R is a great tool, but processing data in
large text files is cumbersome.
chunked helps you to
process large text files with dplyr while loading only a part
of the data in memory. It builds on the excellent R package LaF.
Processing commands are written in dplyr syntax, and
chunked (using LaF) will take care that chunk
by chunk is processed, taking far less memory than otherwise.
chunked is useful for select-ing columns,
mutate-ing columns and filter-ing
rows. It is less helpful in group-ing and
summarize-ation of large text files. It can be used in
data pre-processing.
‘chunked’ can be installed with
install.packages('chunked')beta version with:
install.packages('chunked', repos=c('https://cran.rstudio.com', 'https://edwindj.github.io/drat'))and the development version with:
devtools::install_github('edwindj/chunked')Enjoy! Feedback is welcome…
Most common case is processing a large text file, select or add columns, filter it and write the result back to a text file
read_chunkwise("./large_file_in.csv", chunk_size=5000) %>%
select(col1, col2, col5) %>%
filter(col1 > 10) %>%
mutate(col6 = col1 + col2) %>%
write_chunkwise("./large_file_out.csv")chunked will write process the above statement in chunks
of 5000 records. This is different from for example
read.csv which reads all data into memory before processing
it.
Another option is to use chunked as a preprocessing step
before adding it to a database
con <- DBI::dbConnect(RSQLite::SQLite(), 'test.db', create=TRUE)
db <- dbplyr::src_dbi(con)
tbl <-
read_chunkwise("./large_file_in.csv", chunk_size=5000) %>%
select(col1, col2, col5) %>%
filter(col1 > 10) %>%
mutate(col6 = col1 + col2) %>%
write_chunkwise(dbplyr::src_dbi(db), 'my_large_table')
# tbl now points to the table in sqlite.Chunked can be used to export chunkwise to a text file. Note however that in that case processing takes place in the database and the chunkwise restrictions only apply to the writing.
chunked will not start processing until
collect or write_chunkwise is called.
data_chunks <-
read_chunkwise("./large_file_in.csv", chunk_size=5000) %>%
select(col1, col3)
# won't start processing until
collect(data_chunks)
# or
write_chunkwise(data_chunks, "test.csv")
# or
write_chunkwise(data_chunks, db, "test")Syntax completion of variables of a chunkwise file in RStudio works like a charm…
chunked implements the following dplyr verbs:
filterselectrenamemutatemutate_eachtransmutedotbl_varsinner_joinleft_joinsemi_joinanti_joinSince data is processed in chunks, some dplyr verbs are not implemented:
arrangeright_joinfull_joinsummarize and group_by are implemented but
generate a warning: they operate on each chunk and not
on the whole data set. However this makes is more easy to process a
large file, by repeatedly aggregating the resulting data.
summarizegroup_bytmp <- tempfile()
write.csv(iris, tmp, row.names=FALSE, quote=FALSE)
iris_cw <- read_chunkwise(tmp, chunk_size = 30) # read in chunks of 30 rows for this example
iris_cw %>%
group_by(Species) %>% # group in each chunk
summarise( m = mean(Sepal.Width) # and summarize in each chunk
, w = n()
) %>%
as.data.frame %>% # since each Species has 50 records, results will be in multiple chunks
group_by(Species) %>% # group the results from the chunk
summarise(m = weighted.mean(m, w)) # and summarize it again