Exemple #1
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def brute_force_maximum(MESH, GP, kind='ucb', kappa=1.0, xi=1.0):
    uf = UtilityFunction(kind=kind, kappa=kappa, xi=xi)

    mesh_vals = uf.utility(MESH, GP, 2)
    max_val = mesh_vals.max()
    max_arg_val = MESH[np.argmax(mesh_vals)]

    return max_val, max_arg_val
Exemple #2
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def test_utility_fucntion():
    util = UtilityFunction(kind="ucb", kappa=1.0, xi=1.0)
    assert util.kind == "ucb"

    util = UtilityFunction(kind="ei", kappa=1.0, xi=1.0)
    assert util.kind == "ei"

    util = UtilityFunction(kind="poi", kappa=1.0, xi=1.0)
    assert util.kind == "poi"

    with pytest.raises(NotImplementedError):
        util = UtilityFunction(kind="other", kappa=1.0, xi=1.0)
Exemple #3
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def main(db_uri, tablename):
    click.echo("Connecting to database...")
    database = SQLDatabase(db_uri, tablename)

    click.echo("Checking existing number of evaluations...")
    if len(database) < 2:  # Check if there are enough existing datapoints
        for point in initial_points:
            target = black_box_function(**point)
            database.append({**point, "target": target})

    click.echo("Creating optimizer and utility function...")
    optimizer = BayesianOptimization(f=None, pbounds=pbounds, random_state=1)
    utility_function = UtilityFunction(kind="ucb", kappa=3, xi=1)

    click.echo("Registering evaluations with optimizer...")
    for evaluation in database:
        optimizer.register(dissoc(evaluation, "target"), evaluation["target"])

    while True:
        try:
            point = optimizer.suggest(utility_function)
            click.echo(f"Evaluating black-box function for {point}")
            target = black_box_function(**point)
            click.echo(f"Got {target}")
            click.echo("Registering with database...")
            database.append({**point, "target": target})
            click.echo("Registering with optimizer...")
            optimizer.register(point, target)
        except KeyboardInterrupt:
            click.echo("Exiting...")
            break
class BayesianOptimizationHandler(RequestHandler):
    """Basic functionality for NLP handlers."""
    _bo = BayesianOptimization(f=black_box_function,
                               pbounds={
                                   "x": (-4, 4),
                                   "y": (-3, 3)
                               })
    _uf = UtilityFunction(kind="ucb", kappa=3, xi=1)

    def post(self):
        """Deal with incoming requests."""
        body = tornado.escape.json_decode(self.request.body)

        try:
            self._bo.register(
                x=body["params"],
                target=body["target"],
            )
            print("BO has registered: {} points.".format(len(self._bo.space)),
                  end="\n\n")
        except KeyError:
            pass
        finally:
            suggested_params = self._bo.suggest(self._uf)

        self.write(json.dumps(suggested_params))
Exemple #5
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 def maximize(self,
               LHS_path = None,
               init_points=5,
               is_LHS=False,
               n_iter=25,
               acq='ucb',
               kappa=2.576,
               xi=0.0,
               **gp_params):
      """Mazimize your function"""
      self._prime_subscriptions()
      self.dispatch(Events.OPTMIZATION_START)
      if LHS_path == None:
         if is_LHS:
             self._prime_queue_LHS(init_points)
         else:
             self._prime_queue(init_points)
      else:
         X, fit = self.load_LHS(LHS_path)
         for x, eva in zip(X, fit):
             self.register(x, 1-eva)
      self.set_gp_params(**gp_params)
      util = UtilityFunction(kind=acq, kappa=kappa, xi=xi)
      iteration = 0
      while not self._queue.empty or iteration < n_iter:
          try:
              x_probe = next(self._queue)
          except StopIteration:
              x_probe = self.suggest(util)
              iteration += 1
          self.probe(x_probe, lazy=False)
      self.dispatch(Events.OPTMIZATION_END)
Exemple #6
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class BayesianOptimizationHandler(RequestHandler):
    """Basic functionality for NLP handlers."""
    _bo = BayesianOptimization(
        f=philly_job,
        # pbounds={"x": (-4, 4), "y": (-3, 3)}
        pbounds=pbounds)
    _uf = UtilityFunction(kind="ucb", kappa=3, xi=1)

    def post(self):
        """Deal with incoming requests."""
        body = tornado.escape.json_decode(self.request.body)
        suggest = body.pop("suggest")

        try:
            self._bo.register(
                params=body["params"],
                target=body["target"],
            )
            status = f"BO registered: {body}.\n"
            status += f"BO has registered: {len(self._bo.space)} points.\n"
            print(status)
        except KeyError:
            pass
        finally:
            suggested_params = {}
            if suggest:
                suggested_params = self._bo.suggest(self._uf)

        self.write(json.dumps(suggested_params))
Exemple #7
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def test_acq_with_poi():
    util = UtilityFunction(kind="poi", kappa=1.0, xi=1e-4)
    episilon = 1e-2
    y_max = 2.0

    max_arg = acq_max(
        util.utility,
        GP,
        y_max,
        bounds=np.array([[0, 1], [0, 1]]),
        random_state=ensure_rng(0),
        n_iter=200,
    )
    _, brute_max_arg = brute_force_maximum(MESH, GP, kind='poi', kappa=1.0, xi=1e-4)

    assert all(abs(brute_max_arg - max_arg) < episilon)
def test_acq_with_ucb():
    util = UtilityFunction(kind="ucb", kappa=1.0, xi=1.0)
    episilon = 1e-2
    y_max = 2.0

    max_arg = acq_max(util.utility,
                      GP,
                      y_max,
                      bounds=np.array([[0, 1], [0, 1]]),
                      btypes=[float, float],
                      random_state=ensure_rng(0),
                      n_iter=20)
    _, brute_max_arg = brute_force_maximum(MESH,
                                           GP,
                                           kind='ucb',
                                           kappa=1.0,
                                           xi=1.0)

    assert all(abs(brute_max_arg - max_arg) < episilon)
Exemple #9
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print("Connecting to database...")
database = SQLDatabase("sqlite:///test.db", "my_function", arg_types,
                       return_type)

print("Checking existing number of evaluations...")
if len(database) < 2:  # Check if there are enough existing datapoints
    initial_targets = []
    for point in initial_points:
        target = black_box_function(**point)
        database.add((point, target))

print("Creating optimizer and utility function...")
optimizer = BayesianOptimization(f=None, pbounds=pbounds, random_state=1)

utility_funcs = [
    UtilityFunction(kind="ucb", kappa=3, xi=1),
    ...,
]

print("Registering evaluations with optimizer...")
for (point, target) in database:
    optimizer.register(point, target)

while True:
    try:
        points = []
        for uf in utility_funcs:
            points.append(optimizer.suggest(uf))

        create_slurm_job(points)
        run_job()