Increased operational effectiveness and the dynamic integration of only temporarily available compute resources (opportunistic resources) becomes more and more important in the next decade, due to the scarcity of resources for future high energy physics experiments as well as the desired integration of cloud and high performance computing resources. This results in a more heterogenous compute environment, which gives rise to huge challenges for the computing operation teams of the experiments.
At the Karlsruhe Institute of Technology we design solutions to tackle these challenges. In order to ensure an efficient utilization of opportunistic resources and unified access to the entire infrastructure, we developed the Transparent Adaptive Resource Dynamic Integration System (TARDIS). A scalable multi-agent resource manager providing interfaces to provision as well as dynamically and transparently integrate resources of various providers into one common overlay batch system. Operational effectiveness is guaranteed by relying on COBalD - the Opportunistic Balancing Daemon and its simple approach of taking into account the utilization and allocation of the different resource types, in order to run the individual workflows on the best-suited resource respectively.
In this contribution we will present the current status of integrating various HPC centers and cloud providers into the compute infrastructure at the Karlsruhe Institute of Technology as well as our experiences gained in a production environment.
[1]
Miron Livny,et al.
Condor: a distributed job scheduler
,
2001
.
[2]
René Caspart,et al.
Setup and commissioning of a high-throughput analysis cluster
,
2020
.
[3]
Andy B. Yoo,et al.
Approved for Public Release; Further Dissemination Unlimited X-ray Pulse Compression Using Strained Crystals X-ray Pulse Compression Using Strained Crystals
,
2002
.
[4]
Vanessa Sochat,et al.
Singularity: Scientific containers for mobility of compute
,
2017,
PloS one.
[5]
Christoph Heidecker,et al.
Dynamic Resource Extension for Data Intensive Computing with Specialized Software Environments on HPC Systems
,
2019
.
[6]
Arie Shoshani,et al.
Storage resource managers: Middleware components for gridstorage
,
2005
.
[7]
Rajesh Raman,et al.
Matchmaking frameworks for distributed resource management
,
2000
.
[8]
I. Bird.
Computing for the Large Hadron Collider
,
2011
.
[9]
Walter Lampl,et al.
A Roadmap for HEP Software and Computing R&D for the 2020s
,
2019
.
[10]
Max Fischer,et al.
Lightweight dynamic integration of opportunistic resources
,
2020,
EPJ Web of Conferences.