Product Manager, AI Platforms (r4991)

Shield AI Shield AI · Defense · San Diego, CA · Product Management

Product Manager for Shield AI's next-generation autonomy intelligence stack, focusing on training, evaluation, and deployment of foundation and domain models for edge autonomy. Owns the roadmap for the Hivemind AI Platform, including training pipelines, data infrastructure, evaluation, and deployment toolchains, ensuring safe and scalable deployment of world models, robotics foundation models, and vision-language-action systems.

What you'd actually do

  1. Own the roadmap for foundation model training workflows, including dataset ingestion, curation, labeling, synthetic data generation, domain model training, and distillation pipelines.
  2. Define product requirements for synthetic data generation, simulation-integrated data flywheels, and automated scenario generation.
  3. Lead the development of model governance and auditability tooling, including model cards, dataset rights, lineage tracking, safety gates, and compliance evidence.
  4. Partner with Pilot, EdgeOS, and hardware teams to integrate foundation-model-based perception and reasoning into autonomy behaviors.
  5. Collaborate with Engineering, Research, Product, Customer Engagement, and Solutions teams to ensure model outputs meet mission and platform constraints.

Skills

Required

  • 7+ years of experience in product management or highly technical ML/AI product roles.
  • 2+ years of experience in a hands-on software development role.
  • Strong engineering background (Computer Science, Electrical Engineering, Robotics, or related field).
  • Deep understanding of foundation models, robotics models, multimodal models, MLOps, and training infrastructure.
  • Experience managing complex products spanning data pipelines, cloud training clusters, model governance, and edge deployments.
  • Proven success partnering with research teams to transition ML innovations into stable, production-grade workflows.
  • Familiarity with simulation-based data generation and large-scale data management.
  • Excellent communicator with strong cross-functional leadership skills.

Nice to have

  • Experience working on autonomy, robotics, embedded AI, or mission-critical systems.
  • Hands-on familiarity with GPU infrastructure, distributed training, or data lakehouse architectures.
  • Experience supporting defense, dual-use, or safety-critical AI systems.
  • Background designing or operating AI Factory–style pipelines (data → training → evaluation → distillation → edge deployment).
  • Advanced degree in engineering, ML/AI, robotics, or a related field.

What the JD emphasized

  • train, evaluate, and deploy foundation and domain models
  • sovereign autonomy
  • AI Factories at the edge
  • continuous learning
  • foundation models are trained, validated, governed, and deployed across thousands of autonomous systems in highly contested environments
  • model governance and auditability tooling
  • safely deploy models onto edge hardware in disconnected, GPS- or comms-denied environments
  • traceability and evaluation pipelines meet operational and accreditation requirements
  • distillation, quantization, and inference tooling
  • closed-loop workflows between cloud model training and edge-native execution
  • build sovereign AI factories

Other signals

  • AI Platform Product Manager
  • train, evaluate, and deploy foundation and domain models
  • Hivemind AI Platform (Forge, training pipelines, data infrastructure, evaluation, and deployment toolchains)
  • manufacture, govern, and field advanced world models, robotics foundation models, and vision-language-action systems safely and at scale
  • foundation models are trained, validated, governed, and deployed across thousands of autonomous systems in highly contested environments