Esempio n. 1
0
def densidad_carto(width=500):
    bokeh.plotting.reset_output()

    WIDTH = width
    CB_VALS = [0, 1, 2, 3]
    CB_LIMS = ebu.DEN_LIMS
    CB_LABS = {s: str(l) for s, l in enumerate(CB_LIMS[:])}
    FILE_OUT = os.path.join(ebu.DIR,
                            'htlml_1_intermedios/2020/z040_densidad2020.html')
    # bokeh.plotting.output_file(FILE_OUT)
    df0 = pd.read_csv(
        os.path.join(ebu.DATA_PATH1_2020,
                     'z020_geopadron_recintos_2020_ALL_DEN.csv'),
        # encoding='ISO-8859-1'
    ).set_index('ID_RECI')
    df1 = pd.read_csv(os.path.join(ebu.DATA_PATH1_2020,
                                   'z030_carto_xy.csv')).set_index('ID_RECI')
    rec_df = pd.merge(df0,
                      df1,
                      left_index=True,
                      right_index=True,
                      validate='1:1')
    # %%
    len(rec_df)
    # %%
    rec_df['r'] = np.sqrt(rec_df['HAB']) / 10
    res = ebu.lola_to_cart(rec_df['LON'].values, rec_df['LAT'].values)
    rec_df['GX'] = res[0]
    rec_df['GY'] = res[1]
    needed_cols = [
        'X', 'Y', 'd_mas_cc', 'r', 'LAT', 'LON', 'PAIS', 'REC', 'MUN', 'DEN'
        'GX', 'GY'
    ]
    # %%
    len(rec_df)
    # %%
    # order by density
    rec_df = rec_df.sort_values('DEN', axis=0, ascending=True)
    # %%
    # remove nans
    # rec_df = rec_df.dropna(axis=0)
    # assert rec_df.isna().sum().sum() == 0
    # %%
    len(rec_df)
    # %%
    # cut = pd.IntervalIndex.from_tuples([(0, 50), (50, 500), (500, 1500),(1500,3000),(3000,4000),(4000,7000)])
    # %%
    # lab = ['B','M','X','A']
    lab = CB_VALS
    lims = CB_LIMS
    NL = len(lims)
    c = pd.cut(
        rec_df['DEN'],
        lims,
        labels=lab,
        #              retbins=True
    )
    # %%
    rec_df['DEN_CUT'] = c.astype(int)
    # %%
    # %% [markdown]
    # ## Carto Densidad
    # %% [markdown]
    # ###### código
    # %%
    # output_file(os.path.join(ebu.DATA_FIG_OUT, "carto_map_mas_cc.html"))
    # %%
    # rec_df_spl = rec_df.sample(200).copy()
    rec_df_spl = rec_df.copy()
    # %%
    # DATA
    bokeh.plotting.output_notebook()
    cart_init_val = .0
    data = rec_df_spl.copy()
    data['x'] = data['LON'] * (1 - cart_init_val) + data['X'] * cart_init_val
    data['y'] = data['LAT'] * (1 - cart_init_val) + data['Y'] * cart_init_val
    # %%
    # COLOR
    from bokeh.transform import linear_cmap
    from bokeh.transform import log_cmap
    # cm = linear_cmap('d_mas_cc', palette=ebu.P_DIF[::-1], low=-80, high=80)
    # cm = log_cmap('DEN', palette=bokeh.palettes.Viridis11, low=1, high=10000)
    cm = linear_cmap('DEN_CUT',
                     palette=bokeh.palettes.Viridis[NL - 1],
                     low=0,
                     high=NL - 1)
    # %%
    # SOURCES
    source_master = ColumnDataSource(data)
    source_red_map = ColumnDataSource({'gx': [], 'gy': []})
    la, lo = ebu.get_la_lo_bolivia()
    source_bol = ColumnDataSource({'la': la, 'lo': lo})
    # source_red_car = ColumnDataSource({'lo': [], 'la': []})
    # %%
    # JS CODE
    code_draw_red_map = """
const data = {'gx': [], 'gy': []}
const indices = cb_data.index.indices
for (var i = 0; i < indices.length; i++) {
        data['gx'].push(source_master.data.GX[indices[i]])
        data['gy'].push(source_master.data.GY[indices[i]])
}
source_red_map.data = data
"""
    code_draw_red_car = """
const data = {'lo': [], 'la': []}
const indices = cb_data.index.indices
for (var i = 0; i < indices.length; i++) {
        data['lo'].push(source_master.data.x[indices[i]])
        data['la'].push(source_master.data.y[indices[i]])
}
source_red_car.data = data
"""
    code_merged = """
const data_map = {'lo': [], 'la': []}
const data_car = {'gx': [], 'gy': []}
const indices = cb_data.index.indices
for (var i = 0; i < indices.length; i++) {
        data_map['lo'].push(source_master.data.x[indices[i]])
        data_map['la'].push(source_master.data.y[indices[i]])
        data_car['gx'].push(source_master.data.GX[indices[i]])
        data_car['gy'].push(source_master.data.GY[indices[i]])
}
source_red_car.data = data_car
source_red_map.data = data_map
"""
    code_slider = """
    var data = source.data;
    var f = cb_obj.value
    var x = data['x']
    var y = data['y']
    var Y = data['Y']
    var X = data['X']
    var lat = data['LAT']
    var lon = data['LON']
    for (var i = 0; i < x.length; i++) {
        y[i] = (1-f)*lat[i] + f*Y[i]
        x[i] = (1-f)*lon[i] + f*X[i]
    }
    source.change.emit();
"""
    # %%
    # FIGURES
    pw = WIDTH
    cart_fig = Figure(plot_width=pw + int(.2 * pw),
                      plot_height=pw,
                      output_backend="webgl")
    # map_fig = Figure(plot_width=pw, plot_height=pw,
    #                  x_axis_type='mercator',
    #                  y_axis_type='mercator',
    #                  output_backend="webgl",
    #                  )
    # cb_fig = bokeh.plotting.Figure(plot_height=pw,plot_width=)
    # cb_fig.toolbar.logo = None
    # cb_fig.toolbar_location = None
    # %%
    # SCATTER
    # noinspection PyUnresolvedReferences
    # add tiles
    tile_provider = bokeh.tile_providers.get_provider(
        bokeh.tile_providers.Vendors.CARTODBPOSITRON)
    # map_fig.add_tile(tile_provider)
    # scatter in map
    # map_fig.scatter(
    #     'GX', 'GY', source=source_master, size='r',
    #     color=cm
    # )
    # cart_fig.line('lo', 'la', source=source_bol, color='black')
    cart_fig.scatter('x', 'y', source=source_master, size='r', color=cm)
    # red_scat_map = map_fig.scatter('gx', 'gy',
    #                                source=source_red_map, color='red',
    #                                line_color='green',
    #                                size=10
    #                                )
    # red_scat_car = cart_fig.scatter('lo', 'la',
    # source=source_red_car, color='green')
    # add a hover tool that sets the link data for a hovered circle
    # callbacks
    callback_red_map = CustomJS(
        args={
            'source_master': source_master,
            'source_red_map': source_red_map,
            # 'source_red_car':source_red_car
        },
        code=code_draw_red_map)
    # code = code_merged)
    # callback_red_car = CustomJS(
    #     args={'source_master': source_master, 'source_red_car': source_red_car},
    #     code=code_draw_red_car)
    # tools
    ebu.TOOL_TIPS1 = [('Inscritos', '@HAB'), ('País', '@PAIS'),
                      ('Municipio', '@MUN'), ('Recinto', '@REC'),
                      ('Votantes/km^2', '@DEN{0}'), ('--------', '------')
                      # ('PAIS', '@PAIS'),
                      ]
    hover_cart = bokeh.models.HoverTool(
        tooltips=ebu.TOOL_TIPS1,
        callback=callback_red_map,
        # renderers = [red_scat_car]
    )
    cart_fig.add_tools(hover_cart, )
    hover_map = bokeh.models.HoverTool(
        tooltips=ebu.TOOL_TIPS1,
        # callback=callback_red_car,
        # renderers = [red_scat_map]
    )
    # map_fig.add_tools(hover_map, )
    # slider
    callback_slider = CustomJS(args=dict(source=source_master),
                               code=code_slider)
    slider = Slider(start=0,
                    end=1,
                    value=cart_init_val,
                    step=.01,
                    title="carto")
    slider.js_on_change('value', callback_slider)
    # %%
    # COLOR BAR
    cb = bokeh.models.ColorBar(
        color_mapper=cm['transform'],
        width=30,
        location=(0, 0),
        title="Den. (V./km^2)",
        # margin=0,padding=0,
        title_standoff=10,
        #     ticker=bokeh.models.LogTicker(),
        major_label_overrides=CB_LABS,
        ticker=bokeh.models.FixedTicker(ticks=list(CB_LABS.keys())))
    cart_fig.add_layout(cb, 'left')
    # layout = row(column(slider, cart_f),map_f)
    # layout = bokeh.layouts.gridplot(
    #     [[slider, None], [cart_fig, map_fig]]
    #     , merge_tools=False
    # )
    layout = bokeh.layouts.column([slider, cart_fig],
                                  # sizing_mode='scale_width'
                                  )
    layout.width = width
    cart_fig.x_range.start = -80
    cart_fig.x_range.end = -45
    cart_fig.y_range.start = -30
    cart_fig.y_range.end = 0
    _ll = ebu.lola_to_cart(lo=[-80, -45], la=[-30, 0])
    # map_fig.x_range.start = _ll[0][0]
    # map_fig.x_range.end = _ll[0][1]
    # map_fig.y_range.start = _ll[1][0]
    # map_fig.y_range.end = _ll[1][1]
    # %% [markdown]
    # ###### gráfica
    # %% [markdown]
    # En el mapa de abajo, cada punto corresponde un recinto electoral, su color está relacionado con la densidad de votantes, y su tamaño con la cantidad de votos.
    # Mueve el slider (carto) para ver la deformación.
    # %%
    # %%
    bokeh.plotting.show(layout)
data['x'] = data['LON'] * (1 - cart_init_val) + data['X'] * cart_init_val
data['y'] = data['LAT'] * (1 - cart_init_val) + data['Y'] * cart_init_val

# %%
# COLOR
from bokeh.transform import linear_cmap
from bokeh.transform import log_cmap

cm = linear_cmap('d_mas_cc', palette=ebu.P_DIF[::-1], low=-80, high=80)
# cm = log_cmap('DEN', palette=bokeh.palettes.Viridis11, low=1, high=10000)

# %%
# SOURCES
source_master = ColumnDataSource(data)
source_red_map = ColumnDataSource({'gx': [], 'gy': []})
la, lo = ebu.get_la_lo_bolivia()
source_bol = ColumnDataSource({'la': la, 'lo': lo})
# source_red_car = ColumnDataSource({'lo': [], 'la': []})

# %%
# JS CODE
code_draw_red_map = """
const data = {'gx': [], 'gy': []}
const indices = cb_data.index.indices
for (var i = 0; i < indices.length; i++) {
        data['gx'].push(source_master.data.GX[indices[i]])
        data['gy'].push(source_master.data.GY[indices[i]])
}
source_red_map.data = data
"""
Esempio n. 3
0
    def plot_carto_single(self, data, frente, palette, path=FILE_OUT,
                          name_file="", low=0, high=100, show_plot=True):
        """

        :param data: df loaded by data_load
        :param frente: string, name of "partido" lowercase: diff, mas, cc, creemos, fpv, pan_bol
        :param palette: ej: P_GRAD_CC
        :param name_file: default:test
        :param low: cmap low limit: default: -80
        :param high: cmap high limit: defauilt: +80.
        :return: df
        """
        if frente == "diff":
            low = self.C_BAR_LOW
            high = self.C_BAR_HIGH
            frente = "d_mas_cc"

        bokeh.plotting.output_file(
            path + 'z037_' + frente + '_' + name_file + '.html')
        bokeh.plotting.output_file(
            os.path.join(
                os.path.dirname(ebu.DIR), 'docs',
                'graficas_htmls',
                'z037_' + frente + '_' + 'latest' + '.html'
            ))

        cart_init_val = self.CART_SLIDER_INIT  # add slider
        data['x'] = data['LON'] * (1 - cart_init_val) + data[
            'X'] * cart_init_val
        data['y'] = data['LAT'] * (1 - cart_init_val) + data[
            'Y'] * cart_init_val
        cm = linear_cmap(frente, palette=palette, low=low, high=high)

        data['mas'] = data['MAS'] / data['VV'] * 100
        data['cc'] = data['CC'] / data['VV'] * 100
        data['creemos'] = data['CREEMOS'] / data['VV'] * 100
        data['fpv'] = data['FPV'] / data['VV'] * 100
        data['pan_bol'] = data['PAN_BOL'] / data['VV'] * 100
        data['ad_mas_cc'] = data['d_mas_cc'].abs()
        data['mas_o_cc'] = 'n'
        data.loc[data['d_mas_cc'] >= 0, 'mas_o_cc'] = 'MAS'
        data.loc[data['d_mas_cc'] < 0, 'mas_o_cc'] = 'CC'

        source_master = ColumnDataSource(data)
        source_red_map = ColumnDataSource({'gx': [], 'gy': []})
        la, lo = ebu.get_la_lo_bolivia()
        source_bol = ColumnDataSource({'la': la, 'lo': lo})
        # source_red_car = ColumnDataSource({'lo': [], 'la': []})

        # JS CODE
        code_draw_red_map = """
        const data = {'gx': [], 'gy': []}
        const indices = cb_data.index.indices
        for (var i = 0; i < indices.length; i++ ) {
                data['gx'].push(source_master.data.GX[indices[i]])
                data['gy'].push(source_master.data.GY[indices[i]])
        }
        source_red_map.data = data
        """

        code_draw_red_car = """
        const data = {'lo': [], 'la': []}
        const indices = cb_data.index.indices
        for (var i = 0; i < indices.length; i++) {
                data['lo'].push(source_master.data.x[indices[i]])
                data['la'].push(source_master.data.y[indices[i]])
        }
        source_red_car.data = data
        """

        code_merged = """
        const data_map = {'lo': [], 'la': []}
        const data_car = {'gx': [], 'gy': []}
        const indices = cb_data.index.indices
        for (var i = 0; i < indices.length; i++) {
                data_map['lo'].push(source_master.data.x[indices[i]])
                data_map['la'].push(source_master.data.y[indices[i]])
                data_car['gx'].push(source_master.data.GX[indices[i]])
                data_car['gy'].push(source_master.data.GY[indices[i]])
        }
        source_red_car.data = data_car
        source_red_map.data = data_map
        """

        code_slider = """
            var data = source.data;
            var f = cb_obj.value
            var x = data['x']
            var y = data['y']
            var Y = data['Y']
            var X = data['X']
            var lat = data['LAT']
            var lon = data['LON']
            for (var i = 0; i < x.length; i++) {
                y[i] = (1-f)*lat[i] + f*Y[i]
                x[i] = (1-f)*lon[i] + f*X[i]
            }
            source.change.emit();
        """

        # FIGURES
        curr_time = ebu.get_bolivian_time(-3)
        # from datetime import datetime
        # curr_time = datetime.utcnow()

        pw = self.FIG_WIDTH
        cart_fig = Figure(plot_width=pw, plot_height=pw, output_backend="webgl",

                          )
        map_fig = Figure(plot_width=pw, plot_height=pw,
                         x_axis_type='mercator',
                         y_axis_type='mercator',
                         output_backend="webgl",
                         title="Última actualización: " + curr_time[
                             "datetime_val"].strftime(
                             "%Y-%m-%d %H:%M") + "BOT",
                         )
        cart_fig.background_fill_color = "grey"
        cart_fig.background_fill_alpha = .5
        # cb_fig = bokeh.plotting.Figure(plot_height=pw,plot_width=)
        # cb_fig.toolbar.logo = None
        # cb_fig.toolbar_location = None

        # SCATTER
        # noinspection PyUnresolvedReferences
        # add tiles
        tile_provider = bokeh.tile_providers.get_provider(
            bokeh.tile_providers.Vendors.CARTODBPOSITRON)
        map_fig.add_tile(tile_provider)

        # scatter in map
        map_fig.scatter(
            'GX', 'GY', source=source_master, size='r2',
            color=cm
        )

        # todo if we wont use map then we nee to delete the source
        # cart_fig.line('lo', 'la', source=source_bol, color='black')
        cart_fig.scatter('x', 'y', source=source_master, radius='r',
                         color=cm
                         )

        red_scat_map = map_fig.circle_cross('gx', 'gy',
                                            source=source_red_map,
                                            #                                color='red',
                                            fill_color=None,
                                            #                                line_color='green',
                                            size=20,
                                            line_color="white",
                                            line_width=4
                                            )

        red_scat_map = map_fig.circle_cross('gx', 'gy',
                                            source=source_red_map,
                                            #                                color='red',
                                            fill_color=None,
                                            #                                line_color='green',
                                            size=20,
                                            line_color="red",
                                            line_width=1
                                            )
        # red_scat_car = cart_fig.scatter('lo', 'la',
        # source=source_red_car, color='green')

        # add a hover tool that sets the link data for a hovered circle

        # callbacks
        callback_red_map = CustomJS(
            args={'source_master': source_master,
                  'source_red_map': source_red_map,
                  # 'source_red_car':source_red_car
                  },
            code=code_draw_red_map)
        # code = code_merged)

        # callback_red_car = CustomJS(
        #     args={'source_master': source_master, 'source_red_car': source_red_car},
        #     code=code_draw_red_car)

        # tools

        hover_cart = bokeh.models.HoverTool(
            tooltips=self.TOOL_TIP_DIC[frente],
            callback=callback_red_map,
            # renderers = [red_scat_car]

        )
        cart_fig.add_tools(hover_cart, )

        hover_map = bokeh.models.HoverTool(
            tooltips=self.TOOL_TIP_DIC[frente],
            # callback=callback_red_car,
            # renderers = [red_scat_map]
        )
        map_fig.add_tools(hover_map, )

        # slider
        callback_slider = CustomJS(args=dict(source=source_master),
                                   code=code_slider)

        slider = Slider(start=0, end=1, value=cart_init_val, step=.02,
                        title="carto")
        slider.js_on_change('value', callback_slider)

        # COLOR BAR
        ml = {int(i): str(np.abs(i)) for i in np.arange(-80, 81, 20)}
        cb = bokeh.models.ColorBar(
            color_mapper=cm['transform'],
            width=int(.9 * self.FIG_WIDTH),
            location=(0, 0),
            #     title="DEN (N/km^2)",
            # title=(BAR_TITLE),
            # margin=0,padding=0,
            title_standoff=10,
            # ticker=bokeh.models.LogTicker(),
            orientation='horizontal',
            major_label_overrides=ml

        )

        cart_fig.add_layout(cb, 'above')
        # cb.title_text_align = 'left'
        cart_fig.title.text = self.BAR_TITLE_DIC[frente]
        cart_fig.title.align = 'center'

        # layout = row(column(slider, cart_f),map_f)
        layout = bokeh.layouts.gridplot(
            [[slider], [cart_fig], [map_fig]], sizing_mode='scale_width',
            merge_tools=False)
        layout.max_width = 800
        # layout = bokeh.layouts.column([slider, cart_fig])

        cart_fig.x_range.start = self.CXS
        cart_fig.x_range.end = self.CXE
        cart_fig.y_range.start = self.CYS
        cart_fig.y_range.end = self.CYE

        _ll = ebu.lola_to_cart(lo=[self.MXS, self.MXE], la=[self.MYS, self.MYE])
        map_fig.x_range.start = _ll[0][0]
        map_fig.x_range.end = _ll[0][1]
        map_fig.y_range.start = _ll[1][0]
        map_fig.y_range.end = _ll[1][1]

        cart_fig.xaxis.major_tick_line_color = None  # turn off x-axis major ticks
        cart_fig.xaxis.minor_tick_line_color = None  # turn off x-axis minor ticks
        cart_fig.yaxis.major_tick_line_color = None  # turn off y-axis major ticks
        cart_fig.yaxis.minor_tick_line_color = None
        cart_fig.xaxis.major_label_text_font_size = '0pt'  # turn off x-axis tick labels
        cart_fig.yaxis.major_label_text_font_size = '0pt'  # turn off y-axis tick labels
        if show_plot:
            bokeh.plotting.show(layout)

        return data