# Copyright 2018 Amazon.com, Inc. or its affiliates. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"). # You may not use this file except in compliance with the License. # A copy of the License is located at # # http://www.apache.org/licenses/LICENSE-2.0 # # or in the "license" file accompanying this file. This file is distributed # on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either # express or implied. See the License for the specific language governing # permissions and limitations under the License. # Third-party imports import numpy as np import pandas as pd import pytest import torch # First-party imports from pts.model import ( QuantileForecast, SampleForecast, DistributionForecast, ) from torch.distributions import Uniform QUANTILES = np.arange(1, 100) / 100 SAMPLES = np.arange(101).reshape(101, 1) / 100 START_DATE = pd.Timestamp(2017, 1, 1, 12) FREQ = "1D" FORECASTS = { "QuantileForecast": QuantileForecast( forecast_arrays=QUANTILES.reshape(-1, 1), start_date=START_DATE, forecast_keys=np.array(QUANTILES, str), freq=FREQ, ), "SampleForecast": SampleForecast(samples=SAMPLES, start_date=START_DATE, freq=FREQ), "DistributionForecast": DistributionForecast( distribution=Uniform(low=torch.zeros(1), high=torch.ones(1)), start_date=START_DATE, freq=FREQ, ), } @pytest.mark.parametrize("name", FORECASTS.keys()) def test_Forecast(name): forecast = FORECASTS[name] def percentile(value): return f"p{int(round(value * 100)):02d}" num_samples, pred_length = SAMPLES.shape for quantile in QUANTILES: test_cases = [quantile, str(quantile), percentile(quantile)] for quant_pred in map(forecast.quantile, test_cases): assert np.isclose( quant_pred[0], quantile ), f"Expected {percentile(quantile)} quantile {quantile}. Obtained {quant_pred}." assert forecast.prediction_length == 1 assert len(forecast.index) == pred_length assert forecast.index[0] == pd.Timestamp(START_DATE) def test_DistributionForecast(): forecast = DistributionForecast( distribution=Uniform( low=torch.tensor([0.0, 0.0]), high=torch.tensor([1.0, 2.0]) ), start_date=START_DATE, freq=FREQ, ) def percentile(value): return f"p{int(round(value * 100)):02d}" for quantile in QUANTILES: test_cases = [quantile, str(quantile), percentile(quantile)] for quant_pred in map(forecast.quantile, test_cases): expected = quantile * np.array([1.0, 2.0]) assert np.allclose( quant_pred, expected ), f"Expected {percentile(quantile)} quantile {quantile}. Obtained {quant_pred}." pred_length = 2 assert forecast.prediction_length == pred_length assert len(forecast.index) == pred_length assert forecast.index[0] == pd.Timestamp(START_DATE)