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Posted 3 weeks ago
RebelDot

MLOps Engineer

Undisclosed
Estimate 1,150 - 3,650 EUR Gross / month · Based on 38 similar listings
Cluj-Napoca
Office
Full-time

Required technologies

Job description

This position is based in Cluj-Napoca, Romania.

We are looking for a MLOps Engineer.

We offer a full-time position.

Additional information

You might be our missing piece if you have: - Strong expertise in Python and AI frameworks such as PyTorch, Keras, SciPy, or Tensorflow. - Experience with Python-based Web frameworks like FastAPI, Flask, or Django. - Knowledge of PEP 8 coding standards for Python. - Extensive experience in solving AI/ML challenges and working with LLMs. - Familiarity with OpenAI, Embeddings, Completion, and Semantic Search. - Solid experience with API integrations and working with external APIs like OpenAI, Anthropic, or similar AI service providers. - Hands-on experience with containerization and orchestration tools – especially Docker for packaging ML models, and Kubernetes (or similar) for deploying and scaling them in distributed environments. - Proficiency in DevOps and automation practices: designing CI/CD pipelines (using tools like Jenkins, GitLab CI/CD, or GitHub Actions) to automate model testing and deployment, and using Infrastructure-as-Code (CloudFormation, Terraform) to manage cloud resources. - Working knowledge of cloud computing services (AWS, Azure, GCP) for ML workloads. This includes familiarity with cloud AI/ML services and managed ML platforms (like SageMaker, Azure ML, or GCP AI Platform) and experience setting up scalable infrastructure for data and models (compute instances, storage, networking for model endpoints). - Familiarity with databases and experience using SQLAlchemy, Alembic, and database management for AI models. - Strong skills in managing datasets using tools like Pandas, SciPy, and Numpy for data pre/post-processing. - Experience with monitoring and logging frameworks to track running systems; Prometheus/Grafana or cloud monitoring services to record model serving performance metrics, and possibly specialized ML monitoring solutions (e.g. MLflow, Weights & Biases, Apache Airflow for scheduling retraining). - Strong analytical and problem-solving skills to diagnose issues from logs/metrics and tune system performance. - Excellent communication skills and a collaborative mindset; Since this role works across AI Engineering, Data Engineering, DevOps Engineering, and client teams, the engineer must be able to explain technical concepts to diverse stakeholders and document work clearly. - Ability to work in an agile environment, manage priorities, and coordinate with remote or cross-functional team members is important. We would be thrilled if you have: - A track record of deploying and managing machine learning models at scale (e.g., in a product or platform used by thousands of end-users or clients). - Experience working on client-facing projects or consulting engagements. We will be working together on: - Designing, building, and automating ML pipelines. - Deploying and scaling models in production. - Monitoring, maintaining, and improving model performance. - Collaborating with Data Engineers and client stakeholders. - Establishing governance, documentation, and best practices.

About Company RebelDot

We help global brands design, build and launch digital products that drive business growth.
Work setups
Office
Offices in: Cluj-Napoca

Compensation

Undisclosed
Estimate 1,150 - 3,650 EUR Gross / month
Based on 38 similar listings

Contract details

Employment type Full time
Contract type Full-time employee

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