venturellimatteo/fintech-projects
Fintech projects related to the 'Fintech' course conducted by Daniele Marazzina at Politecnico di Milano.
This collection of projects helps financial professionals apply machine learning to common banking scenarios. It takes raw financial client data or market data as input and provides insights for client segmentation, personalized product recommendations, and early detection of market crises. Financial analysts, marketers, and risk managers at banks would find these practical examples useful.
No commits in the last 6 months.
Use this if you are a financial professional at a bank looking for concrete, practical examples of how machine learning can be applied to client data or market trends.
Not ideal if you are looking for a ready-to-deploy software solution or a tool that doesn't require some technical familiarity with data analysis concepts.
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Jul 15, 2023
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