について
Biological Oceanography is an interdisciplinary field that explores the life processes and interactions of marine organisms within the dynamic context of oceanic environments. This field bridges marine biology, ecology, and oceanography to investigate the distribution, behavior, and ecosystems of life in the oceans. Biological oceanographers study everything from microscopic plankton to massive marine mammals, unraveling how these organisms interact with each other and with their environment.
The scope of biological oceanography extends to understanding nutrient cycling, primary productivity, and the impact of physical and chemical oceanic conditions on marine life. This research is critical for addressing global challenges such as climate change, ocean acidification, and biodiversity loss. By studying the intricate balance of marine ecosystems, biological oceanography contributes to sustainable resource management and the preservation of the health and biodiversity of our oceans.

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研究論文
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- Enhancing Material Property Predictions through Optimized KNN Imputation and Deep Neural Network Modeling
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