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I am using plot() for over 1 mln data points and it turns out to be very slow.

Is there any way to improve the speed including programming and hardware solutions (more RAM, graphic card...)?

Where are data for plot stored?

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Summarise the data and plot the summary instead. – Andrie Jun 8 '12 at 8:56
i need to plot and observe the data intuitively – SilverSpoon Jun 8 '12 at 9:09
Can you give more information about which plotting functions you are using? It makes a big difference whether you are using base graphics, lattice or ggplot. – Andrie Jun 8 '12 at 9:27
This question needs a lot more context to be answered usefully; what are you hoping to see when you plot 1 million+ data points?… is related. – Ben Bolker Jun 8 '12 at 9:30
What abt chart_Series and plot using base graphics? – SilverSpoon Jun 8 '12 at 9:33

3 Answers 3

an easy and fast way is to set pch='.' . The performance is shown below

> system.time(plot(x))
  user  system elapsed 
  2.87   15.32   18.74 
> system.time(plot(x,pch=20))
  user  system elapsed 
  3.59   22.20   26.16 
> system.time(plot(x,pch='.'))
  user  system elapsed 
  1.78    2.26    4.06 
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have you looked at the tabplot package. it is designed specifically for large data I use that its faster than using hexbin (or even the default sunflower plots for overplotting)

also i think Hadley wrote something on DS 's blog modifying ggplot for big data at

"""I'm currently with working another student, Yue Hu, to turn our research into a robust R package.""" October 21, 2011

Maybe we can ask Hadley if the updated ggplot3 is ready

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A hexbin plot actually shows you something (unlike the scatterplot @Roland proposes in the comments, which is likely to just be a giant, slow, blob) and takes about 3.5 seconds on my machine for your example:


enter image description here

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This is an important point: nobody can absorb the meaning of millions, or even thousands of points (except maybe some of those "artistic" fractal charts :-) ), so find a way to cluster or otherwise reduce the magnitude of items to plot. – Carl Witthoft Jun 8 '12 at 11:45
I did not know this package and your answer is helpful to a specific problem of presenting results in a paper I am preparing. +1 for that. However, the question remains: What is limiting while plotting? Is it just CPU power or something else? – Roland Jun 8 '12 at 12:06
The device drivers do not handle such a large plotting task very well. There is a lot of overhead to plotting a single point. It's not just two numbers but requires consideration of the coloring and transparency capabilities. It's not just R. PDF viewers will bog down considerably when given an image with millions of dots to render. – 42- Jun 8 '12 at 14:16
You can actually save a lot of time by using pch="."; you may be able to speed things up by (e.g.) plotting straight to PNG rather than screen or PDF (that will also make the size of your final plot much smaller) – Ben Bolker Jun 8 '12 at 15:08

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