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multimodal-clip

نموذج OpenAI الذي يربط بين الرؤية واللغة. يتيح التصنيف الصوري بدون تدريب مسبق، ومطابقة الصور مع النصوص، والاسترجاع عبر الوسائط. تم تدريبه على 400 مليون زوج من الصور والنصوص. يُستخدم في البحث عن الصور، ومراقبة المحتوى، أو مهام الرؤية واللغة دون الحاجة إلى ضبط دقيق. الأفضل لفهم الصور لأغراض عامة.

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التثبيت

npx claude-code-templates@latest --skill ai-research/multimodal-clip

CLIP - Contrastive Language-Image Pre-Training

OpenAI's model that understands images from natural language.

When to use CLIP

Use when:

  • Zero-shot image classification (no training data needed)
  • Image-text similarity/matching
  • Semantic image search
  • Content moderation (detect NSFW, violence)
  • Visual question answering
  • Cross-modal retrieval (image→text, text→image)

Metrics:

  • 25,300+ GitHub stars
  • Trained on 400M image-text pairs
  • Matches ResNet-50 on ImageNet (zero-shot)
  • MIT License

Use alternatives instead:

  • BLIP-2: Better captioning
  • LLaVA: Vision-language chat
  • Segment Anything: Image segmentation

Quick start

Installation

pip install git+https://github.com/openai/CLIP.git
pip install torch torchvision ftfy regex tqdm

Zero-shot classification

import torch
import clip
from PIL import Image

# Load model
device = "cuda" if torch.cuda.is_available() else "cpu"
model, preprocess = clip.load("ViT-B/32", device=device)

# Load image
image = preprocess(Image.open("photo.jpg")).unsqueeze(0).to(device)

# Define possible labels
text = clip.tokenize(["a dog", "a cat", "a bird", "a car"]).to(device)

# Compute similarity
with torch.no_grad():
    image_features = model.encode_image(image)
    text_features = model.encode_text(text)

    # Cosine similarity
    logits_per_image, logits_per_text = model(image, text)
    probs = logits_per_image.softmax(dim=-1).cpu().numpy()

# Print results
labels = ["a dog", "a cat", "a bird", "a car"]
for label, prob in zip(labels, probs[0]):
    print(f"{label}: {prob:.2%}")

Available models

# Models (sorted by size)
models = [
    "RN50",           # ResNet-50
    "RN101",          # ResNet-101
    "ViT-B/32",       # Vision Transformer (recommended)
    "ViT-B/16",       # Better quality, slower
    "ViT-L/14",       # Best quality, slowest
]

model, preprocess = clip.load("ViT-B/32")
Model Parameters Speed Quality
RN50 102M Fast Good
ViT-B/32 151M Medium Better
ViT-L/14 428M Slow Best

Image-text similarity

# Compute embeddings
image_features = model.encode_image(image)
text_features = model.encode_text(text)

# Normalize
image_features /= image_features.norm(dim=-1, keepdim=True)
text_features /= text_features.norm(dim=-1, keepdim=True)

# Cosine similarity
similarity = (image_features @ text_features.T).item()
print(f"Similarity: {similarity:.4f}")

Semantic image search

# Index images
image_paths = ["img1.jpg", "img2.jpg", "img3.jpg"]
image_embeddings = []

for img_path in image_paths:
    image = preprocess(Image.open(img_path)).unsqueeze(0).to(device)
    with torch.no_grad():
        embedding = model.encode_image(image)
        embedding /= embedding.norm(dim=-1, keepdim=True)
    image_embeddings.append(embedding)

image_embeddings = torch.cat(image_embeddings)

# Search with text query
query = "a sunset over the ocean"
text_input = clip.tokenize([query]).to(device)
with torch.no_grad():
    text_embedding = model.encode_text(text_input)
    text_embedding /= text_embedding.norm(dim=-1, keepdim=True)

# Find most similar images
similarities = (text_embedding @ image_embeddings.T).squeeze(0)
top_k = similarities.topk(3)

for idx, score in zip(top_k.indices, top_k.values):
    print(f"{image_paths[idx]}: {score:.3f}")

Content moderation

# Define categories
categories = [
    "safe for work",
    "not safe for work",
    "violent content",
    "graphic content"
]

text = clip.tokenize(categories).to(device)

# Check image
with torch.no_grad():
    logits_per_image, _ = model(image, text)
    probs = logits_per_image.softmax(dim=-1)

# Get classification
max_idx = probs.argmax().item()
max_prob = probs[0, max_idx].item()

print(f"Category: {categories[max_idx]} ({max_prob:.2%})")

Batch processing

# Process multiple images
images = [preprocess(Image.open(f"img{i}.jpg")) for i in range(10)]
images = torch.stack(images).to(device)

with torch.no_grad():
    image_features = model.encode_image(images)
    image_features /= image_features.norm(dim=-1, keepdim=True)

# Batch text
texts = ["a dog", "a cat", "a bird"]
text_tokens = clip.tokenize(texts).to(device)

with torch.no_grad():
    text_features = model.encode_text(text_tokens)
    text_features /= text_features.norm(dim=-1, keepdim=True)

# Similarity matrix (10 images × 3 texts)
similarities = image_features @ text_features.T
print(similarities.shape)  # (10, 3)

Integration with vector databases

# Store CLIP embeddings in Chroma/FAISS
import chromadb

client = chromadb.Client()
collection = client.create_collection("image_embeddings")

# Add image embeddings
for img_path, embedding in zip(image_paths, image_embeddings):
    collection.add(
        embeddings=[embedding.cpu().numpy().tolist()],
        metadatas=[{"path": img_path}],
        ids=[img_path]
    )

# Query with text
query = "a sunset"
text_embedding = model.encode_text(clip.tokenize([query]))
results = collection.query(
    query_embeddings=[text_embedding.cpu().numpy().tolist()],
    n_results=5
)

Best practices

  1. Use ViT-B/32 for most cases - Good balance
  2. Normalize embeddings - Required for cosine similarity
  3. Batch processing - More efficient
  4. Cache embeddings - Expensive to recompute
  5. Use descriptive labels - Better zero-shot performance
  6. GPU recommended - 10-50× faster
  7. Preprocess images - Use provided preprocess function

Performance

Operation CPU GPU (V100)
Image encoding ~200ms ~20ms
Text encoding ~50ms ~5ms
Similarity compute <1ms <1ms

Limitations

  1. Not for fine-grained tasks - Best for broad categories
  2. Requires descriptive text - Vague labels perform poorly
  3. Biased on web data - May have dataset biases
  4. No bounding boxes - Whole image only
  5. Limited spatial understanding - Position/counting weak

Resources