LSEG Data API
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LSEG Academy | API + Agent:金融数据服务的智能进化
Refinitiv路孚特· 2026-03-13 01:32
Core Insights - The rapid development of AI Agent technology is transforming the financial data services industry from "passive querying" to "proactive insights" [1] - The LSEG Data API supports AI Agent applications like OpenClaw by providing low-latency, high-precision data pipelines across asset classes [1] Group 1: AI Agent Technology - OpenClaw gained 100,000 stars on GitHub within 48 hours, highlighting the swift rise of AI Agent technology [1] - The financial terminal, valued at $30,000 annually, is being restructured through open-source collaboration [1] Group 2: LSEG Data API - The LSEG Data API enables real-time market data, historical prices, fundamental data, and news to be accessed through natural language commands [1] - The API facilitates efficient data support for investment research, quantitative analysis, and risk management [1] Group 3: Event Details - An upcoming seminar on March 13, 2026, will cover the rise of AI Agents, the capabilities of LSEG Data API, and demonstrate the integration of Agent and Data API for intelligent data acquisition and analysis [2]
LSEG Academy | API + Agent:金融数据服务的智能进化
Refinitiv路孚特· 2026-03-05 06:03
Core Insights - The rapid development of AI Agent technology is reshaping industry workflows, transitioning financial data services from "passive querying" to "proactive insights" [1] - The LSEG Data API supports AI Agent applications like OpenClaw by providing low-latency, high-precision data pipelines across asset classes [1] Group 1: Event Overview - The event will showcase the rise of AI Agents, exemplified by OpenClaw, and discuss the latest technological trends [2] - It will introduce the capabilities of the LSEG Data API in providing cross-asset class data pipelines [2] - A demo will illustrate how the combination of Agent and Data API can achieve intelligent data acquisition and analysis [2] Group 2: Application Scenarios - The event will highlight typical application scenarios in investment research, quantitative analysis, and risk management [2]