ToolMatch: Discovering What Tools can be used to Access, Manipulate, Transform, and Visualize Data

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Presented at the ESIP Winter Meeting 2014


The accessibility of science data products is becoming increasingly easier, with more and more data and scientific community portals coming online all the time. But what can one do with the data product once it has been found? Can I visualize the data product as a map, plot, or graph? Can I import the data into a particular data manipulation tool like MatLab or IDL or iPython Notebook? How is the dataset accessible, and what kind of data products can be generated from it? ToolMatch is a crowd source approach (ontological model, information model, RDF Schema) that allows data and tool providers, and portal developers to enable user discovery of what can be done with a science data product, or conversely, which science data products are usable within a given tool.

Example queries may include "I need data for Carbon dioxide (CO2) concentrations, a climate change indicator, for the summer of 2012, that can be accessed via OPeNDAP Hyrax and plotted as a timeseries.", or "I need data with measurements of atmospheric aerosol optical depth sliced along latitude and longitude, returned as netcdf data, and accessible in MatLab."

This contribution outlines the progress of the ToolMatch development, plans for utilizing its capabilities, and efforts to leverage and enhance the use of ToolMatch in various portals.


DateCreated ByLink
January 4, 2014
Patrick WestDownload
December 31, 2013
Patrick WestDownload
December 31, 2013
Patrick WestDownload

Related Projects:

TW LogoToolMatch (ToolMatch)
Description: or a given dataset, it is difficult to find the tools that can be used to work with the dataset. In many cases, the information that Tool A works with Dataset B is somewhere on the Web, but not in a readily identifiable or discoverable form. In other cases, particularly more generalized tools, the information does not exist at all, until somebody tries to use the tool on a given dataset. Thus, the simplest, most prevalent use case is for a user to search for the tools that can be used with a given dataset. A further refinement would be to specify what the tool can do with the dataset, e.g., read, visualize, map, analyze, reformat.

Related Research Areas:

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Description: Knowledge Provenance
Concepts: Provenance,
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Science has fully entered a new mode of operation. E-science, defined as a combination of science, informatics, computer science, cyberinfrastructure and information technology is changing the way all of these disciplines do both their individual and collaborative work.
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Concepts: , eScience