Opportunities and Challenges of Implementing Artificial Intelligence (AI) Technology in Educational Assessment and Supervision
DOI:
https://doi.org/10.69760/portuni.26030002Keywords:
Artificial Intelligence, Innovative Technologies and Security, Education System, Assessment, Monitoring, Modern ApproachesAbstract
We will explore how the integration of artificial intelligence (AI) into educational assessments is leading to revolutionary changes in the measurement and evaluation of learning. Capabilities such as automated assessment, adaptive testing, and real-time feedback offered by this technology help to address the limitations of traditional assessment methods such as manual grading more quickly and efficiently. These technologies also provide students with personalized learning experiences and enable data-driven insights into their performance. However, these innovations also introduce several challenges and ethical issues. One of the most significant concerns is algorithmic bias, which can particularly affect certain groups of students in systems like facial recognition and natural language processing. There are also concerns related to data privacy and over-reliance on automation. Despite these difficulties, artificial intelligence enhances the efficiency of the assessment process, provides rapid feedback, and helps identify learning gaps at an early stage. In the future, technologies such as emotion recognition and secure digital identification may further improve assessments. The successful implementation of AI in educational assessment depends on balancing technical capabilities with human oversight.
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