Jennifer Listgarten: CRISPR Bioinformatics - Machine learning predictive models for guide design
Jennifer Listgarten (Microsoft) explains how machine learning can be utilized for guide RNA design. [2017 CRISPR Workshop]
Видео Jennifer Listgarten: CRISPR Bioinformatics - Machine learning predictive models for guide design канала Innovative Genomics Institute – IGI
Видео Jennifer Listgarten: CRISPR Bioinformatics - Machine learning predictive models for guide design канала Innovative Genomics Institute – IGI
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5 ноября 2017 г. 4:41:03
01:26:38
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