V

Vit H 14 CLIPA 336 Laion2b

Developed by UCSC-VLAA
CLIPA-v2 model, trained on the laion2B-en dataset, focusing on zero-shot image classification tasks
Downloads 74
Release Time : 10/17/2023

Model Overview

This is a contrastive image-text model capable of performing zero-shot image classification tasks, particularly suitable for image classification without specific category training data

Model Features

Zero-shot learning capability
Capable of classification without specific category training data
Efficient training
Achieves high performance with a relatively low budget (81.1% accuracy with a $10,000 budget as mentioned in the paper)
Inverse scaling law
Adopts innovative training methods for better performance scaling

Model Capabilities

Zero-shot image classification
Image-text contrastive learning
Multi-category image recognition

Use Cases

Image classification
General object recognition
Identify common object categories in images
Achieves 81.1% zero-shot accuracy on ImageNet
Content moderation
Identify inappropriate content in images
Multimedia retrieval
Image search
Retrieve relevant images through text queries
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