Rating is available when the video has been rented.
This feature is not available right now. Please try again later.
Published on Apr 10, 2017
#Codemotion Rome 2017 - Big Data is key for innovation in many industries today. Large amounts of historical data are stored and analyzed in Hadoop, Spark or other clusters to find patterns, e.g. for predictive maintenance or cross-selling. However: How do you increase revenue or reduce risks in new transactions proactively? Stream processing is the solution to embed patterns into future actions in real-time. This session discusses and demos how machine learning and analytic models with R, Spark MLlib, H2O, etc. can be build and integrated into real-time event processing frameworks. The session focuses on live demos