Big Data
RavenPack | September 21, 2017
How do you prepare your organization for the big data revolution? Are you part of the change or will your firm be overthrown by the new world order?
Moderator: Adam Honore, Executive Director of Product for Global Data Licensing Services, CME Group
Panelists:
A “revolution” is typically defined as a fundamental change in an organizational structure that takes place in a relatively short period of time when people “revolt” against the current order.
The rapid explosion and growth in data has incited a huge investment in Artificial Intelligence (AI) tools and techniques to try and make sense of it all.
Traditional investors are looking to boost sagging returns and turning to data scientists to deliver the alpha they once produced.
Consequently, numerous funds are building out big data teams to identify new nontraditional data sources, clean this data, and create predictive models which are additive to their investment processes.
Recorded at RavenPack's 5th Annual Research Symposium , that took place September 19, 2017 in New York City.
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