dot_claude/skills/transformers-js/SKILL.md
Use Transformers.js to run state-of-the-art machine learning models directly in JavaScript/TypeScript. Supports NLP (text classification, translation, summarization), computer vision (image classification, object detection), audio (speech recognition, audio classification), and multimodal tasks. Works in browsers and server-side runtimes (Node.js, Bun, Deno) with WebGPU/WASM using pre-trained models from Hugging Face Hub.
npx skillsauth add nijaru/dotfiles transformers-jsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Transformers.js enables running state-of-the-art machine learning models directly in JavaScript across browsers and server-side runtimes (Node.js, Bun, Deno), with no Python server required.
Use this skill when you need to:
npm install @huggingface/transformers
<script type="module">
import { pipeline } from 'https://cdn.jsdelivr.net/npm/@huggingface/transformers';
</script>
The pipeline API is the easiest way to use models. It groups together preprocessing, model inference, and postprocessing:
import { pipeline } from '@huggingface/transformers';
// Create a pipeline for a specific task
const pipe = await pipeline('sentiment-analysis');
// Use the pipeline
const result = await pipe('I love transformers!');
// Output: [{ label: 'POSITIVE', score: 0.999817686 }]
// IMPORTANT: Always dispose when done to free memory
await pipe.dispose();
⚠️ Memory Management: All pipelines must be disposed with pipe.dispose() when finished to prevent memory leaks. See examples in Code Examples for cleanup patterns across different environments.
You can specify a custom model as the second argument:
const pipe = await pipeline(
'sentiment-analysis',
'Xenova/bert-base-multilingual-uncased-sentiment'
);
Finding Models:
Browse available Transformers.js models on Hugging Face Hub:
pipeline_tag parameter
Tip: Filter by task type, sort by trending/downloads, and check model cards for performance metrics and usage examples.
Choose where to run the model:
// Run on CPU (default for WASM)
const pipe = await pipeline('sentiment-analysis', 'model-id');
// Run on GPU (WebGPU)
const pipe = await pipeline('sentiment-analysis', 'model-id', {
device: 'webgpu',
});
Control model precision vs. performance:
// Use quantized model (faster, smaller)
const pipe = await pipeline('sentiment-analysis', 'model-id', {
dtype: 'q4', // Options: 'fp32', 'fp16', 'q8', 'q4'
});
Note: All examples below show basic usage.
const classifier = await pipeline('text-classification');
const result = await classifier('This movie was amazing!');
const ner = await pipeline('token-classification');
const entities = await ner('My name is John and I live in New York.');
const qa = await pipeline('question-answering');
const answer = await qa({
question: 'What is the capital of France?',
context: 'Paris is the capital and largest city of France.'
});
const generator = await pipeline('text-generation', 'onnx-community/gemma-3-270m-it-ONNX');
const text = await generator('Once upon a time', {
max_new_tokens: 100,
temperature: 0.7
});
For streaming and chat: See Text Generation Guide for:
TextStreamerconst translator = await pipeline('translation', 'Xenova/nllb-200-distilled-600M');
const output = await translator('Hello, how are you?', {
src_lang: 'eng_Latn',
tgt_lang: 'fra_Latn'
});
const summarizer = await pipeline('summarization');
const summary = await summarizer(longText, {
max_length: 100,
min_length: 30
});
const classifier = await pipeline('zero-shot-classification');
const result = await classifier('This is a story about sports.', ['politics', 'sports', 'technology']);
const classifier = await pipeline('image-classification');
const result = await classifier('https://example.com/image.jpg');
// Or with local file
const result = await classifier(imageUrl);
const detector = await pipeline('object-detection');
const objects = await detector('https://example.com/image.jpg');
// Returns: [{ label: 'person', score: 0.95, box: { xmin, ymin, xmax, ymax } }, ...]
const segmenter = await pipeline('image-segmentation');
const segments = await segmenter('https://example.com/image.jpg');
const depthEstimator = await pipeline('depth-estimation');
const depth = await depthEstimator('https://example.com/image.jpg');
const classifier = await pipeline('zero-shot-image-classification');
const result = await classifier('image.jpg', ['cat', 'dog', 'bird']);
const transcriber = await pipeline('automatic-speech-recognition');
const result = await transcriber('audio.wav');
// Returns: { text: 'transcribed text here' }
const classifier = await pipeline('audio-classification');
const result = await classifier('audio.wav');
const synthesizer = await pipeline('text-to-speech', 'Xenova/speecht5_tts');
const audio = await synthesizer('Hello, this is a test.', {
speaker_embeddings: speakerEmbeddings
});
const captioner = await pipeline('image-to-text');
const caption = await captioner('image.jpg');
const docQA = await pipeline('document-question-answering');
const answer = await docQA('document-image.jpg', 'What is the total amount?');
const detector = await pipeline('zero-shot-object-detection');
const objects = await detector('image.jpg', ['person', 'car', 'tree']);
const extractor = await pipeline('feature-extraction');
const embeddings = await extractor('This is a sentence to embed.');
// Returns: tensor of shape [1, sequence_length, hidden_size]
// For sentence embeddings (mean pooling)
const extractor = await pipeline('feature-extraction', 'onnx-community/all-MiniLM-L6-v2-ONNX');
const embeddings = await extractor('Text to embed', { pooling: 'mean', normalize: true });
Discover compatible Transformers.js models on Hugging Face Hub:
Base URL (all models):
https://huggingface.co/models?library=transformers.js&sort=trending
Filter by task using the pipeline_tag parameter:
| Task | URL | |------|-----| | Text Generation | https://huggingface.co/models?pipeline_tag=text-generation&library=transformers.js&sort=trending | | Text Classification | https://huggingface.co/models?pipeline_tag=text-classification&library=transformers.js&sort=trending | | Translation | https://huggingface.co/models?pipeline_tag=translation&library=transformers.js&sort=trending | | Summarization | https://huggingface.co/models?pipeline_tag=summarization&library=transformers.js&sort=trending | | Question Answering | https://huggingface.co/models?pipeline_tag=question-answering&library=transformers.js&sort=trending | | Image Classification | https://huggingface.co/models?pipeline_tag=image-classification&library=transformers.js&sort=trending | | Object Detection | https://huggingface.co/models?pipeline_tag=object-detection&library=transformers.js&sort=trending | | Image Segmentation | https://huggingface.co/models?pipeline_tag=image-segmentation&library=transformers.js&sort=trending | | Speech Recognition | https://huggingface.co/models?pipeline_tag=automatic-speech-recognition&library=transformers.js&sort=trending | | Audio Classification | https://huggingface.co/models?pipeline_tag=audio-classification&library=transformers.js&sort=trending | | Image-to-Text | https://huggingface.co/models?pipeline_tag=image-to-text&library=transformers.js&sort=trending | | Feature Extraction | https://huggingface.co/models?pipeline_tag=feature-extraction&library=transformers.js&sort=trending | | Zero-Shot Classification | https://huggingface.co/models?pipeline_tag=zero-shot-classification&library=transformers.js&sort=trending |
Sort options:
&sort=trending - Most popular recently&sort=downloads - Most downloaded overall&sort=likes - Most liked by community&sort=modified - Recently updatedConsider these factors when selecting a model:
1. Model Size
2. Quantization Models are often available in different quantization levels:
fp32 - Full precision (largest, most accurate)fp16 - Half precision (smaller, still accurate)q8 - 8-bit quantized (much smaller, slight accuracy loss)q4 - 4-bit quantized (smallest, noticeable accuracy loss)3. Task Compatibility Check the model card for:
4. Performance Metrics Model cards typically show:
// 1. Visit: https://huggingface.co/models?pipeline_tag=text-generation&library=transformers.js&sort=trending
// 2. Browse and select a model (e.g., onnx-community/gemma-3-270m-it-ONNX)
// 3. Check model card for:
// - Model size: ~270M parameters
// - Quantization: q4 available
// - Language: English
// - Use case: Instruction-following chat
// 4. Use the model:
import { pipeline } from '@huggingface/transformers';
const generator = await pipeline(
'text-generation',
'onnx-community/gemma-3-270m-it-ONNX',
{ dtype: 'q4' } // Use quantized version for faster inference
);
const output = await generator('Explain quantum computing in simple terms.', {
max_new_tokens: 100
});
await generator.dispose();
onnx folder in model repo)library=transformers.js to find compatible models: https://huggingface.co/models?library=transformers.jsconst pipe = await pipeline('task', 'model-id', { revision: 'abc123' });
env)The env object provides comprehensive control over Transformers.js execution, caching, and model loading.
Quick Overview:
import { env, LogLevel } from '@huggingface/transformers';
// View version
console.log(env.version); // e.g., '4.x'
// Common settings
env.allowRemoteModels = true; // Load from Hugging Face Hub
env.allowLocalModels = false; // Load from file system
env.localModelPath = '/models/'; // Local model directory
env.useFSCache = true; // Cache models on disk (Node.js)
env.useBrowserCache = true; // Cache models in browser
env.cacheDir = './.cache'; // Cache directory location
// Optional: override logging level (default is LogLevel.WARNING)
env.logLevel = LogLevel.INFO;
// Optional: custom fetch for auth headers, retries, abort signals, etc.
env.fetch = (url, options) =>
fetch(url, {
...options,
headers: {
...options?.headers,
Authorization: `Bearer ${HF_TOKEN}`,
},
});
Configuration Patterns:
// Development: Fast iteration with remote models
env.allowRemoteModels = true;
env.useFSCache = true;
// Production: Local models only
env.allowRemoteModels = false;
env.allowLocalModels = true;
env.localModelPath = '/app/models/';
// Custom CDN
env.remoteHost = 'https://cdn.example.com/models';
// Disable caching (testing)
env.useFSCache = false;
env.useBrowserCache = false;
For complete documentation on all configuration options, caching strategies, cache management, pre-downloading models, and more, see:
→ Configuration Reference
ModelRegistry gives you visibility and control over model assets before loading a pipeline. Use it to estimate download size, check cache status, inspect available dtypes, and clear cached artifacts for a specific task/model/options tuple.
import { ModelRegistry } from '@huggingface/transformers';
const task = 'feature-extraction';
const modelId = 'onnx-community/all-MiniLM-L6-v2-ONNX';
const modelOptions = { dtype: 'fp32' };
// List required files for this pipeline
const files = await ModelRegistry.get_pipeline_files(task, modelId, modelOptions);
// Check if assets are already cached
const cached = await ModelRegistry.is_pipeline_cached(task, modelId, modelOptions);
// Inspect precision formats available for this model
const dtypes = await ModelRegistry.get_available_dtypes(modelId);
console.log({ files: files.length, cached, dtypes });
For production patterns and full API coverage, see ModelRegistry Reference.
@huggingface/tokenizers)For tokenization-only workflows, use @huggingface/tokenizers. It is a separate lightweight package useful when you need fast tokenization/encoding without loading full model inference pipelines.
npm install @huggingface/tokenizers
import { Tokenizer } from '@huggingface/tokenizers';
import { AutoTokenizer, AutoModel } from '@huggingface/transformers';
// Load tokenizer and model separately for more control
const tokenizer = await AutoTokenizer.from_pretrained('bert-base-uncased');
const model = await AutoModel.from_pretrained('bert-base-uncased');
// Tokenize input
const inputs = await tokenizer('Hello world!');
// Run model
const outputs = await model(inputs);
const classifier = await pipeline('sentiment-analysis');
// Process multiple texts
const results = await classifier([
'I love this!',
'This is terrible.',
'It was okay.'
]);
WebGPU provides GPU acceleration in browsers and server-side runtimes (when supported):
const pipe = await pipeline('text-generation', 'onnx-community/gemma-3-270m-it-ONNX', {
device: 'webgpu',
dtype: 'fp32'
});
Note: Use webgpu when available and fall back to WASM/CPU when not supported in the current runtime.
WASM is the most compatible execution backend across runtimes:
// Optimized for browsers with quantization
const pipe = await pipeline('sentiment-analysis', 'model-id', {
dtype: 'q8' // or 'q4' for even smaller size
});
Models can be large (ranging from a few MB to several GB) and consist of multiple files. Track download progress by passing a callback to the pipeline() function:
import { pipeline } from '@huggingface/transformers';
// Track progress for each file
const fileProgress = {};
function onProgress(info) {
if (info.status === 'progress_total') {
console.log(`Total: ${info.progress.toFixed(1)}%`);
return;
}
console.log(`${info.status}: ${info.file ?? ''}`);
if (info.status === 'progress') {
fileProgress[info.file] = info.progress;
console.log(`${info.file}: ${info.progress.toFixed(1)}%`);
}
if (info.status === 'done') {
console.log(`✓ ${info.file} complete`);
}
}
// Pass callback to pipeline
const classifier = await pipeline('sentiment-analysis', null, {
progress_callback: onProgress
});
Progress Info Properties:
interface ProgressInfo {
status: 'initiate' | 'download' | 'progress' | 'progress_total' | 'done' | 'ready';
name: string; // Model id or path
file?: string; // File being processed (per-file events)
progress?: number; // Percentage (0-100, for 'progress' and 'progress_total')
loaded?: number; // Bytes downloaded (only for 'progress' status)
total?: number; // Total bytes (only for 'progress' status)
}
For complete examples including browser UIs, React components, CLI progress bars, and retry logic, see:
→ Pipeline Options - Progress Callback
try {
const pipe = await pipeline('sentiment-analysis', 'model-id');
const result = await pipe('text to analyze');
} catch (error) {
if (error.message.includes('fetch')) {
console.error('Model download failed. Check internet connection.');
} else if (error.message.includes('ONNX')) {
console.error('Model execution failed. Check model compatibility.');
} else {
console.error('Unknown error:', error);
}
}
q8 or q4 for faster inferencemax_new_tokens to avoid memory issuespipe.dispose() when done to free memoryIMPORTANT: Always call pipe.dispose() when finished to prevent memory leaks.
const pipe = await pipeline('sentiment-analysis');
const result = await pipe('Great product!');
await pipe.dispose(); // ✓ Free memory (100MB - several GB per model)
When to dispose:
Models consume significant memory and hold GPU/CPU resources. Disposal is critical for browser memory limits and server stability.
For detailed patterns (React cleanup, servers, browser), see Code Examples
onnx folder in model repo)dtype: 'q4')max_lengthdtype: 'fp16' if fp32 failspipeline() with progress_callback, device, dtype, etc.env configuration for caching and model loadingpipe.dispose() when done - critical for preventing memory leaks| Task | Task ID |
|------|---------|
| Text classification | text-classification or sentiment-analysis |
| Token classification | token-classification or ner |
| Question answering | question-answering |
| Fill mask | fill-mask |
| Summarization | summarization |
| Translation | translation |
| Text generation | text-generation |
| Text-to-text generation | text2text-generation |
| Zero-shot classification | zero-shot-classification |
| Image classification | image-classification |
| Image segmentation | image-segmentation |
| Object detection | object-detection |
| Depth estimation | depth-estimation |
| Image-to-image | image-to-image |
| Zero-shot image classification | zero-shot-image-classification |
| Zero-shot object detection | zero-shot-object-detection |
| Automatic speech recognition | automatic-speech-recognition |
| Audio classification | audio-classification |
| Text-to-speech | text-to-speech or text-to-audio |
| Image-to-text | image-to-text |
| Document question answering | document-question-answering |
| Feature extraction | feature-extraction |
| Sentence similarity | sentence-similarity |
This skill enables you to integrate state-of-the-art machine learning capabilities directly into JavaScript applications without requiring separate ML servers or Python environments.
development
Use after completing a bug fix, feature, refactor, or tk task when the first implementation taught enough context to replace it with a simpler, cleaner, or more coherent version before finalizing.
development
Use when writing, migrating, or reviewing Zig code across recent stable versions (0.14-0.16), especially to correct stale syntax or stdlib, build.zig, allocator, formatting, or runtime API knowledge.
documentation
Use when reviewing or revising text (prose, docs, commits) to remove AI patterns and improve voice/clarity.
content-media
Use when fetching X/Twitter post content by URL, or searching for recent X posts.