In `R`

, we can use `dplyr`

. We `extract`

(from `tidyr`

), substring from 'status' to create 'section', then grouped by 'can.id' and 'section', get the `sum`

of 'marks'.

```
library(dplyr)
library(tidyr)
df1 %>%
extract(status, into = "section", "(.*\\d+)\\s+[[:alpha:]].*") %>%
group_by(can.id, section) %>%
summarise(SumMarks = sum(marks))
# can.id section SumMarks
# <int> <chr> <int>
#1 1 section 1 9
#2 1 section 2 5
#3 1 section 3 2
#4 2 section 1 6
#5 2 section 2 -1
#6 2 section 3 -1
```

Or using `data.table`

```
library(data.table)
setDT(df1)[,.(SumMarks = sum(marks)), .(can.id,
section = sub("\\s+[[:alpha:]].*", "", status))]
```

### data

```
df1 <- structure(list(can.id = c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 2L,
2L, 2L, 2L), status = c("section 1 question 1", "section 1 question 2",
"section 1 question 3", "section 2 question 1", "section 2 question 2",
"section 2 question 3", "section 3 question 1", "section 3 question 2",
"section 1 question 1", "section 1 question 2", "section 2 question 2",
"section 3 question 1"), qid = c(112L, 117L, 116L, 115L, 114L,
111L, 112L, 116L, 114L, 111L, 111L, 111L), marks = c(3L, 3L,
3L, 3L, -1L, 3L, -1L, 3L, 3L, 3L, -1L, -1L)), .Names = c("can.id",
"status", "qid", "marks"), class = "data.frame",
row.names = c(NA, -12L))
```

`R`

solution as there is a`r`

tag? – akrun Jun 23 '16 at 8:58