awesome-nanobanana-pro and nanobanana-trending-prompts
These are complements: one is a curated repository of prompt engineering examples and best practices for the Nano Banana Pro model, while the other is a collection of trending image prompts ranked by engagement that can be applied across multiple image generation models including Nano Banana Pro, making them useful together for both learning prompt structure and discovering high-performing prompt patterns.
About awesome-nanobanana-pro
ZeroLu/awesome-nanobanana-pro
🚀 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.
Curates high-fidelity prompts sourced from social platforms and professional prompt engineers, organized across 11 categories including photorealism, e-commerce, interior design, and social media applications. The repository uses structured prompt templates—ranging from plain-text to JSON schemas—to extract specific model capabilities like complex multi-subject compositions, era-specific aesthetics (2000s, 1990s), and advanced lighting control. Targets the Nano Banana Pro image generation model on platforms like Replicate and Cyberbara, with cross-referenced prompts tested by community contributors.
About nanobanana-trending-prompts
jau123/nanobanana-trending-prompts
1,300+ curated trending AI image prompts from X/Twitter, ranked by engagement. Works with NanoBanana Pro, GPT Image, Midjourney. Updated Weekly
Prompts are structured as JSON with metadata including engagement metrics, model compatibility tags, and optional system prompts for transforming simple inputs into detailed descriptions. The collection integrates with MeiGen MCP—an MCP server enabling direct prompt search and image generation from Claude, Cursor, and VS Code without requiring API keys. Manual curation removes low-quality content and refines entries weekly, maintaining quality across NanoBanana Pro and GPT Image variants.
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