# How much data can R handle?

By "handle" I mean manipulate multi-columnar rows of data. How does R stack up against tools like Excel, SPSS, SAS, and others? Is R a viable tools for looking at "BIG DATA" (hundreds of millions to Billions of rows)? If not, which statistical programming tools are best suited for analysis large data sets?

Thanks!

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As long as you don't store it to RAM, you can churn through virtually endless data using any language (Python). –  Blender Apr 3 '11 at 6:01
Stick with Excel, it is web-scale. Oh, wait, am I two days late? –  Dirk Eddelbuettel Apr 3 '11 at 16:45

If you look at the High-Performance Computing Task View on CRAN, you will get a good idea of what R can do in a sense of high performance.

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I'll explain my short story with R and big data set.
I had a connector from R to RDBMS,

• where I stored 80mln compounds.

I've build a queries which gathered some subset of this data.
Then manipulate on this subset.
R was simply choking with more than 200k rows in memory on my PC.

• core duo
• 4 GB ram

So working on some appropriate subset for machine is good approach.

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Wow,.. guys which gave '-', could you please explain why? –  bua Apr 4 '11 at 12:50
try adding a reproducible example, perhaps using SQLite instead of a RBDMS. or create a random vector with 200k rows and see if it chokes. Or tell us how many columns does your dataset have. etc etc –  Eduardo Leoni Apr 4 '11 at 14:25

You can in principal store as much data as you have RAM with the exception that, currently, vectors and matrices are restricted to 2^31 - 1 elements because R uses 32-bit indexes on vectors. General vectors (lists, and their derivative data frames) are restricted to 2^31 - 1 components, and each of those components has the same restrictions as vectors/matrices/lists/data.frames etc.

Of course these are theoretical limits, if you want to do anything with data in R it will inevitably require space to hold a couple of copies at least, as R will usually copy data passed in to functions etc.

There are efforts to allow on disk storage (rather than in RAM); but even those will be restricted to the 2^31-1 restrictions mentioned above in use in R at any one time. See the Large memory and out-of-memory data section of the High Performance Computing Task View linked to in @Roman's post.

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