We can't find the internet
Attempting to reconnect
Something went wrong!
Hang in there while we get back on track
Harnessing Artificial Intelligence to Increase the Efficiency of Education Management in the Future
Summary
This paper is not about microplastics; it examines the use of artificial intelligence to improve educational management and teaching effectiveness.
Education is a process for all time. The dynamic nature of education also means that the acceleration of life must be responded quickly with responsive education services. If education has an activity base that only repeats the past without getting closer to the contestual aspects of the present, then education will become static and will become an activity that does not provide implications at the level of current life solutions. So the future education is education that is not value-free. Valuing education is education that is always based on aspects of usefulness for the development of human life. Education is not only based on exams and textual problem solving. More than that, that education must be a solution to all the problems of today's life. So that no matter how fast the development of life is, education must still embrace that development so that it can be filled with the values of life sourced from religious values and community norms. The purpose of this study is to determine the utilization of artificial intelligence to improve the efficient management of education in the future. This research method uses quantitative research methods, where the data is obtained from the results of distributing questionnaires online. The results showed that creative teaching strategies were able to improve student achievement and motivation to learn. From this research it can be concluded that the utilization of artificial intelligence to improve the efficiency of education management in the future. The limitation of this research is that it can only do the utilization of artificial intelligence even though there are many more utilizations that can improve the efficient management of education in the future. Researchers hope that future researchers can conduct research related to the utilization of artificial intelligence to improve future education management efficiency but with other utilization. This study also recommends that future researchers make this research a reference in conducting research on improving the efficiency of students' future education management through the use of artificial intelligence.
Sign in to start a discussion.
More Papers Like This
Exploring the Research on Utilizing Machine Learning in E-Learning Systems
Not relevant to microplastics — this systematic literature review surveys how machine learning techniques are applied in e-learning systems to improve educational outcomes and predict student performance.
The Role of Artificial Intelligence in Microplastic Pollution Studies and Management
This review explores how artificial intelligence is transforming microplastic research, from automating detection in microscopy images and spectral analysis to predicting how plastics interact with pollutants and living organisms. AI-powered sensors and real-time monitoring systems are also being integrated into wastewater treatment to reduce microplastic release, making the technology a powerful tool for both understanding and managing plastic pollution.
Artificial intelligence-empowered collection and characterization of microplastics: A review
This review examines how artificial intelligence tools like robots and machine learning are being used to collect, identify, and characterize microplastic pollution more efficiently. Better detection technology matters for human health because accurately measuring microplastic contamination in water and soil is the first step toward understanding and reducing our exposure.
The Use of Artificial Intelligence and Machine Learning in Creating a Roadmap Towards a Circular Economy for Plastics
This paper examines how artificial intelligence and machine learning can help transition the plastics industry toward a circular economy. AI tools can optimize recycling processes, predict material degradation, and identify opportunities to reduce plastic waste before it enters the environment.
A Critical Review on Artificial Intelligence—Based Microplastics Imaging Technology: Recent Advances, Hot-Spots and Challenges
Researchers reviewed the use of artificial intelligence and machine learning techniques for detecting and identifying microplastics in environmental samples. The study found that AI-based imaging tools can significantly speed up analysis and improve accuracy compared to traditional manual methods. However, challenges remain around standardizing datasets and making these tools accessible for routine environmental monitoring.