Tyto Athene
AI

AI/ML Engineer - Mission

Tyto Athene · Reston, VA, US

Actively hiring Posted 5 months ago

Responsibilities

  • Design, develop, and optimize efficient and lightweight AI/ML models specifically for edge devices with limited computational power, memory, and energy.
  • Implement techniques to ensure real-time performance at the tactical edge.
  • Develop and integrate on-device learning and adaptive models that can continuously improve and adapt to changing mission environments without constant cloud connectivity.
  • Engineer AI/ML solutions for disconnected or intermittently connected operations, ensuring robustness and functionality even when central network access is unavailable.
  • Architect and implement advanced sensor fusion to integrate and make sense of disparate and sensor data streams from various modalities.
  • Develop multi-sensor perception systems for object detection, tracking, classification, anomaly detection, and situation awareness in complex, dynamic, and potentially contested environments.
  • Apply expertise in processing and fusing data from diverse sensor types including
  • Address challenges of data synchronization, misalignment, and conflicting information from multiple sensors to generate a coherent and accurate operational picture.
  • Develop AI/ML algorithms that enhance decision-making speed and accuracy for warfighters and commanders.
  • Focus on applications that provide a direct mission advantage, such as predictive intelligence, threat detection and identification, autonomous navigation, target recognition, battle damage assessment, and enhanced situational awareness.
  • Collaborate directly with mission experts and end-users to iteratively design, test, and refine AI/ML capabilities, ensuring operational relevance and usability.
  • Design AI/ML systems that are robust to adversarial attacks and can accommodate the realities of mission sensor data quality and noise, environmental noise, ensuring reliable performance in contested and unpredictable operational settings.
  • Implement techniques for explainable AI (XAI) to provide warfighters with transparency and confidence in model predictions, especially for critical decisions.
  • Develop methods for model monitoring and health checks at the edge, ensuring sustained performance and alerting to degradation or compromise.
  • Ensure AI/ML solutions comply with responsible AI principles and ethical guidelines for military applications.
  • Design and implement secure MLOps pipelines for continuous integration, continuous delivery (CI/CD), and lifecycle management of AI/ML models from development to deployment at the mission edge.
  • Automate model testing, validation, and deployment processes in highly constrained and secure environments.
  • Ensure all AI/ML development and deployment adheres to stringent DoD cybersecurity frameworks and secure coding practices.
  • Support the integration of FISMA compliance controls into coding practices incorporating unique edge security considerations.
  • Implement Zero Trust architectures for AI/ML solution access and data handling at the edge.
  • Integrate AI/ML solutions with existing and legacy DoD tactical systems, command and control (C2) platforms, and communications networks.
  • Work to ensure seamless data flow and interoperability with various DoD data sources and fusion centers.
  • Contribute to the establishment of tactical data lakes or similar constructs at the edge for local data ingestion and AI/ML processing.
  • Bachelor's Degree in Engineering, Computer Science, or related field; equivalent, relevant experience will be considered
  • Proficiency in PyTorch, Python, JavaScript/TypeScript
  • Open-source LLMs (e.g., Llama, Gemma, Qwen) and VLMs (e.g., Phi4, Qwen-VL) using Huggingface
  • Expertise in prompt engineering
  • Building RAG pipelines using tools like LangChain or LlamaIndex.
  • Hands-on experience with Docker, Kubernetes, Helm; model serving frameworks like vLLM or Triton
  • Observability tools such as Weights & Biases
  • Vector databases like Qdrant or Milvus.
  • Experience deploying models on edge devices
  • Experience utilizing hardware acceleration tools like CUDA, ONNX, TensorRT
  • Proven track record of designing, training, and deploying lightweight and efficient machine learning models for real-time inference on resource-constrained devices
  • Experience with MLOps tools and practices for deploying and managing models in production, especially at the edge
  • Familiarity with the Model Context Protocol (MCP) for connecting AI models to external tools and data sources
  • Understanding of secure, real-time data access methodologies.
  • Extensive hands-on experience with multi-modal sensor data fusion techniques and algorithms.
  • Demonstrated ability to work with and process diverse sensor data types (e.g., imagery, video, audio, RF, network logs, structured data).
  • Experience with signal processing, computer vision, natural language processing (NLP), or other relevant domains for sensor data interpretation.
  • Direct experience designing and implementing solutions DDIL communication environments.
  • Familiarity with tactics, techniques, and procedures (TTPs) related to military operations at the tactical edge.
  • Understanding of the challenges of data collection, storage, and processing in austere and contested operational environments.
  • Deep understanding of unique DoD reference architectures such as CJADC2 and MPEs
  • Significant experience as an agile and CI/CD practitioner
  • Strong analytical and problem-solving skills.
  • Excellent communication and interpersonal skills.
  • Ability to work effectively across functional groups to optimize product & service offerings.
  • Understands the many aspects of United States Government/Department of Defense programs, including but not limited to program and project management, staffing, engineering, Operations and Maintenance (O&M), quality, logistics, technology, and regulations.
  • Demonstrated ability to handle multiple projects simultaneously.
  • Familiarity of NIST security guidelines, such as 800-53 and 800-63, and good understanding of security fundamentals, as well as authentication with OAuth, SAML etc.
  • Knowledge of Go, Rust, or C++ for edge optimization
  • Experience integrating GenAI into full-stack applications
  • Handling large, multimodal datasets
  • Fine-tuning with LoRA.
  • Associate level certification with Google, Azure or AWS cloud platforms
  • Active SECRET security clearance preferred or be able to secure DoD Security clearance.

Benefits

  • Highlights of our benefits include Health/Dental/Vision, 401(k) match, Paid Time Off, STD/LTD/Life Insurance, Referral Bonuses, professional development reimbursement, and parental leave.

About the company

  • Compensation is unique to each candidate and relative to the skills and experience they bring to the position. This does not guarantee a specific salary as compensation is based upon multiple factors such as education, experience, certifications, and other requirements, and may fall outside of the above-stated range.

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Fulltime Ai Ai Engineer Machine Learning
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