73 datasets found
  1. Leading data collection methods among UK consumers 2023

    • statista.com
    Updated Jun 26, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Statista (2025). Leading data collection methods among UK consumers 2023 [Dataset]. https://www.statista.com/statistics/1453941/data-collection-method-consumers-uk/
    Explore at:
    Dataset updated
    Jun 26, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Nov 2023 - Dec 2023
    Area covered
    United Kingdom
    Description

    During a late 2023 survey among working-age consumers in the United Kingdom, **** percent of respondents stated that they preferred for their data to be collected via interactive surveys. Meanwhile, **** percent of respondents mentioned loyalty cards/programs as their favored data collection method.

  2. Web-based For-Hire Fee Data Collection

    • fisheries.noaa.gov
    • catalog.data.gov
    Updated Mar 2, 2018
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Southeast Fisheries Science Center (2018). Web-based For-Hire Fee Data Collection [Dataset]. https://www.fisheries.noaa.gov/inport/item/30406
    Explore at:
    Dataset updated
    Mar 2, 2018
    Dataset provided by
    Southeast Fisheries Science Center
    Time period covered
    2011 - Jul 17, 2125
    Area covered
    Description

    This dataset contains information on the prices and fees charged by for-hire fishing operations in the Southeastern US.

  3. d

    1995 National Oil and Gas Assessment Data Collection Archive

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Jul 20, 2024
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    U.S. Geological Survey (2024). 1995 National Oil and Gas Assessment Data Collection Archive [Dataset]. https://catalog.data.gov/dataset/1995-national-oil-and-gas-assessment-data-collection-archive
    Explore at:
    Dataset updated
    Jul 20, 2024
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Description

    This reflects a collection of tabular, geospatial and textual information from 3 CD-ROMs published in 1995 and 1996 from the USGS in support of the 1995 National Oil and Gas Assessment Project. This includes USGS DDS Series 30, 35 and 36. This collection was available online through various web platforms hosted by USGS Central Energy Resources Science Center / Central Energy Team since initial recovery from the CD's in early 2000's. This contains the data collection from the original data archives. Over 11,000 files are part of this collection, with 1,524 shapefiles, 648 PDFs and 189 Tab-delimited data files. Limited qa/qc was performed on this due to time constraints and acknowledging that this is a representation of a product over 20 years old.

  4. d

    US Ecommerce Data - Bungee API and Custom Intelligence Data Collection &...

    • datarade.ai
    Updated Jun 11, 2020
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Bungeetech (2020). US Ecommerce Data - Bungee API and Custom Intelligence Data Collection & Extraction [Dataset]. https://datarade.ai/data-products/bungee-api-and-custom-intelligence-data-collection-extraction
    Explore at:
    Dataset updated
    Jun 11, 2020
    Dataset authored and provided by
    Bungeetech
    Area covered
    United States
    Description

    We have built a data collection engine that allows us to collect publicly available data from the Internet at scale, just like real users at home. This powerful human emulation, coupled with unique patent pending hardware and networking innovations, enables us to collect information from any website or native application without fail.

    Bungee API and Custom Intelligence Data Collection & Extraction

  5. s

    Latest Orthophoto Outcome Shape Data Collection - Datasets - This service...

    • store.smartdatahub.io
    Updated Aug 26, 2024
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    (2024). Latest Orthophoto Outcome Shape Data Collection - Datasets - This service has been deprecated - please visit https://www.smartdatahub.io/ to access data. See the About page for details. // [Dataset]. https://store.smartdatahub.io/dataset/se_lantmateriet_utfall_ortofoto_senaste_shape_zip
    Explore at:
    Dataset updated
    Aug 26, 2024
    Description

    The dataset collection in question is comprised of a series of related tables, which are organized in a systematic manner with rows and columns for the ease of data interpretation. These tables are part of a larger dataset collection that is primarily sourced from the website of Lantmäteriet (The Land Survey of Sweden), located in Sweden. Each table within this collection contains a variety of information and data points, providing a comprehensive overview of the subject matter at hand. The dataset collection as a whole serves as a valuable resource for comprehensive data analysis and interpretation.

  6. NSDUH 2021 Data Collection Final Report

    • catalog.data.gov
    Updated Jul 24, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Substance Abuse and Mental Health Services Administration (2025). NSDUH 2021 Data Collection Final Report [Dataset]. https://catalog.data.gov/dataset/nsduh-2021-data-collection-final-report
    Explore at:
    Dataset updated
    Jul 24, 2025
    Dataset provided by
    Substance Abuse and Mental Health Services Administrationhttp://www.samhsa.gov/
    Description

    Learn about all the data collection operations for the 2021 National Survey on Drug Use and Health (NSDUH). The report details the sampling, counting, and listing operations; preparation of survey materials; field staffing; data collection (both in-person and web); and quality control practices. It also includes information on the results of data collection, including detailed response rates.

  7. O

    Online Questionnaire System Report

    • marketreportanalytics.com
    doc, pdf, ppt
    Updated Apr 3, 2025
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Market Report Analytics (2025). Online Questionnaire System Report [Dataset]. https://www.marketreportanalytics.com/reports/online-questionnaire-system-55309
    Explore at:
    ppt, doc, pdfAvailable download formats
    Dataset updated
    Apr 3, 2025
    Dataset authored and provided by
    Market Report Analytics
    License

    https://www.marketreportanalytics.com/privacy-policyhttps://www.marketreportanalytics.com/privacy-policy

    Time period covered
    2025 - 2033
    Area covered
    Global
    Variables measured
    Market Size
    Description

    The online questionnaire system market is experiencing robust growth, driven by the increasing need for efficient data collection across diverse sectors. The market's expansion is fueled by several key factors. Firstly, the widespread adoption of digital technologies and the rising preference for online interactions are significantly boosting the demand for user-friendly and scalable online survey platforms. Secondly, the enhanced analytical capabilities offered by these systems enable businesses and researchers to gain valuable insights from collected data, facilitating informed decision-making. Thirdly, the growing need for real-time feedback mechanisms in various industries like customer experience management and market research further accelerates market growth. We estimate the 2025 market size to be around $5 billion, considering the global adoption rate and growth potential across regions. A compound annual growth rate (CAGR) of 15% is projected for the forecast period (2025-2033), indicating a substantial increase in market value by 2033. This growth is expected to be driven by continuous advancements in survey methodologies, integration with other business intelligence tools, and the growing adoption of mobile surveys. However, certain challenges persist. The market faces competitive pressure from numerous established and emerging players. Data security and privacy concerns remain a significant obstacle, especially with regulations like GDPR becoming more stringent. Furthermore, the cost of implementation and the need for technical expertise can hinder adoption among smaller businesses. Despite these restraints, the market is expected to remain highly dynamic, with continuous innovations in survey design, analysis, and integration capabilities shaping its future trajectory. The market segmentation by application (Academic Research, Market Research, Internal Management of Enterprises, Others) and type (Mobile Survey, Web Survey) showcases the diverse application potential of this technology across various sectors. The geographical distribution, with strong presence in North America and Europe, suggests a well-established market in developed regions, with significant growth opportunities in emerging economies like those in Asia-Pacific and certain regions of Africa.

  8. Genetic Stocks Oryza (GSOR) Collection Website

    • catalog.data.gov
    • cloud.csiss.gmu.edu
    • +2more
    Updated Apr 21, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Agricultural Research Service (2025). Genetic Stocks Oryza (GSOR) Collection Website [Dataset]. https://catalog.data.gov/dataset/genetic-stocks-oryza-gsor-collection-website-20704
    Explore at:
    Dataset updated
    Apr 21, 2025
    Dataset provided by
    Agricultural Research Servicehttps://www.ars.usda.gov/
    Description

    The GSOR website describes the GSOR germplasm collection; provides information on how to donate to the collection and how to request from the collection. Resources in this dataset:Resource Title: Web Page. File Name: Web Page, url: https://www.ars.usda.gov/southeast-area/stuttgart-ar/dale-bumpers-national-rice-research-center/docs/genetic-stocks-oryza-gsor-collection-home/

  9. d

    Altosight | AI Custom Web Scraping Data | 100% Global | Free Unlimited Data...

    • datarade.ai
    .json, .csv, .xls
    Updated Sep 7, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Altosight (2024). Altosight | AI Custom Web Scraping Data | 100% Global | Free Unlimited Data Points | Bypassing All CAPTCHAs & Blocking Mechanisms | GDPR Compliant [Dataset]. https://datarade.ai/data-products/altosight-ai-custom-web-scraping-data-100-global-free-altosight
    Explore at:
    .json, .csv, .xlsAvailable download formats
    Dataset updated
    Sep 7, 2024
    Dataset authored and provided by
    Altosight
    Area covered
    Wallis and Futuna, Paraguay, Svalbard and Jan Mayen, Singapore, Côte d'Ivoire, Greenland, Guatemala, Tajikistan, Czech Republic, Chile
    Description

    Altosight | AI Custom Web Scraping Data

    ✦ Altosight provides global web scraping data services with AI-powered technology that bypasses CAPTCHAs, blocking mechanisms, and handles dynamic content.

    We extract data from marketplaces like Amazon, aggregators, e-commerce, and real estate websites, ensuring comprehensive and accurate results.

    ✦ Our solution offers free unlimited data points across any project, with no additional setup costs.

    We deliver data through flexible methods such as API, CSV, JSON, and FTP, all at no extra charge.

    ― Key Use Cases ―

    ➤ Price Monitoring & Repricing Solutions

    🔹 Automatic repricing, AI-driven repricing, and custom repricing rules 🔹 Receive price suggestions via API or CSV to stay competitive 🔹 Track competitors in real-time or at scheduled intervals

    ➤ E-commerce Optimization

    🔹 Extract product prices, reviews, ratings, images, and trends 🔹 Identify trending products and enhance your e-commerce strategy 🔹 Build dropshipping tools or marketplace optimization platforms with our data

    ➤ Product Assortment Analysis

    🔹 Extract the entire product catalog from competitor websites 🔹 Analyze product assortment to refine your own offerings and identify gaps 🔹 Understand competitor strategies and optimize your product lineup

    ➤ Marketplaces & Aggregators

    🔹 Crawl entire product categories and track best-sellers 🔹 Monitor position changes across categories 🔹 Identify which eRetailers sell specific brands and which SKUs for better market analysis

    ➤ Business Website Data

    🔹 Extract detailed company profiles, including financial statements, key personnel, industry reports, and market trends, enabling in-depth competitor and market analysis

    🔹 Collect customer reviews and ratings from business websites to analyze brand sentiment and product performance, helping businesses refine their strategies

    ➤ Domain Name Data

    🔹 Access comprehensive data, including domain registration details, ownership information, expiration dates, and contact information. Ideal for market research, brand monitoring, lead generation, and cybersecurity efforts

    ➤ Real Estate Data

    🔹 Access property listings, prices, and availability 🔹 Analyze trends and opportunities for investment or sales strategies

    ― Data Collection & Quality ―

    ► Publicly Sourced Data: Altosight collects web scraping data from publicly available websites, online platforms, and industry-specific aggregators

    ► AI-Powered Scraping: Our technology handles dynamic content, JavaScript-heavy sites, and pagination, ensuring complete data extraction

    ► High Data Quality: We clean and structure unstructured data, ensuring it is reliable, accurate, and delivered in formats such as API, CSV, JSON, and more

    ► Industry Coverage: We serve industries including e-commerce, real estate, travel, finance, and more. Our solution supports use cases like market research, competitive analysis, and business intelligence

    ► Bulk Data Extraction: We support large-scale data extraction from multiple websites, allowing you to gather millions of data points across industries in a single project

    ► Scalable Infrastructure: Our platform is built to scale with your needs, allowing seamless extraction for projects of any size, from small pilot projects to ongoing, large-scale data extraction

    ― Why Choose Altosight? ―

    ✔ Unlimited Data Points: Altosight offers unlimited free attributes, meaning you can extract as many data points from a page as you need without extra charges

    ✔ Proprietary Anti-Blocking Technology: Altosight utilizes proprietary techniques to bypass blocking mechanisms, including CAPTCHAs, Cloudflare, and other obstacles. This ensures uninterrupted access to data, no matter how complex the target websites are

    ✔ Flexible Across Industries: Our crawlers easily adapt across industries, including e-commerce, real estate, finance, and more. We offer customized data solutions tailored to specific needs

    ✔ GDPR & CCPA Compliance: Your data is handled securely and ethically, ensuring compliance with GDPR, CCPA and other regulations

    ✔ No Setup or Infrastructure Costs: Start scraping without worrying about additional costs. We provide a hassle-free experience with fast project deployment

    ✔ Free Data Delivery Methods: Receive your data via API, CSV, JSON, or FTP at no extra charge. We ensure seamless integration with your systems

    ✔ Fast Support: Our team is always available via phone and email, resolving over 90% of support tickets within the same day

    ― Custom Projects & Real-Time Data ―

    ✦ Tailored Solutions: Every business has unique needs, which is why Altosight offers custom data projects. Contact us for a feasibility analysis, and we’ll design a solution that fits your goals

    ✦ Real-Time Data: Whether you need real-time data delivery or scheduled updates, we provide the flexibility to receive data when you need it. Track price changes, monitor product trends, or gather...

  10. BOEM Offshore Marine Cadastre Data Collection

    • hub.arcgis.com
    • catalog.data.gov
    • +1more
    Updated Jul 30, 2024
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Bureau of Ocean Energy Management ArcGIS Online (AGOL) (2024). BOEM Offshore Marine Cadastre Data Collection [Dataset]. https://hub.arcgis.com/maps/b7c257a27e8743028726d040b256ff3e
    Explore at:
    Dataset updated
    Jul 30, 2024
    Dataset provided by
    https://arcgis.com/
    Bureau of Ocean Energy Managementhttp://www.boem.gov/
    Authors
    Bureau of Ocean Energy Management ArcGIS Online (AGOL)
    License

    U.S. Government Workshttps://www.usa.gov/government-works
    License information was derived automatically

    Area covered
    Description

    This is a national data collection of data resources managed by the Bureau of Ocean Energy Management (BOEM) for the Outer Continental Shelf (OCS). The data collection is designated as a National Geospatial Data Asset (NGDA) and includes: OCS BOEM Offshore Boundary Lines (Submerged Lands Act Boundary, OCSLA Limit of “8(g) Zone,” and Continental Shelf Boundary), OCS Protraction Polygons - 1st Division, OCS Gulf of Mexico NAD27 Protraction Polygons - 1st Division, OCS Block Polygons - 2nd Division, OCS Gulf of Mexico NAD27 Block Polygons - 2nd Division, and Aliquot 16ths Polygons - 3rd Division.All polygons are clipped to the Submerged Land Act Boundary and Continental Shelf Boundaries reflecting federal jurisdiction. The NAD27 Gulf of Mexico Protractions and Blocks have a different protraction and block configuration when compared to the OCS Protraction Polygons - 1st Division and OCS Block Polygons - 2nd Division. The NAD27 Gulf of Mexico data is used for Oil and Gas leasing.These data were created in the applicable NAD83 UTM or NAD27 UTM/SPCS Projection and re-projected to GCS WGS84 (EPSG 4326) for management in BOEM"s enterprise GIS. However, the services in this collection have been published in WGS 1984 Web Mercator Auxiliary Sphere (EPSG 3857). Because GIS projection and topology functions can change or generalize coordinates,these data are NOT an OFFICIAL record for the exact boundaries. These data are to be used for Cartographic purposes only and should not be used to calculate area.Layers MetadataOCS BOEM Offshore Boundary LinesOCS Protraction Polygons - 1st DivisionOCS Gulf of Mexico NAD27 Protraction Polygons - 1st DivisionOCS Block Polygons - 2nd DivisionOCS Gulf of Mexico NAD27 Block Polygons - 2nd DivisionAliquot 16ths Polygons - 3rd Division

  11. d

    Job Postings Dataset for Labour Market Research and Insights

    • datarade.ai
    Updated Sep 20, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Oxylabs (2023). Job Postings Dataset for Labour Market Research and Insights [Dataset]. https://datarade.ai/data-products/job-postings-dataset-for-labour-market-research-and-insights-oxylabs
    Explore at:
    .json, .xml, .csv, .xlsAvailable download formats
    Dataset updated
    Sep 20, 2023
    Dataset authored and provided by
    Oxylabs
    Area covered
    Kyrgyzstan, Jamaica, British Indian Ocean Territory, Zambia, Luxembourg, Switzerland, Sierra Leone, Tajikistan, Anguilla, Togo
    Description

    Introducing Job Posting Datasets: Uncover labor market insights!

    Elevate your recruitment strategies, forecast future labor industry trends, and unearth investment opportunities with Job Posting Datasets.

    Job Posting Datasets Source:

    1. Indeed: Access datasets from Indeed, a leading employment website known for its comprehensive job listings.

    2. Glassdoor: Receive ready-to-use employee reviews, salary ranges, and job openings from Glassdoor.

    3. StackShare: Access StackShare datasets to make data-driven technology decisions.

    Job Posting Datasets provide meticulously acquired and parsed data, freeing you to focus on analysis. You'll receive clean, structured, ready-to-use job posting data, including job titles, company names, seniority levels, industries, locations, salaries, and employment types.

    Choose your preferred dataset delivery options for convenience:

    Receive datasets in various formats, including CSV, JSON, and more. Opt for storage solutions such as AWS S3, Google Cloud Storage, and more. Customize data delivery frequencies, whether one-time or per your agreed schedule.

    Why Choose Oxylabs Job Posting Datasets:

    1. Fresh and accurate data: Access clean and structured job posting datasets collected by our seasoned web scraping professionals, enabling you to dive into analysis.

    2. Time and resource savings: Focus on data analysis and your core business objectives while we efficiently handle the data extraction process cost-effectively.

    3. Customized solutions: Tailor our approach to your business needs, ensuring your goals are met.

    4. Legal compliance: Partner with a trusted leader in ethical data collection. Oxylabs is a founding member of the Ethical Web Data Collection Initiative, aligning with GDPR and CCPA best practices.

    Pricing Options:

    Standard Datasets: choose from various ready-to-use datasets with standardized data schemas, priced from $1,000/month.

    Custom Datasets: Tailor datasets from any public web domain to your unique business needs. Contact our sales team for custom pricing.

    Experience a seamless journey with Oxylabs:

    • Understanding your data needs: We work closely to understand your business nature and daily operations, defining your unique data requirements.
    • Developing a customized solution: Our experts create a custom framework to extract public data using our in-house web scraping infrastructure.
    • Delivering data sample: We provide a sample for your feedback on data quality and the entire delivery process.
    • Continuous data delivery: We continuously collect public data and deliver custom datasets per the agreed frequency.

    Effortlessly access fresh job posting data with Oxylabs Job Posting Datasets.

  12. Q

    Data for: The Pandemic Journaling Project, Phase One (PJP-1)

    • data.qdr.syr.edu
    3gp +22
    Updated Feb 15, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Sarah S. Willen; Sarah S. Willen; Katherine A. Mason; Katherine A. Mason (2024). Data for: The Pandemic Journaling Project, Phase One (PJP-1) [Dataset]. http://doi.org/10.5064/F6PXS9ZK
    Explore at:
    jpeg(-1), jpeg(64787), png(-1), jpeg(2635904), jpeg(2809706), jpeg(3128025), jpeg(3522579), mp4a(609792), jpeg(2715246), jpeg(564843), mp4a(1607020), jpeg(29277), jpeg(411392), jpeg(3219184), html(64045635), jpeg(1455187), jpeg(3953592), jpeg(445647), jpeg(3079564), png(858132), jpeg(3262275), jpeg(5268315), jpeg(1173279), mp4a(4746585), mp4a(506955), jpeg(2228793), jpeg(2399356), jpeg(1847185), png(1487656), mp4a(3329780), mp4a(1503462), bin(-1), jpeg(3226310), mp4a(2843558), jpeg(3161075), jpeg(2535033), jpeg(1814204), mp4a(1403036), jpeg(6831581), jpeg(3500892), jpeg(2063706), jpeg(2867362), jpeg(36303), mp4a(608702), jpeg(2174907), jpeg(2775382), mpga(3119325), pdf(-1), html(28046914), jpeg(2571274), qt(642282), gif(-1), bin(1475326), jpeg(1669679), jpeg(288031), mp4(16611275), jpeg(3758294), mp4a(1316029), mp4a(2192000), jpeg(51905), mpga(3284435), jpeg(47621), jpeg(806714), jpeg(3720630), mp4a(2496251), jpeg(2320221), jpeg(4266931), jpeg(3779944), jpeg(2036741), jpeg(73283), jpeg(460192), jpeg(81002), jpeg(1794407), jpeg(843851), jpeg(134732), bin(1324105), mp4(-1), html(3785552), bin(446182), jpeg(126557), jpeg(112141), jpeg(99013), jpeg(2763037), jpeg(2904103), mp4a(3455446), jpeg(2690540), mpga(3655410), jpeg(2348580), mp4a(8043573), jpeg(4103780), mp4a(2090318), jpeg(3309302), xlsx(34600), jpeg(3101557), qt(-1), jpeg(2597912), jpeg(197952), jpeg(528533), jpeg(2484777), jpeg(17026260), jpeg(31091), jpeg(1143472), jpeg(2705547), jpeg(4634609), mp4a(2427794), mp4a(865561), qt(6530289), jpeg(2750981), mp4a(431473), jpeg(4477949), jpeg(5588285), mp4a(1258547), jpeg(44679), jpeg(5718836), jpeg(2169748), mp4a(4727052), jpeg(4410466), jpeg(359020), jpeg(319878), jpeg(3348421), jpeg(2742034), jpeg(479908), jpeg(2871901), jpeg(754914), mpga(3369080), audio/vnd.dlna.adts(2291450), bin(925606), mp4a(1468479), mp4a(3505956), mp4a(934968), jpeg(94576), mp4a(954136), png(1217841), png(259675), jpeg(2768465), jpeg(7435869), mp4a(558160), jpeg(452676), jpeg(2614435), jpeg(2295874), jpeg(2985176), jpeg(2382774), jpeg(1836889), mp4a(714107), jpeg(3058184), png(4809397), png(291188), jpeg(476581), bin(315174), mp4a(963668), mp4a(1691796), jpeg(305566), jpeg(2340053), mp4a(1416194), jpeg(2187251), mp4a(1480696), jpeg(1224621), jpeg(799339), jpeg(2106618), mp4a(2234556), html(59903646), jpeg(1502693), jpeg(496111), mp4a(710717), pdf(791867), jpeg(2320307), mp4a(2723319), jpeg(2588596), qt(6524117), jpeg(706630), jpeg(1797399), jpeg(3578041), png(34340), jpeg(413917), jpeg(2018007), mp4a(1822023), mp4a(546214), jpeg(104863), png(505848), jpeg(3999644), jpeg(2202086), jpeg(1779668), webm(2501579), jpeg(3644901), mpga(61021), xlsx(19458121), jpeg(3678114), jpeg(3195259), mp4a(5998805), mp4a(1089264), mpga(1223745), png(79931), ogv(921344), mp4a(5290770), mp4a(537339), mp4a(2522582), mp4a(2757638), mp4a(902919), mp4a(3664250), jpeg(293524), jpeg(1611225), jpeg(78426), audio/vnd.dlna.adts(3577011), jpeg(1425684), jpeg(2114989), png(2239184), jpeg(3532208), jpeg(2599799), jpeg(4051592), mp4a(766677), bin(1140735), mp4a(1950073), jpeg(2482637), mp4a(9461846), mp4a(886225), mp4a(2275458), jpeg(3964175), png(7323654), mp4a(3407172), jpeg(1662239), jpeg(2738720), jpeg(2680408), jpeg(875989), mp4a(1135778), jpeg(3063173), mp4a(1044083), mp4a(3068302), jpeg(4586435), jpeg(944028), jpeg(65604), jpeg(803886), mp4a(3207845), jpeg(9303719), jpeg(1178560), mpga(1096992), mp4a(273265), jpeg(37593), jpeg(148529), jpeg(516395), html(799294), mp4a(1064123), jpeg(647105), jpeg(3412037), bin(3742158), jpeg(2343745), jpeg(2242087), jpeg(1153242), mp4a(700840), mp4a(614290), png(674974), mp4a(462181), mp4a(3341713), mp4a(5455315), bin(1700382), png(7882498), jpeg(3098020), jpeg(2781328), mp4a(3763168), jpeg(4431416), mp4a(1614389), jpeg(287296), jpeg(2681973), jpeg(2107304), pdf(332485), jpeg(2635452), audio/vnd.dlna.adts(3058005), mp4a(2448226), mp4a(1805349), mp4a(4150285), mp4a(204164), jpeg(2606693), jpeg(2626157), mp4a(1459294), jpeg(566696), jpeg(2543785), mp4a(369050), mp4(30391500), jpeg(4579297), jpeg(5172226), jpeg(1548860), mp4a(944403), html(640739), jpeg(147544), jpeg(3964519), jpeg(1776724), mp4a(2984325), bin(1595391), jpeg(320684), bin(48838), jpeg(4079596), jpeg(2144716), mp4a(1642287), bin(616420), jpeg(4110243), html(799551), png(1792687), mp4a(962844), jpeg(2625613), jpeg(2666985), jpeg(2722455), jpeg(36852), jpeg(40164), jpeg(111950), mp4a(1235641), mp4a(101692), mp4a(489606), mp4a(1202077), mp4a(4721088), jpeg(63112), jpeg(3627878), mp4a(2368173), jpeg(6463999), mp4a(558864), jpeg(2818575), jpeg(950258), jpeg(4870478), jpeg(4661936), mp4a(828006), png(135414), jpeg(1511423), mpga(2579649), mpga(6283555), jpeg(39553), pdf(141529), bin(1084358), jpeg(379064), jpeg(1305368), mpga(625262), jpeg(4847317), bin(116966), wav(3184824), png(166019), jpeg(804562), jpeg(443742), jpeg(2216857), jpeg(539445), jpeg(2166243), png(1796101), jpeg(1875257), png(1640881), jpeg(2545361), png(441607), jpeg(2890369), mp4a(441334), jpeg(3591325), jpeg(130755), png(170479), mp4a(2620611), mp4a(4518524), mp4a(6386348), jpeg(2467582), mp4a(1084240), jpeg(95788), jpeg(2619585), mp4(8919033), jpeg(4410537), bin(1049901), jpeg(4145168), jpeg(1015520), png(108417), jpeg(11074031), mp4a(1034473), html(479151), jpeg(2543166), jpeg(1867990), jpeg(1688053), html(640918), jpeg(3761476), mp4a(2043016), mp4a(1327650), bin(443069), mp4a(8236358), jpeg(3333029), mp4a(4192934), jpeg(1964105), jpeg(3303164), jpeg(7390050), jpeg(3982230), jpeg(3033149), mp4a(705651), jpeg(45398), jpeg(1013777), jpeg(3386166), jpeg(3610339), jpeg(79582), jpeg(2749667), jpeg(3103944), jpeg(197437), jpeg(1240130), mp4a(3140356), mp4a(2218267), jpeg(5765324), jpeg(103691), jpeg(83984), jpeg(4445333), mp4a(634555), png(2280208), jpeg(3823557), jpeg(704279), mp4a(1632575), jpeg(2986691), bin(481830), jpeg(2921224), docx(-1), mp4a(5352815), ogv(650885), jpeg(421521), jpeg(3832698), html(3025837), audio/vnd.dlna.adts(3763036), bin(161414), jpeg(3634921), jpeg(175071), png(156532), jpeg(38705), jpeg(2969378), png(1059022), mp4a(1110381), bin(1812775), jpeg(1434922), bin(1048366), audio/vnd.dlna.adts(1787003), mp4a(795300), jpeg(2146419), jpeg(3113325), png(2690433), jpeg(2955817), jpeg(1950597), jpeg(180961), jpeg(2921263), png(1187248), jpeg(3661093), bin(1638526), mp4a(3258141), mp4a(2299616), audio/vnd.dlna.adts(6828390), png(4625953), jpeg(1806678), mp4a(1442751), jpeg(3484297), mp4a(581212), jpeg(2358438), jpeg(5251366), mp4a(856519), jpeg(895955), mp4a(225192), jpeg(1857109), png(396961), jpeg(6504102), jpeg(3550057), bin(642950), bin(726730), jpeg(2937002), jpeg(2241215), jpeg(2848793), jpeg(114301), jpeg(6851150), jpeg(5412996), jpeg(5099807), jpeg(2352338), mp4a(1108249), jpeg(59955), jpeg(597941), png(822965), png(279993), mp4a(649729), jpeg(5327907), html(41982439), jpeg(3926818), jpeg(3811126), mpga(3150075), mp4a(851987), jpeg(2161975), jpeg(3049221), mp4(14723059), mp4a(1166746), jpeg(3929963), jpeg(32386), bin(647846), jpeg(943529), png(3558483), mp4a(496459), jpeg(554775), jpeg(673727), jpeg(1234744), mp4a(1614229), bin(1077286), jpeg(2321955), mp4(15102498), jpeg(1138223), jpeg(2821667), mp4a(4957829), jpeg(5267053), jpeg(3746852), xlsx(66430625), png(1781350), mp4(13377154), jpeg(2521556), jpeg(4363031), jpeg(38838), jpeg(1177161), jpeg(5648135), jpeg(3860593), jpeg(3191081), jpeg(4074964), jpeg(2592942), jpeg(70743), jpeg(47092), jpeg(17155), mp4a(5461865), jpeg(317565), jpeg(154225), jpeg(2641570), jpeg(1432979), jpeg(2996468), jpeg(2537158), jpeg(2126839), mp4a(3445663), jpeg(524301), jpeg(2577631), mp4a(999933), jpeg(212728), jpeg(3050628), jpeg(67402), jpeg(4528980), jpeg(48108), jpeg(2849620), mp4a(799189), jpeg(977868), mp4a(1114948), mp4a(1538194), jpeg(3539999), jpeg(732964), mp4a(1159815), jpeg(177432), png(5221994), mp4a(120084), jpeg(4880331), jpeg(2634063), jpeg(1018097), webp(-1), bin(878982), jpeg(5596898), png(356862), jpeg(33015), mp4a(1665024), jpeg(1110786), xlsx(27165), jpeg(2034603), jpeg(2410690), mp4a(2172212), jpeg(287142), jpeg(865631), jpeg(4371438), mp4a(505909), bin(2410811), mp4a(416617), qt(5205385), jpeg(1642459), jpeg(1864894), mp4a(1275342), jpeg(4389684), mp4a(1216743), jpeg(1645086), mp4a(1917929), jpeg(2202466), jpeg(3415224), mp4a(2687040), jpeg(4168896), jpeg(3608610), mp4a(847604), jpeg(2952649), jpeg(1632186), jpeg(482523), jpeg(3260717), wav(2205734), ogv(332111), mp4a(3028452), jpeg(5449171), jpeg(2190017), html(646595), jpeg(2046616), jpeg(363257), bin(2539604), audio/vnd.dlna.adts(13530010), html(8779436), mp4a(3988517), html(710893), bin(2108773), mp4a(938780), mp4a(1632058), mp4a(1781328), jpeg(6006498), mp4a(2011577), png(1867628), jpeg(3578276), qt(1377580), bin(498661), jpeg(3959637), jpeg(3553188), mp4a(1566800), html(9536819), jpeg(1795067), bin(593638), jpeg(68405), jpeg(937156), jpeg(4183531), mpga(1488238), jpeg(864405), jpeg(1365686), docx(12339), jpeg(578317), xlsx(52077), html(523486), jpeg(7547441), mp4a(1930783), jpeg(58628), mp4a(1145760), jpeg(3167708), mp4(31660079), jpeg(2489302), mp4a(1666611), xlsx(82776), jpeg(1827086), jpeg(1844434), jpeg(4555773), jpeg(3299756), mp4a(1140725), mp4a(531377), mp4a(3139464), mp4(24994984), ogv(408137), jpeg(2440831), png(497108), xlsx(88927), jpeg(859100), jpeg(3121852), png(3396851), mp4a(337657), jpeg(1938676), mpga(3748682), jpeg(3010539), png(618010), jpeg(120170), mp4a(691616), jpeg(4782980), jpeg(1882397), mp4a(847950), mp4a(579012), jpeg(3477933), jpeg(3332206), jpeg(1777340), jpeg(1779300), jpeg(3324446), bin(2111272), jpeg(134273), jpeg(2327041), mp4a(2112621), jpeg(2028706), jpeg(2253098), jpeg(87256), jpeg(4748410), jpeg(2262473), mp4a(3061773), jpeg(3853660), jpeg(489701), jpeg(2016316), mp4(48601545), jpeg(4110324), mp4a(750884), mp4a(1666390), jpeg(2729939), jpeg(887373), pdf(122363), mp4a(760877), jpeg(5047594), jpeg(3513429), mp4a(701592), mp4a(24233), jpeg(3878593), jpeg(955964), jpeg(1959028), mp4a(573738), jpeg(1607988), jpeg(121889), mp4a(1115213), bin(1173798), jpeg(6732180), jpeg(1945789), jpeg(5423032), jpeg(252261), jpeg(3546392), jpeg(1587693), jpeg(1303230), jpeg(1050632), mp4a(2957441), mp4a(2682346), bin(564582), jpeg(117534), jpeg(417971), jpeg(3639631), jpeg(3283728), bin(234118), png(2037576), jpeg(3095107), png(1185912), jpeg(3003672), mp4a(1307438), jpeg(142223), jpeg(6401219), bin(2429287), jpeg(3129315), jpeg(111760), jpeg(749493), mpga(5172750), jpeg(67155), mp4a(1303543), audio/vnd.dlna.adts(4340557), jpeg(3978187), jpeg(2696452), mp4a(1505002), jpeg(1750030), jpeg(7505927), jpeg(2638934), jpeg(3812323), bin(818310), jpeg(571235), jpeg(3256481), mp4a(1374945), png(357625), jpeg(5542820), mp4a(1981377), mp4a(2469218), jpeg(4044906), jpeg(37019), jpeg(1134103), bin(632006), jpeg(85234), mp4(11623573), bin(1030438), audio/vnd.dlna.adts(11278413), mp4a(6956199), xlsx(48995), mp4a(10021109), xlsx(224948556), jpeg(41894), jpeg(85137), bin(3540340), jpeg(1280936), xlsx(189425), bin(546822), html(1075544), png(1790553), mp4a(8341651), mp4a(1347344), jpeg(1837571), qt(2398526), jpeg(488375), png(652644), bin(709318), mp4a(512559), jpeg(1660933), mp4a(903487), jpeg(2355965), jpeg(3175474), mp4a(3235128), pdf(213974), jpeg(3105125), mp4a(1264503), jpeg(817070), jpeg(2858948), bin(1019282), jpeg(3172013), jpeg(2118129), png(856929), jpeg(3172905), mp4a(2083812), jpeg(3950185), 3gp(4189257), webp(13654), jpeg(3985986), jpeg(22928), html(496815), jpeg(2221272), jpeg(4526887), jpeg(3917797), jpeg(1579597), jpeg(4260674), jpeg(3155291), jpeg(939502), jpeg(3169133), jpeg(68283), jpeg(145275), audio/vnd.dlna.adts(4820134), mp4a(1195465), html(1694054), jpeg(155887), mp4a(3274925), mp4a(4613589), mpga(2386117), jpeg(41185), mp4a(1086359), mp4a(1151555), bin(1960531), jpeg(2149916), jpeg(2564893), wmv(50197262), mp4(26601787), jpeg(1997912), jpeg(2729245), mp4a(729599), mpga(3484030), jpeg(4728142), jpeg(5043578), mp4a(873556), mp4a(660082), jpeg(13696858), mp4a(1555980), jpeg(45747), jpeg(3178887), qt(28706733), jpeg(4509448), bin(381126), mp4a(661507), jpeg(495339), jpeg(138394), jpeg(85114), mpga(1449626), mp4a(3615513), jpeg(6130051), mp4a(13214859), mp4a(1702996), mp4a(562777), jpeg(2551565), mp4a(1176775), jpeg(16753), mpga(1784266), jpeg(377428), jpeg(3136525), mp4a(1115669), jpeg(64481), mp4a(2548754), jpeg(32021), bin(3983879), jpeg(1629680), pdf(121390), jpeg(2243229), jpeg(3134307), html(38240607), jpeg(8644181), jpeg(4566822), mpga(379781), mp4a(2068903), jpeg(599871), mp4a(8995283), jpeg(2507441), bin(1544294), jpeg(254462), jpeg(1915392), jpeg(1595555), mp4a(1073809), jpeg(40514), jpeg(535219), mp4a(1617110), xlsx(20756300), bin(1869989), jpeg(2381586), jpeg(35883), mpga(4061915), jpeg(917468), jpeg(3052078), mp4a(1901851), jpeg(131612), jpeg(1507898), jpeg(130590), jpeg(133876), jpeg(180752), jpeg(3552912), jpeg(172352), mp4a(2419697), mp4a(331293), jpeg(1583799), jpeg(840041), mp4a(1611680), bin(328166), jpeg(219612), jpeg(1656656), jpeg(4653342), mp4a(5608105), jpeg(2201474), wav(2818960), mp4a(936086), pdf(91460), mp4a(1601130), jpeg(659500), jpeg(100391), jpeg(2812452), mp4a(5629529), jpeg(1816312), jpeg(71716), pdf(295280), jpeg(2911219), jpeg(2471054), docx(31188), jpeg(4659509), png(105272), mp4a(959231), mp4a(1516084), mpga(5970561), jpeg(3668632), mp4a(1739564), jpeg(2058883), jpeg(1901789), mp4a(3134928), mp4a(1152026), jpeg(3523727), mp4a(760909), mp4a(1248111), mp4a(984328), audio/vnd.dlna.adts(934543), jpeg(2193720), jpeg(1401200), bin(919270), jpeg(529647), mp4a(1608171), mp4a(5154628), jpeg(1040846), mp4a(2360919), mp4a(1273706), jpeg(1766662), mp4a(291843), jpeg(3199783), jpeg(4440461), mp4a(2354743), html(983166), jpeg(4653818), jpeg(3216327), jpeg(12340), png(24722), jpeg(68398), audio/vnd.dlna.adts(9495356), mp4a(1911363), jpeg(363586), jpeg(3277514), jpeg(2684588), png(795810), mp4a(1244456), jpeg(59161), jpeg(1603743), mp4a(611153), jpeg(2500101), jpeg(3468457), mp4a(843462), jpeg(4005962), mp4a(912224), 3gp(5920182), jpeg(1714504), jpeg(2280388), mpga(4640203), jpeg(3332571), mp4a(1269110), jpeg(1788844), mp4a(4350631), mp4a(1496135), bin(1772535), mpga(371534), jpeg(4221720), mp4a(1486515), mp4a(3758180), jpeg(3413660), jpeg(3451347), mp4(6993330), bin(152038), jpeg(3535829), jpeg(3234324), tiff(-1), jpeg(2251269), jpeg(2600986), bin(1606725), bin(1615540), jpeg(629961), mp4a(1364069), jpeg(849628), jpeg(2384630), jpeg(854035), jpeg(1059910), mp4a(432261), jpeg(6803436), qt(2010499), mp4a(1222788), png(252350), mp4a(561403), mp4a(1301355), jpeg(78430), jpeg(153294), jpeg(3111015), jpeg(3506560), mp4a(1614765), mp4a(4359255), mp4a(1609908), jpeg(3129756), jpeg(1440858), jpeg(24096), mpga(6606764), mp4a(219517), wav(16120364), mp4a(1071439), jpeg(3293381), jpeg(112899), jpeg(2875869), jpeg(4948125), mp4a(1615299), png(3496115), mp4a(1986411), png(586680), jpeg(1897709), jpeg(2273020), jpeg(4022260), jpeg(377213), mp4a(1702687), html(4191543), jpeg(1398077), jpeg(2079488), jpeg(31946), jpeg(1243971), jpeg(2389859), qt(574596), mp4a(532776), jpeg(2730221), mp4a(510562), jpeg(2968414), mp4a(2145487), jpeg(496123), jpeg(4274950), png(548620), jpeg(2124741), png(5709270), jpeg(5322032), mp4a(304846), jpeg(2969836), jpeg(5084546), jpeg(173417), mpga(2814171), pdf(308146), png(7879), png(2155793), jpeg(1568444), jpeg(107669), jpeg(3844552), jpeg(5050854), mp4(59931145), jpeg(26777), bin(3681626), mp4a(1124596), txt(186920), jpeg(520311), bin(416102), mp4a(7284061), jpeg(40281), jpeg(657555), png(1437413), jpeg(2534845), jpeg(445866), jpeg(1237900), jpeg(4250838), bin(156966), tsv(733), qt(3177780), bin(864966), jpeg(11690), mp4a(3045602), mp4a(2449349), bin(748148), jpeg(1825738), jpeg(1990482), mpga(1190436), mp4a(5845364), mp4a(1448064), jpeg(3171202), bin(2501650), jpeg(2273265), mp4a(619603), jpeg(951877), jpeg(63914), mp4a(1271334), jpeg(1976245), mpga(4817983), jpeg(331201), jpeg(129869), jpeg(7445743), jpeg(5717518), jpeg(2968114), mp4a(693312), mp4a(264471), jpeg(5399866), jpeg(71431), jpeg(1519243), jpeg(1593696), mp4(4106014), mp4a(705329), mp4a(1148157), jpeg(6046515), mp4a(916096), jpeg(333207), jpeg(3138702), jpeg(417572), mpga(5269701), jpeg(145637), mp4a(802505), png(1017305), jpeg(17907), jpeg(3598845), jpeg(1155643), jpeg(2638302), mp4a(822545), bin(1493618), bin(906790), jpeg(154930), jpeg(953837), zip(11659935), mp4a(1214837), mp4a(1016151), mp4a(3515351), mp4a(3839771), mp4a(1256085), jpeg(4031381), mpga(3309399), jpeg(290224), png(459262), jpeg(48326), jpeg(4736590), jpeg(1964763), jpeg(2042850), jpeg(14911972), jpeg(981139), mp4(8726495), jpeg(455010), mp4a(2202351), jpeg(72668), mpga(970535), jpeg(12825578), mp4a(1931894), jpeg(1726579), jpeg(3996799), jpeg(2413680), jpeg(2299059), png(1038072), mp4a(1467032), jpeg(732955), jpeg(145129), jpeg(4057705), jpeg(1575841), mpga(4266613), jpeg(3444896), mp4a(1095447), jpeg(2423812), 3gp(11381321), png(477408), mp4a(1358807), pdf(155079), jpeg(822164), mp4a(3978276), png(316363), jpeg(3336796), bin(1495558), jpeg(874390), jpeg(278529), jpeg(942247), pdf(129862), jpeg(4954268), jpeg(2572775), jpeg(3062482), qt(89399945), jpeg(2128499), jpeg(2849921), png(1019045), mp4a(3170368), mpga(4747435), jpeg(1371393), jpeg(3550211), mp4a(942819), jpeg(2313418), jpeg(4887470), jpeg(91125), mp4a(2439271), jpeg(2764753), mp4a(3002959), bin(729766), jpeg(798303), bin(2204684)Available download formats
    Dataset updated
    Feb 15, 2024
    Dataset provided by
    Qualitative Data Repository
    Authors
    Sarah S. Willen; Sarah S. Willen; Katherine A. Mason; Katherine A. Mason
    License

    https://qdr.syr.edu/policies/qdr-restricted-access-conditionshttps://qdr.syr.edu/policies/qdr-restricted-access-conditions

    Time period covered
    May 29, 2020 - May 31, 2022
    Area covered
    United States, Mexico, Canada, Europe, Central America
    Description

    Project Summary This dataset contains all qualitative and quantitative data collected in the first phase of the Pandemic Journaling Project (PJP). PJP is a combined journaling platform and interdisciplinary, mixed-methods research study developed by two anthropologists, with support from a team of colleagues and students across the social sciences, humanities, and health fields. PJP launched in Spring 2020 as the COVID-19 pandemic was emerging in the United States. PJP was created in order to “pre-design an archive” of COVID-19 narratives and experiences open to anyone around the world. The project is rooted in a commitment to democratizing knowledge production, in the spirit of “archival activism” and using methods of “grassroots collaborative ethnography” (Willen et al. 2022; Wurtz et al. 2022; Zhang et al 2020; see also Carney 2021). The motto on the PJP website encapsulates these commitments: “Usually, history is written only by the powerful. When the history of COVID-19 is written, let’s make sure that doesn’t happen.” (A version of this Project Summary with links to the PJP website and other relevant sites is included in the public documentation of the project at QDR.) In PJP’s first phase (PJP-1), the project provided a digital space where participants could create weekly journals of their COVID-19 experiences using a smartphone or computer. The platform was designed to be accessible to as wide a range of potential participants as possible. Anyone aged 15 or older, living anywhere in the world, could create journal entries using their choice of text, images, and/or audio recordings. The interface was accessible in English and Spanish, but participants could submit text and audio in any language. PJP-1 ran on a weekly basis from May 2020 to May 2022. Data Overview This Qualitative Data Repository (QDR) project contains all journal entries and closed-ended survey responses submitted during PJP-1, along with accompanying descriptive and explanatory materials. The dataset includes individual journal entries and accompanying quantitative survey responses from more than 1,800 participants in 55 countries. Of nearly 27,000 journal entries in total, over 2,700 included images and over 300 are audio files. All data were collected via the Qualtrics survey platform. PJP-1 was approved as a research study by the Institutional Review Board (IRB) at the University of Connecticut. Participants were introduced to the project in a variety of ways, including through the PJP website as well as professional networks, PJP’s social media accounts (on Facebook, Instagram, and Twitter) , and media coverage of the project. Participants provided a single piece of contact information — an email address or mobile phone number — which was used to distribute weekly invitations to participate. This contact information has been stripped from the dataset and will not be accessible to researchers. PJP uses a mixed-methods research approach and a dynamic cohort design. After enrolling in PJP-1 via the project’s website, participants received weekly invitations to contribute to their journals via their choice of email or SMS (text message). Each weekly invitation included a link to that week’s journaling prompts and accompanying survey questions. Participants could join at any point, and they could stop participating at any point as well. They also could stop participating and later restart. Retention was encouraged with a monthly raffle of three $100 gift cards. All individuals who had contributed that month were eligible. Regardless of when they joined, all participants received the project’s narrative prompts and accompanying survey questions in the same order. In Week 1, before contributing their first journal entries, participants were presented with a baseline survey that collected demographic information, including political leanings, as well as self-reported data about COVID-19 exposure and physical and mental health status. Some of these survey questions were repeated at periodic intervals in subsequent weeks, providing quantitative measures of change over time that can be analyzed in conjunction with participants' qualitative entries. Surveys employed validated questions where possible. The core of PJP-1 involved two weekly opportunities to create journal entries in the format of their choice (text, image, and/or audio). Each week, journalers received a link with an invitation to create one entry in response to a recurring narrative prompt (“How has the COVID-19 pandemic affected your life in the past week?”) and a second journal entry in response to their choice of two more tightly focused prompts. Typically the pair of prompts included one focusing on subjective experience (e.g., the impact of the pandemic on relationships, sense of social connectedness, or mental health) and another with an external focus (e.g., key sources of scientific information, trust in government, or COVID-19’s economic impact). Each week,...

  13. w

    Global Data Scraping Tools Market Research Report: By Deployment Mode...

    • wiseguyreports.com
    Updated Jul 23, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    wWiseguy Research Consultants Pvt Ltd (2024). Global Data Scraping Tools Market Research Report: By Deployment Mode (Cloud, Web, On-Premises), By Data Source (Websites, Social Media, E-commerce Platforms, Databases, Flat Files), By Extraction Type (Structured Data, Semi-Structured Data, Unstructured Data), By Cloud Type (SaaS, PaaS, IaaS), By Application (Market Research, Price Monitoring, Lead Generation, Sentiment Analysis, Data Integration) and By Regional (North America, Europe, South America, Asia Pacific, Middle East and Africa) - Forecast to 2032. [Dataset]. https://www.wiseguyreports.com/reports/data-scraping-tools-market
    Explore at:
    Dataset updated
    Jul 23, 2024
    Dataset authored and provided by
    wWiseguy Research Consultants Pvt Ltd
    License

    https://www.wiseguyreports.com/pages/privacy-policyhttps://www.wiseguyreports.com/pages/privacy-policy

    Time period covered
    Jan 7, 2024
    Area covered
    Global
    Description
    BASE YEAR2024
    HISTORICAL DATA2019 - 2024
    REPORT COVERAGERevenue Forecast, Competitive Landscape, Growth Factors, and Trends
    MARKET SIZE 20233.24(USD Billion)
    MARKET SIZE 20243.73(USD Billion)
    MARKET SIZE 203211.46(USD Billion)
    SEGMENTS COVEREDDeployment Mode ,Data Source ,Extraction Type ,Cloud Type ,Application ,Regional
    COUNTRIES COVEREDNorth America, Europe, APAC, South America, MEA
    KEY MARKET DYNAMICS1 AIpowered data extraction 2 Growing demand for structured data 3 Cloudbased data scraping services 4 Realtime web data extraction 5 Increased use of web scraping for business intelligence
    MARKET FORECAST UNITSUSD Billion
    KEY COMPANIES PROFILEDDexi.io ,Cheerio ,ScrapingBee ,Import.io ,Scrapinghub ,80legs ,Bright Data ,Mozenda ,Phantombuster ,Helium Scraper ,ScraperAPI ,Octoparse ,Apify ,ParseHub ,Diffbot
    MARKET FORECAST PERIOD2024 - 2032
    KEY MARKET OPPORTUNITIESAutomation for efficient data collection Realtime data extraction for enhanced decisionmaking Cloudbased tools for scalability and flexibility AIpowered tools for advanced data analysis Increased demand for web scraping in various industries
    COMPOUND ANNUAL GROWTH RATE (CAGR) 15.06% (2024 - 2032)
  14. d

    Data from: SBIR - STTR Data and Code for Collecting Wrangling and Using It

    • search.dataone.org
    • dataverse.harvard.edu
    Updated Nov 22, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Allard, Grant (2023). SBIR - STTR Data and Code for Collecting Wrangling and Using It [Dataset]. http://doi.org/10.7910/DVN/CKTAZX
    Explore at:
    Dataset updated
    Nov 22, 2023
    Dataset provided by
    Harvard Dataverse
    Authors
    Allard, Grant
    Description

    Data set consisting of data joined for analyzing the SBIR/STTR program. Data consists of individual awards and agency-level observations. The R and python code required for pulling, cleaning, and creating useful data sets has been included. Allard_Get and Clean Data.R This file provides the code for getting, cleaning, and joining the numerous data sets that this project combined. This code is written in the R language and can be used in any R environment running R 3.5.1 or higher. If the other files in this Dataverse are downloaded to the working directory, then this Rcode will be able to replicate the original study without needing the user to update any file paths. Allard SBIR STTR WebScraper.py This is the code I deployed to multiple Amazon EC2 instances to scrape data o each individual award in my data set, including the contact info and DUNS data. Allard_Analysis_APPAM SBIR project Forthcoming Allard_Spatial Analysis Forthcoming Awards_SBIR_df.Rdata This unique data set consists of 89,330 observations spanning the years 1983 - 2018 and accounting for all eleven SBIR/STTR agencies. This data set consists of data collected from the Small Business Administration's Awards API and also unique data collected through web scraping by the author. Budget_SBIR_df.Rdata 246 observations for 20 agencies across 25 years of their budget-performance in the SBIR/STTR program. Data was collected from the Small Business Administration using the Annual Reports Dashboard, the Awards API, and an author-designed web crawler of the websites of awards. Solicit_SBIR-df.Rdata This data consists of observations of solicitations published by agencies for the SBIR program. This data was collected from the SBA Solicitations API. Primary Sources Small Business Administration. “Annual Reports Dashboard,” 2018. https://www.sbir.gov/awards/annual-reports. Small Business Administration. “SBIR Awards Data,” 2018. https://www.sbir.gov/api. Small Business Administration. “SBIR Solicit Data,” 2018. https://www.sbir.gov/api.

  15. d

    Water Data for Nisqually River at Site NR0

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Jul 6, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    U.S. Geological Survey (2024). Water Data for Nisqually River at Site NR0 [Dataset]. https://catalog.data.gov/dataset/water-data-for-nisqually-river-at-site-nr0
    Explore at:
    Dataset updated
    Jul 6, 2024
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    Nisqually River
    Description

    Discharge and suspended sediment data were collected from October 2016 to Febuary 2017 at the NR0 site. Data was collected immediately down stream of Old Pacific Hwy SE bridge during a bridge measurement and approximately 100 meters below bridge for a boat measurement. Data collection from the bridge has been ongoing since 1968 but data collection from a boat was first attempted October 21, 2016 during this data collection series. Suspended sediment sample and discrete discharge data at this site are available at: https://waterdata.usgs.gov/wa/nwis/inventory/?site_no=12090240&agency_cd=USGS&. A summary of suspended-sediment sample data are provided with this data release in the file NR0_SSC_summary.csv.

  16. s

    Statistics Interface Province-Level Data Collection - Datasets - This...

    • store.smartdatahub.io
    Updated Nov 11, 2024
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    (2024). Statistics Interface Province-Level Data Collection - Datasets - This service has been deprecated - please visit https://www.smartdatahub.io/ to access data. See the About page for details. // [Dataset]. https://store.smartdatahub.io/dataset/fi_tilastokeskus_tilastointialueet_maakunta1000k
    Explore at:
    Dataset updated
    Nov 11, 2024
    Description

    The dataset collection in question is a compilation of related data tables sourced from the website of Tilastokeskus (Statistics Finland) in Finland. The data present in the collection is organized in a tabular format comprising of rows and columns, each holding related data. The collection includes several tables, each of which represents different years, providing a temporal view of the data. The description provided by the data source, Tilastokeskuksen palvelurajapinta (Statistics Finland's service interface), suggests that the data is likely to be statistical in nature and could be related to regional statistics, given the nature of the source. This dataset is licensed under CC BY 4.0 (Creative Commons Attribution 4.0, https://creativecommons.org/licenses/by/4.0/deed.fi).

  17. Z

    Network Traffic Analysis: Data and Code

    • data.niaid.nih.gov
    • zenodo.org
    Updated Jun 12, 2024
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Homan, Sophia (2024). Network Traffic Analysis: Data and Code [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_11479410
    Explore at:
    Dataset updated
    Jun 12, 2024
    Dataset provided by
    Soni, Shreena
    Chan-Tin, Eric
    Honig, Joshua
    Moran, Madeline
    Ferrell, Nathan
    Homan, Sophia
    License

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

    Description

    Code:

    Packet_Features_Generator.py & Features.py

    To run this code:

    pkt_features.py [-h] -i TXTFILE [-x X] [-y Y] [-z Z] [-ml] [-s S] -j

    -h, --help show this help message and exit -i TXTFILE input text file -x X Add first X number of total packets as features. -y Y Add first Y number of negative packets as features. -z Z Add first Z number of positive packets as features. -ml Output to text file all websites in the format of websiteNumber1,feature1,feature2,... -s S Generate samples using size s. -j

    Purpose:

    Turns a text file containing lists of incomeing and outgoing network packet sizes into separate website objects with associative features.

    Uses Features.py to calcualte the features.

    startMachineLearning.sh & machineLearning.py

    To run this code:

    bash startMachineLearning.sh

    This code then runs machineLearning.py in a tmux session with the nessisary file paths and flags

    Options (to be edited within this file):

    --evaluate-only to test 5 fold cross validation accuracy

    --test-scaling-normalization to test 6 different combinations of scalers and normalizers

    Note: once the best combination is determined, it should be added to the data_preprocessing function in machineLearning.py for future use

    --grid-search to test the best grid search hyperparameters - note: the possible hyperparameters must be added to train_model under 'if not evaluateOnly:' - once best hyperparameters are determined, add them to train_model under 'if evaluateOnly:'

    Purpose:

    Using the .ml file generated by Packet_Features_Generator.py & Features.py, this program trains a RandomForest Classifier on the provided data and provides results using cross validation. These results include the best scaling and normailzation options for each data set as well as the best grid search hyperparameters based on the provided ranges.

    Data

    Encrypted network traffic was collected on an isolated computer visiting different Wikipedia and New York Times articles, different Google search queres (collected in the form of their autocomplete results and their results page), and different actions taken on a Virtual Reality head set.

    Data for this experiment was stored and analyzed in the form of a txt file for each experiment which contains:

    First number is a classification number to denote what website, query, or vr action is taking place.

    The remaining numbers in each line denote:

    The size of a packet,

    and the direction it is traveling.

    negative numbers denote incoming packets

    positive numbers denote outgoing packets

    Figure 4 Data

    This data uses specific lines from the Virtual Reality.txt file.

    The action 'LongText Search' refers to a user searching for "Saint Basils Cathedral" with text in the Wander app.

    The action 'ShortText Search' refers to a user searching for "Mexico" with text in the Wander app.

    The .xlsx and .csv file are identical

    Each file includes (from right to left):

    The origional packet data,

    each line of data organized from smallest to largest packet size in order to calculate the mean and standard deviation of each packet capture,

    and the final Cumulative Distrubution Function (CDF) caluclation that generated the Figure 4 Graph.

  18. DISCOVER-AQ Colorado Deployment NREL-Golden Ground Site Data - Dataset -...

    • data.nasa.gov
    • data.staging.idas-ds1.appdat.jsc.nasa.gov
    Updated Apr 1, 2025
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    nasa.gov (2025). DISCOVER-AQ Colorado Deployment NREL-Golden Ground Site Data - Dataset - NASA Open Data Portal [Dataset]. https://data.nasa.gov/dataset/discover-aq-colorado-deployment-nrel-golden-ground-site-data-e3f62
    Explore at:
    Dataset updated
    Apr 1, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Area covered
    Golden, Colorado
    Description

    DISCOVERAQ_Colorado_Ground_NREL-Golden_Data contains data collected at the NREL-Golden ground site during the Colorado (Denver) deployment of NASA's DISCOVER-AQ field study. This data product contains data for only the Colorado deployment and data collection is complete.Understanding the factors that contribute to near surface pollution is difficult using only satellite-based observations. The incorporation of surface-level measurements from aircraft and ground-based platforms provides the crucial information necessary to validate and expand upon the use of satellites in understanding near surface pollution. Deriving Information on Surface conditions from Column and Vertically Resolved Observations Relevant to Air Quality (DISCOVER-AQ) was a four-year campaign conducted in collaboration between NASA Langley Research Center, NASA Goddard Space Flight Center, NASA Ames Research Center, and multiple universities to improve the use of satellites to monitor air quality for public health and environmental benefit. Through targeted airborne and ground-based observations, DISCOVER-AQ enabled more effective use of current and future satellites to diagnose ground level conditions influencing air quality.DISCOVER-AQ employed two NASA aircraft, the P-3B and King Air, with the P-3B completing in-situ spiral profiling of the atmosphere (aerosol properties, meteorological variables, and trace gas species). The King Air conducted both passive and active remote sensing of the atmospheric column extending below the aircraft to the surface. Data from an existing network of surface air quality monitors, AERONET sun photometers, Pandora UV/vis spectrometers and model simulations were also collected. Further, DISCOVER-AQ employed many surface monitoring sites, with measurements being made on the ground, in conjunction with the aircraft. The B200 and P-3B conducted flights in Baltimore-Washington, D.C. in 2011, Houston, TX in 2013, San Joaquin Valley, CA in 2013, and Denver, CO in 2014. These regions were targeted due to being in violation of the National Ambient Air Quality Standards (NAAQS).The first objective of DISCOVER-AQ was to determine and investigate correlations between surface measurements and satellite column observations for the trace gases ozone (O3), nitrogen dioxide (NO2), and formaldehyde (CH2O) to understand how satellite column observations can diagnose surface conditions. DISCOVER-AQ also had the objective of using surface-level measurements to understand how satellites measure diurnal variability and to understand what factors control diurnal variability. Lastly, DISCOVER-AQ aimed to explore horizontal scales of variability, such as regions with steep gradients and urban plumes.

  19. f

    Database - Open data collection - Framework and case study with an HPV...

    • figshare.com
    xlsx
    Updated Jun 1, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Velber Nascimento; Jose Eduardo Santana; Jacson Barros; João Ricardo Nickenig Vissoci; Amrapali Zaveri; Eduardo Ramalho Neto; Ricardo Pietrobon (2023). Database - Open data collection - Framework and case study with an HPV cohort study [Dataset]. http://doi.org/10.6084/m9.figshare.106826.v1
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Jun 1, 2023
    Dataset provided by
    figshare
    Authors
    Velber Nascimento; Jose Eduardo Santana; Jacson Barros; João Ricardo Nickenig Vissoci; Amrapali Zaveri; Eduardo Ramalho Neto; Ricardo Pietrobon
    License

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

    Description

    The objective of this article is to report on a new Open Collection and Big Data Framework (OCoBiD), where data from a prospective cohort of patients screened for Human papillomavirus (HPV) reports data in real time. This system is augmented by a number of mechanisms to ensure that the data is not only substantially enriched by other data sets and real-time data quality control, but also enhanced through real-time modeling and reporting of the resulting information. Given its objective of serving as a framework for other projects involving reproducible research and open data collection, all of its scripts and code are made made available within public repositories outlined throughout our article.

  20. d

    Yellowstone Sample Collection - database

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Jul 6, 2024
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    U.S. Geological Survey (2024). Yellowstone Sample Collection - database [Dataset]. https://catalog.data.gov/dataset/yellowstone-sample-collection-database
    Explore at:
    Dataset updated
    Jul 6, 2024
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Description

    This database was prepared using a combination of materials that include aerial photographs, topographic maps (1:24,000 and 1:250,000), field notes, and a sample catalog. Our goal was to translate sample collection site locations at Yellowstone National Park and surrounding areas into a GIS database. This was achieved by transferring site locations from aerial photographs and topographic maps into layers in ArcMap. Each field site is located based on field notes describing where a sample was collected. Locations were marked on the photograph or topographic map by a pinhole or dot, respectively, with the corresponding station or site numbers. Station and site numbers were then referenced in the notes to determine the appropriate prefix for the station. Each point on the aerial photograph or topographic map was relocated on the screen in ArcMap, on a digital topographic map, or an aerial photograph. Several samples are present in the field notes and in the catalog but do not correspond to an aerial photograph or could not be found on the topographic maps. These samples are marked with “No” under the LocationFound field and do not have a corresponding point in the SampleSites feature class. Each point represents a field station or collection site with information that was entered into an attributes table (explained in detail in the entity and attribute metadata sections). Tabular information on hand samples, thin sections, and mineral separates were entered by hand. The Samples table includes everything transferred from the paper records and relates to the other tables using the SampleID and to the SampleSites feature class using the SampleSite field.

Share
FacebookFacebook
TwitterTwitter
Email
Click to copy link
Link copied
Close
Cite
Statista (2025). Leading data collection methods among UK consumers 2023 [Dataset]. https://www.statista.com/statistics/1453941/data-collection-method-consumers-uk/
Organization logo

Leading data collection methods among UK consumers 2023

Explore at:
Dataset updated
Jun 26, 2025
Dataset authored and provided by
Statistahttp://statista.com/
Time period covered
Nov 2023 - Dec 2023
Area covered
United Kingdom
Description

During a late 2023 survey among working-age consumers in the United Kingdom, **** percent of respondents stated that they preferred for their data to be collected via interactive surveys. Meanwhile, **** percent of respondents mentioned loyalty cards/programs as their favored data collection method.

Search
Clear search
Close search
Google apps
Main menu