What are the differences between CosmoDB and DocumentDB

Muhammad Rehan Saeed picture Muhammad Rehan Saeed · May 12, 2017 · Viewed 14.8k times · Source

As far as I can work out, CosmoDB has the ability to make Graph queries using the Gremlin query language. Apart from that the pricing, marketing etc. all seem the same. It seems strange that they came up with a new product to add Gremlin when they didn't do the same to add MongoDB support. What are the discernable differences between these two products?

Answer

Andrew Liu picture Andrew Liu · May 15, 2017

The Azure Cosmos DB team member here.

Azure Cosmos DB started as “Project Florence” in 2010 to address developer pain-points faced by large scale applications inside Microsoft. Observing that the challenges of building globally distributed apps are not a problem unique to Microsoft, in 2015 we made the first generation of this technology available to Azure developers in the form of Azure DocumentDB. Since that time, we’ve added new features and introduced significant new capabilities. Azure Cosmos DB is the result. It is the next big leap in globally distributed, at scale, cloud databases. As a part of this release of Azure Cosmos DB, DocumentDB customers, with their data, are automatically Azure Cosmos DB customers. The transition is seamless and they now have access to the new breakthrough system and capabilities offered by Azure Cosmos DB.

In the evolution of Cosmos DB, we have added significant new capabilities since 2015 (when DocumentDB was made generally available) but only a subset of these capabilities was available in DocumentDB. These capabilities are in the areas of the core database engine as well as, global distribution, elastic scalability and industry-leading, comprehensive SLAs. Specifically, we have evolved the Cosmos DB database engine to be able to efficiently map all popular data models, type systems and APIs to the underlying data model of Cosmos DB. The developer facing manifestation of this work currently will experience it via support for Gremlin and Table Storage APIs. And this is just the beginning… We will be adding other popular APIs and newer data models over time with more advances towards performance and storage at global scale.

We also have extended the foundation for global and elastic scalability of throughput and storage. One of the very first manifestations of it is the RU/m (https://docs.microsoft.com/en-us/azure/cosmos-db/request-units-per-minute) but we have more capabilities that we will be announcing in these areas. The new capabilities will help save cost for our customers for various workloads. We have made several foundational enhancements to the global distribution subsystem. One of the many developer facing manifestations of this work is the consistent prefix consistency model (making in total 5 well-defined consistency models). However, there are many more interesting capabilities we will release as they mature.

It is important to point out that we view Azure Cosmos DB as a constantly evolving database service. Typically, we first validate all new capabilities with the large scale applications inside Microsoft, subsequently expose them to key external customers, and finally, release them to the world.

It is also important to point out that DocumentDB’s SQL dialect has always been just one of the many APIs that the underlying Cosmos DB was capable of supporting. As a developer using a fully managed service like Cosmos DB, the only interface to the service is the APIs exposed by the service. To that end, nothing really changes for a DocumentDB customer. Cosmos DB offers the exactly the same SQL API that DocumentDB did. However, now (and in the future) you can get access to other capabilities which were previously not accessible.