Fortune | FORTUNE 09月13日
AI代理揭示数据问题,企业需关注数据质量与落地
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

Salesforce的AI代理在上线初期出现幻觉和结果不一致的问题,后被暂时关闭。深入调查发现,问题根源在于公司网站上存在相互矛盾的知识文章,即底层数据存在缺陷。这一事件表明,AI产品的表现与其底层数据的质量息息相关。Intuit和Amgen的专家也指出,许多企业AI项目失败的原因在于未能充分投资和更新过时的数据系统,以及在将AI从试点推广到企业级应用过程中面临的挑战。要实现AI工具的投资回报,企业不仅需要清理和优化数据,还需要解决技术规模化落地的问题。

💡 AI代理的“幻觉”是数据问题的信号:Salesforce的AI代理在上线初期出现问题,经过调查发现并非代理本身的问题,而是由于公司网站上发布了相互矛盾的知识文章,导致AI生成了不准确的信息。这说明AI代理可以成为发现和暴露底层数据质量问题的有效工具。

📊 数据质量是AI成功的基石:多位行业专家强调,AI产品的有效性与其底层数据的质量密切相关。Intuit的首席AI官指出,许多大型企业的AI试点项目失败,原因是企业未能投入足够的资源来更新和维护其过时的数据系统,导致AI系统建立在不牢固的基础上。

🚀 企业级AI落地面临双重挑战:除了数据质量问题,将AI技术从试点阶段推广到企业级应用也是一大难点。Amgen的专家表示,试点项目通常难以直接带来投资回报,而真正的价值在于大规模的部署和应用。因此,企业在采用AI时,不仅需要关注数据的清洁,还需要解决技术扩展和规模化落地的难题,才能最终实现AI的商业价值。

When Salesforce recently rolled out an AI agent on its website, the agent started to hallucinate and wasn’t giving consistent results.

Salesforce ended up temporarily turning it off, Shibani Ahuja, senior vice president of enterprise IT strategy, said during a roundtable discussion at Fortune’s Brainstorm Tech conference in Park City, Utah. 

But the agent, it turned out, wasn’t the problem. “What we had noticed was there was an underlying problem with our data,” Ahuja said. When her team investigated what had happened, they found that Salesforce had published contradictory “knowledge articles” on its website.

“It wasn’t actually the agent. It was the agent that helped us identify a problem that always existed,” Ahuja said. “We turned it into an auditor agent that actually checked our content across our public site for anomalies. Once we’d cleaned up our underlying data, we pointed it back out, and it’s been functional.”

New AI products will only be as good as the underlying data, according to Ahuja and other speakers who took part in the discussion. Ashok Srivastava, senior vice president and Chief AI Officer at Intuit, said he wasn’t surprised about the results of a recent MIT study that found that 95% of AI pilots at large corporations had failed, because of the archaic systems at large companies.

“The fact is that the foundation of AI—which is data—people don’t invest in it,” Srivastava said. “So you’ve got 1990s data sitting in a super-expensive, unnamed database over here, you’ve got AI here, you’ve got the CEO telling you to do something, and it’s just not going to work.”

Sean Bruich, senior vice president of artificial intelligence and data at Amgen, added that it’s also difficult for larger corporations to move from a pilot to enterprise-wide adoption.

“Pilots in large companies never deliver ROI,” he said. “They might deliver learnings, they might deliver proof points, they might deliver inspiration. But the path to scale—that is where you get the return on investment in any large technology program.”

In order for companies to see a return on investment from new AI tools, they will have to sort through both the data and the scaling issue.

Fortune Global Forum

returns Oct. 26–27, 2025 in Riyadh. CEOs and global leaders will gather for a dynamic, invitation-only event shaping the future of business.

Apply for an invitation.

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

AI 数据质量 企业AI AI落地 Salesforce Intuit Amgen AI Agent Data Quality Enterprise AI AI Implementation
相关文章