Exemple #1
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def serialize_as_altair(
    topo_object,
    mesh=True,
    color=None,
    tooltip=True,
    projection="identity",
    objectname="data",
    geo_interface=False,
):
    import altair as alt

    # create a mesh visualization
    if geo_interface and mesh:
        # chart object
        chart = (
            alt.Chart(topo_object, width=300)
            .mark_geoshape(filled=False)
            .project(type=projection, reflectY=True)
        )

    # create a mesh visualization
    elif mesh and color is None:
        data = alt.InlineData(
            values=topo_object, format=alt.DataFormat(mesh=objectname, type="topojson")
        )
        chart = (
            alt.Chart(data, width=300)
            .mark_geoshape(filled=False)
            .project(type=projection, reflectY=True)
        )

    # creating a chloropleth visualisation
    elif color is not None:
        data = alt.InlineData(
            values=topo_object,
            format=alt.DataFormat(feature=objectname, type="topojson"),
        )
        if tooltip is True:
            tooltip = [color]
        chart = (
            alt.Chart(data, width=300)
            .mark_geoshape()
            .encode(
                color=alt.Color(color, legend=alt.Legend(columns=2)), tooltip=tooltip
            )
            .project(type=projection, reflectY=True)
        )

    return chart
Exemple #2
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def geojson_feature(data, feature='features', **kwargs):
    """A convenience function for extracting features from a geojson object or url

    Parameters
    ----------

    data : anyOf(string, geojson.GeoJSON)
        string is interpreted as URL from which to load the data set.
        geojson.GeoJSON is interpreted as data set itself.
    feature : string
        The JSON property containing the GeoJSON object set to convert to
          a GeoJSON feature collection. For example ``features[0].geometry``.
    \**kwargs :
        additional keywords passed to JsonDataFormat

    """
    if isinstance(data, six.string_types):
        return alt.UrlData(url=data,
                           format=alt.JsonDataFormat(type='json',
                                                     property=feature,
                                                     **kwargs))
    elif hasattr(data, '__geo_interface__'):
        if isinstance(data, gpd.GeoDataFrame):
            data = alt.utils.sanitize_dataframe(data)
        return alt.InlineData(values=data.__geo_interface__,
                              format=alt.JsonDataFormat(type='json',
                                                        property=feature,
                                                        **kwargs))
    else:
        warnings.warn("data of type {0} not recognized".format(type(data)))
        return data
def convert_gfp_to_alt(gdf: geopandas.geodataframe) -> alt.InlineData:
    """
    Converts a geopandas geoDataFrame into a Altair InlineData instance so it can be converted into a chart.

    Args:
        gdf (geopandas.geodataframe): Input geodataframe

    Returns:
        alt.InlineData: An instance of Altair's InlineData class.
    """
    data = alt.InlineData(
        values=gdf.to_json(),  # geopandas to geojson string
        # root object type is "FeatureCollection" but we need its features
        format=alt.DataFormat(property="features", type="json"),
    )
    return data
Exemple #4
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def data_from_array(array):
    return alt.InlineData(array)
Exemple #5
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import json
import geopandas as gpd
import altair as alt
import streamlit as st

test = gpd.read_file('data/oakland/Oak_CityCouncilDistricts.shp')
inline_data = alt.InlineData(format=alt.JsonDataFormat(property = 'features'), values=json.loads(test.to_json()))
chart = alt.Chart(inline_data).mark_geoshape()
st.vega_lite_chart(chart.to_dict())
 def geography(self):
     return alt.InlineData(
         values=util.get_geojson_resource('municipalities.topojson'),
         format=alt.TopoDataFormat(type='topojson',
                                   feature='municipalities'))
corr = tracts_gdf_selected[var_demographic2].corr()
corr.style.background_gradient(cmap='coolwarm')

# It turns out that racial composition (pct_white) is substantially related to education level (pct_bachelor). It's surprisingly that mdeian household income is statistically associated with population, that is, tracts with larger number of population exhibit higher income level.

# ### Spatial Patterns

# In[34]:

import altair as alt
alt.renderers.enable('notebook')

# In[44]:

tracts_alt = alt.InlineData(values=tracts_gdf_selected.dropna().to_json(),
                            format=alt.DataFormat(property='features',
                                                  type='json'))

alt.Chart(tracts_alt).mark_geoshape(stroke='population', ).properties(
    width=500,
    height=400,
    projection={
        "type": 'mercator'
    },
).encode(tooltip=['properties.population:Q', 'properties.NAME:N'],
         color='properties.population:Q')

# In[45]:

alt.Chart(tracts_alt).mark_geoshape(stroke='pct_male', ).properties(
    width=500,
Exemple #8
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change_fckng_polygons('Norway')

countries = np.array([c['alpha3code'] for c in players.passportArea.values],
                     dtype=np.object)
# np.count_nonzero(~np.isnan(countries))
# countries.dtype
pl_country = pd.DataFrame(data=countries, columns=['alpha3code'])
type(pl_country)
unique, counts = np.unique(pl_country, return_counts=True)
bla = dict(zip(unique, counts))
europe['num_players'] = np.array(
    [bla[key] if key in bla else 0 for key in europe['iso_a3']])
# players.passportArea.values[:3]

data = alt.InlineData(
    values=europe.__geo_interface__,  # geopandas to geojson
    # root object type is "FeatureCollection" but we need its features
    format=alt.DataFormat(property='features', type='json'))

selection = alt.selection_interval(bind='scales')
# alt.data_transformers.enable('json')
map = alt.Chart(data).mark_geoshape(
    # x=-150.2,
    # x2=-200,
    # y=-100,
    clip=True,
    stroke='black'
).encode(
    # color='properties.num_players:Q',  # GeoDataFrame fields are accessible through a "properties" object
    # color=alt.Color('properties.num_players:Q', scale=alt.Scale(domain=[0, 500], range=['#ffffff', '#11efff'])),
    color=alt.Color('properties.num_players:Q',
                    scale=alt.Scale(scheme='teals')),
    color_continuous_scale=px.colors.sequential.Viridis,
    height=1200,
)
fig.update_geos(fitbounds="locations", visible=False)
fig.update_layout(margin={"r": 0, "t": 0, "l": 0, "b": 0})
fig

fig.write_html("plotly_choropleth.html")

# +
# aug_df.crs = {"init": "epsg:27700"}
# aug_df = aug_df.to_crs({"init": "epsg:4326"})

# define inline geojson data object
data_geojson = alt.InlineData(
    values=aug_df.to_json(), format=alt.DataFormat(property="features", type="json")
)

# chart object
poverty_chart = (
    alt.Chart(data_geojson)
    .mark_geoshape()
    .encode(
        color=alt.Color("properties.Taux de pauvreté:Q", legend=alt.Legend(columns=2),),
        tooltip=[
            "properties.Délégation:N",
            "properties.Gouvernorat:N",
            "properties.Taux de pauvreté:Q",
        ],
    )
    .properties(width=500, height=700)