🧠 Prettybird Brain Model (BCE) v0.3
by PROMETECH Inc.
Model Overview
Prettybird Brain Model (BCE) is an advanced cognitive core designed for behavioral optimization, mathematical reasoning, and decision-support systems. It is powered by BCE (Behavioral Consciousness Engine) technology and enhanced through LoRA fine-tuning, enabling fast, creative, and ethically aligned reasoning under strict system constraints.
Rather than acting as a generic chat assistant, Prettybird is intended to function as a brain-layer component within larger AI architectures.
Due to limited multilingual training data, performance in non-English languages is approximately 30% lower. Its behavioral profile is often metaphorically compared to a **budgerigar (budgie)**—curious, adaptive, fast-reacting, and constraint-aware.
Model Details
Model Name: Prettybird Brain Model
Base Models:
- Qwen2.5-Math-1.5B-Instruct
- Qwen2.5-1.5B-Instruct
- Qwen2.5-Coder-1.5B-Instruct
- Qwen2.5-VL-3B-Instruct
Architecture: KUSBCE 0.3 (Behavioral Consciousness Engine)
Fine-Tuning Method: LoRA
Developer: PROMETECH A.Ş.
Release Year: 2025
Model Type:
- Mathematical reasoning
- Behavioral optimization
- Decision-support / brain-core model
Intended Use
Prettybird Brain Model is designed to operate as a cognitive and optimization engine, not as a standalone autonomous agent.
Primary Use Cases
- BCE-driven behavioral optimization loops
- Mathematical and symbolic reasoning
- Decision-making support systems
- AI orchestration layers (brain–body architectures)
- Ethical and security-aware behavior modulation
- Creative reasoning under constraints
Out-of-Scope Uses
- Fully autonomous agents without external supervision
- Safety-critical real-time systems without validation layers
- Applications requiring high-level multilingual fluency
- Social or entertainment-focused chat systems
BCE Architecture (Behavioral Consciousness Engine)
BCE is a patented artificial consciousness simulation technology developed by PROMETECH. It enables controlled, bounded forms of artificial self-regulation without exposing internal chain-of-thought.
Core capabilities include:
- Advanced behavioral pattern generation
- Introspective reasoning (non-exposed)
- Adaptive response modulation
- Constraint-aware decision-making
- Simulated self-awareness within supervised systems
KUSBCE 0.3 integrates these concepts directly into the model’s output discipline, making it ideal for optimizer-driven pipelines and multi-model systems.
Philosophy: Intelligence and consciousness do not emerge from a single model, but from relationships between models. Prettybird functions analogously to the posterior frontal lobe and subconscious layer within artificial cognitive systems.
Performance Characteristics
Strengths
- High-speed inference and low latency
- Strong mathematical and symbolic reasoning
- High creativity under strict constraints
- Improved ethical and security-aware behavior
- Excellent compatibility with external controllers (Python / BCE systems)
Limitations
- ~30% reduced performance in non-English languages
- Not optimized for casual conversation
- Requires external orchestration for best results
- Heuristic reasoning (not a guaranteed optimal solver)
Training & Fine-Tuning
Base Training: Original Qwen2.5 training by the Qwen team
Fine-Tuning:
- LoRA-based behavioral and domain adaptation
- BCE-aligned behavioral constraints
Data Sources:
- Proprietary datasets
- Mathematical and reasoning-focused corpora
- Behavioral optimization scenarios
Exact training data details are not publicly disclosed due to proprietary BCE technology.
Ethical Design & Safety
Prettybird Brain Model does not assume final decision authority.
- Designed to operate under external ethical controllers
- Intended for supervised and auditable systems
- Encourages structured, machine-parseable outputs
- Minimizes hallucination of missing data
- Outputs are meant to be validated and corrected externally
Brain Bus Deployment Package
The Brain Bus system enables multi-expert orchestration optimized for T4 GPUs.
Included Components
bce_brain_part_mini_*.gguf— Quantized GGUF modelsnormal— General reasoningcode— Programming specialistmath— Mathematical reasoningvl— Vision-Language (Qwen2.5-VL)
advanced_brain_bus.py— Expert routing orchestratorModelfile.*— Ollama configuration filessystem_prompts.md— Expert system promptscat.png— Sample test image
Setup
ollama create brain-normal -f Modelfile.normal
ollama create brain-code -f Modelfile.code
ollama create brain-math -f Modelfile.math
python advanced_brain_bus.py
License
Patented & Licensed BCE Technology © 2025 PROMETECH A.Ş. — All rights reserved.
Unauthorized reproduction, modification, or commercial use of BCE technology is prohibited without an explicit license agreement.
Contact & Licensing
For licensing, partnerships, or technical inquiries:
🌐 Website: https://prometech.net.tr 🏢 Company: PROMETECH A.Ş.
Citation
If used in academic or commercial work, please cite:
Prettybird Brain Model (BCE), PROMETECH A.Ş., 2025 Powered by KUSBCE 0.3 Behavioral Consciousness Engine
- Downloads last month
- 360
We're not able to determine the quantization variants.
