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India's National Stock Exchange (NSE) has a total market capitalization of more than US$3.4 trillion, making it the world's 10th-largest stock exchange as of August 2021, with a trading volume of ₹8,998,811 crore (US$1.2 trillion) and more 2000 total listings.
NSE's flagship index, the NIFTY 50, is a 50 stock index is used extensively by investors in India and around the world as a barometer of the Indian capital market.
This dataset contains data of all company stocks listed in the NSE, allowing anyone to analyze and make educated choices about their investments, while also contributing to their countries economy.
- Create a time series regression model to predict NIFTY-50 value and/or stock prices.
- Explore the most the returns, components and volatility of the stocks.
- Identify high and low performance stocks among the list.
- Your kernel can be featured here!
- Related Dataset: S&P 500 Stocks - daily updated
- More datasets
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This dataset contains the historical closing price data for all stocks listed on the National Stock Exchange (NSE) of India with a market capitalization exceeding 500 crore INR. The dataset is ideal for analysts, researchers, and enthusiasts who wish to perform detailed analysis, develop trading algorithms, or study market trends of substantial companies within the Indian stock market.
The data is sourced from official NSE records and includes all companies meeting the market capitalization criteria as of the latest update.
The dataset can be used for various purposes including but not limited to: - Financial modeling and forecasting - Risk management and portfolio optimization - Academic research and projects - Machine learning and AI-driven stock prediction models
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Prices for NSE Nifty 50 Index including live quotes, historical charts and news. NSE Nifty 50 Index was last updated by Trading Economics this December 2 of 2025.
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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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Nigeria's main stock market index, the NSE All Share, fell to 143210 points on December 1, 2025, losing 0.22% from the previous session. Over the past month, the index has declined 6.85%, though it remains 46.53% higher than a year ago, according to trading on a contract for difference (CFD) that tracks this benchmark index from Nigeria. Nigeria Stock Market NSE - values, historical data, forecasts and news - updated on December of 2025.
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TwitterA. Dataset DescriptionReal-world financial and economic data gathered from several reliable sources were used in this project to perform a meaningful comparison of supervised learning classification algorithms. Both stock market and currency exchange data are included in the data
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TwitterThe number of companies listed in the National Stock Exchange in India was 1959 in financial year 2020, an increase by **** companies compared to the previous year. Out of these nearly ************ companies there is only *** foreign company listed at the NSE.
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Gain access to LSEG's National Stock Exchange of India data, India's largest stock exchange with more than 180,000 terminals across 600 districts.
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The dataset contains All India Daily NSE Index Values – NSE-S&P CNX 500 and Nifty 50
Note: 1. CNX Nifty has been rebranded as Nifty 50 w.e.f November 09, 2015.
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TwitterThis statistic represents the market capitalization of the National Stock Exchange (NSE) in India from fiscal year 2012 to fiscal year 2017. During the fiscal year 2016, the National Stock Exchange had a market capitalization just over ** trillion Indian rupees.
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TwitterIn financial year 2025, a total of ********** companies were listed in the National Stock Exchange (NSE) and the Bombay Stock Exchange (BSE) across India. This was an increase compared to the previous year.
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This Data is gathered from NSE website for the past three months I am posting this here so people can analyse this data and gather meaningful insights from this.
Example - Probability of Stock ending up at Max Pain with the help of Open Interest.
The dataset contains stock symbol with which it is traded, Expiry Date. Strike Price and the Option pricing of the Symbol at that Strike price.
I thank the people working at NSE for publishing these reports everyday.
Whenever we want to initiate an Options trade we look at various parameters like OpenInterest, Change in OI, Technical Analysis Indicators before deciding to Buy/Sell the Option. Most times we need to browse to multiple websites to gather the data we need, This is an example to show how you can customise the data for our needs.
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Japan Index: NSE: Stock Price Index: 1st Section Nagoya Issues data was reported at 3,368.710 04Jan1968=100 in Oct 2018. This records a decrease from the previous number of 3,749.150 04Jan1968=100 for Sep 2018. Japan Index: NSE: Stock Price Index: 1st Section Nagoya Issues data is updated monthly, averaging 2,038.020 04Jan1968=100 from Feb 1999 (Median) to Oct 2018, with 237 observations. The data reached an all-time high of 3,994.950 04Jan1968=100 in May 2015 and a record low of 1,381.220 04Jan1968=100 in Mar 2003. Japan Index: NSE: Stock Price Index: 1st Section Nagoya Issues data remains active status in CEIC and is reported by Nagoya Stock Exchange. The data is categorized under Global Database’s Japan – Table JP.Z002: All Stock Exchange: Market Indices.
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Kenya Nairobi Securities Exchange: Index: NSE 20 Share data was reported at 3,052.730 NA in Nov 2025. This records a decrease from the previous number of 3,116.690 NA for Oct 2025. Kenya Nairobi Securities Exchange: Index: NSE 20 Share data is updated monthly, averaging 2,467.680 NA from Jun 2013 (Median) to Nov 2025, with 150 observations. The data reached an all-time high of 5,491.370 NA in Feb 2015 and a record low of 1,461.070 NA in Oct 2023. Kenya Nairobi Securities Exchange: Index: NSE 20 Share data remains active status in CEIC and is reported by Exchange Data International Limited. The data is categorized under Global Database’s Kenya – Table KE.EDI.SE: Nairobi Securities Exchange: Monthly.
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TwitterIn November 2020, the stock market turnover of both National Stock Exchange (NSE) and Bombay Stock Exchange (BSE) in India reached ***** trillion Indian rupees. Over the previous year, the turnover raised significantly from **** trillion Indian rupees in November 2019. Additionally, the stock exchange turnover in India did not face major loss during lockdown and the COVID-19 pandemic, but remained stable.
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Prices for NSE All Share - 주가 including live quotes, historical charts and news. NSE All Share - 주가 was last updated by Trading Economics this December 3 of 2025.
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The dataset contains Year and Month wise turnover of National Stock Exchange (NSE) and Bombay Stock Exchange (BSE)
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TwitterContext :
NIFTY 50 is the flagship stock market index of the National Stock Exchange (NSE) in India which is one of the leading stock exchanges in India.
NIFTY 50 represents the performance of 50 large-cap companies across various sectors of the Indian economy.
Similarly NIFTY 100 represents the performance of the top 100 companies listed on the NSE based on market capitalization. NIFTY 100 is also part of several other indices, such as NIFTY 200, NIFTY 500, and NIFTY 100 Equal Weight Index.
In the National Stock Exchange (NSE) of India, there are three market segments based on the market capitalization of the listed companies. They are: - Large-cap: This segment includes the top 100 companies listed on the NSE based on market capitalization. - Mid-cap: This segment includes companies that rank between 101 and 250 based on market capitalization. - Small-cap: This segment includes companies that rank below the top 250 companies based on market capitalization. Market capitalization is calculated by multiplying a company's total outstanding shares by its current market price per share. The NSE's NIFTY Mid-cap 100 and NIFTY Small-cap 250 indices track the performance of companies in the mid-cap and small-cap segments of the market, respectively.
The NIFTY500 Multicap 50:25:25 index is a variant of the NIFTY 500 index, which represents the top 500 companies listed on India's National Stock Exchange (NSE). The Multicap 50:25:25 variant is a modified version of the NIFTY500 index that divides stocks into three categories based on market capitalization. The top 50 companies by market capitalization are classified as large-cap companies under this variant, while the next 150 companies are classified as mid-cap companies. The remaining 300 businesses are classified as small-cap.
Content : This Dataset contains records for all NIFTY-50 , NIFTY 200, NIFTY Midcap 100, NIFTY Smallcap 250, NIFTY500 Multicap 50:25:25 stocks, as on 1st March, 2023 - Open - open value of the index on that day - High - highest value of the index on that day - Low - lowest value of the index on that day - PREV. CLOSE - Previous Close Value - LTP - Last Traded Price - CHNG - Change in the price - %CHNG - Percentage change - Volume - volume of transaction - Value - Turn over in lakhs - 52W H - 52 Week High price - 52W L - 52 Week Lowest price - 365 D % CHNG - Past 365 Days Change Percentage - 30 D % CHNG - Past 30 Days Change Percentage
Note : - %CHNG: % change is calculated with respect to adjusted price on ex-date for Corporate Actions like: Dividend, Bonus, Rights & Face Value Split and also adjusted for Past 365 days & 30 days. - 52 W H/L: 52 week High & Low prices are adjusted for Bonus, Split & Rights Corporate actions.
Acknowledgements : The data is obtained from NSE website This is just daily level data provided here, you will get vast and detailed real-time & historical data from the official website.
Image Credit : https://gettyimages.com
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The dataset shows monthly and annual averages of NSE Nifty 50
Note: 1. The averages are based on daily closing index. 2. S&P CNX Nifty has been re-branded as Nifty 50 w.e.f. November 09, 2015.
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TwitterAs of February 2024, the real estate sector in India had the highest growth in the annual performance of the National Stock Exchange sector indices in terms of price return index. The energy sector followed, with a ** percent growth in annual performance during the same period.
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India's National Stock Exchange (NSE) has a total market capitalization of more than US$3.4 trillion, making it the world's 10th-largest stock exchange as of August 2021, with a trading volume of ₹8,998,811 crore (US$1.2 trillion) and more 2000 total listings.
NSE's flagship index, the NIFTY 50, is a 50 stock index is used extensively by investors in India and around the world as a barometer of the Indian capital market.
This dataset contains data of all company stocks listed in the NSE, allowing anyone to analyze and make educated choices about their investments, while also contributing to their countries economy.
- Create a time series regression model to predict NIFTY-50 value and/or stock prices.
- Explore the most the returns, components and volatility of the stocks.
- Identify high and low performance stocks among the list.
- Your kernel can be featured here!
- Related Dataset: S&P 500 Stocks - daily updated
- More datasets
License
CC0: Public Domain
Splash banner
Stonks by unknown memer.