IEEE International Symposium on Reliable Distributed Systems (SRDS)
InfoSec Conference Summary
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The 38th International Symposium on Reliable Distributed Systems (SRDS) is a forum for practitioners and researchers interested in distributed systems design, development, and evaluation, with emphasis on reliability, availability, dependability, security, safety, and real-time. The event welcome Research Papers describing original research as well as design, development and experimental results of operational systems, Practical Experience Reports describing ongoing industrial projects, Tool Papers describing the architecture, prototype systems, and exploratory or emerging applications, implementation, and usage of substantive tools to aid the research and practice of reliable distributed systems. Papers will be assessed with criteria appropriate to each category.
Topics of Interest
The major areas of interest include the following topics:
- Dependability, security, and privacy of distributed systems including, but not limited to, cloud, high-performance, fog, and edge computing; distributed data storage and processing; distributed machine learning and AI; safety-critical distributed systems; Internet of Things, vehicular, robotic, cyber-physical and mobile systems.
- Techniques and algorithms advancing the state-of-the-art in fault tolerance, fault recovery, robustness, self-stabilization, self-healing, scalability, and real-time for distributed systems. These include, but are not limited to, coordination, replication, failure prediction and detection, microservices, transactions, and blockchains.
- Methods and tools for the design, implementation, verification, validation, and operation of dependable and secure distributed applications, middleware, operating systems and hardware.
- Analytical, simulative and experimental assessment of dependable and secure distributed systems, in particular, when in real settings or with real data and in large scale and complex environments.