Vincent Slot & Jaap Kersten
Rethinking Recruiting: What you didn’t know about Responsible AI
#1about 6 minutes
Why increasing AI complexity and impact demand responsibility
The evolution from simple rule-based systems to complex, opaque models like LLMs necessitates a responsible approach due to their growing societal impact.
#2about 3 minutes
Defining the core principles of responsible AI
Responsible AI is defined by its benefit to all stakeholders, grounded in the core principles of fairness, transparency, and human-centered design.
#3about 4 minutes
Evaluating AI trustworthiness through data and automation scope
Assessing an AI system's trustworthiness involves examining its training data, the scope of process automation, and how it uses powerful models like LLMs.
#4about 3 minutes
An overview of the EU AI Act and its purpose
The EU AI Act aims to create a harmonized legal framework for trustworthy AI, preventing inconsistent practices and building consumer trust.
#5about 4 minutes
Understanding the risk-based approach of the EU AI Act
The legislation categorizes AI systems into four tiers—unacceptable, high, limited, and general purpose—each with distinct obligations for different actors in the value chain.
#6about 1 minute
Key compliance obligations for high-risk AI systems
High-risk AI systems must adhere to strict requirements, including risk management, data governance, technical documentation, and human oversight.
#7about 2 minutes
Navigating conformity assessments and harmonized standards
AI systems must undergo a conformity assessment, often based on internal controls or future harmonized standards, to receive CE marking for market placement.
#8about 5 minutes
Enforcement and significant fines under the EU AI Act
Non-compliance with the EU AI Act can result in substantial fines, reaching up to 35 million euros or 7% of global revenue for prohibited practices.
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AI Governance Consultant
TRUSTEQ GmbH





AI Developer (Startup / Fullstack met AI Focus)
Verzelen Maes Consultants BV
Remote
API
Azure
DevOps
Python
+5

