AWS MLOps & LLMOps Engineer

2 - 6 years

0 Lacs

Posted:1 day ago| Platform: Linkedin logo

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Job Type

Full Time

Job Description

AWS MLOps & LLMOps Engineer – Reinforcement Learning & Cloud AI Specialist

📍 Location: Kochi

🕒 Employment Type: Full-Time


Job Overview

hands-on and customer-facing AWS MLOps & LLMOps Engineer


Key Responsibilities

  • Design and implement

    MLOps and LLMOps pipelines

    using AWS services (SageMaker Pipelines, Lambda, EKS, ECS, etc.)
  • Build and manage

    reinforcement learning pipelines

    , including simulation environments, reward modeling, and policy optimization
  • Integrate and maintain

    Amazon SageMaker Feature Store

    for real-time and batch feature ingestion
  • Enable

    continuous training

    ,

    model monitoring

    , and

    automated deployment

    using CI/CD workflows
  • Collaborate with data scientists to operationalise ML and LLM models, including fine-tuning and prompt engineering
  • Develop and maintain

    High-Level Designs (HLD)

    and

    network architecture

    for scalable AI solutions
  • Engage with customers to understand requirements and propose tailored AI/ML solutions
  • Provide

    technical support for RFPs

    , including architecture design, effort estimation, and documentation
  • Ensure

    security, compliance, and governance

    across all ML/LLM workflows
  • Lead and support

    AI projects

    with full ownership from experimentation to production
  • Create architecture HLD with networking, data flow, components and integration diagram


Required Skills & Qualifications

  • 2-6 years of experience in

    MLOps

    , with hands-on exposure to

    LLMOps

    and

    reinforcement learning

  • Strong experience with

    AWS SageMaker

    , including Pipelines, Model Registry, and Feature Store
  • Proficiency in

    Python

    ,

    Docker

    ,

    Terraform

    , and

    CI/CD tools

  • Familiarity with

    RL frameworks

    like Ray RLlib, OpenAI Gym, or Stable Baselines
  • Experience with

    ML frameworks

    such as TensorFlow, PyTorch, and Hugging Face Transformers
  • Solid understanding of

    networking

    ,

    security protocols

    , and

    cloud-native architecture

  • Excellent communication and

    client engagement skills

  • Bachelor’s or master’s degree in computer science, Data Science, or related field


Preferred Qualifications

  • Good to have experience with

    Kubernetes

    (EKS preferred) for container orchestration and scalable ML deployments
  • AWS Certified Machine Learning Speciality or equivalent certifications
  • Exposure to

    model monitoring tools

    (e.g., SageMaker Model Monitor, Prometheus, Grafana)
  • Knowledge of

    LLM evaluation

    ,

    bias detection

    , and

    hallucination mitigation

  • Familiarity with

    data lake architectures

    ,

    feature engineering

    , and

    metadata management

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