Standardization and Improvements of Data Analytics Projects

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Presented by

Xavier Maréchal (Reacfin), Samuel Mahy (Reacfin), Julien Antunes Mendes (Reacfin)

About this talk

Standardization and Improvements of Data Analytics Projects for Financial Institutions Data Analytics is a hot topic for many financial institutions. Making the most of their data and becoming data driven companies is a strategic differentiator. In this webinar, we identify practical difficulties in running relevant data analytics projects in financial institutions. Starting from typical projects (e.g. product pricing and behavioral modeling in banks and insurance), we explore some of these difficulties and provide practical solutions to implement a relevant data science pipe-line in financial institutions. We build a standardized approach along with the following steps: -Business problem framing -Data Management -Modelling -Deployment -Monitoring With some additional focus on the communication around data analytics projects and governance aspects. We advocate how data science platforms can help in robustifying this process, decreasing risks and increasing efficiency and added value of data analytics projects. Speakers: - Xavier Maréchal, CEO at Reacfin - Samuel Mahy, Director at Reacfin - Julien Antunes Mendes, Manager at Reacfin Please be aware that by registering for this webinar, you agree to have your personal information shared with both partners Dataiku and Reacfin. They may contact you with information that could be of interest to you.
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