- Домашняя страница /
- Книги /
- Компьютеры и технологии /
- Информатика /
- AI & Machine Learning /
- Intelligence & Semantics /
- Learn AI with Python: Explore Machine Learnin...

Learn AI with Python is a practical guide that covers the essential aspects of AI and provides hands-on experience with various machine learning and deep learning algorithms, logic programming, neural networks, and natural language processing through real-world examples and fully functional Python implementation.
Learn AI with Python: Explore Machine Learning and Deep Learning techniques for Building Smart AI Systems Using Scikit-Learn, NLTK, NeuroLab, and
AMD 20998
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from США
QTY:
Ubuy works hard to protect your security and privacy. Our advanced payment security system ensures confidentiality by encrypting your information during transmission using AES (Advanced Encryption Standards) and SSL (Secure Socket Layer) protocols. Your payment details are 100% secure as we do not share your payment details with third party sellers.
Learn AI with Python is a practical guide that covers the essential aspects of AI and provides hands-on experience with various machine learning and deep learning algorithms, logic programming, neural networks, and natural language processing through real-world examples and fully functional Python implementation.
Fast
Shipping
Free
Return*
Secure Packaging
100% Original Products
PCI DSS Compliance
ISO 27001 Certified
What Stands Out
Информация о продукте
- Practical guide to Python covering Machine Learning and Deep Learning concepts
- Illustrations of Natural Language Processing using NLTK
- Explains deep learning models such as R-CNN and YOLO for object recognition
- Hands-on experience with logic programming, ASR, neural networks, and natural language processing
- Teaches how to build an image classifier using CNNs
- Suitable for anyone interested in artificial intelligence and Python, including intermediate Machine Learning practitioners
| Item Weight | 1.1 lbs (500 grams) |
Who Should Buy?
-
Beginner Programmers
Individuals with basic Python skills seeking to understand AI fundamentals and machine learning techniques step-by-step.
-
Data Science Students
Students looking to enhance their knowledge in AI and machine learning with practical examples and Python libraries.
-
AI Enthusiasts
Technology enthusiasts eager to grasp the principles of AI development and explore real-world applications.
-
Advanced Practitioners
Experienced developers or data scientists may find the content too basic or lacking in advanced topics and techniques.
-
Non-Technical Users
Individuals without programming experience may struggle with the technical concepts and require more foundational knowledge.
-
Quick Learners
Users needing rapid skill acquisition may find the gradual approach unsuitable for fast-paced learning environments.
ОПИСАНИЕ ТОВАРА
Learn AI with Python: Explore Machine Learning and Deep Learning techniques for Building Smart AI Systems Using Scikit-Learn, NLTK, NeuroLab, and Keras (English Edition)
Вопросы и ответы клиентов
-
вопрос:
What programming knowledge do I need to start learning AI with Python?
отвечать: To begin learning AI with Python, a foundational understanding of Python programming is crucial. This book assumes you have basic skills, such as variable manipulation, control structures, and functions. Knowing how to work with libraries like NumPy and Pandas can also enhance your learning experience. This foundational knowledge allows you to grasp AI concepts easily, as you will be applying Python to various machine learning and deep learning techniques. For instance, after reading the book, you could experiment with creating neural networks using NeuroLab and building machine learning models with Scikit-Learn. -
вопрос:
How does this book help in building real-world AI applications?
отвечать: This book equips readers with practical knowledge on using AI frameworks and libraries to create real-world applications. By exploring Scikit-Learn, NLTK, and NeuroLab, you will learn to build, train, and deploy AI models that can solve specific problems. Examples of real-world applications include natural language processing tasks, such as sentiment analysis using NLTK, and predictive modeling with Scikit-Learn. The hands-on projects included in the book will enhance your problem-solving skills and prepare you to tackle challenges faced in actual AI development scenarios. -
вопрос:
Is prior experience in machine learning required to understand the content?
отвечать: No prior experience in machine learning is required to understand the content of this book. It is designed for beginners and provides a structured approach to learning. The book starts from the fundamentals and gradually progresses to more complex topics. For example, you will first learn simple concepts like data preprocessing and gradually move on to more sophisticated techniques like deep learning with neural networks. This structured approach helps demystify complex machine learning principles, making them accessible even for those with no background in the field. -
вопрос:
What AI concepts will I learn from this book?
отвечать: This book covers a wide range of AI concepts, including machine learning, deep learning, and natural language processing. You will learn about supervised and unsupervised learning methods, neural networks, and how to utilize various libraries to implement these techniques. Additionally, you will gain insights into model evaluation and optimization. For example, you can apply what you learned about decision trees and clustering algorithms to solve problems in classification and data analysis, making your AI projects more impactful. -
вопрос:
Can I apply what I learn in this book to data science projects?
отвечать: Yes, the skills and concepts learned in this book can be directly applied to data science projects. By mastering machine learning techniques, you'll be equipped to analyze and extract insights from large datasets. You'll learn to use Scikit-Learn for predictive modeling and data visualization, which are essential components of data science. For instance, after completing the book, you might build a recommendation system using collaborative filtering, showcasing the practical application of your newfound skills in the data science sphere. -
вопрос:
Are there any supplementary resources or tools recommended in the book?
отвечать: Yes, the book introduces several supplementary resources and tools that can enhance your learning experience. Apart from the main libraries like Scikit-Learn and NLTK, it also suggests using Jupyter Notebook for coding and experimenting with Python interactively. Additionally, online platforms such as GitHub and Kaggle are recommended for accessing datasets and community projects. These resources provide an environment where you can practice your skills and collaborate with other learners, further enriching your understanding of AI concepts. -
вопрос:
What are the prerequisites for understanding deep learning through this book?
отвечать: To understand deep learning through this book, you should have a solid grasp of Python basics and machine learning principles. Familiarity with linear algebra and calculus concepts is also beneficial, as they are often used in neural network algorithms. This foundational knowledge will help you to understand deeper concepts such as backpropagation and activation functions. For example, a strong mathematical background will assist you in comprehending how deep learning models learn from data, ultimately allowing you to build more effective AI systems. -
вопрос:
What type of projects can I build after completing this book?
отвечать: After completing this book, you can embark on numerous exciting projects that leverage your AI skills. Possible projects include developing chatbots using NLTK for natural language processing or creating predictive models for stock market analysis with Scikit-Learn. Each project would allow you to apply the concepts and techniques learned throughout the book, improving your practical skills. Engaging in these projects not only strengthens your understanding but also builds a portfolio that showcases your capabilities in AI and machine learning. -
вопрос:
Is this book suitable for someone with no technical background?
отвечать: While the book is tailored for readers with a basic understanding of Python, it is still accessible to those with limited technical backgrounds. The concepts are explained in a beginner-friendly manner, with illustrations and examples to clarify complex ideas. The introductory chapters focus on foundational concepts and gradually introduce more technical topics, ensuring you can follow along. For example, starting with simple data manipulation will equip you with the tools needed to tackle AI projects effectively, ultimately making the subject matter less daunting. -
вопрос:
Where can I buy Learn AI with Python?
отвечать: You can purchase 'Learn AI with Python: Explore Machine Learning and Deep Learning techniques for Building Smart AI Systems Using Scikit-Learn, NLTK, NeuroLab, and more' on Ubuy in Armenia. Ubuy is an online shopping platform that offers a wide selection of books, including technical and programming literature. Their user-friendly interface makes it convenient to find and order this title, ensuring you get started on your AI journey with Python promptly.
Intelligence & Semantics Editorial Review
The book appears to be a comprehensive guide for those interested in Machine Learning and Data Science. It covers basic to advanced topics with well-thought-out explanations and well-chosen code examples. The author has done a good job in justifying the inclusion of some intricate topics that are not readily available on the internet. It has been recommended as a must-read for every ML and Data Science aspirant. The print quality of the book is excellent.
Customer Reviews & Ratings
-
5 звезда
100%
-
4 звезда
0%
-
3 звезда
0%
-
2 звезда
0%
-
1 звезда
0%
Оцените этот товар
Поделитесь своими впечатлениями
Плюсы
- Comprehensive guide for beginners and those with some knowledge of ML
- Covers basic to advanced topics
- Excellent print quality
- Well-thought-out explanations
- Well-chosen code examples
Product Price History
Важная информация
- Ограничения: обратите внимание, что для товаров, поставляемых за границу, гарантия производителя может быть недействительной; обслуживание от производителя может быть недоступно; руководства по эксплуатации, а также инструкции и предупреждения о безопасности могут быть не на языках страны назначения; товары (и сопутствующие материалы) могут не быть разработаны в соответствии со стандартами, спецификациями и требованиями к маркировке страны назначения; товары также могут не соответствовать напряжению в стране назначения и другим электрическим стандартам (при необходимости требуется использование адаптера или преобразователя). Получатель несет ответственность за обеспечение законного ввоза товара в страну назначения. При заказе через Ubuy или его аффилированных лиц получатель является зарегистрированным импортером и должен соблюдать все законы и правила страны назначения.
- Не все товары на Ubuy выставлены на продажу, поскольку Ubuy — это глобальная поисковая система. На товары распространяются законы в области экспорта и торговли.
AMD 20998
Закажите сейчас и получите товар приблизительно Вторник, Июнь 30
This item is not restrict in my country.(Please click on above link if this item is not restrict in your country, So our team will review and allow.)
QTY:
Ubuy works hard to protect your security and privacy. Our advanced payment security system ensures confidentiality by encrypting your information during transmission using AES (Advanced Encryption Standards) and SSL (Secure Socket Layer) protocols. Your payment details are 100% secure as we do not share your payment details with third party sellers.
Особенности и преимущества
- Practical guide to AI with Python
- Covers machine learning and deep learning algorithms, logic programming, neural networks, and natural language processing
- Provides hands-on experience with real-world examples and Python implementation
- Suitable for beginners to intermediate level
- Includes a methodology for formulating and solving related problems
- Explains object detection in images using Convolutional Neural Networks