Workshop In-person

FedKDD/FedMAS 2026: Federated Learning for Multi-agent Systems and Data Mining

📅 Sunday, 9 August 2026 in 63 days

📍 Jeju, South Korea

FedKDD/FedMAS 2026: Federated Learning for Multi-agent Systems and Data Mining is a focused AI event for researchers working on federated learning, distributed agents, privacy-preserving analytics and trustworthy multi-source d…

FedKDD/FedMAS 2026: Federated Learning for Multi-agent Systems and Data Mining is a focused AI event for researchers working on federated learning, distributed agents, privacy-preserving analytics and trustworthy multi-source data mining. It is the kind of workshop that rewards people who want more than a broad keynote: the value is in a concentrated room of researchers, builders and domain specialists working through a specific technical problem. For AIWhatsOn.com readers, the reason to pay attention is that this is where early research directions often become practical playbooks.

The setting in Jeju gives the event a clear conference anchor, while the format remains narrow enough to be useful for people with a serious interest in the topic rather than a passing curiosity. The expected programme centres on federated learning at the intersection of multi-agent systems, decentralized optimisation, collaborative data mining, robustness and fairness. That makes it useful for attendees who want concrete research questions, emerging benchmarks, peer-reviewed work, posters, discussions and contact with organisers who are actively shaping the field.

Instead of a general AI-business agenda, the day is built around a specialised problem space. A researcher can use it to understand where the open questions are. A founder can use it to see where defensible product ideas might sit.

A policy or governance person can use it to understand which technical constraints are real and which are merely fashionable. Students and early-career practitioners also get a compact map of the people, methods and evaluation problems that matter. The event matters because privacy-preserving distributed learning is one of the practical routes for using sensitive data without collapsing everything into one central model owner.

In the wider AI landscape, it sits inside the distributed, privacy-preserving and multi-agent learning layer of AI infrastructure. That is an important layer of the ecosystem: it is close enough to frontier model work to be relevant, but close enough to applied problems to expose what breaks when models meet real datasets, users, institutions or environments. These workshop settings are often where new terminology stabilises, where benchmarks are criticised before they become too influential, and where smaller communities can challenge assumptions imported from larger labs.

Its fringe value comes from the combination of federated learning and multi-agent data mining, a specialist topic far away from generic AI adoption events. This is not a mainstream vendor showcase or a generic panel on AI transformation. It is a In-person KDD half-day workshop event with a subject boundary, a research or technical community behind it, and a reason for specialists to show up.

For AIWhatsOn.com, that makes it useful discovery content: it helps readers find the quieter, higher-signal places where AI is being debated, measured, repaired, localised, made safer, made cheaper, or made more useful. The best reader for this listing is someone who already knows that AI is changing their field and now needs to know which small rooms are doing the serious work.

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