Repo: pymc3
Filename: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pymc3/wd/borntobeflaky/projects/pymc3/pymc3/tests/test_mixture.py
ClassName: TestMixture
Testname: test_mixture_list_of_normals
Params: param1,78,27,ParamType.ITER,5000
Assertion: assert_allclose(np.sort(trace['w'].mean(axis=0)),np.sort(self.norm_w),rtol=0.1, atol=0.1)
Original runtime: 15.546999999999999
>>Getting original runtime
Optimization Iteration: 1
Running with params: {'param1': 5000}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pymc3/wd/borntobeflaky/tool/logs/optim_1597896693_pymc3/run_1597896693/assert_89608718_5000
Launching 30 jobs, 30 in parallel
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Timings: Avg: 15.404, Max: 17.91, Min: 14.370000000000001
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 15.404, Max: 17.91, Min: 14.370000000000001
Variance (7.703719777548943e-34) too small, using delta distribution
Variance (1.7333369499485123e-33) too small, using delta distribution
Variance (1.7333369499485123e-33) too small, using delta distribution
Variance (1.925929944387236e-34) too small, using delta distribution
Probability of fail : 0.0
All-Passed: True
Probabilty of failure: 0.0
Runtime: 15.404
Score: 15.404
Best-score: 15.404
Best-param: {'param1': 5000}
>>Setting original runtime to 15.404
Optimization Iteration: 1
Running with params: {'param1': 1300}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pymc3/wd/borntobeflaky/tool/logs/optim_1597896693_pymc3/run_1597896693/assert_89608718_1300
Launching 30 jobs, 30 in parallel
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Timings: Avg: 11.494333333333335, Max: 11.67, Min: 11.21
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 11.494333333333335, Max: 11.67, Min: 11.21
Variance (1.925929944387236e-34) too small, using delta distribution
Variance (1.7333369499485123e-33) too small, using delta distribution
Variance (7.703719777548943e-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: 11.494333333333335
Score: 11.494333333333335
Best-score: 11.494333333333335
Best-param: {'param1': 1300}
Optimization Iteration: 2
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Optimization Iteration: 11
Running with params: {'param1': 1200}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pymc3/wd/borntobeflaky/tool/logs/optim_1597896693_pymc3/run_1597896693/assert_89608718_1200
Launching 30 jobs, 30 in parallel
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Timings: Avg: 11.512666666666666, Max: 12.1, Min: 11.209999999999999
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 11.512666666666666, Max: 12.1, Min: 11.209999999999999
Variance (0.0) too small, using delta distribution
Variance (1.7333369499485123e-33) too small, using delta distribution
Variance (1.7333369499485123e-33) 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: 11.512666666666666
Score: 11.512666666666666
Best-score: 11.494333333333335
Best-param: {'param1': 1300}
Optimization Iteration: 12
Running with params: {'param1': 2900}
Higher iteration... returning...
Optimization Iteration: 13
Running with params: {'param1': 1100}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pymc3/wd/borntobeflaky/tool/logs/optim_1597896693_pymc3/run_1597896693/assert_89608718_1100
Launching 30 jobs, 30 in parallel
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Timings: Avg: 11.655333333333333, Max: 12.280000000000001, Min: 11.370000000000001
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 11.655333333333333, Max: 12.280000000000001, Min: 11.370000000000001
Variance (1.925929944387236e-34) too small, using delta distribution
Variance (0.0) too small, using delta distribution
Variance (1.7333369499485123e-33) 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: 11.655333333333333
Score: 11.655333333333333
Best-score: 11.494333333333335
Best-param: {'param1': 1300}
Optimization Iteration: 14
Running with params: {'param1': 2000}
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Running with params: {'param1': 1000}
Logdir: /mnt/batch/tasks/workitems/optwseed/job-1/Task_pymc3/wd/borntobeflaky/tool/logs/optim_1597896693_pymc3/run_1597896693/assert_89608718_1000
Launching 30 jobs, 30 in parallel
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Timings: Avg: 11.806666666666667, Max: 12.03, Min: 11.59
Passed tests : 30
Failed tests : 0
Converged: True
Convergence score: 0.0
updating...
updating...
Evaluating 30 values out of 30
Overall-timings: Avg: 11.806666666666667, Max: 12.03, Min: 11.59
Variance (7.703719777548943e-34) too small, using delta distribution
Variance (1.7333369499485123e-33) too small, using delta distribution
Variance (7.703719777548943e-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: 11.806666666666667
Score: 11.806666666666667
Best-score: 11.494333333333335
Best-param: {'param1': 1300}
Optimization Iteration: 17
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Breaking...
{'param1': 1300.0}
Best score: 11.494333333333335
Repeated params: 32
Trials: 101
Best param {'param1': 1300.0}
Reduction: 25.380853457976272%
Speedup: 1.3401386190296665x
Optimizer time: 1199.2933340072632
