5+ years of software engineering experience, with at least 4 years in ML/AI systems., Strong expertise in Python and experience with MLOps tools like KServe and Kubeflow., Deep understanding of Kubernetes and container orchestration in ML contexts., Proven experience in technical leadership and mentoring within engineering teams..
Key responsabilities:
Lead the architecture and implementation of MLOps systems within OpenShift AI.
Design and develop features focused on AI trustworthiness and model monitoring.
Collaborate with product management to translate customer requirements into technical specifications.
Provide technical mentorship and drive technical decision-making in a team environment.
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Manila Recruitment is a full service recruitment consultancy providing executive, expert and technical recruitment support for the Filipino market. We are the leader in innovation for recruitment solutions in the Philippines since 2010. We were born from entrepreneurial roots, and carefully crafted into a full-service consultancy that delivers a suite of innovative headhunting and talent sourcing solutions. Our expertise is defined by an unparalleled understanding of the “big picture” business needs of our clients, and how recruitment solutions can only be tailored for optimum results when a holistic view is taken.
The Manila Recruitment difference is rooted in our passion to scour the globe for cutting-edge developments in recruitment science. We get genuinely excited by developments in social sourcing strategies, web 3.0 tools for headhunters and areas of innovation that can help us deliver the best client and candidate experiences. We identify and deliver the latest international recruitment strategies specifically adapted for headhunting talent within the Filipino market. Producing unrivalled access to perfectly matched, previously undiscoverable talent for our clients. The recipe is simple, innovation, international best practice, combined with local market knowledge, a candidate database of over 40,000 and growing, and of course our greatest asset – simply the best team of passive talent sourcing, end-to-end recruitment consultants in the Philippines!
Lead the architecture and implementation of MLOps/LLMOps systems within OpenShift AI, establishing best practices for scalability, reliability, and maintainability while actively contributing to relevant open-source communities
Design and develop robust, production-grade features focused on AI trustworthiness, including model monitoring
Drive technical decision-making around system architecture, technology selection, and implementation strategies for key MLOps components, with a focus on open-source technologies
Define and implement technical standards for model deployment, monitoring, and validation pipelines, while mentoring team members on MLOps best practices and engineering excellence
Collaborate with product management to translate customer requirements into technical specifications, architect solutions that address scalability and performance challenges, and provide technical leadership in customer-facing discussions
Lead code reviews, architectural reviews, and technical documentation efforts to ensure high code quality and maintainable systems across distributed engineering teams
Identify and resolve complex technical challenges in production environments, particularly around model serving, scaling, and reliability in enterprise Kubernetes deployments
Partner with cross-functional teams to establish technical roadmaps, evaluate build-vs-buy decisions, and ensure alignment between engineering capabilities and product vision
Provide technical mentorship to team members, including code review feedback, architecture guidance, and career development support while fostering a culture of engineering excellence
Requirements
5+ years of software engineering experience, with at least 4 years focusing on ML/AI systems in production environments
Strong expertise in Python, with demonstrated experience building and deploying production ML systems
Deep understanding of Kubernetes and container orchestration, particularly in ML workload contexts
Extensive experience with MLOps tools and frameworks (e.g., KServe, Kubeflow, MLflow, or similar)
Track record of technical leadership in open source projects, including significant contributions and community engagement
Proven experience architecting and implementing large-scale distributed systems
Strong background in software engineering best practices, including CI/CD, testing, and monitoring
Experience mentoring engineers and driving technical decisions in a team environment
Advantageous Experience/Skills:
Experience with Red Hat OpenShift or similar enterprise Kubernetes platforms
Contributions to ML/AI open source projects, particularly in the MLOps/GitOps space
Background in implementing ML model monitoring
Experience with LLM operations and deployment at scale
Public speaking experience at technical conferences
Advanced degree in Computer Science, Machine Learning, or related field
Experience working with distributed engineering teams across multiple time zones
Required profile
Experience
Level of experience:Mid-level (2-5 years)
Spoken language(s):
English
Check out the description to know which languages are mandatory.