96 datasets found
  1. d

    Points of Interest

    • catalog.data.gov
    • opendata.dc.gov
    • +2more
    Updated Feb 4, 2025
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    Office of the Chief Technology Officer (2025). Points of Interest [Dataset]. https://catalog.data.gov/dataset/points-of-interest-61599
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    Dataset updated
    Feb 4, 2025
    Dataset provided by
    Office of the Chief Technology Officer
    Description

    Also known as place names. The dataset contains locations and attributes of address alias points, created as part of the Master Address Repository (MAR) for the Office of the Chief Technology Officer (OCTO) and participating DC government agencies. It contains address alias names in the District of Columbia which are typically placed on buildings. These alias names represent named features such as: - Schools - Federal Buildings - Military Installations - Hospitals - Museums - Monuments - University Structures - Fire and Police Stations - Libraries - Metro Facilities - Historical Landmarks - Recreation Centers - Mile Markers - Marinas and more. More information on the MAR can be found at https://opendata.dc.gov/pages/addressing-in-dc. The data dictionary is available: https://opendata.dc.gov/documents/2a4b3d59aade43188b6d18e3811f4fd3/explore. In the MAR 2, the AddressAliasPt is called PLACE_NAMES_PT and features additional useful information such as created date, last edited date, begin date, and more.

  2. A Benchmark for 3D Interest Point Detection Algorithms

    • catalog.data.gov
    • data.nist.gov
    • +1more
    Updated Jul 29, 2022
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    National Institute of Standards and Technology (2022). A Benchmark for 3D Interest Point Detection Algorithms [Dataset]. https://catalog.data.gov/dataset/a-benchmark-for-3d-interest-point-detection-algorithms-2c04d
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    Dataset updated
    Jul 29, 2022
    Dataset provided by
    National Institute of Standards and Technologyhttp://www.nist.gov/
    Description

    This benchmark aims to provide tools to evaluate 3D Interest Point Detection Algorithms with respect to human generated ground truth. Using a web-based subjective experiment, human subjects marked 3D interest points on a set of 3D models. The models were organized in two datasets: Dataset A and Dataset B. Dataset A consists of 24 models which were hand-marked by 23 human subjects. Dataset B is larger with 43 models, and it contains all the models in Dataset B. The number of human subjects who marked all the models in this larger set is 16. Some of the models are standard models that are widely used in 3D shape research; and they have been used as test objects by researchers working on the best view problem. We have compared five 3D Interest Point Detection algorithms. The interest points detected on the 3D models of the dataset can be downloaded from the link below. Please refer to README for details in the download. Mesh saliency [Lee et al. 2005] : Interest points by mesh saliency Salient points [Castellani et al. 2008] : Interest points by salient points 3D-Harris [Sipiran and Bustos, 2010] : Interest points by 3D-Harris 3D-SIFT [Godil and Wagan, 2011] : Interest points by 3D-SIFT (Please note that some models in the dataset are not watertight, hence their volumetric representations could not be generated. Therefore, 3D-SIFT algorithm wasn't able to detect interest points for those models.) Scale-dependent corners [Novatnack and Nishino, 2007] : Interest points by SD corners HKS-based interest points [Sun et al. 2009] : Interest points by HKS method Please Cite the Paper: Helin Dutagaci, Chun Pan Cheung, Afzal Godil, ?Evaluation of 3D interest point detection techniques via human-generated ground truth?, The Visual Computer, 2012. References: [Lee et al. 2005] Lee, C.H., Varshney, A., Jacobs, D.W.: Mesh saliency. In: ACM SIGGRAPH 2005, pp. 659?666 (2005) [Castellani et al. 2008] Castellani, U., Cristani, M., Fantoni, S., Murino, V.: Sparse points matching by combining 3D mesh saliency with statistical descriptors. Comput. Graph. Forum 27(2), 643?652 (2008) [Sipiran and Bustos, 2010] Sipiran, I., Bustos, B.: A robust 3D interest points detector based on Harris operator. In: Eurographics 2010 Workshop on 3D Object Retrieval (3DOR?10), pp. 7?14 (2010) [Godil and Wagan, 2011] Godil, A., Wagan, A.I.: Salient local 3D features for 3D shape retrieval. In: 3D Image Processing (3DIP) and Applications II, SPIE (2011) [Novatnack and Nishino, 2007] Novatnack, J., Nishino, K.: Scale-dependent 3D geometric features. In: ICCV, pp. 1?8, (2007) [Sun et al. 2009] Sun, J., Ovsjanikov, M., Guibas, L.: A concise and provably informative multi-scale signature based on heat diffusion. In: Eurographics Symposium on Geometry Processing (SGP), pp. 1383?1392 (2009)

  3. d

    Data from: Features Of Interest

    • dtechtive.com
    • finddatagovscot.dtechtive.com
    • +1more
    nt
    Updated Feb 14, 2024
    + more versions
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    Swirrl (2024). Features Of Interest [Dataset]. https://dtechtive.com/datasets/24620
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    nt(null MB)Available download formats
    Dataset updated
    Feb 14, 2024
    Dataset provided by
    Swirrl
    License

    Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
    License information was derived automatically

    Area covered
    Scotland
    Description

    A reference dataset containing relationships between geographic features, along with their geometries. This dataset helps drive the PublishMyData Atlas feature.

  4. Key Statistics on Business Performance and Operating Characteristics of the...

    • data.gov.hk
    Updated Jan 4, 2024
    + more versions
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    data.gov.hk (2024). Key Statistics on Business Performance and Operating Characteristics of the Industrial Sector - Table 610-72002 : Principal statistics for all establishments in the manufacturing sector by percentage share of overseas interest | DATA.GOV.HK [Dataset]. https://data.gov.hk/en-data/dataset/hk-censtatd-tablechart-610-72002
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    Dataset updated
    Jan 4, 2024
    Dataset provided by
    data.gov.hk
    Description

    Key Statistics on Business Performance and Operating Characteristics of the Industrial Sector - Table 610-72002 : Principal statistics for all establishments in the manufacturing sector by percentage share of overseas interest

  5. b

    Average interest rate by source of funds and type of credit -...

    • opendata.bcb.gov.br
    Updated Jan 25, 2018
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    (2018). Average interest rate by source of funds and type of credit - microenterprise - earmarked credit - Other with credit characteristics - Dataset - Banco Central do Brasil Open Data Portal [Dataset]. https://opendata.bcb.gov.br/dataset/26490-average-interest-rate-by-source-of-funds-and-type-of-credit---microenterprise---earmarked-cre
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    Dataset updated
    Jan 25, 2018
    License

    Open Database License (ODbL) v1.0https://www.opendatacommons.org/licenses/odbl/1.0/
    License information was derived automatically

    Description

    Concept: Average interest rate of credit operations with prefixed interest rates by source of funds and type of credit - microenterprise - earmarked credit - Other with credit characteristics Source: Credit Information System 26490-average-interest-rate-by-source-of-funds-and-type-of-credit---microenterprise---earmarked-cre 26490-average-interest-rate-by-source-of-funds-and-type-of-credit---microenterprise---earmarked-cre

  6. a

    OpenStreetMap - Points of Interest (Australia) 2020 - Dataset - AURIN

    • data.aurin.org.au
    Updated Mar 6, 2025
    + more versions
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    (2025). OpenStreetMap - Points of Interest (Australia) 2020 - Dataset - AURIN [Dataset]. https://data.aurin.org.au/dataset/osm-osm-points-of-interest-2020-na
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    Dataset updated
    Mar 6, 2025
    License

    Open Database License (ODbL) v1.0https://www.opendatacommons.org/licenses/odbl/1.0/
    License information was derived automatically

    Area covered
    Australia
    Description

    This point of interests dataset was extracted from OpenStreetMap (OSM) across the geographic area of Australia on 05 August 2020. Its purpose is to display points within Australia which people may find of interest, this is not limited to major landmarks and include simple amenities. Note, however, as this dataset is built by a community of mappers, there is no guarantee of its spatial or attribute accuracy. Use at your own risk. For more information about the map features represented in this dataset (including their attributes), refer to the OpenStreetMap Wiki and the Points of Interest. Please note: The original data for this dataset has been downloaded from Geofabrik on 05 August 2020.

  7. A

    Broadband Adoption and Computer Use by year, state, demographic...

    • data.amerigeoss.org
    • data.wu.ac.at
    csv, json, rdf, xml
    Updated Jul 27, 2019
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    United States[old] (2019). Broadband Adoption and Computer Use by year, state, demographic characteristics [Dataset]. https://data.amerigeoss.org/zh_CN/dataset/broadband-adoption-and-computer-use-by-year-state-demographic-characteristics
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    xml, json, rdf, csvAvailable download formats
    Dataset updated
    Jul 27, 2019
    Dataset provided by
    United States[old]
    Description

    This dataset is imported from the US Department of Commerce, National Telecommunications and Information Administration (NTIA) and its "Data Explorer" site. The underlying data comes from the US Census

    1. dataset: Specifies the month and year of the survey as a string, in "Mon YYYY" format. The CPS is a monthly survey, and NTIA periodically sponsors Supplements to that survey.

    2. variable: Contains the standardized name of the variable being measured. NTIA identified the availability of similar data across Supplements, and assigned variable names to ease time-series comparisons.

    3. description: Provides a concise description of the variable.

    4. universe: Specifies the variable representing the universe of persons or households included in the variable's statistics. The specified variable is always included in the file. The only variables lacking universes are isPerson and isHouseholder, as they are themselves the broadest universes measured in the CPS.

    5. A large number of *Prop, *PropSE, *Count, and *CountSE columns comprise the remainder of the columns. For each demographic being measured (see below), four statistics are produced, including the estimated proportion of the group for which the variable is true (*Prop), the standard error of that proportion (*PropSE), the estimated number of persons or households in that group for which the variable is true (*Count), and the standard error of that count (*CountSE).

    DEMOGRAPHIC CATEGORIES

    1. us: The usProp, usPropSE, usCount, and usCountSE columns contain statistics about all persons and households in the universe (which represents the population of the fifty states and the District and Columbia). For example, to see how the prevelance of Internet use by Americans has changed over time, look at the usProp column for each survey's internetUser variable.

    2. age: The age category is divided into five ranges: ages 3-14, 15-24, 25-44, 45-64, and 65+. The CPS only includes data on Americans ages 3 and older. Also note that household reference persons must be at least 15 years old, so the age314* columns are blank for household-based variables. Those columns are also blank for person-based variables where the universe is "isAdult" (or a sub-universe of "isAdult"), as the CPS defines adults as persons ages 15 or older. Finally, note that some variables where children are technically in the univese will show zero values for the age314* columns. This occurs in cases where a variable simply cannot be true of a child (e.g. the workInternetUser variable, as the CPS presumes children under 15 are not eligible to work), but the topic of interest is relevant to children (e.g. locations of Internet use).

    3. work: Employment status is divided into "Employed," "Unemployed," and "NILF" (Not in the Labor Force). These three categories reflect the official BLS definitions used in official labor force statistics. Note that employment status is only recorded in the CPS for individuals ages 15 and older. As a result, children are excluded from the universe when calculating statistics by work status, even if they are otherwise considered part of the universe for the variable of interest.

    4. income: The income category represents annual family income, rather than just an individual person's income. It is divided into five ranges: below $25K, $25K-49,999, $50K-74,999, $75K-99,999, and $100K or more. Statistics by income group are only available in this file for Supplements beginning in 2010; prior to 2010, family income range is available in public use datasets, but is not directly comparable to newer datasets due to the 2010 introduction of the practice of allocating "don't know," "refused," and other responses that result in missing data. Prior to 2010, family income is unkown for approximately 20 percent of persons, while in 2010 the Census Bureau began imputing likely income ranges to replace missing data.

    5. education: Educational attainment is divided into "No Diploma," "High School Grad," "Some College," and "College Grad." High school graduates are considered to include GED completers, and those with some college include community college attendees (and graduates) and those who have attended certain postsecondary vocational or technical schools--in other words, it signifies additional education beyond high school, but short of attaining a bachelor's degree or equivilent. Note that educational attainment is only recorded in the CPS for individuals ages 15 and older. As a result, children are excluded from the universe when calculating statistics by education, even if they are otherwise considered part of the universe for the variable of interest.

    6. sex: "Male" and "Female" are the two groups in this category. The CPS does not currently provide response options for intersex individuals.

    7. race: This category includes "White," "Black," "Hispanic," "Asian," "Am Indian," and "Other" groups. The CPS asks about Hispanic origin separately from racial identification; as a result, all persons identifying as Hispanic are in the Hispanic group, regardless of how else they identify. Furthermore, all non-Hispanic persons identifying with two or more races are tallied in the "Other" group (along with other less-prevelant responses). The Am Indian group includes both American Indians and Alaska Natives.

    8. disability: Disability status is divided into "No" and "Yes" groups, indicating whether the person was identified as having a disability. Disabilities screened for in the CPS include hearing impairment, vision impairment (not sufficiently correctable by glasses), cognitive difficulties arising from physical, mental, or emotional conditions, serious difficulty walking or climbing stairs, difficulty dressing or bathing, and difficulties performing errands due to physical, mental, or emotional conditions. The Census Bureau began collecting data on disability status in June 2008; accordingly, this category is unavailable in Supplements prior to that date. Note that disability status is only recorded in the CPS for individuals ages 15 and older. As a result, children are excluded from the universe when calculating statistics by disability status, even if they are otherwise considered part of the universe for the variable of interest.

    9. metro: Metropolitan status is divided into "No," "Yes," and "Unkown," reflecting information in the dataset about the household's location. A household located within a metropolitan statistical area is assigned to the Yes group, and those outside such areas are assigned to No. However, due to the risk of de-anonymization, the metropolitan area status of certain households is unidentified in public use datasets. In those cases, the Census Bureau has determined that revealing this geographic information poses a disclosure risk. Such households are tallied in the Unknown group.

    10. scChldHome:

  8. a

    Data from: Features of Interest

    • hub.arcgis.com
    • data.deschutes.org
    Updated Jun 4, 2021
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    Deschutes County (2021). Features of Interest [Dataset]. https://hub.arcgis.com/maps/deschutes::features-of-interest-3
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    Dataset updated
    Jun 4, 2021
    Dataset authored and provided by
    Deschutes County
    Area covered
    Description

    This feature class contains point locations for various features of interest throughout Deschutes County, Oregon including mountain peaks, national monuments, city parks, state parks, rural parks, snow parks, golf courses, campgrounds, trail heads, caves, waterfalls, boat launches, hatcheries, and view points.

  9. v

    VT E911 Other Mapped Features of Interest

    • geodata.vermont.gov
    • sov-vcgi.opendata.arcgis.com
    • +1more
    Updated Jul 18, 2011
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    VT Center for Geographic Information (2011). VT E911 Other Mapped Features of Interest [Dataset]. https://geodata.vermont.gov/maps/vt-e911-other-mapped-features-of-interest
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    Dataset updated
    Jul 18, 2011
    Dataset authored and provided by
    VT Center for Geographic Information
    License

    MIT Licensehttps://opensource.org/licenses/MIT
    License information was derived automatically

    Area covered
    Description

    (Link to Metadata) This dataset is comprised of polygons approximating areas that may be relevant to emergency management; it focuses on representation of NON-building footprints (e.g., solar fields, alpine trails, sporting fields, and quarries/mines). For a dataset that models building footprints, go to VT Building Footprints.

  10. 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
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    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).

  11. Loan Approval Classification Dataset

    • kaggle.com
    Updated Oct 29, 2024
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    Ta-wei Lo (2024). Loan Approval Classification Dataset [Dataset]. https://www.kaggle.com/datasets/taweilo/loan-approval-classification-data
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Oct 29, 2024
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Ta-wei Lo
    License

    Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
    License information was derived automatically

    Description

    1. Data Source

    This dataset is a synthetic version inspired by the original Credit Risk dataset on Kaggle and enriched with additional variables based on Financial Risk for Loan Approval data. SMOTENC was used to simulate new data points to enlarge the instances. The dataset is structured for both categorical and continuous features.

    2. Metadata

    The dataset contains 45,000 records and 14 variables, each described below:

    ColumnDescriptionType
    person_ageAge of the personFloat
    person_genderGender of the personCategorical
    person_educationHighest education levelCategorical
    person_incomeAnnual incomeFloat
    person_emp_expYears of employment experienceInteger
    person_home_ownershipHome ownership status (e.g., rent, own, mortgage)Categorical
    loan_amntLoan amount requestedFloat
    loan_intentPurpose of the loanCategorical
    loan_int_rateLoan interest rateFloat
    loan_percent_incomeLoan amount as a percentage of annual incomeFloat
    cb_person_cred_hist_lengthLength of credit history in yearsFloat
    credit_scoreCredit score of the personInteger
    previous_loan_defaults_on_fileIndicator of previous loan defaultsCategorical
    loan_status (target variable)Loan approval status: 1 = approved; 0 = rejectedInteger

    3. Data Usage

    The dataset can be used for multiple purposes:

    • Exploratory Data Analysis (EDA): Analyze key features, distribution patterns, and relationships to understand credit risk factors.
    • Classification: Build predictive models to classify the loan_status variable (approved/not approved) for potential applicants.
    • Regression: Develop regression models to predict the credit_score variable based on individual and loan-related attributes.

    Mind the data issue from the original data, such as the instance > 100-year-old as age.

    This dataset provides a rich basis for understanding financial risk factors and simulating predictive modeling processes for loan approval and credit scoring.

    Feel free to leave comments on the discussion. I'd appreciate your upvote if you find my dataset useful! 😀

  12. p

    NSW Features of Interest - Health Facilities

    • data.peclet.com.au
    csv, excel, geojson +1
    Updated Mar 28, 2025
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    (2025). NSW Features of Interest - Health Facilities [Dataset]. https://data.peclet.com.au/explore/dataset/nsw-features-of-interest-health-facilities/
    Explore at:
    geojson, excel, csv, jsonAvailable download formats
    Dataset updated
    Mar 28, 2025
    License

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

    Area covered
    New South Wales
    Description

    The NSW Features of Interest Category – Health Services is part of the Building Complex feature class and is represented as a community facility.Features that make up the NSW Features of interest - Health Category service include:Ambulance - An ambulance station is a structure or other area set aside for storage of ambulance vehicles and medical equipment. This point feature dataset is part of the Features of Interest Category Database.Children’s Hospital - A hospital specifically for the care of children.General Hospital - An institution in which the sick or injured persons are given medical or surgical treatment.Psychiatric Hospital - A hospital for the care and treatment of patients affected with acute or chronic mental illness.These point feature datasets are part of the Features of Interest Category data and all the Health-related data centroids are positioned within the cadastral parcel in which they are located.These features do not fit within one of the ten foundation spatial data themes and are therefore classified as a category. They have historically been captured by Spatial Services as part of the NSW topographic mapping program and therefore warrant inclusion.

  13. n

    Transport-related Features of Interest (FOI) Point - Victoria - Dataset -...

    • national-cycling-data-exchange.ncdap.org
    Updated Apr 2, 2025
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    (2025). Transport-related Features of Interest (FOI) Point - Victoria - Dataset - National Cycling Data Exchange [Dataset]. https://national-cycling-data-exchange.ncdap.org/dataset/features-of-interest-foi-point-victoria
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    Dataset updated
    Apr 2, 2025
    License

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

    Description

    Part of the Vicmap Features of Interest dataset Point location of features of interest within Victoria Points represent relatively small area features which have been generalised or larger features where the spatial source is a coordinate or an address and hence that entity point represents that feature. This layer includes transport-related POIs, like schools, healthcare, childcare, signs, landmarks, recreational resources, etc.

  14. d

    NSW Features of Interest - Health Facilities multiCRS

    • data.gov.au
    • data.nsw.gov.au
    arcgis rest service
    Updated Aug 11, 2025
    + more versions
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    Spatial Services (DCS) (2025). NSW Features of Interest - Health Facilities multiCRS [Dataset]. https://data.gov.au/data/dataset/nsw-1-6ce011fc15bc4b36a2ae7dc16849db90
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    arcgis rest serviceAvailable download formats
    Dataset updated
    Aug 11, 2025
    Dataset authored and provided by
    Spatial Services (DCS)
    Area covered
    New South Wales
    Description

    Export Data Access API NSW Features of Interest Category - Health Facilities multiCRS MultiCRS service - supporting requests in multiple Coordinate Reference Systems - Information Sheet A new series of ‘multiCRS’ web services have been published to support GDA2020. These new ‘multiCRS’ services:· have a spatial reference of GDA2020· support alignment with GDA2020, GDA94 or [WGS 84-aligned-to-GDA2020] GIS environments,using built-in server-side transformations:o GDA94 < NTv2-CPD > GDA2020o GDA94 < NTv2-CPD > WGS 84 aligned to GDA2020o GDA2020 < NULL > WGS 84 aligned to GDA2020 Note: ESRI software will automatically align by transforming from the sourceSpatialReference (GDA94). Other software may need to set client-side transformations from the SpatialReference (GDA2020). Note: Client-side transformation(s) can be used to over-ride these default transformations.The original [WGS 84-aligned-to-GDA2020] is still available, without the ‘multiCRS’ suffix. In due course, and allowing time for user feedback and testing, it is intended that the original service name will adopt this new multiCRS functionality. Metadata Portal Metadata InformationContent TitleNSW Features of Interest - Health Facilities multiCRSContent TypeHosted Feature LayerDescriptionThe NSW Features of Interest Category – Health Services is part of the Building Complex feature class and is represented as a community facility.Features that make up the NSW Features of interest -Health Category service include:Ambulance - An ambulance station is a structure or other area set aside for storage of ambulance vehicles and medical equipment. This point feature dataset is part of the Features of Interest Category Database.Children’s Hospital - A hospital specifically for the care of children.General Hospital - An institution in which the sick or injured persons are given medical or surgical treatment.Psychiatric Hospital - A hospital for the care and treatment of patients affected with acute or chronic mental illness.These point feature datasets are part of the Features of Interest Category data and all the Health-related data centroids are positioned within the cadastral parcel in which they are located.These features do not fit within one of the ten foundation spatial data themes and are therefore classified as a category. They have historically been captured by Spatial Services as part of the NSW topographic mapping program and therefore warrant inclusion.Initial Publication Date05/02/2020Data Currency01/01/3000Data Update FrequencyDailyContent SourceData provider filesFile TypeESRI File Geodatabase (*.gdb)Attribution© State of New South Wales (Spatial Services, a business unit of the Department of Customer Service NSW). For current information go to spatial.nsw.gov.au.Data Theme, Classification or Relationship to other DatasetsFeatures of Interest Category of the Foundation Spatial Data Framework (FSDF)AccuracyThis dataset was captured by utilising the best available source at a variety of scales and accuracies, ranging from 1:500 to 1:250 000 according to the National Mapping Council of Australia, Standards of Map Accuracy (1975). Therefore, the position of the feature instance will be within 0.5mm at map scale for 90% of the well-defined points. That is, 1:500 = 0.25m, 1:2000 = 1m, 1:4000 = 2m, 1:25000 = 12.5m, 1:50000 = 25m and 1:100000 = 50m. A program to upgrade the spatial location and accuracy of data is ongoing.Spatial Reference System (dataset)GDA94Spatial Reference System (web service)OtherWGS84 Equivalent ToGDA2020Spatial ExtentFull stateContent LineagePlease contact us via the Spatial Services Customer HubData ClassificationUnclassifiedData Access PolicyOpenData QualityPlease contact us via the Spatial Services Customer HubTerms and ConditionsCreative CommonStandard and SpecificationOpen Geospatial Consortium (OGC) implemented and compatible for consumption by common GIS platforms. Available as either cache or non-cache, depending on client use or requirement.Data CustodianDCS Spatial Services346 Panorama AveBathurst NSW 2795Point of ContactPlease contact us via the Spatial Services Customer HubData AggregatorDCS Spatial Services346 Panorama AveBathurst NSW 2795Data DistributorDCS Spatial Services346 Panorama AveBathurst NSW 2795Additional Supporting InformationData DictionariesTRIM Number

  15. d

    Factori USA Consumer Graph Data | socio-demographic, location, interest and...

    • datarade.ai
    .json, .csv
    Updated Jul 23, 2022
    + more versions
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    Factori (2022). Factori USA Consumer Graph Data | socio-demographic, location, interest and intent data | E-Commere |Mobile Apps | Online Services [Dataset]. https://datarade.ai/data-products/factori-usa-consumer-graph-data-socio-demographic-location-factori
    Explore at:
    .json, .csvAvailable download formats
    Dataset updated
    Jul 23, 2022
    Dataset authored and provided by
    Factori
    Area covered
    United States of America
    Description

    Our consumer data is gathered and aggregated via surveys, digital services, and public data sources. We use powerful profiling algorithms to collect and ingest only fresh and reliable data points.

    Our comprehensive data enrichment solution includes a variety of data sets that can help you address gaps in your customer data, gain a deeper understanding of your customers, and power superior client experiences.

    1. Geography - City, State, ZIP, County, CBSA, Census Tract, etc.
    2. Demographics - Gender, Age Group, Marital Status, Language etc.
    3. Financial - Income Range, Credit Rating Range, Credit Type, Net worth Range, etc
    4. Persona - Consumer type, Communication preferences, Family type, etc
    5. Interests - Content, Brands, Shopping, Hobbies, Lifestyle etc.
    6. Household - Number of Children, Number of Adults, IP Address, etc.
    7. Behaviours - Brand Affinity, App Usage, Web Browsing etc.
    8. Firmographics - Industry, Company, Occupation, Revenue, etc
    9. Retail Purchase - Store, Category, Brand, SKU, Quantity, Price etc.
    10. Auto - Car Make, Model, Type, Year, etc.
    11. Housing - Home type, Home value, Renter/Owner, Year Built etc.

    Consumer Graph Schema & Reach: Our data reach represents the total number of counts available within various categories and comprises attributes such as country location, MAU, DAU & Monthly Location Pings:

    Data Export Methodology: Since we collect data dynamically, we provide the most updated data and insights via a best-suited method on a suitable interval (daily/weekly/monthly).

    Consumer Graph Use Cases:

    360-Degree Customer View:Get a comprehensive image of customers by the means of internal and external data aggregation.

    Data Enrichment:Leverage Online to offline consumer profiles to build holistic audience segments to improve campaign targeting using user data enrichment

    Fraud Detection: Use multiple digital (web and mobile) identities to verify real users and detect anomalies or fraudulent activity.

    Advertising & Marketing:Understand audience demographics, interests, lifestyle, hobbies, and behaviors to build targeted marketing campaigns.

    Using Factori Consumer Data graph you can solve use cases like:

    Acquisition Marketing Expand your reach to new users and customers using lookalike modeling with your first party audiences to extend to other potential consumers with similar traits and attributes.

    Lookalike Modeling

    Build lookalike audience segments using your first party audiences as a seed to extend your reach for running marketing campaigns to acquire new users or customers

    And also, CRM Data Enrichment, Consumer Data Enrichment B2B Data Enrichment B2C Data Enrichment Customer Acquisition Audience Segmentation 360-Degree Customer View Consumer Profiling Consumer Behaviour Data

    Here's the schema of Consumer Data: person_id first_name last_name age gender linkedin_url twitter_url facebook_url city state address zip zip4 country delivery_point_bar_code carrier_route walk_seuqence_code fips_state_code fips_country_code country_name latitude longtiude address_type metropolitan_statistical_area core_based+statistical_area census_tract census_block_group census_block primary_address pre_address streer post_address address_suffix address_secondline address_abrev census_median_home_value home_market_value property_build+year property_with_ac property_with_pool property_with_water property_with_sewer general_home_value property_fuel_type year month household_id Census_median_household_income household_size marital_status length+of_residence number_of_kids pre_school_kids single_parents working_women_in_house_hold homeowner children adults generations net_worth education_level occupation education_history credit_lines credit_card_user newly_issued_credit_card_user credit_range_new
    credit_cards loan_to_value mortgage_loan2_amount mortgage_loan_type
    mortgage_loan2_type mortgage_lender_code
    mortgage_loan2_render_code
    mortgage_lender mortgage_loan2_lender
    mortgage_loan2_ratetype mortgage_rate
    mortgage_loan2_rate donor investor interest buyer hobby personal_email work_email devices phone employee_title employee_department employee_job_function skills recent_job_change company_id company_name company_description technologies_used office_address office_city office_country office_state office_zip5 office_zip4 office_carrier_route office_latitude office_longitude office_cbsa_code
    office_census_block_group
    office_census_tract office_county_code
    company_phone
    company_credit_score
    company_csa_code
    company_dpbc
    company_franchiseflag
    company_facebookurl company_linkedinurl company_twitterurl
    company_website company_fortune_rank
    company_government_type company_headquarters_branch company_home_business
    company_industry
    company_num_pcs_used
    company_num_employees
    company_firm_individual company_msa company_msa_name
    company_naics_code
    company_naics_description
    company_naics_code2 company_naics_description2
    company_sic_code2
    company_sic_code2_desc...

  16. WHO national life expectancy

    • kaggle.com
    Updated Oct 16, 2020
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    MMattson (2020). WHO national life expectancy [Dataset]. https://www.kaggle.com/datasets/mmattson/who-national-life-expectancy/data
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Oct 16, 2020
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    MMattson
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    Context

    I am developing my data science skills in areas outside of my previous work. An interesting problem for me was to identify which factors influence life expectancy on a national level. There is an existing Kaggle data set that explored this, but that information was corrupted. Part of the problem solving process is to step back periodically and ask "does this make sense?" Without reasonable data, it is harder to notice mistakes in my analysis code (as opposed to unusual behavior due to the data itself). I wanted to make a similar data set, but with reliable information.

    This is my first time exploring life expectancy, so I had to guess which features might be of interest when making the data set. Some were included for comparison with the other Kaggle data set. A number of potentially interesting features (like air pollution) were left off due to limited year or country coverage. Since the data was collected from more than one server, some features are present more than once, to explore the differences.

    Content

    A goal of the World Health Organization (WHO) is to ensure that a billion more people are protected from health emergencies, and provided better health and well-being. They provide public data collected from many sources to identify and monitor factors that are important to reach this goal. This set was primarily made using GHO (Global Health Observatory) and UNESCO (United Nations Educational Scientific and Culture Organization) information. The set covers the years 2000-2016 for 183 countries, in a single CSV file. Missing data is left in place, for the user to decide how to deal with it.

    Three notebooks are provided for my cursory analysis, a comparison with the other Kaggle set, and a template for creating this data set.

    Inspiration

    There is a lot to explore, if the user is interested. The GHO server alone has over 2000 "indicators". - How are the GHO and UNESCO life expectancies calculated, and what is causing the difference? That could also be asked for Gross National Income (GNI) and mortality features. - How does the life expectancy after age 60 compare to the life expectancy at birth? Is the relationship with the features in this data set different for those two targets? - What other indicators on the servers might be interesting to use? Some of the GHO indicators are different studies with different coverage. Can they be combined to make a more useful and robust data feature? - Unraveling the correlations between the features would take significant work.

  17. d

    Data from: Mississippi School Food Service Directors' Interest in and...

    • catalog.data.gov
    • agdatacommons.nal.usda.gov
    Updated Jun 5, 2025
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    Agricultural Research Service (2025). Mississippi School Food Service Directors' Interest in and Experience with Farm to School [Dataset]. https://catalog.data.gov/dataset/mississippi-school-food-service-directors-interest-in-and-experience-with-farm-to-school-ce802
    Explore at:
    Dataset updated
    Jun 5, 2025
    Dataset provided by
    Agricultural Research Service
    Description

    The dataset contains information collected from 122 K-12 public school food service directors in Mississippi, USA, who completed an online survey designed for Mississippi school food service directors. The survey was created using Snap Surveys Desktop software. Information includes school size (number of enrolled students), percent of students participating in free or reduced-price lunch, foods sourced locally (defined as grown or produced in Mississippi), desire to purchase more or start purchasing locally sourced foods, fresh fruit and vegetable purchasing practices, experience purchasing fruits and vegetables from farmers, challenges purchasing from farmers, and interest in other farm to school (F2S) activities. School food service directors' demographic characteristics collected include gender, age, ethnicity/race, marital status, and education level. The data were collected from October 2021 to January 2022 using an online mobile and secure survey management system called Snap Online. The data were collected to obtain updated demographic and school purchasing characteristics from school food service directors in Mississippi and to determine their current abilities, experiences, and desires to engage in F2S activities. The dataset can be used to learn about K-12 public school food service directors in Mississippi but results should not be generalized to all school food service directors in Mississippi or elsewhere in the USA. Resources in this dataset:Resource Title: Mississippi Farm to School Food Service Director Dataset. File Name: MS F2S School Data Public.csvResource Description: The dataset contains information collected from 122 K-12 public school food service directors in Mississippi regarding their experience with and interest in farm to school, including purchasing local foods. It also contains demographic characteristics of the school food service directors and their fresh fruit and vegetable purchasing practices.Resource Software Recommended: Microsoft Excel,url: https://www.microsoft.com/en-us/microsoft-365/excel Resource Title: Mississippi Farm to School Food Service Director Data Dictionary. File Name: MS F2S School Data Dictionary Public.csvResource Description: The file contains information for variables contained in the associated dataset including names, brief descriptions, types, lengths, and values.Resource Software Recommended: Microsoft Excel,url: https://www.microsoft.com/en-us/microsoft-365/excel

  18. March Madness Historical DataSet (2002 to 2025)

    • kaggle.com
    Updated Apr 22, 2025
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    Jonathan Pilafas (2025). March Madness Historical DataSet (2002 to 2025) [Dataset]. https://www.kaggle.com/datasets/jonathanpilafas/2024-march-madness-statistical-analysis
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Apr 22, 2025
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Jonathan Pilafas
    License

    MIT Licensehttps://opensource.org/licenses/MIT
    License information was derived automatically

    Description

    This Kaggle dataset comes from an output dataset that powers my March Madness Data Analysis dashboard in Domo. - Click here to view this dashboard: Dashboard Link - Click here to view this dashboard features in a Domo blog post: Hoops, Data, and Madness: Unveiling the Ultimate NCAA Dashboard

    This dataset offers one the most robust resource you will find to discover key insights through data science and data analytics using historical NCAA Division 1 men's basketball data. This data, sourced from KenPom, goes as far back as 2002 and is updated with the latest 2025 data. This dataset is meticulously structured to provide every piece of information that I could pull from this site as an open-source tool for analysis for March Madness.

    Key features of the dataset include: - Historical Data: Provides all historical KenPom data from 2002 to 2025 from the Efficiency, Four Factors (Offense & Defense), Point Distribution, Height/Experience, and Misc. Team Stats endpoints from KenPom's website. Please note that the Height/Experience data only goes as far back as 2007, but every other source contains data from 2002 onward. - Data Granularity: This dataset features an individual line item for every NCAA Division 1 men's basketball team in every season that contains every KenPom metric that you can possibly think of. This dataset has the ability to serve as a single source of truth for your March Madness analysis and provide you with the granularity necessary to perform any type of analysis you can think of. - 2025 Tournament Insights: Contains all seed and region information for the 2025 NCAA March Madness tournament. Please note that I will continually update this dataset with the seed and region information for previous tournaments as I continue to work on this dataset.

    These datasets were created by downloading the raw CSV files for each season for the various sections on KenPom's website (Efficiency, Offense, Defense, Point Distribution, Summary, Miscellaneous Team Stats, and Height). All of these raw files were uploaded to Domo and imported into a dataflow using Domo's Magic ETL. In these dataflows, all of the column headers for each of the previous seasons are standardized to the current 2025 naming structure so all of the historical data can be viewed under the exact same field names. All of these cleaned datasets are then appended together, and some additional clean up takes place before ultimately creating the intermediate (INT) datasets that are uploaded to this Kaggle dataset. Once all of the INT datasets were created, I joined all of the tables together on the team name and season so all of these different metrics can be viewed under one single view. From there, I joined an NCAAM Conference & ESPN Team Name Mapping table to add a conference field in its full length and respective acronyms they are known by as well as the team name that ESPN currently uses. Please note that this reference table is an aggregated view of all of the different conferences a team has been a part of since 2002 and the different team names that KenPom has used historically, so this mapping table is necessary to map all of the teams properly and differentiate the historical conferences from their current conferences. From there, I join a reference table that includes all of the current NCAAM coaches and their active coaching lengths because the active current coaching length typically correlates to a team's success in the March Madness tournament. I also join another reference table to include the historical post-season tournament teams in the March Madness, NIT, CBI, and CIT tournaments, and I join another reference table to differentiate the teams who were ranked in the top 12 in the AP Top 25 during week 6 of the respective NCAA season. After some additional data clean-up, all of this cleaned data exports into the "DEV _ March Madness" file that contains the consolidated view of all of this data.

    This dataset provides users with the flexibility to export data for further analysis in platforms such as Domo, Power BI, Tableau, Excel, and more. This dataset is designed for users who wish to conduct their own analysis, develop predictive models, or simply gain a deeper understanding of the intricacies that result in the excitement that Division 1 men's college basketball provides every year in March. Whether you are using this dataset for academic research, personal interest, or professional interest, I hope this dataset serves as a foundational tool for exploring the vast landscape of college basketball's most riveting and anticipated event of its season.

  19. r

    NSW Points of Interest (POI)

    • researchdata.edu.au
    • data.nsw.gov.au
    Updated Jun 15, 2018
    + more versions
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    data.nsw.gov.au (2018). NSW Points of Interest (POI) [Dataset]. https://researchdata.edu.au/nsw-points-poi/1341989
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    Dataset updated
    Jun 15, 2018
    Dataset provided by
    data.nsw.gov.au
    Area covered
    Description

    The Points of Interest (POI) web service provides the identification and location of a feature, service or activity that people may want to see, know about or visit. POI features for this service are primarily derived from features maintained within the Digital Topographic Database (DTDB). The POI feature class is maintained programmatically (automated) by sourcing spatial and aspatial attributes from other feature classes in the DTDB that contain POI features. The midpoint of a line or polygon features is used to define the POI. Points of Interest include features related to Community, Education, Recreation, Transportation, Utility, or Hydrography, Physiography and Place, and defined as a place with a prescribed name. The attribute information for an individual dataset may have been thinned or modifed to cater for the service. The service is available in a cached environment only. This dataset is compliant with the NSW FSDF and its specifications. For details information for each individual dataset contained in this web services.\r \r - - - \r NOTE: Please contact the Customer HUB https://customerhub.spatial.nsw.gov.au/ for advice on datasets access.\r - - -\r

  20. w

    UK Ramsar qualifying features (birds)

    • data.wu.ac.at
    • data.europa.eu
    csv
    Updated May 17, 2018
    + more versions
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    Joint Nature Conservation Committee (2018). UK Ramsar qualifying features (birds) [Dataset]. https://data.wu.ac.at/odso/data_gov_uk/ZWQ4YWYzMTMtNDU1Mi00MzU5LThhN2MtNjgxY2FkZmQ3M2Y0
    Explore at:
    csvAvailable download formats
    Dataset updated
    May 17, 2018
    Dataset provided by
    Joint Nature Conservation Committee
    License

    Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
    License information was derived automatically

    Area covered
    United Kingdom
    Description

    Ramsar sites are wetlands of international importance designated under the Ramsar Convention. This dataset contains details for all qualifying bird species (of international and national importance) for all designated Ramsar sites within the UK and its Overseas Territories and Crown Dependencies. The majority of UKs sites are established for internationally important populations of non breeding waterfowl though some sites have no qualifying ornithological interest. The dataset presents data used on the Ramsar Information Sheets compiled for all Ramsar sites. This dataset contains the following columns.

    SITENAME SITECODE COUNTRY SITE STATUS - always classified/designated INTEREST STATUS - either internationally or nationally important NOWAK CODE - standard species code used in international reporting BIRDNAME LAY_TITLE - common name SEASON COUNT UNITS - individuals or pairs Pop UNITS count and unit together eg 4345 i YEAR - count period for bird counts CRITERIA_DESC - description of the population proportion - proportion ie % of total population assemb component - Y = component of assemblage X_COORDINATE - easting Y_COORDINATE - northing Note that Overseas Territories Birds are not included here - details of these are available within the dataset "UK Ramsar sites"

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Office of the Chief Technology Officer (2025). Points of Interest [Dataset]. https://catalog.data.gov/dataset/points-of-interest-61599

Points of Interest

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Dataset updated
Feb 4, 2025
Dataset provided by
Office of the Chief Technology Officer
Description

Also known as place names. The dataset contains locations and attributes of address alias points, created as part of the Master Address Repository (MAR) for the Office of the Chief Technology Officer (OCTO) and participating DC government agencies. It contains address alias names in the District of Columbia which are typically placed on buildings. These alias names represent named features such as: - Schools - Federal Buildings - Military Installations - Hospitals - Museums - Monuments - University Structures - Fire and Police Stations - Libraries - Metro Facilities - Historical Landmarks - Recreation Centers - Mile Markers - Marinas and more. More information on the MAR can be found at https://opendata.dc.gov/pages/addressing-in-dc. The data dictionary is available: https://opendata.dc.gov/documents/2a4b3d59aade43188b6d18e3811f4fd3/explore. In the MAR 2, the AddressAliasPt is called PLACE_NAMES_PT and features additional useful information such as created date, last edited date, begin date, and more.

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