# How do I extract values from uniform list in R?

For example, how do I get a vector of each and every person's age in the list `people` below:

``````> people = vector("list", 5)
> people[[1]] = c(name="Paul", age=23)
> people[[2]] = c(name="Peter", age=35)
> people[[3]] = c(name="Sam", age=20)
> people[[4]] = c(name="Lyle", age=31)
> people[[5]] = c(name="Fred", age=26)
> ages = ???
> ages
[1] 23 35 20 31 26
``````

Is there an equivalent of a Python list comprehension or something to the same effect?

You can use sapply:

``````> sapply(people, function(x){as.numeric(x[2])})
[1] 23 35 20 31 26
``````
• facepalms I totally disregarded the *apply stuff... Very helpful. Thanks. Aug 2 '11 at 4:09

Given the data structure you provided, I would use `sapply`:

``````sapply(people, function(x) x[2])

> sapply(people, function(x) x[2])
age  age  age  age  age
"23" "35" "20" "31" "26"
``````

However, you'll notice that the results of this are character data.

``````> class(people[[1]])
[1] "character"
``````

One approach would be to coerce to `as.numeric()` or `as.integer()` in the call to sapply.

Alternatively - if you have flexibility over how you store the data in the first place, it may make sense to store it as a list of `data.frame`s:

``````people = vector("list", 5)
people[[1]] = data.frame(name="Paul", age=23)
people[[2]] = data.frame(name="Peter", age=35)
...
``````

If you are going to go that far, you may also want to consider a single data.frame for all of your data:

``````people2 <- data.frame(name = c("Paul", "Peter", "Sam", "Lyle", "Fred")
, age = c(23,35,20,31, 26))
``````

There may be some other reason why you didn't consider this approach the first time around though...

• Yes in this simple example a data frame is probably better. But the 'real' example is much more complicated so a list is a better fit. Thanks anyway Aug 2 '11 at 4:13
• @c00kie - that's what I figured, but sometimes it's easy to overlook the seemingly obvious :) Aug 2 '11 at 4:16
• +1 For the advice on R-ish, rather than Pythonic, data structures. Also, just because I think it's nifty: `sapply(people, "[", 2)`. Aug 2 '11 at 4:19
• @joran, what does the "[" do in the sapply call? I've seen that notation before, but I can't really remember where... Aug 2 '11 at 4:33
• @C00kie - `[` is used as an indexing tool. The help page is pretty useful and has some good info in it `?'['`. `[[` and `\$` are discussed there as well. Aug 2 '11 at 4:39
``````ages <- sapply(1:length(people), function(i) as.numeric(people[[i]][[2]]))
ages
``````

Output:

[1] 23 35 20 31 26

Alternatively to the `apply`-family there's @Hadley's `purrr` package which offers the `map_`-functions for this kind of job.

(There's a few differences to the `apply`-family discussed for example here.)

OPs example:

``````people = vector("list", 5)
people[[1]] = c(name="Paul", age=23)
people[[2]] = c(name="Peter", age=35)
people[[3]] = c(name="Sam", age=20)
people[[4]] = c(name="Lyle", age=31)
people[[5]] = c(name="Fred", age=26)
``````

The `sapply` approach:

``````ages_sapply <- sapply(people, function(x){as.numeric(x[2])})
print(ages_sapply)
[1] 23 35 20 31 26
``````

And the `map` approach:

``````ages_map <- purrr::map_dbl(people, function(x){as.numeric(x[2])})
print(ages_map)
[1] 23 35 20 31 26
``````

Of course they are identical:

``````identical(ages_sapply, ages_map)
[1] TRUE
``````

Though this question is pretty old, I'd like to share my approach to this. It is certainly possible to do with the `sapply` as tflutre suggested. But I find it more intuitive by using the `unlist` function:

``````> ages <- unlist(people, use.names = F)[seq(2, 2 * length(people), 2)]
> ages
[1] "23" "35" "20" "31" "26"
``````

NOTE the multiplication by two in `2 * length(people)`, there are two elements stored in the `poeple` list. This can be made more generic by writing `length(people[[1]]) * length(people)`

Here `unlist(people, use.names = F)` yields

``````[1] "Paul"  "23"    "Peter" "35"    "Sam"   "20"    "Lyle"  "31"    "Fred"
[10] "26"
``````

and we slice that by every other element using `seq` command.