OpenMythos is an experimental, open-source implementation that attempts to reconstruct a hypothesized architecture behind advanced language models using a design called a Recurrent-Depth Transformer. The project explores the idea that instead of stacking hundreds of unique transformer layers, a smaller set of layers can be reused iteratively during inference to achieve deeper reasoning without increasing parameter count. It divides computation into three main stages, including a pre-processing phase, a looped recurrent reasoning block, and a final output refinement stage, creating a structured pipeline for inference. The architecture incorporates advanced techniques such as mixture-of-experts routing, adaptive computation time, and multiple attention mechanisms to dynamically allocate compute where needed. It is highly configurable through a centralized configuration system, allowing experimentation with different architectural parameters such as loop depth, attention type.

Features

  • Recurrent-depth transformer architecture with looped computation
  • Mixture-of-experts routing for dynamic specialization
  • Adaptive computation time for variable reasoning depth
  • Configurable attention mechanisms including GQA and MLA
  • Centralized configuration for architectural experimentation
  • Autoregressive generation with iterative reasoning loops

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Categories

AI Models

License

MIT License

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Additional Project Details

Programming Language

Python

Related Categories

Python AI Models

Registered

2026-04-22