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Book Overview & Buying
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Table Of Contents
Machine Learning for Time Series with Python - Second Edition
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The sophisticated failures at Target, Amazon, and Nike weren't inevitable—they were preventable with the right understanding of how to build adaptive systems for temporal data. The six failure patterns we've identified and their corresponding solutions provide both the conceptual foundation and practical framework needed to build systems that work reliably when patterns change, not just when they stay the same.
These common mistakes provide a learning roadmap: you'll master temporal validation that respects time structure, develop models that adapt when patterns change, implement uncertainty quantification for better decisions, align metrics with business goals, and build deployment-ready systems from the start.
The next chapter begins building these capabilities with the practical foundations of data engineering and visualization—turning the conceptual framework into working systems that handle the temporal challenges that break standard machine learning approaches.
Let's begin.