AI in the Investment Office

Project Summary

A team of students will explore how artificial intelligence tools can be used to support the investment office at the Duke University Management Company (DUMAC).

In particular, the team will investigate natural language processing and other AI methods for supporting the legal review process, investment analysis, and financial reporting.

Project Lead: Robert McGrail, DUMAC

Project Manager: Yi Wang

Themes and Categories
Year
2020
Contact
Paul Bendich
Mathematics
bendich@math.duke.edu

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