I have 2 files stored on a HDFS filesystem:
<website url (non canonical)> <tab> <username> <tab> <timestamp>
- example: www.website.com, foobar87, 201101251456
<website url (canonical)> <tab> <total hits>
- example: website.com, 25889
I have written an Hadoop sequence of jobs which joins the 2 files on the website, performs a filter on the amount of total hits > n per website and then counts for each user the amount of websites he has visited which has > n total hits. The details of the sequence are as following:
- A Map-only job which canonicizes the url in tbl_userlog (i.e. removes www, http:// and https:// from the url field)
- A Map-only job which sorts tbl_websites on the url
- An identity Map-Reduce job which takes the output of the 2 previous jobs as KeyValueTextInput and feeds them to a CompositeInput in order to make use of Hadoop native joining feature defined with
jobConf.set("mapred.join.expr", CompositeInputFormat.compose("inner" (...))
- A Map and Reduce job which filters the result of the previous job on total hits > n in its Map phase, groups the results on the in the shuffling phase, and performs the count on the number of websites for each user in the Reduce phase.
In order to chain these steps, I just call the jobs sequentially in the described order. Each individual job outputs its results into HDFS which the following job in the chain then retrieves and processes in turn.
As I am new to Hadoop, I would like to ask for your counseling:
- Is there a better way to chain these jobs? In this configuration all intermediate results are written to HDFS and then read back.
- Do you see any design flaw in this job, or could it be written more elegantly by making use of some Hadoop feature that I have missed?
I am using Apache Hadoop 0.20.2 and using higher-level frameworks such as Pig or Hive is not possible in the scope of the project.
Thanks in advance for your replies!