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    Models/Zero Shot Classification/cross-encoder/nli-deberta-v3-small
    Zero Shot Classificationsentence-transformersapache-2.0

    nli-deberta-v3-small

    by cross-encoder

    388Kdl/month
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    Identifier
    Model ID
    cross-encoder/nli-deberta-v3-small

    Tags

    sentence-transformerspytorchonnxsafetensorsdeberta-v2text-classificationtransformerszero-shot-classificationendataset:nyu-mll/multi_nlidataset:stanfordnlp/snlibase_model:microsoft/deberta-v3-smallbase_model:quantized:microsoft/deberta-v3-smalllicense:apache-2.0deploy:azureregion:us

    Use nli-deberta-v3-small on Mixpeek

    Build multimodal processing pipelines with this model and others. Extract features, run inference, and set up retrieval in Mixpeek Studio.

    Open Studio

    How It Runs on Mixpeek

    On Mixpeek, nli-deberta-v3-small runs as a managed extractor inside a processing pipeline. Point a bucket of zero shot classification data at it, and Mixpeek handles GPU provisioning, batching, retries, and writing the outputs into a vector store you can query.

    Extractor outputs land in the Mixpeek Vector Store (MVS), where you can combine them with retrieval, reranking, and filter stages to build end-to-end search and agent-perception pipelines, no model-serving infrastructure to maintain.