Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I am still pretty new to R and trying to use it to sort a lot of data that looks like:

dataid,timestamp_hour,use,air 

187,1/17/2012 0:00,1034.053889,NA

77,1/17/2012 1:00,679.7908333,NA

9036,1/19/2012 7:00,550.4608333,NA

187,1/20/2012 3:00,530.8241667,NA
...

The data are hourly energy use (use) data for multiple homes (dataid) over a multi-day period (timestamp_hour).
I want to extract one average 24-hour usage profile (for each dataid) for each home over the entire span of days that I have.


I have written the following code to do so, but it takes a very long time. Any suggestions on how to speed it up?

home_profiles = function(file_name){

winter_data <- read.table(file = file_name, header = TRUE, as.is = TRUE, row.names = NULL, sep = ",")

dataid <- winter_data[,1]                       # makes for less typing
timestamp <- as.character(winter_data[,2])      # converts the timestamp into a character value
timestamp <- as.POSIXlt(timestamp, format="%m/%d/%Y %H:%M")     # converts the timestamp into a true timestamp value
use <- winter_data[,3]                              # makes for less typing
air <- winter_data[,4]                              # makes for less typing




dataid_table <- table(winter_data$dataid) #Get unique dataids

dataid_list <- names(dataid_table) #Make a list of the unique dataids

## Get unique times (not timestamps, i.e. just gets hours stripped of dates)
get_time <- data.frame(timestamp)
time <- data.frame(do.call('rbind', strsplit(as.character(get_time$timestamp), ' ', fixed = TRUE)))
time_df <- time[,2]

## Create a data frame to return the average profiles with the column names as the dataid
avg_home_curves <- data.frame(matrix(nrow = length(unique(time_df)), ncol = length(dataid_list)))
names(avg_home_curves) <- dataid_list

j = 1;

for(i in dataid_list){

    current_dataid <- i #Get one dataid at a time 

    home_data_frame <- data.frame(dataid, timestamp, use)
    one_home <- home_data_frame$dataid == current_dataid
    dataid2 <- home_data_frame$dataid[one_home]
    timestamp2 <- home_data_frame$timestamp[one_home]
    use2 <- home_data_frame$use[one_home]
     ## This step gets just the data associated with the current dataid in the loop
    one_home_data_frame <- data.frame(dataid2, timestamp2, use2)

    time <- data.frame(do.call('rbind', strsplit(as.character(one_home_data_frame$timestamp2), ' ', fixed = TRUE)))

    time2 <- time[,2]


    one_home_df_time_only <- data.frame(dataid2, time2, use2)



    unique_time <- unique(time2)
    number_rows <- length(unique_time)

    use_time_avg <- tapply(one_home_df_time_only$use2, one_home_df_time_only$time2, mean, simplify=F)

    use_time_avg <- data.frame(matrix(unlist(use_time_avg), nrow = number_rows))

    ## Populates the created array with the residentail use profile     
    avg_home_curves[,j] <- use_time_avg

    j = j + 1;


}
## Returns the array of profiles
return(avg_home_curves)

}

share|improve this question
3  
Your code is too long for me to work through and you don't give sufficient data to just try it, but from what I understood you want either mean values per ID or daily means per ID or means per hour of day and ID or ... And that are jobs for packages plyr (nice syntax) or data.table (fast for huge datasets). –  Roland Nov 9 '12 at 20:33
2  
Please see this on making a reproducible example. What is the size of your dataset (number of dataid's, or number of rows)? –  Blue Magister Nov 9 '12 at 21:26
    
Since the OP has already prototyped and measured, and has described the code as taking a long time, the optimization tag applies in full, contrary to @Roland 's edit. The performance tag will be maintained, as it also still applies, and there are no reasons to remove it. --- Thus, re-tagged. –  TheLima Nov 12 '12 at 11:47

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.