A newer version of this model is available: brandonbaek/Bori-2-135M-Base

🌾 Bori-1 0.6B Base (Checkpoint 1000)

πŸš€ Newer Version Available: The Bori project has evolved! Please see Bori-2 135M Base for the completed Phase 2 pre-training pipeline, or check out the Bori GitHub repository for the latest Bori-3 developments.

Bori-1 is the very first experimental proof-of-concept for the Bori project, aimed at exploring the feasibility of training bilingual (Korean-English) Small Language Models (SLMs) under extreme compute constraints.

⚠️ Status: This was a preliminary exploratory run paused early at Checkpoint 1000. It is published solely for historical tracking and to serve as a baseline for the architectural shifts made in Bori-2 and Bori-3.

πŸ€– Model Details

  • Base Architecture: Qwen2
  • Parameter Count: ~600M
  • Languages: Korean, English

πŸ’» Hardware & Compute

  • Hardware: Trained on Kaggle Notebooks using 2x NVIDIA T4 GPUs (16GB VRAM each).
  • Constraints: Navigating the memory constraints of a 600M parameter model on 16GB GPUs without advanced quantization required aggressive gradient accumulation and small batch sizes, leading to the decision to pivot to the highly efficient ~135M architecture for Bori-2 to allow for more robust pre-training experimentation.

⚠️ Limitations & Intended Use

This model was paused very early in its training lifecycle. It is significantly undertrained and exhibits poor coherence. It should not be used for text generation, fine-tuning, or deployment. Its primary value is as a historical artifact demonstrating the early stages of the Bori project's development.

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