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+ # Research Spec: GNN Architecture Search for Code Complexity Prediction
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+ #
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+ # Automated search across 5 GNN architectures and hyperparameters
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+ # for predicting Ruby method complexity from AST structure.
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+ #
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+ # Launch:
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+ # ratiocinator research specs/gnn_complexity.yaml
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+ #
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+ # The dataset (22K Ruby methods) is in the repo branch.
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+ # No external data staging needed.
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+
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+ # What to research
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+ topic: "Comparing GNN architectures (GCN, SAGE, GAT, GIN, GraphConv) for predicting Ruby code complexity from Abstract Syntax Trees. The baseline uses GraphSAGE with hidden_dim=64, 3 layers, achieving MAE 4.77 on 22K Ruby methods."
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+ goal_metric: val_mae
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+ maximize: false
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+
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+ # Target codebase
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+ repo_url: https://github.com/timlawrenz/jubilant-palm-tree.git
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+ repo_branch: experiment/ratiocinator-gnn-study
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+ runner_script: scripts/run_complexity_arm.sh
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+
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+ # Infrastructure — models are tiny (~50K params), training is fast
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+ hardware:
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+ gpu: "RTX 4090"
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+ num_gpus: 1
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+ min_cpu_ram_gb: 32
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+ min_inet_down: 1000.0
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+ min_cuda_version: 12.0
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+ max_dph: 0.40
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+ disk_gb: 50.0
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+ image: pytorch/pytorch:2.7.0-cuda12.8-cudnn9-runtime
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+
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+ data:
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+ source: none # Dataset is in the repo branch
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+
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+ deps:
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+ pre_install:
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+ - "apt-get update -qq && apt-get install -y -qq git-lfs > /dev/null 2>&1 || true"
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+ - "cd /workspace/experiment && git lfs install && git lfs pull"
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+ - "pip install torch-geometric torch-scatter torch-sparse -f https://data.pyg.org/whl/torch-2.7.0+cu128.html"
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+ - "pip install pandas tqdm sentence-transformers nltk scikit-learn numpy"
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+ requirements: requirements.txt
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+ exclude_from_requirements:
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+ - torch
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+ - torchvision
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+ - torch_geometric
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+ verify: "python -c \"import torch_geometric; print(f'PyG {torch_geometric.__version__}')\""
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+
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+ metrics:
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+ protocol: json_line
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+ json_prefix: "METRICS:"
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+
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+ # Budget — small models, fast training (~2-5 min per arm)
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+ max_iterations: 3
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+ max_dollars: 15.00
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+ train_timeout_s: 1200
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+ download_timeout_s: 600
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+
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+ # Output
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+ paper_title: "What Graph Neural Networks Can and Cannot Learn About Code: A Systematic Empirical Study on Ruby AST Analysis"