Benefiting from NLP Tools in the Investment Office

Project Summary

A team of students will explore how using natural language processing and other data focused tools to direct the input of files and depository flow can be used to support the investment office at Duke University Management Company (DUMAC).  Students will collaborate with investment professionals to investigate and potentially develop tools to facilitate intuitive keyword search and context extraction from various documents sources, which would support investment analysis and the legal review process.

Themes and Categories
Year
2021
Contact
Paul Bendich
Mathematics
bendich@math.duke.edu

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