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* Use the CI to identify failing tests * Remove from all examples and tests * More default switch * Fixes * More test fixes * More fixes * Last fixes hopefully * Use the CI to identify failing tests * Remove from all examples and tests * More default switch * Fixes * More test fixes * More fixes * Last fixes hopefully * Run on the real suite * Fix slow tests
62 lines
3.7 KiB
Markdown
62 lines
3.7 KiB
Markdown
---
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language: en
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datasets:
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- codexglue
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---
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# CodeBERT fine-tuned for Insecure Code Detection 💾⛔
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[codebert-base](https://huggingface.co/microsoft/codebert-base) fine-tuned on [CodeXGLUE -- Defect Detection](https://github.com/microsoft/CodeXGLUE/tree/main/Code-Code/Defect-detection) dataset for **Insecure Code Detection** downstream task.
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## Details of [CodeBERT](https://arxiv.org/abs/2002.08155)
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We present CodeBERT, a bimodal pre-trained model for programming language (PL) and nat-ural language (NL). CodeBERT learns general-purpose representations that support downstream NL-PL applications such as natural language codesearch, code documentation generation, etc. We develop CodeBERT with Transformer-based neural architecture, and train it with a hybrid objective function that incorporates the pre-training task of replaced token detection, which is to detect plausible alternatives sampled from generators. This enables us to utilize both bimodal data of NL-PL pairs and unimodal data, where the former provides input tokens for model training while the latter helps to learn better generators. We evaluate CodeBERT on two NL-PL applications by fine-tuning model parameters. Results show that CodeBERT achieves state-of-the-art performance on both natural language code search and code documentation generation tasks. Furthermore, to investigate what type of knowledge is learned in CodeBERT, we construct a dataset for NL-PL probing, and evaluate in a zero-shot setting where parameters of pre-trained models are fixed. Results show that CodeBERT performs better than previous pre-trained models on NL-PL probing.
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## Details of the downstream task (code classification) - Dataset 📚
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Given a source code, the task is to identify whether it is an insecure code that may attack software systems, such as resource leaks, use-after-free vulnerabilities and DoS attack. We treat the task as binary classification (0/1), where 1 stands for insecure code and 0 for secure code.
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The [dataset](https://github.com/microsoft/CodeXGLUE/tree/main/Code-Code/Defect-detection) used comes from the paper [*Devign*: Effective Vulnerability Identification by Learning Comprehensive Program Semantics via Graph Neural Networks](http://papers.nips.cc/paper/9209-devign-effective-vulnerability-identification-by-learning-comprehensive-program-semantics-via-graph-neural-networks.pdf). All projects are combined and splitted 80%/10%/10% for training/dev/test.
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Data statistics of the dataset are shown in the below table:
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| | #Examples |
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| ----- | :-------: |
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| Train | 21,854 |
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| Dev | 2,732 |
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| Test | 2,732 |
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## Test set metrics 🧾
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| Methods | ACC |
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| -------- | :-------: |
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| BiLSTM | 59.37 |
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| TextCNN | 60.69 |
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| [RoBERTa](https://arxiv.org/pdf/1907.11692.pdf) | 61.05 |
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| [CodeBERT](https://arxiv.org/pdf/2002.08155.pdf) | 62.08 |
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| [Ours](https://huggingface.co/mrm8488/codebert-base-finetuned-detect-insecure-code) | **65.30** |
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## Model in Action 🚀
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```python
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from transformers import AutoTokenizer, AutoModelForSequenceClassification
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import torch
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import numpy as np
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tokenizer = AutoTokenizer.from_pretrained('mrm8488/codebert-base-finetuned-detect-insecure-code')
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model = AutoModelForSequenceClassification.from_pretrained('mrm8488/codebert-base-finetuned-detect-insecure-code')
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inputs = tokenizer("your code here", return_tensors="pt", truncation=True, padding='max_length')
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labels = torch.tensor([1]).unsqueeze(0) # Batch size 1
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outputs = model(**inputs, labels=labels)
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loss = outputs.loss
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logits = outputs.logits
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print(np.argmax(logits.detach().numpy()))
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```
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> Created by [Manuel Romero/@mrm8488](https://twitter.com/mrm8488) | [LinkedIn](https://www.linkedin.com/in/manuel-romero-cs/)
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> Made with <span style="color: #e25555;">♥</span> in Spain
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