doc/source/release/1.14.0-notes.rst
Numpy 1.14.0 is the result of seven months of work and contains a large number of bug fixes and new features, along with several changes with potential compatibility issues. The major change that users will notice are the stylistic changes in the way numpy arrays and scalars are printed, a change that will affect doctests. See below for details on how to preserve the old style printing when needed.
A major decision affecting future development concerns the schedule for
dropping Python 2.7 support in the runup to 2020. The decision has been made to
support 2.7 for all releases made in 2018, with the last release being
designated a long term release with support for bug fixes extending through
2019. In 2019 support for 2.7 will be dropped in all new releases. More details
can be found in NEP 12_.
This release supports Python 2.7 and 3.4 - 3.6.
.. _NEP 12: http://www.numpy.org/neps/nep-0014-dropping-python2.7-proposal.html
The np.einsum function uses BLAS when possible
genfromtxt, loadtxt, fromregex and savetxt can now handle
files with arbitrary Python supported encoding.
Major improvements to printing of NumPy arrays and scalars.
parametrize: decorator added to numpy.testing
chebinterpolate: Interpolate function at Chebyshev points.
format_float_positional and format_float_scientific : format
floating-point scalars unambiguously with control of rounding and padding.
PyArray_ResolveWritebackIfCopy and PyArray_SetWritebackIfCopyBase,
new C-API functions useful in achieving PyPy compatibility.
Using np.bool_ objects in place of integers is deprecated. Previously
operator.index(np.bool_) was legal and allowed constructs such as
[1, 2, 3][np.True_]. That was misleading, as it behaved differently from
np.array([1, 2, 3])[np.True_].
Truth testing of an empty array is deprecated. To check if an array is not
empty, use array.size > 0.
Calling np.bincount with minlength=None is deprecated.
minlength=0 should be used instead.
Calling np.fromstring with the default value of the sep argument is
deprecated. When that argument is not provided, a broken version of
np.frombuffer is used that silently accepts unicode strings and -- after
encoding them as either utf-8 (python 3) or the default encoding
(python 2) -- treats them as binary data. If reading binary data is
desired, np.frombuffer should be used directly.
The style option of array2string is deprecated in non-legacy printing mode.
PyArray_SetUpdateIfCopyBase has been deprecated. For NumPy versions >= 1.14
use PyArray_SetWritebackIfCopyBase instead, see C API changes below for
more details.
The use of UPDATEIFCOPY arrays is deprecated, see C API changes below
for details. We will not be dropping support for those arrays, but they are
not compatible with PyPy.
np.issubdtype will stop downcasting dtype-like arguments.
It might be expected that issubdtype(np.float32, 'float64') and
issubdtype(np.float32, np.float64) mean the same thing - however, there
was an undocumented special case that translated the former into
issubdtype(np.float32, np.floating), giving the surprising result of True.
This translation now gives a warning that explains what translation is occurring. In the future, the translation will be disabled, and the first example will be made equivalent to the second.
np.linalg.lstsq default for rcond will be changed. The rcond
parameter to np.linalg.lstsq will change its default to machine precision
times the largest of the input array dimensions. A FutureWarning is issued
when rcond is not passed explicitly.
a.flat.__array__() will return a writeable copy of a when a is
non-contiguous. Previously it returned an UPDATEIFCOPY array when a was
writeable. Currently it returns a non-writeable copy. See gh-7054 for a
discussion of the issue.
Unstructured void array's .item method will return a bytes object. In the
future, calling .item() on arrays or scalars of np.void datatype will
return a bytes object instead of a buffer or int array, the same as
returned by bytes(void_scalar). This may affect code which assumed the
return value was mutable, which will no longer be the case. A
FutureWarning is now issued when this would occur.
There was a FutureWarning about this change in NumPy 1.11.x. In short, it is
now the case that, when changing a view of a masked array, changes to the mask
are propagated to the original. That was not previously the case. This change
affects slices in particular. Note that this does not yet work properly if the
mask of the original array is nomask and the mask of the view is changed.
See gh-5580 for an extended discussion. The original behavior of having a copy
of the mask can be obtained by calling the unshare_mask method of the view.
np.ma.masked is no longer writeableAttempts to mutate the masked constant now error, as the underlying arrays
are marked readonly. In the past, it was possible to get away with::
# emulating a function that sometimes returns np.ma.masked
val = random.choice([np.ma.masked, 10])
var_arr = np.asarray(val)
val_arr += 1 # now errors, previously changed np.ma.masked.data
np.ma functions producing fill_value s have changedPreviously, np.ma.default_fill_value would return a 0d array, but
np.ma.minimum_fill_value and np.ma.maximum_fill_value would return a
tuple of the fields. Instead, all three methods return a structured np.void
object, which is what you would already find in the .fill_value attribute.
Additionally, the dtype guessing now matches that of np.array - so when
passing a python scalar x, maximum_fill_value(x) is always the same as
maximum_fill_value(np.array(x)). Previously x = long(1) on Python 2
violated this assumption.
a.flat.__array__() returns non-writeable arrays when a is non-contiguousThe intent is that the UPDATEIFCOPY array previously returned when a was
non-contiguous will be replaced by a writeable copy in the future. This
temporary measure is aimed to notify folks who expect the underlying array be
modified in this situation that that will no longer be the case. The most
likely places for this to be noticed is when expressions of the form
np.asarray(a.flat) are used, or when a.flat is passed as the out
parameter to a ufunc.
np.tensordot now returns zero array when contracting over 0-length dimensionPreviously np.tensordot raised a ValueError when contracting over 0-length
dimension. Now it returns a zero array, which is consistent with the behaviour
of np.dot and np.einsum.
numpy.testing reorganizedThis is not expected to cause problems, but possibly something has been left
out. If you experience an unexpected import problem using numpy.testing
let us know.
np.asfarray no longer accepts non-dtypes through the dtype argumentThis previously would accept dtype=some_array, with the implied semantics
of dtype=some_array.dtype. This was undocumented, unique across the numpy
functions, and if used would likely correspond to a typo.
np.linalg.norm preserves float input types, even for arbitrary ordersPreviously, this would promote to float64 when arbitrary orders were
passed, despite not doing so under the simple cases::
>>> f32 = np.float32([[1, 2]])
>>> np.linalg.norm(f32, 2.0, axis=-1).dtype
dtype('float32')
>>> np.linalg.norm(f32, 2.0001, axis=-1).dtype
dtype('float64') # numpy 1.13
dtype('float32') # numpy 1.14
This change affects only float32 and float16 arrays.
count_nonzero(arr, axis=()) now counts over no axes, not all axesElsewhere, axis==() is always understood as "no axes", but
count_nonzero had a special case to treat this as "all axes". This was
inconsistent and surprising. The correct way to count over all axes has always
been to pass axis == None.
__init__.py files added to test directoriesThis is for pytest compatibility in the case of duplicate test file names in
the different directories. As a result, run_module_suite no longer works,
i.e., python <path-to-test-file> results in an error.
.astype(bool) on unstructured void arrays now calls bool on each elementOn Python 2, void_array.astype(bool) would always return an array of
True, unless the dtype is V0. On Python 3, this operation would usually
crash. Going forwards, astype matches the behavior of bool(np.void),
considering a buffer of all zeros as false, and anything else as true.
Checks for V0 can still be done with arr.dtype.itemsize == 0.
MaskedArray.squeeze never returns np.ma.maskednp.squeeze is documented as returning a view, but the masked variant would
sometimes return masked, which is not a view. This has been fixed, so that
the result is always a view on the original masked array.
This breaks any code that used masked_arr.squeeze() is np.ma.masked, but
fixes code that writes to the result of .squeeze().
can_cast from from to from_The previous parameter name from is a reserved keyword in Python, which made
it difficult to pass the argument by name. This has been fixed by renaming
the parameter to from_.
isnat raises TypeError when passed wrong typeThe ufunc isnat used to raise a ValueError when it was not passed
variables of type datetime or timedelta. This has been changed to
raising a TypeError.
dtype.__getitem__ raises TypeError when passed wrong typeWhen indexed with a float, the dtype object used to raise ValueError.
__str__ and __repr__Previously, user-defined types could fall back to a default implementation of
__str__ and __repr__ implemented in numpy, but this has now been
removed. Now user-defined types will fall back to the python default
object.__str__ and object.__repr__.
The str and repr of ndarrays and numpy scalars have been changed in
a variety of ways. These changes are likely to break downstream user's
doctests.
These new behaviors can be disabled to mostly reproduce numpy 1.13 behavior by
enabling the new 1.13 "legacy" printing mode. This is enabled by calling
np.set_printoptions(legacy="1.13"), or using the new legacy argument to
np.array2string, as np.array2string(arr, legacy='1.13').
In summary, the major changes are:
For floating-point types:
repr of float arrays often omits a space previously printed
in the sign position. See the new sign option to np.set_printoptions.float16 fractional output, and sometimes float32 and
float128 output. float64 should be unaffected. See the new
floatmode option to np.set_printoptions.str of floating-point scalars is no longer truncated in python2.For other data types:
nanj instead of nan*j.NaT values in datetime arrays are now properly aligned.np.void datatype are now printed using hex
notation.For line-wrapping:
linewidth format option is now always respected.
The repr or str of an array will never exceed this, unless a single
element is too wide.For summarization (the use of ... to shorten long arrays):
str.
Previously, str(np.arange(1001)) gave
'[ 0 1 2 ..., 998 999 1000]', which has an extra comma.... is printed on its own line in
order to summarize any but the last axis, newlines are now appended to that
line to match its leading newlines and a trailing space character is
removed.MaskedArray arrays now separate printed elements with commas, always
print the dtype, and correctly wrap the elements of long arrays to multiple
lines. If there is more than 1 dimension, the array attributes are now
printed in a new "left-justified" printing style.
recarray arrays no longer print a trailing space before their dtype, and
wrap to the right number of columns.
0d arrays no longer have their own idiosyncratic implementations of str
and repr. The style argument to np.array2string is deprecated.
Arrays of bool datatype will omit the datatype in the repr.
User-defined dtypes (subclasses of np.generic) now need to
implement __str__ and __repr__.
Some of these changes are described in more detail below. If you need to retain the previous behavior for doctests or other reasons, you may want to do something like::
# FIXME: We need the str/repr formatting used in Numpy < 1.14.
try:
np.set_printoptions(legacy='1.13')
except TypeError:
pass
UPDATEIFCOPY arraysUPDATEIFCOPY arrays are contiguous copies of existing arrays, possibly with
different dimensions, whose contents are copied back to the original array when
their refcount goes to zero and they are deallocated. Because PyPy does not use
refcounts, they do not function correctly with PyPy. NumPy is in the process of
eliminating their use internally and two new C-API functions,
PyArray_SetWritebackIfCopyBasePyArray_ResolveWritebackIfCopy,have been added together with a complementary flag,
NPY_ARRAY_WRITEBACKIFCOPY. Using the new functionality also requires that
some flags be changed when new arrays are created, to wit:
NPY_ARRAY_INOUT_ARRAY should be replaced by NPY_ARRAY_INOUT_ARRAY2 and
NPY_ARRAY_INOUT_FARRAY should be replaced by NPY_ARRAY_INOUT_FARRAY2.
Arrays created with these new flags will then have the WRITEBACKIFCOPY
semantics.
If PyPy compatibility is not a concern, these new functions can be ignored,
although there will be a DeprecationWarning. If you do wish to pursue PyPy
compatibility, more information on these functions and their use may be found
in the c-api_ documentation and the example in how-to-extend_.
.. _c-api: https://github.com/numpy/numpy/blob/master/doc/source/reference/c-api.array.rst .. _how-to-extend: https://github.com/numpy/numpy/blob/master/doc/source/user/c-info.how-to-extend.rst
genfromtxt, loadtxt, fromregex and savetxt can now handle files
with arbitrary encoding supported by Python via the encoding argument.
For backward compatibility the argument defaults to the special bytes value
which continues to treat text as raw byte values and continues to pass latin1
encoded bytes to custom converters.
Using any other value (including None for system default) will switch the
functions to real text IO so one receives unicode strings instead of bytes in
the resulting arrays.
nose plugins are usable by numpy.testing.Testernumpy.testing.Tester is now aware of nose plugins that are outside the
nose built-in ones. This allows using, for example, nose-timer like
so: np.test(extra_argv=['--with-timer', '--timer-top-n', '20']) to
obtain the runtime of the 20 slowest tests. An extra keyword timer was
also added to Tester.test, so np.test(timer=20) will also report the 20
slowest tests.
parametrize decorator added to numpy.testingA basic parametrize decorator is now available in numpy.testing. It is
intended to allow rewriting yield based tests that have been deprecated in
pytest so as to facilitate the transition to pytest in the future. The nose
testing framework has not been supported for several years and looks like
abandonware.
The new parametrize decorator does not have the full functionality of the
one in pytest. It doesn't work for classes, doesn't support nesting, and does
not substitute variable names. Even so, it should be adequate to rewrite the
NumPy tests.
chebinterpolate function added to numpy.polynomial.chebyshevThe new chebinterpolate function interpolates a given function at the
Chebyshev points of the first kind. A new Chebyshev.interpolate class
method adds support for interpolation over arbitrary intervals using the scaled
and shifted Chebyshev points of the first kind.
With Python versions containing the lzma module the text IO functions can
now transparently read from files with xz or lzma extension.
sign option added to np.setprintoptions and np.array2stringThis option controls printing of the sign of floating-point types, and may be one of the characters '-', '+' or ' '. With '+' numpy always prints the sign of positive values, with ' ' it always prints a space (whitespace character) in the sign position of positive values, and with '-' it will omit the sign character for positive values. The new default is '-'.
This new default changes the float output relative to numpy 1.13. The old behavior can be obtained in 1.13 "legacy" printing mode, see compatibility notes above.
hermitian option added to np.linalg.matrix_rankThe new hermitian option allows choosing between standard SVD based matrix
rank calculation and the more efficient eigenvalue based method for
symmetric/hermitian matrices.
threshold and edgeitems options added to np.array2stringThese options could previously be controlled using np.set_printoptions, but
now can be changed on a per-call basis as arguments to np.array2string.
concatenate and stack gained an out argumentA preallocated buffer of the desired dtype can now be used for the output of these functions.
The PGI flang compiler is a Fortran front end for LLVM released by NVIDIA under the Apache 2 license. It can be invoked by ::
python setup.py config --compiler=clang --fcompiler=flang install
There is little experience with this new compiler, so any feedback from people using it will be appreciated.
random.noncentral_f need only be positive.Prior to NumPy 1.14.0, the numerator degrees of freedom needed to be > 1, but the distribution is valid for values > 0, which is the new requirement.
np.einsum variationsSome specific loop structures which have an accelerated loop version did not release the GIL prior to NumPy 1.14.0. This oversight has been fixed.
np.einsum function will use BLAS when possible and optimize by defaultThe np.einsum function will now call np.tensordot when appropriate.
Because np.tensordot uses BLAS when possible, that will speed up execution.
By default, np.einsum will also attempt optimization as the overhead is
small relative to the potential improvement in speed.
f2py now handles arrays of dimension 0f2py now allows for the allocation of arrays of dimension 0. This allows
for more consistent handling of corner cases downstream.
numpy.distutils supports using MSVC and mingw64-gfortran togetherNumpy distutils now supports using Mingw64 gfortran and MSVC compilers together. This enables the production of Python extension modules on Windows containing Fortran code while retaining compatibility with the binaries distributed by Python.org. Not all use cases are supported, but most common ways to wrap Fortran for Python are functional.
Compilation in this mode is usually enabled automatically, and can be
selected via the --fcompiler and --compiler options to
setup.py. Moreover, linking Fortran codes to static OpenBLAS is
supported; by default a gfortran compatible static archive
openblas.a is looked for.
np.linalg.pinv now works on stacked matricesPreviously it was limited to a single 2d array.
numpy.save aligns data to 64 bytes instead of 16Saving NumPy arrays in the npy format with numpy.save inserts
padding before the array data to align it at 64 bytes. Previously
this was only 16 bytes (and sometimes less due to a bug in the code
for version 2). Now the alignment is 64 bytes, which matches the
widest SIMD instruction set commonly available, and is also the most
common cache line size. This makes npy files easier to use in
programs which open them with mmap, especially on Linux where an
mmap offset must be a multiple of the page size.
In Python 3.6+ numpy.savez and numpy.savez_compressed now write
directly to a ZIP file, without creating intermediate temporary files.
Structured types can contain zero fields, and string dtypes can contain zero characters. Zero-length strings still cannot be created directly, and must be constructed through structured dtypes::
str0 = np.empty(10, np.dtype([('v', str, N)]))['v']
void0 = np.empty(10, np.void)
It was always possible to work with these, but the following operations are now supported for these arrays:
arr.sort()arr.view(bytes)arr.resize(...)pickle.dumps(arr)decimal.Decimal in np.lib.financialUnless otherwise stated all functions within the financial package now
support using the decimal.Decimal built-in type.
The str and repr of floating-point values (16, 32, 64 and 128 bit) are
now printed to give the shortest decimal representation which uniquely
identifies the value from others of the same type. Previously this was only
true for float64 values. The remaining float types will now often be shorter
than in numpy 1.13. Arrays printed in scientific notation now also use the
shortest scientific representation, instead of fixed precision as before.
Additionally, the str of float scalars scalars will no longer be truncated
in python2, unlike python2 float\ s. np.double scalars now have a str
and repr identical to that of a python3 float.
New functions np.format_float_scientific and np.format_float_positional
are provided to generate these decimal representations.
A new option floatmode has been added to np.set_printoptions and
np.array2string, which gives control over uniqueness and rounding of
printed elements in an array. The new default is floatmode='maxprec' with
precision=8, which will print at most 8 fractional digits, or fewer if an
element can be uniquely represented with fewer. A useful new mode is
floatmode="unique", which will output enough digits to specify the array
elements uniquely.
Numpy complex-floating-scalars with values like inf*j or nan*j now
print as infj and nanj, like the pure-python complex type.
The FloatFormat and LongFloatFormat classes are deprecated and should
both be replaced by FloatingFormat. Similarly ComplexFormat and
LongComplexFormat should be replaced by ComplexFloatingFormat.
void datatype elements are now printed in hex notationA hex representation compatible with the python bytes type is now printed
for unstructured np.void elements, e.g., V4 datatype. Previously, in
python2 the raw void data of the element was printed to stdout, or in python3
the integer byte values were shown.
void datatypes is now independently customizableThe printing style of np.void arrays is now independently customizable
using the formatter argument to np.set_printoptions, using the
'void' key, instead of the catch-all numpystr key as before.
np.loadtxtnp.loadtxt now reads files in chunks instead of all at once which decreases
its memory usage significantly for large files.
The indexing and assignment of structured arrays with multiple fields has changed in a number of ways, as warned about in previous releases.
First, indexing a structured array with multiple fields, e.g.,
arr[['f1', 'f3']], returns a view into the original array instead of a
copy. The returned view will have extra padding bytes corresponding to
intervening fields in the original array, unlike the copy in 1.13, which will
affect code such as arr[['f1', 'f3']].view(newdtype).
Second, assignment between structured arrays will now occur "by position" instead of "by field name". The Nth field of the destination will be set to the Nth field of the source regardless of field name, unlike in numpy versions 1.6 to 1.13 in which fields in the destination array were set to the identically-named field in the source array or to 0 if the source did not have a field.
Correspondingly, the order of fields in a structured dtypes now matters when computing dtype equality. For example, with the dtypes ::
x = dtype({'names': ['A', 'B'], 'formats': ['i4', 'f4'], 'offsets': [0, 4]})
y = dtype({'names': ['B', 'A'], 'formats': ['f4', 'i4'], 'offsets': [4, 0]})
the expression x == y will now return False, unlike before.
This makes dictionary based dtype specifications like
dtype({'a': ('i4', 0), 'b': ('f4', 4)}) dangerous in python < 3.6
since dict key order is not preserved in those versions.
Assignment from a structured array to a boolean array now raises a ValueError,
unlike in 1.13, where it always set the destination elements to True.
Assignment from structured array with more than one field to a non-structured array now raises a ValueError. In 1.13 this copied just the first field of the source to the destination.
Using field "titles" in multiple-field indexing is now disallowed, as is repeating a field name in a multiple-field index.
The documentation for structured arrays in the user guide has been significantly updated to reflect these changes.
np.set_string_functionPreviously, unlike most other numpy scalars, the str and repr of
integer and void scalars could be controlled by np.set_string_function.
This is no longer possible.
style arg of array2string deprecatedPreviously the str and repr of 0d arrays had idiosyncratic
implementations which returned str(a.item()) and 'array(' + repr(a.item()) + ')' respectively for 0d array a, unlike both numpy
scalars and higher dimension ndarrays.
Now, the str of a 0d array acts like a numpy scalar using str(a[()])
and the repr acts like higher dimension arrays using formatter(a[()]),
where formatter can be specified using np.set_printoptions. The
style argument of np.array2string is deprecated.
This new behavior is disabled in 1.13 legacy printing mode, see compatibility notes above.
RandomState using an array requires a 1-d arrayRandomState previously would accept empty arrays or arrays with 2 or more
dimensions, which resulted in either a failure to seed (empty arrays) or for
some of the passed values to be ignored when setting the seed.
MaskedArray objects show a more useful reprThe repr of a MaskedArray is now closer to the python code that would
produce it, with arrays now being shown with commas and dtypes. Like the other
formatting changes, this can be disabled with the 1.13 legacy printing mode in
order to help transition doctests.
repr of np.polynomial classes is more explicitIt now shows the domain and window parameters as keyword arguments to make them more clear::
>>> np.polynomial.Polynomial(range(4))
Polynomial([0., 1., 2., 3.], domain=[-1, 1], window=[-1, 1])