Master of Science in Artificial Intelligence Applied to Society
Paris, France
DURATION
14 up to 16 Months
LANGUAGES
English
PACE
Full time
APPLICATION DEADLINE
Request application deadline
EARLIEST START DATE
Sep 2024
TUITION FEES
EUR 20,000 / per year
STUDY FORMAT
On-Campus
Introduction
Boost your career with a top-level Master’s degree in AI!
Artificial intelligence has become a game changer in our lives. This program aims to provide students with the foundations and most advanced techniques in the field, enabling them to become technical leaders of this transformation.
Our program offers a unique curriculum, tackling the field with model/symbolic-driven and data-driven artificial intelligence methods, while also assessing their applications to key societal domains such as ethics, internet of people, networks, logistics, and biomedical sciences.
This unique program, offering an end-to-end approach from theory to practice, is delivered entirely in English by outstanding teachers and classes, and offers a uniquely excellent curriculum to those preparing for a future as artificial intelligence architects seeking exceptional career perspectives in the hottest discipline of the 21st century.
Ideal Students
Do I have the profile that fits?
- have you graduated or will you soon graduate from a top university/school with a strong degree (4-years Bachelor or first year of master) in engineering, mathematics, statistics, informatics, physics?
- are you very comfortable with at least one programming language?
- do you have little to no work experience?
- do you have a good level of English and would you like to study entirely in English?
- are you looking to become an expert and a leader in AI?
Admissions
Scholarships and Funding
Scholarships
International students can receive scholarships from their government or university, awarded by the Ministry of Foreign Affairs upon referral from the institution, for certain countries.
Paid intership
Internship in a company is paid (average approximately €1,400 per month).
Curriculum
1st period : Foundations with 6 Core Courses
- Foundations of Machine Learning:An overview of the most important trends in machine learning, with a particular focus on statistical risk and its minimization with respect to a prediction function is given in this course. A substantial lab section involves group projects on data science competitions and gives students the ability to apply the course theory to real-world problems.
- Foundations of Artificial intelligence: An history and overview of the different approaches of Artificial Intelligence: from reflex agent (low level AI) to expert systems and xIA (high level AI). Each notion will be the subject of individual practical work. In addition, an AI will be developed by group and will compete in a tournament.
- Foundations of Decision modeling: Preferences are present and pervasive in many situations involving human interaction and decisions. Preferences are expressed explicitly or implicitly in numerous applications and relevant decision should be made based on these preferences. This course aims at introducing preference models for multicriteria decisions. We will present concepts and methods for preference modelling and multicriteria decision making.
- Foundations of Optimization: Foundational theory and methods for the solution of optimization problems; iterative techniques for unconstrained minimization; linear and nonlinear programming as well as discrete methods for engineering applications associated with Programming exercises in Python are covered in this course.
- Foundations of Deep Learning: This course will introduce the modern theory of convolutional neural networks, both in terms of theoretical concepts as well as in terms of practice with different training and programming architectures. Concrete examples on various applications domains will demonstrate the interest of these methods in artificial intelligence.
- Foundations of Big Data & AI Programming Languages & Platforms : This course will teach you all about big data management - algorithms, techniques and tools needed to support big data processing with emphasis on the computational aspects related with programming of artificial intelligence methods based on machine learning.
Theoretical AI: At least 3 electives to choose
- Reinforcement learning: This course will introduce the foundations of dynamical problem modeling in artificial intelligence through reinforcement learning strategies. In particular we will discuss optimization strategies, sampling strategies and rewards selection strategies at the concept and application level for various problems of artificial intelligence.
- Excellence in Game Theory: This course will initially present the main principles concerning decision under uncertainty, and the use of graphical models when making decision under uncertainty Second, we will consider principles of game theory and show how such theory can model and analyse decision in situation where uncertain and strategic interactions are involved.
- Inference and learning of Graphical Models: This course addresses mathematical foundations and computational solutions for training and optimizing (higher order) probabilistic graphical modes. These are powerful middle-level representations that once endowed with efficient optimization algorithms produce state of the art results for problems with average volume of training data.
- Multi-agent Systems : The aim of this course is to study multi-agent systems, i.e. systems composed of multiple interacting computing elements, known as agents, as a paradigm for implementing autonomous and complex intelligent systems.
- Advanced Statistics : This course aims first at introducing the general methodology of mathematical statistics through the fundamental concepts (statistical modelling and sampling, estimation problems, decision theory and hypothesis testing). Then, this course provides advanced statistical techniques for multivariate analysis with a particular focus on computational statistics and robust estimation approaches. Regularized / penalized techniques are also presented.
- Advanced Deep Learning : Deep learning methods are now the state of the art in many machine learning tasks, leading to impressive results. Nevertheless, they are still poorly understood, neural networks are still difficult to train, and the results are black-boxes missing explanations. Given the societal impact of machine learning techniques today (used as assistance in medicine, hiring process, bank loans...), it is crucial to make their decisions explainable or to offer guarantees. Besides, real world problems usually do not fit the standard assumptions or frameworks of the most famous academic work (data quantity and quality, expert knowledge availability...). This course aims at providing insights and tools to address these practical aspects, based on mathematical concepts.
Applied AI: At least 3 electives to choose
- Visual computing: This course will present an overview of trends, modern methods and applications of computer vision technologies in various problems of visual computing, namely visual analytics, object recognition, 3D scene modeling from multiple-views, cross training of multimodal data, etc.
- Natural language processing: This course addresses fundamental questions at the intersection of human languages and computer science. In this course we explore methods inspired from symbolic and sub-symbolic artificial intelligence towards language understanding, parsing, translation & generation.
- Networks science analytics: The problem of extracting meaningful information from large scale graph data in an efficient and effective way has become crucial and challenging with several important applications in AI. The goal of this course is to present recent and state-of-the-art methods and algorithms for analyzing, mining and learning large-scale graph data, as well as their practical applications in various domains.
- Information retrieval and extraction: This course addresses the fundamentals of Information retrieval, the process of answering to an information need, expressed by an user’s query, by retrieving the relevant information in non-structured data collections, often massive. This course will also cover recent approaches such that semantic web and question answering with knowledge graphs. A substantial practical section involves group projects on the design and building of a search application.
- Medical Imaging: This course will present an overview of trends, relevant to the automatic interpretation of medical imaging from computer aided solutions. The course will discuss the entire chain of problems in mid and high-level interpretation addressing the pillar problems of the field (detection, segmentation, registration) and the most ai-driven advanced technologies for computer aided diagnosis.
3rd period: Internship & Report (4 to 6 months)
Rankings
- 2nd best MSc in AI in France, Eduniversal 2022
- CentraleSuélec is part of University Paris-Saclay Ranked 16tth worldwide in the 2022 Shanghai World Ranking
- Among the best ranked institutions BY EMPLOYER REPUTATION: 7TH WORLDWIDE, 1ST IN FRANCE (QS World University Ranking 2021): 8 out of 10 of our students find a job before graduating and 99% upon graduation
Program Tuition Fee
Career Opportunities
CentraleSuélec is among the best ranked institutions BY EMPLOYER REPUTATION: 7TH WORLDWIDE, 1ST IN FRANCE (QS World University Ranking 2021): 8 out of 10 of our students find a job before graduating and 99% upon graduation.