MOSS_Vortex
NLP deployment backend
A high-performance deployment and inference backend for natural language processing
Moss Vortex is a lightweight and high-performance deployment and inference backend engineered specifically for MOSS 003, providing a wealth of features aimed at enhancing performance and functionality, built upon the foundations of MOSEC and Torch.
37 stars
4 watching
9 forks
Language: Python
last commit: almost 2 years ago chatgptdeploymentinferencenatural-language-processing
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