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Machine Learning In Singlecell Rnaseq Data Analysis Khalid Raza

  • SKU: BELL-59717702
Machine Learning In Singlecell Rnaseq Data Analysis Khalid Raza
$ 31.00 $ 45.00 (-31%)

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Machine Learning In Singlecell Rnaseq Data Analysis Khalid Raza instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 5.4 MB
Pages: 106
Author: Khalid Raza
ISBN: 9789819767021, 9819767024
Language: English
Year: 2024

Product desciption

Machine Learning In Singlecell Rnaseq Data Analysis Khalid Raza by Khalid Raza 9789819767021, 9819767024 instant download after payment.

This book provides a concise guide tailored for researchers, bioinformaticians, and enthusiasts eager to unravel the mysteries hidden within single-cell RNA sequencing (scRNA-seq) data using cutting-edge machine learning techniques. The advent of scRNA-seq technology has revolutionized our understanding of cellular diversity and function, offering unprecedented insights into the intricate tapestry of gene expression at the single-cell level. However, the deluge of data generated by these experiments presents a formidable challenge, demanding advanced analytical tools, methodologies, and skills for meaningful interpretation. This book bridges the gap between traditional bioinformatics and the evolving landscape of machine learning. Authored by seasoned experts at the intersection of genomics and artificial intelligence, this book serves as a roadmap for leveraging machine learning algorithms to extract meaningful patterns and uncover hidden biological insights within scRNA-seq datasets.

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