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4700297b3e
* Enable ruff RUF002 rule * Fix --------- Co-authored-by: Christian Clauss <cclauss@me.com>
189 lines
5.5 KiB
Python
189 lines
5.5 KiB
Python
"""
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Question:
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Given a binary matrix mat of size n * m, find out the maximum size square
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sub-matrix with all 1s.
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---
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Example 1:
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Input:
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n = 2, m = 2
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mat = [[1, 1],
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[1, 1]]
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Output:
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2
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Explanation: The maximum size of the square
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sub-matrix is 2. The matrix itself is the
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maximum sized sub-matrix in this case.
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---
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Example 2
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Input:
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n = 2, m = 2
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mat = [[0, 0],
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[0, 0]]
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Output: 0
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Explanation: There is no 1 in the matrix.
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Approach:
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We initialize another matrix (dp) with the same dimensions
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as the original one initialized with all 0's.
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dp_array(i,j) represents the side length of the maximum square whose
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bottom right corner is the cell with index (i,j) in the original matrix.
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Starting from index (0,0), for every 1 found in the original matrix,
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we update the value of the current element as
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dp_array(i,j)=dp_array(dp(i-1,j),dp_array(i-1,j-1),dp_array(i,j-1)) + 1.
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"""
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def largest_square_area_in_matrix_top_down_approch(
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rows: int, cols: int, mat: list[list[int]]
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) -> int:
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"""
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Function updates the largest_square_area[0], if recursive call found
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square with maximum area.
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We aren't using dp_array here, so the time complexity would be exponential.
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>>> largest_square_area_in_matrix_top_down_approch(2, 2, [[1,1], [1,1]])
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2
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>>> largest_square_area_in_matrix_top_down_approch(2, 2, [[0,0], [0,0]])
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0
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"""
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def update_area_of_max_square(row: int, col: int) -> int:
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# BASE CASE
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if row >= rows or col >= cols:
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return 0
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right = update_area_of_max_square(row, col + 1)
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diagonal = update_area_of_max_square(row + 1, col + 1)
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down = update_area_of_max_square(row + 1, col)
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if mat[row][col]:
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sub_problem_sol = 1 + min([right, diagonal, down])
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largest_square_area[0] = max(largest_square_area[0], sub_problem_sol)
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return sub_problem_sol
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else:
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return 0
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largest_square_area = [0]
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update_area_of_max_square(0, 0)
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return largest_square_area[0]
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def largest_square_area_in_matrix_top_down_approch_with_dp(
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rows: int, cols: int, mat: list[list[int]]
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) -> int:
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"""
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Function updates the largest_square_area[0], if recursive call found
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square with maximum area.
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We are using dp_array here, so the time complexity would be O(N^2).
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>>> largest_square_area_in_matrix_top_down_approch_with_dp(2, 2, [[1,1], [1,1]])
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2
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>>> largest_square_area_in_matrix_top_down_approch_with_dp(2, 2, [[0,0], [0,0]])
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0
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"""
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def update_area_of_max_square_using_dp_array(
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row: int, col: int, dp_array: list[list[int]]
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) -> int:
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if row >= rows or col >= cols:
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return 0
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if dp_array[row][col] != -1:
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return dp_array[row][col]
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right = update_area_of_max_square_using_dp_array(row, col + 1, dp_array)
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diagonal = update_area_of_max_square_using_dp_array(row + 1, col + 1, dp_array)
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down = update_area_of_max_square_using_dp_array(row + 1, col, dp_array)
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if mat[row][col]:
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sub_problem_sol = 1 + min([right, diagonal, down])
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largest_square_area[0] = max(largest_square_area[0], sub_problem_sol)
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dp_array[row][col] = sub_problem_sol
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return sub_problem_sol
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else:
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return 0
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largest_square_area = [0]
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dp_array = [[-1] * cols for _ in range(rows)]
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update_area_of_max_square_using_dp_array(0, 0, dp_array)
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return largest_square_area[0]
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def largest_square_area_in_matrix_bottom_up(
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rows: int, cols: int, mat: list[list[int]]
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) -> int:
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"""
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Function updates the largest_square_area, using bottom up approach.
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>>> largest_square_area_in_matrix_bottom_up(2, 2, [[1,1], [1,1]])
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2
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>>> largest_square_area_in_matrix_bottom_up(2, 2, [[0,0], [0,0]])
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0
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"""
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dp_array = [[0] * (cols + 1) for _ in range(rows + 1)]
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largest_square_area = 0
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for row in range(rows - 1, -1, -1):
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for col in range(cols - 1, -1, -1):
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right = dp_array[row][col + 1]
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diagonal = dp_array[row + 1][col + 1]
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bottom = dp_array[row + 1][col]
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if mat[row][col] == 1:
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dp_array[row][col] = 1 + min(right, diagonal, bottom)
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largest_square_area = max(dp_array[row][col], largest_square_area)
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else:
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dp_array[row][col] = 0
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return largest_square_area
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def largest_square_area_in_matrix_bottom_up_space_optimization(
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rows: int, cols: int, mat: list[list[int]]
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) -> int:
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"""
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Function updates the largest_square_area, using bottom up
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approach. with space optimization.
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>>> largest_square_area_in_matrix_bottom_up_space_optimization(2, 2, [[1,1], [1,1]])
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2
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>>> largest_square_area_in_matrix_bottom_up_space_optimization(2, 2, [[0,0], [0,0]])
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0
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"""
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current_row = [0] * (cols + 1)
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next_row = [0] * (cols + 1)
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largest_square_area = 0
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for row in range(rows - 1, -1, -1):
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for col in range(cols - 1, -1, -1):
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right = current_row[col + 1]
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diagonal = next_row[col + 1]
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bottom = next_row[col]
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if mat[row][col] == 1:
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current_row[col] = 1 + min(right, diagonal, bottom)
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largest_square_area = max(current_row[col], largest_square_area)
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else:
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current_row[col] = 0
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next_row = current_row
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return largest_square_area
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if __name__ == "__main__":
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import doctest
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doctest.testmod()
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print(largest_square_area_in_matrix_bottom_up(2, 2, [[1, 1], [1, 1]]))
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