• A
  • A
  • A
  • АБВ
  • АБВ
  • АБВ
  • A
  • A
  • A
  • A
  • A
Обычная версия сайта
  • RU
  • EN
  • HSE University
  • Publications
  • Book chapter
  • MADD: Multi-Agent Drug Discovery Orchestra
  • RU
  • EN
Расширенный поиск
Высшая школа экономики
Национальный исследовательский университет
Priority areas
  • business informatics
  • economics
  • engineering science
  • humanitarian
  • IT and mathematics
  • law
  • management
  • mathematics
  • sociology
  • state and public administration
by year
  • 2027
  • 2026
  • 2025
  • 2024
  • 2023
  • 2022
  • 2021
  • 2020
  • 2019
  • 2018
  • 2017
  • 2016
  • 2015
  • 2014
  • 2013
  • 2012
  • 2011
  • 2010
  • 2009
  • 2008
  • 2007
  • 2006
  • 2005
  • 2004
  • 2003
  • 2002
  • 2001
  • 2000
  • 1999
  • 1998
  • 1997
  • 1996
  • 1995
  • 1994
  • 1993
  • 1992
  • 1991
  • 1990
  • 1989
  • 1988
  • 1987
  • 1986
  • 1985
  • 1984
  • 1983
  • 1982
  • 1981
  • 1980
  • 1979
  • 1978
  • 1977
  • 1976
  • 1975
  • 1974
  • 1973
  • 1972
  • 1971
  • 1970
  • 1969
  • 1968
  • 1967
  • 1966
  • 1965
  • 1964
  • 1963
  • 1958
  • More
Subject
News
June 22, 2026
‘In Science, You Are Your Own Boss
Polina Nasledskova is interested in identifying gaps in linguistics and topics that have been overlooked by other researchers. In an interview for the  Young Scientists of HSE University project, she spoke about rare ordinal numerals in Nakh-Daghestanian languages, the benefits of knitting for concentration, and the beauty of the Patriarshy Bridge.
June 19, 2026
HSE Researchers Determine Which Internet Users Are More Likely to Fact-Check
Researchers at HSE University examined the strategies employed by Russian internet users to verify unreliable information and the factors that motivate them to do so. The study found that more than half of users who encounter potentially false information online attempt to verify it by locating the original source. The likelihood of fact-checking is influenced by several factors, including age, place of residence, social status, information literacy skills, and the use of AI. The findings have been published in Monitoring of Public Opinion: Economic and Social Changes.
June 5, 2026
'Im Used to Producing Distilled Knowledge'
Ivan Rubachev works in a HSE University laboratory established jointly with Yandex Research, where he focuses on machine learning with tabular data. In this interview with the HSE Young Scientists project, he discusses why following a vibe can be better than goal-setting, explains the concept of the Neural Turing Machine, and argues why withholding scientific knowledge is counterproductive.

 

Have you spotted a typo?
Highlight it, click Ctrl+Enter and send us a message. Thank you for your help!

Publications
  • Books
  • Articles
  • Chapters of books
  • Working papers
  • Report a publication
  • Research at HSE

?

MADD: Multi-Agent Drug Discovery Orchestra

Ch. 367. P. 6956–6998.
Solovev G. V., Zhidkovskaya A. B., Orlova A., Gubina N., Vepreva A., Golovinskii R., Tonkii I., Dubrovsky I., Gurev I., Gilemkhanov D., Chistiakov D., Aliev T., Poddiakov I., Zubkova G., Skorb E., Vinogradov V., Boukhanovsky A., Nikitin N., Dmitrenko A., Kalyuzhnaya A., Savchenko A.

Hit identification is a central challenge in early drug discovery, traditionally requiring substantial experimental resources. Recent advances in artificial intelligence, particularly large language models (LLMs), have enabled virtual screening methods that reduce costs and improve efficiency. However, the growing complexity of these tools has limited their accessibility to wet-lab researchers. Multi-agent systems offer a promising solution by combining the interpretability of LLMs with the precision of specialized models and tools. In this work, we present MADD, a multi-agent system that builds and executes customized hit identification pipelines from natural language queries. MADD employs four coordinated agents to handle key subtasks in de novo compound generation and screening. We evaluate MADD across seven drug discovery cases and demonstrate its superior performance compared to existing LLM-based solutions. Using MADD, we pioneer application of AI-first drug design to five biological targets and release the identified hit molecules. Finally, we introduce a new benchmark of query-molecule pairs and docking scores for over three million compounds to contribute to the agentic future of drug design.

Language: English
Full text
DOI
Text on another site
Keywords: мультиагентные системыdrug discoveryMulti-agent systemдизайн лекарствБольшие языковые модели (LLMs)large language models (LLMs)

In book

Findings of the Association for Computational Linguistics: EMNLP 2025
Association for Computational Linguistics, 2025.
Similar publications
The advent of generative chemistry
Vanhaelen Q., Lin Y., Zhavoronkov A., ACS Medicinal Chemistry Letters 2020 Vol. 11 No. 8 P. 1496–1505
Generative adversarial networks (GANs), first published in 2014, are among the most important concepts in modern artificial intelligence (AI). Bridging deep learning and game theory, GANs are used to generate or “imagine” new objects with desired properties. Since 2016, multiple GANs with reinforcement learning (RL) have been successfully applied in pharmacology for de novo molecular design. Those ...
Added: June 1, 2026
XXII национальная конференция по искусственному интеллекту с международным участием (КИИ-2025)
СПб.: Санкт-Петербургский Федеральный исследовательский центр РАН, 2025.
Двадцать вторая Национальная конференция по искусственному интеллекту с международным участием КИИ-2025 продолжает традицию советских (российских) конференций, организуемых Российской ассоциацией искусственного интеллекта. В первом томе трудов публикуются пленарные доклады и доклады участников конференции, представленные на следующих секциях: Секция 1 «Инженерия знаний», Секция 2 «Интеллектуальный анализ данных», Секция 3 «Моделирование рассуждений», Секция 4 «Интеллектуальный анализ текстов, большие ...
Added: February 15, 2026
Generating and Debugging Java Code using LLMs based on Associative Recurrent Memory
Василевский В. И., Alexandrov D., Proceedings of the Institute for System Programming of the RAS 2025 Vol. 37 No. 5 P. 173–182
Automatic code generation by large language models (LLMs) has achieved significant success, yet it still faces challenges when dealing with complex and large codebases, especially in languages like Java. The limitations of LLM context windows and the complexity of debugging generated code are key obstacles. This paper presents an approach aimed at improving Java code generation and debugging. ...
Added: December 26, 2025
Искусственный интеллект как симулякр смысла
Малинов С. А., Галактика медиа: журнал медиа исследований 2025 Т. 7 № 4 С. 154–173
In recent years, artificial intelligence (AI) has been actively integrated into everyday human life. Its popularity continues to grow steadily, and companies increasingly employ AI to optimize and accelerate workflows. Ordinary users leverage large language models (LLMs) and multimodal AI systems to perform a wide range of tasks, including generating texts, images, and videos; planning ...
Added: December 7, 2025
SIGNAL: Dataset for Semantic and Inferred Grammar Neurological Analysis of Language
Komissarenko A., Voloshina E., Чевелева А. Н. et al., Scientific data 2025 Vol. 12 No. 1 Article 1687
Recently, the idea of brain-model alignment has been the topic of several influential works. However, most of previous studies were based on datasets collected during regular reading tasks where the subjects were not exposed to processing linguistic incongruencies, and stimuli were not controlled for key linguistic properties. Meanwhile, interpretability studies of Large Language Models pay ...
Added: November 18, 2025
3MDBench: Medical Multimodal Multi-agent Dialogue Benchmark
Sviridov I., Miftakhova A., Tereshchenko A. et al., , in: Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing (EMNLP).: Association for Computational Linguistics, 2025. Ch. 1353 P. 26625–26665.
Though Large Vision-Language Models (LVLMs) are being actively explored in medicine, their ability to conduct complex real-world telemedicine consultations combining accurate diagnosis with professional dialogue remains underexplored. This paper presents 3MDBench (Medical Multimodal Multi-agent Dialogue Benchmark), an open-source framework for simulating and evaluating LVLM-driven telemedical consultations. 3MDBench simulates patient variability through temperament-based Patient Agent and evaluates diagnostic accuracy and dialogue quality ...
Added: November 16, 2025
Transformers and State-Space Models: Fine-Tuning Techniques for Solving Differential Equations
Ignatenko V., Surkov A., Zakharov V. et al., Sci 2025 Vol. 7 No. 3 Article 130
Large language models (LLMs) have recently demonstrated remarkable capabilities in natural language processing, mathematical reasoning, and code generation. However, their potential for solving differential equations—fundamental to applied mathematics, physics, and engineering—remains insufficiently explored. For the first time, we applied LLMs as translators from the textual form of an equation into the textual representation of its ...
Added: October 10, 2025
Dimension-Augmented Anisotropy in Graph Neural Diffusion
Sycheva T., Beketov M., Smolyar I., , in: Artificial Neural Networks and Machine Learning. ICANN 2025 International Workshops and Special Sessions: 34th International Conference on Artificial Neural Networks, Kaunas, Lithuania, September 9–12, 2025, Proceedings, Part V.: Cham: Springer, 2025. Ch. 4 P. 29–33.
We consider Graph Anisotropic Diffusion (GAD), a recently proposed model of graph neural networks, that can be trained to predict desired properties of the graph by performing learnable diffusion of node features on it. In contrast with similar methods, GAD introduces anisotropy of said diffusion by incorporating filters built from the graph’s Fiedler vector. In ...
Added: September 29, 2025
Combining Logical Reasoning and LLMs Toward Creating Multi-Agent Smart Home Systems
L. Rezunik, M.A. Prozorskiy, D.V. Alexandrov, Proceedings of the Institute for System Programming of the RAS 2025 Vol. 37 No. 4-2 P. 219–234
The rapid advancement of AI technologies, particularly Large Language Models (LLMs), has sparked interest in their integration into Multi-Agent Systems (MAS). This holds substantial promise for applications such as smart homes, where it can significantly enhance user experience by optimizing comfort, energy efficiency, and security. Despite the potential benefits, the implementation of MAS based on ...
Added: September 27, 2025
On consensus equilibria in a multilayered multiagent system
Leonidov A., Vasilyev S., Vasilyeva E., Chaos, Solitons and Fractals 2025 Vol. 201 No. 2 Article 117242
Game-theoretic static equilibria in multiagent two-layered consensus/opinion formation noisy binary choice model are studied. Both layers in the model are complete networks. Each player is present in both layers. Agent’s strategies with respect to the layers are interconnected. General asymmetric, symmetric and antisymmetric expectation/quantal response equilibria are analysed. Phase diagram of the model containing various ...
Added: September 26, 2025
Application of Large Language Models to Solving Differential Equations: Constructing Baseline Models with LSTM and GRU
Surkov A., Zakharov V., Sergei Koltcov et al., , in: Smart Technologies, Systems and Applications: 4th International Conference, SmartTech-IC 2024, Quito, Ecuador, December 2–4, 2024, Revised Selected Papers, Part IIVol. 2: Revised Selected Papers, Part II.: Springer, 2025. P. 239–252.
Currently, large language models are actively developing and beginning to be used to solve some mathematical problems. With the emergence of xLSTM model, which demonstrates the results comparable with transformer-based models, there has been a surge of interest in recurrent neural networks. This paper considers the application of baseline recurrent models such as LSTM and ...
Added: September 11, 2025
26th International Conference, AIED 2025, Palermo, Italy, July 22–26, 2025, Proceedings, Part I. Artificial Intelligence in Education. Posters and Late Breaking Results, Workshops and Tutorials, Industry and Innovation Tracks, Practitioners, Doctoral Consortium, Blue Sky, and WideAIED
Springer, 2025.
This three-volume set CCIS 2590-2592 constitutes poster papers and late breaking results, workshops and tutorials, practitioners, industry and policy track, doctoral consortium, blue sky and wideAIED papers presented at the 26th International Conference on Artificial Intelligence in Education, AIED 2025, held in Palermo, Italy, during July 22–26, 2025.   The 72 full papers and 73 short papers (72 ...
Added: September 4, 2025
Developing an Approach for Automated Data Collection and Mining Using Web Scraping Techniques and Large Language Models: A Case Study on Extracting Technology Readiness Level Assessments
F. M. Grozovskiy, I. V. Loginova, Automatic Documentation and Mathematical Linguistics 2025 Vol. 59 No. 4 P. 269–278
The paper proposes an approach to the automated extraction and structuring of information from text, combining web scraping for data collection from online sources with a large language model for subsequent data mining. As a case study, texts from news publications on technology readiness levels from the CNews website were chosen to test the developed methodology in a ...
Added: August 25, 2025
О разработке подхода к автоматизированному сбору и интеллектуальной обработке данных с применением методов веб-скрейпинга и больших языковых моделей (на примере задачи по извлечению оценок уровней готовности технологий)
Grozovskiy F., Loginova I., Научно-техническая информация. Серия 2: Информационные процессы и системы 2025 № 8 С. 27–36
Предлагается подход к автоматизированному извлечению и структурированию информации из текста, сочетающий веб-скрейпинг для сбора данных из онлайн-источников и большую языковую модель для их последующей интеллектуальной обработки. В качестве объекта исследования выбраны тексты новостных публикаций об уровнях готовности технологий с сайта CNews для апробации разработанной методики в рамках конкретной предметной области. Точность выделения моделью оценок технологической ...
Added: August 11, 2025
  • About
  • About
  • Key Figures & Facts
  • Sustainability at HSE University
  • Faculties & Departments
  • International Partnerships
  • Faculty & Staff
  • HSE Buildings
  • HSE University for Persons with Disabilities
  • Public Enquiries
  • Studies
  • Admissions
  • Programme Catalogue
  • Undergraduate
  • Graduate
  • Exchange Programmes
  • Summer University
  • Summer Schools
  • Semester in Moscow
  • Business Internship
  • Research
  • International Laboratories
  • Research Centres
  • Research Projects
  • Monitoring Studies
  • Conferences & Seminars
  • Academic Jobs
  • Yasin (April) International Academic Conference on Economic and Social Development
  • Media & Resources
  • Publications by staff
  • HSE Journals
  • Publishing House
  • iq.hse.ru: commentary by HSE experts
  • Library
  • Economic & Social Data Archive
  • Video
  • HSE Repository of Socio-Economic Information
  • HSE1993–2026
  • Contacts
  • Copyright
  • Privacy Policy
  • Site Map
Edit