Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
to be part of the behind-the-scenes action on game days while growing your network and professional skills in a college gameday atmosphere. This position is ideal for students looking to enhance
-
offerings of the profession. Essential Duties: Oversees student degree planning by recommending course sequencing and monitoring progress towards degree completion. Communicates information regarding academic
-
realizing their educational, professional, and personal goals by offering specialized guidance. Advisors operate within an extensive campus network of institutional resources designed to help students
-
professionals in the Oklahoma City area and our alumni networks whose employers offer remote work options. The successful candidate will develop and implement a vision for leveraging their expertise to elevate
-
degree completion. Advisors communicate information regarding academic programs, policies, and procedures based on students’ individual needs. Advisors assist students in realizing their educational
-
' related experience. Skills: Ability to speak, read and write clear, concise English. Strong written and oral communication Excellent time management, organization skills. Experience in scheduling and
-
with a consistent network of physicians, the head athletic trainer, and other allied health care professionals to deliver and support optimal healthcare to football athletes Establish effective and
-
. Identify high-quality community providers and agencies whose services are relevant to client needs. Provide outreach services to engage and connect clients with community agencies that will help meet their
-
welcoming community. Candidates who fill this position should look to support OU’s strategic research verticals on the Future of Health and Community & Society Transformation; be prepared to engage in multi
-
Ph.D. in Physics or a closely related field is required. Candidates with a strong background in quantum many-body theory and experiences in quantum Monte Carlo and tensor network methods are encouraged