Coverage measurement is typically used to gauge the effectiveness of tests. It can show which parts of your code are being exercised by tests, and which are not.
1. 安装
1)下载Windows版
https://pypi.python.org/pypi/coverage
需要在注册表中注册python,通知执行下面的register.py
注意:python 3中把_winreg改为winreg
import sys
from winreg import *
# tweak as necessary
version = sys.version[:3]
installpath = sys.prefix
regpath = "SOFTWARE\\Python\\Pythoncore\\%s\\" % (version)
installkey = "InstallPath"
pythonkey = "PythonPath"
pythonpath = "%s;%s\\Lib\\;%s\\DLLs\\" % (
installpath, installpath, installpath
)
def RegisterPy():
try:
reg = OpenKey(HKEY_CURRENT_USER, regpath)
except EnvironmentError as e:
try:
reg = CreateKey(HKEY_CURRENT_USER, regpath)
SetValue(reg, installkey, REG_SZ, installpath)
SetValue(reg, pythonkey, REG_SZ, pythonpath)
CloseKey(reg)
except:
print ("*** Unable to register!")
return
print ("--- Python", version, "is now registered!")
return
if (QueryValue(reg, installkey) == installpath and
QueryValue(reg, pythonkey) == pythonpath):
CloseKey(reg)
print ("=== Python", version, "is already registered!")
return
CloseKey(reg)
print ("*** Unable to register!")
#print "*** You probably have another Python installation!"
if __name__ == "__main__":
RegisterPy()
2) easy_install coverage
2. 使用
命令行使用说明:
http://coverage.readthedocs.org/en/latest/cmd.html
Coverage.py command line usage¶
When you install coverage.py, a command-line script simply called coverage
is placed in your Python scripts directory. To help with multi-version installs, it will also create either acoverage2
orcoverage3
alias, and acoverage-X.Y
alias, depending on the version of Python you’re using. For example, when installing on Python 2.7, you will be able to usecoverage
,coverage2
, or coverage-2.7
on the command line.
Coverage.py has a number of commands which determine the action performed:
Help is available with the help command, or with the --help
switch on any other command:
$ coverage help
$ coverage help run
$ coverage run --help
Version information for coverage.py can be displayed with coverage --version
.
Any command can use a configuration file by specifying it with the --rcfile=FILE
command-line switch. Any option you can set on the command line can also be set in the configuration file. This can be a better way to control coverage.py since the configuration file can be checked into source control, and can provide options that other invocation techniques (like test runner plugins) may not offer. SeeConfiguration files for more details.
You collect execution data by running your Python program with the run command:
$ coverage run my_program.py arg1 arg2
blah blah ..your program's output.. blah blah
Your program runs just as if it had been invoked with the Python command line. Arguments after your file name are passed to your program as usual insys.argv
. Rather than providing a file name, you can use the-m
switch and specify an importable module name instead, just as you can with the Python-m
switch:
$ coverage run -m packagename.modulename arg1 arg2
blah blah ..your program's output.. blah blah
If you want branch coverage measurement, use the --branch
flag. Otherwise only statement coverage is measured.
You can specify the code to measure with the --source
,--include
, and--omit
switches. SeeSpecifying source files for details of their interpretation. Remember to put options for run after “run”, but before the program invocation:
$ coverage run --source=dir1,dir2 my_program.py arg1 arg2
$ coverage run --source=dir1,dir2 -m packagename.modulename arg1 arg2
Coverage.py can measure multi-threaded programs by default. If you are using more exotic concurrency, with themultiprocessing,greenlet,eventlet, or gevent libraries, then coverage.py will get very confused. Use the --concurrency
switch to properly measure programs using these libraries. Give it a value ofgreenlet
,eventlet
, or gevent
.
By default, coverage.py does not measure code installed with the Python interpreter, for example, the standard library. If you want to measure that code as well as your own, add the-L
(or--pylib
) flag.
If your coverage results seem to be overlooking code that you know has been executed, try running coverage.py again with the--timid
flag. This uses a simpler but slower trace method. Projects that use DecoratorTools, including TurboGears, will need to use--timid
to get correct results.
If you are measuring coverage in a multi-process program, or across a number of machines, you’ll want the--parallel-mode
switch to keep the data separate during measurement. SeeCombining data files below.
During execution, coverage.py may warn you about conditions it detects that could affect the measurement process. The possible warnings include:
“Trace function changed, measurement is likely wrong: XXX”
Coverage measurement depends on a Python setting called the trace function. Other Python code in your product might change that function, which will disrupt coverage.py’s measurement. This warning indicate that has happened. The XXX in the message is the new trace function value, which might provide a clue to the cause.
“Module XXX has no Python source”
You asked coverage.py to measure module XXX, but once it was imported, it turned out not to have a corresponding .py file. Without a .py file, coverage.py can’t report on missing lines.
“Module XXX was never imported”
You asked coverage.py to measure module XXX, but it was never imported by your program.
“No data was collected”
Coverage.py ran your program, but didn’t measure any lines as executed. This could be because you asked to measure only modules that never ran, or for other reasons.
“Module XXX was previously imported, but not measured.”
You asked coverage.py to measure module XXX, but it had already been imported when coverage started. This meant coverage.py couldn’t monitor its execution.
Coverage.py collects execution data in a file called ”.coverage”. If need be, you can set a new file name with the COVERAGE_FILE environment variable. This can include a path to another directory.
By default, each run of your program starts with an empty data set. If you need to run your program multiple times to get complete data (for example, because you need to supply disjoint options), you can accumulate data across runs with the-a
flag on the run command.
To erase the collected data, use the erase command:
$ coverage erase
If you need to collect coverage data from different machines or processes, coverage.py can combine multiple files into one for reporting.
Once you have created a number of these files, you can copy them all to a single directory, and use thecombine command to combine them into one .coverage data file:
$ coverage combine
You can also name directories or files on the command line:
$ coverage combine data1.dat windows_data_files/
Coverage.py will collect the data from those places and combine them. The current directory isn’t searched if you use command-line arguments. If you also want data from the current directory, name it explicitly on the command line.
When coverage.py looks in directories for data files to combine, even the current directory, it only reads files with certain names. It looks for files named the same as the data file (defaulting to ”.coverage”), with a dotted suffix. Here are some examples of data files that can be combined:
.coverage.machine1
.coverage.20120807T212300
.coverage.last_good_run.ok
The run --parallel-mode
switch automatically creates separate data files for each run which can be combined later. The file names include the machine name, the process id, and a random number:
.coverage.Neds-MacBook-Pro.local.88335.316857
.coverage.Geometer.8044.799674
If the different machines run your code from different places in their file systems, coverage.py won’t know how to combine the data. You can tell coverage.py how the different locations correlate with a[paths]
section in your configuration file. See[paths] for details.
If any data files can’t be read, coverage.py will print a warning indicating the file and the problem.
Coverage.py provides a few styles of reporting, with the report,html,annotate, andxml commands. They share a number of common options.
The command-line arguments are module or file names to report on, if you’d like to report on a subset of the data collected.
The --include
and--omit
flags specify lists of file name patterns. They control which files to report on, and are described in more detail inSpecifying source files.
The -i
or --ignore-errors
switch tells coverage.py to ignore problems encountered trying to find source files to report on. This can be useful if some files are missing, or if your Python execution is tricky enough that file names are synthesized without real source files.
If you provide a --fail-under
value, the total percentage covered will be compared to that value. If it is less, the command will exit with a status code of 2, indicating that the total coverage was less than your target. This can be used as part of a pass/fail condition, for example in a continuous integration server. This option isn’t available forannotate.
The simplest reporting is a textual summary produced with report:
$ coverage report
Name Stmts Miss Cover
---------------------------------------------
my_program.py 20 4 80%
my_module.py 15 2 86%
my_other_module.py 56 6 89%
---------------------------------------------
TOTAL 91 12 87%
For each module executed, the report shows the count of executable statements, the number of those statements missed, and the resulting coverage, expressed as a percentage.
The -m
flag also shows the line numbers of missing statements:
$ coverage report -m
Name Stmts Miss Cover Missing
-------------------------------------------------------
my_program.py 20 4 80% 33-35, 39
my_module.py 15 2 86% 8, 12
my_other_module.py 56 6 89% 17-23
-------------------------------------------------------
TOTAL 91 12 87%
If you are using branch coverage, then branch statistics will be reported in the Branch and BrPart (for Partial Branch) columns, the Missing column will detail the missed branches:
$ coverage report -m
Name Stmts Miss Branch BrPart Cover Missing
---------------------------------------------------------------------
my_program.py 20 4 10 2 80% 33-35, 36->38, 39
my_module.py 15 2 3 0 86% 8, 12
my_other_module.py 56 6 5 1 89% 17-23, 40->45
---------------------------------------------------------------------
TOTAL 91 12 18 3 87%
You can restrict the report to only certain files by naming them on the command line:
$ coverage report -m my_program.py my_other_module.py
Name Stmts Miss Cover Missing
-------------------------------------------------------
my_program.py 20 4 80% 33-35, 39
my_other_module.py 56 6 89% 17-23
-------------------------------------------------------
TOTAL 76 10 87%
The --skip-covered
switch will leave out any file with 100% coverage, letting you focus on the files that still need attention.
Other common reporting options are described above in Reporting.
Coverage.py can annotate your source code for which lines were executed and which were not. Thehtml command creates an HTML report similar to thereport summary, but as an HTML file. Each module name links to the source file decorated to show the status of each line.
Here’s a sample report.
Lines are highlighted green for executed, red for missing, and gray for excluded. The counts at the top of the file are buttons to turn on and off the highlighting.
A number of keyboard shortcuts are available for navigating the report. Click the keyboard icon in the upper right to see the complete list.
The title of the report can be set with the title
setting in the[html]
section of the configuration file, or the--title
switch on the command line.
If you prefer a different style for your HTML report, you can provide your own CSS file to apply, by specifying a CSS file in the[html]
section of the configuration file. See[html] for details.
The -d
argument specifies an output directory, defaulting to “htmlcov”:
$ coverage html -d coverage_html
Other common reporting options are described above in Reporting.
Generating the HTML report can be time-consuming. Stored with the HTML report is a data file that is used to speed up reporting the next time. If you generate a new report into the same directory, coverage.py will skip generating unchanged pages, making the process faster.
The annotate command produces a text annotation of your source code. With a-d
argument specifying an output directory, each Python file becomes a text file in that directory. Without-d
, the files are written into the same directories as the original Python files.
Coverage status for each line of source is indicated with a character prefix:
> executed
! missing (not executed)
- excluded
For example:
# A simple function, never called with x==1
> def h(x):
"""Silly function."""
- if 0: #pragma: no cover
- pass
> if x == 1:
! a = 1
> else:
> a = 2
Other common reporting options are described above in Reporting.
The xml command writes coverage data to a “coverage.xml” file in a format compatible withCobertura.
You can specify the name of the output file with the -o
switch.
Other common reporting options are described above in Reporting.
The debug command shows internal information to help diagnose problems. If you are reporting a bug about coverage.py, including the output of this command can often help:
$ coverage debug sys > please_attach_to_bug_report.txt
Two types of information are available: sys
to show system configuration, anddata
to show a summary of the collected coverage data.
The --debug
option is available on all commands. It instructs coverage.py to log internal details of its operation, to help with diagnosing problems. It takes a comma-separated list of options, each indicating a facet of operation to log:
callers
: annotate each debug message with a stack trace of the callers to that point.config
: before starting, dump all theconfiguration values.dataio
: log when reading or writing any data file.dataop
: log when data is added to the CoverageData object.pid
: annotate all debug output with the process id.plugin
: print information about plugin operations.sys
: before starting, dump all the system and environment information, as withcoverage debug sys.trace
: print every decision about whether to trace a file or not. For files not being traced, the reason is also given.Debug options can also be set with the COVERAGE_DEBUG
environment variable, a comma-separated list of these options.
The debug output goes to stderr, unless the COVERAGE_DEBUG_FILE
environment variable names a different file, which will be appended to.