9

Once I have a TF server serving multiple models, is there a way to query such server to know which models are served?

Would it be possible then to have information about each of such models, like name, interface and, even more important, what versions of a model are present on the server and could potentially be served?

9

It is really hard to find some info about this, but there is possibility to get some model metadata.

request = get_model_metadata_pb2.GetModelMetadataRequest()
request.model_spec.name = 'your_model_name'
request.metadata_field.append("signature_def")
response = stub.GetModelMetadata(request, 10)
    
print(response.model_spec.version.value)
print(response.metadata['signature_def'])

Hope it helps.

Update

Is is possible get these information from REST API. Just get

http://{serving_url}:8501/v1/models/{your_model_name}/metadata

Result is json, where you can easily find model specification and signature definition.

3
  • 2
    Any idea on how to decode the bytes contained in response.metadata['signature_def'] here?
    – sdcbr
    Nov 20 '18 at 13:07
  • This answer is also useful for cases where a developer see the following error: GetModelMetadataRequest must specify at least one metadata_field Jul 30 '20 at 19:22
  • Is it possible to get a list of all models that are served in Tensorflow serving?
    – coding
    Jan 18 at 10:53
1

It is possible to get model status as well as model metadata. In the other answer only metadata is requested and the response, response.metadata['signature_def'] still needs to be decoded.

I found the solution is to use the built-in protobuf method MessageToJson() to convert to json string. This can then be converted to a python dictionary with json.loads()

import grpc
import json
from tensorflow_serving.apis import predict_pb2
from tensorflow_serving.apis import prediction_service_pb2_grpc
from tensorflow_serving.apis import model_service_pb2_grpc
from tensorflow_serving.apis import get_model_status_pb2
from tensorflow_serving.apis import get_model_metadata_pb2
from google.protobuf.json_format import MessageToJson

PORT = 8500
model = "your_model_name"

channel = grpc.insecure_channel('localhost:{}'.format(PORT))

request = get_model_status_pb2.GetModelStatusRequest()
request.model_spec.name = model
result = stub.GetModelStatus(request, 5)  # 5 secs timeout
print("Model status:")
print(result)

stub = prediction_service_pb2_grpc.PredictionServiceStub(channel)
request = get_model_metadata_pb2.GetModelMetadataRequest()
request.model_spec.name = model
request.metadata_field.append("signature_def")
result = stub.GetModelMetadata(request, 5)  # 5 secs timeout
result = json.loads(MessageToJson(result))
print("Model metadata:")
print(result)
0

To continue the decoding process, either follow Tyler's approach and convert the message to JSON, or more natively Unpack into a SignatureDefMap and take it from there

signature_def_map = get_model_metadata_pb2.SignatureDefMap()
response.metadata['signature_def'].Unpack(signature_def_map)
print(signature_def_map.signature_def.keys())
0

To request data using REST API, for additional data of the particular model that is served, you can issue (via curl, Postman, etc.):

GET http://host:port/v1/models/${MODEL_NAME}
GET http://host:port/v1/models/${MODEL_NAME}/metadata

For more information, please check https://www.tensorflow.org/tfx/serving/api_rest

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.