41 datasets found
  1. Data from: Variation in trends of consumption based carbon accounts

    • zenodo.org
    bin, csv
    Updated Jan 24, 2020
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    Richard Wood; Richard Wood; Daniel Moran; Daniel Moran; Konstantin Stadler; Konstantin Stadler; João F. D. Rodrigues; João F. D. Rodrigues (2020). Variation in trends of consumption based carbon accounts [Dataset]. http://doi.org/10.5281/zenodo.3187310
    Explore at:
    bin, csvAvailable download formats
    Dataset updated
    Jan 24, 2020
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Richard Wood; Richard Wood; Daniel Moran; Daniel Moran; Konstantin Stadler; Konstantin Stadler; João F. D. Rodrigues; João F. D. Rodrigues
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    In this work we present results of all the major global models and normalise the model results by looking at changes over time relative to a common base year value.
    We give an analysis of the variability across the models, both before and after normalisation in order to give insights into variance at national and regional level.
    A dataset of harmonised results (based on means) and measures of dispersion is presented, providing a baseline dataset for CBCA validation and analysis.

    The dataset is intended as a goto dataset for country and regional results of consumption and production based accounts. The normalised mean for each country/region is the principle result that can be used to assess the magnitude and trend in the emission accounts. However, an additional key element of the dataset are the measures of robustness and spread of the results across the source models. These metrics give insight into the amount of trust should be placed in the individual country/region results.

    Code at https://doi.org/10.5281/zenodo.3181930

  2. f

    Predicting Epidemic Risk from Past Temporal Contact Data

    • plos.figshare.com
    zip
    Updated Jun 4, 2023
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    Eugenio Valdano; Chiara Poletto; Armando Giovannini; Diana Palma; Lara Savini; Vittoria Colizza (2023). Predicting Epidemic Risk from Past Temporal Contact Data [Dataset]. http://doi.org/10.1371/journal.pcbi.1004152
    Explore at:
    zipAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    PLOS Computational Biology
    Authors
    Eugenio Valdano; Chiara Poletto; Armando Giovannini; Diana Palma; Lara Savini; Vittoria Colizza
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Understanding how epidemics spread in a system is a crucial step to prevent and control outbreaks, with broad implications on the system’s functioning, health, and associated costs. This can be achieved by identifying the elements at higher risk of infection and implementing targeted surveillance and control measures. One important ingredient to consider is the pattern of disease-transmission contacts among the elements, however lack of data or delays in providing updated records may hinder its use, especially for time-varying patterns. Here we explore to what extent it is possible to use past temporal data of a system’s pattern of contacts to predict the risk of infection of its elements during an emerging outbreak, in absence of updated data. We focus on two real-world temporal systems; a livestock displacements trade network among animal holdings, and a network of sexual encounters in high-end prostitution. We define the node’s loyalty as a local measure of its tendency to maintain contacts with the same elements over time, and uncover important non-trivial correlations with the node’s epidemic risk. We show that a risk assessment analysis incorporating this knowledge and based on past structural and temporal pattern properties provides accurate predictions for both systems. Its generalizability is tested by introducing a theoretical model for generating synthetic temporal networks. High accuracy of our predictions is recovered across different settings, while the amount of possible predictions is system-specific. The proposed method can provide crucial information for the setup of targeted intervention strategies.

  3. p

    Lockdown data-V6.0.csv

    • psycharchives.org
    Updated Jun 4, 2020
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    (2020). Lockdown data-V6.0.csv [Dataset]. https://www.psycharchives.org/en/item/8a0c3db3-d4bf-46dd-8ffc-557430d45ddd
    Explore at:
    Dataset updated
    Jun 4, 2020
    License

    Attribution-ShareAlike 4.0 (CC BY-SA 4.0)https://creativecommons.org/licenses/by-sa/4.0/
    License information was derived automatically

    Description

    The outbreak of the COVID-19 pandemic has prompted the German government and the 16 German federal states to announce a variety of public health measures in order to suppress the spread of the coronavirus. These non-pharmaceutical measures intended to curb transmission rates by increasing social distancing (i.e., diminishing interpersonal contacts) which restricts a range of individual behaviors. These measures span moderate recommendations such as physical distancing, up to the closures of shops and bans of gatherings and demonstrations. The implementation of these measures are not only a research goal for themselves but have implications for behavioral research conducted in this time (e.g., in form of potential confounder biases). Hence, longitudinal data that represent the measures can be a fruitful data source. The presented data set contains data on 14 governmental measures across the 16 German federal states. In comparison to existing datasets, the data set at hand is a fine-grained daily time series tracking the effective calendar date, introduction, extension, or phase-out of each respective measure. Based on self-regulation theory, measures were coded whether they did not restrict, partially restricted or fully restricted the respective behavioral pattern. The time frame comprises March 08, 2020 until May 15, 2020. The project is an open-source, ongoing project with planned continued updates in regular (approximately monthly) intervals. New variables include restrictions on travel and gastronomy. The variable trvl (travel) comprises the following categories: fully restricted (=2) reflecting a potential general ban to travel within Germany (except for sound reasons like health or business); partially restricted (=1): travels are allowed but may be restricted through prohibition of accommodation or entry ban for certain groups (e.g. people from risk areas); free (=0): no travel and accommodation restrictions in place). The variable gastr (gastronomy) comprises: fully restricted (=2): closure of restaurants or bars; partially restricted (=1): Only take-away or food delivery services are allowed; free (=0): restaurants are allowed to open without restrictions). Further, the variables msk (recommendations to wear a mask) and zoo (restrictions of zoo visits) have been adjusted.:

  4. TROPESS Chemical Reanalysis O3 Spread 6-Hourly 3-dimensional Product V1...

    • catalog.data.gov
    • s.cnmilf.com
    • +1more
    Updated Jul 3, 2025
    + more versions
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    NASA/GSFC/SED/ESD/TISL/GESDISC (2025). TROPESS Chemical Reanalysis O3 Spread 6-Hourly 3-dimensional Product V1 (TRPSCRO3S6H3D) at GES DISC [Dataset]. https://catalog.data.gov/dataset/tropess-chemical-reanalysis-o3-spread-6-hourly-3-dimensional-product-v1-trpscro3s6h3d-at-g
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    Dataset updated
    Jul 3, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Description

    The TROPESS Chemical Reanalysis O3 Spread 6-Hourly 3-dimensional Product contains the ozone ensemble spread, a measure of data assimilation analysis uncertainty. The data are part of the Tropospheric Chemical Reanalysis v2 (TCR-2) for the period 2005-2021. TCR-2 uses JPL's Multi-mOdel Multi-cOnstituent Chemical (MOMO-Chem) data assimilation framework that simultaneously optimizes both concentrations and emissions of multiple species from multiple satellite sensors.The data files are written in the netCDF version 4 file format, and each file contains a year of data at 6-hourly resolution, and a spatial resolution of 1.125 x 1.125 degrees at 27 pressure levels between 1000 and 60 hPa. The principal investigator for the TCR-2 data is Miyazaki, Kazuyuki.

  5. d

    Violators of Precautionary and Preventive Measures to Limit The Spread of...

    • data.gov.qa
    csv, excel, json
    Updated May 22, 2025
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    (2025). Violators of Precautionary and Preventive Measures to Limit The Spread of Corona Virus According to Nationality, Gender and Crime Type [Dataset]. https://www.data.gov.qa/explore/dataset/violators-of-precautionary-and-preventive-measures-to-limit-the-spread-of-corona-virus-according-to-nationality-gender-and-crime-type/
    Explore at:
    json, csv, excelAvailable download formats
    Dataset updated
    May 22, 2025
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Statistical data on the number of violators of precautionary and preventive measures to limit the spread of the coronavirus in Qatar, categorized by nationality, gender, and type of crime.

  6. COVID-19 Measures Dataset (All World)

    • kaggle.com
    Updated Jan 23, 2021
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    Mesum Raza Hemani (2021). COVID-19 Measures Dataset (All World) [Dataset]. https://www.kaggle.com/mesumraza/covid19-measures-dataset-all-world/discussion
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jan 23, 2021
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Mesum Raza Hemani
    Area covered
    World
    Description

    Context

    There's a story behind every dataset and here's your opportunity to share yours.

    The COVID-19 Government Measures Dataset puts together all the measures implemented by governments worldwide in response to the Coronavirus pandemic. Data collection includes secondary data review. The researched information available falls into five categories:

    Social distancing Movement restrictions Public health measures Social and economic measures Lockdowns

    Content

    Updated last 10/12/2020 The #COVID19 Government Measures Dataset puts together all the measures implemented by governments worldwide in response to the Coronavirus pandemic. Data collection includes secondary data review. The researched information available falls into five categories: - Social distancing - Movement restrictions - Public health measures - Social and economic measures - Lockdowns Each category is broken down into several types of measures.

    ID ISO COUNTRY REGION ADMIN_LEVEL_NAME PCODE LOG_TYPE CATEGORY MEASURE_TYPE TARGETED_POP_GROUP COMMENTS NON_COMPLIANCE DATE_IMPLEMENTED SOURCE SOURCE_TYPE LINK ENTRY_DATE ALTERNATIVE SOURCE

    Acknowledgements

    We wouldn't be here without the help of others. If you owe any attributions or thanks, include them here along with any citations of past research.

    Inspiration

    Your data will be in front of the world's largest data science community. What questions do you want to see answered?

  7. J

    Data from: Spread Regression, Skewness Regression and Kurtosis Regression...

    • journaldata.zbw.eu
    application/vnd.rar +1
    Updated Nov 18, 2024
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    Qiang Chen; Zhijie Xiao; Qiang Chen; Zhijie Xiao (2024). Spread Regression, Skewness Regression and Kurtosis Regression with an Application to the U.S. Wage Structure [Dataset]. http://doi.org/10.15456/jae.2024312.0123103160
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    application/vnd.rar(6682348), txt(3476)Available download formats
    Dataset updated
    Nov 18, 2024
    Dataset provided by
    ZBW - Leibniz Informationszentrum Wirtschaft
    Authors
    Qiang Chen; Zhijie Xiao; Qiang Chen; Zhijie Xiao
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Quantile regression provides a powerful tool to study the effects of covariates on key quantiles of conditional distribution. Yet we often still lack a general picture about how covariates affect the overall shape of conditional distribution. Using quantile regression estimation and quantile-based measures of spread, skewness and kurtosis, we propose spread regression, skewness regression and kurtosis regression as empirical tools to quantify the effects of covariates on the spread, skewness and kurtosis of conditional distribution. This methodology is then applied to the U.S. wage data during 1980-2019 with substantive findings, and a comparison is made with a moment-based robust approach. In addition, we decompose changes in the spread into composition effects and structural effects as an effort to understand rising inequality. We also provide Stata commands spreadreg, skewreg and kurtosisreg available from SSC for easy implementation of spread, skewness and kurtosis regressions.

  8. u

    Community-based measures to mitigate the spread of coronavirus disease...

    • data.urbandatacentre.ca
    • beta.data.urbandatacentre.ca
    • +2more
    Updated Sep 30, 2024
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    (2024). Community-based measures to mitigate the spread of coronavirus disease (COVID-19) in Canada [Dataset]. https://data.urbandatacentre.ca/dataset/gov-canada-ca81fcd4-8da8-4816-9a6e-d233e491f71d
    Explore at:
    Dataset updated
    Sep 30, 2024
    License

    Open Government Licence - Canada 2.0https://open.canada.ca/en/open-government-licence-canada
    License information was derived automatically

    Area covered
    Canada
    Description

    The guidance identifies core personal and community-based public health measures to mitigate the transmission of coronavirus disease (COVID-19).

  9. Z

    Measures to mitigate the spread of COVID-19 in Switzerland

    • data.niaid.nih.gov
    Updated Apr 14, 2020
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    Maria Bekker-Nielsen Dunbar (2020). Measures to mitigate the spread of COVID-19 in Switzerland [Dataset]. https://data.niaid.nih.gov/resources?id=ZENODO_3749746
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    Dataset updated
    Apr 14, 2020
    Dataset provided by
    Fabienne Krauer
    Muriel Buri
    Johannes Bracher
    Simone Baffelli
    Jonas Oesch
    Nicolo Lardelli
    Maria Bekker-Nielsen Dunbar
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Switzerland
    Description

    Since February 25, 2020 Switzerland has been affected by COVID-19. Modelling predictions show that this pandemic will not stop on its own and that stringent migitation strategies are needed. Switzerland has implemented a series of measures both at cantonal and federal level. On March 16, 2020 the Federal Council of Switzerland declared “extraordinary situation” and introduced a series of stringent measures. This includes the closure of schools, restaurants, bars, businesses with close contact (e.g. hair dressers), entertainment or leisure facilities. Incoming cross-border mobility from specific countries is also restricted to Swiss citizens, residency holders or work commuters. As of March 20, 2020 mass gatherings of more than five people are also banned. Already in early March various cantons had started to ban events of various sizes and have restricted or banned access to short- and long-term care facilites and day care centers.

    The aim of this project is to collect and categorize these control measures implemented and provide a continously updated data set, which can be used for modelling or visualization purposes. Please use the newest version available.

    We collect the date/duration and level of the most important measures taken in response to COVID-19 from official cantonal and federal press releases. A description of the measures, the levels as well as the newest version of data dataset can be found here.

  10. Wildfire Risk to Communities Wildfire Hazard Potential (Image Service)

    • catalog.data.gov
    • resilience.climate.gov
    • +8more
    Updated Apr 21, 2025
    + more versions
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    U.S. Forest Service (2025). Wildfire Risk to Communities Wildfire Hazard Potential (Image Service) [Dataset]. https://catalog.data.gov/dataset/wildfire-risk-to-communities-wildfire-hazard-potential-image-service-3e8f6
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    Dataset updated
    Apr 21, 2025
    Dataset provided by
    U.S. Department of Agriculture Forest Servicehttp://fs.fed.us/
    Description

    The data included in this publication depict the 2024 version of components of wildfire risk for all lands in the United States that: 1) are landscape-wide (i.e., measurable at every pixel across the landscape); and 2) represent in situ risk - risk at the location where the adverse effects take place on the landscape.National wildfire hazard datasets of annual burn probability and fire intensity, generated by the USDA Forest Service, Rocky Mountain Research Station and Pyrologix LLC, form the foundation of the Wildfire Risk to Communities data. Vegetation and wildland fuels data from LANDFIRE 2020 (version 2.2.0) were used as input to two different but related geospatial fire simulation systems. Annual burn probability was produced with the USFS geospatial fire simulator (FSim) at a relatively coarse cell size of 270 meters (m). To bring the burn probability raster data down to a finer resolution more useful for assessing hazard and risk to communities, we upsampled them to the native 30 m resolution of the LANDFIRE fuel and vegetation data. In this upsampling process, we also spread values of modeled burn probability into developed areas represented in LANDFIRE fuels data as non-burnable. Burn probability rasters represent landscape conditions as of the end of 2020. Fire intensity characteristics were modeled at 30 m resolution using a process that performs a comprehensive set of FlamMap runs spanning the full range of weather-related characteristics that occur during a fire season and then integrates those runs into a variety of results based on the likelihood of those weather types occurring. Before the fire intensity modeling, the LANDFIRE 2020 data were updated to reflect fuels disturbances occurring in 2021 and 2022. As such, the fire intensity datasets represent landscape conditions as of the end of 2022. Additional methodology documentation is provided in a methods document (\Supplements\WRC_V2_Methods_Landscape-wideRisk.pdf) packaged in the data download.The specific raster datasets in this publication include:Risk to Potential Structures (RPS): A measure that integrates wildfire likelihood and intensity with generalized consequences to a home on every pixel. For every place on the landscape, it poses the hypothetical question, "What would be the relative risk to a house if one existed here?" This allows comparison of wildfire risk in places where homes already exist to places where new construction may be proposed. This dataset is referred to as Risk to Homes in the Wildfire Risk to Communities web application.Conditional Risk to Potential Structures (cRPS): The potential consequences of fire to a home at a given location, if a fire occurs there and if a home were located there. Referred to as Wildfire Consequence in the Wildfire Risk to Communities web application.Exposure Type: Exposure is the spatial coincidence of wildfire likelihood and intensity with communities. This layer delineates where homes are directly exposed to wildfire from adjacent wildland vegetation, indirectly exposed to wildfire from indirect sources such as embers and home-to-home ignition, or not exposed to wildfire due to distance from direct and indirect ignition sources.Burn Probability (BP): The annual probability of wildfire burning in a specific location. Referred to as Wildfire Likelihood in the Wildfire Risk to Communities web application.Conditional Flame Length (CFL): The mean flame length for a fire burning in the direction of maximum spread (headfire) at a given location if a fire were to occur; an average measure of wildfire intensity.Flame Length Exceedance Probability - 4 ft (FLEP4): The conditional probability that flame length at a pixel will exceed 4 feet if a fire occurs; indicates the potential for moderate to high wildfire intensity.Flame Length Exceedance Probability - 8 ft (FLEP8): the conditional probability that flame length at a pixel will exceed 8 feet if a fire occurs; indicates the potential for high wildfire intensity.Wildfire Hazard Potential (WHP): An index that quantifies the relative potential for wildfire that may be difficult to manage, used as a measure to help prioritize where fuel treatments may be needed.Additional methodology documentation is provided with the data publication download. Metadata and Downloads.Note: Pixel values in this image service have been altered from the original raster dataset due to data requirements in web services. The service is intended primarily for data visualization. Relative values and spatial patterns have been largely preserved in the service, but users are encouraged to download the source data for quantitative analysis.

  11. J

    ESTIMATION OF TIME-VARYING ADJUSTED PROBABILITY OF INFORMED TRADING AND...

    • journaldata.zbw.eu
    • jda-test.zbw.eu
    txt
    Updated Dec 7, 2022
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    Daniel P. A. Preve; Yiu Kuen Tse; Daniel P. A. Preve; Yiu Kuen Tse (2022). ESTIMATION OF TIME-VARYING ADJUSTED PROBABILITY OF INFORMED TRADING AND PROBABILITY OF SYMMETRIC ORDER-FLOW SHOCK (replication data) [Dataset]. http://doi.org/10.15456/jae.2022321.0712324357
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    txt(1307)Available download formats
    Dataset updated
    Dec 7, 2022
    Dataset provided by
    ZBW - Leibniz Informationszentrum Wirtschaft
    Authors
    Daniel P. A. Preve; Yiu Kuen Tse; Daniel P. A. Preve; Yiu Kuen Tse
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Recently, Duarte and Young (2009) studied the probability of informed trading (PIN) proposed by Easley et al. (2002) and decomposed it into two parts: the adjusted PIN (APIN) as a measure of asymmetric information and the probability of symmetric order-flow shock (PSOS) as a measure of illiquidity. They provide some cross-section estimates of these measures using daily data over annual periods. In this paper we propose a method to estimate daily APIN and PSOS by extending the method in Tay et al. (2009) using high-frequency transaction data. Our empirical results show that while PIN is positively contemporaneously correlated with variance, APIN is not. On the other hand, PSOS is positively correlated with daily average effective spread and variance, which is consistent with the interpretation of PSOS as a measure of illiquidity. Compared to APIN, PSOS exhibits clustering and sporadic bursts over time.

  12. The African region covid-19 dataset

    • kaggle.com
    zip
    Updated Apr 10, 2020
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    Derek Kweku (2020). The African region covid-19 dataset [Dataset]. https://www.kaggle.com/derek560/the-african-region-covid19-dataset
    Explore at:
    zip(56052 bytes)Available download formats
    Dataset updated
    Apr 10, 2020
    Authors
    Derek Kweku
    Description

    Context

    There's a story behind every dataset and here's your opportunity to share yours.

    As the spread of the novel covid-19 continues to run into countries it is important for us to keep records of every Information on it. Therefore, this dataset is built basically to cover the update from Africa.

    Content

    What's inside is more than just rows and columns. Make it easy for others to get started by describing how you acquired the data and what time period it represents, too. It contains Information on the dates the cases were recorded across Africa. Detailing the death, confirmed and recovery cases in each country.

    Acknowledgements

    We wouldn't be here without the help of others. If you owe any attributions or thanks, include them here along with any citations of past research.

    Ethical AI Club John Hopkins University Runmila Institute WHO CDC Ghana Health Service

    Inspiration

    Your data will be in front of the world's largest data science community. What questions do you want to see answered? We should be able to see contributors answering questions about how Africa should prepare and put in the right measures to contain the spread. A better understanding from the Data scientists.

  13. TROPESS Chemical Reanalysis NO2 Spread Monthly 3-dimensional Product V1...

    • catalog.data.gov
    • cmr.earthdata.nasa.gov
    Updated Jul 3, 2025
    + more versions
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    NASA/GSFC/SED/ESD/TISL/GESDISC (2025). TROPESS Chemical Reanalysis NO2 Spread Monthly 3-dimensional Product V1 (TRPSCRNO2SM3D) at GES DISC [Dataset]. https://catalog.data.gov/dataset/tropess-chemical-reanalysis-no2-spread-monthly-3-dimensional-product-v1-trpscrno2sm3d-at-g-261b1
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    Dataset updated
    Jul 3, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Description

    The TROPESS Chemical Reanalysis NO2 Spread Monthly 3-dimensional Product contains the nitrogen dioxide ensemble spread, a measure of data assimilation analysis uncertainty. The data are part of the Tropospheric Chemical Reanalysis v2 (TCR-2) for the period 2005-2021. TCR-2 uses JPL's Multi-mOdel Multi-cOnstituent Chemical (MOMO-Chem) data assimilation framework that simultaneously optimizes both concentrations and emissions of multiple species from multiple satellite sensors.The data files are written in the netCDF version 4 file format, and each file contains a year of data at monthly resolution, and a spatial resolution of 1.125 x 1.125 degrees at 27 pressure levels between 1000 and 60 hPa. The principal investigator for the TCR-2 data is Miyazaki, Kazuyuki.

  14. Japan’s Voluntary Lockdown

    • figshare.com
    xlsx
    Updated May 31, 2023
    + more versions
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    Tomoyoshi Yabu; Tsutomu Watanabe (2023). Japan’s Voluntary Lockdown [Dataset]. http://doi.org/10.6084/m9.figshare.14658618.v2
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    xlsxAvailable download formats
    Dataset updated
    May 31, 2023
    Dataset provided by
    Figsharehttp://figshare.com/
    Authors
    Tomoyoshi Yabu; Tsutomu Watanabe
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Japan
    Description

    This dataset contains the stay-at-home index, the number of new infections, and the government’s measures against the spread of COVID-19 for the 47 prefectures of Japan, which were used in Watanabe and Yabu (2020).

  15. TROPESS Chemical Reanalysis Ozone Spread Monthly 3-dimensional Product V1...

    • catalog.data.gov
    • s.cnmilf.com
    • +2more
    Updated Apr 11, 2025
    + more versions
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    NASA/GSFC/SED/ESD/GCDC/GESDISC (2025). TROPESS Chemical Reanalysis Ozone Spread Monthly 3-dimensional Product V1 (TRPSCRO3SM3D) at GES DISC [Dataset]. https://catalog.data.gov/dataset/tropess-chemical-reanalysis-ozone-spread-monthly-3-dimensional-product-v1-trpscro3sm3d-at-
    Explore at:
    Dataset updated
    Apr 11, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Description

    The TROPESS Chemical Reanalysis O3 Spread Monthly 3-dimensional Product contains the ozone ensemble spread, a measure of data assimilation analysis uncertainty. The data are part of the Tropospheric Chemical Reanalysis v2 (TCR-2) for the period 2005-2021. TCR-2 uses JPL's Multi-mOdel Multi-cOnstituent Chemical (MOMO-Chem) data assimilation framework that simultaneously optimizes both concentrations and emissions of multiple species from multiple satellite sensors. The data files are written in the netCDF version 4 file format, and each file contains a year of data at monthly resolution, and a spatial resolution of 1.125 x 1.125 degrees at 27 pressure levels between 1000 and 60 hPa. The principal investigator for the TCR-2 data is Miyazaki, Kazuyuki.

  16. COVID-19: Guidance on indoor ventilation during the pandemic

    • open.canada.ca
    • ouvert.canada.ca
    html
    Updated Feb 15, 2021
    + more versions
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    Public Health Agency of Canada (2021). COVID-19: Guidance on indoor ventilation during the pandemic [Dataset]. https://open.canada.ca/data/en/dataset/a04be2a2-b8b7-4a7c-bbca-a5298a1e4e66
    Explore at:
    htmlAvailable download formats
    Dataset updated
    Feb 15, 2021
    Dataset provided by
    Public Health Agency Of Canadahttp://www.phac-aspc.gc.ca/
    License

    Open Government Licence - Canada 2.0https://open.canada.ca/en/open-government-licence-canada
    License information was derived automatically

    Description

    The Public Health Agency of Canada (PHAC) has developed this guide to inform Canadians about how indoor ventilation, in combination with other recommended public health measures, can reduce the spread of COVID-19. This guide also provides practical tips on how to improve indoor air, ventilation and filtration to help reduce the spread of COVID-19.

  17. Z

    Network traffic datasets with novel extended IP flow called NetTiSA flow

    • data.niaid.nih.gov
    Updated Apr 18, 2024
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    Karel Hynek (2024). Network traffic datasets with novel extended IP flow called NetTiSA flow [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_8301042
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    Dataset updated
    Apr 18, 2024
    Dataset provided by
    Karel Hynek
    Jaroslav Pešek
    Tomáš Čejka
    Josef Koumar
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Network traffic datasets with novel extended IP flow called NetTiSA flow

    Datasets were created for the paper: NetTiSA: Extended IP Flow with Time-series Features for Universal Bandwidth-constrained High-speed Network Traffic Classification -- Josef Koumar, Karel Hynek, Jaroslav Pešek, Tomáš Čejka -- which is published in The International Journal of Computer and Telecommunications Networking https://doi.org/10.1016/j.comnet.2023.110147Please cite the usage of our datasets as:

    Josef Koumar, Karel Hynek, Jaroslav Pešek, Tomáš Čejka, "NetTiSA: Extended IP flow with time-series features for universal bandwidth-constrained high-speed network traffic classification", Computer Networks, Volume 240, 2024, 110147, ISSN 1389-1286

    @article{KOUMAR2024110147, title = {NetTiSA: Extended IP flow with time-series features for universal bandwidth-constrained high-speed network traffic classification}, journal = {Computer Networks}, volume = {240}, pages = {110147}, year = {2024}, issn = {1389-1286}, doi = {https://doi.org/10.1016/j.comnet.2023.110147}, url = {https://www.sciencedirect.com/science/article/pii/S1389128623005923}, author = {Josef Koumar and Karel Hynek and Jaroslav Pešek and Tomáš Čejka} }

    This Zenodo repository contains 23 datasets created from 15 well-known published datasets, which are cited in the table below. Each dataset contains the NetTiSA flow feature vector.

    NetTiSA flow feature vector

    The novel extended IP flow called NetTiSA (Network Time Series Analysed) flow contains a universal bandwidth-constrained feature vector consisting of 20 features. We divide the NetTiSA flow classification features into three groups by computation. The first group of features is based on classical bidirectional flow information---a number of transferred bytes, and packets. The second group contains statistical and time-based features calculated using the time-series analysis of the packet sequences. The third type of features can be computed from the previous groups (i.e., on the flow collector) and improve the classification performance without any impact on the telemetry bandwidth.

    Flow features

    The flow features are:

    Packets is the number of packets in the direction from the source to the destination IP address.

    Packets in reverse order is the number of packets in the direction from the destination to the source IP address.

    Bytes is the size of the payload in bytes transferred in the direction from the source to the destination IP address.

    Bytes in reverse order is the size of the payload in bytes transferred in the direction from the destination to the source IP address.

    Statistical and Time-based features

    The features that are exported in the extended part of the flow. All of them can be computed (exactly or in approximative) by stream-wise computation, which is necessary for keeping memory requirements low. The second type of feature set contains the following features:

    Mean represents mean of the payload lengths of packets

    Min is the minimal value from payload lengths of all packets in a flow

    Max is the maximum value from payload lengths of all packets in a flow

    Standard deviation is a measure of the variation of payload lengths from the mean payload length

    Root mean square is the measure of the magnitude of payload lengths of packets

    Average dispersion is the average absolute difference between each payload length of the packet and the mean value

    Kurtosis is the measure describing the extent to which the tails of a distribution differ from the tails of a normal distribution

    Mean of relative times is the mean of the relative times which is a sequence defined as (st = {t_1 - t_1, t_2 - t_1, ..., t_n - t_1} )

    Mean of time differences is the mean of the time differences which is a sequence defined as (dt = { t_j - t_i | j = i + 1, i \in {1, 2, \dots, n - 1} }.)

    Min from time differences is the minimal value from all time differences, i.e., min space between packets.

    Max from time differences is the maximum value from all time differences, i.e., max space between packets.

    Time distribution describes the deviation of time differences between individual packets within the time series. The feature is computed by the following equation:(tdist = \frac{ \frac{1}{n-1} \sum_{i=1}^{n-1} \left| \mu_{{dt_{n-1}}} - dt_i \right| }{ \frac{1}{2} \left(max\left({dt_{n-1}}\right) - min\left({dt_{n-1}}\right) \right) })

    Switching ratio represents a value change ratio (switching) between payload lengths. The switching ratio is computed by equation:(sr = \frac{s_n}{\frac{1}{2} (n - 1)})

        where \(s_n\) is number of switches.
    

    Features computed at the collectorThe third set contains features that are computed from the previous two groups prior to classification. Therefore, they do not influence the network telemetry size and their computation does not put additional load to resource-constrained flow monitoring probes. The NetTiSA flow combined with this feature set is called the Enhanced NetTiSA flow and contains the following features:

    Max minus min is the difference between minimum and maximum payload lengths

    Percent deviation is the dispersion of the average absolute difference to the mean value

    Variance is the spread measure of the data from its mean

    Burstiness is the degree of peakedness in the central part of the distribution

    Coefficient of variation is a dimensionless quantity that compares the dispersion of a time series to its mean value and is often used to compare the variability of different time series that have different units of measurement

    Directions describe a percentage ratio of packet direction computed as (\frac{d_1}{ d_1 + d_0}), where (d_1) is a number of packets in a direction from source to destination IP address and (d_0) the opposite direction. Both (d_1) and (d_0) are inside the classical bidirectional flow.

    Duration is the duration of the flow

    The NetTiSA flow is implemented into IP flow exporter ipfixprobe.

    Description of dataset files

    In the following table is a description of each dataset file:

    File name

    Detection problem

    Citation of the original raw dataset

    botnet_binary.csv Binary detection of botnet S. García et al. An Empirical Comparison of Botnet Detection Methods. Computers & Security, 45:100–123, 2014.

    botnet_multiclass.csv Multi-class classification of botnet S. García et al. An Empirical Comparison of Botnet Detection Methods. Computers & Security, 45:100–123, 2014.

    cryptomining_design.csv Binary detection of cryptomining; the design part Richard Plný et al. Datasets of Cryptomining Communication. Zenodo, October 2022

    cryptomining_evaluation.csv Binary detection of cryptomining; the evaluation part Richard Plný et al. Datasets of Cryptomining Communication. Zenodo, October 2022

    dns_malware.csv Binary detection of malware DNS Samaneh Mahdavifar et al. Classifying Malicious Domains using DNS Traffic Analysis. In DASC/PiCom/CBDCom/CyberSciTech 2021, pages 60–67. IEEE, 2021.

    doh_cic.csv Binary detection of DoH Mohammadreza MontazeriShatoori et al. Detection of doh tunnels using time-series classification of encrypted traffic. In DASC/PiCom/CBDCom/CyberSciTech 2020, pages 63–70. IEEE, 2020

    doh_real_world.csv Binary detection of DoH Kamil Jeřábek et al. Collection of datasets with DNS over HTTPS traffic. Data in Brief, 42:108310, 2022

    dos.csv Binary detection of DoS Nickolaos Koroniotis et al. Towards the development of realistic botnet dataset in the Internet of Things for network forensic analytics: Bot-IoT dataset. Future Gener. Comput. Syst., 100:779–796, 2019.

    edge_iiot_binary.csv Binary detection of IoT malware Mohamed Amine Ferrag et al. Edge-iiotset: A new comprehensive realistic cyber security dataset of iot and iiot applications: Centralized and federated learning, 2022.

    edge_iiot_multiclass.csv Multi-class classification of IoT malware Mohamed Amine Ferrag et al. Edge-iiotset: A new comprehensive realistic cyber security dataset of iot and iiot applications: Centralized and federated learning, 2022.

    https_brute_force.csv Binary detection of HTTPS Brute Force Jan Luxemburk et al. HTTPS Brute-force dataset with extended network flows, November 2020

    ids_cic_binary.csv Binary detection of intrusion in IDS Iman Sharafaldin et al. Toward generating a new intrusion detection dataset and intrusion traffic characterization. ICISSp, 1:108–116, 2018.

    ids_cic_multiclass.csv Multi-class classification of intrusion in IDS Iman Sharafaldin et al. Toward generating a new intrusion detection dataset and intrusion traffic characterization. ICISSp, 1:108–116, 2018.

    unsw_binary.csv Binary detection of intrusion in IDS Nour Moustafa and Jill Slay. Unsw-nb15: a comprehensive data set for network intrusion detection systems (unsw-nb15 network data set). In 2015 military communications and information systems conference (MilCIS), pages 1–6. IEEE, 2015.

    unsw_multiclass.csv Multi-class classification of intrusion in IDS Nour Moustafa and Jill Slay. Unsw-nb15: a comprehensive data set for network intrusion detection systems (unsw-nb15 network data set). In 2015 military communications and information systems conference (MilCIS), pages 1–6. IEEE, 2015.

    iot_23.csv Binary detection of IoT malware Sebastian Garcia et al. IoT-23: A labeled dataset with malicious and benign IoT network traffic, January 2020. More details here https://www.stratosphereips.org /datasets-iot23

    ton_iot_binary.csv Binary detection of IoT malware Nour Moustafa. A new distributed architecture for evaluating ai-based security systems at the edge: Network ton iot datasets. Sustainable Cities and Society, 72:102994, 2021

    ton_iot_multiclass.csv Multi-class classification of IoT malware Nour Moustafa. A new distributed architecture for evaluating ai-based security systems at the edge: Network ton iot datasets.

  18. Z

    Genomic Epidemiology Dataset for Important Nosocomial Pathogenic Bacteria...

    • data.niaid.nih.gov
    Updated Oct 1, 2024
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    Shelenkov, Andrey (2024). Genomic Epidemiology Dataset for Important Nosocomial Pathogenic Bacteria Acinetobacter baumannii [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_10143377
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    Dataset updated
    Oct 1, 2024
    Dataset authored and provided by
    Shelenkov, Andrey
    License

    Attribution-ShareAlike 4.0 (CC BY-SA 4.0)https://creativecommons.org/licenses/by-sa/4.0/
    License information was derived automatically

    Description

    The infections caused by various bacterial pathogens both in clinical and community settings represent a significant threat to public healthcare worldwide. The growing resistance to antimicrobial drugs acquired by bacterial species causing healthcare-associated infections has already become a life-threatening danger noticed by the World Health Organization. Several groups or lineages of bacterial isolates usually called 'the clones of high risk' often drive the spread of resistance within particular species. Thus, it is vitally important to reveal and track the spread of such clones and the mechanisms by which they acquire antibiotic resistance and enhance their survival skills. Currently, the analysis of whole genome sequences for bacterial isolates of interest is increasingly used for these purposes, including epidemiological surveillance and developing of spread prevention measures. However, the availability and uniformity of the data derived from the genomic sequences often represents a bottleneck for such investigations. In this dataset, we present the results of a comprehensive genomic epidemiology analysis of 17,546 genomes of a dangerous bacterial pathogen Acinetobacter baumannii. Important typing information including multilocus sequence typing (MLST)-based sequence types (STs), intrinsic blaOXA-51-like gene variants, capsular (KL) and oligosaccharide (OCL) types, CRISPR-Cas systems, and cgMLST profiles are presented, as well as the assignment of particular isolates to nine known international clones of high risk. The presence of antimicrobial resistance genes within the genomes is also reported. These data will be useful for researchers in the field of A. baumannii genomic epidemiology, resistance analysis and prevention measure development.

  19. TROPESS Chemical Reanalysis CO Spread Monthly 3-dimensional Product V1...

    • catalog.data.gov
    • cmr.earthdata.nasa.gov
    Updated Jul 3, 2025
    + more versions
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    NASA/GSFC/SED/ESD/TISL/GESDISC (2025). TROPESS Chemical Reanalysis CO Spread Monthly 3-dimensional Product V1 (TRPSCRCOSM3D) at GES DISC [Dataset]. https://catalog.data.gov/dataset/tropess-chemical-reanalysis-co-spread-monthly-3-dimensional-product-v1-trpscrcosm3d-at-ges-f1903
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    Dataset updated
    Jul 3, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Description

    The TROPESS Chemical Reanalysis CO Spread Monthly 3-dimensional Product contains the carbon monoxide ensemble spread, a measure of data assimilation analysis uncertainty. The data are part of the Tropospheric Chemical Reanalysis v2 (TCR-2) for the period 2005-2021. TCR-2 uses JPL's Multi-mOdel Multi-cOnstituent Chemical (MOMO-Chem) data assimilation framework that simultaneously optimizes both concentrations and emissions of multiple species from multiple satellite sensors.The data files are written in the netCDF version 4 file format, and each file contains a year of data at monthly resolution, and a spatial resolution of 1.125 x 1.125 degrees at 27 pressure levels between 1000 and 60 hPa. The principal investigator for the TCR-2 data is Miyazaki, Kazuyuki.

  20. o

    Decision No. 259 on the implementation of administrative measures on...

    • data.opendevelopmentmekong.net
    Updated Aug 12, 2021
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    (2021). Decision No. 259 on the implementation of administrative measures on suspension of high risk COVID-19 activities or businesses, private gatherings and prohibitions in Phnom Penh to fight and prevent the spread of COVID-19 for 14 days - Laws OD Mekong Datahub [Dataset]. https://data.opendevelopmentmekong.net/dataset/decision-no-259-on-the-implementation-of-administrative-measures-on-suspension-of-activities-or-bus
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    Dataset updated
    Aug 12, 2021
    Area covered
    Phnom Penh
    Description

    Phnom Penh Capital Administration implements the administrative measures on suspension of high risk COVID-19 activities or businesses, private gatherings and prohibitions in Phnom Penh to fight and prevent the spread of COVID-19 for 14 days.

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Richard Wood; Richard Wood; Daniel Moran; Daniel Moran; Konstantin Stadler; Konstantin Stadler; João F. D. Rodrigues; João F. D. Rodrigues (2020). Variation in trends of consumption based carbon accounts [Dataset]. http://doi.org/10.5281/zenodo.3187310
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Data from: Variation in trends of consumption based carbon accounts

Related Article
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bin, csvAvailable download formats
Dataset updated
Jan 24, 2020
Dataset provided by
Zenodohttp://zenodo.org/
Authors
Richard Wood; Richard Wood; Daniel Moran; Daniel Moran; Konstantin Stadler; Konstantin Stadler; João F. D. Rodrigues; João F. D. Rodrigues
License

Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically

Description

In this work we present results of all the major global models and normalise the model results by looking at changes over time relative to a common base year value.
We give an analysis of the variability across the models, both before and after normalisation in order to give insights into variance at national and regional level.
A dataset of harmonised results (based on means) and measures of dispersion is presented, providing a baseline dataset for CBCA validation and analysis.

The dataset is intended as a goto dataset for country and regional results of consumption and production based accounts. The normalised mean for each country/region is the principle result that can be used to assess the magnitude and trend in the emission accounts. However, an additional key element of the dataset are the measures of robustness and spread of the results across the source models. These metrics give insight into the amount of trust should be placed in the individual country/region results.

Code at https://doi.org/10.5281/zenodo.3181930

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