A Python Echarts Plotting Library. Apache Echarts 是一个由百度开源的数据可视化,凭借着良好的交互性,精巧的图表设计,得到了众多开发者的认可。而 Python 是一门富有表达力的语言,很适合用于数据处理。当数据分析遇上数据可视化时,pyecharts 诞生了。

# 安装 v1 以上版本
$ pip install pyecharts -U
# 如果需要安装 0.5.11 版本的开发者,可以使用
# pip install pyecharts==0.5.11
# 安装 v1 以上版本
$ git clone https://github.com/pyecharts/pyecharts.git
# 如果需要安装 0.5.11 版本,请使用 git clone https://github.com/pyecharts/pyecharts.git -b v05x
$ cd pyecharts
$ pip install -r requirements.txt
$ python setup.py install
from pyecharts.charts import Bar
from pyecharts import options as opts
# V1 版本开始支持链式调用
bar = (
Bar()
.add_xaxis(["衬衫", "毛衣", "领带", "裤子", "风衣", "高跟鞋", "袜子"])
.add_yaxis("商家A", [114, 55, 27, 101, 125, 27, 105])
.add_yaxis("商家B", [57, 134, 137, 129, 145, 60, 49])
.set_global_opts(title_opts=opts.TitleOpts(title="某商场销售情况(爱看书的小沐)"))
)
bar.render()
# 不习惯链式调用的开发者依旧可以单独调用方法
bar = Bar()
bar.add_xaxis(["衬衫", "毛衣", "领带", "裤子", "风衣", "高跟鞋", "袜子"])
bar.add_yaxis("商家A", [114, 55, 27, 101, 125, 27, 105])
bar.add_yaxis("商家B", [57, 134, 137, 129, 145, 60, 49])
bar.set_global_opts(title_opts=opts.TitleOpts(title="某商场销售情况(爱看书的小沐)"))
bar.render()
import random
from pyecharts import options as opts
from pyecharts.charts import Bar3D
from pyecharts.faker import Faker
data = [(i, j, random.randint(0, 12)) for i in range(6) for j in range(24)]
c = (
Bar3D()
.add(
"",
[[d[1], d[0], d[2]] for d in data],
xaxis3d_opts=opts.Axis3DOpts(Faker.clock, type_="category"),
yaxis3d_opts=opts.Axis3DOpts(Faker.week_en, type_="category"),
zaxis3d_opts=opts.Axis3DOpts(type_="value"),
)
.set_global_opts(
visualmap_opts=opts.VisualMapOpts(max_=20),
title_opts=opts.TitleOpts(title="Bar3D-基本示例 (爱看书的小沐)"),
)
.render("bar3d_base.html")
)
from snapshot_selenium import snapshot as driver
from pyecharts import options as opts
from pyecharts.charts import Bar
from pyecharts.render import make_snapshot
def bar_chart() -> Bar:
c = (
Bar()
.add_xaxis(["衬衫", "毛衣", "领带", "裤子", "风衣", "高跟鞋", "袜子"])
.add_yaxis("商家A", [114, 55, 27, 101, 125, 27, 105])
.add_yaxis("商家B", [57, 134, 137, 129, 145, 60, 49])
.reversal_axis()
.set_series_opts(label_opts=opts.LabelOpts(position="right"))
.set_global_opts(title_opts=opts.TitleOpts(title="Bar-测试渲染图片(爱看书的小沐)"))
)
return c
# 需要安装 snapshot-selenium 或者 snapshot-phantomjs
make_snapshot(driver, bar_chart().render(), "bar.png")
from snapshot_selenium import snapshot as driver
from pyecharts.render import make_snapshot
from pyecharts import options as opts
from pyecharts.charts import Bar3D
import random
x_data = y_data = list(range(10))
def generate_data():
data = []
for j in range(10):
for k in range(10):
value = random.randint(0, 9)
data.append([j, k, value * 2 + 4])
return data
def bar3d_chart() -> Bar3D:
bar3d = Bar3D()
for _ in range(10):
bar3d.add(
"",
generate_data(),
shading="lambert",
xaxis3d_opts=opts.Axis3DOpts(data=x_data, type_="value"),
yaxis3d_opts=opts.Axis3DOpts(data=y_data, type_="value"),
zaxis3d_opts=opts.Axis3DOpts(type_="value"),
)
bar3d.set_global_opts(title_opts=opts.TitleOpts("Bar3D-堆叠柱状图示例(爱看书的小沐)"))
bar3d.set_series_opts(**{"stack": "stack"})
# bar3d.render("bar3d_stack.html")
return bar3d
# 需要安装 snapshot-selenium 或者 snapshot-phantomjs
make_snapshot(driver, bar3d_chart().render(), "bar3d.png")
Install the classic Jupyter Notebook with:
pip install notebook
jupyter notebook
# How do I open a specific Notebook?
jupyter notebook notebook.ipynb
# How do I start the Notebook using a custom IP or port?
jupyter notebook --port 9999
# How do I start the Notebook server without opening a browser?
jupyter notebook --no-browser
# How do I get help about Notebook server options?
jupyter notebook --help
# Running a notebook is this easy.
jupyter run notebook.ipynb
# You can pass more than one notebook as well.
jupyter run notebook.ipynb notebook2.ipynb
# By default, notebook errors will be raised and printed into the terminal. You can suppress them by passing the --allow-errors flag.
jupyter run notebook.ipynb --allow-errors
编辑代码:
预览成果:
pip install jupyterlab
Once installed, launch JupyterLab with:
jupyter-lab
鼠标点击NoteBook按钮,进入编辑界面,并输入代码如下如下:
# Install Voilà with:
pip install voila
# Once installed, launch Voilà with:
voila
浏览器访问:http://localhost:8866/
查看某个ipynb文件如下:
from pyecharts import options as opts
from pyecharts.charts import Map
from pyecharts.faker import Faker
c = (
Map()
.add("商家A", [list(z) for z in zip(Faker.provinces, Faker.values())], "china")
.set_global_opts(title_opts=opts.TitleOpts(title="Map-基本示例"))
.render("map_base.html")
)
from pyecharts import options as opts
from pyecharts.charts import Map
from pyecharts.faker import Faker
c = (
Map()
.add("商家A", [list(z) for z in zip(Faker.guangdong_city, Faker.values())], "广东")
.set_global_opts(
title_opts=opts.TitleOpts(title="Map-广东地图"), visualmap_opts=opts.VisualMapOpts()
)
.render("map_guangdong.html")
)
from pyecharts import options as opts
from pyecharts.charts import Map
from pyecharts.faker import Faker
c = (
Map()
.add("商家A", [list(z) for z in zip(Faker.provinces, Faker.values())], "china")
.set_global_opts(
title_opts=opts.TitleOpts(title="Map-VisualMap(分段型)"),
visualmap_opts=opts.VisualMapOpts(max_=200, is_piecewise=True),
)
.render("map_visualmap_piecewise.html")
)
from pyecharts import options as opts
from pyecharts.charts import Map
from pyecharts.faker import Faker
c = (
Map()
.add("商家A", [list(z) for z in zip(Faker.country, Faker.values())], "world")
.set_series_opts(label_opts=opts.LabelOpts(is_show=False))
.set_global_opts(
title_opts=opts.TitleOpts(title="Map-世界地图"),
visualmap_opts=opts.VisualMapOpts(max_=200),
)
.render("map_world.html")
)
import ssl
import pyecharts.options as opts
from pyecharts.charts import Map
from pyecharts.datasets import register_url
"""
Gallery 使用 pyecharts 1.1.0 和 echarts-china-cities-js
参考地址: https://echarts.apache.org/examples/editor.html?c=map-HK
"""
ssl._create_default_https_context = ssl._create_unverified_context
# 与 pyecharts 注册,当画香港地图的时候,用 echarts-china-cities-js
register_url("https://echarts-maps.github.io/echarts-china-cities-js")
WIKI_LINK = (
"http://zh.wikipedia.org/wiki/"
"%E9%A6%99%E6%B8%AF%E8%A1%8C%E6%94%BF%E5%8D%80%E5%8A%83#cite_note-12"
)
MAP_DATA = [
["中西区", 20057.34],
["湾仔", 15477.48],
["东区", 31686.1],
["南区", 6992.6],
["油尖旺", 44045.49],
["深水埗", 40689.64],
["九龙城", 37659.78],
["黄大仙", 45180.97],
["观塘", 55204.26],
["葵青", 21900.9],
["荃湾", 4918.26],
["屯门", 5881.84],
["元朗", 4178.01],
["北区", 2227.92],
["大埔", 2180.98],
["沙田", 9172.94],
["西贡", 3368],
["离岛", 806.98],
]
NAME_MAP_DATA = {
# "key": "value"
# "name on the hong kong map": "name in the MAP DATA",
"中西区": "中西区",
"东区": "东区",
"离岛区": "离岛",
"九龙城区": "九龙城",
"葵青区": "葵青",
"观塘区": "观塘",
"北区": "北区",
"西贡区": "西贡",
"沙田区": "沙田",
"深水埗区": "深水埗",
"南区": "南区",
"大埔区": "大埔",
"荃湾区": "荃湾",
"屯门区": "屯门",
"湾仔区": "湾仔",
"黄大仙区": "黄大仙",
"油尖旺区": "油尖旺",
"元朗区": "元朗",
}
(
Map(init_opts=opts.InitOpts(width="1400px", height="800px"))
.add(
series_name="香港18区人口密度",
maptype="香港",
data_pair=MAP_DATA,
name_map=NAME_MAP_DATA,
is_map_symbol_show=False,
)
.set_global_opts(
title_opts=opts.TitleOpts(
title="香港18区人口密度 (2011)",
subtitle="人口密度数据来自Wikipedia",
subtitle_link=WIKI_LINK,
),
tooltip_opts=opts.TooltipOpts(
trigger="item", formatter="{b}<br/>{c} (p / km2)"
),
visualmap_opts=opts.VisualMapOpts(
min_=800,
max_=50000,
range_text=["High", "Low"],
is_calculable=True,
range_color=["lightskyblue", "yellow", "orangered"],
),
)
.render("population_density_of_HongKong_v2.html")
)
import asyncio
from aiohttp import TCPConnector, ClientSession
import pyecharts.options as opts
from pyecharts.charts import Map
"""
Gallery 使用 pyecharts 1.1.0
参考地址: https://echarts.apache.org/examples/editor.html?c=map-HK
"""
WIKI_LINK = (
"http://zh.wikipedia.org/wiki/"
"%E9%A6%99%E6%B8%AF%E8%A1%8C%E6%94%BF%E5%8D%80%E5%8A%83#cite_note-12"
)
async def get_json_data(url: str) -> dict:
async with ClientSession(connector=TCPConnector(ssl=False)) as session:
async with session.get(url=url) as response:
return await response.json()
# 下载香港地图
# data = asyncio.run(
# get_json_data(url="https://echarts.apache.org/examples/data/asset/geo/HK.json")
# )
loop = asyncio.get_event_loop()
data = loop.run_until_complete(get_json_data(url="https://echarts.apache.org/examples/data/asset/geo/HK.json"))
MAP_DATA = [
["中西区", 20057.34],
["湾仔", 15477.48],
["东区", 31686.1],
["南区", 6992.6],
["油尖旺", 44045.49],
["深水埗", 40689.64],
["九龙城", 37659.78],
["黄大仙", 45180.97],
["观塘", 55204.26],
["葵青", 21900.9],
["荃湾", 4918.26],
["屯门", 5881.84],
["元朗", 4178.01],
["北区", 2227.92],
["大埔", 2180.98],
["沙田", 9172.94],
["西贡", 3368],
["离岛", 806.98],
]
NAME_MAP_DATA = {
# "key": "value"
# "name on the hong kong map": "name in the MAP DATA",
"Central and Western": "中西区",
"Eastern": "东区",
"Islands": "离岛",
"Kowloon City": "九龙城",
"Kwai Tsing": "葵青",
"Kwun Tong": "观塘",
"North": "北区",
"Sai Kung": "西贡",
"Sha Tin": "沙田",
"Sham Shui Po": "深水埗",
"Southern": "南区",
"Tai Po": "大埔",
"Tsuen Wan": "荃湾",
"Tuen Mun": "屯门",
"Wan Chai": "湾仔",
"Wong Tai Sin": "黄大仙",
"Yau Tsim Mong": "油尖旺",
"Yuen Long": "元朗",
}
(
Map(init_opts=opts.InitOpts(width="1400px", height="800px"))
.add_js_funcs("echarts.registerMap('HK', {});".format(data))
.add(
series_name="香港18区人口密度",
maptype="HK",
data_pair=MAP_DATA,
name_map=NAME_MAP_DATA,
is_map_symbol_show=False,
)
.set_global_opts(
title_opts=opts.TitleOpts(
title="香港18区人口密度 (2011)",
subtitle="人口密度数据来自Wikipedia",
subtitle_link=WIKI_LINK,
),
tooltip_opts=opts.TooltipOpts(
trigger="item", formatter="{b}<br/>{c} (p / km2)"
),
visualmap_opts=opts.VisualMapOpts(
min_=800,
max_=50000,
range_text=["High", "Low"],
is_calculable=True,
range_color=["lightskyblue", "yellow", "orangered"],
),
)
.render("population_density_of_HongKong.html")
)
from pyecharts import options as opts
from pyecharts.charts import Map
from pyecharts.faker import Faker
c = (
Map()
.add(
"商家A",
[list(z) for z in zip(Faker.guangdong_city, Faker.values())],
"china-cities",
label_opts=opts.LabelOpts(is_show=False),
)
.set_global_opts(
title_opts=opts.TitleOpts(title="Map-中国地图(带城市)"),
visualmap_opts=opts.VisualMapOpts(),
)
.render("map_china_cities.html")
)
from pyecharts import options as opts
from pyecharts.charts import Map
from pyecharts.faker import Faker
c = (
Map()
.add("商家A", [list(z) for z in zip(Faker.provinces, Faker.values())], "china")
.set_series_opts(label_opts=opts.LabelOpts(is_show=False))
.set_global_opts(title_opts=opts.TitleOpts(title="Map-不显示Label"))
.render("map_without_label.html")
)
from pyecharts import options as opts
from pyecharts.charts import Map
from pyecharts.faker import Faker
c = (
Map()
.add("商家A", [list(z) for z in zip(Faker.provinces, Faker.values())], "china")
.set_global_opts(
title_opts=opts.TitleOpts(title="Map-VisualMap(连续型)"),
visualmap_opts=opts.VisualMapOpts(max_=200),
)
.render("map_visualmap.html")
)
from pyecharts import options as opts
from pyecharts.charts import Map3D
from pyecharts.globals import ChartType
c = (
Map3D()
.add_schema(
itemstyle_opts=opts.ItemStyleOpts(
color="rgb(5,101,123)",
opacity=1,
border_width=0.8,
border_color="rgb(62,215,213)",
),
map3d_label=opts.Map3DLabelOpts(
is_show=True,
text_style=opts.TextStyleOpts(
color="#fff", font_size=16, background_color="rgba(0,0,0,0)"
),
),
emphasis_label_opts=opts.LabelOpts(is_show=True),
light_opts=opts.Map3DLightOpts(
main_color="#fff",
main_intensity=1.2,
is_main_shadow=False,
main_alpha=55,
main_beta=10,
ambient_intensity=0.3,
),
)
.add(series_name="", data_pair="", maptype=ChartType.MAP3D)
.set_global_opts(
title_opts=opts.TitleOpts(title="全国行政区划地图-Base"),
visualmap_opts=opts.VisualMapOpts(is_show=False),
tooltip_opts=opts.TooltipOpts(is_show=True),
)
.render("map3d_china_base.html")
)
import pyecharts.options as opts
from pyecharts.charts import MapGlobe
from pyecharts.faker import POPULATION
data = [x for _, x in POPULATION[1:]]
low, high = min(data), max(data)
c = (
MapGlobe()
.add_schema()
.add(
maptype="world",
series_name="World Population",
data_pair=POPULATION[1:],
is_map_symbol_show=False,
label_opts=opts.LabelOpts(is_show=False),
)
.set_global_opts(
visualmap_opts=opts.VisualMapOpts(
min_=low,
max_=high,
range_text=["max", "min"],
is_calculable=True,
range_color=["lightskyblue", "yellow", "orangered"],
)
)
.render("map_globe_base.html")
)
如果您觉得该方法或代码有一点点用处,可以给作者点个赞,或打赏杯咖啡;╮( ̄▽ ̄)╭
如果您感觉方法或代码不咋地//(ㄒoㄒ)//,就在评论处留言,作者继续改进;o_O???
如果您需要相关功能的代码定制化开发,可以留言私信作者;(✿◡‿◡)
感谢各位大佬童鞋们的支持!( ´ ▽´ )ノ ( ´ ▽´)っ!!!
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这似乎非常适得其反,因为太多的gem会在window上破裂。我一直在处理很多mysql和ruby-mysqlgem问题(gem本身发生段错误,一个名为UnixSocket的类显然在Windows机器上不能正常工作,等等)。我只是在浪费时间吗?我应该转向不同的脚本语言吗? 最佳答案 我在Windows上使用Ruby的经验很少,但是当我开始使用Ruby时,我是在Windows上,我的总体印象是它不是Windows原生系统。因此,在主要使用Windows多年之后,开始使用Ruby促使我切换回原来的系统Unix,这次是Linux。Rub
我正在玩HTML5视频并且在ERB中有以下片段:mp4视频从在我的开发环境中运行的服务器很好地流式传输到chrome。然而firefox显示带有海报图像的视频播放器,但带有一个大X。问题似乎是mongrel不确定ogv扩展的mime类型,并且只返回text/plain,如curl所示:$curl-Ihttp://0.0.0.0:3000/pr6.ogvHTTP/1.1200OKConnection:closeDate:Mon,19Apr201012:33:50GMTLast-Modified:Sun,18Apr201012:46:07GMTContent-Type:text/plain
只是想确保我理解了事情。据我目前收集到的信息,Cucumber只是一个“包装器”,或者是一种通过将事物分类为功能和步骤来组织测试的好方法,其中实际的单元测试处于步骤阶段。它允许您根据事物的工作方式组织您的测试。对吗? 最佳答案 有点。它是一种组织测试的方式,但不仅如此。它的行为就像最初的Rails集成测试一样,但更易于使用。这里最大的好处是您的session在整个Scenario中保持透明。关于Cucumber的另一件事是您(应该)从使用您的代码的浏览器或客户端的角度进行测试。如果您愿意,您可以使用步骤来构建对象和设置状态,但通常您
这个问题在这里已经有了答案:关闭10年前。PossibleDuplicate:Pythonconditionalassignmentoperator对于这样一个简单的问题表示歉意,但是谷歌搜索||=并不是很有帮助;)Python中是否有与Ruby和Perl中的||=语句等效的语句?例如:foo="hey"foo||="what"#assignfooifit'sundefined#fooisstill"hey"bar||="yeah"#baris"yeah"另外,类似这样的东西的通用术语是什么?条件分配是我的第一个猜测,但Wikipediapage跟我想的不太一样。
什么是ruby的rack或python的Java的wsgi?还有一个路由库。 最佳答案 来自Python标准PEP333:Bycontrast,althoughJavahasjustasmanywebapplicationframeworksavailable,Java's"servlet"APImakesitpossibleforapplicationswrittenwithanyJavawebapplicationframeworktoruninanywebserverthatsupportstheservletAPI.ht