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[2022-05-10 08:26:42.832205] INFO: AI: 开始并行运算, remote_run=True, workers=4 ..
[2022-05-10 08:26:42.861355] INFO: AI: [ParallelEx(n_jobs=4)]: Using backend LokyBackend with 4 concurrent workers.
[2022-05-10 08:27:18.616396] INFO: AI: [ParallelEx(n_jobs=4)]: Done 1 tasks | elapsed: 35.8s
[2022-05-10 08:27:19.620086] INFO: AI: [ParallelEx(n_jobs=4)]: Done 2 out of 4 | elapsed: 36.8s remaining: 36.8s
[2022-05-10 08:27:20.037167] INFO: AI: [ParallelEx(n_jobs=4)]: Done 4 out of 4 | elapsed: 37.2s remaining: 0.0s
[2022-05-10 08:27:20.038135] INFO: AI: [ParallelEx(n_jobs=4)]: Done 4 out of 4 | elapsed: 37.2s finished
[2022-05-10 08:27:20.041365] INFO: moduleinvoker: hyper_run.v1 运行完成[37.210117s].