By Simone C. O. Conceição
As artificial intelligence (AI) becomes increasingly integrated into educational tools and systems, it holds the potential to advance inclusive teaching and learning—if applied with care and intentionality. AI can support learners with diverse needs, streamline accessibility features, and personalize learning pathways. At the same time, it can reinforce inequities if not thoughtfully designed and implemented.
This post explores how AI can promote inclusion in adult education, the challenges to be aware of, and strategies educators can use to ensure AI supports equitable learning environments for all.
What Is Inclusive Education in the Age of AI?
Inclusive education aims to ensure that all learners—regardless of ability, language, background, or identity—can access and fully participate in meaningful learning experiences. With AI, this vision expands beyond physical accessibility to encompass digital inclusion, personalized support, and equity in learning outcomes.
AI tools can help realize this vision by offering assistive technologies, adapting content in real time, and identifying learner needs through data-driven insights (UNESCO, 2021). However, true inclusivity depends not just on access to tools, but on how they are developed, selected, and used by educators.
Opportunities: How AI Can Support Inclusion
1. Adaptive Learning for Diverse Needs. AI can adjust the pace, format, and complexity of content based on a learner’s interactions. This is particularly beneficial for adult learners with varying literacy levels, learning differences, or limited prior experience in digital environments (Holmes et al., 2022).
Example: Adaptive platforms like ALEKS or Knewton Alta personalize instruction by identifying learning gaps and adjusting content delivery accordingly.
2. Assistive Technologies. AI powers tools like real-time transcription (e.g., Otter.ai), text-to-speech (e.g., Microsoft Immersive Reader), and automated captioning—all of which improve access for learners with disabilities or English language learners.
These tools align with Universal Design for Learning (UDL) principles, which emphasize providing multiple means of engagement, representation, and expression (CAST, 2018).
3. Multilingual and Cultural Accessibility. AI-driven translation tools, such as Google Translate or DeepL, can break down language barriers and support culturally diverse learners. Additionally, AI chatbots and voice assistants can be trained in various dialects and languages to offer support beyond the dominant culture.
4. Equity Through Predictive Analytics. Learning analytics supported by AI can help identify learners who may be falling behind—based on patterns in engagement or assessment data—and enable early intervention (Ifenthaler & Yau, 2020). When used ethically, this can prevent learners from being overlooked due to implicit bias or lack of visibility in online environments.
Challenges and Ethical Considerations
Despite these opportunities, there are risks that must be addressed to ensure AI truly serves inclusion:
- Bias in Training Data: If AI systems are trained on datasets that lack diversity, they may reproduce stereotypes or exclude underrepresented groups.
- Privacy Concerns: Collecting sensitive learner data for personalization or analytics raises questions about consent, surveillance, and autonomy.
- Technology Access Gaps: AI-powered tools often assume stable internet, updated devices, and digital fluency—conditions not all adult learners have.
Without intentional design, AI tools can unintentionally amplify exclusion rather than mitigate it.
Strategies for Ethical and Inclusive AI Use
Educators, designers, and institutions can take the following steps to promote inclusive AI use:
- Evaluate
Tools for Bias and Accessibility
Choose vendors and platforms that are transparent about their algorithms and committed to accessibility standards. - Involve
Diverse Learners in Design and Testing
Co-design AI-enhanced tools with input from learners of different ages, abilities, and cultural backgrounds. - Provide
Digital Literacy Support
Ensure learners have the skills and support to use AI-powered tools confidently and critically. - Ensure
Human Oversight
Use AI as a support—not a replacement—for relational teaching, dialogue, and community-building. - Establish
Data Ethics Protocols
Be clear with learners about what data is collected, how it’s used, and what choices they have in the process.
Conclusion: Inclusion Must Be Intentional
AI is not inherently inclusive—but it can be a powerful tool for inclusion when paired with ethical practice, thoughtful pedagogy, and an unwavering commitment to equity. Integrating AI into education requires thoughtful consideration to ensure it advances equitable learning and protects the rights and needs of all students.
The AI Literacy Forum, hosted by the Adult Learning Exchange Virtual Community, offers a space for adult educators to discuss, question, and share resources related to equitable AI integration, moderated by Drs. Simone Conceição and Lilian Hill, the forum welcomes your voice in shaping a more inclusive digital learning future.
References
CAST. (2018). Universal Design for Learning Guidelines version 2.2. http://udlguidelines.cast.org
Holmes, W., Porayska-Pomsta, K., Holstein, K., Sutherland, E., Baker, T., & Santos, O. C. (2022). Ethics of AI in education: Towards a community-wide framework. International Journal of Artificial Intelligence in Education, 32(4), 575–617. https://doi.org/10.1007/s40593-021-00239-1
Ifenthaler, D., & Yau, J. Y.-K. (2020). Utilising learning analytics to support study success in higher education: A systematic review. Educational Technology Research and Development, 68, 1961–1990. https://doi.org/10.1007/s11423-020-09788-z
UNESCO. (2021). AI and education: Guidance for policy-makers. https://unesdoc.unesco.org/ark:/48223/pf0000377071

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