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The performance gap between open and closed AI models is shrinking
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The AI landscape evolves: Open AI models are catching up to closed models in performance, with only a one-year lag, according to a new report by Epoch AI.

  • Meta’s Llama 3.1 405B, released in July, took about 16 months to match the capabilities of GPT-4’s first version.
  • The gap between open and closed models could shrink further if Meta releases its next-generation AI, Llama 4, as an open model.
  • Researchers analyzed hundreds of notable models released since 2018, measuring performance on technical benchmarks and computing power used for training.

Implications for policymakers: The narrowing gap between open and closed AI models presents both opportunities and challenges for regulators and AI labs.

  • The lag provides a window for assessing frontier capabilities before they become widely available in open models.
  • Policymakers are grappling with how to deal with increasingly powerful AI systems that can reshape information environments and potentially cause harm.
  • The distinction between ‘open’ and ‘closed’ AI models is not straightforward, with varying definitions and licensing agreements.

Benefits of open AI models: Making AI models open can democratize access to technology and drive innovation and competition.

  • Open communities involve a wider, more diverse group in AI development.
  • They drive innovation through collaboration, particularly in making technical processes more efficient.
  • Open models enable greater transparency and accountability, allowing researchers to examine training data and address potential biases.

Risks and challenges: The accessibility of open models creates inherent risks and governance challenges.

  • Malicious actors can use open models for harmful purposes, such as producing child sexual abuse material or developing military applications.
  • Chinese research institutions have reportedly used Meta’s Llama model for military purposes, highlighting the inability to recall publicly released models.
  • Governance of open models is challenging due to the lack of centralized control, particularly concerning extreme risks posed by future AI systems.

Closed model considerations: While more secure, closed proprietary models present their own set of challenges.

  • Access is controlled by developers, but they are more opaque and difficult for third parties to inspect.
  • Organizations processing sensitive data may avoid closed models due to privacy concerns.
  • Despite stronger built-in guardrails, many people have found ways to ‘jailbreak’ closed models.

Governance and regulation: The safety of AI models is increasingly becoming a focus for both private companies and government institutions.

  • The U.S. AI Safety Institute (AISI) is playing a growing role in safety-testing models before release.
  • The shrinking gap between open and closed models may necessitate new approaches to regulating open model development.
  • Measuring AI capabilities remains challenging due to the lack of standardized definitions and the varying strengths of different model types.

Future implications: As AI capabilities continue to advance, the complexity of governing this technology will increase.

  • Even without further progress, it could take years to fully integrate existing AI systems into our world.
  • New capabilities, such as Anthropic’s model’s ability to directly control a computer, are continuously being added.
  • Experts emphasize the need to establish clear threat models and identify the best points for intervention in addressing potential harms.
The Gap Between Open and Closed AI Models Might Be Shrinking. Here's Why That Matters

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