I have a dataframe (df) that looks like:

date                 A
2001-01-02      1.0022
2001-01-03      1.1033
2001-01-04      1.1496
2001-01-05      1.1033

2015-03-30    126.3700
2015-03-31    124.4300
2015-04-01    124.2500
2015-04-02    124.8900

For the entire time-series I'm trying to divide today's value by yesterdays and log the result using the following:

df["B"] = math.log(df["A"] / df["A"].shift(1))

However I get the following error:

TypeError: cannot convert the series to <class 'float'>

Could someone let me know how to fix this please? I've tried to cast as float using:

df["B"] .astype(float)

But can't get anything to work. Any guidance would be much appreciated.


  • Check if there are any non float values like empty strings or strings with something other than numbers – Glacier11 Mar 23 '17 at 22:48
  • 2
    math.log expects a single float value. It doesn't work on pandas Series objects. – Craig Mar 23 '17 at 22:50
  • can you try to convert just a small portion of the data to float and see if that works – Glacier11 Mar 23 '17 at 22:51
  • 1
    why not df["B"] = (df["A"] / df["A"].shift(1)).apply(lambda x: math.log(x))? – plasmon360 Mar 23 '17 at 22:55

You can use numpy.log instead. Math.log is expecting a single number, not array.


If you just write df["A"].astype(float) you will not change df. You would need to assign the output of the astype method call to something else, including to the existing series using df['A'] = df['A'].astype(float). Also you might want to either use numpy as @user3582076 suggests, or use .apply on the Series that results from dividing today's value by yesterday's.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.