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In-Depth Research Report on XSKY's Strategic Transformation in the AI Era

#ai_data_infrastructure #software_defined_storage #strategic_transformation #data_storage #cloud_computing #investment_analysis #xsky
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January 15, 2026

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Based on the collected information, I now provide you with an

in-depth investment research analysis report on XSKY’s strategic transformation
.


In-Depth Research Report on XSKY’s Strategic Transformation in the AI Era
I. Company Overview and Background of Strategic Upgrade
1.1 Company Development History

XSKY is a leading Chinese provider of Software-Defined Storage (SDS) solutions. Founded in 2015 with its headquarters in Beijing, the company was established by an industry veteran team focusing on the data infrastructure sector, and has received multiple rounds of financing from well-known investment institutions such as Qiming Venture Partners [1]. After a decade of development, XSKY has grown from an early-stage software-defined storage vendor to a comprehensive data infrastructure enterprise covering enterprise-level storage, data management, and cloud services.

Previously positioned as an infrastructure provider helping enterprises build a “digital library”, the company’s main products included IT infrastructure products such as distributed storage systems and software-defined storage platforms. With the rapid development of artificial intelligence technology, the company realized that traditional storage architectures could no longer meet the new data processing requirements of the AI era, thus initiating its strategic transformation.

1.2 Core Content of Strategic Upgrade

In December 2025, XSKY held the AIMesh Product Strategy Launch Conference, officially announcing the company’s strategic leap from “Information Technology (IT)” to “Data Intelligence” [2]. This strategic upgrade marks a fundamental shift in the company’s positioning:

  • Position Upgrade
    : From a traditional “storage vendor” to an “AI data infrastructure builder”
  • Value Proposition Shift
    : From providing storage hardware/software to delivering “data factory” operation capabilities for the AI era
  • Strategic Vision
    : To be the “second brain” for AI and become a core component provider in the era of data intelligence

At the strategy launch conference, the company’s CEO emphasized that in the face of the uncertain cycle of rapid iteration of algorithms and chips, XSKY chose data itself as the unchanging anchor point, to protect data value in a long-term, secure, and efficient manner, and practice the concept of “Everlasting Data” [2].


II. In-Depth Analysis of the AIMesh Full-Stack AI Data Solution
2.1 Product Matrix Architecture

AIMesh is a full-stack AI data solution launched by XSKY, consisting of three core products [2]:

Product Name Functional Positioning Core Value
MeshFS
Training Data Network File system-level optimization, 50% higher write bandwidth than mainstream solutions
MeshSpace
Global Object Network Supports EB-level global namespace, breaks through hybrid cloud data silos
MeshFusion
Inference Memory Network Uses local SSD to simulate L3 persistent memory, expands context window at 1% of the cost
2.2 Core Technological Breakthroughs

The AIMesh solution has achieved breakthrough innovations addressing three major technical bottlenecks in the AI field:

(1) MeshFusion Breaks Through the “Memory Wall”

Traditional AI inference faces the bottleneck of video memory capacity limitations, and the cost of expanding the context window for large models is extremely high. Through innovative persistent memory technology, MeshFusion uses local SSDs to simulate L3 persistent memory, achieving:

  • Cost Advantage
    : Expands AI context window at 1% of the cost of traditional solutions
  • Performance Improvement
    : Enables AI to have “ultra-long short-term memory” capability
  • Technical Principle
    : Through data tiering and intelligent caching strategies, cold data is offloaded to SSDs while hot data is retained in memory
(2) MeshSpace Tears Down the “Data Wall”

Enterprises commonly face the problem of data silos in AI applications, where data across public clouds, private clouds, and edge nodes is difficult to interconnect. MeshSpace provides:

  • EB-Level Global Namespace
    : Supports unified management of massive data volumes
  • Hybrid Cloud Data Mobility
    : Data can flow freely between different cloud environments without migration
  • Breaking Silos
    : Unified management of data resources scattered in different locations
(3) MeshFS Breaks Through the “IO Wall”

AI training requires continuous, high-speed data supply, and traditional storage architectures often become a bottleneck for GPU computing. MeshFS achieves this through:

  • Write Bandwidth Optimization
    : 50% higher write bandwidth than mainstream solutions
  • Reducing GPU Idle Time
    : Ensures ultra-fast data supply to maximize GPU utilization
  • File System-Level Optimization
    : Optimized specifically for AI workload characteristics
2.3 Product Differentiation Advantages

The AIMesh solution has the following core differentiation features [2]:

  1. Decoupled Architecture
    : Separates computing and storage to adapt to the elastic demands of AI workloads
  2. Open Ecosystem
    : Connects to various training/inference platforms via standardized interfaces
  3. Chip Compatibility
    : Compatible with NVIDIA, Huawei Ascend, and self-developed chips, maintaining absolute neutrality
  4. Data Sovereignty
    : Enables enterprises to retain data sovereignty, eliminating the need to reconstruct data pipelines when switching computing power

III. Analysis of Market Opportunities for AI Data Infrastructure
3.1 Market Size and Growth Forecast

According to data from authoritative market research institutions, the global AI-driven storage market is in a period of high growth [3][4]:

Indicator 2024 2032 Forecast Compound Annual Growth Rate (CAGR)
AI-Driven Storage Market Size USD 28.69 Billion USD 162.65 Billion 24.22%
Network-Attached Storage (NAS) Market USD 46.97 Billion (2025) USD 173.12 Billion (2034) 15.50%
Enterprise Data Storage Market USD 88.33 Billion (2026) USD 119.53 Billion (2035) 3.4%

Key Insights
:

  • The AI-driven storage market is growing significantly faster than the traditional storage market, reflecting the rigid demand for storage driven by AI
  • Network-Attached Storage (NAS) accounts for the largest share of 46% in the AI-driven storage market
  • The Asia-Pacific region is expected to become the fastest-growing regional market
3.2 Market Driving Factors

The core factors driving the growth of the AI data infrastructure market include:

  1. Explosion of Large Model Parameters
    : AI large model parameters are moving from the 100-billion level to the trillion level, and training data volume has jumped from the TB level to the PB level [5]
  2. Storage “Super Cycle”
    : Unlike previous cyclical fluctuations, this round of storage price increases is substantially driven by rigid AI demand [5]
  3. Accelerated Cloudification Trend
    : According to Gartner forecasts, by 2025, over 95% of new digital data workloads will be migrated to cloud platforms
  4. Rise of Edge AI
    : The edge-side AI market is developing rapidly, leading to a surge in demand for dedicated storage chips
3.3 Segmented Market Opportunities
(1) Training Data Storage
  • Demand Characteristics
    : Ultra-large scale, high throughput, continuous writing
  • Market Size
    : With the growth of large model parameters, demand for training data storage is growing exponentially
  • Technical Requirements
    : PB/EB-level scalability, 10-million-level IOPS
(2) Inference Data Storage
  • Demand Characteristics
    : Low latency, high concurrency, real-time response
  • Market Size
    : Data access volume in the inference phase far exceeds that in the training phase
  • Technical Requirements
    : Millisecond-level response, memory-level access speed
(3) Data Lake and Data Management
  • Demand Characteristics
    : Multi-source data integration, cross-cloud data mobility
  • Market Size
    : The problem of enterprise data silos has spawned demand for unified data management
  • Technical Requirements
    : Global namespace, intelligent data tiering

IV. Competitive Landscape and Industry Benchmarking Analysis
4.1 Global Competitive Landscape

The main players in the global AI-driven storage market include [3][4]:

Enterprise Type Core Advantages AI Strategic Focus
Dell Technologies
International Giant Enterprise-level IT infrastructure Jointly developing AI data platforms with NVIDIA
NetApp
International Giant Data management, cloud integration Launched NetApp AFX and AI Data Engine (AIDE)
Pure Storage
International Innovator All-flash arrays FlashBlade//EXA high-performance storage platform
HPE
International Giant Enterprise-level servers and storage AI-optimized storage solutions
Huawei
Chinese Leader Local market, chip integration OceanStor A800 (EB-level NAS)
4.2 Competitive Landscape in the Chinese Market

The Chinese AI data infrastructure market presents the following competitive characteristics:

  1. Leading Enterprise Dominance
    : Huawei, Alibaba Cloud, Tencent Cloud, etc., occupy the major market share
  2. Segmented Market Opportunities
    : There is room for differentiated competition in segmented fields such as software-defined storage and distributed storage
  3. Domestic Substitution Trend
    : Driven by independent and controllable policies, domestic storage vendors have gained more opportunities
  4. Ecosystem Integration Capability
    : Enterprises capable of integrating computing power, storage, and optical communication have more competitive advantages
4.3 XSKY’s Competitive Positioning

XSKY’s Differentiated Competitive Advantages
:

Dimension Competitive Advantage
Local Market Understanding
Deeply rooted in the Chinese enterprise market, with better understanding of local customer needs
Technological Architecture Innovation
Innovative architectural design of AIMesh targeting AI pain points
Ecosystem Neutrality
Maintains neutrality in chips and platforms, not bound to specific vendors
Cost-Effectiveness Advantage
Cost advantages brought by localized operations
Focused Specialization
Focused on the segmented field of data infrastructure

V. Opportunities and Challenges of Strategic Transformation
5.1 Strategic Opportunities
(1) Explosive Demand for AI Infrastructure
  • Large model training and inference pose new requirements for data storage
  • Traditional storage architectures cannot meet the characteristics of AI workloads
  • There is a huge market gap for specialized AI storage solutions
(2) Enhanced Awareness of Data Sovereignty
  • Enterprises’ demand for data security and independent controllability has increased
  • Chip and platform neutrality have become important considerations
  • Domestic storage vendors have gained more trust and opportunities
(3) Hybrid Cloud and Multi-Cloud Trends
  • Enterprise IT architectures are evolving towards hybrid cloud and multi-cloud
  • Demand for cross-cloud data management and mobility has increased
  • A unified data infrastructure has become a rigid demand
(4) Policy Support
  • The “Digital China” strategy promotes the construction of data infrastructure
  • Independent and controllable policies benefit domestic vendors
  • The development of the data factor market brings new opportunities
5.2 Strategic Challenges
(1) Technology Iteration Risk
  • AI technology is evolving rapidly, requiring continuous adjustment of product roadmaps
  • Changes in chip architectures may affect storage architecture design
  • There is uncertainty in technology roadmap selection
(2) Market Competition Pressure
  • International giants have profound technological accumulation and strong brand influence
  • Domestic leading enterprises have abundant resources, leading to fierce price competition
  • New entrants continue to increase
(3) Business Model Transformation
  • Transformation from product sales to solution services
  • Need to establish new sales and service capabilities
  • Customer education and market cultivation take time
(4) Capital and Resource Requirements
  • Strategic transformation requires large R&D investment
  • Talent competition is fierce, leading to increased costs for core talents
  • Market expansion requires continuous capital support
5.3 Key Success Factors

The key factors for the success of XSKY’s strategic transformation include:

Key Factor Specific Requirements
Technological Innovation
Sustained R&D investment to maintain technological leadership
Ecosystem Construction
Establish an open partner ecosystem
Customer Expansion
In-depth understanding of AI customer needs and provision of customized solutions
Brand Building
Establish a professional brand in the field of AI data infrastructure
Talent Reserve
Attract and cultivate talents in the interdisciplinary field of AI and storage

VI. Financial and Valuation Considerations
6.1 Industry Financial Characteristics

The financial characteristics of the AI data infrastructure industry include:

  1. High R&D Investment
    : Driven by technological innovation, requiring continuous R&D investment
  2. Economies of Scale
    : Software-defined storage has favorable marginal cost characteristics
  3. Customer Stickiness
    : Enterprise-level storage customers have high switching costs, resulting in strong customer stickiness
  4. Cash Flow Characteristics
    : Subscription models and long-term contracts improve cash flow
6.2 Valuation Framework

For transforming AI data infrastructure enterprises like XSKY, valuation should consider:

Valuation Dimension Analysis Points
Revenue Growth
Growth rate of AI product revenue as a percentage of total revenue
Gross Profit Margin
Improvement in gross profit margin driven by increased software revenue share
Customer Acquisition
Number of AI customers and customer lifetime value
Technological Barriers
Uniqueness and sustainability of core technologies
Market Position
Market share in segmented fields
6.3 Investment Focus Areas

For investors, key areas of focus include:

  1. Commercialization Progress of AIMesh
    : Order volume, number of customers, revenue contribution
  2. R&D Investment Efficiency
    : Efficiency of converting technological achievements into revenue
  3. Customer Structure Changes
    : Growth in the proportion of AI customers
  4. Competitive Landscape Changes
    : Market share changes, consolidation of competitive advantages
  5. Capital Operations
    : Listing plans, financing progress

VII. Investment Recommendations and Risk Warnings
7.1 Investment Rating and Recommendations

Overall Rating: Outperform

XSKY’s strategic transformation reflects its profound understanding of data infrastructure requirements in the AI era. The launch of the AIMesh product marks the company’s upgrade from a traditional storage vendor to an AI data infrastructure builder, which aligns with industry development trends. The company’s technological accumulation in the software-defined storage field and its local market advantages have laid a solid foundation for its AI transformation.

Investment Logic
:

  1. High-Quality Track
    : The AI data infrastructure market is growing rapidly, with an expected CAGR of 24.22% from 2024 to 2032
  2. Timely Transformation
    : The company launched targeted products during the period of explosive AI demand to seize market opportunities
  3. Differentiated Competition
    : Neutral positioning and local advantages form differentiated competitiveness
  4. Policy Benefits
    : The domestic substitution trend and independent and controllable policies provide development opportunities
7.2 Target Price and Valuation Range

Given that XSKY is not yet publicly listed, it is recommended to pay attention to its listing progress on the Hong Kong Stock Exchange or A-share market. For primary market investment, a reasonable valuation range should consider:

  • Revenue Multiple
    : Refer to the revenue multiples of similar AI infrastructure companies (5-10x PS)
  • Technology Premium
    : A 20-30% technology premium can be given for the AI concept
  • Growth Discount
    : A certain growth discount can be given to unprofitable companies
7.3 Risk Warnings
Risk Type Risk Description Impact Level
Market Risk
AI infrastructure construction progress falls short of expectations Medium-High
Competition Risk
Leading vendors increase investment to squeeze market space Medium-High
Technological Risk
Wrong technology roadmap selection leads to reduced product competitiveness Medium
Execution Risk
Strategic transformation execution falls short of expectations Medium
Financing Risk
Changes in primary market financing environment affect development Medium-Low
7.4 Catalysts
  1. AIMesh receives orders from key customers
  2. Announcement of listing plans on the Hong Kong Stock Exchange or A-share market
  3. Introduction of favorable AI-related policies
  4. Securing major strategic investment
  5. Quarterly/annual performance exceeds expected growth

VIII. Conclusions and Outlook
8.1 Core Conclusions

XSKY’s strategic transformation reflects the proactive adaptation of data infrastructure enterprises in the AI era. The company’s upgrade from a traditional “storage vendor” to an “AI data infrastructure builder” aligns with the new requirements for data infrastructure in the AI era.

Main Conclusions
:

  1. Correct Strategic Direction
    : The AIMesh product proposes solutions to three major pain points in the AI field (memory wall, data wall, IO wall), which aligns with market demand
  2. Obvious Product Differentiation
    : Decoupled, open, and durable technological architecture, as well as neutral positioning, form differentiated advantages
  3. Huge Market Opportunities
    : The global AI-driven storage market is expected to maintain a high growth rate of over 24%
  4. Coexistence of Challenges and Opportunities
    : Facing competition from leading vendors and technology iteration risks, but the domestic substitution trend provides a development window
8.2 Development Outlook

Short-Term (1-2 Years)
:

  • Achieve commercial breakthroughs for the AIMesh product
  • Establish benchmark cases with AI customers
  • Complete listing preparation work

Medium-Term (3-5 Years)
:

  • Significantly increase the proportion of AI-related revenue
  • Establish a leading position in the AI data infrastructure field
  • Achieve scale and profit improvement

Long-Term (5-10 Years)
:

  • Become a core data infrastructure provider in the AI era
  • Achieve international expansion
  • Build a complete data intelligence ecosystem
8.3 Investor Relations Tips

For investors focusing on the AI data infrastructure track, XSKY is a target worth tracking. It is recommended to pay attention to:

  1. The company’s listing progress and valuation level
  2. Commercialization data of the AIMesh product
  3. Changes in customer structure and acquisition of key customers
  4. R&D investment and technological innovation dynamics
  5. Changes in the industry competitive landscape

References

[1] Qiming Venture Partners - XSKY: SDS Industry Accelerates Data Infrastructure Construction (https://www.qimingvc.com/sites/default/files/news/)

[2] NetEase News - XSKY Launches AIMesh Full-Stack AI Data Solution: To Be the “Working Memory” Infrastructure for AI (https://www.163.com/dy/article/KJAG7J210514R9OJ.html)

[3] Credence Research - AI-Driven Storage Market Size, Share, Growth and 2032 Forecast (https://www.credenceresearch.com/zh/report/ai-aowere-storage-market-zh)

[4] Fortune Business Insights - Network-Attached Storage Market Size, Share and Analysis (https://www.fortunebusinessinsights.com/zh/industry-reports/network-attached-storage-market-100505)

[5] East Money - CC Data: Collaboration of Computing Power, Storage and Optical Communication to Reshape the New Pattern of AI Infrastructure (https://emcreative.eastmoney.com/app_fortune/article/index.html?artCode=20260111204655726166970)


Report Compiled by: Jinling AI Investment Research Team
Date: January 15, 2026

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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.