
Multilingual text question-answering retrieval, transforming textual information into dense vector representations.
Follow the steps below to download and run the NVIDIA NIM inference microservice for this model on your infrastructure of choice.
$ docker login nvcr.io
Username: $oauthtoken
Password: <PASTE_API_KEY_HERE>
Pull and run the NVIDIA NIM with the command below. This will download the optimized model for your infrastructure.
export NGC_API_KEY=<PASTE_API_KEY_HERE>
export LOCAL_NIM_CACHE=~/.cache/nim
mkdir -p "$LOCAL_NIM_CACHE"
docker run -it --rm \
--gpus all \
--shm-size=16GB \
-e NGC_API_KEY \
-v "$LOCAL_NIM_CACHE:/opt/nim/.cache" \
-u $(id -u) \
-p 8000:8000 \
nvcr.io/nim/nvidia/nv-embedqa-mistral-7b-v2:latest
You can now make a local API call using this curl command:
curl -X "POST" \
"http://localhost:8000/v1/embeddings" \
-H 'accept: application/json' \
-H 'Content-Type: application/json' \
-d '{
"input": ["Hello world"],
"model": "nvidia/nv-embedqa-mistral-7b-v2",
"input_type": "query"
}'
For more details on getting started with this NIM, visit the NVIDIA NIM Docs.