# How to speed up subset by groups

I used to achieve my data wrangling with dplyr, but some of the computations are "slow". In particular subset by groups, I read that dplyr is slow when there is a lot of groups and based on this benchmark data.table could be faster so I started to learn data.table.

Here is how to reproduce something close to my real datas with 250k rows and about 230k groups. I would like to group by id1, id2 and subset the rows with the `max(datetime)` for each group.

# Datas

``````# random datetime generation function by Dirk Eddelbuettel
# https://stackoverflow.com/questions/14720983/efficiently-generate-a-random-sample-of-times-and-dates-between-two-dates
rand.datetime <- function(N, st = "2012/01/01", et = "2015/08/05") {
st <- as.POSIXct(as.Date(st))
et <- as.POSIXct(as.Date(et))
dt <- as.numeric(difftime(et,st,unit="sec"))
ev <- sort(runif(N, 0, dt))
rt <- st + ev
}

set.seed(42)
# Creating 230000 ids couples
ids <- data.frame(id1 = stringi::stri_rand_strings(23e4, 9, pattern = "[0-9]"),
id2 = stringi::stri_rand_strings(23e4, 9, pattern = "[0-9]"))
# Repeating randomly the ids[1:2000, ] to create groups
ids <- rbind(ids, ids[sample(1:2000, 20000, replace = TRUE), ])
# Adding random datetime variable and dummy variables to reproduce real datas
datas <- transform(ids,
datetime = rand.datetime(25e4),
var1 = sample(LETTERS[1:6], 25e4, rep = TRUE),
var2 = sample(c(1:10, NA), 25e4, rep = TRUE),
var3 = sample(c(1:10, NA), 25e4, rep = TRUE),
var4 = rand.datetime(25e4),
var5 = rand.datetime(25e4))

datas.tbl <- tbl_df(datas)
datas.dt <- data.table(datas, key = c("id1", "id2"))
``````

I couldn't find the straight way to subset by groups with data.table so I asked this question : Filter rows by groups with data.table

We suggest me to use .SD :

``````datas.dt[, .SD[datetime == max(datetime)], by = c("id1", "id2")]
``````

But I have two problems, it works with date but not with POSIXct ("Error in UseMethod("as.data.table") : no applicable method for 'as.data.table' applied to an object of class "c('POSIXct', 'POSIXt')""), and this is very slow. For example with Dates :

``````> system.time({
+   datas.dt[, .SD[as.Date(datetime) == max(as.Date(datetime))], by = c("id1", "id2")]
+ })
utilisateur     système      écoulé
207.03        0.00      207.48
``````

So I found other way much faster to achieve this (and keeping datetimes) with data.table :

# Functions

``````f.dplyr <- function(x) x %>% group_by(id1, id2) %>% filter(datetime == max(datetime))
f.dt.i <- function(x) x[x[, .I[datetime == max(datetime)], by = c("id1", "id2")]\$V1]
f.dt <- function(x) x[x[, datetime == max(datetime), by = c("id1", "id2")]\$V1]
``````

But then I thought data.table would be much faster, the time difference with dplyr isn't significative.

# Microbenchmark

``````mbm <- microbenchmark(
dplyr = res1 <- f.dplyr(datas.tbl),
data.table.I = res2 <- f.dt.i(datas.dt),
data.table = res3 <- f.dt(datas.dt),
times = 50L)

Unit: seconds
expr      min       lq     mean   median       uq      max neval
dplyr 31.84249 32.24055 32.59046 32.61311 32.88703 33.54226    50
data.table.I 30.02831 30.94621 31.19660 31.17820 31.42888 32.16521    50
data.table 30.28923 30.84212 31.09749 31.04851 31.40432 31.96351    50
`````` Am I missing/misusing something with data.table ? Do you have ideas to speed up this computation ?

Any help would be highly appreciated ! Thanks

Edit : Some precisions about the system and packages versions used for the microbenchmark. (The computer isn't a war machine, 12Go i5)

# System

``````sessionInfo()
R version 3.1.3 (2015-03-09)
Platform: x86_64-w64-mingw32/x64 (64-bit)
Running under: Windows 7 x64 (build 7601) Service Pack 1

locale:
 LC_COLLATE=French_France.1252  LC_CTYPE=French_France.1252
 LC_MONETARY=French_France.1252 LC_NUMERIC=C
 LC_TIME=French_France.1252

attached base packages:
 stats     graphics  grDevices utils     datasets  methods   base

other attached packages:
 readr_0.1.0          ggplot2_1.0.1        microbenchmark_1.4-2
 data.table_1.9.4     dplyr_0.4.1          plyr_1.8.2

loaded via a namespace (and not attached):
 assertthat_0.1   chron_2.3-45     colorspace_1.2-6 DBI_0.3.1
 digest_0.6.8     grid_3.1.3       gtable_0.1.2     lazyeval_0.1.10
 magrittr_1.5     MASS_7.3-39      munsell_0.4.2    parallel_3.1.3
 proto_0.3-10     Rcpp_0.11.5      reshape2_1.4.1   scales_0.2.4
 stringi_0.4-1    stringr_0.6.2    tools_3.1.3

> packageVersion("data.table")
 ‘1.9.4’
> packageVersion("dplyr")
 ‘0.4.1’
``````
• You want to get all the values that equals to max or just the first value like `which.max` returns? Also `datas.dt[, .SD[as.Date(datetime) == max(as.Date(datetime))], by = c("id1", "id2")]` is a bad practice. You should convert `date` to `IDate` class before subsetting. – David Arenburg Aug 6 '15 at 10:11
• Just for fun, can you add `x %>% group_by(id1, id2) %>% slice(which(datetime == max(datetime)))` to your comparison? – docendo discimus Aug 6 '15 at 10:15
• Also `datas.dt[, datetime := as.IDate(datetime)] ; system.time(datas.dt[datas.dt[, .I[datetime == max(datetime)], by = c("id1", "id2")]\$V1])` runs only 5 seconds compared to 200 when using `.SD`, so I find hard to believe your benchmarks. – David Arenburg Aug 6 '15 at 10:18
• @DavidArenburg, congrats, though that's not the comparison I was aiming at.. anyway, I was just asking out of curiosity. – docendo discimus Aug 6 '15 at 10:32
• @docendodiscimus I wasn't bragging or anything, so not sure what are you congratulating me for. OP is looking for a `data.table` solution because he assumes it will be faster than `dplyr`- this is why I compare your proposal against `data.table` in case his assumption is wrong. – David Arenburg Aug 6 '15 at 10:33

## 2 Answers

Great question!

I'll assume `df` and `dt` to be the names of objects for easy/quick typing.

``````df = datas.tbl
dt = datas.dt
``````

Comparison at `-O3` level optimisation:

First, here's the timing on my system on the current CRAN version of `dplyr` and devel version of `data.table`. The devel version of `dplyr` seems to suffer from performance regressions (and is being fixed by Romain).

``````system.time(df %>% group_by(id1, id2) %>% filter(datetime == max(datetime)))
#  25.291   0.128  25.610

system.time(dt[dt[, .I[datetime == max(datetime)], by = c("id1", "id2")]\$V1])
#  17.191   0.075  17.349
``````

I ran this quite a few times, and dint seem to change. However, I compile all packages with `-O3` optimisation flag (by setting `~/.R/Makevars` appropriately). And I've observed that `data.table` performance gets much better than other packages I've compared it with at `-O3`.

Grouping speed comparison

Second, it is important to understand the reason for such slowness. First let's compare the time to just group.

``````system.time(group_by(df, id1, id2))
#   0.303   0.007   0.311
system.time(data.table:::forderv(dt, by = c("id1", "id2"), retGrp = TRUE))
#   0.002   0.000   0.002
``````

Even though there are a total of 250,000 rows your data size is around ~38MB. At this size, it's unlikely to see a noticeable difference in grouping speed.

`data.table`'s grouping is `>100x` faster here, it's clearly not the reason for such slowness...

Why is it slow?

So what's the reason? Let's turn on `datatable.verbose` option and check again:

``````options(datatable.verbose = TRUE)
dt[dt[, .I[datetime == max(datetime)], by = c("id1", "id2")]\$V1]
# Detected that j uses these columns: datetime
# Finding groups (bysameorder=TRUE) ... done in 0.002secs. bysameorder=TRUE and o__ is length 0
# lapply optimization is on, j unchanged as '.I[datetime == max(datetime)]'
# GForce is on, left j unchanged
# Old mean optimization is on, left j unchanged.
# Starting dogroups ...
#   memcpy contiguous groups took 0.097s for 230000 groups
#   eval(j) took 17.129s for 230000 calls
# done dogroups in 17.597 secs
``````

So `eval(j)` alone took ~97% of the time! The expression we've provided in `j` is evaluated for each group. Since you've 230,000 groups, and there's a penalty to the `eval()` call, that adds up.

Avoiding the `eval()` penalty

Since we're aware of this penalty, we've gone ahead and started implementing internal versions of some commonly used functions: `sum`, `mean`, `min`, `max`. This will/should be expanded to as many other functions as possible (when we find time).

So, let's try computing the time for just obtaining `max(datetime)` first:

``````dt.agg = dt[, .(datetime = max(datetime)), by = .(id1, id2)]
# Detected that j uses these columns: datetime
# Finding groups (bysameorder=TRUE) ... done in 0.002secs. bysameorder=TRUE and o__ is length 0
# lapply optimization is on, j unchanged as 'list(max(datetime))'
# GForce optimized j to 'list(gmax(datetime))'
``````

And it's instant. Why? Because `max()` gets internally optimised to `gmax()` and there's no `eval()` call for each of the 230K groups.

So why isn't `datetime == max(datetime)` instant? Because it's more complicated to parse such expressions and optimise internally, and we have not gotten to it yet.

Workaround

So now that we know the issue, and a way to get around it, let's use it.

``````dt.agg = dt[, .(datetime = max(datetime)), by = .(id1, id2)]
dt[dt.agg, on = c("id1", "id2", "datetime")] # v1.9.5+
``````

This takes ~0.14 seconds on my Mac.

Note that this is only fast because the expression gets optimised to `gmax()`. Compare it with:

``````dt[, .(datetime = base::max(datetime)), by = .(id1, id2)]
``````

I agree optimising more complicated expressions to avoid the `eval()` penalty would be the ideal solution, but we are not there yet.

• Awesome lesson in profiling. – David Arenburg Aug 6 '15 at 11:29
• Thanks for this enlightening answer. You gave me a solution to divide the execution time by 100 but also helped me a lot to understand the bottleneck in this computation ! Thanks. – Julien Navarre Aug 6 '15 at 16:53

How about summarizing the data.table and `join` original data

``````system.time({
datas1 <- datas.dt[, list(datetime=max(datetime)), by = c("id1", "id2")] #summarize the data
setkey(datas1, id1, id2, datetime)
setkey(datas.dt, id1, id2, datetime)
datas2 <- datas.dt[datas1]
})
#  user  system elapsed
# 0.083   0.000   0.084
``````

which correctly filters the data

``````system.time(dat1 <- datas.dt[datas.dt[, .I[datetime == max(datetime)], by = c("id1", "id2")]\$V1])
#   user  system elapsed
# 23.226   0.000  23.256
all.equal(dat1, datas2)
#  TRUE
``````

Addendum

`setkey` argument is superfluous if you are using the devel version of the `data.table` (Thanks to @akrun for the pointer)

``````system.time({
datas1 <- datas.dt[, list(datetime=max(datetime)), by = c("id1", "id2")] #summarize the data
datas2 <- datas.dt[datas1, on=c('id1', 'id2', 'datetime')]
})
``````
• In the devel version you don't need the `setkey`. `datas.dt[datas1, on=c('id1', 'id2')]` should work. though not tested with the timings. – akrun Aug 6 '15 at 10:25
• @akrun, Thanks. I am blind to nuts and bolts of the `data.table`. – Khashaa Aug 6 '15 at 10:30
• You should probably keep both versions, as your edit works only on the devel version. – David Arenburg Aug 6 '15 at 10:30
• @akrun, yes an open issue on GH. This is another reason why I think we should keep both options. Btw, nice solution Kashaa, you maybe just redefined the canonical solution for such tasks instead of this – David Arenburg Aug 6 '15 at 10:35
• @Khashaa take a look at this answer I think I've explained it pretty well. Though according to Aruns awesome answer, I'm starting to wonder if this solution will work better for all functions rather than just `sum`, `mean`, `min` and `max` – David Arenburg Aug 6 '15 at 11:17