 
								High-Resolution ODEs
From discrete optimization methods to continuous time dynamics, using varying modeling precision.
Hello! I’m Tatjana (pronounced /tatiana/), currently a Visiting Professor in the Department of Electronics, Information and Bioengineering (DEIB) at Politecnico di Milano (Polimi), where I research and teach in the areas of game theory, machine learning, variational inequalities, multi-agent systems, and optimization algorithms. I collaborate with Nicola Gatti and Nicolò Cesa-Bianchi. I hold a Ph.D. from EPFL, and Idiap, advised by François Fleuret. During my doctoral studies, I interned at (i) Mila with Yoshua Bengio and Simon Lacoste-Julien, and at (ii) DeepMind under Irina Jurenka (Higgins). After my Ph.D., I was a Postdoctoral Researcher at EPFL’s MLO Lab with Martin Jaggi, and later at UC Berkeley EECS with Michael Jordan.
» We’re excited to host the DynaFront Workshop at NeurIPS 2025! Visit the workshop website for details.
» The Games in ML '25 course materials are available here.
I work at the intersection of game theory and machine learning, developing AI systems that learn, strategize, and interact in multi-agent environments. My research spans:
» Outside of research, I’m passionate about the broader implications of games—not just for AI, but for developing human inteligence and society. (For fun: I recommend this talk by Kelly Clancy on how games shape our world!)
second-half, 2025: Dynamical systems tools for ML are in vogue! We're hosting a NeurIPS workshop titled Dynamics at the Frontiers of Optimization, Sampling, and Games (DynaFront). Also super excited about the special 20th anniversary edition of the WiML workshop -- keep an eye on WiML announcements ;) See you in San Diego! July, 2025: I'll be at ICML! Come check out our work on game-theoretic federated learning, where agents operate without full knowledge of others' strategies. We're also organizing the WiML workshop/symposium on Wednesday and co-hosting a social event on Thursday—plus more! Looking forward to seeing you in Vancouver! May, 2025: I am giving "Games in Machine Learning" PhD-level course at PoliMi, starting from late May. Course materials are available here! Sept., 2024: Very excited to be working with Nicola Gatti, Alberto Marchesi, Matteo Castiglioni, and the remaining game theory and reinforcement learning team at PoliMi and Milano! July, 2024: I will be at the ISMP conference and talk about HRDEs for VIs (slides below). See you in Montrèal! PS - if you're attending ICML, don't miss out WiML's events! Jan, 2024: You have two- or multi-player problem with constraints? use our ACVI method -> accepted at ICLR 2024. See you in Vienna!
🏅 Thanks to the Swiss National Science Foundation for supporting my research, through the Early.Postdoc.Mobility (in 2021) and the Postdoc.Mobility (in 2023) fellowships.
@article{foscari2025invisiblehandshake,
  title   = {The Invisible Handshake: Tacit Collusion between Adaptive Market Agents},
  author  = {Luigi Foscari and Emanuele Guidotti and Nicolò Cesa-Bianchi and Tatjana Chavdarova and Alfio Ferrara},
  journal = {ArXiv:2510.15995},
  year    = {2025},
}
									
								
							
@article{sanyal2025,
    title   = {Understanding Lookahead Dynamics Through Laplace Transform},
    author  = {Aniket Sanyal and Tatjana Chavdarova},
    journal = {ArXiv:2506.13712},
    year    = {2025},
}
								
							
						
@inproceedings{zindari2025decoupled,
    title   = {Decoupled SGDA for Games with Intermittent Strategy Communication},
    author  = {Ali Zindari and Parham Yazdkhasti and Anton Rodomanov and Tatjana Chavdarova and Sebastian U Stich},
    booktitle = {ICML},
    year    = {2025},
}
								
							
						
@article{zhao2024learningvariationalinequalities,
  title   = {Learning Variational Inequalities from Data: Fast Generalization Rates under Strong Monotonicity},
  author  = {Eric Zhao and Tatjana Chavdarova and Michael I. Jordan},
  journal = {ArXiv:2410.20649},
  year    = {2024},
}
									
								
							
@article{sidahmed2024vimarl,
  title   = {Variational Inequality Methods for Multi-Agent Reinforcement Learning: Performance and Stability Gains},
  author  = {Baraah A. M. Sidahmed and Tatjana Chavdarova},
  journal = {ArXiv:2410.07976},
  year    = {2024},
}
								
							
						
@article{alomar2024hypomonotone,
  title   = {On the Hypomonotone Class of Variational Inequalities},
  author  = {Khaled Alomar and Tatjana Chavdarova},
  journal = {ArXiv:2410.09182},
  year    = {2024},
}
							
						
					
@article{zindari2024decoupled,
title   = {Decoupled Stochastic Gradient Descent for N-Player Games},
author  = {Ali Zindari and Parham Yazdkhasti and Tatjana Chavdarova and Sebastian U Stich},
journal = {ICML 2024 Workshop: Aligning Reinforcement Learning Experimentalists and Theorists},
year    = {2024},
}
						
					
				
@inproceedings{chavdarova2024acvi,
 title   = {A Primal-dual Approach for Solving Variational Inequalities with General-form Constraints},
 author  = {Chavdarova, Tatjana and Yang, Tong and Pagliardini, Matteo and Jordan, Michael I.},
 booktitle = {ICLR},
 year    = {2024},
}
									
								
							
@article{chavdarova2023hrdes,
 title   = {Last-Iterate Convergence of Saddle Point Optimizers via High-Resolution Differential Equations},
 author  = {Tatjana Chavdarova and Michael I. Jordan and Manolis Zampetakis},
 journal = {Minimax Theory and its Applications},
 year    = {2023},
}
									
								
							
@inproceedings{yang2023acvi,
  title   = {Solving Constrained Variational Inequalities via a First-order Interior Point-based Method},
  author  = {Tong Yang and Michael I. Jordan and Tatjana Chavdarova},
  booktitle = {ICLR},
  url={https://openreview.net/forum?id=RQY2AXFMRiu},
  year    = {2023},
}
									
								
							
@article{chavdarova2022contVIs,
 title   = {Continuous-time Analysis for Variational Inequalities: An Overview and Desiderata},
 author  = {Tatjana Chavdarova and Ya-Ping Hsieh and Michael I. Jordan},
 booktitle= {ICML Workshop on Continuous time methods for Machine Learning},
 year    = {2022},
}
									
								
							
@article{liu2021peril,
 title   = {The Peril of Popular Deep Learning Uncertainty Estimation Methods},
 author  = {Yehao Liu and Matteo Pagliardini and Tatjana Chavdarova and Sebastian U. Stich},
 journal = {NeurIPS Workshop on Bayesian Deep Learning},
 year    = {2021},
}
									
								
							
@article{ManunzaPagliardini2021,
 title   = {Improved Adversarial Robustness via Uncertainty Targeted Attacks},
 author  = {Gilberto Manunza and Matteo Pagliardini and Martin Jaggi and Tatjana Chavdarova},
 journal = {ICML Workshop on Uncertainty and Robustness in Deep Learning},
 year    = {2021},
 url     = {http://www.gatsby.ucl.ac.uk/~balaji/udl2021/accepted-papers/UDL2021-paper-096.pdf}
}
									
								
							
@InProceedings{Yuksel_2021_ICCV,
 author    = {Y\"uksel, Oguz Kaan and Stich, Sebastian U. and Jaggi, Martin and Chavdarova, Tatjana},
 title     = {Semantic Perturbations With Normalizing Flows for Improved Generalization},
 booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
 month     = {October},
 year      = {2021},
 pages     = {6619-6629}
}
									
								
							
@inproceedings{chavdarova2021lagan,
 author    = {Tatjana Chavdarova and
               Matteo Pagliardini and
               Sebastian U. Stich and
               Fran{\c{c}}ois Fleuret and
               Martin Jaggi},
 title     = {Taming GANs with Lookahead-Minmax},
 booktitle = {{ICLR}},
 publisher = {OpenReview.net},
 year      = {2021}
}
									
								
								
							
@article{Chavdarova:278463,
 title = {Deep Generative Models and Applications},
 author = {Chavdarova, Tatjana},
 institution = {IEL},
 publisher = {EPFL},
 address = {Lausanne},
 pages = {169},
 year = {2020},
 url = {http://infoscience.epfl.ch/record/278463},
 doi = {10.5075/epfl-thesis-10257},
}
									
								
								
							
@inproceedings{chavdarova2019,
 Author  = {Tatjana Chavdarova and Gauthier Gidel and François Fleuret and Simon Lacoste-Julien},
 Title   = {Reducing Noise in {GAN} Training with Variance Reduced Extragradient},
 Booktitle = {{Advances in Neural Information Processing Systems (NeurIPS)}},
 Year    = {2019},
 volume  = {32},
 publisher = {Curran Associates, Inc.},
}
									
@inproceedings{chavdarova-fleuret-2018,
 author = {Chavdarova, T. and Fleuret, F.},
 title = {{SGAN}: An Alternative Training of Generative Adversarial Networks},
 booktitle = {CVPR},
 year = {2018},
}
									
								
								
							
@inproceedings{chavdarova-et-al-2018,
 author = {Chavdarova, T. and Baqué, P. and Bouquet, S. and Maksai, A. and Jose, C. and Bagautdinov, T. and Lettry, L. and Fua, P. and Van Gool, L. and Fleuret, F.},
 title = {{WILDTRACK}: A Multi-camera {HD} Dataset for Dense Unscripted Pedestrian Detection},
 booktitle = {CVPR},
 year = {2018},
 pages = {5030-5039},
}
									
								
								
							* Equal contributions.
Email: tatjana.chavdarova[at]polimi[dot]it
Office 20, First floor, Building 21 Via Golgi 39, 20133, Milan Dipartimento di Elettronica, Informazione e Bioingegneria Politecnico di Milano