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Deep Learning Tutorials
Learn how to use AI to speed up data analysis and processes in our deep learning tutorials. Upskill with our deep learning tips, tricks, and techniques.
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LSTM Models: A Complete Guide to Long Short-Term Memory Networks
Master the inner workings of LSTM networks, the foundation for modern LLMs. Explore gating mechanisms, gradients, and build a sentiment classifier with PyTorch.
Bex Tuychiev
2026년 2월 11일
Natural Language Processing with BERT: A Hands-On Guide
Learn what natural language processing (NLP) is and discover its real-world application, using Google BERT to process text datasets.
DataCamp Team
2025년 3월 20일
PyTorch CNN Tutorial: Build and Train Convolutional Neural Networks in Python
Learn how to construct and implement Convolutional Neural Networks (CNNs) in Python with PyTorch.
Javier Canales Luna
2025년 2월 27일
Kolmogorov-Arnold Networks (KANs): A Guide With Implementation
Learn about Kolmogorov-Arnold Networks (KANs), a new type of neural network with enhanced interpretability and accuracy compared to traditional models.
Dimitri Didmanidze
2024년 11월 8일
AdamW Optimizer in PyTorch Tutorial
Discover how the AdamW optimizer improves model performance by decoupling weight decay from gradient updates. This tutorial explains the key differences between Adam and AdamW, their use cases and provides a step-by-step guide to implementing AdamW in PyTorch.
Kurtis Pykes
2024년 10월 21일
Adagrad Optimizer Explained: How It Works, Implementation, & Comparisons
Learn the Adagrad optimization technique, including its key benefits, limitations, implementation in PyTorch, and use cases for optimizing machine learning models.
Satyam Tripathi
2024년 9월 26일
PyTorch Lightning: A Comprehensive Hands-On Tutorial
This comprehensive, hands-on tutorial teaches you how to simplify deep learning model development with PyTorch Lightning. Perfect for beginners and experienced developers alike, it covers environment setup, model training, and practical examples.
Bex Tuychiev
2024년 7월 14일
Cross-Entropy Loss Function in Machine Learning: Enhancing Model Accuracy
Explore cross-entropy in machine learning in our guide on optimizing model accuracy and effectiveness in classification with TensorFlow and PyTorch examples.
Kurtis Pykes
2026년 2월 27일
Introduction to Autoencoders: From The Basics to Advanced Applications in PyTorch
A walkthrough of Autoencoders, their variations, and potential applications in the real world.
Pier Paolo Ippolito
2023년 12월 14일
An Introduction to Convolutional Neural Networks (CNNs)
A complete guide to understanding CNNs, their impact on image analysis, and some key strategies to combat overfitting for robust CNN vs deep learning applications.
Zoumana Keita
2023년 11월 14일
Introduction to Activation Functions in Neural Networks
Learn to navigate the landscape of common activation functions—from the steadfast ReLU to the probabilistic prowess of the softmax.
Moez Ali
2025년 10월 31일
PyTorch vs Tensorflow vs Keras
Explore the key differences between PyTorch, TensorFlow, and Keras - three of the most popular deep learning frameworks. Understand their unique features, pros, cons, and use cases to choose the right tool for your project.
Kurtis Pykes
2023년 8월 2일