堇青石是一个开源的,blockchain和机器学习的平台,这将允许任何人写的智能合同,使用任何语言,自然或编程。该平台以带来更多的主流用户,商业和非商业的,开始使用blockchain技术的目的而开发的。堇青石令牌将用于补偿的堇青石网络与所述机器学习过程帮助提供者:一个由堇青石快速适配引擎(FAE)接受各文本解析建议,将与ILT令牌来补偿。此外,作者将能够与其他生态系统堇青石成员分享他们的智能合同,费ILT令牌。
代币基本信息
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基本信息
平台 | iOlite Blockchain |
---|---|
类型 | ERC20 |
接受币种 | ETH |
流通百分比 | 65% |
KYC | 未知 |
受限地域 | 未知 |
网站 | 首页链接 |
白皮书 | 下载 |
项目介绍
iOlite — Create Smart Contracts With Natural Language
iOlite is a product which focuses on the mass adoption of smart contract technology by providing an easy to use engine which is capable of understanding natural language to be compiled to smart contract code. iOlite is the ideal solution if you don’t want to spend time learning, instead just start creating smart contracts.iOlite is based on the research done at Stanford University. They invented the FAE (Fast Adaptation Engine), which is capable of converting natural language or any other desired programming language into smart contract code. The FAE is not just straightaway translating your input to code. The FAE depends on contributors (smart contract experts) that are able to define structures containing language expressions. Furthermore, these structures are tied to smart contract code they write. This allows the engine to browse the structures to find the right expression so it can compile the desired smart contract. Whenever a structure is used, a contributor gets iOlite tokens rewarded.iOlite relies on the community to make the FAE successful. The FAE helps them by applying Machine Training techniques to help it learn and adopt new structures more easily.iOlite Labs is currently focusing on Ethereum smart contracts with Solidity as there is a massive need.What this means is that not only can programmers (in formal languages such as Python, C, JavaScript, etc.) immediately use their existing skills to write smart contracts, but also average people with no programming knowledge whatsoever, can just as easily start developing with natural languages like English. iOlite is dissolving the existing technical learning boundaries for creating smart contracts.