AI Agent Paradigm Shift: Bairong Launches RaaS Strategy and Results Cloud Platform
AI is not merely a tool, it should deliver tangible results in the era of AI-human co-governance.
At the launch event,
AI-human co-governance as a measurable new governance model
The ultimate purpose of generative AI is to unleash human creativity.
Strategy and Brand Launch: BR = Best Results
The evolution of
In the current era of the AI agent, capabilities are exploding, yet true productivity remains trapped in outdated frameworks.
"Results-driven and results-based valuation" forms the core philosophy guiding
Results Cloud Platform: Three-tier Architecture
The Results Cloud platform has been officially launched and serves as the core of the RaaS strategy, enabling enterprises to deploy and manage AI agents at scale, similar to hiring and managing human staff. The platform features a three-tier architecture:
Layer 1: "Baiji (百基)" — AI Infra, comprising computing infrastructure, inference engines, and domain-specific AI models.
Layer 2: "CybotStar (百工)" (a Chinese term for "hundred crafts") — Agent OS, an enterprise-grade intelligent operating system;
Layer 3: "Baihui (百汇)" — Agent Store, featuring
The Results Cloud platform has established an unprecedented enterprise-level AI productivity system. Its three-tier architecture not only provides a technical foundation but also addresses accountability for results through five core capabilities, elevating AI from a tool to a productivity driver.
- Observability and Measurability: The platform establishes a comprehensive monitoring system for AI agent operations. At the "CybotStar (百工)" layer, enterprise-level capabilities are separated into components, enabling end-to-end observability and fine-tuning to ensure instant compliance upon deployment while the "Baihui (百汇)" layer provides a value-driven closed-loop mechanism to track operational processes and quantify business outcomes. This allows clients to clearly track ROI per investment. This deep traceability transforms AI agent performance from a black box into a transparent dashboard, delivering on the accountability for results commitment.
- One-Click Optimized Evaluation: The platform pioneers the "One-Click Evaluation Optimization Release" experience. Leveraging the agent DevOps framework, enterprises can rapidly breakdown complex business capabilities into separate components, with the system automatically handling model selection, parameter tuning, and performance validation. The platform innovatively incorporates "Reflective Learning" technology, which transforms historical interaction records generated during agent operation into abstract knowledge through reflective processing. This knowledge is then securely processed in batches into the agent's knowledge base, enabling automated improvements in its performance. This mechanism ensures the agent becomes increasingly accurate with use over time, eliminating the need for manual debugging and truly delivering the efficient "One-Click Optimization, One-Click Release" experience.
- Autonomous Self-Optimization: The platform's Agent Runtime capability enables agents to achieve autonomous self-optimization in real-time. Through "Reflective Learning" technology, agents automatically distill historical interaction experiences during operation, transforming them into abstract knowledge and injecting it into their knowledge base to continuously improve performance. Compared to traditional methods that rely on manual prompt engineering, this autonomous self-optimization ensures a more stable and scalable performance enhancement for agents. As agents continuously learn and evolve with use over time, their performance can approach that of supervised fine-tuning (SFT) models requiring extensive labeled data, yet at significantly reduced costs. This truly realizes "evolution through operation" in agent lifecycle management.
- Built-in Pricing and Revenue Sharing: The platform has innovatively implemented a built-in pricing and revenue sharing mechanism at the "Baihui (百汇)" layer, transforming accountability for results into an actionable business model. The platform supports three value exchange modes: task-based pricing (for individual or batched tasks), position-based compensation (equivalent to a monthly/annual salary for a silicon-based employee), and value creation-based sharing (sharing profits with clients proportionally to performance improvements). This mechanism enables clients to manage their AI agent workforce as flexibly as human resources, creating a value closed loop where "usage is measurable, outcomes quantifiable, and returns tightly linked to value." It truly converts AI's potential into quantifiable business growth.
- Reducing Life-cycle Management From 2 Months to 2 Weeks: The platform has revolutionized agent development and deployment cycles through its Agent DevOps framework, reducing the traditional months-long process to just weeks. This breakthrough stems from the platform's comprehensive lifecycle management: from unified abstraction at the LLM Ops model layer, to separated processes via Agent Builder, and continuous evolution during runtime. The entire process achieves automation and standardization. Each agent meets performance benchmarks upon deployment, eliminating additional debugging. This transformation from one-time project delivery to sustainable and ongoing productivity assets which significantly enhances the efficiency and success rate of enterprise AI applications.
These five core competencies of Results Cloud collectively form a solid foundation for enterprise-level AI deployment, transforming AI agents into manageable, quantifiable, and priceable productivity assets. This evolution elevates AI from a tool to an AI agent productivity driver that yields tangible results, ushering in a new era of 'AI-human co-governance.'
"The Results Cloud platform integrates full-stack GenAI capabilities, built upon our ongoing services to 8,000 institutional clients and a vast number of 2C users. It supports a results-oriented, outcome-as-a-service business model for AI agents," said
Technical Base: Why Bairong Can Scale Results Delivery
Improving Enterprise AI agent to human Ratios: From One Platform to Two Types of AI Agents
For decades, most companies have operated under a "carbon-centric" model: software systems and tools handle process fragments, while humans stitch them together. With AI agents now taking the lead, businesses are entering a new phase of AI-human synergy —AI agent workers will shoulder greater workloads in high-touch, streamlined, and measurable roles, driving up the AI agent to human ratio across organizations.
Drawing on McKinsey's framework for the "human-Agent-robot" division of labor, corporate roles will evolve from "human-centric" to "human-machine collaboration," and ultimately to "Agent-driven." Core processes and tasks that are rule-intensive, involve frequent interactions, and are measurable are best suited for AI agents to handle. In practical terms, the first two key areas for large-scale implementation are EX (internal efficiency) and CX (external revenue).
Two types of AI agents: EX + CX
In the CX (Customer Experience) domain,
In the EX (Employee Experience) domain,
Meanwhile, Baihui (百汇)Agent Store (
Four Flagship AI Agents: Proving Results with "Model Positions"
Baiying's (百盈 CX) "Integrated Sales & Service"
BaiCai (百才EX Smart Recruitment): AI agent Recruitment Specialist – Driving Recruitment into the Autonomous Era! Through the synergy of three product matrices (Intelligence, Smart Recruitment, and Smart Management), it achieves a closed-loop recruitment lifecycle of "precision sourcing → automated flow → intelligent decision-making," directly addressing the three major challenges in recruitment: slow hiring, inaccurate assessments, and difficult diagnoses. The recruitment cycle is shortened from 28 days to 2 days, the resume matching rate increases from 60% to 90%, and the number of HR positions to be recruited per role expands from 5 to 20, truly ushering in the "autonomous era" of recruitment.
Baijian (百鉴EX Professional Services): Elevating Large-Scale Professional Services Standards for Global expansion! Through the Baijian professional service platform, clients gain one-stop access to cross-border establishment, compliance design, and structural planning services. The platform aggregates over 80 countries/regions and 1,000+ professionals, collaborating with AI agents under a "9:1 AI agent to human Synergy" model—where 90% of high-frequency tasks (data aggregation, verification, key point extraction, traceability, and version management) are handled by AI agents. Experts focus on critical judgment and review, ultimately reducing feedback cycles from 90 days to 14 days and project costs from
BaiZhi (百智EX Knowledge Production): The AI agent Companion for Professionals – Listen, Memorize, and Write with Expertise! Through integrated three-terminal collaboration (recording pen + APP + PC), it enables comprehensive data intelligence aggregation and empowers knowledge production with best practices. Addressing critical bottlenecks in the knowledge chain – fragmented information acquisition, lack of methodology in knowledge production, and prolonged delivery cycles (days to months) – it creates a closed-loop from information acquisition to results delivery. The deep report delivery cycle has been reduced from 20 days to 4 days, with 80% efficiency improvement, empowering professionals to produce professional creative outputs efficiently.
Ecology and Standard: From "Publishing Products" to "Defining Rules"
A complete AI-human co-governance ecosystem requires collaborative efforts between
- Standard Development: Jointly produced with authoritative institutions including the China Academy of Information and Communications Technology, the "White Paper on Enterprise-Level AI Agents (Agent) Technology and Applications"(《企业级AI智能体(Agent)技术及应用白皮书》) aims to define technical frameworks, evaluation systems, and implementation standards that will lead the industry toward standardized development.
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Basic Research : Jointly established with institutions including theGaoling School of Artificial Intelligence atRenmin University of China , the 'AI forBusiness Joint Laboratory ' focuses on cutting-edge topics such as agent cognitive reasoning and complex task decomposition, maintaining technological leadership. - Industrial Synergies: Through deep collaborations with leading cloud providers, telecoms service providers, domestic chip manufacturers, and model partners like Tongyi Qianwen,
Bairong has established a comprehensive industrial chain spanning computing power, model development, and application implementation, ensuring seamless technological integration with industry needs. The Company has partnered withGangtise Research to explore financial scenario voice models and co-develop an ecosystem for capital markets research institutions, leveraging BR-Voice technology. Additionally,Bairong strategically invested in Side Information, co-developing the next-generation AI Native card-based financial agent "Cai Chacha财查查" for securities 2B2C scenarios using its proprietary BR-LLM. By leveraging Side Information's extensive securities industry expertise,Bairong extends its AI capabilities and ecosystem into the securities sector. - Industry Ecosystem:
Bairong was named as the co-chair of theIntelligent Agent Innovation and Application Working Group , leading the development of the Remote Banking Intelligent Agent Standard.
Platform × Ecosystem: The Multiplier Effect of Constructing a New Business Ecosystem in the Era of AI Agents
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