The percentage of students of any grade level who identify their ethnicity as being Hispanic that attend any Baltimore City Public School out of all public school students within an area in a school year. Ethnicity is separate from a student's race. Source: Baltimore City Public School System Years Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2019-2020, 2020-2021, 2021-2022, 2022-2023
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Description General description Here, we present the ARCO (analysis-ready and cloud-optimized) Landsat-based Spectral Indices data cube. Available at 30m resolution from 2000 to 2022, it includes multiple spectral indices and multi-tier predictors (bimonthly, annual, and long-term) for continental Europe, including Ukraine, the UK, and Turkey (excluding Svalbar). This data cube has a broad coverage of indices, each providing unique insights into different aspects, including: surface reflectance, vegetation, water, soil and crop. All data layers are cloud-masked and then gap-filled, ready for analysis, modeling, and mapping applications. Technical details: Coordinate reference system: EPSG:3035 Bounding box (Xmin, Ymin, Xmax, Ymax): (900,000, 899,000, 7,401,000, 5,501,000) Spatial resolution: 30m Image size: 216,700P x 153,400L File format: Cloud Optimized Geotiff (COG) format. Considering the data volume, only bimonthly data layers for the years 2000 and 2022 are uploaded. However, all annual and long-term layers are available. For the full data cube, please visit this catalog. Due to Zenodo's storage limits, the data layers are stored in different buckets. Use the identifier-navigation list below to access the bucket of your interest and download the corresponding layers. Identifier navigation list This data cube includes 4 tiers of data, depending on the processing extend in the temporal scale: Tier-1: Bimonthly Landsat reflectance bands2000 (Jan Mar May Jul Sep Nov) 2022 (Jan Mar May Jul Sep Nov) Tier-2: Bimonthly spectral indices2000 (Jan Mar May Jul Sep Nov) 2022 (Jan Mar May Jul Sep Nov) Tier-3: Annual predictors Reflectance bands, NDVI and NDWI P252000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Reflectance bands, NDVI and NDWI P502000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Reflectance bands, NDVI and NDWI P752000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Aggregated spectral indices2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Cumulative spectral indices2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Tier-4: Long-term predictors 2000-2022trend P25 P50 P75 Name convention To ensure consistency and ease of use across the data layers, we follow the standard Ai4SoilHealth and Open-Earth-Monitor file-naming convention. The convention works with 10 fields that describe important properties of the data. In this way users can search files, prepare data analysis etc, without needing to open files. The fields are: generic variable name: ndti.min.slopes = the long term slope of minNDTI variable procedure combination: glad.landsat.ard2.seasconv.yearly.min.theilslopes - theil slopes calculated from yearly minimum values of NDTI Position in the probability distribution/variable type: m = mean | sd = standard deviation | n = number of observations | qa = quality assessment Spatial support: 30m Depth reference: s = surface Time reference begin time: 20000101 = 2000-01-01 Time reference end time: 20221231 = 2022-12-31 Bounding box: eu = europe (without Svalbar) EPSG code: epsg.3035 Version code: v20231218 = 2023-12-18 (creation date) Citation Please cite this dataset using the DOI: [10.5281/zenodo.10776891], which represents all versions of this dataset. This ensures your citation remains up to date with the latest version. Support If you discover a bug, artifact, or inconsistency, or if you have a question, please raise a GitHub issue! Long-term spectral indices trend On this landing page of the Time-series of Landsat-based Spectral Indices (EU, 30m) data cube, four long-term spectral indices trend data are stored, as Zenodo doesn't allow empty buckets. Therefore, this page serves not only as the landing page for the entire dataset but also as the bucket for the long-term trend of spectral indices.
The percentage of commuters that walk to work out of all commuters aged 16 and above. Source: American Community Survey Years Available: 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023
The percentage of Black/African American students of any grade that attend any Baltimore City Public School out of all public school students within an area in a school year. Source: Baltimore City Public School System Years Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2019-2020, 2020-2021, 2021-2022, 2022-2023
Description This data is part of the Soil Health data cube (EU, 30m) dataset. Check the related identifiers section below to access other parts of the dataset. General Description This dataset covers pan-European areas, including Ukraine, the UK, and Turkey. This data cube could be used for applications such as soil property mapping and comprehensive soil health assessment across Europe. This data cube includes: Long-term trend (2000-2022): The long term trend data includes 4 pan-European trend maps: NDVI P50 trend, NDWI P50 trend, BSF trend, and minNDTI trend. They are calculated from the corresponding annual indices from 2000 to 2022. Annual Landsat P25: Derived from bimonthly Landsat surface reflectance bands, this data provides an annually aggregated P25 from 2000 to 2022. The bands include red, green, blue, nir, swir1, swir2, thermal bands, and 2 indices NDVI and NDWI. Annual Landsat P50: Similar to annual Landsat bands P25, but is aggregated as P50 instead. This data includes annual P50 aggregation of red, green, blue, nir, swir1, swir2, thermal, NDVI, and NDWI. Annual Landsat P75: Similar to annual Landsat bands P25, but is aggregated as P75 instead. This data includes annual P75 aggregation of red, green, blue, nir, swir1, swir2, thermal, NDVI, and NDWI. Annual aggregated indices: This dataset includes minimum NDTI, BSF, NOS and CDR. Each of them are annually aggregated from bimonthly NDVI time series within the corresponding year, through time analysis and statistics calculation. Bimonthly Landsat bands: Derived from Landsat ARD v2 to analysis-ready, cloud-optimized bimonthly Landsat surface reflectance bands, spanning from 2000 to 2022. The bands include red, green, blue, nir, swir1, swir2, and thermal bands. Landsat ARD v2 provides spatial data of these bands, as well as the quality band at 16 days (23 layers of each year) interval from 2000 to 2023. Only pixels with clear sky according to quality band are kept. The gaps are firstly reduced by aggregating the 16 days interval data to bimonthly. The left gaps are then be gapfilled with SWAG method. Bimonthly spectral indices: This dataset is derived from bimonthly Landsat surface reflectance bands through band operation, including NDVI, BSI, NDTI, NDSI, SAVI, NDWI, and FAPAR. Related identifiers Long-term trend: 2000-2022 Annual Landsat P25: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Annual Landsat P50: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Annual Landsat P75: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Annual aggregated indices: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Bimonthly Landsat bands: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Bimonthly spectral indices: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Data Details Time period: 2000–2022 Type of data: soil health data cube, with selected indices relevant to soil health monitoring. How the data was collected or derived: Derived from Landsat ARD v2. Cloudy pixels were removed and only clear sky values were considered in further processing. The time-series gap-filling and time-series aggregation were computed using the Scikit-map Python package. Statistical methods used: band operation, time series analysis and statistics calculation Limitations or exclusions in the data: The dataset does not include data for Svalbard. Coordinate reference system: EPSG:3035 Bounding box (Xmin, Ymin, Xmax, Ymax): (900,000, 899,000, 7,401,000, 5,501,000) Spatial resolution: 30m Image size: 216,700P x 153,400L File format: Cloud Optimized Geotiff (COG) format. Support If you discover a bug, artifact, or inconsistency, or if you have a question please raise a GitHub issue: GitLab Issues (tbc) Name convention To ensure consistency and ease of use across and within the projects, we follow the standard Ai4SoilHealth and Open-Earth-Monitor file-naming convention. The convention works with 10 fields that describe important properties of the data. In this way users can search files, prepare data analysis etc, without needing to open files. The fields are: generic variable name: ndti.min.slopes = the long term slope of minNDTI variable procedure combination: glad.landsat.ard2.seasconv.yearly.min.theilslopes - theil slopes calculated from yearly minimum values of NDTI Position in the probability distribution/variable type: m = mean | sd = standard deviation | n = number of observations | qa = quality assessment Spatial support: 30m Depth reference: s = surface Time reference begin time: 20000101 = 2000-01-01 Time reference end time: 20221231 = 2022-12-31 Bounding box: go = global (without Antarctica) EPSG code: epsg.3035 Version code: v20231218 = 2023-12-18 (creation date)
The percentage of 9th-12th grade students that were recognized as being absent from public school 20 or more days out of all students. Source: Baltimore City Public School SystemYears Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2020-2021, 2021-2022, 2022-2023
The percentage of commuters that use public transit out of all commuters aged 16 and above. Source: American Community Survey Years Available: 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023
The percentage of persons aged 16 to 19 who are in school and/or are employed out of all persons in their age cohort. Please note: due to the nature of this indicator, do not compare changes over time. This indicator can only be used as a point in time "snapshot". For more information, please visit the U.S. Census page on Comparing ACS Datahttps://www.census.gov/programs-surveys/acs/guidance/comparing-acs-data.html. Source: American Community Survey Years Available: 2006-2010, 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023Please note: We do not recommend comparing overlapping years of data due to the nature of this dataset. For more information, please visit: https://www.census.gov/programs-surveys/acs/guidance/comparing-acs-data.html
The percentage of households, out of all households in an area, earning less than $25,000. Source: American Community Survey Years Available: 2006-2010, 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023
CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
Description This data is part of the Soil Health data cube (EU, 30m) dataset. Check the related identifiers section below to access other parts of the dataset. General Description This dataset covers pan-European areas, including Ukraine, the UK, and Turkey. This data cube could be used for applications such as soil property mapping and comprehensive soil health assessment across Europe. This data cube includes: Long-term trend (2000-2022): The long term trend data includes 4 pan-European trend maps: NDVI P50 trend, NDWI P50 trend, BSF trend, and minNDTI trend. They are calculated from the corresponding annual indices from 2000 to 2022. Annual Landsat P25: Derived from bimonthly Landsat surface reflectance bands, this data provides an annually aggregated P25 from 2000 to 2022. The bands include red, green, blue, nir, swir1, swir2, thermal bands, and 2 indices NDVI and NDWI. Annual Landsat P50: Similar to annual Landsat bands P25, but is aggregated as P50 instead. This data includes annual P50 aggregation of red, green, blue, nir, swir1, swir2, thermal, NDVI, and NDWI. Annual Landsat P75: Similar to annual Landsat bands P25, but is aggregated as P75 instead. This data includes annual P75 aggregation of red, green, blue, nir, swir1, swir2, thermal, NDVI, and NDWI. Annual aggregated indices: This dataset includes minimum NDTI, BSF, NOS and CDR. Each of them are annually aggregated from bimonthly NDVI time series within the corresponding year, through time analysis and statistics calculation. Bimonthly Landsat bands: Derived from Landsat ARD v2 to analysis-ready, cloud-optimized bimonthly Landsat surface reflectance bands, spanning from 2000 to 2022. The bands include red, green, blue, nir, swir1, swir2, and thermal bands. Landsat ARD v2 provides spatial data of these bands, as well as the quality band at 16 days (23 layers of each year) interval from 2000 to 2023. Only pixels with clear sky according to quality band are kept. The gaps are firstly reduced by aggregating the 16 days interval data to bimonthly. The left gaps are then be gapfilled with SWAG method. Bimonthly spectral indices: This dataset is derived from bimonthly Landsat surface reflectance bands through band operation, including NDVI, BSI, NDTI, NDSI, SAVI, NDWI, and FAPAR. Related identifiers Long-term trend: 2000-2022 Annual Landsat P25: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Annual Landsat P50: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Annual Landsat P75: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Annual aggregated indices: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Bimonthly Landsat bands: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Bimonthly spectral indices: 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Data Details Time period: 2000–2022 Type of data: soil health data cube, with selected indices relevant to soil health monitoring. How the data was collected or derived: Derived from Landsat ARD v2. Cloudy pixels were removed and only clear sky values were considered in further processing. The time-series gap-filling and time-series aggregation were computed using the Scikit-map Python package. Statistical methods used: band operation, time series analysis and statistics calculation Limitations or exclusions in the data: The dataset does not include data for Svalbard. Coordinate reference system: EPSG:3035 Bounding box (Xmin, Ymin, Xmax, Ymax): (900,000, 899,000, 7,401,000, 5,501,000) Spatial resolution: 30m Image size: 216,700P x 153,400L File format: Cloud Optimized Geotiff (COG) format. Support If you discover a bug, artifact, or inconsistency, or if you have a question please raise a GitHub issue: GitLab Issues (tbc) Name convention To ensure consistency and ease of use across and within the projects, we follow the standard Ai4SoilHealth and Open-Earth-Monitor file-naming convention. The convention works with 10 fields that describe important properties of the data. In this way users can search files, prepare data analysis etc, without needing to open files. The fields are: generic variable name: ndti.min.slopes = the long term slope of minNDTI variable procedure combination: glad.landsat.ard2.seasconv.yearly.min.theilslopes - theil slopes calculated from yearly minimum values of NDTI Position in the probability distribution/variable type: m = mean | sd = standard deviation | n = number of observations | qa = quality assessment Spatial support: 30m Depth reference: s = surface Time reference begin time: 20000101 = 2000-01-01 Time reference end time: 20221231 = 2022-12-31 Bounding box: go = global (without Antar
The percentage of 6th-8th grade students that were recognized as being absent from public school 20 or more days out of all students. Source: Baltimore City Public School SystemYears Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2020-2021, 2021-2022, 2022-2023
The percentage of households, out of all households in an area, earning between $25,000 and $39,999.Source: American Community SurveyYears Available: 2006-2010, 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023Please note: We do not recommend comparing overlapping years of data due to the nature of this dataset. For more information, please visit: https://www.census.gov/programs-surveys/acs/guidance/comparing-acs-data.html
The percentage of commuters that carpool out of all commuters aged 16 and above. Source: American Community Survey Years Available: 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023
The percentage of 1st-5th grade students that were recognized as being absent from public school 20 or more days out of all students. Source: Baltimore City Public School System Years Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2020-2021, 2021-2022, 2022-2023
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This data is part of the Soil Health data cube (EU, 30m) dataset. Check the related identifiers section below to access other parts of the dataset.
This dataset covers pan-European areas, including Ukraine, the UK, and Turkey. This data cube could be used for applications such as soil property mapping and comprehensive soil health assessment across Europe. This data cube includes:
If you discover a bug, artifact, or inconsistency, or if you have a question please raise a GitHub issue: GitLab Issues (tbc)
To ensure consistency and ease of use across and within the projects, we follow the standard Ai4SoilHealth and Open-Earth-Monitor file-naming convention. The convention works with 10 fields
The percentage of 12th graders in a school year that successfully completed high school out of all 12th graders within an area. Completers are identified as completing their program of study at the high school level and satisfying the graduation requirements for a Maryland High School Diploma or the requirements for a Maryland Certificate of Program Completion. Source: Baltimore City Public School System Years Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2019-2020, 2020-2021, 2021-2022, 2022-2023
The percentage of households, out of all households in an area, earning more than $75,000. Source: American Community Survey Years Available: 2006-2010, 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023
The number of children who have registered for and attend 9th through 12th grade at a Baltimore City Public School at any point in the school year. Source: Baltimore City Public School System Years Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2019-2020, 2020-2021, 2021-2022, 2022-2023
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Statistical open data on LAU regions of Slovakia, Czech Republic, Poland, Hungary (and other countries in the future). LAU1 regions are called counties, okres, okresy, powiat, járás, járási, NUTS4, LAU, Local Administrative Units, ... and there are 733 of them in this V4 dataset. Overall, we cover 733 regions which are described by 137.828 observations (panel data rows) and more than 1.760.229 data points.
This LAU dataset contains panel data on population, on age structure of inhabitants, on number and on structure of registered unemployed. Dataset prepared by Michal Páleník. Output files are in json, shapefiles, xls, ods, json, topojson or CSV formats. Downloadable at zenodo.org.
This dataset consists of:
data on unemployment (by gender, education and duration of unemployment),
data on vacancies,
open data on population in Visegrad counties (by age and gender),
data on unemployment share.
Combined latest dataset
dataset of the latest available data on unemployment, vacancies and population
dataset includes map contours (shp, topojson or geojson format), relation id in OpenStreetMap, wikidata entry code,
it also includes NUTS4 code, LAU1 code used by national statistical office and abbreviation of the region (usually license plate),
source of map contours is OpenStreetMap, licensed under ODbL
no time series, only most recent data on population and unemployment combined in one output file
columns: period, lau, name, registered_unemployed, registered_unemployed_females, disponible_unemployed, low_educated, long_term, unemployment_inflow, unemployment_outflow, below_25, over_55, vacancies, pop_period, TOTAL, Y15-64, Y15-64-females, local_lau, osm_id, abbr, wikidata, population_density, area_square_km, way
Slovakia – SK: 79 LAU1 regions, data for 2024-10-01, 1.659 data,
Czech Republic – CZ: 77 LAU1 regions, data for 2024-10-01, 1.617 data,
Poland – PL: 380 LAU1 regions, data for 2024-09-01, 6.840 data,
Hungary – HU: 197 LAU1 regions, data for 2024-10-01, 2.955 data,
13.071 data in total.
column/number of observations description SK CZ PL HU
period period (month and year) the data is for 79 77 380 197
lau LAU code of the region 79 77 380 197
name name of the region in local language 79 77 380 197
registered_unemployed number of unemployed registered at labour offices 79 77 380 197
registered_unemployed_females number of unemployed women 79 77 380 197
disponible_unemployed unemployed able to accept job offer 79 77 0 0
low_educated unmployed without secondary school (ISCED 0 and 1) 79 77 380 197
long_term unemployed for longer than 1 year 79 77 380 0
unemployment_inflow inflow into unemployment 79 77 0 0
unemployment_outflow outflow from unemployment 79 77 0 0
below_25 number of unemployed below 25 years of age 79 77 380 197
over_55 unemployed older than 55 years 79 77 380 197
vacancies number of vacancies reported by labour offices 79 77 380 0
pop_period date of population data 79 77 380 197
TOTAL total population 79 77 380 197
Y15-64 number of people between 15 and 64 years of age, population in economically active age 79 77 380 197
Y15-64-females number of women between 15 and 64 years of age 79 77 380 197
local_lau region's code used by local labour offices 79 77 380 197
osm_id relation id in OpenStreetMap database 79 77 380 197
abbr abbreviation used for this region 79 77 380 0
wikidata wikidata identification code 79 77 380 197
population_density population density 79 77 380 197
area_square_km area of the region in square kilometres 79 77 380 197
way geometry, polygon of given region 79 77 380 197
Unemployment dataset
time series of unemployment data in Visegrad regions
by gender, duration of unemployment, education level, age groups, vacancies,
columns: period, lau, name, registered_unemployed, registered_unemployed_females, disponible_unemployed, low_educated, long_term, unemployment_inflow, unemployment_outflow, below_25, over_55, vacancies
Slovakia – SK: 79 LAU1 regions, data for 334 periods (1997-01-01 ... 2024-10-01), 202.082 data,
Czech Republic – CZ: 77 LAU1 regions, data for 244 periods (2004-07-01 ... 2024-10-01), 147.528 data,
Poland – PL: 380 LAU1 regions, data for 189 periods (2005-03-01 ... 2024-09-01), 314.100 data,
Hungary – HU: 197 LAU1 regions, data for 106 periods (2016-01-01 ... 2024-10-01), 104.408 data,
768.118 data in total.
column/number of observations description SK CZ PL HU
period period (month and year) the data is for 26 386 18 788 71 772 20 882
lau LAU code of the region 26 386 18 788 71 772 20 882
name name of the region in local language 26 386 18 788 71 772 20 882
registered_unemployed number of unemployed registered at labour offices 26 386 18 788 71 772 20 882
registered_unemployed_females number of unemployed women 26 386 18 788 62 676 20 882
disponible_unemployed unemployed able to accept job offer 25 438 18 788 0 0
low_educated unmployed without secondary school (ISCED 0 and 1) 11 771 9855 41 388 20 881
long_term unemployed for longer than 1 year 24 253 9855 41 388 0
unemployment_inflow inflow into unemployment 26 149 16 478 0 0
unemployment_outflow outflow from unemployment 26 149 16 478 0 0
below_25 number of unemployed below 25 years of age 11 929 9855 17 100 20 881
over_55 unemployed older than 55 years 11 929 9855 17 100 20 882
vacancies number of vacancies reported by labour offices 11 692 18 788 62 676 0
Population dataset
time series on population by gender and 5 year age groups in V4 counties
columns: period, lau, name, gender, TOTAL, Y00-04, Y05-09, Y10-14, Y15-19, Y20-24, Y25-29, Y30-34, Y35-39, Y40-44, Y45-49, Y50-54, Y55-59, Y60-64, Y65-69, Y70-74, Y75-79, Y80-84, Y85-89, Y90-94, Y_GE95, Y15-64
Slovakia – SK: 79 LAU1 regions, data for 28 periods (1996, 1997, 1998, 1999, 2000, 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 152.628 data,
Czech Republic – CZ: 78 LAU1 regions, data for 24 periods (2000, 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 125.862 data,
Poland – PL: 382 LAU1 regions, data for 29 periods (1995, 1996, 1997, 1998, 1999, 2000, 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 626.941 data,
Hungary – HU: 197 LAU1 regions, data for 11 periods (2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 86.680 data,
992.111 data in total.
column/number of observations description SK CZ PL HU
period period (month and year) the data is for 6636 5574 32 883 4334
lau LAU code of the region 6636 5574 32 883 4334
name name of the region in local language 6636 5574 32 883 4334
gender gender (male or female) 6636 5574 32 883 4334
TOTAL total population 6636 5574 32 503 4334
Y00-04 inhabitants between 00 to 04 years inclusive 6636 5574 32 503 4334
Y05-09 number of inhabitants between 05 to 09 years of age 6636 5574 32 503 4334
Y10-14 number of people between 10 to 14 years inclusive 6636 5574 32 503 4334
Y15-19 number of inhabitants between 15 to 19 years of age 6636 5574 32 503 4334
Y20-24 number of people between 20 to 24 years inclusive 6636 5574 32 503 4334
Y25-29 number of inhabitants between 25 to 29 years of age 6636 5574 32 503 4334
Y30-34 inhabitants between 30 to 34 years inclusive 6636 5574 32 503 4334
Y35-39 number of inhabitants between 35 to 39 years of age 6636 5574 32 503 4334
Y40-44 inhabitants between 40 to 44 years inclusive 6636 5574 32 503 4334
Y45-49 number of inhabitants younger than 49 and older than 45 years 6636 5574 32 503 4334
Y50-54 inhabitants between 50 to 54 years inclusive 6636 5574 32 503 4334
Y55-59 number of inhabitants between 55 to 59 years of age 6636 5574 32 503 4334
Y60-64 inhabitants between 60 to 64 years inclusive 6636 5574 32 503 4334
Y65-69 number of inhabitants younger than 69 and older than 65 years 6636 5574 32 503 4334
Y70-74 inhabitants between 70 to 74 years inclusive 6636 5574 24 670 4334
Y75-79 number of inhabitants between 75 to 79 years of age 6636 5574 24 670 4334
Y80-84 number of people between 80 to 84 years inclusive 6636 5574 24 670 4334
Y85-89 number of inhabitants younger than 89 and older than 85 years 6636 5574 0 0
Y90-94 inhabitants between 90 to 94 years inclusive 6636 5574 0 0
Y_GE95 number of people 95 years or older 6636 3234 0 0
Y15-64 number of people between 15 and 64 years of age, population in economically active age 6636 5574 32 503 4334
Notes
more examples at www.iz.sk
NUTS4 / LAU1 / LAU codes for HU and PL are created by me, so they can (and will) change in the future; CZ and SK NUTS4 codes are used by local statistical offices, so they should be more stable
NUTS4 codes are consistent with NUTS3 codes used by Eurostat
local_lau variable is an identifier used by local statistical office
abbr is abbreviation of region's name, used for map purposes (usually cars' license plate code; except for Hungary)
wikidata is code used by wikidata
osm_id is region's relation number in the OpenStreetMap database
Example outputs
you can download data in CSV, xml, ods, xlsx, shp, SQL, postgis, topojson, geojson or json format at 📥 doi:10.5281/zenodo.6165135
Counties of Slovakia – unemployment rate in Slovak LAU1 regions
Regions of the Slovak Republic
Unemployment of Czechia and Slovakia – unemployment share in LAU1 regions of Slovakia and Czechia
interactive map on unemployment in Slovakia
Slovakia – SK, Czech Republic – CZ, Hungary – HU, Poland – PL, NUTS3 regions of Slovakia
download at 📥 doi:10.5281/zenodo.6165135
suggested citation: Páleník, M. (2024). LAU1 dataset [Data set]. IZ Bratislava. https://doi.org/10.5281/zenodo.6165135
The percentage of households that pay more than 30% of their total household income on rent and related expenses out of all households in an area. Source: American Community Survey Years Available: 2006-2010, 2007-2011, 2008-2012, 2009-2013, 2010-2014, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2016-2020, 2017-2021, 2018-2022, 2019-2023
The percentage of students of any grade level who identify their ethnicity as being Hispanic that attend any Baltimore City Public School out of all public school students within an area in a school year. Ethnicity is separate from a student's race. Source: Baltimore City Public School System Years Available: 2009-2010, 2010-2011, 2011-2012, 2012-2013, 2013-2014, 2014-2015, 2015-2016, 2016-2017, 2018-2019, 2019-2020, 2020-2021, 2021-2022, 2022-2023