Revolution R Enterprise Software by Revolution Analytics

Industry’s Most Capable Big Data Big Analytics Platform - Bringing scale and speed to Big Data Big Analytics using the R Language Revolution R Enterprise is the fastest, most cost effective enterprise-class big data big analytics platform available today. Supporting a variety of big data statistics, predictive modeling and machine learning capabilities, Revolution R Enterprise is also 100% R. Revolution R Enterprise provides users with the best of both – cost-effective and fast big data analyti... Read more


Revolution R Enterprise Software by Revolution Analytics product image
Revolution R Enterprise Software

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Industry’s Most Capable Big Data Big Analytics Platform - Bringing scale and speed to Big Data Big Analytics using the R Language

Revolution R Enterprise is the fastest, most cost effective enterprise-class big data big analytics platform available today. Supporting a variety of big data statistics, predictive modeling and machine learning capabilities, Revolution R Enterprise is also 100% R. Revolution R Enterprise provides users with the best of both – cost-effective and fast big data analytics that are fully compatibility with the R language, the de facto standard for modern analytics users.

Offering high-performance, scalable, enterprise-capable analytics, Revolution R Enterprise supports a variety of analytical capabilities including exploratory data analysis, model building and model deployment.


Revolution R Enterprise Software Features:

  • Explore and model large data at speed of thought
  • Reduce your model development lifecycle
  • Build hundreds of models for diverse data sets
  • Create ensemble models to achieve better fidelity and improve lift of predictive models
  • Score large data sets in near real-time
  • Re-train models frequently to maintain accuracy and lift
  • Run large scale compute-intensive simulations at speed
  • Build recommendation engines using machine learning algorithms
  • Integrate analytics directly into enterprise applications