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start [2025/10/10 14:42] – [Curriculum Description] cxypolopstart [2025/10/28 16:09] (current) – [Internships and PhD proposals] director-trai
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-** Programme of the Master of Science and Technology (MScT) of Ecole Polytechnique ** +**Programme of the Master of Science and Technology (MScT) of École polytechnique**
  
 +[[https://programmes.polytechnique.edu/en/master/all-msct-specializations/trustworthy-and-responsible-ai-trai|Official website]]
  
-[[https://programmes.polytechnique.edu/master/programmes/trustworthy-and-responsible-ai-trai|Link to the official page on the Ecole Polytechnique website. ]] 
 ==== Motivation ==== ==== Motivation ====
  
 +Artificial intelligence (AI) is at the core of modern information systems upon which we increasingly rely to solve complex tasks such as selecting job candidates, automating daily tasks, analyzing medical data, and controlling critical systems. This has led to growing societal impact and increasing academic and industrial interest, even more so with the emergence of generative AI. Due to its pervasive use, improving the //reliability//, //safety//, and //robustness// of AI systems as well as accounting for their ethical and legal aspects have become a necessity. Indeed, there is growing evidence that left untethered, AI leads to biased, prejudiced solutions prone to tampering, hallucinations, and unsafe behaviors. This shows how far we still are from being able to build //trustworthy AI systems//.
 +
 +The TRAI master’s program prepares its graduates to face these growing challenges and become experts in this transformative field, with skills to advance both theory and application.
  
 ==== Objectives ==== ==== Objectives ====
  
-==== Curriculum Description  ==== +The goal of the TRAI program is to provide students with the theoretical and practical tools needed to build //trust// and //reliability// into AI systems. At its core lie the seven key requirements for Trustworthy AI established by the high-level expert group on AI of the European Comission:
  
 +  - human agency and oversight
 +  - technical robustness and safety
 +  - privacy and data governance
 +  - transparency
 +  - diversity, non-discrimination and fairness
 +  - environmental and societal well-being
 +  - accountability
  
-==== Student Applications ====+To achieve these specifications, students will develop a solid mathematical foundation to understand the limitations of and develop guarantees for machine learning, deep learning, and generative models. They will also be brought to think about the role of these techniques in fighting biases and desinformation, both at the societal level and within companies. By means of projects and industrial case studies, students will acquire hands-on experience with state-of-the-art trustworthy AI methods, positioning them to innovate and lead the development and deployment of the next generation of AI technologies in critical applications.
  
-Students are required to have a suitable background in mathematics and computer science. In practicethis means knowledge of linear algebrastatistics, as well as Python programming, algorithms and data structures. Some exposure to natural language processing and graph theory is desirable, but not required. Candidates with Bachelor degrees that are not in Mathematics or Computer Science are also admissible if the required knowledge domains are covered in their degree programs +Courses are taught by professors from École polytechniqueassociated institutes, and industrial partners.
-==== Industrial & Institutional Partnership / Cercle des partenaires ====+
  
-Students will have highly suitable profiles for data science or AI roles in industryWhile the LLM aspect of the program allows students to apply to companies in most digital companies, the graphs and applications aspect of the program prepares the students particularly well for roles in the pharma, logistics and communication industries.  Graduates of the LLGA Master’s Program are prepared for careers as AI/ML Engineers, Data Scientists, NLP Specialists, Graph AI Experts, and AI Research Scientists, as well as strategic roles such as AI Product Managers, Solution Architect.  Opportunities span industries including tech, healthcare, finance, consulting, social media, e-commerce, and public institutions.+**All courses are taught in EnglishStudents from all nationalities are welcome.**
  
 +==== Curriculum description ====
  
-==== Internships and PhD proposals ====+The program begins with a week of refresher courses in mathematics (statistical analysis, machine learning) and computer science (programming, basics of algorithms) aimed to complement the student academic background. This is followed by two training periods of 2.5 months, consisting of general courses on topics such as
  
-The program includes an M1 as well as an M2 internship of several months each. There will furthermore be regular interaction with professionals in industry in academia in the weekly M2 seminar series on “ethical issues, law and novel applications of AI”. In additionmany of the taught courses in the MScT program have project-based assessments. The students will therefore graduate from this program with ample practical experience and a profound insight into the different real-world applications of their academic knowledge. We also expect important exchanges with the generative AI industry in terms of focused internshipsinvited keynotes and meetups. We expect that the placement of our graduates in the relevant industry will be natural and swift. +  * Optimization and statistics for AI 
 +  * Deep learning, generative models, and reinforcement learning 
 +  * Large language models (LLMs)
  
-Since the program teaches cutting-edge methodology in a relevant field of researchpursuing a PhD after this program is perfectly possible.+as well as specific courses targeting trustworthiness and reliability requirementssuch as
  
 +  * Privacy, bias, and fairness for AI
 +  * Security, robustness, and verification for AI
 +  * Explainability, sustainability, and frugality
  
-==== Contacts ====+A weekly seminar is held to encourage discussions of ethical issues as well as entrepreneurship and innovation, while transverse projects provide practical, real-world experience to the students.
  
-The academic co-directors of the MScT are: +A more detailed description of the curriculum is available [[curriculum|here]].
-  * Johannes Lutzeyer, Computer Science, Ecole Polytechnique [[johannes.lutzeyer@polytechnique.edu]] +
-  * Aymeric Dieuleveut, Applied Mathematics, Ecole Polytechnique [[aymeric.dieuleveut@polytechnique.edu]] +
-  * Michalis Vazirgiannis, Computer Science, Ecole Polytechnique [[michalis.vazirgiannis@polytechnique.edu]] +
-  * Ye Zhu, Computer Science, Ecole Polytechnique [[ye.zhu.lix@polytechnique.edu]] +
-  * Rémi Flamary, Applied Mathematics, Ecole Polytechnique  [[remi.flamary@polytechnique.edu]] +
-  * Luiz Chamon, Applied Mathematics, Ecole Polytechnique [[luiz.chamon@polytechnique.edu]]+
  
 +Students also take part in two five- to six-month [[#internships_and_phd_proposals|research projects or internships]], conducted either in a public or private research lab.
  
 +==== Student applications ====
  
 +Students are expected to have to have a strong background in mathematics and computer science, i.e., knowledge of linear algebra, basic optimization, and statistics as well as algorithms, data structures, and programming (Python and others). Candidates with Bachelor degrees that are not in Mathematics, Engineering, or Computer Science are also admissible as long as the required knowledge are covered in their degree programs.
 +
 +Please refer to the [[https://programmes.polytechnique.edu/en/master/admissions-msct/application-deadlines-procedure|official documentation]] for details on the application process.
 +
 +==== Industrial & institutional partnerships (Cercle des partenaires) ====
 +
 +The TRAI master’s program equips graduates with specialized skills that are particularly valuable for industries where reliability and transparency are crucial. Graduates can go on to take key roles in organizations dealing with critical applications and/or prioritizing ethical and interpretable AI, including energy, transport, healthcare, ecological transition, and finance. Graduates of the TRAI master’s program are prepared for careers as AI/ML engineers, data scientists, and AI research scientists, as well as strategic roles such as AI ethics specialist, system auditor, and solution architect.
 +
 +
 +==== Internships and PhD proposals ====
 +
 +The TRAI program includes two five- to six-months internships periods in their first (M1) and second (M2) year. Students are free to find their own positions or may choose to apply to one of the internship proposals collected [[internships|here]] (regularly updated).
 +
 +This program covers cutting-edge methodology in a relevant and timely domain of research. Pursuing a PhD after concluding this master’s is therefore perfectly possible, be it purely academic or in collaboration with the industry (e.g., by means of a program known in France as [[https://www.campusfrance.org/en/what-involved-Doctorate-France|CIFRE]]). More information in French [[https://www.enseignementsup-recherche.gouv.fr/fr/les-cifre-46510|here]].
 +
 +==== Contacts ====
 +
 +The academic co-directors of the MScT are:
  
 +  * Luiz Chamon, Applied Mathematics (CMAP / DepMAP), École polytechnique ([[https://luizchamon.com/|website]])
 +  * Karim Lounici, Computer Science (LIX / DIX), École polytechnique ([[https://klounici.github.io/|website]])
 +  * Jesse Read, Computer Science (LIX / DIX), École polytechnique ([[https://jmread.github.io/|website]])
 +  * Sonia Vanier, Computer Science (LIX / DIX), École polytechnique ([[https://www.lix.polytechnique.fr/~vanier/|website]])
  
-Please don't hesitate to contact us!+Please dont hesitate to contact us by email at (<dir.msct.trai@polytechnique.fr>)!
start.1760107346.txt.gz · Last modified: 2025/10/10 14:42 by cxypolop

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