Company
MachineLearningOperationsEngineer
Neural analysis suggests this role is
optimal for Mid candidates.
“Machine Learning Operations Engineer. Skills: MLOps, Python, Kubernetes, CI/CD. Design ML pipelines. Build ML pipelines”
What They're Looking For.
Must Have
2–3 years of experience, ML background, Binary/ Multi class Classification, Recommendation Chatbot Applications, deploying training/inference pipelines, CI/CD, monitoring, Kubernetes deployments, Python programming, PyTorch programming, CI/CD pipelines, Jenkins, Kubernetes, model training, fine-tuning, inference pipeline development, model monitoring, alerting systems, MLflow, Kubeflow, model versioning, NER, Text Classification, NLP tasks, CUDA
Nice to Have
Generative AI systems, L40S, H100, H200, LangChain, LangGraph, LangSmith
What You'll Do.
Develop CI/CD workflows
Maintain CI/CD workflows
Implement model monitoring
Implement alerting systems
Collaborate with teams
Integrate feedback loops
Tune LLM Applications
How You'll Work.
Team & Collaboration
Collaborate with cross-functional teams
Full Job Description
Come work at a place where innovation and teamwork come together to support the most exciting missions in the world! We are looking for a highly motivated Machine Learning Operations Engineer with 2–3 years of experience in building and deploying end-to-end ML products in production environments. The ideal candidate has a strong ML background in Binary/ Multi class Classification, Recommendation Chatbot Applications and deploying training/inference pipelines, with hands-on experience in CI/CD, monitoring, and Kubernetes deployments. Key Responsibilities: · Design, build, and deploy robust ML pipelines for training, fine-tuning, and inference of models (NLP-focused: NER, Classification). · Develop and maintain CI/CD workflows for ML pipelines using Jenkins or similar tools, ensuring rapid and safe deployment to production. · Implement model monitoring and alerting systems to track performance degradation and drift in real-time. · Collaborate with cross-functional teams to retrain models on trigger events and integrate feedback loops into the ML lifecycle. · Hands on with Helm deployment of ML Pipelines in Kubernetes cluster and optimize for scalable and resilient operations. · Use MLflow, Kubeflow, and related tools for experiment tracking, model versioning, and reproducibility. · Write clean, efficient, and scalable code in Python using frameworks such as PyTorch and CUDA. · Experience with tuning, optimising LLM Applications performance in production. Required Skills: · Strong programming experience in Python and PyTorch. · Hands-on experience with CI/CD pipelines using Jenkins. · Proficient with Kubernetes for deploying and managing ML workloads. · Experience with model training, fine-tuning, and inference pipeline development. · Working knowledge of model monitoring and alerting systems (performance drift, latency, accuracy drop). · Experience with MLflow, Kubeflow, and model versioning best practices. · Solid understanding of NER, Text Classification, and common
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