Global AI in Government and Public Services Market Size is valued at USD 21.8 Bn in 2024 and is predicted to reach USD 95.0 Bn by the year 2034 at a 16.0% CAGR during the forecast period for 2025-2034.
Artificial Intelligence (AI) in government and public services is revolutionizing how governments operate and deliver services to citizens. AI can streamline administrative tasks, enhance decision-making through data analysis, and improve resource allocation. In public services, AI-powered chatbots and virtual assistants enhance citizen engagement by providing instant responses to queries and delivering services more efficiently. AI is also used in areas such as public safety, traffic management, and infrastructure maintenance, where predictive analytics help anticipate issues and optimize operations.
Additionally, AI can be employed for fraud detection, cybersecurity, and policy planning, improving transparency and effectiveness in governance. Overall, AI fosters smarter, more efficient public services and governance, benefiting both citizens and governments. Moreover, the growth of AI in government and public services in this sector is being driven by government initiatives and investments in digital transformation. In addition, the market is anticipated to be propelled by increased government investments in research and development to optimize better service processes.
However, the market growth is hindered by obstacles such as data privacy worries, expensive implementation expenses, a shortage of trained AI experts, and problems with regulation and compliance. Several variables can hinder adoption in this market. Global markets expanded during the coming years due to technological developments, widespread adoption of digital platforms, and enhanced government operations cybersecurity by detecting and responding to threats.
The AI in the government and public services market is segmented as per the type, application, deployment mode, and end-user. Based on type, the market is segmented into machine learning, computer vision, natural language processing (NLP), robotic process automation (RPA), expert systems, and others. By application, the market is segmented into administrative services, healthcare, law enforcement and public safety, transportation and urban planning, social services, environmental management, tax and revenue management, defense and national security, education, and others. According to the deployment mode, the market is segmented into cloud-based and on-premises. By end-users, the market is segmented into government agencies and public services organizations.
The robotic process automation AI in the government and public services market is expected to hold a major global market share in 2023 because it can automate mundane jobs, which in turn improves efficiency and conserves a lot of money. Reduced human error, streamlined administrative processes, and improved service delivery are all benefits of robotic process automation. Additionally, government processes are being modernized with the help of robotic process automation, which is driven by the need to handle increasing data quantities, the requirement for digital transformation, and the industry's overall market growth.
The government agencies category is projected to grow rapidly in the global AI in the government and public services market. Better citizen services, data-driven decision-making, and efficiency are becoming more important. With the help of AI, operational capabilities are improved, everyday tasks are automated, and predictive analytics are made possible. The growth of this market segment is also being propelled by government programs that encourage digital transformation and investments in artificial intelligence technologies.
The North American AI in the government and public services market is expected to document the highest market revenue share. This is because there is a strong emphasis on innovation and digital transformation efforts, a well-developed technical infrastructure, substantial government funding for AI, and favorable regulations. In addition, Europe is likely to grow rapidly in the AI in government and public services market because the use of artificial intelligence to improve the effectiveness of public services, rising government programs, growing funding levels, and the trend toward digitalization will boost the market's growth.
Report Attribute |
Specifications |
Market Size Value In 2024 |
USD 21.8 Bn |
Revenue Forecast In 2034 |
USD 95.0 Bn |
Growth Rate CAGR |
CAGR of 16.0% from 2025 to 2034 |
Quantitative Units |
Representation of revenue in US$ Bn and CAGR from 2025 to 2034 |
Historic Year |
2021 to 2024 |
Forecast Year |
2025-2034 |
Report Coverage |
The forecast of revenue, the position of the company, the competitive market structure, growth prospects, and trends |
Segments Covered |
By Type, Application, End-User, Deployment Mode |
Regional Scope |
North America; Europe; Asia Pacific; Latin America; Middle East & Africa |
Country Scope |
U.S.; Canada; U.K.; Germany; China; India; Japan; Brazil; Mexico; France; Italy; Spain; South East Asia; South Korea |
Competitive Landscape |
IBM Corporation, Microsoft Corporation, Amazon Web Services (AWS), Google LLC, Accenture PLC, Palantir Technologies Inc., SAS Institute Inc., Oracle Corporation Com, Inc., Deloitte Touche Tohmatsu Limited, SAP SE, NVIDIA Corporation, Other Prominent Players. |
Customization Scope |
Free customization report with the procurement of the report and modifications to the regional and segment scope. Particular Geographic competitive landscape. |
Pricing And Available Payment Methods |
Explore pricing alternatives that are customized to your particular study requirements. |
AI in Government and Public Services Market By Type-
AI in Government and Public Services Market By Application-
AI in Government and Public Services Market By Deployment Mode-
AI in Government and Public Services Market By End-User-
AI in Government and Public Services Market By Region-
North America-
Europe-
Asia-Pacific-
Latin America-
Middle East & Africa-
InsightAce Analytic follows a standard and comprehensive market research methodology focused on offering the most accurate and precise market insights. The methods followed for all our market research studies include three significant steps – primary research, secondary research, and data modeling and analysis - to derive the current market size and forecast it over the forecast period. In this study, these three steps were used iteratively to generate valid data points (minimum deviation), which were cross-validated through multiple approaches mentioned below in the data modeling section.
Through secondary research methods, information on the market under study, its peer, and the parent market was collected. This information was then entered into data models. The resulted data points and insights were then validated by primary participants.
Based on additional insights from these primary participants, more directional efforts were put into doing secondary research and optimize data models. This process was repeated till all data models used in the study produced similar results (with minimum deviation). This way, this iterative process was able to generate the most accurate market numbers and qualitative insights.
Secondary research
The secondary research sources that are typically mentioned to include, but are not limited to:
The paid sources for secondary research like Factiva, OneSource, Hoovers, and Statista
Primary Research:
Primary research involves telephonic interviews, e-mail interactions, as well as face-to-face interviews for each market, category, segment, and subsegment across geographies
The contributors who typically take part in such a course include, but are not limited to:
Data Modeling and Analysis:
In the iterative process (mentioned above), data models received inputs from primary as well as secondary sources. But analysts working on these models were the key. They used their extensive knowledge and experience about industry and topic to make changes and fine-tuning these models as per the product/service under study.
The standard data models used while studying this market were the top-down and bottom-up approaches and the company shares analysis model. However, other methods were also used along with these – which were specific to the industry and product/service under study.