# How to count the number of unique values efficiently in a repeated computation? [duplicate]

This is my transaction data

``````from_id       to_id      date_trx      week    amount
<fctr>        <fctr>     <date>        <dbl>   <dbl>
6644           6934       2005-01-01    1      700
6753           8456       2005-01-01    1      600
9242           9333       2005-01-01    1      1000
9843           9115       2005-01-01    1      900
7075           6510       2005-01-02    1      400
8685           7207       2005-01-02    1      1100

...            ...        ...           ...    ...

9866           6697       2010-12-31    313    95.8
9866           5992       2010-12-31    313    139.1
9866           5797       2010-12-31    313    72.1
9866           9736       2010-12-31    313    278.9
9868           8644       2010-12-31    313    242.8
9869           8399       2010-12-31    313    372.2
``````

I want to count the number of unique `to_id`s for each `from_id`s at each `week`: That is:

``````data <- data %>%
group_by(week,from_id) %>%
mutate(weekly_distinct_accounts=n_distinct(to_id))
``````

But, it seems like computation will never end. What is the efficient way to do this? I also tried other functions mentioned here, but they couldn't be helpful either

• Maybe `aggregate(to_id ~ from_id + week, data, function(x) length(unique(x)))`? – GKi Jul 7 at 7:28
• Try `data.table` : `setDT(data)[, .(weekly_distinct_accounts=uniqueN(to_id), .(week,from_id)]` – Ronak Shah Jul 7 at 7:31
• Thanks @GKi, it's the fastest way. – nojdar Jul 7 at 8:19

In case you want to store the result in `data` you can use `ave`.

``````data\$weekly_distinct_accounts <- ave(data\$to_id, data\$from_id, data\$week
, FUN=function(x) length(unique(x)))
``````

or using `duplicated`

``````data\$weekly_distinct_accounts <- ave(data\$to_id, data\$from_id, data\$week
, FUN=function(x) sum(!duplicated(x)))
``````

In case you just need the sum per group you can use `aggregate`.

``````aggregate(to_id ~ from_id + week, data, function(x) length(unique(x)))
``````

or

``````aggregate(to_id ~ from_id + week, data, function(x) sum(!duplicated(x)))
``````

or

``````aggregate(to_id ~ ., unique(data[c("to_id", "from_id", "week")]), length)
``````
• This again takes so long to compute, aggregate() is way faster. – nojdar Jul 7 at 8:20
• But do you want to store the result in `data`? If not then `aggregate` and co. will be good. If yes you have to use something like `ave`. – GKi Jul 7 at 8:21
• I added the result into the data by merge() – nojdar Jul 7 at 8:26