Introduction
In the rapidly evolving landscape of artificial intelligence, access to high-quality, diverse, and structured data is paramount. As AI systems become increasingly sophisticated, the demand for vast amounts of training data and purpose-built RAG (Retrieval Augmented Generation) data continues to grow exponentially. Traditional methods of data collection and provisioning are struggling to keep pace with this demand, often falling short in terms of scale, diversity, and cost-effectiveness.
Stream AI emerges as a groundbreaking solution to this critical challenge, harnessing the power of decentralized networks to revolutionize data collection and provisioning for AI model training and regular fine-tuning. By incentivizing a vast network of smart devices to contribute their spare resources or data plans, Stream AI enables the real-time scraping and processing of web data at an unprecedented scale and success rate, while preserving user privacy and ensuring data integrity.
This whitepaper outlines the core principles, technological architecture, potential applications, tokenomics and governance of Stream AI, demonstrating how this innovative platform is poised to transform the landscape of AI development and data provisioning.