Analysis of the Impact of the 'Physical AI' Era on the Investment Value of China's AI Industry
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Based on the above in-depth research and data analysis, I now provide you with a complete investment analysis report:
NVIDIA CEO Jensen Huang clearly stated at the 2026 International Consumer Electronics Show (CES 2026):
Jensen Huang’s core definition of “Physical AI” is:
| Technical Features | Connotation Explanation |
|---|---|
| World Understanding | AI needs to understand physical common sense such as object permanence (objects do not disappear out of thin air) and causal relationships (thrust causes objects to move) |
| Interaction Capability | AI shifts from screen interaction to physical interaction with the real world |
| Closed-Loop Decision-Making | Establish a complete “perception-reasoning-action” closed loop, rather than staying at the information processing level only |
Jensen Huang pointed out that the breakthrough in physical AI will bring the
As the world’s largest manufacturing country, China has a
| Advantage Areas | Specific Performance | Data Support |
|---|---|---|
| Industrial Robots | World’s largest industrial robot market | China accounts for approximately 45% of the global industrial robot market share[5] |
| Intelligent Manufacturing | Complete manufacturing industrial chain | Penetration rate of L2-level assisted driving exceeds 50% [6] |
| Digital Twin | More than half of prefecture-level administrative regions have carried out related construction | National digital twin city coverage rate exceeds 50% [7] |
- China’s local supply chain has strong cost reduction capabilitiesin core motors, drivers, and sensors
- Product iteration speed: approximately one generation every six months to one year(European companies typically take 2-3 years)
- Mass production cycle: approximately 1 yearin China,3-5 yearsin Europe[8]
- The “domestic GPU + physical AI” collaboration model has been formed (in-depth binding between Moore Threads and 51WORLD)
National-level policies continue to increase, clearing institutional obstacles for the development of physical AI:
- The “14th Five-Year Plan for Digital Economic Development” explicitly supports the integration of digital twins and physical AI
- The State Council’s “Implementation Opinions on Accelerating Scene Cultivation and Opening Up to Promote Large-Scale Application of New Scenarios”
- The Ministry of Industry and Information Technology’s “Implementation Opinions on the ‘Artificial Intelligence + Manufacturing’ Special Action”
- 30% subsidy policyfor industrial software procurement[9]
China demonstrates
- Autonomous driving field: The penetration rate of L2-level passenger vehicles is expected to rise to90%by 2030
- Unmanned driving financing: Total financing in Q3 2025 exceeded14.6 billion yuan, with robotaxis accounting for 5.7 billion yuan
- Embodied intelligence investment: 8 major internet giants (Baidu, Alibaba, Tencent, Meituan, etc.) have invested a total of62 times, with an amount of1.45-3.4 billion yuan[11]
┌─────────────────────────────────────────────────────────────────┐
│ Panorama of the Physical AI Industrial Chain │
├─────────────────────────────────────────────────────────────────┤
│ Upstream (Computing Power Layer) Midstream (Platform Layer) Downstream (Application Layer) │
│ ┌─────────┐ ┌─────────┐ ┌─────────┐ │
│ │ Domestic GPU │──────────▶│ Simulation Engine │──────────▶│ Robot │ │
│ │ Cambricon │ │ Digital Twin│ │ Autonomous Driving│ │
│ │ Moore Threads │ │ Spatial Intelligence│ │ Intelligent Manufacturing│ │
│ └─────────┘ └─────────┘ └─────────┘ │
│ 27% 28% 45% │
│ [Highest Technical Barrier] [Core Value Link] [Demand-Driven] │
└─────────────────────────────────────────────────────────────────┘
| Industrial Chain Link | Value Proportion | Investment Logic | Core Targets |
|---|---|---|---|
Underlying Computing Power |
27% | Infrastructure for large-scale implementation of physical AI, large space for domestic substitution | Moore Threads, Cambricon, Hygon Information |
Platform Tools |
28% | Highest technical barrier, key hub connecting computing power and applications | Fantuo Digital Creation, 51WORLD, iFLYTEK |
Terminal Applications |
45% | Most direct commercialization, demand explosion drives upstream development | UBTECH, BYD, XPeng Motors |
| Year | Market Size (USD 100 million) | Compound Annual Growth Rate |
|---|---|---|
| 2024 | 37.8 | - |
| 2026 | 67.2 | 33.49% |
| 2030 | 212.5 | - |
| 2034 | 679.1 | 33.49% [12] |
- Scarcity: The only A-share digital twin enterprise covering the three tracks of intelligent driving, embodied intelligence, and industrial simulation
- Technical Barrier: Independently developed FTE engine with spatial positioning accuracy of0.05 mm, leading the industry
- Growth: Business transformation from traditional 3D visualization to high-value-added AI digital twins, with a continuous increase in revenue proportion
- A photovoltaic factory in Zhejiang: Through the AI 3D digital twin platform, energy consumption per 10,000 yuan of output value was reduced by 12.8%, and annual CO₂ emissions were reduced by more than3,500 tons
- A precision machine tool enterprise: After applying the predictive maintenance system, the MTBF of key equipment increased to 5,000 hours, and maintenance costs decreased by30%[13]
- Total orders in 2025 reached nearly 1.4 billion yuan, with customers including leading automakers such as BYD and Geely
- Production capacity of industrial humanoid robots exceeds 1,000 units, with over500 unitsdelivered
- Target production capacity of 10,000 unitsin 2026[14]
- 2025 revenue of HK$1.305 billion (YoY +23.6%)
- Gross profit margin of 23%-38%
- Full-stack self-developed capabilities (from hardware control to ROSA 2.0 system)
- Built a complete closed loop of “synthetic data - spatial intelligence model - simulation training platform”
- CAGR of revenue from 2022 to 2024 was 30.02%
- H1 2025 revenue increased by 62.04% YoY
- Reached a strategic cooperation with Moore Threads to form a “domestic GPU + physical AI” collaboration[15]
| Investment Portfolio | Allocation Ratio | Target Type | Expected Return |
|---|---|---|---|
Core Allocation |
40% | Blue-chip leaders (intelligent driving leaders, chip leaders) | Steady growth |
Growth Allocation |
35% | High-potential targets (digital twin, robot manufacturers) | High elasticity |
Speculative Allocation |
15% | Early-stage targets (embodied intelligence, emerging players) | High risk and high return |
Hedging Allocation |
10% | Steady targets (beneficiaries of traditional manufacturing upgrading) | Defensive |
2024-2025: Infrastructure Construction Period
├── Chip R&D, Algorithm Training, Infrastructure Construction
└── Investment Focus: Underlying Computing Power, Core Algorithms
2025-2026: Initial Deployment Period
├── Industrial Robot Pilots, Digital Twin Project Implementation
└── Investment Focus: Platform Tools, Solutions
2026-2027: Large-Scale Application Period
├── L4-Level Intelligent Driving, Robot Mass Production
└── Investment Focus: Terminal Equipment, Application Scenarios
2027-2030: Full Maturity Period
├── Full Scene Coverage, Significant Cost Reduction
└── Investment Focus: Ecological Integration, Global Layout
| Risk Type | Specific Performance | Response Strategy |
|---|---|---|
Technology Iteration Risk |
Rapid evolution of algorithms may lead to changes in technical routes | Focus on enterprises with core technical barriers |
Commercialization Progress Risk |
Some tracks are still in the early stage, and profitability needs to be verified | Focus on enterprises with large-scale orders already |
Increased Competition Risk |
Increasing industry entrants may compress profit margins | Focus on enterprises with first-mover advantages and customer resources |
Cost Reduction Falling Short of Expectations |
High cost of physical AI equipment limits application promotion | Focus on enterprises with strong supply chain capabilities |
- Scenario Advantages: The world’s largest manufacturing base provides rich application scenarios
- Supply Chain Advantages: Efficient industrial chain collaboration and rapid iteration capabilities
- Data Advantages: Massive training data accumulated in complex urban scenarios
- Policy Advantages: Strong national policy support
- Short-term (2025-2026): Focus on commercially mature tracks such as intelligent driving simulation and industrial robots
- Mid-term (2026-2028): Focus on high-growth tracks such as embodied intelligence and digital twins
- Long-term (2028+): Lay out leading enterprises across the industrial chain to benefit from ecological maturity dividends
- Upstream Computing Power Layer: Domestic GPU breakthroughs, focus on Moore Threads
- Midstream Platform Layer: Digital twins and simulation engines, Fantuo Digital Creation, 51WORLD
- Downstream Application Layer: Industrial robots and intelligent driving, UBTECH, BYD, XPeng Motors
[1] Guancha.com - “Jensen Huang: The ChatGPT Moment for Physical AI Has Arrived” (https://www.guancha.cn/qiche/2026_01_06_802929.shtml)
[2] 36Kr - “Jensen Huang Sets the Tone, Physical AI Sounds the Bugle” (https://m.36kr.com/p/3629230900643080)
[3] Economic Daily - “Jensen Huang Calls for Physical AI Implementation, This Disruptive Innovation ETF Leads the Charge” (https://money.udn.com/money/story/5607/9249982)
[4] Business Next - “Jensen Huang: The ChatGPT Moment for Physical AI Has Arrived!” (https://www.bnext.com.tw/article/89703/nvidia-ces-2025)
[5] The Paper - “China-US Competition in the Physical AI Track: Consensus and Surpassing Between XPeng and Tesla” (https://m.thepaper.cn/newsDetail_forward_32291112)
[6] Eastmoney - “Intelligent Driving and Embodied Intelligence Take the Lead, Fantuo Digital Creation’s Leading Path in Digital Twins” (https://caifuhao.eastmoney.com/news/20260102220532348479770)
[7] The Paper - “After NVIDIA, the Infrastructure Battle for Physical AI Has Begun” (https://m.thepaper.cn/newsDetail_forward_32206654)
[8] 21st Century Business Herald - “CES 2026 Witnesses AI Ecological Changes, Chinese Manufacturers Enter the Global Core Camp” (https://www.21jingji.com/article/20260107/herald/f1bce8e64fa75c8da92051abb6174441.html)
[9] Eastmoney - “Physical AI, A New Track” (https://caifuhao.eastmoney.com/news/20260103154505641748870)
[10] OFweek AI Network - “Jensen Huang’s Leather Jacket is Cool, But Factory Ledgers Don’t Recognize Physical AI” (https://m.ofweek.com/ai/2026-01/ART-201700-8420-30678402.html)
[11] 36Kr - “2025 for Humanoid Robots: Value Verification, Capital Boom, and Crossroads” (https://m.36kr.com/p/3618801339483396)
[12] Deloitte Official Website - “Deloitte Asia-Pacific Physical AI Lab Unveiled in Shanghai” (https://www.deloitte.com/cn/zh/about/press-room/asia-pacific-physical-ai-lab.html)
[13] Founder Securities - “Comment on the Surge of Intelligent Vehicle ETF” (https://www.nbd.com.cn/articles/2026-01-06/4209200.html)
[14] Caifuhao - “4000-Word In-Depth Research Report on UBTECH” (https://caifuhao.eastmoney.com/news/20260104025908670319240)
[15] BOC International - “Artificial Intelligence Enters the Physical AI Era, Supply Chain Stockpiling is Expected to Accelerate” (https://finance.sina.com.cn/stock/t/2026-01-07/doc-inhfnktr4729826.shtml)
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Market Size Analysis Chart- Shows the forecast comparison of global and Chinese physical AI market sizes, industrial chain value distribution, and advantage comparison of China in various physical AI fields
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Investment Radar Chart- Evaluates each investment field from four dimensions: short-term potential, long-term potential, policy support, and industrial chain maturity
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Investment Timeline Chart- Evaluation of physical AI industrial development stages and investment maturity
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Comprehensive Analysis Chart- Industrial chain investment value distribution, China-foreign development comparison, market growth trajectory, and risk-return matrix
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Investment Portfolio Allocation Chart- Suggestions on investment portfolio allocation strategies for the physical AI track
Insights are generated using AI models and historical data for informational purposes only. They do not constitute investment advice or recommendations. Past performance is not indicative of future results.
About us: Ginlix AI is the AI Investment Copilot powered by real data, bridging advanced AI with professional financial databases to provide verifiable, truth-based answers. Please use the chat box below to ask any financial question.
