Beispiel #1
0
    def test_learning(self):
        ob_space = self.env.real_observation_space
        skill_space = self.env.skill_space
        ob_skill_space = self.env.observation_space
        ac_space = self.env.action_space
        ob_dim = ob_skill_space.shape[0] - 4
        f_dim = ob_dim
        def discrim_f(x): return x

        pol_net = PolNet(ob_skill_space, ac_space)
        pol = GaussianPol(ob_skill_space, ac_space, pol_net)
        qf_net1 = QNet(ob_skill_space, ac_space)
        qf1 = DeterministicSAVfunc(ob_skill_space, ac_space, qf_net1)
        targ_qf_net1 = QNet(ob_skill_space, ac_space)
        targ_qf_net1.load_state_dict(qf_net1.state_dict())
        targ_qf1 = DeterministicSAVfunc(ob_skill_space, ac_space, targ_qf_net1)
        qf_net2 = QNet(ob_skill_space, ac_space)
        qf2 = DeterministicSAVfunc(ob_skill_space, ac_space, qf_net2)
        targ_qf_net2 = QNet(ob_skill_space, ac_space)
        targ_qf_net2.load_state_dict(qf_net2.state_dict())
        targ_qf2 = DeterministicSAVfunc(ob_skill_space, ac_space, targ_qf_net2)
        qfs = [qf1, qf2]
        targ_qfs = [targ_qf1, targ_qf2]
        log_alpha = nn.Parameter(torch.ones(()))

        high = np.array([np.finfo(np.float32).max]*f_dim)
        f_space = gym.spaces.Box(-high, high, dtype=np.float32)
        discrim_net = DiaynDiscrimNet(
            f_space, skill_space, h_size=100, discrim_f=discrim_f)
        discrim = DeterministicSVfunc(f_space, discrim_net)

        optim_pol = torch.optim.Adam(pol_net.parameters(), 1e-4)
        optim_qf1 = torch.optim.Adam(qf_net1.parameters(), 3e-4)
        optim_qf2 = torch.optim.Adam(qf_net2.parameters(), 3e-4)
        optim_qfs = [optim_qf1, optim_qf2]
        optim_alpha = torch.optim.Adam([log_alpha], 1e-4)
        optim_discrim = torch.optim.SGD(discrim.parameters(),
                                        lr=0.001, momentum=0.9)

        off_traj = Traj()
        sampler = EpiSampler(self.env, pol, num_parallel=1)

        epis = sampler.sample(pol, max_steps=200)
        on_traj = Traj()
        on_traj.add_epis(epis)
        on_traj = ef.add_next_obs(on_traj)
        on_traj = ef.compute_diayn_rews(
            on_traj, lambda x: diayn_sac.calc_rewards(x, 4, discrim))
        on_traj.register_epis()
        off_traj.add_traj(on_traj)
        step = on_traj.num_step
        log_alpha = nn.Parameter(np.log(0.1)*torch.ones(()))  # fix alpha
        result_dict = diayn_sac.train(
            off_traj, pol, qfs, targ_qfs, log_alpha,
            optim_pol, optim_qfs, optim_alpha,
            step, 128, 5e-3, 0.99, 1, discrim, 4, True)
        discrim_losses = diayn.train(
            discrim, optim_discrim, on_traj, 32, 100, 4)

        del sampler
Beispiel #2
0
        on_traj = ef.add_next_obs(on_traj)
        on_traj = ef.compute_diayn_rews(
            on_traj, lambda x: diayn_sac.calc_rewards(x, args.num_skill, discrim))
        on_traj.register_epis()
        off_traj.add_traj(on_traj)

        total_epi += on_traj.num_epi
        step = on_traj.num_step
        total_step += step
        log_alpha = nn.Parameter(
            np.log(0.1)*torch.ones((), device=device))  # fix alpha

        result_dict = diayn_sac.train(
            off_traj,
            pol, qfs, targ_qfs, log_alpha,
            optim_pol, optim_qfs, optim_alpha,
            step, args.batch_size,
            args.tau, args.gamma, args.sampling,
            discrim, args.num_skill,
            not args.no_reparam)
        discrim_losses = diayn.train(discrim, optim_discrim, on_traj,
                                     args.discrim_batch_size, args.epoch_per_iter,
                                     args.num_skill)
    # update counter and record
    rewards = [np.sum(epi['rews']) for epi in epis]
    result_dict['discrimloss'] = discrim_losses
    mean_rew = np.mean(rewards)
    logger.record_results(args.log, result_dict, score_file,
                          total_epi, step, total_step,
                          rewards,
                          plot_title=args.env_name)