Design of AI: The AI podcast for product teams

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AI strategy consultants Brittany Hobbs & Arpy Dragffy Guerrero interview product leaders & industry influencers who are shaping AI. We create and share resources to help product teams build the tools that will benefit users and transform industries. Please subscribe to the Design of AI, the podcast and community for product teams who want to leverage AI to transform their industries: Apple https://podcasts.apple.com/us/podcast/design-of-ai/id1734499859 Spotify https://open.spotify.com/show/3O11vQKPpKI5ZlJhdRGwnf Youtube https://youtube.com/@DesignofAI Visit https://designof.ai to get AI news & tools that matter to product teams. Send enquiries to info@designof.ai

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    • May 5, 2025 LATEST EPISODE
    • every other week NEW EPISODES
    • 53m AVG DURATION
    • 31 EPISODES


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    Latest episodes from Design of AI: The AI podcast for product teams

    The Risks & Research of Over Reliance on AI

    Play Episode Listen Later May 5, 2025 39:19


    After a frustrating week of trying to wrangle AI outputs, we decided to explore the risks of overreliance on AI. It's good for us to question our tools. It enhances our processes and challenges us to find the right tools.Listen on Spotify | Listen on Apple Podcasts | Watch on YouTubeIn this episode, we say the quiet parts out loud. Not only are LLMs often feeding us incorrect information, but over-trusting these systems poses a serious risk.We can look at this Rolling Stone article headline and immediately laugh it off. It is insane to believe this will happen to anyone we know. However, in Mark Zuckerberg's vision of the AI future, your friends will be bots. The loneliness epidemic is real. One in three Americans feels lonely every week. Data from Harvard's Making Caring Common Project supports that loneliness is tied to increasing feelings of anxiety, not part of this country, and being about more than social isolation. 65% of respondents blame “our society,” pointing to a lack of confidence in our way of life and institutions.So, it should be no surprise that Harvard Business Review found that the top three use cases of 2025 involved loneliness and navigating life's stresses.AI could quickly become the next addiction for a world desperate for solutions. The fact that there's demand for robo-companionship shouldn't be treated as validation for building more tools to disassociate them from life. Let's go back to exploring this topic from the perspective of business users.Understanding GenAI's Productivity GainsAs we barrel into the AI-powered era, we can take one of two perspectives:* GenAI products are the next evolution of SaaS: Precise tools for specific workflows* LLMs are the next evolution of social media, where instead of degrading our interpersonal relationships, AI will addict us to easy and often incorrect informationThe majority of the research identified productivity gains and time savings, which would support the goal of GenAI as a professional advantage. But when you dig into the data, there are concerns.Many are funded by Microsoft, OpenAI, and Google, like this one showing that GitHub Copilot users completed tasks 55.8% faster than the control group. While that result was impressive, they were being assessed on their ability to complete a very basic task. The paper's results were boosted by showing that people with less experience benefit more from coding assistants, something that should worry anyone concerned about being replaced by cheaper talent who are boosted by AI.But these results were refuted in a separate study where no DevOps productivity gains were found from using the same GitHub Copilot. That study found the code quality to be poor, leading to a 41% increase in bugs!Remember that GitHub is owned by Microsoft and powered by OpenAI's foundation model, ChatGPT.This contradictory data highlights a paradox of GenAI: The technology is increasingly more successful at a basic task-level, but shouldn't be over-relied on to do our work for us. This Danish study hammers that point home: Time saved by AI offset by new work created. If we shake ourselves out of the AI hype stupor, we can critically examine the current state of LLMs more like SaaS tools. 95% of SaaS tools available won't help you and your business. Once you find the right tool for your hyper-specific use case, the AI product's success will depend on its implementation and the first-party data entered into it.Thanks for reading Design of AI: Strategies for Product Teams & Agencies! More Research about Using AIBehavioural research about AI should be considered a counterpoint to the benefits of AI. Yes, leveraging GenAI will have productivity gains in specific circumstances. But the technology also brings with it risks and considerations that built into the design and business case of “should we build this” discussions.* Increased AI use linked to eroding critical thinking skills* When experiencing time pressures, we're more susceptible to misinformation* AI systems are already capable of deceiving humans* People Facing Life-or-Death Choice Put Too Much Trust in AI* AI's Trust Problem: Twelve persistent risks of AI that are driving skepticismCatch up on Recent Design of AI Episodes31. AI is Disrupting Architecture and Lessons for Digital Product TeamsGuest Matthew Krissel (FAIA) explores how AI is reshaping architectural design and what digital product teams can learn about process, creativity, and scale from the built environment.30. Take Control of AI's Predictive Power – Tyler Hochman, ForethoughtTyler Hochman shares how businesses can operationalize AI for forecasting and insights by targeting high-value, repeatable problems and unlocking underutilized data.29. Trust is a Double‑edged Sword: AI will Transform Services – Sarah Gold, Projects by IFSarah Gold explains how AI changes our relationship with services and why it's urgent to rethink trust, transparency, and accountability in product design.28. AI will Transform Product Research – John Whalen, Author & PsychologistJohn Whalen outlines how AI can automate user research tasks and speed up insights while cautioning where human interpretation is still irreplaceable.27. Implementing AI in Creative Teams: Why Adoption Will Surge – Jan Emmanuele, WondercraftJan Emmanuele shares real-world strategies for rolling out AI in creative teams, tracking ROI, and overcoming fear and friction in adoption. 26. Designing a New Relationship with AI – Critical Mindset Shifts for Success – Sara ViennaSara Vienna emphasizes why designers must rethink their role and mindset in an AI-powered world—moving from tool experts to value creators.25. Faster, Cheaper, Better: AI's Transformation of Insights & Strategy – David BoyleDavid Boyle discusses how AI is reducing the cost and time of gathering insights while also introducing new pitfalls that only expert interpretation can avoid. 24. Adding AI to Miro – Case Study in Improving the UX of Existing Products – Ioana TeleanuIoana Teleanu discusses the strategic thinking behind introducing AI to Miro's design tools without compromising the user experience.23. AI in Healthcare: Challenges of Implementing in Complex Industries – Dr. Spencer DornDr. Dorn explores why healthcare has been both cautious and optimistic with AI, offering lessons for anyone deploying AI in regulated or high-stakes fields. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    AI Promises us More Time. What Should we do With it?

    Play Episode Listen Later Apr 22, 2025 55:07


    When reports like Adecco's Global Workforce of the Future survey find that the average saving for workers using AI is 1 hour a day, we should question this. * What did those workers do with their time savings? * Should that time savings benefit the employer or the employee?* Can we trust such a hard-to-measure stat?Our latest episode tackles this and other disruptions happening to the creative and production processes. Matthew Krissel is the Co-Founder of the Built Environment Futures Council and a Principal at Perkins&Will. For over two decades, he has led transformative architectural projects across North America and internationally. We discussed how AI is disrupting architecture and lessons for digital product teams. He really struck powerful points many times during our conversation about questioning the role of time and permanence in a world when we want more, faster.Other points covered in the conversation:* Commoditizing design makes production easier, enabling societies to tackle challenges like housing shortfalls* Commoditizing design devalues other vital processes, like community engagement, respectful place-making, and longevity of projects* Over-indexing AI's potential as a workflow optimizer, while under-indexing the potential to reimagine how complex projects are planned and operationalizedListen on Spotify | Listen on Apple PodcastsIn this newsletter, I'd like to tackle the concept of time saving and what it means from the perspective of crafting an AI strategy. Here was the most important quote from the episode: So just because something took half the time it did before, what happened is we just did more. So we just filled the time. Is there something higher and better use? I suspect that somewhere along the line the designs got better. Also I suspect that somewhere along there was diminishing returns. We were just doing more because we could not that it was actually yielding anything better.  Are you gonna focus on fewer, but better increase your quality? Are you going to spend more time on business development or some entrepreneurial side hustle? Just go home early? What you decide to do as we start to gain productivity time is going to shape a lot of where this is all happening.Newsletter recommendation: Scott BelskyEssential insights and lessons from Scott Belsky that anyone building with AI must read. His newsletter is fantastic and a must-subscribe because of his unique cross-section of expertise across creativity, product, and innovation. His books have also always been pivotal reads to advance your craft. Hopefully, we can do some of the same with our Design of AI podcast and newsletter. Who should benefit most from your ability to learn AI: You or your employer?The challenge to creatives and builders is to decide who should benefit from these transformative technologies if you're self-taught:* Should you gift your employer the benefits if you've taught yourself ways of getting 25% more work accomplished in a day?* Should you gift yourself the benefits of your increased productivity and work on side projects, or spend more time with your family?Historically speaking, employers were responsible for the means and training of production. They paid for novel technologies —desktops, SaaS, big data— and were responsible for training you on how to use them. AI is different because employers are often lagging behind employees in embracing and educating on how to use the technology effectively. It is very easy to argue that the 200 hours you've spent learning AI outside of work hours should exclusively benefit you.AI Time Savings: Benefits & RisksTechnologies have consistently saved us time, but the resulting effects have been questionable. The internet and mobile phones connected the world, while also leading to increased poor health outcomes due to more time sitting. We also spend more time alone than ever.Further back, the Industrial Revolution raised the quality of life for everyone. Still, the commoditization of work led to industrialists exploiting child labour and putting everyone into deplorable working conditions that polluted communities. The time the workforce saved most benefited employers, with employees giving up their ways of life in favour of steady incomes. Most relocated to cities, got cut off from their families, and learned the pain of commuting for the first time.When it comes to AI, the benefits we hope for centre on automation and augmentation. The hope is that we will benefit from less shitty work (automated away) and that we can our new capabilities (augmented by AI) will enable us all become wealthy entrepreneurs. Sure, this may be true for the top 0.01% of AI users who learn how to run a typically 10-person business by themselves. For the rest of us our work may in fact get a lot shittier. At least that's what the authors of the upcoming book, The AI Con, believe. The authors (and upcoming Design of AI guests), Alex Hanna and Emily M. Bender tell a tale of how AI's risks have been severely hidden under the rug. In their book, they document many examples of the technology performing so poorly at tasks that products were shut down within weeks.Maybe the future of businesses will look a lot like Amazon: A business offering endless products of questionable quality and provenance with no humans in sight except those working the worst possible jobs in sorting information, like something out of Severance. In this scenario, the majority of humans will be employed as mall cops of the technology, swooping in when a problem happens that slips between the programming and policies. At this point, AI hypers would argue that even if the enshittification of work is inevitable, AI will open up new and better types of jobs. Only time will tell. How does AI change our relationship with time?When buying productivity-boosting hardware and software, the expectation has always been that the results are undeniable. Going from handwriting to using a typewriter was immensely faster. The same is true when buying a new Saas platform that makes managing projects infinitely easier. Now, with GenAI-powered products, the ROI is unpredictable. The vast majority of capabilities deliver the illusion of rapid progress. Think of image and video generation —the immediate results are shockingly impressive. But getting results to be production-ready requires mastery of probabilistic software and/or resetting your expectations. It all means that the operator —you— ultimately plays a bigger role in the ROI of using this technology than with previous ones.So-called Vibe coding is a major testament to the time savings that AI can create. Anyone can now build a website and app without writing a line of code.Vibe coding platforms —like Cursor, Lovable, Replit, and many more— are fantastically easy to use… until they're absolutely painful to use. The stunning early rewards turn into confusingly broken components all over.Again, results depend on the operator's ability to debug using an entirely new interface paradigm (conversational). This continues the technology's remarkable inversion of the value paradigm, where workers define the quality of outputs.Looking ahead, mastery of data will triumph over mastery of interfaces. This favours employers who unlock the power of their first-party data and build solutions that augment and automate the expertise of their employees.Always worth reading, strategist and tech critic Tom Goodwin posted an intriguing analysis on LinkedIn this week. At the core of the guiding philosophy regarding AI-assistance is that the more complex the task, the less qualified AI is to work on the task unassisted.Check our previous podcast episode and newsletter for more details on how to unlock the power of your data. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    AI's Predictive Powers will Change how we Live & Work

    Play Episode Listen Later Apr 8, 2025 49:40


    As much as image generation is fun, the power of GenAI is prediction. The technology operates very similarly to people you might meet: * Some people have studied and are experts in a single topic for a decade. They're experts in that topic and can easily infer, correct, and complete tasks. They're unreliable for everything else.* Some people are generally knowledgeable and have a good understanding of many topics. They aren't experts but can reliably assist you in many ways. But they'll also be wrong sometimes.OpenAI, Anthropic, etc.— are highly knowledgeable in almost every topic. That's the result of being trained on all accessible information online, data they've licensed, plus data they've allegedly stolen. AI products built on these frontier models are immediately powerful for completing any task. But if you build a point solution on proprietary data explicitly trained on a narrow topic, it can achieve an expert level. That was the focus of our conversation with Tyler Hochman, the Founder and CEO of FORE Enterprise. We discussed unlocking AI's predictive power by focusing on expensive and repeating problems. How any business or founder can leverage and/or specialized data sets to train AI models to deliver powerful prediction capabilities.Listen on Spotify | Listen on Apple Podcasts | Watch on YouTubeHe's built AI-powered software to predict when employees may leave their jobs, offer fashion advice, and help professional sports teams improve performance. This video explains how to train your model using Figma files.This conversation highlights how important your first party will become. This data includes more than just your customer data; it should include documenting workflows, quantifying initiatives, and developing a matrix of your offerings/capabilities. Anything repeatable must be quantified as a learning tool.Example of a data collection strategy for AI trainingWhen OpenAI launched a new image generation feature in ChatGPT, everyone jumped on it. AI-generated images infested our feeds in the Studio Ghibli style. These images sparked a lot of worthy debate about copyright infringement, which added to the ethical concerns about how OpenAI trains its model. A recent study highlighted evidence that ChatGPT is trained on copyrighted works.Given that AI models are running out of data to consume, they need to find clever ways to access a new data set. Enter ChatGPT's image generation tool and Ghibli craze. Millions of people have been feeding their photos into the model, giving it access to an entire universe of new training data to improve the quality of its image generation capabilities. Lesson: Collecting user-generated content can provide your custom model with access to training data that was never possible before. This holds true whether your product is a document scanner, video generator, accounting software, run tracking app, or anything else. As we move into the next phase of AI model evolution, the data you have access to might become your best competitive moat. Thus, businesses with access to ethically sourced content from their communities and customers have an advantage.Thanks for reading Design of AI: Strategies for Product Teams & Agencies! Future of AI-powered workforcesYesterday, LinkedIn exploded with screenshots of an internal memo sent by Shopify CEO Tobi Lutke to teams. It marks the most public evidence that AI is moving from a toy we experiment with to a critical skill that you'll be scored in your next performance review.The data backs up that AI adoption is surging within workplaces. A study by the Wharton School at the University of Pennsylvania collected data on which use cases AI is most used for. The report highlighted use cases that every business and employees rely on daily or weekly. Not so long ago, employees secretly used AI at work. The year-over-year data indicate that AI products are becoming adopted at an organizational level.AI's impact on our lives will be dramatic & potentially dystopianStanford's 2025 AI Index Report offers metrics demonstrating the significant leaps forward AI has made across performance and usage metrics. The technology has already surpassed human baseline performance on many measures. And the technology's predictive capabilities are showcased in how effective LLM's performance in clinical diagnosis. It points to a future where every one of us —physicians, educators, factory workers, and beyond— will rely on AI to make more informed decisions. MUST READ: Futures essay about future of superintelligenceThe AI 2027 essay, written by researchers and journalists, examines the question of what happens on a global level as we approach AI superintelligence. A long and worthy read, it illustrates that we are much closer to superintelligence than the public may believe and that the snowball effects of achieving it are massive. They predict dystopian outcomes unless the world unifies around regulations and safety guidelines.If their predictions are true, we're being distracted by the table stakes of Ghibli image generation and coding tasks. This technology will utterly transform our personal and professional lives. It will give governments immense power over one another. And it will open Pandora's box of dreams and nightmares.If you need to chat through the implications of these predictions, email us info@designof.ai. We'll definitely discuss this in detail in our upcoming episode with the authors of the AI Con book and hosts of the Mystery AI Hype Theater 3000 podcast.Podcast recommendation: The Most Interesting Thing in A.I.The Atlantic's Nicholos Thompson started an amazing podcast showcasing strategic topics about AI.Listen to the Andrew Ng episode. It dives into important topics about the future of frontier models and the implications of running out of training data (if it happens). Thanks for reading Design of AI: Strategies for Product Teams & Agencies! This post is public so feel free to share it. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Prepare Yourself for AI to Increasingly Change Our Jobs

    Play Episode Listen Later Mar 13, 2025 67:20


    “The future is already here, it's just not evenly distributed” Science fiction is inspiring, frightening, and often the best lens into the future. Many ideas about the future are b******t —just like this quote being misattributed to the ever-amazing William Gibson— but even the wildest idea shares truths worth discussing.This week's newsletter is an exercise in imagining how AI will transform the way that we work. The future will impact us differently because some already live with a future-centred mindset, while others prefer to shift their thinking daily. One such future-centred thinker is John Whalen, the author of Design for How People Think and the Founder of Brilliant Experience. He shifted from being an AI skeptic to an advocate because he sees a tidal wave of change coming to how product teams operate.Listen on Spotify | Listen on Apple Podcasts | Watch on YouTubeIn the episode, we discuss how he's implemented AI into his workflows and how he can now accomplish projects in one week that used to take seven weeks to complete. He makes a compelling case for why every team should use AI-moderation and synthetic users to enhance product outcomes. But most importantly, he's become an AI advocate because, over his three-decade career, introducing new tools has always been met with doubts and resistance. Ultimately, businesses force the adoption of tools that deliver a clear ROI. There's still much to debate about AI. Reports like this one from Microsoft continue to show that AI isn't ready to replace humans at key tasks. Another 2024 study found that ChatGPT delivered inconsistent results on a key qualitative research task, compared to humans. The most important thing about this study wasn't that humans outperformed LLMs; it was the significant performance improvement from GPT-3.5 to GPT-4.0. AI is getting much better at tasks that seemed unimaginable to automate. We're hearing the same shocking stories across design, development, research, marketing, and sales. Undoubtedly, AI will be able to automate most of our work within a few years.Will that mean we'll be replaced? Yes and no. Just like the industrial age and globalization destroyed artisans, AI will significantly reduce the headcount of “artisanal” product people and the rest of the work will be an assembly line of tool operators.Automation will significantly change many people's lives in ways that may be painful and enduring. But for the economy as a whole, more jobs will be created, and those jobs will look different from those today.Thanks for reading Design of AI. Subscribe to receive new posts.Should we be worried about our jobs?These same conversations are happening across all fields:* Will AI Replace Therapists?* As Technology Progresses, Certain Accounting Jobs May Fade Away* The Risk of Dependence on Artificial Intelligence in Surgery* AI could terminate graphic designers before 2030You're probably reading this with a sense of confidence that you're shielded from the impacts of AI because you're working on the bleeding edge of technology. It's true. You should be better equipped to navigate the changes as they happen and adapt to the future better than others. Conversely, your roles face additional pressure to change faster than in other industries. The business realities of being backed by venture capital and private equity mean you're always chasing the future. Tech and agencies have to unlock benefits from AI or risk losing market share and funding.The problem is that nobody can agree on AI's expected impact because it's still just science fiction.According to the OECD report, the level of impact will largely depend on the level of adoption. High adopters might expect a 3x gain compared to those who adopt AI minimally. A McKinsey report highlights the pressure being placed on employees. Their data shows that C-suite executives blame employee readiness as a barrier to gaining benefits from AI. Only 1% of them believe their AI investments have reached maturity.Combined with last week's conversation with Jan Emmanuele, AI investments in creative augmentation and automation will surge in 2026 and beyond. This suggests that employees will be under a lot of pressure to become more productive or else be replaced. Listen to that episode for more details on how AI is being adopted:Listen on Spotify | Listen on Apple PodcastsHow will jobs change as a result of AI?There's no doubt that our jobs will change. They've had to change every time a transformative new technology becomes widely adopted. The only difference now is the speed at which change is happening.Let's analyze how roles are changing from the perspective of product teams.* Our jobs used to be distinct. Each of us had specialties and expertise in areas that protected us.* Our jobs are increasingly commoditized, meaning people from other jobs can do many of our tasks.For example, a designer can now do tasks that previously were out of their sphere:* Use ChatGPT and Cove to explore a strategy and build a business case.* Use Wondering and Vurvey to launch and analyze a research campaign.* Use Lovable and Cursor to prototype and build out a product.Our roles are blending into one another, and employers no longer need as many people to deliver the same amount of work.How we work is also changing. AI is simplifying core tasks along our workflows and automating cumbersome steps. Here's an example of how AI will transform UX Research:If you map your workflow, you'll find a similar transformation happening to your role. Humans will drive decision-making, but AI will increasingly inform those decisions.Maybe John Whalen's vision of product teams as AI-conductors is most appropriate: Maybe there will really be fewer UX researchers. Maybe they're more focused on this I'm calling sort of storytelling or conducting. I picture someone orchestrating these things.What you can do to enhance your futureJohn Whalen's story shows that you can be an industry expert who has written a respected book and led a successful practice, yet still need to adapt to the coming change. He's shifted from being a researcher to being a research technologist, one who delivers projects that used to take much more time and many distinct roles. This is similar to what Phillip Maggs said on episode 20 about becoming a design technolgist (Listen on Spotify | Apple).Recommendations to help you:1. Get closer to the decision-making processWe're all anxious about the economy. The viability of many businesses is at risk, and job security is no longer guaranteed. Our goal should be to bring confidence and certainty to our work. That means pinpointing what our internal and external stakeholders are most worried about and delivering solutions that address those.In the case of John Whalen and UX researchers, stakeholders had questioned the certainty of insights. With AI, John and others can deliver a 10x larger sample size in more markets.Similarly, designers, writers, PMs, and developers should use AI to deliver work more confidently. You're able to get more user feedback at every stage of the process. You can scale your work to be localized to more markets. You can automate tasks that are cumbersome and error-prone.None of this is to minimize being human-centred. But the industry has been questioning whether orgs have been perpetuating the illusion of user-centred design. Managing stakeholders' expectations puts you closer to the decision-making process and gives you the ability to dictate how good work happens.2. Challenge the assumptions that limit expectationsNew apps are released every month that bend our perception of what's possible. If you had collected a list of capabilities that you wished were possible, they probably exist now. Your job must be to push the work beyond the assumed limitations. To do this, you must test new apps and see if they can confidently overcome the limitations to your work. Explore new capabilities in the apps you already rely on. Experiment with combining applications that excel at key parts of your work.Being tied to a single legacy app is the worst thing you can do. You're hitching your future to that product's ability to be better than the dozens of other teams simultaneously trying to disrupt each other.3. Walk into every situation with clarity about your value drivers and superpowersWe can obsess over clients and our work, but understanding what you're exceptional at is more important than everything you deliver. We're much more than our performance reports and more capable than the best project we've ever worked on.It requires us to be self-critical about what drives us, what limits us, and where we can excel. For example, you might identify that:* You're envigorated by structuring and organizing * You're envigorated by hacking solutions and testing capabilities* You're exceptional at building alignment and support for initiatives* You're exceptional at taking on complexity and uncertaintyThese fundamental truths enable you to dictate your path to success better:* Who you should be working for* What types of projects and roles you should be working on* What unique capabilities you should be highlighting* Which principles you should use as a north star for leveraging AIIf this is a topic you'd like to me dive deeper into, please leave a comment or send a message.4. Remember that the future is not evenly distributedThe closer you get to the centre of tech, the pace of change will increase. The gravity of the situation is exciting for some and utterly exhausting for others. Find the orbit that best suits you.If you're reading this newsletter, you're clearly a future-centred thinker. You can leverage that in the centre of tech to push projects and productivity to new heights. You could also work in a traditionally slower industry —healthcare, government, legal, education— and affect more change by challenging long-held assumptions.All change is relative but what brings you joy and meaning is deeply personal. Embrace that.One last and important consideration…Erika Hall speaks the uncomfortable truths that we need to hear. Follow her.Some jobs simply aren't worth keeping. Some uses of AI are appalling. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Implementing AI into creative workflows: How to prepare yourself and protect your job

    Play Episode Listen Later Mar 3, 2025 58:21


    There are many reasons to debate the ethics and implications of AI. But while we do that, hundreds of the world's biggest brands are rushing to implement the technology into creative and coding workflows. At a time when shareholders are being unforgiving and policy making is volatile, business leaders are looking to AI to gain any advantage possible.Jan Emmanuele is one of the experts that these Fortune 500 corporations rely on to identify and build GenAI creative workflow augmentations and automations. He works for Superside —whom you might remember from our episode with Philip Maggs (Listen here)— because they're on the leading edge of creating an LLM that interprets your briefing process, design system, brand guidelines, marketing campaigns, and data to automate high-volume creative tasks. In this episode, we focus on how and where AI is applied within organizations and workflows. It details how organizations can prepare themselves for implementing AI and how to address the core barriers and risks of the technology.Listen on Spotify | Listen on Apple PodcastsWhat was most interesting about this conversation was his prediction that the adoption of AI will explode in enterprise orgs starting in 2026 and that it could continue into the 2030s. He believes that the value of AI in enterprise has already been proven and that more use cases exist than anyone can believe. That adoption thus far has only been limited because of legal and procurement policies.If this is true, organizations that aren't already at least planning for this workflow-automated future will soon be at a huge competitive disadvantage. Finding 10x augmentations of creative output is routinely achieved, and more will be possible for organizations with highly-structured and easily-repeatable workflows. The gains will be largest in orgs that leverage the uniquely-LLM capability of contextualizing outputs based on data. Examples include localizing campaigns to micro-niche segments or regions of the world. Thanks for reading Design of AI: Strategies & insights for product teams! This post is public so feel free to share it.Headwinds will reduce the number of creatives earning a living wageAs we barrel towards the increasingly inevitable reliance on LLMs, it puts creatives in the uncomfortable position of fighting for their survival and protesting for what's ethically correct. The music industry is the canary in the coal mine in this battle. Many artists earn the majority of their income from their back catalogues and LLMS are effectively using those albums as mulch to improve generative capabilities. On one side, you have an entire way of life being threatened; on the other, you have artists that will quickly need to learn how to master generative capabilities to become an indispensable musician regardless of the headwinds that will reduce the amount of music earning a living wage. As platforms get better, we'll just generate the music and images we need instead of hiring professionals.Overcoming the uncanny valley: Not being able to determine what was generated by AIWhat has made all of us feel more comfortable has been that AI still sucks at a lot of creative tasks. Blooper reels and countless articles of AI creative generative fails give us hope that the technology isn't ready to replace anyone yet. But we've learned from our latest episode and many previous ones that the technology is much more ready for primetime than we might believe. Many of the failures we see today result from the false sense of confidence the platforms offer novices. While the simplicity of these tools has exploded the amount of experimentation happening, we're flooded with more fails than fantastic examples.Another factor is that the simplicity of the GenAI interfaces obscures the complexity happening in the background. We believe we can generate a campaign-ready 20-second video by typing in a prompt. But the complexity comes from knowing what models, protocols, data sets, and projects to connect for the best outcomes. This is an era dominated by creative technologists who can see these possibilities and stay up-to-date with the latest capabilities.In the hands of someone who understands how to overcome the rawness of the technology, the possibilities are limitless. And for every project we see published, there are at least another dozen working to push those capabilities further in the near future. Sesame is another example of technology overcoming the uncanny valley by delivering conversational voice capabilities indistinguishable from humans. These developments are happening at such a pace that it's impossible to keep up. For example, researchers have created an agentic, autonomous framework that iteratively structures and refines knowledge in situ.The point is that whether you agree with the hype of an AI-powered future or not, businesses everywhere will implement it because the impact is increasingly undeniable. Action items: What can we do to prepare ourselves and our workI hate that the ethics of AI seem like an afterthought to the beating drum of business automation. It's deeply uncomfortable that many professions and industries must adapt or face extinction. The only way to stare into this abyss and feel hopeful is to believe that the rising tide of resentment against big tech will fuel a renaissance of altruistic misfits building the models and layers that do less harm. But that won't calm the nerves of the musicians and artists who see an end to their way of life today.We can mourn the tidal wave of change while also preparing for the new world order that comes next.If you're a creative:* Stop undervaluing yourself and your work. Listen back to yourself explain the work you do. Recognize all the steps, decisions, and life lessons you neglect to mention. You need to document who you are to such a granular level that you spot where your genius is most pronounced and where you're on autopilot. Then consider how to leverage AI to amplify/automate each of those.* Tap into your most significant creative strengths. You are more than your outputs. You fell into this career for a reason and persist because of at least one exceptional creative strength. Document it and the conditions under which it enhances your work more than others. Now find AI tools that can make that happen more often and for longer periods. * Lead the change you want to see. Don't wait for inspiration and innovative products to land in your inbox. Go find them, test them, implement them, and prove if they can or can't help you achieve your goals.If you're a business leader: * Accept that change is coming fast. You can feel unsure about the technology, worried about the risks, and apprehensive about the costs. But you cannot wait to start imagining what the future of your business and industry might look like. Go through future casting exercises and monitor the countless startups slowly eating away at your competitive moat.* Empower your team to succeed. Even if people tell you they aren't worried about the coming change, they probably are. You need to lead them through this and create a shared vision of what the future version of your business and workforce can look like. Include teams in co-creation processes to determine the best ways to empower them to succeed by eliminating barriers and inefficiencies.* Structure your data and production workflows. AI is most effective in highly repetitive situations where success can be easily evaluated. Businesses will succeed that have standardized their key workflows and have structured data that adds critical context about situations and success. Do the work now before an expensive consultant charges you millions once there's a veritable gun to your head due to competitive concerns. Contact me if you need helpThank you for following the Design of AI podcast and this newsletter. This year, we'll spend more time discussing this seemingly insurmountable challenge of implementing AI effectively. Please comment if there are specific questions or topics you need us to discuss. And feel free to vent about topics that you're most frustrated or concerned about so we know what our community needs.We're also hoping to launch some events in major markets this year to bring together early adopters and experimenters with those eager to leverage this technology effectively.And if you need help with any consulting related work related to envisioning your AI-powered future, email me at arpy@ph1.ca Product of the month: RaycastRaycast is a perfect example of the disruptive potential of AI. While everyone else is running to add bullshitty AI features to make using their products easier, others are rewriting the way we interact with digital experiences. Raycast basically looked at MacOS and said, “Let's rebuild the entire finder and launcher experience.”It's ironic for me because one year ago, I worked on a project where the outcome was the real potential value of AI in a mobile phone experience would be as an assistive launcher experience that eliminates all the inefficiencies of Android. Well, here it is! Thanks for reading Design of AI: Strategies & insights for product teams! This post is public so feel free to share it. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    How Can we Design a New Relationship with AI?

    Play Episode Listen Later Feb 19, 2025 85:37


    Whether we admit it, like it, or believe it, we're in a relationship with AI.That's the first of many powerful reflections made by Sara Vienna, Metalab's Chief Design Officer, in her must-read manifesto about how design and product must evolve. Unlike the design leaders who speculate about AI's impact, Sara and her world-class team are years ahead. They are designing disruptive AI product experiences and leveraging AI to elevate their workflows. Sara's episode is one of the most important conversations we've had about the future of design and products.Listen on Spotify | Listen on Apple PodcastsShe believes that AI will change how we work and what we build. Those who embrace the potential of AI will succeed in the oncoming disruption. But most importantly, the future of product+AI will be in making five mindset shifts:They're fundamentally principles for humanizing experiences. The hope is that AI will finally bridge the divide so products can deliver the value we've always wished was possible in the most humanized way possible. But there will be challenges in accomplishing this:* Most product orgs are built around the concept of delivery, not design excellence* Unlocking user data: Getting access to valuable data and knowing how to use it in a meaningful way are still more fantasy than reality* In every direction we turn, trust is being diluted* Design as we know it will need to be reborn to adapt to move from creating pixel-perfect interfaces to ones that adapt and spawn based on user interactionsAgain, I highly recommend listening to the entire episode.Thanks for reading Design of AI: Strategies & insights for product teams! This post is public so feel free to share it.Envisioning the future of design & productIf we extrapolate on Sara Vienna's vision of how design should change, a couple of core reality checks come to mind:* Today, we can't even conceptualize what products will be able to do tomorrow. Just like new AI tools are being released faster than we can read about them, more teams than ever are competing to deliver the use case & interaction model that will redefine a category. It's a race to an undefined & moving finish line.* The underlying models may be the heartbeat of future products, but design will always be the brain. Products plug into whichever model suits them best at a particular moment, usually based on cost and accuracy. But just like each of our minds brings a different lived reality and way of using knowledge, the models are less important than the strategy that's been designed into the product.* Fewer designers and product managers will yield immense power. AI automation platforms —like Make and Loveable— can effectively replicate more than half of products today. This percentage will grow until such a point that any product will soon be able to be cloned, undermining its competitive advantage. The designers and product managers working on the future of design will have the funding that enables them to compete in a global race that they're likely to lose because they don't know what competition they're actually facing. The rest of us will be working to keep the lights on.Big question: How should we be using AI, today?Photoshop celebrated its 35th birthday today and is a perfect reminder of how disruptive platforms eventually become part of the boring vocabulary of the everyday.GenAI platforms, like ChatGPT, are in their infancy. Everything seems equal parts novel and confusing. We're still unsure how to use this superintelligence, only that we should be using it. Photoshop's rise was similar: a platform that opened up so many possibilities but whose ultimate impact wasn't felt until it redefined the designer role many years later. What's happening today is that employees are smuggling AI into work and this makes sense given the recent McKinsey report that finds that leaders are slow to adopt because of risks and a lack of vision.Our research finds the biggest barrier to scaling is not employees—who are ready—but leaders, who are not steering fast enough.Anthropic, the maker of Claude, published their Economic Index report and found that AI use is most prevalent in computer & mathematical occupations. Their AI model is mainly used for programming and administrative tasks.What the data also show is that design and creative tasks aren't core use cases, yet. And rightfully so, large language models best serve requests about processing content and code, not pixels and ideas. A report about how generative AI is used in journalism showcases this by highlighting that even the creative tasks are largely operational ones, like resizing images and animating.This data highlights the divide in how leading organizations, like Metalab and Superside, leverage AI compared to the everyday user. While the average person uses Midjourney to generate stock art, leading designers automatically generate localized creative based on design systems and content guidelines.The reality is that product teams have three core workstreams:* Operations: Planning, organizing, editing, describing (e.g. Notion)* Creativity: Ideating, revising, collecting, analyzing (e.g. Cove)* Productivity: Deciding, planning, organizing, explaining (e.g. ChatGPT)Every designer, product manager, writer, producer, and researcher completes tasks in these three workstreams. And every one of you should be taking the time to break down your typical workflows into discrete activities so that you can explore what AI solutions can either augment or automate non-critical tasks.An example of this is how Kyle Soucy is using AI to streamline person and journey map creation. This type of knowledge work is considered sacred by traditionalists but as you can see in her article, she's broken down her workflow to find effortful tasks to be augmented/automated. We can question AI's accuracy all we want. We can challenge if models were trained ethically. And we can debate what percentage of your job may benefit from using AI. What will not change is the undeniable truth that the intelligence and capabilities of these models and tools will only improve. The sooner we embrace that truth, the better positioned we are to control our own fates. For example, a recent study evaluated AI vs. human-generated therapy responses from 13 expert therapists (clinical psychologists, counseling psychologists, marriage and family therapists, and a psychiatrist). The report found (questionable) data to indicate that users couldn't tell if a human or an AI made the responses. The AI also outperformed human therapists on empathy, professionalism, and cultural competence.We'll soon reach a point where generative AI can output designs that are indiscernibly human or automated. In this near-term reality, the role of designers must evolve or be replaced.A recommended action plan for how you should be using AI today:* Plan projects and workstreams using templates, resources, and added context* Communicate ideas and insights better by using AI to iterate and expand* Question the rationale, assumptions, and factors that impact the project goal* Compile inspiration, ideas, and information that will broaden your thinking* Analyze larger data sets and more sources than you could have before* Challenge your concepts by making variants and exploring new directions * Create more deliverables by automating localization, multiple formats, and generating content based on systemsIf you enjoy this content, please make sure to listen to the Design of AI podcast on Spotify and Apple. Make sure to follow us and rate the show if you like the show!Add me on LinkedIn if you want to ask any questions or discuss a project. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    AI is making Knowledge Work cheaper & easier— some will benefit huge

    Play Episode Listen Later Feb 5, 2025 53:14


    There's little debate that AI will change the world. What we're not so sure about is if AI's expected disruptions to how we work will be outweighed by the benefits of accessing a super-intelligence.David Boyle thinks of LLMs as an electric bicycle for the mind, one that enables us to go farther than we ever imagined with much less effort. His opinion comes from being one of the first market researchers to experiment with LLMs and subsequently turn his learnings into the PROMPT series of books to help marketers, startups, researchers, musicians, and other creatives benefit from the emerging technology. He's an audience research expert who has informed global strategies for many of the world's biggest brands.In this episode we explore why David Boyle believes that AI can make strategy & research work faster, cheaper, AND better. Listen on Spotify | Listen on AppleThe conversation explains why any product manager, researcher, strategist, or creative should leverage AI. The greatest advantages are speed and quantity because GenAI overcomes research's most time-intensive tasks: codifying and thematic analysis of large data sets.David admits that one of the biggest challenges is that AI are often confidently wrong and that experts must verify the results.This episode raises important questions:* If AI will make all tasks faster, what changes should we expect to our way of working? Consider how the internet is homogenizing the way we live globally.* If a human expert must verify results, how can we trust the results of AI tasks as soon as the velocity scales past the number of humans in-the-loop?* If executives are excited by AI reducing the cost of research, what will stop them from preferring synthetic or non-human verified data once the cost nears zero?Recommended articlesThe Future of Design: How AI Is Shifting Designers from Makers to Curators by Andy Budd“AI is transforming design, shifting designers from hands-on creators to curators focused on strategy” is the most common prediction about where design is headed. The author believes the design roles will evolve to where and how they can best deliver value and it will likely be in enhancing the quality of work delivered by AI. As optimistic as it sounds —hey everyone wants to be more strategic, yay!— the truth is that in this future scenario, the concept of being a design completely changes with most being dedicated to managing AI tasks and the best assigned to bespoke design tasks that must be perfect. The End of Programming as We Know It by Tim O'reillyMakes a case that each fear cycle about software developers getting replaced actually led to an evolution of the craft. He admits that “Eventually much of what programmers do today may be as obsolete” but that it will be more akin to how the old skill of debugging was replaced with roles tackling more complex tasks. As knowledge workers we have to be concerned because our work can't be quantified and automated in the same way as the production-line model of development.AI agents will replace SaaS software by Ayan MajumdarIn this analysis of the CEO of Microsoft's statements that "AI agents will replace all software" he breaks down common SaaS use cases and whether AI can replace those use cases. He concludes that “The shift towards intelligent agents signifies a move away from manual software interactions towards more intuitive, AI-driven processes.” Overall this is further evidence AI agents could replace the SaaS layer which often only existed to give custom lenses to your own data.AI-Generated Slop Is Already In Your Public Library by Emanuel MaibergThe enshitifaction of knowledge is now hitting libraries. Libraries, once keepers and curators of the world's most important knowledge now can't guarantee the accuracy, provenance, and value of many works being submitted. “My library, like most, does not have the resources to be checking Hoopla on a weekly basis to weed out what we wouldn't want there.”What being replaced by AI in 2025 looks likeWhere does knowledge work go from here?Here's an example of the disruptions possible today where OpenAI's new Deep Research was used in combination with Gamma to do big consultancy-level research into a market and publish a stunning report. All in 2 minutes.Agencies & consultants: Any business that doesn't learn to adopt AI to augment and automate workflows will be at risk of losing niche projects to competitors who are optimized for price, speed, and/or scale. Legacy and large orgs tend to be overloading team members so much to remain profitable that they will be slow to adapt to challengers who will turn AI into a major advantage in a price-sensitive market.Researchers & designers: Orgs are hungry to cut costs and will jump at the opportunity to automate rote tasks. Worse yet the entire value of design and research is becoming so commodified that at least one of your leaders will have the misguided belief that everything you do can be automated. Find a culture that values you and become an expert in leveraging the tools to augment your imagination, planning, iteration, and delivery.Analysts & marketers: AI is giving you an ever-expanding superpower to access more data and analyze it more effectively. Your value only goes up if you challenge your own assumptions of what is possible. Being flexible with the tools, platforms, and methods you use will only lead to better outcomes. Unlike other knowledge workers you're experts in how to deploy copilots and agents effectively because you know how to structure data and requests.Recap from Autonomous AI SummitThis week thousands of industry leaders and strategies attended the Board of Innovation's online summit. Content was largely focused on shifting perspectives about the technology, the future, and use cases.Day 1 recap by Chisoko Luala SimbuleDay 2 recap by Chisoko Luala SimbuleThanks for reading Design of AI: Strategies & insights for product teams! This post is public so feel free to share it. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Challenges of leveraging AI in existing products + Implications of Deepseek

    Play Episode Listen Later Jan 28, 2025 50:42


    Up until recently Miro was the innovator's defacto collaboration platform. In recent years a long list of apps added similar functionality to eat away at the online whiteboard segment. Our latest episode with Ioana Teleanu, Miro's former Lead Product Designer for AI explores the challenges and opportunities of leveraging AI to enhance an existing product.Listen on Spotify | Listen on AppleKey takeaways:* When a product experience is already good, do we need to add AI?* AI makes it easier for more products to enter your category and add unexpected competition* Adding AI forces product teams to ship quickly to be able to learn, sometimes with uncertainty attached* You must consider if AI is the right solution to the problem you're trying to solveIf you have any questions about these or other AI questions, reach out to us and we can help you upack what it means for your product.Thanks for reading Design of AI: Strategies & insights for product teams! This post is public so feel free to share it.Next week's podcast episode features David Boyle who makes a case for why AI is transforming what we can learn about audiences and how those insights will improve our ability to strategize.Featured articlesAI Agents: How Businesses Must Adapt or Risk Obscurity (Arpy Dragffy)Ethan Mollick is right: #AIAgents are going to fundamentally change how websites, apps, and APIs are structured. But the implications go far deeper. We're rapidly moving from a world where users seek out information to one where it is pushed to them by AI agents acting on their behalf. This shift has profound consequences for businesses of all sizes, and those that fail to adapt risk disappearing into the noise that these agents must sort through. (Read full article)The Wild Future of Commerce & The Rise of Conformative Software (Scott Belsky)This edition explores forecasts and implications around: (1) wild expectations for the future of commerce, (2) the era of “conformative software” that becomes more tailor-made as you use it, and (3) some surprises at the end, as always. (Read full article)25 Themes for 2025 (Bronwyn Williams)A cheat sheet of the 25 top things I'm watching unfold in 2025 (See presentation)Always remember… a good learner appreciates being proven wrongBiggest story of the week: Deepseek Ovetta Sampson is one of the must-follow voices in AI, bringing a rational perspective to an otherwise nonsensical chorus of voices. Read the full article here.Deepseek is the new Chinese model that is the biggest AI story of the year (so far). Yes the model is Chinese and may be compromised. But what's most compelling about this story:* Despite the US places restrictions and pumping country-sized funding into AI, the model outperforms every model made in the USA.* Just like China has done in countless other industries (e.g. Shein and Huawei), they create copy-cat products that deliver 80% of the value for significantly lower cost.* We went into 2025 thinking OpenAI won the AI model wars that we'd all be subjected to whatever pricing they forced upon us. WRONG. Deepseek and many more will now come along and chip away at that expectation. More analysis about China's disruptive Deepseek model:* Why DeepSeek Prompted a $1 Trillion Tech Sell-Off (Business Insider)*

    We're too obsessed with AI's potential that we forget the challenges

    Play Episode Listen Later Dec 4, 2024 52:52


    Healthcare is constantly highlighted as the industry that will benefit the most from AI. The prospective opportunities are endless: Improve access to services, improve quality of service, patient outcomes, and medical research. An analysis predicts that the healthcare could save up to $360B a year by implementing AI.That's we invited an expert to discuss what other industries can learn from healthcare's massive AI opportunity. Spencer Dorn, the Vice Chair and Professor of Medicine at the University of North Carolina. He is a contributor to Forbes and one of LinkedIn's Top Voices speaking on Healthcare + Innovation.Listen on Spotify | Listen on Apple PodcastsKey takeaways from the episode:* AI has been impacting healthcare for years, especially to create Electronic Health Records (EHS) as a way of centralizing information* AI is being explored today as assistants to medical professionals (e.g. Virtual/digital scribes) and across a variety of diagnosis scenarios (video)* But the rollouts have been plagued by consistent issues related to adoption and poor comprehension of the actual problems* To get EHS implemented EHS it needed an Obama-era law and incentive plan* Many of the initiatives aiming to speed up access to healthcare and diagnosis are undermining the relationships across the journey of being a patient * Technology is rarely the solution because the problem is typically bureaucracy, culture, lack of incentives, and externalitiesLessons for you:* Beware complexity: Most of AI products being sold by major corps and consultancies are ones solving micro-problems and not designed to tackle complex problems* Worry about adoption: It doesn't matter how brilliant your solution is, getting buy-in and adoption within enterprises will be the most pressing challenge* Think of problems as systems: JTBD and user stories have a tendency of over-simplifying problems and underrepresenting the range of factors, dependancies, and implications of a problem on the system as a whole* Ethnography is key: If you want to make a positive change to a problem space you need to leverage deep qualitative research techniques, like ethnography, to document and assess what matters and why* Monitor for unintended consequences: Even after dedicating lots of time to research and planning, we must be monitoring for unintended consequences that may create more work or more anxiety for those stakeholders within the system.Thanks for reading Design of AI: News & resources for product teams! This post is public so feel free to share it.Challenges building truly human-centred AI products and solutionsAI thought leaders love to push this message of getting to the future quickly. It creates this narrative that we're all falling behind.But let's slow down and recognize that there are countless of questions to be addressed before throwing everything out in favour or the shiny new system. This paper from Microsoft explored the many questions that users are posing about using AI agents. And these are very important questions that every team should be able to answer clearly to their users before deploying any solution.This poll from Google's former Chief Decision Scientist highlights that the technical part of implementing AI is no longer the biggest barrier, understanding humans is. If the organizations polled —ones who have successfully implemented AI— are struggling to identify good opportunities and to convince people to use it, then imagine what struggles an everyday org will have.And also worth considering that AI adoption is still much lower than we'd expect given all the hype. The implementation of aI —especially across large orgs— may takes a decade or more because we're fundamentally asking teams to change the way they work. Moreso, those in regulated industries need the permission to change how they operate before they can even consider implementing AI products.In the background many workers are using AI without their employers' knowledge, leading to an endless range of potential risks.Thanks for reading Design of AI: News & resources for product teams! This post is public so feel free to share it.Mindset shifts to help implement AI In the podcast Spencer kept highlighting that we need to go into problem spaces with humility and without the expectation that problems are easy to solve. Other guests have suggests other types of mindset shifts:* Jess Holbrook stated we need to be specific when talk about AI: Too many projects are built off of expectations, not specifications of what AI should do and how* Kristie J. Fisher believes we need to measure time well spent using AI: The best solution to adoption problems is making sure that the AI product delivers value AND time well spent* Josh Clark advocated for embracing the weirdness of AI: The imperfectness of AI outputs should be viewed as a creative and innovative feature to help you explore new directions* Phillip Maggs challenges us to imagine new possibilities with AI: This is your time to spread your capabilities into areas you always wished were possible * Alexandra Holness expects that designers need to be less emotional precious with AI: This is a time of uncertainty and what worked before may not work in the future, so especially designers will need to go into problem spaces with additional humblenessMetalab is probably the premier design shop in North America. They've designed many of the most popular AI products in market today. Sara Vienna, their VP Design published a great manifesto about mindset shifts that's worth a read. And she'll be a guest on the podcast soon!And for those wanting more of a blueprint: Tertiary Education Quality and Standards Agency of Australia put together a guide that has lots of helpful detail into some of these. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    AI is reshaping business & shaping a new future | Author of "AI Value Playbook" joins us

    Play Episode Listen Later Nov 22, 2024 52:19


    In our latest episode, Lisa Weaver-Lambert dispels the belief that is incapable of delivering impact in her book "The AI Value Playbook." She also lays out principles for succeeding in your implementation of AI:1. Your tech stack determines winners: Orgs that already were built to process and leverage data as part of core decision making are at a huge advantage. Especially those that are focused on leveraging insights to learn and iterate.2. Leadership and strategy matter: The vision, guiding principles, and culture matter. They will dictate the strategy or lack of a cohesive strategy.3. AI shouldn't be added on top: AI should be viewed as the pathway ro removing layers, friction, and complexity.4. Getting from proof of concept to value is harder: AI reduces the barrier to creating proof of concepts while also layering in a lot more uncertainty about how to make it production-ready.5. Centralize AI strategy & decentralize implementation: Orgs should have a cohesive strategy owned by a centralized team. But the workflows and use cases defined by the teams that are seeking to gain specific value.Listen on Spotify | Listen on Apple | Watch on YoutubePlease rate the podcastIf you've listened to the podcast, please help us by giving us a rating. It helps us get in front of more people and know that what we're publishing is delivering value.Rate us on Spotify | Rate us on Apple PodcastsAnd if you have comments, questions, or suggestions: info@designof.ai New report showing use of Anthropic (Claude) doubled, while OpenAI lost 1/3Menlo Ventures published their 2024 report: The State of Generative AI in the Enterprise. It shows the continued maturation of the AI market and clear use cases where the tech is being leveraged. Not surprising, task-level use cases that can be directly evaluated/audited are coming out on top. Also, the layers of AI stack are becoming more distinct with some products starting to create their own moats. As we move into 2025 expect the Data layer to split as more orgs realize that they need a semantic layer to structure and make sense of first-party data.Thanks for reading Design of AI: News & resources for product teams! This post is public so feel free to share it.The LLM market share data makes OpenAI look like the big loser. But I suggest throwing out the 2022 and 2023 data since adoption was so low and leveraging the tech for experimentation rather than impact. 2024 is the year when AI became the workhorse for the first time powering countless products. Nonetheless, it is compelling to see Anthropic and Claude shoot up. Their focus on UX seems to be paying dividends, that or OpenAI's dilution of trust is.Of no surprise, prompt engineering is falling off a cliff. It was a bandaid approach for a tech that had no standards yet. For reference a business that built their product through prompts often had to rebuild all those prompts whenever a model was updated. Thanks for reading Design of AI: News & resources for product teams! This post is public so feel free to share it.AI use & impact assessment surveyPlease share your experiences and point of view in our year-end AI research study.Your lessons and opinions will shape a critically important assessment of how & if AI is positively impacting individuals and teams.Less than 5-minutes of your time will help us a lot.Perplexity is one-upping Google by introducing AI-powered shopping journeysPerplexity, the upstart GenAI search form is firing shots at Google by taking a refreshing look at shopping. Rather than focusing on someone searching for a product (e.g. Patio furniture), they are taking a very human-centred approach by focusing on what a user is trying to accomplish (e.g. renovate my outdoor living space). The platform then provides ideas, support, and instructions. Plus, recommends products to buy.While this is immensely helpful, it brings up the ever-present concern that AI will pick winners and losers for us. Where Google served up dozens or hundreds of results and encouraged us to make our own decisions, AI only shows a handful of options. This is the beginning of the platform as expert and it could change how we interact with the world in a huge way. It could lead to small merchants being shut out or even grow distrust of options that aren't recommended by a platform.Alarming data showing that achieving AGI could destroy market wagesEconomics at the International Monetary Fund have modeled data that shows that if Sam Altman & crew succeed at bringing AGI to the world faster than expected, it could set into motion a total destruction of market wages (aka devalue everything).Their model also showed that on the expected timeline of AGI, wages will continue to rise as humans continue to do the thinking for the machines.Read the reportThanks for reading Design of AI: News & resources for product teams! Subscribe for free to receive new posts and support my work. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    How AI mature is your organization? And what are the implications of it?

    Play Episode Listen Later Nov 13, 2024 62:39


    The last two years have been extremely stressful for anyone working in tech. There's been a consistent sense that we all need to do more with less. That our jobs are on the line. And now AI is being touted as the cheat code that will unlock productivity and profit gains.In our latest podcast, Peter Merholz (add him on LinkedIn) doesn't see AI helping much in the short-term because teams are too over-tasked to believe they have the time to try new models of working. He also believes that most organizations don't have cultures and leadership that promote experimentation and reward learning. Listen on Spotify | Listen on Apple | Watch on YoutubeWhat makes matters worse is that simply “using AI” won't get you the results you need. Simply using ChatGPT or Claude will not give you and your business a significant boost because data is at the heart of AI. The more of your first-party data that you train models on and the more that you craft agents around specific workflows, the closer you'll get to what AI acolytes are selling. Accenture calls this AI maturity: Advancing from practice to performance. And this is where Peter Merholz believes that most orgs will be blocked. His experience working in mega-corps has found that most aren't learning cultures. Introducing new tools, mental models, and ways of working aren't well-received. AI use & impact assessment surveyPlease share your experiences and point of view in our year-end AI research study. Your lessons and opinions will shape a critically important assessment of how & if AI is positively impacting individuals and teams. Less than 5-minutes of your time will help us a lot.Valuable lessons

    Sentient Design: Should we be chasing weirdness and divergent ideas?

    Play Episode Listen Later Oct 15, 2024 68:28


    GenAI's promise is that digital experiences will become more intelligent. Big Medium Founder Josh Clark and his daughter, Veronika Kindred, are the authors of the upcoming book “Sentient Design” and the latest guests on the podcast. They see products that are radically adaptive to our situational needs and collaborate with users in ways that seemed insane a few years ago. Listen on Spotify | Listen on Apple PodcastsBut what struck me the most were three things:* Veronika, a GenZer who figuratively grew up inside of tech because of her father's work, sees the role of AI much differently than what us older folk would expect. There's an awkward comfort with the centralization of power within these systems and the expectation that we, the users, will decide whether it is used for good or bad.* Not building towards personalization. Josh knows that it requires far too much data for a system to understand us and what we truly need. So they're better suited to inferring where we are in our journey, making assumptions about what might have changed about us, and adapting to meet us where we are.* Josh is a champion for embracing the weirdness of AI. Rather than be intimidated and worried about hallucinations, use the not-so-perfect technology in ways that provide unexpected results. The counter-point to intelligent products continues to be how much intelligence a user wants and how much personal information they are willing to give up for it. There's nothing more uncomfortable than a salesperson who doesn't get your signals.Adobe's Project Concept is the start of something hugeEmbracing the weirdness is exactly what Adobe's new product, Project Concept does. Better you watch the video than me try and explain. It will be interesting to see how agencies respond to the further commoditization of their expertise.Always remember, GenAI is great at the boring stuffAmazon, in its quest for greater efficiency, has developed new systems to shave seconds off each package delivery and to help customers make faster buying choices, even for new product types that they may know little about. The company announced Wednesday it has created spotlights within its trucks to guide delivery people to packages for each stop along a route."When we speed up deliveries, customers shop more," said Doug Herrington, CEO of Amazon worldwide stores in remarks at the event. "Once a customer experiences fast delivery, they will come back sooner and shop more."Interestingly, this also highlights the tech's ability to imagine solutions to problems that humans may not be able to see otherwise. You could call that embracing the weirdness again. We'll go into this conversation in detail when we interview Lisa Weaver-Lambert, the author of The AI Value Playbook. In the book she interviewed business leaders to document exactly where and how AI has been delivering value.Multi-modal AI: 8 ways computer vision will change our livesWhile GenAI has been monopolizing the headlines, Apple, Meta, and Snap continue to invest in augmented reality headsets. Apple's Vision Pro landed with a thud —largely due to the price and home-bound use cases— but the others stirred buzz because they focused on lightweight and fashionable eyewear (courtesy of their partnership with Ray-Ban).We've been here before though. Google Glass famously failed. And no one remembers Snap's previous eyewear.But now is different.AI researchers have made huge advancements related to computer vision. If AI enables computers to think, computer vision enables them to see, observe and understand.Continue reading the article on LinkedIn…Want to join as a contributor?Contact us info@designof.ai to help us collect the best resources about how AI is shaping the world around us.Thanks for reading Design of AI: News & resources for product teams! Subscribe for free to receive new posts and support my work. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Playstation's Kristie J. Fisher + Guide to designing a GenAI product

    Play Episode Listen Later Sep 26, 2024 49:44


    In this newsletter:* Podcast episode with Kristie J. Fisher, PhD, the Sr. Director of Global User Research, PlayStation Studios.* Guide to designing a GenAI product: From vision to content strategy* Poll for the AI communityThe biggest challenge facing AI products isn't whether they would use your product, it's whether you're delivering reasons to convince them to switch from their existing solution. This is extra difficult when leveraging an emerging technology, like GenAI, because of key factors:* GenAI tools ask users to give up control and have faith that the system knows what's right—the exact opposite of what we've been training users to expect from productivity tools* GenAI is still nascent and doesn't always get it right, meaning that in some situations it will deliver an inferior output (and need to be re-prompted)* Users quickly run out of ideas about what to prompt because they don't know what the tech is capable ofSo as much as product teams can focus on the incremental delivery of value to users, those efforts are likely to fail because we're asking users to take a leap of faith. Something that users, especially B2B and enterprise, don't want to do.Thanks for reading Design of AI: News & resources for product teams! Subscribe for free to receive new posts and support my work.That's why this week's episode with Kristie J. Fisher, PhD was so fascinating. Having worked on launching new products and features at XBox, Google, and Playstation, she has learned how to dive deeper into the psyche of users and gamers. In there is the secret to making a product enjoyable: defining metrics to ensure a user's time is well spent.When building and researching we must be committed not only to delivering value, but ensuring that the experience is enjoyable and worth changing your workflows for. So when building your GenAI product, always create evaluative metrics for the level of impact. The higher you score, the more likely a switch. It also offers and opportunity to qualitatively investigate where and how the impact is happening so you mine valuable product ideas.

    Spotify's former data alchemist: Evaluating when & how to use GenAI

    Play Episode Listen Later Sep 18, 2024 59:04


    Episode 17. Our guest is Glenn MacDonald who was Spotify's Data Alchemist, building it into an algorithmic powerhouse.We're critically evaluating algorithms' effectiveness and why GenAI probably isn't the best technology for many problems.Some key insights:#1. As Spotify's former data alchemist, I expected huge advocacy for hashtag#ML & hashtag#AI as a predictive technology. Instead, we must not play god with algos. They should be assistive tool to get people to where they're headed. Prediction leads to errors.#2. You must be able to evaluate algorithms. Too often we're deploying fancy tech with no way to know it is performing better than an alternative. hashtag#GenAI has a huge risk of this because the assumption is that it solved everything. But the cost of deploying it is also very high."I think the main thing I've learned Is actually not to think about it as prediction, I think the thing that happens to you when you start thinking about things as prediction, and I think this applies to thinking about LLM, LLM outputs as predicting text. It also applies to A& R and music as like predicting hit artists. The moment you start thinking about it as prediction, you've sort of internalized sort of ugly idea that the future is kind of determined and you're just attempting to guess what it's going to be and thus profit by anticipation. And I think it's a lot more productive to not think about the future as something you're predicting, but it's something you're making. ""I think a lot of the time we evaluate new tech against really Poor baselines, like against randomness or against the most popular things, or like you said, against just like our intuitive guesses. And in those contexts, sometimes the fancy tools seem like, Oh, they're clearly better. But then when you compare them against, Oh, what if we just did some math and you realize. Oh, the math's even better. It's a lot simpler. "The episode is hosted by:Arpy Dragffy Guerrero (Founder & Head of product strategy, PH1 Research) https://www.linkedin.com/in/adragffy/Brittany Hobbs (VP Insights, Huge) https://www.linkedin.com/in/brittanyhobbs/Glenn McDonald is a music evangelist, algorithm designer, software engineer and technology strategist. He created the music-exploration website Every Noise at Once, and for 12 years was the Data Alchemist at the Echo Nest and Spotify. He has written about music online since before "blog" was a word, and his first offline book, You Have Not Yet Heard Your Favourite Song: How Streaming Changes Music, is available now from Canbury Press.00:24 Meet Glenn MacDonald: Spotify's Data Alchemist01:50 The Evolution of Music Discovery08:39 The Role of AI in Music and Beyond13:29 Challenges and Future of AI in Music29:14 Navigating AI in the Workplace31:25 Designing User-Friendly Algorithms34:59 Challenges with Algorithmic Recommendations39:42 Evaluating AI and User Testing47:41 The Future of Music and AIThank you for listening to the Design of AI podcast. We interview leaders and practitioners at the forefront of AI. If you like this episode please remember to leave a rating and to follow us on your favorite podcast app.Take part in the conversations about AI https://www.linkedin.com/company/designofai/And subscribe to our newsletter for additional resources https://designofai.substack.com/ This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Service design of AI: Designing the first Copilot w/ Microsoft & OpenAI

    Play Episode Listen Later Sep 5, 2024 51:08


    Our guest is Yasemin Cenberoglu, who was the first designer to work on Microsoft's Copilot, all in secret, before the world was exposed to ChatGPT for the first time.Yasemin is a Principal Design Manager at Microsoft, leading the Copilot product for Teams Meetings, Calling, and Devices. She's the first designer to shape what Copilot is today. Previously, she served as the Director of Design at Digitalist. Yasemin is an advisory board member at IDEA School of Design at Capilano University. She studied in Germany and then at Cal State, in the Bay area.00:49 Yasmin's Background and Role 02:09 Design Differences: Europe vs North America 03:44 Service Design Methodologies 03:58 Co-Creating with OpenAI 04:38 Blueprints and Customer Journeys 05:27 Rapid Prototyping and Testing 06:20 Reconnecting with Yasmin 07:06 The Excitement of Innovation 10:04 Defining Value Drivers 11:50 Building High-Level Scenarios 12:49 Managing Feasibility and Vision 15:53 Lessons Learned from GenAI 21:05 Testing and User Feedback 22:51 Iterative Design and AI 31:52 Building Trust in AI 34:12 Service Design in AI 39:11 Deciding Between Co-Pilot, Agent, or Chatbot 43:41 Future of Assistive Software 47:27 Advice for Aspiring AI DesignersEpisode is hosted by:Arpy Dragffy Guerrero (Founder & Head of product strategy, PH1 Research) https://www.linkedin.com/in/adragffy/ Brittany Hobbs (VP Insights, Huge) https://www.linkedin.com/in/brittanyhobbs/Thank you for listening to the Design of AI podcast. We interview leaders and practitioners at the forefront of AI. If you like this episode please remember to leave a rating and to follow us on your favorite podcast app.Take part in the conversations about AI https://www.linkedin.com/company/designofai/ This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Futures design: Build AI products that customers want & finding use cases

    Play Episode Listen Later Aug 7, 2024 46:27


    How should product teams be leveraging GenAI? Product teams are struggling to find the use cases which deliver the most value to customers and where the technology can be effective. And teams that have built AI products are finding that there's often a mismatch between what customers find valuable and what the technology can do. Our guest is Arpy Dragffy Guerrero, the founder of PH1 Research where he has consulted Spotify, Microsoft, Mozilla, National Football League, to research and strategize how to best leverage emerging technologies. He's worked on products across AI, personalization, Web3, location-sensing, and more. His focus is creating product & testing strategies to quickly pinpoint where the best opportunities are for new products. Follow him on social:⁠https://www.linkedin.com/in/adragffy/⁠⁠https://twitter.com/arpyd⁠Arpy maps out Futures Design: How to build AI products that customers want. We discuss strategies for product teams:‣ Learning from failure & the struggles of early AI‣ The challenge of identifying the impactful use cases of AI‣ The importance of value drivers (& why they aren't JTBD)‣ Applying systems thinking to AI products & strategies‣ People hate chatbots —agents will open new possibilities‣ Examples of how agents could transform use cases and rolesPlease subscribe to: Design of AI: The podcast for product teams, on Spotify, Apple podcasts, Youtube, substack. We interview leaders and practitioners at the forefront of AI to help product teams navigate where and how to leverage AI.Substack newsletter ⁠https://designofai.substack.com/⁠ Join the conversation on LinkedIn ⁠https://www.linkedin.com/company/103164463/⁠This Design of AI episode is brought to you by PH1: A research & strategy consultancy that helps clients build AI products that customers want https://ph1.ca This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Researching & building responsible AI within tech's biggest platforms

    Play Episode Listen Later Jul 18, 2024 60:03


    What is the path to building responsible AI products? We have a special guest: Jess Holbrook, the Head of UX Research for Microsoft AI.We discuss:‣ Responsible AI: What it is and how orgs need a clear vision for it‣ Data transparency: Ensuring you are communicating appropriately‣ Becoming one of Google's first user researchers working on machine learning‣ Philosophical differences to user research at Google, Meta, and Amazon‣ Bridging academic research and the practical development of AI products‣ The paradigm shift that big tech is expecting AI to deliver‣ Why the last thing you should want is a user over-trusting your productAs one of the first user researchers working on AI products, Jess offers a deep and informed perspective on the challenges and opportunities of working with this new technology. He challenges organizations to build values into their products, unwaveringly and without vagueness. Jess Holbrook is the Head of UX Research for Microsoft AI. Prior to that he was Director of UX Research for Generative AI and Responsible AI at Meta. He got his start in human-AI research about 10 years ago at Google where he was a founder and lead of Google's People + AI Research group (PAIR). Prior to joining Google, he was a UX Researcher at Amazon and Microsoft. He received his Ph.D in Psychology from the University of Oregon and a B.S. in Psychology from the University of WashingtonFollow Jess: https://linkedin.com/in/jessholbrook/ https://x.com/jesssconResources mentioned by Jess:https://pair.withgoogle.com/https://research.google/teams/responsible-ai/https://runwayml.com/Please subscribe to: Design of AI: The podcast for product teams, on Spotify, Apple podcasts, Youtube, substack. We interview leaders and practitioners at the forefront of AI to help product teams navigate where and how to leverage AI. Have questions? Join the conversation in our LinkedIn community: https://www.linkedin.com/company/designofai/ Hosted by: Brittany Hobbs https://www.linkedin.com/in/brittanyhobbs/ Arpy Dragffy Guerrero https://www.linkedin.com/in/adragffy/ This Design of AI episode is brought to you by PH1: A research & strategy consultancy that helps clients build AI products that customers want https://ph1.ca This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Unlocking AI product success: Coaching teams through uncertainty & design risks

    Play Episode Listen Later Jun 28, 2024 56:47


    AI is changing the role of the designer and shifting how product teams succeed. We have a special guest: Scott Jenson, formerly from Apple, Google, and Frog Design.We discuss:* Why designers feel like their entire job will go away* What advice he offers to the teams and individuals he coaches* How AI is over--hyped and where it will have impact* Lessons from working at the forefront of mobile technology* Why Google, Apple, Meta, Microsoft are all racing to get there first* Recommendations to build successful products todayThis conversation is more of a coaching session for the designers, researchers, and product teams trying to navigate this time of great change.We try and cut through the hype to distill out key lessons that will help you all in your careers.Scott Jenson has worked in user interface design and strategic planning for over 30 years. The first member of the System Software Human Interface group at Apple in the late 80s, working on System 7, the Apple Human Interface guidelines and the Newton digital assistant. After Apple, was a freelance design consultant, doing work for Netscape, Mayo Clinic, American Express, and several web startups. Then director of product design for Symbian, then managed Mobile UI design at Google for 6 years. Left to become creative director at frog design for 2 years but returned to Google to explore advanced UX concepts for IoT and Android at Google. 35+ patents.  https://www.linkedin.com/in/scottjenson/Please subscribe to: Design of AI: The podcast for product teams, on Spotify, Apple podcasts, Youtube, substack. We interview leaders and practitioners at the forefront of AI to help product teams navigate where and how to leverage AI.Have questions? Join the conversation in our LinkedIn community: https://www.linkedin.com/company/designofai/Hosted by:Brittany Hobbs https://www.linkedin.com/in/brittanyhobbs/Arpy Dragffy Guerrero https://www.linkedin.com/in/adragffy/This Design of AI episode is brought to you by PH1: A research & strategy consultancy that helps clients build AI products that customers wanthttps://ph1.ca This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Content design: How creatives are leveraging prompt engineering to innovate ecommerce platforms & improve brand-building

    Play Episode Listen Later Jun 19, 2024 45:01


    This conversation is a deep case study into what the capabilities of the technology are today and how product teams must leverage both creative experts and these emerging technologies, side-by-side. Our guest is Trisha Causley from Shopify.Topics we discuss:▪ Why Trisha went from an AI skeptic to a champion▪ What types of creative tasks GenAI is best at▪ Tactical lessons for leveraging GenAI across product experiences▪ Why prompt engineering must become part of your toolkit▪ Shopify's plan to leverage GenAI to scale & personalize brand-building▪ Why GenAI enhances the role of creatives by expanding what you doTrisha Causley is a Senior Staff Content Designer at Shopify in Toronto, Canada, where she works on AI-powered product features. She previously worked with IBM and on the Watson team. https://www.linkedin.com/in/tcausley/The Design of AI podcast is available on Spotify, Apple Podcast, and Youtube.Have questions? Join the conversation in our LinkedIn community: https://www.linkedin.com/company/designofai/Subscribe to the Design of AI podcast for more in-depth resources for product teams.Hosted by:Brittany Hobbs https://www.linkedin.com/in/brittanyhobbs/Arpy Dragffy Guerrero https://www.linkedin.com/in/adragffy/ This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Innovation lessons for brands and product teams investing into AI

    Play Episode Listen Later Jun 12, 2024 53:41


    Why are brands investing into AI? How can they succeed? What can we learn from how experts in the field of innovation lead transformation projects? Where will AI actually deliver impact in the near term? Joining us is Nick Sherrard, who is involved in these conversations across Fortune 500, government, and startups.He is a co-founder of Label Sessions, the global innovation expert network, and Label Ventures, the venture studio. He is also a board member at Substrakt, the digital agency, and Collective art gallery in Edinburgh. Nick is often said to be the only person to have run an innovation lab inside a bank, a government department, a big 4 consultancy and a circus. His approach to making change happen in organisations fuses his more classic brand and product development background, with the devising mindset of arts producer. Nick advises boards and entrepreneurs globally.In this episode we cover:* Top-down and bottom-up approaches to leading AI projects* History of art and innovation is the history of rejection* Leaders of AI projects often don't anticipate what's needed* The problem with design thinking when building AI products* How the creative & consulting worlds are enhanced by AI* Use cases where AI will have impactAlso find us Apple Podcast & SpotifyHave questions? Join the conversation with other product leaders on LinkedIn https://www.linkedin.com/company/designofai/Subscribe to the Design of AI podcast for more in-depth resources for product teams. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    AI is disrupting the design & product delivery process [Lessons for startups, enterprise & UX]

    Play Episode Listen Later Jun 4, 2024 48:54


    Building products with GenAI brings powerful new capabilities but also a whole new set of uncertainties. Teams can't rely on best practices because the technology is changing so quickly and users are cautiously adopting change. Designing and shipping products can no longer be thought about as a linear process.Alexandra Holness, Senior Lead Product Designer at Klaviyo, joins to share lessons, cautions, and a path forward to help product teams build AI products that customers want. She sees that successful product teams will depend on designer, data scientists, engineers working more closely than ever because it is very hard to predict how customers will use models until you've shipped them.Topics discussed:* How she created her role leading AI design * Assumptions the team had about how to leverage AI * What works and doesn't from a design perspective* AI models being so nascent that its hard to design a UX* Designers-data-engineers working together in new ways* Building AI products is very different than traditional * Building effective AI products requires culture change* Why you need to test out potential futuresHave questions? Join the conversation https://www.linkedin.com/company/designofai/Subscribe to the Design of AI podcast for more in-depth resources for product teams. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    AI can innovate behavior change strategies & transform personalization

    Play Episode Listen Later May 28, 2024 56:07


    Dr. Amy Bucher literally wrote the book on behavior change.She joined the podcast to discuss how hashtag#GenAI can transform what tech is possible of achieving on a human outcome level:- How AI can open entire new possibilities for behavioural change and lead to monumental outcomes- Opportunities and risks of leveraging AI personalization- Reinforcement learning and what it is- Objective-driven AI and how we should start focusing more on outcomes - Why wearables may open new possibilities- Considerations around proprietary vs. commercially-available AI- And - Why having a AI scientist will be critical for any team and that it may not be as hard to hire for as you think This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Case studies: Leveraging AI to build conversational bots & analyze conversations [Design of AI podcast]

    Play Episode Listen Later May 21, 2024 53:39


    How can AI make our workflows and products more effective? It's a question every product team is asking itself as they decide to invest into developing or licensing products. Let's learn from two building and leveraging AI today.Two case study presenters from the upcoming Rosenfeld Design with AI Conference (June 4 & 5) will be with us to detail out how they leveraged GenAI. Savannah Carlin, Staff Product Designer at Marqeta, will detail how to design conversational interactions with AI. Weidan Li, the Design Research Lead at SEEK.com, will outline AI's performance in analyzing qualitative data. Design of AI, the podcast for product teams Hosted by Brittany Hobbs & Arpy Dragffy Guerrero. Find us on LinkedIn https://www.linkedin.com/company/designofai/Subscribe on Spotify, Apple, YouTube for weekly interviews with leaders at the forefront of AI.And join our substack newsletter to get resources, insights, and strategies for product teams This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    The secrets to researching potential emerging tech products

    Play Episode Listen Later May 15, 2024 49:23


    Building products using emerging technologies is more difficult. As we're seeing with building AI products today, teams are often chasing which use case and customer profiles to focus on. It's harder because the new technologies make us obsess over what's possible rather than what people actually need. Dr. Llewyn Paine joins us to share lessons and strategies from her advising teams working on spatial computing, virtual reality, and robotics. Her expertise is helping teams make better product decisions through research. We'll discuss how to identify your best potential customers and design higher-value products and services they'll love to use. She is an innovation strategy consultant with nearly two decades of experience in emerging technologies, including mixed reality and AI at Microsoft, and experimental media for Disney. She has helped emerging technology teams launch flagship products and secure investments of over $300M. designofai.substack.com to get additional resources.Apple: Spotify: She's speaking at the Designing with AI conference on June 4-5 where she'll be diving into her most recent work: Protecting biometric data of research participants by leveraging AI This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    Venture building: Taking AI product ideas from 0 to 1

    Play Episode Listen Later May 8, 2024 51:06


    There are so many new GenAI products coming to market that it is hard to believe even a fraction of them will become sustainable businesses. Ben Yoskovitz, Founding Partner of Highline Beta and author of Lean Analytics, joins us to discuss how many of these startups will fail to find a product-market fit. By rushing to get to market they're likely skipping key steps that would typically improve their likelihood of success. We discuss the process his venture studio uses and where he sees opportunities for AI products to deliver more value to consumers.Ben's newsletter: https://www.focusedchaos.co/Design of AI, the podcast for product teamsHosted by Brittany Hobbs & Arpy Dragffy Subscribe to the podcasthttps://www.youtube.com/@DesignofAI This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit designofai.substack.com

    GenAI's copyright problem: Training & derivative copies

    Play Episode Listen Later Apr 23, 2024 38:32


    AI has the potential to be a transformational technology. But how is it trained and how can you track authenticity? Virginie Berger, Chief Business Development and Rights Officer at Matchtune, joins us to discuss the developments with copyright issues related to creative fields in hopes of shedding light on what this means for other industries. A particular issue is what happens to business models when you can get replicas elsewhere and have no clarity on how they were derived? We explore how product teams can and should adapt. Important is protecting the rights of your users and leveraging LLMs that are ethically processing the data that you input into them. Episode of hosted by Brittany Hobbs & Arpy Dragffy Guerrero. Please subscribe to the Design of AI, the podcast for product teams who want to leverage AI to transform their industries. Visit https://designof.ai to get AI news & tools that matter to product teams.

    How AI is reshaping UX and the new role for designers

    Play Episode Listen Later Apr 16, 2024 48:45


    Emily Campbell joins us to discuss the future of UX. Her Shape of AI newsletter and community have become the go-to resource for AI product design patterns. She sees AI products getting to market with far less involvement from design than they should have. Design will undoubtedly experience shocks —with roles changing, and anti-patterns emerging— but also entirely new opportunities for design to shape adaptive experiences that offer users new capabilities to personally interact with products. We discuss what comes next after prompt-based, text interfaces. Episode of hosted by Brittany Hobbs & Arpy Dragffy Guerrero. Please subscribe to the Design of AI podcast. We speak to leaders at the forefront of AI to learn how great AI products are designed and how they're transforming industries To contact us visit our website designof.ai

    The future of music in the era of generative AI

    Play Episode Listen Later Apr 9, 2024 48:45


    Maarten Walraven-Freeling, co-editor of MUSIC x and the co-CEO of Symphony Media joins the Design of AI podcast to discuss how AI will impact the music industry. We look at how digital streaming platforms and algorithmic discovery have already led to monumental changes to the business and what to expect now that generative AI tools, like Suno, are making music creation easier and more accessible. It is clear that music is one of the first and most important battleground where we see the potential of AI as a creative tool but also where concerns are growing about GenAI platforms being trained on content without the permission of copyright holders. The show is hosted by Brittany Hobbs & Arpy Dragffy Guerrero Subscribe on Spotify, Youtube, or Apple to get our latest episodes We speak to leaders at the forefront of AI to learn how great AI products are designed and how they're transforming industries To contact us visit our website designof.ai

    Designing AI products: Building effective products with LLMs

    Play Episode Listen Later Apr 1, 2024 48:27


    Peter Van Dijck, Founding Partner of AI agency Simply Put joins us to discuss how his team designs and builds AI products. Peter —formerly of Huge and Work & Co— share insights from how his background as an information architect and designer enable his team to see opportunities to discover and build the right product for orgs. We discuss the growing potential of LLMs to take on more use cases and the ways in which human-centred design inform decisions that need to be made.

    How AI is changing ad agencies & the creative process

    Play Episode Listen Later Mar 5, 2024 46:21


    Ad agencies have always had to be ahead of their curve. They need to predict what clients need tomorrow. But AI has the potential to change everything about their workflows, business models, and value. We speak with JP Holecka, CEO of POWERSHIFTER, to find out how agencies will need to adapt. He's spent the last year training agencies on GenAI capabilities, as well as pushing the limits of the tools in his own projects.

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