April 17, 2023, 12:21 a.m. | Aneesh Tickoo

MarkTechPost www.marktechpost.com

Machine learning system implementation in the academic and commercial domains has been expedited by foundation models in the natural language processing and computer vision domains. Researchers have suggested increasing parameter count by orders of magnitude to extract additional capabilities from these models and train on vast data corpora. Their primary traits of self-regulation and adaptability […]


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