
整个2025年,我与无数企业领袖探讨了他们的AI战略,试图了解哪些措施有效,哪些构成了阻碍。随着时间推移,我注意到有三个趋势在不同公司和行业中反复出现,它们决定了哪些企业能借助AI取得成功,哪些会陷入困境。现将这些趋势汇总,分享来自AI转型一线的经验教训。
首先,AI在后端任务中的应用正在蓬勃发展,这表明真正能产生实际影响的往往是那些“枯燥”的工作。第二个趋势与技术无关,而关乎人:企业如何对待员工,对其AI应用的成败至关重要。然而,或许最能说明问题的趋势是关于初始战略和动机的:追逐AI技术本身的企业往往失败,而以解决问题为出发点的企业则能取得成功。
当然,成功的因素远不止这些——从数据治理到安全与合规。但上述这些趋势,无论好坏,正在塑造企业的AI实践。
摒弃“为AI而AI”
咨询公司韦斯特门罗(West Monroe)的AI与新兴技术负责人埃里克·布朗(Erik Brown)今年早些时候告诉《财富》,他目睹了许多公司在概念验证未能达到预期后,陷入了“AI疲劳”。他指出,陷入此境地的企业有一个共同点:要么选错了应用场景,要么误解了AI在该任务中可能(或不可能)发挥的作用。更具体地说,他们的出发点是“想搞AI”,而非“想解决问题”。
他举例说,一家客户召集顶尖数据科学家组建新的“创新小组”,研究如何部署AI,结果却在那些有趣但对公司无实际价值的概念上浪费了大量资源。在他的团队建议该公司退一步,让业务部门先明确关键挑战后,顾问们迅速找到了一个AI能真正发挥作用的领域,通过与业务部门紧密合作验证并部署了解决方案。
“我认为,对于任何新技术,尤其是像AI这样备受关注的技术,企业很容易陷入‘技术先行’的误区,”布朗说道。这一观点与我全年从企业领导者和协助AI转型的顾问那里反复听到的观察不谋而合。
建筑设备租赁公司BigRentz则展示了相反的一面。该公司始终高度专注于要解决的问题,最终借助AI重塑了整个业务。其首席执行官斯科特·坎农(Scott Cannon)告诉《财富》:“我们并非一开始就围绕AI构建公司,只是它恰好是这项工作的最佳工具。”此外,BigRentz仅使用了传统的机器学习技术,这表明即使在生成式AI热潮中,早期AI技术仍有价值——同时也说明了为正确的问题寻找正确的解决方案何其重要。
霍尼韦尔(Honeywell)是另一家以明确目标战略开启每项探索的公司,它建立了一个细致的框架来指导AI开发与部署。这已见成效:目前,公司所有职能部门和战略业务单元都在使用生成式AI,已有24个生成式AI项目投入生产,另有12个在推进中,而一年前只有16个。
“应用场景是什么?我能衡量和追踪其效果吗?”首席技术官苏雷什·文卡塔拉亚卢(Suresh Venkatarayalu)告诉《财富》,描述了公司在评估任何潜在AI项目时,如何从价值创造出发。
“枯燥”之处见实效
避免“新奇事物综合征”是稳妥的建议,尤其是在AI热点迅速从聊天机器人转向智能体,再到下一个未知事物时。不追逐最新热点的另一个原因是:许多组织发现,真正产生实效的往往是那些“枯燥”的后端AI应用。
Troutman Pepper Locke律师事务所正以多种方式应用AI,包括为所有员工创建自己的AI聊天机器人助手。但其首席创新官威廉·高斯(William Gaus)告诉《财富》,该所目前发现AI对后端行政任务最有用,他也认为这是理想的起点,因为风险较低。
例如,在该所近期完成合并时,他的团队开发了一项智能体功能,为即将加入的1600名律师重新起草履历,需要更新以包含新律所信息并匹配其现有行文风格。高斯描述说,与上次耗时六个月人工处理相比,此举极大地提高了效率。他表示,总体而言,律所节省了相当于20万美元的时间成本。
同样的情况也出现在医疗领域。例如,打造可靠的健康陪伴聊天机器人的努力收效甚微。但AI工具正通过医疗系统的后端进行部署。医生们使用大语言模型(LLM)记录和转录医患对话以生成医疗文书,使他们能与患者更多互动,并减少工作时间外的文书负担。他们还使用大语言模型快速生成复杂病历摘要,并更便捷地查询医疗数据库。
“那些我们从临床医生手中接过来的、更偏向行政性的工作,我认为正是我们看到AI应用推进得特别快的领域,”巴布森学院(Babson College)凯瑞·墨菲·希利健康创新与创业中心专注于医疗创新与改进的研究员威尔杰娜·格洛弗(Wiljeana Glover)告诉《财富》。
以人为本,置于核心
尽管关于应用场景和商业战略的讨论很多,但不应忘记,人是AI转型的核心。AI是否正导致公司裁员尚不清楚——即使目前没有,也不意味着未来不会改变。然而,AI已经深刻地影响着当今人们的工作,从招聘培训到分配的任务和期望。公司如何应对当前的变化和对未来的焦虑,直接影响员工接受AI转型的态度。
或许比任何其他术语都多,今年与我交流的高管们频繁提及“变革管理”,指的是组织如何以最大的成功采用率和最小的破坏性,从当前状态过渡到理想的未来形态。
霍尼韦尔的另一位AI负责人、高级副总裁兼首席数字技术官希拉·乔丹(Sheila Jordan)警告说:“你不能低估它。”埃森哲(Accenture)首席人工智能官关岚(Lan Guan)指出,企业可以构建各种解决业务问题的出色AI工具,但确保员工准备好并愿意使用它们同样重要。另一些人谈到需要弥合AI狂热信徒(可能为AI而追逐AI)与AI怀疑论者之间的鸿沟。
其中一个关键部分是,公司领导者需对AI能带来的成果保持承诺和期望的克制。一些开发者和软件工程师——由于AI编码工具的普及,他们是首批工作被彻底颠覆的群体——表示,他们对许多高管过度吹捧和夸大AI能力感到沮丧。另一些人则被不切实际的期望所累,比如要求更快地产出更多代码或使用特定工具,对那些不了解日常工作细节、只一味追求生产率的高管指令感到失望。当这些变革由有实践经验的技术经理、甚至是开发者自己倡导时,往往能产生更积极的情感和更好的结果。
即使AI能带来全世界的生产力,一些高管也警惕将过多工作——尤其是初级工作——外包给AI,这对不久的将来劳动力意味着什么。例如,为法律行业构建AI工具的公司Filevine的联合创始人兼首席执行官瑞安·安德森(Ryan Anderson)表示,他担心使用AI副驾的年轻律师能否培养自己的创造力和独立收集信息的能力。
“过度依赖AI,”他说,“可能与AI带来的激动人心的机遇一样成问题。”随着企业在2026年推进AI应用,找到正确的平衡点应是议程上的关键议题之一。(财富中文网)
译者:郝秀
审校:汪皓
整个2025年,我与无数企业领袖探讨了他们的AI战略,试图了解哪些措施有效,哪些构成了阻碍。随着时间推移,我注意到有三个趋势在不同公司和行业中反复出现,它们决定了哪些企业能借助AI取得成功,哪些会陷入困境。现将这些趋势汇总,分享来自AI转型一线的经验教训。
首先,AI在后端任务中的应用正在蓬勃发展,这表明真正能产生实际影响的往往是那些“枯燥”的工作。第二个趋势与技术无关,而关乎人:企业如何对待员工,对其AI应用的成败至关重要。然而,或许最能说明问题的趋势是关于初始战略和动机的:追逐AI技术本身的企业往往失败,而以解决问题为出发点的企业则能取得成功。
当然,成功的因素远不止这些——从数据治理到安全与合规。但上述这些趋势,无论好坏,正在塑造企业的AI实践。
摒弃“为AI而AI”
咨询公司韦斯特门罗(West Monroe)的AI与新兴技术负责人埃里克·布朗(Erik Brown)今年早些时候告诉《财富》,他目睹了许多公司在概念验证未能达到预期后,陷入了“AI疲劳”。他指出,陷入此境地的企业有一个共同点:要么选错了应用场景,要么误解了AI在该任务中可能(或不可能)发挥的作用。更具体地说,他们的出发点是“想搞AI”,而非“想解决问题”。
他举例说,一家客户召集顶尖数据科学家组建新的“创新小组”,研究如何部署AI,结果却在那些有趣但对公司无实际价值的概念上浪费了大量资源。在他的团队建议该公司退一步,让业务部门先明确关键挑战后,顾问们迅速找到了一个AI能真正发挥作用的领域,通过与业务部门紧密合作验证并部署了解决方案。
“我认为,对于任何新技术,尤其是像AI这样备受关注的技术,企业很容易陷入‘技术先行’的误区,”布朗说道。这一观点与我全年从企业领导者和协助AI转型的顾问那里反复听到的观察不谋而合。
建筑设备租赁公司BigRentz则展示了相反的一面。该公司始终高度专注于要解决的问题,最终借助AI重塑了整个业务。其首席执行官斯科特·坎农(Scott Cannon)告诉《财富》:“我们并非一开始就围绕AI构建公司,只是它恰好是这项工作的最佳工具。”此外,BigRentz仅使用了传统的机器学习技术,这表明即使在生成式AI热潮中,早期AI技术仍有价值——同时也说明了为正确的问题寻找正确的解决方案何其重要。
霍尼韦尔(Honeywell)是另一家以明确目标战略开启每项探索的公司,它建立了一个细致的框架来指导AI开发与部署。这已见成效:目前,公司所有职能部门和战略业务单元都在使用生成式AI,已有24个生成式AI项目投入生产,另有12个在推进中,而一年前只有16个。
“应用场景是什么?我能衡量和追踪其效果吗?”首席技术官苏雷什·文卡塔拉亚卢(Suresh Venkatarayalu)告诉《财富》,描述了公司在评估任何潜在AI项目时,如何从价值创造出发。
“枯燥”之处见实效
避免“新奇事物综合征”是稳妥的建议,尤其是在AI热点迅速从聊天机器人转向智能体,再到下一个未知事物时。不追逐最新热点的另一个原因是:许多组织发现,真正产生实效的往往是那些“枯燥”的后端AI应用。
Troutman Pepper Locke律师事务所正以多种方式应用AI,包括为所有员工创建自己的AI聊天机器人助手。但其首席创新官威廉·高斯(William Gaus)告诉《财富》,该所目前发现AI对后端行政任务最有用,他也认为这是理想的起点,因为风险较低。
例如,在该所近期完成合并时,他的团队开发了一项智能体功能,为即将加入的1600名律师重新起草履历,需要更新以包含新律所信息并匹配其现有行文风格。高斯描述说,与上次耗时六个月人工处理相比,此举极大地提高了效率。他表示,总体而言,律所节省了相当于20万美元的时间成本。
同样的情况也出现在医疗领域。例如,打造可靠的健康陪伴聊天机器人的努力收效甚微。但AI工具正通过医疗系统的后端进行部署。医生们使用大语言模型(LLM)记录和转录医患对话以生成医疗文书,使他们能与患者更多互动,并减少工作时间外的文书负担。他们还使用大语言模型快速生成复杂病历摘要,并更便捷地查询医疗数据库。
“那些我们从临床医生手中接过来的、更偏向行政性的工作,我认为正是我们看到AI应用推进得特别快的领域,”巴布森学院(Babson College)凯瑞·墨菲·希利健康创新与创业中心专注于医疗创新与改进的研究员威尔杰娜·格洛弗(Wiljeana Glover)告诉《财富》。
以人为本,置于核心
尽管关于应用场景和商业战略的讨论很多,但不应忘记,人是AI转型的核心。AI是否正导致公司裁员尚不清楚——即使目前没有,也不意味着未来不会改变。然而,AI已经深刻地影响着当今人们的工作,从招聘培训到分配的任务和期望。公司如何应对当前的变化和对未来的焦虑,直接影响员工接受AI转型的态度。
或许比任何其他术语都多,今年与我交流的高管们频繁提及“变革管理”,指的是组织如何以最大的成功采用率和最小的破坏性,从当前状态过渡到理想的未来形态。
霍尼韦尔的另一位AI负责人、高级副总裁兼首席数字技术官希拉·乔丹(Sheila Jordan)警告说:“你不能低估它。”埃森哲(Accenture)首席人工智能官关岚(Lan Guan)指出,企业可以构建各种解决业务问题的出色AI工具,但确保员工准备好并愿意使用它们同样重要。另一些人谈到需要弥合AI狂热信徒(可能为AI而追逐AI)与AI怀疑论者之间的鸿沟。
其中一个关键部分是,公司领导者需对AI能带来的成果保持承诺和期望的克制。一些开发者和软件工程师——由于AI编码工具的普及,他们是首批工作被彻底颠覆的群体——表示,他们对许多高管过度吹捧和夸大AI能力感到沮丧。另一些人则被不切实际的期望所累,比如要求更快地产出更多代码或使用特定工具,对那些不了解日常工作细节、只一味追求生产率的高管指令感到失望。当这些变革由有实践经验的技术经理、甚至是开发者自己倡导时,往往能产生更积极的情感和更好的结果。
即使AI能带来全世界的生产力,一些高管也警惕将过多工作——尤其是初级工作——外包给AI,这对不久的将来劳动力意味着什么。例如,为法律行业构建AI工具的公司Filevine的联合创始人兼首席执行官瑞安·安德森(Ryan Anderson)表示,他担心使用AI副驾的年轻律师能否培养自己的创造力和独立收集信息的能力。
“过度依赖AI,”他说,“可能与AI带来的激动人心的机遇一样成问题。”随着企业在2026年推进AI应用,找到正确的平衡点应是议程上的关键议题之一。(财富中文网)
译者:郝秀
审校:汪皓
Throughout 2025, I spoke with countless business leaders about their AI strategies, looking to glean insights into what was working for them and what was holding them back. As the year went on, I noticed three trends that kept emerging time and time again, across companies and industries, shaping which firms find success with AI and which struggle. Now I’m bringing these trends together, offering lessons from the front lines of AI transformation.
First, the use of AI for back-end tasks is booming, showing it’s often the boring stuff that can actually move the needle. The second trend isn’t about tech, but rather about people: How companies approach their people is paramount to how AI adoption unfolds. Perhaps the most telling trend, however, is all about initial strategy and motivation. Companies are failing when they lead with AI and finding success when they lead with the problem they’re trying to solve.
Of course, there’s so much more that goes into it—from wrangling data to security and governance. But these aspects of it are shaping AI efforts, for better or worse.
Avoiding AI for AI’s sake
Erik Brown, the AI and emerging tech lead at consulting firm West Monroe, told Fortune earlier this year that he’s seen a lot of companies struggle with “AI fatigue” after becoming frustrated with AI proofs of concept that failed to deliver. The common theme among those that fell into this position, he said, is that they explored the wrong use case or misunderstand how AI might (or might not) be relevant for the task. More specifically, they led with the idea that they wanted to pursue AI, rather than with the problem they wanted to solve.
For one example, he said a client corralled its top data scientists to form a new “innovation group” to figure out how to deploy AI, only to end up wasting tons of resources on ideas that were interesting but didn’t solve any real problems for the company. After his team suggested the firm take a step back and have the business units identify key challenges, the consultants quickly discovered an area where AI could truly help, proved it out by working hand in hand with the business unit, and deployed the solution.
“I think it’s so easy with any new technology, especially one that’s getting the attention of AI, to just lead with the tech first,” said Brown, echoing an observation I heard over and over again throughout the year, including from company leaders and other consultants helping firms navigate AI transformation.
One company demonstrating the flip side of this is BigRentz. The construction equipment rental company stayed hyper-focused on the problem it was trying to solve and ended up reinventing its entire business with AI. CEO Scott Cannon told Fortune they “didn’t set out to build our company around AI. It just turned out to be the best tool for the job.” What’s more, BigRentz used old-school machine learning only, showing that even in the era of generative AI buzz there’s still value in earlier AI techniques—and why it’s important to find the right solution for the right problem.
Honeywell is another company that started every pursuit with a clear strategy for what it wanted to accomplish, having created a meticulous framework for guiding its AI development and deployment. It has paid off: Every function and strategic business unit across the company now uses generative AI, and the company has 24 generative AI initiatives in production and 12 more on the way, compared with 16 a year ago.
“What are the use cases? And can I measure and track them?” CTO Suresh Venkatarayalu told Fortune, describing how the company starts with the value add when thinking through any potential AI effort.
Boring delivers results
The idea of avoiding “shiny object syndrome” is solid advice, especially as AI hype quickly jumps from chatbots, to agents, to whatever will come next. Another reason to not chase the latest hype: Many organizations are finding it’s the boring, back-end uses of AI that are truly making a difference.
Law firm Troutman Pepper Locke is using AI in a wide variety of ways, including creating its own AI chatbot-style assistant for all employees to use. But chief innovation officer William Gaus told Fortune the firm is currently finding AI to be most useful for back-end administrative tasks, which he also believes are a great place to start because they’re low risk.
For example, when the firm was completing its recent merger, his team created an agentic capability to redraft the bios of the incoming 1,600 attorneys, which needed to be updated to include the new firm’s information and match its existing writing style. Gaus described how this made the process drastically more efficient compared to the last time they tackled this task, which took six months of manual work. Overall, the firm saved $200,000 in time spent, he said.
The same thing is playing out in the medical field. Efforts to make a reliable health companion chatbot, for example, have made little material progress. But AI tools are being deployed through the back-ends of the health care system. Doctors are using LLMs to record and transcribe conversations between themselves and patients to generate medical documents, allowing them to engage more with the patient and reduce the burden of time spent on paperwork outside of their work hours. They’re also using LLMs to quickly create synopses of complex medical records and more easily query medical databases.
“Things that we’re taking off of the clinicians’ plate, that are more administrative, I think those are some of the places where we see AI moving really quickly,” Wiljeana Glover, a researcher focused on health care innovation and improvement at Babson College’s Kerry Murphy Healey Center for Health Innovation and Entrepreneurship, told Fortune.
Keeping people front and center
For all the talk about use cases and business strategy, it should not be lost that people are at the center of AI transformation. Whether AI is leading companies to lay off employees is still unclear—and if they aren’t currently, that doesn’t mean this won’t change in the future. Yet AI is already drastically impacting people in their jobs today, from how they’re hired and trained to the tasks and expectations assigned to them. How companies handle the current changes and anxieties about the future has a direct impact on how employees take on AI transformation.
Perhaps more than any other term, executives I’ve spoken with this year have evoked “change management,” referring to how an organization shifts from its present state to a new, desired form with maximum successful adoption and minimal disruption.
Honeywell’s other AI lead, SVP and chief digital technology officer Sheila Jordan, warned, “You can’t underestimate it.” Accenture chief AI officer Lan Guan suggested that a business can build all kinds of amazing AI tools that solve business problems, but it’s just as important to make sure your employees are ready and open to using them. Others spoke about needing to bridge the gap between overzealous AI believers (who might be chasing AI for AI’s sake) and AI skeptics.
A key part of this is company leaders keeping their promises and expectations about what AI can deliver in check. Some developers and software engineers—the first cohort to truly have their jobs turned upside down, thanks to the proliferation of AI coding tools—say they’re frustrated with how many executives are overselling AI and inflating what it can do. Others have felt burdened by unrealistic expectations to produce more code more quickly or to use specific tools, feeling disillusioned by mandates set by executives who don’t understand the day-to-day of their work and are just pushing productivity above all. When these changes are heralded by technical managers with hands-on experience, or even the developers themselves, it often yields a more positive sentiment and better results.
Even if all the productivity in the world is possible with AI, some executives are wary of what outsourcing too much of the work—especially entry-level work—will mean for the workforce in the near future. For one example, Ryan Anderson, cofounder and CEO of Filevine, a company building AI tools for the legal industry, said he worries about younger lawyers using AI copilots being able to develop their creativity and ability to gather information on their own.
“An overreliance on AI,” he said, “could be just as problematic as the exciting opportunities AI brings.” Finding the right balance should be one key item on the agenda as businesses move forward with AI in 2026.