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I have deployed a Tensorflow-Model in SageMaker Studio following this tutorial: https://aws.amazon.com/de/blogs/machine-learning/deploy-trained-keras-or-tensorflow-models-using-amazon-sagemaker/ The Model needs a Multidimensional Array as input. Invoking it from the Notebook itself is working:

import numpy as np
import json
data = np.load("testValues.npy")
pred=predictor.predict(data)

But I wasnt able to invoke it from a boto 3 client using this code:

import json
import boto3
import numpy as np
import io
 
client = boto3.client('runtime.sagemaker')
datain = np.load("testValues.npy")
data=datain.tolist();
response = client.invoke_endpoint(EndpointName=endpoint_name, Body=json.dumps(data))
response_body = response['Body']
print(response_body.read())

This throws the Error:

An error occurred (ModelError) when calling the InvokeEndpoint operation: Received client error (415) from model with message "{"error": "Unsupported Media Type: Unknown"}".

I guess the reason is the json Media Type but i have no clue how to get it back in shape. I tried this:https://github.com/aws/amazon-sagemaker-examples/issues/644 but it doesnt seem to change anything

1 Answer 1

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This fixed it for me: The Content Type was missing.

import json
import boto3
import numpy as np
import io

client = boto3.client('runtime.sagemaker',aws_access_key_id=..., aws_secret_access_key=...,region_name=...)
endpoint_name = '...'

data = np.load("testValues.npy")


payload = json.dumps(data.tolist())
response = client.invoke_endpoint(EndpointName=endpoint_name,
                                  ContentType='application/json',
                                   Body=payload)
result = json.loads(response['Body'].read().decode())
res = result['predictions']
print("test")

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