BOOKS - Python Debugging for AI, Machine Learning, and Cloud Computing: A Pattern-Ori...
Python Debugging for AI, Machine Learning, and Cloud Computing: A Pattern-Oriented Approach - Dmitry Vostokov December 30, 2023 PDF  BOOKS
ECO~21 kg CO²

3 TON

Views
45536

Telegram
 
Python Debugging for AI, Machine Learning, and Cloud Computing: A Pattern-Oriented Approach
Author: Dmitry Vostokov
Year: December 30, 2023
Format: PDF
File size: PDF 7.1 MB
Language: English



Pay with Telegram STARS
Why Should You Read This Book? The world is changing rapidly and technology is evolving faster than ever before. With the rise of AI and cloud computing, software development has become more complex and challenging. As a result, debugging has become an essential skill for all software developers, AI ML engineers, and DevOps professionals. This book provides a comprehensive guide to Python debugging, which is crucial for developing robust and reliable AI machine learning and cloud computing software. It offers a novel pattern-oriented approach to diagnosing and debugging abnormal software structure and behavior, enabling you to understand the underlying causes of software failures and develop effective solutions. What's Inside? Part I: Introduction to Pattern-Oriented Debugging 1. Introduction to Pattern-Oriented Debugging 2. Debugging Process: Understanding the Basics 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4. Basic Debugging Concepts 5. Debugging Strategies: Essentials for Success 6. Case Studies in Python Debugging Part III: Cloud Native and Machine Learning Environments 7. Debugging in Cloud Native Environments 8. Debugging in Machine Learning Environments 9.
Зачем читать эту книгу? Мир быстро меняется, и технологии развиваются быстрее, чем когда-либо прежде. С ростом искусственного интеллекта и облачных вычислений разработка программного обеспечения стала более сложной и сложной. В результате отладка стала необходимым навыком для всех разработчиков программного обеспечения, инженеров AI ML и профессионалов DevOps. Эта книга содержит исчерпывающее руководство по отладке Python, которое имеет решающее значение для разработки надежного и надежного программного обеспечения для машинного обучения и облачных вычислений. Он предлагает новый ориентированный на шаблоны подход к диагностике и отладке ненормальной структуры и поведения программного обеспечения, позволяя понять основные причины сбоев программного обеспечения и разработать эффективные решения. Что внутри? Часть I: Введение в отладку, ориентированную на шаблоны 1. Введение в отладку, ориентированную на шаблоны 2. Процесс отладки: Основные сведения 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4. Основные принципы отладки 5. Стратегии отладки: основы успеха 6. Истории успеха в отладке Python Часть III: Облачные нативные среды и среды машинного обучения 7. Отладка в облачных средах 8. Отладка в средах машинного обучения 9.
Pourquoi lire ce livre ? monde change rapidement et la technologie évolue plus vite que jamais. Avec la croissance de l'intelligence artificielle et du cloud computing, le développement de logiciels est devenu plus complexe et plus complexe. En conséquence, le débogage est devenu une compétence nécessaire pour tous les développeurs de logiciels, les ingénieurs AI ML et les professionnels DevOps. Ce livre contient un guide complet sur le débogage de Python, qui est crucial pour le développement de logiciels robustes et fiables pour l'apprentissage automatique et le cloud computing. Il propose une nouvelle approche axée sur les modèles pour diagnostiquer et déboguer la structure anormale et le comportement du logiciel, vous permettant de comprendre les causes sous-jacentes des défaillances du logiciel et de développer des solutions efficaces. Qu'y a-t-il à l'intérieur ? Partie I : Introduction au débogage centré sur les motifs 1. Introduction au débogage centré sur les modèles 2. Processus de débogage : Informations de base 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4. Principes de base du débogage 5. Stratégies de débogage : bases du succès 6. Exemples de réussite dans le débogage Python Partie III : Environnements natifs cloud et apprentissage automatique 7. Débogage dans les environnements cloud 8. Débogage dans les environnements d'apprentissage automatique 9.
Por qué leer este libro? mundo está cambiando rápidamente y la tecnología está evolucionando más rápido que nunca. Con el crecimiento de la inteligencia artificial y la computación en la nube, el desarrollo de software se ha vuelto más complejo y complejo. Como resultado, la depuración se ha convertido en una habilidad necesaria para todos los desarrolladores de software, ingenieros de AI ML y profesionales de DevOps. Este libro contiene una guía exhaustiva de depuración de Python que es crucial para desarrollar software confiable y confiable para el aprendizaje automático y la computación en la nube. Ofrece un nuevo enfoque basado en plantillas para diagnosticar y depurar la estructura y el comportamiento anormales del software, lo que permite comprender las causas subyacentes de las fallas del software y desarrollar soluciones eficaces. Qué hay dentro? Parte I: Introducción a la depuración centrada en los patrones 1. Introducción a la depuración centrada en los patrones 2. Proceso de depuración: Información básica 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4. Principios básicos de depuración 5. Estrategias de depuración: fundamentos del éxito 6. Casos de éxito en la depuración de Python Parte III: Entornos nativos en la nube y entornos de aprendizaje automático 7. Depuración en la nube 8. Depuración en entornos de aprendizaje automático 9.
Por que ler este livro? O mundo está a mudar rapidamente e a tecnologia está a evoluir mais rápido do que nunca. Com o crescimento da inteligência artificial e computação em nuvem, o desenvolvimento de software tornou-se mais complexo e complexo. Como resultado, a depuração tornou-se uma habilidade necessária para todos os desenvolvedores de software, engenheiros de AI ML e profissionais de DevOps. Este livro contém um guia de depuração exaustivo de Python, crucial para o desenvolvimento de softwares confiáveis e confiáveis para o aprendizado de máquinas e computação em nuvem. Ele oferece uma nova abordagem focada em modelos para diagnosticar e depurar a estrutura e o comportamento anormais do software, permitindo compreender as principais causas de falhas de software e desenvolver soluções eficazes. O que está lá dentro? Parte I: Introdução à depuração baseada em modelos 1. Introdução à depuração focada em modelos 2. Processo de depuração: Informações básicas 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4. Princípios básicos de depuração 5. Estratégias de depuração: fundamentos do sucesso 6. Histórias de sucesso na depuração Python Parte III: Ambientes nativos na nuvem e ambientes de aprendizado de máquina 7. Depuração em ambientes de nuvem 8. Depuração em ambientes de aprendizado de máquina 9.
Perché leggere questo libro? Il mondo sta cambiando rapidamente e la tecnologia sta evolvendo più velocemente che mai. Con l'aumento dell'intelligenza artificiale e del cloud computing, lo sviluppo del software è diventato più complesso e complesso. Di conseguenza, il debug è diventato una competenza necessaria per tutti gli sviluppatori di software, ingegneri AI ML e professionisti del settore. Questo libro contiene una guida completa al debug di Python, fondamentale per sviluppare software affidabili e affidabili per l'apprendimento automatico e il cloud computing. Offre un nuovo approccio orientato ai modelli per la diagnosi e il debug di strutture e comportamenti software anormali, in modo da comprendere le cause principali dei guasti software e sviluppare soluzioni efficaci. Cosa c'è dentro? Parte I: Introduzione al debug incentrata sui modelli 1. Introduzione al debug incentrata sui modelli 2. Processo di debug: Informazioni di base 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4. Principi di base per il debug 5. Strategie di debug: basi di successo 6. Storie di successo nel debug Python Parte III: Ambienti nativi cloud e di apprendimento automatico 7. Debug in ambienti cloud 8. Debug in ambienti di apprendimento automatico 9.
Warum dieses Buch lesen? Die Welt verändert sich schnell und die Technologie entwickelt sich schneller als je zuvor. Mit dem Aufkommen von künstlicher Intelligenz und Cloud Computing ist die Softwareentwicklung komplexer und komplexer geworden. Infolgedessen ist Debugging zu einer notwendigen Fähigkeit für alle Softwareentwickler, AI ML-Ingenieure und DevOps-Profis geworden. Dieses Buch enthält einen umfassenden itfaden zum Python-Debugging, der für die Entwicklung zuverlässiger und zuverlässiger Software für maschinelles rnen und Cloud Computing von entscheidender Bedeutung ist. Es bietet einen neuen musterorientierten Ansatz für die Diagnose und das Debuggen von abnormaler Softwarestruktur und -verhalten, der es ermöglicht, die Hauptursachen für Softwarefehler zu verstehen und effektive Lösungen zu entwickeln. Was ist drin? Teil I: Einführung in das Template-orientierte Debugging 1. Einführung in das Template-orientierte Debugging 2. Debugging-Prozess: Grundlegende Informationen 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4. Grundlagen des Debugging5. Debugging-Strategien: Grundlagen des Erfolgs 6. Erfolgsgeschichten im Python Debugging Teil III: Cloud Native und Machine arning Umgebungen 7. Debugging in Cloud-Umgebungen 8. Debugging in Machine-arning-Umgebungen 9.
Dlaczego przeczytać tę książkę? Świat szybko się zmienia, a technologia rozwija się szybciej niż kiedykolwiek wcześniej. Wraz ze wzrostem sztucznej inteligencji i chmury obliczeniowej rozwój oprogramowania stał się bardziej złożony i złożony. W rezultacie debugowanie stało się niezbędną umiejętnością dla wszystkich programistów, inżynierów AI ML i profesjonalistów DevOps. Ta książka zapewnia kompleksowy przewodnik po debugowaniu Pythona, który ma kluczowe znaczenie dla rozwoju solidnego i niezawodnego oprogramowania do uczenia się maszyn i chmury obliczeniowej. Oferuje nowe podejście zorientowane na szablon do diagnozowania i debugowania nieprawidłowej struktury i zachowania oprogramowania, co pozwala zrozumieć główne przyczyny awarii oprogramowania i opracować skuteczne rozwiązania. Co jest w środku? Część I: Wprowadzenie do debugowania zorientowanego na szablon 1. Wprowadzenie do debugowania zorientowanego na szablon 2. Proces debugowania: Podstawowe informacje 3. Techniki debugowania: Istoty sukcesu Część II: Python Debugging Fundamentals 4. Podstawy debugowania 5. Strategie debugowania: fundamenty sukcesu 6. Python Debugging Case Studies Part III: Cloud Native and Machine arning Environments 7. Cloud Debugging 8. Debugowanie w środowiskach uczenia maszynowego 9.
''
Bu kitabı neden okumalısınız? Dünya hızla değişiyor ve teknoloji her zamankinden daha hızlı ilerliyor. Yapay zeka ve bulut bilişimin yükselişiyle, yazılım geliştirme daha karmaşık ve karmaşık hale geldi. Sonuç olarak, hata ayıklama tüm yazılım geliştiricileri, AI ML mühendisleri ve DevOps uzmanları için gerekli bir beceri haline gelmiştir. Bu kitap, sağlam ve güvenilir makine öğrenimi ve bulut bilişim yazılımı geliştirmek için kritik olan Python hata ayıklama için kapsamlı bir rehber sunmaktadır. Anormal yazılım yapısını ve davranışını teşhis etmek ve hata ayıklamak için yeni bir şablon odaklı yaklaşım sunar, yazılım hatalarının temel nedenlerini anlamanıza ve etkili çözümler geliştirmenize olanak tanır. İçinde ne var? Bölüm I: Şablon odaklı hata ayıklamaya giriş 1. Şablon tabanlı hata ayıklamaya giriş 2. Hata ayıklama işlemi: Temel bilgiler 3. Hata Ayıklama Teknikleri: Başarının Temelleri Bölüm II: Python Hata Ayıklama Temelleri 4. Hata ayıklama temelleri 5. Hata Ayıklama Stratejileri: Başarının Temelleri 6. Python Hata Ayıklama Vaka Çalışmaları Bölüm III: Cloud Native ve Machine arning Ortamları 7. Bulut Hata Ayıklama 8. Makine öğrenimi ortamlarında hata ayıklama 9.
لماذا قرأت هذا الكتاب ؟ العالم يتغير بسرعة والتكنولوجيا تتقدم بشكل أسرع من أي وقت مضى. مع ظهور الذكاء الاصطناعي والحوسبة السحابية، أصبح تطوير البرمجيات أكثر تعقيدًا وتعقيدًا. نتيجة لذلك، أصبح التصحيح مهارة ضرورية لجميع مطوري البرامج ومهندسي AI ML ومحترفي DevOps. يقدم هذا الكتاب دليلًا شاملاً لتصحيح تصحيح Python وهو أمر بالغ الأهمية لتطوير برامج قوية وموثوقة للتعلم الآلي والحوسبة السحابية. إنه يقدم نهجًا جديدًا موجهًا نحو النموذج لتشخيص وتصحيح بنية وسلوك البرامج غير الطبيعي، مما يسمح لك بفهم الأسباب الجذرية لفشل البرامج وتطوير حلول فعالة. ماذا بالداخل ؟ الجزء الأول: مقدمة للتصحيح الموجه نحو النموذج 1. مقدمة إلى التصحيح الموجه نحو النموذج 2. عملية التصحيح: المعلومات الأساسية 3. Debugging Techniques: Essentials for Success Part II: Python Debugging Producentals 4. تصحيح الأساسيات 5. Debugging Strategies: Foundations of Success 6. Python Debugging Case Studies Part III: Cloud Native and Machine arning Environments 7. تصحيح السحابة 8. التصحيح في بيئات التعلم الآلي 9.
為什麼要讀這本書?世界正在迅速變化,技術的發展速度比以往任何時候都快。隨著人工智能和雲計算的興起,軟件開發變得更加復雜和復雜。結果,調試成為所有軟件開發人員,AI ML工程師和DevOps專業人員的必要技能。本書提供了有關Python調試的詳盡指南,對於開發用於機器學習和雲計算的可靠可靠的軟件至關重要。它提供了一種基於模板的新方法來診斷和調試異常的軟件結構和行為,從而可以了解軟件故障的主要原因並開發有效的解決方案。裏面有什麼?第一部分:針對模板1的調試介紹。針對模板2的調試簡介。調試過程:基本信息3.Debugging Techniques: Essentials for Success Part II: Python Debugging Fundamentals 4.調試的基本原理5。調試策略:成功的基礎。Python調試成功案例第三部分:雲原生環境和機器學習環境7.雲調試8。機器學習環境中的調試9.

You may also be interested in:

Python Programming Language For Beginners The First Real Guide For Beginners Towards Machine Learning And Artificial Intelligence. Learn How To Develop Your First Web App In Just 7 Days With Django!
Python for Data Analysis From the Beginner to Expert Crash Course 3.0 that will Change your Life as a Digital Programmer Thanks to the Minimalism of this Manual. Deep Machine Learning and Big Data
Deep Learning with Python Comprehensive Beginners Guide to Learn and Understand the Realms of Deep Learning with Python
Mastering Classification Algorithms for Machine Learning: Learn how to apply Classification algorithms for effective Machine Learning solutions (English Edition)
Learn Python The Ultimate Beginner’s Guide to Learning the Basics of Python in an Advanced Course Filled with Notions, Tips, and Tricks (Python for Beginners, Book 1)
Deep Learning With Python Simple and Effective Tips and Tricks to Learn Deep Learning with Python
PYTHON FOR BEGINNERS: A Complete Guide To Learn Programming, Data Science, Machine Learning And Coding Language Which Explain Step By Step Useful Tips And Tricks And Hands-On Exercises
Natural Language Processing with Python Updated Edition From Basics to Advanced Projects Mastering Text Analysis, Machine Learning Models, and Chatbot Development (Mastering the AI Revolution)
Python programming for beginners 3 books in 1 Beginner|s guide, Data science and Machine learning. Switch from noobgramming to PROgramming in 27 days and bring out your code poet attitude
Python Logging: Auditing and Debugging Through Python Logging
Deep Machine Learning Complete Tips and Tricks to Deep Machine Learning
Machine Learning in Microservices: Productionizing microservices architecture for machine learning solutions
Machine Learning in Trading: Step by step implementation of Machine Learning models
Linear Algebra And Optimization With Applications To Machine Learning - Volume II Fundamentals of Optimization Theory with Applications to Machine Learning
Machine Learning With Python For Beginners: A Step-By-Step Guide with Hands-On Projects (Learn Coding Fast with Hands-On Project Book 7)
Tensorflow for Quantitative Finance Transform Financial Analysis with TensorFlow|s Cutting-Edge Machine Learning Techniques (Python Libraries for Finance)
Machine Learning in Python for Dynamic Process Systems A practitioner’s guide for building process modeling, predictive, and monitoring solutions using dynamic data
Tensorflow for Quantitative Finance Transform Financial Analysis with TensorFlow|s Cutting-Edge Machine Learning Techniques (Python Libraries for Finance)
Machine Learning in Python for Dynamic Process Systems A practitioner’s guide for building process modeling, predictive, and monitoring solutions using dynamic data
Deep Learning With Python Advanced and Effective Strategies of Using Deep Learning with Python Theories
Python Data Science The Ultimate Handbook for Beginners on How to Explore NumPy for Numerical Data, Pandas for Data Analysis, IPython, Scikit-Learn and Tensorflow for Machine Learning and Business
Statistics, Data Mining, and Machine Learning in Astronomy: A Practical Python Guide for the Analysis of Survey Data (Princeton Series in Modern Observational Astronomy, 1)
Tensorflow for Quantitative Finance: Transform Financial Analysis with TensorFlow|s Cutting-Edge Machine Learning Techniques (Python Libraries for Finance Book 5)
Programming Puzzles: Python Edition: Learning Python Programming for Beginners and Experienced Programmers [Increasingly Challenging Python Challenges with Solutions]
The Best Python Programming Step-By-Step Beginners Guide: Easily Master Software engineering with Machine Learning, Data Structures, Syntax, Django Object-Oriented Programming, and AI application
Computer Programming And Cyber Security for Beginners This Book Includes Python Machine Learning, SQL, Linux, Hacking with Kali Linux, Ethical Hacking. Coding and Cybersecurity Fundamentals
Mastering Excel VBA and Machine Learning A Complete, Step-by-Step Guide To Learn and Master Excel VBA and Machine Learning From Scratch
Signal Processing and Machine Learning for Brain-Machine Interfaces
Python for Data Science Master Data Analysis from Scratch, with Business Analytics Tools and Step-by-Step techniques for Beginners. The Future of Machine Learning & Applied Artificial Intelligence
Practical Data Science with Jupyter Explore Data Cleaning, Pre-processing, Data Wrangling, Feature Engineering and Machine Learning using Python and Jupyter
Coding with Python The Ultimate Guide For Data Science, a Smart Way to Program With Python, Understand Data Analytics and Deep Learning Faster Computer Programming for Beginners (Book Python 3)
Deep Learning with Python The Ultimate Beginners Guide for Deep Learning with Python
Network Science with Python: Explore the networks around us using Network Science, Social Network Analysis and Machine Learning
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
Bio-inspired Algorithms in Machine Learning and Deep Learning for Disease Detection
Artificial Intelligence and Machine Learning Foundations Learning from experience, 2nd Edition
Machine Learning Master Supervised and Unsupervised Learning Algorithms with Real Examples
Learning Kernel Classifiers: Theory and Algorithms (Adaptive Computation and Machine Learning)
Artificial Intelligence and Machine Learning Foundations Learning from experience, 2nd Edition
Machine Learning and Deep Learning Techniques in Wireless and Mobile Networking Systems