Esempio n. 1
0
def get_compiled(loss_type, net, optimizer, min_margin):
    if loss_type == 'hkr':
        loss_fn = HKR_loss(alpha=config.alpha, min_margin=min_margin
                           )  # HKR stands for the hinge regularized KR loss
        metrics = [
            KR_loss(),  # shows the KR term of the loss
            hinge_margin_loss(
                min_margin=min_margin),  # shows the hinge term of the loss
            HKR_binary_accuracy  # shows the classification accuracy
        ]
    elif loss_type == 'hinge':
        loss_fn = hinge_margin_loss(min_margin=min_margin)
        metrics = [
            Histogram(1),  # shows the KR term of the loss
            hinge_margin_loss(
                min_margin=min_margin),  # shows the hinge term of the loss
            HKR_binary_accuracy  # shows the classification accuracy
        ]
    elif loss_type == 'bce':
        loss_fn = tf.keras.losses.BinaryCrossentropy(from_logits=True)
        metrics = [LogitBinaryAccuracy()]
    elif loss_type == 'multihkr':
        margins = tf.constant([1.] * output_shape) * min_margin
        loss_fn = MultiClassHKR(alpha=config.alpha, margins=margins)
        metrics = ['accuracy']
    elif loss_type == 'multice':
        temperatures = tf.constant([1.] * output_shape) * config.max_T
        loss_fn = CrossEntropyT(temperatures=temperatures)
        metrics = ['accuracy']
    elif loss_type == 'multiminhkr':
        margins = tf.constant([1.] * output_shape) * min_margin
        loss_fn = MinMarginHKR(alpha=config.alpha,
                               margins=margins,
                               num_batchs=math.ceil(x_train.shape[0] /
                                                    config.batch_size),
                               perc=config.target_accuracy * 100)
        metrics = ['accuracy']
        if config.alpha == 'adaptive':
            metrics.append(MarginWatcher(loss_fn, use_wandb))
    elif loss_type == 'multitopkhkr':
        margins = tf.constant([1.] * output_shape) * min_margin
        loss_fn = TopKMarginHKR(alpha=config.alpha,
                                margins=margins,
                                top_k=int(output_shape**0.5))
        metrics = ['accuracy']
    if 'armijo' in config.optimizer:
        metrics.append(ArmijoMetric(net.armijo))
    net.compile(loss=loss_fn,
                metrics=metrics,
                optimizer=optimizer,
                run_eagerly=eager)
    net.eager_loss = loss_fn
    return net, loss_fn
Esempio n. 2
0
log.info("Saving test data to {}".format(filename_test))
with h5py.File(filename_test, 'w') as hf:
    for var in column_names:
        hf.create_dataset( f'{var}', data=np.array(data_test[var]), chunks=True, maxshape= (None,), compression='lzf')

#============================================================================
# Plot reweighted data
#============================================================================
weights_train = [weight_trainEst10, weight_trainEst20, weight_trainEst40]
weights_train_names = ["weight_trainEst10", "weight_trainEst20", "weight_trainEst40"]

### Training data
for w, wn in zip(weights_train, weights_train_names):
    fig, ax = plt.subplots(2,2,figsize=(15,10))
    ax = ax.flatten()
    fig, ax[0] = Plot(Histogram(data_train['pho_eta'][trainMask], data_train["label"][trainMask], w, 120, -4, 4), fig, ax[0], r"$\eta$", includeN = True)
    ax[0].set_yscale('log')
    fig, ax[1] = Plot(Histogram(data_train['pho_et'][trainMask], data_train["label"][trainMask], w, 90, 0, 50), fig, ax[1], r"$E_T$", includeN = False)
    ax[1].set_yscale('log')
    fig, ax[2] = Plot(Histogram(data_train['correctedScaledActualMu'][trainMask], data_train["label"][trainMask], w, 90, 0, 90), fig, ax[2], r"$\langle\mu\rangle$", includeN = False)
    ax[2].set_yscale('log')

    counts_weight, edges_weight = np.histogram(w, bins=120, range=(0, 40))
    ax[3].step(x=edges_weight, y=np.append(counts_weight, 0), where="post", color = "k");
    ax[3].set_yscale('log', nonposy='clip')
    ax[3].set(xlabel = wn, ylabel = "Events per bin")
    fig.savefig(args.outdir + "train_reweighted" + wn + ".pdf")


### Validation data
weights_valid = [weight_validEst10, weight_validEst20, weight_validEst40]
Esempio n. 3
0
                          maxshape=(None, ),
                          compression='lzf')

#============================================================================
# Plot reweighted data
#============================================================================
weights_train = [weight_trainEst10, weight_trainEst20, weight_trainEst40]
weights_train_names = [
    "weight_trainEst10", "weight_trainEst20", "weight_trainEst40"
]

### Training data
for w, wn in zip(weights_train, weights_train_names):
    fig, ax = plt.subplots(2, 2, figsize=(15, 10))
    ax = ax.flatten()
    fig, ax[0] = Plot(Histogram(data_train['muo_eta'][trainMask],
                                data_train["label"][trainMask], w, 120, -4, 4),
                      fig,
                      ax[0],
                      r"$\eta$",
                      includeN=True)
    fig, ax[1] = Plot(Histogram(data_train['muo_pt'][trainMask],
                                data_train["label"][trainMask], w, 120, -5,
                                120000),
                      fig,
                      ax[1],
                      "pt",
                      includeN=False)
    fig, ax[2] = Plot(Histogram(
        data_train['correctedScaledAverageMu'][trainMask],
        data_train["label"][trainMask], w, 80, -2, 80),
                      fig,
Esempio n. 4
0
def train_MetaNetwork():

	print("\n ---- Training the Meta Network ----- \n")

	MODEL_NAME = "meta_grid16_zero_2"
	MODEL_NAME_save = "meta_grid16_zero_2"

	DIAMOND_MODEL_NAME = "diamond_grid16_4"
	ZOMBIE_MODEL_NAME = "zombie_grid16_2"
	EXPLORE_MODEL_NAME = "explore_grid16_2"
	# EXTRA_MODEL_NAME = "extra15_input6_2"

	# MODEL_NAME = "meta15_input6_1M_unfrozen_dojos"
	# DIAMOND_MODEL_NAME = "diamond15_input4_best_unfrozen_at_1M"
	# ZOMBIE_MODEL_NAME = "zombie15_input4_best_unfrozen_at_1M"
	# EXPLORE_MODEL_NAME = "explore15_input4_best_unfrozen_at_1M"

	# MODEL_NAME = "meta15_input6_1M_random_unfrozen_cointoss"
	# DIAMOND_MODEL_NAME = "diamond15_input4_1M_random_unfrozen_cointoss"
	# ZOMBIE_MODEL_NAME = "zombie15_input4_1M_random_unfrozen_cointoss"
	# EXPLORE_MODEL_NAME = "explore15_input4_1M_random_unfrozen_cointoss"k

	FOLDER = "Impossible"
	DOJO_FOLDER = "Impossible"

	MODEL_PATH_SAVE = "./Models/Tensorflow/"+FOLDER+"/"+MODEL_NAME+"/"+MODEL_NAME+".ckpt"

	LOGDIR = "./Logs/"+FOLDER+"/"+MODEL_NAME_save+""

	USE_SAVED_MODEL_FILE = False

	GRID_SIZE = 16
	LOCAL_GRID_SIZE = 15
	MAP_PATH = None

	RANDOMIZE_MAPS = True

	RENDER_TO_SCREEN = False
	# RENDER_TO_SCREEN = True

	env = Environment(wrap = False,
					  grid_size = GRID_SIZE,
					  local_size = LOCAL_GRID_SIZE,
					  rate = 80,
					  max_time = 120,
					  food_count = 0,
					  obstacle_count = 0,
					  lava_count = 0,
					  zombie_count = 0,
					  history = 100,
					  action_space = 5,
					  map_path = MAP_PATH)

	if RENDER_TO_SCREEN:
		env.prerender()

	model = MetaNetwork(local_size=LOCAL_GRID_SIZE, name=MODEL_NAME, path="./Models/Tensorflow/"+FOLDER+"/", load=False,  trainable=True)
 
	diamond_net = Network(local_size=LOCAL_GRID_SIZE, name=DIAMOND_MODEL_NAME, path="./Models/Tensorflow/"+DOJO_FOLDER+"/", load=True, trainable=False)

	zombie_net = Network(local_size=LOCAL_GRID_SIZE, name=ZOMBIE_MODEL_NAME, path="./Models/Tensorflow/"+DOJO_FOLDER+"/", load=True, trainable=False)

	explore_net = Network(local_size=LOCAL_GRID_SIZE, name=EXPLORE_MODEL_NAME, path="./Models/Tensorflow/"+DOJO_FOLDER+"/", load=True, trainable=False)

	# extra_net = Network(local_size=LOCAL_GRID_SIZE, name=EXTRA_MODEL_NAME, path="./Models/Tensorflow/"+DOJO_FOLDER+"/", load=False, trainable=True)

	brain = Brain(epsilon=0.05, action_space=3)

	model.setup(brain)
	diamond_net.setup(brain)
	zombie_net.setup(brain)
	explore_net.setup(brain)
	# extra_net.setup(brain)

	score = tf.placeholder(tf.float32, [])
	avg_t = tf.placeholder(tf.float32, [])
	epsilon = tf.placeholder(tf.float32, [])
	avg_r = tf.placeholder(tf.float32, [])

	tf.summary.scalar('error', tf.squeeze(model.error))
	tf.summary.scalar('score', score)
	tf.summary.scalar('average time', avg_t)
	tf.summary.scalar('epsilon', epsilon)
	tf.summary.scalar('avg reward', avg_r)

	avg_time = 0
	avg_score = 0
	avg_error = 0
	avg_reward = 0
	cumulative_reward = 0

	# Number of episodes
	print_episode = 1000
	total_episodes = 100000

	saver = tf.train.Saver()

	# Initialising all variables (weights and biases)
	init = tf.global_variables_initializer()

	# Adds a summary graph of the error over time
	merged_summary = tf.summary.merge_all()

	# Tensorboard capabilties
	writer = tf.summary.FileWriter(LOGDIR)

	# Histogram
	histogram = Histogram(3, 10, total_episodes)

 	# GPU capabilities
	gpu_options = tf.GPUOptions(per_process_gpu_memory_fraction=0.3)

	# Begin session
	with tf.Session(config=tf.ConfigProto(gpu_options=gpu_options)) as sess:

		if USE_SAVED_MODEL_FILE:
			saver.restore(sess, MODEL_PATH_SAVE)
			print("Model restored.")
		else:
			sess.run(init)

		writer.add_graph(sess.graph)

		start_time = time.time()

		print("")

		for episode in range(total_episodes):

			if RANDOMIZE_MAPS:
				# Make a random map 0: lava, 1: obstacle
				MAP_PATH = "./Maps/Grid{}/impossible_map{}.txt".format(GRID_SIZE, np.random.randint(5))
				env.set_map(MAP_PATH)

			# state, info = env.reset()
			state, info = env.quick_reset()
			done = False

			# brain.linear_epsilon_decay(total_episodes, episode, start=1.0, end=0.05, percentage=0.5)

			# brain.linear_alpha_decay(total_episodes, episode)

			if RENDER_TO_SCREEN:
				env.render()

			while not done:

				# Retrieve the Q values from the NN in vector form
				Dojo_vector = sess.run(model.q_values, feed_dict={model.input: state})

				dojo = brain.choose_action(state, sess, model)
				
				histogram.check_section(episode)
				histogram.add(dojo)

				# dojo = np.random.randint(3)
				# dojo = 0

				# print(dojo)

				if dojo == 0:
					dojo_state = state
					# dojo_state[2]=0
					# dojo_state[3]=0
					# dojo_state = np.delete(dojo_state, 2, 0)# Take out the zombie layer
					# dojo_state = np.delete(dojo_state, 2, 0)# Take out the history layer
					action = brain.choose_dojo(dojo_state, sess, diamond_net, env.number_of_actions(), 0.05)

				elif dojo == 1:
					dojo_state = state
					# dojo_state[1]=0
					# dojo_state[3]=0
					# dojo_state = np.delete(dojo_state, 1, 0)# Take out the diamond layer
					# dojo_state = np.delete(dojo_state, 2, 0)# Take out the history layer
					action = brain.choose_dojo(dojo_state, sess, zombie_net, env.number_of_actions(), 0.05)

				elif dojo == 2:
					dojo_state = state
					# dojo_state[1]=0
					# dojo_state[2]=0
					# dojo_state = np.delete(dojo_state, 1, 0)# Take out the diamond layer
					# dojo_state = np.delete(dojo_state, 1, 0)# Take out the zombie layer
					action = brain.choose_dojo(dojo_state, sess, explore_net, env.number_of_actions(), 0.05)

				# elif dojo == 3:
				# 	dojo_state = state
				# 	action = brain.choose_dojo(dojo_state, sess, extra_net, env.number_of_actions(), 0.05)

				# print(action)

				# Update environment with by performing action
				new_state, reward, done, info = env.step(action)

				# print(new_state)

				brain.store_transition_dojo(state, action, reward, done, new_state, dojo)

				# print(tf.trainable_variables(scope=None))

				# if dojo == 0:
				# 	e, Q_vector = brain.train_3_dojos(diamond_net, sess, dojo)

				# elif dojo == 1:
				# 	e, Q_vector = brain.train_3_dojos(zombie_net, sess, dojo)

				# elif dojo == 2:
				# 	e, Q_vector = brain.train_3_dojos(explore_net, sess, dojo)

				# e, Q_vector = brain.train_3(sess, diamond_net, zombie_net, explore_net)

				# e, Q_vector = brain.train(extra_net, sess)

				if done:
					Dojo_vector[:,dojo] = reward
					# print("Reward:", reward)
				else:
					# Gathering the now current state's action-value vector
					y_prime = sess.run(model.q_values, feed_dict={model.input: new_state})

					# Equation for training
					maxq = sess.run(model.y_prime_max, feed_dict={model.actions: y_prime})

					# RL Equation
					Dojo_vector[:,dojo] = reward + (brain.GAMMA * maxq)

				_, e = sess.run([model.optimizer, model.error], feed_dict={model.input: state, model.actions: Dojo_vector})

				state = new_state

				cumulative_reward += reward

				if RENDER_TO_SCREEN:
					env.render()

				if done:
					avg_time += info["time"]
					avg_score += info["score"]
					avg_error += e
					avg_reward += cumulative_reward 
					cumulative_reward = 0

			if (episode%print_episode == 0 and episode != 0) or (episode == total_episodes-1):
				
				current_time = math.floor(time.time()-start_time)
				print("Ep:", episode,
					"\tavg t: {0:.3f}".format(avg_time/print_episode),
					"\tavg score: {0:.3f}".format(avg_score/print_episode),
					"\tErr {0:.3f}".format(avg_error/print_episode),
					"\tavg_reward {0:.3f}".format(avg_reward/print_episode), # avg cumulative reward
					"\tepsilon {0:.3f}".format(brain.EPSILON),
					end="")
				print_readable_time(current_time)

				# Save the model's weights and biases to .npz file
				model.save(sess, name=MODEL_NAME_save)
				# diamond_net.save(sess, name=DIAMOND_MODEL_NAME+"")
				# zombie_net.save(sess, name=ZOMBIE_MODEL_NAME+"")
				# explore_net.save(sess, name=EXPLORE_MODEL_NAME+"")
				# extra_net.save(sess, name=EXTRA_MODEL_NAME+"")

				# save_path = saver.save(sess, MODEL_PATH_SAVE)

				s = sess.run(merged_summary, feed_dict={model.input: state, model.actions: Dojo_vector, score:avg_score/print_episode, avg_t:avg_time/print_episode, epsilon:brain.EPSILON, avg_r:avg_reward/print_episode})
				writer.add_summary(s, episode)

				avg_time = 0
				avg_score = 0
				avg_error = 0
				avg_reward = 0

		model.save(sess, verbose=True, name=MODEL_NAME_save)
		# diamond_net.save(sess, verbose=True, name=DIAMOND_MODEL_NAME+"")
		# zombie_net.save(sess, verbose=True, name=ZOMBIE_MODEL_NAME+"")
		# explore_net.save(sess, verbose=True, name=EXPLORE_MODEL_NAME+"")
		# extra_net.save(sess, verbose=True, name=EXTRA_MODEL_NAME+"")

		# save_path = saver.save(sess, MODEL_PATH_SAVE)
		# print("Model saved in path: %s" % save_path)

		writer.close()
		histogram.plot()
Esempio n. 5
0
print("TESTING")

import numpy as np

from math import pi
import sys
from utils import custom_epsilon
import matplotlib.pyplot as plt
# import getch
import csv

import my_mission

from utils import print_readable_time, Histogram

histogram = Histogram(3, 4, 1000)

for i in range(1000):
    histogram.add(np.random.randint(3))

histogram.plot()

# print(my_mission.missionXML)

# s = np.array([[[0,0],
#       [0,0]],
#      [[1,1],
#       [1,1]],
#      [[2,2],
#       [2,2]]])
Esempio n. 6
0
                                   linestyle='dashed',
                                   alpha=1,
                                   label="Signal reweighted")

                        ax[i].set(xlim=(edges_sig[0], edges_sig[-1]),
                                  xlabel=xlab,
                                  ylabel=f"Events/{bw:4.2f}")

                        ax[i].legend()

                else:
                    for i, (var, bin, rang, xlab) in enumerate(
                            zip(variables, bins, ranges, xlabel)):

                        fig, ax[i] = Plot(Histogram(
                            data_train[var][mask], data_train["label"][mask],
                            data_train[weightType + "_" + weightName][mask],
                            bin, rang[0], rang[1]),
                                          fig,
                                          ax[i],
                                          xlab,
                                          includeN=True)
                        #fig, ax[1] = Plot(Histogram(data_train['pt'][mask], data_train["label"][mask], data_train[weightType+"_"+weightName][mask], 120, -5, 120), fig, ax[1], "pt", includeN = False)
                        #fig, ax[2] = Plot(Histogram(data_train['invM'][mask], data_train["label"][mask], data_train[weightType+"_"+weightName][mask], 120, 50, 110), fig, ax[2], "invM", includeN = False)
                        #fig, ax[3] = Plot(Histogram(data_train['correctedScaledAverageMu'][mask], data_train["label"][mask], data_train[weightType+"_"+weightName][mask], 80, -2, 80), fig, ax[3], r"$\langle\mu\rangle$", includeN = False)

                counts_weight, edges_weight = np.histogram(
                    data_train[weightType + "_" + weightName][mask],
                    bins=120,
                    range=(0, 40))
                ax[4].step(x=edges_weight,
                           y=np.append(counts_weight, 0),