-
Notifications
You must be signed in to change notification settings - Fork 1
Working with Crunch Cubes from scrunch
The following snippets in python will demonstrate how to do basic analyses by combining the power of scrunch client + CrunchCube library.
scrunch
is a Crunch.io client for working with Crunch.io platform from Python. Please refer to its GitHub page, for setting it up.
Once you have scrunch
and cr.cube
installed (cr.cube
should install as scrunch
dependency), you can connect to Crunch.io:
import scrunch as sc
sc.connect('[email protected]', '****', site_url='https://alpha.crunch.io/api/')
and access different datasets:
ds_name = 'ECONOMIST - 20171125 Draft'
ds = sc.get_dataset(ds_name)
Once you have a dataset handy, you can create analyses, leveraging the power of crtabs
, a method that creates CrunchCube
representation of the cube response JSON:
from scrunch.cubes import crtabs
You can create a cube by combining variable names:
variable_names = [
'Direction of country',
'Friend or enemy',
]
cube = crtabs(dataset, variable_names)
This returns the CrunchCube
representation of the CAT x CAT analysis, that you referenced with variable names. You can then request different analytic measurements from the obtained cube
object:
cube.as_array()
cube.proportions(axis=2)
The cube supports basic console formatting for it's basic measure (which is unweighted counts). So when you print it, you get the nice formatted output:
print cube
Crunch Cube by Crunch.io