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MLOps Engineer

HCLTech
City of London
4 days ago
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HCLTech is a global technology company, home to more than 220,000 people across 60 countries, delivering industry-leading capabilities centered around digital, engineering, cloud and AI, powered by a broad portfolio of technology services and products. We work with clients across all major verticals, providing industry solutions for Financial Services, Manufacturing, Life Sciences and Healthcare, Technology and Services, Telecom and Media, Retail and CPG, and Public Services. Consolidated revenues as of 12 months ending December 2024 totaled $13.8 billion.



Role Summary:

We are seeking an experienced MLOps Engineer to join our team, focusing on the deployment, monitoring, and maintenance of machine learning models in production environments. This role does not involve model development or end-user support but is critical to ensuring the reliability and performance of our ML platforms. The successful candidate will also be responsible for managing API endpoints and overseeing model deployment workflows to ensure seamless integration and scalability.


Key Responsibilities:

Platform Operations & Monitoring

• Monitor ML model endpoints and overall platform health using tools like Grafana and Domino Data Lab.

• Respond to incidents and alerts, perform code fixes, manage incidents internally and manages changes through ServiceNow

• Interface directly with Domino Data Lab support to resolve model platform-related issues.


Model Deployment into Production

• Deploy and Maintain ML models in production environments.

• Ensure models are properly integrated into automated pipelines and meet standards


Pipeline Maintenance

• Collaborate with data scientists and engineers to ensure smooth handoff from model development to production.

• Maintain and support ML pipelines, ensuring stability and scalability. • Continuously optimize pipeline performance, resource usage, and automation


Automation & Tooling

• Implement automation for deployment and monitoring tasks.

• Contribute to platform improvements.


Required Skills & Experience

• Extensive experience in Python programming

• Strong experience with ML model deployment and production monitoring.

• Working knowledge of core data science concepts, such as model evaluation metrics, overfitting, data drift, and feature importance.

• Proficiency in AWS services (like S3, RedShift etc)

• Experience with Grafana for monitoring and alerting.

• Good to have hands-on experience with Domino Data Lab platform.

• Solid understanding of CI/CD pipelines, version control, containerization, and orchestration.

• Ability to communicate effectively with internal and external stakeholders.

• Excellent troubleshooting and incident management skills

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