Deep Learning experiments from University of Chicago.


Keywords
deep-learning, hdf5, pickle, python
License
BSD-3-Clause
Install
pip install deepdish==0.3.7

Documentation

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deepdish

Flexible HDF5 saving/loading and other data science tools from the University of Chicago. This repository also host a Deep Learning blog:

Installation

pip install deepdish

Alternatively (if you have conda with the conda-forge channel):

conda install -c conda-forge deepdish

Main feature

The primary feature of deepdish is its ability to save and load all kinds of data as HDF5. It can save any Python data structure, offering the same ease of use as pickling or numpy.save. However, it improves by also offering:

  • Interoperability between languages (HDF5 is a popular standard)
  • Easy to inspect the content from the command line (using h5ls or our specialized tool ddls)
  • Highly compressed storage (thanks to a PyTables backend)
  • Native support for scipy sparse matrices and pandas DataFrame, Series and Panel
  • Ability to partially read files, even slices of arrays

An example:

import deepdish as dd

d = {
    'foo': np.ones((10, 20)),
    'sub': {
        'bar': 'a string',
        'baz': 1.23,
    },
}
dd.io.save('test.h5', d)

This can be reconstructed using dd.io.load('test.h5'), or inspected through the command line using either a standard tool:

$ h5ls test.h5
foo                      Dataset {10, 20}
sub                      Group

Or, better yet, our custom tool ddls (or python -m deepdish.io.ls):

$ ddls test.h5
/foo                       array (10, 20) [float64]
/sub                       dict
/sub/bar                   'a string' (8) [unicode]
/sub/baz                   1.23 [float64]

Read more at Saving and loading data.

Documentation