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 want to understand better index organization. Imagine we have a table with 2 columns:

  name varchar(100)
 ,age int)

We would like to create an index:

CREATE INDEX IDX_MultiColIdx on user(name,age)

How would B-Tree index organization look like?

In case of one column, say, age, the organization is clear: every non-leaf node would contain a set of integer keys which would be used for a search. Which values contain nodes of our *IDX_MultiColIdx* B-Tree index?

share|improve this question
up vote 4 down vote accepted

Which values contains nodes of our *IDX_MultiColIdx* B-Tree index?

Values of name, age and the row pointer (RID/ROWID or clustered key, depending on the table organization), sorted lexicographically.

How exactly they will be stored, depends on the datatype and database system.

Usually, CHAR is stored right-padded with spaces up to its size, while VARCHAR is prepended with its length.

MyISAM and some other engines can use key compression: the matching parts of a set of keys are only stored once, and the other keys only store the differing parts, like this:

Hamblin, California
Hamblin (surname)
Hambling Baronets
Hambly Arena    
Hambly Arena Fire
Hambo Lama Itigelov

will be stored as:

[7], California
[7] (surname)
[7]g Baronets
[6] Arena   
[6] Arena Fire
[5] Lama Itigelov

, where [x] means "take leading x characters from the previous key"

share|improve this answer
You would have to ignore the length when inserting or searching for keys since inequalities like ... where colm > 'xyz' would become very inefficient. – paxdiablo Sep 15 '10 at 7:19
@paxdiablo: what do you mean by "ignore the length"? – Quassnoi Sep 15 '10 at 7:36
It was to do with your "while VARCHAR is prepended with its length" comment. I mean, if you're using "<len><name><age>" as the comparison key, it will be primarily in "length of name" order not "name" order. In other words, it will sort a,b,c,aa,ff,bbbbb instead of a,aa,b,bbbbb,c,ff. It doesn't really matter where you store the length (as long as you can find it within the key), just don't use the length to sort/compare. – paxdiablo Sep 15 '10 at 7:44
@paxdiablo: actually, comparison functions can be a little bit more complex than memcmp. And how do you know where the column ends if you don't store its length? – Quassnoi Sep 15 '10 at 7:48
Traversing a tree can be done without a comparison function if you're talking about going from start to finish. I'm talking about finding a specific key which requires the comparison function to decide whether to move left or right. A tree can only have one order which should be the name/age pair in this case. What I was stating was that, if your comparison function uses name-length/name/age, the sort order will be wrong. You will still be able to find a specific key using equality (since you know both the name-length and name) but inequality will not be easy, since the order will be wrong. – paxdiablo Sep 15 '10 at 9:23

I assume you're asking about the internal database implementation because you mention 'non-leaf nodes'.

The interior nodes in a b-tree do not need to store the full key; they only need to store separator keys. Prefix and suffix compression mean that interior nodes can be very dense, and therefore reduce the height of the b-tree and therefore improve overall performance.

For example, given an index with the sequential keys <'A very long string', 314159> and <'Not the same string', 9348>, all the interior node needs to represent is the separation between those those keys, which can be represented in a single character. In a similar way, when the keys to be separated in the interior node have a common prefix, that prefix need only be stored once and the point where they diverge represented.

The leaf nodes need to store the full key values, and can be stored in a linked list for key order traversal. Leaf node pages can be compressed by using prefix compression or other techniques to further reduce the tree height.

For a good reference on this, see "Transaction Processing: Concepts and Techniques" by Gray & Reuter, and follow the references if you want more detail.

share|improve this answer

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.