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Lecture
Convex Functions
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Related lectures (28)
Optimization Techniques: Gradient Descent and Convex Functions
Provides an overview of optimization techniques, focusing on gradient descent and properties of convex functions in machine learning.
Primal-dual Optimization III: Lagrangian Gradient Methods
Explores primal-dual optimization methods, emphasizing Lagrangian gradient techniques and their applications in data optimization.
Faster Gradient Descent: Projected Optimization Techniques
Covers faster gradient descent methods and projected gradient descent for constrained optimization in machine learning.
Convex Optimization: Sets and Functions
Introduces convex optimization through sets and functions, covering intersections, examples, operations, gradient, Hessian, and real-world applications.
Proximal Operators and Constrained Optimization
Introduces proximal operators, gradient methods, and constrained optimization, exploring their convergence and practical applications.
Adversarial Machine Learning: Fundamentals and Techniques
Explores adversarial machine learning, covering the generation of adversarial examples, robustness challenges, and techniques like Fast Gradient Sign Method.
Proximal and Subgradient Descent: Optimization Techniques
Discusses proximal and subgradient descent methods for optimization in machine learning.
Stochastic Gradient Descent: Optimization and Convergence
Explores stochastic gradient descent, covering convergence rates, acceleration, and practical applications in optimization problems.
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