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Remote Edge Ai Machine Learning Jobs in Virginia

Lead Edge AI/ML Engineer

Richmond, VA · On-site +1

$101.40K - $133.60K/yr

Lead Edge AI / Machine Learning Engineer Strategic Technology Consulting (STC), an Arcfield Company ... For Remote Opportunities), education and certifications as well as Federal Government Contract ...

Remote Work: Niyam understands the value of flexibility. We offer remote work. * Career Growth ... Design, develop, train, and validate advanced AI and machine learning models to support mission ...

Remote Work: Niyam understands the value of flexibility. We offer remote work. * Career Growth ... Design, develop, train, and validate advanced AI and machine learning models to support mission ...

Remote - Patent Attorneys

Fairfax, VA · Remote

$280K - $350.03K/yr

... such as AI, Machine Learning, Cloud, Wireless and Data Storage. This role offers full remote ... Access to cutting-edge emerging technology matters; Collegial team culture with direct partner and ...

Remote - Patent Agents

Fairfax, VA · Remote

$280K - $350.03K/yr

... such as AI, Machine Learning, Cloud, Wireless and Data Storage. This role offers full remote ... Access to cutting-edge emerging technology matters; Collegial team culture with direct partner and ...

Machine Learning Engineer

Mclean, VA · On-site +1

$115K - $150K/yr

Stay updated with the latest research and trends in AI to implement cutting-edge solutions ... with machine learning frameworks and libraries such as TensorFlow, PyTorch, or scikit-learn.

If cutting edge data science projects resonate with you, and you care deeply about joining a ... Vienna, VA and Chantilly, VA with remote flexibility Responsibilities: * Collaborate with a cross ...

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Remote Edge Ai Machine Learning information

What is the difference between Remote Edge Ai Machine Learning vs Data Scientist?

AspectRemote Edge Ai Machine LearningData Scientist
Required CredentialsBachelor's or Master's in CS, AI, or related fields; experience with ML frameworksBachelor's or Master's in Statistics, CS, or related fields; strong analytical skills
Work EnvironmentRemote, often on edge devices or IoT systemsTypically office or remote, analyzing data in cloud or on-premises
Industry UsageAI development, IoT, autonomous systemsBusiness analytics, research, product development

Remote Edge Ai Machine Learning specialists focus on deploying ML models on edge devices, often requiring knowledge of embedded systems. Data Scientists analyze large datasets to extract insights, usually working in cloud environments. While both roles require strong ML fundamentals, their work environments and application areas differ significantly.

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Lead Edge AI/ML Engineer

Lead Edge AI/ML Engineer

Arcfield

Richmond, VA • On-site, Remote

$101.40K - $133.60K/yr

Other

Medical, Life, Retirement, PTO

This job post has expired today. Applications are no longer accepted.


Job description

Lead Edge AI / Machine Learning Engineer

Strategic Technology Consulting (STC), an Arcfield Company, is seeking a Lead Edge AI / Machine Learning Engineer to lead the design, optimization, and deployment of advanced AI/ML capabilities for SWaP-constrained tactical edge systems operating in contested environments. This role will lead the development of onboard AI/ML capabilities that improve resilient PNT performance through RF signal classification, IMU drift modeling, anomaly detection, and advanced sensor fusion. The engineer will also develop autonomous monitoring capabilities that track system health, thermal conditions, data integrity, sensor status, and software performance, enabling the system to detect issues, diagnose problems, and take corrective action when failures occur. The ideal candidate will bring deep experience moving AI/ML beyond prototype environments and into real-time embedded systems, with expertise in model optimization techniques such as quantization, pruning, and efficient inference, as well as the ability to deploy production-quality models into C++ based embedded architectures. This role requires close collaboration with PNT, embedded software, hardware integration, and systems engineering teams to deliver deployable AI-enabled capabilities that preserve mission continuity without relying on continuous human intervention.

Responsibilities:

  • Architect Edge AI Pipelines: Lead the end-to-end development of machine learning pipelines, from data curation and model training to final deployment on low-SWaP edge inference accelerators (GPUs, NPUs, FPGAs).
  • Build the Agentic Watchdog: Design and deploy a highly autonomous reinforcement learning or anomaly-detection agent to predict, detect, and instantly clear hardware or software faults.
  • Enhance AI Navigation Fusion: Collaborate directly with PNT engineers to integrate ML into the state estimation loop, using neural networks to classify NAVWAR spoofing attacks, model complex inertial sensor noise, or fuse intermittent visual/RF data.
  • Bridge the AI/Embedded Gap: Partner with embedded C++ and DSP engineers to translate heavy PyTorch/TensorFlow models into highly optimized, deterministic C++ inference engines using TensorRT, ONNX Runtime, or edge-specific SDKs.
  • Optimize for SWaP: Execute extreme model quantization (INT8, FP16), pruning, and knowledge distillation to ensure AI models don't exceed strict memory, thermal, and compute latency budgets.
  • Lead the Technical Vision: Define the ML architecture for the program, manage junior engineers/data scientists, and interface directly with end-customers/stakeholders during capability demonstrations.

Qualifications:

  • BS 8-10, MS 6-8, Phd 3-5 (degree in Computer Science, Machine Learning, Robotics, Electrical Engineering, or a related technical field).
  • Experience developing and deploying machine learning models to production environments, with a strong focus on Edge AI or embedded systems.
  • Fluency in Python (for training/architecture) and modern C++ (for edge deployment and embedded integration).
  • Deep expertise with ML optimization frameworks and runtimes (e.g., TensorRT, ONNX, TFLite, OpenVINO) targeting edge hardware (like NVIDIA Jetson, Coral, or Xilinx SoCs).
  • Demonstrated experience developing autonomous agents, anomaly detection algorithms, or reinforcement learning systems applied to complex hardware/software ecosystems.
  • Proven ability to collaborate intimately with embedded software, DSP, or systems engineers to deploy AI into real-time, deterministic systems.
  • Familiarity with hardware-in-the-loop (HITL) testing and CI/CD pipelines for machine learning models (MLOps).
  • Must be able to obtain and maintain a U.S. DoD Secret Security Clearance.

Equal Pay ActThis is the projected compensation range for this position. There are differentiating factors that can impact a final salary/hourly rate, including, but not limited to, relevant work experience, skills and competencies that align to the specified role, geographic location (For Remote Opportunities), education and certifications as well as Federal Government Contract Labor categories. In addition, Arcfield invests in its employees beyond just compensation. Arcfield 's benefits offerings include, dependent upon position, Health Insurance, Life Insurance, Paid Time Off, Holiday Pay, Short Term and Long-Term Disability, Retirement and Savings, Learning and Development opportunities, wellness programs as well as other optional benefit elections. Min: $101,657.48 Max: $200,020.88 EEO Statement

We are an equal opportunity employer and federal government contractor. We do not discriminate against any employee or applicant for employment as protected by law.