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Set up clusters in HDInsight with Apache Hadoop, Apache Spark, Apache Kafka, and more

Learn how to set up and configure Apache Hadoop, Apache Spark, Apache Kafka, Interactive Query, or Apache HBase or in HDInsight. Also, learn how to customize clusters and add security by joining them to a domain.

A Hadoop cluster consists of several virtual machines (nodes) that are used for distributed processing of tasks. Azure HDInsight handles implementation details of installation and configuration of individual nodes, so you only have to provide general configuration information.

Important

HDInsight cluster billing starts once a cluster is created and stops when the cluster is deleted. Billing is pro-rated per minute, so you should always delete your cluster when it is no longer in use. Learn how to delete a cluster.

If you're using multiple clusters together, you'll want to create a virtual network, and if you're using a Spark cluster you'll also want to use the Hive Warehouse Connector. For more information, see Plan a virtual network for Azure HDInsight and Integrate Apache Spark and Apache Hive with the Hive Warehouse Connector.

Cluster setup methods

The following table shows the different methods you can use to set up an HDInsight cluster.

Clusters created with Web browser Command line REST API SDK
Azure portal      
Azure Data Factory
Azure CLI      
Azure PowerShell      
cURL    
Azure Resource Manager templates      

This article walks you through setup in the Azure portal, where you can create an HDInsight cluster.

Basics

HDInsight create options custom quick.

Project details

Azure Resource Manager helps you work with the resources in your application as a group, referred to as an Azure resource group. You can deploy, update, monitor, or delete all the resources for your application in a single coordinated operation.

Cluster details

Cluster name

HDInsight cluster names have the following restrictions:

  • Allowed characters: a-z, 0-9, A-Z
  • Max length: 59
  • Reserved names: apps
  • The cluster naming scope is for all Azure, across all subscriptions. So the cluster name must be unique worldwide.
  • First six characters must be unique within a virtual network

Region

You don't need to specify the cluster location explicitly: The cluster is in the same location as the default storage. For a list of supported regions, select the Region drop-down list on HDInsight pricing.

Cluster type

Azure HDInsight currently provides the following cluster types, each with a set of components to provide certain functionalities.

Important

HDInsight clusters are available in various types, each for a single workload or technology. There is no supported method to create a cluster that combines multiple types, such HBase on one cluster. If your solution requires technologies that are spread across multiple HDInsight cluster types, an Azure virtual network can connect the required cluster types.

Cluster type Functionality
Hadoop Batch query and analysis of stored data
HBase Processing for large amounts of schemaless, NoSQL data
Interactive Query In-memory caching for interactive and faster Hive queries
Kafka A distributed streaming platform that can be used to build real-time streaming data pipelines and applications
Spark In-memory processing, interactive queries, micro-batch stream processing

Version

Choose the version of HDInsight for this cluster. For more information, see Supported HDInsight versions.

Cluster credentials

With HDInsight clusters, you can configure two user accounts during cluster creation:

  • Cluster login username: The default username is admin. It uses the basic configuration on the Azure portal. Sometimes it's called "Cluster user," or "HTTP user."
  • Secure Shell (SSH) username: Used to connect to the cluster through SSH. For more information, see Use SSH with HDInsight.

The HTTP username has the following restrictions:

  • Allowed special characters: _ and @
  • Characters not allowed: #;."',/:!*?$(){}[]<>|&--=+%~^space`
  • Max length: 20

The SSH username has the following restrictions:

  • Allowed special characters:_ and @
  • Characters not allowed: #;."',/:!*?$(){}[]<>|&--=+%~^space`
  • Max length: 64
  • Reserved names: hadoop, users, oozie, hive, mapred, ambari-qa, zookeeper, tez, hdfs, sqoop, yarn, hcat, ams, hbase, administrator, admin, user, user1, test, user2, test1, user3, admin1, 1, 123, a, actuser, adm, admin2, aspnet, backup, console, David, guest, John, owner, root, server, sql, support, support_388945a0, sys, test2, test3, user4, user5, spark

Storage

Cluster storage settings: HDFS-compatible endpoints.

Although an on-premises installation of Hadoop uses the Hadoop Distributed File System (HDFS) for storage on the cluster, in the cloud you use storage endpoints connected to cluster. Using cloud storage means you can safely delete the HDInsight clusters used for computation while still retaining your data.

HDInsight clusters can use the following storage options:

  • Azure Data Lake Storage Gen2
  • Azure Storage General Purpose v2
    • Azure Storage Block blob (only supported as secondary storage)

For more information on storage options with HDInsight, see Compare storage options for use with Azure HDInsight clusters.

Warning

Using an additional storage account in a different location from the HDInsight cluster is not supported.

During configuration, for the default storage endpoint you specify a blob container of an Azure Storage account or Data Lake Storage. The default storage contains application and system logs. Optionally, you can specify additional linked Azure Storage accounts and Data Lake Storage accounts that the cluster can access. The HDInsight cluster and the dependent storage accounts must be in the same Azure location.

Note

The feature that requires secure transfer enforces all requests to your account through a secure connection. Only HDInsight cluster version 3.6 or newer supports this feature. For more information, see Create Apache Hadoop cluster with secure transfer storage accounts in Azure HDInsight.

Important

Enabling secure storage transfer after creating a cluster can result in errors using your storage account and is not recommended. It is better to create a new cluster using a storage account with secure transfer already enabled.

Note

Azure HDInsight does not automatically transfer, move or copy your data stored in Azure Storage from one region to another.

Metastore settings

You can create optional Hive or Apache Oozie metastores. However, not all cluster types support metastores, and Azure Synapse Analytics isn't compatible with metastores.

For more information, see Use external metadata stores in Azure HDInsight.

Important

When you create a custom metastore, don't use dashes, hyphens, or spaces in the database name. This can cause the cluster creation process to fail.

SQL database for Hive

If you want to retain your Hive tables after you delete an HDInsight cluster, use a custom metastore. You can then attach the metastore to another HDInsight cluster.

An HDInsight metastore that is created for one HDInsight cluster version can't be shared across different HDInsight cluster versions. For a list of HDInsight versions, see Supported HDInsight versions.

Important

The default metastore provides an Azure SQL Database with a basic tier 5 DTU limit (not upgradeable)! Suitable for basic testing purposes. For large or production workloads, we recommend migrating to an external metastore.

SQL database for Oozie

To increase performance when using Oozie, use a custom metastore. A metastore can also provide access to Oozie job data after you delete your cluster.

SQL database for Ambari

Ambari is used to monitor HDInsight clusters, make configuration changes, and store cluster management information as well as job history. The custom Ambari DB feature allows you to deploy a new cluster and setup Ambari in an external database that you manage. For more information, see Custom Ambari DB.

Important

You cannot reuse a custom Oozie metastore. To use a custom Oozie metastore, you must provide an empty Azure SQL Database when creating the HDInsight cluster.

Security + networking

HDInsight create options choose enterprise security package.

Enterprise security package

For Hadoop, Spark, HBase, Kafka, and Interactive Query cluster types, you can choose to enable the Enterprise Security Package. This package provides option to have a more secure cluster setup by using Apache Ranger and integrating with Microsoft Entra ID. For more information, see Overview of enterprise security in Azure HDInsight.

The Enterprise security package allows you to integrate HDInsight with Active Directory and Apache Ranger. Multiple users can be created using the Enterprise security package.

For more information on creating domain-joined HDInsight cluster, see Create domain-joined HDInsight sandbox environment.

TLS

For more information, see Transport Layer Security

Virtual network

If your solution requires technologies that are spread across multiple HDInsight cluster types, an Azure virtual network can connect the required cluster types. This configuration allows the clusters, and any code you deploy to them, to directly communicate with each other.

For more information on using an Azure virtual network with HDInsight, see Plan a virtual network for HDInsight.

For an example of using two cluster types within an Azure virtual network, see Use Apache Spark Structured Streaming with Apache Kafka. For more information about using HDInsight with a virtual network, including specific configuration requirements for the virtual network, see Plan a virtual network for HDInsight.

Disk encryption setting

For more information, see Customer-managed key disk encryption.

Kafka REST proxy

This setting is only available for cluster type Kafka. For more information, see Using a REST proxy.

Identity

For more information, see Managed identities in Azure HDInsight.

Configuration + pricing

HDInsight choose your node size.

You're billed for node usage for as long as the cluster exists. Billing starts when a cluster is created and stops when the cluster is deleted. Clusters can't be de-allocated or put on hold.

Node configuration

Each cluster type has its own number of nodes, terminology for nodes, and default VM size. In the following table, the number of nodes for each node type is in parentheses.

Type Nodes Diagram
Hadoop Head node (2), Worker node (1+) HDInsight Hadoop cluster nodes.
HBase Head server (2), region server (1+), master/ZooKeeper node (3) HDInsight HBase cluster type setup.
Spark Head node (2), Worker node (1+), ZooKeeper node (3) (free for A1 ZooKeeper VM size) HDInsight spark cluster type setup.

For more information, see Default node configuration and virtual machine sizes for clusters in "What are the Hadoop components and versions in HDInsight?"

The cost of HDInsight clusters is determined by the number of nodes and the virtual machines sizes for the nodes.

Different cluster types have different node types, numbers of nodes, and node sizes:

  • Hadoop cluster type default:
    • Two head nodes

    • Four Worker nodes

If you're just trying out HDInsight, we recommend you use one Worker node. For more information about HDInsight pricing, see HDInsight pricing.

Note

The cluster size limit varies among Azure subscriptions. Contact Azure billing support to increase the limit.

When you use the Azure portal to configure the cluster, the node size is available through the Configuration + pricing tab. In the portal, you can also see the cost associated with the different node sizes.

Virtual machine sizes

When you deploy clusters, choose compute resources based on the solution you plan to deploy. The following VMs are used for HDInsight clusters:

To find out what value you should use to specify a VM size while creating a cluster using the different SDKs or while using Azure PowerShell, see VM sizes to use for HDInsight clusters. From this linked article, use the value in the Size column of the tables.

Important

If you need more than 32 Worker nodes in a cluster, you must select a head node size with at least 8 cores and 14 GB of RAM.

For more information, see Sizes for virtual machines. For information about pricing of the various sizes, see HDInsight pricing.

Disk attachment

Note

The added disks are only configured for node manager local directories and not for datanode directories

HDInsight cluster comes with pre-defined disk space based on SKU. If you run some large applications, can lead to insufficient disk space, with disk full error - LinkId=221672#ERROR_NOT_ENOUGH_DISK_SPACE and job failures.

More discs can be added to the cluster using the new feature NodeManager’s local directory. At the time of Hive and Spark cluster creation, the number of discs can be selected and added to the worker nodes. The selected disk, which will be of size 1TB each, would be part of NodeManager's local directories.

  1. From Configuration + pricing tab
  2. Select Enable managed disk option
  3. From Standard disks, Enter the Number of disks
  4. Choose your Worker node

You can verify the number of disks from Review + create tab, under Cluster configuration

Add application

HDInsight application is an application, that users can install on a Linux-based HDInsight cluster. You can use applications provided by Microsoft, third parties, or developed by you. For more information, see Install third-party Apache Hadoop applications on Azure HDInsight.

Most of the HDInsight applications are installed on an empty edge node. An empty edge node is a Linux virtual machine with the same client tools installed and configured as in the head node. You can use the edge node for accessing the cluster, testing your client applications, and hosting your client applications. For more information, see Use empty edge nodes in HDInsight.

Script actions

You can install additional components or customize cluster configuration by using scripts during creation. Such scripts are invoked via Script Action, which is a configuration option that can be used from the Azure portal, HDInsight Windows PowerShell cmdlets, or the HDInsight .NET SDK. For more information, see Customize HDInsight cluster using Script Action.

Some native Java components, like Apache Mahout and Cascading, can be run on the cluster as Java Archive (JAR) files. These JAR files can be distributed to Azure Storage and submitted to HDInsight clusters with Hadoop job submission mechanisms. For more information, see Submit Apache Hadoop jobs programmatically.

Note

If you have issues deploying JAR files to HDInsight clusters, or calling JAR files on HDInsight clusters, contact Microsoft Support.

Cascading is not supported by HDInsight and is not eligible for Microsoft Support. For lists of supported components, see What's new in the cluster versions provided by HDInsight.

Sometimes, you want to configure the following configuration files during the creation process:

  • clusterIdentity.xml
  • core-site.xml
  • gateway.xml
  • hbase-env.xml
  • hbase-site.xml
  • hdfs-site.xml
  • hive-env.xml
  • hive-site.xml
  • mapred-site
  • oozie-site.xml
  • oozie-env.xml
  • tez-site.xml
  • webhcat-site.xml
  • yarn-site.xml

For more information, see Customize HDInsight clusters using Bootstrap.

Next steps