In R this function returns a vector or array or list of values obtained by applying a function to margins or dimensions of an array or matrix. `apply`'s advantages over explicit for loops are primarily code simplicity.

In r this function returns a vector or array or list of values obtained by applying a function to margins or dimensions of an array or matrix. `apply`

's advantages over explicit for loops are primarily code simplicity.

The goal of `apply`

is often to reduce the dataset using the function. A good example of this is to calculate the mean over the first dimension of a 2D array aka matrix:

```
mean_of_rows <- apply(m, 1, mean)
```

Here, the function `mean`

is applied over the first dimension (rows) of matrix `m`

to yield the mean of the rows. This principle carries over to higher dimensional arrays.

In standard R, `apply`

has a host of related functions for applying a function to each element of some data structure, including `lapply`

, `sapply`

and `vapply`

.

The packages **plyr**, **data.table** and **dplyr** are popular options for operating on data frame-like objects by group.