Dramatically improving currency trading models with AI using Keras Deep Learning and PivotBillions.…
Added by Benjamin Waxer on June 12, 2019 at 1:25am — No Comments
Added by Benjamin Waxer on April 2, 2019 at 2:30am — No Comments
Added by Benjamin Waxer on March 18, 2019 at 5:00am — 2 Comments
Added by Benjamin Waxer on March 4, 2019 at 12:00am — No Comments
Added by Benjamin Waxer on February 25, 2019 at 12:42am — No Comments
In this 5 Minute Analysis we'll preprocess, map, and explore complicated sales data for liquor stores in Iowa. Then we’ll extract the relevant latitude and longitude from a problematic column of the data and discover the city with the most sales. Next we’ll filter the data to that city and prepare the data for easy loading into Business Analysis tools such as Tableau and PowerBI. Finally…
Added by Benjamin Waxer on February 14, 2019 at 9:32am — No Comments
Integrating Pivot Billions with Keras Deep Learning to enhance currency trading models with AI to achieve over 30% net profit in less than 7 months.
Deep Learning has revolutionized the fields of image…
Added by Benjamin Waxer on February 8, 2019 at 5:29am — No Comments
Exploring San Francisco police incident data and visualizing the density distribution of incidents involving mentally ill individuals using Pivot Billions and Tableau.…
ContinueAdded by Benjamin Waxer on February 6, 2019 at 8:06am — No Comments
Diving into the many underlying trends throughout the entire 1.5 Billion rows of NYC Taxi data with Pivot Billion…
Added by Benjamin Waxer on January 29, 2019 at 7:26am — No Comments
Combining Pivot Billions with R to dive into whether the holiday spirit inspires bigger tips and which parts of New York experience this effect the most.…
Added by Benjamin Waxer on January 14, 2019 at 7:04am — No Comments
© 2021 TechTarget, Inc.
Powered by
Badges | Report an Issue | Privacy Policy | Terms of Service
Most Popular Content on DSC
To not miss this type of content in the future, subscribe to our newsletter.
Other popular resources
Archives: 2008-2014 | 2015-2016 | 2017-2019 | Book 1 | Book 2 | More
Most popular articles