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I'm curious to understand why in the first example, the memory consumption happens like I was imaging:

s = StringIO()
# Memory increases: OK
# Memory decreases: OK

while in this second example, at the end, I use the same thing but the memory does not seem to decrease after the truncate method. The following code is in a method of a class.

from StringIO import StringIO
import requests

self.BUFFER_SIZE = 5 * 1024 * 2 ** 10 # 5 MB
self.MAX_MEMORY = 3 * 1024 * 2 ** 10 # 3 MB

r = requests.get(, stream=True)  # stream=True to not download the data at once

chunks = r.iter_content(chunk_size=self.BUFFER_SIZE)
buff = StringIO()

# Get the MAX_MEMORY first data
for chunk in chunks:
    if buff.len > self.MAX_MEMORY:

# Left the loop because there is no more chunks: it stays in memory
if buff.len < self.MAX_MEMORY: = buff.getvalue()

# Otherwise, prepare a temp file and process the remaining chunks
    self.path = self._create_tmp_file_path()

    with open(self.path, 'w') as f:
        # Write the first downloaded data

        # Free the buffer ?

        # Memory does not decrease
        # And another 5MB will be added to the memory hiting the next line which is normal because it is the size of a chunk
        # But if the buffer was freed, the memory would stay steady: - 5 MB + 5 MB

        # Write the remaining chunks directly into the file
        for chunk in chunks:

Any thoughts? Thanks.

share|improve this question
How do you measure "Memory increases"? – Robᵩ Mar 6 '13 at 21:42
The OS often leaves memory allocated to a process when freed in case they are about to use it again. How do you measure memory usage? – Martijn Pieters Mar 6 '13 at 21:42
Well, I do not do it the best way because I look at the memory consumption of the python process. But it definitely increases by 5Mb and then by 5Mb again when hitting the last for loop. – YAmikep Mar 6 '13 at 21:44
try a forced garbage-collection: import gc; gc.collect() - does it change something? – Don Question Mar 6 '13 at 21:54
gc.collect does not change anything :/ The memory still doubles. – YAmikep Mar 6 '13 at 21:56

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