I would take to take the mean of the columns by a certain `break`

of the rows. For instance:

```
set.seed(0)
dt = data.frame(cbind(rnorm(10, 0, 1), rnorm(10, 0, 2), rnorm(10, 0, 3)))
breaks = c(0,1,2,4,8,Inf)
```

The only solution I can think of is manually plug in row index then use `colMeans`

or use `loop`

, which is painful since I have a much longer `break`

rule. My expected results are as following:

```
re = rbind(colMeans(dt[1, ]), colMeans(dt[2, ]), colMeans(dt[3:4, ]),
colMeans(dt[5:8, ]), colMeans(dt[9:10, ]))
```

Any advice (or direct to a duplicated answer) is appreciated!

`colMeans(dt[8:10, ]`

or`colMeans(dt[9:10, ]`

? – avid_useR Jul 12 at 14:29