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News
June 5, 2026
Neural Network Maps as a Method for Constructing Mathematical Models
Scientists from HSE University–Nizhny Novgorod and the Institute of Physics Belgrade, Serbia, are jointly exploring the application of machine learning techniques and neural networks to the study of nonlinear dynamics. Natalya Stankevich, Leading Research Fellow at the Laboratory of Topological Methods in Dynamics of the Faculty of Informatics, Mathematics, and Computer Science at HSE University–Nizhny Novgorod, spoke to the HSE News Service about this international project.
June 5, 2026
‘In the Age of Technology, It Is Interesting to Look into the Past and Think about What We Can Take from It
Polina Tabakova decided to apply for a Philology degree at HSE in Nizhny Novgorod because she grew up in Mari El and did not want to move far away from the Russian forests. In an interview for the Young Scientists of HSE University project, she spoke about the genre of the campus novel, the existential drama of Kolobok, and a blackout version of Eugene Onegin.
June 5, 2026
HSE Scientists Develop Method to Compress Large Language Models Without Losing Quality
Researchers from the AI and Digital Science Institute at the HSE Faculty of Computer Science have developed a new compression method for large language models such as GPT and LLaMA that reduces their size by 25–36% without additional training or significant loss of accuracy. This is the first approach to use mathematical transformations—specifically, rotations of model weights—to make models more amenable to compression with structured matrices. The study results have been published in ACL Findings 2025. The code is available on GitHub.

 

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?

Новые методы сжатия временных рядов экологических показателей

С. 192–195.
Чуприн В. И., Rodriges Zalipynis R. A.

The paper analyzes storage peculiarities of satellite Earth remote sensing data time
series. We propose methods for their compression based on the discovered peculiarities exploiting
different schemes of Huffman coding. One of the proposed methods reaches 6% increase in the
compression ratio (93%) in contrast to the deflate method used in Java SE6 (87%), for a time
series of aerosol optical thickness derived from MODIS radiometer of TERRA satellite. Further
improvement can be achieved by using the entropy coding of floating point numbers.

Language: Russian
Text on another site
Keywords: временной рядcompressiontime seriesсжатие информации

In book

Научные труды Донецкого национального технического университета. Серия: системный анализ и информационные технологии в науках о природе и обществе
Issue 1(2)–2(3). , Donetsk: Донецкий национальный технический университет, 2012.
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