Posted on: 22/12/2025
Description :
- Design and implement pre-processing pipelines for signal and time series data.
- Build algorithms/models for heart rate, respiration rate, movement detection, and sleep stage estimation.
- Develop robust algorithms for real-world noisy environments and validate them against reference datasets.
- Conduct feature engineering for sleep-related ML models (time/frequency/wavelet features).
- Collaborate with firmware and cloud teams to integrate algorithms into on-device and cloud pipelines.
- Contribute to internal signal quality, scoring, and annotation tools.
You Have :
- 4 - 5 years of experience in signal processing/data science/biomedical sensing.
- Solid foundation in digital signal processing (filters, FFT, IIR/FIR, wavelets).
- Experience with image models(CNN) and sequence/time series models.
- Proficiency in Python (NumPy, SciPy, mne, neurokit2, pandas, matplotlib, sckit-learn).
- Experience with sleep staging, physiological data analysis, or similar time-series modeling.
- Comfort with real-world data: noise, motion artifacts, gaps, resampling, and validation.
- (Bonus) Experience with embedded signal processing, PyTorch/TF for physiological ML, or on-device inference.
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Posted in
Data Analytics & BI
Functional Area
Data Analysis / Business Analysis
Job Code
1593871
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