Report Content
Chapter 1 Methodology & Scope
1.1 Research design
1.1.1 Research approach
1.1.2 Data collection methods
1.2 Base estimates and calculations
1.2.1 Base year calculation
1.2.2 Key trends for market estimates
1.3 Forecast model
1.4 Primary research & validation
1.4.1 Primary sources
1.4.2 Data mining sources
1.5 Market definitions
Chapter 2 Executive Summary
2.1 Industry 3600 synopsis, 2021 - 2034
Chapter 3 Industry Insights
3.1 Industry ecosystem analysis
3.2 Supplier landscape
3.2.1 Cloud infrastructure providers
3.2.2 Foundational model developers
3.2.3 Platform providers
3.2.4 Software providers
3.3 Profit margin analysis
3.4 Trump administration tariffs
3.4.1 Impact on trade
3.4.1.1 Trade volume disruptions
3.4.1.2 Retaliatory measures by other countries
3.4.2 Impact on the industry
3.4.2.1 Price volatility in key materials
3.4.2.2 Supply chain restructuring
3.4.2.3 Production cost implications
3.4.3 Key companies impacted
3.4.4 Strategic industry responses
3.4.4.1 Supply chain reconfiguration
3.4.4.2 Pricing and product strategies
3.4.5 Outlook and future considerations
3.5 Technology & innovation landscape
3.6 Patent analysis
3.7 Use cases
3.8 Key news & initiatives
3.9 Regulatory landscape
3.10 Impact forces
3.10.1 Growth drivers
3.10.1.1 Rising demand for content automation
3.10.1.2 Advancements in AI and computing infrastructure
3.10.1.3 Enterprise digital transformation initiatives
3.10.1.4 Growth in multimodal applications
3.10.2 Industry pitfalls & challenges
3.10.2.1 Risk of misinformation and ethical misuse
3.10.2.2 Data quality and bias
3.11 Growth potential analysis
3.12 Porter’s analysis
3.13 PESTEL analysis
Chapter 4 Competitive Landscape, 2024
4.1 Introduction
4.2 Company market share analysis
4.3 Competitive positioning matrix
4.4 Strategic outlook matrix
Chapter 5 Market Estimates & Forecast, By Component, 2021 - 2034 ($Bn)
5.1 Key trends
5.2 Solution
5.3 Service
Chapter 6 Market Estimates & Forecast, By Deployment Mode, 2021 - 2034 ($Bn)
6.1 Key trends
6.2 Cloud
6.3 On-premises
Chapter 7 Market Estimates & Forecast, By Technology, 2021 - 2034 ($Bn)
7.1 Key trends
7.2 Generative adversarial networks (GANs)
7.3 Transformers model
7.4 Variational auto-encoders
7.5 Diffusion models
7.6 Others
Chapter 8 Market Estimates & Forecast, By End Use, 2021 - 2034 ($Bn)
8.1 Key trends
8.2 Healthcare
8.3 Retail and e-commerce
8.4 Manufacturing
8.5 BFSI
8.6 Media and entertainment
8.7 Others
Chapter 9 Market Estimates & Forecast, By Region, 2021 - 2034 ($Bn)
9.1 Key trends
9.2 North America
9.2.1 U.S.
9.2.2 Canada
9.3 Europe
9.3.1 UK
9.3.2 Germany
9.3.3 France
9.3.4 Italy
9.3.5 Spain
9.3.6 Russia
9.3.7 Nordics
9.4 Asia Pacific
9.4.1 China
9.4.2 India
9.4.3 Japan
9.4.4 South Korea
9.4.5 ANZ
9.4.6 Southeast Asia
9.5 Latin America
9.5.1 Brazil
9.5.2 Mexico
9.5.3 Argentina
9.6 MEA
9.6.1 UAE
9.6.2 Saudi Arabia
9.6.3 South Africa
Chapter 10 Company Profiles
10.1 Adobe
10.2 Amazon Web Services (AWS)
10.3 Apple
10.4 Autodesk
10.5 Baidu
10.6 DeepMind
10.7 Genie AI
10.8 Google
10.9 IBM
10.10 Intel
10.11 Meta
10.12 Microsoft
10.13 MOSTLY AI
10.14 NVIDIA
10.15 OpenAI
10.16 Oracle
10.17 Salesforce
10.18 Siemens
10.19 Synthesia
10.20 Uber AI
10.21 Unity Technologies
Generative AI Market Size
The global generative AI market size was valued at USD 21.3 Billion in 2024 and is projected to grow at a CAGR of 24.3% between 2025 and 2034. The rising demand for automated content generation in various industry sectors, including media, marketing, and e-commerce, presents a significant opportunity in the market. The use of generative AI has enabled businesses to create personalized text, images, audio, and video on a large scale while reducing the time and cost to produce the same while keeping the quality. This outcry is especially high in fields heavily dependent on digital interaction and prompt content distribution.
For instance, in May 2025, Amazon announced the rollout of Enhance My Listing (EML), a generative AI-powered tool to help sellers automatically update and optimise their existing product listings. This is a major milestone towards Amazon’s major attempt at simplifying listing management, increasing customer engagement and driving better sales performance for its selling partners.
Advancements in deep learning algorithms, transformer architectures, and the availability of big cloud resource computing have expedited the advancement of generative AI. Such AI models as GPT, DALL-E, or Stable Diffusion are increasingly becoming more efficient and powerful, which is propelling, entrepreneurs to engage AI technology for creative and analytical work. The improved processing abilities allow real-time generation as well as improved integration over enterprise workflows.
Generative AI is adopted by organizations across industries as part of more general digital transformation trends. Generative AI increases effectiveness through the automated performance of customer service, code creation, report creation, and product design. Such applications enhance efficiency, facilitate innovation and cut down operational overhead thus, generative AI is a critical technology investment for aspirational organizations.
For instance, in May 2025, IBM announced new hybrid technologies for scaling enterprise AI aimed at allowing companies to develop AI agents with their enterprise data. IBM predicts that, by 2028, there will be over 1 billion apps, while putting pressure on businesses to scale in ever increasingly fragmented environments. Integration and data readiness are a must for this.
Generative AI Market Trends
Trump Administration Tariffs
Generative AI Market Analysis
Based on components, the market is divided into solutions and services. In 2024, the solution segment dominated the market accounting for around 66% share and is expected to grow at a CAGR of over 24% during the forecast period.
Based on deployment mode, the generative AI market is segmented into cloud and on-premises. In 2024, the cloud segment dominates the market with 57% of market share in 2024.
Based on technology, the generative AI market is segmented into generative adversarial networks (GANS), transformer models, variational auto-encoders, diffusion models and others, with the transformer model’s category expected to dominate due to their extensive use of AI technologies across complex operations, which increases the need for structured oversight.
In 2024, the U.S. in North America dominated the generative AI market with around 70% market share in North America and generated around USD 4.7 billion in revenue.
The generative AI market in the UK is expected to experience significant and promising growth from 2025 to 2034.
The generative AI market in the China is expected to experience significant and promising growth from 2025 to 2034.
Generative AI Market Share
Generative AI Market Companies
Major players operating in the generative AI industry are:
OpenAI has a mission to broaden the horizons of large language models such as GPT, where commercially it is driven towards ChatGPT and API access through its platform and partnerships, including, notably, with Microsoft. It seeks a balance between strong AI capabilities, alignment and safety research. OpenAI find a continuous means of monetization in premium subscription, enterprise licenses, and developer tools while investing in reinforcement learning, multimodal models and developing long-term AGI (Artificial General Intelligence).
Google is the pioneer of foundational AI models such as Gemini that are driven by DeepMind and Google Research. Its strategy is to embed generative AI across such core products as Search, Workspace (Docs, Gmail), and Android. Google Cloud brings in Vertex AI for enterprise customers. The company is working on multimodal AI, responsible AI principles and expanding its ecosystem using open models and partnering up with academic and industry players.
Generative AI Industry News
The generative AI market research report includes in-depth coverage of the industry with estimates & forecasts in terms of revenue ($ Mn/Bn) from 2021 to 2034, for the following segments:
Market, By Component
Market, By Deployment Mode
Market, By Technology
Market, By End Use
The above information is provided for the following regions and countries: