طراحی برنامه درسی دیجیتال در محیط کار مبتنی بر مولفه‌های هوش مصنوعی

نویسندگان
1 *گروه علوم تربیتی، دانشکده علوم تربیتی و روانشناسی، دانشگاه شهید بهشتی، تهران، ایران.
2 گروه علوم تربیتی، دانشکده علوم تربیتی و روانشناسی، دانشگاه شهید بهشتی، تهران، ایران.
3 گروه مهندسی کامپیوتر، دانشکده مهندسی وعلوم کامپیوتر، دانشگاه شهید بهشتی، تهران، ایران.
چکیده
زمینه و هدف: تحولات دیجیتال وظهور هوش مصنوعی درعرصه آموزش ویادگیری به‌ویژه در زمینه آموزش مدیران و منابع انسانی نیازمند تغییرات اساسی و نوآوری در رویکردهای آموزشی است. در همین راستا هدف پژوهش حاضر طراحی برنامه درسی دیجیتال در محیط کار مبتنی بر مولفه‌های هوش مصنوعی بود.

روش: پژوهش حاضر بر اساس هدف، کاربردی و از لحاظ نحوه گردآوری داده­‌ها، طرح کیفی است.از میان روش­‌های مختلف کیفی، از روش نظریه‌­داده بنیاد با رویکرد سازنده گرایی شارماز استفاده شد. جامعه پژوهش حاضر، کلیه متخصصان حوزه برنامه درسی، فناوری آموزشی، تکنولوژی آموزشی و هوش مصنوعی هستند و اطلاع رسان‌ها شامل 23 نفر از متخصصان بودند. به منظور گردآوری اطلاعات، از مصاحبه نیمه ساختاریافته، مشاهده و مطالعه اسناد و مدارک استفاده گردید. به منظور تجزیه و تحلیل اطلاعات در این پژوهش، از روش سه مرحله‌ای سوزان فریز شامل توجه، جمع آوری و تفکر به کمک نرم افزار اطلس تی آی7 انجام شد.

یافته ها: الگوی برنامه درسی فازی شامل برنامه درسی فاز1 (یادگیری مبتنی بر الگوی مشخص، طبقه بندی و سازماندهی محتوا، یادگیری خطی، یادگیری تحت نظارت بیرونی، یادگیری تقویتی و ادراک متقابل زبان)، برنامه درسی فاز2 (دانش ترکیبی در یادگیری، بهینه سازی یادگیری، یادگیری از داده های ناقص، یادگیری مبتنی بر استدلال، پیش بینی روند یادگیری و مواجه با مسائل یادگیری) و برنامه درسی فاز 3 (مواجه با مسائل غیرخطی، یادگیری عمیق، یادگیری بدون نظارت، خبرگی در یادگیری، تشابه یابی معنایی، یادگیری خودراهبر و انعطاف پذیری در یادگیری) بود.

نتیجه گیری: این الگو بر پایه منطق فازی هوش مصنوعی طراحی شده است و می‌تواند به بهبود طراحی برنامه درسی دیجیتال در محیط کار کمک کند. بر اساس مطالعات پیشینه، هیچ پژوهشی به این صورت یافت نشد که بتواند برنامه درسی دیجیتال در محیط کار رابه این نحو سازماندهی کرده و بنابراین، یافته‌های پژوهش حاضر و خروجی نهایی، کاملا منحصر به فرد بوده است.

کلیدواژه‌ها

عنوان مقاله English

Designing a Workplace Digital Curriculum Based on Artificial Intelligence Components

نویسندگان English

Farhad Fathi 1
Kourosh Fathi Vagargah 2
Esmaeil Jafari 2
Mojtaba Vahidi Asl 3
1 Department of Educational Sciences, Faculty of Education and Psychology, Shahid Beheshti University
2 Department of Educational Sciences, Faculty of Education and Psychology, Shahid Beheshti University
3 Department of Computer Engineering, Faculty of engineering and computer science, Shahid bahshti University, Tehran, Iran.
چکیده English

Businesses affected by digital transformations are facing new employee management and development needs. Employees in these companies not only need to acquire the right technical skills, but also have the mindset to help them cope with the new challenges of the digital workforce in the modern world. These changes and needs that are subsequently created in the development path lead to a digital transformation in the training of managers, as trainers and training professionals need to transition to new work forms to find, create and use digital tools to help future managers, companies and employees. The evolving literature of electronic human resource management expresses its challenges and potential. Stone et al. (2015) found that data-driven decision-making environments in the field of human interactions have a high ability to evaluate recruitment volunteers, improve staff levels, as well as provide digital tools for employee training and development. However, most studies in electronic Human Resource Management have concluded that more innovation is needed to improve the efficiency and performance of these digital tools.

In 2010, ifenthaler stated that in the not-too-distant future, when learners become active builders of their learning environments, setting individual goals and creating content structures for the knowledge and content they want to master, we may see the emergence of the true meaning of Constructivism (Ifenthaler, 2010) and that is now when eifenthaler mentioned it 12 years ago, and on this basis, the fundamental issue of research can be seen as the mismatch of the current situation.education and human resource development with new technologies. The digital age requires digital transformation in the most important context of humanity, the platform of teaching and learning. On the other hand, although the severity of the covid-19 pandemic has decreased and training has been resumed from the virtual platform, in the digital world and the volume of available data and the moment-to-moment updating of information, it is never possible to transfer them through face-to-face training. On the other hand, a person does not have the capacity to learn all the information and data available, so it is desirable that what he learns is based on his personal development, interests and expertise to make learning deeper and more effective. So this research seeks to address or adjust these issues to take a step towards improving the education and Human Resource Development situation in the country, and this will be achieved by designing a model of AI-based digital curriculum. To this end, the current research questions include:

1. What are the components of AI from the point of view of commentators?

2. What is the concept of digital curriculum from the point of view of commentators?

3. What are the coordinates of the AI-based digital curriculum model?

Methods and Materoal

Based on the purpose, the present research is applied, and in terms of data collection, it is a qualitative design. Among the various qualitative methods, the grounded theory method of the foundation was used with the constructivist approach of Charmaz. The current research community is all specialists in the field of curriculum, educational technology, educational technology and artificial intelligence, and the samples included 23 specialists. In order to collect information, semi-structured interview, observation and study of documents were used. In order to analyze the data in this research, the three-step method of Susanne Friese including noticing, collecting and thinking was done with the help of Atlas t.i software.

Resultss and Discussion


What are the components of AI from the point of view of commentators?


The components of artificial intelligence consisted of 5 Main and 19 sub-categories. These include charting systems (algorithm, phase logic, classification), learning systems (supervised learning ,unsupervised learning, hybrid knowledge - based systems, reinforcement learning, learning from incomplete data), semantic systems (self-learning, semantic similarity, natural language understanding, prediction), control of complex systems (dealing with nonlinear problems, expert system), neural network model (problem solving, optimization, flexibility, reasoning).

2. What is the concept of digital curriculum from the point of view of commentators?

The concept of digital curriculum has 6 Main and 33 sub-categories. These categories include digital curriculum objectives (increasing the capacity of program design by teachers, developing cognitive skills, meaningful learning experiences, participatory learning opportunities, educational dynamics, research-oriented, educational justice, self-learning), digital curriculum features (stable yet flexible, transforming learning into a lifelong process, balancing the learner and learning environment, using technology in the classroom, digital teaching culture, high compliance capacity), digital curriculum tools (educational games, digital laboratories, electronic libraries, simulators, environmental features of the digital curriculum (interactive, flexible, classroom Networking lessons, personalization of the learning environment), digital curriculum resources (Smart Textbooks,personalization of learning resources, web-based resources, open educational resources, textbooks), evaluation methods in the digital curriculum (online tests, video dialogue, video recorded by the learner, online critical texts, digital evaluation tools, quizzes).

3. What are the coordinates of the AI-based digital curriculum model?

phase curriculum model includes phase1 curriculum (learning based on specific pattern, classification and organization of content, linear learning, learning under external supervision, reinforcement learning and mutual understanding of language), phase2 curriculum (combined knowledge in learning, optimal building learning, learning from incomplete data, reasoning-based learning, predicting the learning process and facing learning problems) and phase3 curriculum (facing non-linear problems, deep learning, unsupervised learning, expertise in learning, semantic parallelism, self-directed learning and flexibility in learning).

Conclusion

Digital transformations have significantly changed teaching and learning practices. The present study examines the new needs of employee development and empowerment in the digital age, identifying the components of artificial intelligence and digital curriculum. The main objective of the present study is to define the components of artificial intelligence and then apply them in the form of digital curriculum elements. In other words, the digital curriculum in the workplace is defined by the components and functions of artificial intelligence.This model is designed based on the phase logic of artificial intelligence and can help to improve the design of the digital workplace curriculum. Based on the background studies, no research was found that could organize the digital workplace curriculum in this way, and therefore, the findings of the current research and the final output were completely unique.

کلیدواژه‌ها English

Curriculum model
Digital Curriculum
Workplace Curriculum
Phase Curriculum
Artificial intelligence
ظفری، مصطفی، اسماعیلی، علی و صادقی نیارکی، ابوالقاسم .(1400). مروری بر کاربرد های هوش مصنوعی و واقعیت مجازی در آموزش. مطالعات اندازه گیری و ارزشیابی آموزشی، 11 (36)، 89-16. [DOI:10.22034/emes.2021.251559]
Bhardwaj, G., Singh, S. V., & Kumar, V. (2020). An empirical study of artificial intelligence and its impact on human resource functions. In 2020 International Conference on Computation, Automation and Knowledge Management (ICCAKM) 47-51. IEEE. DOI: 10.1109/ICCAKM46823.2020.9051544 [DOI:10.1109/ICCAKM46823.2020.9051544]
پیروزفر، خدیجه و آزاد، رامین و معلمی، سمانه.(1402). کاربرد هوش مصنوعی در آموزش و یادگیری،کنفرانس بین المللی علوم انسانی ، علوم آموزشی ، حقوق و علوم اجتماعی.https://civilica.com/doc/1669151
Ifenthaler, D. (2010). Learning and instruction in the digital age. In J. M. Spector, D. Ifenthaler, P. Isaías, Kinshuk, & D. G. Sampson (Eds.), Learning and instruction in the digital age: Making a difference through cognitive approaches, technology-facilitated collaboration and assessment, and personalized communications (pp. 3-10). New York, NY: Springer.
Bhardwaj, G., Singh, S. V., & Kumar, V. (2020). An empirical study of artificial intelligence and its impact on human resource functions. In 2020 International Conference on Computation, Automation and Knowledge Management (ICCAKM) 47-51. IEEE. [DOI:10.1109/ICCAKM46823.2020.9051544]
Kaklij, V., Shah, V., Kunal, M., & Mandawkar, M. (2020). Microlearning based content-curation using Artificial Intelligence for Learning Experience Platform: A Survey. Shah, Mr. Kunal and Mandawkar, Mr. Umakant, Microlearning Based Content-Curation Using Artificial Intelligence for Learning Experience Platform: A Survey (August 19, 2020). IJRAR-International Journal of Research and Analytical Reviews (IJRAR), E-ISSN, 2348-1269.
Ifenthaler, D. (2010). Learning and instruction in the digital age. In J. M. Spector, D. Ifenthaler, P. Isaías, Kinshuk, & D. G. Sampson (Eds.), Learning and instruction in the digital age: Making a difference through cognitive approaches, technology-facilitated collaboration and assessment, and personalized communications (pp. 3-10). New York, NY: Springer.
Kim, M. Y., Atakishiyev, S., Babiker, H. K. B., Farruque, N., Goebel, R., Zaïane, O. R., ... & Chun, P. (2021). A multi-component framework for the analysis and design of explainable artificial intelligence. Machine Learning and Knowledge Extraction, 3(4), 900-921. [DOI:10.3390/make3040045]
Kaklij, V., Shah, V., Kunal, M., & Mandawkar, M. (2020). Microlearning based content-curation using Artificial Intelligence for Learning Experience Platform: A Survey. Shah, Mr. Kunal and Mandawkar, Mr. Umakant, Microlearning Based Content-Curation Using Artificial Intelligence for Learning Experience Platform: A Survey (August 19, 2020). IJRAR-International Journal of Research and Analytical Reviews (IJRAR), E-ISSN, 2348-1269.
Kose, U. (Ed.). (2014). Artificial Intelligence applications in distance education. IGI Global. [DOI:10.4018/978-1-4666-6276-6]
Kim, M. Y., Atakishiyev, S., Babiker, H. K. B., Farruque, N., Goebel, R., Zaïane, O. R., ... & Chun, P. (2021). A multi-component framework for the analysis and design of explainable artificial intelligence. Machine Learning and Knowledge Extraction, 3(4), 900-921. [DOI:10.3390/make3040045]
Mahmoudi-Dehaki, M., Chalak, A., & Heidari Tabrizi, H. (2021). The Impact of Learning through Management System vs. Learning through Experience Platform on Exam Results of Digital Natives and Digital Immigrants. Journal of Teaching Language Skills, 40(3), 117-158. DOI: 10.22099/jtls.2021.39227.2922
Kose, U. (Ed.). (2014). Artificial Intelligence applications in distance education. IGI Global. [DOI:10.4018/978-1-4666-6276-6]
Mellit, A., & Kalogirou, S. A. (2008). Artificial intelligence techniques for photovoltaic applications: A review. Progress in energy and combustion science, 34(5), 574-632. [DOI:10.1016/j.pecs.2008.01.001]
Mahmoudi-Dehaki, M., Chalak, A., & Heidari Tabrizi, H. (2021). The Impact of Learning through Management System vs. Learning through Experience Platform on Exam Results of Digital Natives and Digital Immigrants. Journal of Teaching Language Skills, 40(3), 117-158. DOI: 10.22099/jtls.2021.39227.2922
Pepin, B., Choppin, J., Ruthven, K., & Sinclair, N. (2017). Digital curriculum resources in mathematics education: foundations for change. ZDM, 49, 645-661. [DOI:10.1007/s11858-017-0879-z]
Mellit, A., & Kalogirou, S. A. (2008). Artificial intelligence techniques for photovoltaic applications: A review. Progress in energy and combustion science, 34(5), 574-632. [DOI:10.1016/j.pecs.2008.01.001]
Rožman, M., Tominc, P., & Milfelner, B. (2023). Maximizing employee engagement through artificial intelligent organizational culture in the context of leadership and training of employees: Testing linear and non-linear relationships. Cogent Business & Management, 10(2). [DOI:10.1080/23311975.2023.2248732]
Pepin, B., Choppin, J., Ruthven, K., & Sinclair, N. (2017). Digital curriculum resources in mathematics education: foundations for change. ZDM, 49, 645-661. [DOI:10.1007/s11858-017-0879-z]
Sandberg, O., & Sjöqvist, J. (2022). Implementing a gamified e-learning platform to teach softskills to bachelor students. [DOI:10.1080/23311975.2023.2248732]
Pirozfar, Khadijah and Azad, Ramin and Moalemi, Samaneh, 2021, Application of artificial intelligence in teaching and learning, International Conference on Humanities, Educational Sciences, Law and Social Sciences (In Persian)
Stone, D.L., D.L. Deadrick, K.M. Lukaszewski and R. Johnson (2015), 'The influence of technology on the future of human resource management', Human Resource Management Review, 25(2), 216-31. [DOI:10.1016/j.hrmr.2015.01.002]
Rožman, M., Tominc, P., & Milfelner, B. (2023). Maximizing employee engagement through artificial intelligent organizational culture in the context of leadership and training of employees: Testing linear and non-linear relationships. Cogent Business & Management, 10(2). [DOI:10.1080/23311975.2023.2248732]
Sandberg, O., & Sjöqvist, J. (2022). Implementing a gamified e-learning platform to teach softskills to bachelor students. [DOI:10.1080/23311975.2023.2248732]
Stone, D.L., D.L. Deadrick, K.M. Lukaszewski and R. Johnson (2015), 'The influence of technology on the future of human resource management', Human Resource Management Review, 25(2), 216-31. [DOI:10.1016/j.hrmr.2015.01.002]
zafari, M., esmaeily, A., & Sadeghi-Niaraki,. (2021). An Overview of the Applications of Artificial Intelligence and Virtual Reality in Education. Educational Measurement and Evaluation Studies, 11(36), 89-116.(In Persian) [DOI:10.3390/app112311534]