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Articles tagged with "Neuromorphic, Accelerators, Optimization"

Comprehensive Performance  Bound and Bottleneck Analysis Of Neuromorphic Accelerators (Harvard, Politecnico di Torino, Intel et al.)

Comprehensive Performance Bound and Bottleneck Analysis Of Neuromorphic Accelerators (Harvard, Politecnico di Torino, Intel et al.)

Researchers from Harvard University, Politecnico di Torino, Intel, and other institutions published a technical paper titled “Modeling and Optimizing Performance Bottlenecks for Neuromorphic Accelerators.” The paper explores the unique architectural characteristics of neuromorphic accelerators for machine learning inference and presents a comprehensive performance analysis. By studying three real neuromorphic accelerators, the researchers identified memory-bound, compute-bound, and traffic-bound bottleneck states and proposed an optimization methodology for substantial performance improvements. The methodology combines sparsity-aware training with floorline-informed partitioning, resulting in significant runtime improvements and energy reductions compared to prior configurations.

SemiEngineering

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