def __init__(self, buffer_size):

        self.buffer_size = buffer_size
        self.num_experiences = 0
        #self.buffer = deque()
        conf = {
            'size': 10000,
            'learn_start': 32,
            'partition_num': 32,
            'total_step': 10000,
            'batch_size': 32
        }
        self.replay_memory = rank_based.Experience(conf)
Exemple #2
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def t():
    conf = {
        'size': 50,
        'learn_start': 10,
        'partition_num': 5,
        'total_step': 100,
        'batch_size': 4
    }
    experience = rank_based.Experience(conf)

    # insert to experience
    print('test insert experience')
    for i in range(1, 51):
        # tuple, like(state_t, a, r, state_t_1, t)
        to_insert = (i, 1, 1, i, 1)
        experience.store(to_insert)
    print(experience.priority_queue)
    print(experience._experience[1])
    print(experience._experience[2])
    print('test replace')
    to_insert = (51, 1, 1, 51, 1)
    experience.store(to_insert)
    print(experience.priority_queue)
    print(experience._experience[1])
    print(experience._experience[2])

    # sample
    print('test sample')
    sample, w, e_id = experience.sample(51)
    print(sample)
    print(w)
    print(e_id)

    # update delta to priority
    print('test update delta')
    delta = [v for v in range(1, 5)]
    experience.update_priority(e_id, delta)
    print(experience.priority_queue)
    sample, w, e_id = experience.sample(51)
    print(sample)
    print(w)
    print(e_id)

    # rebalance
    print('test rebalance')
    experience.rebalance()
    print(experience.priority_queue)