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市场调查报告书
商品编码
1407496

石油和天然气市场中的人工智慧 - 2018-2028 年全球产业规模、份额、趋势、机会和预测(按营运、服务类型、组件、地区、竞争细分)

AI in Oil and Gas Market - Global Industry Size, Share, Trends, Opportunity, and Forecast Segmented by Operation, Service Type, Component, By Region, By Competition 2018-2028

出版日期: | 出版商: TechSci Research | 英文 178 Pages | 商品交期: 2-3个工作天内

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简介目录

2022 年,全球人工智慧在石油和天然气市场的价值为 33.7 亿美元,预计在预测期内将强劲增长,到 2028 年CAGR为12.62%。石油和天然气行业中的人工智慧透过预测帮助提高石油和天然气产量维护和机械检查、品质控制、住宅、勘探、储罐和油藏监测等方法,并增加石油和天然气行业的利润。人工智慧由机器学习、人工神经网路、模糊逻辑和专家系统等各种工具组成,有助于将资料转换为有用的信息,然后将其应用于生命週期探索和生产的各个阶段。石油和天然气产业开始看到人工智慧对价值链各部门的令人难以置信的影响。人工智慧的机会直接打击了当今油田面临的最大挑战。与其他缺乏对其油藏、营运流程和生产资产准确了解的营运商相比,有效利用人工智慧的公司预计将拥有明显的优势。

主要市场驱动因素

降低成本

市场概况
预测期 2024-2028
2022 年市场规模 33.7亿美元
2028 年市场规模 72.2亿美元
2023-2028 年CAGR 12.62%
成长最快的细分市场 上游
最大的市场 北美洲

降低成本是推动人工智慧(AI)在全球石油和天然气市场采用的主要驱动力。石油和天然气行业以其资本密集而闻名,不断寻求创新的解决方案来简化营运并增强经济活力。人工智慧技术在实现产业各个方面显着降低成本方面发挥关键作用。人工智慧有助于降低成本的关键领域之一是营运效率。机器学习演算法即时分析感测器、钻井活动和生产过程产生的大量资料集。透过识别这些资料中的模式和相关性,人工智慧系统可以优化营运工作流程,从而提高效率并减少资源浪费。由人工智慧支援的预测性维护是另一个重要方面,可以帮助操作员在设备问题升级为代价高昂的故障之前识别并解决它们。这不仅可以最大限度地减少停机时间,还可以延长设备的使用寿命,从而大大节省成本。

目录

第 1 章:产品概述

  • 市场定义
  • 市场范围
  • 涵盖的市场
  • 考虑学习的年份
  • 主要市场区隔

第 2 章:研究方法

  • 研究目的
  • 基线方法
  • 主要产业伙伴
  • 主要协会和二手资料来源
  • 预测方法
  • 数据三角测量与验证
  • 假设和限制

第 3 章:执行摘要

第 4 章:客户之声

第 5 章:全球人工智慧在石油和天然气市场的展望

  • 市场规模及预测
    • 按价值
  • 市占率及预测
    • 按营运(上游、中游、下游)
    • 依服务类型(专业服务、主机服务)
    • 按组件(解决方案、服务)
    • 按地区
  • 按公司划分 (2022)
  • 市场地图

第 6 章:北美石油和天然气人工智慧市场展望

  • 市场规模及预测
    • 按价值
  • 市占率及预测
    • 按操作
    • 按服务类型
    • 按组件
    • 按国家/地区
  • 北美:国家分析
    • 美国
    • 加拿大
    • 墨西哥

第 7 章:亚太地区人工智慧在石油和天然气市场的展望

  • 市场规模及预测
    • 按价值
  • 市占率及预测
    • 按操作
    • 按服务类型
    • 按组件
    • 按国家/地区
  • 亚太地区:国家分析
    • 中国
    • 印度
    • 日本
    • 韩国
    • 印尼

第 8 章:欧洲人工智慧在石油和天然气市场的前景

  • 市场规模及预测
    • 按价值
  • 市占率及预测
    • 按操作
    • 按服务类型
    • 按组件
    • 按国家/地区
  • 欧洲:国家分析
    • 德国
    • 英国
    • 法国
    • 俄罗斯
    • 西班牙

第 9 章:南美洲人工智慧在石油和天然气市场的前景

  • 市场规模及预测
    • 按价值
  • 市占率及预测
    • 按操作
    • 按服务类型
    • 按组件
    • 按国家/地区
  • 南美洲:国家分析
    • 巴西
    • 阿根廷

第 10 章:中东和非洲人工智慧在石油和天然气市场的前景

  • 市场规模及预测
    • 按价值
  • 市占率及预测
    • 按操作
    • 按服务类型
    • 按组件
    • 按国家/地区
  • 中东和非洲:国家分析
    • 沙乌地阿拉伯
    • 南非
    • 阿联酋
    • 以色列
    • 埃及

第 11 章:市场动态

  • 司机
  • 挑战

第 12 章:市场趋势与发展

第 13 章:公司简介

  • 谷歌有限责任公司
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services
  • IBM公司
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services
  • FuGenX 技术列兵。有限公司
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services
  • C3.AI
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services
  • 微软公司
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services
  • 英特尔公司
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services
  • 荷兰皇家壳牌公司
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services
  • 俄罗斯天然气工业股份公司石油公司
    • Business Overview
    • Key Revenue and Financials
    • Recent Developments
    • Key Personnel
    • Key Product/Services

第 14 章:策略建议

第 15 章:关于我们与免责声明

简介目录
Product Code: 20493

Global AI in Oil and Gas Market has valued at USD 3.37 Billion in 2022 and is anticipated to project robust growth in the forecast period with a CAGR of 12.62% through 2028. AI in Oil and Gas Industry aids in improving oil and gas output through predictive maintenance and machinery inspection, quality control, dwelling, exploration, tank and reservoir monitoring, and other methods as well as increases profit in the oil and gas industry. Artificial intelligence consists of a variety of tools such as machine learning, artificial neutral networks, fuzzy logic, and expert systems that aid in the transformation of data into useful information that can then be applied at various stages of the lifecycle's exploration and production. The oil and gas industry is beginning to see the incredible impact that AI can have on every sector in the value chain. The opportunities for AI strike directly at the greatest challenges in today's oilfield. Companies that effectively leverage AI are expected to have a distinct advantage over other operators that lack accurate understanding of their reservoirs, operating processes, and producing assets.

Key Market Drivers

Cost Reduction

Market Overview
Forecast Period2024-2028
Market Size 2022USD 3.37 Billion
Market Size 2028USD 7.22 Billion
CAGR 2023-202812.62%
Fastest Growing SegmentUpstream
Largest MarketNorth America

Cost reduction is a primary driver propelling the adoption of Artificial Intelligence (AI) in the global oil and gas market. The oil and gas industry, known for its capital-intensive nature, is constantly seeking innovative solutions to streamline operations and enhance economic viability. AI technologies play a pivotal role in achieving significant cost reductions across various facets of the industry. One key area where AI contributes to cost reduction is operational efficiency. Machine learning algorithms analyze vast datasets generated by sensors, drilling activities, and production processes in real-time. By identifying patterns and correlations within this data, AI systems can optimize operational workflows, resulting in increased efficiency and reduced resource wastage. Predictive maintenance powered by AI is another crucial aspect, helping operators identify and address equipment issues before they escalate into costly failures. This not only minimizes downtime but also extends the lifespan of equipment, contributing to substantial cost savings.

Reservoir exploration and production optimization are also areas where AI-driven technologies significantly impact cost reduction. Advanced analytics and machine learning models enhance reservoir characterization and simulation, leading to more accurate predictions of reservoir behavior. This, in turn, enables operators to optimize production strategies, maximize recovery rates, and minimize unnecessary expenditures.

The deployment of AI in health, safety, and environmental initiatives further reduces costs associated with accidents, downtime, and regulatory non-compliance. By leveraging AI for risk prediction and mitigation, companies enhance workplace safety, reduce the likelihood of environmental incidents, and ensure compliance with stringent regulations.

Moreover, the integration of AI-driven automation and robotics in drilling and maintenance activities reduces dependency on human labor, particularly in hazardous environments. Autonomous drones and robots can perform routine inspections and tasks, minimizing operational risks and associated costs. In essence, the emphasis on cost reduction acts as a catalyst for the widespread adoption of AI in the oil and gas sector. Companies recognize that the implementation of AI technologies not only enhances efficiency and operational capabilities but also delivers a tangible impact on the bottom line, making it a strategic imperative for remaining competitive in a dynamic and challenging industry landscape.

Data Analytics and Insights

The global adoption of Artificial Intelligence (AI) in the oil and gas industry is significantly driven by the pivotal role of data analytics and insights. In an industry characterized by massive volumes of data generated from sensors, exploration activities, and production processes, AI-powered data analytics emerges as a transformative force. The ability of AI algorithms to sift through, process, and derive actionable insights from this vast data landscape is crucial for informed decision-making and operational optimization.

Data analytics in the oil and gas sector, powered by AI, brings forth a paradigm shift in reservoir exploration. Machine learning models analyze geological and geophysical data, providing a deeper understanding of reservoir characteristics. This enables companies to make more accurate predictions about reservoir behavior, optimizing drilling strategies and maximizing resource recovery. The result is not only increased operational efficiency but also significant cost savings. Real-time data analytics is instrumental in monitoring and managing drilling operations. AI algorithms process streaming data from drilling activities, identifying patterns and anomalies that might indicate potential issues. This proactive approach to data analysis allows for swift decision-making, reducing downtime and minimizing the risk of costly equipment failures. Predictive maintenance, a subset of data analytics, ensures that maintenance interventions are performed precisely when needed, preventing unnecessary disruptions and optimizing asset performance.

Beyond operational aspects, AI-driven data analytics contributes to health, safety, and environmental initiatives. By analyzing historical data, AI models can predict and prevent safety incidents, fostering a safer working environment. Environmental impact assessments and compliance monitoring benefit from the analytical capabilities of AI, ensuring adherence to regulatory standards. The significance of data analytics and insights in the oil and gas industry extends to market dynamics as well. AI facilitates market forecasting, helping companies make strategic decisions based on accurate predictions of supply and demand trends.

In essence, the integration of AI-driven data analytics and insights is a transformative force in the oil and gas sector, providing a competitive edge through enhanced decision-making, operational efficiency, and cost-effectiveness. As companies recognize the value of harnessing actionable insights from their data, the global AI in oil and gas market is poised for continued growth and innovation.

Key Market Challenges

Integration with Legacy Systems

The integration of Artificial Intelligence (AI) into the global oil and gas market faces a formidable challenge in the form of compatibility issues with legacy systems. Many companies within the industry operate with long-established infrastructure and technologies that were not originally designed to accommodate the advanced capabilities of AI. This mismatch between existing legacy systems and cutting-edge AI technologies poses a significant impediment to seamless integration, potentially hampering the widespread adoption of AI in the oil and gas sector.

Legacy systems, often characterized by rigid architectures and proprietary technologies, may lack the necessary interfaces and adaptability to effectively incorporate AI solutions. The integration process becomes complex, requiring meticulous planning and execution to ensure that AI systems can communicate with and complement existing infrastructure. Upgrading or replacing legacy systems altogether may be financially and operationally impractical for many companies, especially given the capital-intensive nature of the oil and gas industry. The challenge is twofold, encompassing both technical and cultural aspects. On a technical level, integrating AI with legacy systems requires a deep understanding of the existing architecture, data formats, and communication protocols. Legacy systems may not readily provide the standardized data formats and accessibility required for seamless integration with AI algorithms, leading to data interoperability challenges.

Culturally, there may be resistance to change within organizations accustomed to established workflows and technologies. Employees may require training to adapt to the new AI-driven processes, and there may be concerns about potential disruptions during the integration process.

Efforts to overcome the integration challenge involve developing robust middleware solutions that act as bridges between legacy systems and AI applications. These intermediary layers facilitate data exchange and communication, ensuring that AI technologies can leverage the data stored in legacy systems. Additionally, industry collaboration and knowledge-sharing can help establish best practices for integrating AI with diverse legacy architectures.

As the industry recognizes the transformative potential of AI in enhancing efficiency, decision-making, and overall operational excellence, addressing the integration challenge becomes crucial. Innovative solutions, collaborative approaches, and strategic planning are essential to successfully navigate the complexities of integrating AI into existing legacy systems within the oil and gas sector.

High Implementation Costs

The high implementation costs associated with adopting Artificial Intelligence (AI) in the global oil and gas market represent a significant hurdle that has the potential to impede widespread integration. The oil and gas industry, known for its capital-intensive nature, is often constrained by budgetary considerations, and the substantial upfront investments required for implementing AI technologies can be a deterrent. The integration of AI involves multifaceted expenses, including the acquisition of advanced hardware and software infrastructure capable of handling large-scale data processing, the hiring of skilled professionals, and ongoing maintenance costs. The need for specialized AI talent, such as data scientists and machine learning experts, adds to the financial burden, as these professionals command competitive salaries in a highly competitive job market. Additionally, companies may need to invest in comprehensive training programs to upskill existing employees, further contributing to the overall implementation costs.

For many oil and gas companies, particularly smaller and mid-sized enterprises, the high initial investment acts as a barrier to entry into the realm of AI adoption. This can result in a digital divide, with larger, more financially robust corporations reaping the benefits of AI-driven efficiencies while smaller players struggle to justify and afford the necessary investments. The result is a potential imbalance in competitiveness within the industry.

Moreover, the dynamic nature of AI technologies means that ongoing investments are essential to stay abreast of advancements and maintain the relevance of AI applications. Upgrading hardware, refreshing software, and adapting to evolving industry standards require additional financial commitments, making the total cost of ownership for AI implementations a long-term consideration.

To overcome the challenge posed by high implementation costs, industry stakeholders, including technology providers and government bodies, must collaborate to develop cost-effective solutions, promote research and development, and establish incentive programs to support AI adoption. Additionally, advancements in cloud-based AI solutions and innovative financing models may offer more accessible options for companies looking to integrate AI into their operations without the prohibitive upfront costs. Addressing the financial barriers to AI adoption is crucial for ensuring that the transformative potential of AI is realized across the entire spectrum of the oil and gas industry.

Lack of Skilled Workforce

The shortage of a skilled workforce stands out as a formidable challenge that has the potential to hamper the growth and implementation of Artificial Intelligence (AI) in the global oil and gas market. The successful integration of AI technologies into the industry requires a workforce with specialized expertise in data science, machine learning, and AI applications. Unfortunately, there is a notable scarcity of professionals possessing these specialized skills, creating a bottleneck for the widespread adoption of AI in the oil and gas sector.

The complexity of AI technologies demands a workforce that not only understands the intricacies of data analytics and machine learning algorithms but also possesses domain-specific knowledge of the oil and gas industry. This unique skill set is not readily available, and companies face challenges in recruiting and retaining talent with the necessary qualifications. The competition for skilled AI professionals is intense, with industries across the board vying for these experts, making it even more challenging for the oil and gas sector to attract and retain top-tier talent.

Furthermore, the rapid evolution of AI technologies requires continuous upskilling and training for existing employees within the industry. The lack of accessible and comprehensive training programs exacerbates the skill gap, hindering the ability of oil and gas companies to fully harness the potential of AI.

The consequences of a shortage of skilled professionals are multifaceted. Implementation of AI applications may be delayed, leading to missed opportunities for operational optimization, cost reduction, and enhanced decision-making. Companies may also face increased costs associated with outsourcing AI projects or hiring external consultants, further straining budgets. Addressing the lack of a skilled workforce in AI for oil and gas requires a concerted effort from educational institutions, industry associations, and companies themselves. Investing in training programs, fostering collaboration between academia and industry, and promoting STEM (Science, Technology, Engineering, and Mathematics) education are essential components of mitigating this challenge. As the industry recognizes the transformative potential of AI, bridging the skill gap becomes imperative for ensuring a sustainable and successful integration of AI technologies in the oil and gas sector.

Key Market Trends

Automation and Robotics

Automation and robotics, powered by Artificial Intelligence (AI), are poised to be major drivers propelling the global AI market in the oil and gas industry. This transformative synergy between AI and robotics is revolutionizing traditional operational processes, enhancing efficiency, safety, and overall productivity within the sector. In drilling operations, autonomous drilling systems equipped with AI algorithms are becoming increasingly prevalent. These systems can analyze real-time data, adjust drilling parameters, and optimize the drilling process, leading to improved precision and reduced drilling times. Routine maintenance tasks in the oil and gas industry are being reshaped by AI-driven robotics. Drones and robots, equipped with advanced AI capabilities, are deployed for inspections and maintenance activities in hazardous environments. These autonomous systems can navigate complex terrain, conduct thorough inspections, and execute necessary repairs, minimizing the need for human intervention in potentially dangerous situations. This not only enhances safety protocols but also contributes to cost savings by reducing downtime associated with maintenance activities.

Furthermore, AI-powered robotics play a crucial role in asset integrity management. Robots equipped with sensors and cameras can continuously monitor the condition of equipment and infrastructure, detecting anomalies or signs of wear. This proactive approach to asset management allows for early intervention and predictive maintenance, preventing costly failures and extending the lifespan of critical assets. The deployment of AI in automation and robotics aligns with the industry's goals of operational optimization, cost reduction, and adherence to stringent safety standards. It enables oil and gas companies to streamline operations, improve the precision and accuracy of tasks, and achieve higher levels of efficiency throughout the value chain.

As the industry continues to embrace digital transformation, the integration of AI-driven automation and robotics is expected to grow. This trend not only reflects a commitment to innovation but also underscores the industry's responsiveness to the evolving landscape and the need for sustainable and technologically advanced practices. Companies that invest in and leverage AI for automation and robotics are likely to gain a competitive edge, positioning themselves as leaders in the ongoing evolution of the global AI in the oil and gas market.

Predictive Maintenance

Predictive maintenance stands out as a driving force behind the evolution of the global AI in the oil and gas market. This strategic application of Artificial Intelligence (AI) is transforming the way the industry approaches equipment upkeep and operational reliability. By harnessing the power of machine learning algorithms, predictive maintenance analyzes vast datasets generated by sensors and equipment in real-time. The primary objective is to forecast potential equipment failures before they occur, enabling proactive maintenance interventions and minimizing downtime.

In the context of the oil and gas sector, where operational downtime can result in substantial financial losses, predictive maintenance powered by AI emerges as a game-changer. Machine learning models are trained on historical data, learning patterns and trends associated with equipment performance. This predictive capability allows operators to identify early signs of equipment degradation or malfunction, providing a window of opportunity for timely maintenance or replacement.

The implementation of predictive maintenance offers several key advantages. Firstly, it significantly reduces unplanned downtime, enhancing overall operational efficiency. By addressing issues before they escalate into critical failures, companies can optimize asset utilization, maximize production output, and extend the lifespan of equipment. This directly translates into cost savings and improved profitability for oil and gas enterprises.

Secondly, predictive maintenance supports a shift from traditional, calendar-based maintenance schedules to a more data-driven and condition-based approach. This means that maintenance activities are performed precisely when needed, reducing unnecessary interventions and minimizing the associated costs. This optimization of maintenance schedules contributes to a more efficient allocation of resources and manpower.

Moreover, the utilization of AI in predictive maintenance fosters a shift from reactive to proactive asset management strategies. Rather than responding to equipment failures as they happen, operators can take a preventative stance, avoiding disruptions and optimizing the overall reliability of operations. As the oil and gas industry continues to recognize the immense value of predictive maintenance, the global AI market in this sector is poised for substantial growth. Companies investing in AI-driven predictive maintenance solutions are not only enhancing their operational resilience but also positioning themselves at the forefront of innovation in a highly competitive industry landscape. The evolution towards predictive maintenance is indicative of the broader trend in leveraging AI for strategic decision-making and efficiency gains in the oil and gas sector.

Segmental Insights

Operation Insights

Upstream segment is expected to hold the largest share of AI in Oil and Gas Market for during the forecast period, Oil and Gas industries worldwide are trying to make the oil exploration processes more efficient and optimized. The operations in this field are the major factors driving the usage of AI in oil and gas companies. The AI tools can help oil and gas companies digitize records and automate the analysis of the gathered geological data and charts, which can lead to the potential identification of issues, such as pipeline corrosion or increased equipment usage.

Companies like BP and Royal Dutch Shell have planned to achieve net-zero carbon emissions by 2050 and are under increasing pressure to minimize their carbon footprint in compliance with the Paris Agreement. Shell is employing AI technology to do predictive maintenance of individual pieces of equipment or entire systems to reduce its carbon footprint. This factor allows the corporations to foresee and handle probable equipment faults before they occur.

Regional Insights

North America is expected to dominate the market during the forecast period. Owing to the increasing adoption of AI technologies across the oilfield operators and service providers and the robust presence of prominent AI software and system suppliers, especially in the United States and Canada, the North American segment is anticipated to account for the largest share of the AI in oil and gas market over the forecast period.

Factors such as the strong economy, the high adoption rate of AI technologies across the oilfield operators and service providers, a robust presence of prominent AI software and system suppliers, and combined investment by government and private organizations for the development and growth of R&D activities are projected to drive the demand for AI in the oil and gas sector in the region.

ExxonMobil, one of the leading oil producers in the country, announced its plans to increase the production activity in the Permian Basin of West Texas by producing more than 1 million barrels per day (BPD) of oil equivalent by as early as 2024. This capacity is equivalent to an increase of nearly 80% compared to the present production capacity.

Key Market Players

Google LLC

IBM Corporation

FuGenX Technologies Pvt. Ltd

C3.AI

Microsoft Corporation

Intel Corporation

Royal Dutch Shell PLC

PJSC Gazprom Neft

Huawei Technologies Co. Ltd

NVIDIA Corp.

Report Scope:

In this report, the Global AI in Oil and Gas Market has been segmented into the following categories, in addition to the industry trends which have also been detailed below:

Global AI in Oil and Gas Market, By Operation:

  • Upstream
  • Midstream
  • Downstream

Global AI in Oil and Gas Market, By Service Type:

  • Professional Services
  • Managed Service

Global AI in Oil and Gas Market, By Component:

  • Solution
  • Services

Global AI in Oil and Gas Market, By Region:

  • North America
  • United States
  • Canada
  • Mexico
  • Asia-Pacific
  • China
  • India
  • Japan
  • South Korea
  • Indonesia
  • Europe
  • Germany
  • United Kingdom
  • France
  • Russia
  • Spain
  • South America
  • Brazil
  • Argentina
  • Middle East & Africa
  • Saudi Arabia
  • South Africa
  • Egypt
  • UAE
  • Israel

Competitive Landscape

  • Company Profiles: Detailed analysis of the major companies presents in the Global AI in Oil and Gas Market.

Available Customizations:

  • Global AI in Oil and Gas Market report with the given market data, Tech Sci 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. Product Overview

  • 1.1. Market Definition
  • 1.2. Scope of the Market
  • 1.3. Markets Covered
  • 1.4. Years Considered for Study
  • 1.5. Key Market Segmentations

2. Research Methodology

  • 2.1. Objective of the Study
  • 2.2. Baseline Methodology
  • 2.3. Key Industry Partners
  • 2.4. Major Association and Secondary Sources
  • 2.5. Forecasting Methodology
  • 2.6. Data Triangulation & Validation
  • 2.7. Assumptions and Limitations

3. Executive Summary

4. Voice of Customers

5. Global AI in Oil and Gas Market Outlook

  • 5.1. Market Size & Forecast
    • 5.1.1. By Value
  • 5.2. Market Share & Forecast
    • 5.2.1. By Operation (Upstream, Midstream, Downstream)
    • 5.2.2. By Service Type (Professional Services, Managed Services)
    • 5.2.3. By Component (Solution, Services)
    • 5.2.4. By Region
  • 5.3. By Company (2022)
  • 5.4. Market Map

6. North America AI in Oil and Gas Market Outlook

  • 6.1. Market Size & Forecast
    • 6.1.1. By Value
  • 6.2. Market Share & Forecast
    • 6.2.1. By Operation
    • 6.2.2. By Service Type
    • 6.2.3. By Component
    • 6.2.4. By Country
  • 6.3. North America: Country Analysis
    • 6.3.1. United States AI in Oil and Gas Market Outlook
      • 6.3.1.1. Market Size & Forecast
        • 6.3.1.1.1. By Value
      • 6.3.1.2. Market Share & Forecast
        • 6.3.1.2.1. By Operation
        • 6.3.1.2.2. By Service Type
        • 6.3.1.2.3. By Component
    • 6.3.2. Canada AI in Oil and Gas Market Outlook
      • 6.3.2.1. Market Size & Forecast
        • 6.3.2.1.1. By Value
      • 6.3.2.2. Market Share & Forecast
        • 6.3.2.2.1. By Operation
        • 6.3.2.2.2. By Service Type
        • 6.3.2.2.3. By Component
    • 6.3.3. Mexico AI in Oil and Gas Market Outlook
      • 6.3.3.1. Market Size & Forecast
        • 6.3.3.1.1. By Value
      • 6.3.3.2. Market Share & Forecast
        • 6.3.3.2.1. By Operation
        • 6.3.3.2.2. By Service Type
        • 6.3.3.2.3. By Component

7. Asia-Pacific AI in Oil and Gas Market Outlook

  • 7.1. Market Size & Forecast
    • 7.1.1. By Value
  • 7.2. Market Share & Forecast
    • 7.2.1. By Operation
    • 7.2.2. By Service Type
    • 7.2.3. By Component
    • 7.2.4. By Country
  • 7.3. Asia-Pacific: Country Analysis
    • 7.3.1. China AI in Oil and Gas 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 Operation
        • 7.3.1.2.2. By Service Type
        • 7.3.1.2.3. By Component
    • 7.3.2. India AI in Oil and Gas 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 Operation
        • 7.3.2.2.2. By Service Type
        • 7.3.2.2.3. By Component
    • 7.3.3. Japan AI in Oil and Gas 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 Operation
        • 7.3.3.2.2. By Service Type
        • 7.3.3.2.3. By Component
    • 7.3.4. South Korea AI in Oil and Gas Market Outlook
      • 7.3.4.1. Market Size & Forecast
        • 7.3.4.1.1. By Value
      • 7.3.4.2. Market Share & Forecast
        • 7.3.4.2.1. By Operation
        • 7.3.4.2.2. By Service Type
        • 7.3.4.2.3. By Component
    • 7.3.5. Indonesia AI in Oil and Gas Market Outlook
      • 7.3.5.1. Market Size & Forecast
        • 7.3.5.1.1. By Value
      • 7.3.5.2. Market Share & Forecast
        • 7.3.5.2.1. By Operation
        • 7.3.5.2.2. By Service Type
        • 7.3.5.2.3. By Component

8. Europe AI in Oil and Gas Market Outlook

  • 8.1. Market Size & Forecast
    • 8.1.1. By Value
  • 8.2. Market Share & Forecast
    • 8.2.1. By Operation
    • 8.2.2. By Service Type
    • 8.2.3. By Component
    • 8.2.4. By Country
  • 8.3. Europe: Country Analysis
    • 8.3.1. Germany AI in Oil and Gas 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 Operation
        • 8.3.1.2.2. By Service Type
        • 8.3.1.2.3. By Component
    • 8.3.2. United Kingdom AI in Oil and Gas 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 Operation
        • 8.3.2.2.2. By Service Type
        • 8.3.2.2.3. By Component
    • 8.3.3. France AI in Oil and Gas 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 Operation
        • 8.3.3.2.2. By Service Type
        • 8.3.3.2.3. By Component
    • 8.3.4. Russia AI in Oil and Gas 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 Operation
        • 8.3.4.2.2. By Service Type
        • 8.3.4.2.3. By Component
    • 8.3.5. Spain AI in Oil and Gas 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 Operation
        • 8.3.5.2.2. By Service Type
        • 8.3.5.2.3. By Component

9. South America AI in Oil and Gas Market Outlook

  • 9.1. Market Size & Forecast
    • 9.1.1. By Value
  • 9.2. Market Share & Forecast
    • 9.2.1. By Operation
    • 9.2.2. By Service Type
    • 9.2.3. By Component
    • 9.2.4. By Country
  • 9.3. South America: Country Analysis
    • 9.3.1. Brazil AI in Oil and Gas 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 Operation
        • 9.3.1.2.2. By Service Type
        • 9.3.1.2.3. By Component
    • 9.3.2. Argentina AI in Oil and Gas 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 Operation
        • 9.3.2.2.2. By Service Type
        • 9.3.2.2.3. By Component

10. Middle East & Africa AI in Oil and Gas Market Outlook

  • 10.1. Market Size & Forecast
    • 10.1.1. By Value
  • 10.2. Market Share & Forecast
    • 10.2.1. By Operation
    • 10.2.2. By Service Type
    • 10.2.3. By Component
    • 10.2.4. By Country
  • 10.3. Middle East & Africa: Country Analysis
    • 10.3.1. Saudi Arabia AI in Oil and Gas 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 Operation
        • 10.3.1.2.2. By Service Type
        • 10.3.1.2.3. By Component
    • 10.3.2. South Africa AI in Oil and Gas 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 Operation
        • 10.3.2.2.2. By Service Type
        • 10.3.2.2.3. By Component
    • 10.3.3. UAE AI in Oil and Gas 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 Operation
        • 10.3.3.2.2. By Service Type
        • 10.3.3.2.3. By Component
    • 10.3.4. Israel AI in Oil and Gas 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 Operation
        • 10.3.4.2.2. By Service Type
        • 10.3.4.2.3. By Component
    • 10.3.5. Egypt AI in Oil and Gas Market Outlook
      • 10.3.5.1. Market Size & Forecast
        • 10.3.5.1.1. By Value
      • 10.3.5.2. Market Share & Forecast
        • 10.3.5.2.1. By Operation
        • 10.3.5.2.2. By Service Type
        • 10.3.5.2.3. By Component

11. Market Dynamics

  • 11.1. Drivers
  • 11.2. Challenge

12. Market Trends & Developments

13. Company Profiles

  • 13.1. Google LLC
    • 13.1.1. Business Overview
    • 13.1.2. Key Revenue and Financials
    • 13.1.3. Recent Developments
    • 13.1.4. Key Personnel
    • 13.1.5. Key Product/Services
  • 13.2. IBM Corporation
    • 13.2.1. Business Overview
    • 13.2.2. Key Revenue and Financials
    • 13.2.3. Recent Developments
    • 13.2.4. Key Personnel
    • 13.2.5. Key Product/Services
  • 13.3. FuGenX Technologies Pvt. Ltd
    • 13.3.1. Business Overview
    • 13.3.2. Key Revenue and Financials
    • 13.3.3. Recent Developments
    • 13.3.4. Key Personnel
    • 13.3.5. Key Product/Services
  • 13.4. C3.AI
    • 13.4.1. Business Overview
    • 13.4.2. Key Revenue and Financials
    • 13.4.3. Recent Developments
    • 13.4.4. Key Personnel
    • 13.4.5. Key Product/Services
  • 13.5. Microsoft Corporation
    • 13.5.1. Business Overview
    • 13.5.2. Key Revenue and Financials
    • 13.5.3. Recent Developments
    • 13.5.4. Key Personnel
    • 13.5.5. Key Product/Services
  • 13.6. Intel Corporation
    • 13.6.1. Business Overview
    • 13.6.2. Key Revenue and Financials
    • 13.6.3. Recent Developments
    • 13.6.4. Key Personnel
    • 13.6.5. Key Product/Services
  • 13.7. Royal Dutch Shell PLC
    • 13.7.1. Business Overview
    • 13.7.2. Key Revenue and Financials
    • 13.7.3. Recent Developments
    • 13.7.4. Key Personnel
    • 13.7.5. Key Product/Services
  • 13.8. PJSC Gazprom Neft
    • 13.8.1. Business Overview
    • 13.8.2. Key Revenue and Financials
    • 13.8.3. Recent Developments
    • 13.8.4. Key Personnel
    • 13.8.5. Key Product/Services

14. Strategic Recommendations

15. About Us & Disclaimer