


Why std::vector Iteration Surpasses std::array Iteration
Original Conclusion Misconception
Initially, a flawed benchmark suggested that std::array iteration was faster than std::vector iteration. However, upon correcting the benchmark, it emerged that std::vector was significantly faster.
Benchmark Implementation
To ensure accuracy, the benchmark employed several improvements:
- Result utilization to prevent loop optimization
- -O3 optimization flag for enhanced speed
- std::chrono for isolated loop measurement without static variables interference
Results and Explanation
The benchmark results revealed that std::vector iteration completed in approximately 30 milliseconds, while std::array iteration took about 99 milliseconds.
The disparity stems from the memory page behavior. In the benchmark, the std::array was in the .bss section of the executable (with zero initialization), so its memory pages were not loaded into the process address space. Conversely, the std::vector had been allocated and zero-filled, resulting in page presence.
Solution
Pre-faulting the std::array's pages by zero-filling or using mlock() on Linux brings its pages into the address space, equating its iteration speed with that of std::vector.
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