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My server generates huge amounts of transaction logs. Each record contains information about the referer URL, the user, the manufacturer and the related product. An example record might be as follows:

{transaction_id: 1, url: "http://example.com/", user_agent: "Mozilla/5.0 (Windows NT 6.1; WOW64) AppleWebKit/535.7 (KHTML, like Gecko) Chrome/16.0.912.77 Safari/535.7", manufacturer_id: 2, product_id: 3}

I store these logs only for a month, then I discard the old ones to make room for the new ones.

What I need is to answer questions like "How many times was Product-3 displayed on URL http://example.com/ each day?" or "How many times did a user with Firefox 10 requested a product of Manufacturer-2 each day?". All reports are daily, but the ways of grouping may increase in time. Also, I should be able to store the data for years.

What database system do you recommend to aggregate logs in flexible ways?

I considered,

  • MySQL: Storage friendly and easy to archive, but requires altering tables and rewriting queries each time an aggregation was changed.
  • CouchDB: Map-reduce approach is nice, but its revision system is not suitable for counting(isn't it?).
  • Redis: Perfect for in-memory counting, but is hard to query and needs to fit all data to the memory.
  • MongoDB: Easy to create new types of aggregations and perfect for on-disk counting, but it doesn't seem that much storage friendly and it doesn't seem as stable as MySQL and CouchDB either.

I am inclined towards MongoDB. What do you think?

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Is there any reason you can't use existing software that goes through your logs and shows statistics - something like AWStats maybe? –  Grim... Feb 6 '12 at 13:19
@Grim... The logs are generated by server for each transaction, rather than each request (I should've pointed this out), and there are custom fields such as manufacturer_id and product_id which are not stored in the URL. I may check how AWStats work though. Thanks! –  Eser Aygün Feb 6 '12 at 13:27
There are many different stats packages (and many can handle custom fields nicely), and it may be a better solution that rolling your own. Only you know that answer to that, though! –  Grim... Feb 6 '12 at 13:30

1 Answer 1

up vote 1 down vote accepted

You should look into Bigtable-like databases. Currently, there are two open-source implementations: HBase and Hypertable. (Disclaimer: i work for Hypertable). Analytics is a typical usage scenario.

In case of Hypertable, you get

  • automatic timestamps for each inserted row
  • rows with a certain configurable age (i.e. 1 month) will be deleted automatically
  • a query language (similar to SQL)

I'm sure HBase offers similar functionality.

Have a look at this tutorial - it shows how to query logs of web visitors by specifying time intervals and other predicates. http://code.google.com/p/hypertable/wiki/HQLTutorial

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Thank you. I did a quick research on BigTable like systems. I wonder, how do these systems compare with MongoDB on a non-distributed environment, i.e. on a single machine? –  Eser Aygün Feb 6 '12 at 15:52
I don't know how they compare, but i know that they work. Hypertable can run on a single machine. And both (Hypertable and HBase) can run on a single-machine hadoop (pseudo-)cluster. And if you want to scale then you just add another machine to this cluster. –  cruppstahl Feb 7 '12 at 5:17
It seems now that doing all this on one machine is not feasible. I'm considering to build a Hadoop cluster. Thank you for your directions! –  Eser Aygün Feb 8 '12 at 8:31

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