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QT Technologies Ireland Limited
Job Area:
Engineering Group, Engineering Group > Systems Engineering
About The Role
As a Senior MLOps Engineer, you will be responsible for architecting, deploying, and optimizing the ML platform that supports training of Machine Learning Models using NVIDIA DGX clusters and the Kubernetes platform, including technologies like Helm, ArgoCD, Argo Workflow, Prometheus, and Grafana.
You will work closely with cross-functional teams, including data scientists, software engineers, and infrastructure specialists, to ensure the smooth operation and scalability of our ML infrastructure. Your expertise in MLOps and knowledge of GPU clusters will be vital in enabling efficient training and deployment of ML models.
Responsibilities will include:
Architect, develop, and maintain the ML platform to support training and inference of ML models.
Design and implement scalable and reliable infrastructure solutions for NVIDIA DGX clusters.
Collaborate with data scientists and software engineers to define requirements and ensure seamless integration of ML workflows into the platform.
Optimize the platform’s performance and scalability, considering factors such as GPU resource utilization, data ingestion, model training, and deployment.
Monitor and troubleshoot system performance, identifying and resolving issues to ensure the availability and reliability of the ML platform.
Implement and maintain CI/CD pipelines for automated model training, evaluation, and deployment using technologies like ArgoCD and Argo Workflow.
Implement and maintain monitoring stack using Prometheus and Grafana to ensure the health and performance of the ML platform.
Stay updated with the latest advancements in MLOps, distributed computing, and GPU acceleration technologies, and proactively propose improvements to enhance the ML platform.
Provide technical guidance and mentorship to junior team members.
What are we looking for:
Bachelor’s or Master’s degree in Computer Science, Engineering, or a related field.
Proven experience as an MLOps Engineer or similar role, with a focus on large-scale ML infrastructure and GPU clusters.
Strong expertise in configuring and optimizing NVIDIA DGX clusters for deep learning workloads.
Proficient in using the Kubernetes platform, including technologies like Helm, ArgoCD, Argo Workflow, Prometheus, and Grafana.
Solid programming skills in languages like Python, and experience with relevant ML frameworks (e.g., TensorFlow, PyTorch).
In-depth understanding of distributed computing, parallel computing, and GPU acceleration techniques.
Familiarity with containerization technologies such as Docker and orchestration tools.
Experience with CI/CD pipelines and automation tools for ML workflows (e.g., Jenkins, GitHub, ArgoCD).
Strong problem-solving skills and the ability to troubleshoot complex technical issues.
Excellent communication and collaboration skills to work effectively within a cross-functional team.
We would love to see:
Experience with training and deploying models for Automated Driving.
Knowledge of ML model optimization techniques and memory management on GPUs.
Familiarity with ML-specific data storage and retrieval systems .
Understanding of security and compliance requirements in ML infrastructure.
What's on Offer
Apart from working in an open, relaxed and collaborative space, you will enjoy:
Salary, stock and performance related bonus
Maternity/Paternity Leave
Employee stock purchase scheme
Matching pension scheme
Education Assistance
Relocation and immigration support (if needed)
Life, Medical, Income and Travel Insurance
Subsidised memberships for physical and mental well-being
Bicycle purchase scheme
Employee run clubs, including, running, football, chess, badminton + many more
Minimum Qualifications:
• Bachelor's degree in Engineering, Information Systems, Computer Science, or related field and 2+ years of Systems Engineering or related work experience.
Master's degree in Engineering, Information Systems, Computer Science, or related field and 1+ year of Systems Engineering or related work experience.
PhD in Engineering, Information Systems, Computer Science, or related field.
*References to a particular number of years experience are for indicative purposes only. Applications from candidates with equivalent experience will be considered, provided that the candidate can demonstrate an ability to fulfill the principal duties of the role and possesses the required competencies.
Qualcomm expects its employees to abide by all applicable policies and procedures, including but not limited to security and other requirements regarding protection of Company confidential information and other confidential and/or proprietary information, to the extent those requirements are permissible under applicable law.
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