Server IP : 66.29.132.122 / Your IP : 3.148.115.16 Web Server : LiteSpeed System : Linux business142.web-hosting.com 4.18.0-553.lve.el8.x86_64 #1 SMP Mon May 27 15:27:34 UTC 2024 x86_64 User : admazpex ( 531) PHP Version : 7.2.34 Disable Function : NONE MySQL : OFF | cURL : ON | WGET : ON | Perl : ON | Python : ON | Sudo : OFF | Pkexec : OFF Directory : /opt/cloudlinux/venv/lib64/python3.11/site-packages/numpy/core/tests/ |
Upload File : |
import sys import gc from hypothesis import given from hypothesis.extra import numpy as hynp import pytest import numpy as np from numpy.testing import ( assert_, assert_equal, assert_raises, assert_warns, HAS_REFCOUNT, assert_raises_regex, ) from numpy.core.arrayprint import _typelessdata import textwrap class TestArrayRepr: def test_nan_inf(self): x = np.array([np.nan, np.inf]) assert_equal(repr(x), 'array([nan, inf])') def test_subclass(self): class sub(np.ndarray): pass # one dimensional x1d = np.array([1, 2]).view(sub) assert_equal(repr(x1d), 'sub([1, 2])') # two dimensional x2d = np.array([[1, 2], [3, 4]]).view(sub) assert_equal(repr(x2d), 'sub([[1, 2],\n' ' [3, 4]])') # two dimensional with flexible dtype xstruct = np.ones((2,2), dtype=[('a', '<i4')]).view(sub) assert_equal(repr(xstruct), "sub([[(1,), (1,)],\n" " [(1,), (1,)]], dtype=[('a', '<i4')])" ) @pytest.mark.xfail(reason="See gh-10544") def test_object_subclass(self): class sub(np.ndarray): def __new__(cls, inp): obj = np.asarray(inp).view(cls) return obj def __getitem__(self, ind): ret = super().__getitem__(ind) return sub(ret) # test that object + subclass is OK: x = sub([None, None]) assert_equal(repr(x), 'sub([None, None], dtype=object)') assert_equal(str(x), '[None None]') x = sub([None, sub([None, None])]) assert_equal(repr(x), 'sub([None, sub([None, None], dtype=object)], dtype=object)') assert_equal(str(x), '[None sub([None, None], dtype=object)]') def test_0d_object_subclass(self): # make sure that subclasses which return 0ds instead # of scalars don't cause infinite recursion in str class sub(np.ndarray): def __new__(cls, inp): obj = np.asarray(inp).view(cls) return obj def __getitem__(self, ind): ret = super().__getitem__(ind) return sub(ret) x = sub(1) assert_equal(repr(x), 'sub(1)') assert_equal(str(x), '1') x = sub([1, 1]) assert_equal(repr(x), 'sub([1, 1])') assert_equal(str(x), '[1 1]') # check it works properly with object arrays too x = sub(None) assert_equal(repr(x), 'sub(None, dtype=object)') assert_equal(str(x), 'None') # plus recursive object arrays (even depth > 1) y = sub(None) x[()] = y y[()] = x assert_equal(repr(x), 'sub(sub(sub(..., dtype=object), dtype=object), dtype=object)') assert_equal(str(x), '...') x[()] = 0 # resolve circular references for garbage collector # nested 0d-subclass-object x = sub(None) x[()] = sub(None) assert_equal(repr(x), 'sub(sub(None, dtype=object), dtype=object)') assert_equal(str(x), 'None') # gh-10663 class DuckCounter(np.ndarray): def __getitem__(self, item): result = super().__getitem__(item) if not isinstance(result, DuckCounter): result = result[...].view(DuckCounter) return result def to_string(self): return {0: 'zero', 1: 'one', 2: 'two'}.get(self.item(), 'many') def __str__(self): if self.shape == (): return self.to_string() else: fmt = {'all': lambda x: x.to_string()} return np.array2string(self, formatter=fmt) dc = np.arange(5).view(DuckCounter) assert_equal(str(dc), "[zero one two many many]") assert_equal(str(dc[0]), "zero") def test_self_containing(self): arr0d = np.array(None) arr0d[()] = arr0d assert_equal(repr(arr0d), 'array(array(..., dtype=object), dtype=object)') arr0d[()] = 0 # resolve recursion for garbage collector arr1d = np.array([None, None]) arr1d[1] = arr1d assert_equal(repr(arr1d), 'array([None, array(..., dtype=object)], dtype=object)') arr1d[1] = 0 # resolve recursion for garbage collector first = np.array(None) second = np.array(None) first[()] = second second[()] = first assert_equal(repr(first), 'array(array(array(..., dtype=object), dtype=object), dtype=object)') first[()] = 0 # resolve circular references for garbage collector def test_containing_list(self): # printing square brackets directly would be ambiguuous arr1d = np.array([None, None]) arr1d[0] = [1, 2] arr1d[1] = [3] assert_equal(repr(arr1d), 'array([list([1, 2]), list([3])], dtype=object)') def test_void_scalar_recursion(self): # gh-9345 repr(np.void(b'test')) # RecursionError ? def test_fieldless_structured(self): # gh-10366 no_fields = np.dtype([]) arr_no_fields = np.empty(4, dtype=no_fields) assert_equal(repr(arr_no_fields), 'array([(), (), (), ()], dtype=[])') class TestComplexArray: def test_str(self): rvals = [0, 1, -1, np.inf, -np.inf, np.nan] cvals = [complex(rp, ip) for rp in rvals for ip in rvals] dtypes = [np.complex64, np.cdouble, np.clongdouble] actual = [str(np.array([c], dt)) for c in cvals for dt in dtypes] wanted = [ '[0.+0.j]', '[0.+0.j]', '[0.+0.j]', '[0.+1.j]', '[0.+1.j]', '[0.+1.j]', '[0.-1.j]', '[0.-1.j]', '[0.-1.j]', '[0.+infj]', '[0.+infj]', '[0.+infj]', '[0.-infj]', '[0.-infj]', '[0.-infj]', '[0.+nanj]', '[0.+nanj]', '[0.+nanj]', '[1.+0.j]', '[1.+0.j]', '[1.+0.j]', '[1.+1.j]', '[1.+1.j]', '[1.+1.j]', '[1.-1.j]', '[1.-1.j]', '[1.-1.j]', '[1.+infj]', '[1.+infj]', '[1.+infj]', '[1.-infj]', '[1.-infj]', '[1.-infj]', '[1.+nanj]', '[1.+nanj]', '[1.+nanj]', '[-1.+0.j]', '[-1.+0.j]', '[-1.+0.j]', '[-1.+1.j]', '[-1.+1.j]', '[-1.+1.j]', '[-1.-1.j]', '[-1.-1.j]', '[-1.-1.j]', '[-1.+infj]', '[-1.+infj]', '[-1.+infj]', '[-1.-infj]', '[-1.-infj]', '[-1.-infj]', '[-1.+nanj]', '[-1.+nanj]', '[-1.+nanj]', '[inf+0.j]', '[inf+0.j]', '[inf+0.j]', '[inf+1.j]', '[inf+1.j]', '[inf+1.j]', '[inf-1.j]', '[inf-1.j]', '[inf-1.j]', '[inf+infj]', '[inf+infj]', '[inf+infj]', '[inf-infj]', '[inf-infj]', '[inf-infj]', '[inf+nanj]', '[inf+nanj]', '[inf+nanj]', '[-inf+0.j]', '[-inf+0.j]', '[-inf+0.j]', '[-inf+1.j]', '[-inf+1.j]', '[-inf+1.j]', '[-inf-1.j]', '[-inf-1.j]', '[-inf-1.j]', '[-inf+infj]', '[-inf+infj]', '[-inf+infj]', '[-inf-infj]', '[-inf-infj]', '[-inf-infj]', '[-inf+nanj]', '[-inf+nanj]', '[-inf+nanj]', '[nan+0.j]', '[nan+0.j]', '[nan+0.j]', '[nan+1.j]', '[nan+1.j]', '[nan+1.j]', '[nan-1.j]', '[nan-1.j]', '[nan-1.j]', '[nan+infj]', '[nan+infj]', '[nan+infj]', '[nan-infj]', '[nan-infj]', '[nan-infj]', '[nan+nanj]', '[nan+nanj]', '[nan+nanj]'] for res, val in zip(actual, wanted): assert_equal(res, val) class TestArray2String: def test_basic(self): """Basic test of array2string.""" a = np.arange(3) assert_(np.array2string(a) == '[0 1 2]') assert_(np.array2string(a, max_line_width=4, legacy='1.13') == '[0 1\n 2]') assert_(np.array2string(a, max_line_width=4) == '[0\n 1\n 2]') def test_unexpected_kwarg(self): # ensure than an appropriate TypeError # is raised when array2string receives # an unexpected kwarg with assert_raises_regex(TypeError, 'nonsense'): np.array2string(np.array([1, 2, 3]), nonsense=None) def test_format_function(self): """Test custom format function for each element in array.""" def _format_function(x): if np.abs(x) < 1: return '.' elif np.abs(x) < 2: return 'o' else: return 'O' x = np.arange(3) x_hex = "[0x0 0x1 0x2]" x_oct = "[0o0 0o1 0o2]" assert_(np.array2string(x, formatter={'all':_format_function}) == "[. o O]") assert_(np.array2string(x, formatter={'int_kind':_format_function}) == "[. o O]") assert_(np.array2string(x, formatter={'all':lambda x: "%.4f" % x}) == "[0.0000 1.0000 2.0000]") assert_equal(np.array2string(x, formatter={'int':lambda x: hex(x)}), x_hex) assert_equal(np.array2string(x, formatter={'int':lambda x: oct(x)}), x_oct) x = np.arange(3.) assert_(np.array2string(x, formatter={'float_kind':lambda x: "%.2f" % x}) == "[0.00 1.00 2.00]") assert_(np.array2string(x, formatter={'float':lambda x: "%.2f" % x}) == "[0.00 1.00 2.00]") s = np.array(['abc', 'def']) assert_(np.array2string(s, formatter={'numpystr':lambda s: s*2}) == '[abcabc defdef]') def test_structure_format_mixed(self): dt = np.dtype([('name', np.str_, 16), ('grades', np.float64, (2,))]) x = np.array([('Sarah', (8.0, 7.0)), ('John', (6.0, 7.0))], dtype=dt) assert_equal(np.array2string(x), "[('Sarah', [8., 7.]) ('John', [6., 7.])]") np.set_printoptions(legacy='1.13') try: # for issue #5692 A = np.zeros(shape=10, dtype=[("A", "M8[s]")]) A[5:].fill(np.datetime64('NaT')) assert_equal( np.array2string(A), textwrap.dedent("""\ [('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('NaT',) ('NaT',) ('NaT',) ('NaT',) ('NaT',)]""") ) finally: np.set_printoptions(legacy=False) # same again, but with non-legacy behavior assert_equal( np.array2string(A), textwrap.dedent("""\ [('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ( 'NaT',) ( 'NaT',) ( 'NaT',) ( 'NaT',) ( 'NaT',)]""") ) # and again, with timedeltas A = np.full(10, 123456, dtype=[("A", "m8[s]")]) A[5:].fill(np.datetime64('NaT')) assert_equal( np.array2string(A), textwrap.dedent("""\ [(123456,) (123456,) (123456,) (123456,) (123456,) ( 'NaT',) ( 'NaT',) ( 'NaT',) ( 'NaT',) ( 'NaT',)]""") ) def test_structure_format_int(self): # See #8160 struct_int = np.array([([1, -1],), ([123, 1],)], dtype=[('B', 'i4', 2)]) assert_equal(np.array2string(struct_int), "[([ 1, -1],) ([123, 1],)]") struct_2dint = np.array([([[0, 1], [2, 3]],), ([[12, 0], [0, 0]],)], dtype=[('B', 'i4', (2, 2))]) assert_equal(np.array2string(struct_2dint), "[([[ 0, 1], [ 2, 3]],) ([[12, 0], [ 0, 0]],)]") def test_structure_format_float(self): # See #8172 array_scalar = np.array( (1., 2.1234567890123456789, 3.), dtype=('f8,f8,f8')) assert_equal(np.array2string(array_scalar), "(1., 2.12345679, 3.)") def test_unstructured_void_repr(self): a = np.array([27, 91, 50, 75, 7, 65, 10, 8, 27, 91, 51, 49,109, 82,101,100], dtype='u1').view('V8') assert_equal(repr(a[0]), r"void(b'\x1B\x5B\x32\x4B\x07\x41\x0A\x08')") assert_equal(str(a[0]), r"b'\x1B\x5B\x32\x4B\x07\x41\x0A\x08'") assert_equal(repr(a), r"array([b'\x1B\x5B\x32\x4B\x07\x41\x0A\x08'," "\n" r" b'\x1B\x5B\x33\x31\x6D\x52\x65\x64'], dtype='|V8')") assert_equal(eval(repr(a), vars(np)), a) assert_equal(eval(repr(a[0]), vars(np)), a[0]) def test_edgeitems_kwarg(self): # previously the global print options would be taken over the kwarg arr = np.zeros(3, int) assert_equal( np.array2string(arr, edgeitems=1, threshold=0), "[0 ... 0]" ) def test_summarize_1d(self): A = np.arange(1001) strA = '[ 0 1 2 ... 998 999 1000]' assert_equal(str(A), strA) reprA = 'array([ 0, 1, 2, ..., 998, 999, 1000])' assert_equal(repr(A), reprA) def test_summarize_2d(self): A = np.arange(1002).reshape(2, 501) strA = '[[ 0 1 2 ... 498 499 500]\n' \ ' [ 501 502 503 ... 999 1000 1001]]' assert_equal(str(A), strA) reprA = 'array([[ 0, 1, 2, ..., 498, 499, 500],\n' \ ' [ 501, 502, 503, ..., 999, 1000, 1001]])' assert_equal(repr(A), reprA) def test_summarize_structure(self): A = (np.arange(2002, dtype="<i8").reshape(2, 1001) .view([('i', "<i8", (1001,))])) strA = ("[[([ 0, 1, 2, ..., 998, 999, 1000],)]\n" " [([1001, 1002, 1003, ..., 1999, 2000, 2001],)]]") assert_equal(str(A), strA) reprA = ("array([[([ 0, 1, 2, ..., 998, 999, 1000],)],\n" " [([1001, 1002, 1003, ..., 1999, 2000, 2001],)]],\n" " dtype=[('i', '<i8', (1001,))])") assert_equal(repr(A), reprA) B = np.ones(2002, dtype=">i8").view([('i', ">i8", (2, 1001))]) strB = "[([[1, 1, 1, ..., 1, 1, 1], [1, 1, 1, ..., 1, 1, 1]],)]" assert_equal(str(B), strB) reprB = ( "array([([[1, 1, 1, ..., 1, 1, 1], [1, 1, 1, ..., 1, 1, 1]],)],\n" " dtype=[('i', '>i8', (2, 1001))])" ) assert_equal(repr(B), reprB) C = (np.arange(22, dtype="<i8").reshape(2, 11) .view([('i1', "<i8"), ('i10', "<i8", (10,))])) strC = "[[( 0, [ 1, ..., 10])]\n [(11, [12, ..., 21])]]" assert_equal(np.array2string(C, threshold=1, edgeitems=1), strC) def test_linewidth(self): a = np.full(6, 1) def make_str(a, width, **kw): return np.array2string(a, separator="", max_line_width=width, **kw) assert_equal(make_str(a, 8, legacy='1.13'), '[111111]') assert_equal(make_str(a, 7, legacy='1.13'), '[111111]') assert_equal(make_str(a, 5, legacy='1.13'), '[1111\n' ' 11]') assert_equal(make_str(a, 8), '[111111]') assert_equal(make_str(a, 7), '[11111\n' ' 1]') assert_equal(make_str(a, 5), '[111\n' ' 111]') b = a[None,None,:] assert_equal(make_str(b, 12, legacy='1.13'), '[[[111111]]]') assert_equal(make_str(b, 9, legacy='1.13'), '[[[111111]]]') assert_equal(make_str(b, 8, legacy='1.13'), '[[[11111\n' ' 1]]]') assert_equal(make_str(b, 12), '[[[111111]]]') assert_equal(make_str(b, 9), '[[[111\n' ' 111]]]') assert_equal(make_str(b, 8), '[[[11\n' ' 11\n' ' 11]]]') def test_wide_element(self): a = np.array(['xxxxx']) assert_equal( np.array2string(a, max_line_width=5), "['xxxxx']" ) assert_equal( np.array2string(a, max_line_width=5, legacy='1.13'), "[ 'xxxxx']" ) def test_multiline_repr(self): class MultiLine: def __repr__(self): return "Line 1\nLine 2" a = np.array([[None, MultiLine()], [MultiLine(), None]]) assert_equal( np.array2string(a), '[[None Line 1\n' ' Line 2]\n' ' [Line 1\n' ' Line 2 None]]' ) assert_equal( np.array2string(a, max_line_width=5), '[[None\n' ' Line 1\n' ' Line 2]\n' ' [Line 1\n' ' Line 2\n' ' None]]' ) assert_equal( repr(a), 'array([[None, Line 1\n' ' Line 2],\n' ' [Line 1\n' ' Line 2, None]], dtype=object)' ) class MultiLineLong: def __repr__(self): return "Line 1\nLooooooooooongestLine2\nLongerLine 3" a = np.array([[None, MultiLineLong()], [MultiLineLong(), None]]) assert_equal( repr(a), 'array([[None, Line 1\n' ' LooooooooooongestLine2\n' ' LongerLine 3 ],\n' ' [Line 1\n' ' LooooooooooongestLine2\n' ' LongerLine 3 , None]], dtype=object)' ) assert_equal( np.array_repr(a, 20), 'array([[None,\n' ' Line 1\n' ' LooooooooooongestLine2\n' ' LongerLine 3 ],\n' ' [Line 1\n' ' LooooooooooongestLine2\n' ' LongerLine 3 ,\n' ' None]],\n' ' dtype=object)' ) def test_nested_array_repr(self): a = np.empty((2, 2), dtype=object) a[0, 0] = np.eye(2) a[0, 1] = np.eye(3) a[1, 0] = None a[1, 1] = np.ones((3, 1)) assert_equal( repr(a), 'array([[array([[1., 0.],\n' ' [0., 1.]]), array([[1., 0., 0.],\n' ' [0., 1., 0.],\n' ' [0., 0., 1.]])],\n' ' [None, array([[1.],\n' ' [1.],\n' ' [1.]])]], dtype=object)' ) @given(hynp.from_dtype(np.dtype("U"))) def test_any_text(self, text): # This test checks that, given any value that can be represented in an # array of dtype("U") (i.e. unicode string), ... a = np.array([text, text, text]) # casting a list of them to an array does not e.g. truncate the value assert_equal(a[0], text) # and that np.array2string puts a newline in the expected location expected_repr = "[{0!r} {0!r}\n {0!r}]".format(text) result = np.array2string(a, max_line_width=len(repr(text)) * 2 + 3) assert_equal(result, expected_repr) @pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") def test_refcount(self): # make sure we do not hold references to the array due to a recursive # closure (gh-10620) gc.disable() a = np.arange(2) r1 = sys.getrefcount(a) np.array2string(a) np.array2string(a) r2 = sys.getrefcount(a) gc.collect() gc.enable() assert_(r1 == r2) class TestPrintOptions: """Test getting and setting global print options.""" def setup_method(self): self.oldopts = np.get_printoptions() def teardown_method(self): np.set_printoptions(**self.oldopts) def test_basic(self): x = np.array([1.5, 0, 1.234567890]) assert_equal(repr(x), "array([1.5 , 0. , 1.23456789])") np.set_printoptions(precision=4) assert_equal(repr(x), "array([1.5 , 0. , 1.2346])") def test_precision_zero(self): np.set_printoptions(precision=0) for values, string in ( ([0.], "0."), ([.3], "0."), ([-.3], "-0."), ([.7], "1."), ([1.5], "2."), ([-1.5], "-2."), ([-15.34], "-15."), ([100.], "100."), ([.2, -1, 122.51], " 0., -1., 123."), ([0], "0"), ([-12], "-12"), ([complex(.3, -.7)], "0.-1.j")): x = np.array(values) assert_equal(repr(x), "array([%s])" % string) def test_formatter(self): x = np.arange(3) np.set_printoptions(formatter={'all':lambda x: str(x-1)}) assert_equal(repr(x), "array([-1, 0, 1])") def test_formatter_reset(self): x = np.arange(3) np.set_printoptions(formatter={'all':lambda x: str(x-1)}) assert_equal(repr(x), "array([-1, 0, 1])") np.set_printoptions(formatter={'int':None}) assert_equal(repr(x), "array([0, 1, 2])") np.set_printoptions(formatter={'all':lambda x: str(x-1)}) assert_equal(repr(x), "array([-1, 0, 1])") np.set_printoptions(formatter={'all':None}) assert_equal(repr(x), "array([0, 1, 2])") np.set_printoptions(formatter={'int':lambda x: str(x-1)}) assert_equal(repr(x), "array([-1, 0, 1])") np.set_printoptions(formatter={'int_kind':None}) assert_equal(repr(x), "array([0, 1, 2])") x = np.arange(3.) np.set_printoptions(formatter={'float':lambda x: str(x-1)}) assert_equal(repr(x), "array([-1.0, 0.0, 1.0])") np.set_printoptions(formatter={'float_kind':None}) assert_equal(repr(x), "array([0., 1., 2.])") def test_0d_arrays(self): assert_equal(str(np.array('café', '<U4')), 'café') assert_equal(repr(np.array('café', '<U4')), "array('café', dtype='<U4')") assert_equal(str(np.array('test', np.str_)), 'test') a = np.zeros(1, dtype=[('a', '<i4', (3,))]) assert_equal(str(a[0]), '([0, 0, 0],)') assert_equal(repr(np.datetime64('2005-02-25')[...]), "array('2005-02-25', dtype='datetime64[D]')") assert_equal(repr(np.timedelta64('10', 'Y')[...]), "array(10, dtype='timedelta64[Y]')") # repr of 0d arrays is affected by printoptions x = np.array(1) np.set_printoptions(formatter={'all':lambda x: "test"}) assert_equal(repr(x), "array(test)") # str is unaffected assert_equal(str(x), "1") # check `style` arg raises assert_warns(DeprecationWarning, np.array2string, np.array(1.), style=repr) # but not in legacy mode np.array2string(np.array(1.), style=repr, legacy='1.13') # gh-10934 style was broken in legacy mode, check it works np.array2string(np.array(1.), legacy='1.13') def test_float_spacing(self): x = np.array([1., 2., 3.]) y = np.array([1., 2., -10.]) z = np.array([100., 2., -1.]) w = np.array([-100., 2., 1.]) assert_equal(repr(x), 'array([1., 2., 3.])') assert_equal(repr(y), 'array([ 1., 2., -10.])') assert_equal(repr(np.array(y[0])), 'array(1.)') assert_equal(repr(np.array(y[-1])), 'array(-10.)') assert_equal(repr(z), 'array([100., 2., -1.])') assert_equal(repr(w), 'array([-100., 2., 1.])') assert_equal(repr(np.array([np.nan, np.inf])), 'array([nan, inf])') assert_equal(repr(np.array([np.nan, -np.inf])), 'array([ nan, -inf])') x = np.array([np.inf, 100000, 1.1234]) y = np.array([np.inf, 100000, -1.1234]) z = np.array([np.inf, 1.1234, -1e120]) np.set_printoptions(precision=2) assert_equal(repr(x), 'array([ inf, 1.00e+05, 1.12e+00])') assert_equal(repr(y), 'array([ inf, 1.00e+05, -1.12e+00])') assert_equal(repr(z), 'array([ inf, 1.12e+000, -1.00e+120])') def test_bool_spacing(self): assert_equal(repr(np.array([True, True])), 'array([ True, True])') assert_equal(repr(np.array([True, False])), 'array([ True, False])') assert_equal(repr(np.array([True])), 'array([ True])') assert_equal(repr(np.array(True)), 'array(True)') assert_equal(repr(np.array(False)), 'array(False)') def test_sign_spacing(self): a = np.arange(4.) b = np.array([1.234e9]) c = np.array([1.0 + 1.0j, 1.123456789 + 1.123456789j], dtype='c16') assert_equal(repr(a), 'array([0., 1., 2., 3.])') assert_equal(repr(np.array(1.)), 'array(1.)') assert_equal(repr(b), 'array([1.234e+09])') assert_equal(repr(np.array([0.])), 'array([0.])') assert_equal(repr(c), "array([1. +1.j , 1.12345679+1.12345679j])") assert_equal(repr(np.array([0., -0.])), 'array([ 0., -0.])') np.set_printoptions(sign=' ') assert_equal(repr(a), 'array([ 0., 1., 2., 3.])') assert_equal(repr(np.array(1.)), 'array( 1.)') assert_equal(repr(b), 'array([ 1.234e+09])') assert_equal(repr(c), "array([ 1. +1.j , 1.12345679+1.12345679j])") assert_equal(repr(np.array([0., -0.])), 'array([ 0., -0.])') np.set_printoptions(sign='+') assert_equal(repr(a), 'array([+0., +1., +2., +3.])') assert_equal(repr(np.array(1.)), 'array(+1.)') assert_equal(repr(b), 'array([+1.234e+09])') assert_equal(repr(c), "array([+1. +1.j , +1.12345679+1.12345679j])") np.set_printoptions(legacy='1.13') assert_equal(repr(a), 'array([ 0., 1., 2., 3.])') assert_equal(repr(b), 'array([ 1.23400000e+09])') assert_equal(repr(-b), 'array([ -1.23400000e+09])') assert_equal(repr(np.array(1.)), 'array(1.0)') assert_equal(repr(np.array([0.])), 'array([ 0.])') assert_equal(repr(c), "array([ 1.00000000+1.j , 1.12345679+1.12345679j])") # gh-10383 assert_equal(str(np.array([-1., 10])), "[ -1. 10.]") assert_raises(TypeError, np.set_printoptions, wrongarg=True) def test_float_overflow_nowarn(self): # make sure internal computations in FloatingFormat don't # warn about overflow repr(np.array([1e4, 0.1], dtype='f2')) def test_sign_spacing_structured(self): a = np.ones(2, dtype='<f,<f') assert_equal(repr(a), "array([(1., 1.), (1., 1.)], dtype=[('f0', '<f4'), ('f1', '<f4')])") assert_equal(repr(a[0]), "(1., 1.)") def test_floatmode(self): x = np.array([0.6104, 0.922, 0.457, 0.0906, 0.3733, 0.007244, 0.5933, 0.947, 0.2383, 0.4226], dtype=np.float16) y = np.array([0.2918820979355541, 0.5064172631089138, 0.2848750619642916, 0.4342965294660567, 0.7326538397312751, 0.3459503329096204, 0.0862072768214508, 0.39112753029631175], dtype=np.float64) z = np.arange(6, dtype=np.float16)/10 c = np.array([1.0 + 1.0j, 1.123456789 + 1.123456789j], dtype='c16') # also make sure 1e23 is right (is between two fp numbers) w = np.array(['1e{}'.format(i) for i in range(25)], dtype=np.float64) # note: we construct w from the strings `1eXX` instead of doing # `10.**arange(24)` because it turns out the two are not equivalent in # python. On some architectures `1e23 != 10.**23`. wp = np.array([1.234e1, 1e2, 1e123]) # unique mode np.set_printoptions(floatmode='unique') assert_equal(repr(x), "array([0.6104 , 0.922 , 0.457 , 0.0906 , 0.3733 , 0.007244,\n" " 0.5933 , 0.947 , 0.2383 , 0.4226 ], dtype=float16)") assert_equal(repr(y), "array([0.2918820979355541 , 0.5064172631089138 , 0.2848750619642916 ,\n" " 0.4342965294660567 , 0.7326538397312751 , 0.3459503329096204 ,\n" " 0.0862072768214508 , 0.39112753029631175])") assert_equal(repr(z), "array([0. , 0.1, 0.2, 0.3, 0.4, 0.5], dtype=float16)") assert_equal(repr(w), "array([1.e+00, 1.e+01, 1.e+02, 1.e+03, 1.e+04, 1.e+05, 1.e+06, 1.e+07,\n" " 1.e+08, 1.e+09, 1.e+10, 1.e+11, 1.e+12, 1.e+13, 1.e+14, 1.e+15,\n" " 1.e+16, 1.e+17, 1.e+18, 1.e+19, 1.e+20, 1.e+21, 1.e+22, 1.e+23,\n" " 1.e+24])") assert_equal(repr(wp), "array([1.234e+001, 1.000e+002, 1.000e+123])") assert_equal(repr(c), "array([1. +1.j , 1.123456789+1.123456789j])") # maxprec mode, precision=8 np.set_printoptions(floatmode='maxprec', precision=8) assert_equal(repr(x), "array([0.6104 , 0.922 , 0.457 , 0.0906 , 0.3733 , 0.007244,\n" " 0.5933 , 0.947 , 0.2383 , 0.4226 ], dtype=float16)") assert_equal(repr(y), "array([0.2918821 , 0.50641726, 0.28487506, 0.43429653, 0.73265384,\n" " 0.34595033, 0.08620728, 0.39112753])") assert_equal(repr(z), "array([0. , 0.1, 0.2, 0.3, 0.4, 0.5], dtype=float16)") assert_equal(repr(w[::5]), "array([1.e+00, 1.e+05, 1.e+10, 1.e+15, 1.e+20])") assert_equal(repr(wp), "array([1.234e+001, 1.000e+002, 1.000e+123])") assert_equal(repr(c), "array([1. +1.j , 1.12345679+1.12345679j])") # fixed mode, precision=4 np.set_printoptions(floatmode='fixed', precision=4) assert_equal(repr(x), "array([0.6104, 0.9219, 0.4570, 0.0906, 0.3733, 0.0072, 0.5933, 0.9468,\n" " 0.2383, 0.4226], dtype=float16)") assert_equal(repr(y), "array([0.2919, 0.5064, 0.2849, 0.4343, 0.7327, 0.3460, 0.0862, 0.3911])") assert_equal(repr(z), "array([0.0000, 0.1000, 0.2000, 0.3000, 0.3999, 0.5000], dtype=float16)") assert_equal(repr(w[::5]), "array([1.0000e+00, 1.0000e+05, 1.0000e+10, 1.0000e+15, 1.0000e+20])") assert_equal(repr(wp), "array([1.2340e+001, 1.0000e+002, 1.0000e+123])") assert_equal(repr(np.zeros(3)), "array([0.0000, 0.0000, 0.0000])") assert_equal(repr(c), "array([1.0000+1.0000j, 1.1235+1.1235j])") # for larger precision, representation error becomes more apparent: np.set_printoptions(floatmode='fixed', precision=8) assert_equal(repr(z), "array([0.00000000, 0.09997559, 0.19995117, 0.30004883, 0.39990234,\n" " 0.50000000], dtype=float16)") # maxprec_equal mode, precision=8 np.set_printoptions(floatmode='maxprec_equal', precision=8) assert_equal(repr(x), "array([0.610352, 0.921875, 0.457031, 0.090576, 0.373291, 0.007244,\n" " 0.593262, 0.946777, 0.238281, 0.422607], dtype=float16)") assert_equal(repr(y), "array([0.29188210, 0.50641726, 0.28487506, 0.43429653, 0.73265384,\n" " 0.34595033, 0.08620728, 0.39112753])") assert_equal(repr(z), "array([0.0, 0.1, 0.2, 0.3, 0.4, 0.5], dtype=float16)") assert_equal(repr(w[::5]), "array([1.e+00, 1.e+05, 1.e+10, 1.e+15, 1.e+20])") assert_equal(repr(wp), "array([1.234e+001, 1.000e+002, 1.000e+123])") assert_equal(repr(c), "array([1.00000000+1.00000000j, 1.12345679+1.12345679j])") # test unique special case (gh-18609) a = np.float64.fromhex('-1p-97') assert_equal(np.float64(np.array2string(a, floatmode='unique')), a) def test_legacy_mode_scalars(self): # in legacy mode, str of floats get truncated, and complex scalars # use * for non-finite imaginary part np.set_printoptions(legacy='1.13') assert_equal(str(np.float64(1.123456789123456789)), '1.12345678912') assert_equal(str(np.complex128(complex(1, np.nan))), '(1+nan*j)') np.set_printoptions(legacy=False) assert_equal(str(np.float64(1.123456789123456789)), '1.1234567891234568') assert_equal(str(np.complex128(complex(1, np.nan))), '(1+nanj)') def test_legacy_stray_comma(self): np.set_printoptions(legacy='1.13') assert_equal(str(np.arange(10000)), '[ 0 1 2 ..., 9997 9998 9999]') np.set_printoptions(legacy=False) assert_equal(str(np.arange(10000)), '[ 0 1 2 ... 9997 9998 9999]') def test_dtype_linewidth_wrapping(self): np.set_printoptions(linewidth=75) assert_equal(repr(np.arange(10,20., dtype='f4')), "array([10., 11., 12., 13., 14., 15., 16., 17., 18., 19.], dtype=float32)") assert_equal(repr(np.arange(10,23., dtype='f4')), textwrap.dedent("""\ array([10., 11., 12., 13., 14., 15., 16., 17., 18., 19., 20., 21., 22.], dtype=float32)""")) styp = '<U4' assert_equal(repr(np.ones(3, dtype=styp)), "array(['1', '1', '1'], dtype='{}')".format(styp)) assert_equal(repr(np.ones(12, dtype=styp)), textwrap.dedent("""\ array(['1', '1', '1', '1', '1', '1', '1', '1', '1', '1', '1', '1'], dtype='{}')""".format(styp))) @pytest.mark.parametrize( ['native'], [ ('bool',), ('uint8',), ('uint16',), ('uint32',), ('uint64',), ('int8',), ('int16',), ('int32',), ('int64',), ('float16',), ('float32',), ('float64',), ('U1',), # 4-byte width string ], ) def test_dtype_endianness_repr(self, native): ''' there was an issue where repr(array([0], dtype='<u2')) and repr(array([0], dtype='>u2')) both returned the same thing: array([0], dtype=uint16) even though their dtypes have different endianness. ''' native_dtype = np.dtype(native) non_native_dtype = native_dtype.newbyteorder() non_native_repr = repr(np.array([1], non_native_dtype)) native_repr = repr(np.array([1], native_dtype)) # preserve the sensible default of only showing dtype if nonstandard assert ('dtype' in native_repr) ^ (native_dtype in _typelessdata),\ ("an array's repr should show dtype if and only if the type " 'of the array is NOT one of the standard types ' '(e.g., int32, bool, float64).') if non_native_dtype.itemsize > 1: # if the type is >1 byte, the non-native endian version # must show endianness. assert non_native_repr != native_repr assert f"dtype='{non_native_dtype.byteorder}" in non_native_repr def test_linewidth_repr(self): a = np.full(7, fill_value=2) np.set_printoptions(linewidth=17) assert_equal( repr(a), textwrap.dedent("""\ array([2, 2, 2, 2, 2, 2, 2])""") ) np.set_printoptions(linewidth=17, legacy='1.13') assert_equal( repr(a), textwrap.dedent("""\ array([2, 2, 2, 2, 2, 2, 2])""") ) a = np.full(8, fill_value=2) np.set_printoptions(linewidth=18, legacy=False) assert_equal( repr(a), textwrap.dedent("""\ array([2, 2, 2, 2, 2, 2, 2, 2])""") ) np.set_printoptions(linewidth=18, legacy='1.13') assert_equal( repr(a), textwrap.dedent("""\ array([2, 2, 2, 2, 2, 2, 2, 2])""") ) def test_linewidth_str(self): a = np.full(18, fill_value=2) np.set_printoptions(linewidth=18) assert_equal( str(a), textwrap.dedent("""\ [2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2]""") ) np.set_printoptions(linewidth=18, legacy='1.13') assert_equal( str(a), textwrap.dedent("""\ [2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2]""") ) def test_edgeitems(self): np.set_printoptions(edgeitems=1, threshold=1) a = np.arange(27).reshape((3, 3, 3)) assert_equal( repr(a), textwrap.dedent("""\ array([[[ 0, ..., 2], ..., [ 6, ..., 8]], ..., [[18, ..., 20], ..., [24, ..., 26]]])""") ) b = np.zeros((3, 3, 1, 1)) assert_equal( repr(b), textwrap.dedent("""\ array([[[[0.]], ..., [[0.]]], ..., [[[0.]], ..., [[0.]]]])""") ) # 1.13 had extra trailing spaces, and was missing newlines np.set_printoptions(legacy='1.13') assert_equal( repr(a), textwrap.dedent("""\ array([[[ 0, ..., 2], ..., [ 6, ..., 8]], ..., [[18, ..., 20], ..., [24, ..., 26]]])""") ) assert_equal( repr(b), textwrap.dedent("""\ array([[[[ 0.]], ..., [[ 0.]]], ..., [[[ 0.]], ..., [[ 0.]]]])""") ) def test_edgeitems_structured(self): np.set_printoptions(edgeitems=1, threshold=1) A = np.arange(5*2*3, dtype="<i8").view([('i', "<i8", (5, 2, 3))]) reprA = ( "array([([[[ 0, ..., 2], [ 3, ..., 5]], ..., " "[[24, ..., 26], [27, ..., 29]]],)],\n" " dtype=[('i', '<i8', (5, 2, 3))])" ) assert_equal(repr(A), reprA) def test_bad_args(self): assert_raises(ValueError, np.set_printoptions, threshold=float('nan')) assert_raises(TypeError, np.set_printoptions, threshold='1') assert_raises(TypeError, np.set_printoptions, threshold=b'1') assert_raises(TypeError, np.set_printoptions, precision='1') assert_raises(TypeError, np.set_printoptions, precision=1.5) def test_unicode_object_array(): expected = "array(['é'], dtype=object)" x = np.array(['\xe9'], dtype=object) assert_equal(repr(x), expected) class TestContextManager: def test_ctx_mgr(self): # test that context manager actually works with np.printoptions(precision=2): s = str(np.array([2.0]) / 3) assert_equal(s, '[0.67]') def test_ctx_mgr_restores(self): # test that print options are actually restrored opts = np.get_printoptions() with np.printoptions(precision=opts['precision'] - 1, linewidth=opts['linewidth'] - 4): pass assert_equal(np.get_printoptions(), opts) def test_ctx_mgr_exceptions(self): # test that print options are restored even if an exception is raised opts = np.get_printoptions() try: with np.printoptions(precision=2, linewidth=11): raise ValueError except ValueError: pass assert_equal(np.get_printoptions(), opts) def test_ctx_mgr_as_smth(self): opts = {"precision": 2} with np.printoptions(**opts) as ctx: saved_opts = ctx.copy() assert_equal({k: saved_opts[k] for k in opts}, opts)