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b3e585988f
* vulkan: Optimize soft_max Large soft_max could already saturate memory, but small/medium sizes were pretty slow. The bulk of the gains for them comes from using a smaller workgroup size, and making the workgroup size match the subgroup size also makes the barriers much cheaper. Cache some values in locals to avoid refetching/recomputing. And stamp out a few "template instantiations" so smaller cases will fully unroll. Add a missing early return for OOB rows. This happens when there are more than 512 rows and the dispatch is 512 x H. * vulkan: Further soft_max optimizations Restore the workgroup size of 512 case, use it for >1024. Use unrollable loops for more iteration counts. |
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.. | ||
.gitignore | ||
CMakeLists.txt | ||
get-model.cpp | ||
get-model.h | ||
run-json-schema-to-grammar.mjs | ||
test-arg-parser.cpp | ||
test-autorelease.cpp | ||
test-backend-ops.cpp | ||
test-barrier.cpp | ||
test-c.c | ||
test-chat-template.cpp | ||
test-double-float.cpp | ||
test-grammar-integration.cpp | ||
test-grammar-parser.cpp | ||
test-json-schema-to-grammar.cpp | ||
test-llama-grammar.cpp | ||
test-log.cpp | ||
test-lora-conversion-inference.sh | ||
test-model-load-cancel.cpp | ||
test-opt.cpp | ||
test-quantize-fns.cpp | ||
test-quantize-perf.cpp | ||
test-rope.cpp | ||
test-sampling.cpp | ||
test-tokenizer-0.cpp | ||
test-tokenizer-0.py | ||
test-tokenizer-0.sh | ||
test-tokenizer-1-bpe.cpp | ||
test-tokenizer-1-spm.cpp | ||
test-tokenizer-random.py |