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 am analyzing on the possibilities to use hadoop (HDFS) as data archival solution which is giving linear scalability and lower cost maintenance per tera byte.

Please let me know the your recommendations and set of the parameters like I/O, Memory, Disk which has to be analyzed to viz hadoop as data archival system.

On the related query, While trying to upload a 500MB sized file using hadoop shell as,

$ #We've 500MB file created using dd

$ dd if=/dev/zero of=500MBFile.txt bs=524288000 count=1

$ hadoop fs -Ddfs.block.size=67108864 -copyFromLocal 500MBFile.txt /user/cloudera/

Please let me know why the input file is not getting splitted based on the block size (64MB). This will be good to understand since as part of data archival if we're getting 1TB file, how this will be splitted and distributed across the cluster.

I've tried the exercise using single node cloudera hadoop setup and replication factor is 1.

Thanks again for your great response.

share|improve this question
You've set the block size to 67,108,864, so a 500MB file will be split into 8 blocks. – Chris White Aug 10 '12 at 10:39

You can load the file in .har format.

You get more details here : Hadoop Archives

share|improve this answer

Few inputs

  1. Consider compression in your solution. Looks like you will be using Text files. You can achieve around 80% compression.
  2. Make sure you select Hadoop friendly (i.e.splittable) compression
share|improve this answer

You can use HDFS as archiving/storage solution, while I am doubt it is optimal. Specifically it is not as high-available as let say OpenStack Swift and not suited for store small files
In the same time if HDFS is Your choice I would suggest to build the cluster with storage oriented nodes. I would describe them as:
a) Put large and slow SATA disks. Since data is not going to be read / written constantly - desktop grade disks might do - it will be a major saving.
b) Put minimal memory - I would suggest 4 GB. It will not add much costs, but still enable ocaassional MR processing.
c) Sinlge CPU will do.

Regarding copyFromLocal. Yep, file is getting split according to the defined block size.

Distribution on cluster will be even across the cluster, taking to the account replication factor. HDFS will also try to put each block on more then one rack

share|improve this answer
Thanks David Gruzman for the prompt response with excellent points. It will great to get the response on the second part of query on hdfs dfs -copyFromLocal. – Muthukumar Aug 13 '12 at 4:24
I have edited response – David Gruzman Aug 13 '12 at 8:48
Thanks David for the response. Actually hadoop dfs is not splitting based on the block size supplied in argument. Why it is happening. – Muthukumar Aug 16 '12 at 8:35
While executing the following, $hadoop fsck <filename> -blocks -files -racks has helped to understand the block splitting and replication. Thanks. – Muthukumar Aug 28 '12 at 22:56

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.