Preprint
Article

This version is not peer-reviewed.

The Future of Artificial Intelligence in Physical Education: Opportunities, Challenges, and Strategic Solutions

Submitted:

09 July 2025

Posted:

10 July 2025

You are already at the latest version

Abstract
This paper explores the transformative potential of artificial intelligence (AI) in physical education (PE) through a comprehensive review of literature and case studies. With supportive policies, AI leverages technologies such as machine learning, computer vision, virtual reality (VR), and augmented reality (AR) to enable personalized instruction, enhance teaching efficiency, streamline administrative processes, and enrich student learning experiences. However, integrating AI into PE presents challenges, including the need for teacher and student adaptation, high costs of equipment acquisition and maintenance, data privacy and ethical concerns, and difficulties in assessing teaching outcomes. To address these, the paper proposes strategies such as targeted teacher training, student engagement initiatives, cost- effective equipment sharing, robust privacy frameworks, and diversified evaluation systems. These solutions aim to provide theoretical and practical guidance for the intelligent evolution of PE, fostering its high-quality development in the modern era.
Keywords: 
;  ;  ;  
Subject: 
Arts and Humanities  -   Other
Contents
Abstract                           1
1. 
Introduction                      2
2. 
Opportunities for AI in Physical Education        2
2.1. 
Personalized Instruction               2
2.2. 
Enhanced Teaching Efficiency                   2
2.3. 
Intelligent Administrative Systems          3
2.4. 
Immersive Learning with VR and AR         3
3. 
Challenges of AI in Physical Education            3
3.1. 
Inappropriate Use by Teachers and Students     3
3.2. 
High Costs of Equipment and Maintenance       3
3.3. 
Data Privacy and Ethical Risks            3
3.4. 
Difficulties in Evaluating Teaching Outcomes     4
4. 
Strategies to Address Challenges              4
4.1. 
Enhancing Teacher Training and Student Engagement  4
4.2. 
Securing Funding and Optimizing Equipment Use     4
4.3. 
Strengthening Data Privacy and Ethical Frameworks  4
4.4. 
Developing Diversified Evaluation Systems      5
5. 
Conclusion                        5
6. 
References                         6

1. Introduction

Artificial intelligence (AI) encompasses theories, methods, technologies, and systems designed to emulate, extend, and enhance human intelligence, enabling machines to perform tasks requiring intellectual capabilities [1]. In recent years, global policies have increasingly emphasized AI’s role in education. For instance, initiatives like the 2017 New Generation Artificial Intelligence Development Plan and the 14th Five-Year Plan for Sports Development advocate for integrating AI, big data, and other technologies into educational frameworks, including physical education [2,3]. These policies highlight AI’s potential to revolutionize PE by enhancing teaching methodologies, improving management systems, and creating immersive learning environments.
AI’s applications in education span personalized learning, teaching support, administrative efficiency, and evaluation systems, leveraging technologies like machine learning, computer vision, natural language processing, and VR/AR [4]. In PE, AI offers unprecedented opportunities to tailor instruction to individual student needs, optimize training processes, and enhance engagement through innovative technologies. However, challenges such as technological adaptation, cost barriers, ethical risks, and evaluation complexities must be addressed to fully realize AI’s potential. This study examines AI’s prospects in PE, identifies key challenges, and proposes actionable strategies to support its intelligent transformation.

2. Opportunities for AI in Physical Education

2.1. Personalized Instruction

Personalized instruction is a cornerstone of modern education, aiming to address individual student needs. AI facilitates this by analyzing data on students’ physical fitness, motor skills, and interests to design tailored training programs. As Keller noted, data-driven personalization is critical for effective education [5]. Unlike traditional PE, where uniform curricula often overlook individual differences, AI enables customized learning paths.
For example, wearable devices can monitor heart rate and exercise intensity, allowing AI systems to adjust training regimens in real time to prevent overexertion or undertraining. Motion capture technology further enhances personalization by analyzing movement patterns, identifying errors, and suggesting corrections. These capabilities improve student engagement, cater to diverse needs, and promote holistic development [6].

2.2. Enhanced Teaching Efficiency

AI significantly boosts teaching efficiency in PE. Guidelines such as the 2021 Quality Evaluation Guide for Compulsory Education emphasize process-oriented and developmental assessments to guide improvement [7]. AI supports this by providing real-time data analysis and feedback. For instance, wearable sensors track students’ physiological metrics, enabling teachers to adjust training intensity dynamically. Computer vision systems offer instant feedback on movement techniques, reducing the time needed for manual observation and correction.
Moreover, AI streamlines lesson planning and resource allocation. Data- driven insights allow teachers to optimize curricula and focus on instructional quality, creating efficient, interactive, and personalized learning environments [8]. This shift transforms teachers into facilitators, enhancing student outcomes.

2.3. Intelligent Administrative Systems

AI-powered administrative systems revolutionize PE management by integrating data analysis into course scheduling, resource allocation, and student tracking. Virtual simulation platforms enable real-time monitoring of student progress, allowing teachers to tailor instruction based on individual performance [9]. For example, AI can analyze student data to optimize class schedules, ensuring alignment with physical capabilities and skill levels.
These systems also improve resource utilization by allocating facilities and equipment efficiently. Automated data recording and analysis provide detailed performance reports, enabling evidence-based decision-making. Such intelligent management enhances overall teaching quality and creates a structured, data-driven learning environment.

2.4. Immersive Learning with VR and AR

Virtual reality (VR) and augmented reality (AR) technologies transform PE by creating immersive and interactive learning experiences. VR simulates realistic sports environments, such as virtual soccer fields, where students can practice against simulated opponents, enhancing technical skills and engagement. AR overlays real-time feedback onto physical activities, such as displaying posture corrections during basketball drills.
These technologies also reduce injury risks by allowing students to practice high-risk movements in safe, virtual settings. Additionally, VR/AR transcends spatial and temporal constraints, enabling flexible, location-independent training. By fostering engagement and skill development, these tools redefine traditional PE methodologies [10].

3. Challenges of AI in Physical Education

3.1. Inappropriate Use by Teachers and Students

While AI offers significant benefits, inappropriate use by teachers and students poses challenges. Some teachers over-rely on technology, diminishing student-teacher interactions, while others use AI superficially to meet administrative requirements, limiting its impact [11]. Students, accustomed to traditional instruction, may struggle with AI tools due to unfamiliarity, reducing learning efficiency. Over-dependence on AI feedback can also weaken critical thinking and problem-solving skills, as students may follow system prompts without understanding underlying issues.

3.2. High Costs of Equipment and Maintenance

Implementing AI in PE requires substantial investment in hardware, such as wearable devices, high-definition cameras, and servers. These costs can be prohibitive, particularly for underfunded schools. Maintenance expenses, including hardware repairs and software updates, further strain budgets. Without adequate technical support, schools face challenges in sustaining AI systems, limiting adoption and scalability [12].

3.3. Data Privacy and Ethical Risks

AI’s reliance on sensitive student data, such as health metrics and performance records, raises privacy and ethical concerns. Data breaches or misuse could compromise student privacy, necessitating robust protection measures [13]. Ethical issues, such as ensuring fairness and transparency in AI-driven decisions, also require careful consideration to prevent biases and maintain trust.

3.4. Difficulties in Evaluating Teaching Outcomes

Assessing AI’s impact on PE is complex due to the lack of standardized evaluation metrics. Traditional assessments, focused on physical performance and subjective teacher evaluations, are ill-suited for AI-driven personalized training and virtual environments. Factors like equipment accuracy, algorithm reliability, and student engagement further complicate assessments, hindering continuous improvement [14].

4. Strategies to Address Challenges

4.1. Enhancing Teacher Training and Student Engagement

To fully harness AI’s potential in physical education, comprehensive teacher training and improved student engagement are critical. Teachers must develop proficiency in AI tools to integrate them effectively into their pedagogy. Structured training programs, including workshops, seminars, and hands-on sessions, can equip educators with the necessary skills to navigate AI systems, interpret data outputs, and incorporate them into lesson plans [15]. For example, training could focus on using motion capture systems to analyze student movements or leveraging wearable devices to monitor physiological data. Collaborative initiatives, such as inviting experts to demonstrate AI applications in PE, can further enrich teacher training by showcasing real-world case studies and best practices.
For students, user-friendly interfaces and guided tutorials are essential to reduce resistance to AI tools and enhance engagement. Schools can implement onboarding programs that introduce students to AI-driven devices, such as smart wristbands or AR glasses, through interactive tutorials and gamified learning experiences. These initiatives foster familiarity and confidence, enabling students to leverage AI tools effectively. Additionally, fostering a collaborative learning environment where students and teachers co-explore AI applications can strengthen teacher-student interactions, countering the risk of over-reliance on technology. By aligning training with practical classroom needs, these efforts ensure a seamless transition to technology-enhanced PE, promoting both teaching efficacy and student motivation.

4.2. Securing Funding and Optimizing Equipment Use

The high costs associated with AI equipment acquisition and maintenance pose significant barriers, particularly for resource-constrained schools. To address this, innovative funding strategies are essential. Governments and educational institutions should prioritize dedicated budgets for AI integration in PE, allocating funds to support the procurement of advanced equipment like sensors, cameras, and VR/AR systems. Partnerships with private sectors, such as technology companies, can further alleviate financial pressures through subsidies, donations, or discounted pricing models. For instance, corporate sponsorships or grants from tech firms specializing in educational technology could offset initial investment costs.
To optimize resource utilization, schools should adopt cost-effective equipment selection strategies, prioritizing devices with high durability and versatility to meet diverse teaching needs. Establishing regional equipment-sharing networks can further maximize resource efficiency. By creating shared repositories of AI tools, such as motion capture systems or wearable devices, schools within a district can access advanced technology without incurring redundant costs. These networks can be managed through centralized scheduling systems to ensure equitable access and minimize equipment downtime. Such collaborative approaches not only reduce financial burdens but also promote scalability, enabling broader adoption of AI in PE [16].

4.3. Strengthening Data Privacy and Ethical Frameworks

The integration of AI in PE necessitates robust data privacy and ethical frameworks to protect sensitive student information, such as health metrics and performance data. To safeguard privacy, schools must implement stringent measures, including data encryption, anonymization, and role-based access controls, to prevent unauthorized access or breaches. Compliance with international regulations, such as the General Data Protection Regulation (GDPR) and the Health Insurance Portability and Accountability Act (HIPAA), ensures that data collection and usage adhere to legal and ethical standards [17,18]. Additionally, schools should establish clear policies outlining the scope and purpose of data use, ensuring transparency and accountability.
Ethical education is equally critical to fostering responsible AI use. Teacher training programs should incorporate modules on AI ethics, emphasizing principles like fairness, transparency, and bias mitigation. For example, educators should be trained to recognize and address potential algorithmic biases in AI-driven feedback systems. Students, too, must be educated on the ethical implications of AI, including the importance of data privacy and the risks of over-dependence on technology. Schools can integrate these topics into PE curricula through discussions and case studies, cultivating a culture of ethical awareness. Furthermore, establishing transparent accountability mechanisms, such as audit trails for AI system decisions, ensures that any ethical or privacy issues can be promptly identified and addressed. These combined efforts create a secure and ethically sound environment for AI integration in PE.

4.4. Developing Diversified Evaluation Systems

The complexity of evaluating AI-driven PE outcomes requires a comprehensive and diversified evaluation system that integrates multiple assessment methods and leverages advanced analytics. Traditional metrics, such as physical performance scores or subjective teacher observations, are insufficient for capturing the nuanced impacts of AI-driven personalized training and virtual learning environments. A multifaceted approach should incorporate self-assessments, peer reviews, and AI-driven analytics to provide a holistic view of student progress. Self- assessments encourage students to reflect on their performance, fostering metacognitive skills, while peer reviews promote collaboration and mutual learning. These qualitative methods complement quantitative data, creating a balanced evaluation framework.
Intelligent tools play a pivotal role in enhancing evaluation accuracy and depth. By leveraging big data analytics and machine learning, AI systems can analyze metrics such as movement patterns, heart rate variability, and engagement levels to generate detailed performance reports. For instance, motion capture systems can quantify the precision of a student’s technique, while wearable devices track physiological responses to exercise intensity. These reports provide actionable insights, enabling teachers to identify areas for improvement and tailor interventions to individual needs. Longitudinal tracking further enhances this approach by monitoring student progress over time, revealing trends and developmental trajectories. For example, comparing a student’s sprint times or skill acquisition rates across months can highlight growth patterns or persistent challenges.
To operationalize this system, schools should invest in AI-driven evaluation platforms that integrate seamlessly with existing PE curricula. These platforms can generate real-time dashboards for teachers, summarizing student performance across multiple dimensions, such as technical proficiency, physical endurance, and psychological engagement. By combining these insights with student and peer feedback, educators can develop personalized coaching strategies that address specific weaknesses and build on strengths. This dynamic, data-driven evaluation approach not only enhances teaching precision but also supports continuous improvement, ensuring that AI’s transformative potential is fully realized in PE [19].

5. Conclusion

Artificial intelligence (AI) possesses significant potential to revolutionize the field of physical education by enabling ultra-personalized instruction tailored to individual student needs, thereby enhancing engagement and improving learning outcomes. Through sophisticated algorithms, AI can analyze a student’s performance data, physical capabilities, and learning preferences to craft custom training regimens that address specific strengths and weaknesses. Additionally, AI can streamline administrative processes, such as attendance tracking and scheduling, allowing educators to focus more on teaching rather than administrative burdens.
Moreover, AI can create immersive learning experiences through virtual reality (VR) and augmented reality (AR) technologies. These innovative platforms can simulate diverse environments and scenarios, providing students with unique opportunities to practice skills in a safe yet dynamic context. However, several challenges must be considered to ensure the sustainable integration of AI into physical education programs. Key issues include adaptation barriers, particularly for educators who may lack the technical skills to implement these advanced tools effectively. High implementation costs pose another significant hurdle, especially for underfunded schools. Additionally, privacy risks related to data collection and student information management need to be carefully navigated to protect vulnerable populations. Furthermore, evaluating the effectiveness of AI-driven methods can be complex, necessitating the development of new metrics to assess learning and skill acquisition accurately.
To harness AI's full potential in physical education, stakeholders must adopt a multifaceted approach. This includes providing targeted training for educators to enhance their technical competency, securing funding to support the integration of AI technologies, and strengthening ethical frameworks to ensure responsible use of data. Additionally, developing diversified evaluation systems that recognize varied learning styles and outcomes will be crucial in measuring success effectively.
Future research should not only explore specific applications of AI in various sports and physical activities but also refine policy frameworks that govern its use. Addressing emerging challenges, such as maintaining student privacy and ensuring equitable access to technology, will be vital in supporting the intelligent evolution of physical education. By focusing on these areas, educators can cultivate an enriching and high-quality learning environment that leverages the transformative capabilities of AI.

References

  1. Stephen, L., Danny K. Artificial Intelligence in the 21st Century. 2nd edition. Mercury Learning and Information, 2015: 29-31.
  2. State Council of China. Notice on the New Generation Artificial Intelligence Development Plan [A/OL]. (2017-07-20) [2023-07-10]. https://www.gov.cn/zhengce/content/2017-07/20/content_5211996.htm.
  3. State Council of China. 14th Five-Year Plan for Digital Economy Development [EB/OL]. (2022-01-12) [2024-10-06]. https://www.gov.cn/zhengce/zhengceku/2022-01/12/content_5667817.htm.
  4. 2022 Artificial Intelligence Education Blue Book [EB/OL]. (2022-03-26) [2022-07-29]. https://new.qq.com/omn/20220326/20220326A0AFVZ00.html.
  5. Keller F, S. "Ten Years of Personalized Instruction." Teaching of Psychology, 1974, 1(1): 4-9. [CrossRef]
  6. Mou Z, J. "Rethinking Personalized Learning in the Era of AI+." Journal of Distance Education, 2017, 35(03): 22-30.
  7. Ministry of Education of China. Notice on the Quality Evaluation Guide for Compulsory Education [EB/OL]. (2021-03-18). http://www.moe.gov.cn/srcsite/A06/s3321/202103/t20210317_520238.html.
  8. Wang G, W. "Value, Logic, and Path of AI and Physical Education Integration." Sports Goods and Technology, 2024, (19): 180-182.
  9. Wang L L, Fu L, Wang Q S. "Design and Application of Virtual Simulation Experimental Teaching Management System." Experimental Technology and Management, 2021, 38(09): 241-245.
  10. Xiao X, Hou J L, Wang J Q. "Opportunities, Challenges, and Pathways for AI in School Sports Digital Transformation." Hubei Sports Science and Technology, 2024, 43(02): 114-118.
  11. Qiu J Y, Zhang W J, Lu T F. "Transformation of University Physical Education in the AI Era." Liaoning Sports Science and Technology, 2022, 44(4): 105-110.
  12. Zhang R, Q. "Construction of Big Data-Oriented Intelligent Decision-Making System for University Physical Education." Journal of Ningde Normal University (Natural Science), 2021, 33(4): 377-383.
  13. Ministry of Education of China. Notice on the Second Batch of AI-Boosted Teacher Team Building Pilot Program [EB/OL]. (2021-09-08) [2024-03-09]. http://www.moe.gov.cn/srcsite/A10/s7034/202109/t20210915_563278.html.
  14. Luo J H, Zhang Y L. "Adaptive Digital Education Resources Based on Cross- Modal Understanding and Reconstruction." Modern Distance Education Research, 2023, 35(06): 91-101. [CrossRef]
  15. Li J L, Chen J A. "AI-Based Innovation in University Physical Education." Sports World, 2023, (12): 49-51.
  16. Zhu Z T, Wei F. "Education Informatization 2.0: Launching Smart Education, Leading with Intelligent Education." E-Education Research, 2018, 39(09): 5-16.
  17. European Union. General Data Protection Regulation (GDPR) [EB/OL]. (2016- 05-04) [2025-05-06]. https://gdpr-info.eu/.
  18. U.S. Department of Health and Human Services. Health Insurance Portability and Accountability Act (HIPAA) [EB/OL]. (1996-08-21) [2025-05-06]. https://www.hhs.gov/hipaa/for-professionals/privacy/laws-regulations/index.html.
  19. Tao X, Chen X. "AI Boosts Sports Development." China Social Sciences News, 2020-04-07(6).
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.
Copyright: This open access article is published under a Creative Commons CC BY 4.0 license, which permit the free download, distribution, and reuse, provided that the author and preprint are cited in any reuse.
Prerpints.org logo

Preprints.org is a free preprint server supported by MDPI in Basel, Switzerland.

Subscribe

Disclaimer

Terms of Use

Privacy Policy

Privacy Settings

© 2025 MDPI (Basel, Switzerland) unless otherwise stated