0

I'm trying to put results of a calculus into a big matrix where the last dimension can be 1 or 2 or more. so to put my result in the matrix I do

res[i,j,:,:] = y

If y is sized (N,2) or more than 2 it is find, but if y is sized (N) I got an error saying:

ValueError: could not broadcast input array from shape (10241) into shape (10241,1)

Small example:

import numpy as np

N=10
y = np.zeros((N,2))
res = np.zeros((2,2,N,2))
res[0,0,:,:]= y

y = np.zeros((N,1))
res = np.zeros((2,2,N,1))
res[0,0,:,:]= y

y = np.zeros(N)
res = np.zeros((2,2,N,1))
res[0,0,:,:]= y

I'm getting the error for the last example but they are both (y and res) 1D vector right?

I'm wondering if it exists a solution to make this assignment whatever the size of the last dimension (1, 2 or more)?

In my code I made an try except but could exist another way

try:
    self.res[i,j,:,:] = self.ODE_solver(len(self.t))
except:
    self.res[i, j, :, 0] = self.ODE_solver(len(self.t))
  • and you dont know the shape of self.ODE_solver(len(self.t)) before you initialize self.res? – some_name.py Aug 20 '19 at 11:20
1

For the generic solution that works across all three scenarios, use -

res[0,0,:,:] = y.reshape(y.shape[0],-1)

So, basically, we are making y 2D while keeping the first axis length intact and changing the second one based on the leftover.

|improve this answer|||||
1

You can reshape y to be the last 2 dimensions of res.

N=10
y = np.zeros((N,2))
res = np.zeros((2,2,N,2))
res[0,0,:,:]= y.reshape(res.shape[-2:])

y = np.zeros((N,1))
res = np.zeros((2,2,N,1))
res[0,0,:,:]= y.reshape(res.shape[-2:])

y = np.zeros(N)
res = np.zeros((2,2,N,1))
res[0,0,:,:]= y.reshape(res.shape[-2:])
|improve this answer|||||

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.