BOOKS - 40 Algorithms Every Data Scientist Should Know Navigating through essential A...
40 Algorithms Every Data Scientist Should Know Navigating through essential AI and ML algorithms - Jurgen Weichenberger, Huw Kwon 2025 EPUB BPB Publications BOOKS
ECO~19 kg CO²

2 TON

Views
67826

Telegram
 
40 Algorithms Every Data Scientist Should Know Navigating through essential AI and ML algorithms
Author: Jurgen Weichenberger, Huw Kwon
Year: 2025
Pages: 588
Format: EPUB
File size: 10.1 MB
Language: ENG



Pay with Telegram STARS
Book Description: The book "40 Algorithms Every Data Scientist Should Know" is a comprehensive guide that provides an overview of the most important algorithms in machine learning and artificial intelligence. The book covers a wide range of topics, from basic linear regression to more advanced techniques such as neural networks and deep learning. It is designed to help data scientists navigate the complex landscape of AI and ML algorithms and provide them with the tools they need to succeed in their field. The book begins by discussing the importance of understanding the historical context of AI and ML algorithms, highlighting how these technologies have evolved over time and the key milestones that have shaped the industry. It then delves into the fundamentals of machine learning, explaining how algorithms work and how they are used in real-world applications. From there, it covers a variety of algorithms, including decision trees, clustering, and support vector machines, providing examples of how each algorithm can be applied in practice. The book also explores the challenges of working with large datasets and the importance of model selection, highlighting the need for data scientists to understand the strengths and weaknesses of different algorithms and how to choose the right one for the job. Additionally, it touches on the ethical considerations of using AI and ML, such as bias and privacy concerns, and provides guidance on how to address these issues in a responsible manner. Throughout the book, the author emphasizes the need for data scientists to develop a personal paradigm for perceiving the technological process of developing modern knowledge. This involves not only understanding the algorithms themselves but also the broader context of technology evolution and its impact on society.
Книга «40 алгоритмов, которые должен знать каждый специалист по анализу данных» представляет собой всеобъемлющее руководство, в котором представлен обзор наиболее важных алгоритмов машинного обучения и искусственного интеллекта. Книга охватывает широкий круг тем, от базовой линейной регрессии до более продвинутых техник, таких как нейронные сети и глубокое обучение. Он призван помочь специалистам по обработке данных ориентироваться в сложном ландшафте алгоритмов ИИ и ML и предоставить им инструменты, необходимые для успеха в своей области. Книга начинается с обсуждения важности понимания исторического контекста алгоритмов AI и ML, подчеркивая, как эти технологии развивались с течением времени и ключевые вехи, которые сформировали отрасль. Затем он углубляется в основы машинного обучения, объясняя, как работают алгоритмы и как они используются в реальных приложениях. Оттуда он охватывает множество алгоритмов, включая деревья решений, кластеризацию и векторные машины поддержки, предоставляя примеры того, как каждый алгоритм может быть применен на практике. Книга также исследует проблемы работы с большими наборами данных и важность выбора модели, подчеркивая необходимость для специалистов по данным понимать сильные и слабые стороны различных алгоритмов и то, как выбрать подходящий для работы. Кроме того, он затрагивает этические соображения использования ИИ и МЛ, такие как предвзятость и проблемы конфиденциальности, и предоставляет руководство о том, как ответственно решать эти проблемы. На протяжении всей книги автор подчеркивает необходимость для data scientists разработать личную парадигму восприятия технологического процесса развития современных знаний. Это включает в себя не только понимание самих алгоритмов, но также и более широкий контекст эволюции технологий и ее влияния на общество.
''

You may also be interested in:

Microsoft Azure Security Technologies (AZ-500) - A Certification Guide Get qualified to secure Azure AD, Network, Compute, Storage and Data services through Security Center, Sentinel and other Azure s
Practical Spring LDAP Using Enterprise Java-Based LDAP in Spring Data and Spring Framework 6, Second Edition
Practical Spring LDAP Using Enterprise Java-Based LDAP in Spring Data and Spring Framework 6, Second Edition
Python Programming A beginners’ guide to understand machine learning and master coding. Includes Smalltalk, Java, TCL, javascript, Perl, Scheme, Common Lisp, Data Science Analysis, C++, PHP & Rub
Ultimate SQL Server and Azure SQL for Data Management and Modernization Full Spectrum Expert Solutions for Deploying, Securing, and Optimizing SQL Server in Linux, Cloud, and Hybrid Environments with
Ultimate SQL Server and Azure SQL for Data Management and Modernization Full Spectrum Expert Solutions for Deploying, Securing, and Optimizing SQL Server in Linux, Cloud, and Hybrid Environments with
Unsupervised Machine Learning in Python Master Data Science and Machine Learning with Cluster Analysis, Gaussian Mixture Models, and Principal Components Analysis
Evolve from Infrastructure to Innovation with SAP on AWS Strategize Beyond Infrastructure for Extending your SAP applications, Data Management, IoT & AI/ML integration and IT Operations using AWS Serv
Secure Edge Computing for IoT Master Security Protocols, Device Management, Data Encryption, and Privacy Strategies to Innovate Solutions for Edge Computing in IoT
Secure Edge Computing for IoT Master Security Protocols, Device Management, Data Encryption, and Privacy Strategies to Innovate Solutions for Edge Computing in IoT
Evolve from Infrastructure to Innovation with SAP on AWS Strategize Beyond Infrastructure for Extending your SAP applications, Data Management, IoT & AI/ML integration and IT Operations using AWS Serv
Machine Learning Hero Master Data Science with Python Essentials Machine Learning with Python Hands-On Guide from Beginner to Expert (Mastering the AI Revolution Book 1)
Ultimate Machine Learning with ML.NET Build, Optimize, and Deploy Powerful Machine Learning Models for Data-Driven Insights with ML.NET, Azure Functions, and Web API
Real-Time Data Acquisition in Human Physiology: Real-Time Acquisition, Processing, and Interpretation-A MATLAB-Based Approach
A Definitive Guide to Microsoft Excel 2019 FOR THE ELDERLY A Simple Guide to Microsoft Excel Formulas and Functions for Data Analysis
Secure Edge Computing for IoT: Master Security Protocols, Device Management, Data Encryption, and Privacy Strategies to Innovate Solutions for Edge Computing in IoT (English Edition)
Data Analysis: Python and Excel for Supply Chain: The ultimate analytics guide for Supply Chain 2024 (Supply Chain Analytica Book 2)
Ultimate Azure Synapse Analytics Unlock the Full Potential of Azure Synapse Analytics to Seamlessly Integrate, Analyze, and Optimize Complex Data for Enhanced Business Insights and Decision-Making
Ultimate Azure Synapse Analytics Unlock the Full Potential of Azure Synapse Analytics to Seamlessly Integrate, Analyze, and Optimize Complex Data for Enhanced Business Insights and Decision-Making
Ultimate Machine Learning with ML.NET: Build, Optimize, and Deploy Powerful Machine Learning Models for Data-Driven Insights with ML.NET, Azure Functions, and Web API (English Edition)
Ultimate Excel with Power Query and ChatGPT Master MS Excel|s Dynamic Lookup Functions, Generative AI, and Power Query to Navigate Data, Solve Complex Tasks and Optimize Productivity
Ultimate Excel with Power Query and ChatGPT Master MS Excel|s Dynamic Lookup Functions, Generative AI, and Power Query to Navigate Data, Solve Complex Tasks and Optimize Productivity
Python Machine Learning for Beginners Unlocking the Power of Data. A Beginner|s Guide to Machine Learning with Python
Python Machine Learning for Beginners Unlocking the Power of Data. A Beginner|s Guide to Machine Learning with Python
Python Machine Learning for Beginners: Unlocking the Power of Data. A Beginner|s Guide to Machine Learning with Python
Stream Analytics with Microsoft Azure Real-time data processing for quick insights using Azure Stream Analytics
Ultimate Azure Synapse Analytics: Unlock the Full Potential of Azure Synapse Analytics to Seamlessly Integrate, Analyze, and Optimize Complex Data for … and Decision-Making (English Edition)
Novel Radar Techniques and Applications Vol. 1 Real aperture array radar, Imaging radar, and Passive and multistatic radar; Vol.2 Waveform diversity and cognitive radar and Target tracking and data fu
It|s All Analytics, Part III: The Applications of AI, Analytics, and Data Science (It|s All Analytics, 3)
Ultimate Excel with Power Query and ChatGPT: Master MS Excel|s Dynamic Lookup Functions, Generative AI, and Power Query to Navigate Data, Solve … and Optimize Productivity (English Edition)
Big Data Technologies and Applications: 11th and 12th EAI International Conference, BDTA 2021 and BDTA 2022, Virtual Event, December 2021 and 2022, Proceedings … Telecommunications Engineering B
Google Workspace User Guide: A practical guide to using Google Workspace apps efficiently while integrating them with your data
The Medical Library Association Guide to Data Management for Librarians (Medical Library Association Books Series)
Python Machine Learning The Ultimate Guide for Beginners to Machine Learning with Python, Programming and Deep Learning, Artificial Intelligence, Neural Networks, and Data Science
Industry 4.0: The Power of Data: Selected Papers from the 15th International Conference on Industrial Engineering and Industrial Management (Lecture Notes in Management and Industrial Engineering)
Python Programming, Deep Learning: 3 Books in 1: A Complete Guide for Beginners, Python Coding for AI, Neural Networks, and Machine Learning, Data Science Analysis … Learners (Python Programming
Research Methods for Creating and Curating Data in the Digital Humanities (Research Methods for the Arts and Humanities)
Ultimate Enterprise Data Analysis and Forecasting using Python Leverage Cloud platforms with Azure Time Series Insights and AWS Forecast Components for Time Series Analysis and Forecasting with Deep l
Graph-Powered Analytics and Machine Learning with TigerGraph Driving Business Outcomes with Connected data Driving Business Outcomes with Connected Data (Final)
C++ File System Object In Cplusplus Object Oriented Programming Create a simplified database to record data Simple databases using system files with object-oriented programming technology