```
transaction_amount = np.diag(df1.dot(df2.T))
```

Basically, to do what you want, you want to do some form of dot product of df1 with df2

```
df1.dot(df2)
```

but since they have matching dimensions you need to transpose one of the DataFrames

```
df2.T
```

And if you understand how matrix dot products work you'll understand you only want the array data from the diagonal of the resulting matrix. ie: You only want (AAPL price of day X * AAPL shares of day Y, where X == Y) Therefore, the values in the matrix that are relevant to you are located at (0,0), (1,1), (2,2), etc ie: the diagonal.

This line will also be useful when calculating portfolio value once you use cumsum to create a holding matrix.

Some helpful sources

http://www.mathsisfun.com/algebra/matrix-multiplying.html
http://mathinsight.org/dot_product_matrix_notation

`DataFrames`

are labeled so, by default, df1 * df2 will have a non-`NaN`

in for`AAPL`

only if that first row of df2 has the same index value of`2011-01-10 16:00:00`

(if that's your index). – TomAugspurger Sep 30 '13 at 1:23`340.99`

occurred at the timestamp`2011-01-10 16:00:00`

? Where are you getting the second dataframe and why does it not have a datetime index? – TomAugspurger Sep 30 '13 at 21:36