Tag: NLP

  • Natural Language Processing (NLP) and Generative AI for Beginner

    Natural Language Processing (NLP) and Generative AI for Beginner



    Natural Language Processing (NLP) and Generative AI for Beginner

    Price : 20.32

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    Natural Language Processing (NLP) and Generative AI are two fascinating fields in the world of artificial intelligence that have gained significant attention in recent years. If you’re a beginner looking to learn more about NLP and Generative AI, you’ve come to the right place!

    NLP is a subfield of AI that focuses on the interaction between computers and human language. It involves tasks such as language translation, sentiment analysis, and text generation. NLP algorithms are designed to understand and interpret human language in a way that is meaningful and useful.

    Generative AI, on the other hand, refers to AI systems that are capable of creating new content, such as images, music, or text. These systems are trained on large datasets of existing content and are able to generate new, original content based on what they have learned.

    If you’re interested in learning more about NLP and Generative AI, there are plenty of resources available online to help you get started. Websites like Coursera, Udemy, and edX offer courses on these topics, and there are also numerous tutorials and articles available for free on platforms like Medium and Towards Data Science.

    By delving into the world of NLP and Generative AI, you’ll gain a deeper understanding of how computers can interact with and generate human language, opening up a world of possibilities for applications in areas such as customer service, content creation, and more. So why wait? Dive into the world of NLP and Generative AI today and unlock your potential in this exciting field!
    #Natural #Language #Processing #NLP #Generative #Beginner

  • Deep Learning with PyTorch Step-by-Step: A Beginner’s Guide: Volume III: Sequences & NLP

    Deep Learning with PyTorch Step-by-Step: A Beginner’s Guide: Volume III: Sequences & NLP


    Price: $9.99
    (as of Dec 16,2024 05:51:48 UTC – Details)


    From the Publisher

    deep learning pytorch

    deep learning pytorch

    tensor

    tensor

    Is this book for me?

    Daniel wrote this book for beginners in general – not only PyTorch beginners. Every now and then he will spend some time explaining some fundamental concepts which are essential to have a proper understanding of what’s going on in the code.

    This volume is more demanding than the other two, and you’re going to enjoy it more if you already have a solid understanding of deep learning models.

    In this third volume of the series, you’ll be introduced to all things sequence-related: recurrent neural networks and their variations, sequence-to-sequence models, attention, self-attention, and Transformers.

    This volume also includes a crash course on natural language processing (NLP), from the basics of word tokenization all the way up to fine-tuning large models (BERT and GPT-2) using the HuggingFace library.

    By the time you finish this book, you’ll have a thorough understanding of the concepts and tools necessary to start developing, training, and fine-tuning language models using PyTorch.

    What’s inside

    Recurrent neural networks (RNN, GRU, and LSTM) and 1D convolutions
    Seq2Seq models, attention, self-attention, masks, and positional encoding
    Transformers, layer normalization, and the Vision Transformer (ViT)
    BERT, GPT-2, word embeddings, and the HuggingFace library
    … and more!

    surface

    surface

    How is this book different?

    This book is written as if YOU, the reader, were having a conversation with Daniel, the author: he will ask you questions (and give you answers shortly afterward) and also make some (silly) jokes.

    Moreover, this book spells concepts out in plain English, avoiding fancy mathematical notation as much as possible.

    It shows you the inner workings of sequence models, in a structured, incremental, and from-first-principles approach.

    It builds, step-by-step, not only the models themselves but also your understanding as it shows you both the reasoning behind the code and how to avoid some common pitfalls and errors along the way.

    author

    author

    “Hi, I’m Daniel!”

    I am a data scientist, developer, teacher, and author of this series of books.

    I will tell you, briefly, how this series of books came to be. In 2018, before teaching a class, I tried to find a blog post that would visually explain, in a clear and concise manner, the concepts behind binary cross-entropy so that I could show it to my students. Since I could not find any that fit my purpose, I decided to write one myself. It turned out to be my most popular blog post!

    My readers have welcomed the simple, straightforward, and conversational way I explained the topic.

    Then, in 2019, I used the same approach for writing another blog post: “Understanding PyTorch with an example: a step-by-step tutorial.” Once again, I was amazed by the reaction from the readers! It was their positive feedback that motivated me to write this series of books to help beginners start their journey into deep learning and PyTorch.

    I hope you enjoy reading these books as much as I enjoyed writing them!

    ASIN ‏ : ‎ B09R144VB5
    Publisher ‏ : ‎ Self-Published (January 22, 2022)
    Publication date ‏ : ‎ January 22, 2022
    Language ‏ : ‎ English
    File size ‏ : ‎ 29006 KB
    Simultaneous device usage ‏ : ‎ Unlimited
    Text-to-Speech ‏ : ‎ Enabled
    Screen Reader ‏ : ‎ Supported
    Enhanced typesetting ‏ : ‎ Enabled
    X-Ray ‏ : ‎ Not Enabled
    Word Wise ‏ : ‎ Not Enabled
    Print length ‏ : ‎ 682 pages


    Deep Learning with PyTorch Step-by-Step: A Beginner’s Guide: Volume III: Sequences & NLP

    In this third volume of our beginner’s guide to deep learning with PyTorch, we will dive into the world of sequences and natural language processing (NLP). Sequences are a fundamental data structure in many applications, such as time series data, text data, and more. NLP, on the other hand, deals with the processing and understanding of human language using computational techniques.

    In this guide, we will cover the following topics:

    1. Introduction to Sequences: We will start by understanding what sequences are and why they are important in deep learning. We will explore different types of sequences, such as time series data and text data.

    2. Sequence Models with PyTorch: We will learn how to build sequence models using PyTorch, including recurrent neural networks (RNNs), long short-term memory (LSTM) networks, and gated recurrent units (GRUs).

    3. Natural Language Processing (NLP) Basics: We will introduce the basic concepts of NLP, such as tokenization, word embeddings, and text classification.

    4. Building NLP Models with PyTorch: We will explore how to build NLP models using PyTorch, including text classification, sentiment analysis, and named entity recognition.

    Throughout this guide, we will provide step-by-step instructions and code examples to help you understand and implement these concepts in PyTorch. By the end of this volume, you will have a solid understanding of how to work with sequences and NLP using PyTorch, and you will be ready to tackle more advanced deep learning tasks in these domains. Stay tuned for more updates and happy learning!
    #Deep #Learning #PyTorch #StepbyStep #Beginners #Guide #Volume #III #Sequences #NLP

  • Deep Learning for NLP and Speech – Hardcover, by Kamath Uday; Liu – Very Good

    Deep Learning for NLP and Speech – Hardcover, by Kamath Uday; Liu – Very Good



    Deep Learning for NLP and Speech – Hardcover, by Kamath Uday; Liu – Very Good

    Price : 71.04

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    Are you looking to dive deep into the world of Natural Language Processing (NLP) and Speech? Look no further than “Deep Learning for NLP and Speech” by Kamath Uday and Liu. This hardcover book offers a comprehensive overview of the cutting-edge techniques and algorithms used in deep learning for NLP and speech recognition.

    With a focus on practical applications and real-world examples, this book is perfect for both beginners and experienced professionals looking to enhance their skills in these rapidly evolving fields. Whether you’re interested in sentiment analysis, machine translation, or speech recognition, this book has you covered.

    Overall, “Deep Learning for NLP and Speech” is sure to be a valuable addition to your library. Grab your copy today and take your understanding of NLP and speech to the next level!
    #Deep #Learning #NLP #Speech #Hardcover #Kamath #Uday #Liu #Good

  • Machine Learning for Beginners: Master Fundamentals in NLP, ML Algorithms, Deep Learning, and More with This Simple Introductory Guide. Learn ML Techniques in Less Than 14 Days

    Machine Learning for Beginners: Master Fundamentals in NLP, ML Algorithms, Deep Learning, and More with This Simple Introductory Guide. Learn ML Techniques in Less Than 14 Days


    Price: $17.99
    (as of Dec 15,2024 22:55:48 UTC – Details)




    ASIN ‏ : ‎ B0D9TFLZ4J
    Publisher ‏ : ‎ Independently published (August 24, 2024)
    Language ‏ : ‎ English
    Paperback ‏ : ‎ 222 pages
    ISBN-13 ‏ : ‎ 979-8333668646
    Reading age ‏ : ‎ 14 – 18 years
    Item Weight ‏ : ‎ 13.9 ounces
    Dimensions ‏ : ‎ 6 x 0.5 x 9 inches


    Are you interested in diving into the world of machine learning but don’t know where to start? Look no further! Our introductory guide is designed for beginners looking to master the fundamentals of machine learning in less than 14 days.

    In this guide, we will cover key concepts in natural language processing (NLP), machine learning algorithms, deep learning, and more. You will learn how to build and train models, interpret results, and apply machine learning techniques to real-world problems.

    Whether you are a student, professional, or hobbyist, this guide is perfect for anyone looking to kickstart their machine learning journey. No prior experience is required as we will start from the basics and gradually build up your knowledge.

    By the end of this guide, you will have a solid understanding of machine learning principles and be ready to tackle more advanced topics. So don’t wait any longer, start your machine learning journey today and become a master in less than 14 days!
    #Machine #Learning #Beginners #Master #Fundamentals #NLP #Algorithms #Deep #Learning #Simple #Introductory #Guide #Learn #Techniques #Days

  • Deep Learning for Beginners: Neural Networks, NLP, and Vision with TensorFlow and Keras

    Deep Learning for Beginners: Neural Networks, NLP, and Vision with TensorFlow and Keras


    Price: $39.99
    (as of Dec 15,2024 21:20:30 UTC – Details)




    ASIN ‏ : ‎ B0DNTZT9X5
    Publication date ‏ : ‎ November 22, 2024
    Language ‏ : ‎ English
    File size ‏ : ‎ 605 KB
    Simultaneous device usage ‏ : ‎ Unlimited
    Text-to-Speech ‏ : ‎ Enabled
    Screen Reader ‏ : ‎ Supported
    Enhanced typesetting ‏ : ‎ Enabled
    X-Ray ‏ : ‎ Not Enabled
    Word Wise ‏ : ‎ Not Enabled
    Print length ‏ : ‎ 191 pages


    Are you new to the world of deep learning and looking to get started with neural networks, natural language processing (NLP), and computer vision? Look no further! In this post, we will explore the basics of deep learning with TensorFlow and Keras, two popular open-source machine learning libraries.

    Neural networks are at the core of deep learning, and they are inspired by the way the human brain works. They consist of layers of interconnected nodes, or neurons, that process and learn from data. TensorFlow is a powerful and flexible library for building and training neural networks, while Keras provides a user-friendly interface for creating deep learning models.

    Natural language processing (NLP) is a field of artificial intelligence that focuses on understanding and generating human language. With TensorFlow and Keras, you can build NLP models for tasks such as text classification, sentiment analysis, and machine translation.

    Computer vision is another exciting application of deep learning, where machines are trained to interpret and analyze visual data. You can use TensorFlow and Keras to develop computer vision models for image recognition, object detection, and image segmentation.

    Whether you are a student, a researcher, or a developer looking to dive into deep learning, this post will provide you with the foundational knowledge and resources to get started. Stay tuned for more tutorials and hands-on examples to help you on your deep learning journey!
    #Deep #Learning #Beginners #Neural #Networks #NLP #Vision #TensorFlow #Keras

  • Understanding Deep Learning: Building Machine Learning Systems with PyTorch and TensorFlow: From Neural Networks (CNN, DNN, GNN, RNN, ANN, LSTM, GAN) to Natural Language Processing (NLP)

    Understanding Deep Learning: Building Machine Learning Systems with PyTorch and TensorFlow: From Neural Networks (CNN, DNN, GNN, RNN, ANN, LSTM, GAN) to Natural Language Processing (NLP)


    Price: $2.99
    (as of Nov 24,2024 06:40:19 UTC – Details)


    From the Publisher

    Deep Learning Machine Learning Book MockupDeep Learning Machine Learning Book Mockup

    Master the Fundamentals of Deep Learning with Ease

    From Basics to Advanced Techniques, All in One Place

    This book is your complete guide to deep learning. Dive into the concepts that power artificial intelligence, neural networks, and modern machine learning systems. Packed with clear, color-coded illustrations and hands-on exercises, this resource is designed to make complex ideas accessible and memorable.

    Comprehensive and Practical

    Whether you’re a student, professional, or tech enthusiast, this book bridges the gap between theory and real-world applications. Learn to implement cutting-edge models with frameworks like TensorFlow and PyTorch, develop a strong understanding of neural networks, and gain the skills to work with large datasets.

    Why This Book Stands Out

    Illustrated and Color-Coded: Complex topics made simple with diagrams and color-coded snippets.Hands-On Approach: Practical exercises with TensorFlow and PyTorch.For All Levels: Ideal for beginners, advanced learners, and professionals.Theory Meets Practice: Covers foundational concepts and advanced models.Expertly Written: Clear and comprehensive, created by industry professionals.

    Who Should Read This Book? Data Scientists and AI/ML Engineers Software Developers Researchers and Academics Tech Enthusiasts Professionals seeking AI integration insights Job Seekers

    Build, Train, and Optimize Deep Learning ModelsBuild, Train, and Optimize Deep Learning Models

    Gain Expertise in Model Architectures

    Explore advanced network architectures that drive modern AI applications

    In-depth Analysis of Neural Network Layers Explore neural network layers, from fully connected to specialized ones like convolutional and recurrent. Learn how each layer contributes to feature extraction, sequence modeling, and data compression for various AI applications.Optimization and Regularization Techniques Master optimization methods like SGD, Adam, and RMSprop for effective loss minimization. Understand regularization strategies such as Dropout, Batch Normalization, and L2 Regularization to control overfitting and stabilize training.Building and Training Custom Models with TensorFlow and PyTorch Gain expertise in constructing and training custom models in TensorFlow and PyTorch. Define architectures, customize activation functions, and integrate complex layers to create models suited for specific industry needs.

    Advanced Architectures and Attention MechanismsAdvanced Architectures and Attention Mechanisms

    Fine-Tune for Maximum Efficiency

    Advanced techniques for selecting hyperparameters that maximize your model’s accuracy and speed

    Understanding the Impact of Hyperparameters on Model Performance Explore hyperparameters like learning rate, batch size, and epochs. See how fine-tuning affects convergence, stability, and model accuracy on test data.Techniques for Systematic Hyperparameter Tuning Learn methods like Grid Search, Random Search, and Bayesian Optimization to tune hyperparameters. Understand how each approach suits different models, improving resource efficiency and iteration speed.Automated Hyperparameter Optimization with Optuna and Hyperopt Automate hyperparameter tuning with Optuna and Hyperopt. Use these tools to optimize models for peak performance without manual intervention.

    Generative Models and BeyondGenerative Models and Beyond

    Adapt Pre-Trained Models for Custom Applications

    Harness the power of transfer learning to adapt large models for your specific needs

    Customizing Pre-Trained Models for Specialized Tasks Adapt models like ResNet, VGG, and BERT for niche applications. Explore layer customization by freezing lower layers and modifying upper layers for feature extraction and tuning to specific tasks.Fine-Tuning Techniques for Optimal Performance Master fine-tuning techniques like unfreezing layers, adjusting learning rates, and recalibrating batch sizes to maximize performance, especially in limited data settings.Managing Transfer Learning Challenges: Domain Shift & Overfitting Gain strategies for domain adaptation and managing overfitting in transfer learning. Address distribution shifts, apply data augmentation, and perform domain-specific tuning for robust adaptation.

    Deep learning, color-coded diagrams, TensorFlow, PyTorch, neural networks, machine learning visualsDeep learning, color-coded diagrams, TensorFlow, PyTorch, neural networks, machine learning visuals

    Deep Learning with Detailed, Color-Coded Visuals

    Deep learning with clear, color-coded illustrations that simplify complex concepts. From neural network architectures to data processing techniques, every page is packed with visuals to support your learning. Code snippets are thoughtfully formatted, making it easy to follow along and implement real-world applications. Perfect for visual learners and professionals seeking practical insights.

    ASIN ‏ : ‎ B0DLLM3W8T
    Publication date ‏ : ‎ October 30, 2024
    Language ‏ : ‎ English
    File size ‏ : ‎ 11416 KB
    Simultaneous device usage ‏ : ‎ Unlimited
    Text-to-Speech ‏ : ‎ Enabled
    Screen Reader ‏ : ‎ Supported
    Enhanced typesetting ‏ : ‎ Enabled
    X-Ray ‏ : ‎ Not Enabled
    Word Wise ‏ : ‎ Not Enabled
    Print length ‏ : ‎ 527 pages

    Customers say

    Customers find the book comprehensive, bridging theory and practice. They say it provides a balanced introduction to both PyTorch and TensorFlow. Readers also appreciate the vibrant illustrations and well-designed book.

    AI-generated from the text of customer reviews


    Deep learning has revolutionized the field of artificial intelligence and machine learning, allowing machines to learn complex patterns and make decisions in a way that mimics the human brain. In this post, we will delve into the world of deep learning and explore how to build machine learning systems using popular frameworks like PyTorch and TensorFlow.

    At the core of deep learning are neural networks, which are computational models inspired by the structure and function of the human brain. There are various types of neural networks, including Convolutional Neural Networks (CNN), Deep Neural Networks (DNN), Graph Neural Networks (GNN), Recurrent Neural Networks (RNN), Artificial Neural Networks (ANN), Long Short-Term Memory (LSTM) networks, and Generative Adversarial Networks (GAN).

    CNNs are commonly used for image recognition tasks, DNNs for general-purpose machine learning tasks, GNNs for graph data, RNNs for sequential data, ANNs for general learning tasks, LSTMs for sequence prediction, and GANs for generating new data samples.

    In addition to neural networks, deep learning is also widely used in Natural Language Processing (NLP), which focuses on the interaction between computers and human language. NLP tasks include sentiment analysis, machine translation, text generation, and more. PyTorch and TensorFlow provide powerful tools and libraries for building deep learning models for NLP tasks.

    By understanding the fundamentals of deep learning and mastering frameworks like PyTorch and TensorFlow, you can unlock the potential of building intelligent machine learning systems that can learn from data and make informed decisions. Stay tuned for more in-depth articles on each type of neural network and NLP tasks in the upcoming posts.
    #Understanding #Deep #Learning #Building #Machine #Learning #Systems #PyTorch #TensorFlow #Neural #Networks #CNN #DNN #GNN #RNN #ANN #LSTM #GAN #Natural #Language #Processing #NLP