SimCSE (Simple Contrastive Learning of Sentence Embeddings) is a machine learning framework for training sentence embeddings using contrastive learning. It improves representation learning for NLP tasks.
Features
- Uses contrastive learning for sentence embeddings
- Pretrained on large-scale datasets for better performance
- Supports both supervised and unsupervised training
- Compatible with Hugging Face Transformers
- Outperforms traditional sentence embedding models
- Useful for semantic similarity, retrieval, and clustering
Categories
Natural Language Processing (NLP)License
MIT LicenseFollow SimCSE
You Might Also Like
Gen AI apps are built with MongoDB Atlas
MongoDB Atlas is the developer-friendly database used to build, scale, and run gen AI and LLM-powered apps—without needing a separate vector database. Atlas offers built-in vector search, global availability across 115+ regions, and flexible document modeling. Start building AI apps faster, all in one place.
Rate This Project
Login To Rate This Project
User Reviews
Be the first to post a review of SimCSE!