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Data Structures

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data-structures

2f8af436a8271e1a77876030b065993c23274041 Patrick Saunders and Julien Wilson


Data Structures created in Python401

##Simple Graph A directional weighted graph that supports breadth and depth first traversals.

##Binary heap: binheap.py provides a binary heap class with push() and pop() methods. both push() and pop() rely on a hidden _sort() method to keep the heap properly structured.

##Priority Queue Priority Queue: ordered by priority value and order of entry in to Queue.

##Deque Double Ended Queue

##Doubly Linked List A linked list that points in both directions

##Binary Search Tree A tree of nodes sorted by values less than and greater than root branching to the left and right, respectively.

Methods include:

  • insert(self, val): Insert value into tree; if value already exists, ignore it. Method autobalances after insertion, and tree size increments by one.
  • search(self, val): Return node containing that value, else None.
  • size(self): Return number of nodes/vertices in tree, 0 if empty.
  • depth(self): Return number of levels in tree. Tree with one value has depth of 0.
  • contains(self, val): Return True if value is in tree, False if not.
  • balance(self): Return a positive or negative integer representing tree's balance. Trees that are higher on the left than the right should return a positive value; trees that are higher on the right than the left should return a negative value; an ideally-balanced tree should return 0.
  • in_order(self): Return a generator that returns each node value from in-order traversal.
  • pre_order(self): Return a generator that returns each node value from pre-order traversal.
  • post_order(self): Return a generator that returns each node value from post_order traversal.
  • breadth_first(self): Return a generator returns each node value from breadth-first traversal.
  • delete(value): Delete a node's connections (edges), effectively deleting node. Method autobalances after deletion, and tree size decrements by one.

##Hash Table Stores key-value pairs using a given hashing algorithm. Choices for hashing algorithms are additive hash and xor hash. Additive hash sums the Unicode code point for each letter in the word or string, then calls modulo with the number of buckets in the table. XOR hash runs exclusive or with the letters of the word or string.

Methods include: set(key, value): Add a key-value pair to the hash table. get(key): Retrieve a value for the given key.

##Trie Trees Module is an implementation of a trie tree, using nested dictionaries instead of nodes.

Words branch out from root, with root's immediate children being the initial letter of each word. Words can then branch from that initial, as well as from initial substrings.

Methods include: contains(word): Check to see whether a word is in the tree. O(k), where k is the length of the given word. insert(word): Inserts a word into the trie tree. O(k), where k is the length of the given word.

##Merge Sort This implementation of the merge sort algorithm recursively divides the input list into sublists small enough to be sorted on their own, then merges them. When run as a script, a timeit function runs merge_sort() on a list of 200 random integers three times, and returns the run time for each.

Methods include: merge_sort(a_list): Recursively divides list at midpoint, more or less. merge(list1, list2): A helper function to do the comparisons between values.

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Data Structures created in Python401

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