AI Reinforces Supply Chain Resilience: DC HOLDINGS' (00861) Kejie "Xiao Jin" Drives Efficiency Leap in Double 11 Operations

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As the 2025 Double 11 shopping festival draws to a close, businesses face a critical test of their supply chain resilience under peak pressure. DC HOLDINGS (00861), a veteran in supporting Double 11 operations for 16 consecutive years, has introduced its enterprise-grade AI-powered supply chain cluster "Xiao Jin" through its smart logistics subsidiary Kejie. This marks the first full-process AI integration—from order intake to warehouse dispatch—yielding remarkable results: Kejie's order processing capacity surged by 280% year-over-year during peak seconds, cosmetics and FMCG order volume doubled in the first two days, pickup time reduced by 1.4 hours, and 24-hour dispatch rate improved by 2.6 percentage points. These metrics underscore AI's transition from conceptual validation to industrial-scale implementation.

**End-to-End Intelligence: From Reactive to Proactive Control** At Kejie's smart warehouses, AI transforms from an abstract concept into an operational partner embedded in every workflow. The self-developed "Xiao Jin" cluster is not a single-function tool but a holistic solution integrating warehousing, sorting, and order processing, powered by Kejie's proprietary KingKoo Data platform and deep-learning algorithms. During Double 11, its predictive capabilities enabled "goods-to-person" strategies—pre-packaging bestsellers based on sales forecasts derived from 20+ years of industry data. Xiao Jin projected 22.21 million orders (96% accuracy against actual 21.33 million), allowing optimized resource allocation that slashed delays and boosted throughput.

**AI in Action: Precision Across Workflows** - **Order Batching**: AI recommended optimal picking paths, tripling decision efficiency. - **Picking**: Smart task routing minimized worker travel, while automated sorters (e.g., seeding walls) lifted complex order handling by 20%. - **Packing**: Material recommendations and semi-automatic machines raised per-person efficiency by 15%. - **Quality Check**: Supervisors monitored dozens of stations in real-time, improving individual output by 10%. - **Handover**: AI tracked carrier schedules, cutting average dwell time by 1 hour via dynamic resource adjustments. - **Anomaly Control**: AI surveillance reduced stalled/erroneous orders, with issue detection within 5 minutes.

**Industrial-Grade AI: Beyond Prototypes** With Sequoia Capital projecting a $10 trillion generative AI market, competition now centers on industrial applicability. Kejie’s 160+ warehouses, 300-city coverage, and daily 5-million-order capacity have honed Xiao Jin into a pragmatic solution that interprets logistics data and industry pain points alike. During Double 11, it issued 300+ daily alerts and hourly automated warehouse reports, enabling data-driven coordination.

This year’s performance demonstrates how AI can transform supply chains from reactive cost centers into proactive value networks. Since its 2003 founding, Kejie has championed tech-driven supply chain expertise. Xiao Jin’s debut not only validated AI’s operational impact but also redefined Double 11 from a "stress test" to "business as usual." Moving forward, Kejie aims to deepen AI and big data applications, steering global supply chains toward intelligent, value-creating ecosystems.

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