45 datasets found
  1. b

    Ford Motor Company Financial Statements

    • bullfincher.io
    Updated Sep 19, 2024
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    Bullfincher (2024). Ford Motor Company Financial Statements [Dataset]. https://bullfincher.io/companies/ford-motor-company/financial-statements
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    Dataset updated
    Sep 19, 2024
    Dataset authored and provided by
    Bullfincher
    License

    https://bullfincher.io/privacy-policyhttps://bullfincher.io/privacy-policy

    Description

    Get detailed Ford Motor Company Financial Statements 2020-2024. Find the income statements, balance sheet, cashflow, profitability, and other key ratios.

  2. Financial Statements of U.S. Nonbank Subsidiaries of U.S. Holding Companies

    • catalog.data.gov
    Updated Dec 18, 2024
    + more versions
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    Board of Governors of the Federal Reserve System (2024). Financial Statements of U.S. Nonbank Subsidiaries of U.S. Holding Companies [Dataset]. https://catalog.data.gov/dataset/financial-statements-of-u-s-nonbank-subsidiaries-of-u-s-holding-companies
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    Dataset updated
    Dec 18, 2024
    Dataset provided by
    Federal Reserve Systemhttp://www.federalreserve.gov/
    Federal Reserve Board of Governors
    Area covered
    United States
    Description

    The Financial Statements of U.S. Nonbank Subsidiaries of U.S. Holding Companies (FR Y-11; FR Y-11S) reporting forms collect financial information for individual nonfunctional regulated U.S. nonbank subsidiaries of domestic holding companies, which is essential for monitoring the subsidiaries' potential impact on the condition of the holding company or its subsidiary banks. Holding companies file the FR Y-11 on a quarterly or annual basis or the FR Y-11S on an annual basis, predominantly based on whether the organization meets certain asset size thresholds. The FR Y-11 data are used with other holding company data to assess the condition of holding companies that are heavily engaged in nonbanking activities and to monitor the volume, nature, and condition of their nonbanking operations.

  3. b

    Bristol-Myers Squibb Company Financial Statements

    • bullfincher.io
    Updated Jul 10, 2025
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    Bullfincher (2025). Bristol-Myers Squibb Company Financial Statements [Dataset]. https://bullfincher.io/companies/bristol-myers-squibb-company/financial-statements
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    Dataset updated
    Jul 10, 2025
    Dataset authored and provided by
    Bullfincher
    License

    https://bullfincher.io/privacy-policyhttps://bullfincher.io/privacy-policy

    Description

    Get detailed Bristol-Myers Squibb Company Financial Statements 2020-2024. Find the income statements, balance sheet, cashflow, profitability, and other key ratios.

  4. f

    Francis Financial | Finance | Finance & Banking Data

    • datastore.forage.ai
    Updated Sep 24, 2024
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    (2024). Francis Financial | Finance | Finance & Banking Data [Dataset]. https://datastore.forage.ai/searchresults/?resource_keyword=Financial%20Data
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    Dataset updated
    Sep 24, 2024
    Description

    Francis Financial is a reputable financial services company that provides a range of products and services to its clients. The company's data holdings are vast and varied, encompassing financial market data, economic trends, and industry insights. With a strong focus on serving its clients' needs, Francis Financial's data repository is a treasure trove of valuable information for anyone looking to gain a deeper understanding of the financial world.

    From company reports and financial statements to market analysis and industry news, Francis Financial's data collection is a comprehensive archive of important financial information. By leveraging this data, users can gain valuable insights into market trends, spot emerging patterns, and make informed decisions. With its extensive data holdings and commitment to providing high-quality information, Francis Financial is an important player in the financial data landscape.

  5. f

    Financial Times Interactive Data LLC | Government Data | Community

    • datastore.forage.ai
    Updated Sep 24, 2024
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    (2024). Financial Times Interactive Data LLC | Government Data | Community [Dataset]. https://datastore.forage.ai/searchresults/?resource_keyword=Financial%20Data
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    Dataset updated
    Sep 24, 2024
    Description

    Financial Times Interactive Data LLC offers a vast repository of economic and financial data, providing valuable insights into global markets and trading. With a focus on delivering timely and accurate information, the company has established itself as a go-to source for financial institutions, investors, and researchers seeking to stay ahead of the curve.

    our vast database is comprised of historic financial statements, economic indicators, and proprietary data from leading sources, including government agencies, regulatory bodies, and industry associations. By providing access to this trove of information, Financial Times Interactive Data LLC enables its clients to make informed decisions, identify trends, and uncover new opportunities in the rapidly evolving world of finance.

  6. d

    Financial Services Commission_Corporate financial information

    • data.go.kr
    json+xml
    Updated Mar 5, 2025
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    (2025). Financial Services Commission_Corporate financial information [Dataset]. https://www.data.go.kr/en/data/15043459/openapi.do
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    json+xmlAvailable download formats
    Dataset updated
    Mar 5, 2025
    License

    https://data.go.kr/ugs/selectPortalPolicyView.dohttps://data.go.kr/ugs/selectPortalPolicyView.do

    Description

    Financial information inquiry service that provides summary financial statements, financial statements, and profit and loss statements by inquiring corporate registration number and business year

  7. f

    Ciclo Italian Investment Co. | Financial Planning & Management | Finance &...

    • datastore.forage.ai
    Updated Sep 24, 2024
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    (2024). Ciclo Italian Investment Co. | Financial Planning & Management | Finance & Banking Data [Dataset]. https://datastore.forage.ai/searchresults/?resource_keyword=Financial%20Data
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    Dataset updated
    Sep 24, 2024
    Description

    Ciclo Italian Investment Co., a trusted financial services provider, offers unique market insights and research to its clients. With a focus on Italy, the company provides in-depth analysis of the country's economic trends, making it an valuable resource for investors and business professionals.

    Through their platform, Ciclo Italian Investment Co. provides access to a wide range of financial data, including market reports, economic indicators, and company profiles. By understanding the Italian market, businesses can make informed decisions and capitalize on new opportunities.

  8. f

    Thomson Financial Software | Vehicles Data | Automotive Data

    • datastore.forage.ai
    Updated Sep 24, 2024
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    (2024). Thomson Financial Software | Vehicles Data | Automotive Data [Dataset]. https://datastore.forage.ai/searchresults/?resource_keyword=Financial%20Data
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    Dataset updated
    Sep 24, 2024
    Description

    Thomson Financial Software, a leading provider of financial research and analysis, has been a trusted source for business and market intelligence since its establishment in 1993. As a respected name in the industry, Thomson Financial Software offers a vast repository of financial data, covering a range of topics including economic trends, company profiles, and market research.

    With years of expertise in the financial sector, Thomson Financial Software has built a reputation for delivering accurate and reliable data, making it a go-to destination for professionals seeking to stay informed about the financial markets. By leveraging its extensive network of financial institutions and industry experts, Thomson Financial Software provides in-depth insights into the global financial landscape, making it an invaluable resource for anyone seeking to stay ahead of the curve in the rapidly changing financial world.

  9. China CN: Listed Company: Net Profit: Financial

    • ceicdata.com
    Updated Dec 24, 2024
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    CEICdata.com (2024). China CN: Listed Company: Net Profit: Financial [Dataset]. https://www.ceicdata.com/en/china/financial-data-of-listed-company-net-profit/cn-listed-company-net-profit-financial
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    Dataset updated
    Dec 24, 2024
    Dataset provided by
    CEIC Data
    License

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

    Time period covered
    Dec 1, 2012 - Dec 1, 2023
    Area covered
    China
    Variables measured
    Enterprises Survey
    Description

    China Listed Company: Net Profit: Financial data was reported at 2,421.360 RMB bn in 2023. This records an increase from the previous number of 2,385.699 RMB bn for 2022. China Listed Company: Net Profit: Financial data is updated yearly, averaging 1,168.013 RMB bn from Dec 2001 (Median) to 2023, with 22 observations. The data reached an all-time high of 2,421.360 RMB bn in 2023 and a record low of 1.967 RMB bn in 2001. China Listed Company: Net Profit: Financial data remains active status in CEIC and is reported by China Securities Regulatory Commission. The data is categorized under China Premium Database’s Business and Economic Survey – Table CN.OZ: Financial Data of Listed Company: Net Profit.

  10. Global Financial Data Services Market Size By Service Type, By End-User, By...

    • verifiedmarketresearch.com
    Updated Sep 5, 2024
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    VERIFIED MARKET RESEARCH (2024). Global Financial Data Services Market Size By Service Type, By End-User, By Deployment Mode, By Geographic Scope And Forecast [Dataset]. https://www.verifiedmarketresearch.com/product/financial-data-services-market/
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    Dataset updated
    Sep 5, 2024
    Dataset provided by
    Verified Market Researchhttps://www.verifiedmarketresearch.com/
    Authors
    VERIFIED MARKET RESEARCH
    License

    https://www.verifiedmarketresearch.com/privacy-policy/https://www.verifiedmarketresearch.com/privacy-policy/

    Time period covered
    2024 - 2031
    Area covered
    Global
    Description

    Financial Data Services Market size was valued at USD 23.3 Billion in 2023 and is projected to reach USD 42.6 Billion by 2031, growing at a CAGR of 8.1% during the forecast period 2024-2031.

    Global Financial Data Services Market Drivers

    The market drivers for the Financial Data Services Market can be influenced by various factors. These may include:

    The need for real-time analytics is growing: Real-time analytics are becoming more and more necessary in the financial sector due to the acceleration of data consumption. To reduce risks, make wise decisions, and enhance customer service, organizations need quick insights. Stakeholders are giving priority to solutions that enable quick data processing and analysis due to the increase in market volatility and complexity. The need for sophisticated analytical skills is driving providers of financial data services to modernize their products. As companies come to realize that using real-time data is crucial for keeping a competitive edge in a fast-paced financial climate, the competition among them to provide timely insights also boosts market growth.

    Growing Machine Learning and AI Adoption: Data analysis has been profoundly changed by the incorporation of AI and machine learning technology into financial data services. By enabling predictive analytics, these technologies help financial organizations make better decisions and reduce risk. Businesses can find trends that were previously invisible by automating data processing operations. This leads to more precise forecasts and improved investment plans. Furthermore, sophisticated algorithms are flexible enough to adjust to shifting circumstances, keeping organizations flexible. The increasing intricacy of financial markets necessitates the use of AI and machine learning, which in turn drives demand for sophisticated financial data services and promotes innovation in the sector.

    Global Financial Data Services Market Restraints

    Several factors can act as restraints or challenges for the Financial Data Services Market. These may include:

    Difficulties in Regulatory Compliance: Regulations controlling data management, privacy, and financial transactions place heavy restrictions on the financial data services market. Regulations like the GDPR, CCPA, and banking industry standards like Basel III and SOX must all be complied with by organizations. Complying with these requirements frequently necessitates a significant investment in staff and compliance systems, which can be taxing, especially for smaller businesses. Regulations are dynamic, and different locations have different needs, which adds to the complexity and expense. Noncompliance not only results in monetary fines but also has the potential to harm an entity's image, so impeding market expansion.

    Dangers to Data Security: Threats to data security are a major impediment to the financial data services market. Because they manage sensitive data, financial institutions are often the targets of cyberattacks. Breach can lead to significant monetary losses, legal repercussions, and long-term harm to one's image. Although they can greatly increase operating expenses, investments in strong security measures like encryption, safe access protocols, and continual monitoring are crucial. Moreover, the dynamic strategies employed by cybercriminals need continuous adjustment, placing a burden on resources and detracting from the main operations of businesses. The evolution of security threats poses a challenge to preserving consumer trust, hence impeding industry expansion.

  11. o

    Yahoo Finance Business Information Dataset

    • opendatabay.com
    .undefined
    Updated Jun 23, 2025
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    Bright Data (2025). Yahoo Finance Business Information Dataset [Dataset]. https://www.opendatabay.com/data/premium/c7c8bf69-7728-4527-a2a2-7d1506e02263
    Explore at:
    .undefinedAvailable download formats
    Dataset updated
    Jun 23, 2025
    Dataset authored and provided by
    Bright Data
    Area covered
    Finance & Banking Analytics
    Description

    Yahoo Finance Business Information dataset to access comprehensive details on companies, including financial data and business profiles. Popular use cases include market analysis, investment research, and competitive benchmarking.

    Use our Yahoo Finance Business Information dataset to access comprehensive financial and corporate data, including company profiles, stock prices, market capitalization, revenue, and key performance metrics. This dataset is tailored for financial analysts, investors, and researchers to analyze market trends and evaluate company performance.

    Popular use cases include investment research, competitor benchmarking, and trend forecasting. Leverage this dataset to make informed financial decisions, identify growth opportunities, and gain a deeper understanding of the business landscape.

    Dataset Features

    • name: Represents the company name.
    • company_id: Unique identifier assigned to each company.
    • entity_type: Denotes the type/category of the business entity.
    • summary: A brief description or summary of the company.
    • stock_ticker: The ticker symbol used for trading on stock exchanges.
    • currency: The currency in which financial values are expressed.
    • earnings_date: The date for the reported earnings.
    • exchange: The stock exchange on which the company is listed.
    • closing_price: The final stock price at the end of the trading day.
    • previous_close: The stock price at the close of the previous trading day.
    • open: The price at which the stock opened for the trading day.
    • bid: The current highest price that a buyer is willing to pay for the stock.
    • ask: The current lowest price that a seller is willing to accept.
    • day_range: The range between the lowest and highest prices during the trading day.
    • week_range: A broader price range over the past week.
    • volume: Number of shares that traded in the session.
    • avg_volume: Average daily share volume over a specific period.
    • market_cap: Total market capitalization of the company.
    • beta: A measure of the stock's volatility in comparison to the market.
    • pe_ratio: Price-to-earnings ratio for valuation.
    • eps: Earnings per share.
    • dividend_yield: Dividend yield percentage.
    • ex_dividend_date: The date on which the stock trades without the right to the declared dividend.
    • target_est: The analyst's target price estimate.
    • url: The URL to more detailed company information.
    • people_also_watch: Companies frequently watched alongside this company.
    • similar: Other companies with similar profiles.
    • risk_score: A quantified risk score.
    • risk_score_text: A textual interpretation of the risk score.
    • risk_score_percentile: The risk score expressed in percentile terms.
    • recommendation_rating: Analyst recommendation ratings.
    • analyst_price_target: Analyst provided stock price target.
    • company_profile_address: Company address from the profile.
    • company_profile_website: URL for the company’s website.
    • company_profile_phone: Contact phone number.
    • company_profile_sector: The sector in which the company operates.
    • company_profile_industry: Industry classification of the company.
    • company_profile_employees: Number of employees in the company.
    • company_profile_description: A detailed profile description of the company.
    • valuation_measures: Contains key valuation ratios and metrics such as enterprise value, price-to-book, and price-to-sales ratios.
    • Financial_highlights: Offers summary financial statistics including EPS, profit margin, revenue, and cash flow indicators.
    • financials: This column appears to provide financial statement data.
    • financials_quarterly: Similar to the previous field but intended to capture quarterly financial figures.
    • earnings_estimate: Contains consensus earnings estimates including average, high, and low estimates along with the number of analysts involved.
    • revenue_estimate: Provides revenue estimates with details such as average estimate, high and low values, and sales growth factors.
    • earnings_history: This field tracks historical earnings and surprises by comparing actual EPS with estimates.
    • eps_trend: Contains information on how the EPS has trended over various recent time intervals.
    • eps_revisions: Captures recent changes in EPS forecasts.
    • growth_estimates: Offers projections related to growth prospects over different time horizons.
    • top_analysts: Intended to list the top analysts covering the company.
    • upgrades_and_downgrades: This field shows recent analyst upgrades or downgrades.
    • recent_news: Meant to contain recent news articles related to the company.
    • fanacials_currency: Appears to indicate the currency used for financial reporting or valuation in the dataset.
    • **company_profile_he
  12. Apple Security Market Data

    • kaggle.com
    Updated Sep 6, 2023
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    Sanket2002 (2023). Apple Security Market Data [Dataset]. https://www.kaggle.com/datasets/sanket2002/apple-security-market-data/data
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Sep 6, 2023
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Sanket2002
    Description

    The Apple share market data of 10 years can be used for educational purposes in a variety of ways, such as:

    To learn about the stock market and how it works. By studying the historical price movements of Apple stock, you can learn about the different factors that can affect the stock market, such as economic conditions, interest rates, and company earnings. To develop investment strategies. By analyzing the Apple share market data, you can identify patterns and trends that can help you make better investment decisions. For example, you might notice that Apple stock tends to perform well in certain economic conditions or when the company releases new products. To learn about Apple's business. By tracking the company's stock price, you can get a sense of how investors are viewing Apple's financial performance and future prospects. This information can be helpful for making decisions about whether or not to invest in Apple stock. To conduct research on financial topics. The Apple share market data can be used to support research on a variety of financial topics, such as the impact of inflation on stock prices, the relationship between stock prices and interest rates, and the performance of different investment strategies. In addition to these educational purposes, the Apple share market data can also be used for other purposes, such as:

    To create trading algorithms. Trading algorithms are computer programs that automatically buy and sell stocks based on certain criteria. The Apple share market data can be used to train trading algorithms to identify profitable trading opportunities. To develop risk management strategies. Risk management strategies are used to protect investors from losses. The Apple share market data can be used to identify risks associated with investing in Apple stock and to develop strategies to mitigate those risks. To make corporate decisions. The Apple share market data can be used by companies to make decisions about their business, such as how much to invest in research and development, how to allocate capital, and when to issue new shares. Overall, the Apple share market data is a valuable resource that can be used for a variety of educational and practical purposes. If you are interested in learning more about the stock market or investing, I encourage you to explore the Apple share market data.

  13. Stock Prices Dataset

    • brightdata.com
    .json, .csv, .xlsx
    Updated Dec 2, 2024
    + more versions
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    Bright Data (2024). Stock Prices Dataset [Dataset]. https://brightdata.com/products/datasets/financial/stock-price
    Explore at:
    .json, .csv, .xlsxAvailable download formats
    Dataset updated
    Dec 2, 2024
    Dataset authored and provided by
    Bright Datahttps://brightdata.com/
    License

    https://brightdata.com/licensehttps://brightdata.com/license

    Area covered
    Worldwide
    Description

    Use our Stock prices dataset to access comprehensive financial and corporate data, including company profiles, stock prices, market capitalization, revenue, and key performance metrics. This dataset is tailored for financial analysts, investors, and researchers to analyze market trends and evaluate company performance.

    Popular use cases include investment research, competitor benchmarking, and trend forecasting. Leverage this dataset to make informed financial decisions, identify growth opportunities, and gain a deeper understanding of the business landscape. The dataset includes all major data points: company name, company ID, summary, stock ticker, earnings date, closing price, previous close, opening price, and much more.

  14. Bond Analytics | Financial Data

    • lseg.com
    Updated Nov 25, 2024
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    LSEG (2024). Bond Analytics | Financial Data [Dataset]. https://www.lseg.com/en/data-analytics/financial-data/analytics/pricing-analytics/bond-analytics
    Explore at:
    csv,json,python,user interface,xmlAvailable download formats
    Dataset updated
    Nov 25, 2024
    Dataset provided by
    London Stock Exchange Grouphttp://www.londonstockexchangegroup.com/
    Authors
    LSEG
    License

    https://www.lseg.com/en/policies/website-disclaimerhttps://www.lseg.com/en/policies/website-disclaimer

    Description

    Get Bond Analytics from LSEG to better analyze government and corporate bonds, preferred shares, inflation-linked bonds and municipal bonds. Find out more.

  15. d

    Europe & UK Corporate Buyback Data | Transactions and Intentions | 31...

    • datarade.ai
    Updated Feb 15, 2024
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    Smart Insider (2024). Europe & UK Corporate Buyback Data | Transactions and Intentions | 31 Countries | 10 Years Historical Data | Public Equity / Stock Market Data [Dataset]. https://datarade.ai/data-products/europe-uk-corporate-buyback-data-transactions-and-intenti-smart-insider
    Explore at:
    .xml, .csv, .xls, .txtAvailable download formats
    Dataset updated
    Feb 15, 2024
    Dataset authored and provided by
    Smart Insider
    Area covered
    Estonia, Germany, United Kingdom, France
    Description

    Smart Insider’s Global Share Buyback Database offers invaluable insights to investors on stock market data. We provide detailed, up-to-date share buyback data covering over 55,000 companies globally and over 8,000+ in Europe & UK, that’s every company that reports Buybacks through regulatory processes.

    Our Share buyback data includes detailed information on all major buyback transactions including source announcements and derived analysis fields. Our platform adds a visual representation of the data, allowing investors to quickly identify patterns and make decisions based on their findings.

    Get detailed share buyback insights with Smart Insider and stay ahead of the curve with accurate, historical buyback insight that helps you make better investment decisions.

    We provide full customization of reports delivered by desktop, through feeds, or alerts. Our quant clients can receive data in a variety of formats such as CSV, XML or XLSX via SFTP, API or Snowflake.

    Sample dataset for Desktop Service has been provided with limited fields. Upon request, we can provide a detailed Quant sample.

    Tags: Equity Market Data, Stock Market Data, Corporate Actions Data, Corporate Buyback Data, Company Financial Data, Insider Trading Data

  16. S&P 500 stock data

    • kaggle.com
    zip
    Updated Aug 11, 2017
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    Cam Nugent (2017). S&P 500 stock data [Dataset]. https://www.kaggle.com/camnugent/sandp500
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    zip(31994392 bytes)Available download formats
    Dataset updated
    Aug 11, 2017
    Authors
    Cam Nugent
    License

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

    Description

    Context

    Stock market data can be interesting to analyze and as a further incentive, strong predictive models can have large financial payoff. The amount of financial data on the web is seemingly endless. A large and well structured dataset on a wide array of companies can be hard to come by. Here I provide a dataset with historical stock prices (last 5 years) for all companies currently found on the S&P 500 index.

    The script I used to acquire all of these .csv files can be found in this GitHub repository In the future if you wish for a more up to date dataset, this can be used to acquire new versions of the .csv files.

    Content

    The data is presented in a couple of formats to suit different individual's needs or computational limitations. I have included files containing 5 years of stock data (in the all_stocks_5yr.csv and corresponding folder) and a smaller version of the dataset (all_stocks_1yr.csv) with only the past year's stock data for those wishing to use something more manageable in size.

    The folder individual_stocks_5yr contains files of data for individual stocks, labelled by their stock ticker name. The all_stocks_5yr.csv and all_stocks_1yr.csv contain this same data, presented in merged .csv files. Depending on the intended use (graphing, modelling etc.) the user may prefer one of these given formats.

    All the files have the following columns: Date - in format: yy-mm-dd Open - price of the stock at market open (this is NYSE data so all in USD) High - Highest price reached in the day Low Close - Lowest price reached in the day Volume - Number of shares traded Name - the stock's ticker name

    Acknowledgements

    I scraped this data from Google finance using the python library 'pandas_datareader'. Special thanks to Kaggle, Github and The Market.

    Inspiration

    This dataset lends itself to a some very interesting visualizations. One can look at simple things like how prices change over time, graph an compare multiple stocks at once, or generate and graph new metrics from the data provided. From these data informative stock stats such as volatility and moving averages can be easily calculated. The million dollar question is: can you develop a model that can beat the market and allow you to make statistically informed trades!

  17. F

    Quarterly Financial Report: U.S. Corporations: Food and Beverage Stores:...

    • fred.stlouisfed.org
    json
    Updated Jun 10, 2025
    + more versions
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    (2025). Quarterly Financial Report: U.S. Corporations: Food and Beverage Stores: Retained Earnings [Dataset]. https://fred.stlouisfed.org/series/QFR322445USNO
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Jun 10, 2025
    License

    https://fred.stlouisfed.org/legal/#copyright-public-domainhttps://fred.stlouisfed.org/legal/#copyright-public-domain

    Area covered
    United States
    Description

    Graph and download economic data for Quarterly Financial Report: U.S. Corporations: Food and Beverage Stores: Retained Earnings (QFR322445USNO) from Q4 2000 to Q1 2025 about retained earnings, beverages, finance, earnings, retail trade, corporate, food, sales, retail, industry, and USA.

  18. T

    Data from: Detecting Fraudulent Financial Reporting Using Fraud Score Model...

    • dataverse.telkomuniversity.ac.id
    pdf
    Updated Mar 31, 2022
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    Telkom University Dataverse (2022). Detecting Fraudulent Financial Reporting Using Fraud Score Model and Fraud Pentagon Theory : Empirical Study of Companies Listed in the LQ 45 Index [Dataset]. http://doi.org/10.34820/FK2/HPWBBT
    Explore at:
    pdf(602926)Available download formats
    Dataset updated
    Mar 31, 2022
    Dataset provided by
    Telkom University Dataverse
    License

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

    Description

    Misstatements and concealment of facts about the value of accounts in the financial statements indicate a fraudulent financial reporting. As a result, financial information is irrelevant and misleading. The purpose of this study was to analyze the fraud pentagon theory in detecting fraudulent financial reporting using the fraud score model of companies listed in the LQ 45 index on the Indonesia Stock Exchange in 2014-2018. The results showed financial stability, external pressure, nature of the industry, effective monitoring, change in auditors, total accruals, change in directors, the proportion of independent commissioners, frequent numbers of CEO's picture and family firms simultaneously affect the fraudulent financial reporting. Partially, financial stability and Family firms have a positive effect, external pressure and total accruals have a negative effect, and the nature of industry, effective monitoring, change in auditors, change in director, the proportion of independent commissioners, and frequent number of CEO's picture have no effect on fraudulent financial reporting. Based on the results of the research, fraud pentagon theory can be used to minimize the occurrence of fraudulent financial reporting that may be done by the company by ensuring the fairness of a financial report and assessing the risk of fraud by taking into account all aspects, especially on asset change ratios, debt ratios, accounts receivable ratios, percentage of independent audit committees change in auditors, changes in directors.

  19. F

    Quarterly Financial Report: U.S. Corporations: All Manufacturing: Total Cash...

    • fred.stlouisfed.org
    json
    Updated Jun 10, 2025
    + more versions
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    (2025). Quarterly Financial Report: U.S. Corporations: All Manufacturing: Total Cash on Hand and in U.S. Banks [Dataset]. https://fred.stlouisfed.org/series/QFRTCASHMFGUSNO
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Jun 10, 2025
    License

    https://fred.stlouisfed.org/legal/#copyright-public-domainhttps://fred.stlouisfed.org/legal/#copyright-public-domain

    Area covered
    United States
    Description

    Graph and download economic data for Quarterly Financial Report: U.S. Corporations: All Manufacturing: Total Cash on Hand and in U.S. Banks (QFRTCASHMFGUSNO) from Q4 2000 to Q1 2025 about cash, finance, corporate, banks, depository institutions, manufacturing, industry, and USA.

  20. Finance and Accounting Business Process Outsourcing Service Market Report |...

    • dataintelo.com
    csv, pdf, pptx
    Updated Jul 22, 2024
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    Dataintelo (2024). Finance and Accounting Business Process Outsourcing Service Market Report | Global Forecast From 2025 To 2033 [Dataset]. https://dataintelo.com/report/finance-and-accounting-business-process-outsourcing-service-market
    Explore at:
    pptx, pdf, csvAvailable download formats
    Dataset updated
    Jul 22, 2024
    Dataset authored and provided by
    Dataintelo
    License

    https://dataintelo.com/privacy-and-policyhttps://dataintelo.com/privacy-and-policy

    Time period covered
    2024 - 2032
    Area covered
    Global
    Description

    Finance and Accounting Business Process Outsourcing Service Market Outlook 2032



    The global finance and accounting business process outsourcing service market size was USD 60.31 Billion in 2023 and is projected to reach USD 139.04 Billion by 2032, expanding at a CAGR of 9.1% during 2024–2032. The market growth is attributed to the increasing need for data-driven decision making across the globe.



    Escalating need for data-driven decision making is a key driver of the finance and accounting BPO service market. Businesses are increasingly relying on financial data and analytics to make strategic decisions, assess performance, and identify opportunities for improvement. BPO providers offer advanced data analytics services, enabling their clients to gain valuable insights from their financial data and make informed decisions, thereby driving the finance and accounting BPO service market.





    Impact of Artificial Intelligence (AI) in Finance and Accounting Business Process Outsourcing Service Market



    Artificial Intelligence has a significant impact on finance and accounting business process outsourcing service market. AI, by automating routine tasks, has increased the speed, accuracy, and efficiency of financial operations, leading to a decrease in costs and an improvement in service delivery. AI-powered tools have streamlined processes such as invoice processing, data entry, and financial reporting, which traditionally required substantial human effort and time.



    AI has enabled predictive analytics, allowing businesses to forecast financial trends and make strategic decisions. It has strengthened fraud detection and risk management by identifying unusual patterns and anomalies in financial data. Furthermore, AI has facilitated personalized customer service in the finance sector through chatbots and virtual assistants.



    Finance and Accounting Business Process Outsourcing Service Market Dynamics





    Major Drivers



    <p style="tex

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Email
Click to copy link
Link copied
Close
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Bullfincher (2024). Ford Motor Company Financial Statements [Dataset]. https://bullfincher.io/companies/ford-motor-company/financial-statements

Ford Motor Company Financial Statements

Explore at:
Dataset updated
Sep 19, 2024
Dataset authored and provided by
Bullfincher
License

https://bullfincher.io/privacy-policyhttps://bullfincher.io/privacy-policy

Description

Get detailed Ford Motor Company Financial Statements 2020-2024. Find the income statements, balance sheet, cashflow, profitability, and other key ratios.

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