_rootcomputer

An independent AI research lab building small language models and the infrastructure to train them.

Rootcomputer builds and studies small language models — typically under 7 billion parameters — along with the training pipelines, corpora, and evaluation tools needed to develop them from scratch.

Our work is primarily experimental. We design model architectures, assemble pretraining corpora, run multi-phase training pipelines, and study how architectural and data decisions affect downstream behavior, alignment, and reliability at small scale.

Research Areas

  • Transformer architecture design and experimentation at small scale
  • Pretraining corpus construction, curation, and mixing strategies
  • Multi-phase training pipelines: pretraining, supervised fine-tuning, and alignment
  • Behavioral stability, failure analysis, and generalization in compact models
  • Foundational questions in AI cognition, alignment, and human-AI coexistence