
Podcast 06: Integrating Biomedical Knowledge at Scale with Petagraph
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Decoding the Data Ecosystem: A CFDE Training Center Podcast
Podcast 06: Integrating Biomedical Knowledge at Scale with Petagraph
Description
In this episode, Allissa Dillman and Ben Stear discuss knowledge graphs and why they are useful. Tune in as they explore how these tools integrate vast and diverse datasets into unified, queryable networks that support discovery and predictive modeling. Ben shares how knowledge graphs like Petagraph are advancing FAIR data principles, enabling new research insights, and laying the foundation for future integration with large language models.
More information on Petagraph can be found on the project GitHub or in the recently published article: Petagraph: a large-scale unifying knowledge graph framework for integrating biomolecular and biomedical data.
Guest Bio
Ben Stear is a bioinformatics scientist at Children’s Hospital of Philadelphia. His recent work has focused on large data integration and analysis using graphs. He is also working on a PhD at Drexel University focusing on how to detect pleiotropy using graph machine learning and graph analysis.
ABOUT THE PODCAST
Host Bio
Allissa Dillman, PhD, Training and Engagement Director for the CFDE Training Center, is the founder and CEO of BioData Sage LLC, a company focused on providing a holistic approach to data science integration in the biomedical and biological science fields. She works with clients in industry, academia, government, and the nonprofit sector to create and support training programs on bioinformatics, cloud computing, and the tools and standards for reproducible data science practices for scientific and lay communities. She also creates community events, such as hackathons, where broad communities work towards solving real biomedical data challenges. Dr. Dillman is a member of the adjunct faculty at Montgomery College and has over 10 years of experience working for the National Institutes of Health (NIH). Her work focuses on lowering the barriers of entry for data science and cloud computing. She received her PhD in computational neuroscience as part of the graduate partnership program between NIH and the Karolinska Institute, Sweden.
Why Listen?
Decoding the Data Ecosystem: A CFDE Training Center Podcast is more than just a podcast; it's a community for anyone passionate about the potential of omics research to solve complex biological puzzles and address pressing health challenges. Whether you're a seasoned researcher, a student just starting out, or simply curious about the future of biology, this podcast offers valuable insights, inspiring stories, and practical advice to guide your journey through the world of omics research training and education.
Availability
Find Decoding the Data Ecosystem on your favorite podcast platform, including Spotify, Apple Podcasts, Google Podcasts, and more. Subscribe today to stay updated with the latest episodes and join the conversation shaping the future of omics research training and education. This podcast is hosted by Oak Ridge Associated Universities (ORAU). Learn more at orau.org.
Links
• Contact the CFDE Training Center