Heavily depending on your index file size you might want to read it completely into a numpy array. If the file is not large, complete sequential read may be faster than a large number of seeks.
One problem with the seek operations is that python operates on buffered input. If the program was written in some lower level language, the use on unbuffered IO would be a good idea, as you only need a few values.
import numpy as np
# read the complete index into memory
index_array = np.fromfile("my_index", dtype=np.uint32)
# look up the indices you need (indices being a list of indices)
If you would anyway read almost all pages (i.e. your indices are random and at a frequency of 1/1000 or more), this is probably faster. On the other hand, if you have a large index file, and you only want to pick a few indices, this is not so fast.
Then one more possibility - which might be the fastest - is to use the python
mmap module. Then the file is memory-mapped, and only the pages really required are accessed.
It should be something like this:
with open("my_index", "rb") as f:
memory_map = mmap.mmap(mmap.mmap(f.fileno(), 0)
for i in indices:
# the index at position i:
idx_value = struct.unpack('I', memory_map[4*i:4*i+4])
(Note, I did not actually test that one, so there may be typing errors. Also, I did not care about endianess, so please check it is correct.)
Happily, these can be combined by using
numpy.memmap. It should keep your array on disk but give you numpyish indexing. It should be as easy as:
import numpy as np
index_arr = np.memmap(filename, dtype='uint32', mode='rb')
I think this should be the easiest and fastest alternative. However, if "fast" is important, please test and profile.
EDIT: As the
mmap solution seems to gain some popularity, I'll add a few words about memory mapped files.
What is mmap?
Memory mapped files are not something uniquely pythonic, because memory mapping is something defined in the POSIX standard. Memory mapping is a way to use devices or files as if they were just areas in memory.
File memory mapping is a very efficient way to randomly access fixed-length data files. It uses the same technology as is used with virtual memory. The reads and writes are ordinary memory operations. If they point to a memory location which is not in the physical RAM memory ("page fault" occurs), the required file block (page) is read into memory.
The delay in random file access is mostly due to the physical rotation of the disks (SSD is another story). In average, the block you need is half a rotation away; for a typical HDD this delay is approximately 5 ms plus any data handling delay. The overhead introduced by using python instead of a compiled language is negligible compared to this delay.
If the file is read sequentially, the operating system usually uses a read-ahead cache to buffer the file before you even know you need it. For a randomly accessed big file this does not help at all. Memory mapping provides a very efficient way, because all blocks are loaded exactly when you need and remain in the cache for further use. (This could in principle happen with
fseek, as well, because it might use the same technology behind the scenes. However, there is no guarantee, and there is anyway some overhead as the call wanders through the operating system.)
mmap can also be used to write files. It is very flexible in the sense that a single memory mapped file can be shared by several processes. This may be very useful and efficient in some situations, and
mmap can also be used in inter-process communication. In that case usually no file is specified for
mmap, instead the memory map is created with no file behind it.
mmap is not very well-known despite its usefulness and relative ease of use. It has, however, one important 'gotcha'. The file size has to remain constant. If it changes during
mmap, odd things may happen.