×
Deloitte Tech Trends report uncovers how businesses are really adopting AI and agents
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

The increasing integration of artificial intelligence into business operations is reshaping workplace technology, with AI becoming an increasingly invisible but fundamental component of daily workflows.

Key findings from Deloitte’s analysis: The 16th annual Tech Trends Report reveals a significant shift in how businesses are approaching and implementing AI technology.

  • AI is transitioning from standalone applications to becoming an embedded layer within core business operations, operating seamlessly behind the scenes
  • The focus for business leaders has evolved from questioning AI adoption to strategizing its optimal implementation
  • Organizations are increasingly investing in data cycle management, with 75% reporting increased spending due to generative AI initiatives

Emerging AI architecture: The traditional model of large, general-purpose AI chatbots is giving way to more specialized and efficient solutions.

  • Companies are adopting multiple domain-specific AI agents, known as small language models (SLMs), designed for targeted business functions
  • These specialized AI tools offer improved efficiency and accuracy for specific tasks compared to general-purpose models
  • The shift towards specialized AI reflects a maturing understanding of how AI can best serve business needs

Hardware evolution and market growth: The rise of AI-centric computing is driving significant changes in corporate IT infrastructure.

  • Organizations face mounting pressure to upgrade employee devices to support advanced AI capabilities
  • The global AI chip market is projected to expand dramatically, growing from $50 billion in 2024 to between $110-400 billion by 2027
  • This hardware evolution represents a crucial investment for companies looking to maintain competitive advantage in AI implementation

Implementation priorities: Data management remains the cornerstone of successful AI adoption.

  • Companies are advised to prioritize data cleaning, organization, and governance before deploying AI solutions
  • The emphasis on data quality highlights the understanding that AI effectiveness is directly tied to the quality of underlying data
  • Organizations must develop robust data management strategies to fully capitalize on AI capabilities

Strategic implications: The transformation of AI from a visible tool to an invisible infrastructure component marks a significant evolution in enterprise technology.

  • This shift suggests a future where AI capabilities will be as fundamental to business operations as electricity or internet connectivity
  • The trend toward specialized AI agents indicates a more nuanced and practical approach to AI implementation
  • The substantial projected growth in AI hardware markets points to sustained investment in AI infrastructure over the coming years

Looking ahead: The integration of AI as an “undercover” technology represents a mature phase in enterprise AI adoption, where the focus shifts from showcasing AI capabilities to leveraging them for practical business value and operational efficiency.

AI is moving undercover at work in 2025, according to Deloitte's Tech Trends report

Recent News

Veo 2 vs. Sora: A closer look at Google and OpenAI’s latest AI video tools

Tech companies unveil AI tools capable of generating realistic short videos from text prompts, though length and quality limitations persist as major hurdles.

7 essential ways to use ChatGPT’s new mobile search feature

OpenAI's mobile search upgrade enables business users to access current market data and news through conversational queries, marking a departure from traditional search methods.

FastVideo is an open-source framework that accelerates video diffusion models

New optimization techniques reduce the computing power needed for AI video generation from days to hours, though widespread adoption remains limited by hardware costs.