Linked Questions

1
vote
3answers
3k views

How to read large dataset in R [duplicate]

Possible Duplicate: Quickly reading very large tables as dataframes in R Hi, trying to read a large dataset in R the console displayed the follwing errors: ...
0
votes
2answers
188 views

Load large datasets into data frame [duplicate]

I have a dataset stored in text file, it is of 997 columns, 45000 rows. All values are double values except row names and column names. I use R studio with read.table command to read the data file, ...
0
votes
1answer
110 views

Reading big matrix of integers fast [duplicate]

I am trying to read a big table (around 500000 x 1000) in R. read.table works, but is horribly slow. scan works, too, and is OK speedwise, but I have been unable to change its format to a normal ...
0
votes
2answers
59 views

Long time needed to read data from a csv file [duplicate]

I should read a big CSV file (with more than 30000 rows and 10000 columns). Somehow I should read data column by column. This is my code: con<-file("D:\\Data.csv","r") datalist<-list() ...
1
vote
0answers
71 views

How to read 1.5GB .csv file into R in a more efficient and rapid way? [duplicate]

I have big .csv data file. I'm trying to read it into R by read.csv(), but it is taking too much time to read it. Is there any more efficient method to read it?
1
vote
0answers
71 views

Speed up read.table in R? [duplicate]

Possible Duplicate: Quickly reading very large tables as dataframes in R I need to repeatedly read different sections of data from a big (more than 50MB) text file. Currently, my code is ...
0
votes
1answer
43 views

subsetting a large txt file before reading it into the variable in R [duplicate]

I have a large txt file (approx 2 mil rows). First column is a Date in format 01/01/2006. Values are separated with a ; data <- read.table("largeFile.txt", sep=";") dataToUse <- data[data$Date ...
0
votes
1answer
36 views

Loading large training data with R [duplicate]

I have the following line of code: train <- read.csv("avito_train.tsv", sep='\t', stringsAsFactors = F) The training file is around 3 GB. It takes a really long time to load all of that data. ...
-1
votes
0answers
38 views

how do you read a huge file into data frame in R [duplicate]

I am trying to read a huge table, but I am running out of memory. I tried this: df<-read.table("data.txt", sep=',', nrow=100000) once I have the df, I will agreegate the data so that my df ...
0
votes
0answers
31 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. ...
66
votes
6answers
20k 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 ...
30
votes
8answers
3k views

large amount of data in many text files - how to process?

I have large amounts of data (a few terabytes) and accumulating... They are contained in many tab-delimited flat text files (each about 30MB). Most of the task involves reading the data and ...
23
votes
5answers
23k views

Ways to read only select columns from a file into R? (A happy medium between `read.table` and `scan`?) [duplicate]

I have some very big delimited data files and I want to process only certain columns in R without taking the time and memory to create a data.frame for the whole file. The only options I know of are ...
23
votes
4answers
7k views

How to load data quickly into R?

I have some R scripts, where I have to load several dataframe in R as quickly as possible. This is quite important as reading the data is the slowest part of the procedure. E.g.: plotting from ...
29
votes
1answer
2k views

How can I tell when my dataset in R is going to be too large?

I am going to be undertaking some logfile analyses in R (unless I can't do it in R), and I understand that my data needs to fit in RAM (unless I use some kind of fix like an interface to a keyval ...

15 30 50 per page