- Apache Spark for Azure HDInsight – an open source framework for
 processing large data analytic applications. Apache Spark in the cloud is faster
 and is commonly used for tasks within an Apache HDFS (Hadoop Distributed
 File System). Cost effective, no hardware or software to purchase and fully
 integrates with intelligence business tools from trusted partners.
- Apache Storm for HDInsight – distributed open-source, fault-tolerant,
 event-processing solution for large streams of fast data. Easy, cost-effective, no
 hardware or software to buy or configure, configuration tools of your choice and
 fully integrated with Visual Studio.
- R Server for HDInsight – R Server is a combination of R analytics software
 (enterprise-scale) and the power of Apache Spark and Hadoop. Train accurate
 models to provide better predictions, working with open-source R-language.
- Data Catalog – a metadata catalog that makes it easy to discover data assets. A
 managed service, it allows you to register, discover, enrich, understand and
 consume data sources, working with the data tool you choose. Use the data in the
 tools you want it in and gain more value from it – less time looking for data =
 more time using it.
- Azure Data Lake Storage – a scalable, cost-effective solution for big data
 analytics, combining economy and scale with the power from a high-performance
 file system. Extends Blob Storage capabilities; store the data once and access it
 via existing file system interfaces and Blob storage with no changes to
 programming.
- Azure Data Explorer – a fast and easy service for indexing and querying large
 amounts of data to build near real-time solutions for analytics. Identify patterns,
 trends and anomalies in any type of data, structured, unstructured or semi-
 structured.
                    
                      lvitn
                      (lvitn)
                      
                    
                #1
            
            