February 10, 2021
February 10, 2021
Contributor: Jackie Wiles
Tools powered by artificial intelligence (AI) offer the next level of digitalization for finance, far beyond the automation enabled by robotic process automation (RPA).
Most finance teams now use RPA to drive efficiencies, but RPA can only automate simple, repeatable tasks; it can’t automate the complex processes and workflows needed to improve business agility and efficacy. Adding AI-powered technologies and tools offers the next level of automation for finance, but CFOs must identify the most appropriate use cases.
AI-powered automation puts finance on a path toward what Gartner calls “hyperautomation” — in which entire processes, not just tasks, are automated. Complementing RPA with AI is a critical step in evolving the types of tasks being automated, from rule-based to judgment-based, and the scope of automation, from tasks to process orchestration.
“CFOs need a holistic and long-term approach to hyperautomation,” says Alejandra Lozada, Senior Director Analyst, Gartner. “Organizations that approach hyperautomation choices in a piecemeal fashion will struggle to scale these initiatives. The overall focus must be to enable the orchestration of processes using an architected array of multiple hyperautomation technologies.”
Hyperautomation will ultimately enable finance teams to automate and orchestrate multiple end-to-end processes (for example, record-to-report, order-to-cash) to drive functional improvements. “But many finance functions and leaders have yet to plot a path to hyperautomation, and must first define the use cases even for finance AI,” says Richard Ries, VP, Advisory, Gartner.
The best candidates for near-term AI enablement are dynamic processes that require judgment and involve unstructured, volatile and high-velocity data. Examples include complying with new accounting standards, reviewing expense reports and processing vendor invoices.
For those still looking to identify areas to automate, profile finance processes based on the nature of the underlying tasks and data, specifically:
Notably, it costs more to augment a process than to mimic one because more technologies are required and combining technologies is complex. But the benefits are also greater. Augmenting an end-to-end process offers broader opportunities not only for automation, but also for process innovation.
Selecting the right finance AI solution or combination of solutions can be difficult, and CFOs should work with their IT infrastructure teams to build integrated technology roadmaps where multiple technologies complement each other. That roadmap can include the following elements, among others, says Lozada.
Built-in workflows — capabilities provided by software as a service (SaaS) and commercial off-the-shelf software — are part of the automation roadmap but aren’t complementary to RPA.
Read more: Financial Forecasters Should Beware 3 Machine Learning Myths
Hyperautomation strategy isn’t a “set it and forget it” activity. It’s a proactive and holistic effort to optimize or transform processes and drive scalable, resilient and adaptable automation. To select and combine the automation options effectively:
Be a part of most important gathering for CFOs to explore potential finance tech providers and get actionable insights to prioritize technology innovation.
Recommended resources for Gartner clients*:
Finance Hyperautomation Use Cases
Hyperautomation Technology Toolkit for Organizations
Move Beyond RPA to Hyperautomate Finance
Ignition Guide to Building a Finance Technology Roadmap
Predicts 2021: Accelerate Results Beyond RPA to Hyperautomation
Competitive Landscape: Hyperautomation Service Providers
Market Trends: RPA Morphing Into Hyperautomation
*Note that some documents may not be available to all Gartner clients.