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https://www.lesswrong.com/posts/bxt7uCiHam4QXrQAA/cyborgism
There is a lot of disagreement and confusion about the feasibility and risks associated with automating alignment research. Some see it as the default path toward building aligned AI, while others expect limited benefit from near term systems, expecting the ability to significantly speed up progress to appear well after misalignment and deception. Furthermore, progress in this area may directly shorten timelines or enable the creation of dual purpose systems which significantly speed up capabilities research.
OpenAI recently released their alignment plan. It focuses heavily on outsourcing cognitive work to language models, transitioning us to a regime where humans mostly provide oversight to automated research assistants. While there have been a lot of objections to and concerns about this plan, there hasn’t been a strong alternative approach aiming to automate alignment research which also takes all of the many risks seriously.
The intention of this post is not to propose an end-all cure for the tricky problem of accelerating alignment using GPT models. Instead, the purpose is to explicitly put another point on the map of possible strategies, and to add nuance to the overall discussion.
By LessWrong4.8
1212 ratings
https://www.lesswrong.com/posts/bxt7uCiHam4QXrQAA/cyborgism
There is a lot of disagreement and confusion about the feasibility and risks associated with automating alignment research. Some see it as the default path toward building aligned AI, while others expect limited benefit from near term systems, expecting the ability to significantly speed up progress to appear well after misalignment and deception. Furthermore, progress in this area may directly shorten timelines or enable the creation of dual purpose systems which significantly speed up capabilities research.
OpenAI recently released their alignment plan. It focuses heavily on outsourcing cognitive work to language models, transitioning us to a regime where humans mostly provide oversight to automated research assistants. While there have been a lot of objections to and concerns about this plan, there hasn’t been a strong alternative approach aiming to automate alignment research which also takes all of the many risks seriously.
The intention of this post is not to propose an end-all cure for the tricky problem of accelerating alignment using GPT models. Instead, the purpose is to explicitly put another point on the map of possible strategies, and to add nuance to the overall discussion.

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