2019
DOI: 10.1177/1094342019847263
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Modeling high-throughput applications for in situ analytics

Abstract: With the goal of performing exascale computing, the importance of input/output (I/O) management becomes more and more critical to maintain system performance. While the computing capacities of machines are getting higher, the I/O capabilities of systems do not increase as fast. We are able to generate more data but unable to manage them efficiently due to variability of I/O performance. Limiting the requests to the parallel file system (PFS) becomes necessary. To address this issue, new strategies are being de… Show more

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Cited by 7 publications
(4 citation statements)
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“…Only a few recent attempts has leveraged simulation to enable the exploration of the in situ parameter space. Aupy et al designed a numerical simulator [10] that measures evaluation metrics for scheduling decisions by solving optimization problems on resource allocation and partitioning for an in situ analysis set. The simulator used a predetermined set of parameters to study the impact of the in situ analyses that are scheduled on the performance of the entire in situ execution.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…Only a few recent attempts has leveraged simulation to enable the exploration of the in situ parameter space. Aupy et al designed a numerical simulator [10] that measures evaluation metrics for scheduling decisions by solving optimization problems on resource allocation and partitioning for an in situ analysis set. The simulator used a predetermined set of parameters to study the impact of the in situ analyses that are scheduled on the performance of the entire in situ execution.…”
Section: Related Workmentioning
confidence: 99%
“…This user can act on two parameters to execute the desired amount of analysis: the frequency and the cost of one execution of the analysis/visualization component. For instance, if the main simulation loop is executed 8,000 times and 400 units of analysis have to be performed, (at least) four (frequency, cost) configurations can be envisioned: (20,1), (200,10), (500, 25), and (1000, 50). The (500, 25) configuration means that 25 units of analysis work are performed every 500 iterations.…”
Section: Assessing the Performance Of In Situ Processing Scenariosmentioning
confidence: 99%
“…Different approaches have been proposed in the literature to ascertain the performance gains brought by an in-situ (or in-transit) execution of a given scientific workflow application and determine the best configuration deployment of its components on a given target platform. We distinguish these approaches depending on whether they rely on actual experiments [3][4][5][6][7] or resort to simulation [8][9][10] to evaluate the performance of in-situ workflows. The former is intrinsically time-and resource-consuming while the latter may suffer from simplification biases when the abstract versions of the in-situ workflow components are developed.…”
Section: Related Workmentioning
confidence: 99%
“…Only a few recent attempts has leveraged simulation to enable the exploration of the in-situ parameter space. Aupy et al designed a numerical simulator [9] that measures evaluation metrics for scheduling decisions by solving optimization problems on resource allocation and partitioning for an in-situ analysis set. The simulator used a predetermined set of simulation parameters to study the impact of the in-situ analyses that are scheduled on the performance of the entire in-situ execution.…”
Section: Related Workmentioning
confidence: 99%