Mixture-of-Embedding-Experts
Video text retrieval model
An open-source implementation of the Mixture-of-Embeddings-Experts model in Pytorch for video-text retrieval tasks.
Mixture-of-Embeddings-Experts
118 stars
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15 forks
Language: Python
last commit: over 4 years ago
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