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TwitterThe data sets below provide selected information extracted from exhibits to corporate financial reports filed with the Commission using eXtensible Business Reporting Language (XBRL).
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This dataset provides a comprehensive collection of financial statement data from various companies, covering key financial metrics used for financial statement analysis. It includes information from income statements, balance sheets, and cash flow statements, enabling users to perform ratio analysis, trend analysis, and predictive modeling.
The dataset is collected from publicly available financial reports and regulatory filings. Users should verify data accuracy before making financial decisions. This dataset is for educational and research purposes only.
📥 Download, analyze, and gain insights into financial health! 🚀
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This dataset provides a structured and machine-readable collection of financial statements filed with the Companies Registration Office (CRO) in Ireland. It currently includes financial statements for the year 2022, with additional years to be added as they become available. The dataset aligns with the European Union’s Open Data Directive (Directive (EU) 2019/1024) and the Implementing Regulation (EU) 2023/138, which designates company and company ownership data as a high-value dataset. It is available for bulk download and API access under the Creative Commons Attribution 4.0 (CC BY 4.0) licence, allowing unrestricted reuse with appropriate attribution. By increasing transparency and enabling data-driven insights, this dataset supports public sector initiatives, financial analysis, and digital services development. The API endpoints can be accessed using these links - Query - https://opendata.cro.ie/api/3/action/datastore_search Query (via SQL) - https://opendata.cro.ie/api/3/action/datastore_search_sql
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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.
4492 NSE & BSE Companies
Company_name folder
Company_name.csv
Quarterly_Profit_Loss.csv
Yearly_Profit_Loss.csv
Yearly_Balance_Sheet.csv
Yearly_Cash_flow.csv
Ratios.csv.csv
Quarterly_Shareholding_Pattern.csv
Yearly_Shareholding_Pattern.csv
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...
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A dataset of public corporate filings (such as annual reports, quarterly reports, and ad-hoc disclosures) for Global Tax Free Co., Ltd. (204620), provided by FinancialReports.eu.
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Our database also contains company profiles on private limited or limited companies globally, including information such as shareholders and financial accounts can be accessed instantly.
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Korean Companies’ Financial Data provides important information to analyze a company’s financial status and performance. This data includes financial indicators such as revenue, expenses, assets, and liabilities. Collected from corporate financial reports and stock market data, it helps investors evaluate financial health and discover investment opportunities, essential for valuing Korean companies.
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A dataset of public corporate filings (such as annual reports, quarterly reports, and ad-hoc disclosures) for Q-Free ASA (QFR), provided by FinancialReports.eu.
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TwitterSuccess.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...
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The data from 9,549 complete sets of annual financial statements are combined with the data from the corresponding audit reports, forming an unbalanced panel data set. The client companies included in the sample represent a supermajority of medium and large-sized companies registered in the Republic of Serbia. Information on the name of the auditing firm, the type of auditor, the date of audit, and the type of audit opinion is hand-collected from the audit reports issued by 77 audit firms (the Big 4 plus 73 other auditing firms), which, again, represents a supermajority of all the auditing firms registered in this country. In the total sample of audit opinions (6,343), the following frequencies of the four main types of audit opinions are observed: an adverse opinion (50), a disclaimer of opinion (344), a qualified opinion (1,278), and an unqualified opinion (4,671). Additionally, most common financial indicators are calculated based on the collected financial statements. Feel free to use it for research purposes or to reproduce the results presented in the article. For a detailed description of the variables and their descriptive statistics, please read the article: Empirical Data on Financial and Audit Reports of Serbian Business Entities. Proceedings of the 7th International Scientific Conference - FINIZ 2020, 193–198. https://doi.org/10.15308/finiz-2020-193-198 When referring to the data set in publications, please cite the article. These data are used in a research study and may not be redistributed or used for commercial purposes. If you have any questions, please feel free to contact me at nstanisic@singidunum.ac.rs
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The Russian Financial Statements Database (RFSD) is an open, harmonized collection of annual unconsolidated financial statements of the universe of Russian firms:
🔓 First open data set with information on every active firm in Russia.
🗂️ First open financial statements data set that includes non-filing firms.
🏛️ Sourced from two official data providers: the Rosstat and the Federal Tax Service.
📅 Covers 2011-2023 initially, will be continuously updated.
🏗️ Restores as much data as possible through non-invasive data imputation, statement articulation, and harmonization.
The RFSD is hosted on 🤗 Hugging Face and Zenodo and is stored in a structured, column-oriented, compressed binary format Apache Parquet with yearly partitioning scheme, enabling end-users to query only variables of interest at scale.
The accompanying paper provides internal and external validation of the data: http://arxiv.org/abs/2501.05841.
Here we present the instructions for importing the data in R or Python environment. Please consult with the project repository for more information: http://github.com/irlcode/RFSD.
Importing The Data
You have two options to ingest the data: download the .parquet files manually from Hugging Face or Zenodo or rely on 🤗 Hugging Face Datasets library.
Python
🤗 Hugging Face Datasets
It is as easy as:
from datasets import load_dataset import polars as pl
RFSD = load_dataset('irlspbru/RFSD')
RFSD_2023 = pl.read_parquet('hf://datasets/irlspbru/RFSD/RFSD/year=2023/*.parquet')
Please note that the data is not shuffled within year, meaning that streaming first n rows will not yield a random sample.
Local File Import
Importing in Python requires pyarrow package installed.
import pyarrow.dataset as ds import polars as pl
RFSD = ds.dataset("local/path/to/RFSD")
print(RFSD.schema)
RFSD_full = pl.from_arrow(RFSD.to_table())
RFSD_2019 = pl.from_arrow(RFSD.to_table(filter=ds.field('year') == 2019))
RFSD_2019_revenue = pl.from_arrow( RFSD.to_table( filter=ds.field('year') == 2019, columns=['inn', 'line_2110'] ) )
renaming_df = pl.read_csv('local/path/to/descriptive_names_dict.csv') RFSD_full = RFSD_full.rename({item[0]: item[1] for item in zip(renaming_df['original'], renaming_df['descriptive'])})
R
Local File Import
Importing in R requires arrow package installed.
library(arrow) library(data.table)
RFSD <- open_dataset("local/path/to/RFSD")
schema(RFSD)
scanner <- Scanner$create(RFSD) RFSD_full <- as.data.table(scanner$ToTable())
scan_builder <- RFSD$NewScan() scan_builder$Filter(Expression$field_ref("year") == 2019) scanner <- scan_builder$Finish() RFSD_2019 <- as.data.table(scanner$ToTable())
scan_builder <- RFSD$NewScan() scan_builder$Filter(Expression$field_ref("year") == 2019) scan_builder$Project(cols = c("inn", "line_2110")) scanner <- scan_builder$Finish() RFSD_2019_revenue <- as.data.table(scanner$ToTable())
renaming_dt <- fread("local/path/to/descriptive_names_dict.csv") setnames(RFSD_full, old = renaming_dt$original, new = renaming_dt$descriptive)
Use Cases
🌍 For macroeconomists: Replication of a Bank of Russia study of the cost channel of monetary policy in Russia by Mogiliat et al. (2024) — interest_payments.md
🏭 For IO: Replication of the total factor productivity estimation by Kaukin and Zhemkova (2023) — tfp.md
🗺️ For economic geographers: A novel model-less house-level GDP spatialization that capitalizes on geocoding of firm addresses — spatialization.md
FAQ
Why should I use this data instead of Interfax's SPARK, Moody's Ruslana, or Kontur's Focus?hat is the data period?
To the best of our knowledge, the RFSD is the only open data set with up-to-date financial statements of Russian companies published under a permissive licence. Apart from being free-to-use, the RFSD benefits from data harmonization and error detection procedures unavailable in commercial sources. Finally, the data can be easily ingested in any statistical package with minimal effort.
What is the data period?
We provide financials for Russian firms in 2011-2023. We will add the data for 2024 by July, 2025 (see Version and Update Policy below).
Why are there no data for firm X in year Y?
Although the RFSD strives to be an all-encompassing database of financial statements, end users will encounter data gaps:
We do not include financials for firms that we considered ineligible to submit financial statements to the Rosstat/Federal Tax Service by law: financial, religious, or state organizations (state-owned commercial firms are still in the data).
Eligible firms may enjoy the right not to disclose under certain conditions. For instance, Gazprom did not file in 2022 and we had to impute its 2022 data from 2023 filings. Sibur filed only in 2023, Novatek — in 2020 and 2021. Commercial data providers such as Interfax's SPARK enjoy dedicated access to the Federal Tax Service data and therefore are able source this information elsewhere.
Firm may have submitted its annual statement but, according to the Uniform State Register of Legal Entities (EGRUL), it was not active in this year. We remove those filings.
Why is the geolocation of firm X incorrect?
We use Nominatim to geocode structured addresses of incorporation of legal entities from the EGRUL. There may be errors in the original addresses that prevent us from geocoding firms to a particular house. Gazprom, for instance, is geocoded up to a house level in 2014 and 2021-2023, but only at street level for 2015-2020 due to improper handling of the house number by Nominatim. In that case we have fallen back to street-level geocoding. Additionally, streets in different districts of one city may share identical names. We have ignored those problems in our geocoding and invite your submissions. Finally, address of incorporation may not correspond with plant locations. For instance, Rosneft has 62 field offices in addition to the central office in Moscow. We ignore the location of such offices in our geocoding, but subsidiaries set up as separate legal entities are still geocoded.
Why is the data for firm X different from https://bo.nalog.ru/?
Many firms submit correcting statements after the initial filing. While we have downloaded the data way past the April, 2024 deadline for 2023 filings, firms may have kept submitting the correcting statements. We will capture them in the future releases.
Why is the data for firm X unrealistic?
We provide the source data as is, with minimal changes. Consider a relatively unknown LLC Banknota. It reported 3.7 trillion rubles in revenue in 2023, or 2% of Russia's GDP. This is obviously an outlier firm with unrealistic financials. We manually reviewed the data and flagged such firms for user consideration (variable outlier), keeping the source data intact.
Why is the data for groups of companies different from their IFRS statements?
We should stress that we provide unconsolidated financial statements filed according to the Russian accounting standards, meaning that it would be wrong to infer financials for corporate groups with this data. Gazprom, for instance, had over 800 affiliated entities and to study this corporate group in its entirety it is not enough to consider financials of the parent company.
Why is the data not in CSV?
The data is provided in Apache Parquet format. This is a structured, column-oriented, compressed binary format allowing for conditional subsetting of columns and rows. In other words, you can easily query financials of companies of interest, keeping only variables of interest in memory, greatly reducing data footprint.
Version and Update Policy
Version (SemVer): 1.0.0.
We intend to update the RFSD annualy as the data becomes available, in other words when most of the firms have their statements filed with the Federal Tax Service. The official deadline for filing of previous year statements is April, 1. However, every year a portion of firms either fails to meet the deadline or submits corrections afterwards. Filing continues up to the very end of the year but after the end of April this stream quickly thins out. Nevertheless, there is obviously a trade-off between minimization of data completeness and version availability. We find it a reasonable compromise to query new data in early June, since on average by the end of May 96.7% statements are already filed, including 86.4% of all the correcting filings. We plan to make a new version of RFSD available by July.
Licence
Creative Commons License Attribution 4.0 International (CC BY 4.0).
Copyright © the respective contributors.
Citation
Please cite as:
@unpublished{bondarkov2025rfsd, title={{R}ussian {F}inancial {S}tatements {D}atabase}, author={Bondarkov, Sergey and Ledenev, Victor and Skougarevskiy, Dmitriy}, note={arXiv preprint arXiv:2501.05841}, doi={https://doi.org/10.48550/arXiv.2501.05841}, year={2025}}
Acknowledgments and Contacts
Data collection and processing: Sergey Bondarkov, sbondarkov@eu.spb.ru, Viktor Ledenev, vledenev@eu.spb.ru
Project conception, data validation, and use cases: Dmitriy Skougarevskiy, Ph.D.,
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The sheer volume of financial statements makes it difficult for humans to access and analyze a business's financials. Robust numerical reasoning likewise faces unique challenges in this domain. In this work, we focus on answering deep questions about financial data, aiming to automate the analysis of a large corpus of financial documents. In contrast to existing tasks in the general domain, the finance domain includes complex numerical reasoning and an understanding of heterogeneous representations. To facilitate analytical progress, we propose a new large-scale dataset, FinQA, with Question-Answering pairs over Financial reports, written by financial experts. More details are provided here: Paper, Preview
The dataset is stored as JSON files, each entry has the following format: ``` "pre_text": the texts before the table; "post_text": the text after the table; "table": the table; "id": unique example id. composed by the original report name plus example index for this report.
"qa": { "question": the question; "program": the reasoning program; "gold_inds": the gold supporting facts; "exe_ans": the gold execution result; "program_re": the reasoning program in nested format; } ```
This dataset is the first of its kind intending to enable significant, new community research into complex application domains. It was hosted for a competition at CodaLabs on FinQA where if given a financial report containing both text and table, the goal is to answer a question requiring numerical reasoning. The code is publicly available @GitHub/FinQA
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TwitterWVB’s Global Fundamentals Dossier provides over 200 standardized financial and non-financial data points for 76,000 active public companies across 219 countries. Data is harmonized across accounting standards, industries, and geographies, enabling seamless global comparative analysis.
Data Attributes • Coverage: 76,000+ global public industrial companies • Geographies: 219 countries, including Asia, Europe, MENA, and North America • History: Up to 10 years of annual, interim, and quarterly data • Data Items: 200+ harmonized fundamental metrics and ratios • Statement Periods: Annual and quarterly • Sources: Audited company reports, interim filings, and official publications
Data Includes Financial Information • Income statement, Balance sheet, and Cash flow. • Key financial ratios and growth metrics • Sales breakdowns by business line and geography (where available)
Non-Financial Information • Company overview and business description • Current executives, directors, and auditors • Key competitors and major shareholders
Key Benefits Standardized financials across an array of markets: Supports robust comparative analysis of companies worldwide. • Analyst-verified: Sourced from audited filings, each report is meticulously curated by WVB’s regional data specialists. • Global Coverage: Includes comprehensive data on listed industrial companies across all regions. • Data Insights: Provides up to 10 years of historical data for trend analysis and performance evaluation.
Ideal For: • Banks (e.g., credit risk, investment research & corporate finance) • Academic institutions • Corporations • Government Institutions • Third-party SaaS platforms
Note: For Financial Institution data, please refer to WVB’s Bank Trader database.
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This dataset simulates the financial records of a small-town coffee shop over a two-year period (Jan 2022 – Dec 2023).
It was designed for data science, bookkeeping, and analytics projects — including financial dashboards, revenue forecasting, and expense tracking.
The dataset contains 5 CSV files representing different business accounts:
1. checking_account_main.csv - Daily sales deposits (hot drinks, cold drinks, pastries, sandwiches) + operating expenses
2. checking_account_secondary.csv - Monthly transfers between accounts + payroll funding
3. credit_card_account.csv - Weekly credit card expenses (supplies, utilities, vendor charges) and payments
4. gusto_payroll.csv - Payroll data for 3 employees + 1 contractor
5. gusto_payroll_bc.csv - Payroll data for 3 full-time employees + 1 contractor + 1 seasonal employee, with actual tax breakdown for the province of British Columbia, Canada
checking_account_main.csvchecking_account_secondary.csvcredit_card_account.csvgusto_payroll.csvgusto_payroll_bc.csvThis file simulates bi-weekly payroll data for a small coffee shop in British Columbia, Canada, covering January 2022 – December 2023.
It reflects realistic Canadian payroll structure with federal and provincial tax breakdowns, CPP, EI, and additional factors.
Columns:
- date → Pay date (bi-weekly schedule)
- employee_id → Unique identifier for each employee
- employee_name → Owner, Barista 1, Barista 2, Manager, Contractor, plus a seasonal Barista (June–Aug 2022)
- role → Role within the coffee shop (Owner, Barista, Manager, Contractor)
- gross_pay → Total earnings before deductions (wages + tips + reimbursements)
- federal_tax → Federal income tax withheld
- provincial_tax → British Columbia income tax withheld
- cpp_employee → Employee CPP contribution
- ei_employee → Employee EI contribution
- other_deductions → Placeholder for possible deductions (e.g., garnishments, union dues)
- net_pay → Take-home pay after deductions
- tips → Declared tips (taxable, included in gross pay)
- travel_reimbursement → Non-taxable reimbursement for travel expenses (if applicable)
- cpp_employer → Employer portion of CPP contributions
- ei_employer → Employer portion of EI contributions
Notes:
- Payroll data is synthetic but modeled on Canadian payroll rules (2022–2023 rates).
- A seasonal barista employee is included (employed June 1 – Aug 31, 2022).
- Travel reimbursements are non-taxable and recorded separately.
- This file allows users to practice payroll accounting, deductions analysis, and tax reconciliation.
This dataset is released under the MIT License, free to use for research, learning, or commercial purposes.
⭐ If you use this dataset in your project or notebook, please credit and share your work, it helps the community!
📷 Photo Credits: freepik
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According to our latest research, the global Financial Statement Parsing market size reached USD 1.42 billion in 2024, reflecting a robust surge in demand for automated financial data extraction and analysis solutions. The market is expected to expand at a healthy CAGR of 15.6% from 2025 to 2033, with the market size projected to reach USD 5.12 billion by 2033. This rapid growth is primarily driven by the increasing adoption of advanced technologies such as artificial intelligence (AI) and machine learning (ML) across the financial sector, as businesses seek to streamline financial reporting, enhance compliance, and improve operational efficiency.
One of the most significant growth factors fueling the Financial Statement Parsing market is the mounting pressure on organizations to automate and optimize their financial workflows. As global regulatory environments become more stringent, companies are required to process and analyze large volumes of financial documents quickly and accurately. Manual data entry and analysis not only increase the risk of errors but also consume significant resources and time. By leveraging financial statement parsing solutions, enterprises can automate the extraction of critical data from complex financial documents, ensuring higher accuracy, faster turnaround times, and reduced operational costs. This trend is especially pronounced in sectors such as banking, insurance, and auditing, where timely and precise financial reporting is paramount.
Another key driver of market growth is the ongoing digital transformation within the financial services industry. Financial institutions are increasingly investing in digital platforms and cloud-based solutions to enhance their agility and scalability. These platforms often require seamless integration with financial statement parsing tools to enable real-time data extraction and analytics. The proliferation of cloud computing has made it easier for organizations of all sizes to deploy sophisticated parsing solutions without the need for significant upfront infrastructure investments. Furthermore, the rise of fintech startups and the growing use of big data analytics are further accelerating the adoption of financial statement parsing technologies, as these organizations seek to differentiate themselves through data-driven insights and enhanced customer experiences.
Additionally, the escalating complexity and diversity of financial documents have underscored the need for advanced parsing solutions. Traditional methods struggle to keep pace with the variety of formats, languages, and structures found in financial statements across different regions and industries. Modern financial statement parsing solutions, powered by AI and natural language processing (NLP), are capable of handling these challenges by accurately extracting and categorizing data from a wide array of document types. This capability is particularly valuable for multinational corporations, accounting firms, and government agencies that operate across multiple jurisdictions and require standardized, reliable financial data for decision-making and compliance purposes.
From a regional perspective, North America currently dominates the Financial Statement Parsing market, accounting for the largest share in 2024 due to the presence of leading technology providers and a highly digitized financial ecosystem. However, Asia Pacific is emerging as the fastest-growing region, driven by rapid economic growth, increasing digitalization, and a surge in demand for automated financial solutions among banks, insurance companies, and government agencies. Europe also holds a significant market share, fueled by stringent regulatory requirements and the widespread adoption of advanced analytics in the financial sector. Meanwhile, Latin America and the Middle East & Africa are witnessing steady growth, supported by ongoing investments in digital infrastructure and the rising need for efficient financial data management.
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Our database also contains company profiles on private limited or limited companies globally, including information such as shareholders and financial accounts can be accessed instantly.
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Free-Cash-Flow-To-Equity Time Series for Blackline Inc. BlackLine, Inc. provides cloud-based solutions to automate and streamline accounting and finance operations in the United States and internationally. It offers financial close and consolidation solutions, such as account reconciliations that provides a centralized workspace for users to collaborate on account reconciliations; transaction matching, which analyzes and reconciles individual transactions; task management to create and manage processes and task lists; and financial reporting analytics that enables analysis and validation of financial data. The company also provides journal entry, which allows users to generate, review, and post manual journal entries; variance analysis that offers anomalous fluctuations in balance sheet and income statement account balances; compliance, an integrated solution that facilitates compliance-related initiatives, consolidates project management, and provides visibility over control self-assessments and testing; and smart close for SAP solution. In addition, it offers credit and risk, collection, dispute and deduction, and team and task management, as well as AR intelligence, electronic invoicing and payment, and cash application solutions. Further, the company provides intercompany create functionality that stores permissions and business logic exceptions by entity, service, and transaction type; intercompany balance and resolve, which records an organization's intercompany transactions; and netting and settlement that enables open intercompany transactions, which integrate with treasury systems. Additionally, it offers implementation, optimization, live and web-based training, and support services. The company sells its solutions primarily through direct sales force to multinational corporations, large domestic enterprises, and mid-market companies across various industries. BlackLine, Inc. was incorporated in 2001 and is headquartered in Woodland Hills, California.
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TwitterWVB Quickview delivers 15 core financial statement items and five key financial ratios for over 76,000 active public industrial companies across 219 countries. The dataset represents 99.9% of all listed companies worldwide and nearly 100% of total global market capitalization. All data is standardized and harmonized across geographies and accounting standards, enabling seamless industry comparison.
Data Overview • Coverage: 76,000+ active global industrial / non-financial companies • Geographic Scope: 219 countries across Asia, Europe, MENA, and North America • Historical Depth: Up to 3 years of annual financial data • Representation: Covers nearly the entire publicly listed company universe
Data Structure Financial Information • Up to 3 years of harmonized annual data from income statements and balance sheets • 15 essential data items • 8 key financial ratios for quick financial performance insights
Non-Financial Information: • Concise business description • Up to 5 current officers and directors • Current auditor details
Data Quality • Standardized: Consistent presentation across accounting frameworks and regions • Verified: Compiled by trained financial analysts from audited annual and interim reports. • Comparable: Enables benchmarking and peer analysis across markets
Use Cases • Global equity screening and benchmarking • Financial modeling and valuation • Quantitative research • Market and credit risk assessment
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Get detailed Apple Financial Statements 2021-2025. Find the income statements, balance sheet, cashflow, profitability, and other key ratios.
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According to our latest research, the global Insurance Financial Reporting Software market size reached USD 3.24 billion in 2024, reflecting robust adoption across insurance enterprises worldwide. The market is expected to expand at a CAGR of 10.9% from 2025 to 2033, propelling the total market value to approximately USD 8.16 billion by 2033. This impressive growth trajectory is driven by the increasing complexity of regulatory requirements, the surge in digital transformation initiatives, and the demand for real-time financial insights within the insurance sector. As per our latest research, the industry is witnessing a strong push towards cloud-based deployments and integrated analytics, further fueling the adoption of advanced Insurance Financial Reporting Software solutions globally.
The growth of the Insurance Financial Reporting Software market is significantly influenced by the ever-evolving regulatory landscape in the insurance industry. Insurers are compelled to comply with stringent reporting standards, such as IFRS 17 and Solvency II, which necessitate highly accurate and transparent financial reporting processes. The adoption of sophisticated financial reporting software enables insurance companies to automate complex calculations, streamline data consolidation, and ensure timely and accurate regulatory submissions. Furthermore, as regulatory bodies continue to introduce new compliance mandates, insurance firms are increasingly investing in scalable and adaptable software solutions that can seamlessly integrate with existing core systems, thereby minimizing compliance risks and operational inefficiencies.
Another crucial growth factor is the accelerating pace of digital transformation across the insurance sector. Insurers are embracing technology to enhance operational efficiency, reduce manual intervention, and gain actionable insights from vast amounts of financial data. Modern Insurance Financial Reporting Software platforms are equipped with advanced analytics, artificial intelligence, and machine learning capabilities, enabling insurers to perform real-time financial analysis, scenario modeling, and predictive forecasting. These functionalities not only optimize financial decision-making but also empower insurers to respond proactively to market volatility, emerging risks, and changing customer expectations, thereby driving sustained market growth.
The increasing trend towards cloud-based deployments is also reshaping the Insurance Financial Reporting Software market. Cloud-based solutions offer unparalleled scalability, flexibility, and cost-effectiveness compared to traditional on-premises systems. Insurance companies, regardless of their size, are leveraging cloud platforms to achieve faster implementation, simplified maintenance, and enhanced data security. The ability to access financial reports and analytics from any location is particularly valuable in the current hybrid and remote work environments. This shift towards cloud-based software is expected to continue, as insurers prioritize agility and business continuity in an increasingly dynamic and competitive market landscape.
From a regional perspective, North America continues to dominate the Insurance Financial Reporting Software market, accounting for the largest share in 2024, followed closely by Europe and the Asia Pacific. The presence of leading insurance companies, early adoption of advanced technologies, and a well-established regulatory framework are key factors contributing to North America's leadership. Meanwhile, Asia Pacific is emerging as the fastest-growing region, driven by rapid digitalization, expanding insurance penetration, and evolving regulatory requirements across emerging economies. Europe remains a mature market with a strong focus on compliance and innovation, while Latin America and the Middle East & Africa are witnessing gradual adoption, supported by increasing investments in insurance technology infrastructure.
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TwitterThe data sets below provide selected information extracted from exhibits to corporate financial reports filed with the Commission using eXtensible Business Reporting Language (XBRL).