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SAGE Data - Unified data loaders for memory benchmark datasets (LongMemEval, Locomo, MemAgentBench, etc.)

Project description

SAGE Data ��

Dataset management module for SAGE benchmark suite

Provides unified access to multiple datasets through a two-layer architecture:

  • Sources: Physical datasets (qa_base, bbh, mmlu, gpqa, locomo, orca_dpo)
  • Usages: Logical views for experiments (rag, libamm, neuromem, agent_eval)

Quick Start

./quickstart.sh
source .venv/bin/activate

Or manual steps:

from sage.data import DataManager

manager = DataManager.get_instance()

# Access datasets by logical usage profile
rag = manager.get_by_usage("rag")
qa_loader = rag.load("qa_base")  # already instantiated
queries = qa_loader.load_queries()

# Or fetch a specific data source directly
bbh_loader = manager.get_by_source("bbh")
tasks = bbh_loader.get_task_names()

Available Datasets

Dataset Description Download Required Storage
qa_base Question-Answering with knowledge base ❌ No (included) Local files
locomo Long-context memory benchmark ✅ Yes (python -m locomo.download) Local files (2.68MB)
bbh BIG-Bench Hard reasoning tasks ❌ No (included) Local JSON files
mmlu Massive Multitask Language Understanding 📥 Optional (python -m mmlu.download --all-subjects) On-demand or Local (~160MB)
gpqa Graduate-Level Question Answering ✅ Auto (Hugging Face) On-demand (~5MB cached)
orca_dpo Preference pairs for alignment/DPO ✅ Auto (Hugging Face) On-demand (varies)

See examples/ for detailed usage examples.

📖 Examples

python examples/qa_examples.py            # QA dataset usage
python examples/locomo_examples.py        # LoCoMo dataset usage
python examples/bbh_examples.py           # BBH dataset usage
python examples/mmlu_examples.py          # MMLU dataset usage
python examples/gpqa_examples.py          # GPQA dataset usage
python examples/orca_dpo_examples.py      # Orca DPO dataset usage
python examples/integration_example.py    # Cross-dataset integration

License

MIT License - see LICENSE file.

🔗 Links

❓ Common Issues

Q: Where's the LoCoMo data?
A: Run python -m locomo.download to download it (2.68MB from Hugging Face).

Q: How to download MMLU for offline use?
A: Run python -m mmlu.download --all-subjects to download all subjects (~160MB).

Q: GPQA access error?
A: You need to accept the dataset terms on Hugging Face: https://huggingface.co/datasets/Idavidrein/gpqa

Q: How to use Orca DPO for alignment research?
A: Use DataManager.get_by_source("orca_dpo") to get the loader, then use format_for_dpo() to prepare data for training.


Version: 0.1.0 | Last Updated: December 2025

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