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Model high-throughput transactional apps in Azure Cosmos DB for PostgreSQL

APPLIES TO: Azure Cosmos DB for PostgreSQL (powered by the Citus database extension to PostgreSQL)

Common filter as shard key

To pick the shard key for a high-throughput transactional application, follow these guidelines:

  • Choose a column that is used for point lookups and is present in most create, read, update, and delete operations.
  • Choose a column that is a natural dimension in the data, or a central piece of the application. For example:
    • In an IOT workload, device_id is a good distribution column.

The choice of a good shard key helps optimize network hops, while taking advantage of memory and compute to achieve millisecond latency.

Optimal data model for high-throughput apps

Below is an example of a sample data-model for an IoT app that captures telemetry (time series data) from devices. There are two tables for capturing telemetry: devices and events. There could be other tables, but they're not covered in this example.

Diagram of events and devices tables, and partitions of events.

When building a high-throughput app, keep some optimization in mind.

  • Distribute large tables on a common column that is central piece of the app, and the column that your app mostly queries. In the above example of an IOT app, device_id is that column, and it co-locates the events and devices tables.
  • The rest of the small tables can be reference tables.
  • As IOT apps have a time dimension, partition your distributed tables based on time. You can use native Azure Cosmos DB for PostgreSQL time series capabilities to create and maintain partitions.
    • Partitioning helps efficiently filter data for queries with time filters.
    • Expiring old data is also fast, using the DROP vs DELETE command.
    • The events table in our example is partitioned by month.
  • Use the JSONB datatype to store semi-structured data. Device telemetry data is typically not structured, every device has its own metrics.
    • In our example, the events table has a detail column, which is JSONB.
  • If your IoT app requires geospatial features, you can use the PostGIS extension, which Azure Cosmos DB for PostgreSQL supports natively.

Next steps

Now we've finished exploring data modeling for scalable apps. The next step is connecting and querying the database with your programming language of choice.