Example: CSV I/O
Readading data from csv files
Reading csv files is realized using the read.table
function from R’s utils
library. The function will return a data frame which contains the information of
the csv file.
df <- read.table(paste0(envrmt$path_data_csv, "/AI001_gebiet_flaeche.csv"),
skip = 4, header = TRUE, sep = ";", dec = ",")
As you can see, the read.table
function gets several arguments (which is common for many functions). The first one gives the filename inclducing the path to the file.
skip = 4
tells the function to skip the first four lines (which are plain text lines in this case and not tabulated values)header = TRUE
tells the function, that the csv file has a header line which is used byread.table
to name the columns of the returning data framesep = ";"
defines the separator of the individual columns in the data framedec = ","
defines the decimal separator used in the dataset
A note on the sequence of the arguments: the sequence of the arguments does
not matter as long as you name them explicetly. If you do not use the argument
identfier as it is the case for the first argument, the filename, in the example
then the sequence matters. To get information on the default sequence and of
course the general application of the each R function, type ?<function name>
(e.g. ?read.table
) in an R console.
After you executing the read.table
function above, the content of the csv file is
stored into a two dimensional data frame called df
in the example above.
A quick way to check if everything is fine is to display the first few lines of
the data file using the head
function (without the 2, it will print 5 lines as a standard setting).
head(df,2)
## X X.1 X.2
## 1 1996 DG Deutschland
## 2 1996 01 Schleswig-Holstein
## Anteil.Siedlungs..und.Verkehrsfläche.an.Gesamtfl.
## 1 11,8
## 2 10,8
## Anteil.Erholungsfläche.an.Gesamtfläche
## 1 0,7
## 2 0,7
## Anteil.Landwirtschaftsfläche.an.Gesamtfläche
## 1 54,1
## 2 73,0
## Anteil.Waldfläche.an.Gesamtfläche
## 1 29,4
## 2 9,3
Writing data to csv files
Writing data is as easy as reading it. Just use the write.table
function.
write.table(df, file = paste0(envrmt$path_data_tmp, "new.csv"),
sep = ",", dec = ".")
As you can see, you can define any column or decimal separator.
For more information have a look at e.g. the respective data importing and data exporting site at Quick R, have a look into the package documentation or search the web.
Alternative data I/O using RDS
If you stay within R for reading and writing R objects from and to data files, you could also use the serialization of readRDS and saveRDS.
saveRDS(df, file = paste0(envrmt$path_data_tmp, "new.rds"))
# Read data to different variable
df2 = readRDS(paste0(envrmt$path_data_tmp, "new.rds"))