Kaustubh Ponkshe
2026
Apertus: Democratizing Open and Compliant LLMs for Global Language Environments
Alejandro Hernández-Cano | Alexander Hägele | Allen Hao Huang | Angelika Romanou | Antoni-Joan Solergibert | Barna Pásztor | Bettina Messmer | Dhia Garbaya | Eduard Frank Ďurech | Ido Hakimi | Juan Garcia Giraldo | Mete Ismayilzada | Negar Foroutan | Skander Moalla | Tiancheng Chen | Vinko Sabolčec | Yixuan Xu | Michael Aerni | Badr AlKhamissi | Inés Altemir Marinas | Mohammad Hossein Amani | Matin Ansaripour | Ilia Badanin | Harold Benoit | Emanuela Boros | Nicholas John Browning | Fabian Bösch | Maximilian Böther | Niklas Canova | Camille Challier | Clément Charmillot | Jonathan Coles | Jan Milan Deriu | Arnout Devos | Lukas Drescher | Daniil Dzenhaliou | Maud Ehrmann | Dongyang Fan | Simin Fan | Silin Gao | Miguel Gila | María Grandury | Diba Hashemi | Alexander Miserlis Hoyle | Jiaming Jiang | Mark Klein | Andrei Kucharavy | Anastasiia Kucherenko | Frederike Lübeck | Roman Machacek | Theofilos Ioannis Manitaras | Andreas Marfurt | Kyle Matoba | Simon Matrenok | Henrique Mendonça | Fawzi Roberto Mohamed | Syrielle Montariol | Luca Mouchel | Sven Najem-Meyer | Jingwei Ni | Gennaro Oliva | Matteo Pagliardini | Elia Palme | Andrei Panferov | Léo Paoletti | Marco Passerini | Ivan Pavlov | Auguste Poiroux | Kaustubh Ponkshe | Nathan Ranchin | Javier Rando | Mathieu Sauser | Jakhongir Saydaliev | Mukhammadali Sayfiddinov | Marian Schneider | Stefano Schuppli | Marco Scialanga | Andrei Semenov | Kumar Shridhar | Raghav Singhal | Anna Sotnikova | Alexander Sternfeld | Ayush Kumar Tarun | Paul Teiletche | Jannis Vamvas | Xiaozhe Yao | Hao Zhao | Alexander Ilic | Ana Klimovic | Andreas Krause | Caglar Gulcehre | David Rosenthal | Elliott Ash | Florian Tramèr | Joost VandeVondele | Livio Veraldi | Martin Rajman | Thomas C. Schulthess | Torsten Hoefler | Antoine Bosselut | Martin Jaggi | Imanol Schlag
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Alejandro Hernández-Cano | Alexander Hägele | Allen Hao Huang | Angelika Romanou | Antoni-Joan Solergibert | Barna Pásztor | Bettina Messmer | Dhia Garbaya | Eduard Frank Ďurech | Ido Hakimi | Juan Garcia Giraldo | Mete Ismayilzada | Negar Foroutan | Skander Moalla | Tiancheng Chen | Vinko Sabolčec | Yixuan Xu | Michael Aerni | Badr AlKhamissi | Inés Altemir Marinas | Mohammad Hossein Amani | Matin Ansaripour | Ilia Badanin | Harold Benoit | Emanuela Boros | Nicholas John Browning | Fabian Bösch | Maximilian Böther | Niklas Canova | Camille Challier | Clément Charmillot | Jonathan Coles | Jan Milan Deriu | Arnout Devos | Lukas Drescher | Daniil Dzenhaliou | Maud Ehrmann | Dongyang Fan | Simin Fan | Silin Gao | Miguel Gila | María Grandury | Diba Hashemi | Alexander Miserlis Hoyle | Jiaming Jiang | Mark Klein | Andrei Kucharavy | Anastasiia Kucherenko | Frederike Lübeck | Roman Machacek | Theofilos Ioannis Manitaras | Andreas Marfurt | Kyle Matoba | Simon Matrenok | Henrique Mendonça | Fawzi Roberto Mohamed | Syrielle Montariol | Luca Mouchel | Sven Najem-Meyer | Jingwei Ni | Gennaro Oliva | Matteo Pagliardini | Elia Palme | Andrei Panferov | Léo Paoletti | Marco Passerini | Ivan Pavlov | Auguste Poiroux | Kaustubh Ponkshe | Nathan Ranchin | Javier Rando | Mathieu Sauser | Jakhongir Saydaliev | Mukhammadali Sayfiddinov | Marian Schneider | Stefano Schuppli | Marco Scialanga | Andrei Semenov | Kumar Shridhar | Raghav Singhal | Anna Sotnikova | Alexander Sternfeld | Ayush Kumar Tarun | Paul Teiletche | Jannis Vamvas | Xiaozhe Yao | Hao Zhao | Alexander Ilic | Ana Klimovic | Andreas Krause | Caglar Gulcehre | David Rosenthal | Elliott Ash | Florian Tramèr | Joost VandeVondele | Livio Veraldi | Martin Rajman | Thomas C. Schulthess | Torsten Hoefler | Antoine Bosselut | Martin Jaggi | Imanol Schlag
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Open LLMs enable AI practitioners to control development costs by building on an existing foundation for downstream applications. While offering substantial promise, current models often fail to meet the needs of users needing open solutions aligned with responsible AI principles, including data compliance, transparency, and inclusivity. In this work, we present Apertus, a fully open suite of large language models (LLMs) designed to address responsibility shortcomings in today’s open model ecosystem, namely data responsibility and global representation. Unlike many prior models that release weights without reproducible data pipelines or regard for content-owner rights, Apertus models are pretrained exclusively on openly available data, retroactively respecting robots.txt exclusions and filtering for non-permissive, toxic, and personally identifiable content. To mitigate risks of data memorization, we also adopt the Goldfish objective during pretraining, strongly suppressing verbatim recall of data while retaining downstream task performance. Apertus also drastically expands multilingual coverage, training on 15T tokens from over approximately 1800 languages, with about 40% of pretraining data allocated to non-English content. Released at 8B and 70B scales, Apertus approaches state-of-the-art results among fully open models on multilingual benchmarks, rivaling or surpassing open-weight counterparts.
2025
GuideQ: Framework for Guided Questioning for progressive informational collection and classification
Priya Mishra | Suraj Racha | Kaustubh Ponkshe | Adit Akarsh | Ganesh Ramakrishnan
Findings of the Association for Computational Linguistics: NAACL 2025
Priya Mishra | Suraj Racha | Kaustubh Ponkshe | Adit Akarsh | Ganesh Ramakrishnan
Findings of the Association for Computational Linguistics: NAACL 2025
The veracity of a factoid is largely independent of the language it is written in. However, language models are inconsistent in their ability to answer the same factual question across languages. This raises questions about how LLMs represent a given fact across languages. We explore multilingual factual knowledge through two aspects: the model’s ability to answer a query consistently across languages, and the ability to ”store” answers in a shared representation for several languages. We propose a methodology to measure the extent of representation sharing across languages by repurposing knowledge editing methods. We examine LLMs with various multilingual configurations using a new multilingual dataset. We reveal that high consistency does not necessarily imply shared representation, particularly for languages with different scripts. Moreover, we find that script similarity is a dominant factor in representation sharing. Finally, we observe that if LLMs could fully share knowledge across languages, their accuracy in their best-performing language could benefit an increase of up to 150% on average. These findings highlight the need for improved multilingual knowledge representation in LLMs and suggest a path for the development of more robust and consistent multilingual LLMs.
FedEx-LoRA: Exact Aggregation for Federated and Efficient Fine-Tuning of Large Language Models
Raghav Singhal | Kaustubh Ponkshe | Praneeth Vepakomma
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Raghav Singhal | Kaustubh Ponkshe | Praneeth Vepakomma
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Low-Rank Adaptation (LoRA) is a popular technique for efficient fine-tuning of foundation models. However, applying LoRA in federated learning environments, where data is distributed across multiple clients, presents unique challenges. Existing methods rely on traditional federated averaging of LoRA adapters, resulting in inexact updates. To address this, we propose Federated Exact LoRA, or FedEx-LoRA, which adds a residual error term to the pre-trained frozen weight matrix. Our approach achieves exact updates with minimal computational and communication overhead, preserving LoRA’s efficiency. We evaluate the method on various models across arithmetic reasoning, commonsense reasoning, natural language understanding and natural language generation tasks, showing consistent performance gains over state-of-the-art methods across multiple settings. Through extensive analysis, we quantify that the deviations in updates from the ideal solution are significant, highlighting the need for exact aggregation. Our method’s simplicity, efficiency, and broad applicability position it as a promising solution for accurate and effective federated fine-tuning of foundation models.
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- Raghav Singhal 2
- Michael Aerni 1
- Adit Akarsh 1
- Badr AlKhamissi 1
- Mohammad Hossein Amani 1
- Matin Ansaripour 1
- Elliott Ash 1
- Ilia Badanin 1
- Harold Benoit 1
- Emanuela Boroş 1
- Antoine Bosselut 1
- Nicholas John Browning 1
- Fabian Bösch 1
- Maximilian Böther 1
- Niklas Canova 1
- Camille Challier 1
- Clément Charmillot 1
- Tiancheng Chen 1
- Jonathan Coles 1
- Jan Milan Deriu 1
- Arnout Devos 1
- Lukas Drescher 1
- Daniil Dzenhaliou 1
- Maud Ehrmann 1
- Dongyang Fan 1
- Simin Fan 1
- Negar Foroutan 1
- Silin Gao 1
- Dhia Garbaya 1
- Miguel Gila 1
- Juan Garcia Giraldo 1
- María Grandury 1
- Çağlar Gu̇lçehre 1
- Ido Hakimi 1
- Diba Hashemi 1
- Alejandro Hernández-Cano 1
- Torsten Hoefler 1
- Alexander Miserlis Hoyle 1
- Allen Hao Huang 1
- Alexander Hägele 1
- Alexander Ilic 1
- Mete Ismayilzada 1
- Martin Jaggi 1
- Jiaming Jiang 1
- Mark Klein 1
- Ana Klimovic 1
- Andreas Krause 1
- Andrei Kucharavy 1
- Anastasiia Kucherenko 1
- Frederike Lübeck 1
- Roman Machacek 1
- Theofilos Ioannis Manitaras 1
- Andreas Marfurt 1
- Inés Altemir Marinas 1
- Kyle Matoba 1
- Simon Matrenok 1
- Henrique Mendonça 1
- Bettina Messmer 1
- Priya Mishra 1
- Skander Moalla 1
- Fawzi Roberto Mohamed 1
- Syrielle Montariol 1
- Luca Mouchel 1
- Sven Najem-Meyer 1
- Jingwei Ni 1
- Gennaro Oliva 1
- Matteo Pagliardini 1
- Elia Palme 1
- Andrei Panferov 1
- Léo Paoletti 1
- Marco Passerini 1
- Ivan Pavlov 1
- Auguste Poiroux 1
- Barna Pásztor 1
- Suraj Racha 1
- Martin Rajman 1
- Ganesh Ramakrishnan 1
- Nathan Ranchin 1
- Javier Rando 1
- Angelika Romanou 1
- David Rosenthal 1
- Vinko Sabolčec 1
- Mathieu Sauser 1
- Jakhongir Saydaliev 1
- Mukhammadali Sayfiddinov 1
- Imanol Schlag 1
- Marian Schneider 1
- Thomas C. Schulthess 1
- Stefano Schuppli 1
- Marco Scialanga 1
- Andrei Semenov 1
- Kumar Shridhar 1
- Antoni-Joan Solergibert 1
- Anna Sotnikova 1
- Alexander Sternfeld 1
- Ayush Kumar Tarun 1
- Paul Teiletche 1
- Florian Tramèr 1
- Jannis Vamvas 1
- Joost VandeVondele 1
- Praneeth Vepakomma 1
- Livio Veraldi 1
- Yixuan Xu 1
- Xiaozhe Yao 1
- Hao Zhao 1
- Eduard Frank Ďurech 1