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--- |
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pretty_name: MELD-DS-448 |
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license: cc-by-nc-sa-4.0 |
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language: |
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- en |
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tags: |
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- malware |
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- cybersecurity |
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- CAPE |
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- Windows |
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size_categories: |
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- 10K<n<100K |
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task_categories: |
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- other |
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--- |
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# Appendix: MELD-DS-448 Dataset Overview |
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## Dataset Overview |
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MELD-DS-448 contains **26,166 malicious samples** spanning **448 distinct malware families** collected from April 2020 to August 2025. All samples are uniquely identified by SHA-256 hashes and include precise "First Seen" timestamps. |
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**Family Distribution Characteristics**: The dataset exhibits a typical long-tail distribution, with 35.7% singleton families (only 1 sample) and 64.7% small-scale families (≤5 samples). Head concentration is significant, with the top 5 families covering 30.1% of samples and the top 10 families covering 41.5% of samples. Major families include LummaStealer (2,966 samples, 11.3%), Formbook (2,091 samples, 8.0%), SnakeKeylogger (1,045 samples, 4.0%), and others. |
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**Temporal Evolution Patterns**: Samples are primarily concentrated in 2024-2025 (96.8%), with the majority appearing in 2025 (77.1% of samples). The temporal distribution shows rapid growth in recent years, with 2024 contributing 19.7% and earlier years contributing minimal samples. This demonstrates the rapid evolution characteristics of contemporary malware ecosystems. |
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### Dataset Statistical Overview |
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| Metric | Value | Description | |
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|--------|-------|-------------| |
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| **Total Families** | 448 | Total number of distinct malware families | |
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| **Total Samples** | 26,166 | Total number of malicious samples | |
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| **Avg Samples/Family** | 58.4 | Average samples per family | |
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| **Sample Count Median** | 3 | Median of family sample counts | |
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| **Singleton Families** | 160 (35.7%) | Families with only 1 sample | |
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| **Small Families** | 290 (64.7%) | Families with ≤5 samples | |
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| **Large Families** | 36 (8.0%) | Families with ≥100 samples | |
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| **Top 5 Coverage** | 30.1% | Sample coverage by top 5 families | |
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| **Top 10 Coverage** | 41.5% | Sample coverage by top 10 families | |
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### Annual Evolution Statistics |
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| Year | Active Families | Samples | Percentage | |
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|------|----------------|---------|------------| |
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| 2020 | - | 6 | 0.0% | |
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| 2021 | - | 258 | 1.0% | |
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| 2022 | - | 343 | 1.3% | |
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| 2023 | - | 227 | 0.9% | |
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| 2024 | - | 5,146 | 19.7% | |
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| 2025 | - | 20,186 | 77.1% | |
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## Standardized Analysis Artifacts |
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Each sample in MELD-DS-448 provides four types of standardized analysis data generated through unified CAPE Sandbox analysis in virtualized Windows 10 x64 (22H2) environments: |
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**1. CAPE JSON Reports** - Complete structured analysis results containing behavioral indicators, network activities, file system operations, registry modifications, and process execution traces, as the original analysis reports from CAPEv2. |
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**2. Markdown Structured Reports** - Converting CAPE JSON reports into LLM-friendly structured Markdown format containing complete behavioral events, API call patterns, process tree information, and temporal analysis. These reports are specifically designed for large language model processing and understanding. |
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**3. API Call Sequences** - Chronologically ordered sequences of Windows API function calls captured during dynamic execution, including parameters and return values, converted from CAPEv2's JSON reports. These sequences enable fine-grained behavioral modeling and sequence-based machine learning approaches. |
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**4. ASM Disassembly Files** - Static disassembly output providing low-level instruction sequences and control flow information. These artifacts support static analysis techniques and hybrid approaches combining static and dynamic features. |
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**Note on ASM File Coverage**: Out of 26,166 total samples, 361 samples (1.38%) do not have corresponding ASM disassembly files due to disassembly process failures during reverse engineering analysis. These missing files are documented in `asm_loss.csv` for reference. The remaining 25,805 samples (98.62%) have complete ASM disassembly data available. |
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## Data Quality and Coverage |
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All 26,166 samples (100% coverage) include complete metadata and three primary analysis artifact types (CAPE JSON reports, Markdown reports, and API call sequences). ASM disassembly files are available for 25,805 samples (98.62%), with 361 samples missing ASM files due to disassembly process failures. The dataset ensures sample uniqueness through SHA-256 deduplication and maintains temporal consistency with verified timestamps. File sizes range from 87.3 KB to 301.3 MB (median: 3.6 MB), with the complete dataset totaling 479 GB of analysis artifacts and metadata. |
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## Dataset File Structure |
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The dataset files are organized in the `Dataset/` directory with large files split into volumes for easier download and Git LFS compatibility: |
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### File Restoration Instructions |
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Due to file size limitations, large dataset files have been split into 4GB volumes. To restore the original files, use the following commands: |
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**1. ASM Disassembly Files (27GB total)** |
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```bash |
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7z x asm.7z.001 |
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``` |
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**2. API Call Sequences (8.9GB total)** |
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```bash |
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7z x api_sequence.7z.001 |
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``` |
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**3. CAPE JSON Reports (8.5GB total)** |
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```bash |
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7z x cape_reports.7z.001 |
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``` |
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**4. Markdown Reports (67MB - no splitting needed)** |
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- File: `cape_reports_malicious_md.7z` |
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- Can be extracted directly: `7z x cape_reports_malicious_md.7z` |
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### Requirements |
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- **7-Zip**: Required for extracting split archives |
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- **Disk Space**: Ensure at least 500GB free space for extraction |
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- **Memory**: Recommended 8GB+ RAM for processing large files |
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## License |
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This project is licensed under the [CC BY-NC-SA 4.0](https://creativecommons.org/licenses/by-nc-sa/4.0/) (Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International) license. |