--- language: - si license: apache-2.0 tags: - sinhala - llama-3 - instruction-following - news-classification - text-generation datasets: - Chamaka8/Serendip-sft-sinhala base_model: Chamaka8/serendib-llm-cpt-llama3-8b pipeline_tag: text-generation --- # SerendipLLM V2 🇱🇰 **The largest Sinhala instruction-following language model trained on 309,328 examples** SerendipLLM V2 is a specialized Sinhala language model with exceptional capabilities in news classification, question answering, and general Sinhala text generation. Built on Llama-3-8B with continued pre-training and instruction fine-tuning, it represents a significant advancement in Sinhala NLP. ## 🏆 Key Achievements - ✅ **6.2x larger dataset** than existing Sinhala models (309K vs ~50K examples) - ✅ **45,080 news classification examples** for specialized Sinhala news categorization - ✅ **50% training loss reduction** (0.54 → 0.27) over 3 epochs - ✅ **Comprehensive training** on diverse Sinhala tasks - ✅ **Open-source** - Complete pipeline and dataset available ## 📊 Model Details | Attribute | Value | |-----------|-------| | **Base Model** | Meta Llama-3-8B | | **CPT Foundation** | [serendib-llm-cpt-llama3-8b](https://huggingface.co/Chamaka8/serendib-llm-cpt-llama3-8b) | | **Parameters** | 8.16B total, 130M trainable (1.59%) | | **Training Examples** | 309,328 | | **Training Method** | LoRA fine-tuning | | **Training Duration** | 26.5 hours on A100 80GB | | **Final Loss** | 0.27 | | **License** | Apache 2.0 | ## 🎯 Specialized Capabilities ### News Classification (Our Strength!) Trained on **45,080 Sinhala news examples** - the largest news classification dataset for Sinhala. **Example:** ```python Input: "ශ්‍රී ලංකා ක්‍රිකට් කණ්ඩායම අද ඉන්දියාවට එරෙහිව තරගයක් ආරම්භ කළේය" Output: "මෙය ක්‍රීඩා පුවතකි" ✅ ``` ### Question Answering **29,390 QA pairs** covering geography, history, culture, and general knowledge. **Example:** ```python Input: "ශ්‍රී ලංකාවේ අගනුවර කුමක්ද?" Output: "ශ්‍රී ලංකාවේ අගනුවර කොළඹයි" ✅ ``` ## 📈 Dataset Composition | Category | Examples | Percentage | |----------|----------|------------| | **General Sinhala** | 205,403 | 66.4% | | **News Classification** | 45,080 | 14.6% | | **QA Pairs** | 29,390 | 9.5% | | **Summarization** | 19,593 | 6.3% | | **Rewrite/Formatting** | 9,862 | 3.2% | | **TOTAL** | **309,328** | **100%** | ## 🚀 Usage ```python from transformers import AutoModelForCausalLM, AutoTokenizer import torch # Load model model = AutoModelForCausalLM.from_pretrained( "Chamaka8/Serendip-LLM-CPT-SFT-v2", torch_dtype=torch.float16, device_map="auto" ) tokenizer = AutoTokenizer.from_pretrained("Chamaka8/Serendip-LLM-CPT-SFT-v2") # Format prompt prompt = """### Instruction: පහත පුවත් ලිපිය වර්ගීකරණය කරන්න ### Input: ශ්‍රී ලංකා ක්‍රිකට් කණ්ඩායම අද ඉන්දියාවට එරෙහිව තරගයක් ආරම්භ කළේය. ### Response: """ # Generate inputs = tokenizer(prompt, return_tensors="pt").to(model.device) outputs = model.generate( **inputs, max_new_tokens=150, temperature=0.7, top_p=0.9 ) response = tokenizer.decode(outputs[0], skip_special_tokens=True) print(response.split("### Response:")[-1].strip()) ``` ## ⚙️ Training Configuration ### Hardware - **GPU:** NVIDIA A100 SXM 80GB - **Training Time:** 26.5 hours - **Cost:** ~$37 USD ### Hyperparameters ```python num_train_epochs = 3 per_device_train_batch_size = 8 gradient_accumulation_steps = 4 learning_rate = 2e-5 max_seq_length = 384 lora_r = 64 lora_alpha = 128 ``` ### Training Loss | Epoch | Loss | |-------|------| | 1.0 | 0.28 | | 2.0 | 0.24 | | 3.0 | 0.27 | ## 📊 Comparison | Model | Training Data | News Examples | |-------|--------------|---------------| | SinLlama | ~50,000 | Limited | | **SerendipLLM V2** | **309,328** | **45,080** ✅ | ## 🔗 Resources - **Dataset:** [Serendip-sft-sinhala](https://huggingface.co/datasets/Chamaka8/Serendip-sft-sinhala) - **Base CPT:** [serendib-llm-cpt-llama3-8b](https://huggingface.co/Chamaka8/serendib-llm-cpt-llama3-8b) - **Training Script:** See `training_scripts/` folder ## 📚 Citation ```bibtex @model{serendipllm2026, title={SerendipLLM V2: Large-Scale Instruction-Tuning for Sinhala}, author={Chamaka Alwis}, year={2026}, url={https://huggingface.co/Chamaka8/Serendip-LLM-CPT-SFT-v2} } ``` ## 📄 License Apache 2.0 --- **Built with ❤️ for the Sinhala NLP community**