Mock sample for your project: Azure Media Services API

Integrate with "Azure Media Services API" from azure.com in no time with Mockoon's ready to use mock sample

Azure Media Services

azure.com

Version: 2018-07-01


Use this API in your project

Integrate third-party APIs faster by using "Azure Media Services API" ready-to-use mock sample. Mocking this API will help you accelerate your development lifecycles and improves your integration tests' quality and reliability by accounting for random failures, slow response time, etc.
It also helps reduce your dependency on third-party APIs: no more accounts to create, API keys to provision, accesses to configure, unplanned downtime, etc.

Description

This Swagger was generated by the API Framework.

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