Linked Questions

1
vote
0answers
53 views

Data.table Package in R - fread function

Can someone explain to me what are the advantages and disadvantages of using fread to load BIG .csv files into R? I did a little experiment and fread was more time-efficient in loading an 800 MB file ...
4
votes
2answers
5k views

Strategies for reading in CSV files in pieces?

I have a moderate-sized file (4GB CSV) on a computer that doesn't sufficient RAM to read it in (8GB on 64-bit Windows). In the past I would just have loaded it up on a cluster node and read it in, ...
12
votes
2answers
2k views

Reading big data with fixed width

How can I read big data formated with fixed width? I read this question and tried some tips, but all answers are for delimited data (as .csv), and that's not my case. The data has 558MB, and I don't ...
4
votes
3answers
499 views

R: Is it possible to parallelize / speed-up the reading in of a 20 million plus row CSV into R?

Once the CSV is loaded via read.csv, it's fairly trivial to use multicore, segue etc to play around with the data in the CSV. Reading it in, however, is quite the time sink. Realise it's better to ...
1
vote
3answers
50 views

How to retain row and column formate of a text file(.cel) in R

I read a text file in R, looks like below, with 1354896 rows and 5 colums. I try read.table(), and read.delim() to upload the file, however the format of file after upload changes. It transforms ...
3
votes
2answers
70 views

How can I improve this R function

I am new to R. I created the function below to calculate the mean of dataset contained in 332 csv files. Seek advice on how I could improve this code. It takes 38 sec to run which make me think it is ...
1
vote
2answers
3k views

reading in large text files in r

I want to read in a large ido file that had just under 110,000,000 rows and 8 columns. The columns are made up of 2 integer columns and 6 logical columns. The delimiter "|" is used in the file. I ...
2
votes
1answer
167 views

How to load 35 GB data into R?

I have a data set with the dimension of 20 million records and 50 columns. Now I want to load this data set into R. My machine RAM size is 8 GB and my data set size is 35 GB. I have to run my R code ...
83
votes
6answers
30k views

Speed up the loop operation in R

i have a big performance problem in R. I wrote a function that iterates over an data.frame object. It simply adds a new col to a data.frame and accumulate sth. (simple operation). The data.frame has ...
0
votes
1answer
47 views

Binning values in R with multiple files

So I've got a slight problem with binning values contained in multiple text files into set ranges. I've had a look online for various packages and came across sm which can bin values and you can ...
2
votes
1answer
1k views

sqldf, csv, and fields containing commas

Took me a while to figure this out. So, I am answering my own question. You have some .csv, you want to load it fast, you want to use the sqldf package. Your usual code is irritated by a few annoying ...
0
votes
1answer
43 views

More memory efficient processing of a large .tsv file in R

The script below loads a large tsv file into memory into a data frame, then runs a linear model on each of the columns of the file. I wrote the script for a smaller file, but then tried to rerun it on ...
3
votes
1answer
72 views

Importing and extracting a random sample from a large .CSV in R

I'm doing some analysis in R where I need to work with some large datasets (10-20GB, stored in .csv, and using the read.csv function). As I will also need to merge and transform the large .csv files ...
0
votes
1answer
65 views

reading large file into R

I am trying to read a large space-delimited file (14Gb) of 49,376 rows and 73,625 columns into R for analysis. I have tried using fread from the data.table package, as suggested here. I receive ...
0
votes
0answers
39 views

How to optimize read.csv [duplicate]

I have several large (600000+ rows, ~50 columns) CSV file I import in R through read.csv(). Each reading takes precious minutes of my time, so I would like to speed up this step as much as possible. ...

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