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- Red-black Trees (rbtree) in Linux
- January 18, 2007
- Rob Landley <rob@landley.net>
- =============================
- What are red-black trees, and what are they for?
- ------------------------------------------------
- Red-black trees are a type of self-balancing binary search tree, used for
- storing sortable key/value data pairs. This differs from radix trees (which
- are used to efficiently store sparse arrays and thus use long integer indexes
- to insert/access/delete nodes) and hash tables (which are not kept sorted to
- be easily traversed in order, and must be tuned for a specific size and
- hash function where rbtrees scale gracefully storing arbitrary keys).
- Red-black trees are similar to AVL trees, but provide faster real-time bounded
- worst case performance for insertion and deletion (at most two rotations and
- three rotations, respectively, to balance the tree), with slightly slower
- (but still O(log n)) lookup time.
- To quote Linux Weekly News:
- There are a number of red-black trees in use in the kernel.
- The deadline and CFQ I/O schedulers employ rbtrees to
- track requests; the packet CD/DVD driver does the same.
- The high-resolution timer code uses an rbtree to organize outstanding
- timer requests. The ext3 filesystem tracks directory entries in a
- red-black tree. Virtual memory areas (VMAs) are tracked with red-black
- trees, as are epoll file descriptors, cryptographic keys, and network
- packets in the "hierarchical token bucket" scheduler.
- This document covers use of the Linux rbtree implementation. For more
- information on the nature and implementation of Red Black Trees, see:
- Linux Weekly News article on red-black trees
- http://lwn.net/Articles/184495/
- Wikipedia entry on red-black trees
- http://en.wikipedia.org/wiki/Red-black_tree
- Linux implementation of red-black trees
- ---------------------------------------
- Linux's rbtree implementation lives in the file "lib/rbtree.c". To use it,
- "#include <linux/rbtree.h>".
- The Linux rbtree implementation is optimized for speed, and thus has one
- less layer of indirection (and better cache locality) than more traditional
- tree implementations. Instead of using pointers to separate rb_node and data
- structures, each instance of struct rb_node is embedded in the data structure
- it organizes. And instead of using a comparison callback function pointer,
- users are expected to write their own tree search and insert functions
- which call the provided rbtree functions. Locking is also left up to the
- user of the rbtree code.
- Creating a new rbtree
- ---------------------
- Data nodes in an rbtree tree are structures containing a struct rb_node member:
- struct mytype {
- struct rb_node node;
- char *keystring;
- };
- When dealing with a pointer to the embedded struct rb_node, the containing data
- structure may be accessed with the standard container_of() macro. In addition,
- individual members may be accessed directly via rb_entry(node, type, member).
- At the root of each rbtree is an rb_root structure, which is initialized to be
- empty via:
- struct rb_root mytree = RB_ROOT;
- Searching for a value in an rbtree
- ----------------------------------
- Writing a search function for your tree is fairly straightforward: start at the
- root, compare each value, and follow the left or right branch as necessary.
- Example:
- struct mytype *my_search(struct rb_root *root, char *string)
- {
- struct rb_node *node = root->rb_node;
- while (node) {
- struct mytype *data = container_of(node, struct mytype, node);
- int result;
- result = strcmp(string, data->keystring);
- if (result < 0)
- node = node->rb_left;
- else if (result > 0)
- node = node->rb_right;
- else
- return data;
- }
- return NULL;
- }
- Inserting data into an rbtree
- -----------------------------
- Inserting data in the tree involves first searching for the place to insert the
- new node, then inserting the node and rebalancing ("recoloring") the tree.
- The search for insertion differs from the previous search by finding the
- location of the pointer on which to graft the new node. The new node also
- needs a link to its parent node for rebalancing purposes.
- Example:
- int my_insert(struct rb_root *root, struct mytype *data)
- {
- struct rb_node **new = &(root->rb_node), *parent = NULL;
- /* Figure out where to put new node */
- while (*new) {
- struct mytype *this = container_of(*new, struct mytype, node);
- int result = strcmp(data->keystring, this->keystring);
- parent = *new;
- if (result < 0)
- new = &((*new)->rb_left);
- else if (result > 0)
- new = &((*new)->rb_right);
- else
- return FALSE;
- }
- /* Add new node and rebalance tree. */
- rb_link_node(&data->node, parent, new);
- rb_insert_color(&data->node, root);
- return TRUE;
- }
- Removing or replacing existing data in an rbtree
- ------------------------------------------------
- To remove an existing node from a tree, call:
- void rb_erase(struct rb_node *victim, struct rb_root *tree);
- Example:
- struct mytype *data = mysearch(&mytree, "walrus");
- if (data) {
- rb_erase(&data->node, &mytree);
- myfree(data);
- }
- To replace an existing node in a tree with a new one with the same key, call:
- void rb_replace_node(struct rb_node *old, struct rb_node *new,
- struct rb_root *tree);
- Replacing a node this way does not re-sort the tree: If the new node doesn't
- have the same key as the old node, the rbtree will probably become corrupted.
- Iterating through the elements stored in an rbtree (in sort order)
- ------------------------------------------------------------------
- Four functions are provided for iterating through an rbtree's contents in
- sorted order. These work on arbitrary trees, and should not need to be
- modified or wrapped (except for locking purposes):
- struct rb_node *rb_first(struct rb_root *tree);
- struct rb_node *rb_last(struct rb_root *tree);
- struct rb_node *rb_next(struct rb_node *node);
- struct rb_node *rb_prev(struct rb_node *node);
- To start iterating, call rb_first() or rb_last() with a pointer to the root
- of the tree, which will return a pointer to the node structure contained in
- the first or last element in the tree. To continue, fetch the next or previous
- node by calling rb_next() or rb_prev() on the current node. This will return
- NULL when there are no more nodes left.
- The iterator functions return a pointer to the embedded struct rb_node, from
- which the containing data structure may be accessed with the container_of()
- macro, and individual members may be accessed directly via
- rb_entry(node, type, member).
- Example:
- struct rb_node *node;
- for (node = rb_first(&mytree); node; node = rb_next(node))
- printk("key=%s\n", rb_entry(node, struct mytype, node)->keystring);
- Support for Augmented rbtrees
- -----------------------------
- Augmented rbtree is an rbtree with "some" additional data stored in each node.
- This data can be used to augment some new functionality to rbtree.
- Augmented rbtree is an optional feature built on top of basic rbtree
- infrastructure. An rbtree user who wants this feature will have to call the
- augmentation functions with the user provided augmentation callback
- when inserting and erasing nodes.
- On insertion, the user must call rb_augment_insert() once the new node is in
- place. This will cause the augmentation function callback to be called for
- each node between the new node and the root which has been affected by the
- insertion.
- When erasing a node, the user must call rb_augment_erase_begin() first to
- retrieve the deepest node on the rebalance path. Then, after erasing the
- original node, the user must call rb_augment_erase_end() with the deepest
- node found earlier. This will cause the augmentation function to be called
- for each affected node between the deepest node and the root.
- Interval tree is an example of augmented rb tree. Reference -
- "Introduction to Algorithms" by Cormen, Leiserson, Rivest and Stein.
- More details about interval trees:
- Classical rbtree has a single key and it cannot be directly used to store
- interval ranges like [lo:hi] and do a quick lookup for any overlap with a new
- lo:hi or to find whether there is an exact match for a new lo:hi.
- However, rbtree can be augmented to store such interval ranges in a structured
- way making it possible to do efficient lookup and exact match.
- This "extra information" stored in each node is the maximum hi
- (max_hi) value among all the nodes that are its descendents. This
- information can be maintained at each node just be looking at the node
- and its immediate children. And this will be used in O(log n) lookup
- for lowest match (lowest start address among all possible matches)
- with something like:
- find_lowest_match(lo, hi, node)
- {
- lowest_match = NULL;
- while (node) {
- if (max_hi(node->left) > lo) {
- // Lowest overlap if any must be on left side
- node = node->left;
- } else if (overlap(lo, hi, node)) {
- lowest_match = node;
- break;
- } else if (lo > node->lo) {
- // Lowest overlap if any must be on right side
- node = node->right;
- } else {
- break;
- }
- }
- return lowest_match;
- }
- Finding exact match will be to first find lowest match and then to follow
- successor nodes looking for exact match, until the start of a node is beyond
- the hi value we are looking for.
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