When it comes to building productivity solutions, most organizations are primarily focused on using AI to enhance efficiency and streamline existing processes, known as the Horizon 1 or productivity bucket stage. At this stage, AI is applied to improve specific tasks or operations within the organization, but it is not yet fundamentally transforming the business. Solutions in this bucket are basic things, such as personal productivity using tools like M365 Copilot in Teams, Outlook, and similar programs for basic process automation, content curation, or data entry automation.
An organization characterized by a "Transformative Experience" with AI is one that is actively integrating AI into its operations to drive significant change. Such organizations are using AI to transform key areas of their business but may still be in the process of optimizing these technologies. Examples of applications in this category could include Blended Learning Platforms: Using AI to integrate online and offline learning experiences, providing a more flexible and engaging educational environment but still refining the balance and effectiveness.
An adaptive enterprise is one that can quickly respond to changes in its environment, leveraging advanced AI and data technologies to do so.
Unlike generic AI systems, subject area-based AI tools are tailored to address specific business functions such as sales, research, and marketing. By leveraging existing corporate data and advanced Retrieval-Augmented Generation (RAG) solutions, these tools provide precise, actionable insights that empower organizations to make data-driven decisions.
Subject area-based AI tools are highly focused systems designed to tackle specific tasks within distinct business domains. Unlike generalized AI models, these tools utilize domain-specific data, prompts, and algorithms to solve targeted problems, enhancing productivity and accuracy. For example:
RAG combines the power of large language models (LLMs) with external knowledge retrieval, enabling AI systems to provide accurate, context-rich responses. It works by retrieving relevant information from corporate databases, documents, or third-party sources before generating outputs. This approach is particularly effective for subject area-based AI tools as it ensures the system remains grounded in verified, up-to-date information.
For instance, a sales-focused AI tool using RAG can access real-time CRM data to tailor communication strategies, while a marketing AI can pull the latest social media trends to craft relevant campaigns. By integrating internal and external data sources, RAG enhances the accuracy and relevance of AI outputs.
To maximize the effectiveness of subject area-based AI tools, organizations should follow these best practices:
Subject area-based AI tools powered by RAG solutions are transforming business functions by providing highly accurate, context-specific insights. From optimizing sales strategies to enhancing marketing campaigns, these tools leverage existing corporate data to drive productivity and growth. By adhering to best practices such as data integration, customization, ethical usage, continuous monitoring, and fostering human-AI collaboration, businesses can unlock the full potential of these advanced tools.
As AI continues to evolve, the demand for specialized, subject area-focused tools will only grow, empowering organizations to stay competitive and innovate in an ever-changing digital landscape. The business now can quickly move from productive to transformative as new AI models are stood up utilizing various corporate assets in a targeting manner.
To learn more about how Spyglass can support your company’s journey with AI, please contact us today.