Predicting first test day milk yield of dairy heifers
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Paulo César de Resende Andrade | Daniel M. Lefebvre | René Lacroix | Gabriel Machado Dallago | Darcilene Maria de Figueiredo | Roseli Aparecida dos Santos | Débora E. Santschi | R. Lacroix | D. Lefebvre | G. Dallago | D. Santschi | Paulo César de Resende Andrade | D. M. Figueiredo
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