# How to sort a dataframe by multiple column(s)

I want to sort a data.frame by multiple columns. For example, with the data.frame below I would like to sort by column `z` (descending) then by column `b` (ascending):

``````dd <- data.frame(b = factor(c("Hi", "Med", "Hi", "Low"),
levels = c("Low", "Med", "Hi"), ordered = TRUE),
x = c("A", "D", "A", "C"), y = c(8, 3, 9, 9),
z = c(1, 1, 1, 2))
dd
b x y z
1  Hi A 8 1
2 Med D 3 1
3  Hi A 9 1
4 Low C 9 2
``````

You can use the `order()` function directly without resorting to add-on tools -- see this simpler answer which uses a trick right from the top of the `example(order)` code:

``````R> dd[with(dd, order(-z, b)), ]
b x y z
4 Low C 9 2
2 Med D 3 1
1  Hi A 8 1
3  Hi A 9 1
``````

Edit some 2+ years later: It was just asked how to do this by column index. The answer is to simply pass the desired sorting column(s) to the `order()` function:

``````R> dd[order(-dd[,4], dd[,1]), ]
b x y z
4 Low C 9 2
2 Med D 3 1
1  Hi A 8 1
3  Hi A 9 1
R>
``````

rather than using the name of the column (and `with()` for easier/more direct access).

• @Dirk Eddelbuettel is there a similarly simple method for matrices? – Jota Mar 27 '12 at 3:17
• Should work the same way, but you can't use `with`. Try `M <- matrix(c(1,2,2,2,3,6,4,5), 4, 2, byrow=FALSE, dimnames=list(NULL, c("a","b")))` to create a matrix `M`, then use `M[order(M[,"a"],-M[,"b"]),]` to order it on two columns. – Dirk Eddelbuettel Mar 27 '12 at 12:41
• Easy enough: `dd[ order(-dd[,4], dd[,1]), ]`, but can't use `with` for name-based subsetting. – Dirk Eddelbuettel Oct 21 '12 at 14:34
• I have "invalid argument to unary operator" error while running the second example. – Nailgun Jan 22 '13 at 23:01
• The "invalid argument to unary operator" error occurs when you use minus with a character column. Solve it by wrapping the column in `xtfrm`, for example `dd[ order(-xtfrm(dd[,4]), dd[,1]), ]`. – Richie Cotton Mar 24 '15 at 11:40

• `order` from `base`
• `arrange` from `dplyr`
• `setorder` and `setorderv` from `data.table`
• `arrange` from `plyr`
• `sort` from `taRifx`
• `orderBy` from `doBy`
• `sortData` from `Deducer`

Most of the time you should use the `dplyr` or `data.table` solutions, unless having no-dependencies is important, in which case use `base::order`.

I recently added sort.data.frame to a CRAN package, making it class compatible as discussed here: Best way to create generic/method consistency for sort.data.frame?

Therefore, given the data.frame dd, you can sort as follows:

``````dd <- data.frame(b = factor(c("Hi", "Med", "Hi", "Low"),
levels = c("Low", "Med", "Hi"), ordered = TRUE),
x = c("A", "D", "A", "C"), y = c(8, 3, 9, 9),
z = c(1, 1, 1, 2))
library(taRifx)
sort(dd, f= ~ -z + b )
``````

If you are one of the original authors of this function, please contact me. Discussion as to public domaininess is here: https://chat.stackoverflow.com/transcript/message/1094290#1094290

You can also use the `arrange()` function from `plyr` as Hadley pointed out in the above thread:

``````library(plyr)
arrange(dd,desc(z),b)
``````

Benchmarks: Note that I loaded each package in a new R session since there were a lot of conflicts. In particular loading the doBy package causes `sort` to return "The following object(s) are masked from 'x (position 17)': b, x, y, z", and loading the Deducer package overwrites `sort.data.frame` from Kevin Wright or the taRifx package.

``````#Load each time
dd <- data.frame(b = factor(c("Hi", "Med", "Hi", "Low"),
levels = c("Low", "Med", "Hi"), ordered = TRUE),
x = c("A", "D", "A", "C"), y = c(8, 3, 9, 9),
z = c(1, 1, 1, 2))
library(microbenchmark)

microbenchmark(dd[with(dd, order(-z, b)), ] ,
dd[order(-dd\$z, dd\$b),],
times=1000
)
``````

Median times:

`dd[with(dd, order(-z, b)), ]` 778

`dd[order(-dd\$z, dd\$b),]` 788

``````library(taRifx)
microbenchmark(sort(dd, f= ~-z+b ),times=1000)
``````

Median time: 1,567

``````library(plyr)
microbenchmark(arrange(dd,desc(z),b),times=1000)
``````

Median time: 862

``````library(doBy)
microbenchmark(orderBy(~-z+b, data=dd),times=1000)
``````

Median time: 1,694

Note that doBy takes a good bit of time to load the package.

``````library(Deducer)
microbenchmark(sortData(dd,c("z","b"),increasing= c(FALSE,TRUE)),times=1000)
``````

Couldn't make Deducer load. Needs JGR console.

``````esort <- function(x, sortvar, ...) {
attach(x)
x <- x[with(x,order(sortvar,...)),]
return(x)
detach(x)
}

microbenchmark(esort(dd, -z, b),times=1000)
``````

Doesn't appear to be compatible with microbenchmark due to the attach/detach.

``````m <- microbenchmark(
arrange(dd,desc(z),b),
sort(dd, f= ~-z+b ),
dd[with(dd, order(-z, b)), ] ,
dd[order(-dd\$z, dd\$b),],
times=1000
)

uq <- function(x) { fivenum(x)[4]}
lq <- function(x) { fivenum(x)[2]}

y_min <- 0 # min(by(m\$time,m\$expr,lq))
y_max <- max(by(m\$time,m\$expr,uq)) * 1.05

p <- ggplot(m,aes(x=expr,y=time)) + coord_cartesian(ylim = c( y_min , y_max ))
p + stat_summary(fun.y=median,fun.ymin = lq, fun.ymax = uq, aes(fill=expr))
``````

(lines extend from lower quartile to upper quartile, dot is the median)

Given these results and weighing simplicity vs. speed, I'd have to give the nod to `arrange` in the `plyr` package. It has a simple syntax and yet is almost as speedy as the base R commands with their convoluted machinations. Typically brilliant Hadley Wickham work. My only gripe with it is that it breaks the standard R nomenclature where sorting objects get called by `sort(object)`, but I understand why Hadley did it that way due to issues discussed in the question linked above.

• The ggplot2 microbenchmark function above is now available as `taRifx::autoplot.microbenchmark`. – Ari B. Friedman Jun 1 '12 at 1:23
• @AriB.Friedman What are the y axis intervals/what's the scale? – naught101 Jul 30 '12 at 5:04
• @naught101 The y axis starts at 0. Scale should be microseconds. – Ari B. Friedman Jul 30 '12 at 10:43
• @AME look at how `b` is sorted in the sample. The default is sort by ascending, so you just don't wrap it in `desc`. Ascending in both: `arrange(dd,z,b)` . Descending in both: `arrange(dd,desc(z),desc(b))`. – Ari B. Friedman Oct 12 '13 at 10:16
• As per `?arrange`: "# NOTE: plyr functions do NOT preserve row.names". This makes the excellent `arrange()` function suboptimal if one wants to keep `row.names`. – landroni Mar 10 '14 at 16:31

Dirk's answer is great. It also highlights a key difference in the syntax used for indexing `data.frame`s and `data.table`s:

``````## The data.frame way
dd[with(dd, order(-z, b)), ]

## The data.table way: (7 fewer characters, but that's not the important bit)
dd[order(-z, b)]
``````

The difference between the two calls is small, but it can have important consequences. Especially if you write production code and/or are concerned with correctness in your research, it's best to avoid unnecessary repetition of variable names. `data.table` helps you do this.

Here's an example of how repetition of variable names might get you into trouble:

Let's change the context from Dirk's answer, and say this is part of a bigger project where there are a lot of object names and they are long and meaningful; instead of `dd` it's called `quarterlyreport`. It becomes :

``````quarterlyreport[with(quarterlyreport,order(-z,b)),]
``````

Ok, fine. Nothing wrong with that. Next your boss asks you to include last quarter's report in the report. You go through your code, adding an object `lastquarterlyreport` in various places and somehow (how on earth?) you end up with this :

``````quarterlyreport[with(lastquarterlyreport,order(-z,b)),]
``````

That isn't what you meant but you didn't spot it because you did it fast and it's nestled on a page of similar code. The code doesn't fall over (no warning and no error) because R thinks it is what you meant. You'd hope whoever reads your report spots it, but maybe they don't. If you work with programming languages a lot then this situation may be all to familiar. It was a "typo" you'll say. I'll fix the "typo" you'll say to your boss.

In `data.table` we're concerned about tiny details like this. So we've done something simple to avoid typing variable names twice. Something very simple. `i` is evaluated within the frame of `dd` already, automatically. You don't need `with()` at all.

``````dd[with(dd, order(-z, b)), ]
``````

it's just

``````dd[order(-z, b)]
``````

``````quarterlyreport[with(lastquarterlyreport,order(-z,b)),]
``````

it's just

``````quarterlyreport[order(-z,b)]
``````

It's a very small difference, but it might just save your neck one day. When weighing up the different answers to this question, consider counting the repetitions of variable names as one of your criteria in deciding. Some answers have quite a few repeats, others have none.

• +1 This is a great point, and gets at a detail of R's syntax that has often irritated me. I sometimes use `subset()` just to avoid having to repeatedly refer to the same object within a single call. – Josh O'Brien May 25 '12 at 20:45
• @naught101 Does data.table FAQ 1.9 answer that? – Matt Dowle Nov 26 '12 at 8:04
• I guess you could add the new `setorder` function too here, as this thread is where we send all the `order` type dupes. – David Arenburg Jan 8 '15 at 19:18

There are a lot of excellent answers here, but dplyr gives the only syntax that I can quickly and easily remember (and so now use very often):

``````library(dplyr)
# sort mtcars by mpg, ascending... use desc(mpg) for descending
arrange(mtcars, mpg)
# sort mtcars first by mpg, then by cyl, then by wt)
arrange(mtcars , mpg, cyl, wt)
``````

For the OP's problem:

``````arrange(dd, desc(z),  b)

b x y z
1 Low C 9 2
2 Med D 3 1
3  Hi A 8 1
4  Hi A 9 1
``````
• The accepted answer does not work when my columns are or type factor (or something like that) and I want to sort in descending fashion for this factor column followed by integer column in ascending fashion. But this works just fine! Thank you! – Saheel Godhane Feb 22 '14 at 18:36
• Why "only"? I find data.table's `dd[order(-z, b)]` pretty easy to use and remember. – Matt Dowle Mar 19 '14 at 11:11
• Agreed, there's not much between those two methods, and `data.table` is a huge contribution to `R` in many other ways also. I suppose for me, it might be that having one less set of brackets (or one less type of brackets) in this instance reduces the cognitive load by a just barely perceivable amount. – Ben Mar 19 '14 at 17:13
• For me it comes down to the fact that `arrange()` is completely declarative, `dd[order(-z, b)]` is not. – Mullefa May 29 '15 at 13:12

The R package `data.table` provides both fast and memory efficient ordering of data.tables with a straightforward syntax (a part of which Matt has highlighted quite nicely in his answer). There has been quite a lot of improvements and also a new function `setorder()` since then. From `v1.9.5+`, `setorder()` also works with data.frames.

First, we'll create a dataset big enough and benchmark the different methods mentioned from other answers and then list the features of data.table.

### Data:

``````require(plyr)
require(doBy)
require(data.table)
require(dplyr)
require(taRifx)

set.seed(45L)
dat = data.frame(b = as.factor(sample(c("Hi", "Med", "Low"), 1e8, TRUE)),
x = sample(c("A", "D", "C"), 1e8, TRUE),
y = sample(100, 1e8, TRUE),
z = sample(5, 1e8, TRUE),
stringsAsFactors = FALSE)
``````

### Benchmarks:

The timings reported are from running `system.time(...)` on these functions shown below. The timings are tabulated below (in the order of slowest to fastest).

``````orderBy( ~ -z + b, data = dat)     ## doBy
plyr::arrange(dat, desc(z), b)     ## plyr
arrange(dat, desc(z), b)           ## dplyr
sort(dat, f = ~ -z + b)            ## taRifx
dat[with(dat, order(-z, b)), ]     ## base R

# convert to data.table, by reference
setDT(dat)

dat[order(-z, b)]                  ## data.table, base R like syntax
setorder(dat, -z, b)               ## data.table, using setorder()
## setorder() now also works with data.frames

# R-session memory usage (BEFORE) = ~2GB (size of 'dat')
# ------------------------------------------------------------
# Package      function    Time (s)  Peak memory   Memory used
# ------------------------------------------------------------
# doBy          orderBy      409.7        6.7 GB        4.7 GB
# taRifx           sort      400.8        6.7 GB        4.7 GB
# plyr          arrange      318.8        5.6 GB        3.6 GB
# base R          order      299.0        5.6 GB        3.6 GB
# dplyr         arrange       62.7        4.2 GB        2.2 GB
# ------------------------------------------------------------
# data.table      order        6.2        4.2 GB        2.2 GB
# data.table   setorder        4.5        2.4 GB        0.4 GB
# ------------------------------------------------------------
``````
• `data.table`'s `DT[order(...)]` syntax was ~10x faster than the fastest of other methods (`dplyr`), while consuming the same amount of memory as `dplyr`.

• `data.table`'s `setorder()` was ~14x faster than the fastest of other methods (`dplyr`), while taking just 0.4GB extra memory. `dat` is now in the order we require (as it is updated by reference).

### data.table features:

Speed:

• data.table's ordering is extremely fast because it implements radix ordering.

• The syntax `DT[order(...)]` is optimised internally to use data.table's fast ordering as well. You can keep using the familiar base R syntax but speed up the process (and use less memory).

Memory:

• Most of the times, we don't require the original data.frame or data.table after reordering. That is, we usually assign the result back to the same object, for example:

``````DF <- DF[order(...)]
``````

The issue is that this requires at least twice (2x) the memory of the original object. To be memory efficient, data.table therefore also provides a function `setorder()`.

`setorder()` reorders data.tables `by reference` (in-place), without making any additional copies. It only uses extra memory equal to the size of one column.

Other features:

1. It supports `integer`, `logical`, `numeric`, `character` and even `bit64::integer64` types.

Note that `factor`, `Date`, `POSIXct` etc.. classes are all `integer`/`numeric` types underneath with additional attributes and are therefore supported as well.

2. In base R, we can not use `-` on a character vector to sort by that column in decreasing order. Instead we have to use `-xtfrm(.)`.

However, in data.table, we can just do, for example, `dat[order(-x)]` or `setorder(dat, -x)`.

• Thanks for this very instructive answer about data.table. Though, I don't understand what is "peak memory" and how you calculated it. Could you explain please ? Thank you ! – Julien Navarre Jun 30 '15 at 14:32
• I used Instruments -> allocations and reported the "All heap and allocation VM" size. – Arun Jun 30 '15 at 14:55
• @Arun the Instruments link in your comment is dead. Care to post an update? – MichaelChirico Mar 30 '16 at 15:03
• @MichaelChirico Here is a link to information about Instruments made by Apple: developer.apple.com/library/content/documentation/… – n1k31t4 Jul 17 '17 at 9:25

With this (very helpful) function by Kevin Wright, posted in the tips section of the R wiki, this is easily achieved.

``````sort(dd,by = ~ -z + b)
#     b x y z
# 4 Low C 9 2
# 2 Med D 3 1
# 1  Hi A 8 1
# 3  Hi A 9 1
``````
• See my answer for benchmarking of the algorithm used in this function. – Ari B. Friedman Jul 12 '12 at 14:07

Suppose you have a `data.frame` `A` and you want to sort it using column called `x` descending order. Call the sorted `data.frame` `newdata`

``````newdata <- A[order(-A\$x),]
``````

If you want ascending order then replace `"-"` with nothing. You can have something like

``````newdata <- A[order(-A\$x, A\$y, -A\$z),]
``````

where `x` and `z` are some columns in `data.frame` `A`. This means sort `data.frame` `A` by `x` descending, `y` ascending and `z` descending.

or you can use package doBy

``````library(doBy)
dd <- orderBy(~-z+b, data=dd)
``````
• what is the use of ~ in orderBy(~-z+b ? – Daman deep Jul 1 at 16:41

if SQL comes naturally to you, `sqldf` package handles `ORDER BY` as Codd intended.

• MJM, thanks for pointing out this package. It's incredibly flexible and because half of my work is already done by pulling from sql databases it's easier than learning much of R's less than intuitive syntax. – Brandon Bertelsen Jul 29 '10 at 5:31

Alternatively, using the package Deducer

``````library(Deducer)
dd<- sortData(dd,c("z","b"),increasing= c(FALSE,TRUE))
``````

In response to a comment added in the OP for how to sort programmatically:

Using `dplyr` and `data.table`

``````library(dplyr)
library(data.table)
``````

# dplyr

Just use `arrange_`, which is the Standard Evaluation version for `arrange`.

``````df1 <- tbl_df(iris)
#using strings or formula
arrange_(df1, c('Petal.Length', 'Petal.Width'))
arrange_(df1, ~Petal.Length, ~Petal.Width)
Source: local data frame [150 x 5]

Sepal.Length Sepal.Width Petal.Length Petal.Width Species
(dbl)       (dbl)        (dbl)       (dbl)  (fctr)
1           4.6         3.6          1.0         0.2  setosa
2           4.3         3.0          1.1         0.1  setosa
3           5.8         4.0          1.2         0.2  setosa
4           5.0         3.2          1.2         0.2  setosa
5           4.7         3.2          1.3         0.2  setosa
6           5.4         3.9          1.3         0.4  setosa
7           5.5         3.5          1.3         0.2  setosa
8           4.4         3.0          1.3         0.2  setosa
9           5.0         3.5          1.3         0.3  setosa
10          4.5         2.3          1.3         0.3  setosa
..          ...         ...          ...         ...     ...

#Or using a variable
sortBy <- c('Petal.Length', 'Petal.Width')
arrange_(df1, .dots = sortBy)
Source: local data frame [150 x 5]

Sepal.Length Sepal.Width Petal.Length Petal.Width Species
(dbl)       (dbl)        (dbl)       (dbl)  (fctr)
1           4.6         3.6          1.0         0.2  setosa
2           4.3         3.0          1.1         0.1  setosa
3           5.8         4.0          1.2         0.2  setosa
4           5.0         3.2          1.2         0.2  setosa
5           4.7         3.2          1.3         0.2  setosa
6           5.5         3.5          1.3         0.2  setosa
7           4.4         3.0          1.3         0.2  setosa
8           4.4         3.2          1.3         0.2  setosa
9           5.0         3.5          1.3         0.3  setosa
10          4.5         2.3          1.3         0.3  setosa
..          ...         ...          ...         ...     ...

#Doing the same operation except sorting Petal.Length in descending order
sortByDesc <- c('desc(Petal.Length)', 'Petal.Width')
arrange_(df1, .dots = sortByDesc)
``````

It is better to use formula as it also captures the environment to evaluate an expression in

# data.table

``````dt1 <- data.table(iris) #not really required, as you can work directly on your data.frame
sortBy <- c('Petal.Length', 'Petal.Width')
sortType <- c(-1, 1)
setorderv(dt1, sortBy, sortType)
dt1
Sepal.Length Sepal.Width Petal.Length Petal.Width   Species
1:          7.7         2.6          6.9         2.3 virginica
2:          7.7         2.8          6.7         2.0 virginica
3:          7.7         3.8          6.7         2.2 virginica
4:          7.6         3.0          6.6         2.1 virginica
5:          7.9         3.8          6.4         2.0 virginica
---
146:          5.4         3.9          1.3         0.4    setosa
147:          5.8         4.0          1.2         0.2    setosa
148:          5.0         3.2          1.2         0.2    setosa
149:          4.3         3.0          1.1         0.1    setosa
150:          4.6         3.6          1.0         0.2    setosa
``````

I learned about `order` with the following example which then confused me for a long time:

``````set.seed(1234)

ID        = 1:10
Age       = round(rnorm(10, 50, 1))
diag      = c("Depression", "Bipolar")
Diagnosis = sample(diag, 10, replace=TRUE)

data = data.frame(ID, Age, Diagnosis)

databyAge = data[order(Age),]
databyAge
``````

The only reason this example works is because `order` is sorting by the `vector Age`, not by the column named `Age` in the `data frame data`.

To see this create an identical data frame using `read.table` with slightly different column names and without making use of any of the above vectors:

``````my.data <- read.table(text = '

id age  diagnosis
1  49 Depression
2  50 Depression
3  51 Depression
4  48 Depression
5  50 Depression
6  51    Bipolar
7  49    Bipolar
8  49    Bipolar
9  49    Bipolar
10  49 Depression

``````

The above line structure for `order` no longer works because there is no vector named `age`:

``````databyage = my.data[order(age),]
``````

The following line works because `order` sorts on the column `age` in `my.data`.

``````databyage = my.data[order(my.data\$age),]
``````

I thought this was worth posting given how confused I was by this example for so long. If this post is not deemed appropriate for the thread I can remove it.

EDIT: May 13, 2014

Below is a generalized way of sorting a data frame by every column without specifying column names. The code below shows how to sort from left to right or by right to left. This works if every column is numeric. I have not tried with a character column added.

I found the `do.call` code a month or two ago in an old post on a different site, but only after extensive and difficult searching. I am not sure I could relocate that post now. The present thread is the first hit for ordering a `data.frame` in `R`. So, I thought my expanded version of that original `do.call` code might be useful.

``````set.seed(1234)

v1  <- c(0,0,0,0, 0,0,0,0, 1,1,1,1, 1,1,1,1)
v2  <- c(0,0,0,0, 1,1,1,1, 0,0,0,0, 1,1,1,1)
v3  <- c(0,0,1,1, 0,0,1,1, 0,0,1,1, 0,0,1,1)
v4  <- c(0,1,0,1, 0,1,0,1, 0,1,0,1, 0,1,0,1)

df.1 <- data.frame(v1, v2, v3, v4)
df.1

rdf.1 <- df.1[sample(nrow(df.1), nrow(df.1), replace = FALSE),]
rdf.1

order.rdf.1 <- rdf.1[do.call(order, as.list(rdf.1)),]
order.rdf.1

order.rdf.2 <- rdf.1[do.call(order, rev(as.list(rdf.1))),]
order.rdf.2

rdf.3 <- data.frame(rdf.1\$v2, rdf.1\$v4, rdf.1\$v3, rdf.1\$v1)
rdf.3

order.rdf.3 <- rdf.1[do.call(order, as.list(rdf.3)),]
order.rdf.3
``````
• That syntax does work if you store your data in a data.table, instead of a data.frame: `require(data.table); my.dt <- data.table(my.data); my.dt[order(age)]` This works because the column names are made available inside the [] brackets. – Frank Sep 2 '13 at 19:34
• I don't think the downvote is necessary here, but neither do I think this adds much to the question at hand, particularly considering the existing set of answers, some of which already capture the requirement with `data.frame`s to either use `with` or `\$`. – A5C1D2H2I1M1N2O1R2T1 Feb 14 '14 at 11:16
• upvote for `do.call` this makes short work of sorting a multicolumn data frame. Simply `do.call(sort, mydf.obj)` and a beautiful cascade sort will be had. – AdamO May 25 '16 at 4:28

Dirk's answer is good but if you need the sort to persist you'll want to apply the sort back onto the name of that data frame. Using the example code:

``````dd <- dd[with(dd, order(-z, b)), ]
``````

The arrange() in dplyr is my favorite option. Use the pipe operator and go from least important to most important aspect

``````dd1 <- dd %>%
arrange(z) %>%
arrange(desc(x))
``````

Just for the sake of completeness, since not much has been said about sorting by column numbers... It can surely be argued that it is often not desirable (because the order of the columns could change, paving the way to errors), but in some specific situations (when for instance you need a quick job done and there is no such risk of columns changing orders), it might be the most sensible thing to do, especially when dealing with large numbers of columns.

In that case, `do.call()` comes to the rescue:

``````ind <- do.call(what = "order", args = iris[,c(5,1,2,3)])
iris[ind, ]

##        Sepal.Length Sepal.Width Petal.Length Petal.Width    Species
##    14           4.3         3.0          1.1         0.1     setosa
##    9            4.4         2.9          1.4         0.2     setosa
##    39           4.4         3.0          1.3         0.2     setosa
##    43           4.4         3.2          1.3         0.2     setosa
##    42           4.5         2.3          1.3         0.3     setosa
##    4            4.6         3.1          1.5         0.2     setosa
##    48           4.6         3.2          1.4         0.2     setosa
##    7            4.6         3.4          1.4         0.3     setosa
##    (...)
``````

Just like the mechanical card sorters of long ago, first sort by the least significant key, then the next most significant, etc. No library required, works with any number of keys and any combination of ascending and descending keys.

`````` dd <- dd[order(dd\$b, decreasing = FALSE),]
``````

Now we're ready to do the most significant key. The sort is stable, and any ties in the most significant key have already been resolved.

``````dd <- dd[order(dd\$z, decreasing = TRUE),]
``````

This may not be the fastest, but it is certainly simple and reliable

For the sake of completeness: you can also use the `sortByCol()` function from the `BBmisc` package:

``````library(BBmisc)
sortByCol(dd, c("z", "b"), asc = c(FALSE, TRUE))
b x y z
4 Low C 9 2
2 Med D 3 1
1  Hi A 8 1
3  Hi A 9 1
``````

Performance comparison:

``````library(microbenchmark)
microbenchmark(sortByCol(dd, c("z", "b"), asc = c(FALSE, TRUE)), times = 100000)
median 202.878

library(plyr)
microbenchmark(arrange(dd,desc(z),b),times=100000)
median 148.758

microbenchmark(dd[with(dd, order(-z, b)), ], times = 100000)
median 115.872
``````
• strange to add a performance comparison when your method is the slowest... anyway dubious the value of using a benchmark on a 4-row `data.frame` – MichaelChirico Mar 30 '16 at 14:58

I was struggling with the above solutions when I wanted to automate my ordering process for n columns, whose column names could be different each time. I found a super helpful function from the `psych` package to do this in a straightforward manner:

``````dfOrder(myDf, columnIndices)
``````

where `columnIndices` are indices of one or more columns, in the order in which you want to sort them. More information here:

Another alternative, using the `rgr` package:

``````> library(rgr)
> gx.sort.df(dd, ~ -z+b)
b x y z
4 Low C 9 2
2 Med D 3 1
1  Hi A 8 1
3  Hi A 9 1
``````