--- license: gemma tags: - chess - gemma - lora - fine-tuned - commentary - game-analysis - flutter - mobile - multilingual language: - en - hi - es - zh - fr - de - pt - ru - ja - ar - ko - tr - id - bn --- # Chess Gemma Commentary 🎯♟️ ### By NAKST Studio
Fine-tuned Gemma 3 270M model for generating chess move commentary, ELO predictions, and move classifications in 14 languages. Includes an optional .task file for lightweight mobile inference with flutter_gemma ---
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--- ## Model Details - **Base Model:** Google Gemma 3 270M (270 Million Parameters) - **Fine-tuning Method:** LoRA (Low-Rank Adaptation) - Rank 8, Alpha 16 - **Training Data:** 25,000+ chess positions with expert commentary - **Training Epochs:** 3 - **Training Framework:** Unsloth + Hugging Face Transformers - **Hardware:** Google Colab T4 GPU - **Model Size:** 500MB (full) / 270 mb .task (int 8 dynamic quantized) - **Languages Supported:** 14 (English, Hindi, Spanish, Mandarin Chinese, French, German, Portuguese, Russian, Japanese, Arabic, Korean, Turkish, Indonesian, Bengali) ## Capabilities ✅ **Chess Move Commentary** - Detailed analysis of chess positions and moves ✅ **ELO Prediction** - Estimates player skill rating (1000-2800) ✅ **Move Classification** - Labels moves as Best Move, Good Move, Blunder, etc. ✅ **Multilingual Support** - Generate commentary in 14 different languages ✅ **Mobile Ready** - Works on Android with flutter_gemma or Ollama ✅ **Offline** - No internet required for inference ## Supported Languages | Language Code | Language Name | Native Name | |---------------|---------------|-------------| | `en` | English | English | | `hi` | Hindi | हिन्दी | | `es` | Spanish | Español | | `zh` | Mandarin Chinese | 中文 | | `fr` | French | Français | | `de` | German | Deutsch | | `pt` | Portuguese | Português | | `ru` | Russian | Русский | | `ja` | Japanese | 日本語 | | `ar` | Arabic | العربية | | `ko` | Korean | 한국어 | | `tr` | Turkish | Türkçe | | `id` | Indonesian | Bahasa Indonesia | | `bn` | Bengali | বাংলা | ## Input Format The model uses a **conversational format** with system and user messages. The input expects a JSON-like structure with role-based messages. ### System Message (Required) ```python { 'role': 'system', 'content': 'Generate professional chess commentary in the specified language. For Type=standard use 30–40 words. For Type=explanation, explain the best move briefly (≤50 words). Return exactly: Commentary, Predicted ELO, Verified Classification.' } ``` ### User Message Format ```python { 'role': 'user', 'content': '''LanguageL: English LangCode: en Type: standard FEN: rnbqkbnr/pppppppp/8/8/3P4/8/PPP1PPPP/RNBQKBNR b KQkq - 0 1 MoveSAN: Nf6 Side: Black Actor: human Name: John Gender: male Tag: Book BestAlt: g8f6 CP: 27->21 (Δ=6)''' } ``` ### Field Descriptions | Field | Type | Required | Example | Explanation | |---------------|------|------------|-------------------------------------------------------------------------|-----------------------------------------------------------------------------------------| | **LanguageL** | string | ✅ REQUIRED | `English`, `Hindi`, `Spanish` | Full language name for commentary generation | | **LangCode** | string | ✅ REQUIRED | `en`, `hi`, `es` | ISO 639-1 language code (see table above) | | **Type** | string | ✅ REQUIRED | `standard`, `explanation` | Commentary type: `standard` (30-40 words) or `explanation` (explain best move, ≤50 words) | | **FEN** | string | ✅ REQUIRED | `rnbqkbnr/pppppppp/8/8/3P4/8/PPP1PPPP/RNBQKBNR b KQkq - 0 1` | Forsyth-Edwards Notation - exact chess position before the move | | **MoveSAN** | string | ✅ REQUIRED | `Nf6`, `e4`, `O-O` | Standard Algebraic Notation - the move that was played | | **Side** | string | ✅ REQUIRED | `White`, `Black` | Which side played the move | | **Actor** | string | ✅ REQUIRED | `human`, `bot` | Whether move was made by human or engine | | **NAME** | string | OPTIONAL | `Name of human or bot` | Human or bot gender who played the move for personalized commentary | | **Gender** | string | OPTIONAL | `male`, `female`, `neutral` | Player or bot gender for personalized commentary | | **Tag** | string | ✅ REQUIRED | `Book`, `Best`, `Good`, `Inaccuracy`, `Mistake`, `Blunder`, `Brilliant` | Move classification tag | | **BestAlt** | string | ✅ REQUIRED | `g8f6`, `e2e4` | Best alternative move in coordinate notation | | **CP** | string | ✅ REQUIRED | `27->21 (Δ=6)` | Centipawn evaluation: before->after (Delta=change). Format: `CPBefore->CPAfter (Δ=change)` | ## Sample Input & Output ### Example 1: English Commentary (Standard) **Input:** ```python [ { 'role': 'system', 'content': 'Generate professional chess commentary in the specified language. For Type=standard use 30–40 words. For Type=explanation, explain the best move briefly (≤50 words). Return exactly: Commentary, Predicted ELO, Verified Classification.' }, { 'role': 'user', 'content': '''LanguageL: English LangCode: en Type: standard FEN: rnbqkbnr/pppppppp/8/8/3P4/8/PPP1PPPP/RNBQKBNR b KQkq - 0 1 MoveSAN: Nf6 Side: Black Actor: human Gender: male Tag: Book BestAlt: g8f6 CP: 27->21 (Δ=6)''' } ] ``` **Output:** ``` Commentary: Excellent opening response! Nf6 is the classical development move against d4. It immediately challenges the center and prepares flexible piece development. This maintains the tension and gives Black excellent counterplay. Predicted ELO: 1850 Verified Classification: Book Move ``` ### Example 2: Hindi Commentary (Standard) **Input:** ```python [ { 'role': 'system', 'content': 'Generate professional chess commentary in the specified language. For Type=standard use 30–40 words. For Type=explanation, explain the best move briefly (≤50 words). Return exactly: Commentary, Predicted ELO, Verified Classification.' }, { 'role': 'user', 'content': '''LanguageL: Hindi LangCode: hi Type: standard FEN: r1bqkb1r/pppp1ppp/2n2n2/4p3/4P3/5N2/PPPP1PPP/RNBQKB1R w KQkq e6 0 4 MoveSAN: Nc3 Side: White Actor: human Gender: female Tag: Best BestAlt: b1c3 CP: 42->38 (Δ=4)''' } ] ``` **Output:** ``` Commentary: शानदार केंद्रीकरण! Nc3 e4 पर दबाव के साथ विकसित होता है और प्रमुख केंद्रीय वर्गों को नियंत्रित करता है। यह चाल विकास को पूरा करने की तैयारी करती है जबकि केंद्र तनाव बनाए रखती है। Predicted ELO: 2400 Verified Classification: Best Move ``` ### Example 3: Explanation Type (Spanish) **Input:** ```python [ { 'role': 'system', 'content': 'Generate professional chess commentary in the specified language. For Type=standard use 30–40 words. For Type=explanation, explain the best move briefly (≤50 words). Return exactly: Commentary, Predicted ELO, Verified Classification.' }, { 'role': 'user', 'content': '''LanguageL: Spanish LangCode: es Type: explanation FEN: 2rq1rk1/pb1nb1pp/1p6/3p1p2/3Pn3/P1N5/1PQNBPPP/R1B1R1K1 w - - 0 16 MoveSAN: f3 Side: White Actor: human Gender: male Tag: Mistake BestAlt: d2e4 CP: 23->59 (Δ=36)''' } ] ``` **Output:** ``` Commentary: El movimiento f3 debilita el rey y permite contraataques tácticos. La mejor alternativa Ne4 centralizaría el caballo con amenazas activas mientras mantiene la seguridad del rey. Este error costó aproximadamente un tercio de peón en ventaja posicional. Predicted ELO: 1650 Verified Classification: Mistake ``` ## Usage Examples ### Python (Transformers) ```python from transformers import AutoModelForCausalLM, AutoTokenizer model = AutoModelForCausalLM.from_pretrained("NAKSTStudio/chess-gemma-commentary") tokenizer = AutoTokenizer.from_pretrained("NAKSTStudio/chess-gemma-commentary") # Prepare messages messages = [ { 'role': 'system', 'content': 'Generate professional chess commentary in the specified language. For Type=standard use 30–40 words. For Type=explanation, explain the best move briefly (≤50 words). Return exactly: Commentary, Predicted ELO, Verified Classification.' }, { 'role': 'user', 'content': '''LanguageL: English LangCode: en Type: standard FEN: rnbqkbnr/pppppppp/8/8/3P4/8/PPP1PPPP/RNBQKBNR b KQkq - 0 1 MoveSAN: Nf6 Side: Black Actor: human Gender: male Tag: Book BestAlt: g8f6 CP: 27->21 (Δ=6)''' } ] # Generate response inputs = tokenizer.apply_chat_template(messages, return_tensors="pt", add_generation_prompt=True) outputs = model.generate(inputs, max_new_tokens=256, temperature=0.7) response = tokenizer.decode(outputs[0], skip_special_tokens=True) print(response) ``` ### Flutter (flutter_gemma) ```dart import 'package:flutter_gemma/flutter_gemma.dart'; class ChessAnalyzer { late InferenceModel model; Future initModel() async { // Install model from Hugging Face (one-time operation) await FlutterGemma.installModel( modelType: ModelType.gemmaIt, ).fromNetwork( 'https://huggingface.co/NAKSTStudio/chess-gemma-commentary/resolve/main/model.safetensors', ).withProgress((progress) { print('Downloading model: ${progress.percentage}%'); }).install(); // Create model instance for inference model = await FlutterGemma.getActiveModel( maxTokens: 256, preferredBackend: PreferredBackend.gpu, ); } Future analyzeMove({ required String language, required String langCode, required String type, required String fen, required String moveSAN, required String side, required String actor, required String gender, required String tag, required String bestAlt, required String cp, }) async { final chat = await model.createChat(temperature: 0.7); // Add system message await chat.addQueryChunk(Message.text( text: 'Generate professional chess commentary in the specified language. For Type=standard use 30–40 words. For Type=explanation, explain the best move briefly (≤50 words). Return exactly: Commentary, Predicted ELO, Verified Classification.', isUser: false, )); // Add user message with chess position data await chat.addQueryChunk(Message.text( text: '''LanguageL: $language LangCode: $langCode Type: $type FEN: $fen MoveSAN: $moveSAN Side: $side Actor: $actor Gender: $gender Tag: $tag BestAlt: $bestAlt CP: $cp''', isUser: true, )); // Generate response final response = await chat.generateChatResponse(); await chat.close(); if (response is TextResponse) { return response.token; } return 'Error generating response'; } Future dispose() async { await model.close(); } } // Usage final analyzer = ChessAnalyzer(); // Initialize once (downloads model if not present) await analyzer.initModel(); // Use multiple times final result = await analyzer.analyzeMove( language: 'English', langCode: 'en', type: 'standard', fen: 'rnbqkbnr/pppppppp/8/8/3P4/8/PPP1PPPP/RNBQKBNR b KQkq - 0 1', moveSAN: 'Nf6', side: 'Black', actor: 'human', gender: 'male', tag: 'Book', bestAlt: 'g8f6', cp: '27->21 (Δ=6)', ); print(result); // Clean up when done await analyzer.dispose(); ``` ## Output Format The model generates three key components: 1. **Commentary:** Multi-sentence chess analysis in the specified language (30-50 words typically) 2. **Predicted ELO:** Integer rating (1000-2800 typically) 3. **Verified Classification:** Single label describing the move (Book Move, Best Move, Good Move, Inaccuracy, Mistake, Blunder, Brilliant) ## Performance Metrics - ⚡ **Inference Speed:** 15-30 tokens/second on mid-range Android phones - 💾 **Memory Required:** 4GB minimum RAM for on-device inference - 📱 **Model Sizes:** - TASK File(int 8 dynamic): ~250 mb - TASK File: ~500 mb - 🌍 **Language Coverage:** 14 languages spanning 5+ billion speakers ## Training Configuration - **LoRA Rank (r):** 8 - **LoRA Alpha:** 16 - **LoRA Dropout:** 0.1 - **Target Modules:** q_proj, k_proj, v_proj, o_proj, gate_proj, up_proj, down_proj - **Learning Rate:** 2e-4 - **Batch Size:** 8 (effective; per device: 1, gradient accumulation: 8) - **Optimizer:** AdamW 8-bit - **Warmup Steps:** 5 - **Training Time:** ~100 minutes (4 epochs on Colab T4) ## Model Files ``` chess-gemma-commentary/ ├── model.safetensors # Fine-tuned weights (500MB) ├── tokenizer.model # SentencePiece tokenizer ├── tokenizer.json # Tokenizer config ├── tokenizer_config.json # Tokenizer settings ├── config.json # Model architecture config ├── chat_template.jinja # Chat formatting template ├── added_tokens.json # Special tokens └── README.md # Documentation ``` ## Important Notes ⚠️ **Format Sensitivity:** This model is trained on the EXACT format shown above. Follow field order, spacing, and field names precisely for best results. ⚠️ **Language Codes:** Use the correct ISO 639-1 language code from the supported languages table. Incorrect codes may produce unexpected results. ⚠️ **Commentary Types:** - `Type=standard`: Generates 30-40 word general commentary - `Type=explanation`: Generates ≤50 word explanation focusing on why the best alternative move is superior ✅ **Conversational Format:** The model uses a message-based format with system and user roles for better context understanding. ✅ **Gender-Aware:** Optionally customize commentary style based on player gender (male/female/neutral). ✅ **Delta Information:** The CP field format `CPBefore->CPAfter (Δ=change)` helps the model understand move impact. ## Known Limitations - ❌ Very unusual or impossible positions may generate generic responses - ❌ Requires 4GB+ RAM for mobile inference (quantization helps) - ❌ Temperature affects output randomness (0.7 recommended for chess) - ❌ Cannot analyze positions with invalid FEN notation - ❌ Language quality may vary - English has most training data coverage - ❌ Some languages may require native speaker validation for natural phrasing ## License This model is distributed under the **Gemma Community License**. See: https://ai.google.dev/gemma/terms ## Citation ```bibtex @model{chess_gemma_commentary_2025, title={Chess Gemma Commentary: Multilingual Chess Analysis}, author={NAKST Studio}, year={2025}, howpublished={Hugging Face Hub} } ``` ## Credits - **Base Model:** Google Gemma 3 (https://ai.google.dev/gemma) - **Fine-tuning:** Unsloth (https://unsloth.ai) - **Training Hardware:** Google Colab Free GPU - **Inspiration:** Chess.com & Lichess communities ## Support & Feedback - 🐛 **Found a bug?** Open an issue on the model page - 💡 **Feature request?** Leave a discussion comment - ⭐ **Enjoying it?** Star the model! - 💙 **Our Site** https://nakststudio.com/ --- **Made with ❤️ by NAKST Studio** *Last Updated: November 7, 2025*