| | from pathlib import Path |
| | from typing import Sequence |
| |
|
| | import numpy as np |
| | import librosa |
| | from sklearn.metrics import mean_absolute_percentage_error |
| |
|
| |
|
| | GENERATION_TASK_IDS = [ |
| | "MEG03", |
| | "ECG01", |
| | "ECG02", |
| | "NEG03", |
| | "NEG04", |
| | "ENG01", |
| | "ENG02", |
| | "ENG03", |
| | "ENG04", |
| | "ENG05", |
| | "PHG02", |
| | "PHG03", |
| | "URG01", |
| | "URG02", |
| | "URG03", |
| | "URG05", |
| | "MAG01", |
| | ] |
| |
|
| | IMPUTATION_TASK_IDS = [ |
| | "NEG04", |
| | "ENG05", |
| | "PHG03", |
| | "URG03", |
| | ] |
| |
|
| | CLASSIFICATION_TASK_IDS = [ |
| | "ASU03", |
| | "BIU01", |
| | "BIU02", |
| | "BIU03", |
| | "NEU02", |
| | "NEU05", |
| | "NEU06", |
| | "PHU01", |
| | "PHU06", |
| | "MFU01_MFU02", |
| | "RAU01", |
| | "RAU02", |
| | ] |
| |
|
| | EVENT_DETECTION_TASK_IDS = ["ASU01_ASG02", "EAU01_EAG02"] |
| |
|
| | ANOMALY_DETECTION_TASK_IDS = [ |
| | "MEU01", |
| | "MEU02", |
| | "NEU01", |
| | "PHU04", |
| | "PHU05", |
| | "URU04", |
| | "MFU03", |
| | ] |
| |
|
| | MCQ_TASK_IDS = ["MEU04", "ECU03"] |
| |
|
| | DATASET_TO_TASK = { |
| | "ASU01_ASG02": "event_detection", |
| | "ASU03": "classification", |
| | "EAU01_EAG02": "event_detection", |
| | "BIU01": "classification", |
| | "BIU02": "classification", |
| | "BIU03": "classification", |
| | "MEU01": "anomaly_detection", |
| | "MEU02": "anomaly_detection", |
| | "MEG03": "forecasting", |
| | "MEU04": "mcq", |
| | "ECG01": "forecasting", |
| | "ECG02": "forecasting", |
| | "ECU03": "mcq", |
| | "NEU01": "anomaly_detection", |
| | "NEU02": "classification", |
| | "NEG03": "forecasting", |
| | "NEG04": "imputation", |
| | "NEU05": "classification", |
| | "NEU06": "classification", |
| | "ENG01": "synthesize", |
| | "ENG02": "forecasting", |
| | "ENG03": "forecasting", |
| | "ENG04": "forecasting", |
| | "ENG05": "imputation", |
| | "PHU01": "classification", |
| | "PHG02": "forecasting", |
| | "PHG03": "imputation", |
| | "PHU04": "anomaly_detection", |
| | "PHU05": "anomaly_detection", |
| | "PHU06": "classification", |
| | "URG01": "forecasting", |
| | "URG02": "forecasting", |
| | "URG03": "imputation", |
| | "URU04": "anomaly_detection", |
| | "URG05": "forecasting", |
| | "MFU01_MFU02": "classification", |
| | "MFU03": "anomaly_detection", |
| | "RAU01": "classification", |
| | "RAU02": "classification", |
| | "MAG01": "forecasting" |
| | } |
| |
|
| |
|
| | def read_time_series_data(path: str | Path) -> Sequence: |
| | path_str = path.__str__() |
| | data = [] |
| | if path_str.endswith(".csv"): |
| | with open(path) as raw_data_reader: |
| | for line in raw_data_reader.readlines(): |
| | line = line.strip("\ufeff") |
| | if "," in line: |
| | data.append(line.strip().split(",")) |
| | else: |
| | data.append(line.strip()) |
| | if "X" not in data: |
| | data = np.array(data, dtype=np.float32) |
| | else: |
| | data = np.array(data) |
| | elif path_str.endswith(".npy"): |
| | data = np.load(path) |
| | elif path_str.endswith(".wav") or path_str.endswith(".flac"): |
| | data, _ = librosa.core.load(path, mono=False) |
| | else: |
| | raise ValueError(f"Unsupported data type {path_str.endswith()}") |
| | return data |
| |
|
| |
|
| | def concat_base_path(base_path: Path, path: str) -> Path: |
| | if (base_path / path).exists(): |
| | return base_path / path |
| | else: |
| | return base_path.parent / path |
| |
|
| |
|
| | def non_zero_rel_mae(y_true: np.ndarray, y_pred: np.ndarray) -> float: |
| | idxs = np.where(y_true != 0)[0] |
| | return mean_absolute_percentage_error(y_true[idxs], y_pred[idxs]) |
| |
|