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Crunch.io Cube library

Project description

crunch-cube

Open Source Python implementation of the API for working with CrunchCubes

Introduction

This package contains the implementation of the CrunchCube API. It is used to extract useful information from CrunchCube responses (we'll refer to them as cubes in the subsequent text). Cubes are obtained from the Crunch.io platform, as JSON responses to the specific queries created by the user. These queries specify which data the user wants to extract from the Crunch.io system. The most common usage is to obtain the following:

  • Cross correlation between different variable
  • Margins of the cross tab cube
  • Proportions of the cross tab cube (e.g. proportions of each single element to the entire sample size)
  • Percentages

When the data is obtained from the Crunch.io platform, it needs to be interpreted to the form that's convenient for a user. The actual shape of the cube JSON contains many internal details, which are not of essence to the end-user (but are still necessary for proper cube functionality).

The job of this library is to provide a convenient API that handles those intricacies, and enables the user to quickly and easily obtain (extract) the relevant data from the cube. Such data is best represented in a table-like format. For this reason, the most of the API functions return some form of the ndarray type, from the numpy package. Each function is explained in greater detail, uner its own section, under the API subsection of this document.

Installation

The cr.cube package can be installed by using the pip install:

pip install cr.cube

For developers

For development mode, cr.cube needs to be installed from the local checkout of the crunch-cube repository. It is strongly advised to use virtualenv. Assuming you've created and activated a virtual environment venv, navigate to the top-level folder of the repo, on the local file system, and run:

pip install -e .

or

python setup.py develop

Running tests

To setup and run tests, you will need to install cr.cube as well as testing dependencies. To do this, from the root directory, simply run:

pip install -e .[testing]

And then tests can be run using py.test in the root directory:

pytest

Usage

After the cr.cube package has been successfully installed, the usage is as simple as:

from cr.cube.crunch_cube import CrunchCube

### Obtain the crunch cube JSON from the Crunch.io
### And store it in the 'cube_JSON_response' variable

cube = CrunchCube(cube_JSON_response)
cube.as_array()

### Outputs:
#
# np.array([
#     [5, 2],
#     [5, 3]
# ])

API

as_array

Tabular, or matrix, representation of the cube. The detailed description can be found here.

margin

Calculates margins of the cube. The detailed description can be found here.

proportions

Calculates proportions of single variable elements to the whole sample size. The detailed description can be found here.

percentages

Calculates percentages of single variable elements to the whole sample size. The detailed description can be found here.

Build Status Coverage Status Documentation Status

Changes

1.11.37

  • PR 216: Document matrix.py classes and properties

1.11.36

  • Hypotesis testing for subtotals (heading and insertions)

1.11.35

  • Bug fix for hypothesis testing with overlaps

1.11.34

  • Bug fix for augmented MRxMR matrices

1.11.33

  • Manage augmentation for MRxMR matrices

1.11.32

  • Handle hidden option for insertions

1.11.31

  • Use bases instead of margin for MR standard_error calculation

1.11.30

  • Fix standard_error calculation for MR types

1.11.29

  • Fix standard_error denominator for Strand

1.11.28

  • Fix collapsed scale-mean-pairwise-indices

1.11.27

  • Standard deviation and standard error for Strand

1.11.26

  • Fix pairwise_indices() array collapse when all values empty

1.11.25

  • Expose two-level pairwise-t-test

1.11.24

  • Bug fix for scale_median calculation

1.11.23

  • Expose population fraction in cube partitions

1.11.22

  • Additional summary measures for scale (std_dev, std_error, median)

1.11.21

  • Fix slicing for CA + single col filter

1.11.20

  • Fix cube title payload discrepancy

1.11.19

  • Fix problem where pre-ordering anchor-idx was used for locating inserted subtotal vectors
  • Enable handling of filter-only multitable-template placeholders.
  • New measures: table and columns standard deviation and standard error

1.11.18

  • Fix wrong proportions and base values when explicit order is expressed

1.11.17

  • Fix incorrect means values after hiding

For a complete list of changes see history.

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