Science is based upon observation. The scientific study of complex computer systems should therefore be based on observation of how they are used in practice, as opposed to how they are assumed to be used or how they were designed to be used. In particular, detailed workload logs from real computer systems are invaluable for research on performance evaluation and for designing new systems. Regrettably, workload data may suffer from quality issues that might distort the study results, just as scientific ob-servations in other fields may suffer from measurement errors. The cumulative experience with the Parallel Workloads Archive, a repository of job-level usage data from large-scale parallel supercomputers, clusters, and grids, has exposed m...
Measuring and reporting performance of parallel computers con-stitutes the basis for scientific adva...
Multiprocessors have permitted astounding increases in computational performance, but many cannot me...
I/O performance is a critical aspect of data-intensive scientific computing. We seek to advance the ...
Abstract Workload traces from real computer systems are invaluable for research purposes but regular...
The analysis of workload traces from real production parallel machines can aid a wide variety of par...
Parallel scientific applications require high-performance I/O support from underlying file systems. ...
Phenomenal improvements in the computational performance of multiprocessors have not been matched by...
Abstract—The complexity of modern computer systems may enable minor variations in performance evalua...
Parallel scientific applications require high-performance I/O support from underlying file systems. ...
Performance evaluation is a significant step in the study of scheduling algorithms in large-scale pa...
The performance of computer systems depends, among other things, on the workload. This motivates the...
High-performance parallel file systems are needed to satisfy tremendous I/O requirements of parallel...
grantor: University of TorontoUnderstanding the characteristics of parallel workloads aids...
This dataset contains over nine years worth of accounting records from the Euler supercomputer locat...
This paper presents a comprehensive statistical analysis of a variety of workloads collected on prod...
Measuring and reporting performance of parallel computers con-stitutes the basis for scientific adva...
Multiprocessors have permitted astounding increases in computational performance, but many cannot me...
I/O performance is a critical aspect of data-intensive scientific computing. We seek to advance the ...
Abstract Workload traces from real computer systems are invaluable for research purposes but regular...
The analysis of workload traces from real production parallel machines can aid a wide variety of par...
Parallel scientific applications require high-performance I/O support from underlying file systems. ...
Phenomenal improvements in the computational performance of multiprocessors have not been matched by...
Abstract—The complexity of modern computer systems may enable minor variations in performance evalua...
Parallel scientific applications require high-performance I/O support from underlying file systems. ...
Performance evaluation is a significant step in the study of scheduling algorithms in large-scale pa...
The performance of computer systems depends, among other things, on the workload. This motivates the...
High-performance parallel file systems are needed to satisfy tremendous I/O requirements of parallel...
grantor: University of TorontoUnderstanding the characteristics of parallel workloads aids...
This dataset contains over nine years worth of accounting records from the Euler supercomputer locat...
This paper presents a comprehensive statistical analysis of a variety of workloads collected on prod...
Measuring and reporting performance of parallel computers con-stitutes the basis for scientific adva...
Multiprocessors have permitted astounding increases in computational performance, but many cannot me...
I/O performance is a critical aspect of data-intensive scientific computing. We seek to advance the ...