Skip to content

Resources for my Master's of Data Science and Artificial Intelligence at the University Côte d'Azur

Notifications You must be signed in to change notification settings

jorislimonier/uca-msc-dsai

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

UCA-MSc-DSAI

⭐⭐⭐ Please star this repo if you use it (especially extensively) ⭐⭐⭐

Resources for my Master's of Data Science and Artificial Intelligence at the University Côte d'Azur.

Grades

Recap

Year Semester Semester Average Year Average Master's Average
Year 1 Semester 1 17.48 16.80 15.10
Semester 2 16.12
Year 2 Semester 3 16.61 (16.36 + 0.25 bonus) 13.39
Semester 4 10.17

Semester grades are an average of each subject's grade, weighted by the subject's numbers of credits (ECTS).

Year 1

Semester 1

Module Course Course grade Module grade
Refresher ✔️ Basic Probability 19 18.6
✔️ Basic Algebra for Data Analysis 19
✔️ Basic Algorithmics 17
✔️ Basic tools for System Management 20
✔️ Methods and tools for technical and scienific writing 18
Statistics ✔️ Statistical Inference Theory 15 15
✔️ Statistical Inference Practice 15
Data Mining ✔️ A general introduction to Machine Learning 11 17
✔️ Processing large datasets with R 20
✔️ Technologies for Big Data with Python 20
Data Visualization and Management ✔️ Ethical aspects of data 19.01 18.815
✔️ Distributed Big Data Systems 19
✔️ Data visualization 18.5
Workshop and Vulgarization ✔️ Workshop and Vulgarization 19 19

Semester 2

Module Course Course grade Module grade
Statistical Learning ✔️ Statistical Learning Theory 20 18.10
✔️ Model selection and resampling methods 18
✔️ Optimization for Data Science 16.31
Machine Learning ✔️ Machine learning algorithms 12.87 15.12
✔️ Introduction to deep learning 15.50
✔️ Web of Data 17
Personal Work ✔️ Case Studies 13.5 15.375
✔️ Internship 16

Year 2

Semester 3

Module Course Course grade Module grade
Compulsory courses ✔️ Bayesian Learning 16 15.75
✔️ Advanced Deep Learning 17
✔️ Introduction to Information Theory 16
✔️ Model-Based statistical Learning 14
Advanced methods in ML ✔️ Research Project 16 16.7
✔️ Federated Learning - Data Privacy 18.1
Advanced methods in AI ✔️ Deep Learning for computer vision 18 16.83
✔️ Inverse Problems in image processing 16
✔️ Advanced Learning: Functional, Mixed and Text data 16.5

Semester 4

Module Course Course grade Module grade
Personal Training 🚧 Internship TBD TBD