Disruptive technologies are no longer the stuff of science fiction. They’re not even the “next big thing.” Successful firms are using them right now to automate manual processes in their AML programs.
According to accounting giant PWC, 45% of work activities can be automated. Robotic process automation (RPA) is one of the technologies making this possible. As the name implies, RPA technology uses software robots, or “bots,” to perform time-consuming, rules-based office tasks. It reduces cycle time and at lower costs than other automation solutions.
Many financial firms are using RPA to find data for investigators. RPA bots are replacing manual processes by gathering data from multiple sources. This helps solve the “swivel-chair” problem experienced by many compliance professionals.
That, however, is as far as the efficiency gains of RPA go. The technology does an excellent job of collecting data for investigators, but it is unable to analyze that collected data and select the data that is relevant to the investigation. While automated data collection is an important time saver, with RPA-only solutions, time-strapped AML compliance teams are still in the position of having to sort through, select and analyze the data to make sense of it.
For example, RPA can automate the discovery of a piece of adverse media. It can serve that news article up to an investigator. However, it is unable to discern if the entity mentioned in the article is a good, bad, or neutral actor. An investigator is still required to analyze the article to determine its relevance to the investigation.
The efficiencies afforded by RPA are the first step towards AML automation success. RPA creates the foundation for machine learning — a game-changer driving improved effectiveness and efficiency within AML compliance.
The Power of Machine Learning
Machine learning picks up where RPA leaves off. Without programming, it learns and improves from experience. It analyzes huge data sets, identifies patterns, and pinpoints where exceptions or anomalies exist.
Used in conjunction with RPA, machine learning automates a significant portion of the AML investigation process by:
For example, machine learning can automate the analysis of adverse media. It can determine a new article’s context and identify whether the entity mentioned is a bad actor or not. And when assisted by natural language processing (NLP), it can:
This automated analysis streamlines a laborious and time-consuming aspect of the AML investigation. It provides investigators with accurate and relevant information, and dramatically improves their decision-making capabilities.
Automate Your Firm’s AML Compliance Program
Financial institutions can navigate risk and compliance while optimizing their AML operations in any of the following ways:
Optimize the efficiency and effectiveness of your firm’s AML program
No matter how you do it, the benefits of automating your firm’s investigative process are clear. RPA and machine learning improve efficiencies and reduce costs. The day-to-day work of investigators becomes more rewarding as they spend more time on complex and high-risk cases. Automation also improves adjudication and reporting consistencies. The result? Better compliance and far less risk for your organization.
Validated and tested in real-world environments, the QuantaVerse Financial Crime Platform proves its value to AML teams and regulators alike. The easy-to-implement packaged solution uses:
To learn more about automating your firm’s financial crime investigation program, please visit: QuantaVerse.net/our-solutions.