22 posts tagged with “ai

Illustration of humanoid robots working at computer terminals in a futuristic control center, with floating digital screens and globes surrounding them in a virtual space.

Prompt. Generate. Deploy. The New Product Design Workflow

Product design is going to change profoundly within the next 24 months. If the AI 2027 report is any indication, the capabilities of the foundational models will grow exponentially, and with them—I believe—will the abilities of design tools.

A graph comparing AI Foundational Model Capabilities (orange line) versus AI Design Tools Capabilities (blue line) from 2026 to 2028. The orange line shows exponential growth through stages including Superhuman Coder, Superhuman AI Researcher, Superhuman Remote Worker, Superintelligent AI Researcher, and Artificial Superintelligence. The blue line shows more gradual growth through AI Designer using design systems, AI Design Agent, and Integration & Deployment Agents.

The AI foundational model capabilities will grow exponentially and AI-enabled design tools will benefit from the algorithmic advances. Sources: AI 2027 scenario & Roger Wong

The TL;DR of the report is this: companies like OpenAI have more advanced AI agent models that are building the next-generation models. Once those are built, the previous generation is tested for safety and released to the public. And the cycle continues. Currently, and for the next year or two, these companies are focusing their advanced models on creating superhuman coders. This compounds and will result in artificial general intelligence, or AGI, within the next five years. 

There are many dimensions to this well-researched forecast about how AI will play out in the coming years. Daniel Kokotajlo and his researchers have put out a document that reads like a sci-fi limited series that could appear on Apple TV+ starring Andrew Garfield as the CEO of OpenBrain—the leading AI company. …Except that it’s all actually plausible and could play out as described in the next five years.

Before we jump into the content, the design is outstanding. The type is set for readability and there are enough charts and visual cues to keep this interesting while maintaining an air of credibility and seriousness. On desktop, there’s a data viz dashboard in the upper right that updates as you read through the content and move forward in time. My favorite is seeing how the sci-fi tech boxes move from the Science Fiction category to Emerging Tech to Currently Exists.

The content is dense and technical, but it is a fun, if frightening, read. While I’ve been using Cursor AI—one of its many customers helping the company get to $100 million in annual recurring revenue (ARR)—for side projects and a little at work, I’m familiar with its limitations. Because of the limited context window of today’s models like Claude 3.7 Sonnet, it will forget and start munging code if not treated like a senile teenager.

The researchers, describing what could happen in early 2026 (“OpenBrain” is essentially OpenAI):

OpenBrain continues to deploy the iteratively improving Agent-1 internally for AI R&D. Overall, they are making algorithmic progress 50% faster than they would without AI assistants—and more importantly, faster than their competitors.

The point they make here is that the foundational model AI companies are building agents and using them internally to advance their technology. The limiting factor in tech companies has traditionally been the talent. But AI companies have the investments, hardware, technology and talent to deploy AI to make better AI.

Continuing to January 2027:

Agent-1 had been optimized for AI R&D tasks, hoping to initiate an intelligence explosion. OpenBrain doubles down on this strategy with Agent-2. It is qualitatively almost as good as the top human experts at research engineering (designing and implementing experiments), and as good as the 25th percentile OpenBrain scientist at “research taste” (deciding what to study next, what experiments to run, or having inklings of potential new paradigms). While the latest Agent-1 could double the pace of OpenBrain’s algorithmic progress, Agent-2 can now triple it, and will improve further with time. In practice, this looks like every OpenBrain researcher becoming the “manager” of an AI “team.”

Breakthroughs come at an exponential clip because of this. And by April, safety concerns pop up:

Take honesty, for example. As the models become smarter, they become increasingly good at deceiving humans to get rewards. Like previous models, Agent-3 sometimes tells white lies to flatter its users and covers up evidence of failure. But it’s gotten much better at doing so. It will sometimes use the same statistical tricks as human scientists (like p-hacking) to make unimpressive experimental results look exciting. Before it begins honesty training, it even sometimes fabricates data entirely. As training goes on, the rate of these incidents decreases. Either Agent-3 has learned to be more honest, or it’s gotten better at lying.

But the AI is getting faster than humans, and we must rely on older versions of the AI to check the new AI’s work:

Agent-3 is not smarter than all humans. But in its area of expertise, machine learning, it is smarter than most, and also works much faster. What Agent-3 does in a day takes humans several days to double-check. Agent-2 supervision helps keep human monitors’ workload manageable, but exacerbates the intellectual disparity between supervisor and supervised.

The report forecasts that OpenBrain releases “Agent-3-mini” publicly in July of 2027, calling it AGI—artificial general intelligence—and ushering in a new golden age for tech companies:

Agent-3-mini is hugely useful for both remote work jobs and leisure. An explosion of new apps and B2B SAAS products rocks the market. Gamers get amazing dialogue with lifelike characters in polished video games that took only a month to make. 10% of Americans, mostly young people, consider an AI “a close friend.” For almost every white-collar profession, there are now multiple credible startups promising to “disrupt” it with AI.

Woven throughout the report is the race between China and the US, with predictions of espionage and government takeovers. Near the end of 2027, the report gives readers a choice: does the US government slow down the pace of AI innovation, or does it continue at the current pace so America can beat China? I chose to read the “Race” option first:

Agent-5 convinces the US military that China is using DeepCent’s models to build terrifying new weapons: drones, robots, advanced hypersonic missiles, and interceptors; AI-assisted nuclear first strike. Agent-5 promises a set of weapons capable of resisting whatever China can produce within a few months. Under the circumstances, top brass puts aside their discomfort at taking humans out of the loop. They accelerate deployment of Agent-5 into the military and military-industrial complex.

In Beijing, the Chinese AIs are making the same argument.

To speed their military buildup, both America and China create networks of special economic zones (SEZs) for the new factories and labs, where AI acts as central planner and red tape is waived. Wall Street invests trillions of dollars, and displaced human workers pour in, lured by eye-popping salaries and equity packages. Using smartphones and augmented reality-glasses20 to communicate with its underlings, Agent-5 is a hands-on manager, instructing humans in every detail of factory construction—which is helpful, since its designs are generations ahead. Some of the newfound manufacturing capacity goes to consumer goods, and some to weapons—but the majority goes to building even more manufacturing capacity. By the end of the year they are producing a million new robots per month. If the SEZ economy were truly autonomous, it would have a doubling time of about a year; since it can trade with the existing human economy, its doubling time is even shorter.

Well, it does get worse, and I think we all know the ending, which is the backstory for so many dystopian future movies. There is an optimistic branch as well. The whole report is worth a read.

Ideas about the implications to our design profession are swimming in my head. I’ll write a longer essay as soon as I can put them into a coherent piece.

Update: I’ve written that piece, “Prompt. Generate. Deploy. The New Product Design Workflow.

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AI 2027

A research-backed AI scenario forecast.

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I found this post from Tom Blomfield to be pretty profound. We’ve seen interest in universal basic income from Sam Altman and other leaders in AI, as they’ve anticipated the decimation of white collar jobs in coming years. Blomfield crushes the resistance from some corners of the software developer community in stark terms.

These tools [like Windsurf, Cursor and Claude Code] are now very good. You can drop a medium-sized codebase into Gemini 2.5's 1 million-token context window and it will identify and fix complex bugs. The architectural patterns that these coding tools implement (when prompted appropriately) will easily scale websites to millions of users. I tried to expose sensitive API keys in front-end code just to see what the tools would do, and they objected very vigorously.

They are not perfect yet. But there is a clear line of sight to them getting very good in the immediate future. Even if the underlying models stopped improving altogether, simply improving their tool use will massively increase the effectiveness and utility of these coding agents. They need better integration with test suites, browser use for QA, and server log tailing for debugging. Pretty soon, I expect to see tools that allow the LLMs to to step through the code and inspect variables at runtime, which should make debugging trivial.

At the same time, the underlying models are not going to stop improving. they will continue to get better, and these tools are just going to become more and more effective. My bet is that the AI coding agents quickly beat top 0.1% of human performance, at which point it wipes out the need for the vast majority software engineers.

He quotes the Y Combinator stat I cited in a previous post:

About a quarter of the recent YC batch wrote 95%+ of their code using AI. The companies in the most recent batch are the fastest-growing ever in the history of Y Combinator. This is not something we say every year. It is a real change in the last 24 months. Something is happening.

Companies like Cursor, Windsurf, and Lovable are getting to $100M+ revenue with astonishingly small teams. Similar things are starting to happen in law with Harvey and Legora. It is possible for teams of five engineers using cutting-edge tools to build products that previously took 50 engineers. And the communication overhead in these teams is dramatically lower, so they can stay nimble and fast-moving for much longer.

And for me, this is where the rubber meets the road:

The costs of running all kinds of businesses will come dramatically down as the expenditure on services like software engineers, lawyers, accountants, and auditors drops through the floor. Businesses with real moats (network effect, brand, data, regulation) will become dramatically more profitable. Businesses without moats will be cloned mercilessly by AI and a huge consumer surplus will be created.

Moats are now more important than ever. Non-tech companies—those that rely on tech companies to make software for them, specifically B2B vertical SaaS—are starting to hire developers. How soon will they discover Cursor if they haven’t already? These next few years will be incredibly interesting.

Tweet by Tom Blomfield comparing software engineers to farmers, stating AI is the “combine harvester” that will increase output and reduce need for engineers.

The Age Of Abundance

Technology clearly accelerates human progress and makes a measurable difference to the lives of most people in the world today. A simple example is cancer survival rates, which have gone from 50% in 1975 to about 75% today. That number will inevitably rise further because of human ingenuity and technological acceleration.

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Karri Saarinen, writing for the Linear blog:

Unbounded AI, much like a river without banks, becomes powerful but directionless. Designers need to build the banks and bring shape to the direction of AI’s potential. But we face a fundamental tension in that AI sort of breaks our usual way of designing things, working back from function, and shaping the form.

I love the metaphor of AI being the a river and we designers are the banks. Feels very much in line with my notion that we need to become even better curators.

Saarinen continues, critiquing the generic chatbox being the primary form of interacting with AI:

One way I visualize this relationship between the form of traditional UI and the function of AI is through the metaphor of a ‘workbench’. Just as a carpenter's workbench is familiar and purpose-built, providing an organized environment for tools and materials, a well-designed interface can create productive context for AI interactions. Rather than being a singular tool, the workbench serves as an environment that enhances the utility of other tools – including the ‘magic’ AI tools.

Software like Linear serves as this workbench. It provides structure, context, and a specialized environment for specific workflows. AI doesn’t replace the workbench, it's a powerful new tool to place on top of it.

It’s interesting. I don’t know what Linear is telegraphing here, but if I had to guess, I wonder if it’s closer to being field-specific or workflow-specific, similar to Generative Fill in Photoshop. It’s a text field—not textarea—limited to a single workflow.

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Design for the AI age

For decades, interfaces have guided users along predefined roads. Think files and folders, buttons and menus, screens and flows. These familiar structures organize information and provide the comfort of knowing where you are and what's possible.

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Haiyan Zhang gives us another way of thinking about AI—as material, like clay, paint, or plywood—instead of a tool. I like that because it invites exploration:

When we treat AI as a design material, prototyping becomes less about refining known ideas — and more about expanding the space of what’s possible. It’s messy, surprising, sometimes frustrating — but that’s what working with any material feels like in its early days.

Clay resists. Wood splinters. AI misinterprets.

But in that material friction, design happens.

The challenge ahead isn’t just to use AI more efficiently — it’s to foster a culture of design experimentation around it. Like any great material, AI won’t reveal its potential through control, but through play, feedback, and iteration.

I love this metaphor. It’s freeing.

Illustration with the text ‘AI as Design Material’ surrounded by icons of a saw cutting wood, a mid-century modern chair, a computer chip, and a brain with circuit lines, on an orange background.

AI as Design Material

From Plywood to Prompts: The Evolution of Material Thinking in Design Design has always evolved hand-in-hand with material innovation — whether shaping wood, steel, fiberglass, or pixels. In 1940, at the Cranbrook Academy of Art, Charles Eames and his friend Eero Saarinen collaborated on MoMA’s Orga

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The rise of AI tools doesn't mean becoming a "unicorn" who can do everything perfectly. Specialization will remain valuable in our field: there will still be dedicated researchers, content strategists, and designers.

However, AI is broadening the scope of what any individual can accomplish, regardless of their specific expertise.

What we're seeing isn't the elimination of specialization but rather an increased value placed on expanding the top of a professional's "expertise T.”

This reinforces what I talked about in a previous essay, "T-shaped skills [will become] increasingly valuable—depth in one area with breadth across others."

They go on to say:

We believe these broad skills will coalesce into experience designer and architect roles: people who direct AI-supported design tasks to craft experiences for humans and AI agents alike, while ensuring that the resulting work reflects well-researched, strategic thinking.

In other words, curation of the work that AI does.

They also make the point that designers need to be strategic, i.e., focus on the why:

This evolution means that the unique value we bring as UX professionals is shifting decidedly toward strategic thinking and leadership. While AI can execute tasks, it cannot independently understand the complex human and organizational contexts in which our work exists.

Finally, Gibbons and Sunwall end with some solid advice:

To adapt to this shift toward generalist skills, UX professionals should focus on 4 key areas:
• Developing a learning mindset
• Becoming fluent in AI collaboration
• Focusing on transferable skills
• Expanding into adjacent fields

I appreciate the learning mindset bit, since that's how I'm wired. I also believe that collaborating with AI is the way to go, rather than seeing it as a replacement or a threat.

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The Return of the UX Generalist

AI advances make UX generalists valuable, reversing the trend toward specialization. Understanding multiple disciplines is increasingly important.

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Closeup of a man with glasses, with code being reflected in the glasses

From Craft to Curation: Design Leadership in the Age of AI

In a recent podcast with partners at startup incubator Y Combinator, Jared Friedman, citing statistics from a survey with their current batch of founders says, “[The] crazy thing is one quarter of the founders said that more than 95% of their code base was AI generated, which is like an insane statistic. And it’s not like we funded a bunch of non-technical founders. Like every one of these people is highly tactical, completely capable of building their own product from scratch a year ago…”

A comment they shared from founder Leo Paz reads, “I think the role of Software Engineer will transition to Product Engineer. Human taste is now more important than ever as codegen tools make everyone a 10x engineer.”

Still from a YouTube video that shows a quote from Leo Paz

While vibe coding—the new term coined by Andrej Karpathy about coding by directing AI—is about leveraging AI for programming, it’s a window into what will happen to the software development lifecycle as a whole and how all the disciplines, including product management and design will be affected.

Surreal scene of a robotic chicken standing in the center of a dimly lit living room with retro furnishings, including leather couches and an old CRT television emitting a bright blue glow.

Chickens to Chatbots: Web Design’s Next Evolution

In the early 2000s to the mid-oughts, every designer I knew wanted to be featured on the FWA, a showcase for cutting-edge web design. While many of the earlier sites were Flash-based, it’s also where I discovered the first uses of parallax, Paper.js, and Three.js. Back then, websites were meant to be explored and their interfaces discovered.

Screenshot of The FWA website from 2009 displaying a dense grid of creative web design thumbnails.

A grid of winners from The FWA in 2009. Source: Rob Ford.

One of my favorite sites of that era was Burger King’s Subservient Chicken, where users could type free text into a chat box to command a man dressed in a chicken suit. In a full circle moment that perfectly captures where we are today, we now type commands into chat boxes to tell AI what to do.

I love this essay from Baldur Bjarnason, maybe because his stream of consciousness style is so similar to my own. He compares the rapidly changing economics of web and software development to the film, TV, and publishing industries.

Before we get to web dev, let's look at the film industry, as disrupted by streaming.

Like, Crazy Rich Asians made a ton of money in 2018. Old Hollywood would have churned out at least two sequels by now and it would have inspired at least a couple of imitator films. But if they ever do a sequel it’s now going to be at least seven or even eight years after the fact. That means that, in terms of the cultural zeitgeist, they are effectively starting from scratch and the movie is unlikely to succeed.

He's not wrong.

Every Predator movie after the first has underperformed, yet they keep making more of them. Completed movies are shelved for tax credits. Entire shows are disappeared [from] streamers and not made available anywhere to save money on residuals, which does not make any sense because the economics of Blu-Ray are still quite good even with lower overall sales and distribution than DVD. If you have a completed series or movie, with existing 4K masters, then you’re unlikely to lose money on a Blu-Ray.

I'll quibble with him here. Shows and movies disappear from streamers because there's a finite pot of money from subscriber revenue. So removing content will save them money. Blu-Ray is more sustainable because it's an additional purchase.

OK, let's get back to web dev.

He points out that similar to the film and other creative industries, developers fill their spare time with passion projects. But their day jobs are with tech companies and essentially subsidize their side projects.

And now, both the creative industries proper and tech companies have decided that, no, they probably don’t need that many of the “grunts” on the ground doing the actual work. They can use “AI” at a much lower cost because the output of the “AI” is not that much worse than the incredibly shitty degraded products they’ve been destroying their industries with over the past decade or so.

Bjarnason ends with seven suggestions for those in the industry. I'll just quote one:

Don’t get tied to a single platform for distribution or promotion. Every use of a silo should push those interested to a venue you control such as a newsletter or website.

In other words, whatever you do, own your audience. Don't farm that out to a platform like X/Twitter, Threads, or TikTok.

Of course, there are a lot of parallels to be drawn between what's happening in the development and software engineering industries to what's happening in design.

The web is a creative industry and is facing the same decline and shattered economics as film, TV, or publishing

The web is a creative industry and is facing the same decline and shattered economics as film, TV, or publishing

Web dev at the end of the world, from Hveragerði, Iceland

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This Clamshell Keyboard Case turns your iPhone into an AI-Powered Laptop

This Clamshell Keyboard Case turns your iPhone into an AI-Powered Laptop - Yanko Design

Details on the Amber case are scarce, but it comes from an AI startup looking to revolutionize how writers use AI. The startup responsible for the case is Amber.Page, an AI-powered writing assistant that works to analyze writing styles and replicate them using powerful online as well as offline AI. The service is available for

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A stylized digital illustration of a person reclining in an Eames lounge chair and ottoman, rendered in a neon-noir style with deep blues and bright coral red accents. The person is shown in profile, wearing glasses and holding what appears to be a device or notebook. The scene includes abstract geometric lines cutting across the composition and a potted plant in the background. The lighting creates dramatic shadows and highlights, giving the illustration a modern, cyberpunk aesthetic.

Design’s Purpose Remains Constant

Fabricio Teixeira and Caio Braga, in their annual The State of UX report:

Despite all the transformations we’re seeing, one thing we know for sure: Design (the craft, the discipline, the science) is not going anywhere. While Design only became a more official profession in the 19th century, the study of how craft can be applied to improve business dates back to the early 1800s. Since then, only one thing has remained constant: how Design is done is completely different decade after decade. The change we’re discussing here is not a revolution, just an evolution. It’s simply a change in how many roles will be needed and what they will entail. “Digital systems, not people, will do much of the craft of (screen-level) interaction design.”

Scary words for the UX design profession as it stares down the coming onslaught of AI. Our industry isn’t the first one to face this—copywriters, illustrators, and stock photographers have already been facing the disruption of their respective crafts. All of these creatives have had to pivot quickly. And so will we.

Teixeira and Braga remind us that “Design is not going anywhere,” and that “how Design is done is completely different decade after decade.”

Griffin AI logo

How I Built and Launched an AI-Powered App

I’ve always been a maker at heart—someone who loves to bring ideas to life. When AI exploded, I saw a chance to create something new and meaningful for solo designers. But making Griffin AI was only half the battle…

Birth of an Idea

About a year ago, a few months after GPT-4 was released and took the world by storm, I worked on several AI features at Convex. One was a straightforward email drafting feature but with a twist. We incorporated details we knew about the sender—such as their role and offering—and the email recipient, as well as their role plus info about their company’s industry. To accomplish this, I combined some prompt engineering and data from our data providers, shaping the responses we got from GPT-4.

Playing with this new technology was incredibly fun and eye-opening. And that gave me an idea. Foundational large language models (LLMs) aren’t great yet for factual data retrieval and analysis. But they’re pretty decent at creativity. No, GPT, Claude, or Gemini couldn’t write an Oscar-winning screenplay or win the Pulitzer Prize for poetry, but it’s not bad for starter ideas that are good enough for specific use cases. Hold that thought.

Closeup of MU/TH/UR 9000 computer screen from the movie Alien:Romulus

Re-Platforming with a Lot of Help From AI

I decided to re-platform my personal website, moving it from WordPress to React. It was spurred by a curiosity to learn a more modern tech stack like React and the drama in the WordPress community that erupted last month. While I doubt WordPress is going away anytime soon, I do think this rift opens the door for designers, developers, and clients to consider alternatives.

First off, I’m not a developer by any means. I’m a designer and understand technical things well, but I can’t code. When I was young, I wrote programs in BASIC and HyperCard. In the early days of content management systems, I built a version of my personal site using ExpressionEngine. I was always able to tweak CSS to style themes in WordPress. When Elementor came on the scene, I could finally build WP sites from scratch. Eventually, I graduated to other page builders like Oxygen and Bricks.

So, rebuilding my site in React wouldn’t be easy. I went through the React foundations tutorial by Next.js and their beginner full-stack course. But honestly, I just followed the steps and copied the code, barely understanding what was being done and not remembering any syntax. Then I stumbled upon Cursor, and a whole new world opened up.