In Python, how do I read in a binary file and loop over each byte of that file?
Python 2.4 and Earlier
f = open("myfile", "rb") try: byte = f.read(1) while byte != "": # Do stuff with byte. byte = f.read(1) finally: f.close()
with open("myfile", "rb") as f: byte = f.read(1) while byte != "": # Do stuff with byte. byte = f.read(1)
Note that the with statement is not available in versions of Python below 2.5. To use it in v 2.5 you'll need to import it:
from __future__ import with_statement
In 2.6 this is not needed.
In Python 3, it's a bit different. We will no longer get raw characters from the stream in byte mode but byte objects, thus we need to alter the condition:
with open("myfile", "rb") as f: byte = f.read(1) while byte != b"": # Do stuff with byte. byte = f.read(1)
Or as benhoyt says, skip the not equal and take advantage of the fact that
b"" evaluates to false. This makes the code compatible between 2.6 and 3.x without any changes. It would also save you from changing the condition if you go from byte mode to text or the reverse.
with open("myfile", "rb") as f: byte = f.read(1) while byte: # Do stuff with byte. byte = f.read(1)
This generator yields bytes from a file, reading the file in chunks:
def bytes_from_file(filename, chunksize=8192): with open(filename, "rb") as f: while True: chunk = f.read(chunksize) if chunk: for b in chunk: yield b else: break # example: for b in bytes_from_file('filename'): do_stuff_with(b)
If the file is not too big that holding it in memory is a problem:
bytes_read = open("filename", "rb").read() for b in bytes_read: process_byte(b)
where process_byte represents some operation you want to perform on the passed-in byte.
If you want to process a chunk at a time:
file = open("filename", "rb") try: bytes_read = file.read(CHUNKSIZE) while bytes_read: for b in bytes_read: process_byte(b) bytes_read = file.read(CHUNKSIZE) finally: file.close()
To read a file — one byte at a time (ignoring the buffering) — you could use the two-argument
iter(callable, sentinel) built-in function:
with open(filename, 'rb') as file: for byte in iter(lambda: file.read(1), b''): # Do stuff with byte
file.read(1) until it returns nothing
b'' (empty bytestring). The memory doesn't grow unlimited for large files. You could pass
open(), to disable the buffering — it guarantees that only one byte is read per iteration (slow).
with-statement closes the file automatically — including the case when the code underneath raises an exception.
Despite the presence of internal buffering by default, it is still inefficient to process one byte at a time. For example, here's the
blackhole.py utility that eats everything it is given:
#!/usr/bin/env python3 """Discard all input. `cat > /dev/null` analog.""" import sys from functools import partial from collections import deque chunksize = int(sys.argv) if len(sys.argv) > 1 else (1 << 15) deque(iter(partial(sys.stdin.detach().read, chunksize), b''), maxlen=0)
$ dd if=/dev/zero bs=1M count=1000 | python3 blackhole.py
It processes ~1.5 GB/s when
chunksize == 32768 on my machine and only ~7.5 MB/s when
chunksize == 1. That is, it is 200 times slower to read one byte at a time. Take it into account if you can rewrite your processing to use more than one byte at a time and if you need performance.
mmap allows you to treat a file as a
bytearray and a file object simultaneously. It can serve as an alternative to loading the whole file in memory if you need access both interfaces. In particular, you can iterate one byte at a time over a memory-mapped file just using a plain
from mmap import ACCESS_READ, mmap with open(filename, 'rb', 0) as f, mmap(f.fileno(), 0, access=ACCESS_READ) as s: for byte in s: # length is equal to the current file size # Do stuff with byte
mmap supports the slice notation. For example,
len bytes from the file starting at position
i. The context manager protocol is not supported before Python 3.2; you need to call
mm.close() explicitly in this case. Iterating over each byte using
mmap consumes more memory than
mmap is an order of magnitude faster.
To sum up all the brilliant points of chrispy, Skurmedel, Ben Hoyt and Peter Hansen, this would be the optimal solution for processing a binary file one byte at a time:
with open("myfile", "rb") as f: while True: byte = f.read(1) if not byte: break do_stuff_with(ord(byte))
For python versions 2.6 and above, because:
- python buffers internally - no need to read chunks
- DRY principle - do not repeat the read line
- with statement ensures a clean file close
- 'byte' evaluates to false when there are no more bytes (not when a byte is zero)
Or use J. F. Sebastians solution for improved speed
from functools import partial with open(filename, 'rb') as file: for byte in iter(partial(file.read, 1), b''): # Do stuff with byte
Or if you want it as a generator function like demonstrated by codeape:
def bytes_from_file(filename): with open(filename, "rb") as f: while True: byte = f.read(1) if not byte: break yield(ord(byte)) # example: for b in bytes_from_file('filename'): do_stuff_with(b)
Reading binary file in Python and looping over each byte
New in Python 3.5 is the
pathlib module, which has a convenience method specifically to read in a file as bytes, allowing us to iterate over the bytes. I consider this a decent (if quick and dirty) answer:
import pathlib for byte in pathlib.Path(path).read_bytes(): print(byte)
Interesting that this is the only answer to mention
In Python 2, you probably would do this (as Vinay Sajip also suggests):
with open(path, 'b') as file: for byte in file.read(): print(byte)
In the case that the file may be too large to iterate over in-memory, you would chunk it, idiomatically, using the
iter function with the
callable, sentinel signature - the Python 2 version:
with open(path, 'b') as file: callable = lambda: file.read(1024) sentinel = bytes() # or b'' for chunk in iter(callable, sentinel): for byte in chunk: print(byte)
(Several other answers mention this, but few offer a sensible read size.)
Best practice for large files or buffered/interactive reading
Let's create a function to do this, including idiomatic uses of the standard library for Python 3.5+:
from pathlib import Path from functools import partial from io import DEFAULT_BUFFER_SIZE def file_byte_iterator(path): """given a path, return an iterator over the file that lazily loads the file """ path = Path(path) with path.open('rb') as file: reader = partial(file.read1, DEFAULT_BUFFER_SIZE) file_iterator = iter(reader, bytes()) for chunk in file_iterator: for byte in chunk: yield byte
Note that we use
file.read blocks until it gets all the bytes requested of it or
file.read1 allows us to avoid blocking, and it can return more quickly because of this. No other answers mention this as well.
Demonstration of best practice usage:
Let's make a file with a megabyte (actually mebibyte) of pseudorandom data:
import random import pathlib path = 'pseudorandom_bytes' pathobj = pathlib.Path(path) pathobj.write_bytes( bytes(random.randint(0, 255) for _ in range(2**20)))
Now let's iterate over it and materialize it in memory:
>>> l = list(file_byte_iterator(path)) >>> len(l) 1048576
We can inspect any part of the data, for example, the last 100 and first 100 bytes:
>>> l[-100:] [208, 5, 156, 186, 58, 107, 24, 12, 75, 15, 1, 252, 216, 183, 235, 6, 136, 50, 222, 218, 7, 65, 234, 129, 240, 195, 165, 215, 245, 201, 222, 95, 87, 71, 232, 235, 36, 224, 190, 185, 12, 40, 131, 54, 79, 93, 210, 6, 154, 184, 82, 222, 80, 141, 117, 110, 254, 82, 29, 166, 91, 42, 232, 72, 231, 235, 33, 180, 238, 29, 61, 250, 38, 86, 120, 38, 49, 141, 17, 190, 191, 107, 95, 223, 222, 162, 116, 153, 232, 85, 100, 97, 41, 61, 219, 233, 237, 55, 246, 181] >>> l[:100] [28, 172, 79, 126, 36, 99, 103, 191, 146, 225, 24, 48, 113, 187, 48, 185, 31, 142, 216, 187, 27, 146, 215, 61, 111, 218, 171, 4, 160, 250, 110, 51, 128, 106, 3, 10, 116, 123, 128, 31, 73, 152, 58, 49, 184, 223, 17, 176, 166, 195, 6, 35, 206, 206, 39, 231, 89, 249, 21, 112, 168, 4, 88, 169, 215, 132, 255, 168, 129, 127, 60, 252, 244, 160, 80, 155, 246, 147, 234, 227, 157, 137, 101, 84, 115, 103, 77, 44, 84, 134, 140, 77, 224, 176, 242, 254, 171, 115, 193, 29]
Don't iterate by lines for binary files
Don't do the following - this pulls a chunk of arbitrary size until it gets to a newline character - too slow when the chunks are too small, and possibly too large as well:
with open(path, 'rb') as file: for chunk in file: # text newline iteration - not for bytes for byte in chunk: yield byte
The above is only good for what are semantically human readable text files (like plain text, code, markup, markdown etc... essentially anything ascii, utf, latin, etc... encoded).
Python 3, read all of the file at once:
with open("filename", "rb") as binary_file: # Read the whole file at once data = binary_file.read() print(data)
You can iterate whatever you want using
If you have a lot of binary data to read, you might want to consider the struct module. It is documented as converting "between C and Python types", but of course, bytes are bytes, and whether those were created as C types does not matter. For example, if your binary data contains two 2-byte integers and one 4-byte integer, you can read them as follows (example taken from
>>> struct.unpack('hhl', b'\x00\x01\x00\x02\x00\x00\x00\x03') (1, 2, 3)
You might find this more convenient, faster, or both, than explicitly looping over the content of a file.
if you are looking for something speedy, here's a method I've been using that's worked for years:
from array import array with open( path, 'rb' ) as file: data = array( 'B', file.read() ) # buffer the file # evaluate it's data for byte in data: v = byte # int value c = chr(byte)
if you want to iterate chars instead of ints, you can simply use
data = file.read(), which should be a bytes() object in py3.
After trying all the above and using the answer from @Aaron Hall, I was getting memory errors for a ~90 Mb file on a computer running Window 10, 8 Gb RAM and Python 3.5 32-bit. I was recommended by a colleague to use
numpy instead and it works wonders.
By far, the fastest to read an entire binary file (that I have tested) is:
import numpy as np file = "binary_file.bin" data = np.fromfile(file, 'u1')
Multitudes faster than any other methods so far. Hope it helps someone!