Programming/Algorithms: Difference between revisions
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| DFS, recursive || || || O(V + E) || O(V) | | DFS, recursive || || || O(V + E) || O(V) | ||
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| Dijkstra || || || || | |||
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| A* || || || O(E) = O(b^d) || O(V) = O(b^d) | |||
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Revision as of 08:02, 19 January 2023
Pseudocode
Binary Tree Search
Iterative-Tree-Search(x, key) while x ≠ NIL and key ≠ x.key then if key < x.key then x := x.left else x := x.right end if repeat return x
BFS
procedure BFS(G, root) is let Q be a queue label root as explored Q.enqueue(root) while Q is not empty do v := Q.dequeue() if v is the goal then return v for all edges from v to w in G.adjacentEdges(v) do if w is not labeled as explored then label w as explored w.parent := v Q.enqueue(w)
DFS
procedure DFS(G, v) is label v as discovered for all directed edges from v to w that are in G.adjacentEdges(v) do if vertex w is not labeled as discovered then recursively call DFS(G, w)
procedure DFS_iterative(G, v) is let S be a stack S.push(v) while S is not empty do v = S.pop() if v is not labeled as discovered then label v as discovered for all edges from v to w in G.adjacentEdges(v) do S.push(w)
Dijkstra
function Dijkstra(Graph, source): for each vertex v in Graph.Vertices: dist[v] ← INFINITY prev[v] ← UNDEFINED add v to Q dist[source] ← 0 while Q is not empty: u ← vertex in Q with min dist[u] remove u from Q for each neighbor v of u still in Q: alt ← dist[u] + Graph.Edges(u, v) if alt < dist[v]: dist[v] ← alt prev[v] ← u return dist[], prev[]
Big O Notation
Adapted from Big-O Cheat Sheet
Data Structure | Time Complexity | Space Complexity | Notes | |||
---|---|---|---|---|---|---|
Average -> Worst | ||||||
Access | Search | Insertion | Deletion | |||
Array | Θ(1) -> O(1) | Θ(n) -> O(n) | Θ(n) -> O(n) | Θ(n) -> O(n) | O(n) | |
Stack | Θ(n) -> O(n) | Θ(n) -> O(n) | Θ(1) -> O(n) | Θ(1) -> O(n) | O(n) | |
Queue | Θ(n) -> O(n) | Θ(n) -> O(n) | Θ(1) -> O(n) | Θ(1) -> O(n) | O(n) | |
Linked List | Θ(n) -> O(n) | Θ(n) -> O(n) | Θ(1) -> O(n) | Θ(1) -> O(n) | O(n) | |
Double Linked List | Θ(n) -> O(n) | Θ(n) -> O(n) | Θ(1) -> O(n) | Θ(1) -> O(n) | O(n) | |
Hash Table | N/A | Θ(1) -> O(n) | Θ(1) -> O(n) | Θ(1) -> O(n) | O(n) | |
Binary Search Tree | Θ(log(n)) -> O(n) | Θ(log(n)) -> O(n) | Θ(log(n)) -> O(n) | Θ(log(n)) -> O(n) | O(n) | |
B Tree | Θ(log(n)) -> O(log(n)) | Θ(log(n)) -> O(log(n)) | Θ(log(n)) -> O(log(n)) | Θ(log(n)) -> O(log(n)) | O(n) | Self-balancing |
Data Structure | Time Complexity | Space Complexity | Notes | ||
---|---|---|---|---|---|
Best | Average | Worst | |||
Bubble Sort | Ω(n) | Θ(n^2) | O(n^2) | O(1) | |
Quicksort | Ω(n log(n)) | Θ(n log(n)) | O(n^2) | O(log(n)) | |
Mergesort | Ω(n log(n)) | Θ(n log(n)) | O(n log(n)) | O(n) | |
Insertion Sort | Ω(n) | Θ(n^2) | O(n^2) | O(1) | |
Timsort | Ω(n) | Θ(n log(n)) | O(n log(n)) | O(n) | Combination of Mergesort and Insertion Sort made for Python |
Heapsort | Ω(n log(n)) | Θ(n log(n)) | O(n log(n)) | O(1) |
Data Structure | Time Complexity | Space Complexity | Notes | ||
---|---|---|---|---|---|
Best | Average | Worst | |||
BFS | O(V + E) = O(b^d) | O(V) = O(b^d) | |||
DFS | O(b^d) | O(E) = O(bd) | |||
DFS, recursive | O(V + E) | O(V) | |||
Dijkstra | |||||
A* | O(E) = O(b^d) | O(V) = O(b^d) |