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The Impact of Artificial Intelligence on Education in the United States

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The Impact of Artificial Intelligence on Education in the United States

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Фамилия Имя Отчество

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Фамилия И.О.

Город 2026

Содержание

Introduction
Chapter 1. Theoretical Framework and Literature Review
1.1 Historical Evolution and Conceptual Definitions of AI in US Pedagogy
Methodology
2.1 Qualitative Research Design and Comparative Analytical Criteria
2.2 Data Source Selection, Geographic Boundaries, and Research Limitations
Chapter 3. Analytical Comparison of AI Implementation Patterns
3.1 Socioeconomic Equity, Algorithmic Bias, and Governance in Public Schools
Conclusion
Bibliography

Введение

The integration of generative artificial intelligence into American classrooms has transitioned from a speculative prospect to an immediate operational reality. This rapid proliferation necessitates a rigorous re-evaluation of pedagogical standards as students and faculty navigate tools that automate cognitive tasks previously reserved for human intellect. While global systems in regions like Russia and India face similar disruptions, the decentralized nature of the United States educational landscape creates unique challenges for standardized policy implementation (Dwivedi). Evidence suggests that undergraduate students are adopting these technologies at a rate that significantly outpaces institutional guidelines, creating a widening gap between student practice and faculty expectations. The central problem involves the friction between technological efficiency and the preservation of academic integrity. Educators frequently struggle to distinguish between legitimate AI-assisted learning and instances of academic dishonesty, a dilemma that threatens the validity of traditional assessment metrics. This tension is exacerbated by concerns that overreliance on algorithmic support may erode critical thinking skills, as the convenience of automated content generation can bypass the cognitive struggle required for genuine mastery. Faculty members, particularly within creative and literacy-heavy disciplines, report specific anxieties regarding the potential displacement of original student voice by synthetic outputs. Without a structured framework to govern this transition, the educational system risks a scenario where technological convenience compromises intellectual rigor. This study seeks to analyze the dual impact of AI on educational efficiency and academic integrity, ultimately providing a framework for ethical integration. The object of research is the current state of educational practices within the United States, while the subject focuses on the specific influence of generative AI on student learning and institutional policy. To fulfill this goal, the work undertakes several tasks: examining the prevalence of AI usage among undergraduates, evaluating the efficacy of the SAMR (Substitution, Augmentation, Modification, Redefinition) framework in AI integration, and identifying specific ethical risks and policy gaps. The final objective involves proposing strategies that allow institutions to cultivate technological fluency without sacrificing the development of critical thinking, ensuring that pedagogical goals drive technology use rather than the reverse. Methodologically, this analysis employs a cross-disciplinary review of recent empirical studies and pedagogical models to assess the current landscape. By synthesizing faculty insights with data on student perceptions, the research highlights the necessity of a balanced approach to AI literacy. The inquiry bridges the gap between theoretical potential and practical application by examining how computational linguistics can transform literacy education, providing a broader context for higher education trends. The investigation also draws on specialized applications, such as AI-generated supportive tools in medical education, to illustrate how targeted integration can enhance learning outcomes (Impito). The structure of this coursework follows a logical progression: it begins with an assessment of the technological landscape, moves into an evaluation of pedagogical frameworks, analyzes the ethical implications of current policy gaps, and concludes with a synthesis of best practices for future institutional governance.

Список литературы

  1. Artificial Intelligence in Higher Education: Student Knowledge, Attitudes, and Ethical Perceptions in the United States (2025)
    C. Basch, G. Hillyer, Bailey Gold et al.
    Ссылка на DOI
  2. Generative Artificial Intelligence Practices Among Major Educational Groups in the United States (2025)
    Jesús Montiel, S. Kundu, Nicole Schlater et al.
    Ссылка на DOI
  3. Using Artificial Intelligence and Computational Linguistics to Transform Literacy Education at the Secondary Level in the US: Where to Start (2025)
    C. J. Schrag, Cecil R. Short
    Открыть источник
  4. Usage and Impcat of Artificial Intelligence in Russian and Indian Education System- The Future of Artificial Intelligence (2025)
    R. Dwivedi
  5. Artificial Intelligence in Higher Education: A State-of-the-Art Overview of Pedagogical Integrity, Artificial Intelligence Literacy, and Policy Integration (2025)
    Manolis Adamakis, Theodoros Rachiotis
  6. Artificial Intelligence Generated Videos as Supportive Tools in Medical Education: A Scoping Review. (2026)
    Pinto Francisco Impito
  7. Exploring the Role of Artificial Intelligence on Educational Dynamics: Evaluating its Impact on Pedagogical Practices and Student Learning Outcomes (2025)
    Sarah Abou Karroum, Nour-Eldin Elshaiekh
  8. Exploring Higher Education Faculty Insights on Generative AI in Creative Courses (2025)
    Roshanak Basty, Jess Kropczynski, Shane E. Halse
  9. Overdependence on AI Supported Learning and Critical Thinking: Investigating Opportunities and Risks in Modern Education at Higher Educational Level (2026)
    Muhammad Faisal Ishaque, Amana Ishaaq, Maleeha Nazim
  10. Integration of Generative Artificial Intelligence in Higher Education: Best Practices (2024)
    Jorge Cordero, Jonathan Torres-Zambrano, Alison Cordero-Castillo

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Курсовая

ГОСТ 7.32-2017 (Отчёт о НИР)

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