NumPy Distutils - Users Guide#
Warning
numpy.distutils
is deprecated, and will be removed for
Python >= 3.12. For more details, see Status of numpy.distutils and migration advice
SciPy structure#
Currently SciPy project consists of two packages:
NumPy — it provides packages like:
numpy.distutils - extension to Python distutils
numpy.f2py - a tool to bind Fortran/C codes to Python
numpy.core - future replacement of Numeric and numarray packages
numpy.lib - extra utility functions
numpy.testing - numpy-style tools for unit testing
etc
SciPy — a collection of scientific tools for Python.
The aim of this document is to describe how to add new tools to SciPy.
Requirements for SciPy packages#
SciPy consists of Python packages, called SciPy packages, that are
available to Python users via the scipy
namespace. Each SciPy package
may contain other SciPy packages. And so on. Therefore, the SciPy
directory tree is a tree of packages with arbitrary depth and width.
Any SciPy package may depend on NumPy packages but the dependence on other
SciPy packages should be kept minimal or zero.
A SciPy package contains, in addition to its sources, the following files and directories:
setup.py
— building script
__init__.py
— package initializer
tests/
— directory of unittests
Their contents are described below.
The setup.py
file#
In order to add a Python package to SciPy, its build script (setup.py
)
must meet certain requirements. The most important requirement is that the
package define a configuration(parent_package='',top_path=None)
function
which returns a dictionary suitable for passing to
numpy.distutils.core.setup(..)
. To simplify the construction of
this dictionary, numpy.distutils.misc_util
provides the
Configuration
class, described below.
SciPy pure Python package example#
Below is an example of a minimal setup.py
file for a pure SciPy package:
#!/usr/bin/env python3
def configuration(parent_package='',top_path=None):
from numpy.distutils.misc_util import Configuration
config = Configuration('mypackage',parent_package,top_path)
return config
if __name__ == "__main__":
from numpy.distutils.core import setup
#setup(**configuration(top_path='').todict())
setup(configuration=configuration)
The arguments of the configuration
function specify the name of
parent SciPy package (parent_package
) and the directory location
of the main setup.py
script (top_path
). These arguments,
along with the name of the current package, should be passed to the
Configuration
constructor.
The Configuration
constructor has a fourth optional argument,
package_path
, that can be used when package files are located in
a different location than the directory of the setup.py
file.
Remaining Configuration
arguments are all keyword arguments that will
be used to initialize attributes of Configuration
instance. Usually, these keywords are the same as the ones that
setup(..)
function would expect, for example, packages
,
ext_modules
, data_files
, include_dirs
, libraries
,
headers
, scripts
, package_dir
, etc. However, the direct
specification of these keywords is not recommended as the content of
these keyword arguments will not be processed or checked for the
consistency of SciPy building system.
Finally, Configuration
has .todict()
method that returns all
the configuration data as a dictionary suitable for passing on to the
setup(..)
function.
Configuration
instance attributes#
In addition to attributes that can be specified via keyword arguments
to Configuration
constructor, Configuration
instance (let us
denote as config
) has the following attributes that can be useful
in writing setup scripts:
config.name
- full name of the current package. The names of parent packages can be extracted asconfig.name.split('.')
.config.local_path
- path to the location of currentsetup.py
file.config.top_path
- path to the location of mainsetup.py
file.
Configuration
instance methods#
config.todict()
— returns configuration dictionary suitable for passing tonumpy.distutils.core.setup(..)
function.config.paths(*paths) --- applies ``glob.glob(..)
to items ofpaths
if necessary. Fixespaths
item that is relative toconfig.local_path
.config.get_subpackage(subpackage_name,subpackage_path=None)
— returns a list of subpackage configurations. Subpackage is looked in the current directory under the namesubpackage_name
but the path can be specified also via optionalsubpackage_path
argument. Ifsubpackage_name
is specified asNone
then the subpackage name will be taken the basename ofsubpackage_path
. Any*
used for subpackage names are expanded as wildcards.config.add_subpackage(subpackage_name,subpackage_path=None)
— add SciPy subpackage configuration to the current one. The meaning and usage of arguments is explained above, seeconfig.get_subpackage()
method.config.add_data_files(*files)
— prependfiles
todata_files
list. Iffiles
item is a tuple then its first element defines the suffix of where data files are copied relative to package installation directory and the second element specifies the path to data files. By default data files are copied under package installation directory. For example,config.add_data_files('foo.dat', ('fun',['gun.dat','nun/pun.dat','/tmp/sun.dat']), 'bar/car.dat'. '/full/path/to/can.dat', )
will install data files to the following locations
<installation path of config.name package>/ foo.dat fun/ gun.dat pun.dat sun.dat bar/ car.dat can.dat
Path to data files can be a function taking no arguments and returning path(s) to data files – this is a useful when data files are generated while building the package. (XXX: explain the step when this function are called exactly)
config.add_data_dir(data_path)
— add directorydata_path
recursively todata_files
. The whole directory tree starting atdata_path
will be copied under package installation directory. Ifdata_path
is a tuple then its first element defines the suffix of where data files are copied relative to package installation directory and the second element specifies the path to data directory. By default, data directory are copied under package installation directory under the basename ofdata_path
. For example,config.add_data_dir('fun') # fun/ contains foo.dat bar/car.dat config.add_data_dir(('sun','fun')) config.add_data_dir(('gun','/full/path/to/fun'))
will install data files to the following locations
<installation path of config.name package>/ fun/ foo.dat bar/ car.dat sun/ foo.dat bar/ car.dat gun/ foo.dat bar/ car.dat
config.add_include_dirs(*paths)
— prependpaths
toinclude_dirs
list. This list will be visible to all extension modules of the current package.config.add_headers(*files)
— prependfiles
toheaders
list. By default, headers will be installed under<prefix>/include/pythonX.X/<config.name.replace('.','/')>/
directory. Iffiles
item is a tuple then it’s first argument specifies the installation suffix relative to<prefix>/include/pythonX.X/
path. This is a Python distutils method; its use is discouraged for NumPy and SciPy in favour ofconfig.add_data_files(*files)
.config.add_scripts(*files)
— prependfiles
toscripts
list. Scripts will be installed under<prefix>/bin/
directory.config.add_extension(name,sources,**kw)
— create and add anExtension
instance toext_modules
list. The first argumentname
defines the name of the extension module that will be installed underconfig.name
package. The second argument is a list of sources.add_extension
method takes also keyword arguments that are passed on to theExtension
constructor. The list of allowed keywords is the following:include_dirs
,define_macros
,undef_macros
,library_dirs
,libraries
,runtime_library_dirs
,extra_objects
,extra_compile_args
,extra_link_args
,export_symbols
,swig_opts
,depends
,language
,f2py_options
,module_dirs
,extra_info
,extra_f77_compile_args
,extra_f90_compile_args
.Note that
config.paths
method is applied to all lists that may contain paths.extra_info
is a dictionary or a list of dictionaries that content will be appended to keyword arguments. The listdepends
contains paths to files or directories that the sources of the extension module depend on. If any path in thedepends
list is newer than the extension module, then the module will be rebuilt.The list of sources may contain functions (‘source generators’) with a pattern
def <funcname>(ext, build_dir): return <source(s) or None>
. Iffuncname
returnsNone
, no sources are generated. And if theExtension
instance has no sources after processing all source generators, no extension module will be built. This is the recommended way to conditionally define extension modules. Source generator functions are called by thebuild_src
sub-command ofnumpy.distutils
.For example, here is a typical source generator function:
def generate_source(ext,build_dir): import os from distutils.dep_util import newer target = os.path.join(build_dir,'somesource.c') if newer(target,__file__): # create target file return target
The first argument contains the Extension instance that can be useful to access its attributes like
depends
,sources
, etc. lists and modify them during the building process. The second argument gives a path to a build directory that must be used when creating files to a disk.config.add_library(name, sources, **build_info)
— add a library tolibraries
list. Allowed keywords arguments aredepends
,macros
,include_dirs
,extra_compiler_args
,f2py_options
,extra_f77_compile_args
,extra_f90_compile_args
. See.add_extension()
method for more information on arguments.config.have_f77c()
— return True if Fortran 77 compiler is available (read: a simple Fortran 77 code compiled successfully).config.have_f90c()
— return True if Fortran 90 compiler is available (read: a simple Fortran 90 code compiled successfully).config.get_version()
— return version string of the current package,None
if version information could not be detected. This methods scans files__version__.py
,<packagename>_version.py
,version.py
,__svn_version__.py
for string variablesversion
,__version__
,<packagename>_version
.config.make_svn_version_py()
— appends a data function todata_files
list that will generate__svn_version__.py
file to the current package directory. The file will be removed from the source directory when Python exits.config.get_build_temp_dir()
— return a path to a temporary directory. This is the place where one should build temporary files.config.get_distribution()
— return distutilsDistribution
instance.config.get_config_cmd()
— returnsnumpy.distutils
config command instance.config.get_info(*names)
—
Conversion of .src
files using Templates#
NumPy distutils supports automatic conversion of source files named <somefile>.src. This facility can be used to maintain very similar code blocks requiring only simple changes between blocks. During the build phase of setup, if a template file named <somefile>.src is encountered, a new file named <somefile> is constructed from the template and placed in the build directory to be used instead. Two forms of template conversion are supported. The first form occurs for files named <file>.ext.src where ext is a recognized Fortran extension (f, f90, f95, f77, for, ftn, pyf). The second form is used for all other cases.
Fortran files#
This template converter will replicate all function and subroutine blocks in the file with names that contain ‘<…>’ according to the rules in ‘<…>’. The number of comma-separated words in ‘<…>’ determines the number of times the block is repeated. What these words are indicates what that repeat rule, ‘<…>’, should be replaced with in each block. All of the repeat rules in a block must contain the same number of comma-separated words indicating the number of times that block should be repeated. If the word in the repeat rule needs a comma, leftarrow, or rightarrow, then prepend it with a backslash ‘ '. If a word in the repeat rule matches ‘ \<index>’ then it will be replaced with the <index>-th word in the same repeat specification. There are two forms for the repeat rule: named and short.
Named repeat rule#
A named repeat rule is useful when the same set of repeats must be used several times in a block. It is specified using <rule1=item1, item2, item3,…, itemN>, where N is the number of times the block should be repeated. On each repeat of the block, the entire expression, ‘<…>’ will be replaced first with item1, and then with item2, and so forth until N repeats are accomplished. Once a named repeat specification has been introduced, the same repeat rule may be used in the current block by referring only to the name (i.e. <rule1>).
Short repeat rule#
A short repeat rule looks like <item1, item2, item3, …, itemN>. The rule specifies that the entire expression, ‘<…>’ should be replaced first with item1, and then with item2, and so forth until N repeats are accomplished.
Pre-defined names#
The following predefined named repeat rules are available:
<prefix=s,d,c,z>
<_c=s,d,c,z>
<_t=real, double precision, complex, double complex>
<ftype=real, double precision, complex, double complex>
<ctype=float, double, complex_float, complex_double>
<ftypereal=float, double precision, \0, \1>
<ctypereal=float, double, \0, \1>
Other files#
Non-Fortran files use a separate syntax for defining template blocks that should be repeated using a variable expansion similar to the named repeat rules of the Fortran-specific repeats.
NumPy Distutils preprocesses C source files (extension: .c.src
) written
in a custom templating language to generate C code. The @
symbol is
used to wrap macro-style variables to empower a string substitution mechanism
that might describe (for instance) a set of data types.
The template language blocks are delimited by /**begin repeat
and /**end repeat**/
lines, which may also be nested using
consecutively numbered delimiting lines such as /**begin repeat1
and /**end repeat1**/
:
/**begin repeat
on a line by itself marks the beginning of a segment that should be repeated.Named variable expansions are defined using
#name=item1, item2, item3, ..., itemN#
and placed on successive lines. These variables are replaced in each repeat block with corresponding word. All named variables in the same repeat block must define the same number of words.In specifying the repeat rule for a named variable,
item*N
is short- hand foritem, item, ..., item
repeated N times. In addition, parenthesis in combination with*N
can be used for grouping several items that should be repeated. Thus,#name=(item1, item2)*4#
is equivalent to#name=item1, item2, item1, item2, item1, item2, item1, item2#
.*/
on a line by itself marks the end of the variable expansion naming. The next line is the first line that will be repeated using the named rules.Inside the block to be repeated, the variables that should be expanded are specified as
@name@
./**end repeat**/
on a line by itself marks the previous line as the last line of the block to be repeated.A loop in the NumPy C source code may have a
@TYPE@
variable, targeted for string substitution, which is preprocessed to a number of otherwise identical loops with several strings such asINT
,LONG
,UINT
,ULONG
. The@TYPE@
style syntax thus reduces code duplication and maintenance burden by mimicking languages that have generic type support.
The above rules may be clearer in the following template source example:
1 /* TIMEDELTA to non-float types */
2
3 /**begin repeat
4 *
5 * #TOTYPE = BYTE, UBYTE, SHORT, USHORT, INT, UINT, LONG, ULONG,
6 * LONGLONG, ULONGLONG, DATETIME,
7 * TIMEDELTA#
8 * #totype = npy_byte, npy_ubyte, npy_short, npy_ushort, npy_int, npy_uint,
9 * npy_long, npy_ulong, npy_longlong, npy_ulonglong,
10 * npy_datetime, npy_timedelta#
11 */
12
13 /**begin repeat1
14 *
15 * #FROMTYPE = TIMEDELTA#
16 * #fromtype = npy_timedelta#
17 */
18 static void
19 @FROMTYPE@_to_@TOTYPE@(void *input, void *output, npy_intp n,
20 void *NPY_UNUSED(aip), void *NPY_UNUSED(aop))
21 {
22 const @fromtype@ *ip = input;
23 @totype@ *op = output;
24
25 while (n--) {
26 *op++ = (@totype@)*ip++;
27 }
28 }
29 /**end repeat1**/
30
31 /**end repeat**/
The preprocessing of generically-typed C source files (whether in NumPy
proper or in any third party package using NumPy Distutils) is performed
by conv_template.py.
The type-specific C files generated (extension: .c
)
by these modules during the build process are ready to be compiled. This
form of generic typing is also supported for C header files (preprocessed
to produce .h
files).
Useful functions in numpy.distutils.misc_util
#
get_numpy_include_dirs()
— return a list of NumPy base include directories. NumPy base include directories contain header files such asnumpy/arrayobject.h
,numpy/funcobject.h
etc. For installed NumPy the returned list has length 1 but when building NumPy the list may contain more directories, for example, a path toconfig.h
file thatnumpy/base/setup.py
file generates and is used bynumpy
header files.append_path(prefix,path)
— smart appendpath
toprefix
.gpaths(paths, local_path='')
— apply glob to paths and prependlocal_path
if needed.njoin(*path)
— join pathname components + convert/
-separated path toos.sep
-separated path and resolve..
,.
from paths. Ex.njoin('a',['b','./c'],'..','g') -> os.path.join('a','b','g')
.minrelpath(path)
— resolves dots inpath
.rel_path(path, parent_path)
— returnpath
relative toparent_path
.def get_cmd(cmdname,_cache={})
— returnsnumpy.distutils
command instance.all_strings(lst)
has_f_sources(sources)
has_cxx_sources(sources)
filter_sources(sources)
— returnc_sources, cxx_sources, f_sources, fmodule_sources
get_dependencies(sources)
is_local_src_dir(directory)
get_ext_source_files(ext)
get_script_files(scripts)
get_lib_source_files(lib)
get_data_files(data)
dot_join(*args)
— join non-zero arguments with a dot.get_frame(level=0)
— return frame object from call stack with given level.cyg2win32(path)
mingw32()
— returnTrue
when using mingw32 environment.terminal_has_colors()
,red_text(s)
,green_text(s)
,yellow_text(s)
,blue_text(s)
,cyan_text(s)
get_path(mod_name,parent_path=None)
— return path of a module relative to parent_path when given. Handles also__main__
and__builtin__
modules.allpath(name)
— replaces/
withos.sep
inname
.cxx_ext_match
,fortran_ext_match
,f90_ext_match
,f90_module_name_match
numpy.distutils.system_info
module#
get_info(name,notfound_action=0)
combine_paths(*args,**kws)
show_all()
numpy.distutils.cpuinfo
module#
cpuinfo
numpy.distutils.log
module#
set_verbosity(v)
numpy.distutils.exec_command
module#
get_pythonexe()
find_executable(exe, path=None)
exec_command( command, execute_in='', use_shell=None, use_tee=None, **env )
The __init__.py
file#
The header of a typical SciPy __init__.py
is:
"""
Package docstring, typically with a brief description and function listing.
"""
# import functions into module namespace
from .subpackage import *
...
__all__ = [s for s in dir() if not s.startswith('_')]
from numpy.testing import Tester
test = Tester().test
bench = Tester().bench
Extra features in NumPy Distutils#
Specifying config_fc options for libraries in setup.py script#
It is possible to specify config_fc options in setup.py scripts. For example, using
- config.add_library(‘library’,
sources=[…], config_fc={‘noopt’:(__file__,1)})
will compile the library
sources without optimization flags.
It’s recommended to specify only those config_fc options in such a way that are compiler independent.
Getting extra Fortran 77 compiler options from source#
Some old Fortran codes need special compiler options in order to
work correctly. In order to specify compiler options per source
file, numpy.distutils
Fortran compiler looks for the following
pattern:
CF77FLAGS(<fcompiler type>) = <fcompiler f77flags>
in the first 20 lines of the source and use the f77flags
for
specified type of the fcompiler (the first character C
is optional).
TODO: This feature can be easily extended for Fortran 90 codes as well. Let us know if you would need such a feature.