Deep Learning at Oxford 2015 | Nando de Freitas

Nando de Freitas

Comprehensive coverage of deep learning topics, delivered by a renowned expert. Includes hands-on demonstrations and code examples, suitable for beginners and advanced learners.

University CoursesDeep LearningNeural Networks

Introduction

This is a series of lectures on deep learning delivered by Nando de Freitas at the University of Oxford in 2015. The lectures cover a wide range of topics in deep learning, including neural networks, convolutional neural networks, recurrent neural networks, and more.

screenshot

Highlights

  • Comprehensive coverage of deep learning topics
  • Delivered by a renowned expert in the field
  • Includes hands-on demonstrations and code examples
  • Suitable for both beginners and advanced learners

Recommendation

This course is highly recommended for anyone interested in learning about deep learning and its applications. It provides a solid foundation in the fundamental concepts and techniques of deep learning, and is suitable for both students and professionals in the field of machine learning and artificial intelligence.

YouTube Videos

How GetVM Works

Learn by Doing from Your Browser Sidebar

Access from Browser Sidebar

Access from Browser Sidebar

Simply install the browser extension and click to launch GetVM directly from your sidebar.

Select Your Playground

Select Your Playground

Choose your OS, IDE, or app from our playground library and launch it instantly.

Learn and Practice Side-by-Side

Learn and Practice Side-by-Side

Practice within the VM while following tutorials or videos side-by-side. Save your work with Pro for easy continuity.

Explore Similar Hands-on Tutorials

A Selective Overview of Deep Learning

3
Technical TutorialsDeep LearningMachine LearningNeural Networks
Comprehensive overview of key concepts and recent advancements in deep learning, covering neural network models, training techniques, and theoretical foundations.

The Little Book of Deep Learning

22
Technical TutorialsMachine LearningNeural Networks
A concise and informative guide covering key topics in deep learning, machine learning, and neural networks. Explore foundations, model architectures, and practical applications.

Introduction to TensorFlow for AI, Machine Learning & Deep Learning

6
Video CoursesArtificial IntelligenceNeural NetworksTensorFlow
Gain hands-on experience in building neural networks, training them for computer vision, and understanding the use of convolutions to improve model performance.

Deep Multi-Task and Meta Learning | Comprehensive Guide

10
Video CoursesDeep LearningMachine Learning
In-depth understanding of state-of-the-art multi-task learning and meta-learning algorithms for few-shot learning, transfer learning, and lifelong learning.

Deep Learning Fundamentals | Neural Networks, Machine Learning

29
Video CoursesDeep LearningMachine Learning
Introductory book on deep learning fundamentals, covering neural networks, convolutional neural networks, recurrent nets, autoencoders, and deep learning use cases.

Machine Learning Specialization | AI, Machine Learning Fundamentals

10
Video CoursesData ScienceDeep LearningMachine Learning
Foundational online program on machine learning and AI applications, taught by Andrew Ng of DeepLearning.AI and Stanford Online.

Deep Learning for Natural Language Processing | University of Oxford

18
University CoursesDeep LearningMachine LearningNatural Language Processing
Dive into the latest advancements in deep learning for NLP, including text analysis, speech recognition, language translation, and more. Gain a solid theoretical foundation and practical experience.

Tensorflow for Deep Learning Research | Stanford University

18
University CoursesDeep LearningMachine LearningTensorFlow
Learn the fundamentals of TensorFlow for deep learning research. Build models for tasks like word embeddings, translation, and optical character recognition.

Introduction to Machine Learning | UC Berkeley CS 189 Course

14
University CoursesDeep LearningMachine Learning
Comprehensive machine learning course covering theoretical foundations, algorithms, and practical applications. Suitable for students with math and computer science background.