Mock sample for your project: Azure Migrate Hub API

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

Azure Migrate Hub

azure.com

Version: 2018-09-01-preview


Use this API in your project

Start working with "Azure Migrate Hub 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

Migrate your workloads to Azure.

Other APIs by azure.com

VM Insights Onboarding

azure.com
API to manage VM Insights Onboarding

Azure Media Services

azure.com
This Swagger was generated by the API Framework.

AzureBridgeAdminClient

azure.com
AzureBridge Admin Client.

BackupManagementClient

azure.com
The Admin Backup Management Client.

SubscriptionsManagementClient

azure.com
The Admin Subscriptions Management Client.

SubscriptionsManagementClient

azure.com
The Admin Subscriptions Management Client.

FabricAdminClient

azure.com
Fabric location operation endpoints and objects.

AutomationManagement

azure.com

DeploymentAdminClient

azure.com
Deployment Admin Client.

ComputeDiskAdminManagementClient

azure.com
The Admin Compute Disk Management Client.

FabricAdminClient

azure.com
Infrastructure role instance operation endpoints and objects.

FabricAdminClient

azure.com
Edge gateway operation endpoints and objects.

Other APIs in the same category

FabricAdminClient

azure.com
Scale unit node operation endpoints and objects.

Amazon Kinesis Analytics

Amazon Kinesis Analytics Overview This documentation is for version 1 of the Amazon Kinesis Data Analytics API, which only supports SQL applications. Version 2 of the API supports SQL and Java applications. For more information about version 2, see Amazon Kinesis Data Analytics API V2 Documentation. This is the Amazon Kinesis Analytics v1 API Reference. The Amazon Kinesis Analytics Developer Guide provides additional information.

Storage Cache Mgmt Client

azure.com
A Storage Cache provides scalable caching service for NAS clients, serving data from either NFSv3 or Blob at-rest storage (referred to as "Storage Targets"). These operations allow you to manage Caches.

Amazon Pinpoint

Doc Engage API - Amazon Pinpoint API

Firewall Management Service

This is the Firewall Manager API Reference. This guide is for developers who need detailed information about the Firewall Manager API actions, data types, and errors. For detailed information about Firewall Manager features, see the Firewall Manager Developer Guide. Some API actions require explicit resource permissions. For information, see the developer guide topic Firewall Manager required permissions for API actions.

Amazon Cognito Identity Provider

Using the Amazon Cognito User Pools API, you can create a user pool to manage directories and users. You can authenticate a user to obtain tokens related to user identity and access policies. This API reference provides information about user pools in Amazon Cognito User Pools. For more information, see the Amazon Cognito Documentation.

SubscriptionsManagementClient

azure.com
The Admin Subscriptions Management Client.

StorageManagementClient

azure.com
The Admin Storage Management Client.

Platform API

The REST API specification for Ably.

AWS Amplify

Amplify enables developers to develop and deploy cloud-powered mobile and web apps. The Amplify Console provides a continuous delivery and hosting service for web applications. For more information, see the Amplify Console User Guide. The Amplify Framework is a comprehensive set of SDKs, libraries, tools, and documentation for client app development. For more information, see the Amplify Framework.

AWS IoT Analytics

IoT Analytics allows you to collect large amounts of device data, process messages, and store them. You can then query the data and run sophisticated analytics on it. IoT Analytics enables advanced data exploration through integration with Jupyter Notebooks and data visualization through integration with Amazon QuickSight. Traditional analytics and business intelligence tools are designed to process structured data. IoT data often comes from devices that record noisy processes (such as temperature, motion, or sound). As a result the data from these devices can have significant gaps, corrupted messages, and false readings that must be cleaned up before analysis can occur. Also, IoT data is often only meaningful in the context of other data from external sources. IoT Analytics automates the steps required to analyze data from IoT devices. IoT Analytics filters, transforms, and enriches IoT data before storing it in a time-series data store for analysis. You can set up the service to collect only the data you need from your devices, apply mathematical transforms to process the data, and enrich the data with device-specific metadata such as device type and location before storing it. Then, you can analyze your data by running queries using the built-in SQL query engine, or perform more complex analytics and machine learning inference. IoT Analytics includes pre-built models for common IoT use cases so you can answer questions like which devices are about to fail or which customers are at risk of abandoning their wearable devices.
Amazon EventBridge Schema Registry