Principal Engineer, AI And Data Platform Engineering (r4941)
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Job Description
Principal Engineer, AI And Data Platform Engineering (r4941) Own the AI data platform from training to deployment across onāprem and cloud environments globally Location: San Francisco, California, United States Compensation: $320,000 - 490,000 USD / year Job Tags: Software About The Role Principal Engineer Shield AI builds autonomy systems for defense applications, including air, maritime, and space platforms operating in complex and contested environments. We are establishing a centralized AI and Data Platform organization responsible for the infrastructure that underpins autonomy development across Hivemind and other programs. This team owns the systems used to train models, run simulation, manage data, and deploy models to operational environments.
We are seeking a Principal Engineer that will scale an initial architecture into a platform that supports multiple autonomy programs. Success in this role requires disciplined execution, delivering fast iteration for engineering teams while maintaining reliability, cost control, and architectural consistency as the system scales. The Principal Engineer is accountable for ensuring engineers can move efficiently from idea to trained model to deployed capability, and that infrastructure decisions reflect the realities of the domain, including simulationādriven development, continuously evolving multiāmodal sensor data, and deployment to constrained and reliabilityācritical systems.
This role spans the full lifecycle of autonomy development, training foundation models, running largeāscale and multiāfidelity simulation, managing training data, evaluating models, and deploying optimized models to edge systems. A key part of this role is defining how these capabilities extend beyond internal use. This includes establishing how Shield AI delivers AI infrastructure in customer environments across onāpremise, cloud, hybrid, and sovereign or nationally constrained environments.
What youāll do Platform Ownership: Define and operate the core AI and data platform across training, simulation, data management, evaluation, and deployment. Compute Strategy and Infrastructure: Own where and how workloads run across onāpremise, cloud, and hybrid environments. Drive capacity planning, utilization, and costāperācompute decisions, including support for classified and airāgapped systems.
Training and Simulation Systems: Build infrastructure for distributed training (supervised learning, RL/MARL, foundation models) and largeāscale, multiāfidelity simulation. Ensure training and simulation systems operate together without bottlenecks. Data Platform: Ingest and manage multiāmodal sensor data (EO, IR, radar, EW, IMU).
Establish dataset versioning, data lineage, feature storage, data cataloging, and classificationāaware storage and access controls. MLOps, Evaluation, and Model Lifecycle: Establish a consistent workflow for experiment tracking, model registry, artifact provenance, and automated validation. Implement evaluation and V&V gates so models meet defined standards before deployment.
Deployment and Operational Feedback: Own the pipeline from training to deployment, including model optimization (e.g., distillation, quantization, pruning), deployment to edge systems, monitoring, drift detection, and retraining triggers. Customer AI Infrastructure: Define how AI infrastructure is deployed in customer environments across onāpremise, cloud, hybrid, and sovereign settings. Establish a consistent approach that avoids oneāoff solutions while adapting to operational constraints.
Platform Standardization: Define common tools, interfaces, and workflows across teams. Reduce duplication while maintaining flexibility where needed. CrossāTeam Partnership: Work directly with Hivemind and other autonomy teams to ensure the platform supports real workloads and evolves with program needs.
Key Outcomes Faster iteration from idea to trained model to evaluated result High utilization of compute resources with clear visibility into usage and cost Simulation capacity that supports largeāscale training without bottlenecks Consistent endātoāend lifecycle: development, evaluation, deployment, monitoring, and retraining Repeatable data loop: telemetry, scenario extraction, retraining, and redeployment Reliable deployment of optimized models to edge systems Broad platform adoption across autonomy programs Repeatable approach for deploying AI infrastructure in customer environments Representative performance targets Training iteration cycles measured in days, not weeks Sustained high utilization of GPU resources under production workloads Required qualifications Experience building and operating ML infrastructure at scale (100+ GPU clusters, distributed systems) Experience defining compute strategy, including onāpremise vs cloud tradeoffs, capacity planning, and cost management Strong understanding of ML workloads, including foundation models, RL/MARL, simulationābased training, and fineātuning Experience building data platforms with dataset versioning, lineage, and cataloging Ability to debug and resolve system issues when needed Preferred qualifications Experience in defense or classified environments (e.g., airāgapped systems, SCIFs) Experience with simulationāheavy ML systems (robotics, autonomy, or similar domains) Experience deploying and optimizing models for edge hardware Familiarity with HPC systems (schedulers, parallel storage, highāspeed networking) Why Join Us You will define the infrastructure that supports the development and deployment of autonomy systems across Shield AI. This role establishes the foundation for how models are trained, evaluated, and deployed, and directly impacts how quickly new capabilities are delivered into operational environments. You will have ownership over systems and decisions that are often distributed across multiple teams at other organizations, with the opportunity to shape how AI infrastructure is built and used both internally and in customer environments. $320,000 - $490,000 a year Fullātime regular employee offer package: Pay within range listed + Bonus + Benefits + Equity Temporary employee offer package: Pay within range listed above + temporary benefits package (applicable after 60 days of employment) Salary compensation is influenced by a wide array of factors including but not limited to skill set, level of experience, licenses and certifications, and specific work location.
All offers are contingent on a cleared background and possible reference check. Military fellows and partātime employees are not eligible for benefits. Please speak to your talent acquisition representative for more information.
Shield AI is proud to be an equal opportunity workplace and is an affirmative action employer. We are committed to equal employment opportunity regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, marital status, disability, gender identity or Veteran status. If you have a disability or special need that requires accommodation, please let us know. #J-18808-Ljbffr