# How do I index n sets of 4 columns to plot multiple plots using matplotlib?

I want to know how I should index / access some data programmatically in python. I have columnar data: depth, temperature, gradient, gamma, for a set of boreholes. There are n boreholes. I have a header, which lists the borehole name and numeric ID. Example:

``````Bore_name,Bore_ID,,,Bore_name,Bore_ID,,,, ...
``````

I don't know how to index the data, apart from rude iteration:

``````with open(filename,'rU') as f:

# load from CSV file, missing values are empty 'cells'
tdata = numpy.genfromtxt(filename, skip_header=2, delimiter=',', missing_values='', filling_values=numpy.nan)

for column in range(0,numpy.shape(tdata)[1],4):
# plots temperature on x, depth on y
pl.plot(tdata[:,column+1],tdata[:,column], label=bores[column])
# get index at max depth
depth = numpy.nanargmin(tdata[:,column])
# plot text label at max depth (y) and temp at that depth (x)
pl.text(tdata[depth,column+1],tdata[depth,column],bores[column])
``````

It seems easy enough this way, but I've been using R recently and have got a bit used to their way of referencing data objects via classes and subclasses interpreted from headers.

-

Well if you like R's data.table, there have been a few (at least) attempts to re-create that functionality in NumPy--through additional classes in NumPy Core and through external Python libraries. The effort i find most promising is the datarray library by Fernando Perez. Here's how it works.

``````>>> # create a NumPy array for use as our data set
>>> import numpy as NP
>>> D = NP.random.randint(0, 10, 40).reshape(8, 5)

>>> # create some generic row and column names to pass to the constructor
>>> row_ids = [ "row{0}".format(c) for c in range(D1.shape[0]) ]
>>> rows = 'rows_id', row_ids

>>> variables = [ "col{0}".format(c) for c in range(D1.shape[1]) ]
>>> cols = 'variable', variables
``````

Instantiate the DataArray instance, by calling the constructor and passing in an ordinary NumPy array and a list of tuples--one tuple for each axis, and since ndim = 2 here, there are two tuples in the list each tuple is comprised of axis label (str) and a sequence of labels for that axes (list).

``````>>> from datarray.datarray import DataArray as DA
>>> D1 = DA(D, [rows, cols])

>>> D1.axes
(Axis(name='rows', index=0, labels=['row0', 'row1', 'row2', 'row3',
'row4', 'row5', 'row6', 'row7']), Axis(name='cols', index=1,
labels=['col0', 'col1', 'col2', 'col3', 'col4']))

>>> # now you can use R-like syntax to reference a NumPy data array by column:
>>> D1[:,'col1']
DataArray([8, 5, 0, 7, 8, 9, 9, 4])
('rows',)
``````
-
Thanks doug, datarray looks interesting. – a different ben Dec 14 '11 at 3:28

You could put your data into a `dict` for each borehole, keyed by the borehole id, and values as dicts with headers as keys. Roughly like this:

``````data = {boreid1:{"temp":temparray, ...}, boreid2:{"temp":temparray}}
``````

Probably reading from files will be a little bit more cumbersome with these approach, but for plotting you could do something like

``````pl.plot(data[boreid]["temperature"], data[boreid]["depth"])
``````
-

Here are idioms for naming rows and columns:

``````row0, row1 = np.ones((2,5))

for col in range(0, tdata.shape[1], 4):
pl.plot( temp, depth )
``````

``````from collections import namedtuple
`datarray` (thanks Doug) is certainly more general.