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Main Authors: Dobler, Konstantin, Lehnerer, Simon, Scozzafava, Federico, Janke, Jonathan, Ali, Mohamed
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.10767
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author Dobler, Konstantin
Lehnerer, Simon
Scozzafava, Federico
Janke, Jonathan
Ali, Mohamed
author_facet Dobler, Konstantin
Lehnerer, Simon
Scozzafava, Federico
Janke, Jonathan
Ali, Mohamed
contents Reinforcement Learning with Verifiable Rewards (RLVR) has been successfully applied to significantly boost the capabilities of pretrained large language models, especially in the math and logic problem domains. However, current research and available training datasets remain English-centric. While multilingual training data and benchmarks have been created in the past, they were not created with RLVR and current model capability in mind, and their level of difficulty is often too low to provide appropriate training signals for current models. To address this gap, we provide mAceReason-Math, a dataset of high-quality translations of challenging math problems sourced from a corpus specifically curated for RLVR (AceReason-Math). We further take specific care to clean and improve our translations, resulting in a coverage of 14 languages with more than 10,000 samples per language. We release the dataset to facilitate multilingual RLVR research and benchmarking in the research community.
format Preprint
id arxiv_https___arxiv_org_abs_2603_10767
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle mAceReason-Math: A Dataset of High-Quality Multilingual Math Problems Ready For RLVR
Dobler, Konstantin
Lehnerer, Simon
Scozzafava, Federico
Janke, Jonathan
Ali, Mohamed
Computation and Language
Reinforcement Learning with Verifiable Rewards (RLVR) has been successfully applied to significantly boost the capabilities of pretrained large language models, especially in the math and logic problem domains. However, current research and available training datasets remain English-centric. While multilingual training data and benchmarks have been created in the past, they were not created with RLVR and current model capability in mind, and their level of difficulty is often too low to provide appropriate training signals for current models. To address this gap, we provide mAceReason-Math, a dataset of high-quality translations of challenging math problems sourced from a corpus specifically curated for RLVR (AceReason-Math). We further take specific care to clean and improve our translations, resulting in a coverage of 14 languages with more than 10,000 samples per language. We release the dataset to facilitate multilingual RLVR research and benchmarking in the research community.
title mAceReason-Math: A Dataset of High-Quality Multilingual Math Problems Ready For RLVR
topic Computation and Language
url https://arxiv.org/abs/2603.10767