First get some data (I'll use a `data.frame`

since that's what you're using, but I really suggest you use a time series class for time series objects)

```
getSymbols("SPY", src='yahoo', from='2012-05-01', to='2012-06-15',
return.class='data.frame')
#"SPY"
```

`apply.weekly`

will split the data up by weeks and apply a function to each week. `apply.weekly(SPY, mean)`

would calculate the mean of all the data for that week, but you want it to calculate the mean *of each column* for each week. So, you have to `apply`

`mean`

to each column

```
apply.weekly(SPY, function(x) apply(x, 2, mean))
# SPY.Open SPY.High SPY.Low SPY.Close SPY.Volume SPY.Adjusted
#2012-05-04 139.6425 140.4675 138.750 139.3275 149400050 138.6075
#2012-05-11 135.9480 136.9320 135.338 136.2040 173105700 135.5020
#2012-05-18 133.3000 133.9180 132.036 132.1760 229282720 131.4960
#2012-05-25 131.7660 132.6800 130.896 132.2140 176634780 131.5340
#2012-06-01 131.7100 132.8925 130.290 131.2725 191170200 130.5950
#2012-06-08 130.2780 131.3380 129.584 130.8580 175917220 130.1820
#2012-06-15 132.8420 133.7760 131.828 132.8020 184751180 132.2540
```

For reference, `apply.weekly`

is a wrapper for `period.apply`

so you could also get the above result with

```
period.apply(SPY, endpoints(SPY, "weeks"), FUN=function(x) apply(x, 2, mean))
```