Time series analysis with Python cookbook : practical recipes for the complete time series workflow, from modern data engineering to advanced forecasting and anomaly detection / Tarek A. Atwan
Material type:
TextSeries: Expert insightPublication details: Birmingham : Packt Publishing, 2026Edition: 2nd edDescription: xvii, 790 pISBN: - 9781805124283
- 519.54 ATW-T
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| Current library | Call number | Status | Barcode | |
|---|---|---|---|---|
| UMT Main Campus | 519.54 ATW-T (Browse shelf(Opens below)) | Available | 153074 |
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| 519.536 WEI-A Applied linear regression | 519.538 GRI-E Effect sizes for research | 519.53802855723 FAR-L Linear models with R. | 519.54 ATW-T Time series analysis with Python cookbook : practical recipes for the complete time series workflow, from modern data engineering to advanced forecasting and anomaly detection / | 519.54 CAS-S Statistical inference | 519.54 GIB-N Nonparametric statistical inference | 519.54 KIM-S Statistical methods for handling incomplete data / |
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To use time series data to your advantage, you need to be well-versed in data preparation, analysis, and forecasting. This fully updated second edition includes chapters on probabilistic models and signal processing techniques, as well as new content on transformers. Additionally, you will leverage popular libraries and their latest releases covering Pandas, Polars, Sktime, stats models, stats forecast, Darts, and Prophet for time series with new and relevant examples. You'll start by ingesting time series data from various sources and formats, and learn strategies for handling missing data, dealing with time zones and custom business days, and detecting anomalies using intuitive statistical methods. Further, you'll explore forecasting using classical statistical models (Holt-Winters, SARIMA, and VAR). Learn practical techniques for handling non-stationary data, using power transforms, ACF and PACF plots, and decomposing time series data with multiple seasonal patterns. Then we will move into more advanced topics such as building ML and DL models using TensorFlow and PyTorch, and explore probabilistic modeling techniques. In this part, you’ll also learn how to evaluate, compare, and optimize models, making sure that you finish this book well-versed in wrangling data with Python
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