mf-nav-dataHistorical NAV/price/time-series data of mutual funds and popular benchmark indices in India
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CausalityTools.jlAlgorithms for causal inference and the detection of dynamical coupling from time series, and for approximation of the transfer operator and invariant measures.
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Time-Series-ForecastingRainfall analysis of Maharashtra - Season/Month wise forecasting. Different methods have been used. The main goal of this project is to increase the performance of forecasted results during rainy seasons.
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autoplaitPython implementation of AutoPlait (SIGMOD'14) without smoothing algorithm. NOTE: This repository is for my personal use.
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wax-mlA Python library for machine-learning and feedback loops on streaming data
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PlotTwistPlotTwist - a web app for plotting and annotating time-series data
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sysidentpyA Python Package For System Identification Using NARMAX Models
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DeepEchoSynthetic Data Generation for mixed-type, multivariate time series.
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ww tvol studyProcess global-scale satellite and airborne elevation data into time series of glacier mass change: Hugonnet et al. (2021).
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xephon-kA time series database prototype with multiple backends
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DTWDynamic Time Warping in Python / C (using ctypes)
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walkerBayesian Generalized Linear Models with Time-Varying Coefficients
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cantorData abstraction, storage, discovery, and serving system
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SCINetForecast time series and stock prices with SCINet
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midasmlmidasml package is dedicated to run predictive high-dimensional mixed data sampling models
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notebooksCode examples for pyFTS
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cnosdbAn Open Source Distributed Time Series Database with high performance, high compression ratio and high usability.
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sknifedatarsknifedatar is a package that serves primarily as an extension to the modeltime 📦 ecosystem. In addition to some functionalities of spatial data and visualization.
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pmtsPoor man's time series functionality for PostgreSQL
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msdaLibrary for multi-dimensional, multi-sensor, uni/multivariate time series data analysis, unsupervised feature selection, unsupervised deep anomaly detection, and prototype of explainable AI for anomaly detector
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danaDANA: Dimension-Adaptive Neural Architecture (UbiComp'21)( ACM IMWUT)
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forecasting modelsAn overview of univariate time series forecasting models with sample code.
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tsmpR Functions implementing UCR Matrix Profile Algorithm
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gold-price-analysisCreating a model to analyze and predict the trend of the prices of gold.
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aheadUnivariate and multivariate time series forecasting
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ctsaA Univariate Time Series Analysis and ARIMA Modeling Package in ANSI C. Updated with SARIMAX and Auto ARIMA.
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mlforecastScalable machine 🤖 learning for time series forecasting.
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pybacenThis library was developed for economic analysis in the Brazilian scenario (Investments, micro and macroeconomic indicators)
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cnn-rnn-bitcoinReusable CNN and RNN model doing time series binary classification
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talariaTalariaDB is a distributed, highly available, and low latency time-series database for Presto
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micropredictionIf you can measure it, consider it predicted
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cubism-esES6 module of cubism.js, based on d3v5.
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Shapley regressionsStatistical inference on machine learning or general non-parametric models
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ninja automatorAcquire data with honour and wisdom — using the way of the ninja.
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ewstoolsPython package for early warning signals (EWS) of bifurcations in time series data.
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Start majaTo process a Sentinel-2 time series with MAJA cloud detection and atmospheric correction processor
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modeltime.resampleResampling Tools for Time Series Forecasting with Modeltime
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fastverseAn Extensible Suite of High-Performance and Low-Dependency Packages for Statistical Computing and Data Manipulation in R
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renewcastRenewcast: Forecasting Renewable Electricity Generation in EU Countries.
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AutoformerAbout Code release for "Autoformer: Decomposition Transformers with Auto-Correlation for Long-Term Series Forecasting" (NeurIPS 2021), https://arxiv.org/abs/2106.13008
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Deep XFPackage towards building Explainable Forecasting and Nowcasting Models with State-of-the-art Deep Neural Networks and Dynamic Factor Model on Time Series data sets with single line of code. Also, provides utilify facility for time-series signal similarities matching, and removing noise from timeseries signals.
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tempoAPI for manipulating time series on top of Apache Spark: lagged time values, rolling statistics (mean, avg, sum, count, etc), AS OF joins, downsampling, and interpolation
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ticktockAn OpenTSDB-like time series database, with much better performance.
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wetterdienstOpen weather data for humans
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IMCtermiteEnables extraction of measurement data from binary files with extension 'raw' used by proprietary software imcFAMOS/imcSTUDIO and facilitates its storage in open source file formats
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readabsDownload and tidy time series data from the Australian Bureau of Statistics in R
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P4JPeriodic time series analysis tools based on information theory
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state-spacesSequence Modeling with Structured State Spaces
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downsampleCollection of several downsampling methods for time series visualisation purposes.
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tsfusePython package for automatically constructing features from multiple time series
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