/MVA

Labs and homeworks done during the Master Mathematics, Vision, Learning (MVA) at ENS Paris-Saclay.

Primary LanguageJupyter Notebook

MVA

Labs and homeworks done during the Master Mathematics, Vision, Learning (MVA) at ENS Paris-Saclay.

First semester

Course Homework
Convex Optimization Convexity, Conjugate Function
Duality
LASSO
Deep Learning Natural Language Processing
Deep Q-learning
Graphs for Machine Learning Spectral Clustering
Semi-Supervised Learning
Graph Neural Networks
Object Recognition and Computer Vision Objects Matching, Image Retrieval
Neural Networks
Bird Classification Challenge
Probabilistic Graphical Models Discrete Graphical Models, Linear Classification
EM Algorithm, Ising Model and Loopy Belief Propagation
Gibbs Sampling, Mean Field VB
Reinforcement Learning Finite MDPs, Function Approximation
Exploration in Linear Bandits and in Reinforcement Learning

Second semester

Course Homework
Biostatistics Treatment effect estimation, COVID-19
Deep Learning in Practice Hyperparameters tuning
Grad-CAM
Graph Neural Networks
Active Learning
Rossler Attractor
Generative Models
Kernel Methods Kernels, Optimization
Multiscale models and CNNs Paris Fire Brigade Challenge
Neurosciences Predictive Coding
Sequential Learning Game Theory, Sleeping Experts