10 Jan 2026
Planet Python
EuroPython: Humans of EuroPython: Jakub Červinka
EuroPython wouldn't exist if it weren't for all the volunteers who put in countless hours to organize it. Whether it's contracting the venue, selecting and confirming talks & workshops or coordinating with speakers, hundreds of hours of loving work have been put into making each edition the best one yet.
Read our latest interview with Jakub Červinka, a member of the EuroPython 2025 Operations Team and organizer of PyConCZ 2026.
Thank you for your service to EuroPython, Jakub!
Jakub Červinka, member of the Operations Team at EuroPython 2025
EP: What first inspired you to volunteer for EuroPython?
The community has always been the biggest draw for me. Having volunteered at our local Python conference previously, I already knew how rewarding it is to be part of the organizing team. When the opportunity to join EuroPython came up, I jumped at it without a second thought. I really like connecting with organizers, speakers, and attendees from across the continent.
EP: What&aposs one task you handled that attendees might not realize happens behind the scenes at EuroPython?
One year I took on the role of "designated driver", essentially the person who handles the last-minute, ad-hoc tasks that arise during the conference. It ranged from running out to buy a cart full of hygiene products for the bathrooms, to hauling cases of bottled water when we were about to run dry, to picking up emergency prints on one of the hottest days of the year. These are the kinds of small but critical jobs that keep everything running smoothly, and I enjoy making sure they get done.
EP: How did volunteering for EuroPython impact your relationships within the community?
In the best possible way. Over the years, I've built lasting friendships, met people I had only known from online talks and tutorials, and had the chance to become a familiar face in the community myself. Every EuroPython and every local conference strengthens those connections and leaves you with renewed energy and inspiration to keep contributing.
EP: What&aposs one thing you took away from the experience that you still use today?
The importance of recognition and appreciation. A simple "thank you" or "great job" from an attendee can mean a lot to volunteers. We're doing important work, but it's not our paid job. That experience has made me much more intentional about expressing gratitude to everyone who helps, whether they're fellow volunteers, staff, or people in service roles.
EP: Do you have any tips for first-time EuroPython volunteers?
Don't be afraid to ask questions or offer help, there's always something that needs doing, and everyone can contribute in their own way. Keep an eye out for small improvements you could suggest, introduce yourself to people, and most importantly, enjoy the experience. Volunteering is as much about building relationships and having fun as it is about getting tasks done.
EP: Thank you, Jakub!
10 Jan 2026 9:49am GMT
09 Jan 2026
Django community aggregator: Community blog posts
Django News - Django Bugfixes, Community Wins, and What’s NextIssue 319 - Jan 9th 2026
News
Django bugfix releases issued: 5.2.10, 6.0.1
Django released bugfix updates 5.2.10 and 6.0.1; release packages and signed checksums are available on the downloads page and PyPI.
DjangoCon US 2026 Call for Proposals
The CFP is now open until March 16, 2026. The conference this year will be September 14-18, again in Chicago.
Wagtail CMS News
Wagtail Wrapped 2025
Wagtail's 2025 recap highlights four releases culminating in 7.2 with a 7.0 LTS, deferred validation toward autosave, search revamp, and AI package improvements.
Updates to Django
Today, "Updates to Django" is presented by Raffaella from Djangonaut Space! 🚀
Last week we had 6 pull requests merged into Django by 5 different contributors - including a first-time contributor! Congratulations to Mykhailo Havelia for having their first commits merged into Django - welcome on board!
- Fixed a bug in Django 5.2 where data exceeding
max_lengthwas silently truncated byQuerySet.bulk_create()on PostgreSQL (#33647). - Fixed a regression in Django 6.0 where the
Widget.use_fieldsetattribute ofClearableFileInputwas flipped fromFalsetoTrue(#36829).
Django Newsletter
Articles
Migrating From Celery to Django Tasks
Django's new Task Framework makes it surprisingly easy to replace Celery, covering configuration, task migration, queues, workers, and periodic jobs with simpler, built-in tooling.
My 2025 year in review - Andrew Miller
Andy's recap of regular blogging, conference attending, working on a financial services startup, using AI, publishing django-prodserver, and more in 2025.
Ceci n'est pas un blog
Russell Keith-Magee shares that receiving Django commit access 20 years ago set a trajectory that led to remote roles, startups, BeeWare, and continued open-source impact.
Open Source Is People: A Python & Django Year
Anthony Addae describes a 2025 journey from mentoring to becoming an active Django contributor and organizer, including participation in Djangonaut Space and a first Django core pull request.
Django Quiz 2025
Adam Johnson shares the 2025 edition of his annual Django pop quiz from Django London, inviting readers to test their Django knowledge with a mix of fun, community-focused, and framework-wide questions.
What async really means for your python web app? - hackeryarn
Async Python web benchmarks show that for most Django apps hitting a database, well-tuned synchronous setups with connection pooling outperform async frameworks, making async far from the free performance win many expect.
Events
Things I'd Like to See in a DjangoCon US 2026 Talk
Curated talk ideas for DjangoCon US 2026 CFP covering deployment, Django 6.x features, performance, security, HTMX, type checking, ML, and community topics.
Django Job Board
Explore senior Python and Django roles spanning enterprise, open web infrastructure, and a fully remote UK-based startup.
Senior Python Developer at Cial Dun & Bradstreet
Software Engineer at Internet Archive
Founding Full-Stack Senior Engineer (UK ONLY) - Fully Remote at MyDataValue
Django Newsletter
Projects
Django on the Fediverse - Mastodon Starter Pack
Curated starter pack of nonhuman Django accounts on the Fediverse listing official projects, conferences, media, and community hubs.
kraken-tech/django-pg-migration-tools
Extra functionalities to make Django migrations safer and more scalable.
amureki/django-devbar
Lightweight performance devbar for Django.
This RSS feed is published on https://django-news.com/. You can also subscribe via email.
09 Jan 2026 5:00pm GMT
Planet Python
Mike Driscoll: How to Switch to ty from Mypy
Python has supported type hinting for quite a few versions now, starting way back in 3.5. However, Python itself does not enforce type checking. Instead, you need to use an external tool or IDE. The first and arguably most popular is mypy.
Microsoft also has a Python type checker that you can use in VS Code called Pyright, and then there's the lesser-known Pyrefly type checker and language server.
The newest type checker on the block is Astral's ty, the maker of Ruff. Ty is another super-fast Python utility written in Rust.
In this article, you will learn how to switch your project to use ty locally and in GitHub Actions.
Installation
You can run ty with uvx if you do not want to install it by using the following command in your terminal: uvx ty
To install ty with uv, run the following:
uv tool install ty@latest
If you do not want to use uv, you can use the standalone installer. Instructions vary depending on your platform, so it is best to refer to the documentation for the latest information.
Note: Technically, you can use pip or pipx to install ty as well.
Running ty Locally
Running with uv
uv run ty
Running without Installation
uvx ty
Running ty Directly
ty check
Configuring ty
- pyproject.toml
- ty.toml
There are many rules that you can change. Check out the documentation for full details.
In general, if you run mypy in strict mode, then running ty without changing any of its settings is very similar. However, ty currently does not highlight missing type hints. If you need to enforce adding type hints, you can use Ruff's flake8-annotations.
Here is how to enable the flak8-annotations in your pyproject.toml file:

If you have other rules already selected, you can add "ANN" to the end of the list to enable it.
Running ty in GitHub Actions
.github/workflows/ty.yml
Make sure you include the leading period!
Next, inside your yaml file, you will add the following code:
name: ty
on:
pull_request:
types: [opened, synchronize, reopened, ready_for_review]
workflow_dispatch:
jobs:
build:
if: github.event.pull_request.draft == false
runs-on: self-hosted
steps:
- uses: actions/checkout@v3
- name: Install Python
uses: actions/setup-python@v4
with:
python-version: "3.12"
- name: Install dependencies
run: |
python -m pip install --upgrade pip
pip install ty==0.0.7
- name: Run ty
run: ty check
continue-on-error: false
Now, when your team opens a new PR in your project, it will automatically run ty against it. Feel free to update the Python version to the one you are using. Also note that this GitHub Action sets the ty version to 0.0.7, which you may need to update as newer releases become available.
Using ty with pre-commit
- https://github.com/NSPC911/ty-pre-commit
- https://github.com/JacobCoffee/ty-pre-commit
- https://github.com/hoxbro/ty-pre-commit
- https://github.com/allganize/ty-pre-commit
- https://foundry.fsky.io/vel/ty-pre-commit
When Astral supports pre-commit itself, you should update your pre-commit configuration accordingly.
However, for this tutorial, you can use that first link which tells you to add the following to your .pre-commit-config.yaml:

Now, when you commit a file locally, pre-commit will run ty to check it for you automatically.
Wrapping Up
Type checkers can be really helpful in finding subtle bugs in your Python code. However, remembering to run them before pushing your code can be difficult, so make your life easier by adding the type checker to your CI!
Have fun and happy coding!
The post How to Switch to ty from Mypy appeared first on Mouse Vs Python.
09 Jan 2026 3:16pm GMT
The Python Coding Stack: Parkruns, Python’s enumerate and zip, and Why Python Loops Are Different from Other Languages • [Club]
If you live in the UK, you're probably familiar with the Parkrun tradition: a friendly 5k run held every Saturday morning in hundreds of parks across the UK. Runners range from Olympians to people trying to lose some weight. It's a well-oiled format replicated across all 893 Parkrun locations.
And here's how they deal with the finish line logistics. Runners don't wear bibs with numbers. When they cross the finish line, they enter a "funnel" marked by plastic cones and are handed a token with their position number. They then proceed to another official, who scans their personal barcode, which runners carry in their pockets or on a wristband, and the position token they received a few seconds earlier. This process matches the runner with their finishing position.
What's this got to do with Python loops? And how does it help us understand why Python does loops differently from other languages?
First step, let's create the Parkrun funnel. I'll just put the first five finishers in this example:
>>> funnel = ["Jonathan", "Michael", "Samantha", "Jessica", "Daniel"]
Now, here's something you definitely know already because it's always one of the first things you're taught when learning Python: Don't loop through this list like this:
# Avoid this when coding in Python
>>> i = 0
>>> while i < len(funnel):
... name = funnel[i]
... print(name)
... i += 1
...
Jonathan
Michael
Samantha
Jessica
Daniel
This style mimics how other languages may work: you manually define and increment the index. To be fair, most people who shift from other languages are more likely to write the following version at some point:
# Also best to avoid this in Python
>>> for i in range(len(funnel)):
... name = funnel[i]
... print(name)
...
Jonathan
Michael
Samantha
Jessica
Daniel
This version may seem more Pythonic since it uses Python tools such as range(), but still fails to make the most of Python's iteration protocol. The Pythonic way of looping through this list is the following:
>>> for name in funnel:
... print(name)
...
Jonathan
Michael
Samantha
Jessica
Daniel
A question that's often asked but rarely answered is: Why is this version preferred over the other two? I'll write another short post to answer this question soon as I want to keep these The Club posts short whenever possible. So, let me state just a few reasons (there are more) and then I'll move on to my main topic for today.
-
It's more readable
-
It's more efficient (try timing the versions above using
timeit-remove theprint()calls first) -
It's less prone to errors and bugs
-
It works with a broader selection of data structures, not just sequences
While you wait for my follow-up post on this, you can read more about Python's Iterator Protocol, iterables, and iterators here:
But let's move on.
Let's say you want to print out the names alongside each runner's position. You'd like the following output:
1. Jonathan
2. Michael
3. Samantha
4. Jessica
5. Daniel
"Aha!" I'm often told by some learners, "This is when you need to use the for i in range(len(funnel)) idiom, since you need the index!"
Python's for loop doesn't explicitly use the index, so you don't have access to the index within the for loop. Many revert to the non-Pythonic idioms for this.
But Python provides tools that let you stay within the pure Pythonic style. Python's for loop needs an iterator-it will create one from the iterable you provide. All Python iteration needs iterators, not just for loops. Iterators are Python's tool for any iteration.
And there are some bespoke iterators in Python that handle most of your iteration needs. I recently wrote a series about the itertools module. The itertools module contains many such tools. Here's the series: The itertools Series.
But there are also two built-in tools that many forget, but are extremely useful. The first one is enumerate().
Here's how you can use it to display the Parkrun results:
>>> for index, name in enumerate(funnel, start=1):
... print(f"{index}. {name}")
...
1. Jonathan
2. Michael
3. Samantha
4. Jessica
5. Daniel
09 Jan 2026 1:57pm GMT
08 Jan 2026
Django community aggregator: Community blog posts
Documenting Django's technical culture
Following along the lines from one of posts from last year about Django being a protocol or an API, there was a recent discussion on Mastodon about configurable content types, and there's a ticket in flight to implement this new feature that would make content types configurable. This made me think, in django-prodserver, I'm already creating configurable backends, and in Django generally we have configurable components: databases, caches, storage backends, email backends, and so on. Most of whole system is configurable, and the INSTALLED_APPS setting could be considered the heart of this.
I see some potential value in building out a meta design documents for how we expect new features to be built in Django, describing the kinds of designs or Python APIs we would anticipate in feature. For example, there's clearly a pattern of a configurable backend via settings, as I mentioned. But are there other conventions we should codify? Whether that takes the form of a contribution document, or an issue template in GitHub, but I think starting with some documentation would be a good start. It might also reveal some gaps in existing features that don't meet the standard we would expect for new features being introduced.
I'm wondering if this is something people are interested in, or something that could smooth the adoption of a package into core though I won't claim it would speed things up, given how we pace ourselves. We do have established patterns; codifying them a bit more could help those who want to contribute back. Although this is a technical document, it serves more as a community document that shares our culture of how we build Django, therefore creating another on ramp for the community.
08 Jan 2026 6:00am GMT
05 Jan 2026
Planet Twisted
Glyph Lefkowitz: How To Argue With Me About AI, If You Must
As you already know if you've read any of this blog in the last few years, I am a somewhat reluctant - but nevertheless quite staunch - critic of LLMs. This means that I have enthusiasts of varying degrees sometimes taking issue with my stance.
It seems that I am not going to get away from discussions, and, let's be honest, pretty intense arguments about "AI" any time soon. These arguments are starting to make me quite upset. So it might be time to set some rules of engagement.
I've written about all of these before at greater length, but this is a short post because it's not about the technology or making a broader point, it's about me. These are rules for engaging with me, personally, on this topic. Others are welcome to adopt these rules if they so wish but I am not encouraging anyone to do so.
Thus, I've made this post as short as I can so everyone interested in engaging can read the whole thing. If you can't make it through to the end, then please just follow Rule Zero.
Rule Zero: Maybe Don't
You are welcome to ignore me. You can think my take is stupid and I can think yours is. We don't have to get into an Internet Fight about it; we can even remain friends. You do not need to instigate an argument with me at all, if you think that my analysis is so bad that it doesn't require rebutting.
Rule One: No 'Just'
As I explained in a post with perhaps the least-predictive title I've ever written, "I Think I'm Done Thinking About genAI For Now", I've already heard a bunch of bad arguments. Don't tell me to 'just' use a better model, use an agentic tool, use a more recent version, or use some prompting trick that you personally believe works better. If you skim my work and think that I must not have deeply researched anything or read about it because you don't like my conclusion, that is wrong.
Rule Two: No 'Look At This Cool Thing'
Purely as a productivity tool, I have had a terrible experience with genAI. Perhaps you have had a great one. Neat. That's great for you. As I explained at great length in "The Futzing Fraction", my concern with generative AI is that I believe it is probably a net negative impact on productivity, based on both my experience and plenty of citations. Go check out the copious footnotes if you're interested in more detail.
Therefore, I have already acknowledged that you can get an LLM to do various impressive, cool things, sometimes. If I tell you that you will, on average, lose money betting on a slot machine, a picture of a slot machine hitting a jackpot is not evidence against my position.
Rule Two And A Half: Engage In Metacognition
I specifically didn't title the previous rule "no anecdotes" because data beyond anecdotes may be extremely expensive to produce. I don't want to say you can never talk to me unless you're doing a randomized controlled trial. However, if you are going to tell me an anecdote about the way that you're using an LLM, I am interested in hearing how you are compensating for the well-documented biases that LLM use tends to induce. Try to measure what you can.
Rule Three: Do Not Cite The Deep Magic To Me
As I explained in "A Grand Unified Theory of the AI Hype Cycle", I already know quite a bit of history of the "AI" label. If you are tempted to tell me something about how "AI" is really such a broad field, and it doesn't just mean LLMs, especially if you are trying to launder the reputation of LLMs under the banner of jumbling them together with other things that have been called "AI", I assure you that this will not be convincing to me.
Rule Four: Ethics Are Not Optional
I have made several arguments in my previous writing: there are ethical arguments, efficacy arguments, structuralist arguments, efficiency arguments and aesthetic arguments.
I am happy to, for the purposes of a good-faith discussion, focus on a specific set of concerns or an individual point that you want to make where you think I got something wrong. If you convince me that I am entirely incorrect about the effectiveness or predictability of LLMs in general or as specific LLM product, you don't need to make a comprehensive argument about whether one should use the technology overall. I will even assume that you have your own ethical arguments.
However, if you scoff at the idea that one should have any ethical boundaries at all, and think that there's no reason to care about the overall utilitarian impact of this technology, that it's worth using no matter what else it does as long as it makes you 5% better at your job, that's sociopath behavior.
This includes extreme whataboutism regarding things like the water use of datacenters, other elements of the surveillance technology stack, and so on.
Consequences
These are rules, once again, just for engaging with me. I have no particular power to enact broader sanctions upon you, nor would I be inclined to do so if I could. However, if you can't stay within these basic parameters and you insist upon continuing to direct messages to me about this topic, I will summarily block you with no warning, on mastodon, email, GitHub, IRC, or wherever else you're choosing to do that. This is for your benefit as well: such a discussion will not be a productive use of either of our time.
05 Jan 2026 5:22am GMT
03 Jan 2026
Django community aggregator: Community blog posts
Django Quiz 2025
Last month, I held another quiz at the December edition of Django London. The December quiz is an annual tradition at our meetup, a way of making this final event of the year more relaxed and giving away some nice prizes. This was the seventh quiz that I've presented, and the eighth overall.
Here's an action shot taken by one of my co-organizers:

Below is the quiz itself, so you can try it at home. Answers follow at the end, with some extra explanation. Dates refer to December 2025, so if you're reading in the future, take that into consideration. (Posting a little late this time, so happy new year!)
Enjoy!
The quiz
2. Which of these databases does core Django support?
- MongoDB
- Oracle
- Microsoft SQL Server
- A bunch of YAML files
3. Which of the below names is not a current Django Fellow?
- Jacob Tyler Walls
- Natalia Bidart
- Sarah Boyce
- Django Reinhardt
4. Who manages the Django project?
- The Python Software Foundation
- Adrian Holovaty
- The Django Software Foundation
- Anyone who lists Django as a skill on LinkedIn
6. What is the modern API for HTTP request headers?
request.hrequest.METArequest.headersrequest.get_me_a_header
7. What does CSP stand for?
- Content Security Policy
- Contributed Security Patches
- Callable Script Parameters
- Crazy Secure Python
8. What is the new decorator to define a background task?
@task@background_task@background@do_it_later
9. In which city will DjangoCon Europe 2026 be held?
- Athens, Greece
- Zagreb, Croatia
- Dublin, Ireland
- Hell, Norway
10. How do you use Django's test client to make a GET request?
Client.get(url)self.client.get(url)self.client.fetch("GET", url)llm.prompt(f"Check this URL with GET: {url}")
Okay, now the answers
1. How old is Django this year?
🎂 Django was released in December 2005, making it 20 years old this year.
2. Which of these databases does core Django support?
Django has supported Oracle since 2006!
3. Which of the below names is not a current Django Fellow?
Django Reinhardt was a jazz guitarist, from whom the framework takes its name. Jacob Tyler Walls, Natalia Bidart, and Sarah Boyce are the current Django Fellows.
4. Who manages the Django project?
The Django Software Foundation is a US non-profit with the aim of promoting, supporting, and advancing the Django web framework.
5. What is the latest version of Django?
Django 6.0 is the latest version, as of December 3rd, 2025. See my "what's new post" for highlights.
6. What is the modern API for HTTP request headers?
request.headers is the new apprach, added in Django 2.2 (2019), superseding the older request.META approach. It acts as a case-insensitive mapping. For example, to access the User-Agent header:
def index(request):
user_agent = request.headers.get("user-agent", "")
...
7. What does CSP stand for?
CSP stands for Content Security Policy, a security feature that helps prevent XSS attacks, as newly supported in Django 6.0!
8. What is the new decorator to define a background task?
The @task decorator is new in Django 6.0 for defining background tasks, which you can use like:
from django.tasks import task
from example.models import User
@task
def send_welcome_email(user_id):
user = User.objects.get(id=user_id)
...
9. In which city will DjangoCon Europe 2026 be held?
DjangoCon Europe 2026 will be held in Athens, Greece. See you there?
10. How do you use Django's test client to make a GET request?
A testing classic! Use self.client.get(url) to make a GET request with Django's test client, like:
from django.test import TestCase
class IndexTests(TestCase):
def test_success(self):
response = self.client.get("/index/")
assert response.status_code == 200
...
11. Which ORM method returns a dictionary of PKs to model instances?
The Model.objects.in_bulk() method returns a dictionary of primary keys to model instances. For example:
In [1]: Book.objects.in_bulk([1, 2, 3])
Out[1]:
{1: <Book: Brave New World (id=1)>,
2: <Book: Slaughterhouse-Five (id=2)>,
3: <Book: 1984 (id=3)>}
12. What's the HTML tag for a dialog?
The <dialog> element has been available since 2022, and was extended by the Invoker Commands API this year. You can now make a <dialog> that is opened by a <button> without any JavaScript like so:
<button commandfor=subscribers command=show-modal>
View subscribers
</button>
<dialog id=subscribers>
<button commandfor=mydialog command=close>Close</button>
<h2>Subscribers</h2>
<!-- Insert contents here -->
</dialog>
Short, sweet, and powerful.
Fin
I hope you have enjoyed reading through doing this quiz. You can see the previous year's quizzes in the "related posts" section below.
May your 2026 be filled with many joyful hours building with Django,
-Adam
03 Jan 2026 6:00am GMT
02 Jan 2026
Planet Twisted
Glyph Lefkowitz: The Next Thing Will Not Be Big
The dawning of a new year is an opportune moment to contemplate what has transpired in the old year, and consider what is likely to happen in the new one.
Today, I'd like to contemplate that contemplation itself.
The 20th century was an era characterized by rapidly accelerating change in technology and industry, creating shorter and shorter cultural cycles of changes in lifestyles. Thus far, the 21st century seems to be following that trend, at least in its recently concluded first quarter.
The early half of the twentieth century saw the massive disruption caused by electrification, radio, motion pictures, and then television.
In 1971, Intel poured gasoline on that fire by releasing the 4004, a microchip generally recognized as the first general-purpose microprocessor. Popular innovations rapidly followed: the computerized cash register, the personal computer, credit cards, cellular phones, text messaging, the Internet, the web, online games, mass surveillance, app stores, social media.
These innovations have arrived faster than previous generations, but also, they have crossed a crucial threshold: that of the human lifespan.
While the entire second millennium A.D. has been characterized by a gradually accelerating rate of technological and social change - the printing press and the industrial revolution were no slouches, in terms of changing society, and those predate the 20th century - most of those changes had the benefit of unfolding throughout the course of a generation or so.
Which means that any individual person in any given century up to the 20th might remember one major world-altering social shift within their lifetime, not five to ten of them. The diversity of human experience is vast, but most people would not expect that the defining technology of their lifetime was merely the latest in a progression of predictable civilization-shattering marvels.
Along with each of these successive generations of technology, we minted a new generation of industry titans. Westinghouse, Carnegie, Sarnoff, Edison, Ford, Hughes, Gates, Jobs, Zuckerberg, Musk. Not just individual rich people, but entire new classes of rich people that did not exist before. "Radio DJ", "Movie Star", "Rock Star", "Dot Com Founder", were all new paths to wealth opened (and closed) by specific technologies. While most of these people did come from at least some level of generational wealth, they no longer came from a literal hereditary aristocracy.
To describe this new feeling of constant acceleration, a new phrase was coined: "The Next Big Thing". In addition to denoting that some Thing was coming and that it would be Big (i.e.: that it would change a lot about our lives), this phrase also carries the strong implication that such a Thing would be a product. Not a development in social relationships or a shift in cultural values, but some new and amazing form of conveying salted meat paste or what-have-you, that would make whatever lucky tinkerer who stumbled into it into a billionaire - along with any friends and family lucky enough to believe in their vision and get in on the ground floor with an investment.
In the latter part of the 20th century, our entire model of capital allocation shifted to account for this widespread belief. No longer were mega-businesses built by bank loans, stock issuances, and reinvestment of profit, the new model was "Venture Capital". Venture capital is a model of capital allocation explicitly predicated on the idea that carefully considering each bet on a likely-to-succeed business and reducing one's risk was a waste of time, because the return on the equity from the Next Big Thing would be so disproportionately huge - 10x, 100x, 1000x - that one could afford to make at least 10 bad bets for each good one, and still come out ahead.
The biggest risk was in missing the deal, not in giving a bunch of money to a scam. Thus, value investing and focus on fundamentals have been broadly disregarded in favor of the pursuit of the Next Big Thing.
If Americans of the twentieth century were temporarily embarrassed millionaires, those of the twenty-first are all temporarily embarrassed FAANG CEOs.
The predicament that this tendency leaves us in today is that the world is increasingly run by generations - GenX and Millennials - with the shared experience that the computer industry, either hardware or software, would produce some radical innovation every few years. We assume that to be true.
But all things change, even change itself, and that industry is beginning to slow down. Physically, transistor density is starting to brush up against physical limits. Economically, most people are drowning in more compute power than they know what to do with anyway. Users already have most of what they need from the Internet.
The big new feature in every operating system is a bunch of useless junk nobody really wants and is seeing remarkably little uptake. Social media and smartphones changed the world, true, but… those are both innovations from 2008. They're just not new any more.
So we are all - collectively, culturally - looking for the Next Big Thing, and we keep not finding it.
It wasn't 3D printing. It wasn't crowdfunding. It wasn't smart watches. It wasn't VR. It wasn't the Metaverse, it wasn't Bitcoin, it wasn't NFTs1.
It's also not AI, but this is why so many people assume that it will be AI. Because it's got to be something, right? If it's got to be something then AI is as good a guess as anything else right now.
The fact is, our lifetimes have been an extreme anomaly. Things like the Internet used to come along every thousand years or so, and while we might expect that the pace will stay a bit higher than that, it is not reasonable to expect that something new like "personal computers" or "the Internet"3 will arrive again.
We are not going to get rich by getting in on the ground floor of the next Apple or the next Google because the next Apple and the next Google are Apple and Google. The industry is maturing. Software technology, computer technology, and internet technology are all maturing.
There Will Be Next Things
Research and development is happening in all fields all the time. Amazing new developments quietly and regularly occur in pharmaceuticals and in materials science. But these are not predictable. They do not inhabit the public consciousness until they've already happened, and they are rarely so profound and transformative that they change everybody's life.
There will even be new things in the computer industry, both software and hardware. Foldable phones do address a real problem (I wish the screen were even bigger but I don't want to carry around such a big device), and would probably be more popular if they got the costs under control. One day somebody's going to crack the problem of volumetric displays, probably. Some VR product will probably, eventually, hit a more realistic price/performance ratio where the niche will expand at least a little more.
Maybe there will even be something genuinely useful, which is recognizably adjacent to the current "AI" fad, but if it is, it will be some new development that we haven't seen yet. If current AI technology were sufficient to drive some interesting product, it would already be doing it, not using marketing disguised as science to conceal diminishing returns on current investments.
But They Will Not Be Big
The impulse to find the One Big Thing that will dominate the next five years is a fool's errand. Incremental gains are diminishing across the board. The markets for time and attention2 are largely saturated. There's no need for another streaming service if 100% of your leisure time is already committed to TikTok, YouTube and Netflix; famously, Netflix has already considered sleep its primary competitor for close to a decade - years before the pandemic.
Those rare tech markets which aren't saturated are suffering from pedestrian economic problems like wealth inequality, not technological bottlenecks.
For example, the thing preventing the development of a robot that can do your laundry and your dishes without your input is not necessarily that we couldn't build something like that, but that most households just can't afford it without wage growth catching up to productivity growth. It doesn't make sense for anyone to commit to the substantial R&D investment that such a thing would take, if the market doesn't exist because the average worker isn't paid enough to afford it on top of all the other tech which is already required to exist in society.
The projected income from the tiny, wealthy sliver of the population who could pay for the hardware, cannot justify an investment in the software past a fake version remotely operated by workers in the global south, only made possible by Internet wage arbitrage, i.e. a more palatable, modern version of indentured servitude.
Even if we were to accept the premise of an actually-"AI" version of this, that is still just a wish that ChatGPT could somehow improve enough behind the scenes to replace that worker, not any substantive investment in a novel, proprietary-to-the-chores-robot software system which could reliably perform specific functions.
What, Then?
The expectation for, and lack of, a "big thing" is a big problem. There are others who could describe its economic, political, and financial dimensions better than I can. So then let me speak to my expertise and my audience: open source software developers.
When I began my own involvement with open source, a big part of the draw for me was participating in a low-cost (to the corporate developer) but high-value (to society at large) positive externality. None of my employers would ever have cared about many of the applications for which Twisted forms a core bit of infrastructure; nor would I have been able to predict those applications' existence. Yet, it is nice to have contributed to their development, even a little bit.
However, it's not actually a positive externality if the public at large can't directly benefit from it.
When real world-changing, disruptive developments are occurring, the bean-counters are not watching positive externalities too closely. As we discovered with many of the other benefits that temporarily accrued to labor in the tech economy, Open Source that is usable by individuals and small companies may have been a ZIRP. If you know you're gonna make a billion dollars you're not going to worry about giving away a few hundred thousand here and there.
When gains are smaller and harder to realize, and margins are starting to get squeezed, it's harder to justify the investment in vaguely good vibes.
But this, itself, is not a call to action. I doubt very much that anyone reading this can do anything about the macroeconomic reality of higher interest rates. The technological reality of "development is happening slower" is inherently something that you can't change on purpose.
However, what we can do is to be aware of this trend in our own work.
Fight Scale Creep
It seems to me that more and more open source infrastructure projects are tools for hyper-scale application development, only relevant to massive cloud companies. This is just a subjective assessment on my part - I'm not sure what tools even exist today to measure this empirically - but I remember a big part of the open source community when I was younger being things like Inkscape, Themes.Org and Slashdot, not React, Docker Hub and Hacker News.
This is not to say that the hobbyist world no longer exists. There is of course a ton of stuff going on with Raspberry Pi, Home Assistant, OwnCloud, and so on. If anything there's a bit of a resurgence of self-hosting. But the interests of self-hosters and corporate developers are growing apart; there seems to be far less of a beneficial overflow from corporate infrastructure projects into these enthusiast or prosumer communities.
This is the concrete call to action: if you are employed in any capacity as an open source maintainer, dedicate more energy to medium- or small-scale open source projects.
If your assumption is that you will eventually reach a hyper-scale inflection point, then mimicking Facebook and Netflix is likely to be a good idea. However, if we can all admit to ourselves that we're not going to achieve a trillion-dollar valuation and a hundred thousand engineer headcount, we can begin to consider ways to make our Next Thing a bit smaller, and to accommodate the world as it is rather than as we wish it would be.
Be Prepared to Scale Down
Here are some design guidelines you might consider, for just about any open source project, particularly infrastructure ones:
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Don't assume that your software can sustain an arbitrarily large fixed overhead because "you just pay that cost once" and you're going to be running a billion instances so it will always amortize; maybe you're only going to be running ten.
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Remember that such fixed overhead includes not just CPU, RAM, and filesystem storage, but also the learning curve for developers. Front-loading a massive amount of conceptual complexity to accommodate the problems of hyper-scalers is a common mistake. Try to smooth out these complexities and introduce them only when necessary.
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Test your code on edge devices. This means supporting Windows and macOS, and even Android and iOS. If you want your tool to help empower individual users, you will need to meet them where they are, which is not on an EC2 instance.
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This includes considering Desktop Linux as a platform, as opposed to Server Linux as a platform, which (while they certainly have plenty in common) they are also distinct in some details. Consider the highly specific example of secret storage: if you are writing something that intends to live in a cloud environment, and you need to configure it with a secret, you will probably want to provide it via a text file or an environment variable. By contrast, if you want this same code to run on a desktop system, your users will expect you to support the Secret Service. This will likely only require a few lines of code to accommodate, but it is a massive difference to the user experience.
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Don't rely on LLMs remaining cheap or free. If you have LLM-related features4, make sure that they are sufficiently severable from the rest of your offering that if ChatGPT starts costing $1000 a month, your tool doesn't break completely. Similarly, do not require that your users have easy access to half a terabyte of VRAM and a rack full of 5090s in order to run a local model.
Even if you were going to scale up to infinity, the ability to scale down and consider smaller deployments means that you can run more comfortably on, for example, a developer's laptop. So even if you can't convince your employer that this is where the economy and the future of technology in our lifetimes is going, it can be easy enough to justify this sort of design shift, particularly as individual choices. Make your onboarding cheaper, your development feedback loops tighter, and your systems generally more resilient to economic headwinds.
So, please design your open source libraries, applications, and services to run on smaller devices, with less complexity. It will be worth your time as well as your users'.
But if you can fix the whole wealth inequality thing, do that first.
Acknowledgments
Thank you to my patrons who are supporting my writing on this blog. If you like what you've read here and you'd like to read more of it, or you'd like to support my various open-source endeavors, you can support my work as a sponsor!
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These sorts of lists are pretty funny reads, in retrospect. ↩
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Which is to say, "distraction". ↩
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... or even their lesser-but-still-profound aftershocks like "Social Media", "Smartphones", or "On-Demand Streaming Video" ... secondary manifestations of the underlying innovation of a packet-switched global digital network ... ↩
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My preference would of course be that you just didn't have such features at all, but perhaps even if you agree with me, you are part of an organization with some mandate to implement LLM stuff. Just try not to wrap the chain of this anchor all the way around your code's neck. ↩
02 Jan 2026 1:59am GMT
11 Nov 2025
Planet Twisted
Glyph Lefkowitz: The “Dependency Cutout” Workflow Pattern, Part I
Tell me if you've heard this one before.
You're working on an application. Let's call it "FooApp". FooApp has a dependency on an open source library, let's call it "LibBar". You find a bug in LibBar that affects FooApp.
To envisage the best possible version of this scenario, let's say you actively like LibBar, both technically and socially. You've contributed to it in the past. But this bug is causing production issues in FooApp today, and LibBar's release schedule is quarterly. FooApp is your job; LibBar is (at best) your hobby. Blocking on the full upstream contribution cycle and waiting for a release is an absolute non-starter.
What do you do?
There are a few common reactions to this type of scenario, all of which are bad options.
I will enumerate them specifically here, because I suspect that some of them may resonate with many readers:
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Find an alternative to LibBar, and switch to it.
This is a bad idea because a transition to a core infrastructure component could be extremely expensive.
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Vendor LibBar into your codebase and fix your vendored version.
This is a bad idea because carrying this one fix now requires you to maintain all the tooling associated with a monorepo1: you have to be able to start pulling in new versions from LibBar regularly, reconcile your changes even though you now have a separate version history on your imported version, and so on.
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Monkey-patch LibBar to include your fix.
This is a bad idea because you are now extremely tightly coupled to a specific version of LibBar. By modifying LibBar internally like this, you're inherently violating its compatibility contract, in a way which is going to be extremely difficult to test. You can test this change, of course, but as LibBar changes, you will need to replicate any relevant portions of its test suite (which may be its entire test suite) in FooApp. Lots of potential duplication of effort there.
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Implement a workaround in your own code, rather than fixing it.
This is a bad idea because you are distorting the responsibility for correct behavior. LibBar is supposed to do LibBar's job, and unless you have a full wrapper for it in your own codebase, other engineers (including "yourself, personally") might later forget to go through the alternate, workaround codepath, and invoke the buggy LibBar behavior again in some new place.
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Implement the fix upstream in LibBar anyway, because that's the Right Thing To Do, and burn credibility with management while you anxiously wait for a release with the bug in production.
This is a bad idea because you are betraying your users - by allowing the buggy behavior to persist - for the workflow convenience of your dependency providers. Your users are probably giving you money, and trusting you with their data. This means you have both ethical and economic obligations to consider their interests.
As much as it's nice to participate in the open source community and take on an appropriate level of burden to maintain the commons, this cannot sustainably be at the explicit expense of the population you serve directly.
Even if we only care about the open source maintainers here, there's still a problem: as you are likely to come under immediate pressure to ship your changes, you will inevitably relay at least a bit of that stress to the maintainers. Even if you try to be exceedingly polite, the maintainers will know that you are coming under fire for not having shipped the fix yet, and are likely to feel an even greater burden of obligation to ship your code fast.
Much as it's good to contribute the fix, it's not great to put this on the maintainers.
The respective incentive structures of software development - specifically, of corporate application development and open source infrastructure development - make options 1-4 very common.
On the corporate / application side, these issues are:
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it's difficult for corporate developers to get clearance to spend even small amounts of their work hours on upstream open source projects, but clearance to spend time on the project they actually work on is implicit. If it takes 3 hours of wrangling with Legal2 and 3 hours of implementation work to fix the issue in LibBar, but 0 hours of wrangling with Legal and 40 hours of implementation work in FooApp, a FooApp developer will often perceive it as "easier" to fix the issue downstream.
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it's difficult for corporate developers to get clearance from management to spend even small amounts of money sponsoring upstream reviewers, so even if they can find the time to contribute the fix, chances are high that it will remain stuck in review unless they are personally well-integrated members of the LibBar development team already.
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even assuming there's zero pressure whatsoever to avoid open sourcing the upstream changes, there's still the fact inherent to any development team that FooApp's developers will be more familiar with FooApp's codebase and development processes than they are with LibBar's. It's just easier to work there, even if all other things are equal.
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systems for tracking risk from open source dependencies often lack visibility into vendoring, particularly if you're doing a hybrid approach and only vendoring a few things to address work in progress, rather than a comprehensive and disciplined approach to a monorepo. If you fully absorb a vendored dependency and then modify it, Dependabot isn't going to tell you that a new version is available any more, because it won't be present in your dependency list. Organizationally this is bad of course but from the perspective of an individual developer this manifests mostly as fewer annoying emails.
But there are problems on the open source side as well. Those problems are all derived from one big issue: because we're often working with relatively small sums of money, it's hard for upstream open source developers to consume either money or patches from application developers. It's nice to say that you should contribute money to your dependencies, and you absolutely should, but the cost-benefit function is discontinuous. Before a project reaches the fiscal threshold where it can be at least one person's full-time job to worry about this stuff, there's often no-one responsible in the first place. Developers will therefore gravitate to the issues that are either fun, or relevant to their own job.
These mutually-reinforcing incentive structures are a big reason that users of open source infrastructure, even teams who work at corporate users with zillions of dollars, don't reliably contribute back.
The Answer We Want
All those options are bad. If we had a good option, what would it look like?
It is both practically necessary3 and morally required4 for you to have a way to temporarily rely on a modified version of an open source dependency, without permanently diverging.
Below, I will describe a desirable abstract workflow for achieving this goal.
Step 0: Report the Problem
Before you get started with any of these other steps, write up a clear description of the problem and report it to the project as an issue; specifically, in contrast to writing it up as a pull request. Describe the problem before submitting a solution.
You may not be able to wait for a volunteer-run open source project to respond to your request, but you should at least tell the project what you're planning on doing.
If you don't hear back from them at all, you will have at least made sure to comprehensively describe your issue and strategy beforehand, which will provide some clarity and focus to your changes.
If you do hear back from them, in the worst case scenario, you may discover that a hard fork will be necessary because they don't consider your issue valid, but even that information will save you time, if you know it before you get started. In the best case, you may get a reply from the project telling you that you've misunderstood its functionality and that there is already a configuration parameter or usage pattern that will resolve your problems with no new code. But in all cases, you will benefit from early coordination on what needs fixing before you get to how to fix it.
Step 1: Source Code and CI Setup
Fork the source code for your upstream dependency to a writable location where it can live at least for the duration of this one bug-fix, and possibly for the duration of your application's use of the dependency. After all, you might want to fix more than one bug in LibBar.
You want to have a place where you can put your edits, that will be version controlled and code reviewed according to your normal development process. This probably means you'll need to have your own main branch that diverges from your upstream's main branch.
Remember: you're going to need to deploy this to your production, so testing gates that your upstream only applies to final releases of LibBar will need to be applied to every commit here.
Depending on your LibBar's own development process, this may result in slightly unusual configurations where, for example, your fixes are written against the last LibBar release tag, rather than its current5 main; if the project has a branch-freshness requirement, you might need two branches, one for your upstream PR (based on main) and one for your own use (based on the release branch with your changes).
Ideally for projects with really good CI and a strong "keep main release-ready at all times" policy, you can deploy straight from a development branch, but it's good to take a moment to consider this before you get started. It's usually easier to rebase changes from an older HEAD onto a newer one than it is to go backwards.
Speaking of CI, you will want to have your own CI system. The fact that GitHub Actions has become a de-facto lingua franca of continuous integration means that this step may be quite simple, and your forked repo can just run its own instance.
Optional Bonus Step 1a: Artifact Management
If you have an in-house artifact repository, you should set that up for your dependency too, and upload your own build artifacts to it. You can often treat your modified dependency as an extension of your own source tree and install from a GitHub URL, but if you've already gone to the trouble of having an in-house package repository, you can pretend you've taken over maintenance of the upstream package temporarily (which you kind of have) and leverage those workflows for caching and build-time savings as you would with any other internal repo.
Step 2: Do The Fix
Now that you've got somewhere to edit LibBar's code, you will want to actually fix the bug.
Step 2a: Local Filesystem Setup
Before you have a production version on your own deployed branch, you'll want to test locally, which means having both repositories in a single integrated development environment.
At this point, you will want to have a local filesystem reference to your LibBar dependency, so that you can make real-time edits, without going through a slow cycle of pushing to a branch in your LibBar fork, pushing to a FooApp branch, and waiting for all of CI to run on both.
This is useful in both directions: as you prepare the FooApp branch that makes any necessary updates on that end, you'll want to make sure that FooApp can exercise the LibBar fix in any integration tests. As you work on the LibBar fix itself, you'll also want to be able to use FooApp to exercise the code and see if you've missed anything - and this, you wouldn't get in CI, since LibBar can't depend on FooApp itself.
In short, you want to be able to treat both projects as an integrated development environment, with support from your usual testing and debugging tools, just as much as you want your deployment output to be an integrated artifact.
Step 2b: Branch Setup for PR
However, for continuous integration to work, you will also need to have a remote resource reference of some kind from FooApp's branch to LibBar. You will need 2 pull requests: the first to land your LibBar changes to your internal LibBar fork and make sure it's passing its own tests, and then a second PR to switch your LibBar dependency from the public repository to your internal fork.
At this step it is very important to ensure that there is an issue filed on your own internal backlog to drop your LibBar fork. You do not want to lose track of this work; it is technical debt that must be addressed.
Until it's addressed, automated tools like Dependabot will not be able to apply security updates to LibBar for you; you're going to need to manually integrate every upstream change. This type of work is itself very easy to drop or lose track of, so you might just end up stuck on a vulnerable version.
Step 3: Deploy Internally
Now that you're confident that the fix will work, and that your temporarily-internally-maintained version of LibBar isn't going to break anything on your site, it's time to deploy.
Some deployment heritage should help to provide some evidence that your fix is ready to land in LibBar, but at the next step, please remember that your production environment isn't necessarily emblematic of that of all LibBar users.
Step 4: Propose Externally
You've got the fix, you've tested the fix, you've got the fix in your own production, you've told upstream you want to send them some changes. Now, it's time to make the pull request.
You're likely going to get some feedback on the PR, even if you think it's already ready to go; as I said, despite having been proven in your production environment, you may get feedback about additional concerns from other users that you'll need to address before LibBar's maintainers can land it.
As you process the feedback, make sure that each new iteration of your branch gets re-deployed to your own production. It would be a huge bummer to go through all this trouble, and then end up unable to deploy the next publicly released version of LibBar within FooApp because you forgot to test that your responses to feedback still worked on your own environment.
Step 4a: Hurry Up And Wait
If you're lucky, upstream will land your changes to LibBar. But, there's still no release version available. Here, you'll have to stay in a holding pattern until upstream can finalize the release on their end.
Depending on some particulars, it might make sense at this point to archive your internal LibBar repository and move your pinned release version to a git hash of the LibBar version where your fix landed, in their repository.
Before you do this, check in with the LibBar core team and make sure that they understand that's what you're doing and they don't have any wacky workflows which may involve rebasing or eliding that commit as part of their release process.
Step 5: Unwind Everything
Finally, you eventually want to stop carrying any patches and move back to an official released version that integrates your fix.
You want to do this because this is what the upstream will expect when you are reporting bugs. Part of the benefit of using open source is benefiting from the collective work to do bug-fixes and such, so you don't want to be stuck off on a pinned git hash that the developers do not support for anyone else.
As I said in step 2b6, make sure to maintain a tracking task for doing this work, because leaving this sort of relatively easy-to-clean-up technical debt lying around is something that can potentially create a lot of aggravation for no particular benefit. Make sure to put your internal LibBar repository into an appropriate state at this point as well.
Up Next
This is part 1 of a 2-part series. In part 2, I will explore in depth how to execute this workflow specifically for Python packages, using some popular tools. I'll discuss my own workflow, standards like PEP 517 and pyproject.toml, and of course, by the popular demand that I just know will come, uv.
Acknowledgments
Thank you to my patrons who are supporting my writing on this blog. If you like what you've read here and you'd like to read more of it, or you'd like to support my various open-source endeavors, you can support my work as a sponsor!
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if you already have all the tooling associated with a monorepo, including the ability to manage divergence and reintegrate patches with upstream, you already have the higher-overhead version of the workflow I am going to propose, so, never mind. but chances are you don't have that, very few companies do. ↩
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In any business where one must wrangle with Legal, 3 hours is a wildly optimistic estimate. ↩
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In an ideal world every project would keep its main branch ready to release at all times, no matter what but we do not live in an ideal world. ↩
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In this case, there is no question. It's 2b only, no not-2b. ↩
11 Nov 2025 1:44am GMT
15 Oct 2025
Planet Plone - Where Developers And Integrators Write
Maurits van Rees: Jakob Kahl and Erico Andrei: Flying from one Plone version to another

This is a talk about migrating from Plone 4 to 6 with the newest toolset.
There are several challenges when doing Plone migrations:
- Highly customized source instances: custom workflow, add-ons, not all of them with versions that worked on Plone 6.
- Complex data structures. For example a Folder with a Link as default page, with pointed to some other content which meanwhile had been moved.
- Migrating Classic UI to Volto
- Also, you might be migrating from a completely different CMS to Plone.
How do we do migrations in Plone in general?
- In place migrations. Run migration steps on the source instance itself. Use the standard upgrade steps from Plone. Suitable for smaller sites with not so much complexity. Especially suitable if you do only a small Plone version update.
- Export - import migrations. You extract data from the source, transform it, and load the structure in the new site. You transform the data outside of the source instance. Suitable for all kinds of migrations. Very safe approach: only once you are sure everything is fine, do you switch over to the newly migrated site. Can be more time consuming.
Let's look at export/import, which has three parts:
- Extraction: you had collective.jsonify, transmogrifier, and now collective.exportimport and plone.exportimport.
- Transformation: transmogrifier, collective.exportimport, and new: collective.transmute.
- Load: Transmogrifier, collective.exportimport, plone.exportimport.
Transmogrifier is old, we won't talk about it now. collective.exportimport: written by Philip Bauer mostly. There is an @@export_all view, and then @@import_all to import it.
collective.transmute is a new tool. This is made to transform data from collective.exportimport to the plone.exportimport format. Potentially it can be used for other migrations as well. Highly customizable and extensible. Tested by pytest. It is standalone software with a nice CLI. No dependency on Plone packages.
Another tool: collective.html2blocks. This is a lightweight Python replacement for the JavaScript Blocks conversion tool. This is extensible and tested.
Lastly plone.exportimport. This is a stripped down version of collective.exportimport. This focuses on extract and load. No transforms. So this is best suited for importing to a Plone site with the same version.
collective.transmute is in alpha, probably a 1.0.0 release in the next weeks. Still missing quite some documentation. Test coverage needs some improvements. You can contribute with PRs, issues, docs.
15 Oct 2025 3:44pm GMT
Maurits van Rees: Mikel Larreategi: How we deploy cookieplone based projects.

We saw that cookieplone was coming up, and Docker, and as game changer uv making the installation of Python packages much faster.
With cookieplone you get a monorepo, with folders for backend, frontend, and devops. devops contains scripts to setup the server and deploy to it. Our sysadmins already had some other scripts. So we needed to integrate that.
First idea: let's fork it. Create our own copy of cookieplone. I explained this in my World Plone Day talk earlier this year. But cookieplone was changing a lot, so it was hard to keep our copy updated.
Maik Derstappen showed me copier, yet another templating language. Our idea: create a cookieplone project, and then use copier to modify it.
What about the deployment? We are on GitLab. We host our runners. We use the docker-in-docker service. We develop on a branch and create a merge request (pull request in GitHub terms). This activates a piple to check-test-and-build. When it is merged, bump the version, use release-it.
Then we create deploy keys and tokens. We give these access to private GitLab repositories. We need some changes to SSH key management in pipelines, according to our sysadmins.
For deployment on the server: we do not yet have automatic deployments. We did not want to go too fast. We are testing the current pipelines and process, see if they work properly. In the future we can think about automating deployment. We just ssh to the server, and perform some commands there with docker.
Future improvements:
- Start the docker containers and curl/wget the
/okendpoint. - lock files for the backend, with pip/uv.
15 Oct 2025 3:41pm GMT
Maurits van Rees: David Glick: State of plone.restapi

[Missed the first part.]
Vision: plone.restapi aims to provide a complete, stable, documented, extensible, language-agnostic API for the Plone CMS.
New services
@site: global site settings. These are overall, public settings that are needed on all pages and that don't change per context.@login: choose between multiple login provider.@navroot: contextual data from the navigation root of the current context.@inherit: contextual data from any behavior. It looks for the closest parent that has this behavior defined, and gets this data.
Dynamic teaser blocks: you can choose to customize the teaser content. So the teaser links to the item you have selected, but if you want, you can change the title and other fields.
Roadmap:
- Don't break it.
- 10.0 release for Plone 6.2: remove setuptools namespace.
- Continue to support migration path from older versions: use an old plone.restapi version on an old Plone version to export it, and being able to import this to the latest versions.
- Recycle bin (work in progress): a lot of the work from Rohan is in Classic UI, but he is working on the restapi as well.
Wishlist, no one is working on this, but would be good to have:
@permissionsendpoint@catalogendpoint- missing control panel
- folder type constraints
- Any time that you find yourself going to the Classic UI to do something, that is a sign something is missing.
- Some changes to relative paths to fix some use cases
- Machine readable specifications for OpenAPI, MCP
- New forms backend
- Bulk operations
- Streaming API
- External functional test suite, that you could also run against e.g. guillotina or Nick to see if it works there as well.
- Time travel: be able to see the state of the database from some time ago. The ZODB has some options here.
15 Oct 2025 3:39pm GMT