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curriculum [2023/04/21 09:47] cani [Detailed curriculum] |
curriculum [2023/04/27 10:31] scornet [Scientific courses, period 1 (October - December)] |
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==== Scientific courses, period 1 (October - December) ==== | ==== Scientific courses, period 1 (October - December) ==== | ||
- | **MAP/INF631 - Deep Learning (48h, 5 ECTS), Erwan Scornet (EP)** (contact: erwan.scornet@polytechnique.edu) | + | **MAP/INF631 - Deep Learning (48h, 4 ECTS), Erwan Scornet (EP)** (contact: erwan.scornet@polytechnique.edu) |
Deep Learning is one key element of modern data science. This course will explore several instances of Deep Neural Networks, each one being specifically adapted to solve a particular learning task (classification, image recognition, text mining, dimensionality reduction). An introduction to current research topics on neural network will be presented during the last part of the course. | Deep Learning is one key element of modern data science. This course will explore several instances of Deep Neural Networks, each one being specifically adapted to solve a particular learning task (classification, image recognition, text mining, dimensionality reduction). An introduction to current research topics on neural network will be presented during the last part of the course. | ||
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**MAP/INF641 - Deep Reinforcement Learning (24h, 2 ECTS), Jesse Read** (contact: jesse.read@polytechnique.edu) | **MAP/INF641 - Deep Reinforcement Learning (24h, 2 ECTS), Jesse Read** (contact: jesse.read@polytechnique.edu) | ||
- | Reinforcement learning (RL) is of increasing relevance today in science and industry, for developing autonomous agents in areas where dynamic decision making and adaptation is required; including games, energy systems, recommendation engines, finance, logistics, and auto-tuning the parameters of large and powerful computer models (for NLP, computer vision, etc). This course will take a deep look at the foundations of RL, the main learning paradigms (temporal-difference learning, Monte Carlo, and policy gradients methods), their modern state-of-the-art variants, and how they can be enhanced and deployed with deep-learning architectures to tackle problems at a scale found in the real world. We will also take a look at specialized topics such inverse reinforcement learning. | + | Reinforcement learning (RL) is of increasing relevance today, including in games, complex energy systems, recommendation engines, finance, logistics, and for auto-tuning the parameters of other learning frameworks. This course assumes familiarity with the foundations of RL and its main paradigms (temporal-difference learning, Monte Carlo, and policy-gradient methods). We will explore them further, and study modern state-of-the-art variants (such as proximal policy optimization), with a focus on developing RL solutions with deep neural architectures suited to modern applications. We will also take a look at specialized topics such inverse reinforcement learning. |
**INF641 - Introduction to the verification of neural networks (24h, 2 ECTS), Eric Goubault (EP), Sylvie Putot (EP)** (contact: sylvie.putot@polytechnique.edu) | **INF641 - Introduction to the verification of neural networks (24h, 2 ECTS), Eric Goubault (EP), Sylvie Putot (EP)** (contact: sylvie.putot@polytechnique.edu) | ||
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MAP/INF690 - Internship: 5 to 6 months project, either in the R&D department of a company or in a research lab. | MAP/INF690 - Internship: 5 to 6 months project, either in the R&D department of a company or in a research lab. | ||
- | ===== MASTER 1 ===== | ||
- | All courses are 36h and will represent 4 ECTS. | ||
- | |||
- | * MAP538: Refresher in statistics (two days, in September; Maxime Sangnier <maxime.sangnier@lpsm.paris>) | ||
- | * INF538: Refresher in Computer science (two days, in September; XXXX Ask Amal Dev Parrakat?) | ||
- | |||
- | === Period 1 === | ||
- | |||
- | + Scientific courses: | ||
- | |||
- | Mandatory: | ||
- | * Digital representation and analysis of shapes (INF574, Mathieu Desbrun, Pooran Memari, EP & Inria) | ||
- | |||
- | 1 course among: | ||
- | * Machine Learning I (INF554, Michalis Vazirgiannis, EP) | ||
- | * Foundations of Machine Learning (MAP553, Erwan Le Pennec, EP) | ||
- | |||
- | 2 courses among: | ||
- | * Image Analysis and Computer Vision (INF573, Mathieu Brédif, EP & IGN) | ||
- | * Constraint-based Modeling and Algorithms for Decision Making Problems (INF555, François Fages, EP & Inria) | ||
- | * Signal processing (MAP555, Rémi Flamary, EP) | ||
- | * Topological data analysis (INF556, Steve Oudot, EP & Inria) | ||
- | |||
- | + Mandatory non-scientific courses | ||
- | |||
- | * Fundamental of Strategy and Innovation (MIE555) or Marketing and Strategy Introduction (MIE556, Workload ++) | ||
- | * Sport | ||
- | * Humanities | ||
- | * Foreign languages | ||
- | |||
- | |||
- | === Period 2 === | ||
- | |||
- | Mandatory course: | ||
- | * Advanced Machine Learning and autonomous agents (INF581, Jesse Read, EP) | ||
- | * Computer animation (INF585, Damien Rohmer, EP) | ||
- | |||
- | 2 scientific courses among | ||
- | * Regression (MAP569, Karim Lounici, EP, difficult math course, with pre-requisit in mathematical fundations of ML, see also the book (2018) Foundations of Machine Learning; please contact the teacher before the beginning of the course) | ||
- | * Statistics in action (MAP566, Julien Chiquet, EP & Agro Paris Tech) | ||
- | * Real-time AI in Video Games: decisive & collaborative actions (INF584A, David Bilemdjian, Chaire Ubisoft) | ||
- | * Algorithmic geometry: from theory to applications (INF562, Luca Castelli, EP) | ||
- | * Image synthesis: Theory and practice (INF584, Tamy Boubekeur, Telecom ParisTech) | ||
- | |||
- | + Mandatory non-scientific courses | ||
- | * Entrepreneurship for sustainability (MIE568, wednesday morning), or Managing sustainable innovation (MIE565, friday afternoon) | ||
- | * Sport | ||
- | * Humanities | ||
- | * Foreign languages | ||
- | |||
- | === Period 3 === | ||
- | |||
- | MAP/INF590 - Internship (4 to 6 months) |