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I'm building a financial model. The model gets calculated multiple times; once for each row of input data.

import pandas as pd

tbl = pd.DataFrame({
    "value": [1, 2, 3],
})

I'm defining a class for the model variables. They have tbl record number and store results.

class ModelVariable:
    def __init__(self, name, tbl):
        self.name = name
        self.tbl = tbl
        self.record = None
        self.value = None
        self.formula = None

    def __repr__(self):
        return f"{self.name}= {self.value}"

    def __call__(self):
        return self.formula()

    def calculate(self):
        self.value = self.formula()

I'm defining some model variables and attach their formulas. The model variables can interact with each other (e.g. foo() + 10).

import types

foo = ModelVariable("foo", tbl)
bar = ModelVariable("bar", tbl)

def foo_formula(self):
    return self.tbl.iloc[self.record]["value"]

def bar_formula(self):
    return foo() + 10

setattr(foo, "formula", types.MethodType(foo_formula, foo))
setattr(bar, "formula", types.MethodType(bar_formula, bar))

To calculate all variables for each record I can do this:

from copy import deepcopy

lst = []
for i in range(3):
    foo.record = i
    foo.calculate()
    bar.calculate()
    lst.append([deepcopy(foo), deepcopy(bar)])

print(lst)
[[foo= 1, bar= 11], [foo= 2, bar= 12], [foo= 3, bar= 13]]

(bar = foo + 10)

I want to get rid off the for-loop and encapsulate each calculation separately. I want to calculate them in parallel later on. First, I need to create a list of model variable instances with the correct record.

My initial approach was the following code, but it doesn't work because bar "remembers" only the last foo.

lst = []
for i in range(3):
    foo.record = i
    lst.append([deepcopy(foo), deepcopy(bar)])

for item in lst:
    item[0].calculate()
    item[1].calculate()

print(lst)

[[foo= 1, bar= 13], [foo= 2, bar= 13], [foo= 3, bar= 13]]

Is there a way for bar to remember the foo from the moment when it gets deepcopied?

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