Подписаться
Egor Bogomolov
Egor Bogomolov
JetBrains Research
Подтвержден адрес электронной почты в домене jetbrains.com
Название
Процитировано
Процитировано
Год
Out of the bleu: how should we assess quality of the code generation models?
M Evtikhiev, E Bogomolov, Y Sokolov, T Bryksin
Journal of Systems and Software 203, 111741, 2023
702023
Pathminer: a library for mining of path-based representations of code
V Kovalenko, E Bogomolov, T Bryksin, A Bacchelli
2019 IEEE/ACM 16th International Conference on Mining Software Repositories …, 2019
592019
Authorship attribution of source code: A language-agnostic approach and applicability in software engineering
E Bogomolov, V Kovalenko, Y Rebryk, A Bacchelli, T Bryksin
Proceedings of the 29th ACM Joint Meeting on European Software Engineering …, 2021
442021
Psiminer: A tool for mining rich abstract syntax trees from code
E Spirin, E Bogomolov, V Kovalenko, T Bryksin
2021 IEEE/ACM 18th International Conference on Mining Software Repositories …, 2021
142021
From commit message generation to history-aware commit message completion
A Eliseeva, Y Sokolov, E Bogomolov, Y Golubev, D Dig, T Bryksin
2023 38th IEEE/ACM International Conference on Automated Software …, 2023
132023
Building implicit vector representations of individual coding style
V Kovalenko, E Bogomolov, T Bryksin, A Bacchelli
Proceedings of the IEEE/ACM 42nd International Conference on Software …, 2020
92020
Sosed: a tool for finding similar software projects
E Bogomolov, Y Golubev, A Lobanov, V Kovalenko, T Bryksin
Proceedings of the 35th IEEE/ACM International Conference on Automated …, 2020
62020
Together We Go Further: LLMs and IDE Static Analysis for Extract Method Refactoring
D Pomian, A Bellur, M Dilhara, Z Kurbatova, E Bogomolov, T Bryksin, ...
arXiv preprint arXiv:2401.15298, 2024
52024
Evaluating the impact of source code parsers on ML4SE models
I Utkin, E Spirin, E Bogomolov, T Bryksin
arXiv preprint arXiv:2206.08713, 2022
52022
Unsupervised learning of general-purpose embeddings for code changes
M Pravilov, E Bogomolov, Y Golubev, T Bryksin
Proceedings of the 5th International Workshop on Machine Learning Techniques …, 2021
52021
Predicting tags for programming tasks by combining textual and source code data
A Lobanov, E Bogomolov, Y Golubev, M Mirzayanov, T Bryksin
arXiv preprint arXiv:2301.04597, 2023
32023
Assessing project-level fine-tuning of ML4SE models
E Bogomolov, S Zhuravlev, E Spirin, T Bryksin
arXiv preprint arXiv:2206.03333, 2022
32022
Evaluation of Contrastive Learning with Various Code Representations for Code Clone Detection
M Zubkov, E Spirin, E Bogomolov, T Bryksin
arXiv preprint arXiv:2206.08726, 2022
22022
EM-Assist: Safe Automated ExtractMethod Refactoring with LLMs
D Pomian, A Bellur, M Dilhara, Z Kurbatova, E Bogomolov, A Sokolov, ...
Companion Proceedings of the 32nd ACM International Conference on the …, 2024
12024
So Much in So Little: Creating Lightweight Embeddings of Python Libraries
Y Golubev, E Bogomolov, E Bulychev, T Bryksin
arXiv preprint arXiv:2209.03507, 2022
12022
Long Code Arena: a Set of Benchmarks for Long-Context Code Models
E Bogomolov, A Eliseeva, T Galimzyanov, E Glukhov, A Shapkin, ...
arXiv preprint arXiv:2406.11612, 2024
2024
Kotlin ML Pack: Technical Report
S Titov, M Evtikhiev, A Shapkin, O Smirnov, S Boytsov, D Karaeva, ...
arXiv preprint arXiv:2405.19250, 2024
2024
Tool-Augmented LLMs as a Universal Interface for IDEs
Y Zharov, Y Khudyakov, E Fedotova, E Grigorenko, E Bogomolov
Proceedings of the 1st ACM/IEEE Workshop on Integrated Development …, 2024
2024
Next-Generation Refactoring: Combining LLM Insights and IDE Capabilities for Extract Method
D Pomian, A Bellur, M Dilhara, Z Kurbatova, E Bogomolov, T Bryksin, ...
В данный момент система не может выполнить эту операцию. Повторите попытку позднее.
Статьи 1–19