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Avida
Avida is an artificial life software platform to study the evolutionary biology of self-replicating and evolving computer programs (digital organisms…
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Artificial chemistry
Artificial life
C++
Central processing unit
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Papers overview
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2013
2013
Exploring the Point-mutation Space of a von Neumann Self-reproducer within the Avida World
Tomonori Hasegawa
,
B. McMullin
European Conference on Artificial Life
2013
Corpus ID: 17907352
The architecture of machine self-reproduction originally formulated by John von Neumann is studied within the artificial life…
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2009
2009
Evolving cooperative pheromone usage in digital organisms
B. Connelly
,
P. McKinley
,
Benjamin E. Beckmann
IEEE Symposium on Artificial Life
2009
Corpus ID: 8848570
The use of chemicals to communicate among organisms has enabled countless species, from microorganisms, to colonies of insects…
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2009
2009
Applying digital evolution to the design of self-adaptive software
Benjamin E. Beckmann
,
L. Grabowski
,
P. McKinley
,
Charles Ofria
IEEE Symposium on Artificial Life
2009
Corpus ID: 16910363
As software developers, we strive to create computational systems that are as robust and versatile as biological organisms have…
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2008
2008
Evolution of Adaptive Population Control in Multi-agent Systems
Benjamin E. Beckmann
,
P. McKinley
Second IEEE International Conference on Self…
2008
Corpus ID: 10924162
Dynamic population management is an important aspect of multi-agent systems. In artificial immune systems, for example, a…
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2007
2007
Applying Digital Evolution to the Development of Self-Adaptive ULS Systems
P. McKinley
,
Betty H. C. Cheng
,
Charles Ofria
International Workshop on Software Technologies…
2007
Corpus ID: 2321260
A key characteristic for ultra-large scale (ULS) software- intensive systems is the need to adapt at run time in response to…
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2007
2007
Evolution of Cooperative Information Gathering in Self-Replicating Digital Organisms
Benjamin E. Beckmann
,
P. McKinley
,
David B. Knoester
,
Charles Ofria
IEEE International Conference on Self-Adaptive…
2007
Corpus ID: 5291335
We describe a study in the application of digital evolution to the problem of cooperative information gathering. In digital…
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1998
1998
Aspetti interpretativi della crisi del rapporto con la realtà nel romanzo di Alberto Moravia, La noia, e nei film di Michelangelo Antonioni, L’Avventura, La Notte, L’Eclisse
Giorgio Alessandro Jacova
1998
Corpus ID: 190855595
In this work my objective is to examine selected aspects of the theme of the "crisis of the relationship with reality" in Alberto…
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1997
1997
Studying Evolution with Self-Replicating Computer Programs
T. Taylor
,
John Hallam
1997
Corpus ID: 12909788
A critical discussion is presented on the use of self-replicating program systems as tools for the formulation of generalised…
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1996
1996
Evolution of Leader Election in Populations of Self-Replicating Digital Organisms
David B. Knoester
,
P. McKinley
,
Benjamin E. Beckmann
,
Charles Ofria
1996
Corpus ID: 18162310
The complexity of distributed computing systems and their increasing interaction with the physical world impose challenging…
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Review
1963
Review
1963
Arkansas Academy of Science Proceedings, Vol. iy, 1963 COMPARISON OF SPIDER POPULATIONS OF GROUND STRATUM IN ARKANSAS PASTURE AND ADJACENT CULTIVATED FIELD ••»
W. H. Whitcomb
,
H. Exline
,
M. Hite
1963
Corpus ID: 55659619
Of 64 species of spiders taken from the ground stratum of an Arkansas pasture and adjoining cotton field, only 26 were common to…
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