MapR offers the only converged data platform with the power of Apache Hadoop, Spark, event streaming, real-time database, and enterprise storage.
Jump to navigation Become a big data expert with free Hadoop online coursesSee how MapR is changingbig dataGet started with MapR products and Quick Start SolutionsThe MapR Converged Data Platform is the industry’s only platform to integrate the enormous power of Hadoop and Spark with global event streaming, real-time database capabilities, and enterprise storage. In this post we are going to discuss building a real time solution for credit card fraud detection. Decision trees are widely used for the machine learning tasks of classification and regression. In this blog post, I’ll help you get started using Apache Spark’s MLlib machine learning decision trees for classification.
Streaming data is of growing interest to many organizations, and most applications need to use a producer-consumer model to ingest and process data in real time. Many messaging solutions exist today on the market, but few of them have been built to handle the challenges of modern deployment related to IoT, large web based applications and related big data projects. MapR is proud to be a Platinum Sponsor of the 9th Annual Hadoop Summit, a leading conference for the Apache Hadoop community. The largest cloud event for business in AsiaBig Data Toronto invites you to dive into the future, the world of endless opportunities and Big Data dreams.
MapR is proud to be a gold sponsor of Big Data Toronto. Auch in diesem Jahr bietet die TDWI Konferenz in München wieder viele nationale und internationale Experten, spannende Anwenderberichte und ein noch breiteres Themenspektrum mit den neuen Special Tracks zu...
Please find below the latest comments on this software, because we think you're the bests to talk about it.
We knew it... you're someone curious.
And obvisouly: you want more. Good news, this is pretty easy. Just fill up the form below and we'll transfer your contact details to experts who will get back to you.