Senior MLOps / AIOps Engineer
CASABLANCA, Morocco
Oracle
Oracle offers a comprehensive and fully integrated stack of cloud applications and cloud platform services.MLOps/AIOps Engineer
Location: Casablanca (onsite work mode)
We are looking for a skilled MLOps/AIOps Engineer to join our team. In this role, you will bridge the gap between machine learning model development and production deployment. You will work with cross-functional teams (data scientists, software engineers, DevOps engineers) to ensure scalable, efficient, and robust machine learning models are delivered into our environments.
What you’ll do
- Automate and streamline the deployment of machine learning models into production systems. Ensure that ML models are properly integrated with applications, services, and infrastructure.
- Build and maintain CI/CD pipelines for machine learning models, enabling rapid experimentation and iteration while ensuring quality and performance in production.
- Leverage priority and open-source technologies to support CI/CD pipelines.
- Establish and maintain robust monitoring systems to track model performance in production, ensuring continuous evaluation and early detection of issues.
- Implement real-time performance metrics to evaluate key indicators such as accuracy, latency, and resource usage, ensuring models meet business objectives and user needs.
- Set up monitoring for model performance in production and address any issues that arise. This includes performance degradation, model drift, and other production challenges.
- Work closely with data scientists and architects to understand model requirements and deployment constraints. Collaborate with DevOps, software engineers, and other stakeholders to ensure a seamless transition from model development to production.
- Design and manage infrastructure for training and serving models at scale. This might include cloud resources (AWS, Azure, GCP, OCI), containerization (Docker, Rancher, Kubernetes), and orchestration tools.
- Build robust data pipelines for training and testing models. Automate the entire machine learning lifecycle from data preprocessing to model serving and monitoring.
- Ensure that models, datasets, and experiments are versioned and reproducible. Implement version control for models and maintain an effective model registry.
Qualifications
- 2+ years of experience in MLOps, DevOps, or software engineering, with at least one year focused specifically on machine learning model deployment.
- Proficiency in Python (most common for ML workflows) and experience with languages such as Java, or Go is a plus.
- Familiarity with popular machine learning frameworks (TensorFlow, PyTorch, Scikit-learn) and tools such as MLflow, Kubeflow, or TFX.
- Experience working with cloud platforms like AWS, GCP, Azure or OCI. Proficiency in containerization technologies (Docker, Rancher) and orchestration (Kubernetes, Helm).
- Experience with CI/CD tools (e.g., Jenkins, GitLab CI, GitHub Actions) and Git.
- Familiarity with tools for model monitoring, logging, and observability (e.g., Prometheus, Grafana,).
- Strong understanding of data pipeline design, and data storage technologies (e.g., SQL, Object Storage).
- Strong communication skills to work with cross-functional teams .
- Familiarity with distributed systems and big data frameworks like Hadoop, Spark, etc.
- Experience in automating machine learning (ONNX) or model training optimization.
- Experience in model interpretability, explainability, and fairness.
Career Level - IC3
As a member of the software engineering division, you will assist in defining and developing software for tasks associated with the developing, debugging or designing of software applications or operating systems. Provide technical leadership to other software developers. Specify, design and implement modest changes to existing software architecture to meet changing needs.
As a world leader in cloud solutions, Oracle uses tomorrow’s technology to tackle today’s problems. True innovation starts with diverse perspectives and various abilities and backgrounds.
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We’ve partnered with industry-leaders in almost every sector—and continue to thrive after 40+ years of change by operating with integrity.
Oracle careers open the door to global opportunities where work-life balance flourishes. We offer a highly competitive suite of employee benefits designed on the principles of parity and consistency. We put our people first with flexible medical, life insurance and retirement options. We also encourage employees to give back to their communities through our volunteer programs.
We’re committed to including people with disabilities at all stages of the employment process. If you require accessibility assistance or accommodation for a disability at any point, let us know by calling +1 888 404 2494, option one.
Disclaimer:
Oracle is an Equal Employment Opportunity Employer*. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, national origin, sexual orientation, gender identity, disability and protected veterans’ status, or any other characteristic protected by law. Oracle will consider for employment qualified applicants with arrest and conviction records pursuant to applicable law.
* Which includes being a United States Affirmative Action Employer
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: AIOps Architecture AWS Azure Big Data CI/CD Data pipelines DevOps Distributed Systems Docker Engineering GCP Git GitHub GitLab Grafana Hadoop Helm Java Jenkins Kubeflow Kubernetes Machine Learning MLFlow ML models MLOps Model deployment Model training ONNX Open Source Oracle Pipelines Python PyTorch Scikit-learn Spark SQL TensorFlow Testing TFX
Perks/benefits: Career development Flex hours Insurance
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