May 30, 2023
An AI Challenge: Balancing Open and Closed Systems
Technology debates are often a tug-of-war between open and closed systems.
On one side, open allows interoperability, customization, and integration with third-party software or hardware. Champions highlight how openness promotes transparency, accountability, competition, and significant innovation. On the other side, defenders of closed argue that they are more stable and secure and better protect their owners’ property interests.
Navigating the spectrum between open and closed is critical to effective artificial intelligence policy. The right balance will promote innovation and competition while managing AI’s significant risks.
Much of AI’s creation and evolution have happened thanks to open-source development and diffusion. Numerous widely-adopted AI open-source projects provide development frameworks and libraries such as PyTorch, TensorFlow, and MXNet, and many companies – including Hugging Face, Stability AI, Nomic AI, and Meta – have released open-source AI models or enable open-source development.
Google and OpenAI have traditionally stood on the side of openness. Both have published AI research and open-source tools. Google, for example, originally developed TensorFlow in-house and later released it as an open-source software library for building AI.
Read the full article from CEPA.
More from CNAS
-
U.S. Chip Controls and the Future of AI Compute
That escalated quickly! Emily and Geoff discuss why the U.S. aim to deny China access to the computing power necessary for frontier AI capabilities has led to an ever expandin...
By Emily Kilcrease, Geoffrey Gertz & Pablo Chavez
-
Asymmetry and AI: The Battle for Power
Paul Scharre, Vice President and Director of Studies at CNAS, joins Zero Pressure to discuss the world of asymmetric warfare, a term used to describe imbalances in conflict. F...
By Paul Scharre
-
Competition, Not Control, is Key to Winning the Global AI Race
The United States, with much of the world’s AI-enabling infrastructure, has positioned itself as the global leader in AI innovation. That might not be the case for much longer...
By Keegan McBride & Matthew Mittelsteadt
-
Regulating AI Is Easier Than You Think
Countries can regulate AI from the ground up by controlling access to highly specialized chips...
By Paul Scharre