# Calculate between columns in data.table or dplyr?

I want to use `data.table` to achieve a very simple task for a large dataset.

Calculate mean of val1 and val2 for each ID.

For details, please refer to the attached fake data.

``````library(data.table)
DT <- data.table(ID = paste0("ID",rep(1:5,each=2)),
level= rep(c("CTRL","CTRL","ID1","ID2","ID3"),2),
val1 = 1:10,
val2 = rnorm(10))
``````

Here I want to calculate for each ID, the mean of val1 and val2.

Also notice that in each ID, there're different levels. But for each unique ID, I just want one mean incorporating the different levels, val1, and val2.

--- ID | Mean ---

-- ID1 | ...

-- ID2 | ...

-- ID3 | ...

I tried the following code, but it doesn't work.

``````topagents <- DT[, mean = mean(list(val1,val2)),
by = ID]
``````

but it doesn't work. I know how to do it in `reshape2`, first `melt` and then `dcast`.

But the original dataset is relatively large with 20M rows and 12 fields, it takes quite a long time to do the calculation.

So I prefer to use `data.table` or `dplyr`.

-

If I understand correct, you have twelve fields and wish to keep hardcoding to a minimum. I'm not quite sure what your intended output is but hopefully it's one of the two results below -

``````colstomean <- setdiff(colnames(DT),c('ID','level'))
``````

Option 1, mean of each variable values within that ID

``````DT[, lapply(.SD, mean, na.rm=TRUE),
by=ID,
.SDcols = colstomean
]
``````

Output -

``````    ID val1        val2
1: ID1  1.5  0.37648090
2: ID2  3.5 -0.55484848
3: ID3  5.5 -0.07326365
4: ID4  7.5 -0.37705525
5: ID5  9.5 -0.08075406
``````

Option 2, mean of all variable values within that ID

``````DT[, mean(unlist(.SD), na.rm = TRUE),
by=ID,
.SDcols = colstomean
]
``````

Output

``````    ID        V1
1: ID1 0.9382404
2: ID2 1.4725758
3: ID3 2.7133682
4: ID4 3.5614724
5: ID5 4.7096230
``````
-
Wow, it's really cool! What I want is just the option 2! But I didn't get the meaning of .SD, and .SDcols = colstomean. Could you provide some more explanations? –  Bigchao Jan 15 at 5:11
Look up the help entry on data.table. .SD is explained well there. Otherwise - stackoverflow.com/questions/14937165/… –  Codoremifa Jan 15 at 6:51

Encapsulate the calls to `mean` in the list, rather than taking the mean of a list, which you can't do:

``````DT[, j=list(val1=mean(val1), val2=mean(val2)), by=ID]
ID val1       val2
1: ID1  1.5  0.1389794
2: ID2  3.5  0.3392179
3: ID3  5.5 -0.6336174
4: ID4  7.5  0.9941148
5: ID5  9.5  0.1324782
``````

To get a single value, the mean of the `val1` and `val2` values, combine these and pass to `mean`:

``````DT[, j=list(mean=mean(c(val1,val2))), by=ID]
ID      mean
1: ID1 0.8194897
2: ID2 1.9196090
3: ID3 2.4331913
4: ID4 4.2470574
5: ID5 4.8162391
``````

Using a list for the single element of `j` here is an easy way to name the resulting column.

-
Thanks Matthew! That's really awesome! –  Bigchao Jan 15 at 4:56
For the first part of your answer, it might be more elegant in certain circumstances to make use of `.SDcols` like `DT[,lapply(.SD,mean),by=ID,.SDcols=c("val1","val2")]` –  thelatemail Jan 15 at 4:57
``````topagents <- DT[, mean(c(val1,val2)), by = ID]
``````

mean can only take a vector, it doesn't understand a list.

Your question said "Calculate mean of val1 and val2 for each ID." But based on Mathew's answer maybe you wanted "Calculate means(plural) of val1 and val2 for each ID."?

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Hey Jeremy, Thanks for your answer! –  Bigchao Jan 15 at 5:00

You mention your data dimensions is of 20 million rows with 12 columns but don't mention the number of unique values of "ID". I'm going to assume here as 20,000.

If you're looking for your solution to be both 1) fast and 2) memory-efficient, then Matthew's (or Jeremy's) solution to spell out all the variables would perform better - that is, until `unlist(.SD)` is optimised. Basically what would be best is @codoremifa's syntax with the performance of @Matthew's.

### The purpose of this post is to illustrate the performance gain one could have by `setkey` on the `data.table` (of such huge dimensions) before to aggregate (the aspect of which hasn't been covered by the answers at the time of writing).

`setkey` is normally used because it's required for `join` or `fast subset` (based on binary search) yes. But on data dimensions such as yours (which is, safe to say, BIG data), you can benefit A LOT by setting the key. This is because, `setkey` sorts the data by your key column, which allows columns to be aggregated upon later to be in contiguous memory locations and therefore very efficient.

There are quite a lot of enhancements in v1.8.11 (the current development version, where `setkey` has also gotten a lot faster). So the benchmarks shown here will vary with the current stable version 1.8.10 on CRAN. It's okay if you're not using development version. Hopefully this'll convince you of the usefulness of `setkey` and provides you with some things on what to expect in next release.

Okay, on to illustration on data of your dimensions:

### Getting some data:

``````require(data.table)
set.seed(1L)
uval <- 2e4 # unique values in ID
N <- 20e6
DT <- data.table(ID=sample(uval, N, TRUE)) # for simplicity ID is integer
cols <- paste("V", 1:11, sep="")
set(DT, i=NULL, j=cols, value=as.list(1:11))
dim(DT) # 20e6 by 12
``````

### Without setting key:

``````system.time(ans1 <- DT[,
list(val=mean(c(V1,V2,V3,V4,V5,V6,V7,V8,V9,V10,V11))),
by=ID])
#   user  system elapsed
# 45.587   0.632  46.251
``````

### By setting key:

``````system.time(setkey(DT, ID)) # (note that this'll be much faster on 1.8.11)
#   user  system elapsed
#  5.872   0.072   5.948

system.time(ans2 <- DT[,
list(val=mean(c(V1,V2,V3,V4,V5,V6,V7,V8,V9,V10,V11))),
by=ID])
#   user  system elapsed
#  2.164   0.236   2.400

setkey(ans1, ID)
identical(ans1, ans2) # [1] TRUE
``````

You see that, by setting key, you take ~8.4 sec, where as without it's > 40 secs. That's a lot of speed-up.

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