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Repo for scraping option data required for the Black Scholes model. Data is scraped from S&P500 companies

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Option-Scraper-BlackScholes

Author: Juan Diego Herrera

The code in this repo allows for scraping option data required for the Black Scholes model. Data is scraped from S&P500 companies.

Beyond the standard python libraries, the code requires pandas, bs4 (Beautiful Soup), and requests to work properly

Background

This scraper was originally created for quite a fun project I worked on regarding the use of neural nets in option pricing. Make sure to check it out!

Getting access to option data can be quite expensive - especially when getting data in bulk. Datasets are often protected behind a paywall that can range from $10-100. Furthermore, for those having access to financial tools such as a Bloomberg terminal (I'm looking at you, students), there is often a data quota that should not be exceeded.

That's why I made this scraper.

Output

This program will scrape the following information about all current call contracts for batches of companies in the S&P500. The program will write into a csv called "SNP.csv":

  • Option price
  • Option strike price
  • Option time to maturity (in years)
  • Underlying stock price
  • Underlying stock dividend yield
  • Underlying stock implied volatility (this is the best proxy for a stock's volatility)

Multiple runs will be stacked on top of each other

Almost all data is scraped from Yahoo Finance, with the exception of implied volatility, which is scraped from AlphaQuery

Usage

This scraper is free to use! Just make sure to check out this project and star this repo if you find the code useful!

On the more technical side, the scraper can be used in either a Jupyter notebook or a plain .py file; the code is almost completely identical. That being said, the .py file allows for faster parameter tuning. The company list for which the scraping occurs comes from Wikipedia's list.

If you're using the .py make sure you pass the correct arguments (see below)

Important: since the code is extracting a lot of data from several sites in Yahoo Finance and AlphaQuery, sometimes servers will block your IP for accessing their data for small period of time. In the case of a block, the code crashes and ceases execution immediately. I've tried to ameliorate this effect by adding a wait between each batch.

If the code crashes due to a server denial (i.e requests returned None) you can restart the code at the company index the code crashed on and you can still keep on appending on the same csv file.

With all of this in mind, I recommend running this program while the markets are closed since it takes quite some time to run!

Parameters

Below is a list of the parameters that can be tuned when running the .py. All parameters are optional and have default values. These parameters should be changed manually if using Jupyter.

  • --batches - the number of company batches to be processed
  • --bs - the batch size (i.e the number of companys processed per batch)
  • --rf - risk-free rate used in the output
  • --waitb - wait time between batches
  • --wait - wait time between page requests
  • --verbose - flag that determines whether the program prints progress. Should be 1 or 0
  • --startIdx - index to start parsing companies from (see Wikipedia's list to understand the indexing)

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Repo for scraping option data required for the Black Scholes model. Data is scraped from S&P500 companies

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