Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

As the title goes. Why is the lubridate function so much slower?


Dates <- sample(c(dates = format(seq(ISOdate(2010,1,1), by='day', length=365), format='%d-%m-%Y')), 50000, replace = TRUE)

microbenchmark(as.POSIXct(Dates, format = "%d-%b-%Y %H:%M:%S", tz = "GMT"), times = 100)
microbenchmark(dmy(Dates, tz ="GMT"), times = 100)

Unit: milliseconds
expr                                                            min         lq          median      uq          max
1 as.POSIXct(Dates, format = "%d-%b-%Y %H:%M:%S", tz = "GMT")   103.1902    104.3247    108.675     109.2632    149.871
2 dmy(Dates, tz = "GMT")                                        184.4871    194.1504    197.8422    214.3771    268.4911
share|improve this question
I'll let someone who has more experience chime in, but my guess is that lubridate functions are designed to handle a lot of things "behind the scenes" which means it do more checking/vetting of input to try and give you reasonable results. Reading the background docs echoes these sentiments. Whether or not that contribues to the slowness, I'm not sure...but that would be my guess. Similarly, the plyr family is written for convenience as well and may perform relatively poorly compared to base functions in certain circumstances...but it's easy to use! –  Chase May 18 '12 at 2:53
@RJ- It would be much better if you had actual code in your question that shows the difference. system.time can be used to measure. –  Tommy May 18 '12 at 6:30
Noted. will post it up shortly. –  b70568b5 May 18 '12 at 6:43

2 Answers 2

up vote 27 down vote accepted

For the same reason cars are slow in comparison to riding on top of rockets. The added ease of use and safety make cars much slower than a rocket but you're less likely to get blown up and it's easier to start, steer, and brake a car. However, in the right situation (e.g., I need to get to the moon) the rocket is the right tool for the job. Now if someone invented a car with a rocket strapped to the roof we'd have something.

Start with looking at what dmy is doing and you'll see the difference for the speed (by the way from your bechmarks I wouldn't say that lubridate is that much slower as these are in milliseconds):

dmy #type this into the command line and you get:

function (..., quiet = FALSE, tz = "UTC") 
    dates <- unlist(list(...))
    parse_date(num_to_date(dates), make_format("dmy"), quiet = quiet, 
        tz = tz)
<environment: namespace:lubridate>

Right away I see parse_date and num_to_date and make_format. Makes one wonder what all these guys are. Let's see:


> parse_date
function (x, formats, quiet = FALSE, seps = find_separator(x), 
    tz = "UTC") 
    fmt <- guess_format(head(x, 100), formats, seps, quiet)
    parsed <- as.POSIXct(strptime(x, fmt, tz = tz))
    if (length(x) > 2 & !quiet) 
        message("Using date format ", fmt, ".")
    failed <- sum(is.na(parsed)) - sum(is.na(x))
    if (failed > 0) {
        message(failed, " failed to parse.")
<environment: namespace:lubridate>


> getAnywhere(num_to_date)
A single object matching ‘num_to_date’ was found
It was found in the following places
with value

function (x) 
    if (is.numeric(x)) {
        x <- as.character(x)
        x <- paste(ifelse(nchar(x)%%2 == 1, "0", ""), x, sep = "")
<environment: namespace:lubridate>


> getAnywhere(make_format)
A single object matching ‘make_format’ was found
It was found in the following places
with value

function (order) 
    order <- strsplit(order, "")[[1]]
    formats <- list(d = "%d", m = c("%m", "%b"), y = c("%y", 
    grid <- expand.grid(formats, KEEP.OUT.ATTRS = FALSE, stringsAsFactors = FALSE)
    lapply(1:nrow(grid), function(i) unname(unlist(grid[i, ])))
<environment: namespace:lubridate>

Wow we got strsplit-ting, expand-ing.grid-s, paste-ing, ifelse-ing, unname-ing etc. plus a Whole Lotta Error Checking Going On (play on the Zep song). So what we have here is some nice syntactic sugar. Mmmmm tasty but it comes with a price, speed.

Compare that to as.POSIXct:

getAnywhere(as.POSIXct)  #tells us to use methods to see the business
methods('as.POSIXct')    #tells us all the business
as.POSIXct.date          #what I believe your code is using (I don't use dates though)

There's a lot more Internal coding and less error checking going on with as.POSICct So you have to ask do I want ease and safety or speed and power? Depends on the job.

share|improve this answer
+1 Great answer. Also, did you notice that parse_date() itself calls as.POSIXct()? So in the end, the dmy() car has an as.POSIXct() engine under the hood. –  Josh O'Brien May 18 '12 at 14:00
I think it is actually using as.POSIXct.default to handle a character argument (Dates is a character vector). –  Brian Diggs May 18 '12 at 18:36
Who ever downvoted this response it seems odd since 24 others found it helpful. Could you give some insight into your choice? –  Tyler Rinker Nov 6 '13 at 2:20

@Tyler's answer is correct. Here's some more info including a tip on making lubridate faster - from the help file:

" Lubridate has an inbuilt very fast POSIX parser, ported from the fasttime package by Simon Urbanek. This functionality is as yet optional and could be activated with options(lubridate.fasttime = TRUE). Lubridate will automatically detect POSIX strings and use fast parser instead of the default strptime utility. "

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.