The Clockwork Penguin

Daniel Binns is a media theorist and filmmaker tinkering with the weird edges of technology, storytelling, and screen culture. He is the author of Material Media-Making in the Digital Age and currently writes about posthuman poetics, glitchy machines, and speculative media worlds.

Tag: software

  • Give me your answer, do

    By Ravi Kant on Pexels, 13 Mar 2018.

    For better or worse, I’m getting a bit of a reputation as ‘the AI guy’ in my immediate institutional sub-area. Depending on how charitable you’re feeling, this could be seen as very generous or wildly unfounded. I am not in any way a computer scientist or expert on emergent consciousness, synthetic cognition, language models, media generators, or even prompt engineering. I remain the same old film and media teacher and researcher I’ve always been. But I have always used fairly advanced technology as part of anything creative. My earliest memories are of typing up, decorating, and printing off books or banners or posters from my Dad’s old IBM computer. From there it was using PC laptops and desktops, and programs like Publisher or WordPerfect, 3D Movie Maker and Fine Artist, and then more media-specific tools at uni, like Final Cut and Pro Tools.

    Working constantly with computers, software, and apps, automatically turns you into something of a problem-solver—the hilarious ‘joke’ of media education is that the teachers have to be only slightly quicker than their students at Googling a solution. As well as problem-solving, I am predisposed to ‘daisy-chaining’. My introduction to the term was as a means of connecting multiple devices together—on Mac systems circa 2007-2017 this was fairly standard practice thanks to the inter-connectivity of Firewire cables and ports (though I’m informed that this is still common even through USB). Reflecting back on years of software and tool usage, though, I can see how I was daisy-chaining constantly. Ripping from CD or DVD, or capturing from tape, then converting to a useable format in one program, then importing the export to another program, editing or adjusting, exporting once again, then burning or converting et cetera et cetera. Even not that long ago, there weren’t exactly ‘one-stop’ solutions to media, in the same way that you might see an app like CapCut or Instagram in that way now.

    There’s also a kind of ethos to daisy-chaining. In shifting from one app, program, platform, or system, to another, you’re learning different ways of doing things, adapting your workflows each time, even if only subtly. Each interface presents you with new or different options, so you can apply a unique combination of visual, aural, and affective layers to your work. There’s also an ethos of independence: you are not locked in to one app’s way of doing things. You are adaptable, changeable, and you cherry-pick the best of what a variety of tools has to offer in order to make your work the best it can be. This is the platform economics argument, or the political platform economics argument, or some variant on all of this. Like everyone, I’ve spent many hours whinging about the time it took to make stuff or to get stuff done, wishing there was the ‘perfect app’ that would just do it all. But over time I’ve come to love my bundle of tools—the set I download/install first whenever I get a new machine (or have to wipe an old one); my (vomits) ‘stack’.

    * * * * *

    The above philosophy is what I’ve found myself doing with AI tools. I suppose out of all of them, I use Claude the most. I’ve found it the most straightforward in terms of setting up custom workspaces (what Claude calls ‘Projects’ and what ChatGPT calls ‘Custom GPTs’), and just generally really like the character and flavour of responses I get back. I like that it’s a little wordy, a little more academic, a little more florid, because that’s how I write and speak; though I suppose the outputs are not just encoded into the model, but also a mirror of how I’ve engaged with it. Right now in Claude I have a handful of projects set up:

    • Executive Assistant: Helps me manage my time, prioritise tasks, and keep me on track with work and creative projects. I’ve given it summaries of all my projects and commitments, so it can offer informed suggestions where necessary.
    • Research Assistant: I’ve given this most of my research outputs, as well as a curated selection of research notes, ideas, reference summaries, sometimes whole source texts. This project is where I’ll brainstorm research or teaching ideas, fleshing out concepts, building courses, etc
    • Creative Partner: This remains semi-experimental, because I actually don’t find AI that useful in this particular instance. However, this project has been trained on a couple of my produced media works, as well as a handful of creative ideas. I find the responses far too long to be useful, and often very tangential to what I’m actually trying to get out of it—but this is as much a project context and prompting problem as it is anything else.
    • 2 x Course Assistants: Two projects have been trained with all the materials related to the courses I’m running in the upcoming semester. These projects are used to brainstorm course structures, lesson plans, and even lecture outlines.
    • Systems Assistant: This is a little different to the Executive/Research Assistants, in that it is specifically set up around ‘systems’, so the various tools, methods, workflows that I use for any given task. It’s also a kind of ‘life admin’ helper in the sense of managing information, documents, knowledge, and so on. Now that I think of it, ‘Daisy’ would probably be a great name for this project—but then again

    I will often bounce ideas, prompts, notes between all of these different projects. How much this process corrupts the ‘purity’ of each individual project is not particularly clear to me, though I figure if it’s done in an individual chat instance it’s probably not that much of an issue. If I want to make something part of a given project’s ongoing working ‘knowledge’, I’ll put a summary somewhere in its context documents.

    But Claude is just one of the AI tools I use. I also have a bunch of language models on a hard drive that is always connected to my computer; I use these through the app GPT4All. These have similar functionality to Claude, ChatGPT, or any other proprietary/corporate LLM chatbot. Apart from the upper limit on their context windows, they have no usage limits; they run offline, privately, and at no cost. Their efficacy, though, is mixed. Llama and its variants are usually pretty reliable—though this is a Meta-built model, so there’s an accompanying ‘ick’ whenever I use it. Falcon, Hermes, and OpenOrca are independently developed, though these have taken quite some getting used to—I’ve also found that cloning them and training them on specific documents and with unique context prompts is the best way to use them.

    With all of these tools, I frequently jump between them, testing the same prompt across multiple models, or asking one model to generate prompts for another. This is a system of usage that may seem confusing at first glance, but is actually quite fluid. The outputs I get are interesting, diverse, and useful, rather than all being of the same ‘flavour’. Getting three different summaries of the same article, for example, lets me see what different models privilege in their ‘reading’—and then I’ll know which tool to use to target that aspect next time. Using AI in this way is still time-intensive, but I’ve found it much less laborious than repeatedly hammering at a prompt in a single tool trying to get the right thing. It’s also much more enjoyable, and feels more ‘human’, in the sense that you’re bouncing around between different helpers, all of whom have different strengths. The fail-rate is thus significantly lowered.

    Returning to ethos, using AI in this way feels more authentic. You learn more quickly how each tool functions, and what they’re best at. Jumping to different tools feels less like a context switch—as it might between software—and more like asking a different co-worker to weigh in. As someone who processes things through dialogue—be that with myself, with a journal, or with a friend or family member—this is a surprisingly natural way of working, of learning, and of creating. I may not be ‘the AI guy’ from a technical or qualifications standpoint, but I feel like I’m starting to earn the moniker at least from a practical, runs on the board perspective.

  • Things organised neatly

    I asked AI to make me more productive and all I got was this stupid picture (made by DALL-E 3, 31 Dec 2023)
    Image generated by Midjourney, prompts by me.

    I spent 2023 learning a great deal about myself. I know everyone always says that around this time of year, but in my case it’s true on a personal, psychological, physiological and personal level. Leaving all of that to one side, it’s also the year that I devoted the most time (too much?) to finding and building a system of notetaking, resource- and time-keeping, and knowledge management that really worked for me.

    At the end of the year I’ve managed to consolidate everything down to a handful of tools:

    • Obsidian (notes, connections, ideas, daily scribblings; always open)
    • Readwise & Readwise Reader (highlights, literature notes, read-later)
    • Raindrop (bookmarks, sorted and organised per life/work commitments, e.g. research, writing, story resources, health, fun stuff)
    • Todoist (task management)
    • Day One (private journaling, morning pages, reflections, mood tracking)
    • IFTTT (general app connections and automation)

    I pay for premium versions of all of the above; partly because it keeps me accountable for what I’m using and doing, but also because I like the apps, have always had great support from their teams, and think they’re products worth supporting, so that those who maybe can’t afford to pay, can still use.

    Project management remains an issue, but I think I’ve finally accepted that I might just have to delegate or outsource some of that, somewhere, somehow.

    Other processes I tried and let go of this year include Notion, bullet journaling, and a variety of other apps like Zapier, ClickUp and Inoreader. I had tried many of these before, but this was a proper test to see if they could be worked into and add value to the system.

    Like many things in life, you’ll hear a million ways to ‘do’ productivity, and you’ll listen to a few key phrases, but you won’t ever take them in, or implement them. The main one for me was ‘ignore every other system and work on your own’. This isn’t to say you shouldn’t check out what others have done, but you cannot and should not then immediately try to copy most of their system.

    I would fall into this trap a lot. It begins with watching a great video by Nicole van der Hoeven, or FromSergio, or even letting out a little squeal when Python Programmer jumps on the Obsidian bandwagon (look, one day I’ll learn Python, but 2024-5 probably isn’t it). You then dive into the description, download every Obsidian plugin they mention, immediately change the frontmatter and template of every current and future note, then tweak your Notion or your Todoist or your calendar or your bullet journal to exactly mirror the Perfect System that this Productivity God hath wrought.

    But of course, none of the systems are perfect. I mean, they might be perfect for Nicole or Sergio or Giles at the time, but these folx are almost certainly tweaking, adjusting, and refining constantly, not to mention that they are informational content creators: they might present a cool method or system that they’ve come across, but they also plainly state in their videos that it might not be for everyone.

    Cherry-picking the bits of different systems that work for me has been a game-changer, as has case-based or small scale testing. It sounds so simple when I type it out like that, and is basically the ethos of every ethical/responsible/sensible experiment ever, but for me, it’s taken some time to really internalise these ideas. In my case, my system/s will never be perfect, because there is no perfect. You just plug away, do the best you can, and try not to let too much obsession with shiny things get in the way of actually working on what you need to work on.

    Organising my notes isn’t my job. Tweaking my frontmatter isn’t my passion. I won’t get promoted for nailing the GTD workflow in Todoist, nor will I feel a warm glow at the end of the day by removing extraneous apps from my phone. For me, if it ain’t broke, I don’t need to lose time trying to fix it. If I find myself obsessing, maybe it’s just time to step away, go and look at a tree, read a book, or play some music.

    My system works for now. I enjoy reading about systems and how other people are thriving, and might take the odd piece of advice on board here and there. But for 2024, my goal isn’t the system; nor is it using my system to be productive. My main goal for 2024 is to be just productive enough, wherever I need to be, to try living for a change.

  • downstream

    Screen Shot 2018-03-21 at 11.26.38 am
    Edie Brickell’s Good Times, one of two music videos that were included with Windows 95.

    The disc for the Windows 95 operating system shipped with two music videos: Edie Brickell’s Good Times and Weezer’s Buddy Holly. These two videos were included to demonstrate how much digital video technology had advanced. Squinting through the pixels today to attempt to discern the image, it’s a wonder anyone thought digital video worth developing beyond that point.

    One of Peter McKinnon’s latest videos demonstrates how you can bring a multicam setup into Premiere Pro and then edit between all cameras in real time. Vision switching has been a thing in live (and even recorded TV) for quite some time, but I find it crazy that processors can now handle real-time 4K video mixing.

    Twenty years is a long time, but it’s also no time at all.

Her language contains elements from Aeolic vernacular and poetic tradition, with traces of epic vocabulary familiar to readers of Homer. She has the ability to judge critically her own ecstasies and grief, and her emotions lose nothing of their force by being recollected in tranquillity.

Marble statue of Sappho on side profile.

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