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Qianwen "Deep Research" Upgrade: Access to real-time quotes for 13k stocks, freely available for use
Sina Technology News, April 7th — On the morning of April 7th, Alibaba’s AI assistant Qianwen announced an upgrade to its “Deep Research” professional capabilities, adding new modules such as financial analysis, connecting to real-time quotes for 13k stocks, approximately one million listed company financial reports, and making this advanced AI capability freely available to all users.
For a long time, there has been a significant information gap between ordinary investors and professional institutions. For example, to analyze a company’s financial report, an ordinary investor needs to pay an annual fee of tens of thousands of yuan to access a specialized financial terminal; searching for free research reports results in scattered and outdated information; trying to calculate valuations on their own, they often cannot understand financial ratios. Through cooperation with Tonghuashun, Qianwen has integrated minute-level real-time market data for over 13k stocks and consolidated about one million financial reports, announcements, and authoritative research reports from listed companies.
It is reported that the core technology supporting this upgrade is the deep application of the Qianwen Agentic architecture. Unlike traditional AI question-and-answer systems, the Agentic architecture endows the system with autonomous planning and execution capabilities: when a user submits a research request, the system will analyze the intent, plan the analysis path, autonomously call real-time market and financial report data, and ultimately synthesize information from multiple sources to form a conclusion. Before officially outputting the report, the system will first display the analysis framework, making the entire research logic transparent and visible, significantly reducing the AI’s “black box” feeling. (Wen Meng)