In the dynamic world of decision automation and artificial intelligence (AI), two powerful paradigms have emerged: generative and declarative. Each brings its own strengths, but when harmoniously integrated, they have the potential to revolutionize decision-making. Together, they can create a future where decisions are not only safe and responsible but also extraordinarily effective, driving us towards unprecedented achievements.
This method excels in creating content and generating data-driven outputs based on patterns learned from vast amounts of data. It is highly effective in environments where innovation and creativity are required, such as in content generation, problem-solving, and simulation. However, generative methods, while powerful, is not inherently suited for precise and transparent decision-making. It requires well-controlled and precisely defined inputs and specific, clear data to produce relevant outcomes, which can often be resource-intensive. Despite its advanced capabilities, generative methods are not foolproof, and human intervention remains crucial to ensure the accuracy and relevance of its results.
Recent findings from an Australian study further emphasise the need for precision in data inputs used in generative methods. The study shows that generative AI performs well with straightforward queries but struggles when inputs are biased or misleading, which can significantly skew output accuracy.
By contrast, declarative methods focus on defining goals and outcomes to produce against personalised circumstances. This approach allows systems to determine the most effective strategies to reach specified objectives autonomously. Declarative methods leverage formalised knowledge-graph representations, often utilising a framework to declare rules and logic from specific governance documentation in their natural form to make decisions. It emphasises transparency and ease of understanding, as the rules or logic it operates on can be clearly articulated and followed, making it particularly useful for applications requiring auditability and explainability. The strength of declarative methods lies in its adaptability and modularity, allowing it to tailor solutions to specific business needs and changing conditions without extensive reprogramming.
Declarative methods are highly effective on their own as a standalone tool, setting crucial guardrails for precise, transparent, and explainable decision support systems. While generative methods are powerful tools in their own right by generating new content based on learned patterns, integrating it with declarative methods in controlled scenarios leverages the strengths of both technologies. This combination ensures that generative capabilities are maximised with the precision and adaptability provided by declarative methods. Such integration not only enhances technological capabilities within defined guardrails but also aligns the technology with human complexities, ensuring transparency and explainability.
In response to the challenges associated with AI applications, Decisively emerges to create tailored declarative-based decision support systems. Employing declarative methods that utilises complex knowledge-graph capabilities and natural language processing to establish precise guardrails aligned with targeted artefacts. This ensures precision, adaptability, auditability. Fusion of generative methods brings a personalised experience to its users, enabling Decisively to pose precise, targeted questions that yield accurate results from the outset. This blend significantly improves cost-efficiency and operational sustainability compared to purely generative approaches. Key benefits of Decisively as the declarative guardrail include:
As we harness the power of advanced technologies, it is critical to maintain the balance between innovation and ensuring technology is manageable and accountable. By combining generative capabilities with the strategic oversight of declarative tools such as Decisively, businesses can drive innovation while maintaining control, transparency, and adaptability. This balanced approach not only fosters trust in technology but also ensures its responsible and effective use, making it the superior choice for businesses looking for precise and scalable technology solutions.