Arrow |
A sensible, human-friendly approach to creating, manipulating, formatting and converting dates, times, and timestamps |
bta-lib |
Technical Analysis library in pandas for backtesting algotrading and quantitative analysis |
cesium |
Time series platform with feature extraction aiming for non uniformly sampled signals |
Darts |
A library making it very easy to produce forecasts using a wide range of models, from ARIMA to deep learning. Also does ensembling, model selection and more. |
GENDIS |
Shapelet discovery by genetic algorithms |
glm-sklearn |
scikit-learn compatible wrapper around the GLM module in statsmodels |
Featuretools |
Time series feature extraction, with possible conditionality on other variables with a pandas compatible relational-database-like data container |
fecon235 |
Computational tools for financial economics |
ffn |
financial function library |
flint |
A Time Series Library for Apache Spark |
Flow Forecast |
Flow Forecast is a deep learning for time series forecasting, classification, and anomaly detection framework built in PyTorch |
hctsa |
Matlab based feature extraction which can be controlled from python |
HMMLearn |
Hidden Markov Models with scikit-learn compatible API |
khiva-python |
A Time Series library with accelerated analytics on GPUS, it provides feature extraction and motif discovery among other functionalities. |
matrixprofile-ts |
Python implementation of the Matrix Profile algorithm which offers anomaly detection and pattern (or “motif”) discovery at the same time. |
Nitime |
Timeseries analysis for neuroscience data |
Pandas TA |
An easy to use Python 3 Pandas Extension with 130+ Technical Analysis Indicators |
Pastas |
Timeseries analysis for hydrological data |
prophet |
Time series forecasting for time series data that has multiple seasonality with linear or non-linear growth |
pyDSE |
ARMA models for Dynamic System Estimation |
pyFTS |
Fuzzy set rule-based models for time series forecasting, including multi-step, point, interval and probabilistic forecasting |
PyFlux |
Classical time series forecasting models |
pysf |
A scikit-learn compatible machine learning library for supervised/panel forecasting |
pyramid |
port of R's auto.arima method to Python |
pytorch-forecasting |
A time series forecasting library using PyTorch with various state-of-the-art network architectures. |
pyts |
Contains time series preprocessing, transformation as well as classification techniques |
ruptures |
Provides methods to find change points in time series such as shifts in the mean or scale of the signal as well as more complex changes in the probability distribution or frequency. |
seglearn |
Extends the scikit-learn pipeline concept to sequence data |
sktime |
A scikit-learn compatible library for learning with time series/panel data including time series classification/regression and (supervised/panel) forecasting |
statsmodels |
Contains a submodule for classical time series models and hypothesis tests |
stumpy |
Calculates matrix profile for time series subsequence all-pairs-similarity-search |
TensorFlow-Time-Series-Examples |
Time Series Prediction with tf.contrib.timeseries |
tensorflow_probability.sts |
Bayesian Structural Time Series model in Tensorflow Probability |
timemachines |
Functional interface to prophet and other packages, with Elo ratings |
Traces |
A library for unevenly-spaced time series analysis |
ta-lib |
Calculate technical indicators for financial time series (python wrapper around TA-Lib) |
ta |
Calculate technical indicators for financial time series |
TIMEX |
Library for creating time-series-forecasting-as-a-service platforms/websites, with a fully automated data ingestion, pre-processing, prediction and results visualization pipeline. |
tsfresh |
Extracts and filters features from time series, allowing supervised classificators and regressor to be applied to time series data |
tslearn |
Direct time series classifiers and regressors |
tspreprocess |
Preprocess time series (resampling, denoising etc.), still WIP |
tsmoothie |
A python library for time-series smoothing and outlier detection in a vectorized way |