# R function rep() in Python (replicates elements of a list/vector)

The R function rep() replicates each element of a vector:

``````> rep(c("A","B"), times=2)
[1] "A" "B" "A" "B"
``````

This is like the list multiplication in Python:

``````>>> ["A","B"]*2
['A', 'B', 'A', 'B']
``````

But with the rep() R function it is also possible to specifiy the number of repeats for each element of the vector:

``````> rep(c("A","B"), times=c(2,3))
[1] "A" "A" "B" "B" "B"
``````

Is there such a function availbale in Python ? Otherwise how could one define it ? By the way I'm also interested in such a function for duplicating rows of an array.

Use `numpy` arrays and the numpy.repeat function:

``````import numpy as np

x = np.array(["A", "B"])
print np.repeat(x, [2, 3], axis=0)

['A' 'A' 'B' 'B' 'B']
``````

Not sure if there's a built-in available for this, but you can try something like this:

``````>>> lis = ["A", "B"]
>>> times = (2, 3)
>>> sum(([x]*y for x,y in zip(lis, times)),[])
['A', 'A', 'B', 'B', 'B']
``````

Note that `sum()` runs in quadratic time. So, it's not the recommended way.

``````>>> from itertools import chain, izip, starmap
>>> from operator import mul
>>> list(chain.from_iterable(starmap(mul, izip(lis, times))))
['A', 'A', 'B', 'B', 'B']
``````

Timing comparions:

``````>>> lis = ["A", "B"] * 1000
>>> times = (2, 3) * 1000
>>> %timeit list(chain.from_iterable(starmap(mul, izip(lis, times))))
1000 loops, best of 3: 713 µs per loop
>>> %timeit sum(([x]*y for x,y in zip(lis, times)),[])
100 loops, best of 3: 15.4 ms per loop
``````
• I think the answer would be better if you straight up removed the `sum(...)` solution that should never be used anyway. And I want to point out that `izip(lis, times)` only works because the input list contains strings. Non-iterables in the input like `lis = [1, 2]` would cause a crash. You should just use `itertools.repeat` instead of `mul`. – Aran-Fey Apr 25 '18 at 11:10

Since you say "array" and mention R. You may want to use numpy arrays anyways, and then use:

``````import numpy as np
np.repeat(np.array([1,2]), [2,3])
``````

EDIT: Since you mention you want to repeat rows as well, I think you should use numpy. `np.repeat` has an axis argument to do this.

Other then that, maybe:

``````from itertools import izip, chain, repeat
list(chain(*(repeat(a,b) for a, b in izip([1,2], [2,3]))))
``````

As it doesn't make the assumption you have a list or string to multiply. Though I admit, passing everything as argument into chain is maybe not perfect, so writing your own iterator may be better.

``````l = ['A','B']
n = [2, 4]
``````

Your example uses strings which are already iterables. You can produce a result string which is similar to a list.

``````''.join([e * m for e, m in zip(l, n)])
'AABBBB'
``````

Update: the list comprehension is not required here:

``````''.join(e * m for e, m in zip(l, n))
'AABBBB'
``````
• @AshwiniChaudhary Correct...for your solution - But as I write above I suggest to go with a string instead of a list – Theodros Zelleke Sep 2 '12 at 11:40
• but you can skip the list comprehension part and use just : `''.join(e * m for e, m in zip(l, n))` – Ashwini Chaudhary Sep 2 '12 at 11:41

To repeat a value:

``````>>> repetitions=[]
>>> torep=3
>>> nrep=5
>>> for i in range(nrep):
>>>     i=torep
>>>     repetitions.append(i)
[3, 3, 3, 3, 3]
``````

To repeat a sequence:

``````>>> repetitions=[]
>>> torep=[1,2,3,4]
>>> nrep= 2
>>> for i in range(nrep):
>>>     repetitions=repetitions+torep
>>> print(repetitions)
[1, 2, 3, 4, 1, 2, 3, 4]
``````