Adaption aims big with AutoScientist, an AI tool that helps models train themselves (2 minute read)

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Adaption launched AutoScientist, an AI tool that automates fine-tuning to help models learn capabilities quickly, aiming to make frontier AI training more accessible.

AutoScientist helps models learn specific capabilities quickly by using an automated approach to conventional fine-tuning.
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# Adaption aims big with AutoScientist, an AI tool that helps models train themselves | TechCrunch Source: [https://techcrunch.com/2026/05/13/adaption-aims-big-with-autoscientist-an-ai-tool-that-helps-models-train-themselves/](https://techcrunch.com/2026/05/13/adaption-aims-big-with-autoscientist-an-ai-tool-that-helps-models-train-themselves/) For years, AI researchers have anticipated the moment when AI systems will be able to improve themselves better than humans could\. With investors pouring money into a new generation of research\-driven AI labs, there are more resources than ever available to pursue the goal\. Now, one of those neolabs has taken a major step toward making it real\. On Wednesday,[Adaption](https://techcrunch.com/2025/10/22/why-coheres-ex-ai-research-lead-is-betting-against-the-scaling-race/)introduced a new product called[AutoScientist](http://adaptionlabs.ai/blog/autoscientist)that helps models learn specific capabilities quickly by using an automated approach to conventional fine\-tuning\. The techniques are applicable to a wide range of fields, but the Adaption team is particularly focused on the potential for speeding up and easing the process of training and fine\-tuning a frontier\-level AI model\. According to Adaption co\-founder and CEO Sara Hooker, who previously worked as VP of AI research at Cohere, AutoScientist represents a new way to approach the AI training process\. “What’s super exciting about it is that it co\-optimizes both the data and the model, and learns the best way to basically learn any capability,” Hooker told TechCrunch\. “It suggests we can finally allow for successful frontier AI trainings outside of these labs\.” AutoScientist builds on the company’s existing data offering,[Adaptive Data](https://www.adaptionlabs.ai/adaptive-data), which aims to make it easier to build high\-quality datasets over time\. AutoScientist, meanwhile, is designed to turn those continuously improving datasets into continuously improving AI models\. “Our view at Adaption is that the whole stack should be completely adaptable, and should basically optimize on the fly to whatever task you have,” Hooker says\. Of course, that approach will only be as good as the results\. In its launch materials, Adaption boasts that AutoScientist has more than doubled win rates across different models — impressive numbers, but difficult to put into context\. Since the system is built to adapt models to specific tasks, conventional benchmarks like SWE\-Bench or ARC\-AGI aren’t applicable\. Still, Adaption is confident that users will see the difference once they try AutoScientist — so confident that the lab is making the tool free to use for the first 30 days after its release\. “The same way that code generation unlocked a lot of tasks, this is going to unlock a lot of innovation at the frontier of different fields,” Hooker says\. *When you purchase through links in our articles,[we may earn a small commission](https://techcrunch.com/techcrunch-affiliate-monetization-standards/)\. This doesn’t affect our editorial independence\.* Russell Brandom has been covering the tech industry since 2012, with a focus on platform policy and emerging technologies\. He previously worked at The Verge and Rest of World, and has written for Wired, The Awl and MIT's Technology Review\. He can be reached at russell\.brandom@techcrunch\.com or on Signal at 412\-401\-5489\. [View Bio](https://techcrunch.com/author/russell-brandom/)

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