

Machine Learning Operations Specialist {Data Engineer} With background on Cloud
YONDU INC.
- Taguig, Philippines7th Floor, Fort Bonifacio, Taguig, Metro Manila, PhilippinesTaguigMetro ManilaPhilippinesPhilippines
- Full timeFULL_TIME
Posted 3 days ago and deadline of application is on 30 Dec
Recruiter was hiring a day ago
2026-01-26T12:25:52.750823+00:002026-12-30T16:00:00+00:00Job Description
- Execute performance tuning activities for model serving infrastructure to maintain optimal latency and throughput.
- Conduct post-deployment validation checks to ensure model prediction stability, API responsiveness, and overall service quality.
- Support the enhancement of operational pipelines, including CI/CD workflows, configuration templates, and automated monitoring scripts.
- Participate in service reliability reviews to improve platform uptime, incident response processes, and operational readiness.
- Coordinate closely with DevOps and Platform Engineering to address infrastructure-level concerns related to model hosting and deployment.
- Assist in the rollout of platform-level improvements, including model registry enhancements, container optimization, and new monitoring tools.
Minimum Qualifications
Key Requirements: (Must have)
-Machine Learning
-Data Engineering
-With Cloud background- AWS, GCP, Azure, Alibaba etc)
Additional Job Qualifications
Related Work Experience:
-Minimum of 2+ years hands-on experience in a production environment covering MLOps, Data Engineering, or Software Engineering.
-Demonstrated ability to meet and exceed strict Service Level Agreements (SLAs), especially those related to system uptime, stability, incident response, and resolution.
-Experience supporting cloud-hosted ML systems in distributed, high-availability environments.
Knowledge:
-Strong understanding of model deployment workflows, including model versioning, serving, rollout strategies, and post-deployment validation.
-Knowledge of cloud platforms (e.g., AWS Cloud) and their native ML services used for hosting, monitoring, and managing model endpoints.
-Familiarity with containerization (Docker) and orchestration (Kubernetes) for scalable ML serving infrastructure.
-Understanding of performance monitoring concepts, including latency tracking, model health indicators, and drift signals.
-Knowledge of CI/CD processes, configuration templates, and automated operational workflows specific to ML systems.
Skills:
-Proven expertise in MLOps, specifically managing model deployment, proactive monitoring, incident resolution, and performance tuning.
-Ability to write and maintain automation scripts, validation utilities, and operational workflows to support ML pipelines.
-Ability to collaborate effectively with DevOps, Data Science, and Platform Engineering teams to improve model reliability and system stability.
-Skilled in applying structured software development methodologies (e.g., Agile/Scrum) to support platform enhancements and iterative delivery.
-Strong analytical, troubleshooting, and root-cause diagnosis skills in production environments.
Jobs Summary
- Job Level
- Mid-Senior Level / Manager
- Job Category
- IT and Software
- Educational Requirement
- Bachelor's degree graduate
- Office Address
- Panorama Tower 34th Street, Taguig, 1634 Metro Manila
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