Big Data NLP
RavenPack | April 05, 2017
Watch a short video introducing the latest tools developed by RavenPack
Our CEO Armando Gonzalez introduces RavenPack's new self-service data and visualization platform, highlighting how we add value to both quantitative investors and fundamental managers.
Armando explains why you don't need to be a data scientist to take advantage of RavenPack's big data analytics. With our new platform, you can easily define the data you want and download the data that you need for the universe that you invest in. Users can access or download data directly into Excel or into any other application.
Armando also revealed our new visualization tools which include widgets you can organize on a dashboard to create interactive intelligence reports. He also introduced "RavenPack as a Service" where clients can now license our engine to mine their own content for insights including emails, instant messages, PDF reports, and any other textual document.
Our Chief Data Scientist briefly speaks about our new event relevance score. Peter explains that highly relevant events tend to be more predictive than events that are less relevant, for example when they are mentioned deeper into the story body.
A client explains how he empowers his portfolio managers with RavenPack data.
And hear from Draper Esprit and why they decided to back-up RavenPack with a $5 million investment.
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