This table contains a list of AI core principles, which I will refer to as the “Core Principles”. Some of these were compiled using publications from UNESCO, IEEE ISO, NIST and FTC. These AI Core Principles can be applied throughout the AI lifecycle. This table can be used as a guideline by many stakeholders to help them develop common law (courts, regulations, drafting contracts and audit, design, etc.
The Core Principles can be divided into three groups: Operational (Green), Valuable (Orange), or Both (Blue). Operational refers to the Core Principle that is most closely related to the operation characteristics of the AI application. It is also related to the promotion of values/norms. The Core Principle is a combination of operational and value elements.
This table will be updated periodically.
Core principle |
What it is and how to promote |
|
1 |
Accessibility |
User-friendly interface and experience (UI/UX), that is affordable; aids in understanding the algorithm. |
2 |
Accountability |
Examines output (decision-making and prediction); identifies gaps in predicted and actual outcomes. |
3 |
Accuracy |
Uses reliable data (authentic, nonrepudiated and protected against unauthorized modification or destruction); the dataset is derived using reasonable selection criteria to minimize harm; output measurement possible. |
4 |
Bias |
Protects against disparate impacts, discrimination against protected groups, and unjust outcomes; more generally, protects from inaccurate results; a subset ethics. |
5 |
Big data |
High-quality data used; compatible with decreasing dependence upon labeled architectures; maintains context relevance; promotes data accessibility. |
6 |
Consent |
It aligns with the consent of the end user to the application’s goals. |
7 |
Collaboration |
Facilitates global development; facilites information sharing between internal and externe, which translates into transparency. |
8 |
Efficiency |
Assists in a cost-effective training and time ratio; makes the best decisions regarding resource and objective utilization. |
9 |
Enabling |
Conforms to government-sponsored controlled environments for testing and scaling AI. |
10 |
Equity |
Protects against the widening of gender and protected class gap; maps to bias |
11 |
Ethics |
It encompasses a wide range of values that aim at eliminating or reducing risk to human life, privacy, and property, and to increase and maintain public trust. |
12 |
Explainability (XAI). |
Facilitates understanding of operations and outcomes; increases accountability; improves transparency. |
13 |
Fairness |
Favors treatment that is based on similar characteristics, policies and procedures. Reduces unintended disparate treatments. Uses anonymized or pseudonymized information. |
14 |
Fidelity |
Applicant’s performance can be measured relative to its code or across the deployment population. This supports measuring ongoing compliance with Core Principles. |
15 |
Fundamental rights |
Open data access is compliant. This contrasts with closed models (proprietary), which can restrict access. Maps to accessibility. |
16 |
Governance |
Developped in an environment that adheres to documented policies and procedures that ensure consistent data quality. |
17 |
Human-centered |
Compatible with law, privacy and democratic values; provides safeguards to ensure fair and just societies; protects from enhancing and perpetuating social inequality, promotes equality and social justice; aligns with best practices for user interface and experience (UI/UX); compatible with human-collaborative compatibility; compatible with experiential AI; maps to human-like dexterity in robotic applications. |
18 |
All Inclusive |
Contribution to society in large numbers; does not exclude some parts of society; is consistent with the Core Principles of ethics. |
19 |
Interpretability |
Interchangeable with explanation; maps to trust. |
20 |
Metrics |
Capable of measuring compliance with and effectiveness of the Core Principles; encourages standardization. |
21 |
Permit |
Permits are required for application development and access by end users. |
22 |
Predictable |
Maintains compatibility with the Core Principle throughout its entire lifecycle. |
23 |
Privacy |
Data protection maintained; compatible with Fair Information Principles and data minimization principles. Compatibility with and maintains anonymized, pseudonymized and encrypted data; resistance to re-identification |
24 |
R&D |
Promoting research and putting humans at the heart of AI development (also known as human-inthe-loop, see Experiential AI). |
25 |
Reliability |
Design, development and deployment are guided by best practices. They also promote Core Principles. |
26 |
Resilience |
Recoverable in the event of failure |
27 |
Robust |
Operates efficiently with minimal downtime; resists adversarial attacks; maintains operational integrity through its lifecycle; can identify and handle input/output reliability; resists unintended behavior by the end user; exhibits high level of problem flexibility; autonomous behavior maintains line-of-sight with human developers and end users; supports information sharing best practices; employs sophisticated learning techniques to minimize bias. |
28 |
Safety |
Avoid unintended behaviour; follow permit-related policies, procedures. |
29 |
Security |
Resistant against adversarial attacks, inference attacks; compatible information sharing best practices. |
30 |
Sustainable |
Promoting long-term growth; compatible with information sharing best practices. |
31 |
Track record |
Application is the result of a developer who has been known to design AI compatible with Core Principles. |
32 |
Transparency |
Encourages transparency, discovery, accessibility and non-discriminatory output; facilitates end-user understanding; encourages consensus; enables audit; compatible avec experiential AI. |
33 |
Trustworthy |
This is a catchall for accuracy, explainability and interpretability, privacy as well as reliability, robustness, safety and security (resilience), bias, and other related terms. |
34 |
Truth |
It does not lead to unfair or deceptive results. |
35 |
Wherewithal |
Developer is financially sound, can operate with resilience, and has implemented policies and procedures that fully support Core Principle compliant AI. |
36 |
Workforce Compatibility |
Take into account issues related to worker displacement; encourages effective worker interaction and training with AI. |