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Junyu Lai

Junyu Lai contributes to research discovery and scholarly infrastructure.

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Published work

2 published item(s)

preprint2026arXiv

Rethinking Supervision Granularity: Segment-Level Learning for LLM-Based Theorem Proving

Automated theorem proving with large language models in Lean 4 is commonly approached through either step-level tactic prediction with tree search or whole-proof generation. These two paradigms represent opposite granularities for constructing supervised training data: the former provides dense local signals but may fragment coherent proof processes, while the latter preserves global structure but requires complex end-to-end generation. In this paper, we revisit supervision granularity as a training set construction problem over proof trajectories and propose segment-level supervision, a training data construction strategy that extracts locally coherent proof segments for training policy models. We further reuse the same strategy at inference time to trigger short rollouts for existing step-level models. When trained with segment-level supervision on STP, LeanWorkbook, and NuminaMath-LEAN, the resulting policy models achieve proof success rates of 64.84%, 60.90%, and 66.31% on miniF2F, respectively, consistently outperforming both step-level and whole-proof baselines. Goal-aware rollout further improves existing step-level provers while reducing inference costs. It increases the proof success rate of BFS-Prover-V2-7B from 68.77% to 70.74% and that of InternLM2.5-StepProver from 59.59% to 60.33%, showing that appropriate supervision granularity better aligns model learning with proof structure and search. Code and models are available at https://github.com/NJUDeepEngine/SEG-ATP.

preprint2022arXiv

Transient Characteristics of $β$-Ga$_2$O$_3$ Nanomembrane Schottky Barrier Diodes on Various Substrates

In this paper, a transient delayed rising and fall time of $β$-Ga$_2$O$_3$ NMs Schottky barrier diodes (SBDs) formed on four different substrates (diamond, Si, sapphire, and polyimide) were measured using a sub-micron second resolution time-resolved electrical measurement system under a different temperature condition. The devices exhibited noticeably less-delayed turn-on-/off- the transient time when $β$-Ga$_2$O$_3$ NMs SBDs were transfer-printed on a high-k substrate. Furthermore, a relationship between the $β$-Ga$_2$O$_3$ NM thicknesses and their transient characteristics were systematically investigated and found that phonon scattering plays an important role in heat dissipation as the thickness of $β$-Ga$_2$O$_3$ NMs get thinner which is also verified by the Multiphysics simulator. Overall, our result reveals the impact of various substrates with different thermal properties and different \b{eta}- Ga2O3 NMs thickness with the performance of $β$-Ga$_2$O$_3$ NMs based devices. Hence, these results can guide further efforts us to optimize the performance of future $β$-Ga$_2$O$_3$ devices by maximizing heat dissipation from the $β$-Ga$_2$O$_3$ layer.