AI in Plant Science and Precision Agriculture
AI in Plant Science and Precision Agriculture
Chen, Jen-Tsung
Taylor & Francis Ltd
03/2026
390
Dura
Inglês
9781032889894
Pré-lançamento - envio 15 a 20 dias após a sua edição
Descrição não disponível.
Preface. 1. Artificial Intelligence for Biological Sciences: An Overview. 2. Technical Advancements and Emerging Applications of Artificial Intelligence in Plant Research. 3. Advances in Artificial Intelligence for Plant Systems Biology. 4. Integrating AI with Plant Functional Genomics. 5. Digital Plant Phenomics: Next-Generation Plant Phenotyping Based on Artificial Intelligence. 6. Artificial Intelligence Approaches for Analyzing and Interpreting Visual Data in Plant Biology. 7. Artificial Intelligence-Assisted Genomic Prediction for Plant Breeding. 8. Artificial Intelligence for Plant 3D Spatial Omics: Current Achievements and Future Directions. 9. Artificial Intelligence-Accelerated Crop Improvement. 10. Plant Morphology and Species Identification Based on Artificial Intelligence Tools. 11. Artificial Intelligence for Advancing Plant Genome Editing and Precision Breeding. 12. Artificial Intelligence Approaches in Plant Digital Multiple Omics. 13. Uncovering Complicated Plant Biological Networks Through the Assistance of Artificial Intelligence Tools. 14. Artificial Intelligence for the Management of Plant Factories. 15. Simulation Intelligence Approaches in Plant Sciences. 16. Artificial Intelligence Approaches for Uncovering Plant-Microbial Interactions. 17. Organizing Smart Digital Agriculture Based on Artificial Intelligence. 18. Plant Disease Diagnosis Based on Artificial Intelligence Technologies. 19. AI-Enabled ChatGPT and Large Language Models in Plant Research. 20. Machine Learning for Studying Plant Protein Function and Evolution. 21. Artificial Intelligence in Omics-Assisted Crop Breeding and Genetic Enhancement. 22. Low Carbon Transition in the Food System through Machine Learning-Enhanced Energy Efficiency. 23. Deep Learning: Revolutionizing Data-Driven Science in Plant Research. 24. Machine Learning in Plant Biology: Fundamentals and Applications.
Este título pertence ao(s) assunto(s) indicados(s). Para ver outros títulos clique no assunto desejado.
plant phenotyping;omics data analysis;genome editing techniques;microbial interactions;protein function prediction;energy efficiency agriculture;machine learning applications in crop breeding
Preface. 1. Artificial Intelligence for Biological Sciences: An Overview. 2. Technical Advancements and Emerging Applications of Artificial Intelligence in Plant Research. 3. Advances in Artificial Intelligence for Plant Systems Biology. 4. Integrating AI with Plant Functional Genomics. 5. Digital Plant Phenomics: Next-Generation Plant Phenotyping Based on Artificial Intelligence. 6. Artificial Intelligence Approaches for Analyzing and Interpreting Visual Data in Plant Biology. 7. Artificial Intelligence-Assisted Genomic Prediction for Plant Breeding. 8. Artificial Intelligence for Plant 3D Spatial Omics: Current Achievements and Future Directions. 9. Artificial Intelligence-Accelerated Crop Improvement. 10. Plant Morphology and Species Identification Based on Artificial Intelligence Tools. 11. Artificial Intelligence for Advancing Plant Genome Editing and Precision Breeding. 12. Artificial Intelligence Approaches in Plant Digital Multiple Omics. 13. Uncovering Complicated Plant Biological Networks Through the Assistance of Artificial Intelligence Tools. 14. Artificial Intelligence for the Management of Plant Factories. 15. Simulation Intelligence Approaches in Plant Sciences. 16. Artificial Intelligence Approaches for Uncovering Plant-Microbial Interactions. 17. Organizing Smart Digital Agriculture Based on Artificial Intelligence. 18. Plant Disease Diagnosis Based on Artificial Intelligence Technologies. 19. AI-Enabled ChatGPT and Large Language Models in Plant Research. 20. Machine Learning for Studying Plant Protein Function and Evolution. 21. Artificial Intelligence in Omics-Assisted Crop Breeding and Genetic Enhancement. 22. Low Carbon Transition in the Food System through Machine Learning-Enhanced Energy Efficiency. 23. Deep Learning: Revolutionizing Data-Driven Science in Plant Research. 24. Machine Learning in Plant Biology: Fundamentals and Applications.
Este título pertence ao(s) assunto(s) indicados(s). Para ver outros títulos clique no assunto desejado.