问题:如何在没有科学符号和给定精度的情况下漂亮地打印numpy.array?
我很好奇,是否有任何打印格式化的方法numpy.arrays
,例如,类似于以下方式:
x = 1.23456
print '%.3f' % x
如果我想打印numpy.array
浮点数,它会以“科学”格式打印几位小数,即使对于低维数组也很难阅读。但是,numpy.array
显然必须将其打印为字符串,即使用%s
。有解决方案吗?
回答 0
您可以set_printoptions
用来设置输出的精度:
import numpy as np
x=np.random.random(10)
print(x)
# [ 0.07837821 0.48002108 0.41274116 0.82993414 0.77610352 0.1023732
# 0.51303098 0.4617183 0.33487207 0.71162095]
np.set_printoptions(precision=3)
print(x)
# [ 0.078 0.48 0.413 0.83 0.776 0.102 0.513 0.462 0.335 0.712]
并suppress
禁止对小数使用科学计数法:
y=np.array([1.5e-10,1.5,1500])
print(y)
# [ 1.500e-10 1.500e+00 1.500e+03]
np.set_printoptions(suppress=True)
print(y)
# [ 0. 1.5 1500. ]
有关其他选项,请参见文档中的set_printoptions。
要使用NumPy 1.15.0或更高版本在本地应用打印选项,可以使用numpy.printoptions上下文管理器。例如,在with-suite
precision=3
和suppress=True
中设置:
x = np.random.random(10)
with np.printoptions(precision=3, suppress=True):
print(x)
# [ 0.073 0.461 0.689 0.754 0.624 0.901 0.049 0.582 0.557 0.348]
但是在with-suite
打印选项之外,将恢复为默认设置:
print(x)
# [ 0.07334334 0.46132615 0.68935231 0.75379645 0.62424021 0.90115836
# 0.04879837 0.58207504 0.55694118 0.34768638]
如果您使用的是NumPy的早期版本,则可以自己创建上下文管理器。例如,
import numpy as np
import contextlib
@contextlib.contextmanager
def printoptions(*args, **kwargs):
original = np.get_printoptions()
np.set_printoptions(*args, **kwargs)
try:
yield
finally:
np.set_printoptions(**original)
x = np.random.random(10)
with printoptions(precision=3, suppress=True):
print(x)
# [ 0.073 0.461 0.689 0.754 0.624 0.901 0.049 0.582 0.557 0.348]
为防止浮点数结尾处的零被剥离:
np.set_printoptions
现在有一个formatter
参数,可让您为每种类型指定格式功能。
np.set_printoptions(formatter={'float': '{: 0.3f}'.format})
print(x)
哪个打印
[ 0.078 0.480 0.413 0.830 0.776 0.102 0.513 0.462 0.335 0.712]
代替
[ 0.078 0.48 0.413 0.83 0.776 0.102 0.513 0.462 0.335 0.712]
回答 1
您可以np.set_printoptions
从np.array_str
命令中获得功能的子集,该命令仅适用于单个打印语句。
http://docs.scipy.org/doc/numpy/reference/generated/numpy.array_str.html
例如:
In [27]: x = np.array([[1.1, 0.9, 1e-6]]*3)
In [28]: print x
[[ 1.10000000e+00 9.00000000e-01 1.00000000e-06]
[ 1.10000000e+00 9.00000000e-01 1.00000000e-06]
[ 1.10000000e+00 9.00000000e-01 1.00000000e-06]]
In [29]: print np.array_str(x, precision=2)
[[ 1.10e+00 9.00e-01 1.00e-06]
[ 1.10e+00 9.00e-01 1.00e-06]
[ 1.10e+00 9.00e-01 1.00e-06]]
In [30]: print np.array_str(x, precision=2, suppress_small=True)
[[ 1.1 0.9 0. ]
[ 1.1 0.9 0. ]
[ 1.1 0.9 0. ]]
回答 2
Unutbu给出了一个非常完整的答案(他们也从我这里得到了+1),但这是一种高科技的替代方法:
>>> x=np.random.randn(5)
>>> x
array([ 0.25276524, 2.28334499, -1.88221637, 0.69949927, 1.0285625 ])
>>> ['{:.2f}'.format(i) for i in x]
['0.25', '2.28', '-1.88', '0.70', '1.03']
作为一项功能(使用format()
语法进行格式化):
def ndprint(a, format_string ='{0:.2f}'):
print [format_string.format(v,i) for i,v in enumerate(a)]
用法:
>>> ndprint(x)
['0.25', '2.28', '-1.88', '0.70', '1.03']
>>> ndprint(x, '{:10.4e}')
['2.5277e-01', '2.2833e+00', '-1.8822e+00', '6.9950e-01', '1.0286e+00']
>>> ndprint(x, '{:.8g}')
['0.25276524', '2.283345', '-1.8822164', '0.69949927', '1.0285625']
可以使用以下格式的字符串访问数组的索引:
>>> ndprint(x, 'Element[{1:d}]={0:.2f}')
['Element[0]=0.25', 'Element[1]=2.28', 'Element[2]=-1.88', 'Element[3]=0.70', 'Element[4]=1.03']
回答 3
FYI Numpy 1.15(发布日期待定)将包括一个上下文管理器,用于在本地设置打印选项。这意味着以下内容将与接受的答案(由unutbu和Neil G撰写)中的相应示例相同,而无需编写您自己的上下文管理器。例如,使用他们的示例:
x = np.random.random(10)
with np.printoptions(precision=3, suppress=True):
print(x)
# [ 0.073 0.461 0.689 0.754 0.624 0.901 0.049 0.582 0.557 0.348]
回答 4
在denis答案中隐藏了使它很容易以字符串形式获得结果的gem(在当今的numpy版本中):
np.array2string
>>> import numpy as np
>>> x=np.random.random(10)
>>> np.array2string(x, formatter={'float_kind':'{0:.3f}'.format})
'[0.599 0.847 0.513 0.155 0.844 0.753 0.920 0.797 0.427 0.420]'
回答 5
几年后,下面是另一个。但是对于日常使用,我只是
np.set_printoptions( threshold=20, edgeitems=10, linewidth=140,
formatter = dict( float = lambda x: "%.3g" % x )) # float arrays %.3g
''' printf( "... %.3g ... %.1f ...", arg, arg ... ) for numpy arrays too
Example:
printf( """ x: %.3g A: %.1f s: %s B: %s """,
x, A, "str", B )
If `x` and `A` are numbers, this is like `"format" % (x, A, "str", B)` in python.
If they're numpy arrays, each element is printed in its own format:
`x`: e.g. [ 1.23 1.23e-6 ... ] 3 digits
`A`: [ [ 1 digit after the decimal point ... ] ... ]
with the current `np.set_printoptions()`. For example, with
np.set_printoptions( threshold=100, edgeitems=3, suppress=True )
only the edges of big `x` and `A` are printed.
`B` is printed as `str(B)`, for any `B` -- a number, a list, a numpy object ...
`printf()` tries to handle too few or too many arguments sensibly,
but this is iffy and subject to change.
How it works:
numpy has a function `np.array2string( A, "%.3g" )` (simplifying a bit).
`printf()` splits the format string, and for format / arg pairs
format: % d e f g
arg: try `np.asanyarray()`
--> %s np.array2string( arg, format )
Other formats and non-ndarray args are left alone, formatted as usual.
Notes:
`printf( ... end= file= )` are passed on to the python `print()` function.
Only formats `% [optional width . precision] d e f g` are implemented,
not `%(varname)format` .
%d truncates floats, e.g. 0.9 and -0.9 to 0; %.0f rounds, 0.9 to 1 .
%g is the same as %.6g, 6 digits.
%% is a single "%" character.
The function `sprintf()` returns a long string. For example,
title = sprintf( "%s m %g n %g X %.3g",
__file__, m, n, X )
print( title )
...
pl.title( title )
Module globals:
_fmt = "%.3g" # default for extra args
_squeeze = np.squeeze # (n,1) (1,n) -> (n,) print in 1 line not n
See also:
http://docs.scipy.org/doc/numpy/reference/generated/numpy.set_printoptions.html
http://docs.python.org/2.7/library/stdtypes.html#string-formatting
'''
# http://stackoverflow.com/questions/2891790/pretty-printing-of-numpy-array
#...............................................................................
from __future__ import division, print_function
import re
import numpy as np
__version__ = "2014-02-03 feb denis"
_splitformat = re.compile( r'''(
%
(?<! %% ) # not %%
-? [ \d . ]* # optional width.precision
\w
)''', re.X )
# ... %3.0f ... %g ... %-10s ...
# -> ['...' '%3.0f' '...' '%g' '...' '%-10s' '...']
# odd len, first or last may be ""
_fmt = "%.3g" # default for extra args
_squeeze = np.squeeze # (n,1) (1,n) -> (n,) print in 1 line not n
#...............................................................................
def printf( format, *args, **kwargs ):
print( sprintf( format, *args ), **kwargs ) # end= file=
printf.__doc__ = __doc__
def sprintf( format, *args ):
""" sprintf( "text %.3g text %4.1f ... %s ... ", numpy arrays or ... )
%[defg] array -> np.array2string( formatter= )
"""
args = list(args)
if not isinstance( format, basestring ):
args = [format] + args
format = ""
tf = _splitformat.split( format ) # [ text %e text %f ... ]
nfmt = len(tf) // 2
nargs = len(args)
if nargs < nfmt:
args += (nfmt - nargs) * ["?arg?"]
elif nargs > nfmt:
tf += (nargs - nfmt) * [_fmt, " "] # default _fmt
for j, arg in enumerate( args ):
fmt = tf[ 2*j + 1 ]
if arg is None \
or isinstance( arg, basestring ) \
or (hasattr( arg, "__iter__" ) and len(arg) == 0):
tf[ 2*j + 1 ] = "%s" # %f -> %s, not error
continue
args[j], isarray = _tonumpyarray(arg)
if isarray and fmt[-1] in "defgEFG":
tf[ 2*j + 1 ] = "%s"
fmtfunc = (lambda x: fmt % x)
formatter = dict( float_kind=fmtfunc, int=fmtfunc )
args[j] = np.array2string( args[j], formatter=formatter )
try:
return "".join(tf) % tuple(args)
except TypeError: # shouldn't happen
print( "error: tf %s types %s" % (tf, map( type, args )))
raise
def _tonumpyarray( a ):
""" a, isarray = _tonumpyarray( a )
-> scalar, False
np.asanyarray(a), float or int
a, False
"""
a = getattr( a, "value", a ) # cvxpy
if np.isscalar(a):
return a, False
if hasattr( a, "__iter__" ) and len(a) == 0:
return a, False
try:
# map .value ?
a = np.asanyarray( a )
except ValueError:
return a, False
if hasattr( a, "dtype" ) and a.dtype.kind in "fi": # complex ?
if callable( _squeeze ):
a = _squeeze( a ) # np.squeeze
return a, True
else:
return a, False
#...............................................................................
if __name__ == "__main__":
import sys
n = 5
seed = 0
# run this.py n= ... in sh or ipython
for arg in sys.argv[1:]:
exec( arg )
np.set_printoptions( 1, threshold=4, edgeitems=2, linewidth=80, suppress=True )
np.random.seed(seed)
A = np.random.exponential( size=(n,n) ) ** 10
x = A[0]
printf( "x: %.3g \nA: %.1f \ns: %s \nB: %s ",
x, A, "str", A )
printf( "x %%d: %d", x )
printf( "x %%.0f: %.0f", x )
printf( "x %%.1e: %.1e", x )
printf( "x %%g: %g", x )
printf( "x %%s uses np printoptions: %s", x )
printf( "x with default _fmt: ", x )
printf( "no args" )
printf( "too few args: %g %g", x )
printf( x )
printf( x, x )
printf( None )
printf( "[]:", [] )
printf( "[3]:", [3] )
printf( np.array( [] ))
printf( [[]] ) # squeeze
回答 6
这是我所使用的,并且非常简单:
print(np.vectorize("%.2f".__mod__)(sparse))
回答 7
惊讶的是没有看到around
提到的方法-意味着不会弄乱打印选项。
import numpy as np
x = np.random.random([5,5])
print(np.around(x,decimals=3))
Output:
[[0.475 0.239 0.183 0.991 0.171]
[0.231 0.188 0.235 0.335 0.049]
[0.87 0.212 0.219 0.9 0.3 ]
[0.628 0.791 0.409 0.5 0.319]
[0.614 0.84 0.812 0.4 0.307]]
回答 8
我经常希望不同的列具有不同的格式。这是我通过将NumPy数组(的片段)转换为元组来使用格式多样的简单2D数组的方式:
import numpy as np
dat = np.random.random((10,11))*100 # Array of random values between 0 and 100
print(dat) # Lines get truncated and are hard to read
for i in range(10):
print((4*"%6.2f"+7*"%9.4f") % tuple(dat[i,:]))
回答 9
numpy.char.mod
根据您应用程序的详细信息,它可能也很有用,例如:numpy.char.mod('Value=%4.2f', numpy.arange(5, 10, 0.1))
将返回一个包含元素“ Value = 5.00”,“ Value = 5.10”等的字符串数组(作为一个人为的示例)。
回答 10
numpy数组具有round(precision)
返回一个新的numpy数组的方法,该数组具有相应的舍入元素。
import numpy as np
x = np.random.random([5,5])
print(x.round(3))
回答 11
我发现使用循环显示列表或数组时,通常的浮点格式{:9.5f}可以正常工作-抑制小数值电子注释。但是,当格式化程序在单个print语句中有多个项目时,该格式有时无法抑制其电子注释。例如:
import numpy as np
np.set_printoptions(suppress=True)
a3 = 4E-3
a4 = 4E-4
a5 = 4E-5
a6 = 4E-6
a7 = 4E-7
a8 = 4E-8
#--first, display separate numbers-----------
print('Case 3: a3, a4, a5: {:9.5f}{:9.5f}{:9.5f}'.format(a3,a4,a5))
print('Case 4: a3, a4, a5, a6: {:9.5f}{:9.5f}{:9.5f}{:9.5}'.format(a3,a4,a5,a6))
print('Case 5: a3, a4, a5, a6, a7: {:9.5f}{:9.5f}{:9.5f}{:9.5}{:9.5f}'.format(a3,a4,a5,a6,a7))
print('Case 6: a3, a4, a5, a6, a7, a8: {:9.5f}{:9.5f}{:9.5f}{:9.5f}{:9.5}{:9.5f}'.format(a3,a4,a5,a6,a7,a8))
#---second, display a list using a loop----------
myList = [a3,a4,a5,a6,a7,a8]
print('List 6: a3, a4, a5, a6, a7, a8: ', end='')
for x in myList:
print('{:9.5f}'.format(x), end='')
print()
#---third, display a numpy array using a loop------------
myArray = np.array(myList)
print('Array 6: a3, a4, a5, a6, a7, a8: ', end='')
for x in myArray:
print('{:9.5f}'.format(x), end='')
print()
我的结果显示了情况4、5和6中的错误:
Case 3: a3, a4, a5: 0.00400 0.00040 0.00004
Case 4: a3, a4, a5, a6: 0.00400 0.00040 0.00004 4e-06
Case 5: a3, a4, a5, a6, a7: 0.00400 0.00040 0.00004 4e-06 0.00000
Case 6: a3, a4, a5, a6, a7, a8: 0.00400 0.00040 0.00004 0.00000 4e-07 0.00000
List 6: a3, a4, a5, a6, a7, a8: 0.00400 0.00040 0.00004 0.00000 0.00000 0.00000
Array 6: a3, a4, a5, a6, a7, a8: 0.00400 0.00040 0.00004 0.00000 0.00000 0.00000
我对此没有任何解释,因此我总是使用循环来浮动多个值的输出。
回答 12
我用
def np_print(array,fmt="10.5f"):
print (array.size*("{:"+fmt+"}")).format(*array)
修改多维数组并不难。
回答 13
另一个选择是使用decimal
模块:
import numpy as np
from decimal import *
arr = np.array([ 56.83, 385.3 , 6.65, 126.63, 85.76, 192.72, 112.81, 10.55])
arr2 = [str(Decimal(i).quantize(Decimal('.01'))) for i in arr]
# ['56.83', '385.30', '6.65', '126.63', '85.76', '192.72', '112.81', '10.55']