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I have searched a lot and none of the similar sounding posts are the same as mine. I am struggling for last few days to get this apparently simple job done.

I have created a simple example to demonstrate the problem:

Let us assume there are 4 csv files, r.trials1-jan1, ..., rtrials1-jan4

This is the directory.

dir(pattern = "r.trial*")
[1] "r.trials-jan1.csv" "r.trials-jan2.csv" "r.trials-jan3.csv" "r.trials-jan4.csv"

Now I store all 4 files in a vector filenames, as follows.

filenames <- list.files(pattern = "r.trial*")

So far so good. Now comes the challenge.

wind_data <- lapply(filenames, read.csv)
combined_data <- rbind(wind_data)

The combined_data object does not appear in a single large data frame. Instead, is broken into as many lists as the number of csv files...This is not what I want.

I can get the files into one large data frame successfully if I do the read.csv one by one.

Like this one

x1 <- read.csv(filenames[1])
x2 <- read.csv(filenames[2])

and then doing an rbind

x12 <- rbind(x1, r2)

See the difference in the data structure between x1, x12 and combined_data here:

str(x1)
'data.frame':   24 obs. of  5 variables:
 $ date    : Factor w/ 24 levels "1-Jan-2017 0:00:00",..: 1 12 17 18 19 20 21 22 23 24 ...
 $ pressure: num  2.541 4.729 7.569 0.784 1.526 ...
 $ temp    : num  30.8 12.3 53 45.7 18.2 ...
 $ speed   : num  296.9 104.68 8.18 260.2 40.23 ...
 $ dia     : num  920 664 806 427 824 ...`

The above is one single csv file imported into a df.

str(x12)
'data.frame':   48 obs. of  5 variables:
 $ date    : Factor w/ 48 levels "1-Jan-2017 0:00:00",..: 1 12 17 18 19 20 21 22 23 24 ...
 $ pressure: num  2.541 4.729 7.569 0.784 1.526 ...
 $ temp    : num  30.8 12.3 53 45.7 18.2 ...
 $ speed   : num  296.9 104.68 8.18 260.2 40.23 ...
 $ dia     : num  920 664 806 427 824 ...`

The above is two csvs combined one by one.

But with a large number of files, the above approach becomes very tedious. Hence the lapply() function was used to get all csv into one file.

And here is the structure output of combined_data.

str(combined_data)
    List of 4
     $ :'data.frame':   24 obs. of  5 variables:
      ..$ date    : Factor w/ 24 levels "1-Jan-2017 0:00:00",..: 1 12 17 18 19 20 21 22 23 24 ...
      ..$ pressure: num [1:24] 2.869 7.881 0.908 4.616 2.719 ...
      ..$ temp    : num [1:24] 14 61.4 52.7 97.5 99 ...
      ..$ speed   : num [1:24] 267.9 36.4 231.7 299.5 203 ...
      ..$ dia     : num [1:24] 880 932 514 661 580 ...
     $ :'data.frame':   24 obs. of  5 variables:
      ..$ date    : Factor w/ 24 levels "2-Jan-2017 0:00:00",..: 1 12 17 18 19 20 21 22 23 24 ...
      ..$ pressure: num [1:24] 4.96 9.57 0.34 5.18 7.34 ...
      ..$ temp    : num [1:24] 26.5 74.5 76.8 52.8 68.2 ...
      ..$ speed   : num [1:24] 238.3 37 16.4 30.8 12.2 ...
      ..$ dia     : num [1:24] 163 548 161 631 437 ...
     $ :'data.frame':   24 obs. of  5 variables:
      ..$ date    : Factor w/ 24 levels "3-Jan-2017 0:00:00",..: 1 12 17 18 19 20 21 22 23 24 ...
      ..$ pressure: num [1:24] 9.79 7.01 5.7 2.46 2.46 ...
      ..$ temp    : num [1:24] 76.8 11.9 30.6 16.2 90.9 ...
      ..$ speed   : num [1:24] 208.6 240 270.1 46.4 224.5 ...
      ..$ dia     : num [1:24] 50.6 374.9 265.2 816 315.5 ...
     $ :'data.frame':   24 obs. of  5 variables:
      ..$ date    : Factor w/ 24 levels "4-Jan-2017 0:00:00",..: 1 12 17 18 19 20 21 22 23 24 ...
      ..$ pressure: num [1:24] 0.761 3.384 8.696 3.355 9.007 ...
      ..$ temp    : num [1:24] 42.9 94 4.7 44.9 74 ...
      ..$ speed   : num [1:24] 199.73 223.39 128.77 56.29 6.64 ...
      ..$ dia     : num [1:24] 832 764 389 293 686 ...
     - attr(*, "dim")= int [1:2] 1 4
     - attr(*, "dimnames")=List of 2
      ..$ : chr "wind_data"
      ..$ : NULL`

So my questions are

  1. What are other ways to convert many csv files into one large data frame and not the list of dataframes?

  2. Why is the lapply read.csv not combining all csv into one?


marked as duplicate by beetroot, David Arenburg r Apr 5 '17 at 19:23

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • More likely than not the data column came in as character data. Run str(combined_data) to see if that column is character. If so, just convert it to numerical combined_data$vel<-as.numeric(combined_data$vel) should do it. Frequently CSV files are all character, even the numbers and dates,s you need to convert them back upon importing them. – sconfluentus Apr 5 '17 at 21:27
  • Apologies if this appeared to be a duplicate question. But I can't find the answer. If you are kind enought to attach a link to the exact duplicate question I will appreciate. – Sanjay Mehrotra Apr 6 '17 at 13:23
  • It may not be a duplicate...there is not enough here to say. Try running the str() and post the results – sconfluentus Apr 6 '17 at 18:11
  • and if you can show a bit of data, just a few lines...use` dput(x12)`... – sconfluentus Apr 6 '17 at 18:17
  • Apologies for the delay in coming back and thanks @bethany for the guidance in reposting details. I have edited the entire question. Please read and let me know if anyone has a clear solution. – Sanjay Mehrotra Apr 7 '17 at 20:04

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