function_train

pydantic model dakota.spec.method.function_train.FtSelection

Generated model for FtSelection

Show JSON schema
{
   "title": "FtSelection",
   "description": "Generated model for FtSelection",
   "type": "object",
   "properties": {
      "function_train": {
         "$ref": "#/$defs/FtConfig",
         "x-materialization": [
            {
               "ir_key": "method.algorithm",
               "ir_value_type": "unsigned short",
               "storage_type": "PRESENCE_ENUM",
               "stored_value": "C3_FUNCTION_TRAIN"
            }
         ]
      }
   },
   "$defs": {
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         "additionalProperties": false,
         "description": "Level 5 of 5 - maximum",
         "properties": {
            "debug": {
               "const": true,
               "default": true,
               "description": "Level 5 of 5 - maximum",
               "title": "Debug",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.output",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "DEBUG_OUTPUT"
                  }
               ]
            }
         },
         "title": "Debug",
         "type": "object"
      },
      "ExpansionOptionsDiagCov": {
         "additionalProperties": false,
         "description": "Display only the diagonal terms of the covariance matrix",
         "properties": {
            "diagonal_covariance": {
               "const": true,
               "default": true,
               "description": "Display only the diagonal terms of the covariance matrix",
               "title": "Diagonal Covariance",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.covariance_control",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "DIAGONAL_COVARIANCE"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsDiagCov",
         "type": "object"
      },
      "ExpansionOptionsDistributionComplementary": {
         "additionalProperties": false,
         "description": "Computes statistics according to complementary cumulative functions",
         "properties": {
            "complementary": {
               "const": true,
               "default": true,
               "description": "Computes statistics according to complementary cumulative functions",
               "title": "Complementary",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.distribution",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
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                  }
               ]
            }
         },
         "title": "ExpansionOptionsDistributionComplementary",
         "type": "object"
      },
      "ExpansionOptionsDistributionCumulative": {
         "additionalProperties": false,
         "description": "Computes statistics according to cumulative functions",
         "properties": {
            "cumulative": {
               "const": true,
               "default": true,
               "description": "Computes statistics according to cumulative functions",
               "title": "Cumulative",
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                  {
                     "ir_key": "method.nond.distribution",
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                  }
               ]
            }
         },
         "title": "ExpansionOptionsDistributionCumulative",
         "type": "object"
      },
      "ExpansionOptionsExportApproxPointsFile": {
         "additionalProperties": false,
         "description": "Output file for surrogate model value evaluations",
         "properties": {
            "filename": {
               "description": "Output file for surrogate model value evaluations",
               "title": "Filename",
               "type": "string",
               "x-materialization": [
                  {
                     "ir_key": "method.export_approx_points_file",
                     "ir_value_type": "String",
                     "storage_type": "DIRECT_VALUE"
                  }
               ]
            },
            "format": {
               "anchor": true,
               "anyOf": [
                  {
                     "$ref": "#/$defs/ExpansionOptionsExportApproxPointsFileCustomAnnotated"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsExportApproxPointsFileAnnotated"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsExportApproxPointsFileFreeform"
                  }
               ],
               "description": "Tabular Format",
               "title": "Format",
               "x-model-default": "ExpansionOptionsExportApproxPointsFileAnnotated",
               "x-union-pattern": 1
            }
         },
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         ],
         "title": "ExpansionOptionsExportApproxPointsFile",
         "type": "object"
      },
      "ExpansionOptionsExportApproxPointsFileAnnotated": {
         "additionalProperties": false,
         "description": "Selects annotated tabular file format",
         "properties": {
            "annotated": {
               "const": true,
               "default": true,
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               "title": "Annotated",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.export_approx_format",
                     "ir_value_type": "unsigned short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "TABULAR_ANNOTATED"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsExportApproxPointsFileAnnotated",
         "type": "object"
      },
      "ExpansionOptionsExportApproxPointsFileCustomAnnotated": {
         "additionalProperties": false,
         "description": "Selects custom-annotated tabular file format",
         "properties": {
            "custom_annotated": {
               "$ref": "#/$defs/ExpansionOptionsExportApproxPointsFileCustomAnnotatedConfig",
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                  {
                     "ir_key": "method.export_approx_format",
                     "ir_value_type": "unsigned short",
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               ],
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            }
         },
         "title": "ExpansionOptionsExportApproxPointsFileCustomAnnotated",
         "type": "object"
      },
      "ExpansionOptionsExportApproxPointsFileCustomAnnotatedConfig": {
         "additionalProperties": false,
         "description": "Selects custom-annotated tabular file format",
         "properties": {
            "header": {
               "anyOf": [
                  {
                     "const": true,
                     "type": "boolean"
                  },
                  {
                     "type": "null"
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               ],
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               ]
            },
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                  {
                     "const": true,
                     "type": "boolean"
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                  {
                     "type": "null"
                  }
               ],
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               "title": "Eval Id",
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                  {
                     "ir_key": "method.export_approx_format",
                     "ir_value_type": "unsigned short",
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                     "const": true,
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                     "type": "null"
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                     "ir_value_type": "unsigned short",
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               ]
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         },
         "title": "ExpansionOptionsExportApproxPointsFileCustomAnnotatedConfig",
         "type": "object"
      },
      "ExpansionOptionsExportApproxPointsFileFreeform": {
         "additionalProperties": false,
         "description": "Selects freeform file format",
         "properties": {
            "freeform": {
               "const": true,
               "default": true,
               "description": "Selects freeform file format",
               "title": "Freeform",
               "type": "boolean",
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                     "ir_key": "method.export_approx_format",
                     "ir_value_type": "unsigned short",
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                  }
               ]
            }
         },
         "title": "ExpansionOptionsExportApproxPointsFileFreeform",
         "type": "object"
      },
      "ExpansionOptionsFinalMomentsCentral": {
         "additionalProperties": false,
         "description": "Output central moments and include them within the set of final statistics.",
         "properties": {
            "central": {
               "const": true,
               "default": true,
               "description": "Output central moments and include them within the set of final statistics.",
               "title": "Central",
               "type": "boolean",
               "x-materialization": [
                  {
                     "enum_scope": "Pecos",
                     "ir_key": "method.nond.final_moments",
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                     "stored_value": "CENTRAL_MOMENTS"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsFinalMomentsCentral",
         "type": "object"
      },
      "ExpansionOptionsFinalMomentsNoneKeyword": {
         "additionalProperties": false,
         "description": "Omit moments from the set of final statistics.",
         "properties": {
            "none": {
               "const": true,
               "default": true,
               "description": "Omit moments from the set of final statistics.",
               "title": "None",
               "type": "boolean",
               "x-materialization": [
                  {
                     "enum_scope": "Pecos",
                     "ir_key": "method.nond.final_moments",
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                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "NO_MOMENTS"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsFinalMomentsNoneKeyword",
         "type": "object"
      },
      "ExpansionOptionsFinalMomentsStandard": {
         "additionalProperties": false,
         "description": "Output standardized moments and include them within the set of final statistics.",
         "properties": {
            "standard": {
               "const": true,
               "default": true,
               "description": "Output standardized moments and include them within the set of final statistics.",
               "title": "Standard",
               "type": "boolean",
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                  {
                     "enum_scope": "Pecos",
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                     "stored_value": "STANDARD_MOMENTS"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsFinalMomentsStandard",
         "type": "object"
      },
      "ExpansionOptionsFullCov": {
         "additionalProperties": false,
         "description": "Display the full covariance matrix",
         "properties": {
            "full_covariance": {
               "const": true,
               "default": true,
               "description": "Display the full covariance matrix",
               "title": "Full Covariance",
               "type": "boolean",
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                  {
                     "ir_key": "method.nond.covariance_control",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
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                  }
               ]
            }
         },
         "title": "ExpansionOptionsFullCov",
         "type": "object"
      },
      "ExpansionOptionsGenReliabilityLevels": {
         "additionalProperties": false,
         "description": "Specify generalized relability levels at which to estimate the corresponding response value",
         "properties": {
            "values": {
               "description": "Specify generalized relability levels at which to estimate the corresponding response value",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
            },
            "num_gen_reliability_levels": {
               "anyOf": [
                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Specify which ``gen_reliability_levels`` correspond to which response",
               "title": "Num Gen Reliability Levels"
            }
         },
         "required": [
            "values"
         ],
         "title": "ExpansionOptionsGenReliabilityLevels",
         "type": "object",
         "x-model-validations": [
            {
               "validationContext": "expansionoptionsgenreliabilitylevels",
               "validationErrorMessage": "For expansionoptionsgenreliabilitylevels, sum of num_gen_reliability_levels must equal length of values.",
               "validationFields": [
                  "num_gen_reliability_levels",
                  "values"
               ],
               "validationLiterals": [],
               "validationRuleName": "check_sum_equals_length"
            }
         ]
      },
      "ExpansionOptionsProbabilityLevels": {
         "additionalProperties": false,
         "description": "Specify probability levels at which to estimate the corresponding response value",
         "properties": {
            "values": {
               "description": "Specify probability levels at which to estimate the corresponding response value",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
            },
            "num_probability_levels": {
               "anyOf": [
                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Specify which ``probability_levels`` correspond to which response",
               "title": "Num Probability Levels"
            }
         },
         "required": [
            "values"
         ],
         "title": "ExpansionOptionsProbabilityLevels",
         "type": "object",
         "x-model-validations": [
            {
               "validationContext": "expansionoptionsprobabilitylevels",
               "validationErrorMessage": "For expansionoptionsprobabilitylevels, all elements of values must be in [0, 1].",
               "validationFields": [
                  "values"
               ],
               "validationLiterals": [],
               "validationRuleName": "check_probability_list"
            },
            {
               "validationContext": "expansionoptionsprobabilitylevels",
               "validationErrorMessage": "For expansionoptionsprobabilitylevels, sum of num_probability_levels must equal length of values.",
               "validationFields": [
                  "num_probability_levels",
                  "values"
               ],
               "validationLiterals": [],
               "validationRuleName": "check_sum_equals_length"
            }
         ]
      },
      "ExpansionOptionsProbabilityRefinement": {
         "additionalProperties": false,
         "description": "Allow refinement of probability and generalized reliability results using importance sampling",
         "properties": {
            "importance_sampling_approach": {
               "anchor": true,
               "anyOf": [
                  {
                     "$ref": "#/$defs/ExpansionOptionsProbabilityRefinementImportance"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsProbabilityRefinementAdaptImport"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsProbabilityRefinementMmAdaptImport"
                  }
               ],
               "description": "Importance Sampling Approach",
               "title": "Importance Sampling Approach",
               "x-union-pattern": 4
            },
            "refinement_samples": {
               "anyOf": [
                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Number of samples used to refine a probability estimate or sampling design.",
               "title": "Refinement Samples",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.refinement_samples",
                     "ir_value_type": "IntVector",
                     "storage_type": "DIRECT_VALUE"
                  }
               ]
            }
         },
         "required": [
            "importance_sampling_approach"
         ],
         "title": "ExpansionOptionsProbabilityRefinement",
         "type": "object"
      },
      "ExpansionOptionsProbabilityRefinementAdaptImport": {
         "additionalProperties": false,
         "description": "Importance sampling option for probability refinement",
         "properties": {
            "adapt_import": {
               "const": true,
               "default": true,
               "description": "Importance sampling option for probability refinement",
               "title": "Adapt Import",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.integration_refinement",
                     "ir_value_type": "unsigned short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "AIS"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsProbabilityRefinementAdaptImport",
         "type": "object"
      },
      "ExpansionOptionsProbabilityRefinementImportance": {
         "additionalProperties": false,
         "description": "Importance sampling option for probability refinement",
         "properties": {
            "importance": {
               "const": true,
               "default": true,
               "description": "Importance sampling option for probability refinement",
               "title": "Importance",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.integration_refinement",
                     "ir_value_type": "unsigned short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "IS"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsProbabilityRefinementImportance",
         "type": "object"
      },
      "ExpansionOptionsProbabilityRefinementMmAdaptImport": {
         "additionalProperties": false,
         "description": "Importance sampling option for probability refinement",
         "properties": {
            "mm_adapt_import": {
               "const": true,
               "default": true,
               "description": "Importance sampling option for probability refinement",
               "title": "Mm Adapt Import",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.integration_refinement",
                     "ir_value_type": "unsigned short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "MMAIS"
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               ]
            }
         },
         "title": "ExpansionOptionsProbabilityRefinementMmAdaptImport",
         "type": "object"
      },
      "ExpansionOptionsReliabilityLevels": {
         "additionalProperties": false,
         "description": "Specify reliability levels at which the response values will be estimated",
         "properties": {
            "values": {
               "description": "Specify reliability levels at which the response values will be estimated",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
            },
            "num_reliability_levels": {
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                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Specify which ``reliability_levels`` correspond to which response",
               "title": "Num Reliability Levels"
            }
         },
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         ],
         "title": "ExpansionOptionsReliabilityLevels",
         "type": "object",
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                  "num_reliability_levels",
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               "validationLiterals": [],
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         ]
      },
      "ExpansionOptionsResponseLevels": {
         "additionalProperties": false,
         "description": "Values at which to estimate desired statistics for each response",
         "properties": {
            "values": {
               "description": "Values at which to estimate desired statistics for each response",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
            },
            "num_response_levels": {
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                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Number of values at which to estimate desired statistics for each response",
               "title": "Num Response Levels"
            },
            "compute": {
               "anyOf": [
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsCompute"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Selection of statistics to compute at each response level"
            }
         },
         "required": [
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         ],
         "title": "ExpansionOptionsResponseLevels",
         "type": "object",
         "x-model-validations": [
            {
               "validationContext": "expansionoptionsresponselevels",
               "validationErrorMessage": "For expansionoptionsresponselevels, sum of num_response_levels must equal length of values.",
               "validationFields": [
                  "num_response_levels",
                  "values"
               ],
               "validationLiterals": [],
               "validationRuleName": "check_sum_equals_length"
            }
         ]
      },
      "ExpansionOptionsResponseLevelsCompute": {
         "additionalProperties": false,
         "description": "Selection of statistics to compute at each response level",
         "properties": {
            "statistic": {
               "anchor": true,
               "anyOf": [
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeProbabilities"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeReliabilities"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeGenReliabilities"
                  }
               ],
               "description": "Statistics to Compute",
               "title": "Statistic",
               "x-union-pattern": 4
            },
            "system": {
               "anyOf": [
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeSystemSeries"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeSystemParallel"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Compute system reliability (series or parallel)",
               "title": "System",
               "x-union-pattern": 2
            }
         },
         "required": [
            "statistic"
         ],
         "title": "ExpansionOptionsResponseLevelsCompute",
         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeGenReliabilities": {
         "additionalProperties": false,
         "description": "Computes generalized reliabilities associated with response levels",
         "properties": {
            "gen_reliabilities": {
               "const": true,
               "default": true,
               "description": "Computes generalized reliabilities associated with response levels",
               "title": "Gen Reliabilities",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.response_level_target",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "GEN_RELIABILITIES"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsResponseLevelsComputeGenReliabilities",
         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeProbabilities": {
         "additionalProperties": false,
         "description": "Computes probabilities associated with response levels",
         "properties": {
            "probabilities": {
               "const": true,
               "default": true,
               "description": "Computes probabilities associated with response levels",
               "title": "Probabilities",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.response_level_target",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "PROBABILITIES"
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               ]
            }
         },
         "title": "ExpansionOptionsResponseLevelsComputeProbabilities",
         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeReliabilities": {
         "additionalProperties": false,
         "description": "Computes reliabilities associated with response levels",
         "properties": {
            "reliabilities": {
               "const": true,
               "default": true,
               "description": "Computes reliabilities associated with response levels",
               "title": "Reliabilities",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.response_level_target",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "RELIABILITIES"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsResponseLevelsComputeReliabilities",
         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeSystemParallel": {
         "additionalProperties": false,
         "description": "Aggregate response statistics assuming a parallel system",
         "properties": {
            "parallel": {
               "const": true,
               "default": true,
               "description": "Aggregate response statistics assuming a parallel system",
               "title": "Parallel",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.response_level_target_reduce",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "SYSTEM_PARALLEL"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsResponseLevelsComputeSystemParallel",
         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeSystemSeries": {
         "additionalProperties": false,
         "description": "Aggregate response statistics assuming a series system",
         "properties": {
            "series": {
               "const": true,
               "default": true,
               "description": "Aggregate response statistics assuming a series system",
               "title": "Series",
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}

Fields:
field function_train: FtConfig [Required]
classmethod get_registry() dict[str, type[MethodSelection]]

Get registry, performing deferred registration on first call

classmethod get_union()

Generate Union from all registered selections

pydantic model dakota.spec.method.function_train.FtConfig

UQ method leveraging a functional tensor train surrogate model.

Show JSON schema
{
   "title": "FtConfig",
   "description": "UQ method leveraging a functional tensor train surrogate model.",
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                     "ir_key": "method.export_approx_format",
                     "ir_value_type": "unsigned short",
                     "storage_type": "AUGMENT_ENUM",
                     "stored_value": "TABULAR_IFACE_ID"
                  }
               ]
            }
         },
         "title": "ExpansionOptionsExportApproxPointsFileCustomAnnotatedConfig",
         "type": "object"
      },
      "ExpansionOptionsExportApproxPointsFileFreeform": {
         "additionalProperties": false,
         "description": "Selects freeform file format",
         "properties": {
            "freeform": {
               "const": true,
               "default": true,
               "description": "Selects freeform file format",
               "title": "Freeform",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.export_approx_format",
                     "ir_value_type": "unsigned short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "TABULAR_NONE"
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               ]
            }
         },
         "title": "ExpansionOptionsExportApproxPointsFileFreeform",
         "type": "object"
      },
      "ExpansionOptionsFinalMomentsCentral": {
         "additionalProperties": false,
         "description": "Output central moments and include them within the set of final statistics.",
         "properties": {
            "central": {
               "const": true,
               "default": true,
               "description": "Output central moments and include them within the set of final statistics.",
               "title": "Central",
               "type": "boolean",
               "x-materialization": [
                  {
                     "enum_scope": "Pecos",
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                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "CENTRAL_MOMENTS"
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               ]
            }
         },
         "title": "ExpansionOptionsFinalMomentsCentral",
         "type": "object"
      },
      "ExpansionOptionsFinalMomentsNoneKeyword": {
         "additionalProperties": false,
         "description": "Omit moments from the set of final statistics.",
         "properties": {
            "none": {
               "const": true,
               "default": true,
               "description": "Omit moments from the set of final statistics.",
               "title": "None",
               "type": "boolean",
               "x-materialization": [
                  {
                     "enum_scope": "Pecos",
                     "ir_key": "method.nond.final_moments",
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                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "NO_MOMENTS"
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               ]
            }
         },
         "title": "ExpansionOptionsFinalMomentsNoneKeyword",
         "type": "object"
      },
      "ExpansionOptionsFinalMomentsStandard": {
         "additionalProperties": false,
         "description": "Output standardized moments and include them within the set of final statistics.",
         "properties": {
            "standard": {
               "const": true,
               "default": true,
               "description": "Output standardized moments and include them within the set of final statistics.",
               "title": "Standard",
               "type": "boolean",
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                  {
                     "enum_scope": "Pecos",
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                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "STANDARD_MOMENTS"
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               ]
            }
         },
         "title": "ExpansionOptionsFinalMomentsStandard",
         "type": "object"
      },
      "ExpansionOptionsFullCov": {
         "additionalProperties": false,
         "description": "Display the full covariance matrix",
         "properties": {
            "full_covariance": {
               "const": true,
               "default": true,
               "description": "Display the full covariance matrix",
               "title": "Full Covariance",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.covariance_control",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "FULL_COVARIANCE"
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               ]
            }
         },
         "title": "ExpansionOptionsFullCov",
         "type": "object"
      },
      "ExpansionOptionsGenReliabilityLevels": {
         "additionalProperties": false,
         "description": "Specify generalized relability levels at which to estimate the corresponding response value",
         "properties": {
            "values": {
               "description": "Specify generalized relability levels at which to estimate the corresponding response value",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
            },
            "num_gen_reliability_levels": {
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                     "items": {
                        "type": "integer"
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                     "type": "array"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Specify which ``gen_reliability_levels`` correspond to which response",
               "title": "Num Gen Reliability Levels"
            }
         },
         "required": [
            "values"
         ],
         "title": "ExpansionOptionsGenReliabilityLevels",
         "type": "object",
         "x-model-validations": [
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               "validationContext": "expansionoptionsgenreliabilitylevels",
               "validationErrorMessage": "For expansionoptionsgenreliabilitylevels, sum of num_gen_reliability_levels must equal length of values.",
               "validationFields": [
                  "num_gen_reliability_levels",
                  "values"
               ],
               "validationLiterals": [],
               "validationRuleName": "check_sum_equals_length"
            }
         ]
      },
      "ExpansionOptionsProbabilityLevels": {
         "additionalProperties": false,
         "description": "Specify probability levels at which to estimate the corresponding response value",
         "properties": {
            "values": {
               "description": "Specify probability levels at which to estimate the corresponding response value",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
            },
            "num_probability_levels": {
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                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Specify which ``probability_levels`` correspond to which response",
               "title": "Num Probability Levels"
            }
         },
         "required": [
            "values"
         ],
         "title": "ExpansionOptionsProbabilityLevels",
         "type": "object",
         "x-model-validations": [
            {
               "validationContext": "expansionoptionsprobabilitylevels",
               "validationErrorMessage": "For expansionoptionsprobabilitylevels, all elements of values must be in [0, 1].",
               "validationFields": [
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               ],
               "validationLiterals": [],
               "validationRuleName": "check_probability_list"
            },
            {
               "validationContext": "expansionoptionsprobabilitylevels",
               "validationErrorMessage": "For expansionoptionsprobabilitylevels, sum of num_probability_levels must equal length of values.",
               "validationFields": [
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                  "values"
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               "validationLiterals": [],
               "validationRuleName": "check_sum_equals_length"
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         ]
      },
      "ExpansionOptionsProbabilityRefinement": {
         "additionalProperties": false,
         "description": "Allow refinement of probability and generalized reliability results using importance sampling",
         "properties": {
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               "anchor": true,
               "anyOf": [
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                     "$ref": "#/$defs/ExpansionOptionsProbabilityRefinementImportance"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsProbabilityRefinementAdaptImport"
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                     "$ref": "#/$defs/ExpansionOptionsProbabilityRefinementMmAdaptImport"
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               ],
               "description": "Importance Sampling Approach",
               "title": "Importance Sampling Approach",
               "x-union-pattern": 4
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            "refinement_samples": {
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                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
                  },
                  {
                     "type": "null"
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               ],
               "default": null,
               "description": "Number of samples used to refine a probability estimate or sampling design.",
               "title": "Refinement Samples",
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                  {
                     "ir_key": "method.nond.refinement_samples",
                     "ir_value_type": "IntVector",
                     "storage_type": "DIRECT_VALUE"
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         },
         "required": [
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         "title": "ExpansionOptionsProbabilityRefinement",
         "type": "object"
      },
      "ExpansionOptionsProbabilityRefinementAdaptImport": {
         "additionalProperties": false,
         "description": "Importance sampling option for probability refinement",
         "properties": {
            "adapt_import": {
               "const": true,
               "default": true,
               "description": "Importance sampling option for probability refinement",
               "title": "Adapt Import",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.integration_refinement",
                     "ir_value_type": "unsigned short",
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                     "stored_value": "AIS"
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               ]
            }
         },
         "title": "ExpansionOptionsProbabilityRefinementAdaptImport",
         "type": "object"
      },
      "ExpansionOptionsProbabilityRefinementImportance": {
         "additionalProperties": false,
         "description": "Importance sampling option for probability refinement",
         "properties": {
            "importance": {
               "const": true,
               "default": true,
               "description": "Importance sampling option for probability refinement",
               "title": "Importance",
               "type": "boolean",
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                  {
                     "ir_key": "method.nond.integration_refinement",
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         },
         "title": "ExpansionOptionsProbabilityRefinementImportance",
         "type": "object"
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      "ExpansionOptionsProbabilityRefinementMmAdaptImport": {
         "additionalProperties": false,
         "description": "Importance sampling option for probability refinement",
         "properties": {
            "mm_adapt_import": {
               "const": true,
               "default": true,
               "description": "Importance sampling option for probability refinement",
               "title": "Mm Adapt Import",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.integration_refinement",
                     "ir_value_type": "unsigned short",
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         },
         "title": "ExpansionOptionsProbabilityRefinementMmAdaptImport",
         "type": "object"
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      "ExpansionOptionsReliabilityLevels": {
         "additionalProperties": false,
         "description": "Specify reliability levels at which the response values will be estimated",
         "properties": {
            "values": {
               "description": "Specify reliability levels at which the response values will be estimated",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
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            "num_reliability_levels": {
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                     "items": {
                        "type": "integer"
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                     "type": "array"
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                  {
                     "type": "null"
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               ],
               "default": null,
               "description": "Specify which ``reliability_levels`` correspond to which response",
               "title": "Num Reliability Levels"
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         },
         "required": [
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         ],
         "title": "ExpansionOptionsReliabilityLevels",
         "type": "object",
         "x-model-validations": [
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               "validationContext": "expansionoptionsreliabilitylevels",
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               "validationRuleName": "check_sum_equals_length"
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         ]
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      "ExpansionOptionsResponseLevels": {
         "additionalProperties": false,
         "description": "Values at which to estimate desired statistics for each response",
         "properties": {
            "values": {
               "description": "Values at which to estimate desired statistics for each response",
               "items": {
                  "type": "number"
               },
               "title": "Values",
               "type": "array"
            },
            "num_response_levels": {
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                  {
                     "items": {
                        "type": "integer"
                     },
                     "type": "array"
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                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Number of values at which to estimate desired statistics for each response",
               "title": "Num Response Levels"
            },
            "compute": {
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                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsCompute"
                  },
                  {
                     "type": "null"
                  }
               ],
               "default": null,
               "description": "Selection of statistics to compute at each response level"
            }
         },
         "required": [
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         ],
         "title": "ExpansionOptionsResponseLevels",
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         "x-model-validations": [
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               "validationContext": "expansionoptionsresponselevels",
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                  "values"
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               "validationRuleName": "check_sum_equals_length"
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         ]
      },
      "ExpansionOptionsResponseLevelsCompute": {
         "additionalProperties": false,
         "description": "Selection of statistics to compute at each response level",
         "properties": {
            "statistic": {
               "anchor": true,
               "anyOf": [
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeProbabilities"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeReliabilities"
                  },
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeGenReliabilities"
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               ],
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            },
            "system": {
               "anyOf": [
                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeSystemSeries"
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                  {
                     "$ref": "#/$defs/ExpansionOptionsResponseLevelsComputeSystemParallel"
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                  {
                     "type": "null"
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               ],
               "default": null,
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         },
         "required": [
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         "title": "ExpansionOptionsResponseLevelsCompute",
         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeGenReliabilities": {
         "additionalProperties": false,
         "description": "Computes generalized reliabilities associated with response levels",
         "properties": {
            "gen_reliabilities": {
               "const": true,
               "default": true,
               "description": "Computes generalized reliabilities associated with response levels",
               "title": "Gen Reliabilities",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.response_level_target",
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               ]
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         },
         "title": "ExpansionOptionsResponseLevelsComputeGenReliabilities",
         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeProbabilities": {
         "additionalProperties": false,
         "description": "Computes probabilities associated with response levels",
         "properties": {
            "probabilities": {
               "const": true,
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               "description": "Computes probabilities associated with response levels",
               "title": "Probabilities",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.nond.response_level_target",
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         "type": "object"
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      "ExpansionOptionsResponseLevelsComputeReliabilities": {
         "additionalProperties": false,
         "description": "Computes reliabilities associated with response levels",
         "properties": {
            "reliabilities": {
               "const": true,
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               "description": "Computes reliabilities associated with response levels",
               "title": "Reliabilities",
               "type": "boolean",
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                     "ir_key": "method.nond.response_level_target",
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         "type": "object"
      },
      "ExpansionOptionsResponseLevelsComputeSystemParallel": {
         "additionalProperties": false,
         "description": "Aggregate response statistics assuming a parallel system",
         "properties": {
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               "const": true,
               "default": true,
               "description": "Aggregate response statistics assuming a parallel system",
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               "type": "boolean",
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                  {
                     "ir_key": "method.nond.response_level_target_reduce",
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         "title": "ExpansionOptionsResponseLevelsComputeSystemParallel",
         "type": "object"
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      "ExpansionOptionsResponseLevelsComputeSystemSeries": {
         "additionalProperties": false,
         "description": "Aggregate response statistics assuming a series system",
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               "const": true,
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               "description": "Aggregate response statistics assuming a series system",
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                     "ir_key": "method.nond.response_level_target_reduce",
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         "title": "ExpansionOptionsResponseLevelsComputeSystemSeries",
         "type": "object"
      },
      "ExpansionOptionsRngMt19937": {
         "additionalProperties": false,
         "description": "Generates random numbers using the Mersenne twister",
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               "description": "Generates random numbers using the Mersenne twister",
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               "type": "boolean",
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                     "ir_key": "method.random_number_generator",
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               ]
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         },
         "title": "ExpansionOptionsRngMt19937",
         "type": "object"
      },
      "ExpansionOptionsRngRnum2": {
         "additionalProperties": false,
         "description": "Generates pseudo-random numbers using the Pecos package",
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               "const": true,
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               "description": "Generates pseudo-random numbers using the Pecos package",
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               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.random_number_generator",
                     "ir_value_type": "String",
                     "storage_type": "PRESENCE_LITERAL",
                     "stored_value": "rnum2"
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               ]
            }
         },
         "title": "ExpansionOptionsRngRnum2",
         "type": "object"
      },
      "ExpansionOptionsSampleTypeLhs": {
         "additionalProperties": false,
         "description": "Uses Latin Hypercube Sampling (LHS) to sample variables",
         "properties": {
            "lhs": {
               "const": true,
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               "description": "Uses Latin Hypercube Sampling (LHS) to sample variables",
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               "type": "boolean",
               "x-materialization": [
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                     "ir_key": "method.sample_type",
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               ]
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         "title": "ExpansionOptionsSampleTypeLhs",
         "type": "object"
      },
      "ExpansionOptionsSampleTypeRandom": {
         "additionalProperties": false,
         "description": "Uses purely random Monte Carlo sampling to sample variables",
         "properties": {
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               "default": true,
               "description": "Uses purely random Monte Carlo sampling to sample variables",
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                     "ir_key": "method.sample_type",
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               ]
            }
         },
         "title": "ExpansionOptionsSampleTypeRandom",
         "type": "object"
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      "ExpansionOptionsVarianceBasedDecomp": {
         "additionalProperties": false,
         "description": "Activates global sensitivity analysis based on decomposition of response variance into main, interaction, and total effects",
         "properties": {
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                  {
                     "exclusiveMinimum": 0,
                     "type": "integer"
                  },
                  {
                     "type": "null"
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               ],
               "default": null,
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                     "ir_key": "method.nond.vbd_interaction_order",
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            },
            "drop_tolerance": {
               "default": -1.0,
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                     "ir_key": "method.vbd_drop_tolerance",
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                     "storage_type": "DIRECT_VALUE"
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               ]
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         },
         "title": "ExpansionOptionsVarianceBasedDecomp",
         "type": "object"
      },
      "FtMethodOrderStartOrder": {
         "additionalProperties": false,
         "description": "(Initial) polynomial order of each univariate function within the functional tensor train.",
         "properties": {
            "value": {
               "default": 2,
               "description": "(Initial) polynomial order of each univariate function within the functional tensor train.",
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               "title": "Value",
               "type": "integer",
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                  {
                     "ir_key": "method.nond.c3function_train.start_order",
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            "dimension_preference": {
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                     "items": {
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                     "type": "array"
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                  {
                     "type": "null"
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               ],
               "default": null,
               "description": "A set of weights specifying the realtive importance of each uncertain variable (dimension)",
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               "x-materialization": [
                  {
                     "ir_key": "method.nond.dimension_preference",
                     "ir_value_type": "RealVector",
                     "storage_type": "DIRECT_VALUE"
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               ]
            }
         },
         "title": "FtMethodOrderStartOrder",
         "type": "object"
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      "FtMethodRefinementPRefinement": {
         "additionalProperties": false,
         "description": "Automatic polynomial order refinement",
         "properties": {
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               "anyOf": [
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                     "$ref": "#/$defs/IncrementStartRank"
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                  {
                     "$ref": "#/$defs/IncrementStartOrder"
                  },
                  {
                     "$ref": "#/$defs/IncrementMaxRank"
                  },
                  {
                     "$ref": "#/$defs/IncrementMaxOrder"
                  },
                  {
                     "$ref": "#/$defs/IncrementMaxRankOrder"
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               ],
               "description": "Refine an expansion uniformly in all dimensions.",
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               "x-materialization": [
                  {
                     "enum_scope": "Pecos",
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                     "storage_type": "PRESENCE_ENUM",
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         "title": "FtMethodRefinementPRefinement",
         "type": "object"
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      "FtMethodRegressionCollocPoints": {
         "additionalProperties": false,
         "description": "Number of collocation points used to estimate expansion coefficients",
         "properties": {
            "collocation_points": {
               "description": "Number of collocation points used to estimate expansion coefficients",
               "title": "Collocation Points",
               "type": "integer",
               "x-materialization": [
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                     "ir_key": "method.nond.collocation_points",
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                     "storage_type": "DIRECT_VALUE"
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               ]
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         },
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         "title": "FtMethodRegressionCollocPoints",
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         "properties": {
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         "properties": {
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         "properties": {
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      },
      "IncrementMaxRank": {
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         "description": "candidate generation by advancement of maximum rank",
         "properties": {
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               "const": true,
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               ]
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         },
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      },
      "IncrementMaxRankOrder": {
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         "description": "candidate generation by advancement of maximum rank and maximum basis order",
         "properties": {
            "increment_max_rank_order": {
               "const": true,
               "default": true,
               "description": "candidate generation by advancement of maximum rank and maximum basis order",
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               ]
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         },
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         "type": "object"
      },
      "IncrementStartOrder": {
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         "description": "candidate generation by advancement of starting basis order",
         "properties": {
            "increment_start_order": {
               "const": true,
               "default": true,
               "description": "candidate generation by advancement of starting basis order",
               "title": "Increment Start Order",
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               ]
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         },
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      },
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         "description": "candidate generation by advancement of starting rank",
         "properties": {
            "increment_start_rank": {
               "const": true,
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               "description": "candidate generation by advancement of starting rank",
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               ]
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         },
         "title": "IncrementStartRank",
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      },
      "LevelMappings": {
         "additionalProperties": false,
         "description": "Utilize the level mappings metric for guiding adaptive refinement during UQ.",
         "properties": {
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               "description": "Utilize the level mappings metric for guiding adaptive refinement during UQ.",
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               "x-materialization": [
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         "properties": {
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         "properties": {
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               ]
            },
            "convergence_tolerance_type": {
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               ],
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      },
      "MethodConvergenceTolWithTypeContext2Relative": {
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         "properties": {
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               "title": "Relative",
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         },
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         "type": "object"
      },
      "Normal": {
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         "description": "Level 3 of 5 - default",
         "properties": {
            "normal": {
               "const": true,
               "default": true,
               "description": "Level 3 of 5 - default",
               "title": "Normal",
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               ]
            }
         },
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         "description": "Level 2 of 5 - less than normal",
         "properties": {
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               "default": true,
               "description": "Level 2 of 5 - less than normal",
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               ]
            }
         },
         "title": "Quiet",
         "type": "object"
      },
      "RefinementMetricCov": {
         "additionalProperties": false,
         "description": "Utilize the response covariance metric for guiding adaptive refinement during UQ.",
         "properties": {
            "covariance": {
               "const": true,
               "default": true,
               "description": "Utilize the response covariance metric for guiding adaptive refinement during UQ.",
               "title": "Covariance",
               "type": "boolean",
               "x-materialization": [
                  {
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                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "COVARIANCE_METRIC"
                  }
               ]
            }
         },
         "title": "RefinementMetricCov",
         "type": "object"
      },
      "Silent": {
         "additionalProperties": false,
         "description": "Level 1 of 5 - minimum",
         "properties": {
            "silent": {
               "const": true,
               "default": true,
               "description": "Level 1 of 5 - minimum",
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               "type": "boolean",
               "x-materialization": [
                  {
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                     "storage_type": "PRESENCE_ENUM",
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                  }
               ]
            }
         },
         "title": "Silent",
         "type": "object"
      },
      "Verbose": {
         "additionalProperties": false,
         "description": "Level 4 of 5 - more than normal",
         "properties": {
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               "default": true,
               "description": "Level 4 of 5 - more than normal",
               "title": "Verbose",
               "type": "boolean",
               "x-materialization": [
                  {
                     "ir_key": "method.output",
                     "ir_value_type": "short",
                     "storage_type": "PRESENCE_ENUM",
                     "stored_value": "VERBOSE_OUTPUT"
                  }
               ]
            }
         },
         "title": "Verbose",
         "type": "object"
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   },
   "additionalProperties": false,
   "required": [
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}

Fields:
field adapt_order: Literal[True] | None = None

Activate adaptive procedure for determining the best basis order

field adapt_rank: Literal[True] | None = None

Activate adaptive procedure for determining best rank representation

field arithmetic_tolerance: DakotaFloat = 1e-10

A secondary rounding tolerance used for post-processing

Constraints:
  • func = <function _serialize_dakota_float at 0x7f2a3de76700>

  • return_type = float | str

  • when_used = json

field collocation_control: FtMethodRegressionCollocPoints | FtMethodRegressionCollocRatio [Required]

Collocation Control

field convergence_tolerance: MethodConvergenceTolWithTypeContext2ConvergenceTol | None = None

Stopping criterion based on objective function or statistics convergence

field covariance_type: ExpansionOptionsDiagCov | ExpansionOptionsFullCov | None = None

Covariance Type

field distribution: ExpansionOptionsDistributionCumulative | ExpansionOptionsDistributionComplementary [Optional]

Selection of cumulative or complementary cumulative functions

field export_approx_points_file: ExpansionOptionsExportApproxPointsFile | None = None

Output file for surrogate model value evaluations

field final_moments: ExpansionOptionsFinalMomentsNoneKeyword | ExpansionOptionsFinalMomentsStandard | ExpansionOptionsFinalMomentsCentral [Optional]

Output moments of the specified type and include them within the set of final statistics.

field final_solutions: int = 0

Number of designs returned as the best solutions

Constraints:
  • ge = 0

field fixed_seed: Literal[True] | None = None

Reuses the same seed value for multiple random sampling sets

field gen_reliability_levels: ExpansionOptionsGenReliabilityLevels | None = None

Specify generalized relability levels at which to estimate the corresponding response value

field id_method: str | None = None

Name the method block; helpful when there are multiple

field import_approx_points_file: ImportApproxPointsFile | None = None

Filename for points at which to evaluate the PCE/SC surrogate

field kick_order: int = 1

increment used when adapting the basis order in function train methods

Constraints:
  • gt = 0

field kick_rank: int = 1

The increment in rank employed during each iteration of the rank adaptation.

Constraints:
  • gt = 0

field max_cross_iterations: int = 1

Maximum number of iterations for cross-approximation during a rank adaptation.

Constraints:
  • ge = 0

field max_cv_order_candidates: int = 65535

Limit the number of cross-validation candidates for basis order

Constraints:
  • ge = 0

field max_cv_rank_candidates: int = 9223372036854775807

Limit the number of cross-validation candidates for rank

Constraints:
  • ge = 0

field max_order: int = 65535

Maximum polynomial order of each univariate function within the functional tensor train.

Constraints:
  • ge = 0

field max_rank: int = 9223372036854775807

Limits the maximum rank that is explored during a rank adaptation.

Constraints:
  • ge = 0

field max_refinement_iterations: int = 9223372036854775807

Maximum number of expansion refinement iterations

Constraints:
  • ge = 0

field max_solver_iterations: int = 9223372036854775807

Maximum iterations in determining polynomial coefficients

Constraints:
  • ge = 0

field model_pointer: str | None = None

Identifier for model block to be used by a method

field output: Debug | Verbose | Normal | Quiet | Silent [Optional]

Control how much method information is written to the screen and output file

field p_refinement: FtMethodRefinementPRefinement | None = None

Automatic polynomial order refinement

field probability_levels: ExpansionOptionsProbabilityLevels | None = None

Specify probability levels at which to estimate the corresponding response value

field probability_refinement: ExpansionOptionsProbabilityRefinement | None = None

Allow refinement of probability and generalized reliability results using importance sampling

field refinement_metric: LevelMappings | RefinementMetricCov | None = None

Metric used for guiding adaptive refinement during UQ.

field regression_type: FtMethodRegressionTypeLs | FtMethodRegressionTypeRls2 | None = None

Type of solver for forming function train approximations by regression

field reliability_levels: ExpansionOptionsReliabilityLevels | None = None

Specify reliability levels at which the response values will be estimated

field response_levels: ExpansionOptionsResponseLevels | None = None

Values at which to estimate desired statistics for each response

field response_scaling: Literal[True] | None = None

Perform bounds-scaling on response values prior to surrogate emulation

field rng: ExpansionOptionsRngMt19937 | ExpansionOptionsRngRnum2 [Optional]

Selection of a random number generator

field rounding_tolerance: DakotaFloat = 1e-10

An accuracy tolerance that is used to guide rounding during rank adaptation.

Constraints:
  • func = <function _serialize_dakota_float at 0x7f2a3de76700>

  • return_type = float | str

  • when_used = json

field sample_type: ExpansionOptionsSampleTypeLhs | ExpansionOptionsSampleTypeRandom | None = None

Selection of sampling strategy

field samples_on_emulator: int = 0

Number of samples at which to evaluate an emulator (surrogate)

field seed: int | None = None

Seed of the random number generator

Constraints:
  • gt = 0

field solver_tolerance: DakotaFloat = 1e-10

Convergence tolerance for the optimizer used during the regression solve.

Constraints:
  • func = <function _serialize_dakota_float at 0x7f2a3de76700>

  • return_type = float | str

  • when_used = json

field start_order: FtMethodOrderStartOrder | None = None

(Initial) polynomial order of each univariate function within the functional tensor train.

field start_rank: int = 2

The initial rank used for the starting point during a rank adaptation.

Constraints:
  • ge = 0

field tensor_grid: Literal[True] | None = None

Use sub-sampled tensor-product quadrature points to build a polynomial chaos expansion.

field variance_based_decomp: ExpansionOptionsVarianceBasedDecomp | None = None

Activates global sensitivity analysis based on decomposition of response variance into main, interaction, and total effects

Generated Pydantic models for method.function_train