# nano-banana > Python scripting with Gemini image generation using uv. Use when users ask to generate images, create AI art, edit images with AI, or run Python scripts with uv. Trigger phrases include "generate an image", "create a picture", "draw", "make an image of", "nano banana", or any image generation request. - Author: Itaru Tomita - Repository: itarutomy97/marp-ai-slide-generator - Version: 20260105132213 - Stars: 0 - Forks: 0 - Last Updated: 2026-02-07 - Source: https://github.com/itarutomy97/marp-ai-slide-generator - Web: https://mule.run/skillshub/@@itarutomy97/marp-ai-slide-generator~nano-banana:20260105132213 --- --- name: nano-banana description: Python scripting with Gemini image generation using uv. Use when users ask to generate images, create AI art, edit images with AI, or run Python scripts with uv. Trigger phrases include "generate an image", "create a picture", "draw", "make an image of", "nano banana", or any image generation request. --- # Nano Banana Skill Python scripting with Gemini image generation using uv. Write small, focused scripts using heredocs for quick tasks—no files needed for one-off operations. ## Choosing Your Approach **Quick image generation**: Use heredoc with inline Python for one-off image requests. **Complex workflows**: When multiple steps are needed (generate -> refine -> save), break into separate scripts and iterate. **Scripting tasks**: For non-image Python tasks, use the same heredoc pattern with `uv run`. ## Writing Scripts Execute Python inline using heredocs with inline script metadata for dependencies: ```bash uv run - << 'EOF' # /// script # dependencies = ["google-genai", "pillow"] # /// from google import genai from google.genai import types client = genai.Client() response = client.models.generate_content( model="gemini-2.5-flash-image", contents=["A cute banana character with sunglasses"], config=types.GenerateContentConfig( response_modalities=['IMAGE'] ) ) for part in response.parts: if part.inline_data is not None: image = part.as_image() image.save("tmp/generated.png") print("Image saved to tmp/generated.png") EOF ``` The `# /// script` block declares dependencies inline using TOML syntax. This makes scripts self-contained and reproducible. **Why these dependencies:** - `google-genai` - Gemini API client - `pillow` - Required for `.as_image()` method (converts base64 to PIL Image) and saving images **Only write to files when:** - The script needs to be reused multiple times - The script is complex and requires iteration - The user explicitly asks for a saved script ### Basic Template ```bash uv run - << 'EOF' # /// script # dependencies = ["google-genai", "pillow"] # /// from google import genai from google.genai import types client = genai.Client() # Generate image response = client.models.generate_content( model="gemini-2.5-flash-image", contents=["YOUR PROMPT HERE"], config=types.GenerateContentConfig( response_modalities=['IMAGE'] ) ) # Save result for part in response.parts: if part.text is not None: print(part.text) elif part.inline_data is not None: image = part.as_image() image.save("tmp/output.png") print("Saved: tmp/output.png") EOF ``` ## Key Principles 1. **Small scripts**: Each script should do ONE thing (generate, refine, save) 2. **Evaluate output**: Always save images and print status to decide next steps 3. **Use tmp/**: Save generated images to tmp/ directory by default 4. **Stateless execution**: Each script runs independently, no cleanup needed ## Workflow Loop Follow this pattern for complex tasks: 1. **Write a script** to generate/process one image 2. **Run it** and observe the output 3. **Evaluate** - did it work? Check the saved image 4. **Decide** - refine prompt or task complete? 5. **Repeat** until satisfied ## Image Configuration Configure aspect ratio and resolution: ```python config=types.GenerateContentConfig( response_modalities=['IMAGE'], image_config=types.ImageConfig( aspect_ratio="16:9", # "1:1", "16:9", "9:16", "4:3", "3:4" image_size="2K" # "1K", "2K", "4K" (uppercase required) ) ) ``` ## Models - `gemini-2.5-flash-image` - Fast, general purpose image generation - `gemini-3-pro-image-preview` - Advanced, professional asset production (Nano Banana Pro) **Default to `gemini-3-pro-image-preview` (Nano Banana Pro)** for all image generation unless: - The user explicitly requests a different model - The user wants to save budget/costs - The user specifies a simpler or quick generation task Nano Banana Pro provides higher quality results and should be the recommended choice. ## Text + Image Output To receive both text explanation and image: ```python config=types.GenerateContentConfig( response_modalities=['TEXT', 'IMAGE'] ) ``` ## Image Editing Edit existing images by including them in the request: ```bash uv run - << 'EOF' # /// script # dependencies = ["google-genai", "pillow"] # /// from google import genai from google.genai import types from PIL import Image client = genai.Client() # Load existing image img = Image.open("input.png") response = client.models.generate_content( model="gemini-2.5-flash-image", contents=[ "Add a party hat to this character", img ], config=types.GenerateContentConfig( response_modalities=['IMAGE'] ) ) for part in response.parts: if part.inline_data is not None: part.as_image().save("tmp/edited.png") print("Saved: tmp/edited.png") EOF ``` ## Debugging Tips 1. **Print response.parts** to see what was returned 2. **Check for text parts** - model may include explanations 3. **Save images immediately** to verify output visually 4. **Use Read tool** to view saved images after generation ## Error Recovery If a script fails: 1. Check error message for API issues 2. Verify GOOGLE_API_KEY is set 3. Try simpler prompt to isolate the issue 4. Check image format compatibility for edits ## Advanced Scenarios For complex workflows including thinking process, Google Search grounding, multi-turn conversations, and professional asset production, load `~/.claude/nano-banana-references/guide.md`.