← Home

Quick answer

LLM-based agents are becoming central to software engineering tasks, yet evaluating them remains fragmented and largely model-centric. Existing studies overlook how architectural components, such as planners, memory, and tool routers, shape agent behavior, limiting diagnostic power.

Claim

Toward Architecture-Aware Evaluation Metrics for LLM Agents

Débora Souza·
Patrícia Machado

ABSTRACT

LLM-based agents are becoming central to software engineering tasks, yet evaluating them remains fragmented and largely model-centric. Existing studies overlook how architectural components, such as planners, memory, and tool routers, shape agent behavior, limiting diagnostic power. We propose a lightweight, architecture-informed approach that links agent components to their observable behaviors and to the metrics capable of evaluating them. Our method clarifies what to measure and why, and we illustrate its application through real world agents, enabling more targeted, transparent, and actionable evaluation of LLM-based agents.

Review Snapshot

Explore ratings

0.0
★★★★★
0 ratings
5 star
0%
4 star
0%
3 star
0%
2 star
0%
1 star
0%

Recommendation

0%

recommend this content.

Review this content

Share your opinion to help other learners triage faster.

Write a review

Invite a reviewer

Invite someone by email to share an invited review for Toward Architecture-Aware Evaluation Metrics for LLM Agents.

Author Inquiries

Public questions about this content. Attendemia will route your question to the author. Vote on the most important ones. No guarantee of response.
Post an inquiry
Sort by: Most helpful