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A question that is undoubtedly easy to solve for an R expert.

I need to repeat a number of functions on dataframes that are sequentially labeled (before merging them all together). For example, I might need to do the following:

# READ IN DATAFILES & LABEL DF'S 
df1 <- read.csv(file="file_A.csv",head=TRUE) 
df2 <- read.csv(file="file_B.csv",head=TRUE) 
df3 <- read.csv(file="file_C.csv",head=TRUE)

# TURN DF'S INTO DATA TABLES
df1<-data.table(df1)
df2<-data.table(df2)
df3<-data.table(df3)

# CHANGE VARIABLE TO POSIX
df1$date <-as.POSIXct(df1$date, format = "%Y-%m-%d %H:%M:%S")
df2$date <-as.POSIXct(df2$date, format = "%Y-%m-%d %H:%M:%S")
df3$date <-as.POSIXct(df3$date, format = "%Y-%m-%d %H:%M:%S")

# FILTER BY DATE RANGE
date_filter<-as.POSIXct("2012-01-01 01:01:01")
df1<-subset(df1, df1$date>date_filter)
df2<-subset(df2, df2$date>date_filter)
df3<-subset(df3, df3$date>date_filter)

# AGGREGATE OVER A UNIQUE ID 
df1<-df1[,(sum(var)), by=list(id)] 
df2<-df2[,(sum(var)), by=list(id)] 
df2<-df2[,(sum(var)), by=list(id)] 

# FINALLY, MERGE TOGETHER
df <-merge(df1,df2, by="id",all=TRUE)

You get the idea--only I need to do this for 25 dataframes, not 3. I have a suspicion that I can make R repeat functions by creating a vector (df_nums<-c(1:25))) and then using a function to loop over all of my data frames, but I don't know how to do it.

Please help! Thanks!

Edit: Thanks to Arun, I'm up to this for my actual code:

out<- lapply(1:length(files), function(idx) {
  df <- as.data.table(read.csv(files[idx], header = TRUE))
  df$date <- as.POSIXct(df$date, format = "%Y-%m-%d %H:%M:%S")
  date_filter <- as.POSIXct("2012-11-13 01:01:01")
  df <- subset(df, df$date > date_filter)
  df <- df[, .N, by = list(id)] 
})
out<-data.table(out)
out.merge <- Reduce(function(...) merge(..., by="id", all=T), out)

Edit 2: After running the following syntax, I appear to have data.tables nested in out. For example,

> head(out)
            out
1: <data.table>
2: <data.table>
3: <data.table>
4: <data.table>
5: <data.table>
6: <data.table>

How do I access these data.tables to see if everything worked correctly?

share|improve this question
    
Could you try df$date <- as.POSIXct(as.Date(df$date), format = "%Y-%m-%d %H:%M:%S") –  Arun Jan 21 '13 at 17:05
    
hmmm, can you print head(df) or df$date immediately after the first line to see what it shows (and probably paste that here as well? –  Arun Jan 21 '13 at 17:22
    
Resolved! Human error was responsible -- an extra CSV file snuck into my folder, and it didn't have the variable "date" which was mucking everything up. I should have double-checked by printing "files." Thank you so much for your help, and sorry if this wasted any time for you! –  roody Jan 21 '13 at 17:41
    
One final question! If I don't have time to worry about the "reduce" command, how do I manually access the data.tables created so I can merge them??? –  roody Jan 21 '13 at 18:01
    
you have to save it to a variable. Look at my answer. Its stored in out. –  Arun Jan 21 '13 at 18:38
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1 Answer

up vote 6 down vote accepted

You can use list.files to obtain all the CSV files from the directory and use lapply to recurse, in this manner:

# Thanks Matthew for correcting the pattern string
files <- list.files("path_to_files", full.names = TRUE, pattern="\\.csv$") 
out <- lapply(1:length(files), function(idx) {
    df <- as.data.table(read.csv(files[idx], header = TRUE))
    df$date <- as.POSIXct(df$date, format = "%Y-%m-%d %H:%M:%S")
    date_filter <- as.POSIXct("2012-01-01 01:01:01")
    df <- subset(df, df$date > date_filter)
    df <-df[, (sum(var)), by = list(id)]
})

You can use do.call(rbind, out) or do.call(cbind, out) to bind all results by row or columns.

Edit: After @roody's question about outer join. Something like this?

out.merge <- Reduce(function(...) merge(..., by="id", all=T), out)
share|improve this answer
    
Hi there--Thanks so much. I may be wrong, but I don't think that I can use rbind because I need to do an outer join, so that I have a row for every unique ID (even if that unique ID is not in every data.frame.) Thoughts? –  roody Jan 21 '13 at 15:57
1  
@Arun, +1, but you need pattern='\\.csv$'. what you have now would match any number of names containing 'csv'. Also, remember that '*' in R regex is '0 or more of the previous character', not the a wildcard. –  Matthew Plourde Jan 21 '13 at 16:01
1  
@roody Have a look at merge_recurse in the package reshape (not reshape2). There is probably a slick data.table solution as well if you poke around a bit. –  joran Jan 21 '13 at 16:08
    
@Arun - I'm getting an error message that says "do not know how to convert 'df$date' to class "POSIXct". I've double checked to make sure that the command works when I run the commands for each df sequentially, and it does...What do you think? –  roody Jan 21 '13 at 16:12
    
Probably you copied and pasted. There was a typo on that line that I corrected now. The right hand side was df1$date instead of df$date. Try copy/paste now. –  Arun Jan 21 '13 at 16:14
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