Panza: Investigating the feasibility of fully-local personalized text generation
Nicolicioiu A, Iofinova EB, Jovanovic A, Kurtic E, Nikdan M, Panferov A, Markov I, Shavit N, Alistarh D-A. 2026. Panza: Investigating the feasibility of fully-local personalized text generation, OpenReview,p.
Download (ext.)
Conference Poster
| Published
| English
Author
Nicolicioiu, Armand;
Iofinova, EugeniaISTA
;
Jovanovic, Andrej;
Kurtic, EldarISTA;
Nikdan, MahdiISTA;
Panferov, AndreiISTA;
Markov, IliaISTA;
Shavit, Nir;
Alistarh, Dan-AdrianISTA 
Corresponding author has ISTA affiliation
Department
Abstract
The availability of powerful open-source large language models (LLMs) opens exciting use cases, such as using personal data to fine-tune these models to imitate a user’s unique writing style. Two key requirements for this functionality are personalization–in the sense that the output should recognizably reflect the user’s own writing style—and privacy–users may justifiably be wary of uploading extremely personal data, such as their email archive, to a third-party service. In this paper, we demonstrate the feasibility of training and running such an assistant, which we call Panza, on commodity hardware, for the specific use case of email generation. Panza’s personalization features are based on a combination of parameter-efficient fine-tuning using a variant of the Reverse Instructions technique [1] and Retrieval-Augmented Generation (RAG) [2]. We demonstrate that this combination allows us to fine-tune an LLM to reflect a user’s writing style using limited data, while executing on extremely limited resources, e.g. on a free Google Colab instance. Our key methodological contribution is the first detailed study of evaluation metrics for this task, and
of how different choices of system components–the use of RAG and of different fine-tuning approaches–impact the system’s performance. Additionally, we demonstrate that very little data - under 100 email samples - are sufficient to create models that convincingly imitate humans, showcasing a previously unknown attack vector in language models. We are releasing the full Panza code as well as three new email datasets licensed for research use.
Keywords
Publishing Year
Date Published
2026-03-06
Proceedings Title
Third Conference on Parsimony and Learning (Proceedings Track)
Publisher
OpenReview
Article Number
81
Conference
CPAL: Conference on Parsimony and Learning
Conference Location
Tübíngen, Germany
Conference Date
2026-03-23 – 2026-03-26
IST-REx-ID
Cite this
Nicolicioiu A, Iofinova EB, Jovanovic A, et al. Panza: Investigating the Feasibility of Fully-Local Personalized Text Generation. OpenReview; 2026.
Nicolicioiu, A., Iofinova, E. B., Jovanovic, A., Kurtic, E., Nikdan, M., Panferov, A., … Alistarh, D.-A. (2026). Panza: Investigating the feasibility of fully-local personalized text generation. Third Conference on Parsimony and Learning (Proceedings Track). Tübíngen, Germany: OpenReview.
Nicolicioiu, Armand, Eugenia B Iofinova, Andrej Jovanovic, Eldar Kurtic, Mahdi Nikdan, Andrei Panferov, Ilia Markov, Nir Shavit, and Dan-Adrian Alistarh. Panza: Investigating the Feasibility of Fully-Local Personalized Text Generation. Third Conference on Parsimony and Learning (Proceedings Track). OpenReview, 2026.
A. Nicolicioiu et al., Panza: Investigating the feasibility of fully-local personalized text generation. OpenReview, 2026.
Nicolicioiu A, Iofinova EB, Jovanovic A, Kurtic E, Nikdan M, Panferov A, Markov I, Shavit N, Alistarh D-A. 2026. Panza: Investigating the feasibility of fully-local personalized text generation, OpenReview,p.
Nicolicioiu, Armand, et al. “Panza: Investigating the Feasibility of Fully-Local Personalized Text Generation.” Third Conference on Parsimony and Learning (Proceedings Track), 81, OpenReview, 2026.
All files available under the following license(s):
Creative Commons Attribution 4.0 International Public License (CC-BY 4.0):
Link(s) to Main File(s)
Access Level
Open Access
