I'm looking for a good way to store and use conditional probabilities in python.

I'm thinking of using a `pandas`

dataframe. If the conditional probabilities of some `X`

are `P(X=A|P1=1, P2=1) = 0.2`

, `P(X=B|P1=2, P2=1) = 0.9`

etc., I would use the dataframe

```
A B
P1 P2
1 1 0.2 0.8
2 0.5 0.5
2 1 0.9 0.1
2 0.9 0.1
```

and given the marginal probabilities of `P1`

and `P2`

as Series

```
1 0.4
2 0.6
Name: P1
1 0.7
2 0.3
Name: P2
```

I would like to obtain the Series of marginal probabilities of `X`

, i.e. the series

```
A 0.602
B 0.398
Name: X
```

I can get what I want by

```
X = sum(
sum(
X.xs(i, level="P1")*P1[i]
for i in P1.index
).xs(j)*P2[j]
for j in P2.index
)
X.name="X"
```

but this is not easily generalizable to more dependencies, the asymmetry between the first `xs`

with `level`

and the second one without looks weird and as usual when working with `pandas`

I'm very sure that there is a better solution using it's tricks and methods.

Is `pandas`

a good tool for this, should I represent my data in another way, and what is the best way to do this calculation, which is essentially an indexed tensor product, in `pandas`

?