Reproducibility report ofCoSQA: 20,000+ Web Queries for Code Search and QuestionAnswering for ML Reproducibility Challenge 2021
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Updated
Feb 4, 2022 - Python
Reproducibility report ofCoSQA: 20,000+ Web Queries for Code Search and QuestionAnswering for ML Reproducibility Challenge 2021
EVIL (Exploiting software VIa natural Language) is an approach to automatically generate software exploits in assembly/Python language from descriptions in natural language. The approach leverages Neural Machine Translation (NMT) techniques and a dataset that we developed for this work.
Neural search engine for questions/answers from StackOverflow
Fine-tuning CodeBERT with AST-based Vectors for Code Translation
extracts business-logic code locations.
Performs Code Summarization, Bug Detection, Bug Removal using different Natural language processing models including Garph CodeBERT, GREAT, GNN, CoText etc.
This repository contains experiments on comparing the similarity of Python repositories using ML models.
Auto-grading of C programs using Machine Learning and Deep Learning models such as random forest, CNN, LSTM etc and code embedding models such as CodeBERT. Also published a paper for the same in IEEE (14th ICCNT Conference)
Code of our paper "Method-Level Bug Severity Prediction using Source Code Metrics and LLMs" which is accepted to ISSRE 2023.
Django implementation of CodeBERT for detecting vulnerable code.
Neural search engine for discovering semantically similar Python repositories on GitHub
Fine-tuning CodeBERT MLM on Java-based enterprise projects
CodeBERTScore: an automatic metric for code generation, based on BERTScore
🕵️♂️ ML project to identify malicious web payloads, aimed at boosting the effectiveness of WAFs and IDSs.
Advanced Detection of Source Code Clones via an Ensemble of Unsupervised Similarity Measures
A project for determining the similarity of python repositories based on embedding approach
This repository contains the code, the dataset and the experimental results related to the paper "Vulnerabilities in AI Code Generators: Exploring Targeted Data Poisoning Attacks" accepted for publication at The 32nd IEEE/ACM International Conference on Program Comprehension (ICPC 2024).
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