Skip to content
This repository has been archived by the owner on Jun 17, 2024. It is now read-only.

Latest commit

 

History

History
93 lines (53 loc) · 3.41 KB

README.md

File metadata and controls

93 lines (53 loc) · 3.41 KB

Hot Path Analytics with CosmosDB and Azure Stream Analytics

Header Image

Azure Cosmos DB is Microsoft's globally distributed, multi-model database. The atom-record-sequence (ARS) based data model that Azure Cosmos DB is built on natively supports multiple data models, including but not limited to document, graph, key-value, table, and column-family data models

Elastically and independently scale throughput and storage on demand and worldwide

Azure Cosmos DB provides five consistency levels: strong, bounded-staleness, session, consistent prefix, and eventual.

In this lab you will learn

  • how to set up a CosmosDB
  • streaming analytics with windowing techniques
  • to Store Time Series Data in CosmosDB

Create Cosmos DB Account

Click on Create a resource

Create Resource group

Click on Databases

Create Databases

Click on Azure Cosmos DB

Create Cosmos DB

Pick an API

For this tutorial we will use SQL API.

Available APIs are

  1. SQL API: A schema-less JSON database engine with rich SQL querying capabilities.
  2. MongoDB API: A massively scalable MongoDB-as-a-Service powered by Azure Cosmos DB platform. Compatible with existing MongoDB libraries, drivers, tools, and applications.
  3. Cassandra API: A globally distributed Cassandra-as-a-Service powered by Azure Cosmos DB platform. Compatible with existing Apache Cassandra libraries, drivers, tools, and applications.
  4. Graph (Gremlin) API: A fully managed, horizontally scalable graph database service that makes it easy to build and run applications that work with highly connected datasets supporting Open Graph APIs (based on the Apache TinkerPop specification, Apache Gremlin).
  5. Table API: A key-value database service built to provide premium capabilities (for example, automatic indexing, guaranteed low latency, global distribution) to existing Azure Table storage applications without making any app changes

Create Cosmos DB

Stop Stream Analytics

To Add Cosmos DB as output to Stream Analytics Job you will need to Stop the job, Add Cosmos DB output and corresponding Query and Start the job

Stop Stream Analytics Job

Stream Data To Cosmos DB

Stream Data to Cosmos DB

Add Cosmos DB as an Output to Stream Analytics Job

Stream Data to Cosmos DB

Select Cosmos DB as an output. Also make sure you create a new Database and a collection if its is not already created

Select Cosmos DB Account

Edit existing query to Add new query to consume data from IoTHub and store data into Cosmos DB

SELECT
    *, System.Timestamp as time
INTO
    CosmosDB
FROM
    IotHub
GROUP BY deviceId, TumblingWindow(second,30)

Edit Query

Start Stream Analytics Job

Start Stream Analytics Job

Make sure you stream all the data from when you last stopped the job. Stream Analytics interface provides an option

Stream Data to Cosmos DB

Make sure Stream Analytics job goes into running mode

Stream Data to Cosmos DB

Use Cosmos DB data explorer to view data being streamed from IoTHub to Cosmos DB

Stream Data to Cosmos DB