| Overall Statistics |
|
Total Orders 1043 Average Win 8.32% Average Loss -4.30% Compounding Annual Return 667.353% Drawdown 28.200% Expectancy 0.979 Start Equity 1000 End Equity 91693008.50 Net Profit 9169200.850% Sharpe Ratio 5.969 Sortino Ratio 8.341 Probabilistic Sharpe Ratio 100.000% Loss Rate 33% Win Rate 67% Profit-Loss Ratio 1.94 Alpha 0 Beta 0 Annual Standard Deviation 0.494 Annual Variance 0.244 Information Ratio 6.03 Tracking Error 0.494 Treynor Ratio 0 Total Fees $662616.28 Estimated Strategy Capacity $3200000.00 Lowest Capacity Asset XLRE W4JI5EUDC9K5 Portfolio Turnover 31.82% Drawdown Recovery 92 |
# region imports
from AlgorithmImports import *
import smtplib
from email.mime.text import MIMEText
# endregion
# Your New Python File
def send_email(subject, body, recipients, sender="sixseven.tralalero@gmail.com"):
if isinstance(recipients, str):
recipients_list = [recipients]
else:
recipients_list = list(recipients)
msg = MIMEText(body, "plain", "utf-8")
msg["Subject"] = subject
msg["From"] = sender
msg["To"] = ", ".join(recipients_list)
try:
with smtplib.SMTP("smtp.gmail.com", 587) as smtp_server:
smtp_server.starttls()
smtp_server.login(
sender, "cewn vuqx yhdt cspj"
) # Use an app password if 2FA is enabled
smtp_server.sendmail(sender, recipients, msg.as_string())
except Exception as e:
logger.error(
f"Failed to send email: {e}, subject: {subject}, recipients: {recipients}"
)from datetime import timedelta, datetime
import math
from AlgorithmImports import *
import numpy as np
from settings import settings
from email_util import send_email
class RSIRebalanceStrategy(QCAlgorithm):
def Initialize(self):
self.set_start_date(2020, 1, 1)
# self.set_end_date(2022, 1, 1)
# https://www.interactivebrokers.ca/en/accounts/tradingPermissions.php?ib_entity=ca
self.ibkr_market_order_buffer = 0.02
self.ibkr_fee_buffer = 25
self.set_brokerage_model(
BrokerageName.INTERACTIVE_BROKERS_BROKERAGE, AccountType.CASH
)
self.symbols = ["TQQQ", "SPY", "QID", "UVXY", "LABU", "BND", "SH", "XLRE",
"QQQE", "VTV", "VOOG", "VOOV", "XLP", "XLY", "KMLM", "XLU","SOXL"]
self.equities = {}
for name in self.symbols:
self.equities[name] = self.add_equity_symbol(name)
if not self.live_mode:
self.set_warmup(timedelta(days=250))
self.set_cash(settings.start_cash)
self.schedule.on(
self.date_rules.month_start(1),
self.time_rules.after_market_close(self.equities["SPY"], 0),
self.add_cash,
)
self.schedule.on(
self.date_rules.month_start(15),
self.time_rules.after_market_close(self.equities["SPY"], 0),
self.add_cash,
)
self.schedule.on(
self.date_rules.every_day(),
self.time_rules.before_market_close(self.equities["SPY"], 6),
self.reset_liquidated,
)
step = -0.25 if self.live_mode else -1
stop = 0 if self.live_mode else 2
start = 5
for offset in np.arange(start, stop, step):
self.schedule.on(
self.date_rules.every_day(),
self.time_rules.before_market_close(self.equities["SPY"], offset),
self.rebalance,
)
self.cashInvested = self.portfolio.cash_book["USD"].amount
self.liquidated = False
self.additional_cash = 0
self.indicator_data = {
"rsi": {},
"sma": {}
}
self.start_time = datetime.now()
def rebalance(self):
if self.time < self.start_date:
return
if not self.securities["SPY"].has_data:
return
if self.live_mode:
self.indicator_data = {
"rsi": {},
"sma": {}
}
rsi = self.rsi_2
sma = self.sma_2
set_holdings = self.set_holdings_2
equities = self.equities
price = self.price
if (
rsi("QQQE", 10) > 79
or rsi("VTV", 10) > 79
or rsi("VOOG", 10) > 79
or rsi("VOOV", 10) > 79
or rsi("XLP", 10) > 75
or rsi("TQQQ", 10) > 79
or rsi("XLY", 10) > 80
or rsi("SPY", 10) > 80
):
set_holdings("UVXY", 1)
elif rsi("TQQQ", 10) < 31:
set_holdings("TQQQ", 1)
elif rsi("LABU", 10) < 25:
set_holdings("LABU", 1)
elif rsi("SOXL", 10) < 30:
set_holdings("SOXL", 1)
elif price("TQQQ") > sma("TQQQ", 200):
if rsi("TQQQ", 10) > rsi("KMLM", 10):
set_holdings("TQQQ", 1)
else:
set_holdings("XLRE", 1)
else:
if price("TQQQ") > sma("TQQQ", 20):
set_holdings("TQQQ", 1)
elif price("KMLM") > sma("KMLM", 20):
set_holdings("QID", 1)
else:
set_holdings("XLU", 1)
def reset_liquidated(self):
self.liquidated = False
self.indicator_data = {
"rsi": {},
"sma": {}
}
def price(self, symbol: str):
return self.securities[symbol].price
def add_equity_symbol(self, symbol: str) -> Symbol:
s = self.add_equity(
symbol, Resolution.MINUTE, data_normalization_mode=DataNormalizationMode.ADJUSTED
)
s.set_settlement_model(ImmediateSettlementModel())
s.set_fill_model(ImmediateFillModel())
return s.Symbol
def add_cash(self):
dcaCash = settings.dca_cash
self.portfolio.cash_book["USD"].add_amount(dcaCash)
self.cashInvested += dcaCash
def rsi_2(self, symbol: str, period):
if self.indicator_data["rsi"].get(symbol) is None:
self.indicator_data["rsi"] = {symbol: {}}
if self.indicator_data["rsi"][symbol].get(period) is None or self.indicator_data["rsi"][symbol].get(period) == 0:
self.indicator_data["rsi"][symbol] = {period: 0}
else:
return self.indicator_data["rsi"][symbol][period]
warmup = int(round_up(11 * math.sqrt(period) + 5.5 * period, 0))
extension = min(warmup, 250)
r_w = RollingWindow[float](extension)
history = self.history(symbol, extension - 1, Resolution.DAILY)
for historical_bar in history:
r_w.add(historical_bar.close)
while r_w.count < extension:
current_price = self.securities[symbol].price
r_w.add(current_price)
if r_w.is_ready:
average_gain = 0
average_loss = 0
gain = 0
loss = 0
for i in range(extension - 1, extension - period - 1, -1):
gain += max(r_w[i - 1] - r_w[i], 0)
loss += abs(min(r_w[i - 1] - r_w[i], 0))
average_gain = gain / period
average_loss = loss / period
for i in range(extension - period - 1, 0, -1):
average_gain = (
average_gain * (period - 1) + max(r_w[i - 1] - r_w[i], 0)
) / period
average_loss = (
average_loss * (period - 1) + abs(min(r_w[i - 1] - r_w[i], 0))
) / period
if average_loss == 0:
return 100
else:
rsi = 100 - (100 / (1 + average_gain / average_loss))
self.indicator_data["rsi"][symbol][period] = rsi
return rsi
else:
return None
def sma_2(self, symbol: str, period):
if self.indicator_data["sma"].get(symbol) is None:
self.indicator_data["sma"] = {symbol: {}}
if self.indicator_data["sma"][symbol].get(period) is None or self.indicator_data["sma"][symbol].get(period) == 0:
self.indicator_data["sma"][symbol] = {period: 0}
else:
return self.indicator_data["sma"][symbol][period]
r_w = RollingWindow[float](period)
history = self.history(symbol, period - 1, Resolution.DAILY)
total = sum(bar.close for bar in history) + self.securities[symbol].price
sma = round(total / period, 3)
self.indicator_data["sma"][symbol] = {period: sma}
return sma
def set_holdings_2(self, symbol: str, portion=1):
"""IBKR Brokage Model somehow doesn't wait till liquidation finishes in set_holdings(symbol, 1, True)
So we liquidate explicitly first and set_holdings after
"""
# liquidate any other symbols when switching
if (
not self.liquidated
and not self.portfolio[symbol].invested
and self.portfolio.invested
):
# for curr_pos in current_positions:
# self.liquidate(curr_pos, tag="Liquidated")
self.liquidate()
self.liquidated = True
return
if (
len(self.transactions.get_open_orders()) > 0
or self.portfolio.unsettled_cash > 0
or (
self.liquidated
and self.portfolio.total_portfolio_value != self.portfolio.cash
)
or not self.securities[symbol].has_data
):
return
# Usually portion < 1 is for risky asset like VIXY, no need to keep it's portion
# as we don't hold it for long
if portion < 1:
if self.liquidated and not self.portfolio.invested:
self.set_holdings(symbol, portion)
return
elif self.portfolio[symbol].invested:
self.set_holdings(symbol, portion)
return
# Calculate for limit order
# using 99% of buying power to avoid "Insufficient buying power to complete orders" error
# no idea why QC's engine has weird initial margin stuff
# TFSA doesn't have any initial margin requirements, so we can use 100% - 10 dollars
buying_power = (
self.portfolio.margin_remaining - 10
if self.live_mode
else self.portfolio.margin_remaining * 0.988
)
symbol_price = self.securities[symbol].ask_price
# 5 cents buffer for limit order, IBKR will find lowest ask
limit_price = round_up(symbol_price + 0.03)
shares_num: int = math.floor(buying_power / limit_price)
security = self.securities[symbol]
initial_margin_params = InitialMarginParameters(security, shares_num - 1)
initial_margin_required = (
security.buying_power_model.get_initial_margin_requirement(
initial_margin_params
)
)
# Extract the numeric value from the InitialMargin object
required_margin_value = initial_margin_required.value
while (
shares_num >= 2
and required_margin_value > buying_power - self.ibkr_fee_buffer
):
shares_num = shares_num - 1
initial_margin_params = InitialMarginParameters(security, shares_num)
initial_margin_required = (
security.buying_power_model.get_initial_margin_requirement(
initial_margin_params
)
)
required_margin_value = initial_margin_required.value
# order_amount = shares_num * limit_price
# satisfy_ibkr_market_order = (1 - (order_amount / cash)) > self.ibkr_market_order_buffer
if (
shares_num >= 2
and required_margin_value < buying_power - self.ibkr_fee_buffer
):
self.limit_order(symbol, shares_num, limit_price)
return
def on_end_of_algorithm(self) -> None:
self.debug(f"Cash invested: {self.cashInvested}")
time_elapsed = datetime.now() - self.start_time
self.debug(f"Algo took: {time_elapsed.total_seconds()} seconds")
# def on_order_event(self, order_event: OrderEvent) -> None:
# if not self.live_mode:
# return
# order = None
# try:
# order = self.transactions.get_order_by_id(order_event.order_id)
# except Exception:
# order = None
# symbol = None
# if order is not None and getattr(order, "Symbol", None) is not None:
# symbol = order.symbol.value
# else:
# symbol = getattr(order_event, "Symbol", "UNKNOWN")
# qty = getattr(order, "Quantity", getattr(order_event, "Quantity", 0))
# order_type = getattr(order, "Type", getattr(order_event, "Type", ""))
# fill_qty = getattr(order_event, "FillQuantity", 0)
# fill_price = getattr(order_event, "FillPrice", 0)
# message = getattr(order_event, "Message", "")
# status = order_event.status
# if (
# status == OrderStatus.SUBMITTED
# or status == OrderStatus.PARTIALLY_FILLED
# or status == OrderStatus.FILLED
# or status == OrderStatus.CANCELED
# or status == OrderStatus.INVALID
# ):
# order_message = (
# f"Order {str(status)}\n"
# f" Id: {order_event.order_id}\n"
# f" Symbol: {symbol}\n"
# f" Qty: {qty}\n"
# f" Type: {order_type}\n"
# f" FillQty: {fill_qty}\n"
# f" FillPrice: {fill_price}"
# f" Message: {message}"
# )
# self.log(
# order_message
# )
# send_email("Smart QQQ", order_message, "tuenguyen12329@gmail.com")
def round_up(n, decimals=2):
multiplier = 10**decimals
return math.ceil(n * multiplier) / multiplier
# region imports
from AlgorithmImports import *
# endregion
class Settings():
def __init__(self):
self.start_cash = 1000
self.dca_cash = 200
settings = Settings()