A Layered Architecture for Developing and Enhancing Capabilities in Large Language Model-based Software Systems
Significant efforts has been made to expand the use of Large Language Models (LLMs) beyond basic language tasks. While the generalizability and versatility of LLMs have enabled widespread adoption, evolving demands in application development often exceed their native capabilities. Meeting these dema...
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Zusammenfassung: | Significant efforts has been made to expand the use of Large Language Models
(LLMs) beyond basic language tasks. While the generalizability and versatility
of LLMs have enabled widespread adoption, evolving demands in application
development often exceed their native capabilities. Meeting these demands may
involve a diverse set of methods, such as enhancing creativity through either
inference temperature adjustments or creativity-provoking prompts. Selecting
the right approach is critical, as different methods lead to trade-offs in
engineering complexity, scalability, and operational costs. This paper
introduces a layered architecture that organizes LLM software system
development into distinct layers, each characterized by specific attributes. By
aligning capabilities with these layers, the framework encourages the
systematic implementation of capabilities in effective and efficient ways that
ultimately supports desired functionalities and qualities. Through practical
case studies, we illustrate the utility of the framework. This work offers
developers actionable insights for selecting suitable technologies in LLM-based
software system development, promoting robustness and scalability. |
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DOI: | 10.48550/arxiv.2411.12357 |