Serving multiple tensorflow models using docker
There is no docker environment variable named “MODEL_CONFIG_FILE” (that’s a tensorflow/serving variable, see docker image link), so the docker image will only use the default docker environment variables ("MODEL_NAME=model" and "MODEL_BASE_PATH=/models"), and run the model “/models/model” at startup of the docker image. "config.conf" should be used as input at "tensorflow/serving" startup. Try to run something like this instead:
docker run -p 8500:8500 8501:8501 \
--mount type=bind,source=/path/to/models/first/,target=/models/first \
--mount type=bind,source=/path/to/models/second/,target=/models/second \
--mount type=bind,source=/path/to/config/config.conf,target=/config/config.conf\
-t tensorflow/serving --model_config_file=/config/config.conf
I ran into this double slash issue for git bash on windows.
As such I am passing the argument, mentioned by @KrisR89, in via command
in the docker-compose
.
The new docker-compose
looks like this and works with the supplied dockerfile
:
version: '3'
services:
serving:
build: .
image: testing-models
container_name: tf
command: --model_config_file=/config/config.conf
The error is cause serving couldn't find your model.
E tensorflow_serving/sources/storage_path/file_system_storage_path_source.cc:369] FileSystemStoragePathSource encountered a file-system access error: Could not find base path /models/model for servable model
Your docker compose file didn't mount your model files in the container. So the Serving couldn't find your models. I suggest to set three configure files.
1 docker-compose.yml
2 .env
3 models.config
docker-compose.yml
:
Mount your model files from host to the container. I think you could do this :
version: "3"
services:
sv:
image: tensorflow/serving:latest
restart: unless-stopped
ports:
- 8500:8500
- 8501:8501
volumes:
- ${MODEL1_PATH}:/models/${MODEL1_NAME}
- ${MODEL2_PATH}:/models/${MODEL2_NAME}
- /home/deploy/dcp-file/tf_serving/models.config:/models/models.config
command: --model_config_file=/models/models.config
.env
: docker-compose.yml
loads info from this file.
MODEL1_PATH=/home/notebooks/water_model
MODEL1_NAME=water_model
MODEL2_PATH=/home/notebooks/ice_model
MODEL2_NAME=ice_model
models.config
:
model_config_list: {
config {
name: "water_model",
base_path: "/models/water_model",
model_platform: "tensorflow",
model_version_policy: {
versions: 1588723537
versions: 1588734567
}
},
config {
name: "ice_model",
base_path: "/models/ice_model",
model_platform: "tensorflow",
model_version_policy: {
versions: 1588799999
versions: 1588788888
}
}
}
And you can see this serving official document