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Hybrid Event

20th - 21st October 2026 | Washington DC, USA

International Conference on Explainable AI and Data Science (ICEAIDS - 26)

4

Days

4

Hrs

07

Min

02

Sec

Conference Program

Session Tracks

SDG Wheel

Aligned with

UN Sustainable Development Goals

This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.

Why it matters

SDG 4 — Quality Education
SDG 5 — Gender Equality
SDG 9 — Industry, Innovation and Infrastructure
SDG 10 — Reduced Inequalities
SDG 16 — Peace, Justice and Strong Institutions
Explore All Session Tracks
Track 01
Advancements in Explainable AI

This track focuses on the latest developments in explainable AI, emphasizing novel approaches and methodologies that enhance model interpretability. Researchers are invited to present their findings on algorithms that improve transparency and trust in AI systems.

Track 02
Interpretable Models in Practice

This session highlights practical applications of interpretable models across various domains, showcasing case studies that demonstrate their effectiveness. Participants will explore how these models can be integrated into real-world systems to facilitate decision-making.

Track 03
Transparent Algorithms for Data Science

This track examines the role of transparent algorithms in data science, focusing on techniques that promote understanding and accountability. Contributions should address the challenges and solutions related to algorithmic transparency.

Track 04
Human-in-the-Loop Systems

This session investigates the integration of human feedback in AI systems, emphasizing the importance of human-in-the-loop approaches for enhancing explainability. Discussions will center on methodologies that effectively incorporate human insights into model training and evaluation.

Track 05
Causality in Machine Learning

This track delves into the intersection of causality and machine learning, exploring how causal inference can improve model interpretability. Researchers are encouraged to present studies that highlight causal relationships and their implications for AI.

Track 06
Ethical AI and Fairness in Data Science

This session addresses the ethical considerations surrounding AI and data science, focusing on fairness and bias mitigation strategies. Contributions should explore frameworks that ensure ethical compliance and promote equitable outcomes.

Track 07
Model Debugging and Explainability

This track emphasizes the importance of model debugging in achieving explainability, presenting techniques that help identify and rectify issues in AI models. Participants will share insights on tools and methodologies that enhance model reliability.

Track 08
Explainability Frameworks and Standards

This session explores existing frameworks and standards for explainability in AI, discussing their effectiveness and areas for improvement. Researchers are invited to propose new frameworks that address current gaps in the field.

Track 09
Decision Transparency in AI Systems

This track focuses on ensuring decision transparency in AI systems, highlighting approaches that make decision-making processes understandable to users. Contributions should examine the implications of transparent decision-making for trust and accountability.

Track 10
Regulatory Compliance and Trustworthy AI

This session addresses the regulatory landscape surrounding AI, emphasizing the importance of compliance in fostering trustworthy systems. Researchers are encouraged to discuss strategies for aligning AI practices with regulatory requirements.

Track 11
Visualization Techniques for Explainability

This track investigates innovative visualization techniques that enhance the explainability of AI models and data-driven insights. Participants will showcase tools and methods that facilitate the interpretation of complex model outputs.

2026 UPDATE

Consistent Academic Support

Science Net ensures that research activities continue without interruption in the current global situation. Participants can engage through digital and hybrid conference formats.