-
Notifications
You must be signed in to change notification settings - Fork 0
Number of Islands
- 🔗 Leetcode Link: Number of Islands
- 💡 Problem Difficulty: Medium
- ⏰ Time to complete: 20 mins
- 🛠️ Topics: Graphs, Breadth-First Search, Depth-First Search
- 🗒️ Similar Questions: Surrounded Regions, Walls and Gates, Number of Islands II, Number of Distinct Islands
Understand what the interviewer is asking for by using test cases and questions about the problem.
- Established a set (2-3) of test cases to verify their own solution later.
- Established a set (1-2) of edge cases to verify their solution handles complexities.
- Have fully understood the problem and have no clarifying questions.
- Have you verified any Time/Space Constraints for this problem?
-
What are the constraints?
-
m
== grid.length (number of rows) -
n
== grid[i].length (number of columns) - 1 <=
m
,n
<= 300 -
grid[i][j]
is '0' or '1'
-
-
Can we simply iterate through the grid and count each time that there isn’t a 1 to the left or above another 1?
- That won’t actually work though because there can be islands with isolated cells that have 0s above and to the left, but are still part of the island.
-
What is the definition of an island?
- One or more pieces of land ('1') connected horizontally or vertically
HAPPY CASE
Input: [["1","1","1","1","0"],["1","1","0","1","0"],["1","1","0","0","0"],["0","0","0","0","0"]]
Output: 1
Input: [["1","1","0","0","0"],["1","1","0","0","0"],["0","0","1","0","0"],["0","0","0","1","1"]]
Output: 3
EDGE CASE
Input: [["0","0","1","0","0"],["0","0","0","0","0"],["0","0","0","0","0"],["0","0","1","0","0"]]
Output: 2
Match what this problem looks like to known categories of problems, e.g. Linked List or Dynamic Programming, and strategies or patterns in those categories.
For this graph problem, some things we want to consider are:
- DFS: The idea is to consider the given matrix as a graph, where each cell is a node of the given graph. Two nodes contain an edge if and only if there is a ‘1’ either horizontally or vertically.
- Union Find: Are there find and union operations here? Can you perform a find operation where you can determine which subset a particular element is in? This can be used for determining if two elements are in the same subset. Can you perform a union operation where you join two subsets into a single subset? Can you check if the two subsets belong to same set? If no, then we cannot perform union. We can imagine each set is a single island and two pieces of land should be merged if they are adjacent.
- BFS: We cannot use BFS to traverse the graph because we may visit exit nodes in the first traversal.
- Adjacency List: We can use an adjacency list to store the graph, especially when the graph is sparse.
- Adjacency Matrix: We can use an adjacency matrix to store the graph, but a sparse graph will cause an unneeded worst-case runtime.
- Topological Sort: We can use topological sort when a directed graph is used and returns an array of the nodes where each node appears before all the nodes it points to. In order to have a topological sorting, the graph must not contain any cycles.
Plan the solution with appropriate visualizations and pseudocode.
General Idea: iteratively search the neighbors of enqueued nodes until the queue becomes empty.
1. Take visited[m][m] boolean array and initialize all values to false
- Set parent[i] = i for all elements
2. For each element of the grid
- Check boundary conditions. If this element is '1'
a. If the left neighbor is '1', call union
b. If the upper neighbor is '1', call union
3. Return the number of islands (sets)
- When we are checking neighbors, we might end up filling queue with duplicate cells having '1' which will cause time limit exceeded error. To fix this problem, we can convert all 1s neighbors to 0s before adding them to the queue.
Implement the code to solve the algorithm.
public int numIslands(char[][] grid) {
// return 0 if grid is empty or out of bounds
if(grid == null || grid.length < 1 || grid[0].length < 1){
return 0;
}
// initialize variables
int row = grid.length;
int col = grid[0].length;
int[] root = new int[row * col];
Arrays.fill(root, -1);
int n = 0;
for(int i = 0; i < row; i++){
for(int j = 0; j < col; j++){
root[i*col + j] = i*col + j;
if(grid[i][j] == '1'){
n++;
}
}
}
// Check boundary conditions
for(int i = 0; i < row; i++){
for(int j = 0; j < col; j++){
if(grid[i][j] == '1'){
int p = i * col + j;
int q;
if((i+1) < row && grid[i+1][j] == '1'){
q = p + col;
n = union(root, p, q, n);
}
if((j+1) < col && grid[i][j+1] == '1'){
q = p + 1;
n = union(root, p, q, n);
}
}
}
}
// return the number of islands
return n;
}
private int union(int[] root, int p, int q, int count){
int proot = find(root, p);
int qroot = find(root, q);
if(proot!= qroot){
root[proot] = qroot;
count--;
}
return count;
}
private int find(int[] root, int p){
while(p != root[p]){
root[p] = root[root[p]];
p = root[p];
}
return p;
}
def numIslands(self, grid: List[List[str]]) -> int:
# keep track of row and column lengths of grid to access later
m = len(grid)
n = len(grid[0])
def destroyIsland(r,c): # recursive DFS helper
grid[r][c] = "2" # set this spot to a different value to avoid infinite loops
for (row,col) in [(r-1,c),(r+1,c),(r,c-1),(r,c+1)]: # 4-dimensionally adjacent locations
if 0 <= row < m and 0 <= col < n and grid[row][col] == "1": # if not out of bounds and part of the island
destroyIsland(row,col) # destroy the rest of the island (set to "2")
ans = 0 # answer
for i, row in enumerate(grid): # get rows from grid
for j, element in enumerate(row): # go through the row
if element == "1": # if we hid land
destroyIsland(i,j) # destroy this island
ans += 1 # we found an island
return ans
Review the code by running specific example(s) and recording values (watchlist) of your code's variables along the way.
- Trace through your code with an input to check for the expected output
- Catch possible edge cases and off-by-one errors and verify the code works for the happy and edge cases you created in the “Understand” section
Evaluate the performance of your algorithm and state any strong/weak or future potential work.
Calculate complexity in terms of:
- the number of grid elements, `V`
- the size of the maximum island, `I`
Time complexity:
- `O(V)` to build array
- `O(V)` iterations
- `O(log I)` for union operation
- Total: **O(V log I)**
- Can ensure `O(V log V)` by tuning union function
Space complexity: O(V)