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Oral
in
Workshop: Machine Learning in Structural Biology

The OMG dataset: An Open MetaGenomic corpus for mixed-modality genomic language modeling

Yunha Hwang · Andre Cornman · Jacob West-Roberts · Martin Beracochea · Sergey Ovchinnikov · Simon Roux · Antonio Camargo · Milot Mirdita

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Sun 15 Dec 9 a.m. PST — 9:15 a.m. PST
 
presentation: Machine Learning in Structural Biology
Sun 15 Dec 8:30 a.m. PST — 5 p.m. PST

Abstract:

Biological language model performance depends heavily on pretraining data quality, diversity, and size. While metagenomic datasets feature enormous biological diversity, their utilization as pretraining data has been limited due to challenges in data accessibility, quality filtering and deduplication. Here, we present the Open MetaGenomic (OMG) corpus, a genomic pretraining dataset totalling 3.1T base pairs and 3.3B protein coding sequences, obtained by combining two largest metagenomic dataset repositories (JGI's IMG and EMBL's MGnify). We first document the composition of the dataset and describe the quality filtering steps taken to remove poor quality data. We make the OMG corpus available as a mixed-modality genomic sequence dataset that represents multi-gene encoding genomic sequences with translated amino acids for protein coding sequences, and nucleic acids for intergenic sequences. We train the first mixed-modality genomic language model (gLM2) that leverages genomic context information to learn robust functional representations and coevolutionary signals in protein-protein interfaces. Furthermore, we show that deduplication in embedding space can be used to balance the corpus, demonstrating improved performance on downstream tasks. The OMG dataset is publicly hosted on the Hugging Face Hub at {URL hidden for anonymity} and gLM2 is available at {URL hidden for anonymity}.

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