Review: Synergy between mechanistic modelling and data-driven models for modern animal production systems in the era of big data.
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J L Ellis | M Jacobs | J Dijkstra | H van Laar | J P Cant | D Tulpan | N Ferguson | H. H. Laar | D. Tulpan | J. Cant | J. Dijkstra | H. van Laar | J. Ellis | M. Jacobs | N. Ferguson
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