chore: import upstream snapshot with attribution
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/*
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* QUANTCONNECT.COM - Democratizing Finance, Empowering Individuals.
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* Lean Algorithmic Trading Engine v2.0. Copyright 2014 QuantConnect Corporation.
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*
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* Licensed under the Apache License, Version 2.0 (the "License");
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* you may not use this file except in compliance with the License.
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* You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0
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*
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* Unless required by applicable law or agreed to in writing, software
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* distributed under the License is distributed on an "AS IS" BASIS,
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* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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* See the License for the specific language governing permissions and
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* limitations under the License.
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*/
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using System;
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using QuantConnect.Interfaces;
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using QuantConnect.Securities;
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using System.Collections.Generic;
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using QuantConnect.Data;
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namespace QuantConnect.Algorithm.CSharp
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{
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/// <summary>
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/// Demonstration of using custom buying power model in backtesting.
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/// QuantConnect allows you to model all orders as deeply and accurately as you need.
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/// </summary>
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/// <meta name="tag" content="trading and orders" />
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/// <meta name="tag" content="transaction fees and slippage" />
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/// <meta name="tag" content="custom buying power models" />
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public class CustomBuyingPowerModelAlgorithm : QCAlgorithm, IRegressionAlgorithmDefinition
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{
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private Symbol _spy;
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public override void Initialize()
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{
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SetStartDate(2013, 10, 01);
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SetEndDate(2013, 10, 31);
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var security = AddEquity("SPY", Resolution.Hour);
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_spy = security.Symbol;
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// set the buying power model
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security.SetBuyingPowerModel(new CustomBuyingPowerModel());
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}
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public override void OnData(Slice slice)
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{
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if (Portfolio.Invested)
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{
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return;
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}
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var quantity = CalculateOrderQuantity(_spy, 1m);
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if (quantity % 100 != 0)
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{
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throw new RegressionTestException($"CustomBuyingPowerModel only allow quantity that is multiple of 100 and {quantity} was found");
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}
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// We normally get insufficient buying power model, but the
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// CustomBuyingPowerModel always says that there is sufficient buying power for the orders
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MarketOrder(_spy, quantity * 10);
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}
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public class CustomBuyingPowerModel : BuyingPowerModel
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{
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public override GetMaximumOrderQuantityResult GetMaximumOrderQuantityForTargetBuyingPower(
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GetMaximumOrderQuantityForTargetBuyingPowerParameters parameters)
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{
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var quantity = base.GetMaximumOrderQuantityForTargetBuyingPower(parameters).Quantity;
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quantity = Math.Floor(quantity / 100) * 100;
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return new GetMaximumOrderQuantityResult(quantity);
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}
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public override HasSufficientBuyingPowerForOrderResult HasSufficientBuyingPowerForOrder(
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HasSufficientBuyingPowerForOrderParameters parameters)
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{
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// if portfolio doesn't have enough buying power:
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// parameters.Insufficient()
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// this model never allows a lack of funds get in the way of buying securities
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return parameters.Sufficient();
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}
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// Let's always return 0 as the maintenance margin so we avoid margin call orders
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public override MaintenanceMargin GetMaintenanceMargin(MaintenanceMarginParameters parameters)
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{
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return new MaintenanceMargin(0);
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}
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}
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/// <summary>
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/// This is used by the regression test system to indicate if the open source Lean repository has the required data to run this algorithm.
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/// </summary>
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public bool CanRunLocally { get; } = true;
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/// <summary>
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/// This is used by the regression test system to indicate which languages this algorithm is written in.
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/// </summary>
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public List<Language> Languages { get; } = new() { Language.CSharp, Language.Python };
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/// <summary>
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/// Data Points count of all timeslices of algorithm
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/// </summary>
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public long DataPoints => 330;
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/// <summary>
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/// Data Points count of the algorithm history
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/// </summary>
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public int AlgorithmHistoryDataPoints => 0;
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/// <summary>
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/// Final status of the algorithm
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/// </summary>
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public AlgorithmStatus AlgorithmStatus => AlgorithmStatus.Completed;
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/// <summary>
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/// This is used by the regression test system to indicate what the expected statistics are from running the algorithm
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/// </summary>
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public Dictionary<string, string> ExpectedStatistics => new Dictionary<string, string>
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{
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{"Total Orders", "1"},
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{"Average Win", "0%"},
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{"Average Loss", "0%"},
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{"Compounding Annual Return", "4775.196%"},
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{"Drawdown", "21.600%"},
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{"Expectancy", "0"},
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{"Start Equity", "100000"},
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{"End Equity", "138618.81"},
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{"Net Profit", "38.619%"},
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{"Sharpe Ratio", "14.322"},
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{"Sortino Ratio", "26.701"},
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{"Probabilistic Sharpe Ratio", "75.655%"},
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{"Loss Rate", "0%"},
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{"Win Rate", "0%"},
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{"Profit-Loss Ratio", "0"},
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{"Alpha", "10.447"},
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{"Beta", "8.754"},
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{"Annual Standard Deviation", "0.95"},
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{"Annual Variance", "0.903"},
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{"Information Ratio", "15.703"},
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{"Tracking Error", "0.844"},
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{"Treynor Ratio", "1.554"},
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{"Total Fees", "$30.00"},
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{"Estimated Strategy Capacity", "$150000000.00"},
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{"Lowest Capacity Asset", "SPY R735QTJ8XC9X"},
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{"Portfolio Turnover", "26.62%"},
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{"Drawdown Recovery", "9"},
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{"OrderListHash", "dae7e349316dce7621bc1f8be86ccd0d"}
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};
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}
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}
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