

The Future of Risk Management is Here. Are You Ready to Leap?
Be the AI + Risk expert in your team.
Join the groundbreaking program in solution design for the new era.
Say goobye
to isolated
Risk Management

THE PORTAL TO
PROJECT ENCHIRIDION
Enchiridion is a platform that demonstrates the power of contextual graphs associated with AI. Change the way you see and feel risk: the context-aware way.
⚠️ USE CAUTION! This platform replaces the traditional risk register, offering numerous advantages. Are you ready?
THE LOGIC OF ENCHIRIDION

Enchiridion's logic and ontology were designed for decision-making under uncertainty—where options exist, information is insufficient, or uncertain input variables create a wide range of plausible outcomes. It assumes that the company establishes policies, defines targets, and sets tolerances for both risk and performance appetites based on its objectives. However, a degree of tension will always remain due to constraints in resources or values. Risk and performance drivers are assessed to inform decisions, whether systematic or ad hoc. These decisions are made by designated entities (e.g., executive meetings, committees) and are continuously fed back into the system for monitoring, comparing real-world data with expected performance.

The project is being developed with a free note-taking app, Obsidian, which offers many important functionalities for the task and is reasonably easy to deploy and edit by anyone interested, including old timers like me. I am using ChatGPT 4o to test an LLM’s response to the use-case, i. e. if the LLM improves its understanding of the specific business. The Decision-Making Architecture is made of: Ontology In computer science, Ontology is a standardized architecture for the representation of Knowledge, in the form of agreed domain semantics. The fundamental asset of ontologies is their relative independence of applications, i.e. an ontology consists of relatively generic knowledge that can be reused by different kinds of applications/tasks. An ontology is built by connecting triples of entity, relationship, and another entity. For example: Ontology: Risk Driver → Informs → Decision Some authors call this a “triplet of subject, verb and predicate”. Knowledge graphs are built the same way but are more specific (answering “which risk driver informs which decision?”) to the use-case: Knowledge Graph: Product Contamination (Risk Driver) → Informs → Product Safety Validation (Decision) An ontology can be designed by an institution or group to communicate knowledge in a specific domain that many organizations can replicate in computer applications. This is widely done in health sciences, biology and many other domains. For example, my custom GPT can retrieve triples from the Obsidian files and build a knowledge graph in seconds for practical applications. Applied Ontology | Knowledge Graphs If an organization adopts an ontology, it must develop an applied ontology (the “metadata layer”) and one or more knowledge graphs. This means that the organization adapts to the generalized framework, adding specific entities underneath the ontology, and will transfer that information to a specialized graph software (such as Neo4j, GraphDB, ArangoDB, Memgraph, Metaphacts and many others). Applied ontologies also add real-world details, such as causes of risks and relevant controls, enabling advanced querying and automation. The Enchiridion applied ontology provides a blueprint that any organization can tweak, regardless of industry, because it covers all common decision points and respective trade-offs. Graph databases A graph database is built in one of the graph applications mentioned above, by adding real data underneath a knowledge graph. For example, the results of the risk assessments of product contamination and the test data from product sampling can be connected to the rest of the decision system.
YOUR JOURNEY FROM
CONCEPT TO APPLICATION

Project Support
- Full access to Blog.
- Full access to native files from Project Enchiridion and updates.

Coaching Services
Coaching is available for individuals or for a company group, in one-on-one format.
You choose the topics and the project.
Check potential coaching pathways clicking HERE.
Standard price: 180 U$ per two-hour session. Contact us below.

Custom Solutions
Explore bespoke solutions crafted to address your unique business requirements and optimize your approach to governance, auditing, risk and uncertainty management.
Contact me by e-mail or whatsapp to request a price quote!