numpy.random.randn#
- random.randn(d0, d1, ..., dn)#
- Return a sample (or samples) from the “standard normal” distribution. - Note - This is a convenience function for users porting code from Matlab, and wraps - standard_normal. That function takes a tuple to specify the size of the output, which is consistent with other NumPy functions like- numpy.zerosand- numpy.ones.- Note - New code should use the - standard_normalmethod of a- Generatorinstance instead; please see the Quick Start.- If positive int_like arguments are provided, - randngenerates an array of shape- (d0, d1, ..., dn), filled with random floats sampled from a univariate “normal” (Gaussian) distribution of mean 0 and variance 1. A single float randomly sampled from the distribution is returned if no argument is provided.- Parameters:
- d0, d1, …, dnint, optional
- The dimensions of the returned array, must be non-negative. If no argument is given a single Python float is returned. 
 
- Returns:
- Zndarray or float
- A - (d0, d1, ..., dn)-shaped array of floating-point samples from the standard normal distribution, or a single such float if no parameters were supplied.
 
 - See also - standard_normal
- Similar, but takes a tuple as its argument. 
- normal
- Also accepts mu and sigma arguments. 
- random.Generator.standard_normal
- which should be used for new code. 
 - Notes - For random samples from the normal distribution with mean - muand standard deviation- sigma, use:- sigma * np.random.randn(...) + mu - Examples - >>> np.random.randn() 2.1923875335537315 # random - Two-by-four array of samples from the normal distribution with mean 3 and standard deviation 2.5: - >>> 3 + 2.5 * np.random.randn(2, 4) array([[-4.49401501, 4.00950034, -1.81814867, 7.29718677], # random [ 0.39924804, 4.68456316, 4.99394529, 4.84057254]]) # random