Senior Rf Data Scientist / Research Engineer

Adria Solutions
Cambridge
2 days ago
Create job alert

Job Description

Senior RF Data Scientist / Research Engineer – Near Cambridge

My client, a fast-growing AI company based near Cambridge, is seeking a Senior RF Data Scientist / Research Engineer to work at the intersection of RF hardware, digital signal processing, and machine learning. This hands-on R&D role involves analysing complex RF datasets, developing advanced signal-processing pipelines, and contributing to cutting-edge UAV/drone detection technologies.

You will play a key role in prototyping new sensing capabilities, working with SDRs, designing real-world RF experiments, and integrating machine-learning models into early-stage hardware–software systems. This position is ideal for someone who thrives in fast-paced, iterative prototyping environments.

Key Responsibilities

  • Analysing raw IQ data from SDR platforms (e.G., bladeRF, USRP) to extract, classify, and interpret RF signal features
  • Building diagnostic RF analysis tools (time–frequency plots, cyclic spectra, EVM, autocorrelation, constellation tracking, etc.)
  • Designing RF data-processing pipelines built around practical hardware constraints (bandwidth, ADC limits, gain stages, timing jitter)
  • Modelling RF front-end behaviour (filters, mixers, LOs, AGC, noise figure) to improve signal integrity and inference accuracy
  • Developing ML and statistical models for RF classification, anomaly detection, and emitter identification
  • Prototyping real-time or batch-processing systems in Python (NumPy, SciPy, PyTorch) with potential integration via ZMQ, GNU Radio, or C++ backends
  • Leading RF data collection, field experiments, and over-the-air testing using drones, wireless devices, and custom transmitters

Requirements

  • Strong Python proficiency for RF data analysis and prototyping (NumPy, SciPy, matplotlib, scikit-learn, PyTorch)
  • Solid understanding of DSP fundamentals (FFT, filtering, modulation, correlation, noise modelling, resampling)
  • Familiarity with SDR frameworks such as GNU Radio, SDRangel, osmoSDR, or SoapySDR
  • Practical understanding of RF hardware chains (antenna filters mixers ADC) and their impact on baseband data
  • Experience analysing wireless protocols (Wi-Fi, LTE, LoRa, etc.) and physical-layer structures
  • Comfortable debugging SDR setups and performing field-based RF data collection
  • Strong communication skills and ability to work effectively within an iterative R&D team

Desirable

  • Hands-on experience with SDRs (bladeRF, HackRF, USRP, PlutoSDR) and RF lab equipment (spectrum analysers, VNAs, signal generators)
  • Experience in passive radar, beamforming, TDoA, Doppler, or direction finding
  • Familiarity with embedded or real-time systems (FPGA pipelines, GPU acceleration, etc.)
  • Programming experience in MATLAB, C++, Rust, or similar languages
  • Knowledge of RF circuit principles (impedance matching, filter design, gain budgeting)
  • Experience designing or testing antenna arrays for sensing/detection
  • Publications, patents, or open-source RF/ML contributions

Role Details

  • Location: Cambridge area (onsite or hybrid depending on project needs)
  • Department: Research & Prototyping Team
  • Impact: Direct involvement in early-stage hardware–software product development

Interested? Please Click Apply Now! Senior RF Data Scientist / Research Engineer – Near Cambridge

Related Jobs

View all jobs

Senior RF Data Scientist / Research Engineer

Senior RF Data Scientist - Applied AI & DSP (Onsite)

Senior RF AI/ML Data Scientist — DSP & SDR Onsite

Senior Data Scientist Research Engineer

Senior Data Scientist Research Engineer

Senior Research Scientist: Data Science and Machine Learning AIP

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

New Machine Learning Employers to Watch in 2026: UK and Global Companies Driving ML Innovation

Machine learning (ML) has transitioned from a specialised field into a core business capability. In 2026, organisations across healthcare, finance, robotics, autonomous systems, natural language processing, and analytics are expanding their machine learning teams to build scalable intelligent products and services. For professionals exploring opportunities on www.MachineLearningJobs.co.uk , understanding the companies that are scaling, winning investment, or securing high‑impact contracts is crucial. This article highlights the new and high‑growth machine learning employers to watch in 2026, focusing on UK innovators, international firms with significant UK presence, and global platforms investing in machine learning talent locally.

How Many Machine Learning Tools Do You Need to Know to Get a Machine Learning Job?

Machine learning is one of the most exciting and rapidly growing areas of tech. But for job seekers it can also feel like a maze of tools, frameworks and platforms. One job advert wants TensorFlow and Keras. Another mentions PyTorch, scikit-learn and Spark. A third lists Mlflow, Docker, Kubernetes and more. With so many names out there, it’s easy to fall into the trap of thinking you must learn everything just to be competitive. Here’s the honest truth most machine learning hiring managers won’t say out loud: 👉 They don’t hire you because you know every tool. They hire you because you can solve real problems with the tools you know. Tools are important — no doubt — but context, judgement and outcomes matter far more. So how many machine learning tools do you actually need to know to get a job? For most job seekers, the real number is far smaller than you think — and more logically grouped. This guide breaks down exactly what employers expect, which tools are core, which are role-specific, and how to structure your learning for real career results.

What Hiring Managers Look for First in Machine Learning Job Applications (UK Guide)

Whether you’re applying for machine learning engineer, applied scientist, research scientist, ML Ops or data scientist roles, hiring managers scan applications quickly — often making decisions before they’ve read beyond the top third of your CV. In the competitive UK market, it’s not enough to list skills. You must send clear signals of relevance, delivery, impact, reasoning and readiness for production — and do it within the first few lines of your CV or portfolio. This guide walks you through exactly what hiring managers look for first in machine learning applications, how they evaluate CVs and portfolios, and what you can do to improve your chances of getting shortlisted at every stage — from your CV and LinkedIn profile to your cover letter and project portfolio.