Prisma Journal. Revista de Ciencias Sociales y Humanidades
www.prismajournal.org
ISSN-L: 3091– 1893
DOI: 10.63803
395
Prisma Journal 2025 | Vol. 1 – Núm. 4 | ISSN: 3091-1893 | pp 384–396 | Licencia CC BY 4.0
Conclusion
Artificial intelligence is transforming the landscape of pedagogical accompaniment, offering
unprecedented opportunities to support students with learning disorders. The results of this study
demonstrate that AI systems, when ethically implemented and aligned with pedagogical goals,
significantly enhance learning outcomes, motivation, and inclusion.
AI’s adaptive algorithms not only diagnose learning difficulties with remarkable precision but also
personalize instruction and provide real-time support that complements teacher expertise. In doing
so, AI bridges the gap between diagnosis and action—turning assessment data into immediate,
targeted intervention.
However, technological advancement must be guided by humanistic principles. Teachers remain
irreplaceable as mediators of empathy, context, and moral judgment. The future of education thus lies
not in automation but in co-intelligence: a dynamic partnership between human educators and
intelligent systems that together create responsive, equitable, and transformative learning
experiences.
For policymakers and practitioners, the findings emphasize the urgency of developing national
frameworks that promote ethical AI integration, teacher training, and infrastructure investment. Only
through comprehensive, inclusive, and reflective implementation can AI fulfill its promise as a
catalyst for equity and innovation in the education of learners with special needs.
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