Artificial Intelligence in Construction: Potential Capabilities and Risks

Pasha Ameli and Emily Lamm

Artificial intelligence is steadily becoming an integral part of the construction industry and has the potential to bring enhanced efficiency and creativity across the project lifecycle.

In this article, we discuss the capabilities of AI (artificial intelligence) in construction, as well as the areas of law that should be considered to facilitate thoughtful implementation and deployment of this technology.

Although the construction industry is growing rapidly to keep pace with demand for new infrastructure and housing, the sector is plagued by labor shortages and escalating material costs—both of which often lead to project delays and cost overruns. To solve these challenges, companies are beginning to implement emerging technologies, like AI, across the lifecycle of construction projects to streamline requests for information, synthesize vast amounts of data for design purposes, improve project timelines, and monitor for potential safety hazards onsite.

Indeed, the market size for AI in construction is now projected to hit nearly $10 billion by 2028, at a compound annual growth rate of over 24 percent. As such, it’s more important than ever for leaders in the industry grasp the full spectrum of capabilities that AI can offer, from design through construction and maintenance, as well as necessary legal considerations.

Potential Capabilities of AI in Construction

Imagine a property owner that comes to an architect and says, “Here are my conceptual designs for a single-family house.” The owner might have a photo and presentation with basic renderings, but that’s likely the extent of it. With generative AI, however, design teams could instead offer multiple conceptual designs and quickly create three-dimensional (3D) design renderings by leveraging vast datasets of existing architectural designs. In addition, a variety of AI tools could be deployed to quickly analyze each element’s functionality within the project, the source of materials, lead times, and potential supply chain disruptions to identify cost-effective material selections, optimize resource allocation and delivery, estimate the project timeline, and comply with environmental and safety requirements. Once the initial plans are laid, AI can be used to identify areas of overlap and resolve clashes between the 3D models rendered by various sub-teams (e.g., architects, engineers, mechanics, electricians, and plumbers). From this point, machine-learning platforms can help a design team explore and compare alternative designs.

By analyzing equipment data throughout the duration of a given project, AI tools can provide real-time analytics of equipment longevity and periodic risk assessment reports...

Once the project is underway, project progress trackers ingesting data from robots scanning the project site (e.g., with 360-degree cameras and LiDAR scanning) can help construction leaders not only map their progress but make decisions that can save time and money. For instance, the data collected by these robots could be fed into generative AI models to answer questions such as: How much of the requiring piping was installed? How much could we save if we decreased the height of the ceilings? Such trackers and visualization tools can make it much easier for different teams to come together and implement tweaks to the project as they go.

Notably, according to a recent study, regular preventative maintenance can enhance the lifespan of equipment by up to 60 percent. By analyzing equipment data throughout the duration of a given project, AI tools can provide real-time analytics of equipment longevity and periodic risk assessment reports—empowering managers to pay attention to their maintenance needs, and cutting down significantly on costs and delays in the process.

The Applicable AI Legal Framework

Since the release of ChatGPT in November 2022, the legislative and regulatory landscape governing AI has been developing at an incredibly fast pace. Recently, there have been a number of significant developments at a global level, including the UK AI Safety Summit, the White House’s Executive Order, and steady progress with the European Union’s AI Act. At the same time, federal regulators have been stepping up their focus on the use of AI and a patchwork of AI-related state and local laws has been developing in the United States across sectors.

When it comes to the use of AI within the construction industry, there are a myriad of potential intersection points with existing legal frameworks. Here, we address a few select areas of law that should be considered before AI deployment.

Data privacy law. AI systems deployed on a construction site often collect and analyze large amounts of data, including personal information about workers. Consequently, such tools may trigger responsibilities under a number of data privacy laws imposing requirements such as notice and consent to workers, as well as potential limitations on the use of the data collected to train the AI model.

For example, under the California Consumer Privacy Act (as amended by the California Privacy Rights Act), employees have rights regarding the personal information their employer collects and maintains about them, including the right to request deletion of personal information and the right to opt out of sharing personal information. Further, before biometric data is collected, the Illinois’ Biometric Information Privacy Act requires, among other things, informing individuals that a biometric identifier (e.g., retina or iris scan, voiceprint, fingerprint, facial geometry scan) or biometric information is being stored or collected and obtaining a written release from the individuals subject to the storage or collection.

Employment law. Of course, if the data collected about workers is later used to make an employment decision (e.g., a promotion or termination) downstream, a company may find itself within the scope of several employment-related laws at the federal, state, and even local levels. For instance, the use of an automated employment decision tool for an employee’s promotion in New York City could be subject to the City’s Local Law 144, which would require notice of the use of the tool to the employee and public posting of the results of an annual bias audit of the tool.

Intellectual property (IP) law. The use of AI in construction also requires careful consideration of IP law more broadly. For example, at a foundational level, the datasets used to train AI models are often subject to copyright and licensing agreements. In recent months, there have been a slew of lawsuits asserting violations of copyright law based on generative AI models using training data that is allegedly subject to copyright protection. While the viability of these and other IP-related claims remains to be seen, companies should ensure that contractual agreements with AI developers are carefully reviewed and drafted to help protect and assign IP rights.

The aforementioned examples are a fraction of the array of legal considerations when deploying AI in construction. Accordingly, companies leveraging or considering the use of AI should carefully assess the specific use case for potential risks and mitigation measures, particularly in light of the rapidly evolving AI legal landscape.

This article was originally published in December 2023 by the American Bar Association’s Litigation Section Construction Litigation Committee.


Dr. Pasha Ameli, PE, is a director in BRG’s Global Construction practice. He is a licensed Professional Civil Engineer with ten years of experience in construction advisory and project management, forensic construction claim investigations, quantification of damages, estimation of cost to repair, and internal audits.

Emily Lamm is an associate in the Washington, DC office of Gibson, Dunn & Crutcher. Her practice has a dual focus on AI matters and employment litigation, counseling, and investigations. She has been recognized in the 2024 edition of Best Lawyers: Ones to Watch® in America for Labor and Employment Law – Management.