9–13 Jul 2018
Sofia, Bulgaria
Europe/Sofia timezone

Apache Spark usage and deployment models for scientific computing

11 Jul 2018, 12:00
15m
Hall 10 (National Palace of Culture)

Hall 10

National Palace of Culture

presentation Track 7 – Clouds, virtualization and containers T7 - Clouds, virtualization and containers

Speaker

Prasanth Kothuri (CERN)

Description

This talk is about sharing our recent experiences in providing data analytics platform based on Apache Spark for High Energy Physics, CERN accelerator logging system and infrastructure monitoring. The Hadoop Service has started to expand its user base for researchers who want to perform analysis with big data technologies. Among many frameworks, Apache Spark is currently getting the most traction from various user communities and new ways to deploy Spark such as Apache Mesos or Spark on Kubernetes have started to evolve rapidly. Meanwhile, notebook web applications such as Jupyter offer the ability to perform interactive data analytics and visualizations without the need to install additional software. CERN already provides a web platform, called SWAN (Service for Web-based ANalysis), where users can write and run their analyses in the form of notebooks, seamlessly accessing the data and software they need

The first part of the presentation talks about several recent integrations and optimizations to the Apache Spark computing platform to enable HEP data processing and CERN accelarator logging system analytics. The optimizations and integrations, include, but not limited to, access of kerberized resources, xrootd connector enabling remote access to EOS storage and integration with SWAN for interactive data analysis, thus forming a truly Unified Analytics Platform.

The second part of the talk touches upon the evolution of the Apache Spark data analytics platform, particularly sharing the recent work done to run Spark on Kubernetes on the virtualized and container-based infrastructure in Openstack. This deployment model allows for elastic scaling of data analytics workloads enabling efficient, on-demand utilization of resources in private or public clouds.

Primary author

Co-authors

Enric Tejedor Saavedra (CERN) Danilo Piparo (CERN) Diogo Castro (FCT Fundacao para a Ciencia e a Tecnologia (PT)) Vaggelis Motesnitsalis (CERN)

Presentation materials