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Using two databases to illustrate this example: CouchDB and Cassandra.

CouchDB

CouchDB uses a B+ Tree for document indexes (using a clever modification to work in their append-only environment) - more specifically as documents are modified (insert/update/delete) they are appended to the running database file as well as a full Leaf -> Node path from the B+ tree of all the nodes effected by the updated revision right after the document.

These piece-mealed index revisions are inlined right alongside the modifications such that the full index is a union of the most recent index modifications appended at the end of the file along with additional pieces further back in the data file that are still relevant and haven't been modified yet.

Searching the B+ tree is O(logn).

Cassandra

Cassandra keeps record keys sorted, in-memory, in tables (let's think of them as arrays for this question) and writes them out as separate (sorted) sorted-string tables from time to time.

We can think of the collection of all of these tables as the "index" (from what I understand).

Cassandra is required to compact/combine these sorted-string tables from time to time, creating a more complete file representation of the index.

Searching a sorted array is O(logn).

Question

Assuming a similar level of complexity between either maintaining partial B+ tree chunks in CouchDB versus partial sorted-string indices in Cassandra and given that both provide O(logn) search time which one do you think would make a better representation of a database index and why?

I am specifically curious if there is an implementation detail about one over the other that makes it particularly attractive or if they are both a wash and you just pick whichever data structure you prefer to work with/makes more sense to the developer.

Thank you for the thoughts.

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For anyone interested in question, here is more info about performance of B+ tree, LSM and Fractal Tree: nosql.mypopescu.com/post/3063887666/… –  Riyad Kalla Jan 10 '12 at 5:33

3 Answers 3

up vote 41 down vote accepted

When comparing a BTree index to an SSTable index, you should consider the write complexity:

  • When writing randomly to a copy-on-write BTree, you will incur random reads (to do the copy of the leaf node and path). So while the writes my be sequential on disk, for datasets larger than RAM, these random reads will quickly become the bottle neck. For a SSTable-like index, no such read occurs on write - there will only be the sequential writes.

  • You should also consider that in the worse case, every update to a BTree could incur log_b N IOs - that is, you could end up writing 3 or 4 blocks for every key. If key size is much less than block size, this is extremely expensive. For an SSTable-like index, each write IO will contain as many fresh keys as it can, so the IO cost for each key is more like 1/B.

In practice, this make SSTable-like thousands of times faster (for random writes) than BTrees.

When considering implementation details, we have found it a lot easier to implement SSTable-like indexes (almost) lock-free, where as locking strategies for BTrees has become quite complicated.

You should also re-consider you read costs. You are correct than a BTree is O(log_b N) random IOs for random point reads, but a SSTable-like index is actually O(#sstables . log_b N). Without an decent merge scheme, #sstables is proportional to N. There are various tricks to get round this (using Bloom Filters, for instance), but these don't help with small, random range queries. This is what we found with Cassandra:

http://www.acunu.com/blogs/richard-low/cassandra-under-heavy-write-load-part-ii/

This is why Castle, our (GPL) storage engine, does merges slightly differently, and can achieve a lot better (O(log^2 N)) range queries performance with a slight trade off in write performance (O(log^2 N / B)). In practice we find it to be quicker than Cassandra's SSTable index for writes as well.

If you want to know more about this, I've given a talk about how it works:

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Tom, very detailed reply. Thank you. I wanted to bounce the idea off of you of a B+ tree written in an append-only format ONLY on splits but otherwise the B+ tree index is updated in-place. So you would pre-allocated nodes, then fill them up in-place. On-split, you would rewrite the tree like CouchDB does by appending it to the file and expiring the older unsplit nodes. This avoids the need for complex compaction that SSTable may need to rely on and avoids the constant rewriting of nodes that CouchDB does now... thoughts? –  Riyad Kalla Dec 29 '11 at 0:29
    
FWIW, it seems Cassandra also changed their merge strategy in the latest version datastax.com/dev/blog/leveled-compaction-in-apache-cassandra –  riffraff Dec 29 '11 at 19:27
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@tom.wilkie How is locking in a B-Tree complicated? I don't know about sstable, but I recently implemented a concurrency save B+-Tree. In a B-Link-Tree you only need to lock at most three nodes (which is nearly lock free, if your B-Tree is big enough). –  Markus Pilman Dec 29 '11 at 21:03

I think fractal trees, as used by Tokutek, are a better index for a database. They offer real-world 20x to 80x improvements over b-trees.

There are excellent explanations of how fractal tree indices work here.

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I think they should have just called them B++ trees instead of fractal trees. Thanks for the link. –  Pat Dec 29 '11 at 17:56

LSM-Trees is better than B-Trees on storage engine structured. It converts random-write to aof in a way. Here is a LSM-Tree src: https://github.com/shuttler/lsmtree

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