# Inverse of `operator.itemgetter`

I was recently working on this question. Essentially, my answer involved a call to `sorted` with a `lambda` as the `key`:

``````sorted(range(len(L)), key=lambda i : L[i])
``````

Given that performance was at the core of the question, and that lambdas are inherently slow, I could have optimized a bit by defining a function and using it in place of the `lambda`.

Still, I feel that that I'd be reinventing the wheel. There has to be a built-in function somewhere or in some `import`able module that provides the functionality of `__getitem__` (which, the only reason I don't want to use, is that it's not really pythonic to use mangled methods).

I know about `operator.getitem` which let's me predefine an index `i` and get the element at `i` in any input sequence. But is there a function (say `foo`) that works as follows:

``````In [14]: g = operator.itemgetter(1)

In [15]: d = {'a':1, 'b':2, 'c':3, 'd':4}

In [16]: for i in d.iteritems():
....:     print g(i),
....:
1 3 2 4

In [17]: L = list('abcd')

In [18]: g = foo(L)

In [19]: for i in range(4):
....:     print g(i),
....:
'a' 'b' 'c' 'd'
``````

Sorry if this is a duplicate question, but the search words that I could think of did not yield results.

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And what is your expected behaviour when values are not unique? – wim Oct 9 '12 at 4:14
Lambdas are just functions like any other Python function. They are not slower or faster than a "long-form" function (with a `def` statement) that does the same thing. – BrenBarn Oct 9 '12 at 4:15
@wim: expected behavior with non-unique values - return the same answer as last time, just like how `L[i]` does assuming that `L` hasn't changed between the two calls – inspectorG4dget Oct 9 '12 at 4:24
so it seems to be just like `__getitem__` unless i'm missing something? you want something similar to dict.get but for lists? – wim Oct 9 '12 at 5:14
It's not pythonic to use `__getitem__` in the wrong places. This isn't one of the wrong places. It's perfectly sensible to use those methods if you need to pass a method into a function. – John La Rooy Oct 9 '12 at 5:26

If I've understood what you want correctly, the following would do that:

``````import functools
import operator

L = list('abcd')

def foo(indexable):
return functools.partial(operator.__getitem__, indexable)

g = foo(L)

for i in xrange(len(L)):
print g(i),
``````

Update:

I've experimented further and was surprised to discover a slightly faster solution, which is this nothing other than simply this:

``````def foo2(indexable):
return indexable.__getitem__
``````

Which, when run using a little testbed I threw together, produced the following results:

``````fastest to slowest *_test() function timings:
10,000 elements, 1,000 timeit calls, best of 3

foo2_test() : 1.46 (0.00 times slower)
lambda_test() : 4.15 (1.84 times slower)
foo_test() : 4.28 (1.93 times slower)
``````

Each test function used just access each element of a list in a tight loop using a different technique.

Curious about how this applied to your sorting answer to the linked question, I obtained these differing results using it for sorting a list rather than just accessing each of the list's elements once:

``````fastest to slowest *_test() function timings:
10,000 elements, 1,000 timeit calls, best of 3

foo2_test() : 13.03 (0.00 times slower)
foo_test() : 14.70 (0.13 times slower)
lambda_test() : 16.25 (0.25 times slower)
``````

While `foo2()` was the fastest In both cases, in the sorting version it was only so by a very small amount.

Here's a listing of the full testbed used to get the first set of results for simple access:

``````import functools
import operator

import timeit
import types

N = 1000
R = 3
SZ = 10000
SUFFIX = '_test'
SUFFIX_LEN = len(SUFFIX)

def setup():
import random
global a_list
a_list = [random.randrange(100) for _ in xrange(SZ)]

def lambda_test():
global a_list
f = lambda i: a_list[i]
for i in xrange(len(a_list)): f(i)

def foo(indexable):
return functools.partial(operator.__getitem__, indexable)

def foo_test():
global a_list
g = foo(a_list)
for i in xrange(len(a_list)): g(i)

def foo2(indexable):
return indexable.__getitem__

def foo2_test():
global a_list
g = foo2(a_list)
for i in xrange(len(a_list)): g(i)

# find all the functions named *SUFFIX in the global namespace
funcs = tuple(value for id,value in globals().items()
if id.endswith(SUFFIX) and type(value) is types.FunctionType)

# run the timing tests and collect results
timings = [(f.func_name[:-SUFFIX_LEN],
min(timeit.repeat(f, setup=setup, repeat=R, number=N))
) for f in funcs]
timings.sort(key=lambda x: x[1])  # sort by speed (ironic use of lambda?)
fastest = timings[0][1]  # time fastest one took to run
longest = max(len(t[0]) for t in timings) # len of longest func name (w/o suffix)

print 'fastest to slowest *_test() function timings:\n' \
' {:,d} elements, {:,d} timeit calls, best of {:d}\n'.format(SZ, N, R)

def times_slower(speed, fastest):
return speed/fastest - 1.0

for i in timings:
print "{0:>{width}}{suffix}() : {1:.2f} ({2:.2f} times slower)".format(
i[0], i[1], times_slower(i[1], fastest), width=longest, suffix=SUFFIX)
``````

And here's the portion that was different when testing sort usage:

``````def setup():
import random
global a_list
a_list = [random.randrange(100) for _ in xrange(SZ)]

def lambda_test():
global a_list
sorted(range(len(a_list)), key=lambda i:a_list[i])

def foo(indexable):
return functools.partial(operator.__getitem__, indexable)

def foo_test():
global a_list
sorted(range(len(a_list)), key=foo(a_list))

def foo2(indexable):
return indexable.__getitem__

def foo2_test():
global a_list
sorted(range(len(a_list)), key=foo2(a_list))
``````
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