- Нүүр хуудас /
- Ном /
- Компьютер ба технологи /
- Programming /
- Parallel Programming /
- Hands-On GPU Programming with Python and CUDA...
Hands-On GPU Programming with Python and CUDA: Explore high-performance parallel computing with CUDA
MNT 233812
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from АНУ
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.
Dr. Brian Tuomanen is an expert in CUDA and General-Purpose GPU Programming
Fast
Shipping
Free
Return*
Secure Packaging
100% Original Products
PCI DSS Compliance
ISO 27001 Certified
What Stands Out
Бүтээгдэхүүний дэлгэрэнгүй мэдээлэл
- Expert author with extensive experience in CUDA and GPU programming
- Bachelor's degree in Electrical Engineering from the University of Washington
- Ph.D. in Mathematics from the University of Missouri
- In-depth knowledge of high-performance parallel computing with CUDA
- Previous experience in GPU integration and development at a start-up company
- Speaker at the US Army Research Lab on General Purpose GPU programming
| Item Weight | 1.2 lbs (540 grams) |
Who Should Buy?
-
Data Scientists
Ideal for data scientists looking to accelerate their computations and implement machine learning algorithms using GPU processing.
-
Students Learning
Perfect for students who want to learn GPU programming and apply concepts using practical Python examples in CUDA.
-
AI Researchers
Beneficial for AI researchers focused on optimizing deep learning models through the efficient use of GPU architectures.
-
Beginners in Programming
Not suitable for complete programming novices without prior experience in Python or understanding of GPU concepts.
-
Casual Users
Not recommended for casual users looking for basic computing solutions without the need for advanced programming skills.
-
Non-Technical Managers
Unsuitable for managers or professionals who do not require hands-on programming or technical details involving GPU frameworks.
БАРААНЫ ТАЙЛБАР
Hands-On GPU Programming with Python and CUDA: Explore high-performance parallel computing with CUDA
Хэрэглэгчийн асуулт ба хариултууд
-
Асуулт:
What prerequisites do I need to start with Hands-On GPU Programming with Python and CUDA?
Хариулт: To effectively engage with Hands-On GPU Programming with Python and CUDA, having a background in Python programming and a basic understanding of computer architecture is essential. Familiarity with linear algebra concepts can also enhance your learning experience, as these concepts are often applied in GPU programming. This foundational knowledge will help you grasp the intricacies of parallel programming techniques and how to optimize code for better performance on GPU architectures. -
Асуулт:
Is this book suitable for beginners in GPU programming?
Хариулт: Yes, this book is suitable for beginners who have a basic Python programming knowledge. The content is structured to guide readers through fundamental concepts of GPU programming and CUDA. It introduces core principles and gradually builds upon them, with practical examples to reinforce learning, making it an excellent choice for those starting out and looking to deepen their understanding of GPU technology. -
Асуулт:
What topics are covered in this book?
Хариулт: Hands-On GPU Programming with Python and CUDA covers a wide range of topics including the fundamentals of GPU architecture, setting up the CUDA development environment, parallel programming concepts, optimization techniques, and hands-on projects. Additionally, it dives into real-world applications of GPU programming in fields such as deep learning, computer vision, and scientific computing, enabling readers to apply their skills in various practical scenarios. -
Асуулт:
How does this book facilitate hands-on learning?
Хариулт: The book is designed with a hands-on approach, featuring coding examples, exercises, and projects that encourage practical implementation. Readers can follow along with the examples while working through exercises that reinforce their understanding. This interactive learning style enables learners to not only read and comprehend theoretical aspects but also directly apply their knowledge by coding real GPU-accelerated applications. -
Асуулт:
Can I use this book for self-study?
Хариулт: Absolutely! This book is specifically crafted for self-study, allowing learners to progress at their own pace. With clear explanations, practical examples, and review questions at the end of each chapter, independent learners can effectively grasp GPU programming concepts. Whether you're coming from a software development background or are new to the field, the structure facilitates a self-contained educational experience. -
Асуулт:
What programming languages are primarily used in the book?
Хариулт: The primary programming language used in this book is Python, along with CUDA for GPU programming. The combination allows readers to leverage Python’s simplicity and flexibility while harnessing the power of CUDA to optimize performance. This dual-language approach caters to Python developers who want to step into the world of GPU programming, making it accessible without overwhelming newcomers with complex syntax. -
Асуулт:
Are there any online resources or communities associated with this book?
Хариулт: Yes, readers can find online resources such as forums, tutorials, and relevant coding communities that discuss GPU programming and CUDA techniques. Joining platforms like GitHub or Stack Overflow can provide additional support and exchange ideas with peers. Engaging with these communities enhances the learning experience with real-world discussions and additional project opportunities that relate to the book's content. -
Асуулт:
What kind of projects can I expect to create after reading this book?
Хариулт: After completing the book, readers can expect to create various projects that leverage GPU acceleration. This includes applications in machine learning, real-time image processing, or scientific simulations. By applying the knowledge gained from the book, you'll be able to tackle projects that require intensive computation and can produce significant performance improvements by utilizing GPU capabilities. -
Асуулт:
Can this book help me in my career in data science or AI?
Хариулт: Definitely! With the increasing reliance on GPU acceleration in data science and artificial intelligence, knowledge of GPU programming is a valuable asset. This book equips you with essential skills to implement machine learning models and optimize data processing tasks, enhancing your resume. Proficiency in these areas is in high demand, making you a more competitive candidate in technology-focused roles. -
Асуулт:
Where can I buy Hands-On GPU Programming with Python and CUDA in Mongolia?
Хариулт: You can buy Hands-On GPU Programming with Python and CUDA at Ubuy. Ubuy offers a seamless shopping experience, providing access to various educational resources, including programming books, through an intuitive platform. Browse Ubuy to find this title and expand your library with essential programming knowledge.
Parallel Programming Editorial Review
**Editorial Review** "Hands-On GPU Programming with Python and CUDA" has been well-received by its users, particularly for its practical application and comprehensive coverage of GPU programming. Reviewers Consistently emphasize the book's clarity and thoroughness, making it an invaluable resource for both beginner programmers and seasoned engineers. The step-by-step approach allows users to seamlessly implement high-performance heterogeneous computing programs in Python, thereby enhancing productivity and illustrating the power of GPU acceleration without compromising the user-friendly nature of Python's development environment. Many users noted that the book utilizes PyCUDA, which facilitates programming on platforms such as Google Colab with GPU runtimes—an attractive feature for those who might not have access to NVIDIA GPUs. While the current code is predominantly in Python 2, several reviewers acknowledged the need for adaptation to Python 3, along with existing resources to assist with this transition. The author's commitment to customer support has also been highlighted positively, particularly when a reviewer reached out for help while waiting for an updated edition. This responsiveness adds a personal touch that fosters a sense of community among readers. Importantly, beyond the practical implementation of code, the book delves into the theoretical Constructs of CUDA C and the principles of massively parallelized systems design, appealing to a wide range of readers, including researchers and application developers. Overall, the book has been lauded as an essential guide for anyone aiming to enhance performance in GPU-centric applications or gain a deep understanding of GPU programming concepts. **
Customer Reviews & Ratings
-
5 од
100%
-
4 од
0%
-
3 од
0%
-
2 од
0%
-
1 од
0%
Энэ бараанд шүүмж өгөх
Бусад хэрэглэгчидтэй санал бодлоо хуваалцана уу
Давуу тал
- Comprehensive and clear explanations of GPU programming fundamentals.
- Practical hands-on coding examples using PyCUDA.
- Suitable for both beginners and experienced programmers.
- Excellent support and communication from the author.
- Ideal for maximizing performance in GPU applications.
Сул талууд
- Primarily written in Python 2, which may require users to adapt code for Python 3.
Product Price History
Чухал мэдээлэл
- Хязгаарлалт : Олон улсын хүргэлтээр илгээгдсэн барааны тохиолдолд, үйлдвэрлэгчийн баталгаа хүчингүй байх, үйлдвэрлэгчийн үйлчилгээ хүргэх боломжгүй, барааны заавар, гарын авлага болон анхааруулга очих улсын хэлдээр биш байх магадлалтай гэдгийг анхаарна уу. Мөн бараа болон дагалдах хэрэгсэл нь тухайн улсын стандартыг мөрдөөгүй, чанарын заалт болон шошгын шаардлагыг хангаагүй байх магадлалтай бөгөөд, тухайн улсын цахилгааны вольтод тохирохгүй байж болзошгүй (тохирох адаптер болон хувиргагч шаардлагатай) юм. Хүлээн авагч нь барааг тухайн улс уруу хуулийн дагуу импортлогдохыг батлах ёстой. Ubuy болон түүний холбоот түншүүдээс худалдан авсан тохиолдолд худалдан авагч нь хүлээн авах улсын бүх хууль болон заалтуудыг мөрдөх ёстой.
- Ubuy нь дэлхий даяар хэрэглэгддэг хайлтын хэрэгсэл учраас Ubuy дээр байгаа бараа бүр зарагдана гэсэн үг биш. Бараанууд нь экспорт болон худалдааны журмыг дагаж мөрдөх ёстой.
MNT 233812
Яг одоо захиалаад ойрын хугацаанд хүлээн аваарай Пүрэв гараг, 6 дугаар сар 25
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.
Онцлог & Давуу талууд
- Bachelor of Science in Electrical Engineering from the University of Washington
- Completed his PhD in Mathematics at the University of Missouri
- Has spoken at the US Army Research Lab about GPU programming
- Lead GPU integration and development at a Maryland based startup
- Currently lives and works in the Seattle area