Valid DP-100 Dumps shared by ExamDiscuss.com for Helping Passing DP-100 Exam! ExamDiscuss.com now offer the newest DP-100 exam dumps, the ExamDiscuss.com DP-100 exam questions have been updated and answers have been corrected get the newest ExamDiscuss.com DP-100 dumps with Test Engine here:
You train a model and register it in your Azure Machine Learning workspace. You are ready to deploy the model as a real-time web service. You deploy the model to an Azure Kubernetes Service (AKS) inference cluster, but the deployment fails because an error occurs when the service runs the entry script that is associated with the model deployment. You need to debug the error by iteratively modifying the code and reloading the service, without requiring a re-deployment of the service for each code update. What should you do?
Correct Answer: C
Explanation How to work around or solve common Docker deployment errors with Azure Container Instances (ACI) and Azure Kubernetes Service (AKS) using Azure Machine Learning. The recommended and the most up to date approach for model deployment is via the Model.deploy() API using an Environment object as an input parameter. In this case our service will create a base docker image for you during deployment stage and mount the required models all in one call. The basic deployment tasks are: 1. Register the model in the workspace model registry. 2. Define Inference Configuration: a. Create an Environment object based on the dependencies you specify in the environment yaml file or use one of our procured environments. b. Create an inference configuration (InferenceConfig object) based on the environment and the scoring script. 3. Deploy the model to Azure Container Instance (ACI) service or to Azure Kubernetes Service (AKS).
Recent Comments (The most recent comments are at the top.)
Recent Comments (The most recent comments are at the top.)
Create a local web service deployment configuration and deploy the model to a local Docker container
https://learn.microsoft.com/en-us/azure/machine-learning/how-to-troubleshoot-online-endpoints?view=azureml-api-2&tabs=cli#deploy-locally