Agent skill

pollinations-ai

Generate and save images using Pollinations.ai's free, open-source API. No signup required. Supports URL-based generation, custom parameters (width, height, model, seed), and automatic file saving. Perfect for quick prototypes, marketing assets, and creative workflows.

Stars 232
Forks 15

Install this agent skill to your Project

npx add-skill https://github.com/aiskillstore/marketplace/tree/main/skills/supercent-io/pollinations-ai

Metadata

Additional technical details for this skill

tags
image-generation, pollinations, free, api, creative, ai-art, url-based
platforms
Claude, ChatGPT, Gemini, Codex

SKILL.md

Pollinations.ai Image Generation

Free, open-source AI image generation through simple URL parameters. No API key or signup required.

When to use this skill

  • Quick prototyping: Generate placeholder images instantly
  • Marketing assets: Create hero images, banners, social media content
  • Creative exploration: Test multiple styles and compositions rapidly
  • No-budget projects: Free alternative to paid image generation services
  • Automated workflows: Script-friendly URL-based API

Instructions

Step 1: Understand the API Structure

Pollinations.ai uses a simple URL-based API:

https://image.pollinations.ai/prompt/{YOUR_PROMPT}?{PARAMETERS}

No authentication required - just construct the URL and fetch the image.

Available Parameters:

  • width / height: Resolution (default: 1024x1024)
  • model: AI model (flux, turbo, stable-diffusion)
  • seed: Number for reproducible results
  • nologo: true to remove watermark (if supported)
  • enhance: true for automatic prompt enhancement

Step 2: Craft Your Prompt

Use descriptive prompts with specific details:

Good prompt structure:

[Subject], [Style], [Lighting], [Mood], [Composition], [Quality modifiers]

Example:

A father welcoming a beautiful holiday, warm golden hour lighting, 
cozy interior background with festive decorations, 8k resolution, 
highly detailed, cinematic depth of field

Prompt styles:

  • Photorealistic: "photorealistic shot, 8k resolution, highly detailed, cinematic"
  • Illustrative: "digital illustration, soft pastel colors, disney style animation"
  • Minimalist: "minimalist vector art, flat design, simple geometric shapes"

Step 3: Generate via URL (Browser Method)

Simply open the URL in a browser or use curl:

bash
# Basic generation
curl "https://image.pollinations.ai/prompt/A_serene_mountain_landscape" -o mountain.jpg

# With parameters
curl "https://image.pollinations.ai/prompt/A_serene_mountain_landscape?width=1920&height=1080&model=flux&seed=42" -o mountain-hd.jpg

Step 4: Generate and Save (Python Method)

For automation and file management:

python
import requests
from urllib.parse import quote

def generate_image(prompt, output_file, width=1920, height=1080, model="flux", seed=None):
    """
    Generate image using Pollinations.ai and save to file
    
    Args:
        prompt: Description of the image to generate
        output_file: Path to save the image
        width: Image width in pixels
        height: Image height in pixels
        model: AI model ('flux', 'turbo', 'stable-diffusion')
        seed: Optional seed for reproducibility
    """
    # Encode prompt for URL
    encoded_prompt = quote(prompt)
    url = f"https://image.pollinations.ai/prompt/{encoded_prompt}"
    
    # Build parameters
    params = {
        "width": width,
        "height": height,
        "model": model,
        "nologo": "true"
    }
    if seed:
        params["seed"] = seed
    
    # Generate and save
    print(f"Generating: {prompt[:50]}...")
    response = requests.get(url, params=params)
    
    if response.status_code == 200:
        with open(output_file, "wb") as f:
            f.write(response.content)
        print(f"✓ Saved to {output_file}")
        return True
    else:
        print(f"✗ Error: {response.status_code}")
        return False

# Example usage
generate_image(
    prompt="A father welcoming a beautiful holiday, warm lighting, festive decorations",
    output_file="holiday_father.jpg",
    width=1920,
    height=1080,
    model="flux",
    seed=12345
)

Step 5: Batch Generation

Generate multiple variations:

python
prompts = [
    "photorealistic shot of a father at front door, warm lighting, festive decorations",
    "digital illustration of a father in snow, magical winter wonderland, disney style",
    "minimalist silhouette of father and child, holiday fireworks, flat design"
]

for i, prompt in enumerate(prompts):
    generate_image(
        prompt=prompt,
        output_file=f"variant_{i+1}.jpg",
        width=1920,
        height=1080,
        model="flux"
    )

Step 6: Document Your Generations

Save metadata for reproducibility:

python
import json
from datetime import datetime

metadata = {
    "prompt": prompt,
    "model": "flux",
    "width": 1920,
    "height": 1080,
    "seed": 12345,
    "output_file": "holiday_father.jpg",
    "timestamp": datetime.now().isoformat()
}

with open("generation_metadata.json", "w") as f:
    json.dump(metadata, f, indent=2)

Examples

Example 1: Hero Image for Website

python
generate_image(
    prompt="serene mountain landscape at sunset, wide 16:9, minimal style, soft gradients in blue tones, clean lines, modern aesthetic",
    output_file="hero-image.jpg",
    width=1920,
    height=1080,
    model="flux"
)

Expected output: 16:9 landscape image, minimal style, blue color palette

Example 2: Product Thumbnail

python
generate_image(
    prompt="futuristic dashboard UI, 1:1 square, clean interface, soft lighting, professional feel, dark theme, subtle glow effects",
    output_file="product-thumb.jpg",
    width=1024,
    height=1024,
    model="flux"
)

Expected output: Square thumbnail, dark theme, app store ready

Example 3: Social Media Banner

python
generate_image(
    prompt="LinkedIn banner for SaaS startup, modern gradient background, abstract geometric shapes, colors from purple to blue, space for text on left side",
    output_file="linkedin-banner.jpg",
    width=1584,
    height=396,
    model="flux"
)

Expected output: LinkedIn-optimized dimensions (1584x396), text-safe zone

Example 4: Batch Variations with Seeds

python
# Generate 4 variations of the same prompt with different seeds
base_prompt = "A father welcoming a beautiful holiday, cinematic lighting"

for seed in [100, 200, 300, 400]:
    generate_image(
        prompt=base_prompt,
        output_file=f"variation_seed_{seed}.jpg",
        width=1920,
        height=1080,
        model="flux",
        seed=seed
    )

Expected output: 4 similar images with subtle variations


Best practices

  1. Use specific prompts: Include style, lighting, mood, and quality modifiers
  2. Specify dimensions early: Prevents unintended cropping
  3. Use seeds for consistency: Same seed + prompt = same image
  4. Model selection:
    • flux: Highest quality, slower
    • turbo: Fast iterations
    • stable-diffusion: Balanced
  5. Save metadata: Track prompts, seeds, and parameters for reproducibility
  6. Batch similar requests: Generate style sets with consistent parameters
  7. URL encode prompts: Use urllib.parse.quote() for special characters

Common pitfalls

  • Vague prompts: Add specific details about style, lighting, and composition
  • Ignoring aspect ratios: Check target platform requirements (Instagram 1:1, LinkedIn 1584x396, etc.)
  • Overly complex scenes: Simplify for clarity and better results
  • Not saving metadata: Difficult to reproduce or iterate on successful images
  • Forgetting URL encoding: Special characters break URLs

Troubleshooting

Issue: Inconsistent outputs

Cause: No seed specified Solution: Use a fixed seed for reproducible results

python
generate_image(prompt="...", seed=12345, ...)  # Same output every time

Issue: Wrong aspect ratio

Cause: Incorrect width/height parameters Solution: Use platform-specific dimensions

python
# Instagram: 1:1
generate_image(prompt="...", width=1080, height=1080)

# LinkedIn banner: ~4:1
generate_image(prompt="...", width=1584, height=396)

# YouTube thumbnail: 16:9
generate_image(prompt="...", width=1280, height=720)

Issue: Image doesn't match brand colors

Cause: No color specification in prompt Solution: Include HEX codes or color names

python
prompt = "landscape with brand colors deep blue #2563EB and purple #8B5CF6"

Issue: Request fails (HTTP error)

Cause: Network issue or service downtime Solution: Add retry logic

python
import time

def generate_with_retry(prompt, output_file, max_retries=3):
    for attempt in range(max_retries):
        if generate_image(prompt, output_file):
            return True
        print(f"Retry {attempt + 1}/{max_retries}...")
        time.sleep(2)
    return False

Output format

markdown
## Image Generation Report

### Request
- **Prompt**: [full prompt text]
- **Model**: flux
- **Dimensions**: 1920x1080
- **Seed**: 12345

### Output Files
1. `hero-image-v1.jpg` - Primary variant
2. `hero-image-v2.jpg` - Alternative style
3. `hero-image-v3.jpg` - Different lighting

### Metadata
- Generated: 2026-02-13T14:30:00Z
- Iterations: 3
- Selected: hero-image-v1.jpg

### Usage Notes
- Best for: Website hero section
- Format: JPEG, 1920x1080
- Reproducible: Yes (seed: 12345)

Multi-Agent Workflow

Validation & Quality Check

  • Round 1 (Orchestrator - Claude):

    • Validate prompt completeness
    • Check dimension requirements
    • Verify seed consistency
  • Round 2 (Executor - Codex):

    • Execute generation script
    • Save files with proper naming
    • Generate metadata JSON
  • Round 3 (Analyst - Gemini):

    • Review style consistency
    • Check brand alignment
    • Suggest prompt improvements

Agent Roles

Agent Role Tools
Claude Prompt engineering, quality validation Write, Read
Codex Script execution, batch processing Bash, Write
Gemini Style analysis, brand consistency check Read, ask-gemini

Example Multi-Agent Workflow

bash
# 1. Claude: Generate prompts and script
# 2. Codex: Execute generation
bash -c "python generate_images.py"

# 3. Gemini: Review outputs
ask-gemini "@outputs/ Analyze brand consistency of generated images"

Metadata

Version

  • Current Version: 1.0.0
  • Last Updated: 2026-02-13
  • Compatible Platforms: Claude, ChatGPT, Gemini, Codex

Related Skills

API Documentation

Tags

#pollinations #image-generation #free #api #url-based #no-signup #creative

Didn't find tool you were looking for?

Be as detailed as possible for better results