BOOKS - Hands-On Unsupervised Learning Using Python: How to Build Applied Machine Lea...
Hands-On Unsupervised Learning Using Python: How to Build Applied Machine Learning Solutions from Unlabeled Data - Ankur A Patel April 16, 2019 PDF  BOOKS
ECO~20 kg CO²

3 TON

Views
485599

Telegram
 
Hands-On Unsupervised Learning Using Python: How to Build Applied Machine Learning Solutions from Unlabeled Data
Author: Ankur A Patel
Year: April 16, 2019
Format: PDF
File size: PDF 7.2 MB
Language: English



Book Description: Hands-On Unsupervised Learning Using Python How to Build Applied Machine Learning Solutions from Unlabeled Data In today's fast-paced technological landscape, it is essential to understand the process of technology evolution and its impact on humanity. As we delve into the realm of artificial intelligence (AI), we must recognize the significance of unsupervised learning in shaping the future of machine learning. Unsupervised learning has emerged as a promising approach to tackle the challenges of working with unlabeled data, which accounts for most of the world's data. This book, "Hands-On Unsupervised Learning Using Python offers practical insights and techniques to leverage unsupervised learning in real-world applications. The author, Ankur Patel, takes you on a journey to explore the next frontier in AI research - unsupervised learning. He provides a comprehensive understanding of this cutting-edge technology and demonstrates how to apply it using two popular Python frameworks, scikit-learn and TensorFlow with Keras. With hands-on examples and code, you will learn to identify patterns in unlabeled data, detect anomalies, perform automatic feature engineering and selection, and generate synthetic datasets.
Практическое неконтролируемое обучение с использованием Python Как создавать прикладные решения для машинного обучения на основе немаркированных данных В современном быстро развивающемся технологическом ландшафте важно понимать процесс эволюции технологий и его влияние на человечество. Углубляясь в область искусственного интеллекта (ИИ), мы должны признать значение неконтролируемого обучения в формировании будущего машинного обучения. Обучение без учителя стало многообещающим подходом для решения проблем работы с немаркированными данными, на которые приходится большая часть мировых данных. Эта книга «Практическое обучение без учителя с использованием Python» предлагает практические идеи и методы для использования обучения без учителя в реальных приложениях. Автор, Анкур Патель, проводит вас в путешествие, чтобы исследовать следующий рубеж в исследованиях ИИ - неконтролируемое обучение. Он дает исчерпывающее понимание этой передовой технологии и демонстрирует, как ее применять, используя два популярных фреймворка на Python, scikit-learn и TensorFlow с Keras. С помощью практических примеров и кода вы научитесь определять шаблоны в немаркированных данных, обнаруживать аномалии, выполнять автоматическую разработку и выбор функций, а также генерировать синтетические наборы данных.
Apprentissage pratique non contrôlé en utilisant Python Comment créer des solutions d'apprentissage automatique basées sur des données non marquées Dans le paysage technologique en évolution rapide d'aujourd'hui, il est important de comprendre le processus d'évolution de la technologie et son impact sur l'humanité. En approfondissant le domaine de l'intelligence artificielle (IA), nous devons reconnaître l'importance de l'apprentissage incontrôlé dans la formation de l'avenir de l'apprentissage automatique. L'apprentissage sans professeur est devenu une approche prometteuse pour relever les défis du travail avec des données non marquées, qui représentent la plupart des données mondiales. Ce livre « L'apprentissage pratique sans professeur en utilisant Python » propose des idées et des méthodes pratiques pour utiliser l'enseignement sans professeur dans des applications réelles. L'auteur, Ankur Patel, vous guide dans un voyage pour explorer la prochaine frontière dans la recherche en IA - l'apprentissage incontrôlé. Il donne une compréhension exhaustive de cette technologie de pointe et montre comment l'appliquer en utilisant deux cadres populaires sur Python, scikit-learn et TensorFlow avec Keras. Avec des exemples pratiques et du code, vous apprendrez à définir des modèles dans des données non marquées, à détecter des anomalies, à développer et sélectionner automatiquement des fonctions, et à générer des ensembles de données synthétiques.
Aprendizaje práctico e incontrolable utilizando Python Cómo crear soluciones de aprendizaje automático basadas en datos no marcados En el panorama tecnológico en rápida evolución actual, es importante comprender el proceso de evolución de la tecnología y su impacto en la humanidad. Al profundizar en el campo de la inteligencia artificial (IA), debemos reconocer la importancia del aprendizaje incontrolado en la formación del futuro aprendizaje automático. Aprender sin un profesor se ha convertido en un enfoque prometedor para resolver los problemas de trabajar con datos no marcados, que representan la mayor parte de los datos del mundo. Este libro, «Aprendizaje práctico sin maestro usando Python», ofrece ideas y métodos prácticos para usar el aprendizaje sin maestro en aplicaciones reales. autor, Ankur Patel, te guía en un viaje para explorar la siguiente frontera en la investigación de la IA: el aprendizaje incontrolado. Proporciona una comprensión exhaustiva de esta tecnología avanzada y demuestra cómo aplicarla utilizando dos marcos populares en Python, Scikit-learn y TensorFlow con Keras. Con ejemplos prácticos y código, aprenderá a definir patrones en datos no marcados, detectar anomalías, realizar el desarrollo automático y la selección de funciones, y generar conjuntos de datos sintéticos.
Aprendizagem prática com Python Como criar soluções para o aprendizado de máquinas baseadas em dados não marcados É importante compreender o processo de evolução da tecnologia e seus efeitos na humanidade de hoje em rápido desenvolvimento. Ao nos aprofundarmos no campo da inteligência artificial (IA), devemos reconhecer a importância do ensino descontrolado na formação do futuro aprendizado de máquinas. A formação sem um professor foi uma abordagem promissora para lidar com os problemas de dados não marcados, que representam a maior parte dos dados do mundo. Este livro «Aprendizagem prática sem professor usando Python» oferece ideias e métodos práticos para usar o ensino sem um professor em aplicações reais. O autor, Ankur Patel, leva-o a viajar para explorar a próxima fronteira na pesquisa de IA, o ensino descontrolado. Ele oferece uma compreensão exaustiva desta tecnologia avançada e demonstra como aplicá-la usando dois quadros populares em Python, scikit-learn e TensorFlow com Keras. Com exemplos práticos e código, você aprende a identificar modelos em dados não marcados, detectar anomalias, desenvolver e selecionar funções automaticamente e gerar conjuntos de dados sintéticos.
Praxisorientiertes, unkontrolliertes rnen mit Python Anwendungslösungen für maschinelles rnen aus unmarkierten Daten entwickeln In der heutigen schnelllebigen Technologielandschaft ist es wichtig, den technologischen Evolutionsprozess und seine Auswirkungen auf die Menschheit zu verstehen. Wenn wir tiefer in den Bereich der künstlichen Intelligenz (KI) eintauchen, müssen wir die Bedeutung des unkontrollierten rnens bei der Gestaltung der Zukunft des maschinellen rnens erkennen. Das rnen ohne hrer war ein vielversprechender Ansatz, um die Herausforderungen im Umgang mit unmarkierten Daten zu bewältigen, die einen Großteil der weltweiten Daten ausmachen. Dieses Buch „Praktisches rnen ohne hrer mit Python“ bietet praktische Ideen und Methoden, um das rnen ohne hrer in realen Anwendungen zu nutzen. Der Autor, Ankur Patel, nimmt e mit auf eine Reise, um den nächsten Meilenstein in der KI-Forschung zu erkunden - unkontrolliertes rnen. Es bietet einen umfassenden Einblick in diese fortschrittliche Technologie und demonstriert, wie sie mit Hilfe von zwei beliebten Python-Frameworks, scikit-learn und TensorFlow mit Keras, angewendet werden kann. Mit praktischen Beispielen und Code lernen e, Muster in unmarkierten Daten zu identifizieren, Anomalien zu erkennen, automatische Funktionsentwicklung und -auswahl durchzuführen und synthetische Datensätze zu generieren.
''
Python kullanarak uygulamalı, denetimsiz öğrenme İşaretsiz verilere dayalı uygulamalı makine öğrenimi çözümleri nasıl oluşturulur Günümüzün hızla gelişen teknolojik ortamında, teknoloji evrimi sürecini ve insanlık üzerindeki etkisini anlamak önemlidir. Yapay zeka (AI) alanına daha derinlemesine baktığımızda, makine öğreniminin geleceğini şekillendirmede denetimsiz öğrenmenin önemini kabul etmeliyiz. Denetimsiz öğrenme, dünya verilerinin çoğunu oluşturan işaretsiz verilerle çalışmanın zorluklarını ele almak için umut verici bir yaklaşım haline gelmiştir. Bu kitap, "Python Kullanarak Uygulamalı Denetimsiz Öğrenme", gerçek dünyadaki uygulamalarda denetimsiz öğrenmeyi kullanmak için pratik fikirler ve yöntemler sunar. Yazar, Ankur Patel, sizi AI araştırmasında bir sonraki sınırı keşfetmek için bir yolculuğa çıkarıyor - kontrolsüz öğrenme. Bu ileri teknolojinin kapsamlı bir şekilde anlaşılmasını sağlar ve iki popüler Python çerçevesi, scikit-learn ve Keras ile TensorFlow kullanarak nasıl uygulanacağını gösterir. Vaka çalışmaları ve kod ile, etiketlenmemiş verilerdeki kalıpları nasıl tanımlayacağınızı, anomalileri nasıl tespit edeceğinizi, fonksiyonları otomatik olarak geliştirip seçeceğinizi ve sentetik veri kümeleri oluşturacağınızı öğreneceksiniz.
التعلم العملي غير الخاضع للإشراف باستخدام Python كيفية بناء حلول التعلم الآلي التطبيقية بناءً على بيانات غير مميزة في المشهد التكنولوجي سريع التطور اليوم، من المهم فهم عملية تطور التكنولوجيا وتأثيرها على البشرية. من خلال التعمق في مجال الذكاء الاصطناعي (AI)، يجب أن ندرك أهمية التعلم غير الخاضع للإشراف في تشكيل مستقبل التعلم الآلي. أصبح التعلم غير الخاضع للإشراف نهجًا واعدًا لمواجهة تحديات العمل بالبيانات غير المميزة، والتي تمثل الكثير من بيانات العالم. يقدم هذا الكتاب، «التعلم العملي غير الخاضع للإشراف باستخدام الثعبان»، أفكارًا وطرق عملية لاستخدام التعلم غير الخاضع للإشراف في تطبيقات العالم الحقيقي. يأخذك المؤلف، أنكور باتيل، في رحلة لاستكشاف الحدود التالية في أبحاث الذكاء الاصطناعي - التعلم غير المنضبط. يوفر فهمًا شاملاً لهذه التكنولوجيا المتقدمة ويوضح كيفية تطبيقها باستخدام إطاري بايثون شائعين، scikit-learn و TensorFlow مع Keras. باستخدام دراسات الحالة والشفرة، ستتعلم كيفية تحديد الأنماط في البيانات غير المسماة، واكتشاف الحالات الشاذة، وتطوير الوظائف واختيارها تلقائيًا، وإنشاء مجموعات بيانات اصطناعية.

You may also be interested in:

Hands on Data Science for Biologists Using Python
Hands-On AI Trading with Python, QuantConnect, and AWS
Python Machine Learning A Step-by-Step Guide to Scikit-Learn and TensorFlow (Includes a Python Programming Crash Course)
Python Programming A complete beginners guide on python machine learning, data science and tools (Computer Programming Book 1)
PYTHON PROGRAMMING 2 book in 1 A complete guide from beginner to intermediate on python machine learning, data science, tools (Computer Programming 5)
Coding for Beginners: Python: A Step-by-Step Guide to Learning Python Programing with Game and App Development Projects (Learn to Code)
Python Programming Advanced Applications and Features Object-Oriented Programming, Data Analysis, Artificial Intelligence and Machine Learning with Python
Python - 2 Books in 1 Python and Machine Learning for Beginners The Ultimate Guide from Beginners to Expert Concepts
Learning Blender: A Hands-On Guide, 3rd Ed.
Machine Learning for Physicists A hands-on approach
Learning the Art of Electronics A Hands-On Lab Course
Practical Operating Systems A Hands-On Approach with Python
Practical Operating Systems A Hands-On Approach with Python
Learn Quantum Computing with Python and Q# A hands-on approach
Practical Operating Systems: A Hands-On Approach with Python
A Hands-On Introduction to Using Python in the Atmospheric and Oceanic Sciences
Deep Learning for Data Architects: Unleash the power of Python|s deep learning algorithms (English Edition)
Learn AI with Python Explore Machine Learning and Deep Learning techniques for Building Smart AI Systems Using Scikit-Learn
Building Machine Learning Systems Using Python Practice to Train Predictive Models and Analyze Machine Learning Results
Online Machine Learning: A Practical Guide with Examples in Python (Machine Learning: Foundations, Methodologies, and Applications)
Learn Python Programming A Beginners Crash Course on Python Language for Getting Started with Machine Learning, Data Science and Data Analytics (Artificial Intelligence Book 1)
Learn OpenCV with Python by Examples: Implement Computer Vision Algorithms Provided by OpenCV with Python for Image Processing, Object Detection and Machine Learning
Deep Learning for Data Architects Unleash the power of Python|s deep learning algorithms
Active Machine Learning with Python: Refine and elevate data quality over quantity with active learning
Machine Learning: A Guide to PyTorch, TensorFlow, and Scikit-Learn: Mastering Machine Learning With Python
Deep Learning for Data Architects Unleash the power of Python|s deep learning algorithms
Machine Learning A Guide to PyTorch, TensorFlow, and Scikit-Learn Mastering Machine Learning With Python
Deep Learning for Finance Creating Machine & Deep Learning Models for Trading in Python
Deep Learning for Finance Creating Machine & Deep Learning Models for Trading in Python
Machine Learning A Guide to PyTorch, TensorFlow, and Scikit-Learn Mastering Machine Learning With Python
Machine Learning for Beginners Build and deploy Machine Learning systems using Python, 2nd Edition
Programming Puzzles Python Edition Learning Python Programming for Beginners and Experienced Programmers
Coding with Python Python for Data Analysis and Machine Learning, Let’s Make Data Talk
Python for Data Science Data analysis and Deep learning with Python coding and programming
Programming Puzzles Python Edition Learning Python Programming for Beginners and Experienced Programmers
Python Programming Handbook For IoT Development : A Complete Beginners Guide To Learning Essential Skills To Build Connected Devices, Collect Data And … Applications (The Python Power Toolkit)
Learn AI with Python: Explore Machine Learning and Deep Learning techniques for Building Smart AI Systems Using Scikit-Learn, NLTK, NeuroLab, and Keras
Python Machine Learning The Ultimate Beginners’ Guide for Building Intelligent Systems with Python, Raspberry Pi, and TensorFlow. Includes Practical Step-by-Step Techniques and Exercises
Pragmatic Machine Learning with Python Learn How to Deploy Machine Learning Models in Production
Machine Learning for Finance Master Financial Strategies with Python-Powered Machine Learning