In [1]:
import pydeck as pdk
import pandas as pd

Plotting lights at night

NASA has collected global light emission data for over 30 years. The data set is a deeply fascinating one and has been used for news stories on the Syrian Civil War [1], North Korea [2], and economic growth [3].

In this notebook, we'll use a deck.gl HeatmapLayer to visualize some of the changes at different points in time.

Getting the data

The data for Chengdu, China, is cleaned and available below. Please note this data is meant for demonstration only.

In [2]:
LIGHTS_URL = 'https://raw.githubusercontent.com/ajduberstein/lights_at_night/master/chengdu_lights_at_night.csv'
df = pd.read_csv(LIGHTS_URL)
df.head()
Out[2]:
year lng lat brightness
0 1993 104.575 31.808 4
1 1993 104.583 31.808 4
2 1993 104.592 31.808 4
3 1993 104.600 31.808 4
4 1993 104.675 31.808 4

Setting the colors

pydeck does need to know the color for this data in advance of plotting it

In [3]:
df['color'] = df['brightness'].apply(lambda val: [255, val * 4,  255, 255])
df.sample(10)
Out[3]:
year lng lat brightness color
204018 2007 104.150 30.408 6 [255, 24, 255, 255]
94488 2001 104.033 31.042 5 [255, 20, 255, 255]
58676 2009 104.525 31.408 9 [255, 36, 255, 255]
271769 2005 103.933 30.900 7 [255, 28, 255, 255]
99099 2001 104.333 30.767 5 [255, 20, 255, 255]
22899 1997 105.758 30.883 4 [255, 16, 255, 255]
75047 2009 103.767 30.375 8 [255, 32, 255, 255]
32586 1997 104.142 29.958 4 [255, 16, 255, 255]
110897 2001 103.367 29.917 12 [255, 48, 255, 255]
29712 1997 103.458 30.375 6 [255, 24, 255, 255]

Plotting and interacting

We can plot this data set of light brightness by year, configuring a slider to filter the data as below:

In [4]:
plottable = df[df['year'] == 1993].to_dict(orient='records')

view_state = pdk.ViewState(
    latitude=31.0,
    longitude=104.5,
    zoom=8)
scatterplot = pdk.Layer(
    'HeatmapLayer',
    data=plottable,
    get_position=['lng', 'lat'],
    get_weight='brightness',
    opacity=0.5,
    pickable=False,
    get_radius=800)
r = pdk.Deck(
    layers=[scatterplot],
    initial_view_state=view_state,
    views=[pdk.View(type='MapView', controller=None)])
r.show()
In [5]:
import ipywidgets as widgets
from IPython.display import display
slider = widgets.IntSlider(1992, min=1993, max=2013, step=2)
def on_change(v):
    results = df[df['year'] == slider.value].to_dict(orient='records')
    scatterplot.data = results
    r.update()
    
slider.observe(on_change, names='value')
display(slider)