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基于Python pyecharts实现多种图例代码解析

(编辑:jimmy 日期: 2025/10/14 浏览:3 次 )

词云图

from pyecharts.charts import WordCloud
def word1():
  words= [
    ("Sam S Club", 10000),
    ("Macys", 6181),
    ("Amy Schumer", 4386),
    ("Jurassic World", 4055),
    ("Charter Communications", 2467),
    ("Chick Fil A", 2244),
    ("Planet Fitness", 1868),
    ("Pitch Perfect", 1484),
    ("Express", 1112),
    ("Home", 865),
    ("Johnny Depp", 847),
    ("Lena Dunham", 582),
    ("Lewis Hamilton", 555),
    ("KXAN", 550),
    ("Mary Ellen Mark", 462),
    ("Farrah Abraham", 366),
    ("Rita Ora", 360),
    ("Serena Williams", 282),
    ("NCAA baseball tournament", 273),
    ("Point Break", 265),
  ]
  worldcloud = (
    WordCloud()
    .add("", words, word_size_range=[20, 100])
    .set_global_opts(title_opts=opt.TitleOpts(title="WorldCloud-shape-diamond"))
  )
  # worldcloud = (
  #   WordCloud()
  #   .add("", words, word_size_range=[20, 100], shape=SymbolType.DIAMOND)
  #   .set_global_opts(title_opts=opt.TitleOpts(title="WorldCloud-shape-diamond"))
  # )
  worldcloud.render("wordl.html")
  os.system("wordl.html")

效果如下:

基于Python pyecharts实现多种图例代码解析

散点图

from pyecharts.charts import Scatter
import numpy as np

def sca():
  x_data = np.linspace(0, 10, 30)
  y1_data = np.sin(x_data)
  y2_data = np.cos(x_data)
  # 绘制散点图
  # 设置图表大小
  figsise = opt.InitOpts(width="800px", height="600px")
  scatter = Scatter(init_opts=figsise)
  # 添加数据
  scatter.add_xaxis(xaxis_data=x_data)
  scatter.add_yaxis(series_name="sin(x)散点图", #名称
           y_axis=y1_data, # 数据
           label_opts=opt.LabelOpts(is_show=False), # 数据不显示
           symbol_size=15, # 设置散点的大小
           symbol="triangle" # 设置散点的形状
           )
  scatter.add_yaxis(series_name="cos(x)散点图", y_axis=y2_data, label_opts=opt.LabelOpts(is_show=False))
  scatter.render()
  os.system("render.html")

效果如下:

基于Python pyecharts实现多种图例代码解析

饼状图

from pyecharts.charts import Pie
from pyecharts import options as optfrom pyecharts.faker import Faker as fa

def pie1():
  pie = (
    Pie()
    .add("", [list(z) for z in zip(fa.choose(), fa.values())])
    .set_global_opts(title_opts=opt.TitleOpts(title="pie-基本示例"))
    .set_series_opts(label_opts=opt.LabelOpts(formatter="{b}:{c}"))
  )
  pie.render()
  os.system("render.html")

def pie2():
  pie = (
    Pie()
      .add("", [list(z) for z in zip(fa.choose(), fa.values())], radius=["40%", "75%"])
      .set_global_opts(title_opts=opt.TitleOpts(title="pie-示例"),
               legend_opts=opt.LegendOpts(
                 orient="vertical", pos_top="15%", pos_left="2%"
               ))
      .set_series_opts(label_opts=opt.LabelOpts(formatter="{b}:{c}"))
  )
  pie.render()
  os.system("render.html")


def pie3():
  pie = (
    Pie()
      .add("", [list(z) for z in zip(fa.choose(), fa.values())],
         radius=["40%", "75%"],
         center=["25%", "50%"],
         rosetype="radius",
         label_opts=opt.LabelOpts(is_show=False))

      .add("", [list(z) for z in zip(fa.choose(), fa.values())],
         radius=["30%", "75%"],
         center=["75%", "50%"],
         rosetype="area")

      .set_global_opts(title_opts=opt.TitleOpts(title="pie-玫瑰图示例"))

  )
  pie.render()
  os.system("render.html")

def pie4():
  # 多饼图显示
  pie = (
    Pie()
    .add(
      "",
      [list(z) for z in zip(["剧情", "其他"], [25, 75])],
      center=["20%", "30%"],
      radius=[40, 60]
    )
    .add(
      "",
      [list(z) for z in zip(["奇幻", "其他"], [24, 76])],
      center=["55%", '30%'],
      radius=[40, 60]
    )
    .add(
      "",
      [list(z) for z in zip(["爱情", "其他"], [14, 86])],
      center=["20%", "70%"],
      radius=[40, 60]
    )
    .add(
      "",
      [list(z) for z in zip(["惊骇", "其他"], [1, 89])],
      center=["55%", "70%"],
      radius=[40, 60]
    )
    .set_global_opts(
      title_opts=opt.TitleOpts(title="pie-多饼图基本示例"),
      legend_opts=opt.LegendOpts(
        type_="scroll", pos_top="20%", pos_left="80%", orient="vertical"
      )
    )
    .set_series_opts(label_opts=opt.LabelOpts(formatter="{b}:{c}"))
  )
  pie.render()
  os.system("render.html")

直方图

from pyecharts.charts import Bar
from pyecharts import options as opt
from pyecharts.globals import ThemeType
from pyecharts.faker import Faker as fa
import random


def pye1():
  # 生成随机数据
  attr = fa.days_attrs
  v1 = [random.randrange(10, 150) for _ in range(31)]
  v2 = [random.randrange(10, 150) for _ in range(31)]

  # 初始化一个Bar对象,并设定一写初始化设置
  bar = Bar(init_opts=opt.InitOpts(theme=ThemeType.WHITE))
  # 添加数据
  bar.add_xaxis(attr)
  # is_selected: 打开图表时是否默认加载  grap:不同系列的柱间距离,百分比; color:指定柱状图Label的颜色
  bar.add_yaxis("test1", v1, gap="0", category_gap="20%", color=fa.rand_color())
  bar.add_yaxis("test2", v2, is_selected=False, gap="0%", category_gap="20%", color=fa.rand_color())
  # 全局配置
  # title_opts:图标标题相关设置
  # toolbox_opts: 工具栏相关设置
  # yaxis_opts/xaxis_opts: 坐标轴相关设置
  # axislabel_opts: 坐标轴签字相关设置
  # axisline_opts: 坐标轴轴线相关设置
  # datazoom_opts: 坐标轴轴线相关设置
  # markpoint_opts: 标记点相关设置
  # markpoint_opts:label_opts=opts.LabelOpts(is_show=False) 标签值是否叠加
  # markline_opts:标记线相关设置
  bar.set_global_opts(title_opts=opt.TitleOpts(title="主标题", subtitle="副标题"),
            toolbox_opts=opt.ToolboxOpts(),
            yaxis_opts=opt.AxisOpts(axislabel_opts=opt.LabelOpts(formatter="{value}/月"), name="这是y轴"),
            xaxis_opts=opt.AxisOpts(
            axisline_opts=opt.AxisLineOpts(linestyle_opts=opt.LineStyleOpts(color='blue')), name="这是x轴"),
            datazoom_opts=opt.DataZoomOpts()
            )
  bar.set_series_opts(markpoint_opts=opt.MarkPointOpts(data=[opt.MarkPointItem(type_="max", name="最大值"),
                                opt.MarkPointItem(type_="min", name="最小值"),
                                opt.MarkPointItem(type_="average", name="平均值")]),
            markline_opts=opt.MarkLineOpts(data=[opt.MarkLineItem(type_="min", name="最小值"),
                               opt.MarkLineItem(type_="max", name="最大值"),
                               opt.MarkLineItem(type_="average", name="平均值")]))
  # 指定生成html文件路径
  bar.render('test.html')
  os.system("test.html")

效果如下

基于Python pyecharts实现多种图例代码解析

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