77 Languages
Logo
WIZAPE
Apprentice Mode
10 Modules / ~100 pages
Wizard Mode
~25 Modules / ~400 pages

Optimization Algorithms for AI
( 30 Modules )

Module #1
Introduction to Optimization Algorithms
Overview of optimization algorithms, their importance in AI, and types of optimization problems
Module #2
Mathematical Background
Review of linear algebra, calculus, and probability theory fundamentals
Module #3
Gradient Descent
Basic gradient descent algorithm, convergence analysis, and variants (momentum, NAG, Adagrad)
Module #4
Stochastic Gradient Descent
Stochastic gradient descent, mini-batching, and parallel computing
Module #5
Conjugate Gradient Method
Conjugate gradient method, its convergence properties, and applications
Module #6
Quasi-Newton Methods
Quasi-Newton methods (BFGS, SR1), their convergence properties, and applications
Module #7
Newtons Method
Newtons method, its convergence properties, and applications
Module #8
Line Search Methods
Line search methods, Wolfe conditions, and Armijo rule
Module #9
Trust Region Methods
Trust region methods, their convergence properties, and applications
Module #10
Constraint Optimization
Introduction to constraint optimization, Karush-Kuhn-Tucker conditions, and Lagrange multipliers
Module #11
Linear Programming
Linear programming, simplex method, and dual simplex method
Module #12
Integer Programming
Integer programming, branch and bound method, and cutting plane method
Module #13
Heuristics and Metaheuristics
Introduction to heuristics and metaheuristics, simulated annealing, and genetic algorithms
Module #14
Swarm Intelligence
Swarm intelligence, particle swarm optimization, and ant colony optimization
Module #15
Evolutionary Algorithms
Evolutionary algorithms, evolution strategies, and genetic programming
Module #16
Global Optimization
Global optimization, multi-start methods, and surrogate-based optimization
Module #17
Bayesian Optimization
Bayesian optimization, Gaussian processes, and acquisition functions
Module #18
Optimization in Machine Learning
Optimization in machine learning, model selection, and hyperparameter tuning
Module #19
Optimization in Deep Learning
Optimization in deep learning, stochastic gradient descent with momentum, and Adam optimizer
Module #20
Optimization in Reinforcement Learning
Optimization in reinforcement learning, policy gradient methods, and Q-learning
Module #21
Optimization in Computer Vision
Optimization in computer vision, image processing, and object detection
Module #22
Optimization in Natural Language Processing
Optimization in natural language processing, language models, and text classification
Module #23
Optimization in Robotics
Optimization in robotics, motion planning, and control systems
Module #24
Optimization in Healthcare
Optimization in healthcare, medical imaging, and disease diagnosis
Module #25
Optimization in Finance
Optimization in finance, portfolio optimization, and risk management
Module #26
Optimization in Energy Systems
Optimization in energy systems, power grid management, and renewable energy integration
Module #27
Optimization in Transportation
Optimization in transportation, traffic flow management, and route optimization
Module #28
Optimization in Logistics
Optimization in logistics, supply chain management, and inventory control
Module #29
Case Studies and Applications
Real-world case studies and applications of optimization algorithms in AI
Module #30
Course Wrap-Up & Conclusion
Planning next steps in Optimization Algorithms for AI career


  • Logo
    WIZAPE
Our priority is to cultivate a vibrant community before considering the release of a token. By focusing on engagement and support, we can create a solid foundation for sustainable growth. Let’s build this together!
We're giving our website a fresh new look and feel! 🎉 Stay tuned as we work behind the scenes to enhance your experience.
Get ready for a revamped site that’s sleeker, and packed with new features. Thank you for your patience. Great things are coming!

Copyright 2024 @ WIZAPE.com
All Rights Reserved
CONTACT-USPRIVACY POLICY