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Regular version of the site

HSE Professor to Head Up Machine Learning Research at Samsung Centre for Artificial Intelligence

On May 29, Samsung opened its new Artificial Intelligence Centre in Moscow. Dmitry Vetrov, Professor of the HSE Faculty of Computer Science, will become one of its leaders and oversee research in machine learning.

The new centre will focus on computer vision and basic algorithms for artificial intelligence platforms. Furthermore, it will expand the range of Samsung's AI research with respect to such key areas as robotics and smart control systems. ‘Russia is rightfully considered one of the global centres in the technical sciences. Therefore, we are today opening the Centre for Artificial Intelligence in Moscow. We believe that this initiative will help us bring the AI ​​to a new level,’ said Kim Ui Tack, President of Samsung Electronics’ CIS Headquarters.

At the Russian centre, Professor Vetrov will coordinate research into analyzing and developing solutions based on deep learning and the scalable Bayesian method. He will also develop new probabilistic models of neural networks and oversee their use in Samsung’s development tools. He notes that the centre’s opening will ‘contribute to the development of the industry and allow for the application of the achievements of Russian mathematics, which is distinguished by the professionalism of researchers.’

Furthermore, a number of employees of the Artificial Intelligence Centre will provide instruction at HSE’s Faculty of Computer Science. Students will be able take part in internships and conduct research, both at the new centre and the joint Samsung-HSE Laboratory at the Faculty of Computer Science.

Earlier this year, Samsung opened two AI centres in Cambridge (May 22) and Toronto (May 24).

See also:

Analysing Genetic Information Can Help Prevent Complications after Myocardial Infarction

Researchers at HSE University have developed a machine learning (ML) model capable of predicting the risk of complications—major adverse cardiac events—in patients following a myocardial infarction. For the first time, the model incorporates genetic data, enabling a more accurate assessment of the risk of long-term complications. The study has been published in Frontiers in Medicine.

‘We Bring Together the Best Russian Scientists and AI Researchers at HSE University Site’

On October 25–26, 2024, HSE University’s AI and Digital Science Institute and the AI Research Centre hold the Fall into ML 2024 conference in Moscow. This year’s event will focus on the prospects in development of fundamental artificial intelligence, with SBER as its conference title partner.

HSE Researchers Demonstrate Effectiveness of Machine Learning in Forecasting Inflation

Inflation is a key indicator of economic stability, and being able to accurately forecast its levels across regions is crucial for governments, businesses, and households. Tatiana Bukina and Dmitry Kashin at HSE Campus in Perm have found that machine learning techniques outperform traditional econometric models in long-term inflation forecasting. The results of the study focused on several regions in the Privolzhskiy Federal District have been published in HSE Economic Journal.

‘The Goal of the Spring into ML School Is to Unite Young Scientists Engaged in Mathematics of AI’

The AI and Digital Science Institute at the HSE Faculty of Computer Science and Innopolis University organised a week-long programme for students, doctoral students, and young scientists on the application of mathematics in machine learning and artificial intelligence. Fifty participants of Spring into ML attended 24 lectures on machine learning, took part in specific pitch sessions, and completed two mini-courses on diffusion models—a developing area of AI for data generation.

Software for Rapid Detection of Dyslexia Developed in Russia

HSE scientists have developed a software tool for assessing the presence and degree of dyslexia in school students based on their gender, age, school grade, and eye-tracking data. The application is expected to be introduced into clinical practice in 2024. The underlying studies were conducted by specialists in machine learning and neurolinguistics at the HSE AI Research Centre.

‘Every Article on NeurIPS Is Considered a Significant Result’

Staff members of the HSE Faculty of Computer Science will present 12 of their works at the 37th Conference and Workshop on Neural Information Processing Systems (NeurIPS), one of the most significant events in the field of artificial intelligence and machine learning. This year it will be held on December 10–16 in New Orleans (USA).

HSE University Holds HSE Sber ML Hack

On November 17-19, The HSE Faculty of Computer Science, SBER and cloud technology provider Cloud.ru organised HSE Sber ML Hack, a hackathon based around machine learning. More than 350 undergraduate and graduate students from 54 leading Russian universities took part in the competition.

HSE University Hosts Fall into ML 2023 Conference on Machine Learning

Over three days, more than 300 conference participants attended workshops, seminars, sections and a poster session. During panel discussions, experts deliberated on the regulation of artificial intelligence (AI) technologies and considered collaborative initiatives between academic institutions and industry to advance AI development through megaprojects.

HSE University to Host ‘Fall into ML 2023’ Machine Learning Conference

Machine Learning (ML) is a field of AI that examines methods and algorithms that enable computers to learn based on experience and data and without explicit programming. With its help, AI can analyse data, recall information, build forecasts, and give recommendations. Machine learning algorithms have applications in medicine, stock trading, robotics, drone control and other fields.

New Labs to Open at Faculty of Computer Science

Based on the results of a project competition, two new laboratories are opening at HSE University’s Faculty of Computer Science. The Laboratory for Matrix and Tensor Methods in Machine Learning will be headed by Maxim Rakhuba, Associate Professor at the Big Data and Information Retrieval School. The Laboratory for Cloud and Mobile Technologies will be headed by Dmitry Alexandrov, Professor at the School of Software Engineering.