Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I found this open question online. How do you process a large data file with size such as 10G? This should be an interview question. Is there a systematic way to answer this type of question?

share|improve this question
I'd say that this is unanswerable without knowing what kind of file or what processing you'd need to do with it. My guess is that this question is intended to spark discussion about these considerations in the context of huge files. – Chris Farmer Mar 17 '10 at 18:10
You need to use an API which supports files that large - many use 32bit integers, so are limited to 4gb files. If you want more, you'll have to be more specific about the data in the file and what you want to do with it. – Joe Gauterin Mar 17 '10 at 18:12
MapReduce? [] – Eugen Constantin Dinca Mar 17 '10 at 18:12
@Joe: Those 32 bit APIs are typically limited to 2GB files, at least on POSIX-like platforms since the file offset type (e.g. off_t) is typically signed. – Void Mar 17 '10 at 19:18
up vote 1 down vote accepted

If you're interested you should check out Hadoop and MapReduce which are created with big (BIG) datasets in mind.

Otherwise chunking or streaming the data is a good way to reduce the size in memory.

share|improve this answer

I have used streambased processing in such cases. An example was when I had to download a quite large (in my case ~600 MB) csv-file from an ftp server, extract the records found and put them into a database. I combined three streams reading from each other:

  • A database inserter which read a stream of records from
  • a record factory which read a stream of text from
  • an ftp reader class which downloaded the ftp stream from the server.

That way I never had to store the entire file locally, so it should work with arbitrary large files.

share|improve this answer
While streams are often a sensible approach, using them assumes that processing a data element doesn't depend on other data elements. If the data is highly interdependent, streaming doesn't work nearly as well. – Bill Carey Mar 17 '10 at 19:03

It would depend on the file and how the data in the file may be related. If you're talking about something where you have a bunch of independent records that you need to process and output to a database or another file, it would be beneficial to multi-thread the process. Have a thread that reads in the record and then passes it off to one of many threads that will do the time-consuming work of processing the data and doing the appropriate output.

share|improve this answer

In addition to what Bill Carey said, not only does the type of file determine "meaningful chunks" but also, it determines what "processing" would mean.

In other words, what you do to process, how you determine what to process will vary tremendously.

share|improve this answer

What separates a "large" data file from a small one is--broadly speaking--whether you can fit the whole file into memory or whether you have to load portions of the file from the disk one at a time.

If the file is so large that you can't load the whole thing into memory, you can process it by identifying meaningful chunks of the file, then reading and processing them serially. How you define "meaningful chunks" will depend very much on the type of file. (i.e. binary image files will require different processing from massive xml documents.)

share|improve this answer

Look for opportunities to split the file down so that it can be tackled by multiple processes. You don't say if records in the file are related, which makes the problem harder but the solution is in principle the same - identify mutually exclusive partitions of data that you can process in parallel.

A while back I needed to process 100s of millions of test data records for some performance testing I was doing on a massively parallel machine. I used some Perl to split the input file into 32 parts (to match the number of CPUs) and then spawned 32 processes, each transforming the records in one file.

Because this job ran over the 32 processors in parallel, it took minutes rather than the hours it would have taken serially. I was lucky though, having no dependencies between any of the records in the file.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.