Ejemplo n.º 1
0
 def __init__(self):
     super().__init__()
     self.wins = 0
     self.losses = 0
     '''
     Instantiate agent.
     '''
     # Setup RL NFSP agent
     # Set the iterations numbers and how frequently we evaluate/save plot
     evaluate_every = 10000
     evaluate_num = 10000
     episode_num = 100000
     # The intial memory size
     memory_init_size = 1000
     # Train the agent every X steps
     train_every = 64
     # The paths for saving the logs and learning curves
     log_dir = './training/nfsp/'
     # Set a global seed
     set_global_seed(0)
     # Set agent - TODO - determine PPE parameters
     self.agent = NFSPAgent(scope='nfsp',
                            action_num=3,
                            state_shape=54,
                            hidden_layers_sizes=[512, 512],
                            min_buffer_size_to_learn=memory_init_size,
                            q_replay_memory_init_size=memory_init_size,
                            train_every=train_every,
                            q_train_every=train_every,
                            q_mlp_layers=[512, 512],
                            device=torch.device('cpu'))
     # Init a Logger to plot the learning curve
     self.logger = Logger(log_dir)
Ejemplo n.º 2
0
def main():

    parser = createParser()
    namespace = parser.parse_args(sys.argv[1:])

    #random seed
    random_seed = namespace.random_seed
    #names
    env_name = namespace.env_name
    # Set the iterations numbers and how frequently we evaluate/save plot
    evaluate_num = namespace.evaluate_num

    # Make environment
    eval_env = rlcard.make(env_name, config={'seed': random_seed})

    # Set a global seed
    set_global_seed(random_seed)

    # Initialize a global step
    global_step = tf.Variable(0, name='global_step', trainable=False)

    # Set up the agents
    agent0 = getAgent(namespace.agent_type0, eval_env)
    agent1 = getAgent(namespace.agent_type1, eval_env)

    if namespace.load_model0 is not None:
        agent0.load_model(namespace.load_model0)
    if namespace.load_model1 is not None:
        agent1.load_model(namespace.load_model1)

    eval_env.set_agents([agent0, agent1])

    # Evaluate the performance. Play with random agents.
    rewards = tournament(eval_env, evaluate_num)
    print('Average reward for agent0 against agent1: ', rewards[0])
Ejemplo n.º 3
0
def main():
    warnings.simplefilter(action='ignore', category=FutureWarning)

    set_global_seed(0)

    env = rlcard.make('limit-holdem', config={'record_action': True})
    human_agent = HumanAgent(env.action_num)

    dqn_agent = DQNAgent(env.action_num,
                         env.state_shape[0],
                         hidden_neurons=[1024, 512, 1024, 512])

    dqn_agent.load(sys.argv[1])

    env.set_agents([human_agent, dqn_agent])

    play(env)
Ejemplo n.º 4
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def train_leduc():
    # Make environment and enable human mode
    env = rlcard.make('leduc-holdem',
                      config={
                          'seed': 0,
                          'allow_step_back': True
                      })
    eval_env = rlcard.make('leduc-holdem', config={'seed': 0})

    # Set the iterations numbers and how frequently we evaluate the performance and save model
    evaluate_every = 100
    save_plot_every = 1000
    evaluate_num = 10000
    episode_num = 10000

    # The paths for saving the logs and learning curves
    log_dir = './experiments/leduc_holdem_oscfr_result/'

    # Set a global seed
    set_global_seed(0)

    # Initilize CFR Agent
    model_path = 'models/leduc_holdem_oscfr'
    agent = OutcomeSampling_CFR(env, model_path=model_path)
    agent.load()  # If we have saved model, we first load the model

    # Evaluate CFR against pre-trained NFSP
    eval_env.set_agents([agent, models.load('leduc-holdem-nfsp').agents[0]])

    # Init a Logger to plot the learning curve
    logger = Logger(log_dir)

    for episode in range(episode_num):
        agent.train()
        print('\rIteration {}'.format(episode), end='')
        # Evaluate the performance. Play with NFSP agents.
        if episode % evaluate_every == 0:
            agent.save()  # Save model
            logger.log_performance(env.timestep,
                                   tournament(eval_env, evaluate_num)[0])

    # Close files in the logger
    logger.close_files()

    # Plot the learning curve
    logger.plot('OSCFR')
Ejemplo n.º 5
0
def run(path: str, num: int, position: int, opponent: str):
    # Set a global seed
    set_global_seed(123)

    env = make('thousand-schnapsen',
               config={
                   'seed': 0,
                   'force_zero_sum': True
               })
    agents = []
    for _ in range(env.player_num):
        agent = RandomAgent(action_num=env.action_num)
        agents.append(agent)

    graph = tf.Graph()
    sess = tf.Session(graph=graph)

    with graph.as_default():
        agent = DeepCFR(sess,
                        scope=f'deep_cfr{position}',
                        env=env,
                        policy_network_layers=(8 * 24, 4 * 24, 2 * 24, 24),
                        advantage_network_layers=(8 * 24, 4 * 24, 2 * 24, 24))
        if opponent == 'deep_cfr':
            agents[0] = agent
            agents[1] = agent
            agents[2] = agent
        else:
            agents[position] = agent

    with sess.as_default():
        with graph.as_default():
            saver = tf.train.Saver()
            saver.restore(sess, tf.train.latest_checkpoint(path))

    env.set_agents(agents)
    _, wins = tournament(env, num)
    print(wins)
Ejemplo n.º 6
0
def main():
    # Make environment
    env = rlcard.make('leduc-holdem', config={'seed': 0, 'env_num': 4})
    iterations = 1

    # Set a global seed
    set_global_seed(0)

    # Set up agents
    agent = RandomAgent(action_num=env.action_num)
    env.set_agents([agent, agent])

    for it in range(iterations):

        # Generate data from the environment
        trajectories, payoffs = env.run(is_training=False)

        # Print out the trajectories
        print('\nIteration {}'.format(it))
        for ts in trajectories[0]:
            print(
                'State: {}, Action: {}, Reward: {}, Next State: {}, Done: {}'.
                format(ts[0], ts[1], ts[2], ts[3], ts[4]))
Ejemplo n.º 7
0
# Set the iterations numbers and how frequently we evaluate the performance
evaluate_every = 100
evaluate_num = 1000
episode_num = 100000

# The intial memory size
memory_init_size = 1000

# Train the agent every X steps
train_every = 1

# The paths for saving the logs and learning curves
log_dir = './experiments/doudizhu_dqn_result/'

# Set a global seed
set_global_seed(0)

# Mitigation for gpu memory issue
# config = tf.ConfigProto()
# config.gpu_options.allow_growth = True
# config.gpu_options.per_process_gpu_memory_fraction = 0.9
# with tf.Session(config=config) as sess:

with tf.Session() as sess:

    # Initialize a global step
    global_step = tf.Variable(0, name='global_step', trainable=False)

    # Set up the agents
    agent = DQNAgent(sess,
                     scope='dqn',
Ejemplo n.º 8
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eval_env2 = rlcard.make('no-limit-holdem',
                        config={
                            'seed': 43,
                            'game_player_num': 2
                        })
#eval_env3 = rlcard.make('no-limit-holdem', config={'seed': 43, 'game_player_num': 2})
# Set the iterations numbers and how frequently we evaluate the performance

# The intial memory size
memory_init_size = 300

# The paths for saving the logs and learning curves
log_dir = './experiments/nolimit_holdem_nfsp_result/ivvan'

# Set a global seed
set_global_seed(577)

evaluate_every = 512
evaluate_num = 64
episode_num = 20480

# The intial memory size
memory_init_size = 256

# Train the agent every X steps
train_every = 256
agents = []

agents.append(
    NFSPAgent(scope='nfsp' + str(0),
              action_num=env.action_num,
Ejemplo n.º 9
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def main():
    
    parser = createParser()
    namespace = parser.parse_args(sys.argv[1:])
    
    #random seed
    random_seed = namespace.random_seed
    #names
    env_name = namespace.env_name
    env_num = 1
    test_name = namespace.test_name
    dir_name = str(env_name)+'_a2c_'+str(test_name)+str(random_seed)
    # Set the iterations numbers and how frequently we evaluate/save plot
    evaluate_every = namespace.evaluate_every
    evaluate_num = namespace.evaluate_num
    episode_num = namespace.episode_num
    # Train the agent every X steps
    train_every = namespace.train_every
    save_every = namespace.save_every
    
    
    # Make environment
    env_rand = rlcard.make(env_name, config={'seed': random_seed})
    eval_env = rlcard.make(env_name, config={'seed': random_seed})
        
    # The paths for saving the logs and learning curves
    log_dir = './experiments/rl/'+dir_name+'_result'
    
    # Save model
    save_dir = 'models/rl/'+dir_name+'_result'
    
    # Set a global seed
    set_global_seed(random_seed)
    
    # Initialize a global step
    global_step = tf.Variable(0, name='global_step', trainable=False)
    # Set up the agents
    
    agent_rand = RandomAgent(action_num=eval_env.action_num)    
    
    agent_test = A2CLSTMQPGAgent(
                     action_num=eval_env.action_num,
                     state_shape=eval_env.state_shape,
                     
                     discount_factor=0.95,
                
                     critic_lstm_layers=[1,512],
                     critic_mlp_layers=[3,512],
                     critic_activation_func='tanh', 
                     critic_kernel_initializer='glorot_uniform',
                     critic_learning_rate=0.001,
                     critic_bacth_size=128,
                     
                     actor_lstm_layers=[1,512],
                     actor_mlp_layers=[3,512],
                     actor_activation_func='tanh', 
                     actor_kernel_initializer='glorot_uniform', 
                     actor_learning_rate=0.0001,
                     actor_bacth_size=512,
                     
                     entropy_coef=0.5,
                     entropy_decoy=math.pow(0.1/0.5, 1.0/(episode_num//train_every)),
                     
                     max_grad_norm = 1,)  
    
    if namespace.load_model is not None:
        agent_test.load_model(namespace.load_model)
    
    env_rand.set_agents([agent_test, agent_rand])
    
    eval_env.set_agents([agent_test, agent_rand])

    # Init a Logger to plot the learning curve
    logger = Logger(log_dir+'/'+test_name)
    
    envs = [env_rand, 
            ]
    
    env_num = len(envs)
    for episode in range(episode_num // env_num):

        # Generate data from the
        for env in envs:
            trajectories, _ = env.run(is_training=True)

            # Feed transitions into agent memory, and train the agent
            for ts in trajectories[0]:
                agent_test.feed(ts)
            
        if episode % (train_every // env_num) == 0:
            agent_test.train()
        
        if episode % (save_every // env_num) == 0 :
            # Save model
            if not os.path.exists(save_dir+'/'+test_name+str(episode*env_num)):
                os.makedirs(save_dir+'/'+test_name+str(episode*env_num))
            agent_test.save_model(save_dir+'/'+test_name+str(episode*env_num))
            
        # Evaluate the performance. Play with random agents.
        if episode % (evaluate_every // env_num) == 0:
            print('episode: ', episode*env_num)
            logger.log_performance(episode*env_num, tournament(eval_env, evaluate_num)[0])


    # Close files in the logger
    logger.close_files()

    # Plot the learning curve
    logger.plot(dir_name)
         
    # Save model
    if not os.path.exists(save_dir+'/'+test_name+str(episode_num)):
        os.makedirs(save_dir+'/'+test_name+str(episode_num))
    agent_test.save_model(save_dir+'/'+test_name+str(episode_num))
Ejemplo n.º 10
0
def main():
    # Make environment
    env = rlcard.make('blackjack', config={'env_num': 4, 'seed': 0})
    eval_env = rlcard.make('blackjack', config={'env_num': 4, 'seed': 0})

    # Set the iterations numbers and how frequently we evaluate performance
    evaluate_every = 100
    evaluate_num = 10000
    iteration_num = 100000

    # The intial memory size
    memory_init_size = 100

    # Train the agent every X steps
    train_every = 1

    # The paths for saving the logs and learning curves
    log_dir = './experiments/blackjack_dqn_result/'

    # Set a global seed
    set_global_seed(0)

    with tf.compat.v1.Session() as sess:

        # Initialize a global step
        global_step = tf.Variable(0, name='global_step', trainable=False)

        # Set up the agents
        agent = DQNAgent(sess,
                         scope='dqn',
                         action_num=env.action_num,
                         replay_memory_init_size=memory_init_size,
                         train_every=train_every,
                         state_shape=env.state_shape,
                         mlp_layers=[10, 10])
        env.set_agents([agent])
        eval_env.set_agents([agent])

        # Initialize global variables
        sess.run(tf.compat.v1.global_variables_initializer())

        # Initialize a Logger to plot the learning curve
        logger = Logger(log_dir)

        for iteration in range(iteration_num):

            # Generate data from the environment
            trajectories, _ = env.run(is_training=True)

            # Feed transitions into agent memory, and train the agent
            for ts in trajectories[0]:
                agent.feed(ts)

            # Evaluate the performance. Play with random agents.
            if iteration % evaluate_every == 0:
                logger.log_performance(env.timestep,
                                       tournament(eval_env, evaluate_num)[0])

        # Close files in the logger
        logger.close_files()

        # Plot the learning curve
        logger.plot('DQN')

        # Save model
        save_dir = 'models/blackjack_dqn'
        if not os.path.exists(save_dir):
            os.makedirs(save_dir)
        saver = tf.compat.v1.train.Saver()
        saver.save(sess, os.path.join(save_dir, 'model'))
Ejemplo n.º 11
0
def play():
    import tensorflow as tf
    # We have a pretrained model here. Change the path for your model.

    if tf.test.gpu_device_name():
        print('GPU found')
    else:
        print("No GPU found")

    #os.environ['TF_CPP_MIN_LOG_LEVEL']='2'

    # Make environment
    env = rlcard.make('no-limit-holdem',
                      config={
                          'record_action': True,
                          'game_player_num': 2
                      })

    # Set a global seed
    set_global_seed(0)

    evaluate_every = 2048
    evaluate_num = 32
    episode_num = 262144

    # The intial memory size
    memory_init_size = 256

    # Train the agent every X steps
    train_every = 256
    graph = tf.Graph()
    sess = tf.Session(graph=graph)

    with graph.as_default():
        agents = []

        agents.append(
            NFSPAgent(sess,
                      scope='nfsp' + str(0),
                      action_num=env.action_num,
                      state_shape=env.state_shape,
                      hidden_layers_sizes=[512, 512],
                      anticipatory_param=0.1,
                      rl_learning_rate=0.01,
                      sl_learning_rate=0.005,
                      q_epsilon_start=.6,
                      min_buffer_size_to_learn=memory_init_size,
                      q_replay_memory_size=80000,
                      q_replay_memory_init_size=memory_init_size,
                      train_every=train_every + 44,
                      q_train_every=train_every,
                      q_mlp_layers=[512, 512],
                      evaluate_with='best_response'))

        agents.append(
            NFSPAgent(sess,
                      scope='nfsp' + str(1),
                      action_num=env.action_num,
                      state_shape=env.state_shape,
                      hidden_layers_sizes=[512, 512],
                      anticipatory_param=0.1,
                      rl_learning_rate=0.01,
                      sl_learning_rate=0.005,
                      q_epsilon_start=.6,
                      q_replay_memory_size=80000,
                      min_buffer_size_to_learn=memory_init_size,
                      q_replay_memory_init_size=memory_init_size,
                      train_every=train_every + 44,
                      q_train_every=train_every,
                      q_mlp_layers=[512, 512],
                      evaluate_with='best_response'))

    check_point_path = os.path.join(
        'models/nolimit_holdem_nfsp/no_all_in/cp/9/')
    print(
        '-------------------------------------------------------------------------------------'
    )
    print(check_point_path)
    with sess.as_default():
        with graph.as_default():
            saver = tf.train.Saver()
            saver.restore(sess, tf.train.latest_checkpoint(check_point_path))

    human = nolimit_holdem_human_agent.HumanAgent(env.action_num)
    env.set_agents([human, agents[1]])

    while (True):
        print(">> Start a new game")

        trajectories, payoffs = env.run(is_training=False)
        if (len(trajectories[0]) == 0):
            # the bot folded immediately
            continue

        # If the human does not take the final action, we need to
        # print other players action
        final_state = trajectories[0][-1][-2]
        action_record = final_state['action_record']
        state = final_state['raw_obs']
        _action_list = []
        for i in range(1, len(action_record) + 1):
            if action_record[-i][0] == state['current_player']:
                break
            _action_list.insert(0, action_record[-i])
        for pair in _action_list:
            print('>> Player', pair[0], 'chooses', pair[1])

        # Let's take a look at what the agent card is
        print('===============     CFR Agent    ===============')
        print_card(env.get_perfect_information()['hand_cards'][1])

        print('===============     Result     ===============')
        if payoffs[0] > 0:
            print('You win {} chips!'.format(payoffs[0]))
        elif payoffs[0] == 0:
            print('It is a tie.')
        else:
            print('You lose {} chips!'.format(-payoffs[0]))
        print('')

        input("Press any key to continue...")
Ejemplo n.º 12
0
def nfsp():
    import tensorflow as tf
    if tf.test.gpu_device_name():
        print('GPU found')
    else:
        print("No GPU found")

    #os.environ['TF_CPP_MIN_LOG_LEVEL']='2'

    # Make environment
    env = rlcard.make('no-limit-holdem',
                      config={
                          'game_player_num': 2,
                          'seed': 477
                      })
    eval_env = rlcard.make('no-limit-holdem',
                           config={
                               'seed': 12,
                               'game_player_num': 2
                           })
    eval_env2 = rlcard.make('no-limit-holdem',
                            config={
                                'seed': 43,
                                'game_player_num': 2
                            })
    #eval_env3 = rlcard.make('no-limit-holdem', config={'seed': 43, 'game_player_num': 2})
    # Set the iterations numbers and how frequently we evaluate the performance

    # The intial memory size
    memory_init_size = 1000

    # The paths for saving the logs and learning curves
    log_dir = './experiments/nolimit_holdem_nfsp_result/no_all_in'

    # Set a global seed
    set_global_seed(477)

    graph = tf.Graph()
    tf.ConfigProto()
    sess = tf.Session(graph=graph)

    evaluate_every = 2048
    evaluate_num = 32
    episode_num = 24576

    # The intial memory size
    memory_init_size = 256

    # Train the agent every X steps
    train_every = 256
    agents = []
    with graph.as_default():
        """
        def __init__(self,
                 sess,
                 scope,
                 action_num=4,
                 state_shape=None,
                 hidden_layers_sizes=None,
                 reservoir_buffer_capacity=int(1e6),
                 anticipatory_param=0.1,
                 batch_size=256,
                 train_every=1,
                 rl_learning_rate=0.1,
                 sl_learning_rate=0.005,
                 min_buffer_size_to_learn=1000,
                 q_replay_memory_size=30000,
                 q_replay_memory_init_size=1000,
                 q_update_target_estimator_every=1000,
                 q_discount_factor=0.99,
                 q_epsilon_start=0.06,
                 q_epsilon_end=0,
                 q_epsilon_decay_steps=int(1e6),
                 q_batch_size=256,
                 q_train_every=1,
                 q_mlp_layers=None,
                 evaluate_with='average_policy'):
        """

        # Model1v1V3cp10good
        agents.append(
            NFSPAgent(sess,
                      scope='nfsp' + str(0),
                      action_num=env.action_num,
                      state_shape=env.state_shape,
                      hidden_layers_sizes=[512, 512],
                      anticipatory_param=0.1,
                      rl_learning_rate=0.01,
                      sl_learning_rate=0.005,
                      q_epsilon_start=.7,
                      min_buffer_size_to_learn=memory_init_size,
                      q_replay_memory_size=80000,
                      q_replay_memory_init_size=memory_init_size,
                      train_every=train_every + 44,
                      q_train_every=train_every,
                      q_mlp_layers=[512, 512]))

        agents.append(
            NFSPAgent(sess,
                      scope='nfsp' + str(1),
                      action_num=env.action_num,
                      state_shape=env.state_shape,
                      hidden_layers_sizes=[512, 512],
                      anticipatory_param=0.1,
                      rl_learning_rate=0.01,
                      sl_learning_rate=0.005,
                      q_epsilon_start=.7,
                      q_replay_memory_size=80000,
                      min_buffer_size_to_learn=memory_init_size,
                      q_replay_memory_init_size=memory_init_size,
                      train_every=train_every + 44,
                      q_train_every=train_every,
                      q_mlp_layers=[512, 512]))

    # check_point_path = os.path.join('models\\nolimit_holdem_nfsp\\iivan')
    print(
        '-------------------------------------------------------------------------------------'
    )
    # print(check_point_path)

    #todays project :)
    # https://stackoverflow.com/questions/33758669/running-multiple-tensorflow-sessions-concurrently
    with sess.as_default():
        with graph.as_default():
            # saver = tf.train.Saver()
            # saver.restore(sess, tf.train.latest_checkpoint(check_point_path))

            global_step = tf.Variable(0, name='global_step', trainable=False)
            random_agent = RandomAgent(action_num=eval_env2.action_num)

            env.set_agents(agents)
            eval_env.set_agents([agents[0], random_agent])
            eval_env2.set_agents([random_agent, agents[1]])
            # eval_env3.set_agents([agents[1], random_agent])

            # Initialize global variables
            sess.run(tf.global_variables_initializer())

            # Init a Logger to plot the learning curve
            logger = Logger(log_dir)

            for episode in range(episode_num):
                print(episode, end='\r')
                #print('oh')

                # First sample a policy for the episode
                for agent in agents:
                    agent.sample_episode_policy()

                # Generate data from the environment
                trajectories, _ = env.run(is_training=True)
                # Feed transitions into agent memory, and train the agent
                for i in range(env.player_num):
                    for ts in trajectories[i]:
                        agents[i].feed(ts)

                # Evaluate the performance. Play with random agents.
                if episode % evaluate_every == 0:
                    logger.log(
                        '\n\n\n---------------------------------------------------------------\nTournament '
                        + str(episode / evaluate_every))
                    # tournament(eval_env2, 6)
                    # exploitability.exploitability(eval_env, agents[0], 500)

                    res = tournament(env, evaluate_num)
                    logger.log_performance(env.timestep, res[0])
                    res2 = tournament(eval_env, evaluate_num // 3)
                    logger.log_performance(env.timestep, res2[0])
                    res3 = tournament(eval_env2, evaluate_num // 3)
                    logger.log_performance(env.timestep, res3[0])
                    logger.log('' + str(episode_num) + " - " + str(episode) +
                               '\n')
                    logger.log(
                        '\n\n----------------------------------------------------------------'
                    )

                if episode % (evaluate_every) == 0 and not episode == 0:
                    save_dir = 'models/nolimit_holdem_nfsp/no_all_in/cp/' + str(
                        episode // evaluate_every)
                    if not os.path.exists(save_dir):
                        os.makedirs(save_dir)
                    saver = tf.train.Saver()
                    saver.save(sess, os.path.join(save_dir, 'model'))

            logger.log(
                '\n\n\n---------------------------------------------------------------\nTournament '
                + str(episode / evaluate_every))
            res = tournament(eval_env, evaluate_num)
            logger.log_performance(env.timestep, res[0])
            logger.log('' + str(episode_num) + " - " + str(episode))

            # Close files in the logger
            logger.close_files()

            # Plot the learning curve
            logger.plot('NFSP')

            # Save model
            save_dir = 'models/nolimit_holdem_nfsp/no_all_in'
            if not os.path.exists(save_dir):
                os.makedirs(save_dir)
            saver = tf.train.Saver()
            saver.save(sess, os.path.join(save_dir, 'model'))
Ejemplo n.º 13
0
def nfsp():
    import tensorflow as tf
    if tf.test.gpu_device_name():
        print('GPU found')
    else:
        print("No GPU found")

    #os.environ['TF_CPP_MIN_LOG_LEVEL']='2'

    # Make environment
    env = rlcard.make('no-limit-holdem',
                      config={
                          'record_action': False,
                          'game_player_num': 2
                      })
    eval_env = rlcard.make('no-limit-holdem',
                           config={
                               'seed': 12,
                               'game_player_num': 2
                           })
    eval_env2 = rlcard.make('no-limit-holdem',
                            config={
                                'seed': 43,
                                'game_player_num': 2
                            })

    # Set the iterations numbers and how frequently we evaluate the performance

    # The intial memory size
    memory_init_size = 1000

    # The paths for saving the logs and learning curves
    log_dir = './experiments/nolimit_holdem_nfsp_result/1v1MCNFSPv3'

    # Set a global seed
    set_global_seed(0)

    graph = tf.Graph()
    sess = tf.Session(graph=graph)

    evaluate_every = 1000
    evaluate_num = 250
    episode_num = 5000

    # The intial memory size
    memory_init_size = 1500

    # Train the agent every X steps
    train_every = 256
    agents = []
    with graph.as_default():

        # Model1v1V3cp10good
        agents.append(
            NFSPAgent(sess,
                      scope='nfsp' + str(0),
                      action_num=env.action_num,
                      state_shape=env.state_shape,
                      hidden_layers_sizes=[512, 512],
                      anticipatory_param=0.1,
                      rl_learning_rate=.1,
                      min_buffer_size_to_learn=memory_init_size,
                      q_replay_memory_init_size=memory_init_size,
                      train_every=train_every,
                      q_train_every=train_every,
                      q_mlp_layers=[512, 512]))

        agents.append(
            NFSPAgent(sess,
                      scope='nfsp' + str(1),
                      action_num=env.action_num,
                      state_shape=env.state_shape,
                      hidden_layers_sizes=[512, 512],
                      anticipatory_param=0.075,
                      rl_learning_rate=0.075,
                      min_buffer_size_to_learn=memory_init_size,
                      q_replay_memory_init_size=memory_init_size,
                      train_every=train_every // 2,
                      q_train_every=train_every // 2,
                      q_mlp_layers=[512, 512]))

    # check_point_path = os.path.join('models\\nolimit_holdem_nfsp\\1v1MCNFSPv3\\cp\\10')
    print(
        '-------------------------------------------------------------------------------------'
    )
    # print(check_point_path)
    with sess.as_default():
        with graph.as_default():
            saver = tf.train.Saver()
            # saver.restore(sess, tf.train.latest_checkpoint(check_point_path))

            global_step = tf.Variable(0, name='global_step', trainable=False)
            random_agent = RandomAgent(action_num=eval_env2.action_num)

            #easy_agent = nfsp_agents[0]
            print(agents)
            # print(nfsp_agents)
            env.set_agents(agents)
            eval_env.set_agents(agents)
            eval_env2.set_agents([agents[0], random_agent])

            # Initialize global variables
            sess.run(tf.global_variables_initializer())

            # Init a Logger to plot the learning curve
            logger = Logger(log_dir)

            for episode in range(episode_num):

                # First sample a policy for the episode
                for agent in agents:
                    agent.sample_episode_policy()
                table = []
                # Generate data from the environment
                trajectories, _ = env.run(is_training=True)

                # Feed transitions into agent memory, and train the agent
                for i in range(env.player_num):
                    for ts in trajectories[i]:
                        agents[i].feed(ts, table)

                # Evaluate the performance. Play with random agents.
                if episode % evaluate_every == 0:
                    logger.log(
                        '\n\n\n---------------------------------------------------------------\nTournament '
                        + str(episode / evaluate_every))
                    res = tournament(eval_env, evaluate_num)
                    res2 = tournament(eval_env2, evaluate_num // 4)
                    logger.log_performance(env.timestep, res[0])
                    logger.log_performance(env.timestep, res2[0])
                    logger.log('' + str(episode_num) + " - " + str(episode) +
                               '\n')
                    logger.log(
                        '\n\n----------------------------------------------------------------'
                    )

                if episode % (evaluate_every) == 0 and not episode == 0:
                    save_dir = 'models/nolimit_holdem_nfsp/1v1MCNFSPv3/cp/10/good' + str(
                        episode // evaluate_every)
                    if not os.path.exists(save_dir):
                        os.makedirs(save_dir)
                    saver = tf.train.Saver()
                    saver.save(sess, os.path.join(save_dir, 'model'))

            logger.log(
                '\n\n\n---------------------------------------------------------------\nTournament '
                + str(episode / evaluate_every))
            res = tournament(eval_env, evaluate_num)
            logger.log_performance(env.timestep, res[0])
            logger.log('' + str(episode_num) + " - " + str(episode))

            # Close files in the logger
            logger.close_files()

            # Plot the learning curve
            logger.plot('NFSP')

            # Save model
            save_dir = 'models/nolimit_holdem_nfsp/1v1MCNFSPv3/cp/10/good'
            if not os.path.exists(save_dir):
                os.makedirs(save_dir)
            saver = tf.train.Saver()
            saver.save(sess, os.path.join(save_dir, 'model'))
Ejemplo n.º 14
0
def main():
    # Make environment
    env = rlcard.make('no-limit-holdem',
                      config={
                          'seed': 0,
                          'env_num': 16,
                          'game_player_num': 4
                      })
    eval_env = rlcard.make('no-limit-holdem',
                           config={
                               'seed': 0,
                               'env_num': 16
                           })

    # Set the iterations numbers and how frequently we evaluate the performance
    evaluate_every = 100
    evaluate_num = 1000
    episode_num = 200000

    # The intial memory size
    memory_init_size = 1000

    # Train the agent every X steps
    train_every = 1

    _reward_max = -0.8

    # The paths for saving the logs and learning curves
    log_dir = './experiments/nolimit_holdem_dqn_result/'

    # Set a global seed
    set_global_seed(0)

    with tf.Session() as sess:

        # Initialize a global step
        global_step = tf.Variable(0, name='global_step', trainable=False)

        # Set up the agents
        agent = DQNAgent(sess,
                         scope='dqn',
                         action_num=env.action_num,
                         replay_memory_init_size=memory_init_size,
                         train_every=train_every,
                         state_shape=env.state_shape,
                         mlp_layers=[512, 512])

        agent2 = NFSPAgent(sess,
                           scope='nfsp',
                           action_num=env.action_num,
                           state_shape=env.state_shape,
                           hidden_layers_sizes=[512, 512],
                           anticipatory_param=0.1,
                           min_buffer_size_to_learn=memory_init_size,
                           q_replay_memory_init_size=memory_init_size,
                           train_every=64,
                           q_train_every=64,
                           q_mlp_layers=[512, 512])

        # Initialize global variables
        sess.run(tf.global_variables_initializer())

        save_dir = 'models/nolimit_holdem_dqn'
        saver = tf.train.Saver()
        #saver.restore(sess, os.path.join(save_dir, 'model'))

        random_agent = RandomAgent(action_num=eval_env.action_num)
        env.set_agents([agent, agent, agent2, random_agent])
        eval_env.set_agents([agent, agent2])

        # Init a Logger to plot the learning curve
        logger = Logger(log_dir)

        for episode in range(episode_num):
            agent2.sample_episode_policy()
            # Generate data from the environment
            trajectories, _ = env.run(is_training=True)

            # Feed transitions into agent memory, and train the agent
            for ts in trajectories[0]:
                agent.feed(ts)

            for ts in trajectories[2]:
                agent2.feed(ts)

            # Evaluate the performance. Play with random agents.
            if episode % evaluate_every == 0:
                _reward = tournament(eval_env, evaluate_num)[0]
                logger.log_performance(episode, _reward)
                if _reward > _reward_max:
                    if not os.path.exists(save_dir):
                        os.makedirs(save_dir)
                    saver.save(sess, os.path.join(save_dir, 'model'))
                    _reward_max = _reward

        # Close files in the logger
        logger.close_files()

        if not os.path.exists(save_dir):
            os.makedirs(save_dir)
        saver.save(sess, os.path.join(save_dir, 'model_final'))
Ejemplo n.º 15
0
def main():
    # Make environment
    env = rlcard.make('leduc-holdem', config={'seed': 0, 'env_num': 4})
    eval_env = rlcard.make('leduc-holdem', config={'seed': 0, 'env_num': 4})

    # Set the iterations numbers and how frequently we evaluate the performance
    evaluate_every = 100
    evaluate_num = 10000
    episode_num = 800000

    # The intial memory size
    memory_init_size = 1000

    # Train the agent every X steps
    train_every = 1

    _reward_max = -0.5

    # The paths for saving the logs and learning curves
    log_dir = './experiments/leduc_holdem_dqn_result/'

    # Set a global seed
    set_global_seed(0)

    with tf.Session() as sess:

        # Initialize a global step
        global_step = tf.Variable(0, name='global_step', trainable=False)

        # Set up the agents
        agent = DQNAgent(sess,
                         scope='dqn',
                         action_num=env.action_num,
                         replay_memory_init_size=memory_init_size,
                         train_every=train_every,
                         state_shape=env.state_shape,
                         mlp_layers=[128, 128])
        # random_agent = RandomAgent(action_num=eval_env.action_num)
        cfr_agent = models.load('leduc-holdem-cfr').agents[0]
        env.set_agents([agent, agent])
        eval_env.set_agents([agent, cfr_agent])

        # Initialize global variables
        sess.run(tf.global_variables_initializer())

        # Init a Logger to plot the learning curve
        logger = Logger(log_dir)

        saver = tf.train.Saver()
        save_dir = 'models/leduc_holdem_dqn'
        saver.restore(sess, os.path.join(save_dir, 'model'))

        for episode in range(episode_num):

            # Generate data from the environment
            trajectories, _ = env.run(is_training=True)

            # Feed transitions into agent memory, and train the agent
            for ts in trajectories[0]:
                agent.feed(ts)

            # Evaluate the performance. Play with random agents.
            if episode % evaluate_every == 0:
                _reward = tournament(eval_env, evaluate_num)[0]
                logger.log_performance(episode, _reward)
                if _reward > _reward_max:
                    # Save model
                    if not os.path.exists(save_dir):
                        os.makedirs(save_dir)
                    saver.save(sess, os.path.join(save_dir, 'model'))
                    _reward_max = _reward

        # Close files in the logger
        logger.close_files()

        # Plot the learning curve
        logger.plot('DQN')
Ejemplo n.º 16
0
def train_uno():
    # Make environment
    env = rlcard.make("uno", config={"seed": 0})
    eval_env = rlcard.make("uno", config={"seed": 0})

    # Set the iterations numbers and how frequently we evaluate the performance
    evaluate_every = 100
    evaluate_num = 1000
    episode_num = 3000

    # The intial memory size
    memory_init_size = 1000

    # Train the agent every X steps
    train_every = 100

    # The paths for saving the logs and learning curves
    log_dir = "./experiments/uno_results_dqn/"

    # Set a global seed
    set_global_seed(0)

    params = {
        "scope": "DQN-Agent",
        "num_actions": env.action_num,
        "replay_memory_size": memory_init_size,
        "num_states": env.state_shape,
        "discount_factor": 0.99,
        "epsilon_start": 1.0,
        "epsilon_end": 0.1,
        "epsilon_decay_steps": 20000,
        "batch_size": 32,
        "train_every": 1,
        "mlp_layers": [512, 512],
        "lr": 0.0005,
    }

    agent_conf = DQN_conf(**params)
    agent = DQN_agent(agent_conf)

    random_agent = RandomAgent(action_num=eval_env.action_num)
    env.set_agents([agent, random_agent])
    eval_env.set_agents([agent, random_agent])

    logger = Logger(log_dir)

    for episode in range(episode_num):

        # Generate data from the environment
        trajectories, _ = env.run(is_training=True)

        # Feed transitions into agent memory, and train the agent
        for ts in trajectories[0]:
            agent.feed(ts)

        # Evaluate the performance. Play with random agents.
        if episode % evaluate_every == 0:
            logger.log_performance(env.timestep,
                                   tournament(eval_env, evaluate_num)[0])

    # Close files in the logger
    logger.close_files()

    # Plot the learning curve
    logger.plot("DQN UNO")

    # Save model
    save_dir = "models/uno_dqn_pytorch"
    if not os.path.exists(save_dir):
        os.makedirs(save_dir)
    state_dict = agent.get_state_dict()
    print(state_dict.keys())
    torch.save(state_dict, os.path.join(save_dir, "model.pth"))