BODMAS_cleaned / README.md
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metadata
language:
  - en
pretty_name: BODMAS Cleaned
task_categories:
  - tabular-classification
tags:
  - cybersecurity
  - malware
  - static-analysis
  - pe-files
  - malware-detection
  - malware-family-classification
  - concept-drift
  - temporal-analysis
  - tabular
  - ai-ready
  - tabular-classification
size_categories:
  - 100K<n<1M

BODMAS Cleaned

BODMAS Cleaned is a cleaned and analysis-ready version of the original BODMAS (Blue Hexagon Open Dataset for Malware Analysis) dataset.

The original BODMAS dataset was introduced for machine-learning-based static malware analysis on Windows Portable Executable (PE) files, with support not only for binary malware detection but also for temporal analysis and malware family studies. This cleaned release preserves that analytical value while making the data easier to load, validate, and reuse.

Compared with the original source asset, this release removes duplicate samples, drops constant features, standardizes metadata, and preserves both timestamp and family information. Each sample is represented as a fixed-length numerical vector extracted statically from the original PE file, without executing the binary.

Original dataset

This dataset is a cleaned derivative of the original BODMAS dataset:

Please cite the original BODMAS paper when using this cleaned release in research.

Files

File Description
bodmas_clean.npz Index file with row/feature counts and file references
bodmas_clean_X.npy Feature matrix (float32), raw memmap, shape (134428, 2326)
bodmas_clean_y.npy Label vector (int32), 0 = benign, 1 = malware
bodmas_clean_metadata.parquet Per-sample metadata: SHA-256, timestamps, family fields, and quality flags
manifest.json Versioned manifest with checksums and artifact references
bodmas_cleaned_dataset.ipynb Exploration and usage notebook

What’s in the dataset?

This cleaned release contains a fully labeled static malware dataset derived from the original BODMAS collection.

Core contents

  • 134,428 labeled samples
  • 2,326 numerical features
  • feature dtype: float32
  • label dtype: int32
  • labels:
    • 0 = benign
    • 1 = malware

Label distribution

  • 77,138 benign samples
  • 57,290 malware samples

Metadata retained

The cleaned metadata preserves the fields that make BODMAS especially useful for temporal and family-aware analysis, including:

  • sha256
  • timestamp
  • family
  • record_id
  • sample_id
  • label_int
  • label_str
  • timestamp_raw
  • hash_type
  • bodmas_family
  • flag_sha256
  • flag_timestamp_missing
  • flag_family_missing
  • flag_is_benign
  • feature_hash

Family information

  • 580 unique malware families are present in the cleaned dataset
  • the family distribution is skewed:
    • top 5 families cover 35.5% of malware samples
    • top 20 families cover 69.4% of malware samples

Feature representation

Samples are not raw executables. Each file is represented as a fixed-length static feature vector extracted from the original PE file. These features describe structural and statistical properties of the binary, such as:

  • PE headers
  • sections
  • imports
  • entropy-related information
  • histogram-based characteristics

Cleaning summary

This release is the output of a quality-control and harmonization pipeline applied to the original BODMAS artifacts.

Main processing steps:

  1. Duplicate removal
  2. Constant-feature filtering, reducing the feature space from 2,381 to 2,326
  3. Metadata standardization
  4. Missing-value normalization and quality flagging
  5. Family/label consistency checks
  6. Manifest generation for reproducibility and integrity checks

Summary of the cleaned release:

  • original source size: 134,435 labeled samples
  • final cleaned size: 134,428 samples
  • final feature space: 2,326 features
  • no separate unlabeled split
  • timestamps and malware family metadata preserved

In the cleaned metadata, family-label consistency is also checked using the BODMAS convention that empty family values correspond to benign samples, while non-empty family values correspond to malware samples.

File structure

BODMAS_cleaned/
├── bodmas_clean.npz
├── bodmas_clean_X.npy
├── bodmas_clean_y.npy
├── bodmas_clean_metadata.parquet
└── manifest.json

The .npz index stores _rows and _features for reliable loading.
The feature matrix is a raw memmap-backed array and should be loaded with explicit dtype and shape.

Unlike EMBER Cleaned, there is no separate unlabeled split in BODMAS Cleaned.

Requirements

To run the quickstart examples, install the minimum required dependencies:

pip install numpy pandas pyarrow

For notebook-based exploration and basic visualization, you may also install:

pip install jupyter matplotlib seaborn scikit-learn

Quickstart

This example loads the labeled BODMAS Cleaned dataset and checks that features, labels, and metadata are consistent and ready for supervised use.

import numpy as np
import pandas as pd
 
idx = np.load("bodmas_clean.npz", allow_pickle=True)
n_rows = int(idx["_rows"])
n_features = int(idx["_features"])
 
X = np.fromfile("bodmas_clean_X.npy", dtype=np.float32)
assert X.size == n_rows * n_features, (
    f"Unexpected X size: got {X.size}, expected {n_rows * n_features}"
)
X = X.reshape(n_rows, n_features)
 
meta = pd.read_parquet("bodmas_clean_metadata.parquet")
y = meta["label_int"].to_numpy(dtype=np.int32, copy=False)
 
print(
    f"Dataset: {X.shape[0]} samples, {X.shape[1]} features | "
    f"labels: {len(y)} | metadata columns: {meta.shape[1]}"
)
 
assert X.shape[0] == len(y) == len(meta)
assert set(np.unique(y)) == {0, 1}
 
print("Unique labels:", np.unique(y))
print("Metadata columns:", meta.columns.tolist())
print("All checks passed.")

Notebook

The repository also includes an exploration notebook in .ipynb format, designed to provide additional context on the cleaned dataset, its structure, and its main analytical use cases.

The notebook can be used to:

  • inspect the labeled dataset
  • explore metadata fields, timestamps, and family distributions
  • validate dataset consistency
  • review temporal and family-aware analyses
  • explore example downstream use cases

To open it locally, run:

jupyter notebook bodmas_cleaned_dataset.ipynb

or, if you use JupyterLab:

jupyter lab bodmas_cleaned_dataset.ipynb

Make sure to open the notebook from the dataset root directory so that relative file paths resolve correctly.

Typical use cases

BODMAS Cleaned supports:

  • binary malware detection
  • malware family classification
  • temporal analysis
  • concept drift studies
  • time-aware validation
  • family distribution analysis
  • feature importance analysis

The accompanying notebook includes loading, exploratory data analysis, temporal and family analysis, and example use cases focused on discriminative signal and model evaluation.

Notes and limitations

  • This is a static-analysis dataset only.
  • The cleaned release contains derived features, not raw PE binaries.
  • Family names are dataset-specific and should not be treated as a universal malware ontology.
  • Temporal metadata should be respected during evaluation to avoid leakage.
  • Family distribution is concentrated, so downstream family-level evaluation should account for skew.
  • The dataset is intended for defensive research, benchmarking, and education.

License

This cleaned release is derived from BODMAS. The original BODMAS data files are associated with the BSD-2 License. Please verify that your downstream redistribution and reuse remain aligned with the original BODMAS terms.

References

If you use this dataset, please cite the original BODMAS paper:

@inproceedings{yang2021bodmas,
  title={BODMAS: An Open Dataset for Learning based Temporal Analysis of PE Malware},
  author={Yang, Limin and others},
  booktitle={Proceedings of the 2021 ACM Workshop on Data-Limited Security Research},
  year={2021}
}

APA:

Yang, L., et al. (2021). BODMAS: An Open Dataset for Learning based Temporal Analysis of PE Malware. In Proceedings of the 2021 ACM Workshop on Data-Limited Security Research.

Contacts

  • Shared by: ACN