pandas 透视表中文字段排序

前几天有一个需求,透视表中的年级这一列要按照一年级,二年级这样的序列进行排序,但是用过透视表的人都知道,透视表对中文的排序不是太理想,放弃pandas自带的排序方法。测试了很久,想到一个办法。先把dataframe中需要特殊排序的列中的汉字转换成数字,然后生成透视表,生成透视表之后,再把透视表的index或者columns中的数字替换成相应的汉字,透视表的结果就会按照你想要的顺序进行排序。

    def get_special_sort_data(self, groupby, columns):
        # 获取需要特殊处理的字段的信息
        special_sort_cols = None
        cols_in_index_or_column = None     # 判断特殊排序字段在index还是column中
        if self.datasource.has_special_sort_cols:
            # 获取表需要处理的特殊字段信息
            special_sort_cols = self.datasource.get_sort_columns()  # {"grade_name": {}}

            if special_sort_cols:
                i_intersection = list(set(groupby) & set(special_sort_cols.keys()))
                c_intersection = list(set(columns) & set(special_sort_cols.keys()))
                if i_intersection:
                    cols_in_index_or_column = ('index', i_intersection)
                elif c_intersection:
                    cols_in_index_or_column = ('column', c_intersection)
        return cols_in_index_or_column, special_sort_cols
cols_in_index_or_column, special_sort_cols = self.get_special_sort_data(groupby, columns) # special_sort_cols:{"grade_name": {"一年级": 1, "二年级":2, "三年级": 3 ....}}

if cols_in_index_or_column:
    for col in cols_in_index_or_column[1]:
        df[col] = df[col].replace(special_sort_cols.get(col))     # 替换df

# 获取透视表
if cols_in_index_or_column:
       if cols_in_index_or_column[0] == 'index':
             if len(groupby) == 1:
                 col_name = cols_in_index_or_column[1][0]
                 sort_info = special_sort_cols.get(col_name)
                 r_sort_info = {v:k for k, v in zip(sort_info.keys(), sort_info.values())}
                 index_1 = df.index.tolist()
                 index_1 = [r_sort_info.get(item) for item in index_1]
                 df.index = Index(index_1, name=df.index.name)
             else:
                 for item in cols_in_index_or_column[1]:
                     ix = df.index.names.index(item)
                     index_1 = df.index.levels[ix].tolist()
                     sort_info = special_sort_cols.get(item)
                     r_sort_info = {v: k for k, v in zip(sort_info.keys(), sort_info.values())}
                     index_1 = [r_sort_info.get(item) for item in index_1]
                     df.index = df.index.set_levels(index_1, level=ix)
      else:
           for item in cols_in_index_or_column[1]:
                ix = df.columns.names.index(item)
                col_1 = df.columns.levels[ix].tolist()
                sort_info = special_sort_cols.get(item)
                r_sort_info = {v: k for k, v in zip(sort_info.keys(), sort_info.values())}
                col_1 = [r_sort_info.get(item) for item in col_1]
                df.columns = df.columns.set_levels(col_1, level=ix)

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转载自blog.csdn.net/python_tty/article/details/80917003
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