2min snip

Latent Space: The AI Engineer Podcast — Practitioners talking LLMs, CodeGen, Agents, Multimodality, AI UX, GPU Infra and all things Software 3.0 cover image

Why Google failed to make GPT-3 + why Multimodal Agents are the path to AGI — with David Luan of Adept

Latent Space: The AI Engineer Podcast — Practitioners talking LLMs, CodeGen, Agents, Multimodality, AI UX, GPU Infra and all things Software 3.0

NOTE

Focus on Agent in AGI Definition

The focus in defining AGI should revolve around creating a model that can perform any task a human can do on a computer. By adopting this definition, the concept of an agent naturally emerges. While reinforcement learning (RL) has been valuable in formulating goals and maximizing rewards, it lacks efficiency. Instead of trying to replicate the entire evolutionary process, a quicker route to AGI could be behavioral cloning from existing human knowledge. For instance, language models (LM) have successfully achieved this by cloning human-written content. Future advancements may involve cloning knowledge from the visual world through multimodal models.

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