⚡️ Speed up method AlexNet.forward by 279%
#405
Closed
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📄 279% (2.79x) speedup for
AlexNet.forwardincode_to_optimize/code_directories/simple_tracer_e2e/workload.py⏱️ Runtime :
26.7 microseconds→7.03 microseconds(best of442runs)📝 Explanation and details
Here’s an optimized version of your code.
Rationale:
_extract_features(x)always returns an empty list, and_classify(features)on an empty list is also fast.forward, if features is always[], skip the call to_classifyand immediately return[](saves an unnecessary function call and creation of temporary variables).Here’s the optimized code.
Key Points:
If you ever implement meaningful feature extraction, you can still re-enable the existing logic. For now, this is as fast as possible.
✅ Correctness verification report:
🌀 Generated Regression Tests and Runtime
To edit these changes
git checkout codeflash/optimize-AlexNet.forward-mccv46k1and push.