# QUANTCONNECT.COM - Democratizing Finance, Empowering Individuals. # Lean Algorithmic Trading Engine v2.0. Copyright 2014 QuantConnect Corporation. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from AlgorithmImports import * from keras.models import * from tensorflow import keras from keras import Sequential from keras.layers import Dense, Activation from keras.optimizers import SGD class KerasNeuralNetworkAlgorithm(QCAlgorithm): def initialize(self) -> None: self.set_start_date(2019, 1, 1) # Set Start Date self.set_end_date(2020, 4, 1) # Set End Date self.set_cash(100000) # Set Strategy Cash self._model_by_symbol = {} for ticker in ["SPY", "QQQ", "TLT"]: symbol = self.add_equity(ticker).symbol # Read the model saved in the ObjectStore for kvp in self.object_store: key = f'{symbol}_model' if not (key == kvp.key and kvp.value): continue file_path = self.object_store.get_file_path(kvp.key) self._model_by_symbol[symbol] = keras.models.load_model(file_path) self.debug(f'Model for {symbol} sucessfully retrieved. File {file_path}. Size {len(kvp.value)}. Weights {self._model_by_symbol[symbol].get_weights()}') # Look-back period for training set self._lookback = 30 # Train Neural Network every monday self.train( self.date_rules.every(DayOfWeek.MONDAY), self.time_rules.after_market_open("SPY"), self.neural_network_training) # Place trades on Monday, 30 minutes after the market is open self.schedule.on( self.date_rules.every_day("SPY"), self.time_rules.after_market_open("SPY", 30), self.trade) def on_end_of_algorithm(self) -> None: ''' Save the data and the mode using the ObjectStore ''' for symbol, model in self._model_by_symbol.items(): key = f'{symbol}_model.keras' file = self.object_store.get_file_path(key) model.save(file) self.object_store.save(key) self.debug(f'Model for {symbol} sucessfully saved in the ObjectStore') def neural_network_training(self) -> None: '''Train the Neural Network and save the model in the ObjectStore''' symbols = self.securities.keys() # Daily historical data is used to train the machine learning model history = self.history(symbols, self._lookback + 1, Resolution.DAILY) history = history.open.unstack(0) for symbol in symbols: if symbol not in history: continue predictor = history[symbol][:-1] predictand = history[symbol][1:] # build a neural network from the 1st layer to the last layer model = Sequential() model.add(Dense(10, input_dim = 1)) model.add(Activation('relu')) model.add(Dense(1)) sgd = SGD(learning_rate = 0.01) # learning rate = 0.01 # choose loss function and optimizing method model.compile(loss='mse', optimizer=sgd) # pick an iteration number large enough for convergence for step in range(200): # training the model cost = model.train_on_batch(predictor, predictand) self._model_by_symbol[symbol] = model def trade(self) -> None: ''' Predict the price using the trained model and out-of-sample data Enter or exit positions based on relationship of the open price of the current bar and the prices defined by the machine learning model. Liquidate if the open price is below the sell price and buy if the open price is above the buy price ''' target = 1 / len(self.securities) for symbol, model in self._model_by_symbol.items(): if symbol not in self.current_slice.bars: continue # Get the out-of-sample history history = self.history(symbol, self._lookback, Resolution.DAILY) history = history.open.unstack(0)[symbol] # Get the final predicted price prediction = model.predict(history)[0][-1] history_std = np.std(history) holding = self.portfolio[symbol] open_price = self.current_slice.bars[symbol].open # Follow the trend if holding.invested: if open_price < prediction - history_std: self.liquidate(symbol) else: if open_price > prediction + history_std: self.set_holdings(symbol, target)