Mock sample for your project: ApiManagementClient API

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ApiManagementClient

azure.com

Version: 2019-12-01-preview


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Speed up your application development by using "ApiManagementClient API" ready-to-use mock sample. Mocking this API will allow you to start working in no time. No more accounts to create, API keys to provision, accesses to configure, unplanned downtime, just work.
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Description

Use these REST APIs for performing retrieving a collection of policy snippets available in Azure API Management deployment.

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Use these REST APIs for performing operations on Property entity associated with your Azure API Management deployment. API Management policies are a powerful capability of the system that allow the publisher to change the behavior of the API through configuration. Policies are a collection of statements that are executed sequentially on the request or response of an API. Policy statements can be constructed using literal text values, policy expressions, and properties. Each API Management service instance has a properties collection of key/value pairs that are global to the service instance. These properties can be used to manage constant string values across all API configuration and policies.

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Use these REST APIs for performing retrieve a collection of Apis associated with a tag in Azure API Management deployment.

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Use these REST APIs for performing operations on Backend entity in Azure API Management deployment. The Backend entity in API Management represents a backend service that is configured to skip certification chain validation when using a self-signed certificate to test mutual certificate authentication.

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