Zum Hauptinhalt springen Zur Suche springen Zur Hauptnavigation springen
Beschreibung
Mastering AI, machine learning, and data science often means piecing together concepts scattered across countless resources, statistics, and visualizations to foundational models and large language models. This book, the result of eight years of effort, brings it all together in one accessible, engaging package. It clarifies artificial intelligence and data science, blending core mathematical principles with a clear, reader-friendly approach.

Unlike traditional textbooks that lean heavily on equations and mathematical formalization, the author starts with minimal prerequisites, layering deeper math as the reader progresses. Each concept, algorithm, or model is unpacked through clear, hands-on examples that build the reader's skills step by step. It strikes a balance between theoretical foundations and practical application, serving as both an academic reference and a practical guide.

Furthermore, the book uses humor, casual language, and comics to make the challenging concepts and topics relatable and fun. Any resemblance between the jokes and real life is pure coincidence, and no offense is intended.

Table of ContentsPart I: Introduction & Preliminary RequirementsChapter 1: Basic Concepts
Chapter 2: Visualization
Chapter 3: Probability and Statistics

Part II: Unsupervised LearningChapter 4: Clustering
Chapter 5: Frequent Itemset, Sequence Mining and Information Retrieval

Part III: Data EngineeringChapter 6: Feature Engineering
Chapter 7: Dimensionality Reduction and Data Decomposition

Part IV: Supervised LearningChapter 8: Regression Analysis
Chapter 9: Classification

Part V: Neural NetworkChapter 10: Neural Networks and Deep Learning
Chapter 11: Self-Supervised Deep Learning
Chapter 12: Deep Learning Models and Applications (Text, Vision, and Audio)

Part VI: Reinforcement LearningChapter 13: Reinforcement Learning

Part VII: Other Algorithms and ConceptsChapter 14: Making Lighter Neural Network and Machine Learning Models
Chapter 15: Graph Mining Algorithms
Chapter 16: Concepts and Challenges of Working with Data
Mastering AI, machine learning, and data science often means piecing together concepts scattered across countless resources, statistics, and visualizations to foundational models and large language models. This book, the result of eight years of effort, brings it all together in one accessible, engaging package. It clarifies artificial intelligence and data science, blending core mathematical principles with a clear, reader-friendly approach.

Unlike traditional textbooks that lean heavily on equations and mathematical formalization, the author starts with minimal prerequisites, layering deeper math as the reader progresses. Each concept, algorithm, or model is unpacked through clear, hands-on examples that build the reader's skills step by step. It strikes a balance between theoretical foundations and practical application, serving as both an academic reference and a practical guide.

Furthermore, the book uses humor, casual language, and comics to make the challenging concepts and topics relatable and fun. Any resemblance between the jokes and real life is pure coincidence, and no offense is intended.

Table of ContentsPart I: Introduction & Preliminary RequirementsChapter 1: Basic Concepts
Chapter 2: Visualization
Chapter 3: Probability and Statistics

Part II: Unsupervised LearningChapter 4: Clustering
Chapter 5: Frequent Itemset, Sequence Mining and Information Retrieval

Part III: Data EngineeringChapter 6: Feature Engineering
Chapter 7: Dimensionality Reduction and Data Decomposition

Part IV: Supervised LearningChapter 8: Regression Analysis
Chapter 9: Classification

Part V: Neural NetworkChapter 10: Neural Networks and Deep Learning
Chapter 11: Self-Supervised Deep Learning
Chapter 12: Deep Learning Models and Applications (Text, Vision, and Audio)

Part VI: Reinforcement LearningChapter 13: Reinforcement Learning

Part VII: Other Algorithms and ConceptsChapter 14: Making Lighter Neural Network and Machine Learning Models
Chapter 15: Graph Mining Algorithms
Chapter 16: Concepts and Challenges of Working with Data
Über den Autor
Reza Rawassizadeh is a professor of Computer Science at Boston University with over a decade of experience in academic research and industrial projects. His scholarly contributions span digital health, ubiquitous technologies, resource-efficient computing, and on-device AI/machine learning. His research emphasizes developing efficient machine learning and AI models tailored for affordable hardware platforms, advancing the democratization of AI.
Details
Erscheinungsjahr: 2025
Genre: Importe, Informatik
Rubrik: Naturwissenschaften & Technik
Medium: Taschenbuch
ISBN-13: 9798992162110
Sprache: Englisch
Einband: Kartoniert / Broschiert
Autor: Rawassizadeh, Reza
Hersteller: Reza Rawassizadeh
Verantwortliche Person für die EU: Libri GmbH, Europaallee 1, D-36244 Bad Hersfeld, gpsr@libri.de
Maße: 280 x 216 x 62 mm
Von/Mit: Reza Rawassizadeh
Erscheinungsdatum: 15.03.2025
Gewicht: 2,864 kg
Artikel-ID: 135069502

Ähnliche Produkte