Post install script after installing a wheel - python

Using from setuptools.command.install import install, I can easily run a custom post-install script if I run python setup.py install. This is fairly trivial to do.
Currently, the script does nothing but print some text but I want it to deal with system changes that need to happen when a new package is installed -- for example, back up the database that the package is using.
I want to generate the a Python wheel for my package and then copy that and install it on a a set of deployment machines. However, my custom install script is no longer run on the deployment machine.
What am I doing wrong? Is that even possible?

Do not mix package installation and system deployment
Installation of Python packages (using any sort of packaging tools or formats) shall be focused on making that package usable from Python code.
Deployment, what might include database modifications etc. is definitely out of scope and shall be handled by other tools like fab, salt-stack etc.
The fact, that something seems fairly trivial does not mean, one shall do it.
The risk is, you will make your package installation difficult to reuse, as it will be spoiled by others things, which are not related to pure package installation.
The option to hook into installation process and modify environment is by some people even considered flaw in design, causing big mess in Python packaging situation - see Armin Roacher in Python Packaging: Hate, Hate, Hate Everywhere, chapter "PTH: The failed Design that enabled it all"

PEP 427 which specifies the wheel package format does not leave any provisions for custom pre or post installation scripts.
Therefore running a custom script is not possible during wheel package installation.
You'll have to add the custom script to a place in your package where you expect the developer to execute first.

Related

Debian build package: Add python virtualenv into dpkg-buildpackage to be uploaded to launchpad

I would like to pack a python program and ship it in a deb package.
For reasons (I know in 99% it is bad practice) I want to ship the program in a python virtual environment within a debian package.
I know I can do this using dh-virtualenv. This works great - generally no problem.
But the problem arises when I want to upload this to launchpad. Uploading to launchpad means uploading a source package. In terms of dh-virtualenv a source package is the package description, where the virtualenv has not been created, yet.
What happens when I upload this to launchpad is, that the package will not build, since the dh-virtualenv which is executed during the build process on launchpad will try to install python modules into the virtualenv, which means installing these from the PyPI, which will not work, since launchpad does not allow external network access.
So basically there are two possible solutions:
Approach A
Prepare the virtualenv and somehow incorporate it into the source package and having the dh build process simply "move" this prepared virtualenv to its end location. This could work with virtualenv --relocatable. BUT the relocation strips the utf-8 marker at the beginning of all python scripts, rendering all python scripts in the virtualenv broken.
Apporach B
Somehow cache all necessary python packages in the source package and have dh_virtualenv install from the cache instead of from PyPI.
This seems like to be doable with pip2pi, but certain experiements show, that it will not install packages, although they are located in the local package index.
Both approaches seem a bit clumsy and prone to errors.
What do you think of this?
What are your experiences?
What would you recommend?

Python Libraries

I'm in desperate need of a cross platform framework as I have vast numbers of .NET products that I'm trying to port to Linux. I have started to work with Python/pyQt and the standard library and all was going well until I try to import non-standard libraries. I'm hearing about pip and easy_install and I'm completely confused about this.
My products need to ship with everything required to execute them, so in the .NET world I simply package my DLLs (or licensed DLLs) with my product.
As a test bed I'm trying to import this library called requests: https://github.com/kennethreitz/requests
I've got an __init__.py file and the library source in my program directory but it isn't working. Please tell me that there is a simple way to include libraries without needing any kind of extra package installer.
I would suggest you start by familiarizing yourself with python packages (see the distutils docs. Pip is simply a manager that install packages directly from the internet repository, so that you don't need to manually go and download them. So for, example, as stated under "Installing" on the requests homepage, you simply run pip install requests in a terminal, without manually downloading anything.
Packaging your product is a different story, and the way you do it depends on the target system. On windows, the easiest might be to create an installer using NSIS which will install all dependencies. You might also want to use cx-freeze to pull all the dependencies (including the python interpreter) into a single package.
On linux, many of the dependencies will already be including in most distributions. so you should just list them as requirements when creating your package (e.g. deb for ubuntu). Other dependencies might not be included in the distro's repo, but you can still list them as requirements in setup.py.
I can't really comment on Mac, since I've never used python on one, but I think that it would be similar to the linux approach.

How to easily distribute Python software that has Python module dependencies? Frustrations in Python package installation on Unix

My goal is to distribute a Python package that has several other widely used Python packages as dependencies. My package depends on well written, Pypi-indexed packages like pandas, scipy and numpy, and specifies in the setup.py that certain versions or higher of these are needed, e.g. "numpy >= 1.5".
I found that it's immensely frustrating and nearly impossible for Unix savvy users who are not experts in Python packaging (even if they know how to write Python) to install a package like mine, even when using what are supposed to be easy to use package managers. I am wondering if there is an alternative to this painful process that someone can offer, or if my experience just reflects the very difficult current state of Python packaging and distribution.
Suppose users download your package onto their system. Most will try to install it "naively", using something like:
$ python setup.py install
Since if you google instructions on installing Python packages, this is usually what comes up. This will fail for the vast majority of users, since most do not have root access on their Unix/Linux servers. With more searching, they will discover the "--prefix" option and try:
$ python setup.py install --prefix=/some/local/dir
Since the users are not aware of the intricacies of Python packaging, they will pick an arbitrary directory as an argument to --prefix, e.g. "~/software/mypackage/". It will not be a cleanly curated directory where all other Python packages reside, because again, most users are not aware of these details. If they install another package "myotherpackage", they might pass it "~/software/myotherpackage", and you can imagine how down the road this will lead to frustrating hacking of PYTHONPATH and other complications.
Continuing with the installation process, the call to "setup.py install" with "--prefix" will also fail once users try to use the package, even though it appeared to have been installed correctly, since one of the dependencies might be missing (e.g. pandas, scipy or numpy) and a package manager is not used. They will try to install these packages individually. Even if successful, the packages will inevitably not be in the PYTHONPATH due to the non-standard directories given to "--prefix" and patient users will dabble with modifications of their PYTHONPATH to get the dependencies to be visible.
At this stage, users might be told by a Python savvy friend that they should use a package manager like "easy_install", the mainstream manager, to install the software and have dependencies taken care of. After installing "easy_install", which might be difficult, they will try:
$ easy_install setup.py
This too will fail, since users again do not typically have permission to install software globally on production Unix servers. With more reading, they will learn about the "--user" option, and try:
$ easy_install setup.py --user
They will get the error:
usage: easy_install [options] requirement_or_url ...
or: easy_install --help
error: option --user not recognized
They will be extremely puzzled why their easy_install does not have the --user option where there are clearly pages online describing the option. They might try to upgrade their easy_install to the latest version and find that it still fails.
If they continue and consult a Python packaging expert, they will discover that there are two versions of easy_install, both named "easy_install" so as to maximize confusion, but one part of "distribute" and the other part of "setuptools". It happens to be that only the "easy_install" of "distribute" supports "--user" and the vast majority of servers/sys admins install "setuptools"'s easy_install and so local installation will not be possible. Keep in mind that these distinctions between "distribute" and "setuptools" are meaningless and hard to understand for people who are not experts in Python package management.
At this point, I would have lost 90% of even the most determined, savvy and patient users who try to install my software package -- and rightfully so! They wanted to install a piece of software that happened to be written in Python, not to become experts in state of the art Python package distribution, and this is far too confusing and complex. They will give up and be frustrated at the time wasted.
The tiny minority of users who continue on and ask more Python experts will be told that they ought to use pip/virtualenv instead of easy_install. Installing pip and virtualenv and figuring out how these tools work and how they are different from the conventional "python setup.py" or "easy_install" calls is in itself time consuming and difficult, and again too much to ask from users who just wanted to install a simple piece of Python software and use it. Even those who pursue this path will be confused as to whether whatever dependencies they installed with easy_install or setup.py install --prefix are still usable with pip/virtualenv or if everything needs to be reinstalled from scratch.
This problem is exacerbated if one or more of the packages in question depends on installing a different version of Python than the one that is the default. The difficulty of ensuring that your Python package manger is using the Python version you want it to, and that the required dependencies are installed in the relevant Python 2.x directory and not Python 2.y, will be so endlessly frustrating to users that they will certainly give up at that stage.
Is there a simpler way to install Python software that doesn't require users to delve into all of these technical details of Python packages, paths and locations? For example, I am not a big Java user, but I do use some Java tools occasionally, and don't recall ever having to worry about X and Y dependencies of the Java software I was installing, and I have no clue how Java package managing works (and I'm happy that I don't -- I just wanted to use a tool that happened to be written in Java.) My recollection is that if you download a Jar, you just get it and it tends to work.
Is there an equivalent for Python? A way to distribute software in a way that doesn't depend on users having to chase down all these dependencies and versions? A way to perhaps compile all the relevant packages into something self-contained that can just be downloaded and used as a binary?
I would like to emphasize that this frustration happens even with the narrow goal of distributing a package to savvy Unix users, which makes the problem simpler by not worrying about cross platform issues, etc. I assume that the users are Unix savvy, and might even know Python, but just aren't aware (and don't want to be made aware) about the ins and outs of Python packaging and the myriad of internal complications/rivalries of different package managers. A disturbing feature of this issue is that it happens even when all of your Python package dependencies are well-known, well-written and well-maintained Pypi-available packages like Pandas, Scipy and Numpy. It's not like I was relying on some obscure dependencies that are not properly formed packages: rather, I was using the most mainstream packages that many might rely on.
Any help or advice on this will be greatly appreciated. I think Python is a great language with great libraries, but I find it virtually impossible to distribute the software I write in it (once it has dependencies) in a way that is easy for people to install locally and just run. I would like to clarify that the software I'm writing is not a Python library for programmatic use, but software that has executable scripts that users run as individual programs. Thanks.
We also develop software projects that depend on numpy, scipy and other PyPI packages. Hands down, the best tool currently available out there for managing remote installations is zc.buildout. It is very easy to use. You download a bootstrapping script from their website and distribute that with your package. You write a "local deployment" file, called normally buildout.cfg, that explains how to install the package locally. You ship both the bootstrap.py file and buildout.cfg with your package - we use the MANIFEST.in file in our python packages to force the embedding of these two files with the zip or tar balls distributed by PyPI. When the user unpackages it, it should execute two commands:
$ python bootstrap.py # this will download zc.buildout and setuptools
$ ./bin/buildout # this will build and **locally** install your package + deps
The package is compiled and all dependencies are installed locally, which means that the user installing your package doesn't even need root privileges, which is an added feature. The scripts are (normally) placed under ./bin, so the user can just execute them after that. zc.buildout uses setuptools for interaction with PyPI so everything you expect works out of the box.
You can extend zc.buildout quite easily if all that power is not enough - you create the so-called "recipes" that can help the user to create extra configuration files, download other stuff from the net or instantiate custom programs. zc.buildout website contains a video tutorial that explains in details how to use buildout and how to extend it. Our project Bob makes extensive use of buildout for distributing packages for scientific usage. If you would like, please visit the following page that contains detailed instructions for our developers on how they can setup their python packages so other people can build and install them locally using zc.buildout.
We're currently working to make it easier for users to get started installing Python software in a platform independent manner (in particular see https://python-packaging-user-guide.readthedocs.org/en/latest/future.html and http://www.python.org/dev/peps/pep-0453/)
For right now, the problem with two competing versions of easy_install has been resolved, with the competing fork "distribute" being merged backing into the setuptools main line of development.
The best currently available advice on cross-platform distribution and installation of Python software is captured here: https://packaging.python.org/

How do I make an ubuntu/debian package for a twistd/twisted plugin?

As a follow-up to How do I write a setup.py for a twistd/twisted plugin that works with setuptools, distribute, etc?, how does one make a debian package for a twisted plugin?
Assuming the setup.py is properly written, using cdbs/python-central/dh_python2 should just work, but I haven't had much luck so far.
The trick with those tools is that they basically run 'python setup.py install --root=' and then package up whatever ends up in '', so perhaps once the previous question is properly answered, then this question becomes moot?
Anyone here has successfully packaged a twisted plugin for debian?
Apparently the issue is with 'python-support', which is plain broken when it comes to twisted plugins.
This message from Ubuntu's Matthias Klose explains the issue and offers a solution:
packaging of twisted plugins with python-support is broken by design.
Even python policy mentions explicitly that you should use the same
packaging helper for packages sharing the same python namespace.
You should use dh_python2 for that, or (deprecated) build with
dh_pycentral using `include-links'.
-- Matthias Klose
Argh, I've tried to do this and failed. I think it's possible depending on which Debian/Ubuntu releases you want to target, and how much effort you want to put in.
There are two approaches:
Have your package stick the plugin file in twisted/plugins/ in the twisted tree. This is a pain because Twisted is packaged using different methods in different releases (python-support in Lucid vs dh_python2 in Natty IIRC) and (roughly speaking) your package needs to be packaged the same way as Twisted is to make this work.
Have a twisted/plugins/ directory installed alongside your code. Then, IIRC, the problem becomes having the forest of symlinks that gets created include the twisted directory (as it's not a package).

Distributing python code with virtualenv?

I want to distribute some python code, with a few external dependencies, to machines with only core python installed (and users that unfamiliar with easy_install etc.).
I was wondering if perhaps virtualenv can be used for this purpose? I should be able to write some bash scripts that trigger the virtualenv (with the suitable packages) and then run my code.. but this seems somewhat messy, and I'm wondering if I'm re-inventing the wheel?
Are there any simple solutions to distributing python code with dependencies, that ideally doesn't require sudo on client machines?
Buildout - http://pypi.python.org/pypi/zc.buildout
As sample look at my clean project: http://hg.jackleo.info/hyde-0.5.3-buildout-enviroment/src its only 2 files that do the magic, more over Makefile is optional but then you'll need bootstrap.py (Make file downloads it, but it runs only on Linux). buildout.cfg is the main file where you write dependency's and configuration how project is laid down.
To get bootstrap.py just download from http://svn.zope.org/repos/main/zc.buildout/trunk/bootstrap/bootstrap.py
Then run python bootstap.py and bin/buildout. I do not recommend to install buildout locally although it is possible, just use the one bootstrap downloads.
I must admit that buildout is not the easiest solution but its really powerful. So learning is worth time.
UPDATE 2014-05-30
Since It was recently up-voted and used as an answer (probably), I wan to notify of few changes.
First of - buildout is now downloaded from github https://raw.githubusercontent.com/buildout/buildout/master/bootstrap/bootstrap.py
That hyde project would probably fail due to buildout 2 breaking changes.
Here you can find better samples http://www.buildout.org/en/latest/docs/index.html also I want to suggest to look at "collection of links related to Buildout" part, it might contain info for your project.
Secondly I am personally more in favor of setup.py script that can be installed using python. More about the egg structure can be found here http://peak.telecommunity.com/DevCenter/PythonEggs and if that looks too scary - look up google (query for python egg). It's actually more simple in my opinion than buildout (definitely easier to debug) as well as it is probably more useful since it can be distributed more easily and installed anywhere with a help of virtualenv or globally where with buildout you have to provide all of the building scripts with the source all of the time.
You can use a tool like PyInstaller for this purpose. Your application will appear as a single executable on all platforms, and include dependencies. The user doesn't even need Python installed!
See as an example my logview package, which has dependencies on PyQt4 and ZeroMQ and includes distributions for Linux, Mac OSX and Windows all created using PyInstaller.
You don't want to distribute your virtualenv, if that's what you're asking. But you can use pip to create a requirements file - typically called requirements.txt - and tell your users to create a virtualenv then run pip install -r requirements.txt, which will install all the dependencies for them.
See the pip docs for a description of the requirements file format, and the Pinax project for an example of a project that does this very well.

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