# dealing with zero log values in numpy/pandas

I have a dataframe in pandas that stores a column containing ratios. The ratios need to be transformed into a log2 scale for plotting but the ratio values are often 0, leading in log2(0) which is recorded as inf or a missing value in pandas. I want to visualize these since in my dataframe a ratio value of 0 is meaningful. What is the best way to deal with this in pandas/numpy? When I take the log values, is the preferred way to do this?

# take log with tiny value added
c = 0.0000001
df[col].apply(lamda x: log2(c + x))


or are there other ways? thanks.

-
This is equivalent to just replacing your infs with a completely arbitrary number log2(.0000001) Why don't you just remove the infs when you plot and leave the 0s when not plotting? – askewchan Feb 28 '13 at 0:45
Assuming your ratios are positive, if you take c = 1.0 then log2(c + x) will map [0,inf) --> [0,inf). – unutbu Feb 28 '13 at 0:47
@askewchan: because I want to plot the 0s too. They make up a substantial part of the data. – user248237dfsf Feb 28 '13 at 0:50
If you want to plot 0 in a log plot (which should be at $\infty$, you could consider the pyplot.symlog function. – askewchan Feb 28 '13 at 1:00

I guess you can use numpy.inf to identify those that are infinity and treat them separately.