In Python, I have a 2D array, e.g.:
1.3 5.7 3.2 5.6 2.3 9.5 1.1 4.1 5.2
I then used 'imshow' to get what I needed - I essentially had a plot where the x axis was: (column) 0 (column) 1 (column) 2 ....
and the y axis was: . . (row) 2 (row) 1 (row) 0
and then the actual values (5.6 or 2.3 or whatever) were represented by colours, which was just what I wanted.
But then later, instead of the x axis just being column 0 column 1 and column 2 etc., I wanted the x axis to show the date which corresponds to column 0 column 1 and column 2 etc.. This information was stored in a different list, say "date_info".
So instead of an arbitrary indexing scheme on the bottom, I want the x values of the imshow to correspond to the values of the date_info list - instead of the number 2 for example, I wanted date_info on the x axis.
Now with the help of this forum, I was able to do this using:
plt.xticks(mjdaxis,[int(np.floor(data_info[i])) for i in mjdaxis])
which was sufficient for a while, but I am just changing the labels of the x axis here right? rather than what is being plotted. Now when I am trying to lay one other plot (just a regular curve) on top of my original, the x axis scaling gets messed up, and my columns get bunched up as (1,2,3...) again, instead of their corresponding date_info values (55500, 55530, 55574...)
If anyone can make any sense of what I am saying, that would be great!!
For reference, here is the code that I am now trying:
fig = plt.figure() ax1 = fig.add_subplot(111) mjdaxis=np.linspace(0,date_info-1,20).astype('int') ax1.set_xticks(mjdaxis,[int(np.floor(date_info[i])) for i in mjdaxis]) ax1.imshow(residuals, aspect="auto") ax2 = ax1.twinx() ax2.plot(pdot[8:,0],pdot[8:,1]) plt.show()