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3ea91bda99
* Use int instead of float for the example code of log time complexity * Bug fixes * Bug fixes
172 lines
4.2 KiB
Swift
172 lines
4.2 KiB
Swift
/**
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* File: time_complexity.swift
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* Created Time: 2022-12-26
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* Author: nuomi1 (nuomi1@qq.com)
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*/
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/* 常数阶 */
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func constant(n: Int) -> Int {
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var count = 0
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let size = 100_000
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for _ in 0 ..< size {
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count += 1
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}
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return count
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}
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/* 线性阶 */
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func linear(n: Int) -> Int {
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var count = 0
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for _ in 0 ..< n {
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count += 1
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}
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return count
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}
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/* 线性阶(遍历数组) */
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func arrayTraversal(nums: [Int]) -> Int {
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var count = 0
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// 循环次数与数组长度成正比
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for _ in nums {
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count += 1
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}
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return count
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}
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/* 平方阶 */
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func quadratic(n: Int) -> Int {
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var count = 0
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// 循环次数与数据大小 n 成平方关系
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for _ in 0 ..< n {
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for _ in 0 ..< n {
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count += 1
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}
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}
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return count
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}
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/* 平方阶(冒泡排序) */
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func bubbleSort(nums: inout [Int]) -> Int {
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var count = 0 // 计数器
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// 外循环:未排序区间为 [0, i]
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for i in nums.indices.dropFirst().reversed() {
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// 内循环:将未排序区间 [0, i] 中的最大元素交换至该区间的最右端
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for j in 0 ..< i {
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if nums[j] > nums[j + 1] {
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// 交换 nums[j] 与 nums[j + 1]
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let tmp = nums[j]
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nums[j] = nums[j + 1]
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nums[j + 1] = tmp
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count += 3 // 元素交换包含 3 个单元操作
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}
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}
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}
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return count
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}
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/* 指数阶(循环实现) */
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func exponential(n: Int) -> Int {
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var count = 0
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var base = 1
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// 细胞每轮一分为二,形成数列 1, 2, 4, 8, ..., 2^(n-1)
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for _ in 0 ..< n {
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for _ in 0 ..< base {
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count += 1
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}
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base *= 2
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}
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// count = 1 + 2 + 4 + 8 + .. + 2^(n-1) = 2^n - 1
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return count
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}
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/* 指数阶(递归实现) */
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func expRecur(n: Int) -> Int {
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if n == 1 {
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return 1
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}
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return expRecur(n: n - 1) + expRecur(n: n - 1) + 1
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}
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/* 对数阶(循环实现) */
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func logarithmic(n: Int) -> Int {
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var count = 0
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var n = n
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while n > 1 {
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n = n / 2
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count += 1
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}
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return count
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}
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/* 对数阶(递归实现) */
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func logRecur(n: Int) -> Int {
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if n <= 1 {
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return 0
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}
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return logRecur(n: n / 2) + 1
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}
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/* 线性对数阶 */
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func linearLogRecur(n: Int) -> Int {
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if n <= 1 {
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return 1
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}
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var count = linearLogRecur(n: n / 2) + linearLogRecur(n: n / 2)
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for _ in stride(from: 0, to: n, by: 1) {
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count += 1
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}
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return count
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}
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/* 阶乘阶(递归实现) */
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func factorialRecur(n: Int) -> Int {
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if n == 0 {
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return 1
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}
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var count = 0
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// 从 1 个分裂出 n 个
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for _ in 0 ..< n {
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count += factorialRecur(n: n - 1)
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}
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return count
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}
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@main
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enum TimeComplexity {
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/* Driver Code */
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static func main() {
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// 可以修改 n 运行,体会一下各种复杂度的操作数量变化趋势
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let n = 8
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print("输入数据大小 n = \(n)")
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var count = constant(n: n)
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print("常数阶的操作数量 = \(count)")
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count = linear(n: n)
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print("线性阶的操作数量 = \(count)")
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count = arrayTraversal(nums: Array(repeating: 0, count: n))
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print("线性阶(遍历数组)的操作数量 = \(count)")
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count = quadratic(n: n)
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print("平方阶的操作数量 = \(count)")
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var nums = Array(stride(from: n, to: 0, by: -1)) // [n,n-1,...,2,1]
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count = bubbleSort(nums: &nums)
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print("平方阶(冒泡排序)的操作数量 = \(count)")
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count = exponential(n: n)
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print("指数阶(循环实现)的操作数量 = \(count)")
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count = expRecur(n: n)
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print("指数阶(递归实现)的操作数量 = \(count)")
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count = logarithmic(n: n)
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print("对数阶(循环实现)的操作数量 = \(count)")
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count = logRecur(n: n)
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print("对数阶(递归实现)的操作数量 = \(count)")
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count = linearLogRecur(n: n)
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print("线性对数阶(递归实现)的操作数量 = \(count)")
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count = factorialRecur(n: n)
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print("阶乘阶(递归实现)的操作数量 = \(count)")
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}
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}
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