{"id":10917,"date":"2019-12-06T12:32:42","date_gmt":"2019-12-06T20:32:42","guid":{"rendered":"https:\/\/www.microsoft.com\/insidetrack\/blog\/?p=10917"},"modified":"2023-06-16T13:44:58","modified_gmt":"2023-06-16T20:44:58","slug":"finance-uses-anomaly-detection-and-automation-to-transform-royalty-statements-processing","status":"publish","type":"post","link":"https:\/\/www.microsoft.com\/insidetrack\/blog\/finance-uses-anomaly-detection-and-automation-to-transform-royalty-statements-processing\/","title":{"rendered":"Finance uses anomaly detection and automation to transform royalty statements processing"},"content":{"rendered":"
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This content has been archived, and while it was correct at time of publication, it may no longer be accurate or reflect the current situation at Microsoft.<\/p>\n<\/div>\n<\/div>\n

Processing royalty payments at Microsoft requires a high level of accuracy and oversight. Microsoft Digital worked with Finance Operations to replace time-consuming and costly manual processes with an automated one that enhances our Sarbanes-Oxley Act (SOX) requirements and operational controls. By using machine learning for anomaly detection and deploying automation, we have reduced the amount of time it takes for a statement to be reconciled and approved from days to hours.<\/p>\n

Like many companies, Microsoft pays royalties for games, videos, content, software, and other creative work used in its products and services. There is a very high bar for accuracy when processing royalty payments. Operating under strong controls and the compliance tone set by Microsoft Finance, the process requires reconciliation at multiple levels, cross-checking, reviews, and payment approvals. With more than 30,000 statements\u2014worth nearly $5 billion\u2014manual processes are time consuming and costly. The Finance Operations team partnered with Microsoft Digital on a modernization initiative to help streamline the process through technology while further strengthening the Sarbanes-Oxley Act (SOX) and operational controls that are required for these types of workflows.<\/p>\n

We worked with a core team of royalties-process subject matter experts from Finance Operations to develop a three-part solution that automated royalty statement reconciliation, utilized machine learning to detect anomalies, and automated the approvals process for more than 50 percent of the royalty statements being processed\u2014saving thousands of hours each year.<\/p>\n

Finance Operations collects all transactions that are subject to royalty payments based on views, downloads, or plays, depending on the type of content. Then, the payment amount is calculated according to the contract with the content owner, a statement is created, and the Finance Operations team ensures that the payments are processed. Due to the high dollar amounts and strong SOX control requirements, business users and financial analysts had to manually reconcile multiple data sources in order to provide a high level of confidence and assurance in the final calculated amount.<\/p>\n

This was the first time we were considering deploying machine learning and automating important finance processes that are regulated by federal SOX rules. We had to partner closely with internal Controls and Compliance teams, along with the Corporate Finance Controls group, to ensure that risks were properly addressed. Our goal was to not only meet current SOX requirements, but to ultimately enhance them.<\/p>\n

We focused on the three parts of the royalty workflow for which we thought automation and machine learning could provide the most time and effort savings:<\/p>\n