![]() | Study programme 2025-2026 | Français | |
![]() | Advanced and Streaming AI | ||
Programme component of Master's in Mathematics (MONS) (day schedule) à la Faculty of Science |
| Code | Type | Head of UE | Department’s contact details | Teacher(s) |
|---|---|---|---|---|
| US-M1-SCMATH-058-M | Optional UE | SIEBERT Xavier | F151 - Mathématique et Recherche opérationnelle |
|
| Language of instruction | Language of assessment | HT(*) | HTPE(*) | HTPS(*) | HR(*) | HD(*) | Credits | Weighting | Term |
|---|---|---|---|---|---|---|---|---|---|
| Anglais, Français, Anglais | 30 | 30 | 0 | 0 | 0 | 5 | 5.00 | 1st term |
| AA Code | Teaching Activity (AA) | HT(*) | HTPE(*) | HTPS(*) | HR(*) | HD(*) | Term | Weighting |
|---|---|---|---|---|---|---|---|---|
| I-ILIA-202 | Advanced Deep Learning | 6 | 6 | 0 | 0 | 0 | Q1 | 20.00% |
| I-MARO-218 | Advanced Machine Learning | 24 | 24 | 0 | 0 | 0 | Q1 | 80.00% |
| Programme component |
|---|
Objectives of Programme's Learning Outcomes
Learning Outcomes of UE
Get familiar with the contemporary methods in machine learning (active learning, reinforcement learning, depp networks) Study these methods within the frameworks of statistical learning theory
UE Content: description and pedagogical relevance
active learning, reinforcement learning, deep networks, statistical learning theory
Prior Experience
machine learning basics, python programming
Type of Teaching Activity/Activities
| AA | Type of Teaching Activity/Activities |
|---|---|
| I-ILIA-202 |
|
| I-MARO-218 |
|
Mode of delivery
| AA | Mode of delivery |
|---|---|
| I-ILIA-202 |
|
| I-MARO-218 |
|
Required Learning Resources/Tools
| AA | Required Learning Resources/Tools |
|---|---|
| I-ILIA-202 | Not applicable |
| I-MARO-218 | Not applicable |
Recommended Learning Resources/Tools
| AA | Recommended Learning Resources/Tools |
|---|---|
| I-ILIA-202 | Not applicable |
| I-MARO-218 | Not applicable |
Other Recommended Reading
| AA | Other Recommended Reading |
|---|---|
| I-ILIA-202 | Not applicable |
| I-MARO-218 | Not applicable |
Grade Deferrals of AAs from one year to the next
| AA | Grade Deferrals of AAs from one year to the next |
|---|---|
| I-ILIA-202 | Unauthorized |
| I-MARO-218 | Unauthorized |
Term 1 Assessment - type
| AA | Type(s) and mode(s) of Q1 assessment |
|---|---|
| I-ILIA-202 |
|
| I-MARO-218 |
|
Term 1 Assessment - comments
| AA | Term 1 Assessment - comments |
|---|---|
| I-ILIA-202 | Presentation of an AI solution treating energetic data and using deep neural networks : MLP, CNN, RNN, LSTM, Transformers, etc. The solution will be evaluated using various metrics, including accuracy, computational performance, memory footprint, and energy consumption |
| I-MARO-218 | Project on a topic linked to the course |
Resit Assessment - Term 1 (BAB1) - type
| AA | Type(s) and mode(s) of Q1 resit assessment (BAB1) |
|---|---|
| I-ILIA-202 |
|
| I-MARO-218 |
|
Resit Assessment - Term 1 (BAB1) - Comments
| AA | Resit Assessment - Term 1 (BAB1) - Comments |
|---|---|
| I-ILIA-202 | Not applicable |
| I-MARO-218 | n/a |
Term 3 Assessment - type
| AA | Type(s) and mode(s) of Q3 assessment |
|---|---|
| I-ILIA-202 |
|
| I-MARO-218 |
|
Term 3 Assessment - comments
| AA | Term 3 Assessment - comments |
|---|---|
| I-ILIA-202 | Idem Q1 |
| I-MARO-218 | same as Q1 |