奥哲·云枢
Search documents
独家对话奥哲CEO徐平俊:“AI+数据+低代码”成为构建AI原生企业最佳路径
Sou Hu Cai Jing· 2025-10-22 10:55
Core Insights - The recent release of the State Council's opinion on implementing "AI+" actions indicates a shift from AI technology being a novelty to becoming practical and essential for businesses [3] - Companies' ability to apply AI technology will be a decisive factor in seizing future development opportunities, while AI technology providers face the challenge of transitioning from selling tools and services to selling outcomes [3][4] - The need for businesses to address challenges such as scenario selection, technology implementation, and ROI measurement will be critical for the commercialization and scalability of enterprise AI applications [3][4] Company Overview - Aozhe, founded during the late information age, initially focused on BPM to help businesses optimize processes and improve operational efficiency [4] - In the digital age, Aozhe shifted towards low-code platforms to enable businesses to respond quickly to market changes, achieving recognition as a leading low-code software vendor [4] - Aozhe's founder, Xu Pingjun, emphasized that understanding business needs is the core value of digital services, a capability that large models currently cannot replace [4][6] Strategic Developments - On October 17, Aozhe announced a strategic upgrade and launched an enterprise-level AI platform, proposing a closed-loop model of "AI + Data + Low-Code" [4][19] - This new strategy aims to address the challenges of integrating single-point capabilities and closing business logic loops in enterprise AI applications [4][19] Industry Insights - Xu Pingjun believes that AI technology will expand market growth by solving past challenges and creating new scenarios, while also enhancing the ability to meet personalized business needs [6][15] - The software industry is shifting towards value delivery and outcome delivery, with a consensus that AI should directly deliver results [15][18] Platform Features - Aozhe's enterprise-level AI platform is designed to facilitate the transition from digitalization to intelligentization, leveraging AI's native development capabilities [19][21] - The platform consists of three layers: AI model integration, a closed-loop business engine, and native AI application development across various industries [21][24] - Aozhe's platform aims to provide a seamless integration of AI, data, and low-code capabilities, allowing businesses to achieve better results at lower costs [27][28] Market Positioning - Aozhe's enterprise-level AI platform is positioned as a core product, with a focus on delivering personalized solutions and integrating various AI capabilities [26][27] - The platform differentiates itself by achieving business closure, supporting high levels of customization, and simplifying the use of AI through model selection and adaptation [27][28] Future Directions - Aozhe aims to become a leader in the enterprise-level AI platform market, building on its previous successes in BPM and low-code [46][47] - The company plans to help businesses transition from digitalization to intelligentization, ultimately enabling them to become AI-native enterprises [47]
奥哲企业级AI平台正式发布,开启企业新「智」变!
Quan Jing Wang· 2025-10-18 08:56
Core Insights - The conference on October 17, 2023, marked the launch of the "Aozhe Enterprise AI Platform," showcasing the company's new strategic positioning in the AI era, emphasizing the integration of "AI + Data + Low Code" as a core capability for enterprise digital transformation [1][2] - Aozhe aims to help enterprises transition into "AI-native" companies, highlighting that AI is not just a future trend but is currently replacing existing processes [2][10] Group 1: Company Overview - Aozhe has evolved over 15 years from a BPM product provider to a leader in low-code solutions, recognized as the "No. 1 Low-Code Brand in China" by IDC and other authorities [2] - The company has been actively involved in the formulation of industry standards and has deepened its exploration of AI applications to meet the evolving digital needs of enterprises [2] Group 2: AI Platform Features - The newly launched enterprise-level AI platform combines AI technology with a low-code platform, enabling integrated solutions from AI, data, to applications [3][6] - The platform includes three core AI capabilities: - **AI Designer**: Facilitates the development of AI-native applications by generating business blueprints and structured code, significantly lowering development barriers and enhancing efficiency [4] - **AI Agent**: Automates repetitive tasks, allowing businesses to delegate tasks like IT ticketing and customer service to AI [5] - **Data & AI Discovery**: Empowers business personnel to conduct data analysis and predictions with zero barriers, driving scientific decision-making [6] Group 3: Industry Applications - Companies like Wuhan Guangxun Technology and Beijing Huayuan Real Estate shared their AI transformation experiences, validating the capabilities of Aozhe's enterprise-level AI platform [7][8] - Guangxun Technology implemented a smart contract management system using Aozhe's platform, automating the entire lifecycle of contract management, which was recognized as a leading case in digital transformation [7] - Huayuan Real Estate has integrated AI into its operations, focusing on a phased approach to AI application, enhancing operational efficiency through IT intelligent customer service and AI approval systems [8] Group 4: Future Outlook - Experts at the conference emphasized that AI is a key driver for high-quality enterprise development, predicting that by 2030, around 50% of work content will be automated, necessitating skill upgrades for approximately 200 million workers [8] - Aozhe announced the establishment of the "Enterprise AI Alliance" to promote collaboration and innovation in AI technology across various industries [10] - The company aims to continue its evolution into a leading enterprise-level AI platform provider, focusing on the deep integration of "AI + Data + Low Code" to support enterprises in becoming AI-native [10]