Statistical Data-based Performance Analysis on Qualitative Evaluation Items of the Blockchain-based Certificate Management System

2020 ◽  
Vol 18 (9) ◽  
pp. 115-124
Author(s):  
Dongwon Jeong ◽  
Sukhoon Lee
2021 ◽  
Author(s):  
Sarala Murugesan ◽  
Muralidhara Benakanahally Lakshminarasaiah

2021 ◽  
Author(s):  
Yifan Sun ◽  
Yixuan Zhang ◽  
Ali Mosallaei ◽  
Michael D. Shah ◽  
Cody Dunne ◽  
...  

Graphics Processing Units~(GPUs) have been widely used to accelerate artificial intelligence, physics simulation, medical imaging, and information visualization applications. To improve GPU performance, GPU hardware designers need to identify performance issues by inspecting a huge amount of simulator-generated traces. Visualizing the execution traces can reduce the cognitive burden of users and facilitate making sense of behaviors of GPU hardware components. In this paper, we first formalize the process of GPU performance analysis and characterize the design requirements of visualizing execution traces based on a survey study and interviews with GPU hardware designers. We contribute data and task abstraction for GPU performance analysis. Based on our task analysis, we propose Daisen, a framework that supports data collection from GPU simulators and provides visualization of the simulator-generated GPU execution traces. Daisen features a data abstraction and trace format that can record simulator-generated GPU execution traces. Daisen also includes a web-based visualization tool that helps GPU hardware designers examine GPU execution traces, identify performance bottlenecks, and verify performance improvement. Our qualitative evaluation with GPU hardware designers demonstrates that the design of Daisen reflects the typical workflow of GPU hardware designers. Using Daisen, participants were able to effectively identify potential performance bottlenecks and opportunities for performance improvement. The open-sourced implementation of Daisen can be found at gitlab.com/akita/vis. Supplemental materials including a demo video, survey questions, evaluation study guide, and post-study evaluation survey are available at osf.io/j5ghq.


2013 ◽  
Vol 723 ◽  
pp. 812-819 ◽  
Author(s):  
Jyh Dong Lin ◽  
Chia Tse Hung ◽  
Chien Ta Chen

In recent years, pavement engineering has gradually moved from new construction work to maintenance and management. However, effective real-time management by road regulatory authorities of all kinds of situations and distress that can affect pavement is a problem. At present, road regulatory authorities are subject to self-management mechanisms, however there are differences in resources for all unit levels and scales. This study utilizes a pavement management database in which statistical data has been stored that may change due to timing, environment, etc. As a result, spatial processing and the time factor are taken into account to develop a database of spatiotemporal objects and 3D Geo-Information. Finally we can provide useful pavement information and ways to improve system diversity. Keywords: spatial-temporal databases, pavement management system


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