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I was talking to a friend recently, and zie1 lamented that a Rust web framework uses YAML for its configuration. I'm far from one to defend YAML2, but dug in a little to understand zir issues with it: is it the trauma here, or is it something else? Ultimately, zie wanted something that I also seek in Rust: compile time errors over runtime errors. Checking it with a test My first thought was to use a test to check the configuration. This winds up pretty straightforward. use loco_rs::{config::Config, environment::Environment}; #[test] fn can_load_development_config() { let config = Config::new(&Environment::Development); assert!(config.is_ok()); } We try to load the config from its default location (./config/development.yaml), then we check that it did actually load successfully! This is a partial solution. It detects major errors, like malformed YAML files or missing required options. But it misses the subtle mistakes that can saddle you with a misconfiguration, like...
10 months ago

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More from ntietz.com blog - technically a blog

Covers as a way of learning music and code

When you're just getting started with music, you have so many skills to learn. You have to be able to play your instrument and express yourself through it. You need to know the style you're playing, and its idioms and conventions. You may want to record your music, and need all the skills that come along with it. Music is, mostly, subjective: there's not an objective right or wrong way to do things. And that can make it really hard! Each of these skills is then couched in this subjectivity of trying to see if it's good enough. Playing someone else's music, making a cover, is great because it can make it objective. It gives you something to check against. When you're playing your own music, you're in charge of the entire thing. You didn't play a wrong note, because, well, you've just changed the piece! But when you play someone else's music, now there's an original and you can try to get as close to it as possible. Recreating it gives you a lot of practice in figuring out what someone did and how they did it. It also lets you peek into why they did it. Maybe a particular chord voicing is hard for you to play. Okay, let's simplify it and play an easier voicing. How does it sound now? How does it sound with the harder one? Play around with those differences and you start to see the why behind it all. * * * The same thing holds true for programming. One of my friends is a C++ programmer[1] and he was telling me about how he learned C++ and data structures really well early on: He reimplemented parts of the Boost library. This code makes heavy use of templates, a hard thing in C++. And it provides fundamental data structures with robust implementations and good performance[2]. What he would do is look at the library and pick a slice of it to implement. He'd look at what the API for it is, how it was implemented, what it was doing under the hood. Then he'd go ahead and try to do it himself, without any copy-pasting and without real-time copying from the other screen. Sometimes, he'd run into things which didn't make sense. Why is this a doubly-linked list here, when it seems a singly-linked list would do just fine? And in those moments, if you can't find a reason? You get to go down that path, make it the singly-linked version, and then find out later: oh, ohhh. Ohhhh, they did that for a reason. It lets you run into some of the hard problems, grapple with them, and understand why the original was written how it was. You get to study with some really strong programmers, by proxy via their codebase. Their code is your tutor and your guide for understanding how to write similar things in the future. * * * There's a lot of judgment out there about doing original works. This kind of judgment of covers and of reimplementing things that already exist, just to learn. So many people have internalized this, and I've heard countless times "I want to make a new project, but everything I think of, someone else has already done!" And to that, I say: do it anyway[3]. If someone else has done it, that's great. That means that you had an idea so good that someone else thought it was a good idea, too. And that means that, because someone else has done it, you have a reference now. You can compare notes, and you can see how they did it, and you can learn. I'm a recovering C++ programmer myself, and had some unpleasant experiences associated with the language. This friend is a game developer, and his industry is one where C++ makes a lot of sense to use because of the built-up code around it. ↩ He said they're not perfect, but that they're really good and solid and you know a lot of people thought for a long time about how to do them. You get to follow in their footsteps and benefit from all that hard thinking time. ↩ But: you must always give credit when you are using someone else's work. If you're reimplementing someone else's library, or covering someone's song, don't claim it's your own original invention. ↩

3 weeks ago 26 votes
That boolean should probably be something else

One of the first types we learn about is the boolean. It's pretty natural to use, because boolean logic underpins much of modern computing. And yet, it's one of the types we should probably be using a lot less of. In almost every single instance when you use a boolean, it should be something else. The trick is figuring out what "something else" is. Doing this is worth the effort. It tells you a lot about your system, and it will improve your design (even if you end up using a boolean). There are a few possible types that come up often, hiding as booleans. Let's take a look at each of these, as well as the case where using a boolean does make sense. This isn't exhaustive—[1]there are surely other types that can make sense, too. Datetimes A lot of boolean data is representing a temporal event having happened. For example, websites often have you confirm your email. This may be stored as a boolean column, is_confirmed, in the database. It makes a lot of sense. But, you're throwing away data: when the confirmation happened. You can instead store when the user confirmed their email in a nullable column. You can still get the same information by checking whether the column is null. But you also get richer data for other purposes. Maybe you find out down the road that there was a bug in your confirmation process. You can use these timestamps to check which users would be affected by that, based on when their confirmation was stored. This is the one I've seen discussed the most of all these. We run into it with almost every database we design, after all. You can detect it by asking if an action has to occur for the boolean to change values, and if values can only change one time. If you have both of these, then it really looks like it is a datetime being transformed into a boolean. Store the datetime! Enums Much of the remaining boolean data indicates either what type something is, or its status. Is a user an admin or not? Check the is_admin column! Did that job fail? Check the failed column! Is the user allowed to take this action? Return a boolean for that, yes or no! These usually make more sense as an enum. Consider the admin case: this is really a user role, and you should have an enum for it. If it's a boolean, you're going to eventually need more columns, and you'll keep adding on other statuses. Oh, we had users and admins, but now we also need guest users and we need super-admins. With an enum, you can add those easily. enum UserRole { User, Admin, Guest, SuperAdmin, } And then you can usually use your tooling to make sure that all the new cases are covered in your code. With a boolean, you have to add more booleans, and then you have to make sure you find all the places where the old booleans were used and make sure they handle these new cases, too. Enums help you avoid these bugs. Job status is one that's pretty clearly an enum as well. If you use booleans, you'll have is_failed, is_started, is_queued, and on and on. Or you could just have one single field, status, which is an enum with the various statuses. (Note, though, that you probably do want timestamp fields for each of these events—but you're still best having the status stored explicitly as well.) This begins to resemble a state machine once you store the status, and it means that you can make much cleaner code and analyze things along state transition lines. And it's not just for storing in a database, either. If you're checking a user's permissions, you often return a boolean for that. fn check_permissions(user: User) -> bool { false // no one is allowed to do anything i guess } In this case, true means the user can do it and false means they can't. Usually. I think. But you can really start to have doubts here, and with any boolean, because the application logic meaning of the value cannot be inferred from the type. Instead, this can be represented as an enum, even when there are just two choices. enum PermissionCheck { Allowed, NotPermitted(reason: String), } As a bonus, though, if you use an enum? You can end up with richer information, like returning a reason for a permission check failing. And you are safe for future expansions of the enum, just like with roles. You can detect when something should be an enum a proliferation of booleans which are mutually exclusive or depend on one another. You'll see multiple columns which are all changed at the same time. Or you'll see a boolean which is returned and used for a long time. It's important to use enums here to keep your program maintainable and understandable. Conditionals But when should we use a boolean? I've mainly run into one case where it makes sense: when you're (temporarily) storing the result of a conditional expression for evaluation. This is in some ways an optimization, either for the computer (reuse a variable[2]) or for the programmer (make it more comprehensible by giving a name to a big conditional) by storing an intermediate value. Here's a contrived example where using a boolean as an intermediate value. fn calculate_user_data(user: User, records: RecordStore) { // this would be some nice long conditional, // but I don't have one. So variables it is! let user_can_do_this: bool = (a && b) && (c || !d); if user_can_do_this && records.ready() { // do the thing } else if user_can_do_this && records.in_progress() { // do another thing } else { // and something else! } } But even here in this contrived example, some enums would make more sense. I'd keep the boolean, probably, simply to give a name to what we're calculating. But the rest of it should be a match on an enum! * * * Sure, not every boolean should go away. There's probably no single rule in software design that is always true. But, we should be paying a lot more attention to booleans. They're sneaky. They feel like they make sense for our data, but they make sense for our logic. The data is usually something different underneath. By storing a boolean as our data, we're coupling that data tightly to our application logic. Instead, we should remain critical and ask what data the boolean depends on, and should we maybe store that instead? It comes easier with practice. Really, all good design does. A little thinking up front saves you a lot of time in the long run. I know that using an em-dash is treated as a sign of using LLMs. LLMs are never used for my writing. I just really like em-dashes and have a dedicated key for them on one of my keyboard layers. ↩ This one is probably best left to the compiler. ↩

a month ago 30 votes
Proving that every program halts

One of the best known hard problems in computer science is the halting problem. In fact, it's widely thought[1] that you cannot write a program that will, for any arbitrary program as input, tell you correctly whether or not it will terminate. This is written from the framing of computers, though: can we do better with a human in the loop? It turns out, we can. And we can use a method that's generalizable, which many people can follow for many problems. Not everyone can use the method, which you'll see why in a bit. But lots of people can apply this proof technique. Let's get started. * * * We'll start by formalizing what we're talking about, just a little bit. I'm not going to give the full formal proof—that will be reserved for when this is submitted to a prestigious conference next year. We will call the set of all programs P. We want to answer, for any p in P, whether or not p will eventually halt. We will call this h(p) and h(p) = true if p eventually finished and false otherwise. Actually, scratch that. Let's simplify it and just say that yes, every program does halt eventually, so h(p) = true for all p. That makes our lives easier. Now we need to get from our starting assumptions, the world of logic we live in, to the truth of our statement. We'll call our goal, that h(p) = true for all p, the statement H. Now let's start with some facts. Fact one: I think it's always an appropriate time to play the saxophone. *honk*! Fact two: My wife thinks that it's sometimes inappropriate to play the saxophone, such as when it's "time for bed" or "I was in the middle of a sentence![2] We'll give the statement "It's always an appropriate time to play the saxophone" the name A. We know that I believe A is true. And my wife believes that A is false. So now we run into the snag: Fact three: The wife is always right. This is a truism in American culture, useful for settling debates. It's also useful here for solving major problems in computer science because, babe, we're both the wife. We're both right! So now that we're both right, we know that A and !A are both true. And we're in luck, we can apply a whole lot of fancy classical logic here. Since A and !A we know that A is true and we also know that !A is true. From A being true, we can conclude that A or H is true. And then we can apply disjunctive syllogism[3] which says that if A or H is true and !A is true, then H must be true. This makes sense, because if you've excluded one possibility then the other must be true. And we do have !A, so that means: H is true! There we have it. We've proved our proposition, H, which says that for any program p, p will eventually halt. The previous logic is, mostly, sound. It uses the principle of explosion, though I prefer to call it "proof by married lesbian." * * * Of course, we know that this is wrong. It falls apart with our assumptions. We built the system on contradictory assumptions to begin with, and this is something we avoid in logic[4]. If we allow contradictions, then we can prove truly anything. I could have also proved (by married lesbian) that no program will terminate. This has been a silly traipse through logic. If you want a good journey through logic, I'd recommend Hillel Wayne's Logic for Programmers. I'm sure that, after reading it, you'll find absolutely no flaws in my logic here. After all, I'm the wife, so I'm always right. It's widely thought because it's true, but we don't have to let that keep us from a good time. ↩ I fact checked this with her, and she does indeed hold this belief. ↩ I had to look this up, my uni logic class was a long time ago. ↩ The real conclusion to draw is that, because of proof by contradiction, it's certainly not true that the wife is always right. Proved that one via married lesbians having arguments. Or maybe gay relationships are always magical and happy and everyone lives happily ever after, who knows. ↩

a month ago 33 votes
Taking a break

I've been publishing at least one blog post every week on this blog for about 2.5 years. I kept it up even when I was very sick last year with Lyme disease. It's time for me to take a break and reset. This is the right time, because the world is very difficult for me to move through right now and I'm just burnt out. I need to focus my energy on things that give me energy and right now, that's not writing and that's not tech. I'll come back to this, and it might look a little different. This is my last post for at least a month. It might be longer, if I still need more time, but I won't return before the end of May. I know I need at least that long to heal, and I also need that time to focus on music. I plan to play a set at West Philly Porchfest, so this whole month I'll be prepping that set. If you want to follow along with my music, you can find it on my bandcamp (only one track, but I'll post demos of the others that I prepare for Porchfest as they come together). And if you want to reach out, my inbox is open. Be kind to yourself. Stay well, drink some water. See you in a while.

3 months ago 27 votes
Measuring my Framework laptop's performance in 3 positions

A few months ago, I was talking with a friend about my ergonomic setup and they asked if being vertical helps it with cooling. I wasn't sure, because it seems like it could help but it was probably such a small difference that it wouldn't matter. So, I did what any self-respecting nerd would do: I procrastinated. The question didn't leave me, though, so after those months passed, I did the second thing any self-respecting nerd would do: benchmarks. The question and the setup What we want to find out is whether or not the position of the laptop would affect its CPU performance. I wanted to measure it in three positions: normal: using it the way any normal person uses their laptop, with the screen and keyboard at something like a 90-degree angle closed: using it like a tech nerd, closed but plugged into a monitor and peripherals vertical: using it like a weird blogger who has sunk a lot of time into her ergonomic setup and wants to justify it even further My hypothesis was that using it closed would slightly reduce CPU performance, and that using it normal or vertical would be roughly the same. For this experiment, I'm using my personal laptop. It's one of the early Framework laptops (2nd batch of shipments) which is about four years old. It has an 11th gen Intel CPU in it, the i7-1165G7. My laptop will be sitting on a laptop riser for the closed and normal positions, and it will be sitting in my ergonomic tray for the vertical one. For all three, it will be connected to the same set of peripherals through a single USB-C cable, and the internal display is disabled for all three. Running the tests I'm not too interested in the initial boost clock. I'm more interested in what clock speeds we can sustain. What happens under a sustained, heavy load, when we hit a saturation point and can't shed any more heat? To test that, I'm doing a test using heavy CPU load. The load is generated by stress-ng, which also reports some statistics. Most notably, it reports CPU temperatures and clock speeds during the tests. Here's the script I wrote to make these consistent. To skip the boost clock period, I warm it up first with a 3-minute load Then I do a 5-minute load and measure the CPU clock frequency and CPU temps every second along the way. #!/bin/bash # load the CPU for 3 minutes to warm it up sudo stress-ng --matrix $2 -t 3m --tz --raplstat 1 --thermalstat 1 -Y warmup-$1.yaml --log-file warmup-$1.log --timestamp --ignite-cpu # run for 5 minutes to gather our averages sudo stress-ng --matrix $2 -t 5m --tz --raplstat 1 --thermalstat 1 -Y cputhermal-$1.yaml --log-file cputhermal-$1.log --timestamp --ignite-cpu We need sudo since we're using an option (--ignite-cpu) which needs root privileges[1] and attempts to make the CPU run harder/hotter. Then we specify the stressor we're using with --matrix $2, which does some matrix calculations over a number of cores we specify. The remaining options are about reporting and logging. I let the computer cool for a minute or two between each test, but not for a scientific reason. Just because I was doing other things. Since my goal was to saturate the temperatures, and they got stable within each warmup period, cooldowh time wasn't necessary—we'd warm it back up anyway. So, I ran this with the three positions, and with two core count options: 8, one per thread on my CPU; and 4, one per physical core on my CPU. The results Once it was done, I analyzed the results. I took the average clock speed across the 5 minute test for each of the configurations. My hypothesis was partially right and partially wrong. When doing 8 threads, each position had different results: Our baseline normal open position had an average clock speed of 3.44 GHz and an average CPU temp of 91.75 F. With the laptop closed, the average clock speed was 3.37 GHz and the average CPU temp was 91.75 F. With the laptop open vertical, the average clock speed was 3.48 GHz and the average CPU temp was 88.75 F. With 4 threads, the results were: For the baseline normal open position, the average clock speed was 3.80 GHz with average CPU temps of 91.11 F. With the laptop closed, the average clock speed was 3.64 GHz with average CPU temps of 90.70 F. With the laptop open vertical, the average clock speed was 3.80 GHz with average CPU temps of 86.07 F. So, I was wrong in one big aspect: it does make a clearly measurable difference. Having it open and vertical reduces temps by 3 degrees in one test and 5 in the other, and it had a higher clock speed (by 0.05 GHz, which isn't a lot but isn't nothing). We can infer that, since clock speeds improved in the heavier load test but not in the lighter load test, that the lighter load isn't hitting our thermal limits—and when we do, the extra cooling from the vertical position really helps. One thing is clear: in all cases, the CPU ran slower when the laptop was closed. It's sorta weird that the CPU temps went down when closed in the second test. I wonder if that's from being able to cool down more when it throttled down a lot, or if there was a hotspot that throttled the CPU but which wasn't reflected in the temp data, maybe a different sensor. I'm not sure if having my laptop vertical like I do will ever make a perceptible performance difference. At any rate, that's not why I do it. But it does have lower temps, and that should let my fans run less often and be quieter when they do. That's a win in my book. It also means that when I run CPU-intensive things (say hi to every single Rust compile!) I should not close the laptop. And hey, if I decide to work from my armchair using my ergonomic tray, I can argue it's for efficiency: boss, I just gotta eke out those extra clock cycles. I'm not sure that this made any difference on my system. I didn't want to rerun the whole set without it, though, and it doesn't invalidate the tests if it simply wasn't doing anything. ↩

3 months ago 20 votes

More in programming

The future of large files in Git is Git

.title {text-wrap:balance;} #content > p:first-child {text-wrap:balance;} If Git had a nemesis, it’d be large files. Large files bloat Git’s storage, slow down git clone, and wreak havoc on Git forges. In 2015, GitHub released Git LFS—a Git extension that hacked around problems with large files. But Git LFS added new complications and storage costs. Meanwhile, the Git project has been quietly working on large files. And while LFS ain’t dead yet, the latest Git release shows the path towards a future where LFS is, finally, obsolete. What you can do today: replace Git LFS with Git partial clone Git LFS works by storing large files outside your repo. When you clone a project via LFS, you get the repo’s history and small files, but skip large files. Instead, Git LFS downloads only the large files you need for your working copy. In 2017, the Git project introduced partial clones that provide the same benefits as Git LFS: Partial clone allows us to avoid downloading [large binary assets] in advance during clone and fetch operations and thereby reduce download times and disk usage. – Partial Clone Design Notes, git-scm.com Git’s partial clone and LFS both make for: Small checkouts – On clone, you get the latest copy of big files instead of every copy. Fast clones – Because you avoid downloading large files, each clone is fast. Quick setup – Unlike shallow clones, you get the entire history of the project—you can get to work right away. What is a partial clone? A Git partial clone is a clone with a --filter. For example, to avoid downloading files bigger than 100KB, you’d use: git clone --filter='blobs:size=100k' <repo> Later, Git will lazily download any files over 100KB you need for your checkout. By default, if I git clone a repo with many revisions of a noisome 25 MB PNG file, then cloning is slow and the checkout is obnoxiously large: $ time git clone https://github.com/thcipriani/noise-over-git Cloning into '/tmp/noise-over-git'... ... Receiving objects: 100% (153/153), 1.19 GiB real 3m49.052s Almost four minutes to check out a single 25MB file! $ du --max-depth=0 --human-readable noise-over-git/. 1.3G noise-over-git/. $ ^ 🤬 And 50 revisions of that single 25MB file eat 1.3GB of space. But a partial clone side-steps these problems: $ git config --global alias.pclone 'clone --filter=blob:limit=100k' $ time git pclone https://github.com/thcipriani/noise-over-git Cloning into '/tmp/noise-over-git'... ... Receiving objects: 100% (1/1), 24.03 MiB real 0m6.132s $ du --max-depth=0 --human-readable noise-over-git/. 49M noise-over-git/ $ ^ 😻 (the same size as a git lfs checkout) My filter made cloning 97% faster (3m 49s → 6s), and it reduced my checkout size by 96% (1.3GB → 49M)! But there are still some caveats here. If you run a command that needs data you filtered out, Git will need to make a trip to the server to get it. So, commands like git diff, git blame, and git checkout will require a trip to your Git host to run. But, for large files, this is the same behavior as Git LFS. Plus, I can’t remember the last time I ran git blame on a PNG 🙃. Why go to the trouble? What’s wrong with Git LFS? Git LFS foists Git’s problems with large files onto users. And the problems are significant: 🖕 High vendor lock-in – When GitHub wrote Git LFS, the other large file systems—Git Fat, Git Annex, and Git Media—were agnostic about the server-side. But GitHub locked users to their proprietary server implementation and charged folks to use it.1 💸 Costly – GitHub won because it let users host repositories for free. But Git LFS started as a paid product. Nowadays, there’s a free tier, but you’re dependent on the whims of GitHub to set pricing. Today, a 50GB repo on GitHub will cost $40/year for storage. In contrast, storing 50GB on Amazon’s S3 standard storage is $13/year. 😰 Hard to undo – Once you’ve moved to Git LFS, it’s impossible to undo the move without rewriting history. 🌀 Ongoing set-up costs – All your collaborators need to install Git LFS. Without Git LFS installed, your collaborators will get confusing, metadata-filled text files instead of the large files they expect. The future: Git large object promisors Large files create problems for Git forges, too. GitHub and GitLab put limits on file size2 because big files cost more money to host. Git LFS keeps server-side costs low by offloading large files to CDNs. But the Git project has a new solution. Earlier this year, Git merged a new feature: large object promisers. Large object promisors aim to provide the same server-side benefits as LFS, minus the hassle to users. This effort aims to especially improve things on the server side, and especially for large blobs that are already compressed in a binary format. This effort aims to provide an alternative to Git LFS – Large Object Promisors, git-scm.com What is a large object promisor? Large object promisors are special Git remotes that only house large files. In the bright, shiny future, large object promisors will work like this: You push a large file to your Git host. In the background, your Git host offloads that large file to a large object promisor. When you clone, the Git host tells your Git client about the promisor. Your client will clone from the Git host, and automagically nab large files from the promisor remote. But we’re still a ways off from that bright, shiny future. Git large object promisors are still a work in progress. Pieces of large object promisors merged to Git in March of 2025. But there’s more to do and open questions yet to answer. And so, for today, you’re stuck with Git LFS for giant files. But once large object promisors see broad adoption, maybe GitHub will let you push files bigger than 100MB. The future of large files in Git is Git. The Git project is thinking hard about large files, so you don’t have to. Today, we’re stuck with Git LFS. But soon, the only obstacle for large files in Git will be your half-remembered, ominous hunch that it’s a bad idea to stow your MP3 library in Git. Edited by Refactoring English Later, other Git forges made their own LFS servers. Today, you can push to multiple Git forges or use an LFS transfer agent, but all this makes set up harder for contributors. You’re pretty much locked-in unless you put in extra effort to get unlocked.↩︎ File size limits: 100MB for GitHub, 100MB for GitLab.com↩︎

yesterday 7 votes
Just a Little More Context Bro, I Promise, and It’ll Fix Everything

Conrad Irwin has an article on the Zed blog “Why LLMs Can't Really Build Software”. He says it boils down to: the distinguishing factor of effective engineers is their ability to build and maintain clear mental models We do this by: Building a mental model of what you want to do Building a mental model of what the code does Reducing the difference between the two It’s kind of an interesting observation about how we (as humans) problem solve vs. how we use LLMs to problem solve: With LLMs, you stuff more and more information into context until it (hopefully) has enough to generate a solution. With your brain, you tweak, revise, or simplify your mental model more and more until the solution presents itself. One adds information — complexity you might even say — to solve a problem. The other eliminates it. You know what that sort of makes me think of? NPM driven development. Solving problems with LLMs is like solving front-end problems with NPM: the “solution” comes through installing more and more things — adding more and more context, i.e. more and more packages. LLM: Problem? Add more context. NPM: Problem? There’s a package for that. Contrast that with a solution that comes through simplification. You don’t add more context. You simplify your mental model so you need less to solve a problem — if you solve it at all, perhaps you eliminate the problem entirely! Rather than install another package to fix what ails you, you simplify your mental model which often eliminates the problem you had in the first place; thus eliminating the need to solve any problem at all, or to add any additional context or complexity (or dependency). As I’m typing this, I’m thinking of that image of the evolution of the Raptor engine, where it evolved in simplicity: This stands in contrast to my working with LLMs, which often wants more and more context from me to get to a generative solution: I know, I know. There’s probably a false equivalence here. This entire post started as a note and I just kept going. This post itself needs further thought and simplification. But that’ll have to come in a subsequent post, otherwise this never gets published lol. Email · Mastodon · Bluesky

yesterday 4 votes
How to Leverage the CPU’s Micro-Op Cache for Faster Loops

Measuring, analyzing, and optimizing loops using Linux perf, Top-Down Microarchitectural Analysis, and the CPU’s micro-op cache

yesterday 6 votes
Omarchy micro-forks Chromium

You can just change things! That's the power of open source. But for a lot of people, it might seem like a theoretical power. Can you really change, say, Chrome? Well, yes! We've made a micro fork of Chromium for Omarchy (our new 37signals Linux distribution). Just to add one feature needed for live theming. And now it's released as a package anyone can install on any flavor of Arch using the AUR (Arch User Repository). We got it all done in just four days. From idea, to solicitation, to successful patch, to release, to incorporation. And now it'll be part of the next release of Omarchy. There are no speed limits in open source. Nobody to ask for permission. You have the code, so you can make the change. All you need is skill and will (and maybe, if you need someone else to do it for you, a $5,000 incentive 😄).

2 days ago 4 votes
Choosing Tools To Make Websites

Jan Miksovsky lays out his idea for website creation as content transformation. He starts by talking about tools that hide what’s happening “under the hood”: A framework’s marketing usually pretends it is unnecessary for you to understand how its core transformation works — but without that knowledge, you can’t achieve the beautiful range of results you see in the framework’s sample site gallery. This is a great callout. Tools will say, “You don’t have to worry about the details.” But the reality is, you end up worrying about the details — at least to some degree. Why? Because what you want to build is full of personalization. That’s how you differentiate yourself, which means you’re going to need a tool that’s expressive enough to help you. So the question becomes: how hard is it to understand the details that are being intentionally hidden away? A lot of the time those details are not exposed directly. Instead they’re exposed through configuration. But configuration doesn’t really help you learn how something works. I mean, how many of you have learned how typescript works under the hood by using tsconfig.json? As Jan says: Configuration can lead to as many problems as it solves Nailed it. He continues: Configuring software is itself a form of programming, in fact a rather difficult and often baroque form. It can take more data files or code to configure a framework’s transformation than to write a program that directly implements that transformation itself. I’m not a Devops person, but that sounds like Devops in a nutshell right there. (It also perfectly encapsulates my feelings on trying to setup configuration in GitHub Actions.) Jan moves beyond site creation to also discuss site hosting. He gives good reasons for keeping your website’s architecture simple and decoupled from your hosting provider (something I’ve been a long time proponent of): These site hosting platforms typically charge an ongoing subscription fee. (Some offer a free tier that may meet your needs.) The monthly fee may not be large, but it’s forever. Ten years from now you’ll probably still want your content to be publicly available, but will you still be happy paying that monthly fee? If you stop paying, your site disappears. In subscription pricing, any price (however small) is recurring. Stated differently: pricing is forever. Anyhow, it’s a good read from Jan and lays out his vision for why he’s building Web Origami: a tool for that encourages you to understand (and customize) how you transform content to a website. He just launched version 0.4.0 which has some exciting stuff I’m excited to try out further (I’ll have to write about all that later). Email · Mastodon · Bluesky

3 days ago 5 votes