Distributed Data Management

Monolithic applications are typically backed by a large relational database, which defines a single data model common to all application components. In a microservices approach, such a central database would prevent the goal of building decentralized and independent components. Each microservice component should have its own data persistence layer.

Distributed data management, however, raises new challenges. As a consequence of the CAP Theorem , distributed microservices architectures inherently trade off consistency for performance and need to embrace eventual consistency.

In a distributed system, business transactions can span multiple microservices. Because they cannot leverage a single ACID transaction, you can end up with partial executions. In this case, we would need some control logic to redo the already processed transactions. For this purpose, the distributed Saga pattern is commonly used. In the case of a failed business transaction, Saga orchestrates a series of compensating transactions that undo the changes that were made by the preceding transactions. AWS Step Functions make it easy to implement a Saga execution coordinator as shown in the next figure.

Figure 5: Saga execution coordinator

Building a centralized store of critical reference data that is curated by master data management tools and procedures provides a means for microservices to synchronize their critical data and possibly roll back state. Using Lambda with scheduled Amazon CloudWatch Events you can build a simple cleanup and deduplication mechanism.

It’s very common for state changes to affect more than a single microservice. In such cases, event sourcing has proven to be a useful pattern. The core idea behind event sourcing is to represent and persist every application change as an event record. Instead of persisting application state, data is stored as a stream of events. Database transaction logging and version control systems are two well-known examples for event sourcing. Event sourcing has a couple of benefits: state can be determined and reconstructed for any point in time. It naturally produces a persistent audit trail and also facilitates debugging.

In the context of microservices architectures, event sourcing enables decoupling different parts of an application by using a publish/subscribe pattern, and it feeds the same event data into different data models for separate microservices. Event sourcing is frequently used in conjunction with the CQRS (Command Query Responsibility Segregation) pattern to decouple read from write workloads and optimize both for performance, scalability, and security. In traditional data management systems, commands and queries are run against the same data repository.

Figure 6 shows how the event sourcing pattern can be implemented on AWS. Amazon Kinesis Data Streams serves as the main component of the central event store, which captures application changes as events and persists them on Amazon S3.

Figure 6 depicts three different microservices composed of Amazon API Gateway, AWS Lambda, and Amazon DynamoDB. The blue arrows indicate the flow of the events: when microservice 1 experiences an event state change, it publishes an event by writing a message into Kinesis Data Streams. All microservices run their own Kinesis Data Streams application in AWS Lambda which reads a copy of the message, filters it based on relevancy for the microservice, and possibly forwards it for further processing.

Figure 6: Event sourcing pattern on AWS

Amazon S3 durably stores all events across all microservices and is the single source of truth when it comes to debugging, recovering application state, or auditing application changes.