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  • 24000+ Downloads
    Time Period of the Dataset [?]: January 08, 2020-December 31, 2023 ... More
    Modified [?]: 11 December 2024
    Dataset Added on HDX [?]: 15 April 2020
    This dataset updates: Every week
    Coronavirus COVID-19 daily new and cumulative cases and deaths by country.
  • 30+ Downloads
    Time Period of the Dataset [?]: January 01, 2014-December 01, 2024 ... More
    Modified [?]: 2 December 2024
    Confirmed [?]: 2 December 2024
    Dataset Added on HDX [?]: 29 October 2024
    This dataset updates: Every month
    The dataset includes information on over 3,000 pandemic- and epidemic-prone disease outbreaks associated with more than 80 different infectious diseases, occurring globally from January 1996 to the present.
  • 400+ Downloads
    Time Period of the Dataset [?]: January 02, 2023-December 14, 2024 ... More
    Modified [?]: 26 November 2024
    Dataset Added on HDX [?]: 4 March 2024
    This dataset updates: Live
    This dataset presents cholera data from the World Health Organization (WHO) across various countries.
  • 10000+ Downloads
    Time Period of the Dataset [?]: March 16, 2020-March 10, 2023 ... More
    Modified [?]: 15 November 2024
    Dataset Added on HDX [?]: 17 March 2020
    This dataset updates: Every day
    This data has been collected from various sources and is displayed in this online dashboard: https://geonode.wfp.org/travel Mobile version: https://geonode.wfp.org/travel_mobile The data is divided in two datasets: COVID-19 restrictions by country: This dataset shows current travel restrictions. Information is collected from various sources: IATA, media, national sources, WFP internal or any other. COVID-19 airline restrictions information: This dataset shows restrictions taken by individual airlines or country. Information is collected again from various sources including WFP internal and public sources. The data displayed is a collaborative effort and anybody with more accurate/updated information is highly encouraged to contact WFP GIS unit for Emergencies at the following email address: hq.gis@wfp.org
  • Time Period of the Dataset [?]: October 08, 2024-December 14, 2024 ... More
    Modified [?]: 11 October 2024
    Dataset Added on HDX [?]: 11 October 2024
    This dataset updates: As needed
    Subnational 2024 Mpox data in Zambia - Infected (new cases, gender), Suspected cases, Deaths and Recoveries.
  • 30+ Downloads
    Time Period of the Dataset [?]: July 24, 2024-July 27, 2024 ... More
    Modified [?]: 2 September 2024
    Dataset Added on HDX [?]: 2 September 2024
    This dataset updates: As needed
    Subnational 2024 Mpox data in Rwanda - Infected (new cases, gender), Suspected cases, Deaths and Recoveries.
  • 30+ Downloads
    Time Period of the Dataset [?]: May 08, 2024-August 07, 2024 ... More
    Modified [?]: 2 September 2024
    Dataset Added on HDX [?]: 2 September 2024
    This dataset updates: As needed
    Subnational 2024 Mpox data in South Africa - Infected (new cases, gender), Suspected cases, Deaths and Recoveries.
  • 22000+ Downloads
    Time Period of the Dataset [?]: January 18, 2020-January 11, 2024 ... More
    Modified [?]: 27 August 2024
    Dataset Added on HDX [?]: 23 March 2020
    This dataset updates: Every week
    'Our World in Data' is compiling COVID-19 testing data over time for many countries around the world. They are adding further data in the coming days as more details become available for other countries. In some cases figures refer to the number of tests, in other cases to the number of individuals who have been tested. Refer to documentation provided here.
  • 7600+ Downloads
    Time Period of the Dataset [?]: December 01, 2019-December 14, 2024 ... More
    Modified [?]: 25 June 2024
    Dataset Added on HDX [?]: 27 March 2020
    This dataset updates: Every year
    Data Overview This repository contains spatiotemporal data from many official sources for 2019-Novel Coronavirus beginning 2019 in Hubei, China ("nCoV_2019") You may not use this data for commercial purposes. If there is a need for commercial use of the data, please contact Ginkgo Biosecurity, the biosecurity and public health unit of Ginkgo Bioworks at help-epi-modeling@ginkgobioworks.com to obtain a commercial use license. The incidence data are in a CSV file format. One row in an incidence file contains a piece of epidemiological data extracted from the specified source. The file contains data from multiple sources at multiple spatial resolutions in cumulative and non-cumulative formats by confirmation status. To select a single time series of case or death data, filter the incidence dataset by source, spatial resolution, location, confirmation status, and cumulative flag. Data are collected, structured, and validated by Ginkgo's digital surveillance experts. The data structuring process is designed to produce the most reliable estimates of reported cases and deaths over space and time. The data are cleaned and provided in a uniform format such that information can be compared across multiple sources. Data are collected at the time of publication in the highest geographic and temporal resolutions available in the original report. This repository is intended to provide a single access point for data from a wide range of data sources. Data will be updated periodically with the latest epidemiological data. Ginkgo Biosecurity maintains a database of epidemiological information for over three thousand high-priority infectious disease events (please note: this database was previously maintained by Metabiota; the team responsible joined Ginkgo Biosecurity in August 2022. When using the database, please cite Ginkgo Biosecurity and refer to this repository). Please contact us (help-epi-modeling@ginkgobioworks.com) if you are interested in licensing the complete dataset. Cumulative vs. Non-Cumulative Incidence Reporting sources provide either cumulative incidence, non-cumulative incidence, or both. If the source only provides a non-cumulative incidence value, the cumulative values are inferred using prior reports from the same source. Use the CUMULATIVE FLAG variable to subset the data to cumulative (TRUE) or non-cumulative (FALSE) values. Case Confirmation Status The incidence datasets include the confirmation status of cases and deaths when this information is provided by the reporting source. Subset the data by the CONFIRMATION_STATUS variable to either TOTAL, CONFIRMED, SUSPECTED, or PROBABLE to obtain the data of your choice. Total incidence values include confirmed, suspected, and probable incidence values. If a source only provides suspected, probable, or confirmed incidence, the total incidence is inferred to be the sum of the provided values. If the report does not specify confirmation status, the value is included in the "total" confirmation status value. The data provided under the "Multisource Fusion" often does not include suspected incidence due to inconsistencies in reporting cases and deaths with this confirmation status. Outcome - Cases vs. Deaths The incidence datasets include cases and deaths. Subset the data to either CASE or DEATH using the OUTCOME variable. It should be noted that deaths are included in case counts. Spatial Resolution Data are provided at multiple spatial resolutions. Data should be subset to a single spatial resolution of interest using the SPATIAL_RESOLUTION variable. Information is included at the finest spatial resolution provided to the original epidemic report. We also aggregate incidence to coarser geographic resolutions. For example, if a source only provides data at the province-level, then province-level data are included in the dataset as well as country-level totals. Users should avoid summing all cases or deaths in a given country for a given date without specifying the SPATIAL_RESOLUTION value. For example, subset the data to SPATIAL_RESOLUTION equal to "AL0” in order to view only the aggregated country level data. There are differences in administrative division naming practices by country. Administrative levels in this dataset are defined using the Google Geolocation API (https://developers.google.com/maps/documentation/geolocation/). For example, the data for the 2019-nCoV from one source provides information for the city of Beijing, which Google Geolocations indicates is a "locality.” Beijing is also the name of the municipality where the city Beijing is located. Thus, the 2019-nCoV dataset includes rows of data for both the city Beijing, as well as the municipality of the same name. If additional cities in the Beijing municipality reported data, those data would be aggregated with the city Beijing data to form the municipality Beijing data. Sources Data sources in this repository were selected to provide comprehensive spatiotemporal data for each outbreak. Data from a specific source can be selected using the SOURCE variable. In addition to the original reporting sources, Ginkgo Biosecurity compiles multiple sources to generate the most comprehensive view of an outbreak. This compilation is stored in the database under the source name "Multisource Fusion". The purpose of generating this new view of the outbreak is to provide the most accurate and precise spatiotemporal data for the outbreak. At this time, Ginkgo Biosecurity does not incorporate unofficial - including media - sources into the "Multisource Fusion" dataset. Quality Assurance Data are collected by a team of digital surveillance experts and undergo many quality assurance tests. After data are collected, they are independently verified by at least one additional analyst. The data also pass an automated validation program to ensure data consistency and integrity. NonCommercial Use License Creative Commons License Attribution-NonCommercial-ShareAlike 3.0 Unported (CC BY-NC-SA 3.0) This is a human-readable summary of the Legal Code. You are free: to Share — to copy, distribute and transmit the work to Remix — to adapt the work Under the following conditions: Attribution — You must attribute the work in the manner specified by the author or licensor (but not in any way that suggests that they endorse you or your use of the work). Noncommercial — You may not use this work for commercial purposes. Share Alike — If you alter, transform, or build upon this work, you may distribute the resulting work only under the same or similar license to this one. With the understanding that: Waiver — Any of the above conditions can be waived if you get permission from the copyright holder. Public Domain — Where the work or any of its elements is in the public domain under applicable law, that status is in no way affected by the license. Other Rights — In no way are any of the following rights affected by the license: Your fair dealing or fair use rights, or other applicable copyright exceptions and limitations; The author's moral rights; Rights other persons may have either in the work itself or in how the work is used, such as publicity or privacy rights. Notice — For any reuse or distribution, you must make clear to others the license terms of this work. The best way to do this is with a link to this web page. For details and the full license text, see http://creativecommons.org/licenses/by-nc-sa/3.0/ Liability The information is provided “AS IS” and Concentric makes no representations or warranties, express or implied, of any type whatsoever including, without limitation, title, noninfringement, accuracy, completeness, merchantability, or fitness for any particular purpose. Use of proprietary information shall be at the user’s own risk, and Concentric assumes no liability or obligation to the user as a result of use. Ginkgo Biosecurity shall in no event be liable for any decision taken by the user based on the data made available. Under no circumstances, shall Ginkgo Biosecurity be liable for any damages (whatsoever) arising out of the use or inability to use the database. The entire risk arising out of the use of the database remains with the user.
  • 1500+ Downloads
    Time Period of the Dataset [?]: January 01, 2019-December 14, 2024 ... More
    Modified [?]: 13 January 2024
    Dataset Added on HDX [?]: 6 April 2020
    This dataset updates: Every day
    This dataset is part of the data series [?]: HDX - COVID-19 Subnational Cases
    This dataset contains the number of confirmed cases, recoveries and deaths by province due to the Coronavirus pandemic in Afghanistan.
  • 8900+ Downloads
    Time Period of the Dataset [?]: January 01, 2020-December 14, 2024 ... More
    Modified [?]: 29 December 2023
    Dataset Added on HDX [?]: 31 March 2020
    This dataset updates: Live
    Governments are taking a wide range of measures in response to the COVID-19 outbreak. The Oxford COVID-19 Government Response Tracker (OxCGRT) aims track and compare government responses to the coronavirus outbreak worldwide rigorously and consistently. The OxCGRT systematically collects information on several different common policy responses governments have taken, scores the stringency of such measures, and aggregates these scores into a common Stringency Index. For more, please visit > https://www.bsg.ox.ac.uk/research/research-projects/oxford-covid-19-government-response-tracker
  • 1100+ Downloads
    Time Period of the Dataset [?]: January 01, 2020-November 15, 2021 ... More
    Modified [?]: 29 August 2023
    Dataset Added on HDX [?]: 16 April 2020
    This dataset updates: As needed
    This dataset contains the number of confirmed cases by state due to the Coronavirus pandemic in Venezuela.
  • 3000+ Downloads
    Time Period of the Dataset [?]: August 02, 2021-December 14, 2024 ... More
    Modified [?]: 29 May 2023
    Dataset Added on HDX [?]: 21 April 2020
    This dataset updates: As needed
    This dataset is part of the data series [?]: HDX - COVID-19 Subnational Cases
    This dataset contains the number of confirmed cases, recoveries and deaths by country and subnational region due to the Coronavirus pandemic in Europe. Since the outbreak of the COVID-19 crisis, the Joint Research Centre (JRC) has been supporting the European Commission in multidisciplinary areas to understand the COVID-19 emergency, anticipate its impacts, and support contingency planning. This data provides an overview of the monitoring in the area of the 34 UCPM Participating States plus Switzerland related to sub-national data (admin level 1) on numbers of contagious and fatalities by COVID-19, collected directly from the National Authoritative sources (National monitoring websites, when available). The sub-national granularity of the data allows to have a fit-for-purpose model to early capture the local spread and response to the COVID-19 outbreak. The data is maintained on the JRC COVID-19 Github Repository
  • 1800+ Downloads
    Time Period of the Dataset [?]: January 01, 2018-March 01, 2023 ... More
    Modified [?]: 7 March 2023
    Dataset Added on HDX [?]: 15 August 2017
    This dataset updates: Every two weeks
    The file provides information on the cases, deaths, ... of the various pathologies on the extent of the national territory. Le fichier renseigne sur les cas, décès, ... des différentes pathologies sur l'étendue du territoire national.
  • 1500+ Downloads
    Time Period of the Dataset [?]: February 19, 2021-December 14, 2024 ... More
    Modified [?]: 28 February 2023
    Dataset Added on HDX [?]: 19 February 2021
    This dataset updates: Live
    This dataset contains COVID-19 vaccine dose availability forecasts as well as actual deliveries for countries with Humanitarian Response Plans. The data on vaccine availability forecasts was manually extracted from the COVAX Facility Interim Distribution Forecast as announced by COVAX on 3 February 2021. Figures for actual deliveries through channels other than COVAX are compiled by OCHA from press reports. The source(s) press releases, official announcements or articles for each such vaccine delivery are included in the dataset.
  • 400+ Downloads
    Time Period of the Dataset [?]: April 01, 2021-December 04, 2022 ... More
    Modified [?]: 5 January 2023
    Dataset Added on HDX [?]: 15 May 2020
    This dataset updates: Every month
    This dataset is part of the data series [?]: HDX - COVID-19 Subnational Cases
    This dataset contains the number of confirmed cases, recoveries and deaths by Governorate due to the Coronavirus pandemic in Palestine.
  • 100+ Downloads
    Time Period of the Dataset [?]: September 24, 2020-September 24, 2020 ... More
    Modified [?]: 28 June 2022
    Dataset Added on HDX [?]: 1 May 2020
    This dataset updates: As needed
    This dataset is part of the data series [?]: HDX - COVID-19 Subnational Cases
    This dataset contains the number of confirmed cases, recoveries and deaths by locations due to the Coronavirus pandemic in Libya.
  • 100+ Downloads
    Time Period of the Dataset [?]: May 19, 2020-April 27, 2021 ... More
    Modified [?]: 28 June 2022
    Dataset Added on HDX [?]: 28 April 2020
    This dataset updates: As needed
    This dataset contains the number of confirmed cases, recoveries and deaths by Location/Admin 1 due to the Coronavirus pandemic in Somalia.
  • 70+ Downloads
    Time Period of the Dataset [?]: April 13, 2020-April 13, 2020 ... More
    Modified [?]: 28 June 2022
    Dataset Added on HDX [?]: 13 April 2020
    This dataset updates: As needed
    This dataset contains information about COVID-19 health facilities and testing capacity per province in Afghanistan.
  • 400+ Downloads
    Time Period of the Dataset [?]: April 29, 2020-July 16, 2020 ... More
    Modified [?]: 28 June 2022
    Dataset Added on HDX [?]: 28 April 2020
    This dataset updates: As needed
    This dataset contains the number of confirmed cases, recoveries and deaths by admin 1 due to the Coronavirus pandemic in Ethiopia.
  • 200+ Downloads
    Time Period of the Dataset [?]: May 06, 2020-October 08, 2021 ... More
    Modified [?]: 14 June 2022
    Dataset Added on HDX [?]: 21 April 2020
    This dataset updates: Every day
    This dataset is part of the data series [?]: HDX - COVID-19 Subnational Cases
    This dataset contains the number of suspected cases, confirmed cases, and deaths by Département due to the Coronavirus pandemic in Haiti. Released by the Ministry of Public Health and Population of Haiti.
  • 6700+ Downloads
    Time Period of the Dataset [?]: February 16, 2020-April 30, 2022 ... More
    Modified [?]: 4 April 2022
    Dataset Added on HDX [?]: 17 March 2020
    This dataset updates: Live
    The number of children, youth and adults not attending schools or universities because of COVID-19 is soaring. Governments all around the world have closed educational institutions in an attempt to contain the global pandemic. According to UNESCO monitoring, over 100 countries have implemented nationwide closures, impacting over half of world’s student population. Several other countries have implemented localized school closures and, should these closures become nationwide, millions of additional learners will experience education disruption.
  • 6000+ Downloads
    Time Period of the Dataset [?]: February 27, 2020-February 02, 2022 ... More
    Modified [?]: 27 March 2022
    Dataset Added on HDX [?]: 19 May 2020
    This dataset updates: Never
    Subnational data about Covid19 in Nigeria per day - Infections (new cases), Deaths, Recoveries + Gender data per region (only April - October 2020).
  • 1300+ Downloads
    Time Period of the Dataset [?]: March 09, 2020-March 18, 2022 ... More
    Modified [?]: 27 March 2022
    Dataset Added on HDX [?]: 19 May 2020
    This dataset updates: Never
    Subnational data about Covid19 in Burkina Faso - Infected (new cases, gender), Deceased, Recovered. NEW (!) : VACCINATION DATA PER REGION (1st & 2nd dose) Type of vaccine : AstraZeneca ; Johnson&Johnson
  • 600+ Downloads
    Time Period of the Dataset [?]: March 13, 2020-March 25, 2022 ... More
    Modified [?]: 27 March 2022
    Dataset Added on HDX [?]: 19 May 2020
    This dataset updates: Never
    Subnational data about Covid19 in Mauritania - Infections (new cases, gender), Deaths, Recoveries. Please note that the gender data is not available yet for every day, our teams are working on it. Thank you for your understanding.