1.基础地图使用
注意写名字的时候要写全名,比如上海市不能写出上海,不然看不到数据
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鼠标点击即可看到数据
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设置属性的时候不要忘记导包
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# 演示地图可视化的基础使用
from pyecharts.charts import Map
from pyecharts.options import VisualMapOpts
# 准备地图对象
map = Map()
# 准备数据
data = [
("北京市",99),
("上海市",199),
("湖南省",299),
("台湾省",399),
("广东省",499)
]
# 添加数据
map.add("测试地图",data,"china")
# 设置全局选项
map.set_global_opts(
visualmap_opts=VisualMapOpts(
is_show=True,
is_piecewise=True,
pieces=[
{"min":1,"max":9,"label":"1-9","color":"#CCFFFF"},
{"min":10,"max":99,"label":"10-99","color":"#FF6666"},
{"min":100,"max":500,"label":"100-500","color":"#990033"}
]
)
)
# 绘图
map.render()
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这个颜色是怎么设置的呢?
打开懒人网站 ab173.com ,点击前端里面的rgb颜色对照表
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在里面即可看到
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想要的颜色代码就可以在这里直接展示
2.疫情地图---国内疫情地图
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以上是一个数据的部分例子,对他进行分析依旧是在懒人网站的json视图中输入,然后格式化,查看视图
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找到省份名称以及确诊人数
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这样我们就得到了一个完整的数据
那么相信大家应该已经掌握好了,上代码!
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但是大家会发现没有颜色,这是为什么,因为我所使用的数据没有全称,只有简称,所以需要补充完整名字
if province_name == "北京":
province_name += "市"
else:
province_name += "省"
比如这样就可以了,还有其他的市,就不一一演示了,大家感兴趣自行探索
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细心观察你会发现,北京也有颜色了
最终代码
# 演示全国疫情可视化地图开发
import json
from pyecharts.charts import Map
from pyecharts.options import *
# 读取数据文件
f = open("D:/疫情.txt","r",encoding="UTF-8")
data = f.read()
# 关闭文件
f.close()
# 取到各省数据
# 将字符串json转换为python的字典
data_dict = json.loads(data) #基础数据字典
# 从字典中取出省份的数据
province_data_list = data_dict["areaTree"][0]["children"]
# 组装每个省份和确诊人数为元组,并把各个省的数据都封装入列表内
data_list = []
for province_data in province_data_list:
province_name = province_data["name"] # 省份名称
if province_name == "北京":
province_name += "市"
else:
province_name += "省"
province_confirm = province_data["total"]["confirm"] #确诊人数
data_list.append((province_name,province_confirm))
# 创建地图对象
map = Map()
# 添加数据
map.add("各省份确诊人数",data_list,"china")
# 设置全局配置,定制分段的视觉映射
map.set_global_opts(
title_opts=TitleOpts(title="疫情全国地图"),
visualmap_opts=VisualMapOpts(
is_show=True, # 是否显示
is_piecewise=True, # 是否分段
pieces=[
{"min":1,"max":99,"lable":"1~99人","color":"#CCFFFF"},
{"min":100,"max":999,"lable":"100~999人","color":"#FFFF99"},
{"min":1000,"max":4999,"lable":"1000~4999人","color":"#FF9966"},
{"min":5000,"max":9999,"lable":"5000~9999人","color":"#FF6666"},
{"min":10000,"max":99999,"lable":"10000~99999人","color":"CC3333"},
{"min":100000,"lable":"100000+","color":"#990033"}
# 当你设置颜色最大值可以不要设置
]
)
)
# 绘图
map.render("全国疫情地图.html") # 控制文件生成的文件名
3.疫情地图------省级疫情地图
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数据处理还是一样首先找层级关系
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注意随时检查
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如果有的市没有在数据中,我们可以手动添加
其实制作地图,只有两步:数据处理和构建地图
那么上代码!
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# 演示河南省疫情地图开发
import json
from pyecharts.charts import Map
from pyecharts.options import *
# 读取文件
f = open("D:/疫情.txt","r",encoding="UTF-8")
data = f.read()
# 关闭文件
f.close()
# json数据转换为python字典
data_lict = json.loads(data)
# 获取河南省数据
cities_data = data_lict["areaTree"][0]["children"][3]["children"]
# 准备数据为元组并放入list
data_list = []
for city_data in cities_data:
city_name = city_data["name"] + "市"
city_confirm = city_data["total"]["confirm"]
data_list.append((city_name,city_confirm))
# 手动添加济源市的数据
data_list.append(("济源市",5))
# 构建地图
map = Map()
# 添加数据
map.add("河南省疫情分布",data_list,"河南")
# 设置全局选项
map.set_global_opts(
title_opts=TitleOpts(title="河南省疫情地图"),
visualmap_opts=VisualMapOpts(
is_show=True, # 是否显示
is_piecewise=True, # 是否分段
pieces=[
{"min":1,"max":99,"lable":"1~99人","color":"#CCFFFF"},
{"min":100,"max":999,"lable":"100~999人","color":"#FFFF99"},
{"min":1000,"max":4999,"lable":"1000~4999人","color":"#FF9966"},
{"min":5000,"max":9999,"lable":"5000~9999人","color":"#FF6666"},
{"min":10000,"max":99999,"lable":"10000~99999人","color":"CC3333"},
{"min":100000,"lable":"100000+","color":"#990033"}
# 当你设置颜色最大值可以不要设置
]
)
)
# 绘图
map.render("河南省疫情地图.html")