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AI in Construction Market - Global Forecast 2025-2032

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    Report

  • 188 Pages
  • October 2025
  • Region: Global
  • 360iResearch™
  • ID: 5789100
UP TO OFF until Jan 01st 2026
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The AI in Construction Market presents a turning point for sector leaders, offering robust digital pathways to tackle project complexity, enhance performance, and realize strategic priorities in efficiency, safety, and sustainability.

Market Snapshot: AI in Construction Market Growth and Opportunity

The AI in Construction Market expanded from USD 863.67 million in 2024 to USD 1.08 billion in 2025, representing a compound annual growth rate of 25.24%. Projections indicate the market will reach USD 5.22 billion by 2032. This upward trajectory is underpinned by demand for intelligent automation, stricter regulatory compliance requirements, and a strategic shift toward data-driven operations. Organizations are leveraging digital intelligence to manage process inefficiencies, lower operational risks, and improve project responsiveness in a dynamic regulatory environment. Widespread technology adoption, spurred by evolving stakeholder expectations, is intensifying market competition and fueling ongoing innovation among leading firms.

Scope & Segmentation

  • Solutions: Adoption includes drones, connected construction equipment, and advanced sensor technologies, complemented by consulting, implementation, and technical support services. Organizations select from perpetual or subscription-based licensing to align with specific operational and budgetary preferences.
  • Applications: Utilization covers predictive maintenance, real-time asset tracking, 3D modeling, 4D scheduling, and 5D cost estimation. These applications empower project teams to address risk assessment, monitor compliance, detect defects, manage incidents, and support robust asset lifecycle management.
  • Technologies: Organizations employ computer vision for image analysis, expert systems for automating complex tasks, IoT-enabled devices for continuous connectivity, and advanced machine learning for predictive outcomes. Robotics—ranging from autonomous vehicles to construction drones—expand operational capacity, while natural language processing optimizes digital communication flows.
  • Deployment Modes: Deployment options encompass hybrid, private, and public cloud environments tailored to varying levels of technology maturity. For enhanced data control, some organizations continue using internal servers or private data centers to satisfy compliance and security mandates.
  • End Users: The ecosystem involves architects, engineering teams (including civil and MEP professionals), building owners, facility managers, government agencies, and a spectrum of general and specialized contractors. Each group leverages AI-powered platforms for enhanced project delivery and critical asset management.
  • Regions: Geographic coverage spans the Americas, Europe, Middle East, Africa, and Asia-Pacific. Major markets such as the United States, China, India, Germany, and Brazil, as well as rapidly developing regions, are shaped by varying regulatory climates, infrastructure priorities, and digital readiness, influencing investment decisions and adoption strategies.
  • Key Companies: The competitive environment is defined by players such as Autodesk Inc., Procore Technologies, Trimble Inc., Oracle Corporation, Bentley Systems, Hexagon AB, Nemetschek SE, IBM Corporation, Microsoft Corporation, and SAP SE, each contributing unique strategies to inform and guide industry technology direction globally.

Key Takeaways for Senior Decision-Makers

  • AI-driven automation is transforming core construction workflows, supporting the emergence of new business models that enhance project efficiency and risk distribution.
  • Digital twin technologies and predictive analytics foster superior decision-making, minimize project rework, and facilitate proactive performance monitoring throughout project cycles.
  • Adoption of robotics and intelligent sensor systems delivers substantial productivity improvements, augments safety oversight, and supports compliance with stringent environmental and sustainability standards.
  • Cloud-based platforms and flexible IT frameworks are central to managing distributed project teams, improving data sharing speed, and enabling agile adaptation to changing project demands.
  • Diverse solution offerings accommodate the complexity of large-scale infrastructure projects, bespoke engineering requirements, and public-private partnership dynamics, delivering measurable value across the sector.

Tariff Impact and Strategic Sourcing Shifts

  • Recent changes to U.S. tariffs are influencing procurement strategies, prompting a renewed focus on regional suppliers and greater reliance on AI-driven cost controls to mitigate volatility and manage supply chain risks.
  • Digital scenario planning optimizes logistics, minimizes disruptions at international borders, and sustains project delivery momentum amid shifting trade and regulatory parameters.

Methodology & Data Sources

The analysis draws on proprietary secondary research, peer-reviewed academic literature, regulatory sources, and direct interviews with industry executives and technology providers. A combination of quantitative surveys and triangulation techniques supports consistent segmentation and ensures comprehensive coverage of all relevant regions, technologies, and user cohorts.

Why This Report Matters

  • Presents a structured, actionable roadmap for AI integration, with prioritized guidance to achieve practical gains in efficiency, compliance, and risk mitigation.
  • Supports the formulation of targeted, region-specific growth strategies through in-depth segmentation and benchmarking of sector-leading organizations.
  • Prepares organizations to achieve strategic differentiation by providing validated analysis on AI adoption patterns and competitive innovation trends in the construction technology space.

Conclusion

This report empowers senior leaders to make informed decisions on technology investment and operational transformation, supporting improved project performance and sustained value realization throughout the construction lifecycle.

 

Additional Product Information:

  • Purchase of this report includes 1 year online access with quarterly updates.
  • This report can be updated on request. Please contact our Customer Experience team using the Ask a Question widget on our website.

Table of Contents

1. Preface
1.1. Objectives of the Study
1.2. Market Segmentation & Coverage
1.3. Years Considered for the Study
1.4. Currency & Pricing
1.5. Language
1.6. Stakeholders
2. Research Methodology
3. Executive Summary
4. Market Overview
5. Market Insights
5.1. Integration of generative design algorithms to optimize structural components and material usage
5.2. Deployment of autonomous heavy machinery with AI-enabled obstacle detection for site safety
5.3. Implementation of predictive maintenance platforms leveraging IoT sensors and machine learning
5.4. Real-time progress tracking through AI-driven computer vision and drone-based site monitoring
5.5. Use of natural language processing tools for automated permit application and compliance management
5.6. Application of digital twin technology combined with AI simulations for construction planning and risk mitigation
6. Cumulative Impact of United States Tariffs 2025
7. Cumulative Impact of Artificial Intelligence 2025
8. AI in Construction Market, by Solution
8.1. Hardware
8.1.1. Drones
8.1.2. Equipment
8.1.3. Sensors
8.2. Services
8.2.1. Consulting
8.2.2. Implementation
8.2.3. Support & Maintenance
8.3. Software
8.3.1. Perpetual License
8.3.2. Subscription License
9. AI in Construction Market, by Application
9.1. Asset Management
9.1.1. Predictive Maintenance
9.1.2. Tracking
9.2. Building Information Modeling
9.2.1. 3D Modeling
9.2.2. 4D Scheduling
9.2.3. 5D Cost Estimation
9.3. Equipment Maintenance
9.3.1. Condition Monitoring
9.3.2. Fault Diagnosis
9.4. Planning & Design
9.4.1. Architecture Design
9.4.2. MEP Design
9.4.3. Structural Design
9.5. Project Management
9.5.1. Cost Estimation
9.5.2. Resource Allocation
9.5.3. Scheduling
9.6. Quality Control
9.6.1. Defect Detection
9.6.2. Inspection
9.7. Safety Management
9.7.1. Compliance Management
9.7.2. Incident Detection
10. AI in Construction Market, by Technology
10.1. Computer Vision
10.1.1. 2D Imaging
10.1.2. 3D Imaging
10.2. Expert Systems
10.2.1. Knowledge Based Systems
10.2.2. Rule Based Systems
10.3. Internet Of Things
10.3.1. Connected Devices
10.3.2. Smart Sensors
10.3.3. Wearables
10.4. Machine Learning
10.4.1. Reinforcement Learning
10.4.2. Supervised Learning
10.4.3. Unsupervised Learning
10.5. Natural Language Processing
10.5.1. Language Generation
10.5.2. Speech Recognition
10.5.3. Text Mining
10.6. Robotics
10.6.1. Autonomous Vehicles
10.6.2. Drones
10.6.3. Robotic Arms
11. AI in Construction Market, by Deployment Mode
11.1. Cloud
11.1.1. Hybrid Cloud
11.1.2. Private Cloud
11.1.3. Public Cloud
11.2. On Premises
11.2.1. Internal Servers
11.2.2. Private Data Centers
12. AI in Construction Market, by End User
12.1. Architects & Engineers
12.1.1. Architects
12.1.2. Civil Engineers
12.1.3. MEP Engineers
12.2. Building Owners & Facility Managers
12.2.1. Commercial
12.2.2. Residential
12.3. Contractors
12.3.1. General Contractors
12.3.2. Specialty Contractors
12.4. Governments & Municipalities
12.4.1. Federal Governments
12.4.2. Local Governments
13. AI in Construction Market, by Region
13.1. Americas
13.1.1. North America
13.1.2. Latin America
13.2. Europe, Middle East & Africa
13.2.1. Europe
13.2.2. Middle East
13.2.3. Africa
13.3. Asia-Pacific
14. AI in Construction Market, by Group
14.1. ASEAN
14.2. GCC
14.3. European Union
14.4. BRICS
14.5. G7
14.6. NATO
15. AI in Construction Market, by Country
15.1. United States
15.2. Canada
15.3. Mexico
15.4. Brazil
15.5. United Kingdom
15.6. Germany
15.7. France
15.8. Russia
15.9. Italy
15.10. Spain
15.11. China
15.12. India
15.13. Japan
15.14. Australia
15.15. South Korea
16. Competitive Landscape
16.1. Market Share Analysis, 2024
16.2. FPNV Positioning Matrix, 2024
16.3. Competitive Analysis
16.3.1. Autodesk, Inc.
16.3.2. Procore Technologies, Inc.
16.3.3. Trimble Inc.
16.3.4. Oracle Corporation
16.3.5. Bentley Systems, Incorporated
16.3.6. Hexagon AB
16.3.7. Nemetschek SE
16.3.8. IBM Corporation
16.3.9. Microsoft Corporation
16.3.10. SAP SE
List of Tables
List of Figures

Samples

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Companies Mentioned

The key companies profiled in this AI in Construction market report include:
  • Autodesk, Inc.
  • Procore Technologies, Inc.
  • Trimble Inc.
  • Oracle Corporation
  • Bentley Systems, Incorporated
  • Hexagon AB
  • Nemetschek SE
  • IBM Corporation
  • Microsoft Corporation
  • SAP SE

Table Information