Basically, you can just use imshow
or matshow
.
However, I'm not quite clear what you mean.
If you want a chessboard with every "white" cell colored by some other vector, you could do something like this:
import matplotlib.pyplot as plt
import numpy as np
# Make a 9x9 grid...
nrows, ncols = 9,9
image = np.zeros(nrows*ncols)
# Set every other cell to a random number (this would be your data)
image[::2] = np.random.random(nrows*ncols //2 + 1)
# Reshape things into a 9x9 grid.
image = image.reshape((nrows, ncols))
row_labels = range(nrows)
col_labels = ['A', 'B', 'C', 'D', 'E', 'F', 'G', 'H', 'I']
plt.matshow(image)
plt.xticks(range(ncols), col_labels)
plt.yticks(range(nrows), row_labels)
plt.show()

Obviously, this only works for things with and odd number of rows and columns. You can iterate over each row for datasets with an even number of rows and columns.
E.g.:
for i, (image_row, data_row) in enumerate(zip(image, data)):
image_row[i%2::2] = data_row
However, the number of "data" cells in each row is going to be different, which is where I get confused by your problem definition.
By definition, a checkerboard pattern has a different number of "white" cells in each row.
Your data presumably (?) has the same number of values in each row. You need to define what you want to do. You can either truncate the data, or add an extra column.
Edit: I just realized that that's true only for odd-length numbers of columns.
Regardless, I'm still confused by your question.
Do you want have a "full" grid of data and want to set a "checkerboard" pattern of values in the data grid to a different color, or do you want to "intersperse" your data with a "checkerboard" pattern of values plotted as some constant color?
Update
It sounds like you want something more like a spreasheet? Matplotlib isn't ideal for this, but you can do it.
Ideally, you'd just use plt.table
, but in this case, it's easier to use matplotlib.table.Table
directly:
import matplotlib.pyplot as plt
import numpy as np
import pandas
from matplotlib.table import Table
def main():
data = pandas.DataFrame(np.random.random((12,8)),
columns=['A','B','C','D','E','F','G','H'])
checkerboard_table(data)
plt.show()
def checkerboard_table(data, fmt='{:.2f}', bkg_colors=['yellow', 'white']):
fig, ax = plt.subplots()
ax.set_axis_off()
tb = Table(ax, bbox=[0,0,1,1])
nrows, ncols = data.shape
width, height = 1.0 / ncols, 1.0 / nrows
# Add cells
for (i,j), val in np.ndenumerate(data):
# Index either the first or second item of bkg_colors based on
# a checker board pattern
idx = [j % 2, (j + 1) % 2][i % 2]
color = bkg_colors[idx]
tb.add_cell(i, j, width, height, text=fmt.format(val),
loc='center', facecolor=color)
# Row Labels...
for i, label in enumerate(data.index):
tb.add_cell(i, -1, width, height, text=label, loc='right',
edgecolor='none', facecolor='none')
# Column Labels...
for j, label in enumerate(data.columns):
tb.add_cell(-1, j, width, height/2, text=label, loc='center',
edgecolor='none', facecolor='none')
ax.add_table(tb)
return fig
if __name__ == '__main__':
main()
