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                ##### 線程池大小的選擇策略 * 計算密集型任務 線程數:CPU核的數目 N 或者 N+1 * IO密集型任務 ![](https://img.kancloud.cn/08/9a/089aa3b465af313a141a4bb656b010f8_968x340.png) 線程數 = CPU核數 × 目標CPU利用率 ×(1 + 平均等待時間/平均工作時間)
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