Search Results for author: Yaroslav Zharov

Found 12 papers, 2 papers with code

EnvBench: A Benchmark for Automated Environment Setup

1 code implementation18 Mar 2025 Aleksandra Eliseeva, Alexander Kovrigin, Ilia Kholkin, Egor Bogomolov, Yaroslav Zharov

Recent advances in Large Language Models (LLMs) have enabled researchers to focus on practical repository-level tasks in software engineering domain.

Debug Smarter, Not Harder: AI Agents for Error Resolution in Computational Notebooks

no code implementations18 Oct 2024 Konstantin Grotov, Artem Borzilov, Maksim Krivobok, Timofey Bryksin, Yaroslav Zharov

Computational notebooks became indispensable tools for research-related development, offering unprecedented interactivity and flexibility in the development process.

AI Agent Bug fixing

Towards Realistic Evaluation of Commit Message Generation by Matching Online and Offline Settings

no code implementations15 Oct 2024 Petr Tsvetkov, Aleksandra Eliseeva, Danny Dig, Alexander Bezzubov, Yaroslav Golubev, Timofey Bryksin, Yaroslav Zharov

To support this new type of evaluation, we develop a novel markup collection tool mimicking the real workflow with a CMG system, collect a dataset with 57 pairs consisting of commit messages generated by GPT-4 and their counterparts edited by human experts, and design and verify a way to synthetically extend such a dataset.

On The Importance of Reasoning for Context Retrieval in Repository-Level Code Editing

1 code implementation6 Jun 2024 Alexander Kovrigin, Aleksandra Eliseeva, Yaroslav Zharov, Timofey Bryksin

Recent advancements in code-fluent Large Language Models (LLMs) enabled the research on repository-level code editing.

Retrieval

Untangling Knots: Leveraging LLM for Error Resolution in Computational Notebooks

no code implementations26 Mar 2024 Konstantin Grotov, Sergey Titov, Yaroslav Zharov, Timofey Bryksin

Computational notebooks became indispensable tools for research-related development, offering unprecedented interactivity and flexibility in the development process.

Bug fixing

Dynamic Retrieval-Augmented Generation

no code implementations14 Dec 2023 Anton Shapkin, Denis Litvinov, Yaroslav Zharov, Egor Bogomolov, Timur Galimzyanov, Timofey Bryksin

Our approach achieves several targets: (1) lifting the length limitations of the context window, saving on the prompt size; (2) allowing huge expansion of the number of retrieval entities available for the context; (3) alleviating the problem of misspelling or failing to find relevant entity names.

abstractive question answering Code Generation +3

Shot Noise Reduction in Radiographic and Tomographic Multi-Channel Imaging with Self-Supervised Deep Learning

no code implementations25 Mar 2023 Yaroslav Zharov, Evelina Ametova, Rebecca Spiecker, Tilo Baumbach, Genoveva Burca, Vincent Heuveline

For such imaging techniques, the method can therefore significantly improve image quality, or maintain image quality with further reduced exposure time per image.

Denoising

Optimizing the Procedure of CT Segmentation Labeling

no code implementations24 Mar 2023 Yaroslav Zharov, Tilo Baumbach, Vincent Heuveline

In Computed Tomography, machine learning is often used for automated data processing.

Diversity

A Knowledge Distillation framework for Multi-Organ Segmentation of Medaka Fish in Tomographic Image

no code implementations24 Feb 2023 Jwalin Bhatt, Yaroslav Zharov, Sungho Suh, Tilo Baumbach, Vincent Heuveline, Paul Lukowicz

Morphological atlases are an important tool in organismal studies, and modern high-throughput Computed Tomography (CT) facilities can produce hundreds of full-body high-resolution volumetric images of organisms.

Computed Tomography (CT) Image Segmentation +4

Self-Supervised Learning for Biological Sample Localization in 3D Tomographic Images

no code implementations6 Nov 2020 Yaroslav Zharov, Alexey Ershov, Tilo Baumbach, Vincent Heuveline

The problem is even more prominent for high-throughput tomography--an automated setup, capable of scanning large batches of samples without human interaction.

Computed Tomography (CT) Object Localization +2

YASENN: Explaining Neural Networks via Partitioning Activation Sequences

no code implementations7 Nov 2018 Yaroslav Zharov, Denis Korzhenkov, Pavel Shvechikov, Alexander Tuzhilin

We introduce a novel approach to feed-forward neural network interpretation based on partitioning the space of sequences of neuron activations.

Interpretable Machine Learning Network Interpretation

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