Biohub Platform: ESM Protein Models, Atlas, and API for Biomolecular Research
Summary
This article presents the Biohub Platform, which offers a suite of tools built on the ESM family of protein language models. It highlights three main offerings: ESMFold2 for biomolecular complex structure prediction, ESMC for functional analysis and protein design, and the ESM Atlas — an open database containing functional annotations for over 6.8 billion proteins with 1.1 billion paired high-resolution predicted structures. The platform invites users to explore these tools and apply for additional credits.
Source
Key quotes
· 5 pulledWelcome to the Biohub Platform — Build on the world model of protein biology.
ESMFold2 — A state-of-the-art model for biomolecular complex structure prediction.
ESMCA — A state-of-the-art protein language model powering functional analysis, structure prediction, and protein design.
ESM Atlas — An open database of functional annotations for over 6.8 billion proteins and 1.1 billion paired high-resolution predicted structures.
Apply for additional credits to power your discoveries.
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