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Saturday, October 12, 2024

AI in Instruction: Lessons Learned & Future Opportunities

AI in Instruction: Lessons Learned & Future Opportunities




Artificial Intelligence (AI) has revolutionized education, offering new possibilities for teaching and learning. A panel discussion hosted by Christina Doan, an AI faculty fellow, and other panelists explored how AI has impacted academic instruction, sharing valuable lessons learned and insights for the future. This review summarizes the key takeaways from the session, offering a comprehensive understanding of AI's role in education.


Introduction: The Role of AI in Higher Education

The discussion, led by Christina Doan, addressed the rise of AI and its implications on university campuses. AI's role in education spans from administrative support to pedagogical innovation. The primary focus was integrating AI into courses and assignments, reducing preparation time, experimenting with new tools, and assessing AI's potential and challenges in real-time classroom settings.


Key Goals of AI Integration:


  1. Primary AI Education for Faculty: Introducing faculty to AI tools and their potential applications in current course structures.
  2. Encouraging Experimentation: Promoting faculty engagement in testing AI tools, evaluating their effectiveness, and sharing best practices.
  3. Gathering Feedback: Obtain feedback from students about AI usage and discuss ethical considerations around AI-assisted learning.


Lessons Learned: AI's Role in Academic Settings

  1. Faculty Engagement with AI

Faculty members shared their experiences using AI tools to simplify assignment preparation and revision. They leveraged AI to foster student engagement and adjusted grading rubrics to accommodate ethical considerations when students utilized AI tools for research or writing. Monthly AI coffee chats and webinars helped faculty share their experiences and strategies. 

      2. Student Perspectives on AI

Doan highlighted findings from student surveys. Students appreciated AI's support in brainstorming and outlining tasks but needed clarification over when and how to cite AI-generated content. Some students needed help understanding AI's ethical use in assignments, while others appreciated clear instructions on its role in academic tasks.

      3. Ethical Use of AI

AI integration raised concerns about ethical use, particularly in academic writing. Faculty have begun implementing AI disclaimers, requiring students to clarify which tools were used in their work. However, the discussion revealed that not all students understood these disclaimers, showing a need for more transparent communication about AI usage policies.


AI's Future Potential in Higher Education

  1. Service Learning and AI

Sager Gupta, another panelist, discussed how AI could be applied to service-learning programs. AI tools like "Scribe" and custom-built chatbots help manage workflows, such as tracking student hours or handling volunteer matching processes. By reducing the manual effort in administration, faculty and students can focus more on meaningful community engagement. 


      2. Creating AI-Powered Teaching Assistants

The conversation touched on future AI applications, such as AI-driven teaching assistants. These virtual assistants could handle basic student inquiries, freeing faculty to focus on complex tasks. There was also enthusiasm for AI to simulate professional environments, offering students interactive experiences in fields like translation, legal assistance, and service learning.


Challenges and Recommendations for AI Adoption

Despite AI's benefits, there are challenges:

  • Clarity in AI Policies: Students often need more explicit guidance on using AI. A standardized AI literacy course was proposed to guide students on responsible AI use and ensure a consistent understanding of ethical issues.
  • Technical Infrastructure: Adequate infrastructure is critical for fully realizing AI's potential in classrooms, especially with advanced tools like augmented reality (AR) or virtual reality (VR). Educators must continue learning and innovating with AI tools to support teaching and learning effectively.


Conclusion: Building an AI-Enhanced Learning Environment

The panel concluded by calling for embracing AI, not as a replacement for traditional teaching methods but as a tool for enhancing education. Faculty and students must continue to adapt, experiment, and explore AI's potential to foster more dynamic, personalized learning experiences.

With continued innovation, AI will play a critical role in the future of higher education, providing new ways to engage students and enrich the academic environment.

AI and Academic Libraries: Enhancing Student Research and Information Literacy

 AI and Academic Libraries: Enhancing Student Research and Information Literacy

Artificial Intelligence (AI) revolutionizes academic libraries and how students approach research. In this insightful discussion, experts from the University of Wisconsin-Milwaukee's library faculty, Kate Gansky and Heidi Anzano, along with other academic leaders, explored how AI shapes the landscape of student research and information literacy. This article comprehensively summarizes their discussion and how AI improves, disrupts, and evolves the academic research environment.

Introduction: The Impact of AI on Academic Libraries

The panel opened by introducing the increasing integration of AI into academic settings, particularly libraries. It focused on the potential of AI tools, such as language models, to reshape information-seeking behaviors and research strategies for students and faculty. The primary emphasis was on information literacy—how students locate, evaluate, and synthesize information—and the ethical implications of AI's growing influence in these areas.

AI's Role in Student Research

Students use AI to assist with tasks such as brainstorming research topics, generating outlines, and summarizing academic texts. These tools help students navigate vast amounts of information more efficiently, especially in disciplines where data overload is challenging.


  • Practical Applications: AI tools help students identify keywords, create outlines, and even quiz themselves on material in preparation for exams. Some students use AI to summarize complex chapters and refine their understanding of critical concepts.
  • Critical Thinking: While AI is helpful in many areas, Gansky and Anzano emphasized that students must continue to develop their critical thinking skills. AI is only as valuable as the prompts given, and students need to learn how to ask the right questions and evaluate the quality of AI-generated content.


Ethical Considerations of AI in Libraries


A major topic of discussion was the ethical concerns surrounding AI in academic libraries. As AI becomes more integrated into research tools, questions about data privacy and intellectual property ownership are increasingly relevant. Many AI tools "learn" by using vast amounts of data, raising concerns about how student and researcher data is collected, stored, and used.

  • Ethical Use of AI Tools: Students and faculty need to be aware of the moral implications of using AI tools, especially regarding data collection and how AI-generated content is being used and shared.
  • Intellectual Property: There is concern over how AI tools may replicate or distort academic work, especially when generating content or summarizing research. This has implications for academic integrity and the proper citation of AI-generated material.
  • Bias and Misinformation: Another critical ethical issue is the potential for AI to perpetuate biases and misinformation. AI tools are only as good as the data they are trained on, and if the source material needs to be revised, the output will reflect those shortcomings.
  • AI Hallucinations: As noted in the discussion, AI systems can produce errors, known as "hallucinations," where the generated information is incorrect or misleading. This is especially important for students to recognize when relying on AI tools for research.
  • Addressing Bias: Academic institutions must remain vigilant in training students to critically evaluate AI-generated content and recognize when biases might influence their research.

Critical Areas of Focus:

  1. Information Literacy: Understanding the evolving nature of information sources in an AI-driven world.
  2. AI as a Research Tool: Examining the practical use of AI in assisting students with research tasks.
  3. Challenges and Ethical Considerations: Addressing the ethical issues related to AI, such as bias, privacy, and intellectual property.


AI Tools and Research Strategies


Gansky and Anzano highlighted how AI is changing information discovery in academic libraries. AI enhances traditional cataloging and metadata generation, allowing for more intuitive and conversational search mechanisms. AI-driven tools like language models and enhanced search engines are designed to improve information retrieval. However, students still need to understand the biases and limitations of these tools.

  • AI in Search Engines: AI tools embedded in platforms like JStor now offer conversational discovery, allowing students to engage with research databases more effectively, much like they would with popular AI tools like ChatGPT.
  • Metadata and Cataloging: AI automates backend processes, making information more accessible, but students need to be mindful of the data sources and any biases inherent in these systems.

Conclusion: Navigating AI in Academic Research

The panel concluded by emphasizing that AI is a valuable tool for enhancing research and information literacy but has challenges. It stressed the importance of faculty and students working together to ensure that AI is used responsibly and effectively. Librarians play a crucial role in guiding students to think critically about AI tools and to use them to enhance learning rather than replace human effort.

As AI continues to evolve, academic libraries and universities must adapt by developing new research frameworks that integrate AI while preserving the core values of scholarly inquiry,