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I am using Python to parse a large file. What I want to do is

If condition =True
   append to list A
   append to list B

I want to use generator expressions for this - to save memory. I am putting in the actual code.

def is_low_qual(read):
    lowqual_bp=(bq for bq in phred_quals(read) if bq < qual_threshold)  
    if iter_length(lowqual_bp) >  num_allowed:
        return True
        return False  

lowqual=(read for read in SeqIO.parse(r_file,"fastq") if is_low_qual(read)==True)
highqual=(read for read in SeqIO.parse(r_file,"fastq") if is_low_qual(read)==False)


def iter_length(the_gen):
    return sum(1 for i in the_gen)
share|improve this question
As a side note, don't compare to true/false. Use if is_condition_true(r) and if not is_condition_true(r). – delnan Aug 24 '12 at 16:23
delnan is right, other things are OK. – MostafaR Aug 24 '12 at 16:24
This looks fine. Has this failed? Is that why you're asking? – inspectorG4dget Aug 24 '12 at 16:25
It probably works, but it's ugly and inefficient. It also breaks if sequences is an iterator (you can use itertools.tee for that though). – delnan Aug 24 '12 at 16:28
How are you using low and high after you have created the generators? – Andrew Clark Aug 24 '12 at 16:37

4 Answers 4

This is surprisingly difficult to do elegantly. Here's something that works:

from itertools import tee, ifilter, ifilterfalse
low, high = [f(condition, g) for f, g in zip((ifilter, ifilterfalse), tee(seq))]

Note that as you consume items from one resulting iterator (say low), the internal deque in tee will have to expand to contain any items that you have not yet consumed from high (including, unfortunately, those which ifilterfalse will reject). As such this might not save as much memory as you're hoping.

Here's an implementation that uses as little additional memory as possible:

def filtertee(func, iterable, codomain=(False, True)):
    it = iter(iterable)
    deques = dict((r, deque()) for r in codomain)
    def gen(mydeque):
        while True:
            while not mydeque:          # as long as the local deque is empty
                newval = next(it)       # fetch a new value,
                result = func(newval)   # find its image under `func`,
                    d = deques[result]  # find the appropriate deque, and
                except KeyError:
                    raise ValueError("func returned value outside codomain")
                d.append(newval)        # add it.
            yield mydeque.popleft()
    return dict((r, gen(d)) for r, d in deques.items())

This returns a dict from the codomain of the function to a generator providing the items that take that value under func:

gen = filtertee(condition, seq)
low, high = gen[True], gen[False]

Note that it's your responsibility to ensure that condition only returns values in codomain.

share|improve this answer
He doesn't want lists to be generated to save memory. – nneonneo Aug 24 '12 at 16:33
@nneonneo thanks, that simplifies it! – ecatmur Aug 24 '12 at 16:34

Just to add a more general answer: If your main concern is memory, you should use one generator that loops over the whole file, and handle each item as low or high as it comes. Something like:

for r in sequences:
    if condition_true(r):

If you need to collect all high/low elements before using either, then you can't guard against a potential memory hit. The reason is that you can't know which elements are high/low until you read them. If you have to process low first, and it turns out all the elements are actually high, you have no choice but to store them in a list as you go, which will use memory. Doing it with one loop allows you to handle each element one at a time, but you have to balance this against other concerns (i.e., how cumbersome it is to do it this way, which will depend on exactly what you're trying to do with the data).

share|improve this answer
I'm sorry I don't understand. Is the above a generator? I wanted to use a generator for each array because I think that doesn't actually store it in memory, right, it's just an expression? What I need to do with the data is print it out using Bio.SeqIO.write - which is more efficient if I don't call it each time it loops. Alternatively, I could just print at each step using simple print statements. It comes down to this - is creating a generator really expensive? In which case creating 2 is even more? – Nupur Aug 24 '12 at 17:05
@Nupur: The above is just a loop. The only reason to create a generator is to use it in a loop. It seems you currently have one generator (called sequences). What I'm saying is, if you really want to save memory, then instead of trying to create two generators from that, just loop over the original generator directly. If all you're doing is writing it out, then my solution should work fine. If you need more specifics you'll have to edit your question to give more details about the code where you use the data. – BrenBarn Aug 24 '12 at 17:08

I think you're striving to avoid iterating over your collection twice. If so, this type of approach works:

high, low = [], []
_Nones = [high.append(x) if is_condition_true() else low.append(x) for x in sequences]

This is probably less than advised because it's using a list comprehension for a side-effect. That's generally anti-pythonic.

share|improve this answer
Well, that also creates a list of [None]*len(sequences), which is undesirable as it uses even more memory as his original suggestion. – nneonneo Aug 24 '12 at 16:32
Rather than using a list comprehension, you could use any(...) with the equivalent generator expression. Since each item is None and thus false, any() is guaranteed to consume the entire iterator. (You could also use a collections.deque(maxlen=0) to consume the iterator; it'll probably be faster since it does no truth-testing.) – kindall Aug 24 '12 at 16:37
I find it generally simpler (and more readable) to use a for-loop when side-effects are involved (especially append). So in this case I'd definitely write it out as a loop. – nneonneo Aug 24 '12 at 17:00
I want to avoid list comprehensions because they are expensive. Ok , let me look at the any and deque - I am not familiar with them – Nupur Aug 24 '12 at 17:10

You can use itertools.tee in conjunction with itertools.ifilter and itertools.ifilterfalse:

import itertools
def is_condition_true(x):

gen1, gen2 = itertools.tee(sequences)
low = itertools.ifilter(is_condition_true, gen1)
high = itertools.ifilterfalse(is_condition_true, gen2)

Using tee ensures that the function works correctly even if sequences is itself a generator.

Note, though, that tee could itself use a fair bit of memory (up to a list of size len(sequences)) if low and high are consumed at different rates (e.g. if low is exhausted before high is used).

share|improve this answer
Oh, I have to avoid high memory situations, so can't use it. Sequences is an iterator, not a generator. sequences=SeqIO.parse(read_file,"fastq") Should it still break? – Nupur Aug 24 '12 at 16:52
What kind of iterator? Iterator is a general term for anything you can iterate across in Python. – nneonneo Aug 24 '12 at 16:54
It is from the Biopython package.".. Bio.SeqIO.parse() which takes a file handle and format name, and returns a SeqRecord iterator" – Nupur Aug 24 '12 at 16:57
OK. So now your problem makes sense. You have a large file containing many records, and you want to split the file into two smaller files each containing half of the file according to some filter without reading the whole thing into memory. Is that about right? – nneonneo Aug 24 '12 at 17:03
In that case, your best option is to write the records one-at-a-time to the appropriate file as each one comes off the input iterator. This uses the least memory and only iterates once. – nneonneo Aug 24 '12 at 17:05

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