RamiKrispin/atsaf
Applied Time Series Analysis and Forecasting
This book helps data analysts, business intelligence professionals, and data scientists understand and predict trends over time using various methods. It takes raw time-series data, like sales figures or sensor readings, and guides you through analysis and forecasting techniques to produce actionable insights and future predictions. You'll learn to apply these methods in real-world scenarios.
169 stars. No commits in the last 6 months.
Use this if you need to analyze historical data that changes over time and forecast future values for business planning, resource allocation, or market analysis.
Not ideal if you are looking for a plug-and-play software solution or do not have a foundational understanding of data analysis.
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R
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Last pushed
Apr 02, 2023
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