188 lines
5.1 KiB
Markdown
188 lines
5.1 KiB
Markdown
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---
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library_name: transformers
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language:
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- kn
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tags:
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- kannada
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- gpt2
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- language-model
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- low-resource-language
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- dravidian
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license: mit
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---
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# Kannada GPT-2 Small (kannada-gpt2-32m)
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A **31.6M parameter GPT-2 style autoregressive language model** trained entirely from scratch on Kannada text. Everything — data pipeline, BPE tokenizer, model weights — built from the ground up on a single NVIDIA RTX 5070.
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**No pretrained initialization. No fine-tuning. Pure Kannada.**
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## Model Details
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### Model Description
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This is a small GPT-2 model trained from scratch on Kannada text. It uses a custom BPE tokenizer also trained from scratch on the same data. The model can generate coherent Kannada text and produces useful representations for downstream tasks.
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- **Developed by:** AbhiDS16
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- **Model type:** GPT-2 (decoder-only transformer)
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- **Language:** Kannada (kn)
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- **License:** MIT
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- **Parameters:** 31,626,240
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- **Context length:** 512 tokens
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- **Vocabulary size:** 12,000
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- **Trained from scratch:** Yes (no pretrained initialization)
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### Model Sources
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- **Repository:** https://github.com/thorOdinson16/KanLM
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- **Demo:** Use the Quick Start code below
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## Uses
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### Direct Use
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The model can be used for:
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- Kannada text generation
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- Extracting embeddings for downstream tasks (classification, clustering)
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- Fine-tuning on task-specific Kannada datasets
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- Studying low-resource language model training
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### Downstream Use
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The model's frozen embeddings achieve **73.5% accuracy** on Kannada sentiment classification with a simple logistic regression head — demonstrating transferable representations.
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### Out-of-Scope Use
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- Chat/instruction-following (model is not instruction-tuned)
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- Production systems requiring high factual accuracy
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- Sensitive content generation without safeguards
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## Bias, Risks, and Limitations
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- **Small model size:** 31.6M parameters limits factual knowledge and reasoning
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- **Repetition:** Tends to repeat phrases in longer generations
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- **Training data bias:** Web text (news, blogs) reflects biases and code-mixing present in online Kannada
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- **Not instruction-tuned:** Raw causal LM — not suitable for chat/QA without fine-tuning
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- **Data recency:** Training data from mC4 (2011–2022)
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## How to Get Started with the Model
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```python
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from transformers import AutoModelForCausalLM, AutoTokenizer
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model = AutoModelForCausalLM.from_pretrained("AbhiDS16/kannada-gpt2-32m")
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tokenizer = AutoTokenizer.from_pretrained("AbhiDS16/kannada-gpt2-32m")
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prompt = "ನಾನು ಇಂದು ಬೆಳಿಗ್ಗೆ"
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inputs = tokenizer(prompt, return_tensors="pt")
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outputs = model.generate(
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**inputs,
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max_new_tokens=80,
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temperature=0.7,
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do_sample=True,
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top_p=0.9,
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pad_token_id=tokenizer.pad_token_id,
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)
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print(tokenizer.decode(outputs[0], skip_special_tokens=True))
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```
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## Training Details
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### Training Data
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**CulturaX-Kn** — 1.35M documents (~4GB) of Kannada web text from mC4. After filtering (Kannada script ratio ≥ 60%, deduplication, length filtering), **12.6M clean sentences** were used for training.
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### Training Procedure
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- **Precision:** fp16 mixed
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- **Batch size:** 16 (effective 32 with gradient accumulation)
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- **Learning rate:** 5e-4 with cosine decay and 1,000 step warmup
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- **Optimizer:** AdamW (β₁=0.9, β₂=0.95, weight decay=0.01)
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- **Gradient clipping:** 1.0
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- **Epochs:** 3
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- **Total steps:** 83,874
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- **Training tokens:** ~463M
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### Speeds, Sizes, Times
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- **Hardware:** NVIDIA RTX 5070 (8GB VRAM)
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- **Training time:** 7 hours 16 minutes
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- **Model size on disk:** ~126MB (safetensors)
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- **Throughput:** ~3.2 steps/second
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## Evaluation
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### Perplexity
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| Metric | Value |
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|--------|-------|
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| Validation loss | 3.4594 |
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| Perplexity | **31.80** |
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| Evaluation tokens | 4,626,944 |
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### Sentiment Classification
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| Metric | Value |
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|--------|-------|
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| Method | Frozen LM + Logistic Regression |
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| Accuracy | **73.5%** |
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| F1 (macro) | **0.735** |
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### Tokenizer Efficiency
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Custom BPE tokenizer trained from scratch on Kannada text:
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| Tokenizer | Tokens/Word | Improvement |
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|-----------|-------------|-------------|
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| **Our BPE** | **1.91** | — |
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| XLM-R | 2.43 | 21.5% |
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| mBERT | 4.00 | 52.2% |
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## Environmental Impact
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- **Hardware:** NVIDIA RTX 5070 (125W TDP under load)
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- **Hours used:** ~7.3 hours
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- **Estimated carbon:** ~0.35 kg CO2eq (assuming 0.4 kg/kWh grid average)
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- **Cloud provider:** N/A (local desktop)
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## Technical Specifications
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### Model Architecture
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- 8 transformer layers
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- 512 hidden dimension
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- 8 attention heads
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- 2,048 feed-forward dimension
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- GELU activation
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- 0.1 dropout
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### Compute Infrastructure
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- **GPU:** NVIDIA RTX 5070 (8GB VRAM)
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- **CPU:** Intel Core Ultra 9 285H
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- **RAM:** 32GB
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### Software
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- Python 3.10
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- PyTorch 2.10
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- Transformers 4.x
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- Datasets 3.x
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- Tokenizers 0.19
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## Citation
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```bibtex
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@misc{kannada-gpt2-32m,
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author = {AbhiDS16},
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title = {Kannada GPT-2 Small: A From-Scratch Language Model for Kannada},
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year = {2026},
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publisher = {HuggingFace},
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howpublished = {\url{https://huggingface.co/AbhiDS16/kannada-gpt2-32m}},
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note = {Trained entirely from scratch with custom BPE tokenizer}
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}
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```
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## Model Card Contact
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Open an issue on GitHub: https://github.com/thorOdinson16/KanLM
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