Creating and training machine-learning models is more complex on distributed systems, but there are lots of frameworks for abstracting that complexity.
There are more options now than ever from proven open source projects for doing distributed analytics, with Python and R become increasingly popular. In this post, you’ll learn the options for setting up a simple read-eval-print (REPL) environment with Python and R within the Cloudera QuickStart VM using APIs for two of the most popular cluster computing frameworks: Apache Spark (with MLlib) and H2O (from the company with the same name).
Spark-TS 0.2.0 includes a fleshed-out Java API, among other things.
Spark-TS is a library developed started by Cloudera’s Data Science team that enables analysis of datasets comprising millions of time series, each with millions of measurements. Spark-TS runs atop Apache Spark, and exposes Scala, Java, and Python APIs. Check out this recent post for a closer look at the library and how to use it.
Spark-TS 0.2.0 released earlier in January 2016.
Spark Dataflow from Cloudera Labs is now part of Google’s New Dataflow SDK, which will be proposed to the Apache Incubator.
Spark Dataflow is an experimental implementation of Google’s Dataflow programming model that runs on Apache Spark. The initial implementation was written by Josh Wills, and entered Cloudera Labs exactly a year ago. Since then, we’ve seen a number of contributions to the project, culminating in the recent addition of an implementation of streaming (running on Spark Streaming) by Amit Sela from PayPal.
Explore the configuration changes that Cigna’s Big Data Analytics team has made to optimize the performance of its real-time architecture.
Real-time stream processing with Apache Kafka as a backbone provides many benefits. For example, this architectural pattern can handle massive, organic data growth via the dynamic addition of streaming sources such as mobile devices, web servers, system logs, and wearable device data (aka, “Internet of Things”). Kafka can also help capture data in real-time and enable the proactive analysis of that data through Spark Streaming.
With this new beta release, column-level privileges set via Apache Sentry (incubating) are now enforced on Spark/MapReduce jobs.
Cloudera is excited to announce the availability of the second beta release for RecordService. This release is based on CDH 5.5 and provides some new features, including:
- Support for Sentry column-level security. Previously, column-level access control required the use of views; now,