Machine Learning Algorithms in Depth

Smolyakov, Vadim

  • 出版商: Manning
  • 出版日期: 2024-06-25
  • 售價: $2,970
  • 貴賓價: 9.5$2,822
  • 語言: 英文
  • 頁數: 325
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 1633439216
  • ISBN-13: 9781633439214
  • 相關分類: Machine LearningAlgorithms-data-structures
  • 尚未上市,歡迎預購

相關主題

商品描述

Develop a mathematical intuition for how machine learning algorithms work so you can improve model performance and effectively troubleshoot complex ML problems.

In Machine Learning Algorithms in Depth you'll explore practical implementations of dozens of ML algorithms including:

  • Monte Carlo Stock Price Simulation
  • Image Denoising using Mean-Field Variational Inference
  • EM algorithm for Hidden Markov Models
  • Imbalanced Learning, Active Learning and Ensemble Learning
  • Bayesian Optimization for Hyperparameter Tuning
  • Dirichlet Process K-Means for Clustering Applications
  • Stock Clusters based on Inverse Covariance Estimation
  • Energy Minimization using Simulated Annealing
  • Image Search based on ResNet Convolutional Neural Network
  • Anomaly Detection in Time-Series using Variational Autoencoders

Machine Learning Algorithms in Depth dives into the design and underlying principles of some of the most exciting machine learning (ML) algorithms in the world today. With a particular emphasis on probability-based algorithms, you'll learn the fundamentals of Bayesian inference and deep learning. You'll also explore the core data structures and algorithmic paradigms for machine learning. Each algorithm is fully explored with both math and practical implementations so you can see how they work and how they're put into action.

Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications.

About the technology

Fully understanding how machine learning algorithms function is essential for any serious ML engineer. This vital knowledge lets you modify algorithms to your specific needs, understand the tradeoffs when picking an algorithm for a project, and better interpret and explain your results to your stakeholders. This unique guide will take you from relying on one-size-fits-all ML libraries to developing your own algorithms to solve your business needs.

About the book

Machine Learning Algorithms in Depth dives deep into the how and the why of machine learning algorithms. For each category of algorithm, you'll go from math-first principles to a hands-on implementation in Python. You'll explore dozens of examples from across all the fields of machine learning, including finance, computer vision, NLP, and more. Each example is accompanied by worked-out derivations and details, as well as insightful code samples and graphics. By the time you're done reading, you'll know how major algorithms work under the hood--and be a better machine learning practitioner for it.

About the reader

For intermediate machine learning practitioners familiar with linear algebra, probability, and basic calculus.

About the author

Vadim Smolyakov is a data scientist in the Enterprise & Security DI R&D team at Microsoft. He is a former PhD student in AI at MIT CSAIL with research interests in Bayesian inference and deep learning. Prior to joining Microsoft, Vadim developed machine learning solutions in the e-commerce space.

商品描述(中文翻譯)

發展對機器學習算法的數學直覺,以便提高模型性能並有效解決複雜的機器學習問題。

在《深入機器學習算法》中,您將探索數十種機器學習算法的實際實現,包括:
- 蒙特卡羅股價模擬
- 使用均場變分推理的圖像去噪
- 隱馬爾可夫模型的EM算法
- 不平衡學習、主動學習和集成學習
- 超參數調整的貝葉斯優化
- 用於聚類應用的狄利克雷過程K-Means
- 基於逆協方差估計的股票集群
- 使用模擬退火的能量最小化
- 基於ResNet卷積神經網絡的圖像搜索
- 使用變分自編碼器進行時間序列的異常檢測

《深入機器學習算法》深入探討了當今世界上一些最令人興奮的機器學習(ML)算法的設計和基本原理。特別強調基於概率的算法,您將學習貝葉斯推斷和深度學習的基礎知識。您還將探索機器學習的核心數據結構和算法範式。每個算法都有數學和實際實現的全面探討,以便您了解它們的工作原理和實際應用。

購買印刷版書籍還包括Manning Publications提供的PDF、Kindle和ePub格式的免費電子書。

關於技術:
對於任何嚴肅的機器學習工程師來說,充分理解機器學習算法的運作方式至關重要。這種重要知識使您能夠根據自己的需求修改算法,了解在項目中選擇算法時的權衡,並更好地解釋和說明結果給利益相關者。這本獨特的指南將引導您從依賴通用機器學習庫到開發自己的算法來解決業務需求。

關於本書:
《深入機器學習算法》深入探討了機器學習算法的運作方式和原理。對於每個算法類別,您將從數學原理到Python的實際實現進行學習。您將探索機器學習各個領域的數十個實例,包括金融、計算機視覺、自然語言處理等。每個實例都附有詳細的推導和細節,以及有見地的代碼示例和圖形。閱讀完畢後,您將了解主要算法的內部運作方式,並成為更好的機器學習從業者。

關於讀者:
適合具備線性代數、概率和基礎微積分知識的中級機器學習從業者。

關於作者:
Vadim Smolyakov是微軟企業和安全DI R&D團隊的數據科學家。他是麻省理工學院CSAIL的人工智能博士生,研究興趣包括貝葉斯推斷和深度學習。在加入微軟之前,Vadim在電子商務領域開發機器學習解決方案。

作者簡介

Vadim Smolyakov is a data scientist in Enterprise & Security DI R&D team at Microsoft. He is a former PhD student in AI at MIT CSAIL with research interests in Bayesian inference and deep learning. Prior to joining Microsoft, Vadim developed machine learning solutions in the e-commerce space.

作者簡介(中文翻譯)

Vadim Smolyakov是微軟企業與安全DI研發團隊的資料科學家。他曾是麻省理工學院CSAIL的人工智慧博士生,研究興趣包括貝葉斯推論和深度學習。在加入微軟之前,Vadim在電子商務領域開發了機器學習解決方案。