This is the repo for our TMLR survey Unifying the Perspectives of NLP and Software Engineering: A Survey on Language Models for Code - a comprehensive review of LLM researches for code. Works in each category are ordered chronologically. If you have a basic understanding of machine learning but are new to NLP, we also provide a list of recommended readings in section 9.
🔥🔥🔥 [2024/12/20] Featured papers:
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🔥🔥 Typhoon 2: A Family of Open Text and Multimodal Thai Large Language Models from SCBX.
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🔥🔥 MultiLingPoT: Enhancing Mathematical Reasoning with Multilingual Program Fine-tuning from Fudan University.
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🔥 Seed-CTS: Unleashing the Power of Tree Search for Superior Performance in Competitive Coding Tasks from ByteDance.
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🔥 Can LLM Prompting Serve as a Proxy for Static Analysis in Vulnerability Detection from Columbia University.
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🔥 ExecRepoBench: Multi-level Executable Code Completion Evaluation from Alibaba Group.
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🔥 CoinMath: Harnessing the Power of Coding Instruction for Math LLMs from A*STAR.
🔥🔥🔥 [2024/11/29] 28 papers from EMNLP 2024 main conference and 20 papers from Findings have been collected. You may search for the keyword "EMNLP 2024" in this page.
🔥🔥 [2024/10/22] We have compiled 70 papers from September and October 2024 in one WeChat article.
🔥 [2024/09/06] Our survey has been accepted for publication by Transactions on Machine Learning Research (TMLR).
If you find a paper to be missing from this repository, misplaced in a category, or lacking a reference to its journal/conference information, please do not hesitate to create an issue. If you find this repo helpful, please cite our survey:
@article{zhang2024unifying,
title={Unifying the Perspectives of {NLP} and Software Engineering: A Survey on Language Models for Code},
author={Ziyin Zhang and Chaoyu Chen and Bingchang Liu and Cong Liao and Zi Gong and Hang Yu and Jianguo Li and Rui Wang},
journal={Transactions on Machine Learning Research},
issn={2835-8856},
year={2024},
url={https://openreview.net/forum?id=hkNnGqZnpa},
note={}
}
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2.1 Base LLMs and Pretraining Strategies
2.2 Existing LLM Adapted to Code
2.3 General Pretraining on Code
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3.2 Code Simulation
3.3 Code Agents
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Code LLM for Low-Resource, Low-Level, and Domain-Specific Languages
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Methods/Models for Downstream Tasks
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Programming
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Testing and Deployment
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DevOps
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Requirement
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8.1 Pretraining
8.2 Benchmarks
We list several recent surveys on similar topics. While they are all about language models for code, 1-2 focus on NLP side; 3-6 focus on SE side; 7-11 are released after ours.
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"Large Language Models Meet NL2Code: A Survey" [2022-12] [ACL 2023] [paper]
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"A Survey on Pretrained Language Models for Neural Code Intelligence" [2022-12] [paper]
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"An Empirical Comparison of Pre-Trained Models of Source Code" [2023-02] [ICSE 2023] [paper]
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"Large Language Models for Software Engineering: A Systematic Literature Review" [2023-08] [paper]
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"Towards an Understanding of Large Language Models in Software Engineering Tasks" [2023-08] [paper]
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"Pitfalls in Language Models for Code Intelligence: A Taxonomy and Survey" [2023-10] [paper]
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"A Survey on Large Language Models for Software Engineering" [2023-12] [paper]
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"Deep Learning for Code Intelligence: Survey, Benchmark and Toolkit" [2023-12] [paper]
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"A Survey of Neural Code Intelligence: Paradigms, Advances and Beyond" [2024-03] [paper]
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"Tasks People Prompt: A Taxonomy of LLM Downstream Tasks in Software Verification and Falsification Approaches" [2024-04] [paper]
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"Automatic Programming: Large Language Models and Beyond" [2024-05] [paper]
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"Software Engineering and Foundation Models: Insights from Industry Blogs Using a Jury of Foundation Models" [2024-10] [paper]
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"Deep Learning-based Software Engineering: Progress, Challenges, and Opportunities" [2024-10] [paper]
These LLMs are not specifically trained for code, but have demonstrated varying coding capability.
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LaMDA: "LaMDA: Language Models for Dialog Applications" [2022-01] [paper]
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PaLM: "PaLM: Scaling Language Modeling with Pathways" [2022-04] [JMLR] [paper]
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GPT-NeoX: "GPT-NeoX-20B: An Open-Source Autoregressive Language Model" [2022-04] [ACL 2022 Workshop on Challenges & Perspectives in Creating LLMs] [paper] [repo]
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BLOOM: "BLOOM: A 176B-Parameter Open-Access Multilingual Language Model" [2022-11] [paper] [model]
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LLaMA: "LLaMA: Open and Efficient Foundation Language Models" [2023-02] [paper]
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GPT-4: "GPT-4 Technical Report" [2023-03] [paper]
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LLaMA 2: "Llama 2: Open Foundation and Fine-Tuned Chat Models" [2023-07] [paper] [repo]
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Phi-1.5: "Textbooks Are All You Need II: phi-1.5 technical report" [2023-09] [paper] [model]
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Baichuan 2: "Baichuan 2: Open Large-scale Language Models" [2023-09] [paper] [repo]
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Gemini: "Gemini: A Family of Highly Capable Multimodal Models" [2023-12] [paper]
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Phi-2: "Phi-2: The surprising power of small language models" [2023-12] [blog]
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YAYI2: "YAYI 2: Multilingual Open-Source Large Language Models" [2023-12] [paper] [repo]
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DeepSeek: "DeepSeek LLM: Scaling Open-Source Language Models with Longtermism" [2024-01] [paper] [repo]
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DeepSeekMoE: "DeepSeekMoE: Towards Ultimate Expert Specialization in Mixture-of-Experts Language Models" [2024-01] [paper] [repo]
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Orion: "Orion-14B: Open-source Multilingual Large Language Models" [2024-01] [paper] [repo]
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OLMo: "OLMo: Accelerating the Science of Language Models" [2024-02] [paper] [repo]
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Gemma: "Gemma: Open Models Based on Gemini Research and Technology" [2024-02] [paper] [blog]
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Claude 3: "The Claude 3 Model Family: Opus, Sonnet, Haiku" [2024-03] [paper] [blog]
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Yi: "Yi: Open Foundation Models by 01.AI" [2024-03] [paper] [repo]
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Poro: "Poro 34B and the Blessing of Multilinguality" [2024-04] [paper] [model]
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JetMoE: "JetMoE: Reaching Llama2 Performance with 0.1M Dollars" [2024-04] [paper] [repo]
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LLaMA 3: "The Llama 3 Herd of Models" [2024-04] [blog] [repo] [paper]
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Reka Core: "Reka Core, Flash, and Edge: A Series of Powerful Multimodal Language Models" [2024-04] [paper]
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Phi-3: "Phi-3 Technical Report: A Highly Capable Language Model Locally on Your Phone" [2024-04] [paper]
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OpenELM: "OpenELM: An Efficient Language Model Family with Open-source Training and Inference Framework" [2024-04] [paper] [repo]
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Tele-FLM: "Tele-FLM Technical Report" [2024-04] [paper] [model]
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DeepSeek-V2: "DeepSeek-V2: A Strong, Economical, and Efficient Mixture-of-Experts Language Model" [2024-05] [paper] [repo]
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GECKO: "GECKO: Generative Language Model for English, Code and Korean" [2024-05] [paper] [model]
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MAP-Neo: "MAP-Neo: Highly Capable and Transparent Bilingual Large Language Model Series" [2024-05] [paper] [repo]
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Skywork-MoE: "Skywork-MoE: A Deep Dive into Training Techniques for Mixture-of-Experts Language Models" [2024-06] [paper]
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Xmodel-LM: "Xmodel-LM Technical Report" [2024-06] [paper]
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GEB: "GEB-1.3B: Open Lightweight Large Language Model" [2024-06] [paper]
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HARE: "HARE: HumAn pRiors, a key to small language model Efficiency" [2024-06] [paper]
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DCLM: "DataComp-LM: In search of the next generation of training sets for language models" [2024-06] [paper]
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Nemotron-4: "Nemotron-4 340B Technical Report" [2024-06] [paper]
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ChatGLM: "ChatGLM: A Family of Large Language Models from GLM-130B to GLM-4 All Tools" [2024-06] [paper]
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YuLan: "YuLan: An Open-source Large Language Model" [2024-06] [paper]
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Gemma 2: "Gemma 2: Improving Open Language Models at a Practical Size" [2024-06] [paper]
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H2O-Danube3: "H2O-Danube3 Technical Report" [2024-07] [paper]
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Qwen2: "Qwen2 Technical Report" [2024-07] [paper]
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ALLaM: "ALLaM: Large Language Models for Arabic and English" [2024-07] [paper]
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SeaLLMs 3: "SeaLLMs 3: Open Foundation and Chat Multilingual Large Language Models for Southeast Asian Languages" [2024-07] [paper]
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AFM: "Apple Intelligence Foundation Language Models" [2024-07] [paper]
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"To Code, or Not To Code? Exploring Impact of Code in Pre-training" [2024-08] [paper]
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OLMoE: "OLMoE: Open Mixture-of-Experts Language Models" [2024-09] [paper]
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"How Does Code Pretraining Affect Language Model Task Performance?" [2024-09] [paper]
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EuroLLM: "EuroLLM: Multilingual Language Models for Europe" [2024-09] [paper]
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"Which Programming Language and What Features at Pre-training Stage Affect Downstream Logical Inference Performance?" [2024-10] [EMNLP 2024] [paper]
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GPT-4o: "GPT-4o System Card" [2024-10] [paper]
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Hunyuan-Large: "Hunyuan-Large: An Open-Source MoE Model with 52 Billion Activated Parameters by Tencent" [2024-11] [paper]
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Crystal: "Crystal: Illuminating LLM Abilities on Language and Code" [2024-11] [paper]
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Xmodel-1.5: "Xmodel-1.5: An 1B-scale Multilingual LLM" [2024-11] [paper]
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Yi-Lightning: "Yi-Lightning Technical Report" [2024-12] [paper]
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"RedStone: Curating General, Code, Math, and QA Data for Large Language Models" [2024-12] [paper]
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EXAONE 3.5: "EXAONE 3.5: Series of Large Language Models for Real-world Use Cases" [2024-12] [paper]
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"The Rise and Down of Babel Tower: Investigating the Evolution Process of Multilingual Code Large Language Model" [2024-12] [paper]
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Phi-4: "Phi-4 Technical Report" [2024-12] [paper]
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Typhoon 2: "Typhoon 2: A Family of Open Text and Multimodal Thai Large Language Models" [2024-12] [paper]
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Qwen2.5: "Qwen2.5 Technical Report" [2024-12] [paper]
These models are general-purpose LLMs further pretrained on code-related data.
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Codex (GPT-3): "Evaluating Large Language Models Trained on Code" [2021-07] [paper]
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PaLM Coder (PaLM): "PaLM: Scaling Language Modeling with Pathways" [2022-04] [JMLR] [paper]
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Minerva (PaLM): "Solving Quantitative Reasoning Problems with Language Models" [2022-06] [paper]
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PaLM 2 * (PaLM 2): "PaLM 2 Technical Report" [2023-05] [paper]
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Code LLaMA (LLaMA 2): "Code Llama: Open Foundation Models for Code" [2023-08] [paper] [repo]
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Lemur (LLaMA 2): "Lemur: Harmonizing Natural Language and Code for Language Agents" [2023-10] [ICLR 2024 Spotlight] [paper]
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BTX (LLaMA 2): "Branch-Train-MiX: Mixing Expert LLMs into a Mixture-of-Experts LLM" [2024-03] [paper]
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HiRoPE: "HiRoPE: Length Extrapolation for Code Models Using Hierarchical Position" [2024-03] [ACL 2024] [paper]
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"Mastering Text, Code and Math Simultaneously via Fusing Highly Specialized Language Models" [2024-03] [paper]
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CodeGemma: "CodeGemma: Open Code Models Based on Gemma" [2024-04] [paper] [model]
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DeepSeek-Coder-V2: "DeepSeek-Coder-V2: Breaking the Barrier of Closed-Source Models in Code Intelligence" [2024-06] [paper]
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"Promise and Peril of Collaborative Code Generation Models: Balancing Effectiveness and Memorization" [2024-09] [paper]
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Qwen2.5-Coder: "Qwen2.5-Coder Technical Report" [2024-09] [paper]
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Lingma SWE-GPT: "Lingma SWE-GPT: An Open Development-Process-Centric Language Model for Automated Software Improvement" [2024-11] [paper]
These models are Transformer encoders, decoders, and encoder-decoders pretrained from scratch using existing objectives for general language modeling.
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CuBERT (MLM + NSP): "Learning and Evaluating Contextual Embedding of Source Code" [2019-12] [ICML 2020] [paper] [repo]
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CodeBERT (MLM + RTD): "CodeBERT: A Pre-Trained Model for Programming and Natural Languages" [2020-02] [EMNLP 2020 findings] [paper] [repo]
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GraphCodeBERT (MLM + DFG Edge Prediction + DFG Node Alignment): "GraphCodeBERT: Pre-training Code Representations with Data Flow" [2020-09] [ICLR 2021] [paper] [repo]
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SynCoBERT (MLM + Identifier Prediction + AST Edge Prediction + Contrastive Learning): "SynCoBERT: Syntax-Guided Multi-Modal Contrastive Pre-Training for Code Representation" [2021-08] [paper]
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DISCO (MLM + Node Type MLM + Contrastive Learning): "Towards Learning (Dis)-Similarity of Source Code from Program Contrasts" [2021-10] [ACL 2022] [paper]
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Code-MVP (MLM + Type Inference + Contrastive Learning): "CODE-MVP: Learning to Represent Source Code from Multiple Views with Contrastive Pre-Training" [2022-05] [NAACL 2022 Technical Track] [paper]
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CodeSage (MLM + Deobfuscation + Contrastive Learning): "Code Representation Learning At Scale" [2024-02] [ICLR 2024] [paper]
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CoLSBERT (MLM): "Scaling Laws Behind Code Understanding Model" [2024-02] [paper]
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GPT-C (CLM): "IntelliCode Compose: Code Generation Using Transformer" [2020-05] [ESEC/FSE 2020] [paper]
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CodeGPT (CLM): "CodeXGLUE: A Machine Learning Benchmark Dataset for Code Understanding and Generation" [2021-02] [NeurIPS Datasets and Benchmarks 2021] [paper] [repo]
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CodeParrot (CLM) [2021-12] [blog]
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PolyCoder (CLM): "A Systematic Evaluation of Large Language Models of Code" [2022-02] [DL4C@ICLR 2022] [paper] [repo]
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CodeGen (CLM): "CodeGen: An Open Large Language Model for Code with Multi-Turn Program Synthesis" [2022-03] [ICLR 2023] [paper] [repo]
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InCoder (Causal Masking): "InCoder: A Generative Model for Code Infilling and Synthesis" [2022-04] [ICLR 2023] [paper] [repo]
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PyCodeGPT (CLM): "CERT: Continual Pre-Training on Sketches for Library-Oriented Code Generation" [2022-06] [IJCAI-ECAI 2022] [paper] [repo]
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PanGu-Coder (CLM): "PanGu-Coder: Program Synthesis with Function-Level Language Modeling" [2022-07] [paper]
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SantaCoder (FIM): "SantaCoder: don't reach for the stars!" [2023-01] [paper] [model]
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CodeGeeX (CLM): "CodeGeeX: A Pre-Trained Model for Code Generation with Multilingual Evaluations on HumanEval-X" [2023-03] [paper] [repo]
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StarCoder (FIM): "StarCoder: may the source be with you!" [2023-05] [paper] [model]
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Phi-1 (CLM): "Textbooks Are All You Need" [2023-06] [paper] [model]
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CodeFuse (CLM): "CodeFuse-13B: A Pretrained Multi-lingual Code Large Language Model" [2023-10] [paper] [model]
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DeepSeek Coder (CLM+FIM): "DeepSeek-Coder: When the Large Language Model Meets Programming -- The Rise of Code Intelligence" [2024-01] [paper] [repo]
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StarCoder2 (CLM+FIM): "StarCoder 2 and The Stack v2: The Next Generation" [2024-02] [paper] [repo]
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CodeShell (CLM+FIM): "CodeShell Technical Report" [2024-03] [paper] [repo]
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CodeQwen1.5 [2024-04] [blog]
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Granite: "Granite Code Models: A Family of Open Foundation Models for Code Intelligence" [2024-05] [paper] "Scaling Granite Code Models to 128K Context" [2024-07] [paper]
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NT-Java: "Narrow Transformer: Starcoder-Based Java-LM For Desktop" [2024-07] [paper]
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Arctic-SnowCoder: "Arctic-SnowCoder: Demystifying High-Quality Data in Code Pretraining" [2024-09] [paper]
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aiXcoder: "aiXcoder-7B: A Lightweight and Effective Large Language Model for Code Completion" [2024-10] [paper]
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OpenCoder: "OpenCoder: The Open Cookbook for Top-Tier Code Large Language Models" [2024-11] [paper]
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PyMT5 (Span Corruption): "PyMT5: multi-mode translation of natural language and Python code with transformers" [2020-10] [EMNLP 2020] [paper]
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Mastropaolo et al. (MLM + Deobfuscation): "DOBF: A Deobfuscation Pre-Training Objective for Programming Languages" [2021-02] [ICSE 2021] [paper] [repo]
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DOBF (Span Corruption): "Studying the Usage of Text-To-Text Transfer Transformer to Support Code-Related Tasks" [2021-02] [NeurIPS 2021] [paper] [repo]
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PLBART (DAE): "Unified Pre-training for Program Understanding and Generation" [2021-03] [NAACL 2021] [paper] [repo]
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CodeT5 (Span Corruption + Identifier Tagging + Masked Identifier Prediction + Text2Code + Code2Text): "CodeT5: Identifier-aware Unified Pre-trained Encoder-Decoder Models for Code Understanding and Generation" [2021-09] [EMNLP 2021] [paper] [repo]
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SPT-Code (Span Corruption + NSP + Method Name Prediction): "SPT-Code: Sequence-to-Sequence Pre-Training for Learning Source Code Representations" [2022-01] [ICSE 2022 Technical Track] [paper]
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AlphaCode (MLM + CLM): "Competition-Level Code Generation with AlphaCode" [2022-02] [Science] [paper] [blog]
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NatGen (Code Naturalization): "NatGen: Generative pre-training by "Naturalizing" source code" [2022-06] [ESEC/FSE 2022] [paper] [repo]
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ERNIE-Code (Span Corruption + Pivot-based Translation LM): "ERNIE-Code: Beyond English-Centric Cross-lingual Pretraining for Programming Languages" [2022-12] [ACL23 (Findings)] [paper][repo]
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CodeT5+ (Span Corruption + CLM + Text-Code Contrastive Learning + Text-Code Translation): "CodeT5+: Open Code Large Language Models for Code Understanding and Generation" [2023-05] [EMNLP 2023] [paper] [repo]
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AST-T5 (Span Corruption): "AST-T5: Structure-Aware Pretraining for Code Generation and Understanding" [2024-01] [ICML 2024] [paper]
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CugLM (MLM + NSP + CLM): "Multi-task Learning based Pre-trained Language Model for Code Completion" [2020-12] [ASE 2020] [paper]
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UniXcoder (MLM + NSP + CLM + Span Corruption + Contrastive Learning + Code2Text): "UniXcoder: Unified Cross-Modal Pre-training for Code Representation" [2022-03] [ACL 2022] [paper] [repo]
These models apply Instruction Fine-Tuning techniques to enhance the capacities of Code LLMs.
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WizardCoder (StarCoder + Evol-Instruct): "WizardCoder: Empowering Code Large Language Models with Evol-Instruct" [2023-06] [ICLR 2024] [paper] [repo]
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PanGu-Coder 2 (StarCoder + Evol-Instruct + RRTF): "PanGu-Coder2: Boosting Large Language Models for Code with Ranking Feedback" [2023-07] [paper]
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OctoCoder (StarCoder) / OctoGeeX (CodeGeeX2): "OctoPack: Instruction Tuning Code Large Language Models" [2023-08] [ICLR 2024 Spotlight] [paper] [repo]
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"At Which Training Stage Does Code Data Help LLMs Reasoning" [2023-09] [ICLR 2024 Spotlight] [paper]
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InstructCoder: "InstructCoder: Instruction Tuning Large Language Models for Code Editing" [paper] [repo]
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MFTCoder: "MFTCoder: Boosting Code LLMs with Multitask Fine-Tuning" [2023-11] [KDD 2024] [paper] [repo]
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"LLM-Assisted Code Cleaning For Training Accurate Code Generators" [2023-11] [ICLR 2024] [paper]
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Magicoder: "Magicoder: Empowering Code Generation with OSS-Instruct" [2023-12] [ICML 2024] [paper]
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WaveCoder: "WaveCoder: Widespread And Versatile Enhancement For Code Large Language Models By Instruction Tuning" [2023-12] [ACL 2024] [paper]
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Astraios: "Astraios: Parameter-Efficient Instruction Tuning Code Large Language Models" [2024-01] [paper]
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DolphCoder: "DolphCoder: Echo-Locating Code Large Language Models with Diverse and Multi-Objective Instruction Tuning" [2024-02] [ACL 2024] [paper]
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SafeCoder: "Instruction Tuning for Secure Code Generation" [2024-02] [ICML 2024] [paper]
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"Code Needs Comments: Enhancing Code LLMs with Comment Augmentation" [ACL 2024 Findings] [paper]
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CCT: "Code Comparison Tuning for Code Large Language Models" [2024-03] [paper]
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SAT: "Structure-aware Fine-tuning for Code Pre-trained Models" [2024-04] [paper]
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CodeFort: "CodeFort: Robust Training for Code Generation Models" [2024-04] [EMNLP 2024 Findings] [paper]
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XFT: "XFT: Unlocking the Power of Code Instruction Tuning by Simply Merging Upcycled Mixture-of-Experts" [2024-04] [ACL 2024] [paper] [repo]
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AIEV-Instruct: "AutoCoder: Enhancing Code Large Language Model with AIEV-Instruct" [2024-05] [paper]
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AlchemistCoder: "AlchemistCoder: Harmonizing and Eliciting Code Capability by Hindsight Tuning on Multi-source Data" [2024-05] [paper]
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"From Symbolic Tasks to Code Generation: Diversification Yields Better Task Performers" [2024-05] [paper]
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"Unveiling the Impact of Coding Data Instruction Fine-Tuning on Large Language Models Reasoning" [2024-05] [paper]
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PLUM: "PLUM: Preference Learning Plus Test Cases Yields Better Code Language Models" [2024-06] [paper]
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mCoder: "McEval: Massively Multilingual Code Evaluation" [2024-06] [paper]
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"Unlock the Correlation between Supervised Fine-Tuning and Reinforcement Learning in Training Code Large Language Models" [2024-06] [paper]
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Code-Optimise: "Code-Optimise: Self-Generated Preference Data for Correctness and Efficiency" [2024-06] [paper]
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UniCoder: "UniCoder: Scaling Code Large Language Model via Universal Code" [2024-06] [ACL 2024] [paper]
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"Brevity is the soul of wit: Pruning long files for code generation" [2024-06] [paper]
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"Code Less, Align More: Efficient LLM Fine-tuning for Code Generation with Data Pruning" [2024-07] [paper]
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InverseCoder: "InverseCoder: Unleashing the Power of Instruction-Tuned Code LLMs with Inverse-Instruct" [2024-07] [paper]
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"Curriculum Learning for Small Code Language Models" [2024-07] [paper]
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Genetic-Instruct: "Genetic Instruct: Scaling up Synthetic Generation of Coding Instructions for Large Language Models" [2024-07] [paper]
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DataScope: "API-guided Dataset Synthesis to Finetune Large Code Models" [2024-08] [paper]
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** XCoder**: "How Do Your Code LLMs Perform? Empowering Code Instruction Tuning with High-Quality Data" [2024-09] [EMNLP 2024] [paper]
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GALLa: "GALLa: Graph Aligned Large Language Models for Improved Source Code Understanding" [2024-09] [paper]
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HexaCoder: "HexaCoder: Secure Code Generation via Oracle-Guided Synthetic Training Data" [2024-09] [paper]
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AMR-Evol: "AMR-Evol: Adaptive Modular Response Evolution Elicits Better Knowledge Distillation for Large Language Models in Code Generation" [2024-10] [EMNLP 2024] [paper]
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LintSeq: "Training Language Models on Synthetic Edit Sequences Improves Code Synthesis" [2024-10] [paper]
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CoBa: "CoBa: Convergence Balancer for Multitask Finetuning of Large Language Models" [2024-10] [EMNLP 2024] [paper]
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CursorCore: "CursorCore: Assist Programming through Aligning Anything" [2024-10] [paper]
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SelfCodeAlign: "SelfCodeAlign: Self-Alignment for Code Generation" [2024-10] [paper]
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"Mastering the Craft of Data Synthesis for CodeLLMs" [2024-10] [paper]
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CodeLutra: "CodeLutra: Boosting LLM Code Generation via Preference-Guided Refinement" [2024-11] [paper]
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DSTC: "DSTC: Direct Preference Learning with Only Self-Generated Tests and Code to Improve Code LMs" [2024-11] [paper]
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CompCoder: "Compilable Neural Code Generation with Compiler Feedback" [2022-03] [ACL 2022] [paper]
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CodeRL: "CodeRL: Mastering Code Generation through Pretrained Models and Deep Reinforcement Learning" [2022-07] [NeurIPS 2022] [paper] [repo]
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PPOCoder: "Execution-based Code Generation using Deep Reinforcement Learning" [2023-01] [TMLR 2023] [paper] [repo]
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RLTF: "RLTF: Reinforcement Learning from Unit Test Feedback" [2023-07] [paper] [repo]
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B-Coder: "B-Coder: Value-Based Deep Reinforcement Learning for Program Synthesis" [2023-10] [ICLR 2024] [paper]
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IRCoCo: "IRCoCo: Immediate Rewards-Guided Deep Reinforcement Learning for Code Completion" [2024-01] [FSE 2024] [paper]
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StepCoder: "StepCoder: Improve Code Generation with Reinforcement Learning from Compiler Feedback" [2024-02] [ACL 2024] [paper]
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RLPF & DPA: "Performance-Aligned LLMs for Generating Fast Code" [2024-04] [paper]
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"Measuring memorization in RLHF for code completion" [2024-06] [paper]
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"Applying RLAIF for Code Generation with API-usage in Lightweight LLMs" [2024-06] [paper]
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RLCoder: "RLCoder: Reinforcement Learning for Repository-Level Code Completion" [2024-07] [paper]
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PF-PPO: "Policy Filtration in RLHF to Fine-Tune LLM for Code Generation" [2024-09] [paper]
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Coffee-Gym: "Coffee-Gym: An Environment for Evaluating and Improving Natural Language Feedback on Erroneous Code" [2024-09] [EMNLP 2024] [paper]
-
RLEF: "RLEF: Grounding Code LLMs in Execution Feedback with Reinforcement Learning" [2024-10] [paper]
-
CodePMP: "CodePMP: Scalable Preference Model Pretraining for Large Language Model Reasoning" [2024-10] [paper]
-
CodeDPO: "CodeDPO: Aligning Code Models with Self Generated and Verified Source Code" [2024-10] [paper]
-
"Process Supervision-Guided Policy Optimization for Code Generation" [2024-10] [paper]
-
"Aligning CodeLLMs with Direct Preference Optimization" [2024-10] [paper]
-
FALCON: "FALCON: Feedback-driven Adaptive Long/short-term memory reinforced Coding Optimization system" [2024-10] [paper]
-
PFPO: "Preference Optimization for Reasoning with Pseudo Feedback" [2024-11] [paper]
-
o1-Coder: "o1-Coder: an o1 Replication for Coding" [2024-11] [paper]
-
PAL: "PAL: Program-aided Language Models" [2022-11] [ICML 2023] [paper] [repo]
-
PoT: "Program of Thoughts Prompting: Disentangling Computation from Reasoning for Numerical Reasoning Tasks" [2022-11] [TMLR 2023] [paper] [repo]
-
PaD: "PaD: Program-aided Distillation Can Teach Small Models Reasoning Better than Chain-of-thought Fine-tuning" [2023-05] [NAACL 2024] [paper]
-
CSV: "Solving Challenging Math Word Problems Using GPT-4 Code Interpreter with Code-based Self-Verification" [2023-08] [ICLR 2024] [paper]
-
MathCoder: "MathCoder: Seamless Code Integration in LLMs for Enhanced Mathematical Reasoning" [2023-10] [ICLR 2024] [paper]
-
CoC: "Chain of Code: Reasoning with a Language Model-Augmented Code Emulator" [2023-12] [ICML 2024] [paper]
-
EHRAgent: "EHRAgent: Code Empowers Large Language Models for Few-shot Complex Tabular Reasoning on Electronic Health Records" [2024-01] [EMNLP 2024] [paper]
-
MARIO: "MARIO: MAth Reasoning with code Interpreter Output -- A Reproducible Pipeline" [2024-01] [ACL 2024 Findings] [paper]
-
"Code Prompting Elicits Conditional Reasoning Abilities in Text+Code LLMs" [2024-01] [EMNLP 2024] [paper]
-
ReGAL: "ReGAL: Refactoring Programs to Discover Generalizable Abstractions" [2024-01] [ICML 2024] [paper]
-
CodeAct: "Executable Code Actions Elicit Better LLM Agents" [2024-02] [ICML 2024] [paper]
-
MultiPoT: "Python is Not Always the Best Choice: Embracing Multilingual Program of Thoughts" [2024-02] [EMNLP 2024] [paper]
-
HProPro: "Exploring Hybrid Question Answering via Program-based Prompting" [2024-02] [ACL 2024] [paper]
-
HTL: "How Do Humans Write Code? Large Models Do It the Same Way Too" [2024-02] [EMNLP 2024] [paper]
-
xSTREET: "Eliciting Better Multilingual Structured Reasoning from LLMs through Code" [2024-03] [ACL 2024] [paper]
-
FlowMind: "FlowMind: Automatic Workflow Generation with LLMs" [2024-03] [paper]
-
Think-and-Execute: "Language Models as Compilers: Simulating Pseudocode Execution Improves Algorithmic Reasoning in Language Models" [2024-04] [EMNLP 2024] [paper]
-
CoRE: "CoRE: LLM as Interpreter for Natural Language Programming, Pseudo-Code Programming, and Flow Programming of AI Agents" [2024-05] [paper]
-
MuMath-Code: "MuMath-Code: Combining Tool-Use Large Language Models with Multi-perspective Data Augmentation for Mathematical Reasoning" [2024-05] [EMNLP 2024] [paper]
-
COGEX: "Learning to Reason via Program Generation, Emulation, and Search" [2024-05] [paper]
-
"Arithmetic Reasoning with LLM: Prolog Generation & Permutation" [2024-05] [paper]
-
"Can LLMs Reason in the Wild with Programs?" [2024-06] [EMNLP 2024 Findings] [paper]
-
DotaMath: "DotaMath: Decomposition of Thought with Code Assistance and Self-correction for Mathematical Reasoning" [2024-07] [paper]
-
CIBench: "CIBench: Evaluating Your LLMs with a Code Interpreter Plugin" [2024-07] [paper]
-
PyBench: "PyBench: Evaluating LLM Agent on various real-world coding tasks" [2024-07] [paper]
-
AdaCoder: "AdaCoder: Adaptive Prompt Compression for Programmatic Visual Question Answering" [2024-07] [paper]
-
PyramidCoder: "Pyramid Coder: Hierarchical Code Generator for Compositional Visual Question Answering" [2024-07] [paper]
-
CodeGraph: "CodeGraph: Enhancing Graph Reasoning of LLMs with Code" [2024-08] [paper]
-
SIaM: "SIaM: Self-Improving Code-Assisted Mathematical Reasoning of Large Language Models" [2024-08] [paper]
-
CodePlan: "CodePlan: Unlocking Reasoning Potential in Large Langauge Models by Scaling Code-form Planning" [2024-09] [paper]
-
PoT: "Proof of Thought : Neurosymbolic Program Synthesis allows Robust and Interpretable Reasoning" [2024-09] [paper]
-
MetaMath: "MetaMath: Integrating Natural Language and Code for Enhanced Mathematical Reasoning in Large Language Models" [2024-09] [paper]
-
"BabelBench: An Omni Benchmark for Code-Driven Analysis of Multimodal and Multistructured Data" [2024-10] [paper]
-
CodeSteer: "Steering Large Language Models between Code Execution and Textual Reasoning" [2024-10] [paper]
-
MathCoder2: "MathCoder2: Better Math Reasoning from Continued Pretraining on Model-translated Mathematical Code" [2024-10] [paper]
-
LLMFP: "Planning Anything with Rigor: General-Purpose Zero-Shot Planning with LLM-based Formalized Programming" [2024-10] [paper]
-
Prove: "Not All Votes Count! Programs as Verifiers Improve Self-Consistency of Language Models for Math Reasoning" [2024-10] [paper]
-
PROVE: "Trust but Verify: Programmatic VLM Evaluation in the Wild" [2024-10] [paper]
-
GeoCoder: "GeoCoder: Solving Geometry Problems by Generating Modular Code through Vision-Language Models" [2024-10] [paper]
-
ReasonAgain: "ReasonAgain: Using Extractable Symbolic Programs to Evaluate Mathematical Reasoning" [2024-10] [paper]
-
GFP: "Gap-Filling Prompting Enhances Code-Assisted Mathematical Reasoning" [2024-11] [paper]
-
UTMath: "UTMath: Math Evaluation with Unit Test via Reasoning-to-Coding Thoughts" [2024-11] [paper]
-
CoCoP: "CoCoP: Enhancing Text Classification with LLM through Code Completion Prompt" [2024-11] [paper]
-
REPL-Plan: "Interactive and Expressive Code-Augmented Planning with Large Language Models" [2024-11] [paper]
-
CrossPAL: "Empowering Multi-step Reasoning across Languages via Program-Aided Language Models" [2024-11] [EMNLP 2024] [paper]
-
"From Code to Play: Benchmarking Program Search for Games Using Large Language Models" [2024-12] [paper]
-
CoinMath: "CoinMath: Harnessing the Power of Coding Instruction for Math LLMs" [2024-12] [paper]
-
MultiLingPoT: "MultiLingPoT: Enhancing Mathematical Reasoning with Multilingual Program Fine-tuning" [2024-12] [paper]
-
"Code Simulation Challenges for Large Language Models" [2024-01] [paper]
-
"CodeMind: A Framework to Challenge Large Language Models for Code Reasoning" [2024-02] [paper]
-
"Executing Natural Language-Described Algorithms with Large Language Models: An Investigation" [2024-02] [paper]
-
"Can Language Models Pretend Solvers? Logic Code Simulation with LLMs" [2024-03] [paper]
-
"Evaluating Large Language Models with Runtime Behavior of Program Execution" [2024-03] [paper]
-
"NExT: Teaching Large Language Models to Reason about Code Execution" [2024-04] [ICML 2024] [paper]
-
"SelfPiCo: Self-Guided Partial Code Execution with LLMs" [2024-07] [paper]
-
"Large Language Models as Code Executors: An Exploratory Study" [2024-10] [paper]
-
"VISUALCODER: Guiding Large Language Models in Code Execution with Fine-grained Multimodal Chain-of-Thought Reasoning" [2024-10] [paper]
-
Self-collaboration: "Self-collaboration Code Generation via ChatGPT" [2023-04] [paper]
-
ChatDev: "Communicative Agents for Software Development" [2023-07] [paper] [repo]
-
MetaGPT: "MetaGPT: Meta Programming for A Multi-Agent Collaborative Framework" [2023-08] [paper] [repo]
-
CodeChain: "CodeChain: Towards Modular Code Generation Through Chain of Self-revisions with Representative Sub-modules" [2023-10] [ICLR 2024] [paper]
-
CodeAgent: "CodeAgent: Enhancing Code Generation with Tool-Integrated Agent Systems for Real-World Repo-level Coding Challenges" [2024-01] [ACL 2024] [paper]
-
CONLINE: "CoCoST: Automatic Complex Code Generation with Online Searching and Correctness Testing" [2024-03] [EMNLP 2024] [paper]
-
LCG: "When LLM-based Code Generation Meets the Software Development Process" [2024-03] [paper]
-
RepairAgent: "RepairAgent: An Autonomous, LLM-Based Agent for Program Repair" [2024-03] [paper]
-
MAGIS:: "MAGIS: LLM-Based Multi-Agent Framework for GitHub Issue Resolution" [2024-03] [paper]
-
SoA: "Self-Organized Agents: A LLM Multi-Agent Framework toward Ultra Large-Scale Code Generation and Optimization" [2024-04] [paper]
-
AutoCodeRover: "AutoCodeRover: Autonomous Program Improvement" [2024-04] [paper]
-
SWE-agent: "SWE-agent: Agent-Computer Interfaces Enable Automated Software Engineering" [2024-05] [paper]
-
MapCoder: "MapCoder: Multi-Agent Code Generation for Competitive Problem Solving" [2024-05] [ACL 2024] [paper]
-
"Fight Fire with Fire: How Much Can We Trust ChatGPT on Source Code-Related Tasks?" [2024-05] [paper]
-
FunCoder: "Divide-and-Conquer Meets Consensus: Unleashing the Power of Functions in Code Generation" [2024-05] [paper]
-
CTC: "Multi-Agent Software Development through Cross-Team Collaboration" [2024-06] [paper]
-
MASAI: "MASAI: Modular Architecture for Software-engineering AI Agents" [2024-06] [paper]
-
AgileCoder: "AgileCoder: Dynamic Collaborative Agents for Software Development based on Agile Methodology" [2024-06] [paper]
-
CodeNav: "CodeNav: Beyond tool-use to using real-world codebases with LLM agents" [2024-06] [paper]
-
INDICT: "INDICT: Code Generation with Internal Dialogues of Critiques for Both Security and Helpfulness" [2024-06] [paper]
-
AppWorld: "AppWorld: A Controllable World of Apps and People for Benchmarking Interactive Coding Agents" [2024-07] [paper]
-
CortexCompile: "CortexCompile: Harnessing Cortical-Inspired Architectures for Enhanced Multi-Agent NLP Code Synthesis" [2024-08] [paper]
-
Survey: "Large Language Model-Based Agents for Software Engineering: A Survey" [2024-09] [paper]
-
PairCoder: "A Pair Programming Framework for Code Generation via Multi-Plan Exploration and Feedback-Driven Refinement" [2024-09] [ASE 2024] [paper] [repo]
-
AutoSafeCoder: "AutoSafeCoder: A Multi-Agent Framework for Securing LLM Code Generation through Static Analysis and Fuzz Testing" [2024-09] [paper]
-
SuperCoder2.0: "SuperCoder2.0: Technical Report on Exploring the feasibility of LLMs as Autonomous Programmer" [2024-09] [paper]
-
Survey: "Agents in Software Engineering: Survey, Landscape, and Vision" [2024-09] [paper]
-
MOSS: "MOSS: Enabling Code-Driven Evolution and Context Management for AI Agents" [2024-09] [paper]
-
HyperAgent: "HyperAgent: Generalist Software Engineering Agents to Solve Coding Tasks at Scale" [2024-09] [paper]
-
"Compositional Hardness of Code in Large Language Models -- A Probabilistic Perspective" [2024-09] [paper]
-
RGD: "RGD: Multi-LLM Based Agent Debugger via Refinement and Generation Guidance" [2024-10] [paper]
-
Seeker: "Seeker: Enhancing Exception Handling in Code with LLM-based Multi-Agent Approach" [2024-10] [paper]
-
REDO: "REDO: Execution-Free Runtime Error Detection for COding Agents" [2024-10] [paper]
-
"Evaluating Software Development Agents: Patch Patterns, Code Quality, and Issue Complexity in Real-World GitHub Scenarios" [2024-10] [paper]
-
EvoMAC: "Self-Evolving Multi-Agent Collaboration Networks for Software Development" [2024-10] [paper]
-
VisionCoder: "VisionCoder: Empowering Multi-Agent Auto-Programming for Image Processing with Hybrid LLMs" [2024-10] [paper]
-
AutoKaggle: "AutoKaggle: A Multi-Agent Framework for Autonomous Data Science Competitions" [2024-10] [paper]
-
Watson: "Watson: A Cognitive Observability Framework for the Reasoning of Foundation Model-Powered Agents" [2024-11] [paper]
-
CodeTree: "CodeTree: Agent-guided Tree Search for Code Generation with Large Language Models" [2024-11] [paper]
-
EvoCoder: "LLMs as Continuous Learners: Improving the Reproduction of Defective Code in Software Issues" [2024-11] [paper]
-
AEGIS: "AEGIS: An Agent-based Framework for General Bug Reproduction from Issue Descriptions" [2024-11] [paper]
-
ExecutionAgent: "You Name It, I Run It: An LLM Agent to Execute Tests of Arbitrary Projects" [2024-12] [paper]
-
GHIssueMarket: "GHIssuemarket: A Sandbox Environment for SWE-Agents Economic Experimentation" [2024-12] [paper]
-
"Interactive Program Synthesis" [2017-03] [paper]
-
"Question selection for interactive program synthesis" [2020-06] [PLDI 2020] [paper]
-
"Interactive Code Generation via Test-Driven User-Intent Formalization" [2022-08] [paper]
-
"Improving Code Generation by Training with Natural Language Feedback" [2023-03] [TMLR] [paper]
-
"Self-Refine: Iterative Refinement with Self-Feedback" [2023-03] [NeurIPS 2023] [paper]
-
"Teaching Large Language Models to Self-Debug" [2023-04] [paper]
-
"Self-Edit: Fault-Aware Code Editor for Code Generation" [2023-05] [ACL 2023] [paper]
-
"LeTI: Learning to Generate from Textual Interactions" [2023-05] [paper]
-
"Is Self-Repair a Silver Bullet for Code Generation?" [2023-06] [ICLR 2024] [paper]
-
"InterCode: Standardizing and Benchmarking Interactive Coding with Execution Feedback" [2023-06] [NeurIPS 2023] [paper]
-
"INTERVENOR: Prompting the Coding Ability of Large Language Models with the Interactive Chain of Repair" [2023-11] [ACL 2024 Findings] [paper]
-
"OpenCodeInterpreter: Integrating Code Generation with Execution and Refinement" [2024-02] [ACL 2024 Findings] [paper]
-
"Iterative Refinement of Project-Level Code Context for Precise Code Generation with Compiler Feedback" [2024-03] [ACL 2024 Findings] [paper]
-
"CYCLE: Learning to Self-Refine the Code Generation" [2024-03] [paper]
-
"LLM-based Test-driven Interactive Code Generation: User Study and Empirical Evaluation" [2024-04] [paper]
-
"SOAP: Enhancing Efficiency of Generated Code via Self-Optimization" [2024-05] [paper]
-
"Code Repair with LLMs gives an Exploration-Exploitation Tradeoff" [2024-05] [paper]
-
"ReflectionCoder: Learning from Reflection Sequence for Enhanced One-off Code Generation" [2024-05] [paper]
-
"Training LLMs to Better Self-Debug and Explain Code" [2024-05] [paper]
-
"Requirements are All You Need: From Requirements to Code with LLMs" [2024-06] [paper]
-
"I Need Help! Evaluating LLM's Ability to Ask for Users' Support: A Case Study on Text-to-SQL Generation" [2024-07] [EMNLP 2024] [paper]
-
"An Empirical Study on Self-correcting Large Language Models for Data Science Code Generation" [2024-08] [paper]
-
"RethinkMCTS: Refining Erroneous Thoughts in Monte Carlo Tree Search for Code Generation" [2024-09] [paper]
-
"From Code to Correctness: Closing the Last Mile of Code Generation with Hierarchical Debugging" [2024-10] [paper] [repo]
-
"What Makes Large Language Models Reason in (Multi-Turn) Code Generation?" [2024-10] [paper]
-
"The First Prompt Counts the Most! An Evaluation of Large Language Models on Iterative Example-based Code Generation" [2024-11] [paper]
-
"Planning-Driven Programming: A Large Language Model Programming Workflow" [2024-11] [paper]
-
"ConAIR:Consistency-Augmented Iterative Interaction Framework to Enhance the Reliability of Code Generation" [2024-11] [paper]
-
"Socratic Human Feedback (SoHF): Expert Steering Strategies for LLM Code Generation" [2024-11] [EMNLP 2024 Findings] [paper]
-
"PerfCodeGen: Improving Performance of LLM Generated Code with Execution Feedback" [2024-11] [paper]
-
"GenX: Mastering Code and Test Generation with Execution Feedback" [2024-12] [paper]
-
"Helping LLMs Improve Code Generation Using Feedback from Testing and Static Analysis" [2024-12] [paper]
-
"Outcome-Refining Process Supervision for Code Generation" [2024-12] [paper]
-
"MarkupLM: Pre-training of Text and Markup Language for Visually-rich Document Understanding" [2021-10] [ACL 2022] [paper]
-
"WebKE: Knowledge Extraction from Semi-structured Web with Pre-trained Markup Language Model" [2021-10] [CIKM 2021] [paper]
-
"WebGPT: Browser-assisted question-answering with human feedback" [2021-12] [paper]
-
"CM3: A Causal Masked Multimodal Model of the Internet" [2022-01] [paper]
-
"DOM-LM: Learning Generalizable Representations for HTML Documents" [2022-01] [paper]
-
"WebFormer: The Web-page Transformer for Structure Information Extraction" [2022-02] [WWW 2022] [paper]
-
"A Dataset for Interactive Vision-Language Navigation with Unknown Command Feasibility" [2022-02] [ECCV 2022] [paper]
-
"WebShop: Towards Scalable Real-World Web Interaction with Grounded Language Agents" [2022-07] [NeurIPS 2022] [paper]
-
"Pix2Struct: Screenshot Parsing as Pretraining for Visual Language Understanding" [2022-10] [ICML 2023] [paper]
-
"Understanding HTML with Large Language Models" [2022-10] [EMNLP 2023 findings] [paper]
-
"WebUI: A Dataset for Enhancing Visual UI Understanding with Web Semantics" [2023-01] [CHI 2023] [paper]
-
"Mind2Web: Towards a Generalist Agent for the Web" [2023-06] [NeurIPS 2023] [paper]
-
"A Real-World WebAgent with Planning, Long Context Understanding, and Program Synthesis", [2023-07] [ICLR 2024] [paper]
-
"WebArena: A Realistic Web Environment for Building Autonomous Agents" [2023-07] [paper]
-
"CogAgent: A Visual Language Model for GUI Agents" [2023-12] [paper]
-
"GPT-4V(ision) is a Generalist Web Agent, if Grounded" [2024-01] [paper]
-
"WebVoyager: Building an End-to-End Web Agent with Large Multimodal Models" [2024-01] [paper]
-
"WebLINX: Real-World Website Navigation with Multi-Turn Dialogue" [2024-02] [paper]
-
"OmniACT: A Dataset and Benchmark for Enabling Multimodal Generalist Autonomous Agents for Desktop and Web" [2024-02] [paper]
-
"AutoWebGLM: Bootstrap And Reinforce A Large Language Model-based Web Navigating Agent" [2024-04] [paper]
-
"WILBUR: Adaptive In-Context Learning for Robust and Accurate Web Agents" [2024-04] [paper]
-
"AutoCrawler: A Progressive Understanding Web Agent for Web Crawler Generation" [2024-04] [paper]
-
"GUICourse: From General Vision Language Models to Versatile GUI Agents" [2024-06] [paper]
-
"NaviQAte: Functionality-Guided Web Application Navigation" [2024-09] [paper]
-
"MobileVLM: A Vision-Language Model for Better Intra- and Inter-UI Understanding" [2024-09] [paper]
-
"Multimodal Auto Validation For Self-Refinement in Web Agents" [2024-10] [paper]
-
"Navigating the Digital World as Humans Do: Universal Visual Grounding for GUI Agents" [2024-10] [paper]
-
"Web Agents with World Models: Learning and Leveraging Environment Dynamics in Web Navigation" [2024-10] [paper]
-
"Harnessing Webpage UIs for Text-Rich Visual Understanding" [2024-10] [paper]
-
"AgentOccam: A Simple Yet Strong Baseline for LLM-Based Web Agents" [2024-10] [paper]
-
"Beyond Browsing: API-Based Web Agents" [2024-10] [paper]
-
"Large Language Models Empowered Personalized Web Agents" [2024-10] [paper]
-
"AdvWeb: Controllable Black-box Attacks on VLM-powered Web Agents" [2024-10] [paper]
-
"Auto-Intent: Automated Intent Discovery and Self-Exploration for Large Language Model Web Agents" [2024-10] [paper]
-
"OS-ATLAS: A Foundation Action Model for Generalist GUI Agents" [2024-10] [paper]
-
"From Context to Action: Analysis of the Impact of State Representation and Context on the Generalization of Multi-Turn Web Navigation Agents" [2024-10] [paper]
-
"AutoGLM: Autonomous Foundation Agents for GUIs" [2024-10] [paper]
-
"WebRL: Training LLM Web Agents via Self-Evolving Online Curriculum Reinforcement Learning" [2024-11] [paper]
-
"The Dawn of GUI Agent: A Preliminary Case Study with Claude 3.5 Computer Use" [2024-11] [paper]
-
"ScribeAgent: Towards Specialized Web Agents Using Production-Scale Workflow Data" [2024-11] [paper]
-
"ShowUI: One Vision-Language-Action Model for GUI Visual Agent" [2024-11] [paper]
-
"Large Language Model-Brained GUI Agents: A Survey" [2024-11] [paper]
-
"Free your mouse! Command Large Language Models to Generate Code to Format Word Documents" [2024-11] [EMNLP 2024] [paper]
-
"Aguvis: Unified Pure Vision Agents for Autonomous GUI Interaction" [2024-12] [paper]
-
"Falcon-UI: Understanding GUI Before Following User Instructions" [2024-12] [paper]
-
"WEPO: Web Element Preference Optimization for LLM-based Web Navigation" [2024-12] [paper]
-
[Ruby] "On the Transferability of Pre-trained Language Models for Low-Resource Programming Languages" [2022-04] [ICPC 2022] [paper]
-
[Verilog] "Benchmarking Large Language Models for Automated Verilog RTL Code Generation" [2022-12] [DATE 2023] [paper]
-
[OCL] "On Codex Prompt Engineering for OCL Generation: An Empirical Study" [2023-03] [MSR 2023] [paper]
-
[Ansible-YAML] "Automated Code generation for Information Technology Tasks in YAML through Large Language Models" [2023-05] [DAC 2023] [paper]
-
[Hansl] "The potential of LLMs for coding with low-resource and domain-specific programming languages" [2023-07] [paper]
-
[Verilog] "VeriGen: A Large Language Model for Verilog Code Generation" [2023-07] [paper]
-
[Verilog] "RTLLM: An Open-Source Benchmark for Design RTL Generation with Large Language Model" [2023-08] [paper]
-
[Racket, OCaml, Lua, R, Julia] "Knowledge Transfer from High-Resource to Low-Resource Programming Languages for Code LLMs" [2023-08] [paper]
-
[Verilog] "VerilogEval: Evaluating Large Language Models for Verilog Code Generation" [2023-09] [ICCAD 2023] [paper]
-
[Verilog] "RTLFixer: Automatically Fixing RTL Syntax Errors with Large Language Models" [2023-11] [paper]
-
[Verilog] "Advanced Large Language Model (LLM)-Driven Verilog Development: Enhancing Power, Performance, and Area Optimization in Code Synthesis" [2023-12] [paper]
-
[Verilog] "RTLCoder: Outperforming GPT-3.5 in Design RTL Generation with Our Open-Source Dataset and Lightweight Solution" [2023-12] [paper]
-
[Verilog] "BetterV: Controlled Verilog Generation with Discriminative Guidance" [2024-02] [ICML 2024] [paper]
-
[R] "Empirical Studies of Parameter Efficient Methods for Large Language Models of Code and Knowledge Transfer to R" [2024-03] [paper]
-
[Haskell] "Investigating the Performance of Language Models for Completing Code in Functional Programming Languages: a Haskell Case Study" [2024-03] [paper]
-
[Verilog] "A Multi-Expert Large Language Model Architecture for Verilog Code Generation" [2024-04] [paper]
-
[Verilog] "CreativEval: Evaluating Creativity of LLM-Based Hardware Code Generation" [2024-04] [paper]
-
[Alloy] "An Empirical Evaluation of Pre-trained Large Language Models for Repairing Declarative Formal Specifications" [2024-04] [paper]
-
[Verilog] "Evaluating LLMs for Hardware Design and Test" [2024-04] [paper]
-
[Kotlin, Swift, and Rust] "Software Vulnerability Prediction in Low-Resource Languages: An Empirical Study of CodeBERT and ChatGPT" [2024-04] [paper]
-
[Verilog] "MEIC: Re-thinking RTL Debug Automation using LLMs" [2024-05] [paper]
-
[Bash] "Tackling Execution-Based Evaluation for NL2Bash" [2024-05] [paper]
-
[Fortran, Julia, Matlab, R, Rust] "Evaluating AI-generated code for C++, Fortran, Go, Java, Julia, Matlab, Python, R, and Rust" [2024-05] [paper]
-
[OpenAPI] "Optimizing Large Language Models for OpenAPI Code Completion" [2024-05] [paper]
-
[Kotlin] "Kotlin ML Pack: Technical Report" [2024-05] [paper]
-
[Verilog] "VerilogReader: LLM-Aided Hardware Test Generation" [2024-06] [paper]
-
"Benchmarking Generative Models on Computational Thinking Tests in Elementary Visual Programming" [2024-06] [paper]
-
[Logo] "Program Synthesis Benchmark for Visual Programming in XLogoOnline Environment" [2024-06] [paper]
-
[Ansible YAML, Bash] "DocCGen: Document-based Controlled Code Generation" [2024-06] [EMNLP 2024] [paper]
-
[Qiskit] "Qiskit HumanEval: An Evaluation Benchmark For Quantum Code Generative Models" [2024-06] [paper]
-
[Perl, Golang, Swift] "DistiLRR: Transferring Code Repair for Low-Resource Programming Languages" [2024-06] [paper]
-
[Verilog] "AssertionBench: A Benchmark to Evaluate Large-Language Models for Assertion Generation" [2024-06] [paper]
-
"A Comparative Study of DSL Code Generation: Fine-Tuning vs. Optimized Retrieval Augmentation" [2024-07] [paper]
-
[Json, XLM, YAML] "ConCodeEval: Evaluating Large Language Models for Code Constraints in Domain-Specific Languages" [2024-07] [paper]
-
[Verilog] "AutoBench: Automatic Testbench Generation and Evaluation Using LLMs for HDL Design" [2024-07] [paper]
-
[Verilog] "CodeV: Empowering LLMs for Verilog Generation through Multi-Level Summarization" [2024-07] [paper]
-
[Verilog] "ITERTL: An Iterative Framework for Fine-tuning LLMs for RTL Code Generation" [2024-07] [paper]
-
[Verilog] "OriGen:Enhancing RTL Code Generation with Code-to-Code Augmentation and Self-Reflection" [2024-07] [paper]
-
[Verilog] "Large Language Model for Verilog Generation with Golden Code Feedback" [2024-07] [paper]
-
[Verilog] "AutoVCoder: A Systematic Framework for Automated Verilog Code Generation using LLMs" [2024-07] [paper]
-
[RPA] "Plan with Code: Comparing approaches for robust NL to DSL generation" [2024-08] [paper]
-
[Verilog] "VerilogCoder: Autonomous Verilog Coding Agents with Graph-based Planning and Abstract Syntax Tree (AST)-based Waveform Tracing Tool" [2024-08] [paper]
-
[Verilog] "Revisiting VerilogEval: Newer LLMs, In-Context Learning, and Specification-to-RTL Tasks" [2024-08] [paper]
-
[MaxMSP, Web Audio] "Benchmarking LLM Code Generation for Audio Programming with Visual Dataflow Languages" [2024-09] [paper]
-
[Verilog] "RTLRewriter: Methodologies for Large Models aided RTL Code Optimization" [2024-09] [paper]
-
[Verilog] "CraftRTL: High-quality Synthetic Data Generation for Verilog Code Models with Correct-by-Construction Non-Textual Representations and Targeted Code Repair" [2024-09] [paper]
-
[Bash] "ScriptSmith: A Unified LLM Framework for Enhancing IT Operations via Automated Bash Script Generation, Assessment, and Refinement" [2024-09] [paper]
-
[Survey] "Survey on Code Generation for Low resource and Domain Specific Programming Languages" [2024-10] [paper]
-
[R] "Do Current Language Models Support Code Intelligence for R Programming Language?" [2024-10] [paper]
-
[PLC] "Agents4PLC: Automating Closed-loop PLC Code Generation and Verification in Industrial Control Systems using LLM-based Agents" [2024-10] [paper]
-
[Lua] "Evaluating Quantized Large Language Models for Code Generation on Low-Resource Language Benchmarks" [2024-10] [paper]
-
"Improving Parallel Program Performance Through DSL-Driven Code Generation with LLM Optimizers" [2024-10] [paper]
-
[R, D, Racket, Bash]: "Bridge-Coder: Unlocking LLMs' Potential to Overcome Language Gaps in Low-Resource Code" [2024-10] [paper]
-
[SPICE]: "SPICEPilot: Navigating SPICE Code Generation and Simulation with AI Guidance" [2024-10] [paper]
-
[IEC 61131-3 ST]: "Training LLMs for Generating IEC 61131-3 Structured Text with Online Feedback" [2024-10] [paper]
-
[Verilog] "MetRex: A Benchmark for Verilog Code Metric Reasoning Using LLMs" [2024-11] [paper]
-
[Verilog] "CorrectBench: Automatic Testbench Generation with Functional Self-Correction using LLMs for HDL Design" [2024-11] [paper]
-
[MUMPS, ALC] "Leveraging LLMs for Legacy Code Modernization: Challenges and Opportunities for LLM-Generated Documentation" [2024-11] [paper]
-
[Power Query M, OfficeScript, Excel formulas] "RAR: Retrieval-augmented retrieval for code generation in low resource languages" [2024-11] [EMNLP 2024] [paper]
-
[ST] "A Multi-Agent Framework for Extensible Structured Text Generation in PLCs" [2024-12] [paper]
-
[Verilog] "PromptV: Leveraging LLM-powered Multi-Agent Prompting for High-quality Verilog Generation" [2024-12] [paper]
-
[HPC] "HPC-Coder-V2: Studying Code LLMs Across Low-Resource Parallel Languages" [2024-12] [paper]
For each task, the first column contains non-neural methods (e.g. n-gram, TF-IDF, and (occasionally) static program analysis); the second column contains non-Transformer neural methods (e.g. LSTM, CNN, GNN); the third column contains Transformer based methods (e.g. BERT, GPT, T5).
-
"Enhancing Large Language Models in Coding Through Multi-Perspective Self-Consistency" [2023-09] [ACL 2024] [paper]
-
"Self-Infilling Code Generation" [2023-11] [ICML 2024] [paper]
-
"JumpCoder: Go Beyond Autoregressive Coder via Online Modification" [2024-01] [ACL 2024] [paper]
-
"Unsupervised Evaluation of Code LLMs with Round-Trip Correctness" [2024-02] [ICML 2024] [paper]
-
"The Larger the Better? Improved LLM Code-Generation via Budget Reallocation" [2024-03] [paper]
-
"Quantifying Contamination in Evaluating Code Generation Capabilities of Language Models" [2024-03] [ACL 2024] [paper]
-
"Comments as Natural Logic Pivots: Improve Code Generation via Comment Perspective" [2024-04] [ACL 2024 Findings] [paper]
-
"Distilling Algorithmic Reasoning from LLMs via Explaining Solution Programs" [2024-04] [paper]
-
"Quality Assessment of Prompts Used in Code Generation" [2024-04] [paper]
-
"Assessing GPT-4-Vision's Capabilities in UML-Based Code Generation" [2024-04] [paper]
-
"Model Cascading for Code: Reducing Inference Costs with Model Cascading for LLM Based Code Generation" [2024-05] [paper]
-
"A Survey on Large Language Models for Code Generation" [2024-06] [paper]
-
"Is Programming by Example solved by LLMs?" [2024-06] [paper]
-
"Benchmarks and Metrics for Evaluations of Code Generation: A Critical Review" [2024-06] [paper]
-
"MPCODER: Multi-user Personalized Code Generator with Explicit and Implicit Style Representation Learning" [2024-06] [ACL 2024] [paper]
-
"Revisiting the Impact of Pursuing Modularity for Code Generation" [2024-07] [EMNLP 2024 Findings] [paper]
-
"Evaluating Long Range Dependency Handling in Code Generation Models using Multi-Step Key Retrieval" [2024-07] [paper]
-
"When to Stop? Towards Efficient Code Generation in LLMs with Excess Token Prevention" [2024-07] [paper]
-
"Assessing Programming Task Difficulty for Efficient Evaluation of Large Language Models" [2024-07] [paper]
-
"ArchCode: Incorporating Software Requirements in Code Generation with Large Language Models" [2024-08] [ACL 2024] [paper]
-
"Fine-tuning Language Models for Joint Rewriting and Completion of Code with Potential Bugs" [2024-08] [ACL 2024 Findings] [paper]
-
"Selective Prompt Anchoring for Code Generation" [2024-08] [paper]
-
"Bridging the Language Gap: Enhancing Multilingual Prompt-Based Code Generation in LLMs via Zero-Shot Cross-Lingual Transfer" [2024-08] [paper]
-
"Optimizing Large Language Model Hyperparameters for Code Generation" [2024-08] [paper]
-
"EPiC: Cost-effective Search-based Prompt Engineering of LLMs for Code Generation" [2024-08] [paper]
-
"CodeRefine: A Pipeline for Enhancing LLM-Generated Code Implementations of Research Papers" [2024-08] [paper]
-
"No Man is an Island: Towards Fully Automatic Programming by Code Search, Code Generation and Program Repair" [2024-09] [paper]
-
"Planning In Natural Language Improves LLM Search For Code Generation" [2024-09] [paper]
-
"Multi-Programming Language Ensemble for Code Generation in Large Language Model" [2024-09] [paper]
-
"USCD: Improving Code Generation of LLMs by Uncertainty-Aware Selective Contrastive Decoding" [2024-09] [paper]
-
"Eliciting Instruction-tuned Code Language Models' Capabilities to Utilize Auxiliary Function for Code Generation" [2024-09] [EMNLP 2024 Findings] [paper]
-
"Selection of Prompt Engineering Techniques for Code Generation through Predicting Code Complexity" [2024-09] [paper]
-
"Horizon-Length Prediction: Advancing Fill-in-the-Middle Capabilities for Code Generation with Lookahead Planning" [2024-10] [paper]
-
"Showing LLM-Generated Code Selectively Based on Confidence of LLMs" [2024-10] [paper]
-
"AutoFeedback: An LLM-based Framework for Efficient and Accurate API Request Generation" [2024-10] [paper]
-
"Enhancing LLM Agents for Code Generation with Possibility and Pass-rate Prioritized Experience Replay" [2024-10] [paper]
-
"From Solitary Directives to Interactive Encouragement! LLM Secure Code Generation by Natural Language Prompting" [2024-10] [paper]
-
"Self-Explained Keywords Empower Large Language Models for Code Generation" [2024-10] [paper]
-
"Context-Augmented Code Generation Using Programming Knowledge Graphs" [2024-10] [paper]
-
"In-Context Code-Text Learning for Bimodal Software Engineering" [2024-10] [paper]
-
"Combining LLM Code Generation with Formal Specifications and Reactive Program Synthesis" [2024-10] [paper]
-
"Less is More: DocString Compression in Code Generation" [2024-10] [paper]
-
"Multi-Programming Language Sandbox for LLMs" [2024-10] [paper]
-
"Personality-Guided Code Generation Using Large Language Models" [2024-10] [paper]
-
"Do Advanced Language Models Eliminate the Need for Prompt Engineering in Software Engineering?" [2024-11] [paper]
-
"Scattered Forest Search: Smarter Code Space Exploration with LLMs" [2024-11] [paper]
-
"Anchor Attention, Small Cache: Code Generation with Large Language Models" [2024-11] [paper]
-
"ROCODE: Integrating Backtracking Mechanism and Program Analysis in Large Language Models for Code Generation" [2024-11] [paper]
-
"SRA-MCTS: Self-driven Reasoning Aurmentation with Monte Carlo Tree Search for Enhanced Code Generation" [2024-11] [paper]
-
"Feature-Factory: Automating Software Feature Integration Using Generative AI" [2024-11] [paper]
-
"Language-to-Code Translation with a Single Labeled Example" [2024-11] [EMNLP 2024] [paper]
-
"VeCoGen: Automating Generation of Formally Verified C Code with Large Language Models" [2024-11] [paper]
-
"Does Few-Shot Learning Help LLM Performance in Code Synthesis?" [2024-12] [paper]
-
"Seed-CTS: Unleashing the Power of Tree Search for Superior Performance in Competitive Coding Tasks" [2024-12] [paper]
-
"An Exploratory Study of ML Sketches and Visual Code Assistants" [2024-12] [paper]
-
"CodeGRAG: Extracting Composed Syntax Graphs for Retrieval Augmented Cross-Lingual Code Generation" [2024-05] [paper]
-
"Prompt-based Code Completion via Multi-Retrieval Augmented Generation" [2024-05] [paper]
-
"A Lightweight Framework for Adaptive Retrieval In Code Completion With Critique Model" [2024-06] [papaer]
-
"Preference-Guided Refactored Tuning for Retrieval Augmented Code Generation" [2024-09] [paper]
-
"Building A Coding Assistant via the Retrieval-Augmented Language Model" [2024-10] [paper]
-
"DroidCoder: Enhanced Android Code Completion with Context-Enriched Retrieval-Augmented Generation" [2024-10] [ASE 2024] [paper]
-
"Assessing the Answerability of Queries in Retrieval-Augmented Code Generation" [2024-11] [paper]
-
"EvoR: Evolving Retrieval for Code Generation" [2024-11] [EMNLP 2024 Findings] [paper]
-
"PERC: Plan-As-Query Example Retrieval for Underrepresented Code Generation" [2024-12] [paper]
-
"Fault-Aware Neural Code Rankers" [2022-06] [NeurIPS 2022] [paper]
-
"Functional Overlap Reranking for Neural Code Generation" [2023-10] [ACL 2024 Findings] [paper]
-
"Top Pass: Improve Code Generation by Pass@k-Maximized Code Ranking" [2024-08] [paper]
-
"DOCE: Finding the Sweet Spot for Execution-Based Code Generation" [2024-08] [paper]
-
"Sifting through the Chaff: On Utilizing Execution Feedback for Ranking the Generated Code Candidates" [2024-08] [paper]
-
"B4: Towards Optimal Assessment of Plausible Code Solutions with Plausible Tests" [2024-09] [paper]
-
"Learning Code Preference via Synthetic Evolution" [2024-10] [paper]
-
"Tree-to-tree Neural Networks for Program Translation" [2018-02] [NeurIPS 2018] [paper]
-
"Program Language Translation Using a Grammar-Driven Tree-to-Tree Model" [2018-07] [paper]
-
"Unsupervised Translation of Programming Languages" [2020-06] [NeurIPS 2020] [paper]
-
"Leveraging Automated Unit Tests for Unsupervised Code Translation" [2021-10] [ICLR 2022] paper]
-
"Code Translation with Compiler Representations" [2022-06] [ICLR 2023] [paper]
-
"Multilingual Code Snippets Training for Program Translation" [2022-06] [AAAI 2022] [paper]
-
"BabelTower: Learning to Auto-parallelized Program Translation" [2022-07] [ICML 2022] [paper]
-
"Syntax and Domain Aware Model for Unsupervised Program Translation" [2023-02] [ICSE 2023] [paper]
-
"CoTran: An LLM-based Code Translator using Reinforcement Learning with Feedback from Compiler and Symbolic Execution" [2023-06] [paper]
-
"Lost in Translation: A Study of Bugs Introduced by Large Language Models while Translating Code" [2023-08] [ICSE 2024] [paper]
-
"On the Evaluation of Neural Code Translation: Taxonomy and Benchmark", 2023-08, ASE 2023, [paper]
-
"Program Translation via Code Distillation" [2023-10] [EMNLP 2023] [paper]
-
"Explain-then-Translate: An Analysis on Improving Program Translation with Self-generated Explanations" [2023-11] [EMNLP 2023 Findings] [paper]
-
"Exploring the Impact of the Output Format on the Evaluation of Large Language Models for Code Translation" [2024-03] [paper]
-
"Exploring and Unleashing the Power of Large Language Models in Automated Code Translation" [2024-04] [paper]
-
"VERT: Verified Equivalent Rust Transpilation with Few-Shot Learning" [2024-04] [paper]
-
"Towards Translating Real-World Code with LLMs: A Study of Translating to Rust" [2024-05] [paper]
-
"An interpretable error correction method for enhancing code-to-code translation" [2024-05] [ICLR 2024] [paper]
-
"LASSI: An LLM-based Automated Self-Correcting Pipeline for Translating Parallel Scientific Codes" [2024-06] [paper]
-
"Rectifier: Code Translation with Corrector via LLMs" [2024-07] [paper]
-
"Enhancing Code Translation in Language Models with Few-Shot Learning via Retrieval-Augmented Generation" [2024-07] [paper]
-
"A Joint Learning Model with Variational Interaction for Multilingual Program Translation" [2024-08] [paper]
-
"Automatic Library Migration Using Large Language Models: First Results" [2024-08] [paper]
-
"Context-aware Code Segmentation for C-to-Rust Translation using Large Language Models" [2024-09] [paper]
-
"TRANSAGENT: An LLM-Based Multi-Agent System for Code Translation" [2024-10] [paper]
-
"Unraveling the Potential of Large Language Models in Code Translation: How Far Are We?" [2024-10] [paper]
-
"CodeRosetta: Pushing the Boundaries of Unsupervised Code Translation for Parallel Programming" [2024-10] [paper]
-
"A test-free semantic mistakes localization framework in Neural Code Translation" [2024-10] [paper]
-
"Repository-Level Compositional Code Translation and Validation" [2024-10] [paper]
-
"Leveraging Large Language Models for Code Translation and Software Development in Scientific Computing" [2024-10] [paper]
-
"InterTrans: Leveraging Transitive Intermediate Translations to Enhance LLM-based Code Translation" [2024-11] [paper]
-
"Translating C To Rust: Lessons from a User Study" [2024-11] [paper]
-
"Specification-Driven Code Translation Powered by Large Language Models: How Far Are We?" [2024-12] [paper]
-
"Enhancing Cross-Language Code Translation via Task-Specific Embedding Alignment in Retrieval-Augmented Generation" [2024-12] [paper]
-
"Scalable, Validated Code Translation of Entire Projects using Large Language Models" [2024-12] [paper]
-
"Syzygy: Dual Code-Test C to (safe) Rust Translation using LLMs and Dynamic Analysis" [2024-12] [paper]
-
"A Transformer-based Approach for Source Code Summarization" [2020-05] [ACL 2020] [paper]
-
"Code Summarization with Structure-induced Transformer" [2020-12] [ACL 2021 Findings] [paper]
-
"Code Structure Guided Transformer for Source Code Summarization" [2021-04] [ACM TSEM] [paper]
-
"M2TS: Multi-Scale Multi-Modal Approach Based on Transformer for Source Code Summarization" [2022-03] [ICPC 2022] [paper]
-
"AST-trans: code summarization with efficient tree-structured attention" [2022-05] [ICSE 2022] [paper]
-
"CoSS: Leveraging Statement Semantics for Code Summarization" [2023-03] [IEEE TSE] [paper]
-
"Automatic Code Summarization via ChatGPT: How Far Are We?" [2023-05] [paper]
-
"Semantic Similarity Loss for Neural Source Code Summarization" [2023-08] [paper]
-
"Distilled GPT for Source Code Summarization" [2023-08] [ASE] [paper]
-
"CSA-Trans: Code Structure Aware Transformer for AST" [2024-04] [paper]
-
"Analyzing the Performance of Large Language Models on Code Summarization" [2024-04] [paper]
-
"Enhancing Trust in LLM-Generated Code Summaries with Calibrated Confidence Scores" [2024-04] [paper]
-
"DocuMint: Docstring Generation for Python using Small Language Models" [2024-05] [paper] [repo]
-
"Natural Is The Best: Model-Agnostic Code Simplification for Pre-trained Large Language Models" [2024-05] [paper]
-
"Large Language Models for Code Summarization" [2024-05] [paper]
-
"Exploring the Efficacy of Large Language Models (GPT-4) in Binary Reverse Engineering" [2024-06] [paper]
-
"Identifying Inaccurate Descriptions in LLM-generated Code Comments via Test Execution" [2024-06] [paper]
-
"MALSIGHT: Exploring Malicious Source Code and Benign Pseudocode for Iterative Binary Malware Summarization" [2024-06] [paper]
-
"ESALE: Enhancing Code-Summary Alignment Learning for Source Code Summarization" [2024-07] [paper]
-
"Source Code Summarization in the Era of Large Language Models" [2024-07] [paper]
-
"Natural Language Outlines for Code: Literate Programming in the LLM Era" [2024-08] [paper]
-
"Context-aware Code Summary Generation" [2024-08] [paper]
-
"AUTOGENICS: Automated Generation of Context-Aware Inline Comments for Code Snippets on Programming Q&A Sites Using LLM" [2024-08] [paper]
-
"LLMs as Evaluators: A Novel Approach to Evaluate Bug Report Summarization" [2024-09] [paper]
-
"Evaluating the Quality of Code Comments Generated by Large Language Models for Novice Programmers" [2024-09] [paper]
-
"Generating Equivalent Representations of Code By A Self-Reflection Approach" [2024-10] [paper]
-
"A review of automatic source code summarization" [2024-10] [Empirical Software Engineering] [paper]
-
"Can Large Language Models Serve as Evaluators for Code Summarization?" [2024-12] [paper]
-
"Selective Shot Learning for Code Explanation" [2024-12] [paper]
-
"DeepDebug: Fixing Python Bugs Using Stack Traces, Backtranslation, and Code Skeletons" [2021-05] [paper]
-
"Break-It-Fix-It: Unsupervised Learning for Program Repair" [2021-06] [ICML 2021] [paper]
-
"TFix: Learning to Fix Coding Errors with a Text-to-Text Transformer" [2021-07] [ICML 2021] [paper]
-
"Automated Repair of Programs from Large Language Models" [2022-05] [ICSE 2023] [paper]
-
"Less Training, More Repairing Please: Revisiting Automated Program Repair via Zero-shot Learning" [2022-07] [ESEC/FSE 2022] [paper]
-
"Repair Is Nearly Generation: Multilingual Program Repair with LLMs" [2022-08] [AAAI 2023] [paper]
-
"Practical Program Repair in the Era of Large Pre-trained Language Models" [2022-10] [paper]
-
"VulRepair: a T5-based automated software vulnerability repair" [2022-11] [ESEC/FSE 2022] [paper]
-
"Conversational Automated Program Repair" [2023-01] [paper]
-
"Impact of Code Language Models on Automated Program Repair" [2023-02] [ICSE 2023] [paper]
-
"InferFix: End-to-End Program Repair with LLMs" [2023-03] [ESEC/FSE 2023] [paper]
-
"Enhancing Automated Program Repair through Fine-tuning and Prompt Engineering" [2023-04] [paper]
-
"A study on Prompt Design, Advantages and Limitations of ChatGPT for Deep Learning Program Repair" [2023-04] [paper]
-
"Domain Knowledge Matters: Improving Prompts with Fix Templates for Repairing Python Type Errors" [2023-06] [ICSE 2024] [paper]
-
"RepairLLaMA: Efficient Representations and Fine-Tuned Adapters for Program Repair" [2023-12] [paper]
-
"The Fact Selection Problem in LLM-Based Program Repair" [2024-04] [paper]
-
"Aligning LLMs for FL-free Program Repair" [2024-04] [paper]
-
"A Deep Dive into Large Language Models for Automated Bug Localization and Repair" [2024-04] [paper]
-
"Multi-Objective Fine-Tuning for Enhanced Program Repair with LLMs" [2024-04] [paper]
-
"How Far Can We Go with Practical Function-Level Program Repair?" [2024-04] [paper]
-
"Revisiting Unnaturalness for Automated Program Repair in the Era of Large Language Models" [2024-04] [paper]
-
"A Unified Debugging Approach via LLM-Based Multi-Agent Synergy" [2024-04] [paper]
-
"A Systematic Literature Review on Large Language Models for Automated Program Repair" [2024-05] [paper]
-
"NAVRepair: Node-type Aware C/C++ Code Vulnerability Repair" [2024-05] [paper]
-
"Automated Program Repair: Emerging trends pose and expose problems for benchmarks" [2024-05] [paper]
-
"Automated Repair of AI Code with Large Language Models and Formal Verification" [2024-05] [paper]
-
"A Case Study of LLM for Automated Vulnerability Repair: Assessing Impact of Reasoning and Patch Validation Feedback" [2024-05] [paper]
-
"CREF: An LLM-based Conversational Software Repair Framework for Programming Tutors" [2024-06] [paper]
-
"Towards Practical and Useful Automated Program Repair for Debugging" [2024-07] [paper]
-
"ThinkRepair: Self-Directed Automated Program Repair" [2024-07] [paper]
-
"MergeRepair: An Exploratory Study on Merging Task-Specific Adapters in Code LLMs for Automated Program Repair" [2024-08] [paper]
-
"RePair: Automated Program Repair with Process-based Feedback" [2024-08] [ACL 2024 Findings] [paper]
-
"Enhancing LLM-Based Automated Program Repair with Design Rationales" [2024-08] [paper]
-
"Automated Software Vulnerability Patching using Large Language Models" [2024-08] [paper]
-
"Enhancing Source Code Security with LLMs: Demystifying The Challenges and Generating Reliable Repairs" [2024-09] [paper]
-
"MarsCode Agent: AI-native Automated Bug Fixing" [2024-09] [paper]
-
"Co-Learning: Code Learning for Multi-Agent Reinforcement Collaborative Framework with Conversational Natural Language Interfaces" [2024-09] [paper]
-
"Debugging with Open-Source Large Language Models: An Evaluation" [2024-09] [paper]
-
"VulnLLMEval: A Framework for Evaluating Large Language Models in Software Vulnerability Detection and Patching" [2024-09] [paper]
-
"ContractTinker: LLM-Empowered Vulnerability Repair for Real-World Smart Contracts" [2024-09] [paper]
-
"Can GPT-O1 Kill All Bugs? An Evaluation of GPT-Family LLMs on QuixBugs" [2024-09] [paper]
-
"Exploring and Lifting the Robustness of LLM-powered Automated Program Repair with Metamorphic Testing" [2024-10] [paper]
-
"LecPrompt: A Prompt-based Approach for Logical Error Correction with CodeBERT" [2024-10] [paper]
-
"Semantic-guided Search for Efficient Program Repair with Large Language Models" [2024-10] [paper]
-
"A Comprehensive Survey of AI-Driven Advancements and Techniques in Automated Program Repair and Code Generation" [2024-11] [paper]
-
"From Defects to Demands: A Unified, Iterative, and Heuristically Guided LLM-Based Framework for Automated Software Repair and Requirement Realization" [2024-12] [paper]
-
"Integrating Various Software Artifacts for Better LLM-based Bug Localization and Program Repair" [2024-12] [paper]
-
"Self-Supervised Contrastive Learning for Code Retrieval and Summarization via Semantic-Preserving Transformations" [2020-09] [SIGIR 2021] [paper]
-
"REINFOREST: Reinforcing Semantic Code Similarity for Cross-Lingual Code Search Models" [2023-05] [paper]
-
"Rewriting the Code: A Simple Method for Large Language Model Augmented Code Search" [2024-01] [ACL 2024] [paper]
-
"Revisiting Code Similarity Evaluation with Abstract Syntax Tree Edit Distance" [2024-04] [ACL 2024 short] [paper]
-
"Is Next Token Prediction Sufficient for GPT? Exploration on Code Logic Comprehension" [2024-04] [paper]
-
"Refining Joint Text and Source Code Embeddings for Retrieval Task with Parameter-Efficient Fine-Tuning" [2024-05] [paper]
-
"Typhon: Automatic Recommendation of Relevant Code Cells in Jupyter Notebooks" [2024-05] [paper]
-
"Toward Exploring the Code Understanding Capabilities of Pre-trained Code Generation Models" [2024-06] [paper]
-
"Aligning Programming Language and Natural Language: Exploring Design Choices in Multi-Modal Transformer-Based Embedding for Bug Localization" [2024-06] [paper]
-
"Assessing the Code Clone Detection Capability of Large Language Models" [2024-07] [paper]
-
"CodeCSE: A Simple Multilingual Model for Code and Comment Sentence Embeddings" [2024-07] [paper]
-
"Large Language Models for cross-language code clone detection" [2024-08] [paper]
-
"Coding-PTMs: How to Find Optimal Code Pre-trained Models for Code Embedding in Vulnerability Detection?" [2024-08] [paper]
-
"You Augment Me: Exploring ChatGPT-based Data Augmentation for Semantic Code Search" [2024-08] [paper]
-
"Improving Source Code Similarity Detection Through GraphCodeBERT and Integration of Additional Features" [2024-08] [paper]
-
"LLM Agents Improve Semantic Code Search" [2024-08] [paper]
-
"zsLLMCode: An Effective Approach for Functional Code Embedding via LLM with Zero-Shot Learning" [2024-09] [paper]
-
"Exploring Demonstration Retrievers in RAG for Coding Tasks: Yeas and Nays!" [2024-10] [paper]
-
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"Can LLMs Configure Software Tools" [2023-12] [paper]
-
"LuaTaint: A Static Analysis System for Web Configuration Interface Vulnerability of Internet of Things Devices" [2024-02] [IOT] [paper]
-
"LLM-Based Misconfiguration Detection for AWS Serverless Computing" [2024-11] [paper]
- "DialogAgent: An Auto-engagement Agent for Code Question Answering Data Production" [2024-12] [paper]
-
"Towards using Few-Shot Prompt Learning for Automating Model Completion" [2022-12] [paper]
-
"Model Generation from Requirements with LLMs: an Exploratory Study" [2024-04] [paper]
-
"How LLMs Aid in UML Modeling: An Exploratory Study with Novice Analysts" [2024-04] [paper]
-
"Leveraging Large Language Models for Software Model Completion: Results from Industrial and Public Datasets" [2024-06] [paper]
-
"Studying and Benchmarking Large Language Models For Log Level Suggestion" [2024-10] [paper]
-
"A Model Is Not Built By A Single Prompt: LLM-Based Domain Modeling With Question Decomposition" [2024-10] [paper]
-
"On the Utility of Domain Modeling Assistance with Large Language Models" [2024-10] [paper]
-
"On the use of Large Language Models in Model-Driven Engineering" [2024-10] [paper]
-
"LLM as a code generator in Agile Model Driven Development" [2024-10] [paper]
-
"A Transformer-based Approach for Abstractive Summarization of Requirements from Obligations in Software Engineering Contracts" [2023-09] [RE 2023] [paper]
-
"Advancing Requirements Engineering through Generative AI: Assessing the Role of LLMs" [2023-10] [paper]
-
"Requirements Engineering using Generative AI: Prompts and Prompting Patterns" [2023-11] [paper]
-
"Prioritizing Software Requirements Using Large Language Models" [2024-04] [paper]
-
"Lessons from the Use of Natural Language Inference (NLI) in Requirements Engineering Tasks" [2024-04] [paper]
-
"Enhancing Legal Compliance and Regulation Analysis with Large Language Models" [2024-04] [paper]
-
"MARE: Multi-Agents Collaboration Framework for Requirements Engineering" [2024-05] [paper]
-
"Natural Language Processing for Requirements Traceability" [2024-05] [paper]
-
"Multilingual Crowd-Based Requirements Engineering Using Large Language Models" [2024-08] [paper]
-
"From Specifications to Prompts: On the Future of Generative LLMs in Requirements Engineering" [2024-08] [paper]
-
"Leveraging LLMs for the Quality Assurance of Software Requirements" [2024-08] [paper]
-
"Generative AI for Requirements Engineering: A Systematic Literature Review" [2024-09] [paper]
-
"A Fine-grained Sentiment Analysis of App Reviews using Large Language Models: An Evaluation Study" [2024-09] [paper]
-
"Leveraging Large Language Models for Predicting Cost and Duration in Software Engineering Projects" [2024-09] [paper]
-
"Privacy Policy Analysis through Prompt Engineering for LLMs" [2024-09] [paper]
-
"Exploring Requirements Elicitation from App Store User Reviews Using Large Language Models" [2024-09] [paper]
-
"LLM-Cure: LLM-based Competitor User Review Analysis for Feature Enhancement" [2024-09] [paper]
-
"Automatic Instantiation of Assurance Cases from Patterns Using Large Language Models" [2024-10] [paper]
-
"Whose fault is it anyway? SILC: Safe Integration of LLM-Generated Code" [2024-10] [paper]
-
"Assured Automatic Programming via Large Language Models" [2024-10] [paper]
-
"Does GenAI Make Usability Testing Obsolete?" [2024-11] [paper]
-
"Exploring LLMs for Verifying Technical System Specifications Against Requirements" [2024-11] [paper]
-
"Towards the LLM-Based Generation of Formal Specifications from Natural-Language Contracts: Early Experiments with Symboleo" [2024-11] [paper]
-
"PassionNet: An Innovative Framework for Duplicate and Conflicting Requirements Identification" [2024-12] [paper]
-
"Generative Language Models Potential for Requirement Engineering Applications: Insights into Current Strengths and Limitations" [2024-12] [paper]
-
"You Autocomplete Me: Poisoning Vulnerabilities in Neural Code Completion" [2021-08] [USENIX Security Symposium 2021] [paper]
-
"Is GitHub's Copilot as Bad as Humans at Introducing Vulnerabilities in Code?" [2022-04] [Empir. Softw. Eng.] [paper]
-
"Lost at C: A User Study on the Security Implications of Large Language Model Code Assistants" [2022-08] [USENIX Security Symposium 2023] [paper]
-
"Do Users Write More Insecure Code with AI Assistants?" [2022-1] [CCS 2023] [paper]
-
"Large Language Models for Code: Security Hardening and Adversarial Testing" [2023-02] [CCS 2023] [paper]
-
"Purple Llama CyberSecEval: A Secure Coding Benchmark for Language Models" [2023-12] [paper]
-
"CodeAttack: Revealing Safety Generalization Challenges of Large Language Models via Code Completion" [2024-03] [ACL 2024 Findings] [paper]
-
"Just another copy and paste? Comparing the security vulnerabilities of ChatGPT generated code and StackOverflow answers" [2024-03] [paper]
-
"DeVAIC: A Tool for Security Assessment of AI-generated Code" [2024-04] [paper]
-
"CyberSecEval 2: A Wide-Ranging Cybersecurity Evaluation Suite for Large Language Models" [2024-04] [paper]
-
"LLMs in Web-Development: Evaluating LLM-Generated PHP code unveiling vulnerabilities and limitations" [2024-04] [paper]
-
"Do Neutral Prompts Produce Insecure Code? FormAI-v2 Dataset: Labelling Vulnerabilities in Code Generated by Large Language Models" [2024-04] [paper]
-
"Codexity: Secure AI-assisted Code Generation" [2024-05] [paper]
-
"Measuring Impacts of Poisoning on Model Parameters and Embeddings for Large Language Models of Code" [2024-05] [paper]
-
"An LLM-Assisted Easy-to-Trigger Backdoor Attack on Code Completion Models: Injecting Disguised Vulnerabilities against Strong Detection" [2024-06] [paper]
-
"Is Your AI-Generated Code Really Secure? Evaluating Large Language Models on Secure Code Generation with CodeSecEval" [2024-07] [paper]
-
"Prompting Techniques for Secure Code Generation: A Systematic Investigation" [2024-07] [paper]
-
"TAPI: Towards Target-Specific and Adversarial Prompt Injection against Code LLMs" [2024-07] [paper]
-
"MaPPing Your Model: Assessing the Impact of Adversarial Attacks on LLM-based Programming Assistants" [2024-07] [paper]
-
"Eliminating Backdoors in Neural Code Models via Trigger Inversion" [2024-08] [paper]
-
""You still have to study" -- On the Security of LLM generated code" [2024-08] [paper]
-
"How Well Do Large Language Models Serve as End-to-End Secure Code Producers?" [2024-08] [paper]
-
"While GitHub Copilot Excels at Coding, Does It Ensure Responsible Output?" [2024-08] [paper]
-
"PromSec: Prompt Optimization for Secure Generation of Functional Source Code with Large Language Models (LLMs)" [2024-09] [paper]
-
"RMCBench: Benchmarking Large Language Models' Resistance to Malicious Code" [2024-09] [paper]
-
"Artificial-Intelligence Generated Code Considered Harmful: A Road Map for Secure and High-Quality Code Generation" [2024-09] [paper]
-
"SecCoder: Towards Generalizable and Robust Secure Code Generation" [2024-10] [EMNLP 2024] [paper]
-
"Demonstration Attack against In-Context Learning for Code Intelligence" [2024-10] [paper]
-
"Hallucinating AI Hijacking Attack: Large Language Models and Malicious Code Recommenders" [2024-10] [paper]
-
"SecCodePLT: A Unified Platform for Evaluating the Security of Code GenAI" [2024-10] [paper]
-
"Security of Language Models for Code: A Systematic Literature Review" [2024-10] [paper]
-
"RedCode: Risky Code Execution and Generation Benchmark for Code Agents" [2024-11] [paper]
-
"ProSec: Fortifying Code LLMs with Proactive Security Alignment" [2024-11] [paper]
-
"Evaluating and Improving the Robustness of Security Attack Detectors Generated by LLMs" [2024-11] [paper]
-
"SABER: Model-agnostic Backdoor Attack on Chain-of-Thought in Neural Code Generation" [2024-12] [paper]
-
"An Empirical Evaluation of GitHub Copilot's Code Suggestions" [2022-05] [MSR 2022] [paper]
-
"Large Language Models and Simple, Stupid Bugs" [2023-03] [MSR 2023] [paper]
-
"Evaluating the Code Quality of AI-Assisted Code Generation Tools: An Empirical Study on GitHub Copilot, Amazon CodeWhisperer, and ChatGPT" [2023-04] [paper]
-
"No Need to Lift a Finger Anymore? Assessing the Quality of Code Generation by ChatGPT" [2023-08] [paper]
-
"The Counterfeit Conundrum: Can Code Language Models Grasp the Nuances of Their Incorrect Generations?" [2024-02] [ACL 2024 Findings] [paper]
-
"Bugs in Large Language Models Generated Code: An Empirical Study" [2024-03] [paper]
-
"ChatGPT Incorrectness Detection in Software Reviews" [2024-03] [paper]
-
"Validating LLM-Generated Programs with Metamorphic Prompt Testing" [2024-06] [paper]
-
"Where Do Large Language Models Fail When Generating Code?" [2024-06] [paper]
-
"GitHub Copilot: the perfect Code compLeeter?" [2024-06] [paper]
-
"What's Wrong with Your Code Generated by Large Language Models? An Extensive Study" [2024-07] [paper]
-
"Uncovering Weaknesses in Neural Code Generation" [2024-07] [paper]
-
"Understanding Defects in Generated Codes by Language Models" [2024-08] [paper]
-
"CodeSift: An LLM-Based Reference-Less Framework for Automatic Code Validation" [2024-08] [paper]
-
"Examination of Code generated by Large Language Models" [2024-08] [paper]
-
"Fixing Code Generation Errors for Large Language Models" [2024-09] [paper]
-
"Can OpenSource beat ChatGPT? -- A Comparative Study of Large Language Models for Text-to-Code Generation" [2024-09] [paper]
-
"Insights from Benchmarking Frontier Language Models on Web App Code Generation" [2024-09] [paper]
-
"Evaluating the Performance of Large Language Models in Competitive Programming: A Multi-Year, Multi-Grade Analysis" [2024-09] [paper]
-
"A Case Study of Web App Coding with OpenAI Reasoning Models" [2024-09] [paper]
-
"CodeJudge: Evaluating Code Generation with Large Language Models" [2024-10] [EMNLP 2024] [paper]
-
"An evaluation of LLM code generation capabilities through graded exercises" [2024-10] [paper]
-
"A Deep Dive Into Large Language Model Code Generation Mistakes: What and Why?" [2024-11] [paper]
-
"Evaluating ChatGPT-3.5 Efficiency in Solving Coding Problems of Different Complexity Levels: An Empirical Analysis" [2024-11] [paper]
-
"LLM4DS: Evaluating Large Language Models for Data Science Code Generation" [2024-11] [paper]
-
"A Preliminary Study of Multilingual Code Language Models for Code Generation Task Using Translated Benchmarks" [2024-11] [paper]
-
"Analyzing the Energy and Accuracy of LLMs in Software Development" [2024-11] [paper]
-
"Exploring and Evaluating Hallucinations in LLM-Powered Code Generation" [2024-04] [paper]
-
"CodeHalu: Code Hallucinations in LLMs Driven by Execution-based Verification" [2024-04] [paper]
-
"We Have a Package for You! A Comprehensive Analysis of Package Hallucinations by Code Generating LLMs" [2024-06] [paper]
-
"Code Hallucination" [2024-07] [paper]
-
"On Mitigating Code LLM Hallucinations with API Documentation" [2024-07] [paper]
-
"CodeMirage: Hallucinations in Code Generated by Large Language Models" [2024-08] [paper]
-
"LLM Hallucinations in Practical Code Generation: Phenomena, Mechanism, and Mitigation" [2024-09] [paper]
-
"Collu-Bench: A Benchmark for Predicting Language Model Hallucinations in Code" [2024-10] [paper]
-
"ETF: An Entity Tracing Framework for Hallucination Detection in Code Summaries" [2024-10] [paper]
-
"On Evaluating the Efficiency of Source Code Generated by LLMs" [2024-04] [paper]
-
"A Controlled Experiment on the Energy Efficiency of the Source Code Generated by Code Llama" [2024-05] [paper]
-
"From Effectiveness to Efficiency: Comparative Evaluation of Code Generated by LCGMs for Bilingual Programming Questions" [2024-06] [paper]
-
"How Efficient is LLM-Generated Code? A Rigorous & High-Standard Benchmark" [2024-06] [paper]
-
"ECCO: Can We Improve Model-Generated Code Efficiency Without Sacrificing Functional Correctness?" [2024-07] [EMNLP 2024] [paper]
-
"A Performance Study of LLM-Generated Code on Leetcode" [2024-07] [paper]
-
"Evaluating Language Models for Efficient Code Generation" [2024-08] [paper]
-
"Effi-Code: Unleashing Code Efficiency in Language Models" [2024-10] [paper]
-
"Rethinking Code Refinement: Learning to Judge Code Efficiency" [2024-10] [EMNLP 2024 Findings] [paper]
-
"Generating Energy-efficient code with LLMs" [2024-11] [paper]
-
"An exploration of the effect of quantisation on energy consumption and inference time of StarCoder2" [2024-11] [paper]
-
"Beyond Accuracy: Evaluating Self-Consistency of Code Large Language Models with IdentityChain" [2023-10] [paper]
-
"Do Large Code Models Understand Programming Concepts? A Black-box Approach" [2024-02] [ICML 2024] [paper]
-
"Syntactic Robustness for LLM-based Code Generation" [2024-04] [paper]
-
"NLPerturbator: Studying the Robustness of Code LLMs to Natural Language Variations" [2024-06] [paper]
-
"An Empirical Study on Capability of Large Language Models in Understanding Code Semantics" [2024-07] [paper]
-
"Comparing Robustness Against Adversarial Attacks in Code Generation: LLM-Generated vs. Human-Written" [2024-11] [paper]
-
"On the Adversarial Robustness of Instruction-Tuned Large Language Models for Code" [2024-11] [paper]
-
"What You See Is Not Always What You Get: An Empirical Study of Code Comprehension by Large Language Models" [2024-12] [paper]
-
"A Critical Study of What Code-LLMs (Do Not) Learn" [2024-06] [ACL 2024 Findings] [paper]
-
"Looking into Black Box Code Language Models" [2024-07] [paper]
-
"DeepCodeProbe: Towards Understanding What Models Trained on Code Learn" [2024-07] [paper]
-
"Towards More Trustworthy and Interpretable LLMs for Code through Syntax-Grounded Explanations" [2024-07] [paper]
-
"Exploring Coding Spot: Understanding Parametric Contributions to LLM Coding Performance" [2024-12] [paper]
-
"How and Why LLMs Use Deprecated APIs in Code Completion? An Empirical Study" [2024-06] [paper]
-
"Is ChatGPT a Good Software Librarian? An Exploratory Study on the Use of ChatGPT for Software Library Recommendations" [2024-08] [paper]
-
"A Systematic Evaluation of Large Code Models in API Suggestion: When, Which, and How" [2024-09] [paper]
-
"AutoAPIEval: A Framework for Automated Evaluation of LLMs in API-Oriented Code Generation" [2024-09] [paper]
-
"Does Your Neural Code Completion Model Use My Code? A Membership Inference Approach" [2024-04] [paper]
-
"CodeCipher: Learning to Obfuscate Source Code Against LLMs" [2024-10] [paper]
-
"Decoding Secret Memorization in Code LLMs Through Token-Level Characterization" [2024-10] [paper]
-
"When Fine-Tuning LLMs Meets Data Privacy: An Empirical Study of Federated Learning in LLM-Based Program Repair" [2024-12] [paper]
-
"Exploring Multi-Lingual Bias of Large Code Models in Code Generation" [2024-04] [paper]
-
"Mitigating Gender Bias in Code Large Language Models via Model Editing" [2024-10] [paper]
-
"Bias Unveiled: Investigating Social Bias in LLM-Generated Code" [2024-11] [paper]
-
"Zero-Shot Detection of Machine-Generated Codes" [2023-10] [paper]
-
"CodeIP: A Grammar-Guided Multi-Bit Watermark for Large Language Models of Code" [2024-04] [EMNLP 2024 Findings] [paper]
-
"ChatGPT Code Detection: Techniques for Uncovering the Source of Code" [2024-05] [paper]
-
"Uncovering LLM-Generated Code: A Zero-Shot Synthetic Code Detector via Code Rewriting" [2024-05] [paper]
-
"Automatic Detection of LLM-generated Code: A Case Study of Claude 3 Haiku" [2024-09] [paper]
-
"An Empirical Study on Automatically Detecting AI-Generated Source Code: How Far Are We?" [2024-11] [paper]
-
"Distinguishing LLM-generated from Human-written Code by Contrastive Learning" [2024-11] [paper]
-
"Is This You, LLM? Recognizing AI-written Programs with Multilingual Code Stylometry" [2024-12] [paper]
-
"Who Wrote this Code? Watermarking for Code Generation" [2023-05] [ACL 2024] [paper]
-
"Code Membership Inference for Detecting Unauthorized Data Use in Code Pre-trained Language Models" [2023-12] [EMNLP 2024 Findings] [paper]
-
"Testing the Effect of Code Documentation on Large Language Model Code Understanding" [2024-04] [paper]
-
"Automated Creation of Source Code Variants of a Cryptographic Hash Function Implementation Using Generative Pre-Trained Transformer Models" [2024-04] [paper]
-
"Evaluation of the Programming Skills of Large Language Models" [2024-05] [paper]
-
"Where Are Large Language Models for Code Generation on GitHub?" [2024-06] [paper]
-
"Beyond Functional Correctness: Investigating Coding Style Inconsistencies in Large Language Models" [2024-06] [paper]
-
"Benchmarking Language Model Creativity: A Case Study on Code Generation" [2024-07] [paper]
-
"Beyond Correctness: Benchmarking Multi-dimensional Code Generation for Large Language Models" [2024-07] [paper]
-
"Is Functional Correctness Enough to Evaluate Code Language Models? Exploring Diversity of Generated Codes" [2024-08] [paper]
-
"Strategic Optimization and Challenges of Large Language Models in Object-Oriented Programming" [2024-08] [paper]
-
"A Survey on Evaluating Large Language Models in Code Generation Tasks" [2024-08] [paper]
-
"An exploratory analysis of Community-based Question-Answering Platforms and GPT-3-driven Generative AI: Is it the end of online community-based learning?" [2024-09] [paper]
-
"Code Generation and Algorithmic Problem Solving Using Llama 3.1 405B" [2024-09] [paper]
-
"Benchmarking ChatGPT, Codeium, and GitHub Copilot: A Comparative Study of AI-Driven Programming and Debugging Assistants" [2024-09] [paper]
-
"Model Editing for LLMs4Code: How Far are We?" [2024-11] [paper]
-
"An Empirical Study on LLM-based Agents for Automated Bug Fixing" [2024-11] [paper]
-
"Precision or Peril: Evaluating Code Quality from Quantized Large Language Models" [2024-11] [paper]
-
"Measuring Emergent Capabilities of LLMs for Software Engineering: How Far Are We?" [2024-11] [paper]
-
"Addressing Data Leakage in HumanEval Using Combinatorial Test Design" [2024-12] [paper]
-
"Expectation vs. Experience: Evaluating the Usability of Code Generation Tools Powered by Large Language Models" [2022-04] [CHI EA 2022] [paper]
-
"Grounded Copilot: How Programmers Interact with Code-Generating Models" [2022-06] [OOPSLA 2023] [paper]
-
"Reading Between the Lines: Modeling User Behavior and Costs in AI-Assisted Programming" [2022-10] [paper]
-
"The Impact of AI on Developer Productivity: Evidence from GitHub Copilot" [2023-02] [paper]
-
"The Programmer's Assistant: Conversational Interaction with a Large Language Model for Software Development" [2023-02] [IUI 2023] [paper]
-
""It's Weird That it Knows What I Want": Usability and Interactions with Copilot for Novice Programmers" [2023-04] [ACM TCHI] [paper]
-
"DevGPT: Studying Developer-ChatGPT Conversations" [2023-08] [paper]
-
"How Do Analysts Understand and Verify AI-Assisted Data Analyses?" [2023-09] [paper]
-
"How Novices Use LLM-Based Code Generators to Solve CS1 Coding Tasks in a Self-Paced Learning Environment" [2023-09] [Koli Calling 2023] [paper]
-
"Conversational Challenges in AI-Powered Data Science: Obstacles, Needs, and Design Opportunities" [2023-10] [paper]
-
"The RealHumanEval: Evaluating Large Language Models' Abilities to Support Programmers" [2024-04] [paper]
-
"Unlocking Adaptive User Experience with Generative AI" [2024-04] [paper]
-
"BISCUIT: Scaffolding LLM-Generated Code with Ephemeral UIs in Computational Notebooks" [2024-04] [paper]
-
"How far are AI-powered programming assistants from meeting developers' needs?" [2024-04] [paper]
-
"Beyond Code Generation: An Observational Study of ChatGPT Usage in Software Engineering Practice" [2024-04] [paper]
-
"The GPT Surprise: Offering Large Language Model Chat in a Massive Coding Class Reduced Engagement but Increased Adopters Exam Performances" [2024-04] [paper]
-
"amplified.dev: a living document that begins to sketch a vision for a future where developers are amplified, not automated" [2024-05] [paper]
-
"Sketch Then Generate: Providing Incremental User Feedback and Guiding LLM Code Generation through Language-Oriented Code Sketches" [2024-05] [paper]
-
"Using AI Assistants in Software Development: A Qualitative Study on Security Practices and Concerns" [2024-05] [paper]
-
"Full Line Code Completion: Bringing AI to Desktop" [2024-05] [paper]
-
"Developers' Perceptions on the Impact of ChatGPT in Software Development: A Survey" [2024-05] [paper]
-
"A Transformer-Based Approach for Smart Invocation of Automatic Code Completion" [2024-05] [paper]
-
"A Study on Developer Behaviors for Validating and Repairing LLM-Generated Code Using Eye Tracking and IDE Actions" [2024-05] [paper]
-
"Analyzing Chat Protocols of Novice Programmers Solving Introductory Programming Tasks with ChatGPT" [2024-05] [paper]
-
"Benchmarking the Communication Competence of Code Generation for LLMs and LLM Agent" [2024-05] [paper]
-
"Learning Task Decomposition to Assist Humans in Competitive Programming" [2024-06] [ACL 2024] [paper]
-
"Impact of AI-tooling on the Engineering Workspace" [2024-06] [paper]
-
"Using AI-Based Coding Assistants in Practice: State of Affairs, Perceptions, and Ways Forward" [2024-06] [paper]
-
"Instruct, Not Assist: LLM-based Multi-Turn Planning and Hierarchical Questioning for Socratic Code Debugging" [2024-06] [EMNLP 2024 Findings] [paper]
-
"Transforming Software Development: Evaluating the Efficiency and Challenges of GitHub Copilot in Real-World Projects" [2024-06] [paper]
-
"Let the Code LLM Edit Itself When You Edit the Code" [2024-07] [paper]
-
"Enhancing Computer Programming Education with LLMs: A Study on Effective Prompt Engineering for Python Code Generation" [2024-07] [paper]
-
"How Novice Programmers Use and Experience ChatGPT when Solving Programming Exercises in an Introductory Course" [2024-07] [paper]
-
"Can Developers Prompt? A Controlled Experiment for Code Documentation Generation" [2024-08] [paper]
-
"The Impact of Generative AI-Powered Code Generation Tools on Software Engineer Hiring: Recruiters' Experiences, Perceptions, and Strategies" [2024-09] [paper]
-
"Investigating the Role of Cultural Values in Adopting Large Language Models for Software Engineering" [2024-09] [paper]
-
"The Impact of Large Language Models on Open-source Innovation: Evidence from GitHub Copilot" [2024-09] [paper]
-
""I Don't Use AI for Everything": Exploring Utility, Attitude, and Responsibility of AI-empowered Tools in Software Development" [2024-09] [paper]
-
"Harnessing the Potential of Gen-AI Coding Assistants in Public Sector Software Development" [2024-09] [paper]
-
"Understanding the Human-LLM Dynamic: A Literature Survey of LLM Use in Programming Tasks" [2024-10] [paper]
-
"Code-Survey: An LLM-Driven Methodology for Analyzing Large-Scale Codebases" [2024-10] [paper]
-
"The potential of LLM-generated reports in DevSecOps" [2024-10] [paper]
-
"The Impact of Generative AI on Collaborative Open-Source Software Development: Evidence from GitHub Copilot" [2024-10] [paper]
-
"Exploring the Design Space of Cognitive Engagement Techniques with AI-Generated Code for Enhanced Learning" [2024-10] [paper]
-
"One Step at a Time: Combining LLMs and Static Analysis to Generate Next-Step Hints for Programming Tasks" [2024-10] [paper]
-
"How much does AI impact development speed? An enterprise-based randomized controlled trial" [2024-10] [paper]
-
"Understanding the Effect of Algorithm Transparency of Model Explanations in Text-to-SQL Semantic Parsing" [2024-10] [paper]
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"Dear Diary: A randomized controlled trial of Generative AI coding tools in the workplace" [2024-10] [paper]
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"LLMs are Imperfect, Then What? An Empirical Study on LLM Failures in Software Engineering" [2024-11] [paper]
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"Human-In-the-Loop Software Development Agents" [2024-11] [paper]
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"Amplifying human performance in combinatorial competitive programming" [2024-11] [paper]
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"Why Do Developers Engage with ChatGPT in Issue-Tracker? Investigating Usage and Reliance on ChatGPT-Generated Code" [2024-12] [paper]
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"Examining the Use and Impact of an AI Code Assistant on Developer Productivity and Experience in the Enterprise" [2024-12] [paper]
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CodeSearchNet: "CodeSearchNet Challenge: Evaluating the State of Semantic Code Search" [2019-09] [paper] [repo] [data]
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The Pile: "The Pile: An 800GB Dataset of Diverse Text for Language Modeling" [2020-12], [paper] [data]
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CodeParrot, 2022-02, [data]
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The Stack: "The Stack: 3 TB of permissively licensed source code" [2022-11] [paper] [data]
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ROOTS: "The BigScience ROOTS Corpus: A 1.6TB Composite Multilingual Dataset" [2023-03] [NeurIPS 2022 Datasets and Benchmarks Track] [paper] [data]
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The Stack v2: "StarCoder 2 and The Stack v2: The Next Generation" [2024-02] [paper] [data]
-
CodeXGLUE: "CodeXGLUE: A Machine Learning Benchmark Dataset for Code Understanding and Generation" [2021-02] [NeurIPS Datasets and Benchmarks 2021] [paper] [repo] [data]
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CodefuseEval: "CodeFuse-13B: A Pretrained Multi-lingual Code Large Language Model" [2023-10] [paper] [repo]
-
CodeScope: "CodeScope: An Execution-based Multilingual Multitask Multidimensional Benchmark for Evaluating LLMs on Code Understanding and Generation" [2023-11] [ACL 2024] [paper] [repo]
-
CodeEditorBench: "CodeEditorBench: Evaluating Code Editing Capability of Large Language Models" [2024-04] [paper] [repo]
-
Long Code Arena: "Long Code Arena: a Set of Benchmarks for Long-Context Code Models" [2024-06] [paper] [repo]
-
CodeRAG-Bench: "CodeRAG-Bench: Can Retrieval Augment Code Generation?" [2024-06] [paper] [repo]
-
LiveBench: "LiveBench: A Challenging, Contamination-Free LLM Benchmark" [2024-06] [paper] [repo]
-
DebugEval: "Enhancing the Code Debugging Ability of LLMs via Communicative Agent Based Data Refinement" [2024-08] [paper] [repo]
-
FullStack Bench: "FullStack Bench: Evaluating LLMs as Full Stack Coder" [2024-11] [paper] [data]
-
StackEval: "StackEval: Benchmarking LLMs in Coding Assistance" [2024-12] [paper] [data]
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2018-02 | LREC 2018 | NL2Bash | 9305 | Bash | "NL2Bash: A Corpus and Semantic Parser for Natural Language Interface to the Linux Operating System" [paper] [data] |
2018-08 | EMNLP 2018 | CONCODE | 104K | Java | "Mapping Language to Code in Programmatic Context" [paper] [data] |
2019-10 | EMNLP-IJCNLP 2019 | JuICe | 1.5M/3725 * | Python | "JuICe: A Large Scale Distantly Supervised Dataset for Open Domain Context-based Code Generation" [paper] [data] |
2021-05 | NeurIPS 2021 | APPS | 10000 | Python | "Measuring Coding Challenge Competence With APPS" [paper] [data] |
2021-07 | arXiv | HumanEval | 164 | Python | "Evaluating Large Language Models Trained on Code" [paper] [data] |
2021-08 | arXiv | MBPP/MathQA-Python | 974/23914 | Python | "Program Synthesis with Large Language Models" [paper] [MBPP] [MathQA-Python] |
2021-08 | ACL/IJCNLP 2021 | PlotCoder | 40797 | Python | "PlotCoder: Hierarchical Decoding for Synthesizing Visualization Code in Programmatic Context" [paper] [data] |
2022-01 | arXiv | DSP | 1119 | Python | "Training and Evaluating a Jupyter Notebook Data Science Assistant" [paper] [data] |
2022-02 | Science | CodeContests | 13610 | C++, Python, Java | "Competition-Level Code Generation with AlphaCode" [paper] [data] |
2022-03 | EACL 2023 Findings | MCoNaLa | 896 | Python | "MCoNaLa: A Benchmark for Code Generation from Multiple Natural Languages" [paper] [data] |
2022-06 | arXiv | AixBench | 336 | Java | "AixBench: A Code Generation Benchmark Dataset" [paper] [data] |
2022-08 | IEEE Trans. Software Engineering | MultiPL-E | "MultiPL-E: A Scalable and Extensible Approach to Benchmarking Neural Code Generation", [paper] [data] | ||
2022-10 | ICLR 2023 | MBXP | 12.4K | Python, Java, JS, TypeScript, Go, C#, PHP, Ruby, Kotlin, C++, Perl, Scala, Swift | "Multi-lingual Evaluation of Code Generation Models" [paper] [data] |
2022-10 | ICLR 2023 | Multilingual HumanEval | 1.9K | Python, Java, JS, TypeScript, Go, C#, PHP, Ruby, Kotlin, Perl, Scala, Swift | "Multi-lingual Evaluation of Code Generation Models" [paper] [data] |
2022-10 | ICLR 2023 | MathQA-X | 5.6K | Python, Java, JS | "Multi-lingual Evaluation of Code Generation Models" [paper] [data] |
2022-11 | arXiv | ExeDS | 534 | Python | "Execution-based Evaluation for Data Science Code Generation Models" [paper] [data] |
2022-11 | arXiv | DS-1000 | 1000 | Python | "DS-1000: A Natural and Reliable Benchmark for Data Science Code Generation" [paper] [data] |
2022-12 | arXiv | ODEX | 945 | Python | "Execution-Based Evaluation for Open-Domain Code Generation" [paper] [data] |
2023-02 | arXiv | CoderEval | 460 | Python, Java | "CoderEval: A Benchmark of Pragmatic Code Generation with Generative Pre-trained Models" [paper] [data] |
2023-03 | ACL 2024 | xCodeEval | 5.5M | C, C#, C++, Go, Java, JS, Kotlin, PHP, Python, Ruby, Rust | "XCodeEval: An Execution-based Large Scale Multilingual Multitask Benchmark for Code Understanding, Generation, Translation and Retrieval" [paper] [data] |
2023-03 | arXiv | HumanEval-X | 820 | Python, C++, Java, JS, Go | "CodeGeeX: A Pre-Trained Model for Code Generation with Multilingual Evaluations on HumanEval-X" [paper] [data] |
2023-05 | arXiv | HumanEval+ | 164 | Python | "Is Your Code Generated by ChatGPT Really Correct? Rigorous Evaluation of Large Language Models for Code Generation" [paper] [data] |
2023-06 | ACL 2024 Findings | StudentEval | 1749 |
Python | "StudentEval: A Benchmark of Student-Written Prompts for Large Language Models of Code" [paper] [data] |
2023-08 | ICLR 2024 Spotlight | HumanEvalPack | 984 | Python, JS, Go, Java, C++, Rust | "OctoPack: Instruction Tuning Code Large Language Models" [paper] [data] |
2023-06 | NeurIPS 2023 | DotPrompts | 10538 |
Java | "Guiding Language Models of Code with Global Context using Monitors" [paper] [data] |
2023-09 | arXiv | CodeApex | 476 | C++ | "CodeApex: A Bilingual Programming Evaluation Benchmark for Large Language Models" [paper] [data] |
2023-09 | arXiv | VerilogEval | 8645/156 |
Verilog | "VerilogEval: Evaluating Large Language Models for Verilog Code Generation" [paper] [data] |
2023-11 | arXiv | ML-Bench | 10040 | Bash | "ML-Bench: Large Language Models Leverage Open-source Libraries for Machine Learning Tasks" [paper] [data] |
2023-12 | arXiv | TACO | 26,433 | Python | "TACO: Topics in Algorithmic COde generation dataset" [paper] [data] |
2024-01 | EMNLP 2024 Findings | PythonSaga | 185 | Python | "PythonSaga: Redefining the Benchmark to Evaluate Code Generating LLMs" [paper] [data] |
2024-01 | HPDC | ParEval | 420 | C++, CUDA, HIP | "Can Large Language Models Write Parallel Code?" [paper] [data] |
2024-02 | ACL 2024 Findings | OOP | 431 | Python | "OOP: Object-Oriented Programming Evaluation Benchmark for Large Language Models" [paper] [data] |
2024-02 | LREC-COLING 2024 | HumanEval-XL | 22080 | 23NL, 12PL | "HumanEval-XL: A Multilingual Code Generation Benchmark for Cross-lingual Natural Language Generalization" [paper] [data] |
2024-04 | arXiv | USACO | 307 | Python | "Can Language Models Solve Olympiad Programming?" [paper] [data] |
2024-04 | LREC-COLING 2024 | PECC | 2396 | Python | "PECC: Problem Extraction and Coding Challenges" [paper] [data] |
2024-04 | arXiv | CodeGuard+ | 23 | Python, C | "Constrained Decoding for Secure Code Generation" [paper] [data] |
2024-05 | ACL 2024 Findings | NaturalCodeBench | 402 | Python, Java | "NaturalCodeBench: Examining Coding Performance Mismatch on HumanEval and Natural User Prompts" [paper] [data] |
2024-05 | arXiv | MHPP | 140 | Python | "MHPP: Exploring the Capabilities and Limitations of Language Models Beyond Basic Code Generation" [paper] [repo] |
2024-06 | arXiv | VHDL-Eval | 202 | VHDL | "VHDL-Eval: A Framework for Evaluating Large Language Models in VHDL Code Generation" [paper] |
2024-06 | arXiv | AICoderEval | 492 | Python | "AICoderEval: Improving AI Domain Code Generation of Large Language Models" [paper] [data] |
2024-06 | arXiv | VersiCode | 98,692 | Python | "VersiCode: Towards Version-controllable Code Generation" [paper] [data] |
2024-06 | IEEE AITest 2024 | ScenEval | 12,864 | Java | "ScenEval: A Benchmark for Scenario-Based Evaluation of Code Generation" [paper] |
2024-06 | arXiv | BigCodeBench | 1,140 | Python | "BigCodeBench: Benchmarking Code Generation with Diverse Function Calls and Complex Instructions" [paper] [data] |
2024-07 | arXiv | CodeUpdateArena | 670 | Python | "CodeUpdateArena: Benchmarking Knowledge Editing on API Updates" [paper] [data] |
2024-07 | EMNLP 2024 Findings | LBPP | 161 | Python | "On Leakage of Code Generation Evaluation Datasets" [paper] [data] |
2024-07 | arXiv | NoviCode | 150 | Python | "NoviCode: Generating Programs from Natural Language Utterances by Novices" [paper] [data] |
2024-07 | arXiv | Case2Code | 1.3M | Python | "Case2Code: Learning Inductive Reasoning with Synthetic Data" [paper] [data] |
2024-07 | arXiv | SciCode | 338 | Python | "SciCode: A Research Coding Benchmark Curated by Scientists" [paper] [data] |
2024-07 | arXiv | auto-regression | 460 | Python | "Generating Unseen Code Tests In Infinitum" [paper] |
2024-07 | arXiv | WebApp1K | 1000 | JavaScript | "WebApp1K: A Practical Code-Generation Benchmark for Web App Development" [paper] [data] |
2024-08 | ACL 2024 Findings | CodeInsight | 3409 | Python | "CodeInsight: A Curated Dataset of Practical Coding Solutions from Stack Overflow" [paper] [data] |
2024-08 | arXiv | DomainEval | 2454 | Python | "DOMAINEVAL: An Auto-Constructed Benchmark for Multi-Domain Code Generation" [paper] [data] |
2024-09 | arXiv | ComplexCodeEval | 7184/3897 | Python/Java | "ComplexCodeEval: A Benchmark for Evaluating Large Code Models on More Complex Code" [paper] [data] |
2024-09 | ASE 2024 | CoCoNote | 58221 | Python Notebook | "Contextualized Data-Wrangling Code Generation in Computational Notebooks" [paper] [data] |
2024-10 | arXiv | unnamed | 77 | Python | "Evaluation of Code LLMs on Geospatial Code Generation" [paper] [data] |
2024-10 | arXiv | mHumanEval | 836,400 | 25PL, 204NL | "mHumanEval -- A Multilingual Benchmark to Evaluate Large Language Models for Code Generation" [paper] [data] |
2024-10 | arXiv | FeatEng | 103 | Python | "Can Models Help Us Create Better Models? Evaluating LLMs as Data Scientists" [paper] [data] |
2024-11 | arXiv | GitChameleon | 116 | Python | "GitChameleon: Unmasking the Version-Switching Capabilities of Code Generation Models" [paper] [data] |
2024-11 | EMNLP 2024 Findings | MBUPP | 466 | Python | "One-to-many testing for code generation from (just) natural language" [paper] [data] |
2024-11 | arXiv | LibEvolutionEval | 34.7K | Python | "LibEvolutionEval: A Benchmark and Study for Version-Specific Code Generation" [paper] |
2024-12 | arXiv | PandasPlotBench | 175 | Python | "Drawing Pandas: A Benchmark for LLMs in Generating Plotting Code" [paper] [data] |
2024-12 | arXiv | CodeArena | 397 | 44 | "Evaluating and Aligning CodeLLMs on Human Preference" [paper] [data] |
2024-12 | arXiv | OBFUSEVAL | 1354 | C | "Unseen Horizons: Unveiling the Real Capability of LLM Code Generation Beyond the Familiar" [paper] [data] |
* Automatically mined/human-annotated
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2024-04 | EMNLP 2024 Findings | MMCode | 3548 | Python | "MMCode: Evaluating Multi-Modal Code Large Language Models with Visually Rich Programming Problems" [paper] [data] |
2024-05 | arXiv | Plot2Code | 132 | Python | "Plot2Code: A Comprehensive Benchmark for Evaluating Multi-modal Large Language Models in Code Generation from Scientific Plots" [paper] [data] |
2024-06 | arXiv | ChartMimic | 1000 | Python | "ChartMimic: Evaluating LMM's Cross-Modal Reasoning Capability via Chart-to-Code Generation" [paper] [data] |
2024-10 | arXiv | HumanEval-V | 108 | Python | "HumanEval-V: Evaluating Visual Understanding and Reasoning Abilities of Large Multimodal Models Through Coding Tasks" [paper] [data] |
2024-10 | arXiv | TurtleBench | 260 | Python | "TurtleBench: A Visual Programming Benchmark in Turtle Geometry" [paper] [data] |
2024-12 | arXiv | BigDocs | 7.5M | HTML, LaTeX, SVG, JSON, Markdown, etc | "BigDocs: An Open and Permissively-Licensed Dataset for Training Multimodal Models on Document and Code Tasks" [paper] [data] |
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2021-09 | EMNLP 2021 Findings | CodeQA | 120K/70K | Java/Python | "CodeQA: A Question Answering Dataset for Source Code Comprehension" [paper] [data] |
2022-10 | NAACL 2022 | CS1QA | 9237 | Python | "CS1QA: A Dataset for Assisting Code-based Question Answering in an Introductory Programming Course" [paper] [data] |
2023-09 | arXiv | CodeApex | 250 | C++ | "CodeApex: A Bilingual Programming Evaluation Benchmark for Large Language Models" [paper] [data] |
2024-01 | ICML 2024 | CRUXEval | 800 | Python | "CRUXEval: A Benchmark for Code Reasoning, Understanding and Execution" [paper] [data] |
2024-05 | arXiv | PythonIO | 2650 | Python | "Multiple-Choice Questions are Efficient and Robust LLM Evaluators" [paper] [data] |
2024-05 | arXiv | StaCCQA | 270K | Python | "Aligning LLMs through Multi-perspective User Preference Ranking-based Feedback for Programming Question Answering" [paper] [data] |
2024-06 | arXiv | RepoQA | 500 | Python, C++, Java, Rust, TypeScript | "RepoQA: Evaluating Long Context Code Understanding" [paper] [data] |
2024-08 | arXiv | CruxEval-X | 12.6K | 19 | "CRUXEval-X: A Benchmark for Multilingual Code Reasoning, Understanding and Execution" [paper] [data] |
2024-09 | arXiv | SpecEval | 204 | Java | "SpecEval: Evaluating Code Comprehension in Large Language Models via Program Specifications" [paper] [data] |
2024-10 | arXiv | CodeMMLU | 19912 | 13 | "CodeMMLU: A Multi-Task Benchmark for Assessing Code Understanding Capabilities of CodeLLMs" [paper] [data] |
2024-11 | arXiv | unnamed | 80232 | Python | "Leveraging Large Language Models in Code Question Answering: Baselines and Issues" [paper] [data] |
2024-11 | arXiv | ScratchEval | 305 | Scratch | "ScratchEval: Are GPT-4o Smarter than My Child? Evaluating Large Multimodal Models with Visual Programming Challenges" [paper] [data] |
2024-12 | arXiv | CodeRepoQA | 585,687 | Python, Java, TS, JS, Go | "CodeRepoQA: A Large-scale Benchmark for Software Engineering Question Answering" [paper] [data] |
- "Deep learning driven natural languages text to SQL query conversion: A survey", 2022-08, arXiv, [paper]
- "Recent Advances in Text-to-SQL: A Survey of What We Have and What We Expect", 2022-08, COLING 2022, [paper]
- "A Survey on Text-to-SQL Parsing: Concepts, Methods, and Future Directions", 2022-08, arXiv, [paper]
- "A survey on deep learning approaches for text-to-SQL", 2023-01, VLDB J., [paper]
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2017-08 | arXiv | WikiSQL | 80654 | "Seq2SQL: Generating Structured Queries from Natural Language using Reinforcement Learning" [paper] [data] | |
2018-06 | CL 2018 | Advising | 4570 | "Improving Text-to-SQL Evaluation Methodology" [paper] [data] | |
2018-09 | EMNLP 2018 | Spider | 10181 | "Spider: A Large-Scale Human-Labeled Dataset for Complex and Cross-Domain Semantic Parsing and Text-to-SQL Task" [paper] [data] | |
2019-06 | ACL 2019 | SParC | 12726 | "SParC: Cross-Domain Semantic Parsing in Context" [paper] [data] | |
2019-07 | WWW 2020 | MIMICSQL | 10000 | "Text-to-SQL Generation for Question Answering on Electronic Medical Records" [paper] [data] | |
2019-09 | EMNLP-IJCNLP 2019 | CoSQL | 15598 | "CoSQL: A Conversational Text-to-SQL Challenge Towards Cross-Domain Natural Language Interfaces to Databases" [paper] [data] | |
2020-05 | LREC 2020 | Criteria-to-SQL | 2003 | "Dataset and Enhanced Model for Eligibility Criteria-to-SQL Semantic Parsing" [paper] [data] | |
2020-10 | EMNLP 2020 Findings | Squall | 11276 | "On the Potential of Lexico-logical Alignments for Semantic Parsing to SQL Queries" [paper] [data] | |
2020-10 | NAACL-HLT 2021 | Spider-Realistic | 508 | "Structure-Grounded Pretraining for Text-to-SQL" [paper] [data] | |
2021-06 | ACL/IJCNLP 2021 | Spider-Syn | 8034 | "Towards Robustness of Text-to-SQL Models against Synonym Substitution" [paper] [data] | |
2021-06 | NLP4Prog 2021 | SEDE | 12023 | "Text-to-SQL in the Wild: A Naturally-Occurring Dataset Based on Stack Exchange Data" [paper] [data] | |
2021-06 | ACL/IJCNLP 2021 | KaggleDBQA | 400 | "KaggleDBQA: Realistic Evaluation of Text-to-SQL Parsers" [paper] [data] | |
2021-09 | EMNLP | Spider-DK | 535 | "Exploring Underexplored Limitations of Cross-Domain Text-to-SQL Generalization" [paper] [data] | |
2022-05 | NAACL 2022 Findings | Spider-SS/CG | 8034/45599 | "Measuring and Improving Compositional Generalization in Text-to-SQL via Component Alignment" [paper] [data] | |
2023-05 | arXiv | BIRD | 12751 | "Can LLM Already Serve as A Database Interface? A BIg Bench for Large-Scale Database Grounded Text-to-SQLs" [paper] [data] | |
2023-06 | ACL 2023 | XSemPLR | 24.4K | "XSemPLR: Cross-Lingual Semantic Parsing in Multiple Natural Languages and Meaning Representations" [paper] [data] | |
2024-05 | ACL 2024 Findings | EHR-SeqSQL | 31669 | "EHR-SeqSQL : A Sequential Text-to-SQL Dataset For Interactively Exploring Electronic Health Records" [paper] | |
2024-06 | NAACL 2024 | BookSQL | 100K | "BookSQL: A Large Scale Text-to-SQL Dataset for Accounting Domain" [paper] [data] | |
2024-08 | ACL 2024 Findings | MultiSQL | 9257 | "MultiSQL: A Schema-Integrated Context-Dependent Text2SQL Dataset with Diverse SQL Operations" [paper] [data] | |
2024-09 | arXiv | BEAVER | 93 | "BEAVER: An Enterprise Benchmark for Text-to-SQL" [paper] | |
2024-10 | arXiv | PRACTIQ | 2812 | "PRACTIQ: A Practical Conversational Text-to-SQL dataset with Ambiguous and Unanswerable Queries" [paper] | |
2024-10 | arXiv | BIS | 239 | "BIS: NL2SQL Service Evaluation Benchmark for Business Intelligence Scenarios" [paper] [data] | |
2024-11 | arXiv | Spider 2.0 | 632 | "Spider 2.0: Evaluating Language Models on Real-World Enterprise Text-to-SQL Workflows" [paper] [data] |
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2020-06 | NeurIPS 2020 | Transcoder GeeksforGeeks | 1.4K | C++, Java, Python | "Unsupervised Translation of Programming Languages" [paper] [data] |
2021-02 | NeurIPS Datasets and Benchmarks 2021 | CodeTrans | 11.8K | Java, C# | "CodeXGLUE: A Machine Learning Benchmark Dataset for Code Understanding and Generation" [paper] [data] |
2021-08 | ACL 2023 Findings | Avatar | 9515 | Java, Python | "AVATAR: A Parallel Corpus for Java-Python Program Translation" [paper] [data] |
2022-06 | AAAI 2022 | CoST | 132K | C++, Java, Python, C#, JS, PHP, C | "Multilingual Code Snippets Training for Program Translation" [paper] [data] |
2022-06 | arXiv | XLCoST | 567K | C++, Java, Python, C#, JS, PHP, C | "XLCoST: A Benchmark Dataset for Cross-lingual Code Intelligence" [paper] [data] |
2023-03 | arXiv | xCodeEval | 5.6M | C, C#, C++, Go, Java, JS, Kotlin, PHP, Python, Ruby, Rust | "xCodeEval: A Large Scale Multilingual Multitask Benchmark for Code Understanding, Generation, Translation and Retrieval" [paper] [data] |
2023-03 | arXiv | HumanEval-X | 1640 | Python, C++, Java, JS, Go | "CodeGeeX: A Pre-Trained Model for Code Generation with Multilingual Evaluations on HumanEval-X" [paper] [data] |
2023-08 | arXiv | G-TransEval | 4000 | C++, Java, C#, JS, Python | "On the Evaluation of Neural Code Translation: Taxonomy and Benchmark" [paper] [data] |
2023-10 | arXiv | CodeTransOcean | 270.5K | 45 | "CodeTransOcean: A Comprehensive Multilingual Benchmark for Code Translation" [paper] [data] |
2024-11 | arXiv | Classeval-T | 94 | Python, Java, C++ | "Escalating LLM-based Code Translation Benchmarking into the Class-level Era" [paper] |
2024-11 | arXiv | RustRepoTrans | 375 | C++, Java, Python, Rust | "Repository-level Code Translation Benchmark Targeting Rust" [paper] [data] |
- "Neural Program Repair: Systems, Challenges and Solutions", 2022-02, Internetware 2022, [paper]
- "A Survey of Learning-based Automated Program Repair", 2023-01, arXiv, [paper]
- "A Survey on Automated Program Repair Techniques", 2023-03, arXiv, [paper]
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2014-07 | ISSTA 2014 | Defects4J | 357 | Java | "Defects4J: A Database of Existing Faults to Enable Controlled Testing Studies for Java Programs" [paper] [data] |
2015-12 | IEEE Trans. Software Engineering | ManyBugs/IntroClass | 185/998 | C | "The ManyBugs and IntroClass Benchmarks for Automated Repair of C Programs" [paper] [data] |
2016-11 | FSE 2016 | BugAID | 105K | JS | "Discovering Bug Patterns in JavaScript" [paper] [data] |
2017-02 | AAAI 2017 | DeepFix | 6971 | C | "DeepFix: Fixing Common C Language Errors by Deep Learning" [paper] [data] |
2017-05 | ICSE-C 2017 | Codeflaws | 3902 | C | "DeepFix: Fixing Common C Language Errors by Deep Learning" [paper] [data] |
2017-10 | SPLASH 2017 | QuixBugs | 80 | Java, Python | "QuixBugs: a multi-lingual program repair benchmark set based on the quixey challenge" [paper] [data] |
2018-05 | MSR 2018 | Bugs.jar | 1158 | Java | "Bugs.jar: a large-scale, diverse dataset of real-world Java bugs" [paper] [data] |
2018-12 | ACM Trans. Softw. Eng. Methodol. | BFP | 124K | Java | "An Empirical Study on Learning Bug-Fixing Patches in the Wild via Neural Machine Translation" [paper] [data] |
2019-01 | SANER 2019 | Bears | 251 | Java | "Bears: An Extensible Java Bug Benchmark for Automatic Program Repair Studies" [paper] [data] |
2019-01 | ICSE 2019 | unnamed | 21.8K * | Java | "On Learning Meaningful Code Changes via Neural Machine Translation" [paper] [data] |
2019-04 | ICST 2019 | BugsJS | 453 | JS | "BugsJS: a Benchmark of JavaScript Bugs" [paper] [data] |
2019-05 | ICSE 2019 | BugSwarm | 1827/1264 | Java/Python | "BugSwarm: mining and continuously growing a dataset of reproducible failures and fixes" [paper] [data] |
2019-05 | ICSE 2019 | CPatMiner | 17K * | Java | "Graph-based mining of in-the-wild, fine-grained, semantic code change patterns" [paper] [data] |
2019-05 | MSR 2020 | ManySStuBs4J | 154K | Java | "How Often Do Single-Statement Bugs Occur? The ManySStuBs4J Dataset" [paper] [data] |
2019-11 | ASE 2019 | Refactory | 1783 | Python | "Re-factoring based program repair applied to programming assignments" [paper] [data] |
2020-07 | ISSTA 2020 | CoCoNut | 24M | Java, Python, C, JS | "CoCoNuT: combining context-aware neural translation models using ensemble for program repair" [paper] [data] |
2020-10 | Inf. Softw. Technol. | Review4Repair | 58021 | Java | "Review4Repair: Code Review Aided Automatic Program Repairing" [paper] [data] |
2020-11 | ESEC/FSE 2020 | BugsInPy | 493 | Python | "BugsInPy: A Database of Existing Bugs in Python Programs to Enable Controlled Testing and Debugging Studies" [paper] [data] |
2021-07 | ICML 2021 | TFix | 105K | JS | "TFix: Learning to Fix Coding Errors with a Text-to-Text Transformer" [paper] [data] |
2021-08 | arXiv | Megadiff | 663K * | Java | "Megadiff: A Dataset of 600k Java Source Code Changes Categorized by Diff Size" [paper] [data] |
2022-01 | SSB/TSSB | MSR 2022 | 9M/3M | Python | "TSSB-3M: Mining single statement bugs at massive scale" [paper] [data] |
2022-10 | MSR 2022 | FixJS | 324K | JS | "FixJS: a dataset of bug-fixing JavaScript commits" [paper] [data] |
2022-11 | ESEC/FSE 2022 | TypeBugs | 93 | Python | "PyTER: Effective Program Repair for Python Type Errors" [paper] [data] |
2023-03 | arXiv | xCodeEval | 4.7M | C, C#, C++, Go, Java, JS, Kotlin, PHP, Python, Ruby, Rust | "xCodeEval: A Large Scale Multilingual Multitask Benchmark for Code Understanding, Generation, Translation and Retrieval" [paper] [data] |
2023-04 | arXiv | RunBugRun | 450K | C, C++, Java, Python, JS, Ruby, Go, PHP | "RunBugRun -- An Executable Dataset for Automated Program Repair" [paper] [data] |
2023-08 | arXiv | HumanEvalPack | 984 | Python, JS, Go, Java, C++, Rust | "OctoPack: Instruction Tuning Code Large Language Models" [paper] [data] |
2024-01 | arXiv | DebugBench | 4253 | C++, Java, Python | "DebugBench: Evaluating Debugging Capability of Large Language Models" [paper] [data] |
2024-11 | arXiv | MdEval | 3513 | 18 | "MdEval: Massively Multilingual Code Debugging" [paper] |
* These are code-change datasest, and only a subset therein concerns bug fixing.
- "A Survey of Automatic Source Code Summarization", 2022-02, Symmetry, [paper]
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2016-08 | ACL 2016 | CODE-NN | 66K/32K | C#/SQL | "Summarizing Source Code using a Neural Attention Model" [paper] [data] |
2017-07 | IJCNLP 2017 | unnamed | 150K | Python | "A parallel corpus of Python functions and documentation strings for automated code documentation and code generation" [paper] [data] |
2018-05 | ICPC 2018 | DeepCom | 588K | Java | "Deep code comment generation" [paper] [data] |
2018-07 | IJCAI 2018 | TL-CodeSum | 411K | Java | "Summarizing Source Code with Transferred API Knowledge" [paper] [data] |
2018-11 | ASE 2018 | unnamed | 109K | Python | "Improving Automatic Source Code Summarization via Deep Reinforcement Learning" [paper] [data] |
2019-09 | arxiv | CodeSearchNet | 2.3M | Go, JS, Python, PHP, Java, Ruby | "CodeSearchNet Challenge: Evaluating the State of Semantic Code Search" [paper] [data] |
2023-08 | arXiv | HumanEvalPack | 984 | Python, JS, Go, Java, C++, Rust | "OctoPack: Instruction Tuning Code Large Language Models" [paper] [data] |
- "Benchmarking Software Vulnerability Detection Techniques: A Survey", 2023-03, arXiv, [paper]
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2018-01 | NDSS 2018 | CGD | 62K | C, C++ | "VulDeePecker: A Deep Learning-Based System for Vulnerability Detection" [paper] [data] |
2018-04 | IEEE Trans. Ind. Informatics | unnamed | 32988 | C, C++ | "Cross-Project Transfer Representation Learning for Vulnerable Function Discovery" [paper] [data] |
2018-07 | ICMLA 2018 | Draper VDISC | 12.8M | C, C++ | "Automated Vulnerability Detection in Source Code Using Deep Representation Learning" [paper] [data] |
2018-07 | IEEE TDSC | SySeVR | 15591 | C, C++ | "SySeVR: A Framework for Using Deep Learning to Detect Software Vulnerabilities" [paper] [data] |
2019-02 | MSR 2019 | unnamed | 624 | Java | "A Manually-Curated Dataset of Fixes to Vulnerabilities of Open-Source Software" [paper] [data] |
2019-09 | NeurIPS 2019 | Devign | 49K | C | "Devign: Effective Vulnerability Identification by Learning Comprehensive Program Semantics via Graph Neural Networks" [paper] [data] |
2019-11 | IEEE TDSC | unnamed | 170K | C, C++ | "Software Vulnerability Discovery via Learning Multi-Domain Knowledge Bases" [paper] [data] |
2019-12 | ICLR 2020 | GREAT | 2.8M | Python | "Global Relational Models of Source Code" [paper] [data] |
2020-01 | IEEE TDSC | MVD | 182K | C, C++ | "μVulDeePecker: A Deep Learning-Based System for Multiclass Vulnerability Detection" [paper] [data] |
2020-02 | ICICS 2019 | unnamed | 1471 | C | "Deep Learning-Based Vulnerable Function Detection: A Benchmark" [paper] [data] |
2020-09 | IEEE Trans. Software Eng. | ReVeal | 18K | C | "Deep Learning based Vulnerability Detection: Are We There Yet?" [paper] [data] |
2020-09 | MSR 2020 | Big-Vul | 265K | C, C++ | "A C/C++ Code Vulnerability Dataset with Code Changes and CVE Summaries" [paper] [data] |
2021-02 | ICSE (SEIP) 2021 | D2A | 1.3M | C, C++ | "D2A: A Dataset Built for AI-Based Vulnerability Detection Methods Using Differential Analysis" [paper] [data] |
2021-05 | NeurIPS 2021 | PyPIBugs | 2374 | Python | "Self-Supervised Bug Detection and Repair" [paper] [data] |
2021-07 | In PROMISE 2021 | CVEfixes | 5495 | 27 | "CVEfixes: Automated Collection of Vulnerabilities and Their Fixes from Open-Source Software" [paper] [data] |
2021-08 | ESEC/FSE 2021 | CrossVul | 27476 | 40+ | "CrossVul: a cross-language vulnerability dataset with commit data" [paper] [data] |
2023-04 | RAID 2023 | DiverseVul | 349K | C, C++ | "DiverseVul: A New Vulnerable Source Code Dataset for Deep Learning Based Vulnerability Detection" [paper] [data] |
2023-06 | arXiv | VulnPatchPairs | 26K | C | "Limits of Machine Learning for Automatic Vulnerability Detection" [paper] [data] |
2023-11 | arXiv | VulBench | 455 | C | "How Far Have We Gone in Vulnerability Detection Using Large Language Models" [paper] [data] |
2024-03 | arXiv | PrimeVul | 236K | C/C++ | "Vulnerability Detection with Code Language Models: How Far Are We?" [paper] |
2024-06 | arXiv | VulDetectBench | 1000 | C/C++ | "VulDetectBench: Evaluating the Deep Capability of Vulnerability Detection with Large Language Models" [paper] [data] |
2024-08 | arXiv | CodeJudge-Eval | 1860 | Python | "CodeJudge-Eval: Can Large Language Models be Good Judges in Code Understanding?" [paper] [data] |
2024-11 | arXiv | CleanVul | 11632 | Java, Python, JS, C#, C/C++ | "CleanVul: Automatic Function-Level Vulnerability Detection in Code Commits Using LLM Heuristics" [paper] [data] |
- "Code Search: A Survey of Techniques for Finding Code", 2022-04, ICSME 2021, [[paper](ACM Comput. Surv)]
- "A Survey of Deep Code Search", 2023-05, arXiv, [paper]
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2018-03 | WWW 2018 | StaQC | 148K/120K | Python/SQL | "StaQC: A Systematically Mined Question-Code Dataset from Stack Overflow" [paper] [data] |
2018-05 | ICSE 2018 | DeepCS | 16.2M | Java | "Deep Code Search" [paper] [data] |
2018-05 | MSR 2018 | CoNaLa | 600K/2.9K | Python | "Learning to Mine Aligned Code and Natural Language Pairs from Stack Overflow" [paper] [data] |
2019-08 | arXiv | unnamed | 287 | Java | "Neural Code Search Evaluation Dataset" [paper] [data] |
2019-09 | arXiv | CodeSearchNet | 2.3M/99 | Go, PHP, JS, Python, Java, Ruby | "CodeSearchNet Challenge: Evaluating the State of Semantic Code Search" [paper] [data] |
2020-02 | SANER 2020 | CosBench | 52 | Java | "Are the Code Snippets What We Are Searching for? A Benchmark and an Empirical Study on Code Search with Natural-Language Queries" [paper] [data] |
2020-08 | arXiv | SO-DS | 2.2K | Python | "Neural Code Search Revisited: Enhancing Code Snippet Retrieval through Natural Language Intent" [paper] [data] |
2020-10 | ACM Trans. Knowl. Discov. Data | FB-Java | 249K | Java | "Deep Graph Matching and Searching for Semantic Code Retrieval" [paper] [data] |
2021-02 | NeurIPS Datasets and Benchmarks 2021 | AdvTest/WebQueryTest | 280K/1K | Python | "CodeXGLUE: A Machine Learning Benchmark Dataset for Code Understanding and Generation" [paper] [[data]] |
2021-05 | ACL/IJCNLP 2021 | CoSQA | 21K | Python | "CoSQA: 20,000+ Web Queries for Code Search and Question Answering" [paper] [data] |
2024-03 | arXiv | ProCQA | 5.2M | C, C++, Java, Python, Ruby, Lisp, JS, C#, Go, Rust, PHP | "ProCQA: A Large-scale Community-based Programming Question Answering Dataset for Code Search" [paper] [data] |
2024-06 | arXiv | CoSQA+ | 109K | Python | "CoSQA+: Enhancing Code Search Dataset with Matching Code" [paper] [data] |
2024-07 | arXiv | CoIR | ~2M | 14 | "CoIR: A Comprehensive Benchmark for Code Information Retrieval Models" [paper] [data] |
2024-08 | arXiv | SeqCoBench | 14.5K | Python | "What can Large Language Models Capture about Code Functional Equivalence?" [paper] |
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2019-12 | ESEC/FSE 2020 | TypeWriter OSS | 208K | Python | "TypeWriter: Neural Type Prediction with Search-based Validation" [paper] [data] |
2020-04 | PLDI 2020 | Typilus | 252K | Python | "Typilus: Neural Type Hints" [paper] [data] |
2020-04 | ICLR 2020 | LambdaNet | 300 * | TypeScript | "LambdaNet: Probabilistic Type Inference using Graph Neural Networks" [paper] [data] |
2021-04 | MSR 2021 | ManyTypes4Py | 869K | Python | "ManyTypes4Py: A Benchmark Python Dataset for Machine Learning-based Type Inference" [paper] [data] |
2022-10 | MSR 2022 | ManyTypes4TypeScript | 9.1M | TypeScript | "ManyTypes4TypeScript: a comprehensive TypeScript dataset for sequence-based type inference" [paper] [data] |
2023-02 | ECOOP 2023 | TypeWeaver | 513 * | TypeScript | "Do Machine Learning Models Produce TypeScript Types That Type Check?" [paper] [data] |
2023-03 | ICLR 2023 | BetterTypes4Py/InferTypes4Py | 608K/4.6K | Python | "TypeT5: Seq2seq Type Inference using Static Analysis" [paper] [data] |
2023-05 | arXiv | OpenTau | 744 * | TypeScript | "Type Prediction With Program Decomposition and Fill-in-the-Type Training" [paper] [data] |
* These are project counts.
- "On the Evaluation of Commit Message Generation Models: An Experimental Study", 2021-07, ICSME 2021, [paper]
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2017-03 | ICPC 2017 | unnamed | 509K | Java | "Towards Automatic Generation of Short Summaries of Commits" [paper] [data] |
2017-04 | ACL 2017 | CommitGen | 153K | Python, JS, C++, Java | "A Neural Architecture for Generating Natural Language Descriptions from Source Code Changes" [paper] [data] |
2017-08 | ASE 2017 | CommitGen | 32K/75K * | Java | "Automatically Generating Commit Messages from Diffs using Neural Machine Translation" [paper] [data] |
2018-09 | ASE 2018 | NNGen | 27K | Java | "Neural-machine-translation-based commit message generation: how far are we?" [paper] [data] |
2019-05 | MSR 2019 | PtrGNCMsg | 64.9K | Java | "Generating commit messages from diffs using pointer-generator network" [paper] [[data(https://zenodo.org/records/2593787)]] |
2019-08 | IJCAI 2019 | CoDiSum | 90.7K | Java | "Commit message generation for source code changes" [paper] [data] |
2019-12 | IEEE Trans. Software Eng. | ATOM | 160K | Java | "ATOM: Commit Message Generation Based on Abstract Syntax Tree and Hybrid Ranking" [paper] [data] |
2021-05 | arXiv | CommitBERT | 346K | Python, PHP, Go, Java, JS, Ruby | "CommitBERT: Commit Message Generation Using Pre-Trained Programming Language Model" [paper] [data] |
2021-07 | ICSME 2021 | MCMD | 2.25M | Java, C#, C++, Python, JS | "On the Evaluation of Commit Message Generation Models: An Experimental Study" [paper] [data] |
2021-07 | ACM Trans. Softw. Eng. Methodol. | CoRec | 107K | Java | "Context-aware Retrieval-based Deep Commit Message Generation" [paper] [data] |
2023-07 | ASE 2023 | ExGroFi | 19263 | Java | "Delving into Commit-Issue Correlation to Enhance Commit Message Generation Models" [paper] [data] |
2023-08 | ASE 2023 | CommitChronicle | 10.7M | 20 | "From Commit Message Generation to History-Aware Commit Message Completion" [paper] [data] |
* with/without verb-direct object filter
Date | Venue | Benchmark | Size | Language | Source |
---|---|---|---|---|---|
2023-03 | arXiv | RepoEval | 1600/1600/373 * | Python | "RepoCoder: Repository-Level Code Completion Through Iterative Retrieval and Generation" [paper] [data] |
2023-06 | ICLR 2024 | RepoBench | 890K/9M/43K |
Python, Java | "RepoBench: Benchmarking Repository-Level Code Auto-Completion Systems" [paper] [data] |
2023-06 | NeurIPS 2023 | PragmaticCode | 880 ** | Java | "Guiding Language Models of Code with Global Context using Monitors" [paper] [data] |
2023-06 | arXiv | Stack-Repo | 816K | Java | "RepoFusion: Training Code Models to Understand Your Repository" [paper] [data] |
2023-09 | ISMB 2024 | BioCoder | 2269/460/460 | Python, Java | "BioCoder: A Benchmark for Bioinformatics Code Generation with Large Language Models" [paper] [data] |
2023-09 | arXiv | CodePlan | 645/21 |
C#/Python |
"CodePlan: Repository-level Coding using LLMs and Planning" [paper] [data] |
2023-10 | arXiv | SWE-Bench | 2294 | Python | "SWE-bench: Can Language Models Resolve Real-World GitHub Issues?" [paper] [data] |
2023-10 | arXiv | CrossCodeEval | 9928 | Python, Java, TypeScript, C# | "CrossCodeEval: A Diverse and Multilingual Benchmark for Cross-File Code Completion" [paper] [data] |
2024-03 | arXiv | EvoCodeBench | 275 | Python | "EvoCodeBench: An Evolving Code Generation Benchmark Aligned with Real-World Code Repositories" [paper] [data] |
2024-05 | ACL 2024 Findings | DevEval | 1874 | Python | "DevEval: A Manually-Annotated Code Generation Benchmark Aligned with Real-World Code Repositories" [paper] [data] |
2024-06 | arXiv | JavaBench | 389 | Java | "Can AI Beat Undergraduates in Entry-level Java Assignments? Benchmarking Large Language Models on JavaBench" [paper] [data] |
2024-06 | arXiv | HumanEvo | 200/200 | Python/Java | "Towards more realistic evaluation of LLM-based code generation: an experimental study and beyond" [paper] [data] |
2024-06 | arXiv | RepoExec | 355 | Python | "REPOEXEC: Evaluate Code Generation with a Repository-Level Executable Benchmark" [paper] |
2024-06 | arXiv | RES-Q | 100 | Python, JavaScript | "RES-Q: Evaluating Code-Editing Large Language Model Systems at the Repository Scale" [paper] [data] |
2024-08 | arXiv | SWE-bench-java | 91 | Java | "SWE-bench-java: A GitHub Issue Resolving Benchmark for Java" [paper] [data] |
2024-10 | arXiv | Codev-Bench | 296 | Python | "Codev-Bench: How Do LLMs Understand Developer-Centric Code Completion?" [paper] [data] |
2024-10 | arXiv | SWE-bench M | 617 | JavaScript | "SWE-bench Multimodal: Do AI Systems Generalize to Visual Software Domains?" [paper] [data] |
2024-10 | arXiv | SWE-Bench+ | 548 | Python | "SWE-Bench+: Enhanced Coding Benchmark for LLMs" [paper] [data] |
2024-10 | EMNLP 2024 | DA-Code | 500 | Python, Bash, SQL | "DA-Code: Agent Data Science Code Generation Benchmark for Large Language Models" [paper] [data] |
2024-10 | arXiv | RepoCod | 980 | Python | "Can Language Models Replace Programmers? REPOCOD Says 'Not Yet'" [paper] |
2024-10 | arXiv | M2rc-Eval | 5993 repos | 18 | "M2rc-Eval: Massively Multilingual Repository-level Code Completion Evaluation" [paper] [data] |
2024-11 | arXiv | FAUN-Eval | 300 | Python, Java, JS, TS, Go | "A Real-World Benchmark for Evaluating Fine-Grained Issue Solving Capabilities of Large Language Models" [paper] [data] |
2024-12 | arXiv | Commit0 | 54 | Python | "Commit0: Library Generation from Scratch" [paper] [data] |
2024-12 | arXiv | ExecRepoBench | 1.2K | Python | "ExecRepoBench: Multi-level Executable Code Completion Evaluation" [paper] [data] |
*Line Completion/API Invocation Completion/Function Completion
** File count
30 papers as a primer on LLM.
Date | Keyword | Paper | TL;DR |
---|---|---|---|
2014-09 | Attention | Neural Machine Translation by Jointly Learning to Align and Translate | The original attention, proposed for encoder-decoder RNN |
2015-08 | BPE | Neural Machine Translation of Rare Words with Subword Units | Byte-pair encoding: split rare words into subword units |
2017-06 | Transformer | Attention Is All You Need | Replace LSTM with self-attention for long-range dependency and parallel training |
2017-10 | Mixed Precision Training | Mixed Precision Training | Store model weights in fp16 to save memory |
2018-04 | GLUE | GLUE: A Multi-Task Benchmark and Analysis Platform for Natural Language Understanding | A language understanding benchmark |
2018-06 | GPT | Improving Language Understanding by Generative Pre-Training | Pretraining-finetuning paradigm applied to Transformer decoder |
2018-10 | BERT | BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding | Masked Language Modeling (MLM) applied to Transformer encoder for pretraining |
2019-02 | GPT-2 | Language Models are Unsupervised Multitask Learners | GPT made larger (1.5B). They found language models implicitly learn about downstream tasks (such as translation) during pretraining. |
2019-05 | SuperGLUE | SuperGLUE: A Stickier Benchmark for General-Purpose Language Understanding Systems | Another language understanding benchmark |
2019-07 | RoBERTa | RoBERTa: A Robustly Optimized BERT Pretraining Approach | An optimized BERT |
2019-09 | Megatron-LM | Megatron-LM: Training Multi-Billion Parameter Language Models Using Model Parallelism | Model parallelism |
2019-10 | ZeRO | ZeRO: Memory Optimizations Toward Training Trillion Parameter Models | Memory-efficient distributed optimization |
2019-10 | T5 | Exploring the Limits of Transfer Learning with a Unified Text-to-Text Transformer | Transformer encoder-decoder pretrained with an MLM-like denoising objective |
2020-05 | GPT-3 | Language Models are Few-Shot Learners | By training an even larger version of GPT-2 (175B), they discovered a new learning paradigm: In-Context Learning (ICL) |
2020-09 | MMLU | Measuring Massive Multitask Language Understanding | A world-knowledge and complex reasoning benchmark |
2020-12 | Pile | The Pile: An 800GB Dataset of Diverse Text for Language Modeling | A diverse pretraining dataset |
2021-06 | LoRA | LoRA: Low-Rank Adaptation of Large Language Models | Memory-efficient finetuning |
2021-09 | FLAN | Finetuned Language Models Are Zero-Shot Learners | Instruction-finetuning |
2021-10 | T0 | Multitask Prompted Training Enables Zero-Shot Task Generalization | Also instruction finetuning, but applied to the much smaller T5 |
2021-12 | Gopher | Scaling Language Models: Methods, Analysis & Insights from Training Gopher | A 280B LLM with comprehensive experiments |
2022-01 | CoT | Chain-of-Thought Prompting Elicits Reasoning in Large Language Models | Chain-of-Though reasoning |
2022-03 | InstructGPT | Training language models to follow instructions with human feedback | GPT-3 instruction finetuned with RLHF (reinforcement learning from human feedback) |
2022-03 | Chinchilla | Training Compute-Optimal Large Language Models | A smaller (70B) version of Gopher that's pretrained on more data |
2022-04 | PaLM | PaLM: Scaling Language Modeling with Pathways | The largest dense model ever (540B) |
2022-05 | 0-shot CoT | Large Language Models are Zero-Shot Reasoners | Tell LLMs to think step by step, and they can actually do it |
2022-06 | BIG Bench | Beyond the Imitation Game: Quantifying and extrapolating the capabilities of language models | Another world-knowledge and complex reasoning benchmark |
2022-06 | Emergent Ability | Emergent Abilities of Large Language Models | A review on emergent abilities |
2022-10 | Flan | Scaling Instruction-Finetuned Language Models | Consolidate all the existing instruction tuning datasets, and you get SOTA |
2022-11 | BLOOM | BLOOM: A 176B-Parameter Open-Access Multilingual Language Model | The largest open-source LLM, trained on 46 languages, with detailed discussion about training and evaluation |
2022-12 | Self-Instruct | Self-Instruct: Aligning Language Models with Self-Generated Instructions | Instruction tuning using LLM-generated data |
This list aims to provide the essential background for understanding current LLM technologies, and thus excludes more recent models such as LLaMA, GPT-4 or PaLM 2. For comprehensive reviews on these more general topics, we refer to other sources such as this paper or these repositories: Awesome-LLM, Awesome AIGC Tutorials. And for LLM applications in other specific domains: Awesome Domain LLM, Awesome Tool Learning, Awesome-LLM-MT, Awesome Education LLM.
If you find this repo or our survey helpful, please consider citing us:
@article{zhang2024unifying,
title={Unifying the Perspectives of {NLP} and Software Engineering: A Survey on Language Models for Code},
author={Ziyin Zhang and Chaoyu Chen and Bingchang Liu and Cong Liao and Zi Gong and Hang Yu and Jianguo Li and Rui Wang},
journal={Transactions on Machine Learning Research},
issn={2835-8856},
year={2024},
url={https://openreview.net/forum?id=hkNnGqZnpa},
note={}
}
English version
We are the AI Native team within the Platform Technology Business Group at Ant Group, dedicated to the intelligentization of Ant Group's platform engineering. Established for over three years, our team has played a pivotal role in supporting the intelligent operation and maintenance of Ant Group's cloud computing infrastructure. Our mission is to build algorithm services and platforms with a wide user base through world-class technological innovation and impact, supporting the implementation of internal and external products and businesses. Embracing an innovation-driven ethos, our team not only supports business implementation but also propels technological influence. Over the past three years, we have published more than 20 papers at top conferences like ICLR, NeurIPS, KDD, and ACL. Our innovative business outcomes have earned us two Ant Technology's highest T-Star awards and one SuperMA award from Ant Group. Our open-source project CodeFuse has received 4K stars as of February 2024, and our models have been downloaded over 1.5 million times on Huggingface and Modelscope.We are on the lookout for top talents to join our vibrant team! If you're eager to develop your career in an environment filled with energy, innovation, and a culture of excellence, we welcome you to explore our career opportunities for both campus and experienced hires. Join us and be a part of creating the next milestone in the industry.
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Experienced Hires: https://talent.antgroup.com/off-campus-position?positionId=1933830
中文版
我们是平台技术事业群 AI Native 团队,负责蚂蚁蚂蚁集团平台工程的智能化,团队成立 3 年多以来,支持了蚂蚁集团云计算基础设施智能化运维的升级改造。团队的 Mission 是,通过世界级的技术创新和影响,构建有广泛用户的算法服务和平台,支撑内外部产品和业务落地。团队秉承创新基因,在支撑业务落地的同时,推动技术影响。3 年以来在 ICLR、NeurIPS、KDD、ACL 等顶会发表论文 20 余篇,创新业务结果获得两次蚂蚁技术最高奖 T-Star,1 次蚂蚁集团最高奖 SuperMA。开源项目 CodeFuse 获得 4K 点赞(2024 年 2 月),Huggingface 和 modelscope 上模型累积下载量超过 150 万次。我们正在寻找行业中的佼佼者加入我们的团队!如果您希望在一个充满活力、创新和卓越文化的环境中发展您的职业生涯,欢迎您查看我们的社招&校招机会,加入我们,一起创造下一个行业里程碑。
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