Software—Practice & Experience
Adaptive algorithms for managing a distributed data processing workload
IBM Systems Journal
The grid: blueprint for a new computing infrastructure
The grid: blueprint for a new computing infrastructure
Information visualization: perception for design
Information visualization: perception for design
Mapping Cyberspace
Visualizing the Performance of Parallel Programs
IEEE Software
Toward a Framework for Preparing and Executing Adaptive Grid Programs
IPDPS '02 Proceedings of the 16th International Parallel and Distributed Processing Symposium
The NetLogger Methodology for High Performance Distributed Systems Performance Analysis
HPDC '98 Proceedings of the 7th IEEE International Symposium on High Performance Distributed Computing
SvPablo: A Multi-Language Architecture-Independent Performance Analysis System
ICPP '99 Proceedings of the 1999 International Conference on Parallel Processing
Tree-Maps: a space-filling approach to the visualization of hierarchical information structures
VIS '91 Proceedings of the 2nd conference on Visualization '91
Real-Time Performance Monitoring, Adaptive Control, and Interactive Steering of Computational Grids
International Journal of High Performance Computing Applications
Semiology of graphics
Triva: Interactive 3D visualization for performance analysis of parallel applications
Future Generation Computer Systems
Performance visualization for large-scale computing systems: a literature review
HCII'11 Proceedings of the 14th international conference on Human-computer interaction: design and development approaches - Volume Part I
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The state of work in a grid or other distributed computing environment can represent thousands of individual requests running on an equally large number of devices crossing heterogeneous platform and institutional boundaries.The article investigates Treemaps to present the state of work in a way that provides naive users with a view of overall performance as well as empowering performance analysts by allowing them to explore the data in a more creative way.