# How to replace NA with set of values

I have the following data frame:

``````library(dplyr)
library(tibble)

df <- tibble(
source = c("a", "b", "c", "d", "e"),
score = c(10, 5, NA, 3, NA ) )

df
``````

It looks like this:

``````# A tibble: 5 x 2
source score
<chr>  <dbl>
1 a         10 . # current max value
2 b          5
3 c         NA
4 d          3
5 e         NA
``````

What I want to do is to replace `NA` in score column with values ranging for existing `max + n` onwards. Where `n` range from 1 to total number of rows of the `df`

Resulting in this (hand-coded) :

``````  source score
a         10
b          5
c         11 # obtained from 10 + 1
d          3
e         12 #  obtained from 10 + 2
``````

How can I achieve that?

Another option :

``````transform(df, score = pmin(max(score, na.rm = TRUE) +
cumsum(is.na(score)), score, na.rm = TRUE))

#  source score
#1      a    10
#2      b     5
#3      c    11
#4      d     3
#5      e    12
``````

If you want to do this in `dplyr`

``````library(dplyr)
df %>% mutate(score = pmin(max(score, na.rm = TRUE) +
cumsum(is.na(score)), score, na.rm = TRUE))
``````

A base R solution

``````df\$score[is.na(df\$score)] <- seq(which(is.na(df\$score))) + max(df\$score,na.rm = TRUE)
``````

such that

``````> df
# A tibble: 5 x 2
source score
<chr>  <dbl>
1 a         10
2 b          5
3 c         11
4 d          3
5 e         12
``````

Here is a `dplyr` approach,

``````df %>%
mutate(score = replace(score,
is.na(score),
(max(score, na.rm = TRUE) + (cumsum(is.na(score))))[is.na(score)])
)
``````

which gives,

``````# A tibble: 5 x 2
source score
<chr>  <dbl>
1 a         10
2 b          5
3 c         11
4 d          3
5 e         12
``````

With `dplyr`:

``````library(dplyr)

df %>%
mutate_at("score", ~ ifelse(is.na(.), max(., na.rm = TRUE) + cumsum(is.na(.)), .))
``````

Result:

``````# A tibble: 5 x 2
source score
<chr>  <dbl>
1 a         10
2 b          5
3 c         11
4 d          3
5 e         12
``````

A `dplyr` solution.

``````df %>%
mutate(na_count = cumsum(is.na(score)),
score = ifelse(is.na(score), max(score, na.rm = TRUE) + na_count, score)) %>%
select(-na_count)
## A tibble: 5 x 2
#  source score
#  <chr>  <dbl>
#1 a         10
#2 b          5
#3 c         11
#4 d          3
#5 e         12
``````

Another one, quite similar to ThomasIsCoding's solution:

``````> df\$score[is.na(df\$score)]<-max(df\$score, na.rm=T)+(1:sum(is.na(df\$score)))
> df
# A tibble: 5 x 2
source score
<chr>  <dbl>
1 a         10
2 b          5
3 c         11
4 d          3
5 e         12
``````

Not quite elegant as compared to the base R solutions, but still possible:

``````library(data.table)
setDT(df)

max.score = df[, max(score, na.rm = TRUE)]
df[is.na(score), score :=(1:.N) + max.score]
``````

Or in one line but a bit slower:

``````df[is.na(score), score := (1:.N) + df[, max(score, na.rm = TRUE)]]
df
source score
1:      a    10
2:      b     5
3:      c    11
4:      d     3
5:      e    12
``````