@adaption_ai: Introducing AutoScientist. Most model training fails outside of frontier labs. AutoScientist automates the full researc…
Summary
Adaption AI introduces AutoScientist, a tool that automates the full research loop to make model training more accessible outside of frontier labs.
View Cached Full Text
Cached at: 05/13/26, 02:22 PM
Introducing AutoScientist.
Most model training fails outside of frontier labs.
AutoScientist automates the full research loop so it doesn’t have to. https://t.co/CxCpzz4mFP
Similar Articles
Auto Research with Specialist Agents Develops Effective and Non-Trivial Training Recipes
This paper introduces an auto-research framework using specialist agents to iteratively refine training recipes through an empirical loop of code execution and feedback. The system autonomously improves performance on tasks like Parameter Golf and NanoChat without human intervention by leveraging lineage feedback.
@tom_doerr: Automates research workflows with persistent multi-agent memory https://github.com/EvoScientist/EvoScientist…
EvoScientist is an open-source framework that automates research workflows using self-evolving AI scientists with persistent multi-agent memory, adopting a human-on-the-loop paradigm for autonomous research exploration and insight generation.
@CoreAutoAI: Today we're announcing Core Automation Our objective: systems that optimize and automate work, starting with research i…
CoreAutoAI unveils Core Automation, a system designed to optimize and automate work beginning with research workflows.
@ZabihullahAtal: SHOCKING: A new research shows that AI can now conduct its own AI research. Not just optimize models… but discover enti…
A new research paper introduces ASI-Arch, an autonomous AI system capable of discovering novel neural network architectures without human-designed search spaces. By running thousands of automated experiments, it generated over 100 new state-of-the-art linear attention models, signaling a major shift toward AI-driven scientific collaboration.
@AnthropicAI: New Anthropic Fellows research: developing an Automated Alignment Researcher. We ran an experiment to learn whether Cla…
Anthropic Fellows research demonstrates an experiment using Claude Opus 4.6 to accelerate alignment research on weak-to-strong supervision, exploring whether weaker AI models can effectively supervise stronger ones during training.