100+ datasets found
  1. Number of primes in every 100 numbers up to 10000

    • kaggle.com
    zip
    Updated May 15, 2021
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    In06 Days (2021). Number of primes in every 100 numbers up to 10000 [Dataset]. https://www.kaggle.com/datasets/mathnights/number-of-primes-in-every-100-numbers-up-to-10000
    Explore at:
    zip(668 bytes)Available download formats
    Dataset updated
    May 15, 2021
    Authors
    In06 Days
    Description

    Context

    Here is a list that shows the prime number list up to 10000. Source: easycalculation

    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.

    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?

  2. n

    Data from: Correcting for missing and irregular data in home-range...

    • data.niaid.nih.gov
    • search.dataone.org
    • +1more
    zip
    Updated Jan 9, 2018
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    Christen H. Fleming; Daniel Sheldon; William F. Fagan; Peter Leimgruber; Thomas Mueller; Dejid Nandintsetseg; Michael J. Noonan; Kirk A. Olson; Edy Setyawan; Abraham Sianipar; Justin M. Calabrese (2018). Correcting for missing and irregular data in home-range estimation [Dataset]. http://doi.org/10.5061/dryad.n42h0
    Explore at:
    zipAvailable download formats
    Dataset updated
    Jan 9, 2018
    Dataset provided by
    Smithsonian Conservation Biology Institute
    Conservation International Indonesia; Marine Program; Jalan Pejaten Barat 16A, Kemang Jakarta DKI Jakarta 12550 Indonesia
    University of Massachusetts Amherst
    University of Maryland, College Park
    Goethe University Frankfurt
    University of Tasmania
    Authors
    Christen H. Fleming; Daniel Sheldon; William F. Fagan; Peter Leimgruber; Thomas Mueller; Dejid Nandintsetseg; Michael J. Noonan; Kirk A. Olson; Edy Setyawan; Abraham Sianipar; Justin M. Calabrese
    License

    https://spdx.org/licenses/CC0-1.0.htmlhttps://spdx.org/licenses/CC0-1.0.html

    Area covered
    Mongolia
    Description

    Home-range estimation is an important application of animal tracking data that is frequently complicated by autocorrelation, sampling irregularity, and small effective sample sizes. We introduce a novel, optimal weighting method that accounts for temporal sampling bias in autocorrelated tracking data. This method corrects for irregular and missing data, such that oversampled times are downweighted and undersampled times are upweighted to minimize error in the home-range estimate. We also introduce computationally efficient algorithms that make this method feasible with large datasets. Generally speaking, there are three situations where weight optimization improves the accuracy of home-range estimates: with marine data, where the sampling schedule is highly irregular, with duty cycled data, where the sampling schedule changes during the observation period, and when a small number of home-range crossings are observed, making the beginning and end times more independent and informative than the intermediate times. Using both simulated data and empirical examples including reef manta ray, Mongolian gazelle, and African buffalo, optimal weighting is shown to reduce the error and increase the spatial resolution of home-range estimates. With a conveniently packaged and computationally efficient software implementation, this method broadens the array of datasets with which accurate space-use assessments can be made.

  3. o

    Range View Road Cross Street Data in Valier, MT

    • ownerly.com
    Updated Dec 11, 2021
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    Ownerly (2021). Range View Road Cross Street Data in Valier, MT [Dataset]. https://www.ownerly.com/mt/valier/range-view-rd-home-details
    Explore at:
    Dataset updated
    Dec 11, 2021
    Dataset authored and provided by
    Ownerly
    Area covered
    Range View Road, Montana, Valier
    Description

    This dataset provides information about the number of properties, residents, and average property values for Range View Road cross streets in Valier, MT.

  4. o

    Range View Circle Cross Street Data in Silverthorne, CO

    • ownerly.com
    Updated Jan 12, 2022
    + more versions
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    Ownerly (2022). Range View Circle Cross Street Data in Silverthorne, CO [Dataset]. https://www.ownerly.com/co/silverthorne/range-view-cir-home-details
    Explore at:
    Dataset updated
    Jan 12, 2022
    Dataset authored and provided by
    Ownerly
    Area covered
    Silverthorne, Colorado, Range View Circle
    Description

    This dataset provides information about the number of properties, residents, and average property values for Range View Circle cross streets in Silverthorne, CO.

  5. d

    US B2B Phone Number Data | 148MM Phone Numbers, Verified Data

    • datarade.ai
    Updated Feb 20, 2024
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    Salutary Data (2024). US B2B Phone Number Data | 148MM Phone Numbers, Verified Data [Dataset]. https://datarade.ai/data-products/salutary-data-b2b-data-phone-number-data-mobile-phone-72-salutary-data
    Explore at:
    .json, .csv, .xls, .txtAvailable download formats
    Dataset updated
    Feb 20, 2024
    Dataset authored and provided by
    Salutary Data
    Area covered
    United States of America
    Description

    Discover the ultimate resource for your B2B needs with our meticulously curated dataset, featuring 148MM+ highly relevant US B2B Contact Data records and associated company information.

    Very high fill rates for Phone Number, including for Mobile Phone!

    This encompasses a diverse range of fields, including Contact Name (First & Last), Work Address, Work Email, Personal Email, Mobile Phone, Direct-Dial Work Phone, Job Title, Job Function, Job Level, LinkedIn URL, Company Name, Domain, Email Domain, HQ Address, Employee Size, Revenue Size, Industry, NAICS and SIC Codes + Descriptions, ensuring you have the most detailed insights for your business endeavors.

    Key Features:

    Extensive Data Coverage: Access a vast pool of B2B Contact Data records, providing valuable information on where the contacts work now, empowering your sales, marketing, recruiting, and research efforts.

    Versatile Applications: Leverage this robust dataset for Sales Prospecting, Lead Generation, Marketing Campaigns, Recruiting initiatives, Identity Resolution, Analytics, Research, and more.

    Phone Number Data Inclusion: Benefit from our comprehensive Phone Number Data, ensuring you have direct and effective communication channels. Explore our Phone Number Datasets and Phone Number Databases for an even more enriched experience.

    Flexible Pricing Models: Tailor your investment to match your unique business needs, data use-cases, and specific requirements. Choose from targeted lists, CSV enrichment, or licensing our entire database or subsets to seamlessly integrate this data into your products, platform, or service offerings.

    Strategic Utilization of B2B Intelligence:

    Sales Prospecting: Identify and engage with the right decision-makers to drive your sales initiatives.

    Lead Generation: Generate high-quality leads with precise targeting based on specific criteria.

    Marketing Campaigns: Amplify your marketing strategies by reaching the right audience with targeted campaigns.

    Recruiting: Streamline your recruitment efforts by connecting with qualified candidates.

    Identity Resolution: Enhance your data quality and accuracy by resolving identities with our reliable dataset.

    Analytics and Research: Fuel your analytics and research endeavors with comprehensive and up-to-date B2B insights.

    Access Your Tailored B2B Data Solution:

    Reach out to us today to explore flexible pricing options and discover how Salutary Data Company Data, B2B Contact Data, B2B Marketing Data, B2B Email Data, Phone Number Data, Phone Number Datasets, and Phone Number Databases can transform your business strategies. Elevate your decision-making with top-notch B2B intelligence.

  6. Credit Card Eligibility Data: Determining Factors

    • kaggle.com
    zip
    Updated May 18, 2024
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    Rohit Sharma (2024). Credit Card Eligibility Data: Determining Factors [Dataset]. https://www.kaggle.com/datasets/rohit265/credit-card-eligibility-data-determining-factors
    Explore at:
    zip(303227 bytes)Available download formats
    Dataset updated
    May 18, 2024
    Authors
    Rohit Sharma
    License

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

    Description

    Description of the Credit Card Eligibility Data: Determining Factors

    The Credit Card Eligibility Dataset: Determining Factors is a comprehensive collection of variables aimed at understanding the factors that influence an individual's eligibility for a credit card. This dataset encompasses a wide range of demographic, financial, and personal attributes that are commonly considered by financial institutions when assessing an individual's suitability for credit.

    Each row in the dataset represents a unique individual, identified by a unique ID, with associated attributes ranging from basic demographic information such as gender and age, to financial indicators like total income and employment status. Additionally, the dataset includes variables related to familial status, housing, education, and occupation, providing a holistic view of the individual's background and circumstances.

    VariableDescription
    IDAn identifier for each individual (customer).
    GenderThe gender of the individual.
    Own_carA binary feature indicating whether the individual owns a car.
    Own_propertyA binary feature indicating whether the individual owns a property.
    Work_phoneA binary feature indicating whether the individual has a work phone.
    PhoneA binary feature indicating whether the individual has a phone.
    EmailA binary feature indicating whether the individual has provided an email address.
    UnemployedA binary feature indicating whether the individual is unemployed.
    Num_childrenThe number of children the individual has.
    Num_familyThe total number of family members.
    Account_lengthThe length of the individual's account with a bank or financial institution.
    Total_incomeThe total income of the individual.
    AgeThe age of the individual.
    Years_employedThe number of years the individual has been employed.
    Income_typeThe type of income (e.g., employed, self-employed, etc.).
    Education_typeThe education level of the individual.
    Family_statusThe family status of the individual.
    Housing_typeThe type of housing the individual lives in.
    Occupation_typeThe type of occupation the individual is engaged in.
    TargetThe target variable for the classification task, indicating whether the individual is eligible for a credit card or not (e.g., Yes/No, 1/0).

    Researchers, analysts, and financial institutions can leverage this dataset to gain insights into the key factors influencing credit card eligibility and to develop predictive models that assist in automating the credit assessment process. By understanding the relationship between various attributes and credit card eligibility, stakeholders can make more informed decisions, improve risk assessment strategies, and enhance customer targeting and segmentation efforts.

    This dataset is valuable for a wide range of applications within the financial industry, including credit risk management, customer relationship management, and marketing analytics. Furthermore, it provides a valuable resource for academic research and educational purposes, enabling students and researchers to explore the intricate dynamics of credit card eligibility determination.

  7. d

    Data from: Accounting for nonlinear responses to traits improves range shift...

    • datadryad.org
    • search.dataone.org
    • +1more
    zip
    Updated Apr 3, 2024
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    Anthony Cannistra; Lauren Buckley (2024). Accounting for nonlinear responses to traits improves range shift predictions [Dataset]. http://doi.org/10.5061/dryad.wstqjq2v8
    Explore at:
    zipAvailable download formats
    Dataset updated
    Apr 3, 2024
    Dataset provided by
    Dryad
    Authors
    Anthony Cannistra; Lauren Buckley
    Time period covered
    Mar 21, 2024
    Description

    We assess model performance using six datasets encompassing a broad taxonomic range. The number of species per dataset ranges from 28 to 239 (mean=118, median=94), and range shifts were observed over periods ranging from 20 to 100+ years. Each dataset was derived from previous evaluations of traits as range shift predictors and consists of a list of focal species, associated species-level traits, and a range shift metric.

  8. Prime Number Source Code with Dataset

    • figshare.com
    zip
    Updated Oct 12, 2024
    + more versions
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    Ayman Mostafa (2024). Prime Number Source Code with Dataset [Dataset]. http://doi.org/10.6084/m9.figshare.27215508.v1
    Explore at:
    zipAvailable download formats
    Dataset updated
    Oct 12, 2024
    Dataset provided by
    Figsharehttp://figshare.com/
    figshare
    Authors
    Ayman Mostafa
    License

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

    Description

    This paper addresses the computational methods and challenges associated with prime number generation, a critical component in encryption algorithms for ensuring data security. The generation of prime numbers efficiently is a critical challenge in various domains, including cryptography, number theory, and computer science. The quest to find more effective algorithms for prime number generation is driven by the increasing demand for secure communication and data storage and the need for efficient algorithms to solve complex mathematical problems. Our goal is to address this challenge by presenting two novel algorithms for generating prime numbers: one that generates primes up to a given limit and another that generates primes within a specified range. These innovative algorithms are founded on the formulas of odd-composed numbers, allowing them to achieve remarkable performance improvements compared to existing prime number generation algorithms. Our comprehensive experimental results reveal that our proposed algorithms outperform well-established prime number generation algorithms such as Miller-Rabin, Sieve of Atkin, Sieve of Eratosthenes, and Sieve of Sundaram regarding mean execution time. More notably, our algorithms exhibit the unique ability to provide prime numbers from range to range with a commendable performance. This substantial enhancement in performance and adaptability can significantly impact the effectiveness of various applications that depend on prime numbers, from cryptographic systems to distributed computing. By providing an efficient and flexible method for generating prime numbers, our proposed algorithms can develop more secure and reliable communication systems, enable faster computations in number theory, and support advanced computer science and mathematics research.

  9. d

    Data from: Mean tidal range in salt marsh units of Edwin B. Forsythe...

    • catalog.data.gov
    • search.dataone.org
    • +2more
    Updated Nov 12, 2025
    + more versions
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    U.S. Geological Survey (2025). Mean tidal range in salt marsh units of Edwin B. Forsythe National Wildlife Refuge, New Jersey (polygon shapefile) [Dataset]. https://catalog.data.gov/dataset/mean-tidal-range-in-salt-marsh-units-of-edwin-b-forsythe-national-wildlife-refuge-new-jers
    Explore at:
    Dataset updated
    Nov 12, 2025
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    New Jersey
    Description

    Biomass production is positively correlated with mean tidal range in salt marshes along the Atlantic coast of the United States of America. Recent studies support the idea that enhanced stability of the marshes can be attributed to increased vegetative growth due to increased tidal range. This dataset displays the spatial variation mean tidal range (i.e. Mean Range of Tides, MN) in the Edwin B. Forsythe National Wildlife Refuge (EBFNWR), which spans over Great Bay, Little Egg Harbor, and Barnegat Bay in New Jersey, USA. MN was based on the calculated difference in height between mean high water (MHW) and mean low water (MLW) using the VDatum (v3.5) software (http://vdatum.noaa.gov/). The input elevation was set to zero in VDatum to calculate the relative difference between the two datums. As part of the Hurricane Sandy Science Plan, the U.S. Geological Survey has started a Wetland Synthesis Project to expand National Assessment of Coastal Change Hazards and forecast products to coastal wetlands. The intent is to provide federal, state, and local managers with tools to estimate their vulnerability and ecosystem service potential. For this purpose, the response and resilience of coastal wetlands to physical factors need to be assessed in terms of the ensuing change to their vulnerability and ecosystem services. EBFNWR was selected as a pilot study area.

  10. Z

    Data from: FISBe: A real-world benchmark dataset for instance segmentation...

    • data.niaid.nih.gov
    • data-staging.niaid.nih.gov
    • +1more
    Updated Apr 2, 2024
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    Mais, Lisa; Hirsch, Peter; Managan, Claire; Kandarpa, Ramya; Rumberger, Josef Lorenz; Reinke, Annika; Maier-Hein, Lena; Ihrke, Gudrun; Kainmueller, Dagmar (2024). FISBe: A real-world benchmark dataset for instance segmentation of long-range thin filamentous structures [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_10875062
    Explore at:
    Dataset updated
    Apr 2, 2024
    Dataset provided by
    German Cancer Research Center
    Max Delbrück Center
    Howard Hughes Medical Institute - Janelia Research Campus
    Max Delbrück Center for Molecular Medicine
    Authors
    Mais, Lisa; Hirsch, Peter; Managan, Claire; Kandarpa, Ramya; Rumberger, Josef Lorenz; Reinke, Annika; Maier-Hein, Lena; Ihrke, Gudrun; Kainmueller, Dagmar
    License

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

    Description

    General

    For more details and the most up-to-date information please consult our project page: https://kainmueller-lab.github.io/fisbe.

    Summary

    A new dataset for neuron instance segmentation in 3d multicolor light microscopy data of fruit fly brains

    30 completely labeled (segmented) images

    71 partly labeled images

    altogether comprising ∼600 expert-labeled neuron instances (labeling a single neuron takes between 30-60 min on average, yet a difficult one can take up to 4 hours)

    To the best of our knowledge, the first real-world benchmark dataset for instance segmentation of long thin filamentous objects

    A set of metrics and a novel ranking score for respective meaningful method benchmarking

    An evaluation of three baseline methods in terms of the above metrics and score

    Abstract

    Instance segmentation of neurons in volumetric light microscopy images of nervous systems enables groundbreaking research in neuroscience by facilitating joint functional and morphological analyses of neural circuits at cellular resolution. Yet said multi-neuron light microscopy data exhibits extremely challenging properties for the task of instance segmentation: Individual neurons have long-ranging, thin filamentous and widely branching morphologies, multiple neurons are tightly inter-weaved, and partial volume effects, uneven illumination and noise inherent to light microscopy severely impede local disentangling as well as long-range tracing of individual neurons. These properties reflect a current key challenge in machine learning research, namely to effectively capture long-range dependencies in the data. While respective methodological research is buzzing, to date methods are typically benchmarked on synthetic datasets. To address this gap, we release the FlyLight Instance Segmentation Benchmark (FISBe) dataset, the first publicly available multi-neuron light microscopy dataset with pixel-wise annotations. In addition, we define a set of instance segmentation metrics for benchmarking that we designed to be meaningful with regard to downstream analyses. Lastly, we provide three baselines to kick off a competition that we envision to both advance the field of machine learning regarding methodology for capturing long-range data dependencies, and facilitate scientific discovery in basic neuroscience.

    Dataset documentation:

    We provide a detailed documentation of our dataset, following the Datasheet for Datasets questionnaire:

    FISBe Datasheet

    Our dataset originates from the FlyLight project, where the authors released a large image collection of nervous systems of ~74,000 flies, available for download under CC BY 4.0 license.

    Files

    fisbe_v1.0_{completely,partly}.zip

    contains the image and ground truth segmentation data; there is one zarr file per sample, see below for more information on how to access zarr files.

    fisbe_v1.0_mips.zip

    maximum intensity projections of all samples, for convenience.

    sample_list_per_split.txt

    a simple list of all samples and the subset they are in, for convenience.

    view_data.py

    a simple python script to visualize samples, see below for more information on how to use it.

    dim_neurons_val_and_test_sets.json

    a list of instance ids per sample that are considered to be of low intensity/dim; can be used for extended evaluation.

    Readme.md

    general information

    How to work with the image files

    Each sample consists of a single 3d MCFO image of neurons of the fruit fly.For each image, we provide a pixel-wise instance segmentation for all separable neurons.Each sample is stored as a separate zarr file (zarr is a file storage format for chunked, compressed, N-dimensional arrays based on an open-source specification.").The image data ("raw") and the segmentation ("gt_instances") are stored as two arrays within a single zarr file.The segmentation mask for each neuron is stored in a separate channel.The order of dimensions is CZYX.

    We recommend to work in a virtual environment, e.g., by using conda:

    conda create -y -n flylight-env -c conda-forge python=3.9conda activate flylight-env

    How to open zarr files

    Install the python zarr package:

    pip install zarr

    Opened a zarr file with:

    import zarrraw = zarr.open(, mode='r', path="volumes/raw")seg = zarr.open(, mode='r', path="volumes/gt_instances")

    optional:import numpy as npraw_np = np.array(raw)

    Zarr arrays are read lazily on-demand.Many functions that expect numpy arrays also work with zarr arrays.Optionally, the arrays can also explicitly be converted to numpy arrays.

    How to view zarr image files

    We recommend to use napari to view the image data.

    Install napari:

    pip install "napari[all]"

    Save the following Python script:

    import zarr, sys, napari

    raw = zarr.load(sys.argv[1], mode='r', path="volumes/raw")gts = zarr.load(sys.argv[1], mode='r', path="volumes/gt_instances")

    viewer = napari.Viewer(ndisplay=3)for idx, gt in enumerate(gts): viewer.add_labels( gt, rendering='translucent', blending='additive', name=f'gt_{idx}')viewer.add_image(raw[0], colormap="red", name='raw_r', blending='additive')viewer.add_image(raw[1], colormap="green", name='raw_g', blending='additive')viewer.add_image(raw[2], colormap="blue", name='raw_b', blending='additive')napari.run()

    Execute:

    python view_data.py /R9F03-20181030_62_B5.zarr

    Metrics

    S: Average of avF1 and C

    avF1: Average F1 Score

    C: Average ground truth coverage

    clDice_TP: Average true positives clDice

    FS: Number of false splits

    FM: Number of false merges

    tp: Relative number of true positives

    For more information on our selected metrics and formal definitions please see our paper.

    Baseline

    To showcase the FISBe dataset together with our selection of metrics, we provide evaluation results for three baseline methods, namely PatchPerPix (ppp), Flood Filling Networks (FFN) and a non-learnt application-specific color clustering from Duan et al..For detailed information on the methods and the quantitative results please see our paper.

    License

    The FlyLight Instance Segmentation Benchmark (FISBe) dataset is licensed under the Creative Commons Attribution 4.0 International (CC BY 4.0) license.

    Citation

    If you use FISBe in your research, please use the following BibTeX entry:

    @misc{mais2024fisbe, title = {FISBe: A real-world benchmark dataset for instance segmentation of long-range thin filamentous structures}, author = {Lisa Mais and Peter Hirsch and Claire Managan and Ramya Kandarpa and Josef Lorenz Rumberger and Annika Reinke and Lena Maier-Hein and Gudrun Ihrke and Dagmar Kainmueller}, year = 2024, eprint = {2404.00130}, archivePrefix ={arXiv}, primaryClass = {cs.CV} }

    Acknowledgments

    We thank Aljoscha Nern for providing unpublished MCFO images as well as Geoffrey W. Meissner and the entire FlyLight Project Team for valuablediscussions.P.H., L.M. and D.K. were supported by the HHMI Janelia Visiting Scientist Program.This work was co-funded by Helmholtz Imaging.

    Changelog

    There have been no changes to the dataset so far.All future change will be listed on the changelog page.

    Contributing

    If you would like to contribute, have encountered any issues or have any suggestions, please open an issue for the FISBe dataset in the accompanying github repository.

    All contributions are welcome!

  11. o

    Range View Circle Cross Street Data in Rapid City, SD

    • ownerly.com
    Updated Feb 6, 2022
    + more versions
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    Ownerly (2022). Range View Circle Cross Street Data in Rapid City, SD [Dataset]. https://www.ownerly.com/sd/rapid-city/range-view-cir-home-details
    Explore at:
    Dataset updated
    Feb 6, 2022
    Dataset authored and provided by
    Ownerly
    Area covered
    Rapid City, South Dakota, Range View Circle
    Description

    This dataset provides information about the number of properties, residents, and average property values for Range View Circle cross streets in Rapid City, SD.

  12. N

    South Range, MI Population Breakdown by Gender and Age Dataset: Male and...

    • neilsberg.com
    csv, json
    Updated Feb 24, 2025
    + more versions
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    Neilsberg Research (2025). South Range, MI Population Breakdown by Gender and Age Dataset: Male and Female Population Distribution Across 18 Age Groups // 2025 Edition [Dataset]. https://www.neilsberg.com/research/datasets/e200fba9-f25d-11ef-8c1b-3860777c1fe6/
    Explore at:
    csv, jsonAvailable download formats
    Dataset updated
    Feb 24, 2025
    Dataset authored and provided by
    Neilsberg Research
    License

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

    Area covered
    Michigan, South Range
    Variables measured
    Male and Female Population Under 5 Years, Male and Female Population over 85 years, Male and Female Population Between 5 and 9 years, Male and Female Population Between 10 and 14 years, Male and Female Population Between 15 and 19 years, Male and Female Population Between 20 and 24 years, Male and Female Population Between 25 and 29 years, Male and Female Population Between 30 and 34 years, Male and Female Population Between 35 and 39 years, Male and Female Population Between 40 and 44 years, and 8 more
    Measurement technique
    The data presented in this dataset is derived from the latest U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates. To measure the three variables, namely (a) Population (Male), (b) Population (Female), and (c) Gender Ratio (Males per 100 Females), we initially analyzed and categorized the data for each of the gender classifications (biological sex) reported by the US Census Bureau across 18 age groups, ranging from under 5 years to 85 years and above. These age groups are described above in the variables section. For further information regarding these estimates, please feel free to reach out to us via email at research@neilsberg.com.
    Dataset funded by
    Neilsberg Research
    Description
    About this dataset

    Context

    The dataset tabulates the population of South Range by gender across 18 age groups. It lists the male and female population in each age group along with the gender ratio for South Range. The dataset can be utilized to understand the population distribution of South Range by gender and age. For example, using this dataset, we can identify the largest age group for both Men and Women in South Range. Additionally, it can be used to see how the gender ratio changes from birth to senior most age group and male to female ratio across each age group for South Range.

    Key observations

    Largest age group (population): Male # 20-24 years (49) | Female # 20-24 years (50). Source: U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates.

    Content

    When available, the data consists of estimates from the U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates.

    Age groups:

    • Under 5 years
    • 5 to 9 years
    • 10 to 14 years
    • 15 to 19 years
    • 20 to 24 years
    • 25 to 29 years
    • 30 to 34 years
    • 35 to 39 years
    • 40 to 44 years
    • 45 to 49 years
    • 50 to 54 years
    • 55 to 59 years
    • 60 to 64 years
    • 65 to 69 years
    • 70 to 74 years
    • 75 to 79 years
    • 80 to 84 years
    • 85 years and over

    Scope of gender :

    Please note that American Community Survey asks a question about the respondents current sex, but not about gender, sexual orientation, or sex at birth. The question is intended to capture data for biological sex, not gender. Respondents are supposed to respond with the answer as either of Male or Female. Our research and this dataset mirrors the data reported as Male and Female for gender distribution analysis.

    Variables / Data Columns

    • Age Group: This column displays the age group for the South Range population analysis. Total expected values are 18 and are define above in the age groups section.
    • Population (Male): The male population in the South Range is shown in the following column.
    • Population (Female): The female population in the South Range is shown in the following column.
    • Gender Ratio: Also known as the sex ratio, this column displays the number of males per 100 females in South Range for each age group.

    Good to know

    Margin of Error

    Data in the dataset are based on the estimates and are subject to sampling variability and thus a margin of error. Neilsberg Research recommends using caution when presening these estimates in your research.

    Custom data

    If you do need custom data for any of your research project, report or presentation, you can contact our research staff at research@neilsberg.com for a feasibility of a custom tabulation on a fee-for-service basis.

    Inspiration

    Neilsberg Research Team curates, analyze and publishes demographics and economic data from a variety of public and proprietary sources, each of which often includes multiple surveys and programs. The large majority of Neilsberg Research aggregated datasets and insights is made available for free download at https://www.neilsberg.com/research/.

    Recommended for further research

    This dataset is a part of the main dataset for South Range Population by Gender. You can refer the same here

  13. c

    Suspension Rate by Grade Range - Datasets - CTData.org

    • data.ctdata.org
    Updated Mar 16, 2016
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    (2016). Suspension Rate by Grade Range - Datasets - CTData.org [Dataset]. http://data.ctdata.org/dataset/suspension-rate-by-grade-range
    Explore at:
    Dataset updated
    Mar 16, 2016
    License

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

    Description

    Full Description This dataset reports the total number of unique, unduplicated students in a given grade range that have received at least one In-school Suspension (ISS), Out-of-school Suspension (OSS), or Expulsion (EXP) out of the total number of students enrolled in the Public School Information System (PSIS) as of October of the given year. This dataset is based on School Years. Elementary includes Pre-Kindergarten through grade 5. Middle School includes grade 6 through grade 8. High School includes grade 9 through grade 12.

  14. Number of People Never Married By Year

    • kaggle.com
    zip
    Updated Dec 1, 2022
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    The Devastator (2022). Number of People Never Married By Year [Dataset]. https://www.kaggle.com/datasets/thedevastator/never-been-married-the-rising-trend-in-2021
    Explore at:
    zip(393 bytes)Available download formats
    Dataset updated
    Dec 1, 2022
    Authors
    The Devastator
    Description

    Number of People Never Married By Year

    Number of People Never Married By Year in the US

    By Andy Kriebel [source]

    About this dataset

    This dataset provides a comprehensive look at the changing trends in marriage and divorce over the years in the United States. It includes data on gender, age range, and year for those who have never been married – examining who is deciding to forgo tying the knot in today’s society. Diving into this data may offer insight into how life-changing decisions are being made as customs shift along with our times. This could be especially interesting when examined by generation or other trends within our population. Are young adults embracing or avoiding marriage? Has divorce become more or less common within certain social groups? Can recent economic challenges be related to changes in marital status trends? Take a look at this dataset and let us know what stories you find!

    More Datasets

    For more datasets, click here.

    Featured Notebooks

    • 🚨 Your notebook can be here! 🚨!

    How to use the dataset

    This dataset contains surveys which explore the number of never married people in the United States, separated by gender, age range and year. You can use this dataset to analyze the trends in never married people throughout the years and see how it is affected by different demographics.

    To make the most out of this dataset you could start by exploring the changes on different ages ranges and genders. Plotting how they differ along time might unveil interesting patterns that can help you uncover why certain groups are more or less likely to remain single throughout time. Understanding these trends could also help people looking for a life-partner better understand their own context as compared to others around them enabling them to make informed decisions about when is a good time for them to find someone special.

    In addition, this dataset can be used to examine what acts as an enabler or deterrent for staying single within different couples of age ranges and genders across states. Does marriage look more attractive in any particular state? Are there differences between genders? Knowing all these factors can inform us about economic or social insights within society as well as overall lifestyle choices that tend towards being single or married during one's life cycle in different regions around United States of America.

    Finally, with this information policymakers can construct efficient policies that better fit our country's priorities by providing programs designed based on specific characteristics within each group helping ensure they match preferable relationships while having access concentrated resources such actions already taken towards promoting wellbeing our citizens regarding relationships like marriage counseling services or family support centers!

    Research Ideas

    • Examine the differences in trends of ever-married vs never married people across different age ranges and genders.
    • Explore the correlation between life decision changes and economic conditions for ever-married and never married people over time.
    • Analyze how marriage trends differ based on region, socio-economic status, or religious beliefs to understand how these influence decisions about marriage

    Acknowledgements

    If you use this dataset in your research, please credit the original authors. Data Source

    License

    License: Dataset copyright by authors - You are free to: - Share - copy and redistribute the material in any medium or format for any purpose, even commercially. - Adapt - remix, transform, and build upon the material for any purpose, even commercially. - You must: - Give appropriate credit - Provide a link to the license, and indicate if changes were made. - ShareAlike - You must distribute your contributions under the same license as the original. - Keep intact - all notices that refer to this license, including copyright notices.

    Columns

    File: Never Married.csv | Column name | Description | |:------------------|:--------------------------------------------------------| | Gender | Gender of the individual. (String) | | Age Range | Age range of the individual. (String) | | Year | Year of the data. (Integer) | | Never Married | Number of people who have never been married. (Integer) |

    Acknowledgements

    If you use this dataset in your research, please ...

  15. S

    LSS-DAUR-1.0: Digital Array Ubiquitous Radar Low, Slow, and Small Target...

    • scidb.cn
    Updated Nov 5, 2025
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    陈小龙; 刘佳; 汪兴海; 关键 (2025). LSS-DAUR-1.0: Digital Array Ubiquitous Radar Low, Slow, and Small Target Detection Dataset [Dataset]. http://doi.org/10.57760/sciencedb.radars.00076
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Nov 5, 2025
    Dataset provided by
    Science Data Bank
    Authors
    陈小龙; 刘佳; 汪兴海; 关键
    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

    Description

    The Low, Slow, and Small Target Detection Dataset for Digital Array Surveillance Radar (LSS-DAUR-1.0) includes a total of 154 items of Range-Doppler (RD) complex data and Track (TR) point data collected from 6 types of targets (passenger ships, speedboats, helicopters, rotary-wing UAVs, birds, fixed-wing UAVs). It can support research on detection, classification and recognition of typical maritime targets by digital array radar. 1. Data Collection Process The data collection process mainly includes: Set radar parameters → Detect targets → Collect echo signal data → Record target information → Determine the range bin where the target is located → Extract target Doppler data → Extract target track data. 2. Target Situation The collected typical sea-air targets include 6 categories: passenger ships, speedboats, helicopters, rotary-wing UAVs, birds and fixed-wing UAVs. 3. Range-Doppler (RD) Complex Data By calculating the target range, the echo data of the range bin where the target is located is intercepted. Based on the collected measured data, the Low, Slow, and Small Target RD Dataset for Digital Array Surveillance Radar is constructed, which includes 10 groups of passenger ship (passenger ship) data, 11 groups of speedboat (speedboat) data, 10 groups of helicopter (helicopter) data, 18 groups of rotary-wing UAV (rotary drone) data, 17 groups of bird (bird) data, and 11 groups of fixed-wing UAV (fixed-wing drone) data, totaling 77 groups. Each group of data includes the target's Doppler, GPS time, frame count, etc. The naming method of target RD data is: Start Collection Time_DAUR_RD_Target Type_Serial Number_Target Batch Number.Mat. For example, the file name "20231207093748_DAUR_RD_Passenger Ship_01_2619.mat", where "20231207" represents the date of data collection, "093748" represents the start time of collection which is 09:37:48, "DAUR" represents Digital Array Surveillance Radar, "RD" represents Range-Doppler spectrum complex data, "Passenger Ship_01" represents the target type is passenger ship with serial number 01, and "2619" represents the target track batch number. 4. Track (TR) Data Extract the track data within the time period of the echo data, and construct the Low, Slow, and Small Target TR Dataset for Digital Array Surveillance Radar, which includes 10 groups of passenger ship (passenger ship) data, 11 groups of speedboat (speedboat) data, 10 groups of helicopter (helicopter) data, 18 groups of rotary-wing UAV (rotary drone) data, 17 groups of bird (bird) data, and 11 groups of fixed-wing UAV (fixed-wing drone) data, totaling 77 groups. Each group of data includes target range, target azimuth, elevation angle, target speed, GPS time, signal-to-noise ratio (SNR), etc. The TR data and RD data have the same time and batch number, and they are data of different dimensions for the same target in the same time period. The naming method of target TR data is: Start Collection Time_DAUR_TR_Target Type_Serial Number_Target Batch Number.Mat. For example, the file name "20231207093748_DAUR_TR_Passenger Ship_01_2619.mat", where "20231207" represents the date of data collection, "093748" represents the start time of collection which is 09:37:48, "DAUR" represents Digital Array Surveillance Radar, "TR" represents Range-Doppler spectrum complex data, "Passenger Ship_01" represents the target type is passenger ship with serial number 01, and "2619" represents the target track batch number.

  16. Success.ai | | US Premium B2B Emails & Phone Numbers Dataset - APIs and flat...

    • datarade.ai
    Updated Oct 25, 2024
    + more versions
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    Success.ai (2024). Success.ai | | US Premium B2B Emails & Phone Numbers Dataset - APIs and flat files available – 170M+, Verified Profiles - Best Price Guarantee [Dataset]. https://datarade.ai/data-products/success-ai-us-premium-b2b-emails-phone-numbers-dataset-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Oct 25, 2024
    Dataset provided by
    Area covered
    United States
    Description

    Success.ai offers a comprehensive, enterprise-ready B2B leads data solution, ideal for businesses seeking access to over 150 million verified employee profiles and 170 million work emails. Our data empowers organizations across industries to target key decision-makers, optimize recruitment, and fuel B2B marketing efforts. Whether you're looking for UK B2B data, B2B marketing data, or global B2B contact data, Success.ai provides the insights you need with pinpoint accuracy.

    Tailored for B2B Sales, Marketing, Recruitment and more: Our B2B contact data and B2B email data solutions are designed to enhance your lead generation, sales, and recruitment efforts. Build hyper-targeted lists based on job title, industry, seniority, and geographic location. Whether you’re reaching mid-level professionals or C-suite executives, Success.ai delivers the data you need to connect with the right people.

    API Features:

    • Real-Time Updates: Our APIs deliver real-time updates, ensuring that the contact data your business relies on is always current and accurate.
    • High Volume Handling: Designed to support up to 860k API calls per day, our system is built for scalability and responsiveness, catering to enterprises of all sizes.
    • Flexible Integration: Easily integrate with CRM systems, marketing automation tools, and other enterprise applications to streamline your workflows and enhance productivity.

    Key Categories Served: B2B sales leads – Identify decision-makers in key industries, B2B marketing data – Target professionals for your marketing campaigns, Recruitment data – Source top talent efficiently and reduce hiring times, CRM enrichment – Update and enhance your CRM with verified, updated data, Global reach – Coverage across 195 countries, including the United States, United Kingdom, Germany, India, Singapore, and more.

    Global Coverage with Real-Time Accuracy: Success.ai’s dataset spans a wide range of industries such as technology, finance, healthcare, and manufacturing. With continuous real-time updates, your team can rely on the most accurate data available: 150M+ Employee Profiles: Access professional profiles worldwide with insights including full name, job title, seniority, and industry. 170M Verified Work Emails: Reach decision-makers directly with verified work emails, available across industries and geographies, including Singapore and UK B2B data. GDPR-Compliant: Our data is fully compliant with GDPR and other global privacy regulations, ensuring safe and legal use of B2B marketing data.

    Key Data Points for Every Employee Profile: Every profile in Success.ai’s database includes over 20 critical data points, providing the information needed to power B2B sales and marketing campaigns: Full Name, Job Title, Company, Work Email, Location, Phone Number, LinkedIn Profile, Experience, Education, Technographic Data, Languages, Certifications, Industry, Publications & Awards.

    Use Cases Across Industries: Success.ai’s B2B data solution is incredibly versatile and can support various enterprise use cases, including: B2B Marketing Campaigns: Reach high-value professionals in industries such as technology, finance, and healthcare. Enterprise Sales Outreach: Build targeted B2B contact lists to improve sales efforts and increase conversions. Talent Acquisition: Accelerate hiring by sourcing top talent with accurate and updated employee data, filtered by job title, industry, and location. Market Research: Gain insights into employment trends and company profiles to enrich market research. CRM Data Enrichment: Ensure your CRM stays accurate by integrating updated B2B contact data. Event Targeting: Create lists for webinars, conferences, and product launches by targeting professionals in key industries.

    Use Cases for Success.ai's Contact Data - Targeted B2B Marketing: Create precise campaigns by targeting key professionals in industries like tech and finance. - Sales Outreach: Build focused sales lists of decision-makers and C-suite executives for faster deal cycles. - Recruiting Top Talent: Easily find and hire qualified professionals with updated employee profiles. - CRM Enrichment: Keep your CRM current with verified, accurate employee data. - Event Targeting: Create attendee lists for events by targeting relevant professionals in key sectors. - Market Research: Gain insights into employment trends and company profiles for better business decisions. - Executive Search: Source senior executives and leaders for headhunting and recruitment. - Partnership Building: Find the right companies and key people to develop strategic partnerships.

    Why Choose Success.ai’s Employee Data? Success.ai is the top choice for enterprises looking for comprehensive and affordable B2B data solutions. Here’s why: Unmatched Accuracy: Our AI-powered validation process ensures 99% accuracy across all data points, resulting in higher engagement and fewer bounces. Global Scale: With 150M+ employee profiles and 170M veri...

  17. m

    USA POI & Foot Traffic Enriched Geospatial Dataset by Predik Data-Driven

    • app.mobito.io
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    USA POI & Foot Traffic Enriched Geospatial Dataset by Predik Data-Driven [Dataset]. https://app.mobito.io/data-product/usa-enriched-geospatial-framework-dataset
    Explore at:
    Area covered
    United States
    Description

    Our dataset provides detailed and precise insights into the business, commercial, and industrial aspects of any given area in the USA (Including Point of Interest (POI) Data and Foot Traffic. The dataset is divided into 150x150 sqm areas (geohash 7) and has over 50 variables. - Use it for different applications: Our combined dataset, which includes POI and foot traffic data, can be employed for various purposes. Different data teams use it to guide retailers and FMCG brands in site selection, fuel marketing intelligence, analyze trade areas, and assess company risk. Our dataset has also proven to be useful for real estate investment.- Get reliable data: Our datasets have been processed, enriched, and tested so your data team can use them more quickly and accurately.- Ideal for trainning ML models. The high quality of our geographic information layers results from more than seven years of work dedicated to the deep understanding and modeling of geospatial Big Data. Among the features that distinguished this dataset is the use of anonymized and user-compliant mobile device GPS location, enriched with other alternative and public data.- Easy to use: Our dataset is user-friendly and can be easily integrated to your current models. Also, we can deliver your data in different formats, like .csv, according to your analysis requirements. - Get personalized guidance: In addition to providing reliable datasets, we advise your analysts on their correct implementation.Our data scientists can guide your internal team on the optimal algorithms and models to get the most out of the information we provide (without compromising the security of your internal data).Answer questions like: - What places does my target user visit in a particular area? Which are the best areas to place a new POS?- What is the average yearly income of users in a particular area?- What is the influx of visits that my competition receives?- What is the volume of traffic surrounding my current POS?This dataset is useful for getting insights from industries like:- Retail & FMCG- Banking, Finance, and Investment- Car Dealerships- Real Estate- Convenience Stores- Pharma and medical laboratories- Restaurant chains and franchises- Clothing chains and franchisesOur dataset includes more than 50 variables, such as:- Number of pedestrians seen in the area.- Number of vehicles seen in the area.- Average speed of movement of the vehicles seen in the area.- Point of Interest (POIs) (in number and type) seen in the area (supermarkets, pharmacies, recreational locations, restaurants, offices, hotels, parking lots, wholesalers, financial services, pet services, shopping malls, among others). - Average yearly income range (anonymized and aggregated) of the devices seen in the area.Notes to better understand this dataset:- POI confidence means the average confidence of POIs in the area. In this case, POIs are any kind of location, such as a restaurant, a hotel, or a library. - Category confidences, for example"food_drinks_tobacco_retail_confidence" indicates how confident we are in the existence of food/drink/tobacco retail locations in the area. - We added predictions for The Home Depot and Lowe's Home Improvement stores in the dataset sample. These predictions were the result of a machine-learning model that was trained with the data. Knowing where the current stores are, we can find the most similar areas for new stores to open.How efficient is a Geohash?Geohash is a faster, cost-effective geofencing option that reduces input data load and provides actionable information. Its benefits include faster querying, reduced cost, minimal configuration, and ease of use.Geohash ranges from 1 to 12 characters. The dataset can be split into variable-size geohashes, with the default being geohash7 (150m x 150m).

  18. g

    EDF SA's social report - Training

    • gimi9.com
    + more versions
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    EDF SA's social report - Training [Dataset]. https://gimi9.com/dataset/eu_https-opendata-edf-fr-explore-dataset-bilan-social-d-edf-sa-formation-/
    Explore at:
    Description

    Summary: Here you will find the data from the social report of edf sa, relating to training. The main indicators of this dataset are: * Percentage of the salary base subject to social security contributions under the general scheme for continuing training * Amount spent on continuing training * Number of employees who have completed at least one traineeship * Number of employees having completed at least one traineeship per M3E range * Number of hours of training * Number of hours of training per M3E range * Number of employees who have benefited from paid individual training leave * Number of employees who received individual unpaid training leave * Number of alternating contracts concluded during the year #### Information note: The data available here are extracted from the social balance sheet of edf sa. If you need additional information or data, do not hesitate to consult it by referring to the source paragraphs referenced for each row of data published here.

  19. N

    South Range, MI Population Pyramid Dataset: Age Groups, Male and Female...

    • neilsberg.com
    csv, json
    Updated Feb 22, 2025
    + more versions
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    Neilsberg Research (2025). South Range, MI Population Pyramid Dataset: Age Groups, Male and Female Population, and Total Population for Demographics Analysis // 2025 Edition [Dataset]. https://www.neilsberg.com/research/datasets/52700142-f122-11ef-8c1b-3860777c1fe6/
    Explore at:
    csv, jsonAvailable download formats
    Dataset updated
    Feb 22, 2025
    Dataset authored and provided by
    Neilsberg Research
    License

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

    Area covered
    Michigan, South Range
    Variables measured
    Male and Female Population Under 5 Years, Male and Female Population over 85 years, Male and Female Total Population for Age Groups, Male and Female Population Between 5 and 9 years, Male and Female Population Between 10 and 14 years, Male and Female Population Between 15 and 19 years, Male and Female Population Between 20 and 24 years, Male and Female Population Between 25 and 29 years, Male and Female Population Between 30 and 34 years, Male and Female Population Between 35 and 39 years, and 9 more
    Measurement technique
    The data presented in this dataset is derived from the latest U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates. To measure the three variables, namely (a) male population, (b) female population and (b) total population, we initially analyzed and categorized the data for each of the age groups. For age groups we divided it into roughly a 5 year bucket for ages between 0 and 85. For over 85, we aggregated data into a single group for all ages. For further information regarding these estimates, please feel free to reach out to us via email at research@neilsberg.com.
    Dataset funded by
    Neilsberg Research
    Description
    About this dataset

    Context

    The dataset tabulates the data for the South Range, MI population pyramid, which represents the South Range population distribution across age and gender, using estimates from the U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates. It lists the male and female population for each age group, along with the total population for those age groups. Higher numbers at the bottom of the table suggest population growth, whereas higher numbers at the top indicate declining birth rates. Furthermore, the dataset can be utilized to understand the youth dependency ratio, old-age dependency ratio, total dependency ratio, and potential support ratio.

    Key observations

    • Youth dependency ratio, which is the number of children aged 0-14 per 100 persons aged 15-64, for South Range, MI, is 21.5.
    • Old-age dependency ratio, which is the number of persons aged 65 or over per 100 persons aged 15-64, for South Range, MI, is 28.6.
    • Total dependency ratio for South Range, MI is 50.1.
    • Potential support ratio, which is the number of youth (working age population) per elderly, for South Range, MI is 3.5.
    Content

    When available, the data consists of estimates from the U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates.

    Age groups:

    • Under 5 years
    • 5 to 9 years
    • 10 to 14 years
    • 15 to 19 years
    • 20 to 24 years
    • 25 to 29 years
    • 30 to 34 years
    • 35 to 39 years
    • 40 to 44 years
    • 45 to 49 years
    • 50 to 54 years
    • 55 to 59 years
    • 60 to 64 years
    • 65 to 69 years
    • 70 to 74 years
    • 75 to 79 years
    • 80 to 84 years
    • 85 years and over

    Variables / Data Columns

    • Age Group: This column displays the age group for the South Range population analysis. Total expected values are 18 and are define above in the age groups section.
    • Population (Male): The male population in the South Range for the selected age group is shown in the following column.
    • Population (Female): The female population in the South Range for the selected age group is shown in the following column.
    • Total Population: The total population of the South Range for the selected age group is shown in the following column.

    Good to know

    Margin of Error

    Data in the dataset are based on the estimates and are subject to sampling variability and thus a margin of error. Neilsberg Research recommends using caution when presening these estimates in your research.

    Custom data

    If you do need custom data for any of your research project, report or presentation, you can contact our research staff at research@neilsberg.com for a feasibility of a custom tabulation on a fee-for-service basis.

    Inspiration

    Neilsberg Research Team curates, analyze and publishes demographics and economic data from a variety of public and proprietary sources, each of which often includes multiple surveys and programs. The large majority of Neilsberg Research aggregated datasets and insights is made available for free download at https://www.neilsberg.com/research/.

    Recommended for further research

    This dataset is a part of the main dataset for South Range Population by Age. You can refer the same here

  20. e

    Data from: Land Cover Map 1990 (vector, GB)

    • data.europa.eu
    • ckan.publishing.service.gov.uk
    • +3more
    unknown, zip
    + more versions
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    Environmental Information Data Centre, Land Cover Map 1990 (vector, GB) [Dataset]. https://data.europa.eu/data/datasets/land-cover-map-1990-vector-gb?locale=en
    Explore at:
    zip, unknownAvailable download formats
    Dataset authored and provided by
    Environmental Information Data Centre
    Description

    This dataset consists of the vector version of the Land Cover Map 1990 (LCM1990) for Great Britain. The vector data set is the core LCM data set from which the full range of other LCM1990 products are derived. It provides a number of attributes including land cover at the target class level (given as an integer value and also as text), the number of pixels within the polygon classified as each land cover type and a probability value provided by the classification algorithm (for full details see the LCM1990 Dataset Documentation). The 21 target classes are based on the Joint Nature Conservation Committee (JNCC) Broad Habitats, which encompass the entire range of UK habitats. LCM1990 is a land cover map of the UK which was produced at the UK Centre for Ecology & Hydrology by classifying satellite images (mainly from 1989 and 1990) into 21 Broad Habitat-based classes. It is the first in a series of land cover maps for the UK, which also includes maps for 2000, 2007, 2015, 2017, 2018 and 2019. LCM1990 consists of a range of raster and vector products and users should familiarise themselves with the full range (see related records, the UKCEH web site and the LCM1990 Dataset documentation) to select the product most suited to their needs. This work was supported by the Natural Environment Research Council award number NE/R016429/1 as part of the UK-SCAPE programme delivering National Capability. Full details about this dataset can be found at https://doi.org/10.5285/304a7a40-1388-49f5-b3ac-709129406399

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In06 Days (2021). Number of primes in every 100 numbers up to 10000 [Dataset]. https://www.kaggle.com/datasets/mathnights/number-of-primes-in-every-100-numbers-up-to-10000
Organization logo

Number of primes in every 100 numbers up to 10000

from range (1-100) to range (9901-10000)

Explore at:
zip(668 bytes)Available download formats
Dataset updated
May 15, 2021
Authors
In06 Days
Description

Context

Here is a list that shows the prime number list up to 10000. Source: easycalculation

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.

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?

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