Edward Grefenstette
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Sep
11
comment Minimising reading from and writing to disk in Python for a memory-heavy operation
Forgive my ignorance of databases, but won't this approach: a) Require disk writes every time I update a vector, just like solution 3? b) Make the storage of these vectors horrible? (Most of them are quite sparse, and there are a lot, so we want to minimise the space they take on disk as much as possible)? I'm not very familiar with databases, so there might be obvious ways around these problems...
Sep
11
comment Minimising reading from and writing to disk in Python for a memory-heavy operation
The main problem with option 3 is that it basically maximises the IO operations you need to make. Vector components need to be read and then written back to disk (after increment) every time a vector needs to be updated. For some entities vectors are being built for, this can happen a lot in the corpus. Building an entire vector in memory and then writing it (once) is the most optimal solution, but has some problems.
Sep
11
comment Minimising reading from and writing to disk in Python for a memory-heavy operation
We use numpy sparse matrices for this, because the vectors are fairly sparse. Indeed speedups are handy, but the real task here seems to be determining (possibly at run time) how much of the task can be done in memory before a write needs to be done.
Sep
11
revised Minimising reading from and writing to disk in Python for a memory-heavy operation
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Sep
11
comment Minimising reading from and writing to disk in Python for a memory-heavy operation
The workhorse machine I plan on running this on has ~70G RAM and 24 Intel Xeon 3.47GHz cores.
Sep
11
comment Minimising reading from and writing to disk in Python for a memory-heavy operation
@knitti The vectors are typically fairly sparse. In practice I use numpy.sparse.lil_matrix instances, and write them as .npy files, but I'm open to doing things differently, though.
Sep
11
revised Minimising reading from and writing to disk in Python for a memory-heavy operation
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Sep
11
revised Minimising reading from and writing to disk in Python for a memory-heavy operation
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Sep
11
comment Minimising reading from and writing to disk in Python for a memory-heavy operation
@knitti Thanks for asking. I don't know if it's relevant to the solution, but I'll trust your intuition. I've added the answers to your question (I hope!) to the section "Technical Details" in the problem description.
Sep
11
asked Minimising reading from and writing to disk in Python for a memory-heavy operation
Sep
10
asked Problems Installing Qt SDK on Mac OS X Lion
Mar
18
awarded  Commentator
Mar
18
comment Dictionary-like efficient storing of scipy/numpy arrays
Okay, using protocol two halves the storage space needed. That's sadly not enough, but it's good progress. I'll have to look at this hdf5 stuff...
Mar
17
comment Dictionary-like efficient storing of scipy/numpy arrays
As a matter of fact... I didn't know that. I sort of assumed it would default to the most practical. I'll just test whether or not there's a significan space gain on my data with protocol 2. Thanks for pointing this out!
Mar
16
comment Dictionary-like efficient storing of scipy/numpy arrays
This might ultimately be the solution I end up doing but it feels somewhat inelegant, and I'm keen to see if there are existing solutions before reinventing the wheel. Good suggestion, though. Thanks.
Mar
16
asked Dictionary-like efficient storing of scipy/numpy arrays
Feb
10
awarded  Teacher
Feb
9
comment Efficient computation of kronecker products in C
Thanks for that! I didn't know those tricks. Very helpful :-)
Feb
9
awarded  Announcer
Feb
9
answered Efficient computation of kronecker products in C