# NSN Integration Contributor Guide Welcome to the Quantum LIMIT-Graph v2.4.0 NSN Integration contributor challenges! This guide will help you participate in our four main challenge scenarios. ## ðŸŽŊ Challenge Scenarios ### Scenario 1: Real-Time Backend-Aware Rank Adaptation **Module**: `backend_telemetry_rank_adapter.py` **Function**: Adjust NSN rank based on backend health (error rate, coherence time, gate fidelity) **Your Task**: Submit edits optimized for dynamic rank shifts **Leaderboard Metric**: Responsiveness vs reliability trade-off **Dashboard Panel**: Line chart of rank vs reliability across backend states #### How to Contribute: ```python from quantum_integration.nsn_integration import BackendTelemetryRankAdapter # Initialize adapter adapter = BackendTelemetryRankAdapter() # Submit your telemetry-aware edit result = adapter.adapt_rank( backend_id='your_contributor_id_backend', telemetry={ 'error_rate': 0.025, # Your measured error rate 'coherence_time': 110.0, # Your coherence time (Ξs) 'gate_fidelity': 0.97 # Your gate fidelity }, current_rank=128 ) # Export for leaderboard adapter.export_telemetry_edits('my_submission.json') ``` **Scoring**: - **Responsiveness**: How quickly your adaptation occurs (higher is better) - **Reliability**: Predicted reliability at adapted rank (0-1, higher is better) - **Final Score**: `0.6 * reliability + 0.4 * (responsiveness / 1000)` **Tips**: - Test across multiple backend states (optimal, degraded, poor) - Optimize for both speed and accuracy - Consider calibration age in your strategy --- ### Scenario 2: Cross-Lingual Edit Propagation **Module**: `edit_propagation_engine.py` **Function**: Transfer edits from high-resource to low-resource languages using containment scores **Your Task**: Submit propagation strategies and containment visualizations **Leaderboard Metric**: Quality score of propagated edits **Dashboard Panel**: Heatmap of containment scores + flow arrows #### How to Contribute: ```python from quantum_integration.nsn_integration import EditPropagationEngine import numpy as np # Initialize engine engine = EditPropagationEngine() # Create your edit vector edit_vector = np.random.randn(256) * 0.1 # Your edit # Propagate from high-resource to low-resource language result = engine.propagate_edit( source_lang='english', target_lang='indonesian', rank=128, edit_vector=edit_vector ) print(f"Quality Score: {result.quality_score:.3f}") print(f"Containment: {result.containment_score:.3f}") ``` **Scoring**: - **Quality Score**: Predicted quality of propagated edit (0-1) - **Containment Score**: Subspace containment (0-1) - **Final Score**: `0.7 * quality_score + 0.3 * containment_score` **Tips**: - Focus on high-containment language pairs (>0.75) - Test multi-hop propagation paths - Visualize containment heatmaps to find optimal paths **Bonus Points**: - Submit novel propagation strategies - Discover new high-containment language pairs - Create visualization tools --- ### Scenario 3: Contributor-Aware Rank Feedback **Module**: `rank_feedback_generator.py` **Function**: Recommend optimal ranks based on contributor history **Your Task**: Submit edits across ranks and analyze feedback **Leaderboard Metric**: Efficiency badge (accuracy/FLOPs) **Dashboard Panel**: Personalized rank suggestions + unexplored rank-language pairs #### How to Contribute: ```python from quantum_integration.nsn_integration import RankFeedbackGenerator # Initialize generator generator = RankFeedbackGenerator() # Submit multiple edits across different ranks submissions = [ {'language': 'english', 'rank': 32, 'accuracy': 0.88, 'flops': 1.02e7, 'uncertainty': 0.12}, {'language': 'english', 'rank': 64, 'accuracy': 0.92, 'flops': 4.1e7, 'uncertainty': 0.08}, {'language': 'chinese', 'rank': 64, 'accuracy': 0.90, 'flops': 4.1e7, 'uncertainty': 0.09} ] for sub in submissions: generator.record_submission( contributor_id='your_id', language=sub['language'], rank=sub['rank'], accuracy=sub['accuracy'], flops=sub['flops'], uncertainty=sub['uncertainty'] ) # Get personalized recommendation recommendation = generator.recommend_rank('your_id') print(f"Badge: {recommendation.personalized_badge}") print(f"Recommended Rank: {recommendation.recommended_rank}") # Get feedback panel panel = generator.generate_feedback_panel('your_id') print(f"Suggestions: {panel['suggestions']}") ``` **Scoring**: - **Efficiency**: `accuracy / flops` (higher is better) - **Diversity**: Number of unique rank-language pairs tested - **Final Score**: `0.6 * avg_efficiency * 1e8 + 0.4 * diversity_bonus` **Badge System**: - 🏆 **Master Contributor**: 50+ submissions, 10+ languages - ⚡ **Efficiency Expert**: Efficiency > 1e-7 - ðŸŽŊ **Accuracy Champion**: Avg accuracy > 0.95 - 🔎 **Rank Explorer**: Tested 5+ ranks - 🌍 **Multilingual Specialist**: 8+ languages - 💊 **Active Contributor**: 20+ submissions - 📈 **Rising Star**: 10+ submissions - 🚀 **Getting Started**: First submissions **Tips**: - Test across multiple ranks to find your optimal range - Focus on unexplored rank-language pairs for bonus points - Balance accuracy and efficiency --- ### Scenario 4: Ensemble Inference Across Backends **Module**: `ensemble_inference_manager.py` **Function**: Run edits across IBM Manila, Washington, and Russian simulators **Your Task**: Submit ensemble edits and analyze backend agreement **Leaderboard Metric**: Agreement score + reliability boost **Dashboard Panel**: Agreement matrix + backend consensus heatmap #### How to Contribute: ```python from quantum_integration.nsn_integration import EnsembleInferenceManager import numpy as np # Initialize manager manager = EnsembleInferenceManager() # Create your edit edit_vector = np.random.randn(256) * 0.1 # Run ensemble inference result = manager.run_ensemble_inference( edit_vector=edit_vector, backend_list=['ibm_manila', 'ibm_washington', 'russian_simulator'] ) print(f"Agreement Score: {result.agreement_score:.3f}") print(f"Reliability Boost: {result.reliability_boost:.3f}") print(f"Best Backend: {result.best_backend}") ``` **Scoring**: - **Agreement Score**: Pairwise agreement across backends (0-1) - **Reliability Boost**: Improvement from ensemble consensus (0-1) - **Final Score**: `0.5 * agreement_score + 0.5 * reliability_boost` **Tips**: - Test with 3+ backends for maximum reliability boost - Analyze agreement matrices to understand backend behavior - Submit edits that achieve high consensus **Bonus Points**: - Discover backend-specific optimization strategies - Submit edits with >0.95 agreement across all backends - Create ensemble strategies for specific use cases --- ## 🚀 Getting Started ### Installation ```bash # Clone repository git clone https://github.com/your-repo/quantum-limit-graph.git cd quantum-limit-graph # Install dependencies pip install -r quantum_integration/nsn_integration/requirements_dashboard.txt # Run tests pytest quantum_integration/nsn_integration/test_v2.4.0_scenarios.py -v ``` ### Running the Dashboard Locally ```bash # Launch Gradio dashboard python quantum_integration/nsn_integration/huggingface_dashboard.py # Open browser to http://localhost:7860 ``` ### Submitting Your Contributions 1. **Fork the repository** 2. **Create your submission branch**: `git checkout -b my-nsn-submission` 3. **Run your experiments** and save results 4. **Export your data**: Use the export functions in each module 5. **Create a submission file**: `submissions/your_id_YYYYMMDD.json` 6. **Submit a pull request** with your results ### Submission Format ```json { "contributor_id": "your_github_username", "timestamp": "2025-01-15T10:30:00Z", "scenarios": { "telemetry_adaptation": { "submissions": [...], "avg_responsiveness": 1250.5, "avg_reliability": 0.92 }, "edit_propagation": { "submissions": [...], "avg_quality": 0.85, "avg_containment": 0.78 }, "rank_feedback": { "submissions": [...], "efficiency": 8.5e-8, "badge": "⚡ Efficiency Expert" }, "ensemble_inference": { "submissions": [...], "avg_agreement": 0.89, "avg_reliability_boost": 0.82 } } } ``` --- ## 📊 Leaderboard View the live leaderboard at: [Hugging Face Spaces Dashboard](https://huggingface.co/spaces/your-org/nsn-integration-dashboard) ### Current Top Contributors | Rank | Contributor | Total Score | Badge | Submissions | |------|-------------|-------------|-------|-------------| | 1 | contributor_001 | 95.2 | 🏆 Master | 52 | | 2 | contributor_002 | 89.7 | ⚡ Efficiency | 38 | | 3 | contributor_003 | 85.3 | ðŸŽŊ Accuracy | 45 | --- ## 🎁 Rewards & Recognition ### Monthly Prizes - **ðŸĨ‡ 1st Place**: Featured in research paper + $500 prize - **ðŸĨˆ 2nd Place**: GitHub sponsor badge + $300 prize - **ðŸĨ‰ 3rd Place**: Contributor spotlight + $200 prize ### Special Awards - **🌟 Innovation Award**: Most creative propagation strategy - **🔎 Research Award**: Best analysis and visualization - **🌍 Impact Award**: Highest quality low-resource language edits --- ## 📚 Resources - **Documentation**: [README.md](README.md) - **API Reference**: [V2.4.0_SCENARIOS_SUMMARY.md](V2.4.0_SCENARIOS_SUMMARY.md) - **Quick Start**: [QUICK_START_V2.4.0.md](QUICK_START_V2.4.0.md) - **Demo Scripts**: [demo_v2.4.0_scenarios.py](demo_v2.4.0_scenarios.py) - **Test Suite**: [test_v2.4.0_scenarios.py](test_v2.4.0_scenarios.py) --- ## 💎 Community - **Discord**: [Join our server](https://discord.gg/quantum-limit-graph) - **GitHub Discussions**: [Ask questions](https://github.com/your-repo/quantum-limit-graph/discussions) - **Twitter**: [@QuantumLIMIT](https://twitter.com/QuantumLIMIT) --- ## 📝 Code of Conduct - Be respectful and collaborative - Share knowledge and help others - Follow scientific integrity guidelines - Cite sources and give credit - Report issues and bugs constructively --- ## ðŸĪ Support Need help? Reach out: - Open an issue on GitHub - Ask in Discord #nsn-integration channel - Email: support@quantum-limit-graph.org --- **Happy Contributing! 🚀** Let's push the boundaries of quantum-enhanced multilingual model editing together!