Global Causal AI Market to reach USD 572.65 million by 2032 - Bizwit Research & Consulting LLP (2024)

Global Causal AI Market Size Study, by Offering (Platform, Services), by Vertical (Healthcare & Lifesciences, BFSI, Retail & eCommerce, Transportation & Logistics, Manufacturing, Other Verticals), and Regional Forecasts 2022-2032

Product Code: ICTNGT-56337331

Publish Date: 10-08-2024

Page: 200

Global Causal AI Market to reach USD 572.65 million by 2032 - Bizwit Research & Consulting LLP (1) Global Causal AI Market to reach USD 572.65 million by 2032 - Bizwit Research & Consulting LLP (2) Global Causal AI Market to reach USD 572.65 million by 2032 - Bizwit Research & Consulting LLP (3)

  • Report Overview
  • Table of Contents
  • Research Methodology

Global Causal AI Market is valued approximately at USD 26.03 million in 2023 and is anticipated to grow with a healthy growth rate of more than 40.98% over the forecast period 2024-2032. Causal AI is a branch of artificial intelligence focused on understanding and modeling cause-and-effect relationships rather than just correlations. By identifying the underlying mechanisms driving observed phenomena, Causal AI enables more accurate predictions, better decision-making, and enhanced understanding of complex systems. It combines methods from statistics, machine learning, and domain-specific knowledge to uncover causality, offering insights that traditional AI approaches may miss. This technology is particularly valuable in fields such as healthcare, economics, and policy-making, where understanding causation is crucial for effective interventions and strategies.
The emergence of Causal AI as a solution to overcome the limitations of current AI models and the operationalizing of AI initiatives are primary drivers for market growth. In various fields, the importance of causal inference models is becoming increasingly recognized. For example, in healthcare, understanding causal relationships can significantly enhance patient outcomes and treatment efficacy. However, deriving causal inferences from complex data sets presents a substantial challenge, necessitating advanced algorithms and computational power.
The key regions considered for the market study includes Asia Pacific, North America, Europe, Latin America, and Rest of the World. In 2023, North America is poised to play a pivotal role in the advancement of causal AI. The increasing demand for sophisticated analytics solutions that provide deeper insights and improve decision-making capabilities is propelling the market forward. Governments in North America, particularly in the United States and Canada, are actively promoting the development and adoption of AI technologies through funding and resource allocation for research and innovation. The United States, through the National Institute of Standards and Technology (NIST), is working on establishing standards and guidelines for the application of AI across various industries, including healthcare and finance. Furthermore, the market in Asia Pacific is anticipated to develop at the fastest rate over the forecast period 2024-2032.
Major market player included in this report are:
IBM
CausaLens
Microsoft
Causaly
Google
Geminos
AWS
Aitia
Xplain Data
INCRMNTAL
Logility
Cognino.ai
The detailed segments and sub-segment of the market are explained below:
By Offering:
• Platform
• Services
By Vertical:
• Healthcare & Lifesciences
• BFSI
• Retail & eCommerce
• Transportation & Logistics
• Manufacturing
• Other Verticals
By Region:
North America
• U.S.
• Canada
Europe
• UK
• Germany
• France
• Spain
• Italy
• ROE
Asia Pacific
• China
• India
• Japan
• Australia
• South Korea
• RoAPAC
Latin America
• Brazil
• Mexico
• RoLA
Middle East & Africa
• Saudi Arabia
• South Africa
• RoMEA
Years considered for the study are as follows:
• Historical year – 2022
• Base year – 2023
• Forecast period – 2024 to 2032
Key Takeaways:
• Market Estimates & Forecast for 10 years from 2022 to 2032.
• Annualized revenues and regional level analysis for each market segment.
• Detailed analysis of geographical landscape with Country level analysis of major regions.
• Competitive landscape with information on major players in the market.
• Analysis of key business strategies and recommendations on future market approach.
• Analysis of competitive structure of the market.
• Demand side and supply side analysis of the market

Chapter 1. Global Causal AI Market Executive Summary
1.1. Global Causal AI Market Size & Forecast (2022-2032)
1.2. Regional Summary
1.3. Segmental Summary
1.3.1. By Offering
1.3.2. By Vertical
1.4. Key Trends
1.5. Recession Impact
1.6. Analyst Recommendation & Conclusion

Chapter 2. Global Causal AI Market Definition and Research Assumptions
2.1. Research Objective
2.2. Market Definition
2.3. Research Assumptions
2.3.1. Inclusion & Exclusion
2.3.2. Limitations
2.3.3. Supply Side Analysis
2.3.3.1. Availability
2.3.3.2. Infrastructure
2.3.3.3. Regulatory Environment
2.3.3.4. Market Competition
2.3.3.5. Economic Viability (Consumer’s Perspective)
2.3.4. Demand Side Analysis
2.3.4.1. Regulatory frameworks
2.3.4.2. Technological Advancements
2.3.4.3. Environmental Considerations
2.3.4.4. Consumer Awareness & Acceptance
2.4. Estimation Methodology
2.5. Years Considered for the Study
2.6. Currency Conversion Rates

Chapter 3. Global Causal AI Market Dynamics
3.1. Market Drivers
3.1.1. Importance of Causal Inference Models
3.1.2. Emergence of Causal AI
3.1.3. Operationalizing AI Initiatives
3.2. Market Challenges
3.2.1. Causal Inference from Complex Data Sets
3.3. Market Opportunities
3.3.1. Advancements in AI Technologies
3.3.2. Government Initiatives
3.3.3. Growing Investments

Chapter 4. Global Causal AI Market Industry Analysis
4.1. Porter’s 5 Force Model
4.1.1. Bargaining Power of Suppliers
4.1.2. Bargaining Power of Buyers
4.1.3. Threat of New Entrants
4.1.4. Threat of Substitutes
4.1.5. Competitive Rivalry
4.1.6. Futuristic Approach to Porter’s 5 Force Model
4.1.7. Porter’s 5 Force Impact Analysis
4.2. PESTEL Analysis
4.2.1. Political
4.2.2. Economical
4.2.3. Social
4.2.4. Technological
4.2.5. Environmental
4.2.6. Legal
4.3. Top investment opportunity
4.4. Top winning strategies
4.5. Disruptive Trends
4.6. Industry Expert Perspective
4.7. Analyst Recommendation & Conclusion

Chapter 5. Global Causal AI Market Size & Forecasts by Offering 2022-2032
5.1. Segment Dashboard
5.2. Global Causal AI Market: Offering Revenue Trend Analysis, 2022 & 2032 (USD Million)
5.2.1. Platform
5.2.2. Services

Chapter 6. Global Causal AI Market Size & Forecasts by Vertical 2022-2032
6.1. Segment Dashboard
6.2. Global Causal AI Market: Vertical Revenue Trend Analysis, 2022 & 2032 (USD Million)
6.2.1. Healthcare & Lifesciences
6.2.2. BFSI
6.2.3. Retail & eCommerce
6.2.4. Transportation & Logistics
6.2.5. Manufacturing
6.2.6. Other Verticals

Chapter 7. Global Causal AI Market Size & Forecasts by Region 2022-2032
7.1. North America Causal AI Market
7.1.1. U.S. Causal AI Market
7.1.1.1. Offering breakdown size & forecasts, 2022-2032
7.1.1.2. Vertical breakdown size & forecasts, 2022-2032
7.1.2. Canada Causal AI Market
7.2. Europe Causal AI Market
7.2.1. U.K. Causal AI Market
7.2.2. Germany Causal AI Market
7.2.3. France Causal AI Market
7.2.4. Spain Causal AI Market
7.2.5. Italy Causal AI Market
7.2.6. Rest of Europe Causal AI Market
7.3. Asia-Pacific Causal AI Market
7.3.1. China Causal AI Market
7.3.2. India Causal AI Market
7.3.3. Japan Causal AI Market
7.3.4. Australia Causal AI Market
7.3.5. South Korea Causal AI Market
7.3.6. Rest of Asia Pacific Causal AI Market
7.4. Latin America Causal AI Market
7.4.1. Brazil Causal AI Market
7.4.2. Mexico Causal AI Market
7.4.3. Rest of Latin America Causal AI Market
7.5. Middle East & Africa Causal AI Market
7.5.1. Saudi Arabia Causal AI Market
7.5.2. South Africa Causal AI Market
7.5.3. Rest of Middle East & Africa Causal AI Market

Chapter 8. Competitive Intelligence
8.1. Key Company SWOT Analysis
8.1.1. Company 1
8.1.2. Company 2
8.1.3. Company 3
8.2. Top Market Strategies
8.3. Company Profiles
8.3.1. IBM
8.3.1.1. Key Information
8.3.1.2. Overview
8.3.1.3. Financial (Subject to Data Availability)
8.3.1.4. Product Summary
8.3.1.5. Market Strategies
8.3.2. CausaLens
8.3.3. Microsoft
8.3.4. Causaly
8.3.5. Google
8.3.6. Geminos
8.3.7. AWS
8.3.8. Aitia
8.3.9. Xplain Data
8.3.10. INCRMNTAL
8.3.11. Logility
8.3.12. Cognino.ai

Chapter 9. Research Process
9.1. Research Process
9.1.1. Data Mining
9.1.2. Analysis
9.1.3. Market Estimation
9.1.4. Validation
9.1.5. Publishing
9.2. Research Attributes

At Bizwit Research and Consultancy, we employ a thorough and iterative research methodology with the goal of minimizing discrepancies, ensuring the provision of highly accurate estimates and predictions over the forecast period. Our approach involves a combination of bottom-up and top-down strategies to effectively segment and estimate quantitative aspects of the market, utilizing our proprietary data & AI tools. Our Proprietary Tools allow us for the creation of customized models specific to the research objectives. This enables us to develop tailored statistical models and forecasting algorithms to estimate market trends, future growth, or consumer behavior. The customization enhances the accuracy and relevance of the research findings.
We are dedicated to clearly communicating the purpose and objectives of each research project in the final deliverables. Our process begins by identifying the specific problem or challenge our client wishes to address, and from there, we establish precise research questions that need to be answered. To gain a comprehensive understanding of the subject matter and identify the most relevant trends and best practices, we conduct an extensive review of existing literature, industry reports, case studies, and pertinent academic research.
Critical elements of methodology employed for all our studies include:
Data Collection:
To determine the appropriate methods of data collection based on the research objectives, we consider both primary and secondary sources. Primary data collection involves gathering information directly from various industry experts in core and related fields, original equipment manufacturers (OEMs), vendors, suppliers, technology developers, alliances, and organizations. These sources encompass all segments of the value chain within the specific industry. Through in-depth interviews, we engage with key industry participants, subject-matter experts, C-level executives of major market players, industry consultants, and other relevant experts. This allows us to obtain and validate critical qualitative and quantitative information while evaluating market prospects. AI and Big Data are instrumental in our primary research, providing us with powerful tools to collect, analyze, and derive insights from data efficiently. These technologies contribute to the advancement of research methodologies, enabling us to make data-driven decisions and uncover valuable findings.
In addition to primary sources, we extensively utilize secondary sources to enhance our research. These include directories, databases, journals focusing on related industries, company newsletters, and information portals such as Bloomberg, D&B Hoovers, and Factiva. These secondary sources enable us to identify and gather valuable information for our comprehensive, technical, market-oriented, and commercial study of the market. Additionally, we utilize AI algorithms to automate the collection of vast amounts of data from various sources such as surveys, social media platforms, online transactions, and web scraping. And employ Big Data technologies for storage and processing of large datasets, ensuring that no valuable information is missed during the data collection process.
Data Analysis:
Our team of experts carefully examine the gathered data using suitable statistical techniques and qualitative analysis methods. For quantitative analysis, we employ descriptive statistics, regression analysis, and other advanced statistical methods, depending on the characteristics of the data. This analysis may also incorporate the utilization of AI tools and big data analysis techniques to extract meaningful insights.
To ensure the accuracy and reliability of our findings, we extensively leverage data science techniques, which help us minimize discrepancies and uncertainties in our analysis. We employ Data Science to clean and preprocess the data, ensuring its quality and reliability. This involves handling missing data, removing outliers, standardizing variables, and transforming data into suitable formats for analysis. The application of data science techniques enhances our accuracy, efficiency, and depth of analysis, enabling us to stay competitive in dynamic market environments.
Market Size Estimation:
Our proprietary data tools play a crucial role in deriving our market estimates and forecasts. Each study involves the creation of a unique and customized model. The model incorporates the gathered information on market dynamics, technology landscape, application development, and pricing trends. AI techniques, such as machine learning and deep learning, aid us to analyze patterns within the data to identify correlations, trends, and relationships. By recognizing patterns in consumer behavior, purchasing habits, or market dynamics, our AI algorithms aid us in more precise estimations of market size. These factors are simultaneously analyzed within the model, allowing for a comprehensive assessment. To quantify their impact over the forecast period, correlation, regression, and time series analysis are employed.
To estimate and validate the market size, we employ both top-down and bottom-up approaches. The preference is given to a bottom-up approach, where key regional markets are analyzed as separate entities. This data is then integrated to obtain global estimates. This approach is crucial as it provides a deep understanding of the industry and helps minimize errors.
In our forecasting process, we consider various parameters such as economic tools, technological analysis, industry experience, and domain expertise. By taking all these factors into account, we strive to produce accurate and reliable market forecasts. When forecasting, we take into consideration several parameters, which include:
Market driving trends and favorable economic conditions
Restraints and challenges that are expected to be encountered during the forecast period.
Anticipated opportunities for growth and development
Technological advancements and projected developments in the market
Consumer spending trends and dynamics
Shifts in consumer preferences and behaviors.
The current state of raw materials and trends in supply versus pricing
Regulatory landscape and expected changes or developments.
The existing capacity in the market and any expected additions or expansions up to the end of the forecast period.
To assess the market impact of these parameters, we assign weights to each one and utilize weighted average analysis. This process allows us to quantify their influence on the market and derive an expected growth rate for the forecasted period. By considering these various factors and applying a weighted analysis approach, we strive to provide accurate and reliable market forecasts.
Insight Generation & Report Presentation:
After conducting the research, our experts analyze the findings in relation to the research objectives and the specific needs of the client. They generate valuable insights and recommendations that directly address the client’s business challenges. These insights are carefully connected to the research findings to provide a comprehensive understanding.
Next, we create a well-structured research report that effectively communicates the research findings, insights, and recommendations to the client. To enhance clarity and comprehension, we utilize visual aids such as charts, graphs, and tables. These visual elements are employed to present the data in an engaging and easily understandable format, ensuring that the information is accessible and visually appealing to the client. Our aim is to deliver a clear and concise report that conveys the research findings effectively and provides actionable recommendations to meet the client’s specific needs.

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Global Causal AI Market to reach USD 572.65 million by 2032 - Bizwit Research & Consulting LLP (4)

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Global Causal AI Market to reach USD 572.65 million by 2032 - Bizwit Research & Consulting LLP (2024)

FAQs

What is the global market value of AI? ›

The global artificial intelligence (AI) market size was estimated at US$ 119.78 billion in 2022 and it is expected to hit US$ 1,591.03 billion by 2030 with a registered CAGR of 38.1% from 2022 to 2030. The North America artificial intelligence market was valued at USD 51 billion in 2021.

What is the global AI market in 2030? ›

AI market size worldwide from 2020-2030 (in billion U.S. dollars) The market for artificial intelligence grew beyond 184 billion U.S. dollars in 2024, a considerable jump of nearly 50 billion compared to 2023. This staggering growth is expected to continue with the market racing past 826 billion U.S. dollars in 2030.

Which artificial intelligence software market to reach $126.0 billion in annual worldwide revenue by 2025? ›

AI service revenue will have increased by over 6x in the space of 5 years (Omdia) In 2020, AI services generated approximately $19.4 billion in revenue. In 2022, the market was estimated to grow to $62.5 billion. And by 2025, the AI space is forecast to reach $126 billion in annual revenue.

What companies are using causal AI? ›

The major vendors in the global market for Causal AI are IBM (US), CausaLens (UK), Microsoft (US), Causaly (UK), Google (US), Geminos (US), AWS (US), Aitia (US), Xplain Data (Germany), INCRMNTAL (Israel), Logility (US), Cognino.ai.

How big is the AI market McKinsey? ›

McKinsey research estimates that gen AI could add to the economy between $2.6 trillion and $4.4 trillion annually while increasing the impact of all artificial intelligence by 15 to 40 percent.

How big is the trustworthy AI market? ›

AI Trust, Risk and Security Management Market size was valued at USD 2.1 billion in 2023 and is estimated to register a CAGR of over 16.5% between 2024 and 2032.

What jobs will AI replace by 2030? ›

At a glance, here are the jobs at risk of being replaced by 2030:
  • Transportation and Warehousing. ...
  • Food Service and Retail. ...
  • Office and Admin Support Roles. ...
  • Sales and Marketing. ...
  • Healthcare and Social Assistance Roles. ...
  • Design and Visual Arts. ...
  • Healthcare Professionals. ...
  • Education Professionals.
Mar 15, 2024

What will AI do in 100 years? ›

Artificial intelligence will likely be able to find smart and practical solutions for every major and small problem faced by humans including hunger, disease, environmental degradation, inequitable distribution of economic resources, transportation gridlocks, housing, and everything else that you can think of.

How powerful will AI be in 2030? ›

By 2030, AI will be unfathomably more powerful than humans in ways that will transform our world. It will also continue to lag human capabilities in other ways.

Which country invests most in AI? ›

The US invested the most in AI, with $328,548 billion.

Each country has invested in Artificial Intelligence, but the United States holds the most prominent investment—with $328,548 billion spent in the last five years.

Is AI a booming industry? ›

The market for AI technologies is vast, amounting to around 200 billion U.S. dollars in 2023 and is expected to grow well beyond that to over 1.8 trillion U.S. dollars by 2030.

How much will AI add to the global economy? ›

What comes through strongly from all the analysis we've carried out for this report is just how big a game changer AI is likely to be, and how much value potential is up for grabs. AI could contribute up to $15.7 trillion1 to the global economy in 2030, more than the current output of China and India combined.

What is the difference between causal AI and AI? ›

Correlation-based AI can make only predictions with limited ability to explain an event. Causal AI, on the other hand, provides details on how it arrived at a conclusion. Correlation-based AI needs to be checked for bias due to the limitations of various data, algorithms, or sampling.

What is a famous causal AI network? ›

Causal AI - SwissCognitive, World-Leading AI Network.

What is the future of causal AI? ›

The future of enterprise decision-making

With the application of causal AI, enterprises can address any cause-and-effect challenge. The confluence of causal AI and genAI offers enterprises the dual advantages of speed and accuracy, enabling them to navigate complex decisions confidently and at pace.

How much of the market is traded by AI? ›

For example, algorithmic trading in the U.S. stock market constitutes approximately 60-75% of total trading volume, according to Quantified Strategies.

What is the global index on AI? ›

The Global Index assesses steps both state and non-state actors have taken in relation to responsible AI across three dimensions, nine sub-dimensions, and twenty-nine thematic areas, which are then measured across four pillars: frameworks, government actions, activities of non-state actors, and responsible AI ...

What is the real value of AI? ›

AI systems can discover, source, and structure data both inside and outside the organization providing high-quality insights into every stage of the product life cycle. This way, technologies can aid people in making decisions or taking action, enabling them to perform their tasks faster and better.

What is the value of AI to the economy? ›

Finance. The use of Gen AI in finance is expected to increase global gross domestic product (GDP) by 7% or nearly $7 trillion. It should boost productivity growth by 1.5%, according to Goldman Sachs Research.

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