AUTHOR=Luna Chontal Giovanni , Melendez-Armenta Roberto Angel , Degante-Aguilar Edgar , Fernández-Domínguez Francisco Javier TITLE=Task automation and instructional planning support with large language models: a systematic review JOURNAL=Frontiers in Education VOLUME=Volume 11 - 2026 YEAR=2026 URL=https://www.frontiersin.org/journals/education/articles/10.3389/feduc.2026.1733861 DOI=10.3389/feduc.2026.1733861 ISSN=2504-284X ABSTRACT=IntroductionThe use of large language models (LLMs) in education has rapidly expanded, generating interest in their potential to support teachers through task automation and instructional planning. This review synthesizes evidence on reported changes in time devoted to educational content generation and support for planning-related task automation.MethodsWe conducted a systematic review of peer-reviewed literature published between 2023 and 2025, focusing primarily on secondary and higher-education contexts. Study selection followed PRISMA 2020 guidelines. Risk of bias was assessed using ROBINS-I for non-randomized studies and CASP checklists for qualitative/mixed-methods studies and for secondary evidence syntheses.ResultsSixteen studies met inclusion criteria (13 primary empirical studies and 3 secondary syntheses). Across primary studies, LLM use was associated with reported time savings and perceived gains in clarity or usefulness of generated educational resources. However, outcomes and measures were heterogeneous and often self-reported, several risk-of-bias domains were rated as unclear, and evidence was concentrated in higher-education settings with small samples, limiting comparability and causal inference. Recurrent constraints included limited reproducibility, strong dependence on prompt design, and ethical or technical concerns.DiscussionLLMs may support educators, but conclusions should be interpreted cautiously. Effective integration requires clear pedagogical frameworks, human oversight, and standardized evaluation in real-world settings.Systematic review registrationOpen Science Framework (OSF). Unique identifier: v63nj. Public URL: https://osf.io/v63nj/