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Main Authors: Böther, Maximilian, Yao, Xiaozhe, Kerimoglu, Tolga, Graur, Dan, Gsteiger, Viktor, Klimovic, Ana
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.19790
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author Böther, Maximilian
Yao, Xiaozhe
Kerimoglu, Tolga
Graur, Dan
Gsteiger, Viktor
Klimovic, Ana
author_facet Böther, Maximilian
Yao, Xiaozhe
Kerimoglu, Tolga
Graur, Dan
Gsteiger, Viktor
Klimovic, Ana
contents State-of-the-art large language and vision models are trained over trillions of tokens that are aggregated from a large variety of sources. As training data collections grow, manually managing the samples becomes time-consuming, tedious, and prone to errors. Yet recent research shows that the data mixture and the order in which samples are visited during training can significantly influence model accuracy. We build and present Mixtera, a data plane for foundation model training that enables users to declaratively express which data samples should be used in which proportion and in which order during training. Mixtera is a centralized, read-only layer that is deployed on top of existing training data collections and can be declaratively queried. It operates independently of the filesystem structure and supports mixtures across arbitrary properties (e.g., language, source dataset) as well as dynamic adjustment of the mixture based on model feedback. We experimentally evaluate Mixtera and show that our implementation does not bottleneck training and scales to 256 GH200 superchips. We demonstrate how Mixtera supports recent advancements in mixing strategies by implementing the proposed Adaptive Data Optimization (ADO) algorithm in the system and evaluating its performance impact. We also explore the role of mixtures for vision-language models.
format Preprint
id arxiv_https___arxiv_org_abs_2502_19790
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mixtera: A Data Plane for Foundation Model Training
Böther, Maximilian
Yao, Xiaozhe
Kerimoglu, Tolga
Graur, Dan
Gsteiger, Viktor
Klimovic, Ana
Machine Learning
Artificial Intelligence
Databases
State-of-the-art large language and vision models are trained over trillions of tokens that are aggregated from a large variety of sources. As training data collections grow, manually managing the samples becomes time-consuming, tedious, and prone to errors. Yet recent research shows that the data mixture and the order in which samples are visited during training can significantly influence model accuracy. We build and present Mixtera, a data plane for foundation model training that enables users to declaratively express which data samples should be used in which proportion and in which order during training. Mixtera is a centralized, read-only layer that is deployed on top of existing training data collections and can be declaratively queried. It operates independently of the filesystem structure and supports mixtures across arbitrary properties (e.g., language, source dataset) as well as dynamic adjustment of the mixture based on model feedback. We experimentally evaluate Mixtera and show that our implementation does not bottleneck training and scales to 256 GH200 superchips. We demonstrate how Mixtera supports recent advancements in mixing strategies by implementing the proposed Adaptive Data Optimization (ADO) algorithm in the system and evaluating its performance impact. We also explore the role of mixtures for vision-language models.
title Mixtera: A Data Plane for Foundation Model Training
topic Machine Learning
Artificial Intelligence
Databases
url https://arxiv.org/abs/2502.19790