Example #1
0
    def test_fixed_noise_fantasy_updates_batch(self, cuda=False):
        train_x, test_x, train_y, test_y = self._get_data(cuda=cuda)
        noise = torch.full_like(train_y, 2e-4)
        test_noise = torch.full_like(test_y, 3e-4)

        likelihood = FixedNoiseGaussianLikelihood(noise)
        gp_model = ExactGPModel(train_x, train_y, likelihood)
        mll = gpytorch.ExactMarginalLogLikelihood(likelihood, gp_model)
        gp_model.covar_module.base_kernel.initialize(lengthscale=exp(1))
        gp_model.mean_module.initialize(constant=0)

        if cuda:
            gp_model.cuda()
            likelihood.cuda()

        # Find optimal model hyperparameters
        gp_model.train()
        likelihood.train()
        optimizer = optim.Adam(list(gp_model.parameters()) + list(likelihood.parameters()), lr=0.15)
        for _ in range(50):
            optimizer.zero_grad()
            with gpytorch.settings.debug(False):
                output = gp_model(train_x)
            loss = -mll(output, train_y)
            loss.backward()
            optimizer.step()

        for param in gp_model.parameters():
            self.assertTrue(param.grad is not None)
            self.assertGreater(param.grad.norm().item(), 0)
        optimizer.step()

        with gpytorch.settings.fast_pred_var():
            # Test the model
            gp_model.eval()
            likelihood.eval()
            test_function_predictions = likelihood(gp_model(test_x), noise=test_noise)

            # Cut data down, and then add back via the fantasy interface
            gp_model.set_train_data(train_x[:5], train_y[:5], strict=False)
            gp_model.likelihood.noise_covar = FixedGaussianNoise(noise=noise[:5])
            likelihood(gp_model(test_x), noise=test_noise)

            fantasy_x = train_x[5:].clone().unsqueeze(0).unsqueeze(-1).repeat(3, 1, 1).requires_grad_(True)
            fantasy_y = train_y[5:].unsqueeze(0).repeat(3, 1)
            fant_model = gp_model.get_fantasy_model(fantasy_x, fantasy_y, noise=noise[5:].unsqueeze(0).repeat(3, 1))
            fant_function_predictions = likelihood(fant_model(test_x), noise=test_noise)

            self.assertAllClose(test_function_predictions.mean, fant_function_predictions.mean[0], atol=1e-4)

            fant_function_predictions.mean.sum().backward()
            self.assertTrue(fantasy_x.grad is not None)
Example #2
0
    def test_posterior_latent_gp_and_likelihood_with_optimization(
            self, cuda=False):
        # This test throws a warning because the fixed noise likelihood gets the wrong input
        warnings.simplefilter("ignore", GPInputWarning)

        train_x, test_x, train_y, test_y = self._get_data(cuda=cuda)
        # We're manually going to set the hyperparameters to something they shouldn't be
        likelihood = FixedNoiseGaussianLikelihood(torch.ones(11) * 0.001)
        gp_model = ExactGPModel(train_x, train_y, likelihood)
        mll = gpytorch.ExactMarginalLogLikelihood(likelihood, gp_model)
        gp_model.rbf_covar_module.initialize(lengthscale=exp(1))
        gp_model.mean_module.initialize(constant=0)

        if cuda:
            gp_model.cuda()
            likelihood.cuda()

        # Find optimal model hyperparameters
        gp_model.train()
        likelihood.train()

        optimizer = optim.Adam(list(gp_model.parameters()) +
                               list(likelihood.parameters()),
                               lr=0.1)
        optimizer.n_iter = 0
        with gpytorch.settings.debug(False):
            for _ in range(75):
                optimizer.zero_grad()
                output = gp_model(train_x)
                loss = -mll(output, train_y)
                loss.backward()
                optimizer.n_iter += 1
                optimizer.step()

            for param in gp_model.parameters():
                self.assertTrue(param.grad is not None)
                self.assertGreater(param.grad.norm().item(), 0)
            for param in likelihood.parameters():
                self.assertTrue(param.grad is not None)
                self.assertGreater(param.grad.norm().item(), 0)
            optimizer.step()

            # Test the model
            gp_model.eval()
            likelihood.eval()
            test_function_predictions = likelihood(gp_model(test_x))
            mean_abs_error = torch.mean(
                torch.abs(test_y - test_function_predictions.mean))

        self.assertLess(mean_abs_error.squeeze().item(), 0.05)
    def test_kissgp_gp_fast_pred_var(self):
        with gpytorch.settings.fast_pred_var(), gpytorch.settings.debug(False):
            train_x, train_y, test_x, test_y = make_data()
            likelihood = FixedNoiseGaussianLikelihood(torch.ones(100) * 0.001)
            gp_model = GPRegressionModel(train_x, train_y, likelihood)
            mll = gpytorch.mlls.ExactMarginalLogLikelihood(
                likelihood, gp_model)

            # Optimize the model
            gp_model.train()
            likelihood.train()

            optimizer = optim.Adam(list(gp_model.parameters()) +
                                   list(likelihood.parameters()),
                                   lr=0.1)
            optimizer.n_iter = 0
            for _ in range(25):
                optimizer.zero_grad()
                output = gp_model(train_x)
                loss = -mll(output, train_y)
                loss.backward()
                optimizer.n_iter += 1
                optimizer.step()

            for param in gp_model.parameters():
                self.assertTrue(param.grad is not None)
                self.assertGreater(param.grad.norm().item(), 0)
            for param in likelihood.parameters():
                self.assertTrue(param.grad is not None)
                self.assertGreater(param.grad.norm().item(), 0)

            # Test the model
            gp_model.eval()
            likelihood.eval()
            # Set the cache
            test_function_predictions = likelihood(gp_model(train_x))

            # Now bump up the likelihood to something huge
            # This will make it easy to calculate the variance
            likelihood.initialize(noise=3.)
            test_function_predictions = likelihood(gp_model(train_x))

            noise = likelihood.noise
            var_diff = (test_function_predictions.variance - noise).abs()
            self.assertLess(torch.max(var_diff / noise), 0.05)
    def test_kissgp_gp_mean_abs_error_cuda(self):
        if not torch.cuda.is_available():
            return
        with least_used_cuda_device():
            train_x, train_y, test_x, test_y = make_data(cuda=True)
            likelihood = FixedNoiseGaussianLikelihood(torch.ones(100) *
                                                      0.001).cuda()
            gp_model = GPRegressionModel(train_x, train_y, likelihood).cuda()
            mll = gpytorch.mlls.ExactMarginalLogLikelihood(
                likelihood, gp_model)

            # Optimize the model
            gp_model.train()
            likelihood.train()

            optimizer = optim.Adam(list(gp_model.parameters()) +
                                   list(likelihood.parameters()),
                                   lr=0.1)
            optimizer.n_iter = 0
            with gpytorch.settings.debug(False):
                for _ in range(25):
                    optimizer.zero_grad()
                    output = gp_model(train_x)
                    loss = -mll(output, train_y)
                    loss.backward()
                    optimizer.n_iter += 1
                    optimizer.step()

                for param in gp_model.parameters():
                    self.assertTrue(param.grad is not None)
                    self.assertGreater(param.grad.norm().item(), 0)
                for param in likelihood.parameters():
                    self.assertTrue(param.grad is not None)
                    self.assertGreater(param.grad.norm().item(), 0)

                # Test the model
                gp_model.eval()
                likelihood.eval()
                test_preds = likelihood(gp_model(test_x)).mean
                mean_abs_error = torch.mean(torch.abs(test_y - test_preds))

            self.assertLess(mean_abs_error.squeeze().item(), 0.02)
Example #5
0
    def test_kissgp_gp_mean_abs_error(self):
        # This test throws a warning because the fixed noise likelihood gets the wrong input
        warnings.simplefilter("ignore", GPInputWarning)

        train_x, train_y, test_x, test_y = make_data()
        likelihood = FixedNoiseGaussianLikelihood(torch.ones(100) * 0.001)
        gp_model = GPRegressionModel(train_x, train_y, likelihood)
        mll = gpytorch.mlls.ExactMarginalLogLikelihood(likelihood, gp_model)

        # Optimize the model
        gp_model.train()
        likelihood.train()

        optimizer = optim.Adam(list(gp_model.parameters()) +
                               list(likelihood.parameters()),
                               lr=0.1)
        optimizer.n_iter = 0
        with gpytorch.settings.debug(False):
            for _ in range(25):
                optimizer.zero_grad()
                output = gp_model(train_x)
                loss = -mll(output, train_y)
                loss.backward()
                optimizer.n_iter += 1
                optimizer.step()

            for param in gp_model.parameters():
                self.assertTrue(param.grad is not None)
                self.assertGreater(param.grad.norm().item(), 0)
            for param in likelihood.parameters():
                self.assertTrue(param.grad is not None)
                self.assertGreater(param.grad.norm().item(), 0)

            # Test the model
            gp_model.eval()
            likelihood.eval()

            test_preds = likelihood(gp_model(test_x)).mean
            mean_abs_error = torch.mean(torch.abs(test_y - test_preds))

        self.assertLess(mean_abs_error.squeeze().item(), 0.05)