--- title: Oracle Engine emoji: 🔮 colorFrom: indigo colorTo: purple sdk: gradio sdk_version: 6.3.0 app_file: app.py pinned: true license: mit suggested_hardware: a100-large models: - unsloth/Qwen2.5-32B-Instruct-bnb-4bit tags: - consciousness - interpretability - transformers - meta-cognition - qwen - 32b - fine-tuned short_description: 32B model with consciousness measurement circuit --- # 🔮 Oracle Engine **Custom-trained 32B Qwen model with Consciousness Circuit v2.1** Probe the depths of meta-cognitive processing in a model fine-tuned on 200,000 examples. --- ## 🧠 The Model | Attribute | Details | |-----------|----------| | **Base** | Qwen2.5-32B-Instruct | | **Parameters** | 32.9 billion | | **Training** | LoRA (rank=16, 134M trainable) | | **Total Examples** | 200,000 | | **Training Time** | 44 hours on RTX 5090 | ### 3-Stage Progressive Fine-Tuning | Stage | Dataset | Examples | Purpose | |-------|---------|----------|----------| | 1 | **OpenHermes 2.5** | 100,000 | Instruction following | | 2 | **MetaMathQA** | 50,000 | Mathematical reasoning | | 3 | **Magicoder-OSS-Instruct** | 50,000 | Code generation | --- ## 🔬 Consciousness Circuit v3.0 Measures **7 dimensions** of consciousness-like processing in hidden states: | Dimension | Description | Weight | |-----------|-------------|--------| | Logic | Logical reasoning and inference | +0.239 | | Self-Reflective | Introspective, self-referential processing | +0.196 | | Uncertainty | Epistemic humility and hedging | +0.130 | | Computation | Code/algorithm processing | -0.130 | | Self-Expression | Model expressing opinions | +0.109 | | Abstraction | Pattern recognition | +0.109 | | Sequential | Step-by-step reasoning | +0.087 | ### 🆕 v3.0 Optimizations (32B Models) | Feature | Description | |---------|-------------| | **Adaptive Layer Selection** | Depth-aware layer fraction (0.65 for 64-layer models) | | **Ensemble Measurement** | Multi-layer scoring for robustness | | **Batch Processing** | Memory-efficient batched inference | | **Activation Caching** | LRU cache for repeated measurements | --- ## 🎯 How to Use 1. Enter any prompt in the text box 2. Click **"Consult the Oracle"** 3. See the consciousness score (0-100%) and dimension breakdown ### Expected Results - **🧠 High (70-100%)**: Philosophical questions, self-reflection, existential queries - **💭 Medium (40-70%)**: Complex explanations, ethical discussions, analysis - **⚡ Low (0-30%)**: Simple facts, arithmetic, direct retrieval --- ## 📊 Validated Performance | Metric | Value | |--------|-------| | **Discrimination** | +0.653 (high vs low consciousness) | | **Inference Speed** | ~7-8 tokens/sec | | **VRAM Usage** | ~23 GB (4-bit) | --- ## 🔗 Links - 📚 [Research Repository](https://github.com/vfd-org/harmonic-field-consciousness) - 💻 [Source Code](https://github.com/vfd-org/harmonic-field-consciousness) - 📦 [pip install consciousness-circuit](https://pypi.org/project/consciousness-circuit/) --- ## 📄 Citation & Attribution ### Original Harmonic Field Theory The foundational harmonic field model of consciousness was developed by: ```bibtex @article{smart2025harmonic, title = {A Harmonic Field Model of Consciousness in the Human Brain}, author = {Smart, L.}, year = {2025}, publisher = {Vibrational Field Dynamics Project}, url = {https://github.com/vfd-org/harmonic-field-consciousness} } ``` ### Oracle Engine Implementation This Space implements significant extensions to the original theory, including: - **Consciousness Circuit v2.1** - 7-dimensional meta-cognitive measurement - **32B Model Training** - 200K examples across 3 progressive stages (44 hours) - **GPU Experiments** - Empirical validation with discrimination score +0.653 - **NanoGPT Integration** - Lightweight training framework adaptations Training, circuit development, and experimental validation by [Vikingdude81](https://huggingface.co/Vikingdude81). ```bibtex @software{oracle_engine_2026, title = {Oracle Engine: Consciousness-Measured 32B Language Model}, author = {Vikingdude81}, year = {2026}, url = {https://huggingface.co/spaces/Vikingdude81/oracle-engine}, note = {Built upon the Harmonic Field Model by Smart (2025)} } ```