Mock sample for your project: Azure Log Analytics Query Packs API

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Azure Log Analytics Query Packs

azure.com

Version: 2019-09-01-preview


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Speed up your application development by using "Azure Log Analytics Query Packs 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.
It also improves your integration tests' quality and reliability by accounting for random failures, slow response time, etc.

Description

Azure Log Analytics API reference for management of saved Queries within Query Packs.

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