Boomi announced today it is applying generative artificial intelligence (AI) to enable organizations to automate integrations via a natural language interface.
Boomi CEO Steve Lucas said Boomi AI makes it much simpler for professional and citizen developers alike to create integrations at scale using generative AI platforms to invoke the low-code engine that Boomi already provides to create integrations between thousands of applications.
Those generative AI capabilities will complement a wide range of AI capabilities based on machine learning algorithms that are already embedded in the Boomi platform, he added.
Generative AI’s Impact on Integration and Automation – Steve Lucas, Boomi from Techstrong.TV on Vimeo.
Boomi has been widely used to drive business process integration via an integration platform-as-a-service (iPaaS) environment it delivers as a managed service. The low-code platform the company created significantly reduces the need to rely on professional developers to write procedural code using Java, for example, to create those integrations.
Generative AI capabilities make it possible for almost anyone of any skill level to create those integrations across multiple types of application programming interfaces (APIs), noted Lucas.
That capability also makes it possible for Boomi to notify end users when, for example, a data attribute in an application has changed and ask them if they would like to apply that change across their entire application environment.
In addition, Boomi AI can also interpret the intent of a prompt to better orchestrate processes in addition to providing an audit history in natural language that explains how decisions were made and what outcomes occurred as a result. As part of that effort, Boomi algorithms are also trained to avoid biases and unfairness with established ethical guidelines.
Boomi’s AI engine is trained using anonymized data collected from approximately 20,000 customers that have created more than 200 million integrations using the Boomi platform. Those integrations have been exposed to third-party large language models (LLMs) that the company is using to train Boomi AI, said Lucas. Boomi is not storing any customer data to train its AI models.
DevOps teams, of course, spend hours creating integrations that should be much simpler to create, test and validate with the rise of generative AI. In fact, the number of integrations being created to drive a wide range of digital business transformation initiatives should substantially increase.
In the meantime, DevOps teams would be well-advised to start evaluating which tasks they manually perform today that could instead be automated by a generative AI platform. Many of the routine integrations that DevOps teams create today using low-level APIs will be increasingly automated by end users. The ultimate goal should be to identify more complex tasks that previously DevOps teams would not have attempted simply because there wasn’t enough time.
It’s still too early to determine what impact generative AI will have on the way IT is managed, but DevOps teams that are typically committed to automating as many processes as possible should be at the forefront of adoption. The challenge is going to be simply keeping track of the rate of change that might soon be enabled by these platforms.