# Fastest way to convert a Numpy array into a sparse dictionary?

I'm interested in converting a numpy array into a sparse dictionary as quickly as possible. Let me elaborate:

Given the array:

``````numpy.array([12,0,0,0,3,0,0,1])
``````

I wish to produce the dictionary:

``````{0:12, 4:3, 7:1}
``````

As you can see, we are simply converting the sequence type into an explicit mapping from indices that are nonzero to their values.

In order to make this a bit more interesting, I offer the following test harness to try out alternatives:

``````from timeit import Timer

if __name__ == "__main__":
s = "import numpy; from itertools import izip; from numpy import nonzero, flatnonzero; vector =         numpy.random.poisson(0.1, size=10000);"

ms = [ "f = flatnonzero(vector); dict( zip( f, vector[f] ) )"
, "f = flatnonzero(vector); dict( izip( f, vector[f] ) )"
, "f = nonzero(vector); dict( izip( f[0], vector[f] ) )"
, "n = vector > 0; i = numpy.arange(len(vector))[n]; v = vector[n]; dict(izip(i,v))"
, "i = flatnonzero(vector); v = vector[vector > 0]; dict(izip(i,v))"
, "dict( zip( flatnonzero(vector), vector[flatnonzero(vector)] ) )"
, "dict( zip( flatnonzero(vector), vector[nonzero(vector)] ) )"
, "dict( (i, x) for i,x in enumerate(vector) if x > 0);"
]
for m in ms:
print "  %.2fs" % Timer(m, s).timeit(1000), m
``````

I'm using a poisson distribution to simulate the sort of arrays I am interested in converting.

Here are my results so far:

``````   0.78s f = flatnonzero(vector); dict( zip( f, vector[f] ) )
0.73s f = flatnonzero(vector); dict( izip( f, vector[f] ) )
0.71s f = nonzero(vector); dict( izip( f[0], vector[f] ) )
0.67s n = vector > 0; i = numpy.arange(len(vector))[n]; v = vector[n]; dict(izip(i,v))
0.81s i = flatnonzero(vector); v = vector[vector > 0]; dict(izip(i,v))
1.01s dict( zip( flatnonzero(vector), vector[flatnonzero(vector)] ) )
1.03s dict( zip( flatnonzero(vector), vector[nonzero(vector)] ) )
4.90s dict( (i, x) for i,x in enumerate(vector) if x > 0);
``````

As you can see, the fastest solution I have found is

``````n = vector > 0;
i = numpy.arange(len(vector))[n]
v = vector[n]
dict(izip(i,v))
``````

Any faster way?

Edit: The step

``````i = numpy.arange(len(vector))[n]
``````

Seems particularly clumsy- generating an entire array before selecting only some elements, particularly when we know it might only be around 1/10 of the elements getting selected. I think this might still be improved.

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## 5 Answers

I wonder if chief time cost is resizing the dict as it grows.

Would be nice if dict had a method (or instantiation option) to specify a start size; so if we knew it was going to be big, python could save time and just do one big mem alloc up front, rather than what I assume are additional allocs as we grow.

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use the sparse matrix in scipy as bridge:

``````from scipy.sparse import *
import numpy
a=numpy.array([12,0,0,0,3,0,0,1])
m=csr_matrix(a)

d={}
for i in m.nonzero()[1]:
d[i]=m[0,i]
print d
``````
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``````>>> a=np.array([12,0,0,0,3,0,0,1])
>>> {i:a[i] for i in np.nonzero(a)[0]}
{0: 12, 4: 3, 7: 1}
``````
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Tried this?

from numpy import where

i = where(vector > 0)[0]

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Is this not the same as flatnonzero? And also, why didn't you try it (he even posted his test harness)? You would get +1 from me if you actually showed it was faster. –  Kiv Jun 26 '09 at 17:35

The following seems to be a significant improvement:

``````i = np.flatnonzero(vector)
dict.fromkeys(i.tolist(), vector[i].tolist())
``````

Timing:

``````import numpy as np
from itertools import izip

vector = np.random.poisson(0.1, size=10000)

%timeit f = np.flatnonzero(vector); dict( izip( f, vector[f] ) )
# 1000 loops, best of 3: 951 µs per loop

%timeit f = np.flatnonzero(vector); dict.fromkeys(f.tolist(), vector[f].tolist())
# 1000 loops, best of 3: 419 µs per loop
``````

I also tried `scipy.sparse.dok_matrix` and `pandas.DataFrame.to_dict` but in my testing they were slower than the original.

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