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Main Authors: Fischer, Tobias, Vollprecht, Wolf, Zalmstra, Bas, Arts, Ruben, de Jager, Tim, Fontan, Alejandro, Hines, Adam D, Milford, Michael, Traversaro, Silvio, Claes, Daniel, Raine, Scarlett
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.04827
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author Fischer, Tobias
Vollprecht, Wolf
Zalmstra, Bas
Arts, Ruben
de Jager, Tim
Fontan, Alejandro
Hines, Adam D
Milford, Michael
Traversaro, Silvio
Claes, Daniel
Raine, Scarlett
author_facet Fischer, Tobias
Vollprecht, Wolf
Zalmstra, Bas
Arts, Ruben
de Jager, Tim
Fontan, Alejandro
Hines, Adam D
Milford, Michael
Traversaro, Silvio
Claes, Daniel
Raine, Scarlett
contents The reproducibility crisis in scientific computing constrains robotics research. Existing studies reveal that up to 70% of robotics algorithms cannot be reproduced by independent teams, while many others fail to reach deployment because creating shareable software environments remains prohibitively complex. These challenges stem from fragmented, multi-language, and hardware-software toolchains that lead to dependency hell. We present Pixi, a unified package-management framework that addresses these issues by capturing exact dependency states in project-level lockfiles, ensuring bit-for-bit reproducibility across platforms. Its high-performance SAT solver achieves up to 10x faster dependency resolution than comparable tools, while integration of the conda-forge and PyPI ecosystems removes the need for multiple managers. Adopted in over 5,300 projects since 2023, Pixi reduces setup times from hours to minutes and lowers technical barriers for researchers worldwide. By enabling scalable, reproducible, collaborative research infrastructure, Pixi accelerates progress in robotics and AI.
format Preprint
id arxiv_https___arxiv_org_abs_2511_04827
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Pixi: Unified Software Development and Distribution for Robotics and AI
Fischer, Tobias
Vollprecht, Wolf
Zalmstra, Bas
Arts, Ruben
de Jager, Tim
Fontan, Alejandro
Hines, Adam D
Milford, Michael
Traversaro, Silvio
Claes, Daniel
Raine, Scarlett
Robotics
Software Engineering
The reproducibility crisis in scientific computing constrains robotics research. Existing studies reveal that up to 70% of robotics algorithms cannot be reproduced by independent teams, while many others fail to reach deployment because creating shareable software environments remains prohibitively complex. These challenges stem from fragmented, multi-language, and hardware-software toolchains that lead to dependency hell. We present Pixi, a unified package-management framework that addresses these issues by capturing exact dependency states in project-level lockfiles, ensuring bit-for-bit reproducibility across platforms. Its high-performance SAT solver achieves up to 10x faster dependency resolution than comparable tools, while integration of the conda-forge and PyPI ecosystems removes the need for multiple managers. Adopted in over 5,300 projects since 2023, Pixi reduces setup times from hours to minutes and lowers technical barriers for researchers worldwide. By enabling scalable, reproducible, collaborative research infrastructure, Pixi accelerates progress in robotics and AI.
title Pixi: Unified Software Development and Distribution for Robotics and AI
topic Robotics
Software Engineering
url https://arxiv.org/abs/2511.04827