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Remote Das Rf Engineer Jobs in Washington, DC (NOW HIRING)

We are headquartered in the greater Miami region, with remote teams spanning the U.S., Europe, and ... At least 8 to 10 years of previous experience with networking concepts and RF engineering. * Proven ...

We are headquartered in the greater Miami region, with remote teams spanning the U.S., Europe, and ... At least 8 to 10 years of previous experience with networking concepts and RF engineering. * Proven ...

We are headquartered in the greater Miami region, with remote teams spanning the U.S., Europe, and ... At least 8 to 10 years of previous experience with networking concepts and RF engineering. * Proven ...

Senior Software Engineer

Herndon, VA ยท On-site +1

$130K - $180K/yr

Satellite clusters and ground segments provide the platform for RF data collection that is ... Experience building automated mission-critical applications and supporting remote hardware.

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Remote Das Rf Engineer information

See Washington, DC salary details

$41.9K

$133.3K

$207.3K

How much do remote das rf engineer jobs pay per year?

As of Jun 11, 2026, the average yearly pay for remote das rf engineer in Washington, DC is $133,284.00, according to ZipRecruiter salary data. Most workers in this role earn between $110,400.00 and $157,400.00 per year, depending on experience, location, and employer.

What is the difference between Remote Das Rf Engineer vs Remote Rf Engineer?

AspectRemote Das Rf EngineerRemote Rf Engineer
CertificationsFCC, CE, or industry-specific RF certificationsFCC, CE, or industry-specific RF certifications
Work EnvironmentDesigning and testing Distributed Antenna Systems (DAS) in various locationsDesigning, testing, and troubleshooting RF systems, including cellular and wireless networks
Industry UsageTelecommunications, cellular networks, public safety networksTelecommunications, wireless service providers, network infrastructure

The Remote Das Rf Engineer specializes in designing and deploying Distributed Antenna Systems (DAS) for improved wireless coverage, often working on large-scale infrastructure projects. The Remote Rf Engineer has a broader focus on RF systems, including cellular and wireless network testing and troubleshooting. Both roles require similar certifications and industry knowledge but differ in their specific applications and project types.

What are the key skills and qualifications needed to thrive as a Remote DAS RF Engineer, and why are they important?

To thrive as a Remote DAS RF Engineer, you need a strong background in wireless communications, RF engineering principles, and experience with Distributed Antenna Systems (DAS), often supported by a degree in electrical engineering or a related field. Familiarity with RF design tools (such as iBwave, Atoll, or DAS OEM software), network analyzers, and relevant certifications like iBwave Level 1 or 2 is typically required. Excellent problem-solving abilities, attention to detail, and effective remote communication skills help distinguish top performers in this role. These skills ensure reliable wireless coverage, efficient troubleshooting, and seamless coordination with clients and team members from remote locations.

What are some common challenges faced by Remote DAS RF Engineers, and how can they be addressed?

Remote DAS RF Engineers often encounter challenges such as troubleshooting signal issues without being physically present on-site and coordinating with on-site teams or vendors. Effective communication skills and the ability to interpret remote monitoring data are essential for diagnosing and resolving issues efficiently. Utilizing advanced network management tools and maintaining organized documentation can help streamline remote collaboration and problem resolution. Regular virtual meetings and clear reporting structures also support smooth workflows in a distributed team environment.

What does a Remote DAS RF Engineer do?

A Remote DAS RF Engineer is responsible for designing, implementing, and optimizing Distributed Antenna Systems (DAS) to enhance wireless coverage in buildings and other structures. They focus on radio frequency (RF) engineering tasks, such as signal testing, troubleshooting, and system integration, often working remotely to support multiple locations. These engineers collaborate with project managers, field technicians, and clients to ensure seamless wireless connectivity and compliance with industry standards. Their work helps improve mobile signal quality in areas where traditional coverage is weak or unavailable.
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AI/ML Engineer, Senior - WFH1650

AI/ML Engineer, Senior - WFH1650

Global InfoTek, Inc.

Reston, VA โ€ข On-site, Remote

$108K - $149K/yr

Full-time

Posted 19 days ago


Job description

Clearance Level: Public Trust

US Citizenship: Required

Job Classification: Full Time

Location: Remote

Years of Experience: 5-7 years of relevant experience

Education Level: BS or MS in Electrical Engineering, Computer Science, Applied Mathematics, or a closely related quantitative field. Experience may be considered in place of education requirement.

Briefly Describe the Work:

GITI is seeking a Senior AI/ML Engineer to support an R&D program focused on passive RF emitter identification and network analysis from real-time sensor data streams. The Senior AI/ML Engineer designs, builds, and validates machine learning models for RF emitter identification, conducts hands-on exploratory data analysis on NDF (Network Description File) sensor datasets, and implements ML data pipelines that operate on constrained tactical edge hardware. Working under the direction of the Principal AI/ML Engineer and program technical lead, the candidate collaborates closely with research scientists and software engineers to translate analytical findings into reproducible, well-documented ML experiments and pipeline components. The role requires strong Python and deep learning skills, comfort with real-world noisy sensor data, and the ability to work in air-gapped Linux environments without cloud infrastructure or GPU acceleration.

Responsibilities:

  • Design, build, and validate machine learning models for RF emitter identification - including feature engineering from sensor data, training pipeline development, model evaluation, and iterative refinement based on results
  • Conduct hands-on exploratory data analysis on RF sensor datasets using Python and Jupyter notebooks - writing and running analytical code, characterizing feature distributions, identifying data quality issues, and producing documented findings
  • Implement and maintain ML data pipelines - ingesting NDF sensor streams, applying rollup and preprocessing logic, constructing training datasets, and ensuring pipeline correctness on constrained edge hardware with no cloud dependency
  • Collaborate with the technical lead and Principal AI/ML Engineer to investigate RF sensor data quality, attribution reliability, and feature behavior under contention - writing code to characterize error sources, validate assumptions, and reproduce findings
  • Produce clear technical documentation of experiments, model configurations, and results - maintaining reproducibility through disciplined versioning, and contributing to monthly status reports and team knowledge sharing

Career level with a complete understanding and wide application of machine learning principles and data science techniques. Working under general direction from the Principal AI/ML Engineer, executes independently on assigned modeling and analysis tasks, contributes to pipeline development, and produces reproducible, well-documented results. Bachelor's or Master's (or equivalent) with 5-7 years of hands-on applied experience.

Required Skills:

  • 5+ years of hands-on applied experience in machine learning, data science, or RF signal processing
  • Demonstrated proficiency in Python for ML and data science work - PyTorch or TensorFlow for model development, Pandas/NumPy for data manipulation, and scikit-learn or similar for evaluation and baseline modeling
  • Hands-on experience designing, training, and evaluating deep learning models - particularly metric learning, Siamese networks, or other similarity-learning architectures - on real-world, noisy, imbalanced datasets
  • Practical experience handling real-world data quality problems - missing values, label noise, class imbalance, systematic bias, and sensor artifacts - and the ability to diagnose and address them without discarding valid data
  • Ability to develop and run ML pipelines on Linux-based systems without cloud infrastructure or GPU acceleration - optimizing for CPU-only inference and multi-threaded data processing on resource-constrained x86 hardware

Desired Skills:

  • Familiarity with RF signal characteristics, passive receiver phenomenology, and sensor data interpretation - including awareness of processing artifacts, attribution ambiguities, and measurement limits common in signals intelligence datasets
  • Hands-on experience applying machine learning - particularly metric learning, deep learning networks, or similarity-learning architectures - to RF or time-series signal data, including feature engineering, training pipeline development, and model validation
  • Exposure to TDMA network protocols or military datalink systems, and interest in learning the signal processing challenges of dense, contested electromagnetic environments
  • Familiarity with direction-finding, time-difference-of-arrival (TDOA), or related passive geolocation concepts - understanding of their mathematical foundations and common failure modes is more important than operational experience
  • Experience with binary serialization formats (FlatBuffers, Protocol Buffers) and high-throughput sensor data pipelines operating in near-real-time on resource-constrained hardware
  • Background in statistical signal processing - error ellipses, bearing estimation uncertainty, feature reliability under noise - with the ability to distinguish statistically significant findings from artifacts of small sample size or improper normalization

Relevant Certifications:

  • Certifications in machine learning, data science, or related technical fields (e.g., TensorFlow Developer Certificate; PyTorch Certified Associate; AWS Certified Machine Learning - Specialty; Microsoft Certified: Azure AI Engineer Associate; Certified Analytics Professional (CAP); etc.)

Global InfoTek, Inc. is an equal opportunity employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, protected veteran status, or disability.

About Global InfoTek, Inc. Global InfoTek Inc. has an award-winning track record of designing, developing, and deploying best-of-breed technologies that address the nation's pressing cyber and advanced technology needs. GITI has rapidly merged pioneering technologies, operational effectiveness, and best business practices for over two decades.

Employment Type: FULL_TIME