
SUSE 11.3, python 2.7, gcc 4.3.4, gfortran from gcc 4.6.0, I get two failures on commit 1439a8ddcb2eda20fa102aa44e846783f29c0af3 (head of 1.6.x maintenance branch). --George. ====================================================================== FAIL: Test basic arithmetic function errors ---------------------------------------------------------------------- Traceback (most recent call last): File "/noc/users/agn/ext/SUSE_11/lib/python2.7/site-packages/numpy/testing/decorators.py", line 215, in knownfailer return f(*args, **kwargs) File "/noc/users/agn/ext/SUSE_11/lib/python2.7/site-packages/numpy/core/tests/test_numeric.py", line 321, in test_floating_exceptions lambda a,b:a/b, ft_tiny, ft_max) File "/noc/users/agn/ext/SUSE_11/lib/python2.7/site-packages/numpy/core/tests/test_numeric.py", line 271, in assert_raises_fpe "Type %s did not raise fpe error '%s'." % (ftype, fpeerr)) File "/noc/users/agn/ext/SUSE_11/lib/python2.7/site-packages/numpy/testing/utils.py", line 34, in assert_ raise AssertionError(msg) AssertionError: Type <type 'numpy.float32'> did not raise fpe error 'underflow'. ====================================================================== FAIL: test_kind.TestKind.test_all ---------------------------------------------------------------------- Traceback (most recent call last): File "/noc/users/agn/ext/SUSE_11/lib/python2.7/site-packages/nose/case.py", line 187, in runTest self.test(*self.arg) File "/noc/users/agn/ext/SUSE_11/lib/python2.7/site-packages/numpy/f2py/tests/test_kind.py", line 30, in test_all 'selectedrealkind(%s): expected %r but got %r' % (i, selected_real_kind(i), selectedrealkind(i))) File "/noc/users/agn/ext/SUSE_11/lib/python2.7/site-packages/numpy/testing/utils.py", line 34, in assert_ raise AssertionError(msg) AssertionError: selectedrealkind(19): expected -1 but got 16 ---------------------------------------------------------------------- Ran 3544 tests in 48.039s FAILED (KNOWNFAIL=4, failures=2) <nose.result.TextTestResult run=3544 errors=0 failures=2> On 4 April 2011 21:04, Ralf Gommers <ralf.gommers@googlemail.com> wrote:
Hi,
I am pleased to announce the availability of the second beta of NumPy 1.6.0. Due to the extensive changes in the Numpy core for this release, the beta testing phase will last at least one month. Please test this beta and report any problems on the Numpy mailing list.
Many bug fixes went in since beta 1, among which: - fix installation of source release with python 3 - f2py fixes for assumed shape arrays - several loadtxt bug fixes and enhancements - change default floating point error handling from "print" to "warn" - much more
I quickly counted in the timeline, and in the last few weeks the number of open tickets has been decreased by over 100. Thanks to everyone who contributed to this spring cleaning!
Sources and binaries can be found at http://sourceforge.net/projects/numpy/files/NumPy/1.6.0b2/ For (preliminary) release notes see below.
Enjoy, Ralf
Note: NumPy 1.6.0 is not yet released.
========================= NumPy 1.6.0 Release Notes =========================
This release includes several new features as well as numerous bug fixes and improved documentation. It is backward compatible with the 1.5.0 release, and supports Python 2.4 - 2.7 and 3.1 - 3.2.
Highlights ==========
* Re-introduction of datetime dtype support to deal with dates in arrays.
* A new 16-bit floating point type.
* A new iterator, which improves performance of many functions.
New features ============
New 16-bit floating point type ------------------------------
This release adds support for the IEEE 754-2008 binary16 format, available as the data type ``numpy.half``. Within Python, the type behaves similarly to `float` or `double`, and C extensions can add support for it with the exposed half-float API.
New iterator ------------
A new iterator has been added, replacing the functionality of the existing iterator and multi-iterator with a single object and API. This iterator works well with general memory layouts different from C or Fortran contiguous, and handles both standard NumPy and customized broadcasting. The buffering, automatic data type conversion, and optional output parameters, offered by ufuncs but difficult to replicate elsewhere, are now exposed by this iterator.
Legendre, Laguerre, Hermite, HermiteE polynomials in ``numpy.polynomial`` -------------------------------------------------------------------------
Extend the number of polynomials available in the polynomial package. In addition, a new ``window`` attribute has been added to the classes in order to specify the range the ``domain`` maps to. This is mostly useful for the Laguerre, Hermite, and HermiteE polynomials whose natural domains are infinite and provides a more intuitive way to get the correct mapping of values without playing unnatural tricks with the domain.
Fortran assumed shape array and size function support in ``numpy.f2py`` -----------------------------------------------------------------------
F2py now supports wrapping Fortran 90 routines that use assumed shape arrays. Before such routines could be called from Python but the corresponding Fortran routines received assumed shape arrays as zero length arrays which caused unpredicted results. Thanks to Lorenz Hüdepohl for pointing out the correct way to interface routines with assumed shape arrays.
In addition, f2py interprets Fortran expression ``size(array, dim)`` as ``shape(array, dim-1)`` which makes it possible to automatically wrap Fortran routines that use two argument ``size`` function in dimension specifications. Before users were forced to apply this mapping manually.
Other new functions -------------------
``numpy.ravel_multi_index`` : Converts a multi-index tuple into an array of flat indices, applying boundary modes to the indices.
``numpy.einsum`` : Evaluate the Einstein summation convention. Using the Einstein summation convention, many common multi-dimensional array operations can be represented in a simple fashion. This function provides a way compute such summations.
``numpy.count_nonzero`` : Counts the number of non-zero elements in an array.
``numpy.result_type`` and ``numpy.min_scalar_type`` : These functions expose the underlying type promotion used by the ufuncs and other operations to determine the types of outputs. These improve upon the ``numpy.common_type`` and ``numpy.mintypecode`` which provide similar functionality but do not match the ufunc implementation.
Changes =======
Changes and improvements in the numpy core ------------------------------------------
``default error handling`` --------------------------
The default error handling has been change from ``print`` to ``warn`` for all except for ``underflow``, which remains as ``ignore``.
``numpy.distutils`` -------------------
Several new compilers are supported for building Numpy: the Portland Group Fortran compiler on OS X, the PathScale compiler suite and the 64-bit Intel C compiler on Linux.
``numpy.testing`` -----------------
The testing framework gained ``numpy.testing.assert_allclose``, which provides a more convenient way to compare floating point arrays than `assert_almost_equal`, `assert_approx_equal` and `assert_array_almost_equal`.
``C API`` ---------
In addition to the APIs for the new iterator and half data type, a number of other additions have been made to the C API. The type promotion mechanism used by ufuncs is exposed via ``PyArray_PromoteTypes``, ``PyArray_ResultType``, and ``PyArray_MinScalarType``. A new enumeration ``NPY_CASTING`` has been added which controls what types of casts are permitted. This is used by the new functions ``PyArray_CanCastArrayTo`` and ``PyArray_CanCastTypeTo``. A more flexible way to handle conversion of arbitrary python objects into arrays is exposed by ``PyArray_GetArrayParamsFromObject``.
Deprecated features ===================
The "normed" keyword in ``numpy.histogram`` is deprecated. Its functionality will be replaced by the new "density" keyword.
Removed features ================
``numpy.fft`` -------------
The functions `refft`, `refft2`, `refftn`, `irefft`, `irefft2`, `irefftn`, which were aliases for the same functions without the 'e' in the name, were removed.
``numpy.memmap`` ----------------
The `sync()` and `close()` methods of memmap were removed. Use `flush()` and "del memmap" instead.
``numpy.lib`` -------------
The deprecated functions ``numpy.unique1d``, ``numpy.setmember1d``, ``numpy.intersect1d_nu`` and ``numpy.lib.ufunclike.log2`` were removed.
``numpy.ma`` ------------
Several deprecated items were removed from the ``numpy.ma`` module::
* ``numpy.ma.MaskedArray`` "raw_data" method * ``numpy.ma.MaskedArray`` constructor "flag" keyword * ``numpy.ma.make_mask`` "flag" keyword * ``numpy.ma.allclose`` "fill_value" keyword
``numpy.distutils`` -------------------
The ``numpy.get_numpy_include`` function was removed, use ``numpy.get_include`` instead. _______________________________________________ NumPy-Discussion mailing list NumPy-Discussion@scipy.org http://mail.scipy.org/mailman/listinfo/numpy-discussion