Multilingual and cross-lingual text question-answering retrieval with long context support and optimized data storage efficiency.
World-class multilingual and cross-lingual question-answering retrieval.
NV-DINOv2 is a visual foundation model that generates vector embeddings for the input image.
English text embedding model for question-answering retrieval.
Multilingual text question-answering retrieval, transforming textual information into dense vector representations.
Generates high-quality numerical embeddings from text inputs.
Embedding model for text retrieval tasks, excelling in dense, multi-vector, and sparse retrieval.
Optimized community model for text embedding.
GPU-accelerated generation of text embeddings used for question-answering retrieval.