test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
10,000 add randomly | 125.60 | 7.96 | 0.00 |
10,000 add & delete randomly | 181.22 | 5.52 | 0.00 |
10,000 addMany | 134.12 | 7.46 | 0.01 |
10,000 get | 55.08 | 18.16 | 0.01 |
# data-structure-typed ![npm](https://img.shields.io/npm/dm/data-structure-typed) ![GitHub contributors](https://img.shields.io/github/contributors/zrwusa/data-structure-typed) ![npm package minimized gzipped size (select exports)](https://img.shields.io/bundlejs/size/data-structure-typed) ![GitHub top language](https://img.shields.io/github/languages/top/zrwusa/data-structure-typed) ![GITHUB Star](https://img.shields.io/github/stars/zrwusa/data-structure-typed) ![eslint](https://aleen42.github.io/badges/src/eslint.svg) ![NPM](https://img.shields.io/npm/l/data-structure-typed) ![npm](https://img.shields.io/npm/v/data-structure-typed) [//]: # (![npm bundle size](https://img.shields.io/bundlephobia/min/data-structure-typed)) [//]: # (
) ## Why Do you envy C++ with [STL]() (std::), Python with [collections](), and Java with [java.util]() ? Well, no need to envy anymore! JavaScript and TypeScript now have [data-structure-typed]().**`Benchmark`** compared with C++ STL. **`API standards`** aligned with ES6 and Java. **`Usability`** is comparable to Python [//]: # (![Branches](https://img.shields.io/badge/branches-55.47%25-red.svg?style=flat)) [//]: # (![Statements](https://img.shields.io/badge/statements-67%25-red.svg?style=flat)) [//]: # (![Functions](https://img.shields.io/badge/functions-66.38%25-red.svg?style=flat)) [//]: # (![Lines](https://img.shields.io/badge/lines-68.6%25-red.svg?style=flat)) ### We provide data structures that are not available in JS/TS Heap, Binary Tree, Red Black Tree, Linked List, Deque, Trie, Directed Graph, Undirected Graph, BST, AVL Tree, Priority Queue, Queue, Tree Multiset. ### Performance surpasses that of native JS/TSMethod | Time Taken | Data Scale | Belongs To | Complexity |
---|---|---|---|---|
Queue.push & shift | 5.83 ms | 100,000 | Ours | O(1) |
Array.push & shift | 2829.59 ms | 100,000 | Native JS | O(n) |
Deque.unshift & shift | 2.44 ms | 100,000 | Ours | O(1) |
Array.unshift & shift | 4750.37 ms | 100,000 | Native JS | O(n) |
HashMap.set | 122.51 ms | 1,000,000 | Ours | O(1) |
Map.set | 223.80 ms | 1,000,000 | Native JS | O(1) |
Set.add | 185.06 ms | 1,000,000 | Native JS | O(1) |
Data Structure | Unit Test | Performance Test | API Docs |
---|---|---|---|
Binary Tree | View | ||
Binary Search Tree (BST) | View | ||
AVL Tree | View | ||
Red Black Tree | View | ||
Tree Multimap | View | ||
Heap | View | ||
Priority Queue | View | ||
Max Priority Queue | View | ||
Min Priority Queue | View | ||
Trie | View | ||
Graph | View | ||
Directed Graph | View | ||
Undirected Graph | View | ||
Queue | View | ||
Deque | View | ||
Hash Map | View | ||
Linked List | View | ||
Singly Linked List | View | ||
Doubly Linked List | View | ||
Stack | View | ||
Segment Tree | View | ||
Binary Indexed Tree | View |
Data Structure Typed | C++ STL | java.util | Python collections |
---|---|---|---|
Heap<E> | - | - | heapq |
PriorityQueue<E> | priority_queue<T> | PriorityQueue<E> | - |
Deque<E> | deque<T> | ArrayDeque<E> | deque |
Queue<E> | queue<T> | Queue<E> | - |
HashMap<K, V> | unordered_map<K, V> | HashMap<K, V> | defaultdict |
DoublyLinkedList<E> | list<T> | LinkedList<E> | - |
SinglyLinkedList<E> | - | - | - |
BinaryTree<K, V> | - | - | - |
BST<K, V> | - | - | - |
RedBlackTree<E> | set<T> | TreeSet<E> | - |
RedBlackTree<K, V> | map<K, V> | TreeMap<K, V> | - |
TreeMultimap<K, V> | multimap<K, V> | - | - |
TreeMultimap<E> | multiset<T> | - | - |
Trie | - | - | - |
DirectedGraph<V, E> | - | - | - |
UndirectedGraph<V, E> | - | - | - |
PriorityQueue<E> | priority_queue<T> | PriorityQueue<E> | - |
Array<E> | vector<T> | ArrayList<E> | list |
Stack<E> | stack<T> | Stack<E> | - |
HashMap<E> | unordered_set<T> | HashSet<E> | set |
- | unordered_multiset | - | Counter |
LinkedHashMap<K, V> | - | LinkedHashMap<K, V> | OrderedDict |
- | unordered_multimap<K, V> | - | - |
- | bitset<N> | - | - |
Algorithm | Function Description | Iteration Type |
---|---|---|
Binary Tree DFS | Traverse a binary tree in a depth-first manner, starting from the root node, first visiting the left subtree, and then the right subtree, using recursion. | Recursion + Iteration |
Binary Tree BFS | Traverse a binary tree in a breadth-first manner, starting from the root node, visiting nodes level by level from left to right. | Iteration |
Graph DFS | Traverse a graph in a depth-first manner, starting from a given node, exploring along one path as deeply as possible, and backtracking to explore other paths. Used for finding connected components, paths, etc. | Recursion + Iteration |
Binary Tree Morris | Morris traversal is an in-order traversal algorithm for binary trees with O(1) space complexity. It allows tree traversal without additional stack or recursion. | Iteration |
Graph BFS | Traverse a graph in a breadth-first manner, starting from a given node, first visiting nodes directly connected to the starting node, and then expanding level by level. Used for finding shortest paths, etc. | Recursion + Iteration |
Graph Tarjan's Algorithm | Find strongly connected components in a graph, typically implemented using depth-first search. | Recursion |
Graph Bellman-Ford Algorithm | Finding the shortest paths from a single source, can handle negative weight edges | Iteration |
Graph Dijkstra's Algorithm | Finding the shortest paths from a single source, cannot handle negative weight edges | Iteration |
Graph Floyd-Warshall Algorithm | Finding the shortest paths between all pairs of nodes | Iteration |
Graph getCycles | Find all cycles in a graph or detect the presence of cycles. | Recursion |
Graph getCutVertices | Find cut vertices in a graph, which are nodes that, when removed, increase the number of connected components in the graph. | Recursion |
Graph getSCCs | Find strongly connected components in a graph, which are subgraphs where any two nodes can reach each other. | Recursion |
Graph getBridges | Find bridges in a graph, which are edges that, when removed, increase the number of connected components in the graph. | Recursion |
Graph topologicalSort | Perform topological sorting on a directed acyclic graph (DAG) to find a linear order of nodes such that all directed edges go from earlier nodes to later nodes. | Recursion |
Principle | Description |
---|---|
Practicality | Follows ES6 and ESNext standards, offering unified and considerate optional parameters, and simplifies method names. |
Extensibility | Adheres to OOP (Object-Oriented Programming) principles, allowing inheritance for all data structures. |
Modularization | Includes data structure modularization and independent NPM packages. |
Efficiency | All methods provide time and space complexity, comparable to native JS performance. |
Maintainability | Follows open-source community development standards, complete documentation, continuous integration, and adheres to TDD (Test-Driven Development) patterns. |
Testability | Automated and customized unit testing, performance testing, and integration testing. |
Portability | Plans for porting to Java, Python, and C++, currently achieved to 80%. |
Reusability | Fully decoupled, minimized side effects, and adheres to OOP. |
Security | Carefully designed security for member variables and methods. Read-write separation. Data structure software does not need to consider other security aspects. |
Scalability | Data structure software does not involve load issues. |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
10,000 add randomly | 125.60 | 7.96 | 0.00 |
10,000 add & delete randomly | 181.22 | 5.52 | 0.00 |
10,000 addMany | 134.12 | 7.46 | 0.01 |
10,000 get | 55.08 | 18.16 | 0.01 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
10,000 RBTree add | 6.17 | 161.95 | 0.00 |
10,000 RBTree add & delete randomly | 16.07 | 62.22 | 2.62e-4 |
10,000 RBTree get | 19.86 | 50.36 | 2.44e-4 |
10,000 AVLTree add | 134.38 | 7.44 | 0.02 |
10,000 AVLTree add & delete randomly | 207.20 | 4.83 | 0.06 |
10,000 AVLTree get | 0.98 | 1015.54 | 2.73e-5 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
100,000 add | 86.65 | 11.54 | 0.02 |
100,000 add & delete randomly | 221.02 | 4.52 | 0.03 |
100,000 getNode | 190.54 | 5.25 | 0.00 |
100,000 add & iterator | 122.10 | 8.19 | 0.01 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
1,000 addVertex | 0.11 | 8896.51 | 2.63e-5 |
1,000 addEdge | 6.53 | 153.21 | 0.00 |
1,000 getVertex | 0.05 | 2.08e+4 | 1.06e-5 |
1,000 getEdge | 27.53 | 36.33 | 0.01 |
tarjan | 224.53 | 4.45 | 0.01 |
topologicalSort | 184.02 | 5.43 | 0.00 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
1,000,000 set | 126.27 | 7.92 | 0.05 |
Native Map 1,000,000 set | 229.80 | 4.35 | 0.03 |
Native Set 1,000,000 add | 175.83 | 5.69 | 0.01 |
1,000,000 set & get | 121.34 | 8.24 | 0.03 |
Native Map 1,000,000 set & get | 290.80 | 3.44 | 0.03 |
Native Set 1,000,000 add & has | 180.71 | 5.53 | 0.01 |
1,000,000 ObjKey set & get | 357.68 | 2.80 | 0.07 |
Native Map 1,000,000 ObjKey set & get | 310.57 | 3.22 | 0.06 |
Native Set 1,000,000 ObjKey add & has | 278.42 | 3.59 | 0.05 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
100,000 add & poll | 24.85 | 40.24 | 0.00 |
100,000 add & dfs | 33.14 | 30.17 | 0.00 |
10,000 fib add & pop | 366.11 | 2.73 | 0.00 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
1,000,000 push | 217.98 | 4.59 | 0.07 |
1,000,000 unshift | 223.20 | 4.48 | 0.08 |
1,000,000 unshift & shift | 172.87 | 5.78 | 0.03 |
1,000,000 addBefore | 387.13 | 2.58 | 0.20 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
1,000,000 push & shift | 225.13 | 4.44 | 0.07 |
10,000 push & pop | 234.54 | 4.26 | 0.02 |
10,000 addBefore | 252.62 | 3.96 | 0.00 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
100,000 add & poll | 76.49 | 13.07 | 0.00 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
1,000,000 push | 13.20 | 75.75 | 2.79e-4 |
1,000,000 push & pop | 22.21 | 45.03 | 3.27e-4 |
100,000 push & shift | 2.26 | 442.24 | 1.43e-4 |
Native Array 100,000 push & shift | 2329.51 | 0.43 | 0.10 |
100,000 unshift & shift | 2.16 | 463.83 | 8.20e-5 |
Native Array 100,000 unshift & shift | 4590.64 | 0.22 | 0.33 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
1,000,000 push | 49.92 | 20.03 | 0.02 |
100,000 push & shift | 5.07 | 197.28 | 5.86e-4 |
Native Array 100,000 push & shift | 2315.78 | 0.43 | 0.13 |
Native Array 100,000 push & pop | 4.37 | 228.72 | 1.32e-4 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
1,000,000 push | 44.50 | 22.47 | 0.01 |
1,000,000 push & pop | 53.57 | 18.67 | 0.02 |
test name | time taken (ms) | executions per sec | sample deviation |
---|---|---|---|
100,000 push | 42.95 | 23.28 | 6.68e-4 |
100,000 getWords | 92.11 | 10.86 | 0.01 |