【发布时间】:2018-12-03 18:25:17
【问题描述】:
我有一个必须在 R 中导入的大文件。为此我使用了fread。 fread 将数字字段中的空格识别为 NA,但未将字符和 integer64 字段中的空格识别为 NA。
fread 将空格识别为字符字段的空单元格,并将空格识别为整数 64 字段的 0。
当我使用 read.table 导入相同的数据时,它会将所有空格识别为 NA。
请找一个可重现的例子,
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)
详细输出:
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
请帮我解决这个问题。
谢谢!
【问题讨论】:
-
您在运行时根据需要在数据表中给出结果的示例
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我猜这是在 data.table 版本 1.11.0 中引入的(请参阅github.com/Rdatatable/data.table/blob/master/NEWS.md,第 1 节)引用:“我们希望 ,,=>NA 与数字类型保持一致,并且” ",=>空字符串作为 fwrite/fread 字符列的标准默认值,因此 fread(fwrite(DT))==DT 不需要对任何参数进行任何更改。"
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@docendodiscimus 是的,还有其他一些与此相关的未决问题,例如github.com/Rdatatable/data.table/issues/2857 和 github.com/Rdatatable/data.table/issues/2714
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我遇到了同样的问题。作为一种解决方法,我使用 fread 来提高其导入速度,然后使用以下代码将空白字段替换为 NA: lapply(tr1, function(x) {ifelse(x == "", NA, x)})
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不幸的是,目前 fread 似乎还没有解决此问题的方法。在 1 行中我能想到的最快方法是 sapply(fread("tr.csv", quote = ""), function(x) gsub("\"", NA, x))。唱歌时超过 1 行:dt
标签: r data.table fread