Saved in:
Bibliographic Details
Main Authors: Albin, Sam, Attebury, Garhan, Bloom, Kenneth, Bockelman, Brian, Lundstedt, Carl, Shadura, Oksana, Thiltges, John
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2312.11485
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911954114707456
author Albin, Sam
Attebury, Garhan
Bloom, Kenneth
Bockelman, Brian
Lundstedt, Carl
Shadura, Oksana
Thiltges, John
author_facet Albin, Sam
Attebury, Garhan
Bloom, Kenneth
Bockelman, Brian
Lundstedt, Carl
Shadura, Oksana
Thiltges, John
contents The large data volumes expected from the High Luminosity LHC (HL-LHC) present challenges to existing paradigms and facilities for end-user data analysis. Modern cyberinfrastructure tools provide a diverse set of services that can be composed into a system that provides physicists with powerful tools that give them straightforward access to large computing resources, with low barriers to entry. The Coffea-Casa analysis facility (AF) provides an environment for end users enabling the execution of increasingly complex analyses such as those demonstrated by the Analysis Grand Challenge (AGC) and capturing the features that physicists will need for the HL-LHC. We describe the development progress of the Coffea-Casa facility featuring its modularity while demonstrating the ability to port and customize the facility software stack to other locations. The facility also facilitates the support of batch systems while staying Kubernetes-native. We present the evolved architecture of the facility, such as the integration of advanced data delivery services (e.g. ServiceX) and making data caching services (e.g. XCache) available to end users of the facility. We also highlight the composability of modern cyberinfrastructure tools. To enable machine learning pipelines at coffee-casa analysis facilities, a set of industry ML solutions adopted for HEP columnar analysis were integrated on top of existing facility services. These services also feature transparent access for user workflows to GPUs available at a facility via inference servers while using Kubernetes as enabling technology.
format Preprint
id arxiv_https___arxiv_org_abs_2312_11485
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Coffea-Casa: Building composable analysis facilities for the HL-LHC
Albin, Sam
Attebury, Garhan
Bloom, Kenneth
Bockelman, Brian
Lundstedt, Carl
Shadura, Oksana
Thiltges, John
Distributed, Parallel, and Cluster Computing
High Energy Physics - Experiment
The large data volumes expected from the High Luminosity LHC (HL-LHC) present challenges to existing paradigms and facilities for end-user data analysis. Modern cyberinfrastructure tools provide a diverse set of services that can be composed into a system that provides physicists with powerful tools that give them straightforward access to large computing resources, with low barriers to entry. The Coffea-Casa analysis facility (AF) provides an environment for end users enabling the execution of increasingly complex analyses such as those demonstrated by the Analysis Grand Challenge (AGC) and capturing the features that physicists will need for the HL-LHC. We describe the development progress of the Coffea-Casa facility featuring its modularity while demonstrating the ability to port and customize the facility software stack to other locations. The facility also facilitates the support of batch systems while staying Kubernetes-native. We present the evolved architecture of the facility, such as the integration of advanced data delivery services (e.g. ServiceX) and making data caching services (e.g. XCache) available to end users of the facility. We also highlight the composability of modern cyberinfrastructure tools. To enable machine learning pipelines at coffee-casa analysis facilities, a set of industry ML solutions adopted for HEP columnar analysis were integrated on top of existing facility services. These services also feature transparent access for user workflows to GPUs available at a facility via inference servers while using Kubernetes as enabling technology.
title Coffea-Casa: Building composable analysis facilities for the HL-LHC
topic Distributed, Parallel, and Cluster Computing
High Energy Physics - Experiment
url https://arxiv.org/abs/2312.11485