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Q&A with Mingyan Liu
  1. Q&A with Mingyan Liu

    The incoming electrical and computer engineering chair talks about her vision for the future.

  2. Undocumented immigrants’ privacy at risk online, on phones

    When it comes to their smartphones, immigrants struggle to apply instinctive caution, according to a study by a team of University of Michigan researchers.

  3. How to color-code nearly invisible nanoparticles

    With a bit of metal, nanoparticles shine in colors based on size.

  4. Jiyue Zhu awarded Wiesnet Medal for improved snow algorithms

    An award-winning method will help us better understand how much snow is on the ground.

  5. Designing a flexible future for massive data centers

    A new approach recreates the power of a large server by linking up and pooling the resources of smaller computers with fast networking technology.

  6. The next medical markets of Collin Rich

    An expert health sciences entrepreneur, Rich is ready to repeat success with revolutionary technology.

  7. Paper award for training computer vision systems more accurately

    PhD student Jean Young Song offers an improved solution to the problem of image segmentation.

  8. The material that could power tomorrow’s solar cells

    ‘We estimate that a finished solar cell could be about ten times cheaper than an equivalent gallium arsenide cell.’

    The post The material that could power tomorrow’s solar cells appeared first on Michigan Engineering News.

  9. Toward a stem cell model of human nervous system development

    Human cells could one day show us more about why neural tube birth defects occur and how to prevent them.

    The post Toward a stem cell model of human nervous system development appeared first on Engineering Research News.

  10. Study maps careers of CS PhDs using decades of data

    The researchers identified movement between industry, academia, and government work, tracked the growth of important organizations, and built predictive models for career transitions and employer retention.