Repo: pyro
Filename: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/projects/pyro/tests/infer/test_inference.py
ClassName: NormalNormalTests
Testname: test_mmd_nonvectorized
Params: param1,98,18,ParamType.ITER,1000
param2,163,33,ParamType.LR,0.001
Assertion: assert_equal(0.0, loc_error, prec=0.05)
Original runtime: 219.226
>>Getting original runtime
Optimization Iteration: 1
Running with params: {'param1': 1000, 'param2': 0.001}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_1000_0.001
Launching 30 jobs, 30 in parallel
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Timings: Avg: 215.03766666666667, Max: 218.83999999999997, Min: 212.93
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 215.03766666666667, Max: 218.83999999999997, Min: 212.93
Variance (2.644862289350147e-38) too small, using delta distribution
Variance (2.644862289350147e-38) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 215.03766666666667
Score: 215.03766666666667
Best-score: 215.03766666666667
Best-param: {'param1': 1000, 'param2': 0.001}
>>Setting original runtime to 215.03766666666667
Optimization Iteration: 1
Running with params: {'param1': 110, 'param2': 0.06938386937895938}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_110_0.06938386937895938
Launching 30 jobs, 30 in parallel
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Timings: Avg: 25.531666666666663, Max: 25.83, Min: 25.08
Passed tests : 0
Failed tests : 30
Half of samples failed, exiting...
All-Passed: False
Probabilty of failure: 1.0
Runtime: 10000.0
Score: 3.4028234663852886e+38
Best-score: 215.03766666666667
Best-param: {'param1': 1000, 'param2': 0.001}
Optimization Iteration: 2
Running with params: {'param1': 660, 'param2': 0.0001352857685145675}
Lower learning rate.. returning... Best: 0.001, Proposed: 0.0001352857685145675
Optimization Iteration: 3
Running with params: {'param1': 540, 'param2': 0.000524707031840902}
Lower learning rate.. returning... Best: 0.001, Proposed: 0.000524707031840902
Optimization Iteration: 4
Running with params: {'param1': 270, 'param2': 0.00495997004689311}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_270_0.00495997004689311
Launching 30 jobs, 30 in parallel
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Timings: Avg: 59.653333333333336, Max: 60.74, Min: 58.64
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 59.653333333333336, Max: 60.74, Min: 58.64
Variance (4.70197740328915e-38) too small, using delta distribution
Variance (1.1754943508222875e-38) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 59.653333333333336
Score: 59.653333333333336
Best-score: 59.653333333333336
Best-param: {'param1': 270, 'param2': 0.00495997004689311}
Optimization Iteration: 5
Running with params: {'param1': 850, 'param2': 0.0006019397687938819}
Higher iteration... returning...
Optimization Iteration: 6
Running with params: {'param1': 140, 'param2': 0.0005210077709892013}
Lower learning rate.. returning... Best: 0.00495997004689311, Proposed: 0.0005210077709892013
Optimization Iteration: 7
Running with params: {'param1': 390, 'param2': 0.07315654797948674}
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Optimization Iteration: 8
Running with params: {'param1': 330, 'param2': 0.027348407514738386}
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Optimization Iteration: 9
Running with params: {'param1': 160, 'param2': 0.0022624529450587932}
Lower learning rate.. returning... Best: 0.00495997004689311, Proposed: 0.0022624529450587932
Optimization Iteration: 10
Running with params: {'param1': 510, 'param2': 0.0005860479280937477}
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Running with params: {'param1': 780, 'param2': 0.010887656321665396}
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Optimization Iteration: 14
Running with params: {'param1': 180, 'param2': 0.00012254071766498744}
Lower learning rate.. returning... Best: 0.00495997004689311, Proposed: 0.00012254071766498744
Optimization Iteration: 15
Running with params: {'param1': 400, 'param2': 0.0115106011068381}
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Running with params: {'param1': 280, 'param2': 0.00138548683738675}
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Optimization Iteration: 17
Running with params: {'param1': 250, 'param2': 0.05752274758440262}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_250_0.05752274758440262
Launching 30 jobs, 30 in parallel
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Timings: Avg: 55.37533333333332, Max: 55.870000000000005, Min: 54.300000000000004
Passed tests : 0
Failed tests : 30
Half of samples failed, exiting...
All-Passed: False
Probabilty of failure: 1.0
Runtime: 10000.0
Score: 3.4028234663852886e+38
Best-score: 59.653333333333336
Best-param: {'param1': 270, 'param2': 0.00495997004689311}
Optimization Iteration: 18
Running with params: {'param1': 520, 'param2': 0.0019581365280810295}
Higher iteration... returning...
Optimization Iteration: 19
Running with params: {'param1': 130, 'param2': 0.000143535163839451}
Lower learning rate.. returning... Best: 0.00495997004689311, Proposed: 0.000143535163839451
Optimization Iteration: 20
Running with params: {'param1': 700, 'param2': 0.000177812883045454}
Higher iteration... returning...
Optimization Iteration: 21
Running with params: {'param1': 110, 'param2': 0.005368332636700152}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_110_0.005368332636700152
Launching 30 jobs, 30 in parallel
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Timings: Avg: 25.40466666666667, Max: 25.63, Min: 25.18
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 25.40466666666667, Max: 25.63, Min: 25.18
Variance (3.009265538105056e-36) too small, using delta distribution
Variance (0.0) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 25.40466666666667
Score: 25.40466666666667
Best-score: 25.40466666666667
Best-param: {'param1': 110, 'param2': 0.005368332636700152}
Optimization Iteration: 22
Running with params: {'param1': 210, 'param2': 0.0045214799394967965}
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Optimization Iteration: 23
Running with params: {'param1': 100, 'param2': 0.004517104611592937}
Lower learning rate.. returning... Best: 0.005368332636700152, Proposed: 0.004517104611592937
Optimization Iteration: 24
Running with params: {'param1': 220, 'param2': 0.022625638645906995}
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Optimization Iteration: 29
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Lower learning rate.. returning... Best: 0.005368332636700152, Proposed: 0.0011855739733218267
Optimization Iteration: 30
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Optimization Iteration: 33
Running with params: {'param1': 100, 'param2': 0.003205557703189542}
Lower learning rate.. returning... Best: 0.005368332636700152, Proposed: 0.003205557703189542
Optimization Iteration: 34
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Upto iteration 50: {'param1': 110.0, 'param2': 0.005368332636700152}
Optimization Iteration: 51
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Higher iteration... returning...
Optimization Iteration: 52
Running with params: {'param1': 110, 'param2': 0.0003976039396578408}
Lower learning rate.. returning... Best: 0.005368332636700152, Proposed: 0.0003976039396578408
Optimization Iteration: 53
Running with params: {'param1': 240, 'param2': 0.0037687793523404605}
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Optimization Iteration: 64
Running with params: {'param1': 100, 'param2': 0.002762180221549263}
Lower learning rate.. returning... Best: 0.005368332636700152, Proposed: 0.002762180221549263
Optimization Iteration: 65
Running with params: {'param1': 660, 'param2': 0.00403974815647848}
Higher iteration... returning...
Optimization Iteration: 66
Running with params: {'param1': 110, 'param2': 0.06001586721088249}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_110_0.06001586721088249
Launching 30 jobs, 30 in parallel
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Timings: Avg: 25.470666666666666, Max: 25.720000000000002, Min: 25.189999999999998
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 25.470666666666666, Max: 25.720000000000002, Min: 25.189999999999998
Variance (4.81482486096809e-35) too small, using delta distribution
Variance (1.2037062152420224e-35) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 25.470666666666666
Score: 25.470666666666666
Best-score: 25.40466666666667
Best-param: {'param1': 110, 'param2': 0.005368332636700152}
Optimization Iteration: 67
Running with params: {'param1': 120, 'param2': 0.029220473524059074}
Higher iteration... returning...
Optimization Iteration: 68
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Optimization Iteration: 69
Running with params: {'param1': 160, 'param2': 0.013545920559749864}
Higher iteration... returning...
Optimization Iteration: 70
Running with params: {'param1': 110, 'param2': 0.008971546483511643}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_110_0.008971546483511643
Launching 30 jobs, 30 in parallel
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Timings: Avg: 25.509666666666664, Max: 25.91, Min: 24.919999999999998
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 25.509666666666664, Max: 25.91, Min: 24.919999999999998
Variance (0.0) too small, using delta distribution
Variance (3.009265538105056e-36) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 25.509666666666664
Score: 25.509666666666664
Best-score: 25.40466666666667
Best-param: {'param1': 110, 'param2': 0.005368332636700152}
Optimization Iteration: 71
Running with params: {'param1': 110, 'param2': 0.0531132495929563}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_110_0.0531132495929563
Launching 30 jobs, 30 in parallel
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Timings: Avg: 25.47833333333333, Max: 25.740000000000002, Min: 24.82
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 25.47833333333333, Max: 25.740000000000002, Min: 24.82
Variance (1.2037062152420224e-35) too small, using delta distribution
Variance (3.009265538105056e-36) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 25.47833333333333
Score: 25.47833333333333
Best-score: 25.40466666666667
Best-param: {'param1': 110, 'param2': 0.005368332636700152}
Optimization Iteration: 72
Running with params: {'param1': 140, 'param2': 0.05544683622469306}
Higher iteration... returning...
Optimization Iteration: 73
Running with params: {'param1': 120, 'param2': 0.00010098562807951709}
Higher iteration... returning...
Optimization Iteration: 74
Running with params: {'param1': 100, 'param2': 0.04700729823838516}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.04700729823838516
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.331666666666667, Max: 23.71, Min: 22.79
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 23.331666666666667, Max: 23.71, Min: 22.79
Variance (4.81482486096809e-35) too small, using delta distribution
Variance (7.52316384526264e-37) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 23.331666666666667
Score: 23.331666666666667
Best-score: 23.331666666666667
Best-param: {'param1': 100, 'param2': 0.04700729823838516}
Optimization Iteration: 75
Running with params: {'param1': 100, 'param2': 0.0858417792923808}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.0858417792923808
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.56833333333333, Max: 23.830000000000002, Min: 23.119999999999997
Passed tests : 0
Failed tests : 30
Half of samples failed, exiting...
All-Passed: False
Probabilty of failure: 1.0
Runtime: 10000.0
Score: 3.4028234663852886e+38
Best-score: 23.331666666666667
Best-param: {'param1': 100, 'param2': 0.04700729823838516}
Optimization Iteration: 76
Running with params: {'param1': 140, 'param2': 0.041167416658163036}
Higher iteration... returning...
Optimization Iteration: 77
Running with params: {'param1': 100, 'param2': 0.02345609923077498}
Lower learning rate.. returning... Best: 0.04700729823838516, Proposed: 0.02345609923077498
Optimization Iteration: 78
Running with params: {'param1': 170, 'param2': 0.020415481313178017}
Higher iteration... returning...
Optimization Iteration: 79
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Optimization Iteration: 85
Running with params: {'param1': 100, 'param2': 0.08071294592567547}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.08071294592567547
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.26033333333334, Max: 23.52, Min: 22.84
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 23.26033333333334, Max: 23.52, Min: 22.84
Variance (1.925929944387236e-34) too small, using delta distribution
Variance (0.0) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 23.26033333333334
Score: 23.26033333333334
Best-score: 23.26033333333334
Best-param: {'param1': 100, 'param2': 0.08071294592567547}
Optimization Iteration: 86
Running with params: {'param1': 100, 'param2': 0.028916186023379736}
Lower learning rate.. returning... Best: 0.08071294592567547, Proposed: 0.028916186023379736
Optimization Iteration: 87
Running with params: {'param1': 150, 'param2': 0.018112063524402772}
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Optimization Iteration: 92
Running with params: {'param1': 100, 'param2': 0.0007071123416650092}
Lower learning rate.. returning... Best: 0.08071294592567547, Proposed: 0.0007071123416650092
Optimization Iteration: 93
Running with params: {'param1': 250, 'param2': 0.03632134308003835}
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Upto iteration 100: {'param1': 100.0, 'param2': 0.08071294592567547}
Optimization Iteration: 101
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Optimization Iteration: 106
Running with params: {'param1': 100, 'param2': 0.022346280101668826}
Lower learning rate.. returning... Best: 0.08071294592567547, Proposed: 0.022346280101668826
Optimization Iteration: 107
Running with params: {'param1': 150, 'param2': 0.0015404540343157648}
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Optimization Iteration: 112
Running with params: {'param1': 100, 'param2': 0.009477492730263293}
Lower learning rate.. returning... Best: 0.08071294592567547, Proposed: 0.009477492730263293
Optimization Iteration: 113
Running with params: {'param1': 120, 'param2': 0.004767259150687451}
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Optimization Iteration: 128
Running with params: {'param1': 100, 'param2': 0.07824415185417065}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.07824415185417065
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.351333333333336, Max: 23.729999999999997, Min: 23.020000000000003
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 23.351333333333336, Max: 23.729999999999997, Min: 23.020000000000003
Variance (4.333342374871281e-34) too small, using delta distribution
Variance (3.009265538105056e-36) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 23.351333333333336
Score: 23.351333333333336
Best-score: 23.26033333333334
Best-param: {'param1': 100, 'param2': 0.08071294592567547}
Optimization Iteration: 129
Running with params: {'param1': 100, 'param2': 0.07749811179142171}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.07749811179142171
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.276333333333334, Max: 23.63, Min: 22.97
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 23.276333333333334, Max: 23.63, Min: 22.97
Variance (0.0) too small, using delta distribution
Variance (3.009265538105056e-36) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 23.276333333333334
Score: 23.276333333333334
Best-score: 23.26033333333334
Best-param: {'param1': 100, 'param2': 0.08071294592567547}
Optimization Iteration: 130
Running with params: {'param1': 170, 'param2': 0.09556377642880884}
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Running with params: {'param1': 190, 'param2': 0.02858809694911235}
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Running with params: {'param1': 850, 'param2': 0.0521725506081517}
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Running with params: {'param1': 300, 'param2': 0.09880453871055456}
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Optimization Iteration: 140
Running with params: {'param1': 100, 'param2': 0.045580660671847135}
Lower learning rate.. returning... Best: 0.08071294592567547, Proposed: 0.045580660671847135
Optimization Iteration: 141
Running with params: {'param1': 160, 'param2': 0.021309157427277733}
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Running with params: {'param1': 120, 'param2': 0.06271553152995687}
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Optimization Iteration: 145
Running with params: {'param1': 900, 'param2': 0.011732047985130289}
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Optimization Iteration: 146
Running with params: {'param1': 100, 'param2': 0.07391771266858504}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.07391771266858504
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.364333333333335, Max: 23.66, Min: 23.14
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 23.364333333333335, Max: 23.66, Min: 23.14
Variance (4.333342374871281e-34) too small, using delta distribution
Variance (3.009265538105056e-36) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 23.364333333333335
Score: 23.364333333333335
Best-score: 23.26033333333334
Best-param: {'param1': 100, 'param2': 0.08071294592567547}
Optimization Iteration: 147
Running with params: {'param1': 100, 'param2': 0.08565077220864072}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.08565077220864072
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.58533333333333, Max: 23.87, Min: 23.189999999999998
Passed tests : 0
Failed tests : 30
Half of samples failed, exiting...
All-Passed: False
Probabilty of failure: 1.0
Runtime: 10000.0
Score: 3.4028234663852886e+38
Best-score: 23.26033333333334
Best-param: {'param1': 100, 'param2': 0.08071294592567547}
Optimization Iteration: 148
Running with params: {'param1': 100, 'param2': 0.0811904334347688}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pyro/wd/borntobeflaky/tool/logs/optim_1597896455_pyro/run_1597909737/assert_31681224_100_0.0811904334347688
Launching 30 jobs, 30 in parallel
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Timings: Avg: 23.400666666666666, Max: 23.79, Min: 22.93
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 23.400666666666666, Max: 23.79, Min: 22.93
Variance (1.925929944387236e-34) too small, using delta distribution
Variance (7.52316384526264e-37) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 23.400666666666666
Score: 23.400666666666666
Best-score: 23.26033333333334
Best-param: {'param1': 100, 'param2': 0.08071294592567547}
Optimization Iteration: 149
Running with params: {'param1': 130, 'param2': 0.09739465237022862}
Higher iteration... returning...
Optimization Iteration: 150
Running with params: {'param1': 110, 'param2': 0.03901581208593225}
Higher iteration... returning...
Upto iteration 150: {'param1': 100.0, 'param2': 0.08071294592567547}
Breaking...
{'param1': 100.0, 'param2': 0.08071294592567547}
Best score: 23.26033333333334
Repeated params: 0
Trials: 151
Best param {'param1': 100.0, 'param2': 0.08071294592567547}
Reduction: 89.18313535768152%
Speedup: 9.244823089379627x
Optimizer time: 659.0899124145508
