rules_python VS mypy

Compare rules_python vs mypy and see what are their differences.

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rules_python mypy
7 112
494 17,541
1.8% 1.4%
9.5 9.7
6 days ago about 10 hours ago
Starlark Python
Apache License 2.0 GNU General Public License v3.0 or later
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.

rules_python

Posts with mentions or reviews of rules_python. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2023-10-24.
  • Things I've learned about building CLI tools in Python
    16 projects | news.ycombinator.com | 24 Oct 2023
    What's SV?

    I honestly don't know why anyone would use that... as in what does Bazel do better than virtually anything else that can provide this functionality. But, I used to be an ops engineer in a big company which wanted everything to be Maven, regardless of whether it does it well or not. So we built and deployed with Maven a lot of weird and unrelated stuff.

    Not impossible, but not anything I'd advise anyone to do on their free time.

    Specifically wrt' the link you posted, if you look here: https://github.com/bazelbuild/rules_python/blob/main/python/... it says that only pure Python wheels are supported, but that's also a lie, they don't support half of the functionality of pure Python wheels.

    So, definitely not worth using, since lots of functionality is simply not there.

  • Python coverage in Bazel has been broken for nearly 6 years
    1 project | news.ycombinator.com | 19 Aug 2023
  • Build faster with Buck2: Our open source build system
    14 projects | news.ycombinator.com | 6 Apr 2023
    Regarding bazel, the rules_python has a py_wheel rule that helps you creating wheels that you can upload to pypi (https://github.com/bazelbuild/rules_python/blob/52e14b78307a...).

    If you want to see an approach of bazel to pypi taken a bit to the extreme you can have a look at tensorflow on GitHub to see how they do it. They don't use the above-mentioned building rule because I think their build step is quite complicated (C/C++ stuff, Vida/ROCm support, python bindings, and multiOS support all in one before you can publish to pypi).

  • Incremental Builds for Haskell with Bazel
    7 projects | news.ycombinator.com | 23 Jun 2022
    Python support in Bazel now looks more promising with `rules_python`: https://github.com/bazelbuild/rules_python

    `rules_go` to my understanding is great too.

    Over years, Bazel is not as opinionated as before, mostly because adoptions in different orgs force it to be so.

  • Advantages of Monorepos
    6 projects | news.ycombinator.com | 7 Apr 2022
    I have personally run converted build systems to Bazel, and use it for personal projects as well.

    Bazel 1.0 was released in October 2019. If you were using it "a few years ago", I'm guessing you were using a pre-1.0 version. There's not some cutoff where Bazel magically got easy to use, and I still wouldn't describe it as "easy", but the problem it solves is hard to solve well, and the community support for Bazel has gotten a lot better over the past years.

    https://github.com/bazelbuild/rules_python

    The difficulty and complexity of using Bazel is highly variable. I've seen some projects where using Bazel is just super simple and easy, and some projects where using Bazel required a massive effort (custom toolchains and the like).

  • Experimentations on Bazel: Python & FastAPI (1)
    5 projects | dev.to | 18 Apr 2021
    load("@bazel_tools//tools/build_defs/repo:http.bzl", "http_archive") #------------------------------------------------------------------------------ # Python #------------------------------------------------------------------------------ # enable python rules http_archive( name = "rules_python", url = "https://github.com/bazelbuild/rules_python/releases/download/0.2.0/rules_python-0.2.0.tar.gz", sha256 = "778197e26c5fbeb07ac2a2c5ae405b30f6cb7ad1f5510ea6fdac03bded96cc6f", )

mypy

Posts with mentions or reviews of mypy. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2024-03-11.
  • The GIL can now be disabled in Python's main branch
    8 projects | news.ycombinator.com | 11 Mar 2024
  • Polars – A bird's eye view of Polars
    4 projects | news.ycombinator.com | 13 Feb 2024
    It's got type annotations and mypy has a discussion about it here as well: https://github.com/python/mypy/issues/1282
  • Static Typing for Python
    1 project | news.ycombinator.com | 27 Jan 2024
  • Python 3.13 Gets a JIT
    11 projects | news.ycombinator.com | 9 Jan 2024
    There is already an AOT compiler for Python: Nuitka[0]. But I don't think it's much faster.

    And then there is mypyc[1] which uses mypy's static type annotations but is only slightly faster.

    And various other compilers like Numba and Cython that work with specialized dialects of Python to achieve better results, but then it's not quite Python anymore.

    [0] https://nuitka.net/

    [1] https://github.com/python/mypy/tree/master/mypyc

  • Introducing Flask-Muck: How To Build a Comprehensive Flask REST API in 5 Minutes
    3 projects | dev.to | 20 Dec 2023
  • WeveAllBeenThere
    1 project | /r/ProgrammerHumor | 7 Dec 2023
    In Python there is MyPy that can help with this. https://www.mypy-lang.org/
  • It's Time for a Change: Datetime.utcnow() Is Now Deprecated
    5 projects | news.ycombinator.com | 19 Nov 2023
    It's funny you should say this.

    Reading this article prompted me to future-proof a program I maintain for fun that deals with time; it had one use of utcnow, which I fixed.

    And then I tripped over a runtime type problem in an unrelated area of the code, despite the code being green under "mypy --strict". (and "100% coverage" from tests, except this particular exception only occured in a "# pragma: no-cover" codepath so it wasn't actually covered)

    It turns out that because of some core decisions about how datetime objects work, `datetime.date.today() < datetime.datetime.now()` type-checks but gives a TypeError at runtime. Oops. (cause discussed at length in https://github.com/python/mypy/issues/9015 but without action for 3 years)

    One solution is apparently to use `datetype` for type annotations (while continuing to use `datetime` objects at runtime): https://github.com/glyph/DateType

  • What's New in Python 3.12
    5 projects | news.ycombinator.com | 18 Oct 2023
    PEP 695 is great. I've been using mypy every day at work in last couple years or so with very strict parameters (no any type etc) and I have experience writing real life programs with Rust, Agda, and some Haskell before, so I'm familiar with strict type systems. I'm sure many will disagree with me but these are my very honest opinions as a professional who uses Python types every day:

    * Some types are better than no types. I love Python types, and I consider them required. Even if they're not type-checked they're better than no types. If they're type-checked it's even better. If things are typed properly (no any etc) and type-checked that's even better. And so on...

    * Having said this, Python's type system as checked by mypy feels like a toy type system. It's very easy to fool it, and you need to be careful so that type-checking actually fails badly formed programs.

    * The biggest issue I face are exceptions. Community discussed this many times [1] [2] and the overall consensus is to not check exceptions. I personally disagree as if you have a Python program that's meticulously typed and type-checked exceptions still cause bad states and since Python code uses exceptions liberally, it's pretty easy to accidentally go to a bad state. E.g. in the linked github issue JukkaL (developer) claims checking things like "KeyError" will create too many false positives, I strongly disagree. If a function can realistically raise a "KeyError" the program should be properly written to accept this at some level otherwise something that returns type T but 0.01% of the time raises "KeyError" should actually be typed "Raises[T, KeyError]".

    * PEP 695 will help because typing things particularly is very helpful. Often you want to pass bunch of Ts around but since this is impractical some devs resort to passing "dict[str, Any]"s around and thus things type-check but you still get "KeyError" left and right. It's better to have "SomeStructure[T]" types with "T" as your custom data type (whether dataclass, or pydantic, or traditional class) so that type system has more opportunities to reject bad programs.

    * Overall, I'm personally very optimistic about the future of types in Python!

    [1] https://github.com/python/mypy/issues/1773

  • Mypy 1.6 Released
    5 projects | news.ycombinator.com | 17 Oct 2023
    # is fixed: https://github.com/python/mypy/issues/12987.
  • Ask HN: Why are all of the best back end web frameworks dynamically typed?
    4 projects | news.ycombinator.com | 5 Oct 2023
    You probably already know but you can add type hints and then check for consistency with https://github.com/python/mypy in python.

    Modern Python with things like https://learnpython.com/blog/python-match-case-statement/ + mypy + Ruff for linting https://github.com/astral-sh/ruff can get pretty good results.

    I found typed dataclasses (https://docs.python.org/3/library/dataclasses.html) in python using mypy to give me really high confidence when building data representations.

What are some alternatives?

When comparing rules_python and mypy you can also consider the following projects:

uwsgi-nginx-flask-docker - Docker image with uWSGI and Nginx for Flask applications in Python running in a single container.

pyright - Static Type Checker for Python

pip-upgrade - Upgrade your pip packages with one line. A fast, reliable and easy tool for upgrading all of your packages while not breaking any dependencies

ruff - An extremely fast Python linter and code formatter, written in Rust.

black - The uncompromising Python code formatter

pyre-check - Performant type-checking for python.

python-streams - A Library to support Writing concise functional code in python

bazel-coverage-report-renderer - Haskell rules for Bazel.

pytype - A static type analyzer for Python code

TypeRig - Proxy API and Font Development Toolkit for FontLab

pydantic - Data validation using Python type hints