We are looking for a Scrum Master who understands that AI development isn't a linear path. You will be the "buffer and the bridge" for our AI Research and Engineering teams. Your goal is to apply Agile principles to a world of experimental data, model training, and compute constraints, ensuring we deliver high-value intelligence to our users at a steady cadence.
Agile Orchestration for AI: Facilitate all Scrum ceremonies (Daily Stand-ups, Sprint Planning, Reviews, Retrospectives) specifically tailored for the CRISP-DM or Agile ML lifecycle.
Managing Uncertainty: Help the team navigate the "Research" phase of AI where outcomes are non-deterministic. You’ll assist in breaking down "Experimental" tasks into actionable user stories.
Eliminating Friction: Proactively identify and remove blockers, such as data access delays, GPU/Compute bottlenecks, and shifting labeling requirements.
Stakeholder Education: Manage expectations with product owners and executives who may be used to traditional software timelines, explaining the iterative nature of model performance and "Gold Standard" datasets.
Metrics that Matter: Track traditional velocity alongside AI-specific health metrics like Model Decay, Training Cycles, and Inference Latency impacts on the backlog.
Agile Certification: CSM (Certified Scrum Master), PSM, or equivalent.
AI/ML Literacy: While you don't need to write code, you must understand the vocabulary. You should know the difference between training, validation, and deployment, and understand what a "Feature Store" or "Vector DB" is in a workflow.
Tooling Expertise: Mastery of Jira or Azure DevOps, specifically configured for iterative R&D workflows (e.g., using "Spikes" for data exploration).
Conflict Resolution: Proven ability to coach highly technical Data Scientists and Machine Learning Engineers on the value of "Done" in an experimental environment.
Experience with MLOps workflows and how they integrate into CI/CD pipelines.
Knowledge of the Azure AI ecosystem or AWS SageMaker project management.
Background in Manufacturing, Finance, or Healthcare (where AI compliance and accuracy are critical).