Let's say that I have a graph an axis with 25 ticks, and I want to make every fifth tick (0, 5, 10, 15, 20, 25) bigger than the other ticks to make reading the graph easier. (There is already number labels on those ticks and no labels on the other ticks, but reading is still rather uncomfortable...) Is it even possible? And what if I have, say, 27 ticks instead of 25?
E: A bit more information:
I'm actually editing a not-too-much-commented script made by a more experienced programmer (and I'm not very experienced). The program draws a color map (implying strain in coordinate point (x,y)) according to given data... uh, I have to admit that I don't understand all that is said in the code. But, there is the part in with the asked strain field is drawn.
# Strain field on background fig = mpl.figure(1,figsize=(6,5),facecolor='w',edgecolor='k') mpl.clf() ax1 = fig.add_axes([0.5*(1-0.50*ratio)+0.05, 0.45, 0.50*ratio, 0.50]) mpl.contourf(strainY.T * 100,50) # Into percents mpl.xlim(0,x-1) mpl.ylim(0,y-1) mpl.gca().invert_yaxis() yt = np.linspace(0,y-1,len(vHeight)+1) locs, labels = mpl.yticks(yt, vHeight, fontsize=9) xt = np.linspace(0,x-1,len(vWidth)+1) locs, labels = mpl.xticks(xt, vWidth, fontsize=9)
yt and xt mean special vectors that are used for placing the ticks. Due some annoying scaling stuff (from pixels (?) to other measurements) and varying lengths of axes, they need some work... anyway, the result is a 2D strain map where is ticks with constant spaces...
Ask more if you need more information, I'm that confused that I don't know what information is necessary.
...what I have understood below comments and documentations, contourf() corresponds plot(). So set_major_locator should work? Though I remember I tried it once, it didn't turn out well... I can try it again in a copy of that script, though.