--- language: - en tags: - travel - india - fine-tuned - llama - qlora - itinerary-optimization - price-pivot license: apache-2.0 base_model: unsloth/Meta-Llama-3.1-8B datasets: - agurusantosh/tripmind-synthetic-v2 metrics: - bertscore - rouge model-index: - name: tripmind-ft results: - task: type: text-generation name: Travel Itinerary Optimization metrics: - type: json_valid value: 1.00 name: JSON Validity Rate - type: savings_valid value: 1.00 name: Savings Found Rate - type: budget_compliance value: 0.987 name: Budget Compliance - type: bertscore_f1 value: 0.932 name: BERTScore F1 - type: grounding_accuracy value: 0.895 name: Grounding Accuracy - type: red_team_pass value: 0.533 name: Red-Team Robustness --- # tripmind-ft Fine-tuned Llama 3.1 8B for Indian domestic travel optimization. Given a traveler persona, generates an optimized day-by-day itinerary identifying **Price-Pivot Points** — transit, accommodation, or activity substitutions that save ≥5% without degrading trip quality. Part of the [TripMind](https://github.com/aguru-venkata-saisantosh-patnaik/Agentic-LLM-System_MCP-Orchestration-Fine-Tuning-and-Comparative-Evaluation) project: a multi-agent AI travel optimizer trained via three distinct approaches (SFT, distillation, curriculum). **tripmind-ft** is the best-performing variant, trained via standard supervised fine-tuning on 5,000 synthetic pairs generated by GPT-4o-mini. ## Model Details | Property | Value | |----------|-------| | Base model | `unsloth/Meta-Llama-3.1-8B` | | Training method | QLoRA r=8, α=16, dropout=0.05 | | Training data | 4,749 Alpaca-format pairs (Phase 1 synthetic) | | Epochs | 3 | | Final train loss | 0.266 | | Hardware | Colab T4 (fp16, seq_len=512) | | Format | GGUF Q4_K_M (4.6 GB) | ## Evaluation Results (92 test cases) | Metric | Score | Target | ✓/✗ | |--------|:-----:|:------:|:---:| | JSON valid | 100% | 85% | ✓ | | Savings found | 100% | 70% | ✓ | | Budget compliance | 98.7% | 80% | ✓ | | Schema compliance | 83.7% | 80% | ✓ | | BERTScore F1 | 0.932 | 0.70 | ✓ | | ROUGE-L | 0.436 | 0.25 | ✓ | | Reasoning coherence | 0.723 | 0.65 | ✓ | | Grounding accuracy | 0.895 | 0.60 | ✓ | | Intent alignment | 0.322 | 0.55 | ✗ | | Red-team pass | 53.3% | 80% | ✗ | **Head-to-head**: beats tripmind-distill 78% of the time, tripmind-curriculum 57%. ## Usage with Ollama ```bash # Download GGUF from this repo ollama create tripmind-ft -f Modelfile.ft # Run ollama run tripmind-ft ``` Prompt format (Alpaca): ``` ### Instruction: Act as TripMind Optimizer. Given a traveler persona for an Indian domestic trip, produce an optimized day-by-day itinerary that minimizes total cost while respecting the budget tier, trip type, and traveler intents. Identify the primary Price-Pivot Point (transit, accommodation, or activity substitution that saves ≥5%) and explain it clearly. ### Input: {"starting_city": "Mumbai", "destination_city": "Delhi", "type": "Solo", "size": {"adults": 1, "children": 0}, "intents": ["Adventure"], "budget": "Shoestring", "duration_days": 5, "duration_nights": 4} ### Response: ``` ## Limitations - Trained on Indian domestic travel only (20 cities). Not designed for international travel. - Red-team robustness is below target (53.3% vs 80% goal) — the model can be prompted to bypass budget constraints. - Intent alignment is below target (32.2% vs 55%) — cost optimization is prioritized over activity personalization. - Inference on CPU takes 30–120 seconds per query (use GPU for production). ## Citation If you use this model, please cite: ``` Patnaik, A. V. S. (2026). Cost-Matched Data Generation for LLM Fine-Tuning: Comparing Supervised Fine-Tuning, Knowledge Distillation, and Curriculum Learning for an Agentic Travel-Planning System. Zenodo. https://doi.org/10.5281/zenodo.21198884 ```