Machine Learning Operations Specialist

Leading Edge

Not Interested
Bookmark
الإبلاغ عن هذه الوظيفة

profile موقع الوظيفة:

دبي - الإمارات

profile الراتب شهرياً: لم يكشف
تاريخ النشر: 16-09-2025
عدد الوظائف الشاغرة: 1 عدد الوظائف الشاغرة

ملخص الوظيفة

Job Summary:
A Machine Learning Operations (MLOps) Specialist plays a vital role in bridging the gap between data science and IT operations ensuring seamless integration of machine learning models into production environments. Heres a breakdown of the job:

Key Responsibilities:

Developing and Maintaining CI/CD Pipelines: Create automated workflows for building testing and deploying machine learning models.

Automating Deployment and Monitoring: Ensure models are deployed efficiently and their performance is continuously tracked in production environments.

Implementing Infrastructure as Code (IaC): Manage ML infrastructure using code to ensure consistency and scalability.

Troubleshooting and Resolving Issues: Identify and fix problems related to model deployment and performance.

Collaboration: Work with data scientists and engineers to optimize model performance scalability and integration.

Requirements:

Education: Bachelors degree in Computer Science Engineering or a related field.

Experience: 5 years in MLOps DevOps or a related role.

Technical Expertise: Strong understanding of machine learning concepts algorithms and cloud platforms (AWS Azure GCP).

Scripting Skills: Proficiency in Python or similar scripting languages.

Containerization: Experience with Docker and Kubernetes.

CI/CD Tools: Familiarity with Jenkins GitLab CI CircleCI or similar.

Job Summary:A Machine Learning Operations (MLOps) Specialist plays a vital role in bridging the gap between data science and IT operations ensuring seamless integration of machine learning models into production environments. Heres a breakdown of the job: Key Responsibilities: Developing and Mainta...
اعرض المزيد view more

المهارات المطلوبة

  • الخدمات المالية
  • تكنولوجيا المعلومات
  • مراقبة التكاليف
  • إدارة مخاطر الشركات
  • القانون