Author: Mahdi, Adam; Błaszczyk, Piotr; Dłotko, Paweł; Salvi, Dario; Chan, Tak-Shing; Harvey, John; Gurnari, Davide; Wu, Yue; Farhat, Ahmad; Hellmer, Niklas; Zarebski, Alexander; Hogan, Bernie; Tarassenko, Lionel
Title: OxCOVID19 Database, a multimodal data repository for better understanding the global impact of COVID-19 Cord-id: zwi6z505 Document date: 2021_4_29
ID: zwi6z505
Snippet: Oxford COVID-19 Database (OxCOVID19 Database) is a comprehensive source of information related to the COVID-19 pandemic. This relational database contains time-series data on epidemiology, government responses, mobility, weather and more across time and space for all countries at the national level, and for more than 50 countries at the regional level. It is curated from a variety of (wherever available) official sources. Its purpose is to facilitate the analysis of the spread of SARS-CoV-2 viru
Document: Oxford COVID-19 Database (OxCOVID19 Database) is a comprehensive source of information related to the COVID-19 pandemic. This relational database contains time-series data on epidemiology, government responses, mobility, weather and more across time and space for all countries at the national level, and for more than 50 countries at the regional level. It is curated from a variety of (wherever available) official sources. Its purpose is to facilitate the analysis of the spread of SARS-CoV-2 virus and to assess the effects of non-pharmaceutical interventions to reduce the impact of the pandemic. Our database is a freely available, daily updated tool that provides unified and granular information across geographical regions.
Search related documents:
Co phrase search for related documents- administrative areas and machine learning: 1
- administrative level and machine learning: 1, 2
Co phrase search for related documents, hyperlinks ordered by date