Mock sample for your project: NetworkManagementClient API

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NetworkManagementClient

azure.com

Version: 2019-08-01


Use this API in your project

Integrate third-party APIs faster by using "NetworkManagementClient 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.
Improve your integration tests by mocking third-party APIs and cover more edge cases: slow response time, random failures, etc.

Description

The Microsoft Azure Network management API provides a RESTful set of web services that interact with Microsoft Azure Networks service to manage your network resources. The API has entities that capture the relationship between an end user and the Microsoft Azure Networks service.

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