awesome-gemini-prompts and awesome-gemini-ai
These are competitors—both curate collections of prompts specifically for Google's Gemini API, serving the same end-user need to discover and reuse high-quality prompts without technical differentiation beyond curation scope and source diversity.
About awesome-gemini-prompts
langgptai/awesome-gemini-prompts
Gemini Prompts, Gemini 3 Prompts, jailbreak, LLM Prompts, LangGPT —— by 云中江树
Curated collection of prompt templates and engineering strategies optimized for Google's Gemini API, emphasizing structured prompting methodologies like LangGPT and chain-of-thought reasoning frameworks. Includes specialized techniques for Chinese language handling, multi-turn reasoning chains (思维链), and PDCA-based learning workflows that enable deeper model introspection and iterative problem-solving. Community-driven repository designed for practitioners building production prompts across Google Workspace integrations and general-purpose LLM applications.
About awesome-gemini-ai
ZeroLu/awesome-gemini-ai
The ultimate collection of Awesome Gemini Prompts, use cases, and examples. Curated from X (Twitter), Reddit, and top prompt engineers. Includes prompts for coding, agents, design, and productivity using Google Gemini 1.5 Pro and Ultra.
The collection leverages Gemini's 1M+ token context window to deliver comprehensive, production-ready prompts that span full-stack web development (Next.js, React Three Fiber, WebGL shaders), UI/UX design systems, and n8n workflow automation. Each prompt is engineered for single-shot generation of complex artifacts—from interactive landing pages with glassmorphism effects to OS simulators and crypto dashboards—utilizing Gemini's advanced reasoning to handle multi-layered design and development requirements. The repository also includes multilingual support and integrates with design tools and no-code platforms like n8n, making it a bridge between prompt engineering best practices and practical application across different development ecosystems.
Scores updated daily from GitHub, PyPI, and npm data. How scores work