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feat: perf opt quant #14548
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feat: perf opt quant #14548
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add log commit qnn buffer after changed add log register_rpc_mem 2 times update input tensors before graph finalize default to QNN_TENSORMEMTYPE_RAW set new tensors at execute move write input tensors to exec check if mem registered before actual do register rpc mem once allocated
…th additional vector sums
…readability and maintainability
…tization functions
…exibility in vector multiplication
…y in variable usage
…e in vector operations
…oved performance and clarity
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Performance Optimization for Quantization Operations
Overview
This PR introduces significant performance optimizations for quantized neural network operations in the hexagon-npu device backend, focusing on improved memory management, vectorized operations, and enhanced data type support.
Key Changes
Performance Optimizations
Quantization Improvements
Performance Impact
Performance benchmarks comparing Hexagon NPU with CPU implementation across various operations show interesting patterns based on batch size and quantization method.
Matrix Multiplication Performance
Attention Mechanism Performance
Elementary Operations
Key Performance Insights
Quantization Impact:
Relative to CPU:
test-backend-ops-perf-all.release.hexagon.51c53ae8f.log
test-backend-ops-perf-all.release.cpu.989772c7b.log
Unit tests
8gen2-test-backend-ops-all.debug.hexagon.51c53ae8f