An APL-simulator of non-Von Neumann computer architectures

Author(s):  
Andreas Geyer-Schulz ◽  
Johann Mitlöhner ◽  
Alfred Taudes
Author(s):  
Brian Rosmaita

Von Neumann was one of the great mathematical minds of the twentieth century. His work has affected philosophy on several fronts, including logic and the philosophy of science. He also had great influence upon developments in the philosophy of mind: the computer model of mind employed during the middle-to-late twentieth century was explicitly based upon the von Neumann computer architecture. Although late twentieth-century philosophy of mind has largely rejected the von Neumann machine as a model of brain activity, his pioneering work in cellular automata has provided a basis for subsequent development in ‘distributed’ or ‘connectionist’ computer architectures.


1990 ◽  
Vol 20 (4) ◽  
pp. 140-148
Author(s):  
Andreas Geyer-Schulz ◽  
Johann Mitlöhner ◽  
Alfred Taudes

Author(s):  
Jose-Maria Carazo ◽  
I. Benavides ◽  
S. Marco ◽  
J.L. Carrascosa ◽  
E.L. Zapata

Obtaining the three-dimensional (3D) structure of negatively stained biological specimens at a resolution of, typically, 2 - 4 nm is becoming a relatively common practice in an increasing number of laboratories. A combination of new conceptual approaches, new software tools, and faster computers have made this situation possible. However, all these 3D reconstruction processes are quite computer intensive, and the middle term future is full of suggestions entailing an even greater need of computing power. Up to now all published 3D reconstructions in this field have been performed on conventional (sequential) computers, but it is a fact that new parallel computer architectures represent the potential of order-of-magnitude increases in computing power and should, therefore, be considered for their possible application in the most computing intensive tasks.We have studied both shared-memory-based computer architectures, like the BBN Butterfly, and local-memory-based architectures, mainly hypercubes implemented on transputers, where we have used the algorithmic mapping method proposed by Zapata el at. In this work we have developed the basic software tools needed to obtain a 3D reconstruction from non-crystalline specimens (“single particles”) using the so-called Random Conical Tilt Series Method. We start from a pair of images presenting the same field, first tilted (by ≃55°) and then untilted. It is then assumed that we can supply the system with the image of the particle we are looking for (ideally, a 2D average from a previous study) and with a matrix describing the geometrical relationships between the tilted and untilted fields (this step is now accomplished by interactively marking a few pairs of corresponding features in the two fields). From here on the 3D reconstruction process may be run automatically.


2019 ◽  
Author(s):  
Serban-Valentin Stratila ◽  
Laszlo Zsido

2004 ◽  
Vol 174 (12) ◽  
pp. 1371 ◽  
Author(s):  
Mikhail I. Monastyrskii
Keyword(s):  

Author(s):  
Sandip Tiwari

Information is physical, so its manipulation through devices is subject to its own mechanics: the science and engineering of behavioral description, which is intermingled with classical, quantum and statistical mechanics principles. This chapter is a unification of these principles and physical laws with their implications for nanoscale. Ideas of state machines, Church-Turing thesis and its embodiment in various state machines, probabilities, Bayesian principles and entropy in its various forms (Shannon, Boltzmann, von Neumann, algorithmic) with an eye on the principle of maximum entropy as an information manipulation tool. Notions of conservation and non-conservation are applied to example circuit forms folding in adiabatic, isothermal, reversible and irreversible processes. This brings out implications of fluctuation and transitions, the interplay of errors and stability and the energy cost of determinism. It concludes discussing networks as tools to understand information flow and decision making and with an introduction to entanglement in quantum computing.


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