Manager, Platform Engineering, AI & Datascience
Job Purpose and Impact
The Manager for AI Platform Engineering leads the team that designs, builds, and operates Cargill’s enterprise AI-Ops platform—covering MLOps, LLMOps/GenAIOps, HPC scheduling, and optimisation services (e.g., Gurobi, RStudio Workbench). You will own the platform roadmap, allocate people and budget, drive project delivery, and embed best-in-class reliability, security, and compliance practices. Success is measured by platform uptime, model-to-production velocity, cost-to-serve trends, and team engagement.
Key Accountabilities
- Platform Ownership & Road-mapping
- Define and maintain the technical roadmap for MLOps, LLMOps, HPC, and optimization tooling
- Oversee the portfolio of AI-Ops projects; align scope, schedule, and budget to business objectives.
- Technical Guidance & Governance
- Champion infrastructure-as-code, GitOps, and CI/CD pipelines
- Chair design reviews to enforce architecture standards, security controls, and cost-efficiency patterns.
- Quality, Reliability & Compliance
- Set and monitor SLIs/SLOs for training, inference, and optimization services; lead post-incident reviews.
- Ensure Responsible-AI guardrails, data-privacy, and license-management policies are implemented.
- Process Improvement & Automation
- Drive continuous-improvement initiatives (test-driven development, auto-scaling policies, cost dashboards).
- Introduce self-service tooling that reduces manual ops toil and speeds developer onboarding.
- Stakeholder & Customer Engagement
- Partner with product managers, data-science leads, and security/compliance teams to capture requirements and set priorities.
- Provide transparent status updates, KPI dashboards, and quarterly roadmap demos.
- Team Management & Talent Development
- Set performance objectives, conduct regular feedback and coaching sessions, and create growth plans.
- Foster an inclusive culture that values experimentation, blameless post-mortems, and knowledge sharing.
Qualifications
Minimum requirement: 6 years relevant experience.
Typical requirement: 7–10 years total experience, with 3+ years running production MLOps/LLMOps or HPC environments and 2+ years managing engineers.
Linkedin 채용 매칭
카길에서 어떤 업무에 적합할 지 알아보십시오. 로그인하여 LinkedIn 프로필에 연결하면 여러분의 기술과 경험을 바탕으로 가장 적합한 일자리 정보를 검색할 수있습니다.
우리의 위치
우리는 전 세계 70개국 이상의 국가에서 고객과 지역사회에 기여하는 것을 자랑 스럽게 생각 합니다. 전 세계 카길 직원들은 안전하고 책임감 있으며, 지속 가능한 방식으로 세상을 풍요롭게 하는데 공헌 하고 있습니다. 우리와 함께 하여 카길에서의 경력이 여러분의 더 높은 목표 달성에 어떤 도움이 되는지 알아 보십시오.