Pandas — 数据处理
Pyecharts — 数据可视化
可视化部分:
import re import jieba import stylecloud import numpy as np import pandas as pd from collections import Counter from pyecharts.charts import Bar from pyecharts.charts import Map from pyecharts.charts import Pie from pyecharts.charts import Grid from pyecharts.charts import Page from pyecharts.components import Image from pyecharts.charts import WordCloud from pyecharts import options as opts from pyecharts.globals import SymbolType from pyecharts.commons.utils import JsCode
df = pd.read_excel("月饼.xlsx") df.head(10)
结果:
print(df.shape) df.drop_duplicates(inplace=True) print(df.shape)
(4520, 5) (1885, 5)
处理购买人数为空的记录:df['付款情况'] = df['付款情况'].replace(np.nan,'0人付款')
2.4 处理付款情况字段
df[df['付款情况'].str.contains("万")]
付款人数超过10000后会直接用"万"替代,这里我们需要将其恢复:
# 提取数值 df['num'] = [re.findall(r'(\d+\.{0,1}\d*)', i)[0] for i in df['付款情况']] df['num'] = df['num'].astype('float') # 提取单位(万) df['unit'] = [''.join(re.findall(r'(万)', i)) for i in df['付款情况']] df['unit'] = df['unit'].apply(lambda x:10000 if x=='万' else 1) # 计算销量 df['销量'] = df['num'] * df['unit'] df = df[df['地址'].notna()] df['省份'] = df['地址'].str.split(' ').apply(lambda x:x[0]) # 删除多余的列 df.drop(['付款情况', 'num', 'unit'], axis=1, inplace=True) # 重置索引 df = df.reset_index(drop=True)
结果:
代码:
shop_top10 = df.groupby('商品名称')['销量'].sum().sort_values(ascending=False).head(10) bar0 = ( Bar() .add_xaxis(shop_top10.index.tolist()[::-1]) .add_yaxis('sales_num', shop_top10.values.tolist()[::-1]) .reversal_axis() .set_global_opts(title_opts=opts.TitleOpts(title='月饼商品销量Top10'), xaxis_opts=opts.AxisOpts(axislabel_opts=opts.LabelOpts(rotate=-30))) .set_series_opts(label_opts=opts.LabelOpts(position='right')) )
效果:
商品名称太长显示不全,我们调整一下边距:
bar1 = ( Bar() .add_xaxis(shop_top10.index.tolist()[::-1]) .add_yaxis('sales_num', shop_top10.values.tolist()[::-1],itemstyle_opts=opts.ItemStyleOpts(color=JsCode(color_js))) .reversal_axis() .set_global_opts(title_opts=opts.TitleOpts(title='月饼商品销量Top10'), xaxis_opts=opts.AxisOpts(axislabel_opts=opts.LabelOpts(rotate=-30)), ) .set_series_opts(label_opts=opts.LabelOpts(position='right')) ) # 将图形整体右移 grid = ( Grid() .add(bar1, grid_opts=opts.GridOpts(pos_left='45%', pos_right='10%')) )
还可以来些其他(比如:形状)设置:
3.2 月饼销量排名TOP10店铺
代码:
shop_top10 = df.groupby('店铺名称')['销量'].sum().sort_values(ascending=False).head(10) bar3 = ( Bar(init_opts=opts.InitOpts( width='800px', height='600px',)) .add_xaxis(shop_top10.index.tolist()) .add_yaxis('', shop_top10.values.tolist(), category_gap='30%', ) .set_global_opts( xaxis_opts=opts.AxisOpts(axislabel_opts=opts.LabelOpts(rotate=-30)), title_opts=opts.TitleOpts( title='月饼销量排名TOP10店铺', pos_left='center', pos_top='4%', title_textstyle_opts=opts.TextStyleOpts( color='#ed1941', font_size=16) ), visualmap_opts=opts.VisualMapOpts( is_show=False, max_=600000, range_color=["#CCD3D9", "#E6B6C2", "#D4587A","#FF69B4", "#DC364C"] ), ) ) bar3.render_notebook()
稻香村的月饼销量遥遥领先。
3.3 全国各地区月饼销量
province_num = df.groupby('省份')['销量'].sum().sort_values(ascending=False) map_chart = Map(init_opts=opts.InitOpts(theme='light', width='800px', height='600px')) map_chart.add('', [list(z) for z in zip(province_num.index.tolist(), province_num.values.tolist())], maptype='china', is_map_symbol_show=False, itemstyle_opts={ 'normal': { 'shadowColor': 'rgba(0, 0, 0, .5)', # 阴影颜色 'shadowBlur': 5, # 阴影大小 'shadowOffsetY': 0, # Y轴方向阴影偏移 'shadowOffsetX': 0, # x轴方向阴影偏移 'borderColor': '#fff' } } ) map_chart.set_global_opts( visualmap_opts=opts.VisualMapOpts( is_show=True, is_piecewise=True, min_ = 0, max_ = 1, split_number = 5, series_index=0, pos_top='70%', pos_left='10%', range_text=['销量(份):', ''], pieces=[ {'max':2000000, 'min':200000, 'label':'> 200000', 'color': '#990000'}, {'max':200000, 'min':100000, 'label':'100000-200000', 'color': '#CD5C5C'}, {'max':100000, 'min':50000, 'label':'50000-100000', 'color': '#F08080'}, {'max':50000, 'min':10000, 'label':'10000-50000', 'color': '#FFCC99'}, {'max':10000, 'min':0, 'label':'0-10000', 'color': '#FFE4E1'}, ], ), legend_opts=opts.LegendOpts(is_show=False), tooltip_opts=opts.TooltipOpts( is_show=True, trigger='item', formatter='{b}:{c}' ), title_opts=dict( text='全国各地区月饼销量', left='center', top='5%', textStyle=dict( color='#DC143C')) ) map_chart.render_notebook()
结果:
以上是可视化 | Python分析中秋月饼,这几种口味才是yyds!的详细内容。更多信息请关注PHP中文网其他相关文章!