I've tried many ways to get minor ticks working properly in log plots. If you are fine with showing the log of the value of the tick you can use `matplotlib.ticker.LogFormatterExponent`

. I remember trying `matplotlib.ticker.LogFormatter`

but I didn't like it much: if I remember well it puts everything in `base^exp`

(also 0.1, 0, 1). In both cases (as well as all the other `matplotlib.ticker.LogFormatter*`

) you have to set `labelOnlyBase=False`

to get minor ticks.

I ended up creating a custom function and use `matplotlib.ticker.FuncFormatter`

. My approach assumes that the ticks are at integer values and that you want a base 10 log.

```
from matplotlib import ticker
import numpy as np
def ticks_format(value, index):
"""
get the value and returns the value as:
integer: [0,99]
1 digit float: [0.1, 0.99]
n*10^m: otherwise
To have all the number of the same size they are all returned as latex strings
"""
exp = np.floor(np.log10(value))
base = value/10**exp
if exp == 0 or exp == 1:
return '${0:d}$'.format(int(value))
if exp == -1:
return '${0:.1f}$'.format(value)
else:
return '${0:d}\\times10^{{{1:d}}}$'.format(int(base), int(exp))
subs = [1.0, 2.0, 3.0, 6.0] # ticks to show per decade
ax.xaxis.set_minor_locator(ticker.LogLocator(subs=subs)) #set the ticks position
ax.xaxis.set_major_formatter(ticker.NullFormatter()) # remove the major ticks
ax.xaxis.set_minor_formatter(ticker.FuncFormatter(ticks_format)) #add the custom ticks
#same for ax.yaxis
```

If you don't remove the major ticks and use `subs = [2.0, 3.0, 6.0]`

the font size of the major and minor ticks is different (this *might* be cause by using `text.usetex:False`

in my `matplotlibrc`

)