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This question already has an answer here:

I have a large dataframe (millions of rows x a dozen columns), that I'd like to get some summary data on. Overall, I have up to 800,000 possible "Name"s as seen in this example, and 6 possible values across up to 440 Samples.

Here's a toy example of what I have and what I want:

Starting table:

Name   Chr   Pos   Sample  Value
RS1    1     1000   S1      1
RS1    1     1000   S2      1    
RS1    1     1000   S3      2
RS1    1     1000   S4      3
RS1    1     1000   S5      1
RS1    1     1000   S6      2

I want the proportion of each Value for each item in the Name column. In this example, there are 6 Samples, with 3 possible Values. Thus, my output would be:

Name   Chr    Pos   Value   Proportion
RS1    1      1000   1      0.5
RS1    1      1000   2      0.33
RS1    1      1000   3      0.17

I'm open to doing this in R (dplyr?) or Python (using base or pandas??) or even bash scripting if that makes sense. I'm looking for something that will be time and memory efficient. I have some proficiency in R, but am a beginning learning Python and all it can do.

marked as duplicate by Community Jan 26 '16 at 22:04

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  • 2
    Are you after this: stackoverflow.com/questions/32122300/… if so I will close as dupe – EdChum Jan 26 '16 at 21:09
  • For something that big, R's data.table, or maybe SQL. You can do it easily with dplyr, but for that size, it will probably be slow. – alistaire Jan 26 '16 at 21:18
  • I think that pandas answer will work. I'm trying it out. Obviously, I searched the wrong terms. I worry that R will choke on this much data, or be horribly slow, but will take a look if I can't get pandas to work. I have no way to get this into a database so I can use SQL, but that would be ideal. – Gaius Augustus Jan 26 '16 at 21:30
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Not the more elegant answer but it worked for me:

toy <- tbl_df(toy)
toy$Chr <- as.factor(toy$Chr)
toy$Pos <- as.factor(toy$Pos)
toy$Value <- as.factor(toy$Value)

df <- as.data.frame(toy %>% 
  group_by(Name, Chr, Pos, Value) %>% 
  tally %>% 
  group_by(Name, Value))

df %>% 
  mutate(pct = n/sum(n))
  • This worked for me in R on one of my smaller data sets, although was slow. I hope it'll still work on my large dataset. Thanks. – Gaius Augustus Jan 26 '16 at 22:30
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Use plyr. Below, d is the starting table and output is the result.

library(plyr)
output = ddply(d, "Name", function(x){
  tab = table(x$Value)/length(x$Value)
  prop = as.numeric(tab)
  val = names(tab)
  data.frame(Name = x$Name[1], Chr = x$Chr[1], Pos = x$Pos[1], Value = val, Proportion = prop)
})

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