Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

So I just started messing around with Google BigQuery about 10 minutes ago, and I was wondering if anyone is aware of the underlying architecture that they're using to store the data? For example, is this just the next generation of their own BigTable infrastructure?

Also, is it clear what sorts of strategies they're using for indexes, index rebuilds, etc? I'm just trying to analyze whether this is mature enough at this point where you can be 100% sure of what's going on with your data end-to-end, or is there a bit of a black box area where "things just work"?

share|improve this question

1 Answer 1

up vote 8 down vote accepted

There are no indexes... every query is a table scan. The query architecture is described here. Your data is stored in a proprietary columnar format called ColumnIO on Colossus (a successor to GFS). Colossus replicates the data within a datacenter and your data is also replicated to other geographic regions to make sure it stays available even if a Google datacenter goes offline.

To answer your specific questions

  • While data may be temporarily stored in Bigtable, all data is stored long-term in Colossus (for now!).
  • New data added to bigquery is encrypted at rest (that is, whenever it is written out to permanent storage). It is also encrypted when sent over the network.
  • As mentioned, no indexes, so there are no strategies for rebuilding the index. Depending on how you add data to your table, your table may be coalesced, which means rewriting the underlying files in a more efficient manner.
  • Colossus underlies a massive amount of Google data across a wide range of services, ColumnIO is a standard throughout Google. I would call both of these technologies mature.
  • However, you should also consider it a black box. All of the details here may change as storage systems at Google mature or architectures change. However, it should always "just work" (within SLA caveats, of course)

If you're interested in more details about how BigQuery works under the covers or how to use it effectively, here is a shameless plug for our book on the subject which is due out in June.

share|improve this answer
Great insight Jordan. Thanks for the response. I think the lack of indexes is pretty fascinating. In regards to my "mature" comment, I probably would have phrased it better just asking about the level of control that customers will have over their data. I rather like the idea of hitching to the Google wagon and just benefiting from architectural improvements without lifting a finger. I imagine that will end up being a huge selling point for many enterprise architects and CTOs, as well as the finance guys. –  Todd Nakamura Apr 1 '14 at 21:12

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.