AI + UX: Product Design for Intelligent Experiences

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The unfolding AI revolution presents us with unique opportunities, challenges and responsibilities for designing our future. Learn how to exercise your critical thinking skills when it comes to integrating AI in your design craft, and how to build a solid ethical mindset around making design decisions in the Age of AI. Guided by Ioana Teleanu, the Lead Product Designer for AI at Miro, we'll explore the main themes that we need to reflect on as designers participating in shaping the future of humanity.

Ioana Teleanu
Ioana Teleanu
28 min
15 Jun, 2024

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Video Summary and Transcription

AI design challenges include bias, safety, and security. Trust and transparency are important in AI. Design principles for AI include user control, fighting bias, and promoting good decision-making. AI can enable the design process and investors expect to see it included in products. AI empowers individuals to create and share ideas, but managing expectations is crucial.

1. Introduction to AI Design

Short description:

I'm a product designer and I don't consider myself an expert in AI and design. I'm a collector of interesting ideas about design and I add a layer of personal experience on how I interpret those and then communicate them. I've cut down this talk to 20 minutes to make as many points as possible. My interest in AI started at UiPath where I worked on a product called Clipboard AI. It won Time Magazine Best Invention of 2023 award. Now I'm designing for the collaboration space at Miro.

Hi. I'm super excited to be here. I'm always part nervous, part very excited to talk about design. Since I'm a product designer, I'm going to start with some problem scoping. I just want to start by saying that I don't consider myself an expert in AI and design. I don't know who is at this stage of the industry, but I'm a collector of interesting ideas about design and I add a layer of personal experience on how I interpret those and then communicate them.

And then secondly, typically I do this talk in 40 minutes, one hour, but I've cut it down to 20 minutes, so, if it feels a bit rushed, just bear with me. It's going to be like looking at a 1.2 speed video, but, yes, I just want to make as many points as possible, so thank you for bearing with me.

Now, my interest in AI started at UiPath which is a company that does robotic process automation. I worked on a product called Clipboard AI, which actually won Time Magazine Best Invention of 2023 award, and it got me excited about the industry and the new problem space and the challenges and opportunity it's presenting us with, and then I joined Miro, and now I'm designing for the collaboration space, which is very exciting for a designer. I'm basically designing for myself and, yes, this is the background.

2. Challenges in Designing for AI

Short description:

AI is losing hype, but it's here to stay. We need to design for AI by understanding its challenges, such as bias, safety, security, and designing for probability. AI systems reflect the world we live in, but we can change that by feeding them more representative data. We must be responsible in setting the foundation for AI technologies, as it will shape who we become as humanity.

And now let's see what AI is doing right now. It's losing steam. It's losing hype. It's less exciting. There aren't as many valuable use cases as expected. Companies are kind of losing trust. They were investing a lot of money in these technologies and they're not yet seeing a return on investments, and so there's generally, if we look at the Gartner's hype cycle, we're entering the era where the peak of inflated expectations has ended and people are generally in this trough of disillusionment around what AI can do for us.

But what's interesting when you look at this graph is that sure, we're going to say AI is doing nothing as promised and it's just infant technology, super immature, but it's going to get there, and we're going to see finally standards and best practices and frameworks that we can reference as designers, as builders, and then it's going to stabilize, so it's here to stay. Let's see how we can design for it since it's going to be with us from this moment on.

To frame my thinking around how we should design for AI, I'm starting from the definition of what AI is. And of course, there are multiple ways in which you can define AI. One way to think about it is as a collection of tools that we now have available, and if you think about these tools that we're using to shape products, to shape experiences, to shape the world, it kind of makes me be a bit poetic or philosophical and think that if we're now shaping these tools, we're essentially shaping ourselves, or at least our future, the future of human experience, and so essentially how we will work and live. So this is a quote by John Culking, we shape our tools, thereafter our tools shape us. What we design ends up designing us. If you think about the world in general, the furniture we design, the architecture, cities, workplaces, products, experiences, conversations, everything we design contributes to the way we experience the world. And so it essentially shapes us. Which is exciting, but it's also a call to responsibility in the age of AI where everything is ambiguous, not regulated, there are no clear standards or rules, guidelines, guardrails. So we have to be even more responsible than before because the way we set up this foundation for these technologies will essentially shape who we become as humanity.

Now, if we want to get that right, we have to start from the challenges, at least this is now putting my designer hat on and from the design perspective. We start we should start from the challenges that AI brings for designers. One of them is working with bias. We all know it by now, AI systems are inherently biased, which is not because they're evil, they're just a reflection of something that unfortunately exists in society, but that's also an opportunity, right? So if we want to change the way these systems mirror us and reflect the world we live in, we can feed them more representative data, we can interject that process and kind of change the way they reflect us and it's actually an opportunity. Safety and security, that's not just about AGI becoming sentient and killing us all, but it's also about data privacy concerns, even the psychological safety that we have when we're having conversations with AI systems or interacting with them in other mediums. Yeah, there's also the aspect of these systems being easily deceptive and so they can be manipulated in the wrong hands. Then there's the aspect of designing for probability, which is my favorite one. As a designer, it's really interesting to think that in conventional system, you control the experience. You know what's going to happen because you decided, because you get to design it. So you always know what's going to happen next or a couple of options of what can happen next when a user takes an action. With AI systems, you have no idea what's going to happen. Maybe it's going to be good.