34 data.table basics
34.1 data.table extends the functionality of the data.frame
Some of the ways in which a data.table differs from a data.frame:
- Many operations can be performed within a
data.table’s “frame” (dt[i, j, by]): filter cases, select columns & operate on columns, group-by operations - Access column names directly without quoting
- Many operations can be performed “in-place” (i.e. with no assignment)
- Working on large datasets (e.g. millions of rows) can be orders of magnitude faster with a
data.tablethan adata.frame.
data.table operations remain as close as possible to data.frame operations, trying to extend rather than replace data.frame functionality.
data.table includes thorough and helpful error messages that often point to a solution. This includes common mistakes new users may make when trying commands that would work on a data.frame but not on a data.table.
34.1.1 Load the data.table package
34.2 Create a data.table
34.2.1 By assignment: data.table()
Let’s create a data.frame and a data.table to explore side by side.
df <- data.frame(A = 1:5,
B = c(1.2, 4.3, 9.7, 5.6, 8.1),
C = c("a", "b", "b", "a", "a"))
class(df)[1] "data.frame"
df A B C
1 1 1.2 a
2 2 4.3 b
3 3 9.7 b
4 4 5.6 a
5 5 8.1 a
data.table() syntax is similar to data.frame() (differs in some arguments)
dt <- data.table(A = 1:5,
B = c(1.2, 4.3, 9.7, 5.6, 8.1),
C = c("a", "b", "b", "a", "a"))
class(dt)[1] "data.table" "data.frame"
dt A B C
<int> <num> <char>
1: 1 1.2 a
2: 2 4.3 b
3: 3 9.7 b
4: 4 5.6 a
5: 5 8.1 a
Notice how a data.table object also inherits from data.frame. This means that if a method does not exist for data.table, the method for data.frame will be used (See classes and generic functions).
As part of improving efficiency, data.tables do away with row names. Instead of using row names, you should use a dedicated column or column with a row identifier/s (e.g. “ID”). this is advisable when working with data.frames as well.
A rather convenient option is to have data.tables print each column’s class below the column name. You can pass the argument class = TRUE to print() or set the global option datatable.print.class using options()
options(datatable.print.class = TRUE)
dt A B C
<int> <num> <char>
1: 1 1.2 a
2: 2 4.3 b
3: 3 9.7 b
4: 4 5.6 a
5: 5 8.1 a
Same as with a data.frame, to automatically convert strings to factors, you can use the stringsAsFactors argument:
dt2 <- data.table(A = 1:5,
B = c(1.2, 4.3, 9.7, 5.6, 8.1),
C = c("a", "b", "b", "a", "a"),
stringsAsFactors = TRUE)
dt2 A B C
<int> <num> <fctr>
1: 1 1.2 a
2: 2 4.3 b
3: 3 9.7 b
4: 4 5.6 a
5: 5 8.1 a
34.2.2 By coercion: as.data.table()
dat <- data.frame(A = 1:5,
B = c(1.2, 4.3, 9.7, 5.6, 8.1),
C = c("a", "b", "b", "a", "a"),
stringsAsFactors = TRUE)
dat A B C
1 1 1.2 a
2 2 4.3 b
3 3 9.7 b
4 4 5.6 a
5 5 8.1 a
dat2 <- as.data.table(dat)
dat2 A B C
<int> <num> <fctr>
1: 1 1.2 a
2: 2 4.3 b
3: 3 9.7 b
4: 4 5.6 a
5: 5 8.1 a
34.2.3 By coercion in-place: setDT()
setDT() converts a list or data.frame into a data.table in-place. This means the object passed to setDT() is changed and you do not need to assign the output to a new object.
dat <- data.frame(A = 1:5,
B = c(1.2, 4.3, 9.7, 5.6, 8.1),
C = c("a", "b", "b", "a", "a"))
class(dat)[1] "data.frame"
You can similarly convert a data.table to a data.frame, in-place:
34.3 Display data.table structure with str()
str() works the same (and you should keep using it!)
str(df)'data.frame': 5 obs. of 3 variables:
$ A: int 1 2 3 4 5
$ B: num 1.2 4.3 9.7 5.6 8.1
$ C: chr "a" "b" "b" "a" ...
str(dt)Classes 'data.table' and 'data.frame': 5 obs. of 3 variables:
$ A: int 1 2 3 4 5
$ B: num 1.2 4.3 9.7 5.6 8.1
$ C: chr "a" "b" "b" "a" ...
- attr(*, ".internal.selfref")=<externalptr>
34.4 Combine data.tables
cbind() and rbind() work on data.tables the same as on data.frames:
dt1 <- data.table(a = 1:5)
dt2 <- data.table(b = 11:15)
cbind(dt1, dt2) a b
<int> <int>
1: 1 11
2: 2 12
3: 3 13
4: 4 14
5: 5 15
rbind(dt1, dt1) a
<int>
1: 1
2: 2
3: 3
4: 4
5: 5
6: 1
7: 2
8: 3
9: 4
10: 5
34.5 Set column names in-place
dta <- data.table(
ID = sample(8000:9000, size = 10),
A = rnorm(10, mean = 47, sd = 8),
W = rnorm(10, mean = 87, sd = 7)
)
dta ID A W
<int> <num> <num>
1: 8891 46.64620 78.37711
2: 8405 47.73877 87.77606
3: 8397 50.68287 84.90517
4: 8069 50.40733 86.44774
5: 8538 51.37829 89.92149
6: 8495 55.59011 90.95933
7: 8080 37.14590 76.06015
8: 8981 60.03211 82.07721
9: 8611 43.72036 86.34864
10: 8194 50.61190 98.88535
Use the syntax:
setnames(dt, old, new)
to change the column names of a data.table in-place.
Changes all column names:
Patient_ID Age Weight
<int> <num> <num>
1: 8891 46.64620 78.37711
2: 8405 47.73877 87.77606
3: 8397 50.68287 84.90517
4: 8069 50.40733 86.44774
5: 8538 51.37829 89.92149
6: 8495 55.59011 90.95933
7: 8080 37.14590 76.06015
8: 8981 60.03211 82.07721
9: 8611 43.72036 86.34864
10: 8194 50.61190 98.88535
Change subset of names:
Patient_ID Age_at_Admission Weight_at_Admission
<int> <num> <num>
1: 8891 46.64620 78.37711
2: 8405 47.73877 87.77606
3: 8397 50.68287 84.90517
4: 8069 50.40733 86.44774
5: 8538 51.37829 89.92149
6: 8495 55.59011 90.95933
7: 8080 37.14590 76.06015
8: 8981 60.03211 82.07721
9: 8611 43.72036 86.34864
10: 8194 50.61190 98.88535
old argument can also be integer index of column(s).
For example, change the name of the first column:
setnames(dta, 1, "Hospital_ID")
dta Hospital_ID Age_at_Admission Weight_at_Admission
<int> <num> <num>
1: 8891 46.64620 78.37711
2: 8405 47.73877 87.77606
3: 8397 50.68287 84.90517
4: 8069 50.40733 86.44774
5: 8538 51.37829 89.92149
6: 8495 55.59011 90.95933
7: 8080 37.14590 76.06015
8: 8981 60.03211 82.07721
9: 8611 43.72036 86.34864
10: 8194 50.61190 98.88535
34.6 Filter rows
There are many similarities and some notable differences in how indexing works in a data.table vs. a data.frame.
Filtering rows with an integer or logical index is largely the same in a data.frame and a data.table, but in a data.table you can omit the comma to select all columns:
df[c(1, 3, 5), ] A B C
1 1 1.2 a
3 3 9.7 b
5 5 8.1 a
dt[c(1, 3, 5), ] A B C
<int> <num> <char>
1: 1 1.2 a
2: 3 9.7 b
3: 5 8.1 a
dt[c(1, 3, 5)] A B C
<int> <num> <char>
1: 1 1.2 a
2: 3 9.7 b
3: 5 8.1 a
Using a variable that holds a row index, whether integer or logical:
rowid <- c(1, 3, 5)
df[rowid, ] A B C
1 1 1.2 a
3 3 9.7 b
5 5 8.1 a
dt[rowid, ] A B C
<int> <num> <char>
1: 1 1.2 a
2: 3 9.7 b
3: 5 8.1 a
dt[rowid] A B C
<int> <num> <char>
1: 1 1.2 a
2: 3 9.7 b
3: 5 8.1 a
rowbn <- c(T, F, T, F, T)
df[rowbn, ] A B C
1 1 1.2 a
3 3 9.7 b
5 5 8.1 a
dt[rowbn, ] A B C
<int> <num> <char>
1: 1 1.2 a
2: 3 9.7 b
3: 5 8.1 a
dt[rowbn] A B C
<int> <num> <char>
1: 1 1.2 a
2: 3 9.7 b
3: 5 8.1 a
34.6.1 Conditional filtering
As a reminder, there are a few ways to conditionally filter cases in a data.frame:
A B C
5 5 8.1 a
A B C
5 5 8.1 a
A B C
5 5 8.1 a
data.table allows you to refer to column names directly and unquoted, which makes writing filter conditions easier/more compact:
The data.table package also includes an S3 method for subset() that works the same way as with a data.frame:
As another example, exclude cases based on missingness in a specific column:
adf <- as.data.frame(sapply(1:5, function(i) rnorm(10)))
adf |> head() V1 V2 V3 V4 V5
1 1.76181867 0.1400717 0.3223699 -0.67165028 -1.1847180
2 -1.16102989 -0.7243540 1.2147593 -0.27086664 -0.4917231
3 -0.24079202 0.6322680 0.1615875 1.23194277 -0.3109401
4 0.28799917 -0.9452905 -1.7282306 0.07471584 1.6144841
5 -0.03832676 -0.6550937 1.3137549 -0.54021670 -0.2197895
6 -0.09288854 0.7026018 -0.7111555 0.70999418 -0.4250824
adf[1, 3] <- adf[3, 4] <- adf[5, 3] <- adf[7, 3] <- NA
adt <- as.data.table(adf)adf[!is.na(adf$V3), ] V1 V2 V3 V4 V5
2 -1.16102989 -0.72435401 1.2147593 -0.27086664 -0.4917231
3 -0.24079202 0.63226804 0.1615875 NA -0.3109401
4 0.28799917 -0.94529050 -1.7282306 0.07471584 1.6144841
6 -0.09288854 0.70260182 -0.7111555 0.70999418 -0.4250824
8 -0.74678280 -0.27314789 -0.1950318 0.78268534 -0.5224142
9 -0.02276843 -0.01859409 -0.4894305 -1.98561019 0.1967000
10 0.68218165 1.05401788 -1.7543987 1.36867146 0.7186674
adt[!is.na(V3)] V1 V2 V3 V4 V5
<num> <num> <num> <num> <num>
1: -1.16102989 -0.72435401 1.2147593 -0.27086664 -0.4917231
2: -0.24079202 0.63226804 0.1615875 NA -0.3109401
3: 0.28799917 -0.94529050 -1.7282306 0.07471584 1.6144841
4: -0.09288854 0.70260182 -0.7111555 0.70999418 -0.4250824
5: -0.74678280 -0.27314789 -0.1950318 0.78268534 -0.5224142
6: -0.02276843 -0.01859409 -0.4894305 -1.98561019 0.1967000
7: 0.68218165 1.05401788 -1.7543987 1.36867146 0.7186674
34.7 Select columns
34.7.1 By position(s)
Selecting a single column in data.table does not drop to a vector, similar to using drop = FALSE in a data.frame:
df[, 1][1] 1 2 3 4 5
df[, 1, drop = FALSE] A
1 1
2 2
3 3
4 4
5 5
dt[, 1] A
<int>
1: 1
2: 2
3: 3
4: 4
5: 5
Double bracket indexing of a single column works the same on a data.frame and a data.table, returning a vector:
df[[2]][1] 1.2 4.3 9.7 5.6 8.1
dt[[2]][1] 1.2 4.3 9.7 5.6 8.1
A vector of column positions returns a smaller data.table, similar to how it returns a smaller data.frame :
34.7.2 By name(s)
In data.table, you access column names directly without quoting or using the $ notation:
df[, "B"][1] 1.2 4.3 9.7 5.6 8.1
df$B[1] 1.2 4.3 9.7 5.6 8.1
dt[, B][1] 1.2 4.3 9.7 5.6 8.1
Because of this, data.table requires a slightly different syntax to use a variable as a column index which can contain integer positions, logical index, or column names. While on a data.frame you can do pass an index vector directly:
A B
1 1 1.2
2 2 4.3
3 3 9.7
4 4 5.6
5 5 8.1
df[, colbn] B C
1 1.2 a
2 4.3 b
3 9.7 b
4 5.6 a
5 8.1 a
df[, colnm] A C
1 1 a
2 2 b
3 3 b
4 4 a
5 5 a
To do the same in a data.table, you must prefix the index vector with two dots:
dt[, ..colid] A B
<int> <num>
1: 1 1.2
2: 2 4.3
3: 3 9.7
4: 4 5.6
5: 5 8.1
dt[, ..colbn] B C
<num> <char>
1: 1.2 a
2: 4.3 b
3: 9.7 b
4: 5.6 a
5: 8.1 a
dt[, ..colnm] A C
<int> <char>
1: 1 a
2: 2 b
3: 3 b
4: 4 a
5: 5 a
Think of working inside the data.table frame (i.e. within the “[…]”) like an environment: you have direct access to the variables, i.e. columns within it. If you want to refer to variables outside the data.table, you must prefix their names with .. (similar to how you access the directory above your current working directory in the system shell).
Always read error messages carefully, no matter what function or package you are using. In the case of data.table, the error messages are very informative and often point to the solution.
See what happens if you try to use the data.frame syntax by accident:
dt[, colid]Error in `[.data.table`:
! j (the 2nd argument inside [...]) is a single symbol but column name 'colid' is not found. If you intended to select columns using a variable in calling scope, please try DT[, ..colid]. The .. prefix conveys one-level-up similar to a file system path.
Selecting a single column by name returns a vector:
dt[, A][1] 1 2 3 4 5
Selecting one or more columns by name enclosed in list() or .() (which, in this case, is short for list()), always returns a data.table:
dt[, .(A)] A
<int>
1: 1
2: 2
3: 3
4: 4
5: 5
dt[, .(A, B)] A B
<int> <num>
1: 1 1.2
2: 2 4.3
3: 3 9.7
4: 4 5.6
5: 5 8.1
34.7.3 .SD & .SDcols
.SDcols is a special symbol that can be used to select columns of a data.table as an alternative to j. It can accept a vector of integer positions or column names. .SD is another special symbol that can be used in j and refers to either the entire data.table, or the subset defined by .SDcols, if present. The following can be used to select columns:
dt[, .SD, .SDcols = colid] A B
<int> <num>
1: 1 1.2
2: 2 4.3
3: 3 9.7
4: 4 5.6
5: 5 8.1
One of the main uses of .SD is shown below in combination with lapply().
34.8 Add new column in-place
Use := assignment to add a new column in the existing data.table.
dt[, AplusB := A + B]
dt A B C AplusB
<int> <num> <char> <num>
1: 1 1.2 a 2.2
2: 2 4.3 b 6.3
3: 3 9.7 b 12.7
4: 4 5.6 a 9.6
5: 5 8.1 a 13.1
Note how dt was modified even though we did not run dt <- dt[, AplusB := A + B]
34.9 Add multiple columns in-place
You can add multiple new columns in-place and at the same time using the := operator with:
- a character vector of new column names on the left hand side
- a list of values on the right hand side
Here, we add two new columns, AtimesB and AoverB:
It is often convenient to use lapply() on the right hand side, since it always returns a list:
A B C AplusB AtimesB AoverB logA logB
<int> <num> <char> <num> <num> <num> <num> <num>
1: 1 1.2 a 2.2 1.2 0.8333333 0.0000000 0.1823216
2: 2 4.3 b 6.3 8.6 0.4651163 0.6931472 1.4586150
3: 3 9.7 b 12.7 29.1 0.3092784 1.0986123 2.2721259
4: 4 5.6 a 9.6 22.4 0.7142857 1.3862944 1.7227666
5: 5 8.1 a 13.1 40.5 0.6172840 1.6094379 2.0918641
You can also use := in a little more awkward syntax:
dt[, `:=`(AminusB = A - B, AoverC = A / B)]
dt A B C AplusB AtimesB AoverB logA logB AminusB
<int> <num> <char> <num> <num> <num> <num> <num> <num>
1: 1 1.2 a 2.2 1.2 0.8333333 0.0000000 0.1823216 -0.2
2: 2 4.3 b 6.3 8.6 0.4651163 0.6931472 1.4586150 -2.3
3: 3 9.7 b 12.7 29.1 0.3092784 1.0986123 2.2721259 -6.7
4: 4 5.6 a 9.6 22.4 0.7142857 1.3862944 1.7227666 -1.6
5: 5 8.1 a 13.1 40.5 0.6172840 1.6094379 2.0918641 -3.1
AoverC
<num>
1: 0.8333333
2: 0.4651163
3: 0.3092784
4: 0.7142857
5: 0.6172840
34.10 Convert column type
34.10.1 Assignment by reference with :=
Use any base R coercion function (as.*) to convert a column in-place using the := notation
dt[, A := as.numeric(A)]
dt A B C AplusB AtimesB AoverB logA logB AminusB
<num> <num> <char> <num> <num> <num> <num> <num> <num>
1: 1 1.2 a 2.2 1.2 0.8333333 0.0000000 0.1823216 -0.2
2: 2 4.3 b 6.3 8.6 0.4651163 0.6931472 1.4586150 -2.3
3: 3 9.7 b 12.7 29.1 0.3092784 1.0986123 2.2721259 -6.7
4: 4 5.6 a 9.6 22.4 0.7142857 1.3862944 1.7227666 -1.6
5: 5 8.1 a 13.1 40.5 0.6172840 1.6094379 2.0918641 -3.1
AoverC
<num>
1: 0.8333333
2: 0.4651163
3: 0.3092784
4: 0.7142857
5: 0.6172840
34.10.2 Delete columns in-place with :=
To delete a column, use := to set it to NULL:
dt[, AoverB := NULL]
dt A B C AplusB AtimesB logA logB AminusB AoverC
<num> <num> <char> <num> <num> <num> <num> <num> <num>
1: 1 1.2 a 2.2 1.2 0.0000000 0.1823216 -0.2 0.8333333
2: 2 4.3 b 6.3 8.6 0.6931472 1.4586150 -2.3 0.4651163
3: 3 9.7 b 12.7 29.1 1.0986123 2.2721259 -6.7 0.3092784
4: 4 5.6 a 9.6 22.4 1.3862944 1.7227666 -1.6 0.7142857
5: 5 8.1 a 13.1 40.5 1.6094379 2.0918641 -3.1 0.6172840
Delete multiple columns
dt[, c("logA", "logB") := NULL]Or:
dt[, `:=`(AplusB = NULL, AminusB = NULL)]
dt A B C AtimesB AoverC
<num> <num> <char> <num> <num>
1: 1 1.2 a 1.2 0.8333333
2: 2 4.3 b 8.6 0.4651163
3: 3 9.7 b 29.1 0.3092784
4: 4 5.6 a 22.4 0.7142857
5: 5 8.1 a 40.5 0.6172840
34.10.3 Fast loop-able assignment with set()
data.table’s set() is a loop-able version of the := operator. Use it in a for loop to operate on multiple columns.
Syntax: set(dt, i, j, value)
-
dtthe data.table to operate on -
ioptionally define which rows to operate on.i = NULLto operate on all rows -
jcolumn names or index to be assignedvalue -
valuevalues to be assigned tojby reference
As a simple example, transform the first two columns in-place by squaring:
for (i in 1:2) {
set(dt, i = NULL, j = i, value = dt[[i]]^2)
}34.11 Summarize
You can apply one or multiple summary functions on one or multiple columns. Surround the operations in list() or .() to output a new data.table holding the outputs of the operations, i.e. the input data.table remains unchanged.
A_max A_min A_sd
<num> <num> <num>
1: 25 1 9.66954
Example: Get the standard deviation of all numeric columns:
A B AtimesB AoverC
<num> <num> <num> <num>
1: 9.66954 37.35521 15.74462 0.2060219
If your function returns more than one value, the output will have multiple rows:
dt_range <- dt[, lapply(.SD, range), .SDcols = numid]
dt_range A B AtimesB AoverC
<num> <num> <num> <num>
1: 1 1.44 1.2 0.3092784
2: 25 94.09 40.5 0.8333333
34.12 Set order
You can set the row order of a data.table in-place based on one or multiple columns’ values using setorder()
PatientID Height Weight Group
<int> <num> <num> <fctr>
1: 3231 196.3039 71.59945 B
2: 6081 176.5131 75.85621 B
3: 1010 191.5851 83.10799 B
4: 9380 183.1453 93.33937 B
5: 2017 161.0093 82.30423 A
6: 1942 182.5191 76.58418 B
7: 5396 175.8809 78.43487 B
8: 7338 189.9497 87.88289 B
9: 5178 191.0920 55.24988 B
10: 4113 196.1999 73.61255 B
Let’s set the order by PatientID:
setorder(dt, PatientID)
dt PatientID Height Weight Group
<int> <num> <num> <fctr>
1: 1010 191.5851 83.10799 B
2: 1942 182.5191 76.58418 B
3: 2017 161.0093 82.30423 A
4: 3231 196.3039 71.59945 B
5: 4113 196.1999 73.61255 B
6: 5178 191.0920 55.24988 B
7: 5396 175.8809 78.43487 B
8: 6081 176.5131 75.85621 B
9: 7338 189.9497 87.88289 B
10: 9380 183.1453 93.33937 B
Let’s re-order, always in-place, by group and then by height:
setorder(dt, Group, Height)
dt PatientID Height Weight Group
<int> <num> <num> <fctr>
1: 2017 161.0093 82.30423 A
2: 5396 175.8809 78.43487 B
3: 6081 176.5131 75.85621 B
4: 1942 182.5191 76.58418 B
5: 9380 183.1453 93.33937 B
6: 7338 189.9497 87.88289 B
7: 5178 191.0920 55.24988 B
8: 1010 191.5851 83.10799 B
9: 4113 196.1999 73.61255 B
10: 3231 196.3039 71.59945 B
34.13 Group-by operations
Up to now, we have learned how to use the data.table frame dat[i, j] to filter cases in i or add/remove/transform columns in-place in j. dat[i, j, by] allows to perform operations separately on groups of cases.
dt <- data.table(A = 1:5,
B = c(1.2, 4.3, 9.7, 5.6, 8.1),
C = rnorm(5),
Group = c("a", "b", "b", "a", "a"))
dt A B C Group
<int> <num> <num> <char>
1: 1 1.2 0.69461579 a
2: 2 4.3 1.34795272 b
3: 3 9.7 0.82101760 b
4: 4 5.6 0.06944533 a
5: 5 8.1 -0.61321955 a
34.13.1 Group-by summary
As we’ve seen, using .() or list() in j, returns a new data.table:
34.13.2 Group-by operation and assignment
Making an assignment with := in j, adds a column in-place. If you combine such an assignment with a group-by operation, the same value will be assigned to all cases of the group:
dt[, mean_A_by_Group := mean(A), by = Group]
dt A B C Group mean_A_by_Group
<int> <num> <num> <char> <num>
1: 1 1.2 0.69461579 a 3.333333
2: 2 4.3 1.34795272 b 2.500000
3: 3 9.7 0.82101760 b 2.500000
4: 4 5.6 0.06944533 a 3.333333
5: 5 8.1 -0.61321955 a 3.333333
34.14 Apply functions to columns
Any function that returns a list can be used in j to return a new data.table - therefore lapply is perfect for getting summary on multiple columns. This is another example where you have to use the .SD notation:
dt1 <- as.data.table(sapply(1:3, \(i) rnorm(10)))
dt1 V1 V2 V3
<num> <num> <num>
1: -1.64550451 -1.0568537 1.2768708
2: -0.21590268 1.3682299 -0.7594915
3: 0.15677820 -0.4693945 -0.5269167
4: -1.28472574 -0.5785145 1.3110751
5: -0.08883428 0.2391433 1.6325717
6: -0.99025395 0.4759694 1.5294635
7: 1.81356835 0.3773095 0.6376757
8: 1.63115501 -0.9772004 0.4546990
9: -0.01715155 -0.4408853 0.4161094
10: -0.94024912 1.0449453 1.4215103
Alpha Beta Gamma
<num> <num> <num>
1: -0.158112 -0.001725105 0.7393567
You can specify which columns to operate on using the .SDcols argument:
dt2 <- data.table(A = 1:5,
B = c(1.2, 4.3, 9.7, 5.6, 8.1),
C = rnorm(5),
Group = c("a", "b", "b", "a", "a"))
dt2 A B C Group
<int> <num> <num> <char>
1: 1 1.2 -0.4644849 a
2: 2 4.3 -0.5605239 b
3: 3 9.7 0.1979489 b
4: 4 5.6 -0.1429797 a
5: 5 8.1 -1.0357604 a
dt2[, lapply(.SD, mean), .SDcols = 1:2] A B
<num> <num>
1: 3 5.78
A B
<num> <num>
1: 3 5.78
A B
<num> <num>
1: 3 5.78
You can combine .SDcols and by:
Group B C
<char> <num> <num>
1: a 5.6 -0.4644849
2: b 7.0 -0.1812875
Create multiple new columns from transformation of existing and store with custom prefix:
dt1 Alpha Beta Gamma
<num> <num> <num>
1: -1.64550451 -1.0568537 1.2768708
2: -0.21590268 1.3682299 -0.7594915
3: 0.15677820 -0.4693945 -0.5269167
4: -1.28472574 -0.5785145 1.3110751
5: -0.08883428 0.2391433 1.6325717
6: -0.99025395 0.4759694 1.5294635
7: 1.81356835 0.3773095 0.6376757
8: 1.63115501 -0.9772004 0.4546990
9: -0.01715155 -0.4408853 0.4161094
10: -0.94024912 1.0449453 1.4215103
Alpha Beta Gamma Alpha_abs Beta_abs Gamma_abs
<num> <num> <num> <num> <num> <num>
1: -1.64550451 -1.0568537 1.2768708 1.64550451 1.0568537 1.2768708
2: -0.21590268 1.3682299 -0.7594915 0.21590268 1.3682299 0.7594915
3: 0.15677820 -0.4693945 -0.5269167 0.15677820 0.4693945 0.5269167
4: -1.28472574 -0.5785145 1.3110751 1.28472574 0.5785145 1.3110751
5: -0.08883428 0.2391433 1.6325717 0.08883428 0.2391433 1.6325717
6: -0.99025395 0.4759694 1.5294635 0.99025395 0.4759694 1.5294635
7: 1.81356835 0.3773095 0.6376757 1.81356835 0.3773095 0.6376757
8: 1.63115501 -0.9772004 0.4546990 1.63115501 0.9772004 0.4546990
9: -0.01715155 -0.4408853 0.4161094 0.01715155 0.4408853 0.4161094
10: -0.94024912 1.0449453 1.4215103 0.94024912 1.0449453 1.4215103
dt2 A B C Group
<int> <num> <num> <char>
1: 1 1.2 -0.4644849 a
2: 2 4.3 -0.5605239 b
3: 3 9.7 0.1979489 b
4: 4 5.6 -0.1429797 a
5: 5 8.1 -1.0357604 a
A B C Group A_groupMean C_groupMean
<int> <num> <num> <char> <num> <num>
1: 1 1.2 -0.4644849 a 3.333333 -0.5477417
2: 2 4.3 -0.5605239 b 2.500000 -0.1812875
3: 3 9.7 0.1979489 b 2.500000 -0.1812875
4: 4 5.6 -0.1429797 a 3.333333 -0.5477417
5: 5 8.1 -1.0357604 a 3.333333 -0.5477417
34.15 Row-wise operations
dt <- data.table(a = 1:5, b = 11:15, c = 21:25,
d = 31:35, e = 41:45)
dt a b c d e
<int> <int> <int> <int> <int>
1: 1 11 21 31 41
2: 2 12 22 32 42
3: 3 13 23 33 43
4: 4 14 24 34 44
5: 5 15 25 35 45
To operate row-wise, we can use by = 1:nrow(dt). For example, to add a column, in-place, with row-wise sums of variables b through d:
34.16 Watch out for data.table error messages
For example
