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
    lst.append([deepcopy(foo), deepcopy(bar)])

[[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:


[[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?


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.