MLOps; and DevOps Sr Lead/Architect
Listed on 2026-01-23
-
IT/Tech
AI Engineer, Cloud Computing
Job Title :
- MLOps (and Dev Ops) Sr Lead / Architect
Employment Type
:
- W2
Duration :
- Long Term
Visa Type :
- All Visa applicable which are ready for W2
Location
- Bellevue, WA (Day-1 Onsite)
Industry :
- Telecom
Need a strong candidate who has experience with MLOps (and Dev Ops) architecture and implementation experience and preferably understands Full stack development and was working as a full stack engineer in his previous roles.
MLOps:
- Familiarity with ML lifecycle tools (MLflow, DVC, Airflow) and version control for data and models.
- Experience with data science and ML libraries:
Tensor Flow, PyTorch, Scikit-Learn, etc. - Knowledge of container orchestration with Kubernetes and model serving frameworks (e.g., Seldon, Tensor Flow Serving).
Dev Ops:
- Proficient in CI/CD tools such as Jenkins, Git Lab CI, or Circle
CI. - Cloud platforms expertise (AWS, Azure, Google Cloud) and cloud-native services (Docker, Kubernetes).
- Experience with IaC (Terraform, Cloud Formation) and configuration management tools (Ansible, Chef).
Full Stack Development:
- JavaScript/Type Script, HTML, CSS, and frameworks like React, Angular, or Vue.js.
- Experience with UI/UX design principles and responsive web design.
- Proficiency in Node.js, Python, or similar back-end technologies.
- Knowledge of RESTful APIs, Graph
QL, and microservices architecture.
Nice-to-Have:
- Experience in Telco domain will be a huge plus but not mandatory
- Experience with data engineering tools (e.g., Apache Spark, Kafka).
- Knowledge of distributed computing and big data solutions.
- Prior experience with A/B testing, monitoring model performance, and tracking business metrics related to ML.
Job Responsibilities
Need a strong candidate who have experience with MLOps (and Dev Ops) architecture and implementation experience and preferably understands Full stack development and was working as a full stack engineer in his previous life.
MLOps:
- Implement CI/CD pipelines specifically tailored for machine learning model deployment.
- Design and develop MLOps workflows, including model training, validation, deployment, monitoring, and retraining.
- Collaborate with data scientists to containerize ML models and ensure efficient deployment to production.
- Utilize ML monitoring tools and frameworks (e.g., MLflow, Kubeflow, Airflow) to monitor model drift, performance, and data quality in production environments.
- Manage model versioning, artifact tracking, and reproducibility of experiments.
Dev Ops:
- Implement and manage CI/CD pipelines to automate code deployment and delivery.
- Design infrastructure as code (IaC) using tools like Terraform, Cloud Formation, or Ansible.
- Deploy and manage cloud resources in AWS, Azure, or Google Cloud.
- Monitor system performance and optimize applications for reliability and performance.
Full Stack Development:
- Has experience Designing and implementing scalable and efficient front-end and back-end solutions.
- Build user-friendly web interfaces and responsive applications using frameworks like React, Angular, or Vue.js.
- Develop back-end APIs and services using Node.js, Django, or similar technologies.
- Ensure optimized performance, security, and scalability of web applications.
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