Aurora MySQL database engine updates: 2016-11-10 (versions 1.9.0, 1.9.1) (Deprecated) - Amazon Aurora
Services or capabilities described in Amazon Web Services documentation might vary by Region. To see the differences applicable to the China Regions, see Getting Started with Amazon Web Services in China (PDF).

Aurora MySQL database engine updates: 2016-11-10 (versions 1.9.0, 1.9.1) (Deprecated)

Version: 1.9.0, 1.9.1

New features

  • Improved index build – The implementation for building secondary indexes now operates by building the index in a bottom-up fashion, which eliminates unnecessary page splits. This can reduce the time needed to create an index or rebuild a table by up to 75% (based on an db.r3.8xlarge DB instance class). This feature was in lab mode in Aurora MySQL version 1.7 and is enabled by default in Aurora version 1.9 and later. For information, see Amazon Aurora MySQL lab mode in the Amazon Aurora User Guide.

  • Lock compression (lab mode) – This implementation significantly reduces the amount of memory that lock manager consumes by up to 66%. Lock manager can acquire more row locks without encountering an out-of-memory exception. This feature is disabled by default and can be activated by enabling Aurora lab mode. For information, see Amazon Aurora MySQL lab mode in the Amazon Aurora User Guide.

  • Performance schema – Aurora MySQL now includes support for performance schema with minimal impact on performance. In our testing using SysBench, enabling performance schema could degrade MySQL performance by up to 60%.

    SysBench testing of an Aurora DB cluster showed an impact on performance that is 4x less than MySQL. Running the db.r3.8xlarge DB instance class resulted in 100K SQL writes/sec and over 550K SQL reads/sec, even with performance schema enabled.

  • Hot row contention improvement – This feature reduces CPU utilization and increases throughput when a small number of hot rows are accessed by a large number of connections. This feature also eliminates error 188 when there is hot row contention.

  • Improved out-of-memory handling – When non-essential, locking SQL statements are executed and the reserved memory pool is breached, Aurora forces rollback of those SQL statements. This feature frees memory and prevents engine crashes due to out-of-memory exceptions.

  • Smart read selector – This implementation improves read latency by choosing the optimal storage segment among different segments for every read, resulting in improved read throughput. SysBench testing has shown up to a 27% performance increase for write workloads .

Improvements

  • Fixed an issue where an Aurora Replica encounters a shared lock during engine start up.

  • Fixed a potential crash on an Aurora Replica when the read view pointer in the purge system is NULL.