. @OpenledgerHQ is a next-gen blockchain designed specifically for AI, that enables the monetization of data, models, and agents through on top of decentralized infra.

Let me break down the core concepts ↓

➤ Proof of Attribution: A cryptographic mechanism ensuring transparent and immutable linkage between data contributions and AI model outputs. This promotes fair compensation, accurate contributor attribution, and improved trust in AI-generated content.

➤ Datanets: Specialized, decentralized data networks aggregating validated, domain-specific datasets critical for high-quality AI model training. This approach maximizes model accuracy, interpretability, efficiency, and fosters decentralized participation.

➤ ModelFactory: An advanced, GUI-based fine-tuning platform integrating permissioned dataset access, fine-tuning techniques (LoRA, QLoRA), real-time training analytics, and RAG (Retrieval-Augmented Generation) attribution. ModelFactory significantly accelerates fine-tuning processes, offering up to 3.7x faster training speeds and superior model performance metrics compared to traditional methods.

➤ OpenLoRA: A highly scalable and efficient framework serving thousands of fine-tuned LoRA models on a single GPU. Leveraging dynamic adapter loading, tensor parallelism, and CUDA optimizations like flash-attention and quantization, OpenLoRA drastically reduces operational costs and resource usage, significantly outperforming traditional deployment methods with sub-100ms model switching, memory usage reduced to 8-12 GB per GPU, and throughput exceeding 2000 tokens/sec.

The ecosystem is powered by the native token $OPN, which enables governance, is used for tx fees, and incentivization through data attribution rewards or AI agent staking.

Through taking mechanisms ensure accountability and consistently high-quality AI service provision, creating a robust economic layer.