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일반 정보

지역: Galway, Ireland 
역할 ID
214202
근로자 유형
Regular Employee
스튜디오/부서
Marketing
유연근무제
Hybrid

설명 및 참여 요건

Electronic Arts는 전 세계 플레이어와 팬들에게 영감을 불어넣을 차세대 엔터테인먼트 경험을 제작합니다. 여기에선 모든 이가 이야기의 일부가 됩니다. 전 세계를 연결하는 커뮤니티의 일부이자 창의력이 번창하고 새로운 관점을 제시하며 아이디어가 중요한 곳이며 모두가 플레이 제작에 참여할 수 있는 팀입니다.

EA Experiences group (XO) is dedicated to ensuring great experiences for our growing communities centered around our world-renowned brands, including fan-favorites like Apex, Battlefield, EA SPORTS FC, Madden NFL and The Sims, just to name a few. We're a multi-functional group, with world-class expertise building fandoms, driving interactive storytelling, and positioning our franchises at the center of the broader entertainment ecosystem. We inspire, connect, and engage fans through culturally relevant content, intentionally architected journeys across channels, and meaningful fan care. Our goal is to provide valuable, easy experiences that fans love – in our games, around our games, and through innovative adjacent experiences to grow and enrich how fans experience EA as we shape the future of entertainment.

To empower more players and fans in new and amazing ways, we need more innovators to join our world-class team. The future of entertainment is interactive, and you can help lead that future, by growing and enriching how hundreds of millions of people (and counting) find joy and belonging, forge friendships, and celebrate their lived experiences through the work we do every single day, together.

You will be the hands-on AI Infrastructure Engineer for our AI and machine learning platform, reporting to the Director, Agentic Solutions. You will design, build, and operate the cloud foundation our models and production AI agents run on, going deep in AWS to make the platform reliable, secure, and cost-effective at scale. You'll bring MLOps and AIOps together: the training, serving, and monitoring infrastructure teams build on, with MLflow-based experiment tracking, model registry, and pipelines on one side, and self-monitoring, self-healing systems on the other. You'll architect and ship the CI/CD, observability, and infrastructure-as-code standards that the rest of XO builds on, and you'll still go deep in the code when the work calls for it. You will define requirements, rapidly prototype, iterate with stakeholders, and establish reusable architectures, standards, and patterns using the latest AI engineering methodologies, models, tools, and platforms. You're creative, innovative, self-motivated, and team-first, equally strong at problem-solving and collaborating across product, data, security, IT, and engineering teams. You will build scalable ML and AI pipelines that let teams spend more time on high-value, creative, and strategic work. You will be a hybrid worker, collaborating with teams 3 days a week from the office; international travel to collaborate with global teams is an added bonus.

Responsibilities

  • Own the MLOps platform: build and operate the platform teams use to train, track, version, and deploy models, with MLflow for experiment tracking, model registry, and lineage.

  • Run the ML pipelines: design and operate training, validation, and deployment pipelines, including automated retraining when data or model performance drifts.

  • Serve models at scale: stand up real-time and batch inference infrastructure, including GPU-backed and LLM serving, and make the calls on hosted versus self-managed serving.

  • Monitor models in production: put drift detection, data quality checks, and performance tracking in place, with alerts that trigger action.

  • Drive AIOps: build self-monitoring, self-healing systems on event-driven automation, with anomaly detection, predictive alerting, and automated remediation.

  • Architect infrastructure as software: implement programmable IaC (AWS CDK preferred) plus reusable patterns, shared libraries, and platform standards across teams.

  • Establish observability and traceability: make services, pipelines, models, and data flows visible end to end.

  • Govern CI/CD and continuous training: design pipelines with security and compliance controls built in (DevSecOps and MLSecOps).

  • Secure the platform: enforce least privilege, identity management, and continuous validation across infrastructure, models, and data.

  • Own reliability: define SLIs/SLOs, run incident response and postmortems, and continuously improve reliability.

  • Partner and mentor: work with teams across XO, guide engineers, and shape architecture decisions.

Your Qualifications

  • 7+ years designing, building, and operating production-grade infrastructure and platforms, with strong software engineering, security, and reliability best practices.

  • Hands-on MLOps experience is the core of this role: building and operating ML platforms with experiment tracking, model registry, and automated training and deployment pipelines (MLflow, or equivalents such as Kubeflow or SageMaker).

  • Deep, hands-on AWS experience across compute and serverless (Lambda, ECS/Fargate, containers), storage, networking (VPC), IAM, observability and telemetry (CloudWatch, tracing, structured logging), and secrets management; experience with SageMaker and Amazon Bedrock is a strong plus.

  • Experience running AIOps practices: anomaly detection, predictive alerting, automated remediation, and self-healing systems built on event-driven automation.

  • Strong infrastructure-as-code and CI/CD experience (CDK preferred; Terraform or CloudFormation), with a track record of building for reliability, scale, and cost efficiency.

  • Experience with ML pipeline orchestration (Airflow, Kubeflow, SageMaker Pipelines, or Step Functions) and model serving and inference (SageMaker, Bedrock, KServe, Seldon, or Triton).

  • Experience with model and data monitoring, including drift detection and data quality.

  • Strong Python skills; working knowledge of at least one additional language (TypeScript/Node.js, Go, Java, or C#).

  • Deep experience with observability tools (Datadog, Prometheus, Grafana, OpenTelemetry) and debugging distributed systems.

  • Solid grasp of the ML lifecycle, from training and evaluation through deployment, monitoring, and retraining.

  • Experience navigating the legal, ethical, and security implications of AI, including data privacy, IP, and safety, and translating policy into engineering controls.

  • Thrive working both collaboratively and independently, with excellent creative, critical thinking, and problem-solving skills, and a demonstrated ability to clearly articulate complex technical concepts.

  • LLMOps experience (serving and fine-tuning LLMs, vector databases, and RAG infrastructure), feature stores (Feast, Tecton, or SageMaker Feature Store), GPU and accelerator infrastructure, Kubernetes (EKS), or Data Lakehouse platforms (e.g., Databricks) is beneficial.

  • Experience working in a gaming company or large-scale consumer platform is beneficial.



Electronic Arts 소개
EA는 전 세계의 다양한 게임과 경험, 지역, 그리고 기회에 대한 광범위한 포트폴리오를 보유함에 있어 자랑스럽게 생각합니다. 당사는 적응력, 회복력, 창의성, 호기심을 중시합니다. 잠재력을 발휘하는 리더십부터 학습과 실험을 위한 공간을 만드는 것까지, 당사는 여러분이 훌륭한 일을 하고 성장의 기회를 추구할 수 있도록 힘을 실어드립니다.

EA는 신체적, 정서적, 재정적, 직업적, 지역 사회 복지를 강조하는 복리후생 프로그램으로 균형 잡힌 삶을 지원합니다. 당사의 패키지는 지역적 필요에 따라 맞춤형으로 구성되어 있으며, 의료 보험, 정신 건강 지원, 퇴직 연금, 유급 휴가, 가족 휴가, 무료 게임 등이 포함될 수 있습니다. 당사는 팀이 항상 최선을 다할 수 있는 환경을 육성합니다.

Electronic Arts는 동등한 고용 기회를 제공합니다. 채용에 관한 모든 결정은 인종, 피부색, 출신 국가, 혈통, 성별, 성 정체성 또는 성 표현, 성적 성향, 나이, 유전 정보, 종교, 장애, 질병, 임신, 결혼, 가족 상황, 군 복무 여부 또는 기타 법으로 보호되는 기타 특성과 관계없이 내려집니다. 당사는 또한 해당 법률에 따라 전과 기록이 있는 자격을 갖춘 지원자도 채용 대상으로 고려합니다. 또한, EA는 관련 법률에서 요구하는 대로 장애가 있는 자격을 갖춘 개인을 위한 직장 내 편의 시설을 마련합니다.