Combined, China had the highest rate of exploring and deploying artificial intelligence (AI) globally in 2022. It was followed closely by India and Singapore. This lead was also marked when accounting only for the deployment of AI in organizations in China, with India following. Both nations had a nearly ** percent deployment rate. When accounting only for exploration, however, the leading nations were Canada and the United States. AI in Europe on the rise Europe contains an exceptionally vibrant technology sector. This is particularly true in the field of AI, where funding for startups specializing in this high-demand technology stood at more than *** billion U.S. dollars in late 2022. Many of Europe’s major economies are leaders in the exploration and deployment of AI and are ahead of the global curve. Opportunities for early adopters Those businesses that begin using AI early will find it easier to reap the benefits. The most desirable effect, or at least the one that directly affects most businesses, is a revenue increase as it underpins the whole of their business model. The most important benefit of AI usage in enterprises is in supply chain management and human resources. Major improvements to supply chains provide a major boost to revenue by using AI to map out idiosyncrasies and problematic stops. When it comes to human resources, the use of AI can drastically reduce time in hiring cycles by enabling AI-driven algorithms to select those candidates whose resume most aligns with the job requirements.
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Our most comprehensive database of AI models, containing over 800 models that are state of the art, highly cited, or otherwise historically notable. It tracks key factors driving machine learning progress and includes over 300 training compute estimates.
The results of a survey conducted among global students in July 2024 show that helping with resume and cover letter writing is the most common use case for artificial intelligence tools among higher education students. ********** of respondents also said they used AI to assist them in writing, for personalized content recommendations, and research. All in all, ** percent of students worldwide admit to using AI in their schoolwork.
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As large language models (LLMs) such as GPT have become more accessible, concerns about their potential effects on students’ learning have grown. In data science education, the specter of students’ turning to LLMs raises multiple issues, as writing is a means not just of conveying information but of developing their statistical reasoning. In our study, we engage with questions surrounding LLMs and their pedagogical impact by: (a) quantitatively and qualitatively describing how select LLMs write report introductions and complete data analysis reports; and (b) comparing patterns in texts authored by LLMs to those authored by students and by published researchers. Our results show distinct differences between machine-generated and human-generated writing, as well as between novice and expert writing. Those differences are evident in how writers manage information, modulate confidence, signal importance, and report statistics. The findings can help inform classroom instruction, whether that instruction is aimed at dissuading the use of LLMs or at guiding their use as a productivity tool. It also has implications for students’ development as statistical thinkers and writers. What happens when they offload the work of data science to a model that doesn’t write quite like a data scientist? Supplementary materials for this article are available online.
Integrated Systems Health Management includes as key elements fault detection, fault diagnostics, and failure prognostics. Whereas fault detection and diagnostics have been the subject of considerable emphasis in the Artificial Intelligence (AI) community in the past, prognostics has not enjoyed the same attention. The reason for this lack of attention is in part because prognostics as a discipline has only recently been recognized as a game-changing technology that can push the boundary of systems health management. This paper provides a survey of AI techniques applied to prognostics. The paper is an update to our previously published survey of data-driven prognostics.
The statistic shows the cumulative revenues from the ten leading artificial intelligence (AI) use cases worldwide, between 2016 and 2025. Over the ten years between 2016 and 2025, AI software for vehicular object detection, identification, and avoidance is expected to generate * billion U.S. dollars.
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Global Artificial Intelligence Data Center Market Report is Segmented by Data Center Type (CSP Data Centers, Colocation Data Centers, Others (Enterprise and Edge)), by Component (Hardware, Software Technology, Services - (Managed Services, Professional Services, Etc. )). ). The Report Offers the Market Size and Forecasts for all the Above Segments in Terms of Value (USD).
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Jasper AI Statistics:Â Jasper AI has emerged as a leading generative AI platform, significantly transforming content creation and marketing workflows. By 2024, the company reported over 100,000 active users and more than 850 enterprise clients. Its revenue reached approximately USD 142.9 million, reflecting substantial growth from previous years.
To enhance productivity, Jasper AI introduced over 80 AI applications and launched Marketing Workflow Automation tools. With a total funding of USD 131 million and a valuation of USD 1.5 billion as of early 2024, Jasper AI continues to be a pivotal tool for businesses aiming to optimize their content strategies and achieve better marketing outcomes.
On this account, the article looks at some key Jasper AI statistics and trends for 2024, depicting the evolution and influence.
Tech, media, and telecoms industries were the most diligent adopters of AI in 2024, with some ** percent of respondents using AI in their business. AI was most used in the product and/or service development functions, with only those working in consumer goods and retail using it less than ** percent.
Business's use of Generative AI, by North American Industry Classification System (NAICS), business employment size, type of business, business activity and majority ownership, first quarter of 2024.
Survey of advanced technology, applications related to artificial intelligence technologies, by North American Industry Classification System (NAICS) and enterprise size for Canada and certain provinces, in 2022.
Artificial intelligence (AI) holds tremendous promise to benefit nearly all aspects of society, including the economy, healthcare, security, the law, transportation, even technology itself. On February 11, 2019, the President signed Executive Order 13859, Maintaining American Leadership in Artificial Intelligence. This order launched the American AI Initiative, a concerted effort to promote and protect AI technology and innovation in the United States. The Initiative implements a whole-of-government strategy in collaboration and engagement with the private sector, academia, the public, and like-minded international partners. Among other actions, key directives in the Initiative call for Federal agencies to prioritize AI research and development (R&emp;D) investments, enhance access to high-quality cyberinfrastructure and data, ensure that the Nation leads in the development of technical standards for AI, and provide education and training opportunities to prepare the American workforce for the new era of AI. In support of the American AI Initiative, this National AI R&emp;D Strategic Plan: 2019 Update defines the priority areas for Federal investments in AI R&emp;D. This 2019 update builds upon the first National AI R&emp;D Strategic Plan released in 2016, accounting for new research, technical innovations, and other considerations that have emerged over the past three years. This update has been developed by leading AI researchers and research administrators from across the Federal Government, with input from the broader civil society, including from many of America’s leading academic research institutions, nonprofit organizations, and private sector technology companies. Feedback from these key stakeholders affirmed the continued relevance of each part of the 2016 Strategic Plan while also calling for greater attention to making AI trustworthy, to partnering with the private sector, and other imperatives.
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This dataset is a collection of data and code used in the article AI-Boosted ESG: Transforming Enterprise ESG Performance Through Artificial Intelligence. The hypotheses of this paper include: 1. AI can promote ESG performance; 2.AI can improve ESG performance by improving green technology innovation, labor employment quality and analyst attention, as well as reducing management expense rate; 3. The enhancement effect of AI on ESG performance is more obvious in large-scale enterprises, manufacturing enterprises and enterprises in the eastern region. This dataset includes the three relevant tests above, as well as the relevant procedure codes for several robustness tests, including changing the AI word frequency statistics, using the multi-time-point difference-in-differences model, changing the model type to Tobit model, lagging one stage, and shortening the sample period. The data provided is collated to a certain extent. If you need specific original data or some other related material, you can contact corresponding author Jiayi Yu to ask for it at yu_jiayi20@126.com.
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The Global AI Data Management Market size was valued at around USD 23.8 billion in 2023 & is estimated to grow at a CAGR of around 24% during the forecast period 2024-30.
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The global data intelligence platform market size was valued at approximately $10 billion in 2023, with an anticipated growth to reach $25.2 billion by 2032, growing at a robust CAGR of 11%. The market's growth is predominantly driven by the increasing demand for data-driven decision-making processes and the need for advanced analytics tools across various industries.
The surge in the adoption of data intelligence platforms is largely influenced by advancements in big data technologies and the growing importance of data governance and security. Organizations across sectors such as BFSI, healthcare, and retail are increasingly leveraging data intelligence solutions to enhance operational efficiency, personalize customer experiences, and drive strategic initiatives. The integration of AI and machine learning with data intelligence platforms has further fueled market growth by providing predictive insights and automation capabilities.
Another significant growth factor is the proliferation of cloud-based solutions, which offer scalability, cost-efficiency, and ease of deployment. Cloud-based data intelligence platforms allow organizations to handle large volumes of data and perform complex analytics without the need for extensive on-premises infrastructure. The shift towards cloud computing is also driven by the growing need for remote working capabilities and digital transformation initiatives, further propelling market expansion.
Moreover, regulatory compliance and the emphasis on data protection laws such as GDPR in Europe and CCPA in the United States have compelled organizations to adopt robust data intelligence solutions. These platforms help ensure that data management practices align with regulatory requirements, thereby mitigating risks and enhancing data security. The rising awareness of the importance of data integrity and privacy is expected to drive the adoption of data intelligence platforms across various sectors.
The emergence of AI-Driven Analytics Platform is revolutionizing the way organizations approach data intelligence. These platforms leverage artificial intelligence to automate complex data processes, providing businesses with real-time insights and predictive analytics. By integrating AI capabilities, companies can enhance their decision-making processes, optimize operations, and gain a competitive edge in the market. The ability to analyze vast amounts of data quickly and accurately allows organizations to identify trends, detect anomalies, and make informed decisions that drive business growth. As AI technology continues to evolve, the potential for AI-Driven Analytics Platforms to transform industries and unlock new opportunities is immense.
Regionally, North America dominates the data intelligence platform market, owing to the presence of leading technology providers and high adoption rates of advanced analytics solutions. The Asia Pacific region is also witnessing significant growth due to the rapid digitalization of enterprises and increased investments in data infrastructure. Europe, on the other hand, is experiencing steady growth driven by stringent data protection regulations and the increasing adoption of cloud-based solutions.
The data intelligence platform market by component is bifurcated into software and services. The software segment holds a major share in the market, driven by the increased demand for advanced analytics, business intelligence tools, and data management solutions. Software components include various types of analytics platforms, data integration tools, and AI-driven data intelligence solutions. Organizations are investing heavily in these software solutions to gain real-time insights, enhance decision-making processes, and improve overall operational efficiency.
Within the software segment, AI and machine learning-based applications have seen significant traction. These applications enable predictive analytics, automate routine data processing tasks, and provide deeper insights into business trends and customer behaviors. The integration of AI has revolutionized data intelligence platforms by making them more intuitive, efficient, and capable of handling large datasets with ease. This trend is expected to continue, with more companies adopting AI-enabled software solutions to stay competitive.
On the other hand, the services segme
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Crash Statistics are summarized crash statistics for large trucks and buses involved in fatal and non-fatal Crashes that occurred in the United States. These statistics are derived from two sources: the Fatality Analysis Reporting System (FARS) and the Motor Carrier Management Information System (MCMIS). Crash Statistics contain information that can be used to identify safety problems in specific geographical areas or to compare state statistics to the national crash figures.
Data for Artificial Intelligence: Data-Centric AI for Transportation: Work Zone Use Case proposes a data integration pipeline that enhances the utilization of work zone and traffic data from diversified platforms and introduces a novel deep learning model to predict the traffic speed and traffic collision likelihood during planned work zone events. This dataset is raw Maryland roadway incident data without rows where road_tmc and road are inconsistent.
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The global data preparation software market is estimated at USD 579.3 million in 2025 and is expected to witness a compound annual growth rate (CAGR) of 8.1% from 2025 to 2033. Factors such as increasing data volumes, growing demand for data-driven insights, and the adoption of artificial intelligence (AI) and machine learning (ML) technologies are driving the growth of the market. Additionally, the rising need for data privacy and security regulations is also contributing to the demand for data preparation software. The market is segmented by application into large enterprises and SMEs, and by type into cloud-based and web-based. The cloud-based segment is expected to hold the largest market share during the forecast period due to its benefits such as ease of use, scalability, and cost-effectiveness. The market is also segmented by region into North America, South America, Europe, the Middle East and Africa, and Asia Pacific. North America is expected to account for the largest market share, followed by Europe. The Asia Pacific region is expected to witness the fastest growth during the forecast period. Key players in the market include Alteryx, Altair Monarch, Tableau Prep, Datameer, IBM, Oracle, Palantir Foundry, Podium, SAP, Talend, Trifacta, Unifi, and others. Data preparation software tools assist organizations in transforming raw data into a usable format for analysis, reporting, and storage. In 2023, the market size is expected to exceed $10 billion, driven by the growing adoption of AI, cloud computing, and machine learning technologies.
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The Artificial Intelligence Non-Player Character (NPC) market is rapidly evolving, driven by advancements in machine learning, natural language processing, and computer graphics. As video games, virtual reality (VR), and simulations become increasingly immersive, AI NPCs are revolutionizing the way players interact
Combined, China had the highest rate of exploring and deploying artificial intelligence (AI) globally in 2022. It was followed closely by India and Singapore. This lead was also marked when accounting only for the deployment of AI in organizations in China, with India following. Both nations had a nearly ** percent deployment rate. When accounting only for exploration, however, the leading nations were Canada and the United States. AI in Europe on the rise Europe contains an exceptionally vibrant technology sector. This is particularly true in the field of AI, where funding for startups specializing in this high-demand technology stood at more than *** billion U.S. dollars in late 2022. Many of Europe’s major economies are leaders in the exploration and deployment of AI and are ahead of the global curve. Opportunities for early adopters Those businesses that begin using AI early will find it easier to reap the benefits. The most desirable effect, or at least the one that directly affects most businesses, is a revenue increase as it underpins the whole of their business model. The most important benefit of AI usage in enterprises is in supply chain management and human resources. Major improvements to supply chains provide a major boost to revenue by using AI to map out idiosyncrasies and problematic stops. When it comes to human resources, the use of AI can drastically reduce time in hiring cycles by enabling AI-driven algorithms to select those candidates whose resume most aligns with the job requirements.