October 11, 2017
Our Chief Data Scientist will be participating in a data vendor panel in this RavenPack-sponsored event.
The Learn 2 Quant (L2Q)
conference is a one day seminar designed for discretionary institutional PMs, analysts, and traders who know they need to move quickly and efficiently towards building processes to become more quantitative and use new unique alpha generating data sets.
, our Chief Data Scientist will show the process that his team runs to find alpha in RavenPack data. Additionally, Peter will present his findings and how to use them in a discretionary workflow.
You can see more information about conference
. Peter will be available for personal debriefs during the conference.
October 11th, 2017
Throgmorton Ave, London
EC2N 2DQ, UK
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