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Job Description
About Proxify
Talent has no borders. Proxify's mission is to connect top developers around the world with the opportunities they deserve. So, it doesn't matter where you are; we are here to help you fast-track your independent career in the right direction. 🙂 Since our launch, Proxify's developers have successfully worked with 1200+ happy clients to build their products and growth features. 5000+ talented developers trust Proxify and its network to fulfill their dreams and objectives. Proxify is shaped by a global network of supportive, talented developers interested in remote full-time jobs. Our Glassdoor (4.5/5) and Trustpilot (4.8/5) ratings reflect the trust developers place in us and our commitment to our members' success.
The Role: Senior MLOps Engineer
We are looking for a Senior MLOps Engineer for one of our clients. You are a perfect candidate if you are growth-oriented, you love what you do, and you enjoy working on new ideas to develop exciting products.
What we’re looking for:
- Minimum of 5 years of professional experience in MLOps or a related field.
- Proven experience deploying and managing machine learning models in production environments.
- Proficiency in scripting languages (e.g., Python) and relevant MLOps tools (e.g., TensorFlow Extended, Kubeflow, MLflow).
- Experience with containerization technologies (Docker) and orchestration tools (Kubernetes).
- Strong knowledge of cloud platforms (AWS, GCP, or Azure) and their machine learning services.
- Demonstrated experience implementing automated testing, validation, and deployment processes for machine learning models.
- Located in CET timezone (+/- 3 hours), we are unable to consider applications from candidates in other time zones.
Must-have skills:
- Python
- Azure / AWS / GCP
- Grafana / Prometheus
- SQL
Responsibilities:
- Develop and implement a comprehensive MLOps strategy, ensuring the seamless integration of machine learning models into our production environment.
- Design, build, and maintain end-to-end machine learning pipelines, encompassing data preprocessing, model training, deployment, and monitoring.
- Collaborate with cross-functional teams to design, deploy, and manage scalable infrastructure for machine learning workloads. Utilise containerization technologies (e.g., Docker, Kubernetes) and cloud platforms (e.g., AWS, GCP, or Azure).
- Implement and manage CI/CD pipelines for machine learning models, enabling automated testing, validation, and deployment.
- Establish robust monitoring and logging systems to track the performance of machine learning models in production, ensuring timely detection of anomalies and potential issues.
- Work closely with data scientists, software engineers, and other stakeholders to understand model requirements, deployment needs, and data dependencies.
- Implement security best practices for machine learning systems and ensure compliance with relevant regulations and standards.
What we offer:
- Get paid, not played No more unreliable clients. Enjoy on-time monthly payments with flexible withdrawal options
- Predictable project hours Enjoy a harmonious work-life balance with consistent 8-hour working days with clients.
- Flex days, so you can recharge Enjoy up to 24 flex days off per year without losing pay, for full-time positions found through Proxify.
- Career-accelerating positions at cutting-edge companies Discover exclusive long-term remote positions at the world's most exciting companies.
- Hand-picked opportunities just for you Skip the typical recruitment roadblocks and biases with personally matched positions.
- One seamless process, multiple opportunities A one-time contracting process for endless opportunities, with no extra assessments.
- Compensation Enjoy the same pay, every month with positions landed through Proxify.
Key skills/competency
- MLOps
- Machine Learning Models
- Production Environments
- Python
- Docker
- Kubernetes
- AWS / GCP / Azure
- CI/CD
- Data Pipelines
- Monitoring
How to Get Hired at Proxify
- Research Proxify's culture: Study their mission, values, recent news, and employee testimonials on LinkedIn and Glassdoor.
- Tailor your MLOps resume: Highlight extensive experience with Python, cloud platforms, and CI/CD pipelines.
- Showcase production ML expertise: Prepare to discuss deploying and managing models in real-world scenarios.
- Emphasize timezone compatibility: Clearly state your availability within the CET timezone.
- Highlight collaboration skills: Demonstrate experience working with cross-functional data science and engineering teams.
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