I'm trying to generate a 2d numpy array with the help of generators:
x = [[f(a) for a in g(b)] for b in c]
And if I try to do something like this:
x = np.array([np.array([f(a) for a in g(b)]) for b in c])
I, as expected, get a np.array of np.array. But I want not this, but ndarray, so I can get, for example, column in a way like this:
y = x[:, 1]
So, I'm curious whether there is a way to generate it in such a way.
Of course it is possible with creating npdarray of required size and filling it with required values, but I want a way to do so in a line of code.
np.shape
or anything like that?f(a)
andg(b)
do exactly? If they produce numbers, your code should work: that is the correct way to initialize a 2d numpy array (numpy is generally smart enough to cast an array of an array to a ndarray)data['Name']
like? It's best if you give us examples that we can plug and run. What is the shape ofnp._names
? I don't see any generators in your code, just list comprehensions.