[Remote] Data Scientist- RF/Acoustics Signal Processing
Note: The job is a remote job and is open to candidates in USA. Cutsforth is a company focused on innovative solutions in data science and signal processing. They are seeking a Data Scientist specializing in RF/Acoustics Signal Processing to analyze radio frequency and acoustic signals, transforming raw data into actionable insights and collaborating with engineering teams to deploy machine learning solutions.
Responsibilities
- Design and develop signal processing pipelines and machine learning models that operate on RF, acoustic, and time-series sensor data, including beamforming, BSS, spectral subtraction, matched filtering, wavelet decomposition, and time-frequency analysis techniques
- Evaluate algorithm performance using both objective metrics and subjective measures, including integration with speech recognition engines where applicable
- Perform exploratory data analysis, feature engineering, and signal feature extraction on raw demodulated RF and acoustic data to surface patterns and anomalies
- Analyze and interpret signals from various electrical asset monitoring systems utilizing RF, acoustic, and signal processing expertise to support fault isolation and anomaly detection
- Use asset monitoring sensor data as measurement to characterize and validate signal data
- Apply data-driven signal processing methods to characterize and isolate faults at the subsystem, component, and LRU level — identifying root causes from spectral, RF, and acoustic sensor data in complex industrial systems
- Contribute to end-to-end ML workflows including data ingestion, model training, inference, and monitoring for drift and degradation in live environments
- Collaborate with engineering, product, and domain SMEs to translate operational challenges into well-scoped data science solutions
- Communicate findings, model performance, and business value clearly through visualizations, written documentation, and presentations to technical and non-technical stakeholders
- Explore and evaluate emerging signal processing and AI techniques, recommending production incorporation where appropriate
Skills
- Bachelor's degree in Electrical Engineering, Computer Engineering, Physics, Applied Mathematics, Acoustical Engineering, Aerospace Engineering, or a closely related engineering discipline required
- 5+ years of professional experience in data science, machine learning, or applied signal processing, with demonstrated work on RF, acoustic, ultrasonic, or communications signal data
- Direct industry experience in one or more of: Aerospace, Telecommunications, Military/Defense communications, Industrial Acoustics, or RF/Electronic Systems
- Hands-on experience with time-series and signal processing techniques, including spectral analysis, filtering, and feature extraction from raw sensor or radio data
- Proficiency in Python, including scientific computing libraries (NumPy, SciPy, pandas) and ML frameworks (scikit-learn, PyTorch, or TensorFlow)
- Demonstrated use of RF measurement and analysis workflows, including use of spectrum analyzers, network analyzers, signal generators, and oscilloscopes in a professional engineering context
- Strong analytical and problem-solving skills with the capacity to work through ambiguous or data-sparse problem spaces
- Excellent written and verbal communication skills; ability to present technical findings to non-technical audiences
- Knowledge of Electromagnetic Compliance techniques
- Master's degree in Electrical Engineering, Computer Engineering, Physics, Applied Mathematics, Acoustical Engineering, Aerospace Engineering, Data Science, or a related field
- Experience with radar sensing, sonar, guided-wave radar, ultrasonic sensing, or capacitive sensing systems
- Experience working with wireless protocols (4G/LTE, 5G, or military-equivalent)
- Demonstrated ability to own an ML model from prototype through production, including monitoring and retraining
- Familiarity with beamforming, spatial filtering, or array signal processing in acoustic or RF environments
- Background in military communications systems, avionics radar, or cellular infrastructure signal analysis
- Familiarity with cloud platforms (AWS, Azure, GCP) and MLOps tooling (MLflow, Docker, Airflow, CI/CD pipelines)
- Experience with multimodal data fusion, edge ML deployment, or physics-informed modeling approaches
- Active participation in the broader signal processing or data science community through publications, open-source projects, or conference presentations
- Amateur (Ham) Radio license or comparable hands-on RF communications background
Benefits
- Paid Time Off
- Medical, Vision, Dental Insurance
- Health Savings Account with Employer contributions
- 401(k) with Employer match
- Short-term & Long-term Disability Coverage
- Accidental Death & Dismemberment Coverage
- Life Insurance Coverage
- Eight paid holidays per year
- All other benefits required by applicable law
Company Overview