Retrain and deploy a classic Studio (classic) web service
APPLIES TO: Machine Learning Studio (classic) Does not apply to.
Important
Support for Machine Learning Studio (classic) will end on 31 August 2024. We recommend you transition to Azure Machine Learning by that date.
Beginning 1 December 2021, you will not be able to create new Machine Learning Studio (classic) resources. Through 31 August 2024, you can continue to use the existing Machine Learning Studio (classic) resources.
- See information on moving machine learning projects from ML Studio (classic) to Azure Machine Learning.
- Learn more about Azure Machine Learning
ML Studio (classic) documentation is being retired and may not be updated in the future.
Retraining machine learning models is one way to ensure they stay accurate and based on the most relevant data available. This article will show you how to retrain a classic Studio (classic) web service. For a guide on how to retrain a new Studio (classic) web service, view this how-to article.
Prerequisites
This article assumes you already have both a retraining experiment and a predictive experiment. These steps are explained in Retrain and deploy a machine learning model. However, instead of deploying your machine learning model as a new web service, you will deploy your predictive experiment as a classic web service.
Add a new endpoint
The predictive web service that you deployed contains a default scoring endpoint that is kept in sync with the original training and scoring experiments trained model. To update your web service to with a new trained model, you must create a new scoring endpoint.
There are two ways in which you can add a new end point to a web service:
- Programmatically
- Using the Azure Web Services portal
Note
Be sure you are adding the endpoint to the Predictive Web Service, not the Training Web Service. If you have correctly deployed both a Training and a Predictive Web Service, you should see two separate web services listed. The Predictive Web Service should end with "[predictive exp.]".
Programmatically add an endpoint
You can add scoring endpoints using the sample code provided in this GitHub repository.
Use the Azure Web Services portal to add an endpoint
- In Machine Learning Studio (classic), on the left navigation column, click Web Services.
- At the bottom of the web service dashboard, click Manage endpoints preview.
- Click Add.
- Type a name and description for the new endpoint. Select the logging level and whether sample data is enabled. For more information on logging, see Enable logging for Machine Learning web services.
Update the added endpoint's trained model
Retrieve PATCH URL
Follow these steps to get the correct PATCH URL using the web portal:
- Sign in to the Azure Machine Learning Web Services portal.
- Click Web Services or Classic Web Services at the top.
- Click the scoring web service you're working with (if you didn't modify the default name of the web service, it will end in "[Scoring Exp.]").
- Click +NEW.
- After the endpoint is added, click the endpoint name.
- Under the Patch URL, click API Help to open the patching help page.
Note
If you added the endpoint to the Training Web Service instead of the Predictive Web Service, you will receive the following error when you click the Update Resource link: "Sorry, but this feature is not supported or available in this context. This Web Service has no updatable resources. We apologize for the inconvenience and are working on improving this workflow."
The PATCH help page contains the PATCH URL you must use and provides sample code you can use to call it.
Update the endpoint
You can now use the trained model to update the scoring endpoint that you created previously.
The following sample code shows you how to use the BaseLocation, RelativeLocation, SasBlobToken, and PATCH URL to update the endpoint.
private async Task OverwriteModel()
{
var resourceLocations = new
{
Resources = new[]
{
new
{
Name = "Census Model [trained model]",
Location = new AzureBlobDataReference()
{
BaseLocation = "https://esintussouthsus.blob.core.windows.net/",
RelativeLocation = "your endpoint relative location", //from the output, for example: "experimentoutput/8946abfd-79d6-4438-89a9-3e5d109183/8946abfd-79d6-4438-89a9-3e5d109183.ilearner"
SasBlobToken = "your endpoint SAS blob token" //from the output, for example: "?sv=2013-08-15&sr=c&sig=37lTTfngRwxCcf94%3D&st=2015-01-30T22%3A53%3A06Z&se=2015-01-31T22%3A58%3A06Z&sp=rl"
}
}
}
};
using (var client = new HttpClient())
{
client.DefaultRequestHeaders.Authorization = new AuthenticationHeaderValue("Bearer", apiKey);
using (var request = new HttpRequestMessage(new HttpMethod("PATCH"), endpointUrl))
{
request.Content = new StringContent(JsonConvert.SerializeObject(resourceLocations), System.Text.Encoding.UTF8, "application/json");
HttpResponseMessage response = await client.SendAsync(request);
if (!response.IsSuccessStatusCode)
{
await WriteFailedResponse(response);
}
// Do what you want with a successful response here.
}
}
}
The apiKey and the endpointUrl for the call can be obtained from endpoint dashboard.
The value of the Name parameter in Resources should match the Resource Name of the saved Trained Model in the predictive experiment. To get the Resource Name:
- Sign in to the Azure portal.
- In the left menu, click Machine Learning.
- Under Name, click your workspace and then click Web Services.
- Under Name, click Census Model [predictive exp.].
- Click the new endpoint you added.
- On the endpoint dashboard, click Update Resource.
- On the Update Resource API Documentation page for the web service, you can find the Resource Name under Updatable Resources.
If your SAS token expires before you finish updating the endpoint, you must perform a GET with the Job ID to obtain a fresh token.
When the code has successfully run, the new endpoint should start using the retrained model in approximately 30 seconds.
Next steps
To learn more about how to manage web services or keep track of multiple experiments runs, see the following articles: