Saved in:
Bibliographic Details
Main Authors: Sánchez-Torrón, Marina, Akselrod, Daria, Rauchwerk, Jason
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.25169
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911647916883968
author Sánchez-Torrón, Marina
Akselrod, Daria
Rauchwerk, Jason
author_facet Sánchez-Torrón, Marina
Akselrod, Daria
Rauchwerk, Jason
contents LLM performance is highly sensitive to prompt design, yet whether automatic prompt optimization can replace expert prompt engineering in linguistic tasks remains unexplored. We present the first systematic comparison of hand-crafted zero-shot expert prompts, base DSPy signatures, and GEPA-optimized DSPy signatures across translation, terminology insertion, and language quality assessment, evaluating five model configurations. Results are task-dependent. In terminology insertion, optimized and manual prompts produce mostly statistically indistinguishable quality. In translation, each approach wins on different models. In LQA, expert prompts achieve stronger error detection while optimization improves characterization. Across all tasks, GEPA elevates minimal DSPy signatures, and the majority of expert-optimized comparisons show no statistically significant difference. We note that the comparison is asymmetric: GEPA optimization searches programmatically over gold-standard splits, whereas expert prompts require in principle no labeled data, relying instead on domain expertise and iterative refinement.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25169
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle To Write or to Automate Linguistic Prompts, That Is the Question
Sánchez-Torrón, Marina
Akselrod, Daria
Rauchwerk, Jason
Computation and Language
LLM performance is highly sensitive to prompt design, yet whether automatic prompt optimization can replace expert prompt engineering in linguistic tasks remains unexplored. We present the first systematic comparison of hand-crafted zero-shot expert prompts, base DSPy signatures, and GEPA-optimized DSPy signatures across translation, terminology insertion, and language quality assessment, evaluating five model configurations. Results are task-dependent. In terminology insertion, optimized and manual prompts produce mostly statistically indistinguishable quality. In translation, each approach wins on different models. In LQA, expert prompts achieve stronger error detection while optimization improves characterization. Across all tasks, GEPA elevates minimal DSPy signatures, and the majority of expert-optimized comparisons show no statistically significant difference. We note that the comparison is asymmetric: GEPA optimization searches programmatically over gold-standard splits, whereas expert prompts require in principle no labeled data, relying instead on domain expertise and iterative refinement.
title To Write or to Automate Linguistic Prompts, That Is the Question
topic Computation and Language
url https://arxiv.org/abs/2603.25169