Special issue on (bio)statistics and biometrics in the age of the digital revolution
Main Article Content
Abstract
This special issue explores the thematic areas presented at the 67th Reunião da Região Brasileira da Sociedade Internacional de Biometria (RBras) and 20th Simpósio de Estatística Aplicada à Experimentação Agronômica (SEAGRO).
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References
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