This would probably be slightly more efficient:
zeroArray = [0]*Np
zeroMatrix = [None] * Np
for i in range(Np):
zeroMatrix[i] = zeroArray[:]
What you would really like won't work the way you hope. This is because if you created Np
copies of a list element using *
, you get Np
references to the same thing. For the 0
this isn't a big deal since you just get a new number when you add anything to it. But for lists you would end up with a matrix where as soon as you changed any element of a row, the entire column would change right along with it.
This way is the second fastest so far mentioned:
$ python3 -m timeit -s 'Np = 80' 'zeroArray = [0]*Np
zeroMatrix = [None] * Np
for i in range(Np):
zeroMatrix[i] = zeroArray[:]'
10000 loops, best of 3: 72.8 usec per loop
$ python3 -m timeit -s 'Np = 80' 'zeroMatrix = [[0] * Np for i in range(Np)]'
10000 loops, best of 3: 85 usec per loop
$ python3 -m timeit -s 'Np = 80' 'zeroMatrix = [[0 for _ in range(Np)] for _ in range(Np)]'
1000 loops, best of 3: 566 usec per loop
I can't do my own timeit of the numpy-based solution as I don't have a numpy package for Python3 on my system. But it is very definitely faster by a significant margin.