60

I have a for loop which produces a data frame after each iteration. I want to append all data frames together but finding it difficult. Following is what I am trying, please suggest how to fix it:

d = NULL
for (i in 1:7) {

  # vector output
  model <- #some processing

  # add vector to a dataframe
  df <- data.frame(model)

}

df_total <- rbind(d,df)
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143

Don't do it inside the loop. Make a list, then combine them outside the loop.

datalist = list()

for (i in 1:5) {
    # ... make some data
    dat <- data.frame(x = rnorm(10), y = runif(10))
    dat$i <- i  # maybe you want to keep track of which iteration produced it?
    datalist[[i]] <- dat # add it to your list
}

big_data = do.call(rbind, datalist)
# or big_data <- dplyr::bind_rows(datalist)
# or big_data <- data.table::rbindlist(datalist)

This is a much more R-like way to do things. It can also be substantially faster, especially if you use dplyr::bind_rows or data.table::rbindlist for the final combining of data frames.

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  • It also works but i want to write all lists to separate columns – Ibe Apr 2 '15 at 18:05
  • @Ibe you really should edit your question then. Provide sample data and desired output (see my comment in maRtin's answer) and take rbind out of your question, because all rbind does is bind rows together. – Gregor Thomas Apr 2 '15 at 18:12
  • 2
    just replaced rbind in your code with cbind. It worked and now I have all lists in separate columns – Ibe Apr 2 '15 at 18:16
  • 2
    Similarly, if this step seems slow to you, try dplyr::bind_cols(), – Gregor Thomas Apr 2 '15 at 19:16
  • 1
    do.call(rbind, datalist) is the way to write in a nice way rbind(datalist[[1]], datalist[[2]], datalist[[3]], ...) – Gregor Thomas Nov 15 '18 at 19:08
14

You should try this:

df_total = data.frame()
for (i in 1:7){
    # vector output
    model <- #some processing

    # add vector to a dataframe
    df <- data.frame(model)
    df_total <- rbind(df_total,df)
}
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  • It appends frame after frame in single column. How do i append all data frames into separate columns? – Ibe Apr 2 '15 at 0:15
  • use cbind() instead of rbind() – maRtin Apr 2 '15 at 0:16
  • 1
    use of cbind() resulted in Error in data.frame(..., check.names = FALSE) : arguments imply differing number of rows: 0, 18262 – Ibe Apr 2 '15 at 0:17
  • 1
    did you reset the df_total = data.frame() before you reexecuted the loop? – maRtin Apr 2 '15 at 0:18
  • no reset and each iteration from for loop will give same number of rows – Ibe Apr 2 '15 at 0:19
3

Try to use rbindlist approach over rbind as it's very, very fast.

Example:

library(data.table)

##### example 1: slow processing ######

table.1 <- data.frame(x = NA, y = NA)
time.taken <- 0
for( i in 1:100) {
  start.time = Sys.time()
  x <- rnorm(100)
  y <- x/2 +x/3
  z <- cbind.data.frame(x = x, y = y)

  table.1 <- rbind(table.1, z)
  end.time <- Sys.time()
  time.taken  <- (end.time - start.time) + time.taken

}
print(time.taken)
> Time difference of 0.1637917 secs

####example 2: faster processing #####

table.2 <- list()
t0 <- 0
for( i in 1:100) {
  s0 = Sys.time()
  x <- rnorm(100)
  y <- x/2 + x/3

  z <- cbind.data.frame(x = x, y = y)

  table.2[[i]] <- z

  e0 <- Sys.time()
  t0  <- (e0 - s0) + t0

}
s1 = Sys.time()
table.3 <- rbindlist(table.2)
e1 = Sys.time()

t1  <- (e1-s1) + t0
t1
> Time difference of 0.03064394 secs
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2

Again maRtin is correct but for this to work you have start with a dataframe that already has at least one column

model <- #some processing
df <- data.frame(col1=model)

for (i in 2:17)
{
     model <- # some processing
     nextcol <-  data.frame(model)
     colnames(nextcol) <- c(paste("col", i, sep="")) # rename the comlum
     df <- cbind(df, nextcol)
}
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  • it works but appends data in a single column. I want all data frames to be in separate columns – Ibe Apr 2 '15 at 4:00
2

In the Coursera course, an Introduction to R Programming, this skill was tested. They gave all the students 332 separate csv files and asked them to programmatically combined several of the files to calculate the mean value of the pollutant.

This was my solution:

  # create your empty dataframe so you can append to it.
  combined_df <- data.frame(Date=as.Date(character()),
                    Sulfate=double(),
                    Nitrate=double(),
                    ID=integer())
  # for loop for the range of documents to combine
  for(i in min(id): max(id)) {
    # using sprintf to add on leading zeros as the file names had leading zeros
    read <- read.csv(paste(getwd(),"/",directory, "/",sprintf("%03d", i),".csv", sep=""))
    # in your loop, add the files that you read to the combined_df
    combined_df <- rbind(combined_df, read)
  }
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  • It will be much more efficient to read them all in to a list and then combine them all at once afterwards. – Gregor Thomas Mar 16 '19 at 22:26
1

For me, it worked very simply. At first, I made an empty data.frame, then in each iteration I added one column to it. Here is my code:

df <- data.frame(modelForOneIteration)
for(i in 1:10){
  model <- # some processing
  df[,i] = model
}
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0

Here are some tidyverse and custom function options that might work depending on your needs:

library(tidyverse)

# custom function to generate, filter, and mutate the data:
combine_dfs <- function(i){
 data_frame(x = rnorm(5), y = runif(5)) %>% 
    filter(x < y) %>% 
    mutate(x_plus_y = x + y) %>% 
    mutate(i = i)
}

df <- 1:5 %>% map_df(~combine_dfs(.))
df <- map_df(1:5, ~combine_dfs(.)) # both give the same results
> df %>% head()
# A tibble: 6 x 4
       x      y x_plus_y     i
   <dbl>  <dbl>    <dbl> <int>
1 -0.973 0.673    -0.300     1
2 -0.553 0.0463   -0.507     1
3  0.250 0.716     0.967     2
4 -0.745 0.0640   -0.681     2
5 -0.736 0.228    -0.508     2
6 -0.365 0.496     0.131     3

You could do something similar if you had a directory of files that needed to be combined:

dir_path <- '/path/to/data/test_directory/'
list.files(dir_path)

combine_files <- function(path, file){
  read_csv(paste0(path, file)) %>% 
    filter(a < b) %>% 
    mutate(a_plus_b = a + b) %>% 
    mutate(file_name = file) 
}

df <- list.files(dir_path, '\\.csv$') %>% 
  map_df(~combine_files(dir_path, .))

# or if you have Excel files, using the readxl package:
combine_xl_files <- function(path, file){
  readxl::read_xlsx(paste0(path, file)) %>% 
    filter(a < b) %>% 
    mutate(a_plus_b = a + b) %>% 
    mutate(file_name = file) 
}

df <- list.files(dir_path, '\\.xlsx$') %>% 
  map_df(~combine_xl_files(dir_path, .))
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  • It seems strange to name a function combine_files when it operates on a single file and doesn't combine it with anything... – Gregor Thomas Apr 15 at 13:32
-1
x <- c(1:10) 

# empty data frame with variables ----

df <- data.frame(x1=character(),
                     y1=character())

for (i in x) {
  a1 <- c(x1 == paste0("The number is ",x[i]),y1 == paste0("This is another number ", x[i]))
  df <- rbind(df,a1)
}

names(df) <- c("st_column","nd_column")
View(df)

that might be a good way to do so....

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  • 1
    I didn't vote on this post (only edited it for format), but see some issues with it, both from a code standpoint and from an answer standpoint. For the code, <- does not name parameters in a function call (e.g. c()) but is the assignment operator (named parameters use =). From an answer standpoint, calling rbind in the loop is essentially the same as Simon's answer. – Matthew Lundberg Jun 10 at 5:05

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