0 ratings
Advanced Deep Learning with Python: Design and implement advanced next-generation AI solutions using TensorFlow and PyTorch
Master key deep learning concepts and different applications of deep learning models in the real world
Advanced Deep Learning with Python: Design and implement advanced next-generation AI solutions using TensorFlow and PyTorch
vare #: 81061201

Advanced Deep Learning with Python: Design and implement advanced next-generation AI solutions using TensorFlow and PyTorch

vare #: 81061201

NOK 739

Price Details

Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )

*All items will import from US

På lager
US Importert fra USA-butikk
Bestill nå og få den rundt Sunday, Juli 05
Våre beste leveringspartnere
  • fedex
  • dhl
Master key deep learning concepts and different applications of deep learning models in the real world
U-Care-garanti:
Ingen
Velg en plan
fast shipping

Fast
Shipping

free return

Gratis
retur*

Sikret innpakking

Sikret innpakking

100 % originale produkter

100 % originale produkter

pci-dss

PCI DSS Compliance

iso certified

ISO 27001 Certified


paypal payment
visa payment
mastercard payment
Note: Step Down Voltage Transformer required for using electronics products of US store (110-120). Recommended power converters Kjøp nå.

Hva skiller seg ut

Comprehensive Curriculum
Offers in-depth coverage of advanced deep learning techniques, empowering learners to master complex algorithms and architectures critical for cutting-edge AI applications.
Praktiske anvendelser
Includes real-world projects and case studies, ensuring that users can apply theoretical knowledge to solve tangible problems in various industries.
Expert Guidance
Delivered by industry experts, providing insights and best practices that are often overlooked in standard tutorials, enhancing the overall learning experience.

Produkt detaljer

Shop Advanced Deep Learning with Python: Design and implement advanced next-generation AI solutions using TensorFlow and PyTorch online at a best price in Norway. 178995617X
Vekt av varen1.5 lbs (680 gram)

Who Should Buy?

Suitable For
  • Data Scientists

    Ideal for data scientists wanting to deepen their understanding of deep learning concepts and enhance practical application skills.

  • Machine Learning Enthusiasts

    Great for hobbyists and learners who are passionate about AI and wish to explore advanced techniques in deep learning.

  • AI Researchers

    Beneficial for researchers aiming to implement cutting-edge deep learning solutions and stay updated with current trends.

Not Suitable For
  • Nybegynnere

    Not suitable for those new to programming or data science, as prior knowledge is necessary to grasp advanced topics.

  • Casual Learners

    Not recommended for learners seeking light material, as the content is comprehensive and demands a significant time investment.

  • Ikke-tekniske brukere

    Inappropriate for users without a technical background, as deep learning concepts can be complex and require prior understanding.

PRODUKTBESKRIVELSE

Advanced Deep Learning with Python: Design and implement advanced next-generation AI solutions using TensorFlow and PyTorch

Har du noen spørsmål? Chat med oss

Spørsmål og svar for kunde

  • spørsmål: What is 'Advanced Deep Learning with Python' about?

    svar: This book dives deep into complex deep learning concepts using Python as the primary programming language. It covers advanced topics such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), and practical implementations of deep learning algorithms. By exploring real-world applications, readers gain insight into how to tackle challenging problems in areas like image recognition, natural language processing, and more.
  • spørsmål: Who is the target audience for this book?

    svar: The book is primarily aimed at data scientists, machine learning engineers, and developers with a foundational understanding of Python and machine learning. It’s particularly beneficial for those looking to enhance their skill set in deep learning frameworks and techniques, providing insights that can be directly applied in professional or academic settings, as well as for enthusiasts eager to deepen their knowledge.
  • spørsmål: What programming knowledge is required to understand the book?

    svar: To grasp the concepts presented in this book, a solid understanding of Python programming is essential. Readers should be familiar with basic data structures, functions, and libraries such as NumPy and Pandas. Additionally, having prior experience with machine learning concepts will enable a more effective learning process, allowing readers to appreciate the advanced deep learning models discussed.
  • spørsmål: Are there any specific libraries or frameworks used in the book?

    svar: Yes, 'Advanced Deep Learning with Python' focuses on popular deep learning frameworks like TensorFlow and Keras. The book provides practical coding examples and detailed explanations on how to utilize these libraries effectively. This allows readers to not only learn theoretical concepts but also apply them in practical scenarios, making it a valuable resource for implementing cutting-edge deep learning models.
  • spørsmål: What kind of projects or examples are included in the book?

    svar: The book features a variety of projects that illustrate real-world applications of deep learning, including image classification, text generation, and sentiment analysis. Each example is designed to guide readers through the implementation process, helping them understand how to design, train, and evaluate deep neural networks. This hands-on approach reinforces learning and equips readers with practical skills applicable in their own projects.
  • spørsmål: Is there a focus on theory or practical applications?

    svar: The book strikes a balance between theoretical understanding and practical application. Each chapter typically begins with a discussion of the underlying theory, followed by practical coding examples that showcase how to implement learned techniques. This methodology ensures that readers not only grasp concepts but can also apply them directly to solve real-world problems in various fields.
  • spørsmål: How does this book compare to other deep learning resources?

    svar: Compared to other deep learning resources, 'Advanced Deep Learning with Python' stands out for its in-depth coverage of advanced topics and real-world applications. While basic books may suffice for introductory concepts, this book provides the technical depth needed for practitioners wanting to build sophisticated models, making it highly suitable for professionals aiming to elevate their expertise in the field.
  • spørsmål: Can beginners benefit from this book?

    svar: While the book is tailored for those with some prior knowledge, beginners can still benefit from it, especially if they are determined to learn. It's recommended that novices first familiarize themselves with basic machine learning and Python programming before diving into the advanced content. A solid foundation will enhance understanding and enable them to follow along with the advanced examples provided.
  • spørsmål: Are there exercises or challenges included in the book?

    svar: Yes, the book includes exercises at the end of each chapter to reinforce the concepts learned. These exercises range from fundamental coding challenges to more complex problem-solving tasks that encourage creativity in applying deep learning techniques. Engaging with these challenges can significantly enhance a reader's practical skills and confidence in using deep learning effectively.
  • spørsmål: Where can I buy 'Advanced Deep Learning with Python'?

    svar: You can buy 'Advanced Deep Learning with Python' from Ubuy, a reliable online platform that offers a wide range of books and educational resources. Ubuy provides a user-friendly shopping experience, making it easier for you to explore various options and find the book you need in Norway.

Neural Networks Editorial Review

**** "Advanced Deep Learning with Python" emerges as a robust resource for individuals already familiar with the fundamentals of AI and Machine Learning. Targeting data scientists, deep learning engineers, and researchers, the book assumes some mathematical foundations, particularly in Linear Algebra and Statistics, and suggests readers have a basic understanding of Python. Initial impressions highlight the author’s adeptness in reviving essential mathematical concepts useful for neural networks in an accessible manner. The first chapter serves as a strong refresher for those whose skills may have dulled over time, offering clear examples, definitions, and diagrams that make re-learning both engaging and memorable. This accessibility is further complemented by practical programming examples—which are also available on GitHub—enabling readers to experiment with different datasets. The organization of the book allows for independent chapter focus, meaning readers can selectively dive into topics of interest without grappling with the entire text. Particularly valuable are the "Put it together" sections at the conclusion of each chapter, which provide excellent summarization and revision material. While the book generally garners praise for its depth and clarity, some readers may find portions of the code challenging if they lack fluency in Python. However, the author’s assurances that Python is an easy language to pick up could mitigate this concern for many learners. Overall, the book stands out as an excellent read for those eager to deepen their understanding of advanced deep learning strategies and the underlying math. It's recommended for anyone who has a foundational grasp of the prerequisites; for those lacking this background, it would be wise to engage with the relevant mathematical concepts beforehand. **

Kundeanmeldelser og vurderinger

5.0
1 kunders vurderinger
  • 5 stjerne
    100%
  • 4 stjerne
    0%
  • 3 stjerne
    0%
  • 2 stjerne
    0%
  • 1 stjerne
    0%

Vurder dette produktet

Del tankene dine med andre kunder

Fordeler

  • Strong introductory section ideal for refreshing knowledge in Linear Algebra and Statistics.
  • Practical code examples available on GitHub for hands-on experience.
  • "Put it together" summaries enhance retention and understanding.
  • Chapters are mostly independent, allowing for targeted reading.
  • In-depth exploration of advanced topics, including text classification and BERT.

Ulemper

  • Some code may be challenging for those not proficient in Python, although Python is generally easy to learn.

Produktets prishistorikk

Viktig informasjon

  • Begrensninger: For produkter som fraktes internasjonalt, vennligst merk at eventuell produsentgaranti kanskje ikke er gjeldende; produsentens tjenestealternativer er kanskje ikke tilgjengelige; produktveiledninger, instrukser og sikkerhetsadvarsler er kanskje ikke tilgjengelig på destinasjonslandets språk; produktene (og medfølgende materiell) er kanskje ikke laget i samsvar med destinasjonslandets standarder, spesifikasjoner og krav om merking; og det kan være at produktene ikke har samme spenningsgrad og elektriske standard som destinasjonslandet eller ikke følger (det må brukes adapter eller strømomformer der dette gjelder). Mottakeren er ansvarlig for å forsikre seg om at produktet lovlig kan importeres til destinasjonslandet. Ved bestilling fra Ubuy eller deres partnere er mottakeren den registrerte importøren, og må etterleve alle lover og reguleringer i destinasjonslandet.
  • Ikke alle produktene som er opplistet hos Ubuy er til salgs, siden Ubuy er en global søkemotor. Produkter er underlagt reguleringer for eksport og handel.