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Design scalable and performant tables

Tip

The content in this article applies to the original Azure Table storage. However, the same concepts apply to the newer Azure Cosmos DB for Table, which offers higher performance and availability, global distribution, and automatic secondary indexes. It is also available in a consumption-based serverless mode. There are some feature differences between Table API in Azure Cosmos DB and Azure Table storage. For more information, see Azure Cosmos DB for Table. For ease of development, we now provide a unified Azure Tables SDK that can be used to target both Azure Table storage and Azure Cosmos DB for Table.

To design scalable and performant tables, you must consider factors such as performance, scalability, and cost. If you have previously designed schemas for relational databases, these considerations are familiar, but while there are some similarities between the Azure Table service storage model and relational models, there are also important differences. These differences typically lead to different designs that may look counter-intuitive or wrong to someone familiar with relational databases, yet make sense if you are designing for a NoSQL key/value store such as the Azure Table service. Many of your design differences reflect the fact that the Table service is designed to support cloud-scale applications that can contain billions of entities (or rows in relational database terminology) of data or for datasets that must support high transaction volumes. Therefore, you must think differently about how you store your data and understand how the Table service works. A well-designed NoSQL data store can enable your solution to scale much further and at a lower cost than a solution that uses a relational database. This guide helps you with these topics.

About the Azure Table service

This section highlights some of the key features of the Table service that are especially relevant to designing for performance and scalability. If you're new to Azure Storage and the Table service, first read Get started with Azure Table Storage using .NET before reading the remainder of this article. Although the focus of this guide is on the Table service, it includes discussion of the Azure Queue and Blob services, and how you might use them with the Table service.

What is the Table service? As you might expect from the name, the Table service uses a tabular format to store data. In the standard terminology, each row of the table represents an entity, and the columns store the various properties of that entity. Every entity has a pair of keys to uniquely identify it, and a timestamp column that the Table service uses to track when the entity was last updated. The timestamp is applied automatically, and you cannot manually overwrite the timestamp with an arbitrary value. The Table service uses this last-modified timestamp (LMT) to manage optimistic concurrency.

Note

The Table service REST API operations also return an ETag value that it derives from the LMT. This document uses the terms ETag and LMT interchangeably because they refer to the same underlying data.

The following example shows a simple table design to store employee and department entities. Many of the examples shown later in this guide are based on this simple design.

PartitionKey RowKey Timestamp
Marketing 00001 2014-08-22T00:50:32Z
FirstName LastName Age Email
Don Hall 34 donh@contoso.com
Marketing 00002 2014-08-22T00:50:34Z
FirstName LastName Age Email
Jun Cao 47 junc@contoso.com
Marketing Department 2014-08-22T00:50:30Z
DepartmentName EmployeeCount
Marketing 153
Sales 00010 2014-08-22T00:50:44Z
FirstName LastName Age Email
Ken Kwok 23 kenk@contoso.com

So far, this data appears similar to a table in a relational database with the key differences being the mandatory columns, and the ability to store multiple entity types in the same table. Also, each of the user-defined properties such as FirstName or Age has a data type, such as integer or string, just like a column in a relational database. Although unlike in a relational database, the schema-less nature of the Table service means that a property need not have the same data type on each entity. To store complex data types in a single property, you must use a serialized format such as JSON or XML. For more information about the table service such as supported data types, supported date ranges, naming rules, and size constraints, see Understanding the Table Service Data Model.

Your choice of PartitionKey and RowKey is fundamental to good table design. Every entity stored in a table must have a unique combination of PartitionKey and RowKey. As with keys in a relational database table, the PartitionKey and RowKey values are indexed to create a clustered index to enable fast look-ups. However, the Table service does not create any secondary indexes, so PartitionKey and RowKey are the only indexed properties. Some of the patterns described in Table design patterns illustrate how you can work around this apparent limitation.

A table comprises one or more partitions, and many of the design decisions you make will be around choosing a suitable PartitionKey and RowKey to optimize your solution. A solution may consist of a single table that contains all your entities organized into partitions, but typically a solution has multiple tables. Tables help you to logically organize your entities, help you manage access to the data using access control lists, and you can drop an entire table using a single storage operation.

Table partitions

The account name, table name, and PartitionKey together identify the partition within the storage service where the table service stores the entity. As well as being part of the addressing scheme for entities, partitions define a scope for transactions (see Entity Group Transactions below), and form the basis of how the table service scales. For more information on partitions, see Performance and scalability checklist for Table storage.

In the Table service, an individual node services one or more complete partitions, and the service scales by dynamically load-balancing partitions across nodes. If a node is under load, the table service can split the range of partitions serviced by that node onto different nodes; when traffic subsides, the service can merge the partition ranges from quiet nodes back onto a single node.

For more information about the internal details of the Table service, and in particular how the service manages partitions, see the paper Microsoft Azure Storage: A Highly Available Cloud Storage Service with Strong Consistency.

Entity Group Transactions

In the Table service, Entity Group Transactions (EGTs) are the only built-in mechanism for performing atomic updates across multiple entities. EGTs are sometimes also referred to as batch transactions. EGTs can only operate on entities stored in the same partition (that is, share the same partition key in a given table). So anytime you require atomic transactional behavior across multiple entities, you must ensure that those entities are in the same partition. This is often a reason for keeping multiple entity types in the same table (and partition) and not using multiple tables for different entity types. A single EGT can operate on at most 100 entities. If you submit multiple concurrent EGTs for processing, it is important to ensure those EGTs do not operate on entities that are common across EGTs; otherwise, processing can be delayed.

EGTs also introduce a potential trade-off for you to evaluate in your design. That is, using more partitions increases the scalability of your application, because Azure has more opportunities for load balancing requests across nodes. But using more partitions might limit the ability of your application to perform atomic transactions and maintain strong consistency for your data. Furthermore, there are specific scalability targets at the level of a partition that might limit the throughput of transactions you can expect for a single node. For more information about scalability targets for Azure standard storage accounts, see Scalability targets for standard storage accounts. For more information about scalability targets for the Table service, see Scalability and performance targets for Table storage.

Capacity considerations

The following table describes capacity, scalability, and performance targets for Table storage.

Resource Target
Number of tables in an Azure storage account Limited only by the capacity of the storage account
Number of partitions in a table Limited only by the capacity of the storage account
Number of entities in a partition Limited only by the capacity of the storage account
Maximum size of a single table 500 TiB
Maximum size of a single entity, including all property values 1 MiB
Maximum number of properties in a table entity 255 (including the three system properties, PartitionKey, RowKey, and Timestamp)
Maximum total size of an individual property in an entity Varies by property type. For more information, see Property Types in Understanding the Table Service Data Model.
Size of the PartitionKey A string up to 1024 characters in size
Size of the RowKey A string up to 1024 characters in size
Size of an entity group transaction A transaction can include at most 100 entities and the payload must be less than 4 MiB in size. An entity group transaction can include an update to an entity only once.
Maximum number of stored access policies per table 5
Maximum request rate per storage account 20,000 transactions per second, which assumes a 1-KiB entity size
Target throughput for a single table partition (1 KiB-entities) Up to 2,000 entities per second

Cost considerations

Table storage is relatively inexpensive, but you should include cost estimates for both capacity usage and the quantity of transactions as part of your evaluation of any Table service solution. However, in many scenarios, storing denormalized or duplicate data in order to improve the performance or scalability of your solution is a valid approach. For more information about pricing, see Azure Storage Pricing.

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