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Search Results

Searching for: multimodal embeddings
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nvidiallama-3_2-nemoretriever-300m-embed-v2

Multilingual, cross-lingual embedding model for long-document QA retrieval, supporting 26 languages.

black-forest-labsFLUX.1-Kontext-dev

FLUX.1 Kontext is a multimodal model that enables in-context image generation and editing.

nvidiallama-3_2-nemoretriever-300m-embed-v1

Multilingual, cross-lingual embedding model for long-document QA retrieval, supporting 26 languages.

metallama-guard-4-12b

Multi-modal model to classify safety for input prompts as well output responses.

nvidiallama-3.2-nemoretriever-1b-vlm-embed-v1

Multimodal question-answer retrieval representing user queries as text and documents as images.

mistralaimistral-small-3.1-24b-instruct-2503

Efficient multimodal model excelling at multilingual tasks, image understanding, and fast-responses

mistralaimistral-medium-3-instruct

Powerful, multimodal language model designed for enterprise applications, including software development, data analysis, and reasoning.

metallama-4-maverick-17b-128e-instruct

A general purpose multimodal, multilingual 128 MoE model with 17B parameters.

metallama-4-scout-17b-16e-instruct

A multimodal, multilingual 16 MoE model with 17B parameters.

nvidianv-embedcode-7b-v1

The NV-EmbedCode model is a 7B Mistral-based embedding model optimized for code retrieval, supporting text, code, and hybrid queries.

googlegemma-3-27b-it

Cutting-edge open multimodal model exceling in high-quality reasoning from images.

microsoftphi-4-multimodal-instruct

Cutting-edge open multimodal model exceling in high-quality reasoning from image and audio inputs.

nvidiallama-3.2-nv-embedqa-1b-v2

Multilingual and cross-lingual text question-answering retrieval with long context support and optimized data storage efficiency.

metaesm2-650m

Generates embeddings of proteins from their amino acid sequences.

microsoftphi-3.5-vision-instruct

Cutting-edge open multimodal model exceling in high-quality reasoning from images.

nvidianv-dinov2

NV-DINOv2 is a visual foundation model that generates vector embeddings for the input image.

nvidianv-embedqa-e5-v5

English text embedding model for question-answering retrieval.

nvidianv-embedqa-mistral-7b-v2

Multilingual text question-answering retrieval, transforming textual information into dense vector representations.

nvidianvclip

NV-CLIP is a multimodal embeddings model for image and text.

nvidianv-embed-v1

Generates high-quality numerical embeddings from text inputs.

baaibge-m3

Embedding model for text retrieval tasks, excelling in dense, multi-vector, and sparse retrieval.

snowflakearctic-embed-l

Optimized community model for text embedding.