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4

IIUC: log of a ratio is the difference of logs: sample_df.apply(np.log).diff() Or better still: np.log(sample_df).diff() Timing


4

just use np.log: np.log(df.col1 / df.col1.shift()) you can also use apply as suggested by @nikita but that will be slower. in addition, if you wanted to do it for the entire dataframe, you could just do: np.log(df / df.shift())


4

This should be more pandonic: diff_series.apply(type) 0 <type 'str'> 1 <type 'str'> 2 <type 'int'> 3 <type 'str'> 4 <type 'datetime.datetime'> dtype: object


3

We could do something like: In [4]: diff_series.map(type).value_counts() Out[4]: <class 'str'> 3 <class 'datetime.datetime'> 1 <class 'int'> 1 dtype: int64 Or, might as well "go all out": In [5]: diff_series.map(type).value_counts().index.values Out[5]: array([<class 'str'>, <class '...


2

Perform a groupby on level=0, and then take head(3): df.groupby(level=0).head(3) Since your index is named, you can also do level='CUISINE', if you feel that it's more readable.


2

Setup: s1 = pd.Series({('BRONX', 'American'): 425, ('BROOKLYN', 'Chinese'): 750, ('BROOKLYN', 'Cafe/Coffee/Tea'): 350, ('BRONX', 'Pizza'): 206, ('BROOKLYN', 'American'): 1254, ('BRONX', 'Chinese'): 330}) s2 = pd.Series({('BRONX', 'Caribbean'): 320, ('BRONX', 'American'): 2425, ('BROOKLYN', 'Chinese'): 7250, ('BROOKLYN', 'Cafe/Coffee/Tea'): 3350, ('BRONX', '...


1

This is the easiest way to get what you need. You can just add together the 2 columns with a space so you can apply .to_datetime(). I created an other column df['timestamp'] for this answer but you can just do whatever you need to do. df['timestamp'] = pd.to_datetime(df['d'] + ' ' + df['t']) df Output: d t timestamp 0 20160719 ...


1

You can use shift for that, which does what you have proposed. >>> sample_df['col1'].shift() 0 NaN 1 1.0 2 2.0 3 3.0 4 4.0 5 5.0 6 6.0 7 7.0 8 8.0 Name: col1, dtype: float64 The final answer would be: import math (sample_df['col1'] / sample_df['col1'].shift()).apply(lambda row: math.log(row)) 0 NaN 1 0....



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