|
|
市場調査レポート
商品コード
1613944
エネルギー分野におけるジェネレーティブAI市場- 世界の産業規模、シェア、動向、機会、予測、コンポーネント別、用途別、最終用途分野別、地域別、競合別、2019年~2029年Generative AI in Energy Market - Global Industry Size, Share, Trends, Opportunity, and Forecast, Segmented By Component, By Application, By End-Use Vertical, By Region & Competition, 2019-2029F |
||||||
カスタマイズ可能
|
|||||||
| エネルギー分野におけるジェネレーティブAI市場- 世界の産業規模、シェア、動向、機会、予測、コンポーネント別、用途別、最終用途分野別、地域別、競合別、2019年~2029年 |
|
出版日: 2024年12月13日
発行: TechSci Research
ページ情報: 英文 185 Pages
納期: 2~3営業日
|
全表示
- 概要
- 目次
エネルギー分野におけるジェネレーティブAIの世界市場規模は2023年に6億5,580万米ドルで、2029年までのCAGRは24.09%で、2029年には23億9,381万米ドルに達すると予測されています。
| 市場概要 | |
|---|---|
| 予測期間 | 2025-2029 |
| 市場規模:2023年 | 6億5,580万米ドル |
| 市場規模:2029年 | 23億9,381万米ドル |
| CAGR:2024年-2029年 | 24.09% |
| 急成長セグメント | 再生可能エネルギー管理 |
| 最大市場 | 北米 |
エネルギー分野におけるジェネレーティブAIとは、データ駆動型の洞察に基づいてソリューションを作成、シミュレート、最適化できる高度な機械学習モデルの応用を指します。この技術は、Generative Adversarial Networksや大規模言語モデルなどのアルゴリズムを活用して、合成データを生成し、予測モデルを開発し、複雑な意思決定プロセスを自動化します。エネルギー業界では、エネルギー生産と配給の最適化から、機器の故障予測、エネルギー消費の効率的な管理まで、さまざまなオペレーションの側面を強化するためにジェネレーティブAIが使用されています。ジェネレーティブAIは、膨大な量のデータを分析することで、さまざまなシナリオをモデル化し、予測の精度を向上させ、エネルギー管理のための革新的なソリューションを提案することができます。エネルギー分野におけるジェネレーティブAI市場は、いくつかの重要な要因によって大幅な成長が見込まれています。エネルギー分野におけるスマートグリッドの導入とデジタル化の進展により、膨大な量のデータが生成されており、生成AIはこれを効果的に活用して洞察とイノベーションを推進することができます。より持続可能で効率的なエネルギー・ソリューションの必要性により、エネルギー企業は資源利用を最適化し、環境への影響を低減できる先進技術を求めています。規制による圧力と脱炭素化の推進により、運用パフォーマンスを向上させ、グリーンエネルギーへの取り組みをサポートするテクノロジーへの投資が加速しています。予測保守とリアルタイムの運用洞察を提供するジェネレーティブAIの能力は、ダウンタイムの削減と重要インフラの寿命延長に役立つため、その採用をさらに後押しします。エネルギー企業がデジタルトランスフォーメーションを受け入れ、競争力を維持する方法を模索し続けるにつれて、堅牢な分析と自動化を提供するジェネレーティブAIソリューションの需要が高まり、大きな成長が見込まれる急成長市場につながります。
主な市場促進要因
データ主導の洞察による業務効率の向上
予測分析とシナリオ・モデリングの進歩
自動化されたプロセスによる意思決定の強化
コスト削減と投資の最適化
主な市場課題
レガシーシステムとの統合
高い導入コストとメンテナンスコスト
データプライバシーとセキュリティへの懸念
主な市場動向
再生可能エネルギー発電と生成AIの統合
AI主導のエネルギー管理システムの開発
高度なシナリオ分析による意思決定の強化
目次
第1章 ソリューションの概要
- 市場の定義
- 市場の範囲
- 対象市場
- 調査対象年
- 主要市場セグメンテーション
第2章 調査手法
第3章 エグゼクティブサマリー
第4章 顧客の声
第5章 世界のエネルギー分野におけるジェネレーティブAI市場概要
第6章 世界のエネルギー分野におけるジェネレーティブAI市場展望
- 市場規模・予測
- 金額別
- 市場シェア・予測
- コンポーネント別(サービス、ソリューション)
- 用途別(需要予測、ロボット工学、再生可能エネルギー管理、安全とセキュリティ、その他)
- 最終用途別(エネルギー生成、エネルギートランスミッション、エネルギー分配、公共事業、その他)
- 地域別(北米、欧州、南米、中東・アフリカ、アジア太平洋)
- 企業別(2023年)
- 市場マップ
第7章 北米のエネルギー分野におけるジェネレーティブAI市場展望
- 市場規模・予測
- 金額別
- 市場シェア・予測
- コンポーネント別
- 用途別
- 最終用途別
- 国別
- 北米:国別分析
- 米国
- カナダ
- メキシコ
第8章 欧州のエネルギー分野におけるジェネレーティブAI市場展望
- 市場規模・予測
- 金額別
- 市場シェア・予測
- コンポーネント別
- 用途別
- 最終用途別
- 国別
- 欧州:国別分析
- ドイツ
- フランス
- 英国
- イタリア
- スペイン
- ベルギー
第9章 アジア太平洋のエネルギー分野におけるジェネレーティブAI市場展望
- 市場規模・予測
- 金額別
- 市場シェア・予測
- コンポーネント別
- 用途別
- 最終用途別
- 国別
- アジア太平洋:国別分析
- 中国
- インド
- 日本
- 韓国
- オーストラリア
- インドネシア
- ベトナム
第10章 南米のエネルギー分野におけるジェネレーティブAI市場展望
- 市場規模・予測
- 金額別
- 市場シェア・予測
- コンポーネント別
- 用途別
- 最終用途別
- 国別
- 南米:国別分析
- ブラジル
- コロンビア
- アルゼンチン
- チリ
第11章 中東・アフリカのエネルギー分野におけるジェネレーティブAI市場展望
- 市場規模・予測
- 金額別
- 市場シェア・予測
- コンポーネント別
- 用途別
- 最終用途別
- 国別
- 中東・アフリカ:国別分析
- サウジアラビア
- アラブ首長国連邦
- 南アフリカ
- トルコ
- イスラエル
第12章 市場力学
- 促進要因
- 課題
第13章 市場動向と発展
第14章 企業プロファイル
- Google LLC
- Microsoft Corporation
- IBM Corporation
- Amazon.com, Inc.
- SAP SE
- Siemens AG
- General Electric Company
- Schneider Electric SE
- Oracle Corporation
- Honeywell International Inc.
- C3.ai, Inc.
- Hitachi, Ltd.
第15章 戦略的提言
第16章 調査会社について・免責事項
The global generative AI in energy market was valued at USD 655.80 million in 2023 and is expected to reach USD 2393.81 million by 2029 with a CAGR of 24.09% through 2029.
| Market Overview | |
|---|---|
| Forecast Period | 2025-2029 |
| Market Size 2023 | USD 655.80 Million |
| Market Size 2029 | USD 2393.81 Million |
| CAGR 2024-2029 | 24.09% |
| Fastest Growing Segment | Renewables Management |
| Largest Market | North America |
Generative AI in the energy sector refers to the application of advanced machine learning models that can create, simulate, and optimize solutions based on data-driven insights. This technology leverages algorithms such as Generative Adversarial Networks and large language models to generate synthetic data, develop predictive models, and automate complex decision-making processes. In the energy industry, generative AI is used to enhance various aspects of operations, from optimizing energy production and distribution to predicting equipment failures and managing energy consumption more efficiently. By analyzing vast amounts of data, generative AI can model different scenarios, improve the accuracy of forecasts, and propose innovative solutions for energy management, thus significantly improving operational efficiency and reducing costs. The market for generative AI in energy is poised for substantial growth due to several key factors. The increasing adoption of smart grids and digitalization in the energy sector is generating massive amounts of data, which generative AI can effectively utilize to drive insights and innovations. The need for more sustainable and efficient energy solutions is pushing energy companies to seek advanced technologies that can optimize resource utilization and reduce environmental impact. Regulatory pressures and the push towards decarbonization are accelerating investments in technologies that can enhance operational performance and support green energy initiatives. The ability of generative AI to offer predictive maintenance and real-time operational insights further drives its adoption, as it helps in reducing downtime and extending the lifespan of critical infrastructure. As energy companies continue to embrace digital transformation and seek ways to stay competitive, the demand for generative AI solutions that offer robust analytics and automation will rise, leading to a burgeoning market with significant growth potential.
Key Market Drivers
Enhanced Operational Efficiency Through Data-Driven Insights
Generative artificial intelligence is transforming operational efficiency in the energy sector by leveraging vast amounts of data to deliver actionable insights. With the proliferation of smart grids and digital sensors, energy companies are inundated with real-time data on everything from energy consumption patterns to equipment performance. Generative AI models can process this data to identify inefficiencies, predict potential issues, and optimize operations. For instance, predictive maintenance powered by generative algorithms can forecast equipment failures before they occur, thereby reducing downtime and maintenance costs. This capability allows energy providers to streamline their operations, minimize disruptions, and ensure a more reliable energy supply. By continuously analyzing and generating new insights from historical and real-time data, generative artificial intelligence enables energy companies to refine their processes, enhance system performance, and ultimately drive significant cost savings.
Advancements in Predictive Analytics and Scenario Modeling
Predictive analytics and scenario modeling are crucial for strategic decision-making in the energy sector, and generative artificial intelligence is significantly advancing these capabilities. Traditional predictive models often rely on static data and historical trends, which can limit their effectiveness in rapidly changing environments. Generative artificial intelligence, however, can create dynamic simulations and generate synthetic data to explore various scenarios and outcomes. This allows energy companies to anticipate future conditions, such as fluctuations in energy demand or the impact of integrating renewable sources into the grid. By providing a more nuanced understanding of potential future scenarios, generative artificial intelligence supports better planning and more informed strategic decisions. This enhanced predictive capability is particularly valuable in an industry where accurate forecasting and risk management are essential for maintaining operational stability and meeting regulatory requirements. In addition, The International Energy Agency (IEA) projects that by 2030, predictive AI-powered smart grids will enhance electricity grid efficiency by 20-30%. This improvement is mainly attributed to advancements in load forecasting, predictive maintenance, and grid optimization through AI-driven scenario modeling.
Enhanced Decision-Making Through Automated Processes
Automated decision-making is another key driver for the adoption of generative AI in the energy sector. Traditional decision-making processes often involve significant human input and are susceptible to biases and errors. Generative AI, on the other hand, can automate complex decision-making processes by generating data-driven recommendations and optimizing workflows. For example, AI algorithms can automatically adjust energy distribution based on real-time demand, manage energy trading strategies, and even optimize resource allocation across different projects. This automation not only accelerates decision-making but also enhances accuracy and consistency, leading to more effective management of energy resources. By reducing the reliance on manual intervention and human judgment, generative artificial intelligence enables energy companies to operate more efficiently and adapt more swiftly to changing conditions.
Cost Reduction and Investment Optimization
Cost reduction and investment optimization are primary concerns for energy companies, and generative artificial intelligence offers substantial benefits in these areas. The implementation of generative AI technologies can lead to significant cost savings through improved operational efficiencies, reduced maintenance expenses, and more effective resource management. For instance, by leveraging generative algorithms for predictive maintenance and real-time monitoring, companies can lower maintenance costs and extend the lifespan of equipment. Generative artificial intelligence can optimize investment decisions by analyzing potential returns on different projects and identifying the most cost-effective strategies. This includes evaluating the feasibility of new energy infrastructure projects, assessing the financial impact of integrating renewable sources, and optimizing supply chain management. As energy companies navigate a landscape of fluctuating energy prices and increasing operational costs, generative artificial intelligence provides a valuable tool for making informed investment decisions and maximizing financial performance.
Key Market Challenges
Integration with Legacy Systems
The energy sector often relies on a variety of legacy systems and technologies that may not be easily compatible with modern generative AI solutions. Integrating these advanced AI systems with existing infrastructure can be a complex and costly undertaking. Legacy systems may use outdated data formats, communication protocols, and software platforms, creating interoperability issues when attempting to implement generative artificial intelligence. This challenge is compounded by the need to ensure that new AI technologies do not disrupt ongoing operations or compromise system stability. Energy companies must navigate the technical difficulties of integrating AI with legacy systems while minimizing operational disruptions and maintaining service continuity. The process often involves significant investment in system upgrades, custom interfaces, and extensive testing to ensure compatibility. There may be resistance from employees accustomed to traditional systems and processes, further complicating the integration effort. Addressing these challenges requires a well-planned strategy that includes phased implementation, comprehensive training, and collaboration between IT and operational teams to achieve a seamless integration of generative artificial intelligence with existing systems.
High Implementation and Maintenance Costs
The deployment and maintenance of generative AI solutions in the energy sector come with substantial costs. These costs encompass several aspects, including the acquisition of advanced hardware and software, the development and training of AI models, and ongoing maintenance and updates. Implementing generative artificial intelligence requires specialized infrastructure, such as high-performance computing resources and data storage systems, which can be expensive. Developing and training AI models demands significant investment in terms of time and resources, often requiring the expertise of data scientists and AI specialists. The complexity of generative models necessitates continuous monitoring and fine-tuning to ensure optimal performance, adding to the ongoing maintenance costs. Energy companies must also consider the costs associated with integrating AI solutions into their existing operations and managing potential disruptions during the implementation phase. These financial considerations can be a significant barrier to adopting generative artificial intelligence, particularly for smaller or resource-constrained organizations. To address this challenge, energy companies must carefully evaluate the return on investment and explore cost-effective solutions, such as leveraging cloud-based AI services or partnering with technology providers to share the financial burden.
Data Privacy and Security Concerns
Generative artificial intelligence relies on vast amounts of data to train models and generate actionable insights. In the energy sector, this data can include sensitive operational information, financial details, and personal data related to consumers. One of the primary challenges facing the deployment of generative artificial intelligence in energy market is ensuring data privacy and security. The integration of advanced AI systems increases the risk of data breaches and unauthorized access to confidential information. As energy companies collect and analyze large datasets from various sources, including smart meters, grid sensors, and customer interactions, safeguarding this data becomes critical. The potential for data misuse or exposure requires robust cybersecurity measures and stringent compliance with data protection regulations. The complexity of generative artificial intelligence models makes them potential targets for cyber-attacks, necessitating continuous monitoring and security updates to protect against evolving threats. Energy companies must implement comprehensive data governance strategies, including encryption, access controls, and regular security audits, to mitigate these risks and ensure the integrity of their data assets. Balancing the need for data-driven insights with the imperative to protect sensitive information remains a significant challenge as the use of generative AI expands in the energy sector.
Key Market Trends
Integration of Generative AI with Renewable Energy Sources
The integration of generative artificial intelligence with renewable energy sources is becoming a prominent trend in the energy sector. As the industry shifts towards more sustainable energy solutions, generative artificial intelligence is playing a crucial role in optimizing the performance and integration of renewable energy technologies such as solar and wind power. By leveraging AI-driven models, energy companies can better forecast renewable energy production, balance supply with demand, and manage the variability associated with these sources. For instance, generative artificial intelligence can create simulations to predict energy output based on weather patterns and other environmental factors, improving the accuracy of energy forecasts. This capability allows for more efficient grid management and storage solutions, ensuring a stable and reliable energy supply. Generative AI can help in the design and optimization of renewable energy projects by analyzing large datasets to identify the most suitable locations and configurations for energy generation. As the demand for clean energy continues to grow, the application of generative artificial intelligence in this area is expected to expand, driving further innovation and efficiency in renewable energy systems.
Development of AI-Driven Energy Management Systems
The development of AI-driven energy management systems is emerging as a key trend in the energy sector, facilitated by generative artificial intelligence. These advanced systems utilize AI algorithms to optimize energy consumption and production across various applications, including industrial operations, commercial buildings, and residential environments. Generative AI enhances these systems by analyzing complex datasets to provide real-time insights and recommendations for energy usage. This includes optimizing heating, ventilation, and air conditioning systems, managing energy storage solutions, and integrating with smart grid technologies to balance supply and demand more effectively. AI-driven energy management systems contribute to greater energy efficiency, cost savings, and sustainability by automating and fine-tuning energy usage based on predictive analytics and real-time data. As energy management becomes increasingly critical in the context of rising energy costs and environmental concerns, the role of generative artificial intelligence in developing and refining these systems is expected to grow, driving innovation and efficiency in energy consumption.
Enhanced Decision-Making Through Advanced Scenario Analysis
Enhanced decision-making through advanced scenario analysis is another prominent trend driven by generative AI in the energy sector. Generative AI enables energy companies to create sophisticated models that simulate various operational and market scenarios, providing valuable insights for strategic planning and risk management. By generating and analyzing a wide range of potential scenarios, including fluctuations in energy prices, changes in regulatory environments, and shifts in demand patterns, AI-driven models help companies make more informed and strategic decisions. This capability is crucial for navigating the uncertainties and complexities inherent in the energy sector, such as transitioning to new technologies or adapting to evolving market conditions. Advanced scenario analysis facilitated by generative artificial intelligence supports better forecasting, strategic alignment, and risk mitigation, enabling energy companies to optimize their operations and investment strategies. As the energy sector faces increasing pressures from market volatility and regulatory changes, the use of generative artificial intelligence for scenario analysis is becoming a key trend in enhancing decision-making capabilities.
Segmental Insights
Component Insights
Solution segment emerged as the dominant component in the generative AI in energy market in 2023 and is anticipated to retain its leading position throughout the forecast period. This segment includes a wide range of advanced software solutions that utilize generative artificial intelligence to enhance various aspects of energy operations, such as predictive maintenance, energy management, and scenario modeling. The primary drivers behind the dominance of the solution segment are its ability to deliver tangible benefits, including improved operational efficiency, cost savings, and enhanced decision-making capabilities. Generative AI solutions, such as advanced analytics platforms and simulation tools, provide energy companies with critical insights by analyzing vast amounts of data to optimize performance and anticipate issues before they arise. These solutions are crucial for managing complex energy systems, integrating renewable energy sources, and adapting to dynamic market conditions. The increasing complexity of energy management and the growing demand for sophisticated analytics are fueling the strong demand for generative AI solutions. The rapid technological advancements and the proliferation of digital transformation initiatives in the energy sector further bolster the prominence of the solution segment. As energy companies seek to leverage the full potential of generative artificial intelligence to gain a competitive edge, the focus remains on deploying robust AI-driven solutions that offer actionable insights and automation capabilities. Consequently, the solution segment is expected to maintain its dominance in the generative AI in energy market, driving continued growth and innovation in the sector.
Regional Insights
North America dominated the generative AI in energy market in 2023 and is expected to sustain its leading position throughout the forecast period. This region's dominance is attributed to several key factors, including its advanced technological infrastructure, high level of investment in research and development, and strong presence of major energy companies and technology firms. North America, particularly the United States, has been at the forefront of integrating generative AI into various sectors, including energy, driven by a robust ecosystem of innovation and a favorable regulatory environment. The region's focus on enhancing operational efficiency, optimizing energy management, and supporting sustainable energy transitions has significantly contributed to the adoption of generative AI technologies. The high level of investment in smart grid technologies and digital transformation initiatives further reinforces North America's leadership in this market. The region's established technological infrastructure and the presence of key industry players provide a solid foundation for the continued growth and deployment of generative AI solutions in the energy sector. As North American companies continue to leverage advanced AI capabilities to address complex energy challenges and drive operational improvements, the region is set to maintain its dominance in the generative AI in energy market throughout the forecast period.
Key Market Players
- Google LLC
- Microsoft Corporation
- IBM Corporation
- Amazon.com, Inc.
- SAP SE
- Siemens AG
- General Electric Company
- Schneider Electric SE
- Oracle Corporation
- Honeywell International Inc.
- C3.ai, Inc.
- Hitachi, Ltd.
Report Scope:
In this report, the Global Generative AI in Energy Market has been segmented into the following categories, in addition to the industry trends which have also been detailed below:
Generative AI in Energy Market, By Component:
- Services
- Solution
Generative AI in Energy Market, By Application:
- Demand Forecasting
- Robotics
- Renewables Management
- Safety & Security
- Others
Generative AI in Energy Market, By End-Use Vertical:
- Energy Generation
- Energy Transmission
- Energy Distribution
- Utilities
- Others
Generative AI in Energy Market, By Region:
- North America
- United States
- Canada
- Mexico
- Europe
- Germany
- France
- United Kingdom
- Italy
- Spain
- Belgium
- Asia Pacific
- China
- India
- Japan
- South Korea
- Australia
- Indonesia
- Vietnam
- South America
- Brazil
- Colombia
- Argentina
- Chile
- Middle East & Africa
- Saudi Arabia
- UAE
- South Africa
- Turkey
- Israel
Competitive Landscape
Company Profiles: Detailed analysis of the major companies present in the Global Generative AI in Energy Market.
Available Customizations:
Global Generative AI in Energy Market report with the given market data, TechSci Research offers customizations according to a company's specific needs. The following customization options are available for the report:
Company Information
- Detailed analysis and profiling of additional market players (up to five).
Table of Contents
1. Solution Overview
- 1.1. Market Definition
- 1.2. Scope of the Market
- 1.2.1. Markets Covered
- 1.2.2. Years Considered for Study
- 1.2.3. Key Market Segmentations
2. Research Methodology
- 2.1. Objective of the Study
- 2.2. Baseline Methodology
- 2.3. Formulation of the Scope
- 2.4. Assumptions and Limitations
- 2.5. Sources of Research
- 2.5.1. Secondary Research
- 2.5.2. Primary Research
- 2.6. Approach for the Market Study
- 2.6.1. The Bottom-Up Approach
- 2.6.2. The Top-Down Approach
- 2.7. Methodology Followed for Calculation of Market Size & Market Shares
- 2.8. Forecasting Methodology
- 2.8.1. Data Triangulation & Validation
3. Executive Summary
4. Voice of Customer
5. Global Generative AI in Energy Market Overview
6. Global Generative AI in Energy Market Outlook
- 6.1. Market Size & Forecast
- 6.1.1. By Value
- 6.2. Market Share & Forecast
- 6.2.1. By Component (Services, Solution)
- 6.2.2. By Application (Demand Forecasting, Robotics, Renewables Management, Safety & Security, Others)
- 6.2.3. By End-Use Vertical (Energy Generation, Energy Transmission, Energy Distribution, Utilities, Others)
- 6.2.4. By Region (North America, Europe, South America, Middle East & Africa, Asia Pacific)
- 6.3. By Company (2023)
- 6.4. Market Map
7. North America Generative AI in Energy Market Outlook
- 7.1. Market Size & Forecast
- 7.1.1. By Value
- 7.2. Market Share & Forecast
- 7.2.1. By Component
- 7.2.2. By Application
- 7.2.3. By End-Use Vertical
- 7.2.4. By Country
- 7.3. North America: Country Analysis
- 7.3.1. United States Generative AI in Energy Market Outlook
- 7.3.1.1. Market Size & Forecast
- 7.3.1.1.1. By Value
- 7.3.1.2. Market Share & Forecast
- 7.3.1.2.1. By Component
- 7.3.1.2.2. By Application
- 7.3.1.2.3. By End-Use Vertical
- 7.3.1.1. Market Size & Forecast
- 7.3.2. Canada Generative AI in Energy Market Outlook
- 7.3.2.1. Market Size & Forecast
- 7.3.2.1.1. By Value
- 7.3.2.2. Market Share & Forecast
- 7.3.2.2.1. By Component
- 7.3.2.2.2. By Application
- 7.3.2.2.3. By End-Use Vertical
- 7.3.2.1. Market Size & Forecast
- 7.3.3. Mexico Generative AI in Energy Market Outlook
- 7.3.3.1. Market Size & Forecast
- 7.3.3.1.1. By Value
- 7.3.3.2. Market Share & Forecast
- 7.3.3.2.1. By Component
- 7.3.3.2.2. By Application
- 7.3.3.2.3. By End-Use Vertical
- 7.3.3.1. Market Size & Forecast
- 7.3.1. United States Generative AI in Energy Market Outlook
8. Europe Generative AI in Energy Market Outlook
- 8.1. Market Size & Forecast
- 8.1.1. By Value
- 8.2. Market Share & Forecast
- 8.2.1. By Component
- 8.2.2. By Application
- 8.2.3. By End-Use Vertical
- 8.2.4. By Country
- 8.3. Europe: Country Analysis
- 8.3.1. Germany Generative AI in Energy Market Outlook
- 8.3.1.1. Market Size & Forecast
- 8.3.1.1.1. By Value
- 8.3.1.2. Market Share & Forecast
- 8.3.1.2.1. By Component
- 8.3.1.2.2. By Application
- 8.3.1.2.3. By End-Use Vertical
- 8.3.1.1. Market Size & Forecast
- 8.3.2. France Generative AI in Energy Market Outlook
- 8.3.2.1. Market Size & Forecast
- 8.3.2.1.1. By Value
- 8.3.2.2. Market Share & Forecast
- 8.3.2.2.1. By Component
- 8.3.2.2.2. By Application
- 8.3.2.2.3. By End-Use Vertical
- 8.3.2.1. Market Size & Forecast
- 8.3.3. United Kingdom Generative AI in Energy Market Outlook
- 8.3.3.1. Market Size & Forecast
- 8.3.3.1.1. By Value
- 8.3.3.2. Market Share & Forecast
- 8.3.3.2.1. By Component
- 8.3.3.2.2. By Application
- 8.3.3.2.3. By End-Use Vertical
- 8.3.3.1. Market Size & Forecast
- 8.3.4. Italy Generative AI in Energy Market Outlook
- 8.3.4.1. Market Size & Forecast
- 8.3.4.1.1. By Value
- 8.3.4.2. Market Share & Forecast
- 8.3.4.2.1. By Component
- 8.3.4.2.2. By Application
- 8.3.4.2.3. By End-Use Vertical
- 8.3.4.1. Market Size & Forecast
- 8.3.5. Spain Generative AI in Energy Market Outlook
- 8.3.5.1. Market Size & Forecast
- 8.3.5.1.1. By Value
- 8.3.5.2. Market Share & Forecast
- 8.3.5.2.1. By Component
- 8.3.5.2.2. By Application
- 8.3.5.2.3. By End-Use Vertical
- 8.3.5.1. Market Size & Forecast
- 8.3.6. Belgium Generative AI in Energy Market Outlook
- 8.3.6.1. Market Size & Forecast
- 8.3.6.1.1. By Value
- 8.3.6.2. Market Share & Forecast
- 8.3.6.2.1. By Component
- 8.3.6.2.2. By Application
- 8.3.6.2.3. By End-Use Vertical
- 8.3.6.1. Market Size & Forecast
- 8.3.1. Germany Generative AI in Energy Market Outlook
9. Asia Pacific Generative AI in Energy Market Outlook
- 9.1. Market Size & Forecast
- 9.1.1. By Value
- 9.2. Market Share & Forecast
- 9.2.1. By Component
- 9.2.2. By Application
- 9.2.3. By End-Use Vertical
- 9.2.4. By Country
- 9.3. Asia Pacific: Country Analysis
- 9.3.1. China Generative AI in Energy Market Outlook
- 9.3.1.1. Market Size & Forecast
- 9.3.1.1.1. By Value
- 9.3.1.2. Market Share & Forecast
- 9.3.1.2.1. By Component
- 9.3.1.2.2. By Application
- 9.3.1.2.3. By End-Use Vertical
- 9.3.1.1. Market Size & Forecast
- 9.3.2. India Generative AI in Energy Market Outlook
- 9.3.2.1. Market Size & Forecast
- 9.3.2.1.1. By Value
- 9.3.2.2. Market Share & Forecast
- 9.3.2.2.1. By Component
- 9.3.2.2.2. By Application
- 9.3.2.2.3. By End-Use Vertical
- 9.3.2.1. Market Size & Forecast
- 9.3.3. Japan Generative AI in Energy Market Outlook
- 9.3.3.1. Market Size & Forecast
- 9.3.3.1.1. By Value
- 9.3.3.2. Market Share & Forecast
- 9.3.3.2.1. By Component
- 9.3.3.2.2. By Application
- 9.3.3.2.3. By End-Use Vertical
- 9.3.3.1. Market Size & Forecast
- 9.3.4. South Korea Generative AI in Energy Market Outlook
- 9.3.4.1. Market Size & Forecast
- 9.3.4.1.1. By Value
- 9.3.4.2. Market Share & Forecast
- 9.3.4.2.1. By Component
- 9.3.4.2.2. By Application
- 9.3.4.2.3. By End-Use Vertical
- 9.3.4.1. Market Size & Forecast
- 9.3.5. Australia Generative AI in Energy Market Outlook
- 9.3.5.1. Market Size & Forecast
- 9.3.5.1.1. By Value
- 9.3.5.2. Market Share & Forecast
- 9.3.5.2.1. By Component
- 9.3.5.2.2. By Application
- 9.3.5.2.3. By End-Use Vertical
- 9.3.5.1. Market Size & Forecast
- 9.3.6. Indonesia Generative AI in Energy Market Outlook
- 9.3.6.1. Market Size & Forecast
- 9.3.6.1.1. By Value
- 9.3.6.2. Market Share & Forecast
- 9.3.6.2.1. By Component
- 9.3.6.2.2. By Application
- 9.3.6.2.3. By End-Use Vertical
- 9.3.6.1. Market Size & Forecast
- 9.3.7. Vietnam Generative AI in Energy Market Outlook
- 9.3.7.1. Market Size & Forecast
- 9.3.7.1.1. By Value
- 9.3.7.2. Market Share & Forecast
- 9.3.7.2.1. By Component
- 9.3.7.2.2. By Application
- 9.3.7.2.3. By End-Use Vertical
- 9.3.7.1. Market Size & Forecast
- 9.3.1. China Generative AI in Energy Market Outlook
10. South America Generative AI in Energy Market Outlook
- 10.1. Market Size & Forecast
- 10.1.1. By Value
- 10.2. Market Share & Forecast
- 10.2.1. By Component
- 10.2.2. By Application
- 10.2.3. By End-Use Vertical
- 10.2.4. By Country
- 10.3. South America: Country Analysis
- 10.3.1. Brazil Generative AI in Energy Market Outlook
- 10.3.1.1. Market Size & Forecast
- 10.3.1.1.1. By Value
- 10.3.1.2. Market Share & Forecast
- 10.3.1.2.1. By Component
- 10.3.1.2.2. By Application
- 10.3.1.2.3. By End-Use Vertical
- 10.3.1.1. Market Size & Forecast
- 10.3.2. Colombia Generative AI in Energy Market Outlook
- 10.3.2.1. Market Size & Forecast
- 10.3.2.1.1. By Value
- 10.3.2.2. Market Share & Forecast
- 10.3.2.2.1. By Component
- 10.3.2.2.2. By Application
- 10.3.2.2.3. By End-Use Vertical
- 10.3.2.1. Market Size & Forecast
- 10.3.3. Argentina Generative AI in Energy Market Outlook
- 10.3.3.1. Market Size & Forecast
- 10.3.3.1.1. By Value
- 10.3.3.2. Market Share & Forecast
- 10.3.3.2.1. By Component
- 10.3.3.2.2. By Application
- 10.3.3.2.3. By End-Use Vertical
- 10.3.3.1. Market Size & Forecast
- 10.3.4. Chile Generative AI in Energy Market Outlook
- 10.3.4.1. Market Size & Forecast
- 10.3.4.1.1. By Value
- 10.3.4.2. Market Share & Forecast
- 10.3.4.2.1. By Component
- 10.3.4.2.2. By Application
- 10.3.4.2.3. By End-Use Vertical
- 10.3.4.1. Market Size & Forecast
- 10.3.1. Brazil Generative AI in Energy Market Outlook
11. Middle East & Africa Generative AI in Energy Market Outlook
- 11.1. Market Size & Forecast
- 11.1.1. By Value
- 11.2. Market Share & Forecast
- 11.2.1. By Component
- 11.2.2. By Application
- 11.2.3. By End-Use Vertical
- 11.2.4. By Country
- 11.3. Middle East & Africa: Country Analysis
- 11.3.1. Saudi Arabia Generative AI in Energy Market Outlook
- 11.3.1.1. Market Size & Forecast
- 11.3.1.1.1. By Value
- 11.3.1.2. Market Share & Forecast
- 11.3.1.2.1. By Component
- 11.3.1.2.2. By Application
- 11.3.1.2.3. By End-Use Vertical
- 11.3.1.1. Market Size & Forecast
- 11.3.2. UAE Generative AI in Energy Market Outlook
- 11.3.2.1. Market Size & Forecast
- 11.3.2.1.1. By Value
- 11.3.2.2. Market Share & Forecast
- 11.3.2.2.1. By Component
- 11.3.2.2.2. By Application
- 11.3.2.2.3. By End-Use Vertical
- 11.3.2.1. Market Size & Forecast
- 11.3.3. South Africa Generative AI in Energy Market Outlook
- 11.3.3.1. Market Size & Forecast
- 11.3.3.1.1. By Value
- 11.3.3.2. Market Share & Forecast
- 11.3.3.2.1. By Component
- 11.3.3.2.2. By Application
- 11.3.3.2.3. By End-Use Vertical
- 11.3.3.1. Market Size & Forecast
- 11.3.4. Turkey Generative AI in Energy Market Outlook
- 11.3.4.1. Market Size & Forecast
- 11.3.4.1.1. By Value
- 11.3.4.2. Market Share & Forecast
- 11.3.4.2.1. By Component
- 11.3.4.2.2. By Application
- 11.3.4.2.3. By End-Use Vertical
- 11.3.4.1. Market Size & Forecast
- 11.3.5. Israel Generative AI in Energy Market Outlook
- 11.3.5.1. Market Size & Forecast
- 11.3.5.1.1. By Value
- 11.3.5.2. Market Share & Forecast
- 11.3.5.2.1. By Component
- 11.3.5.2.2. By Application
- 11.3.5.2.3. By End-Use Vertical
- 11.3.5.1. Market Size & Forecast
- 11.3.1. Saudi Arabia Generative AI in Energy Market Outlook
12. Market Dynamics
- 12.1. Drivers
- 12.2. Challenges
13. Market Trends and Developments
14. Company Profiles
- 14.1. Google LLC
- 14.1.1. Business Overview
- 14.1.2. Key Revenue and Financials
- 14.1.3. Recent Developments
- 14.1.4. Key Personnel/Key Contact Person
- 14.1.5. Key Product/Services Offered
- 14.2. Microsoft Corporation
- 14.2.1. Business Overview
- 14.2.2. Key Revenue and Financials
- 14.2.3. Recent Developments
- 14.2.4. Key Personnel/Key Contact Person
- 14.2.5. Key Product/Services Offered
- 14.3. IBM Corporation
- 14.3.1. Business Overview
- 14.3.2. Key Revenue and Financials
- 14.3.3. Recent Developments
- 14.3.4. Key Personnel/Key Contact Person
- 14.3.5. Key Product/Services Offered
- 14.4. Amazon.com, Inc.
- 14.4.1. Business Overview
- 14.4.2. Key Revenue and Financials
- 14.4.3. Recent Developments
- 14.4.4. Key Personnel/Key Contact Person
- 14.4.5. Key Product/Services Offered
- 14.5. SAP SE
- 14.5.1. Business Overview
- 14.5.2. Key Revenue and Financials
- 14.5.3. Recent Developments
- 14.5.4. Key Personnel/Key Contact Person
- 14.5.5. Key Product/Services Offered
- 14.6. Siemens AG
- 14.6.1. Business Overview
- 14.6.2. Key Revenue and Financials
- 14.6.3. Recent Developments
- 14.6.4. Key Personnel/Key Contact Person
- 14.6.5. Key Product/Services Offered
- 14.7. General Electric Company
- 14.7.1. Business Overview
- 14.7.2. Key Revenue and Financials
- 14.7.3. Recent Developments
- 14.7.4. Key Personnel/Key Contact Person
- 14.7.5. Key Product/Services Offered
- 14.8. Schneider Electric SE
- 14.8.1. Business Overview
- 14.8.2. Key Revenue and Financials
- 14.8.3. Recent Developments
- 14.8.4. Key Personnel/Key Contact Person
- 14.8.5. Key Product/Services Offered
- 14.9. Oracle Corporation
- 14.9.1. Business Overview
- 14.9.2. Key Revenue and Financials
- 14.9.3. Recent Developments
- 14.9.4. Key Personnel/Key Contact Person
- 14.9.5. Key Product/Services Offered
- 14.10. Honeywell International Inc.
- 14.10.1. Business Overview
- 14.10.2. Key Revenue and Financials
- 14.10.3. Recent Developments
- 14.10.4. Key Personnel/Key Contact Person
- 14.10.5. Key Product/Services Offered
- 14.11. C3.ai, Inc.
- 14.11.1. Business Overview
- 14.11.2. Key Revenue and Financials
- 14.11.3. Recent Developments
- 14.11.4. Key Personnel/Key Contact Person
- 14.11.5. Key Product/Services Offered
- 14.12. Hitachi, Ltd.
- 14.12.1. Business Overview
- 14.12.2. Key Revenue and Financials
- 14.12.3. Recent Developments
- 14.12.4. Key Personnel/Key Contact Person
- 14.12.5. Key Product/Services Offered





