Julien Delaunay | Healthcare | Best Researcher Award

Dr. Julien Delaunay | Healthcare | Best Researcher Award

Dr. Julien Delaunay | Healthcare -Researcher in AI at Top Health Tech, Spain

Delaunay Julien is an accomplished researcher in the field of computer science, particularly known for his contributions to artificial intelligence (AI) and explainable machine learning models. His academic and professional journey spans multiple prestigious institutions across Europe and Canada. With a keen interest in making complex AI systems more interpretable, Julien has established himself as an expert in developing techniques that aim to enhance the transparency and trustworthiness of AI models, especially in natural language processing (NLP). His expertise is recognized globally through his publications, conference talks, and contributions to peer-reviewed journals. As an advocate for responsible AI, Julien actively engages in teaching, mentoring, and collaborative projects that bridge the gap between AI research and real-world applications. His passion for the field, combined with a commitment to advancing the next generation of AI researchers, makes him a leading figure in his area of study.

Profile:

Orcid

Education:


Julien’s academic background reflects his dedication to mastering and advancing the field of computer science. He completed his Ph.D. in Computer Science from Inria and Rennes 1 University in France (2020–2023), with guidance from renowned advisors in the field. His research during this time focused on AI explainability, particularly the development of novel counterfactual explanation techniques. Prior to his Ph.D., Julien completed both his Master’s in Computer Science at Rennes 1 University and Sherbrooke University in Canada, where he specialized in artificial intelligence, data mining, and parallel programming. His undergraduate education at Rennes 1 University further solidified his foundation in object-oriented programming and web technologies. Through this extensive educational journey, Julien has developed a robust understanding of both the theoretical and practical aspects of computer science, making him an expert in machine learning and its interpretability.

Experience:


Julien has accumulated a wealth of professional experience in both academic and research settings, with key roles at prestigious institutions across Europe. His most recent position is as a researcher in computer science at the Top Doctors Group in Barcelona, Spain (2024–Present), where he continues his work on AI explainability. Prior to this, he held various academic positions, including graduate teaching assistant at Rennes 1 University and Institut Agro in France, and visiting researcher at Aalborg University in Denmark (2022–2023). His professional career began with multiple internships at Inria in Rennes, where he explored the intersection of machine learning and AI transparency. In addition to his academic roles, Julien has been actively involved in mentoring students and has presented at various international conferences, further establishing his reputation as a leader in the field.

Research Interest:


Julien’s research focuses on the development and enhancement of AI explainability techniques, particularly for complex machine learning models in natural language processing. He is passionate about making AI systems more transparent and understandable to both experts and non-experts alike. His work includes the development of novel counterfactual explanation techniques and model-agnostic frameworks that allow users to understand the decision-making processes of AI models better. Julien’s interests extend beyond technical innovations; he is deeply engaged in studying the impact of these explanation techniques on users’ trust and comprehension of AI. This research is crucial for promoting ethical AI and ensuring that AI models can be deployed responsibly in real-world applications. His ongoing work explores the adaptation of explanation methods for different user roles, ensuring that AI systems cater to diverse needs in various domains.

Award:


Delaunay Julien’s work has been recognized globally through various awards and nominations, reflecting the significance and impact of his contributions to AI research. His innovative approaches to explainability and interpretability have positioned him as a leading researcher in his field. His research has not only advanced the academic understanding of AI transparency but also contributed to practical applications, making him a strong candidate for the Best Researcher Award. His ability to develop new frameworks and methods in machine learning, alongside his academic leadership and outreach efforts, makes him an exemplary figure deserving of recognition. Julien’s commitment to improving AI accessibility, as well as his dedication to educating and mentoring future generations of researchers, strengthens his eligibility for prestigious awards in the domain of computer science and AI.

Publication:


Julien has authored and co-authored several notable publications, many of which have been well-received by the AI and machine learning research community. His works are frequently cited, contributing to the growing body of literature on AI transparency and explainability. Here are some of his key publications:

  1. Delaunay J., Galárraga L., Largouët C. (2024). Does It Make Sense to Explain a Black Box With Another Black Box? Journal TAL: Explicabilité des modèles de TAL.
    • This paper compares and categorizes counterfactual explanation techniques for textual data, providing a deeper understanding of different counterfactual approaches.
      📘 Cited by: 25+ articles
  2. Delaunay J., Chaffin A. (2023). “Honey, Tell Me What’s Wrong”, Global Explainability of NLP Models through Cooperative Generation. Workshop on Analyzing and Interpreting Neural Networks for NLP at EMNLP 2023.
    • In this publication, Julien validated a novel global model-agnostic explanation technique for textual data.
      📘 Cited by: 15+ articles
  3. Delaunay J., Galárraga L., Largouët C., Van Berkel N. (2023). Adaptation of AI Explanations to Users’ Roles. Workshop on Human-Centered Explainable AI at CHI 2023.
    • This study explores how AI explanations can be adapted based on different user roles, contributing significantly to user-centered AI design.
      📘 Cited by: 10+ articles
  4. Wester J., Delaunay J., De Jong S., Van Berkel N. (2023). On Moral Manifestations in Large Language Models. Workshop on Moral Agent at CHI 2023.
    • The paper investigates the potential misinterpretation of large language models like ChatGPT as moral agents.
      📘 Cited by: 8+ articles
  5. Delaunay J., Galárraga L., Largouët C. (2022). When Should We Use Linear Explanations? International Conference on Information and Knowledge Management (CIKM).
    • This paper introduces the APE framework, which helps determine when linear explanations best approximate the decision boundaries of complex models.
      📘 Cited by: 12+ articles

Conclusion:


Delaunay Julien’s work exemplifies innovation, leadership, and dedication in the field of computer science, specifically in AI explainability. His research has not only advanced theoretical knowledge but also addressed practical challenges in the deployment of AI systems. Julien’s ability to develop novel techniques that enhance the transparency of complex machine learning models has positioned him as a leading figure in his field. His numerous publications, contributions to major conferences, and mentorship roles highlight his influence in shaping the future of AI. Despite opportunities for growth in terms of broader public engagement and application-driven research, Julien’s contributions make him a highly deserving nominee for the Best Researcher Award. His career trajectory shows immense promise, and he is set to continue influencing the AI research landscape for years to come.

Mukovhe Rammela | Nursing and Health Professions | Young Scientist Award

Ms. Mukovhe Rammela | Nursing and Health Professions | Young Scientist Award

PhD student in Public Health at University of Venda, South Africa

Mukovhe Rammela is an experienced and strategic health professional with over 8 years of expertise in health system strengthening, program coordination, mentoring, and quality improvement. She has led diverse teams in various roles, including Nurse Mentor, District Nurse Coordinator, and currently serves as the District TB Quality Improvement Officer at IHPS in Johannesburg. Mukovhe’s extensive work includes facilitating quality improvement initiatives, mentoring healthcare staff, and ensuring high-quality care across multiple health districts. Her passion lies in improving healthcare services, especially in TB/HIV, STI, and key population care.

Profile

ORCID

Education🎓📚

Mukovhe holds a Master’s in Business Administration (MBA) from the Management College of South Africa (MANCOSA) and a Master’s in Public Health (MPH) from the University of Venda. She also earned her Bachelor’s in Nursing Sciences (BCURP) from the University of Venda and has pursued various advanced certifications in Monitoring and Evaluation, Health Care Management, and Systematic Reviews. She is currently working towards a Post Graduate Diploma in Healthcare Management, with a focus on Quality Improvement and Project Management at Stellenbosch University.

Experience👩‍⚕️💼

Mukovhe’s career has spanned multiple roles focused on health systems and quality improvement. As a Quality Improvement Officer at Johannesburg Health District (2023-present), she collaborates with sub-district teams to monitor and improve healthcare services. Her previous roles included leading the Key Population Program as a District Nurse Coordinator and mentoring staff in the APACE project at Anova Health Institute. Mukovhe has also managed clinical practices at Magalies Hills Center and Elim Clinic, focusing on integrated care and capacity building in TB, HIV, and STI services.

Research Interest🔬📊

Mukovhe’s research interests are centered around health system strengthening, quality improvement, and HIV/TB care integration. She is passionate about developing evidence-based solutions to improve healthcare delivery, especially for vulnerable populations like sex workers and youth. Her work also focuses on monitoring and evaluation and using data to improve healthcare outcomes.

Award🏆🎖️

Mukovhe has received several prestigious awards, recognizing her contributions to healthcare and research. These include the National Research Foundation Doctoral Scholarship in 2022, the Sustainable Academic Capacity Building for Excellence through Research and Training Programme (SACERT) Scholarship, and the Cochrane South Africa Bursary Award in 2021. Her commitment to research and healthcare improvement has also been acknowledged by the National Research Foundation Masters Scholarship Award in 2018.

Publication📑🌍

Mukovhe has contributed to important research in public health, including her research article titled “An Integrated Approach to HIV, STI, and Teenage Pregnancy Prevention Services in Africa” presented at the University of Venda Research Symposium in 2021. This publication was a comprehensive literature review aimed at improving health services in Africa. Her research proposal on Integrated HIV and STI Prevention was also presented at the Department of Health Provincial Office Research Day in 2021.
For more details on the publications, visit:

Evaluating the Implementation of Adolescent- and Youth-Friendly Services in the Selected Primary Healthcare Facilities in Vhembe District, Limpopo Province

  • Published: November 21, 2024
    Journal: International Journal of Environmental Research and Public Health
    DOI: 10.3390/ijerph21121543
    Authors: Mukovhe Rammela,

The article evaluates adolescent- and youth-friendly services (AYFS) in Vhembe District, South Africa, highlighting successes and gaps based on WHO standards​

Epilepsy in rural South Africa: Patient experiences and healthcare challenges

  • Published: August 2024
    Journal: Epilepsia Open
    DOI: 10.1002/epi4.12999
    Authors: Mukovhe Rammela

This study explores patient experiences with epilepsy and the healthcare challenges they face in rural South Africa

Conclusion🌟💪

Mukovhe Rammela’s combination of professional experience in public health, research achievements, educational qualifications, and leadership abilities makes her a strong and highly suitable candidate for the Research for Young Scientist Award. Her commitment to improving health outcomes and her ongoing pursuit of knowledge through research are qualities that align well with the values of the award.