6

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.

Thanks

  • 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
10

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

0

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.

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