Agentic AI themed 4th International Conference on Applied Data Science (ICADS 2025)

 

Date: July 17, 2025

Join us for the Fourth International Conference on Applied Data Science (ICADS 2025), organized by the IEEE Computer Society of Santa Clara Valley. This virtual event brings together global innovators in data science to share cutting-edge research and practical applications.

ICADS 2025 focuses on the latest advancements in GenAI and its real-world applications, offering a streamlined set of expert talks. This year, we’re placing a special emphasis on Agentic AI, with five dedicated sessions exploring its potential to shape the future of applied data science. Join us virtually to connect with leading researchers and stay at the forefront of innovation—all from the comfort of your home.

 

Registration

Schedule

Time Session
08:00 to 09 AM PST Agentic AI: Redefining Autonomy in Intelligent Systems
09:00 to 10:00 AM PST The Rise of Autonomous Intelligence: How AI Agents Are Redefining Science, Art, and Business
10:00 am to 11:00 AM PST From Algorithms to Agents: The Role of Agentic AI in Healthcare
11:00 to 12:00 PM PST Trustworthiness of Agentic AI
12:00 to 01:00 PM PST Beyond the Buzz: Defining Agentic AI Systems, Their Capabilities, and the Path Forward

Speakers

Title: The Rise of Autonomous Intelligence: How AI Agents Are Redefining Science, Art, and Business

Abstract – In this talk, Kamer Ali Yuksel (Head of Agentic AI @ aiXplain) describes how LLM-driven agents are transforming autonomy across research, enterprise, and design. He shows that today’s agents aren’t just “smart autocomplete” but self-directed ideators, experimenters, analysts, and creators. Drawing on his recent publications, he argues that AI agents already deliver end-to-end autonomy: how aiXplain autonomously refine Agentic AI workflows via continuous LLM-driven feedback loops, ideate and implement enterprise Agentic AI use-cases, and derive actionable business insights from enterprise data—producing executive-ready reports without human intervention.

Situating this vision alongside industry milestones—from DeepMind’s AlphaEvolve to Google Research’s AI Co-Scientist and Sakana’s AI Scientist—he demonstrates how AI Agents now drive original research, design and execute experiments, and draft manuscripts; and how he used this framework to power breakthroughs in quantitative finance by uncovering new risk-adjusted performance metrics, portfolio allocation strategies, and technical indicators. He will talk about autonomous creativity too: evolving GLSL shaders, generative art, and highly converting landing pages through user-driven interactive evolution or visual-LLM feedback.

 

Speaker Bio – Kamer Ali Yuksel is a distinguished AI leader and visionary computer scientist, recognized for his pioneering contributions to AI, ML, and Deep Learning over a career spanning more than two decades. He currently serves as the Head of Agentic AI as a Distinguished Scientist at aiXplain, a Silicon Valley-based no-code AI marketplace/ecosystem and agentification framework founded by Hassan Sawaf, former Director of AI at eBay, Amazon, AWS, and Meta.
Kamer’s previous leadership roles include Chief Data Scientist at Hawk:AI, where he pioneered anti-money laundering and fraud technologies receiving the FinTech Germany Award; and also at ConnectedLife GmbH, where he led the development of AI-powered health and smart living solutions, winning the EIT Health Wild Card Challenge. He continues to push the boundaries of innovation at aiXplain, shaping the future of enterprise Agentic AI technologies

Talk title: From Algorithms to Agents: The Role of Agentic AI in Healthcare

Abstract – The future of healthcare is not just digital—it’s intelligent. Agentic AI represents a paradigm shift in artificial intelligence, moving beyond static models and reactive systems to dynamic, autonomous agents capable of setting goals, making decisions, and adapting over time. Unlike traditional AI, which passively responds to inputs, agentic AI can plan, reason, and act in complex, real-world environments—making it especially suited for the demands of modern healthcare.

In this talk, we explore the emerging role of agentic AI in transforming clinical workflows, decision-making, and patient engagement. From autonomous patient monitoring and adaptive treatment planning to intelligent workflow orchestration, agentic systems have the potential to operate as active teammates to clinicians. We discuss the potential capabilities of agentic AI in learning continuously from patient data, suggesting personalized interventions, and coordinating across departments—all while adapting in real time to new conditions or goals.

We also discuss real-world application scenarios, including cases like oncology support agents that will be able to manage treatment pathways and virtual health assistants that will monitor chronic conditions at home. Alongside these innovations, we examine critical challenges such as explainability, safety, ethical oversight, and integration into existing clinical systems.

Ultimately, agentic AI can offer a path toward more proactive, personalized, and scalable healthcare. This talk presents both the promise and the responsibilities of bringing agentic AI into mainstream healthcare—shifting the role of AI from a passive tool to an active, intelligent partner.

 

Speaker Bio – Dr. Anuradha Kar is an Associate Professor in AI and Robotics at Aivancity Paris Cachan, France, where she teaches and mentors graduate students in deep learning, AI for health, computer vision, explainable AI, and human-computer interaction.

She holds a Ph.D. in Electrical Engineering from the University of Galway, Ireland. Her research interests lie at the intersection of assistive technologies, digital health, generative AI, and the ethical and fair deployment of artificial intelligence.

She has conducted research at several leading institutions, including the Institut Pasteur in Paris, where she focused on deep learning applications in drug discovery, and the Paris Brain Institute, where she worked on AI-driven analysis of Alzheimer’s disease biomarkers. At the École normale supérieure de Lyon, she developed deep learning techniques for the analysis of 3D bio-imaging datasets.

Anuradha is also an author of two liveProject series with Manning Publications (2021 and 2024), which delve into the use of deep learning and explainable AI in medical imaging workflows.

Title: Trustworthiness of Agentic AI

Abstract – In especially the last decade, developments in the field of AI caused transformative changes in the context of modern life. Although deep learning models of the early 2000s allowed enhanced solutions for real-world problems, generative AI models changed the rules of the game and placed AI in the middle of daily life.

As a result, today’s AI systems can deal with more complicated data-driven problems and support humans in many tasks—including even the ones involving intellectual processes. Furthermore, such systems can ensure a networked solution flow through agentic use.

However, one of the most important challenges exposed by such AI formation is trustworthiness. Because agentic AI, through generative and complicated architectures, results in black-box models, there is a critical need for research in ensuring trustworthiness.

Moving from this fact, this speech will be about understanding the need for trustworthiness in Agentic AI and learning about the latest developments in ensuring it. The speech will discuss not only technical solution approaches but also our responsibilities to build human-compatible Agentic AI.

In this context, the speech will also cover advancements in terms of AI policies regarding its management and safety.

Speaker Bio – Dr. Utku Kose received the B.S. degree in 2008 from the Department of Computer Education at Gazi University, Turkey, as the faculty valedictorian. He received his M.S. degree in 2010 from Afyon Kocatepe University, Turkey, in the field of computer science, and his D.S./Ph.D. degree in 2017 from Selcuk University, Turkey, in the field of computer engineering.

Between 2009 and 2011, he worked as a Research Assistant at Afyon Kocatepe University. He then served as a Lecturer and Vocational School Vice Director at the same university between 2011 and 2012. From 2012 to 2017, he worked as a Lecturer and Director of a Research Center at Usak University. He was an Assistant Professor at Suleyman Demirel University between 2017 and 2019, and an Associate Professor there from 2019 to 2024. Currently, he is a Full Professor at Suleyman Demirel University, Turkey.

Dr. Kose has also taught at other higher education institutions such as Gazi University and Istanbul Arel University. He served as a Visiting Researcher at the University of North Dakota, USA (2023–2024), and holds the title of Honorary Professor of Artificial Intelligence at ITM (SLS) Baroda University, India.

He has more than 350 publications, including articles, authored and edited books, proceedings, and technical reports. He serves on the editorial boards of many scientific journals and is one of the editors of the Biomedical and Robotics Healthcare (CRC Press) and Computational Modeling Applications for Existential Risks (Elsevier) book series.

His research interests include artificial intelligence, machine ethics, AI safety, biomedical applications, optimization, chaos theory, distance education, e-learning, computer education, and computer science.

Title: Beyond the Buzz: Defining Agentic AI Systems, Their Capabilities, and the Path Forward

Abstract – Despite widespread discussion of AI agents across industry and academia, the field lacks consensus on fundamental questions: What exactly constitutes an agent? What problems can current agents realistically solve versus what remains beyond their reach? This talk addresses the clarity gap by examining current agent capabilities and limitations through real-world examples, and establishing concrete problem statements for researchers and practitioners. We’ll identify key research challenges including the need for standardized evaluation frameworks, improved planning mechanisms, and better techniques for agent-human collaboration. The goal is to move beyond the hype and provide a structured foundation for meaningful progress in agent development, complete with proposed benchmarks and a research roadmap that can guide the next generation of agent systems toward solving real-world problems effectively and safely.

Speaker Bio – Ranjitha Gurunath Kulkarni is a Senior ML Engineer at Dropbox with over a decade of experience in NLP-focused applied machine learning. At Dropbox, she plays a pivotal role in building next-generation AI systems, including a cutting-edge LLM-based Agents Platform and the question answering system powering Dropbox Dash. Prior to that, she worked at Microsoft, contributing to research and development in language modeling and speech recognition.

Title: Agentic AI: Redefining Autonomy in Intelligent Systems

Abstract – Agentic AI is reshaping the boundaries of artificial intelligence by enabling systems that move beyond reactive responses to exhibit autonomy, initiative, and adaptability. These agents are capable of independently setting goals, planning multi-step actions, maintaining memory over time, and interacting intelligently with their environments. Underpinned by architectures that combine reasoning, perception, and feedback loops, agentic systems are increasingly deployed in domains such as software automation, robotics, and decision support. As their influence grows, so do the challenges—ranging from safety and value alignment to transparency and collaboration. Agentic AI represents a foundational shift in how intelligent systems are designed and deployed, redefining autonomy for the next generation of AI.

Speaker Bio – Dr. Soumen Biswas is a Senior Researcher in the Artificial Intelligence Research Group at Hitachi R&D India. His expertise spans artificial intelligence, computer vision, large language models (LLMs), and vision-language models (VLMs). He focuses on developing cutting-edge AI solutions tailored for industrial applications in domains such as manufacturing, healthcare, mobility, and smart infrastructure.

Dr. Biswas has a strong track record of publications in reputed journals and international conferences. He serves as a reviewer for esteemed journals including IEEE Transactions on Circuits and Systems for Video Technology, Circuits, Systems, and Signal Processing (Springer), IET Image Processing, IET Signal Processing, Journal of Computational and Applied Mathematics (Elsevier), Optik – International Journal for Light and Electron Optics (Elsevier), ACM Transactions, and IEEE Access, among others.

Beyond research, Dr. Biswas is actively involved in academic leadership and the AI research community. He has organized workshops and special sessions at major conferences such as ICMLA, IEEE Big Data, and IEEE AISP. He also serves on the Program Committees of various IEEE and Springer-sponsored international conferences. Dr. Biswas is a Senior Member of the IEEE.

 

 

Organizers

Dr Vishnu Pendyala Rahul Raja

 

Previous Events

First International Conference on Applied Data Science (ICADS’22)

Second International Conference on Applied Data Science (ICADS’23)

Third International Conference on Applied Data Science (ICADS’24)

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