Exploring Relational Agents for Different Healthcare Applications

Relational agents (RAs) are a special type of computer program or virtual entity designed to interact with humans in a way that simulates social interactions. These agents are equipped with artificial intelligence (AI) and natural language processing capabilities, allowing them to engage in conversations, interpret emotions, and respond with empathetic and contextually appropriate behaviors. They play a pivotal role in human-computer interaction, particularly in fields like healthcare, where personalized and compassionate communication is crucial.

In this research, different aspects and applications of RAs are explored in the domain of healthcare services. Our earlier explorations target the efficacy, acceptance, usability, and other basic measurements regarding RAs for healthcare services, particularly during COVID-19. Currently, we are investigating future opportunities for employing RAs in diverse healthcare applications, including gestational diabetes, different epidemics, health education, etc. Moreover, we are also working toward achieving universal health coverage (UHC) in Bangladesh by utilizing RAs that have the capability of interacting using Bangla languages. These research works are exclusively and jointly conducted with Data and Design Nest at the University of Louisiana at Lafayette, USA. Outcomes of this initiative have been published in ACM UIST 2022, ACM HAI 2021, IEEE ISCC 2023, JMIR Human Factors, IJERPH, PervasiveHealth 2021, and DESRIST 2021.

Microbial and Environmental Meta Genomics Analysis

Microbial genomes are being analyzed for revealing plant microbes’ interaction to understand ow plants cope up with stress with the supports from microbial world. Also genomic characterization of microbes isolated from polluted environments are being carried out specially focused on hydrocarbon eating bacteria to remove oil spil.

Analyzing rice genomic variation along with expression and phenotype data to reveal stress tolerance mechanism focusing development of climate smart rice

This project aims in analyzing publicly available sequencing data to reveal patterns and connection to understand stress tolerance mechanism in rice, a major staple food crop. Due to climate change number of cultivable agricultural lands are reducing, hence stress tolerant plants are necessary to feed the population. Along with computational data gene expression and phenotyping data are integrated to explore the biological relevance of sequence data. From the learned mechanism candidate genes are selected for further functional genomics analysis to develop climate smart plants. The project collaborates with Prof Zeba Islam Seraj’s group at University of Dhaka for information and resource exchanges.

RA Recruitment Announcement 📣

CCDS RA ranked #1 in BanglaNLP workshop @EMNLP23

CCDS RA, Md Fahim has ranked #1 and #2 in Bangla sentiment analysis and violence inciting text detection tasks respectively organized by the first Bangla Language Processing workshop @ EMNLP 2023. More information about the workshop can be found here: First Workshop on Bangla Language Processing (blp-workshop.github.io) 

Congratulations to Fahim.

CCDS RA receives fully funded MS admission in the Concordia University

Congratulations to Mohammad Raihanul Bashar Fahim! We’re happy to announce that he will be joining the Extended Reality and Interaction Technologies (EXiT) Lab at Concordia University, Canada for his Master’s in Computer Science starting in Fall 2023. He will be working in the field of Extended Reality, Human-Computer Interaction, and 3D user interface. Fahim had been one of our first RAs and an alumni of CSE IUB and has been working as a senior ML engineer since he left the lab.

Best of luck, Fahim!

CCDS RA receives fully funded PhD admission in the University of Houston

Congratulations to Ovi Paul, one of our former RAs at CCDS and alumni of IUB, for embarking on his PhD journey. He will be doing his PhD in Geosensing System Engineering & Science program at the University of Houston! Ovi will also serve as a Graduate Research Assistant at the National Center for Airborne Laser Mapping. The center is based at the University of Houston and is operated in partnership with the University of California, Berkeley. At CCDS, he had been working on spatial data processing (land cover and land usage classification, urban buildup classification etc. from satellite data).

We wish him all the best.

CSE 425/525: Artificial Intelligence

CSE424: Neural Network

CEN/CSE 421: Machine Learning