metadata
			license: apache-2.0
datasets:
  - pico-lm/pretokenized-dolma
language:
  - en
metrics:
  - pico-lm/perplexity
pipeline_tag: text-generation
Pico Decoder Tiny
pico-decoder-tiny is the smallest (11M) model in the pico-decoder suite β a lightweight, LLaMA-style decoder-only transformer trained from scratch using pico-train. It is designed for transparent and reproducible research into the learning dynamics of language models, and is fully compatible with the pico-analyze toolkit for detailed interpretability analysis.
π§ Model Details
| Field | Value | 
|---|---|
| Architecture | Decoder-only transformer (LLaMA-style) | 
| Parameters | 11M | 
| Layers | 12 | 
| Hidden Size | 96 | 
| Feed Foward Size | 384 | 
| Attention Heads | 12 | 
| Key/Value Heads | 4 | 
π Training
- Dataset: 
pretokenized-dolma, English-only - Training steps: 200,000
 - Batch size: 1024
 - Sequence length: 2048
 - Optimizer: AdamW
 - Learning rate schedule: Linear decay with warmup
 - Compute: 16 A100-SXM4-80GB GPUs
 
π Evaluation and Analysis
This model supports fine-grained analysis using pico-analyze. This tool enables researchers to understand how learning unfolds over training, even at very small scales.
We also evaluate perplexity of the model on the pico-paloma-tinsy dataset.
π Citation
If you use pico-tiny or any other pico-decoder model in your research, please cite:
@software{pico2025,
    author = {Diehl Martinez, Richard},
    title = {Pico: A Lightweight Framework for Studying Language Model Learning Dynamics},
    year = {2025,
    url = {https://github.com/pico-lm}
}