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AI-Based Predictive Maintenance Market - Global Forecast 2025-2032

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    Report

  • 188 Pages
  • November 2025
  • Region: Global
  • 360iResearch™
  • ID: 6055745
UP TO OFF until Jan 01st 2026
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AI-based predictive maintenance is evolving from isolated pilots to a cornerstone for digital transformation, driving operational efficiency and risk mitigation across asset-intensive industries. Senior leaders are turning to advanced predictive analytics to optimize uptime and enhance process reliability, positioning their organizations to meet increasingly complex compliance, sustainability, and performance objectives.

Market Snapshot: AI-Based Predictive Maintenance Market

The AI-based predictive maintenance market expanded from USD 806.72 million in 2024 to USD 922.65 million in 2025, maintaining strong momentum with a compound annual growth rate (CAGR) of 15.98%. By 2032, the market is anticipated to reach USD 2.64 billion, reflecting robust investment and broadening adoption across sectors and geographies.

Scope & Segmentation

This research delivers comprehensive segmentation and strategic coverage of the global AI-driven predictive maintenance landscape, enabling leaders to benchmark and plan for technology adoption.

  • Component: Hardware (communication devices, sensors, storage solutions), Services (managed services, professional services), Software (asset performance management, dashboard & visualization, data integration & preprocessing, predictive analytics)
  • Technology: Cloud-based AI, edge AI, deep learning, digital twin technology, computer vision, machine learning, natural language processing, signal processing, statistical modeling
  • Data Type: Historical maintenance records, sensor data, image and video data, text/log data, vibration and acoustic signatures
  • Application: Condition monitoring, failure detection, remaining useful life estimation, root cause analysis, work order scheduling
  • Organization Size: Large enterprises, small and medium enterprises (SMEs)
  • End Use: Aerospace & defense, automotive, construction, energy & utilities (power generation, renewables, transmission & distribution), food & beverages, healthcare, IT & telecommunications, manufacturing, mining, oil & gas (upstream, midstream, downstream), transportation & logistics
  • Region: Americas (United States, Canada, Mexico, Brazil, Argentina, Chile, Colombia, Peru), Europe, Middle East & Africa (United Kingdom, Germany, France, Russia, Italy, Spain, Netherlands, Sweden, Poland, Switzerland, United Arab Emirates, Saudi Arabia, Qatar, Turkey, Israel, South Africa, Nigeria, Egypt, Kenya), Asia-Pacific (China, India, Japan, Australia, South Korea, Indonesia, Thailand, Malaysia, Singapore, Taiwan)
  • Vendor Landscape: ABB Ltd, Bharat Electronics Limited, Bharti Airtel Limited, C3.ai, Inc., Clarifai, COSMOS THRACE Ltd., craftworks GmbH, Deloitte Touche Tohmatsu Limited, Emerson Electric Co., Falkonry, Inc., GE Vernova, Hitachi, Ltd., Honeywell International Inc., Innovify, Intel Corporation, IBM, LeewayHertz, Microsoft Corporation, Nanoprecise, Neosperience Spa, Oracle Corporation, SAP SE, Siemens AG, statworx GmbH, Technomax, Uptake Technologies Inc.

Key Takeaways for Senior Decision-Makers

  • The market’s rapid evolution is driven by the shift from time-based to condition-based and prognostic maintenance workflows, delivering measurable improvements in asset lifecycle management and process resilience.
  • Cross-functional governance and executive sponsorship are critical for scaling predictive maintenance initiatives and aligning investments with strategic business objectives.
  • Advanced sensing, edge computing, and model interpretability reduce implementation friction, enabling faster integration and real-time decision-making at the asset level.
  • Regional strategies, including local sourcing and service partnerships, help organizations navigate policy and tariff environments, ensuring deployment continuity despite supply chain fluctuations.
  • Procurement processes increasingly prioritize interoperability, outcome-based contracting, and the ability to scale solutions across diverse operational landscapes and asset types.

Tariff Impact

Recent tariffs and trade regulations have introduced added costs and complexity to global supply chains for predictive maintenance hardware, prompting organizations to focus on vendor-agnostic platforms and retrofit-friendly solutions. Many providers are strengthening local manufacturing and integrator partnerships, while buyers emphasize supply chain transparency and risk-mitigation strategies. Software and analytics investments that maximize data value from existing assets are gaining preference amid fluctuating hardware costs.

Methodology & Data Sources

This report employs a multi-method research approach, leveraging interviews with operational leaders and maintenance experts, direct vendor assessments, and rigorous secondary research from technical literature and case studies. Findings were validated through scenario analysis, capability mapping, and cross-sector stakeholder engagement ensuring insightful, actionable guidance for enterprise adoption.

Why This Report Matters for Predictive Maintenance Leaders

  • Enables data-driven investment planning by mapping the evolving landscape across technologies, regional contexts, and vendor offerings.
  • Supports risk-aware decision-making by addressing procurement strategies, ecosystem shifts, and critical impacts of trade policy on AI-based maintenance deployments.

Conclusion

Orchestrating AI-based predictive maintenance as an enterprise capability empowers organizations to improve reliability, lower operational risk, and confidently scale their maintenance strategies. Leaders who act now position their organizations to capture enduring value and performance advantages.

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 edge computing and AI algorithms for real-time equipment failure prediction
5.2. Adoption of digital twins combined with machine learning for proactive maintenance planning
5.3. Use of self-supervised learning techniques to improve anomaly detection accuracy in sensor data
5.4. Expansion of predictive maintenance services in small and medium enterprises through cloud platforms
5.5. Deployment of explainable AI models to increase technician trust in automated maintenance insights
5.6. Incorporation of transfer learning to adapt maintenance models across diverse industrial assets
5.7. Implementation of 5G-enabled sensor networks to enhance data transfer for predictive analytics
5.8. Integration of sustainability metrics into AI maintenance systems to reduce waste and energy use
6. Cumulative Impact of United States Tariffs 2025
7. Cumulative Impact of Artificial Intelligence 2025
8. AI-Based Predictive Maintenance Market, by Component
8.1. Hardware
8.1.1. Communication Devices
8.1.2. Sensors
8.1.3. Storage Solutions
8.2. Services
8.2.1. Managed Services
8.2.2. Professional Services
8.3. Software
8.3.1. Asset Performance Management (APM)
8.3.2. Dashboard & Visualization Tools
8.3.3. Data Integration & Preprocessing
8.3.4. Predictive Modeling & Analytics
9. AI-Based Predictive Maintenance Market, by Technology
9.1. Cloud-based AI Solutions
9.2. Computer Vision
9.3. Deep Learning
9.4. Digital Twin Technology
9.5. Edge AI
9.6. Machine Learning
9.7. Natural Language Processing
9.8. Signal Processing
9.9. Statistical Modeling
10. AI-Based Predictive Maintenance Market, by Data Type
10.1. Historical Maintenance Records
10.2. Image & Video Data
10.3. Sensor Data
10.4. Text/Log Data
10.5. Vibration & Acoustic Data
11. AI-Based Predictive Maintenance Market, by Application
11.1. Condition Monitoring
11.2. Failure Detection
11.3. Remaining Useful Life Estimation (RUL)
11.4. Root Cause Analysis
11.5. Work Order Scheduling
12. AI-Based Predictive Maintenance Market, by Organization Size
12.1. Large Enterprises
12.2. Small and Medium Enterprises (SMEs)
13. AI-Based Predictive Maintenance Market, by End-Use
13.1. Aerospace & Defense
13.2. Automotive
13.3. Construction
13.4. Energy & Utilities
13.4.1. Power Generation
13.4.2. Renewables
13.4.3. Transmission & Distribution
13.5. Food & Beverages
13.6. Healthcare
13.7. IT & Telecommunications
13.8. Manufacturing
13.9. Mining
13.10. Oil & Gas
13.10.1. Downstream
13.10.2. Midstream
13.10.3. Upstream
13.11. Transportation & Logistics
14. AI-Based Predictive Maintenance Market, by Region
14.1. Americas
14.1.1. North America
14.1.2. Latin America
14.2. Europe, Middle East & Africa
14.2.1. Europe
14.2.2. Middle East
14.2.3. Africa
14.3. Asia-Pacific
15. AI-Based Predictive Maintenance Market, by Group
15.1. ASEAN
15.2. GCC
15.3. European Union
15.4. BRICS
15.5. G7
15.6. NATO
16. AI-Based Predictive Maintenance Market, by Country
16.1. United States
16.2. Canada
16.3. Mexico
16.4. Brazil
16.5. United Kingdom
16.6. Germany
16.7. France
16.8. Russia
16.9. Italy
16.10. Spain
16.11. China
16.12. India
16.13. Japan
16.14. Australia
16.15. South Korea
17. Competitive Landscape
17.1. Market Share Analysis, 2024
17.2. FPNV Positioning Matrix, 2024
17.3. Competitive Analysis
17.3.1. ABB Ltd
17.3.2. Bharat Electronics Limited
17.3.3. Bharti Airtel Limited
17.3.4. C3.ai, Inc.
17.3.5. Clarifai, Inc.
17.3.6. COSMOS THRACE Ltd.
17.3.7. craftworks GmbH
17.3.8. Deloitte Touche Tohmatsu Limited
17.3.9. Emerson Electric Co.
17.3.10. Falkonry, Inc.
17.3.11. GE Vernova
17.3.12. Hitachi, Ltd.
17.3.13. Honeywell International Inc.
17.3.14. Innovify
17.3.15. Intel Corporation
17.3.16. International Business Machines Corporation
17.3.17. LeewayHertz
17.3.18. Mircosoft Coporation
17.3.19. Nanoprecise
17.3.20. Neosperience Spa
17.3.21. Oracle Corporation
17.3.22. SAP SE
17.3.23. Siemens AG
17.3.24. statworx GmbH
17.3.25. Technomax
17.3.26. Uptake Technologies Inc.

Companies Mentioned

The companies profiled in this AI-Based Predictive Maintenance Market report include:
  • ABB Ltd
  • Bharat Electronics Limited
  • Bharti Airtel Limited
  • C3.ai, Inc.
  • Clarifai, Inc.
  • COSMOS THRACE Ltd.
  • craftworks GmbH
  • Deloitte Touche Tohmatsu Limited
  • Emerson Electric Co.
  • Falkonry, Inc.
  • GE Vernova
  • Hitachi, Ltd.
  • Honeywell International Inc.
  • Innovify
  • Intel Corporation
  • International Business Machines Corporation
  • LeewayHertz
  • Mircosoft Coporation
  • Nanoprecise
  • Neosperience Spa
  • Oracle Corporation
  • SAP SE
  • Siemens AG
  • statworx GmbH
  • Technomax
  • Uptake Technologies Inc.

Table Information