[Call for Papers]: NeurIPS 2021 Workshop on New Frontiers in Federated
Learning:
Privacy, Fairness, Robustness, Personalization and Data Ownership

https://neurips2021workshopfl.github.io/NFFL-2021/


Federated Learning (FL) has recently emerged as the de facto framework for
distributed machine learning (ML) that preserves the privacy of data,
especially in the proliferation of mobile and edge devices with their
increasing capacity for storage and computation. To fully utilize the vast
amount of geographically distributed, diverse and privately owned data that
are stored across these devices, FL provides a platform on which local
devices can build their own local models whose training processes can be
synchronized via sharing differential parameter updates. This is done
without exposing their private training data, which helps mitigate the risk
of privacy violation, in light of recent policies such as the General Data
Protection Regulation (GDPR). Such potential use of FL has since then led
to an explosive attention from the ML community, resulting in a vast,
growing amount of both theoretical and empirical literature that push FL
closer to being the new standard of ML as a democratized data analytics
service.



Interestingly, as FL comes closer to being deployable in real-world
scenarios, it also surfaces a growing set of challenges on trustworthiness,
fairness, auditability, scalability, robustness, security, privacy
preservation, decentralizability, data ownership and personalizability that
are all becoming increasingly important in many interrelated aspects of our
digitized society. Such challenges are particularly important in economic
landscapes that do not have the presence of big tech corporations with big
data and are instead driven by government agencies and institutions with
valuable data locked up or small-to-medium enterprises & start-ups with
limited data and little funding. With this forethought, the workshop
envisions the establishment of an AI ecosystem that facilitates data and
model sharing between data curators as well as interested parties in the
data and models while protecting personal data ownership.



Our workshop will feature exciting keynote speeches from a group of
influential researchers: Alex Pentland (MIT), Dawn Song (UC Berkeley), Asu
Ozdaglar (MIT), Marten van Dijk (CWI), Virginia Smith (CMU), and Peter
Richtarik (KAUST). In addition, we also invite researchers to submit work
in (but not limited to) the following areas:


Personalized Federated Learning

Differential Privacy in Federated Learning

Fairness in Federated Learning

Optimization for Large-Scale Federated Learning Systems

Certifiable Robustness for Federated Learning

Trustworthiness, Auditability and Verification in Federated Learning

Model Aggregation and Protecting Personal Data Ownership



Accepted papers are considered workshop papers and can be
submitted/published elsewhere. Published papers in this workshop are
non-archival but will be stored permanently on the workshop website.

A more detailed CFP of our workshop along with submission instructions can
be found here:

https://neurips2021workshopfl.github.io/NFFL-2021/cfp.html



Organizing Committee


Trong Nghia Hoang, Senior Research Scientist, AWS AI Labs

Lam Nguyen, Research Staff Member, IBM Research

Lily Weng, Assistant Professor, UC San Diego

Pin-Yu Chen, Research Staff Member, IBM Research

Sara Magliacane, Assistant Professor, University of Amsterdam

Bryan Kian Hsiang Low, Associate Professor, National University of Singapore

Anoop Deoras, Principal Applied Scientist, AWS AI Labs



If you have any questions, please let us know at
neurips2021worksho...@gmail.com.


-- 
Regards,
Bryan Low
Associate Professor of Computer Science, National University of Singapore
Director of AI Research, AI Singapore
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