Reading around, I found out that the best way to read a larger-than-memory csv file is to use
read.csv.sql from package
sqldf. This function will read the data directly into a sqlite database, and consequently execute a sql statement.
I noticed the following: it seems that the data read into sqlite is stored into a temporary table, so that in order to make it accessible for future use, it needs to be asked so in the sql statement.
As a example, the following code reads some sample data into sqlite:
# generate sample data sample_data <- data.frame(col1 = sample(letters, 100000, TRUE), col2 = rnorm(100000)) # save as csv write.csv(sample_data, "sample_data.csv", row.names = FALSE) # create a sample sqlite database library(sqldf) sqldf("attach sample_db as new") # read the csv into the database and create a table with its content read.csv.sql("sample_data.csv", sql = "create table data as select * from file", dbname = "sample_db", header = T, row.names = F, sep = ",")
The data can then be accessed with
sqldf("select * from data limit 5", dbname = "sample_db").
The problem is the following: the sqlite file takes up twice as much space as it should. My guess is that it contains the data twice: once for the temporary read, and once for the stored table. It is possible to clean up the database with
sqldf("vacuum", dbname = "sample_db"). This will reclaim the empty space, but it takes a long time, especially when the file is big.
Is there a better solution to this that doesn't create this data duplication in the first time ?