# monthly average of working days data

I have daily time series (of working days) which I would like to transform in monthly average.

The date format is `%d/%m/%Y`, moreover there are some missing observations (`NA`).

How can I do this?

``````# my data
timeseries <- structure(c(309L, 319L, 329L, 339L, 348L, 374L, 384L, 394L, 404L, 413L,
2317L, 2327L, 2337L, 2347L, 2356L, 2382L, 2392L, 2402L, 2412L, 2421L, 2447L, 2457L,
422L, 432L, 441L, 467L, 477L, 487L, 497L, 506L, 2467L, 2477L, 2487L, 2497L, 2506L,
2532L, 2542L, 2552L, 2562L, 2571L, 2597L, 2607L, 2617L, 2627L, 2636L,
[...]), .Label = c("01/01/1992", "01/01/1993", "01/01/1996", "01/01/1997", "01/01/1998", "01/01/1999", "01/01/2001 [...] ), class = "factor")
``````
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Welcome to SO. Would be great if you can dput your daily times series e.g dput(yourTS) –  agstudy Dec 2 '12 at 16:56
How about using the xts `apply.monthly` function: `apply.monthly(x,mean)` where `x` is an xts object –  chandler Dec 2 '12 at 17:05
structure(c(309L, 319L, 329L, 339L, 348L, 374L, 384L, 394L, 404L, 413L, 2317L, 2327L, 2337L, 2347L, 2356L, 2382L, 2392L, 2402L, 2412L, 2421L, 2447L, 2457L, 422L, 432L, 441L, 467L, 477L, 487L, 497L, 506L, 2467L, 2477L, 2487L, 2497L, 2506L, 2532L, 2542L, 2552L, 2562L, 2571L, 2597L, 2607L, 2617L, 2627L, 2636L, [...]), .Label = c("01/01/1992", "01/01/1993", "01/01/1996", "01/01/1997", "01/01/1998", "01/01/1999", "01/01/2001 [...] ), class = "factor") –  BrunoGG Dec 2 '12 at 17:06

``````d <- data.frame(Date=Sys.Date()+1:60, Data=1:60)