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Linked collectors and determiners for: Danish Ants (Formicidae).|生物多样性数据集|标本数据数据集

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Mendeley Data2024-06-29 更新2024-06-27 收录
生物多样性
标本数据
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https://zenodo.org10707034
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资源简介:
Natural history specimen data linked to collectors and determiners held within, "Danish Ants (Formicidae)". Claims or attributions were made on Bionomia by volunteer Scribes, https://bionomia.net/dataset/96c4aa76-f762-11e1-a439-00145eb45e9a using specimen data from the dataset aggregated by the Global Biodiversity Information Facility, https://gbif.org/dataset/96c4aa76-f762-11e1-a439-00145eb45e9a. Formatted as a Frictionless Data package.
创建时间:
2024-02-29
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