Lead Machine Learning Operations Engineer
Role details
Job location
Tech stack
Job description
Define and execute an enterprise AI/ML platform strategy, encompassing MLOps, LLMOps, and AIOps, and build reusable frameworks and standards adopted across multiple projects and business units.
Oversee enterprise-scale AI platforms supporting model training, inference, evaluation, monitoring, retraining, and governance, including generative AI systems.
Align AI and MLOps initiatives with business objectives, ensuring platforms and pipelines meet scalability, performance, security, regulatory, and cost requirements, including responsible and ethical AI considerations.
Implement and enforce best practices for model and prompt versioning, monitoring, retraining, and automated workflows, ensuring consistent and reliable AI operations.
Lead teams delivering shared AI infrastructure, tooling, and platforms, providing day-to-day leadership through coaching, development, and performance management.
Ensure platform reliability and operational excellence by overseeing escalated issue resolution, maintaining high-quality documentation, and driving continuous improvement.
Track and evaluate industry trends in AI platforms, LLM ecosystems, and AI operations, translating insights into roadmap decisions and platform evolution.
Requirements
6 years of relevant experience required.
- Experience in MLOps, DevOps, or related fields, with a focus on enterprise-level solutions preferred.
- Supervisory experience preferred.
Education
Bachelor's degree is required. Combination of relevant experience, education, and training may be accepted in lieu of degree.
- Degree in computer science, data science, or related field preferred.
Technical Competencies
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Advanced proficiency in Python and architectural mastery of object-oriented design across dynamically typed languages.
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Broad experience integrating and governing multi-language systems, including Python, JavaScript/TypeScript, and enterprise platforms (e.g., .NET).
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Leadership-level expertise in AI/ML platform engineering, spanning MLOps, LLMOps, and AIOps.
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Ability to define and enforce enterprise standards for AI model lifecycle management, monitoring, reliability, and cost control.
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Deep understanding of AI system observability, including drift detection, evaluation frameworks, and incident response.
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Strong experience with cloud architecture, security, compliance, and enterprise-scale deployments.
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Proven ability to guide teams in technical decision-making and platform strategy.
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