< Nifty Max Pain Historical Data with Charts (Weekly Expiry)

Nifty Max Pain Historical Data with Charts

Access Nifty Max Pain Historical Data with charts for the last 7 years free, No need to pay any charges.



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Nifty Option Chain Historical Data Weekly Expiry

Nifty Max Pain Charts (Historical)


Nifty Option Chain Historical

Turnover Volume OI OI Change Close Strike Close OI Change OI Volume Turnover Spot PCR

Nifty Max Pain Data Table History

Strike CE OI PE OI Total Loss (₹) Distance to Max Pain

How to Interpret Nifty Max Pain Charts

  1. Select Expiry Year from the filter dropdown to focus on the year of interest.
  2. Choose the Expiry Month to narrow down to a specific monthly cycle.
  3. Pick the Expiry Date to view weekly expiry data for that contract.
  4. Use the Date filter to drill down into daily Max Pain movements.
  5. Review the Max Pain Chart to identify the strike price where option writers face the least loss.
  6. Compare across different expiries to understand historical trends and likely settlement zones.

Nifty Max Pain is the strike price at which option writers (sellers) experience the least loss. It is widely used to gauge the likely expiry level of Nifty during weekly and monthly settlements.

Max Pain helps traders understand where the majority of open interest is concentrated. It provides insights into potential expiry levels and assists in planning hedging or directional strategies.

You can access Nifty Max Pain historical data with charts for the last 7 years free of cost. The dataset includes weekly expiry analysis and visualization tools for better interpretation.

Max Pain is calculated by analyzing open interest across strike prices for both calls and puts. The strike with the minimum combined loss for option writers is identified as the Max Pain level.

While Max Pain is a useful indicator, it is not a guaranteed predictor. It reflects option writers’ positioning, but market sentiment, news, and volatility can cause deviations from the Max Pain level.

Nifty Max Pain historical data is available in charts, CSV, and Excel formats. This makes it easy for traders to visualize, download, and backtest strategies using past expiry trends.

Understanding Nifty Max Pain Charts

Nifty Max Pain charts highlight the strike price where option writers face minimal loss, offering traders a valuable indicator of likely settlement zones. By applying filters such as expiry year, month, and date, users can explore weekly expiry trends across the last 7 years. This historical perspective helps in identifying recurring market behavior, improving strategy planning, and enhancing risk management decisions.

Using Filters for Max Pain Analysis

The Nifty Max Pain dataset allows traders to refine their analysis with powerful filters such as expiry year, expiry month, expiry date, and daily date selection. By adjusting these filters, users can drill down into specific timeframes, compare weekly expiry patterns, and uncover historical trends across multiple years. This structured approach makes it easier to identify recurring settlement zones, evaluate market sentiment, and build more reliable trading strategies based on past behavior.


Pros and Cons of Using Nifty Max Pain Data

Pros Cons
Provides insights into likely expiry levels based on option writers’ positions. Not a guaranteed predictor; market sentiment and news can override Max Pain levels.
Helps traders plan hedging and directional strategies with historical context. Requires careful interpretation; beginners may misread signals without experience.
Free access to 7 years of historical data with charts and filters. Does not account for sudden volatility spikes or unexpected events.
Easy visualization through charts and filters (expiry year, month, date). Works best when combined with other indicators like OI, volume, and technical analysis.
Disclaimer: Trade at your own risk. we dont recommend buying and selling. we dont give tips.