The global GPU as a service market is expanding rapidly as companies seek scalable, cost-effective solutions for AI, machine learning, data analytics, and visual computing. Pay-per-use pricing, rapid adoption of AI workloads, and the need for high-performance infrastructure are driving market growth. As businesses seek to simplify access to GPU power without incurring hardware investments, GPUaaS continues to evolve with new services, pricing models, and automation features.
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Global GPU as a service market is projected to witness a CAGR of 17.45% during the forecast period 2025-2032, growing from USD 5.39 billion in 2024 to USD 19.52 billion in 2032. The global GPU as a service market is growing at a rapid pace because many companies require powerful computing capabilities for various tasks, such as AI, machine learning, and data processing. With GPUaaS, users can access robust systems easily, eliminating the need to purchase hardware and saving both time and money.
Report Attribute |
Details |
Base Year |
2024 |
Forecast Period |
2025-2032F |
Historical Period |
2018-2023 |
Projected Growth Rate |
CAGR of 17.45% between 2024 and 2032 |
Revenue Forecast in 2032 |
USD 19.52 billion |
The GPU as a service market is gaining traction globally as businesses seek more efficient and faster ways to perform high-performance computing. GPUaaS is a service that enables users to rent access to powerful GPUs via the cloud, offering a more cost-effective alternative to purchasing them directly. Many industries, including healthcare, education, media, and manufacturing, utilize GPUaaS services that perform tasks such as data analysis, AI modeling, and 3D modeling. GPUaaS offers affordability, low setup costs, fast scaling, flexibility and more. The ability for companies to start small and increase usage as necessary is helping them better manage budgets. As more advanced workloads emerge, the demand for high-performance computing at a low price is rising. New features are also being offered by GPUaaS providers, such as automation tools and predictive tools, which make portal innovations more appealing. The trend of utilizing GPUaaS services is expected to continue, as more businesses rely on innovative digital tools to conduct their operations. GPUaaS is uniquely structured to solve a large number of problems quickly, eliminating the need for extensive in-house infrastructure.
For instance, in September 2024, Lenovo Group Limited announced GPU as a Service as part of its TruScale subscription infrastructure. The offer enables businesses to run AI workloads on an on-demand basis, eliminating the need for capital investment in physical GPUs.
The increasing demand for artificial intelligence (AI) and machine learning (ML) is a key factor driving the growth of the GPU as a service market. Since AI and ML workloads, in particular, can require considerable computing resources that may not be feasible with traditional data and cloud computing workloads. Companies need powerful GPUs to speed up their processing of data and run their algorithms for research, image recognition, speech processing and robotics. Utilizing GPUaaS improves how they process data and enhances any algorithms, considering processing time. Using GPUaaS eliminates the need to invest significant resources in implementing and maintaining corresponding in-house systems. The on-demand model provides instant elasticity, removing obstacles to quickly scale workloads or start new projects. As AI and ML workloads become increasingly common in nearly every sector, the adoption of cloud GPU resources is on the rise. GPUaaS offers provide support for companies to remain competitive, increase functionality and deliver improved digital solutions for their customers. Therefore, companies worldwide are investing significantly in working efficiently and addressing every challenge in information technology and telecommunications.
For instance, in April 2023, CoreWeave, Inc. secured USD 221 million in Series B funding to grow its GPU cloud offerings. The platform, which utilizes NVIDIA GPUs, is designed to support large AI and machine learning workloads, including heavy model training and data processing.
Another considerable factor driving market growth is the exponential increase in visual computing needs, particularly in animation, video rendering, and gaming. Each of these activities demands high graphics capabilities, and this is where GPU as a Service becomes advantageous. Instead of requiring expensive physical systems, developers and creators can leverage GPUaaS to access high-performance GPUs in the cloud. This enables developers to work more efficiently and manage their budgets more effectively. Studios, game developers, and digital media creators are now utilizing GPUaaS to fully realize complex scenes, 3D models, and visual effects, and to take advantage of its increased flexibility in scaling the resources they use, such as when they are nearing a project deadline. In addition, it can help a team of remote developers and creators access the same high-powered computing resources, allowing them to collaborate at a high level of computing. Given the demand for more visual content and real-time graphics, GPU as a Service is becoming a go-to solution for developers. It saves time, reduces friction between creativity and technology, and provides a better experience for both developers and their audiences.
For instance, in March 2023, Lambda Labs, Inc. raised USD 44 million to develop its public GPU cloud infrastructure. The company focused on deploying NVIDIA H100 GPUs for workloads including visual effects, graphics in real-time and rendering workloads.
The pay-per-use model has been the most prominent segment in the GPU as a service market. The pay-per-use model enables users to pay only for the actual use of GPU power, providing cost predictability, especially for small and medium-sized businesses. In this model, users do not enter into a long-term agreement with a provider or an upfront capital investment in hardware. The pay-per-use model enables users to easily initiate their first projects based on AI, data analytics, or rendering without incurring the high upfront costs associated with investing in infrastructure. Organizations can also make use of the model when use cases shift frequently, allowing them to scale the workload on demand and reduce costs at any given time. Digital transformation is becoming a common initiative among organizations, and they are increasingly seeking services that empower them to control spending and usage. The pay-per-use model provides organizations with exact, on-demand access to GPU resources, eliminating waste. Furthermore, the pay-per-use model aligns well with cloud-native business processes, which are primarily based on agility and flexibility. These features have contributed to the pay-per-use model, making the GPU-as-a-service sector a leader in terms of adoption and growth.
For example, in October 2024, Sify Technologies Limited announced the launch of the CloudInfinit+AI GPU-as-a-Service platform. Sify's usage-based service model provides business customers with the ability to access powerful NVIDIA GPUs when needed, allowing businesses to harness the power of unlimited processing for AI generation, data analytics, image and video rendering, and scientific analysis. This will enable users to skip the upfront costs of its required hardware and offers flexibility to scale up or down its GPU usage.
North America is poised to be the leading region in the global GPU as a Service market due to its strong digital infrastructure, willingness to adopt the latest technologies, robust demand for high-level computing services, and a solid pipeline of technology-centered companies, startups, and research facilities. Companies are always leading the way in areas such as AI, machine learning, big data, and cloud computing, driven by high GPU use. Businesses in North America are often among the first to adopt newer platforms that deliver speed, cost savings, and performance benefits. Companies have access to the leading data centers and cloud providers with workforces that can speedily adopt new technologies. North American governments and private sector companies are also among the largest spenders in AI and high-performance computing. As industries demand faster and more intelligent systems, demand is expected to continue growing in North America. With strong market positioning and continued innovation from numerous institutions, North America is expected to remain the leading region for GPUaaS.
For example, in January 2025, SK Telecom Co., Ltd. launched “SKT GPUaaS” in its Gasan AI Data Center in Seoul. This was on-demand access to H100 GPUs and unified management.
Impact of U.S. Tariffs on Global GPU as a Service Market
U.S. tariffs on hardware components, such as GPUs, can impact the GPUaaS market due to their effect on the cost of importing them. Fees can often cause cloud providers to raise service prices or postpone (delaying) upgrading hardware. Tariffs can impact supply chains overall and delay the deployment of hardware in some regions. Many providers can manage it through partnerships and local sourcing. Though tariffs add pressure, providers continue to expand their offerings because the overall demand for GPU services is so high, and they're figuring out ways to manage costs.
Report Scope
“Global GPU as a Service Market Assessment, Opportunities and Forecast, 2018-2032F”, is a comprehensive report by Markets and Data, providing in-depth analysis and qualitative and quantitative assessment of the current state of global GPU as a service market, industry dynamics, and challenges. The report includes market size, segmental shares, growth trends, opportunities, and forecasts between 2025 and 2032. Additionally, the report profiles the leading players in the industry, mentioning their respective market share, business models, competitive intelligence, etc.
Report Attribute |
Details |
Segments Covered |
Pricing Model, Deployment Model, Organization Size, End-user Industry |
Regions Covered |
North America, Europe, South America, Asia-Pacific, Middle East and Africa |
Key Companies Profiled |
IBM Corporation, Panasonic Holdings Corporation, Intel Corporation, Oracle Corporation, Microsoft Corporation, Amazon.com, Inc., NVIDIA Corporation, Samsung Electronics Co., Ltd., Google LLC (Alphabet Inc.), Lambda Labs, Inc. |
Customization Scope |
15% free report customization with purchase |
Pricing and Purchase Options |
Avail the customized purchase options to fulfill your precise research needs |
Delivery Format |
PDF and Excel through email (subject to the license purchased) |
In the report, the global GPU as a service market has been segmented into the following categories:
Key Players Landscape and Outlook
The global GPU as a Service market is becoming increasingly saturated, as numerous companies enter market to support the growing demand. GPUaaS providers offer different plans with better flexibility, faster access to GPUs, and a combination of tools such as AI tools, workload management and several extras. As mentioned above, GPUaaS continues to grow as demand for workloads requiring GPU services increases (e.g., AI, ML, analytics). Market participants also aim to improve service uptime, as well as offer platforms and services that are easy to use. Providers also focus on global platforms and service reach. Several market participants expand to new areas or add new pricing models. The short- to long-term outlook is favorable, as GPUaaS makes sense for both small startups and large enterprise businesses seeking to enhance operational speed and reduce infrastructure costs. Several organizations are increasingly seeking reliable, fast access to GPU-sized workloads with minimal hassle. This is excellent news as it should drive GPUaaS providers to a continued level of improvement on their contracts and services, automation, improve workflows and create a platform that users prefer to use, therefore improving the potential for the growth of the GPUaaS market in the future.
For example, in November 2024, Rackspace Technology, Inc. introduced the world to Spot Cloud and now offers GPU-as-a-Service through NVIDIA. This highlights how suppliers are adapting and innovating in terms of pricing, availability, and automation to remain competitive.
Key Players Operating in Global GPU as a Service Market are:
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