Favorites
b/booknewedited 1 week agobyForeverloving

Deep Learning with Scikit-learn and PyTorch: Master the Two Giants: Deep Learning with Scikit-learn andPyTorch

Deep Learning with Scikit-learn and PyTorch: Master the Two Giants: Deep Learning with Scikit-learn andPyTorch

English | March 3, 2024 | ISBN: N/A | ASIN: B0CX1K1K24 | 144 pages | EPUB | 0.24 Mb

Delve into the Cutting Edge: Deep Learning with Scikit-learn and PyTorch

Unleash the transformative power of Deep Learning and unlock a world of possibilities with "Deep Learning with Scikit-learn and PyTorch," your comprehensive guide to mastering this revolutionary technology.

Whether you're a seasoned programmer seeking to expand your skillset or a curious beginner eager to explore the future of artificial intelligence, this book empowers you to build intelligent applications and tackle complex problems across diverse domains.
Why choose this book?
Unique Synergy: Leverage the complementary strengths of Scikit-learn for data preprocessing and model evaluation, and PyTorch for building and training deep learning models.
Beginner-Friendly Approach: We break down complex concepts into manageable steps, ensuring a smooth learning experience, even for those new to deep learning.
Hands-on Learning: Dive headfirst into practical projects, building your skills by tackling real-world challenges in various fields like computer vision, natural language processing, and time series forecasting.
Solid Foundation: Gain a comprehensive understanding of the fundamental principles of deep learning, preparing you for further exploration and innovation.
Future-Proof Your Skills: Stay ahead of the curve by exploring advanced topics like transfer learning and generative models.
Within these pages, you'll discover
The Foundations of Deep Learning: Demystify deep learning concepts, understand its applications, and compare it to traditional machine learning approaches.
Harnessing Scikit-learn: Explore Scikit-learn's role in deep learning pipelines, from data preprocessing and feature engineering to model evaluation.
Building with Scikit-learn: Implement simple deep learning models using Scikit-learn's neural network modules and fine-tune pre-trained models for specific tasks.
Introducing PyTorch: Grasp the fundamentals of PyTorch, a powerful and flexible deep learning framework, and learn its core concepts like tensors and building neural networks from scratch.
Architecting Deep Learning Models: Implement popular architectures like Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) using PyTorch's built-in modules.
Training and Optimization: Understand the training process in PyTorch, including forward pass, backward pass, and gradient descent. Explore various optimization algorithms and techniques to prevent overfitting.
Leveraging Pre-trained Models: Accelerate development and improve performance by utilizing pre-trained models like ImageNet and BERT for transfer learning.
Building Real-World Projects: Apply your knowledge by constructing practical deep learning projects that address real-world challenges in various fields.
A Glimpse into the Future: Explore advanced topics like reinforcement learning and generative models, and stay updated with the latest advancements in deep learning.

No comments have been posted yet. Please feel free to comment first!

    Load more replies

    Join the conversation!

    Log in or Sign up
    to post a comment.