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
Structures in Non-Convex Optimization
Graph Chatbot
Related lectures (30)
Previous
Page 3 of 3
Next
Deep and Convolutional Networks: Generalization and Optimization
Explores deep and convolutional networks, covering generalization, optimization, and practical applications in machine learning.
Adaptive Optimization Methods: Theory and Applications
Explores adaptive optimization methods that adapt locally and converge without knowing the smoothness constant.
Non-Convex Optimization: Techniques and Applications
Covers non-convex optimization techniques and their applications in machine learning.
Crash course on Deep Learning
Covers a crash course on deep learning, including the Mark I Perceptron, neural networks, optimization algorithms, and practical training aspects.
Optimization in Machine Learning: Gradient Descent
Covers optimization in machine learning, focusing on gradient descent for linear and logistic regression, stochastic gradient descent, and practical considerations.
Deep Neural Networks: Training and Optimization
Explores deep neural network training, optimization, preventing overfitting, and different network architectures.
Gradient-Based Algorithms in High-Dimensional Learning
Provides insights on gradient-based algorithms, deep learning mysteries, and the challenges of non-convex problems.
Stochastic Gradient Descent
Explores stochastic gradient descent optimization and the Mean-Field Method in neural networks.
Deep Learning: Multilayer Perceptron and Training
Covers deep learning fundamentals, focusing on multilayer perceptrons and their training processes.
Neural Networks: Training and Optimization
Explores neural network training, optimization, and environmental considerations, with insights into PCA and K-means clustering.