Simple question here:
I'm trying to get an array that alternates values (1, -1, 1, -1.....) for a given length. np.repeat just gives me (1, 1, 1, 1,-1, -1,-1, -1). Thoughts?
I like @Benjamin's solution. An alternative though is:
import numpy as np
a = np.empty((15,))
a[::2] = 1
a[1::2] = -1
This also allows for odd-length lists.
EDIT: Also just to note speeds, for a array of 10000 elements
import numpy as np
from timeit import Timer
if __name__ == '__main__':
setupstr="""
import numpy as np
N = 10000
"""
method1="""
a = np.empty((N,),int)
a[::2] = 1
a[1::2] = -1
"""
method2="""
a = np.tile([1,-1],N)
"""
method3="""
a = np.array([1,-1]*N)
"""
method4="""
a = np.array(list(itertools.islice(itertools.cycle((1,-1)), N)))
"""
nl = 1000
t1 = Timer(method1, setupstr).timeit(nl)
t2 = Timer(method2, setupstr).timeit(nl)
t3 = Timer(method3, setupstr).timeit(nl)
t4 = Timer(method4, setupstr).timeit(nl)
print 'method1', t1
print 'method2', t2
print 'method3', t3
print 'method4', t4
Results in timings of:
method1 0.0130500793457
method2 0.114426136017
method3 4.30518102646
method4 2.84446692467
If N = 100
, things start to even out but starting with the empty numpy arrays is still significantly faster (nl
changed to 10000)
method1 0.05735206604
method2 0.323992013931
method3 0.556654930115
method4 0.46702003479
Numpy arrays are special awesome objects and should not be treated like python lists.
timeit
since it is an objective arbiter .
timeit
is objective in some sense but remember that python is often written for simplicity and readability rather than speed alone! Especially if you don't have a real reason to optimize for CPU time or memory, I'd say stick with the more commonplace, readable solution such as a list comprehension or cycle
: you and others may appreciate it in the future.
Commented
Aug 23, 2011 at 3:19
numpy.ones()
would be better just because you only have to slice the array once, which is more readable simply because it's only two statements and you're getting straight to the point. I agree that your solution is very readable and a clever one, that's why it got my upvote, but that doesn't mean it's perfect! :)
Commented
Aug 23, 2011 at 4:03
use resize():
In [38]: np.resize([1,-1], 10) # 10 is the length of result array
Out[38]: array([ 1, -1, 1, -1, 1, -1, 1, -1, 1, -1])
it can produce odd-length array:
In [39]: np.resize([1,-1], 11)
Out[39]: array([ 1, -1, 1, -1, 1, -1, 1, -1, 1, -1, 1])
Use numpy.tile
!
import numpy
a = numpy.tile([1,-1], 15)
use multiplication:
[1,-1] * n
If you want a memory efficient solution, try this:
def alternator(n):
for i in xrange(n):
if i % 2 == 0:
yield 1
else:
yield -1
Then you can iterate over the answers like so:
for i in alternator(n):
# do something with i
itertools.islice(itertools.cycle((1,-1)), n)
.
Maybe you're looking for itertools.cycle?
list_ = (1,-1,2,-2) # ,3,-3, ...
for n, item in enumerate(itertools.cycle(list_)):
if n==30:
break
print item
I'll just throw these out there because they could be more useful in some circumstances.
If you just want to alternate between positive and negative:
[(-1)**i for i in range(n)]
or for a more general solution
nums = [1, -1, 2]
[nums[i % len(nums)] for i in range(n)]