As computer clusters become more common and the size of the problems encountered in the field of AI grows, there is an increasing demand for efficient parallel inference algorithms. We consider the problem of parallel inference on large factor graphs in the distributed memory setting of computer clusters. We develop a new efficient parallel inference algorithm, DBRSplash, which incorporates over-segmented graph partitioning, belief residual scheduling, and uniform work Splash operations. We empirically evaluate the DBRSplash algorithm on a 120 processor cluster and demonstrate linear to super-linear performance gains on large factor graph models
With the physical constraints of semiconductor-based electronics becoming increasingly limiting in t...
To keep up with the Big Data challenge, parallelized algorithms based on dual de-composition have be...
The recent emergence of Graphics Processing Units (GPUs) as general-purpose parallel computing devic...
As computer clusters become more common and the size of the problems encountered in the field of AI ...
Abstract—Over the past few years we have witnessed an increasing popularity in the use of graphical ...
There has been significant recent interest in parallel graph processing due to the need to quickly a...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
Abstract With the increasing demand for examining and extracting patterns from massive amounts of da...
This paper presents a novel meta-algorithm, Partition-Merge (PM), which takes existing centralized a...
2014-04-07The recent switch to multi‐core computing and the emergence of machine learning applicatio...
<p>In real world industrial applications of topic modeling, the ability to capture gigantic conceptu...
Though Belief Propagation (BP) algorithms generate high quality results for a wide range of Markov R...
We study fundamental graph problems such as graph connectivity, minimum spanning forest (MSF), and a...
This paper presents a novel meta algorithm, Partition-Merge (PM), which takes existing central-ized ...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
With the physical constraints of semiconductor-based electronics becoming increasingly limiting in t...
To keep up with the Big Data challenge, parallelized algorithms based on dual de-composition have be...
The recent emergence of Graphics Processing Units (GPUs) as general-purpose parallel computing devic...
As computer clusters become more common and the size of the problems encountered in the field of AI ...
Abstract—Over the past few years we have witnessed an increasing popularity in the use of graphical ...
There has been significant recent interest in parallel graph processing due to the need to quickly a...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
Abstract With the increasing demand for examining and extracting patterns from massive amounts of da...
This paper presents a novel meta-algorithm, Partition-Merge (PM), which takes existing centralized a...
2014-04-07The recent switch to multi‐core computing and the emergence of machine learning applicatio...
<p>In real world industrial applications of topic modeling, the ability to capture gigantic conceptu...
Though Belief Propagation (BP) algorithms generate high quality results for a wide range of Markov R...
We study fundamental graph problems such as graph connectivity, minimum spanning forest (MSF), and a...
This paper presents a novel meta algorithm, Partition-Merge (PM), which takes existing central-ized ...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
With the physical constraints of semiconductor-based electronics becoming increasingly limiting in t...
To keep up with the Big Data challenge, parallelized algorithms based on dual de-composition have be...
The recent emergence of Graphics Processing Units (GPUs) as general-purpose parallel computing devic...