算法平均时间最好时间最坏时间空间稳定适用场景冒泡排序O(n²)O(n)O(n²)O(1)✓小数据、教学选择排序O(n²)O(n²)O(n²)O(1)✗小数据、交换代价高插入排序O(n²)O(n)O(n²)O(1)✓小数据、基本有序希尔排序O(n^1.3)O(nlogn)O(n²)O(1)✗中等数据归并排序O(nlogn)O(nlogn)O(nlogn)O(n)✓大数据、要求稳定快速排序O(nlogn)O(nlogn)O(n²)O(logn)✗大数据、通用首选堆排序O(nlogn)O(nlogn)O(nlogn)O(1)✗大数据、空间敏感计数排序O(n+k)O(n+k)O(n+k)O(k)✓整数、范围小基数排序O(d(n+k))O(d(n+k))O(d(n+k))O(n+k)✓整数、位数少桶排序O(n+k)O(n+k)O(n²)O(n+k)✓均匀分布数据
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第十四条 盲人或者又聋又哑的人违反治安管理的,可以从轻、减轻或者不予处罚。。关于这个话题,搜狗输入法2026提供了深入分析
In the months since, I continued my real-life work as a Data Scientist while keeping up-to-date on the latest LLMs popping up on OpenRouter. In August, Google announced the release of their Nano Banana generative image AI with a corresponding API that’s difficult to use, so I open-sourced the gemimg Python package that serves as an API wrapper. It’s not a thrilling project: there’s little room or need for creative implementation and my satisfaction with it was the net present value with what it enabled rather than writing the tool itself. Therefore as an experiment, I plopped the feature-complete code into various up-and-coming LLMs on OpenRouter and prompted the models to identify and fix any issues with the Python code: if it failed, it’s a good test for the current capabilities of LLMs, if it succeeded, then it’s a software quality increase for potential users of the package and I have no moral objection to it. The LLMs actually were helpful: in addition to adding good function docstrings and type hints, it identified more Pythonic implementations of various code blocks.