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| start [2025/10/09 12:56] – [Internships and PhD proposals] cxypolop | start [2025/10/23 13:44] (current) – [Contacts] director-llga | ||
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| ==== Motivation ==== | ==== Motivation ==== | ||
| - | The **LLGA Master’s Program** is a two-year, fully English-taught degree | + | The **LLGA Master’s Program** is a two-year |
| ==== Objectives ==== | ==== Objectives ==== | ||
| - | In recent years, Generative AI has seen explosive growth, with Large Language Models (LLMs) reshaping how society and the economy interact with the digital world. These technologies enable tasks that were unimaginable just a few years ago—from machine translation and code generation to creative content generation and advanced reasoning —at unprecedented scale. | + | In recent years, Generative AI has seen explosive growth, with Large Language Models (LLMs) reshaping how society and the economy interact with the digital world. These technologies enable tasks that were unimaginable just a few years ago—from machine translation and code generation to creative content generation and advanced reasoning—at unprecedented scale. |
| - | The goal of the LLGA program | + | The objective |
| - | Courses are given by professors from Ecole Polytechnique | + | The goal of the LLGA program is to provide students with a solid theoretical foundation in machine learning |
| - | + | ||
| - | All courses will be held in English. Both French | + | |
| + | Courses are given by professors from École polytechnique, | ||
| + | All courses are held in English and students for all nationalities are welcome. | ||
| ==== Curriculum Description | ==== Curriculum Description | ||
| - | The LLGA Master is a two-year program that combines a rigorous foundation with advanced specialization in Generative AI, focusing | + | The LLGA Master is a two-year program that combines a rigorous foundation with advanced specialization in Generative AI, focusing both on Large Language Models (LLMs) and graph-structured data. |
| - | During the first year (M1), students build a strong academic basis through courses shared with engineering and other master’s programs at École | + | During the first year (M1), students build a strong academic basis through courses shared with engineering and other master’s programs at École |
| The second year (M2) is dedicated to specialization and hands-on learning. Bespoke courses focus on the latest industrial and scientific advances, including DevOps and LLM Engineering Principles, Data Engineering for LLMs, Graph Generative AI with Applications in Bio and Medicine, Small-Scale and Specialized LLMs, AI Strategy, Ethics, and Socioeconomic Challenges, and Generative AI for Entrepreneurship. Students engage in projects and case studies that connect theory with real-world applications, | The second year (M2) is dedicated to specialization and hands-on learning. Bespoke courses focus on the latest industrial and scientific advances, including DevOps and LLM Engineering Principles, Data Engineering for LLMs, Graph Generative AI with Applications in Bio and Medicine, Small-Scale and Specialized LLMs, AI Strategy, Ethics, and Socioeconomic Challenges, and Generative AI for Entrepreneurship. Students engage in projects and case studies that connect theory with real-world applications, | ||
| This unique structure—broad foundations followed by tailored specialization—ensures graduates acquire both depth and versatility, | This unique structure—broad foundations followed by tailored specialization—ensures graduates acquire both depth and versatility, | ||
| - | |||
| ==== Student Applications ==== | ==== Student Applications ==== | ||
| - | We are looking for very strong students | + | Students |
| + | ==== Industrial & Institutional Partnership / Cercle des partenaires ==== | ||
| - | Please take a look at the [[https:// | + | Students will have highly suitable profiles for data science or AI roles in industry. While 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. |
| - | ==== Industrial & Institutional Partnership / Cercle des partenaires | + | ==== Internships and PhD proposals |
| 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 addition, many 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 internships, | 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 addition, many 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 internships, | ||
| - | ==== Internships and PhD proposals ==== | ||
| - | |||
| - | Students have the option to either find their own internship position or to choose one of the internship proposals that we have made available **[[https:// | ||
| Since the program teaches cutting-edge methodology in a relevant field of research, pursuing a PhD after this program is perfectly possible. | Since the program teaches cutting-edge methodology in a relevant field of research, pursuing a PhD after this program is perfectly possible. | ||
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| The academic co-directors of the MScT are: | The academic co-directors of the MScT are: | ||
| - | * Johannes Lutzeyer, Computer Science | + | * Johannes Lutzeyer, Computer Science, Ecole Polytechnique [[johannes.lutzeyer@polytechnique.edu]] |
| - | * Aymeric Dieuleveut, Applied Mathematics | + | * Aymeric Dieuleveut, Applied Mathematics, |
| - | * Michalis Vazirgiannis, | + | * Michalis Vazirgiannis, |
| - | * Ye Zhu, Computer Science | + | * Ye Zhu, Computer Science, Ecole Polytechnique [[ye.zhu@polytechnique.edu]] |
| - | * Rémi Flamary, Applied Mathematics | + | * Rémi Flamary, Applied Mathematics, |
| - | * Luiz Chamon, Applied Mathematics | + | * Luiz Chamon, Applied Mathematics, |
start.1760014592.txt.gz · Last modified: 2025/10/09 12:56 by cxypolop
