I have a bunch of tipping bucket rainfall data recorded as number of tips per each minute interval. I have uploaded this to a pandas dataframe and I need to be able to multiply each individual column by a mm/tip calibration factor, but the column is type int and the factor is type float. I've tried:
df['Series'] = df['Series'].mul(constant) -> TypeError: unsupported operand type(s) for *: 'NoneType' and 'float'
df['Series'] *= constant -> TypeError: can't multiply sequence by non-int of type 'float'
df['Series'] = df['Series'].astype(float) * constant -> ValueError: could not convert string to float:
There's got to be an easy way to do this... Help?
Here's what my data looks like:
Here's how I read it in:
def loaddata(filepaths): t1 = time.clock() for i,filepath in enumerate(filepaths): xl = pd.ExcelFile(filepath) df = xl.parse(xl.sheet_names, header=0, index_col=2, skiprows=[0,2,3,4], parse_dates=True) df = df.dropna(axis=1, how='all') df = df.drop(['Decimal Year Day', 'Decimal Year Day.1', 'RECORD'], axis=1) df.index = pd.DatetimeIndex(((df.index.asi8/(1e9*60)).round()*1e9*60).astype(np.int64)).values return df files = ["London Water Balance.xlsx"] Water = loaddata(files)
Heres the dtype
Water.dtypes [L] Drainage NE float64 [L] Drainage SE object [L] Embedded raingauge E object [L] External raingauge object dtype: object