More from macwright.com
(async () => { const colors = ['fb6b1d','e83b3b','831c5d','c32454','f04f78','f68181','fca790','e3c896','ab947a','966c6c','625565','3e3546','0b5e65','0b8a8f','1ebc73','91db69','fbff86','fbb954','cd683d','9e4539','7a3045','6b3e75','905ea9','a884f3','eaaded', '8fd3ff', '4d9be6', '4d65b4', '484a77', '30e1b9', '8ff8e2'].map(c => `#${c}`); const mask = document.querySelector('#mask'); const replacement = await fetch('/images/2025-04-12-tidbyt-second-life-tidbyt-mask.svg').then(r => r.text()); mask.style = ''; mask.innerHTML = replacement; let i = 0; let delay = 10; const svg = mask.querySelector('svg'); svg.removeAttribute('width'); svg.removeAttribute('height'); svg.setAttribute('style', 'width:auto;height:auto;position:absolute;top:0;right:0;bottom:0;left:0;opacity:0.4;'); for (const path of svg.querySelectorAll('path')) { delay += 20; delay *= 1.02; setTimeout(() => { path.setAttribute('fill', colors[i++ % colors.length]); }, delay) path.addEventListener('mouseover', () => { path.setAttribute('fill', colors[i++ % colors.length]); }); } })() Remember the Tidbyt? It’s a super low-resolution, internet-connected, wood-paneled display that I wrote a review of it back in 2022. It’s been on my shelf for years now, showing the time, weather, warning me when the UV is going to be high. In 2023 I used it as an excuse to learn some Rust, to render custom graphics. It’s a toy, a distraction, a worry stone for me to work on when I need something open-ended and low-stakes. Anyway, the company that made the Tidbyt is no more. They got acquihired by Modal, a company that makes serverless AI compute hosting. So, they aren’t making devices right now, and the blog post promises that their cloud services will keep working. I don’t hold anything against the Tidbyt team: in fact, our Val Town office was coincidentally right next to theirs in a WeWork, and we met in real life! They’re very nice folks, and were doing so much with a small team. Lots of respect to them. Modal made a smart choice acquiring Tidbyt. But realistically, it’s time to make sure my device doesn’t become e-waste. The Tidbyt is ready for this One of the biggest critiques of the Tidbyt was that it was just an LED matrix and an ESP chip. You could buy an LED matrix on Sparkfun, the ESP, a power supply, some wood for the enclosure, and you’d have your own DIY Tidbyt. Maybe you could do it for half the price! But that’s also a strength. The Tidbyt is not some custom SoC with an exotic custom software stack and boutique hardware. It is what it looks like: a neat combination of commonplace parts. That makes it kind of future-proof and flexible. The first step is to replace the firmware. Tidbyt’s stock firmware routes all of its requests through the Tidbyt company’s servers. I want to eliminate that hop. Replacing the firmware Thankfully, Tidbyt published their ‘HDK’, which is an open source version of their stock firmware. It’s remarkably simple: It connects to Wifi It downloads a WebP image from a URL It displays that WebP image The HDK contains the code to do this stuff. There’s very little code required, but it does drag in a WebP decoder, Wifi library, and a library for running the LED matrix. But, setting up the HDK I ran into issues both small and large: it had issues with HTTPS URLs and Wifi passwords that contain spaces. Plus nobody has been added as a contributor to the HDK repository, so Pull Requests aren’t being accepted and it hasn’t had a change in 7 months. But the community came to the rescue with tronbyt’s firmware-http, a fork of the HDK that fixes every issue I experienced. Open source works! So back in 2022 I included this chart of the Tidbyt network: With an updated HDK, this workflow is a lot simpler. Instead of sending images to the Tidbyt servers and those Tidbyt servers delivering them to my device, the device makes requests directly of the server that generates the images. Replacing pixlet The Tidbyt team wrote pixlet, a little framework for generating pixel graphics that the Tidbyt displays. It lets you define a React-like tree of components - some text in a stack, a rectangle, images, and so on - and does all of the layout and rendering. The tronbyt community also forked pixlet and are actively developing it, which is fantastic. But this part of the stack I really never liked. That’s why I spent so much time reimplementing it in Rust and JavaScript. Partly it’s the language - pixlet apps are written in starlark, which is kind of an outgrowth of the Bazel build system from Google. Starlark is sort of like Python, but isn’t actually compatible with anything in the Python ecosystem. It’s very niche, limited, and overall just weird. I think I understand why Tidbyt would choose Starlark - it’s fast and has hermetic execution - making it safe to run untrusted Starlark programs because they can’t access the filesystem, network, or even the system clock without being given explicit controlled APIs to do those things. If you’re building a cloud service that runs a lot of untrusted user code, dictating that code is all Starlark is a really good cheat code - I know firsthand how hard it is to run untrusted JavaScript. But I’m not building a cloud service full of untrusted code. People who are self-hosting their Tidbyt devices (dozens of us!) don’t benefit from the tradeoffs of the Starlark language. They’d be better off with something normal. I rewrote pixlet again It’s called indiepixel and it’s a Python reimplementation of pixlet. It supports almost the entire pixlet API, and comes with the added benefit of being Python. You can use Python modules! You can read from the filesystem, parse CSVs, do all of your usual Python stuff. You can embed it in a Python application to render some graphics. What does indiepixel do currently? Renders text in the glorious retro BDF pixel font format. Renders pixelated pie charts, rectangles, and boxes. Supports animation for its WebP outputs. Provides a nice UI for browsing your selection of screens. It’ll probably never be finished, but it works well enough to power my Tidbyt. I’m running indiepixel on a free Render server instance, but it should run pretty much the same on any Python-compatible hosting: the only tricky dependency is Pillow, which it uses for image parsing and rendering. My free time for computer-oriented side projects has been limited, due to other commitments and an intention to get offline on the weekends. I’ve been sewing, biking, and running more. So I really want a side project I can enjoy, and indiepixel has fit the bill. It’s really satisfying to implement a new widget and see it rendered in blocky 64x32 pixels. The Pillow image rendering library for Python is mostly wonderful and very powerful. Why Python? Why is indiepixel written in Python? Well - I learned from tidbyt-rs that Rust would be an awkward fit as a scripting language for rendering graphics. The well-known Rust complexities around memory management made simple things difficult for me, which would make them totally unacceptable for others. Besides the attraction of being able to compile a small binary that might be able to run on the Tidbyt itself, Rust didn’t have many other advantages. The Pillow module really is such an advantage for Python. JavaScript doesn’t have a real alternative: there’s sharp, a great module for image conversion, but nothing that has such a great canvas interface. node-canvas is fine, but it doesn’t support WebP or animation, which are critical features for this project. I also wanted a test out the amazing new Python tooling that Astral is cooking up, like uv. I now have a better grasp of the Python ecosystem than I did a few months ago, and it’s optimistic but mixed. uv is amazing, but Python has a lot of legacy cruft around packaging. People are critical of NPM, but I think it did benefit from being established after PyPI and learning from its lessons. Thank you Steven Loria for a PR that fixed everything and made it all work and saved me months of tweaking settings. The graphic I watercolored that Tidbyt a while while ago and have been seriously dragging my feet on finishing this blog post. Sometimes the watercolor-illustration wags the technical-blog-post dog’s tail? Anyway, it’s a callback to that little world, with some small tweaks: this time I thought it’d be nice to have it be both watercolored and interactive. That ‘cybernetic’ feel. The secret recipe: a nice palette from lospec, creating a black & white mask of areas in Affinity Photo and vectorizing it with potrace, and then just some JavaScript that recolors based on hover handling. If you’re using the Tidbyt or some similar pixel-displaying device, try out indiepixel! It’s niche and has required a silly amount of effort to generate a glorified weather clock in my apartment, but it was a fun time chasing another interest.
I used to make little applications just for myself. Sixteen years ago (oof) I wrote a habit tracking application, and a keylogger that let me keep track of when I was using a computer, and generate some pretty charts. I’ve taken a long break from those kinds of things. I love my hobbies, but they’ve drifted toward the non-technical, and the idea of keeping a server online for a fun project is unappealing (which is something that I hope Val Town, where I work, fixes). Some folks maintain whole ‘homelab’ setups and run Kubernetes in their basement. Not me, at least for now. But I have been tiptoeing back into some little custom tools that only I use, with a focus on just my own computing experience. Here’s a quick tour. Hammerspoon Hammerspoon is an extremely powerful scripting tool for macOS that lets you write custom keyboard shortcuts, UIs, and more with the very friendly little language Lua. Right now my Hammerspoon configuration is very simple, but I think I’ll use it for a lot more as time progresses. Here it is: hs.hotkey.bind({"cmd", "shift"}, "return", function() local frontmost = hs.application.frontmostApplication() if frontmost:name() == "Ghostty" then frontmost:hide() else hs.application.launchOrFocus("Ghostty") end end) Not much! But I recently switched to Ghostty as my terminal, and I heavily relied on iTerm2’s global show/hide shortcut. Ghostty doesn’t have an equivalent, and Mikael Henriksson suggested a script like this in GitHub discussions, so I ran with it. Hammerspoon can do practically anything, so it’ll probably be useful for other stuff too. SwiftBar I review a lot of PRs these days. I wanted an easy way to see how many were in my review queue and go to them quickly. So, this script runs with SwiftBar, which is a flexible way to put any script’s output into your menu bar. It uses the GitHub CLI to list the issues, and jq to massage that output into a friendly list of issues, which I can click on to go directly to the issue on GitHub. #!/bin/bash # <xbar.title>GitHub PR Reviews</xbar.title> # <xbar.version>v0.0</xbar.version> # <xbar.author>Tom MacWright</xbar.author> # <xbar.author.github>tmcw</xbar.author.github> # <xbar.desc>Displays PRs that you need to review</xbar.desc> # <xbar.image></xbar.image> # <xbar.dependencies>Bash GNU AWK</xbar.dependencies> # <xbar.abouturl></xbar.abouturl> DATA=$(gh search prs --state=open -R val-town/val.town --review-requested=@me --json url,title,number,author) echo "$(echo "$DATA" | jq 'length') PR" echo '---' echo "$DATA" | jq -c '.[]' | while IFS= read -r pr; do TITLE=$(echo "$pr" | jq -r '.title') AUTHOR=$(echo "$pr" | jq -r '.author.login') URL=$(echo "$pr" | jq -r '.url') echo "$TITLE ($AUTHOR) | href=$URL" done Tampermonkey Tampermonkey is essentially a twist on Greasemonkey: both let you run your own JavaScript on anybody’s webpage. Sidenote: Greasemonkey was created by Aaron Boodman, who went on to write Replicache, which I used in Placemark, and is now working on Zero, the successor to Replicache. Anyway, I have a few fancy credit cards which have ‘offers’ which only work if you ‘activate’ them. This is an annoying dark pattern! And there’s a solution to it - CardPointers - but I neither spend enough nor care enough about points hacking to justify the cost. Plus, I’d like to know what code is running on my bank website. So, Tampermonkey to the rescue! I wrote userscripts for Chase, American Express, and Citi. You can check them out on this Gist but I strongly recommend to read through all the code because of the afore-mentioned risks around running untrusted code on your bank account’s website! Obsidian Freeform This is a plugin for Obsidian, the notetaking tool that I use every day. Freeform is pretty cool, if I can say so myself (I wrote it), but could be much better. The development experience is lackluster because you can’t preview output at the same time as writing code: you have to toggle between the two states. I’ll fix that eventually, or perhaps Obsidian will add new API that makes it all work. I use Freeform for a lot of private health & financial data, almost always with an Observable Plot visualization as an eventual output. For example, when I was switching banks and one of the considerations was mortgage discounts in case I ever buy a house (ha 😢), it was fun to chart out the % discounts versus the required AUM. It’s been really nice to have this kind of visualization as ‘just another document’ in my notetaking app. Doesn’t need another server, and Obsidian is pretty secure and private.
This website has a new section: blogroll.opml! A blogroll is a list of blogs - a lightweight way of people recommending other people’s writing on the indieweb. What it includes The blogs that I included are just sampled from my many RSS subscriptions that I keep in my Feedbin reader. I’m subscribed to about 200 RSS feeds, the majority of which are dead or only publish once a year. I like that about blogs, that there’s no expectation of getting a post out every single day, like there is in more algorithmically-driven media. If someone who I interacted with on the internet years ago decides to restart their writing, that’s great! There’s no reason to prune all the quiet feeds. The picks are oriented toward what I’m into: niches, blogs that have a loose topic but don’t try to be general-interest, people with distinctive writing. If you import all of the feeds into your RSS reader, you’ll probably end up unsubscribing from some of them because some of the experimental electric guitar design or bonsai news is not what you’re into. Seems fine, or you’ll discover a new interest! How it works Ruben Schade figured out a brilliant way to show blogrolls and I copied him. Check out his post on styling OPML and RSS with XSLT to XHTML for how it works. My only additions to that scheme were making the blogroll page blend into the rest of the website by using an include tag with Jekyll to add the basic site skeleton, and adding a link with the download attribute to provide a simple way to download the OPML file. Oddly, if you try to save the OPML page using Save as… in Firefox, Firefox will save the transformed output via the XSLT, rather than the raw source code. XSLT is such an odd and rare part of the web ecosystem, I had to use it.
I have a non-recently post ready to write, any day now… Reading This was a strong month for reading: I finished The Hidden Wealth of Nations, Useful Not True, and Cyberlibertarianism. I had a book club that read Cyberlibertarianism so we discussed it last week. I have a lot of qualms with the book, and gave it two stars for that reason. But I will admit that it’s taking up space in my mind. The ‘cyberlibertarian’ ideology was familiar to me before reading it. The book’s critique of it didn’t shift my thinking that much. But I have been thinking a lot about what it argued for, which is a world in which the government has very extensive powers – to limit what is said online, to regulate which companies can even create forums or social media platforms. He also believed that a government should be able to decrypt and read conversations between private citizens. It’s a very different idea of government power than what I’m used to, and well outside my comfort zone. I think it’s interesting to consider these things: the government probably should have some control of some kinds of speech, and in some cases it’s useful to have the FBI tapping the phones of drug smugglers or terrorists. How do we really define what’s acceptable and what isn’t? I don’t know, I want to do more thinking about the uncomfortable things that nevertheless may be necessary for functioning of society. Besides that, there is so much to read. This month I added a lot of news subscriptions to my pile, which I think is now Hell Gate, Wired, NYTimes, Bloomberg, 404 Media, The Verge, and a bunch of newsletters. This interview with Stephanie Kelton, who is at the forefront of the Modern Monetary Theory movement in America, and wrote the very good book The Deficit Myth. This 404 Media story on an AI-generated ‘true crime’ YouTube channel is great because the team at 404 Media does both deep research and they interrogate their sources. Nathan Tankus has always been good but in this era he’s essential reading. His piece on Fort Knox is quick and snappy. His others are more involved but always worth reading. Listening We’ve been rewatching The Bear and admiring the dad-rock soundtrack. This Nine Inch Nails track shows up at the end of a season: And this Eno track: Besides that, this track from Smino played at a local cocktail bar. The bars at 0:45 sound like they’re tumbling downhill in a delightful way. Watching So I bought a sewing machine in February, a beautiful old Kenmore 158-series, produced in the 1970s in Japan. It’s awesome. How sewing machines work is amazing, as this video lays out. There’s so much coordinated motion happening for every stitch, and the machines are so well-designed that they last for decades easily. Besides that, I just watched The Apprentice, which I really did not like. Elsewhere I was on a podcast with Jeremy Jung, taking about Placemark! My post in the /micro/ section, All Hat No Cowboy, probably could have or should have been a blog post, but I was feeling skittish about being too anti-AI on the main.
More in programming
Many hypergrowth companies of the 2010s battled increasing complexity in their codebase by decomposing their monoliths. Stripe was somewhat of an exception, largely delaying decomposition until it had grown beyond three thousand engineers and had accumulated a decade of development in its core Ruby monolith. Even now, significant portions of their product are maintained in the monolithic repository, and it’s safe to say this was only possible because of Sorbet’s impact. Sorbet is a custom static type checker for Ruby that was initially designed and implemented by Stripe engineers on their Product Infrastructure team. Stripe’s Product Infrastructure had similar goals to other companies’ Developer Experience or Developer Productivity teams, but it focused on improving productivity through changes in the internal architecture of the codebase itself, rather than relying solely on external tooling or processes. This strategy explains why Stripe chose to delay decomposition for so long, and how the Product Infrastructure team invested in developer productivity to deal with the challenges of a large Ruby codebase managed by a large software engineering team with low average tenure caused by rapid hiring. Before wrapping this introduction, I want to explicitly acknowledge that this strategy was spearheaded by Stripe’s Product Infrastructure team, not by me. Although I ultimately became responsible for that team, I can’t take credit for this strategy’s thinking. Rather, I was initially skeptical, preferring an incremental migration to an existing strongly-typed programming language, either Java for library coverage or Golang for Stripe’s existing familiarity. Despite my initial doubts, the Sorbet project eventually won me over with its indisputable results. This is an exploratory, draft chapter for a book on engineering strategy that I’m brainstorming in #eng-strategy-book. As such, some of the links go to other draft chapters, both published drafts and very early, unpublished drafts. Reading this document To apply this strategy, start at the top with Policy. To understand the thinking behind this strategy, read sections in reverse order, starting with Explore. More detail on this structure in Making a readable Engineering Strategy document. Policy & Operation The Product Infrastructure team is investing in Stripe’s developer experience by: Every six months, Product Infrastructure will select its three highest priority areas to focus, and invest a significant majority of its energy into those. We will provide minimal support for other areas. We commit to refreshing our priorities every half after running the developer productivity survey. We will further share our results, and priorities, in each Quarterly Business Review. Our three highest priority areas for this half are: Add static typing to the highest value portions of our Ruby codebase, such that we can run the type checker locally and on the test machines to identify errors more quickly. Support selective test execution such that engineers can quickly determine and run the most appropriate tests on their machine rather than delaying until tests run on the build server. Instrument test failures such that we have better data to prioritize future efforts. Static typing is not a typical solution to developer productivity, so it requires some explanation when we say this is our highest priority area for investment. Doubly so when we acknowledge that it will take us 12-24 months of much of the team’s time to get our type checker to an effective place. Our type checker, which we plan to name Sorbet, will allow us to continue developing within our existing Ruby codebase. It will further allow our product engineers to remain focused on developing new functionality rather than migrating existing functionality to new services or programming languages. Instead, our Product Infrastructure team will centrally absorb both the development of the type checker and the initial rollout to our codebase. It’s possible for Product Infrastructure to take on both, despite its fixed size. We’ll rely on a hybrid approach of deep-dives to add typing to particularly complex areas, and scripts to rewrite our code’s Abstract Syntax Trees (AST) for less complex portions. In the relatively unlikely event that this approach fails, the cost to Stripe is of a small, known size: approximately six months of half the Product Infrastructure team, which is what we anticipate requiring to determine if this approach is viable. Based on our knowledge of Facebook’s Hack project, we believe we can build a static type checker that runs locally and significantly faster than our test suite. It’s hard to make a precise guess now, but we think less than 30 seconds to type our entire codebase, despite it being quite large. This will allow for a highly productive local development experience, even if we are not able to speed up local testing. Even if we do speed up local testing, typing would help us eliminate one of the categories of errors that testing has been unable to eliminate, which is passing of unexpected types across code paths which have been tested for expected scenarios but not for entirely unexpected scenarios. Once the type checker has been validated, we can incrementally prioritize adding typing to the highest value places across the codebase. We do not need to wholly type our codebase before we can start getting meaningful value. In support of these static typing efforts, we will advocate for product engineers at Stripe to begin development using the Command Query Responsibility Segregation (CQRS) design pattern, which we believe will provide high-leverage interfaces for incrementally introducing static typing into our codebase. Selective test execution will allow developers to quickly run appropriate tests locally. This will allow engineers to stay in a tight local development loop, speeding up development of high quality code. Given that our codebase is not currently statically typed, inferring which tests to run is rather challenging. With our very high test coverage, and the fact that all tests will still be run before deployment to the production environment, we believe that we can rely on statistically inferring which tests are likely to fail when a given file is modified. Instrumenting test failures is our third, and lowest priority, project for this half. Our focus this half is purely on annotating errors for which we have high conviction about their source, whether infrastructure or test issues. For escalations and issues, reach out in the #product-infra channel. Diagnose In 2017, Stripe is a company of about 1,000 people, including 400 software engineers. We aim to grow our organization by about 70% year-over-year to meet increasing demand for a broader product portfolio and to scale our existing products and infrastructure to accommodate user growth. As our production stability has improved over the past several years, we have now turned our focus towards improving developer productivity. Our current diagnosis of our developer productivity is: We primarily fund developer productivity for our Ruby-authoring software engineers via our Product Infrastructure team. The Ruby-focused portion of that team has about ten engineers on it today, and is unlikely to significantly grow in the future. (If we do expand, we are likely to staff non-Ruby ecosystems like Scala or Golang.) We have two primary mechanisms for understanding our engineer’s developer experience. The first is standard productivity metrics around deploy time, deploy stability, test coverage, test time, test flakiness, and so on. The second is a twice annual developer productivity survey. Looking at our productivity metrics, our test coverage remains extremely high, with coverage above 99% of lines, and tests are quite slow to run locally. They run quickly in our infrastructure because they are multiplexed across a large fleet of test runners. Tests have become slow enough to run locally that an increasing number of developers run an overly narrow subset of tests, or entirely skip running tests until after pushing their changes. They instead rely on our test servers to run against their pull request’s branch, which works well enough, but significantly slows down developer iteration time because the merge, build, and test cycle takes twenty to thirty minutes to complete. By the time their build-test cycle completes, they’ve lost their focus and maybe take several hours to return to addressing the results. There is significant disagreement about whether tests are becoming flakier due to test infrastructure issues, or due to quality issues of the tests themselves. At this point, there is no trustworthy dataset that allows us to attribute between those two causes. Feedback from the twice annual developer productivity survey supports the above diagnosis, and adds some additional nuance. Most concerning, although long-tenured Stripe engineers find themselves highly productive in our codebase, we increasingly hear in the survey that newly hired engineers with long tenures at other companies find themselves unproductive in our codebase. Specifically, they find it very difficult to determine how to safely make changes in our codebase. Our product codebase is entirely implemented in a single Ruby monolith. There is one narrow exception, a Golang service handling payment tokenization, which we consider out of scope for two reasons. First, it is kept intentionally narrow in order to absorb our SOC1 compliance obligations. Second, developers in that environment have not raised concerns about their productivity. Our data infrastructure is implemented in Scala. While these developers have concerns–primarily slow build times–they manage their build and deployment infrastructure independently, and the group remains relatively small. Ruby is not a highly performant programming language, but we’ve found it sufficiently efficient for our needs. Similarly, other languages are more cost-efficient from a compute resources perspective, but a significant majority of our spend is on real-time storage and batch computation. For these reasons alone, we would not consider replacing Ruby as our core programming language. Our Product Infrastructure team is about ten engineers, supporting about 250 product engineers. We anticipate this group growing modestly over time, but certainly sublinearly to the overall growth of product engineers. Developers working in Golang and Scala routinely ask for more centralized support, but it’s challenging to prioritize those requests as we’re forced to consider the return on improving the experience for 240 product engineers working in Ruby vs 10 in Golang or 40 data engineers in Scala. If we introduced more programming languages, this prioritization problem would become increasingly difficult, and we are already failing to support additional languages.
The new AMD HX370 option in the Framework 13 is a good step forward in performance for developers. It runs our HEY test suite in 2m7s, compared to 2m43s for the 7840U (and 2m49s for a M4 Pro!). It's also about 20% faster in most single-core tasks than the 7840U. But is that enough to warrant the jump in price? AMD's latest, best chips have suddenly gotten pretty expensive. The F13 w/ HX370 now costs $1,992 with 32GB RAM / 1TB. Almost the same an M4 Pro MBP14 w/ 24GB / 1TB ($2,199). I'd pick the Framework any day for its better keyboard, 3:2 matte screen, repairability, and superb Linux compatibility, but it won't be because the top option is "cheaper" any more. Of course you could also just go with the budget 6-core Ryzen AI 5 340 in same spec for $1,362. I'm sure that's a great machine too. But maybe the sweet spot is actually the Ryzen AI 7 350. It "only" has 8 cores (vs 12 on the 370), but four of those are performance cores -- the same as the 370. And it's $300 cheaper. So ~$1,600 gets you out the door. I haven't actually tried the 350, though, so that's just speculation. I've been running the 370 for the last few months. Whichever chip you choose, the rest of the Framework 13 package is as good as it ever was. This remains my favorite laptop of at least the last decade. I've been running one for over a year now, and combined with Omakub + Neovim, it's the first machine in forever where I've actually enjoyed programming on a 13" screen. The 3:2 aspect ratio combined with Linux's superb multiple desktops that switch with 0ms lag and no animations means I barely miss the trusted 6K Apple XDR screen when working away from the desk. The HX370 gives me about 6 hours of battery life in mixed use. About the same as the old 7840U. Though if all I'm doing is writing, I can squeeze that to 8-10 hours. That's good enough for me, but not as good as a Qualcomm machine or an Apple M-chip machine. For some people, those extra hours really make the difference. What does make a difference, of course, is Linux. I've written repeatedly about how much of a joy it's been to rediscover Linux on the desktop, and it's a joy that keeps on giving. For web work, it's so good. And for any work that requires even a minimum of Docker, it's so fast (as the HEY suite run time attests). Apple still has a strong hardware game, but their software story is falling apart. I haven't heard many people sing the praises of new iOS or macOS releases in a long while. It seems like without an asshole in charge, both have move towards more bloat, more ads, more gimmicks, more control. Linux is an incredible antidote to this nonsense these days. It's also just fun! Seeing AMD catch up in outright performance if not efficiency has been a delight. Watching Framework perfect their 13" laptop while remaining 100% backwards compatible in terms of upgrades with the first versions is heartwarming. And getting to test the new Framework Desktop in advance of its Q3 release has only affirmed my commitment to both. But on the new HX370, it's in my opinion the best Linux laptop you can buy today, which by extension makes it the best web developer laptop too. The top spec might have gotten a bit pricey, but there are options all along the budget spectrum, which retains all the key ingredients any way. Hard to go wrong. Forza Framework!
I’m a big fan of keyring, a Python module made by Jason R. Coombs for storing secrets in the system keyring. It works on multiple operating systems, and it knows what password store to use for each of them. For example, if you’re using macOS it puts secrets in the Keychain, but if you’re on Windows it uses Credential Locker. The keyring module is a safe and portable way to store passwords, more secure than using a plaintext config file or an environment variable. The same code will work on different platforms, because keyring handles the hard work of choosing which password store to use. It has a straightforward API: the keyring.set_password and keyring.get_password functions will handle a lot of use cases. >>> import keyring >>> keyring.set_password("xkcd", "alexwlchan", "correct-horse-battery-staple") >>> keyring.get_password("xkcd", "alexwlchan") "correct-horse-battery-staple" Although this API is simple, it’s not perfect – I have some frustrations with the get_password function. In a lot of my projects, I’m now using a small function that wraps get_password. What do I find frustrating about keyring.get_password? If you look up a password that isn’t in the system keyring, get_password returns None rather than throwing an exception: >>> print(keyring.get_password("xkcd", "the_invisible_man")) None I can see why this makes sense for the library overall – a non-existent password is very normal, and not exceptional behaviour – but in my projects, None is rarely a usable value. I normally use keyring to retrieve secrets that I need to access protected resources – for example, an API key to call an API that requires authentication. If I can’t get the right secrets, I know I can’t continue. Indeed, continuing often leads to more confusing errors when some other function unexpectedly gets None, rather than a string. For a while, I wrapped get_password in a function that would throw an exception if it couldn’t find the password: def get_required_password(service_name: str, username: str) -> str: """ Get password from the specified service. If a matching password is not found in the system keyring, this function will throw an exception. """ password = keyring.get_password(service_name, username) if password is None: raise RuntimeError(f"Could not retrieve password {(service_name, username)}") return password When I use this function, my code will fail as soon as it fails to retrieve a password, rather than when it tries to use None as the password. This worked well enough for my personal projects, but it wasn’t a great fit for shared projects. I could make sense of the error, but not everyone could do the same. What’s that password meant to be? A good error message explains what’s gone wrong, and gives the reader clear steps for fixing the issue. The error message above is only doing half the job. It tells you what’s gone wrong (it couldn’t get the password) but it doesn’t tell you how to fix it. As I started using this snippet in codebases that I work on with other developers, I got questions when other people hit this error. They could guess that they needed to set a password, but the error message doesn’t explain how, or what password they should be setting. For example, is this a secret they should pick themselves? Is it a password in our shared password vault? Or do they need an API key for a third-party service? If so, where do they find it? I still think my initial error was an improvement over letting None be used in the rest of the codebase, but I realised I could go further. This is my extended wrapper: def get_required_password(service_name: str, username: str, explanation: str) -> str: """ Get password from the specified service. If a matching password is not found in the system keyring, this function will throw an exception and explain to the user how to set the required password. """ password = keyring.get_password(service_name, username) if password is None: raise RuntimeError( "Unable to retrieve required password from the system keyring!\n" "\n" "You need to:\n" "\n" f"1/ Get the password. Here's how: {explanation}\n" "\n" "2/ Save the new password in the system keyring:\n" "\n" f" keyring set {service_name} {username}\n" ) return password The explanation argument allows me to explain what the password is for to a future reader, and what value it should have. That information can often be found in a code comment or in documentation, but putting it in an error message makes it more visible. Here’s one example: get_required_password( "flask_app", "secret_key", explanation=( "Pick a random value, e.g. with\n" "\n" " python3 -c 'import secrets; print(secrets.token_hex())'\n" "\n" "This password is used to securely sign the Flask session cookie. " "See https://flask.palletsprojects.com/en/stable/config/#SECRET_KEY" ), ) If you call this function and there’s no keyring entry for flask_app/secret_key, you get the following error: Unable to retrieve required password from the system keyring! You need to: 1/ Get the password. Here's how: Pick a random value, e.g. with python3 -c 'import secrets; print(secrets.token_hex())' This password is used to securely sign the Flask session cookie. See https://flask.palletsprojects.com/en/stable/config/#SECRET_KEY 2/ Save the new password in the system keyring: keyring set flask_app secret_key It’s longer, but this error message is far more informative. It tells you what’s wrong, how to save a password, and what the password should be. This is based on a real example where the previous error message led to a misunderstanding. A co-worker saw a missing password called “secret key” and thought it referred to a secret key for calling an API, and didn’t realise it was actually for signing Flask session cookies. Now I can write a more informative error message, I can prevent that misunderstanding happening again. (We also renamed the secret, for additional clarity.) It takes time to write this explanation, which will only ever be seen by a handful of people, but I think it’s important. If somebody sees it at all, it’ll be when they’re setting up the project for the first time. I want that setup process to be smooth and straightforward. I don’t use this wrapper in all my code, particularly small or throwaway toys that won’t last long enough for this to be an issue. But in larger codebases that will be used by other developers, and which I expect to last a long time, I use it extensively. Writing a good explanation now can avoid frustration later. [If the formatting of this post looks odd in your feed reader, visit the original article]
Short one this time because I have a lot going on this week. In computation complexity, NP is the class of all decision problems (yes/no) where a potential proof (or "witness") for "yes" can be verified in polynomial time. For example, "does this set of numbers have a subset that sums to zero" is in NP. If the answer is "yes", you can prove it by presenting a set of numbers. We would then verify the witness by 1) checking that all the numbers are present in the set (~linear time) and 2) adding up all the numbers (also linear). NP-complete is the class of "hardest possible" NP problems. Subset sum is NP-complete. NP-hard is the set all problems at least as hard as NP-complete. Notably, NP-hard is not a subset of NP, as it contains problems that are harder than NP-complete. A natural question to ask is "like what?" And the canonical example of "NP-harder" is the halting problem (HALT): does program P halt on input C? As the argument goes, it's undecidable, so obviously not in NP. I think this is a bad example for two reasons: All NP requires is that witnesses for "yes" can be verified in polynomial time. It does not require anything for the "no" case! And even though HP is undecidable, there is a decidable way to verify a "yes": let the witness be "it halts in N steps", then run the program for that many steps and see if it halted by then. To prove HALT is not in NP, you have to show that this verification process grows faster than polynomially. It does (as busy beaver is uncomputable), but this all makes the example needlessly confusing.1 "What's bigger than a dog? THE MOON" Really (2) bothers me a lot more than (1) because it's just so inelegant. It suggests that NP-complete is the upper bound of "solvable" problems, and after that you're in full-on undecidability. I'd rather show intuitive problems that are harder than NP but not that much harder. But in looking for a "slightly harder" problem, I ran into an, ah, problem. It seems like the next-hardest class would be EXPTIME, except we don't know for sure that NP != EXPTIME. We know for sure that NP != NEXPTIME, but NEXPTIME doesn't have any intuitive, easily explainable problems. Most "definitely harder than NP" problems require a nontrivial background in theoretical computer science or mathematics to understand. There is one problem, though, that I find easily explainable. Place a token at the bottom left corner of a grid that extends infinitely up and right, call that point (0, 0). You're given list of valid displacement moves for the token, like (+1, +0), (-20, +13), (-5, -6), etc, and a target point like (700, 1). You may make any sequence of moves in any order, as long as no move ever puts the token off the grid. Does any sequence of moves bring you to the target? This is PSPACE-complete, I think, which still isn't proven to be harder than NP-complete (though it's widely believed). But what if you increase the number of dimensions of the grid? Past a certain number of dimensions the problem jumps to being EXPSPACE-complete, and then TOWER-complete (grows tetrationally), and then it keeps going. Some point might recognize this as looking a lot like the Ackermann function, and in fact this problem is ACKERMANN-complete on the number of available dimensions. A friend wrote a Quanta article about the whole mess, you should read it. This problem is ludicrously bigger than NP ("Chicago" instead of "The Moon"), but at least it's clearly decidable, easily explainable, and definitely not in NP. It's less confusing if you're taught the alternate (and original!) definition of NP, "the class of problems solvable in polynomial time by a nondeterministic Turing machine". Then HALT can't be in NP because otherwise runtime would be bounded by an exponential function. ↩
I’ve been writing some internal dashboards recently, and one hard part is displaying timestamps. Our server does everything in UTC, but the team is split across four different timezones, so the server timestamps aren’t always easy to read. For most people, it’s harder to understand a UTC timestamp than a timestamp in your local timezone. Did that event happen just now, an hour ago, or much further back? Was that at the beginning of your working day? Or at the end? Then I remembered that I tried to solve this five years ago at a previous job. I wrote a JavaScript snippet that converts UTC timestamps into human-friendly text. It displays times in your local time zone, and adds a short suffix if the time happened recently. For example: today @ 12:00 BST (1 hour ago) In my old project, I was using writing timestamps in a <div> and I had to opt into the human-readable text for every date on the page. It worked, but it was a bit fiddly. Doing it again, I thought of a more elegant solution. HTML has a <time> element for expressing datetimes, which is a more meaningful wrapper than a <div>. When I render the dashboard on the server, I don’t know the user’s timezone, so I include the UTC timestamp in the page like so: <time datetime="2025-04-15 19:45:00Z"> Tue, 15 Apr 2025 at 19:45 UTC </time> I put a machine-readable date and time string with a timezone offset string in the datetime attribute, and then a more human-readable string in the text of the element. Then I add this JavaScript snippet to the page: window.addEventListener("DOMContentLoaded", function() { document.querySelectorAll("time").forEach(function(timeElem) { // Set the `title` attribute to the original text, so a user // can hover over a timestamp to see the UTC time. timeElem.setAttribute("title", timeElem.innerText); // Replace the display text with a human-friendly date string // which is localised to the user's timezone. timeElem.innerText = getHumanFriendlyDateString( timeElem.getAttribute("datetime") ); }) }); This updates any <time> element on the page to use a human friendly date string, which is localised to the user’s timezone. For example, I’m in the UK so that becomes: <time datetime="2025-04-15 19:45:00Z" title="Tue, 15 Apr 2025 at 19:45 UTC"> Tue, 15 Apr 2025 at 20:45 BST </time> In my experience, these timestamps are easier and more intuitive for people to read. I always include a timezone string (e.g. BST, EST, PDT) so it’s obvious that I’m showing a localised timestamp. If you really need the UTC timestamp, it’s in the title attribute, so you can see it by hovering over it. (Sorry, mouseless users, but I don’t think any of my team are browsing our dashboards from their phone or tablet.) If the JavaScript doesn’t load, you see the plain old UTC timestamp. It’s not ideal, but the page still loads and you can see all the information – this behaviour is an enhancement, not an essential. To me, this is the unfulfilled promise of the <time> element. In my fantasy world, web page authors would write the time in a machine-readable format, and browsers would show it in a way that makes sense for the reader. They’d take into account their language, locale, and time zone. I understand why that hasn’t happened – it’s much easier said than done. You need so much context to know what’s the “right” thing to do when dealing with datetimes, and guessing without that context is at the heart of many datetime bugs. These sort of human-friendly, localised timestamps are very handy sometimes, and a complete mess at other times. In my staff-only dashboards, I have that context. I know what these timestamps mean, who’s going to be reading them, and I think they’re a helpful addition that makes the data easier to read. [If the formatting of this post looks odd in your feed reader, visit the original article]