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      Advanced Forecasting with Python: With State-of-the-Art-Models Including LSTMs, Facebook’s Prophet, and Amazon’s DeepAR

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      Firm sale: non returnable item
      SKU 9781484271490 Categories ,
      Select Guide Rating
      Cover all the machine learning techniques relevant for forecasting problems, ranging from univariate and multivariate time series to supervised learning, to state-of-the-art deep forecasting models such as LSTMs, recurrent neural networks, Facebook’s open-source Prophet mode...

      £49.99

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      Description

      Product ID:9781484271490
      Product Form:Paperback / softback
      Country of Manufacture:US
      Title:Advanced Forecasting with Python
      Subtitle:With State-of-the-Art-Models Including LSTMs, Facebook’s Prophet, and Amazon’s DeepAR
      Authors:Author: Joos Korstanje
      Page Count:296
      Subjects:Programming and scripting languages: general, Programming & scripting languages: general, Machine learning, Machine learning
      Description:Select Guide Rating
      Cover all the machine learning techniques relevant for forecasting problems, ranging from univariate and multivariate time series to supervised learning, to state-of-the-art deep forecasting models such as LSTMs, recurrent neural networks, Facebook’s open-source Prophet model, and Amazon’s DeepAR model. Rather than focus on a specific set of models, this book presents an exhaustive overview of all the techniques relevant to practitioners of forecasting. It begins by explaining the different categories of models that are relevant for forecasting in a high-level language. Next, it covers univariate and multivariate time series models followed by advanced machine learning and deep learning models. It concludes with reflections on model selection such as benchmark scores vs. understandability of models vs. compute time, and automated retraining and updating of models. Each of the models presented in this book is covered in depth, with an intuitive simple explanation ofthe model, a mathematical transcription of the idea, and Python code that applies the model to an example data set. Reading this book will add a competitive edge to your current forecasting skillset. The book is also adapted to those who have recently started working on forecasting tasks and are looking for an exhaustive book that allows them to start with traditional models and gradually move into more and more advanced models. What You Will LearnCarry out forecasting with PythonMathematically and intuitively understand traditional forecasting models and state-of-the-art machine learning techniquesGain the basics of forecasting and machine learning, including evaluation of models, cross-validation, and back testingSelect the right model for the right use case Who This Book Is ForThe advanced nature of the later chapters makes the book relevant for appliedexperts working in the domain of forecasting, as the models covered have been published only recently. Experts working in the domain will want to update their skills as traditional models are regularly being outperformed by newer models.

      Cover all the machine learning techniques relevant for forecasting problems, ranging from univariate and multivariate time series to supervised learning, to state-of-the-art deep forecasting models such as LSTMs, recurrent neural networks, Facebook''s open-source Prophet model, and Amazon''s DeepAR model.

      Rather than focus on a specific set of models, this book presents an exhaustive overview of all the techniques relevant to practitioners of forecasting. It begins by explaining the different categories of models that are relevant for forecasting in a high-level language. Next, it covers univariate and multivariate time series models followed by advanced machine learning and deep learning models. It concludes with reflections on model selection such as benchmark scores vs. understandability of models vs. compute time, and automated retraining and updating of models.

      Each of the models presented in this book is covered in depth, with an intuitive simple explanation of the model, a mathematical transcription of the idea, and Python code that applies the model to an example data set.

      Reading this book will add a competitive edge to your current forecasting skillset. The book is also adapted to those who have recently started working on forecasting tasks and are looking for an exhaustive book that allows them to start with traditional models and gradually move into more and more advanced models. 

      What You Will Learn

      • Carry out forecasting with Python
      • Mathematically and intuitively understand traditional forecasting models and state-of-the-art machine learning techniques
      • Gain the basics of forecasting and machine learning, including evaluation of models, cross-validation, and back testing
      • Select the right model for the right use case

      Who This Book Is For

      The advanced nature of the later chapters makes the book relevant for applied experts working in the domain of forecasting, as the models covered have been published only recently. Experts working in the domain will want to update their skills as traditional models are regularly being outperformed by newer models.




      Imprint Name:APress
      Publisher Name:APress
      Country of Publication:GB
      Publishing Date:2021-07-03

      Additional information

      Weight598 g
      Dimensions178 × 253 × 22 mm