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I'm trying to speed up the following code, where given a list of strings str_list I'm trying to convert the string into a number (unpack) and assign this number into the correct position of the nested list data. The dimensions of data are roughly data[4][20][1024]. Unfortunately, this function runs very slowly. Here's the code:

for abs_idx in range(nbr_elements):

    # get string
    this_element = str_list[abs_idx]

    # convert into number
    this_element = unpack('d', this_element)[0]

    # calculate the buffer number
    buffer_nbr = abs_idx / NBR_DATA_POINTS_PER_BUFFER_INT

    # calculate the position inside the buffer
    index_in_buffer = abs_idx % NBR_DATA_POINTS_PER_BUFFER_INT

    # write data into correct position
    data[file_idx][buffer_nbr][index_in_buffer] = this_element

I also tried the following alternative solution, which is even slower:

# convert each string into a number
unpacked_values = [unpack('d', str_list[j])[0] for j in range(nbr_elements)]
for abs_idx in range(nbr_elements):

    # calculate the buffer number
    buffer_nbr = abs_idx / NBR_DATA_POINTS_PER_BUFFER_INT

    # calculate the position inside the buffer
    index_in_buffer = abs_idx % NBR_DATA_POINTS_PER_BUFFER_INT

    # write data into correct position
    data[file_idx][buffer_nbr][index_in_buffer] = unpacked_values[abs_idx]

To my surprise, the next implementation is the slowest (I expected it to be the fastest):

# convert each string into a number
unpacked_values = [unpack('d', str_list[j])[0] for j in range(nbr_elements)]

# calculate all buffer numbers at once
buffer_ids = np.arange(nbr_elements) / NBR_DATA_POINTS_PER_BUFFER_INT

# calculate all positions inside the buffer at once
index_in_buffer_id = np.arange(nbr_elements) % NBR_DATA_POINTS_PER_BUFFER_INT

for abs_idx in range(nbr_elements):
    data[file_idx][buffer_ids[abs_idx]][index_in_buffer_id[abs_idx]] = unpacked_values[abs_idx]

Why are the successive implementations performing worse? Where are the individual bottlenecks? And how can I speed up my initial code?

EDIT: from my profiling tests, the following two steps are the bottleneck: running unpack and assigning the value to data. I don't know though how to speed-up these steps.

EDIT2: I need to use unpack because my strings are in hex.

EDIT3: values = unpack("d" * n, "".join(str_list)) solves the problem with unpack being slow. Still, the assignment to data with the triple (original) or double (modified) nested loop eats up 50% of the time. Is there a way to reduce this time?

share|improve this question
    
How many elements are you iterating over? –  Brendan Wood May 24 '12 at 17:51
    
nbr_elements is in the order of 2000 to 20000. –  memyself May 24 '12 at 17:58
    
Have you tried using something like int(this_element.strip()) instead of unpack('d', this_element)[0]? I'm not familiar with unpack, but it might have a large relative overhead if all it's doing is converting numbers in a string to an integer. Also, is data just a nested list? –  Brendan Wood May 24 '12 at 18:03
    
yes, data is a nested list. –  memyself May 24 '12 at 18:04
    
If you're using hex, you can still use int(). Just specify the base you're working in as the second argument: int(this_element.strip(), 16) –  Brendan Wood May 24 '12 at 18:17
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3 Answers

up vote 1 down vote accepted

Some optimizations:

  1. Unpack all stings at once
  2. Get item data[file_idx] before loop

Try it:

n = len(str_list)
values = unpack("d" * n, "".join(str_list))

a = data[file_idx]

# Just to shorten this code sample
q = NBR_DATA_POINTS_PER_BUFFER_INT

for i in xrange(n):
    a[i / q][i % q] = values[i]

Btw, did you profile what part of the code takes the most time?

UPDATE:

n = len(str_list)
values = unpack("d" * n, "".join(str_list))

# Just to shorten this code sample
q = NBR_DATA_POINTS_PER_BUFFER_INT

data[file_idx] = [values[i:i+q] for i in xrange(0, n, q)]
share|improve this answer
    
values = unpack("d" * n, "".join(str_list)) is great! however the assignment in the loop still eats up 50% of all time. –  memyself May 24 '12 at 18:51
    
Check out my update. List comprehension is better than a regular loop with random array access. –  spatar May 25 '12 at 0:40
    
@memyself: any improvements with the last update? –  spatar May 25 '12 at 18:13
    
the List comprehension is about 10 times faster! why is that? –  memyself May 27 '12 at 14:23
    
why would xrange be beneficial here? shouldn't range be faster since we need the i values? –  memyself May 27 '12 at 15:44
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Is this any faster? It reduces some lookups and does not need to make an intermediate list with the numbers for all the strings?

df = data[file_idx]
index = 0
for value in str_list:
    # not sure what unpack does... is there a faster function 
    # that does the same?
    number = unpack('d', value)[0]

    # calculate the buffer number
    buffer_nbr = index / NBR_DATA_POINTS_PER_BUFFER_INT

    # calculate the position inside the buffer
    index_in_buffer = index % NBR_DATA_POINTS_PER_BUFFER_INT

    # write data into correct position
    df[buffer_nbr][index_in_buffer] = number

    index += 1
share|improve this answer
    
the df[buffer_nbr][index_in_buffer] is still the slowest. is there a way to make it faster? –  memyself May 24 '12 at 19:10
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How about this:

df = data[file_idx]
index = 0
bufnr = 0
buf = df[0]
for value in str_list:
    # not sure what unpack does... is there a faster function 
    # that does the same?
    number = unpack('d', value)[0]

    buf[index] = number

    index += 1

    if index >= NBR_DATA_POINTS_PER_BUFFER_INT:
        index = 0
        bufnr += 1
        buf = df[bufnr]

Could it be that data is a dictionary instead of a list?

share|improve this answer
    
the data is a list. –  memyself May 27 '12 at 14:05
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