cuGenOpt/benchmark/experiments/e12_extreme_scale/test_e12.cu

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#include "solver.cuh"
#include "multi_gpu_solver.cuh"
#include "extreme_tsp.cuh"
#include "extreme_vrp.cuh"
#include <cstdio>
#include <vector>
void generate_random_tsp(float* dist, int n, unsigned seed) {
srand(seed);
for (int i = 0; i < n; i++) {
dist[i * n + i] = 0.0f;
for (int j = i + 1; j < n; j++) {
float d = 10.0f + (rand() % 10000) / 10.0f;
dist[i * n + j] = d;
dist[j * n + i] = d;
}
}
}
void generate_random_vrp(float* dist, float* demand, int n, unsigned seed) {
srand(seed);
int stride = n + 1;
for (int i = 0; i < stride; i++) {
dist[i * stride + i] = 0.0f;
for (int j = i + 1; j < stride; j++) {
float d = 10.0f + (rand() % 10000) / 10.0f;
dist[i * stride + j] = d;
dist[j * stride + i] = d;
}
}
for (int i = 0; i < n; i++) {
demand[i] = 5.0f + (rand() % 20);
}
}
int main() {
printf("==============================================\n");
printf("E12: 极大规模多 GPU 实验\n");
printf("==============================================\n\n");
int num_gpus;
cudaGetDeviceCount(&num_gpus);
printf("检测到 %d 个 GPU\n\n", num_gpus);
const int num_runs = 3;
// ========== TSP n=2000 ==========
printf("[TSP n=2000]\n");
printf(" 工作集: 2000×2000×4 = 16 MB\n");
printf(" 预估种群: ~16 (L2=6MB)\n\n");
int n_tsp = 2000;
float* h_dist_tsp = new float[n_tsp * n_tsp];
printf(" 生成数据...\n");
generate_random_tsp(h_dist_tsp, n_tsp, 12345);
printf(" 创建 Problem...\n");
auto prob_tsp = ExtremeTSPProblem::create(h_dist_tsp, n_tsp);
SolverConfig cfg;
cfg.pop_size = 0;
cfg.max_gen = 5000;
cfg.verbose = false;
cfg.num_islands = 16;
cfg.use_aos = true;
cfg.sa_temp_init = 50.0f;
cfg.use_cuda_graph = true;
// 单GPU
printf(" 单GPU: ");
std::vector<float> single_results;
for (int run = 0; run < num_runs; run++) {
cfg.seed = 42 + run * 100;
auto result = solve(prob_tsp, cfg);
single_results.push_back(result.best_solution.objectives[0]);
printf("%.1f ", result.best_solution.objectives[0]);
}
float avg_single = 0;
for (float v : single_results) avg_single += v;
avg_single /= num_runs;
printf("→ %.2f\n", avg_single);
// 多GPU
if (num_gpus >= 2) {
printf(" %dGPU: ", num_gpus);
std::vector<float> multi_results;
cfg.num_gpus = num_gpus;
for (int run = 0; run < num_runs; run++) {
cfg.seed = 42 + run * 100;
auto result = solve_multi_gpu(prob_tsp, cfg);
multi_results.push_back(result.best_solution.objectives[0]);
printf("%.1f ", result.best_solution.objectives[0]);
}
float avg_multi = 0;
for (float v : multi_results) avg_multi += v;
avg_multi /= num_runs;
float improvement = (avg_single - avg_multi) / avg_single * 100;
printf("→ %.2f (%.2f%%)\n", avg_multi, improvement);
}
prob_tsp.destroy();
delete[] h_dist_tsp;
printf("\n");
// ========== VRP n=1000, 160 vehicles ==========
printf("[VRP n=1000, vehicles=160]\n");
printf(" 配置: D1=160, D2=128, Solution=80KB\n");
printf(" 需求: 5-24 (平均14.5), 容量: 100\n");
printf(" 理论需要车辆: 146, 实际: 160 (留14辆余量)\n");
printf(" 工作集: 1001×1001×4 = 4 MB\n\n");
int n_vrp = 1000;
int num_veh = 160;
float* h_dist_vrp = new float[(n_vrp+1) * (n_vrp+1)];
float* h_demand_vrp = new float[n_vrp];
printf(" 生成数据...\n");
generate_random_vrp(h_dist_vrp, h_demand_vrp, n_vrp, 12345);
printf(" 创建 Problem...\n");
auto prob_vrp = ExtremeVRPProblem::create(h_dist_vrp, h_demand_vrp, n_vrp, 100.0f, num_veh, num_veh);
cfg.max_gen = 5000;
// 单GPU
printf(" 单GPU: ");
single_results.clear();
for (int run = 0; run < num_runs; run++) {
cfg.seed = 42 + run * 100;
auto result = solve(prob_vrp, cfg);
single_results.push_back(result.best_solution.objectives[0]);
printf("%.1f ", result.best_solution.objectives[0]);
}
avg_single = 0;
for (float v : single_results) avg_single += v;
avg_single /= num_runs;
printf("→ %.2f\n", avg_single);
// 多GPU
if (num_gpus >= 2) {
printf(" %dGPU: ", num_gpus);
std::vector<float> multi_results;
cfg.num_gpus = num_gpus;
for (int run = 0; run < num_runs; run++) {
cfg.seed = 42 + run * 100;
auto result = solve_multi_gpu(prob_vrp, cfg);
multi_results.push_back(result.best_solution.objectives[0]);
printf("%.1f ", result.best_solution.objectives[0]);
}
float avg_multi = 0;
for (float v : multi_results) avg_multi += v;
avg_multi /= num_runs;
float improvement = (avg_single - avg_multi) / avg_single * 100;
printf("→ %.2f (%.2f%%)\n", avg_multi, improvement);
}
prob_vrp.destroy();
delete[] h_dist_vrp;
delete[] h_demand_vrp;
printf("\n==============================================\n");
printf("E12 极大规模实验完成\n");
printf("==============================================\n");
return 0;
}