compressionkit-ecg-16x

A ECG signal compression codec using Residual Vector Quantization (RVQ), optimized for edge and wearable devices.

Model Details

  • Modality: ECG
  • Sample Rate: 256 Hz
  • Compression Ratio: 16x
  • Quantization: INT8
  • RVQ Levels: 4
  • Codebook Size: 256 entries ร— 16D
  • Encoder Input: [None, 1, 512, 1]
  • Encoder Output: [None, 1, 32, 16]

Quality Metrics

Time Domain

Metric Mean Median P90
PRD (%) 10.6838 9.1709 17.6363
RMSE 0.1025 0.0886 0.1680
Cosine Similarity 0.9926 0.9958 0.9984

Spectral

  • Band Total Relative Error (median): 0.1244

Bitrate

  • Codec CR (uniform): 16.0x
  • Codec CR (learned prior): 26.88x

Usage

Python (compressionkit runtime)

from compressionkit.runtime import RVQCodec

codec = RVQCodec.from_pretrained("Ambiq/compressionkit-ecg-16x")

# Encode: float32 signal โ†’ RVQ indices
indices = codec.encode(signal)

# Decode: RVQ indices โ†’ reconstructed signal
recon = codec.decode(indices)

Local deployment directory

codec = RVQCodec("path/to/deploy/")

Files

File Description
encoder_int8.tflite INT8 quantized encoder (on-device)
encoder.h C header for encoder
decoder_float32.tflite Float32 decoder (server-side evaluation)
decoder_int8.tflite INT8 decoder (optional, on-device)
codebook.npz RVQ codebook tables
codebook.h C header for codebook
config.json Deployment manifest
sample_stimulus.npz Synthetic test data
quality_scorecard.json Full evaluation metrics

Dataset & License

Training data: PTB-XL (CC BY 4.0). Sample data may include excerpts under the original license terms.

Model weights are released under the Ambiq Model Weights License โ€” deployment is restricted to Ambiq silicon devices. See LICENSE-MODEL-WEIGHTS.md for full terms.

Citation

@software{compressionkit,
  author = {Ambiq AI},
  title = {compressionKIT: Signal Compression for Edge AI},
  url = {https://github.com/AmbiqAI/compressionkit}
}
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