×
AI tools vs AI solutions: What’s the difference and why should you care?
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 rise of generative AI in enterprise strategy: MIT research suggests CIOs should adopt a two-tier approach to generative AI implementation, distinguishing between AI tools for productivity enhancement and AI solutions for strategic business transformation.

  • MIT’s Center for Information Systems Research (CISR) emphasizes the need for separate strategies when deploying productivity-enhancing AI tools versus business-case-driven AI solutions.
  • The research was prompted by IT leaders questioning why they weren’t seeing the same value from generative AI as they had from previous data and analytics technologies.
  • A one-size-fits-all approach to AI implementation may be limiting the potential benefits for organizations.

AI tools as gateways to broader adoption: Productivity-enhancing AI tools like ChatGPT and Microsoft Copilot serve as important stepping stones for organizations to build familiarity and comfort with AI technologies.

  • These tools help employees become more comfortable and creative in using AI, potentially leading to increased innovation in more complex AI solutions.
  • AI tools are seen as mechanisms for building “data democracy” within organizations, uplifting employee skills and fostering innovation.
  • However, guidelines and training are crucial to ensure safe and effective use of AI tools, especially considering potential data privacy concerns.

The challenge of measuring AI tool impact: CIOs have found it difficult to fully quantify the benefits of AI tools, as time savings are often distributed across multiple small tasks.

  • One executive described AI tools as productivity “shaves,” saving users a few minutes on each task by summarizing documents or assisting with email drafting.
  • The cumulative effect of these small time savings can be significant but may be challenging to measure accurately.

Strategic implementation of AI solutions: In contrast to AI tools, AI solutions address specific business needs and require a more formal and structured approach to implementation.

  • Examples include large language models (LLMs) used in contact centers to analyze conversation content and tone, providing real-time coaching to agents.
  • Organizations deploying AI solutions should create formal AI innovation processes and prioritize competitive differentiation through customization.
  • Clear governance structures, early stakeholder engagement, and a focus on scalable solutions are essential for successful AI solution deployment.

Industry perspectives on the two-tier approach: Technology leaders in various sectors agree with the distinction between AI tools and solutions, emphasizing the need for different implementation strategies.

  • Dhaval Gajjar, CTO of Textdrip, highlights the importance of user training for AI tools and a structured, cross-functional approach for more complex AI solutions.
  • Moe Asgharnia, CIO of BPM, notes that while the underlying technology is the same, the application and use cases differ between AI tools and solutions.
  • Both leaders agree that AI tools can serve as stepping stones for more complex AI implementations in the future.

Measuring success and aligning with business goals: Organizations should evaluate the success of both AI tools and solutions based on their immediate impact and alignment with long-term business objectives.

  • The scope and complexity of each AI implementation directly influence how they should be rolled out and measured.
  • A balance between short-term productivity gains and long-term strategic alignment is crucial for maximizing the value of generative AI in the enterprise.

Looking ahead: The evolving role of AI in enterprise strategy: As organizations continue to explore and implement generative AI technologies, the two-tier approach may evolve to address new challenges and opportunities.

  • CIOs and IT leaders will need to stay adaptable, continuously refining their AI strategies to balance immediate productivity gains with long-term transformational goals.
  • The interplay between AI tools and solutions may lead to new insights and use cases, driving further innovation in enterprise AI adoption.
Why CIOs need a two-tier approach to gen AI

Recent News

AI agents and the rise of Hybrid Organizations

Meta makes its improved AI image generator free to use while adding visible watermarks and daily limits to prevent misuse.

Adobe partnership brings AI creativity tools to Box’s content management platform

Box users can now access Adobe's AI-powered editing tools directly within their secure storage environment, eliminating the need to download files or switch between platforms.

Nvidia’s new ACE platform aims to bring more AI to games, but not everyone’s sold

Gaming companies are racing to integrate AI features into mainstream titles, but high hardware requirements and artificial interactions may limit near-term adoption.