Pyecharts绘制图表大全——柱形图

这篇具有很好参考价值的文章主要介绍了Pyecharts绘制图表大全——柱形图。希望对大家有所帮助。如果存在错误或未考虑完全的地方,请大家不吝赐教,您也可以点击"举报违法"按钮提交疑问。

说明:本文代码资料等来源于Pyecharts官网,进行了一些重要节点的备注说明梳理,便于学习。

今日学习柱形图!

目录

百分比柱形图

 x轴标签旋转

 堆叠数据

 动态宏观经济指标图

 通过 dict 进行配置柱形图

 区域选择组件配置项

 区域缩放配置项

 好全的工具箱!

 类似于瀑布图

 柱形图与折线组合图

 图形组件的使用-可加水印

 堆叠部分数据

 x轴y轴命名

 添加自定义背景图

 柱状图动画延迟&分割线

 可以垂直滑动的数据区域

 直方图(颜色区分)

 y轴格式化单位

 标记点最大-最小-平均值

 3个y轴

 自定义柱状图颜色

 不同系列柱间距离

  标记线最大-最小-平均值

 渐变圆柱

 单系列柱间距离

 鼠标滚轮选择缩放区域

 默认取消显示某 Series

 翻转 XY 轴

 自定义标记多个点

 动画配置基本示例

 直方图

 自定义多条标记线

 基本图表示例

 水平滑动&鼠标滚轮缩放


百分比柱形图

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.commons.utils import JsCode
from pyecharts.globals import ThemeType

list2 = [
    {"value": 12, "percent": 12 / (12 + 3)},
    {"value": 23, "percent": 23 / (23 + 21)},
    {"value": 33, "percent": 33 / (33 + 5)},
    {"value": 3, "percent": 3 / (3 + 52)},
    {"value": 33, "percent": 33 / (33 + 43)},
]

list3 = [
    {"value": 3, "percent": 3 / (12 + 3)},
    {"value": 21, "percent": 21 / (23 + 21)},
    {"value": 5, "percent": 5 / (33 + 5)},
    {"value": 52, "percent": 52 / (3 + 52)},
    {"value": 43, "percent": 43 / (33 + 43)},
]

c = (
    Bar(init_opts=opts.InitOpts(theme=ThemeType.LIGHT))   #主题
    .add_xaxis([1, 2, 3, 4, 5])
    .add_yaxis("product1", list2, stack="stack1", category_gap="50%")
    # stack数据堆叠,同个类目轴上系列配置相同的stack值可以堆叠放置
    # category_gap同一系列的柱间距离,默认为类目间距的 20%,可设固定值
    .add_yaxis("product2", list3, stack="stack1", category_gap="50%")
    .set_series_opts(   
        label_opts=opts.LabelOpts(   #标签配置项
            position="right",  #标签位置靠右
            formatter=JsCode(   #回调函数
                "function(x){return Number(x.data.percent * 100).toFixed() + '%';}"
            ),
        )
    )
    
#     .render("stack_bar_percent.html")
)
c.render_notebook()    #Jupyter Notebook直接显示

Pyecharts绘制图表大全——柱形图

 x轴标签旋转

from pyecharts import options as opts
from pyecharts.charts import Bar

c = (
    Bar()
    .add_xaxis(
        [
            "名字很长的X轴标签1",
            "名字很长的X轴标签2",
            "名字很长的X轴标签3",
            "名字很长的X轴标签4",
            "名字很长的X轴标签5",
            "名字很长的X轴标签6",
        ]
    )
    .add_yaxis("商家A", [10, 20, 30, 40, 50, 40])
    .add_yaxis("商家B", [20, 10, 40, 30, 40, 50])
    .set_global_opts(  #全局配置项
        xaxis_opts=opts.AxisOpts(axislabel_opts=opts.LabelOpts(rotate=-15)),  #坐标轴配置项  ,rotate标签旋转。从 -90 度到 90 度。正值是逆时针
        title_opts=opts.TitleOpts(title="Bar-旋转X轴标签", subtitle="解决标签名字过长的问题"),  #标题配置项
    )
#     .render("bar_rotate_xaxis_label.html")
)
c.render_notebook()    #Jupyter Notebook直接显示

 Pyecharts绘制图表大全——柱形图

 文章来源地址https://www.toymoban.com/news/detail-447312.html

 堆叠数据

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker  #导入伪数据库

c = (
    Bar()
    .add_xaxis(Faker.choose())   #随机横坐标
    .add_yaxis("商家A", Faker.values(), stack="stack1", category_gap="50%") # stack数据堆叠,同个类目轴上系列配置相同的stack值可以堆叠放置
    .add_yaxis("商家B", Faker.values(), stack="stack1", category_gap="50%") # category_gap同一系列的柱间距离,默认为类目间距的 20%,可设固定值
    .set_series_opts(label_opts=opts.LabelOpts(is_show=True,position='right'))  #is_show是否显示标签
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-堆叠数据(全部)"))
#     .render("bar_stack0.html")
)
c.render_notebook()    #Jupyter Notebook直接显示

Pyecharts绘制图表大全——柱形图

 动态宏观经济指标图

import pyecharts.options as opts
from pyecharts.charts import Timeline, Bar, Pie

"""
Gallery 使用 pyecharts 1.1.0
参考地址: https://www.echartsjs.com/examples/editor.html?c=mix-timeline-finance

目前无法实现的功能:

1、暂无
"""
total_data = {}
name_list = [
    "北京",
    "天津",
    "河北",
    "山西",
    "内蒙古",
    "辽宁",
    "吉林",
    "黑龙江",
    "上海",
    "江苏",
    "浙江",
    "安徽",
    "福建",
    "江西",
    "山东",
    "河南",
    "湖北",
    "湖南",
    "广东",
    "广西",
    "海南",
    "重庆",
    "四川",
    "贵州",
    "云南",
    "西藏",
    "陕西",
    "甘肃",
    "青海",
    "宁夏",
    "新疆",
]
data_gdp = {
    2011: [
        16251.93,
        11307.28,
        24515.76,
        11237.55,
        14359.88,
        22226.7,
        10568.83,
        12582,
        19195.69,
        49110.27,
        32318.85,
        15300.65,
        17560.18,
        11702.82,
        45361.85,
        26931.03,
        19632.26,
        19669.56,
        53210.28,
        11720.87,
        2522.66,
        10011.37,
        21026.68,
        5701.84,
        8893.12,
        605.83,
        12512.3,
        5020.37,
        1670.44,
        2102.21,
        6610.05,
    ],
    2010: [
        14113.58,
        9224.46,
        20394.26,
        9200.86,
        11672,
        18457.27,
        8667.58,
        10368.6,
        17165.98,
        41425.48,
        27722.31,
        12359.33,
        14737.12,
        9451.26,
        39169.92,
        23092.36,
        15967.61,
        16037.96,
        46013.06,
        9569.85,
        2064.5,
        7925.58,
        17185.48,
        4602.16,
        7224.18,
        507.46,
        10123.48,
        4120.75,
        1350.43,
        1689.65,
        5437.47,
    ],
    2009: [
        12153.03,
        7521.85,
        17235.48,
        7358.31,
        9740.25,
        15212.49,
        7278.75,
        8587,
        15046.45,
        34457.3,
        22990.35,
        10062.82,
        12236.53,
        7655.18,
        33896.65,
        19480.46,
        12961.1,
        13059.69,
        39482.56,
        7759.16,
        1654.21,
        6530.01,
        14151.28,
        3912.68,
        6169.75,
        441.36,
        8169.8,
        3387.56,
        1081.27,
        1353.31,
        4277.05,
    ],
    2008: [
        11115,
        6719.01,
        16011.97,
        7315.4,
        8496.2,
        13668.58,
        6426.1,
        8314.37,
        14069.87,
        30981.98,
        21462.69,
        8851.66,
        10823.01,
        6971.05,
        30933.28,
        18018.53,
        11328.92,
        11555,
        36796.71,
        7021,
        1503.06,
        5793.66,
        12601.23,
        3561.56,
        5692.12,
        394.85,
        7314.58,
        3166.82,
        1018.62,
        1203.92,
        4183.21,
    ],
    2007: [
        9846.81,
        5252.76,
        13607.32,
        6024.45,
        6423.18,
        11164.3,
        5284.69,
        7104,
        12494.01,
        26018.48,
        18753.73,
        7360.92,
        9248.53,
        5800.25,
        25776.91,
        15012.46,
        9333.4,
        9439.6,
        31777.01,
        5823.41,
        1254.17,
        4676.13,
        10562.39,
        2884.11,
        4772.52,
        341.43,
        5757.29,
        2703.98,
        797.35,
        919.11,
        3523.16,
    ],
    2006: [
        8117.78,
        4462.74,
        11467.6,
        4878.61,
        4944.25,
        9304.52,
        4275.12,
        6211.8,
        10572.24,
        21742.05,
        15718.47,
        6112.5,
        7583.85,
        4820.53,
        21900.19,
        12362.79,
        7617.47,
        7688.67,
        26587.76,
        4746.16,
        1065.67,
        3907.23,
        8690.24,
        2338.98,
        3988.14,
        290.76,
        4743.61,
        2277.35,
        648.5,
        725.9,
        3045.26,
    ],
    2005: [
        6969.52,
        3905.64,
        10012.11,
        4230.53,
        3905.03,
        8047.26,
        3620.27,
        5513.7,
        9247.66,
        18598.69,
        13417.68,
        5350.17,
        6554.69,
        4056.76,
        18366.87,
        10587.42,
        6590.19,
        6596.1,
        22557.37,
        3984.1,
        918.75,
        3467.72,
        7385.1,
        2005.42,
        3462.73,
        248.8,
        3933.72,
        1933.98,
        543.32,
        612.61,
        2604.19,
    ],
    2004: [
        6033.21,
        3110.97,
        8477.63,
        3571.37,
        3041.07,
        6672,
        3122.01,
        4750.6,
        8072.83,
        15003.6,
        11648.7,
        4759.3,
        5763.35,
        3456.7,
        15021.84,
        8553.79,
        5633.24,
        5641.94,
        18864.62,
        3433.5,
        819.66,
        3034.58,
        6379.63,
        1677.8,
        3081.91,
        220.34,
        3175.58,
        1688.49,
        466.1,
        537.11,
        2209.09,
    ],
    2003: [
        5007.21,
        2578.03,
        6921.29,
        2855.23,
        2388.38,
        6002.54,
        2662.08,
        4057.4,
        6694.23,
        12442.87,
        9705.02,
        3923.11,
        4983.67,
        2807.41,
        12078.15,
        6867.7,
        4757.45,
        4659.99,
        15844.64,
        2821.11,
        713.96,
        2555.72,
        5333.09,
        1426.34,
        2556.02,
        185.09,
        2587.72,
        1399.83,
        390.2,
        445.36,
        1886.35,
    ],
    2002: [
        4315,
        2150.76,
        6018.28,
        2324.8,
        1940.94,
        5458.22,
        2348.54,
        3637.2,
        5741.03,
        10606.85,
        8003.67,
        3519.72,
        4467.55,
        2450.48,
        10275.5,
        6035.48,
        4212.82,
        4151.54,
        13502.42,
        2523.73,
        642.73,
        2232.86,
        4725.01,
        1243.43,
        2312.82,
        162.04,
        2253.39,
        1232.03,
        340.65,
        377.16,
        1612.6,
    ],
}

data_pi = {
    2011: [
        136.27,
        159.72,
        2905.73,
        641.42,
        1306.3,
        1915.57,
        1277.44,
        1701.5,
        124.94,
        3064.78,
        1583.04,
        2015.31,
        1612.24,
        1391.07,
        3973.85,
        3512.24,
        2569.3,
        2768.03,
        2665.2,
        2047.23,
        659.23,
        844.52,
        2983.51,
        726.22,
        1411.01,
        74.47,
        1220.9,
        678.75,
        155.08,
        184.14,
        1139.03,
    ],
    2010: [
        124.36,
        145.58,
        2562.81,
        554.48,
        1095.28,
        1631.08,
        1050.15,
        1302.9,
        114.15,
        2540.1,
        1360.56,
        1729.02,
        1363.67,
        1206.98,
        3588.28,
        3258.09,
        2147,
        2325.5,
        2286.98,
        1675.06,
        539.83,
        685.38,
        2482.89,
        625.03,
        1108.38,
        68.72,
        988.45,
        599.28,
        134.92,
        159.29,
        1078.63,
    ],
    2009: [
        118.29,
        128.85,
        2207.34,
        477.59,
        929.6,
        1414.9,
        980.57,
        1154.33,
        113.82,
        2261.86,
        1163.08,
        1495.45,
        1182.74,
        1098.66,
        3226.64,
        2769.05,
        1795.9,
        1969.69,
        2010.27,
        1458.49,
        462.19,
        606.8,
        2240.61,
        550.27,
        1067.6,
        63.88,
        789.64,
        497.05,
        107.4,
        127.25,
        759.74,
    ],
    2008: [
        112.83,
        122.58,
        2034.59,
        313.58,
        907.95,
        1302.02,
        916.72,
        1088.94,
        111.8,
        2100.11,
        1095.96,
        1418.09,
        1158.17,
        1060.38,
        3002.65,
        2658.78,
        1780,
        1892.4,
        1973.05,
        1453.75,
        436.04,
        575.4,
        2216.15,
        539.19,
        1020.56,
        60.62,
        753.72,
        462.27,
        105.57,
        118.94,
        691.07,
    ],
    2007: [
        101.26,
        110.19,
        1804.72,
        311.97,
        762.1,
        1133.42,
        783.8,
        915.38,
        101.84,
        1816.31,
        986.02,
        1200.18,
        1002.11,
        905.77,
        2509.14,
        2217.66,
        1378,
        1626.48,
        1695.57,
        1241.35,
        361.07,
        482.39,
        2032,
        446.38,
        837.35,
        54.89,
        592.63,
        387.55,
        83.41,
        97.89,
        628.72,
    ],
    2006: [
        88.8,
        103.35,
        1461.81,
        276.77,
        634.94,
        939.43,
        672.76,
        750.14,
        93.81,
        1545.05,
        925.1,
        1011.03,
        865.98,
        786.14,
        2138.9,
        1916.74,
        1140.41,
        1272.2,
        1532.17,
        1032.47,
        323.48,
        386.38,
        1595.48,
        382.06,
        724.4,
        50.9,
        484.81,
        334,
        67.55,
        79.54,
        527.8,
    ],
    2005: [
        88.68,
        112.38,
        1400,
        262.42,
        589.56,
        882.41,
        625.61,
        684.6,
        90.26,
        1461.51,
        892.83,
        966.5,
        827.36,
        727.37,
        1963.51,
        1892.01,
        1082.13,
        1100.65,
        1428.27,
        912.5,
        300.75,
        463.4,
        1481.14,
        368.94,
        661.69,
        48.04,
        435.77,
        308.06,
        65.34,
        72.07,
        509.99,
    ],
    2004: [
        87.36,
        105.28,
        1370.43,
        276.3,
        522.8,
        798.43,
        568.69,
        605.79,
        83.45,
        1367.58,
        814.1,
        950.5,
        786.84,
        664.5,
        1778.45,
        1649.29,
        1020.09,
        1022.45,
        1248.59,
        817.88,
        278.76,
        428.05,
        1379.93,
        334.5,
        607.75,
        44.3,
        387.88,
        286.78,
        60.7,
        65.33,
        461.26,
    ],
    2003: [
        84.11,
        89.91,
        1064.05,
        215.19,
        420.1,
        615.8,
        488.23,
        504.8,
        81.02,
        1162.45,
        717.85,
        749.4,
        692.94,
        560,
        1480.67,
        1198.7,
        798.35,
        886.47,
        1072.91,
        658.78,
        244.29,
        339.06,
        1128.61,
        298.69,
        494.6,
        40.7,
        302.66,
        237.91,
        48.47,
        55.63,
        412.9,
    ],
    2002: [
        82.44,
        84.21,
        956.84,
        197.8,
        374.69,
        590.2,
        446.17,
        474.2,
        79.68,
        1110.44,
        685.2,
        783.66,
        664.78,
        535.98,
        1390,
        1288.36,
        707,
        847.25,
        1015.08,
        601.99,
        222.89,
        317.87,
        1047.95,
        281.1,
        463.44,
        39.75,
        282.21,
        215.51,
        47.31,
        52.95,
        305,
    ],
}

data_si = {
    2011: [
        3752.48,
        5928.32,
        13126.86,
        6635.26,
        8037.69,
        12152.15,
        5611.48,
        5962.41,
        7927.89,
        25203.28,
        16555.58,
        8309.38,
        9069.2,
        6390.55,
        24017.11,
        15427.08,
        9815.94,
        9361.99,
        26447.38,
        5675.32,
        714.5,
        5543.04,
        11029.13,
        2194.33,
        3780.32,
        208.79,
        6935.59,
        2377.83,
        975.18,
        1056.15,
        3225.9,
    ],
    2010: [
        3388.38,
        4840.23,
        10707.68,
        5234,
        6367.69,
        9976.82,
        4506.31,
        5025.15,
        7218.32,
        21753.93,
        14297.93,
        6436.62,
        7522.83,
        5122.88,
        21238.49,
        13226.38,
        7767.24,
        7343.19,
        23014.53,
        4511.68,
        571,
        4359.12,
        8672.18,
        1800.06,
        3223.49,
        163.92,
        5446.1,
        1984.97,
        744.63,
        827.91,
        2592.15,
    ],
    2009: [
        2855.55,
        3987.84,
        8959.83,
        3993.8,
        5114,
        7906.34,
        3541.92,
        4060.72,
        6001.78,
        18566.37,
        11908.49,
        4905.22,
        6005.3,
        3919.45,
        18901.83,
        11010.5,
        6038.08,
        5687.19,
        19419.7,
        3381.54,
        443.43,
        3448.77,
        6711.87,
        1476.62,
        2582.53,
        136.63,
        4236.42,
        1527.24,
        575.33,
        662.32,
        1929.59,
    ],
    2008: [
        2626.41,
        3709.78,
        8701.34,
        4242.36,
        4376.19,
        7158.84,
        3097.12,
        4319.75,
        6085.84,
        16993.34,
        11567.42,
        4198.93,
        5318.44,
        3554.81,
        17571.98,
        10259.99,
        5082.07,
        5028.93,
        18502.2,
        3037.74,
        423.55,
        3057.78,
        5823.39,
        1370.03,
        2452.75,
        115.56,
        3861.12,
        1470.34,
        557.12,
        609.98,
        2070.76,
    ],
    2007: [
        2509.4,
        2892.53,
        7201.88,
        3454.49,
        3193.67,
        5544.14,
        2475.45,
        3695.58,
        5571.06,
        14471.26,
        10154.25,
        3370.96,
        4476.42,
        2975.53,
        14647.53,
        8282.83,
        4143.06,
        3977.72,
        16004.61,
        2425.29,
        364.26,
        2368.53,
        4648.79,
        1124.79,
        2038.39,
        98.48,
        2986.46,
        1279.32,
        419.03,
        455.04,
        1647.55,
    ],
    2006: [
        2191.43,
        2457.08,
        6110.43,
        2755.66,
        2374.96,
        4566.83,
        1915.29,
        3365.31,
        4969.95,
        12282.89,
        8511.51,
        2711.18,
        3695.04,
        2419.74,
        12574.03,
        6724.61,
        3365.08,
        3187.05,
        13469.77,
        1878.56,
        308.62,
        1871.65,
        3775.14,
        967.54,
        1705.83,
        80.1,
        2452.44,
        1043.19,
        331.91,
        351.58,
        1459.3,
    ],
    2005: [
        2026.51,
        2135.07,
        5271.57,
        2357.04,
        1773.21,
        3869.4,
        1580.83,
        2971.68,
        4381.2,
        10524.96,
        7164.75,
        2245.9,
        3175.92,
        1917.47,
        10478.62,
        5514.14,
        2852.12,
        2612.57,
        11356.6,
        1510.68,
        240.83,
        1564,
        3067.23,
        821.16,
        1426.42,
        63.52,
        1951.36,
        838.56,
        264.61,
        281.05,
        1164.79,
    ],
    2004: [
        1853.58,
        1685.93,
        4301.73,
        1919.4,
        1248.27,
        3061.62,
        1329.68,
        2487.04,
        3892.12,
        8437.99,
        6250.38,
        1844.9,
        2770.49,
        1566.4,
        8478.69,
        4182.1,
        2320.6,
        2190.54,
        9280.73,
        1253.7,
        205.6,
        1376.91,
        2489.4,
        681.5,
        1281.63,
        52.74,
        1553.1,
        713.3,
        211.7,
        244.05,
        914.47,
    ],
    2003: [
        1487.15,
        1337.31,
        3417.56,
        1463.38,
        967.49,
        2898.89,
        1098.37,
        2084.7,
        3209.02,
        6787.11,
        5096.38,
        1535.29,
        2340.82,
        1204.33,
        6485.05,
        3310.14,
        1956.02,
        1777.74,
        7592.78,
        984.08,
        175.82,
        1135.31,
        2014.8,
        569.37,
        1047.66,
        47.64,
        1221.17,
        572.02,
        171.92,
        194.27,
        719.54,
    ],
    2002: [
        1249.99,
        1069.08,
        2911.69,
        1134.31,
        754.78,
        2609.85,
        943.49,
        1843.6,
        2622.45,
        5604.49,
        4090.48,
        1337.04,
        2036.97,
        941.77,
        5184.98,
        2768.75,
        1709.89,
        1523.5,
        6143.4,
        846.89,
        148.88,
        958.87,
        1733.38,
        481.96,
        934.88,
        32.72,
        1007.56,
        501.69,
        144.51,
        153.06,
        603.15,
    ],
}

data_ti = {
    2011: [
        12363.18,
        5219.24,
        8483.17,
        3960.87,
        5015.89,
        8158.98,
        3679.91,
        4918.09,
        11142.86,
        20842.21,
        14180.23,
        4975.96,
        6878.74,
        3921.2,
        17370.89,
        7991.72,
        7247.02,
        7539.54,
        24097.7,
        3998.33,
        1148.93,
        3623.81,
        7014.04,
        2781.29,
        3701.79,
        322.57,
        4355.81,
        1963.79,
        540.18,
        861.92,
        2245.12,
    ],
    2010: [
        10600.84,
        4238.65,
        7123.77,
        3412.38,
        4209.03,
        6849.37,
        3111.12,
        4040.55,
        9833.51,
        17131.45,
        12063.82,
        4193.69,
        5850.62,
        3121.4,
        14343.14,
        6607.89,
        6053.37,
        6369.27,
        20711.55,
        3383.11,
        953.67,
        2881.08,
        6030.41,
        2177.07,
        2892.31,
        274.82,
        3688.93,
        1536.5,
        470.88,
        702.45,
        1766.69,
    ],
    2009: [
        9179.19,
        3405.16,
        6068.31,
        2886.92,
        3696.65,
        5891.25,
        2756.26,
        3371.95,
        8930.85,
        13629.07,
        9918.78,
        3662.15,
        5048.49,
        2637.07,
        11768.18,
        5700.91,
        5127.12,
        5402.81,
        18052.59,
        2919.13,
        748.59,
        2474.44,
        5198.8,
        1885.79,
        2519.62,
        240.85,
        3143.74,
        1363.27,
        398.54,
        563.74,
        1587.72,
    ],
    2008: [
        8375.76,
        2886.65,
        5276.04,
        2759.46,
        3212.06,
        5207.72,
        2412.26,
        2905.68,
        7872.23,
        11888.53,
        8799.31,
        3234.64,
        4346.4,
        2355.86,
        10358.64,
        5099.76,
        4466.85,
        4633.67,
        16321.46,
        2529.51,
        643.47,
        2160.48,
        4561.69,
        1652.34,
        2218.81,
        218.67,
        2699.74,
        1234.21,
        355.93,
        475,
        1421.38,
    ],
    2007: [
        7236.15,
        2250.04,
        4600.72,
        2257.99,
        2467.41,
        4486.74,
        2025.44,
        2493.04,
        6821.11,
        9730.91,
        7613.46,
        2789.78,
        3770,
        1918.95,
        8620.24,
        4511.97,
        3812.34,
        3835.4,
        14076.83,
        2156.76,
        528.84,
        1825.21,
        3881.6,
        1312.94,
        1896.78,
        188.06,
        2178.2,
        1037.11,
        294.91,
        366.18,
        1246.89,
    ],
    2006: [
        5837.55,
        1902.31,
        3895.36,
        1846.18,
        1934.35,
        3798.26,
        1687.07,
        2096.35,
        5508.48,
        7914.11,
        6281.86,
        2390.29,
        3022.83,
        1614.65,
        7187.26,
        3721.44,
        3111.98,
        3229.42,
        11585.82,
        1835.12,
        433.57,
        1649.2,
        3319.62,
        989.38,
        1557.91,
        159.76,
        1806.36,
        900.16,
        249.04,
        294.78,
        1058.16,
    ],
    2005: [
        4854.33,
        1658.19,
        3340.54,
        1611.07,
        1542.26,
        3295.45,
        1413.83,
        1857.42,
        4776.2,
        6612.22,
        5360.1,
        2137.77,
        2551.41,
        1411.92,
        5924.74,
        3181.27,
        2655.94,
        2882.88,
        9772.5,
        1560.92,
        377.17,
        1440.32,
        2836.73,
        815.32,
        1374.62,
        137.24,
        1546.59,
        787.36,
        213.37,
        259.49,
        929.41,
    ],
    2004: [
        4092.27,
        1319.76,
        2805.47,
        1375.67,
        1270,
        2811.95,
        1223.64,
        1657.77,
        4097.26,
        5198.03,
        4584.22,
        1963.9,
        2206.02,
        1225.8,
        4764.7,
        2722.4,
        2292.55,
        2428.95,
        8335.3,
        1361.92,
        335.3,
        1229.62,
        2510.3,
        661.8,
        1192.53,
        123.3,
        1234.6,
        688.41,
        193.7,
        227.73,
        833.36,
    ],
    2003: [
        3435.95,
        1150.81,
        2439.68,
        1176.65,
        1000.79,
        2487.85,
        1075.48,
        1467.9,
        3404.19,
        4493.31,
        3890.79,
        1638.42,
        1949.91,
        1043.08,
        4112.43,
        2358.86,
        2003.08,
        1995.78,
        7178.94,
        1178.25,
        293.85,
        1081.35,
        2189.68,
        558.28,
        1013.76,
        96.76,
        1063.89,
        589.91,
        169.81,
        195.46,
        753.91,
    ],
    2002: [
        2982.57,
        997.47,
        2149.75,
        992.69,
        811.47,
        2258.17,
        958.88,
        1319.4,
        3038.9,
        3891.92,
        3227.99,
        1399.02,
        1765.8,
        972.73,
        3700.52,
        1978.37,
        1795.93,
        1780.79,
        6343.94,
        1074.85,
        270.96,
        956.12,
        1943.68,
        480.37,
        914.5,
        89.56,
        963.62,
        514.83,
        148.83,
        171.14,
        704.5,
    ],
}

data_estate = {
    2011: [
        12363.18,
        5219.24,
        8483.17,
        3960.87,
        5015.89,
        8158.98,
        3679.91,
        4918.09,
        11142.86,
        20842.21,
        14180.23,
        4975.96,
        6878.74,
        3921.2,
        17370.89,
        7991.72,
        7247.02,
        7539.54,
        24097.7,
        3998.33,
        1148.93,
        3623.81,
        7014.04,
        2781.29,
        3701.79,
        322.57,
        4355.81,
        1963.79,
        540.18,
        861.92,
        2245.12,
    ],
    2010: [
        10600.84,
        4238.65,
        7123.77,
        3412.38,
        4209.03,
        6849.37,
        3111.12,
        4040.55,
        9833.51,
        17131.45,
        12063.82,
        4193.69,
        5850.62,
        3121.4,
        14343.14,
        6607.89,
        6053.37,
        6369.27,
        20711.55,
        3383.11,
        953.67,
        2881.08,
        6030.41,
        2177.07,
        2892.31,
        274.82,
        3688.93,
        1536.5,
        470.88,
        702.45,
        1766.69,
    ],
    2009: [
        9179.19,
        3405.16,
        6068.31,
        2886.92,
        3696.65,
        5891.25,
        2756.26,
        3371.95,
        8930.85,
        13629.07,
        9918.78,
        3662.15,
        5048.49,
        2637.07,
        11768.18,
        5700.91,
        5127.12,
        5402.81,
        18052.59,
        2919.13,
        748.59,
        2474.44,
        5198.8,
        1885.79,
        2519.62,
        240.85,
        3143.74,
        1363.27,
        398.54,
        563.74,
        1587.72,
    ],
    2008: [
        8375.76,
        2886.65,
        5276.04,
        2759.46,
        3212.06,
        5207.72,
        2412.26,
        2905.68,
        7872.23,
        11888.53,
        8799.31,
        3234.64,
        4346.4,
        2355.86,
        10358.64,
        5099.76,
        4466.85,
        4633.67,
        16321.46,
        2529.51,
        643.47,
        2160.48,
        4561.69,
        1652.34,
        2218.81,
        218.67,
        2699.74,
        1234.21,
        355.93,
        475,
        1421.38,
    ],
    2007: [
        7236.15,
        2250.04,
        4600.72,
        2257.99,
        2467.41,
        4486.74,
        2025.44,
        2493.04,
        6821.11,
        9730.91,
        7613.46,
        2789.78,
        3770,
        1918.95,
        8620.24,
        4511.97,
        3812.34,
        3835.4,
        14076.83,
        2156.76,
        528.84,
        1825.21,
        3881.6,
        1312.94,
        1896.78,
        188.06,
        2178.2,
        1037.11,
        294.91,
        366.18,
        1246.89,
    ],
    2006: [
        5837.55,
        1902.31,
        3895.36,
        1846.18,
        1934.35,
        3798.26,
        1687.07,
        2096.35,
        5508.48,
        7914.11,
        6281.86,
        2390.29,
        3022.83,
        1614.65,
        7187.26,
        3721.44,
        3111.98,
        3229.42,
        11585.82,
        1835.12,
        433.57,
        1649.2,
        3319.62,
        989.38,
        1557.91,
        159.76,
        1806.36,
        900.16,
        249.04,
        294.78,
        1058.16,
    ],
    2005: [
        4854.33,
        1658.19,
        3340.54,
        1611.07,
        1542.26,
        3295.45,
        1413.83,
        1857.42,
        4776.2,
        6612.22,
        5360.1,
        2137.77,
        2551.41,
        1411.92,
        5924.74,
        3181.27,
        2655.94,
        2882.88,
        9772.5,
        1560.92,
        377.17,
        1440.32,
        2836.73,
        815.32,
        1374.62,
        137.24,
        1546.59,
        787.36,
        213.37,
        259.49,
        929.41,
    ],
    2004: [
        4092.27,
        1319.76,
        2805.47,
        1375.67,
        1270,
        2811.95,
        1223.64,
        1657.77,
        4097.26,
        5198.03,
        4584.22,
        1963.9,
        2206.02,
        1225.8,
        4764.7,
        2722.4,
        2292.55,
        2428.95,
        8335.3,
        1361.92,
        335.3,
        1229.62,
        2510.3,
        661.8,
        1192.53,
        123.3,
        1234.6,
        688.41,
        193.7,
        227.73,
        833.36,
    ],
    2003: [
        3435.95,
        1150.81,
        2439.68,
        1176.65,
        1000.79,
        2487.85,
        1075.48,
        1467.9,
        3404.19,
        4493.31,
        3890.79,
        1638.42,
        1949.91,
        1043.08,
        4112.43,
        2358.86,
        2003.08,
        1995.78,
        7178.94,
        1178.25,
        293.85,
        1081.35,
        2189.68,
        558.28,
        1013.76,
        96.76,
        1063.89,
        589.91,
        169.81,
        195.46,
        753.91,
    ],
    2002: [
        2982.57,
        997.47,
        2149.75,
        992.69,
        811.47,
        2258.17,
        958.88,
        1319.4,
        3038.9,
        3891.92,
        3227.99,
        1399.02,
        1765.8,
        972.73,
        3700.52,
        1978.37,
        1795.93,
        1780.79,
        6343.94,
        1074.85,
        270.96,
        956.12,
        1943.68,
        480.37,
        914.5,
        89.56,
        963.62,
        514.83,
        148.83,
        171.14,
        704.5,
    ],
}

data_financial = {
    2011: [
        12363.18,
        5219.24,
        8483.17,
        3960.87,
        5015.89,
        8158.98,
        3679.91,
        4918.09,
        11142.86,
        20842.21,
        14180.23,
        4975.96,
        6878.74,
        3921.2,
        17370.89,
        7991.72,
        7247.02,
        7539.54,
        24097.7,
        3998.33,
        1148.93,
        3623.81,
        7014.04,
        2781.29,
        3701.79,
        322.57,
        4355.81,
        1963.79,
        540.18,
        861.92,
        2245.12,
    ],
    2010: [
        10600.84,
        4238.65,
        7123.77,
        3412.38,
        4209.03,
        6849.37,
        3111.12,
        4040.55,
        9833.51,
        17131.45,
        12063.82,
        4193.69,
        5850.62,
        3121.4,
        14343.14,
        6607.89,
        6053.37,
        6369.27,
        20711.55,
        3383.11,
        953.67,
        2881.08,
        6030.41,
        2177.07,
        2892.31,
        274.82,
        3688.93,
        1536.5,
        470.88,
        702.45,
        1766.69,
    ],
    2009: [
        9179.19,
        3405.16,
        6068.31,
        2886.92,
        3696.65,
        5891.25,
        2756.26,
        3371.95,
        8930.85,
        13629.07,
        9918.78,
        3662.15,
        5048.49,
        2637.07,
        11768.18,
        5700.91,
        5127.12,
        5402.81,
        18052.59,
        2919.13,
        748.59,
        2474.44,
        5198.8,
        1885.79,
        2519.62,
        240.85,
        3143.74,
        1363.27,
        398.54,
        563.74,
        1587.72,
    ],
    2008: [
        8375.76,
        2886.65,
        5276.04,
        2759.46,
        3212.06,
        5207.72,
        2412.26,
        2905.68,
        7872.23,
        11888.53,
        8799.31,
        3234.64,
        4346.4,
        2355.86,
        10358.64,
        5099.76,
        4466.85,
        4633.67,
        16321.46,
        2529.51,
        643.47,
        2160.48,
        4561.69,
        1652.34,
        2218.81,
        218.67,
        2699.74,
        1234.21,
        355.93,
        475,
        1421.38,
    ],
    2007: [
        7236.15,
        2250.04,
        4600.72,
        2257.99,
        2467.41,
        4486.74,
        2025.44,
        2493.04,
        6821.11,
        9730.91,
        7613.46,
        2789.78,
        3770,
        1918.95,
        8620.24,
        4511.97,
        3812.34,
        3835.4,
        14076.83,
        2156.76,
        528.84,
        1825.21,
        3881.6,
        1312.94,
        1896.78,
        188.06,
        2178.2,
        1037.11,
        294.91,
        366.18,
        1246.89,
    ],
    2006: [
        5837.55,
        1902.31,
        3895.36,
        1846.18,
        1934.35,
        3798.26,
        1687.07,
        2096.35,
        5508.48,
        7914.11,
        6281.86,
        2390.29,
        3022.83,
        1614.65,
        7187.26,
        3721.44,
        3111.98,
        3229.42,
        11585.82,
        1835.12,
        433.57,
        1649.2,
        3319.62,
        989.38,
        1557.91,
        159.76,
        1806.36,
        900.16,
        249.04,
        294.78,
        1058.16,
    ],
    2005: [
        4854.33,
        1658.19,
        3340.54,
        1611.07,
        1542.26,
        3295.45,
        1413.83,
        1857.42,
        4776.2,
        6612.22,
        5360.1,
        2137.77,
        2551.41,
        1411.92,
        5924.74,
        3181.27,
        2655.94,
        2882.88,
        9772.5,
        1560.92,
        377.17,
        1440.32,
        2836.73,
        815.32,
        1374.62,
        137.24,
        1546.59,
        787.36,
        213.37,
        259.49,
        929.41,
    ],
    2004: [
        4092.27,
        1319.76,
        2805.47,
        1375.67,
        1270,
        2811.95,
        1223.64,
        1657.77,
        4097.26,
        5198.03,
        4584.22,
        1963.9,
        2206.02,
        1225.8,
        4764.7,
        2722.4,
        2292.55,
        2428.95,
        8335.3,
        1361.92,
        335.3,
        1229.62,
        2510.3,
        661.8,
        1192.53,
        123.3,
        1234.6,
        688.41,
        193.7,
        227.73,
        833.36,
    ],
    2003: [
        3435.95,
        1150.81,
        2439.68,
        1176.65,
        1000.79,
        2487.85,
        1075.48,
        1467.9,
        3404.19,
        4493.31,
        3890.79,
        1638.42,
        1949.91,
        1043.08,
        4112.43,
        2358.86,
        2003.08,
        1995.78,
        7178.94,
        1178.25,
        293.85,
        1081.35,
        2189.68,
        558.28,
        1013.76,
        96.76,
        1063.89,
        589.91,
        169.81,
        195.46,
        753.91,
    ],
    2002: [
        2982.57,
        997.47,
        2149.75,
        992.69,
        811.47,
        2258.17,
        958.88,
        1319.4,
        3038.9,
        3891.92,
        3227.99,
        1399.02,
        1765.8,
        972.73,
        3700.52,
        1978.37,
        1795.93,
        1780.79,
        6343.94,
        1074.85,
        270.96,
        956.12,
        1943.68,
        480.37,
        914.5,
        89.56,
        963.62,
        514.83,
        148.83,
        171.14,
        704.5,
    ],
}


def format_data(data: dict) -> dict:
    for year in range(2002, 2012):
        max_data, sum_data = 0, 0
        temp = data[year]
        max_data = max(temp)
        for i in range(len(temp)):
            sum_data += temp[i]
            data[year][i] = {"name": name_list[i], "value": temp[i]}
        data[str(year) + "max"] = int(max_data / 100) * 100
        data[str(year) + "sum"] = sum_data
    return data


# GDP
total_data["dataGDP"] = format_data(data=data_gdp)
# 第一产业
total_data["dataPI"] = format_data(data=data_pi)
# 第二产业
total_data["dataSI"] = format_data(data=data_si)
# 第三产业
total_data["dataTI"] = format_data(data=data_ti)
# 房地产
total_data["dataEstate"] = format_data(data=data_estate)
# 金融
total_data["dataFinancial"] = format_data(data=data_financial)


#####################################################################################
# 2002 - 2011 年的数据
def get_year_overlap_chart(year: int) -> Bar:
    bar = (
        Bar()
        .add_xaxis(xaxis_data=name_list)
        .add_yaxis(
            series_name="GDP",
            y_axis=total_data["dataGDP"][year],
            is_selected=False,  # is_selected是否选中图例
            label_opts=opts.LabelOpts(is_show=False),
        )
        .add_yaxis(
            series_name="金融",
            y_axis=total_data["dataFinancial"][year],
            is_selected=False, # is_selected是否选中图例
            label_opts=opts.LabelOpts(is_show=False),
        )
        .add_yaxis(
            series_name="房地产",
            y_axis=total_data["dataEstate"][year],
            is_selected=False, # is_selected是否选中图例
            label_opts=opts.LabelOpts(is_show=False),
        )
        .add_yaxis(
            series_name="第一产业",
            y_axis=total_data["dataPI"][year],
            label_opts=opts.LabelOpts(is_show=False),
        )
        .add_yaxis(
            series_name="第二产业",
            y_axis=total_data["dataSI"][year],
            label_opts=opts.LabelOpts(is_show=False),
        )
        .add_yaxis(
            series_name="第三产业",
            y_axis=total_data["dataTI"][year],
            label_opts=opts.LabelOpts(is_show=False),
        )
        .set_global_opts(
            title_opts=opts.TitleOpts(
                title="{}全国宏观经济指标".format(year), subtitle="数据来自国家统计局"
            ),
            tooltip_opts=opts.TooltipOpts(
                is_show=True, trigger="axis", axis_pointer_type="shadow"
            ),
        )
    )
    pie = (
        Pie()
        .add(
            series_name="GDP占比",
            data_pair=[
                ["第一产业", total_data["dataPI"]["{}sum".format(year)]],
                ["第二产业", total_data["dataSI"]["{}sum".format(year)]],
                ["第三产业", total_data["dataTI"]["{}sum".format(year)]],
            ],
            center=["75%", "35%"],
            radius="28%",
        )
        .set_series_opts(tooltip_opts=opts.TooltipOpts(is_show=True, trigger="item"))
    )
    return bar.overlap(pie)


# 生成时间轴的图
timeline = Timeline(init_opts=opts.InitOpts(width="1600px", height="800px"))

for y in range(2002, 2012):
    timeline.add(get_year_overlap_chart(year=y), time_point=str(y))

# 1.0.0 版本的 add_schema 暂时没有补上 return self 所以只能这么写着
timeline.add_schema(is_auto_play=True, play_interval=1000)
# timeline.render("finance_indices_2002.html")
timeline.render_notebook()    #Jupyter Notebook直接显示

 Pyecharts绘制图表大全——柱形图

 通过 dict 进行配置柱形图

from pyecharts.charts import Bar
from pyecharts.faker import Faker
from pyecharts.globals import ThemeType

c = (
    Bar({"theme": ThemeType.MACARONS})
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(
        title_opts={"text": "Bar-通过 dict 进行配置", "subtext": "我也是通过 dict 进行配置的"}
    )
#     .render("bar_base_dict_config.html")
)
c.render_notebook()    #Jupyter Notebook直接显示

Pyecharts绘制图表大全——柱形图

 区域选择组件配置项

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-Brush示例", subtitle="我是副标题"),
        brush_opts=opts.BrushOpts(),  #区域选择组件配置项
    )
#     .render("bar_with_brush.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 区域缩放配置项

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.days_attrs)
    .add_yaxis("商家A", Faker.days_values)
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-DataZoom(slider-水平)"),
        datazoom_opts=opts.DataZoomOpts(),  #区域缩放配置项
    )
#     .render("bar_datazoom_slider.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 好全的工具箱!

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar(init_opts=opts.InitOpts(bg_color='white'))  #初始化的背景色,长宽等在这里设置,也可以为16进制的代码,如果不设置为白色,下载下来的图片png就是透明的
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-显示 ToolBox"),
        toolbox_opts=opts.ToolboxOpts(),  #工具箱配置项
        legend_opts=opts.LegendOpts(is_show=False),  #图例配置项
    )
#     .render("bar_toolbox.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 类似于瀑布图

from pyecharts.charts import Bar
from pyecharts import options as opts

x_data = [f"11月{str(i)}日" for i in range(1, 12)]
y_total = [0, 900, 1245, 1530, 1376, 1376, 1511, 1689, 1856, 1495, 1292]
y_in = [900, 345, 393, "-", "-", 135, 178, 286, "-", "-", "-"]
y_out = ["-", "-", "-", 108, 154, "-", "-", "-", 119, 361, 203]


bar = (
    Bar()
    .add_xaxis(xaxis_data=x_data)
    .add_yaxis(
        series_name="",
        y_axis=y_total,
        stack="总量",   # stack数据堆叠,同个类目轴上系列配置相同的stack值可以堆叠放置
        itemstyle_opts=opts.ItemStyleOpts(color="rgba(0,0,0,0)"), 
        #图元样式配置项,图形颜色,可以使用 RGBA,比如 'rgba(128, 128, 128, 0.5)',也可以使用十六进制格式,比如 '#ccc'
        # rgba(0,0,0,0)完全不透明的白色,也即是无色
    )
    .add_yaxis(series_name="收入", y_axis=y_in, stack="总量")
    .add_yaxis(series_name="支出", y_axis=y_out, stack="总量")
    .set_global_opts(yaxis_opts=opts.AxisOpts(type_="value"))   #坐标轴配置项
    # type_坐标轴类型。可选:
    # 'value': 数值轴,适用于连续数据。
    # 'category': 类目轴,适用于离散的类目数据,为该类型时必须通过 data 设置类目数据。
    # 'time': 时间轴,适用于连续的时序数据,与数值轴相比时间轴带有时间的格式化,在刻度计算上也有所不同,
    # 例如会根据跨度的范围来决定使用月,星期,日还是小时范围的刻度。
    # 'log' 对数轴。适用于对数数据。
#     .render("bar_waterfall_plot.html")
)
bar.render_notebook()

Pyecharts绘制图表大全——柱形图

 柱形图与折线组合图

import pyecharts.options as opts
from pyecharts.charts import Bar, Line

"""
Gallery 使用 pyecharts 1.1.0
参考地址: https://www.echartsjs.com/examples/editor.html?c=mix-line-bar

目前无法实现的功能:

1、暂无
"""

x_data = ["1月", "2月", "3月", "4月", "5月", "6月", "7月", "8月", "9月", "10月", "11月", "12月"]

bar = (
    Bar(init_opts=opts.InitOpts(width="1600px", height="800px"))
    .add_xaxis(xaxis_data=x_data)
    .add_yaxis(
        series_name="蒸发量",
        y_axis=[
            2.0,
            4.9,
            7.0,
            23.2,
            25.6,
            76.7,
            135.6,
            162.2,
            32.6,
            20.0,
            6.4,
            3.3,
        ],
        label_opts=opts.LabelOpts(is_show=False),
    )
    .add_yaxis(
        series_name="降水量",
        y_axis=[
            2.6,
            5.9,
            9.0,
            26.4,
            28.7,
            70.7,
            175.6,
            182.2,
            48.7,
            18.8,
            6.0,
            2.3,
        ],
        label_opts=opts.LabelOpts(is_show=False),
    )
    .extend_axis(  #扩展 X/Y 轴
        yaxis=opts.AxisOpts(   #yaxis新增 Y 坐标轴配置项,AxisOpts坐标轴配置项
            name="温度",
            type_="value",  #'value': 数值轴,适用于连续数据
            min_=0,
            max_=25,
            interval=5, # 强制设置坐标轴分割间隔
            axislabel_opts=opts.LabelOpts(formatter="{value} °C"),# 坐标轴标签配置项      formatter回调函数,value传入的数据值
        )
    )
    .set_global_opts(
        tooltip_opts=opts.TooltipOpts(#TooltipOpts:提示框配置项
            is_show=True, trigger="axis", axis_pointer_type="cross"
            #is_show是否显示提示框组件,trigger触发类型,'axis': 坐标轴触发,主要在柱状图,折线图等会使用类目轴的图表中使用
            #axis_pointer_type指示器类型'cross':十字准星指示器。其实是种简写,表示启用两个正交的轴的 axisPointer。
        ),
        xaxis_opts=opts.AxisOpts(   #坐标轴配置项
            type_="category", #'category': 类目轴,适用于离散的类目数据,为该类型时必须通过 data 设置类目数据。
            axispointer_opts=opts.AxisPointerOpts(is_show=True, type_="shadow"), # 坐标轴指示器配置项
        ),  #is_show是否显示坐标轴指示器,type_指示器类型# 'line' 直线指示器'shadow' 阴影指示器'none' 无指示器
        yaxis_opts=opts.AxisOpts(
            name="水量",
            type_="value",
            min_=0,
            max_=250,
            interval=50,  # 强制设置坐标轴分割间隔
            axislabel_opts=opts.LabelOpts(formatter="{value} ml"), # 坐标轴标签配置项      formatter回调函数,value传入的数据值
            axistick_opts=opts.AxisTickOpts(is_show=True), # 坐标轴刻度配置项
            splitline_opts=opts.SplitLineOpts(is_show=True), # 分割线配置项
        ),
    )
)

line = (
    Line()
    .add_xaxis(xaxis_data=x_data)
    .add_yaxis(
        series_name="平均温度",
        yaxis_index=1,  # 使用的 y 轴的 index,在单个图表实例中存在多个 y 轴的时候有用
        y_axis=[2.0, 2.2, 3.3, 4.5, 6.3, 10.2, 20.3, 23.4, 23.0, 16.5, 12.0, 6.2],
        label_opts=opts.LabelOpts(is_show=False),
    )
)

# bar.overlap(line).render("mixed_bar_and_line.html")
bar.overlap(line).render_notebook()

Pyecharts绘制图表大全——柱形图

 图形组件的使用-可加水印

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.commons.utils import JsCode
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-Graphic 组件示例"),
        graphic_opts=[  
            opts.GraphicGroup(#GraphicGroup:原生图形元素组件
                graphic_item=opts.GraphicItem(  # graphic_item图形的配置项
                    rotation=JsCode("Math.PI / 4"),# 旋转(rotation):默认值是 0。表示旋转的弧度值。正值表示逆时针旋转。
                    bounding="raw",# bounding决定此图形元素在定位时,对自身的包围盒计算方式。可选:
                    # 'all':(默认) 表示用自身以及子节点整体的经过 transform 后的包围盒进行定位。这种方式易于使整体都限制在父元素范围中。
                    # 'raw':表示仅仅用自身(不包括子节点)的没经过 tranform 的包围盒进行定位。这种方式易于内容超出父元素范围的定位方式。
                    right=110, # 描述怎么根据父元素进行定位。
                    # 父元素是指:如果是顶层元素,父元素是 echarts 图表容器。如果是 group 的子元素,父元素就是 group 元素。
                    bottom=110,
                    z=100,# z 方向的高度,决定层叠关系。
                ),
                children=[  # 子节点列表,其中项都是一个图形元素定义。
                    # 目前可以选择 GraphicText,GraphicImage,GraphicRect
                    opts.GraphicRect(  #GraphicRect:原生图形矩形配置项
                        graphic_item=opts.GraphicItem(
                            left="center", top="center", z=100
                        ),
                        graphic_shape_opts=opts.GraphicShapeOpts(width=400, height=50),  #GraphicShapeOpts图形的形状配置项
                        graphic_basicstyle_opts=opts.GraphicBasicStyleOpts(# GraphicBasicStyleOpts图形基本配置项
                            fill="rgba(0,0,0,0.3)"  #填充色
                        ),
                    ),
                    opts.GraphicText(#GraphicText:原生图形文本配置项
                        graphic_item=opts.GraphicItem(
                            left="center", top="center", z=100
                        ),
                        graphic_textstyle_opts=opts.GraphicTextStyleOpts(  # 图形文本样式的配置项
                            text="pyecharts bar chart",
                            font="bold 26px Microsoft YaHei",
                            graphic_basicstyle_opts=opts.GraphicBasicStyleOpts(
                                fill="#fff"
                            ),
                        ),
                    ),
                ],
            )
        ],
    )
#     .render("bar_graphic_component.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 堆叠部分数据

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values(), stack="stack1")
    .add_yaxis("商家B", Faker.values(), stack="stack1")
    .add_yaxis("商家C", Faker.values())
    .set_series_opts(label_opts=opts.LabelOpts(is_show=False))
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-堆叠数据(部分)"))
#     .render("bar_stack1.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 x轴y轴命名

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-XY 轴名称"),
        yaxis_opts=opts.AxisOpts(name="我是 Y 轴"),
        xaxis_opts=opts.AxisOpts(name="我是 X 轴"),
    )
#     .render("bar_xyaxis_name.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 添加自定义背景图

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.commons.utils import JsCode
from pyecharts.faker import Faker

c = (
    Bar(
        init_opts=opts.InitOpts(
            bg_color={"type": "pattern", "image": JsCode("img"), "repeat": "no-repeat"}
#         "type": "pattern" 表示我们用图片作背景,
#             "image": JsCode("img") 表示我们用 JavaScript 代码来设置这个背景图,
#             "repeat": "no-repeat" 表示图片不重复。

        )
    )
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(
        title_opts=opts.TitleOpts(
            title="Bar-背景图基本示例",
            subtitle="我是副标题",
            title_textstyle_opts=opts.TextStyleOpts(color="white"),  #TextStyleOpts:文字样式配置项,文字颜色
        )
    )
)
#             而 add_js_funcs 方法就是执行相关的 JavaScript 代码,
#             这里的 JavaScript 代码也很简单,就设置一个名为 img 的变量,
#             指定一下路径。也可以用文件路径
c.add_js_funcs(
    """
    var img = new Image(); img.src = 'https://kr.shanghai-jiuxin.com/file/bizhi/20220927/4gzitkl1lyv.jpg';
    """
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 柱状图动画延迟&分割线

import pyecharts.options as opts
from pyecharts.charts import Bar

"""
Gallery 使用 pyecharts 1.1.0
参考地址: https://www.echartsjs.com/examples/editor.html?c=bar-animation-delay

目前无法实现的功能:

1、动画延迟效果暂时没有加入到代码中
"""

category = ["类目{}".format(i) for i in range(0, 100)]
red_bar = [
    0,
    -8.901463875624668,
    -17.025413764148556,
    -24.038196249566663,
    -29.66504684804471,
    -33.699527649688676,
    -36.00971978255796,
    -36.541005056170455,
    -35.31542466107655,
    -32.427752866005996,
    -28.038563739693934,
    -22.364693082297347,
    -15.667600860943732,
    -8.240217424060843,
    -0.3929067389459173,
    7.560799717904647,
    15.318054209871054,
    22.599523033552096,
    29.16065418543528,
    34.800927952557615,
    39.37074152590451,
    42.77569739999406,
    44.97819140223978,
    45.99632376477021,
    45.900279829731865,
    44.806440199911805,
    42.86957840395034,
    40.2735832137877,
    37.22119936652441,
    33.92331243435557,
    30.588309963978517,
    27.412031986865767,
    24.56878097935778,
    22.203796820272576,
    20.427519715115604,
    19.311867685884827,
    18.888649906111855,
    19.150128087782186,
    20.051630602288828,
    21.516023200879346,
    23.439750867099516,
    25.700091656548704,
    28.163208735293757,
    30.692553648214542,
    33.1571635093161,
    35.439407573791215,
    37.44177367693234,
    39.09234039030659,
    40.34865356244595,
    41.19981246258526,
    41.66666666666667,
    41.80012531240646,
    41.67768039516203,
    41.39834040182826,
    41.07625507973403,
    40.833382300579814,
    40.79160029175877,
    41.06470032034727,
    41.75070457358366,
    42.924940903672564,
    44.63427081999565,
    46.89281122872821,
    49.679416561286956,
    52.93709961387478,
    56.574470884754874,
    60.46917221906629,
    64.47317623531558,
    68.41972346252496,
    72.1315793340836,
    75.43021771943799,
    78.14548044723074,
    80.12522637371026,
    81.24447108408411,
    81.41353029256493,
    80.58471628367427,
    78.75719600392792,
    75.97969924353211,
    72.35086229880064,
    68.01710226438443,
    63.16803467673056,
    58.029567166714706,
    52.854918421647554,
    47.91391949819902,
    43.48104807503482,
    39.82272085822884,
    37.18442111754884,
    35.778264289169215,
    35.77160292258658,
    37.27724241244461,
    40.345781666728996,
    44.96051012913295,
    51.035187614675685,
    58.41491053964701,
    66.8801325453253,
    76.15376513468516,
    85.91114110149952,
    95.79248672571518,
    105.41742429574506,
    114.40092042993717,
    122.37001313784816,
]
blue_bar = [
    -50,
    -47.18992898088751,
    -42.54426104547181,
    -36.290773900754886,
    -28.71517529663627,
    -20.146937097399626,
    -10.94374119697364,
    -1.4752538113770308,
    7.893046603320797,
    16.81528588241657,
    24.979206795219028,
    32.11821023962515,
    38.02096119056733,
    42.53821720798438,
    45.58667093073836,
    47.14973738101559,
    47.275355710354944,
    46.07100702178889,
    43.6962693226927,
    40.35333240268025,
    36.275975292575026,
    31.71756381888028,
    26.938653692729076,
    22.194784893913152,
    17.725026430574392,
    13.741778696752679,
    10.422266555457615,
    7.902063853319403,
    6.270884006107842,
    5.570756810898967,
    5.796594266992678,
    6.899033489892203,
    8.7893381290192,
    11.346045936704996,
    14.42297348773613,
    17.858132851517098,
    21.483081596548438,
    25.132218074866262,
    28.651548555679597,
    31.906490373810854,
    34.788333671419466,
    37.21906041552118,
    39.154309232933485,
    40.58437366457342,
    41.5332247510366,
    42.05565130942339,
    42.23270781895,
    42.165745792772285,
    41.969375711588256,
    41.76375960543808,
    41.66666666666667,
    41.7857343479728,
    42.21136481847887,
    43.01065209435119,
    44.22268037417866,
    45.855461823273586,
    47.88469584957917,
    50.25443606443524,
    52.879650371477126,
    55.650558977584225,
    58.43853958732492,
    61.10330341815434,
    63.500974294013034,
    65.49264961151306,
    66.95298925309743,
    67.77836838841961,
    67.89414332224722,
    67.26061575374229,
    65.87733853082335,
    63.785482681031894,
    61.068077697490004,
    57.84804048526095,
    54.284018163297375,
    50.564180830851214,
    46.89820707575337,
    43.50780217852947,
    40.616171775045245,
    38.4369379107128,
    37.16302649485318,
    36.95607267600796,
    37.93688225696513,
    40.17745279877072,
    43.694998595987045,
    48.44834150353593,
    54.33692802801367,
    61.20261650152743,
    68.83425165632042,
    76.97491319735354,
    85.33159602026458,
    93.58695857541488,
    101.4126683297632,
    108.48378461530217,
    114.49355390682695,
    119.16795429637915,
    122.27931702317058,
    123.65837448506679,
    123.20413594805603,
    120.89107255501017,
    116.7731992576505,
    110.98476877890735,
]

c = (
    Bar(init_opts=opts.InitOpts(width="1600px", height="800px"))
    .add_xaxis(xaxis_data=category)
    .add_yaxis(
        series_name="bar", y_axis=red_bar, label_opts=opts.LabelOpts(is_show=False)
    )
    .add_yaxis(
        series_name="bar2",
        y_axis=blue_bar,
        label_opts=opts.LabelOpts(is_show=False),
    )
    .set_global_opts(
        title_opts=opts.TitleOpts(title="柱状图动画延迟"),
        xaxis_opts=opts.AxisOpts(splitline_opts=opts.SplitLineOpts(is_show=False)),  # 分割线配置项,x轴不显示
        yaxis_opts=opts.AxisOpts(
            axistick_opts=opts.AxisTickOpts(is_show=True),# 坐标轴刻度配置项,y轴显示,就是凸起来那个小点
            splitline_opts=opts.SplitLineOpts(is_show=True),  #y轴有分割线
        ),
    )
#     .render("bar_chart_display_delay.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 可以垂直滑动的数据区域

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.days_attrs)
    .add_yaxis("商家A", Faker.days_values, color=Faker.rand_color())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-DataZoom(slider-垂直)"),
        datazoom_opts=opts.DataZoomOpts(orient="vertical"), #DataZoomOpts:区域缩放配置项, 布局方式是横还是竖
    )
#     .render("bar_datazoom_slider_vertical.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 直方图(颜色区分)

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


x = Faker.dogs + Faker.animal
xlen = len(x)
y = []
for idx, item in enumerate(x):
    if idx <= xlen / 2:  #一半一个颜色
        y.append(
            opts.BarItem(  #BarItem:柱状图数据项
                name=item,  # 数据项名称
                value=(idx + 1) * 10, # 单个数据项的数值
                itemstyle_opts=opts.ItemStyleOpts(color="#749f83"),  # 图元样式配置项
            )
        )
    else:
        y.append(
            opts.BarItem(
                name=item,
                value=(xlen + 1 - idx) * 10,
                itemstyle_opts=opts.ItemStyleOpts(color="#d48265"),
            )
        )

c = (
    Bar()
    .add_xaxis(x)
    .add_yaxis("series0", y, category_gap=0, color=Faker.rand_color())  # category_gap同一系列的柱间距离,默认为类目间距的 20%,可设固定值
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-直方图(颜色区分)"))
#     .render("bar_histogram_color.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 y轴格式化单位

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-Y 轴 formatter"),
        yaxis_opts=opts.AxisOpts(axislabel_opts=opts.LabelOpts(formatter="{value} /月")),
    )
#     .render("bar_yaxis_formatter.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 标记点最大-最小-平均值

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-MarkPoint(指定类型)"))
    .set_series_opts(
        label_opts=opts.LabelOpts(is_show=False),
        markpoint_opts=opts.MarkPointOpts(# 标记点配置项
            data=[ # 标记点数据
                opts.MarkPointItem(type_="max", name="最大值"),#MarkPointItem:标记点数据项
                opts.MarkPointItem(type_="min", name="最小值"),
                opts.MarkPointItem(type_="average", name="平均值"),
            ]
        ),
    )
#     .render("bar_markpoint_type.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 3个y轴

import pyecharts.options as opts
from pyecharts.charts import Bar, Line

"""
Gallery 使用 pyecharts 1.0.0
参考地址: https://www.echartsjs.com/examples/editor.html?c=multiple-y-axis

目前无法实现的功能:

1、暂无
"""

colors = ["#5793f3", "#d14a61", "#675bba"]
x_data = ["1月", "2月", "3月", "4月", "5月", "6月", "7月", "8月", "9月", "10月", "11月", "12月"]
legend_list = ["蒸发量", "降水量", "平均温度"]
evaporation_capacity = [
    2.0,
    4.9,
    7.0,
    23.2,
    25.6,
    76.7,
    135.6,
    162.2,
    32.6,
    20.0,
    6.4,
    3.3,
]
rainfall_capacity = [
    2.6,
    5.9,
    9.0,
    26.4,
    28.7,
    70.7,
    175.6,
    182.2,
    48.7,
    18.8,
    6.0,
    2.3,
]
average_temperature = [2.0, 2.2, 3.3, 4.5, 6.3, 10.2, 20.3, 23.4, 23.0, 16.5, 12.0, 6.2]

bar = (
    Bar(init_opts=opts.InitOpts(width="1680px", height="800px"))
    .add_xaxis(xaxis_data=x_data)
    .add_yaxis(
        series_name="蒸发量",
        y_axis=evaporation_capacity,
        yaxis_index=0,   #多轴时才会有索引,默认轴索引都为0
        color=colors[1],
    )
    .add_yaxis(
        series_name="降水量", y_axis=rainfall_capacity, yaxis_index=1, color=colors[0]
    )
    .extend_axis(
        yaxis=opts.AxisOpts(
            name="蒸发量",
            type_="value",
            min_=0,
            max_=250,
            position="right",  #在右
            axisline_opts=opts.AxisLineOpts(
                linestyle_opts=opts.LineStyleOpts(color=colors[1])
            ),
            axislabel_opts=opts.LabelOpts(formatter="{value} ml"),
        )
    )
    .extend_axis(
        yaxis=opts.AxisOpts(
            type_="value",
            name="温度",
            min_=0,
            max_=25,
            position="left", #在左
            axisline_opts=opts.AxisLineOpts(
                linestyle_opts=opts.LineStyleOpts(color=colors[2])
            ),
            axislabel_opts=opts.LabelOpts(formatter="{value} °C"),
            splitline_opts=opts.SplitLineOpts(
                is_show=True, linestyle_opts=opts.LineStyleOpts(opacity=1)  # opacity图形透明度,支持从 0 到 1 的数字,为 0 时不绘制该图形。
            ),
        )
    )
    .set_global_opts(
        yaxis_opts=opts.AxisOpts(
            type_="value",
            name="降水量",
            min_=0,
            max_=250,
            position="right",
            offset=80,# Y 轴相对于默认位置的偏移,在相同的 position 上有多个 Y 轴的时候有用。
            axisline_opts=opts.AxisLineOpts(
                linestyle_opts=opts.LineStyleOpts(color=colors[0])
            ),
            axislabel_opts=opts.LabelOpts(formatter="{value} ml"),
        ),
        tooltip_opts=opts.TooltipOpts(trigger="axis", axis_pointer_type="cross"),
        #TooltipOpts:提示框配置项
        # 'axis': 坐标轴触发,主要在柱状图,折线图等会使用类目轴的图表中使用。
        # 'cross':十字准星指示器。其实是种简写,表示启用两个正交的轴的 axisPointer。
    )
)

line = (
    Line()
    .add_xaxis(xaxis_data=x_data)
    .add_yaxis(
        series_name="平均温度", y_axis=average_temperature, yaxis_index=2, color=colors[2]
    )
)

# bar.overlap(line).render("multiple_y_axes.html")
bar.overlap(line).render_notebook()

Pyecharts绘制图表大全——柱形图

 自定义柱状图颜色

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.commons.utils import JsCode
from pyecharts.faker import Faker


color_function = """
        function (params) {
            if (params.value > 0 && params.value < 50) {
                return 'red';
            } else if (params.value > 50 && params.value < 100) {
                return 'blue';
            }
            return 'green';
        }
        """
c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis(
        "商家A",
        Faker.values(),
        itemstyle_opts=opts.ItemStyleOpts(color=JsCode(color_function)), #ItemStyleOpts:图元样式配置项
    )
    .add_yaxis(
        "商家B",
        Faker.values(),
        itemstyle_opts=opts.ItemStyleOpts(color=JsCode(color_function)),
    )
    .add_yaxis(
        "商家C",
        Faker.values(),
        itemstyle_opts=opts.ItemStyleOpts(color=JsCode(color_function)),
    )
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-自定义柱状颜色"))
#     .render("bar_custom_bar_color.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 不同系列柱间距离

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values(), gap="0%") 
    # 不同系列的柱间距离,为百分比(如 '30%',表示柱子宽度的 30%)。
    # 如果想要两个系列的柱子重叠,可以设置 gap 为 '-100%'。这在用柱子做背景的时候有用。
    .add_yaxis("商家B", Faker.values(), gap="0%")
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-不同系列柱间距离"))
#     .render("bar_different_series_gap.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

  标记线最大-最小-平均值

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-MarkLine(指定类型)"))
    .set_series_opts(
        label_opts=opts.LabelOpts(is_show=False),
        markline_opts=opts.MarkLineOpts( #MarkLineItem:标记线数据项
            data=[
                opts.MarkLineItem(type_="min", name="最小值"),
                opts.MarkLineItem(type_="max", name="最大值"),
                opts.MarkLineItem(type_="average", name="平均值"),
            ]
        ),
    )
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 渐变圆柱

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.commons.utils import JsCode
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values(), category_gap="60%")# category_gap同一系列的柱间距离,默认为类目间距的 20%,可设固定值
    .set_series_opts(
        itemstyle_opts={  # 图元样式配置项
            "normal": {
                "color": JsCode(
                    """new echarts.graphic.LinearGradient(0, 0, 0, 1, [{
                offset: 0,
                color: 'rgba(0, 244, 255, 1)'
            }, {
                offset: 1,
                color: 'rgba(0, 77, 167, 1)'
            }], false)"""
                ),
                "barBorderRadius": [30, 30, 30, 30],
                "shadowColor": "rgb(0, 160, 221)",
            }
        }
    )
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-渐变圆柱"))
#     .render("bar_border_radius.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 单系列柱间距离

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values(), category_gap="80%")
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-单系列柱间距离"))
#     .render("bar_same_series_gap.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 鼠标滚轮选择缩放区域

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.days_attrs)
    .add_yaxis("商家A", Faker.days_values, color=Faker.rand_color())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-DataZoom(inside)"),
        datazoom_opts=opts.DataZoomOpts(type_="inside"),#DataZoomOpts:区域缩放配置项
        # type_组件类型,可选 "slider", "inside"  ,slider是鼠标左右或者上下选择区域,inside是鼠标滚轮放大缩小
    )
#     .render("bar_datazoom_inside.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 默认取消显示某 Series

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values(), is_selected=False)
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-默认取消显示某 Series"))
#     .render("bar_is_selected.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 翻转 XY 轴

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .reversal_axis() #翻转 XY 轴数据
    .set_series_opts(label_opts=opts.LabelOpts(position="right"))
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-翻转 XY 轴"))
#     .render("bar_reversal_axis.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 自定义标记多个点

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

x, y = Faker.choose(), Faker.values()
c = (
    Bar()
    .add_xaxis(x)
    .add_yaxis(
        "商家A",
        y,
        markpoint_opts=opts.MarkPointOpts(
            data=[opts.MarkPointItem(name="自定义标记点", coord=[x[2], y[2]], value=y[2]),
            opts.MarkPointItem(name="自定义标记点2", coord=[x[5], y[5]], value=y[5])]
        ),  #MarkPointItem:标记点数据项
            # coord标注的坐标。坐标格式视系列的坐标系而定,可以是直角坐标系上的 x, y,
            # 也可以是极坐标系上的 radius, angle。例如 [121, 2323]、['aa', 998]。
            # value标注值,可以不设。
    )
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-MarkPoint(自定义)"))
    .set_series_opts(label_opts=opts.LabelOpts(is_show=False))
#     .render("bar_markpoint_custom.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 动画配置基本示例

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar(
        init_opts=opts.InitOpts(
            animation_opts=opts.AnimationOpts(   # animation_opts画图动画初始化配置
                animation_delay=1000, animation_easing="elasticOut"
                 # animation_delay初始动画的延迟,默认值为 0
                # animation_easing# 初始动画的缓动效果
            )
        )
    )
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-动画配置基本示例", subtitle="我是副标题"))
#     .render("bar_base_with_animation.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 直方图

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values(), category_gap=0, color=Faker.rand_color())# category_gap同一系列的柱间距离,默认为类目间距的 20%,可设固定值
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-直方图"))
#     .render("bar_histogram.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 自定义多条标记线

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-MarkLine(自定义)"))
    .set_series_opts(
        label_opts=opts.LabelOpts(is_show=False),
        markline_opts=opts.MarkLineOpts(
            data=[opts.MarkLineItem(y=50, name="yAxis=50"),opts.MarkLineItem(y=30, name="yAxis=30"),]
        ),
    )
#     .render("bar_markline_custom.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 基本图表示例

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker


c = (
    Bar()
    .add_xaxis(Faker.choose())
    .add_yaxis("商家A", Faker.values())
    .add_yaxis("商家B", Faker.values())
    .set_global_opts(title_opts=opts.TitleOpts(title="Bar-基本示例", subtitle="我是副标题"))
#     .render("bar_base.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 水平滑动&鼠标滚轮缩放

from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.faker import Faker

c = (
    Bar()
    .add_xaxis(Faker.days_attrs)
    .add_yaxis("商家A", Faker.days_values, color=Faker.rand_color())
    .set_global_opts(
        title_opts=opts.TitleOpts(title="Bar-DataZoom(slider+inside)"),
        datazoom_opts=[opts.DataZoomOpts(), opts.DataZoomOpts(type_="inside")],
    )   #DataZoomOpts默认slider
#     .render("bar_datazoom_both.html")
)
c.render_notebook()

Pyecharts绘制图表大全——柱形图

 

到了这里,关于Pyecharts绘制图表大全——柱形图的文章就介绍完了。如果您还想了解更多内容,请在右上角搜索TOY模板网以前的文章或继续浏览下面的相关文章,希望大家以后多多支持TOY模板网!

本文来自互联网用户投稿,该文观点仅代表作者本人,不代表本站立场。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如若转载,请注明出处: 如若内容造成侵权/违法违规/事实不符,请点击违法举报进行投诉反馈,一经查实,立即删除!

领支付宝红包 赞助服务器费用

相关文章

  • 【Python】Python中使用Matplotlib绘制折线图、散点图、饼形图、柱形图和箱线图

    python数据可视化课程,实验二 Matplotlib 中文API:API 概览 | Matplotlib 一、实验任务的数据背景 提供的源数据(数据文件employee.csv)共拥有4个特征,分别为就业人员、第一产业就业人员、第二产业就业人员、第三产业就业人员。根据3个产业就业人员的数量绘制散点图和折线图。

    2023年04月15日
    浏览(96)
  • 数据可视化——用python绘制气泡图、三维散点图、多重柱形图案例

    目录 前言 一、气泡图的绘制 1、什么是气泡图?他适用于什么数据? 2、图形效果展示 3、导入需要用到的库 4、读取要分析的数据 5、检查数据是否有问题 6、将要对比数据提取出来 7、画图 二、三维散点图的绘制 1、什么是三维散点图? 2、导入需要用到的数据库 3、画图 三

    2024年02月06日
    浏览(63)
  • 第五章. 可视化数据分析图表—常用图表的绘制4—箱形图,3D图表

    第五章. 可视化数据分析图 本节主要介绍常用图表的绘制,主要包括箱形图,3D柱形图,3D曲面图。 ·箱形图又称箱线图、盒须图或盒式图 ·用于显示一组数据分散情况的统计图 ·优点:不受异常值的影响,可以以一种相对稳定的方式描述数据的离散分布情况,也常用于异常值

    2024年02月03日
    浏览(58)
  • pyecharts绘制各种数据可视化图表案例(效果+代码)

    1、pyecharts绘制饼图(显示百分比) 2、pyecharts绘制柱状图 3、pyecharts绘制折线图 4、pyecharts绘制柱形折线组合图 5、pyecharts绘制散点图 6、pyecharts绘制玫瑰图 7、pyecharts绘制词云图 8、pyecharts绘制雷达图 9、pyecharts绘制散点图 10、pyecharts绘制嵌套饼图 11、pyecharts绘制中国地图 12、

    2024年02月09日
    浏览(49)
  • Python 数据可视化教程 - 如何使用 pyecharts 绘制多条折线图表

    部分数据来源: ChatGPT   引言         本文主要介绍如何使用 Python 中的 pyecharts 库,绘制多条折线图表。在本例中,我们将展示各国的 COVID-19 确诊人数数据。 1、首先,我们需要导入必要的库: 其中, json  库用于解析 JSON 数据, pyecharts  库用于绘图, TitleOpts 、 Lege

    2024年02月09日
    浏览(56)
  • Echarts 3D柱形图和3D堆叠柱形图实现

    此处采用的双柱样式,来源于链接: 点击此处跳转。 我对其进行了样式的修改,得到了如图所示的结果。这个图本身组成部分多样,一组双柱图(蓝绿柱子),由10个部分构成,解释其中一个(蓝色),一个由3个菱形,2个直边构成。3个菱形为上、中、底部,2个直边为背景虚

    2024年02月09日
    浏览(42)
  • Python可视化神器:pyecharts,轻松绘制 30+ 种超实用精美图表!

    欢迎关注 ,专注 Python、数据分析、数据挖掘、好玩工具! 如果要问:Python 中有那些可视化工具库?我想很多人都能想起来 matplotlib,这是一款初学者绕不开的库,但随着对数据可视化的要求越来越高,matplotlib 已无法满足了。 今天我将和大家详细讲解 Pyecharts 模块,说到它

    2023年04月08日
    浏览(44)
  • 前端vue自定义柱形图 选中更改柱形图颜色及文字标注颜色

    随着技术的发展,开发的复杂度也越来越高,传统开发方式将一个系统做成了整块应用,经常出现的情况就是一个小小的改动或者一个小功能的增加可能会引起整体逻辑的修改,造成牵一发而动全身。 通过组件化开发,可以有效实现单独开发,单独维护,而且他们之间可以随

    2024年02月12日
    浏览(49)
  • ThreeJS之3D柱形图

            学习threejs第二篇,3D柱形图练习,本文参考了网上的实现方式,用html方式进行了实现。先上效果图: 关键代码:  数据准备 柱形图分为上下两部分,因此使用了二维数组,表示上半部分和下半部分。 生成柱形图 通过对数据源的循环,以此生成矩形图,图表使用

    2024年02月15日
    浏览(41)
  • python可视化——3D柱形图

       

    2024年02月06日
    浏览(61)

觉得文章有用就打赏一下文章作者

支付宝扫一扫打赏

博客赞助

微信扫一扫打赏

请作者喝杯咖啡吧~博客赞助

支付宝扫一扫领取红包,优惠每天领

二维码1

领取红包

二维码2

领红包