问题
This is a slightly.. vain question, but BuildBot's output isn't particularly nice to look at..
For example, compared to..
- phpUnderControl
- Jenkins
- Hudson
- CruiseControl.rb
..and others, BuildBot looks rather.. archaic
I'm currently playing with Hudson, but it is very Java-centric (although with this guide, I found it easier to setup than BuildBot, and produced more info)
Basically: is there any Continuous Integration systems aimed at python, that produce lots of shiny graphs and the likes?
Update: Since this time the Jenkins project has replaced Hudson as the community version of the package. The original authors have moved to this project as well. Jenkins is now a standard package on Ubuntu/Debian, RedHat/Fedora/CentOS, and others. The following update is still essentially correct. The starting point to do this with Jenkins is different.
Update: After trying a few alternatives, I think I'll stick with Hudson. Integrity was nice and simple, but quite limited. I think Buildbot is better suited to having numerous build-slaves, rather than everything running on a single machine like I was using it.
Setting Hudson up for a Python project was pretty simple:
- Download Hudson from http://hudson-ci.org/
- Run it with
java -jar hudson.war
- Open the web interface on the default address of
http://localhost:8080
- Go to Manage Hudson, Plugins, click "Update" or similar
- Install the Git plugin (I had to set the
git
path in the Hudson global preferences) - Create a new project, enter the repository, SCM polling intervals and so on
- Install
nosetests
viaeasy_install
if it's not already - In the a build step, add
nosetests --with-xunit --verbose
- Check "Publish JUnit test result report" and set "Test report XMLs" to
**/nosetests.xml
That's all that's required. You can setup email notifications, and the plugins are worth a look. A few I'm currently using for Python projects:
- SLOCCount plugin to count lines of code (and graph it!) - you need to install sloccount separately
- Violations to parse the PyLint output (you can setup warning thresholds, graph the number of violations over each build)
- Cobertura can parse the coverage.py output. Nosetest can gather coverage while running your tests, using
nosetests --with-coverage
(this writes the output to**/coverage.xml
)
回答1:
You might want to check out Nose and the Xunit output plugin. You can have it run your unit tests, and coverage checks with this command:
nosetests --with-xunit --enable-cover
That'll be helpful if you want to go the Jenkins route, or if you want to use another CI server that has support for JUnit test reporting.
Similarly you can capture the output of pylint using the violations plugin for Jenkins
回答2:
Don't know if it would do : Bitten is made by the guys who write Trac and is integrated with Trac. Apache Gump is the CI tool used by Apache. It is written in Python.
回答3:
We've had great success with TeamCity as our CI server and using nose as our test runner. Teamcity plugin for nosetests gives you count pass/fail, readable display for failed test( that can be E-Mailed). You can even see details of the test failures while you stack is running.
If of course supports things like running on multiple machines, and it's much simpler to setup and maintain than buildbot.
回答4:
Buildbot's waterfall page can be considerably prettified. Here's a nice example http://build.chromium.org/buildbot/waterfall/waterfall
回答5:
Atlassian's Bamboo is also definitely worth checking out. The entire Atlassian suite (JIRA, Confluence, FishEye, etc) is pretty sweet.
回答6:
I guess this thread is quite old but here is my take on it with hudson:
I decided to go with pip and set up a repo (the painful to get working but nice looking eggbasket), which hudson auto uploads to with a successful tests. Here is my rough and ready script for use with a hudson config execute script like: /var/lib/hudson/venv/main/bin/hudson_script.py -w $WORKSPACE -p my.package -v $BUILD_NUMBER, just put in **/coverage.xml, pylint.txt and nosetests.xml in the config bits:
#!/var/lib/hudson/venv/main/bin/python
import os
import re
import subprocess
import logging
import optparse
logging.basicConfig(level=logging.INFO,
format='%(asctime)s %(levelname)s %(message)s')
#venvDir = "/var/lib/hudson/venv/main/bin/"
UPLOAD_REPO = "http://ldndev01:3442"
def call_command(command, cwd, ignore_error_code=False):
try:
logging.info("Running: %s" % command)
status = subprocess.call(command, cwd=cwd, shell=True)
if not ignore_error_code and status != 0:
raise Exception("Last command failed")
return status
except:
logging.exception("Could not run command %s" % command)
raise
def main():
usage = "usage: %prog [options]"
parser = optparse.OptionParser(usage)
parser.add_option("-w", "--workspace", dest="workspace",
help="workspace folder for the job")
parser.add_option("-p", "--package", dest="package",
help="the package name i.e., back_office.reconciler")
parser.add_option("-v", "--build_number", dest="build_number",
help="the build number, which will get put at the end of the package version")
options, args = parser.parse_args()
if not options.workspace or not options.package:
raise Exception("Need both args, do --help for info")
venvDir = options.package + "_venv/"
#find out if venv is there
if not os.path.exists(venvDir):
#make it
call_command("virtualenv %s --no-site-packages" % venvDir,
options.workspace)
#install the venv/make sure its there plus install the local package
call_command("%sbin/pip install -e ./ --extra-index %s" % (venvDir, UPLOAD_REPO),
options.workspace)
#make sure pylint, nose and coverage are installed
call_command("%sbin/pip install nose pylint coverage epydoc" % venvDir,
options.workspace)
#make sure we have an __init__.py
#this shouldn't be needed if the packages are set up correctly
#modules = options.package.split(".")
#if len(modules) > 1:
# call_command("touch '%s/__init__.py'" % modules[0],
# options.workspace)
#do the nosetests
test_status = call_command("%sbin/nosetests %s --with-xunit --with-coverage --cover-package %s --cover-erase" % (venvDir,
options.package.replace(".", "/"),
options.package),
options.workspace, True)
#produce coverage report -i for ignore weird missing file errors
call_command("%sbin/coverage xml -i" % venvDir,
options.workspace)
#move it so that the code coverage plugin can find it
call_command("mv coverage.xml %s" % (options.package.replace(".", "/")),
options.workspace)
#run pylint
call_command("%sbin/pylint --rcfile ~/pylint.rc -f parseable %s > pylint.txt" % (venvDir,
options.package),
options.workspace, True)
#remove old dists so we only have the newest at the end
call_command("rm -rfv %s" % (options.workspace + "/dist"),
options.workspace)
#if the build passes upload the result to the egg_basket
if test_status == 0:
logging.info("Success - uploading egg")
upload_bit = "upload -r %s/upload" % UPLOAD_REPO
else:
logging.info("Failure - not uploading egg")
upload_bit = ""
#create egg
call_command("%sbin/python setup.py egg_info --tag-build=.0.%s --tag-svn-revision --tag-date sdist %s" % (venvDir,
options.build_number,
upload_bit),
options.workspace)
call_command("%sbin/epydoc --html --graph all %s" % (venvDir, options.package),
options.workspace)
logging.info("Complete")
if __name__ == "__main__":
main()
When it comes to deploying stuff you can do something like:
pip -E /location/of/my/venv/ install my_package==X.Y.Z --extra-index http://my_repo
And then people can develop stuff using:
pip -E /location/of/my/venv/ install -e ./ --extra-index http://my_repo
This stuff assumes you have a repo structure per package with a setup.py and dependencies all set up then you can just check out the trunk and run this stuff on it.
I hope this helps someone out.
------update---------
I've added epydoc which fits in really nicely with hudson. Just add javadoc to your config with the html folder
Note that pip doesn't support the -E flag properly these days, so you have to create your venv separately
回答7:
another one : Shining Panda is a hosted tool for python
回答8:
If you're considering hosted CI solution, and doing open source, you should look into Travis CI as well - it has very nice integration with GitHub. While it started as a Ruby tool, they have added Python support a while ago.
回答9:
Signal is another option. You can know more about it and watch a video also here.
回答10:
I would consider CircleCi - it has great Python support, and very pretty output.
回答11:
continuum's binstar now is able to trigger builds from github and can compile for linux, osx and windows ( 32 / 64 ). the neat thing is that it really allows you to closely couple distribution and continuous integration. That's crossing the t's and dotting the I's of Integration. The site, workflow and tools are really polished and AFAIK conda is the most robust and pythonic way to distributing complex python modules, where you need to wrap and distribute C/C++/Fotran libraries.
回答12:
We have used bitten quite a bit. It is pretty and integrates well with Trac, but it is a pain in the butt to customize if you have any nonstandard workflow. Also there just aren't as many plugins as there are for the more popular tools. Currently we are evaluating Hudson as a replacement.
回答13:
Check rultor.com. As this article explains, it uses Docker for every build. Thanks to that, you can configure whatever you like inside your Docker image, including Python.
回答14:
Little disclaimer, I've actually had to build a solution like this for a client that wanted a way to automatically test and deploy any code on a git push plus manage the issue tickets via git notes. This also lead to my work on the AIMS project.
One could easily just setup a bare node system that has a build user and manage their build through make(1)
, expect(1)
, crontab(1)
/systemd.unit(5)
, and incrontab(1)
. One could even go a step further and use ansible and celery for distributed builds with a gridfs/nfs file store.
Although, I would not expect anyone other than a Graybeard UNIX guy or Principle level engineer/architect to actually go this far. Just makes for a nice idea and potential learning experience since a build server is nothing more than a way to arbitrarily execute scripted tasks in an automated fashion.
来源:https://stackoverflow.com/questions/225598/pretty-continuous-integration-for-python