Instructions to use MatthewsO3/GraphCode-CErl-codesearch with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use MatthewsO3/GraphCode-CErl-codesearch with Transformers:
# Use a pipeline as a high-level helper from transformers import pipeline pipe = pipeline("feature-extraction", model="MatthewsO3/GraphCode-CErl-codesearch")# Load model directly from transformers import AutoTokenizer, AutoModel tokenizer = AutoTokenizer.from_pretrained("MatthewsO3/GraphCode-CErl-codesearch") model = AutoModel.from_pretrained("MatthewsO3/GraphCode-CErl-codesearch") - Notebooks
- Google Colab
- Kaggle
GraphCode-CErl — Semantic Code Search for Erlang & C++
Fine-tuned GraphCodeBERT for semantic code search over Erlang and C++ codebases. Given a natural language query, the model retrieves the most semantically relevant functions from an indexed repository.
Model Description
This is a bi-encoder trained with contrastive learning. It encodes both natural language queries and code snippets into a shared embedding space, enabling efficient cosine-similarity-based retrieval at search time.
- Base model:
microsoft/graphcodebert-base - Architecture: GraphCodeBERT encoder with mean pooling + L2 normalization (no LM head)
- Languages trained on: Erlang, C++
- Task: Semantic code search / function retrieval
Architecture detail
The model wraps the GraphCodeBERT encoder in a lightweight CodeSearchModel:
# Mean pooling over all token positions (not CLS)
def mean_pooling(last_hidden_state, attention_mask):
mask = attention_mask.unsqueeze(-1).expand(last_hidden_state.size()).float()
return torch.sum(last_hidden_state * mask, 1) / torch.clamp(mask.sum(1), min=1e-9)
Embeddings are L2-normalized, so retrieval is a plain dot product (equivalent to cosine similarity).
Training
Data
Training triplets were constructed from two sources:
| Language | Source | Records |
|---|---|---|
| C++ | codeparrot/xlcost-text-to-code (C++-program-level) |
8,650 |
| Erlang | Private dataset (not released) | — |
Each record is a (code, good_docstring, bad1_docstring, bad2_docstring) tuple. Negatives were mined as follows:
- 60% hard negatives — BM25-retrieved docstrings that are lexically similar to the positive but semantically wrong (top-20 BM25 candidates, sampled randomly)
- 30% cross-language negatives — docstrings sampled from the opposite language to discourage language-specific shortcuts
- 10% random negatives — uniform random docstrings as easy negatives
Loss
Temperature-scaled cross-entropy over augmented scores. For each batch the score matrix is extended with both negatives:
augmented_scores = [good_scores | bad1_scores | bad2_scores]
loss = CrossEntropyLoss(augmented_scores / τ, diagonal_labels)
where τ = 0.05.
Hyperparameters
| Parameter | Value |
|---|---|
| Base model | microsoft/graphcodebert-base |
| Batch size | 32 |
| Epochs | 10 |
| Learning rate | 2e-5 |
| LR schedule | Linear warmup (10%) → linear decay to 0 |
| Optimizer | AdamW |
| Gradient clipping | 1.0 |
| Code max length | 256 tokens |
| NL max length | 128 tokens |
| Temperature (τ) | 0.05 |
| Early stopping patience | 3 (not triggered) |
| Seed | 42 |
Training curve
| Epoch | Loss |
|---|---|
| 1 | 1.4135 |
| 2 | 0.4685 |
| 3 | 0.3438 |
| 4 | 0.2738 |
| 5 | 0.2308 |
| 6 | 0.1997 |
| 7 | 0.1671 |
| 8 | 0.1507 |
| 9 | 0.1425 |
| 10 | 0.1348 ← best |
Training ran for all 10 epochs without triggering early stopping (patience = 3). Best model saved at epoch 10.
Usage
This model is intended to be used with code_search.py, a unified indexing and search tool included in the repository.
Quick start
git clone https://github.com/MatthewsO3/GraphCode-CErl-base
cd "GraphCode-CErl-base/Code Search/Evaluation"
python setup.py # creates .venv, installs deps, builds erlang.so
source .venv/bin/activate
# Index a repository (auto-discovers Erlang + C++ + Python)
python code_search.py index \
--repo /path/to/your/repo \
--model MatthewsO3/GraphCode-CErl-codesearch \
--output corpus.jsonl \
--index corpus_index.pt
# Search interactively
python code_search.py search \
--model MatthewsO3/GraphCode-CErl-codesearch \
--jsonl corpus.jsonl \
--index corpus_index.pt \
--top 5
Language-specific flags are also available and can be combined freely:
# Erlang only
python code_search.py index --erlang /path/to/erl_repo ...
# C++ only
python code_search.py index --cpp /path/to/cpp_repo ...
# Explicit mix
python code_search.py index --erlang /path/erl --cpp /path/cpp --python /path/py ...
Using the model directly
from transformers import AutoTokenizer, AutoModel
import torch
tokenizer = AutoTokenizer.from_pretrained("microsoft/graphcodebert-base")
model = AutoModel.from_pretrained("MatthewsO3/GraphCode-CErl-codesearch")
model.eval()
def encode(texts):
enc = tokenizer(texts, return_tensors="pt", truncation=True,
padding=True, max_length=256)
with torch.no_grad():
out = model(**enc)
# Mean pooling
mask = enc["attention_mask"].unsqueeze(-1).float()
emb = (out.last_hidden_state * mask).sum(1) / mask.sum(1).clamp(min=1e-9)
return emb / emb.norm(dim=1, keepdim=True)
query = encode(["handle TCP connection timeout"])
code = encode(["handle_timeout(Socket, State) -> gen_tcp:close(Socket), {stop, timeout, State}."])
score = (query @ code.T).item()
print(f"Similarity: {score:.4f}")
Note: The tokenizer is loaded from
microsoft/graphcodebert-basesince it is identical to the fine-tuned model's tokenizer and avoids a redundant download.
Supported Languages
| Language | Extractor | Extensions |
|---|---|---|
| Erlang | tree-sitter (WhatsApp grammar) + custom ErlangParser + regex fallback |
.erl, .hrl |
| C++ | tree-sitter + regex fallback | .cpp, .cc, .cxx, .c, .h, .hpp |
| Python | tree-sitter + regex fallback | .py |
Note: Python indexing is supported by
code_search.pybut the model was not trained on Python data. Results for Python queries may be less accurate.
Limitations
- Not trained on Python — cross-language transfer to Python is best-effort
- The Erlang training set is private and not released
- Functions without docstrings or comments are embedded on code tokens alone, which may reduce retrieval accuracy for ambiguous natural language queries
- Running on CPU is fully supported but slow for large corpora at index-build time; a GPU is recommended
Repository
Training code, indexing tool, and setup scripts are available at: github.com/MatthewsO3/GraphCode-CErl-base
Citation
If you use this model, please cite the original GraphCodeBERT paper:
@inproceedings{guo2021graphcodebert,
title = {GraphCodeBERT: Pre-training Code Representations with Data Flow},
author = {Guo, Daya and Ren, Shuo and Lu, Shuai and Feng, Zhangyin and Tang, Duyu
and Liu, Shujie and Zhou, Long and Duan, Nan and Svyatkovskiy, Alexey
and Fu, Shengyu and others},
booktitle = {International Conference on Learning Representations},
year = {2021}
}
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Model tree for MatthewsO3/GraphCode-CErl-codesearch
Base model
microsoft/graphcodebert-base