Linked Questions

1
vote
3answers
4k 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: ...
1
vote
2answers
122 views

quick way to read a large flat file into r as.numeric [duplicate]

I have a large (450MB / 250 million rows) flat file of 1s and 0s that looks like this... 1 0 0 1 0 1 0 etc... I am using the following method to read it into R... ...
0
votes
1answer
365 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 ...
2
votes
1answer
113 views

How to load big data in R? [duplicate]

I have 16 million customer records with more than 100 columns. I am interested in loading the complete data in R and want to run my R code on it. I have used the following to load the data in R: ...
0
votes
2answers
338 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
145 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
103 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() ...
0
votes
1answer
56 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. ...
0
votes
0answers
80 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
78 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
0answers
36 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. ...
0
votes
0answers
27 views

Reading in csv.file in R [duplicate]

How long should it take to read in a 23 MB csv file in R? I am completely new to R and I am trying to load some data with the following command: poker.hand.testing <- ...
74
votes
6answers
25k 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 ...
26
votes
5answers
30k 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 ...
26
votes
4answers
8k 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 ...
30
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 ...
11
votes
3answers
5k views

R: how to rbind two huge data-frames without running out of memory

I have two data-frames df1 and df2 that each have around 10 million rows and 4 columns. I read them into R using RODBC/sqlQuery with no problems, but when I try to rbind them, I get that most dreaded ...
11
votes
4answers
2k views

Most efficient way of exporting large (3.9 mill obs) data.frames to text file?

I have a fairly large dataframe in R that I would like to export to SPSS. This file has caused me hours of headaches trying to import it to R in the first place, however I got successful using ...
9
votes
5answers
3k views

Set up large database in MySQL for analysis in R

I have reached the limit of RAM in analyzing large datasets in R. I think my next step is to import these data into a MySQL database and use the RMySQL package. Largely because I don't know database ...
6
votes
2answers
4k views

how to import CSV into sqlite using RSqlite?

As question, I found that I can use .import in sqlite shell, but seems it is not working in R environment, any suggestions? Thanks!
8
votes
4answers
2k views

Fastest way to import millions of files in R?

I have 15 million CSV files, each with two columns (integer and float), and between 5 and 500 rows. Each file looks something like: 3453,0.034 31,0.031 567,0.456 ... Currently, I am iterating over ...
16
votes
1answer
5k views

data.table fread function

I am using the new data.table:::fread function (fastest read function I've used in R so far) and I got the following (self explanatory) exception: R) fread(path) Erreur dans fread(path) : Coercing ...
4
votes
5answers
273 views

Mixing other languages with R

I use R for most of my statistical analysis. However, cleaning/processing data, especially when dealing with sizes of 1Gb+, is quite cumbersome. So I use common UNIX tools for that. But my question ...
7
votes
4answers
1k views

faster than scan() with Rcpp?

Reading ~5x10^6 numeric values into R from a text file is relatively slow on my machine (a few seconds, and I read several such files), even with scan(..., what="numeric", nmax=5000) or similar ...
6
votes
2answers
289 views

Succinctly assign names and values simultaneously

I find myself often writing the following two lines. Is there a succinct alternative? newObj <- vals names(newObj) <- nams # This works, but is ugly and not necessarily preferred ...
8
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 ...
2
votes
1answer
4k 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, ...
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 ...
5
votes
3answers
286 views

Reduce computing time for reshape

I have the following dataset, which I would like to reshape from wide to long format: Name Code CURRENCY 01/01/1980 02/01/1980 03/01/1980 04/01/1980 Abengoa 4256 USD 1.53 ...
2
votes
3answers
859 views

R: looping over large dataset takes a long time

I need to apply the Mann Kendall trend test in R to a big number (about 1 million) of different-sized time series. I've created a .txt file like this: 1 2 1 4 1 5 2 4 2 55 3 2 3 4 3 5 3 4 3 55 ... ...
7
votes
4answers
361 views

Is there a way to read and write in-memory files in R?

I am trying to use R to analyze large DNA sequence files (fastq files, several gigabytes each), but the standard R interface to these files (ShortRead) has to read the entire file at once. This ...
2
votes
3answers
2k views

Filtering multiple csv files while importing into data frame

I have a large number of csv files that I want to read into R. All the column headings in the csvs are the same. But I want to import only those rows from each file into the data frame for which a ...
1
vote
4answers
988 views

read.table, read.csv or scan for reading text file in R?

I am confused which of the following should I use? (actually as of now all of them give me errors): > beef = read.csv("beef.txt", header = TRUE) Error in read.table(file = file, header = header, ...
2
votes
1answer
3k views

Subset data /extracting data based on first 7 letters

I have a huge data set with genotypic information from different populations. I would like to sort the data by population, but I don't know how. I would like to sort by "pedigree_dhl". I was using ...
3
votes
2answers
877 views

using sqldf() to select rows that match a million items

This is a follow up on the answer provided here on using sqldf() http://stackoverflow.com/a/1820610 In my particular case, I have a tab-delimited file with over 110 million rows. I'd like to select ...
0
votes
2answers
844 views

Query SPSS file

R version: 2.12.2 / OS: Windows XP Data that I need to query and manipulate is stored in a SPSS .sav file (size ~ 112MB) and I have a very basic knowledge of SPSS syntax. I am much more comfortable ...
3
votes
2answers
536 views

Using sqlite for very large merges and basic queries

I'm a new guy to databases, and I'm trying to figure out a good solution for dealing with large datasets. I mostly do statistical analyses using R, so I don't need a database as the backend of web ...
2
votes
3answers
226 views

How can I read a CSV more quickly in R?

I have to read a CSV (each more than 120MB). I use a for loop, but it was very very very slow. How can I read a CSV more quickly? My code: H=data.frame() for (i in 201:225){ for (j in ...
7
votes
1answer
367 views

How to append several large data.table objects into a single data.table and export to csv quickly without running out of memory?

The easy answer to this is "buy more RAM" but I am hoping to get a more constructive answer and learn something in the process. I am running Windows 7 64-bit with 8GB of RAM. I have several very ...
2
votes
1answer
212 views

R: how to get information from a txt file with R

R experts, I have a large text file, which has specific pattern and format. My text.txt contains x1 `xx`nkkna`yy`taktnaknvcaklrhkahnktn, altlkhakthakd`xx`nmm cataitha`yy`knkcnaktnhakt x2 ...
2
votes
1answer
897 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 ...
3
votes
1answer
414 views

How to speed up loading data into R?

The problem: Data sets take 6-12 hours to load into R. Much larger data sets are coming, and my current import process clearly isn't ready for them. Once it's all in a data frame the size isn't a ...
4
votes
2answers
405 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 ...
3
votes
2answers
489 views

what parallel algorithms exist in R, working on large data

I'm trying to find out which statistical/data mining algorithms in R or R packages at CRAN/github/R-Forge exist that can handle large datasets either in parallel on 1 server or sequentially without ...
3
votes
1answer
450 views

Reading big data and logistic regression in R

Situation: 1GB CSV file, 100000 rows, 4000 independent numeric variable, 1 dependent variable. R on Windows Citrix Server, with 16GB memory. Problem: It took me 2 hours! to do: ...
0
votes
2answers
466 views

Extremely slow R code and hanging

Calling read.table() function (on a CSV file), as follows: download.file(url, destfile = file, mode = "w") conn <- gzcon(bzfile(file, open = "r")) try(fileData <- read.table(conn, sep = ...
2
votes
1answer
518 views

How to read and rbind large CSV file efficiently?

I have 20 large CSV (100-150MB each) files i would like to load in R and rbind them in a large file and perform my analysis. Reading each CSV file is performed on one core only and takes about 7 min. ...

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