Context and Implications

Key questions

Key objectives

These courses will present students with opportunities to explore a variety of types of broader contexts and implications of AI. Students will generally choose two specific areas of depth. Areas include:

At a minimum, I should at least be able to:

Specific topics may include:

Contents

Fairness and Bias

Discussion Prompt

Initial post: find and analyze one AI fairness/bias case, ideally one that your peers have not yet posted about.

In your post, please:

  1. Describe the specific issue (what system has a problem? for whom? etc.), including a link to a reputable source.
  2. Explain why it’s biased/unfair using clear criteria (e.g., disparate performance across groups, or disparate standards used between groups), including quantitative evidence if you can find it. Note that there are different definitions of what constitutes bias or fairness. A classic example is “affirmative action”: some people see it as a way to correct for past discrimination, while others see it as a form of discrimination itself. So you’ll need to be clear about what you mean by “fair” or “unfair.”
  3. Discuss why this matters (e.g., what are the potential real-world impacts on affected groups?)
  4. Consider key stakeholders in this situation:
    • Who’s affected directly and indirectly?
    • Who has power to make changes?
    • Who benefits from the current system?
  5. Acknowledge real-world constraints:
    • What technical limitations affect potential solutions?
    • What business or economic factors are relevant?
    • What tradeoffs might be necessary?

Then, respond to some peers’ posts. In your responses, you might:

Posts should:

Sources for Cases

Ironically, you can ask an AI for examples of AI bias! (but dig in to make sure it’s not making stuff up—which is another problem with AI that we’ll study later in the course).

A few sources you might consider:

Some Things to Think About

(If you find any of these interesting, feel free to bring it up in your post.)

AI Implications - Topics

We have discussed several issues about the broader context and implications of AI, but there is far more than we have time to discuss, especially if you’re not continuing with us to CS 376. So we will teach each other! This discussion will be an opportunity to address [Overall-Impact].

Initial Posts

  1. Choose a topic that you find interesting or important about the broader context and implications of AI. There’s a list at the bottom of this page, but feel free to choose something else. Send a Teams message to the instructor mentioning your choice of topic before you get started.
  2. Do a bit of research on the topic:
    • Have a discussion with an LLM about the topic to identify key issues and keywords to search for. In your conversation, include a bit about why you think the topic is interesting or important.
    • Who are the stakeholders involved in the topic?
    • Find at least one (ideally more) reputable source that discusses the topic. Send a Teams message to the instructor if you need any help here or aren’t sure if a source is reputable. Our course Perusall has a lot of resources in the Library and there are a lot more that I haven’t yet loaded in; just ask.
  3. Write a post where you:
    • Very briefly introduce the topic and why you think it’s important or interesting.
    • Summarize the key issues and evidence from your source(s).
    • Raise at least one question that your colleagues might discuss in response.

Avoid generalities. Ask an LLM “write a 100 word statement about the social implications AI and ____”… and then resolve to make your post more interesting than that.

Responses

Then, respond to some peers’ posts. In your responses, you might:

etc.

Ideas for Topics

AI-Human Collaboration and the Future of Work (draft!)
The content may not be revised for this year. If you really want to see it, click the link above.