Python 数据可视化?

pyecharts 是一个用于生成 Echarts 图表的类库。
Echarts 是百度开源的一个数据可视化 JS 库。主要用于数据可视化。

安装

pyecharts 兼容 Python2 和 Python3。目前版本为 0.1.2

pip install pyecharts

入门

首先开始来绘制你的第一个图表

from pyecharts import Bar

bar = Bar("我的第一个图表", "这里是副标题")
bar.add("服装", ["衬衫", "羊毛衫", "雪纺衫", "裤子", "高跟鞋", "袜子"], [5, 20, 36, 10, 75, 90])
bar.show_config()
bar.render()
Python 数据可视化?_第1张图片
guide-0

Tip: 可以按右边的下载按钮将图片下载到本地

  • add()
    主要方法,用于添加图表的数据和设置各种配置项
  • show_config()
    打印输出图表的所有配置项
  • render()
    默认将会在根目录下生成一个 render.html 的文件,支持 path 参数,设置文件保存位置,如 render(r"e:\my_first_chart.html"),文件用浏览器打开。
    默认的编码类型为 UTF-8,在 Python3 中是没什么问题的,Python3 对中文的支持好很多。但是在 Python2 中,编码的处理是个很头疼的问题,暂时没能找到完美的解决方法,目前只能通过文本编辑器自己进行二次编码,我用的是 Visual Studio Code,先通过 Gbk 编码重新打开,然后再用 UTF-8 重新保存,这样用浏览器打开的话就不会出现中文乱码问题了。

基本上所有的图表类型都是这样绘制的:

  1. chart_name = Type() 初始化具体类型图表。
  2. add() 添加数据及配置项。
  3. render() 生成 .html 文件。

图表类型

因篇幅原因,这里只给出了每种图表类型的示例(代码 + 生成图表)。详细参数的介绍请参考项目 README.md 文档

Bar(柱状图/条形图)

from pyecharts import Bar

bar = Bar("标记线和标记点示例")
bar.add("商家A", attr, v1, mark_point=["average"])
bar.add("商家B", attr, v2, mark_line=["min", "max"])
bar.render()
Python 数据可视化?_第2张图片
bar-1
from pyecharts import Bar

bar = Bar("x 轴和 y 轴交换")
bar.add("商家A", attr, v1)
bar.add("商家B", attr, v2, is_convert=True)
bar.render()
Python 数据可视化?_第3张图片
bar-2

EffectScatter(带有涟漪特效动画的散点图)

from pyecharts import EffectScatter

v1 = [10, 20, 30, 40, 50, 60]
v2 = [25, 20, 15, 10, 60, 33]
es = EffectScatter("动态散点图示例")
es.add("effectScatter", v1, v2)
es.render()
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effectscatter-0
es = EffectScatter("动态散点图各种图形示例")
es.add("", [10], [10], symbol_size=20, effect_scale=3.5, effect_period=3, symbol="pin")
es.add("", [20], [20], symbol_size=12, effect_scale=4.5, effect_period=4,symbol="rect")
es.add("", [30], [30], symbol_size=30, effect_scale=5.5, effect_period=5,symbol="roundRect")
es.add("", [40], [40], symbol_size=10, effect_scale=6.5, effect_brushtype='fill',symbol="diamond")
es.add("", [50], [50], symbol_size=16, effect_scale=5.5, effect_period=3,symbol="arrow")
es.add("", [60], [60], symbol_size=6, effect_scale=2.5, effect_period=3,symbol="triangle")
es.render()
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effectscatter-1

Funnel(漏斗图)

from pyecharts import Funnel

attr = ["衬衫", "羊毛衫", "雪纺衫", "裤子", "高跟鞋", "袜子"]
value = [20, 40, 60, 80, 100, 120]
funnel = Funnel("漏斗图示例")
funnel.add("商品", attr, value, is_label_show=True, label_pos="inside", label_text_color="#fff")
funnel.render()
Python 数据可视化?_第6张图片
funnel-0

Gauge(仪表盘)

from pyecharts import Gauge

gauge = Gauge("仪表盘示例")
gauge.add("业务指标", "完成率", 66.66)
gauge.show_config()
gauge.render()
Python 数据可视化?_第7张图片
gauge-0

Geo(地理坐标系)

from pyecharts import Geo

data = [
    ("海门", 9),("鄂尔多斯", 12),("招远", 12),("舟山", 12),("齐齐哈尔", 14),("盐城", 15),
    ("赤峰", 16),("青岛", 18),("乳山", 18),("金昌", 19),("泉州", 21),("莱西", 21),
    ("日照", 21),("胶南", 22),("南通", 23),("拉萨", 24),("云浮", 24),("梅州", 25)...]
geo = Geo("全国主要城市空气质量", "data from pm2.5", title_color="#fff", title_pos="center",
width=1200, height=600, background_color='#404a59')
attr, value = geo.cast(data)
geo.add("", attr, value, visual_range=[0, 200], visual_text_color="#fff", symbol_size=15, is_visualmap=True)
geo.show_config()
geo.render()
Python 数据可视化?_第8张图片
geo-0
from pyecharts import Geo

data = [("海门", 9), ("鄂尔多斯", 12), ("招远", 12), ("舟山", 12), ("齐齐哈尔", 14), ("盐城", 15)]
geo = Geo("全国主要城市空气质量", "data from pm2.5", title_color="#fff", title_pos="center",
          width=1200, height=600, background_color='#404a59')
attr, value = geo.cast(data)
geo.add("", attr, value, type="effectScatter", is_random=True, effect_scale=5)
geo.show_config()
geo.render()
Python 数据可视化?_第9张图片
geo-1

Graph(关系图)

from pyecharts import Graph

nodes = [{"name": "结点1", "symbolSize": 10},
         {"name": "结点2", "symbolSize": 20},
         {"name": "结点3", "symbolSize": 30},
         {"name": "结点4", "symbolSize": 40},
         {"name": "结点5", "symbolSize": 50},
         {"name": "结点6", "symbolSize": 40},
         {"name": "结点7", "symbolSize": 30},
         {"name": "结点8", "symbolSize": 20}]
links = []
for i in nodes:
    for j in nodes:
        links.append({"source": i.get('name'), "target": j.get('name')})
graph = Graph("关系图-环形布局示例")
graph.add("", nodes, links, is_label_show=True, repulsion=8000, layout='circular', label_text_color=None)
graph.show_config()
graph.render()

Python 数据可视化?_第10张图片
graph-0
from pyecharts import Graph

import json
with open("..\json\weibo.json", "r", encoding="utf-8") as f:
    j = json.load(f)
    nodes, links, categories, cont, mid, userl = j
graph = Graph("微博转发关系图", width=1200, height=600)
graph.add("", nodes, links, categories, label_pos="right", repulsion=50, is_legend_show=False,
          line_curve=0.2, label_text_color=None)
graph.show_config()
graph.render()
graph-2

Line(折线/面积图)

from pyecharts import Line

attr = ["衬衫", "羊毛衫", "雪纺衫", "裤子", "高跟鞋", "袜子"]
v1 = [5, 20, 36, 10, 10, 100]
v2 = [55, 60, 16, 20, 15, 80]
line = Line("折线图示例")
line.add("商家A", attr, v1, mark_point=["average"])
line.add("商家B", attr, v2, is_smooth=True, mark_line=["max", "average"])
line.show_config()
line.render()
Python 数据可视化?_第11张图片
line-0
line = Line("折线图-阶梯图示例")
line.add("商家A", attr, v1, is_step=True, is_label_show=True)
line.show_config()
line.render()
Python 数据可视化?_第12张图片
line-2
line = Line("折线图-面积图示例")
line.add("商家A", attr, v1, is_fill=True, line_opacity=0.2, area_opacity=0.4, symbol=None)
line.add("商家B", attr, v2, is_fill=True, area_color='#000', area_opacity=0.3, is_smooth=True)
line.show_config()
line.render()
Python 数据可视化?_第13张图片
line-3

Liquid(水球图)

from pyecharts import Liquid

liquid = Liquid("水球图示例")
liquid.add("Liquid", [0.6])
liquid.show_config()
liquid.render()
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liquid-0
from pyecharts import Liquid

liquid = Liquid("水球图示例")
liquid.add("Liquid", [0.6, 0.5, 0.4, 0.3], is_liquid_animation=False, shape='diamond')
liquid.show_config()
liquid.render()
Python 数据可视化?_第15张图片
liquid-2

Map(地图)

from pyecharts import Map

value = [155, 10, 66, 78, 33, 80, 190, 53, 49.6]
attr = ["福建", "山东", "北京", "上海", "甘肃", "新疆", "河南", "广西", "西藏"]
map = Map("Map 结合 VisualMap 示例", width=1200, height=600)
map.add("", attr, value, maptype='china', is_visualmap=True, visual_text_color='#000')
map.show_config()
map.render()
Python 数据可视化?_第16张图片
map-1
from pyecharts import Map

value = [20, 190, 253, 77, 65]
attr = ['汕头市', '汕尾市', '揭阳市', '阳江市', '肇庆市']
map = Map("广东地图示例", width=1200, height=600)
map.add("", attr, value, maptype='广东', is_visualmap=True, visual_text_color='#000')
map.show_config()
map.render()
Python 数据可视化?_第17张图片
map-2

Parallel(平行坐标系)

from pyecharts import Parallel

c_schema = [
    {"dim": 0, "name": "data"},
    {"dim": 1, "name": "AQI"},
    {"dim": 2, "name": "PM2.5"},
    {"dim": 3, "name": "PM10"},
    {"dim": 4, "name": "CO"},
    {"dim": 5, "name": "NO2"},
    {"dim": 6, "name": "CO2"},
    {"dim": 7, "name": "等级",
    "type": "category", "data": ['优', '良', '轻度污染', '中度污染', '重度污染', '严重污染']}
]
data = [
    [1, 91, 45, 125, 0.82, 34, 23, "良"],
    [2, 65, 27, 78, 0.86, 45, 29, "良"],
    [3, 83, 60, 84, 1.09, 73, 27, "良"],
    [4, 109, 81, 121, 1.28, 68, 51, "轻度污染"],
    [5, 106, 77, 114, 1.07, 55, 51, "轻度污染"],
    [6, 109, 81, 121, 1.28, 68, 51, "轻度污染"],
    [7, 106, 77, 114, 1.07, 55, 51, "轻度污染"],
    [8, 89, 65, 78, 0.86, 51, 26, "良"],
    [9, 53, 33, 47, 0.64, 50, 17, "良"],
    [10, 80, 55, 80, 1.01, 75, 24, "良"],
    [11, 117, 81, 124, 1.03, 45, 24, "轻度污染"],
    [12, 99, 71, 142, 1.1, 62, 42, "良"],
    [13, 95, 69, 130, 1.28, 74, 50, "良"],
    [14, 116, 87, 131, 1.47, 84, 40, "轻度污染"]
]
parallel = Parallel("平行坐标系-用户自定义指示器")
parallel.config(c_schema=c_schema)
parallel.add("parallel", data)
parallel.show_config()
parallel.render()
Python 数据可视化?_第18张图片
parallel-1

Pie(饼图)

from pyecharts import Pie

attr = ["衬衫", "羊毛衫", "雪纺衫", "裤子", "高跟鞋", "袜子"]
v1 = [11, 12, 13, 10, 10, 10]
pie = Pie("饼图示例")
pie.add("", attr, v1, is_label_show=True)
pie.show_config()
pie.render()
Python 数据可视化?_第19张图片
pie-0
from pyecharts import Pie

attr = ["衬衫", "羊毛衫", "雪纺衫", "裤子", "高跟鞋", "袜子"]
v1 = [11, 12, 13, 10, 10, 10]
v2 = [19, 21, 32, 20, 20, 33]
pie = Pie("饼图-玫瑰图示例", title_pos='center', width=900)
pie.add("商品A", attr, v1, center=[25, 50], is_random=True, radius=[30, 75], rosetype='radius')
pie.add("商品B", attr, v2, center=[75, 50], is_random=True, radius=[30, 75], rosetype='area',
        is_legend_show=False, is_label_show=True)
pie.show_config() 
pie.render()
Python 数据可视化?_第20张图片
pie-2

Polar(极坐标系)

from pyecharts import Polar

radius = ['周一', '周二', '周三', '周四', '周五', '周六', '周日']
polar = Polar("极坐标系-堆叠柱状图示例", width=1200, height=600)
polar.add("A", [1, 2, 3, 4, 3, 5, 1], radius_data=radius, type='barRadius', is_stack=True)
polar.add("B", [2, 4, 6, 1, 2, 3, 1], radius_data=radius, type='barRadius', is_stack=True)
polar.add("C", [1, 2, 3, 4, 1, 2, 5], radius_data=radius, type='barRadius', is_stack=True)
polar.show_config()
polar.render()
Python 数据可视化?_第21张图片
polar-3
from pyecharts import Polar

radius = ['周一', '周二', '周三', '周四', '周五', '周六', '周日']
polar = Polar("极坐标系-堆叠柱状图示例", width=1200, height=600)
polar.add("", [1, 2, 3, 4, 3, 5, 1], radius_data=radius, type='barAngle', is_stack=True)
polar.add("", [2, 4, 6, 1, 2, 3, 1], radius_data=radius, type='barAngle', is_stack=True)
polar.add("", [1, 2, 3, 4, 1, 2, 5], radius_data=radius, type='barAngle', is_stack=True)
polar.show_config()
polar.render()
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polar-4

Radar(雷达图)

from pyecharts import Radar

schema = [ 
    ("销售", 6500), ("管理", 16000), ("信息技术", 30000), ("客服", 38000), ("研发", 52000), ("市场", 25000)]
v1 = [[4300, 10000, 28000, 35000, 50000, 19000]]
v2 = [[5000, 14000, 28000, 31000, 42000, 21000]]
radar = Radar()
radar.config(schema)
radar.add("预算分配", v1, is_splitline=True, is_axisline_show=True)
radar.add("实际开销", v2, label_color=["#4e79a7"], is_area_show=False)
radar.show_config()
radar.render()
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radar-0
value_bj = [
    [55, 9, 56, 0.46, 18, 6, 1], [25, 11, 21, 0.65, 34, 9, 2],
    [56, 7, 63, 0.3, 14, 5, 3], [33, 7, 29, 0.33, 16, 6, 4]...]
value_sh = [
    [91, 45, 125, 0.82, 34, 23, 1], [65, 27, 78, 0.86, 45, 29, 2],
    [83, 60, 84, 1.09, 73, 27, 3], [109, 81, 121, 1.28, 68, 51, 4]...]
c_schema= [{"name": "AQI", "max": 300, "min": 5},
           {"name": "PM2.5", "max": 250, "min": 20},
           {"name": "PM10", "max": 300, "min": 5},
           {"name": "CO", "max": 5},
           {"name": "NO2", "max": 200},
           {"name": "SO2", "max": 100}]
radar = Radar()
radar.config(c_schema=c_schema, shape='circle')
radar.add("北京", value_bj, item_color="#f9713c", symbol=None)
radar.add("上海", value_sh, item_color="#b3e4a1", symbol=None)
radar.show_config()
radar.render()
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radar-1

Scatter(散点图)

from pyecharts import Scatter

v1 = [10, 20, 30, 40, 50, 60]
v2 = [10, 20, 30, 40, 50, 60]
scatter = Scatter("散点图示例")
scatter.add("A", v1, v2)
scatter.add("B", v1[::-1], v2)
scatter.show_config()
scatter.render()
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scatter-0
Python 数据可视化?_第26张图片
pyecharts-0
from pyecharts import Scatter

scatter = Scatter("散点图示例")
v1, v2 = scatter.draw("../images/pyecharts-0.png")
scatter.add("pyecharts", v1, v2, is_random=True)
scatter.show_config()
scatter.render()
Python 数据可视化?_第27张图片
pyecharts-1

WordCloud(词云图)

from pyecharts import WordCloud

name = ['Sam S Club', 'Macys', 'Amy Schumer', 'Jurassic World', 'Charter Communications',
        'Chick Fil A', 'Planet Fitness', 'Pitch Perfect', 'Express', 'Home', 'Johnny Depp',
        'Lena Dunham', 'Lewis Hamilton', 'KXAN', 'Mary Ellen Mark', 'Farrah Abraham',
        'Rita Ora', 'Serena Williams', 'NCAA baseball tournament', 'Point Break']
value = [10000, 6181, 4386, 4055, 2467, 2244, 1898, 1484, 1112, 965, 847, 582, 555,
         550, 462, 366, 360, 282, 273, 265]
wordcloud = WordCloud(width=1300, height=620)
wordcloud.add("", name, value, word_size_range=[20, 100])
wordcloud.show_config()
wordcloud.render()
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wordcloud-0
wordcloud = WordCloud(width=1300, height=620)
wordcloud.add("", name, value, word_size_range=[30, 100], shape='diamond')
wordcloud.show_config()
wordcloud.render()
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wordcloud-1

用户自定义

用户还可以自定义结合 Line/Bar 图表
需使用 get_series()custom() 方法

get_series()
""" 获取图表的 series 数据 """
custom(series)
''' 追加自定义图表类型 '''
  • series -> dict
    追加图表类型的 series 数据

先用 get_series() 获取数据,再使用 custom() 将图表结合在一起

from pyecharts import Bar, Line

attr = ['A', 'B', 'C', 'D', 'E', 'F']
v1 = [10, 20, 30, 40, 50, 60]
v2 = [15, 25, 35, 45, 55, 65]
v3 = [38, 28, 58, 48, 78, 68]
bar = Bar("Line - Bar 示例")
bar.add("bar", attr, v1)
line = Line()
line.add("line", v2, v3)
bar.custom(line.get_series())
bar.show_config()
bar.render()
Python 数据可视化?_第30张图片
custom-0

更多示例

用极坐标系画出一个爱心

import math
from pyecharts import Polar

data = []
for i in range(101):
    theta = i / 100 * 360
    r = 5 * (1 + math.sin(theta / 180 * math.pi))
    data.append([r, theta])
hour = [i for i in range(1, 25)]
polar = Polar("极坐标系示例", width=1200, height=600)
polar.add("Love", data, angle_data=hour, boundary_gap=False,start_angle=0)
polar.show_config()
polar.render()
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example-0

用极坐标系画出一朵小花

import math
from pyecharts import Polar

data = []
for i in range(361):
    t = i / 180 * math.pi
    r = math.sin(2 * t) * math.cos(2 * t)
    data.append([r, i])
polar = Polar("极坐标系示例", width=1200, height=600)
polar.add("Flower", data, start_angle=0, symbol=None, axis_range=[0, None])
polar.show_config()
polar.render()
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example-1

还可以给小花涂上颜色

import math
from pyecharts import Polar

data = []
for i in range(361):
    t = i / 180 * math.pi
    r = math.sin(2 * t) * math.cos(2 * t)
    data.append([r, i])
polar = Polar("极坐标系示例", width=1200, height=600)
polar.add("Color-Flower", data, start_angle=0, symbol=None, axis_range=[0, None],
          area_color="#f71f24", area_opacity=0.6)
polar.show_config()
polar.render()
Python 数据可视化?_第33张图片
example-1-1

用散点图画出一个爱心

from pyecharts import Scatter

scatter = Scatter("散点图示例", width=800, height=480)
v1 ,v2 = scatter.draw("../images/love.png")
scatter.add("Love", v1, v2)
scatter.render()
Python 数据可视化?_第34张图片
example-2

用散点图画出一个火辣的 Bra

from pyecharts import Scatter

scatter = Scatter("散点图示例", width=1000, height=480)
v1 ,v2 = scatter.draw("../images/cup.png")
scatter.add("Cup", v1, v2)
scatter.render()
Python 数据可视化?_第35张图片
example-3

用散点图画出一个性感的 Bra

from pyecharts import Scatter

scatter = Scatter("散点图示例", width=1000, height=480)
v1 ,v2 = scatter.draw("../images/cup.png")
scatter.add("Cup", v1, v2, label_color=["#000"])
scatter.render()
Python 数据可视化?_第36张图片
example-4

某地最低温和最高气温折线图

from pyecharts import Line

attr = ['周一', '周二', '周三', '周四', '周五', '周六', '周日', ]
line = Line("折线图示例")
line.add("最高气温", attr, [11, 11, 15, 13, 12, 13, 10], mark_point=["max", "min"], mark_line=["average"])
line.add("最低气温", attr, [1, -2, 2, 5, 3, 2, 0], mark_point=["max", "min"],
         mark_line=["average"], yaxis_formatter="°C")
line.show_config()
line.render()
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example-5

饼图嵌套

from pyecharts import Pie

pie = Pie("饼图示例", title_pos='center', width=1000, height=600)
pie.add("", ['A', 'B', 'C', 'D', 'E', 'F'], [335, 321, 234, 135, 251, 148], radius=[40, 55],is_label_show=True)
pie.add("", ['H', 'I', 'J'], [335, 679, 204], radius=[0, 30], legend_orient='vertical', legend_pos='left')
pie.show_config()
pie.render()
Python 数据可视化?_第38张图片
example-6

饼图再嵌套

import random
from pyecharts import Pie

attr = ['A', 'B', 'C', 'D', 'E', 'F']
pie = Pie("饼图示例", width=1000, height=600)
pie.add("", attr, [random.randint(0, 100) for _ in range(6)], radius=[50, 55], center=[25, 50],is_random=True)
pie.add("", attr, [random.randint(20, 100) for _ in range(6)], radius=[0, 45], center=[25, 50],rosetype='area')
pie.add("", attr, [random.randint(0, 100) for _ in range(6)], radius=[50, 55], center=[65, 50],is_random=True)
pie.add("", attr, [random.randint(20, 100) for _ in range(6)], radius=[0, 45], center=[65, 50],rosetype='radius')
pie.show_config()
pie.render()
Python 数据可视化?_第39张图片
example-7

某地的降水量和蒸发量柱状图

from pyecharts import Bar

attr = ["{}月".format(i) for i in range(1, 13)]
v1 = [2.0, 4.9, 7.0, 23.2, 25.6, 76.7, 135.6, 162.2, 32.6, 20.0, 6.4, 3.3]
v2 = [2.6, 5.9, 9.0, 26.4, 28.7, 70.7, 175.6, 182.2, 48.7, 18.8, 6.0, 2.3]
bar = Bar("柱状图示例")
bar.add("蒸发量", attr, v1, mark_line=["average"], mark_point=["max", "min"])
bar.add("降水量", attr, v2, mark_line=["average"], mark_point=["max", "min"])
bar.show_config()
bar.render()
Python 数据可视化?_第40张图片
example-8

各类电影中"好片"所占的比例

from pyecharts import Pie

pie = Pie('各类电影中"好片"所占的比例', "数据来着豆瓣", title_pos='center')
pie.add("", ["剧情", ""], [25, 75], center=[10, 30], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None, )
pie.add("", ["奇幻", ""], [24, 76], center=[30, 30], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None, legend_pos='left')
pie.add("", ["爱情", ""], [14, 86], center=[50, 30], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None)
pie.add("", ["惊悚", ""], [11, 89], center=[70, 30], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None)
pie.add("", ["冒险", ""], [27, 73], center=[90, 30], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None)
pie.add("", ["动作", ""], [15, 85], center=[10, 70], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None)
pie.add("", ["喜剧", ""], [54, 46], center=[30, 70], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None)
pie.add("", ["科幻", ""], [26, 74], center=[50, 70], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None)
pie.add("", ["悬疑", ""], [25, 75], center=[70, 70], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None)
pie.add("", ["犯罪", ""], [28, 72], center=[90, 70], radius=[18, 24],
        label_pos='center', is_label_show=True, label_text_color=None, is_legend_show=True, legend_top="center")
pie.show_config()
pie.render()
Python 数据可视化?_第41张图片
example-9

用极坐标系画出一个蜗牛壳

import math
from pyecharts import Polar

data = []
for i in range(5):
    for j in range(101):
        theta = j / 100 * 360
        alpha = i * 360 + theta
        r = math.pow(math.e, 0.003 * alpha)
        data.append([r, theta])
polar = Polar("极坐标系示例")
polar.add("", data, symbol_size=0, symbol='circle', start_angle=-25, is_radiusaxis_show=False,
          area_color="#f3c5b3", area_opacity=0.5, is_angleaxis_show=False)
polar.show_config()
polar.render()
Python 数据可视化?_第42张图片
example-10

Github 地址:https://github.com/chenjiandongx/pyecharts

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