2024-12-23_00:10:11 [INFO] : __main__ : Starting main() 2024-12-23_00:10:11 [INFO] : analysis.StatisticsDatabase.mpas : Control Experiment: 2024-12-16 2024-12-23_00:10:11 [INFO] : analysis.StatisticsDatabase.mpas : ('Non-control Experiment(s): ', ['2024-12-22']) 2024-12-23_00:10:11 [INFO] : __main__ :  2024-12-23_00:10:11 [INFO] : __main__ : Analyzing StatsDB for mpas 2024-12-23_00:10:11 [INFO] : analysis.StatisticsDatabase.mpas : ===================================================== 2024-12-23_00:10:11 [INFO] : analysis.StatisticsDatabase.mpas : Construct pandas dataframe from static database files 2024-12-23_00:10:11 [INFO] : analysis.StatisticsDatabase.mpas : ===================================================== 2024-12-23_00:10:11 [INFO] : analysis.StatisticsDatabase.mpas : Reading intermediate statistics files 2024-12-23_00:10:11 [INFO] : analysis.StatisticsDatabase.mpas : with 128 out of 256 processors Generating CY-type figures control: 2024-12-16 experiments: ['2024-12-16:jwittig_3denvar-60-iter_O120km_VarBC.2024-12-16_cron', '2024-12-22:jwittig_3denvar-60-iter_O120km_VarBC.2024-12-22_cron'] model forecast None 2018-04-21 18:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-15 00:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-15 06:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-15 12:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-15 18:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-16 00:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-16 06:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-16 12:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-16 18:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-17 00:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-17 06:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-17 12:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-17 18:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-18 00:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-18 06:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-18 12:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-18 18:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-19 00:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-19 06:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-19 12:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-19 18:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-20 00:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-20 06:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-20 12:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-20 18:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-21 00:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-21 06:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-21 12:00:00 2024-12-23_00:10:12 [INFO] : analysis.StatisticsDatabase.mpas : Working on cycle time 2018-04-21 18:00:00 2024-12-23_00:10:19 [INFO] : analysis.StatisticsDatabase.mpas : Concatenating statistics sub-dictionaries from multiple processors 2024-12-23_00:10:19 [INFO] : analysis.StatisticsDatabase.mpas : Constructing a dataframe from statistics dictionary 2024-12-23_00:10:21 [INFO] : analysis.StatisticsDatabase.mpas : Sorting the dataframe index 2024-12-23_00:10:21 [INFO] : analysis.StatisticsDatabase.mpas : Extracting index values 2024-12-23_00:10:26 [INFO] : analysis.StatisticsDatabase.mpas : availableDiagnostics: ['mmgfsan'] 2024-12-23_00:10:26 [INFO] : analysis.Analyses.mpas : Analyses Constructed 2024-12-23_00:10:26 [INFO] : analysis.Analyses.mpas : Entering Analyses.analyze() 2024-12-23_00:10:26 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : analyze() /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] 2024-12-23_00:10:26 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, lat, identity /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] 2024-12-23_00:10:33 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, ITCZ /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:10:37 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, NTro /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:10:41 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, NXTro /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:10:44 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, STro /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:10:48 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, SXTro /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:10:51 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, Tro /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:10:55 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, abi_g16 /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:10:58 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, ahi_himawari8 /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:11:02 [INFO] : analysis.AnalysisBase.mpas.BinValAxisProfileDiffCI : mmgfsan, ModLev, identity /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:459: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, :] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] /glade/derecho/scratch/jwittig/repos-s/mpas-jedi-cron/graphics/analysis/StatisticsDatabase.py:461: FutureWarning: The behavior of indexing on a MultiIndex with a nested sequence of labels is deprecated and will change in a future version. `series.loc[label, sequence]` will raise if any members of 'sequence' or not present in the index's second level. To retain the old behavior, use `series.index.isin(sequence, level=1)` return self.df.loc[Loc, var] 2024-12-23_00:11:05 [INFO] : analysis.Analyses.mpas : Exiting Analyses.analyze() 2024-12-23_00:11:05 [INFO] : __main__ : Finished main() successfully