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Maggie Appleton

The Dark Forest and Generative AI One Developer, Two Dozen Agents, Zero Alignment Gas Town’s Agent Patterns, Design Bottlenecks, and Vibecoding at Scale January 2026 | Maggie Appleton A Treatise on AI Chatbots Undermining the Enlightenment A Brief History & Ethos of the Digital Garden Vibe Code is Legacy Code May 2025 | Maggie Appleton Home-Cooked Software and Barefoot Developers Statistically, When Will My Baby Be Born? Speculative Calendar Events ChatGPT Would be a Decent Policy Advisor March 2025 | Maggie Appleton The Expanding Dark Forest and Generative AI Humanity's Last Exam Squish Meets Structure Common Misconceptions in AI Undetected AI Exam Answers Unbaited Smidgeons Growing a Human: The First 30 Weeks How to Import Academic Papers from Zotero into Tana December 2024 | Maggie Appleton Aesthetic Command Lines with Hyper, Spaceship, and Oh My Zsh Leaving Elicit July 2024 | Maggie Appleton A Short History of Bi-Directional Links The Pattern Language of Project Xanadu Assumed Audiences Ambient Co-presence On Opening Essays, Conference Talks, and Jam Jars Spinning Worlds, Seasickness, and Dealing with Vestibular Neuritis A Collection of Design Engineers Gathering Structures Daily Notes Pages Historical Trails December 2023 | Maggie Appleton September 2023 | Maggie Appleton Digital Gardening for Non-Technical Folks June 2023 | Maggie Appleton Computational Notebooks Folk Interfaces Reverse Outlining with Language Models Command K Bars Spatial Web Browsing A Picture Worth a Thousand Programmes Programmable Notes Programming Portals Teenage Skeuomorphic Desktop Designs Tending Evergreen Notes in Roam Research Growing the Evergreens Why You Own an iPad and Still Can't Draw A Brief Introduction to Digital Anthropology Transclusion and Transcopyright Dreams The Block-Paved Path to Structured Data Empty Pointers and Constellations of AI Metaphors We Web By The Gift Economy Epistemic Disclosure November 2022 | Maggie Appleton Joining Ought July 2022 | Maggie Appleton The Linear Oppression of Note-taking Apps Paleolithic Nostalgia Interoperable Personal Libraries and Ad Hoc Reading Groups The Finest Narrative Non-Fiction Essays Algorithmic Transparency October 2021 | Maggie Appleton Plebeian Programming with Keyboard Maestro The Cultural Anthropology of React August 2021 | Maggie Appleton Natureculture, Moral Purity, and Cultural Boundaries The Echo & Narcissus Writing Club Pink, Soft, Glittering Developers Fetishism & Mechanical Keyboards Making Programming Visual, Spatial, and Learnable Organic, Local, Artisan Data Storage Positioning Elements & Scrollytelling in CSS Painting Roam Research with Custom CSS A Digital Anthropology Reading List The Eponymous Laws of Programming A History of Cyborgs Neologisms GreenSock Animations with React Hooks The Bare Essentials of Greensock September 2020 | Maggie Appleton Illustrating Gatsby's Key Concepts Problematic Proteins New Harvest & Illustrating the Cultivated Meat Podcast Synecdoche: Drawing the Part for the Whole A Meta-Tour of This Site Douglas, Dirt, and Matter Out of Place The Knowledge Hydrant A Naïve Exploration of Computer-Supported Collaborative Learning Silent Synchronous Reading Sessions What the Fork is React Suspense? Visually Workshopping the AWS Cloud Are Data Unions the Future of Data? Pattern Languages in Programming and Interface Design A Metaphorical Reading Collection
Language Model Sketchbook, or Why I Hate Chatbots
notes.joshbeckman.org · 2023-06-13 · via Maggie Appleton

We don’t quite know what to do with language models yet. But we have some hunches. To me they seem obviously useful as epistemic rubber ducks 🐥 – as things we can query for fuzzy answers, bounce ideas off, and think through problems with. They can help strengthen our own critical thinking and reasoning abilities in the same way a good debate partner does.

This isn’t the only way they’re useful, but it’s the one I’m most curious about. So I’ve been playing with it.

The primary interface everyone and their mother jumps to at this point is the chatbot. We are irreversibly anchored to this text-heavy, turn-based interface paradigm. And sure, it’s a great solution in a lot of cases! It’s flexible, familiar, and easy to implement.

But it’s also the lazy solution. It’s only the obvious tip of the iceberg when it comes to exploring how we might interact with these strange new language model agents we’ve grown inside a neural net.

An iceberg where chatbots are only the tip

I won’t turn this into an anti-chatbot-tirade, but I am certainly brewing one. A few of my friends have eloquently written about this so just go read their work in the meantime.

Back to the point: I have a large, sprawling Figma file full of tiny interface sketches trying to explore what kinds of non-chatbot, epistemic-rubber-ducky-interfaces could be helpful for us. Here’s a couple of them.

Daemons

Imagine the environment you’re writing in has a few characters who hang out in the background and suggest ideas to you every now and then.

These daemons have particular personalities – one plays devil’s advocate, one says encouraging things and compliments your writing, one synthesises your ideas into more concise statements, one fetches evidence and research for you, one elaborates on points you haven’t fully explained, etc.

As you write, one of them might highlight a sentence and suggest a revision, or ask you to defend a claim. You can always ignore them if you like and the suggestion will fade.

Here’s a more detailed walkthrough of how this works

Screenshot of the daemons prototype
Screenshot of the daemons prototype
Screenshot of the daemons prototype
Screenshot of the daemons prototype
Screenshot of the daemons prototype
Screenshot of the daemons prototype

Branches

A lot of what we think of as “understanding an issue” often comes down to “What caused this?” and “What are the consequences of this?”. Or put another way, “Why did this happen?” and “What’s likely to happen next?”

We usually get to the bottom of these questions through a mix of research and sitting alone trying to think hard about the issue at hand.

It seems plausible language models would be good helpers in this department. They have plenty of latent knowledge and I’ve found they’re quite good at suggesting reasonable cause-and-effect chains. As long as you double-check its suggestions and don’t take them as gospel.

This concept is centered around exploring these cause/consequence chains

Screenshot of the branches prototype
Screenshot of the branches prototype
Screenshot of the branches prototype

Epi

While I love interfaces with a tightly-scoped and specific purpose, there’s clearly some opportunity for a more general-purpose reasoning assistant with LMs. Specifically for folks doing research and non-fiction writing.

Models can help in a bunch of small ways – rephrasing sentences, offering critiques of ideas, helping to find evidence for claims, generating possible research questions, and pointing out our assumptions.

Epi uses the familiar right-click context menu to make these moves available in a simple writing context.

Screenshot of the epi prototype
Screenshot of the epi prototype
Screenshot of the epi prototype
Screenshot of the epi prototype
Screenshot of the epi prototype
Screenshot of the epi prototype
Screenshot of the epi prototype

I’m still building out this collection. More to come.