Confusion around RPA deployments is rife, with growing questions surrounding whether RPA can deliver on promised ROI and outcomes. Most RPA initiatives continue to be small and piecemeal; scaled RPA deployments are rare because the industry is still relatively nascent, and the ultimate desired outcomes still being crafted.
When we interviewed 359 power users of RPA for our recent RPA Top 10 study, one of the critical issues for RPA scalability was software pricing or RPA licensing costs (see Exhibit 1). What are the challenges with RPA pricing? Is there a better and more practical pricing model? And what can the industry stakeholders do to help?
Exhibit 1. RPA customer experience on scalability and flexibility
Sample: 359 power users of RPA
Source: HFS Research, 2018
The mystical world of RPA software pricing
There are four significant challenges with RPA software pricing:
Exhibit 2. RPA pricing models of leading RPA products
Source: HFS Research, 2018
Exhibit 3. Worldwide enterprise robotic software and services (RPA and RDA), 2016-2021
Source: HFS Research, 2018
There is no RPA pricing “nirvana”
RPA software pricing is a complex topic and, unfortunately, there are no easy answers here. There are three types of pricing mechanics (input, output, and outcome) for any service-oriented product but none of them represents the “nirvana” state for RPA pricing.
How about pricing RPA by bot time?
The answer to this RPA pricing puzzle potentially lies in more granularity and flexibility. Ultimately, RPA is a piece of software that processes logic-driven tasks (such as logging in into an application, entering some data, copying and pasting data, or clicking some buttons). It does it much faster and accurately than a human being can (or wants to!). So, the most fundamental and granular unit for RPA is bot time (execution time taken by software) and a potential solution the current RPA pricing mess could be to price RPA regarding the full-time-equivalents (FTEs) of machine time.
Basing pricing on bot time will be akin to the time and motion (T&M) studies that helped understand how long it takes to complete a process, but you might be observing a software product, not a human, click some buttons. For more mature use cases where RPA has been deployed thousands of times, a pricing mechanism more tightly linked to the volume of transactions could be used, but FTE equivalents of machine time could become the generic measuring unit.
Bottom line: RPA software pricing is not a zero-sum game. The industry needs to collaborate.
RPA clients need to realize the pricing challenges and make their investment decisions accordingly. Remember if it seems too good to be true, you need to look under the covers. The RPA software providers also must realize that for RPA to get through to mass adoption; pricing is one of the facets that need to be resolved. Leading RPA providers, early adopters, and implementation partners need to come together to discuss this issue as an industry versus letting the competitive animosity and one-upmanship get the better of them—the RPA software pricing issue is not a zero-sum game.
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