AI RESEARCH

REVERE: Reflective Evolving Research Engineer for Scientific Workflows

arXiv CS.AI

ArXi:2603.20667v1 Announce Type: cross Existing prompt-optimization techniques rely on local signals to update behavior, often neglecting broader and recurring patterns across tasks, leading to poor generalization; they further rely on full-prompt rewrites or unstructured merges, resulting in knowledge loss. These limitations are magnified in research-coding workflows, which involve heterogeneous repositories, underspecified environments, and weak feedback, where reproducing results from public codebases is an established evaluation regime. We.