I'm using numpy and Python 2.7 to compute large (100 million+ elements) boolean arrays for a super-massive prime sieve and write them to binary files to read at a much later time. NumPy bools are 8-bit, so the file size that I'm writing is much larger than necessary. Since I'm writing a large number of these files I'd like to keep them as small as humanly possible without having to waste a lot of time/memory converting them to a bitarray and back.
I was originally going to switch to using the bitarray module to keep file size down, but the sieve computation time increased by around 400% with the same algorithms, which is a bit unacceptable. Is there a fast-ish way to write and read back the ndarray in a smaller file, or is this a trade-off that I'm just going to have to deal with?