Mock sample for your project: ApiManagementClient API

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

ApiManagementClient

azure.com

Version: 2019-12-01-preview


Use this API in your project

Speed up your application development by using "ApiManagementClient 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

Use these REST APIs for performing retrieving a collection of policy snippets available in Azure API Management deployment.

Other APIs by azure.com

ApiManagementClient

azure.com
Use this REST API to get all the issues across an Azure Api Management service.

Azure Log Analytics Query Packs

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

HDInsightManagementClient

azure.com
The HDInsight Management Client.

DataBoxManagementClient

azure.com

FabricAdminClient

azure.com
Storage operation results.

AutomationManagement

azure.com

Security Center

azure.com
API spec for Microsoft.Security (Azure Security Center) resource provider

ApiManagementClient

azure.com
Use these REST APIs for performing operations on Quota entity associated with your Azure API Management deployment. To configure call rate limit and quota policies refer to how to configure call rate limit and quota.

CommerceManagementClient

azure.com
The Admin Commerce Management Client.

Language Understanding Intelligent Service (LUIS) Endpoint API for running predictions and extracting user intentions and entities from utterances.

azure.com

ApiManagementClient

azure.com
Use these REST APIs to get the analytics reports associated with your Azure API Management deployment.

Face Client

azure.com
An API for face detection, verification, and identification.

Other APIs in the same category

DeploymentAdminClient

azure.com
Deployment Admin Client.

Elastic Load Balancing

Elastic Load Balancing A load balancer distributes incoming traffic across targets, such as your EC2 instances. This enables you to increase the availability of your application. The load balancer also monitors the health of its registered targets and ensures that it routes traffic only to healthy targets. You configure your load balancer to accept incoming traffic by specifying one or more listeners, which are configured with a protocol and port number for connections from clients to the load balancer. You configure a target group with a protocol and port number for connections from the load balancer to the targets, and with health check settings to be used when checking the health status of the targets. Elastic Load Balancing supports the following types of load balancers: Application Load Balancers, Network Load Balancers, Gateway Load Balancers, and Classic Load Balancers. This reference covers the following load balancer types: Application Load Balancer - Operates at the application layer (layer 7) and supports HTTP and HTTPS. Network Load Balancer - Operates at the transport layer (layer 4) and supports TCP, TLS, and UDP. Gateway Load Balancer - Operates at the network layer (layer 3). For more information, see the Elastic Load Balancing User Guide. All Elastic Load Balancing operations are idempotent, which means that they complete at most one time. If you repeat an operation, it succeeds.

Amazon Elastic File System

Amazon Elastic File System Amazon Elastic File System (Amazon EFS) provides simple, scalable file storage for use with Amazon EC2 instances in the Amazon Web Services Cloud. With Amazon EFS, storage capacity is elastic, growing and shrinking automatically as you add and remove files, so your applications have the storage they need, when they need it. For more information, see the Amazon Elastic File System API Reference and the Amazon Elastic File System User Guide.

AWS AppSync

AppSync provides API actions for creating and interacting with data sources using GraphQL from your application.

Amazon Pinpoint

Doc Engage API - Amazon Pinpoint API

Amazon Neptune

Amazon Neptune Amazon Neptune is a fast, reliable, fully-managed graph database service that makes it easy to build and run applications that work with highly connected datasets. The core of Amazon Neptune is a purpose-built, high-performance graph database engine optimized for storing billions of relationships and querying the graph with milliseconds latency. Amazon Neptune supports popular graph models Property Graph and W3C's RDF, and their respective query languages Apache TinkerPop Gremlin and SPARQL, allowing you to easily build queries that efficiently navigate highly connected datasets. Neptune powers graph use cases such as recommendation engines, fraud detection, knowledge graphs, drug discovery, and network security. This interface reference for Amazon Neptune contains documentation for a programming or command line interface you can use to manage Amazon Neptune. Note that Amazon Neptune is asynchronous, which means that some interfaces might require techniques such as polling or callback functions to determine when a command has been applied. In this reference, the parameter descriptions indicate whether a command is applied immediately, on the next instance reboot, or during the maintenance window. The reference structure is as follows, and we list following some related topics from the user guide.

ServiceBusManagementClient

azure.com
Azure Service Bus client

AWS CloudHSM V2

For more information about AWS CloudHSM, see AWS CloudHSM and the AWS CloudHSM User Guide.

AWS S3 Control

Amazon Web Services S3 Control provides access to Amazon S3 control plane actions.

Amazon Connect Contact Lens

Contact Lens for Amazon Connect enables you to analyze conversations between customer and agents, by using speech transcription, natural language processing, and intelligent search capabilities. It performs sentiment analysis, detects issues, and enables you to automatically categorize contacts. Contact Lens for Amazon Connect provides both real-time and post-call analytics of customer-agent conversations. For more information, see Analyze conversations using Contact Lens in the Amazon Connect Administrator Guide.

Amazon SageMaker Runtime

The Amazon SageMaker runtime API.

AWS Marketplace Catalog Service

Catalog API actions allow you to manage your entities through list, describe, and update capabilities. An entity can be a product or an offer on AWS Marketplace. You can automate your entity update process by integrating the AWS Marketplace Catalog API with your AWS Marketplace product build or deployment pipelines. You can also create your own applications on top of the Catalog API to manage your products on AWS Marketplace.