性能追踪器实时 CPU 指标和游戏化排名系统

Senthil Kumari P, Aishwarya S, Nageshwari B, Saravana Kumar G J, Joshika S, Nihetha M, Arul Chandru A N, Kalaivanan K
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引用次数: 0

摘要

本研究提出了一种创新方法,旨在利用以奖励为中心、优先考虑用户效率的框架,提高学生对 "自制忍者 "实验室的参与度。这种方法涉及对各种 CPU 指标的细致计算,包括 CPU 使用率、内存使用率、下载和上传统计、进程标识符以及读写统计等要素。这些指标共同提供了平台内用户交互的全面视图。收集到的数据经过精心整理后存储在 JSON 文件中,便于进行高效的数据管理和分析。为了促进这种方法的实现,我们部署了一个复杂的机器学习模型。该模型的关键目的是预测用户效率,这是决定用户参与 "自制忍者 "实验室效率的关键因素。在这一预测能力的基础上,建立了一套积分系统,与反映用户个人表现的排行榜紧密相连。通过这种动态奖励分配机制,激励用户积极参与并不断提高自己的能力,从而形成一个充满活力的学习生态系统。这一努力的最终成果是建立了一个经过精心调整的预测模型,可根据用户的参与度和熟练程度无缝分配奖励。这种量身定制的方法不仅提高了用户的积极性,还大大增强了 "自制忍者 "平台的整体教育效果。将探索性数据分析(EDA)和预测模型得出的见解整合在一起,确保了对用户行为和偏好的全面了解。因此,所建议的基于奖励的系统被提升到了一个新的效能水平,营造了一种学习环境,使学生能够更有意义地参与到 "自制忍者 "实验室中,从而促进学习成果的提高。
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Performance tracker: Real-time CPU Metrics and Gamified Ranking System
The study presents an innovative approach aimed at amplifying student engagement with the Selfmade Ninja labs, utilizing a reward-centric framework that prioritizes user efficiency. This approach involves the meticulous calculation of various CPU metrics, encompassing elements such as CPU usage, memory usage, download and upload statistics, process identifiers, as well as read and write statistics. These metrics collectively offer a comprehensive view of user interactions within the platform. The gathered data is thoughtfully curated and stored in a JSON file, facilitating efficient data management and analysis. To facilitate the realization of this approach, a sophisticated machine-learning model is deployed. This model serves the pivotal purpose of predicting user efficiency, a crucial factor in determining the efficacy of their engagement with the Selfmade Ninja labs. Building upon this predictive prowess, a system of credits is established, intricately tied to a leaderboard that reflects individual user performances. Through this dynamic reward distribution mechanism, users are incentivized to actively participate and continually enhance their proficiency, thereby fostering a vibrant learning ecosystem. The culmination of this endeavour is a finely tuned predictive model that seamlessly allocates rewards to users based on their demonstrated engagement and proficiency. This tailored approach not only magnifies user motivation but also significantly augments the overall educational impact of the Selfmade Ninja platform. The integration of insights derived from both exploratory data analysis (EDA) and the predictive model ensures a holistic understanding of user behaviors and preferences. Consequently, the proposed reward-based system is elevated to a new level of efficacy, nurturing a learning environment where students are empowered to engage more meaningfully with the Selfmade Ninja labs, fostering enhanced learning outcomes.
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