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I'm trying to translate a technical analysis operator from another proprietary language to python as using dataframes, but I got stuck on a problem that seems rather simple, but I can't get to solve the pandas way. To simplify the problem let's have the example of this dataframe:

d = {'value1': [0,1,2,3], 'value2': [4,5,6,7]}
df = pd.DataFrame(data=d)

which result in the following dataframe:

dataframe

What I want to achieve is this:

enter image description here

which in Pseudocode I would achieve in the following way:

value1 = [0,1,2,3]
value2 = [4,5,6,7]
result = []

for i in range(len(value1)):
    calculation = value1[i] * value2[i]
    lookback = value1[i]
    for j in range(lookback):
       calculation -= value2[j]
    result[i] = calculation

How would I tackle a this in a dataframe context? Because the only similar approach that I found in the documentation is the usage of https://pandas.pydata.org/docs/reference/api/pandas.DataFrame.apply.html# but there is no mentioning of interacting/manipulating the series contained in the columns/rows.

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  • value1 column's values are the indexes. Is this your actual case or value1 can have any value?
    – Valentino
    May 15, 2021 at 14:17
  • in this case yes they are the same as indexes, but it's incidental, might be any integer.
    – Valex
    May 15, 2021 at 14:28

2 Answers 2

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df['result'] = df.value1 * df.value2 - (df.value2.cumsum() - df.value2)
df

Output

   value1   value2  result
0   0       4       0
1   1       5       1
2   2       6       3
3   3       7       6

Explanation We are calculating cumulative sum for value2 and subtracting the current value2 which in total is subtracted by the product of value1 and value2.

1

This solution should work even if the first column value1 has random integers and not increasing integers from 0, and follow the pseudocode provided by the OP.
You should just ensure that any value in value1 is a valid integer for the dataframe (that is, no integer grater than the amount of rows in the dataframe, which is also required by the pseudocode).

import pandas as PD

d = {'value1': [0,1,2,3], 'value2': [4,5,6,7]}
df = PD.DataFrame(data=d)

csum2 = df["value2"].cumsum()
df["sum2"] = [csum2[i] for i in df["value1"]]
df["result"] = df["value1"] * df["value2"] - df["sum2"] + df["value2"]
df.drop("sum2", axis=1, inplace=True)

To explain: I save in an additional column "sum2" the result of the inner loop in the pseucode for j in range(lookback): so that I can then perform the main operation to get the "result" column.

At the end df is:

   value1  value2  result
0       0       4       0
1       1       5       1
2       2       6       3
3       3       7       6

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