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[2020-07-30 11:09:05.728726] WARNING: 超参搜索: 您最多可同时运行{}个分布式AI任务,升级会员/开通资源扩展包以获取更多的AI任务位 [url="https://bigquant.com/account/big_member/?from=lab1" style="display: inline-block;padding: 5px 7px;border-radius: 2px;background: #F0BC41;color: white"]升级会员/开通资源拓展包[/url]
[2020-07-30 11:13:07.952837] INFO: moduleinvoker: hyper_parameter_search.v1 运行完成[242.320995s].
Fitting 1 folds for each of 6 candidates, totalling 6 fits
[Parallel(n_jobs=1)]: Using backend SequentialBackend with 1 concurrent workers.
[CV] m4.number_of_trees=5, m3.features=close_1/close_0 ...............
[CV] m4.number_of_trees=5, m3.features=close_1/close_0, score=3.51824975179618, total= 10.2s
[Parallel(n_jobs=1)]: Done 1 out of 1 | elapsed: 10.2s remaining: 0.0s
[CV] m4.number_of_trees=10, m3.features=close_1/close_0 ..............
[CV] m4.number_of_trees=10, m3.features=close_1/close_0, score=4.905053104724997, total= 10.2s
[Parallel(n_jobs=1)]: Done 2 out of 2 | elapsed: 20.4s remaining: 0.0s
[CV] m4.number_of_trees=20, m3.features=close_1/close_0 ..............
[CV] m4.number_of_trees=20, m3.features=close_1/close_0, score=4.114922041218708, total= 15.2s
[Parallel(n_jobs=1)]: Done 3 out of 3 | elapsed: 35.8s remaining: 0.0s
[CV] m4.number_of_trees=5, m3.features=close_2/close_0
close_3/close_0
[CV] m4.number_of_trees=5, m3.features=close_2/close_0
close_3/close_0, score=7.17286456765274, total= 35.3s
[Parallel(n_jobs=1)]: Done 4 out of 4 | elapsed: 1.2min remaining: 0.0s
[CV] m4.number_of_trees=10, m3.features=close_2/close_0
close_3/close_0
[CV] m4.number_of_trees=10, m3.features=close_2/close_0
close_3/close_0, score=4.231691013061107, total= 2.1min
[Parallel(n_jobs=1)]: Done 5 out of 5 | elapsed: 3.3min remaining: 0.0s
[CV] m4.number_of_trees=20, m3.features=close_2/close_0
close_3/close_0
[CV] m4.number_of_trees=20, m3.features=close_2/close_0
close_3/close_0, score=4.570980568342255, total= 30.3s
[Parallel(n_jobs=1)]: Done 6 out of 6 | elapsed: 3.8min remaining: 0.0s
[Parallel(n_jobs=1)]: Done 6 out of 6 | elapsed: 3.8min finished