示例#1
0
    def ts_complete_states(cls) -> pd.DataFrame:
        """
        State-level time series models of confirmed cases, deaths, CC per 100k, deaths per 100k,
        confirmed infection rate, death rate.

        :return: df_states_ts dataframe
        """

        # county-level time series confirmed cases and death dataframe
        df_counties_ts = CovidCounties.ts_complete_counties()
        df_states_stats = Stats.states_stats()

        # group confirmed cases by state - rolling up county level to state level
        df_conf_states_ts = df_counties_ts.groupby(
            ['State/Territory',
             'Date'])['Confirmed Cases'].sum().reset_index()

        # merge df_states_stats
        df_conf_states_ts = pd.merge(df_conf_states_ts,
                                     df_states_stats,
                                     how='left',
                                     on='State/Territory')

        # merge state level deaths models
        df_deaths_states_ts = df_counties_ts.groupby(
            ['State/Territory', 'Date'])['Deaths'].sum().reset_index()
        df_states_ts = pd.merge(df_conf_states_ts,
                                df_deaths_states_ts,
                                how='left',
                                on=['State/Territory', 'Date'])

        # create metrics: pop_factor, cc per 100k, deaths per 100k, death rate, confirmed infection rate
        df_states_ts['pop_factor'] = df_states_ts['Population'].div(100000)

        df_states_ts['Cases per 100k'] = df_states_ts['Confirmed Cases'].div(
            df_states_ts['pop_factor']).replace((np.inf, -np.inf, np.nan),
                                                (0, 0, 0)).round(0)

        df_states_ts['Deaths per 100k'] = df_states_ts['Deaths'].div(
            df_states_ts['pop_factor']).replace((np.inf, -np.inf, np.nan),
                                                (0, 0, 0)).round(0)

        df_states_ts['Death Rate (%)'] = 100 * df_states_ts['Deaths'].div(
            df_states_ts['Confirmed Cases']).replace((np.inf, -np.inf, np.nan),
                                                     (0, 0, 0)).round(6)

        return df_states_ts
示例#2
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    def agg_complete_states(cls) -> pd.DataFrame:
        """
        Cumulative confirmed cases and deaths by state
        :return: dataframe
        """

        # import and create base dataframes
        df_counties_agg = CovidCounties.agg_complete_counties()
        df_states_stats = Stats.states_stats()

        # sum confirmed by state
        df_confirmed_states_agg = df_counties_agg.groupby(
            'State/Territory')['confirmed'].sum().reset_index()

        # merge states stats
        df_confirmed_states_agg = pd.merge(df_confirmed_states_agg,
                                           df_states_stats,
                                           how='left',
                                           on='State/Territory')

        # format population with separating commas
        df_confirmed_states_agg['2019 Est Pop'] = df_confirmed_states_agg[
            'Population'].fillna(0).astype(int).apply(
                lambda x: '{:,}'.format(x))

        # create 'Confirmed Cases' column formatted with commas and keep 'confirmed' column as integer
        df_confirmed_states_agg['Confirmed Cases'] = df_confirmed_states_agg[
            'confirmed'].apply(lambda x: '{:,}'.format(x))

        # create dataframe deaths by state
        df_deaths_states_agg = df_counties_agg.groupby(
            'State/Territory')['deaths'].sum().reset_index()

        # merge df_confirmed_states_agg and df_deaths_states_agg
        df_states_agg = pd.merge(df_confirmed_states_agg,
                                 df_deaths_states_agg,
                                 on='State/Territory',
                                 how='left')

        # create formatted string Deaths column
        df_states_agg['Deaths'] = df_states_agg['deaths'].fillna(0).apply(
            lambda x: '{:,}'.format(x))

        # create population 100k factor to calculate confirmed cases per 100k and deaths per 100k
        df_states_agg['pop_factor'] = df_states_agg['Population'].div(
            100000).replace((np.inf, -np.inf, np.nan), (0, 0, 0))

        # calculate 'Confirmed Cases per 100k' people
        df_states_agg['cc_per_100k'] = df_states_agg['confirmed'].div(
            df_states_agg['pop_factor']).replace((np.nan, -np.inf, np.inf),
                                                 (0, 0, 0)).round(0)
        # calculate 'Deaths per 100k' people
        df_states_agg['d_per_100k'] = df_states_agg['deaths'].div(
            df_states_agg['pop_factor']).replace((np.nan, np.inf, -np.inf),
                                                 (0, 0, 0)).round(0)

        # create formatted hover models for Plotly US map
        df_states_agg['Cases per 100k'] = df_states_agg['cc_per_100k'].apply(
            lambda x: '{:,}'.format(x))
        df_states_agg['Deaths per 100k'] = df_states_agg['d_per_100k'].apply(
            lambda x: '{:,}'.format(x))
        df_states_agg['Death Rate (%)'] = round(
            100 *
            df_states_agg['deaths'].div(df_states_agg['confirmed']).replace(
                (np.nan, np.inf, -np.inf), (0, 0, 0)), 4)

        remove_list = [
            'American Samoa', 'Federated States of Micronesia', 'Palau',
            'Guam', 'Virgin Islands', 'Marshall Islands',
            'Northern Mariana Islands'
        ]
        df_states_agg = df_states_agg.drop(df_states_agg.index[
            df_states_agg['State/Territory'].isin(remove_list)])

        return df_states_agg
示例#3
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from dash.dependencies import Input, Output, State

import dash_table
from dash_table.Format import Format
import dash_table.FormatTemplate as FormatTemplate
import plotly.express as px

from models.covid_counties import CovidCounties
from models.stats import Stats

from app import app

# build base dataframes
df_complete_counties_agg = CovidCounties.agg_complete_counties()
df_counties_ts = CovidCounties.ts_complete_counties()
df_state_location = Stats.states_stats()

# ---------------- Section 1: Define functions to generate Dash figures and datatables ------------------ #


def create_us_bubble_map_counties(metric_name):
    # remove counties without lat and long
    df_counties = df_complete_counties_agg[
        (df_complete_counties_agg['Lat'] != 0)
        & (df_complete_counties_agg['Lat'] != 0)]

    # create figure
    fig = px.scatter_mapbox(df_counties,
                            lat='Lat',
                            lon='Long_',
                            color=metric_name,