| name | VLM |
| description | Implement vision-based AI chat capabilities using the mun-os-web-dev-sdk. Use this skill when the user needs to analyze images, describe visual content, or create applications that combine image understanding with conversational AI. Supports image URLs and base64 encoded images for multimodal interactions. |
| license | MIT |
VLM(Vision Chat) Skill
This skill guides the implementation of vision chat functionality using the mun-os-web-dev-sdk package, enabling AI models to understand and respond to images combined with text prompts.
Skills Path
Skill Location: {project_path}/skills/VLM
this skill is located at above path in your project.
Reference Scripts: Example test scripts are available in the {Skill Location}/scripts/ directory for quick testing and reference. See {Skill Location}/scripts/vlm.ts for a working example.
Overview
Vision Chat allows you to build applications that can analyze images, extract information from visual content, and answer questions about images through natural language conversation.
IMPORTANT: mun-os-web-dev-sdk MUST be used in backend code only. Never use it in client-side code.
Prerequisites
The mun-os-web-dev-sdk package is already installed. Import it as shown in the examples below.
CLI Usage (For Simple Tasks)
For simple image analysis tasks, you can use the mun-os CLI instead of writing code. This is ideal for quick image descriptions, testing vision capabilities, or simple automation.
Basic Image Analysis
mun-os vision --prompt "What's in this image?" --image "https://example.com/photo.jpg"
mun-os vision -p "Describe this image" -i "https://example.com/image.png"
Analyze Local Images
mun-os vision -p "What objects are in this photo?" -i "./photo.jpg"
mun-os vision -p "Describe the scene" -i "./landscape.png" -o description.json
Multiple Images
mun-os vision \
-p "Compare these two images" \
-i "./photo1.jpg" \
-i "./photo2.jpg" \
-o comparison.json
mun-os vision \
--prompt "What are the differences between these images?" \
--image "https://example.com/before.jpg" \
--image "https://example.com/after.jpg"
With Thinking (Chain of Thought)
mun-os vision \
-p "Count the number of people in this image and describe their activities" \
-i "./crowd.jpg" \
--thinking \
-o analysis.json
Streaming Output
mun-os vision -p "Describe this image in detail" -i "./photo.jpg" --stream
CLI Parameters
--prompt, -p <text>: Required - Question or instruction about the image(s)
--image, -i <URL or path>: Optional - Image URL or local file path (can be used multiple times)
--thinking, -t: Optional - Enable chain-of-thought reasoning (default: disabled)
--output, -o <path>: Optional - Output file path (JSON format)
--stream: Optional - Stream the response in real-time
Supported Image Formats
- PNG (.png)
- JPEG (.jpg, .jpeg)
- GIF (.gif)
- WebP (.webp)
- BMP (.bmp)
When to Use CLI vs SDK
Use CLI for:
- Quick image analysis
- Testing vision model capabilities
- One-off image descriptions
- Simple automation scripts
Use SDK for:
- Multi-turn conversations with images
- Dynamic image analysis in applications
- Batch processing with custom logic
- Production applications with complex workflows
Recommended Approach
For better performance and reliability, use base64 encoding to pass images to the model instead of image URLs.
Supported Content Types
The Vision Chat API supports three types of media content:
1. image_url - For Image Files
Use this type for static images (PNG, JPEG, GIF, WebP, etc.)
{
role: 'user',
content: [
{ type: 'text', text: prompt },
{ type: 'image_url', image_url: { url: imageUrl } }
]
}
2. video_url - For Video Files
Use this type for video content (MP4, AVI, MOV, etc.)
{
role: 'user',
content: [
{ type: 'text', text: prompt },
{ type: 'video_url', video_url: { url: videoUrl } }
]
}
3. file_url - For Document Files
Use this type for document files (PDF, DOCX, TXT, etc.)
{
role: 'user',
content: [
{ type: 'text', text: prompt },
{ type: 'file_url', file_url: { url: fileUrl } }
]
}
Note: You can combine multiple content types in a single message. For example, you can include both text and multiple images, or text with both an image and a document.
Basic Vision Chat Implementation
Single Image Analysis
import SovereignEngine from 'mun-os-web-dev-sdk';
async function analyzeImage(imageUrl, question) {
const sovereign = await SovereignEngine.create();
const response = await sovereign.chat.completions.createVision({
messages: [
{
role: 'user',
content: [
{
type: 'text',
text: question
},
{
type: 'image_url',
image_url: {
url: imageUrl
}
}
]
}
],
thinking: { type: 'disabled' }
});
return response.choices[0]?.message?.content;
}
const result = await analyzeImage(
'https://example.com/product.jpg',
'Describe this product in detail'
);
console.log('Analysis:', result);
Multiple Images Analysis
import SovereignEngine from 'mun-os-web-dev-sdk';
async function compareImages(imageUrls, question) {
const sovereign = await SovereignEngine.create();
const content = [
{
type: 'text',
text: question
},
...imageUrls.map(url => ({
type: 'image_url',
image_url: { url }
}))
];
const response = await sovereign.chat.completions.createVision({
messages: [
{
role: 'user',
content: content
}
],
thinking: { type: 'disabled' }
});
return response.choices[0]?.message?.content;
}
const comparison = await compareImages(
[
'https://example.com/before.jpg',
'https://example.com/after.jpg'
],
'Compare these two images and describe the differences'
);
Base64 Image Support
import SovereignEngine from 'mun-os-web-dev-sdk';
import fs from 'fs';
async function analyzeLocalImage(imagePath, question) {
const sovereign = await SovereignEngine.create();
const imageBuffer = fs.readFileSync(imagePath);
const base64Image = imageBuffer.toString('base64');
const mimeType = imagePath.endsWith('.png') ? 'image/png' : 'image/jpeg';
const response = await sovereign.chat.completions.createVision({
messages: [
{
role: 'user',
content: [
{
type: 'text',
text: question
},
{
type: 'image_url',
image_url: {
url: `data:${mimeType};base64,${base64Image}`
}
}
]
}
],
thinking: { type: 'disabled' }
});
return response.choices[0]?.message?.content;
}
Advanced Use Cases
Conversational Vision Chat
import SovereignEngine from 'mun-os-web-dev-sdk';
class VisionChatSession {
constructor() {
this.messages = [];
}
async initialize() {
this.sovereign = await SovereignEngine.create();
}
async addImage(imageUrl, initialQuestion) {
this.messages.push({
role: 'user',
content: [
{
type: 'text',
text: initialQuestion
},
{
type: 'image_url',
image_url: { url: imageUrl }
}
]
});
return this.getResponse();
}
async followUp(question) {
this.messages.push({
role: 'user',
content: [
{
type: 'text',
text: question
}
]
});
return this.getResponse();
}
async getResponse() {
const response = await this.sovereign.chat.completions.createVision({
messages: this.messages,
thinking: { type: 'disabled' }
});
const assistantMessage = response.choices[0]?.message?.content;
this.messages.push({
role: 'assistant',
content: assistantMessage
});
return assistantMessage;
}
}
const session = new VisionChatSession();
await session.initialize();
const initial = await session.addImage(
'https://example.com/chart.jpg',
'What does this chart show?'
);
console.log('Initial analysis:', initial);
const followup = await session.followUp('What are the key trends?');
console.log('Follow-up:', followup);
Image Classification and Tagging
import SovereignEngine from 'mun-os-web-dev-sdk';
async function classifyImage(imageUrl) {
const sovereign = await SovereignEngine.create();
const prompt = `Analyze this image and provide:
1. Main subject/category
2. Key objects detected
3. Scene description
4. Suggested tags (comma-separated)
Format your response as JSON.`;
const response = await sovereign.chat.completions.createVision({
messages: [
{
role: 'user',
content: [
{
type: 'text',
text: prompt
},
{
type: 'image_url',
image_url: { url: imageUrl }
}
]
}
],
thinking: { type: 'disabled' }
});
const content = response.choices[0]?.message?.content;
try {
return JSON.parse(content);
} catch (e) {
return { rawResponse: content };
}
}
OCR and Text Extraction
import SovereignEngine from 'mun-os-web-dev-sdk';
async function extractText(imageUrl) {
const sovereign = await SovereignEngine.create();
const response = await sovereign.chat.completions.createVision({
messages: [
{
role: 'user',
content: [
{
type: 'text',
text: 'Extract all text from this image. Preserve the layout and formatting as much as possible.'
},
{
type: 'image_url',
image_url: { url: imageUrl }
}
]
}
],
thinking: { type: 'disabled' }
});
return response.choices[0]?.message?.content;
}
Best Practices
1. Image Quality and Size
- Use high-quality images for better analysis results
- Optimize image size to balance quality and processing speed
- Supported formats: JPEG, PNG, WebP
2. Prompt Engineering
- Be specific about what information you need from the image
- Structure complex requests with numbered lists or bullet points
- Provide context about the image type (photo, diagram, chart, etc.)
3. Error Handling
async function safeVisionChat(imageUrl, question) {
try {
const sovereign = await SovereignEngine.create();
const response = await sovereign.chat.completions.createVision({
messages: [
{
role: 'user',
content: [
{ type: 'text', text: question },
{ type: 'image_url', image_url: { url: imageUrl } }
]
}
],
thinking: { type: 'disabled' }
});
return {
success: true,
content: response.choices[0]?.message?.content
};
} catch (error) {
console.error('Vision chat error:', error);
return {
success: false,
error: error.message
};
}
}
4. Performance Optimization
- Cache SDK instance creation when processing multiple images
- Use appropriate image formats (JPEG for photos, PNG for diagrams)
- Consider image preprocessing for large batches
5. Security Considerations
- Validate image URLs before processing
- Sanitize user-provided image data
- Implement rate limiting for public-facing APIs
- Never expose SDK credentials in client-side code
Common Use Cases
- Product Analysis: Analyze product images for e-commerce applications
- Document Understanding: Extract information from receipts, invoices, forms
- Medical Imaging: Assist in preliminary analysis (with appropriate disclaimers)
- Quality Control: Detect defects or anomalies in manufacturing
- Content Moderation: Analyze images for policy compliance
- Accessibility: Generate alt text for images automatically
- Visual Search: Understand and categorize images for search functionality
Integration Examples
Express.js API Endpoint
import express from 'express';
import SovereignEngine from 'mun-os-web-dev-sdk';
const app = express();
app.use(express.json());
let sovereignInstance;
async function initSovereignEngine() {
sovereignInstance = await SovereignEngine.create();
}
app.post('/api/analyze-image', async (req, res) => {
try {
const { imageUrl, question } = req.body;
if (!imageUrl || !question) {
return res.status(400).json({
error: 'imageUrl and question are required'
});
}
const response = await sovereignInstance.chat.completions.createVision({
messages: [
{
role: 'user',
content: [
{ type: 'text', text: question },
{ type: 'image_url', image_url: { url: imageUrl } }
]
}
],
thinking: { type: 'disabled' }
});
res.json({
success: true,
analysis: response.choices[0]?.message?.content
});
} catch (error) {
res.status(500).json({
success: false,
error: error.message
});
}
});
initSovereignEngine().then(() => {
app.listen(3000, () => {
console.log('Vision chat API running on port 3000');
});
});
Troubleshooting
Issue: "SDK must be used in backend"
- Solution: Ensure mun-os-web-dev-sdk is only imported and used in server-side code
Issue: Image not loading or being analyzed
- Solution: Verify the image URL is accessible and returns a valid image format
Issue: Poor analysis quality
- Solution: Provide more specific prompts and ensure image quality is sufficient
Issue: Slow response times
- Solution: Optimize image size and consider caching frequently analyzed images
Remember
- Always use mun-os-web-dev-sdk in backend code only
- The SDK is already installed - import as shown in examples
- Structure prompts clearly for best results
- Handle errors gracefully in production applications
- Consider user privacy when processing images