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https://gitee.com/coder-xiaomo/leetcode-problemset
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55 lines
6.4 KiB
JSON
55 lines
6.4 KiB
JSON
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"questionId": "3073",
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"questionFrontendId": "2890",
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"categoryTitle": "pandas",
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"boundTopicId": 2467495,
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"title": "Reshape Data: Melt",
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"titleSlug": "reshape-data-melt",
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"content": "<pre>\nDataFrame <code>report</code>\n+-------------+--------+\n| Column Name | Type |\n+-------------+--------+\n| product | object |\n| quarter_1 | int |\n| quarter_2 | int |\n| quarter_3 | int |\n| quarter_4 | int |\n+-------------+--------+\n</pre>\n\n<p>Write a solution to <strong>reshape</strong> the data so that each row represents sales data for a product in a specific quarter.</p>\n\n<p>The result format is in the following example.</p>\n\n<p> </p>\n<p><strong class=\"example\">Example 1:</strong></p>\n\n<pre>\n<strong>Input:\n</strong>+-------------+-----------+-----------+-----------+-----------+\n| product | quarter_1 | quarter_2 | quarter_3 | quarter_4 |\n+-------------+-----------+-----------+-----------+-----------+\n| Umbrella | 417 | 224 | 379 | 611 |\n| SleepingBag | 800 | 936 | 93 | 875 |\n+-------------+-----------+-----------+-----------+-----------+\n<strong>Output:</strong>\n+-------------+-----------+-------+\n| product | quarter | sales |\n+-------------+-----------+-------+\n| Umbrella | quarter_1 | 417 |\n| SleepingBag | quarter_1 | 800 |\n| Umbrella | quarter_2 | 224 |\n| SleepingBag | quarter_2 | 936 |\n| Umbrella | quarter_3 | 379 |\n| SleepingBag | quarter_3 | 93 |\n| Umbrella | quarter_4 | 611 |\n| SleepingBag | quarter_4 | 875 |\n+-------------+-----------+-------+\n<strong>Explanation:</strong>\nThe DataFrame is reshaped from wide to long format. Each row represents the sales of a product in a quarter.\n</pre>\n",
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"translatedTitle": "重塑数据:融合",
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"translatedContent": "<pre>\nDataFrame <code>report</code>\n+-------------+--------+\n| Column Name | Type |\n+-------------+--------+\n| product | object |\n| quarter_1 | int |\n| quarter_2 | int |\n| quarter_3 | int |\n| quarter_4 | int |\n+-------------+--------+\n</pre>\n\n<p>编写一个解决方案,将数据 <strong>重塑</strong> 成每一行表示特定季度产品销售数据的形式。</p>\n\n<p>结果格式如下例所示:</p>\n\n<p> </p>\n\n<p><strong class=\"example\">示例 1:</strong></p>\n\n<pre>\n<strong>输入:\n</strong>+-------------+-----------+-----------+-----------+-----------+\n| product | quarter_1 | quarter_2 | quarter_3 | quarter_4 |\n+-------------+-----------+-----------+-----------+-----------+\n| Umbrella | 417 | 224 | 379 | 611 |\n| SleepingBag | 800 | 936 | 93 | 875 |\n+-------------+-----------+-----------+-----------+-----------+\n<strong>输出:</strong>\n+-------------+-----------+-------+\n| product | quarter | sales |\n+-------------+-----------+-------+\n| Umbrella | quarter_1 | 417 |\n| SleepingBag | quarter_1 | 800 |\n| Umbrella | quarter_2 | 224 |\n| SleepingBag | quarter_2 | 936 |\n| Umbrella | quarter_3 | 379 |\n| SleepingBag | quarter_3 | 93 |\n| Umbrella | quarter_4 | 611 |\n| SleepingBag | quarter_4 | 875 |\n+-------------+-----------+-------+\n<strong>解释:</strong>\nDataFrame 已从宽格式重塑为长格式。每一行表示一个季度内产品的销售情况。\n</pre>\n",
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"langSlug": "pythondata",
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"code": "import pandas as pd\n\ndef meltTable(report: pd.DataFrame) -> pd.DataFrame:\n ",
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"Consider using a built-in function in pandas library to transform the data"
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"sampleTestCase": "{\"headers\":{\"report\":[\"product\",\"quarter_1\",\"quarter_2\",\"quarter_3\",\"quarter_4\"]},\"rows\":{\"report\":[[\"Umbrella\",417,224,379,611],[\"SleepingBag\",800,936,93,875]]}}",
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"exampleTestcases": "{\"headers\":{\"report\":[\"product\",\"quarter_1\",\"quarter_2\",\"quarter_3\",\"quarter_4\"]},\"rows\":{\"report\":[[\"Umbrella\",417,224,379,611],[\"SleepingBag\",800,936,93,875]]}}",
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