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Let's say I have a data.table and I want to select all the rows where the variable x has a value of b. That is easy

library(data.table)
DT <- data.table(x=rep(c("a","b","c"),each=3), y=c(1,3,6), v=1:9)
setkey(DT,x)               # set a 1-column key
DT["b"]

By the way, it appears that one has to set a key, if the key is not set to x then this does not work. By the way what would happen if I set two columns as keys?

Anyway, moving along, lets say that I want to select all the rows where the variable x was a or b

DT["b"|"a"]

does not work

But the following works

DT[x=="a"|x=="b"]

But that uses vector scanning a la data frames. It does not use the binary search. I guess for smaller data sets it will not matter.

Is that what I should do or am I ignorant of data.table syntax?

And one more thing. Are there any examples of more complex Boolean multi-variable selection (or subset) procedures with data.table?

I know I could always revert to using the subset() function since a data.table will behave as a data.frame if it must.

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A detailed worked example of multi-column key is in the Introduction vignette. –  Matt Dowle Dec 15 '11 at 9:15
    
And not sure how well known it is to work through result of example(data.table) at the prompt - examples are there. –  Matt Dowle Dec 15 '11 at 9:29

2 Answers 2

up vote 3 down vote accepted

Here is a way that only crossed my mind after I asked the question and it works but I do not know how it does in benchmarks. I am not currently at a computer with an installed R. I guess I should use a cloud instance. Anyway, I like the syntax

DT[c("a","b")]
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I added this to the benchmark's below, it performs the fastest by far of the three solutions. Nice work. –  Chase Dec 14 '11 at 21:03
    
Great. That is known as by without by, a.k.a. grouping by i. Somewhat analagous to having in SQL. –  Matt Dowle Dec 15 '11 at 9:17
1  
When you get the hang of grouping by i, the next learning step is join inherited scope. Run example(data.table) and the results show an example. –  Matt Dowle Dec 15 '11 at 9:23

Using the %in% operator seems to give a factor of 2 performance bump. Consider:

library(data.table)
library(rbenchmark)
DT <- data.table(x=sample(letters, 1e6, TRUE), y=rnorm(1e6), v=runif(1e6))
setkey(DT,x)               # set a 1-column key
DT["b"]
f1 <- function() DT[x %in% letters[1:2]]
f2 <- function() DT[x=="a"| x == "b"]

> benchmark(f1(),f2())
  test replications elapsed relative user.self sys.self user.child sys.child
1 f1()          100    8.40 1.000000      7.58     0.81         NA        NA
2 f2()          100   17.11 2.036905     15.54     1.56         NA        NA

> all.equal(f1(), f2())
[1] TRUE

EDIT: Adding Farrel's option

Note, this is on a different computer, but the relative bumps are the same.

f3 <- function() DT[c("a", "b")]

  test replications elapsed  relative user.self sys.self user.child sys.child
1 f1()          100  11.281  7.121843     9.745    1.323          0         0
2 f2()          100  23.106 14.587121    20.824    2.224          0         0
3 f3()          100   1.584  1.000000     1.042    0.541          0         0
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