Apologies for cross-posting - Please forward to anybody who might be interested


** PhD Positions in Privacy-Preserving Distributed Artificial Intelligence **

Two funded PhD positions are available in the area of Privacy-preserving 
Distributed Machine Learning. The PhD candidate will work under the supervision 
of Prof. Ferdinando Fioretto at the EECS Department, Syracuse University. The 
position start date is flexible, with a start date as early as January 2020.
The PhD candidate is committed to conduct independent and original research, to 
report on this research in international publications and conference 
presentations, and to describe the results of the research in a PhD 
dissertation.

** Topic Description **

The recent surge in optimization and machine learning research, in particular, 
deep learning, paved the way for a number of applications, many of which use 
privacy-sensitive user data. The resulting models have been shown to often 
reveal private user information, which may harm individual users. To contrast 
these risks, a new line of research aims at developing variants of optimization 
and ML algorithms that preserve the privacy of the individuals contained in the 
used datasets. Additionally, there is an increasing interest in leveraging 
distributed data shared across organizations to augment AI-powered services. 
Examples include transportation services, sharing location-based data to 
improve on-demand capabilities, and hospitals, sharing data to prevent epidemic 
outbreaks. The proliferation of these applications lead to a transition from 
proprietary data acquisition and processing to data ecosystems where different 
agents learn and make decisions using data owned by different organizations, 
boosting the need for privacy-preserving technologies.
The project focuses broadly on protecting the privacy of individuals without 
losing the benefits of large scale data analysis. Topics of interest include:
-       Privacy-preserving technology, such as Differential Privacy and secure 
multi-party computation
-       Distributed Machine Learning
-       Privacy-preserving Multiagent Systems
-       Privacy-Preserving Adversarial Deep Learning Models
The project will combine fundamental aspects of privacy, optimization and 
distributed computation to design algorithms that perform (distributed) machine 
learning and decision making while guaranteeing they do not violate privacy. 
The ideal candidate will have a strong background and interest in machine 
learning, privacy-preserving technologies, and/or multi-agent systems. 
Publications in leading international venues (such as AAAI, IJCAI, AAMAS, ICML, 
NeurIPS) will be an advantage.

** To Apply **

Applications should be submitted at ffior...@syr.edu<mailto:ffior...@syr.edu> 
and candidates should include their resume and transcript (if available).

_______________________________________________
hol-info mailing list
hol-info@lists.sourceforge.net
https://lists.sourceforge.net/lists/listinfo/hol-info

Reply via email to