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test_JRC_multi.py
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from __future__ import division
from JRCwithAOI_multi import AV_Environment
from config_jrc_aoi_multi import state_space_size
import numpy as np
import numpy.random as random
import random as python_random
import time
import os
import argparse
import logger
import inspect
"""
Code for the paper "Learning to Schedule Joint Radar-Communication with Deep
Multi-Agent Reinforcement Learning", IEEE Transactions on Vehicular Technology
Author: Joash Lee
This program runs agents in the Joint Radar-Communication (JRC) and Age of Information (AoI) Markov
Game in the file 'JRCwithAOI_multi.py' using the binary exponential backoff (BEB) strategy.
"""
def pathlength(path):
return len(path["reward"])
def setup_logger(logdir, locals_):
# Configure output directory for logging
logger.configure_output_dir(logdir)
# Log experimental parameters
args = inspect.getargspec(test)[0]
params = {k: locals_[k] if k in locals_ else None for k in args}
logger.save_params(params)
def alternative_switch_action(t, num_actions):
"""
Alternates between communication '0' and a choice of communications actions.
Cycles between the communication actions
Parameters
----------
t : time step
num_actions : Tnumber of communication actions available
Returns
-------
action num
"""
if t % 2 == 1:
return 0
else:
r = t % (num_actions*2)
return int(r/2 + 1)
def alt_switch_action5(t, comm_action):
"""
Alternates between communication '0' and communicating packets with urgency level 'comm_action'.
Parameters
----------
t : time step
num_actions : Tnumber of communication actions available
Returns
-------
action num
"""
if t % 2 == 1:
return 0
else:
return comm_action
class Agent(object):
def __init__(self, policy_config, sample_trajectory_args, env_args):
self.num_users = env_args['num_users']
self.mode = policy_config['mode']
self.ac_dim = policy_config['ac_dim']
self.CW_min = policy_config['CW'][0]
self.CW_max = policy_config['CW'][1]
self.CW = np.ones((self.num_users,)) * self.CW_min
self.counter = np.zeros((self.num_users,))
self.max_path_length = sample_trajectory_args['max_path_length']
self.min_timesteps_per_batch = sample_trajectory_args['min_timesteps_per_batch']
self.timesteps_this_batch = 0
self.counter = np.random.randint(self.CW, size=self.num_users)
def act(self, ob):
# if counter is zero select actions
actions = (self.counter==0) * np.random.randint(self.ac_dim)
action_reqs = actions
priorities = np.empty((0),dtype=int)
for n in range(self.num_users):
priorities = np.concatenate((priorities, ob[str(n+1)][0,state_space_size['data_size']*2].reshape(1)))
if np.sum(actions>0) > 1:
if np.sum(priorities * (actions>0)) == 1:
actions = (priorities == 1) * action_reqs # Choose agent that transmits based on priority
else:
idxs = np.argwhere(actions>0).reshape(-1)
idx = np.random.randint(len(idxs))
action = actions[idx]
actions = np.zeros_like(actions)
actions[idx] = action
unsuccessful_ac_reqs = (actions==0) * (action_reqs!=0) # agents that act but unsuccessful
# Halve CW for successful transmission, double for unsuccessful transmission
self.CW = np.clip(((actions>0) * self.CW / 2) + ((actions==0) * self.CW), 2, self.CW_max)
self.CW = np.clip((unsuccessful_ac_reqs * self.CW * 2) + (unsuccessful_ac_reqs==0 * self.CW), 2, self.CW_max)
# decrement counter
self.counter = np.clip(self.counter - 1, a_min=0, a_max=self.CW_max)
# reset counter for agents that attempted to take action
self.counter = ((action_reqs>0) * np.random.randint(self.CW, size=self.num_users)) + ((action_reqs==0) * self.counter)
ac = {}
for n in range(self.num_users):
ac[str(n+1)] = actions[n]
return ac
def sample_trajectories(self, env):
# Collect paths until we have enough timesteps
self.timesteps_this_batch = 0
paths = []
while True:
path = self.sample_trajectory(env)
paths.append(path)
self.timesteps_this_batch += pathlength(path['1'])
if self.timesteps_this_batch >= self.min_timesteps_per_batch:
break
return paths, self.timesteps_this_batch
def sample_trajectory(self, env):
ob = env.reset() # returns ob['agent_no'] =
obs, acs, log_probs, rewards, next_obs, next_acs, hiddens, entropys = {}, {}, {}, {}, {}, {}, {}, {}
terminals = []
for i in range(self.num_users):
obs[str(i+1)], acs[str(i+1)], log_probs[str(i+1)], rewards[str(i+1)], next_obs[str(i+1)], next_acs[str(i+1)], hiddens[str(i+1)], entropys[str(i+1)] = \
[], [], [], [], [], [], [], []
steps = 0
for i in range(self.num_users):
if self.mode == 'unif_rand':
acs[str(i+1)] = np.array(np.random.randint(env.action_space.n))
elif self.mode == 'urg5':
acs[str(i+1)] = alt_switch_action5(steps, 5)
if self.mode == 'csma-ca':
acs = self.act(ob)
while True:
ob, rew, done, _ = env.step(acs)
for i in range(self.num_users):
rewards[str(i+1)].append(rew[str(i+1)]) # most recent reward appended to END of list
if self.mode == 'unif_rand':
acs[str(i+1)] = np.array(np.random.randint(env.action_space.n))
elif self.mode == 'urg5':
acs[str(i+1)] = alt_switch_action5(steps, 5)
if self.mode == 'csma-ca':
acs = self.act(ob)
steps += 1
if done or steps >= self.max_path_length:
terminals.append(1)
break
else:
terminals.append(0)
path = {}
for i in range(self.num_users):
path[str(i+1)] = {"reward" : np.array(rewards[str(i+1)], dtype=np.float32), # (steps)
}
path[str(i+1)]["action"] = np.array(acs[str(i+1)], dtype=np.float32)
path["terminal"] = np.array(terminals, dtype=np.float32)
# Log additional statistics for user #1
path['nb_unexpected_ev'] = (env.episode_observation['unexpected_ev_counter'])
path['wrong_mode_actions'] = (env.episode_observation['wrong_mode_actions'])
path['throughput'] = (env.episode_observation['throughput'] / 400)
path['data_counter'] = (env.episode_observation['data_counter'])
path['urgency_counter'] = (env.episode_observation['urgency_counter'])
path['peak_age_counter'] = (env.episode_observation['peak_age_counter'])
path['comm_counter'] = (env.episode_observation['comm_counter'])
path['radar_counter'] = (env.episode_observation['radar_counter'])
path['radar_counter'] = (env.episode_observation['radar_counter'])
path['comm_req_counter'] = (env.episode_observation['comm_req_counter'])
path['radar_req_counter'] = (env.episode_observation['radar_req_counter'])
path['good_ch_comm'] = (env.episode_observation['good_ch_comm'])
path['r_age'] = (env.episode_observation['r_class_age'])
path['r_radar'] = (env.episode_observation['r_radar'])
path['r_overflow'] = (env.episode_observation['r_overflow'])
return path
def test(
exp_name,
env_name,
env_config,
n_iter,
min_timesteps_per_batch,
max_path_length,
seed,
mode,
CW,
logdir,
):
start = time.time()
setup_logger(logdir, locals()) # setup logger for results
env = AV_Environment(env_config)
env.seed(seed)
# Maximum length for episodes
max_path_length = max_path_length or env.spec.max_episode_steps
policy_config = {'mode': args.mode,
'CW': CW,
'ac_dim': env.action_space.n,
}
env_args = {'num_users': env_config['num_users']}
sample_trajectory_args = {
'max_path_length': max_path_length,
'min_timesteps_per_batch': min_timesteps_per_batch,
}
agent = Agent(policy_config, sample_trajectory_args, env_args)
total_timesteps = 0
for itr in range(n_iter):
paths, timesteps_this_batch = agent.sample_trajectories(env)
total_timesteps += timesteps_this_batch
# Build arrays for observation, action for the policy gradient update by concatenating
# across paths
ob_no, ac_na, re_n, log_prob_na, next_ob_no, next_ac_na, h_ns1, entropy = {}, {}, {}, {}, {}, {}, {}, {}
returns = np.zeros((args.num_users,len(paths)))
for i in range(args.num_users):
re_n[str(i+1)] = np.concatenate([path[str(i+1)]["reward"] for path in paths]) # (batch_size, num_users)
returns[i,:] = [path[str(i+1)]["reward"].sum(dtype=np.float32) for path in paths] # (num_users, num episodes in batch)
assert re_n[str(i+1)].shape == (timesteps_this_batch,)
assert returns[i,:].shape == (timesteps_this_batch/400,)
terminal_n = np.concatenate([path["terminal"] for path in paths]) # (batch_size,)
nb_unexpected_ev = ([path["nb_unexpected_ev"] for path in paths])
wrong_mode_actions = ([path["wrong_mode_actions"] for path in paths]) # (batch,)
throughput = ([path["throughput"] for path in paths])
data_counter = ([path["data_counter"] for path in paths])
urgency_counter = ([path["urgency_counter"] for path in paths])
peak_age_counter = ([path["peak_age_counter"] for path in paths])
comm_counter = ([path["comm_counter"] for path in paths])
radar_counter = ([path["radar_counter"] for path in paths])
comm_req_counter = ([path["comm_req_counter"] for path in paths])
radar_req_counter = ([path["radar_req_counter"] for path in paths])
good_ch_comm = ([path["good_ch_comm"] for path in paths])
r_age = ([path["r_age"] for path in paths])
r_radar = ([path["r_radar"] for path in paths])
r_overflow = ([path["r_overflow"] for path in paths])
logger.log_tabular("Time", time.time() - start)
logger.log_tabular("Iteration", itr)
logger.log_tabular("Average Reward", np.mean(returns)) # per agent per episode
logger.log_tabular("StdReward", np.std(returns))
logger.log_tabular("MaxReward", np.max(returns))
logger.log_tabular("MinReward", np.min(returns))
logger.log_tabular("nb_unexpected_ev", np.mean(nb_unexpected_ev))
logger.log_tabular("wrong_mode_actions", np.mean(wrong_mode_actions))
logger.log_tabular("comm action %", np.mean(comm_counter)/400)
logger.log_tabular("radar action %", np.mean(radar_counter)/400)
logger.log_tabular("no-op %", (400 - np.mean(comm_counter) - np.mean(radar_counter)) / 400)
logger.log_tabular("comm action req %", np.mean(comm_req_counter)/400)
logger.log_tabular("radar action req %", np.mean(radar_req_counter)/400)
logger.log_tabular("no-op req %", (400 - np.mean(comm_req_counter) - np.mean(radar_req_counter)) / 400)
logger.log_tabular("throughput", np.mean(throughput))
logger.log_tabular("r_age", np.mean(r_age))
logger.log_tabular("r_radar", np.mean(r_radar))
logger.log_tabular("r_overflow", np.mean(r_overflow))
for i in range(env_config['num_users']):
logger.log_tabular("Reward"+str(i+1), np.mean(returns, axis=1)[i])
logger.log_tabular("StdReward"+str(i+1), np.std(returns, axis=1)[i])
logger.log_tabular("MaxReward"+str(i+1), np.max(returns, axis=1)[i])
logger.log_tabular("MinReward"+str(i+1), np.min(returns, axis=1)[i])
logger.log_tabular("TimestepsThisBatch", timesteps_this_batch)
logger.log_tabular("TimestepsSoFar", total_timesteps)
logger.dump_tabular(step=itr)
parser = argparse.ArgumentParser()
parser.add_argument('env_name', type=str, default='AV_JRC_AoI-v3d')
parser.add_argument('--num_users', type=int)
parser.add_argument('--num_agents', type=int)
parser.add_argument('--ep_len', '-ep', type=float, default=-1.)
parser.add_argument('--obj', choices=['peak','avg'], default='avg')
parser.add_argument('--w_radar', type=int, nargs='+', default=[0,10,1])
parser.add_argument('--w_ovf', type=float, default=1)
parser.add_argument('--w_age', type=float, default=None)
parser.add_argument('--phi', type=float, default=1000)
parser.add_argument('--pv', type=int, nargs='+', default=[1,2,1])
parser.add_argument('--data_gen', type=int, nargs='+', default=[3,4,1])
parser.add_argument('--rd_bad2bad', type=float, nargs='+', default=[0.1,0.2,0.1])
parser.add_argument('--seed', type=int, default=1)
parser.add_argument('--n_experiments', '-e', type=int, default=1)
parser.add_argument('--mode', choices=['unif_rand','urg5','best','csma-ca'], default='rotate')
parser.add_argument('--CW', type=int, nargs='+', default=[2,16])
parser.add_argument('--exp_name', type=str, default='vpg')
parser.add_argument('--n_iter', '-n', type=int, default=100)
parser.add_argument('--batch_size', '-b', type=int, default=1000)
args = parser.parse_args()
logdir = args.exp_name + '_' + args.env_name + '_' + time.strftime("%d-%m-%Y_%H-%M-%S")
logdir = os.path.join('data', logdir)
print("------")
print(logdir)
print("------")
max_path_length = args.ep_len if args.ep_len > 0 else None
for data_gen in range(args.data_gen[0], args.data_gen[1], args.data_gen[2]):
for w_radar in range(args.w_radar[0], args.w_radar[1], args.w_radar[2]):
for pv in range(args.pv[0], args.pv[1], args.pv[2]):
for rd_bad2bad in np.arange(args.rd_bad2bad[0],args.rd_bad2bad[1],args.rd_bad2bad[2]):
for e in range(args.n_experiments):
""" Set random seeds
https://keras.io/getting_started/faq/
"""
seed = args.seed + e*10
# The below is necessary for starting Numpy and Python generated random numbers in a well-defined initial state.
np.random.seed(seed)
python_random.seed(seed)
env_config = {'num_users': args.num_users,
'num_agents': args.num_agents,
'pv': pv/10,
'w_age': args.w_age,
'w_radar': w_radar,
'w_overflow': args.w_ovf,
'data_gen': float(data_gen),
'road_sw_bad_to_bad': float(rd_bad2bad),
'age_obj': args.obj,
'phi': args.phi,
}
logdir_w_params = logdir + "_rdbad_{}_wr{}_gen{}".format(rd_bad2bad, w_radar, data_gen)
test(
exp_name = args.exp_name,
env_name = args.env_name,
env_config = env_config,
n_iter = args.n_iter,
min_timesteps_per_batch = args.batch_size,
max_path_length = max_path_length,
seed = args.seed,
mode = args.mode,
CW = args.CW,
logdir = os.path.join(logdir_w_params,'%d'%seed),
)