I have large CSV file ( data size 20 GB) . It contains time series data from sensors and Time columns have multiple duplicate values? How I can I remove those duplicates?

Due to large size of file , I am not able to read it in R and looking for ways to remove duplicates without reading file ( or read in chunk ) ?

  • 2
    I suggest use dask.dataframe.DataFrame.drop_duplicates – jezrael Oct 12 at 6:25
  • but it is not possible without read all data – jezrael Oct 12 at 6:25
  • If you can't fit it into RAM, you will probably have to go the way of a database... – Roman Luštrik Oct 12 at 8:18
  • Yes, I think it is better to use a database first - assuming they have a reasonably fast connection, the OP could upload it to BigQuery and then use an R package like bigrquery to interact with it. For example, they could use dplyr::distinct() to remove the duplicates and then save the de-duped version to a fresh table and then use that as a basis for analysis. – Randall Helms Oct 12 at 8:52

Just another suggestion.. You can also use the SQL approach to read it in quickly.

sqldf::read.csv.sql(file, ...)

Then use complete.cases.

Or in R you can read csv files directly into a database.

MonetDBLite::monetdb.read.csv(file, ...)

Then you can manipulate the data with dplyr and dbplyr. In your case you can use dplyr::distinct.

you can try reading files using fread from data.table

library(data.table)
df<- fread("filename.csv")

##removing duplicates 

df1<- unique(df)

I hope your system has sufficient RAM. fread is many times faster than read.csv

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