Kilian Kluge & Isabel Bär
Model Governance and Explainable AI as tools for legal compliance and risk management
#1about 3 minutes
The challenge of operationalizing production machine learning systems
An AI-powered recruiting tool example illustrates the risks and complexities of deploying machine learning models beyond the notebook.
#2about 2 minutes
Four pillars for deploying successful machine learning systems
Successful long-term ML deployment requires a combination of MLOps, model governance, data governance, and explainable AI.
#3about 4 minutes
Understanding model governance and emerging legal frameworks
Model governance addresses legal compliance, like the EU AI Act's risk-based approach, and mitigates business and reputational risks.
#4about 7 minutes
Using MLOps infrastructure to implement model governance
The MLOps lifecycle, including artifact repositories and model registries, provides the technical foundation for proving performance and ensuring reproducibility.
#5about 4 minutes
Differentiating between model interpretability and explainability
Interpretability provides a technical understanding of model behavior for engineers, while explainability communicates decisions to non-technical stakeholders.
#6about 3 minutes
The four core principles of explainable AI
Explanations must be meaningful to the target audience, accurately reflect the model's process, and operate within the model's knowledge limits.
#7about 3 minutes
Applying explainable AI to a recruiting use case
Techniques like anchor explanations and counterfactuals can answer key HR questions about why a candidate was selected and how certain the model is.
#8about 1 minute
Auditing AI systems using MLOps and explainability
Combining MLOps infrastructure for reproducibility with XAI tools enables internal and external auditors to verify model decisions and compliance.
#9about 2 minutes
Conclusion and handling GDPR deletion requests
A discussion on maintaining reproducibility and compliance when faced with GDPR data deletion requests, emphasizing the importance of thorough documentation.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
04:18 MIN
Ensuring AI reliability with monitoring and data governance
Navigating the AI Revolution in Software Development
02:18 MIN
The growing importance of explainable AI in modern systems
Explainable machine learning explained
01:27 MIN
The importance of explainable AI and data quality
Confuse, Obfuscate, Disrupt: Using Adversarial Techniques for Better AI and True Anonymity
07:11 MIN
Addressing legal challenges and building trust in AI systems
From Monolith Tinkering to Modern Software Development
02:46 MIN
Overcoming legal and security roadblocks for AI adoption
The AI Skills Gap: What Tech Leaders Must Get Right
01:25 MIN
Key compliance obligations for high-risk AI systems
Rethinking Recruiting: What you didn’t know about Responsible AI
02:45 MIN
Balancing AI innovation with safety and public trust
AI in Leadership: How Technology is Reshaping Executive Roles
03:36 MIN
Managing internal risks from employee AI adoption
Tackling the Risks of AI - With AI
Featured Partners
Related Videos
Explainable machine learning explained
Karol Przystalski
Rethinking Recruiting: What you didn’t know about Responsible AI
Vincent Slot & Jaap Kersten
Panel: How AI is changing the world of work
Pascal Reddig, TJ Griffiths, Fabian Schmidt, Oliver Winzenried & Matthias Niehoff & Mirko Ross
Trust by Design: Creating Responsible AI-Powered Services
Dr. Marc Fuchs, Christoph Bräunlein, Eva Stepkes & Niklas Harzheim
Staying Safe in the AI Future
Cassie Kozyrkov
What non-automotive Machine Learning projects can learn from automotive Machine Learning projects
Jan Zawadzki
A walkthrough on Responsible AI Frameworks and Case Studies
Toju Duke
Responsible AI in Practice: Real-World Examples and Challenges
Steffen Bosse, Mina Saidze, Ray Eitel-Porter & Björn Bringmann
Related Articles
View all articles

.gif?w=240&auto=compress,format)
.gif?w=240&auto=compress,format)
From learning to earning
Jobs that call for the skills explored in this talk.





Nomitri
Berlin, Germany
DevOps
Gitlab
Docker
Ansible
Grafana
+6


score4more GmbH
Berlin, Germany
Remote
Intermediate
DevOps
TypeScript
Data analysis
Machine Learning
+2

