Useful Starting Point: Now that we have our table of confirmed cases prepared we can develop a map using the folium library. In this video we make a table of top 15 countries based on confirmed cases of
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Continuing with Bootstrap we adjust the use of our tables to rely instead on a loop and Bootstrap tables. In this video we make a table of top 15 countries based on confirmed cases of Now that we have our table of confirmed cases prepared we can develop a map using the folium library.
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- In this video we make a table of top 15 countries based on confirmed cases of
- Now that we have our table of confirmed cases prepared we can develop a map using the folium library.
- Continuing with Bootstrap we adjust the use of our tables to rely instead on a loop and Bootstrap tables.
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