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07-03-2025:

Nové předměty magisterské specializace AI (díky @profojak za zjištění):

Foundation of machine learning

  • Empirical Risk Minimization
  • Generative learning (MLE)
  • Bayesian learning
  • Generalization theory (PAC learning)
  • Linear models (Perceptron algorithms, SVM,..)
  • EM Algorithm
  • Bias-Variance trade-off
  • Model selection and validation methods
  • Performance metrics
  • VC dimension
  • Deep learning and generalization

Deep learning

  • Recap of Machine Learning
  • Backpropagation (+implicit differentiation)
  • Convolutional Neural Networks (+equivariances)
  • Training Deep Models (initialization, normalization, residual)
  • Regularization Methods for NNs
  • Stochastic Gradient Descent (SGD)
  • Adversarial patterns. Robust learning approaches
  • Adaptive SGD methods
  • Learning Representations I: Word Vectors, Metric Learning
  • Learning Representations II: Unsupervised Representation Learning, VAE
  • Graph Neural Networks
  • Self-Attention, Transformers, ViT, LLMs
  • TBA (Recurrent NNs + State Space Models / GAN + Diffusion / Fairness)

Reinforcement learning

  • Motivation (successes, AGI, human feedback, history)
  • Multi-armed bandit problems (stochastic, contextual)
  • Solving MDPs 1: (Bellman equations, Value iteration)
  • Solving MDPs 2: (Contraction, Policy iteration)
  • Temporal difference learning 1: (TD(0), Sarsa, Q-learning)
  • Temporal difference learning 2: (n-step,Double-Q, DQN)
  • Policy gradient methods 1: (Tabular)
  • Policy gradient methods 2: (Variance reduction, Neural)
  • Combining learning and planning (AlphaZero, muZero)
  • Exploration in RL
  • Multi-agent RL (cooperative vs. adversarial)
  • Applications: Advertising, RLHF, Robotics, …
  • Neuro-science and RL

Computational game theory

  • Normal-form games
  • Two-player zero-sum games
  • Extensive-form games with imperfect information
  • Solving extensive-form games with imperfect information
  • Alternatives to Nash equilibrium
  • Online learning, regret minimization
  • Bayesian games
  • Analysis of auctions I (second/first-price auctions as instances of Bayesian games and their equilibria)
  • Analysis of auctions II (order statistics, revenue equivalence theorem)
  • Introduction to mechanism design (the framework based on Bayesian games, optimal auctions, VCG, revelation principle)
  • Coalitional games
  • Shapley value
  • Weighted voting games
  • Summary.

Logical reasoning and planning

  • Introduction and motivation + propositional logic/CNF/BDDs
  • SAT - basic encodings, DPLL, resolution
  • SAT - CDCL
  • SAT - encodings, SMT
  • SMT - lazy, congruence closure, theory combination
  • Proof assistants
  • Intro planning, heuristic search GBFS, A*, Weighted A*
  • State space representations PDDL, STRIPS, FDR
  • Delete relaxation heuristics hmax, hadd, hff
  • Landmarks, saturated cost partitioning, LM-Cut / BDD based symbolic search

6. Povinně volitelný z následující sady předmětů

LLMs and AGIs, Deep generative models, AI in robotics, Methods of computer vision, Non-smooth non-convex optimization for training deep neural networks

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