IO Informatics Webinars are free public events which will be recorded. Registration is required to attend.


  • Integrating Experimental Data
    Tuesday, April 19, 2011 10:00 AM - 11:00 AM PST
    Click to register!
    Make use of semantic technologies to combine various experimentally-derived data including all types of –omics data. Learn how flexible software tools and methods are being applied to maximize insight and knowledge. This session will highlight easy and rapid integration of both biological and chemical data.

  • Knowledge Building Environments
    Tuesday, May 17, 2011 10:00 AM - 11:00 AM PST
    Click to register!
    Agile integration standards and practices make it possible to connect data sources, statistical methods to create Knowledge Building Environments. These environments lead to testable hypotheses and actionable knowledge that is flexible and extensible to changing data resources and needs. This session will demonstrate how to leverage three key categories of knowledge building environments: Experimental Data Integration, Computational and Predictive Biology workflows using statistical methods, and Knowledge Resources. Learn how today’s Knowledge Building Environments are being applied to solve real problems.

  • Translational Medicine for Screening
    Tuesday, June 14, 2011 10:00 AM - 11:00 AM PST
    Click to register!
    Translational medicine for predictive screening has been a Life Science goal for years, but real-life use cases have only recently been demonstrated. This webinar will show examples where semantic biomarker patterns are being generated and applied as predictive network models. These web-accessible patterns, or “Applied Semantic Knowledgebases” (ASK), are used for hypothesis testing and decision support in Life Sciences and for patient screening in Healthcare.

    back to top


  • 2010

  • Applications of Semantic technologies
    Tuesday, October 26, 2010 10:00 AM - 11:00 AM PST
    Learn how IO Informatics’ Sentient Suite and professional services address specific research challenges through real-world use cases. This session will begin with exploring methods to break data integration barriers, allowing non-IT users as well as IT experts to integrate data from multiple sources. Drawing from public and private data, instruments, applications, and ontologies, combine data in a meaningful way to create custom knowledgebases. Visually explore, interrogate, report, and query your data to uncover hidden relationships and stimulate innovation. Finally, learn how to accelerate discovery and share knowledge and insight with fellow researchers.

  • Leveraging NLP Technologies for Discovery
    Tuesday, September 28, 2010 10:00 AM - 11:00 AM PST
    Partnering with an Natural Language Processing (NLP) technology company, learn how to combine textual information with your experimental data. NLP technology enables discovering valuable insights from text. Supplementing experimental data with text and other data sources allows for a broader understanding of your area of interest, including: mechanism of actions, predictions and simulation, and hypothesis generation.

  • Integrating Public Data
    Tuesday, August 24, 2010 10:00 AM - 11:00 AM PDT
    Discover and learn about new tools which are being used to efficiently and effectively combine public data with your experimental data. Harness the full potential of the multitude of publicly available resources.

  • Integrating Experimental Data
    Tuesday, July 20, 2010 10:00 AM - 11:00 AM PDT
    Leverage semantic technology to combine various experimentally-derived data including all types of –omic data. Learn about how tools can be leveraged to maximize insight and knowledge from existing data.

  • Introduction to Semantics
    Tuesday, June 29, 2010 10:00 AM - 11:00 AM PDT
    Discover how semantic technology breaks the data integration barrier leading to the eradication of data silos. This use-case driven introductory seminar will provide a brief overview of semantic technology and applications.

    back to top


  • Upcoming