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Hugging Face

NLP Freemium

Hugging Face is the leading open-source platform for natural language processing and machine learning, hosting 500000+ models, 100000+ datasets, and popular libraries including Transformers, Diffusers, and PEFT. Teams use the Hub to share, discover, and deploy NLP models for text classification, named entity recognition, translation, summarisation, and question answering. The Inference API allows instant deployment of any hosted model via REST. The de facto home of the open-source AI community.

💰 Pricing
Freemium
📂 Category
NLP
🏷️ Tags
transformers, open-source, models, NLP, machine learning
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