Fortune | FORTUNE 07月23日 22:15
How a bulldozer, crane, and excavator rental company is using AI to save 3,000 hours per week
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建筑行业作为全球最大的产业之一,在技术创新方面却相对滞后,生产率增长缓慢。这导致了大量基础设施项目延期或超预算,以及巨额的资金浪费。为了解决这一痛点,一家名为BigRentz的公司利用其内部构建的AI系统,将传统的、以电话沟通为主的设备租赁业务,彻底转变为一个完全由AI驱动的自动化平台。该系统能够分析海量历史数据,实时评估供应商的成本、地理位置和可靠性,从而为客户做出最优的设备租赁选择。这一转型不仅大幅提升了公司的运营效率,减少了错误,还催生了新的软件平台SiteStack,旨在为大型承包商提供更智能的采购解决方案,赋能客户更好地管理供应商关系,并提高整个行业的透明度和决策水平。

🏗️ **建筑行业效率低下,AI技术提供解决方案**:与制造业等行业相比,建筑业在过去二十年的生产率增长非常缓慢,导致项目延期、预算超支和巨额浪费。BigRentz公司通过开发内部AI系统,将原本依赖人工电话沟通的设备租赁业务转变为自动化流程,有效解决了这一行业痛点。

🤖 **AI系统助力优化设备租赁采购**:BigRentz的AI系统(SiteStack)能够分析数百万条历史定价和履约记录,实时根据成本、地理位置和可靠性对供应商进行排名,并自动选择最优供应商。这使得 contractors 能够做出更明智的决策,获得竞争优势。

📊 **数据驱动决策,AI模型不断完善**:该AI系统建立在超过5亿美元的销售数据和10亿次以上的互动数据之上,包含了1300多万次供应商订单响应记录,以及大量的定价、客户反馈等数据点。通过不断的数据输入和训练,AI系统的预测能力和匹配精度得到显著提升。

🚀 **从服务商到软件提供商的转型**:BigRentz不仅利用AI优化了自身的设备租赁业务,还推出了面向客户的SiteStack软件平台。该平台允许客户整合现有供应商信息,并与新供应商进行比较,旨在为建筑行业带来更高的透明度和效率。

💡 **AI是解决行业问题的最佳工具**:BigRentz的CEO Scott Cannon表示,公司最初并未计划围绕AI构建业务,但事实证明AI是解决设备租赁行业中供应商选择和决策效率低下的最佳工具,为行业带来了革命性的改变。

Throughout the recent years of rapid technological innovation, one of the world’s largest industries has lagged behind: construction. 

Despite moving $10 trillion every year, the sector has averaged just 1% productivity growth over the past two decades compared to 3.6% for manufacturing and 2.8% for the total world economy, according to a McKinsey report. Construction also ranked last for perceived innovation in a survey of 600 U.S. workers, who deemed the field to be “the least technologically competent” out of 10 industries. This lag comes with serious costs: Research from the Saïd Business School at Oxford University found that over 90% of the world’s infrastructure projects are late or over budget. And in the U.S. alone, $177 billion is wasted annually due to inefficiencies, according to a survey of 600 construction leaders

To tackle a small piece of this, BigRentz—a California-based company that since 2012 has matched contractors with rental yards for heavy equipment like forklifts, backhoes, and excavators across the U.S.—reinvented its business from one still operating via phone calls to one running completely on AI that it built internally from the ground up. The models are old-school machine learning, showing there’s still value in earlier AI techniques other than large language models. Now the company is launching a stand-alone software platform for large contractors, which is powered by the same AI system but allows customers to run smarter procurement on their existing lists of suppliers. 

“I mentioned spreadsheets, but it’s also been on email chains, text messages, telephone calls, and scribbles on paper,” said BigRentz CEO Scott Cannon, referring to how contractors have historically handled their vendor relationships. “It’s a very inefficient industry—based on productivity gains on an annual basis—and with thin margins. So giving contractors the ability to make better decisions gives them a competitive advantage.”

It all starts with a data strategy

The plan from day one had always been to leverage the massive amount of data the company would be working with, but when BigRentz launched it wasn’t clear how to go about it, Cannon said. The company tracked every customer interaction and associated data point as it conducted its day-to-day business. When a contractor submitted a request for a rental, for example, a BigRentz sales employee would take down the type of equipment, jobsite location, dates the rental would be needed for, and any special requirements like delivery constraints or required accessories. The employee would then call local vendors to see if they could fulfill the order and connect the contractor to one that could. BigRentz stored all that data for future use—creating a rich trove of information ranging from a supplier’s decision about whether it could fulfill the order, to price increases, service charges, and customer feedback.

In 2018 the company decided to start digging into the data. The team created a grid of the entire U.S. down to the square kilometer to represent where specific suppliers will deliver, delivery time, and costs accounting for bridges, tolls, and other contingencies in order to determine what price to charge in different locations. This was all done manually, often on whiteboards, and the tediousness spurred the decision to find a better way. 

“The challenges of trying to mine that information and wield it forced us into the decision to use AI,” says Cannon.

A new system…and new company

Over the years, BigRentz started building up its technology team—including hiring data scientists, a full-stack engineering team, and a QA team—and creating machine learning models around different datasets. In 2022 it brought those models together to create its new AI system, SiteStack, relying solely on technology it built in-house. The company officially rolled out the system internally in January to autonomously handle vendor selection. Now, when a customer submits a rental request, rather than a team member calling a dozen or so vendors to fulfill the order, the system analyzes millions of historic pricing and fulfillment records, ranks suppliers in real time based on cost, proximity, and reliability, and selects the optimal vendor automatically.

Cannon said the system got much better as they obtained more information to train it on; the AI system was ultimately built on $500 million in sales data and more than $1 billion in interactions (the latter being sales the company didn’t win but which nonetheless provided valuable data). The data includes more than 13 million supplier decisions about order requests, a dozen pricing datasets, customer feedback, and millions of other data points that can predict what an all-in cost will be or what a supplier will do, according to Cannon.

Having a machine learning system determine the best vendor match for a contractor’s specific need is a huge shift from the company’s previous process in which salespeople spent all day on the phone calling rental yards. The company that’s come out on the other side of this AI project looks completely different than the one that launched years ago. 

“The company had some tension between two different cultures for a bit. The tech culture [on the teams building the platform] was different than the sales and marketing on the marketplace side. That was always a bit of a challenge. But we reduced the headcount by so much [gradually over time] due to automation that we’re basically just a tech company at this point,” Cannon said, adding that working in an industry that’s averse to change has been the biggest hurdle.

AI as the best tool for the job

Since it began using the new system in January, Cannon said BigRentz has saved over 3,000 hours every week in terms of time spent on procurement for rental services (the equivalent of over 80 roles) and has reduced errors by 40%. Today, the company is launching a customer-facing version of the system, also called SiteStack, which it hopes will make it possible to further pass on the types of efficiencies and cost savings it has realized to its customers. The launch is transforming the company yet again—from one that connects contractors and vendors to one that sells construction firms software so they can do it themselves with more information and control than ever before.  

The new platform uses the same underlying AI but offers customers the ability to input information on the suppliers they already have relationships with. When they search for a rental and get the stack-ranked results, they can see how all their vendors compare for that specific rental, as well as additional vendors not in their current system. 

Cannon said the idea is to streamline and bring more transparency to pricing in the industry, which he said is fragmented and “intentionally opaque” with some vendors offering day rates, others offering week rates, and other factors that make it difficult to compare apples to apples. 

“What we’re trying to solve for evolved,” Cannon said. “So not just access to equipment, which is a problem, just not a big problem—no pun intended. It’s the decision-making that leads into which vendor you use, which is really the bigger problem. We didn’t set out to build our company around AI. It just turned out to be the best tool for the job.”

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建筑业 AI技术 设备租赁 效率提升 数字化转型
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