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ML Engineer

Posted about 1 month agoViewed

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πŸ’Ž Seniority level: Middle, 3+ Years

πŸ“ Location: United States, Canada

πŸ’Έ Salary: 70168.0 - 176880.0 USD per year

πŸ” Industry: Video Gaming

🏒 Company: thatgamecompanyπŸ‘₯ 101-250πŸ’° about 3 years agoDeveloper ToolsVideo GamesConsole GamesFamilyMMO GamesSocial NetworkMobileOnline Games

πŸ—£οΈ Languages: English

⏳ Experience: 3+ Years

πŸͺ„ Skills: PythonSQLData AnalysisETLGCPKubernetesMachine LearningNumpyAlgorithmsData scienceData StructuresREST APIPandasSparkTensorflowCommunication SkillsCI/CDProblem SolvingScalaData visualization

Requirements:
  • 3+ Years of Experience in applied Data Science or Machine Learning
  • Knowledge of Machine learning and Statistical methods (Classical ML, Deep Learning, NLP, and Anomaly Detection) and the ability to identify the most suitable solution for the problem
  • Experience building and deploying complex and scalable machine learning models in production environments, ideally in Kubernetes
  • Experience writing clean, efficient code in Python, Java, or Scala
  • Experience writing optimized SQL Queries to build and analyze datasets
Responsibilities:
Complete a project from start to finish. That includes requirements gathering, experimentation, model development, deployment, monitoring, documentation, support, and communicationApply

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