In recent times, RPA has been popularly hailed as the next-generation technology that will revolutionize SSCs, promising benefits, such as ‘bot for every desktop.’ To some extent, RPA has been successful in automating routine and repetitive human tasks, including scanning information, storing and updating customer data, approving customer orders, and validating payments.
RPA is considered low-cost, flexible, and easy to deploy, however, it only offers a rule-based automation and lacks intelligence and decision-making capabilities needed for complex and varying situations in real-time. RPA’s limitations could make it a liability in the long term, increasing the overall cost of adapting to the automated process that only solves a part of a problem instead of addressing end-to-end O2C processes. This is evident from the following examples:
aggregation from various sources, such as TPM, carrier portals, and customer portals for deductions analysis, but it cannot validate a deduction. That is where native AI-workflows can be used to analyze the deduction and identify the invalid deductions upfront
a payment for the first time, using the account of person ‘B.’ On the next payment again, B’s account was used. So, in the future, AI can predict and expect that payment will be from B’s account, but an RPA solution cannot generate this insight or take a decision based on this information.
Therefore, AI/ML-based automation results in better visibility and clarity across all the O2C processes. Unlike RPA, this not only makes the O2C activities more streamlined and efficient but also generates real-time insights that the stakeholders can use to generate business value. For example, credit risk insights help a sales representative specifically focus on customers at risk of order blocks and similarly, a collections representative gets a better clarity about prioritizing customers for payment collection.
Most of the customers are unaware of the weakness of RPA and the potential benefits of AI- and ML-based solutions. Business leaders should focus on building the product development strategies to capitalize on the opportunity:
AB InBev, a global brewer, with operations in 15 countries in Europe, wanted to digitally transform its operations as the existing operations were complex, siloed, and used different languages, sales channels, and payment methods. The company was using the SAP ERP platform to manage its O2C processes, but it did not provide complete visibility of the process and easy collaboration between various O2C teams. The existing automation process focused mainly on replacing manual processes but was unable to generate real-time insights to enable business discussions. Also, the sales team, the collection team, and customers faced issues related to visibility across the process and could not derive any intelligent insights. For example, the collections team had a list of slow-paying customers, but they did not know whom to prioritize, or whether it is a one-time payment issue or a habitual payment pattern.
The company wanted to transform its credit management and collections landscape in Europe by setting up location-based credit policies as it did not have any policy to control the customer overdue. The company had already undergone two phases of process transformation via the SAP ERP platform:
Sales Team:
Collection Team:
Customer:
Another challenge that the company faced was language dependency, which restricted the company from hiring executives based on language proficiency. It was required that the platform should remove the language dependency so that they can focus on talent rather than language.
The company decided to digitally transform its business to bring in process efficiencies by automating manual transaction processes and incorporating AI to drive analytics-based business decisions. Solutions deployed included an automated cash applications module, predictive model for order blocking, automated collections platform and AI-driven predictive deduction status and resolution, and providing end-to-end automation. This enabled departments to work in partnerships and have complete visibility of the process. It created an environment where collectors were working with the sales team by assisting them with their analysis of customers’ credit histories and potential customers to make a sale. This also helped the sales team to treat customers differently. A customer who is paying on time and has a good credit risk should be treated differently as compared to bad paying customers.
Some of the key benefits from the transformation were:
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