Experiencing Data w/ Brian T. O’Neill  (UX for AI Data Products, SAAS Analytics, Data Product Management)

055 - What Can Carol Smith’s Ethical AI Work at the DoD Teach Us About Designing Human-Machine Experiences?


Listen Later

It’s not just science fiction: As AI becomes more complex and prevalent, so do the ethical implications of this new technology.But don’t just take it from me – take it from Carol Smith, a leading voice in the field of UX and AI. Carol is a senior research scientist in human-machine interaction at Carnegie Mellon University’s Emerging Tech Center, a division of the school’s Software Engineering Institute. Formerly a senior researcher for Uber’s self-driving vehicle experience, Carol-who also works as an adjunct professor at the university’s Human-Computer Interaction Institute-does research on Ethical AI in her work with the US Department of Defense.

Throughout her 20 years in the UX field, Carol has studied how focusing on ethics can improve user experience with AI. On today’s episode, Carol and I talked about exactly that: the intersection of user experience and artificial intelligence, what Carol’s work with the DoD has taught her, and why design matters when using machine learning and automation. Better yet, Carol gives us some specific, actionable guidance and her four principles for designing ethical AI systems.

In total, we covered:

  • “Human-machine teaming”: what Carol learned while researching how passengers would interact with autonomous cars at Uber (2:17)
  • Why Carol focuses on the ethical implications of the user experience research she is doing (4:20)
  • Why designing for AI is both a new endeavor and an extension of existing human-centered design principles (6:24)
  • How knowing a user’s information needs can drive immense value in AI products (9:14)
  • Carol explains how teams can improve their AI product by considering ethics (11:45)
  • “Thinking through the worst-case scenarios”: Why ethics matters in AI development (14:35) and methods to include ethics early in the process (17:11)
  • The intersection between soldiers and artificial intelligence (19:34)
  • Making AI flexible to human oddities and complexities (25:11)
  • How exactly diverse teams help us design better AI solutions (29:00)
  • Carol’s four principles of designing ethical AI systems and “abusability testing” (32:01)
  • Quotes from Today’s Episode

    “The craft of design-particularly for #analytics and #AI solutions-is figuring out who this customer is-your user-and exactly what amount of evidence do they need, and at what time do they need it, and the format they need it in.” – Brian

    “From a user experience, or human-centered design aspect, just trying to learn as much as you can about the individuals who are going to use the system is really helpful … And then beyond that, as you start to think about ethics, there are a lot of activities you can do, just speculation activities that you can do on the couch, so to speak, and think through – what is the worst thing that could happen with the system?” – Carol

    “[For AI, I recommend] ‘abusability testing,’ or ‘black mirror episode testing,’ where you’re really thinking through the absolute worst-case scenario because it really helps you to think about the people who could be the most impacted. And particularly people who are marginalized in society, we really want to be careful that we’re not adding to the already bad situations that they’re already facing.” – Carol, on ways to think about the ethical implications of an AI system

    “I think people need to be more open to doing slightly slower work […] the move fast and break things time is over. It just, it doesn’t work. Too many people do get hurt, and it’s not a good way to make things. We can make them better, slightly slower.” – Carol

    “The four principles of designing ethical AI systems are: accountable to humans, cognizant of speculative risks and benefits, respectful and secure, and honest and usable. And so with these four aspects, we can start to really query the systems and think about different types of protections that we want to provide.” – Carol

    “Keep asking tough questions. Have these tough conversations. This is really hard work. It’s very uncomfortable work for a lot of people. They’re just not used to having these types of ethical conversations, but it’s really important that we become more comfortable with them, and keep asking those questions. Because if we’re not asking the questions, no one else may ask them.” – Carol

    Links
    • Designing Ethical AI Experiences (Agreement and Checklist) (PDF)

     

    ...more
    View all episodesView all episodes
    Download on the App Store

    Experiencing Data w/ Brian T. O’Neill  (UX for AI Data Products, SAAS Analytics, Data Product Management)By Brian T. O’Neill from Designing for Analytics

    • 5
    • 5
    • 5
    • 5
    • 5

    5

    39 ratings


    More shows like Experiencing Data w/ Brian T. O’Neill (UX for AI Data Products, SAAS Analytics, Data Product Management)

    View all
    Software Engineering Radio - the podcast for professional software developers by se-radio@computer.org

    Software Engineering Radio - the podcast for professional software developers

    272 Listeners

    HBR IdeaCast by Harvard Business Review

    HBR IdeaCast

    1,830 Listeners

    a16z Podcast by Andreessen Horowitz

    a16z Podcast

    1,033 Listeners

    Data Skeptic by Kyle Polich

    Data Skeptic

    480 Listeners

    UI Breakfast: UI/UX Design and Product Strategy by Jane Portman

    UI Breakfast: UI/UX Design and Product Strategy

    137 Listeners

    Acquired by Ben Gilbert and David Rosenthal

    Acquired

    3,987 Listeners

    Odd Lots by Bloomberg

    Odd Lots

    1,784 Listeners

    The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence) by Sam Charrington

    The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)

    441 Listeners

    Super Data Science: ML & AI Podcast with Jon Krohn by Jon Krohn

    Super Data Science: ML & AI Podcast with Jon Krohn

    298 Listeners

    Data Engineering Podcast by Tobias Macey

    Data Engineering Podcast

    140 Listeners

    Masters of Scale by WaitWhat

    Masters of Scale

    3,995 Listeners

    DataFramed by DataCamp

    DataFramed

    267 Listeners

    Practical AI by Practical AI LLC

    Practical AI

    192 Listeners

    Machine Learning Street Talk (MLST) by Machine Learning Street Talk (MLST)

    Machine Learning Street Talk (MLST)

    88 Listeners

    Product Thinking by Melissa Perri

    Product Thinking

    144 Listeners