基于规则过滤的大学生求职系统

Fikri Nur Izzudin Amir Hamzah, A. Saad, ismail Yusuf Panessai
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引用次数: 0

摘要

目前的现实是,学生们经常被问及未来适合的职业道路,但他们不知道当前行业提供的工作。此外,寻求大学录取的学生经常在选择课程和教育项目方面遇到困难,他们面临着各种各样的可用课程。本研究旨在为学生制作一个适合其教育资格的就业职业选择的移动应用程序,因为学生经常被问及适合他们未来的职业,但却不知道合适的可用职业路径。本研究采用的方法是移动应用程序开发生命周期(MADLC),它有四个阶段,即识别、设计、开发和测试。使用Visual Studio Code与Flutter插件开发移动应用程序及其功能。Firebase用于获取数据库以存储所有数据,并作为应用程序的后端函数。根据列出系统所有可用功能的功能对完成的系统进行相应的测试。该系统考虑学生的学历和学业成就,提供个性化的推荐。该系统可以帮助学生做出职业决策,追求正确的职业道路,节省时间,减少做出错误选择的风险。这项研究表明,在继续大学学习之前,了解职业决策对学生的重要性。综上所述,本研究旨在提高学生对推荐系统所提供的职业路径的决策能力。
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Career Finder System using Rule-Based Filtering for University Student Candidates
As a current reality, students are frequently questioned about a suitable career path for the future, but they are unaware of the jobs offered by current industries. Moreover, students seeking university admission frequently encounter difficulties selecting courses and educational programs, and they are confronted with a variety of available courses. This research aims to make a mobile application for students to obtain employment career options appropriate to their educational qualifications because student is often asked about a suitable career for their future but have no idea about the available career path that appropriate. The methodology that implements in this research is Mobile Application Development Life Cycle (MADLC) that have four phases which is identification, design, development, and testing. The Visual Studio Code with Flutter plugin is used to develop the mobile application and its function. Firebase is used to get the database to store all the data and works as backend function of the application. The finished system was tested accordingly based on the functionality that listed all available function of the system. The system considers students' educational qualifications and academic achievements to provide personalized recommendations. This system can assist students in making career decisions and pursuing the right career path, saving them time, and reducing the risk of making wrong choices. This research indicates understanding the importance of career decision-making for students before continuing their university studies. In conclusion, this research seeks to enhance the ability of students to make decision of the available career path provided through recommendation system.
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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