Scalable Visual Analytics of Massive Textual Datasets

Scalable Visual Analytics of Massive Textual Datasets,10.1109/IPDPS.2007.370232,Manojkumar Krishnan,S. Bohn,W. Cowley,Vernon L. Crow,Jarek Nieplocha

Scalable Visual Analytics of Massive Textual Datasets   (Citations: 3)
BibTex | RIS | RefWorks Download
This paper describes the first scalable implementation of a text processing engine used in visual analytics tools. These tools aid information analysts in interacting with and understanding large textual information content through visual interfaces. By developing a parallel implementation of the text processing engine, we enabled visual analytics tools to exploit cluster architectures and handle massive datasets. The paper describes key elements of our parallelization approach and demonstrates virtually linear scaling when processing multi-gigabyte data sets such as Pubmed. This approach enables interactive analysis of large datasets beyond capabilities of existing state-of-the art visual analytics tools.
Cumulative Annual
View Publication
The following links allow you to view full publications. These links are maintained by other sources not affiliated with Microsoft Academic Search.
Sort by: