Kavita Ganesan 2024年11月26日
3 Strategic Mistakes Leaders Can Easily Avoid When Thinking About AI Integration
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本文探讨了企业在AI项目实施过程中,领导层容易犯的三个关键错误,包括期望其他人理解AI、期望AI快速带来财务回报以及将AI完全交给数据科学家。文章指出,领导者需要具备基本的AI知识,才能更好地评估AI的适用场景,并制定合理的预期和衡量指标。此外,领导者需要与业务部门、领域专家和技术团队紧密合作,共同识别和解决AI项目中的实际问题,从而确保AI项目能够真正创造价值。文章最后强调,AI项目的成功并非完全依赖于技术团队的卓越性,而是需要领导者具备AI意识,并将其融入到企业的战略决策中。

🤔 **错误1:期望“其他人”理解AI**:领导者需要具备基本的AI知识,才能更好地评估AI的适用场景,并制定合理的预期和衡量指标,例如识别AI项目与传统软件工程的区别,了解AI的局限性和优势。

💰 **错误2:期望AI快速带来财务回报**:AI项目可能需要多个相关举措的协同作用才能改变财务轨迹,或者需要较长时间才能观察到其影响。领导者需要关注AI带来的短期和长期效益,并设定合适的衡量指标,例如解决组织的痛点、提升效率等。

🤝 **错误3:将AI完全交给数据科学家**:数据科学家可能缺乏对企业业务的深入理解,难以识别最适合AI解决的问题。领导者需要与业务部门、领域专家紧密合作,共同识别和解决AI项目中的实际问题,例如流程效率低下、重复性手动任务等,并评估AI是否适合解决这些问题。

💡 **领导者需要认识到:** AI项目的成功并非完全依赖于技术团队的卓越性,而是需要领导者具备AI意识,并将其融入到企业的战略决策中。

Several years ago, a product manager at a tech company had a data collection problem: to scrape software security vulnerability data from multiple web sources, consolidate the vulnerabilities and store them in a database.

As this was an automation problem relating to data, the product manager (PM) immediately concluded that this was a machine learning problem. The PM then “hired” the company’s data science team to build ML models to solve the problem. 

The data science team agreed to the data collection task without making any promises on “models.” They realized that their attempts to educate the PM that this was a simple script (not a sophisticated ML model) would be a losing battle as there was a big internal push to use AI, and the PM was sold on the idea.

Several weeks passed, and when the time came to “deploy” the models, there wasn’t a model to be deployed. Just a software script that would continually read specific webpages, heuristically scrape security vulnerability entries and populate them into a database. 

Although the PM was eventually informed that no ML models were used or necessary, the scraping software was sold to the entire company as a machine learning powered security solution. 

This is not uncommon. 

Such confusion around AI and where it’s best employed happens more often than we think. In the case of this tech firm, the confusion didn’t do much damage as it was a small project, and the only thing wasted was the data science team’s precious time for that few weeks.  

In many other situations, the damage from such miscategorization, poor understanding of AI, and the use of wrong resources can be extremely costly.

Imagine if the data collection problem above was forced to use machine learning, although unnecessary. Maintaining an ML solution costs much more than a simple software script. Plus, if the project had gone on for an entire year, the data scientists would have been paid to solve a problem that a single contracted software engineer could’ve solved. More importantly, these data scientists could’ve been working on high-impact AI initiatives. 


Based on this story, let’s narrow down three strategic mistakes leaders can easily avoid to prevent confusion, reduce waste, and ensure that you’re genuinely reaping the benefits from AI.

3 Mistakes Leaders Can Avoid When Thinking About AI Integration

Summary of AI leadership mistakes to avoid

#1: Expecting “Others” to Understand AI

In 2018, industry research firm Gartner made a bold prediction—that 85% of AI projects will “not deliver.” This is a shocking prediction, given how important AI has become in recent years. 

One reason for this prediction is confusion among leaders on what AI is and what it can do.

It’s a given that your technical teams need to understand AI. However, executives, technology leaders, and product managers looking to make AI an integral part of their business should also be well-versed with the technology. 

We’re not talking about getting into AI model development. Still, you need to know AI at the right level to be comfortable exploring the possibility of using AI to solve business problems. 

Further, this AI knowledge can be handy in several ways.

Take Action: If you’re a leader new to AI, start by building a foundation around understanding AI use cases, what it is, and what makes AI initiatives different from traditional software engineering. Understanding the misconceptions of the field and how to spot opportunities will also significantly help identify high-impact use cases.

You can get some of this information by reading relevant books as well as industry reports from big consulting firms. Attending AI leadership seminars and presentations can also be helpful. Podcasts? I wouldn’t recommend podcasts to build your foundation. The scattered nature of podcasts can be confusing and should be supplemental knowledge once you have a general foundation.

 

#2: Expecting a Quick Financial Return from AI 

Yes, AI has the promise of cost savings and boosting revenues. Although you may observe an immediate financial impact for some problems, in most cases, you may never see a noticeable financial impact from AI, just from a single initiative. 

It may take multiple related initiatives coming together to change your financial trajectory, or it’s something you’ll observe over the long haul. 

So, when it comes to the ROI of AI, you need to focus on the benefits of employing AI (in the short term and long term). Ask these questions:

Answering such questions will clarify why AI is necessary and guide you in tracking the right business metrics

Take Action: When you’re looking to track the success of AI, always start with metrics that tie into its direct impact first. Once this is well underway and delivering results, track metrics that relate to the longer-term implications, which can take months or even years to observe. 

#3: Leaving AI Completely in the Hands of Data Scientists

In the rush to adopt AI, companies often start by hiring a team of data scientists. This happens long before leaders understand AI or have an AI strategy.

These data scientists are then let loose on the data to discover potential AI opportunities. While several identified projects may be meaningful, many are better suited for publishing a research paper—not so much for creating value for the business.

This is not entirely the fault of the data scientists. Data scientists newly brought in to solve AI problems for the company will have a limited view of the company’s business challenges. 

Exploring the data tells them nothing about the process and workflow inefficiencies in the company. Further, your company may not be collecting data for problems that would most benefit from AI. Instead of twiddling thumbs, these data scientists are left with no choice but to tackle “made-up” problems with relevant data.

On the contrary, business unit leaders, executives, and domain experts deal with the organization’s daily challenges—whether it’s customer complaints, a media coverage issue, or friction in your business processes. 

These employees should be equally capable of spotting opportunities for automation and workflow augmentation with AI. They should feel empowered to bring relevant business problems for data scientists to solve. 

For companies to succeed with AI, there must be a deep collaboration between business leaders, domain experts, and their technical counterparts.

Take Action: When you witness process inefficiencies, repetitive manual tasks, and lagging accuracy of existing software systems, start taking note. Have your team track current baseline performance numbers and determine if the problem relates to solving a complex decision-making task. Such problems are often great candidates for AI. Involve your technical experts to help study the problem further and determine if AI is a good fit and, if not, recommend alternate approaches.  

How Will You Accelerate Your AI Adoption?

While many leaders believe that the success of AI adoption is in the excellence of their technical teams, in reality, it starts at the top. 

Executives and functional leaders deal with the everyday challenges that the organization faces. With a good AI understanding, they’re better positioned to recognize problems that AI will solve and consequently fund impactful initiatives. This, coupled with the right expectations and success metrics, will translate to better outcomes for the organization.

Keep Learning & Succeed With AI

    Join my AI Integrated newsletterwhich clears the AI confusion and teaches you how to successfully integrate AI to achieve profitability and growth in your business.Read  The Business Case for AI to learn applications, strategies, and best practices to be successful with AI (select companies using the book: government agencies, automakers like Mercedes Benz, beverage makers, and e-commerce companies such as Flipkart).Work directly with me to improve AI understanding in your organization, accelerate AI strategy development and get meaningful outcomes from every AI initiative.

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