Micro Focus has announced the general availability of Micro Focus Robotic Process Automation (RPA), which sets the stage for employing DevOps processes to construct highly automated business processes.
Thanks to the rise of artificial intelligence (AI) and digital business transformation initiatives, interest in RPA has increased significantly. However, rather than merely using RPA to build bots to automate a narrow set of static processes, RPA is now leveraging machine and deep learning algorithms to optimize a wider range of dynamic business processes and adjust more easily to changes within an application.
Travis Greene, senior director for IT operations management ay Micro Focus, said new capabilities such as object recognition technology included within Micro Focus RPA enables the platform to detect and automatically adapt to changes to the user interface.
Other new capabilities now include the ability to visually or programmatically create workflows using a tool that records screen actions, the ability to more easily combine graphical and programmatic workflows spanning multiple platforms and the ability to deploy hundreds of thousands of bots as needed. A centralized dashboard manages the bots, all of which have unique IDs and encrypted, role-based credentials.
As RPA and other forms of AI continue to be integrated and embedded with applications, Greene said it’s a matter of time before DevOps practices are extended to RPA platforms. Organizations will seek to train bots continuously as more data is made available, which in turn will drive updates to applications that are dependent on those bots. In most cases, depending on the complexity of the task, the bots will be built using a mixture of application programming interfaces (APIs), command-line interfaces (CLIs) and graphical tools. Organizations will need to define the processes to determine how and when each organization will opt to invoke one interface instead of another, either in isolation or combination, added Greene.
Historically, organizations have been able to apply RPA to static processes with mixed success. With the rise of AI, the scope of those efforts has become more ambitious. Business leaders are too inclined to believe that just about every business process can be automated using a combination of AI and RPA. However, AI and RPA still are confined to relatively narrow use cases involving highly predictable outcomes.
That’s changing, however, and RPA and AI are becoming more pervasive across the enterprise. DevOps teams will need to find ways to update both their applications and RPA/AI models without breaking one or the other. Most of the current RPA/AI models are highly sensitive to any change made to the application environment they are monitoring. And, unfortunately, the data scientists who are largely responsible for constructing those RPA/AI models don’t yet tend to have much of an appreciation for best DevOps processes. There will, however, come a day soon when these two worlds will collide.