Reputation: 672
I have a large file which has to be imported in R. I used fread
for this purpose. fread
is recognizing blank spaces from numeric fields as NA but it is not recognizing blank spaces from character and integer64 fields as NA.
fread
recognises blank space as an empty cell for character fields and it recognises blank space as 0 for integer64 fields.
When I imported the same data using read.table
, it recognizes all blank spaces as NA.
Please find a reproducible example,
library(data.table)
x1 <- c("","","")
x2 <- c("1006678566","","1011160152")
x3 <- c("","ac","")
x4 <- c("","2","3")
df <- cbind.data.frame(x1,x2,x3,x4)
write.csv(df,"tr.csv")
tr1 <- fread("tr.csv", header=T, fill = T,
sep= ",", na.strings = c("",NA), data.table = F,
stringsAsFactors = FALSE)
tr2 <- read.table("tr.csv", fill = TRUE, header=T,
sep= ",", na.strings = c(""," ", NA),
stringsAsFactors = FALSE)
Verbose output :
Input contains no \n. Taking this to be a filename to open
[01] Check arguments
Using 4 threads (omp_get_max_threads()=4, nth=4)
NAstrings = [<<>>, <<NA>>]
None of the NAstrings look like numbers.
show progress = 1
0/1 column will be read as integer
[02] Opening the file
Opening file tr.csv
File opened, size = 409 bytes.
Memory mapped ok
[03] Detect and skip BOM
[04] Arrange mmap to be \0 terminated
\n has been found in the input and different lines can end with different line endings (e.g. mixed \n and \r\n in one file). This is common and ideal.
[05] Skipping initial rows if needed
Positioned on line 1 starting: <<"","x1","x2","x3","x4","x5","x>>
[06] Detect separator, quoting rule, and ncolumns
Using supplied sep ','
sep=',' with 7 fields using quote rule 0
Detected 7 columns on line 1. This line is either column names or first data row. Line starts as: <<"","x1","x2","x3","x4","x5","x>>
Quote rule picked = 0
fill=true and the most number of columns found is 7
[07] Detect column types, good nrow estimate and whether first row is column names
'header' changed by user from 'auto' to true
Number of sampling jump points = 1 because (407 bytes from row 1 to eof) / (2 * 407 jump0size) == 0
Type codes (jump 000) : 56A255A Quote rule 0
All rows were sampled since file is small so we know nrow=16 exactly
[08] Assign column names
[09] Apply user overrides on column types
After 0 type and 0 drop user overrides : 56A255A
[10] Allocate memory for the datatable
Allocating 7 column slots (7 - 0 dropped) with 16 rows
[11] Read the data
jumps=[0..1), chunk_size=1048576, total_size=373
Read 16 rows x 7 columns from 409 bytes file in 00:00.042 wall clock time
[12] Finalizing the datatable
Type counts:
1 : bool8 '2'
3 : int32 '5'
1 : int64 '6'
2 : string 'A'
=============================
0.009s ( 22%) Memory map 0.000GB file
0.029s ( 68%) sep=',' ncol=7 and header detection
0.002s ( 5%) Column type detection using 16 sample rows
0.001s ( 2%) Allocation of 16 rows x 7 cols (0.000GB) of which 16 (100%) rows used
0.001s ( 2%) Reading 1 chunks (0 swept) of 1.000MB (each chunk 16 rows) using 1 threads
+ 0.000s ( 0%) Parse to row-major thread buffers (grown 0 times)
+ 0.000s ( 0%) Transpose
+ 0.001s ( 2%) Waiting
0.000s ( 0%) Rereading 0 columns due to out-of-sample type exceptions
0.042s Total
Please help me solve this issue.
Thanks!
Upvotes: 28
Views: 7988
Reputation: 301
@SJB Use na.strings = c(NA_character_, "")
as argument in fread()
and blank spaces/cells will be read as NA.
There are forms of NA for various data types. See help(NA)
:
NA_character_
NA_real_
NA_integer_ etc.
Upvotes: 6
Reputation: 176
In case you want to avoid the additional manipulation after reading the file, you could try using
quote = FALSE
when writing to csv. This prevents the use of quotations " "
around the values and all missing values should now be read as NA
s. It should look like this -
# also turned off row names to prevent an additional column when reading the file.
write.csv(df, "tr.csv", quote = FALSE, row.names = FALSE)
tr1 <- fread("tr.csv", header=T, fill = T,
sep= ",", na.strings = c("",NA), data.table = F,
stringsAsFactors = FALSE)
tr1
x1 x2 x3 x4
1 NA 1006678566 <NA> NA
2 NA NA ac 2
3 NA 1011160152 <NA> 3
tr2 <- read.table("tr.csv", fill = TRUE, header=T,
sep= ",", na.strings = c(""," ", NA),
stringsAsFactors = FALSE)
tr2
x1 x2 x3 x4
1 NA 1006678566 <NA> NA
2 NA NA ac 2
3 NA 1011160152 <NA> 3
Upvotes: 2
Reputation: 539
One thing that I found was the way data gets saved when we do a write.csv().
Open the csv file and hit delete for blank cells in X4 and save . If you import it now, the NA would show up in R.
To check:
apply(tr1, 2, function(x) length(which(is.na(x))))
V1 x1 x2 x3 x4
0 3 1 2 1
If there is a csv file with blanks and we do fread using
na.strings("", NA)
The character data types also show up as "NA" for blanks.
Upvotes: 0