| 1 Functions | 2 Reference Architecture | 3 Input/Output Data | 
| 4 Functions of AIMs | 5 Input/Output Data of AIMs | 6 AIW, AIMs, and JSON Metadata | 
1 Functions of AIW
The “AI-based Company Performance Prediction” AI Workflow measures the Performance of a Company by providing Default Probability, Organisational Model Index, and Business Discontinuity Probability of the Company within the given Prediction Horizon using its Governance, Financial and Risk data .
2 Reference Architecture
Figure 2 gives the normative Architecture of the “AI-based Company Performance Prediction” Use Case.

Figure 2 – Reference Model of Company Performance Prediction (MPAI-CUI)
In the “AI-based Company Performance Prediction” Use Case:
- User defines a Prediction Horizon and feeds Governance, Financial Statement and Risk Assessment data.
- Governance Assessment produces Governance Features by processing Governance and Financial data.
- Financial Assessment produces Financial Features by processing Financial Statement data.
- Risk Matrix Generation produces the Risk Matrix by processing Risk Assessment data.
- Prediction produces Organisational Model Index and Default Probability by processing Governance Features and Financial Features.
- Perturbation produces Business Discontinuity Probability by processing Default Probability and Risk Matrix.
3 Input/Output Data of AIW
Table 1 – Input/Output Data of AIW
| Input | Comments | 
| Prediction Horizon | Number of months of prediction. | 
| Governance | Governance data. | 
| Financial Statement | Full financial statement. | 
| Risk Assessment | The company assessment of the impact of vertical risks: cyber and seismic assessed according to ISO 31000 Risk Management [6], and ISO 27005 Information security risk management [7], specific for cyber risk management. | 
| Output | Comments | 
| Default Probability | The probability of the company default in the specified prediction horizon. | 
| Organisational Model Index | The adequacy of the organisational model expressed as a linear score in the 0 to 1 range in the specified prediction horizon. | 
| Business Discontinuity Probability | The probability of an interruption of the operations of the company for less than 2% of the specified prediction horizon. | 
4 Functions of AI Modules
The AI Modules in Figure 2 perform the Functions specified in Table 2.
Table 2 – Functions of AI Modules
| AIM | Function | 
| Governance Data Assessment | Computes the Governance Features. | 
| Financial Data Assessment | Computes the Financial Features. | 
| Risk Matrix Generation | Builds the Risk Matrix. | 
| Discontinuity and Default Prediction | Computes 1. The Default Probability in the Prediction Horizon. 2. The Organisational Model Index. | 
| Prediction Result Perturbation | Computes the Business Discontinuity Probability in the Prediction Horizon by perturbing the Governance Features and Financial Features. | 
5 Input/Output Data of AI Modules
Figure 3 -Input/Output Data of AI Modules
6 AIW Metadata
| AIW | AIMs | Names | JSON | 
| CUI-CPP | Company Performance Prediction | X | |
| CUI-GDA | Governance Data Assessment | X | |
| CUI-FDA | Financial Data Assessment | X | |
| CUI-RMG | Risk Matrix Generation | X | |
| CUI-DDP | Discontinuity and Default Prediction | X | |
| CUI-PRP | Prediction Result Perturbation | X | 
