Explain the concept of a self-balancing tree.
In the world of data structures, a self-balancing tree is a special type of binary search tree that keeps itself roughly balanced in terms of height (the number of levels below the root) even after insertions and deletions. This means the tree maintains efficient search, insertion, and deletion operations.

Here's how it works:

1. Basic Principle:

A self-balancing tree ensures that for every node, the height of its left and right subtrees differs by at most 1. This prevents the tree from becoming skewed (heavily favoring one side over the other), which significantly increases search time.

2. Rotations:

To maintain balance, self-balancing trees employ special operations called rotations. These rotations re-arrange nodes in the tree to fix imbalances caused by insertions or deletions.
There are different types of rotations, such as left rotation and right rotation, depending on the specific imbalance scenario.

3. Common Self-Balancing Trees:

AVL trees: Named after Adelson-Velsky and Landis, AVL trees guarantee a maximum height difference of 1 for all nodes.
Red-Black trees: These trees use color coding (red and black) to efficiently maintain balance and guarantee logarithmic search time.
B-trees: Used for storing large amounts of data on disk, B-trees ensure a balanced distribution of data across nodes and efficient disk access.

Benefits of Self-Balancing Trees:

Faster search, insertion, and deletion operations: Balanced trees avoid the worst-case scenarios of unbalanced trees, where search time can become proportional to the number of elements.
Better memory utilization: Balanced trees tend to be more compact than unbalanced trees, leading to more efficient memory usage.
Dynamic data structures: Self-balancing trees adapt well to changing data, making them suitable for applications with frequent insertions and deletions.

Overall, self-balancing trees are powerful data structures that offer efficient operations and dynamic adaptation for real-world applications.