$25+

Mastering Modern Time Series Forecasting : A Comprehensive Guide to Statistical, Machine Learning, and Deep Learning Models in Python

I want this!

Mastering Modern Time Series Forecasting : A Comprehensive Guide to Statistical, Machine Learning, and Deep Learning Models in Python

$25+

📘 Mastering Modern Time Series Forecasting (preorder - release in 2025)

The Definitive Guide to Statistical, Machine Learning & Deep Learning Models in Python

Let’s be honest — most forecasting books are either outdated, too shallow, or written by folks who’ve never actually built a real forecasting system.

If you’ve ever felt frustrated by books that skip the basics, toss in code without explaining it, or barely touch on what forecasting really involves — you’re not alone.

This is different.

Mastering Modern Time Series Forecasting is your all-in-one, no-shortcuts guide to building reliable, high-impact forecasting systems. Whether you're just getting started or looking to deepen your expertise, this book takes you from rock-solid foundations to the latest advances in forecasting — including deep learning, transformers, and FTSM (Foundational Time Series Models).

Written by a practitioner with over a decade of experience, who’s built production-grade forecasting systems for multibillion-dollar companies, this book is grounded in reality — not hype. The systems I’ve helped build have delivered multimillion-dollar business value, but I’ve also seen the other side: data science teams chasing shiny tools, only to ship systems that crash in production, fail silently, or burn through budgets without results.

This book is a response to that — combining practical Python examples, real-world case studies, and a clear path to building forecasting solutions that actually work, scale, and deliver value.

🔍 What You'll Learn

📘 Core Forecasting Foundations

Grasp what forecast accuracy really means, master model validation strategies, and sidestep common pitfalls that trip up even experienced practitioners.

📈 Classical Models, Done Right

In-depth, modern takes on ARIMA, Exponential Smoothing, and other classical statistical and econometrics models — with clarity, not complexity.

🤖 Machine Learning for Time Series

Build feature-rich forecasts using state-of-the-art ML techniques that go far beyond black-box models.

🧠 Deep Learning & Transformers

Explore powerful deep learning architectures, including Transformer-based models — all with clear, readable PyTorch code.

📊 FTSMs – Foundational Time Series Models
Explore the rise of Foundational Time Series Models (FTSMs) — large, pre-trained models designed to generalize across domains, tasks, and time horizons. Think GPT for time series.

🎯 Probabilistic & Interpretable Forecasting

Move beyond point forecasts with uncertainty quantification, conformal prediction, SHAP, attention mechanisms, and explainability tools.

📊 Real-World Case Studies

Apply what you’ve learned on practical datasets across domains like retail, energy, and finance.

🚀 MLOps & Deployment

Learn how to deploy, monitor, and scale your forecasting pipelines in the real world — without the headaches.

👥 Who It’s For

  • Data Scientists & ML Engineers
    Solving real-world forecasting challenges and building production-ready systems.
  • Analysts & Developers
    Looking for a practical, hands-on reference that covers both fundamentals and advanced techniques.
  • Students, Educators & Researchers
    In need of a modern, curriculum-friendly resource grounded in both theory and application.
  • Demand Planners & Business Strategists
    Focused on delivering real value through accurate, actionable forecasts.

🧠 Why This Book Stands Out

  • 🔍 Starts with what matters — metrics and validation
    Before jumping into models, you’ll learn how to evaluate them properly so you’re building on a solid foundation.
  • 🧠 Focuses on understanding, not just coding
    Learn how methods work, why they work, and when to use them — not just how to run the code.
  • 💻 Fully documented, transparent code
    No black boxes. Every example is clearly explained so you can learn and adapt, not guess.
  • 🔄 Updated continuously with reader feedback
    Buy once, benefit forever — you’ll get lifetime updates as the field evolves.
  • 📚 Everything in one place
    From classical models to deep learning and FTSMs — no need to juggle multiple resources ever again.

📦 What You Get

  • Instant download of the full book
  • All code examples, datasets, and notebooks
  • Free lifetime updates (including new chapters, errata fixes, and bonus content)
  • Exclusive early access to upcoming bonus chapters & Q&A sessions

💸 Pricing

  • 🎉 Introductory Launch Price Suggested: $29 | Minimum: $20
  • This is the initial price — it will increase as more chapters, tools, and content are released.
  • If you find value or want to support the project, feel free to pay what it’s worth to you ❤️

Ready to take your forecasting skills from stats to neural nets, and from theory to real-world deployment?

👉 Hit “Buy Now” and start mastering forecasting like never before.

$
I want this!

Mastering Modern Time Series Forecasting 📘 The all-in-one guide to forecasting with Python—covering everything from ARIMA to Transformers. Build accurate, explainable, and production-ready time series models using statistical methods, machine learning, and deep learning. With real-world case studies, documented Python code, and a focus on fundamentals like validation and metrics, this book is your essential resource—whether you're forecasting demand, energy, finance, or anything in between. 🎯 For data scientists, analysts, ML engineers, and serious learners. 💡 Formats: PDF, EPUB, MOBI — includes all code and lifetime updates.

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No refunds allowed

This is a preorder for the upcoming book, scheduled for full release in 2025.
Chapters will be released incrementally as the book progresses, and the price will increase over time to reflect new content.
Preordering now guarantees access to the complete book and all future updates at no additional cost.

Last updated Apr 13, 2025