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通用信息

地点:Vancouver, British Columbia, Canada 
  • 地点: Vancouver
  • 州:
  • 国家/地区: Canada

  • 地点: Toronto
  • 州:
  • 国家/地区: Canada


角色 ID
204265
工作人员类型
Regular Employee
工作室/部门
CTO - Studio Data Insights
弹性工作安排
Hybrid

描述和要求

我们是一支全球化团队,由创作者、剧作家、技术专家、体验创作者和创新者等角色组成。我们相信,精彩的游戏与体验始于与玩家和社区同样多样化的团队。在 Electronic Arts,你的想象力是对你的唯一限制。

The Data & Analytics (DnA) function brings both quantitative and qualitative insights to the entire company (including all game teams) through Studio Analytics, Data Engineering, Data Science and Machine Learning Engineering. We develop and improve our Studio’s data technical capabilities to bring data insights right to the studio partners' fingertips.

EA serves millions of players with multi-genre online experiences via Live Services. Games of the last decade continue to entertain and engage audiences with new titles launching each year. The common need across all game experiences is modern personalization approaches that enhance and optimize player experiences, leveraging the latest Machine Learning technologies to retrofit and augment game features, game systems, and game mechanics. We are looking for a Machine Learning engineer who will work amidst unique technologies to deliver in-game Personalization by building global-scale production systems. You will report to the technical director of AI/ML. If you have a passion for creating advanced analytics data products to allow partners to make crucial decisions, you want to make impacts to help player engagement by providing an autonomous platform; then we want to talk to you.

Responsibilities:

  1. Enforce the application of best practices in MLOps and ML model production.
  2. Optimize production-ready ML models.
  3. Design, construct, and maintain production ML systems.
  4. Work closely with team members for efficient deployment and scalability of ML models.
  5. Stay updated with the latest technology and platforms and guide the MLE team in the adoption of new technologies and platforms.

   

Requirements:

  1. Bachelor's degree in Computer Science, Data Science, or related field. 
  2. Comprehensive knowledge in Machine Learning, MLOps practices, and ML model production.
  3. Excellent communication and coordination skills to work in a cross-functional team
  4. Profound knowledge in both Machine Learning and MLOps.
  5.  Experience in designing and maintaining ML systems, developing production-ready ML models.
  6. Knowledge of the latest technology and platforms in the field such as AWS SageMaker, GCP Vertex AI, Airflow, Docker, CI/CD practices, ...
  7. Comfortable working in an agile environment.
  8. 4+ years of industry experience with 1+ years of people management experience