Bronze level automatically awarded US beta
This data has achieved Bronze level on 25 October 2015 which means this data makes a great start at the basics of publishing open data.
Productive Large Scale Personal Computing: Fast Multipole Methods on GPU/CPU Systems Project
Summary
- Type of release
- a one-off release of a single dataset
- Data Licence
- Not Applicable
- Content Licence
- Creative Commons CCZero
- Verification
- automatically awarded
- Release Date
- 9 April 2015
- Modified Date
- 8 July 2015
- Publishers
- National Aeronautics and Space Administration
- Keywords
- ames-research-center, completed, project
- Identifier
- productive-large-scale-personal-computing-fast-multipole-methods-on-gpu-cpu-systems-projec
- Landing Page
- http://techport.nasa.gov/view/6685
- Maintainers
- TECHPORT SUPPORT hq-techport@mail.nasa.gov
- Language
- en-US
Community verification
Other people can verify whether the answers on this certificate are correct.
This certificate is automatically awarded.
Sign in to verify or report this certificate
Description
To be used naturally in design optimization, parametric study and achieve quick total time-to-solution, simulation must naturally and personally be available to the scientist/engineer, as easily as email or word-processing. Environments such as Matlab/IDL allow ease of use, but unless simulations are extremely fast, they cannot be used naturally. Many large-scale numerical calculations require storage and computation that grow as the square/cube of the number of variables, including such linear algebra operations as solving dense linear systems, computing eigen-values/vectors, and others. The use of fast algorithms such as the fast multipole method (FMM) coupled with iterative methods allows many problems of interest to be solved in near linear time and memory. We have taken a leadership role in applying and extending the FMM to various problems in acoustics, fluid flow, electromagnetics, function fitting and machine learning. Graphical Processing Units (GPUs) are now ubiquitous in game consoles, in workstations and other devices and are special purpose processors for graphics, that are predicted to shortly achieve performance in the hundreds of gigaflop range for specialized calculations (much faster than COTS PCs) at low price points. It is conceivable now to equip personal workstations with several CPUs and GPUs, and solve problems with millions or billions of variables quickly using fast algorithms. We will take an important algorithm with wide applicability: the FMM, and implement it on the widely available heterogeneous CPU/GPU architecture, and prove the feasibility of accelerating it tremendously. A fundamental reconsideration of the algorithm that maps appropriate pieces on to the correct part of the architecture forms the basis of our approach. Developed software will be tested, and benchmark problems solved. A library of software that will support the porting of the FMM and other scientific computing to the CPU/GPU architecture will be developed.
General Information
-
This data is described at
http://catalog.data.gov/dataset/productive-large-scale-personal-computing-fast-multipole-methods-on-gpu-cpu-systems-projec Do you think this data is incorrect? Let us know
-
This data is published by
National Aeronautics and Space Administration Do you think this data is incorrect? Let us know
Legal Information
-
The rights statement is at
http://catalog.data.gov/dataset/productive-large-scale-personal-computing-fast-multipole-methods-on-gpu-cpu-systems-projec Do you think this data is incorrect? Let us know
-
Outside the US, this data is available under
Creative Commons CCZero Do you think this data is incorrect? Let us know
-
There are
yes, and the rights are all held by the same person or organisation Do you think this data is incorrect? Let us know
-
The content is available under
Creative Commons CCZero Do you think this data is incorrect? Let us know
-
The rights statement includes data about
its data licence Do you think this data is incorrect? Let us know
-
This data contains
no data about individuals Do you think this data is incorrect? Let us know
Practical Information
-
The data appears in this collection
http://catalog.data.gov/organization/nasa-gov Do you think this data is incorrect? Let us know
-
The accuracy or relevance of this data will
go out of date but it is timestamped Do you think this data is incorrect? Let us know
-
The data is
backed up offsite Do you think this data is incorrect? Let us know
Technical Information
-
This data is published at
http://techport.nasa.gov/xml-api/6685 Do you think this data is incorrect? Let us know
-
This data is
machine-readable Do you think this data is incorrect? Let us know
-
The format of this data is
a standard open format Do you think this data is incorrect? Let us know
Social Information
-
The documentation includes machine-readable data for
title Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
description Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
identifier Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
landing page Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
publisher Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
keyword(s) or tag(s) Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
distribution(s) Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
release date Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
modification date Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
temporal coverage Do you think this data is incorrect? Let us know
-
The documentation includes machine-readable data for
language Do you think this data is incorrect? Let us know
-
The documentation about each distribution includes machine-readable data for
release date Do you think this data is incorrect? Let us know
-
The documentation about each distribution includes machine-readable data for
a URL to access the data Do you think this data is incorrect? Let us know
-
The documentation about each distribution includes machine-readable data for
a URL to download the dataset Do you think this data is incorrect? Let us know
-
The documentation about each distribution includes machine-readable data for
type of download media Do you think this data is incorrect? Let us know
-
Find out how to contact someone about this data at
http://catalog.data.gov/dataset/productive-large-scale-personal-computing-fast-multipole-methods-on-gpu-cpu-systems-projec Do you think this data is incorrect? Let us know
-
Find out how to suggest improvements to publication at
http://www.data.gov/issue/?media_url=http://catalog.data.gov/dataset/productive-large-scale-personal-computing-fast-multipole-methods-on-gpu-cpu-systems-projec Do you think this data is incorrect? Let us know