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I'm trying to create a python function for time series data that will take in any number of comparison operators and apply custom logic for each operator on a pandas DataFrame

Here is my sample data:

    Date        Close
0   2008-08-20  41.2100
1   2008-08-22  41.3782
2   2008-08-25  40.6047
3   2008-08-27  41.7397
4   2008-08-28  41.7565
5   2008-09-03  39.6548
6   2008-09-04  38.5871
7   2008-09-05  38.6712
8   2008-09-09  38.5703
9   2008-09-11  37.3681
...

An example of what I want to do:

# Return any days in which the close was lower than the last two days
df[(df['Close'] < df['Close'].shift(1)) & 
   (df['Close'].shift(1) < df['Close'].shift(2))]

    Date        Close
6   2008-09-04  38.5871
9   2008-09-11  37.3681
10  2008-09-12  36.8133
11  2008-09-15  35.6700
15  2008-09-24  36.3341
20  2008-10-07  30.0122
25  2008-10-15  27.8348
30  2008-10-22  25.2287
31  2008-10-23  25.2203
32  2008-10-24  23.2447

But now let's make it a function which allows us to pass in the comparison expressions AND handle any number of them.

Here is my pseudo-code thinking using four comparison operators, but I'm stuck on how to dynamically create enough variables to solve the final comparison expression without hard coding the exact number of expressions passed to the function.

What if I want to pass in 8 comparison operators? I'm not sure how to build the logic for every permutation I could pass my function.

comparison_op = [ <, <, >, >]
Column_Name = 'Close'

def comparison_operation(Column_Name, comparison_op[]):
  # I need to loop through the number of operators
  # to create a unique variable for each condition

  for i in len[boolean_op]:
    criteria1 = df[Column_Name] {comparison_op[0]} df[Column_Name].shift(i)
    criteria2 = df[Column_Name].shift(i + 1) {comparison_op[i]} df[Column_name].shift(i + 2)
    criteria3 = df[Column_Name].shift(i + 2) {comparison_op[i]} df[Column_name].shift(i + 3)
    criteria4 = df[Column_Name].shift(i + 3) {comparison_op[i]} df[Column_name].shift(i + 4)
    criteria_all = criteria1 & critera2 & critera3 & critera4
    result = ds[criteria_all]

The hard coded version

criteria1 = (df['Close'] < df['Close'].shift(1))
criteria2 = (df['Close'].shift(1) < df['Close'].shift(2))
criteria3 = (df['Close'].shift(2) > df['Close'].shift(3))
criteria4 = (df['Close'].shift(3) > df['Close'].shift(4))
criteria_all = criteria1 & criteria2 & criteria3 & criteria4
df[criteria_all].head(10)

The final output being:

    Date        Close
6   2008-09-04  38.5871
15  2008-09-24  36.3341
72  2009-01-08  28.4769
121 2009-05-15  34.3811
132 2009-06-03  37.9186
140 2009-06-15  37.0258
165 2009-07-22  40.4631
175 2009-08-05  42.4600
183 2009-08-17  40.0146
191 2009-08-27  41.7238

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