Mock sample for your project: ContainerRegistryManagementClient API

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

ContainerRegistryManagementClient

azure.com

Version: 2019-05-01-preview


Use this API in your project

Start working with "ContainerRegistryManagementClient API" right away by using this ready-to-use mock sample. API mocking can greatly speed up your application development by removing all the tedious tasks or issues: API key provisioning, account creation, unplanned downtime, etc.
It also helps reduce your dependency on third-party APIs and improves your integration tests' quality and reliability by accounting for random failures, slow response time, etc.

Description

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