AI Model Risk Management Market Assessment, By Offering [Software, Services], By Deployment Mode [On-premises, Cloud-based], By Risk Type [Security Risk, Ethical Risk, Operational Risk], By Application [Fraud Detection and Prevention, Credit Scoring and A

AI Model Risk Management Market Assessment, By Offering [Software, Services], By Deployment Mode [On-premises, Cloud-based], By Risk Type [Security Risk, Ethical Risk, Operational Risk], By Application [Fraud Detection and Prevention, Credit Scoring and Assessment, Market Risk Analysis, Anti-Money Laundering Compliance, Cybersecurity Threat Detection, Supply Chain Risk Prediction, Others], By End-users [Banking, Financial Services and Insurance, Retail and E-commerce, IT and Telecom, Manufacturing, Healthcare, Media and Entertainment, Government and Public Sector, Others], By Region, Opportunities and Forecast, 2017-2031F



Global AI model risk management market is projected to witness a CAGR of 12.70% during the forecast period 2024-2031, growing from USD 4.98 billion in 2023 to USD 12.96 billion in 2031. The market has grown significantly and is set for continued expansion.

AI Model Risk Management is on a global rise as regulators across the globe look at solid and reliable frameworks. The United States Federal Artificial Intelligence Risk Management Act of 2024 requires federal agencies to use the National Institute of Standards and Technology (NIST) AI Risk Management Framework to enhance transparency with implementation. The AI act proposed by Europe uses risk-based classification to enable trustworthy deployment of ethical artificial intelligence. Japan's AI strategy seeks to ensure transparency and accountability in the operation of AI systems. Standardization efforts are led by key associations such as National Institute of Standards and Technology (NIST), and the European AI Alliance. Together, these regulations and guidelines contribute to market growth as organizations aim to meet increasingly stringent standards that are necessary for risk reduction and trust-building in AI technologies around the world.

For instance, in June 2023, the European Union's AI Act, the world’s first comprehensive AI regulation, sets strict rules on high-risk AI applications, ensuring safety and transparency, while banning harmful uses and fostering innovation.

Mitigation of AI Bias to Fuel AI Model Risk Management Market

AI model risk management needs to tackle AI bias in accordance with the Federal Trade Commission (FTC). Consumers lost nearly USD 8.8 billion to scammers taking advantage of digital payment channels last year, the figure highlights an urgency for more rigorous AI regulation. AI bias can cause unjust results, legal issues, and consumer abandonments. Considering this, companies are increasingly adopting AI risk management frameworks to target and monitor these biases thereby enforcing the rules for ethical usage of AI. This has in-turn driven the market demand, as dignity organizations look for solutions that can detect and mitigate biases while delivering better transparency and compliance with regulations. Businesses can use AI to analyze data related to every activity, creating secure online habitats which lead the way for trust and innovation in a society that has little room for human error, when it comes to compliance of consumers and regulatory needs.

For instance, in May 2024, IBM Corp. unveiled major updates to its watsonx platform, including open-sourced Granite models and InstructLab, alongside strengthened partnerships with major tech firms to drive enterprise AI innovation.

Rising Cybersecurity Concerns Drive the AI Model Risk Management Market Growth

The AI model risk management market need has soared due to rising cybersecurity threats. Able to implement more evasive tactics, cyberattacks have led enterprises towards identity theft and financial loss. According to the Global Risks Report 2024, 39% of experts observe cyberattacks as one of top-five risks, likely triggering an industry crisis in 2024. This concern is giving way to AI-powered risk management solutions, allowing organizations to improve security practices and identify threats before they become hazardous. Artificial intelligence can predict vulnerabilities, hence companies are able to protect themselves before a breach occurs and comply with strict regulatory standards.

For instance, in April 2024, Oracle Corporation introduced its AI-powered Financial Services Compliance Agent to enhance banks' anti-money laundering efforts. The service offers cost-effective scenario testing and improved risk assessment capabilities.

Government Initiatives Acting as a Market Catalyst

Global government efforts are propelling AI model risk management market across the world. Strong security and transparency requirements of the European Union Artificial Intelligence Act will create new market opportunities for risk management solutions. The United Kingdom National AI Strategy, for instance, is disproportionately concerned with cybersecurity and subsequently prioritizes investment in AI risk management solutions. Cybersecurity and the ethical use of AI have been given importance in India's National AI Portal, as well is Singapore's AI Governance Framework where research and development for advanced risk management tools should be used. The AI Action Plan of Australia and the Pan-Canadian AI Strategy support use cases for cybersecurity in enhancing performance through AI capabilities, propelling the market revenue. These controls and techniques allow companies to build a full AI risk management platform.

For instance, in January 2023, NIST launched the AI Risk Management Framework (AI RMF 1.0), fulfilling a mandate from the National AI Initiative Act of 2020. This voluntary framework offers guidance for managing AI risks, promoting trust and accountability.

BFSI Sector Leading in AI Model Risk Management Market

BFSI is at a forefront in the AI model risk management market as it uses advanced technologies for complex problems in an age where cyber threats are accelerating and regulations tightening, banks want AI powered by machine learning to manage risk better. Artificial Intelligence analyzes huge data and makes important things such as credit risk assessment, fraud detection, and regulatory compliance which is super easy to do in real-time. This proactive alternative replaces the conventional measures of reacting to the market and provides substantial operational resilience. Incorporating AI/ML tools into compliance processes accelerates financial institutions, making them pioneers of risk management innovation by improving process efficiency and security.

North America Dominates AI Model Risk Management Market Share

North America dominates the AI model risk management market due to its advanced technological infrastructure and large-scale investments made by the government. Efforts to adopt AI have been quite high in the United States and Canada, where very minimal regulations or government policies are used as launchpads by innovators into how they want to apply the learnings above output representation networks for ideas such as Targeted Learning Machines. Other recent initiatives include the Federal Infrastructure Modernization Act, which strengthens cyber defenses while issuing guidance on how to prioritize AI technologies under FedRAMP.

For instance, in June 2023, Moody's Analytics, Inc. and Microsoft Corp. announced a strategic partnership to develop advanced risk, data, and analytics solutions using Microsoft’s Azure OpenAI Service and Moody’s proprietary data.

Future Market Scenario (2024 – 2031F)

Governments worldwide will introduce stricter regulations, requiring more rigorous oversight and compliance measures for AI models, boosting the demand for advanced risk management solutions.

The need for robust risk management strategies will surge, driving innovation and market growth as industries integrate AI models across various applications.

Organizations will prioritize sophisticated risk management frameworks to safeguard data integrity and system security with rising cyber threats targeting AI systems.

AI models will evolve to offer more accurate risk predictions and proactive mitigation strategies, transforming how businesses manage and respond to potential threats.

Key Players Landscape and Outlook

Prominent players in the AI model risk management market are developing sophisticated models that can automatically identify and correct errors. Alphabet Inc. and Microsoft corp. deploy their cloud infrastructure with AI skills, as IBM Corp. and Oracle Corporation are offering a few of the most difficult competition from long standing analytics subsidiaries. Moody's Analytics, Inc. specializes in financial analytics and AWS builds scalable cloud services.

In July 2024, Moody's Analytics, Inc. launched a GenAI-powered Early Warning System for commercial real estate, offering real-time alerts and risk assessments to enhance portfolio management.


1. Project Scope and Definitions
2. Research Methodology
3. Executive Summary
4. Voice of Customer
4.1. Product and Market Intelligence
4.2. Mode of Brand Awareness
4.3. Factors Considered in Purchase Decisions
4.3.1. Features and Other Value-Added Service
4.3.2. IT Infrastructure Compatibility
4.3.3. Efficiency of Solutions
4.3.4. After-Sales Support
4.4. Consideration of Privacy and Regulations
5. Global AI Model Risk Management Market Outlook, 2017-2031F
5.1. Market Size Analysis & Forecast
5.1.1. By Value
5.2. Market Share Analysis & Forecast
5.2.1. By Offering
5.2.1.1. Software
5.2.1.2. Services
5.2.2. By Deployment Mode
5.2.2.1. On-premises
5.2.2.2. Cloud-based
5.2.3. By Risk Type
5.2.3.1. Security Risk
5.2.3.2. Ethical Risk
5.2.3.3. Operational Risk
5.2.4. By Application
5.2.4.1. Fraud Detection and Prevention
5.2.4.2. Credit Scoring and Assessment
5.2.4.3. Market Risk Analysis
5.2.4.4. Anti-Money Laundering (AML) Compliance
5.2.4.5. Cybersecurity Threat Detection
5.2.4.6. Supply Chain Risk Prediction
5.2.4.7. Others
5.2.5. By End-users
5.2.5.1. Banking, Financial Services and Insurance (BFSI)
5.2.5.2. Retail and E-commerce
5.2.5.3. IT and Telecom
5.2.5.4. Manufacturing
5.2.5.5. Healthcare
5.2.5.6. Media and Entertainment
5.2.5.7. Government and Public Sector
5.2.5.8. Others
5.2.6. By Region
5.2.6.1. North America
5.2.6.2. Europe
5.2.6.3. Asia-Pacific
5.2.6.4. South America
5.2.6.5. Middle East and Africa
5.2.7. By Company Market Share Analysis (Top 5 Companies and Others – By Value, 2023)
5.3. Market Map Analysis, 2023
5.3.1. By Offering
5.3.2. By Deployment Mode
5.3.3. By Risk Type
5.3.4. By Application
5.3.5. By End-users
5.3.6. By Region
6. North America AI Model Risk Management Market Outlook, 2017-2031F*
6.1. Market Size Analysis & Forecast
6.1.1. By Value
6.2. Market Share Analysis & Forecast
6.2.1. By Component
6.2.2. By Offering
6.2.2.1. Software
6.2.2.2. Services
6.2.3. By Deployment Mode
6.2.3.1. On-premises
6.2.3.2. Cloud-based
6.2.4. By Risk Type
6.2.4.1. Security Risk
6.2.4.2. Ethical Risk
6.2.4.3. Operational Risk
6.2.5. By Application
6.2.5.1. Fraud Detection and Prevention
6.2.5.2. Credit Scoring and Assessment
6.2.5.3. Market Risk Analysis
6.2.5.4. Anti-Money Laundering (AML) Compliance
6.2.5.5. Cybersecurity Threat Detection
6.2.5.6. Supply Chain Risk Prediction
6.2.5.7. Others
6.2.6. By End-users
6.2.6.1. Banking, Financial Services and Insurance (BFSI)
6.2.6.2. Retail and E-commerce
6.2.6.3. IT and Telecom
6.2.6.4. Manufacturing
6.2.6.5. Healthcare
6.2.6.6. Media and Entertainment
6.2.6.7. Government and Public Sector
6.2.6.8. Others
6.2.7. By Country Share
6.2.7.1. United States
6.2.7.2. Canada
6.2.7.3. Mexico
6.3. Country Market Assessment
6.3.1. United States AI Model Risk Management Market Outlook, 2017-2031F*
6.3.1.1. Market Size Analysis & Forecast
6.3.1.1.1. By Value
6.3.1.2. Market Share Analysis & Forecast
6.3.1.2.1. By Offering
6.3.1.2.1.1. Software
6.3.1.2.1.2. Services
6.3.1.2.2. By Deployment Mode
6.3.1.2.2.1. On-premises
6.3.1.2.2.2. Cloud-based
6.3.1.2.3. By Risk Type
6.3.1.2.3.1. Security Risk
6.3.1.2.3.2. Ethical Risk
6.3.1.2.3.3. Operational Risk
6.3.1.2.4. By Application
6.3.1.2.4.1. Fraud Detection and Prevention
6.3.1.2.4.2. Credit Scoring and Assessment
6.3.1.2.4.3. Market Risk Analysis
6.3.1.2.4.4. Anti-Money Laundering (AML) Compliance
6.3.1.2.4.5. Cybersecurity Threat Detection
6.3.1.2.4.6. Supply Chain Risk Prediction
6.3.1.2.4.7. Others
6.3.1.2.5. By End-users
6.3.1.2.5.1. Banking, Financial Services and Insurance (BFSI)
6.3.1.2.5.2. Retail and E-commerce
6.3.1.2.5.3. IT and Telecom
6.3.1.2.5.4. Manufacturing
6.3.1.2.5.5. Healthcare
6.3.1.2.5.6. Media and Entertainment
6.3.1.2.5.7. Government and Public Sector
6.3.1.2.5.8. Others
6.3.2. Canada
6.3.3. Mexico
*All segments will be provided for all regions and countries covered
7. Europe AI Model Risk Management Market Outlook, 2017-2031F
7.1. Germany
7.2. France
7.3. Italy
7.4. United Kingdom
7.5. Russia
7.6. Netherlands
7.7. Spain
7.8. Turkey
7.9. Poland
8. Asia-Pacific AI Model Risk Management Market Outlook, 2017-2031F
8.1. India
8.2. China
8.3. Japan
8.4. Australia
8.5. Vietnam
8.6. South Korea
8.7. Indonesia
8.8. Philippines
9. South America AI Model Risk Management Market Outlook, 2017-2031F
9.1. Brazil
9.2. Argentina
10. Middle East and Africa AI Model Risk Management Market Outlook, 2017-2031F
10.1. Saudi Arabia
10.2. UAE
10.3. South Africa
11. Value Chain Analysis
12. Porter’s Five Forces Analysis
13. PESTLE Analysis
14. Market Dynamics
14.1. Market Drivers
14.2. Market Challenges
15. Market Trends and Developments
16. Case Studies
17. Competitive Landscape
17.1. Competition Matrix of Top 5 Market Leaders
17.2. SWOT Analysis for Top 5 Players
17.3. Key Players Landscape for Top 10 Market Players
17.3.1. Alphabet inc.
17.3.1.1. Company Details
17.3.1.2. Key Management Personnel
17.3.1.3. Products and Services
17.3.1.4. Financials (As Reported)
17.3.1.5. Key Market Focus and Geographical Presence
17.3.1.6. Recent Developments/Collaborations/Partnerships/Mergers and Acquisition
17.3.2. Amazon Web Services, Inc.
17.3.3. Fair Isaac Corporation
17.3.4. IBM Corp.
17.3.5. Microsoft Corp.
17.3.6. Moody's Analytics, Inc.
17.3.7. Oracle Corporation
17.3.8. Palantir Technologies Inc.
17.3.9. Riskified, Inc.
17.3.10. SAS Institute Inc.
*Companies mentioned above DO NOT hold any order as per market share and can be changed as per information available during research work.
18. Strategic Recommendations
19. About Us and Disclaimer

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