At a Glance
- Tasks: Own and improve RF geolocation algorithms using real-world data and cutting-edge technology.
- Company: Join a dynamic team at a leading aerospace company focused on innovative RF solutions.
- Benefits: Enjoy generous time off, education assistance, fitness reimbursement, and stock purchase options.
- Other info: Collaborate remotely with experts and enjoy a hybrid work model.
- Why this job: Make a real impact in space-based RF technology while working with a passionate team.
- Qualifications: Advanced degree in engineering or related field; strong Python skills and algorithm development experience.
The predicted salary is between 70000 - 90000 € per year.
You will own the mathematical and physical foundations of one of the few operational commercial space‑based RF geolocation systems in active customer use today. The core problem: estimating the position of RF emitters using time difference of arrival (TDOA), frequency difference of arrival (FDOA), and angle of arrival (AoA) measurements collected by a constellation of low Earth orbit (LEO) satellites. You will formulate estimation problems, develop and validate algorithms, characterize error sources, and drive performance improvements across all three measurement domains.
You will inherit a working production geolocation system. This is not a greenfield research project. The algorithms exist, they run, and they produce results for real customers. Your job is to understand the existing system deeply, identify where performance is limited, and systematically improve it. Over time you will also extend the system with new measurement types and capabilities as mission requirements evolve. This is a hands‑on, iterative role operating on real‑world data with all its imperfections. Calibration is incomplete. Truth data is sparse. Operational constraints require pragmatic engineering tradeoffs. You will spend significant time examining real geolocation outputs, diagnosing performance issues, refining algorithms based on what the data shows, and shipping incremental improvements.
The work cycle is not “design an algorithm and hand it off.” It is: analyze outputs, identify the limiting error source, develop or refine an algorithmic solution, validate it against data, and repeat. You will work alongside software engineers who handle production implementation and infrastructure; your role is to ensure the algorithms are correct, well‑understood, and continuously improving. You will write code daily. Python is the primary tool for prototyping, simulation, data analysis, and algorithm validation. This is not a pure research position; the expectation is that you are building, testing, and iterating on working code, not producing papers.
Key Responsibilities
- Own and continuously improve TDOA, FDOA, and AoA geolocation algorithms from mathematical first principles through to working prototype implementations.
- Develop deep understanding of the existing production geolocation codebase.
- Identify design assumptions, performance bottlenecks, and areas where the underlying math can be strengthened.
- Reason across the full sensing chain: from collection geometry and onboard constraints through estimation algorithms to operational product performance.
- Own the end‑to‑end understanding of how system‑level decisions affect geolocation accuracy.
- Develop and improve calibration approaches for timing, frequency, antenna, and geometry alignment across a multi‑use distributed satellite constellation.
- Analyze geolocation outputs against ground truth and known emitter positions to identify systematic errors, performance regressions, and improvement opportunities.
- Model and characterize error sources: satellite ephemeris uncertainty, clock drift, ionospheric/tropospheric propagation effects, multipath, antenna calibration, and receiver noise.
- Incorporate orbital mechanics into signal models, accounting for satellite motion, Doppler dynamics, and constellation geometry.
- Conduct performance analysis: derive theoretical bounds, run Monte Carlo simulations, and validate against real satellite data.
- Translate validated algorithm improvements into specifications that software engineers implement in production systems.
- Review those implementations for correctness.
- Add new capabilities as mission requirements evolve: new measurement types, new constellation geometries, new operating conditions.
- Investigate and resolve anomalies in geolocation outputs by tracing errors back through the signal processing and estimation chain.
- Document algorithms, assumptions, and performance characteristics with sufficient rigor for defense customer technical review.
Required Qualifications
- Advanced degree (MSc or PhD) in electrical engineering, physics, applied mathematics, aerospace engineering, or a closely related field, with thesis or research work in estimation theory, statistical signal processing, or a related discipline.
- Strong mathematical foundation in estimation and detection theory, linear algebra, probability, and optimization.
- Demonstrated ability to go from problem formulation to working code.
- Python proficiency required; you will prototype algorithms, run simulations, and analyze data in Python daily.
- Comfort working with imperfect real‑world datasets where calibration is incomplete, truth data is sparse, and operational constraints demand pragmatic tradeoffs.
- Comfort with iterative, data‑driven development: you examine outputs, form hypotheses about what is limiting performance, implement fixes, and measure the result.
- Ability to read and understand an existing algorithmic codebase built by someone else, and to work within and improve that system rather than rewrite it.
- Understanding of, or demonstrated ability to rapidly learn, RF propagation physics and the signal models underlying TDOA, FDOA, and AoA estimation.
- Familiarity with orbital mechanics concepts sufficient to incorporate satellite position and velocity into geolocation models.
- Ability to read, understand, and critically evaluate published research in signal processing and geolocation.
Additional Qualifications
- Direct experience with TDOA, FDOA, AoA, or hybrid geolocation techniques.
- Background in SIGINT, electronic warfare, passive radar, or GNSS signal processing.
- Experience with SAR, InSAR, or other radar remote sensing (the estimation theory and signal processing fundamentals transfer directly).
- Experience developing or improving calibration routines for distributed RF systems.
- C++ reading proficiency sufficient to review and validate production implementations of your algorithms.
- Prior work in a defense, intelligence, or aerospace context.
- Experience with spaceborne RF systems, phased array antennas, or LEO satellite constellations.
About the Team
You will join a small, focused RF geolocation team that includes experienced software engineers handling full‑stack and embedded implementation. Your role is the algorithmic and scientific core. You will work directly with the team lead who brings domain expertise in RF geolocation and defense customer requirements. The team operates remotely across multiple time zones. Spire operates a hybrid work model, and this position will require you to work a minimum of three days per week in the office. Access to US export‑controlled software and/or technology may be required for this role. If needed, Spire will arrange the necessary licenses—this is not something candidates need to have before applying.
Global Perks
- Name Your Satellite Program (NYSP)
- Launch Attendance
- Generous Time Off Policy
- Education Assistance Program
- Employee Assistance Program (EAP)
- Employee Stock Purchase Program (ESPP)
- Family Leave
- Fitness Reimbursement
- Employee Referral Program
- Healthy snacks
Principal RF Engineer employer: GoTo Meeting
At Spire, we pride ourselves on being an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration among our talented team of RF engineers. With a strong focus on employee growth, we provide opportunities for continuous learning and development, alongside generous benefits such as a flexible hybrid work model, education assistance, and a supportive environment that values work-life balance. Join us in our mission to enhance geolocation technology while enjoying the unique advantages of working in a cutting-edge space-based RF environment.
StudySmarter Expert Advice🤫
We think this is how you could land Principal RF Engineer
✨Tip Number 1
Get to know the company inside out! Research their projects, values, and culture. This will help you tailor your conversations and show that you're genuinely interested in being part of the team.
✨Tip Number 2
Network like a pro! Reach out to current employees on LinkedIn or attend industry events. Building connections can give you insider info and might even lead to a referral, which is always a bonus!
✨Tip Number 3
Prepare for technical interviews by brushing up on your Python skills and understanding RF geolocation concepts. Practice coding challenges and be ready to discuss your past projects in detail.
✨Tip Number 4
Don’t forget to follow up after interviews! A quick thank-you email can leave a lasting impression and shows your enthusiasm for the role. Plus, it keeps you on their radar as they make decisions.
We think you need these skills to ace Principal RF Engineer
Some tips for your application 🫡
Get to Know the Job:Before you start writing, take a good look at the job description. Understand what we're looking for in a Principal RF Engineer and tailor your application to highlight how your skills and experiences match our needs.
Show Off Your Skills:Make sure to showcase your technical skills, especially in Python and estimation theory. We want to see how you've applied these in real-world scenarios, so don’t hold back on the details!
Be Clear and Concise:When writing your application, keep it clear and to the point. Use straightforward language and avoid jargon unless it's relevant. We appreciate a well-structured application that’s easy to read.
Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way to ensure your application gets into the right hands. Plus, it shows us you're serious about joining our team!
How to prepare for a job interview at GoTo Meeting
✨Know Your Algorithms Inside Out
Before the interview, make sure you have a solid grasp of the TDOA, FDOA, and AoA algorithms. Be prepared to discuss how they work, their limitations, and potential improvements. This will show your deep understanding of the existing system and your ability to contribute meaningfully.
✨Demonstrate Your Python Skills
Since Python is the primary tool for this role, brush up on your coding skills. Be ready to solve problems or even write snippets of code during the interview. Show that you can go from problem formulation to working code efficiently.
✨Prepare for Real-World Data Challenges
Expect questions about handling imperfect datasets and operational constraints. Share examples from your past experiences where you successfully navigated similar challenges. This will highlight your comfort with iterative, data-driven development.
✨Understand the Bigger Picture
Be ready to discuss how system-level decisions affect geolocation accuracy. Familiarise yourself with orbital mechanics concepts and RF propagation physics, as these are crucial for the role. Showing that you can reason across the full sensing chain will set you apart.