Orchestration of materials science workflows for heterogeneous resources at large scale

Author:

Zhou Naweiluo1,Scorzelli Giorgio2,Luettgau Jakob1,Kancharla Rahul R3,Kane Joshua J3,Wheeler Robert4,Croom Brendan P5,Newell Pania2,Pascucci Valerio2,Taufer Michela1ORCID

Affiliation:

1. University of Tennessee Knoxville College of Engineering, Knoxville, TN, USA

2. University of Utah, Salt Lake, Utah, USA

3. Idaho National Laboratory, Idaho Falls, USA

4. MicroTesting Solutions LLC, Hilliard, OH, USA

5. Johns Hopkins University Applied Physics Laboratory, Laurel, MD, USA

Abstract

In the era of big data, materials science workflows need to handle large-scale data distribution, storage, and computation. Any of these areas can become a performance bottleneck. We present a framework for analyzing internal material structures (e.g., cracks) to mitigate these bottlenecks. We demonstrate the effectiveness of our framework for a workflow performing synchrotron X-ray computed tomography reconstruction and segmentation of a silica-based structure. Our framework provides a cloud-based, cutting-edge solution to challenges such as growing intermediate and output data and heavy resource demands during image reconstruction and segmentation. Specifically, our framework efficiently manages data storage, scaling up compute resources on the cloud. The multi-layer software structure of our framework includes three layers. A top layer uses Jupyter notebooks and serves as the user interface. A middle layer uses Ansible for resource deployment and managing the execution environment. A low layer is dedicated to resource management and provides resource management and job scheduling on heterogeneous nodes (i.e., GPU and CPU). At the core of this layer, Kubernetes supports resource management, and Dask enables large-scale job scheduling for heterogeneous resources. The broader impact of our work is four-fold: through our framework, we hide the complexity of the cloud’s software stack to the user who otherwise is required to have expertise in cloud technologies; we manage job scheduling efficiently and in a scalable manner; we enable resource elasticity and workflow orchestration at a large scale; and we facilitate moving the study of nonporous structures, which has wide applications in engineering and scientific fields, to the cloud. While we demonstrate the capability of our framework for a specific materials science application, it can be adapted for other applications and domains because of its modular, multi-layer architecture.

Funder

National Science Foundation

Publisher

SAGE Publications

Subject

Hardware and Architecture,Theoretical Computer Science,Software

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