Example #1
0
def run_ec2_mxnet_inference(image_uri, model_name, container_tag, ec2_connection, processor, region, target_port, target_management_port):
    repo_name, image_tag = image_uri.split("/")[-1].split(":")
    container_name = f"{repo_name}-{image_tag}-ec2-{container_tag}"
    docker_cmd = "nvidia-docker" if "gpu" in image_uri else "docker"
    mms_inference_cmd = test_utils.get_inference_run_command(image_uri, model_name, processor)
    docker_run_cmd = (
        f"{docker_cmd} run -itd --name {container_name}"
        f" -p {target_port}:8080 -p {target_management_port}:8081"
        f" {image_uri} {mms_inference_cmd}"
    )
    try:
        ec2_connection.run(
            f"$(aws ecr get-login --no-include-email --region {region})", hide=True
        )
        LOGGER.info(docker_run_cmd)
        ec2_connection.run(docker_run_cmd, hide=True)
        if model_name == SQUEEZENET_MODEL:
            inference_result = test_utils.request_mxnet_inference(
                port=target_port, connection=ec2_connection, model="squeezenet"
            )
        elif model_name == BERT_MODEL:
            inference_result = test_utils.request_mxnet_inference_gluonnlp(
                port=target_port, connection=ec2_connection
            )
        elif model_name == RESNET_EIA_MODEL:
            inference_result = test_utils.request_mxnet_inference(
                port=target_port, connection=ec2_connection, model=model_name
            )
        assert (
            inference_result
        ), f"Failed to perform mxnet {model_name} inference test for image: {image_uri} on ec2"

    finally:
        ec2_connection.run(f"docker rm -f {container_name}", warn=True, hide=True)
Example #2
0
def test_ecs_mxnet_inference_gpu(mxnet_inference, ecs_container_instance,
                                 region, gpu_only):
    worker_instance_id, ecs_cluster_arn = ecs_container_instance
    public_ip_address = ec2_utils.get_public_ip(worker_instance_id,
                                                region=region)
    num_gpus = ec2_utils.get_instance_num_gpus(worker_instance_id,
                                               region=region)

    model_name = "squeezenet"
    service_name = task_family = revision = None
    try:
        service_name, task_family, revision = ecs_utils.setup_ecs_inference_service(
            mxnet_inference,
            "mxnet",
            ecs_cluster_arn,
            model_name,
            worker_instance_id,
            num_gpus=num_gpus,
            region=region)
        inference_result = request_mxnet_inference(public_ip_address)
        assert inference_result, f"Failed to perform inference at IP address: {public_ip_address}"

    finally:
        ecs_utils.tear_down_ecs_inference_service(ecs_cluster_arn,
                                                  service_name, task_family,
                                                  revision)
Example #3
0
def test_ecs_mxnet_inference_eia(mxnet_inference_eia, ecs_container_instance,
                                 ei_accelerator_type, region, eia_only):
    worker_instance_id, ecs_cluster_arn = ecs_container_instance
    public_ip_address = ec2_utils.get_public_ip(worker_instance_id,
                                                region=region)

    model_name = "resnet-152-eia"
    service_name = task_family = revision = None
    try:
        service_name, task_family, revision = ecs_utils.setup_ecs_inference_service(
            mxnet_inference_eia,
            "mxnet",
            ecs_cluster_arn,
            model_name,
            worker_instance_id,
            ei_accelerator_type,
            region=region,
        )
        inference_result = request_mxnet_inference(public_ip_address,
                                                   model="resnet-152-eia")
        assert inference_result, f"Failed to perform inference at IP address: {public_ip_address}"

    finally:
        ecs_utils.tear_down_ecs_inference_service(ecs_cluster_arn,
                                                  service_name, task_family,
                                                  revision)
Example #4
0
def test_eks_mxnet_neuron_inference(mxnet_inference, neuron_only):
    if "eia" in mxnet_inference or "neuron" not in mxnet_inference:
        pytest.skip("Skipping EKS Neuron Test for EIA and Non Neuron Images")
    num_replicas = "1"

    rand_int = random.randint(4001, 6000)

    processor = "neuron"

    model = "mxnet-resnet50=https://aws-dlc-sample-models.s3.amazonaws.com/mxnet/Resnet50-neuron.mar"
    yaml_path = os.path.join(os.sep, "tmp", f"mxnet_single_node_{processor}_inference_{rand_int}.yaml")
    inference_service_name = selector_name = f"resnet50-{processor}-{rand_int}"

    search_replace_dict = {
        "<MODELS>": model,
        "<NUM_REPLICAS>": num_replicas,
        "<SELECTOR_NAME>": selector_name,
        "<INFERENCE_SERVICE_NAME>": inference_service_name,
        "<DOCKER_IMAGE_BUILD_ID>": mxnet_inference
    }

    search_replace_dict["<NUM_INF1S>"] = "1"

    device_plugin_path = eks_utils.get_device_plugin_path("mxnet", processor)

    eks_utils.write_eks_yaml_file_from_template(
        eks_utils.get_single_node_inference_template_path("mxnet", processor), yaml_path, search_replace_dict
    )

    try:
        # TODO - once eksctl gets the latest neuron device plugin this can be removed
        run("kubectl delete -f {}".format(device_plugin_path))
        sleep(60)
        run("kubectl apply -f {}".format(device_plugin_path))
        sleep(10)
        run("kubectl apply -f {}".format(yaml_path))

        port_to_forward = random.randint(49152, 65535)

        if eks_utils.is_service_running(selector_name):
            eks_utils.eks_forward_port_between_host_and_container(selector_name, port_to_forward, "8080")

        assert test_utils.request_mxnet_inference(port=port_to_forward, model="mxnet-resnet50")
    except ValueError as excp:
        eks_utils.LOGGER.error("Service is not running: %s", excp)
    finally:
        run("kubectl cluster-info dump")
        run(f"kubectl delete deployment {selector_name}")
        run(f"kubectl delete service {selector_name}")
Example #5
0
def test_eks_mxnet_squeezenet_inference(mxnet_inference):
    if "eia" in mxnet_inference or "neuron" in mxnet_inference:
        pytest.skip("Skipping EKS Test for EIA and neuron images")
    num_replicas = "1"

    rand_int = random.randint(4001, 6000)

    processor = "gpu" if "gpu" in mxnet_inference else "cpu"

    model = "squeezenet=https://s3.amazonaws.com/model-server/models/squeezenet_v1.1/squeezenet_v1.1.model"
    yaml_path = os.path.join(
        os.sep, "tmp",
        f"mxnet_single_node_{processor}_inference_{rand_int}.yaml")
    inference_service_name = selector_name = f"squeezenet-service-{rand_int}"

    search_replace_dict = {
        "<MODELS>": model,
        "<NUM_REPLICAS>": num_replicas,
        "<SELECTOR_NAME>": selector_name,
        "<INFERENCE_SERVICE_NAME>": inference_service_name,
        "<DOCKER_IMAGE_BUILD_ID>": mxnet_inference
    }

    if processor == "gpu":
        search_replace_dict["<NUM_GPUS>"] = "1"

    eks_utils.write_eks_yaml_file_from_template(
        eks_utils.get_single_node_inference_template_path("mxnet", processor),
        yaml_path, search_replace_dict)

    try:
        run("kubectl apply -f {}".format(yaml_path))

        port_to_forward = random.randint(49152, 65535)

        if eks_utils.is_service_running(selector_name):
            eks_utils.eks_forward_port_between_host_and_container(
                selector_name, port_to_forward, "8080")

        assert test_utils.request_mxnet_inference(port=port_to_forward)
    except ValueError as excp:
        eks_utils.LOGGER.error("Service is not running: %s", excp)
    finally:
        run(f"kubectl delete deployment {selector_name}")
        run(f"kubectl delete service {selector_name}")
def test_eks_mxnet_neuron_inference(mxnet_inference, neuron_only):
    if "eia" in mxnet_inference or "neuron" not in mxnet_inference:
        pytest.skip("Skipping EKS Neuron Test for EIA and Non Neuron Images")
    num_replicas = "1"

    rand_int = random.randint(4001, 6000)

    processor = "neuron"

    server_cmd = "/usr/local/bin/entrypoint.sh -m mxnet-resnet50=https://aws-dlc-sample-models.s3.amazonaws.com/mxnet/Resnet50-neuron.mar -t /home/model-server/config.properties"
    yaml_path = os.path.join(
        os.sep, "tmp",
        f"mxnet_single_node_{processor}_inference_{rand_int}.yaml")
    inference_service_name = selector_name = f"resnet50-{processor}-{rand_int}"

    search_replace_dict = {
        "<NUM_REPLICAS>": num_replicas,
        "<SELECTOR_NAME>": selector_name,
        "<INFERENCE_SERVICE_NAME>": inference_service_name,
        "<DOCKER_IMAGE_BUILD_ID>": mxnet_inference,
        "<SERVER_CMD>": server_cmd,
    }

    search_replace_dict["<NUM_INF1S>"] = "1"

    eks_utils.write_eks_yaml_file_from_template(
        eks_utils.get_single_node_inference_template_path("mxnet", processor),
        yaml_path, search_replace_dict)

    try:
        run("kubectl apply -f {}".format(yaml_path))

        port_to_forward = random.randint(49152, 65535)

        if eks_utils.is_service_running(selector_name):
            eks_utils.eks_forward_port_between_host_and_container(
                selector_name, port_to_forward, "8080")

        assert test_utils.request_mxnet_inference(port=port_to_forward,
                                                  model="mxnet-resnet50")
    finally:
        run(f"kubectl delete deployment {selector_name}")
        run(f"kubectl delete service {selector_name}")
Example #7
0
def __test_eks_mxnet_squeezenet_inference(mxnet_inference):
    num_replicas = "1"

    rand_int = random.randint(4001, 6000)

    processor = "gpu" if "gpu" in mxnet_inference else "cpu"
    test_type = test_utils.get_eks_k8s_test_type_label(mxnet_inference)

    model = "squeezenet=https://s3.amazonaws.com/model-server/models/squeezenet_v1.1/squeezenet_v1.1.model"
    yaml_path = os.path.join(
        os.sep, "tmp",
        f"mxnet_single_node_{processor}_inference_{rand_int}.yaml")
    inference_service_name = selector_name = f"squeezenet-service-{rand_int}"

    search_replace_dict = {
        "<MODELS>": model,
        "<NUM_REPLICAS>": num_replicas,
        "<SELECTOR_NAME>": selector_name,
        "<INFERENCE_SERVICE_NAME>": inference_service_name,
        "<DOCKER_IMAGE_BUILD_ID>": mxnet_inference,
        "<TEST_TYPE>": test_type,
    }

    if processor == "gpu":
        search_replace_dict["<NUM_GPUS>"] = "1"

    eks_utils.write_eks_yaml_file_from_template(
        eks_utils.get_single_node_inference_template_path("mxnet", processor),
        yaml_path, search_replace_dict)

    try:
        run("kubectl apply -f {}".format(yaml_path))

        port_to_forward = random.randint(49152, 65535)

        if eks_utils.is_service_running(selector_name):
            eks_utils.eks_forward_port_between_host_and_container(
                selector_name, port_to_forward, "8080")

        assert test_utils.request_mxnet_inference(port=port_to_forward)
    finally:
        run(f"kubectl delete deployment {selector_name}")
        run(f"kubectl delete service {selector_name}")