Bargains! PROMOTIONS

Close Notification

Your cart does not contain any items

Machine Learning and Big Data-enabled Biotechnology

Hal S. Alper (University of Texas at Austin, TX)

$295.95

Hardback

Forthcoming
Pre-Order now

QTY:

English
Blackwell Verlag GmbH
25 March 2026
Enables researchers and engineers to gain insights into the capabilities of machine learning approaches to power applications in their fields

Machine Learning and Big Data-enabled Biotechnology discusses how machine learning and big data can be used in biotechnology for a wide breadth of topics, providing tools essential to support efforts in process control, reactor performance evaluation, and research target identification.

Topics explored in Machine Learning and Big Data-enabled Biotechnology include:

Deep learning approaches for synthetic biology part design and automated approaches for GSM development from DNA sequences De novo protein structure and design tools, pathway discovery and retrobiosynthesis, enzyme functional classifications, and proteomics machine learning approaches Metabolomics big data approaches, metabolic production, strain engineering, flux design, and use of generative AI and natural language processing for cell models Automated function and learning in biofoundries and strain designs Machine learning predictions of phenotype and bioreactor performance

Machine Learning and Big Data-enabled Biotechnology earns a well-deserved spot on the bookshelves of reaction, process, catalytic, and environmental engineers seeking to explore the vast opportunities presented by rapidly developing technologies.
Edited by:  
Imprint:   Blackwell Verlag GmbH
Country of Publication:   Germany
Dimensions:   Height: 244mm,  Width: 170mm, 
ISBN:   9783527354740
ISBN 10:   3527354743
Series:   Advanced Biotechnology
Pages:   432
Publication Date:  
Audience:   Professional and scholarly ,  Undergraduate
Format:   Hardback
Publisher's Status:   Forthcoming

Dr. Hal S. Alper is the Cockrell Family Regents Chair in Engineering #1 at The University of Texas at Austin in the McKetta Department of Chemical Engineering. His research focuses on applying and extending the approaches of metabolic engineering, synthetic biology, systems biology, and protein engineering.

See Also