AI News 06月04日 06:22
AI enables shift from enablement to strategic leadership
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文章探讨了首席信息官(CIO)如何利用人工智能(AI)从数据中挖掘价值,实现业务转型。文章指出,企业拥有大量业务数据,但快速、实时地从中获取洞察仍然是一个挑战。通过负责任地部署和扩展AI,企业可以克服这些瓶颈,例如,AI能够快速处理来自不同来源的大量信息。然而,部署AI并非易事,需要结构、信任和合适的人才。文章采访了普华永道(PwC)的专家,分享了在AI应用中遇到的挑战和解决方案,强调数据治理、人才培养和战略规划的重要性。

💡企业面临的挑战:文章开篇指出,企业虽然拥有大量业务数据,但快速、实时地从数据中获取有价值的洞察仍然是一个未被解决的难题。传统的商业智能和统计分析工具难以满足这一需求。

🤖AI带来的机遇:通过负责任地部署和扩展AI,企业能够将数据转化为机会。AI能够快速处理大量来自不同来源的信息,甚至可以在客户互动等实时场景中发挥作用,从而提高效率和响应速度。

🔑成功部署AI的关键:文章强调,成功部署AI需要结构、信任和合适的人才。除了技术层面的挑战外,数据治理、AI响应的规范制定以及人才短缺也是企业需要关注的问题。

👩‍💻人才与技能需求:文章援引普华永道专家的观点,指出仅仅拥有提示工程师或Python开发人员是不够的。成功的AI实施需要结合技术技能(如数据工程、数据科学、提示工程)和组织内的领域专业知识,以确保AI系统能够负责任地运行。

📈未来发展趋势:文章提到,CIO的角色正在转变,他们不仅需要推动技术发展,还要将AI融入企业架构,与业务战略保持一致,并管理与规模相关的治理风险。他们正在成为AI的管理者,构建的不只是系统,更是信任和转型。

CIOs and business leaders know they’re sitting on a goldmine of business data. And while traditional tools such as business intelligence platforms and statistical analysis software can effectively surface insights from the collated data resources, doing so quickly, in real-time and at scale remains an unsolved challenge.

Enterprise AI, when deployed responsibly and at scale, can turn these bottlenecks into opportunities. Acting quickly on data, even ‘live’ (during a customer interaction, for example), is one of the technology’s abilities, as is scalability: AI can process large amounts of information from disparate sources almost as easily as it can summarize a one-page spreadsheet.

But deploying an AI solution in the modern enterprise isn’t simple. It takes structure, trust and the right talent. Along with the practical implementation challenges, using AI brings its own challenges, such as data governance, the need to impose guardrails on AI responses and training data, and persistent staffing issues.

We met with Rani Radhakrishnan, PwC Principal, Technology Managed Services – AI, Data Analytics and Insights, to talk candidly about what’s working — and what’s holding back CIOs in their AI journey. We spoke ahead of her speaking engagement at TechEx AI & Big Data Expo North America, June 4 and 5, at the Santa Clara Convention Center.

Rani is especially attuned to some of the governance, data privacy and sovereignty issues that face enterprises, having spent many years in her career working with numerous clients in the health sector — an area where issues like privacy, data oversight and above all data accuracy are make-or-break aspects of technology deployments.

“It’s not enough to just have a prompt engineer or a Python developer. … You still need the human in the loop to curate the right training data sets, review and address any bias in the outputs.” —Rani Radhakrishnan, PwC

From support to strategy: shifting expectations for AI

Rani said that there’s a growing enthusiasm from PwC’s clients for AI-powered managed services that can provide both business insights in every sector, and for the technology to be used more proactively, in so-called agentic roles where agents can independently act on data and user input; where autonomous AI agents can take action based on interactions with humans, access to data resources and automation.

For example, PwC’s agent OS is a modular AI platform that connects systems and scales intelligent agents into workflows, many times faster than traditional computing methods. It’s an example of how PwC responds to the demand for AI from its clients, many of whom see the potential of this new technology, but lack the in-house expertise and staff to act on their needs.

Depending on the sector of the organization, the interest in AI can come from many different places in the business. Proactive monitoring of physical or digital systems; predictive maintenance in manufacturing or engineering; or cost efficiencies won by automation in complex, customer-facing environments, are just a few examples.

But regardless of where AI can bring value, most companies don’t yet have in-house the range of skills and people necessary for effective AI deployment — or at least, deployments that achieve ROI and don’t come with significant risk.

“It’s not enough to just have a prompt engineer or a Python developer,” Rani said. “You’ve got to put all of these together in a very structured manner, and you still need the human in the loop to curate the right training data sets, review and address any bias in the outputs.”

Cleaning house: the data challenge behind AI

Rani says that effective AI implementations need a mix of technical skills — data engineering, data science, prompt engineering — in combination with an organization’s domain expertise. Internal domain expertise can define the right outcomes, and technical staff can cover the responsible AI practices, like data collation and governance, and confirm that AI systems work responsibly and within company guidelines.

“In order to get the most value out of AI, an organization has to get the underlying data right,” she said. “I don’t know of a single company that says its data is in great shape … you’ve got to get it into the right structure and normalize it properly so you can query, analyze, and annotate it and identify emerging trends.”

Part of the work enterprises have to put in for effective AI use is the observation for and correction of bias — in both output of AI systems and in the analysis of potential bias inherent in training and operational data.

It’s important that as part of the underlying architecture of AI systems, teams apply stringent data sanitization, normalization, and data annotation processes. The latter requires “a lot of human effort,” Rani said, and the skilled personnel required are among the new breed of data professionals that are beginning to emerge.

If data and personnel challenges can be overcome, then the feedback loop makes the possible outcomes from generative AI really valuable, Rani said. “Now you have an opportunity with AI prompts to go back and refine the answer that you get. And that’s what makes it so unique and so valuable because now you’re training the model to answer the questions the way you want them answered.”

For CIOs, the shift isn’t just about tech enablement. It’s about integrating AI into enterprise architecture, aligning with business strategy, and managing the governance risks that come with scale. CIOs are becoming AI stewards — architecting not just systems, but trust and transformation.

Conclusion

It’s only been a few years since AI emerged from its roots in academic computer science research, so it’s understandable that today’s enterprise organizations are, to a certain extent, feeling their way towards realizing AI’s potential.

But a new playbook is emerging — one that helps CIOs access the value held in their data reserves, in business strategy, operational improvement, customer-facing experiences and a dozen more areas of the business.

As a company that’s steeped in experience with clients large and small from all over the world, PwC is one of the leading choices that decision-makers turn to, to begin or rationalize and direct their existing AI journeys.

Explore how PwC is helping CIOs embed AI into core operations, and see Rani’s latest insights at the June TechEx AI & Big Data Expo North America.

(Image source: “Network Rack” by one individual is licensed under CC BY-SA 2.0.)

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人工智能 CIO 数据分析 AI战略 企业转型
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