Hypothesis - The Knowledge Chasm in Biology: A significant gap exists between the vast amounts of current and future biological data and the ability to translate that information into a comprehensive understanding of complex biological processes that can aid personalized healthy living.

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Following are the specific traits of the bio space that I believe make it promising for ML to have a big impact.

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Closing Thoughts: Bridging Disciplines for Better Human Health

As an ML practitioner stepping into the biological domain, I approach this intersection with both optimism and humility. The traits visualized in this infographic represent opportunities where computational expertise can complement biological knowledge. I don't claim to have all the answers—quite the opposite. I wonder if Tahoe 100M is the next PDB? What is the next grand challenge worth solving like protein folding? What is the next CASP? Why not go multi modal now? How do we solve privacy barriers and leverage continuous rich bio markers in service of personalized healthcare? My excitement stems from the potential for collaboration with biologists and healthcare experts to transform these data challenges into meaningful insights that improve human wellbeing. While the path forward will require patience and interdisciplinary teamwork, the potential rewards—personalized treatments, preventative care, and hidden biological insights—make this journey worth pursuing. I'm eager to connect with others working in this space to explore how we might bridge this knowledge chasm together.

Author: Sravya Tirukkovalur, sravya8_at_gmail