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--- |
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license: apache-2.0 |
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datasets: |
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- GainEnergy/quantum-oil-gas-dataset |
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base_model: |
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- GainEnergy/OGAI-R1 |
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library_name: transformers |
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tags: |
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- oil-gas |
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- quantum-computing |
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- hybrid-ai |
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- reservoir-engineering |
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- well-optimization |
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- retrieval-augmented-generation |
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- fine-tuned |
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- quantum-llm |
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- upstrima |
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model-index: |
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- name: OGAI-Quantum |
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results: |
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- task: |
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type: text-generation |
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name: Quantum AI for Oil & Gas Engineering |
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dataset: |
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name: GainEnergy Quantum Oil & Gas Dataset |
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type: custom |
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metrics: |
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- name: Quantum Reservoir Simulation Speedup |
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type: benchmark |
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value: Coming Soon |
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- name: Hybrid AI Computational Efficiency |
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type: benchmark |
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value: Coming Soon |
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- name: Quantum-RAG Retrieval Score |
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type: accuracy |
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value: Coming Soon |
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--- |
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# **OGAI-Quantum: The Future of Oil & Gas AI (Coming Soon)** |
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[](LICENSE) |
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π **OGAI-Quantum** is a **next-generation hybrid AI model** that fuses **quantum computing principles with classical deep learning** to deliver breakthrough performance in **reservoir modeling, drilling optimization, seismic analysis, and energy AI workflows**. |
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π **COMING SOON**: Currently in **final development and quantum validation testing**. |
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--- |
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## **π« Capabilities** |
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- **β‘ Quantum-Accelerated Simulations** β Faster reservoir modeling and seismic analysis. |
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- **π§ Hybrid AI-Quantum Workflows** β Integrates quantum variational circuits with deep learning. |
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- **π Quantum-RAG for Technical Knowledge Retrieval** β Advanced AI-driven document retrieval for energy data. |
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### **π Core Quantum Use Cases** |
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| **Use Case** | **Quantum Advantage** | |
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|--------------------------------|-----------------------| |
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| **Reservoir Simulation** | Multi-state quantum superposition for faster modeling | |
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| **Seismic Data Processing** | Quantum-based feature recognition in seismic datasets | |
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| **Well Placement Optimization** | Quantum annealing for high-dimensional search spaces | |
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| **Production Optimization** | Quantum variational circuits for real-time gas lift & production tuning | |
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--- |
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## π’ **Quantum-Classical Hybrid Framework** |
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OGAI-Quantum is powered by **Upstrima's Quantum AI Engine**, combining **quantum-enhanced decision-making** with traditional deep learning. |
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```yaml |
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System Architecture: |
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βββ Quantum Simulation Layer |
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β βββ Quantum Gate Operations |
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β βββ Qiskit & PennyLane Integration |
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β βββ Variational Quantum Circuits (VQC) |
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β βββ Quantum Annealing for Optimization |
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β βββ Quantum Reservoir Simulation Models |
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β βββ Seismic Data Quantum Processing |
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βββ Classical AI Model |
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β βββ Fine-Tuned TinyR1-32B Model |
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β βββ Hybrid Engineering Knowledge Base |
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β βββ Neural Retrieval-Augmented Generation (RAG) |
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β βββ Classical Physics-Based Simulations |
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β βββ AI-Powered Technical Document Understanding |
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β βββ Adaptive Learning & Model Refinement |
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βββ Hybrid Orchestration Layer |
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βββ Quantum-Classical Task Partitioning |
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βββ Quantum State Virtualization Engine |
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βββ Quantum Pipeline API for High-Performance Computing |
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βββ Real-Time Quantum State Synchronization |
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βββ Cloud & Edge Deployment Support |
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βββ API Integration with Upstrima AI Suite |
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``` |
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--- |
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## π¦ **Model Variants** |
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| **Model Name** | **Base Model** | **Quantum Features** | **Context Window** | **Use Case** | |
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|-------------------|----------------|----------------|----------------|-------------| |
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| **OGAI-Quantum** | OGAI-R1 + Quantum | Yes | TDB tokens | **Hybrid AI for Energy & Engineering** | |
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| **OGAI-R1** | TinyR1-32B | No | 128k tokens | **Reservoir AI & RAG** | |
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| **OGMOE** | Mixtral-8x7B + MoE | No | 32K tokens | **Drilling Optimization & Decision Support** | |
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--- |
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## π **Deployment & Integration** |
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OGAI-Quantum will be available on: |
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- **Hugging Face Inference API** |
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- **AWS Braket for Hybrid Quantum-Classical Workflows** |
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- **On-Premise Quantum-Classical HPC Deployment** |
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### **π§ Technical Stack** |
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- **Quantum Libraries:** `Qiskit`, `PennyLane`, `Cirq` |
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- **AI Frameworks:** `Transformers`, `AutoGPTQ`, `PEFT` |
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- **Data Pipelines:** `FAISS`, `Pinecone`, `LangChain` |
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--- |
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## β οΈ **Limitations** |
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π§ **Quantum Hardware Dependency** β While designed for hybrid execution, full quantum acceleration requires cloud-based quantum backends. |
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π§ **Experimental Hybrid AI** β Model performance is still undergoing validation for real-world **engineering applications**. |
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π§ **Not General-Purpose** β Optimized specifically for **oil & gas industry workflows**. |
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--- |
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## π **Resources** |
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- **[Quantum Applications in Oil & Gas](https://huggingface.co/docs/quantum-oil-gas-applications)** β Technical whitepaper on **hybrid AI for energy**. |
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- **[GainEnergy AI Platform](https://gain.energy)** β Explore AI-powered **quantum-enhanced energy solutions**. |
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- **[Upstrima Quantum Computing Extension](https://huggingface.co/docs/upstrima-quantum-extension)** β WebAssembly-powered quantum simulation. |
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--- |
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## π **Citing OGAI-Quantum** |
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```bibtex |
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@article{ogai-quantum-2025, |
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title={OGAI-Quantum: Hybrid Quantum-Classical AI for Oil & Gas Engineering}, |
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author={GainEnergy AI Team}, |
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year={2025}, |
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publisher={Hugging Face Models} |
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} |
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``` |