| September 17, 2019
RavenPack is the Lead Sponsor of MachineByte European conference being hosted in Paris 17 and 18 September
RavenPack is the lead sponsor of MachineBytes European Conference being hosted in Paris on September 17 and 18 where Chief Data Scientist, Peter Hafez, will present new research on Alternative Data in Financial Markets. This conference is to provide not only the theoretical approach to machine learning in investment management, but also case studies/examples of how machine learning can be used in quantitative investment management.
Those investors who are currently exploring machine learning and AI by attempting to discover non-linear trends in data, to maximise trade execution and to diversify allocation frameworks. This conference aims to provide education and insights for those institutional investors who are increasingly exploring machine learning in investment management, specifically quantitative investment management.
Peter Hafez is the head of data science at RavenPack. Since joining RavenPack in 2008, he’s been a pioneer in the field of applied news analytics bringing alternative data insights to the world’s top banks and hedge funds. Peter has more than 15 years of experience in quantitative finance with companies such as Standard & Poor's, Credit Suisse First Boston, and Saxo Bank.
For the full
September 17 & 18, 2019
Paris Marriott Rive Gauche Hotel & Conference Center, 17 Boulevard Saint Jacques
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