Blog

Delve into insightful blog posts from CSET experts exploring the nexus of technology and policy. Navigate through in-depth analyses, expert op-eds, and thought-provoking discussions on inclusion and diversity within the realm of technology.

The European Union's Artificial Intelligence Act has officially come into force today after more than five years of legislative processes and negotiations. While marking a significant milestone, it also initiates a prolonged phase of implementation, refinement, and enforcement. This blog post outlines key aspects of the regulation, such as rules for general-purpose AI and governance structures, and provides insights into its timeline and future expectations.

Assessment


Peer Watch


Filter entries

On September 8, 2023, Senators Richard Blumenthal (D-CT) and Josh Hawley (R-MO) released their Bipartisan Framework on AI Legislation. The framework includes many ideas and recommendations that CSET research has highlighted over the past four years. This blog post highlights some of the most relevant reports and CSET’s perspective on the framework’s elements.

Universities can build more inclusive computer science programs by addressing the reasons that students may be deterred from pursuing the field. This blog post explores some of those reasons, features of CS education that cause them, and provides recommendations on how to design learning experiences that are safer and more exploratory for everyone.

The much-anticipated National Cyber Workforce and Education Strategy (NCWES) provides a comprehensive set of strategic objectives for training and producing more cyber talent by prioritizing and encouraging the development of more localized cyber ecosystems that serve the needs of a variety of communities rather than trying to prescribe a blanket policy. This is a much-needed and reinvigorated approach that understands the unavoidable inequities in both cyber education and workforce development, but provides strategies for mitigating them. In this blog post, we highlight key elements that could be easily overlooked.

Why Improving AI Reliability Metrics May Not Lead to Reliability

Romeo Valentin and Helen Toner
| August 8, 2023

How can we measure the reliability of machine learning systems? And do these measures really help us predict real world performance? A recent study by the Stanford Intelligent Systems Laboratory, supported by CSET funding, provides new evidence that models may perform well on certain reliability metrics while still being unreliable in other ways. This blog post summarizes the study’s results, which suggest that policymakers and regulators should not think of “reliability” or “robustness” as a single, easy-to-measure property of an AI system. Instead, AI reliability requirements will need to consider which facets of reliability matter most for any given use case, and how those facets can be evaluated.

America’s Future Lies in Technical Alliances

Melissa Flagg
| January 8, 2020

Prevailing frameworks ignore the uniqueness of America’s R&D ecosystem and the tremendous expansion of global R&D beyond China. The United States must recognize the power of R&D as a cornerstone of the modern global landscape.

Thoughts on Russia’s AI Strategy

Margarita Konaev
| October 30, 2019

On October 10th, 2019, Russia released its national artificial intelligence strategy. Margarita Konaev analyzed the strategy in the context of Moscow's larger strategic vision.