WELCOME TO BIGDATATRENDZ      WELCOME TO CAMO      Architectural Patterns for Near Real-Time Data Processing with Apache Hadoop      Working with Apache Spark: Or, How I Learned to Stop Worrying and Love the Shuffle     

Monday, 14 March 2016

Apache Hive 2.0 is Released

                                                                                                                                 Source: Cloudera Blog
The recently-released Apache Hive 2.0 contains some exciting improvements, many of which are already available in CDH 5.x.
Recently, the Apache Hive community announced Hive 2.0.0. This is a larger release compared to the previous one (covered here), with a lengthy list of new features (many experimental), enhancements, and bug fixes. Cloudera’s Hive team have been working with the community for months to drive toward this significant release.
Here are some of the highlights with respect to Apache Hive 2.0 (see the release notes for a complete list of features, improvements, and bug fixes):

New Functionality

Performance and Optimizations


Usability, Supportability, and Stability

Many of the production-ready improvements above are already included, or are scheduled to be included, in the CDH 5.x line, including the HiveServer2 web UI, new metrics, improved Apache Parquet support, and Hive-on-Spark enhancements. Furthermore, the Hive 2.0 release enforces safer configurations and chooses better defaults for certain configurations. (It’s worth noting, however, that the release also contains code that is either no longer supported or on path to deprecation, such as Hadoop-1, MR, and Java 6.)
In conclusion, there is much to be excited about in the Hive 2.0 release, and Cloudera has already backported some of the more significant features and fixes into CDH 5.x. We look forward to working with the rest of the Hive community to further improve and stabilize new features and enhancements along the 2.x release line, and to bring those improvements to CDH users as they become production-ready.

No comments:

Post a Comment

thank you for your feedback

How-to: Use Parquet with Impala, Hive, Pig, and MapReduce

Source: Cloudera Blog The CDH software stack lets you use your tool of choice with the Parquet file format – – offering the benefits of ...