Trends in the incidence of psychosis worldwide
Project description
COVID-19 daily death prediction
deathdaily is a Python program using new_deaths.csv for predicting daily deaths due to COVID-19 in the next seven days. The prediction is based on the Xthe degree polynomial curve-fitting.
According to PyPI Stats, deathdaily has been downloaded by 10356 users worldwide as of Oct.14 2021.
X-axis is the xth day from Jan.22 2020 to the day you have downloaded new_deaths.csv file. Y-axis depicts the number of daily deaths in the country.
new_deaths.csv
deathdaily needs a new_deaths.csv file for predicting the daily deaths of the next seven days.
The new_deaths.csv file is automatically downloaded by deathdaily from the following site:
https://raw.githubusercontent.com/owid/covid-19-data/master/public/data/jhu/new_deaths.csv
How to install deathdaily
$ pip install deathdaily
How to run deathdaily using country with days and degree of polynomial curve-fitting
"country" shows which country you would like to predict the daily deaths of the next seven days.
"days" indicates how many days are used for Xth degree polynomial curve-fitting.
"degree" determined the degree of polynomial curve-fitting.
$ deathdaily Japan days degree
$ deathdaily Japan 200 7
country="Japan", days=200, degree=11
$ deathdaily 'United States' 200 11
$ deathdaily Israel 200 9
$ deathdaily 'United Kingdom' 100 11
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