398 lines
20 KiB
Python
398 lines
20 KiB
Python
import logging
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import numpy as np
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import os
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import pandas as pd
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import plotly.express as px
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from dataclasses import dataclass
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from datetime import datetime
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from dotenv import load_dotenv
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from .credit_target_strategy import CreditTargetStrategy
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from .delta_target_strategy import DeltaTargetStrategy
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from .option_spread_strategy import OptionSpreadStrategy
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from .option_type import OptionType
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load_dotenv()
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logging.basicConfig(level=logging.WARN)
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FEES_PER_CONTRACT = 0.80
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MARKET_CLOSE = '16:00:00'
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MARKET_OPEN = '09:35:00'
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OPTION_DATA_DIRECTORY = os.getenv('OPTION_DATA_DIRECTORY')
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STRIKE_MULTIPLE = 5.0
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@dataclass
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class BacktestResult:
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date: str
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entry_time: str
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exit_time: str
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spreads: list
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trade_entered: bool
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trade_pnl: float
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profit: float
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credit: float
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mfe: float
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mae: float
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# Metrics
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dates = []
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max_drawdowns = []
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max_profits = []
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wins = []
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exit_times = []
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def plot(backtest_results: pd.DataFrame, title: str):
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backtest_results.drop('Profit', axis = 1, inplace = True)
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backtest_results.rename(columns = {'Cumulative Profit' : 'Profit'}, inplace = True)
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# Exclude dates on which the market was closed from being plotted in order to prevent gaps on chart.
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start_date = backtest_results['Date'].min()
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end_date = backtest_results['Date'].max()
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backtest_date_range = pd.date_range(start = start_date, end = end_date).to_list()
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backtest_date_range = set([timestamp.strftime('%Y-%m-%d') for timestamp in backtest_date_range])
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backtested_dates = set(backtest_results['Date'].to_list())
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excluded_dates = backtest_date_range - backtested_dates
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backtest_results['Color'] = np.where(backtest_results['Profit'] >= 0, 'limegreen', 'red')
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color_sequence = ['limegreen', 'red'] if backtest_results.iloc[0]['Profit'] >= 0 else ['red', 'limegreen']
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chart = px.bar(backtest_results, x='Date', y='Profit', title=title, color='Color', color_discrete_sequence=color_sequence, hover_data={'Color': False})
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chart.update_layout({
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'font_color': '#7a7c7d',
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'plot_bgcolor': '#0f0f0f',
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'paper_bgcolor': '#0f0f0f',
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'title_font_color': '#7a7c7d',
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'xaxis': {
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'gridcolor': '#0f0f0f',
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'zerolinecolor': '#0f0f0f'
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},
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'yaxis': {
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'gridcolor': '#0f0f0f',
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'zerolinecolor': '#0f0f0f'
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}
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})
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chart.update_traces(marker_line_width=0, selector=dict(type='bar'))
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chart.update_layout(bargap=0, bargroupgap = 0)
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chart.update_layout(showlegend=False)
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chart.update_xaxes(rangebreaks=[dict(values=list(excluded_dates))])
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chart.show()
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def get_spread_history_credit(historical_option_data: pd.DataFrame, option_strat: CreditTargetStrategy) -> pd.DataFrame:
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current_date = historical_option_data.iloc[0]['quote_datetime'][:10]
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opening_quotes = historical_option_data[(historical_option_data['quote_datetime'] == (current_date + ' ' + option_strat.trade_entry_time))]
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if opening_quotes.empty:
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return None
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else:
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opening_quotes_by_contract_type = opening_quotes[opening_quotes['option_type'] == option_strat.option_type.value]
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short_contract_candidates = opening_quotes_by_contract_type[(opening_quotes_by_contract_type['bid'] >= (option_strat.credit_target - 1.0)) & (opening_quotes_by_contract_type['bid'] < (option_strat.credit_target + 1.0))]
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credit_increment = 2.00
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while short_contract_candidates.empty:
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short_contract_candidates = opening_quotes_by_contract_type[(opening_quotes_by_contract_type['bid'] >= (option_strat.credit_target - credit_increment)) & (opening_quotes_by_contract_type['bid'] < (option_strat.credit_target + credit_increment))]
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credit_increment += 1.00
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strike_candidates = {}
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for i in range(len(short_contract_candidates)):
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candidate = short_contract_candidates.iloc[i]
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strike_candidates[candidate['bid']] = candidate['strike']
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closest_bid = min(strike_candidates, key=lambda candidate_bid: abs(option_strat.credit_target - candidate_bid))
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short_strike = strike_candidates[closest_bid]
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logging.info('Short Strike: %s', short_strike)
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long_strike = short_strike + (option_strat.spread_width if option_strat.option_type == OptionType.CALL else -option_strat.spread_width)
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# Sometimes the strike we're interested in doesn't exist. Find the nearest one that does.
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increment = 5.0 if option_strat.option_type == OptionType.CALL else -5.0
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while opening_quotes_by_contract_type[(opening_quotes_by_contract_type['strike'] == long_strike)].empty: # TODO: Doesn't work for one day in 2018.
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long_strike = long_strike + increment
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logging.info('Long Strike: %s', long_strike)
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short_strike_history = historical_option_data[(historical_option_data['strike'] == short_strike) & (historical_option_data['option_type'] == option_strat.option_type.value)].set_index('quote_datetime')
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long_strike_history = historical_option_data[(historical_option_data['strike'] == long_strike) & (historical_option_data['option_type'] == option_strat.option_type.value)].set_index('quote_datetime')
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spread_history = short_strike_history.join(long_strike_history, lsuffix='_short_strike', rsuffix='_long_strike', on='quote_datetime')
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return spread_history
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def get_spread_history(historical_option_data: pd.DataFrame, option_strat: DeltaTargetStrategy) -> pd.DataFrame:
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current_date = historical_option_data.iloc[0]['quote_datetime'][:10]
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opening_quotes = historical_option_data[(historical_option_data['quote_datetime'] == (current_date + ' ' + option_strat.trade_entry_time))]
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if opening_quotes.empty:
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return None
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else:
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if option_strat.option_type == OptionType.PUT:
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short_contract_candidates = opening_quotes[(opening_quotes['delta'] > -option_strat.delta_upper_bound) & (opening_quotes['delta'] <= -option_strat.delta_lower_bound)]
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else:
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short_contract_candidates = opening_quotes[(opening_quotes['delta'] < option_strat.delta_upper_bound) & (opening_quotes['delta'] >= option_strat.delta_lower_bound)]
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delta_increment = 0.01
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while short_contract_candidates.empty:
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if option_strat.option_type == OptionType.PUT:
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short_contract_candidates = opening_quotes[(opening_quotes['delta'] > (-option_strat.delta_upper_bound - delta_increment)) & (opening_quotes['delta'] <= -option_strat.delta_lower_bound)]
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else:
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short_contract_candidates = opening_quotes[(opening_quotes['delta'] < (option_strat.delta_upper_bound + delta_increment)) & (opening_quotes['delta'] >= option_strat.delta_lower_bound)]
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delta_increment = delta_increment + 0.01
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# Might return more than one, take greatest strike
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short_contract = short_contract_candidates.iloc[-1]
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short_strike = short_contract['strike']
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logging.info('Short Strike: %s', short_strike)
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long_strike = short_strike + (option_strat.spread_width if option_strat.option_type == OptionType.CALL else -option_strat.spread_width)
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# Sometimes the strike we're interested in doesn't exist. Find the nearest one that does.
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increment = 5.0 if option_strat.option_type == OptionType.CALL else -5.0
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while opening_quotes[(opening_quotes['strike'] == long_strike)].empty: # TODO: Doesn't work for one day in 2018.
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long_strike = long_strike + increment
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logging.info('Long Strike: %s', long_strike)
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short_strike_history = historical_option_data[(historical_option_data['strike'] == short_strike) & (historical_option_data['option_type'] == option_strat.option_type.value)].set_index('quote_datetime')
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long_strike_history = historical_option_data[(historical_option_data['strike'] == long_strike) & (historical_option_data['option_type'] == option_strat.option_type.value)].set_index('quote_datetime')
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spread_history = short_strike_history.join(long_strike_history, lsuffix='_short_strike', rsuffix='_long_strike', on='quote_datetime')
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return spread_history
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def _backtest_iron_condor(
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historical_option_data: pd.DataFrame,
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call_spread_strategy: OptionSpreadStrategy,
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put_spread_strategy: OptionSpreadStrategy
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) -> BacktestResult:
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call_spread_history = get_spread_history(historical_option_data, call_spread_strategy)
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put_spread_history = get_spread_history(historical_option_data, put_spread_strategy)
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current_date = call_spread_history.iloc[0].name[:10]
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entry_time = call_spread_strategy.trade_entry_time
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call_spread_entry = call_spread_history.loc[current_date + ' ' + entry_time]
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original_call_spread_price = ((call_spread_entry['ask_short_strike'] + call_spread_entry['bid_short_strike']) / 2.0) - ((call_spread_entry['ask_long_strike'] + call_spread_entry['bid_long_strike']) / 2.0)
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put_spread_entry = put_spread_history.loc[current_date + ' ' + entry_time]
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original_put_spread_price = ((put_spread_entry['ask_short_strike'] + put_spread_entry['bid_short_strike']) / 2.0) - ((put_spread_entry['ask_long_strike'] + put_spread_entry['bid_long_strike']) / 2.0)
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# Calculate entry slippage.
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if original_call_spread_price > 0.05:
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original_call_spread_price = original_call_spread_price - (original_call_spread_price % 0.05)
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logging.info('Original Call Spread Price: %s', original_call_spread_price)
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if original_put_spread_price > 0.05:
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original_put_spread_price = original_put_spread_price - (original_put_spread_price % 0.05)
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logging.info('Original Put Spread Price: %s', original_put_spread_price)
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premium_received = original_call_spread_price + original_put_spread_price
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call_spread_details = {
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"legs": [{"action": "SELL", "strike": call_spread_entry['strike_short_strike'], "type": "CALL"},
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{"action": "BUY", "strike": call_spread_entry['strike_long_strike'], "type": "CALL"}],
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"open": original_call_spread_price,
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"high": None,
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"low": None,
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"close": None
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}
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put_spread_details = {
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"legs": [{"action": "SELL", "strike": put_spread_entry['strike_short_strike'], "type": "PUT"},
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{"action": "BUY", "strike": put_spread_entry['strike_long_strike'], "type": "PUT"}],
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"open": original_put_spread_price,
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"high": None,
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"low": None,
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"close": None
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}
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trades_entered = False
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call_spread_stopped_out = False
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put_spread_stopped_out = False
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took_profit = False
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took_early_loss = False
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max_profit = 0.0
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max_drawdown = 0.0
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exit_time = '16:00:00'
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for i in range(len(call_spread_history)):
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call_spread = call_spread_history.iloc[i]
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put_spread = put_spread_history.iloc[i]
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if call_spread.name.endswith(entry_time):
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trades_entered = True
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continue
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if not trades_entered:
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continue
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if call_spread.name.endswith('16:05:00') or call_spread.name.endswith('16:10:00') or call_spread.name.endswith('16:15:00'):
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continue
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if call_spread['high_short_strike'] > call_spread['high_long_strike']:
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current_call_spread_price = call_spread['high_short_strike'] - call_spread['high_long_strike']
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else:
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current_call_spread_price = ((call_spread['ask_short_strike'] + call_spread['bid_short_strike']) / 2.0) - ((call_spread['ask_long_strike'] + call_spread['bid_long_strike']) / 2.0)
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if put_spread['high_short_strike'] > put_spread['high_long_strike']:
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current_put_spread_price = put_spread['high_short_strike'] - put_spread['high_long_strike']
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else:
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current_put_spread_price = ((put_spread['ask_short_strike'] + put_spread['bid_short_strike']) / 2.0) - ((put_spread['ask_long_strike'] + put_spread['bid_long_strike']) / 2.0)
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call_spread_details['high'] = max(call_spread_details['high'] or float('-inf'), current_call_spread_price)
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call_spread_details['low'] = min(call_spread_details['low'] or float('inf'), current_call_spread_price)
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call_spread_details['close'] = current_call_spread_price
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put_spread_details['high'] = max(put_spread_details['high'] or float('-inf'), current_put_spread_price)
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put_spread_details['low'] = min(put_spread_details['low'] or float('inf'), current_put_spread_price)
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put_spread_details['close'] = current_put_spread_price
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if not call_spread_stopped_out:
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if current_call_spread_price >= ((call_spread_strategy.stop_loss_multiple + 1) * original_call_spread_price):
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premium_received -= original_call_spread_price * (call_spread_strategy.stop_loss_multiple + 1)
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call_spread_details['close'] = original_call_spread_price * (call_spread_strategy.stop_loss_multiple + 1) + 0.10
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# Calculate exit slippage.
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premium_received -= 0.10 # TODO: Make this configurable.
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call_spread_stopped_out = True
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exit_time = call_spread.name[-8:]
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logging.info('Call Spread Stopped Out')
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break
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if not put_spread_stopped_out:
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if current_put_spread_price >= ((put_spread_strategy.stop_loss_multiple + 1) * original_put_spread_price):
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premium_received -= original_put_spread_price * (put_spread_strategy.stop_loss_multiple + 1)
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premium_received -= 0.10 # TODO: Make this configurable.
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put_spread_details['close'] = original_put_spread_price * (put_spread_strategy.stop_loss_multiple + 1) + 0.10
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put_spread_stopped_out = True
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exit_time = call_spread.name[-8:]
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logging.info('Put Spread Stopped Out')
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break
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if not (call_spread_stopped_out and put_spread_stopped_out):
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if current_call_spread_price > current_put_spread_price:
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if put_spread['low_short_strike'] > put_spread['low_long_strike']:
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current_put_spread_price = put_spread['low_short_strike'] - put_spread['low_long_strike']
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else:
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current_put_spread_price = ((put_spread['ask_short_strike'] + put_spread['bid_short_strike']) / 2.0) - ((put_spread['ask_long_strike'] + put_spread['bid_long_strike']) / 2.0)
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else:
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if call_spread['low_short_strike'] > call_spread['low_long_strike']:
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current_call_spread_price = call_spread['low_short_strike'] - call_spread['low_long_strike']
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else:
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current_call_spread_price = ((call_spread['ask_short_strike'] + call_spread['bid_short_strike']) / 2.0) - ((call_spread['ask_long_strike'] + call_spread['bid_long_strike']) / 2.0)
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if call_spread_stopped_out:
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current_call_spread_price = original_call_spread_price * (call_spread_strategy.stop_loss_multiple + 1)
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if put_spread['high_short_strike'] > put_spread['high_long_strike']:
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current_put_spread_price = put_spread['high_short_strike'] - put_spread['high_long_strike']
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else:
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current_put_spread_price = ((put_spread['ask_short_strike'] + put_spread['bid_short_strike']) / 2.0) - ((put_spread['ask_long_strike'] + put_spread['bid_long_strike']) / 2.0)
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if put_spread_stopped_out:
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current_put_spread_price = original_put_spread_price * (put_spread_strategy.stop_loss_multiple + 1)
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if call_spread['high_short_strike'] > call_spread['high_long_strike']:
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current_call_spread_price = call_spread['high_short_strike'] - call_spread['high_long_strike']
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else:
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current_call_spread_price = ((call_spread['ask_short_strike'] + call_spread['bid_short_strike']) / 2.0) - ((call_spread['ask_long_strike'] + call_spread['bid_long_strike']) / 2.0)
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current_profit = (original_call_spread_price - current_call_spread_price) + (original_put_spread_price - current_put_spread_price)
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current_profit_dollars = current_profit * call_spread_strategy.number_of_contracts * 100
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if current_profit_dollars > max_profit:
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max_profit = current_profit_dollars
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if current_profit_dollars < max_drawdown:
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max_drawdown = current_profit_dollars
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if not took_profit and not took_early_loss:
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if not call_spread_stopped_out and current_call_spread_price > 0.05:
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premium_received -= current_call_spread_price
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if not put_spread_stopped_out and current_put_spread_price > 0.05:
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premium_received -= current_put_spread_price
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number_of_contracts = call_spread_strategy.number_of_contracts
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stop_out_fees = 0.0 # It costs money to get stopped out.
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if call_spread_stopped_out:
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stop_out_fees += (2 * FEES_PER_CONTRACT * number_of_contracts)
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if put_spread_stopped_out:
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stop_out_fees += (2 * FEES_PER_CONTRACT * number_of_contracts)
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fees = 4 * FEES_PER_CONTRACT * number_of_contracts
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commissions = 4 * number_of_contracts
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premium_received = (premium_received * number_of_contracts * 100) - (fees + commissions) - stop_out_fees
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dates.append(current_date)
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max_drawdowns.append(max_drawdown)
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max_profits.append(max_profit)
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wins.append(True if premium_received > 0 else False)
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exit_times.append(exit_time)
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result = BacktestResult(
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date=current_date,
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entry_time=f'{current_date} {entry_time}',
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exit_time=f'{current_date} {exit_time}',
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spreads=[call_spread_details, put_spread_details],
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trade_entered=True,
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trade_pnl=premium_received,
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profit=0.0, # TODO: Calculated elsewhere. Clean this up.
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credit=original_call_spread_price + original_put_spread_price,
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mfe=max_profit,
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mae=max_drawdown
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)
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logging.info('Premium Received: %f', premium_received)
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return result
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def backtest_iron_condor(
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backtest_name: str,
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call_spread_strategy: OptionSpreadStrategy,
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put_spread_strategy: OptionSpreadStrategy,
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start_date: datetime,
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end_date: datetime
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) -> pd.DataFrame:
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total_premium_received = 0.0
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total_trades = 0.0
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total_wins = 0.0
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result_dates = []
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result_pnl = []
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backtest_results = []
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start_year = start_date.year
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end_year = end_date.year
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for year in range(start_year, end_year + 1):
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year_directory = os.path.join(OPTION_DATA_DIRECTORY, str(year))
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for file in os.listdir(year_directory):
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historical_data_file = os.path.join(year_directory, file)
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if os.path.isdir(historical_data_file) or not file.endswith('.csv'):
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continue
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# Assuming file format 'YYYY-MM-DD.csv'.
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file_date_str = os.path.splitext(file)[0]
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file_date = datetime.strptime(file_date_str, '%Y-%m-%d')
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if file_date < start_date or file_date > end_date:
|
|
continue
|
|
|
|
print('Processing File:', historical_data_file)
|
|
logging.info('Processing File: %s', historical_data_file)
|
|
|
|
historical_option_data = pd.read_csv(historical_data_file)
|
|
backtest_result = _backtest_iron_condor(historical_option_data, call_spread_strategy, put_spread_strategy)
|
|
total_premium_received += backtest_result.trade_pnl
|
|
backtest_result.profit = total_premium_received
|
|
backtest_results.append(backtest_result)
|
|
|
|
if backtest_result.trade_entered:
|
|
total_trades += 1
|
|
if backtest_result.trade_pnl > 0.0:
|
|
total_wins += 1
|
|
|
|
logging.info('Overall PnL: %f', total_premium_received)
|
|
logging.info('Win Rate: %f', (total_wins / total_trades) if total_trades > 0 else 0.0)
|
|
logging.info('Average Premium Received: %f', (total_premium_received / total_trades) if total_trades > 0 else 0.0)
|
|
|
|
current_date = historical_option_data.iloc[0]['quote_datetime'][:10]
|
|
result_dates.append(current_date)
|
|
result_pnl.append(total_premium_received)
|
|
|
|
# TODO: Either look up the symbol in the historical option data or have the client provide it.
|
|
backtest_results = pd.DataFrame([{
|
|
'Date': result.date,
|
|
'Symbol': 'SPX',
|
|
'Strategy': backtest_name,
|
|
'Entry Time': result.entry_time,
|
|
'Exit Time': result.exit_time,
|
|
'Spreads': result.spreads,
|
|
'Profit': result.trade_pnl,
|
|
'Cumulative Profit': result.profit
|
|
} for result in backtest_results])
|
|
|
|
return backtest_results |