Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Machine Learning Accelerators: Types and Efficiency
Graph Chatbot
Related lectures (32)
Recurrent Neural Networks: Training and Challenges
Discusses recurrent neural networks, their training challenges, and solutions like LSTMs and GRUs.
Introduction to Data Science
Introduces the basics of data science, covering decision trees, machine learning advancements, and deep reinforcement learning.
Deep Neural Networks: Optimization and Approximation
Explores optimization and approximation in deep neural networks, including optimal control and numerical experiments.
Neural Networks: Perceptron and Backpropagation
Covers the basics of neural networks, including the perceptron model and backpropagation.
Neural Networks: Regression and Classification
Explores neural networks for regression and classification tasks, covering training, regularization, and practical examples.
Building Physical Neural Networks
Discusses challenges in building physical neural networks, focusing on depth, connections, and trainability.
Neural Networks Recap: Activation Functions
Covers the basics of neural networks, activation functions, training, image processing, CNNs, regularization, and dimensionality reduction methods.
Neural Networks: Multilayer Learning
Covers the fundamentals of multilayer neural networks and deep learning, including back-propagation and network architectures like LeNet, AlexNet, and VGG-16.
Optical Machine Learning: Harnessing Multiple Scattering for Efficiency
Explores the use of optics in machine learning, focusing on large-scale random matrix multiplication through multiple scattering of light.
Deep Neural Networks: Training and Optimization
Explores deep neural network training, optimization, preventing overfitting, and different network architectures.
Deep Learning for Autonomous Vehicles: Learning
Explores learning in deep learning for autonomous vehicles, covering predictive models, RNN, ImageNet, and transfer learning.
Neural Networks: Basics and Applications
Explores neural networks basics, XOR problem, classification, and practical applications like weather data prediction.
Previous
Page 2 of 2
Next