Introducida:
01-10-2015
HPC (CAP) research group invites you to attend the talk. Speaker: Ahsan Javed Awan (KTH-UPC/BSC) Date: Mon, 5/Oct/2015, 10:00 Room: C6-E106
ABSTRACT With a deluge in the volume and variety of data collected, large-scale web enterprises (such as Yahoo, Facebook, and Google) run big data analytic applications using clusters of commodity servers. However, it has been recently reported that using clusters is a case of over-provisioning since a majority of analytic jobs do not process huge data sets and that modern scale-up servers are adequate to run analytic jobs. Additionally, commonly used predictive analytics such as machine learning algorithms work on filtered datasets that easily fit into memory of modern scale-up servers. Therefore, modern scale-up servers are becoming an important processing platform for big data analytics. In this seminar, I will talk about lessons learned from deploying Apache Spark based data analysis workloads on scale-up server. I will explain, Why Spark based applications do not scale-up, What are the bottlenecks at the application, thread, JVM and micro-architectural level. We will also discuss potential techniques to improve the single node performance of Apache Spark.
Conference Information