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Abstract
Solving optimization problems is a highly demanding workload requiring high-performance computing systems. Optimization solvers are usually difficult to parallelize in conventional digital architectures, particularly when stochastic decisions are involved. Recently, analog computing architectures for accelerating stochastic optimization solvers have been presented, but they were limited to academic problems in quadratic polynomial format. Here we present KLIMA, a k − Local In-Memory Accelerator with resistive Content Addressable Memories (CAMs) and Dot-Product Engines (DPEs) to accelerate the solution of high-order industry-relevant optimization problems, in particular Boolean Satisfiability. By co-designing the optimization heuristics and circuit architecture we improve the speed and energy to the solution up to 182 × compared to the digital state of the art.
Details
1 Hewlett Packard Labs, Artificial Intelligence Research Lab (AIRL), Milpitas, USA (GRID:grid.418547.b) (ISNI:0000 0004 0647 9083)
2 Hewlett Packard Labs, Large Scale Integrated Photonics (LSIP), Brussels, Belgium (GRID:grid.418547.b)
3 (UCSB), University of California Santa Barbara, Santa Barbara, USA (GRID:grid.133342.4) (ISNI:0000 0004 1936 9676); Hewlett Packard Labs, Large Scale Integrated Photonics (LSIP), Milpitas, USA (GRID:grid.418547.b) (ISNI:0000 0004 0647 9083)
4 Forschungszentrum Juelich GmbH, Institute for Neuromorphic Compute Nodes (PGI-14), Peter Grunberg Institute, Juelich, Germany (GRID:grid.8385.6) (ISNI:0000 0001 2297 375X)
5 1QB Information Technologies (1QBit), Vancouver, Canada (GRID:grid.8385.6)
6 (UCSB), University of California Santa Barbara, Santa Barbara, USA (GRID:grid.133342.4) (ISNI:0000 0004 1936 9676)
7 1QB Information Technologies (1QBit), Vancouver, Canada (GRID:grid.418547.b)
8 Hewlett Packard Labs, Large Scale Integrated Photonics (LSIP), Milpitas, USA (GRID:grid.418547.b) (ISNI:0000 0004 0647 9083)