• Stand Out in Your Job Search: Tips from Veeva

    Come join Katie Groth, a University Recruiter at Veeva, as she shares valuable insights on how to make your resume, job applications, and interviews stand out. You’ll also have the chance to ask your own questions and get personalized advice on these topics.
    During the session, Katie will also provide insight into the Engineering Development Program, a unique program at Veeva designed to support new grads entering the software engineering space.

  • AM Seminar with Dr. Truong Vu

    Presenter: Dr. Truong Vu, IPAM and MSU Description: We present a framework for the gradient flow of sharp-interface surface energies that couple to embedded curvature active agents. We use a penalty method to develop families of locally incompressible gradient flows that couple interface stretching or compression to local flux of interfacial mass. We establish the […]

  • AM Seminar: Science in the Age of Foundation Models

    Virtual Event

    Presenter: Dr. Danielle Robinson, AWS AI Description: In this talk, I will discuss the large impact of foundation models within the sciences with a particular focus on the importance of […]

  • Be Inspired: Explore Graduate Studies in STEM

    Not sure if graduate school is right for you? Join us to learn what graduate school is really about and explore whether it’s the right path for you. We’ll cover topics such as qualifying exams, funding options, common misconceptions, and more! Click the link below to register for the event: https://ucsc.zoom.us/webinar/register/WN_31OHhwc7QPqJ7nSyiuAUNg

  • Statistics Seminar: Statistical Inference for Multi-Modality Data in the AI Era

    Hybrid Event

    Presenter: Qi Xu, Postdoctoral Researcher, Department of Statistics & Data Science, Carnegie Mellon University Description: Multi-modality data are increasingly common across science medicine and technology, such as imaging, text, sensors, and genomics. These modalities are often high dimensional or unstructured and naturally exhibit blockwise (nonmonotone) missingness where different samples observe different subsets of modalities. Such […]