Authors :
Oluwafemi Esan
Volume/Issue :
Volume 10 - 2025, Issue 5 - May
Google Scholar :
https://tinyurl.com/3jyfzhb2
DOI :
https://doi.org/10.38124/ijisrt/25may312
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
As the Software as a Service (SaaS) industry rapidly expands, the convergence of AI and Business Intelligence
(BI) technologies has triggered an important shift within the industry, particularly in the United States. The integration of
AI technologies optimizes business processes and strategic decision-making, reshaping employment dynamics, prompting
urgent enquiries into the broader economic and labour market implications. This review investigates the influence of AI-
driven business intelligence on the United States SaaS economy and labour market. The findings reveal that AI-driven BI
increases productivity and innovation in SaaS organizations, allowing for swift decision-making and predictive business
strategies. These innovations in return, increased revenue and adjusted established corporate structures, thereby causing
visible alterations in labour market dynamics. In conclusion, AI-driven BI is a transformative force within the United
States SaaS economy, driving operational innovation and creating long-term employment opportunities in the technology
sector; however, its benefits are associated with the responsibility to invest in human capital, ensuring that workers are
equipped to meet new demands through continuous learning and skill development.
Keywords :
Data, Artificial Intelligence, Analytics, Economy, Labour Market, Business Intelligence.
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As the Software as a Service (SaaS) industry rapidly expands, the convergence of AI and Business Intelligence
(BI) technologies has triggered an important shift within the industry, particularly in the United States. The integration of
AI technologies optimizes business processes and strategic decision-making, reshaping employment dynamics, prompting
urgent enquiries into the broader economic and labour market implications. This review investigates the influence of AI-
driven business intelligence on the United States SaaS economy and labour market. The findings reveal that AI-driven BI
increases productivity and innovation in SaaS organizations, allowing for swift decision-making and predictive business
strategies. These innovations in return, increased revenue and adjusted established corporate structures, thereby causing
visible alterations in labour market dynamics. In conclusion, AI-driven BI is a transformative force within the United
States SaaS economy, driving operational innovation and creating long-term employment opportunities in the technology
sector; however, its benefits are associated with the responsibility to invest in human capital, ensuring that workers are
equipped to meet new demands through continuous learning and skill development.
Keywords :
Data, Artificial Intelligence, Analytics, Economy, Labour Market, Business Intelligence.