BLOGAtlas Vector Search voted most loved vector database in 2024 Retool State of AI report — Read more >>
white paper

Implementing an Operational Data Layer

An Operational Data Layer (or ODL) is an architectural pattern that centrally integrates and organizes siloed enterprise data, making it available to consuming applications. It enables a range of board-level strategic initiatives such as Legacy Modernization and Data as a Service, and use cases such as single view, real-time analytics, and mainframe offload.

An Operational Data Layer is an intermediary between existing data sources and consumers that need to access that data. An ODL deployed in front of legacy systems can enable new business initiatives and meet new requirements that the existing architecture can’t handle – without the difficulty and risk of a full rip and replace of legacy systems.

In this white paper, we examine the Operational Data Layer architecture pattern, covering:

  • Why to implement an ODL
  • Common use cases and application categories
  • Source systems and data producers
  • Consuming systems and data access
  • Data loading
  • Data flow and an ODL maturity model
  • Technical requirements
  • Operational Data Layers in action

Download this white paper to learn more about Operational Data Layers and whether it makes sense to implement one in your organization.

Email Me the PDF

More like this

View all resources

MongoDB Architecture Guide

MongoDB enables you to meet the demands of modern apps with an application data platform built on several core architectural foundations


Who Owns Security in the Cloud?

At MongoDB, our overriding mission is to make data easier to work with. This can’t happen if data becomes compromised for any reason


Application-Driven Intelligence: Defining the Next Wave of Modern Apps

The digital economy demands smarter applications and faster predictive insights

Read it later?
Please provide your email and we’ll email this to you