AIS 2015 - International Workshop on Artificial Immune Systems
Topics/Call fo Papers
The biological immune system is a highly parallel and distributed adaptive system composed of a diverse range of innate and adaptive immune agents dedicated to protect organisms from infection.
The immune agents form a complex and dynamic network, which using learning, memory, and associative retrieval are able to perform distributed cognitive tasks, as well as solve recognition and classification tasks. They learn to recognize relevant patterns, remember patterns that have been seen previously, and use combinatorics to construct pattern detectors efficiently. These remarkable information-processing abilities of the natural immune system provide important aspects in the field of computation.
Artificial Immune Systems represent a maturing area of research that bridges the disciplines of immunology, biology, medical science, computer science, physics, mathematics and engineering. The scope of AIS ranges from modelling and simulation of the immune system through to immune-inspired algorithms in silico, in vitro and in vivo solutions. In recent years, algorithms inspired by theoretical immunology have been applied to a wide variety of domains, and the theoretical insight into aspects of artificial and real immune systems have been sought through mathematical and computational modelling, and analysis.
In recent years, algorithms inspired by theoretical immunology have been applied to a wide variety of domains, including computer security, fault tolerance, data-mining and optimisation. Increasingly, theoretical insight into aspects of artificial and real immune systems has been sought through mathematical and computational modelling and analysis.
The workshop is organized under the patronage of the IEEE CIS Task Force on Artificial Immune Systems.
The workshop is co-sponsored by IEEE Computational Intelligence Society.
Please, contact us at ais2015-AT-ieee-cis-ais.org
The immune agents form a complex and dynamic network, which using learning, memory, and associative retrieval are able to perform distributed cognitive tasks, as well as solve recognition and classification tasks. They learn to recognize relevant patterns, remember patterns that have been seen previously, and use combinatorics to construct pattern detectors efficiently. These remarkable information-processing abilities of the natural immune system provide important aspects in the field of computation.
Artificial Immune Systems represent a maturing area of research that bridges the disciplines of immunology, biology, medical science, computer science, physics, mathematics and engineering. The scope of AIS ranges from modelling and simulation of the immune system through to immune-inspired algorithms in silico, in vitro and in vivo solutions. In recent years, algorithms inspired by theoretical immunology have been applied to a wide variety of domains, and the theoretical insight into aspects of artificial and real immune systems have been sought through mathematical and computational modelling, and analysis.
In recent years, algorithms inspired by theoretical immunology have been applied to a wide variety of domains, including computer security, fault tolerance, data-mining and optimisation. Increasingly, theoretical insight into aspects of artificial and real immune systems has been sought through mathematical and computational modelling and analysis.
The workshop is organized under the patronage of the IEEE CIS Task Force on Artificial Immune Systems.
The workshop is co-sponsored by IEEE Computational Intelligence Society.
Please, contact us at ais2015-AT-ieee-cis-ais.org
Other CFPs
- Video Analytics for Audience Measurement Workshop
- Fourth International Conference on Green IT Solutions
- 3rd International Workshop on Risk Assessment and Risk-Driven Testing
- 6th International Conference on Emerging Ubiquitous Systems and Pervasive Networks (EUSPN)
- 5th International Conference on Current and Future Trends of Information and Communication Technologies in Healthcare
Last modified: 2015-01-17 13:50:28