Performance Optimization Techniques : Improving Software Responsiveness

Authors

  • Santosh Panendra Bandaru  Independent Researcher, USA

Keywords:

Visualization Efficiency, GIS-Based, Dynamic Window Structures, Clustering Methods, Monitoring Efficiency, Factoring Code, Energy Performances, Object-Oriented Programs, Power Grid

Abstract

Due to the fact that object-oriented programming promotes folding code into tiny, reusable components, which increases the frequency of these costly activities, dynamically dispatched calls often restrict the performance of object-oriented applications. One aspect of more recent health or functional status measures that hasn't gotten much attention is how sensitive they are to clinical changes over time. Recent advancements in dynamic window systems, particularly in different attachment methods, have greatly enhanced windows' energy, thermal, and optical performance. The number of power grid devices in the national power system is growing, the power grid's structure is getting more complicated, and the distribution network's information construction is getting better, but real-time visualisation is still comparatively poor. In terms of information ionisation, the way information is now presented and interacted with is unable to keep up with the daily operations and maintenance management of the distribution network and the fast growth of the power supply scale. In this research, we examine responsive visualisation solutions for multiple terminals and grid panoramic visualisation display technologies based on geographic information systems. These technologies not only increase the distribution network's monitoring effectiveness but also shorten the time needed to identify and fix issues as they arise. Additionally, it makes it possible to visualise topological data and quickly get the information that is needed. In order to optimise both the visualisation components and the GIS rendering, the studies in this study use clustering techniques, which significantly increases the visualisation efficiency.

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Published

2021-04-30

Issue

Section

Research Articles

How to Cite

[1]
Santosh Panendra Bandaru "Performance Optimization Techniques : Improving Software Responsiveness" International Journal of Scientific Research in Science, Engineering and Technology (IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 8, Issue 2, pp.486-495, November-December-2021.