying on a centralized team or algorithmic generation. This creates a network effect where more users contribute, making the library more valuable.
vs others: More scalable and diverse than curated-only libraries, but requires moderation overhead and may suffer from quality variance compared to professionally-curated prompt collections
via “contributor attribution and community-driven prompt curation”
| [Hugging Face Dataset](https://huggingface.co/datasets/fka/prompts.chat) |
Unique: Uses GitHub username attribution to make prompt contributions transparent and discoverable, enabling community members to identify and follow prompt engineers whose work they value. This approach leverages GitHub's social features (user profiles, contribution history) to support community curation without requiring a dedicated platform.
vs others: More transparent than proprietary prompt marketplaces because contributions are publicly visible and attributable, but less structured than formal open-source projects because it lacks contribution guidelines, code review processes, or quality assurance mechanisms.
via “prompt categorization and tagging”
Search prompts for models like Stable Diffusion, ChatGPT, Midjourney, etc.
Unique: The user-driven tagging system encourages community involvement, creating a dynamic and evolving prompt library that adapts to user needs.
vs others: More collaborative than static prompt libraries, fostering a community-driven approach to prompt discovery.
via “prompt sharing and collaboration”
Discover, create and share powerful prompts
Unique: Integrates social features for prompt sharing and collaborative editing, fostering a community of prompt creators.
vs others: More collaborative than traditional prompt tools, allowing real-time feedback and version control among users.
via “community-driven prompt feedback system”
Search prompts from top prompt engineers. Sell your own prompts.
Unique: Incorporates a structured feedback mechanism that directly influences prompt visibility and sales, unlike many static platforms without user interaction.
vs others: More interactive and responsive to user needs compared to traditional prompt repositories that lack real-time feedback.
via “prompt curation and community sharing”
Search 10M+ of prompts, and generate AI art via Stable Diffusion, DALL·E 2.
via “community-prompt-contribution”
via “prompt-submission-and-sharing”
via “user-contributed prompt submission and curation”
Unique: Implements zero-friction contribution with no authentication, approval workflow, or editorial review — submissions are immediately published and discoverable, relying entirely on community voting for post-hoc quality filtering rather than pre-submission validation gates
vs others: Enables faster community growth and lower barrier to entry than curated platforms with editorial review, but accepts higher noise-to-signal ratio and requires stronger community moderation to maintain quality
via “community prompt curation and sharing”
Unique: Implements an open-submission model where any user can publish prompts to the community database without editorial review, curation gates, or quality thresholds. This maximizes contributor participation and knowledge sharing but sacrifices quality consistency compared to curated platforms with peer review or expert editorial boards.
vs others: Lower barrier to contribution than curated prompt libraries (no submission review process), encouraging broader community participation, but results in inconsistent quality and requires users to filter signal from noise themselves.
via “community-driven prompt library curation and submission”
Unique: Implements a lightweight community submission model where users can contribute prompts with minimal friction (likely a web form), creating a decentralized library that grows through user participation. The architecture appears to prioritize ease of contribution over strict quality control, relying on implicit feedback (views, favorites) rather than explicit editorial review.
vs others: Lower barrier to entry than curated prompt libraries like OpenAI's examples, but higher risk of quality variance; similar to GitHub's community-driven approach but without formal code review or testing infrastructure
via “community-contributed-resources”
Building an AI tool with “Community Prompt Contribution”?
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