# Choosing between qplot() and ggplot() in ggplot2

I'm starting to use the great `ggplot2` package for plotting in R, and one of the first things I ask myself before each plot is "well, will I use `qplot` or `ggplot` ?"

I understand that `qplot` provides a simpler syntax while `ggplot` allows maximum features and flexibility, but what is the function you use the most, and do you have some precise use cases for each one ? Do you use mostly `qplot` and `ggplot` only for complex plots, or do you use `ggplot` everytime ?

Thanks for your feedback !

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I never took the time to learn how to do everything with ggplot, and qplot seems pretty straightforward for some tasks. –  Roman Luštrik Mar 16 '11 at 9:56

As for me, if both qplot and ggplot are available, the criterion depends on whether data is stored in data.frame or separate variables.

``````x<-1:10
y<-rnorm(10)

qplot(x,y, geom="line") # I will use this
ggplot(data.frame(x,y), aes(x,y)) + geom_line() # verbose

d <- data.frame(x, y)

qplot(x, y, data=d, geom="line")
ggplot(d, aes(x,y)) + geom_line() # I will use this
``````

Of course, more complex plot requires ggplot(), and I usually store data in data.frame, so in my experience, I use rarely qplot.

And it sounds good to always use ggplot(), because using qplot only save your type but lose many functionalities.

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Accepted, even if every answer is useful, thanks to all ! –  juba Mar 16 '11 at 16:41

I am new to R but just thought of sharing this.

`````` a <- c(1,2,3)

b <- c(2,3,4)

x <- qplot(a,b)

y <- ggplot(data.frame(a,b), aes(a,b)) +geom_line()
``````

If i change the value of the variables a and b and then plot x, it will take into account the changed values where as y would not. So while scripting it would be good to use ggplot as if you use qplot all the graphs will be equal to the latest provided references to qplot.

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+1... Interesting. –  Charlie Oct 18 '12 at 15:36

I think it depends on how often and for what purpose you intend to use ggplot2.

I mainly use ggplot2 for graphics in publications. This means that I tend to need the more advanced features and so I have never bothered to learn about `qplot`. Also, since I have around four publications a year, I'm not using ggplot2 enough to be really comfortable with the syntax and so concentrating on a single aspect seems optimal.

However, if you get new data sets each week, then you are probably interested in quickly exploring the data sets and producing good quality plot. In this case, learn both. You will get enough practice with the syntax and will (eventually) save time with `qplot`.

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Juba, I have found that one can use qplot for most basic plotting needs. It's sufficiently simple, and the defaults quite reasonable, that I have my undergraduate students use it exclusively and they can produce excellent plots with limited experience. And the plot created by qplot [p <- qplot(etc)] can be modified by any of the full commands ggplot2 provides, which is handy (they are all stored the same way, no matter how they were created). So personally I use qplot for most everything, and save ggplot for inside of functions.

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One more variant from me: I use `qplot` when I'm typing directly into the console, and `ggplot` when I'm writing scripts. But after finding over and over again that I want to recreate a plot I typed into the console 15 minutes earlier, I write almost all of them into a script now - so I use ggplot almost all of the time.

(Interesting to see the diversity of answers!)

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• qplot is the simplest choice if you are dealing with input vectors
• ggplot requires a data.frame as input data structure.

When you want to produce a histogram, qplot needs only the vector of occurrences

``````#rnorm
x <- rnorm(10)

#ggplot2 package: qplot
qplot(x, geom="histogram")

#ggplot2: using straight ggplot (requires conversion to data.frame)
ggplot(data.frame(x), aes(x)) + geom_histogram()
``````
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