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GLVLSI
2005
IEEE

Causal probabilistic input dependency learning for switching model in VLSI circuits

13 years 10 months ago
Causal probabilistic input dependency learning for switching model in VLSI circuits
Switching model captures the data-driven uncertainty in logic circuits in a comprehensive probabilistic framework. Switching is a critical factor that influences dynamic, active leakage power, coupling noises in CMOS implementations. In this work, we model the input-space by a causal graphical probabilistic model that encapsulates the dependencies in inputs in a compact, minimal fashion and also allows for instantiations of the vector-space that closely match the underlying dependencies, with the constraint that the reduced vector-space captures the dependencies in the larger dataset accurately. Results on ISCAS benchmark show that average error is
Nirmal Ramalingam, Sanjukta Bhanja
Added 24 Jun 2010
Updated 24 Jun 2010
Type Conference
Year 2005
Where GLVLSI
Authors Nirmal Ramalingam, Sanjukta Bhanja
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