赛题解读Introduction | 自由创新赛道Free Innovation Track

简介: 首届国际工程智能大赛启动,自由创新赛道鼓励参赛者突破学科界限,自主发现工程领域痛点,运用AI技术提出原创性、颠覆性解决方案,探索智慧交通、数字建造等前沿应用,推动工程智能化变革,争做“智拓先锋”。

首届国际工程智能大赛

今日启动

赛题解读抢先看

自由创新赛道:

以智慧拓展工程边界,勇做工程领域的先行者

Free Innovation Track:Expand Engineering Boundaries with Wisdom and Be Pioneers in the Engineering Field

当前,全球正处于一场由人工智能驱动的深刻变革之中。在工程领域,无论是基础设施的规划、设计、建造与运维,还是各类系统的运行优化与风险管控,传统模式正面临前所未有的挑战与机遇。我们看到,从智慧城市建设的宏观愿景,到能源系统的高效调度,从环境污染的智能监测与治理,到重大工程项目的安全与质量保障,无一不呼唤着更智能、更高效、更具韧性的解决方案。

Currently, the world is undergoing a profound transformation driven by artificial intelligence. In the engineering field, whether it is the planning, design, construction, and operation-maintenance of infrastructure, or the operational optimization and risk management of various systems, traditional models are facing unprecedented challenges and opportunities. We can see that from the macro vision of smart city construction to the efficient dispatch of energy systems, from the intelligent monitoring and governance of environmental pollution to the safety and quality assurance of major engineering projects, all are calling for smarter, more efficient, and more resilient solutions.

例如,在交通工程领域,我们正从“车路分割”迈向“车路云一体化”,以期解决城市拥堵、提升系统韧性;在土木工程领域,我们正通过建立高保真度的结构数字模型,加速桥梁工程的数字化与智能化转型,以此奠定桥梁全生命周期性能预测与安全保障的基础。然而,这仅仅是工程智能化变革的一个缩影。在广阔的工程世界中,仍存在大量尚未被充分探索、尚未被AI技术深度赋能的“空白地带”和“深水区”。许多工程问题,其复杂性、动态性和多学科交叉性,使得现有单一学科或传统方法难以提供最优解。

For example, in the field of traffic engineering, we are moving from "separated vehicle-road operation" to "vehicle-road-cloud integration" to solve urban congestion and enhance system resilience; in the field of civil engineering, we are accelerating the digital and intelligent transformation of bridge engineering by establishing high-fidelity structural digital models, laying the foundation for the full-life-cycle performance prediction and safety guarantee of bridges. However, this is only a microcosm of the intelligent transformation of engineering. In the vast engineering world, there are still a large number of "blank areas" and "deep water areas" that have not been fully explored or deeply empowered by AI technology. The complexity, dynamics, and interdisciplinary nature of many engineering problems make it difficult for existing single-discipline or traditional methods to provide optimal solutions.

自由创新赛道,正是为那些拥有独特视角、敢于挑战传统、并渴望将人工智能的无限潜能应用于更广泛工程领域的创新者而设。我们相信,每一位工程师和AI研究者心中都可能蕴藏着一个尚未被定义的工程难题,以及一个颠覆性的智能解决方案。本赛道旨在打破学科界限,鼓励参赛者自主发现、自主定义工程领域中的核心问题,并运用前沿的AI技术,提出具有开创性、实用性和深远影响的解决方案。

The Free Innovation Track is designed for innovators who have unique perspectives, dare to challenge tradition, and are eager to apply the infinite potential of artificial intelligence to a wider range of engineering fields. We believe that every engineer and AI researcher may have an undefined engineering problem and a disruptive intelligent solution in their hearts. This track aims to break disciplinary boundaries, encourage participants to independently discover and define core problems in the engineering field, and use cutting-edge AI technology to propose pioneering, practical, and far-reaching solutions.

在这里,你将是问题的定义者,也是解决方案的设计师。我们期待看到你如何以AI为笔,在工程智能的蓝图上,绘就属于你的独特篇章,成为驱动未来工程发展的“智拓先锋”!

Here, you will be the definer of the problem and the designer of the solution. We look forward to seeing how you use AI as a pen to write your unique chapter on the blueprint of AI4E and become a "pioneer of AI4E" driving the development of future engineering!

本挑战赛的目标是:(1)激发自主创新: 鼓励参赛者自主发现工程领域的痛点,并提出原创性AI解决方案;(2)拓展应用边界: 探索人工智能在更广阔工程领域的应用潜力;(3)孵化颠覆性方案: 发现并支持具有前瞻性、突破性,甚至可能改变行业格局的智能工程项目。

The goals of this challenge are: (1) Stimulate independent innovation: Encourage participants to independently discover pain points in the engineering field and propose original AI solutions; (2) Expand application boundaries: Explore the application potential of artificial intelligence in a wider range of engineering fields; (3) Incubate disruptive solutions: Discover and support forward-looking, breakthrough intelligent engineering projects that may even change the industry pattern.

相关文章
|
1月前
|
数据可视化 前端开发 安全
AgentScope 1.0 全面进化,从原型走向产业落地!
AgentScope全新升级,打造生产级智能体生态:推出开箱即用的Alias、EvoTraders等应用,支持多场景落地;强化基建,实现动态技能扩展、白盒化运行与多语言支持;集成语音交互、数据工程等能力,提供从开发到部署的全链路解决方案。
771 0
|
1月前
|
前端开发 安全 Java
Hello AgentScope Java
AgentScope Java v0.2 发布,支持 ReAct 智能体核心能力,提供高代码透明性、多模态消息、钩子机制、会话持久化与结构化输出,助力开发者高效构建可追溯、易调试的 Agent 应用。
483 1
|
8天前
|
存储 缓存 调度
阿里云Tair KVCache仿真分析:高精度的计算和缓存模拟设计与实现
在大模型推理迈向“智能体时代”的今天,KVCache 已从性能优化手段升级为系统级基础设施,“显存内缓存”模式在长上下文、多轮交互等场景下难以为继,而“以存代算”的多级 KVCache 架构虽突破了容量瓶颈,却引入了一个由模型结构、硬件平台、推理引擎与缓存策略等因素交织而成的高维配置空间。如何在满足 SLO(如延迟、吞吐等服务等级目标)的前提下,找到“时延–吞吐–成本”的最优平衡点,成为规模化部署的核心挑战。
186 34
阿里云Tair KVCache仿真分析:高精度的计算和缓存模拟设计与实现
|
1月前
|
存储 SQL JSON
打通可观测性的“任督二脉”:实体与关系的终极融合
阿里云推出图查询能力,基于 graph-match、graph-call、Cypher 三重引擎,实现服务依赖、故障影响、权限链路的秒级可视化与自动化分析,让可观测从‘看板时代’迈向‘图谱时代’。
265 51
|
1月前
|
人工智能 运维 Serverless
一杯咖啡成本搞定多模态微调:FC DevPod + Llama-Factory 极速实战
告别显存不足、环境配置难、成本高昂的微调困境!基于阿里云函数计算FC与Llama-Factory,5分钟搭建微调流水线,一键完成多模态模型的微调。
286 21
|
2月前
|
机器人 数据挖掘 API
一个销售数据分析机器人的诞生:看 Dify 如何在 DMS 助力下实现自动化闭环
Dify 作为一款低代码 AI 应用开发平台,凭借其直观的可视化工作流编排能力,极大降低了大模型应用的开发门槛。
473 22
一个销售数据分析机器人的诞生:看 Dify 如何在 DMS 助力下实现自动化闭环
|
2月前
|
存储 SQL 分布式计算
手把手教你搞定大数据上云:数据迁移的全流程解析
本文深入探讨了企业数据迁移的核心价值与复杂挑战,重点分析了离线大数据平台在物理传输、系统耦合与数据校验三方面的难题。文章系统阐述了存储格式、表格式、计算引擎等关键技术原理,并结合LHM等工具介绍了自动化迁移的实践演进,展望了未来智能化、闭环化的数据流动方向。
622 14
手把手教你搞定大数据上云:数据迁移的全流程解析

热门文章

最新文章