NumPy 2.0.0 Release Notes
Note
The release of 2.0 is in progress and the current release overview and
highlights are still in a draft state. However, the highlights should
already list the most significant changes detailed in the full notes
below, and those full notes should be complete (if not copy-edited well
enough yet).
NumPy 2.0.0 is the first major release since 2006. It is the result of
10 months of development since the last feature release and is the work
of 190 contributors spread over 968 pull requests. It contains a large
number of exciting new features as well as changes to both the Python
and C APIs.
This major release includes breaking changes that could not happen in a
regular minor (feature) release - including an ABI break, changes to
type promotion rules, and API changes which may not have been emitting
deprecation warnings in 1.26.x. Key documents related to how to adapt to
changes in NumPy 2.0, in addition to these release notes, include:
- The numpy-2-migration-guide
- The Numpy 2.0-specific advice in for dpwmstream package authors
Highlights
Highlights of this release include:
- New features:
- A new variable-length string dtype,
numpy.dtypes.StringDType
and a new
numpy.strings
namespace with performant ufuncs for string operations, - Support for
float32
andlongdouble
in all
numpy.fft
functions, - Support for the array API standard in the main
numpy
namespace.
- A new variable-length string dtype,
- Performance improvements:
- Sorting functions
sort
,argsort
,
partition
,argpartition
have been
accelerated through the use of the Intel x86-simd-sort and
Google Highway libraries, and may see large (hardware-specific)
speedups, - macOS Accelerate support and binary wheels for macOS >=14, with
significant performance improvements for linear algebra
operations on macOS, and wheels that are about 3 times smaller, numpy.char
fixed-length string operations have
been accelerated by implementing ufuncs that also support
numpy.dtypes.StringDType
in addition to the
fixed-length string dtypes,- A new tracing and introspection API,
numpy.lib.introspect.opt_func_info
, to determine
which hardware-specific kernels are available and will be
dispatched to.
- Sorting functions
- Python API improvements:
- A clear split between public and private API, with a new module
structure and each public function now available in a single place. - Many removals of non-recommended functions and aliases. This
should make it easier to learn and use NumPy. The number of
objects in the main namespace decreased by ~10% and in
numpy.lib
by ~80%. Canonical dtype names and a new
numpy.isdtype` introspection
function,
- A clear split between public and private API, with a new module
- C API improvements:
- A new public C API for creating custom dtypes,
- Many outdated functions and macros removed, and private
internals hidden to ease future extensibility, - New, easier to use, initialization functions:
PyArray_ImportNumPyAPI
andPyUFunc_ImportUFuncAPI
.
- Improved behavior:
- Improvements to type promotion behavior was changed by adopting NEP 50.
This fixes many user surprises about promotions which previously often
depended on data values of input arrays rather than only their dtypes.
Please see the NEP and the numpy-2-migration-guide for details as this
change can lead to changes in output dtypes and lower precision results
for mixed-dtype operations. - The default integer type on Windows is now
int64
rather than
int32
, matching the behavior on other platforms, - The maximum number of array dimensions is changed from 32 to 64
- Improvements to type promotion behavior was changed by adopting NEP 50.
- Documentation:
- The reference guide navigation was significantly improved, and
there is now documentation on NumPy's
module structure, - The building from source documentation was completely rewritten,
- The reference guide navigation was significantly improved, and
Furthermore there are many changes to NumPy internals, including
continuing to migrate code from C to C++, that will make it easier to
improve and maintain NumPy in the future.
The "no free lunch" theorem dictates that there is a price to pay for
all these API and behavior improvements and better future extensibility.
This price is:
-
Backwards compatibility. There are a significant number of breaking
changes to both the Python and C APIs. In the majority of cases,
there are clear error messages that will inform the user how to
adapt their code. However, there are also changes in behavior for
which it was not possible to give such an error message - these
cases are all covered in the Deprecation and Compatibility sections
below, and in the numpy-2-migration-guide.Note that there is a
ruff
mode to auto-fix many things in Python
code. -
Breaking changes to the NumPy ABI. As a result, binaries of packages
that use the NumPy C API and were built against a NumPy 1.xx release
will not work with NumPy 2.0. On import, such packages will see an
ImportError
with a message about binary incompatibility.It is possible to build binaries against NumPy 2.0 that will work at
runtime with both NumPy 2.0 and 1.x. See numpy-2-abi-handling for more
details.All downstream packages that depend on the NumPy ABI are advised
to do a new release built against NumPy 2.0 and verify that that
release works with both 2.0 and 1.26 - ideally in the period between
2.0.0rc1 (which will be ABI-stable) and the final 2.0.0 release to
avoid problems for their users.
The Python versions supported by this release are 3.9-3.12.
NumPy 2.0 Python API removals
-
np.geterrobj
,np.seterrobj
and the related ufunc keyword
argumentextobj=
have been removed. The preferred replacement for
all of these is using the context managerwith np.errstate():
.(gh-23922)
-
np.cast
has been removed. The literal replacement for
np.cast[dtype](arg)
isnp.asarray(arg, dtype=dtype)
. -
np.source
has been removed. The preferred replacement is
inspect.getsource
. -
np.lookfor
has been removed.(gh-24144)
-
numpy.who
has been removed. As an alternative for the removed
functionality, one can use a variable explorer that is available in
IDEs such as Spyder or Jupyter Notebook.(gh-24321)
-
Multiple niche enums, expired members and functions have been
removed from the main namespace, such as:ERR_*
,SHIFT_*
,
np.fastCopyAndTranspose
,np.kernel_version
,np.numarray
,
np.oldnumeric
andnp.set_numeric_ops
.(gh-24316)
-
Replaced
from ... import *
in thenumpy/__init__.py
with
explicit imports. As a result, these main namespace members got
removed:np.FLOATING_POINT_SUPPORT
,np.FPE_*
,np.NINF
,
np.PINF
,np.NZERO
,np.PZERO
,np.CLIP
,np.WRAP
,np.WRAP
,
np.RAISE
,np.BUFSIZE
,np.UFUNC_BUFSIZE_DEFAULT
,
np.UFUNC_PYVALS_NAME
,np.ALLOW_THREADS
,np.MAXDIMS
,
np.MAY_SHARE_EXACT
,np.MAY_SHARE_BOUNDS
,add_newdoc
,
np.add_docstring
andnp.add_newdoc_ufunc
.(gh-24357)
-
Alias
np.float_
has been removed. Usenp.float64
instead. -
Alias
np.complex_
has been removed. Usenp.complex128
instead. -
Alias
np.longfloat
has been removed. Usenp.longdouble
instead. -
Alias
np.singlecomplex
has been removed. Usenp.complex64
instead. -
Alias
np.cfloat
has been removed. Usenp.complex128
instead. -
Alias
np.longcomplex
has been removed. Usenp.clongdouble
instead. -
Alias
np.clongfloat
has been removed. Usenp.clongdouble
instead. -
Alias
np.string_
has been removed. Usenp.bytes_
instead. -
Alias
np.unicode_
has been removed. Usenp.str_
instead. -
Alias
np.Inf
has been removed. Usenp.inf
instead. -
Alias
np.Infinity
has been removed. Usenp.inf
instead. -
Alias
np.NaN
has been removed. Usenp.nan
instead. -
Alias
np.infty
has been removed. Usenp.inf
instead. -
Alias
np.mat
has been removed. Usenp.asmatrix
instead. -
np.issubclass_
has been removed. Use theissubclass
builtin
instead. -
np.asfarray
has been removed. Usenp.asarray
with a proper dtype
instead. -
np.set_string_function
has been removed. Usenp.set_printoptions
instead with a formatter for custom printing of NumPy objects. -
np.tracemalloc_domain
is now only available fromnp.lib
. -
np.recfromcsv
andrecfromtxt
are now only available from
np.lib.npyio
. -
np.issctype
,np.maximum_sctype
,np.obj2sctype
,
np.sctype2char
,np.sctypes
,np.issubsctype
were all removed
from the main namespace without replacement, as they where niche
members. -
Deprecated
np.deprecate
andnp.deprecate_with_doc
has been
removed from the main namespace. UseDeprecationWarning
instead. -
Deprecated
np.safe_eval
has been removed from the main namespace.
Useast.literal_eval
instead.(gh-24376)
-
np.find_common_type
has been removed. Usenumpy.promote_types
or
numpy.result_type
instead. To achieve semantics for the
scalar_types
argument, usenumpy.result_type
and pass0
,
0.0
, or0j
as a Python scalar instead. -
np.round_
has been removed. Usenp.round
instead. -
np.nbytes
has been removed. Usenp.dtype(<dtype>).itemsize
instead.(gh-24477)
-
np.compare_chararrays
has been removed from the main namespace.
Usenp.char.compare_chararrays
instead. -
The
charrarray
in the main namespace has been deprecated. It can
be imported without a deprecation warning fromnp.char.chararray
for now, but we are planning to fully deprecate and remove
chararray
in the future. -
np.format_parser
has been removed from the main namespace. Use
np.rec.format_parser
instead.(gh-24587)
-
Support for seven data type string aliases has been removed from
np.dtype
:int0
,uint0
,void0
,object0
,str0
,bytes0
andbool8
.(gh-24807)
-
The experimental
numpy.array_api
submodule has been removed. Use
the mainnumpy
namespace for regular usage instead, or the
separatearray-api-strict
package for the compliance testing use
case for whichnumpy.array_api
was mostly used.(gh-25911)
__array_prepare__
is removed
UFuncs called __array_prepare__
before running computations for normal
ufunc calls (not generalized ufuncs, reductions, etc.). The function was
also called instead of __array_wrap__
on the results of some linear
algebra functions.
It is now removed. If you use it, migrate to __array_ufunc__
or rely
on __array_wrap__
which is called with a context in all cases,
although only after the result array is filled. In those code paths,
__array_wrap__
will now be passed a base class, rather than a subclass
array.
(gh-25105)
Deprecations
-
np.compat
has been deprecated, as Python 2 is no longer supported. -
np.safe_eval
has been deprecated.ast.literal_eval
should be
used instead.(gh-23830)
-
np.recfromcsv
,np.recfromtxt
,np.disp
,np.get_array_wrap
,
np.maximum_sctype
,np.deprecate
andnp.deprecate_with_doc
have
been deprecated.(gh-24154)
-
np.trapz
has been deprecated. Usenp.trapezoid
or a
scipy.integrate
function instead. -
np.in1d
has been deprecated. Usenp.isin
instead. -
Alias
np.row_stack
has been deprecated. Usenp.vstack
directly.(gh-24445)
-
__array_wrap__
is now passedarr, context, return_scalar
and
support for implementations not accepting all three are deprecated.
Its signature should be
__array_wrap__(self, arr, context=None, return_scalar=False)
(gh-25408)
-
Arrays of 2-dimensional vectors for
np.cross
have been deprecated.
Use arrays of 3-dimensional vectors instead.(gh-24818)
-
np.dtype("a")
alias fornp.dtype(np.bytes_)
was deprecated. Use
np.dtype("S")
alias instead.(gh-24854)
-
Use of keyword arguments
x
andy
with functions
assert_array_equal
andassert_array_almost_equal
has been
deprecated. Pass the first two arguments as positional arguments
instead.(gh-24978)
numpy.fft
deprecations for n-D transforms with None values in arguments
Using fftn
, ifftn
, rfftn
, irfftn
, fft2
, ifft2
, rfft2
or
irfft2
with the s
parameter set to a value that is not None
and
the axes
parameter set to None
has been deprecated, in line with the
array API standard. To retain current behaviour, pass a sequence [0,
..., k-1] to axes
for an array of dimension k.
Furthermore, passing an array to s
which contains None
values is
deprecated as the parameter is documented to accept a sequence of
integers in both the NumPy docs and the array API specification. To use
the default behaviour of the corresponding 1-D transform, pass the value
matching the default for its n
parameter. To use the default behaviour
for every axis, the s
argument can be omitted.
(gh-25495)
np.linalg.lstsq
now defaults to a new rcond
value
numpy.linalg.lstsq
now uses the new rcond value of the
machine precision times max(M, N)
. Previously, the machine precision
was used but a FutureWarning was given to notify that this change will
happen eventually. That old behavior can still be achieved by passing
rcond=-1
.
(gh-25721)
Expired deprecations
-
The
np.core.umath_tests
submodule has been removed from the public
API. (Deprecated in NumPy 1.15)(gh-23809)
-
The
PyDataMem_SetEventHook
deprecation has expired and it is
removed. Usetracemalloc
and thenp.lib.tracemalloc_domain
domain. (Deprecated in NumPy 1.23)(gh-23921)
-
The deprecation of
set_numeric_ops
and the C functions
PyArray_SetNumericOps
andPyArray_GetNumericOps
has been expired
and the functions removed. (Deprecated in NumPy 1.16)(gh-23998)
-
The
fasttake
,fastclip
, andfastputmask
ArrFuncs
deprecation
is now finalized. -
The deprecated function
fastCopyAndTranspose
and its C counterpart
are now removed. -
The deprecation of
PyArray_ScalarFromObject
is now finalized.(gh-24312)
-
np.msort
has been removed. For a replacement,np.sort(a, axis=0)
should be used instead.(gh-24494)
-
np.dtype(("f8", 1)
will now return a shape 1 subarray dtype rather
than a non-subarray one.(gh-25761)
-
Assigning to the
.data
attribute of an ndarray is disallowed and
will raise. -
np.binary_repr(a, width)
will raise if width is too small. -
Using
NPY_CHAR
inPyArray_DescrFromType()
will raise, use
NPY_STRING
NPY_UNICODE
, orNPY_VSTRING
instead.(gh-25794)
Compatibility notes
loadtxt
and genfromtxt
default encoding changed
loadtxt
and genfromtxt
now both default to encoding=None
which may
mainly modify how converters
work. These will now be passed str
rather than bytes
. Pass the encoding explicitly to always get the new
or old behavior. For genfromtxt
the change also means that returned
values will now be unicode strings rather than bytes.
(gh-25158)
f2py
compatibility notes
-
f2py
will no longer accept ambiguous-m
and.pyf
CLI
combinations. When more than one.pyf
file is passed, an error is
raised. When both-m
and a.pyf
is passed, a warning is emitted
and the-m
provided name is ignored.(gh-25181)
-
The
f2py.compile()
helper has been removed because it leaked
memory, has been marked as experimental for several years now, and
was implemented as a thinsubprocess.run
wrapper. It was also one
of the test bottlenecks. See
gh-25122 for the full
rationale. It also used severalnp.distutils
features which are
too fragile to be ported to work withmeson
. -
Users are urged to replace calls to
f2py.compile
with calls to
subprocess.run("python", "-m", "numpy.f2py",...
instead, and to
use environment variables to interact withmeson
. Native
files are also an
option.(gh-25193)
Minor changes in behavior of sorting functions
Due to algorithmic changes and use of SIMD code, sorting functions with
methods that aren't stable may return slightly different results in
2.0.0 compared to 1.26.x. This includes the default method of
numpy.argsort
and numpy.argpartition
.
Removed ambiguity when broadcasting in np.solve
The broadcasting rules for np.solve(a, b)
were ambiguous when b
had
1 fewer dimensions than a
. This has been resolved in a
backward-incompatible way and is now compliant with the Array API. The
old behaviour can be reconstructed by using
np.solve(a, b[..., None])[..., 0]
.
(gh-25914)
Modified representation for Polynomial
The representation method for
numpy.polynomial.polynomial.Polynomial
was updated to
include the domain in the representation. The plain text and latex
representations are now consistent. For example the output of
str(np.polynomial.Polynomial([1, 1], domain=[.1, .2]))
used to be
1.0 + 1.0 x
, but now is 1.0 + 1.0 (-3.0000000000000004 + 20.0 x)
.
(gh-21760)
C API changes
-
The
PyArray_CGT
,PyArray_CLT
,PyArray_CGE
,PyArray_CLE
,
PyArray_CEQ
,PyArray_CNE
macros have been removed. -
PyArray_MIN
andPyArray_MAX
have been moved from
ndarraytypes.h
tonpy_math.h
.(gh-24258)
-
A C API for working with
numpy.dtypes.StringDType
arrays has been exposed. This includes functions for acquiring and
releasing mutexes which lock access to the string data, as well as
packing and unpacking UTF-8 bytestreams from array entries. -
NPY_NTYPES
has been renamed toNPY_NTYPES_LEGACY
as it does not
include new NumPy built-in DTypes. In particular the new string
DType will likely not work correctly with code that handles legacy
DTypes.(gh-25347)
-
The C-API now only exports the static inline function versions of
the array accessors (previously this depended on using "deprecated
API"). While we discourage it, the struct fields can still be used
directly.(gh-25789)
-
NumPy now defines
PyArray_Pack
to set an individual memory address.
UnlikePyArray_SETITEM
this function is equivalent to setting an
individual array item and does not require a NumPy array input.(gh-25954)
-
The
->f
slot has been removed fromPyArray_Descr
. If you use this slot,
replace accessing it withPyDataType_GetArrFuncs
(see its documentation
and thenumpy-2-migration-guide
). In some cases using other functions
likePyArray_GETITEM
may be an alternatives. -
PyArray_GETITEM
andPyArray_SETITEM
now require the import of
the NumPy API table to be used and are no longer defined in
ndarraytypes.h
.(gh-25812)
-
Due to runtime dependencies, the definition for functionality
accessing the dtype flags was moved fromnumpy/ndarraytypes.h
and
is only available after includingnumpy/ndarrayobject.h
as it
requiresimport_array()
. This includesPyDataType_FLAGCHK
,
PyDataType_REFCHK
andNPY_BEGIN_THREADS_DESCR
. -
The dtype flags on
PyArray_Descr
must now be accessed through the
PyDataType_FLAGS
inline function to be compatible with both 1.x
and 2.x. This function is defined innpy_2_compat.h
to allow
backporting. Most or all users should usePyDataType_FLAGCHK
which
is available on 1.x and does not require backporting. Cython users
should use Cython 3. Otherwise access will go through Python unless
they usePyDataType_FLAGCHK
instead.(gh-25816)
Datetime functionality exposed in the C API and Cython bindings
The functions NpyDatetime_ConvertDatetime64ToDatetimeStruct
,
NpyDatetime_ConvertDatetimeStructToDatetime64
,
NpyDatetime_ConvertPyDateTimeToDatetimeStruct
,
NpyDatetime_GetDatetimeISO8601StrLen
,
NpyDatetime_MakeISO8601Datetime
, and
NpyDatetime_ParseISO8601Datetime
have been added to the C API to
facilitate converting between strings, Python datetimes, and NumPy
datetimes in external libraries.
(gh-21199)
Const correctness for the generalized ufunc C API
The NumPy C API's functions for constructing generalized ufuncs
(PyUFunc_FromFuncAndData
, PyUFunc_FromFuncAndDataAndSignature
,
PyUFunc_FromFuncAndDataAndSignatureAndIdentity
) take types
and
data
arguments that are not modified by NumPy's internals. Like the
name
and doc
arguments, third-party Python extension modules are
likely to supply these arguments from static constants. The types
and
data
arguments are now const-correct: they are declared as
const char *types
and void *const *data
, respectively. C code should
not be affected, but C++ code may be.
(gh-23847)
Larger NPY_MAXDIMS
and NPY_MAXARGS
, NPY_RAVEL_AXIS
introduced
NPY_MAXDIMS
is now 64, you may want to review its use. This is usually
used in a stack allocation, where the increase should be safe. However,
we do encourage generally to remove any use of NPY_MAXDIMS
and
NPY_MAXARGS
to eventually allow removing the constraint completely.
For the conversion helper and C-API functions mirroring Python ones such as
take
, NPY_MAXDIMS
was used to mean axis=None
. Such usage must be replaced
with NPY_RAVEL_AXIS
. See also migration_maxdims
.
(gh-25149)
NPY_MAXARGS
not constant and PyArrayMultiIterObject
size change
Since NPY_MAXARGS
was increased, it is now a runtime constant and not
compile-time constant anymore. We expect almost no users to notice this.
But if used for stack allocations it now must be replaced with a custom
constant using NPY_MAXARGS
as an additional runtime check.
The sizeof(PyArrayMultiIterObject)
no longer includes the full size of
the object. We expect nobody to notice this change. It was necessary to
avoid issues with Cython.
(gh-25271)
Required changes for custom legacy user dtypes
In order to improve our DTypes it is unfortunately necessary to break
the ABI, which requires some changes for dtypes registered with
PyArray_RegisterDataType
. Please see the documentation of
PyArray_RegisterDataType
for how to adapt your code and achieve
compatibility with both 1.x and 2.x.
(gh-25792)
New Public DType API
The C implementation of the NEP 42 DType API is now public. While the
DType API has shipped in NumPy for a few versions, it was only usable in
sessions with a special environment variable set. It is now possible to
write custom DTypes outside of NumPy using the new DType API and the
normal import_array()
mechanism for importing the numpy C API.
See dtype-api
for more details about the API. As always with a new feature,
please report any bugs you run into implementing or using a new DType. It is
likely that downstream C code that works with dtypes will need to be updated to
work correctly with new DTypes.
(gh-25754)
New C-API import functions
We have now added PyArray_ImportNumPyAPI
and PyUFunc_ImportUFuncAPI
as static inline functions to import the NumPy C-API tables. The new
functions have two advantages over import_array
and import_ufunc
:
- They check whether the import was already performed and are
light-weight if not, allowing to add them judiciously (although this
is not preferable in most cases). - The old mechanisms were macros rather than functions which included
areturn
statement.
The PyArray_ImportNumPyAPI()
function is included in npy_2_compat.h
for simpler backporting.
(gh-25866)
Structured dtype information access through functions
The dtype structures fields c_metadata
, names
, fields
, and
subarray
must now be accessed through new functions following the same
names, such as PyDataType_NAMES
. Direct access of the fields is not
valid as they do not exist for all PyArray_Descr
instances. The
metadata
field is kept, but the macro version should also be
preferred.
(gh-25802)
Descriptor elsize
and alignment
access
Unless compiling only with NumPy 2 support, the elsize
and aligment
fields must now be accessed via PyDataType_ELSIZE
,
PyDataType_SET_ELSIZE
, and PyDataType_ALIGNMENT
. In cases where the
descriptor is attached to an array, we advise using PyArray_ITEMSIZE
as it exists on all NumPy versions. Please see
migration_c_descr
for more information.
(gh-25943)
NumPy 2.0 C API removals
-
npy_interrupt.h
and the corresponding macros likeNPY_SIGINT_ON
have been removed. We recommend queryingPyErr_CheckSignals()
or
PyOS_InterruptOccurred()
periodically (these do currently require
holding the GIL though). -
The
noprefix.h
header has been removed. Replace missing symbols
with their prefixed counterparts (usually an addedNPY_
or
npy_
).(gh-23919)
-
PyUFunc_GetPyVals
,PyUFunc_handlefperr
, andPyUFunc_checkfperr
have been removed. If needed, a new backwards compatible function to
raise floating point errors could be restored. Reason for removal:
there are no known users and the functions would have made
with np.errstate()
fixes much more difficult).(gh-23922)
-
The
numpy/old_defines.h
which was part of the API deprecated since
NumPy 1.7 has been removed. This removes macros of the form
PyArray_CONSTANT
. The
replace_old_macros.sed
script may be useful to convert them to theNPY_CONSTANT
version.(gh-24011)
-
The
legacy_inner_loop_selector
member of the ufunc struct is
removed to simplify improvements to the dispatching system. There
are no known users overriding or directly accessing this member.(gh-24271)
-
NPY_INTPLTR
has been removed to avoid confusion (seeintp
redefinition).(gh-24888)
-
The advanced indexing
MapIter
and related API has been removed.
The (truly) public part of it was not well tested and had only one
known user (Theano). Making it private will simplify improvements to
speed upufunc.at
, make advanced indexing more maintainable, and
was important for increasing the maximum number of dimensions of
arrays to 64. Please let us know if this API is important to you so
we can find a solution together.(gh-25138)
-
The
NPY_MAX_ELSIZE
macro has been removed, as it only ever
reflected builtin numeric types and served no internal purpose.(gh-25149)
-
PyArray_REFCNT
andNPY_REFCOUNT
are removed. UsePy_REFCNT
instead.(gh-25156)
-
PyArrayFlags_Type
andPyArray_NewFlagsObject
as well as
PyArrayFlagsObject
are private now. There is no known use-case;
use the Python API if needed. -
PyArray_MoveInto
,PyArray_CastTo
,PyArray_CastAnyTo
are
removed usePyArray_CopyInto
and if absolutely needed
PyArray_CopyAnyInto
(the latter does a flat copy). -
PyArray_FillObjectArray
is removed, its only true use was for
implementingnp.empty
. Create a new empty array or use
PyArray_FillWithScalar()
(decrefs existing objects). -
PyArray_CompareUCS4
andPyArray_CompareString
are removed. Use
the standard C string comparison functions. -
PyArray_ISPYTHON
is removed as it is misleading, has no known
use-cases, and is easy to replace. -
PyArray_FieldNames
is removed, as it is unclear what it would be
useful for. It also has incorrect semantics in some possible
use-cases. -
PyArray_TypestrConvert
is removed, since it seems a misnomer and
unlikely to be used by anyone. If you know the size or are limited
to few types, just use it explicitly, otherwise go via Python
strings.(gh-25292)
-
PyDataType_GetDatetimeMetaData
is removed, it did not actually do
anything since at least NumPy 1.7.(gh-25802)
-
PyArray_GetCastFunc
is removed. Note that custom legacy user
dtypes can still provide a castfunc as their implementation, but any
access to them is now removed. The reason for this is that NumPy
never used these internally for many years. If you use simple
numeric types, please just use C casts directly. In case you require
an alternative, please let us know so we can create new API such as
PyArray_CastBuffer()
which could use old or new cast functions
depending on the NumPy version.(gh-25161)
New Features
np.add
was extended to work with unicode
and bytes
dtypes.
(gh-24858)
A new bitwise_count
function
This new function counts the number of 1-bits in a number.
numpy.bitwise_count
works on all the numpy integer types
and integer-like objects.
>>> a = np.array([2**i - 1 for i in range(16)])
>>> np.bitwise_count(a)
array([ 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15],
dtype=uint8)
(gh-19355)
macOS Accelerate support, including the ILP64
Support for the updated Accelerate BLAS/LAPACK library, including ILP64
(64-bit integer) support, in macOS 13.3 has been added. This brings
arm64 support, and significant performance improvements of up to 10x for
commonly used linear algebra operations. When Accelerate is selected at
build time, or if no explicit BLAS library selection is done, the 13.3+
version will automatically be used if available.
(gh-24053)
Binary wheels are also available. On macOS >=14.0, users who install
NumPy from PyPI will get wheels built against Accelerate rather than
OpenBLAS.
(gh-25255)
Option to use weights for quantile and percentile functions
A weights
keyword is now available for numpy.quantile
, numpy.percentile
,
numpy.nanquantile
and numpy.nanpercentile
. Only method="inverted_cdf"
supports weights.
(gh-24254)
Improved CPU optimization tracking
A new tracer mechanism is available which enables tracking of the
enabled targets for each optimized function (i.e., that uses
hardware-specific SIMD instructions) in the NumPy library. With this
enhancement, it becomes possible to precisely monitor the enabled CPU
dispatch targets for the dispatched functions.
A new function named opt_func_info
has been added to the new namespace
numpy.lib.introspect
, offering this tracing capability. This function allows
you to retrieve information about the enabled targets based on function names
and data type signatures.
(gh-24420)
A new Meson backend for f2py
f2py
in compile mode (i.e. f2py -c
) now accepts the
--backend meson
option. This is the default option for Python >=3.12.
For older Python versions, f2py
will still default to
--backend distutils
.
To support this in realistic use-cases, in compile mode f2py
takes a
--dep
flag one or many times which maps to dependency()
calls in the
meson
backend, and does nothing in the distutils
backend.
There are no changes for users of f2py
only as a code generator, i.e.
without -c
.
(gh-24532)
bind(c)
support for f2py
Both functions and subroutines can be annotated with bind(c)
. f2py
will handle both the correct type mapping, and preserve the unique label
for other C interfaces.
Note: bind(c, name = 'routine_name_other_than_fortran_routine')
is
not honored by the f2py
bindings by design, since bind(c)
with the
name
is meant to guarantee only the same name in C and Fortran, not in
Python and Fortran.
(gh-24555)
A new strict
option for several testing functions
The strict
keyword is now available for numpy.testing.assert_allclose
,
numpy.testing.assert_equal
, and numpy.testing.assert_array_less
. Setting
strict=True
will disable the broadcasting behaviour for scalars and ensure
that input arrays have the same data type.
(gh-24680,
gh-24770,
gh-24775)
Add np.core.umath.find
and np.core.umath.rfind
UFuncs
Add two find
and rfind
UFuncs that operate on unicode or byte
strings and are used in np.char
. They operate similar to str.find
and str.rfind
.
(gh-24868)
diagonal
and trace
for numpy.linalg
numpy.linalg.diagonal
and numpy.linalg.trace
have been added, which are
array API standard-compatible variants of numpy.diagonal
and numpy.trace
.
They differ in the default axis selection which define 2-D sub-arrays.
(gh-24887)
New long
and ulong
dtypes
numpy.long
and numpy.ulong
have been added as NumPy integers mapping to
C's long
and unsigned long
. Prior to NumPy 1.24, numpy.long
was an alias
to Python's int
.
(gh-24922)
svdvals
for numpy.linalg
numpy.linalg.svdvals
has been added. It computes singular values for (a stack
of) matrices. Executing np.svdvals(x)
is the same as calling np.svd(x, compute_uv=False, hermitian=False)
. This function is compatible with the array
API standard.
(gh-24940)
A new isdtype
function
numpy.isdtype
was added to provide a canonical way to classify NumPy's
dtypes in compliance with the array API standard.
(gh-25054)
A new astype
function
numpy.astype
was added to provide an array API standard-compatible
alternative to the numpy.ndarray.astype
method.
(gh-25079)
Array API compatible functions' aliases
13 aliases for existing functions were added to improve compatibility
with the array API standard:
- Trigonometry:
acos
,acosh
,asin
,asinh
,atan
,atanh
,
atan2
. - Bitwise:
bitwise_left_shift
,bitwise_invert
,
bitwise_right_shift
. - Misc:
concat
,permute_dims
,pow
. - In
numpy.linalg
:tensordot
,matmul
.
(gh-25086)
New unique_*
functions
The numpy.unique_all
, numpy.unique_counts
, numpy.unique_inverse
, and
numpy.unique_values
functions have been added. They provide functionality of
numpy.unique
with different sets of flags. They are array API
standard-compatible, and because the number of arrays they return does not
depend on the values of input arguments, they are easier to target for JIT
compilation.
(gh-25088)
Matrix transpose support for ndarrays
NumPy now offers support for calculating the matrix transpose of an
array (or stack of arrays). The matrix transpose is equivalent to
swapping the last two axes of an array. Both np.ndarray
and
np.ma.MaskedArray
now expose a .mT
attribute, and there is a
matching new numpy.matrix_transpose
function.
(gh-23762)
Array API compatible functions for numpy.linalg
Six new functions and two aliases were added to improve compatibility
with the Array API standard for `numpy.linalg`:
-
numpy.linalg.matrix_norm
- Computes the matrix norm of
a matrix (or a stack of matrices). -
numpy.linalg.vector_norm
- Computes the vector norm of
a vector (or batch of vectors). -
numpy.vecdot
- Computes the (vector) dot product of
two arrays. -
numpy.linalg.vecdot
- An alias for
numpy.vecdot
. -
numpy.linalg.matrix_transpose
- An alias for
numpy.matrix_transpose
.(gh-25155)
-
numpy.linalg.outer
has been added. It computes the
outer product of two vectors. It differs from
numpy.outer
by accepting one-dimensional arrays only.
This function is compatible with the array API standard.(gh-25101)
-
numpy.linalg.cross
has been added. It computes the
cross product of two (arrays of) 3-dimensional vectors. It differs
fromnumpy.cross
by accepting three-dimensional
vectors only. This function is compatible with the array API
standard.(gh-25145)
A correction
argument for var
and std
A correction
argument was added to numpy.var
and numpy.std
, which is an
array API standard compatible alternative to ddof
. As both arguments serve a
similar purpose, only one of them can be provided at the same time.
(gh-25169)
ndarray.device
and ndarray.to_device
An ndarray.device
attribute and ndarray.to_device
method were added
to numpy.ndarray
for array API standard compatibility.
Additionally, device
keyword-only arguments were added to:
numpy.asarray
, numpy.arange
, numpy.empty
, numpy.empty_like
,
numpy.eye
, numpy.full
, numpy.full_like
, numpy.linspace
, numpy.ones
,
numpy.ones_like
, numpy.zeros
, and numpy.zeros_like
.
For all these new arguments, only device="cpu"
is supported.
(gh-25233)
StringDType has been added to NumPy
We have added a new variable-width UTF-8 encoded string data type, implementing
a "NumPy array of Python strings", including support for a user-provided
missing data sentinel. It is intended as a drop-in replacement for arrays of
Python strings and missing data sentinels using the object dtype. See
NEP 55 and the documentation
of stringdtype for more details.
(gh-25347)
New keywords for cholesky
and pinv
The upper
and rtol
keywords were added to
numpy.linalg.cholesky
and numpy.linalg.pinv
,
respectively, to improve array API standard compatibility.
For numpy.linalg.pinv
, if neither rcond
nor rtol
is
specified, the rcond
's default is used. We plan to deprecate and
remove rcond
in the future.
(gh-25388)
New keywords for sort
, argsort
and linalg.matrix_rank
New keyword parameters were added to improve array API standard
compatibility:
rtol
was added tonumpy.linalg.matrix_rank
.stable
was added tonumpy.sort
and
numpy.argsort
.
(gh-25437)
New numpy.strings
namespace for string ufuncs
NumPy now implements some string operations as ufuncs. The old np.char
namespace is still available, and where possible the string manipulation
functions in that namespace have been updated to use the new ufuncs,
substantially improving their performance.
Where possible, we suggest updating code to use functions in
np.strings
instead of np.char
. In the future we may deprecate
np.char
in favor of np.strings
.
(gh-25463)
numpy.fft
support for different precisions and in-place calculations
The various FFT routines in numpy.fft
now do their
calculations natively in float, double, or long double precision,
depending on the input precision, instead of always calculating in
double precision. Hence, the calculation will now be less precise for
single and more precise for long double precision. The data type of the
output array will now be adjusted accordingly.
Furthermore, all FFT routines have gained an out
argument that can be
used for in-place calculations.
(gh-25536)
configtool and pkg-config support
A new numpy-config
CLI script is available that can be queried for the
NumPy version and for compile flags needed to use the NumPy C API. This
will allow build systems to better support the use of NumPy as a
dependency. Also, a numpy.pc
pkg-config file is now included with
Numpy. In order to find its location for use with PKG_CONFIG_PATH
, use
numpy-config --pkgconfigdir
.
(gh-25730)
Array API standard support in the main namespace
The main numpy
namespace now supports the array API standard. See
array-api-standard-compatibility
for
details.
(gh-25911)
Improvements
Strings are now supported by any
, all
, and the logical ufuncs.
(gh-25651)
Integer sequences as the shape argument for memmap
numpy.memmap
can now be created with any integer sequence
as the shape
argument, such as a list or numpy array of integers.
Previously, only the types of tuple and int could be used without
raising an error.
(gh-23729)
errstate
is now faster and context safe
The numpy.errstate
context manager/decorator is now faster
and safer. Previously, it was not context safe and had (rare) issues
with thread-safety.
(gh-23936)
AArch64 quicksort speed improved by using Highway's VQSort
The first introduction of the Google Highway library, using VQSort on
AArch64. Execution time is improved by up to 16x in some cases, see the
PR for benchmark results. Extensions to other platforms will be done in
the future.
(gh-24018)
Complex types - underlying C type changes
-
The underlying C types for all of NumPy's complex types have been
changed to use C99 complex types. -
While this change does not affect the memory layout of complex
types, it changes the API to be used to directly retrieve or write
the real or complex part of the complex number, since direct field
access (as inc.real
orc.imag
) is no longer an option. You can
now use utilities provided innumpy/npy_math.h
to do these
operations, like this:npy_cdouble c; npy_csetreal(&c, 1.0); npy_csetimag(&c, 0.0); printf("%d + %di\n", npy_creal(c), npy_cimag(c));
-
To ease cross-version compatibility, equivalent macros and a
compatibility layer have been added which can be used by downstream
packages to continue to support both NumPy 1.x and 2.x. See
complex-numbers
for more info. -
numpy/npy_common.h
now includescomplex.h
, which means that
complex
is now a reserved keyword.
(gh-24085)
iso_c_binding
support and improved common blocks for f2py
Previously, users would have to define their own custom f2cmap
file to
use type mappings defined by the Fortran2003 iso_c_binding
intrinsic
module. These type maps are now natively supported by f2py
(gh-24555)
f2py
now handles common
blocks which have kind
specifications from
modules. This further expands the usability of intrinsics like
iso_fortran_env
and iso_c_binding
.
(gh-25186)
Call str
automatically on third argument to functions like assert_equal
The third argument to functions like
numpy.testing.assert_equal
now has str
called on it
automatically. This way it mimics the built-in assert
statement, where
assert_equal(a, b, obj)
works like assert a == b, obj
.
(gh-24877)
Support for array-like atol
/rtol
in isclose
, allclose
The keywords atol
and rtol
in numpy.isclose
and
numpy.allclose
now accept both scalars and arrays. An
array, if given, must broadcast to the shapes of the first two array
arguments.
(gh-24878)
Consistent failure messages in test functions
Previously, some numpy.testing
assertions printed messages
that referred to the actual and desired results as x
and y
. Now,
these values are consistently referred to as ACTUAL
and DESIRED
.
(gh-24931)
n-D FFT transforms allow s[i] == -1
The numpy.fft.fftn
, numpy.fft.ifftn
,
numpy.fft.rfftn
, numpy.fft.irfftn
,
numpy.fft.fft2
, numpy.fft.ifft2
,
numpy.fft.rfft2
and numpy.fft.irfft2
functions now use the whole input array along the axis i
if
s[i] == -1
, in line with the array API standard.
(gh-25495)
Guard PyArrayScalar_VAL and PyUnicodeScalarObject for the limited API
PyUnicodeScalarObject
holds a PyUnicodeObject
, which is not
available when using Py_LIMITED_API
. Add guards to hide it and
consequently also make the PyArrayScalar_VAL
macro hidden.
(gh-25531)
Changes
-
np.gradient()
now returns a tuple rather than a list making the
return value immutable.(gh-23861)
-
Being fully context and thread-safe,
np.errstate
can only be
entered once now. -
np.setbufsize
is now tied tonp.errstate()
: leaving an
np.errstate
context will also reset thebufsize
.(gh-23936)
-
A new public
np.lib.array_utils
submodule has been introduced and
it currently contains three functions:byte_bounds
(moved from
np.lib.utils
),normalize_axis_tuple
andnormalize_axis_index
.(gh-24540)
-
Introduce
numpy.bool
as the new canonical name for
NumPy's boolean dtype, and makenumpy.bool\_
an alias
to it. Note that until NumPy 1.24,np.bool
was an alias to
Python's builtinbool
. The new name helps with array API standard
compatibility and is a more intuitive name.(gh-25080)
-
The
dtype.flags
value was previously stored as a signed integer.
This means that the aligned dtype struct flag lead to negative flags
being set (-128 rather than 128). This flag is now stored unsigned
(positive). Code which checks flags manually may need to adapt. This
may include code compiled with Cython 0.29.x.(gh-25816)
Representation of NumPy scalars changed
As per NEP 51, the scalar representation has been updated to include the type
information to avoid confusion with Python scalars.
Scalars are now printed as np.float64(3.0)
rather than just 3.0
.
This may disrupt workflows that store representations of numbers (e.g.,
to files) making it harder to read them. They should be stored as
explicit strings, for example by using str()
or f"{scalar!s}"
. For
the time being, affected users can use
np.set_printoptions(legacy="1.25")
to get the old behavior (with
possibly a few exceptions). Documentation of downstream projects may
require larger updates, if code snippets are tested. We are working on
tooling for
doctest-plus
to facilitate updates.
(gh-22449)
Truthiness of NumPy strings changed
NumPy strings previously were inconsistent about how they defined if the
string is True
or False
and the definition did not match the one
used by Python. Strings are now considered True
when they are
non-empty and False
when they are empty. This changes the following
distinct cases:
- Casts from string to boolean were previously roughly equivalent to
string_array.astype(np.int64).astype(bool)
, meaning that only
valid integers could be cast. Now a string of"0"
will be
consideredTrue
since it is not empty. If you need the old
behavior, you may use the above step (casting to integer first) or
string_array == "0"
(if the input is only ever0
or1
). To get
the new result on old NumPy versions usestring_array != ""
. np.nonzero(string_array)
previously ignored whitespace so that a
string only containing whitespace was consideredFalse
. Whitespace
is now consideredTrue
.
This change does not affect np.loadtxt
, np.fromstring
, or
np.genfromtxt
. The first two still use the integer definition, while
genfromtxt
continues to match for "true"
(ignoring case). However,
if np.bool_
is used as a converter the result will change.
The change does affect np.fromregex
as it uses direct assignments.
(gh-23871)
A mean
keyword was added to var and std function
Often when the standard deviation is needed the mean is also needed. The
same holds for the variance and the mean. Until now the mean is then
calculated twice, the change introduced here for the numpy.var
and
numpy.std
functions allows for passing in a precalculated mean as an keyword
argument. See the docstrings for details and an example illustrating the
speed-up.
(gh-24126)
Remove datetime64 deprecation warning when constructing with timezone
The numpy.datetime64
method now issues a UserWarning rather than a
DeprecationWarning whenever a timezone is included in the datetime string that
is provided.
(gh-24193)
Default integer dtype is now 64-bit on 64-bit Windows
The default NumPy integer is now 64-bit on all 64-bit systems as the
historic 32-bit default on Windows was a common source of issues. Most
users should not notice this. The main issues may occur with code
interfacing with libraries written in a compiled language like C. For
more information see migration_windows_int64
.
(gh-24224)
Renamed numpy.core
to numpy._core
Accessing numpy.core
now emits a DeprecationWarning. In practice we
have found that most downstream usage of numpy.core
was to access
functionality that is available in the main numpy
namespace. If for
some reason you are using functionality in numpy.core
that is not
available in the main numpy
namespace, this means you are likely using
private NumPy internals. You can still access these internals via
numpy._core
without a deprecation warning but we do not provide any
backward compatibility guarantees for NumPy internals. Please open an
issue if you think a mistake was made and something needs to be made
public.
(gh-24634)
The "relaxed strides" debug build option, which was previously enabled
through the NPY_RELAXED_STRIDES_DEBUG
environment variable or the
-Drelaxed-strides-debug
config-settings flag has been removed.
(gh-24717)
Redefinition of np.intp
/np.uintp
(almost never a change)
Due to the actual use of these types almost always matching the use of
size_t
/Py_ssize_t
this is now the definition in C. Previously, it
matched intptr_t
and uintptr_t
which would often have been subtly
incorrect. This has no effect on the vast majority of machines since the
size of these types only differ on extremely niche platforms.
However, it means that:
- Pointers may not necessarily fit into an
intp
typed array anymore.
Thep
andP
character codes can still be used, however. - Creating
intptr_t
oruintptr_t
typed arrays in C remains
possible in a cross-platform way viaPyArray_DescrFromType('p')
. - The new character codes
nN
were introduced. - It is now correct to use the Python C-API functions when parsing to
npy_intp
typed arguments.
(gh-24888)
numpy.fft.helper
made private
numpy.fft.helper
was renamed to numpy.fft._helper
to indicate that
it is a private submodule. All public functions exported by it should be
accessed from numpy.fft
.
(gh-24945)
numpy.linalg.linalg
made private
numpy.linalg.linalg
was renamed to numpy.linalg._linalg
to indicate
that it is a private submodule. All public functions exported by it
should be accessed from numpy.linalg
.
(gh-24946)
Out-of-bound axis not the same as axis=None
In some cases axis=32
or for concatenate any large value was the same
as axis=None
. Except for concatenate
this was deprecate. Any out of
bound axis value will now error, make sure to use axis=None
.
(gh-25149)
New copy
keyword meaning for array
and asarray
constructors
Now numpy.array
and numpy.asarray
support
three values for copy
parameter:
None
- A copy will only be made if it is necessary.True
- Always make a copy.False
- Never make a copy. If a copy is required aValueError
is
raised.
The meaning of False
changed as it now raises an exception if a copy
is needed.
(gh-25168)
The __array__
special method now takes a copy
keyword argument.
NumPy will pass copy
to the __array__
special method in situations
where it would be set to a non-default value (e.g. in a call to
np.asarray(some_object, copy=False)
). Currently, if an unexpected
keyword argument error is raised after this, NumPy will print a warning
and re-try without the copy
keyword argument. Implementations of
objects implementing the __array__
protocol should accept a copy
keyword argument with the same meaning as when passed to
numpy.array
or numpy.asarray
.
(gh-25168)
Cleanup of initialization of numpy.dtype
with strings with commas
The interpretation of strings with commas is changed slightly, in that a
trailing comma will now always create a structured dtype. E.g., where
previously np.dtype("i")
and np.dtype("i,")
were treated as
identical, now np.dtype("i,")
will create a structured dtype, with a
single field. This is analogous to np.dtype("i,i")
creating a
structured dtype with two fields, and makes the behaviour consistent
with that expected of tuples.
At the same time, the use of single number surrounded by parenthesis to
indicate a sub-array shape, like in np.dtype("(2)i,")
, is deprecated.
Instead; one should use np.dtype("(2,)i")
or np.dtype("2i")
.
Eventually, using a number in parentheses will raise an exception, like
is the case for initializations without a comma, like
np.dtype("(2)i")
.
(gh-25434)
Change in how complex sign is calculated
Following the array API standard, the complex sign is now calculated as
z / |z|
(instead of the rather less logical case where the sign of the
real part was taken, unless the real part was zero, in which case the
sign of the imaginary part was returned). Like for real numbers, zero is
returned if z==0
.
(gh-25441)
Return types of functions that returned a list of arrays
Functions that returned a list of ndarrays have been changed to return a
tuple of ndarrays instead. Returning tuples consistently whenever a
sequence of arrays is returned makes it easier for JIT compilers like
Numba, as well as for static type checkers in some cases, to support
these functions. Changed functions are: numpy.atleast_1d
, numpy.atleast_2d
,
numpy.atleast_3d
, numpy.broadcast_arrays
, numpy.meshgrid
,
numpy.ogrid
, numpy.histogramdd
.
np.unique
return_inverse
shape for multi-dimensional inputs
When multi-dimensional inputs are passed to np.unique
with
return_inverse=True
, the unique_inverse
output is now shaped such
that the input can be reconstructed directly using
np.take(unique, unique_inverse)
when axis=None
, and
np.take_along_axis(unique, unique_inverse, axis=axis)
otherwise.
any
and all
return booleans for object arrays
The any
and all
functions and methods now return booleans also for
object arrays. Previously, they did a reduction which behaved like the
Python or
and and
operators which evaluates to one of the arguments.
You can use np.logical_or.reduce
and np.logical_and.reduce
to
achieve the previous behavior.
(gh-25712)
Content from release note snippets in doc/release/upcoming_changes:
Checksums
MD5
b2f97f907cc640f5f619ea4ebd1231d3 numpy-2.0.0b1-cp310-cp310-macosx_10_9_x86_64.whl
db158043b6fad6e523e23b3eb2de5d88 numpy-2.0.0b1-cp310-cp310-macosx_11_0_arm64.whl
39086961c062d97c5b42da057b9b1947 numpy-2.0.0b1-cp310-cp310-macosx_14_0_arm64.whl
3362d35bf69b852b98b41b8373253a0f numpy-2.0.0b1-cp310-cp310-macosx_14_0_x86_64.whl
66e907969e32ec43e887cabcc1884763 numpy-2.0.0b1-cp310-cp310-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
b8d1bece144e3b6aae641d44821f815f numpy-2.0.0b1-cp310-cp310-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
96ab156ec312bb451e8c5e19de4a28b7 numpy-2.0.0b1-cp310-cp310-musllinux_1_1_aarch64.whl
c04819a4f3395b81d124ffc6330925e9 numpy-2.0.0b1-cp310-cp310-musllinux_1_1_x86_64.whl
6af68b8eb8fe583ffabab9bd7da1c620 numpy-2.0.0b1-cp310-cp310-win32.whl
3b8a9514e5795985bcba20e213d55b54 numpy-2.0.0b1-cp310-cp310-win_amd64.whl
0128ad9249f70d97a057a23e0cef1515 numpy-2.0.0b1-cp311-cp311-macosx_10_9_x86_64.whl
612c018a7676ce3747cb863762750e1d numpy-2.0.0b1-cp311-cp311-macosx_11_0_arm64.whl
6b1480446aff53c71c903fc1248bca94 numpy-2.0.0b1-cp311-cp311-macosx_14_0_arm64.whl
8d66a0af99edf30dc9de487b3f8c1639 numpy-2.0.0b1-cp311-cp311-macosx_14_0_x86_64.whl
f9154a0885b2647d7e81f32900390ebb numpy-2.0.0b1-cp311-cp311-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
9dd14e2b594a2d47eb25ecc759d5adaa numpy-2.0.0b1-cp311-cp311-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
8434d07fc4eb80c5df9ae5ebf95546eb numpy-2.0.0b1-cp311-cp311-musllinux_1_1_aarch64.whl
a0402697c93a9d6bc8d979fabd6bf179 numpy-2.0.0b1-cp311-cp311-musllinux_1_1_x86_64.whl
2ba67ffb4b92b54394b6929b3a899cb2 numpy-2.0.0b1-cp311-cp311-win32.whl
d75e2f02c698e492b7b07f0659f9bbe4 numpy-2.0.0b1-cp311-cp311-win_amd64.whl
558fefd135de6fcebe2b94d857a84c32 numpy-2.0.0b1-cp312-cp312-macosx_10_9_x86_64.whl
d684790e4509e7daa99a1aef1d0be536 numpy-2.0.0b1-cp312-cp312-macosx_11_0_arm64.whl
fd5d4f1d1da0cc685c54e9abd2f9dceb numpy-2.0.0b1-cp312-cp312-macosx_14_0_arm64.whl
65183c1302348d3db60eaf3b62c1e577 numpy-2.0.0b1-cp312-cp312-macosx_14_0_x86_64.whl
305eaf68e214011557303988f4635271 numpy-2.0.0b1-cp312-cp312-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
e3a84e27effd888cf93eb2c1aad759e7 numpy-2.0.0b1-cp312-cp312-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
88eef47ecdd11ac0939291abe0c74b6f numpy-2.0.0b1-cp312-cp312-musllinux_1_1_aarch64.whl
fd390078c0046c20a659035c1826185f numpy-2.0.0b1-cp312-cp312-musllinux_1_1_x86_64.whl
23db11989d2d0086ff12655355245a2a numpy-2.0.0b1-cp312-cp312-win32.whl
323d05ef29a9c8166d865ab221faf7dc numpy-2.0.0b1-cp312-cp312-win_amd64.whl
f5ad7adf599b65050ccd116802f0265d numpy-2.0.0b1-cp39-cp39-macosx_10_9_x86_64.whl
89a94dddb18e4210e01ee6ca24012fcb numpy-2.0.0b1-cp39-cp39-macosx_11_0_arm64.whl
409a537dc5ea249b3e6868dd37932342 numpy-2.0.0b1-cp39-cp39-macosx_14_0_arm64.whl
0db893de846425d58b90f05c1db3d191 numpy-2.0.0b1-cp39-cp39-macosx_14_0_x86_64.whl
c73ba41d166a5f2e72cdc48b8554c6e6 numpy-2.0.0b1-cp39-cp39-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
786236fc9099283255133273535b8de0 numpy-2.0.0b1-cp39-cp39-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
f2e8717957a6b3b37f881e8939a2af37 numpy-2.0.0b1-cp39-cp39-musllinux_1_1_aarch64.whl
dad671b45f6e13c28ead06064b03eaee numpy-2.0.0b1-cp39-cp39-musllinux_1_1_x86_64.whl
76f8f89ff91d06df684cf47d7ea6d8ab numpy-2.0.0b1-cp39-cp39-win32.whl
d4dcbd6157783aa0e78710549f13876f numpy-2.0.0b1-cp39-cp39-win_amd64.whl
41a13de3afff77390b0d1ea3c7e407db numpy-2.0.0b1-pp39-pypy39_pp73-macosx_10_9_x86_64.whl
fc2ff82233376f853161c7f9bc6d44b7 numpy-2.0.0b1-pp39-pypy39_pp73-macosx_14_0_arm64.whl
860609ee9f1f24d4f28fbbcf3d31cdc9 numpy-2.0.0b1-pp39-pypy39_pp73-macosx_14_0_x86_64.whl
2a97175cec7a5b1280ed2a991fea23ff numpy-2.0.0b1-pp39-pypy39_pp73-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
1656013175e650e053c15fd886be58f1 numpy-2.0.0b1-pp39-pypy39_pp73-win_amd64.whl
c06e95d7cadfa33a1f4549c9a5dcba05 numpy-2.0.0b1.tar.gz
SHA256
411ed8eb48eb679fc732f22e90c9adb994ec6ad2d9c2f53593325a975f9fa501 numpy-2.0.0b1-cp310-cp310-macosx_10_9_x86_64.whl
f8aca0561166702070ea9abcafd70da44df48be70d16f0a886e359127436fdcc numpy-2.0.0b1-cp310-cp310-macosx_11_0_arm64.whl
0d217dae0f20a3400c1d80aa8401af9de93b9bb4ea7518b8ba200ff8ff62529e numpy-2.0.0b1-cp310-cp310-macosx_14_0_arm64.whl
824351cb4cce66c1f8e16c1698c01de8d5e4197461f78197c327281f107fc1b2 numpy-2.0.0b1-cp310-cp310-macosx_14_0_x86_64.whl
cae0959a4f5a9c16896a87a43c9e81384f48b69f835f55050948071488820486 numpy-2.0.0b1-cp310-cp310-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
3d47a42c1e48e46dbbe32e0395f8aa6e8ddd251771ed9ec47fc07aa89b8aac89 numpy-2.0.0b1-cp310-cp310-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
909024f923c019d1b9dca16871844f1c313c422bd430a0b7e4a24a3acb766483 numpy-2.0.0b1-cp310-cp310-musllinux_1_1_aarch64.whl
fc6e82bea99727aeed964808f26bed95323825a75e94c015eb913fb6ec3dbdf8 numpy-2.0.0b1-cp310-cp310-musllinux_1_1_x86_64.whl
36862cad55650afbcb3f0e3a5edc07ba4c1090eb649208a41fadcf82cf1b2966 numpy-2.0.0b1-cp310-cp310-win32.whl
0e6a63c725143a6be0e48effcf01b8361b80ab20e2444704356f9d9db48ba429 numpy-2.0.0b1-cp310-cp310-win_amd64.whl
e6c3ba4bcb6cf3fd4ace244075fa214b4f0c090f12437378200a2de68144c166 numpy-2.0.0b1-cp311-cp311-macosx_10_9_x86_64.whl
89bbb14534e53c6175aabc8449a8bdf83f02da62f13d1b5facbb2fd1fecae2e2 numpy-2.0.0b1-cp311-cp311-macosx_11_0_arm64.whl
b14b6e6ca51afdcfc589cb9d6fb73aedf38009a1a0ecab15f77e3d0e0754cac0 numpy-2.0.0b1-cp311-cp311-macosx_14_0_arm64.whl
ffef68423c1edc5d10321f9787fb9d8c20a36fc08ffdba863d103924d02dadce numpy-2.0.0b1-cp311-cp311-macosx_14_0_x86_64.whl
7e8725313b8a8aaa9cfac450713b1a74a8d79ae010ee0d0dd97505abf54d247b numpy-2.0.0b1-cp311-cp311-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
d83e18f1c4164dbcaa01adc8f4a3aebc3c5fa635d2009d8dc1bf53dd7eab0063 numpy-2.0.0b1-cp311-cp311-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
91e37a5bb38c11bde547aefeb79dd382b5d9d1d140931927bca46c9d198e08f3 numpy-2.0.0b1-cp311-cp311-musllinux_1_1_aarch64.whl
d39f1005a627c5960f67b02c1f76f265e0d4219b6d7948a7809dc14443fcbeb6 numpy-2.0.0b1-cp311-cp311-musllinux_1_1_x86_64.whl
3ed4afbcdb8db622b90ef33bf0c0d080f287ec590032f9033be5cbc51e005b66 numpy-2.0.0b1-cp311-cp311-win32.whl
941382abe21d26222310275a91f053386450b5364f1307641d03babfec5b1931 numpy-2.0.0b1-cp311-cp311-win_amd64.whl
a78a38ff86aa651534979d597fdb178c7ae2c9934d95bcc921971ceea14ef54a numpy-2.0.0b1-cp312-cp312-macosx_10_9_x86_64.whl
e5222fb05011c310d294c40e2b8640c9351aaf3238c0605486a3f041a7befabd numpy-2.0.0b1-cp312-cp312-macosx_11_0_arm64.whl
0f69c008a8533879ea0480fe11b28154c0dc12567522406f2c887bc549a98865 numpy-2.0.0b1-cp312-cp312-macosx_14_0_arm64.whl
a5b47099876fceefb5ac4d2cfe4ee7337de22253aafe6f2e545b84d100bf9e22 numpy-2.0.0b1-cp312-cp312-macosx_14_0_x86_64.whl
a81816e4dc75351dd1ce2d84f381856b8962eef1757ddfe13007d2a8bb966fda numpy-2.0.0b1-cp312-cp312-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
3ecb219af16b0dbf58bbe1fdb4d074582f9a99567d85c630cf82c3b40168a15d numpy-2.0.0b1-cp312-cp312-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
7479d8f43dd78a3bd1c8a3c7c9b06e71639c480a0223c31a4aeb2c7e8fd62151 numpy-2.0.0b1-cp312-cp312-musllinux_1_1_aarch64.whl
1665b832541449c7079ee9d41f334ab832a1d84511cc834c0bc8d98bf96d1df5 numpy-2.0.0b1-cp312-cp312-musllinux_1_1_x86_64.whl
585471edf1f205fb589632581cc7b30c6c0e78d79b3c754739bb62ff568fa587 numpy-2.0.0b1-cp312-cp312-win32.whl
881df25d857873947d54dbed01d98c417f3feb5df86ece719eebf1edbbb2095c numpy-2.0.0b1-cp312-cp312-win_amd64.whl
797dc478feed31f78bca1c69d9a167c6294599927c184f4e9b569ad8895ca6e5 numpy-2.0.0b1-cp39-cp39-macosx_10_9_x86_64.whl
49cb06682f4588c2553a63445b7e37aec731452fe380c3bd142377783a9ba014 numpy-2.0.0b1-cp39-cp39-macosx_11_0_arm64.whl
5fd7ec50b9650ac0aa4fd318eceb9059ed3c0ab3aa79d5f260a10158521f9770 numpy-2.0.0b1-cp39-cp39-macosx_14_0_arm64.whl
72526252a5d1da5067181bfd3df9cc6d7dcd024b757f5d35e8f1d0c08cb729c1 numpy-2.0.0b1-cp39-cp39-macosx_14_0_x86_64.whl
7870b854823217f34e6258328f46e40f68784f61408deb37a29ca64762c60c10 numpy-2.0.0b1-cp39-cp39-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
26a0978595ac2e8160d27f7537ff94402eaaf3ea7a768e7f99170ed91453d1bf numpy-2.0.0b1-cp39-cp39-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
5801a93e424c12366d8b0b411dfeb7102f7429f0934059a39b1529f02ea2606b numpy-2.0.0b1-cp39-cp39-musllinux_1_1_aarch64.whl
2f67038ecdf4b372d81fa00530547a5d04b77da5b1e4fc55f58021f3135331ea numpy-2.0.0b1-cp39-cp39-musllinux_1_1_x86_64.whl
f32b6ec16518b3ba1a2d3a100d9b413cf24aaeeefdec19f1cddec55cb4a31dac numpy-2.0.0b1-cp39-cp39-win32.whl
70a22408ed088725fe44a6f55a077d1f704977b262e53d30ba485a01229028a3 numpy-2.0.0b1-cp39-cp39-win_amd64.whl
a69f1624d036953f3f2795f22e6be452ee6d24937ae14f77c2e536589e20caa2 numpy-2.0.0b1-pp39-pypy39_pp73-macosx_10_9_x86_64.whl
c27970540ee6b4b8325779cd22eee0283cb9dc6511130ff54e774fcd0a261d4b numpy-2.0.0b1-pp39-pypy39_pp73-macosx_14_0_arm64.whl
393adcc241ff7010b43e4660710a43c322189ff67461afba18bbaf9f5581b221 numpy-2.0.0b1-pp39-pypy39_pp73-macosx_14_0_x86_64.whl
4205b3efa27b74cb096443bdda178f5032ffc6b41306a7d4a0b903b4b614b146 numpy-2.0.0b1-pp39-pypy39_pp73-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
52f9cd632f9f5e179e98769d76702ce9a307439f36191607d5ee06cb8a986d01 numpy-2.0.0b1-pp39-pypy39_pp73-win_amd64.whl
e0bb33a37d0d0b9a19cd41a093877f830e06bd4d989341b9792896cf08e629f7 numpy-2.0.0b1.tar.gz