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  • 基于 Jupyter Notebook 和Plotly的交互式COVID-19实时追踪可视化系统(上)

    基于 Jupyter Notebook 和Plotly的交互式COVID-19实时追踪可视化系统(上)

    2019年末,一种新型冠状病毒在中国湖北武汉爆发,此病毒目前被命名为严重急性呼吸综合征冠状病毒2(SARS-CoV-2)。该疫情目前已经蔓延到中国各个省份以及213个国家和地区,截止至2020年5月31日全球累计确诊人数现已超过600万。Michael Freeborn开发了一个在线的交互式仪表盘用于实时可视化和追踪2019新型冠状病毒疫情(COVID-19)的确诊病例。

    1.项目准备

    from datetime import datetime, timezone
    f"Last updated: {datetime.now(tz=timezone.utc):%d %B %Y %H:%M:%S %Z}"
    
    import re
    from datetime import datetime
    
    import numpy as np
    import pandas as pd
    import plotly.graph_objects as go
    from IPython.display import display
    from plotly.subplots import make_subplots
    
    pd.options.display.max_columns = 12
    
    date_pattern = re.compile(r"d{1,2}/d{1,2}/d{2}")
    def reformat_dates(col_name: str) -> str:
        #对于作为日期的列,以日/月/年格式输出
        try:
            return date_pattern.sub(datetime.strptime(col_name, "%m/%d/%y").strftime("%d/%m/%Y"), col_name, count=1)
        except ValueError:
            return col_name
    
    #此github仓库包含所有冠状病毒病例的时间序列数据:https://github.com/CSSEGISandData/COVID-19 
    confirmed_cases_url = "https://raw.githubusercontent.com/CSSEGISandData/COVID-19/master/csse_covid_19_data/csse_covid_19_time_series/time_series_covid19_confirmed_global.csv"
    deaths_url = "https://raw.githubusercontent.com/CSSEGISandData/COVID-19/master/csse_covid_19_data/csse_covid_19_time_series/time_series_covid19_deaths_global.csv"
    

    2.整体图表

    renamed_columns_map = {
        "Country/Region": "country",
        "Province/State": "location",
        "Lat": "latitude",
        "Long": "longitude"
    }
    
    cols_to_drop = ["location", "latitude", "longitude"]
    
    confirmed_cases_df = (
        pd.read_csv(confirmed_cases_url)
        .rename(columns=renamed_columns_map)
        .rename(columns=reformat_dates)
        .drop(columns=cols_to_drop)
    )
    deaths_df = (
        pd.read_csv(deaths_url)
        .rename(columns=renamed_columns_map)
        .rename(columns=reformat_dates)
        .drop(columns=cols_to_drop)
    )
    
    display(confirmed_cases_df.head())
    display(deaths_df.head())
    

    #仅提取相关的地理数据,然后将其加入另一个具有国家/地区代码的.csv。
    #所需的绘图功能的国家代码来标识在地图上的国家
    geo_data_df = confirmed_cases_df[["country"]].drop_duplicates()
    country_codes_df = (
        pd.read_csv(
            "country_code_mapping.csv",
            usecols=["country", "alpha-3_code"],
            index_col="country")
    )
    geo_data_df = geo_data_df.join(country_codes_df, how="left", on="country").set_index("country")
    
    #我的国家/地区代码.csv文件和COVID-19数据源在某些国家/地区的名称上存在分歧。这
    #数据框应该是空的,否则就意味着我需要修改国名在.csv匹配
    geo_data_df[(pd.isnull(geo_data_df["alpha-3_code"])) & (~geo_data_df.index.isin(
        ["Diamond Princess", "MS Zaandam", "West Bank and Gaza"]
    ))]
    
    dates_list = (
        deaths_df.filter(regex=r"(d{2}/d{2}/d{4})", axis=1)
        .columns
        .to_list()
    )
    #创建日期的映射- >数据帧,其中,每个DF保持箱子每个国家的每日计数和死亡
    cases_by_date = {}
    for date in dates_list:
        confirmed_cases_day_df = (
            confirmed_cases_df
            .filter(like=date, axis=1)
            .rename(columns=lambda col: "confirmed_cases")
        )
        deaths_day_df = deaths_df.filter(like=date, axis=1).rename(columns=lambda col: "deaths")
        cases_df = confirmed_cases_day_df.join(deaths_day_df).set_index(confirmed_cases_df["country"])
    
        date_df = (
            geo_data_df.join(cases_df)
            .groupby("country")
            .agg({"confirmed_cases": "sum", "deaths": "sum", "alpha-3_code": "first"})
        )
        date_df = date_df[date_df["confirmed_cases"] > 0].reset_index()
        
        cases_by_date[date] = date_df   
    #每一天的数据框看起来是这样的:
    cases_by_date[dates_list[-1]].head()
    

    #当我们为地图动画制作帧时的辅助函数
    def frame_args(duration):
        return {
            "frame": {"duration": duration},
            "mode": "immediate",
            "fromcurrent": True,
            "transition": {"duration": duration, "easing": "linear"},
        }
    
    fig = make_subplots(rows=2, cols=1, specs=[[{"type": "scattergeo"}], [{"type": "xy"}]], row_heights=[0.8, 0.2])
    
    #设置地理数据,滑块,播放和暂停按钮以及标题
    fig.layout.geo = {"showcountries": True}
    fig.layout.sliders = [{"active": 0, "steps": []}]
    fig.layout.updatemenus = [
        {
            "type": "buttons",
            "buttons": [
                {
                    "label": "▶",  # play symbol
                    "method": "animate",
                    "args": [None, frame_args(100)],
                },
                {
                    "label": "◼",
                    "method": "animate",  # stop symbol
                    "args": [[None], frame_args(0)],
                },
            ],
            "showactive": False,
            "direction": "left",
        }
    ]
    fig.layout.title = {"text": "Covid-19 Global Case Tracker", "x": 0.5}
    
    frames = []
    steps = []
    #设置颜色条刻度值,范围从1到最大数。确诊病例任何国家迄今
    max_country_confirmed_cases = cases_by_date[dates_list[-1]]["confirmed_cases"].max()
    
    #考虑到案例数量的显着差异,我们希望标度为对数
    high_tick = np.log1p(max_country_confirmed_cases)
    low_tick = np.log1p(1)
    log_tick_values = np.geomspace(low_tick, high_tick, num=6)
    
    #但是,我们希望尺度上的/ labels /是实际的案例数(即不是log(n_cases))
    visual_tick_values = np.expm1(log_tick_values).astype(int)
    #由于舍入误差- #明确设置最大CBAR值,否则它可能是最大
    visual_tick_values[-1] = max_country_confirmed_cases  
    visual_tick_values = [f"{val:,}" for val in visual_tick_values]
    
    #生成折线图数据
    元组的列表#:[(confirmed_cases,死亡),...] 
    cases_deaths_totals = [(df.filter(like="confirmed_cases").astype("uint32").agg("sum")[0], 
                            df.filter(like="deaths").astype("uint32").agg("sum")[0]) 
                              for df in cases_by_date.values()]
    
    confirmed_cases_totals = [daily_total[0] for daily_total in cases_deaths_totals]
    deaths_totals =[daily_total[1] for daily_total in cases_deaths_totals]
    
    
    #该循环为每个帧生成数据
    for i, (date, data) in enumerate(cases_by_date.items(), start=1):
        df = data
    
        #z比例尺(用于计算每个国家的颜色)需要为对数
        df["confirmed_cases_log"] = np.log1p(df["confirmed_cases"])
    
        df["text"] = (
            date
            + "<br>"
            + df["country"]
            + "<br>Confirmed cases: "
            + df["confirmed_cases"].apply(lambda x: "{:,}".format(x))
            + "<br>Deaths: "
            + df["deaths"].apply(lambda x: "{:,}".format(x))
        )
    
        #创建Choropleth图表
        choro_trace = go.Choropleth(
            **{
                "locations": df["alpha-3_code"],
                "z": df["confirmed_cases_log"],
                "zmax": high_tick,
                "zmin": low_tick,
                "colorscale": "reds",
                "colorbar": {
                    "ticks": "outside",
                    "ticktext": visual_tick_values,
                    "tickmode": "array",
                    "tickvals": log_tick_values,
                    "title": {"text": "<b>Confirmed Cases</b>"},
                    "len": 0.8,
                    "y": 1,
                    "yanchor": "top"
                },
                "hovertemplate": df["text"],
                "name": "",
                "showlegend": False
            }
        )
        
        #创建已确认的案例trace 
        confirmed_cases_trace = go.Scatter(
            x=dates_list,
            y=confirmed_cases_totals[:i],
            mode="markers" if i == 1 else "lines",
            name="Total Confirmed Cases",
            line={"color": "Red"},
            hovertemplate="%{x}<br>Total confirmed cases: %{y:,}<extra></extra>"
        )
            
        #创建死亡跟踪
        deaths_trace = go.Scatter(
            x=dates_list,
            y=deaths_totals[:i],
            mode="markers" if i == 1 else "lines",
            name="Total Deaths",
            line={"color": "Black"},
            hovertemplate="%{x}<br>Total deaths: %{y:,}<extra></extra>"
        )
    
        if i == 1:
            #第一帧是个什么人物最初显示..
            fig.add_trace(choro_trace, row=1, col=1)
            fig.add_traces([confirmed_cases_trace, deaths_trace], rows=[2, 2], cols=[1, 1])
        #...和所有其他帧被附加到`frames`列表和滑块
        frames.append({"data": [choro_trace, confirmed_cases_trace, deaths_trace], "name": date})
    
        steps.append(
            {"args": [[date], frame_args(50)], "label": date, "method": "animate",}
        )
    
    #整理轴和最终确定图表准备好用于显示
    fig.update_xaxes(range=[0, len(dates_list)-1], visible=False)
    fig.update_yaxes(range=[0, max(confirmed_cases_totals)])
    fig.frames = frames
    fig.layout.sliders[0].steps = steps
    fig.layout.geo.domain = {"x": [0,1], "y": [0.2, 1]}
    fig.update_layout(
        height=650, 
        legend={"x": 0.05, "y": 0.175, "yanchor": "top", "bgcolor": "rgba(0, 0, 0, 0)"})
    fig
    

    功未成,业未就,不敢休!
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  • 原文地址:https://www.cnblogs.com/codehao/p/13170076.html
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