Since their popularity began to rise in the mid-2000s there has been significant growth in the number of multi-core and multi-processor computers available. Knowledge representation systems using logical inference have been slow to embrace this new technology. We present the concept of inference graphs, a natural deduction inference system which scales well on multi-core and multi-processor machines. Inference graphs enhance propositional graphs by treating propositional nodes as tasks which can be scheduled to operate upon messages sent between nodes via the arcs that already exist as part of the propositional graph representation. The use of scheduling heuristics within a prioritized message passing architecture allows inference graphs to...
Commonsense reasoning at scale is a core problem for cognitive systems. In this paper, we discuss t...
The execution of multi-inference tasks on low-powered edge devices has become increasingly popular i...
Probabilistic inference in belief networks is a promising technique for diagnosis, forecasting and d...
Since their popularity began to rise in the mid-2000s there has been significant growth in the numbe...
Since their popularity began to rise in the mid-2000s there has been significant growth in the numbe...
There are very few reasoners which combine natural deduction and subsumption reasoning, and there ar...
Recently researchers have suggested several computational models in which, one programs by specifyin...
Hybrid reasoners combine multiple types of reasoning, usually subsumption and Prolog-style resolutio...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
As computer clusters become more common and the size of the problems encountered in the field of AI ...
2014-04-07The recent switch to multi‐core computing and the emergence of machine learning applicatio...
A class of binary relation inference network has been recently proposed for applications in graph (o...
The inference capabilities of humans suggest that they might be using algorithms with high degrees o...
Hybrid reasoners combine multiple types of reasoning, usu-ally subsumption and Prolog-style resoluti...
Commonsense reasoning at scale is a core problem for cognitive systems. In this paper, we discuss t...
The execution of multi-inference tasks on low-powered edge devices has become increasingly popular i...
Probabilistic inference in belief networks is a promising technique for diagnosis, forecasting and d...
Since their popularity began to rise in the mid-2000s there has been significant growth in the numbe...
Since their popularity began to rise in the mid-2000s there has been significant growth in the numbe...
There are very few reasoners which combine natural deduction and subsumption reasoning, and there ar...
Recently researchers have suggested several computational models in which, one programs by specifyin...
Hybrid reasoners combine multiple types of reasoning, usually subsumption and Prolog-style resolutio...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
As computer clusters become more common and the size of the problems encountered in the field of AI ...
2014-04-07The recent switch to multi‐core computing and the emergence of machine learning applicatio...
A class of binary relation inference network has been recently proposed for applications in graph (o...
The inference capabilities of humans suggest that they might be using algorithms with high degrees o...
Hybrid reasoners combine multiple types of reasoning, usu-ally subsumption and Prolog-style resoluti...
Commonsense reasoning at scale is a core problem for cognitive systems. In this paper, we discuss t...
The execution of multi-inference tasks on low-powered edge devices has become increasingly popular i...
Probabilistic inference in belief networks is a promising technique for diagnosis, forecasting and d...