Volatility Trading Save

A complete set of volatility estimators based on Euan Sinclair's Volatility Trading

Project README

volest

Learn how to apply this code to your own options trading

Getting Started With Python for Quant Finance is the cohort-based course and community that will take you from complete beginner to up and running with Python for quant finance in 30 days.

A complete set of volatility estimators based on Euan Sinclair's Volatility Trading.

http://www.amazon.com/gp/product/0470181990/tag=quantfinancea-20

The original version incorporated network data acquisition from Yahoo!Finance from pandas_datareader. Yahoo! changed their API and broke pandas_datareader.

The changes allow you to specify your own data so you're not tied into equity data from Yahoo! finance. If you're still using equity data, just download a CSV from finance.yahoo.com and use the data.yahoo_data_helper method to form the data properly.

Volatility estimators include:

  • Garman Klass
  • Hodges Tompkins
  • Parkinson
  • Rogers Satchell
  • Yang Zhang
  • Standard Deviation

Also includes

  • Skew
  • Kurtosis
  • Correlation

For each of the estimators, plot:

  • Probability cones
  • Rolling quantiles
  • Rolling extremes
  • Rolling descriptive statistics
  • Histogram
  • Comparison against arbirary comparable
  • Correlation against arbirary comparable
  • Regression against arbirary comparable

Create a term sheet with all the metrics printed to a PDF.

Page 1 - Volatility cones

Capture-1

Page 2 - Volatility rolling percentiles

Capture-2

Page 3 - Volatility rolling min and max

Capture-3

Page 4 - Volatility rolling mean, standard deviation and zscore

Capture-4

Page 5 - Volatility distribution

Capture-5

Page 6 - Volatility, benchmark volatility and ratio###

Capture-6

Page 7 - Volatility rolling correlation with benchmark

Capture-7

Page 3 - Volatility OLS results

Capture-8

Example usage:


from volatility import volest
import yfinance as yf

# data
symbol = 'JPM'
bench = 'SPY'
estimator = 'GarmanKlass'

# estimator windows
window = 30
windows = [30, 60, 90, 120]
quantiles = [0.25, 0.75]
bins = 100
normed = True

# use the yahoo helper to correctly format data from finance.yahoo.com
jpm_price_data = yf.Ticker(symbol).history(period="5y")
jpm_price_data.symbol = symbol
spx_price_data = yf.Ticker(bench).history(period="5y")
spx_price_data.symbol = bench

# initialize class
vol = volest.VolatilityEstimator(
    price_data=jpm_price_data,
    estimator=estimator,
    bench_data=spx_price_data
)

# call plt.show() on any of the below...
_, plt = vol.cones(windows=windows, quantiles=quantiles)
_, plt = vol.rolling_quantiles(window=window, quantiles=quantiles)
_, plt = vol.rolling_extremes(window=window)
_, plt = vol.rolling_descriptives(window=window)
_, plt = vol.histogram(window=window, bins=bins, normed=normed)

_, plt = vol.benchmark_compare(window=window)
_, plt = vol.benchmark_correlation(window=window)

# ... or create a pdf term sheet with all metrics in term-sheets/
vol.term_sheet(
    window,
    windows,
    quantiles,
    bins,
    normed
)

Hit me on twitter with comments, questions, issues @jasonstrimpel

Open Source Agenda is not affiliated with "Volatility Trading" Project. README Source: jasonstrimpel/volatility-trading
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