100+ datasets found
  1. d

    Mission Statement, Vision and Core Values

    • catalog.data.gov
    • s.cnmilf.com
    • +1more
    Updated Nov 12, 2020
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    Office of Inspector General (2020). Mission Statement, Vision and Core Values [Dataset]. https://catalog.data.gov/dataset/mission-statement-vision-and-core-values
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    Dataset updated
    Nov 12, 2020
    Dataset provided by
    Office of Inspector General
    Description

    Mission statement, Vision and Core Values of the OIG. Includes links to the OIG FY 2015 Action Plan, OIG Status Report on NAPA Recommendations, 2012 and the OIG Organizational Assessment, National Academy of Public Administration (NAPA), 2009

  2. Data from: Information and value: Conceptual interrelations and the...

    • scielo.figshare.com
    xls
    Updated Jun 1, 2023
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    Jonathas Luiz Carvalho SILVA (2023). Information and value: Conceptual interrelations and the formation of evaluative types of information [Dataset]. http://doi.org/10.6084/m9.figshare.5720323.v1
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    xlsAvailable download formats
    Dataset updated
    Jun 1, 2023
    Dataset provided by
    SciELOhttp://www.scielo.org/
    Authors
    Jonathas Luiz Carvalho SILVA
    License

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

    Description

    Abstract The article deals with the interrelationships between information and value with an intrinsic relation between the two terms. The starting point of the article is the following question: What are the interrelationships between information and value and how do these interrelations produce an impact on the production of types of evaluative information? The objective is to address the underlying fundamentals of the concept of value by perceiving how these concepts interrelate to the concept of information and considering the formation of the types of evaluative information in the causal and consequential context. The methodology was based on a bibliographical research in dialogue with different documentary literature on the concepts of value and information, both in Information Science and related areas such as Philosophy, Sociology, Political Science, History, Education, Linguistics, Psychology, Communication, among others. It may be concluded a perspective of social construction based on interactions that stimulate the decision making of the subjects. that the interrelationship between information and value is developed by causal and consequential issues; these issues observed from a coordinated point of view are one of the main phenomena that promote the dynamics and construction of information among the subjects (rever texto original).

  3. d

    New Orleans 2015 Market Value Analysis - Final Report 3.17.2016

    • catalog.data.gov
    • data.nola.gov
    • +4more
    Updated Sep 15, 2023
    + more versions
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    data.nola.gov (2023). New Orleans 2015 Market Value Analysis - Final Report 3.17.2016 [Dataset]. https://catalog.data.gov/dataset/new-orleans-2015-market-value-analysis-final-report-3-17-2016
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    Dataset updated
    Sep 15, 2023
    Dataset provided by
    data.nola.gov
    Area covered
    New Orleans
    Description

    The Market Value Analysis (MVA) is a tool designed to assist the private market and government officials to identify and comprehend the various elements of local real estate markets. It is based fundamentally on local administrative data sources. By using an MVA, public sector officials and private market actors can more precisely craft intervention strategies in weak markets and support sustainable growth in stronger market segments.

  4. n

    HadISD: Global sub-daily, surface meteorological station data, 1931-2020,...

    • data-search.nerc.ac.uk
    • catalogue.ceda.ac.uk
    Updated Jul 24, 2021
    + more versions
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    (2021). HadISD: Global sub-daily, surface meteorological station data, 1931-2020, v3.1.1.2020f [Dataset]. https://data-search.nerc.ac.uk/geonetwork/srv/search?keyword=dewpoint
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    Dataset updated
    Jul 24, 2021
    Description

    This is version 3.1.1.2020f of Met Office Hadley Centre's Integrated Surface Database, HadISD. These data are global sub-daily surface meteorological data that extends HadISD v3.1.0.2019f to include 2020 and so spans 1931-2020. The quality controlled variables in this dataset are: temperature, dewpoint temperature, sea-level pressure, wind speed and direction, cloud data (total, low, mid and high level). Past significant weather and precipitation data are also included, but have not been quality controlled, so their quality and completeness cannot be guaranteed. Quality control flags and data values which have been removed during the quality control process are provided in the qc_flags and flagged_values fields, and ancillary data files show the station listing with a station listing with IDs, names and location information. The data are provided as one NetCDF file per station. Files in the station_data folder station data files have the format "station_code"_HadISD_HadOBS_19310101-20210101_v3-1-1-2020f.nc. The station codes can be found under the docs tab. The station codes file has five columns as follows: 1) station code, 2) station name 3) station latitude 4) station longitude 5) station height. To keep informed about updates, news and announcements follow the HadOBS team on twitter @metofficeHadOBS. For more detailed information e.g bug fixes, routine updates and other exploratory analysis, see the HadISD blog: http://hadisd.blogspot.co.uk/ References: When using the dataset in a paper you must cite the following papers (see Docs for link to the publications) and this dataset (using the "citable as" reference) : Dunn, R. J. H., (2019), HadISD version 3: monthly updates, Hadley Centre Technical Note. Dunn, R. J. H., Willett, K. M., Parker, D. E., and Mitchell, L.: Expanding HadISD: quality-controlled, sub-daily station data from 1931, Geosci. Instrum. Method. Data Syst., 5, 473-491, doi:10.5194/gi-5-473-2016, 2016. Dunn, R. J. H., et al. (2012), HadISD: A Quality Controlled global synoptic report database for selected variables at long-term stations from 1973-2011, Clim. Past, 8, 1649-1679, 2012, doi:10.5194/cp-8-1649-2012 Smith, A., N. Lott, and R. Vose, 2011: The Integrated Surface Database: Recent Developments and Partnerships. Bulletin of the American Meteorological Society, 92, 704–708, doi:10.1175/2011BAMS3015.1 For a homogeneity assessment of HadISD please see this following reference Dunn, R. J. H., K. M. Willett, C. P. Morice, and D. E. Parker. "Pairwise homogeneity assessment of HadISD." Climate of the Past 10, no. 4 (2014): 1501-1522. doi:10.5194/cp-10-1501-2014, 2014.

  5. Ames Housing Dataset Engineered

    • kaggle.com
    zip
    Updated Sep 30, 2020
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    anish pai (2020). Ames Housing Dataset Engineered [Dataset]. https://www.kaggle.com/anishpai/ames-housing-dataset-missing
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    zip(196917 bytes)Available download formats
    Dataset updated
    Sep 30, 2020
    Authors
    anish pai
    Area covered
    Ames
    Description

    Iowa Housing Data

    The original Ames data that is being used for the competition House Prices: Advanced Regression Techniques and predicting sales price is edited and engineered to suit a beginner for applying a model without worrying too much about missing data while focusing on the features.

    Contents

    The train data has the shape 1460x80 and test data has the shape 1458x79 with feature 'SalePrice' to be predicted for the test set. The train data has different types of features, categorical and numerical.

    A detailed info about the data can be obtained from the Data Description file among other data files.

    Transformations

    a. Handling Missing Values: Some variables such as 'PoolQC', 'MiscFeature', 'Alley' have over 90% missing values. However from the data description, it is implied that the missing value indicates the absence of such features in a particular house. Well, most of the missing data implies the feature does not exist for the particular house on further inspection of the dataset and data description.

    Similarly, features which are missing such as 'GarageType', 'GarageYrBuilt', 'BsmtExposure', etc indicated no garage in that house but also corresponding attributes such as 'GarageCars', 'GarageArea','BsmtCond' etc are set to 0.

    A house on a street might have similar front lawn area to the houses in the same neighborhood, hence the missing values can be median of the values in a neighborhood.

    Missing values in features such as 'SaleType', 'KitchenCond', etc have been imputed with the mode of the feature.

    b. Dropping Variables: 'Utilities' attribute should be dropped from the data frame because almost all the houses have all public Utilities (E,G,W,& S) available.

    c. Further exploration: The feature 'Electrical' has one missing value. The first intuition would be to drop the row. But on further inspection, the missing value is from a house built in 2006. After the 1970's all the houses have Standard Circuit Breakers & Romex 'SkBrkr' installed. So, the value can be inferred from this observation.

    d. Transformation: There were some variables which are really categorical but were represented numerically such as 'MSSubClass', 'OverallCond' and 'YearSold'/'MonthSold' as they are discrete in nature. These have also been transformed to categorical variables.

    e. X Normalizing the 'SalePrice' Variable: During EDA it was discovered that the Sale price of homes is right skewed. However on normalizing the skewness decreases and the (linear) models fit better. The feature is left for the user to normalize.

    Finally the train and test sets were split and sale price appended to train set.

    Acknowledgements

    The Ames Housing dataset was compiled by Dean De Cock for use in data science education. It's an incredible alternative for data scientists looking for a modernized and expanded version of the often cited Boston Housing dataset.

    Inspiration

    The data after the transformation done by me can easily be fitted on to a model after label encoding and normalizing features to reduce skewness. The main variable to be predicted is 'SalePrice' for the TestData csv file.

  6. 4

    Supplementary data underlying the publication: The process of value setting...

    • data.4tu.nl
    zip
    Updated Nov 10, 2023
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    Sara Dos Santos Vieira Brysch; Darinka K. Czischke; Adrià Garcia i Mateu (2023). Supplementary data underlying the publication: The process of value setting through co-design: the case of La Borda, Barcelona [Dataset]. http://doi.org/10.4121/69c91c96-43db-4e1a-b691-68d2ea1fbe06.v1
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    zipAvailable download formats
    Dataset updated
    Nov 10, 2023
    Dataset provided by
    4TU.ResearchData
    Authors
    Sara Dos Santos Vieira Brysch; Darinka K. Czischke; Adrià Garcia i Mateu
    License

    Attribution-NonCommercial-NoDerivs 4.0 (CC BY-NC-ND 4.0)https://creativecommons.org/licenses/by-nc-nd/4.0/
    License information was derived automatically

    Area covered
    Barcelona
    Description

    The aim of this paper is to assess how values are set through co-design and translated into a housing project. To do so, we develop an analytical framework to conduct a longitudinal single case-study that traces back the co-design process of the resident-led housing cooperative La Borda, in Barcelona. Our findings shed light on how co-design unfolds and uncover trade-offs carried out to overcome tensions mostly between individual and collective demands, and between building costs and quality. The Suplementary File includes the complete dataset of the textual excerpts of the reviewed documents that was used to conduct the analysis.

  7. d

    International Data Base

    • dknet.org
    • rrid.site
    • +2more
    Updated Jan 29, 2022
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    (2022). International Data Base [Dataset]. http://identifiers.org/RRID:SCR_013139
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    Dataset updated
    Jan 29, 2022
    Description

    A computerized data set of demographic, economic and social data for 227 countries of the world. Information presented includes population, health, nutrition, mortality, fertility, family planning and contraceptive use, literacy, housing, and economic activity data. Tabular data are broken down by such variables as age, sex, and urban/rural residence. Data are organized as a series of statistical tables identified by country and table number. Each record consists of the data values associated with a single row of a given table. There are 105 tables with data for 208 countries. The second file is a note file, containing text of notes associated with various tables. These notes provide information such as definitions of categories (i.e. urban/rural) and how various values were calculated. The IDB was created in the U.S. Census Bureau''s International Programs Center (IPC) to help IPC staff meet the needs of organizations that sponsor IPC research. The IDB provides quick access to specialized information, with emphasis on demographic measures, for individual countries or groups of countries. The IDB combines data from country sources (typically censuses and surveys) with IPC estimates and projections to provide information dating back as far as 1950 and as far ahead as 2050. Because the IDB is maintained as a research tool for IPC sponsor requirements, the amount of information available may vary by country. As funding and research activity permit, the IPC updates and expands the data base content. Types of data include: * Population by age and sex * Vital rates, infant mortality, and life tables * Fertility and child survivorship * Migration * Marital status * Family planning Data characteristics: * Temporal: Selected years, 1950present, projected demographic data to 2050. * Spatial: 227 countries and areas. * Resolution: National population, selected data by urban/rural * residence, selected data by age and sex. Sources of data include: * U.S. Census Bureau * International projects (e.g., the Demographic and Health Survey) * United Nations agencies Links: * ICPSR: http://www.icpsr.umich.edu/icpsrweb/ICPSR/studies/08490

  8. T

    Thailand Services value added - data, chart | TheGlobalEconomy.com

    • theglobaleconomy.com
    csv, excel, xml
    Updated Nov 21, 2016
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    Globalen LLC (2016). Thailand Services value added - data, chart | TheGlobalEconomy.com [Dataset]. www.theglobaleconomy.com/Thailand/services_value_added/
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    excel, csv, xmlAvailable download formats
    Dataset updated
    Nov 21, 2016
    Dataset authored and provided by
    Globalen LLC
    License

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

    Time period covered
    Dec 31, 1993 - Dec 31, 2024
    Area covered
    Thailand
    Description

    Thailand: Services value added, billion USD: The latest value from 2024 is 311.4 billion U.S. dollars, an increase from 301.58 billion U.S. dollars in 2023. In comparison, the world average is 456.90 billion U.S. dollars, based on data from 134 countries. Historically, the average for Thailand from 1993 to 2024 is 167.14 billion U.S. dollars. The minimum value, 60.96 billion U.S. dollars, was reached in 1998 while the maximum of 317.02 billion U.S. dollars was recorded in 2019.

  9. Additional file 11: of Evaluation of methods for differential expression...

    • springernature.figshare.com
    • datasetcatalog.nlm.nih.gov
    xlsx
    Updated Jun 10, 2023
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    Min Tang; Jianqiang Sun; Kentaro Shimizu; Koji Kadota (2023). Additional file 11: of Evaluation of methods for differential expression analysis on multi-group RNA-seq count data [Dataset]. http://doi.org/10.6084/m9.figshare.c.3646265_D10.v1
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    xlsxAvailable download formats
    Dataset updated
    Jun 10, 2023
    Dataset provided by
    Figsharehttp://figshare.com/
    figshare
    Authors
    Min Tang; Jianqiang Sun; Kentaro Shimizu; Koji Kadota
    License

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

    Description

    Average AUC values for simulation data with various options. Average AUC values of 100 trials are shown. The suggested (or default) options and the highest AUC values are in bold. Sheet 1: E-E (edgeR), Sheet 2: D-D (DESeq), Sheet 3: S-S (DESeq2). (XLSX 12 kb)

  10. Cannabis - Consumer ,Producer dataset

    • kaggle.com
    zip
    Updated Nov 8, 2020
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    Jayanth.K.M (2020). Cannabis - Consumer ,Producer dataset [Dataset]. https://www.kaggle.com/benten867/cannabis-data
    Explore at:
    zip(290301 bytes)Available download formats
    Dataset updated
    Nov 8, 2020
    Authors
    Jayanth.K.M
    Description

    Context

    Its been two years since the news that Canada has legalized weed hit us, so I was like why don't we get a dataset from Kaggle to practice a bit of data analysis and to my surprise I cannot find a weed dataset which reflects the economics behind legalized weed and how it has changed over time ,so I just went to the Canadian govt data site , and ola they have CSV files on exactly what I wanted floating around on their website and all I did was to download it straight up, and here I am to share it with the community.

    Content

    We have a series of CSV files each having data about things like supply, use case, production, etc but before we go into the individual files there are a few data columns which are common to all csv files

    • Ref_date: Reference period for the series being released
    • Dimension Name: Name of dimension. There can be up to 10 dimensions in a data table.
    • DGUID: Dissemination Geography Unique Identifier.
    • Unit of measure: The unit of measure applied to a member given in the text. There can be multiple units of measure in a table.
    • Unit of measure ID: The unique reference code associated with a particular unit of measure.
    • Scalar factor: The scalar factor associated with a data series, displayed as text. There can be multiple scalar factors in a table.
    • Scalar_ID: The unique numeric reference code associated with a particular scalar factor.
    • Vector: Unique variable length reference code time-series identifier, consisting of the letter 'V', followed by up to 10 digits.
    • Coordinate: Concatenation of the member ID values for each dimension.
    • Status: Shows various states of a data value using symbols. These symbols are described in the symbol legend and notes contained in the metadata file. Some symbols accompany a data value while others replace a data value. i.e. – A, B, C, D, E, F,.., X, 0s
    • Symbol: Describes data points that are preliminary or revised, displayed using the symbols p and r. These symbols accompany a data.

    Understanding metadata files:

    Cube Title: The title of the table. The output files are unilingual and thus will contain either the English or French title.

    Product Id (PID): The unique 8 digit product identifier for the table.

    CANSIM Id: The ID number which formally identified the table in CANSIM. (where applicable)

    URL: The URL for the representative (default) view of a given data table.

    Cube Notes: Each note is assigned a unique number. This field indicates which notes, if any, are applied to the entire table.

    Archive Status: Describes the status of a table as either 'Current' or 'Archived'. Archived tables are those that are no longer updated.

    Frequency: Frequency of the table. (i.e. annual)

    Start Reference Period: The starting reference period for the table.

    End Reference Period: The end reference period for the table.

    Total Number of Dimensions: The total number of dimensions contained in the table.

    Dimension Name: The name of a dimension in a table. There can be up to 10 dimensions in a table. (i.e. – Geography)

    Dimension ID: The reference code assigned to a dimension in a table. A unique reference Dimension ID code is assigned to each dimension in a table.

    Dimension Notes: Each note is assigned a unique number. This field indicates which notes are applied to a particular dimension.

    Dimension Definitions: Reserved for future development.

    Member Name: The textual description of the members in a dimension. (i.e. – Nova Scotia, Ontario (members of the Geography dimension))

    Member ID: The code assigned to a member of a dimension. There is a unique ID for each member within a dimension. These IDs are used to create the coordinate field in the data file. (see the 'coordinate' field in the data record layout).

    Classification (where applicable): Classification code for a member. Definitions, data sources and methods

    Parent Member ID: The code used to display the hierarchical relationship between members in a dimension. (i.e. – The member Ontario (5) is a child of the member Canada (1) in the dimension 'Geography')

    Terminated: Indicates whether a member has been terminated or not. Terminated members are those that are no longer updated.

    Member Notes: Each note is assigned a unique number. This field indicates which notes are applied to each member.

    Member definitions: Reserved for future development.

    Symbol Legend: The symbol legend provides descriptions of the various symbols which can appear in a table. This field describes a comprehensive list of all possible symbols, regardless of whether a selected symbol appears in a particular table.

    Survey Code: The unique code associated with a survey or program from which the data in the table is derived. Data displayed in one table may be derived ...

  11. U

    United States Index: Value Line: Arithmetic

    • ceicdata.com
    Updated Feb 15, 2025
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    CEICdata.com (2025). United States Index: Value Line: Arithmetic [Dataset]. https://www.ceicdata.com/en/united-states/valueline-index/index-value-line-arithmetic
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    Dataset updated
    Feb 15, 2025
    Dataset provided by
    CEICdata.com
    License

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

    Time period covered
    May 1, 2017 - Apr 1, 2018
    Area covered
    United States
    Variables measured
    Securities Exchange Index
    Description

    United States Index: Value Line: Arithmetic data was reported at 6,053.860 21May1985=100 in Nov 2018. This records an increase from the previous number of 5,958.610 21May1985=100 for Oct 2018. United States Index: Value Line: Arithmetic data is updated monthly, averaging 1,326.970 21May1985=100 from Jan 1989 (Median) to Nov 2018, with 359 observations. The data reached an all-time high of 6,604.520 21May1985=100 in Aug 2018 and a record low of 216.890 21May1985=100 in Oct 1990. United States Index: Value Line: Arithmetic data remains active status in CEIC and is reported by Value Line. The data is categorized under Global Database’s United States – Table US.Z019: Valueline: Index.

  12. M

    Real Personal Consumption - Services | Historical Chart | Data | 2007-2025

    • macrotrends.net
    csv
    Updated Oct 31, 2025
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    MACROTRENDS (2025). Real Personal Consumption - Services | Historical Chart | Data | 2007-2025 [Dataset]. https://www.macrotrends.net/datasets/3636/real-personal-consumption-services
    Explore at:
    csvAvailable download formats
    Dataset updated
    Oct 31, 2025
    Dataset authored and provided by
    MACROTRENDS
    License

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

    Time period covered
    2007 - 2025
    Area covered
    United States
    Description

    Real Personal Consumption - Services - Historical chart and current data through 2025.

  13. T

    Argentina - Export Value Index (2000 = 100)

    • tradingeconomics.com
    csv, excel, json, xml
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    TRADING ECONOMICS, Argentina - Export Value Index (2000 = 100) [Dataset]. https://tradingeconomics.com/argentina/export-value-index-2000--100-wb-data.html
    Explore at:
    csv, xml, json, excelAvailable download formats
    Dataset authored and provided by
    TRADING ECONOMICS
    License

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

    Time period covered
    Jan 1, 1976 - Dec 31, 2025
    Area covered
    Argentina
    Description

    Export value index (2000 = 100) in Argentina was reported at 118 in 2023, according to the World Bank collection of development indicators, compiled from officially recognized sources. Argentina - Export value index (2000 = 100) - actual values, historical data, forecasts and projections were sourced from the World Bank on November of 2025.

  14. d

    Data from: Data Release for “Comparability and reproducibility of biomarker...

    • catalog.data.gov
    • data.usgs.gov
    Updated Nov 19, 2025
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    U.S. Geological Survey (2025). Data Release for “Comparability and reproducibility of biomarker ratio values measured by GC-QQQ-MS” [Dataset]. https://catalog.data.gov/dataset/data-release-for-comparability-and-reproducibility-of-biomarker-ratio-values-measured-by-g
    Explore at:
    Dataset updated
    Nov 19, 2025
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Description

    This data release includes biomarker ratio values calculated from measurements made at the USGS for the reference oil NSO-1 that were reported in a journal article entitled Comparability and reproducibility of biomarker ratio values measured by GC-QQQ-MS.

  15. T

    Slovenia - Stocks Traded, Total Value

    • tradingeconomics.com
    csv, excel, json, xml
    Updated Jun 14, 2017
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    TRADING ECONOMICS (2017). Slovenia - Stocks Traded, Total Value [Dataset]. https://tradingeconomics.com/slovenia/stocks-traded-total-value-us-dollar-wb-data.html
    Explore at:
    xml, excel, json, csvAvailable download formats
    Dataset updated
    Jun 14, 2017
    Dataset authored and provided by
    TRADING ECONOMICS
    License

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

    Time period covered
    Jan 1, 1976 - Dec 31, 2025
    Area covered
    Slovenia
    Description

    Stocks traded, total value (current US$) in Slovenia was reported at 426010000 USD in 2024, according to the World Bank collection of development indicators, compiled from officially recognized sources. Slovenia - Stocks traded, total value - actual values, historical data, forecasts and projections were sourced from the World Bank on November of 2025.

  16. d

    Mobile Location Data | Europe | +175M Unique Devices | +50M Daily Users |...

    • datarade.ai
    .json, .csv, .xls
    Updated Mar 21, 2025
    + more versions
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    Quadrant (2025). Mobile Location Data | Europe | +175M Unique Devices | +50M Daily Users | +75B Events / Month [Dataset]. https://datarade.ai/data-products/mobile-location-data-europe-175m-unique-devices-50m-d-quadrant
    Explore at:
    .json, .csv, .xlsAvailable download formats
    Dataset updated
    Mar 21, 2025
    Dataset authored and provided by
    Quadrant
    Area covered
    France
    Description

    Quadrant provides Insightful, accurate, and reliable mobile location data.

    Our privacy-first mobile location data unveils hidden patterns and opportunities, provides actionable insights, and fuels data-driven decision-making at the world's biggest companies.

    These companies rely on our privacy-first Mobile Location and Points-of-Interest Data to unveil hidden patterns and opportunities, provide actionable insights, and fuel data-driven decision-making. They build better AI models, uncover business insights, and enable location-based services using our robust and reliable real-world data.

    We conduct stringent evaluations on data providers to ensure authenticity and quality. Our proprietary algorithms detect, and cleanse corrupted and duplicated data points – allowing you to leverage our datasets rapidly with minimal processing or cleaning. During the ingestion process, our proprietary Data Filtering Algorithms remove events based on a number of both qualitative factors, as well as latency and other integrity variables to provide more efficient data delivery. The deduplicating algorithm focuses on a combination of four important attributes: Device ID, Latitude, Longitude, and Timestamp. This algorithm scours our data and identifies rows that contain the same combination of these four attributes. Post-identification, it retains a single copy and eliminates duplicate values to ensure our customers only receive complete and unique datasets.

    We actively identify overlapping values at the provider level to determine the value each offers. Our data science team has developed a sophisticated overlap analysis model that helps us maintain a high-quality data feed by qualifying providers based on unique data values rather than volumes alone – measures that provide significant benefit to our end-use partners.

    Quadrant mobility data contains all standard attributes such as Device ID, Latitude, Longitude, Timestamp, Horizontal Accuracy, and IP Address, and non-standard attributes such as Geohash and H3. In addition, we have historical data available back through 2022.

    Through our in-house data science team, we offer sophisticated technical documentation, location data algorithms, and queries that help data buyers get a head start on their analyses. Our goal is to provide you with data that is “fit for purpose”.

  17. T

    Turkey Agriculture value added - data, chart | TheGlobalEconomy.com

    • theglobaleconomy.com
    csv, excel, xml
    Updated Nov 27, 2016
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    Globalen LLC (2016). Turkey Agriculture value added - data, chart | TheGlobalEconomy.com [Dataset]. www.theglobaleconomy.com/Turkey/value_added_agriculture_dollars/
    Explore at:
    excel, csv, xmlAvailable download formats
    Dataset updated
    Nov 27, 2016
    Dataset authored and provided by
    Globalen LLC
    License

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

    Time period covered
    Dec 31, 1960 - Dec 31, 2024
    Area covered
    Turkey
    Description

    Turkey: Agriculture value added, billion USD: The latest value from 2024 is 74 billion U.S. dollars, an increase from 68.88 billion U.S. dollars in 2023. In comparison, the world average is 27.33 billion U.S. dollars, based on data from 150 countries. Historically, the average for Turkey from 1960 to 2024 is 29.12 billion U.S. dollars. The minimum value, 4.13 billion U.S. dollars, was reached in 1961 while the maximum of 74 billion U.S. dollars was recorded in 2024.

  18. Audio Cartography

    • openneuro.org
    Updated Aug 8, 2020
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    Megen Brittell (2020). Audio Cartography [Dataset]. http://doi.org/10.18112/openneuro.ds001415.v1.0.0
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    Dataset updated
    Aug 8, 2020
    Dataset provided by
    OpenNeurohttps://openneuro.org/
    Authors
    Megen Brittell
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    The Audio Cartography project investigated the influence of temporal arrangement on the interpretation of information from a simple spatial data set. I designed and implemented three auditory map types (audio types), and evaluated differences in the responses to those audio types.

    The three audio types represented simplified raster data (eight rows x eight columns). First, a "sequential" representation read values one at a time from each cell of the raster, following an English reading order, and encoded the data value as loudness of a single fixed-duration and fixed-frequency note. Second, an augmented-sequential ("augmented") representation used the same reading order, but encoded the data value as volume, the row as frequency, and the column as the rate of the notes play (constant total cell duration). Third, a "concurrent" representation used the same encoding as the augmented type, but allowed the notes to overlap in time.

    Participants completed a training session in a computer-lab setting, where they were introduced to the audio types and practiced making a comparison between data values at two locations within the display based on what they heard. The training sessions, including associated paperwork, lasted up to one hour. In a second study session, participants listened to the auditory maps and made decisions about the data they represented while the fMRI scanner recorded digital brain images.

    The task consisted of listening to an auditory representation of geospatial data ("map"), and then making a decision about the relative values of data at two specified locations. After listening to the map ("listen"), a graphic depicted two locations within a square (white background). Each location was marked with a small square (size: 2x2 grid cells); one square had a black solid outline and transparent black fill, the other had a red dashed outline and transparent red fill. The decision ("response") was made under one of two conditions. Under the active listening condition ("active") the map was played a second time while participants made their decision; in the memory condition ("memory"), a decision was made in relative quiet (general scanner noises and intermittent acquisition noise persisted). During the initial map listening, participants were aware of neither the locations of the response options within the map extent, nor the response conditions under which they would make their decision. Participants could respond any time after the graphic was displayed; once a response was entered, the playback stopped (active response condition only) and the presentation continued to the next trial.

    Data was collected in accordance with a protocol approved by the Institutional Review Board at the University of Oregon.

    • Additional details about the specific maps used in this are available through University of Oregon's ScholarsBank (DOI 10.7264/3b49-tr85).

    • Details of the design process and evaluation are provided in the associated dissertation, which is available from ProQuest and University of Oregon's ScholarsBank.

    • Scripts that created the experimental stimuli and automated processing are available through University of Oregon's ScholarsBank (DOI 10.7264/3b49-tr85).

    Preparation of fMRI Data

    Conversion of the DICOM files produced by the scanner to NiFTi format was performed by MRIConvert (LCNI). Orientation to standard axes was performed and recorded in the NiFTi header (FMRIB, fslreorient2std). The excess slices in the anatomical images that represented tissue in the next were trimmed (FMRIB, robustfov). Participant identity was protected through automated defacing of the anatomical data (FreeSurfer, mri_deface), with additional post-processing to ensure that no brain voxels were erroneously removed from the image (FMRIB, BET; brain mask dilated with three iterations "fslmaths -dilM").

    Preparation of Metadata

    The dcm2niix tool (Rorden) was used to create draft JSON sidecar files with metadata extracted from the DICOM headers. The draft sidecar file were revised to augment the JSON elements with additional tags (e.g., "Orientation" and "TaskDescription") and to make a more human-friendly version of tag contents (e.g., "InstitutionAddress" and "DepartmentName"). The device serial number was constant throughout the data collection (i.e., all data collection was conducted on the same scanner), and the respective metadata values were replaced with an anonymous identifier: "Scanner1".

    Preparation of Behavioral Data

    The stimuli consisted of eighteen auditory maps. Spatial data were generated with the rgeos, sp, and spatstat libraries in R; auditory maps were rendered with the Pyo (Belanger) library for Python and prepared for presentation in Audacity. Stimuli were presented using PsychoPy (Peirce, 2007), which produced log files from which event details were extracted. The log files included timestamped entries for stimulus timing and trigger pulses from the scanner.

    • Log files are available in "sourcedata/behavioral".
    • Extracted event details accompany BOLD images in "sub-NN/func/*events.tsv".
    • Three column explanatory variable files are in "derivatives/ev/sub-NN".

    References

    Audacity® software is copyright © 1999-2018 Audacity Team. Web site: https://audacityteam.org/. The name Audacity® is a registered trademark of Dominic Mazzoni.

    FMRIB (Functional Magnetic Resonance Imaging of the Brain). FMRIB Software Library (FSL; fslreorient2std, robustfov, BET). Oxford, v5.0.9, Available: https://fsl.fmrib.ox.ac.uk/fsl/fslwiki/

    FreeSurfer (mri_deface). Harvard, v1.22, Available: https://surfer.nmr.mgh.harvard.edu/fswiki/AutomatedDefacingTools)

    LCNI (Lewis Center for Neuroimaging). MRIConvert (mcverter), v2.1.0 build 440, Available: https://lcni.uoregon.edu/downloads/mriconvert/mriconvert-and-mcverter

    Peirce, JW. PsychoPy–psychophysics software in Python. Journal of Neuroscience Methods, 162(1–2):8 – 13, 2007. Software Available: http://www.psychopy.org/

    Python software is copyright © 2001-2015 Python Software Foundation. Web site: https://www.python.org

    Pyo software is copyright © 2009-2015 Olivier Belanger. Web site: http://ajaxsoundstudio.com/software/pyo/.

    R Core Team (2016). R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria. Available: https://www.R-project.org/.

    rgeos software is copyright © 2016 Bivand and Rundel. Web site: https://CRAN.R-project.org/package=rgeos

    Rorden, C. dcm2niix, v1.0.20171215, Available: https://github.com/rordenlab/dcm2niix

    spatstat software is copyright © 2016 Baddeley, Rubak, and Turner. Web site: https://CRAN.R-project.org/package=spatstat

    sp software is copyright © 2016 Pebesma and Bivand. Web site: https://CRAN.R-project.org/package=sp

  19. s

    Fishing Reels Import Data | Green Values Llc

    • seair.co.in
    Updated Mar 13, 2024
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    Seair Exim Solutions (2024). Fishing Reels Import Data | Green Values Llc [Dataset]. https://www.seair.co.in/us-import/product-fishing-reels/i-green-values-llc.aspx
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    .text/.csv/.xml/.xls/.binAvailable download formats
    Dataset updated
    Mar 13, 2024
    Dataset authored and provided by
    Seair Exim Solutions
    Description

    Explore detailed Fishing Reels import data of Green Values Llc in the USA—product details, price, quantity, origin countries, and US ports.

  20. House Price Regression Dataset

    • kaggle.com
    zip
    Updated Sep 6, 2024
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    Prokshitha Polemoni (2024). House Price Regression Dataset [Dataset]. https://www.kaggle.com/datasets/prokshitha/home-value-insights
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    zip(27045 bytes)Available download formats
    Dataset updated
    Sep 6, 2024
    Authors
    Prokshitha Polemoni
    Description

    Home Value Insights: A Beginner's Regression Dataset

    This dataset is designed for beginners to practice regression problems, particularly in the context of predicting house prices. It contains 1000 rows, with each row representing a house and various attributes that influence its price. The dataset is well-suited for learning basic to intermediate-level regression modeling techniques.

    Features:

    1. Square_Footage: The size of the house in square feet. Larger homes typically have higher prices.
    2. Num_Bedrooms: The number of bedrooms in the house. More bedrooms generally increase the value of a home.
    3. Num_Bathrooms: The number of bathrooms in the house. Houses with more bathrooms are typically priced higher.
    4. Year_Built: The year the house was built. Older houses may be priced lower due to wear and tear.
    5. Lot_Size: The size of the lot the house is built on, measured in acres. Larger lots tend to add value to a property.
    6. Garage_Size: The number of cars that can fit in the garage. Houses with larger garages are usually more expensive.
    7. Neighborhood_Quality: A rating of the neighborhood’s quality on a scale of 1-10, where 10 indicates a high-quality neighborhood. Better neighborhoods usually command higher prices.
    8. House_Price (Target Variable): The price of the house, which is the dependent variable you aim to predict.

    Potential Uses:

    1. Beginner Regression Projects: This dataset can be used to practice building regression models such as Linear Regression, Decision Trees, or Random Forests. The target variable (house price) is continuous, making this an ideal problem for supervised learning techniques.

    2. Feature Engineering Practice: Learners can create new features by combining existing ones, such as the price per square foot or age of the house, providing an opportunity to experiment with feature transformations.

    3. Exploratory Data Analysis (EDA): You can explore how different features (e.g., square footage, number of bedrooms) correlate with the target variable, making it a great dataset for learning about data visualization and summary statistics.

    4. Model Evaluation: The dataset allows for various model evaluation techniques such as cross-validation, R-squared, and Mean Absolute Error (MAE). These metrics can be used to compare the effectiveness of different models.

    Versatility:

    • The dataset is highly versatile for a range of machine learning tasks. You can apply simple linear models to predict house prices based on one or two features, or use more complex models like Random Forest or Gradient Boosting Machines to understand interactions between variables.

    • It can also be used for dimensionality reduction techniques like PCA or to practice handling categorical variables (e.g., neighborhood quality) through encoding techniques like one-hot encoding.

    • This dataset is ideal for anyone wanting to gain practical experience in building regression models while working with real-world features.

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Office of Inspector General (2020). Mission Statement, Vision and Core Values [Dataset]. https://catalog.data.gov/dataset/mission-statement-vision-and-core-values

Mission Statement, Vision and Core Values

Explore at:
25 scholarly articles cite this dataset (View in Google Scholar)
Dataset updated
Nov 12, 2020
Dataset provided by
Office of Inspector General
Description

Mission statement, Vision and Core Values of the OIG. Includes links to the OIG FY 2015 Action Plan, OIG Status Report on NAPA Recommendations, 2012 and the OIG Organizational Assessment, National Academy of Public Administration (NAPA), 2009

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