https://htmlpreview.github.io/?https://github.com/python/typ...
If that table is anything to go by, Pyright is not to be underestimated.
I have briefly tried ty (LSP) in Emacs and it seems to work well so far. The only questionable thing I've encountered is that when the signature of a method is shown, the type annotations of some parameters seem to be presented in a particularly verbose form compared to what I'm used to - maybe they're technically correct but it can be bit much to look at.
Anyway, odds are pretty good that ty is what I will end up using long-term, so thanks and congrats on releasing the first beta!
(I was on the Python Typing Council and helped put together the spec, the conformance test suite, etc)
A shared spec for this is important because if you write a Python library, you don’t want to have to write a different set of types for each Python type checker
Here are some things the spec has nothing to say about:
Inference
You don’t want to annotate every expression in your program. Type checkers have a lot of leeway here and this makes a huge difference to what it feels like to use a type checker.
For instance, mypy will complain about the following, but pyright will not (because it infers the types of unannotated collections as having Any):
x = []
x.append(1)
x[0] + "oops"
The spec has nothing to say about this.Diagnostics
The spec has very little to say about what a type checker should do with all the information it has. Should it complain about unreachable code? Should it complain if you did `if foo` instead of `if foo()` because it’s always true? The line between type checker and linter is murky. Decisions here have nothing to do with “what does this annotation mean”, so are mostly out of scope from the spec.
Configuration
This makes a huge difference when adapting huge codebases to different levels of type checking. Also the defaults really matter, which can be tricky when Python type checkers serve so many different audiences.
Other things the spec doesn’t say anything about: error messages quality, editor integration, speed, long tail of UX issues, implementation of new type system features, plugins, type system extensions or special casing
And then of course there are things we would like to spec but haven’t yet!
This is incorrect. pyright will infer the type of x as list[Unknown].
Unknown is a pyright specific term for inferred Any that is used as the basis for enabling additional diagnostics prohibiting gradual typing.
Notably, this is quite different from TypeScript’s unknown, which is type safe.
TypeScript takes the same approach in this scenario, and I assume this helps both be fast.
Edit: Based on this other comment, the point was also about things not covered by the spec. “The spec mostly concerns itself with the semantics of annotations, not diagnostics or inference.” https://news.ycombinator.com/item?id=46296360
That said I'm very happy user of uv, so once Ty becomes ready enough will be happy to migrate.
AI generated anything is a hellscape.
And what do you use instead?
PR is somewhat WIP-ish but I needed some motivation to do OSS work again :)
https://htmlpreview.github.io/?https://github.com/SimonSchic...
Mypy is trash. Nice to have a table to point to to prove it.
I agree though. Hope this is successful and they keep building awesome open-source tools.
It's definitely a narrow path for them to tread. Feels like the best case is something like Hashicorp, great until the founders don't want to do it anymore.
Wow, that's probably my go-to case of things going south, not "best case scenario". They sold to IBM, a famous graveyard for software, and on the way there changed from FOSS licensing to their own proprietary ones for software the community started to rely on.
As a very basic example I ran into last week, Python tooling, even the nice Astral tooling, seems to be almost completely lacking any good detection of what source changes need to trigger what rebuild steps. Unless I’ve missed something, if I make a change to a source tree that uv sync doesn’t notice, I’m stuck with uv pip install -e ., which is a wee bit disappointing and feels a bit gross. I suppose I could try to put something correct into cache-keys, but this is fundamentally wrong. The list of files in my source tree that need to trigger a refresh is something that my build system determines when it builds. Maybe there should be a way to either plumb that into uv’s cache or to tell uv that at least “uv sync” should run the designated command to (incrementally) rebuild my source tree?
(Not that I can blame uv for failing to magically exfiltrate metadata from the black box that is hatchling plus its plugins.)
It's really helpful to have examples for this, like the one you provide below (which I'll respond to!). I've been a maintainer and contributor to the PyPA standard tooling for years, and once uv "clicked" for me I didn't find myself having to leave the imperative layer (of uv add/sync/etc) at all.
> As a very basic example I ran into last week, Python tooling, even the nice Astral tooling, seems to be almost completely lacking any good detection of what source changes need to trigger what rebuild steps.
Could you say more about your setup here? By "rebuild steps" I'm inferring you mean an editable install (versus a sdist/bdist build) -- in general `uv sync` should work in that scenario, including for non-trivial things where e.g. an extension build has to be re-run. In other words, if you do `uv sync` instead of `uv pip install -e .`, that should generally work.
However, to take a step back from that: IMO the nicer way to use uv is to not run `uv sync` that much. Instead, you can generally use `uv run ...` to auto-sync and run your development tooling within an environment than includes your editable installation.
By way of example, here's what I would traditionally do:
python -m venv .env
source .env/bin/activate
python -m pip install -e .[dev] # editable install with the 'dev' extra
pytest ...
# re-run install if there are things a normal editable install can't transparently sync, like extension builds
Whereas with uv: uv run --dev pytest ... # uses pytest from the 'dev' dependency group
That single command does everything pip and venv would normally do to prep an editable environment and run pytest. It also works across re-runs, since it'll run `uv sync` as needed under the hood.For example, uv-build is rather lacking in any sort of features (and its documentation barely exists AFAICT, which is a bit disappointing), but uv works just fine with hatchling, using configuration mechanisms that predate uv.
(I spent some time last week porting a project from an old, entirely unsupportable build system to uv + hatchling, and I came out of it every bit as unimpressed by the general state of Python packaging as ever, but I had no real complaints about uv. It would be nice if there was a build system that could go even slightly off the beaten path without writing custom hooks and mostly inferring how they’re supposed to work, though. I’m pretty sure that even the major LLMs only know how to write a Python package configuration because they’ve trained on random blog posts and some GitHub packages that mostly work — they’re certainly not figuring anything out directly from the documentation, nor could they.)
While we wait... what's everyone's type checking setup? We run both Pyright and Mypy... they catch different errors so we've kept both, but it feels redundant.
https://htmlpreview.github.io/?https://github.com/python/typ... suggests that Pyright is a superset, which hasn't matched our experience.
Though our analysis was ~2 years ago. Anyone with a large Python codebase successfully consolidated to just Pyright?
I suspect pyright has caught up a lot but I turned it off again rather recently.
For what it’s worth I did give up on cursor mostly because basedpyright was very counterproductive for me.
I will say that I’ve seen a lot more vehement trash talking about mypy and gushing about pyright than vice versa for quite a few years. It doesn’t quite add up in my mind.
agreed! mypy's been good to us over the years.
The biggest problem we're looking to solve now is raw speed, type checking is by far the slowest part of our precommit stack which is what got us interested in Ty.
The spec mostly concerns itself with the semantics of annotations, not diagnostics or inference. I don't really recommend using it as the basis for choosing a type checker.
(I was on the Python Typing Council and helped put together the spec, the conformance test suite, etc)
I've been using Pyrefly and loving it compared to Pyright, but they recently shipped some updates with crash bugs that forced me to pin to a previous version, which is annoying. Unfortunately my first impression of ty isn't great either. Trying to install the ty extension on the current version of Cursor says "Can't install 'astral-sh.ty' extension because it is not compatible with the current version of Cursor (version 2.2.20, VSCode version 1.105.1)."
Both are rust/open-source/new/fast so it's difficult to understand why I should choose one over the other.
If I choose "install previous version" I am able to install the pre-release version from 12 hours ago without issue. Then on the extension page I get a button labeled "Switch to Release Version" and when I press it I get an error that says "Can't install release version of 'ty' extension because it has no release version." Filed a GitHub issue with these details.
In the meantime, the previous version appears to be working well! I like that it worked without any configuration. The Pyrefly extension needed a config tweak to work.
In fact as Jetbrains has been spending years chasing various rabbits including AI, instead of substantially improving or fixing PyCharm, without you steadily replacing/repairing big chunks of Pycharms functionality I would be miserable. If it came down to it, we would happily pay a reasonable license fee to use your tools as long as they stayed free for non-commercial usage.
I recently viewed tutorials on uv and ruff from Corey Schafer on youtube which were excellent
Hope to make these tools part of my defaults
Look forward a similar overview by Corey on ty :)
Curious ..is there any backstory to these library names?
Do library authors have to test against every type checker to ensure maximum compatibility? Do application developers need to limit their use of libraries to ones that support their particular choice of type checker?
So only the outer API surface of the library matters. That’s mostly explicitly typed functions and classes so the room for different interpretations is lower (but not gone).
This is obviously out the window for libraries like Pydantic, Django etc with type semantics that aren’t really covered by the spec.
x = []
x.append(1)
x[0] = "new"
x[0] + "oops"
It's optionally typed, but I would credit both "type checks correctly" and "can't assign 'new' over a number" as valid type checker results.Either way, you didn't annotate the code so it's kind of pointless to discuss.
Also fwiw python is typed regardless of the annotations; types are not optional in any sense. Unless you're using BCPL or forth or something like that
There are several literals in that code snippet; I could annotate them with their types, and this code would still be exactly as it is. You asked why there are competing type checkers, and the fact that the language is only optionally typed means ambiguity like that example exists, and should be a warning/bug/allowed; choose the type checker that most closely matches the semantics you want to impose.
Well, no, there is one literal that has an ambiguous type, and if you annotated its type, it would resolve entirely the question of what a typechecker should say; literally the entire reason it is an open question is because that one literal is not annotated.
I think everyone basically agrees that at the package boundary, you want explicit types, but inside application code things are much more murky.
(plus of course, performance, particularly around incremental processing, which Astral is specifically calling out as a design goal here)
Yes, but in practice, the ecosystem mostly tests against mypy. pyright has been making some inroads, mostly because it backs the diagnostics of the default VS Code Python extension.
> Do application developers need to limit their use of libraries to ones that support their particular choice of type checker?
You can provide your own type stubs instead of using the library's built-in types or existing stubs.
Django does a bunch of magic which is challenging for the type checkers to handle well.
> We are planning to add dedicated Django support at some point, but it's not on our short-term roadmap
[1] https://github.com/astral-sh/ruff/pull/21308#issuecomment-35...
It's fast too as promised.
However, it doesn't work well with TypedDicts and that's a show-stopper for us. Hoping to see that support soon.
from anthropic.types import MessageParam
data: list[MessageParam] = [{"role": "user", "content": [{"type": "text", "text": ""}]}]
```
This for example works both in mypy and pyright. (Also autocompletion of typedict keys / literals from pylance is missing)
I reported this as https://github.com/astral-sh/ty/issues/1994
Support for auto-completing TypedDict keys is tracked here: https://github.com/astral-sh/ty/issues/86
Also, it's also too bad we have three competing fast LSP/typechecker projects now We had zero 1 year ago.
``` It's recommended to disable the language server from the Python extension to avoid running two Python language servers by adding the following setting to your settings.json:
{ "python.languageServer": "None" } ```
The point is you drop things such as types to enable rapid iteration which enables you to converge to the unknownable business requirements faster.
If you want slow development with types, why not Java?
It's not a prototyping language or a scripting language or whatever. It's just a language. And types are useful, especially when you can opt out of type checking when you need to. Most of the time you don't want to be reassigning variables to be different types anyway, even though occasionally an escape hatch is nice.
> Akshually, are there any studies showing that cars riding 30 km/h kill less people than cars that ride 80 km/h?
In my case they just add noise when reading code and make it more difficult to review
No, static typing is usually used AOT (most frequently at compile time), not usually at runtime (types may or may not exist at runtime; they don't in Haskell, for instance.)
Python type checking is also AOT, but (unlike where it is inextricably tied to compilation because types are not only checked but used for code generation) it is optional to actually do that step.
Python type annotations exist and are sometimes used at runtime, but not usually at that point for type checking in the usual sense.
> No, static typing is usually used AOT (most frequently at compile time), not usually at runtime (types may or may not exist at runtime; they don't in Haskell, for instance.)
In fact, Haskell then allows you to add back in runtime types using Typeable!
https://hackage.haskell.org/package/base-4.21.0.0/docs/Data-...
Educate yourself before making such claims.
> RUFF 0.14.9
> UV 0.9.18
> TY 0.0.2
> PYX Beta
> GITHUB
> At time of writing, many of the remaining rules require type inference and/or multi-file analysis, and aren't ready to be implemented in Ruff.
ty is actually a big step in this direction as it provides multi-file analysis and type inference.
(I work at Astral)
Seems like the code isn't actually open source which to me is a bit concerning. At the very least, if ya'll want to release it like this please be clear that you're not open source. The MIT license in the repo gives the wrong impression.