33 datasets found
  1. d

    Financial Statement Data Sets

    • catalog.data.gov
    • s.cnmilf.com
    Updated Dec 2, 2025
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Economic and Risk Analysis (2025). Financial Statement Data Sets [Dataset]. https://catalog.data.gov/dataset/financial-statement-data-sets
    Explore at:
    Dataset updated
    Dec 2, 2025
    Dataset provided by
    Economic and Risk Analysis
    Description

    The data sets below provide selected information extracted from exhibits to corporate financial reports filed with the Commission using eXtensible Business Reporting Language (XBRL).

  2. Enterprise Survey 2009-2019, Panel Data - Slovenia

    • microdata.worldbank.org
    • catalog.ihsn.org
    Updated Aug 6, 2020
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    World Bank Group (WBG) (2020). Enterprise Survey 2009-2019, Panel Data - Slovenia [Dataset]. https://microdata.worldbank.org/index.php/catalog/3762
    Explore at:
    Dataset updated
    Aug 6, 2020
    Dataset provided by
    World Bank Grouphttp://www.worldbank.org/
    European Investment Bankhttp://eib.org/
    European Bank for Reconstruction and Developmenthttp://ebrd.com/
    Time period covered
    2008 - 2019
    Area covered
    Slovenia
    Description

    Abstract

    The documentation covers Enterprise Survey panel datasets that were collected in Slovenia in 2009, 2013 and 2019.

    The Slovenia ES 2009 was conducted between 2008 and 2009. The Slovenia ES 2013 was conducted between March 2013 and September 2013. Finally, the Slovenia ES 2019 was conducted between December 2018 and November 2019. The objective of the Enterprise Survey is to gain an understanding of what firms experience in the private sector.

    As part of its strategic goal of building a climate for investment, job creation, and sustainable growth, the World Bank has promoted improving the business environment as a key strategy for development, which has led to a systematic effort in collecting enterprise data across countries. The Enterprise Surveys (ES) are an ongoing World Bank project in collecting both objective data based on firms' experiences and enterprises' perception of the environment in which they operate.

    Geographic coverage

    National

    Analysis unit

    The primary sampling unit of the study is the establishment. An establishment is a physical location where business is carried out and where industrial operations take place or services are provided. A firm may be composed of one or more establishments. For example, a brewery may have several bottling plants and several establishments for distribution. For the purposes of this survey an establishment must take its own financial decisions and have its own financial statements separate from those of the firm. An establishment must also have its own management and control over its payroll.

    Universe

    As it is standard for the ES, the Slovenia ES was based on the following size stratification: small (5 to 19 employees), medium (20 to 99 employees), and large (100 or more employees).

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    The sample for Slovenia ES 2009, 2013, 2019 were selected using stratified random sampling, following the methodology explained in the Sampling Manual for Slovenia 2009 ES and for Slovenia 2013 ES, and in the Sampling Note for 2019 Slovenia ES.

    Three levels of stratification were used in this country: industry, establishment size, and oblast (region). The original sample designs with specific information of the industries and regions chosen are included in the attached Excel file (Sampling Report.xls.) for Slovenia 2009 ES. For Slovenia 2013 and 2019 ES, specific information of the industries and regions chosen is described in the "The Slovenia 2013 Enterprise Surveys Data Set" and "The Slovenia 2019 Enterprise Surveys Data Set" reports respectively, Appendix E.

    For the Slovenia 2009 ES, industry stratification was designed in the way that follows: the universe was stratified into manufacturing industries, services industries, and one residual (core) sector as defined in the sampling manual. Each industry had a target of 90 interviews. For the manufacturing industries sample sizes were inflated by about 17% to account for potential non-response cases when requesting sensitive financial data and also because of likely attrition in future surveys that would affect the construction of a panel. For the other industries (residuals) sample sizes were inflated by about 12% to account for under sampling in firms in service industries.

    For Slovenia 2013 ES, industry stratification was designed in the way that follows: the universe was stratified into one manufacturing industry, and two service industries (retail, and other services).

    Finally, for Slovenia 2019 ES, three levels of stratification were used in this country: industry, establishment size, and region. The original sample design with specific information of the industries and regions chosen is described in "The Slovenia 2019 Enterprise Surveys Data Set" report, Appendix C. Industry stratification was done as follows: Manufacturing – combining all the relevant activities (ISIC Rev. 4.0 codes 10-33), Retail (ISIC 47), and Other Services (ISIC 41-43, 45, 46, 49-53, 55, 56, 58, 61, 62, 79, 95).

    For Slovenia 2009 and 2013 ES, size stratification was defined following the standardized definition for the rollout: small (5 to 19 employees), medium (20 to 99 employees), and large (more than 99 employees). For stratification purposes, the number of employees was defined on the basis of reported permanent full-time workers. This seems to be an appropriate definition of the labor force since seasonal/casual/part-time employment is not a common practice, except in the sectors of construction and agriculture.

    For Slovenia 2009 ES, regional stratification was defined in 2 regions. These regions are Vzhodna Slovenija and Zahodna Slovenija. The Slovenia sample contains panel data. The wave 1 panel “Investment Climate Private Enterprise Survey implemented in Slovenia” consisted of 223 establishments interviewed in 2005. A total of 57 establishments have been re-interviewed in the 2008 Business Environment and Enterprise Performance Survey.

    For Slovenia 2013 ES, regional stratification was defined in 2 regions (city and the surrounding business area) throughout Slovenia.

    Finally, for Slovenia 2019 ES, regional stratification was done across two regions: Eastern Slovenia (NUTS code SI03) and Western Slovenia (SI04).

    Mode of data collection

    Computer Assisted Personal Interview [capi]

    Research instrument

    Questionnaires have common questions (core module) and respectfully additional manufacturing- and services-specific questions. The eligible manufacturing industries have been surveyed using the Manufacturing questionnaire (includes the core module, plus manufacturing specific questions). Retail firms have been interviewed using the Services questionnaire (includes the core module plus retail specific questions) and the residual eligible services have been covered using the Services questionnaire (includes the core module). Each variation of the questionnaire is identified by the index variable, a0.

    Response rate

    Survey non-response must be differentiated from item non-response. The former refers to refusals to participate in the survey altogether whereas the latter refers to the refusals to answer some specific questions. Enterprise Surveys suffer from both problems and different strategies were used to address these issues.

    Item non-response was addressed by two strategies: a- For sensitive questions that may generate negative reactions from the respondent, such as corruption or tax evasion, enumerators were instructed to collect the refusal to respond as (-8). b- Establishments with incomplete information were re-contacted in order to complete this information, whenever necessary. However, there were clear cases of low response.

    For 2009 and 2013 Slovenia ES, the survey non-response was addressed by maximizing efforts to contact establishments that were initially selected for interview. Up to 4 attempts were made to contact the establishment for interview at different times/days of the week before a replacement establishment (with similar strata characteristics) was suggested for interview. Survey non-response did occur but substitutions were made in order to potentially achieve strata-specific goals. Further research is needed on survey non-response in the Enterprise Surveys regarding potential introduction of bias.

    For 2009, the number of contacted establishments per realized interview was 6.18. This number is the result of two factors: explicit refusals to participate in the survey, as reflected by the rate of rejection (which includes rejections of the screener and the main survey) and the quality of the sample frame, as represented by the presence of ineligible units. The relatively low ratio of contacted establishments per realized interview (6.18) suggests that the main source of error in estimates in the Slovenia may be selection bias and not frame inaccuracy.

    For 2013, the number of realized interviews per contacted establishment was 25%. This number is the result of two factors: explicit refusals to participate in the survey, as reflected by the rate of rejection (which includes rejections of the screener and the main survey) and the quality of the sample frame, as represented by the presence of ineligible units. The number of rejections per contact was 44%.

    Finally, for 2019, the number of interviews per contacted establishments was 9.7%. This number is the result of two factors: explicit refusals to participate in the survey, as reflected by the rate of rejection (which includes rejections of the screener and the main survey) and the quality of the sample frame, as represented by the presence of ineligible units. The share of rejections per contact was 75.2%.

  3. marketing excel.xlsx

    • figshare.com
    xlsx
    Updated Mar 5, 2017
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Callie Hall (2017). marketing excel.xlsx [Dataset]. http://doi.org/10.6084/m9.figshare.4725535.v1
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Mar 5, 2017
    Dataset provided by
    figshare
    Figsharehttp://figshare.com/
    Authors
    Callie Hall
    License

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

    Description

    This is a spreadsheet of 1 of 10 companies in the shoe industry. Highlighting COGS, Total Revenue, Market share and Industry share.

  4. Yahoo Finance Dataset (2018-2023)

    • kaggle.com
    zip
    Updated May 9, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Suruchi Arora (2023). Yahoo Finance Dataset (2018-2023) [Dataset]. https://www.kaggle.com/datasets/suruchiarora/yahoo-finance-dataset-2018-2023
    Explore at:
    zip(79394 bytes)Available download formats
    Dataset updated
    May 9, 2023
    Authors
    Suruchi Arora
    License

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

    Description

    The "yahoo_finance_dataset(2018-2023)" dataset is a financial dataset containing daily stock market data for multiple assets such as equities, ETFs, and indexes. It spans from April 1, 2018 to March 31, 2023, and contains 1257 rows and 7 columns. The data was sourced from Yahoo Finance, and the purpose of the dataset is to provide researchers, analysts, and investors with a comprehensive dataset that they can use to analyze stock market trends, identify patterns, and develop investment strategies. The dataset can be used for various tasks, including stock price prediction, trend analysis, portfolio optimization, and risk management. The dataset is provided in XLSX format, which makes it easy to import into various data analysis tools, including Python, R, and Excel.

    The dataset includes the following columns:

    Date: The date on which the stock market data was recorded. Open: The opening price of the asset on the given date. High: The highest price of the asset on the given date. Low: The lowest price of the asset on the given date. Close*: The closing price of the asset on the given date. Note that this price does not take into account any after-hours trading that may have occurred after the market officially closed. Adj Close**: The adjusted closing price of the asset on the given date. This price takes into account any dividends, stock splits, or other corporate actions that may have occurred, which can affect the stock price. Volume: The total number of shares of the asset that were traded on the given date.

  5. H

    Finsheet - Stock Price in Excel and Google Sheet

    • dataverse.harvard.edu
    • search.dataone.org
    Updated Apr 24, 2022
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Tuan Do (2022). Finsheet - Stock Price in Excel and Google Sheet [Dataset]. http://doi.org/10.7910/DVN/ZD9XVF
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Apr 24, 2022
    Dataset provided by
    Harvard Dataverse
    Authors
    Tuan Do
    License

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

    Description

    This dataset contains the valuation template the researcher can use to retrieve real-time Excel stock price and stock price in Google Sheets. The dataset is provided by Finsheet, the leading financial data provider for spreadsheet users. To get more financial data, visit the website and explore their function. For instance, if a researcher would like to get the last 30 years of income statement for Meta Platform Inc, the syntax would be =FS_EquityFullFinancials("FB", "ic", "FY", 30) In addition, this syntax will return the latest stock price for Caterpillar Inc right in your spreadsheet. =FS_Latest("CAT") If you need assistance with any of the function, feel free to reach out to their customer support team. To get starter, install their Excel and Google Sheets add-on.

  6. Financial Sample Power BI Dashboard

    • kaggle.com
    zip
    Updated May 15, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    BunY12345 (2023). Financial Sample Power BI Dashboard [Dataset]. https://www.kaggle.com/datasets/buny12345/financial-sample-power-bi-dashboard
    Explore at:
    zip(78256 bytes)Available download formats
    Dataset updated
    May 15, 2023
    Authors
    BunY12345
    Description

    Dataset

    This dataset was created by BunY12345

    Contents

  7. S

    Annual Retail Store Data, 2000 [Canada] [Excel]

    • dataverse.scholarsportal.info
    • borealisdata.ca
    pdf, xls
    Updated Nov 17, 2021
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Scholars Portal Dataverse (2021). Annual Retail Store Data, 2000 [Canada] [Excel] [Dataset]. https://dataverse.scholarsportal.info/dataset.xhtml;jsessionid=1283d69ee2dd528c9011fe4a2fe3?persistentId=hdl%3A10864%2F11351&version=&q=&fileTypeGroupFacet=&fileAccess=&fileTag=%22Tables%22&fileSortField=&fileSortOrder=
    Explore at:
    xls(2165760), xls(29696), xls(2920448), pdf(76787), pdf(158404), xls(34816), xls(2754048), pdf(81084), pdf(71183), xls(34304), xls(625664), xls(2707968), xls(695808), pdf(70673), pdf(72585), xls(576512), xls(609792), xls(28672), pdf(60236), pdf(30338), pdf(87181), pdf(84140), pdf(92012), xls(610304), pdf(74439), xls(2471424), pdf(73788), xls(30208), pdf(74478), pdf(53645)Available download formats
    Dataset updated
    Nov 17, 2021
    Dataset provided by
    Scholars Portal Dataverse
    Area covered
    Canada, Canada
    Description

    The annual Retail store data CD-ROM is an easy-to-use tool for quickly discovering retail trade patterns and trends. The current product presents results from the 1999 and 2000 Annual Retail Store and Annual Retail Chain surveys. This product contains numerous cross-classified data tables using the North American Industry Classification System (NAICS). The data tables provide access to a wide range of financial variables, such as revenues, expenses, inventory, sales per square footage (chain stores only) and the number of stores. Most data tables contain detailed information on industry (as low as 5-digit NAICS codes), geography (Canada, provinces and territories) and store type (chains, independents, franchises). The electronic product also contains survey metadata, questionnaires, information on industry codes and definitions, and the list of retail chain store respondents.

  8. Finance Report Dashboard

    • kaggle.com
    zip
    Updated Nov 24, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    itsmesachinkr (2024). Finance Report Dashboard [Dataset]. https://www.kaggle.com/datasets/itsmesachinkr/finance-report-dashboard
    Explore at:
    zip(77957 bytes)Available download formats
    Dataset updated
    Nov 24, 2024
    Authors
    itsmesachinkr
    Description

    Hello Everyone, I made this Finance Dashboard in Power BI with the Finance Excel Workbook provided by Microsoft on their Website. Problem Statement The goal of this Power BI Dashboard is to analyze the financial performance of a company using the provided Microsoft Sample Data. To create a visually appealing dashboard that provides an overview of the company's financial metrics enabling stakeholders to make informed business decisions. Sections in the Report Report has multiple section's from where you can manage the data, like : • Report data can be sliced by Segments, Country and Year to show particular data. - Report Contain Two Navigation Page one is overview and other is sales dashboard page for better visualisation of data. - Report Contain all the important data. - Report Contain different chart and bar garph for different section .

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F23794893%2Fad300fb12ce26b77a2fb05cfee9c7892%2Ffinance%20report_page-0001.jpg?generation=1732438234032066&alt=media" alt="">

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F23794893%2F005ab4278cdd159a81c7935aa21b9aa9%2Ffinance%20report_page-0002.jpg?generation=1732438324842803&alt=media" alt="">

  9. Survey on Interest Rate Controls 2019 - Albania, Algeria, Anguilla...and 103...

    • microdata.worldbank.org
    • catalog.ihsn.org
    • +1more
    Updated Oct 26, 2023
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    World Bank Group - Finance, Competitiveness and Innovation Global Practice (2023). Survey on Interest Rate Controls 2019 - Albania, Algeria, Anguilla...and 103 more [Dataset]. https://microdata.worldbank.org/index.php/catalog/3812
    Explore at:
    Dataset updated
    Oct 26, 2023
    Dataset provided by
    World Bank Grouphttp://www.worldbank.org/
    Authors
    World Bank Group - Finance, Competitiveness and Innovation Global Practice
    Time period covered
    2019
    Area covered
    Albania, Anguilla...and 103 more, Algeria
    Description

    Abstract

    The Survey on Interest Rate Controls 2020 was conducted as a World Bank Group study on interest rate controls (IRCs) in lending and deposit markets around the world. The study aims to identify the different types of formal (or de jure) controls, the countries that apply then, how they implement them, and the reasons for doing so. The objective of the study is to advance knowledge on this topic by providing an evidence base for investigating the impact of IRCs on economic outcomes.

    The survey investigates present IRCs in each surveyed country, the reasons why they have been applied, the framework and resources associated with their application and the details as to their level and functioning. The focus is on legal forms of control (i.e. codified into law) as opposed to de facto controls. The new database on interest rate controls, a popular form of financial repression is based on a survey of 108 countries, representing 88 percent of global gross domestic product. The interest rate controls presented in this dataset were in effect in 2019.

    Geographic coverage

    Global Survey, covering 108 countries, representing 88 percent of global GDP.

    Analysis unit

    Regulation at the national level.

    Universe

    Banking supervisors and Local Banking Associations.

    Kind of data

    Sample survey data [ssd]

    Mode of data collection

    Mail Questionnaire [mail]

    Research instrument

    Bank supervisors and banking associations were provided with a standard excel file with five parts. The survey was structured in five parts, each placed in a different excel sheet. Part A: Introduction. Countries with no IRCs in place were asked to only answer this sheet and leave the rest blank. Part B: Presented the definitions of controls, institutions, products and additional aspects that will be covered in the survey. Part C: Introduced a set of qualitative questions to describe the IRCs in place. Part D: Displayed a set of tables to quantitatively describe the IRCs in place. Part E: Laid out the final set of questions, covering sanctions and control mechanisms that support the IRCs' enforcement. The questionnaire is provided in the Documentation section in pdf and excel.

  10. General Ledger (Financial data set)

    • kaggle.com
    zip
    Updated Jun 17, 2022
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Irfan Sharif (2022). General Ledger (Financial data set) [Dataset]. https://www.kaggle.com/datasets/irfansharif/generalledger
    Explore at:
    zip(1416253 bytes)Available download formats
    Dataset updated
    Jun 17, 2022
    Authors
    Irfan Sharif
    Description

    Dataset

    This dataset was created by Irfan Sharif

    Released under Data files © Original Authors

    Contents

  11. P

    Samoa Business Activity Survey 2009

    • pacificdata.org
    pdf
    Updated Jul 2, 2019
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    ['Samoa Bureau of Statistics'] (2019). Samoa Business Activity Survey 2009 [Dataset]. https://pacificdata.org/data/dataset/groups/spc_wsm_2009_bas_v01_m
    Explore at:
    pdfAvailable download formats
    Dataset updated
    Jul 2, 2019
    Dataset provided by
    Samoa Bureau of Statistics
    Time period covered
    Jan 1, 2009 - Dec 31, 2009
    Description

    The intention is to collect data for the calendar year 2009 (or the nearest year for which each business keeps its accounts. The survey is considered a one-off survey, although for accurate NAs, such a survey should be conducted at least every five years to enable regular updating of the ratios, etc., needed to adjust the ongoing indicator data (mainly VAGST) to NA concepts. The questionnaire will be drafted by FSD, largely following the previous BAS, updated to current accounting terminology where necessary. The questionnaire will be pilot tested, using some accountants who are likely to complete a number of the forms on behalf of their business clients, and a small sample of businesses. Consultations will also include Ministry of Finance, Ministry of Commerce, Industry and Labour, Central Bank of Samoa (CBS), Samoa Tourism Authority, Chamber of Commerce, and other business associations (hotels, retail, etc.).

    The questionnaire will collect a number of items of information about the business ownership, locations at which it operates and each establishment for which detailed data can be provided (in the case of complex businesses), contact information, and other general information needed to clearly identify each unique business. The main body of the questionnaire will collect data on income and expenses, to enable value added to be derived accurately. The questionnaire will also collect data on capital formation, and will contain supplementary pages for relevant industries to collect volume of production data for selected commodities and to collect information to enable an estimate of value added generated by key tourism activities.

    The principal user of the data will be FSD which will incorporate the survey data into benchmarks for the NA, mainly on the current published production measure of GDP. The information on capital formation and other relevant data will also be incorporated into the experimental estimates of expenditure on GDP. The supplementary data on volumes of production will be used by FSD to redevelop the industrial production index which has recently been transferred under the SBS from the CBS. The general information about the business ownership, etc., will be used to update the Business Register.

    Outputs will be produced in a number of formats, including a printed report containing descriptive information of the survey design, data tables, and analysis of the results. The report will also be made available on the SBS website in “.pdf” format, and the tables will be available on the SBS website in excel tables. Data by region may also be produced, although at a higher level of aggregation than the national data. All data will be fully confidentialised, to protect the anonymity of all respondents. Consideration may also be made to provide, for selected analytical users, confidentialised unit record files (CURFs).

    A high level of accuracy is needed because the principal purpose of the survey is to develop revised benchmarks for the NA. The initial plan was that the survey will be conducted as a stratified sample survey, with full enumeration of large establishments and a sample of the remainder.

    v01: This is the first version of the documentation. Basic raw data, obtained from data entry.

    The scope of the 2009 BAS is all employing businesses in the private sector other than those involved in agricultural activities.

    Included are:
    · Non-governmental organizations (NGOs, not-for profit organizations, etc.);
    · Government Public Bodies

    Excluded are:
    · Non-employing units (e.g., market sellers);
    · Government ministries, constitutional offices and those public bodies involved in public administration and included in the Central Government Budget Sector;
    · Agricultural units (unless large scale/commercial - if the Agriculture census only covers household activities);
    · “Non-resident” bodies such as international agencies, diplomatic missions (e.g., high commissions and embassies, UNDP, FAO, WHO);

    The survey coverage is of all businesses in scope as defined above. Statistical units relevant to the survey are the enterprise and the establishment. The enterprise is an institutional unit and generally corresponds to legal entities such as a company, cooperative, partnership or sole proprietorship. The establishment is an institutional unit or part of an institutional unit, which engages in one, or predominantly one, type of economic activity. Sufficient data must be available to derive or meaningfully estimate value added in order to recognize an establishment. The main statistical unit from which data will be collected in the survey is the establishment. For most businesses there will be a one-to-one relationship between the enterprise and the establishment, i.e., simple enterprises will comprise only one establishment. The purpose of collecting data from establishments (rather than from enterprises) is to enable the most accurate industry estimates of value added possible.

    • Collection start: 2009
    • Collection end: 2009
  12. f

    Datasets: Crowd Data Center (CDC)

    • unisa.figshare.com
    xlsx
    Updated Nov 29, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Lenny Mamaro (2025). Datasets: Crowd Data Center (CDC) [Dataset]. http://doi.org/10.25399/UnisaData.30656291.v1
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Nov 29, 2025
    Dataset provided by
    University of South Africa
    Authors
    Lenny Mamaro
    License

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

    Description

    The Crowd Data Center is an online, international aggregator of openly available data from various global crowdfunding platforms. It provides standardised, structured, and downloadable datasets containing campaign-level information such as project descriptions, funding targets, amounts raised, backer counts, campaign duration, and project categories.The crowd data center is one of the most widely utilized datasets in academia due to its high-quality, cleaned data, which is captured directly from original crowdfunding platforms through automated data extraction protocols. Available at https://thecrowddatacenter.com/Type of Data Collection MethodSecondary Data Collection or Archival Data.Description of the Data Collection MethodThe research design depends on secondary, archival data obtained from the CDC. The data were collected from previously run campaigns recorded across crowdfunding platforms, such as Kickstarter or Indiegogo, and stored within the CDC database.The crowd data center utilises automated web-scraping and API-based data extraction methods for continuous gathering, verification, and updating of data from campaigns. Researchers download datasets from the data centre in CSV or Excel format for analysis. Short Paragraph Example for Your Proposal: The study will utilize secondary data sourced from the Crowd Data Center, an international database that aggregates structured archival data from large crowdfunding platforms. The CDC contains extensive information on campaign characteristics, funding models, creator profiles, and project outcomes. Data presented by the CDC is gathered through automated web scraping and API extraction techniques, ensuring accuracy and comparability across crowdfunding platforms. This approach of collecting secondary data facilitates large-sample empirical analysis and allows one to avoid collecting primary data.

  13. LinkedIn Data | C-Level Executives Worldwide | Verified Work Emails &...

    • datarade.ai
    Updated Jan 1, 2018
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Success.ai (2018). LinkedIn Data | C-Level Executives Worldwide | Verified Work Emails & Contact Details from 700M+ Dataset | Best Price Guarantee [Dataset]. https://datarade.ai/data-products/linkedin-data-c-level-executives-worldwide-verified-work-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Jan 1, 2018
    Dataset provided by
    Area covered
    Latvia, Saint Pierre and Miquelon, Marshall Islands, Burundi, Bermuda, Palestine, Cambodia, Malta, Netherlands, United States Minor Outlying Islands
    Description

    Success.ai proudly offers our exclusive LinkedIn Data product, targeting C-level executives from around the globe. This premium dataset is meticulously curated to empower your business development, recruitment strategies, and market research efforts with direct access to top-tier professionals.

    Global Reach and Detailed Insights: Our LinkedIn Data encompasses profiles of C-level executives worldwide, offering detailed insights that include professional histories, current and past affiliations, as well as direct contact information such as verified work emails and phone numbers. This data spans across industries such as finance, technology, healthcare, manufacturing, and more, ensuring you have comprehensive coverage no matter your sector focus.

    Accuracy and Compliance: Accuracy is paramount in executive-level data. Each profile within our dataset undergoes rigorous verification processes, using advanced AI algorithms to ensure data accuracy and reliability. Our datasets are also compliant with global data privacy laws such as GDPR, CCPA, and others, providing you with data you can trust and use with confidence.

    Empower Your Business Strategies: Leverage our LinkedIn Data to enhance various business functions:

    Sales and Marketing: Directly reach decision-makers, reducing sales cycles and increasing conversion rates. Recruitment and Talent Acquisition: Identify and engage with potential candidates for executive roles within your organization. Market Research and Competitive Analysis: Gain insights into competitor leadership and strategic moves by analyzing executive backgrounds and professional networks. Robust Data Points Include:

    Full Names and Titles: Gain access to the full names and current positions of C-level executives. Professional Emails and Phone Numbers: Direct communication channels to ensure your messages reach the intended audience. Company Information: Understand the organizational context with details about the company size, industry, and role within the corporation. Professional History: Detailed career trajectories, highlighting roles, responsibilities, and achievements. Education and Certifications: Educational backgrounds and certifications that enrich the professional profiles of these executives. Flexible Delivery and Integration: Our LinkedIn Data is available in multiple formats, including CSV, Excel, and via API, allowing easy integration into your CRM systems or other sales platforms. We provide continuous updates to our datasets, ensuring you always have access to the most current information available.

    Competitive Pricing with Best Price Guarantee: Success.ai offers this valuable data at the most competitive rates in the industry, backed by our best price guarantee. We are committed to providing you with the highest quality data at prices that fit your budget, ensuring excellent return on investment.

    Sample Data and Custom Solutions: To demonstrate the quality and depth of our LinkedIn Data, we offer a sample dataset for initial evaluation. For specific needs, our team is skilled at creating customized datasets tailored to your exact business requirements.

    Client Success Stories: Our clients, from startups to Fortune 500 companies, have successfully leveraged our LinkedIn Data to drive growth and strategic initiatives. We provide case studies and testimonials that showcase the effectiveness of our data in real-world applications.

    Engage with Success.ai Today: Connect with us to explore how our LinkedIn Data can transform your strategic initiatives. Our data experts are ready to assist you in leveraging the full potential of this dataset to meet your business goals.

    Reach out to Success.ai to access the world of C-level executives and propel your business to new heights with strategic data insights that drive success.

  14. d

    Tech Install Data | Tech Stack Data for 30M Verified Company Data Profiles |...

    • datarade.ai
    Updated Feb 12, 2018
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Success.ai (2018). Tech Install Data | Tech Stack Data for 30M Verified Company Data Profiles | Best Price Guarantee [Dataset]. https://datarade.ai/data-products/tech-install-data-tech-stack-data-for-30m-verified-company-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Feb 12, 2018
    Dataset provided by
    Success.ai
    Area covered
    Latvia, Norway, Estonia, Poland, Romania, Greece, Macedonia (the former Yugoslav Republic of), Liechtenstein, Austria, Andorra
    Description

    Success.ai presents our Tech Install Data offering, a comprehensive dataset drawn from 28 million verified company profiles worldwide. Our meticulously curated Tech Install Data is designed to empower your sales and marketing strategies by providing in-depth insights into the technology stacks used by companies across various industries. Whether you're targeting small businesses or large enterprises, our data encompasses a diverse range of sectors, ensuring you have the necessary tools to refine your outreach and engagement efforts.

    Comprehensive Coverage: Our Tech Install Data includes crucial information on technology installations used by companies. This encompasses software solutions, SaaS products, hardware configurations, and other technological setups critical for businesses. With data spanning industries such as finance, technology, healthcare, manufacturing, education, and more, our database offers unparalleled insights into corporate tech ecosystems.

    Data Accuracy and Compliance: At Success.ai, we prioritize data integrity and compliance. Our datasets are not only GDPR-compliant but also adhere to various international data protection regulations, making them safe for use across geographic boundaries. Each profile is AI-validated to ensure the accuracy and timeliness of the information provided, with regular updates to reflect any changes in company tech stacks.

    Tailored for Business Development: Leverage our Tech Install Data to enhance your account-based marketing (ABM) campaigns, improve sales prospecting, and execute targeted advertising strategies. Understanding a company's tech stack can help you tailor your messaging, align your product offerings, and address potential needs more effectively. Our data enables you to:

    Identify prospects using competing or complementary products. Customize pitches based on the prospect’s existing technology environment. Enhance product recommendations with insights into potential tech gaps in target companies. Data Points and Accessibility: Our Tech Install Data offers detailed fields such as:

    Company name and contact information. Detailed descriptions of installed technologies. Usage metrics for software and hardware. Decision-makers’ contact details related to tech purchases. This data is delivered in easily accessible formats, including CSV, Excel, or directly through our API, allowing seamless integration with your CRM or any other marketing automation tools. Guaranteed Best Price and Service: Success.ai is committed to providing high-quality data at the most competitive prices in the market. Our best price guarantee ensures that you receive the most value from your investment in our data solutions. Additionally, our customer support team is always ready to assist with any queries or custom data requests, ensuring you maximize the utility of your purchased data.

    Sample Dataset and Custom Requests: To demonstrate the quality and depth of our Tech Install Data, we offer a sample dataset for preliminary review upon request. For specific needs or custom data solutions, our team is adept at creating tailored datasets that precisely match your business requirements.

    Engage with Success.ai Today: Connect with us to discover how our Tech Install Data can transform your business strategy and operational efficiency. Our experts are ready to assist you in navigating the data landscape and unlocking actionable insights to drive your company's growth.

    Start exploring the potential of detailed tech stack insights with Success.ai and gain the competitive edge necessary to thrive in today’s fast-paced business environment.

  15. m

    Companion DDataset for FMVM Calibration and Validation: Kazakhstan,...

    • data.mendeley.com
    Updated Sep 5, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    marco BONELLI (2025). Companion DDataset for FMVM Calibration and Validation: Kazakhstan, 2015–2024 (Monthly) [Dataset]. http://doi.org/10.17632/wnjjn9j6nh.1
    Explore at:
    Dataset updated
    Sep 5, 2025
    Authors
    marco BONELLI
    License

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

    Area covered
    Kazakhstan
    Description

    This dataset accompanies the study “Multi-Premium Valuation in Frontier Markets: Evidence from Kazakhstan” and provides the full calibration inputs, component estimates, and validation benchmarks for the Frontier Market Valuation Model (FMVM) applied to Kazakhstan. It covers the period 2015Q1–2024Q4, with a companion monthly dataset constructed by linear interpolation for visualization and alignment with valuation anchors.

    The dataset is organized in a structured Excel file and contains:

    Core FMVM components: Sovereign risk premium (CRP), Liquidity premium (LP), Behavioral premium (BP), and Institutional quality premium (IQP), along with their sum (FMVM-implied cost of equity).

    Baseline model scenarios: CAPM (Rf + β×GERP), CAPM+CRP, and FMVM (full specification).

    Market anchors: Inverse P/E ratio and earnings yield, used for empirical validation of model estimates.

    Regime flags: Indicators for four structural periods in Kazakhstan’s financial development—(i) 2015 FX float and devaluation transition, (ii) 2017–2019 stabilization and AIFC/AIX launch, (iii) 2020–2021 COVID-19 and oil price shock, and (iv) 2022–2024 unrest, tightening, and disinflation.

    Cross-country comparison inputs: Benchmark estimates for Azerbaijan, Georgia, and Uzbekistan, harmonized to the same CAPM and FMVM structure for regional positioning.

    The dataset supports all calibration, estimation, and out-of-sample validation exercises reported in the paper, including regression fits (Table 6), predictive error metrics (Table 6b), and comparative valuation (Table 7). All core analyses are based on quarterly data (2015Q1–2024Q4), while the monthly version ensures smoother presentation of figures (e.g., Figure 2).

    By providing both raw inputs and processed FMVM outputs, the dataset allows replication of the study’s results, extension to alternative specifications (e.g., LP scaling, IQP multipliers), and further comparative research on frontier equity markets.

    File format: Excel (.xlsx) Temporal coverage: January 2015 – December 2024 (monthly companion); Q1 2015 – Q4 2024 (quarterly core) Geographic coverage: Kazakhstan (with comparator entries for Azerbaijan, Georgia, Uzbekistan) Intended use: Academic research, policy analysis, and replication of FMVM calibration and validation in credibility-sensitive frontier markets.

  16. Massive Bank dataset ( 1 Million+ rows)

    • kaggle.com
    zip
    Updated Feb 21, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    K S ABISHEK (2023). Massive Bank dataset ( 1 Million+ rows) [Dataset]. https://www.kaggle.com/datasets/ksabishek/massive-bank-dataset-1-million-rows
    Explore at:
    zip(32471013 bytes)Available download formats
    Dataset updated
    Feb 21, 2023
    Authors
    K S ABISHEK
    License

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

    Description

    Greetings , fellow analysts !

    (NOTE : This is a random dataset generated using python. It bears no resemblance to any real entity in the corporate world. Any resemblance is a matter of coincidence.)

    REC-SSEC Bank is a govt-aided bank operating in the Indian Peninsula. They have regional branches in over 40+ regions of the country. You have been provided with a massive excel sheet containing the transaction details, the total transaction amount and their location and total transaction count.

    The dataset is described as follows :

    1. Date - The date on which the transaction took place. 2.Domain - Where or which type of Business entity made the transaction. 3.Location - Where the data is collected from 4.Value - Total value of transaction
    2. Count of transaction .

    For example , in the very first row , the data can be read as : " On the first of January, 2022 , 1932 transactions of summing upto INR 365554 from Bhuj were reported " NOTE : There are about 2750 transactions every single day. All of this has been given to you.

    The bank wants you to answer the following questions :

    1. What is the average transaction value everyday for each domain over the year.
    2. What is the average transaction value for every city/location over the year
    3. The bank CEO , Mr: Hariharan , wants to promote the ease of transaction for the highest active domain. If the domains could be sorted into a priority, what would be the priority list ?
    4. What's the average transaction count for each city ?
  17. Licensed Professionals Data | Professionals in APAC Region | Access 700M+...

    • datarade.ai
    Updated Jan 1, 2018
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Success.ai (2018). Licensed Professionals Data | Professionals in APAC Region | Access 700M+ Verified Profiles | Best Price Guarantee [Dataset]. https://datarade.ai/data-products/licensed-professionals-data-professionals-in-apac-region-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Jan 1, 2018
    Dataset provided by
    Area covered
    Macedonia (the former Yugoslav Republic of), Solomon Islands, Afghanistan, Bangladesh, Tuvalu, Korea (Democratic People's Republic of), Albania, Malaysia, Turkey, Tonga, Asia-Pacific
    Description

    Success.ai’s Licensed Professionals Data for Professionals in the APAC Region provides a comprehensive dataset designed for businesses and organizations aiming to connect with licensed experts across various industries in the Asia-Pacific region. Covering professionals such as engineers, medical practitioners, legal advisors, financial consultants, and more, this dataset includes verified contact details, professional histories, and actionable insights.

    With access to over 700 million verified global profiles and a focus on licensed professionals in APAC, Success.ai ensures your outreach, recruitment, and market research strategies are powered by accurate, continuously updated, and AI-validated data. Backed by our Best Price Guarantee, this solution helps you excel in connecting with skilled professionals in APAC’s fast-growing economies.

    Why Choose Success.ai’s Licensed Professionals Data?

    1. Verified Contact Data for Targeted Engagement

      • Access verified work emails, phone numbers, and LinkedIn profiles of licensed professionals across APAC.
      • AI-driven validation ensures 99% accuracy, improving communication efficiency and reducing data gaps.
    2. Comprehensive Coverage of APAC Professionals

      • Includes profiles of licensed professionals from key markets such as China, India, Japan, South Korea, Australia, and Southeast Asia.
      • Gain insights into regional industry trends, certifications, and professional qualifications.
    3. Continuously Updated Datasets

      • Real-time updates capture changes in professional roles, licenses, and certifications.
      • Stay aligned with evolving market conditions and industry demands.
    4. Ethical and Compliant

      • Fully adheres to GDPR, CCPA, and other global data privacy regulations, ensuring responsible and lawful data usage.

    Data Highlights:

    • 700M+ Verified Global Profiles: Connect with licensed professionals across industries in the APAC region.
    • Professional Histories: Access detailed career trajectories, certifications, and areas of expertise.
    • Verified Contact Details: Gain work emails and phone numbers for precision targeting.
    • Regional Insights: Understand industry demands, professional trends, and certification requirements across APAC markets.

    Key Features of the Dataset:

    1. Comprehensive Professional Profiles

      • Identify and connect with licensed professionals such as medical practitioners, engineers, legal advisors, financial consultants, and architects.
      • Target individuals responsible for high-skill roles, regulatory compliance, or professional services.
    2. Advanced Filters for Precision Campaigns

      • Filter professionals by industry, geographic location, or job function.
      • Tailor campaigns to align with specific needs, such as licensing compliance, skill development, or industry-specific solutions.
    3. Regional and Industry Insights

      • Leverage data on emerging industry trends, regulatory requirements, and professional certifications across the APAC region.
      • Refine strategies to align with local market demands and opportunities.
    4. AI-Driven Enrichment

      • Profiles enriched with actionable data enable personalized messaging, highlight unique value propositions, and improve engagement outcomes.

    Strategic Use Cases:

    1. Recruitment and Talent Acquisition

      • Identify licensed professionals for high-skill roles across industries, including healthcare, engineering, and finance.
      • Provide workforce optimization platforms or training solutions tailored to licensing requirements.
    2. Marketing Campaigns and Outreach

      • Design targeted campaigns to promote professional tools, training resources, or certification programs.
      • Use verified contact data for multi-channel outreach, including email, phone, and social media.
    3. Partnership Development and Collaboration

      • Build relationships with industry leaders, licensing boards, and professional associations seeking collaboration or strategic partnerships.
      • Foster alliances that enhance operational capabilities or expand market reach.
    4. Market Research and Competitive Analysis

      • Analyze trends in licensed professions, emerging certifications, and market demands to refine strategies.
      • Benchmark against competitors to identify growth opportunities and high-demand professional skills.

    Why Choose Success.ai?

    1. Best Price Guarantee

      • Access premium-quality licensed professionals data at competitive prices, ensuring strong ROI for your outreach, recruitment, and business initiatives.
    2. Seamless Integration

      • Integrate verified data into CRM systems, analytics tools, or marketing platforms via APIs or downloadable formats, streamlining workflows and enhancing productivity.
    3. Data Accuracy with AI Validation

      • Rely on 99% accuracy to guide data-driven decisions, refine targeting, and boost engagement rates in campaigns...
  18. Detailed Financials Data Of 4492 NSE & BSE Company

    • kaggle.com
    zip
    Updated Jan 1, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    SameerProgrammer (2024). Detailed Financials Data Of 4492 NSE & BSE Company [Dataset]. https://www.kaggle.com/datasets/sameerprogrammer/detailed-financial-data-of-4456-nse-and-bse-company
    Explore at:
    zip(26410935 bytes)Available download formats
    Dataset updated
    Jan 1, 2024
    Authors
    SameerProgrammer
    License

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

    Description

    Description:

    Explore the dynamic landscape of the Indian stock market with this extensive dataset featuring 4456 companies listed on both the National Stock Exchange (NSE) and Bombay Stock Exchange (BSE). Gain insights into each company's financial performance, quarterly and yearly profit and loss statements, balance sheets, cash flow data, and essential financial ratios. Dive deep into the intricacies of shareholding patterns, tracking the movements of promoters, foreign and domestic institutional investors, and the public.

    This dataset is a rich resource for financial analysts, investors, and data enthusiasts. Perform thorough company evaluations, sector-wise comparisons, and predictive modeling. With figures presented in crore rupees, leverage the dataset for in-depth exploratory data analysis, time series forecasting, and machine learning applications. Stay tuned for updates as we enrich this dataset for a deeper understanding of the Indian stock market landscape. Unlock the potential of data-driven decision-making with this comprehensive repository of financial information.

    Folder Structure:

    • 4492 NSE & BSE Companies
      • Main directory containing data for 4456 NSE and BSE registered companies.
      • Company_name folder
        • Individual folders for each company allowing for easy organization and retrieval.
        • Company_name.csv
          • General company information.
        • Quarterly_Profit_Loss.csv
          • Quarterly financial data.
        • Yearly_Profit_Loss.csv
          • Annual financial data.
        • Yearly_Balance_Sheet.csv
          • Annual balance sheet information.
        • Yearly_Cash_flow.csv
          • Annual cash flow data.
        • Ratios.csv.csv
          • Financial ratios over time.
        • Quarterly_Shareholding_Pattern.csv
          • Quarterly shareholding pattern.
        • Yearly_Shareholding_Pattern.csv
          • Annual shareholding pattern.

    File Explanation:

    Company_name.csv

    - `Company_name`: Name of the company.
    - `Sector`: Industry sector of the company.
    - `BSE`: Bombay Stock Exchange code.
    - `NSE`: National Stock Exchange code.
    - `Market Cap`: Market capitalization of the company.
    - `Current Price`: Current stock price.
    - `High/Low`: Highest and lowest stock prices.
    - `Stock P/E`: Price to earnings ratio.
    - `Book Value`: Book value per share.
    - `Dividend Yield`: Dividend yield percentage.
    - `ROCE`: Return on capital employed percentage.
    - `ROE`: Return on equity percentage.
    - `Face Value`: Face value of the stock.
    - `Price to Sales`: Price to sales ratio.
    - `Sales growth (1, 3, 5, 7, 10 years)`: Sales growth percentage over different time periods.
    - `Profit growth (1, 3, 5, 7, 10 years)`: Profit growth percentage over different time periods.
    - `EPS`: Earnings per share.
    - `EPS last year`: Earnings per share in the last year.
    - `Debt (1, 3, 5, 7, 10 years)`: Debt of the company over different time periods.
    

    Quarterly_Profit_Loss.csv

     - `Sales`: Revenue generated by the company.
     - `Expenses`: Total expenses incurred.
     - `Operating Profit`: Profit from core operations.
     - `OPM %`: Operating Profit Margin percentage.
     - `Other Income`: Additional income sources.
     - `Interest`: Interest paid.
     - `Depreciation`: Depreciation of assets.
     - `Profit before tax`: Profit before tax.
     - `Tax %`: Tax percentage.
     - `Net Profit`: Net profit after tax.
     - `EPS in Rs`: Earnings per share.
    

    Yearly_Profit_Loss.csv

    - Same as Quarterly_Profit_Loss.csv, but on a yearly basis.
    

    Yearly_Balance_Sheet.csv

    - `Equity Capital`: Capital raised through equity.
    - `Reserves`: Company's retained earnings.
    - `Borrowings`: Company's borrowings.
    - `Other Liabilities`: Other financial obligations.
    - `Total Liabilities`: Sum of all liabilities.
    - `Fixed Assets`: Company's long-term assets.
    - `CWIP`: Capital Work in Progress.
    - `Investments`: Company's investments.
    - `Other Assets`: Other non-current assets.
    - `Total Assets`: Sum of all assets.
    

    Yearly_Cash_flow.csv

    - `Cash from Operating Activity`: Cash generated from core business operations.
    - `Cash from Investing Activity`: Cash from investments.
    - `Cash from Financing Activity`: Cash from financing (borrowing, stock issuance, etc.).
    - `Net Cash Flow`: Overall net cash flow.
    

    Ratios.csv.csv

    - `Debtor Days`: Number of days it takes to collect receivables.
    - `Inventory Days`: Number of days inventory is held.
    - `Days Payable`: Number of days a company takes to pay its bills.
    - `Cash Conversion Cycle`: Time taken to convert sales into cash.
    - `Wor...
    
  19. Apple (AAPL) Historical Stock Data

    • kaggle.com
    zip
    Updated Feb 29, 2020
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Tarun Paparaju (2020). Apple (AAPL) Historical Stock Data [Dataset]. https://www.kaggle.com/datasets/tarunpaparaju/apple-aapl-historical-stock-data
    Explore at:
    zip(50651 bytes)Available download formats
    Dataset updated
    Feb 29, 2020
    Authors
    Tarun Paparaju
    License

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

    Description

    This dataset contains Apple's (AAPL) stock data for the last 10 years (from 2010 to date). I believe insights from this data can be used to build useful price forecasting algorithms to aid investment. I would like to thank Nasdaq for providing access to this rich dataset. I will make sure I update this dataset every few months.

  20. Lottery Cash 4 Life Winning Numbers: Beginning 2014

    • data.ny.gov
    • catalog.data.gov
    • +2more
    csv, xlsx, xml
    Updated Dec 3, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    New York State Gaming Commission (2025). Lottery Cash 4 Life Winning Numbers: Beginning 2014 [Dataset]. https://data.ny.gov/Government-Finance/Lottery-Cash-4-Life-Winning-Numbers-Beginning-2014/kwxv-fwze
    Explore at:
    csv, xml, xlsxAvailable download formats
    Dataset updated
    Dec 3, 2025
    Dataset authored and provided by
    New York State Gaming Commissionhttps://gaming.ny.gov/
    Description

    Go to http://on.ny.gov/1xRIvPz on the New York Lottery website for past Cash 4 Life results and payouts.

Share
FacebookFacebook
TwitterTwitter
Email
Click to copy link
Link copied
Close
Cite
Economic and Risk Analysis (2025). Financial Statement Data Sets [Dataset]. https://catalog.data.gov/dataset/financial-statement-data-sets

Financial Statement Data Sets

Explore at:
Dataset updated
Dec 2, 2025
Dataset provided by
Economic and Risk Analysis
Description

The data sets below provide selected information extracted from exhibits to corporate financial reports filed with the Commission using eXtensible Business Reporting Language (XBRL).

Search
Clear search
Close search
Google apps
Main menu