2025T-EDGE 全球对话丨主题日:AI驱动资本的价值跃迁

Edge AI Will Transform the Technological Foundation of Industrial Intelligence

This signals a fundamental shift—AI is moving from centralized cloud computing to real-time edge processing. Gartner projects that by 2025, 75% of enterprise data will be processed at the edge, marking a historic transition from "centralized intelligence" to "distributed intelligence."

Zhao Hejuan, Founder & CEO of TMTPost Group

TMTPOST -- I, as a longtime researcher, analyst, and entrepreneur in AI applications, delivered a speech and shared my views on edge AI at a forum named “AI Computing Power Development” hosted by the World Internet Conference on Tuesday. The forum, with a theme of "Building an Integrated, Inclusive, and Green AI Computing Power Ecosystem," was part of the Mobile World Congress 2025 held in Barcelona, Spain from Monday through Thursday.

The full transcript of my speech is as follows:

Distinguished leaders, industry pioneers, ladies and gentlemen,

Good morning!

I am Zhao Hejuan, Founder & CEO of TMTPost Group. It is my great honor to join the AI Computing Power Development Forum in MWC.

As a longtime researcher, analyst, and entrepreneur in AI applications, I would like to share some of my observations on how the edge AI model or on-device AI model is reshaping industrial intelligence, which will have three parts: the rise of edge AI, the key challenges for edge AI and China's unique advantages in edge AI.

Firstlyabout the rise of edge AI

We are at a pivotal moment in the Fourth Industrial Revolution. According to the latest data, the global edge AI device market size has exceeded $60 billion, with a compound annual growth rate (CAGR) of 22%, far surpassing the growth rate of cloud-based AI services. 

China accounts for more than 35%, and it is expected to exceed 150 billion US dollars by 2030.

This signals a fundamental shift—AI is moving from centralized cloud computing to real-time edge processing. Gartner projects that by 2025, 75% of enterprise data will be processed at the edge, marking a historic transition from "centralized intelligence" to "distributed intelligence."

Secondly, what will be the key challenges for edge AI?

To fully realize this transformation, three major challenges must be addressed:

1. Model Optimization for Edge Deployment

AI models are growing exponentially—Stanford's AI Index Report states that model parameters increase by 230% annually. Yet, edge AI requires lightweight solutions.

For example:

 • Carnegie Mellon University developed a blind navigation ring that compresses environmental recognition models to just 52KB.

 • Dutch startup Epitel created an epilepsy warning system in 0.5MB, providing 90-second early alerts while reducing false alarms by 40%.

These breakthroughs prove that smaller AI models can be just as powerful in real-world applications.

2. Continuous Learning and Evolution

AI must continuously improve based on real-world data.

Google's DeepMind lab has unveiled a new AI diagnostic system, "Med-PaLM Oncology," which can identify early signs of 13 types of cancer within 3 seconds. The system has achieved a clinical validation accuracy rate of 96.7%, surpassing that of human doctors.

This aligns with IDC's Edge Intelligence Evolution Theory—when edge devices gain continuous learning capabilities, their efficiency improves exponentially.

3. Breaking Industry Barriers

Edge AI is revolutionizing industrial sectors.

 • In Tesla's Shanghai factory, an edge AI vision system has reduced the false alarm rate to 0.5%, increased the detection accuracy rate to 99.98%, and improved the efficiency by five times.

 • In Shouguang, eastern China's Shandong province, an edge AI-powered agricultural drone improved pest detection accuracy by 40% and reduced pesticide consumption by 35%.

Gartner predicts that by 2025, the efficiency of local links in the manufacturing industry will increase by 20%-50%.

However, to maximize edge AI’s potential, we must build three essential pillars:

1. A “Data Flywheel” Ecosystem

IDC predicts every day, the world generates 14.849 billion TB of edge data, but less than 15% is utilized.

 • In the latest AI smartphone improved local data processing 6x, reducing latency to 8 milliseconds.

 • Smart excavators cut energy consumption by 22% using edge decision-making.

2. AI-5G-IoT Integration

According to Boston Consulting Group, integrating AI with 5G and IoT is unlocking new efficiencies:

 • At Qingdao Port, a 5G + Edge AI system improved container scheduling efficiency by 40%.

 • At Ant Group, Blockchain + Edge AI reduced cross-border payment processing time from hours to seconds.

3. An Open and Collaborative Industry Community

Today, over 200 global open-source edge AI projects exist, with Chinese enterprises contributing 22%.

The Linux Foundation’s 2024 Edge Computing White Paper states that open collaboration can reduce edge AI deployment costs by 60%.

A great example is the Huawei Ascend + SenseTime partnership, which developed a lightweight AI model toolchain, tripling development efficiency.

In the last part, I would like to talk about China’s unique advantages in edge AI.

China is in a strong position in the global Edge AI revolution:

 • 37% of global edge AI patents originate from China.

 • The deployment rate of edge AI devices on the smart city side exceeds 60%.

• 45% of edge AI applications in industrial quality inspection scenarios.

 • By 2025, China's edge computing market is expected to reach 200 billion yuan.

Looking ahead, the future of edge AI isbased on comprehensive forecasts from multiple institutions:

• By 2026, 50% of enterprise edge AI systems will adopt dynamic task allocation strategies.

• By 2027, 90% of edge AI devices will support multimodal interaction.

• By 2030, 30% of industrial edge devices will be equipped with self-learning capabilities.

• Edge AI will boost global GDP by 0.3–0.8 percentage points annually.

This is not just about technological advancement—it is a critical step in transitioning towards an intelligent society.

To conclude, let me share a real-world case from TMTPost’s research—the AI-powered transformation of an automotive factory.

After edge AI was integrated into 287 production steps:

 • Per capita output increased by 4.6 times.

 • Defect rates dropped to just 3 PPM (parts per million).

This confirms today's core message—when AI computing power reaches the industrial frontline, we unlock not just an efficiency revolution but a fundamental upgrade in human productivity.

Let's work together to drive this silent yet transformative revolution forward.

Thank you!

本文系作者 Hejuan Zhao 授权钛媒体发表,并经钛媒体编辑,转载请注明出处、作者和本文链接
本内容来源于钛媒体钛度号,文章内容仅供参考、交流、学习,不构成投资建议。
想和千万钛媒体用户分享你的新奇观点和发现,点击这里投稿 。创业或融资寻求报道,点击这里

敬原创,有钛度,得赞赏

赞赏支持
发表评论
0 / 300

根据《网络安全法》实名制要求,请绑定手机号后发表评论

登录后输入评论内容

快报

更多

15:15

泰永长征:公司的自动转换开关设备有应用于航天发射场的稳压系统中

15:14

摩根士丹利基金:当前A股和港股仍处于中低分位估值

15:12

机构:预计2026年Q1服务器DDR5涨幅超40%

15:11

诺华制药17亿美元押注英国AI药企,布局过敏性疾病新靶点

15:10

鸿蒙智行五界将共建智能汽车生态联盟

15:08

国内商品期货收盘,工业硅跌超3%

15:07

A股收评:沪指跌0.37%,创业板指涨0.61%,算力硬件方向全线走强

14:55

知情人士:多晶硅产能整合收购平台光和谦成公司将为行业内主要企业探索潜在战略合作机会

14:53

11月中国城市轨道交通完成客运量28.3亿人次

14:52

阿布扎比投资委员会首席投资官:看好明年的宏观形势

14:45

上海杨浦:优秀“博主”在区内购房最高补贴200万元

14:38

算力租赁概念再度拉升,宏景科技、东方材料触及涨停

14:37

京东工业香港IPO定价为每股14.10港元,募集29.8亿港元

14:36

韩国最大电商Coupang总部遭搜查,历史性数据泄露事件波及3000万民众

14:32

日韩股市收盘涨跌不一

14:31

国家药监局:从2026年1月1日起,全面禁止生产含有“汞”元素体温计和血压计产品

14:31

四川:并网型绿电直连项目作为统一整体参与电力市场,享有平等的市场地位

14:27

奈飞联席CEO暗示收购完成后将维持华纳兄弟内容授权策略

14:23

中国首个燃机发电无人智控系统成功投运

14:18

贵金属板块持续走弱,中金黄金跌超5%

扫描下载App