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PARATOOLS INC SBIR Phase I Award, February 2022

A SBIR Phase I contract was awarded to Paratools Limited in February, 2022 for $250,000.0 USD from the U.S. Department of Energy.

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sbir.gov/node/2232659
Is a
SBIR/STTR Awards
SBIR/STTR Awards

SBIR/STTR Award attributes

SBIR/STTR Award Recipient
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Paratools Limited
0
Government Agency
U.S. Department of Energy
U.S. Department of Energy
0
Award Type
SBIR0
Contract Number (US Government)
DE-SC00225020
Award Phase
Phase I0
Award Amount (USD)
250,0000
Date Awarded
February 14, 2022
0
End Date
February 13, 2023
0
Abstract

The software used in High Performance Computing (HPC) and Artificial Intelligence/Machine Learning (AI/ML) workloads is increasingly complex to maintain, install, and optimize. More problematic is the poor performance portability of applications between platforms, forcing site-specific re-engineering of codes. Existing solutions to deployment of AI/ML workflows on commercial cloud environments are platform- specific, preventing migration from one cloud provider to another. This project proposes to address the problem by combining the use of E4S, which provides multi-platform container images, with MVAPICH2, a highly-performant and performance-portable MPI library for fast, inter-and intra- node communication on AWS and other commercial cloud platforms. Phase I will evaluate the feasibility of this solution and build prototypes for evaluation. We will evaluate the use of MVAPICH2 to provide high-performance deployments of MPI applications on cloud platforms; build high-performance versions of commonly used Deep Learning frameworks for cloud deployment; make use of high-speed network adapters and GPUs within the cloud environments; and evaluate the creation of a web interface for one-click deployment of highly performant Deep Learning applications. The success of our Phase I project will deliver a productive platform for transitioning important HPC applications (many developed in DOE national laboratories) to more accessible cloud based HPC platforms in a portable manner while retaining high performance. It will be beneficial to practically all scalable HPC applications ranging from modeling and simulation to AI/ML, where advance message communication hardware and access to accelerator technologies are being more commonly supported in commercial cloud systems. In particular, data analytics and deep learning are areas of high growth and of benefit to a broad range of industries. High performance is critical for these codes — a poorly performing code wastes compute resources, preventing purchased hardware from being used for other uses, increasing a business’s costs for cloud computing resources, and increasing time to solution. This project will especially benefit the deep learning market by making deployment of applications on cloud platforms easier, facilitating portability between cloud platforms while maintaining performance, and reducing training time for deep learning models. Efficient use of pay-per-core-hour resources like public clouds reduces costs to users along with energy consumption

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