Exemplo n.º 1
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def test_param_grid():
    # Create a parameter grid spec
    pspec = {
        "p1": np.array([0.1, 0.2]),
        "p2": np.array([0.4, 0.5]),
        "p3": 3
    }  # fixed value

    # Create the grid entries
    pgrid = param_grid(pspec)

    # Check for presence of all entries, their order is not mandatory
    assert {"p1": 0.1, "p2": 0.4, "p3": 3} in pgrid
    assert {"p1": 0.2, "p2": 0.4, "p3": 3} in pgrid
    assert {"p1": 0.1, "p2": 0.5, "p3": 3} in pgrid
    assert {"p1": 0.2, "p2": 0.5, "p3": 3} in pgrid
Exemplo n.º 2
0
def test_param_grid():
    # Create a parameter grid spec
    pspec = {
        'p1': np.array([0.1, 0.2]),
        'p2': np.array([0.4, 0.5]),
        'p3': 3  # fixed value
    }

    # Create the grid entries
    pgrid = param_grid(pspec)

    # Check for presence of all entries, their order is not mandatory
    assert {'p1': 0.1, 'p2': 0.4, 'p3': 3} in pgrid
    assert {'p1': 0.2, 'p2': 0.4, 'p3': 3} in pgrid
    assert {'p1': 0.1, 'p2': 0.5, 'p3': 3} in pgrid
    assert {'p1': 0.2, 'p2': 0.5, 'p3': 3} in pgrid
Exemplo n.º 3
0
        raise pyrado.ValueErr(msg='Do not vary more than one domain parameter for this script! (Check action delay.)')
    varied_param_key = ''.join(param_spec.keys())  # to get a str

    if not (len(prefixes) == len(exp_names) and len(prefixes) == len(exp_labels)):
        raise pyrado.ShapeErr(msg=f'The lengths of prefixes, exp_names, and exp_labels must be equal, '
                                  f'but they are {len(prefixes)}, {len(exp_names)}, and {len(exp_labels)}!')

    # Load the policies
    ex_dirs = [osp.join(p, e) for p, e in zip(prefixes, exp_names)]
    policies = []
    for ex_dir in ex_dirs:
        _, policy, _ = load_experiment(ex_dir)
        policies.append(policy)

    # Create one-dim results grid and ensure right number of rollouts
    param_list = param_grid(param_spec)
    param_list *= args.num_ro_per_config

    # Fix initial state (set to None if it should not be fixed)
    init_state = None

    # Crate empty data frame
    df = pd.DataFrame(columns=['policy', 'ret', 'len', varied_param_key])

    # Evaluate all policies
    for i, policy in enumerate(policies):
        # Create a new sampler pool for every policy to synchronize the random seeds i.e. init states
        pool = SamplerPool(args.num_envs)

        # Seed the sampler
        if args.seed is not None:
Exemplo n.º 4
0
def evaluate_policy(args, ex_dir):
    """Helper function to evaluate the policy from an experiment in the associated environment."""
    env, policy, _ = load_experiment(ex_dir, args)

    # Create multi-dim evaluation grid
    param_spec = dict()
    param_spec_dim = None

    if isinstance(inner_env(env), BallOnPlateSim):
        param_spec["ball_radius"] = np.linspace(0.02, 0.08, num=2, endpoint=True)
        param_spec["ball_rolling_friction_coefficient"] = np.linspace(0.0295, 0.9, num=2, endpoint=True)

    elif isinstance(inner_env(env), QQubeSwingUpSim):
        eval_num = 200
        # Use nominal values for all other parameters.
        for param, nominal_value in env.get_nominal_domain_param().items():
            param_spec[param] = nominal_value
        # param_spec["gravity_const"] = np.linspace(5.0, 15.0, num=eval_num, endpoint=True)
        param_spec["damping_pend_pole"] = np.linspace(0.0, 0.0001, num=eval_num, endpoint=True)
        param_spec["damping_rot_pole"] = np.linspace(0.0, 0.0006, num=eval_num, endpoint=True)
        param_spec_dim = 2

    elif isinstance(inner_env(env), QBallBalancerSim):
        # param_spec["gravity_const"] = np.linspace(7.91, 11.91, num=11, endpoint=True)
        # param_spec["ball_mass"] = np.linspace(0.003, 0.3, num=11, endpoint=True)
        # param_spec["ball_radius"] = np.linspace(0.01, 0.1, num=11, endpoint=True)
        param_spec["plate_length"] = np.linspace(0.275, 0.275, num=11, endpoint=True)
        param_spec["arm_radius"] = np.linspace(0.0254, 0.0254, num=11, endpoint=True)
        # param_spec["load_inertia"] = np.linspace(5.2822e-5*0.5, 5.2822e-5*1.5, num=11, endpoint=True)
        # param_spec["motor_inertia"] = np.linspace(4.6063e-7*0.5, 4.6063e-7*1.5, num=11, endpoint=True)
        # param_spec["gear_ratio"] = np.linspace(60, 80, num=11, endpoint=True)
        # param_spec["gear_efficiency"] = np.linspace(0.6, 1.0, num=11, endpoint=True)
        # param_spec["motor_efficiency"] = np.linspace(0.49, 0.89, num=11, endpoint=True)
        # param_spec["motor_back_emf"] = np.linspace(0.006, 0.066, num=11, endpoint=True)
        # param_spec["motor_resistance"] = np.linspace(2.6*0.5, 2.6*1.5, num=11, endpoint=True)
        # param_spec["combined_damping"] = np.linspace(0.0, 0.05, num=11, endpoint=True)
        # param_spec["friction_coeff"] = np.linspace(0, 0.015, num=11, endpoint=True)
        # param_spec["voltage_thold_x_pos"] = np.linspace(0.0, 1.0, num=11, endpoint=True)
        # param_spec["voltage_thold_x_neg"] = np.linspace(-1., 0.0, num=11, endpoint=True)
        # param_spec["voltage_thold_y_pos"] = np.linspace(0.0, 1.0, num=11, endpoint=True)
        # param_spec["voltage_thold_y_neg"] = np.linspace(-1.0, 0, num=11, endpoint=True)
        # param_spec["offset_th_x"] = np.linspace(-5/180*np.pi, 5/180*np.pi, num=11, endpoint=True)
        # param_spec["offset_th_y"] = np.linspace(-5/180*np.pi, 5/180*np.pi, num=11, endpoint=True)

    else:
        raise NotImplementedError

    # Always add an action delay wrapper (with 0 delay by default)
    if typed_env(env, ActDelayWrapper) is None:
        env = ActDelayWrapper(env)
    # param_spec['act_delay'] = np.linspace(0, 30, num=11, endpoint=True, dtype=int)

    add_info = "-".join(param_spec.keys())

    # Create multidimensional results grid and ensure right number of rollouts
    param_list = param_grid(param_spec)
    param_list *= args.num_rollouts_per_config

    # Fix initial state (set to None if it should not be fixed)
    init_state = np.array([0.0, 0.0, 0.0, 0.0])

    # Create sampler
    pool = SamplerPool(args.num_workers)
    if args.seed is not None:
        pool.set_seed(args.seed)
        print_cbt(f"Set the random number generators' seed to {args.seed}.", "w")
    else:
        print_cbt("No seed was set", "y")

    # Sample rollouts
    ros = eval_domain_params(pool, env, policy, param_list, init_state)

    # Compute metrics
    lod = []
    for ro in ros:
        d = dict(**ro.rollout_info["domain_param"], ret=ro.undiscounted_return(), len=ro.length)
        # Simply remove the observation noise from the domain parameters
        try:
            d.pop("obs_noise_mean")
            d.pop("obs_noise_std")
        except KeyError:
            pass
        lod.append(d)

    df = pd.DataFrame(lod)
    metrics = dict(
        avg_len=df["len"].mean(),
        avg_ret=df["ret"].mean(),
        median_ret=df["ret"].median(),
        min_ret=df["ret"].min(),
        max_ret=df["ret"].max(),
        std_ret=df["ret"].std(),
    )
    pprint(metrics, indent=4)

    # Create subfolder and save
    timestamp = datetime.datetime.now()
    add_info = timestamp.strftime(pyrado.timestamp_format) + "--" + add_info
    save_dir = osp.join(ex_dir, "eval_domain_grid", add_info)
    os.makedirs(save_dir, exist_ok=True)

    save_dicts_to_yaml(
        {"ex_dir": str(ex_dir)},
        {"varied_params": list(param_spec.keys())},
        {"num_rpp": args.num_rollouts_per_config, "seed": args.seed},
        {"metrics": dict_arraylike_to_float(metrics)},
        save_dir=save_dir,
        file_name="summary",
    )
    pyrado.save(df, f"df_sp_grid_{len(param_spec) if param_spec_dim is None else param_spec_dim}d.pkl", save_dir)