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Given a large (10s of GB) CSV file of mixed text/numbers, what is the fastest way to create an hdf5 file with the same content, while keeping the memory usage reasonable? I'd like to use the h5py module if possible.

In the toy example below, I've found an incredibly slow and incredibly fast way to write data to hdf5. Would it be best practice to write to hdf5 in chunks of 10,000 rows or so? Or is there a better way to write a massive amount of data to such a file?

import h5py

n = 10000000
f = h5py.File('foo.h5','w')
dset = f.create_dataset('int',(n,),'i')

# this is terribly slow
for i in xrange(n):
  dset[i] = i

# instantaneous
dset[...] = 42
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Read into a numpy array and avoid the loop by sending the whole array –  Benjamin Mar 29 '11 at 1:49
@Benjamin: what if the array is too large to hold in memory? –  Nicholas Palko Mar 29 '11 at 2:02
I think you need to give us an idea of how you want your hdf5 file structured –  Winston Ewert Mar 29 '11 at 2:22
then read it in in chunks as large as you can hold, and use a loop (maybe 10 iterations?) instead of going cell by cell. BTW, I've had no problem holding more than 25,000,000 floating point number arrays in memory. –  Benjamin Mar 29 '11 at 11:53
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2 Answers

up vote 4 down vote accepted

I would avoid chunking the data and would store the data as series of single array datasets (along the lines of what Benjamin is suggesting). I just finished loading the output of an enterprise app I've been working on into HDF5, and was able to pack about 4.5 Billion compound datatypes as 450,000 datasets, each containing a 10,000 array of data. Writes and reads now seem fairly instantaneous, but were painfully slow when I initially tried to chunk the data.

Just a thought!


These are a couple of snippets lifted from my actual code (I'm coding in C vs. Python, but you should get the idea of what I'm doing) and modified for clarity. I'm just writing long unsigned integers in arrays (10,000 values per array) and reading them back when I need an actual value

This is my typical writer code. In this case, I'm simply writing long unsigned integer sequence into a sequence of arrays and loading each array sequence into hdf5 as they are created.

//Our dummy data: a rolling count of long unsigned integers
long unsigned int k = 0UL;
//We'll use this to store our dummy data, 10,000 at a time
long unsigned int kValues[NUMPERDATASET];
//Create the SS adata files.
hid_t ssdb = H5Fcreate(SSHDF, H5F_ACC_TRUNC, H5P_DEFAULT, H5P_DEFAULT);
//NUMPERDATASET = 10,000, so we get a 1 x 10,000 array
hsize_t dsDim[1] = {NUMPERDATASET};
//Create the data space.
hid_t dSpace = H5Screate_simple(1, dsDim, NULL);
for (unsigned long int i = 0UL; i < NUMDATASETS; i++){
    for (unsigned long int j = 0UL; j < NUMPERDATASET; j++){
        kValues[j] = k;
        k += 1UL;
    //Create the data set.
    dssSet = H5Dcreate2(ssdb, g_strdup_printf("%lu", i), H5T_NATIVE_ULONG, dSpace, H5P_DEFAULT, H5P_DEFAULT, H5P_DEFAULT);
    //Write data to the data set.
    H5Dwrite(dssSet, H5T_NATIVE_ULONG, H5S_ALL, H5S_ALL, H5P_DEFAULT, kValues);
    //Close the data set.
//Release the data space
//Close the data files.

This is a slightly modified version of my reader code. There are more elegant ways of doing this (i.e., I could use hyperplanes to get the value), but this was the cleanest solution with respect to my fairly disciplined Agile/BDD development process.

unsigned long int getValueByIndex(unsigned long int nnValue){
    //NUMPERDATASET = 10,000
    unsigned long int ssValue[NUMPERDATASET];
    //MAXSSVALUE = 4,500,000,000; i takes the smaller value of MAXSSVALUE or nnValue
    //to avoid index out of range error 
    unsigned long int i = MIN(MAXSSVALUE-1,nnValue);
    //Open the data file in read-write mode.
    hid_t db = H5Fopen(_indexFilePath, H5F_ACC_RDONLY, H5P_DEFAULT);
    //Create the data set. In this case, each dataset consists of a array of 10,000
    //unsigned long int and is named according to its integer division value of i divided
    //by the number per data set.
    hid_t dSet = H5Dopen(db, g_strdup_printf("%lu", i / NUMPERDATASET), H5P_DEFAULT);
    //Read the data set array.
    H5Dread(dSet, H5T_NATIVE_ULONG, H5S_ALL, H5S_ALL, H5P_DEFAULT, ssValue);
    //Close the data set.
    //Close the data file.
    //Return the indexed value by using the modulus of i divided by the number per dataset
    return ssValue[i % NUMPERDATASET];

The main take-away is the inner loop in the writing code and the integer division and mod operations to get the index of the dataset array and index of the desired value in that array. Let me know if this is clear enough so you can put together something similar or better in h5py. In C, this is dead simple and gives me significantly better read/write times vs. a chunked dataset solution. Plus since I can't use compression with compound datasets anyway, the apparent upside of chunking is a moot point, so all my compounds are stored the same way.

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If possible, would you mind expanding a bit more on how your data is structured? If you could provide a concrete (code) example I'd be happy to accept the answer. –  Nicholas Palko Apr 11 '11 at 0:25
I've updated my response with code. Let me know if this helps! –  Marc Apr 12 '11 at 4:49
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I'm not sure if this is the most efficient way (and I've never used it; I'm just pulling together some tools I've used independently), but you could read the csv file into a numpy recarray using the matplotlib helper methods for csv:


You can probably find a way to read the csv files in chunks as well to avoid loading the whole thing to disk. Then use the recarray (or slices therein) to write the whole (or large chunks of it) to the h5py dataset. I'm not exactly sure how h5py handles recarrays, but the documentation indicates that it should be ok.

Basically if possible, try to write big chunks of data at once instead of iterating over individual elements.

Edit: Another possibility for reading the csv file is just numpy.genfromtxt:


You can grab the columns you want using the keyword usecols, and then only read in a specified set of lines by properly setting the skip_header and skip_footer keywords.

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