Month Flat Week Day

Carolina Engagement Week 2024

All day

Carolina Engagement Week 2024 brings together Carolina faculty, staff and students with community partners to learn about and celebrate engagement and collaboration with North Carolina communities.

Register for the events you want to attend and participate in skill-building workshops, research presentations, panel discussions and more!

View the events at engagementweek.unc.edu/events-calendar.

View last year's recap at engagementweek.unc.edu/2023-recap.


Engagement Week 2024 is hosted by the Carolina Center for Public Service, Carolina Across 100, Innovate Carolina, UNC Rural, the Carolina Engagement Council, Center for Health Equity Research and other partners. 

Odum Institute: Advanced Statistical Machine Learning

Wed. 28 Feb, 2024 10:00 am - 4:00 pm

This one-day course will be offered via Zoom only. Attendance is required as it will not be recorded.

Course Summary:
Statistical machine learning is an interdisciplinary research area which is closely related to statistics, computer sciences, engineering, and bioinformatics. Many statistical machine learning techniques and algorithms have proven to be very useful for various scientific areas. This course will cover a number of unsupervised learning techniques for finding patterns and associations in Big Data. These include dimension reduction techniques such as principal components analysis and non-negative matrix factorization, clustering analysis and significance analysis, and network analysis with graphical models. The main emphasis will be on the analysis of real data sets from various scientific fields. The techniques discussed will be demonstrated in R.

This course is intended for researchers who have some knowledge of statistics and machine learning, and want to be introduced to relatively more advanced statistical machine learning topics.

Prerequisite:
Participants should be familiar with matrix linear algebra, linear regression and basic statistical and probability concepts, as well as some familiarity with R programming.

Register

CCCR Speaker Series: Path to Osteoarthritis

Wed. 28 Feb, 2024 10:30 am - 11:30 am

The Biomechanical Path to Osteoarthritis Following Knee Injury and a GAIT-way to Improved Outcomes

Join the UNC School of Medicine Thurston Arthritis Research Center for a UNC Core Center for Clinical Research (CCCR) Speaker Series seminar featuring Brian Pietrosimone, PhD, ATC. Pietrosimone is an Associate Professor in the Department of Exercise and Sport Science at UNC-Chapel Hill and the Director of MOTION Science Institute.

Optimal movement is paramount to maintaining joint health. The development and progression of osteoarthritis has been linked, in part, to altered mechanical joint loading. Traumatic knee injuries are known to lead to changes in walking gait that may alter knee tissue loading and accelerate the development of osteoarthritis. This presentation will specifically describe: i) the aberrant gait biomechanics that we have measured following anterior cruciate ligament injury; ii) the links between these aberrant gait biomechanics and deleterious knee tissue changes related to osteoarthritis development; and iii) some emerging ideas for mitigating aberrant gait biomechanics following anterior cruciate ligament injury.

Register

Get NC TraCS events and news delivered to your inbox! Subscribe to our weekly email blast

Need help advertising your event? Contact Michelle Maclay at michelle_maclay@med.unc.edu

NC TraCS Institute logo vertical

In partnership with:

Contact Us


Brinkhous-Bullitt, 2nd floor
160 N. Medical Drive
Chapel Hill, NC 27599

919.966.6022
This email address is being protected from spambots. You need JavaScript enabled to view it.

Social


Cite Us


CitE and SUBMit CTSA Grant number - UM1TR004406

© 2008-2024 The North Carolina Translational and Clinical Sciences (NC TraCS) Institute at The University of North Carolina at Chapel Hill
The content of this website is solely the responsibility of the University of North Carolina at Chapel Hill and does not necessarily represent the official views of the NIH   accessibility | contact