Tata Consultancy Services

ML Ops Technical Product Manager

Atlanta, GA, US

$150k/year
9 days ago
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Summary

  • 5+ years of experience in product management, preferably with a focus on ML Ops, data science, or machine learning infrastructure .
  • Strong understanding of ML Ops tools and platforms, including ML pipelines, CI/CD, model versioning, and monitoring frameworks.
  • Technical expertise in machine learning, data engineering, and DevOps methodologies
  • Experience with cloud platforms (AWS, Azure, Google Cloud) and their ML services, data platforms like BigQuery.
  • Familiarity with Agile methodologies and project management tools (e.g., Jira, Github).
  • Experience developing with containers and Kubernetes in cloud computing environments
  • Exposure to write, run SQL queries to validate data availability & quality
  • Experience of reading through code repos to understand logic
  • Experience in managing, tracking progress across key MLOps stages: data sourcing, feature engineering, model training including hyperparameter tuning if any, testing and deployment.
  • Exposure to Vertex AI, MLFlow, Kubeflow
  • Exposure to implementing model governance frameworks & reproducibility standards.
  • Exposure to setting up/interpreting dashboards for model performance.

Preferred -

  • Knowledge of model interpretability and explain ability tools and techniques.
  • Experience in data privacy and compliance as it relates to ML.
  • Prior experience with large-scale ML system deployments.

Roles & Responsibilities

  • Product Strategy & Roadmap: Define and prioritize the ML Ops product roadmap by assessing business goals, customer needs, and emerging industry trends in ML Ops.
  • Cross-functional Collaboration: Work closely with data scientists, ML engineers, DevOps, and software engineers to ensure seamless integration and deployment of ML models.
  • Project Management: Coordinate and manage timelines, resources, and deliverables across multiple teams to keep projects on track.
  • Model Lifecycle Management: Oversee the end-to-end ML model lifecycle, including data preparation, model development, deployment, monitoring, and maintenance.
  • Automation & Scaling: Identify opportunities for automation and scalability in the ML pipeline, from data ingestion to model deployment.
  • Monitoring & Optimization: Develop and implement monitoring and alerting frameworks for model performance and data quality. Partner with engineering teams to troubleshoot and optimize pipelines.
  • Stakeholder Communication: Serve as the primary point of contact for internal and external stakeholders. Communicate product updates, metrics, and results to senior leadership.
  • Risk Management: Identify, assess, and mitigate risks related to ML model deployment, including ethical considerations, data privacy, and regulatory compliance.
  • Documentation & Training: Develop clear and comprehensive documentation for ML Ops processes and workflows. Provide training to teams on best practices.

Salary Range - $100,000-$150,000 a year

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