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Constants
NumPy includes several constants:
- numpy.Inf
-
IEEE 754 floating point representation of (positive) infinity.
Use
infbecauseInf,Infinity,PINFandinftyare aliases forinf. For more details, seeinf.See Also
inf
- numpy.Infinity
-
IEEE 754 floating point representation of (positive) infinity.
Use
infbecauseInf,Infinity,PINFandinftyare aliases forinf. For more details, seeinf.See Also
inf
- numpy.NAN
-
IEEE 754 floating point representation of Not a Number (NaN).
NaNandNANare equivalent definitions ofnan. Please usenaninstead ofNAN.See Also
nan
- numpy.NINF
-
IEEE 754 floating point representation of negative infinity.
Returns
- yfloat
-
A floating point representation of negative infinity.
See Also
isinf : Shows which elements are positive or negative infinity
isposinf : Shows which elements are positive infinity
isneginf : Shows which elements are negative infinity
isnan : Shows which elements are Not a Number
isfinite : Shows which elements are finite (not one of Not a Number, positive infinity and negative infinity)
Notes
NumPy uses the IEEE Standard for Binary Floating-Point for Arithmetic (IEEE 754). This means that Not a Number is not equivalent to infinity. Also that positive infinity is not equivalent to negative infinity. But infinity is equivalent to positive infinity.
Examples
>>> np.NINF -inf >>> np.log(0) -inf
- numpy.NZERO
-
IEEE 754 floating point representation of negative zero.
Returns
- yfloat
-
A floating point representation of negative zero.
See Also
PZERO : Defines positive zero.
isinf : Shows which elements are positive or negative infinity.
isposinf : Shows which elements are positive infinity.
isneginf : Shows which elements are negative infinity.
isnan : Shows which elements are Not a Number.
- isfiniteShows which elements are finite - not one of
-
Not a Number, positive infinity and negative infinity.
Notes
NumPy uses the IEEE Standard for Binary Floating-Point for Arithmetic (IEEE 754). Negative zero is considered to be a finite number.
Examples
>>> np.NZERO -0.0 >>> np.PZERO 0.0>>> np.isfinite([np.NZERO]) array([ True]) >>> np.isnan([np.NZERO]) array([False]) >>> np.isinf([np.NZERO]) array([False])
- numpy.NaN
-
IEEE 754 floating point representation of Not a Number (NaN).
NaNandNANare equivalent definitions ofnan. Please usenaninstead ofNaN.See Also
nan
- numpy.PINF
-
IEEE 754 floating point representation of (positive) infinity.
Use
infbecauseInf,Infinity,PINFandinftyare aliases forinf. For more details, seeinf.See Also
inf
- numpy.PZERO
-
IEEE 754 floating point representation of positive zero.
Returns
- yfloat
-
A floating point representation of positive zero.
See Also
NZERO : Defines negative zero.
isinf : Shows which elements are positive or negative infinity.
isposinf : Shows which elements are positive infinity.
isneginf : Shows which elements are negative infinity.
isnan : Shows which elements are Not a Number.
- isfiniteShows which elements are finite - not one of
-
Not a Number, positive infinity and negative infinity.
Notes
NumPy uses the IEEE Standard for Binary Floating-Point for Arithmetic (IEEE 754). Positive zero is considered to be a finite number.
Examples
>>> np.PZERO 0.0 >>> np.NZERO -0.0>>> np.isfinite([np.PZERO]) array([ True]) >>> np.isnan([np.PZERO]) array([False]) >>> np.isinf([np.PZERO]) array([False])
- numpy.e
-
Euler’s constant, base of natural logarithms, Napier’s constant.
e = 2.71828182845904523536028747135266249775724709369995...See Also
exp : Exponential function log : Natural logarithm
References
- numpy.euler_gamma
-
γ = 0.5772156649015328606065120900824024310421...References
- numpy.inf
-
IEEE 754 floating point representation of (positive) infinity.
Returns
- yfloat
-
A floating point representation of positive infinity.
See Also
isinf : Shows which elements are positive or negative infinity
isposinf : Shows which elements are positive infinity
isneginf : Shows which elements are negative infinity
isnan : Shows which elements are Not a Number
isfinite : Shows which elements are finite (not one of Not a Number, positive infinity and negative infinity)
Notes
NumPy uses the IEEE Standard for Binary Floating-Point for Arithmetic (IEEE 754). This means that Not a Number is not equivalent to infinity. Also that positive infinity is not equivalent to negative infinity. But infinity is equivalent to positive infinity.
Inf,Infinity,PINFandinftyare aliases forinf.Examples
>>> np.inf inf >>> np.array([1]) / 0. array([ Inf])
- numpy.infty
-
IEEE 754 floating point representation of (positive) infinity.
Use
infbecauseInf,Infinity,PINFandinftyare aliases forinf. For more details, seeinf.See Also
inf
- numpy.nan
-
IEEE 754 floating point representation of Not a Number (NaN).
Returns
y : A floating point representation of Not a Number.
See Also
isnan : Shows which elements are Not a Number.
isfinite : Shows which elements are finite (not one of Not a Number, positive infinity and negative infinity)
Notes
NumPy uses the IEEE Standard for Binary Floating-Point for Arithmetic (IEEE 754). This means that Not a Number is not equivalent to infinity.
NaNandNANare aliases ofnan.Examples
>>> np.nan nan >>> np.log(-1) nan >>> np.log([-1, 1, 2]) array([ NaN, 0. , 0.69314718])
- numpy.newaxis
-
A convenient alias for None, useful for indexing arrays.
Examples
>>> newaxis is None True >>> x = np.arange(3) >>> x array([0, 1, 2]) >>> x[:, newaxis] array([[0], [1], [2]]) >>> x[:, newaxis, newaxis] array([[[0]], [[1]], [[2]]]) >>> x[:, newaxis] * x array([[0, 0, 0], [0, 1, 2], [0, 2, 4]])Outer product, same as
outer(x, y):>>> y = np.arange(3, 6) >>> x[:, newaxis] * y array([[ 0, 0, 0], [ 3, 4, 5], [ 6, 8, 10]])x[newaxis, :]is equivalent tox[newaxis]andx[None]:>>> x[newaxis, :].shape (1, 3) >>> x[newaxis].shape (1, 3) >>> x[None].shape (1, 3) >>> x[:, newaxis].shape (3, 1)
- numpy.pi
-
pi = 3.1415926535897932384626433...References
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https://numpy.org/doc/1.23/reference/constants.html