Latent Space: The AI Engineer Podcast

Llama 2: The New Open LLM SOTA (ft. Nathan Lambert, Matt Bornstein, Anton Troynikov, Russell Kaplan, Whole Mars Catalog et al.)

51 snips
Jul 19, 2023
In this discussion, guests Nathan Lambert, a machine learning researcher at Hugging Face, and Matt Bornstein from a16z, share insights on the revolutionary Llama 2 model. They explore its technical advancements, including improved context length and its arrival as a strong competitor in the open LLM landscape. Ethical concerns surrounding open-source AI, data sourcing, and user privacy come into play. The conversation highlights the potential for democratizing AI and the importance of having control over sensitive data, pivotal for businesses and organizations.
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INSIGHT

Llama 2 Model Sizes and Data

  • Llama 2 has varying model sizes but omitted a 34B version due to safety concerns.
  • It has a larger pre-training corpus than Llama 1 but details remain undisclosed.
ANECDOTE

Overly Cautious Safety

  • Llama 2's safety measures can be excessive, sometimes refusing harmless requests.
  • It refused to provide animal emojis, deeming it disrespectful, and wouldn't advise on killing a Linux process.
ADVICE

Focus on Facts

  • Focus on factual elements when discussing Llama 2.
  • Nathan Lambert, having spent considerable time with the paper, is a valuable resource.
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