I’m such a newbie to R that I may have a difficult time asking my question. Please bear with me.

I have two data frames. Let’s pretend for the sake of explanation:

**df1**

Columns represents types of gains: corn, oats, wheat, etc. Rows represents the month of the year, jan, feb, etc. Elements represents the price per ton for that gain type purchased during that particular month.

**df2**

Columns representing countries: Spain, Chile, Mexico, etc. The rows of this frame represent additional costs for dealing with that country, maybe: Packaging cost, Shipping cost, Country import tax, Inspection fees, etc. for each country.

Now I want to build a third data frame:

**df3**

It is to represent the total cost of a combination of grains (for example 10% corn, 50% oats, ...) with the associated costs for shipping, tax, etc. for all countries, for each month Assume there is an equation (using data from df1 and df2) to compute the total cost per country per month for a given combination of grains and the additional costs for each country.

For the sake of brevity let’s say part of that equation for the total cost for March, and Spain is

```
cost <- .10 * df1[ “mar”,”oats”] + df2[“tax”,”Spain”] + .....
```

It’s straight-forward for me to pick the elements of the second data frame and do the arithmetic with the columns of the first data frame to get the results. for a particular country:

```
cost <- .10 * df1[ ,”oats”] + df2[“tax”,”Spain”] + .....
```

This gives me the cost for each month for Spain

The problem is: I have to repeat the same arithmetic for every country.

Another version:

```
cost <- .10 * df1[ ,”oats”] + df2[“tax”,] + .....
```

Gives me the cost for each country, but only for January

I’d like to one set of equations that gives me the the total cost per month for all counties. Another words, `df3`

will have the same number of rows as `df1`

(months), and the same number of columns as `df2`

(countries).

Edit ... pasting in example posted in a closed question:

```
# build df1 - cost of grains (with goofy data so I can track the arithemetic)
v1 <- c(1:12)
v2 <- c(13:24)
v3 <- c(25:36)
v4 <- c(37:48)
grain <- data.frame("wheat"=v1,"oats"=v2,"corn"=v3,"rye"=v4)
grain
# build df2 - additional costs (again, with goofy data to see what is being used where and when)
w1 <- c(1.3:4.3)
w2 <- c(5.3:8.3)
w3 <- c(9.3:12.3)
w4 <- c(13.3:16.3)
cost <- data.frame("Spain"=w1,"Peru"=w2,"Mexico"=w3,"Kenya"=w4)
row.names(cost) <- c("packing","shipping","tax","inspection")
cost
# assume 10% wheat, 30% oats and 60% rye with some clown-equation for total cost
# now for my feeble attempt at getting a dataframe that has 12 rows (months) and 4 column (countries)
total_cost <- data.frame( 0.1*grain[,"wheat"] +
0.3*grain[,"oats"] +
0.6*grain[,"rye"] +
cost["packing","Mexico"] +
cost["shipping","Mexico"] +
cost["tax","Mexico"] +
cost["inspection","Mexico"] )
total_cost
```

`aggregate`

function. – Max Sep 10 '12 at 15:25