I can't figure out why this code isn't working. When I make rewards into a list, I get an error telling me that the dimensions are incorrect. I'm not sure what to do.
I am implementing a reinforcement deep q network. r is a numpy 2d array giving 1 divided by the distance between stops. This is so that closer stops have a higher reward.
No matter what I do, I can't get rewards to run smoothly. I am new to Tensorflow, so it may just be a result of my inexperience with things like Tensorflow placeholders and feed dicts.
Thanks in advance for your help.
observations = tf.placeholder('float32', shape=[None, num_stops])
game states : r[stop], r[next_stop], r[third_stop]
actions = tf.placeholder('int32',shape=[None])
rewards = tf.placeholder('float32',shape=[None]) # +1, -1 with discounts
Y = tf.layers.dense(observations, 200, activation=tf.nn.relu)
Ylogits = tf.layers.dense(Y, num_stops)
sample_op = tf.random.categorical(logits=Ylogits, num_samples=1)
cross_entropies = tf.losses.softmax_cross_entropy(onehot_labels=tf.one_hot (actions,num_stops), logits=Ylogits)
loss = tf.reduce_sum(rewards * cross_entropies)
optimizer = tf.train.RMSPropOptimizer(learning_rate=0.001, decay=.99)
train_op = optimizer.minimize(loss)
visited_stops = []
steps = 0
with tf.Session() as sess:
sess.run(tf.global_variables_initializer())
# Start at a random stop, initialize done to false
current_stop = random.randint(0, len(r) - 1)
done = False
# reset everything
while not done: # play a game in x steps
observations_list = []
actions_list = []
rewards_list = []
# List all stops and their scores
observation = r[current_stop]
# Add the stop to a list of non-visited stops if it isn't
# already there
if current_stop not in visited_stops:
visited_stops.append(current_stop)
# decide where to go
action = sess.run(sample_op, feed_dict={observations: [observation]})
# play it, output next state, reward if we got a point, and whether the game is over
#game_state, reward, done, info = pong_sim.step(action)
new_stop = int(action)
reward = r[current_stop][action]
if len(visited_stops) == num_stops:
done = True
if steps >= BATCH_SIZE:
done = True
steps += 1
observations_list.append(observation)
actions_list.append(action)
rewards.append(reward)
#rewards_list = np.reshape(rewards, [-1, 25])
current_stop = new_stop
#processed_rewards = discount_rewards(rewards, args.gamma)
#processed_rewards = normalize_rewards(rewards, args.gamma)
print(rewards)
sess.run(train_op, feed_dict={observations: [observations_list],
actions: [actions_list],
rewards: [rewards_list]})
the row rewards.append(reward) causes the error, an it is because your rewards variable is a Tensor, as you defined it in rewards = tf.placeholder('float32',shape=[None]) and you can not append values to tensor like that.
You probably wanted to call rewards_list.append(reward).
Also, you are initializing variables
observations_list = []
actions_list = []
rewards_list = []
inside the loop, so in each iteration, ols values will be overwritten by empty list. You probably want to have those 3 lines before the while not done: line.
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