تحول تدریس معلمان مبتنی بر هوش مصنوعی: سواد داده ای

نوع مقاله : مقاله پژوهشی

نویسندگان

1 گروه مدیریت آموزشی، دانشگاه فرهنگیان، تهران، ایران.

2 دانشیار مدیریت آموزشی، واحد محلات، دانشگاه آزاد اسلامی، محلات، ایران.

10.22034/trj.2025.144124.2209

چکیده

هدف: در دوران کنونی که هوش مصنوعی به سرعت در حال تغییر عرصه آموزش است، برای معلمان ضروری است که خود را با ابزارها و مهارت‌های جدید، به ویژه سواد داده‌ای، تجهیز کنند. لذا این پژوهش با هدف شناسایی استراتژی‌های تحول تدریس معلمان در عصر هوش مصنوعی با رویکرد سواد داده‌ای انجام شده است.
روش: این مطالعه از نظر هدف کاربردی و از لحاظ شیوه اجرا کیفی-تحلیل محتوا است. میدان پژوهش شامل دامنه اطلاعاتی هوش مصنوعی بود و نمونه‌گیری به شیوه هدفمند و تا حد اشباع داده‌ها انجام شد که در نهایت منجر به ۲۳ واحد گفتگو شد. چنانکه از آن به بعد داده تازه ای در گفتگوها یافته نشد و لذا خاتمه یافت برای جمع‌آوری داده‌ها، با ابزارهای هوش مصنوعی مانند چت جی پی تی و جاسپر گفتگوهایی صورت گرفت.  تحلیل داده‌ها بر اساس دسته‌بندی مفاهیم باز، زیرمقوله و مقوله اصلی صورت گرفت و برای اطمینان از روایی و اعتباربخشی داده‌ها از روش مثلث‌سازی استفاده شد.
نتایج: به‌کارگیری سواد داده‌ای باعث می‌شود معلمان بتوانند تدریس را دقیق‌تر، شخصی‌سازی‌شده‌تر و ایمن‌تر انجام دهند. معلمان با تحلیل داده‌ها، نیازهای واقعی هر دانش‌آموز را شناسایی می‌کنند؛ با سواد بصری، پیشرفت را شفاف نمایش می‌دهند؛ با سواد اخلاقی، از امنیت و عدالت داده‌ها محافظت می‌کنند؛ و با سواد عملیاتی، ابزارهای هوش مصنوعی را به‌صورت مستقل و حرفه‌ای به کار می‌گیرند. نتیجه این است که کلاس درس به محیطی هوشمند، کارآمد و مبتنی بر شواهد تبدیل می‌شود و نقش معلم از انتقال‌دهنده محتوا به طراح یادگیری مبتنی بر داده ارتقا می‌یابد.

کلیدواژه‌ها

موضوعات


عنوان مقاله [English]

The Transformation of Teachers' Teaching Based on Artificial Intelligence: Data Literacy

نویسندگان [English]

  • zeinab sadeghi 1
  • Farhad Shafiepour Mot lagh 2
1 Department of Educational Administration,, Farhangian University,Tehran, Iran.
2 Associate Professor of educational administration, Islamic Azad University (Mahallat Branch), Mahallat, Iran.
چکیده [English]

In the current era, we stand on the precipice of a profound and unprecedented transformation in the educational landscape, rooted in the remarkable advancements of Artificial Intelligence (AI). AI is no longer a science-fiction concept; it is rapidly integrating into all aspects of human life, including teaching and learning processes. From personalized learning tools to automated assessment systems and interactive platforms, AI offers immense potential to revolutionize how we teach and learn. While this transformation creates countless opportunities to enhance the quality and accessibility of education, it also presents new challenges for the educational system, particularly for teachers.

In such a dynamic landscape, it is essential for teachers to evolve from mere consumers of educational content into intelligent agents who can effectively work with the new tools and skills of this age. Among these, data literacy stands out as one of the most critical and vital skills. With increasing access to vast amounts of data, including student performance data, educational interactions, and online learning resources, teachers' ability to collect, analyze, interpret, and ethically utilize this data to improve educational processes has become increasingly important. Data literacy empowers teachers to base their instructional decisions not on guesswork but on evidence and data-driven insights. This includes understanding student learning patterns, identifying their strengths and weaknesses, personalizing curricula, and even evaluating the effectiveness of their own teaching methods. Without data literacy, the full potential of AI tools in the classroom will not be fully realized, and teachers may find themselves overwhelmed by a sea of information without being able to leverage it to improve their own performance and that of their students.

Accordingly, this research aims to identify strategies for transforming teacher instruction in the age of AI with a data literacy approach. This study is applied in terms of its objective and, in terms of implementation, it is a qualitative content analysis. This approach was chosen due to the exploratory nature of the research and the need for a deep understanding of complex phenomena such as instructional transformation strategies and data literacy within the context of AI.

To collect data, an innovative approach suited to the research topic was adopted: conversations with generative AI tools, specifically ChatGPT and Jasper. This choice was based on the premise that these tools, as prominent examples of AI, could reflect the vast and up-to-date knowledge available in cyberspace regarding AI, education, and data literacy. The conversations were conducted in a structured manner, involving open-ended and in-depth questions about how teaching is transforming, the role of data literacy, and the necessary strategies for teachers in the AI era. These interactions allowed for access to a wide range of relevant perspectives and information. The research field specifically encompassed the informational domain of AI and its applications in education, along with the concept of data literacy. Purposive sampling was chosen to ensure that conversations focused on relevant and information-rich topics. This process continued until data saturation was reached. This stage of the research resulted in the collection of a total of 23 conversation units, each containing meaningful information exchange with AI about various aspects of the topic. These conversation units, after initial screening for relevance and content quality, were used as raw data for analysis. Data analysis was performed based on a qualitative content analysis approach, across three main stages: open coding, sub-categorization, and main categorization. To ensure the validity and credibility of the data, the triangulation method was employed.

The results from the content analysis of conversations with AI tools clearly indicate that the transformation of teacher instruction in the AI era, with a data literacy approach, is built upon six main and complementary strategies. These strategies provide a comprehensive roadmap for teachers to effectively operate in data-driven and AI-powered educational environments. These six strategies are:

1. Descriptive Data Literacy: This foundational level involves the ability to collect, organize, and summarize data. Teachers must be able to describe raw data in a meaningful and understandable way to gain an initial picture of the status of students or the classroom.

2. Analytical Data Literacy: This strategy goes beyond mere description, focusing on the ability to analyze data to discover patterns, relationships, and correlations. Teachers should be able to use basic statistical tools or even AI-powered analytical tools to identify trends, predict potential learning difficulties, or compare the performance of different student groups. This aspect is crucial for informed and targeted decision-making.

3. Interpretive Data Literacy: The ability to correctly understand and interpret data analysis results within the real-world context of education. Merely having numbers and charts is not enough; teachers must be able to extract the true meaning of the data and relate it to practical teaching and learning challenges.

4. Visual Data Literacy: This strategy focuses on the ability to create and understand effective data visualizations (such as charts, graphs, and dashboards). Teachers should be able to present complex data information in a visual and understandable way so that both they and students or parents can quickly grasp key insights.

5. Ethical Data Literacy: In the age of big data and AI, ethical considerations and data privacy are of paramount importance. This strategy involves understanding accountability for collecting, storing, analyzing, and using student data, adhering to privacy principles, and being aware of potential biases in AI algorithms. Teachers must be able to use data in a responsible and fair manner.

6. Operational Data Literacy: This strategy refers to the practical and applied ability to use data and the insights derived from it in the daily teaching process. Teachers must be able to adjust their teaching strategies based on data, implement targeted educational interventions, and re-evaluate the results of their actions using data. This means translating data into effective action in the classroom.

Specifically, the results strongly emphasize the critical importance of analytical, visual, and ethical data literacy. Working with vast amounts of data (big data), effectively using AI tools, and conducting learning analytics without a deep understanding of these three levels of data literacy will not only be impossible but can also pose risks. For example, inaccurate analyses or a failure to adhere to ethical principles can lead to inappropriate educational decisions.

In conclusion, the findings of this research clearly demonstrate that in the AI era, teachers and educational leaders must be equipped with all these types of data literacy. This preparedness will not only enable them to effectively leverage the potential of AI in educational environments but will also empower them to become proactive agents in shaping the future of education, relying on evidence-based decisions and ethical responsibility.

کلیدواژه‌ها [English]

  • Transformation
  • Teaching
  • Teacher
  • Artificial Intelligence
  • Data Literacy