29–30 May 2017
CERN
Europe/Zurich timezone

Status and Plans of the CMS Big Data Project

29 May 2017, 16:20
20m
IT Auditorium (CERN)

IT Auditorium

CERN

Implementations & Technologies Implementations & Technologies

Speaker

Oliver Gutsche (Fermi National Accelerator Lab. (US))

Description

Experimental Particle Physics has been at the forefront of analyzing the world’s largest datasets for decades. The HEP community was among the first to develop suitable software and computing tools for this task. In recent times, new toolkits and systems for distributed data processing, collectively called “Big Data” technologies have emerged from industry and open source projects to support the analysis of Petabyte and Exabyte datasets in industry. While the principles of data analysis in HEP have not changed (filtering and transforming experiment-specific data formats), these new technologies use different approaches and tools, promising a fresh look at analysis of very large datasets that could potentially reduce the time-to-physics with increased interactivity. Moreover these new tools are typically actively developed by large communities, often profiting of industry resources, and under open source licensing. These factors result in a boost for adoption and maturity of the tools and for the communities supporting them, at the same time helping in reducing the cost of ownership for the end-users. In this talk, we are presenting studies of using Apache Spark for end user data analysis. This could inform the discussion of future database and analytics needs of the community.
CMS is working together with CERN openlab and Intel on the CMS Big Data Reduction Facility. The goal is to reduce 1 PB of official CMS data to 1 TB of ntuple output for analysis. We are presenting the progress of this 2-year project with first results of scaling up Spark-based HEP analysis. We are also presenting studies on using Apache Spark for a CMS Dark Matter physics search, investigating Spark’s feasibility, usability and performance compared to the traditional ROOT-based analysis.

Authors

Jim Pivarski (Princeton University) Kacper Surdy (CERN) Luca Canali (CERN) Maria Girone (CERN) Matteo Cremonesi (Fermi National Accelerator Lab. (US)) Oliver Gutsche (Fermi National Accelerator Lab. (US)) Vaggelis Motesnitsalis (CERN) Viktor Khristenko (The University of Iowa (US))

Presentation materials