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University of Cambridge > Talks.cam > Seminars on Quantitative Biology @ CRUK Cambridge Institute > Generative machine learning to model cellular perturbations
![]() Generative machine learning to model cellular perturbationsAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact . The field of cellular biology has long sought to understand the intricate mechanisms that govern cellular responses to various perturbations, be they chemical, physical, or biological. Traditional experimental approaches, while invaluable, often face limitations in scalability and throughput, especially when exploring the vast combinatorial space of potential cellular states. Enter generative machine learning that has shown exceptional promise in modeling complex biological systems. This talk will highlight recent successes, address the challenges and limitations of current models, and discuss the future direction of this exciting interdisciplinary field. Through examples of practical applications, we will illustrate the transformative potential of generative ML in advancing our understanding of cellular perturbations and in shaping the future of biomedical research. This talk is part of the Seminars on Quantitative Biology @ CRUK Cambridge Institute series. This talk is included in these lists:
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