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Good afternoon,

After computing a rather large vector (a bit shorter than 2^20 elements), I have to store the result in a database.

The script takes about 4 hours to execute with a simple code such as :

#Do the processing
#Sends every thing to the database

What do you think is the most efficient way to do this?

I thought about using the same query to insert multiple records (multiple inserts) but it simply comes back to "chucking" the data.

Is there any vectorized function do send that into a database?

Interestingly, the code takes a huge amount of time before starting to process the first element of the vector. That is, if I place a browser() call inside sendToDB, it takes 20 minutes before it is reached for the first time (and I mean 20 minutes without taking into account the previous line processing the data). So I was wondering what R was doing during this time?

Is there another way to do such operation in R that I might have missed (parallel processing maybe?)


PS: here is a skelleton of the sendToDB function:

sendToDB<-function(id,data) {
  query<-paste("INSERT INTO history VALUE(",id,",\"",data,"\")",sep="")

That's the idea.


I am at the moment trying out the LOAD DATA INFILE command.

I still have no idea why it takes so long to reach the internal function of the lapply for the first time.


LOAD DATA INFILE is indeed much quicker. Writing into a file line by line using write is affordable and write.table is even quicker.

The overhead I was experiencing for lapply was coming from the fact that I was looping over POSIXct objects. It is much quicker to use seq(along.with=myVector) and then process the data from within the loop.

share|improve this question
We probably need some details - whats in your sendToDB function? Also, a vector of length 65k isn't particularly big and should be almost instant do lapply through if the function is fast eg system.time(lapply(1:2^16, length)) takes 0.44s on my system – Aaron Statham Jul 6 '10 at 6:07
you're right, I corrected the vector size, its 650k not 65k. Anyway, I am not sure it is the problem either. The function sendToDB basically writes the SQL query and sends it to the database. I'll put a skelleton in the question – SRKX Jul 6 '10 at 6:16
R is bad for loops, this lapply would work well in C but in R you have to do it differently – RockScience Sep 28 '11 at 5:16
up vote 3 down vote accepted

What about writing it to some file and call LOAD DATA INFILE? This should at least give a benchmark. BTW: What kind of DBMS do you use?

share|improve this answer
I wasn't aware of "LOAD DATA INFILE" well it means that I first have to write the data in the file so I'm just moving the problem a bit. I use a relational database, but in truth this table has not relation so it is sort of a flat database – SRKX Jul 6 '10 at 8:44
LOAD DATA INFILE just issues one query as opposed to one for every single line. So you might get quicker results and no timeouts if you use tools like phpmyadmin for DBadministration. In case you use MySQL or PostgreSQL there are nice packages out there like RMySQL and RPostgreSQL. There´s a Oracle package too. I have tested both of the SQL packages and I am happy with it. That being said, I really wonder why you have a problem because I already worked with several gb of data with these tools. – Matt Bannert Jul 6 '10 at 10:06
I'll try out the LOAD DATA INFILE it looks really efficient. I guess single queries are just not efficient enough. – SRKX Jul 6 '10 at 11:38

Instead of your sendToDB-function, you could use sqlSave. Internally it uses a prepared insert-statement, which should be faster than individual inserts.

However, on a windows-platform using MS SQL, I use a separate function which first writes my dataframe to a csv-file and next calls the bcp bulk loader. In my case this is a lot faster than sqlSave.

share|improve this answer

There's a HUGE, relatively speaking, overhead in your sendToDB() function. That function has to negotiate an ODBC connection, send a single row of data, and then close the connection for each and every item in your list. If you are using rodbc it's more efficient to use sqlSave() to copy an entire data frame over as a table. In my experience I've found some databases (SQL Server, for example) to still be pretty slow with sqlSave() over latent networks. In those cases I export from R into a CSV and use a bulk loader to load the files into the DB. I have an external script set up that I call with a system() call to run the bulk loader. That way the load is happening outside of R but my R script is running the show.

share|improve this answer
Yeah in truth, my function is defined on the fly in the lapply call, and the channel is opened before the lapply and closed after. But I'll have a look at sqlSave then since I am on MySQL. – SRKX Jul 8 '10 at 1:14
by the way, even if I didn't, isn't connection pooling reducing the overhaed a lot? – SRKX Jul 8 '10 at 1:28
using sqlSave requires to transfer the data into a data.frame. My dataset is at the moment stocked in an XTS. When I try test<-data.frame(myXTS) R shuts down without any kind of warning. I works for smaller XTS though. – SRKX Jul 8 '10 at 1:34
I'm pretty unexperienced with XTS objects so I'm not much help there. Another question on that, maybe? I may be missing something obvious, but where's the connection pooling coming from? – JD Long Jul 9 '10 at 14:03

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