## updated comment

@unutbu posted a great answer to a very similar question here but it appears that his answer is based on `pd.rolling_apply`

which passes the index to the function. I'm not sure how to replicate this with the current `DataFrame.rolling.apply`

method.

### original answer

It appears that the variable passed to the argument through the `apply`

function is a numpy array of each column (one at a time) and not a DataFrame so you do not have access to any other columns unfortunately.

But what you can do is use some boolean logic to temporarily create a new column based on whether `var2`

is 74 or not and then use the rolling method.

```
df['new_var'] = df.var2.eq(74).mul(df.var1).rolling(2, min_periods=1).sum()
var1 var2 new_var
0 43 74 43.0
1 44 74 87.0
2 45 66 44.0
3 46 268 0.0
4 47 66 0.0
```

The temporary column is based on the first half of the code above.

```
df.var2.eq(74).mul(df.var1)
# or equivalently with operators
# (df['var2'] == 74) * df['var1']
0 43
1 44
2 0
3 0
4 0
```

### Finding the type of the variable passed to apply

Its very important to know what is actually being passed to the apply function and I can't always remember what is being passed so if I am unsure I will print out the variable along with its type so that it is clear to me what object I am dealing with. See this example with your original DataFrame.

```
def foo(x):
print(x)
print(type(x))
return x.sum()
df.rolling(2, min_periods=1).apply(foo)
```

Output

```
[ 43.]
<class 'numpy.ndarray'>
[ 43. 44.]
<class 'numpy.ndarray'>
[ 44. 45.]
<class 'numpy.ndarray'>
[ 45. 46.]
<class 'numpy.ndarray'>
[ 46. 47.]
<class 'numpy.ndarray'>
[ 74.]
<class 'numpy.ndarray'>
[ 74. 74.]
<class 'numpy.ndarray'>
[ 74. 66.]
<class 'numpy.ndarray'>
[ 66. 268.]
<class 'numpy.ndarray'>
[ 268. 66.]
<class 'numpy.ndarray'>
```