# Multiply all columns in an xts object by another single-column xts object

``````library(xts)
set.seed(1)
x = xts( cbind(a=1:10,b=20:11) , Sys.Date()+1:10 )
y = xts( runif(10) , Sys.Date()+1:10 )
z = x*y
``````

Gives me Error in `*.default`(x, y) : non-conformable arrays

What I want is to multiply each column in x by the value in y.

Expected result:

``````                   a         b
2012-08-04 0.2655087  5.310173
2012-08-05 0.7442478  7.070354
2012-08-06 1.7185601 10.311361
2012-08-07 3.6328312 15.439532
2012-08-08 1.0084097  3.226911
2012-08-09 5.3903381 13.475845
2012-08-10 6.6127269 13.225454
2012-08-11 5.2863823  8.590371
2012-08-12 5.6620264  7.549369
2012-08-13 0.6178627  0.679649
``````

Ideally the solution should work when `index(x)!=index(y)`

ASIDE: I came up with this hack:

`````` z = xts( apply(x,2,function(col) col*y ) , index(x) )
``````

It works on the test data, but on my real data it complains with Error in array(ans, c(len.a%/%d2, d.ans), if (!all(vapply(dn.ans, is.null, : length of 'dimnames' [1] not equal to array extent (I've not managed to reproduce this in a small piece of test data yet.)

The answers by Joshua and DWin do not have this problem, so are superior not just in succinctness but also in quality of results!

-

It should work if you just drop the dimensions of the single-column xts object. Then R's recycling rules can take over. This is slightly better than DWin's solution because it will work correctly if `index(x) != index(y)`.

``````R> (z <- x*drop(y))
a         b
2012-08-03 0.2655087  5.310173
2012-08-04 0.7442478  7.070354
2012-08-05 1.7185601 10.311361
2012-08-06 3.6328312 15.439532
2012-08-07 1.0084097  3.226911
2012-08-08 5.3903381 13.475845
2012-08-09 6.6127269 13.225454
2012-08-10 5.2863823  8.590371
2012-08-11 5.6620264  7.549369
2012-08-12 0.6178627  0.679649
R> (z1 <- x*drop(y[1:5]))
a         b
2012-08-03 0.2655087  5.310173
2012-08-04 0.7442478  7.070354
2012-08-05 1.7185601 10.311361
2012-08-06 3.6328312 15.439532
2012-08-07 1.0084097  3.226911
``````
-
Thanks! I've confirmed it works on the real data too. –  Darren Cook Aug 3 '12 at 8:28

Turn the y object into an ordinary vector:

``````> z <-  x * c(coredata(y))
> z
a             b
2012-08-03 0.2655086631  5.3101732628
2012-08-04 0.7442477993  7.0703540931
2012-08-05 1.7185600901 10.3113605403
2012-08-06 3.6328311600 15.4395324299
2012-08-07 1.0084096552  3.2269108966
2012-08-08 5.3903381098 13.4758452745
2012-08-09 6.6127268802 13.2254537605
2012-08-10 5.2863823399  8.5903713023
2012-08-11 5.6620263951  7.5493685268
2012-08-12 0.6178627047  0.6796489751
``````
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Thanks! I've confirmed it works on the real data too. –  Darren Cook Aug 3 '12 at 8:28

Not quite as slick as JoshuaUlrich's answer, but for the sake of showing something different, you can use `sweep`

``````sweep(x, 1, y, "*")
#                   a         b
#2012-08-04 0.2655087  5.310173
#2012-08-05 0.7442478  7.070354
#2012-08-06 1.7185601 10.311361
#2012-08-07 3.6328312 15.439532
#2012-08-08 1.0084097  3.226911
#2012-08-09 5.3903381 13.475845
#2012-08-10 6.6127269 13.225454
#2012-08-11 5.2863823  8.590371
#2012-08-12 5.6620264  7.549369
#2012-08-13 0.6178627  0.679649
``````
-
Thanks and confirmed this also works on the real data (i.e. even though apply doesn't, for a reason I don't understand yet). Joshua's answer does a logical AND when `index(y)` is a subset of `index(x)`, whereas this answer gives an error, and DWin's vector approach uses the recycling rule. (I.e. each might be the technique of choice for different applications.) –  Darren Cook Aug 5 '12 at 2:25