Explainable Model Routing for Agentic Workflows

arXiv cs.AI / 4/7/2026

📰 NewsDeveloper Stack & InfrastructureIdeas & Deep AnalysisModels & Research

Key Points

  • The paper introduces Topaz, a framework for explainable model routing in agentic workflows that balances quality and cost without hiding the underlying trade-offs.
  • Topaz adds “inherently interpretable” routing by using skill-based profiling to build granular capability profiles from diverse benchmarks.
  • It uses fully traceable, budget-based multi-objective optimization so developers can see how skill-match scores and cost were weighted in each routing decision.
  • Developer-facing natural-language explanations translate routing traces into audit-friendly rationale, enabling iterative tuning of the cost–quality tradeoff.
  • The work targets a key gap in existing routing systems by distinguishing intelligent efficiency from budget-driven latent failures through transparent decision-making.

Abstract

Modern agentic workflows decompose complex tasks into specialized subtasks and route them to diverse models to minimize cost without sacrificing quality. However, current routing architectures focus exclusively on performance optimization, leaving underlying trade-offs between model capability and cost unrecorded. Without clear rationale, developers cannot distinguish between intelligent efficiency -- using specialized models for appropriate tasks -- and latent failures caused by budget-driven model selection. We present Topaz, a framework that introduces formal auditability to agentic routing. Topaz replaces silent model assignments with an inherently interpretable router that incorporates three components: (i) skill-based profiling that synthesizes performance across diverse benchmarks into granular capability profiles (ii) fully traceable routing algorithms that utilize budget-based and multi-objective optimization to produce clear traces of how skill-match scores were weighed against costs, and (iii) developer-facing explanations that translate these traces into natural language, allowing users to audit system logic and iteratively tune the cost-quality tradeoff. By making routing decisions interpretable, Topaz enables users to understand, trust, and meaningfully steer routed agentic systems.