The globalMLOps market sizewas valued atUSD 1.19 billion in 2022,预计年复合增长的恶性肿瘤h rate (CAGR) of 39.7% from 2023 to 2030. The market has seen significant growth in the past few years and is expected to demonstrate further substantial growth due to the outbreak of the COVID-19 pandemic. This high growth is attributed to the surge in demand for ML/AI-based projects among businesses to meet customers’ needs and upsurge their revenue opportunities. Machine Learning Operations (MLOps) assist in the transition from running a pair ofMachine Learning(ML) models manually to using them in the entire business operation. Overall, it helps reduce defects, improve delivery time, and make data science more effective.
Thus, providing lucrative prospects for market growth. MLOps is also the missing bridge between data engineering, ML, and data science. It has emerged as the link that unifies these operations more seamlessly. MLOps assist advanced systems and professionals to consistently deploy machine learning solutions and algorithms for enhanced productivity and significance. The technology is based on a blend of an operating framework for technology and people and an adherence to the most acceptable practices and proven architectural principles.The surge in digital and internet penetration worldwide positively impacts the market's growth. Furthermore, the healthcare industry increasingly usesAIand ML to improve patient outcomes and streamline processes.
AI-powered tools are used for image analysis, predictive modeling, and personalized treatment recommendations. MLOps solutions also help healthcare organizations build and deploy these tools at scale while ensuring compliance with data privacy regulations. Such increasing usage in the healthcare sector is expected to provide lucrative growth opportunities for the market during the forecast period. An increase in the adoption of MLOps technology across industries to enhance productivity & operation also strengthens the market's growth for the future. Moreover, MLOps help lower costs over the entire ML lifecycle and produce numerous possibilities for market growth.
The platform segment led the market in 2022, accounting for over 76% share of the global revenue owing to its feature of optimizing the management and operation of ML models. It helps organizations build, manage, train, and deploy models in a machine learning environment. It accelerates business experiments with purpose-built tools, including data preparation, classification, monitoring, training & tuning, and other activities. For instance, in October 2022, Weights & Biases, a provider of a developer-first MLOps platform, revealed significant enhancements to its developer-first MLOps platform. The latest enhancements will boost ML activities for practitioners and enterprises, delivering an end-to-end, seamless MLOps experience. The service segment is estimated to grow significantly over the forecast period.
Services in the MLOps market study include MLOps development, consulting, monitoring services, and license & maintenance services. MLOps services help organizations drive growth by enabling them to develop, deploy, and manage machine learning models efficiently. By leveraging these services, organizations can accelerate time-to-market, improve model accuracy, enhance operational efficiency, expand use cases, and facilitate collaboration. For instance, in December 2021, NxtGen Datacenter & Cloud Technologies Pvt. Ltd., a data center and cloud services provider, in partnership with Katonic Pty. Ltd., an AI startup, launched MLOps as a Service offering to strengthen, simplify, and accelerate mainstream adoption of AI by digital native startups, enterprises, educational institutions, research institutes, and government entities.
The on-premises segment held the largest revenue share of over 58% in 2022. This is attributed to the numerous benefits offered by the on-premises deployment, such as high data safety and security. Enterprises prefer the On-premise model, as keeping data and models within a company's data center ensures they are secure and protected from external threats. In addition, with on-premise infrastructure, enterprises have greater control over their machinelearning pipeline, which can improve efficiency and reduce costs. For instance, in June 2022, Domino Data Lab, Inc. announced the launch of its nexus hybrid enterprise MLOps architecture. The architecture will let enterprises rapidly control, scale, and stage data science work across various compute clusters, on-premises, in different regions, and across clouds.
云段预计预见有积极ant growth in the forecast period. Disaster management via cloud-based backup systems, automatic software upgrades, enhanced efficiency, and flexibility are key benefits of increasing the implementation of cloud-based delivery models for deep-learning software services and solutions. By leveraging cloud infrastructure, organizations can avoid the upfront costs of building and maintaining their data centers. It provides the flexibility to experiment with different machinelearning models and algorithms without investing in expensive hardware orsoftware.
The BFSI segment held the largest revenue share of over 19% in 2022. The adoption of machine learning by the financial sector has been on the rise, primarily for solving specific challenges, such as yield management, predictive maintenance of legacy systems, and fraud detection. Financial institutions can automate integrating ML/AI models into applications using MLOps without a flaw at digital channels or touchpoints where clients interact with banks to enhance their overall experiences. Furthermore, it allows financial institutions to train the models with their statistics and information. As a result, they are no longer required to outsource their stored figures and facts to third-party sellers, who cannot frequently deliver enterprise-grade data on a big scale.
The government segment is predicted to foresee significant growth in the forecast period. Furthermore, the healthcare & life sciences segment held a significant global revenue share in 2022. The deployment of AI tools and processes in the healthcare industry for faster and better outcomes, especially for disease diagnosis, is boosting the demand and growth of the operationalization of machine learning. This technology in healthcare can be employed for better diagnosis using various tools and software to analyze images and medical reports. For instance, a machine learning algorithm can predict a disease based on training in similar cases and achieve better pattern recognition. This field of automation can improve healthcare services' overall cost efficiency by using technology instead of manual processes.
The large enterprises segment led the market in 2022, accounting for over 75% share of the global revenue owing to the growing implementation of Al technology and data science across large enterprises to present quantitative insights into their operations. Large enterprises can benefit from MLOps by improving the scalability and reliability of their machine learning models, reducing the time and resources required to deploy and manage these models, and enabling faster decision-making and innovation. Furthermore, MLOps can help large enterprises scale their ML models by automating tasks like model training, testing, and deployment. This can help organizations handle large volumes of data and rapidly changing business requirements.
The SMEs segment is estimated to grow significantly over the forecast period. SMEs are increasingly recognizing the value of adopting MLOps to drive growth and gain a competitive edge in their respective industries. The adoption of MLOps can further enhance the growth potential of SMEs as it enables them to leverage the power of machine learning to gain insights into customer behavior, optimize marketing campaigns, improve product development, and enhance operational efficiency. With the help of MLOps, SMEs can access powerful predictive models that can drive growth and help them stay competitive in the marketplace. For instance, in June 2022, OmniML, a startup AI company, announced the launch of Omnimizer. The new platform simplifies and boosts MLOps by bridging the gap between edge hardware and ML models.
North America dominated the market in 2022, accounting for over 41% share of the global revenue owing to Al's intense research and development competencies in the developed economies, research institutes, and various leading Al companies based in this region. The increasing investment in advanced technologies to enhance customer experience and business operations is anticipated to provide lucrative growth opportunities in North America. Furthermore, the region has had strong R&D capabilities in Al and invested heavily in Al-related technologies over the past few years. Also, they have enforced policies to support the development of the field. For instance, in December 2022, Allegro AI, an open-source company, stated that it had reached a landmark year of growth, setting new milestones in user base, revenue, and collaborations.
The company also announced opening its first office in the U.S. to meet the high demand for its platform. Asia Pacific is anticipated to register the fastest CAGR over the forecast period. The region has a rapidly growing cloud computing market, with major players, such as Amazon Web Services, Inc., Microsoft, and Google, expanding their presence there. Cloud-based MLOps solutions are expected to see significant adoption in the region as organizations leverage cloud infrastructure's scalability and flexibility. Furthermore, governments and businesses across the APAC region are investing heavily in AI and machine learning. This investment drives demand for MLOps solutions that can help organizations develop and deploy machine learning models at a scale.
Prominent firms have used product launches and developments, followed by expansions, mergers & acquisitions, contracts, agreements, partnerships, and collaborations as their primary business strategies to increase their market share. The companies have used various techniques to enhance market penetration and boost their position in the competitive industry. For instance, in April 2023, Canonical Ltd., a computer software company, announced the launch of Charmed Kubeflow, its machine learning operations toolkit, on Amazon Web Services Inc.’s cloud marketplace. The new launch is planned for businesses looking to kickstart their ML and AI initiatives. Some of the prominent players in the global MLOps market include:
IBM Corp.
Microsoft
Google LLC
Amazon Web Services, Inc.
Hewlett Packard Enterprise Development LP
Neptune Labs, Inc.
DataRobot, Inc.
Dataiku.
ALTERYX, Inc.
GAVS Technologies N.A., Inc.
Report Attribute |
Details |
Market size value in 2023 |
USD 1.60 billion |
Revenue forecast in 2030 |
USD 16.61 billion |
Growth rate |
CAGR of 39.7% from 2023 to 2030 |
Base year for estimation |
2022 |
Historical data |
2017 - 2021 |
Forecast period |
2023 - 2030 |
Quantitative units |
Revenue in USD million/billion and CAGR from 2023 to 2030 |
Report coverage |
Revenue forecast, company ranking, competitive landscape, growth factors, and trends |
Segments covered |
Component, deployment, organization size, vertical, region |
Regional scope |
北美;欧洲;亚太地区;拉丁美洲; MEA |
Country scope |
U.S.; Canada; U.K.; Germany; France; China; Japan; India; South Korea; Australia; Brazil; Mexico; Kingdom of Saudi Arabia (KSA); UAE; South Africa |
Key companies profiled |
IBM Corp.; Microsoft; Google LLC; Amazon Web Services, Inc.; Hewlett Packard Enterprise Development LP; Neptune Labs, Inc.; DataRobot, Inc.; Dataiku.; ALTERYX, Inc.; GAVS Technologies N.A., Inc. |
Customization scope |
Free report customization (equivalent up to 8 analysts working days) with purchase. Addition or alteration to country, regional & segment scope. |
Pricing and purchase options |
Avail customized purchase options to meet your exact research needs.Explore purchase options |
This report forecasts revenue growth and provides an analysis of the latest trends in each of the sub-segments from 2017 to 2030. For this report, Grand View Research has segmented the global MLOps market report based on component, deployment, organization size, vertical, and region:
Component Outlook (Revenue, USD Billion, 2017 - 2030)
Platform
Service
Deployment Outlook (Revenue, USD Billion, 2017 - 2030)
Cloud
On-premises
Organization Size Outlook (Revenue, USD Billion, 2017 - 2030)
SMEs
Large Enterprises
Vertical Outlook (Revenue, USD Billion, 2017 - 2030)
BFSI
Healthcare & Life Sciences
Retail & E-Commerce
IT & Telecom
Energy & Utilities
Government & Public Sector
Media & Entertainment
Others
Regional Outlook (Revenue, USD Billion, 2017 - 2030)
North America
U.S.
Canada
Europe
Germany
U.K.
France
Asia Pacific
China
Japan
India
South Korea
Australia
拉丁美洲
Brazil
Mexico
Middle East and Africa (MEA)
Saudi Arabia
UAE
Kingdom of South Africa
b.The global MLOps market size was estimated at USD 1.19 billion in 2022 and is expected to reach USD 1.60 billion in 2023.
b.The global MLOps market is expected to grow at a compound annual growth rate of 39.7% from 2023 to 2030 to reach USD 16.61 billion by 2030.
b.North America dominated the MLOps market with a share of 42.4% in 2022. The MLOps market is expected to continue to increase in the coming years as organizations across various industries in North America are leveraging machine learning to gain a competitive advantage and improve their business operations.
b.Some key players operating in the MLOps market include IBM Corporation; Microsoft; Google LLC; Amazon Web Services, Inc.; Hewlett Packard Enterprise Development LP; Neptune Labs, Inc.; DataRobot, Inc.; Dataiku.; ALTERYX, INC.; GAVS Technologies N.A., Inc.
b.Key factors that are driving the MLOps market growth include quicker AI implementation and increased productivity and the increasing demand for AI and ML applications
"The quality of research they have done for us has been excellent."