← Back to OpenClaw
From digest: OpenClaw
Ranked #3
Must Read
Relevance: 0.901682%
AI Summary
View Source

EPOCH: An Agentic Protocol for Multi-Round System Optimization

Zhanlin Liu, Yitao Li, Munirathnam Srikanth

March 10, 2026

:1

Abstract

Autonomous agents are increasingly used to improve prompts, code, and machine learning systems through iterative execution and feedback. Yet existing approaches are usually designed as task-specific optimization loops rather than as a unified protocol for establishing baselines and managing tracked multi-round self-improvement. We introduce EPOCH, an engineering protocol for multi-round system optimization in heterogeneous environments. EPOCH organizes optimization into two phases: baseline construction and iterative self-improvement. It further structures each round through role-constrained stages that separate planning, implementation, and evaluation, and standardizes execution through canonical command interfaces and round-level tracking. This design enables coordinated optimization across prompts, model configurations, code, and rule-based components while preserving stability, reproducibility, traceability, and integrity of evaluation. Empirical studies in various tasks illustrate the practicality of EPOCH for production-oriented autonomous improvement workflows.

Paper Identifiers

Source ID: 1