- Home Page /
- Books /
- Computers & Technology /
- Computer Science /
- AI & Machine Learning /
- Computer Vision & Pattern Recognition /
- Dive into Deep Learning
Dive into Deep Learning
MKD 3456
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from US
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.
This book is a comprehensive resource that makes deep learning approachable, while still providing sufficient technical depth to enable engineers, scientists, and students to use deep learning in their own work.
Fast
Shipping
Free
Return*
Secure Packaging
100% Original Products
PCI DSS Compliance
ISO 27001 Certified
What Stands Out
Product Details
| Item Weight | 2.5 lbs (1.13 kg) |
Who Should Buy?
-
Aspiring Data Scientists
Ideal for beginners aiming to learn foundational concepts and techniques in deep learning effectively.
-
Academic Researchers
Provides in-depth theoretical knowledge and practical frameworks useful for advanced research in deep learning.
-
Industry Professionals
Great for professionals seeking to implement deep learning methods in real-world applications or projects.
-
Complete Beginners
May be overwhelming for those with no background in machine learning or programming fundamentals.
-
Casual Readers
Not suitable for individuals looking for light reading; it's a comprehensive technical guide requiring deep focus.
-
Non-technical Users
Users without a technical background or familiarity with programming concepts may struggle with the content.
Product Description
Dive into Deep Learning
Customer Questions & Answers
-
Question:
What is 'Dive into Deep Learning' about?
Answer: 'Dive into Deep Learning' is a comprehensive guide that provides an introduction to deep learning concepts and practical applications. It covers various neural network architectures, optimization techniques, and deep learning frameworks. This book is ideal for students, researchers, and practitioners who want to understand the fundamentals of deep learning and apply them to real-world problems. You will find immersive examples and interactive features that enhance the learning experience, making complex topics accessible and engaging. -
Question:
Who is the target audience for this book?
Answer: The primary audience for 'Dive into Deep Learning' includes university students, educators, and professionals in the fields of artificial intelligence, machine learning, and computer science. It caters to those who have a foundational understanding of programming and mathematics. The book is suitable for academic courses, self-learners, and anyone interested in advancing their knowledge of deep learning techniques. With hands-on examples and diverse applications, it prepares readers to tackle real-world challenges in data science. -
Question:
What programming languages does this book focus on?
Answer: 'Dive into Deep Learning' primarily focuses on Python, one of the most widely used programming languages in machine learning and deep learning. The book offers code examples using popular libraries such as PyTorch and MXNet. Readers benefit from the interactive notebooks provided, which allow hands-on experimentation with the concepts discussed. This practical approach ensures that users can efficiently implement the theories in their projects, making Python a central tool for learning deep learning techniques. -
Question:
Are there any prerequisites for reading this book?
Answer: While 'Dive into Deep Learning' provides a structured introduction to its topics, familiarity with basic programming and familiarity with machine learning concepts is beneficial. A foundational understanding of linear algebra, calculus, and probability will also enhance comprehension of the mathematical aspects of deep learning. Readers who meet these prerequisites will find the material easier to grasp, enabling them to engage more effectively with the hands-on exercises and projects included within the book. -
Question:
What makes 'Dive into Deep Learning' different from other deep learning books?
Answer: 'Dive into Deep Learning' stands out due to its interactive nature, combining theoretical knowledge with practical, hands-on coding experiences. Unlike traditional textbooks, it incorporates Jupyter Notebooks, which allow users to run code snippets and visualize results in real-time. This learning style promotes active participation, making complex concepts more digestible. Additionally, it covers a variety of deep learning frameworks, enabling readers to explore diverse implementations and providing a broader scope of understanding in the field. -
Question:
Are there any online resources available alongside the book?
Answer: Yes, 'Dive into Deep Learning' offers online resources, including Jupyter Notebooks and code repositories that complement the material covered in the book. These resources provide readers with practical examples, enabling them to experiment with deep learning models directly in their environments. Additionally, there are community forums and discussions available where readers can share their experiences, ask questions, and collaborate on projects. These platforms foster a collaborative learning environment that enhances the educational experience. -
Question:
Can this book be used for self-study?
Answer: 'Dive into Deep Learning' is an excellent resource for self-study, designed to guide readers through the complexities of deep learning at their own pace. The clear explanations, structured chapters, and hands-on exercises encourage independent exploration of the material. Each section builds on the previous one, facilitating a progressive understanding of topics. Self-learners can utilize the accompanying online resources to reinforce their knowledge and solve exercises, enabling them to apply what they've learned in practical scenarios. -
Question:
What types of projects can I build using this book?
Answer: 'Dive into Deep Learning' encourages readers to embark on a variety of projects that demonstrate their newly learned skills. Potential projects include image classification tasks using convolutional neural networks, natural language processing applications, and generative models. Whether you're interested in academic research, developing AI applications, or working on real-world problems, the book guides you through building sophisticated models. These hands-on projects cultivate a deeper understanding of deep learning concepts and their practical applications. -
Question:
Does the book include case studies or applications in industry?
Answer: 'Dive into Deep Learning' includes case studies and real-world applications to illustrate how deep learning is utilized across different industries. By examining practical implementations, readers gain insights into solving specific problems and understanding the impact of deep learning technologies. These case studies serve to bridge the gap between theory and practice, showcasing how concepts from the book can be applied in fields such as healthcare, finance, and autonomous systems. This contextual knowledge prepares readers for industry challenges. -
Question:
Where can I buy 'Dive into Deep Learning' 1st Edition in North Macedonia?
Answer: You can purchase 'Dive into Deep Learning' 1st Edition on Ubuy, a reliable online platform that offers a wide selection of books, including this title. Ubuy provides international shipping options, ensuring you can access this essential resource for deep learning no matter where you are located in North Macedonia. Simply visit Ubuy's website, search for the book, and place your order to enhance your learning experience today.
Computer Vision & Pattern Recognition Editorial Review
**Editorial Review of "Dive into Deep Learning" (1st Edition)** "Dive into Deep Learning" emerges as a commendable resource for those looking to grasp the fundamentals of artificial intelligence, machine learning, and deep learning. The book serves as a solid introduction for students in computer science and mathematics, providing accessible explanations and a structure that eases readers into the complexities of these fields. Notably, the inclusion of color-printed pages stands out, enhancing readability and engagement for those who prefer physical formats over online resources. While the book excels at laying a foundational understanding, some reviewers have pointed out that certain chapters, particularly the one on recommendation systems, feel outdated and lack coverage of significant advancements in AI from 2021 onwards. This gap highlights a missed opportunity for a work published in late 2023 to capitalize on recent breakthroughs that have generated excitement in the AI community. Consequently, the book sometimes comes off as more of a historical reference rather than a current exploration of deep learning techniques. In terms of presentation, readers appreciate the logical flow and the balance of theory and practical applications, with accompanying code samples that make complex concepts easier to digest. While minor inConsistencies are present—a common issue in first editions—these do not significantly detract from the overall reading experience. The book has garnered praise for its clarity and instructional quality, making it a highly recommended read for those beginning their journey into deep learning. **
Customer Reviews & Ratings
-
5 Star
100%
-
4 Star
0%
-
3 Star
0%
-
2 Star
0%
-
1 Star
0%
Review this product
Share your thoughts with other customers
Pros
- Comprehensive coverage of AI, machine learning, and deep learning fundamentals.
- Color-printed pages enhance readability.
- Accessible for computer science and math students; well-structured explanations.
- Hands-on coding examples in PyTorch complement theoretical concepts.
- Good print quality with clear contrast.
Cons
- Certain chapters, particularly on recommendation systems, feel outdated.
Product Price History
Important information
- Limitations : For products shipped internationally, please note that any manufacturer warranty may not be valid; manufacturer service options may not be available; product manuals, instructions, and safety warnings may not be in destination country languages; the products (and accompanying materials) may not be designed in accordance with destination country standards, specifications, and labeling requirements; and the products may not conform to destination country voltage and other electrical standards (requiring use of an adapter or converter if appropriate). The recipient is responsible for assuring that the product can be lawfully imported to the destination country. When ordering from Ubuy or its affiliates, the recipient is the importer of record and must comply with all laws and regulations of the destination country.
- Not all the products listed on Ubuy are for sale, as Ubuy is a global search engine. Products are subject to export/trade regulations.
MKD 3456
Order now and get it around Tuesday, June 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.
Features & Benefits
- Revolutionizes pattern recognition across various technologies.
- Covers computer vision, natural language processing, and automatic speech recognition.
- No prior machine learning experience required; concepts explained from scratch.
- Includes a mathematics refresher for foundational understanding.
- Features runnable code to enhance hands-on learning.
- Designed for engineers, scientists, and students alike.