| Overall Statistics |
|
Total Orders 0 Average Win 0% Average Loss 0% Compounding Annual Return 0% Drawdown 0% Expectancy 0 Start Equity 100000 End Equity 100000 Net Profit 0% Sharpe Ratio 0 Sortino Ratio 0 Probabilistic Sharpe Ratio 0% Loss Rate 0% Win Rate 0% Profit-Loss Ratio 0 Alpha 0 Beta 0 Annual Standard Deviation 0 Annual Variance 0 Information Ratio -14.033 Tracking Error 0.039 Treynor Ratio 0 Total Fees $0.00 Estimated Strategy Capacity $0 Lowest Capacity Asset Portfolio Turnover 0% |
# region imports
from AlgorithmImports import *
# endregion
class HyperActiveBrownJaguar(QCAlgorithm):
def initialize(self):
self.set_start_date(2024, 8, 20)
self.set_end_date(2024, 8, 21)
self.resolution = Resolution.MINUTE
self.index = self.add_index('SPX', resolution=self.resolution)
self.index_symbol = self.index.symbol
self.spxw_option = self.add_index_option(self.index_symbol, "SPXW", resolution=self.resolution)
self.spxw_option.set_filter(self.spxw_filter)
self.spxw_symbol = self.spxw_option.symbol
def spxw_filter(self, universe: OptionFilterUniverse) -> OptionFilterUniverse:
return universe.strikes(-50, 0).puts_only().expiration(0, 9).include_weeklys()
def on_data(self, data: Slice):
if datetime(2024, 8, 21, 16, 0) > self.time >= datetime(2024, 8, 21, 15, 0):
spxw_chain = data.option_chains.get(self.spxw_symbol)
c = [c for c in spxw_chain if c.symbol.value.endswith('240821P05520000')][0]
# bid = 0.15 ask = 0.1
self.log(f'bid={c.bid_price}/{c.bid_size} ask={c.ask_price}/{c.ask_size}')