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Model Serving

MMOCR provides some utilities that facilitate the model serving process. Here is a quick walkthrough of necessary steps that let the models to serve through an API.

Install TorchServe

You can follow the steps on the official website to install TorchServe and torch-model-archiver.

Convert model from MMOCR to TorchServe

We provide a handy tool to convert any .pth model into .mar model for TorchServe.

python tools/deployment/mmocr2torchserve.py ${CONFIG_FILE} ${CHECKPOINT_FILE} \
--output-folder ${MODEL_STORE} \
--model-name ${MODEL_NAME}

:::{note} ${MODEL_STORE} needs to be an absolute path to a folder. :::

For example:

python tools/deployment/mmocr2torchserve.py \
  configs/textdet/dbnet/dbnet_r18_fpnc_1200e_icdar2015.py \
  checkpoints/dbnet_r18_fpnc_1200e_icdar2015.pth \
  --output-folder ./checkpoints \
  --model-name dbnet

Start Serving

From your Local Machine

Getting your models prepared, the next step is to start the service with a one-line command:

# To load all the models in ./checkpoints
torchserve --start --model-store ./checkpoints --models all
# Or, if you only want one model to serve, say dbnet
torchserve --start --model-store ./checkpoints --models dbnet=dbnet.mar

Then you can access inference, management and metrics services through TorchServe's REST API. You can find their usages in TorchServe REST API.

Service Address
Inference http://127.0.0.1:8080
Management http://127.0.0.1:8081
Metrics http://127.0.0.1:8082

:::{note} By default, TorchServe binds port number 8080, 8081 and 8082 to its services. You can change such behavior by modifying and saving the contents below to config.properties, and running TorchServe with option --ts-config config.preperties.

inference_address=http://0.0.0.0:8080
management_address=http://0.0.0.0:8081
metrics_address=http://0.0.0.0:8082
number_of_netty_threads=32
job_queue_size=1000
model_store=/home/model-server/model-store

:::

From Docker

A better alternative to serve your models is through Docker. We provide a Dockerfile that frees you from those tedious and error-prone environmental setup steps.

Build mmocr-serve Docker image

docker build -t mmocr-serve:latest docker/serve/

Run mmocr-serve with Docker

In order to run Docker in GPU, you need to install nvidia-docker; or you can omit the --gpus argument for a CPU-only session.

The command below will run mmocr-serve with a gpu, bind the ports of 8080 (inference), 8081 (management) and 8082 (metrics) from container to 127.0.0.1, and mount the checkpoint folder ./checkpoints from the host machine to /home/model-server/model-store of the container. For more information, please check the official docs for running TorchServe with docker.

docker run --rm \
--cpus 8 \
--gpus device=0 \
-p8080:8080 -p8081:8081 -p8082:8082 \
--mount type=bind,source=`realpath ./checkpoints`,target=/home/model-server/model-store \
mmocr-serve:latest

:::{note} realpath ./checkpoints points to the absolute path of "./checkpoints", and you can replace it with the absolute path where you store torchserve models. :::

Upon running the docker, you can access inference, management and metrics services through TorchServe's REST API. You can find their usages in TorchServe REST API.

Service Address
Inference http://127.0.0.1:8080
Management http://127.0.0.1:8081
Metrics http://127.0.0.1:8082

4. Test deployment

Inference API allows user to post an image to a model and returns the prediction result.

curl http://127.0.0.1:8080/predictions/${MODEL_NAME} -T demo/demo_text_det.jpg

For example,

curl http://127.0.0.1:8080/predictions/dbnet -T demo/demo_text_det.jpg

For detection models, you should obtain a json with an object named boundary_result. Each array inside has float numbers representing x, y coordinates of boundary vertices in clockwise order, and the last float number as the confidence score.

{
  "boundary_result": [
    [
      221.18990004062653,
      226.875,
      221.18990004062653,
      212.625,
      244.05868631601334,
      212.625,
      244.05868631601334,
      226.875,
      0.80883354575186
    ]
  ]
}

For recognition models, the response should look like:

{
  "text": "sier",
  "score": 0.5247521847486496
}

And you can use test_torchserve.py to compare result of TorchServe and PyTorch by visualizing them.

python tools/deployment/test_torchserve.py ${IMAGE_FILE} ${CONFIG_FILE} ${CHECKPOINT_FILE} ${MODEL_NAME}
[--inference-addr ${INFERENCE_ADDR}] [--device ${DEVICE}]

Example:

python tools/deployment/test_torchserve.py \
  demo/demo_text_det.jpg \
  configs/textdet/dbnet/dbnet_r18_fpnc_1200e_icdar2015.py \
  checkpoints/dbnet_r18_fpnc_1200e_icdar2015.pth \
  dbnet