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MLOps Engineer

Zpět na výsledky vyhledávání
    • Pune, Maharashtra, India
  • Applications System Development
  • Full time
  • kvě 22 2025
  • ID úlohy: R0062325

Popis

RESPONSIBILITIES

  • Design and implement CI/CD pipelines for AI and ML model training, evaluation, and RAG system deployment (including LLMs, vectorDB, embedding and reranking models, governance and observability systems, and guardrails).

  • Provision and manage AI infrastructure across cloud hyperscalers (AWS/GCP), using infrastructure-as-code tools -strong preference for Terraform-.

  • Maintain containerized environments (Docker, Kubernetes) optimized for GPU workloads and distributed compute.

  • Support vector database, feature store, and embedding store deployments (e.g., pgVector, Pinecone, Redis, Featureform. MongoDB Atlas, etc).

  • Monitor and optimize performance, availability, and cost of AI workloads, using observability tools (e.g., Prometheus, Grafana, Datadog, or managed cloud offerings).

  • Collaborate with data scientists, AI/ML engineers, and other members of the platform team to ensure smooth transitions from experimentation to production.

  • Implement security best practices including secrets management, model access control, data encryption, and audit logging for AI pipelines.

  • Help support the deployment and orchestration of agentic AI systems (LangChain, LangGraph, CrewAI, Copilot Studio, AgentSpace, etc.).

Must Haves:

  • 4+ years of DevOps, MLOps, or infrastructure engineering experience. Preferably with 2+ years in AI/ML environments.

  • Hands-on experience with cloud-native services (AWS Bedrock/SageMaker, GCP Vertex AI, or Azure ML) and GPU infrastructure management.

  • Strong skills in CI/CD tools (GitHub Actions, ArgoCD, Jenkins) and configuration management (Ansible, Helm, etc.).

  • Proficient in scripting languages like Python, Bash, -Go or similar is a nice plus-.

  • Experience with monitoring, logging, and alerting systems for AI/ML workloads.

  • Deep understanding of Kubernetes and container lifecycle management.

Bonus Attributes:

  • Exposure to MLOps tooling such as MLflow, Kubeflow, SageMaker Pipelines, or Vertex Pipelines.

  • Familiarity with prompt engineering, model fine-tuning, and inference serving.

  • Experience with secure AI deployment and compliance frameworks 

  • Knowledge of model versioning, drift detection, and scalable rollback strategies.

Abilities:

  • Ability to work with a high level of initiative, accuracy, and attention to detail.

  • Ability to prioritize multiple assignments effectively.  Ability to meet established deadlines.

  • Ability to successfully, efficiently, and professionally interact with staff and customers.

  • Excellent organization skills.

  • Critical thinking ability ranging from moderately to highly complex.

  • Flexibility in meeting the business needs of the customer and the company.

  • Ability to work creatively and independently with latitude and minimal supervision.

  • Ability to utilize experience and judgment in accomplishing assigned goals.

  • Experience in navigating organizational structure.

MLOps Engineer

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