Big Data & Analytics

Gathering and analyzing “big data” helps forecast market conditions, make critical decisions, and get insights into your customers.

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Software Overview

This video animation provides an overview of Intel® Software contributions to big data and analytics. From open enterprise-ready software platforms to analytics building blocks, runtime optimizations, tools, benchmarks and use cases, Intel Software makes big data and analytics faster, easier, and more insightful.


Spotlight

Modernizing Software with Future-Proof Code Optimizations by Henry A. Gabb, Sr. Principal Engineer, Intel Software and Services Group
BigDL: Bring Deep Learning to the Fingertips of Big Data Users and Data Scientists Big data and analytics play a central role in today’s smart and connected world, and are continuously driving the convergence of big data, analytics...
Bare-metal performance for Big Data workloads on Docker* Containers BlueData® and Intel® have collaborated in an unprecedented benchmark of the performance of Big Data workloads. These workloads were benchmarked in a...
BigDL: Distributed Deep Learning on Apache Spark

BigDL is a distributed deep learning library for Apache Spark*; with BigDL, users can write their deep learning applications as standard Spark...

BigDL: Distributed Deep Learning on Apache Spark* As the leading framework for Distributed ML, the addition of deep learning to the super-popular Spark framework is important, because it allows Spark...

Technologies

Apache Big Data Stack

At the heart of the big data movement are Apache Hadoop* and Apache Spark*, a fundamentally new way of storing and processing data, discovering patterns, and predicting trends that spark innovation.

SDKs & Tools

The SDK libraries and tools can help speed up big data analytics by providing highly optimized algorithmic building blocks for all data analysis stages.


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