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dbee5f072f
* Update strassen_matrix_multiplication.py * Update matrix_operation.py * Update enigma_machine2.py * Update enigma_machine.py * Update enigma_machine2.py * Update rod_cutting.py * Update external_sort.py * Update sol1.py * Update hill_cipher.py * Update prime_numbers.py * Update integration_by_simpson_approx.py
208 lines
5.8 KiB
Python
208 lines
5.8 KiB
Python
"""
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This module provides two implementations for the rod-cutting problem:
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1. A naive recursive implementation which has an exponential runtime
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2. Two dynamic programming implementations which have quadratic runtime
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The rod-cutting problem is the problem of finding the maximum possible revenue
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obtainable from a rod of length ``n`` given a list of prices for each integral piece
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of the rod. The maximum revenue can thus be obtained by cutting the rod and selling the
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pieces separately or not cutting it at all if the price of it is the maximum obtainable.
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"""
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def naive_cut_rod_recursive(n: int, prices: list):
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"""
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Solves the rod-cutting problem via naively without using the benefit of dynamic
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programming. The results is the same sub-problems are solved several times
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leading to an exponential runtime
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Runtime: O(2^n)
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Arguments
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-------
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n: int, the length of the rod
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prices: list, the prices for each piece of rod. ``p[i-i]`` is the
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price for a rod of length ``i``
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Returns
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-------
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The maximum revenue obtainable for a rod of length n given the list of prices
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for each piece.
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Examples
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--------
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>>> naive_cut_rod_recursive(4, [1, 5, 8, 9])
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10
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>>> naive_cut_rod_recursive(10, [1, 5, 8, 9, 10, 17, 17, 20, 24, 30])
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30
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"""
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_enforce_args(n, prices)
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if n == 0:
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return 0
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max_revue = float("-inf")
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for i in range(1, n + 1):
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max_revue = max(
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max_revue, prices[i - 1] + naive_cut_rod_recursive(n - i, prices)
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)
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return max_revue
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def top_down_cut_rod(n: int, prices: list):
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"""
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Constructs a top-down dynamic programming solution for the rod-cutting
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problem via memoization. This function serves as a wrapper for
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_top_down_cut_rod_recursive
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Runtime: O(n^2)
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Arguments
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--------
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n: int, the length of the rod
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prices: list, the prices for each piece of rod. ``p[i-i]`` is the
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price for a rod of length ``i``
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Note
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----
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For convenience and because Python's lists using 0-indexing, length(max_rev) =
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n + 1, to accommodate for the revenue obtainable from a rod of length 0.
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Returns
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-------
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The maximum revenue obtainable for a rod of length n given the list of prices
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for each piece.
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Examples
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-------
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>>> top_down_cut_rod(4, [1, 5, 8, 9])
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10
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>>> top_down_cut_rod(10, [1, 5, 8, 9, 10, 17, 17, 20, 24, 30])
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30
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"""
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_enforce_args(n, prices)
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max_rev = [float("-inf") for _ in range(n + 1)]
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return _top_down_cut_rod_recursive(n, prices, max_rev)
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def _top_down_cut_rod_recursive(n: int, prices: list, max_rev: list):
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"""
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Constructs a top-down dynamic programming solution for the rod-cutting problem
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via memoization.
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Runtime: O(n^2)
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Arguments
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--------
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n: int, the length of the rod
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prices: list, the prices for each piece of rod. ``p[i-i]`` is the
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price for a rod of length ``i``
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max_rev: list, the computed maximum revenue for a piece of rod.
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``max_rev[i]`` is the maximum revenue obtainable for a rod of length ``i``
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Returns
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-------
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The maximum revenue obtainable for a rod of length n given the list of prices
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for each piece.
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"""
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if max_rev[n] >= 0:
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return max_rev[n]
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elif n == 0:
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return 0
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else:
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max_revenue = float("-inf")
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for i in range(1, n + 1):
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max_revenue = max(
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max_revenue,
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prices[i - 1] + _top_down_cut_rod_recursive(n - i, prices, max_rev),
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)
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max_rev[n] = max_revenue
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return max_rev[n]
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def bottom_up_cut_rod(n: int, prices: list):
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"""
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Constructs a bottom-up dynamic programming solution for the rod-cutting problem
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Runtime: O(n^2)
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Arguments
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----------
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n: int, the maximum length of the rod.
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prices: list, the prices for each piece of rod. ``p[i-i]`` is the
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price for a rod of length ``i``
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Returns
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-------
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The maximum revenue obtainable from cutting a rod of length n given
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the prices for each piece of rod p.
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Examples
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-------
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>>> bottom_up_cut_rod(4, [1, 5, 8, 9])
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10
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>>> bottom_up_cut_rod(10, [1, 5, 8, 9, 10, 17, 17, 20, 24, 30])
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30
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"""
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_enforce_args(n, prices)
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# length(max_rev) = n + 1, to accommodate for the revenue obtainable from a rod of
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# length 0.
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max_rev = [float("-inf") for _ in range(n + 1)]
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max_rev[0] = 0
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for i in range(1, n + 1):
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max_revenue_i = max_rev[i]
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for j in range(1, i + 1):
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max_revenue_i = max(max_revenue_i, prices[j - 1] + max_rev[i - j])
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max_rev[i] = max_revenue_i
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return max_rev[n]
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def _enforce_args(n: int, prices: list):
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"""
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Basic checks on the arguments to the rod-cutting algorithms
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n: int, the length of the rod
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prices: list, the price list for each piece of rod.
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Throws ValueError:
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if n is negative or there are fewer items in the price list than the length of
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the rod
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"""
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if n < 0:
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raise ValueError(f"n must be greater than or equal to 0. Got n = {n}")
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if n > len(prices):
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raise ValueError(
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"Each integral piece of rod must have a corresponding "
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f"price. Got n = {n} but length of prices = {len(prices)}"
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)
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def main():
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prices = [6, 10, 12, 15, 20, 23]
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n = len(prices)
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# the best revenue comes from cutting the rod into 6 pieces, each
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# of length 1 resulting in a revenue of 6 * 6 = 36.
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expected_max_revenue = 36
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max_rev_top_down = top_down_cut_rod(n, prices)
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max_rev_bottom_up = bottom_up_cut_rod(n, prices)
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max_rev_naive = naive_cut_rod_recursive(n, prices)
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assert expected_max_revenue == max_rev_top_down
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assert max_rev_top_down == max_rev_bottom_up
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assert max_rev_bottom_up == max_rev_naive
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if __name__ == "__main__":
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main()
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