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+[\<- 05/13](05-13.md)
+
+---
+
+# Priority Queue
+
+In a priority queue, an element with **high priority** is served before an element with low priority. If two elements have the same priority, they are served **according to their order** in the queue
+
+### Example
+
+- A priority queue example: Emergency room
+ - FIFO
+ - in case of emergency, a patient can be given priority
+
+## Priority Queue & Queue
+
+- In a queue, all the keys are ordered only according to when they enter the queue. Such order is not related to their priorities (e.g. values)
+
+- In a priority queue, both the **key priorities** (e.g. values) and **their order** of entering the queue are considered. In addition, priority plays a more important role
+
+## Implementation
+
+- Assume you are required to organize a sequence as 5,20,18,10,3,18,20 in a priority queue. What is the dequeue sequence? (i.e. lower value indicating higher priority)
+ - 3, 5, 10, 18, 18, 20, 20
+
+- How to implement a priority queue?
+ - Can we use sorted array? What are the worst-case big-O for enqueue and dequeue?
+ - Enqueue will involve shifting -> O(n)
+ - Dequeue can function as a circular queue -> O(1)
+ - Can we use sorted linked list? What are the worst-case big-O for enqueue and dequeue?
+ - Enqueue involves traversal -> O(n)
+ - Dequeue is O(1)
+ - No benefits with linked list
+ - Can we do better? YES
+ - **Binary Heap**
+
+# Heap
+
+- A heap is a **binary tree** with two properties:
+ 1. It's a complete (or nearly complete) tree in that it is built left-to-right and top-down (the shape)
+ 2. It's heap ordered: the root of every subtree is the **maximum value** in that subtree (the order)
+
+- Technically these are called "max heaps" and we can also have "min heaps"
+
+## Insertion
+
+- The largest value in a binary max-heap is always the **root**
+- Q: How do we insert a value into a max heap?
+- A: We
+ - insert the new node so as to **not break the shape of the tree**
+ - We might **break the heap order**, so we then fix it
+
+- To not break the shape, we insert the new node as the **next leaf from left to right** on the lowest level
+- This may break the heap order, so we **fix the heap** nodes by repeatedly swapping the new value with its new parent - We call this process as reheap up
+- ex. insert 30, 70, 50, 10, 20, 80, 40
+- What is the big O?
+ - O(h)
+
+- Insertion is O(h), but h is always log(n), so insert is O(log(n))
+
+## Deletion
+
+- Q: How do we delete a value from a heap?
+- A: We must first find it, so **we generally always delete the maximum value** because it's at the root
+ - We first replace the root with the last value on the lowest level, so as to preserve the shape
+ - This process may break the heap order, so we fix it by repeatedly swapping the upstart value with its larger child. Why not smaller child?
+ - "reheap down"
+
+- What is big O?
+ - O(h) = O(log(n))
+
+- Deletion (of the root) is also O(log(n))
+
+## Implementation
+
+- We will implement our heap using an **array**
+- Let's look at implementing a heap
+
+![heap example](05-15_img1.png)
+
+|Value |44|18|33|6|14|32|27|-|-|
+|---------|--|--|--|-|--|--|--|-|-|
+|**Index**|0|1|2|3|4|5|6|7|8|
+
+- Specifically, if the parent's node's index is i
+ - left child is of i is `2*i + 1`
+ - right child of i is `2*i + 2`
+ - parent of i is `(i-1)/2`
+
+- Example: Node 14 -> index = 4
+ - parent should be index `(4-1)/2)` = 1
+
+binary heaps work because of **no holes**, and are a great example of an implicit data structure that uses no extra space to let you know where everything is
+
+## When to use Heap?
+
+- Generally speaking, a heap can be used whenever you need **quick access** to the largest (or smallest) item, because that item will always be the first element in the array or at the root of the tree
+- It's not good for searching, since the remainder of the array is kept partially unsorted
+- Some examples of heap: priority queue, Huffman coding, heap sort, etc.