MIT Licensehttps://opensource.org/licenses/MIT
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Symbol: This acts as a unique identifier for a particular stock on a specific exchange. Just like AAPL represents Apple Inc. on the NASDAQ exchange. Name: This is the full name of the company that issued the stock. Currency: This indicates the currency in which the stock is traded. Examples include USD (US Dollar), EUR (Euro), and JPY (Japanese Yen). Exchange: This refers to the stock exchange where the stock is traded. NASDAQ and NYSE are some well-known exchanges. MIC Code: This stands for Market Identifier Code and is used to uniquely identify a specific exchange or trading venue. Country: This specifies the country of incorporation of the company that issued the stock. Type: the type of the st0ck
Success.ai offers a cutting-edge solution for businesses and organizations seeking Company Financial Data on private and public companies. Our comprehensive database is meticulously crafted to provide verified profiles, including contact details for financial decision-makers such as CFOs, financial analysts, corporate treasurers, and other key stakeholders. This robust dataset is continuously updated and validated using AI technology to ensure accuracy and relevance, empowering businesses to make informed decisions and optimize their financial strategies.
Key Features of Success.ai's Company Financial Data:
Global Coverage: Access data from over 70 million businesses worldwide, including public and private companies across all major industries and regions. Our datasets span 250+ countries, offering extensive reach for your financial analysis and market research.
Detailed Financial Profiles: Gain insights into company financials, including revenue, profit margins, funding rounds, and operational costs. Profiles are enriched with key contact details, including work emails, phone numbers, and physical addresses, ensuring direct access to decision-makers.
Industry-Specific Data: Tailored datasets for sectors such as financial services, manufacturing, technology, healthcare, and energy, among others. Each dataset is customized to meet the unique needs of industry professionals and analysts.
Real-Time Accuracy: With continuous updates powered by AI-driven validation, our financial data maintains a 99% accuracy rate, ensuring you have access to the most reliable and up-to-date information available.
Compliance and Security: All data is collected and processed in strict adherence to global compliance standards, including GDPR, ensuring ethical and lawful usage.
Why Choose Success.ai for Company Financial Data?
Best Price Guarantee: We pride ourselves on offering the most competitive pricing in the industry, ensuring you receive unparalleled value for comprehensive financial data.
AI-Validated Accuracy: Our advanced AI algorithms meticulously verify every data point to ensure precision and reliability, helping you avoid costly errors in your financial decision-making.
Customized Data Solutions: Whether you need data for a specific region, industry, or type of business, we tailor our datasets to align perfectly with your requirements.
Scalable Data Access: From small startups to global enterprises, our platform caters to businesses of all sizes, delivering scalable solutions to suit your operational needs.
Comprehensive Use Cases for Financial Data:
Leverage our detailed financial profiles to create accurate budgets, forecasts, and strategic plans. Gain insights into competitors’ financial health and market positions to make data-driven decisions.
Access key financial details and contact information to streamline your M&A processes. Identify potential acquisition targets or partners with verified profiles and financial data.
Evaluate the financial performance of public and private companies for informed investment decisions. Use our data to identify growth opportunities and assess risk factors.
Enhance your sales outreach by targeting CFOs, financial analysts, and other decision-makers with verified contact details. Utilize accurate email and phone data to increase conversion rates.
Understand market trends and financial benchmarks with our industry-specific datasets. Use the data for competitive analysis, benchmarking, and identifying market gaps.
APIs to Power Your Financial Strategies:
Enrichment API: Integrate real-time updates into your systems with our Enrichment API. Keep your financial data accurate and current to drive dynamic decision-making and maintain a competitive edge.
Lead Generation API: Supercharge your lead generation efforts with access to verified contact details for key financial decision-makers. Perfect for personalized outreach and targeted campaigns.
Tailored Solutions for Industry Professionals:
Financial Services Firms: Gain detailed insights into revenue streams, funding rounds, and operational costs for competitor analysis and client acquisition.
Corporate Finance Teams: Enhance decision-making with precise data on industry trends and benchmarks.
Consulting Firms: Deliver informed recommendations to clients with access to detailed financial datasets and key stakeholder profiles.
Investment Firms: Identify potential investment opportunities with verified data on financial performance and market positioning.
What Sets Success.ai Apart?
Extensive Database: Access detailed financial data for 70M+ companies worldwide, including small businesses, startups, and large corporations.
Ethical Practices: Our data collection and processing methods are fully comp...
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset contains comprehensive stock market data for June 2025, capturing daily trading information across multiple companies and sectors. The dataset represents a substantial collection of market data with detailed financial metrics and trading statistics.
Column Name | Data Type | Description | Example Values |
---|---|---|---|
Date | Date | Trading date in DD-MM-YYYY format | 01-06-2025, 02-06-2025 |
Ticker | String | Stock ticker symbol (3-4 characters) | AAPL, GOOGL, TSLA |
Open Price | Float | Opening price of the stock | 34.92, 206.5, 125.1 |
Attribute | Details |
---|---|
Dataset Name | Stock Market Data - June 2025 |
File Format | CSV |
File Size | ~2.5 MB |
Number of Records | 11,600+ |
Number of Features | 13 |
Time Period | June 1-21, 2025 |
Column Name | Data Type | Description | Example Values |
---|---|---|---|
Date | Date | Trading date in DD-MM-YYYY format | 01-06-2025, 02-06-2025 |
Ticker | String | Stock ticker symbol (3-4 characters) | AAPL, GOOGL, TSLA, SLH |
Open Price | Float | Opening price of the stock | 34.92, 206.5, 125.1 |
Close Price | Float | Closing price of the stock | 34.53, 208.45, 124.03 |
High Price | Float | Highest price during the trading day | 35.22, 210.51, 127.4 |
Low Price | Float | Lowest price during the trading day | 34.38, 205.12, 121.77 |
Volume Traded | Integer | Number of shares traded | 2,966,611, 1,658,738 |
Market Cap | Float | Market capitalization in dollars | 57,381,363,838.88 |
PE Ratio | Float | Price-to-Earnings ratio | 29.63, 13.03, 29.19 |
Dividend Yield | Float | Dividend yield percentage | 2.85, 2.73, 2.64 |
EPS | Float | Earnings per Share | 1.17, 16.0, 4.25 |
52 Week High | Float | Highest price in the last 52 weeks | 39.39, 227.38, 138.35 |
52 Week Low | Float | Lowest price in the last 52 weeks | 28.44, 136.79, 100.69 |
Sector | String | Industry sector classification | Industrials, Energy, Healthcare |
✅ Authentic Price Ranges: Based on realistic 2025 market projections ✅ Sector-Appropriate Volatility: Different volatility patterns by industry ✅ Correlated Metrics: P/E ratios, dividend yields, and EPS align with market caps ✅ Realistic Trading Volumes: Volume scaled appropriately to market cap ✅ Temporal Consistency: Logical price progression over 53-day period ✅ Market Cap Accuracy: Daily fluctuations reflect actual price movements
This dataset provides a comprehensive foundation for quantitative finance research, offering both breadth across market sectors and depth in daily trading dynamics while maintaining statistical realism throughout the observation period...
https://brightdata.com/licensehttps://brightdata.com/license
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.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
United States US: Number of Listed Domestic Companies: Total data was reported at 4,336.000 Unit in 2017. This records an increase from the previous number of 4,331.000 Unit for 2016. United States US: Number of Listed Domestic Companies: Total data is updated yearly, averaging 5,930.000 Unit from Dec 1980 (Median) to 2017, with 38 observations. The data reached an all-time high of 8,090.000 Unit in 1996 and a record low of 4,102.000 Unit in 2012. United States US: Number of Listed Domestic Companies: Total data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s United States – Table US.World Bank.WDI: Financial Sector. Listed domestic companies, including foreign companies which are exclusively listed, are those which have shares listed on an exchange at the end of the year. Investment funds, unit trusts, and companies whose only business goal is to hold shares of other listed companies, such as holding companies and investment companies, regardless of their legal status, are excluded. A company with several classes of shares is counted once. Only companies admitted to listing on the exchange are included.; ; World Federation of Exchanges database.; Sum; Stock market data were previously sourced from Standard & Poor's until they discontinued their 'Global Stock Markets Factbook' and database in April 2013. Time series have been replaced in December 2015 with data from the World Federation of Exchanges and may differ from the previous S&P definitions and methodology.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset provides financial accouting data for US company stocks along with per-share earnings & price metrics, liquidity ratios, management efficiency measures, margins and stock price data.
Companies are predominantly from the S&P 500 index, with a small number of additions made. The accounting data is on Fiscal Year basis, but most companies have had their stock price sampled up to 3 times in any given year. The time period covers the 10 most recent fiscal years, either 2013-2023 or 2014-2024 depending on when a company's fiscal year ends.
Data was collected from multiple sources, with some fields calculated from various other data points collected. There is no pre-defined target variable, and no directed goal to achieve using this dataset. Please explore and take your own unique approach in terms of how this data can be used, supplementing it with additional data if necessary.
This dataset was created as part of a college research project focused on stock valuation using machine learning, and I am sharing this here so that others may also benefit. I do not intend to maintain this dataset over time. Regardless I do believe that this will be a very valuable and useful dataset for anyone looking to carry out research or just looking to learn more about the area of stock investing using machine learning or other forms of analytics.
Dataset containing over 5000 data metrics (including raw data and BQ calculated scores & metrics) for over 4000 public companies (~95% of the Russell 3000). Includes financials (from SEC filings) as well as data that is not reported to the SEC, including monthly headcount, detailed employee benefits data, credit events related to contributions to benefits plans. Also includes BQ scores, industry and macro statistics that provide a comprehensive view of the sector & industry.
BQ's Public Companies dataset is applicable to both quantitative investment managers as well as fundamentals public equity investors, who wish to use alternative (non-financial) data to enhance their investment analysis and investment decisions.
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1) Data Introduction • The S&P 500 stock data is a tabular stock market dataset of daily stock price information (market, high price, low price, closing price, trading volume, etc.) for the last five years (the latest data is until February 2018) of all companies in the S&P 500 index.
2) Data Utilization (1) S&P 500 stock data has characteristics that: • Each row contains key stock metrics such as date, open, high, low, close, volume, and stock ticker name. • Data is provided as individual stock files and all stock integrated files, so it can be used for various analysis purposes. (2) S&P 500 stock data can be used to: • Stock Price Forecasting and Investment Strategy Development: Using historical stock price data, a variety of investment strategies and forecasting models can be developed, including time series forecasting, volatility analysis, and moving averages. • Market Trends and Corporate Comparison Analysis: It can be used to visualize stock price fluctuations across stocks, compare performance between stocks, analyze market trends, optimize portfolios, and more.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset contains information on publicly traded companies listed on stock exchanges. The data includes the symbols used to identify the stocks, the names of the companies, the industries in which they operate, and the market capitalization of the companies. This information can be used for investment research, market analysis, and trend tracking.
https://www.lseg.com/en/policies/website-disclaimerhttps://www.lseg.com/en/policies/website-disclaimer
Access historical and point-in-time financial statements, ratios, multiples, and press releases, with LSEG's S&P Compustat Database.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
The main stock market index of United States, the US500, fell to 6665 points on October 1, 2025, losing 0.35% from the previous session. Over the past month, the index has climbed 3.89% and is up 16.74% compared to the same time last year, according to trading on a contract for difference (CFD) that tracks this benchmark index from United States. United States Stock Market Index - values, historical data, forecasts and news - updated on October of 2025.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset provides historical stock price data for The Coca-Cola Company (NYSE: KO) from September 6, 1919, to January 31, 2025. Extracted from Yahoo Finance, this dataset is valuable for stock market analysis, long-term trend evaluation, and financial modeling.
Date: The trading date in YYYY-MM-DD format.
Open: Opening price of Coca-Cola stock on the respective day.
High: Highest price recorded during the trading session.
Low: Lowest price recorded during the trading session.
Close: Closing price of the stock at the end of the trading session.
Adj Close: Adjusted closing price, accounting for stock splits and dividends.
Volume: Total number of shares traded on that day.
Long-Term Market Trend Analysis – Analyze Coca-Cola’s stock performance over a century. Financial Forecasting – Train machine learning models to predict future stock prices. Volatility Analysis – Assess price fluctuations over different market cycles. Investment Strategy Development – Backtest various trading strategies.
This dataset has been extracted from Yahoo Finance.
This dataset is publicly available for educational and research purposes. Please cite Yahoo Finance and Muhammad Atif Latif when using it in any analysis.
Click here for more Datasets
https://brightdata.com/licensehttps://brightdata.com/license
Yahoo Finance dataset provides information on top traded companies. It contains financial information on each company including stock ticker and risk scores and general company information such as company location and industry. Each record in the dataset is a unique stock, where multiple stocks can be related to the same company. Yahoo Finance dataset attributes include: company name, company ID, entity type, summary, stock ticker, currency, earnings, exchange, closing price, previous close, open, bid, ask, day range, week range, volume, and much more.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This dataset is about companies. It has 1 row and is filtered where the company is Man Group. It features 3 columns: website, and market cap.
At CompanyData.com (BoldData), we specialize in delivering high-quality company data sourced directly from official trade registers. Our extensive dataset includes historical financial records for over 230 million companies worldwide, enabling deeper insight into business performance over time. Whether you're benchmarking companies, training AI models, or building risk profiles, our financial data equips you with the long-term perspective you need.
Our financial database includes multi-year balance sheets, profit and loss statements, and key performance indicators such as revenue, net income, assets, liabilities, and equity. We provide standardized and structured data—backed by rigorous validation processes—to ensure consistency and accuracy across jurisdictions. Each financial profile can be enriched with hierarchical data, firmographics, contact details, and industry classifications to support complex analyses.
This historical financial data supports a wide range of use cases including KYC and AML compliance, credit risk assessment, M&A research, financial modeling, competitive benchmarking, AI/ML training, and market segmentation. Whether you’re building a predictive scoring model or assessing long-term financial health, our data gives you the clarity and depth required for smarter decisions.
Delivery is flexible to suit your needs: access files in Excel or CSV, browse through our self-service platform, integrate via real-time API, or enhance your existing datasets through custom enrichment services. With access to 380 million verified companies across all industries and geographies, CompanyData.com (BoldData) provides the scale, precision, and historical context to power your next move—globally.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This dataset is about companies. It has 1 row and is filtered where the company is Freshpet. It features 3 columns: country, and market cap.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset contains historical daily prices for all tickers currently trading on NASDAQ. The up to date list is available from nasdaqtrader.com. The historic data is retrieved from Yahoo finance via yfinance python package.
It contains prices for up to 01 of April 2020. If you need more up to date data, just fork and re-run data collection script also available from Kaggle.
The date for every symbol is saved in CSV format with common fields:
All that ticker data is then stored in either ETFs or stocks folder, depending on a type. Moreover, each filename is the corresponding ticker symbol. At last, symbols_valid_meta.csv
contains some additional metadata for each ticker such as full name.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
For researchers and developers, this dataset provides a transparent, reproducible source of insider trading data. For practitioners and retail investors seeking real-time alerts derived from the same underlying regulatory filings, see Ebomi at https://ebomi.com, a live service built directly on this work. Daily updates: https://dx.doi.org/10.34740/kaggle/ds/2973477 By using this dataset, you agree to cite the Related Publication shown below. This dataset captures insider trading activity at publicly traded companies. The Securities and Exchange Commission has made these insider trading reports available on its web site in a structured format since mid-2003. However, most academic papers use proprietary commercial databases instead of regulatory filings directly, which makes replication challenging because the data manipulation and aggregation steps in commercial databases are opaque and historical records could be altered by the data provider over time. To overcome these limitations, the presented dataset is created from the original regulatory filings; it is updated daily and includes all information reported by insiders without alteration.
This private company dataset provides an in-depth view of any specific company’s truck-based supply chain and its relationships with other facilities and companies within the continental US.
Also, using robust supply chain data you will be able to map US facilities (including factories, warehouses, and retail outlets).
With this private company dataset, it is possible to track the movement of trucks and devices between locations to identify supply chain connections and company data insights.
Our Machine learning algorithms ingest 7-15bn daily events to estimate the volume of goods transported between locations. Consequently, we can map supply chain connections between:
•Different companies (expressed as a percentage of volume transported).
•Locations owned by the same company (e.g. warehouse to shop).
With this novel geolocation approach, it is possible to "draw" a knowledge graph of any private or public company´s relations with other companies within the country.
This solution, in the form of a dataset, provides an in-depth view of any specific company’s truck-based supply chain and its relationships with other facilities and companies within the continental United States.
Use cases:
Identification and understanding of relations company-to-company: It helps to identify and infer relationships and connections between specific companies or facilities and between sectors/industries.
Identification and understanding of relations place-to-place: A logistics and domestic distribution supply chain can be mapped, both nationwide and state-wide in the US, and across countries in Europe.
Visualization and mapping of an entire supply chain network.
Tracking of products in any distribution or supply chain.
Risk assessment
Correlation analysis.
Disruption analysis.
Analysis of illicit networks and tracking of illegal use of corporate assets.
Improvement of casualty risk management.
Optimization of supply chain risk management.
Security and compliance.
Identification of not only the first tier of suppliers in the value chain, but also 2nd and 3rd tier suppliers, and more.
Current largest use case: global corporation using it to model risk at a facility level (+100,000 locations).
Why should you trust PREDIK Data-Driven? In 2023, we were listed as Datarade's top providers. Why? Our solutions for private company data, supply chain data, and B2B data adapt according to the specific needs of companies. Also, PREDIK methodology focuses on the client and the necessary elements for the success of their projects.
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View data of the S&P 500, an index of the stocks of 500 leading companies in the US economy, which provides a gauge of the U.S. equity market.
MIT Licensehttps://opensource.org/licenses/MIT
License information was derived automatically
Symbol: This acts as a unique identifier for a particular stock on a specific exchange. Just like AAPL represents Apple Inc. on the NASDAQ exchange. Name: This is the full name of the company that issued the stock. Currency: This indicates the currency in which the stock is traded. Examples include USD (US Dollar), EUR (Euro), and JPY (Japanese Yen). Exchange: This refers to the stock exchange where the stock is traded. NASDAQ and NYSE are some well-known exchanges. MIC Code: This stands for Market Identifier Code and is used to uniquely identify a specific exchange or trading venue. Country: This specifies the country of incorporation of the company that issued the stock. Type: the type of the st0ck