Image: https://www.gata.xyz/
Gata is focused on developing decentralized AI inference and training technologies. This allows large-scale AI models to efficiently collaborate across a global network of distributed GPUs. The project’s core vision is to reduce dependence on traditional, centralized data centers. It aims to accelerate the transition to globally collaborative AI and become foundational infrastructure for the future AI-driven economy.
Most AI models currently rely on centralized platforms for their data, which leads to monopolization, data silos, and inherent bias. Gata addresses this challenge by introducing a decentralized data layer. This empowers users to generate, verify, and own their data. It guarantees transparency, security, and fairness throughout the AI data lifecycle.
The DataAgent system is Gata’s core solution for decentralized AI data generation. Its first DataAgent, the DVA (Data Validation Agent), is designed to assess the quality of global image-text data, scoring it on a scale from -1 to 1.
DVA identifies high-quality data that fuels the training of vision-language AI models such as Stable Diffusion, DALL-E, and GPT-4o. Unlike traditional manual annotation, automated AI labeling provides superior efficiency and scalability. Anyone can contribute unused computing power via their browser to participate in data generation efforts, enabling a true crowdsourced ecosystem.
Gata’s All-in-One Chat service combines the strengths of ChatGPT, Claude, and Gemini AI models to deliver three distinct responses for each user query. When users choose their preferred answer, they automatically contribute human preference data. This helps refine and enhance AI output quality.
“GPT-to-Earn” is Gata’s incentive program that rewards users for sharing ChatGPT dialog data through a Chrome extension. Participants earn Gata Points, encouraging engagement and boosting the overall quality and value of the AI dataset.
The Gata data generation architecture features three main components: input data, AI computation, and output data. Inputs are stored on the decentralized BNB Greenfield chain; users contribute computing power for AI operations, and the system records the resulting outputs—along with proof of contribution—back onto BNB Greenfield to ensure complete traceability and data ownership.
Gata’s internal point system, Gata Intelligence Points, captures each user’s contribution, providing the foundation for future network governance and reward allocation.
Gata’s roadmap emphasizes performance enhancements, multi-node coordination, tokenized participation, and global governance. The goal is to create a verifiable, community-led, and open decentralized AI network. Users will drive the evolution of secure, reliable, and fair AI systems by contributing data and computing power.
Gate will be the first to list Gata (GATA) for spot trading and launch the 290th HODLer Airdrop. Users holding 1 GT are eligible to participate at no cost and claim a share of the 250,000 GATA token airdrop.