Upcoming events

Bridging the Practicality Gaps in Responsible AI

Ayan Majumdar Max Planck Institute for Software Systems
13 Jul 2026, 11:00 am - 12:00 pm
Saarbrücken building E1 5, room 029
SWS Student Defense Talks - Thesis Proposal
AI-driven systems increasingly shape consequential decisions in domains such as lending, university admissions, and content moderation. Yet making these systems trustworthy in practice requires more than principled algorithms: it requires methods that scale, account for bias throughout the decision-making process, and can be evaluated against deployed real-world systems. This thesis addresses these challenges through three lines of work: scalable causal algorithmic recourse, fairness across the decision-making pipeline, and content policy enforcement on digital platforms.

First, ...
AI-driven systems increasingly shape consequential decisions in domains such as lending, university admissions, and content moderation. Yet making these systems trustworthy in practice requires more than principled algorithms: it requires methods that scale, account for bias throughout the decision-making process, and can be evaluated against deployed real-world systems. This thesis addresses these challenges through three lines of work: scalable causal algorithmic recourse, fairness across the decision-making pipeline, and content policy enforcement on digital platforms.

First, it introduces CARMA, a neural-network-based approach that amortizes causal recourse generation, producing near-real-time recommendations while preserving causal validity and effort optimality. Second, it addresses fairness across the decision-making pipeline by developing a causal framework for measuring and mitigating bias in post-selection treatment decisions, alongside an online learning framework, FairAll, that learns fair and temporally consistent selection policies without sacrificing utility. Third, it studies instruction-driven moderation with foundation models and introduces ModerationBench, a benchmark of multimodal, in-the-wild social media content grounded in Bluesky’s deployed moderation guidelines.

Together, these contributions push Responsible AI beyond idealized settings and toward practical deployment. They provide scalable mechanisms for recourse, broader tools for fairness across the full decision-making pipeline, and grounded methods for evaluating adaptable content-safety enforcement in real-world digital platforms.
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