Region MTBF (Technical Specification)
These are the mini-dashboards and Analytical Objects that are used to populate the Region MTBF dashboard.
Mini-Dashboard | Analytical Object |
|---|
Causal Data By Region | |
These are the mini-dashboards and their associated Query Objects that are used to populate the Region MTBF dashboard:
Mini-Dashboard | Query Object |
|---|
RMSE | |
Part Summary | |
RMSE
The data used to generate this mini-dashboard is based on the following:
Article | Description |
|---|
Analytical Object | N/A |
Query Object | QO_PAI_ML_RMTBF_BiasValue |
Data Source | PAI Machine Learning |
Cab File | RegionMeanTimeBetweenFailure.cab |
Parameters | N/A |
Causal Data By Region
The data used to generate this mini-dashboard is based on the following:
Analytical Object | AO_PAI_ML_RMTBF_Summary |
Query Object | QO__PAI_ML_RMTBF_Summary |
Data Source | PAI Machine Learning |
Cab File | RegionMeanTimeBetweenFailure.cab |
Parameters | Name | Description | Default |
|---|
PO_PAI_ML_RMTBF_ErrorThreshold | The percentage threshold for ML vs Servigistics comparison on the dashboard. For example, if the ML result is 10% better than the Servigistics result then ML the value is used. Otherwise, the Servigistics value is used. | 10 |
|
Predecessor Jobs | None |
Build Type | The following build types are supported: • Full |
Build Frequency | None |
| • #Parts • Region Wise Count |
| Measure | Mathematical Function |
|---|
# Parts | Total part count | Effective Part Population | Sum of effective part population value across different regions | Regionname | Count of distinct regions | Effective Causal | Sum of effective causal value across different regions |
|
Part Summary
The data used to generate this mini-dashboard is based on the following:
Article | Description |
|---|
Analytical Object | N/A |
Query Object | QO_PAI_ML_RMTBF_PredictionsSummary |
Data Source | PAI Machine Learning |
Cab File | RegionMeanTimeBetweenFailure.cab |
Parameters | Name | Description | Default |
|---|
PO_PAI_ML_RMTBF_ErrorThreshold | The percentage threshold for ML vs Servigistics comparison on the dashboard. For example, if the ML result is 10% better than the Servigistics result then ML the value is used. Otherwise, the Servigistics value is used. | 10 |
|