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I'm looking for a general solution for updating one large data frame with the contents of a second similar data frame. I have dozens of datasets, each with thousands of rows and upwards of 10,000 columns. An "update" dataset will overlap its corresponding "base" dataset by anywhere from a few percent to perhaps 50 percent, rowwise. The datasets have a "key" column and there will be only one row per each unique key value in any given dataset.

The basic rule is: if a non-NA value exists in the update dataset for a given cell, replace the same cell in the base dataset with that value. (The "same cell" means same value of the "key" column and colname.)

Note the update dataset will likely contain new rows ("inserts") which I can handle with an rbind.

So given the base data frame "df1", where column "K" is the unique key column, and "P1" .. "P3" represent the 10,000 columns, whose names will vary from one pair of datasets to the next:

  K P1 P2 P3
1 A  1  1  1
2 B  1  1  1
3 C  1  1  1

...and the update data frame "df2":

  K P1 P2 P3
1 B  2 NA  2
2 C NA  2  2
3 D  2  2  2

The result I need is as follows, where the 1's for "B" and "C" were overwritten by the 2's but not overwritten by the NA's:

  K P1 P2 P3
1 A  1  1  1
2 B  2  1  2
3 C  1  2  2
4 D  2  2  2

This doesn't seem to be a merge candidate as merge gives me either duplicate rows (with respect to the "key" column) or duplicate columns (e.g. P1.x, P1.y), which I have to iterate over to collapse somehow.

I have tried pre-allocating a matrix with the dimensions of the final rows/columns, and populating it with the contents of df1, then iterating over the overlapping rows of df2, but I cannot get better than 20 cells per second performance, requiring hours to complete (compared to minutes for the equivalent DATA step UPDATE functionality in SAS).

I'm sure I'm missing something, but can't find a comparable example.

I see ddply usage that looks close, but not a general solution. The data.table package didn't seem to help as it's not obvious to me that this is a join problem, at least not generally over so many columns.

Also a solution that focuses only on the intersecting rows is adequate as I can identify the others and rbind them in.

Here is some code to fabricate the data frames above:

cat("K,P1,P2,P3", "A,1,1,1", "B,1,1,1", "C,1,1,1", file="f1.dat", sep="\n");
cat("K,P1,P2,P3", "B,2,,2", "C,,2,2", "D,2,2,2", file="f2.dat", sep="\n");
df1 <- read.table("f1.dat", sep=",", header=TRUE, stringsAsFactors=FALSE);
df2 <- read.table("f2.dat", sep=",", header=TRUE, stringsAsFactors=FALSE);


share|improve this question
Possible duplicate:… –  Tyler Rinker Apr 4 '12 at 16:52
I take it back this is not a duplicate. I didn't read carefully enough. You want a merge with a replace NAs of one df with another df. A bit more complex. –  Tyler Rinker Apr 4 '12 at 17:37
In data.table one way would be to flatten both df1 and df2 to 3 columns: (K,P,val) each with a 2-column key (K,P). Then df1[df2,val:=df2.val] and unflatten afterwards. Or, keeping the same structure you have, in a loop through df2 do df1[k,p:=value,with=FALSE] which will be fast because loops on data.tables are much faster. If you like the loop approach then set() is even faster than :=. –  Matt Dowle Apr 10 '12 at 12:05
@MatthewDowle The normalized (flattened) route with df1[df2,val:=df2.val] gives Error in := (val, df2.val) : := is defined for use in j only; i.e., DT[i,col:=1L] not DT[i,col]:=1L or DT[i]$col:=1L.. –  gkaupas Apr 12 '12 at 18:25
df1 needs to be a data.table; e.g. I'll add something to that error message to suggest checking that type. –  Matt Dowle Apr 12 '12 at 20:47

4 Answers 4

up vote 1 down vote accepted

This loops by column, setting dt1 by reference and (hopefully) should be quick.

dt1 =
dt2 =
if (!identical(names(dt1),names(dt2)))
    stop("Assumed for now. Can relax later if needed.")
w = chmatch(dt2$K, dt1$K)
for (i in 2:ncol(dt2)) {
    nna = ![[i]])
dt1 = rbind(dt1,dt2[])
     K P1 P2 P3
[1,] A  1  1  1
[2,] B  2  1  2
[3,] C  1  2  2
[4,] D  2  2  2
share|improve this answer
Now we're cooking. I am getting "merge" rates of 3,200,000 cells per second for 1000-row datasets increasing to 7,200,000 cells per second for 10,000-row datasets, with the rates seemingly independent of the number of columns in the dataset. However the code seems to behave only if the values are numeric. My test case is all columns are character populated with A's and B's read in with data.table(read.table("f1.dat", sep=",", header=TRUE, stringsAsFactors=FALSE), key=c("K")) with the result being all of dt1 apparently replaced by all of dt2. What might cause the distinction? –  gkaupas Apr 19 '12 at 19:11
Phew, sounds promising. There's no reason why character shouldn't work the same as numeric, afaik. Will need an example please showing what you get vs what you expect. Wild guess that it's the difference between NA_character_ and "NA"? –  Matt Dowle Apr 19 '12 at 23:22
My fault, your guess is indeed the cause; in my read.table I forgot to specify na.strings="". Once that was added, your code works fine. Example here where dt2 contains 2 updates, first record overwrites same in dt1, second has both columns NA (one is numeric, one is character), and it correctly has no effect on matching record in dt1. I will re-run my benchmarks where dt2 has random NA's in it and read.table has correct options, but this solution is clearly the most effective one. Thank you for your diligence. –  gkaupas Apr 20 '12 at 16:54
Relief. Thanks for your patience, got there in the end. It's been useful for me too as it turns out. –  Matt Dowle Apr 20 '12 at 19:31
Epilogue: Despite the 3 million+ cell/second processing, on my hardware, unfortunately my overall throughput is gated by reading/writing the data. Whether I read/write CSV files, or load/save uncompressed .RData files, my effective processing rate drops to 250K cells/second on the server I used for the R benchmarking, or around 120K cells/second on the hardware running SAS. These are numbers for just read/write or load/save, no merging code in between. SAS reads/merges/writes at a net 600K cells/second. Foo. –  gkaupas Apr 23 '12 at 18:23

This is likely not the fastest solution but is done entirely in base.

(updated answer per Tommy's comments)

df1 <- read.table(text="  K P1 P2 P3
1 A  1  1  1
2 B  1  1  1
3 C  1  1  1", header=TRUE)

df2 <- read.table(text="  K P1 P2 P3
1 B  2 NA  2
2 C NA  2  2
3 D  2  2  2", header=TRUE)

all <- c(levels(df1$K), levels(df2$K))                  #all cells of key column
dups <- all[duplicated(all)]                            #the overlapping key cells
ndups <- all[!all %in% dups]                            #unique key cells
df3 <- rbind(df1[df1$K%in%ndups, ], df2[df2$K%in%ndups, ]) #bind the unique rows

decider <- function(x, y) ifelse(, y, x) #function replaces NAs if existing
df4 <- data.frame(mapply(df2[df2$K%in%dups, ], df1[df1$K%in%dups, ], 
    FUN = decider)) #repalce all NAs of df2 with df1 values if they exist

df5 <- rbind(df3, df4) #bind unique rows of df1 and df2 with NA replaced df4
df5 <- df5[order(df5$K), ]  #reorder based on key column
rownames(df5) <- 1:nrow(df5)  #give proper non duplicated rownames

This yields:

  K P1 P2 P3
1 A  1  1  1
2 B  2  1  2
3 C  1  2  2
4 D  2  2  2

Upon closer reading not all columns have the same name but I am assuming the same order. this may be a more helpful approach:

all <- c(levels(df1$K), levels(df2$K))
dups <- all[duplicated(all)]
ndups <- all[!all %in% dups]
LS <- list(df1, df2)
LS2 <- lapply(seq_along(LS), function(i) {
        colnames(LS[[i]]) <- colnames(LS[[2]])

LS3 <- lapply(seq_along(LS2), function(i) LS2[[i]][LS2[[i]]$K%in%ndups, ])
LS4 <- lapply(seq_along(LS2), function(i) LS2[[i]][LS2[[i]]$K%in%dups, ])

decider <- function(x, y) ifelse(, y, x)
DF <- data.frame(mapply(LS4[[2]], LS4[[1]], FUN = decider))
DF$K <- LS4[[1]]$K
LS3[[3]] <- DF
df5 <-"rbind", LS3)
df5 <- df5[order(df5$K), ]
rownames(df5) <- 1:nrow(df5)
share|improve this answer how does this hande the key column matching? And it it seems all numeric values turn into factors... –  Tommy Apr 4 '12 at 16:54
@Tommy I updated to reflect your factor comment. That was because I just cut and pasted from the last time I gave a similar anser. –  Tyler Rinker Apr 4 '12 at 17:13
@Tommy I get the key column matching now as well. Didn't catch that before. back to the drawing board. I thought the 2 dataframes were the same observations. –  Tyler Rinker Apr 4 '12 at 17:15
@TylerRinker It is OK to assume the columns will have the same names and be in the same order; I have some quick pre-processing that ensures that. –  gkaupas Apr 4 '12 at 18:11
If all files have the same names then my first approach is likely easier. Not sure how it will fair with speed. Once you test it let me know. –  Tyler Rinker Apr 4 '12 at 18:12

EDIT : Please ignore this answer. Bad idea to loop by row. It works but is very slow. Left for posterity! See my 2nd attempt as separate answer.

dt1 =
dt2 =
K = dt2[[1]]
for (i in 1:nrow(dt2)) {
    k = K[i]
    p = unlist(dt2[i,-1,with=FALSE])
    p = p[!]

or, can you use matrix instead of data.frame? If so it could be a single line using A[B] syntax where B is a 2-column matrix containing the row and column numbers to update.

share|improve this answer
This fails with Error in [.data.table(p, ! : i is invalid type (matrix). Perhaps in future a 2 column matrix could return a list of elements of DT (in the spirit of A[B] in FAQ 2.14). Re: the A[B] syntax, if I need to contruct B with update instructions, then I have to iterate through all the cells to determine that, which defeats the purpose, unless I'm misunderstanding. –  gkaupas Apr 12 '12 at 18:20
@gkaupas Apols, meant unlist rather than as.vector. Have edited answer. On A[B] you can very likely vectorize the creation of B. If matrix is ok for your case then (all columns integer or all columns numeric, and n*m < 2^31) then matrix and A[B] seems more appropriate and should be fast. –  Matt Dowle Apr 12 '12 at 21:10
This moves the error down to the last line in the loop; something of the form Supplied n items to be assigned to 1 items of column 'P1' (n-1 unused). My data will be a mix of strings and numbers so I guess that means no matrix route here. –  gkaupas Apr 13 '12 at 13:56
@gkaupas Apols again, will edit answer to change names(p):=p to names(p):=as.list(p). Ok, yes that means no matrix route. Must be an easier way in data.table (perhaps by wrapping it up in some generic function that does that task). –  Matt Dowle Apr 13 '12 at 15:22
Well the dt1[dt2,decider(NEWVAL,OLDVAL)] I posted in the 3-part comment at the top, based on your input and Tyler's, is tantalizingly simple, even if it requires me to normalize my data first, and only handles a subset of the rows (i.e. I can either get back all rows of dt1 or all rows of dt2 and have to rbind in the rest). Unfortunately it just doesn't scale to my data volume. –  gkaupas Apr 13 '12 at 18:15

The following gives the correct answer for the small example data, tries to minimize the number of "copies" of tables, and uses the new fread and (new?) rbindlist. Does it work with your larger actual data set? I didn't quite follow all the comments in the original post about the memory issues you had when trying to flatten/normalize/stack, so apologies if you've already tried this route.


cat("K,P1,P2,P3", "A,1,1,1", "B,1,1,1", "C,1,1,1", file="f1.dat", sep="\n")
cat("K,P1,P2,P3", "B,2,,2", "C,,2,2", "D,2,2,2", file="f2.dat", sep="\n")

dt1s<-data.table(melt(fread("f1.dat"), id.vars="K"), key=c("K","variable")) # read f1.dat, melt to long/stacked format, and convert to data.table

dt2s<-data.table(melt(fread("f2.dat"), id.vars="K", na.rm=T), key=c("K","variable")) # read f2.dat, melt to long/stacked format (removing NAs), and convert to data.table

dt1s[dt2s,] # Update new values

dtout<-reshape(rbindlist(list(dt1s,dt1s[dt2s][,list(K,variable,])), direction="wide", idvar="K", timevar="variable") # Use rbindlist to insert new records, and then reshape
setnames(dtout,colnames(dtout),sub("value.", "", colnames(dtout))) # Clean up the column names
share|improve this answer

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