Thereโs been great interest in what Mira Muratiโs Thinking Machines Lab is building with its $2 billion in seed funding and the all-star team of former OpenAI researchers who have joined the lab. In a blog post published on Wednesday, Muratiโs research lab gave the world its first look into one of its projects: creating AI models with reproducible responses.
The research blog post, titled โDefeating Nondeterminism in LLM Inference,โ tries to unpack the root cause of what introduces randomness in AI model responses. For example, ask ChatGPT the same question a few times over, and youโre likely to get a wide range of answers. This has largely been accepted in the AI community as a fact โ todayโs AI models are considered to be non-deterministic systemsโ but Thinking Machines Lab sees this as a solvable problem.
The post, authored by Thinking Machines Lab researcher Horace He, argues that the root cause of AI modelsโ randomness is the way GPU kernels โ the small programs that run inside of Nvidiaโs computer chips โ are stitched together in inference processing (everything that happens after you press enter in ChatGPT). He suggests that by carefully controlling this layer of orchestration, itโs possible to make AI models more deterministic.
Beyond creating more reliable responses for enterprises and scientists, He notes that getting AI models to generate reproducible responses could also improve reinforcement learning (RL) training. RL is the process of rewarding AI models for correct answers, but if the answers are all slightly different, then the data gets a bit noisy. Creating more consistent AI model responses could make the whole RL process โsmoother,โ according to He. Thinking Machines Lab has told investors that it plans to use RL to customize AI models for businesses, The Information previously reported.
Murati, OpenAIโs former chief technology officer, said in July that Thinking Machines Labโs first product will be unveiled in the coming months, and that it will be โuseful for researchers and startups developing custom models.โ Itโs still unclear what that product is, or whether it will use techniques from this research to generate more reproducible responses.
Thinking Machines Lab has also said that it plans to frequently publish blog posts, code, and other information about its research in an effort to โbenefit the public, but also improve our own research culture.โ This post, the first in the companyโs new blog series called โConnectionism,โ seems to be part of that effort. OpenAI also made a commitment to open research when it was founded, but the company has become more closed off as itโs become larger. Weโll see if Muratiโs research lab stays true to this claim.
The research blog offers a rare glimpse inside one of Silicon Valleyโs most secretive AI startups. While it doesnโt exactly reveal where the technology is going, it indicates that Thinking Machines Lab is tackling some of the largest question on the frontier of AI research. The real test is whether Thinking Machines Lab can solve these problems, and make products around its research to justify its $12 billion valuation.
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