OpenGradient project is an end-to-end decentralized AI infrastructure network that lets developers host models, run secure inference, execute AI agents, and deploy full applications directly from smart contracts. OpenGradient crypto project combines decentralized model storage, an EVM-compatible AI execution network, and SDK tooling to power on-chain intelligence for DeFi, agents, analytics, fraud detection, and more.
According to CoinLaunch research, since its inception in 2024, OpenGradient company has raised $8.5M in funding with participation from Coinbase Ventures and other top-tier funds and angels.
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| Exchange | Pair | Price | Volume (24H) | Trust Score |
|---|---|---|---|---|
USDT 0.175 $0.175 | 8.34M | |||
USDT 0.174 $0.174 | 406.32K | |||
USDT 0.175 $0.175 | 2.28M | |||
USDT 0.174 $0.174 | 449.67K | |||
USDT 0.174 $0.174 | 6.12M | |||
USDT 0.112 $0.112 | 445 | |||
USD 0.174 $0.174 | 1.11M |
OpenGradient is a decentralized AI platform that merges blockchain security with advanced artificial intelligence, enabling permissionless model hosting, secure on-chain inference, agent execution, and end-to-end AI application deployment. By combining its Hybrid AI Compute Architecture, Model Hub, SDKs, and research-driven tooling, OpenGradient AI makes trust-minimized, verifiable, and scalable AI accessible to Web3 developers and real-world applications.
OpenGradient AI platform aims to accelerate open-source AI by democratizing model ownership, improving verifiability guarantees, and promoting censorship-resistant model access, using the following product suite:
You can find more details in the OpenGradient whitepaper (documentation).
🪙 OpenGradient Token: The native utility token $OPG powers the OpenGradient network by enabling verifiable AI inference payments, governance participation, staking for network security and rewards, and access to premium ecosystem features. With a total supply of 1,000,000,000 tokens and TGE in April 2026 on Base, $OPG supports a structured vesting model focused on long-term alignment.
✅ OpenGradient pros:
❌ OpenGradient cons:
OpenGradient is a Web3-native AI infrastructure network that lets developers host models, run trustless inference, and build AI-driven agents and applications directly from smart contracts. OpenGradient AI platform democratizes access to AI by enabling permissionless model publishing, decentralized compute, and verifiable execution across blockchain environments.
On May 29th, 2025, the project launched its first product - BitQuant, allowing users to farm points by trading tokens on the platform. In addition to that, on December 1st, another product was launched, allowing users to interact with digital twins, thus earning points as well. Hence, we have prepared a comprehensive guide on how to join both events and qualify for the upcoming OpenGradient airdrop.
OpenGradient is a decentralized network for verifiable AI computing that enables secure on-chain hosting of AI models, inference execution, and autonomous agent deployment using its proprietary x402 verification protocol.
The OpenGradient Airdrop (Season 1) distributes 40,000,000 $OPG — exactly 4% of the fixed 1 billion token supply — to eligible early contributors and active testnet participants. Registration is strictly limited to April 15–20, 2026, with claims opening at TGE on April 21 and closing April 28. No new capital or tasks are required during registration; it verifies past activity for automatic allocation.
<a href="https://coinlaunch.space/projects/opengradient/" title="OpenGradient (OPG)" target="_blank"><img src="https://coinlaunch.space/media/widgets/0/opengradient.png" width="224" alt="OpenGradient (OPG)"></a>