Staff RF Geolocation Engineer

CHAOS Industries

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profile Job Location:

Columbia, IN - USA

profile Monthly Salary: $ 180000 - 230000
Posted on: 4 days ago
Vacancies: 1 Vacancy

Job Summary

CHAOS Industries is redefining modern defense with a multi-product portfolio that gives the ultimate advantagedomain dominance. The companys products are powered by Coherent Distributed Networks (CDN) empowering warfighters commercial air operators and border protection teams to act faster adapt rapidly and stay ahead of evolving threats.

CHAOS Industries was founded in 2022 and has raised a total of $1 billion in funding from leading investors including 8VC Accel and Valor Equity Partners. The company is headquartered in Los Angeles with offices in Washington D.C. San Francisco San Diego Seattle and London. For more information please visit .

Role Overview:

We are seeking a proactive and detail-oriented Staff RF Geolocation Engineer to lead the development of advanced passive RF geolocation capabilities for our electromagnetic warfare product line. This role is focused on deriving implementing and validating high-performance localization solutions that enable CHAOSs distributed systems to detect characterize and geolocate non-cooperative RF emitters in complex environments. The engineer will contribute across the full algorithm lifecycle from first-principles formulation and high-fidelity modeling through software integration calibration field demonstration and validation and will collaborate closely with Business Development Production and cross-functional Engineering teams.

Responsibilities:

As a key contributor to the Spectrum Sensing Team the Staff RF Geolocation Engineer will help redefine our spectrum sensing capabilities around high-confidence passive geolocation. The day-to-day will be diverse hands-on and highly technical with direct impact on next-generation distributed sensing products. The engineer will:

  • Design and derive advanced passive RF geolocation algorithms from first principles with emphasis on TDOA FDOA and hybrid geolocation architectures across distributed sensor networks
  • Develop coherent and non-coherent passive geolocation and imaging approaches including phase-aligned multi-node processing for interferometric performance and robust envelope-based localization methods
  • Apply statistical signal detection frameworks including Neyman-Pearson Bayesian and CFAR methodologies to maximize probability of detection across varying noise interference and target conditions
  • Apply estimation and detection theory including maximum likelihood estimation error bound analysis and linear algebraic methods to formulate robust and analytically defensible localization solutions
  • Model simulate and mitigate real-world nonidealities such as oscillator phase noise timing jitter calibration error uncertain sensor geometry and low-SNR operating conditions
  • Develop implement and refine software for passive geolocation emitter localization and RF scene analysis using Python MATLAB C or related languages
  • Translate mathematically intensive algorithms into efficient real-time implementations on DSP GPU or other accelerated compute architectures as system needs require
  • Build high-fidelity simulation environments to evaluate geolocation accuracy sensitivity error budgets and system tradeoffs before deployment
  • Partner with hardware and systems engineers to define RF front-end and timing requirements by quantifying their effect on end-to-end geolocation performance
  • Support algorithm integration system calibration test planning and field validation in representative operational environments
  • Clearly document algorithm assumptions derivations performance limits and test results for internal stakeholders and external customers
  • This role will require periodic travel up to 30%.

Minimum Requirements:

  • B.S. degree in Electrical Engineering Applied Mathematics Physics or a related technical field
  • 5 years of relevant experience developing RF signal processing estimation or geolocation algorithms
  • Strong foundation in statistical and time-domain signal processing detection and estimation theory backpropagation and applied linear algebra
  • Demonstrated experience developing passive RF geolocation algorithms such as TDOA FDOA multilateration direction finding interferometry or hybrid localization methods
  • Experience applying rigorous detection frameworks such as Neyman-Pearson Bayesian inference CFAR or related methods to noisy and contested RF environments
  • Proficiency in Python MATLAB C or similar languages for modeling simulation and implementation of signal processing algorithms
  • Experience evaluating algorithm performance under real-world impairments including low SNR synchronization error sensor geometry uncertainty or interference
  • Ability to translate theoretical models into practical software suitable for integration with RF/SDR hardware and production code bases
  • Strong verbal and written communication skills with the ability to clearly document technical approaches assumptions and performance results
  • Must be able to work on-site 3-5 days per week in Hawthorne CA or Washington D.C.
  • U.S. citizen
  • Ability to obtain and maintain a U.S. security clearance

Preferred Requirements:

  • M.S. or Ph.D. degree in Electrical Engineering Applied Mathematics Physics or a related technical field
  • Current U.S. security clearance
  • Deep expertise in passive RF geolocation interferometric processing distributed coherent sensing or passive imaging architectures
  • Demonstrated community-accepted (peer-reviewed) contributions to geolocation techniques
  • Experience deriving estimators and analytical bounds such as maximum likelihood estimators Cramer-Rao lower bounds and geolocation error budgets
  • Experience optimizing signal processing algorithms for real-time execution on GPU FPGA DSP or heterogeneous compute platforms
  • Experience taking algorithms from concept through simulation integration calibration and field-test validation
  • Ability to define system-level requirements for RF front ends clocks synchronization and calibration based on algorithm sensitivity and accuracy analysis
  • Expertise with software defined radios and associated RF signal processing toolchains
  • Experience in military or other government environments performing related technical work in a fast-paced mission-driven setting
  • Experience with agile development tools such as JIRA and Confluence

Why CHAOS

  • Health Benefits: Medical dental and vision benefits 100% paid for by the company
  • Additional benefits: 401k ( 50% company match up to 6% of pay) FSA HSA life insurance and more
  • Our Perks: Free daily lunch No meeting Fridays unlimited PTO casual dress code
  • Compensation Components: Competitive base salaries generous pre-IPO stock option grants relocation assistance and (coming soon!) annual bonuses
  • Team Growth: 250 employees and counting across 5 global offices
Salary Range: $180000 - $230000

The stated compensation range reflects only the targeted base compensation range and excludes additional earnings such as bonus equity and benefits. If your compensation requirements fall outside of the range we still encourage you to apply. The salary range for this role is an estimate based on a range of compensation factors inclusive of base salary only. Actual salary offer may vary based on (but not limited to) work experience education and/or training critical skills and/or business considerations.

Recruiting Agencies: CHAOS Industries does not accept unsolicited resumes or outreach. Unsolicited submissions will not be reviewed or compensated.

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CHAOS Industries is redefining modern defense with a multi-product portfolio that gives the ultimate advantagedomain dominance. The companys products are powered by Coherent Distributed Networks (CDN) empowering warfighters commercial air operators and border protection teams to act faster adapt rap...
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CHAOS Industries builds omniscient defense systems powered by Coherent Distributed Networks (CDNTM), giving military, commercial, and border teams the ultimate advantage: time.

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