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TwitterWhile artificial intelligence (AI) saw a staggering growth in adoption rates from 2017 to 2018, it has leveled off significantly since 2019. It grew nearly *** times in 2022 compared to its adoption rate in 2017. Much of this can be attributed to AI being more understood as an inherent tool of optimizing business and operations in 2022. It is less amazingly novel and rather an understood factor of value-adding in businesses.
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TwitterDuring a 2023 survey conducted among professionals in the United States, it was found that 37 percent of those working in advertising or marketing had used artificial intelligence (AI) to assist with work-related tasks. Healthcare, however, had the lowest rate of AI usage with only 15 percent of those asked having used it at work. The rate of adoption in marketing and advertising is understandable, as it is the industry that most weaves together art and creative mediums in its processes.
Generative AI linked to education
Those positions that require a higher level of education are most at risk of being automated with generative AI in the U.S. This is simply because those jobs that require less formal education are rarely digital positions and are more reliant on physical labor. Jobs that require tertiary education, however, are still the least likely to be automated overall, even with the added influence of generative AI.
ChatGPT has competitors
While the OpenAI-developed ChatGPT is the most well-known AI program and the currently most advanced large language model, - other competitors are catching up. While just over half of respondents in the U.S. had heard of or used ChatGPT, nearly half of respondents had also heard of or used Bing Chat. Google’s Bard was slightly behind, with only around a third of Americans having heard of or used it.
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Imagine a world where your doctor’s diagnosis is assisted by a machine learning model, your home anticipates your needs before you speak, and your company's biggest asset is no longer its workforce, but its data. That’s not a glimpse of a distant future; it's the reality we’re living in. As...
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TwitterSingapore was the nation with the highest combined value where enterprises were exploring or had actively deployed AI within their business in 2023. China, India, and the UAE were all close behind, with over ** percent of respondents claiming exploration or deployment of AI. Western countries, in particular European mainland nations such as France, Germany, and Italy, had the highest rate of non-usage or no exploration of AI, though even the U.S. had a similar share of enterprises not engaged with AI. This may reflect the specialized industries that thrive in those countries, needing individualized human skills to operate.
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Country-level AI adoption indicators and sector breakdown for the United States in 2025, combining public datasets and modeled estimates.
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TwitterThe adoption rate of artificial intelligence (AI) is expected to rapidly grow in the information technology sector (IT). In 2022, nearly ** percent of IT executives expected their companies to have widescale adoption in AI in their respective companies.
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A comprehensive, research-grade dataset capturing the adoption, usage, and impact of leading AI tools—such as ChatGPT, Midjourney, Stable Diffusion, Bard, and Claude—across multiple industries, countries, and user demographics. This dataset is designed for advanced analytics, machine learning, natural language processing, and business intelligence applications.
This dataset provides a panoramic view of how AI technologies are transforming business, industry, and society worldwide. Drawing inspiration from real-world adoption surveys, academic research, and industry reports, it enables users to:
To add a column descriptor (column description) to your Kaggle dataset's Data Card, you should provide a clear and concise explanation for each column. This improves dataset usability and helps users understand your data structure, which is highly recommended for achieving a 10/10 usability score on Kaggle[2][9].
Below is a ready-to-copy Column Descriptions table for your dataset. You can paste this into the "Column Descriptions" section of your Kaggle Data Card (after clicking the pencil/edit icon in the Data tab)[2][9]:
| Column Name | Description |
|---|---|
country | Country where the organization or user is located (e.g., USA, India, China, etc.) |
industry | Industry sector of the organization (e.g., Technology, Healthcare, Retail, etc.) |
ai_tool | Name of the AI tool used (e.g., ChatGPT, Midjourney, Bard, Stable Diffusion, Claude) |
adoption_rate | Percentage representing the adoption rate of the AI tool within the sector or company (0–100) |
daily_active_users | Estimated number of daily active users for the AI tool in the given context |
year | Year in which the data was recorded (2023 or 2024) |
user_feedback | Free-text feedback from users about their experience with the AI tool (up to 150 characters) |
age_group | Age group of users (e.g., 18-24, 25-34, 35-44, 45-54, 55+) |
company_size | Size category of the organization (Startup, SME, Enterprise) |
country,industry,ai_tool,adoption_rate,daily_active_users,year,user_feedback,age_group,company_size
USA,Technology,ChatGPT,78.5,5423,2024,"Great productivity boost for our team!",25-34,Enterprise
India,Healthcare,Midjourney,62.3,2345,2024,"Improved patient engagement and workflow.",35-44,SME
Germany,Manufacturing,Stable Diffusion,45.1,1842,2023,"Enhanced our design process.",45-54,Enterprise
Brazil,Retail,Bard,33.2,1200,2024,"Helped automate our customer support.",18-24,Startup
UK,Finance,Claude,55.7,2100,2023,"Increased accuracy in financial forecasting.",25-34,SME
import pandas as pd
df = pd.read_csv('/path/to/ai_adoption_dataset.csv')
print(df.head())
print(df.info())
industry_adoption = df.groupby(['industry', 'country'])['adoption_rate'].mean().reset_index()
print(industry_adoption.sort_values(by='adoption_rate', ascending=False).head(10))
import matplotlib.pyplot as plt
tool_counts = df['ai_tool'].value_counts()
tool_counts.plot(kind='bar', title='AI Tool Usage Distribution')
plt.xlabel('AI Tool')
plt.ylabel('Number of Records')
plt.show()
from textblob import TextBlob
df['feedback_sentiment'] = df['user_feedback'].apply(lambda x: TextBlob(x).sentiment.polarity)
print(df[['user_feedback', 'feedback_sentiment']].head())
yearly_trends = df.groupby(['year', 'ai_tool'])['adoption_rate'].mean().unstack()
yearly_trends.plot(marker='o', title='AI Tool Adoption Rate Over Time')
plt.xlabel('Year')
plt.ylabel('Average Adoption Rate (%)')
plt.show()
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Comprehensive collection of AI adoption rates, marketing automation metrics, EU AI Act compliance data, healthcare AI statistics, and workflow automation ROI figures from leading research institutions.
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TwitterThe adoption rate of artificial intelligence (AI) is expected to grow in companies operating in supply chains and manufacturing industries from 2022 to 2025. In 2022 ** percent of executives expected their companies to have a wide scale adoption of AI in their companies.
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Country-level AI adoption indicators and sector breakdown for China in 2025, combining public datasets and modeled estimates.
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TwitterThis section provides an in-depth examination of the dataset utilized for quantitative analysis in this study. The dataset comprises comprehensive information on thirty companies spanning the Manufacturing, Retail, and Logistics sectors, carefully curated to reflect contemporary supply chain environments. Sourced from Kaggle, a renowned open-data platform, the dataset was selected for its relevance to AI adoption and operational performance metrics. The inspiration behind this dataset stems from the growing interest in understanding how AI technologies reshape supply chain dynamics across diverse industries. By incorporating variables such as AI adoption rates, financial investments, productivity indices, and sustainability indicators, the dataset offers a multifaceted view that aligns with the study’s objectives. The dataset’s design mirrors real-world business scenarios, enabling meaningful statistical analysis and providing insights into the complex relationship between AI integration and supply chain effectiveness. Through this rich data foundation, the study aims to explore both the measurable impacts of AI and the contextual factors that influence its adoption, setting the stage for the combined quantitative and qualitative analyses that follow.
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TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
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Country-level AI adoption indicators and sector breakdown for India in 2025, combining public datasets and modeled estimates.
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TwitterThe adoption rate of artificial intelligence (AI) is expected to gain considerable importance in product development companies worldwide between 2022 and 2025. Currently, companies operating in that sector were mostly, or ** percent, reporting limited adoption of AI in their production cycles. Technology executives expected this to change considerably by 2025.
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TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Country-level AI adoption indicators with sector breakdown for 2025, combining public datasets and modeled estimates.
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TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
A structured dataset of 150+ AI statistics for 2025 including market size, AI adoption, consumer behavior, generative AI usage, automation impact, enterprise metrics, and future predictions.
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A curated dataset of AI in marketing adoption and investment trends for 2025, covering CMO budgets, SMB adoption, productivity impact, retailer adoption, and global ad spend share.
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TwitterThe adoption rate of artificial intelligence (AI) is expected to grow in companies operating in the finance sector from 2022 to 2025. In 2022, nearly **** of executives expected their companies to have widescale adoption in AI in their companies. In the 2025, they expected the same ratio would be exceeded for critical implementation of AI.
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TwitterCombined, 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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According to our latest research, the global Data-as-a-Service (DaaS) for AI market size reached USD 6.4 billion in 2024, reflecting robust adoption across industries driven by the need for scalable, high-quality data solutions for artificial intelligence applications. The market is projected to expand at a CAGR of 27.8% from 2025 to 2033, reaching an impressive USD 57.3 billion by 2033. This remarkable growth is fueled by the increasing demand for real-time data accessibility, the proliferation of AI-powered business models, and the growing complexity of data management in a digital-first economy.
A primary growth factor for the Data-as-a-Service for AI market is the exponential increase in data generation from connected devices, digital transactions, and enterprise systems. As organizations look to harness AI for predictive analytics, automation, and enhanced decision-making, the need for reliable, scalable, and on-demand data delivery becomes paramount. DaaS platforms enable businesses to access diverse datasets without the burden of in-house data management infrastructure, reducing operational costs and accelerating time-to-value for AI initiatives. Additionally, the rising integration of Internet of Things (IoT) devices and the expansion of cloud computing have further amplified the demand for DaaS solutions, as enterprises seek to derive actionable insights from vast, heterogeneous data sources.
Another significant driver is the increasing focus on data quality, compliance, and security in AI deployments. With data privacy regulations such as GDPR and CCPA shaping data management practices, businesses are turning to DaaS providers to ensure that data used for AI training and inference is compliant, accurate, and up to date. The ability of DaaS solutions to deliver curated, anonymized, and structured datasets tailored to specific AI use cases is a major advantage, particularly for industries like healthcare and finance where data sensitivity is paramount. Furthermore, the rise of AI-driven personalization in sectors such as retail and e-commerce is accelerating the need for real-time, high-fidelity data feeds, which DaaS platforms are uniquely positioned to provide.
The ongoing digital transformation across industries is also catalyzing the adoption of Data-as-a-Service for AI. As enterprises migrate to hybrid and multi-cloud environments, the complexity of managing and integrating data from disparate sources increases. DaaS solutions offer seamless data integration, normalization, and delivery, enabling organizations to focus on developing AI models rather than grappling with data silos and legacy infrastructure. This shift is particularly pronounced among small and medium enterprises (SMEs), which benefit from the cost-effectiveness and scalability of DaaS offerings, leveling the playing field with larger competitors in the AI adoption race.
Regionally, North America continues to lead the Data-as-a-Service for AI market, driven by a mature digital ecosystem, high cloud adoption rates, and significant investments in AI research and development. However, Asia Pacific is emerging as the fastest-growing region, fueled by rapid digitalization, government initiatives supporting AI innovation, and a burgeoning startup ecosystem. Europe remains a critical market, particularly due to stringent regulatory frameworks and a strong emphasis on data privacy and security. Collectively, these regional dynamics underscore the global momentum behind DaaS for AI and highlight the diverse opportunities and challenges faced by market participants across geographies.
The Data-as-a-Service for AI market is segmented by component into platforms and services, each playing a pivotal role in enabling organizations to leverage data for AI-driven outcomes. Platforms represent the core infrastructure layer, providing the tools, APIs, and interfaces required for data ingestion, transformation, and delivery. These platforms are increasingly adopting advanced technologies such as machine learning for automated data cleaning, enrichment, and metadata management, ensuring that AI models are trained on high-quality, relevant datasets. As the complexity and volume of data grow, the demand for robust, scalable DaaS platforms is accelerating, particularly among large enterprises seeking
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According to our latest research, the AI Dataset Management market size reached USD 1.82 billion in 2024, reflecting robust momentum driven by the increasing adoption of artificial intelligence across diverse industries. The market is projected to grow at a CAGR of 27.6% from 2025 to 2033, reaching a forecasted value of USD 14.35 billion by 2033. This rapid expansion is propelled by the surging need for high-quality, well-managed datasets to fuel AI and machine learning models, coupled with the proliferation of data-intensive applications in sectors such as healthcare, finance, and retail. As per our latest research, the market’s upward trajectory is further supported by advancements in data labeling, annotation tools, and stringent regulatory requirements for data governance.
One of the primary growth factors for the AI Dataset Management market is the exponential increase in data generation from connected devices, social media platforms, IoT sensors, and enterprise applications. Organizations are increasingly recognizing that the quality and integrity of their AI models are directly tied to the quality of the underlying datasets. As a result, there is a growing demand for sophisticated dataset management solutions that can automate data collection, cleansing, labeling, and augmentation. These solutions not only streamline the AI development lifecycle but also ensure compliance with evolving data privacy regulations such as GDPR and CCPA. Furthermore, the integration of advanced technologies like natural language processing and computer vision into dataset management platforms is enhancing their ability to handle complex, unstructured data, further stimulating market growth.
Another significant driver is the expanding application of AI across verticals such as healthcare, BFSI, retail, automotive, and government. In healthcare, for instance, the need for annotated medical images and patient records is spurring investment in specialized dataset management tools. Similarly, financial institutions are leveraging AI dataset management to detect fraud, manage risk, and personalize customer experiences. The retail and e-commerce sector is utilizing these solutions for customer segmentation, demand forecasting, and inventory optimization. This cross-industry adoption is creating a fertile environment for both established players and innovative startups to introduce tailored offerings that address the unique data challenges of each sector. As a result, the market is witnessing a wave of product innovation, strategic partnerships, and mergers and acquisitions aimed at expanding capabilities and geographic reach.
Additionally, the shift towards cloud-based deployment models is accelerating the adoption of AI dataset management solutions, especially among small and medium enterprises (SMEs) that require scalable, cost-effective tools. Cloud platforms offer the flexibility to store, process, and manage large volumes of data without significant upfront investment in IT infrastructure. This democratization of AI dataset management is leveling the playing field, enabling organizations of all sizes to harness the power of AI for competitive advantage. Moreover, the emergence of open-source dataset management frameworks and APIs is lowering barriers to entry, fostering a vibrant ecosystem of developers, researchers, and data scientists. These trends are expected to sustain the market’s double-digit growth over the forecast period.
Regionally, North America continues to dominate the AI Dataset Management market, accounting for the largest revenue share in 2024, thanks to its advanced digital infrastructure, high AI adoption rates, and concentration of leading technology vendors. However, Asia Pacific is emerging as the fastest-growing region, driven by rapid digital transformation, government initiatives supporting AI research, and a burgeoning base of tech-savvy enterprises. Europe is also making significant strides, particularly in sectors such as automotive and healthcare, where stringent data protection regulations are fueling demand for robust dataset management solutions. Latin America and the Middle East & Africa are gradually catching up, with increasing investments in AI and digitalization initiatives. Overall, the regional outlook remains highly optimistic, with each geography presenting unique growth opportunities and challenges for market participants.
The AI Dataset
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TwitterWhile artificial intelligence (AI) saw a staggering growth in adoption rates from 2017 to 2018, it has leveled off significantly since 2019. It grew nearly *** times in 2022 compared to its adoption rate in 2017. Much of this can be attributed to AI being more understood as an inherent tool of optimizing business and operations in 2022. It is less amazingly novel and rather an understood factor of value-adding in businesses.