AICLApr 15

Memory Transfer Learning: How Memories are Transferred Across Domains in Coding Agents

arXiv:2604.1400479.2h-index: 5
AI Analysis

For developers of coding agents, this work provides empirical principles to leverage shared knowledge across diverse coding tasks, moving beyond single-domain memory silos.

The paper investigates Memory Transfer Learning (MTL) for coding agents, showing that cross-domain memory improves average performance by 3.7% across 6 benchmarks, with high-level insights transferring well while low-level traces cause negative transfer.

Memory-based self-evolution has emerged as a promising paradigm for coding agents. However, existing approaches typically restrict memory utilization to homogeneous task domains, failing to leverage the shared infrastructural foundations, such as runtime environments and programming languages, that exist across diverse real-world coding problems. To address this limitation, we investigate \textbf{Memory Transfer Learning} (MTL) by harnessing a unified memory pool from heterogeneous domains. We evaluate performance across 6 coding benchmarks using four memory representations, ranging from concrete traces to abstract insights. Our experiments demonstrate that cross-domain memory improves average performance by 3.7\%, primarily by transferring meta-knowledge, such as validation routines, rather than task-specific code. Importantly, we find that abstraction dictates transferability; high-level insights generalize well, whereas low-level traces often induce negative transfer due to excessive specificity. Furthermore, we show that transfer effectiveness scales with the size of the memory pool, and memory can be transferred even between different models. Our work establishes empirical design principles for expanding memory utilization beyond single-domain silos. Project page: https://memorytransfer.github.io/

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