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gRPC in Google Cloud Run

Estimated Reading Time: 20 minutes

Google Cloud Run makes it easy to deploy and run REST servers, but it also supports gRPC servers out of the box. This article will show you how to deploy a gRPC service written in Python to Cloud Run. For the full code, check out the Github repo.

We'll be writing a simple remote calculator service. For the moment, it will just support adding and subtracting floating point numbers, but once this is up and running, you could easily extend it to add other features.

The Protocol Buffer Definition

Take a look in calculator.proto to see the full protocol buffer definition. If you're not familiar with protocol buffers, take a moment to get acquainted.

enum Operation {
  ADD = 0;
  SUBTRACT = 1;
}

message BinaryOperation {
  float first_operand = 1;
  float second_operand = 2;
  Operation operation = 3;
};

message CalculationResult {
  float result = 1;
};

service Calculator {
  rpc Calculate (BinaryOperation) returns (CalculationResult);
};

Our service will be a simple unary RPC. We'll take two floats and one of two operations. Then, we'll return the result of that operation.

The Server

Let's start with the server. Take a look at server.py for the full code. Google Cloud Run will set up an environment variable called PORT on which your server should listen. The first thing we do is pull that from the environment:

_PORT = os.environ["PORT"]

Next, we set up a server bound to that port, listening on all interfaces.

def _serve(port: Text):
    bind_address = f"[::]:{port}"
    server = grpc.server(futures.ThreadPoolExecutor())
    calculator_pb2_grpc.add_CalculatorServicer_to_server(Calculator(), server)
    server.add_insecure_port(bind_address)
    server.start()
    logging.info("Listening on %s.", bind_address)
    server.wait_for_termination()

Notice that we use the add_insecure_port method here. Google Cloud Run's proxy provides us with a TLS-encrypted proxy that handles the messy business of setting up certs for us. The traffic from the proxy to the container with our gRPC server in it goes through an encrypted tunnel, so we don't need to worry about handling it ourselves. Cloud Run natively handles HTTP/2, so gRPC's transport is well-supported.

Connecting

Now let's test the server out locally. First, we install dependencies.

virtualenv venv -p python3
source venv/bin/activate
pip install -r requirements.txt

Now we generate Python code from our calculator.proto file. This is how we get the definitions for our calculator_pb2 and calculator_pb2_grpc modules. It's considered poor form to check these into source code, so they're included in our .gitignore file.

python -m grpc_tools.protoc \
    -I. \
    --python_out=. \
    --grpc_python_out=. \
    calculator.proto

Finally, we start the server:

export PORT=50051
python server.py

Now the server should be listening on port 50051. We'll use the tool grpcurl to manually interact with it. On Linux and Mac you can install it with curl -s https://grpc.io/get_grpcurl | bash.

grpcurl \
    -d '{"first_operand": 2.0, "second_operand": 3.0, "operation": "ADD"}' \
    --plaintext \
    -proto calculator.proto \
    localhost:50051 \
    Calculator.Calculate

We tell grpcurl where to find the protocol buffer definitions and server. Then, we supply the request. grpcurl gives us a nice mapping from JSON to protobuf. We can even supply the operation enumeration as a string. Finally, we invoke the Calculate method on the Calculator service. If all goes well, you should see:

{
  "result": 5
}

Great! We've got a working calculator server. Next, let's put it inside a Docker container.

Containerizing the Server

We're going to use the official Dockerhub Python 3.8 image as our base image.

FROM python:3.8

We'll put all of our code in /srv/grpc/.

WORKDIR /srv/grpc

COPY server.py *.proto requirements.txt .

We install our Python package dependencies into the container.

RUN pip install -r requirements.txt && \
    python -m grpc_tools.protoc \
        -I. \
        --python_out=. \
        --grpc_python_out=. \
        calculator.proto

Finally, we set our container up to run the server by default.

CMD ["python", "server.py"]

Now we can build our image. In order to deploy to Cloud Run, we'll be pushing to the gcr.io container registry, so we'll tag it accordingly.

export GCP_PROJECT=<Your GCP Project Name>
docker build -t gcr.io/$GCP_PROJECT/grpc-calculator:latest

The tag above will change based on your GCP project name. We're calling the service grpc-calculator and using the latest tag.

Now, before we deploy to Cloud Run, let's make sure that we've containerized our application properly. We'll test it by spinning up a local container.

docker run -d -p 50051:50051 -e PORT=50051 gcr.io/$GCP_PROJECT/grpc-calculator:latest

If all goes well, grpcurl will give us the same result as before:

grpcurl \
    -d '{"first_operand": 2.0, "second_operand": 3.0, "operation": "ADD"}' \
    --plaintext \
    -proto calculator.proto \
    localhost:50051 \
    Calculator.Calculate

Deploying to Cloud Run

Cloud Run needs to pull our application from a container registry, so the first step is to push the image we just built.

Make sure that you can use gcloud and are able to push to gcr.io.

gcloud auth login
gcloud auth configure-docker

Now we can push our image.

docker push gcr.io/$GCP_PROJECT/grpc-calculator:latest

Finally, we deploy our application to Cloud Run:

gcloud run deploy --image gcr.io/$GCP_PROJECT/grpc-calculator:latest --platform managed

You may be prompted for auth. If so, choose the unauthenticated option.

This command will give you a message like

Service [grpc-calculator] revision [grpc-calculator-00001-baw] has been deployed and is serving 100 percent of traffic at https://grpc-calculator-xyspwhk3xq-uc.a.run.app

We can programmatically determine the gRPC service's endpoint:

ENDPOINT=$(\
  gcloud run services list \
  --project=${GCP_PROJECT} \
  --region=${GCP_REGION} \
  --platform=managed \
  --format="value(status.address.url)" \
  --filter="metadata.name=grpc-calculator") 
ENDPOINT=${ENDPOINT#https://} && echo ${ENDPOINT}

Notice that this endpoint is secured with TLS even though the server we wrote uses a plaintext connection. Cloud Run provides a proxy that provides TLS for us.

We'll account for this in our grpcurl invocation by omitting the -plaintext flag:

grpcurl \
    -proto protos/calculator.proto \
    -d '{"first_operand": 2.0, "second_operand": 3.0, "operation": "ADD"}' \
    ${ENDPOINT}:443 \
    Calculator.Calculate

And now you've got an auto-scaling calculator gRPC service!