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# Parameters for our Synthetic Network | |
num_of_nodes = 100 # Total number of nodes (which are, in our case, people) | |
edges_per_node = 4 # Amount of relations a given person(node) will have by default | |
prob_of_triangle = 0.1 # Chance of a triangle happening given a relation | |
# Defining The Network | |
G = nx.powerlaw_cluster_graph(num_of_nodes, edges_per_node, prob_of_triangle) |
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def scatter_y_label (var): | |
if var == 'total_cases': | |
return 'Percentage Infected' | |
elif var == 'total_tests': | |
return 'Percentage Tested' | |
elif var == 'total_deaths': | |
return 'Percentage Dead' | |
elif var == 'total_recovered': | |
return 'Percentage Recovered' |
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import dash | |
from dash.dependencies import Output, Input | |
import dash_core_components as dcc | |
import dash_html_components as html | |
import plotly.express as px | |
import pandas as pd | |
external_stylesheets = ['https://codepen.io/chriddyp/pen/bWLwgP.css'] | |
app = dash.Dash(__name__, external_stylesheets=external_stylesheets) |
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import dash | |
from dash.dependencies import Output, Input | |
import dash_core_components as dcc | |
import dash_html_components as html | |
import plotly.express as px | |
import pandas as pd | |
external_stylesheets = ['https://codepen.io/chriddyp/pen/bWLwgP.css'] | |
app = dash.Dash(__name__, external_stylesheets=external_stylesheets) |
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country | population | total_tests | total_cases | total_deaths | total_recovered | income_group | expected_years_of_school | ||
---|---|---|---|---|---|---|---|---|---|
0 | United States | 331552784 | 119497624.0 | 8037789 | 220011.0 | 5184615.0 | High income | 12.9 | |
1 | India | 1383826697 | 87872093.0 | 7173565 | 109894.0 | 6224792.0 | Lower middle income | 11.1 | |
2 | Brazil | 212986866 | 17900000.0 | 5103408 | 150709.0 | 4495269.0 | Upper middle income | 11.9 | |
3 | Colombia | 51035485 | 4202181.0 | 919083 | 27985.0 | 798396.0 | Upper middle income | 12.9 | |
4 | Spain | 46759952 | 14590713.0 | 918223 | 33124.0 | High income | 13.0 |
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# Defining the functio we'll use to convert the columns to snakecase | |
def to_snakecase (cols): | |
map_dict = {} | |
for col in cols: | |
map_dict[col] = col.lower().strip().replace(' ', '_') | |
return map_dict | |
# Defining the function we'll use to change the country names to the same format |
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country | population | total_tests | total_cases | total_deaths | total_recovered | ||
---|---|---|---|---|---|---|---|
214 | United States | 331552784 | 119497624.0 | 8037789 | 220011.0 | 5184615.0 | |
215 | India | 1383826697 | 87872093.0 | 7173565 | 109894.0 | 6224792.0 | |
216 | Brazil | 212986866 | 17900000.0 | 5103408 | 150709.0 | 4495269.0 | |
217 | 145952340 | 51191309.0 | 1312310 | 22722.0 | 1024235.0 | ||
218 | Colombia | 51035485 | 4202181.0 | 919083 | 27985.0 | 798396.0 |
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country | income_group | expected_years_of_school | ||
---|---|---|---|---|
0 | Afghanistan | Low income | 8.9 | |
1 | Albania | Upper middle income | 12.9 | |
2 | Algeria | Lower middle income | 11.8 | |
3 | Angola | Lower middle income | 8.1 | |
4 | Antigua and Barbuda | High income | 13.0 |
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state | republican_votes | liberal_votes | total_votes | |
---|---|---|---|---|
Washington | 1584651 | 2369612 | 3954263 | |
Oregon | 958448 | 1340383 | 2298831 | |
California | 5973237 | 11073361 | 17046598 | |
Arizona | 1661686 | 1672143 | 3333829 | |
Nevada | 669890 | 703486 | 1373376 | |
Utah | 865140 | 560282 | 1425422 | |
Idaho | 554128 | 287031 | 841159 | |
Montana | 343647 | 244836 | 588483 | |
Wyoming | 193559 | 73491 | 267050 |
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country | population | total_tests | total_cases | total_deaths | total_recovered | income_group | expected_years_of_school | ||
---|---|---|---|---|---|---|---|---|---|
0 | United States | 331552784 | 119497624.0 | 8037789 | 220011.0 | 5184615.0 | High income | 12.9 | |
1 | India | 1383826697 | 87872093.0 | 7173565 | 109894.0 | 6224792.0 | Lower middle income | 11.1 | |
2 | Brazil | 212986866 | 17900000.0 | 5103408 | 150709.0 | 4495269.0 | Upper middle income | 11.9 | |
3 | Colombia | 51035485 | 4202181.0 | 919083 | 27985.0 | 798396.0 | Upper middle income | 12.9 | |
4 | Spain | 46759952 | 14590713.0 | 918223 | 33124.0 | High income | 13.0 | ||
5 | Argentina | 45312730 | 2239514.0 | 903730 | 24186.0 | 732582.0 | Upper middle income | 12.9 | |
6 | Peru | 33100421 | 4092566.0 | 851171 | 33357.0 | 748097.0 | Upper middle income | 13.0 | |
7 | Mexico | 129313982 | 2088941.0 | 817503 | 83781.0 | 594180.0 | Upper middle income | 12.8 | |
8 | France | 65314670 | 12394558.0 | 743479 | 32779.0 | 100828.0 | High income | 13.8 |
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