linkedin/QuantEase
QuantEase, a layer-wise quantization framework, frames the problem as discrete-structured non-convex optimization. Our work leverages Coordinate Descent techniques, offering high-quality solutions without the need for matrix inversion or decomposition.
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Language
Python
License
BSD-2-Clause
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Last pushed
Feb 22, 2024
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