购物Agent张大妈

Search documents
消费平台“什么值得买”:“618”期间通过AI购物智能体达成的订单转化率同比提升162.6%
Xin Hua Cai Jing· 2025-06-25 14:47
Core Insights - The consumption platform "What Worth Buying" has reported a significant increase in consumer decision-making efficiency driven by AI, leading to growth in consumption during the "618" shopping festival [2] - The company launched multiple AI products, including the AI engine "Fire Eye" AIUC engine, user-facing AI products "What Worth Buying" GEN2, shopping agent "Zhang Dama," and the foundational AI infrastructure product "Haina" MCP Server [2] - The AIUC engine has enhanced product selling points, risk warnings, and purchase suggestions, with a 15-fold increase in AIUC label recognition and a reduction in content review time to one-eighth of last year's duration [2] Company Developments - The "Haina" MCP Server has gained industry attention for its integration of data and content advantages in the consumer sector, offering unique value in richness, real-time capabilities, and neutrality [3] - The "Haina" MCP Server has been made available to various partners, including large models and intelligent terminal applications, facilitating extensive adaptation for AI applications [3] - In June, the overall content and product output from the "Haina" MCP Server exceeded 8 million, marking a nearly 80% increase compared to May [3]
值得买科技举办AI进展分享会
Shang Hai Zheng Quan Bao· 2025-05-28 13:19
Core Insights - The company held an AI progress sharing conference to showcase the results and advancements of its "comprehensive AI strategy" over the past year [1] - Key highlights included the introduction of the "Fire Eye" AIUC engine, the upgraded "What Worth Buying" GEN2, the shopping assistant "Zhang Dama," and the foundational "Haina" MCP Server [1] Group 1 - The AIUC engine leverages extensive internet content understanding to drive a new paradigm of intelligent decision-making [1] - The "What Worth Buying" GEN2 is AI-driven and focuses on interest-based consumer content, aiming to create a trusted guide for users [1] - The AI shopping assistant "Zhang Dama" facilitates a one-stop management of the shopping process, enhancing user decision-making efficiency and consumer experience [1] Group 2 - The "Haina" MCP Server is a standardized consumer data service platform based on the Model Context Protocol (MCP), which connects large models directly to data sources [1] - The CTO highlighted that the MCP protocol enhances the efficiency of AI ecosystems by improving the connection between agents and tools, allowing for focused optimization in various domains [2] - The company has launched the Haina MCP Server on its official website and integrated it into platforms like Alibaba Cloud, utilizing a vast database of 12 billion consumer content entries and 1 billion product entries to support AI applications [2]
值得买科技CTO王云峰:公司已实现从AI技术底层、产品形态到生态共建的全面布局
Xin Hua Cai Jing· 2025-05-28 13:00
Core Insights - Worth Buying Technology Group has launched multiple AI products, including the "Fire Eye" AIUC engine, two user-facing AI products ("What is Worth Buying" GEN2 and shopping agent "Zhang Dama"), and an AI infrastructure product ("Haina" MCP Server) [2] - The AIUC engine is designed to deeply understand and extract value from various content types, enhancing content production and business decision-making efficiency [2] - The company emphasizes the importance of AIUC in the consumer sector, stating it has improved content quality and process efficiency across its diverse business operations [2][3] Group 1 - The "Fire Eye" product focuses on helping consumers discern the authenticity of content, filter quality information, summarize genuine opinions, and enhance decision-making efficiency in consumption [3] - Worth Buying Technology Group is committed to a comprehensive AI strategy, prioritizing AI application research to transform cutting-edge AI technology into practical productivity [3] - The company aims to explore more possibilities of "AI + consumption" and actively share and exchange AI capabilities to contribute to the AI era [3]