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unofficial-ascend-tools

Project description

Ascend NPU accelerate Embedding model

Please ensure that you haved installed CANN and torch_npu.

Example:

  1. source the environment
source /usr/local/Ascend/ascend-toolkit/env.sh
  1. install torch and torch_npu

  2. now use like bellow

from unofficial_ascend_tools.embeddings import AscendEmbeddings
model = AscendEmbeddings(model_path=<path_to_model>,
    device_id=0,
    query_instruction="Represend this sentence for searching relevant passages: "
)

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