AI Data Strategist

Dyna Robotics
Redwood City, US
On-site

Who this role is best for

Best suited to mid-level AI/ML professionals with data strategy expertise working in robotics or autonomy domains.

Best fit for

  • Systems thinkers who prioritize data quality over volume in AI model improvement.
    — “superior models come from exceptional data strategy, not just massive data volume
  • Analytical problem-solvers adept at translating real-world failures into structured frameworks.
    — “translate messy, real-world failures into structured frameworks
  • Influencers comfortable driving strategy without direct authority over execution teams.
    — “Able to rally and influence cross-functional teams without needing direct authority

Things to consider

  • Role focuses on strategic oversight rather than hands-on data pipeline management.
    — “focuses on strategy rather than managing operational execution
  • Requires close collaboration with operations teams to inform data strategy.
    — “Partner closely with the operations team to understand what is happening in the field

How to stand out

  • Demonstrate specific examples of edge-case analysis improving model performance.
    — “deep understanding of how deployment failures, edge cases translate into model training
  • Highlight experience with annotation tooling mentioned in the bonus section.
    — “Exposure to annotation tooling such as Labelbox, Scale, CVAT, Encord
  • Showcase startup or R&D environment experience to match their fast-paced culture.
    — “Experience operating in fast-moving, ambiguous startup or R&D-heavy environments
Pace · Fast PacedCollaboration · HighAutonomy · MediumDecision Impact · TeamLevel · Senior

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • Define data collection priorities
  • Design evaluation and quality frameworks
  • Build data lifecycle observability
Typical background
AI/MLRoboticsData Science

Skills & requirements

Required

Ai/mlRoboticsData StrategyData Quality StandardsCross-functional Collaboration

Preferred

Embedded AIAutonomy Systems

Stack & domain

Ai/mlRoboticsAutonomyData-centric SystemsData StrategyData Quality StandardsData CollectionEvaluation FrameworksData Lifecycle ObservabilityOperationsFeedback LoopsModel TrainingEvaluationDeployment FailuresEdge CasesReal-world Operational DataSystems ThinkingStructured Problem SolvingAnalytical ThinkingCross-functional InfluencingClear CommunicationAI

About the role

Original posting from Dyna Robotics via Ashby

JOIN US TO SHAPE THE NEXT FRONTIER OF AI-DRIVEN ROBOTICS!

Dyna Robotics makes general-purpose robots powered by a proprietary embodied AI foundation model that generalizes and self-improves across varied environments with commercial-grade performance. Dyna's robots have been deployed at customers across multiple industries. Our frontier model has the top generalization and performance in the industry.

THE ROLE

We are hiring an AI Data Strategist to define the data requirements that drive model improvement across Dyna's robotics platform.

This is a senior individual contributor role that focuses on strategy rather than managing operational execution. Instead of running the day-to-day data pipeline, you will define what operations and research execute against. You will establish the specifications, frameworks, and feedback loops that determine whether our data actually improves our models.

The core question you will help answer every week is: our model failed here, so what does that mean for our data strategy?

WHAT YOU'LL DO

  • Define Data Collection Priorities
  • Identify lifecycle gaps: Maintain a clear, comprehensive view of where the data lifecycle has gaps, from pre-training through post-training.
  • Direct collection efforts: Prioritize what the data collection team should focus on next, clearly distinguishing between data that merely adds volume and data that actually drives model performance.
  • Design Evaluation & Quality Frameworks
  • Set the standard: Define how robot episodes should be labeled and determine what rubrics and taxonomies capture meaningful signal.
  • Establish quality benchmarks: Define what "good data" looks like for each task and model stage so the labeling team can execute flawlessly against your standards.
  • Extract Signal from Operations
  • Translate field realities: Partner closely with the operations team to understand what is happening in the field, including shift handoffs, collection quality, and deployment issues.
  • Inform data strategy: Act as a strategic consumer of operations output, translating real-world operational realities into high-impact data strategy decisions without directly managing the operations team.
  • Build Data Lifecycle Observability
  • Define health metrics: Establish the metrics that measure the health of each phase of the data pipeline, including collection coverage, label quality, evaluation consistency, and model feedback loops.
  • Drive visibility: Create a real-time, organization-wide view of data lifecycle health.

WHO YOU ARE

  • Systems Thinker: You understand that superior models come from exceptional data strategy, not just massive data volume.
  • Structured Problem Solver: Highly analytical and detail-oriented, with the ability to translate messy, real-world failures into structured frameworks.
  • Analytically Minded: Possess strong instincts for failure analysis, dataset structure, and the feedback loops between deployment and training.
  • Cross-Functional Influencer: Able to rally and influence cross-functional teams without needing direct authority.
  • Clear Communicator: Strong written and verbal communication skills, with the ability to prioritize effectively in fast-moving environments where everything feels urgent.

WHAT YOU’LL BRING

  • Core Experience: 4-8+ years of experience working in AI/ML, robotics, autonomy, or data-centric systems roles.
  • Data Strategy Expertise: Proven experience defining data quality standards, evaluation frameworks, annotation systems, or data strategy for machine learning products.
  • Collaborative Track Record: Experience working closely with cross-functional teams, including ML researchers, operations, annotation teams, and engineering.
  • Edge-Case Proficiency: A deep understanding of how deployment failures, edge cases, and real-world operational data translate into model training and evaluation improvements.

BONUS POINTS FOR

  • Experience operating in fast-moving, ambiguous startup or R&D-heavy environments
  • Experience with embodied AI, video, or time-series data.
  • Familiarity with evaluation pipelines, active learning, or data-centric AI.
  • Exposure to annotation tooling such as Labelbox, Scale, CVAT, Encord, or Voxel51.

Source: Dyna Robotics careers (Ashby)

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