During a survey carried out between September 2022 and January 2023, answers of responding marketing managers from Austria, Germany, and Switzerland revealed that in the future, artificial intelligence (AI) would be most intensively used around consumer insights, followed by marketing execution. The respondents foresaw the least intensive usage in strategy.
By 2027, most investment in AI-powered technologies will involve demand forecasting and spend analysis in procurement departments. A survey indicated that about 40 percent of B2B professionals envisaged investments in the two adoption areas. The same percentage of respondents planned to adopt AI tools to automate procurement processes.
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Artificial Intelligence will make a big difference in the future. But how is it used right now?
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AI has already changed and will continue to change the way that we live. These are the latest Artificial Intelligence statistics you need to know.
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The largest impact that AI will make is on the current workforce. AI will automate tasks and even entire jobs that humans have previously done.
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According to Cognitive Market Research, the global AI Infrastructure Market size is USD 4.0 billion in 2024 and will expand at a compound annual growth rate (CAGR) of 22.6% from 2024 to 2031. Market Dynamics of AI Infrastructure Market
Key Drivers for AI Infrastructure Market
Explosive Growth in AI Workloads and Data Volumes: The rapid expansion of AI applications—ranging from natural language processing and computer vision to predictive analytics—is increasing the need for robust and scalable infrastructure. Organizations are making significant investments in high-performance computing (HPC), GPUs, and specialized AI accelerators to facilitate the training and inference of large-scale machine learning and deep learning models.
Rising Enterprise Adoption of AI for Business Optimization: Businesses across various sectors—including healthcare, finance, manufacturing, and retail—are utilizing AI to enhance decision-making, automation, and customer experiences. This increase in enterprise AI implementations drives the demand for infrastructure solutions such as AI-optimized data centers, cloud AI services, and edge AI hardware capable of efficiently handling real-time, mission-critical AI workloads.
Cloud Providers Driving Infrastructure Innovation and Access: Prominent cloud platforms (such as AWS, Azure, and Google Cloud) are enhancing the accessibility of advanced AI infrastructure through scalable GPU clusters, TPUs, and AI-as-a-service offerings. This alleviates hardware constraints for businesses and accelerates AI experimentation and deployment among startups, SMEs, and large enterprises worldwide.
Key Restraints for AI Infrastructure Market
High Capital and Operational Costs of AI Infrastructure: Establishing and sustaining AI infrastructure—whether on-premises or in the cloud—necessitates a substantial investment in GPUs, networking, storage, and cooling systems. For smaller organizations, the expenses associated with creating or subscribing to AI-ready environments can be overwhelming, particularly as AI workloads become increasingly complex and expansive.
Data Privacy and Security Concerns in AI Workflows: Managing sensitive information for AI applications, particularly in sectors such as healthcare, finance, and government, presents significant security challenges. Ensuring adherence to data protection regulations like GDPR or HIPAA necessitates a secure, privacy-conscious infrastructure, which may restrict cloud-based implementations and heighten dependence on expensive, private on-premises solutions.
Talent Shortage for Managing AI Infrastructure: The deployment and optimization of AI infrastructure require specialized knowledge in data engineering, distributed systems, and the fine-tuning of AI frameworks. The global scarcity of qualified professionals in these areas creates a bottleneck for organizations seeking to expand their AI operations and fully leverage advanced infrastructure capabilities.
Key Trends in AI Infrastructure Market
Shift Towards AI-Optimized Chips and Custom Silicon: To enhance speed and energy efficiency, chip manufacturers are creating specialized processors such as AI accelerators, TPUs, and neuromorphic chips. These dedicated chips minimize latency and power usage, facilitating quicker model training and inference across edge devices, data centers, and autonomous systems.
Growth of Edge AI Infrastructure for Real-Time Applications: AI is progressively being utilized at the edge—in devices such as drones, smart cameras, and IoT sensors—for rapid decision-making with low latency. This movement is increasing the demand for compact, energy-efficient infrastructure that possesses AI inference capabilities near data sources, thereby decreasing reliance on cloud connectivity.
Integration of AI Infrastructure with Sustainable Data Centers: In light of growing concerns regarding the energy consumption of AI workloads, providers are focusing on developing greener infrastructure—employing liquid cooling, renewable energy sources, and AI-driven energy optimization. Sustainability is emerging as a crucial consideration in infrastructure planning as companies aim to scale in a responsible manner. Introduction of the AI Infrastructure Market
An AI Infrastructure is the technology that allows for machine learning. It denotes the use of artificial intelligen...
A survey held in the United States in early 2023 found that most surveyed adults believe there will be a time where entire news articles are written by artificial intelligence, with 72 percent stating that this was what they expected to happen. Respondents under the age of 55 were marginally surer that solely AI-written news articles will be part of the future of news.
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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 Artificial Intelligence (AI) market is experiencing explosive growth, projected to reach a substantial size driven by increasing adoption across diverse sectors. The 31.22% CAGR from 2019 to 2024 indicates a rapid expansion, fueled by several key factors. Technological advancements, particularly in deep learning and natural language processing, are enabling the development of more sophisticated and effective AI solutions. The rising availability of big data, coupled with enhanced computing power, further accelerates this growth. Businesses are increasingly leveraging AI for automation, predictive analytics, and improved decision-making, driving demand across industries such as healthcare, finance, and manufacturing. The cloud computing infrastructure plays a pivotal role, enabling scalable and cost-effective deployment of AI solutions. While data privacy and security concerns pose potential restraints, the overall market trajectory remains strongly positive, with significant opportunities for innovation and investment. Leading players like IBM, Intel, Microsoft, Google, Amazon, Oracle, Salesforce, SAP, and others are actively shaping the AI landscape through continuous research and development, strategic partnerships, and acquisitions. The market segmentation likely includes categories based on technology (e.g., machine learning, deep learning, computer vision), application (e.g., robotics, healthcare, finance), and deployment model (e.g., cloud, on-premise). Regional variations in adoption rates are expected, with North America and Europe likely holding significant market share initially, followed by a gradual expansion into Asia-Pacific and other regions as technology matures and affordability increases. Future growth hinges on addressing ethical considerations, ensuring responsible AI development, and fostering collaboration across academia, industry, and governments. The continued convergence of AI with other technologies, like IoT and blockchain, will further unlock new possibilities and market expansion. Recent developments include: May 2024 - IBM and Salesforce have unveiled an enhanced strategic partnership with a primary goal of advancing the utilization of artificial intelligence (AI) and data integration. This is to be achieved through the synergies of IBM's Watsonx AI and Data Platform and Salesforce's Einstein 1 Platform. The collaboration is designed to provide customers with increased flexibility in deploying AI and data solutions, empowering teams to integrate data-driven decisions into their workflows seamlessly., April 2024 - Microsoft Corp. and The Coca-Cola Company have announced a strategic partnership spanning five years. The primary goal of this collaboration is to align Coca-Cola's technology strategy throughout its operations, integrate cutting-edge technologies, and foster innovation and efficiency on a worldwide level. Notably, Coca-Cola has committed USD 1.1 billion to harness Microsoft Cloud's advanced AI features. This move underscores Coca-Cola's dedication to a technology-driven strategy, with Microsoft Cloud positioned as its central global hub for cloud services and AI.. Key drivers for this market are: Increasing Demand for Predictive Analytics Solutions, Massive Growth in Data Generation due to Technological Advancements; Growth in Adoption of Cloud-based Applications and Services; Rising Demand for Enhanced Consumer Experience. Potential restraints include: Increasing Demand for Predictive Analytics Solutions, Massive Growth in Data Generation due to Technological Advancements; Growth in Adoption of Cloud-based Applications and Services; Rising Demand for Enhanced Consumer Experience. Notable trends are: Growth in Adoption of Cloud-based Applications and Services is Expected to Drives the Market Growth.
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According to Cognitive Market Research, The global Ai and Analytics Systems market size is USD XX million in 2023 and will expand at a compound annual growth rate (CAGR) of 38.20% from 2023 to 2030.
The demand for AI and Analytics Systems is rising due to the rising demand for data-driven decision-making and advancements in artificial Intelligence technologies.
Demand for Business Analytics remains higher in the AI and Analytics Systems market.
The Large Enterprises category held the highest AI and Analytics Systems market revenue share in 2023.
North American Ai and Analytics Systems will continue to lead, whereas the Asia-Pacific Ai and Analytics Systems market will experience the most substantial growth until 2030.
Growing Demand for Data-driven Decision-making to Provide Viable Market Output
The increasing recognition of the value of data-driven decision-making acts as a significant driver for the AI and Analytics Systems market. Organizations across industries are leveraging advanced analytics and AI technologies to extract actionable insights from large datasets. This demand is fuelled by the need to gain a competitive edge, enhance operational efficiency, and respond swiftly to market dynamics. AI-driven analytics systems enable businesses to uncover patterns, trends, and correlations in data, empowering decision-makers with valuable information to formulate strategies and make informed choices.
In July 2022, NBFC-giant HDFC on Tuesday announced its partnership with the leading customer relationship management (CRM) platform, Salesforce, to support its growth priorities. HDFC stated that Mulesoft's innovative API-led integration approach and low code integration capabilities would help the company innovate quickly around connecting systems and help create new experiences.
(Source:www.livemint.com/companies/news/hdfc-partners-with-salesforce-to-support-growth-11657024820434.html)
Rise of Predictive and Prescriptive Analytics to Propel Market Growth
The surge in demand for predictive and prescriptive analytics is a key driver propelling the AI and Analytics Systems market forward. Businesses are increasingly adopting AI-powered analytics tools to move beyond descriptive analytics and delve into predictive and prescriptive capabilities. Predictive analytics helps forecast future trends and outcomes, aiding in proactive decision-making. On the other hand, prescriptive analytics recommends actions to optimize results based on predictive insights. As organizations seek more sophisticated ways to leverage data, the integration of AI into analytics systems becomes crucial for deriving actionable foresight and strategic recommendations.
Market Restraints of the AI and Analytics Systems
Data Security Concerns to Restrict Market Growth
one prominent driver is the growing concern over data security. As organizations increasingly rely on advanced analytics and artificial intelligence to derive insights from massive datasets, the need to secure sensitive information becomes paramount. Instances of high-profile data breaches and cyber threats have raised apprehensions among businesses and consumers alike. This heightened awareness of data security risks acts as a driver, prompting investments in AI and analytics solutions that offer robust encryption, authentication, and other security measures. This demand for secure systems aims to mitigate the potential risks associated with handling vast amounts of sensitive data.
Demand for AI anlaytics systems is rising due to the increasing demand for the autonomous AI programs
Impact of COVID–19 on the AI and Analytics Systems Market
The COVID-19 pandemic has had a profound impact on the AI and Analytics Systems market. While initially, there was a slowdown in some sectors due to economic uncertainties, the pandemic ultimately accelerated the adoption of AI and analytics solutions across various industries. Organizations recognized the critical need for advanced data analytics and AI-driven insights to navigate the unprecedented challenges posed by the pandemic. This led to increased investment in AI and analytics systems to enhance business resilience, optimize operations, and gain real-time insights into rapidly changing market conditions. The demand for solutions facilitating remote work, predictive analytics for supply chain management, and AI-powered healthcare applications surged. As businesses adapted t...
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The Artificial Intelligence (AI) in Fintech market has rapidly evolved, becoming an integral part of financial services worldwide. With a current market size estimated at approximately $7 billion, AI technologies are revolutionizing how financial institutions manage operations, assess risk, enhance customer experien
In a survey conducted between July and September 2023 in India, more than two thirds of the respondents who were CIOs and CTOs of leading businesses stated their companies would increase spending in the next year on artificial intelligence (AI) and machine learning (ML). On the other hand, only ** percent of the respondents were not decided on future spending on AI and ML.
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The Artificial Intelligence in Information market is rapidly evolving, reshaping how businesses and organizations manage and utilize data. As we move further into the digital age, the integration of AI technologies into information management systems has become essential for improving efficiency, accuracy, and decis
Executive Summary: Artificial intelligence (AI) is a transformative technology that holds promise for tremendous societal and economic benefit. AI has the potential to revolutionize how we live, work, learn, discover, and communicate. AI research can further our national priorities, including increased economic prosperity, improved educational opportunities and quality of life, and enhanced national and homeland security. Because of these potential benefits, the U.S. government has invested in AI research for many years. Yet, as with any significant technology in which the Federal government has interest, there are not only tremendous opportunities but also a number of considerations that must be taken into account in guiding the overall direction of Federally-funded R&D in AI. On May 3, 2016,the Administration announced the formation of a new NSTC Subcommittee on Machine Learning and Artificial intelligence, to help coordinate Federal activity in AI.1 This Subcommittee, on June 15, 2016, directed the Subcommittee on Networking and Information Technology Research and Development (NITRD) to create a National Artificial Intelligence Research and Development Strategic Plan. A NITRD Task Force on Artificial Intelligence was then formed to define the Federal strategic priorities for AI R&D, with particular attention on areas that industry is unlikely to address. This National Artificial Intelligence R&D Strategic Plan establishes a set of objectives for Federallyfunded AI research, both research occurring within the government as well as Federally-funded research occurring outside of government, such as in academia. The ultimate goal of this research is to produce new AI knowledge and technologies that provide a range of positive benefits to society, while minimizing the negative impacts. To achieve this goal, this AI R&D Strategic Plan identifies the following priorities for Federally-funded AI research: Strategy 1: Make long-term investments in AI research. Prioritize investments in the next generation of AI that will drive discovery and insight and enable the United States to remain a world leader in AI. Strategy 2: Develop effective methods for human-AI collaboration. Rather than replace humans, most AI systems will collaborate with humans to achieve optimal performance. Research is needed to create effective interactions between humans and AI systems. Strategy 3: Understand and address the ethical, legal, and societal implications of AI. We expect AI technologies to behave according to the formal and informal norms to which we hold our fellow humans. Research is needed to understand the ethical, legal, and social implications of AI, and to develop methods for designing AI systems that align with ethical, legal, and societal goals. Strategy 4: Ensure the safety and security of AI systems. Before AI systems are in widespread use, assurance is needed that the systems will operate safely and securely, in a controlled, well-defined, and well-understood manner. Further progress in research is needed to address this challenge of creating AI systems that are reliable, dependable, and trustworthy. Strategy 5: Develop shared public datasets and environments for AI training and testing. The depth, quality, and accuracy of training datasets and resources significantly affect AI performance. Researchers need to develop high quality datasets and environments and enable responsible access to high-quality datasets as well as to testing and training resources. Strategy 6: Measure and evaluate AI technologies through standards and benchmarks. . Essential to advancements in AI are standards, benchmarks, testbeds, and community engagement that guide and evaluate progress in AI. Additional research is needed to develop a broad spectrum of evaluative techniques. Strategy 7: Better understand the national AI R&D workforce needs. Advances in AI will require a strong community of AI researchers. An improved understanding of current and future R&D workforce demands in AI is needed to help ensure that sufficient AI experts are available to address the strategic R&D areas outlined in this plan. The AI R&D Strategic Plan closes with two recommendations: Recommendation 1: Develop an AI R&D implementation framework to identify S&T opportunities and support effective coordination of AI R&D investments, consistent with Strategies 1-6 of this plan. Recommendation 2: Study the national landscape for creating and sustaining a healthy AI R&D workforce, consistent with Strategy 7 of this plan.
Cloud Artificial Intelligence (AI) Market Size 2024-2028
The cloud artificial intelligence (ai) market size is forecast to increase by USD 12.61 billion, at a CAGR of 24.1% between 2023 and 2028.
The market is experiencing significant growth, driven by the emergence of technologically advanced devices and the increasing adoption of 5G and mobile penetration. These advancements enable faster and more efficient data processing, leading to increased demand for cloud-based AI solutions. However, the market also faces challenges from open-source platforms, which offer free alternatives to proprietary AI offerings. Companies must navigate this competitive landscape by focusing on providing value-added services and maintaining a strong competitive edge through innovation and differentiation. To capitalize on market opportunities, organizations should explore applications in sectors such as healthcare, finance, and manufacturing, where AI can drive operational efficiency, enhance customer experiences, and generate new revenue streams. Effective strategic planning and a strong focus on data security will be crucial for businesses seeking to succeed in this dynamic and evolving market.
What will be the Size of the Cloud Artificial Intelligence (AI) Market during the forecast period?
Explore in-depth regional segment analysis with market size data - historical 2018-2022 and forecasts 2024-2028 - in the full report.
Request Free SampleThe market continues to evolve, driven by advancements in machine learning (ML), computer vision, and natural language processing. Bias mitigation and responsible AI are increasingly prioritized, with knowledge graphs and explainable AI (XAI) playing crucial roles in ensuring transparency and trust. Agile development and AI ethics are integral to creating ethical and unbiased AI systems. ML models are being applied across various sectors, from fraud detection and sales forecasting to speech recognition and image recognition. Data security and privacy remain paramount, with cloud computing and edge computing solutions offering secure alternatives. Deep learning (DL) and reinforcement learning are advancing rapidly, enabling more sophisticated AI applications.
Semantic reasoning and predictive analytics are transforming decision making, while AI-powered chatbots and virtual assistants enhance customer service. Data labeling and model training are essential components of AI development, with API integration streamlining deployment and model training. Risk management and predictive analytics are critical for businesses seeking to mitigate potential threats and optimize operations. The ongoing unfolding of market activities reveals a dynamic landscape, with AI regulations and governance emerging as key considerations. Sentiment analysis and text analytics offer valuable insights into customer behavior and preferences. In the ever-evolving AI ecosystem, continuous innovation and adaptation are essential. The integration of various AI technologies and applications will shape the future of business and society.
How is this Cloud Artificial Intelligence (AI) Industry segmented?
The cloud artificial intelligence (ai) industry research report provides comprehensive data (region-wise segment analysis), with forecasts and estimates in 'USD million' for the period 2024-2028, as well as historical data from 2018-2022 for the following segments. ComponentSoftwareServicesGeographyNorth AmericaUSEuropeGermanyUKAPACChinaJapanRest of World (ROW)
By Component Insights
The software segment is estimated to witness significant growth during the forecast period.Artificial Intelligence (AI) software development is a significant area of innovation in the business world, with applications ranging from automating operations to personalizing service delivery and generating insights. AI technologies, such as machine learning (ML), deep learning (DL), computer vision, speech recognition, and natural language processing, are transforming industries. Responsible AI practices, including bias mitigation and explainable AI (XAI), are crucial for building trust and ensuring fairness in AI systems. Agile development methodologies facilitate the integration of AI capabilities into existing software. Data security and privacy are paramount in AI implementations. Cloud computing and edge computing provide flexible solutions for storing and processing sensitive data. AI regulations, such as those related to data privacy and security, are shaping the market. AI ethics are also a critical consideration, with transparency and accountability essential for building trust in AI systems. AI is revolutionizing various industries, from healthcare to finance and marketing. In healthcare, AI is used for predictive analytics, sales forecasting, and fraud detection, improving patient outcomes and operational efficiency. In finance, AI is used for risk management
Complete dataset used in the research study on The Future of Artificial Intelligence in Gaming by Dr. Maria Anderson
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The Artificial Intelligence in Transportation market is rapidly evolving, driven by the integration of intelligent technologies into various facets of the transport sector. As we witness a transformative shift towards automation and data-driven decision-making, AI is proving to be a crucial component in enhancing ef
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The Artificial Intelligence (AI) in Social Media market is rapidly evolving, driven by the increasing reliance on data analytics and automation within digital marketing strategies. With a current market size valued in billions, this sector has witnessed significant growth over the past few years as businesses levera
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The Big Data Technology Market size was valued at USD 349.40 USD Billion in 2023 and is projected to reach USD 918.16 USD Billion by 2032, exhibiting a CAGR of 14.8 % during the forecast period. Big data is larger, more complex data sets, especially from new data sources. These data sets are so voluminous that traditional data processing software just can’t manage them. But these massive volumes of data can be used to address business problems that wouldn’t have been able to tackle before. Big data technology is defined as software-utility. This technology is primarily designed to analyze, process and extract information from a large data set and a huge set of extremely complex structures. This is very difficult for traditional data processing software to deal with. Among the larger concepts of rage in technology, big data technologies are widely associated with many other technologies such as deep learning, machine learning, artificial intelligence (AI), and Internet of Things (IoT) that are massively augmented. In combination with these technologies, big data technologies are focused on analyzing and handling large amounts of real-time data and batch-related data. Recent developments include: February 2024: - SQream, a GPU data analytics platform, partnered with Dataiku, an AI and machine learning platform, to deliver a comprehensive solution for efficiently generating big data analytics and business insights by handling complex data., October 2023: - MultiversX (ELGD), a blockchain infrastructure firm, formed a partnership with Google Cloud to enhance Web3’s presence by integrating big data analytics and artificial intelligence tools. The collaboration aims to offer new possibilities for developers and startups., May 2023: - Vpon Big Data Group partnered with VIOOH, a digital out-of-home advertising (DOOH) supply-side platform, to display the unique advertising content generated by Vpon’s AI visual content generator "InVnity" with VIOOH's digital outdoor advertising inventories. This partnership pioneers the future of outdoor advertising by using AI and big data solutions., May 2023: - Salesforce launched the next generation of Tableau for users to automate data analysis and generate actionable insights., March 2023: - SAP SE, a German multinational software company, entered a partnership with AI companies, including Databricks, Collibra NV, and DataRobot, Inc., to introduce the next generation of data management portfolio., November 2022: - Thai Oil and Retail Corporation PTT Oil and Retail Business Public Company implemented the Cloudera Data Platform to deliver insights and enhance customer engagement. The implementation offered a unified and personalized experience across 1,900 gas stations and 3,000 retail branches., November 2022: - IBM launched new software for enterprises to break down data and analytics silos that helped users make data-driven decisions. The software helps to streamline how users access and discover analytics and planning tools from multiple vendors in a single dashboard view., September 2022: - ActionIQ, a global leader in CX solutions, and Teradata, a leading software company, entered a strategic partnership and integrated AIQ’s new HybridCompute Technology with Teradata VantageCloud analytics and data platform.. Key drivers for this market are: Increasing Adoption of AI, ML, and Data Analytics to Boost Market Growth . Potential restraints include: Rising Concerns on Information Security and Privacy to Hinder Market Growth. Notable trends are: Rising Adoption of Big Data and Business Analytics among End-use Industries.
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The AI in ICT market is experiencing robust growth, driven by the increasing adoption of AI technologies across various ICT applications. The market's expansion is fueled by several key factors: the exponential growth of data, advancements in machine learning algorithms, the decreasing cost of computing power, and the rising demand for automation and efficiency in communication networks. Natural Language Processing (NLP) and Machine Perception are currently leading application segments, facilitating advancements in chatbots, virtual assistants, and image recognition systems. The software segment dominates the market due to its scalability and flexibility, while the services segment is witnessing significant growth driven by the rising need for AI consulting and implementation services. North America currently holds the largest market share, followed by Europe and Asia Pacific, with developing economies in Asia Pacific showing considerable potential for future growth. The competitive landscape is highly dynamic, with a mix of established tech giants like Google and Amazon, and specialized AI companies offering innovative solutions. This competitive environment fosters innovation and drives continuous improvement in AI capabilities within the ICT sector. The forecast period (2025-2033) anticipates sustained growth, with a projected Compound Annual Growth Rate (CAGR) estimated to be around 25%. This growth will be driven by increased investment in research and development, the emergence of new AI applications in areas such as cybersecurity and network optimization, and the growing adoption of AI in 5G and beyond networks. However, the market also faces certain restraints, including data privacy concerns, ethical considerations related to AI bias, and the high cost of implementing and maintaining AI systems. To mitigate these challenges, industry stakeholders are focusing on developing more robust security measures, ethical guidelines for AI development, and cost-effective solutions to make AI accessible to a wider range of businesses and organizations. The future of AI in ICT promises further integration of AI into various aspects of communication and information technology, shaping a more connected, intelligent, and automated world.
During a survey carried out between September 2022 and January 2023, answers of responding marketing managers from Austria, Germany, and Switzerland revealed that in the future, artificial intelligence (AI) would be most intensively used around consumer insights, followed by marketing execution. The respondents foresaw the least intensive usage in strategy.