Real Intelligence was invited to attend the first Generative Intelligence Industry Summit and became the first Generative AI Standard Compiler

On March 20, the first Generating Intelligence Industry Summit of "Empowerment of All Things and All Industries" hosted by the Key Laboratory of Artificial Intelligence Key Technology and Application Evaluation Ministry of Industry and Information Technology and the Institute of Cloud Computing and Big Data of China Academy of Information and Communications Technology was held in Beijing Successfully held. With the theme of "Technology Frontier, Industry Empowerment, Application Demonstration, and Standard Leadership", the summit invited representatives from all walks of life in the field of artificial intelligence to discuss in depth the development trend of generative AI, and to help iterate core technologies and implement applications Together with industry empowerment, we look forward to the development prospects of generative AI.

The site of the first Generative Intelligence Industry Summit "Empowerment of all things and all industries"

Since February this year, the China Academy of Information and Communications Technology has launched a collection of generative AI technology and application cases. At this summit, the first generative AI standard jointly compiled by China Academy of Information and Communications Technology and more than 40 units in the industry - "Generative Artificial Intelligence Technology and Product Evaluation Method" series standards "technical capability" and "product capability" two part standard.

As an excellent practitioner and leader in the industry, Real Intelligence was invited to participate in the compilation of standards for generative artificial intelligence technology and product evaluation methods, and was commended and recognized at the meeting. This demonstrates the technical strength of Real Intelligence in the field of AI, and it is also the recognition that Real Intelligence is promoting the deep integration of RPA products with AI technology and continuously iteratively optimizing the AI ​​product system.

Real Intelligence won the title of "Standard Writer for Generative Artificial Intelligence Technology and Product Evaluation Methods"

In recent years, generative AI has become the main point of product iteration in the industry. This technical capability is becoming more and more mature, the scope of application continues to expand, and the generation mode continues to expand. The recent function upgrade of GPT-4 has also brought a refreshing product experience, which fully demonstrates the multiple possibilities of its multi-modal large-scale language processing model, bringing a new round of product changes in the Internet field. Moving towards a new track, according to Gartner's forecast, in the past five years, generative AI will become one of the underlying technologies that promote the digitalization process in many fields. As far as the RPA industry is concerned, the future may also appear in a new form.

RPA一直以来都被视为AI商业化落地的优质载体,RPA、超自动化也一直是资本市场关注的重点企服赛道。作为中国AI行业的准独角兽,实在智能自创业以来,一直致力于推动AI与RPA的融合,在AI研发应用领域有着长期而丰富的经验积累和深厚的AI算法技术和高水平算法团队,去年年底,实在智能深度融合了AI技术向全行业发布了首创自研的实在RPA的IPA模式,这一颠覆式变革引起了各行各业的广泛关注。

实在IPA模式的背后也展现了实在智能强大的AI能力——国产自研、行业首创的智能屏幕语义理解技术(ISSUT)。它集合了融合拾取3.0、动态元素匹配、页面结构分析、屏幕语义抽取、多模态预意图预测等多项技术应用,使得IPA新模式具备识别屏幕、理解屏幕、操作预测和在线学习的能力,突破了传统RPA“拾取、元素和变量”三座大山的固有束缚,以轻松易上手的“点选用”将RPA的易用性提升到了新高度,实现了真正意义上的人人可用。

此外,实在智能旗下的IDP智能文档审阅、商业智能(BI)、对话智能(CI)、决策智能(DI)、智能流程挖掘等产品矩阵也整合了大量AI技术。随着生成式AI浪潮席卷而来,实在智能也正不断优化产品的使用价值,近期,实在智能结合ChatGPT技术基于AI大模型打造的能够实现和文档对话的智能产品——Chat-IDP,使得用户可以向和人对话一样,将文档审阅流程变得更加灵活便捷。目前也正加快推进NLP领域大模型训练及垂直领域的创新应用,打造“类ChatGPT+RPA”的更智能、更简单的数字员工开发工具,提升实在RPA的超自动化解决能力。

此次峰会上,“大模型”是热门关键词之一,多位嘉宾在其分享过程中都对此有所提及。有专家曾预测过,未来大模型将会催生面向不同领域进行优化的小模型,实在智能也正尝试把握垂直域专用小模型的市场蓝海,以前瞻性的视角来分析行业风向,不断拓展行业创新边界。

实在智能是信创工委会成员单位,中国信通院(RPA产业推进方阵)的副理事长成员,更是少数几家获得信通院RPA评测最高等级“3+”级认证的厂商,一直以来依托“AI+RPA”技术积极为建设信创全栈解决方案贡献力量。如今,“数字中国”定调,为产业数字化发展注入了强大动力,也指明了方向。实在智能将坚持前沿AI科技和数字化解决方案双轮并驱,持续优化产品矩阵,为各行各业输送好用、易用、实用的数字员工,为数字中国的建设贡献实在的数字科技力量。

Guess you like

Origin blog.csdn.net/SHIZAIZHINENG/article/details/129711789
Recommended