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{ "item_title" : "Practical Probabilistic Programming", "item_author" : [" Avi Pfeffer "], "item_description" : "Summary Practical Probabilistic Programming introduces the working programmer to probabilistic programming. In it, you'll learn how to use the PP paradigm to model application domains and then express those probabilistic models in code. Although PP can seem abstract, in this book you'll immediately work on practical examples, like using the Figaro language to build a spam filter and applying Bayesian and Markov networks, to diagnose computer system data problems and recover digital images. Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the Technology The data you accumulate about your customers, products, and website users can help you not only to interpret your past, it can also help you predict your future Probabilistic programming uses code to draw probabilistic inferences from data. By applying specialized algorithms, your programs assign degrees of probability to conclusions. This means you can forecast future events like sales trends, computer system failures, experimental outcomes, and many other critical concerns. About the Book Practical Probabilistic Programming introduces the working programmer to probabilistic programming. In this book, you'll immediately work on practical examples like building a spam filter, diagnosing computer system data problems, and recovering digital images. You'll discover probabilistic inference, where algorithms help make extended predictions about issues like social media usage. Along the way, you'll learn to use functional-style programming for text analysis, object-oriented models to predict social phenomena like the spread of tweets, and open universe models to gauge real-life social media usage. The book also has chapters on how probabilistic models can help in decision making and modeling of dynamic systems. What's InsideIntroduction to probabilistic modelingWriting probabilistic programs in FigaroBuilding Bayesian networksPredicting product lifecyclesDecision-making algorithmsAbout the Reader This book assumes no prior exposure to probabilistic programming. Knowledge of Scala is helpful. About the Author Avi Pfeffer is the principal developer of the Figaro language for probabilistic programming. Table of ContentsPART 1 INTRODUCING PROBABILISTIC PROGRAMMING AND FIGAROProbabilistic programming in a nutshellA quick Figaro tutorialCreating a probabilistic programming applicationPART 2 WRITING PROBABILISTIC PROGRAMSProbabilistic models and probabilistic programsModeling dependencies with Bayesian and Markov networksUsing Scala and Figaro collections to build up modelsObject-oriented probabilistic modelingModeling dynamic systemsPART 3 INFERENCEThe three rules of probabilistic inferenceFactored inference algorithmsSampling algorithmsSolving other inference tasksDynamic reasoning and parameter learning", "item_img_path" : "https://covers3.booksamillion.com/covers/bam/1/61/729/233/1617292338_b.jpg", "price_data" : { "retail_price" : "59.99", "online_price" : "59.99", "our_price" : "59.99", "club_price" : "59.99", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Practical Probabilistic Programming|Avi Pfeffer

Practical Probabilistic Programming

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Overview

Summary Practical Probabilistic Programming introduces the working programmer to probabilistic programming. In it, you'll learn how to use the PP paradigm to model application domains and then express those probabilistic models in code. Although PP can seem abstract, in this book you'll immediately work on practical examples, like using the Figaro language to build a spam filter and applying Bayesian and Markov networks, to diagnose computer system data problems and recover digital images. Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the Technology The data you accumulate about your customers, products, and website users can help you not only to interpret your past, it can also help you predict your future Probabilistic programming uses code to draw probabilistic inferences from data. By applying specialized algorithms, your programs assign degrees of probability to conclusions. This means you can forecast future events like sales trends, computer system failures, experimental outcomes, and many other critical concerns. About the Book Practical Probabilistic Programming introduces the working programmer to probabilistic programming. In this book, you'll immediately work on practical examples like building a spam filter, diagnosing computer system data problems, and recovering digital images. You'll discover probabilistic inference, where algorithms help make extended predictions about issues like social media usage. Along the way, you'll learn to use functional-style programming for text analysis, object-oriented models to predict social phenomena like the spread of tweets, and open universe models to gauge real-life social media usage. The book also has chapters on how probabilistic models can help in decision making and modeling of dynamic systems. What's Inside

  • Introduction to probabilistic modeling
  • Writing probabilistic programs in Figaro
  • Building Bayesian networks
  • Predicting product lifecycles
  • Decision-making algorithms

About the Reader This book assumes no prior exposure to probabilistic programming. Knowledge of Scala is helpful. About the Author Avi Pfeffer is the principal developer of the Figaro language for probabilistic programming. Table of Contents
  1. PART 1 INTRODUCING PROBABILISTIC PROGRAMMING AND FIGARO
  2. Probabilistic programming in a nutshell
  3. A quick Figaro tutorial
  4. Creating a probabilistic programming applicationPART 2 WRITING PROBABILISTIC PROGRAMS
  5. Probabilistic models and probabilistic programs
  6. Modeling dependencies with Bayesian and Markov networks
  7. Using Scala and Figaro collections to build up models
  8. Object-oriented probabilistic modeling
  9. Modeling dynamic systemsPART 3 INFERENCE
  10. The three rules of probabilistic inference
  11. Factored inference algorithms
  12. Sampling algorithms
  13. Solving other inference tasks
  14. Dynamic reasoning and parameter learning

This item is Non-Returnable

Details

  • ISBN-13: 9781617292330
  • ISBN-10: 1617292338
  • Publisher: Manning Publications
  • Publish Date: April 2016
  • Dimensions: 9.2 x 7.3 x 1 inches
  • Shipping Weight: 1.6 pounds
  • Page Count: 456

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