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GPT-OSS-20B MoE Expert Power Traces (320k, ChipWhisperer)
This dataset contains analog power traces captured with a ChipWhisperer Husky while running forced single-expert MoE computations derived from openai/gpt-oss-20b on an NVIDIA H100.
What is recorded
Each trace corresponds to one capture trial where:
- A fixed expert id is selected (
expert_00...expert_31). - A random hidden-state tensor is generated once per trial.
- The selected expert computation is executed repeatedly inside one capture window (
expert_iters=12). - ChipWhisperer records a ~10 ms analog trace from the power sensing setup.
Important: this is not a full unmodified model forward pass. It is a controlled harness for expert-identification side-channel experiments.
Dataset layout
capture_meta.json: capture configuration and metadatatraces/expert_XX/trial_YYYYYY.npy: raw captured trace for a class/trial
Class count: 32 experts (expert_00..expert_31)
Samples per class: 10,000
Total traces: 320,000
Trace format
- File type: NumPy
.npy - Array dtype: floating-point (captured analog samples)
- Typical duration: ~10 ms per trace
- Captures include repeated expert activity inside one window (12 repetitions)
Baseline training recipe used in experiments
A common preprocessing/training setup used with this dataset:
- Baseline normalization from early-trace samples
- Resample trace to fixed feature length (e.g., 16,384)
- Add first-difference channel (
dx) - Train 1D CNN for 32-way expert classification
Known caveats
- No pre-trigger idle segment in this capture run.
- Early samples may include launch/ramp transients depending on timing.
- Repetition within a trace means each sample is a composite of multiple expert invocations.
- GPU state drift (clock/thermal/cache) can introduce non-stationarity.
Intended use
- Side-channel feasibility studies for MoE expert identification
- Feature engineering and leakage-localization experiments
- Benchmarking robust time-series classifiers under drift/jitter
Ethical and security note
This dataset is released for defensive research and measurement methodology work. Do not use it to target systems without authorization.
Included collection script
scripts/train_expert_classifier_multiclass.py: script used to run capture/training workflows; this dataset was captured with its multiclass expert-trace capture path and corresponding arguments.
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