How DASUD Governs the Full ML Lifecycle

The content discusses the integration of Generative AI into machine learning (ML) governance, emphasising the importance of the Design, Acquire, Store, Use, and Delete stages in the ML lifecycle. It highlights governance practices crucial for responsible AI deployment and how existing frameworks can guide the transition to more complex AI systems.

How to Adapt the DASUD Lifecycle from Data Governance to AI Governance

The DASUD framework—Design, Acquire, Store, Use, Delete—serves as a valuable model for AI governance, enhancing existing data management practices. It outlines a structured approach to integrate governance throughout the AI lifecycle, ensuring clarity in decision-making, accountability, and risk management while adapting familiar processes for AI applications.

Enshittification and Fighting Back

Reflecting on the decline of my personal blog during the pandemic, driven by changes in search rankings and competition made me realise that there is more to the system than meets the eye. Inspired by a podcast featuring Cory Doctorow's concept of "enshittification," I now am determined to empower others to regain control over their online experiences and focus. Future posts will explore strategies for online protection.

Understanding the DASUD Framework in the World of AI

After launching the DASUD Framework, I am now focused on AI governance, emphasising the importance of understanding fundamental problems to govern efficiently. I highlight the risks of multi-agent systems compromising data security and stress collaborative governance solutions. The piece invites readers to seek guidance on Data Governance and related topics.

The Truth About Free Apps: You Pay with Your Data

Free apps often seem costless, but they exploit personal data as their main revenue source. Users unknowingly grant access to sensitive information, which can be sold or used for targeted advertising. To safeguard privacy, it's crucial to review app permissions, read privacy policies, and choose privacy-focused alternatives.