Time Series Analysis with Python Cookbook, Second Edition - Published by Packt
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Updated
Feb 12, 2026 - Jupyter Notebook
Time Series Analysis with Python Cookbook, Second Edition - Published by Packt
Nixtla time series forecasting plugins for Claude Code. StatsForecast, MLForecast, and NeuralForecast integrations with agent skills.
Time-Series analysis, statistical and machine learning models for forecasting, regression, and classification
Tier-based daily price-forecasting benchmark for 49 Nifty 50 stocks (1999–2026): baselines vs classical (ARIMA/ETS/Theta/CES) vs global LightGBM, walk-forward CV, leakage-audited, with a full ML thesis. Runs on a Raspberry Pi 5.
Drop-in forecasting for Prometheus metrics, PromQL in, forecasts out as first-class metrics. Runs statsforecast models against a long-term TSDB and serves predictions on /metrics. Helm-installable, stateless.
Time Series Forecasting project using StatsForecast and statistical models like AutoARIMA, Seasonal Naive, and Window Average. Includes preprocessing, feature engineering, visualization, and model evaluation.
A comparison of time-series forecasting models on a weekday-only data using StatsForecast library.
Hierarchical demand forecasting · M5 Walmart · 3049 series · 6 levels · MinT reconciliation · LightGBM · DuckDB · conformal prediction · FastAPI · 135 tests
An illustrated 30-day guide to time series forecasting using the nixtlaverse Python toolkit
Forecast time series with >95% accuracy
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