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Knowledge discovery reimagined: finding new hypotheses with Causaly Cloud

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Date/Time
Date(s) - 23 Jun 2022
2:00 pm - 3:00 pm

Location

Categories

  • External
  • Member Submitted


As you are aware, the amount of biomedical literature being produced is outpacing researchers’ ability to comprehensively understand, analyze and absorb learnings at scale. To keep up, we need a better way to acquire knowledge, identify connections, and generate hypotheses. That’s exactly what Causaly’s AI platform does, and we’d love to show you how.

Our speaker list includes Yiannis Kiachopoulos, Co-founder and CEO of Causaly, Stavroula Ntoufa, our Head of Science, and Richard Harrison, our Chief Scientist. In the webinar, they will discuss:

  • How Causaly Cloud uses machine reading to comprehend all biomedical literature in seconds, extracting precise evidence from millions of documents.
  • How the platform characterizes papers in terms of supporting or contradicting a specific causal relationship, presenting the whole picture on a given topic.
  • How to generate AI-driven hypotheses on targets, pathways, biomarkers, and much more by connecting seemingly unconnected concepts.

We’d love to tell you more about Causaly Cloud and demonstrate why it’s so transformative. Please use this link to RSVP.

We look forward to seeing you at the webinar!

Best wishes,
The Causaly Team

Posted on June 23, 2022 by event.submitter
Categories: External, Member Submitted


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