Senior MLOps Engineer

TN United Kingdom
London
2 days ago
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As a Senior MLOps Engineer, you will play a crucial role in enabling applied AI. Your main focus will be on designing, building, and maintaining a secure, scalable, and efficient ML Platform with a platform-as-a-product mindset, automating the end-to-end lifecycle for both traditional ML models and LLM models, as part of the Cloud Platforms Engineering (CPE) directorate. CPE’s mission is to enable our engineering teams to ship value faster, securely, efficiently, and reliably.

Responsibilities:

  1. Design and implement robust MLOps and LLMOps pipelines to automate and optimize machine learning model training, testing, deployment, and scaling.
  2. Collaborate with data scientists and software engineers to ensure operational criteria are met before deployment.
  3. Maintain and enhance CI/CD environments for machine learning systems.
  4. Develop tools to improve system visibility and facilitate troubleshooting and debugging.
  5. Foster a culture of continuous improvement by incorporating feedback and lessons learned into future ML deployments.
  6. Lead initiatives to increase the resilience and scalability of ML systems.

Requirements:

  • Bachelor’s degree in computer science, engineering, statistics, or a related field.
  • At least 3 years of experience in software development or data engineering, focusing on MLOps or similar roles.
  • Proven experience in designing and deploying scalable machine learning systems in production.
  • Strong programming skills in Python and experience with ML frameworks (e.g., TensorFlow, PyTorch, MLFlow, Kubeflow, etc.).
  • Expertise in containerization (Docker, Kubernetes) and automation tools (Jenkins, GitLab CI).
  • Excellent problem-solving skills and ability to work independently or in a team.

Preferred:

  • Experience with data governance and compliance.
  • Knowledge of big data performance tuning.

What you will gain at Intapp:

Our culture emphasizes accountability, responsibility, and growth, fostering a positive, open atmosphere that encourages creativity, approachability, and teamwork. We support a modern, flexible work environment that promotes professional success and work-life balance. We offer:

  • Competitive salary, variable compensation, and equity.
  • Generous parental leave, paid time off, and family benefits.
  • Wellness programs, volunteer time off, and donation matching.
  • Opportunities for personal and professional growth.
  • An inclusive, collaborative environment where your contributions are valued.
  • Impactful work at a growing public company.
  • Open offices with stocked kitchens.

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