Computational Genetics: Advanced Data Analysis Programming with R and Bioconductor (Genesis Protocol: Next Generation Technology for Biological and Life Sciences)
Format:
Paperback
En stock
0.97 kg
Sí
Nuevo
Amazon
USA
- Discover the definitive resource that pushes the boundaries of computational genetics and data analysis. This comprehensive volume offers an unprecedented exploration into advanced programming with R and Bioconductor, tailored for professionals and researchers eager to deepen their expertise in genomic data analysis.Spanning 66 meticulously crafted chapters, this book delves into cutting-edge concepts and innovative methodologies that are shaping the future of genetics. Readers will embark on a journey through complex topics such as single-cell genomics, spatial transcriptomics, and integrative multi-omics data analysis. Each chapter provides detailed explanations of advanced techniques, from machine learning algorithms and deep learning architectures to sophisticated statistical models and high-performance computing strategies.Highlights include:In-depth Analysis of Single-Cell and Spatial Data: Uncover the intricacies of cellular heterogeneity and gene expression within spatial contexts using advanced R tools.Advanced Machine Learning and AI Applications: Apply the latest algorithms and deep learning models to genomic data, enhancing predictive capabilities and uncovering novel insights.Integrative Multi-Omics Approaches: Learn to seamlessly combine genomics, transcriptomics, proteomics, and metabolomics data to construct comprehensive biological models.Innovative Computational Techniques: Stay ahead with chapters on graph-based genome representations, synthetic genome design, and AI-driven hypothesis generation.High-Performance Computing and Big Data Handling: Master the use of cloud computing, parallel processing, and optimized algorithms to efficiently manage and analyze large-scale genomic datasets.Emphasis on Reproducibility and Data Standards: Ensure your research stands up to scrutiny with best practices in data sharing, reproducibility, and adherence to genomic data standards.Authored by leading experts in the field, this book not only presents theoretical frameworks but also provides practical implementation guidance, complete with code examples and case studies. It is an indispensable reference for geneticists, bioinformaticians, data scientists, and advanced students who are keen to apply sophisticated computational techniques to genomic research.Elevate your understanding and contribute to groundbreaking discoveries in the rapidly evolving landscape of computational genetics. This comprehensive resource equips you with the knowledge and tools to pioneer new horizons and shape the future of genomic science.
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