Leverage AI in Banking
Learn more about top use cases as well as challenges and AI initiatives for which all banks - using current strengths and resources - can get started on today.
get the white paperAnomaly detection, and more specifically fraud detection, is all about finding patterns of interest (outliers, exceptions, peculiarities, etc.) that deviate from expected behavior, and it is these systems that allow financial and insurance institutions to ensure the security of their systems.
But putting a fraud detection system in place isn’t a set-it-and-forget-it deal: it needs to constantly be evaluated and updated. With standards and systems constantly changing and under the constraint of limited resources, how can organizations ensure that data and AI systems — like a fraud detection system — stay relevant?
Read more: Addressing Fraud with Machine Learning in Finance
BGL BNP Paribas is one of the largest banks in Luxembourg and part of the BNP Paribas Group. In 2017, the international magazine Euromoney named BGL BNP Paribas “Best Bank in Luxembourg” for the second year in a row.
The 6 Challenges to Nurturing a Productive Data Team
BGL BNP Paribas already had a machine learning model in place for advanced fraud detection, but with limited visibility and data science resources, the model remained largely static. When changing the model, the challenge was to harness a data-driven approach across all parts of the organization.
BGL BNP Paribas already had a machine learning model in place for advanced fraud detection, but with limited visibility into that model as well as limited data science resources, the model remained largely static.
Members of the business team were enthusiastic about updating the model but were stymied by lack of access to data projects as well as access to the data team to execute the required changes. The challenge was to harness a data-driven approach across all parts of the organization.
BGL BNP Paribas chose Dataiku DSS to democratize access to and use of data throughout the company. In just eight weeks, BGL BNP Paribas was able to use Dataiku to create a new fraud detection prototype. Thanks to Dataiku’s advanced, enterprise-level security and monitoring features, they were able to do all of this without compromising data governance standards.
The project involved data analytics and business users from the fraud department as well as data scientists from BGL BNP Paribas’ data lab and from Dataiku. The collaborative nature of Dataiku and involvement of teams throughout the company allowed for the optimal combination of knowledge to produce an accurate model delivering clear business value.
In turn, the success of the first fraud prediction project was the catalyst for company-wide change at BGL BNP Paribas:
BGL BNP Paribas has already begun three additional data projects following the first fraud detection prototype and plans to continue to release new data products regularly to stay at the cutting edge of the financial industry.
Webhelp, in collaboration with the data team from their consulting arm Gobeyond Partners, leveraged Dataiku to develop the People First Platform, a process and tool that leverages the strengths of both HR and operation managers combined with machine learning to reduce resignation risk by 40% on the targeted population with care conversation.
Read moreLearn more about top use cases as well as challenges and AI initiatives for which all banks - using current strengths and resources - can get started on today.
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