steffen-illium 4b5c36f6c0 - rearanged experiments.py into single runable files
- Reformated net.self_x functions (sa, st)
- corrected robustness_exp.py
- NO DEBUGGING DONE!!!!!
2021-05-14 17:57:44 +02:00

121 lines
4.5 KiB
Python

import os.path
import pickle
from tqdm import tqdm
from experiments.helpers import check_folder, summary_fixpoint_experiment
from functionalities_test import test_for_fixpoints
from network import Net
from visualization import bar_chart_fixpoints
from visualization import plot_3d_self_application
class SelfApplicationExperiment:
def __init__(self, population_size, log_step_size, net_input_size, net_hidden_size, net_out_size,
net_learning_rate, application_steps, train_nets, directory_name, training_steps
) -> None:
self.population_size = population_size
self.log_step_size = log_step_size
self.net_input_size = net_input_size
self.net_hidden_size = net_hidden_size
self.net_out_size = net_out_size
self.net_learning_rate = net_learning_rate
self.SA_steps = application_steps #
self.train_nets = train_nets
self.ST_steps = training_steps
self.directory_name = directory_name
os.mkdir(self.directory_name)
""" Creating the nets & making the SA steps & (maybe) also training the networks. """
self.nets = []
# Create population:
self.populate_environment()
self.fixpoint_counters = {
"identity_func": 0,
"divergent": 0,
"fix_zero": 0,
"fix_weak": 0,
"fix_sec": 0,
"other_func": 0
}
self.weights_evolution_3d_experiment()
self.count_fixpoints()
def populate_environment(self):
loop_population_size = tqdm(range(self.population_size))
for i in loop_population_size:
loop_population_size.set_description("Populating SA experiment %s" % i)
net_name = f"SA_net_{str(i)}"
net = Net(self.net_input_size, self.net_hidden_size, self.net_out_size, net_name
)
for _ in range(self.SA_steps):
input_data = net.input_weight_matrix()
target_data = net.create_target_weights(input_data)
if self.train_nets == "before_SA":
net.self_train(1, self.log_step_size, self.net_learning_rate)
net.self_application(self.SA_steps, self.log_step_size)
elif self.train_nets == "after_SA":
net.self_application(self.SA_steps, self.log_step_size)
net.self_train(1, self.log_step_size, self.net_learning_rate)
else:
net.self_application(self.SA_steps, self.log_step_size)
self.nets.append(net)
def weights_evolution_3d_experiment(self):
exp_name = f"SA_{str(len(self.nets))}_nets_3d_weights_PCA"
plot_3d_self_application(self.nets, exp_name, self.directory_name, self.log_step_size)
def count_fixpoints(self):
test_for_fixpoints(self.fixpoint_counters, self.nets)
exp_details = f"{self.SA_steps} SA steps"
bar_chart_fixpoints(self.fixpoint_counters, self.population_size, self.directory_name, self.net_learning_rate,
exp_details)
def run_SA_experiment(population_size, batch_size, net_input_size, net_hidden_size, net_out_size,
net_learning_rate, runs, run_name, name_hash, application_steps, train_nets, training_steps):
experiments = {}
check_folder("self_application")
# Running the experiments
for i in range(runs):
directory_name = f"experiments/self_application/{run_name}_run_{i}_{str(population_size)}_nets_{application_steps}_SA_{str(name_hash)}"
SA_experiment = SelfApplicationExperiment(
population_size,
batch_size,
net_input_size,
net_hidden_size,
net_out_size,
net_learning_rate,
application_steps,
train_nets,
directory_name,
training_steps
)
pickle.dump(SA_experiment, open(f"{directory_name}/full_experiment_pickle.p", "wb"))
experiments[i] = SA_experiment
# Building a summary of all the runs
directory_name = f"experiments/self_application/summary_{run_name}_{runs}_runs_{str(population_size)}_nets_{application_steps}_SA_{str(name_hash)}"
os.mkdir(directory_name)
summary_pre_title = "SA"
summary_fixpoint_experiment(runs, population_size, application_steps, experiments, net_learning_rate,
directory_name,
summary_pre_title)
if __name__ == '__main__':
raise NotImplementedError('Test this here!!!')