Computational Resources For Understanding Biomacromolecular Covalent Modifications


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Computational Resources for Understanding Biomacromolecular Covalent Modifications


Computational Resources for Understanding Biomacromolecular Covalent Modifications

Author: Dong Xu

language: en

Publisher: Frontiers Media SA

Release Date: 2021-09-14


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Biomolecular Simulations Methods and Protocols


Biomolecular Simulations Methods and Protocols

Author: Mr. Rohit Manglik

language: en

Publisher: EduGorilla Publication

Release Date: 2024-07-18


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EduGorilla Publication is a trusted name in the education sector, committed to empowering learners with high-quality study materials and resources. Specializing in competitive exams and academic support, EduGorilla provides comprehensive and well-structured content tailored to meet the needs of students across various streams and levels.

Revolutionizing Life Sciences: The Nobel Leap in Artificial Intelligence-Driven Biomodeling


Revolutionizing Life Sciences: The Nobel Leap in Artificial Intelligence-Driven Biomodeling

Author: Valentina Tozzini

language: en

Publisher: Frontiers Media SA

Release Date: 2025-01-22


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The year 2024 marked a historic milestone in the advancement of Artificial Intelligence (AI) as it saw the awarding of Nobel prizes specifically recognizing groundbreaking AI technologies. These technologies not only revolutionized traditional disciplines but also significantly enhanced capabilities within the biological sciences. By mapping the interfaces where AI meets molecular biology, this Research Topic intends to serve as a benchmark for current capabilities, a guideline for overcoming existing challenges, and a vision board for future opportunities that could further push the boundaries of what is scientifically possible in molecular biosciences. Keywords: deep-learning, neur