def get_roll_params():
    """
    Creates environment and sets up the rollout params.
    """
    env = MarketEnv("BAC", 3, is_eval=True, max_positions=10, train_test_split=0.8, max_episode_len=1000000, shares_to_buy=2000)
    max_path_length, ep_length_stop = env.l, env.l
    
    print('\nMAX PATH LENGTH, EP LENGTH STEP: {}, {}\n'.format(max_path_length, ep_length_stop))
    return env, max_path_length, ep_length_stop
Beispiel #2
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os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'
import numpy as np
from env import MarketEnv
# import keras
from keras.models import Sequential
from keras.layers import Dense, Conv2D
from keras.layers import LSTM, Dropout, Activation, Convolution2D, Convolution1D, MaxPooling2D, Flatten, GlobalMaxPooling1D
from keras.optimizers import Adam
from keras.utils import np_utils
from expMetrix import ExperienceReplay
from model import NerualModel
from keras.optimizers import RMSprop
from keras.models import model_from_json

env = MarketEnv("data")
epoch = 1000000
epsilon = 0.5
batch_size = 30

Neural = NerualModel()
model = Neural.getModel()

rms = RMSprop()
model.compile(loss='mse', optimizer=rms)
exp_replay = ExperienceReplay()

for e in range(epoch):
    #loss = 0.
    game_over = False
    input_t = env.reset()
Beispiel #3
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import os
os.environ["CUDA_VISIBLE_DEVICES"]="0,1"
import numpy as np
from env import MarketEnv
from dataformator import DataFormator
env = MarketEnv("data")
import tensorflow as tf
import keras
from keras.utils import np_utils
from keras.models import Model
from keras.models import Sequential
from keras.layers import LSTM
from keras.layers import Dense
from keras.layers import concatenate
from numpy import array
import sys
from keras.optimizers import RMSprop
from keras.layers import Input,Dropout,Conv2D,MaxPooling2D,Flatten
from keras import optimizers
from os import path

print("preparing model")



ls1Ip = Input(shape=(30, 5, 1))
ls11 = Conv2D(64, (1, 1), padding='same', activation='relu')(ls1Ip)
x_drop4 = Dropout(0.5)(ls11)
ls12 = Conv2D(64, (2, 2), padding='same', activation='relu')(x_drop4)
ls13 = MaxPooling2D((3, 3), strides=(1, 1), padding='same')(ls12)
out = Flatten()(ls13)
Beispiel #4
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import os
os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'
import numpy as np
from env import MarketEnv
import keras
from keras.models import Sequential
from keras.layers import Dense, Conv2D
from keras.layers import LSTM, Dropout, Activation, Convolution2D, Convolution1D, MaxPooling2D, Flatten, GlobalMaxPooling1D
from keras.optimizers import Adam
from keras.utils import np_utils

env = MarketEnv("data/20150917.txt")

epoch = 1000000
epsilon = .5

X = np.linspace(-1, 1, 200)
np.random.shuffle(X)
s = (200, 5)
Y = np.ones(s)

X_train, Y_train = X[:160], Y[:160]
model = Sequential()
model.add(Dense(units=5, input_dim=1))
model.add(Activation('relu'))

adam = Adam(lr=1e-4)
model.compile(loss='mse', optimizer='sgd')
#model.compile(optimizer=adam,
#loss='categorical_crossentropy',
#metrics=['accuracy'])
Beispiel #5
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        for f in filenames:
            files.append(f.replace(".csv", ""))
        break
    return files


if __name__ == "__main__":

    s_and_p = [
        'ADI', 'AJG', 'APD', 'CVX', 'DLR', 'DVA', 'ETN', 'HES', 'INTU', 'IT',
        'L', 'MAR', 'MET', 'MMM', 'NOC', 'NSC', 'PLD', 'SPGI', 'TJX', 'TMO'
    ]

    for stock in s_and_p:
        env = MarketEnv(dir_path="./split_data/train/",
                        target_codes=stock,
                        sudden_death_rate=0.3,
                        finalIndex=997)  #1259
        pg = DeepQ(env,
                   gamma=0.80,
                   model_file_name="./model/model_" + stock + ".h5")
        pg.train()

    reward_stock = []
    reward_stock_random = []

    for stock in s_and_p:
        env = MarketEnv(dir_path="./split_data/test/",
                        target_codes=stock,
                        sudden_death_rate=0.3,
                        finalIndex=256)
        test_obj = DeepQ(env,
Beispiel #6
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def main():
    nb_actions = 3
    obs_size = 9
    window_size = 10
    batch_size = 2048
    stock = "BAC"
    episode = 35
    total_spent = 0
    total_sold = 0

    agent = Agent(window_size=window_size,
                  action_size=nb_actions,
                  batch_size=batch_size,
                  gamma=0.95,
                  epsilon=1.0,
                  epsilon_decay=0.99,
                  epsilon_min=0.001,
                  learning_rate=0.001,
                  is_eval=True,
                  stock_name=stock,
                  episode=episode)
    env = MarketEnv(stock,
                    window_size=window_size,
                    state_size=obs_size,
                    account_balance=1000000,
                    is_eval=True,
                    shares_to_buy=100,
                    max_positions=1000,
                    train_test_split=.8)

    state = env.reset()

    for time in range(env.l):
        action = agent.act(state)[0]

        if action < 0:
            choice = 2
        elif action > 0 and action[0] < 1:
            choice = 0
        elif action > 1:
            choice = 1

        next_state, action, reward, done = env.step(action, time)

        agent.remember(state, action, reward, next_state, done)
        state = next_state

    prices = [line[3] for line in env.prices]
    dates = [i for i in range(len(env.prices))]
    plt.plot(dates, prices)

    for line in env.buy:
        plt.plot(line[0], line[1], 'ro', color="g", markersize=2)
        total_spent += line[1]

    for line in env.sell:
        plt.plot(line[0], line[1], "ro", color="r", markersize=2)
        total_sold += line[1]

    percentage_gain = ((env.account_balance - env.starting_balance) /
                       env.starting_balance) * 100

    print("Profitable Trades: " + str(env.profitable_trades))
    print("Unprofitable Trades: " + str(env.unprofitable_trades))
    print("Percentage Gain: " + str(percentage_gain))
    print("Amount Spent: " + str(total_spent))
    print("Amount Sold: " + str(total_sold))

    plt.show()
    plt.savefig("models/{}/{}-{}/{}".format(stock, stock, str(episode), stock))
def main():
    window_size = 10
    batch_size = 2048
    episodes = 10000
    max_episode_len = 39000 * 3  # One Year of trading in minutes
    stock = "BAC"

    args = {
        'tau': .001,
        'gamma': .99,
        'lr_actor': .0001,
        'lr_critic': .001,
        'batch_size': max_episode_len
    }

    env = MarketEnv(stock,
                    buy_position=3,
                    window_size=window_size,
                    account_balance=1000000,
                    shares_to_buy=100,
                    train_test_split=.8,
                    max_episode_len=max_episode_len)
    agent = Agent(args,
                  state_size=env.state_size,
                  window_size=env.window_size,
                  action_size=env.action_size,
                  action_bound=env.action_bound[1],
                  is_eval=False,
                  stock_name=stock)

    episode_ave_max_q = 0
    ep_reward = 0

    for i in range(episodes):
        state = env.reset()

        for time in range(env.l):

            action = agent.act(state)[0]

            if action < 0:
                choice = 2
            elif action > 0 and action[0] < 1:
                choice = 0
            elif action > 1:
                choice = 1

            next_state, reward, done = env.step(choice, time)

            agent.remember(state, action, reward, next_state, done)
            state = next_state

            # if agent.replay_buffer.size() == batch_size:
            #     print("Replaying")
            #     episode_ave_max_q += agent.replay(time, i, episode_ave_max_q)

            ep_reward += reward

            if done or time == env.l:
                episode_ave_max_q += agent.replay(time, i, episode_ave_max_q)
                break

        model_name = "{}-{}".format(stock, str(i))
        path = "models/{}/{}/".format(stock, model_name)

        if i % 5 == 0:
            if not os.path.exists(path):
                os.makedirs(path)

            with open(os.path.join(path, 'LTYP.mif'), 'w'):
                pass
            agent.saver.save(agent.sess, path + model_name, global_step=i)
            summary_str = agent.sess.run(agent.summary_ops,
                                         feed_dict={
                                             agent.summary_vars[0]:
                                             ep_reward,
                                             agent.summary_vars[1]:
                                             episode_ave_max_q
                                         })
            agent.writer.add_summary(summary_str, i)
            agent.writer.flush()

            episode_ave_max_q = 0
            ep_reward = 0

        print('| Reward: {:d} | Episode: {:d} | Qmax: {:.4f}'.format(
            int(ep_reward), i, (episode_ave_max_q)))