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Please be aware that Microsoft CoPilot is the only AI tool supported by Lambton College’s IT department. Using AI with sensitive data, like student work or proprietary college information, requires using Microsoft CoPilot while logged in with your college credentials. If you are uncertain about securely accessing CoPilot to protect sensitive information, consult IT before proceeding. Using any other AI system with sensitive data violates college policy. |
Podcast Episode
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At 7:02 in the podcast, you’ll hear the AI say, “Make sure to come back for part two.” If you’re a regular podcast listener, you might recognize this as a common feature of podcast episodes—where a host says something like, “We’ll be right back after this message from our sponsor,” and then the episode immediately resumes without an ad actually playing. So why did this happen? This is an interesting example of how bias in an AI’s training data can lead to unexpected outputs. The AI that generated this podcast would have been trained on a vast amount of text, including real podcasts that often include these types of break cues. However, the AI doesn’t understand two important points that are obvious to us: i) that these commercial breaks are meant to signal an ad that would be inserted later, and ii) that podcasts are often recorded with this space for a commercial but then do not get a sponsor, resulting in the host saying, “We’re going to take a quick break” and then “Welcome back” with no ad played in between. As a result, the AI imitates the structure it has seen in its training data, mistaking this often-repeated pattern for a necessary feature of a podcast episode that it should include rather than recognizing it as something that should be ignored. This is an example of bias in an AI’s output resulting from errors in its training data. While the bias is benign in this case, it does illustrate how AI’s mimic the patterns in their training data without being able to understand what those patterns represent. Any biases inherent in an AI’s training data will be reproduced in the AI’s outputs. |
Training Data For This Podcast Episode
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Best Practices for Using AI ToolsEffective AI Prompting and InteractionCommon Pitfalls in AI UseMany users don’t maximize AI’s potential due to vague inputs and a passive approach. Here are common missteps: Best Practices for Prompting AI✅ Use Context-Rich Prompts – Provide background details, specify constraints, and clarify objectives. 📌 Example: AI for Research and Content CreationCommon Pitfalls❌ Basic Summaries – Using AI for surface-level definitions rather than deeper analysis. Best Practices for AI in Research & Writing✅ Synthesizing Research – Use AI to summarize, contrast, and analyze academic literature. 📌 Example: AI-Enhanced Teaching & Student EngagementCommon Pitfalls❌ AI as a Shortcut – Using AI for content generation without promoting deeper learning. Best Practices for AI in Education✅ AI as a Learning Tool – Design activities where students use AI for brainstorming, analysis, and skill-building. 📌 Example: AI for Workflow & Productivity OptimizationCommon Pitfalls❌ Minimal Automation – Doing repetitive tasks manually instead of streamlining with AI. Best Practices for AI in Productivity✅ Automating Repetitive Tasks – Use AI for emails, lesson plans, meeting summaries, and curriculum mapping. 📌 Example: AI Ethics & Policy AwarenessCommon Pitfalls❌ Ignoring AI Bias – Assuming AI-generated content is neutral. Best Practices for Ethical AI Use✅ Addressing Bias and Misinformation – Recognize and mitigate biases in AI-generated content. 📌 Example: Final Takeaways: How Experienced Users Maximize AI’s Potential✅ They treat AI as a collaborator, not just a tool. Shaping the Future of AI in EducationAI is not going away—it’s becoming part of how we work and learn. Faculty have the opportunity to shape how students engage with AI responsibly. Whether experimenting with AI for personal productivity or integrating it into coursework, the key is to approach AI with curiosity, critical thinking, and ethical awareness. |
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