| --- |
| language: |
| - en |
| license: mit |
| tags: |
| - text-generation |
| - character-level |
| - tiny-stories |
| - raspberry-pi |
| - gpt |
| - decoder-only |
| datasets: |
| - roneneldan/TinyStories |
| metrics: |
| - perplexity |
| model-index: |
| - name: VerySmollGPT |
| results: |
| - task: |
| type: text-generation |
| name: Text Generation |
| dataset: |
| name: TinyStories |
| type: roneneldan/TinyStories |
| metrics: |
| - type: loss |
| value: 0.6777 |
| name: Training Loss (Final) |
| verified: false |
| - type: loss |
| value: 0.7028 |
| name: Validation Loss (Final) |
| verified: false |
| - type: loss |
| value: 0.6924 |
| name: Validation Loss (Best) |
| verified: false |
| --- |
| |
| # VerySmollGPT |
|
|
| A lightweight character-level GPT model trained entirely on a **Raspberry Pi 5**. This model demonstrates that capable language models can be trained on consumer hardware with limited resources. |
|
|
| ## Model Description |
|
|
| VerySmollGPT is a decoder-only transformer model (GPT-style architecture) designed for character-level text generation. It was trained on the TinyStories dataset to generate coherent short stories. |
|
|
| - **Developed by:** Kittykat924 |
| - **Model type:** Decoder-only Transformer (GPT) |
| - **Language:** English |
| - **License:** MIT |
| - **Trained on:** Raspberry Pi 5 (CPU only) |
| - **Training duration:** ~9 days |
| - **Parameters:** 4.80M (unique), 4.83M (with weight tying) |
|
|
| ## Model Architecture |
|
|
| | Component | Value | |
| |-----------|-------| |
| | Vocabulary Size | 104 characters | |
| | Embedding Dimension | 256 | |
| | Layers | 6 | |
| | Attention Heads | 8 | |
| | Feed-forward Dimension | 1024 | |
| | Context Window | 128 tokens | |
| | Dropout | 0.1 | |
| | Weight Tying | Yes (token embeddings ↔ output layer) | |
|
|
| ## Training Details |
|
|
| ### Training Data |
|
|
| - **Dataset:** [TinyStories](https://huggingface.co/datasets/roneneldan/TinyStories) |
| - **Dataset Size:** ~25MB (optimized for Raspberry Pi) |
| - **Total Tokens:** ~25M characters |
| - **Train/Val Split:** 90/10 |
|
|
| ### Training Procedure |
|
|
| **Hardware:** |
| - Raspberry Pi 5 |
| - CPU-only training (no GPU) |
| - Training time: ~9 days |
|
|
| **Hyperparameters:** |
| - Epochs: 3 |
| - Batch Size: 16 |
| - Learning Rate: 3e-4 (initial) |
| - Min Learning Rate: 1e-4 (cosine annealing) |
| - Optimizer: AdamW (β₁=0.9, β₂=0.95) |
| - Weight Decay: 0.01 |
| - Gradient Clipping: 1.0 |
| - Max Batches per Epoch: 130,000 |
| - Context Window: 128 tokens |
|
|
| **Training Stats:** |
| - Final Epoch: 2 (checkpoint from epoch 3) |
| - Global Steps: 390,000 |
| - Best Validation Loss: 0.692 |
|
|
| ### Tokenization |
|
|
| Character-level tokenization with 104 unique tokens: |
| - 100 regular characters (letters, numbers, punctuation, special characters) |
| - 4 special tokens: `<PAD>`, `<UNK>`, `<BOS>`, `<EOS>` |
|
|
| ## Usage |
|
|
| ### Installation |
|
|
| ```bash |
| pip install torch safetensors |
| ``` |
|
|
| ### Loading the Model |
|
|
| ```python |
| from safetensors.torch import load_file |
| import torch |
| import torch.nn as nn |
| |
| # Load model weights |
| state_dict = load_file('model.safetensors') |
| |
| # Load configuration |
| import json |
| with open('config.json', 'r') as f: |
| config = json.load(f) |
| |
| # Note: You'll need to implement the VerySmollGPT architecture |
| # or use the original model.py from the repository |
| ``` |
|
|
| ### Text Generation Example |
|
|
| ```python |
| # Assuming you have the model loaded |
| model.eval() |
| |
| # Encode your prompt (character-level) |
| prompt = "Once upon a time" |
| input_ids = [char_to_idx[c] for c in prompt] |
| input_tensor = torch.tensor([input_ids], dtype=torch.long) |
| |
| # Generate |
| with torch.no_grad(): |
| output_ids = model.generate( |
| input_tensor, |
| max_new_tokens=200, |
| temperature=0.8, |
| top_k=40 |
| ) |
| |
| # Decode output |
| generated_text = ''.join([idx_to_char[i] for i in output_ids[0].tolist()]) |
| print(generated_text) |
| ``` |
|
|
| ## Example Outputs |
|
|
| **Prompt:** "Once upon a time" |
|
|
| **Generated:** |
| > Once upon a time, there was a little girl named Lily. She loved to play with her toys and her favorite was a penguin that had a shiny metal box on it. Timmy liked to... |
|
|
| **Prompt:** "The quick brown fox" |
|
|
| **Generated:** |
| > The quick brown fox wanted to play with him again. The fox said he was not fair anymore. He said he was sorry and that he learned his lesson... |
|
|
| ## Limitations and Bias |
|
|
| - **Character-level tokenization:** Less efficient than BPE/WordPiece for longer texts |
| - **Small context window:** 128 tokens limits long-range dependencies |
| - **Training data:** Limited to TinyStories dataset style (simple children's stories) |
| - **Vocabulary:** Only 104 characters, may not handle all Unicode characters |
| - **Coherence:** Best for short-form text generation (stories, snippets) |
|
|
| ## Environmental Impact |
|
|
| This model was intentionally trained on a Raspberry Pi 5 to demonstrate low-power AI training: |
|
|
| - **Hardware:** Raspberry Pi 5 (CPU only, ~15W power consumption) |
| - **Training Duration:** ~9 days |
| - **Estimated Energy:** ~3.24 kWh total |
| - **Carbon Footprint:** Minimal compared to GPU-based training |
|
|
| ## Technical Specifications |
|
|
| - **Model Size:** 19 MB (safetensors format) |
| - **Inference Memory:** ~200-300 MB RAM |
| - **Training Memory:** ~1-2 GB RAM (batch_size=16) |
| - **Precision:** FP32 |
| |
| |
| ## Acknowledgments |
| |
| - Architecture inspired by [Andrej Karpathy's nanoGPT](https://github.com/karpathy/nanoGPT) |
| - Dataset: [TinyStories by Ronen Eldan and Yuanzhi Li](https://huggingface.co/datasets/roneneldan/TinyStories) |
| - Trained on Raspberry Pi 5 to demonstrate accessible AI training |
| |
| |
| [Github](https://github.com/Igidn/VerySmollGPT) |