aeon

Aeon Time Series Machine Learning

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Install skill "aeon" with this command: npx skills add davila7/claude-code-templates/davila7-claude-code-templates-aeon

Aeon Time Series Machine Learning

Overview

Aeon is a scikit-learn compatible Python toolkit for time series machine learning. It provides state-of-the-art algorithms for classification, regression, clustering, forecasting, anomaly detection, segmentation, and similarity search.

When to Use This Skill

Apply this skill when:

  • Classifying or predicting from time series data

  • Detecting anomalies or change points in temporal sequences

  • Clustering similar time series patterns

  • Forecasting future values

  • Finding repeated patterns (motifs) or unusual subsequences (discords)

  • Comparing time series with specialized distance metrics

  • Extracting features from temporal data

Installation

uv pip install aeon

Core Capabilities

  1. Time Series Classification

Categorize time series into predefined classes. See references/classification.md for complete algorithm catalog.

Quick Start:

from aeon.classification.convolution_based import RocketClassifier from aeon.datasets import load_classification

Load data

X_train, y_train = load_classification("GunPoint", split="train") X_test, y_test = load_classification("GunPoint", split="test")

Train classifier

clf = RocketClassifier(n_kernels=10000) clf.fit(X_train, y_train) accuracy = clf.score(X_test, y_test)

Algorithm Selection:

  • Speed + Performance: MiniRocketClassifier , Arsenal

  • Maximum Accuracy: HIVECOTEV2 , InceptionTimeClassifier

  • Interpretability: ShapeletTransformClassifier , Catch22Classifier

  • Small Datasets: KNeighborsTimeSeriesClassifier with DTW distance

  1. Time Series Regression

Predict continuous values from time series. See references/regression.md for algorithms.

Quick Start:

from aeon.regression.convolution_based import RocketRegressor from aeon.datasets import load_regression

X_train, y_train = load_regression("Covid3Month", split="train") X_test, y_test = load_regression("Covid3Month", split="test")

reg = RocketRegressor() reg.fit(X_train, y_train) predictions = reg.predict(X_test)

  1. Time Series Clustering

Group similar time series without labels. See references/clustering.md for methods.

Quick Start:

from aeon.clustering import TimeSeriesKMeans

clusterer = TimeSeriesKMeans( n_clusters=3, distance="dtw", averaging_method="ba" ) labels = clusterer.fit_predict(X_train) centers = clusterer.cluster_centers_

  1. Forecasting

Predict future time series values. See references/forecasting.md for forecasters.

Quick Start:

from aeon.forecasting.arima import ARIMA

forecaster = ARIMA(order=(1, 1, 1)) forecaster.fit(y_train) y_pred = forecaster.predict(fh=[1, 2, 3, 4, 5])

  1. Anomaly Detection

Identify unusual patterns or outliers. See references/anomaly_detection.md for detectors.

Quick Start:

from aeon.anomaly_detection import STOMP

detector = STOMP(window_size=50) anomaly_scores = detector.fit_predict(y)

Higher scores indicate anomalies

threshold = np.percentile(anomaly_scores, 95) anomalies = anomaly_scores > threshold

  1. Segmentation

Partition time series into regions with change points. See references/segmentation.md .

Quick Start:

from aeon.segmentation import ClaSPSegmenter

segmenter = ClaSPSegmenter() change_points = segmenter.fit_predict(y)

  1. Similarity Search

Find similar patterns within or across time series. See references/similarity_search.md .

Quick Start:

from aeon.similarity_search import StompMotif

Find recurring patterns

motif_finder = StompMotif(window_size=50, k=3) motifs = motif_finder.fit_predict(y)

Feature Extraction and Transformations

Transform time series for feature engineering. See references/transformations.md .

ROCKET Features:

from aeon.transformations.collection.convolution_based import RocketTransformer

rocket = RocketTransformer() X_features = rocket.fit_transform(X_train)

Use features with any sklearn classifier

from sklearn.ensemble import RandomForestClassifier clf = RandomForestClassifier() clf.fit(X_features, y_train)

Statistical Features:

from aeon.transformations.collection.feature_based import Catch22

catch22 = Catch22() X_features = catch22.fit_transform(X_train)

Preprocessing:

from aeon.transformations.collection import MinMaxScaler, Normalizer

scaler = Normalizer() # Z-normalization X_normalized = scaler.fit_transform(X_train)

Distance Metrics

Specialized temporal distance measures. See references/distances.md for complete catalog.

Usage:

from aeon.distances import dtw_distance, dtw_pairwise_distance

Single distance

distance = dtw_distance(x, y, window=0.1)

Pairwise distances

distance_matrix = dtw_pairwise_distance(X_train)

Use with classifiers

from aeon.classification.distance_based import KNeighborsTimeSeriesClassifier

clf = KNeighborsTimeSeriesClassifier( n_neighbors=5, distance="dtw", distance_params={"window": 0.2} )

Available Distances:

  • Elastic: DTW, DDTW, WDTW, ERP, EDR, LCSS, TWE, MSM

  • Lock-step: Euclidean, Manhattan, Minkowski

  • Shape-based: Shape DTW, SBD

Deep Learning Networks

Neural architectures for time series. See references/networks.md .

Architectures:

  • Convolutional: FCNClassifier , ResNetClassifier , InceptionTimeClassifier

  • Recurrent: RecurrentNetwork , TCNNetwork

  • Autoencoders: AEFCNClusterer , AEResNetClusterer

Usage:

from aeon.classification.deep_learning import InceptionTimeClassifier

clf = InceptionTimeClassifier(n_epochs=100, batch_size=32) clf.fit(X_train, y_train) predictions = clf.predict(X_test)

Datasets and Benchmarking

Load standard benchmarks and evaluate performance. See references/datasets_benchmarking.md .

Load Datasets:

from aeon.datasets import load_classification, load_regression

Classification

X_train, y_train = load_classification("ArrowHead", split="train")

Regression

X_train, y_train = load_regression("Covid3Month", split="train")

Benchmarking:

from aeon.benchmarking import get_estimator_results

Compare with published results

published = get_estimator_results("ROCKET", "GunPoint")

Common Workflows

Classification Pipeline

from aeon.transformations.collection import Normalizer from aeon.classification.convolution_based import RocketClassifier from sklearn.pipeline import Pipeline

pipeline = Pipeline([ ('normalize', Normalizer()), ('classify', RocketClassifier()) ])

pipeline.fit(X_train, y_train) accuracy = pipeline.score(X_test, y_test)

Feature Extraction + Traditional ML

from aeon.transformations.collection import RocketTransformer from sklearn.ensemble import GradientBoostingClassifier

Extract features

rocket = RocketTransformer() X_train_features = rocket.fit_transform(X_train) X_test_features = rocket.transform(X_test)

Train traditional ML

clf = GradientBoostingClassifier() clf.fit(X_train_features, y_train) predictions = clf.predict(X_test_features)

Anomaly Detection with Visualization

from aeon.anomaly_detection import STOMP import matplotlib.pyplot as plt

detector = STOMP(window_size=50) scores = detector.fit_predict(y)

plt.figure(figsize=(15, 5)) plt.subplot(2, 1, 1) plt.plot(y, label='Time Series') plt.subplot(2, 1, 2) plt.plot(scores, label='Anomaly Scores', color='red') plt.axhline(np.percentile(scores, 95), color='k', linestyle='--') plt.show()

Best Practices

Data Preparation

Normalize: Most algorithms benefit from z-normalization

from aeon.transformations.collection import Normalizer normalizer = Normalizer() X_train = normalizer.fit_transform(X_train) X_test = normalizer.transform(X_test)

Handle Missing Values: Impute before analysis

from aeon.transformations.collection import SimpleImputer imputer = SimpleImputer(strategy='mean') X_train = imputer.fit_transform(X_train)

Check Data Format: Aeon expects shape (n_samples, n_channels, n_timepoints)

Model Selection

  • Start Simple: Begin with ROCKET variants before deep learning

  • Use Validation: Split training data for hyperparameter tuning

  • Compare Baselines: Test against simple methods (1-NN Euclidean, Naive)

  • Consider Resources: ROCKET for speed, deep learning if GPU available

Algorithm Selection Guide

For Fast Prototyping:

  • Classification: MiniRocketClassifier

  • Regression: MiniRocketRegressor

  • Clustering: TimeSeriesKMeans with Euclidean

For Maximum Accuracy:

  • Classification: HIVECOTEV2 , InceptionTimeClassifier

  • Regression: InceptionTimeRegressor

  • Forecasting: ARIMA , TCNForecaster

For Interpretability:

  • Classification: ShapeletTransformClassifier , Catch22Classifier

  • Features: Catch22 , TSFresh

For Small Datasets:

  • Distance-based: KNeighborsTimeSeriesClassifier with DTW

  • Avoid: Deep learning (requires large data)

Reference Documentation

Detailed information available in references/ :

  • classification.md

  • All classification algorithms

  • regression.md

  • Regression methods

  • clustering.md

  • Clustering algorithms

  • forecasting.md

  • Forecasting approaches

  • anomaly_detection.md

  • Anomaly detection methods

  • segmentation.md

  • Segmentation algorithms

  • similarity_search.md

  • Pattern matching and motif discovery

  • transformations.md

  • Feature extraction and preprocessing

  • distances.md

  • Time series distance metrics

  • networks.md

  • Deep learning architectures

  • datasets_benchmarking.md

  • Data loading and evaluation tools

Additional Resources

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